Data Engineer (SC Clearance)

eTeam Workforce Limited
Telford
2 months ago
Applications closed

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Job Description:

We are a Global Recruitment specialist that provides support to the clients across EMEA, APAC, US and Canada. We have an excellent job opportunity for you.

Role: Data Engineer (LDW/BD&A)
Location: Telford
Working Mode: Hybrid (weekly 2 days Onsite)
Contract Type: Inside IR35
Duration: 6 months
Clearance Required: SC Clearance
Pay Rate: £383 per day Inside IR35

Job Description:
SC Cleared Engineer required for demanding customer facing development role to support the BI Connect system and network enhancements, a strategic risking tool that cross matches one and a half billion internal and third party data items to enable Client to capture up to £25 million in yield per day in recovered tax revenue.
Open to applicants from Global Grade B.
Role requires development to enhance the BI Connect system and providing updates to internal and customer stakeholders.

Skills required:
SC, deep understanding of SQL and UNIX.
Good understanding of testing required.
Ideally Telford based and willing to attend the office Tues/Thurs as per team rituals.

Skills/nice to have:
ALM, Maestro, PL/SQL, Shell Scripting, NetReveal

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