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Busy Info 2021-09-17 18:01:33: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:33: [Debug] response: {"seq":817,"type":"response","request_seq":827,"success":true,"command":"stepIn"} Silly 2021-09-17 18:01:33: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6421","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:33.908179Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:33.795000Z","msg_id":"339fb35e-85ed-4048-a829-c76d443003e6","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":818,"type":"event","event":"continued","body":{"threadId":1,"allThreadsContinued":true}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"stepIn","arguments":{"threadId":1},"type":"request","seq":828} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {"seq":819,"type":"response","request_seq":828,"success":true,"command":"stepIn"} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"disconnect","arguments":{"restart":false},"type":"request","seq":829} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6429","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.114762Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.111000Z","msg_id":"54494f65-078a-4c99-b50a-e8f7a73f3356","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":820,"type":"event","event":"terminated"},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {"seq":821,"type":"response","request_seq":829,"success":true,"command":"disconnect"} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"disconnect","arguments":{"restart":false},"type":"request","seq":830} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: KernelProcess output: Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [IPKernelApp] ERROR | Exception in control handler:\n", "pid": 85835}} Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:34: KernelProcess output: Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "[IPKernelApp] ERROR | Exception in control handler:\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: Traceback (most recent call last):\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "Traceback (most recent call last):\n"}}Content-Length: 253 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n", "pid": 85835}}Content-Length: 228 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: await result\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " await result\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n"}}Content-Length: 147 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply_content = await reply_content\n", "pid": 85835}}Content-Length: 122 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply_content = await reply_content\n"}}Content-Length: 252 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n", "pid": 85835}}Content-Length: 227 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n"}}Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: return await self.debugger.process_request(msg)\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " return await self.debugger.process_request(msg)\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 595, in process_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 595, in process_request\n"}}Content-Length: 123 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: self.stop()\n", "pid": 85835}}Content-Length: 98 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " self.stop()\n"}}Content-Length: 240 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 348, in stop\n", "pid": 85835}}Content-Length: 215 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 348, in stop\n"}}Content-Length: 155 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: self.debugpy_client.disconnect_tcp_socket()\n", "pid": 85835}}Content-Length: 130 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " self.debugpy_client.disconnect_tcp_socket()\n"}}Content-Length: 257 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 232, in disconnect_tcp_socket\n", "pid": 85835}}Content-Length: 232 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 232, in disconnect_tcp_socket\n"}}Content-Length: 171 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: self.debugpy_stream.socket.disconnect(self._get_endpoint())\n", "pid": 85835}}Content-Length: 146 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " self.debugpy_stream.socket.disconnect(self._get_endpoint())\n"}}Content-Length: 206 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"zmq/backend/cython/socket.pyx\", line 640, in zmq.backend.cython.socket.Socket.disconnect\n", "pid": 85835}}Content-Length: 181 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"zmq/backend/cython/socket.pyx\", line 640, in zmq.backend.cython.socket.Socket.disconnect\n"}}Content-Length: 153 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: zmq.error.ZMQError: No such file or directory\n", "pid": 85835}}Content-Length: 128 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "zmq.error.ZMQError: No such file or directory\n"}} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:34: StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: Traceback (most recent call last): Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process Traceback (most recent call last): Warn 2021-09-17 18:01:34: StdErr from Kernel Process Traceback (most recent call last): Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:34: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: await result Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process await result Warn 2021-09-17 18:01:34: StdErr from Kernel Process await result Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:34: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: reply_content = await reply_content Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process reply_content = await reply_content Warn 2021-09-17 18:01:34: StdErr from Kernel Process reply_content = await reply_content Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:34: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:34: StdErr from Kernel Process return await self.debugger.process_request(msg) Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 595, in process_request Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 595, in process_request Warn 2021-09-17 18:01:34: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 595, in process_request Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: self.stop() Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process self.stop() Warn 2021-09-17 18:01:34: StdErr from Kernel Process self.stop() Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 348, in stop Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 348, in stop Warn 2021-09-17 18:01:34: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 348, in stop Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: self.debugpy_client.disconnect_tcp_socket() Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process self.debugpy_client.disconnect_tcp_socket() Warn 2021-09-17 18:01:34: StdErr from Kernel Process self.debugpy_client.disconnect_tcp_socket() Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 232, in disconnect_tcp_socket Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 232, in disconnect_tcp_socket Warn 2021-09-17 18:01:34: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 232, in disconnect_tcp_socket Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: self.debugpy_stream.socket.disconnect(self._get_endpoint()) Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process self.debugpy_stream.socket.disconnect(self._get_endpoint()) Warn 2021-09-17 18:01:34: StdErr from Kernel Process self.debugpy_stream.socket.disconnect(self._get_endpoint()) Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: File "zmq/backend/cython/socket.pyx", line 640, in zmq.backend.cython.socket.Socket.disconnect Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process File "zmq/backend/cython/socket.pyx", line 640, in zmq.backend.cython.socket.Socket.disconnect Warn 2021-09-17 18:01:34: StdErr from Kernel Process File "zmq/backend/cython/socket.pyx", line 640, in zmq.backend.cython.socket.Socket.disconnect Info 2021-09-17 18:01:34: Python Daemon (pid: 85835): write to stderr: zmq.error.ZMQError: No such file or directory Warn 2021-09-17 18:01:34: Kernel 85835 as possibly died, StdErr from Kernel Process zmq.error.ZMQError: No such file or directory Warn 2021-09-17 18:01:34: StdErr from Kernel Process zmq.error.ZMQError: No such file or directory Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Imports \nimport pandas as pd\nimport numpy as np\nimport pandas_profiling\nfrom sklearn.model_selection import train_test_split \nfrom sklearn import preprocessing\nfrom sklearn.naive_bayes import GaussianNB\nfrom sklearn.metrics import accuracy_score\nfrom sklearn.tree import DecisionTreeClassifier \nfrom sklearn.metrics import accuracy_score\nfrom sklearn.metrics import confusion_matrix\nfrom sklearn import metrics\nimport random\nimport matplotlib.pyplot as plt\nfrom IPython.display import Image \nfrom sklearn.tree import export_graphviz\nimport pydotplus\nfrom sklearn import preprocessing\nfrom io import StringIO\nfrom sklearn.ensemble import RandomForestClassifier\nfrom sklearn.preprocessing import StandardScaler\nfrom sklearn.model_selection import GridSearchCV\nfrom keras.wrappers.scikit_learn import KerasClassifier\nfrom keras.models import Sequential\nfrom keras.layers import Dense, Activation, Dropout\nfrom numpy.random import seed"},"type":"request","seq":1} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"titanic_df = pd.read_csv(\"titanic_data.csv\")\ntitanic_df.info()"},"type":"request","seq":2} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"titanic_df.describe()"},"type":"request","seq":3} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"# Search for overall trends in the dataset\npandas_profiling.ProfileReport(titanic_df)"},"type":"request","seq":4} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Age is skewed and has a significant number of missing values so best to replace missing values with median of data\nage_median = titanic_df['Age'].median(skipna=True)\ntitanic_df['Age'].fillna(age_median, inplace=True)"},"type":"request","seq":5} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Cabin has too many missing values and will be completely dropped from the dataframe\ntitanic_df.drop('Cabin', axis=1, inplace=True)"},"type":"request","seq":6} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Embarked only has 2 missing values and can be replaced with the most common which is S\ntitanic_df['Embarked'].fillna(\"S\", inplace=True)"},"type":"request","seq":7} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Fare has one missing value and can be replaced with the median because it is highly skewed\nfare_median = titanic_df['Fare'].median(skipna=True)\ntitanic_df['Fare'].fillna(fare_median,inplace=True)"},"type":"request","seq":8} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#SibSp - Number of siblings/spouses aboard\n#Parch - Number of parents/children aboard\n#These two variables overlap for every passenger that has this data so I am creating a variable that just detects \n#whether someone is traveling alone or not to account for multicollinearity\ntitanic_df['TravelGroup']=titanic_df[\"SibSp\"]+titanic_df[\"Parch\"]\ntitanic_df['TravelAlone']=np.where(titanic_df['TravelGroup']>0, 0, 1) \ntitanic_df.head()"},"type":"request","seq":9} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Does total size of group change the probability of surviving? \n#Initial thought: People who want to check up on the safety of more people take more time looking for them \n#and die as a result of not trying to escape\ntitanic_df['TravelTotal'] = titanic_df['TravelGroup'] + 1"},"type":"request","seq":10} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Drop unnecessary variables - thanks for the help Jeffrey!\ntitanic_df.drop('SibSp', axis=1, inplace=True)\ntitanic_df.drop('Parch', axis=1, inplace=True)\ntitanic_df.drop('TravelGroup', axis=1, inplace=True)\ntitanic_df.drop('Ticket', axis=1, inplace=True)\ntitanic_df.drop('Name', axis=1, inplace=True)"},"type":"request","seq":11} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Hot Encode PClass, Sex, Embarked\nle = preprocessing.LabelEncoder()\npclass_cat = le.fit_transform(titanic_df.Pclass)\nsex_cat = le.fit_transform(titanic_df.Sex)\nembarked_cat = le.fit_transform(titanic_df.Embarked)\n\n#Initialize the encoded categorical columns\ntitanic_df['pclass_cat'] = pclass_cat\ntitanic_df['sex_cat'] = sex_cat\ntitanic_df['embarked_cat'] = embarked_cat\n\n#Drop old categorical fields from dataframe and reindex\ndummy_fields = ['Pclass','Sex','Embarked']\ndata = titanic_df.drop(dummy_fields, axis = 1)\ndata = titanic_df.reindex(['pclass_cat','sex_cat','Age','Fare','embarked_cat','TravelAlone', 'TravelTotal','Survived'],axis=1)"},"type":"request","seq":12} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"data"},"type":"request","seq":13} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Normalize the continuous variables\ncontinuous = ['Age', 'Fare', 'TravelTotal']\n\nscaler = StandardScaler()\n\nfor var in continuous:\n data[var] = data[var].astype('float64')\n data[var] = scaler.fit_transform(data[var].values.reshape(-1, 1))"},"type":"request","seq":14} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"data"},"type":"request","seq":15} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Make sure data is clean/check for null\ndata[data.isnull().any(axis=1)].head()"},"type":"request","seq":16} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Split inputs and output\nX = data.iloc[:, 0:7] \nY = data.iloc[:, 7]"},"type":"request","seq":17} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Test/Train Split\nX_train, X_test, y_train, y_test = train_test_split(X, Y, test_size=0.2)"},"type":"request","seq":18} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#NB - All columns\n#Initialize + fit model\ngnb = GaussianNB().fit(X_train, y_train)\n\n#Predictions\ny_pred = gnb.predict(X_test)\n\n#Accuracy Score\nNB_all_accuracy = accuracy_score(y_test,y_pred)\nprint('Naive Bayes Model Accuracy with all attributes: {0:.2f}'.format(NB_all_accuracy))"},"type":"request","seq":19} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#DT1 - All attributes\n#Initalize + fit model\ntree = DecisionTreeClassifier(criterion = 'entropy', min_samples_split = 