Lead Data Scientist - Financial Crime
Mastercard
Category: Data & AnalyticsSubcategory: Data ScientistType: Full-time
Our Purpose
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.
Title and Summary
Lead Data Scientist - Financial Crime
Overview:
Within Financial Crime Solutions, we build and deliver products powered by payments data to detect and prevent financial crime. Our teams combine data science with deep expertise in payments to support financial institutions in tackling money laundering and fraud.
As a Lead Data Scientist, you will serve as a senior individual contributor responsible for designing, building, and continuously improving machine learning models used in production to detect anomalous behaviour in transaction data. You will work closely with a Principal Data Scientist and a Director of Data Science, contributing to technical direction while owning delivery and execution in your area. The primary focus is Anti-Money Laundering (AML), with flexibility to support adjacent areas (e.g. fraud, A2A, crypto) depending on team priorities.
This is a full-time hybrid position based in Toronto, Canada, with an expectation of at least three days per week in the office.
Role:
• Lead the development and improvement of AML models focused on anomalous transaction behaviour in card payments.
• Own problems end-to-end, from problem framing and prototyping to production improvement.
• Influence modelling approaches and technical direction in collaboration with senior data science leadership.
• Analyse large-scale payments data to identify patterns linked to illicit activity.
• Drive improvements in model performance, stability, explainability, and scalability.
• Partner with Engineering and Product teams to ensure effective deployment and maintenance in production.
• Produce and maintain clear model documentation, including assumptions, limitations, and performance characteristics.
• Contribute to technical standards and best practices.
• Ensure all work aligns with regulatory, privacy, and security requirements.
All About You:
• Strong Python expertise with experience in standard data science libraries and distributed data processing frameworks such as PySpark.
• Proven ability to design, deploy, and maintain machine learning models in production.
• Experience working with transactional or behavioural data at scale, with strong problem-solving ability in noisy, high-dimensional environments.
• Hands-on experience with distributed data platforms (e.g. Databricks) and ML lifecycle tools (e.g. MLflow).
• Highly autonomous and outcome-focused, with the ability to drive work independently while aligning with broader technical direction.
• Strong communication skills, with the ability to engage effectively across technical and non-technical stakeholders.
• Experience working in collaborative environments, including code reviews and cross-functional delivery.
• Pragmatic mindset focused on impact and reliability.
• Bachelor's degree in Computer Science, Engineering, Data Science, or a related quantitative field, or equivalent practical experience.
Preferred:
• Experience in AML, fraud, or financial crime analytics.
• Familiarity with anomaly detection, behavioural modelling, or graph techniques.
• Exposure to model explainability, governance frameworks, or regulatory requirements in financial crime.
Mastercard is a merit-based, inclusive, equal opportunity employer that considers applicants without regard to gender, gender identity, sexual orientation, race, ethnicity, disabled or veteran status, or any other characteristic protected by law. We hire the most qualified candidate for the role. In the US or Canada, if you require accommodations or assistance to complete the online application process or during the recruitment process, please contact reasonable_accommodation@mastercard.com and identify the type of accommodation or assistance you are requesting. Do not include any medical or health information in this email. The Reasonable Accommodations team will respond to your email promptly.
Corporate Security Responsibility
All activities involving access to Mastercard assets, information, and networks comes with an inherent risk to the organization and, therefore, it is expected that every person working for, or on behalf of, Mastercard is responsible for information security and must:
-
Abide by Mastercard’s security policies and practices;
-
Ensure the confidentiality and integrity of the information being accessed;
-
Report any suspected information security violation or breach, and
-
Complete all periodic mandatory security trainings in accordance with Mastercard’s guidelines.
In line with Mastercard’s total compensation philosophy and assuming that the job will be performed in Canada, the successful candidate will be offered a competitive pay based on location, experience and other qualifications for the role and may be eligible to participate in a discretionary annual incentive program. This posting reflects one or more current openings on our team.
Pay Ranges
Toronto, Canada: $127,000 - $203,000 CAD
Share This Job
Mastercard
WebsiteConnecting everyone to priceless possibilities
Mastercard drives economic growth and enables individuals across more than 200 countries and territories globally. Collaborating with customers, it fosters a sustainable economy that promotes prosperity for all. The company offers diverse digital payment options, ensuring transactions are secure, easy, intelligent, and accessible. Through its technology, innovation, partnerships, and networks, Mastercard delivers distinctive products and services that empower people, businesses, and governments to achieve their fullest potential.