|
This course delves into the strategies used by Kaggle Grandmasters of NVIDIA to excel in a data science competition focused on building a recommendation system for e-commerce. The learning outcomes include understanding the 2-stage model of recommender systems, creating candidate generation and co-visitation matrices, feature selection and engineering for a reranker model, and model ensembling. The teaching method involves video lectures with detailed explanations and real-world examples. This course is intended for data scientists, machine learning engineers, and anyone interested in mastering recommender systems and participating in data science competitions.
|