Trust Fall: Three Hidden Gems in MLFlow
Offered By: PyCon US via YouTube
Course Description
Overview
Discover three lesser-known features of MLFlow that can enhance collaboration, increase transparency, and reduce time spent reproducing results in AI research. Learn how to leverage autologging, MLFlow system tags, and the MLFlow model registry to streamline your machine learning workflow. Explore techniques for automatically logging parameters and metrics, linking code versions to produced metrics, and establishing a reliable process for quick and helpful documentation. Gain valuable insights into building trust in AI through improved metrics tracking and documentation, ultimately saving development time and ensuring reproducibility in your research projects.
Syllabus
Talks - Krishi Sharma: Trust Fall: Three Hidden Gems in MLFlow
Taught by
PyCon US
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