Fraud - Data Scientist Lead

JPMorgan Chase & Co.
London
3 weeks ago
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We know that people want great value combined with an excellent experience from a bank they can trust, so we launched our digital bank, Chase UK, to revolutionise mobile banking with seamless journeys that our customers love. We're already trusted by millions in the US and we're quickly catching up in the UK – but how we do things here is a little different. We're building the bank of the future from scratch, channelling our start-up mentality every step of the way – meaning you'll have the opportunity to make a real impact. 

As a fraud data scientist at JPMorgan Chase within the International Consumer Bank, you will be a part of a flat-structure organization. Your responsibilities are to deliver end-to-end cutting-edge solutions in the form of cloud-native microservices architecture applications leveraging the latest technologies and the best industry practices. You are expected to be involved in the design and architecture of the solutions while also focusing on the entire SDLC lifecycle stages.

Our fraud analytics team is at the heart of this venture, focused on getting smart ideas into the hands of our customers. We're looking for people who have a curious mindset, thrive in collaborative squads, and are passionate about new technology. By their nature, our people are also solution-oriented, commercially savvy and have a head for fintech. We work in tribes and squads that focus on specific products and projects – and depending on your strengths and interests, you'll have the opportunity to move between them. 

Job spec requirements:

The Fraud & Financial crime Product function leads the 1st line of defense business for fraud & financial crime risk, including ownership of the fraud & financial crime strategy and control framework across all products and channels. Working inside a specialist fraud team to ensure transaction monitoring and controls are optimized to reduce fraud & financial crime risk whilst ensuring 1st class client experience – you will be supporting the product from an Analytics perspective.

Job responsibilities:

Responsible for development and implementation of fraud strategies/rules to effectively detect fraudulent activities Conduct analytics to support fraud product, fraud operations and fin crime to protect the financial interest of the customers and the bank Conduct analytics to support fraud operation team to improve efficiency and decision accuracy, including translation of fraud strategy into fraud operation impact Working with the 2nd line fraud risk teams to ensure models, rulesets and strategies are effective. Ensuring all compliance, audit & control frameworks are followed – using data to support the confirmation of these processes are adhered to regulation standard. Sharing best practice across JP Morgan Chase & Co. Superior written, oral communication and presentation skills with experience communicating concisely and effectively with all levels of management and partners

Required qualifications, capabilities and skills

Master’s degree in numeric fields or STEM related fields, such as statistics, computer science, data science, etc Knowledge of Fraud / Financial crime processes and products Team development and management experience required.

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