Skip to content

binary-husky/void-terminal

Repository files navigation

Void Terminal

The CLI & python API for the well-known project gpt_academic.

Installation

  1. source installation.
bash init.bash
  1. Pip installation (Not recommended).
pip install void-terminal

Usage (Commandline)

  • Chat
vt -a "hello, world!"
  • Ask about how to do a linux command
vt -c "List all docker containers currently running on this system"
  • Config (For all possible configurations, read config.py in the mother project.)
# Warning! This will write configuration into .bashrc and change your ENV variables !! Use with caution !! 警告,该命令会修改你的.bashrc文件,持久修改你的环境变量
vt --set_conf API_KEY "sk-123456789123456789123456789"
vt --set_conf LLM_MODEL "gpt-3.5-turbo"
vt --set_conf DEFAULT_WORKER_NUM "20"

Usage (Python API)

  • Chat without interaction
import void_terminal as vt
# For more available configurations (including network proxy, api, using chatglm etc.),
# see config.py of in the mother project:
# https://github.com/binary-husky/gpt_academic.git
vt.set_conf(key="API_KEY", value="sk-xxxxxxxxxxxxxx")
vt.set_conf(key="LLM_MODEL", value="gpt-3.5-turbo")

chat_kwargs = vt.get_chat_default_kwargs()
chat_kwargs['inputs'] = 'Hello, world!'
result = vt.get_chat_handle()(**chat_kwargs)
print('\n*************\n' + result + '\n*************\n' )
  • Using mother project's plugin (Example: translate THIS readme file to Chinese)
import void_terminal as vt
from rich.live import Live
from rich.markdown import Markdown

vt.set_conf(key="API_KEY", value="sk-xxxxxxxxxxxxxx")
vt.set_conf(key="LLM_MODEL", value="gpt-3.5-turbo")

plugin = vt.get_plugin_handle('void_terminal.crazy_functions.BatchTranslateMarkdown->TranslateMarkdownToSpecifiedLanguage')
plugin_kwargs = vt.get_plugin_default_kwargs()
plugin_kwargs['main_input'] = './README.md'
my_working_plugin = plugin(**plugin_kwargs)

with Live(Markdown(""), auto_refresh=False) as live:
    for cookies, chat, hist, msg in my_working_plugin:
        md_str = vt.chat_to_markdown_str(chat)
        md = Markdown(md_str)
        live.update(md, refresh=True)
  • Using mother project's plugin (Example: chat with multiple LLM models)
import void_terminal as vt
from rich.live import Live
from rich.markdown import Markdown

llm_model = "gpt-3.5-turbo&gpt-4"
vt.set_conf(key="API_KEY", value="sk-xxxxxxxxxxxxxx")
vt.set_conf(key="LLM_MODEL", value=llm_model)
plugin = vt.get_plugin_handle('void_terminal.crazy_functions.InquiryMultipleLargeLanguageModels->SimultaneousInquiry')
plugin_kwargs = vt.get_plugin_default_kwargs()
plugin_kwargs['main_input'] = 'Hello, world!'
plugin_kwargs['plugin_kwargs'] = {"advanced_arg": llm_model}
my_working_plugin = plugin(**plugin_kwargs)

with Live(Markdown(""), auto_refresh=False) as live:
    for cookies, chat, hist, msg in my_working_plugin:
        md_str = vt.chat_to_markdown_str(chat)
        md = Markdown(md_str)
        live.update(md, refresh=True)

About

The CLI & python API for the well-known project gpt-academic.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published