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abzdel/README.md

Hi, I'm Alex!

Connect with me on LinkedIn or check out my portfolio below:

LinkedIn Portfolio

👨‍💻 What keeps me busy

  • Data science work at Frontier
  • AWS Community Builder contributions
  • Building new portfolio projects to learn new tools & tech
  • Open source contributions

⚡Some of my favorite tools

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