2, random_state=5).fit(X_train, y_train)\n\n#Predictions\ny_pred = tree.predict(X_test)\n\n#Accuracy Score\ntree_all_accuracy = accuracy_score(y_test, y_pred)\nprint('Decision Tree Accuracy with all attributes: {0:.2f}'.format(tree_all_accuracy))"},"type":"request","seq":20} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Tree visualization function\ndef visualize_tree(tree_data, names):\n dot_data = StringIO()\n export_graphviz(tree_data,out_file=dot_data,\n feature_names=names,\n filled=True,rounded=True, \n special_characters=True)\n graph = pydotplus.graph_from_dot_data(dot_data.getvalue())\n return Image(graph.create_png())"},"type":"request","seq":21} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#DT1 Graph\nnames = ['pclass_cat','sex_cat','Age','Fare','embarked_cat','TravelAlone','TravelTotal']\nvisualize_tree(tree,names)"},"type":"request","seq":22} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"print(tree.feature_importances_)"},"type":"request","seq":23} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"high_importance = ['sex_cat','Age','Fare']\nX_train2 = X_train[high_importance]\nX_test2 = X_test[high_importance]"},"type":"request","seq":24} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#DT2 - Top 3 features only\n#Initialize + fit model\ntree2 = DecisionTreeClassifier(criterion = 'gini', min_samples_split = 2, random_state=5).fit(X_train2, y_train)\n\n#Predictions \ny_pred2 = tree2.predict(X_test2)\n\n#Accuracy Score\ntree_imp_accuracy = accuracy_score(y_test, y_pred2)\nprint('Decision Tree Accuracy with high importance attributes: {0:.2f}'.format(tree_imp_accuracy))"},"type":"request","seq":25} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#DT2 Graph\nvisualize_tree(tree2,high_importance)"},"type":"request","seq":26} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#RF1 - All attributes\n#Initalize + fit model\nclf = RandomForestClassifier(n_jobs=2, random_state=0).fit(X_train, y_train)\n\n#Predictions\ny_pred = clf.predict(X_test)\n\n#Accuracy Score\nRF_all_accuracy = accuracy_score(y_test,y_pred)\nprint('Random Forest Accuracy with all attributes: {0:.2f}'.format(RF_all_accuracy))"},"type":"request","seq":27} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"print(clf.feature_importances_)"},"type":"request","seq":28} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#RF2 - Top 3 features only\n#Initialize + fit model\nclf2 = RandomForestClassifier(n_jobs=2, random_state=0).fit(X_train2, y_train)\n\n#Predictions\ny_pred2 = clf2.predict(X_test2)\n\n#Accuracy Score\nRF_imp_accuracy = accuracy_score(y_test,y_pred2)\nprint('Random Forest Accuracy with high importance attributes: {0:.2f}'.format(RF_imp_accuracy))"},"type":"request","seq":29} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"def create_model(lyrs=[8], act='linear', opt='Adam', dr=0.0):\n # set random seed for reproducibility\n seed(42)\n\n model = Sequential()\n # create first hidden layer\n model.add(Dense(lyrs[0], input_dim=X_train.shape[1], activation=act))\n # create additional hidden layers\n for i in range(1,len(lyrs)):\n model.add(Dense(lyrs[i], activation=act))\n # add dropout, default is none\n model.add(Dropout(dr))\n # create output layer\n model.add(Dense(1, activation='sigmoid')) # output layer\n model.compile(loss='binary_crossentropy', optimizer=opt, metrics=['accuracy'])\n return model"},"type":"request","seq":30} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Initialize and create model\nmodel = create_model()\nprint(model.summary())"},"type":"request","seq":31} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Train neural\nnn = model.fit(X_train, y_train, epochs=100, validation_split = 0.2, batch_size=32, verbose=0)\nnn_accuracy = np.mean(nn.history['val_accuracy'])"},"type":"request","seq":32} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Summarize history of accuracy\nplt.plot(nn.history['accuracy'])\nplt.plot(nn.history['val_accuracy'])\nplt.title('model accuracy')\nplt.ylabel('accuracy')\nplt.xlabel('epoch')\nplt.legend(['train', 'validation'], loc='upper left')\nplt.show()"},"type":"request","seq":33} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#All Accuracies\nprint('NB accuracy: {0:.2f}'.format(NB_all_accuracy))\n\nprint(\"Decision Tree:\")\nprint('All attributes: {0:.2f}'.format(tree_all_accuracy))\nprint('High importance attributes: {0:.2f}'.format(tree_imp_accuracy))\n\nprint(\"Random Forest:\")\nprint('All attributes: {0:.2f}'.format(RF_all_accuracy))\nprint('High importance attributes: {0:.2f}'.format(RF_imp_accuracy))\n\nprint(\"Neural Network: \")\nprint('All attributes: {0:.2f}'.format(nn_accuracy))"},"type":"request","seq":34} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"initialize","arguments":{"clientID":"vscode","clientName":"Visual Studio Code - Insiders","adapterID":"Python Kernel Debug Adapter","pathFormat":"path","linesStartAt1":true,"columnsStartAt1":true,"supportsVariableType":true,"supportsVariablePaging":true,"supportsRunInTerminalRequest":true,"locale":"en","supportsProgressReporting":true,"supportsInvalidatedEvent":true,"supportsMemoryReferences":true},"type":"request","seq":35} Silly 2021-09-17 18:01:34: [Debug] response: {} Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 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[Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:34: [Debug] response: {} Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:34: [Debug] response: {} Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6537","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.570736Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.505000Z","msg_id":"70fe1dec-f90c-485e-bc43-506392c63f2c","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":1,"type":"event","event":"output","body":{"category":"telemetry","output":"ptvsd","data":{"packageVersion":"1.4.1"}}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6537","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.570736Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.505000Z","msg_id":"70fe1dec-f90c-485e-bc43-506392c63f2c","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":1,"type":"event","event":"output","body":{"category":"telemetry","output":"ptvsd","data":{"packageVersion":"1.4.1"}}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6538","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.571222Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.505000Z","msg_id":"70fe1dec-f90c-485e-bc43-506392c63f2c","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":2,"type":"event","event":"output","body":{"category":"telemetry","output":"debugpy","data":{"packageVersion":"1.4.1"}}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6538","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.571222Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.505000Z","msg_id":"70fe1dec-f90c-485e-bc43-506392c63f2c","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":2,"type":"event","event":"output","body":{"category":"telemetry","output":"debugpy","data":{"packageVersion":"1.4.1"}}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {"seq":3,"type":"response","request_seq":35,"success":true,"command":"initialize","body":{"supportsCompletionsRequest":true,"supportsConditionalBreakpoints":true,"supportsConfigurationDoneRequest":true,"supportsDebuggerProperties":true,"supportsDelayedStackTraceLoading":true,"supportsEvaluateForHovers":true,"supportsExceptionInfoRequest":true,"supportsExceptionOptions":true,"supportsFunctionBreakpoints":true,"supportsHitConditionalBreakpoints":true,"supportsLogPoints":true,"supportsModulesRequest":true,"supportsSetExpression":true,"supportsSetVariable":true,"supportsValueFormattingOptions":true,"supportsTerminateDebuggee":true,"supportsGotoTargetsRequest":true,"supportsClipboardContext":true,"exceptionBreakpointFilters":[{"filter":"raised","label":"Raised Exceptions","default":false},{"filter":"uncaught","label":"Uncaught Exceptions","default":true}],"supportsStepInTargetsRequest":true}} Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Error 2021-09-17 18:01:34: Canceled: Canceled at Object.f [as canceled] (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:8:1157) at s.handleErrorResponse (vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33391) at vscode-file://vscode-app/Applications/Visual%20Studio%20Code%20-%20Insiders.app/Contents/Resources/app/out/vs/workbench/workbench.desktop.main.js:1006:33280 Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"debugInfo","type":"request","seq":37} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {"type":"response","request_seq":37,"success":true,"command":"debugInfo","body":{"isStarted":true,"hashMethod":"Murmur2","hashSeed":3339675911,"tmpFilePrefix":"/var/folders/tx/p0ycbfpj37786p760wwdg6y80000gn/T/ipykernel_85836/","tmpFileSuffix":".py","breakpoints":[],"stoppedThreads":[]}} Silly 2021-09-17 18:01:34: [Debug] to kernel: {"command":"attach","arguments":{"type":"Python Kernel Debug Adapter","name":"Titanic.ipynb","request":"attach","internalConsoleOptions":"neverOpen","justMyCode":true,"__mode":0,"__cellIndex":43,"__sessionId":"19e77184-0d8d-4c57-ab88-c873331708fc"},"type":"request","seq":36} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6545","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.810709Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":4,"type":"event","event":"debugpyWaitingForServer","body":{"host":"127.0.0.1","port":62016}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6546","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.814312Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":5,"type":"event","event":"initialized"},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Info 2021-09-17 18:01:34: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:34: [Debug] response: {"seq":7,"type":"response","request_seq":36,"success":true,"command":"attach"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6549","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.817545Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":8,"type":"event","event":"process","body":{"name":"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel_launcher.py","systemProcessId":85836,"isLocalProcess":true,"startMethod":"attach"}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6550","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.817965Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":9,"type":"event","event":"thread","body":{"reason":"started","threadId":1}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6551","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.818384Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":10,"type":"event","event":"thread","body":{"reason":"started","threadId":2}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6552","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.818756Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":11,"type":"event","event":"thread","body":{"reason":"started","threadId":3}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6553","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.819109Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":12,"type":"event","event":"thread","body":{"reason":"started","threadId":4}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6554","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.819379Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":13,"type":"event","event":"thread","body":{"reason":"started","threadId":5}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6555","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.819734Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":14,"type":"event","event":"thread","body":{"reason":"started","threadId":6}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6556","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:34.820073Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:34.808000Z","msg_id":"ce3ded80-daae-4769-939b-24dfdec9b3eb","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":15,"type":"event","event":"thread","body":{"reason":"started","threadId":7}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:34: [Debug] event: 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Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":124} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":69,"type":"response","request_seq":87,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":70,"type":"response","request_seq":88,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":71,"type":"response","request_seq":89,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":72,"type":"response","request_seq":90,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":73,"type":"response","request_seq":91,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":74,"type":"response","request_seq":92,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":75,"type":"response","request_seq":93,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":76,"type":"response","request_seq":94,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":77,"type":"response","request_seq":95,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":78,"type":"response","request_seq":96,"success":true,"command":"evaluate","body":{"result":"","variablesReference":0,"presentationHint":{}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] response: {"seq":79,"type":"response","request_seq":97,"success":true,"command":"scopes","body":{"scopes":[{"name":"Locals","variablesReference":418,"expensive":false,"presentationHint":"locals","source":{}},{"name":"Globals","variablesReference":419,"expensive":false,"source":{}}]}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":80,"type":"response","request_seq":98,"success":true,"command":"stackTrace","body":{"stackFrames":[{"id":417,"name":"","line":4,"column":1,"source":{"path":"vscode-notebook-cell:/Users/roblou/code/data-science/Titanic.ipynb#ch0000043","sourceReference":0,"name":"Titanic.ipynb, Cell 44"}}],"totalFrames":1}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":81,"type":"response","request_seq":99,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":82,"type":"response","request_seq":100,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":83,"type":"response","request_seq":101,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":84,"type":"response","request_seq":102,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":85,"type":"response","request_seq":103,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":86,"type":"response","request_seq":104,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":87,"type":"response","request_seq":105,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":88,"type":"response","request_seq":106,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":89,"type":"response","request_seq":107,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] response: {"seq":90,"type":"response","request_seq":108,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":91,"type":"response","request_seq":109,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":92,"type":"response","request_seq":110,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":93,"type":"response","request_seq":111,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":94,"type":"response","request_seq":112,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":95,"type":"response","request_seq":113,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":96,"type":"response","request_seq":114,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":97,"type":"response","request_seq":115,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":98,"type":"response","request_seq":116,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":99,"type":"response","request_seq":117,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":100,"type":"response","request_seq":118,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":101,"type":"response","request_seq":119,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":102,"type":"response","request_seq":120,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":103,"type":"response","request_seq":121,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":104,"type":"response","request_seq":122,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":105,"type":"response","request_seq":123,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":106,"type":"response","request_seq":124,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"stackTrace","arguments":{"threadId":1,"startFrame":1,"levels":19},"type":"request","seq":125} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":107,"type":"response","request_seq":125,"success":true,"command":"stackTrace","body":{"stackFrames":[],"totalFrames":1}} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":126} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":127} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":128} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":129} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":130} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":131} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":132} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":108,"type":"response","request_seq":126,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":109,"type":"response","request_seq":127,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"stepIn","arguments":{"threadId":1},"type":"request","seq":133} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":134} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":135} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":110,"type":"response","request_seq":128,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"variables","arguments":{"variablesReference":418},"type":"request","seq":136} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"variables","arguments":{"variablesReference":419},"type":"request","seq":137} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":138} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":139} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":140} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":141} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":142} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":143} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":144} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":145} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":146} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":147} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":148} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":149} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":150} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":151} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":152} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"stepIn","arguments":{"threadId":1},"type":"request","seq":153} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":154} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":155} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":111,"type":"response","request_seq":129,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: 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{"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":157} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":158} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":159} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":160} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":161} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":113,"type":"response","request_seq":131,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":162} Silly 2021-09-17 18:01:36: [Debug] to 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status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":166} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":167} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":168} Silly 2021-09-17 18:01:36: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6862","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:36.844635Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:36.773000Z","msg_id":"8d8ca8dc-9eb9-4e5c-960d-097f143299bc","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":117,"type":"event","event":"continued","body":{"threadId":1,"allThreadsContinued":true}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":118,"type":"response","request_seq":135,"success":false,"command":"evaluate","message":"Thread id: pid_85836_id_140587836234960 is not current thread id."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: KernelProcess output: Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [IPKernelApp] ERROR | Exception in control handler:\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "[IPKernelApp] ERROR | Exception in control handler:\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: Traceback (most recent call last):\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "Traceback (most recent call last):\n"}}Content-Length: 253 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n", "pid": 85835}}Content-Length: 228 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: await result\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " await result\n"}} Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:36: KernelProcess output: Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n"}}Content-Length: 147 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply_content = await reply_content\n", "pid": 85835}}Content-Length: 122 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply_content = await reply_content\n"}}Content-Length: 252 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n", "pid": 85835}}Content-Length: 227 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n"}}Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: return await self.debugger.process_request(msg)\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " return await self.debugger.process_request(msg)\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply = await handler(message)\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply = await handler(message)\n"}}Content-Length: 245 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 449, in variables\n", "pid": 85835}}Content-Length: 220 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 449, in variables\n"}}Content-Length: 213 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference'])\n", "pid": 85835}}Content-Length: 188 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference'])\n"}}Content-Length: 257 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 67, in get_children_variables\n", "pid": 85835}}Content-Length: 232 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 67, in get_children_variables\n"}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:36: StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:36: KernelProcess output: Content-Length: 174 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: variables = self.suspended_frame_manager.get_variable(var_ref)\n", "pid": 85835}}Content-Length: 149 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " variables = self.suspended_frame_manager.get_variable(var_ref)\n"}}Content-Length: 293 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py\", line 491, in get_variable\n", "pid": 85835}}Content-Length: 268 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py\", line 491, in get_variable\n"}}Content-Length: 128 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: raise KeyError()\n", "pid": 85835}}Content-Length: 103 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " raise KeyError()\n"}}Content-Length: 116 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: KeyError\n", "pid": 85835}}Content-Length: 91 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "KeyError\n"}}Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [IPKernelApp] ERROR | Exception in control handler:\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "[IPKernelApp] ERROR | Exception in control handler:\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: Traceback (most recent call last):\n", "pid": 85835}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: Traceback (most recent call last): Info 2021-09-17 18:01:36: KernelProcess output: Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "Traceback (most recent call last):\n"}}Content-Length: 253 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n", "pid": 85835}}Content-Length: 228 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: await result\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " await result\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n"}}Content-Length: 147 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply_content = await reply_content\n", "pid": 85835}}Content-Length: 122 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply_content = await reply_content\n"}}Content-Length: 252 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n", "pid": 85835}}Content-Length: 227 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n"}}Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: return await self.debugger.process_request(msg)\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " return await self.debugger.process_request(msg)\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply = await handler(message)\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply = await handler(message)\n"}}Content-Length: 245 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 449, in variables\n", "pid": 85835}}Content-Length: 220 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 449, in variables\n"}}Content-Length: 213 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference'])\n", "pid": 85835}}Content-Length: 188 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference'])\n"}}Content-Length: 257 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 67, in get_children_variables\n", "pid": 85835}}Content-Length: 232 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 67, in get_children_variables\n"}}Content-Length: 174 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: variables = self.suspended_frame_manager.get_variable(var_ref)\n", "pid": 85835}}Content-Length: 149 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " variables = self.suspended_frame_manager.get_variable(var_ref)\n"}}Content-Length: 293 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py\", line 491, in get_variable\n", "pid": 85835}}Content-Length: 268 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py\", line 491, in get_variable\n"}}Content-Length: 128 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: raise KeyError()\n", "pid": 85835}}Content-Length: 103 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " raise KeyError()\n"}}Content-Length: 116 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: KeyError\n", "pid": 85835}} Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process Traceback (most recent call last): Warn 2021-09-17 18:01:36: StdErr from Kernel Process Traceback (most recent call last): Info 2021-09-17 18:01:36: KernelProcess output: Content-Length: 91 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "KeyError\n"}} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Silly 2021-09-17 18:01:36: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6870","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:36.851962Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:36.784000Z","msg_id":"535d6aa7-e9d7-4bd9-9792-363d7d46ebf3","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":119,"type":"event","event":"stopped","body":{"reason":"step","threadId":1,"preserveFocusHint":false,"allThreadsStopped":true}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: await result Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process await result Warn 2021-09-17 18:01:36: StdErr from Kernel Process await result Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: reply_content = await reply_content Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process reply_content = await reply_content Warn 2021-09-17 18:01:36: StdErr from Kernel Process reply_content = await reply_content Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":169} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":120,"type":"response","request_seq":138,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"stackTrace","arguments":{"threadId":1,"startFrame":0,"levels":1},"type":"request","seq":170} Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:36: StdErr from Kernel Process return await self.debugger.process_request(msg) Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Silly 2021-09-17 18:01:36: [Debug] response: {"seq":121,"type":"response","request_seq":139,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: reply = await handler(message) Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process