Imagine deploying a powerful machine learning model that performs flawlessly—until a single unpatched container, a poisoned dependency, or a misconfigured cloud service brings it crashing down. In today’s AI-driven world, securing ML systems is no longer optional; it’s essential to maintaining trust, compliance, and resilience.

Harden AI: Secure Your ML Pipelines

Harden AI: Secure Your ML Pipelines
This course is part of AI Security: Security in the Age of Artificial Intelligence Specialization


Instructors: Hanniel Jafaru
Access provided by Masterflex LLC, Part of Avantor
Recommended experience
What you'll learn
Apply infrastructure hardening in ML environments using secure setup, IAM controls, patching, and container scans to protect data.
Secure ML CI/CD workflows through automated dependency scanning, build validation, and code signing to prevent supply chain risks.
Design resilient ML pipelines by integrating rollback, drift monitoring, and adaptive recovery to maintain reliability and system trust.
Skills you'll gain
- Hardening
- AI Personalization
- CI/CD
- Threat Modeling
- Containerization
- Vulnerability Scanning
- Resilience
- DevSecOps
- MLOps (Machine Learning Operations)
- Continuous Monitoring
- Compliance Management
- AI Security
- Security Controls
- Engineering
- Infrastructure Security
- Vulnerability Assessments
- Identity and Access Management
- Responsible AI
- Model Evaluation
Tools you'll learn
Details to know

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December 2025
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