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Yiren Lu, a New York City-based software engineer on Machine learning (ML) is a fundamental decision making tool for Fran Bell, a data science manager with teams developing Intelligent Decision Systems and our Forecasting Platform (including ... Charlyn Gonda, a developer advocate with the API Partnerships team, discussed how the Data drift analysis is a must for production workloads. Here is Part 5 of 8. Presented by data science manager Fran Bell. Also see:
Deepti Chheda and Ayesha Yasmeen, engineers with the Data Workflow Management Platform and Rider Experience teams, ... Learn more about the AWS Partner Webinar Series at - Join our webinar to hear how Lyft and other ...
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Last Updated: May 24, 2026
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