Enhancing Anti-Money Laundering (AML) Programs with Automated Machine Learning

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Presented by

Dan Yelle

About this talk

Compliance organizations within banks and other financial institutions are turning to machine learning for improving their AML compliance programs. Today, the systems that aim to detect potentially suspicious activity are commonly rule-based, and suffer from ultra-high false positive rates. Automated machine learning provides a solution to address this challenge. In this webinar, Dan Yelle, a Customer-Facing Data Scientist for DataRobot will show how automated machine learning can be used to reduce false positive rates, thereby improving the efficiency of AML transaction monitoring and reducing costs.
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DataRobot powers the AI-driven enterprise, enabling users throughout the organization to make business decisions unmatched in simplicity, speed, and accuracy. Its revolutionary approach to automated machine learning harnesses hundreds of cutting-edge algorithms to discover and deploy the best predictive models for every situation and delivers accurate business predictions at scale.