// AIINFRA 302 · Semester 3
AI Security, Guardrails & Governance
Securing, Governing, and Cost-Optimizing Production LLM Systems
This hands-on course prepares learners to secure, govern, and financially optimize generative AI and LLM systems in production. Students master the OWASP LLM Top 10 (2025), build layered defenses against prompt injection and jailbreaks, and deploy modern guardrail frameworks such as NVIDIA NeMo Guardrails, Meta Llama Guard 4, and Microsoft Presidio for PII protection. The course also covers AI governance frameworks including the NIST AI RMF, ISO/IEC 42001, and the EU AI Act, along with responsible AI, bias, and fairness practices. Learners finish with GPU FinOps skills to measure and reduce inference cost per 1,000 requests using spot instances, fractional GPUs, quantization, and autoscaling economics.
Outcomes
Course objectives
- Assess LLM applications against the OWASP LLM Top 10 (2025) and construct layered defenses against direct and indirect prompt injection, jailbreaks, and data leakage.
- Deploy and configure production guardrail frameworks (NeMo Guardrails, Llama Guard 4, LLM Guard, Rebuff, and Presidio) to enforce input/output validation and PII redaction.
- Implement AI security controls for data privacy, secrets and access management, model provenance, and supply-chain integrity across the model lifecycle.
- Evaluate AI systems against the NIST AI RMF, ISO/IEC 42001, and EU AI Act, producing model cards, risk documentation, and bias and fairness assessments.
- Calculate and optimize GPU inference economics using cost per 1,000 requests, spot and fractional GPUs, quantization, KV-cache tuning, and autoscaling to make build-vs-buy decisions.
Student learning outcomes
- Assess LLM applications against the OWASP LLM Top 10 and build layered defenses against prompt injection, jailbreaks, and data leakage.
- Deploy and configure production guardrail frameworks such as NeMo Guardrails, Llama Guard 4, LLM Guard, Rebuff, and Presidio for input/output validation and PII redaction.
- Implement AI security controls for data privacy, secrets and access management, model provenance, and supply-chain integrity.
- Evaluate AI systems against the NIST AI RMF, ISO/IEC 42001, and EU AI Act, producing model cards and risk and fairness documentation.
- Calculate and optimize GPU inference economics using cost per 1,000 requests, spot/fractional GPUs, quantization, and autoscaling.