Published Nov 25, 2022
630: Resilient Machine Learning — with Dan Shiebler
Join Jon Krohn as he delves into the realm of resilient machine learning with Dr. Dan Shiebler, exploring systems that withstand component failures, maintain performance despite missing features, and employ strategies like defaults and fallbacks, underscoring their significance at the Open Data Science Conference West.

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