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Hi! πŸ‘‹

  • πŸŽ“ I'm a senior studying computer science and data science at UW-Madison!
  • πŸ”­ I'm currently working on:
    • 🌱 My portfolio site!
    • πŸ‘¨β€πŸ³ A recipe-sharing site!
    • ❄️ Configuring my NixOS & Hyprland system!
    • And others that are sitll in the planning process...
  • πŸ‘·β€β™‚οΈ I've had work experience in DevOps, Embedded Software, Web Development, and IT.
  • πŸ±β€πŸ’» My personal projects are usually focused on anything that relates to hardware, computer vision, game development, or web development.

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  1. Object_Tracking Object_Tracking Public

    Object tracking using the histogram-based tracking method. https://christophergottwaldt.notion.site/Object-Tracking-Project-8a7a474de6314d91808fc24f46287030

    2

  2. Panorama_Application Panorama_Application Public

    A panorama application that can stitch 3 or more images together into a combined panorama image.

    1

  3. access_to_care_health_insurance_dataviz access_to_care_health_insurance_dataviz Public

    Access to HealthCare: Children Health Insurance Program (CHIP) and Medicaid Enrollment Visualized by State

    R

  4. YouTubeChannel YouTubeChannel Public

    Check out my YouTube account! https://www.youtube.com/channel/UCnN9fzmYU1J1JihNRU_YhXg

  5. bashrc bashrc Public

    .bashrc Configuration File for Linux!

    Shell

  6. MAE_for_UCL MAE_for_UCL Public

    Preventing Catastrophic Forgetting on Image Classification Deep Learning Models with Mask Autoencoders

    1