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🧠 Deep learning project for brain tumor classification using MRI images. Built with transfer learning (VGG16 + fine-tuning), TensorFlow/Keras, and deployed via Streamlit. Dataset & model loaded dynamically from KaggleHub. Includes training notebook, evaluation, and interactive web app.
This repository contains a Logistic Regression pipeline for predicting heart disease using a well-known Kaggle dataset. The project walks through data preprocessing, model training, evaluation, and improvements.
A content-based recommendation engine using LLMs, LangChain, Hugging Face, Gradio, and Python to generate vectorized book representations for semantic similarity matching, enabling personalized and context-aware book recommendations.
This project aims to build and evaluate machine learning models to predict heart failure based on patient data. The project includes the implementation of 6 machine learning algorithms.
AI-powered plant disease detection system using CNN deep learning. Identifies 38+ crop diseases from leaf images with high accuracy. Built with TensorFlow/Keras and Streamlit for real-time agricultural diagnostics.
This project implements RAG (Retrieval-Augmented Generation) and LLM-based models on a Kaggle book dataset to build a recommendation system. Users can search and receive book suggestions tailored to their reading expectations.
This is project, developed a deep learning model using Tensorflow and CNNs to classify images into multi animal categories with high accuracy. Preprocessed image data, optimized model architecture and achieved effective generalization on unseen data.