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Data Engineer

Eclectic Recruitment Ltd
Stevenage
20 hours ago
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A fantastic opportunity has arisen for a Data Engineer specialising in Generative AI to join a developing international and transversal structure, supporting the design, build, and maintenance of data sets for internal customers across the organisation.


Please note that due to the nature of the client’s business, only candidates who currently hold full sole British Citizenship (without limitations) will be considered.


This role performs the duties of a Data Engineer and reports to the IM GenAI Delivery Office Lead.


Key Responsibilities:

  • Evaluate, design, deploy, and support data pipelines and data sets to ensure they are resilient, secure, and responsive.
  • Collaborate with internal customers to optimise and secure data for their specific needs.
  • Provide expertise in data management, quality, and governance to ensure compliance with organisational standards.
  • Stay up to date with new technologies, contributing to the technology roadmap and delivering innovative solutions.
  • Support and maintain data sets for internal customers, ensuring sustainability and long-term usability.


The ideal candidate would have:

  • Experience with SQL technologies (e.g. MS SQL, Oracle).
  • Experience with noSQL technologies (e.g. MongoDB, InfluxDB, Neo4J).
  • Familiarity with data exchange and processing methods (e.g. ETL, ESB, API).
  • Proficiency in development languages such as Python.
  • Knowledge of big data technologies (e.g. Hadoop stack).
  • Understanding of NLP (Natural Language Processing) and OCR (Object Character Recognition).
  • Knowledge of Generative AI would be advantageous.
  • Experience in containerisation technologies (e.g. Docker) would be advantageous.
  • Knowledge or prior experience within the industrial and/or defence sector would be advantageous.


The ideal candidate must have:

  • Strong technical understanding of data architecture, governance, and quality principles.
  • Excellent problem-solving skills with the ability to deliver effective data solutions.
  • A proactive approach to keeping pace with emerging technologies and data engineering best practices.
  • The ability to work collaboratively across multiple teams and international environments.


Benefits:

  • Bonus scheme (based on company performance)
  • Annual pay reviews and promotion reviews (based on personal performance)
  • Overtime paid at an enhanced rate
  • Flexi-Leave (of up to 15 days)
  • Pension scheme (total contribution of up to 14%)
  • Subsidised site facilities and restaurants
  • Free parking
  • Excellent career progression and training / career development opportunities.


If this role looks like your next challenge, please contact Keelan ASAP or apply via this advert!


We endeavour to reply to every candidate, every time, but if you haven’t heard back within 10 days, please understand that you have unfortunately been unsuccessful for this position, or the position has been filled. Please call the office or send an email to discuss other potential positions.

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