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Introduction to MLSecOps

Via LinkedIn Learning

LinkedIn Learning based on 65 ratings

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Overview

This course introduces MLSec Ops, the practice of applying security principles throughout the machine learning lifecycle. Learners study threat modeling, secure data handling, model vulnerability assessment, and incident response for AI systems. The curriculum emphasizes integrating security into ML development and deployment workflows. Suitable for AI developers, security engineers, and operations teams, the course provides frameworks to build secure, trustworthy ML solutions.

Syllabus

Introduction
  • The power of MLSecOps
1. Introduction to MLSecOps
  • What is MLSecOps?
  • The benefits of AI risk awareness in organizations
  • Key MLSecOps categories of assurance explained
  • Understanding the MLSecOps framework
2. Applying MLSecOps to Secure the AI Lifecycle
  • 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
3. The MLSecOps Dream Team
  • 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
4. MLSecOps Implementation and Strategy: Risk Assessment and Incident Response
  • 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
Conclusion
  • Mastering MLSecOps: Safeguarding AI in the modern era
Introduction to MLSecOps
Go to Class

via LinkedIn Learning

1 hour 2 minutes

Certificate Available

English

On-Demand

Instructor

Diana Kelley

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