Data Architect

Experis
Nottingham
3 weeks ago
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Data Architect

Hybrid: 1-2 days per week in the office (North West)


6-month Fixed Term Contract


Experis are delighted to be partnering with a large, well-established organisation as they continue to evolve and modernise their enterprise data landscape. We are supporting them in the search for an experienced Data Architect to join their Group Data & Analytics function on an initial 6-month FTC.


This role plays a critical part in shaping how data is structured, modelled and connected across the organisation. You'll provide the data-centric architectural direction that underpins high-quality engineering delivery, supports governance, and enables data to be used effectively and consistently across the business.


What You'll Be Doing

  • Defining principles, standards and patterns for how data is structured, modelled and connected.
  • Shaping and maintaining the roadmap for a future-state enterprise data platform.
  • Evaluating and guiding the adoption of modern data architectures (e.g. lakehouse, mesh, fabric).
  • Providing data-focused architectural leadership across programmes, projects and delivery squads.
  • Defining and maintaining conceptual, logical and physical data models.
  • Reviewing engineering designs to ensure alignment with agreed data standards and best practice.
  • Working closely with Data Engineering, Governance and Technology Architecture teams on data-related decisions.
  • Acting as a senior advisor on data architecture, modelling and platform design across the organisation.

Experience Required

  • Proven experience in enterprise-scale data architecture and data modelling roles.
  • Strong understanding of modern cloud-based data platforms and services.
  • Solid knowledge of data integration, transformation and modelling patterns.
  • Experience defining future-state data platform strategies within cloud environments (Azure, AWS, Snowflake or similar).
  • Understanding of modern data concepts such as data products and "data as a product".
  • Ability to influence senior stakeholders and collaborate effectively with technology architects.
  • Familiarity with contemporary data engineering tooling (e.g. Snowflake-centric stacks, DBT, Airflow, Fivetran).

If you'd like to learn more, please contact Jacob Ferdinand at


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