Build Better Machine Learning Models With Confidence By Adding Validation With Deepchecks

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 Tannor explain how they are addressing the problem with their open source deepchecks library and how you can start using it today to build trust in your machine learning applications.

2356 232

Suggested Podcasts

Brett Lash, Chase Hunter, James Mercer

National Committee on U.S.-China Relations

Ant

Relay FM

audiochuck

Chinmaya Mission Niagara

Terry Frost

Dale Partridge