Comet.ml - machine learning experiment management
Our Misson: Comet is doing for ML what GitHub did for code. We allow data science teams to automagically track their datasets, code changes, experimentation history and production models creating efficiency, transparency, and reproducibility.
We all strive to be data driven and yet every day valuable experiments results are just lost and forgotten. Comet.ml provides a dead simple way of fixing that. Works with any workflow, any ML task, any machine and any piece of code.
Examples Repository
This repository contains examples of using Comet.ml in many Machine Learning Python libraries, including fastai, torch, sklearn, chainer, caffe, keras, tensorflow, mxnet, Jupyter notebooks, and with just pre Python.
If you don't see something you need, just let us know! See contact methods below.
Documentation
Full documentation and additional training examples are available on http://www.comet.ml/docs/
Installation
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Install Comet.ml from PyPI:
pip install comet_ml
Comet.ml python SDK is compatible with: Python 3.5-3.9.
Tutorials + Examples
We also offer Jupyter notebook examples for fastai and keras
Support
Have questions? We have answers -
- Try checking our FAQ Page
- Email us at [email protected]
- For the fastest response, ping us on Slack
Want to request a feature? We take feature requests through github at: https://github.com/comet-ml/issue-tracking
Feature Spotlight
Check out new product features and updates through our Release Notes. Also checkout our articles on Medium.