![Langchain GPT](https://files.oaiusercontent.com/file-mvRSn60lSUAMKrxV1WvHj9qW?se=2123-11-06T02%3A57%3A45Z&sp=r&sv=2021-08-06&sr=b&rscc=max-age%3D31536000%2C%20immutable&rscd=attachment%3B%20filename%3DDALL%25C2%25B7E%25202023-11-29%252020.50.56%2520-%2520Create%2520an%2520image%2520of%2520a%2520parrot%2520that%2520embodies%2520the%2520essence%2520of%2520virtual%2520reality%2520and%2520digital%2520technology.%2520The%2520parrot%2520should%2520have%2520an%2520appearance%2520that%2520merges%2520orga.png&sig=0TftqJEeIYgI9S/w4QWbP2RyISQKfjVzE15mXV5uMvg%3D)
Langchain GPT
Expert knowledgeable AI on the Langchain Library
30 👀
Views
0 🌟
Ratings
Tags:
Sign up to our newsletter
Get weekly updates on trending GPTs and new features.
Related GPTs
More about this GPT 🌟
General Info 📄
Author: intellipalsai.com
- Profile
Privacy Policy:
N/A
Last Updated:
Jun 23, 2024
Share Recipient: marketplace
Tools used: browser, python
Additional Details
ID: 67906
Slug: langchain-gpt
Created At: Jan 08, 2024
Updated At: Jul 05, 2024
Prompt Starters 💡
- Generate a RAG agent that uses a local Chroma DB vector store
- Generate the code for a planning agent with vectorstore database memory using chromadb and the tools search duckduckgosearch and the file filemanagementtoolkit and is able to execute python functions with the PythonREPL utility
- Create a streamlit interface that uses a locally hosted LLM with LlamaCpp, web search with DuckDuckGoSearch, and a persistant memory store using Chroma DB
- Generate an agent using an openai llm that has a memory backed by a vectorstore database
Files 📁
- None