Fraud Analytics Manager (US)

Lendable Ltd
London
1 week ago
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About the roleWe are looking for a Fraud Analytics Manager to lead andscale our fraud prevention strategiesacross personal loans and credit cards. In this role, you will drive thedesign,implementation, andoptimizationof fraud detection models and strategies. You will work closely with other business areas, including product, data science, engineering, and operations, tostay ahead of emerging fraud threats.This role will report to the Lead Product Manager of US Cards.What you'll be doingStrategy Development:Design and implement end-to-end fraud detection strategies (first party and third party) for personal loans and credit cards across the product lifecycle (customer acquisition, account takeover/credit card transactions, and payments).Data Analysis and Insights:Analyse usage patterns and trends to measure and optimize the effectiveness of existing fraud strategies, including balancing value from fraud prevention vs. opportunity cost of false positives. In addition, manage the suite of dashboards and tools to monitor key fraud metrics and quickly detect fraud attacks.Fraud Operations:Work closely with operations to continue improving workflows and case management for fraud investigations and build out and enhance fraud operations processes.Benchmarking:Participate in industry roundtables and events to research new fraud technologies and trends.Your experience*Experience:3+ years of experience in fraud analytics for unsecured lending products, ideally with credit cards; familiarity working with third-party fraud detection tools.*Technical Skills: Proficiency in SQL or Python for data analysis; familiarity with decision trees or other predictive modelling is a plus*Domain Knowledge: Familiarity with applicable laws and regulations that impact Zendable’s business including BSA, OFAC, GLBA, TILA including the Credit Card Accountability, Responsibility and Disclosure (CARD) Act of 2009, FCRA, UDAAP, FDCPA, ECOA, E-Sign, EFTA, and NACHA. *Education: Bachelor’s degreein a quantitative field (e.g., statistics, mathematics, economics, or data science).Compensation****US$130,000 - US$160,000 per yearOffers Equity * The opportunity to scale up one of theworld’s most successfulfintech companies*Best-in-classcompensation, including equity* You can work from homeevery Monday and Fridayif you wish - on the other days we all come together IRL to be together, build and exchange ideas*Our in-house chefsprepare fresh, healthy lunches in the office every Tuesday-Thursday* We care for our Lendies’ well-being both physically and mentally, so we offer coverage when it comes toprivate health insurance* We're anequal opportunity employerand are keen to make Lendable the most inclusive and open workspace in London#J-18808-Ljbffr

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