Lead Data Engineer SQL Python

Client Server
London
1 month ago
Applications closed

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Lead Data Engineer

Lead Data Engineer

Lead Data Engineer

Job Description

Lead Data Engineer (SQL Python Snowflake) London / WFH to £85k


Are you a skilled data technologist with strong leadership and stakeholder management skills?


You could be progressing your career in a senior, hands-on Data Engineer position at a global tech company that provide data centric software solutions to major blue-chip and government organisations to enable them to discover and analyse data and customer feedback.


What's in it for you:

As a Lead Data Engineer you'll earn a competitive package:

  • Salary to £85k
  • Bonus
  • Unlimited holiday allowance
  • Flexible working (x1 day a week in London)
  • Private medical insurance as well as well-being benefits
  • Pension and Life Assurance
  • Committees for wellness, charity and volunteering, DE&I
  • Team and company socials


Your role:

As a Lead Data Engineer you will plan and lead data engineering activities across multiple programmes of work to deliver secure, robust and scalable data engineering solutions for complex data analytics products. You'll implement modern data engineering practices, build complex data pipelines and provide guidance to other team members to ensure optimal code performance is achieved, championing best practices.


Beyond this you...

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