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Human in the Loop: Interpretable Machine Learning

In this talk, Jesse Galef highlights ways to use Wolfram Mathematica to gain insight into machine learning models, including both existing tools and projects being developed. This includes discussion of evaluating bias and why keeping a human in the loop, especially during training, is necessary.

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