Data Science Manager

Zilch
London
2 months ago
Applications closed

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Job Description

Who We Are

Zilch is a payment tech company on a mission to create the most empowering way to pay for anything, anywhere. Combining the best of debit, credit and savings, we give our customers the option to earn instant cashback or spread the cost of pricier purchases, completely interest free and with no late fees. Pretty great, right?

We started in 2018 with a small team and a big dream - to make credit accessible to all. Since then, we've achieved double unicorn status and taken on more than 5 million customers. There are some exciting projects coming up and we’ve got big growth plans.

Want to join us?

About The Role.

We are looking for an exceptional Data Science Manager to lead and grow our data science capability, driving the development, deployment, and optimisation of machine-learning solutions that support Zilch’s mission to deliver responsible, real-time and seamless credit experiences.

This is a leadership role that involves line management of experienced data scientists, while staying hands-on technically. We are looking for someone who can drive production-grade predictive insights across our payments ecosystem and ensure the team delivers measurable business impact.

In this role, you will lead a team of data scientists and work closely with product, engineering, risk, operations, and commercial teams to build ...

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