Validating and Safeguarding Production AI
This long course focuses on the operational lifecycle of agentic AI systems: robust partitioning and dataset management, automated retraining pipelines,...
About This Course
This long course focuses on the operational lifecycle of agentic AI systems: robust partitioning and dataset management, automated retraining pipelines, continuous monitoring for drift and anomalies, testing and secure deployment, and performance optimization of code and pipelines. You will practice partitioning strategies (time-series and stratified), monitoring and drift detection metrics (PSI and KS), and build CI/CD notebooks and automated workflows for model retraining and re-deployment using tools like MLflow and GitHub Actions. The course addresses software-engineering best practices—clean code, profiling, unit and integration testing—and dependency risk assessment to maintain secure, reliable production systems. Practical assignments include building monitoring alerting rules, implementing retraining triggers, diagnosing runtime bottlenecks, and integrating human-in-the-loop feedback systems to continuously improve models in production while ensuring high code quality and security hygiene.
Topics Covered
Frequently Asked Questions
How much does Validating and Safeguarding Production AI cost?
Validating and Safeguarding Production AI costs $49. Check the course page for current pricing and available discounts.
Who teaches Validating and Safeguarding Production AI?
Validating and Safeguarding Production AI is taught by Coursera, Coursera.
What skill level is Validating and Safeguarding Production AI for?
This course is designed for all levels learners.
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