Senior Data Engineer

Cox Automotive Europe
Manchester
1 month ago
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Senior Data Engineer – Cox Automotive Europe


Build the data platform powering the future of automotive.


At Cox Automotive, data is at the heart of everything we do — from how vehicles are bought and sold, to how we help dealers, OEMs and partners make smarter decisions every day.


We’re now looking for a Senior Data Engineer to join our Product & Technology Group (CAPTG) and help evolve our enterprise-wide data platform — the single source of truth that supports analytics, reporting, data science and decision‑making across Cox Automotive Europe.


If you enjoy building modern, cloud‑native data platforms at scale and want your work to have real business impact, this is a role where you’ll thrive.


What you’ll be working on

You’ll be part of a highly skilled Data Engineering team responsible for designing, building and running a strategic data platform that underpins everything we do with data.


You’ll work on things like:



  • Designing and building robust, scalable data pipelines that ingest and transform data from multiple systems
  • Delivering high‑quality, trusted data that powers analytics, reporting and data science
  • Building and operating pipelines using Azure Databricks, PySpark and SQL
  • Working with streaming and event‑driven data (Auto Loader, Structured Streaming, Event Hubs)
  • Helping shape the architecture and roadmap of our enterprise data platform
  • Improving data quality, monitoring and reliability through automation and best practices
  • Collaborating with software engineers, data scientists and product teams to deliver real business value

This is not a maintenance role — you’ll be helping to build and evolve a platform designed to support Cox Automotive for years to come.


The tech you’ll use

We’re cloud‑native and focused on using managed services so our engineers can focus on solving problems, not running infrastructure.


You’ll work with:



  • Azure Databricks (ELT pipelines, Auto Loader, Structured Streaming, Unity Catalog)
  • Python, PySpark and SQL
  • CI/CD using Azure DevOps and/or GitHub

If you also have experience with AWS, Terraform, MLflow or advanced data modelling, that’s a big plus.


What we’re looking for

We’re looking for someone who enjoys owning data solutions end‑to‑end and wants to work on a platform that really matters to the business.


You’ll bring:



  • Experience building and running large‑scale data pipelines
  • Strong SQL skills and experience working with relational data
  • Python and Spark (PySpark) for data processing
  • Experience using Databricks in production
  • A solid understanding of cloud data platforms and distributed systems
  • A mindset focused on quality, reliability and performance

Just as important, you’ll be someone who:



  • Communicates well with both technical and non‑technical stakeholders
  • Enjoys collaborating across teams
  • Takes ownership, spots problems early and drives them to resolution
  • Likes mentoring and raising the bar for those around them

Here you’ll get

  • The chance to work on a strategic, enterprise‑scale data platform
  • Modern, cloud‑native tooling and real engineering challenges
  • A collaborative, supportive team culture
  • The opportunity to influence architecture and technical direction
  • The stability of a global business with the innovation of a tech organisation

Ready to build something that matters?


If you’re a Senior Data Engineer who wants to work on a platform that genuinely powers the business — not just another dashboard — we’d love to hear from you.


Apply now and help shape the future of data at Cox Automotive.


STRICTLY NO AGENCIES PLEASE


We kindly ask that agencies do not contact us regarding this vacancy. We work with a carefully selected and trusted group of recruitment partners.


We do not accept unsolicited CVs sent to the recruitment team or directly to a hiring manager. We will not be responsible for any fees related to unsolicited submissions.


Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Information Technology and Engineering


Industries

Software Development, Retail Motor Vehicles, and Wholesale Motor Vehicles and Parts


Referrals increase your chances of interviewing at Cox Automotive Europe by 2x


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