Introduction to prompt injection
Prompt injection exploits the lack of boundary between system and user prompts in LLMs. Covers multi-turn context, multimodal vectors, and architectural causes.
Prompt injection exploits the lack of boundary between system and user prompts in LLMs. Covers multi-turn context, multimodal vectors, and architectural causes.
Prompt engineering controls LLM output through input design. Covers best practices and maps security risks to OWASP LLM Top 10 and Google SAIF risk categories.
ML infrastructure carries every traditional security risk plus deployment-specific threats. Covers misconfigurations, DoS, resource exhaustion, and TTPs.
The application layer of ML systems inherits every traditional web vulnerability. Covers injection, authentication, XSS, and social engineering attack vectors.
How adversaries poison training data, embed backdoors, and exfiltrate ML data sets. Covers data poisoning, supply chain attacks, and federated learning risks.
A red teamer's reference for attacking model components, covering poisoning, jailbreak techniques, model extraction, and MITRE ATLAS TTP mapping with examples.
A practitioner's reference for red teaming generative AI systems, covering MITRE ATLAS, NIST AI 100-2e2025, AI-specific TTPs, and the open-source tool stack.
A reference guide to Google's Secure AI Framework, covering the four areas, 15 risks, control mapping, SAIF 2.0 agent security, and how it relates to OWASP.
A reference walkthrough of all ten OWASP LLM Application risks for 2025, with code examples, real-world incidents, and a defensive mapping for practitioners.
How input manipulation and data poisoning bend ML classifiers (Model) with minimal effort, and why standard accuracy metrics miss the damage entirely.