Build an end-to-end credit card fraud detection system (Level 300)

As we move towards cashless society, the ability to detect fraudulent card transactions accurately and quickly has become increasingly important, because false positives can result in negative customer experiences. In this session, uncover how to build end-to-end credit card fraud detection system with Amazon SageMaker. Learn how to train mathematical models in the cloud for detecting fraudulent card payment fraud with an approach that is more agile and cost-efficient. We demonstrate how you can integrate this model with your business applications using APIs and build reporting dashboards with Amazon QuickSight, a fast, cloud-powered BI service that makes it easy for everyone in an organization to get insights from their data through rich, interactive dashboards. Download slides »
Speaker: Indrajit Ghosalkar, Solutions Architect, AWS
Duration: 30mins

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