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Computer Science

LLM Evaluation, Guardrails, and Reliability Testing

Curated and verified byLeena Shah, Applied AI Engineer, Zoom
Study time: 10 hours
LanguagesEnglish · 简体中文 · Español
$15.00Lifetime access
Certificate of completionverifiable · shareable
Preview

The demo went well. The exec nodded. Two weeks later somebody asks whether you can leave the thing running unattended over a long weekend, and you realize you have no honest answer. This is the discipline that gives you one. Not a benchmark score and not a vendor's "trust layer," but the engineering loop the people who actually run production language models use: a small honest dataset that exercises the failure modes your system genuinely has; metrics chosen by what the feature is for, not by what's cheap to compute; LLM-judges whose biases you've measured rather than assumed; red-team probes against prompt injection, the lethal trifecta, and the named jailbreak families; layered guardrails that nobody pretends are sufficient on their own; observability deep enough that "what did the model do for that user last Tuesday at 3pm" is a query, not a guess. It's grounded in the work the people who own production LLMs have actually published — OWASP's 2025 LLM Top 10, MLCommons AILuminate, the Ragas and TruLens metric definitions, Anthropic's statistical approach to evals, the practitioner canon at applied-llms.org — and in the public incidents that made the case for it: Air Canada's chatbot policy that wasn't, the dealer-bot that "sold" a Tahoe for a dollar, the agent that wiped a production database during a self-declared code freeze. The course is for the people the answer ends up on: AI engineers, QA, product managers, and the governance leads who'll be asked to map all of it to NIST AI RMF and the EU AI Act. Across forty lessons you build the program — and the habit underneath it — that turns "it usually works" into something you can sign your name to.

Lessons

About the course creator

Leena Shah
Leena Shah
Applied AI Engineer, Zoom

Leena Shah’s portfolio reads less like a catalog of models than a record of bottlenecks removed: customer-support teams searching thousands of documents, analysts waiting on manual summaries, and product managers unsure whether an AI answer can be trusted. She has addressed those problems with retrieval-augmented assistants, multimodal extraction, voice agents, and tool-using workflows, pairing Python and FastAPI services with vector databases, cloud infrastructure, and evaluation suites that measure grounding, latency, safety, and cost. Leena has also fine-tuned open models for private environments, introduced human-review loops and production guardrails, and worked alongside product, security, and domain specialists to turn rough prototypes into monitored features. Her strength lies in recognizing where AI can genuinely improve a workflow—and engineering the surrounding system so that improvement survives contact with real users.

Reviews (8)

3 out of 5
  • twinkling_turtle

    expected more

  • wise_iguana

    太简单了

  • velvet_surfer

    moves too fast

  • tender_herald

    too basic

  • chipper_weasel

    Troppo superficiale.