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  1. Marvel-Mart-Python Marvel-Mart-Python Public

    This repository supports the Marvel Mart Project, focusing on data analysis within a retail context. It targets data scientists and IT professionals, offering Python scripts, insights, and methodol…

    Python

  2. Data-Translation-Challenge-R Data-Translation-Challenge-R Public

    This repository addresses the "Data Translation Challenge in Data Communications," offering resources for professionals in data science and IT to tackle data translation complexities across formats…

    HTML

  3. Data-Exploration-Challege-R-Tableau Data-Exploration-Challege-R-Tableau Public

    Explore global drug seizures from 1980 to 2020 through our data analysis project. We delve into drug confiscation data, revealing trends, hotspots, and the evolution of seized drug types. Using vis…

    HTML

  4. Used-Car-Price-Prediction-Data-Mining-R Used-Car-Price-Prediction-Data-Mining-R Public

    AutoValuate: A machine learning-driven tool for classifying used car prices as high or low, enabling smarter decisions in the car resale market.

    HTML

  5. Excelsior-Mobile-Analytics-SQL Excelsior-Mobile-Analytics-SQL Public

    SQL-driven analysis and reporting for strategic insights into Excelsior Mobile's customer usage and billing data to inform business decisions

  6. Real-Estate-Price-Prediction-Data-Mining-R Real-Estate-Price-Prediction-Data-Mining-R Public

    Predictive analytics of King County real estate prices using data mining techniques. Insights for home valuation and trend analysis from May 2014 to May 2015 dataset.

    HTML 1