Band 8c Data Warehouse Manager | Barking Havering and Redbridge University Hospitals NHS Trust

Barking Havering and Redbridge University Hospitals NHS Trust
Romford
4 days ago
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Overview

We are seeking an experienced and dynamic Data Warehouse Manager to lead our Clinical Systems Data Warehouse Team. You will be responsible for the design, development, implementation, and support of the Trust’s Data Warehouse and associated services. This is a pivotal role, acting as technical architect and subject matter expert, ensuring robust data flows, high-quality reporting, and the delivery of business-critical datasets to support operational services, finance, and business intelligence.

Responsibilities
  • Leading and motivating a team of Lead and Senior Developers
  • Overseeing the delivery of new datasets and enhancements to the Data Warehouse
  • Managing projects, resources, and budgets to deliver solutions on time and within scope
  • Acting as Change Manager for business rules and ensuring compliance with governance standards
  • Liaising with internal and external stakeholders, including clinical and corporate teams, suppliers, and NHS bodies
  • Ensuring data quality, security, and integrity in line with NHS and Trust standards
  • Supporting financial business rules and monthly reporting cycles
  • Driving innovation and continuous improvement in data management and analytics
  • Leading a group of Lead and Senior Developers to deliver new datasets into the data warehouse and working on developments to enhance the BHRUT data warehouse system
  • Acting as technical architect for the data warehouse system
  • Responsible for the determination, design, development, implementation, and support of the Trust Data Warehouse and its associated services and applications
  • Delivery of data warehouse services to support the business needs of Operational Services, Finance and Business Intelligence
  • Providing subject matter expertise in data sets to support change projects, system upgrades and end user queries
  • Line management and welfare of all assigned staff
  • Planning of all project progress, assessment of required resources, determination of project timetable
  • Monitoring of project progress and the use of staff and other resources
  • Regular work reviews for staff in the team, and recommending training and personal development assistance, as appropriate
  • Customer liaison and design proposals in assigned projects

We’re an organisation that is getting better and better and our improvements are driven by a determination to deliver care we’re proud of and our patients are happy with.

They are benefitting from a new electronic patient record and our maternity services have been rated good by the Care Quality Commission. We operate from two main sites – KGH in Goodmayes and Queen’s Hospital in Romford. We have two busy emergency departments with more than 330,000 people visiting them last year. We’re campaigning to secure the £35m we need to transform the A&E at Queen’s and get rid of corridor care. We’re proud of our regional Neurosciences Centre, Radiotherapy Centre and Hyper Acute Stroke Unit. We’re also part of the North East London Cancer Alliance.

We run a Women’s Health Hub in Ilford; an Ageing Well Centre in Hornchurch; and Community Diagnostic Centres (CDCs) at Barking Community Hospital and at St George’s Health and Wellbeing Hub. These CDCs are open 12 hours a day, 7 days a week. The majority of our 8,400 staff – who come from 146 different countries – live in the three diverse London boroughs we serve and are from black, Asian and minority ethnic groups. Many can work flexibly and more than 400 of them are on our Ofsted-accredited apprenticeship programmes. We’re proud to be a London Living Wage employer.

For further information on this role, please see the attached detailed Job Description and Person Specification. The person specification listed below is not the full specification requirements for the role. Please ensure you review the full specification on the job description prior to submitting your application. Applicants are advised to read all the information on the advert and the supporting information before completing and submitting an application. As you complete your application please ensure you clearly demonstrate how you meet the criteria in the person specification for this post by adequately completing the supporting information section of the application form. All new staff appointed at the Trust are subject to a probationary period. Applications should be made online. Queries regarding the application process, assistance with completion of the application form or if you require any adjustments (for applicants with a disability) please contact Louise Lucy Glavin, Recruitment Advisor, on Ext. 5936. Further details regarding the post may be obtained by contacting the manager as per the contact details above. This advert closes on Sunday 4 Jan 2026


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