How to Detect Silent Failures in ML Models
Offered By: Data Science Dojo via YouTube
Course Description
Overview
Learn how to detect silent failures in machine learning models without accessing target data in this 59-minute webinar. Explore the most common causes of ML model failure, including data and concept drift. Discover statistical and algorithmic tools for detecting and addressing these issues, their applications, and limitations. By the end, gain the ability to monitor ML models, detect performance drops without ground truth data, and understand data drift for effective problem-solving. The session includes a practical demo and Q&A to reinforce key concepts and techniques.
Syllabus
Introduction
Data drift and concept drift
Performance estimation
Data and concept drift detection
Summary
Demo
QnA
Taught by
Data Science Dojo
Related Courses
Dataset Management for Computer Vision - Important Component to Delivering Computer Vision SolutionsOpen Data Science via YouTube Testing ML Models in Production - Detecting Data and Concept Drift
Databricks via YouTube Ekya - Continuous Learning of Video Analytics Models on Edge Compute Servers
USENIX via YouTube Building and Maintaining High-Performance AI
Data Science Dojo via YouTube Monitoring ML Models - Full Stack Deep Learning - Spring 2021
The Full Stack via YouTube