Data Architect

Stott & May Professional Search Limited
London
11 months ago
Applications closed

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Data Architect
Start: ASAP
Duration: 6-12 months
Pay: inside IR35
Location: Hybrid, commutable to Lincolnshire
We are looking for a senior data architect with good exposure to D365 finance and HR data.
Skills required:
- Oracle or similar ERP experience (using D365 F&O)
- Scripting / automation: ability to automate as much of migration as possible
- Hands-on: likely to be running scripts and also performing the migration
Security Clearance: project involves an NPPV3 clearance. You must be a resident in the UK for a minimum of 3 years

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