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  1. website-frontend website-frontend Public

    landing page of my startup idea which i am currently working on. It's a med tech startup which aims at creating a AI bots which can assists doctors with there routine task such as analyzing medical…

  2. AgentGPT AgentGPT Public

    Forked from reworkd/AgentGPT

    🤖 Assemble, configure, and deploy autonomous AI Agents in your browser.

    TypeScript

  3. Stock-market-prediction-using-knn-algo Stock-market-prediction-using-knn-algo Public

    This projects aim to make a stock market prediction Machine Learning model using knn( k nearest neighbor) and the loss function is calculated using rms ( root mean square error).

  4. Stock-Price-Prediction-Using-KNN-Algorithm Stock-Price-Prediction-Using-KNN-Algorithm Public

    Forked from sammanthp007/Stock-Price-Prediction-Using-KNN-Algorithm

    Basic Stock Price Prediction Using KNN Algorithm. #Python

    Python

  5. medical_report_scanner_ml_project_prototype medical_report_scanner_ml_project_prototype Public

    An Ai bot to assists doctors and nurses to read medical reports and recommended suitable medicines and treatment. This can be done by training suitable LLM’S on right data and using NLP AND RLHF wh…

    Python 1

  6. Stock-market-prediction-using-knn-and-rms-complete-working- Stock-market-prediction-using-knn-and-rms-complete-working- Public

    This projects aim to make a stock market prediction Machine Learning model using knn( k nearest neighbor) and the loss function is calculated using rms ( root mean square error).