AI Security
In-depth guides and analysis on ai security from the Safeguard engineering team.
676 articles
What AI red teaming is and how to run a structured exercise
A practical guide to AI red teaming: how to plan, run, and report a structured LLM red team exercise using a repeatable adversarial testing methodology.
Comparing leading LLM red teaming and automated testing t...
A practical comparison of leading LLM red teaming tools -- PyRIT, Garak, Giskard, Promptfoo, Lakera Red, and Mindgard -- with real strengths, limits, and evaluation criteria.
How AI safety benchmarks and evaluations measure model risk
A concrete look at how AI safety benchmark evaluation, LLM safety scorecards, and capability testing actually measure model risk in 2026 — and where they fall short.
Evaluating automated AI red teaming platforms for continu...
A practical buyer's guide to evaluating an automated red teaming platform for continuous AI testing, with a fair roundup of six real vendors and tools.
Explaining prompt injection attacks and why they're hard ...
Prompt injection attacks trick AI models into obeying attacker instructions hidden in data or user input, and there's still no complete fix.
How indirect prompt injection hides malicious instruction...
How attackers hide malicious instructions inside webpages, documents, and retrieved content to hijack AI systems — and why RAG pipelines are especially exposed.
Comparing LLM firewall and guardrail products for enterpr...
A vendor-by-vendor comparison of LLM firewall and AI guardrail platform options for enterprise deployment, with real strengths and limitations for each.
How RAG poisoning attacks manipulate retrieval-augmented ...
RAG poisoning attacks corrupt the external knowledge base an LLM retrieves from, turning trusted documents into vectors for misinformation and data leaks.
Security considerations for deploying and querying vector...
Vector databases now hold copies of your most sensitive data with weaker controls than the systems they came from. Here's what to fix before your next RAG deployment.
How model extraction attacks steal proprietary AI model b...
Model extraction attacks let adversaries clone proprietary AI models through ordinary API queries alone. Here's how the attacks work, why they evade detection, and how to stop them.
Understanding membership inference attacks against traine...
Membership inference attacks let adversaries confirm if your data trained a model, exposing privacy leakage in ML models and training data inference risks.
What shadow AI is and how to discover unsanctioned AI use...
Shadow AI risk is spreading faster than governance can keep up. Here's what unsanctioned AI use looks like inside real enterprises and how to discover it before data leaks.