Data Analyst Apprenticeship

Baltic Apprenticeships Careers
Conwy Principal Area
3 months ago
Applications closed

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Data Analyst Apprenticeship

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Data Analyst Apprentice: Learn BI, ERP & Supply Chain

Data Analyst Apprentice

Data Analyst Apprentice

Apprentice Data Analyst


Data has the power to transform businesses, and at Conversion Uplift, we thrive on unlocking its full potential. We're looking for a Data Analyst Apprentice to join our growing team, offering a £17,000-£19,000 salary and the flexibility of a fully remote role . This is your opportunity to gain hands-on experience while earning a Level 4 Data Apprenticeship , setting the foundation for a thriving career in analytics.

As an apprentice you will be reviewing data and looking for issues, producing performance dashboards and reports to support with data visualisation, pulling website analytics on user behaviours, website performance, page loads and conversions and much more. In this role you will be exposed to all elements of Data Analysis. You will also be in regular contact with clients , providing updates, managing tasks, and ensuring smooth communication. You'll be closely supported by the founder of the business as well as a specialist coach from Baltic Apprenticeships, who will provide you with industry expert knowledge throughout your journey as an apprentice

In this role, you'll work towards your Level 4 Junior Data Analyst delivered by our expert training team at Baltic Apprenticeships.

A Typical Day in the Job:

  • Project management and client communication
    • Chasing updates and ag...

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