Section 01
[Main Floor/Introduction] End-to-End E-Commerce Logistics Prediction System: Intelligent Delivery Analysis Based on Brazil's Olist Dataset
This project builds a complete end-to-end e-commerce logistics prediction system based on Brazil's Olist dataset of over 100,000 real orders from 2016 to 2018. It integrates 9 relational data tables and achieves three core functions: delivery time prediction (using models like XGBoost), NLP sentiment analysis for customer satisfaction, and a Streamlit interactive business dashboard. The system covers the entire workflow of data engineering, feature engineering, model training, NLP analysis, and visualization deployment, providing data-driven decision support for e-commerce operations.