Skip to main content

for creating fast and easy llm apps

Project description

LLMKit

logo

LLMKit is a framework designed for building applications that leverage large language models (LLMs). It aims to provide a text generation library that adheres to established software development best practices. With a strong focus on Modularity and Separation of Concerns, Robust Error Handling, and Modern Software Engineering Principles, LLMKit delivers a well-structured alternative to more monolithic frameworks like LangChain.

"LangChain isn't a library, it's a collection of demos held together by duct tape, fstrings, and prayers."

(This does not mean we don't appreciate Langchain. Also, current model invoke logic in LLMKit are langchain functions wrappers.)

Architecture

LLMKit Architecture

  1. LLM Handler: Manages interaction with different LLM providers (e.g., OpenAI, Ollama, Azure).
  2. Generation Engine: Orchestrates the generation process, including prompt crafting, invoking the LLM through llm handler, and post-processing.
  3. Proteas: A sophisticated prompt management system that loads and manages prompt templates from YAML files (prompt.yaml).
  4. LLMService (Base Class): A base class that serves as a template for users to implement their custom service logic.
  5. App: The application that consumes the services provided by LLMKit, receiving structured generation_result responses for further processing.

Features

Advanced Error Handling

LLMKit incorporates sophisticated error handling mechanisms to ensure robust and reliable interactions with LLMs:

  • Retry Mechanisms: Utilizes the tenacity library to implement retries with exponential backoff for handling transient errors like rate limits or network issues.
  • Custom Exception Handling: Provides tailored responses to specific errors (e.g., insufficient quota), enabling graceful degradation and clearer insights into failure scenarios.

Proteas: The Main Prompt Management System

Proteas serves as LLMKit's core prompt management system, offering powerful tools for crafting, managing, and reusing prompts:

  • Prompt Crafting: Utilizes PromptTemplate to create consistent and dynamic prompts based on placeholders and data inputs.
  • Unit Skeletons: Supports loading and managing prompt templates from YAML files, promoting reusability and organization.

BaseLLMService Class

LLMKit provides an abstract BaseLLMService class to guide users in implementing their own service layers:

  • Modern Software Development Practices: Encourages adherence to best practices through a well-defined interface.
  • Customization: Allows developers to tailor the service layer to their specific application needs while leveraging the core functionalities provided by LLMKit.
  • Extensibility: Facilitates the addition of new features and integrations without modifying the core library.

Installation

Install LLMKit via pip:

pip install llmservice

Quick Start

Core Components

LLMKit provides the following core modules:

  • llmhandler: Manages interactions with different LLM providers.
  • generation_engine: Handles the process of prompt crafting, LLM invocation, and post-processing.
  • base_service: Provides an abstract class that serves as a blueprint for building custom services.

Creating a Custom LLMService

To create your own service layer, follow these steps:

Step 0: Create your prompts.yaml file

Proteas uses a yaml file to load and manage your prompts. Prompts are encouraged to store as prompt template units where component of a prompt is decomposed into prompt template units and store in such way. To read more go to proteas docs (link here)

Create a new Python file (e.g., prompts.yaml)

add these lines

main:


  - name: "input_paragraph"
    statement_suffix: "Here is"
    question_suffix: "What is "
    placeholder_proclamation: input text to be translated
    placeholder: "input_paragraph"


  - name: "translate_to_russian"
    info: > 
      take above text and translate it to russian with a scientific language, Do not output any additiaonal text.
   

Step 1: Subclass BaseLLMService

Create a new Python file (e.g., my_llm_service.py) and extend the BaseLLMService class. In your app all llm generation data flow will go through this class. This is a good way of not coupling rest of your app logic with LLM relevant logics.

You simply arange the names of your prompt template units in a list and pass this to generation engine.

from llmservice.base_service import BaseLLMService
from llmservice.generation_engine import GenerationEngine
import logging


class MyLLMService(BaseLLMService):
    def __init__(self, logger=None):
        self.logger = logger or logging.getLogger(__name__)
        self.generation_engine = GenerationEngine(logger=self.logger, model_name="gpt-4o-mini")

    def translate_to_russian(self, input_paragraph: str):
        data_for_placeholders = {'input_paragraph': input_paragraph}
        order = ["input_paragraph", "translate_to_russian"]

        unformatted_prompt = self.generation_engine.craft_prompt(data_for_placeholders, order)

        generation_result = self.generation_engine.generate_output(
            unformatted_prompt,
            data_for_placeholders,
            response_type="string"
        )

        return generation_result.content

Step 2: Use the Custom Service

# app.py
from my_llm_service import MyLLMService

if __name__ == '__main__':
    service = MyLLMService()
    result = service.translate_to_russian("Hello, how are you?")
    print(result)

Result will be a generation_result object which inludes all the information you need.

some notes to add to future

The Result Monad enhances error management by providing detailed insights into why a particular operation might have failed, enhancing the robustness of systems that interact with external data. As evident from the examples, each of these monads facilitates the creation of function chains, employing a paradigm often referred to as a “railroad approach.” This approach visualizes the sequence of functions as a metaphorical railroad track, where the code smoothly travels along, guided by the monadic structure. The beauty of this railroad approach lies in its ability to elegantly manage complex computations and transformations, ensuring a structured and streamlined flow of operations.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

llmservice-0.0.5.tar.gz (14.9 kB view details)

Uploaded Source

Built Distribution

llmservice-0.0.5-py3-none-any.whl (14.0 kB view details)

Uploaded Python 3

File details

Details for the file llmservice-0.0.5.tar.gz.

File metadata

  • Download URL: llmservice-0.0.5.tar.gz
  • Upload date:
  • Size: 14.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.1 CPython/3.9.20

File hashes

Hashes for llmservice-0.0.5.tar.gz
Algorithm Hash digest
SHA256 5e78a11bc274c08fb13a692f39fc5c9e11df4bccbcd233196c48e92474faaf25
MD5 c9bc92d6f26023b61fec6636ca1c4161
BLAKE2b-256 0df80e0b0cc4a6d49627e533e96a4aa65f58ff94d90917314d260b83f74cf91f

See more details on using hashes here.

File details

Details for the file llmservice-0.0.5-py3-none-any.whl.

File metadata

  • Download URL: llmservice-0.0.5-py3-none-any.whl
  • Upload date:
  • Size: 14.0 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.1 CPython/3.9.20

File hashes

Hashes for llmservice-0.0.5-py3-none-any.whl
Algorithm Hash digest
SHA256 7d18ab65853284cc797518d1eaef87d72db6619d861fb8c36301440e64d678f7
MD5 d8a518c0227231615d9c5c0a4c833a6c
BLAKE2b-256 6c57bc24916bf050236e93b7f51aaedfce0ab5545b696cf2729f95aa172a5d32

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page