Senior Data Engineer

TipTopJob
Bristol
5 days ago
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Job Summary

A DVSA Senior Data Engineer is responsible for the design and implementation of numerous complex data flows to connect operational systems, data for analytics and BI systems.


Location & Salary

Locations: Bristol, Swansea, Leeds, Nottingham, Newcastle, Oldham, Birmingham, Yeading.


Salary: Up to GBP 58,997.


Key Responsibilities

  • Lead the build of data streaming systems.
  • Optimize code to ensure processes perform optimally.
  • Lead work on database management.
  • Recognize and share opportunities to re‑use existing data flows.
  • Coordinate project teams and set best practice and standards.
  • Apply knowledge of systems integration to work.
  • Design, build and operate ETL and streaming pipelines for large, varied datasets.
  • Implement and enforce data modelling, lineage and quality standards.
  • Optimize storage, processing and query performance on cloud and on‑prem platforms.
  • Integrate data sources via APIs, batch and real‑time ingestion methods.
  • Automate deployment, testing and monitoring using CI/CD and observability tools.
  • Collaborate with analysts, data scientists and product teams to deliver reusable data products.
  • Ensure data security, access controls and compliance with government data standards.
  • Mentor junior engineers and contribute to engineering best practices and documentation.

Person Specification

  • AWS Certified Cloud Practitioner or equivalent experience.
  • Expertise in integrating and separating data feeds to map, produce, transform, and test new data products at an enterprise level.
  • Experience in establishing enterprise‑scale data integration procedures across the data development lifecycle and ensuring adherence.
  • Expertise in exposing data from systems, linking data from multiple systems and delivering streaming services.
  • Designing, writing, and iterating code from prototype to production‑ready; understands security, accessibility and version control; can use a range of coding tools and languages.
  • Knowledge of cloud‑based tools and technologies including AWS, Azure, RDBMS and the role of data integration and data process flow.
  • Demonstrable understanding of how to expose data from systems (e.g., through APIs), link data from multiple systems and deliver streaming services.

Benefits

  • Employer pension contribution of 28.97% of salary.
  • 25 days annual leave, increasing by 1 day each year of service (up to a maximum of 30 days), plus 8 bank holidays and a privilege day for the King's birthday.
  • Flexible working options encouraging a great work‑life balance.

Seniority Level

Mid‑Senior level.


Employment Type

Full‑time.


Job Function

Information Technology.


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