Jan. 30, 2023, 10:56 p.m. | USENIX

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Improving Machine Learning Development Reliability

Brian Hansen and Yan Yan, Meta

The Machine learning Development LifeCycle is not the same as Software Development LifeCycle. It’s so different that we believe that we need to develop new ways to rationalize how we go about building, monitoring and alerting on ML artifacts as they go through the process. This talk explores those differences. It highlights challenges of ML reliability and scalability, what we’ve done and the need for involvement from this community …

alerting apac artifacts brian challenges development lifecycle machine machine learning meta monitoring process reliability scalability software software development

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