Data Engineer

Searchability®
Liverpool
1 week ago
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  • Opportunity for a Data Engineer to join an exciting Internet Marketing Agency in Liverpool
  • Salary up to £50,000 + some fantastic benefits including hybrid working, a collaborative environment and private health insurance
  • Apply online or contact Chelsea Hackett via

WHO WE ARE:

We are a thriving agency in Liverpool looking to recruit a Data Engineer to join our growing function. With over 20 years of business under our belt we are a market leader within the industry and have a customer‑centric approach, aiming to deliver high‑quality service and build lasting relationships with our clients.


OUR BENEFITS:

  • Flexible and hybrid working
  • Autonomous working
  • Performance reward and achievements
  • Private Health Insurance
  • Pension Contribution

WHAT WILL YOU BE DOING?

In this role, you’ll play a key part in optimising our data assets by building and refining ingestion pipelines for diverse sources such as vehicle stock, pricing, offers, and images. You’ll develop analytics‑ready data models in dbt to empower analysts and data scientists, while implementing and maintaining CI/CD pipelines to ensure robust testing and seamless deployments. Working within our Azure infrastructure, you’ll focus on performance optimisation, contribute to team standards through code reviews, and stay ahead of emerging automotive datasets to recommend new sources. You’ll also create clear, comprehensive documentation to accelerate understanding and maximise the value of our data.


DATA ENGINEER – ESSENTIAL SKILLS

  • Stakeholder Engagement
  • Understanding of a framework for modern ELT workflows i.e., dbt, sql‑mesh etc.
  • Experience working with a cloud platform i.e., AWS, Azure, GCP etc.
  • Understanding of CI/CD concepts
  • Advanced SQL skills

Please either apply by clicking online or emailing me directly . By applying to this role you give express consent for us to process and submit (subject to required skills) your application to our client in conjunction with this vacancy only.


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