Course Outline

Introduction to LlamaIndex and Context Augmentation

  • Overview of LlamaIndex
  • The role of context augmentation in AI
  • Benefits of using LlamaIndex with LLMs

Setting Up LlamaIndex

  • Installation and configuration
  • Understanding the architecture and components
  • Data connectors and ingestion

Data Indexing and Access

  • Creating data indexes for efficient access
  • Query engines and natural language access
  • Best practices for data structuring

Integrating LlamaIndex with LLMs

  • Enhancing LLMs with contextually relevant data
  • Practical exercises: Augmenting chatbots and text generators
  • Troubleshooting and optimization

Application Scenarios and Case Studies

  • Use cases in various industries
  • Review of successful implementations
  • Building a context-augmented AI solution

Summary and Next Steps

Requirements

  • Basic understanding of AI and machine learning concepts
  • Familiarity with Large Language Models (LLMs)
  • Experience with programming and data handling

Audience

  • AI researchers
  • Machine learning professionals
  • Data scientists
 14 Hours

Number of participants



Price per participant

Related Courses

LangChain: Building AI-Powered Applications

14 Hours

LangChain Fundamentals

14 Hours

Introduction to Google Gemini AI

14 Hours

Google Gemini AI for Content Creation

14 Hours

Google Gemini AI for Transformative Customer Service

14 Hours

Google Gemini AI for Data Analysis

21 Hours

Generative AI with Large Language Models (LLMs)

21 Hours

LlamaIndex: Developing LLM Powered Applications

42 Hours

Introduction to Large Language Models (LLMs)

14 Hours

LLMs for Automated Customer Support

14 Hours

LLMs for Business Intelligence

14 Hours

LLMs for Content Generation

14 Hours

LLMs for Code Generation and Documentation

14 Hours

Advanced LLMs for NLP Tasks

21 Hours

LLMs for Personalized Education

14 Hours

Related Categories

1