Head of Data Engineering - London

Circle Group
London
2 months ago
Applications closed

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Head of Data Engineering

London - Hybrid (or North West England office if preferred)

Up to £120k DOE

A leading global organisation is seeking a Head of Data Engineering to support the growth of its data, analytics, and AI capability. This role is ideal for a commercially minded leader with a strong track record in developing client relationships, shaping propositions, and converting opportunities into successful engagements.

The role combines strategic technical leadership with a significant emphasis on business development, bids, and revenue growth. You will bring a clear vision for modern data platforms, stay informed on emerging technologies, and demonstrate strong problem-solving skills, intellectual curiosity, and an agile mindset.

You will work within a distributed team environment, collaborating with clients and colleagues across multiple locations. The organisation offers a supportive setting that encourages continuous development of both technical expertise and commercial leadership skills.

Key Responsibilities

In this role, you will:

  • Provide leadership in modern data architecture and engineering, including the design and delivery of scalable, cloud-based data platforms
  • Play a leading role in business development activities, including opportunity identification, pipeline development, and contribution to pit...

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