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OrobosaIO/README.md

👋 Hi, I’m Orobosa (don't worry about the pronunciation, but fun fact - the name has a very beautiful meaning in Bini language)

I’m an AI & Machine Learning graduate student with a background in Computer Science and UX design, interested in building data-driven, user-centered systems.
Currently studying at Blekinge Institute of Technology, Sweden.
Essentially, I am just going to upload all my projects, both school and personal experiments here.
Follow along if you'd like to see my learning journey :)

🧠 Current interests:

  • Machine Learning
  • Turning messy data into meaningful insights
  • Psychology and music... (there's just something that picques my interest on how the brain works and how we interact with music)
  • Health... the more I work on school projects the louder that inclination towards work with health related data becomes. Let's see where that takes me.
  • {} : because I am still discovering more interests.
  • Also the day you come on here and you see that I ´have started working on something related to eurovision stats, just know that I have gotten in my element.

🌱I am Currently learning:

  • AI and Machine Learning (My master's degree and Andrew Ng's AI specialization course on coursera.
  • Statistics
  • Swedish...yes the language!

🤝 Open to collaborating on:

  • Machine learning projects
  • Projects relating to health or psychology data (involve meeeeee!!!!)
  • Data analysis & experimentation
  • Thoughtful, user-focused tech products
  • Conversations (yeahh, let me know if you'd like us to talk on any of these interests)

📫 Let’s connect:

✨ If it's worth doing, it is worth doing well.

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  1. spam-classification spam-classification Public

    A comparative study of machine learning models for spam detection using statistical tests to move beyond single-metric evaluation.

    Jupyter Notebook