Analyzing the league, country, player, player attributes, team and team atributes tables gave a better understanding of the data. Once the respective features are joined and merged with the match table, machine learning algorithms can be used to predict the winner of the future soccer matches in the european league. This kernel also allows for the opportunity to practice using the seaborn library and visualizing the data.
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Analyzing the league, country, player, player attributes, team and team atributes
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