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University of Michigan

Introduction to Machine Learning in Sports Analytics

In this course students will explore supervised machine learning techniques using the python scikit learn (sklearn) toolkit and real-world athletic data to understand both machine learning algorithms and how to predict athletic outcomes. Building on the previous courses in the specialization, students will apply methods such as support vector machines (SVM), decision trees, random forest, linear and logistic regression, and ensembles of learners to examine data from professional sports leagues such as the NHL and MLB as well as wearable devices such as the Apple Watch and inertial measurement units (IMUs). By the end of the course students will have a broad understanding of how classification and regression techniques can be used to enable sports analytics across athletic activities and events.

状态:Data Preprocessing
状态:Scikit Learn (Machine Learning Library)
中级课程小时

精选评论

LR

5.0评论日期:Oct 24, 2022

V​ery hands-on course, I could understand all techniques available to model sports.

AM

5.0评论日期:May 6, 2023

Well-structured notebook, resourceful, applicable to real-world projects, clear and entertaining teaching. Highly satisfied. One of the best modules in the entire specialization.

NM

5.0评论日期:Dec 4, 2022

Outstanding course! Really interesting and tutor was really enthusiastic which kept the videos and assessments easy to work through.

KL

5.0评论日期:Oct 30, 2024

Provide solid foundation for beginning supervised ML

WV

5.0评论日期:Apr 11, 2024

What an awesome course, interesting, challenging, gives new perspective and useful insights

所有审阅

显示:11/11

Artúr Péter Seres
2.0
评论日期:Nov 6, 2021
Péter
3.0
评论日期:Aug 28, 2025
Calrissian Whitaker
5.0
评论日期:Jan 4, 2025
Alessandro Di Mattia
5.0
评论日期:May 7, 2023
Leonardo Alvarado
5.0
评论日期:Sep 14, 2021
Nathan Moore
5.0
评论日期:Dec 5, 2022
William VL
5.0
评论日期:Apr 12, 2024
Costanza Zanoletti
5.0
评论日期:Oct 26, 2024
Leonardo Pontes dos Reis
5.0
评论日期:Oct 25, 2022
Kuei Liang
5.0
评论日期:Oct 30, 2024
Dennis Lam
5.0
评论日期:Dec 18, 2021