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A library for summarizing and explaining academic papers

Project description

Paper Summarizer & Explainer

Paper Summarizer & Explainer is a Python library designed to help students and researchers quickly digest complex academic papers. The library extracts text from PDFs or accepts raw text and uses Groq to generate concise summaries that highlight key concepts and define technical terms. Additionally, it provides an optional feature to generate simple diagrams or flowcharts from the summary.

Features

  • PDF Text Extraction: Easily extract text from academic papers in PDF format using PyPDF2.
  • Automated Summarization: Leverage Groq and pre-trained NLP models to create clear, concise summaries of academic papers.
  • Diagram Generation: Generate simple diagrams or flowcharts from summary points using Graphviz.
  • Modular Design: Start with core summarization and gradually expand functionality to include additional explanations or visual aids.

Installation

Prerequisites

  • Python 3.8 or higher

Install Dependencies

pip install Groq PyPDF2 graphviz

Example Usage

import os import re from paper_academic_summarizer import summarize_paper, generate_diagram

def shorten_summary(summary: str, max_words: int = 30) -> str: """ Truncates the summary to a specified number of words. Appends '...' if the original summary exceeds max_words. """ words = summary.split() if len(words) <= max_words: return summary return " ".join(words[:max_words]) + " ..."

def main(): # Sample academic paper text with detailed model references sample_text = """ In this study, we present a comprehensive evaluation of several state-of-the-art deep learning architectures for image classification and object detection. Our focus includes ResNet50, which uses residual connections to mitigate the vanishing gradient problem, Inception-v3 for multi-scale processing, and EfficientNet-B7 leveraging compound scaling. We also analyze transformer-based models such as the Vision Transformer (ViT) and DeiT, discussing their performance trade-offs in terms of accuracy, computational cost, and scalability. Overall, these findings provide guidance for selecting and optimizing deep learning architectures in real-world applications, where balancing efficiency and accuracy is crucial. """

# Generate the full summary using your library function
full_summary = summarize_paper(sample_text, is_pdf=False)
print("Full Summary:\n")
print(full_summary)

# Shorten the summary to ensure it's very concise
short_summary = shorten_summary(full_summary, max_words=30)
print("\nShort Summary:\n")
print(short_summary)

# Generate a diagram from the shortened summary
output_file = "diagram_short"
try:
    generate_diagram(short_summary, output_file=output_file)
    print(f"\nShort diagram generated successfully: {output_file}.png")
except Exception as e:
    print("Error generating diagram:", e)

if name == "main": main()

Contributing

Contributions are welcome! Please open an issue or submit a pull request for any enhancements or bug fixes.

License

This project is licensed under the MIT License.

Acknowledgments

Contact

For any questions or inquiries, please contact harshchitaliya193@gmail.com.

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