July 6, 2022, 2 a.m. | Tobias Macey

The Machine Learning Podcast www.themachinelearningpodcast.com

Summary


Machine learning has the potential to transform industries and revolutionize business capabilities, but only if the models are reliable and robust. Because of the fundamental probabilistic nature of machine learning techniques it can be challenging to test and validate the generated models. The team at Deepchecks understands the widespread need to easily and repeatably check and verify the outputs of machine learning models and the complexity involved in making it a reality. In this episode Shir Chorev and Philip …

confidence machine machine learning machine learning models validation

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