What You Need to Know Before
You Start

Starts 7 June 2025 03:08

Ends 7 June 2025

00 days
00 hours
00 minutes
00 seconds
course image

Supercharge AI with Knowledge Graphs: RAG System Mastery NEW

Enhance Large Language Models Using Structured Context and Retrieval-Augmented Generation - Neo4j, LangChain, Cypher
via Udemy

4052 Courses


2 hours 41 minutes

Optional upgrade avallable

Not Specified

Progress at your own speed

Paid Course

Optional upgrade avallable

Overview

Are you ready to take your AI skills to the next level? Welcome to "Supercharge AI with Knowledge Graphs:

RAG System Mastery", the ultimate course designed to unlock the full potential of Large Language Models (LLMs) using cutting-edge techniques in Knowledge Graphs and Retrieval-Augmented Generation (RAG) systems.

Syllabus

  • Introduction to Knowledge Graphs
  • Definition and key concepts
    Importance and applications in AI
  • Fundamentals of Large Language Models (LLMs)
  • Overview of LLM architectures
    Capabilities and limitations
  • Building Knowledge Graphs
  • Data sources and acquisition
    Graph databases and tools
    Semantic web technologies
  • Retrieval-Augmented Generation (RAG) Systems
  • RAG architecture and components
    Advantages over traditional LLMs
    Case studies and use cases
  • Integrating Knowledge Graphs with LLMs
  • Techniques for enhancing LLMs with knowledge graphs
    Querying and updating graphs in real-time
  • Advanced RAG Techniques
  • Customizing retrieval mechanisms
    Handling large-scale datasets
    Optimizing for performance
  • Hands-On Projects
  • Building a simple RAG system
    Real-world applications and problem-solving
    Project presentations and feedback
  • Tools and Technologies
  • Overview of popular tools for building knowledge graphs (e.g., Neo4j, RDF frameworks)
    Integration tools for RAG systems (e.g., Haystack, Faiss)
  • Ethical Considerations and Future Trends
  • Bias mitigation in knowledge systems
    Future developments in knowledge graphs and AI
  • Course Review and Next Steps
  • Summary of key concepts
    Further reading and resources
    Paths for continued learning and career development in AI and knowledge technologies

Taught by

Paulo Dichone | Software Engineer, AWS Cloud Practitioner & Instructor


Subjects

Data Science