Data Analytics Apprenticeship

Best Apprenticeships
Plymouth
1 week ago
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At Babcock, data is at the heart of everything we do. This two-and-a-half-year apprenticeship will give you the essential analytical skills you need to uncover insights, make an impact, and help us make informed, reliable decisions that shape the future of our business.


Work

Most of your apprenticeship is spent working. You’ll learn on the job by getting hands‑on experience.


What you’ll do at work

  • We’re on a mission to become a data‑driven organisation, leveraging data to boost productivity, enhance project delivery, and foster a data‑first culture that values data‑led decision‑making.
  • As a Data Analytics Apprentice, you’ll have the opportunity to work on a wide variety of projects, from predictive analysis and mathematical modelling to data visualisation and web development. You’ll partner with teams across the business to develop analytical insights that will inform strategy, improve operational efficiency, and help us deliver on our purpose – to create a safe and secure world, together.
  • Throughout the programme, you’ll learn to identify and cleanse data from various sources, create performance dashboards, and produce statistical reports. You’ll work closely with stakeholders to ensure data is accurately represented, solving real business challenges with your analysis. By developing strong technical skills and a deep understanding of Babcock’s operations, you’ll play a crucial role in embedding data‑led best practices across the organisation.


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