Head of Risk & Compliance, Data Science
Role Summary:
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Responsible for leading the development of AI/ML models to identify risks (such as fraud or credit risk) while ensuring these models are auditable, explainable, and compliant with data privacy laws
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Enhance the coverage and accuracy of the existing rules for anti-money laundering and financial crimes
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Establish and run rules management process to ensure rules are performing to expected thresholds
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Manage, mentor, and develop a team of data scientist/analysts supporting compliance domains such as AML, sanctions, fraud, KYC, conduct, and regulatory reporting.
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Ensures the integrity, accuracy, and usability of data across compliance and financial crime functions.
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Develops data dashboards to provide visibility of performance of rules and models
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Bridge advanced analytics with regulatory requirements and risk management
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Assess data quality and labelling, perform advanced analysis to identify high predictive strength variables, and work with technology teams on availability of variables.
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Ensures that data-driven insights strengthen regulatory adherence, operational efficiency, and fraud prevention strategies.
Role Summary:
-
Responsible for leading the development of AI/ML models to identify risks (such as fraud or credit risk) while ensuring these models are auditable, explainable, and compliant with data privacy laws
-
Enhance the coverage and accuracy of the existing rules for anti-money laundering and financial crimes
-
Establish and run rules management process to ensure rules are performing to expected thresholds
-
Manage, mentor, and develop a team of data scientist/analysts supporting compliance domains such as AML, sanctions, fraud, KYC, conduct, and regulatory reporting.
-
Ensures the integrity, accuracy, and usability of data across compliance and financial crime functions.
-
Develops data dashboards to provide visibility of performance of rules and models
-
Bridge advanced analytics with regulatory requirements and risk management
-
Assess data quality and labelling, perform advanced analysis to identify high predictive strength variables, and work with technology teams on availability of variables.
-
Ensures that data-driven insights strengthen regulatory adherence, operational efficiency, and fraud prevention strategies.
Key Responsibilities
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Define the vision for Data Science in risk and compliance, ensuring alignment with business goals, risk appetite, and regulatory requirements
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Lead the end-to-end development of ML models (e.g., AML detection, KYC/KYB, fraud scoring, model validation) while ensuring compliance with auditability and fairness standards
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Knowledgeable about AI and comfortable leveraging AI in different aspects of model development
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Supports rules and models testing and validation, in coordination with the Product Team.
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Identifies opportunities to enhance compliance analytics capabilities and automation.
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Develop, measure, and monitor data risk frameworks, including data quality, integrity, and security
Requirements
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Master's degree or PhD in Computer Science, Data Science, Statistics, Mathematics, or a related field
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12+ years in data science / modeling roles preferably in compliance or financial crime domain.
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Strong understanding of ETL (Extract, Transform, Load) processes, data modelling concepts and data warehousing
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Understanding of AML, KYC, sanctions, and regulatory reporting requirements would be preferred
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Proficient in AI/ML algorithms, statistical modeling, data mining, and languages like Python, R, and SQL
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Experience in building data / management information dashboards in different environments (Power BI, Qlikview, Qilksense)
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Familiarity with financialcrime systems and data structures (AML transaction monitoring, sanctions screening engines and fraud detection systems) is a plus.
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Ability to translate complex datasets into high accuracy good / bad separation decisions
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Strong written and verbal skills for reporting and stakeholder engagement.
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Build and manage high-performing teams, fostering a culture of innovation, data science excellence, and compliance awareness