SC Cleared Data Engineer - Talend, SAS, Oracle SQL & Unix

fortice
Telford
4 days ago
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Data Engineer
Max Supplier Rate: £450
Clearance Required: SC - Candidates must hold SC already (HMRC or other gov entity)
Duration: 6 months
Location: Telford 2 days onsite
IR35 Status: Capgemini Mandated PAYE only

Job Description:

A Talend, SAS, Oracle SQL & Unix Expert to join the Bronze Team to support the Live Services in resolving incidents and problems. Also to support the development on Projects
SKILLS - MUST HAVE: Talend
SAS Studio
SAS Essential's
SAS DI
Unix
Oracle Sequel
Oracle PL Sequel

SKILLS - NICE TO HAVE: SAS Viya 4
Informatica
GitLab Vault

Skills Required/Job Description: A Talend, SAS, SQL & Unix Expert to join the Bronze Team to support the Live Services in resolving incidents and problems. Also to support the development on Projects

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