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OpenAI functions

The openai-functions Python project simplifies the usage of OpenAI's ChatGPT function calling feature. It abstracts away the complexity of parsing function signatures and docstrings by providing developers with a clean and intuitive interface.

Tests Coverage Status License: MIT PyPI version Documentation Status

Installation

You can install openai-functions from PyPI using pip:

pip install openai-functions

Usage

  1. Import the necessary modules and provide your API key:
import enum
import openai
from openai_functions import Conversation

openai.api_key = "<YOUR_API_KEY>"
  1. Create a Conversation instance:
conversation = Conversation()
  1. Define your functions using the @conversation.add_function decorator:
class Unit(enum.Enum):
    FAHRENHEIT = "fahrenheit"
    CELSIUS = "celsius"

@conversation.add_function()
def get_current_weather(location: str, unit: Unit = Unit.FAHRENHEIT) -> dict:
    """Get the current weather in a given location.

    Args:
        location (str): The city and state, e.g., San Francisco, CA
        unit (Unit): The unit to use, e.g., fahrenheit or celsius
    """
    return {
        "location": location,
        "temperature": "72",
        "unit": unit.value,
        "forecast": ["sunny", "windy"],
    }
  1. Ask the AI a question:
response = conversation.ask("What's the weather in San Francisco?")
# Should return something like:
# The current weather in San Francisco is 72 degrees Fahrenheit and it is sunny and windy.

You can read more about how to use Conversation here.

More barebones use - just schema generation and result parsing:

from openai_functions import FunctionWrapper

wrapper = FunctionWrapper(get_current_weather)
schema = wrapper.schema
result = wrapper({"location": "San Francisco, CA"})

Or you could use skills.

Another use case: data extraction

  1. Import the necessary modules and provide your API key:
from dataclasses import dataclass
import openai
from openai_functions import nlp

openai.api_key = "<YOUR_API_KEY>"
  1. Define your data container using the @nlp decorator:
@nlp
@dataclass
class Person:
    """Extract personal info"""

    name: str
    age: int
  1. Ask the AI for the extracted data:
person = Person.from_natural_language("I'm Jack and I'm 20 years old.")

You can read more about @nlp here.

Note: mypy does not parse class decorators (#3135), so you might have trouble getting type checking when using it like this. Consider using something like nlp(Person).from_natural_language to get proper type support.

How it Works

openai-functions takes care of the following tasks:

  • Parsing the function signatures (with type annotations) and docstrings.
  • Sending the conversation and function descriptions to the OpenAI model.
  • Deciding whether to call a function based on the model's response.
  • Calling the appropriate function with the provided arguments.
  • Updating the conversation with the function response.
  • Repeating the process until the model generates a user-facing message.

This abstraction allows developers to focus on defining their functions and adding user messages without worrying about the details of function calling.

Note

Please note that openai-functions is an unofficial project not maintained by OpenAI. Use it at your discretion.