Overview
Explore the concept of LLM Chains using GPT 3.5 and other language models in this third installment of the LangChain series. Dive into the world of generic and utility chains, with a focus on LLMChain, a key feature in LangChain that forms the foundation for advanced applications like conversational AI and retrieval augmented machine learning. Learn how to chain together different components to create sophisticated use cases around Large Language Models, integrating with OpenAI's GPT-3 and GPT-3.5 models as well as open-source alternatives like Google's flan-t5 models. Discover the potential of LangChain for developing chatbots, Generative Question-Answering systems, and summarization tools. Follow along with code examples from the LangChain Handbook and gain insights into various chain types, including utility chains and those available in the Langchain hub.
Syllabus
What are Langchain chains?
LLMChain
Utility chains walkthrough
All generic chains in langchain
Langchain hub
Other chains in langchain
Taught by
James Briggs