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Happy295-hue/README.md

πŸ’« About Me:

πŸ‘‹ Hi, I’m Harshit Saraf

A PGDM Business Analytics postgraduate with a commerce background, focused on turning data into meaningful business insights. I work with Python and SQL to analyze datasets, build analytical models and create dashboards that communicate insights clearly.

I have hands-on experience through projects and internships, working on real-world datasets across finance and economic domains. My work includes building predictive models, performing sectoral analysis, and developing dashboards to support data-driven decision-making.

I use GitHub to showcase my projects, document my learning, and continuously improve my analytical and problem-solving skills.

πŸ”§ Tools & Tech: Python | SQL | Power BI | Tableau | Looker Studio | MongoDB | Streamlit
πŸ“Š Focus Areas: Data Analysis | Data Visualization | Predictive Analytics
πŸš€ Currently Learning: Advanced SQL, model optimization, and real-world analytics use cases

🌐 Socials:

LinkedIn email

πŸ’» Tech Stack:

MySQL Python Power Bi Adobe Pandas NumPy Matplotlib Keras scikit-learn TensorFlow

πŸ“Š GitHub Stats:




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