/Fashion-Recommendations

Manipulated data to recommend products and improve the company's revenue with 90% accuracy. Optimized clustering of user purchases with best feature combinations based on silhouette score. • Used PySpark, Pandas, Seaborn, and Scikit-learn to implement random forest, logistic regression, decision tree and alternating least squares.

Primary LanguageJupyter Notebook

Fashion-Recommendations

Manipulated data to recommend products and improve the company's revenue with 90% accuracy.

Optimized clustering of user purchases with best feature combinations based on silhouette score.

Used PySpark, Pandas, Seaborn, and Scikit-learn to implement random forest, logistic regression, decision tree and alternating least squares.