Skip to content

XLabCU/chat-langchain

 
 

Repository files navigation

Slight Mods

Making an artcrimebot

  • ingest.sh points to the Trafficking Culture website
  • ingest.py uses the directoryLoader to process the results into a vector store.
  • takes about 10 minutes to scrape everything, process.

🦜️🔗 ChatLangChain

This repo is an implementation of a locally hosted chatbot specifically focused on question answering over the LangChain documentation. Built with LangChain and FastAPI.

The app leverages LangChain's streaming support and async API to update the page in real time for multiple users.

✅ Running locally

  1. Install dependencies: pip install -r requirements.txt
  2. Run ingest.sh to ingest LangChain docs data into the vectorstore (only needs to be done once).
    1. You can use other Document Loaders to load your own data into the vectorstore.
  3. Run the app: make start
    1. To enable tracing, make sure langchain-server is running locally and pass tracing=True to get_chain in main.py. You can find more documentation here.
  4. Open localhost:9000 in your browser.

🚀 Important Links

Deployed version (to be updated soon): chat.langchain.dev

Hugging Face Space (to be updated soon): huggingface.co/spaces/hwchase17/chat-langchain

Blog Posts:

📚 Technical description

There are two components: ingestion and question-answering.

Ingestion has the following steps:

  1. Pull html from documentation site
  2. Load html with LangChain's ReadTheDocs Loader
  3. Split documents with LangChain's TextSplitter
  4. Create a vectorstore of embeddings, using LangChain's vectorstore wrapper (with OpenAI's embeddings and FAISS vectorstore).

Question-Answering has the following steps, all handled by ChatVectorDBChain:

  1. Given the chat history and new user input, determine what a standalone question would be (using GPT-3).
  2. Given that standalone question, look up relevant documents from the vectorstore.
  3. Pass the standalone question and relevant documents to GPT-3 to generate a final answer.

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 80.8%
  • HTML 17.4%
  • Shell 1.5%
  • Makefile 0.3%