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    • 0. Gather requirements
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    • 2. Deploy POC to collect stakeholder feedback
    • 3. Curate an Evaluation Set from feedback
    • 4. Evaluate POC quality
    • 5. Identify the root cause of quality issues
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Updated Feb 18, 2025

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  • Documentation
  • Navigate the generative AI agent tutorial

Navigate the generative AI agent tutorial

Use this page to navigate through the generative AI agent tutorial, formerly called the AI cookbook. Follow it from end-to-end, or jump into an area that interests you.

Introduction

Introduction: End-to-end generative AI agent tutorial

10-minute demo

10-minute AI agent demo notebooks

Learn about RAG and AI agents

  • Introduction to RAG

  • RAG fundamentals

    • Data pipeline

    • RAG chain for inference

    • Evaluation and monitoring

    • Governance and LLMOps

  • Improve RAG quality

    • Data pipeline quality

    • Rag chain quality

  • Evaluate RAG application quality

    • Define quality

    • Assess performance

    • Enable quality measurement

  • Evaluation-driven development

Step-by-step implementation

  • Prerequisites: Gather requirements

  • Step 1: Clone code and create compute

  • Step 2: Deploy a Proof-of-concept to get stakeholder feedback

  • Step 3: Curate an evaluation data set

  • Step 4: Evaluate the Proof-of-concept quality

  • Step 5: Find root causes of quality issues

    • Step 5.1: Debug retrieval quality

    • Step 5.2: Debug generation quality

  • Step 6: Iteratively fix and evaluate quality

    • Step 6.1: Fix data pipeline quality

  • Step 7: Deploy and monitor the AI application

Next: Introduction to the generative AI agent tutorial >


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