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on
1
Intro
2
Key Use Cases of ML In Finance
3
Models fail frequently
4
Most models are a black box
5
Regulations and Guidelines
6
MPM illuminates the black box
7
Catch Performance Issue with Labels
8
Catch Performance Issue with Drift
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Catch Performance Issue with Data Errors
10
Catch Bias Issues
11
Solution - Explainability
12
Explaining a Prediction
13
Explanations - The Fed Remarks
14
Explaining a Segment or Model
15
Model Summary Report Powered by Explainability
16
Putting it together - Monitoring & Explainability
17
MPM Across the ML Lifecycle
18
Fiddler in Action: Top 5 Bank
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the challenges and solutions for implementing responsible AI in financial services through this 40-minute conference talk from the Toronto Machine Learning Series. Learn how to minimize risk and accelerate MLOps by leveraging machine learning monitoring and explainability techniques. Discover strategies for ensuring model performance, fairness, and compliance with regulations like SR 11-7 and OCC 2011-12. Gain insights into monitoring ML models at scale, documenting model behavior, and debugging complex models for quick issue resolution. Understand the importance of Explainable AI in illuminating black box models and addressing performance issues related to labels, drift, and data errors. Examine real-world applications of Model Performance Management (MPM) across the ML lifecycle, including a case study from a top 5 bank.

Minimize Risk and Accelerate MLOps with ML Monitoring and Explainability

Toronto Machine Learning Series (TMLS)
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