The Subtle Art of Fixing Silently Failing ML Models
Offered By: Data Science Festival via YouTube
Course Description
Overview
Discover strategies for identifying and addressing silently failing machine learning models in this 34-minute conference talk from the Data Science Festival. Explore the concept of silent failure in AI models, where performance gradually degrades without apparent signs, leading to sudden drops in effectiveness. Learn how AI Observability tools can help prevent these issues through continuous monitoring, explainability, and accountability. Gain insights into automating model monitoring, conducting root cause analysis, and proactively troubleshooting to build reliable and compliant solutions. Acquire key takeaways on understanding why AI models fail, identifying silent failures, assessing their short and long-term impacts, and implementing proactive measures to maintain failure resistance in your machine learning projects.
Syllabus
The Subtle Art of Fixing Silently Failing ML Models
Taught by
Data Science Festival
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