AdaptixSummarizer: A Versatile Text Summarization Tool Adaptable to Roles and Styles
- Version
- Download 8
- File Size 438.65 KB
- File Count 1
- Create Date 10 May 2025
- Last Updated 10 May 2025
AdaptixSummarizer: A Versatile Text Summarization Tool Adaptable to Roles and Styles
Authors:
D Ramya Dorai, Arunabh Sharma, Snehitha N, Theertha K Sunil Rahul Kumar Sah
Abstract- Text summarization plays a pivotal role in Natural Language Processing (NLP), enabling efficient distillation of key information from extensive and diverse textual content. This paper introduces FlexiSummarizer, a modular, customizable summarization tool designed to accommodate multiple input types—including plain text, web URLs, image files, and PDFs—through an integrated and user-friendly interface. The system combines Optical Character Recognition (OCR) via EasyOCR, PDF parsing through PyMuPDF, and a large language model (LLM) accessed through a backend API currently under development. A Gradio-based frontend provides interactive controls that allow users to personalize summaries based on preferred output style (e.g., bullet points, simplified), target reader role (e.g., student, CEO), optional entity focus, and custom prompt instructions. FlexiSummarizer explores the integration of diverse NLP components into a cohesive summarization pipeline. It emphasizes adaptability, extensibility, and real-world usability, contributing a flexible platform for intelligent content summarization across educational, professional, and everyday use cases.
Keywords— Text Summarization, Natural Language Processing(NLP), Large Language Model(LLMs), Abstractive Summarization, Facebook / Bart-Large-CNN, Optical Character Recognition(OCR), EasyOCR, Gradio Interface,PyMuPDF, Multi-Modal Input, Deep Learning, User-Centric NLP Tools.
Download