DataVisor is the world’s leading AI-powered Fraud and Risk Platform that delivers the best overall detection coverage in the industry. With an open SaaS platform that supports easy consolidation and enrichment of any data, DataVisor's solution scales infinitely and enables organizations to act on fast-evolving fraud and money laundering activities in real time. Its patented unsupervised machine learning technology, advanced device intelligence, powerful decision engine, and investigation tools work together to provide guaranteed performance lift from day one. DataVisor's platform is architected to support multiple use cases across different business units flexibly, dramatically lowering total cost of ownership, compared to legacy point solutions. DataVisor is recognized as an industry leader and has been adopted by many Fortune 500 companies across the globe.
Our award-winning software platform is powered by a team of world-class experts in big data, machine learning, security, and scalable infrastructure. Our culture is open, positive, collaborative, and results-driven. Come join us!
Summary
As a Platform Software Engineer Intern, you will gain hands-on experience in building a next-generation machine learning platform that integrates our proprietary unsupervised machine learning (UML) technology with various supervised machine learning (SML) algorithms. Our team focuses on enhancing core detection algorithms and automating the training process to stay ahead of increasingly sophisticated fraud attacks.
The Platform Team is responsible for developing the architecture that enables real-time UML, a critical component in fraud detection. We are seeking curious, creative, and eager-to-learn engineers to help expand our advanced streaming and database systems, which power our detection capabilities.
This position is ideal for those CS major students who would like to work on fraud detection and machine learning which could lead to a full-time position after graduation.
What you'll do with the team:
Design and build machine learning systems that process data sets from the world’s largest consumer services Use unsupervised machine learning, supervised machine learning, and deep learning to detect fraudulent behavior and catch fraudsters Build and optimize systems, tools, and validation strategies to support new features Help design/build distributed real-time systems and features Use big data technologies (e.g. Spark, Hadoop, HBase, Cassandra) to build large scale machine learning pipelines Develop new systems on top of real-time streaming technologies (e.g. Kafka, Flink)