Head of Data Engineering

InterQuest Group
London
7 months ago
Applications closed

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Head of Data Engineering

Head Of Data Engineering

Head of Data Engineering

Head of Data Engineering

Head of Data Engineering

Head of Data Engineering

Job Description

Head of Data Engineering

Permanent opportunity -

London - Hybrid Working


The Role

We're seeking aHead of Data Engineeringto join our FinTech client based in London.


In this pivotal leadership role, you'll:

  • Provide strategic leadership for data engineering and data platform functions
  • Build and mentor high-performing engineering teams
  • Lead cross-functional collaboration to deliver data solutions
  • Architect and implement scalable, robust data infrastructure
  • Champion "data as a product" and foster a data-driven culture
  • Proactively identify and mitigate risks and technical challenges


A successful candidate will have:

  • Proven experience in senior data leadership roles, including managing managers
  • Strong coaching and mentoring skills with a growth mindset
  • Excellent communication abilities with stakeholders at all levels
  • Track record of delivering complex data engineering projects and platform initiatives
  • Experience with cloud-based data platforms and modern data tooling
  • Budget management experience preferred

...

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