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Lead Data Engineer

Xcede
Birmingham
5 days ago
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Lead Data Engineer


Location: South England x2 days a month in office!

Package: Competitive salary + strong benefits


We’re representing a major financial services organisation that is investing heavily in next-generation data and digital platforms. They are building a modern, cloud-native data ecosystem to power AI, analytics, and customer-facing innovation and now seek a Lead Data Engineer to guide this transformation. The company have an incredible Data Leadership team with good tenure, and alongside impactful Data Science projects, they have multiple AI / LLM based projects in production due to their mature Data offering. This is a rare opportunity to join the team at an impactful, senior level due to the typically very long tenure.


The role


This position blends technical leadership with hands-on engineering. You’ll oversee the design and delivery of scalable data solutions, lead and mentor a small engineering group, and set the standards for how data is built, managed, and consumed across the organisation.


It’s a chance to make architectural decisions, work directly with product and AI specialists, and drive forward best practices in a rapidly modernising environment.


Key responsibilities


• Directing major data engineering initiatives and overseeing a team of engineers

• Designing and enhancing data warehouses, pipelines, and integration frameworks at scale

• Partnering with analytics, AI, product, and business teams to create end-to-end data solutions

• Defining coding guidelines, frameworks, and operating models across the platform

• Leading the migration of legacy environments into a flexible, cloud-first stack

• Contributing to the build and delivery of advanced data products and GenAI-enabled applications

• Raising the bar on data quality, governance, and compliance processes




Skills & experience required


• Proven background leading data engineering teams or projects in a technology-driven business

• Expert knowledge of modern cloud data platforms (Databricks, Snowflake, ideally AWS)

• Advanced Python programming skills and fluency with the wider Python data toolkit

• Strong capability with SQL, Spark, Airflow, Terraform, and workflow orchestration tools

• Solid understanding of CICD practices using Git, Jenkins, or equivalent tooling

• Hands-on experience building both batch and streaming data integration pipelines

• Depth in data modelling, ingestion, and optimisation for large-scale environments

• Any exposure to production use of Generative AI is highly advantageous



What’s on offer

• Be a central figure in a large-scale data modernisation programme

• A hybrid working approach that values flexibility

• The opportunity to combine leadership responsibilities with technical delivery

• Influence over the design of next-generation data and AI capabilities within a household-name financial services brand


For this and other data engineering job opportunities, please submit your CV!

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