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Data Engineer | St George's University Hospitals NHS Foundation Trust

st georges nhs trust
City of London
2 weeks ago
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Overview

Data Engineering Team supports decision-making within the Trust through the provision of a comprehensive information and analysis service by managing and optimizing the flow, storage, and accessibility of data from clinical on-clinical systems within the Trust. The post holder plays a pivotal role in ensuring that data flows smoothly, remains consistent, and is available for decision-making, insights and analytics. The post holder will contribute to the smooth transition of the onsite data warehouse solutions into a more efficient, scalable and secure cloud infrastructure while supporting the current data platform and infrastructure. The post holder plays a pivotal role in ensuring that data flows smoothly, remains consistent, and is available for decision-making, insights and analytics. The post holder will also be responsible for maintaining the current data warehouse solutions by ensuring operational efficiency, routine maintenance, issue resolution, monitoring and reporting.


Responsibilities

  • Deliver the trust’s future data landscape by designing scalable and reliable data platforms on cloud infrastructure, ensuring data integrity and supporting continuous delivery of data solutions.
  • Design, development, and implement scalable and efficient data pipelines and workflows using Azure Data Factory and other ETL tools.
  • Build and manage data lakes, warehouse and databases on Azure including Synapse Analytics, Azure Data Lake and Azure SQL Database and develop our future data processing solutions in Microsoft Fabric.
  • Take full ownership of assigned responsibilities across advisory, implementation, and review phases, engaging effectively with both technical teams and senior leadership.
  • Act as an internal technical leader and innovator, contributing to the development of advanced and tailored technical solutions for the trust while championing engineering excellence.
  • Collaborate with wider IDT team including analysts, back office and other stakeholders to understand requirements and translate them into effective solutions.
  • Provide technical support for the existing database applications.
  • Design, develop, and implement new data feeds, ETL processes, and data marts to support evolving analytical and reporting needs.
  • Proactively review new and emerging technologies and their potential benefit to the Trust, fostering a culture of innovation and continuous improvement.
  • Develop solutions and provide management for the implementation of NHS Information Standards, mapping data standards and implementation of common data models.
  • Maintain robust data modelling practices, collaborate with other team members for best practices.
  • Ensure compliance with NHS Information Standard Notices (ISNs) and data standards.
  • Develop algorithms to transform data into usable models and ensure data quality and integrity.
  • Maintain and support the current data warehousing infrastructure to support the reporting needs of the Trust by managing various extraction, transformation, and load (ETL) processes.
  • Provide advanced technical knowledge and skills to support the information needs of the Trust.
  • Ensure accuracy and timeliness of data and adhere to security and Information Governance policies and procedures.
  • Act as a team leader and provide deputising support to the Data Engineering Manager as required.
  • To diagnose complex problems, situations and/or information and make informed judgements to formulate solutions and recommend/decide on best course of action.
  • Ensure all technical processes, current and future are documented.
  • Where necessary, advise and guide colleagues on technical and best practice matters.

This advert closes on Thursday 9 Oct 2025


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