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Data Warehouse Developer

Royal Berkshire Nhs Foundation Trust
Reading
1 day ago
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At Royal Berkshire NHS Foundation Trust we put our patients at the heart of every element of health and care that we provide. Following our recent CQC inspection, we have been rated ‘Good’ and continue to strive for outstanding care for our community.


The Data Warehouse Developer is a key member of the Digital Data & Technology (DDaT) Development team, adding value for our patients by improving and developing information services across the Trust and wider health and care system.


Responsibilities

  • Act as a technical expert for users within the department and across the Trust in areas such as Microsoft SQL Server (T‑SQL, SSIS, SSRS, SSAS), data‑warehousing architectures, Microsoft Power BI, Tableau, Exasol, Bedrock Platform, and Microsoft Azure.
  • Support the Data Warehouse Lead by providing specialist technical support for database applications, ensuring smooth operation, stability and performance of the data warehouse, and responding promptly to system issues and user queries.
  • Contribute to the design and development of the data warehouse architecture, including new data marts, ETL processes and database structures; lead implementation with a focus on scalability, performance and security.
  • Manage complex ETL processes, ensuring timely and accurate integration of multiple datasets from various sources into the warehouse; automate processes where possible using SSIS.
  • Deputise for the Data Warehouse Lead in all areas related to support and maintenance of the Data Warehouse and related systems.

Qualifications

  • Educated to degree level or equivalent in a relevant field (e.g., computer science).
  • Demonstrable experience in maintenance and development of Data Warehouse and BI architecture, including performance, maintainability and scalability.
  • Strong knowledge of Microsoft SQL Server (T‑SQL, SSIS, SSRS, SSAS), data‑warehousing architectures, Microsoft Power BI, Tableau, Exasol, Bedrock Platform and Microsoft Azure.
  • Experience delivering specialist training to staff and organisations on the Data Warehouse technical environment (desirable).

Staff Benefits

  • Flexible working opportunities and a strong emphasis on work‑life balance.
  • Annual leave: 27 days for new starters, increasing to 29 days after 5 years and 33 days after 10 years NHS service; pro‑rata for part‑time staff.
  • NHS pension scheme.
  • Employee Assistance Programme.
  • Money Advice Service.
  • Generous maternity, paternity and adoption leave for eligible staff.
  • On‑site nursery (based at RBH).
  • Full educational library services.
  • Cycle‑to‑work scheme, lockable storage for cycles.
  • Bus‑to‑work scheme.
  • Excellent rail and bus links.
  • Health‑service discounts at hundreds of brands.

We are an equal‑opportunity employer and welcome candidates from all backgrounds.


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