Sardine
Data Scientist
Job Summary
As a Data Scientist at Sardine, you will design and deploy data-driven solutions to help clients combat fraud using machine learning and graph analytics. The role involves working directly with clients to understand challenges, prototype models, and collaborate with engineering to scale models into production. Ideal candidates will have over five years of experience in data science, strong coding skills, and the ability to communicate complex findings to non-technical stakeholders. The position offers a remote-first culture with comprehensive benefits and opportunities for growth.
Required Skills
Benefits
Job Description
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:
We have hubs in the Bay Area, NYC, Austin, and Toronto. However, we maintain a remote-first work culture. #WorkFromAnywhere
We hire talented, self-motivated individuals with extreme ownership and high growth orientation.
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
Remote - US or Canada
From Home / Beach / Mountain / Cafe / Anywhere!
We are a remote-first company with a globally distributed team. You can find your productive zone and work from there.
About the role
As a Data Scientist on our team, you’ll play a key role in helping customers 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 help standardize modeling workflows and collaborate with engineering to streamline backend systems.
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
Champion a data-first approach across internal teams and client engagements, promoting clarity and impact
Build and deploy machine learning models to prevent fraud across diverse fintech use cases
Use data and models to support the development of risk mitigation strategies and interventions while preserving and improving the user experience
Work directly with clients to understand challenges and deliver high-impact, data-driven solutions
Evolve our risk metrics, the supporting datasets, and how we measure the causal impact of initiatives
Collaborate with engineering to scale models into production and optimize performance
What you’ll need
5+ years of experience in data science or quantitative modeling, ideally in risk or fraud contexts
Advanced degree in a quantitative field (Mathematics, Statistics, Computer Science, Engineering, Economics, etc.)
Strong working knowledge of Python, R, Spark, SQL, or equivalent
Sharp critical thinking and creative problem-solving skills with a bias toward action
Proven ability to explain complex technical findings to non-technical stakeholders and clients
Compensation:Base pay range of 150,000 - 170,000 USD / 166,000 - 210,000 CAD + Series C equity with tremendous upside potential + Attractive benefits
The compensation offered for this role will depend on various factors, including the candidate's location, qualifications, work history, and interview performance, and may differ from the stated range.
Benefits we offer:
Generous compensation in cash and equity
Early exercise for all options, including pre-vested
Work from anywhere: Remote-first Culture
Flexible paid time off, Year-end break, Self care days off
Health insurance, dental, and vision coverage for employees and dependents -US and Canada specific
4% matching in 401k / RRSP -US and Canada specific
MacBook Pro delivered to your door
One-time stipend to set up a home office — desk, chair, screen, etc.
Monthly meal stipend
Monthly social meet-up stipend
Annual health and wellness stipend
Annual Learning stipend
Unlimited access to an expert financial advisory
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 ourApplicant and Worker Privacy Notice.
Sardine
Sardine’s AI platform is at the core of enterprise risk and fraud workflows, allowing them to consolidate vendors and improve operational efficiency. Hundreds of enterprises in over 70 countries trust Sardine to stop fraud in real-time, streamline BSA/AML compliance, and unify data across risk teams.
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