Master the critical skills needed to maintain AI systems in production through this hands-on course designed for DevOps engineers, ML engineers, and SREs. As AI deployments grow more complex, the ability to patch safely, recover from incidents quickly, and maintain operational health becomes essential.

Harden AI: Patch and Recover Incidents Fast

Harden AI: Patch and Recover Incidents Fast
This course is part of AI Security: Security in the Age of Artificial Intelligence Specialization


Instructors: Starweaver
Access provided by Emirates Water & Electricity Co.
Recommended experience
What you'll learn
Apply systematic patching strategies to AI models, ML frameworks, and dependencies while maintaining service availability and model performance.
Conduct blameless post-mortems for AI incidents using structured frameworks to identify root causes, document lessons learned, and prevent recurrence
Set up monitoring, alerts, and recovery to detect and resolve model drift, performance drops, and failures early.
Skills you'll gain
- Dashboard Creation
- Automation
- Anomaly Detection
- AI Security
- Continuous Monitoring
- Package and Software Management
- Problem Management
- MLOps (Machine Learning Operations)
- System Monitoring
- Application Deployment
- Incident Response
- Dependency Analysis
- Incident Management
- Disaster Recovery
- Computer Security Incident Management
- Site Reliability Engineering
- Patch Management
Tools you'll learn
Details to know

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January 2026
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There are 3 modules in this course
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