Data Architect - SC Cleared

Henderson Scott
Telford
1 month ago
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  • Rate: £560 per day (Inside IR35)

  • Location: Telford (Hybrid: 2 days per week on-site)

  • Security: Active SC Clearance Required

  • Duration: 6 Months (April 2026 delivery milestone)

The Project: Join a newly established Agile Scrum team within a major Government Digital Hub. You will lead the data design for a high-priority 'Risk & Intelligence' platform. The goal is to migrate and automate complex data flows from a legacy on-premise estate into a cutting-edge AI-powered analytics environment.

Core Responsibilities:

  • System Migration: Design the blueprints to move data from a large-scale Oracle Enterprise environment into SAS Viya 3.5.

  • Risk Modelling: Build the data architecture for real-time risking engines using SAS RTENG and SAS Studio V.

  • Integration: Implement automated ingestion pipelines using approved Enterprise Architecture (EA) integration patterns.

  • Governance: Manage metadata and data dictionaries (using MS Purview) to ensure compliance with strict security and decommissioning policies.

Technical Requi...

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