reply = await handler(message) Warn 2021-09-17 18:01:36: StdErr from Kernel Process reply = await handler(message) Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 449, in variables Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 449, in variables Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 449, in variables Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference']) Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference']) Warn 2021-09-17 18:01:36: StdErr from Kernel Process variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference']) Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 67, in get_children_variables Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 67, in get_children_variables Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 67, in get_children_variables Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: variables = self.suspended_frame_manager.get_variable(var_ref) Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process variables = self.suspended_frame_manager.get_variable(var_ref) Warn 2021-09-17 18:01:36: StdErr from Kernel Process variables = self.suspended_frame_manager.get_variable(var_ref) Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py", line 491, in get_variable Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py", line 491, in get_variable Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py", line 491, in get_variable Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: raise KeyError() Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process raise KeyError() Warn 2021-09-17 18:01:36: StdErr from Kernel Process raise KeyError() Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: KeyError Silly 2021-09-17 18:01:36: [Debug] response: {"seq":122,"type":"response","request_seq":140,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process KeyError Warn 2021-09-17 18:01:36: StdErr from Kernel Process KeyError Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:36: StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: Traceback (most recent call last): Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process Traceback (most recent call last): Warn 2021-09-17 18:01:36: StdErr from Kernel Process Traceback (most recent call last): Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: await result Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process await result Warn 2021-09-17 18:01:36: StdErr from Kernel Process await result Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: reply_content = await reply_content Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process reply_content = await reply_content Warn 2021-09-17 18:01:36: StdErr from Kernel Process reply_content = await reply_content Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":123,"type":"response","request_seq":141,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:36: StdErr from Kernel Process return await self.debugger.process_request(msg) Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: reply = await handler(message) Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process reply = await handler(message) Warn 2021-09-17 18:01:36: StdErr from Kernel Process reply = await handler(message) Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":171} Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 449, in variables Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 449, in variables Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 449, in variables Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference']) Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference']) Warn 2021-09-17 18:01:36: StdErr from Kernel Process variables = self.variable_explorer.get_children_variables(message['arguments']['variablesReference']) Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 67, in get_children_variables Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":124,"type":"response","request_seq":142,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 67, in get_children_variables Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 67, in get_children_variables Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: variables = self.suspended_frame_manager.get_variable(var_ref) Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process variables = self.suspended_frame_manager.get_variable(var_ref) Warn 2021-09-17 18:01:36: StdErr from Kernel Process variables = self.suspended_frame_manager.get_variable(var_ref) Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py", line 491, in get_variable Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py", line 491, in get_variable Warn 2021-09-17 18:01:36: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/debugpy/_vendored/pydevd/_pydevd_bundle/pydevd_suspended_frames.py", line 491, in get_variable Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: raise KeyError() Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process raise KeyError() Warn 2021-09-17 18:01:36: StdErr from Kernel Process raise KeyError() Info 2021-09-17 18:01:36: Python Daemon (pid: 85835): write to stderr: KeyError Warn 2021-09-17 18:01:36: Kernel 85835 as possibly died, StdErr from Kernel Process KeyError Warn 2021-09-17 18:01:36: StdErr from Kernel Process KeyError Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":125,"type":"response","request_seq":143,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":126,"type":"response","request_seq":144,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":172} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":127,"type":"response","request_seq":145,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":128,"type":"response","request_seq":146,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":173} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":129,"type":"response","request_seq":147,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":174} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":130,"type":"response","request_seq":148,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":131,"type":"response","request_seq":149,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":132,"type":"response","request_seq":150,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":133,"type":"response","request_seq":151,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":417,"context":"repl","format":{"rawString":true}},"type":"request","seq":175} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":134,"type":"response","request_seq":152,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":135,"type":"response","request_seq":153,"success":true,"command":"stepIn"} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":136,"type":"response","request_seq":154,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":137,"type":"response","request_seq":155,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"stepIn","arguments":{"threadId":1},"type":"request","seq":176} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6925","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:36.938718Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:36.801000Z","msg_id":"8288b227-9e82-467d-9e83-686ad08c3dbd","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":138,"type":"event","event":"continued","body":{"threadId":1,"allThreadsContinued":true}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:36: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_6926","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:36.939360Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:36.801000Z","msg_id":"8288b227-9e82-467d-9e83-686ad08c3dbd","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":139,"type":"event","event":"stopped","body":{"reason":"step","threadId":1,"preserveFocusHint":false,"allThreadsStopped":true}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":140,"type":"response","request_seq":156,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Silly 2021-09-17 18:01:36: [Debug] response: {"seq":141,"type":"response","request_seq":157,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Silly 2021-09-17 18:01:36: [Debug] to kernel: {"command":"stackTrace","arguments":{"threadId":1,"startFrame":0,"levels":1},"type":"request","seq":177} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] response: {"seq":142,"type":"response","request_seq":158,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":143,"type":"response","request_seq":159,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":144,"type":"response","request_seq":160,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":145,"type":"response","request_seq":161,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":146,"type":"response","request_seq":162,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":147,"type":"response","request_seq":163,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":148,"type":"response","request_seq":164,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":149,"type":"response","request_seq":165,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":150,"type":"response","request_seq":166,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":151,"type":"response","request_seq":167,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:36: [Debug] response: {"seq":152,"type":"response","request_seq":168,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:36: [Debug] response: {"seq":153,"type":"response","request_seq":169,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:36: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: {"seq":154,"type":"response","request_seq":170,"success":true,"command":"stackTrace","body":{"stackFrames":[{"id":420,"name":"","line":6,"column":1,"source":{"path":"vscode-notebook-cell:/Users/roblou/code/data-science/Titanic.ipynb#ch0000043","sourceReference":0,"name":"Titanic.ipynb, Cell 44"}}],"totalFrames":1}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: {"seq":155,"type":"response","request_seq":171,"success":false,"command":"evaluate","message":"Unable to find thread for evaluation."} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: 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application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "[IPKernelApp] ERROR | Exception in control handler:\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: Traceback (most recent call last):\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "Traceback (most recent call last):\n"}}Content-Length: 253 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n", "pid": 85835}}Content-Length: 228 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: await result\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " await result\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n"}}Content-Length: 147 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply_content = await reply_content\n", "pid": 85835}}Content-Length: 122 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply_content = await reply_content\n"}}Content-Length: 252 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n", "pid": 85835}}Content-Length: 227 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n"}}Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: return await self.debugger.process_request(msg)\n", "pid": 85835}} Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"stackTrace","arguments":{"threadId":1,"startFrame":0,"levels":1},"type":"request","seq":194} Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:37: StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:37: KernelProcess output: Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " return await self.debugger.process_request(msg)\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply = await handler(message)\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply = await handler(message)\n"}}Content-Length: 245 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 455, in variables\n", "pid": 85835}}Content-Length: 220 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 455, in variables\n"}}Content-Length: 192 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [var for var in reply['body']['variables'] if self.accept_variable(var['name'])]\n", "pid": 85835}}Content-Length: 167 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " [var for var in reply['body']['variables'] if self.accept_variable(var['name'])]\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: KeyError: 'body'\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "KeyError: 'body'\n"}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: Traceback (most recent call last): Info 2021-09-17 18:01:37: KernelProcess output: Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [IPKernelApp] ERROR | Exception in control handler:\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "[IPKernelApp] ERROR | Exception in control handler:\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: Traceback (most recent call last):\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "Traceback (most recent call last):\n"}}Content-Length: 253 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n", "pid": 85835}}Content-Length: 228 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: await result\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " await result\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n"}}Content-Length: 147 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply_content = await reply_content\n", "pid": 85835}}Content-Length: 122 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply_content = await reply_content\n"}}Content-Length: 252 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n", "pid": 85835}}Content-Length: 227 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n"}} Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process Traceback (most recent call last): Warn 2021-09-17 18:01:37: StdErr from Kernel Process Traceback (most recent call last): Info 2021-09-17 18:01:37: KernelProcess output: Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: return await self.debugger.process_request(msg)\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " return await self.debugger.process_request(msg)\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply = await handler(message)\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply = await handler(message)\n"}}Content-Length: 245 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 455, in variables\n", "pid": 85835}}Content-Length: 220 