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sakethpragallapati/README.md

Hi, I'm Pragallapati Saketh 👋

Computer Science Undergraduate at Chaitanya Bharathi Institute of Technology (CBIT), Hyderabad
Passionate about solving real-world problems through data-driven and full-stack solutions.


Tech Stack

Python Java JavaScript React Node.js MongoDB MySQL TensorFlow Git


Featured Projects


Currently Learning

  • Deep Learning and Natural Language Processing (NLP)
  • Fine-tuning and Deployment of Pre-trained Models (Hugging Face, Transformers)

Connect With Me

GitHub LinkedIn Email LeetCode


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  1. HydraSense HydraSense Public

    End-to-end Machine Learning web app that predicts optimal hydration levels using LinearSVC/XGBoost (99.85% acc), React, Node.js, Docker, and automated CI/CD pipelines.

    Jupyter Notebook

  2. AgriTrace AgriTrace Public

    Agritech is a decentralized agriculture platform built on the Internet Computer (ICP) blockchain that connects farmers, distributors, and retailers through secure, role-based dashboards. It feature…

    JavaScript 1

  3. AI-Podcast-Generator-from-Notes AI-Podcast-Generator-from-Notes Public

    Podcast Generator from Notes is a Google Colab–based tool that converts study notes or PDFs into engaging, two-host podcast scripts. It uses LLMs for summarization and dialogue generation, and opti…

    Jupyter Notebook

  4. Heart-Attack-Predictor Heart-Attack-Predictor Public

    A full-stack web app to predict the risk of heart attacks using a machine learning model (Random Forest, 98.1% accuracy). Built with React, Node.js, and Python

    JavaScript