Head of Data Engineering

Levick Stanley
Stratford-upon-Avon
1 month ago
Create job alert

Are you a visionary leader with a passion for data? Join our innovative client as their Head of Data Engineering, where you'll drive their data platform strategy, mentor top-tier engineering talent, and shape the future of their data-driven products.

What you'll do:

  • Lead and develop a team of Tech Leads and engineering squads.
  • Define and implement a robust data platform using Azure Cloud technologies.
  • Collaborate with cross-functional teams to deliver high-impact, data-centric products.
  • Ensure data integrity, security, and governance across the organization.

What they're looking for:

  • 10+ years in data engineering, with 4+ years in senior leadership.
  • Proven experience with Azure services (Data Factory, Synapse, Data Lake, SQL Database).
  • Strong leadership, communication, and stakeholder management skills.
  • Solid understanding of data architecture, modeling, and distributed systems.
  • Be part of a dynamic, innovative, and collaborative team.
  • Lead exciting projects that leverage AI and machine learning.
  • Drive impactful change in a fast-paced, growth-oriented environment.

Benefits & Rewards

  • Competitive salary + car allowance and bonus
  • Flexible hybrid working model
  • Pension scheme up to 8% employer contribution
  • Access to various other benefits including insurance, cycle to work scheme & subsidised gym membership

Seniority level

Director

Employment type

Full-time

Job function

Information Technology and Strategy/Planning


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