Senior Data Engineer - SC Cleared - OUTSIDE IR35

Sanderson Government and Defence Careers
City of London
3 months ago
Applications closed

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Role: Senior Data Engineer

Day Rate: £550 - £580p/d (dependant on SFIA Level experience) - OUTSIDE IR35

Location: Central London (hybrid up to 2 days a week)

Clearance required: ACTIVE SC clearance

Duration: Initial work package end of FY, March 26 (scope for extension as a 2 year project)

Are you a Senior Data Engineer, with the ability to successfully bring the customer user on the journey, closely consulting and innovating with cutting-edge innovation and leadership?

We're on the look out for a Senior Data Engineer who has experience in:

  • AWS - S3 for storage, Lambda functions, Athena (thus strong SQL). Open to interchangable Azure experience.
  • Databricks
  • Python
  • Devops experience a bonus e.g. Terraform, Drone, Kubernetes cluster management for microservice style API data consumption
  • Consultative behaviour - strong stakeholder engagement skills, providing true consultancy and leading the user journey

If you hold active SC clearance - please do get in touch to find out more:

Reasonable Adjustments:

Respect and equality are core values to us. We are proud of the diverse and inclusive community we have built, and we welcome applications from people of all backgrounds and perspectives. Our success is driven by our people, unit...

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