Senior Enterprise Data Architect

BAE Systems
Frimley
1 week ago
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Job Description – Senior Enterprise Data Architect (00134205)

Job Title: Senior Enterprise Data Architect


Location: Frimley, Preston or Glasgow plus other locations will be considered. We offer a range of hybrid and flexible working arrangements - please speak to your recruiter about the options for this particular role.


What you’ll be doing:

  • Develop Enterprise and programme level data models and views across the full range of business functions using industry and organisational standards e.g. UML
  • Uses models and views to support a range of endeavors’ including projects, transformations and functional support
  • Leads development of data architecture patterns for reuse throughout the enterprise
  • Makes decisions which impact the success of assigned work, i.e. results and deadlines.
  • Leads activities to improve the use of data architecture to drive improvements to availability, quality and governance
  • Influences a broad range of stakeholders, including senior leaders , on the contribution of own specialism.
  • Leads on stakeholder collaboration throughout all stages of work. Builds appropriate and effective business relationships across the organisation and external partners. Facilitates collaboration between stakeholders who have diverse objectives.
  • Design, develop and construct data architecture products, and integrate them into systems and business architectures
  • Puts data into context. Contributes to conversations championing data and data models including the cross over with data processes, data storage, and machine learning technology
  • Summarise and present data architecture outputs in the most appropriate format for users

Your skills and experiences:

  • A good level of experience in enterprise data modelling working within a complex environment. Includes requirements gathering and analysis , involving a broad range of audiences.
  • Expertise in at least one industry standard data modelling tool. For example, Sparx – Enterprise Architect
  • Advises on available standards, methods, tools, applications and processes relevant to the data specialism and can make appropriate choices from alternatives.
  • Understands and evaluates the organisational impact of new technologies and Data Architecture services
  • Clearly demonstrates impactful communication skills (oral, written and presentation) in both formal and informal settings, articulating complex ideas to a broad range of audiences
  • Learning and professional development — takes initiative to advance own skills and identify and manage development opportunities in area of responsibility

As well as a competitive pension scheme, BAE Systems also offers employee share plans, an extensive range of flexible discounted health, wellbeing and lifestyle benefits, including a green car scheme, private health plans and shopping discounts - you may also be eligible for an annual incentive.


Enterprise Data Architecture team:

This exciting new role sits in the Data COE Data Architecture Team, which forms part of the Head Office Information Management and Technology Team under the Office of the Chief Information Officer. The profile and requirements of the Team have recently significantly increased due to multiple enterprise-wide transformation programmes, including OneDDC which aims to restructure digital, data and cyber across the enterprise. Reporting into the Principal Enterprise Data Architect, the role creates a good opportunity for an experienced Enterprise Data Architect to drive strategic output on large scale programmes and projects, through understanding business needs and data modelling across the enterprise.


Why BAE Systems?

This is a place where you’ll be able to make a real difference. You’ll be part of an inclusive culture that values diversity of thought, rewards integrity, and merit, and where you’ll be empowered to fulfil your potential. We welcome people from all backgrounds and want to make sure that our recruitment processes are as inclusive as possible. If you have a disability or health condition (for example dyslexia, autism, an anxiety disorder etc .) that may affect your performance in certain assessment types, please speak to your recruiter about potential reasonable adjustments.


Please be aware that many roles at BAE Systems are subject to both security and export control restrictions. These restrictions mean that factors such as your nationality, any nationalities you may have previously held, and your place of birth can restrict the roles you are eligible to perform within the organisation. All applicants must as a minimum achieve Baseline Personnel Security Standard. Many roles also require higher levels of National Security Vetting where applicants must typically have 5 to 10 years of continuous residency in the UK depending on the vetting level required for the role , to allow for meaningful security vetting checks.


Closing Date:

12th March 2026. We reserve the right to close this vacancy early if we receive sufficient applications for the role. Therefore, if you are interested, please submit your application as early as possible.


Job

IT


Primary Location

GB-ENG-SRY-Frimley


Other Locations

GB-SCO-Lanarkshire-Glasgow, GB-ENG-LAN-Preston


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