Data Analyst Apprentice

Motability Operations
Bristol
6 days ago
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Description

The Data Analyst Apprenticeship Programme at Motability Operations is an exciting opportunity to take your first steps into a rewarding career at a high performing organisation.

Over the 18 month programme, we will support you as you combine work and study. You will work towards a Level 4 Data Analyst qualification while becoming a valued member of a well established and respected team.

You will build your knowledge of data analysis by working alongside experienced colleagues on meaningful projects across the business.

This apprenticeship offers an alternative route into a successful organisation outside of the traditional university pathway. You will learn from experts in their field, develop your technical and professional skills, and grow your confidence in a collaborative and innovative environment. You will complete a structured training programme with our chosen provider, who will guide you throughout your apprenticeship journey.

As a Data Analyst apprentice, your responsibilities will vary depending on the projects you are working on and how you develop during the programme. You will work with a wide range of data and tools, building both technical and professional skills.
This may include:
• Performing initial analysis on raw data
• Clarifying business requirements
• Validating and processing data
• Supporting data governance
• Creating visualisations<...

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