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"PropertyExtract -- LLM-based model to extract material property from unstructured dataset",

Project description

PropertyExtractor: An Open-Source Conversational LLM-Based Tool

Introduction

The advent of natural language processing and large language models (LLMs) has revolutionized the extraction of data from unstructured scholarly papers. However, ensuring data trustworthiness remains a significant challenge. PropertyExtractor is an open-source tool that leverages advanced conversational LLMs like Google Gemini Pro and OpenAI GPT-4, blends zero-shot with few-shot in-context learning, and employs engineered prompts for the dynamic refinement of structured information hierarchies to enable autonomous, efficient, scalable, and accurate identification, extraction, and verification of material property data to generate material property database.

Features

  • Advanced LLM Integration: Supports both Google Gemini Pro and OpenAI GPT-4.
  • Zero-shot and Few-shot Learning: Blends in-context learning for better extraction accuracy.
  • Engineered Prompts: Dynamic refinement of structured information hierarchies.
  • Autonomous Extraction: Efficient and scalable identification and extraction of material properties.
  • High Precision and Recall: Achieves over 90% precision and recall with an error rate of approximately 10%.

Installation

PropertyExtractor offers straightforward installation options suitable for various user preferences as explained below. We note that all the libraries and dependables are automatically determined and installed alongside the PropertyExtractor executable "propertyextract" in all the installation options.

  1. Using pip: Our recommended way to install the PropertyExtractor package is using pip.

    • Quickly install the latest version of the PropertyExtractor package with pip by executing:
      pip install -U propertyextract
      
  2. From Source Code:

    • Alternatively, users can download the source code with:
      git clone [git@github.com:gmp007/PropertyExtractor.git]
      
    • Then, install PropertyExtractor by navigating to the master directory and running:
      pip install .
      
  3. Installation via setup.py:

    • PropertyExtractor can also be installed using the setup.py script:
      python setup.py install [--prefix=/path/to/install/]
      
    • The optional --prefix argument is useful for installations in environments like shared High-Performance Computing (HPC) systems, where administrative privileges might be restricted.
    • Please note that while this method remains supported, its usage is gradually declining in favor of more modern installation practices. We only recommend this installation option where standard installation methods like pip are not applicable.

Usage

Configuration

Please don't expose your API keys. Before running PropertyExtractor, configure the API keys for Google Gemini Pro and OpenAI GPT-4 as environment variables.

On Linux/macOS

export GPT4_API_KEY='your_gpt4_api_key_here'
export GEMINI_PRO_API_KEY='your_gemini_pro_api_key_here'

On Windows

set GPT4_API_KEY='your_gpt4_api_key_here'
set GEMINI_PRO_API_KEY='your_gemini_pro_api_key_here'

Usage and Running PropertyExtractor

PropertyExtractor is easy to run. The key steps for initializing PropertyExtractor follows:

  1. Unstructured data generation*: Use API to obtain the material property that you want to generate the database from the publishers of your choice. We have written API functions for Elsevier's ScienceDirect API, CrossRef REST API, and PubMed API. We can share some of these if needed.

  2. Create a Calculation Directory:

    • Start by creating a directory for your calculations.
    • Run propextract -0 to generate the main input template of the PropertyExtractor, which is the extract.in. Modify following the detailed instructions included.
    • Optional files such as the additionalprompt.txt' for augmenting additional custom prompts and keywords.json' for custom additional keywords to support the primary keyword are also generated. Modify to suit the material property being extracted. The main input template `extract.in' looks like below:
       ###############################################################################
       ### The input file to control the calculation details of PropertyExtract    ###
       ###############################################################################
       # Type of LLM model: gemini/chatgpt 
       model_type = gemini
       # LLM model name: gemini-pro/gpt-4
       model_name = gemini-pro
       # Property to extract from texts
       property = thickness
       # Harmonized unit for the property to be extracted
       property_unit = Angstrom
       # temperature to max_output_tokens are LLM model parameters
       temperature = 0.0
       top_p = 0.95
       max_output_tokens = 80
       # You can supply additional keywords to be used in conjunction with the property: modify the file keywords.json
       use_keywords = True
       # You can add additional custom prompts: modify the file additionalprompt.txt
       additional_prompts = additionalprompt.txt
       # Name of input file to be processed: csv/excel format
       inputfile_name = 2Dthickness_Elsevier.csv
       # Column name in the input file to be processed
       column_name = Text
       # Name of output file
       outputfile_name = ppt_test
      
  3. Initialize the Job:

    • Execute propextract to begin the calculation process.
  4. Understanding PropertyExtractor Options:

    • The main input file extract.in includes descriptive text for each flag, making it user-friendly.

Citing PropertyExtractor

If you have used the PropertyExtractor package in your research, please cite:

@article{Ekuma2024,
  title = {Dynamic In-context Learning with Conversational Models for Data Extraction and Materials Property Prediction},
  journal = {XXX},
  volume = {xx},
  pages = {xx},
  year = {xx},
  doi = {xx},
  url = {xx},
  author = {Chinedu Ekuma}
}
@misc{PropertyExtractor,
  author = {Chinedu Ekuma},
  title = {PropertyExtractor -- LLM-based model to extract material property from unstructured dataset},
  year = {2024},
  howpublished = {\url{https://github.com/gmp007/PropertyExtractor}},
  note = {Open-source tool leveraging LLMs like Google Gemini Pro and OpenAI GPT-4 for material property extraction},
}

Contact Information

If you have any questions or if you find a bug, please reach out to us.

Feel free to contact us via email:

Your feedback and questions are invaluable to us, and we look forward to hearing from you.

License

This project is licensed under the GNU GPL version 3 - see the LICENSE file for details.

Acknowledgments

  • This work was supported by the U.S. Department of Energy, Office of Science, Basic Energy Sciences under Award DOE-SC0024099.

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