Dieses Stellenangebot ist nicht mehr verfügbar
Über
Key Responsibilities:
- Design and build the unified data model for the Operational Data Store, balancing domain-specific context with enterprise integration requirements.
- Define the architectural approach for federating domain data products into a cohesive enterprise data layer without creating monolithic dependencies.
- Develop data transformation specifications, mapping rules, and working examples that preserve domain semantics while enabling cross-domain consistency.
- Establish canonical data models that integrate across domain boundaries while respecting source system ownership and business context.
- Perform source system analysis, data profiling, and gap assessments to understand domain data products and their integration requirements
- Write and validate SQL queries, transformation logic, and data quality rules to prove out architectural decisions before handoff.
- Define system of record ownership across domains and maintain accurate data lineage documentation for federated data sources.
- Design integration patterns that allow domains to evolve independently while maintaining enterprise data consistency.
- Collaborate directly with Data Engineers during implementation, troubleshooting data quality issues and refining transformation logic.
- Partner with domain stakeholders and enterprise architects to align domain data products with cross-domain analytics and operational needs.
- Establish federated data governance standards that balance domain autonomy with enterprise consistency requirements.
- Conduct architecture reviews focusing on data integrity, performance optimization, and scalability of the ODS.
- Ensure compliance with data privacy regulations, security standards, and audit requirements in financial services.
- Stay current with industry trends in Data Mesh, Data Fabric, and regulatory changes in the FinTech sector.
Required Qualifications:
- Bachelor's or master's degree in computer science, Information Systems, Data Science, or related field.
- 10+ years of experience in data management with at least 5+ years in data architecture roles.
- Strong understanding of Data Mesh principles (domain ownership, data as product, federated governance) and Data Fabric concepts (unified access, integration layer, cross-domain visibility).
- Proven expertise in logical and physical data modeling using tools such as ERwin, PowerDesigner, or similar.
- Experience designing canonical data models that integrate multiple domain data sources while preserving business context.
- Strong hands-on SQL skills with ability to write complex queries for data profiling, validation, and transformation.
- Experience building Operational Data Stores, data warehouses, or enterprise data hubs with multiple source system integrations.
- Demonstrated ability to perform data profiling, source system analysis, and data quality assessments independently.
- Hands-on experience developing data transformation specifications and mapping documentation that engineers can implement.
- Working knowledge of ETL/ELT patterns and data pipeline architecture.
- Familiarity with event streaming platforms (Kafka, Kinesis) for real time data ingestion scenarios.
- Solid understanding of data governance, metadata management, and data lineage practices.
Preferred Qualifications:
- Demonstrates judgment and flexibility - positively deals with shifting priorities and rapid change of environments.
- Experience in financial services, insurance, or large scale enterprise data platforms.
- Experience implementing Data Mesh architectures or federated data governance models
- Proficiency with Python or similar scripting language for data analysis and validation.
- Familiarity with cloud data services (AWS Glue, Azure Data Factory, Snowflake, Databricks).
- Knowledge of data catalog and lineage tools (Collibra, Alation, Apache Atlas).
- Exposure to domain-driven design principles applied to data architecture.
- Understanding of regulatory requirements (SOX, GDPR, CCPA) as they apply to data management.
- Experience mentoring Data Engineers and establishing team technical standards.
Sprachkenntnisse
- English
Hinweis für Nutzer
Dieses Stellenangebot wurde von einem unserer Partner veröffentlicht. Sie können das Originalangebot einsehen hier.