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 455, in variables\n"}}Content-Length: 192 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [var for var in reply['body']['variables'] if self.accept_variable(var['name'])]\n", "pid": 85835}}Content-Length: 167 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " [var for var in reply['body']['variables'] if self.accept_variable(var['name'])]\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: KeyError: 'body'\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "KeyError: 'body'\n"}} Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: await result Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process await result Warn 2021-09-17 18:01:37: StdErr from Kernel Process await result Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: reply_content = await reply_content Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process reply_content = await reply_content Warn 2021-09-17 18:01:37: StdErr from Kernel Process reply_content = await reply_content Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:37: StdErr from Kernel Process return await self.debugger.process_request(msg) Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: {"seq":181,"type":"response","request_seq":193,"success":true,"command":"stackTrace","body":{"stackFrames":[{"id":422,"name":"","line":8,"column":1,"source":{"path":"vscode-notebook-cell:/Users/roblou/code/data-science/Titanic.ipynb#ch0000043","sourceReference":0,"name":"Titanic.ipynb, Cell 44"}}],"totalFrames":1}} Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: reply = await handler(message) Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process reply = await handler(message) Warn 2021-09-17 18:01:37: StdErr from Kernel Process reply = await handler(message) Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Warn 2021-09-17 18:01:37: StdErr from Kernel Process [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: KeyError: 'body' Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process KeyError: 'body' Warn 2021-09-17 18:01:37: StdErr from Kernel Process KeyError: 'body' Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:37: StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: Traceback (most recent call last): Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: {"seq":182,"type":"response","request_seq":194,"success":true,"command":"stackTrace","body":{"stackFrames":[{"id":422,"name":"","line":8,"column":1,"source":{"path":"vscode-notebook-cell:/Users/roblou/code/data-science/Titanic.ipynb#ch0000043","sourceReference":0,"name":"Titanic.ipynb, Cell 44"}}],"totalFrames":1}} Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process Traceback (most recent call last): Warn 2021-09-17 18:01:37: StdErr from Kernel Process Traceback (most recent call last): Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: await result Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process await result Warn 2021-09-17 18:01:37: StdErr from Kernel Process await result Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: reply_content = await reply_content Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process reply_content = await reply_content Warn 2021-09-17 18:01:37: StdErr from Kernel Process reply_content = await reply_content Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:37: StdErr from Kernel Process return await self.debugger.process_request(msg) Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: reply = await handler(message) Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process reply = await handler(message) Warn 2021-09-17 18:01:37: StdErr from Kernel Process reply = await handler(message) Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Warn 2021-09-17 18:01:37: StdErr from Kernel Process [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"stackTrace","arguments":{"threadId":1,"startFrame":0,"levels":1},"type":"request","seq":195} Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: KeyError: 'body' Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process KeyError: 'body' Warn 2021-09-17 18:01:37: StdErr from Kernel Process KeyError: 'body' Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: {"seq":183,"type":"response","request_seq":195,"success":true,"command":"stackTrace","body":{"stackFrames":[{"id":422,"name":"","line":8,"column":1,"source":{"path":"vscode-notebook-cell:/Users/roblou/code/data-science/Titanic.ipynb#ch0000043","sourceReference":0,"name":"Titanic.ipynb, Cell 44"}}],"totalFrames":1}} Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"variables","arguments":{"variablesReference":423},"type":"request","seq":196} Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"variables","arguments":{"variablesReference":424},"type":"request","seq":197} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":198} Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"variables","arguments":{"variablesReference":425},"type":"request","seq":199} Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"variables","arguments":{"variablesReference":426},"type":"request","seq":200} Info 2021-09-17 18:01:37: KernelProcess output: Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [IPKernelApp] ERROR | Exception in control handler:\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "[IPKernelApp] ERROR | Exception in control handler:\n"}} Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:37: KernelProcess output: Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: Traceback (most recent call last):\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "Traceback (most recent call last):\n"}}Content-Length: 253 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n", "pid": 85835}}Content-Length: 228 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: await result\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " await result\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n"}}Content-Length: 147 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply_content = await reply_content\n", "pid": 85835}}Content-Length: 122 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply_content = await reply_content\n"}}Content-Length: 252 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n", "pid": 85835}}Content-Length: 227 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n"}} Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:37: StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:37: KernelProcess output: Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: return await self.debugger.process_request(msg)\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " return await self.debugger.process_request(msg)\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply = await handler(message)\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply = await handler(message)\n"}}Content-Length: 245 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 455, in variables\n", "pid": 85835}}Content-Length: 220 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 455, in variables\n"}}Content-Length: 192 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [var for var in reply['body']['variables'] if self.accept_variable(var['name'])]\n", "pid": 85835}}Content-Length: 167 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " [var for var in reply['body']['variables'] if self.accept_variable(var['name'])]\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: KeyError: 'body'\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "KeyError: 'body'\n"}} Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: Traceback (most recent call last): Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process Traceback (most recent call last): Warn 2021-09-17 18:01:37: StdErr from Kernel Process Traceback (most recent call last): Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: await result Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process await result Warn 2021-09-17 18:01:37: StdErr from Kernel Process await result Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: reply_content = await reply_content Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process reply_content = await reply_content Warn 2021-09-17 18:01:37: StdErr from Kernel Process reply_content = await reply_content Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:37: KernelProcess output: Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [IPKernelApp] ERROR | Exception in control handler:\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "[IPKernelApp] ERROR | Exception in control handler:\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: Traceback (most recent call last):\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "Traceback (most recent call last):\n"}}Content-Length: 253 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n", "pid": 85835}}Content-Length: 228 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 281, in process_control\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: await result\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " await result\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py\", line 856, in debug_request\n"}}Content-Length: 147 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply_content = await reply_content\n", "pid": 85835}}Content-Length: 122 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply_content = await reply_content\n"}}Content-Length: 252 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n", "pid": 85835}}Content-Length: 227 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py\", line 426, in do_debug_request\n"}}Content-Length: 159 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: return await self.debugger.process_request(msg)\n", "pid": 85835}}Content-Length: 134 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " return await self.debugger.process_request(msg)\n"}}Content-Length: 251 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n", "pid": 85835}}Content-Length: 226 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 590, in process_request\n"}}Content-Length: 142 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: reply = await handler(message)\n", "pid": 85835}}Content-Length: 117 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " reply = await handler(message)\n"}}Content-Length: 245 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 455, in variables\n", "pid": 85835}}Content-Length: 220 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " File \"/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py\", line 455, in variables\n"}}Content-Length: 192 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: [var for var in reply['body']['variables'] if self.accept_variable(var['name'])]\n", "pid": 85835}}Content-Length: 167 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": " [var for var in reply['body']['variables'] if self.accept_variable(var['name'])]\n"}}Content-Length: 124 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "log", "params": {"level": "INFO", "msg": "write to stderr: KeyError: 'body'\n", "pid": 85835}}Content-Length: 99 Content-Type: application/vscode-jsonrpc; charset=utf8 {"jsonrpc": "2.0", "method": "output", "params": {"source": "stderr", "out": "KeyError: 'body'\n"}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:37: StdErr from Kernel Process return await self.debugger.process_request(msg) Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: reply = await handler(message) Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process reply = await handler(message) Warn 2021-09-17 18:01:37: StdErr from Kernel Process reply = await handler(message) Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Warn 2021-09-17 18:01:37: StdErr from Kernel Process [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: KeyError: 'body' Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process KeyError: 'body' Warn 2021-09-17 18:01:37: StdErr from Kernel Process KeyError: 'body' Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Warn 2021-09-17 18:01:37: StdErr from Kernel Process [IPKernelApp] ERROR | Exception in control handler: Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: Traceback (most recent call last): Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process Traceback (most recent call last): Warn 2021-09-17 18:01:37: StdErr from Kernel Process Traceback (most recent call last): Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 281, in process_control Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: await result Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process await result Warn 2021-09-17 18:01:37: StdErr from Kernel Process await result Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"threads","type":"request","seq":201} Silly 2021-09-17 18:01:37: [Debug] response: {"seq":186,"type":"response","request_seq":198,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 100, \"type\": \"RandomForestClassifier\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/kernelbase.py", line 856, in debug_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: reply_content = await reply_content Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process reply_content = await reply_content Warn 2021-09-17 18:01:37: StdErr from Kernel Process reply_content = await reply_content Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/ipkernel.py", line 426, in do_debug_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process return await self.debugger.process_request(msg) Warn 2021-09-17 18:01:37: StdErr from Kernel Process return await self.debugger.process_request(msg) Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 590, in process_request Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: reply = await handler(message) Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process reply = await handler(message) Warn 2021-09-17 18:01:37: StdErr from Kernel Process reply = await handler(message) Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Warn 2021-09-17 18:01:37: StdErr from Kernel Process File "/Users/roblou/opt/anaconda3/envs/golden_scenario_env/lib/python3.7/site-packages/ipykernel/debugger.py", line 455, in variables Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":202} Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Warn 2021-09-17 18:01:37: StdErr from Kernel Process [var for var in reply['body']['variables'] if self.accept_variable(var['name'])] Info 2021-09-17 18:01:37: Python Daemon (pid: 85835): write to stderr: KeyError: 'body' Warn 2021-09-17 18:01:37: