Tiny Chat

Created By
to-aokia year ago
This is an LLM application with chat functionality, featuring chat using RAG, a database, and MCP server capabilities. The UI is designed for Japanese users.
Overview

What is Tiny Chat?

Tiny Chat is an LLM application that provides chat functionality, utilizing RAG (Retrieval-Augmented Generation) and a database, designed specifically for Japanese users.

How to use Tiny Chat?

To use Tiny Chat, you can either run it from the source code or install the package. For development, use the command streamlit run tiny_chat/app.py --server.address=127.0.0.1. For the installed package, simply run tiny-chat.

Key features of Tiny Chat?

  • Chat functionality powered by LLM and RAG.
  • Database integration for enhanced performance.
  • Designed with a user interface tailored for Japanese users.

Use cases of Tiny Chat?

  1. Engaging in real-time conversations using AI.
  2. Providing customer support through automated chat.
  3. Enhancing user interaction in applications with chat features.

FAQ from Tiny Chat?

  • Is Tiny Chat free to use?

Yes! Tiny Chat is open-source and free to use under the MIT license.

  • What programming language is Tiny Chat built with?

Tiny Chat is built using Python.

  • How can I install Tiny Chat?

You can install Tiny Chat by following the installation instructions provided in the documentation.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
to-aoki
Star
1
Language
Python
License
MIT license

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