If model rollouts feel risky, monitoring is an afterthought, and updates make you nervous, you’re not alone. As AI moves from prototype to production, the stakes rise: model supply chains, promotion workflows, and runtime behavior need guardrails, not just good intentions. This course is your blueprint for shipping with confidence by baking security into every phase of the AI Model lifecycle. You’ll learn to choose the right deployment strategy for your risk profile, enforce provenance and approvals with a model registry, and wire continuous monitoring for data/feature drift, performance, and safety signals. We also cover securing updates with signed artifacts, CI/CD policy gates, and rapid, auditable rollback.

Secure AI Model Deployments & Lifecycles

Secure AI Model Deployments & Lifecycles
This course is part of AI Security: Security in the Age of Artificial Intelligence Specialization


Instructors: Starweaver
Access provided by Masterflex LLC, Part of Avantor
Recommended experience
What you'll learn
Execute secure deployment strategies (blue/green, canary, shadow) with traffic controls, health gates, and rollback plans.
Implement model registry governance (versioning, lineage, stage transitions, approvals) to enforce provenance and promote-to-prod workflows.
Design monitoring triggering runbooks; secure updates via signing + CI/CD policy for auditable releases and controlled rollback.
Skills you'll gain
Details to know

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December 2025
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There are 3 modules in this course
In this module, Learners compare rollout patterns, including shadow, canary, and blue/green based on risk, observability, and rollback needs. They then implement a quick canary with AWS Lambda aliases to practice traffic shifting, gating, and instant rollback. Learners will also apply this knowledge in a live canary rollout using AWS Lambda, implementing traffic splitting, gating, and rollback in response to safety or performance regressions.
What's included
4 videos2 readings1 peer review
In this module, learners will design and implement a registry-centered promotion flow for AI models. They will learn to capture versioning and lineage, move model versions through different stages, and attach necessary evidence and approvals at each stage. Learners will then apply this process in a CI/CD pipeline, enforcing security with signed artifacts and SBOM checks to ensure that only verified and approved versions are deployed to production.
What's included
3 videos2 readings1 peer review
In this module, learners will learn how to operate AI services safely in production. They will develop the skills to set up effective monitoring for key metrics such as latency, errors, drift, and safety. Learners will also learn how to interpret these metrics and connect them to actionable operational decisions. Additionally, they will explore secure update practices, including how to use signed artifacts, SBOM-based scanning, CI/CD policy gates, and audit trails to ensure safe, auditable, and controlled releases.
What's included
5 videos1 reading1 assignment2 peer reviews
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