Kernel 85835 as possibly died, StdErr from Kernel Process KeyError: 'body' Warn 2021-09-17 18:01:37: StdErr from Kernel Process KeyError: 'body' Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"scopes","arguments":{"frameId":422},"type":"request","seq":203} Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":204} Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(clf2)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":205} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: {"seq":187,"type":"response","request_seq":199,"success":true,"command":"variables","body":{"variables":[{"name":"special variables","value":"","type":"","evaluateName":"special variables","variablesReference":427},{"name":"function variables","value":"","type":"","evaluateName":"function variables","variablesReference":428},{"name":"class variables","value":"","type":"","evaluateName":"class variables","variablesReference":429},{"name":"NB_all_accuracy","value":"0.7786259541984732","type":"float64","evaluateName":"NB_all_accuracy","variablesReference":0},{"name":"RF_all_accuracy","value":"0.7977099236641222","type":"float64","evaluateName":"RF_all_accuracy","variablesReference":0},{"name":"RF_imp_accuracy","value":"0.7595419847328244","type":"float64","evaluateName":"RF_imp_accuracy","variablesReference":0},{"name":"X","value":" pclass_cat sex_cat Age Fare embarked_cat TravelAlone \\\n0 0 0 -0.040027 3.442616 2 1 \n1 0 1 -2.210230 2.286623 2 0 \n2 0 0 -2.132722 2.286623 2 0 \n3 0 1 0.037481 2.286623 2 0 \n4 0 0 -0.350056 2.286623 2 0 \n... ... ... ... ... ... ... \n1304 2 0 -1.125128 -0.364099 0 0 \n1305 2 0 -0.117534 -0.364099 0 0 \n1306 2 1 -0.195041 -0.503693 0 1 \n1307 2 1 -0.195041 -0.503693 0 1 \n1308 2 1 -0.040027 -0.491125 2 1 \n\n TravelTotal \n0 -0.558346 \n1 1.336749 \n2 1.336749 \n3 1.336749 \n4 1.336749 \n... ... \n1304 0.073352 \n1305 0.073352 \n1306 -0.558346 \n1307 -0.558346 \n1308 -0.558346 \n\n[1309 rows x 7 columns]","type":"DataFrame","evaluateName":"X","variablesReference":18},{"name":"X_test","value":" pclass_cat sex_cat Age Fare embarked_cat TravelAlone \\\n642 2 1 -1.280143 -0.036578 2 0 \n893 2 1 -0.040027 -0.491705 2 1 \n361 1 0 -0.582577 -0.082787 2 0 \n946 2 1 -0.117534 0.448905 2 1 \n345 1 1 -0.505070 -0.392134 2 1 \n.. ... ... ... ... ... ... \n656 2 0 0.270002 -0.337032 2 0 \n876 2 1 -0.117534 -0.490739 2 1 \n386 1 1 -0.892606 0.777586 2 1 \n857 2 1 -0.195041 -0.508526 2 1 \n52 0 1 -0.117534 0.267163 2 1 \n\n TravelTotal \n642 3.231844 \n893 -0.558346 \n361 0.705051 \n946 -0.558346 \n345 -0.558346 \n.. ... \n656 1.336749 \n876 -0.558346 \n386 -0.558346 \n857 -0.558346 \n52 -0.558346 \n\n[262 rows x 7 columns]","type":"DataFrame","evaluateName":"X_test","variablesReference":19},{"name":"X_test2","value":" sex_cat Age Fare\n642 1 -1.280143 -0.036578\n893 1 -0.040027 -0.491705\n361 0 -0.582577 -0.082787\n946 1 -0.117534 0.448905\n345 1 -0.505070 -0.392134\n.. ... ... ...\n656 0 0.270002 -0.337032\n876 1 -0.117534 -0.490739\n386 1 -0.892606 0.777586\n857 1 -0.195041 -0.508526\n52 1 -0.117534 0.267163\n\n[262 rows x 3 columns]","type":"DataFrame","evaluateName":"X_test2","variablesReference":20},{"name":"X_train","value":" pclass_cat sex_cat Age Fare embarked_cat TravelAlone \\\n184 0 1 -0.117534 -0.107534 0 1 \n942 2 1 -0.117534 -0.503693 0 1 \n271 0 1 -0.427563 0.947148 2 0 \n990 2 1 -0.040027 -0.490159 2 1 \n954 2 1 -0.117534 -0.151036 2 0 \n... ... ... ... ... ... ... \n423 1 1 0.347510 -0.392134 2 1 \n1051 2 1 0.270002 -0.487839 2 1 \n847 2 1 -0.427563 -0.503693 0 1 \n1015 2 1 2.052669 -0.487839 2 1 \n363 1 1 -0.117534 -0.643479 2 1 \n\n TravelTotal \n184 -0.558346 \n942 -0.558346 \n271 0.073352 \n990 -0.558346 \n954 1.968447 \n... ... \n423 -0.558346 \n1051 -0.558346 \n847 -0.558346 \n1015 -0.558346 \n363 -0.558346 \n\n[1047 rows x 7 columns]","type":"DataFrame","evaluateName":"X_train","variablesReference":21},{"name":"X_train2","value":" sex_cat Age Fare\n184 1 -0.117534 -0.107534\n942 1 -0.117534 -0.503693\n271 1 -0.427563 0.947148\n990 1 -0.040027 -0.490159\n954 1 -0.117534 -0.151036\n... ... ... ...\n423 1 0.347510 -0.392134\n1051 1 0.270002 -0.487839\n847 1 -0.427563 -0.503693\n1015 1 2.052669 -0.487839\n363 1 -0.117534 -0.643479\n\n[1047 rows x 3 columns]","type":"DataFrame","evaluateName":"X_train2","variablesReference":22},{"name":"Y","value":"0 1\n1 1\n2 0\n3 0\n4 0\n ..\n1304 0\n1305 0\n1306 0\n1307 0\n1308 0\nName: Survived, Length: 1309, dtype: int64","type":"Series","evaluateName":"Y","variablesReference":23},{"name":"age_median","value":"28.0","type":"float","evaluateName":"age_median","variablesReference":0},{"name":"clf","value":"RandomForestClassifier(n_jobs=2, random_state=0)","type":"RandomForestClassifier","evaluateName":"clf","variablesReference":24},{"name":"clf2","value":"RandomForestClassifier(n_jobs=2, random_state=0)","type":"RandomForestClassifier","evaluateName":"clf2","variablesReference":25},{"name":"continuous","value":"['Age', 'Fare', 'TravelTotal']","type":"list","evaluateName":"continuous","variablesReference":26},{"name":"data","value":" pclass_cat sex_cat Age Fare embarked_cat TravelAlone \\\n0 0 0 -0.040027 3.442616 2 1 \n1 0 1 -2.210230 2.286623 2 0 \n2 0 0 -2.132722 2.286623 2 0 \n3 0 1 0.037481 2.286623 2 0 \n4 0 0 -0.350056 2.286623 2 0 \n... ... ... ... ... ... ... \n1304 2 0 -1.125128 -0.364099 0 0 \n1305 2 0 -0.117534 -0.364099 0 0 \n1306 2 1 -0.195041 -0.503693 0 1 \n1307 2 1 -0.195041 -0.503693 0 1 \n1308 2 1 -0.040027 -0.491125 2 1 \n\n TravelTotal Survived \n0 -0.558346 1 \n1 1.336749 1 \n2 1.336749 0 \n3 1.336749 0 \n4 1.336749 0 \n... ... ... \n1304 0.073352 0 \n1305 0.073352 0 \n1306 -0.558346 0 \n1307 -0.558346 0 \n1308 -0.558346 0 \n\n[1309 rows x 8 columns]","type":"DataFrame","evaluateName":"data","variablesReference":27},{"name":"dummy_fields","value":"['Pclass', 'Sex', 'Embarked']","type":"list","evaluateName":"dummy_fields","variablesReference":29},{"name":"embarked_cat","value":"array([2, 2, 2, ..., 0, 0, 2])","type":"ndarray","evaluateName":"embarked_cat","variablesReference":30},{"name":"fare_median","value":"14.45","type":"float","evaluateName":"fare_median","variablesReference":0},{"name":"gnb","value":"GaussianNB()","type":"GaussianNB","evaluateName":"gnb","variablesReference":32},{"name":"high_importance","value":"['sex_cat', 'Age', 'Fare']","type":"list","evaluateName":"high_importance","variablesReference":33},{"name":"le","value":"LabelEncoder()","type":"LabelEncoder","evaluateName":"le","variablesReference":34},{"name":"metrics","value":"","type":"module","evaluateName":"metrics","variablesReference":35},{"name":"model","value":"","type":"Sequential","evaluateName":"model","variablesReference":36},{"name":"names","value":"['pclass_cat', 'sex_cat', 'Age', 'Fare', 'embarked_cat', 'TravelAlone', 'TravelTotal']","type":"list","evaluateName":"names","variablesReference":37},{"name":"nn","value":"","type":"History","evaluateName":"nn","variablesReference":38},{"name":"nn_accuracy","value":"0.7864761900901794","type":"float64","evaluateName":"nn_accuracy","variablesReference":0},{"name":"np","value":"","type":"module","evaluateName":"np","variablesReference":39},{"name":"os","value":"","type":"module","evaluateName":"os","variablesReference":40},{"name":"pandas_profiling","value":"","type":"module","evaluateName":"pandas_profiling","variablesReference":41},{"name":"pclass_cat","value":"array([0, 0, 0, ..., 2, 2, 2])","type":"ndarray","evaluateName":"pclass_cat","variablesReference":42},{"name":"pd","value":"","type":"module","evaluateName":"pd","variablesReference":43},{"name":"plt","value":"","type":"module","evaluateName":"plt","variablesReference":44},{"name":"preprocessing","value":"","type":"module","evaluateName":"preprocessing","variablesReference":45},{"name":"pydotplus","value":"","type":"module","evaluateName":"pydotplus","variablesReference":46},{"name":"random","value":"","type":"module","evaluateName":"random","variablesReference":47},{"name":"scaler","value":"StandardScaler()","type":"StandardScaler","evaluateName":"scaler","variablesReference":48},{"name":"sex_cat","value":"array([0, 1, 0, ..., 1, 1, 1])","type":"ndarray","evaluateName":"sex_cat","variablesReference":49},{"name":"sys","value":"","type":"module","evaluateName":"sys","variablesReference":50},{"name":"titanic_df","value":" Pclass Sex Age Fare Embarked Survived TravelAlone \\\n0 1 female 29.0 211.34 S 1 1 \n1 1 male 1.0 151.55 S 1 0 \n2 1 female 2.0 151.55 S 0 0 \n3 1 male 30.0 151.55 S 0 0 \n4 1 female 25.0 151.55 S 0 0 \n... ... ... ... ... ... ... ... \n1304 3 female 15.0 14.45 C 0 0 \n1305 3 female 28.0 14.45 C 0 0 \n1306 3 male 27.0 7.23 C 0 1 \n1307 3 male 27.0 7.23 C 0 1 \n1308 3 male 29.0 7.88 S 0 1 \n\n TravelTotal pclass_cat sex_cat embarked_cat \n0 1 0 0 2 \n1 4 0 1 2 \n2 4 0 0 2 \n3 4 0 1 2 \n4 4 0 0 2 \n... ... ... ... ... \n1304 2 2 0 0 \n1305 2 2 0 0 \n1306 1 2 1 0 \n1307 1 2 1 0 \n1308 1 2 1 2 \n\n[1309 rows x 11 columns]","type":"DataFrame","evaluateName":"titanic_df","variablesReference":51},{"name":"tree","value":"DecisionTreeClassifier(criterion='entropy', 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Busy Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(age_median)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":206} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: {"seq":188,"type":"response","request_seq":200,"success":true,"command":"variables","body":{"variables":[{"name":"special variables","value":"","type":"","evaluateName":"special variables","variablesReference":430},{"name":"function variables","value":"","type":"","evaluateName":"function variables","variablesReference":431},{"name":"class variables","value":"","type":"","evaluateName":"class 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2])","type":"ndarray","evaluateName":"pclass_cat","variablesReference":42},{"name":"pd","value":"","type":"module","evaluateName":"pd","variablesReference":43},{"name":"plt","value":"","type":"module","evaluateName":"plt","variablesReference":44},{"name":"preprocessing","value":"","type":"module","evaluateName":"preprocessing","variablesReference":45},{"name":"pydotplus","value":"","type":"module","evaluateName":"pydotplus","variablesReference":46},{"name":"random","value":"","type":"module","evaluateName":"random","variablesReference":47},{"name":"scaler","value":"StandardScaler()","type":"StandardScaler","evaluateName":"scaler","variablesReference":48},{"name":"sex_cat","value":"array([0, 1, 0, ..., 1, 1, 1])","type":"ndarray","evaluateName":"sex_cat","variablesReference":49},{"name":"sys","value":"","type":"module","evaluateName":"sys","variablesReference":50},{"name":"titanic_df","value":" Pclass Sex Age Fare Embarked Survived TravelAlone \\\n0 1 female 29.0 211.34 S 1 1 \n1 1 male 1.0 151.55 S 1 0 \n2 1 female 2.0 151.55 S 0 0 \n3 1 male 30.0 151.55 S 0 0 \n4 1 female 25.0 151.55 S 0 0 \n... ... ... ... ... ... ... ... \n1304 3 female 15.0 14.45 C 0 0 \n1305 3 female 28.0 14.45 C 0 0 \n1306 3 male 27.0 7.23 C 0 1 \n1307 3 male 27.0 7.23 C 0 1 \n1308 3 male 29.0 7.88 S 0 1 \n\n TravelTotal pclass_cat sex_cat embarked_cat \n0 1 0 0 2 \n1 4 0 1 2 \n2 4 0 0 2 \n3 4 0 1 2 \n4 4 0 0 2 \n... ... ... ... ... \n1304 2 2 0 0 \n1305 2 2 0 0 \n1306 1 2 1 0 \n1307 1 2 1 0 \n1308 1 2 1 2 \n\n[1309 rows x 11 columns]","type":"DataFrame","evaluateName":"titanic_df","variablesReference":51},{"name":"tree","value":"DecisionTreeClassifier(criterion='entropy', random_state=5)","type":"DecisionTreeClassifier","evaluateName":"tree","variablesReference":52},{"name":"tree2","value":"DecisionTreeClassifier(random_state=5)","type":"DecisionTreeClassifier","evaluateName":"tree2","variablesReference":53},{"name":"tree_all_accuracy","value":"0.7633587786259542","type":"float64","evaluateName":"tree_all_accuracy","variablesReference":0},{"name":"tree_imp_accuracy","value":"0.7595419847328244","type":"float64","evaluateName":"tree_imp_accuracy","variablesReference":0},{"name":"var","value":"'TravelTotal'","type":"str","evaluateName":"var","variablesReference":0,"presentationHint":{"attributes":["rawString"]}},{"name":"y_pred","value":"array([0, 0, 1, 1, 0, 0, 1, 0, 0, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1, 0,\n 1, 0, 1, 0, 0, 0, 1, 0, 0, 0, 0, 0, 1, 1, 0, 1, 0, 1, 1, 0, 0, 0,\n 1, 1, 0, 0, 0, 1, 1, 0, 1, 0, 0, 0, 1, 1, 0, 1, 0, 0, 0, 0, 1, 1,\n 1, 1, 0, 0, 1, 0, 0, 0, 0, 0, 1, 0, 1, 1, 0, 1, 0, 0, 0, 1, 0, 1,\n 0, 1, 0, 1, 0, 1, 0, 0, 1, 0, 0, 1, 0, 1, 0, 0, 1, 0, 1, 0, 1, 1,\n 0, 1, 0, 0, 1, 0, 1, 0, 1, 1, 0, 1, 1, 1, 1, 1, 0, 0, 1, 0, 1, 0,\n 0, 0, 1, 1, 0, 1, 0, 0, 0, 0, 0, 0, 0, 0, 1, 1, 1, 0, 1, 0, 0, 1,\n 0, 1, 1, 0, 0, 1, 0, 0, 0, 1, 0, 0, 0, 0, 0, 0, 0, 1, 0, 0, 1, 0,\n 0, 0, 1, 0, 0, 1, 0, 1, 0, 0, 0, 1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0,\n 1, 0, 1, 0, 0, 0, 0, 1, 0, 1, 0, 1, 0, 1, 0, 1, 1, 0, 0, 1, 1, 0,\n 1, 1, 1, 0, 0, 0, 1, 0, 0, 1, 0, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0,\n 0, 1, 0, 0, 1, 0, 0, 0, 0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 0, 0])","type":"ndarray","evaluateName":"y_pred","variablesReference":54},{"name":"y_pred2","value":"array([0, 0, 1, 1, 0, 1, 1, 0, 0, 1, 0, 0, 0, 0, 1, 0, 0, 0, 1, 0, 1, 1,\n 1, 0, 1, 0, 0, 0, 1, 0, 0, 0, 0, 0, 1, 0, 0, 1, 0, 1, 1, 0, 1, 0,\n 0, 1, 0, 0, 0, 1, 1, 1, 1, 0, 0, 0, 1, 1, 0, 0, 0, 0, 0, 0, 0, 1,\n 0, 1, 0, 1, 1, 0, 0, 1, 0, 1, 1, 0, 1, 1, 0, 1, 0, 0, 0, 1, 0, 1,\n 0, 1, 0, 1, 0, 1, 0, 0, 1, 1, 0, 0, 0, 0, 0, 0, 1, 0, 1, 0, 1, 0,\n 0, 1, 0, 0, 0, 0, 1, 0, 1, 1, 0, 1, 1, 1, 1, 1, 0, 0, 1, 0, 0, 0,\n 0, 0, 1, 1, 0, 1, 0, 0, 0, 0, 0, 1, 0, 0, 1, 1, 1, 0, 0, 0, 0, 1,\n 0, 1, 1, 0, 0, 1, 1, 0, 0, 1, 0, 0, 0, 0, 0, 0, 1, 1, 0, 0, 0, 0,\n 0, 0, 1, 0, 0, 1, 0, 1, 0, 1, 0, 1, 1, 0, 1, 1, 0, 0, 0, 0, 1, 0,\n 1, 0, 1, 0, 0, 0, 1, 1, 0, 1, 0, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0,\n 1, 0, 0, 0, 0, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 0, 1, 0, 0, 1, 0, 0,\n 1, 0, 0, 0, 1, 0, 0, 0, 0, 0, 1, 0, 1, 0, 1, 1, 0, 0, 0, 0])","type":"ndarray","evaluateName":"y_pred2","variablesReference":55},{"name":"y_test","value":"642 0\n893 0\n361 1\n946 0\n345 0\n ..\n656 1\n876 0\n386 0\n857 1\n52 0\nName: Survived, Length: 262, dtype: int64","type":"Series","evaluateName":"y_test","variablesReference":56},{"name":"y_train","value":"184 0\n942 0\n271 1\n990 0\n954 0\n ..