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  1. ENIAC_A-B-Testing_clicks-of-button ENIAC_A-B-Testing_clicks-of-button Public

    Using A/B testing to test which variants (buttons, colour, wording) will increase the number of clicks

    Jupyter Notebook

  2. ENIAC_Magist_Business-Case_2 ENIAC_Magist_Business-Case_2 Public

    Is Discounted Products Beneficial to Eniac

  3. ETL-Data-Pipeline-From-Web-Scraping-to-MySQL-Integration- ETL-Data-Pipeline-From-Web-Scraping-to-MySQL-Integration- Public

    Build a data pipeline that connects web data and APIs into a MySQL database, following an ETL (Extract, Transform, Load) approach. The challenge revolved around gathering city, weather, airport, an…

    Jupyter Notebook

  4. Moosic_Unsupervised-Machine-Learning_Create-Playlist Moosic_Unsupervised-Machine-Learning_Create-Playlist Public

    Using unsupervised Machine Learning (scaling, principal components analysis PCA and KMeans clustering) to generate playlist from over 5000 Spotify songs based on audio features

    Jupyter Notebook

  5. RAG-Model_acupressure-guideline RAG-Model_acupressure-guideline Public

    A practical guide to acupressure, including key pressure points, techniques, and health benefits. Designed for beginners and anyone interested in holistic wellness practices.

    Jupyter Notebook

  6. Supervised-Machine-Learning-House-Price-Prediction-project. Supervised-Machine-Learning-House-Price-Prediction-project. Public

    Supervised machine learning project predicting housing prices using the Ames Housing dataset, including both classification (expensive vs. not expensive) and regression models.

    Jupyter Notebook