학습 보조 어시스턴트

Created By
ktwomea year ago
MCP server for analyzing PDFs and recommending study problems
Overview

what is Learning-Assistant?

Learning-Assistant is a service designed to analyze PDF documents and recommend study problems to enhance user learning.

how to use Learning-Assistant?

To use Learning-Assistant, upload a PDF file, and it will convert it into a markdown format while providing relevant study problems based on user queries.

key features of Learning-Assistant?

  • PDF file upload and conversion to markdown format
  • RAG (Retrieval-Augmented Generation) based on user questions
  • Generation of problems categorized by difficulty level

use cases of Learning-Assistant?

  1. Assisting students in understanding complex topics by analyzing their study materials.
  2. Providing tailored problem sets to reinforce learning based on user queries.
  3. Converting study materials into a more accessible format for easier review.

FAQ from Learning-Assistant?

  • Can Learning-Assistant analyze any PDF document?

Yes! Learning-Assistant can analyze various PDF documents to assist with learning.

  • Is there a limit to the size of the PDF file I can upload?

Currently, there may be size limitations based on server capabilities, but we aim to support larger files in future updates.

  • How accurate are the problem recommendations?

The accuracy of problem recommendations depends on the quality of the PDF content and the specificity of user queries.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
ktwome
Star
0
Language
Python
License
-

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