Contract Data Engineer (must be SC cleared) - London or Bristol x3 days a week

Exalto Consulting ltd
London
1 week ago
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Job Description

Data Engineer (must be SC cleared) - London or Bristol x3 days a week - £525 per day inside IR35 initially 6 months
Exalto consulting are currently recruiting for a contract security cleared data engineer, inside IR35 paying £525 per day
Essential skills and experience for the role:
•Design and implement data flows to connect operational systems with analytics and BI systems to benefit programme operation.
•Identify strategies and services to support programme needs.
•Support in the design and implementation of data streaming services, including the development of new data models and ETL processes.
•Contribution to the re-platforming of data systems into public cloud and the refresh of tooling applications.
•Helping to define and support data privacy controls and their implementation.
Essential

  • Power BI, Power Platforms experience
  • SC Clearance
  • Ability to work from site in Stratford, London or Bristol 3x days per week
If you are available, currently hold SC clearance and are looking for a new contract role, please send your CV for immediate consideration as our client are looking to hire ASAP
Data Engineer (must be SC cleared) - London or Bristol x3 days a week - £525 per day inside IR35 initially 6 months

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