Lead Data Engineer

Anson McCade
Birmingham
5 months ago
Create job alert

Overview

We are currently looking for an experienced Lead Data Engineer to help us deliver technical innovation for a crucial client project.


Responsibilities


  • Lead teams of engineers in the implementation of data-intensive system components.


Qualifications


  • Software development experience in one or more of Java, Scala or Python.
  • Experience with data-processing platforms from vendors such as Informatica, Azure Databricks or any relevant ETL tools.
  • Experience working in the Public Sector.
  • Prior experience in consultancy.


Base pay range

Up to £110k Salary.


Key details


  • Discretionary bonus.
  • Hybrid Working.
  • Requires eligibility for SC clearance.


Location

Birmingham, England, United Kingdom


Contact

If you'd like to discuss the Lead Data Engineer role, please contact Zachary Phillips at Anson McCade for a private discussion about the role or any additional details.


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