Data Engineer

Association of Canadian Ergonomists
Banbury
1 week ago
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Overview


50-60K + benefits + performance bonus. Flexible Location | Hybrid working with frequent travel to Banbury required. Ever built a data pipeline and wondered) is anyone really using this? This role involves designing and building a modern Databricks Lakehouse on Azure from the ground up.

This might be your kind of role. Were at the start of our data journey, not maintaining something built five years ago, but shaping architecture and tooling.

The role Because were at the beginning, youll help shape the architecture, influence standards and frameworks, work across a broad range of data challenges and see your work directly impact decision-making across the business, both in the UK and internationally.

Responsibilities
  • Design and build scalable data pipelines (ETL/ELT) pulling from core platforms, cloud storage, databases and APIs
  • Turn raw, messy, disparate data into curated, analysis-ready datasets
  • Work with Python, Spark and SQL every day
  • Develop models and schemas using a medallion architecture approach
  • Help shape our data architecture with the Data Architect
  • Implement governance, quality checks and access controls (Unity Catalogue)
  • Optimise for performance, reliability and scalability in Azure
  • Contribute to CI/CD and DevOps practices in Azure DevOps
What Youll Be Doing

Anyone can move data from A to B, but really good looks like this:

  • Pipelines that are elegant, scalable and observable
  • Clean, well-documented models analysts actually enjoy working with
  • Thoughtful performance tuning
  • Governance built in, not bolted on
  • Constant refinement and efficiency improvements

Were working with a wide and interesting range of data sources from financial, operational, external and structured (and maybe not-so-structured). Theres plenty of variety and plenty of opportunity to improve things.

If you get a quiet satisfaction from shaving minutes off a job runtime, refactoring something clunky into something beautiful, or discovering a better tool to solve a problem youll fit right in.

What You'll Bring

You'll likely have:

  • Hands-on expertise with Databricks
  • Confidence in Python, Spark and SQL
  • Experience building pipelines in Azure
  • A solid understanding of data modelling and scalable architectures
But Just As Important

You're inclusive and curious and care about doing things properly and enjoy solving problems others can't. You like working in a small team where your voice matters.

This isn't a "sit quietly and code what you're told" environment. You'll have a genuine say in how we do things, how we design things, and where we're heading next.

The good stuff
  • The Tech you'll Get to Play With: Databricks, Azure (cloud-native data services), Python, Spark & SQL
  • This is your chance to work with modern, practical tools and influence what we adopt next.
  • Use workflow tools such as ADF / Airflow and big data technologies (Spark, Hadoop, Kafka)
  • Private healthcare for you and your family
  • Company pension scheme
  • Flexible benefits (gym membership, tech, health assessments and more)
  • Access to an online wellbeing centre
  • Discounts with a wide range of retailers
  • 25 days' holiday plus bank holidays, increasing with service, with buy/sell options
  • Electric Vehicle / Plug-in Hybrid Vehicle scheme
About Bibby Financial Services

Were a global organisation operating in nine countries, supporting over 9,000 SMEs worldwide. Following the completion of a n securitisation deal, were increasing our lending to UK businesses at a time when support really matters and this role plays a vital part in making that happen.

Application

Apply before 31st March 2026. Early applications are encouraged, as the role may close sooner. Everyone will receive a response. Bibby Financial Services is committed to creating an inclusive workplace. If you require any adjustments during the recruitment process, please let us know.

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