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Seamlessly integrate LLMs as Python functions

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magentic

Easily integrate Large Language Models into your Python code. Simply use the @prompt decorator to create functions that return structured output from the LLM. Mix LLM queries and function calling with regular Python code to create complex logic.

magentic is

  • Compact: Query LLMs without duplicating boilerplate code.
  • Atomic: Prompts are functions that can be individually tested and reasoned about.
  • Transparent: Create "chains" using regular Python code. Define all of your own prompts.
  • Compatible: Use @prompt functions as normal functions, including with decorators like @lru_cache.
  • Type Annotated: Works with linters and IDEs.

Continue reading for sample usage, or go straight to the examples directory.

Installation

pip install magentic

or using poetry

poetry add magentic

Configure your OpenAI API key by setting the OPENAI_API_KEY environment variable or using openai.api_key = "sk-...". See the OpenAI Python library documentation for more information.

Usage

The @prompt decorator allows you to define a template for a Large Language Model (LLM) prompt as a Python function. When this function is called, the arguments are inserted into the template, then this prompt is sent to an LLM which generates the function output.

from magentic import prompt


@prompt('Add more "dude"ness to: {phrase}')
def dudeify(phrase: str) -> str:
    ...  # No function body as this is never executed


dudeify("Hello, how are you?")
# "Hey, dude! What's up? How's it going, my man?"

The @prompt decorator will respect the return type annotation of the decorated function. This can be any type supported by pydantic including a pydantic model.

from magentic import prompt
from pydantic import BaseModel


class Superhero(BaseModel):
    name: str
    age: int
    power: str
    enemies: list[str]


@prompt("Create a Superhero named {name}.")
def create_superhero(name: str) -> Superhero:
    ...


create_superhero("Garden Man")
# Superhero(name='Garden Man', age=30, power='Control over plants', enemies=['Pollution Man', 'Concrete Woman'])

An LLM can also decide to call functions. In this case the @prompt-decorated function returns a FunctionCall object which can be called to execute the function using the arguments provided by the LLM.

from typing import Literal

from magentic import prompt, FunctionCall


def activate_oven(temperature: int, mode: Literal["broil", "bake", "roast"]) -> str:
    """Turn the oven on with the provided settings."""
    return f"Preheating to {temperature} F with mode {mode}"


@prompt(
    "Prepare the oven so I can make {food}",
    functions=[activate_oven],
)
def configure_oven(food: str) -> FunctionCall[str]:
    ...


output = configure_oven("cookies!")
# FunctionCall(<function activate_oven at 0x1105a6200>, temperature=350, mode='bake')
output()
# 'Preheating to 350 F with mode bake'

Sometimes the LLM requires making one or more function calls to generate a final answer. The @prompt_chain decorator will resolve FunctionCall objects automatically and pass the output back to the LLM to continue until the final answer is reached.

In the following example, when describe_weather is called the LLM first calls the get_current_weather function, then uses the result of this to formulate its final answer which gets returned.

from magentic import prompt_chain


def get_current_weather(location, unit="fahrenheit"):
    """Get the current weather in a given location"""
    # Pretend to query an API
    return {
        "location": location,
        "temperature": "72",
        "unit": unit,
        "forecast": ["sunny", "windy"],
    }


@prompt_chain(
    "What's the weather like in {city}?",
    functions=[get_current_weather],
)
def describe_weather(city: str) -> str:
    ...


describe_weather("Boston")
# 'The current weather in Boston is 72°F and it is sunny and windy.'

LLM-powered functions created using @prompt and @prompt_chain can be supplied as functions to other @prompt/@prompt_chain decorators, just like regular python functions. This enables increasingly complex LLM-powered functionality, while allowing individual components to be tested and improved in isolation.

See the examples directory for more.

Chat Prompting

The @chatprompt decorator works just like @prompt but allows you to pass chat messages as a template rather than a single text prompt. This can be used to provide a system message or for few-shot prompting where you provide example responses to guide the model's output. Format fields denoted by curly braces {example} will be filled in all messages - use the escape_braces function to prevent a string being used as a template.

from magentic import chatprompt, AssistantMessage, SystemMessage, UserMessage
from magentic.chatprompt import escape_braces

from pydantic import BaseModel


class Quote(BaseModel):
    quote: str
    character: str


@chatprompt(
    SystemMessage("You are a movie buff."),
    UserMessage("What is your favorite quote from Harry Potter?"),
    AssistantMessage(
        Quote(
            quote="It does not do to dwell on dreams and forget to live.",
            character="Albus Dumbledore",
        )
    ),
    UserMessage("What is your favorite quote from {movie}?"),
)
def get_movie_quote(movie: str) -> Quote:
    ...


get_movie_quote("Iron Man")
# Quote(quote='I am Iron Man.', character='Tony Stark')

Streaming

The StreamedStr (and AsyncStreamedStr) class can be used to stream the output of the LLM. This allows you to process the text while it is being generated, rather than receiving the whole output at once.

from magentic import prompt, StreamedStr


@prompt("Tell me about {country}")
def describe_country(country: str) -> StreamedStr:
    ...


# Print the chunks while they are being received
for chunk in describe_country("Brazil"):
    print(chunk, end="")
# 'Brazil, officially known as the Federative Republic of Brazil, is ...'

