This repository contains the materials for D-Lab’s Python Intermediate workshop series.
Basic experience with Python (e.g. through Python Fundamentals) is expected.
Check D-Lab's Learning Pathways to figure out which of our workshops to take!
This three-part interactive workshop series is a follow-up to D-Lab's Python Fundamentals. It is intended for people who want to learn about core structures of Python that underpin data analysis. We cover loops and conditionals, creating your own functions, analysis and visualization in Pandas, and the workflow of a data science project.
After completing Python Intermediate, you will be able to:
- Implement loops to do repeated computations.
- Understand how to handle conditions.
- Write your own functions.
- Perform basic operations in Pandas, including visualization.
- Understand the basic workflow for a data science project.
This workshop does not cover the following:
- Navigating Jupyter Notebooks, assigning variables, data types, and error messages. These are covered in Python Fundamentals.
- Advanced DataFrame manipulation. This is covered in Python Data Wrangling.
- Advanced data visualization. This is covered in Python Data Visualization.
Python Intermediate has 3 parts. Each of the parts takes 2 hours, and is delivered in a lecture-style coding walkthrough interrupted by challenge problems and a break. Instructors and TAs are dedicated to engaging you in the classroom and answering questions in plain language.
- Part 1: Functions and Conditionals
- Part 2: Data Analysis and Visualization
- Part 3: Project
Before attending the workshop, you should install Python and Jupyter to your computer. If you need help, please submit a consulting request with D-Lab prior to the start of the workshop.
Anaconda is software that allows you to run Python and Jupyter notebooks on your computer. Installing Anaconda is the easiest way to make sure you have all the necessary software to run the materials for this workshop. Complete the following steps:
-
Download and install Anaconda (Python 3.9 distribution). Click "Download" and then click 64-bit "Graphical Installer" for your current operating system.
-
Download the materials in this repository:
- Click the green "Code" button in the top right of the repository information.
- Click "Download Zip".
- Extract this file to a folder on your computer where you can easily access it (we recommend Desktop).
- Optional: if you're familiar with
git
, you can instead clone this repository by opening a terminal and enteringgit clone git@github.com:dlab-berkeley/Python-Intermediate-Pilot.git
.
Now that you have all the required software and materials, you need to run the code:
-
Open the Anaconda Navigator application. You should see the green snake logo appear on your screen. Note that this can take a few minutes to load up the first time.
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Click the "Launch" button under "Jupyter Lab" and navigate through your file system to the
Python-Intermediate
folder you downloaded above. -
Navigate to the "lessons" folder.
-
Open the
1_Control_Flow_and_Functions.ipynb
to begin. -
Press Shift + Enter (or Ctrl + Enter) to run a cell.
If you do not have Anaconda installed and the materials loaded on your workshop by the time it starts, we strongly recommend using the UC Berkeley Datahub to run the materials for these lessons. You can access the DataHub by clicking this button:
The DataHub downloads this repository, along with any necessary packages, and allows you to run the materials in a Jupyter notebook that is stored on UC Berkeley's servers. No installation is necessary from your end - you only need an internet browser and a CalNet ID to log in. By using the DataHub, you can save your work and come back to it at any time. When you want to return to your saved work, just go straight to DataHub, sign in, and you click on the Python-Intermediate
folder.
If you don't have a Berkeley CalNet ID, you can still run these lessons in Binder, which is another cloud-based option. Click this button:
Note: Using Binder, you unfortunately cannot save your work.
D-Lab works with Berkeley faculty, research staff, and students to advance data-intensive social science and humanities research. Our goal at D-Lab is to provide practical training, staff support, resources, and space to enable you to use R for your own research applications. Our services cater to all skill levels and no programming, statistical, or computer science backgrounds are necessary. We offer these services in the form of workshops, one-to-one consulting, and working groups that cover a variety of research topics, digital tools, and programming languages.
Visit the D-Lab homepage to learn more about us. You can view our calendar for upcoming events, learn about how to utilize our consulting and data services, and check out upcoming workshops.
After completing the workshop, you will be easily able to transition to other D-Lab workshops such as Python Data Wrangling or Python Data Visualization.
Here are other Python workshops offered by the D-Lab:
- Computational Text Analysis in Python
- Introduction to Machine Learning in Python
- Introduction to Artificial Neural Networks in Python
- Fairness and Bias in Machine Learning
- Tom van Nuenen
- Emily Grabowski
Previous iterations of this workshop were created by:
- Pratik Sachdeva
- Christopher Hench
- Rochelle Terman