Identifying Undervalued Football Players
Daniil Lypenets
Python
8 Chapters
0 Studying now
A hands-on, project-based course guiding learners through the process of cleaning, analyzing, modeling, and interpreting the FIFA 22 player dataset to identify undervalued footballers and distinct playing styles using Python and essential data science techniques.
Опис курсу
A hands-on, project-based course guiding learners through the process of cleaning, analyzing, modeling, and interpreting the FIFA 22 player dataset to identify undervalued footballers and distinct playing styles using Python and essential data science techniques.
Технологія
Python
Мова
En
Відгуки
Розділи
8
Data Inspection & Cleaning
Exploring Market Value
Position Normalization
Market Value Baseline Model
Moneyball — Undervalued Players
Playing Style Clustering
Interpreting Playing Styles
Final Scouting Shortlist
0%
Data Inspection & Cleaning
Exploring Market Value
Position Normalization
Market Value Baseline Model
Moneyball — Undervalued Players
Playing Style Clustering
Interpreting Playing Styles
Final Scouting Shortlist