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Introduction
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Michelles background
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Why debugging ML on the edge
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Traditional model
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Benefits
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Deployment
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What can go wrong
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MLExray
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Python API
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Reference Pipelines
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Issues
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Preprocessing errors
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MLExray assertions
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Quantization
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Reference Pipeline
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Hardware Requirements
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MLExray Demo
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Limitations
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Pixi
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Resources
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Questions
Description:
Explore the challenges and solutions for debugging machine learning models deployed on edge devices in this insightful conference talk by Michelle Nquyen from Stanford. Gain an understanding of the traditional model deployment process, its benefits, and potential issues that can arise. Learn about MLExray, a powerful Python API designed to address common problems in edge ML deployment. Discover how to use reference pipelines, handle preprocessing errors, implement MLExray assertions, and manage quantization issues. Examine hardware requirements and witness a live demonstration of MLExray in action. Discuss the tool's current limitations and explore additional resources like Pixi for further learning. Equip yourself with the knowledge to effectively debug and optimize machine learning models for edge computing environments.

Debugging Machine Learning on the Edge with MLExray

CNCF [Cloud Native Computing Foundation]
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