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Tiny AI client for LLMs. As simple as it gets.

Project description

Tiny AI Client

Inspired by tinygrad and simpleaichat, tiny-ai-client is the easiest way to use and switch LLMs with vision and tool usage support. It works because it is tiny, simple and most importantly fun to develop.

I want to change LLMs with ease, while knowing what is happening under the hood. Langchain is cool, but became bloated, complicated there is just too much chaos going on. I want to keep it simple, easy to understand and easy to use. If you want to use a LLM and have an API key, you should not need to read a 1000 lines of code and write response.choices[0].message.content to get the response.

Simple and tiny, that's the goal.

Features:

  • OpenAI
  • Anthropic
  • Async
  • Tool usage
  • Structured output
  • Vision
  • PyPI package tiny-ai-client
  • Gemini (vision, no tools)
  • Ollama (text, no vision, no tools) (you can also pass a custom model_server_url to AI/AsyncAI)
  • Groq (text, tools, no vision)

Roadmap:

  • Gemini tools

Simple

tiny-ai-client is simple and intuitive:

  • Do you want set your model? Just pass the model name.
  • Do you want to change your model? Just change the model name.
  • Want to send a message? msg: str = ai("hello") and say goodbye to parsing a complex json.
  • Do you want to use a tool? Just pass the tool as a function
    • Type hint it with a single argument that inherits from pydantic.BaseModel and just pass the callable. AI will call it and get its results to you if the model wants to.
  • Want to use vision? Just pass a PIL.Image.Image.
  • Video? Just pass a list of PIL.Image.Image.

Tiny

  • tiny-ai-client is very small, its core logic is < 250 lines of code (including comments and docstrings) and ideally won't pass 500. It is and always will be easy to understand, tweak and use.
    • The core logic is in tiny_ai_client/models.py
    • Vision utils are in tiny_ai_client/vision.py
    • Tool usage utils are in tiny_ai_client/tools.py
  • The interfaces are implemented by subclassing tiny_ai_client.models.LLMClientWrapper binding it to a specific LLM provider. This logic might get bigger, but it is isolated in a single file and does not affect the core logic.

Usage

pip install tiny-ai-client

For OpenAI:

from tiny_ai_client import AI, AsyncAI

ai = AI(
    model_name="gpt-4o", system="You are Spock, from Star Trek.", max_new_tokens=128
)
response = ai("What is the meaning of life?")

ai = AsyncAI(
    model_name="gpt-4o", system="You are Spock, from Star Trek.", max_new_tokens=128
)
response = await ai("What is the meaning of life?")

For Anthropic:

from tiny_ai_client import AI, AsyncAI

ai = AI(
    model_name="claude-3-haiku-20240307", system="You are Spock, from Star Trek.", max_new_tokens=128
)
response = ai("What is the meaning of life?")

ai = AsyncAI(
    model_name="claude-3-haiku-20240307", system="You are Spock, from Star Trek.", max_new_tokens=128
)
response = await ai("What is the meaning of life?")

We also support tool usage for both. You can pass as many functions you want as type-hinted functions with a single argument that inherits from pydantic.BaseModel. AI will call the function and get its results to you.

from pydantic import BaseModel, Field

from tiny_ai_client import AI, AsyncAI


class WeatherParams(BaseModel):
    location: str = Field(..., description="The city and state, e.g. San Francisco, CA")
    unit: str = Field(
        "celsius", description="Temperature unit", enum=["celsius", "fahrenheit"]
    )


def get_current_weather(weather: WeatherParams):
    """
    Get the current weather in a given location
    """
    return f"Getting the current weather in {weather.location} in {weather.unit}."

ai = AI(
    model_name="gpt-4o",
    system="You are Spock, from Star Trek.",
    max_new_tokens=32,
    tools=[get_current_weather],
)
response = ai("What is the meaning of life?")
print(f"{response=}")
response = ai("Please get the current weather in celsius for San Francisco.")
print(f"{response=}")
response = ai("Did it work?")
print(f"{response=}")

And vision. Pass a list of PIL.Image.Image (or a single one) and we will handle the rest.

from tiny_ai_client import AI, AsyncAI
from PIL import Image

ai = AI(
    model_name="gpt-4o",
    system="You are Spock, from Star Trek.",
    max_new_tokens=32,
)

response = ai(
    "Who is on the images?",
    images[
        Image.open("assets/kirk.jpg"),
        Image.open("assets/spock.jpg")
    ]
)
print(f"{response=}")

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