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🧪 Materials Informatics Portfolio

This repository documents my learning and projects as I explore Materials Informatics — combining materials chemistry, computational modeling, and machine learning.

📘 Overview

The portfolio covers:

  1. Data exploration using matminer and pandas
  2. Analysis of computational datasets (e.g., bandgap, formation energy)
  3. Machine Learning models for materials property prediction
  4. A final capstone project integrating physics-based and AI-driven insights

🧰 Tools & Libraries

  • Python (pandas, numpy, matplotlib, scikit-learn)
  • Matminer (materials datasets & features)
  • Jupyter Notebook
  • Optional: Qiskit (quantum chemistry), Tableau (for dashboards)

🚀 Goals

  • Build real-world materials datasets
  • Train and evaluate ML models on physical properties
  • Understand the connection between quantum chemistry and materials AI

Author: Pavan Kumar
Exploring the intersection of data analytics, materials innovation, and AI