Data Engineer - SAP Data Services, Oracle, SQL, ETL - (SC Cleared)

Global Resourcing
Sheffield
9 months ago
Applications closed

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Data Engineer

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Data Engineer

Data Engineer

Data Engineer- SAP Data Services, Oracle, SQL, ETL


Remote Working

6 months

£500-£550 per day (inside IR35)


Candidates must be eligible for SC Clearance


We are looking for an experienced Data Engineer to join an existing team and be responsible for maintaining and developing the DWH provision for reporting and regulation.


Daily the role involves developing ETL pipelines, deploying ETL packages and rigorous testing in response to project and incident requests. You will be involved in detailed requirements gathering to enable clear definition, base-lining and management of requests. You will be able to interpret requirements and apply data engineering standards, modelling and design techniques to these requirements to define and document data warehouse component specifications to facilitate and participate in the coding, verifying, testing, amending, and refactoring of data flows, data pipelines, programs, and scripts.


Skills and Experience

  • Proven experience in SAP Data Services
  • Experienced in Oracle
  • Solid SQL skills and technical knowledge of some of the following: Python, Powershell, SOAP, REST, WSDL, SFTP/FTPS, SSIS, TOAD and SSMS
  • Understanding of DWH principles and data development best practices, including data regulations.

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