Langchain Usage and QA with Chromadb

Learn how to use Langchain with Chromadb, OpenAI Embeddings, and GPT 3 for similarity search and QA.

00:00:00 Learn how to do summarization using load summarize chain and avoid encoding errors while loading documents. Also explore Q&A using vector dbqa with chroma as the vector store, and learn about custom prompts and querying outside of the chain.

📚 Learn how to do summarization and question answering using Langchain and Chromadb.

⚙️ Understand how to avoid encoding errors and keep track of tokens while loading and processing documents.

🔍 Explore different methods of querying and retrieving information from the vector store.

00:02:51 This video demonstrates the installation process and usage of Langchain, OpenAI Embeddings, and GPT 3 with Chromadb. Includes necessary dependencies and code review.

🔧 The video demonstrates how to set up the Langchain environment and install necessary libraries such as OpenAI, ChromaDB, and Token.

The code review confirms the necessary imports and defines the OpenAI key, language model, and text splitter.

📚 The video explains the process of loading and splitting the text into chunks using the text splitter.

00:05:42 Langchain Summary and QA with Chromadb using OpenAI Embeddings and GPT 3 with token count.

🔑 The video is about using Langchain and Chromadb with OpenAI Embeddings and GPT-3 to summarize text.

📚 Langchain can be used to limit the text input and summarize it using MapReduce method.

🔍 Chromadb is used for similarity search and ranking of chunks for QA.

00:08:33 Summary of a Langchain QA session using OpenAI Embeddings and GPT 3 with token count.

The video discusses the process of creating a database using Chroma DB and OpenAI embeddings.

The speaker explains the steps of loading and splitting the text documents using different techniques.

The approach of using custom prompts for generating answers in Vector DBQA is also covered.

00:11:27 Langchain Summary and QA with Chromadb using OpenAI Embeddings and GPT 3 with token count.

📚 Vector DBQA is used for question answering

🔍 Similarity search is done within the chain

💻 User can input queries and get results from the chain

00:14:20 A concise summary and QA session of using Langchain with Chromadb, OpenAI Embeddings, and GPT 3 for token count.

📚 The video demonstrates the use of Langchain and Chromadb to index and query documents.

🔍 Keeping track of tokens is crucial when working with Langchain and Chromadb.

🔎 The process of map reduce and load QA chain is explained in detail.

00:17:13 This video demonstrates the usage of Langchain for similarity search and QA using OpenAI embeddings and GPT 3. It also mentions customization options and upcoming content.

📚 This video demonstrates how to use Langchain, Chromadb, OpenAI Embeddings, and GPT-3 to create a question answering system.

👥 The video explains how to customize the prompts and print intermediate steps when using the refine and memory rank chains.

💻 The presenter also mentions the availability of detailed documentation and a Patreon link for further information.

Summary of a video "Langchain Summary and QA with Chromadb using OpenAI Embeddings and GPT 3 with token count" by echohive on YouTube.

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