Skip to content

Latest commit

 

History

History
27 lines (14 loc) · 678 Bytes

README.md

File metadata and controls

27 lines (14 loc) · 678 Bytes

Astra Agent Memory with PDF context

Astra Agent Memory

The purpose of this demo is to combine the processing of PDF files, embedding generation, multiple retrieval metrics and a user interface with streamlit that also consider agent memory.

Installing dependencies

pip install -r requirements.txt

DataStax Astra

Create an account and a Vector DB at (astra.datastax.com).

Environment Variables

Define the AstraDB credentials and Open AI API Key in the .env file.

Copy .env.sample to .env

Running

streamlit run app.py

Loading PDF

I uploaded and converted PDF using the notebook "Explicando Retrieval Augmented Generation.ipynb".