SC Cleared Data Architect

Experis
West Midlands
1 month ago
Applications closed

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Job Title: Lead Data Architect

Ensure you read the information regarding this opportunity thoroughly before making an application.
Location: Farnborough
Duration: 6 months with possible extension
Rate: Up to £700 per day via an approved umbrella company
Must be willing and eligible to go through the SC clearance process

Our client, a reputable organisation in the IT sector, is seeking a skilled Lead Data Architect to join their Data Science, Engineering, xrnqpay and Assurance team. This senior role off

Please click on the apply button to read the full job description

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