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 Xavier School of Management, XLRI
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
- DevSecOps
- Identity and Access Management
- Compliance Management
- Vulnerability Scanning
- Vulnerability Assessments
- MLOps (Machine Learning Operations)
- Hardening
- Continuous Monitoring
- Model Evaluation
- AI Personalization
- CI/CD
- Responsible AI
- Containerization
- Threat Modeling
- Security Controls
- Infrastructure Security
- AI Security
- Engineering
- Resilience
Tools you'll learn
Details to know

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December 2025
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There are 3 modules in this course
This module lays the foundation for securing machine learning systems by focusing on the underlying infrastructure that supports them. Learners will explore why strong security controls at the operating system, cloud, and container levels are essential for protecting sensitive ML workloads. Real-world breaches often start with overlooked vulnerabilities in servers, misconfigured storage buckets, or unsecured APIs, and this module provides the knowledge to prevent such entry points. Through theory, demonstration, and an interactive scenario, learners will gain the skills to harden ML environments, apply IAM best practices, and perform vulnerability scans that reveal weaknesses before attackers exploit them. By the end of this module, learners will understand how infrastructure hygiene directly impacts the integrity of ML models and data.
What's included
5 videos2 readings1 peer review
This module builds on the infrastructure layer by addressing the unique risks found in machine learning build and deployment workflows. Continuous integration and continuous deployment (CI/CD) pipelines accelerate innovation, but they also introduce opportunities for adversaries to slip in malicious dependencies, poisoned data, or corrupted artifacts. Learners will study the anatomy of ML supply chain attacks and discover practical strategies to counter them, such as dependency scanning, code signing, and reproducible builds. The combination of theory, real-world case studies, and a hands-on demo will help learners see how insecure workflows can compromise entire AI systems. By the end of this module, participants will be able to design and implement CI/CD pipelines that embed security into every stage of model development and deployment.
What's included
3 videos1 reading1 peer review
This module brings together infrastructure and workflow security into a forward-looking focus on resilience. No pipeline is immune to compromise or error, but resilient pipelines are designed to detect issues quickly, recover gracefully, and maintain trustworthiness under stress. Learners will study common compromise vectors in ML systems, from adversarial inputs to model drift, and then explore resilience strategies like rollback, redundancy, and drift monitoring. The demo illustrates how even a simple rollback can protect business continuity when a model misbehaves in production. The scenario-based dialogue challenges learners to think critically about balancing speed, reliability, and safety in real-world ML operations. By the end of this module, learners will understand how to engineer resilience into ML pipelines so that failures and attacks become manageable events rather than catastrophic disruptions.
What's included
4 videos1 reading1 assignment2 peer reviews
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