Reproducible Machine Learning - How Not to Repeat the Past
Offered By: MLOps World: Machine Learning in Production via YouTube
Course Description
Overview
Explore strategies for achieving reproducibility in machine learning experiments during this 37-minute conference talk from MLOps World: Machine Learning in Production. Learn valuable techniques for organizing and repeating experiments, including standardized logging, versioning datasets and model checkpoints, and creating templated workflows for analysis and visualization. Discover how to build reproducible training and inference pipelines, locate and recreate specific steps or checkpoints, and effectively present analyses for improved collaboration. Gain insights on minimizing duplicated efforts and confidently revisiting earlier stages of the development cycle, ultimately enhancing the reliability and efficiency of machine learning projects.
Syllabus
Reproducible Machine Learning How Not to Repeat the Past
Taught by
MLOps World: Machine Learning in Production
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