Introducing the MLFlow plugin for Hamilton

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  • เผยแพร่เมื่อ 28 มิ.ย. 2024
  • MLFlow is an open-source Python framework for experiment tracking. The MLFlow plugin for Hamilton includes two sets of features:
    - Standard approach to save and load machine learning models
    - Automatically track Hamilton pipeline results in MLFlow
    This pairs nicely with the Hamilton UI which gives you a way to explore your pipeline code, attributes of the artifacts produced, and execution observability.
    👨‍💻 MLFlow plugin tutorial on GitHub: github.com/DAGWorks-Inc/hamil...
    🖥 Hamilton UI: hamilton.dagworks.io/en/lates...
    0:00 - Introduction
    1:00 - Training: train a machine learning model
    5:00 - View our trained model in the MLFlow UI
    6:18 - Inference: load a machine learning model for predictions
    9:00 - Automatically track Hamilton runs in MLFlow
    13:30 - View tracked runs in the MLFlow UI
    14:13 - Grouping MLFlow runs by Hamilton code version
    16:48 - Automated MLFlow model metadata
    18:58 - Using Hamilton @tag to add metadata
    20:40 - Using MLFlow model aliases
    21:22 - Proof that debugging is easy!
    22:16 - Tracking runs with Hamilton UI + MLFlow UI
    26:40 - Viewing tracked runs in the Hamilton UI
    ~~~~
    ⭐Hamilton on GitHub: github.com/DAGWorks-Inc/hamilton
    📖 Hamilton documentation: hamilton.dagworks.io/
    📣 Join our Slack communtiy: join.slack.com/t/hamilton-ope...
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