Minimize Risk and Accelerate MLOps with ML Monitoring and Explainability
Toronto Machine Learning Series (TMLS) via YouTube
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Most AI Pilots Fail to Scale. MIT Sloan Teaches You Why — and How to Fix It
Overview
Syllabus
Intro
Key Use Cases of ML In Finance
Models fail frequently
Most models are a black box
Regulations and Guidelines
MPM illuminates the black box
Catch Performance Issue with Labels
Catch Performance Issue with Drift
Catch Performance Issue with Data Errors
Catch Bias Issues
Solution - Explainability
Explaining a Prediction
Explanations - The Fed Remarks
Explaining a Segment or Model
Model Summary Report Powered by Explainability
Putting it together - Monitoring & Explainability
MPM Across the ML Lifecycle
Fiddler in Action: Top 5 Bank
Taught by
Toronto Machine Learning Series (TMLS)