Data Engineering Lead

Corecom Consulting
London
2 months ago
Applications closed

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Data Engineering/Data Architect Lead – Hybrid (1 day every 2 weeks in London) – Up to £100K

Our client operates in the financial services sector, specialising in B2B solutions.

We're looking for a Data Engineering Lead/Data Architect to join this growing team and take ownership of a critical area. Over the last 6 months, the business has shifted its roadmap with data now at the core of operations.

This role blends data engineering, business intelligence, and collaboration with the wider tech team. You'll help scale the data solution while ensuring data flow, integrity, and performance remain top-notch.

What you’ll need:

  • Strong experience with Python
  • Advanced SQL and data modelling skills
  • Proven track record in cloud data engineering (preferably Azure, but open to other platforms)
  • Familiarity with BI and data visualisation practices

High Level details:

  • Hybrid working – 1 office visit every two weeks (London)
  • Salary up to £100K
  • Great benefits and the chance to make a big impact in a data-driven transformation

Interested? Apply now to learn more.

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Information Technology

Industries

IT Services and IT Consulting and Financial Services


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