Data Engineer

Paradigm Tech
London
1 day ago
Applications closed

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Data Engineer

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Data Engineer

Senior Data Engineer | Data Engineer | Python | ETL | Data Modelling | Machine Learning | 2 days a week in London | £65,000 + 15% bonus


I am currently working with a brilliant consultancy with deep expertise in their field of Data and Cyber Security solutions, predominantly with Central Government organisations but they also have strong ties with Defence and Telco. They have experienced impressive growth over the last few years and as a result they are involved in some of the most challenging yet rewarding large scale technical projects in the country.


They are currently looking for a Data Engineer, this will be a blend of client facing skills aka, the ability to understand business problems, create a novel models/ solutions to help that client and communicate clearly with them the solution you have found, this combined with strong Data Management, ETL, modelling, & ML skills.


Key Skills

  • Good knowledge of Python and the supporting machine learning tools a benefit
  • Happy in a client facing capacity and able to relay complex solutions simply to the clients needs
  • Strong ETL skills necessary, ideally with large complex data sources
  • Strong Data Management and Modelling skills
  • Ability to guide the client through the most efficient process to achieve the desired outcome.
  • Need to be SC clearable AKA, a British Citizen (without having left for longer than 3 months in the last 5 years), current or previous SC clearance preferred


This is a great opportunity working with some very interesting organisations and projects, for the right candidate this will be a rewarding position, please get in touch for more details if you think it fits your experience.

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