Data Engineer – SQL/Azure/D365 - Birmingham/Flexible

Investigo
Birmingham
1 week ago
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1 day per week in the office in Birmingham City Centre, the rest from home

Data Engineer required for a leading organisation based in Birmingham where you will be responsible for playing a key part in ensuring data platforms & pipelines meet organisational needs and support evidence-based decision making.

Ideally you will have solid T-SQL skills with experience in query optimisation and performance tuning. Hands on experience with SSIS would be highly desirable for the role also.

Further information about the role:

  • Building & maintaining efficient data pipelines between D365 CRM, Azure SQL Databases, Sharepoint – alongside analytical platforms tools such as SSIS & Azure Data Factory.
  • Ensuring reference data is consistent across all environments and managing deployment processes to maintain data integrity & accuracy.
  • Troubleshoot & resolve data issues end-to-end, optimising database performance, and implementing robust error handling & monitoring.

If you’re interested in finding out more, please apply and your application will be reviewed by Ian Tittley from the Specialist Technology team at Investigo


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