Welcome to my personal Machine Learning repository! This space is dedicated to my continuous journey in Data Science, serving as a collection of projects, experiments, and code snippets where I apply theoretical concepts to real-world data.
- π Exploratory Data Analysis (EDA): Uncovering patterns and insights using Pandas, Matplotlib, and Seaborn.
- βοΈ Feature Engineering: Transforming raw data into meaningful features (Scaling, Encoding, Imputation).
- π€ Machine Learning Algorithms: Implementing models from Linear Regression to Random Forests and Boosting techniques.
To consistently practice ML concepts, document my learning progress, and build a robust library of reference code for future projects.