Data Architect

Stackstudio Digital Ltd.
London
11 hours 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 harmonization strategies.
SAP Datasphere Assessment:
Evaluate the feasibility and benefits of introducing SAP Datasphere for unified data access and governance. Define scenarios where Datasphere can enhance decision-making and analytics.
Governance & Compliance:
Ensure data architecture aligns with Solvency II, ORSA, AML, and internal governance policies. Define data ownership and stewardship models.
Documentation & Deliverables:
Prepare functional specification documents for each data stream. Create integration architecture diagrams and roadmap for automation.
Your Profile

Essential Skills / Knowledge / Experience

Technical Expertise:
Strong knowledge of SAP S/4HANA, SAP Analytics Cloud, SAP Datasphere, and large data lake (e.g., Snowflake MDH). Experience with ETL tools, APIs, and data integration frameworks. Proficiency in data modeling and architecture design.
Domain Knowledge:
Familiarity with insurance industry data (actuarial, investment, policy administration). Understanding of regulatory requirements (Solvency II, ORSA).
Soft Skills:
Excellent documentation and stakeholder communication skills. Ability to work in a multi-vendor, cross-functional environment.
Desirable Skills / Knowledge / Experience

8+ years of experience in data architecture and integration projects.
Prior experience in BFSI or insurance domain.
SAP certifications in data integration or analytics (preferred).

TPBN1_UKTJ

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