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Abhi2303shek/README.md

Hi My name is Abhishek Singh

I'm a data enthusiast and analytics-focused developer who loves turning real-world data into meaningful insights.

I work mostly with **Python**, **Pandas**, **MySQL**, **Seaborn**, and **Jupyter Notebooks** to explore interesting datasets and uncover patterns that tell a story.

  • 🌍 I'm based in Delhi, India
  • ✉️ You can contact me at aks.abhishekkrsingh2310@gmail.com
  • 🧠 I'm currently learning Data Analytics
  • 👥 I'm looking to collaborate on learning and experimenting with real-world data to solve problems and improve skills
  • 💬 Ask me about I'm secretly Batman(in spirit).... but don't tell anyone.

PythonVS CodeMySQLPhotoshopPremiere ProAlchemyGoogle CloudWix

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