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Data Engineer

UK Parliament
City of London
3 days ago
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Overview

Are you passionate about data engineering? The Open Data team at the Parliamentary Digital Service (PDS) is beginning the development of a new Open Data Platform for parliamentary procedure data, replacing existing platforms and their associated data integration and publishing services. As our Senior Data Engineer you will play a key role in designing, building, and evolving the data platforms that support decision‑making across the organisation. This role sits at the intersection of engineering, analytics, and product delivery. You’ll work closely with cross‑functional teams to provide high‑quality, reliable, and scalable data solutions that drive insight and operational excellence.


Responsibilities

  • Design, build, and maintain scalable, high‑quality data pipelines and ETL/ELT workflows that support analytics, reporting, and product development.
  • Assess, recommend, and implement modern data technologies and tooling to meet organisational requirements.
  • Develop and optimise data models, warehouses, and storage layers to ensure performance, reliability, and ease of use.
  • Work closely with multidisciplinary teams to embed data engineering best practice throughout the product and development lifecycle.
  • Collaborate with internal customers to understand data needs, provide technical guidance and promote confident, effective use of data systems.
  • Build and support a new Open Data Platform for parliamentary procedure data, integrating upstream master data and developing APIs and web‑client applications.

Qualifications

  • Strong software engineering experience, with C# as a primary development language, and ability to write clean, scalable, production‑ready code.
  • Demonstrable experience designing and building ETL/ELT data pipelines and integrating data from multiple upstream sources.
  • Proven cloud experience (Azure preferred, AWS or GCP), including deploying, managing, and supporting cloud‑hosted data services and applications.
  • Experience developing and maintaining APIs and data services, including implementing automated testing (unit and integration tests).
  • Strong knowledge of containerisation and deployment approaches (cloud container services preferred, Docker or Kubernetes) and CI/CD practices.
  • Experience working with public‑facing data platforms or open data services, including data modelling, metadata, or data standards.
  • Ability to pass security clearance, backed by the right to work in the United Kingdom.

Benefits

  • Up to 35 days annual leave in addition to bank holidays.
  • Generous maternity pay policy up to 6 months full pay.
  • Great pension scheme options (contributory and non‑contributory).
  • On‑site subsidised gym, nursery, catering, post office, travel office and GP.
  • Flexible options including hybrid working and family‑friendly policies.

About the Organisation

UK Parliament is steeped in history and tradition. It is an important part of UK life and we need to ensure as many people as possible can engage with its work. This is why we are at the start of a huge transformation programme powered by technology. The Parliamentary Digital Service (PDS) works with the House of Commons and the House of Lords with all their IT and digital needs. We are here to realise the digital ambitions of a modern Parliament and welcome you to join us in building a digital democracy.


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