Data Analyst Apprenticeship

Baltic Apprenticeships
North Shields
3 months ago
Applications closed

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Ready to begin a career where data fuels real impact? Platform Logic is inviting ambitious talent to join as a Data Analyst Apprentice.


As a specialist consultancy helping organisations streamline processes and make smarter, data-driven decisions, Platform Logic is known for transforming complexity into clarity through expert use of the Microsoft Power Platform. Their team empowers businesses to work faster, smarter and more efficiently and now theyre offering an opportunity for an apprentice to grow at the heart of this mission.


The successful candidate will step into a hands-on learning environment, working alongside Microsoft-certified professionals and contributing to real client projects from day one. With values grounded in integrity, innovation, collaboration and excellence, Platform Logic provides an inspiring place to develop analytical skills and launch a future-ready career.


In this role, youll work towards your Level 4 Data Analyst qualification, delivered by our expert training team at Baltic Apprenticeships

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A Typical Day in the Job:

  • Use tools like Power BI, SQL...

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