\n423 0\n1051 0\n847 0\n1015 0\n363 0\nName: Survived, Length: 1047, dtype: int64","type":"Series","evaluateName":"y_train","variablesReference":57}]}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # 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\"count\": 3, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(data)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":223} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:37: [Debug] response: {"seq":206,"type":"response","request_seq":218,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"(1309, 8)\", \"count\": 1309, \"type\": \"DataFrame\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # 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\"DataFrame\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:37: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(dummy_fields)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":229} Silly 2021-09-17 18:01:37: [Debug] response: {"seq":212,"type":"response","request_seq":224,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 3, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:37: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 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\"ndarray\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] response: {"seq":223,"type":"response","request_seq":235,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"(1309,)\", \"count\": 1309, \"type\": \"ndarray\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(fare_median)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":241} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(fare_median)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":242} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":224,"type":"response","request_seq":236,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":225,"type":"response","request_seq":237,"success":true,"command":"stackTrace","body":{"stackFrames":[],"totalFrames":1}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(gnb)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":243} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":226,"type":"response","request_seq":238,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(gnb)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":244} Silly 2021-09-17 18:01:38: [Debug] response: {"seq":227,"type":"response","request_seq":239,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] response: {"seq":228,"type":"response","request_seq":240,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(gnb)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":245} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":229,"type":"response","request_seq":241,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status 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{"seq":231,"type":"response","request_seq":243,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"GaussianNB\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(gnb)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":247} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":232,"type":"response","request_seq":244,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"GaussianNB\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(gnb)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":248} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":233,"type":"response","request_seq":245,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"GaussianNB\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(high_importance)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":249} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":234,"type":"response","request_seq":246,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"GaussianNB\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(high_importance)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":250} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(high_importance)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":251} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] response: {"seq":235,"type":"response","request_seq":247,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"GaussianNB\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(high_importance)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":252} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":236,"type":"response","request_seq":248,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"GaussianNB\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(high_importance)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":253} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(high_importance)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":254} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":237,"type":"response","request_seq":249,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 3, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(le)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":255} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":238,"type":"response","request_seq":250,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 3, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(le)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":256} Silly 2021-09-17 18:01:38: [Debug] response: {"seq":239,"type":"response","request_seq":251,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 3, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(le)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":257} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":240,"type":"response","request_seq":252,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 3, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(le)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":258} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":241,"type":"response","request_seq":253,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 3, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(le)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":259} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":242,"type":"response","request_seq":254,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 3, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(le)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":260} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":243,"type":"response","request_seq":255,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"LabelEncoder\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] response: {"seq":244,"type":"response","request_seq":256,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"LabelEncoder\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] response: {"seq":245,"type":"response","request_seq":257,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"LabelEncoder\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(model)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":261} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(model)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":262} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":246,"type":"response","request_seq":258,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"LabelEncoder\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(model)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":263} Info 2021-09-17 18:01:38: 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2021-09-17 18:01:38: [Debug] response: {"seq":248,"type":"response","request_seq":260,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"LabelEncoder\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(model)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":266} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] response: {"seq":249,"type":"response","request_seq":261,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"Sequential\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(names)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":267} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":250,"type":"response","request_seq":262,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"Sequential\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":251,"type":"response","request_seq":263,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"Sequential\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(names)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":268} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(names)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":269} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":252,"type":"response","request_seq":264,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"Sequential\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(names)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":270} Silly 2021-09-17 18:01:38: [Debug] response: {"seq":253,"type":"response","request_seq":265,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"Sequential\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":254,"type":"response","request_seq":266,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"Sequential\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(names)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":271} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(names)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":272} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":255,"type":"response","request_seq":267,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 7, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(NB_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":273} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":256,"type":"response","request_seq":268,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 7, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 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{"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(NB_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":275} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":258,"type":"response","request_seq":270,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 7, \"type\": \"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(NB_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":276} Info 2021-09-17 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\"list\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(NB_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":278} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":261,"type":"response","request_seq":273,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 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response: {"seq":263,"type":"response","request_seq":275,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(nn)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":280} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":264,"type":"response","request_seq":276,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(nn)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":281} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(nn)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":282} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":265,"type":"response","request_seq":277,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(nn)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":283} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":266,"type":"response","request_seq":278,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 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{"seq":269,"type":"response","request_seq":281,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"History\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(nn_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":287} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":270,"type":"response","request_seq":282,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"History\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(nn_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":288} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":271,"type":"response","request_seq":283,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"History\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 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{"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(nn_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":290} Silly 2021-09-17 18:01:38: [Debug] response: {"seq":273,"type":"response","request_seq":285,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(pclass_cat)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":291} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] response: {"seq":274,"type":"response","request_seq":286,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(pclass_cat)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":292} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":275,"type":"response","request_seq":287,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(pclass_cat)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":293} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":276,"type":"response","request_seq":288,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(pclass_cat)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":294} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":277,"type":"response","request_seq":289,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: 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2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":279,"type":"response","request_seq":291,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"(1309,)\", \"count\": 1309, \"type\": \"ndarray\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":297} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":280,"type":"response","request_seq":292,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"(1309,)\", \"count\": 1309, \"type\": \"ndarray\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":281,"type":"response","request_seq":293,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"(1309,)\", \"count\": 1309, \"type\": \"ndarray\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":298} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"stepIn","arguments":{"threadId":1},"type":"request","seq":299} Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":300} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":282,"type":"response","request_seq":294,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"(1309,)\", \"count\": 