Data Engineer

Fruition Group
Leeds
10 months ago
Create job alert
Why Apply?

This is an opportunity to work at the intersection of data engineering and real-world impact, helping organisations unlock the value of their data to support projects across the built and natural environment. Working within a growing digital team, you will collaborate with multidisciplinary specialists including data scientists, engineers and consultants to design and deliver scalable data solutions. The role offers exposure to complex client challenges, modern cloud technologies and the chance to work on meaningful projects that support sustainable and data-driven decision making.


Responsibilities

  • Deliver data engineering solutions and data platform capabilities for a variety of client projects
  • Design and implement scalable data pipelines and infrastructure across cloud environments
  • Develop and maintain ETL/ELT workflows, optimising for performance and cost efficiency
  • Work in an Agile and DevOps environment, supporting continuous delivery of data products
  • Ensure data platform security, reliability and performance across infrastructure and pipelines
  • Collaborate with multidisciplinary teams including data scientists, engineers and consultants to deliver client-focused solutions
  • Build strong relationships with stakeholders across technical, business and delivery teams

Requirements

  • Degree in Computer Science, Data Science, Engineering, Analytics or a related quantitative discipline, or equivalent industry experience
  • Strong experience with cloud data platforms such as Azure, AWS or GCP
  • Experience working with BigQuery, Databricks or similar large-scale data platforms
  • Proven experience building and maintaining data pipelines and scalable data infrastructure
  • Strong Python programming skills for data engineering and automation
  • Experience automating workflows and delivering efficient ETL/ELT processes
  • Experience developing reusable analytical products or data services

What's in it for me?

  • Competitive salary and benefits package
  • Private medical insurance, life assurance and income protection
  • Flexible benefits to support health, wellbeing and lifestyle needs
  • Profit share scheme linked to company performance
  • Access to learning and development opportunities to support career growth
  • Opportunity to work on meaningful projects that create real-world impact

This organisation is an equal opportunities employer and welcomes applications from all suitably qualified individuals regardless of background, identity or personal circumstances.


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