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Workday Data Architect - SC Cleared

Henderson Scott Careers
London
2 weeks ago
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Senior Workday Data Architect - SC Cleared - Inside IR35 Contract

Own the Data Strategy for a Major Workday Transformation

Location: Hybrid (20% in London or Glasgow) | Contract - Inside IR35 | Duration: Initial 6 Months | Clearance: SC Clearance Essential

Are you a seasoned Workday Data Leader with 7-10 years' experience who can define and deliver a complex data migration strategy from scratch?

Our client is embarking on a major Workday transformation within a secure, complex environment. They require an exceptional Senior Workday Data Lead to take full accountability for data readiness, ensuring a successful migration across HR, Finance, and Payroll domains ahead of the SI-led implementation. This is a critical leadership role reporting directly into the Technical Delivery Manager.



The Role: Data Migration & Governance Authority

You will mobilise and lead the entire data sub-workstream, acting as the primary subject matter expert (SME) for all Workday data objects and structures.



Key Responsibilities:

  • Strategy & Execution: Define, document, and execute the end-to-end data migration strategy, including scope, toolset, timelines, and data conversion be...

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