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LLM Interaction Framework

Project description

Rigging

Rigging is a lightweight LLM interaction framework built on Pydantic XML and LiteLLM. It supports useful primitives for validating LLM output and adding tool calling abilities to models that don't natively support it. It also has various helpers for common tasks like structured object parsing, templating chats, overloading generation parameters, stripping chat segments, and continuing conversations.

Modern python with type hints, pydantic validation, native serialization support, etc.

Basic Chats

import rigging as rg

generator = rg.get_generator("claude-2.1")
chat = generator.chat(
    [
        {"role": "system", "content": "You are a wizard harry."},
        {"role": "user", "content": "Say hello!"},
    ]
).run()

print(chat.last)
# [assistant]: Hello!

print(f"{chat.last!r}")
# Message(role='assistant', parts=[], content='Hello!')

print(chat.prev)
# [
#   Message(role='system', parts=[], content='You are a wizard harry.'),
#   Message(role='user', parts=[], content='Say hello!'),
# ]

print(chat.json)
# [{ ... }]

Model Parsing

import rigging as rg

class Answer(rg.CoreModel):
    content: str

chat = (
    rg.get_generator("claude-2.1")
    .chat([
        {"role": "user", "content": f"Say your name between {Answer.xml_tags()}."},
    ])
    .until_parsed_as(Answer)
    .run()
)

answer = chat.last.parse(Answer)
print(answer.content)

# "Claude"

print(f"{chat.last!r}")

# Message(role='assistant', parts=[
#   ParsedMessagePart(model=Answer(content='Claude'), ref='<answer>Claude</answer>')
# ], content='<Answer>Claude</Answer>')

chat.last.content = "new content" # Updating content strips parsed parts
print(f"{chat.last!r}")

# Message(role='assistant', parts=[], content='new content')

Tools

from typing import Annotated
import rigging as rg

class WeatherTool(rg.Tool):
    @property
    def name(self) -> str:
        return "weather"

    @property
    def description(self) -> str:
        return "A tool to get the weather for a location"

    def get_for_city(self, city: Annotated[str, "The city name to get weather for"]) -> str:
        print(f"[=] get_for_city('{city}')")
        return f"The weather in {city} is nice today"

chat = (
    rg.get_generator("mistral/mistral-tiny")
    .chat(
        [
            {"role": "user", "content": "What is the weather in London?"},
        ]
    )
    .using(WeatherTool())
    .run()
)

# [=] get_for_city('London')

print(chat.last.content)

# "Based on the information I've received, the weather in London is nice today."

Continuing Chats

import rigging as rg

generator = rg.get_generator("gpt-3.5-turbo")
chat = generator.chat([
        {"role": "user", "content": "Hello, how are you?"},
]).run()

print(chat.last.content)

# "Hello! I'm an AI language model, ..."

cont = chat.continue_(
    {"role": "user", "content": "That's good, tell me a joke"}
).run()

print(cont.last.content)

# "Sure, here's a joke for you: ..."

Basic Templating

import rigging as rg

template = rg.get_generator("gpt-4").chat([
    {"role": "user", "content": "What is the capitol of $country?"},
])

for country in ["France", "Germany"]:
    print(template.apply(country=country).run().last)

# The capital of France is Paris.
# The capital of Germany is Berlin.

Overload Generation Params

import rigging as rg

pending = rg.get_generator("gpt-3.5-turbo,max_tokens=50").chat([
    {"role": "user", "content": "Say a haiku about boats"},
])

for temp in [0.1, 0.5, 1.0]:
    print(pending.overload(temperature=temp).run().last.content)

Strip Parsed Sections

import rigging as rg

class Reasoning(rg.CoreModel):
    content: str

meaning = rg.get_generator("claude-2.1").chat([
    {
        "role": "user",
        "content": "What is the meaning of life in one sentence? "
        f"Document your reasoning between {Reasoning.xml_tags()} tags.",
    },
]).run()

# Gracefully handle mising models
reasoning = meaning.last.try_parse(Reasoning)
if reasoning:
    print("reasoning:", reasoning.content.strip())

# Strip parsed content to avoid sharing
# previous thoughts with the model.
without_reasons = meaning.strip(Reasoning)
print("meaning of life:", without_reasons.last.content.strip())

# follow_up = without_thoughts.continue_(...)

Logging configuration

$ RIGGING_LOG_LEVEL=TRACE python my_script.py

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