Who we are:
We are a leader in fraud prevention and AML compliance. Our platform uses device intelligence, behavior biometrics, machine learning, and AI to stop fraud before it happens. Today, over 300 banks, retailers, and fintechs worldwide use Sardine to stop identity fraud, payment fraud, account takeovers, and social engineering scams. We have raised $145M from world-class investors, including Andreessen Horowitz, Activant, Visa, Experian, FIS, and Google Ventures.
Our culture:
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We have hubs in the Bay Area, NYC, Austin, Toronto, and São Paulo. However, we maintain a remote-first work culture. #WorkFromAnywhere
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We hire talented, self-motivated individuals with extreme ownership and high growth orientation.
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We value performance and not hours worked. We believe you shouldn’t have to miss your family dinner, your kid’s school play, friends get-together, or doctor’s appointments for the sake of adhering to an arbitrary work schedule.
Location
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UK, Germany, Ireland, Spain, Poland, Bulgaria and Lithuania – Remote
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From Home / Beach / Mountain / Cafe / Anywhere!
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We are a remote-first company with a globally distributed team. So you can find your productive zone and work from there.
About the role
We’re looking for a data-driven professional to help us measure, understand, and improve the performance of our risk strategies — and to stay ahead of evolving fraud threats by designing and deploying data-driven solutions with real-world impact. You’ll work directly with clients to understand their unique fraud challenges, rapidly prototype proof-of-concept models, and build scalable, production-ready solutions using machine learning and graph analytics.
You’ll also analyze complex datasets, design metrics, build dashboards, and collaborate closely with stakeholders across the business to drive decision-making and optimize outcomes.
This is a hands-on, high-impact role ideal for someone who thrives at the intersection of data science, client-facing problem solving, and real-time risk.
What you’ll be doing
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Champion a data-first approach across internal teams and client engagements, promoting clarity and impact
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Build and deploy machine learning models to prevent fraud across diverse fintech use cases, from proof-of-concept through to production
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Develop and track metrics to measure and monitor the performance of our risk products and the effectiveness of risk management strategies
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Conduct in-depth analyses to uncover insights contributing to fraud reduction and higher approval rates for our clients
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Work directly with clients to understand their fraud challenges and translate complex data insights into clear, actionable recommendations
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Use data and models to support the development of risk mitigation strategies and interventions while preserving and improving the user experience
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Create and automate self-serve dashboards leveraging BI tools
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Collaborate with engineering to scale models into production, optimize performance, and support data instrumentation
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Partner with cross-functional teams (Business, Product, and Engineering) to translate business requirements into data-driven solutions
What you’ll need
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7+ years of experience in data science, quantitative modeling, or a data-focused role (product analytics, business analytics) with demonstrated high impact in fraud or risk contexts
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Strong hands-on experience with Python/R and SQL is essential, with Spark being a nice to have
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Expertise in BI tools such as Tableau, Sigma, or Metabase
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Proven ability to structure and analyze complex data using techniques like EDA and cohort analysis, and communicate findings effectively to both technical and non-technical audiences, including clients
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Sharp critical thinking and creative problem-solving skills with a bias toward action
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Proficiency in defining, tracking, and communicating performance metrics
Benefits we offer:
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Generous compensation in cash and equity
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Early exercise for all options, including pre-vested
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Work from anywhere: Remote-first Culture
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Flexible paid time off and Year-end break
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Health insurance, dental, and vision coverage for employees and dependents – US and Canada specific
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4% matching in 401k / RRSP – US and Canada specific
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MacBook Pro delivered to your door
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One-time stipend to set up a home office — desk, chair, screen, etc.
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Monthly meal stipend
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Monthly social meet-up stipend
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Annual health and wellness stipend
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Annual Learning stipend
Join a fast-growing company with world-class professionals from around the world. If you are seeking a meaningful career, you found the right place, and we would love to hear from you.
To learn more about how we process your personal information and your rights in regards to your personal information as an applicant and Sardine employee, please visit our Applicant and Worker Privacy Notice.
Data Scientist employer: Sardine
Contact Detail:
Sardine Recruiting Team
How to prepare for a job interview at Sardine
✨Know Your Data Science Stuff
Make sure you brush up on your data science skills, especially in Python/R and SQL. Be ready to discuss your past projects and how you've used these tools to tackle fraud or risk challenges. Prepare to explain your thought process when building models and analysing complex datasets.
✨Understand the Company’s Mission
Familiarise yourself with Sardine's mission in fraud prevention and AML compliance. Understand their platform and how they leverage machine learning and AI. This will help you align your answers with their goals and demonstrate your genuine interest in the role.
✨Prepare for Client-Facing Scenarios
Since this role involves working directly with clients, think of examples where you've successfully communicated complex data insights to non-technical audiences. Practice explaining your findings in a clear and actionable way, as this will be crucial during the interview.
✨Show Your Problem-Solving Skills
Be ready to showcase your critical thinking and creative problem-solving abilities. Think of specific instances where you've tackled challenges in data science or fraud prevention. Highlight your bias towards action and how you've made an impact in previous roles.