Data Analyst Apprenticeship

Baltic Apprenticeships Careers
Chipping Norton
3 months ago
Applications closed

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Start your journey in data with Ridgeway Education Trust!

Ridgeway Education Trust is seeking a Junior Data Analyst Apprentice to join its friendly and forward-thinking team. The successful candidate will play a key role in supporting the collection, organisation and presentation of data across the Trust. Working with a variety of information including student performance, school operations, HR and finance data, they will help turn raw data into meaningful insights that support decision-making and improvement across the Trust's schools.

This hands-on role offers the opportunity to learn how to manage and visualise data, create dashboards, and share findings with senior staff. It is an excellent opportunity for someone who enjoys working with numbers, is eager to develop new skills, and wants to be part of a supportive team that values learning and innovation.

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

A Typical Day in the Job:

  • Keep all information safe and follow data protection rules.
  • Help collect, clean, and organise data from different systems.
  • Export data and prepare it for reports or sharing.
  • Create and update dashboards that bring together data from different sources.
  • Show dashboards and findings to senior staff.
  • Work with financial and HR data...

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