I used to ship RAG pipelines and just hope they worked, but learning to actually score retrieval with Ragas changed how I think about quality. The walkthrough on context precision and recall finally gave me numbers to point at instead of vibes, and wiring Langfuse in to trace where answers went wrong was the missing piece. The troubleshooting section is gold because it shows you what a bad faithfulness score really means in practice. Every example ran cleanly and I could swap in my own data right away. Easily the most practical thing I've done on evaluation.
RAG Evaluation Basics: Measure Retrieval Quality with Ragas
Build confidence in your AI applications by learning how to evaluate, troubleshoot, and improve Retrieval-Augmented Generation pipelines using Ragas and Langfuse.
About this course
Building a Retrieval-Augmented Generation (RAG) application is only the first step; ensuring it consistently returns accurate and relevant answers is the real challenge. Without proper evaluation, AI systems can easily hallucinate or retrieve irrelevant context, leading to poor user experiences.
This text-based course guides you through the essential concepts of RAG evaluation and modern observability. You will learn how to systematically measure the performance of your retrieval pipelines, identify failure points, and apply targeted fixes to improve overall response quality.
What you'll learn:
- Understand foundational RAG concepts, including vector databases and modern retrieval patterns.
- Apply the Ragas framework to measure key metrics like context precision, recall, and answer relevancy.
- Integrate Langfuse to trace LLM executions and monitor pipeline performance effectively.
- Identify common retrieval failures and practice strategies to mitigate AI hallucinations.
- Implement prompt engineering basics to refine generation quality and control outputs.
- Establish foundational MLOps practices for continuous evaluation of your AI models.
The material begins with core terminology and foundational definitions before progressing into practical, written exercises. You will read through step-by-step code snippets and realistic scenarios that demonstrate how to set up robust evaluation workflows from scratch.
Designed for beginners and aspiring ML engineers, this course requires no prior experience with evaluation frameworks, making it accessible to anyone familiar with basic programming concepts.
Start reading today to ensure your AI applications deliver reliable, high-quality results.
What you'll get
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Certificate of completion
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Audio version included
Learn on the go โ no screen needed -
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Lifetime access
Come back anytime, no expiry -
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Phone or computer
Works anywhere, any device -
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14-day refund
No questions asked -
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Short & focused
1h 55m of practical content
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Just a phone or computer with internet. No installs, no special hardware.
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Yes โ full refund within 14 days, no questions asked.
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Forever. Once you purchase, the course is yours to revisit anytime.
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Yes. On completion you'll receive a certificate you can add to your LinkedIn profile.
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