This project empowers you to effortlessly build powerful LLM tools and agents using familiar languages like Bash, JavaScript, and Python.
Forget complex integrations, harness the power of function calling to connect your LLMs directly to custom code and unlock a world of possibilities. Execute system commands, process data, interact with APIs – the only limit is your imagination.
Make sure you have the following tools installed:
Getting Started with AIChat
Currently, AIChat is the only CLI tool that supports llm-functions
. We look forward to more tools supporting llm-functions
.
git clone https://github.com/sigoden/llm-functions
get_current_weather.sh
execute_command.sh
#execute_py_code.py
Where is the web_search tool?
The web_search
tool itself doesn't exist directly, Instead, you can choose from a variety of web search tools.
To use one as the web_search
tool, follow these steps:
-
Choose a Tool: Available tools include:
web_search_cohere.sh
web_search_perplexity.sh
web_search_tavily.sh
web_search_vertexai.sh
-
Link Your Choice: Use the
argc
command to link your chosen tool asweb_search
. For example, to useweb_search_perplexity.sh
:$ argc link-web-search web_search_perplexity.sh
This command creates a symbolic link, making
web_search.sh
point to your selectedweb_search_perplexity.sh
tool.
Now there is a web_search.sh
ready to be added to your ./tools.txt
.
coder
todo
argc build
Symlink this repo directory to AIChat's functions_dir:
ln -s "$(pwd)" "$(aichat --info | grep -w functions_dir | awk '{$1=""; print substr($0,2)}')"
# OR
argc install
Done! Now you can use the tools and agents with AIChat.
aichat --role %functions% what is the weather in Paris?
aichat --agent todo list all my todos
Building tools for our platform is remarkably straightforward. You can leverage your existing programming knowledge, as tools are essentially just functions written in your preferred language.
LLM Functions automatically generates the JSON declarations for the tools based on comments. Refer to ./tools/demo_tool.{sh,js,py}
for examples of how to use comments for autogeneration of declarations.
Create a new bashscript in the ./tools/ directory (.e.g. execute_command.sh
).
#!/usr/bin/env bash
set -e
# @describe Execute the shell command.
# @option --command! The command to execute.
main() {
eval "$argc_command" >> "$LLM_OUTPUT"
}
eval "$(argc --argc-eval "$0" "$@")"
Create a new javascript in the ./tools/ directory (.e.g. execute_js_code.js
).
/**
* Execute the javascript code in node.js.
* @typedef {Object} Args
* @property {string} code - Javascript code to execute, such as `console.log("hello world")`
* @param {Args} args
*/
exports.run = function ({ code }) {
eval(code);
}
Create a new python script in the ./tools/ directory (e.g. execute_py_code.py
).
def run(code: str):
"""Execute the python code.
Args:
code: Python code to execute, such as `print("hello world")`
"""
exec(code)
Agent = Prompt + Tools (Function Calling) + Documents (RAG), which is equivalent to OpenAI's GPTs.
The agent has the following folder structure:
└── agents
└── myagent
├── functions.json # JSON declarations for functions (Auto-generated)
├── index.yaml # Agent definition
├── tools.txt # Shared tools
└── tools.{sh,js,py} # Agent tools
The agent definition file (index.yaml
) defines crucial aspects of your agent:
name: TestAgent
description: This is test agent
version: 0.1.0
instructions: You are a test ai agent to ...
conversation_starters:
- What can you do?
variables:
- name: foo
description: This is a foo
documents:
- local-file.txt
- local-dir/
- https://example.com/remote-file.txt
Refer to ./agents/demo for examples of how to implement a agent.
The project is under the MIT License, Refer to the LICENSE file for detailed information.