Published Jan 27, 2020
Testing ML systems
Explore the transition from Jupyter Notebooks to structured software engineering with Tania Allard, who emphasizes the need for best practices and collaborative workflows in testing ML systems, addressing key issues like quality assurance, explainability, and bias prevention.

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