Fundamentals of Retrieval-Augmented Generation with LangChain
Explore this beginner RAG course to learn the basics of retrieval-augmented generation. For hands-on practice, build RAG pipelines using LangChain and create user-friendly applications with Streamlit.
- Understand the architecture and workflows of retrieval-augmented generation (RAG) systems.
- Implement end-to-end RAG pipelines using LangChain for accurate and context-aware AI outputs.
- Explore effective indexing techniques and retrieval strategies to enhance RAG performance.
- Create augmented queries and generate context-driven responses using LangChain.
- Build interactive web applications with Streamlit to enhance user interaction with RAG systems.
Build dependable retrieval-augmented generation applications that integrate real data for accurate AI responses.
Apply advanced indexing and retrieval methods to optimize RAG pipelines for real-world applications.
Develop user-friendly web applications using Streamlit that enhance interaction with retrieval-augmented generation systems.
Adapt RAG systems to utilize different vector stores, ensuring efficient data retrieval and storage solutions.
Learning Roadmap
2.
The Basics of RAG
The Basics of RAG
3.
RAGs and LangChain
RAGs and LangChain
4 Lessons
4 Lessons
4.
Build a Frontend for Our RAG System
Build a Frontend for Our RAG System
4 Lessons
4 Lessons
5.
Challenges
Challenges
6 Lessons
6 Lessons
Khayyam Hashmi
Computer scientist and Generative AI and Machine Learning specialist. VP of Technical Content @ educative.io.
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Anthony Walker
@_webarchitect_
Evan Dunbar
ML Engineer
Software Developer
Carlos Matias La Borde
Souvik Kundu
Front-end Developer
Vinay Krishnaiah
Software Developer
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