Multiple StreamedStr can be created at the same time to stream LLM outputs concurrently. In the below example, generating the description for multiple countries takes approximately the same amount of time as for a single country.

from time import time

countries = ["Australia", "Brazil", "Chile"]


# Generate the descriptions one at a time
start_time = time()
for country in countries:
    # Converting `StreamedStr` to `str` blocks until the LLM output is fully generated
    description = str(describe_country(country))
    print(f"{time() - start_time:.2f}s : {country} - {len(description)} chars")

# 22.72s : Australia - 2130 chars
# 41.63s : Brazil - 1884 chars
# 74.31s : Chile - 2968 chars


# Generate the descriptions concurrently by creating the StreamedStrs at the same time
start_time = time()
streamed_strs = [describe_country(country) for country in countries]
for country, streamed_str in zip(countries, streamed_strs):
    description = str(streamed_str)
    print(f"{time() - start_time:.2f}s : {country} - {len(description)} chars")

# 22.79s : Australia - 2147 chars
# 23.64s : Brazil - 2202 chars
# 24.67s : Chile - 2186 chars

Object Streaming

Structured outputs can also be streamed from the LLM by using the return type annotation Iterable (or AsyncIterable). This allows each item to be processed while the next one is being generated. See the example in examples/quiz for how this can be used to improve user experience by quickly displaying/using the first item returned.

from collections.abc import Iterable
from time import time

from magentic import prompt
from pydantic import BaseModel


class Superhero(BaseModel):
    name: str
    age: int
    power: str
    enemies: list[str]


@prompt("Create a Superhero team named {name}.")
def create_superhero_team(name: str) -> Iterable[Superhero]:
    ...


start_time = time()
for hero in create_superhero_team("The Food Dudes"):
    print(f"{time() - start_time:.2f}s : {hero}")

# 2.23s : name='Pizza Man' age=30 power='Can shoot pizza slices from his hands' enemies=['The Hungry Horde', 'The Junk Food Gang']
# 4.03s : name='Captain Carrot' age=35 power='Super strength and agility from eating carrots' enemies=['The Sugar Squad', 'The Greasy Gang']
# 6.05s : name='Ice Cream Girl' age=25 power='Can create ice cream out of thin air' enemies=['The Hot Sauce Squad', 'The Healthy Eaters']

Asyncio

Asynchronous functions / coroutines can be used to concurrently query the LLM. This can greatly increase the overall speed of generation, and also allow other asynchronous code to run while waiting on LLM output. In the below example, the LLM generates a description for each US president while it is waiting on the next one in the list. Measuring the characters generated per second shows that this example achieves a 7x speedup over serial processing.

import asyncio
from time import time
from typing import AsyncIterable

from magentic import prompt


@prompt("List ten presidents of the United States")
async def iter_presidents() -> AsyncIterable[str]:
    ...


@prompt("Tell me more about {topic}")
async def tell_me_more_about(topic: str) -> str:
    ...


# For each president listed, generate a description concurrently
start_time = time()
tasks = []
async for president in await iter_presidents():
    # Use asyncio.create_task to schedule the coroutine for execution before awaiting it
    # This way descriptions will start being generated while the list of presidents is still being generated
    task = asyncio.create_task(tell_me_more_about(president))
    tasks.append(task)

descriptions = await asyncio.gather(*tasks)

# Measure the characters per second
total_chars = sum(len(desc) for desc in descriptions)
time_elapsed = time() - start_time
print(total_chars, time_elapsed, total_chars / time_elapsed)
# 24575 28.70 856.07


# Measure the characters per second to describe a single president
start_time = time()
out = await tell_me_more_about("George Washington")
time_elapsed = time() - start_time
print(len(out), time_elapsed, len(out) / time_elapsed)
# 2206 18.72 117.78

Additional Features

  • The functions argument to @prompt can contain async/coroutine functions. When the corresponding FunctionCall objects are called the result must be awaited.
  • The Annotated type annotation can be used to provide descriptions and other metadata for function parameters. See the pydantic documentation on using Field to describe function arguments.
  • The @prompt and @prompt_chain decorators also accept a model argument. You can pass an instance of OpenaiChatModel (from magentic.chat_model.openai_chat_model) to use GPT4 or configure a different temperature.

Configuration

The order of precedence of configuration is

  1. Arguments passed when initializing an instance in Python
  2. Environment variables

The following environment variables can be set.

Environment Variable Description Example
MAGENTIC_OPENAI_MODEL OpenAI model gpt-4
MAGENTIC_OPENAI_TEMPERATURE OpenAI temperature 0.5

Type Checking

Many type checkers will raise warnings or errors for functions with the @prompt decorator due to the function having no body or return value. There are several ways to deal with these.

  1. Disable the check globally for the type checker. For example in mypy by disabling error code empty-body.
    # pyproject.toml
    [tool.mypy]
    disable_error_code = ["empty-body"]
  2. Make the function body ... (this does not satisfy mypy) or raise.
    @prompt("Choose a color")
    def random_color() -> str:
        ...
  3. Use comment # type: ignore[empty-body] on each function. In this case you can add a docstring instead of ....
    @prompt("Choose a color")
    def random_color() -> str:  # type: ignore[empty-body]
        """Returns a random color."""

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