Lead Data Engineer

hireful
Manchester
4 days ago
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Lead Data Engineer

Company: hireful


Location: Manchester city centre – Hybrid working


Base pay: £80k‑£90k per year + benefits and career progression.


Responsibilities

  • Design and own scalable data systems.
  • Build robust pipelines on Azure-based data platforms.
  • Mentor a talented team and champion engineering best practice.
  • Collaborate with engineering, risk, operations and BI teams to turn complex data into actionable insights.
  • Ensure products and processes are fast, secure and future‑proof.

Qualifications

  • Deep experience with SQL Server, Azure data services, data modelling and cloud‑native engineering.
  • Strong communication skills to articulate technical thinking to any audience.
  • Curiosity to keep improving and clarity in communication.
  • Experience with Azure Fabric tools, architecture road‑mapping and data‑driven culture.

Seniority Level

  • Mid‑Senior level

Employment Type

  • Full‑time

Job Function

  • Information Technology
  • Industry: IT Services and IT Consulting

Additional Information

  • Role titles: Lead Data Engineer, Azure Data Engineer, Senior Data Engineer, Data Engineering Lead, Principle Data Engineer, Data Platform Engineer, Cloud Data Engineer.

Apply now and send a copy of your CV. We’re looking for an engineer who wants to lead, innovate and build data solutions that genuinely change lives.


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