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HNordholm/README.md

Hello πŸ‘‹

Welcome to my portfolio!

Here you will find the projects I have carried out alongside my university studies. My primary goal with this portfolio is to share my knowledge and passion for data-driven projects. Here, you will find a range of content, from visualizations to more specialized analyses involving regression modeling and hypothesis testing. If you have any questions, please feel free to reach out!

About me ✨

  • Age: 30
  • Location: Knivsta, Sweden
  • Education: Final-year economics/business student at Linnaeus university

Technical stack ⚑

-Languages: SQL,R programming

-Software's:R,mySQL,Power BI,Excel

πŸ“« Contact

Popular repositories Loading

  1. SQL_Store_analysis- SQL_Store_analysis- Public

  2. HNordholm HNordholm Public

  3. Marketing-campaign-KPI-analysis- Marketing-campaign-KPI-analysis- Public

    KPI analysis of marketing campaigns with SQL and Power BI

  4. Exploring-Olympic-games-with-tidyverse Exploring-Olympic-games-with-tidyverse Public

    Analyzing Olympic games data using data wrangling with dplyr and visualizations with ggplot2, both part of the core tidyverse package.

    R

  5. Steam-games-2024 Steam-games-2024 Public

    Analyzing the top 1500 Steam games of 2024 using methods such as correlation analysis, hypothesis testing, and visualizations with ggplot2.

    R

  6. LASSO-logistic-reg-modeling-product-reviews LASSO-logistic-reg-modeling-product-reviews Public

    Examining word importance using a penalized logistic regression model to determine which words correspond to a five-star product rating.

    R