Contents

clearml 1.15.0

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ClearML - Auto-Magical Experiment Manager, Version Control, and MLOps for AI

ClearML - Auto-Magical Experiment Manager, Version Control, and MLOps for AI

Stars: 5201, Watchers: 5201, Forks: 626, Open Issues: 445

The allegroai/clearml repo was created 4 years ago and the last code push was Yesterday.
The project is extremely popular with a mindblowing 5201 github stars!

How to Install clearml

You can install clearml using pip

pip install clearml

or add it to a project with poetry

poetry add clearml

Package Details

Author
ClearML
License
Apache License 2.0
Homepage
https://github.com/allegroai/clearml
PyPi:
https://pypi.org/project/clearml/
GitHub Repo:
https://github.com/allegroai/clearml

Classifiers

  • Scientific/Engineering/Artificial Intelligence
  • Software Development
  • Software Development/Version Control
  • System/Logging
  • System/Monitoring
No  clearml  pypi packages just yet.

Errors

A list of common clearml errors.

Code Examples

Here are some clearml code examples and snippets.

GitHub Issues

The clearml package has 445 open issues on GitHub

  • logger.report_matrix extra_layout does not pass to plotly
  • The agent pulls the task from the queue
  • How can i train model remotely by clearml?
  • Dataset download always fails halfway
  • Main/Master Branch Pickup
  • WIP: Feature/python fire
  • Problems with poetry and incorrect python version
  • WIP: support newer azure storage python version
  • Switch from seconds to minutes in experiment wait time graph
  • Clearml agent packages not properly installed/used?
  • Probably, incorrect bucket config filtering
  • [Feature Request] Automatic unique task naming
  • WIP: add catboost
  • [Feature Request] Adding auto_connect_frameworks argument to PipelineDecorator.component
  • [Feature Request] Override venv automagic in remote execution mode

See more issues on GitHub

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