Apprentice Data Engineer

NET Recruit
Maidstone
3 months ago
Applications closed

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Overview

Your Company: NET Recruit is assisting a distribution company in their search for an Apprentice Data Engineer based in the Kent area. Established over 40 years ago, this company has grown to become a leader in sourcing, producing, and distributing fresh produce to some of the UK’s top retailers. Known for its focus on quality, integrity, and innovation, the company takes pride in its business practices and acknowledges that its ongoing success depends on its people.


As part of its ongoing investment in technology and digital innovation, the business is looking for an enthusiastic and motivated Apprentice Data Engineer to join its IT team, working five days per week. This position represents an exceptional opportunity for an individual with a passion for data, analytics, and technology to begin a rewarding career within a supportive and forward-thinking environment, where learning and growth are actively encouraged.


Responsibilities

  • Support the design, development, and maintenance of scalable data pipelines using tools such as Apache Airflow, dbt, or Azure Data Factory.
  • Learn how to ingest, transform, and load data from a variety of sources, including APIs, databases, and flat files.
  • Assist in the setup and optimisation of data infrastructure and storage solutions, such as data warehous...


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