Mastercard powers economies and empowers people in 200+ countries and territories worldwide. Together with our customers, we’re helping build a sustainable economy where everyone can prosper. We support a wide range of digital payments choices, making transactions secure, simple, smart and accessible. Our technology and innovation, partnerships and networks combine to deliver a unique set of products and services that help people, businesses and governments realize their greatest potential.
Manager, Data Scientist
In the Financial Crime Solutions team at Mastercard, we build and deliver products and services powered by payments data to find and stop financial crime. We’re an award winning team with a proven track record of combining data science technique with an intimate knowledge of payments data to aid Financial Institutions in their fight against money laundering and fraud. Headquartered in The City of London, and operating globally, we craft bespoke algorithms that help our clients gain an understanding of the underlying criminal behaviour that drives financial crime, empowering them to take action.
As a Data Scientist, you will join one of the first teams in the world looking at payments data in the UK and across the world. In the research discipline you will help build systems that expose money laundering and detect fraud as well as work with the other data scientists and clients to understand the underlying behaviours employed by criminals. You will be product focused, working in close collaboration with our engineering and operations data scientists as well as the wider sales, consulting, and product teams.
In this position, you will: - Directly contribute to project delivery - writing code, reviewing code, and delivering ML models and analytics, as well as managing a team, with responsibility for engaging with Product and Engineering counterparts on a specific product or series of projects. - Perform proof-of-concept projects, engage in product design and build prototypes. - Use the full range of data science based techniques to develop new and novel algorithms to aid existing and new financial crime products. - Be able to perform novel research to help us and our clients understand the different criminal behaviours in payments data. - Think about how derived insights can be turned into new products and services we can offer to external clients. - Be ready to learn new technologies as required and engage with legacy and future technology stacks, in the UK and internationally. - Write white papers, patents, and client facing data visualisations. - Consider the full impact of your work. This means considering privacy, security, and regulation, as well as the performance of your code and the accuracy of your models.
Mastercard is a global technology company in the payments industry. Our mission is to connect and power an inclusive, digital economy that benefits everyone, everywhere by making transactions safe, simple, smart, and accessible. Using secure data and networks, partnerships and passion, our innovations and solutions help individuals, financial institutions, governments, and businesses realize their greatest potential.
Our decency quotient, or DQ, drives our culture and everything we do inside and outside of our company. With connections across more than 210 countries and territories, we are building a sustainable world that unlocks priceless possibilities for all.
Your passion is focused on the design of algorithms to solve real, pressing problems using data. You will have an interest in the financial services industry and want to tackle financial crime in the wider economy. You are excited by building products for clients and are keen to engage in the design processes this involves. Specifically:
As we are often breaking new ground, both for Mastercard and more widely in our sector, we strongly encourage exploring new technologies and techniques. Some of the following experience is therefore desirable: - Practical experience using streaming technologies, including streaming platforms (e.g. Kafka), online algorithms (e.g. stochastic gradient descent), and fixed-memory data structures (e.g. Bloom Filters). - Experience using next generation machine learning techniques and tools, including Deep Neural Networks and TensorFlow. - Exposure to Network Theory, especially social network analysis and graph diffusion analysis. - Ability to build custom data visualisations, prototype browser based UX/UI, and the server side microservices to support them. - Specific experience in Account to Account payments, Card Payments, or the Payments industry more broadly
