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Omaralsaabi/README.md

Hi 👋, I'm Omar Alsaabi

A Data Scientist who is passionate about machine learning and everything related to data.

  • 🔭 I’m currently a Data Scientist

  • 🌱 I’m currently learning Transformers and LLM

  • 👯 I’m looking to collaborate on projects related to the above mentioned fields

  • 🤝 I’m looking for an oppurtunity as a Data Scientist or a Machine Learning Engineer

  • 💬 Ask me about Anything I would love to help and learn

  • 📫 How to reach me prof.omaralsaabi@gmail.com

  • ⚡ Fun fact I hate being called a programmer

Connect with me:

https://www.linkedin.com/in/omar-alsaabi-32675b193/

Languages and Tools:

arduino cplusplus git linux opencv pandas python pytorch scikit_learn seaborn

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