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A Python-based application for summarizing text using Extractive (TF-IDF) and Abstractive (T5 Transformer) techniques. Features an intuitive Streamlit UI for seamless interaction. Simply paste your text, choose a summarization type, and get concise summaries instantly!

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πŸ“ Text Summarizer

A Python-based application implementing both Extractive and Abstractive text summarization techniques.
Simplify your long texts with an intuitive and user-friendly interface built using Streamlit.


πŸ“œ Overview

The Text Summarizer application uses advanced natural language processing techniques to summarize large chunks of text into concise and meaningful content. Users can select between:

  • Extractive Summarization: Extracts key sentences from the input text using the TF-IDF algorithm.
  • Abstractive Summarization: Generates human-like summaries using HuggingFace’s T5 Transformer model.

πŸš€ Features

  • πŸ”„ Dual Summarization Modes:
    • Extractive: Highlights the most important sentences from the text.
    • Abstractive: Creates entirely new sentences to summarize the content.
  • πŸ’» Streamlit-based UI: A clean, interactive interface for inputting and summarizing text.
  • πŸ–±οΈ Easy-to-Use: Simply paste your text, select the summarization type, and get the summary at the click of a button.

πŸ› οΈ Tech Stack

  • Programming Language: Python 🐍
  • Libraries and Tools:
    • nltk: Tokenization and stopword removal.
    • transformers: HuggingFace's T5 model for abstractive summarization.
    • streamlit: Intuitive UI for user interaction.
  • Algorithms:
    • TF-IDF: For extractive summarization.
    • HuggingFace's T5-small Transformer: For abstractive summarization.

🧠 How It Works

  1. Extractive Summarization

    • Tokenizes the text and computes word frequencies, ignoring stopwords and punctuation.
    • Scores sentences based on the word frequencies.
    • Selects the top sentences to generate a summary.
  2. Abstractive Summarization

    • Uses the HuggingFace T5-small Transformer model to understand and generate a concise version of the input text.
    • Produces summaries that feel natural and coherent.

About

A Python-based application for summarizing text using Extractive (TF-IDF) and Abstractive (T5 Transformer) techniques. Features an intuitive Streamlit UI for seamless interaction. Simply paste your text, choose a summarization type, and get concise summaries instantly!

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