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Starts 2 July 2025 04:51

Ends 2 July 2025

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Mastering RAG - Enhancing AI Applications with Retrieval-Augmented Generation

Master practical techniques for implementing Retrieval-Augmented Generation (RAG) in AI applications, from optimizing workflows to leveraging vector databases for enhanced context-aware responses.
Open Data Science via YouTube

Open Data Science

2765 Courses


1 hour 34 minutes

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Overview

Master practical techniques for implementing Retrieval-Augmented Generation (RAG) in AI applications, from optimizing workflows to leveraging vector databases for enhanced context-aware responses.

Syllabus

  • Introduction to Retrieval-Augmented Generation (RAG)
  • Overview of RAG
    Benefits of RAG in AI applications
    Key components of RAG systems
  • Understanding Vector Databases
  • Basics of vector databases
    Popular tools and platforms
    Integrating vector databases into RAG
  • Optimizing RAG Workflows
  • Designing efficient retrieval mechanisms
    Best practices in data management for RAG
    Workflow optimization techniques
  • Implementing RAG in AI Applications
  • Step-by-step guide to setting up a RAG system
    Case studies of successful RAG deployments
    Common challenges and solutions
  • Enhancing Context-Aware Responses
  • Techniques for improving context understanding
    Tailoring responses using retrieval data
    Metrics for evaluating context-awareness
  • Advanced RAG Techniques
  • Leveraging machine learning models in RAG
    Dynamic retrieval strategies
    Scaling RAG systems for large datasets
  • Tools and Technologies for RAG
  • Overview of RAG development tools
    Comparison of different technologies
    Hands-on sessions with popular tools
  • Future Trends in Retrieval-Augmented Generation
  • Innovations in RAG
    Emerging research and development areas
    Potential impact on AI ecosystems
  • Course Recap and Project Showcase
  • Summary of key learnings
    Student presentations of RAG projects
    Feedback and Q&A session

Subjects

Data Science