Data Science Manager Riga, Latvia

GoCardless
London
1 day ago
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GoCardless is a global bank payment company. Over 100,000 businesses, from start-ups to household names, use GoCardless to collect and send payments through direct debit, real-time payments and open banking.


GoCardless processes US$130bn+ of payments annually, across 30+ countries; helping customers collect and send both recurring and one-off payments, without the chasing, stress or expensive fees. We use AI-powered solutions to improve payment success and reduce fraud. And, with open banking connectivity to over 2,500 banks, we help our customers make faster, more informed decisions.


We are headquartered in the UK with offices in London and Leeds, and additional locations in Australia, France, Ireland, Latvia, Portugal and the United States.


At GoCardless, we're all about supporting you! We’re committed to making our hiring process inclusive and accessible. If you need extra support or adjustments, reach out to your Talent Partner — we’re here to help!


And remember: we don’t expect you to meet every single requirement. If you’re excited by this role, we encourage you to apply!


The role

Data sits at the core of our mission. We leverage bank account data to deliver high-value, intelligent payment solutions for our customers, from enhancing payment success rates to driving payer fraud prevention.


As a Data Science Manager within our Payment Intelligence team, you’ll partner with Software Engineers, Product Managers, and Designers to turn big ideas into reality. You’ll own the full lifecycle of our algorithms, shaping everything from the initial concept to production-ready code that powers our global payment network.


At GoCardless, our stack is centered around Google Cloud Platform and Vertex AI, providing a high-performance environment for innovation. Our Data Scientists operate at the intersection of Python, SQL, and BigQuery to build and deploy high-performance models at scale.


What you’ll do

  • Manage and mentor a high-performing team of Data Scientists, fostering a culture of technical excellence and supporting their long-term career development.
  • Oversee the end-to-end lifecycle of mission-critical ML models that power real-time payment decisions.
  • Shape the strategic roadmap for the Payment Intelligence space, translating complex data challenges into actionable, high-impact goals.
  • Drive cross-functional impact by working closely across disciplines to build end-to-end technical solutions, from concept to production.
  • Influence Senior Leadership by acting as the bridge between technical complexity and business value, communicating ML strategy to senior stakeholders.

What excites you

  • Driving cutting-edge advancements in Data, AI, and Machine Learning within the payments space with a multidisciplinary team.
  • Mentoring a high-performing team and fostering a culture of technical excellence.
  • Solving the complex, real-time challenges of fraud prevention and payment optimisation at scale.
  • Building production-grade ML models on a streamlined GCP and Vertex AI stack to drive fintech innovation.

What excites us

  • 2+ years managing Data Scientists within complex, high-stakes domains.
  • A hands-on leader comfortable diving into the codebase. You bring strong expertise in Python and SQL to oversee the full lifecycle of a model, from initial prototype to robust production deployment.
  • A decisive collaborator who can navigate technical trade-offs and translate complex ML concepts for cross-functional stakeholders and leadership.
  • Familiarity with complex data environments and model architectures, such as deep learning (experience in Fintech, Fraud Prevention, or Payments is a big plus).

Base salary ranges are based on role, job level, location, and market data. Please note that whilst we strive to offer competitive compensation, our approach is to pay between the minimum and the mid-point of the pay range until performance can be assessed in role. Offers will take into account level of experience, interview assessment, budgets and parity between you and fellow employees at GoCardless doing similar work.


The Good Stuff!

  • Wellbeing: Dedicated support and medical cover to keep you healthy.
  • Work Away Scheme: Work from anywhere for up to 90 days in any 12-month period.
  • Hybrid Working: Our hybrid model offers flexibility, with in-office days determined by your team.
  • Equity: All permanently employed GeeCees get equity to share in our success.
  • Parental leave: Tailored leave to support your life's great adventure.
  • Time off:Annual holiday leave based on your location, supplemented by 3 volunteer days and 4 wellness days.

Life at GoCardless

We're an organization defined by our values. We start with why before we begin any project, to ensure it’s aligned with our mission. We make it happen, working with urgency and taking personal accountability for getting things done. We act with integrity, always. We care deeply about what we do and we know it's essential that we be humble whilst we do it. Our Values form part of the GoCardless DNA, and are used to not only help us nurture and develop our culture, but to deliver impactful work that will help us to achieve our vision.


Diversity & Inclusion

  • 45% identify as women
  • 23% identify as Black, Asian, Mixed, or Other
  • 10% identify as LGBTQIA+
  • 9% identify as neurodiverse
  • 2% identify as disabled

Sustainability at GoCardless

We’re committed to reducing our environmental impact and leaving a sustainable world for future generations. As co-founders of the Tech Zero coalition , we’re working towards a climate-positive future. Check out our sustainability action plan here.


At GoCardless we’re committed to fostering an inclusive and high-performance culture built on trust and transparency.


Interested in building your career at GoCardless? Get future opportunities sent straight to your email.


To ensure you have a clear understanding of the compensation and potential growth for this opportunity, we’ve shared the full base salary pay range for this role. Please note, our approach is to offer salaries between the minimum and mid-point of the range.


We want to manage expectations from the start, and if your application is successful you can discuss any questions around the pay range and salary with your Talent Partner.


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