Data engineer

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

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Data Engineer

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Data Engineer


Role title: Snr Data Engineer

Security Clearance required: SC Clearance

IR35 Status: Inside IR35

Pay Rates: £500/d - £525/d

Contract length: 6 months

Base Location: London - 3/d a week

Skills required:

- Azure / Azure Data bricks

- ADF / ETL

- Pyspark / Scala

Experience:

Experience working on large data sets, and complex data pipelines. Understanding of Data Architecture and Design, and Data pipeline optimisation.

Proven expertise with Data bricks, including hands on implementation experience and certifications.

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, united by the spirit of partnership to deliver the best resourcing solutions for our clients.

If you need any help or adjustments during the recruitment process for any reason, please let us know when you apply or talk to the recruiters directly so we can support you.


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