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⚑ The Library to Build and Auto-optimize LLM Applications ⚑

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For AI researchers, product teams, and software engineers who want to learn the AI way.

Why AdalFlow

  1. Embracing a design pattern similar to PyTorch, AdalFlow is powerful, light, modular, and robust. AdalFlow provides Model-agnostic building blocks to build LLM task pipelines, ranging from RAG, Agents to classical NLP tasks like text classification and named entity recognition. It is easy to get high performance only using manual prompting.
  2. AdalFlow provides a unified auto-differentiative framework for both zero-shot prompt optimization and few-shot optimization. It advances existing auto-optimization research, including Text-Grad and DsPy. Through our research, Text-Grad 2.0 and Learn-to-Reason Few-shot In Context Learning, AdalFlow Trainer achieves the highest accuracy while being the most token-efficient.

Here is an optimization demonstration on a text classification task:

AdalFlow Auto-optimization

AdalFlow Optimized Prompt

Among all libraries, AdalFlow achieved the highest accuracy with manual prompting (starting at 82%) and the highest accuracy after optimization.

Further reading: Optimize Classification

Light, Modular, and Model-Agnostic Task Pipeline

LLMs are like water; AdalFlow help you quickly shape them into any applications, from GenAI applications such as chatbots, translation, summarization, code generation, RAG, and autonomous agents to classical NLP tasks like text classification and named entity recognition.

AdalFlow has two fundamental, but powerful, base classes: Component for the pipeline and DataClass for data interaction with LLMs. The result is a library with minimal abstraction, providing developers with maximum customizability.

You have full control over the prompt template, the model you use, and the output parsing for your task pipeline.

AdalFlow Task Pipeline

Further reading: How We Started, Design Philosophy and Class hierarchy.

Unified Framework for Auto-Optimization

AdalFlow provides token-efficient and high-performing prompt optimization within a unified framework. To optimize your pipeline, simply define a Parameter and pass it to AdalFlow's Generator. Whether you need to optimize task instructions or run some few-shot demonstrations, AdalFlow's unified framework offers an easy way to diagnose, visualize, debug, and train your pipeline.

This Dynamic Computation Graph demonstrates how our auto-differentiation and the dynamic computation graph work.

No need to manually defined nodes and edges, AdalFlow will automatically trace the computation graph for you.

Trainable Task Pipeline

Just define it as a Parameter and pass it to AdalFlow's Generator.

AdalFlow Trainable Task Pipeline

AdalComponent & Trainer

AdalComponent acts as the 'interpreter' between task pipeline and the trainer, defining training and validation steps, optimizers, evaluators, loss functions, backward engine for textual gradients or tracing the demonstrations, the teacher generator.

AdalFlow AdalComponent & Trainer

Quick Install

Install AdalFlow with pip:

pip install adalflow

Please refer to the full installation guide for more details.

Documentation

AdalFlow full documentation available at adalflow.sylph.ai:

AdalFlow: A Tribute to Ada Lovelace

AdalFlow is named in honor of Ada Lovelace, the pioneering female mathematician who first recognized that machines could do more than just perform calculations. As a female-led team, we aim to inspire more women to enter the AI field.

Contributors

contributors

Acknowledgements

Many existing works greatly inspired AdalFlow library! Here is a non-exhaustive list:

  • πŸ“š PyTorch for design philosophy and design pattern of Component, Parameter, Sequential.
  • πŸ“š Micrograd: A tiny autograd engine for our auto-differentiative architecture.
  • πŸ“š Text-Grad for the Textual Gradient Descent text optimizer.
  • πŸ“š DSPy for inspiring the __{input/output}__fields in our DataClass and the bootstrap few-shot optimizer.
  • πŸ“š OPRO for adding past text instructions along with its accuracy in the text optimizer.
  • πŸ“š PyTorch Lightning for the AdalComponent and Trainer.

Citation

@software{Yin2024AdalFlow,
  author = {Li Yin},
  title = {{AdalFlow: The Library for Large Language Model (LLM) Applications}},
  month = {7},
  year = {2024},
  doi = {10.5281/zenodo.12639531},
  url = {https://github.com/SylphAI-Inc/AdalFlow}
}

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