SAP ABAP/CDS Developer

Ntrinsic Consulting
Bristol
1 year ago
Applications closed

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Purchasing Data Quality Support Assistant

Contract

Start: ASAP

Duration: 2 years

Location: Remote - candidates need to be on site occasionally

Requirements: SC / BPSS needed

Rate: £351.92 per day (inside IR35 - CPL/Ntrinsic would run your weekly payroll, like an Umbrella company)


Job Description:

  • Coordinate with SAP Functional SME to understand business requirement and design data structure for the SAP data requirements for each KPI.
  • Design and document the SAP data structure of the data requirement for the KPI to support creation of Data Model by Data Architect.
  • Develop CDS views based on SAP data model provided by the Data Architect
  • Create the SAP Solution Design of the created CDS View
  • Create the Unit Test Document showing proof of testing of the created CDS Views
  • Handle and document movement of transports
  • Send data extraction requests and coordinating with Talend ETL Engineer to extract the data and work with Talend ETL Engineer on specific data requirements.
  • Investigate and address any issues that may arise during UAT
  • Coordinate with Development Lead in prioritization of implementing improvements or address any bugs post go live.
  • Attending go/no go meetings to answer any development or transport related questions.
  • Sending list of transports to UAT Lead for approval.
  • Responsible for sending request for transport to CAB and applications mailbox for emergency or normal transports with proper approvals.

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