Offered By: IBMSkillsNetwork
RAG with Granite 3: Build a retrieval agent using LlamaIndex
Use LlamaIndex and Large Language Models (LLMs) to enhance information retrieval and generation by creating a Retrieval-Augmented Generation (RAG) application. By integrating data retrieval with mixtral LLM-powered content generation, you'll enable intuitive querying and information retrieval from diverse document sources, such as PDF, HTML, and txt. This approach simplifies complex document interactions, making it easier to build powerful, context-aware applications that deliver accurate and relevant information.
Continue readingGuided Project
Artificial Intelligence
539 EnrolledAt a Glance
Use LlamaIndex and Large Language Models (LLMs) to enhance information retrieval and generation by creating a Retrieval-Augmented Generation (RAG) application. By integrating data retrieval with mixtral LLM-powered content generation, you'll enable intuitive querying and information retrieval from diverse document sources, such as PDF, HTML, and txt. This approach simplifies complex document interactions, making it easier to build powerful, context-aware applications that deliver accurate and relevant information.
A Look at the Project Ahead
- Construct a RAG Application: Use LlamaIndex to build a RAG application that efficiently retrieves information from various document sources.
- Load, Index, and Retrieve Data: Master the techniques of loading, indexing, and retrieving data to ensure your application accesses the most relevant information.
- Enhance Querying Techniques: Integrate LlamaIndex into your applications to improve querying techniques, ensuring that responses are precise, contextually aware, and aligned with the most current data available.
What You'll Need
Certificate
No Certificate Offered
Estimated Effort
30 Minutes
Level
Beginner
Industries
Skills You Will Learn
AI Agent, Generative AI, LlamaIndex, LLM, RAG, Vector Database
Language
English
Course Code
GPXX0TQPEN