1309, \"type\": \"ndarray\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":301} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":283,"type":"response","request_seq":295,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"(1309,)\", \"count\": 1309, \"type\": \"ndarray\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # 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{"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_all_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":303} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":285,"type":"response","request_seq":297,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_imp_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":304} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":286,"type":"response","request_seq":298,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":287,"type":"response","request_seq":299,"success":true,"command":"stepIn"} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_imp_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":305} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:38: [Debug] response: {"seq":288,"type":"response","request_seq":300,"success":true,"command":"evaluate","body":{"result":"{\"shape\": \"\", \"count\": 0, \"type\": \"float64\"}","variablesReference":0,"type":"str","presentationHint":{"attributes":["rawString"]}}} Info 2021-09-17 18:01:38: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Busy Silly 2021-09-17 18:01:38: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_imp_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":306} Silly 2021-09-17 18:01:38: [Debug] event: {"header":{"msg_id":"4aaefb44-5692ff72fe39b0361264518a_85836_7362","msg_type":"debug_event","username":"roblou","session":"4aaefb44-5692ff72fe39b0361264518a","date":"2021-09-18T01:01:38.806365Z","version":"5.3"},"parent_header":{"date":"2021-09-18T01:01:38.716000Z","msg_id":"9dd92003-8cbb-48ed-9df8-7bbca762c7dd","msg_type":"debug_request","session":"c55c2936-ac28-4d2f-927f-b136d61e54a4","username":"","version":"5.2"},"metadata":{},"content":{"seq":289,"type":"event","event":"continued","body":{"threadId":1,"allThreadsContinued":true}},"idents":[{"type":"Buffer","data":[107,101,114,110,101,108,46,48,56,55,48,50,50,50,53,45,54,52,48,49,45,52,52,50,54,45,97,53,57,54,45,49,97,100,101,54,100,98,49,53,98,101,52,46,100,101,98,117,103,95,101,118,101,110,116]}],"buffers":[],"channel":"iopub"} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"stepIn","arguments":{"threadId":1},"type":"request","seq":307} Info 2021-09-17 18:01:39: Notebook Session status file:///Users/roblou/code/data-science/Titanic.ipynb # Idle Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"disconnect","arguments":{"restart":false},"type":"request","seq":308} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_imp_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":309} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"evaluate","arguments":{"expression":"__import__('vscodeGetVariableInfo')._VSCODE_getVariableInfo(RF_imp_accuracy)","frameId":422,"context":"repl","format":{"rawString":true}},"type":"request","seq":310} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Imports \nimport pandas as pd\nimport numpy as np\nimport pandas_profiling\nfrom sklearn.model_selection import train_test_split \nfrom sklearn import preprocessing\nfrom sklearn.naive_bayes import GaussianNB\nfrom sklearn.metrics import accuracy_score\nfrom sklearn.tree import DecisionTreeClassifier \nfrom sklearn.metrics import accuracy_score\nfrom sklearn.metrics import confusion_matrix\nfrom sklearn import metrics\nimport random\nimport matplotlib.pyplot as plt\nfrom IPython.display import Image \nfrom sklearn.tree import export_graphviz\nimport pydotplus\nfrom sklearn import preprocessing\nfrom io import StringIO\nfrom sklearn.ensemble import RandomForestClassifier\nfrom sklearn.preprocessing import StandardScaler\nfrom sklearn.model_selection import GridSearchCV\nfrom keras.wrappers.scikit_learn import KerasClassifier\nfrom keras.models import Sequential\nfrom keras.layers import Dense, Activation, Dropout\nfrom numpy.random import seed"},"type":"request","seq":1} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"titanic_df = pd.read_csv(\"titanic_data.csv\")\ntitanic_df.info()"},"type":"request","seq":2} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"titanic_df.describe()"},"type":"request","seq":3} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"# Search for overall trends in the dataset\npandas_profiling.ProfileReport(titanic_df)"},"type":"request","seq":4} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Age is skewed and has a significant number of missing values so best to replace missing values with median of data\nage_median = titanic_df['Age'].median(skipna=True)\ntitanic_df['Age'].fillna(age_median, inplace=True)"},"type":"request","seq":5} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Cabin has too many missing values and will be completely dropped from the dataframe\ntitanic_df.drop('Cabin', axis=1, inplace=True)"},"type":"request","seq":6} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Embarked only has 2 missing values and can be replaced with the most common which is S\ntitanic_df['Embarked'].fillna(\"S\", inplace=True)"},"type":"request","seq":7} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Fare has one missing value and can be replaced with the median because it is highly skewed\nfare_median = titanic_df['Fare'].median(skipna=True)\ntitanic_df['Fare'].fillna(fare_median,inplace=True)"},"type":"request","seq":8} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#SibSp - Number of siblings/spouses aboard\n#Parch - Number of parents/children aboard\n#These two variables overlap for every passenger that has this data so I am creating a variable that just detects \n#whether someone is traveling alone or not to account for multicollinearity\ntitanic_df['TravelGroup']=titanic_df[\"SibSp\"]+titanic_df[\"Parch\"]\ntitanic_df['TravelAlone']=np.where(titanic_df['TravelGroup']>0, 0, 1) \ntitanic_df.head()"},"type":"request","seq":9} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Does total size of group change the probability of surviving? \n#Initial thought: People who want to check up on the safety of more people take more time looking for them \n#and die as a result of not trying to escape\ntitanic_df['TravelTotal'] = titanic_df['TravelGroup'] + 1"},"type":"request","seq":10} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Drop unnecessary variables - thanks for the help Jeffrey!\ntitanic_df.drop('SibSp', axis=1, inplace=True)\ntitanic_df.drop('Parch', axis=1, inplace=True)\ntitanic_df.drop('TravelGroup', axis=1, inplace=True)\ntitanic_df.drop('Ticket', axis=1, inplace=True)\ntitanic_df.drop('Name', axis=1, inplace=True)"},"type":"request","seq":11} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Hot Encode PClass, Sex, Embarked\nle = preprocessing.LabelEncoder()\npclass_cat = le.fit_transform(titanic_df.Pclass)\nsex_cat = le.fit_transform(titanic_df.Sex)\nembarked_cat = le.fit_transform(titanic_df.Embarked)\n\n#Initialize the encoded categorical columns\ntitanic_df['pclass_cat'] = pclass_cat\ntitanic_df['sex_cat'] = sex_cat\ntitanic_df['embarked_cat'] = embarked_cat\n\n#Drop old categorical fields from dataframe and reindex\ndummy_fields = ['Pclass','Sex','Embarked']\ndata = titanic_df.drop(dummy_fields, axis = 1)\ndata = titanic_df.reindex(['pclass_cat','sex_cat','Age','Fare','embarked_cat','TravelAlone', 'TravelTotal','Survived'],axis=1)"},"type":"request","seq":12} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"data"},"type":"request","seq":13} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Normalize the continuous variables\ncontinuous = ['Age', 'Fare', 'TravelTotal']\n\nscaler = StandardScaler()\n\nfor var in continuous:\n data[var] = data[var].astype('float64')\n data[var] = scaler.fit_transform(data[var].values.reshape(-1, 1))"},"type":"request","seq":14} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"data"},"type":"request","seq":15} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Make sure data is clean/check for null\ndata[data.isnull().any(axis=1)].head()"},"type":"request","seq":16} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Split inputs and output\nX = data.iloc[:, 0:7] \nY = data.iloc[:, 7]"},"type":"request","seq":17} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Test/Train Split\nX_train, X_test, y_train, y_test = train_test_split(X, Y, test_size=0.2)"},"type":"request","seq":18} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#NB - All columns\n#Initialize + fit model\ngnb = GaussianNB().fit(X_train, y_train)\n\n#Predictions\ny_pred = gnb.predict(X_test)\n\n#Accuracy Score\nNB_all_accuracy = accuracy_score(y_test,y_pred)\nprint('Naive Bayes Model Accuracy with all attributes: {0:.2f}'.format(NB_all_accuracy))"},"type":"request","seq":19} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#DT1 - All attributes\n#Initalize + fit model\ntree = DecisionTreeClassifier(criterion = 'entropy', min_samples_split = 2, random_state=5).fit(X_train, y_train)\n\n#Predictions\ny_pred = tree.predict(X_test)\n\n#Accuracy Score\ntree_all_accuracy = accuracy_score(y_test, y_pred)\nprint('Decision Tree Accuracy with all attributes: {0:.2f}'.format(tree_all_accuracy))"},"type":"request","seq":20} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Tree visualization function\ndef visualize_tree(tree_data, names):\n dot_data = StringIO()\n export_graphviz(tree_data,out_file=dot_data,\n feature_names=names,\n filled=True,rounded=True, \n special_characters=True)\n graph = pydotplus.graph_from_dot_data(dot_data.getvalue())\n return Image(graph.create_png())"},"type":"request","seq":21} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#DT1 Graph\nnames = ['pclass_cat','sex_cat','Age','Fare','embarked_cat','TravelAlone','TravelTotal']\nvisualize_tree(tree,names)"},"type":"request","seq":22} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"print(tree.feature_importances_)"},"type":"request","seq":23} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"high_importance = ['sex_cat','Age','Fare']\nX_train2 = X_train[high_importance]\nX_test2 = X_test[high_importance]"},"type":"request","seq":24} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#DT2 - Top 3 features only\n#Initialize + fit model\ntree2 = DecisionTreeClassifier(criterion = 'gini', min_samples_split = 2, random_state=5).fit(X_train2, y_train)\n\n#Predictions \ny_pred2 = tree2.predict(X_test2)\n\n#Accuracy Score\ntree_imp_accuracy = accuracy_score(y_test, y_pred2)\nprint('Decision Tree Accuracy with high importance attributes: {0:.2f}'.format(tree_imp_accuracy))"},"type":"request","seq":25} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#DT2 Graph\nvisualize_tree(tree2,high_importance)"},"type":"request","seq":26} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#RF1 - All attributes\n#Initalize + fit model\nclf = RandomForestClassifier(n_jobs=2, random_state=0).fit(X_train, y_train)\n\n#Predictions\ny_pred = clf.predict(X_test)\n\n#Accuracy Score\nRF_all_accuracy = accuracy_score(y_test,y_pred)\nprint('Random Forest Accuracy with all attributes: {0:.2f}'.format(RF_all_accuracy))"},"type":"request","seq":27} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"print(clf.feature_importances_)"},"type":"request","seq":28} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#RF2 - Top 3 features only\n#Initialize + fit model\nclf2 = RandomForestClassifier(n_jobs=2, random_state=0).fit(X_train2, y_train)\n\n#Predictions\ny_pred2 = clf2.predict(X_test2)\n\n#Accuracy Score\nRF_imp_accuracy = accuracy_score(y_test,y_pred2)\nprint('Random Forest Accuracy with high importance attributes: {0:.2f}'.format(RF_imp_accuracy))"},"type":"request","seq":29} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"def create_model(lyrs=[8], act='linear', opt='Adam', dr=0.0):\n # set random seed for reproducibility\n seed(42)\n\n model = Sequential()\n # create first hidden layer\n model.add(Dense(lyrs[0], input_dim=X_train.shape[1], activation=act))\n # create additional hidden layers\n for i in range(1,len(lyrs)):\n model.add(Dense(lyrs[i], activation=act))\n # add dropout, default is none\n model.add(Dropout(dr))\n # create output layer\n model.add(Dense(1, activation='sigmoid')) # output layer\n model.compile(loss='binary_crossentropy', optimizer=opt, metrics=['accuracy'])\n return model"},"type":"request","seq":30} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Initialize and create model\nmodel = create_model()\nprint(model.summary())"},"type":"request","seq":31} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Train neural\nnn = model.fit(X_train, y_train, epochs=100, validation_split = 0.2, batch_size=32, verbose=0)\nnn_accuracy = np.mean(nn.history['val_accuracy'])"},"type":"request","seq":32} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#Summarize history of accuracy\nplt.plot(nn.history['accuracy'])\nplt.plot(nn.history['val_accuracy'])\nplt.title('model accuracy')\nplt.ylabel('accuracy')\nplt.xlabel('epoch')\nplt.legend(['train', 'validation'], loc='upper left')\nplt.show()"},"type":"request","seq":33} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"dumpCell","arguments":{"code":"#All Accuracies\nprint('NB accuracy: {0:.2f}'.format(NB_all_accuracy))\n\nprint(\"Decision Tree:\")\nprint('All attributes: {0:.2f}'.format(tree_all_accuracy))\nprint('High importance attributes: {0:.2f}'.format(tree_imp_accuracy))\n\nprint(\"Random Forest:\")\nprint('All attributes: {0:.2f}'.format(RF_all_accuracy))\nprint('High importance attributes: {0:.2f}'.format(RF_imp_accuracy))\n\nprint(\"Neural Network: \")\nprint('All attributes: {0:.2f}'.format(nn_accuracy))"},"type":"request","seq":34} Silly 2021-09-17 18:01:39: [Debug] to kernel: {"command":"initialize","arguments":{"clientID":"vscode","clientName":"Visual Studio Code - Insiders","adapterID":"Python Kernel Debug Adapter","pathFormat":"path","linesStartAt1":true,"columnsStartAt1":true,"supportsVariableType":true,"supportsVariablePaging":true,"supportsRunInTerminalRequest":true,"locale":"en","supportsProgressReporting":true,"supportsInvalidatedEvent":true,"supportsMemoryReferences":true},"type":"request","seq":35} Silly 2021-09-17 18:01:39: No paused thread, can't do RBL Silly 2021-09-17 18:01:39: No paused thread, can't do RBL Silly 2021-09-17 18:01:39: No paused thread, can't do RBL Silly 2021-09-17 18:01:42: No paused thread, can't do RBL Silly 2021-09-17 18:01:43: No paused thread, can't do RBL