We are seeking a highly skilled
Enterprise Data Modeler
to design, develop, and maintain enterprise-level data models that support our banking operations, analytics, and regulatory compliance. The ideal candidate will have a deep understanding of financial services data structures, a strong grasp of data governance principles, and experience working in complex, regulated environments.
Key Responsibilities
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Design and maintain conceptual, logical, and physical data models across banking domains (e.g., Retail, Corporate, Risk, Compliance).
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Collaborate with business and IT teams to gather requirements and translate them into scalable and compliant data models.
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Ensure data models support regulatory requirements (e.g., BCBS 239, AML, KYC, Basel III) and internal data governance policies.
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Work closely with data architects, engineers, and analysts to implement models in data warehouses, data lakes, and operational systems.
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Drive standardization of data definitions and data quality metrics across the enterprise.
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Support data lineage, metadata management, and data cataloguing initiatives to enhance data transparency and traceability.
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Develop and maintain documentation of models, data dictionaries, and data flows.
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Assist in M&A data integration and system consolidation projects.
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Stay current with industry trends, data modelling tools, and regulatory changes affecting data structures.
Required Qualifications
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Bachelor’s or master’s degree in computer science, Information Systems, Data Science, or a related field.
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5+ years of experience in data modelling, ideally within banking or financial services.
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Expertise in data modelling tools such as ERwin, IBM Infosphere Data Architect, or similar.
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Strong understanding of relational, dimensional, and data vault modelling techniques.
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Experience working with data warehouse architectures, data lakes, and cloud-based platforms (Azure).
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Solid knowledge of banking systems and data domains (e.g., customer, account, transaction, product, risk, compliance).
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Familiarity with data governance frameworks and regulatory compliance requirements (e.g., BCBS 239, GDPR).
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Strong SQL skills and understanding of database platforms (Oracle, SQL Server, Postgress, DB2).
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Datawarehouse design methodologies understanding.
Preferred Qualifications
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Experience with master data management (MDM) and metadata management tools.
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Knowledge of real-time data modelling for payments and fraud detection.
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Exposure to big data technologies (e.g., Hadoop, Spark) and streaming platforms (Confluent).