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1
Intro
2
GARBABE IN GARBAGE OUT
3
CONCEPT DRIFT: AN EXAMPLE
4
REUSING MODELS IS A REPUTATION HAZARD
5
DON'T ASSUME YOU'RE READY FOR YOUR NEXT CUSTOMER
6
THE PITFALLS OF A/B TESTING
7
FIVE PUZZLING OUTCOMES EXPLAINED
8
MODEL DEVELOPMENT SOFTWARE DEVELOPMENT
Description:
Explore real-world case studies and best practices for successfully implementing AI and machine learning systems in production environments. Learn about concept drift, common pitfalls in A/B testing, offline versus online measurements, and systems that learn in production. Gain valuable insights from a decade of experience building and operating AI systems at Fortune 500 companies across various industries. Understand how to identify and correct model decay, avoid primacy and novelty effects in testing, and set up teams and products for success. Ideal for executives, technical leaders, and product managers seeking to learn from others' mistakes and ensure the effective deployment of AI technologies in their organizations.

What to Expect When You Are Putting AI in Production - Dr. David Talby

Open Data Science
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