Data Analyst Apprentice 42 months Fixed Term Contract

Amazon
Mansfield
1 day ago
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Are you ready to unlock the power of data while earning a fully funded degree? Join Amazon as a Data Analyst Apprentice and make an impact that reaches millions of customers every day.


Our Data Analyst apprentices work across Amazon’s diverse business lines from Operations to Finance and Retail. You’ll dive into vast datasets, uncover patterns, and turn insights into actions that drive real‑world change. Your analysis could help reduce delivery times, optimise processes, drive innovation in technology, improve sustainability, or enhance customer satisfaction. This is more than analysing numbers – it’s about telling stories through data, solving complex problems, and improving the customer experience at scale.


Key job responsibilities

  • Analyse and interpret data to generate actionable insights.
  • Design data models and manage databases efficiently.
  • Ensure data security and compliance with legal standards.
  • Collaborate across teams to solve business problems.
  • Create reports and visualisations that bring data to life.
  • Stay up to date with the latest tools and technologies.

Over 42 months you’ll combine hands‑on experience with academic study while working towards a BSc (Hons) in Digital & Technology Solutions (Data Analyst pathway). From day one you’ll be part of a supportive team that values curiosity, innovation and continuous learning. You’ll spend 80% of your time learning on the job and 20% completing formal study supported by your training provider and Amazon manager.


What we’re looking for

  • Be 18 years or over before the start date (September 2026).
  • Have the right to live and work in England (or ability to legally work and reside in England for the entire duration of the programme).
  • Have lived in the UK or EU for the last 3 years and be a resident for the duration of the programme.
  • Not be registered to study on a UK government–funded course ending August 2026 or later.
  • Have at least 5 GCSEs A‑level C/4 grade (including Maths and English).
  • Have 2 A‑level passes in one or more similar subjects, or equivalent Level 3 qualification (BTEC, International Baccalaureate, etc.).
  • If you hold qualifications outside the UK, provide a Statement of Comparability via UK ENIC.
  • Must not already hold a qualification in a similar subject at the same or higher level.
  • Ideal applicants will have a solid foundation in IT and a passion for data analysis.
  • Demonstrated proficiency with Microsoft Office (Outlook, Excel, Word).
  • Some or little knowledge/experience of data analysis is expected.

Apprentices may be assigned to projects across different business areas, including work involving sales of products such as alcohol or pork. We recognise that candidates may have personal or religious considerations related to these areas and encourage discussion early in the process to explore accommodations.


Amazon is an equal‑opportunity employer. We value diversity, inclusiveness and innovation, and we do not discriminate on the basis of protected veteran status, disability, or any other legally protected status. If you require a work‑place accommodation or adjustment during the application and hiring process, please visit the dedicated page for more information.


Key Skills: Data Analytics, Microsoft Access, SQL, Power BI, R, Data Visualization, Tableau, Data Management, Data Mining, SAS, Analytics.


Employment Type: Full‑Time. Vacancy: 1.


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