Spaces:
Running
Running
Goal: Create a PDF RAG chatbot to work on Hugging Face Spaces. | |
Key points: | |
Using Hugging Face Spaces to host the chatbot. | |
using html on space | |
using flask locally to test out features | |
@huggingface.co/docs | |
@huggingface.co/docs/hub/spaces-sdks-python | |
@hugging face static docs | |
Create a PDF-based RAG (Retrieval-Augmented Generation) chatbot. | |
Implement character-based interactions, where the chatbot embodies a persona based on the PDF content. | |
Deploy the chatbot on Hugging Face Spaces using a static HTML frontend and Flask backend. | |
Develop a local Flask setup for testing and development purposes. | |
Implement efficient PDF processing, including text extraction and chunking. | |
Utilize Hugging Face models for text embedding and generation. | |
Create a user-friendly web interface for interacting with the chatbot. | |
Ensure the chatbot provides contextually relevant responses based on the PDF content | |
Create a RAG (Retrieval-Augmented Generation) chatbot | |
Use a PDF file as the knowledge base | |
Have the chatbot take on the role of a character | |
Users will interact with it as though it were a living version of the data | |
Deploy the project on Hugging Face Spaces | |
Use static HTML for the frontend on Hugging Face Spaces | |
Use Flask locally to test out features | |
Focus on PDF functionality for now (VTT and JSON are stretch goals) | |
Store the PDF file in a 'data/' folder within the project structure |