Data Analyst Apprentice

Baxi Heating UK
Warwick
1 week ago
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KickStart Your Career! Become aData AnalystApprentice (Level4)at Baxi Apply for2026!

Looking for a careerthatshands-on,future focused, and seriously rewarding?

Want to be part of the movement towards azero-carbonworld?

AtBaxi Heating,wevebeen innovating for over 150 years nowwereready to trainyou, the next generation ofheatingspecialists.

This is more than an apprenticeship.
Its your pathway into a secure,well-paidcareer with huge opportunities.

Whereyoullbeworking:

As aData AnalystApprenticeLevel 4at Baxiyoullbe workingwithin theServiceQuality & Process Improvementteam.

Whatyoullbe doing:

Your role will be central to thedevelopment and success of Baxi,youllbe working on updating current reports andmovingnew ones to Power Bi while also exploring new methods for things like forecasting using machine learning/more complex statisticalmethodology.

You will besupported at all timesbyyourteam and your dedicated mentor tounderstand our current data landscape.

Why this Apprenticeship Rocks

Learn fromrealprofessionalexperts

Learn from industry experts with a dedicated data analysis learning provider.

Earn while you learnno student debt

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