A slightly modified version of carbontracker
to work with the 'Hex' multicomputer system at the School of Computing and Communications at Lancaster University for the UCREL, Cyber, and DSI groups.
This variant of carbontracker
includes all the usual parts, with the addition of a Prometheus metrics aware CPU and GPU component to allow users on Hex to monitor their own node's energy usage without needing root access for RAPL
or extra /sys
permissions
Everything below is a direct copy of the original carbontracker
README:
carbontracker is a tool for tracking and predicting the energy consumption and carbon footprint of training deep learning models as described in Anthony et al. (2020).
Kindly cite our work if you use carbontracker in a scientific publication:
@misc{anthony2020carbontracker,
title={Carbontracker: Tracking and Predicting the Carbon Footprint of Training Deep Learning Models},
author={Lasse F. Wolff Anthony and Benjamin Kanding and Raghavendra Selvan},
howpublished={ICML Workshop on Challenges in Deploying and monitoring Machine Learning Systems},
month={July},
note={arXiv:2007.03051},
year={2020}}
pip install carbontracker
epochs
: Total epochs of your training loop.
epochs_before_pred
(default=1): Epochs to monitor before outputting predicted consumption. Set to -1 for all epochs. Set to 0 for no prediction.monitor_epochs
(default=1): Total number of epochs to monitor. Outputs actual consumption when reached. Set to -1 for all epochs. Cannot be less thanepochs_before_pred
or equal to 0.update_interval
(default=10): Interval in seconds between power usage measurements are taken.interpretable
(default=True): If set to True then the CO2eq are also converted to interpretable numbers such as the equivalent distance travelled in a car, etc. Otherwise, no conversions are done.stop_and_confirm
(default=False): If set to True then the main thread (with your training loop) is paused afterepochs_before_pred
epochs to output the prediction and the user will need to confirm to continue training. Otherwise, prediction is output and training is continued instantly.ignore_errors
(default=False): If set to True then all errors will cause energy monitoring to be stopped and training will continue. Otherwise, training will be interrupted as with regular errors.components
(default="all"): Comma-separated string of which components to monitor. Options are: "all", "gpu", "cpu", or "gpu,cpu".devices_by_pid
(default=False): If True, only devices (under the chosen components) running processes associated with the main process are measured. If False, all available devices are measured (see Section 'Notes' for jobs running on SLURM or in containers). Note that this requires your devices to have active processes before instantiating theCarbonTracker
class.log_dir
(default=None): Path to the desired directory to write log files. If None, then no logging will be done.log_file_prefix
(default=""): Prefix to add to the log file name.verbose
(default=1): Sets the level of verbosity.decimal_precision
(default=6): Desired decimal precision of reported values.
from carbontracker.tracker import CarbonTracker
tracker = CarbonTracker(epochs=max_epochs)
# Training loop.
for epoch in range(max_epochs):
tracker.epoch_start()
# Your model training.
tracker.epoch_end()
# Optional: Add a stop in case of early termination before all monitor_epochs has
# been monitored to ensure that actual consumption is reported.
tracker.stop()
CarbonTracker:
Actual consumption for 1 epoch(s):
Time: 0:00:10
Energy: 0.000038 kWh
CO2eq: 0.003130 g
This is equivalent to:
0.000026 km travelled by car
CarbonTracker:
Predicted consumption for 1000 epoch(s):
Time: 2:52:22
Energy: 0.038168 kWh
CO2eq: 4.096665 g
This is equivalent to:
0.034025 km travelled by car
CarbonTracker: Finished monitoring.
CarbonTracker: The following components were found: CPU with device(s) cpu:0.
CarbonTracker: Average carbon intensity during training was 82.00 gCO2/kWh at detected location: Copenhagen, Capital Region, DK.
CarbonTracker:
Actual consumption for 1 epoch(s):
Time: 0:00:10
Energy: 0.000041 kWh
CO2eq: 0.003357 g
This is equivalent to:
0.000028 km travelled by car
CarbonTracker: Carbon intensity for the next 2:59:06 is predicted to be 107.49 gCO2/kWh at detected location: Copenhagen, Capital Region, DK.
CarbonTracker:
Predicted consumption for 1000 epoch(s):
Time: 2:59:06
Energy: 0.040940 kWh
CO2eq: 4.400445 g
This is equivalent to:
0.036549 km travelled by car
CarbonTracker: Finished monitoring.
carbontracker supports aggregating all log files in a specified directory to a single estimate of the carbon footprint.
from carbontracker import parser
parser.print_aggregate(log_dir="./my_log_directory/")
The training of models in this work is estimated to use 4.494 kWh of electricity contributing to 0.423 kg of CO2eq. This is equivalent to 3.515 km travelled by car. Measured by carbontracker (https://github.com/lfwa/carbontracker).
Log files can be parsed into dictionaries using parser.parse_all_logs()
or parser.parse_logs()
.
from carbontracker import parser
logs = parser.parse_all_logs(log_dir="./logs/")
first_log = logs[0]
print(f"Output file name: {first_log['output_filename']}")
print(f"Standard file name: {first_log['standard_filename']}")
print(f"Stopped early: {first_log['early_stop']}")
print(f"Measured consumption: {first_log['actual']}")
print(f"Predicted consumption: {first_log['pred']}")
print(f"Measured GPU devices: {first_log['components']['gpu']['devices']}")
Output file name: ./logs/2020-05-17T19:02Z_carbontracker_output.log
Standard file name: ./logs/2020-05-17T19:02Z_carbontracker.log
Stopped early: False
Measured consumption: {'epochs': 1, 'duration (s)': 8.0, 'energy (kWh)': 6.5e-05, 'co2eq (g)': 0.019201, 'equivalents': {'km travelled by car': 0.000159}}
Predicted consumption: {'epochs': 3, 'duration (s)': 25.0, 'energy (kWh)': 1000.000196, 'co2eq (g)': 10000.057604, 'equivalents': {'km travelled by car': 10000.000478}}
Measured GPU devices: ['Tesla T4']
carbontracker is compatible with:
- NVIDIA GPUs that support NVIDIA Management Library (NVML)
- Intel CPUs that support Intel RAPL
- Slurm
- Google Colab / Jupyter Notebook
- Available GPU devices are determined by first checking the environment variable
CUDA_VISIBLE_DEVICES
(only ifdevices_by_pid
=False otherwise we find devices by PID). This ensures that for Slurm we only fetch GPU devices associated with the current job and not the entire cluster. If this fails we measure all available GPUs. - NVML cannot find processes for containers spawned without
--pid=host
. This affects thedevice_by_pids
parameter and means that it will never find any active processes for GPUs in affected containers.
See CONTRIBUTING.md.