Learn how to build security into your machine learning and AI lifecycles with MLSecOps.
Overview
Syllabus
Introduction
- The power of MLSecOps
- What is MLSecOps?
- The benefits of AI risk awareness in organizations
- Key MLSecOps categories of assurance explained
- Understanding the MLSecOps framework
- Map, measure, manage, and govern
- AI attack vectors and vulnerabilities
- Introduction to threat modeling for AI systems
- Customized threat models
- Strategic threat analysis
- Ensuring adversarial robustness
- Secure model deployment and monitoring
- Building the team: Ownership and roles
- Introduction to the Violet teaming integrative framework
- Facilitating cross-collaboration for MLSecOps implementation
- Empowering MLSecOps stakeholders with team training
- Step-by-step: Infusing MLSecOps into existing processes
- Foundations for AI/ML risk assessments and assurance
- AI incident response plans
- Audit, inventory, and supply chain
- Mastering MLSecOps: Safeguarding AI in the modern era
Taught by
Diana Kelley