Data Analyst Apprenticeship

Baltic Apprenticeships
Liverpool
2 months ago
Applications closed

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Are you ready to use data to help shape the future of Catholic education?

This Data Analyst Apprentice opportunity is ideal for someone who is curious about how numbers tell stories and how data can make a real difference in schools. It offers an exciting entry point for anyone who wants to build valuable digital and analytical skills while starting a meaningful career.

Pope Francis Catholic Multi Academy Trust is committed to its mission toUplift Hearts, Inspire Mindsand is seeking a motivated and enthusiastic apprentice to join its central team. The successful candidate will support the Trust by collecting, exploring and presenting data from across its schools, helping to inform decisions that positively impact students learning and wellbeing.

The apprentice will work with real education data including attendance, achievement, safeguarding and SEND information. They will learn how insights are used to improve support for students while developing technical skills in a collaborative and supportive environment built on the values of Unity, Service, Excellence and Love.

In this role, youll work towards your Level 3 Data Technician qualification, delivered by our expert training team at Baltic Apprenticeships

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