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Head of Data Engineering

Tenth Revolution Group
Leeds
6 days ago
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Overview

Tenth Revolution Group provided pay range. This range is provided by Tenth Revolution Group. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

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Position

Head of Data Engineering – Azure & Databricks - Hybrid - Up to £100,000 - Leeds

A forward-thinking and nationally recognised organisation, known for its commitment to innovation and data-driven decision-making, is seeking a Head of Data Engineering to lead its growing data function. With a strong culture of collaboration, investment in cutting-edge technology, and a clear roadmap for digital transformation, this company offers an exciting environment for technical leaders to make a real impact. This is a hybrid role, requiring two days per week in the office, with flexibility around location.

Key Responsibilities
  • Lead and mentor a team of data engineers, fostering a culture of innovation and excellence.
  • Architect and implement scalable data solutions using the Azure tech stack and Databricks.
  • Collaborate with cross-functional teams to align data initiatives with business goals.
  • Maintain hands-on involvement in technical delivery where needed, ensuring best practices are followed.
Requirements
  • Proven experience in leading data engineering teams.
  • Comfortable balancing strategic leadership with occasional hands-on technical work.
  • Excellent stakeholder management and communication skills.
What’s on Offer
  • Competitive salary up to £100,000.
  • Hybrid working model – 2 days in-office per week.
  • Opportunity to shape the data landscape of a forward-thinking organisation.
  • Discretionary Bonus
  • And more.


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