Drive the development of advanced machine learning models and strategies for fraud detection and prevention while collaborating with cross-functional teams.
Navan is expanding its Fraud Risk Management organization to build world-class fraud detection, prevention, and analytics capabilities supporting our rapidly growing travel and expense businesses. We are seeking a highly skilled and visionary Staff / Senior Staff Data Scientist, Fraud, to design and scale advanced data science solutions that protect Navan’s customers, platform, and financial ecosystem.
This is a strategic and hands-on role, where you’ll partner with other fraud strategy members, product, engineering, and data teams to design the ML features, build the rule workflow, build next-generation fraud models, develop actionable insights, and lead the application of AI/ML to mitigate emerging fraud threats both in expense card issuing and travel fraud. The ideal candidate combines deep technical expertise in machine learning and data systems with a strong understanding of payment, identity, and transactional fraud patterns.
You’ll report to the Head of Fraud Risk Data Science strategy and play a critical role in shaping Navan’s end-to-end fraud detection infrastructure and analytical roadmap.
What You’ll Do:
What We’re Looking For:
TripActions builds a comprehensive corporate travel and expense management platform that empowers businesses with visibility and control over their spending. Targeted at mid-market companies, it offers seamless integration and innovative solutions designed to enhance the travel experience while optimizing costs. Distinctively, TripActions combines multiple functionalities into one app, making it easier for organizations to manage travel and expenses in a streamlined manner.
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