Projects in BheraProjects in BheraIn this project, I developed a Sentiment Analysis Web App using deep learning (CNN) and traditional models to classify text sentiment with high accuracy.
The system includes a complete evaluation pipeline comparing CNN, LSTM, Logistic Regression, Random Forest, and Naive Bayes — analyzing performance across multiple iterations and datasets.
Key Highlights:
Built a Streamlit-based web app for real-time sentiment classification
Developed and evaluated multiple models for accuracy and F1-score
Created detailed analysis reports and prototype schematics
Project here → GitHub Repository (https://github.com/Imkaran04/Sentiment_Analysis_Web_App/tree/main)
Reports: Sentiment Analysis Report (PDF), Product Prototype Diagram
Tech Stack: Python, Streamlit, TensorFlow/Keras, Scikit-learn, Matplotlib Introducing QuickSynopsis, a fully-featured AI-based summarization and text comparison web app designed for speed, simplicity, and scalability.
This project lets users:
Generate efficient, context-aware summaries for any text.
Compare multiple Summaries to highlight key differences.
Enjoy a responsive UI with user authentication.
Built using Python (Flask), HTML/CSS/JS, and SQLite/MySQL, QuickSynopsis can easily be customized or deployed to your preferred cloud platform.
Key Features:
AI-powered summarization & text comparison
Signup/login authentication
Integrated payment gateway (customizable)
Responsive, modern UI/UX
Ready-to-deploy setup for Heroku, AWS, or local hosting
Explore the repo: GitHub – QuickSynopsis-Version-Control (https://github.com/Imkaran04/QuickSynopsis-Version-control)