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Xente-Fraud-Detection-Challenge

The objective of this competition is to create a machine learning model to detect fraudulent transactions. Fraud detection is an important application of machine learning in the financial services sector. This solution will help Xente provide improved and safer service to its customers. This competition is sponsored by Xente, Innovation Village, and insight2impact. About Xente (xente.co)

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