Developed an automated web scraping solution using BeautifulSoup, Selenium, and Python scripts to track product prices. Implemented alert systems, scheduling automation, and data logging, reducing manual tracking efforts by 90% and enabling real-time monitoring of product pricing trends efficiently.
• Python
• Web Scraping
• Selenium
• Automation
• Data Logging
Built regression-based predictive models using XGBoost and feature engineering techniques to estimate housing prices. Conducted exploratory data analysis, encoding, scaling, and correlation analysis, improving model accuracy by 12% and enabling data-driven real estate valuation insights for better pricing strategies.
• XGBoost
• Regression Analysis
• Feature Engineering
• Data Cleaning
• EDA
Developed a supervised machine learning model using logistic regression, KNN, and Naive Bayes to predict loan approvals. Performed feature selection, scaling, cross-validation, and evaluation, achieving 92% accuracy and improving decision-making efficiency through predictive analytics and classification modeling techniques.
• Machine Learning
• Classification Models
• Pandas
• NumPy
• Model Evaluation
Designed an unsupervised machine learning pipeline using K-Means and clustering techniques to segment customers into 4 distinct groups. Performed data preprocessing, feature engineering, normalization, and visualization, enabling targeted marketing strategies and improving business decision-making through actionable customer insights.
• Python
• Scikit-learn
• Pandas
• Data Visualization
• Clustering Algorithms