Data Analyst Apprenticeship

Coventry
3 months ago
Applications closed

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Data Analyst Apprentice

Trainee Data Analyst - no experience necessary

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Data Analyst - Farming Operations

Path2 Solutions have fantastic opportunity for Data Analyst Apprentices to start their career journey with a leading regional employer in Coventry. The company will provide an environment which will allow you to flourish and develop skills to succeed long term.
 
Successful candidates will be a valued member of our team and daily responsibilities will include observing senior data analysts and learning new skills relevant with the job roles, collecting and analysing important and sensitive data looking for trends that will benefit the business, use Microsoft office and excel to capture data and working as part of a team to achieve collective goals.
 
Apprentice Data Analysist Benefits:

Chance to make a career in a leading business
Strong focus on career progression
Sharesave scheme
Industry leading pension scheme
Bonus scheme
Dedicated training and development academy
Pay rate: £12.21 per hour

37.5 hours per week flexible to suit operational requirements

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