Senior Fraud Analyst

Harnham
London
1 year ago
Applications closed

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SENIOR FRAUD ANALYST UP TO £70,000 LONDON This role is an exciting new role to work for one of the world's leading fin-techs offering faster, and cheaper consumer finance. This business is among the top 10 fastest-growing tech companies in the UK. The Company This company is working on loans, credit cards, and car finance and aims to get money in customers' hands in only a few minutes, not days. The business is profitable, and growing fast, operating in both UK and US markets. The company is building some of the best technology, using machine learning, and AI. THE ROLE You Will Be Doing The Following Daily Define the fraud strategy for the companies' evolving portfolios. Discover insights from data and develop new fraud strategies to answer key business questions. Collaborate cross-functionally across the business to implement your fraud strategy into the market. Monitor the success of the implemented strategy and continuously amend/discover new and further opportunities for improvement. Utilise advanced technical skills to develop and implement fraud strategies, such as SQL and Python. Your Skills And Experience Daily coding experience, ideally Python and SQL. Previous experience developing fraud strategies. The ability to work and collaborate with other members of your team. Excellent written and verbal communication skills. Strong numerical degree from a Russel Group University. The Benefits Up to £70,000 salary. Best in-class compensation, including equity. Private health insurance coverage. Pension scheme. Hybrid working model. How To Apply Please register your interest by sending your CV to Gaby Adamis via the Apply link on this page.

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