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Command-line tool for interacting with LLMs

Project description

azc - LLM Chat from the command-line

A command-line tool for interacting with LLMs.

Why should you use this?

  • If you're a command-line junkie, you don't need to switch to another tool to chat with your LLM
  • One tool, multiple LLMs (OpenAI, Anthropic, Ollama, Gemini...) - Why settle for one when you can have them all?
  • Pay-as-you-go pricing for LLM providers (Cheaper in many cases)

Features

  • Multi-provider support
    • Ollama
    • OpenAI
    • Anthropic
    • Gemini
    • Grok
  • Streaming responses (see response as it is being generated)
  • Persistent command-line history (use up and down arrows to navigate)
  • Chat history & reset (full discussion, start new chat)
  • Switch provider and model (compare models and providers)
  • Markdown output (nicely formatted headings, lists, tables, etc.)
  • Command-line parameters (first prompt)

Possible future features

  • Support more LLM providers (Perplexity, Groq...)
  • Support RTL languages
  • Save output to file
  • Patterns library (a-la fabric)
  • Upload files
  • Aggregate responses from multiple providers
  • Support more modes (image generation, transcription, etc.)
  • Track total cost of API calls
  • Add to homebrew

Installation

pip install azc

if you want to make it available system-wide (without having to activate your python environment or cd to the project folder), you can install it system-wide:

echo 'alias azc="$HOME/projects/azc/env/bin/azc"' >> ~/.bashrc
  • Replace ~/.bashrc with the shell you are using (zsh, bash, etc.)
  • Replace $HOME/projects/azc/env/bin/azc with the path to the azc executable
  • On Windows, you can add the path to your PATH environment variable (ask your nearest LLM for more details)

You can also build an executable and place it in a central location using pyinstaller. I am using build_exe.sh to do this on my mac. It installs the az command

Running

% azc
azc> how tall is the eiffel tower?
                                  ollama:llama3.1:latest (1st message)
  The Eiffel Tower stands at an impressive height of:

  • 324 meters (1,063 feet) tall, including its antenna.
  • 302.9 meters (994.7 feet) tall, excluding its antenna.

  It was the world's tallest man-made structure when it was first built for the 1889 World's Fair in
  Paris.

azc> q
👋 Bye
%

You can specify the first prompt as a command-line argument:

% azc -b "What is the capital of Panama?"
The capital of Panama is Panama City.
%

Command-line parameters

Parameter Description
(default) First prompt
-d / --double-enter Press enter twice to submit - This is useful for those who want to use multi-line prompts without pressing ctrl-j to add new line.
-b / --batch Exit after the first response
-v / --verbose Print verbose output
-p / --provider The provider to use (e.g. openai or ollama). Abbreviations allowed, like op for openai
-m /--model The model to use. Abbreviations allowed, like tu for gpt-3.5-turbo

Commands

Command Description
q or exit Exit the program
h or ? Show help
l List models
n Start new chat
p Change provider. p - (p followed by a space) trigger auto-completion menu
m Change model
ctrl-n New line

Setup

You will need to configure at least one LLM API.

You should create a .env file which contains your API Key/s. The .env file should be located in home directory, either directly under $HOME or under $HOME/.config/, the latter taking precedence. See .env.sample for a sample .env file, with the expected environment variables' names. Remove those that are not relevant to you.

Here are the links to the API sign-up pages (or download in case of Ollama):

You can configure the default models you want to use in azc_config.json. This file is expected to be found under ~/.config/azc_config.json or ~/.azc_config.json if you don't have a ~/.config folder.

Limitations

  • Streaming updates are limited to screen height (after that it displays ellipsis and will update the display only when the response is complete)
  • No support for RTL languages

Contributing

Contributions are welcome! Please feel free to submit a PR.

To run in development:

% python -m az.az

License

MIT

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