Data Engineer

TrueNorth®
London
5 months ago
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This range is provided by TrueNorth. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


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Overview

Building High-Performing AI/ML & Data Science Teams | TrueNorth


I'm looking for 4 Data Engineers, to work for a consulting client of mine based in London.


Hybrid: 3 days per week onsite ideally - however the client is open to remote candidates.


These roles will involve working on projects for Government agencies, and therefore candidates are required to undergo SC Clearance.


Requirements / Eligibility

  • Living permanently in the UK for the past 5 years with full rights to work.
  • Clean criminal record history.
  • We cannot sponsor VISA's or allow remote workers from outside of the UK for this role.

Skills & Responsibilities

  • Development and maintenance of data platforms and ETL solutions.
  • Knowledge of all stages of the data lifecycle, and applying DataOps principles.
  • Writing tests and QA
  • Experience in working with sensitive/confidential data.
  • Experience in consulting.

Seniority

  • Mid-Senior level

Employment type

  • Full-time

Job function

  • Information Technology

Industries

  • Staffing and Recruiting

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Location & posting notes

London, England, United Kingdom


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