AI Product Security: Incident Response
1h 32mIntermediate2025-03-10
Authors

Malcolm Shore
Cybersecurity Expert, Former Director of GCSB
Course details
AI is experiencing a number of growing pains as it evolves, and these are too frequently escalating into high-profile incidents. In this course, instructor Malcolm Shore covers a wide range of issues which are relevant to AI applications, including the traditional cybersecurity issues as well as more contemporary and AI-specific issues associated with inadequately protected data, inadequately protected AI applications, untested models, and supply chain issues with training data and model construction. From prompt and thought injections to gaining operating system shells, this course provides a hands-on approach to understanding how you can respond to and minimize the damage caused by an incident.
Learning objectives
Analyze the scope and types of incidents that can affect AI applications and their potential impacts.
Identify events and indicators that may constitute emerging AI incidents through hands-on lab exercises.
Evaluate and execute appropriate incident response procedures for different types of AI incidents.
Formulate effective communication strategies for stakeholders during AI incidents.
Design preventive measures to protect AI applications based on common incident patterns and vulnerabilities.
Learning objectives
Analyze the scope and types of incidents that can affect AI applications and their potential impacts.
Identify events and indicators that may constitute emerging AI incidents through hands-on lab exercises.
Evaluate and execute appropriate incident response procedures for different types of AI incidents.
Formulate effective communication strategies for stakeholders during AI incidents.
Design preventive measures to protect AI applications based on common incident patterns and vulnerabilities.
Skills covered
Incident ResponseCybersecurityOne-Off
Concepts
0. Introduction
- 01 - Managing AI incidents to minimize damage
- 02 - What you should know
- 03 - Disclaimer
1. Understanding AI Incidents
- 04 - Introduction to Incidents
- 05 - Incident reporting obligations
- 06 - AI incident case studies
- 07 - High-risk AI models
- 08 - Prohibited AI models
2. Planning for an Incident
- 09 - Preparing for an incident
- 10 - Assessing the threats
- 11 - Preparing the incident response plan
- 12 - Upskilling with AI drills
- 13 - Running an AI crisis exercise
- 14 - Running an AI IR maturity assessment
3. Detect and Log AI Issues
- 15 - Test harness for AI logging
- 16 - Detecting toxicity
- 17 - Logging llm-guard
- 18 - The challenge of hallucinations
4. AI Incident Response
- 19 - Responding to an AI incident
- 20 - Documenting the response
5. Incident Communications
- 21 - Introduction to the Knight-Nurse framework
- 22 - When and how to communicate
- 23 - What to communicate
- 24 - Special considerations for AI models
Conclusion
- 25 - What's next
Related courses
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- Microsoft Security Copilot: Working with Preinstalled and Custom Plugins
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- Responsible AI Framework for Your Enterprise AI Product
- AI Product Security: Foundations and Proactive Security for AI
- AI Product Security: Testing, Validation, and Maintenance
- AI Product Security: Building Strong Data Governance and Protection
- AI Product Security: Secure Architecture, Deployment, and Infrastructure
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