data architect

Government Digital & Data
Coventry
3 months ago
Applications closed

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As a Senior Data Architect, your main responsibilities will include:



  • Maintaining an excellent relationship with your Service Owner(s) to understand their needs, looking for deeper underlying problems to solve and promoting the wider opportunities for transformation.
  • Creating comprehensive data model (entity relationship) diagrams for each relational schema forming a part of the Service. This will cover each level of data modelling of Conceptual, Logical and Physical.
  • Reusing or creating, common entities and attributes wherever there is a direct conceptual correspondence.
  • Taking responsibility for the data architecture of your portfolio of services, including how they interact with up- and downstream data systems, even as these evolve over time.
  • Leading on problems that require broad architectural thinking in your service(s), while creating space for data specialists to take the initiative on the detail.
  • Defining and maintaining the data architecture, including metadata, and orchestration for analytical use.
  • Working with Data and Service Owners to capture decisions on Data Classification at attribute level.
  • Providing input into data dictionaries.
  • Designing, supporting and providing guidance for the upgrade, management, decommission and archive of data in compliance with data policy.
  • Considering Data Access Control processes and documenting decisions.
  • Playing an active role in the DfE Architecture community, where you will recognise and share successful implementations of tools and techniques, as well as creating a sense of unified purpose.
  • Helping to build a diverse, inclusive culture across the architecture community with a positive attitude towards feedback.

Key Experience and Assessment Criteria

  • Experience of the practice of data model design selecting appropriate data modelling patterns.
  • Experience of creating data flow diagrams using clear notation and leading the development of data orchestration.
  • Experience of delivering user‑centred services through a wide variety of database technologies, including SQL and NO‑SQL platforms.
  • The ability to work with technical and non‑technical stakeholders to achieve agreement on delivery plans.
  • The ability to look beyond immediate technical problems and identify the wider implications.
  • The ability to manage challenging and sensitive communications and take difficult decisions.
  • Experience using data modelling tools such as Erwin data modeller or equivalent.
  • Experience of mentoring and supporting colleagues in multi‑disciplinary teams, one‑to‑one or in groups.
  • Ability to work with stakeholders to produce effective platform and workload selection to meet business needs.
  • Practical knowledge at many levels of the data stack, from querying, down to infrastructure and networking.

Joining the Department for Education as a Senior Data Architect you will play a pivotal role in shaping the future of education and children’s social care through data‑driven innovation. In this role, you will design and implement data flows and models that not only describe the current state of critical services but also set ambitious targets that better fulfil the strategic data needs of individual services and the Department as a whole. Your work will enable smarter, evidence‑based decisions that improve outcomes for citizens across England. You will collaborate with a portfolio of delivery teams working on services essential to education and social care. By defining robust data architectures, standards, and governance frameworks, you will ensure that data is accurate, accessible, and interoperable across systems.


Organisation and Responsibilities

  • If you are successful, you could be working in Digital Data Technology (DDT) as part of:
  • Enterprise Data for Insight where we deliver cutting‑edge data services across the school and children’s social care sectors. Our flagship data services cover different aspects of learner and children’s social care data, which are used to support: parental choice for school selection; performance tables; Ofsted assurance; schools, local authorities; researchers and the wider public.
  • Enterprise Data plays a key role in achieving the department’s vision; within Enterprise Data we are striving to make DfE a data‑led organisation, where we can have responsive decisions that lead to better outcomes for all children, young people and adults. The senior data architect role will help us achieve that by defining and optimising data flows across our complex cloud estate.

Locations

This position is available in all the advertised locations: Coventry, Sheffield, Manchester and Leeds.


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