Lead Data Engineer

Harnham - Data & Analytics Recruitment
Basingstoke
4 days ago
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Lead Data Engineer

Salary: £80,000 + 10% Bonus

Location: 3 Days in Office (Basingstoke)

Lead the build of a next-gen data platform powering advanced analytics and AI at a fast-growing challenger institution shaping the future of modern finance.

The Opportunity

This opportunity offers the chance to lead the build-out of a next-generation data platform that underpins advanced analytics, machine learning, and AI capabilities for a growing financial services organisation. The business operates as a modern challenger in the market, delivering specialist lending and savings products while investing heavily in data-driven transformation. In this role, you'll take ownership of core architecture and engineering practices across a modern Azure-Databricks ecosystem, shaping best practices and governance across the data landscape.

You'll collaborate with senior stakeholders to translate strategic goals into scalable solutions and mentor engineers as you uplift capability across the organisation. Alongside a high-impact remit, the company offers strong benefits, hybrid flexibility, and a culture that values wellbeing, professional development, and engineering excellence.

Role and Responsibilities

The role centres on leading the delivery of a next-generation data platform, taking ownership of architect...

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