Data Architect

Stackstudio Digital.
Shefford
1 week ago
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Job Details
  • Role / Job Title: Data Architect
  • Work Location: Dublin, Ireland
  • Role Type: Contracting
  • Mode of Working: Hybrid / Office based
The Role
The Data Architect will lead the assessment and design of customer's data landscape to enable seamless integration with SAP S/4HANA, SAP Analytics Cloud (SAC), and evaluate the potential introduction of SAP Datasphere for advanced data management and decision-making. This role involves assessing current data flows, defining integration strategies, and developing functional specifications to ensure scalability and alignment with future reporting and planning requirements.
Your Responsibilities
  • Data Landscape Assessment:
    Analyze existing data sources. Document current ingestion processes and identify gaps in automation and standardization.
  • Data Readiness Evaluation:
    Assess completeness, accuracy, consistency, and timeliness of data across actuarial, investment, and policy administration domains. Develop a readiness scorecard for each data stream.
  • Integration Design:
    Define source-to-target mappings for S/4HANA and SAC. Establish business transformation rules, validation logic, and exception handling procedures. Recommend ETL/MDH-based harmoniza...

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