Skip to content

Cossackx/Alpaca-Turbo

 
 

Repository files navigation

Alpaca-Turbo

Alpaca-Turbo is a language model that can be run locally without much setup required. It is a user-friendly web UI for the alpaca.cpp language model based on LLaMA, with unique features that make it stand out from other implementations. The goal is to provide a seamless chat experience that is easy to configure and use, without sacrificing speed or functionality.

Alpaca-Turbo Screenshot 2 Alpaca-Turbo Screenshot 1

Installation Steps

Using Docker (only Linux is supported with docker)

Note: for some reason this docker container works on linux but not on windows

Docker must be installed on your system

  1. Download the latest alpaca-turbo.zip from the release page. here
  2. Extract the contents of the zip file into a directory named alpaca-turbo.
  3. Copy your alpaca models to alpaca-turbo/models/ directory.
  4. Run the following command to set everything up:
      docker-compose up
    
  5. Visit http://localhost:5000 to use the chat interface of the chatbot.

Windows/Mac M1/M2 (miniconda)

  1. Install miniconda

    • Install for all users
    • Make sure to add c:\ProgramData\miniconda3\condabin to your environment variables
  2. Download the latest alpaca-turbo.zip from the release page. here

  3. Extract Alpaca-Turbo.zip to Alpaca-Turbo

    Make sure you have enough space for the models in the extracted location

  4. Copy your alpaca models to alpaca-turbo/models/ directory.

  5. Open cmd as Admin and type

    conda init
    
  6. close that window

  7. open a new cmd window in your Alpaca-Turbo dir and type

    conda create -n alpaca_turbo python=3.8 -y
    conda activate alpaca_turbo
    pip install -r requirements.txt
    python api.py
    
  8. Visit http://localhost:5000 select your model and click change wait for the model to load

  9. ready to interact

CREDITS

About

Web UI to run alpaca model locally

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Languages

  • Python 66.8%
  • TypeScript 16.0%
  • CSS 9.1%
  • HTML 6.9%
  • Dockerfile 1.1%
  • Shell 0.1%