Section 01
CTR Prediction and Ad Ranking System: A Guide to the Complete Practice from Data to Deployment
This project presents an end-to-end CTR prediction workflow, covering data generation, feature engineering, multi-model training (logistic regression, gradient boosting, neural networks), offline evaluation, and ad ranking applications. Using tools like Python, TensorFlow, and scikit-learn, it provides reproducible practice cases for learners, bridging machine learning and business value.