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  1. SmartNotes SmartNotes Public

    AI-powered note-taking website that includes features like speech-to-text transcription, AI-summarization, AI quiz/flashcard-generation, etc. It utilizes the Google Gemini and Microsoft Azure APIs …

    CSS 3

  2. Firoza Firoza Public

    A fully responsive e-commerce platform designed for browsing and purchasing a variety of jewelry items. The website features user authentication, advanced product filtering, secure checkout, and in…

    JavaScript 3

  3. Todo-List-using-HashMap-Data-Structure Todo-List-using-HashMap-Data-Structure Public

    HashMap Data Structure implementation using Linked Lists, and chaining for collision solution. Todo list program implemented using HashMap. UI created using QT.

    C++ 1

  4. Bus-Ticket-Booking-System Bus-Ticket-Booking-System Public

    Java Bus-Ticket Booking System Application that utilizes Object-Oriented Programming concepts. The system GUI is implemented using JavaFX.

    Java 2

  5. Housing-Prices-Prediction-using-Machine-Learning Housing-Prices-Prediction-using-Machine-Learning Public

    Predicting housing prices using machine learning regression models with strong preprocessing, feature engineering, and MSE visualization through vectorized linear regression.

    Jupyter Notebook 3

  6. Fruits-Recognition-Using-Deep-Learning-with-Data-Augmentation Fruits-Recognition-Using-Deep-Learning-with-Data-Augmentation Public

    A deep learning project for classifying 130+ fruits using EfficientNet, ResNet, and MobileNet with custom augmentations and SE blocks. Built on the Fruits-360 dataset.

    Jupyter Notebook