Careers
Head, Data & Intelligence Engineering
Job description
About the Role The Head, Data & Intelligence Engineering owns the data platforms, analytics, and AI capabilities that power decision-making and personalized customer experiences at Polaris Bank. This is a leadership role directing four specialist disciplines — Data Engineering, Analytics & BI, Data Science & AI, and Data Governance — through dedicated leads and engineers, not as a hands-on individual contributor across all four. Key Responsibilities Data Engineering Oversight Direct the design of scalable, reliable data pipelines, warehouses, and ETL infrastructure Set standards for data modeling and infrastructure architecture used across the bank's data platforms Analytics & BI Oversight Ensure the analytics function delivers dashboards, reports, and self-service tools that drive data-driven decisions across the bank Set standards for data visualization and reporting consistency Data Science & AI Oversight Direct the development of AI/ML models supporting personalization, fraud detection, credit scoring, and operational optimization Ensure model performance, fairness, and reliability are validated before production deployment Data Governance Oversight Ensure data quality, privacy, and metadata management practices are enforced across all data assets Own the bank's data governance framework and ensure regulatory compliance in data handling Core Competencies Data platform strategy and technical leadership across engineering, analytics, and data science Working fluency in ML/AI model lifecycle management and MLOps practices Strong grounding in data privacy and regulatory compliance (NDPR and applicable banking data regulations) Stakeholder management across technology, risk, and business functions Familiarity With Tools (used by the function's teams) Python, SQL, Apache Spark, Airflow, Kafka, Databricks, Snowflake, AWS Glue, dbt; Power BI, Tableau, Looker, Metabase; TensorFlow, PyTorch, Scikit-learn, MLflow, SageMaker, Kubeflow; Collibra, Informatica Requirements Qualifications Bachelor's degree in Computer Science, Data Science, Statistics, or related field; advanced degree an advantage Demonstrated track record leading data engineering, analytics, or data science functions, ideally in banking or financial services


