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Lead Data Engineer

KDR Talent Solutions
Manchester
1 week ago
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Lead Data Engineer – Manchester – £70,000–£75,000 + Bonus

Hybrid – 2–3 days per week in the office


We’re representing an award-winning, tech-driven organisation in the travel industry that’s scaling its data capability to support rapid growth and digital transformation. They’re seeking a Lead Data Engineer to guide a small, dynamic team and help shape the future of their cloud-based data platform.


This is a fantastic opportunity for a technically strong engineer with a collaborative mindset, someone who can translate complex data challenges into clear business outcomes. You’ll be joining a company where data sits at the heart of decision-making and innovation, working alongside passionate professionals in an ambitious, people-focused culture.


The Role

  • Lead, mentor, and develop a small team of two Data Engineers.
  • Design, build, and optimise data pipelines and integrations (using dbt, Airbyte, OpenFlow, APIs, and Python) to deliver reliable and scalable data.
  • Support the development of a new cloud-based data platform, driving modernisation from legacy Microsoft systems.
  • Oversee data architecture, modelling, and automation (including elements of ML Ops).
  • Collaborate with Data Scientists, Analysts, and key business stakeholders to deliver insights that drive tangible business value.
  • Balance hands-on technical delivery with team leadership and stakeholder engagement.
  • Bring structure and prioritisation to a fast-paced, evolving environment.


About You

  • Highly proficient in SQL and Python.
  • Experience with data modelling (3NF, Kimball) and modern data integration tools.
  • Exposure to cloud-based platforms such as Snowflake, BigQuery, or similar is advantageous.
  • Experience with DBT, Airbyte, or APIs is desirable.
  • Strong communicator who can link data initiatives to commercial outcomes.
  • Enjoys mentoring, providing direction, and developing others’ technical growth.
  • Comfortable working in a dynamic, evolving environment—able to prioritise and stay calm under pressure.
  • Experience with Power BI, Tableau, or similar BI tools is a plus.
  • Understanding of GDPR and data governance best practices.


What’s On Offer

  • £70,000–£75,000 + annual bonus
  • Hybrid working – 2–3 days per week in the Manchester office
  • 25 days’ holiday (increasing with service)
  • Private medical or healthcare cash plan, pension, and life assurance
  • Enhanced parental leave and flexible working culture
  • Career growth opportunities within a values-led, award-winning organisation


This is a brilliant opportunity for a skilled data professional ready to step up into leadership or an experienced Lead Data Engineer who enjoys balancing hands-on technical work with mentoring and stakeholder engagement.


Interested? Apply now or contact us in confidence to learn more about the role and interview process.

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