Evaluating LLM Performance and Efficiency
This comprehensive course is for product managers, ML engineers, and technical leads responsible for transforming LLM concepts into reliable, cost-effective production services. In today's AI-driven landscape, building a functional model is only the beginning. You will learn the complete framework for measuring, documenting, and optimizing LLM applications to ensure that they deliver real business value efficiently and consistently.
The course begins by grounding you in product-centric development, teaching you to create a clear Product Requirements Document (PRD) that defines scope, MVP features, and success metrics. You'll evaluate features against acceptance criteria to identify gaps and validate user requirements. You will evaluate Zero-Shot, Few-Shot, and Chain-of-Thought prompt patterns and develop runbooks for vector index management. You will learn to analyze compute-spend reports to propose concrete cost-reduction strategies, such as model quantization, and use value-stream mapping to identify and eliminate inefficiencies in your development and release pipelines.
Watch on Coursera ↗
(saves to browser)
Sign in to unlock AI tutor explanation · ⚡30
More on: PM Basics
View skill →Related AI Lessons
⚡
⚡
⚡
⚡
5 Notion Pages Every Solo Developer Needs (And What Goes in Each One)
Dev.to · Alfred P
Property Managers Waste 13 Hours a Week on COI Paperwork. I Built Something to Fix It.
Dev.to · GrimLabs
BizNode gives you a full web dashboard at localhost:7777 — manage leads, conversations, knowledge base, and settings in one...
Dev.to AI
I Just Wanted to Know Where My Browsing Time Went. Five Years Later, Firefox Recommended It.
Dev.to · victor zhang
🎓
Tutor Explanation
DeepCamp AI