WEBINAR
Accelerating Financial Fraud Detection with AI
Financial institutions invest a great deal of resources in identifying and preventing financial fraud and money laundering. Due to the ever-evolving complexity of fraudulent activities and the increasing volumes of data, conventional rule-based anti-fraud/money laundering detection systems are overwhelmed. They generate large amounts of alerts, with increasing amounts of false positives and are missing newly emerging schemes due to their technical limitations.
In this webinar, Logical Clocks and NVIDIA will demonstrate how to overcome those limitations by combining regulation-compliant, conventional fraud/anti-money laundering rule-based systems with deep anomaly detection methods--powered by Hopsworks Feature Store, NVIDIA Rapids™, and NVIDIA Triton™ Inference Server. We'll showcase the system’s efficiency in broader low-latency, real-time anomaly detection applications and provide you with step-by-step details on how to develop this state-of-the-art anomaly detection model and manage its entire lifecycle by applying modern MLOps and DataOps principles.
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Davit Bzhalava holds a PhD degree in Bioinformatics and is one of the main developers of Hopsworks Feature Store. Prior to Logical Clocks, he held a position at Swedbank as principal data scientist, where he conducted extensive work to build data-intensive platforms and implement efficient anomaly detection frameworks using deep learning techniques.
Prabhu Ramamoorthy focuses on HPC/ML/AI acceleration for financial services. Previously, he held leadership roles at margin software firm Dash Regtech and Big Four firm KPMG/EY. Mr. Ramamoorthy holds an MBA from the University of Wisconsin-Madison and an undergraduate engineering degree from BITS-Pilani. He is a CFA charterholder, Financial Risk Manager (FRM), and Chartered Alternative Investment Analyst (CAIA), specializing in financial use cases.
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Date & Time: Wednesday, April 22, 2018