NeuralAcademy
CoursesLearning PathsAI AgentsPromptsAI ToolsWorkflowsResourcesPlaygroundCommunityLiveBlogLeaderboardCategoriesInstructorsPricingAboutContact
Sign inGet started
RAG Systems, End to End
Module 6
Lesson 3 of 4
06.03 · Production

Observability

AI-generated
Lesson content · AI-crafted

My notes

Sign in to jot down private notes as you learn.

23/24
Course outline
Module 1
RAG fundamentals
4
  • 01.01When RAG beats fine-tuning
  • 01.02The reference architecture
  • 01.03Common failure modes
  • 01.04Setting up the stack
Module 2
Ingestion
4
  • 02.01Parsing messy documents
  • 02.02Chunking strategies
  • 02.03Metadata that helps retrieval
  • 02.04Incremental updates
Module 3
Retrieval
4
  • 03.01Embeddings compared
  • 03.02Hybrid search
  • 03.03Rerankers
  • 03.04Query rewriting
Module 4
Generation
4
  • 04.01Grounded answering
  • 04.02Citations users trust
  • 04.03Refusals and fallbacks
  • 04.04Structured answers
Module 5
Evaluation
4
  • 05.01Faithfulness metrics
  • 05.02Answer relevance
  • 05.03Retrieval hit-rate
  • 05.04End-to-end evals
Module 6
Production
4
  • 06.01Freshness and reindexing
  • 06.02Cost control
  • 06.03Observability
  • 06.04Capstone: shipped RAG app
NeuralAcademy

The training academy for AI engineers. Ship real AI products.

Learn

  • All courses
  • AI Agents
  • LLMs
  • RAG

Academy

  • Instructors
  • Pricing
  • FAQ
  • Contact

Legal

  • Terms
  • Privacy
  • Cookies

© 2026 NeuralAcademy. All rights reserved.

Built for the AI-native engineer.

Edit with