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Supervised machine learning for science with Christoph Molnar and Timo Freiesleben, Part 2

The AI Fundamentalists

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Navigating Robustness in Machine Learning

This chapter explores the critical concept of robustness in machine learning, focusing on distribution shifts such as covariate shift and concept drift. It discusses practical strategies to enhance model performance and the importance of teaching fundamental concepts over mere procedural knowledge. The conversation also addresses the challenges of reproducibility in research, highlighting best practices for improving transparency and reliability in scientific studies.

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