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Coursera

Secure AI Systems Across Lifecycle Stages

Coursera via Coursera

Overview

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As artificial intelligence powers our world, it creates a new frontier for complex threats that standard cybersecurity practices can't handle. This course equips you with the specialized, in-demand skills to defend these critical systems from end to end. You will learn to think like an attacker, identifying unique threats like data poisoning, adversarial evasion, and model inference attacks. We'll journey through the entire MLOps lifecycle, pinpointing vulnerabilities from the moment data is collected to the second a model is deployed. But this isn't just theory—you will immediately apply your knowledge in a series of hands-on labs. Using the industry-standard MITRE ATLAS framework, you'll perform a full threat model analysis on a sample AI application. You will then implement practical, code-based mitigation strategies to build more resilient systems, culminating your learning in a final project where you conduct a full security audit. This course is ideal for AI engineers, data scientists, cybersecurity professionals, and anyone involved in the design, development, or deployment of AI systems. It is especially valuable for professionals working in sectors where security is a priority, such as healthcare, finance, and government. Learners should have a foundational understanding of AI, machine learning, and basic cybersecurity concepts. Familiarity with software development practices and system architecture will be beneficial, but not required. By the end of this course, you will have the confidence and tangible skills to protect the next generation of technology and become an essential asset in the world of AI security.

Syllabus

  • The AI Threat Landscape
    • This module introduces learners to the landscape of AI security. It breaks down the primary categories of attacks that target AI systems and introduces foundational frameworks for understanding and classifying these emerging threats.
  • Building and Tracking Models with MLflow
    • This module focuses on using MLflow for experiment tracking and model management, a critical component of MLOps on Databricks.
  • Model Deployment and Management
    • This module concludes the ML lifecycle by covering model deployment and management using the MLflow Model Registry.

Taught by

Ashish Mohan and Starweaver

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