Towards Observability for Machine Learning Pipelines
Offered By: Toronto Machine Learning Series (TMLS) via YouTube
Course Description
Overview
Explore the challenges and solutions for achieving end-to-end observability in machine learning pipelines in this insightful talk by Shreya Shankar, a Ph.D. student at the University of Berkeley. Delve into the complexities of managing ML workflows in heterogeneous tool stacks and learn about innovative approaches to address post-deployment issues. Discover mltrace, a platform-agnostic system designed to provide comprehensive observability for ML practitioners. Gain valuable insights into executing predefined tests, monitoring ML-specific metrics at runtime, tracking end-to-end data flow, and enabling post-hoc pipeline health inquiries. Understand the importance of observability in addressing unexpected output values and lower-quality predictions in production ML applications. This talk offers a deep dive into the cutting-edge research aimed at improving the operationalization and maintenance of machine learning systems in complex software environments.
Syllabus
Towards Observability for Machine Learning Pipelines
Taught by
Toronto Machine Learning Series (TMLS)
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