Data Engineer (LDW Live Service)

Telford
3 days ago
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Job Title: Data Engineer (LDW Live Services)

Rate: £386 per day inside ir35

Duration: 6 months

Location: Telford/hybrid (2 days er week on site)

SC security clearance is required for this role

Job Description

We are seeking an experienced Talend, SAS, Oracle SQL and Unix Engineer to join my clients Bronze Team, supporting Live Services and project delivery activities on behalf of a government customer.

Responsbitlites:

Providing production support to resolve incidents and problems within Live Services
Performing root cause analysis and implementing permanent fixes
Supporting ongoing development work for new and existing projects
Working across Talend integration services, SAS processing, Oracle SQL databases, and Unix environments
Ensuring system stability, performance, and data integrity You will work closely with development and operations teams to deliver high-quality, resilient solutions in a regulated, high-volume data environment.

Required skills:

Talend
SAS Studio
SAS Essential's
SAS DI
Unix
Oracle Sequel
Oracle PL Sequel Nice to have:

SAS Viya 4
Informatica
GitLab
Vault If you are interested in this role, please feel free to submit your CV

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