Apprentice Data Analyst

Digital Native
Warwick
2 weeks ago
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Please note that this is an apprenticeship position and therefore anyone with more than six months professional experience working as a data analyst or who holds a degree or Master’s degree in a subject such as Data Science, Business Analytics, Maths will not be eligible.


You will also need to commit to completing a Level 4 Data Analyst Apprenticeship.


KickStart Your Career! Become aData AnalystApprentice (Level4)at Baxi– Apply for2026!


Looking for a careerthat’shands-on,future focused, and seriously rewarding?
Want to be part of the movement towards azero-carbonworld?


AtBaxi Heating,we’vebeen innovating for over 150 years — nowwe’reready to trainyou to be a major part of our continued evolution.


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


Whereyou’llbeworking:

As aData AnalystApprenticeLevel 4at Baxiyou’llbe workingwithin theServiceQuality & Process Improvementteam.


Whatyou’llbe doing:

Your role will be central to thedevelopment and success of Baxi,you’llbe 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 learn—no student debt
  • Fully Funded residential course in Devon

Across the18-monthprogramme,you’llpick up all the skills you need to build aprofessionalfutureat Baxi.


Epic First-Year Experience: Baxi Apprentice Residential

You’llkick off your journey with our famousresidential course— a mix of teamwork challenges, leadership activities, and loads of fun.


You’llbuild confidence, communication skills, make new mates, and get stuck into our values:



  • One Team
  • Customer Focus
  • Sustainable Future

WhoWe’reLooking For

  • Technically Curious:Youaren'tsatisfied with “copy and paste”,you want to automate it. You want to understand why the data looks like that.
  • A Translator:Youaren'tafraid to ask a stakeholder, "What decision are you trying to make?" and then translate their complexanswer into clear logic.
  • AFutureAnalyst:You are excited by the prospect of learningspecialist datatools like SQL, Power BI, and Data Modelling to help us move away from legacy spreadsheets.

You will support our main goal to delivering the right information, to the right people, at the right time.


What you bring (Essential):

  • Logical Problem Solving:You enjoy puzzles and can break a complex problem down into small, logical steps.
  • Curiosity & Confidence:You are happy to speak to stakeholders, ask "why?", and challenge the status quo politely.
  • Resilience:You can self-motivate when a problemdoesn'thave a clear answerimmediately.
  • Data Aptitude:You are comfortable with technology and havehands on experiencewithExcel (formulas, lookups) or dabbled in other technical tools.

Qualifications
Essential

  • 7 GCSE’s (or equivalent) at grades 9-4 or A-C including English and Mathematics

Desirable

  • 3 A Levels (or equivalent) at grades A*-C in any subject but preferably one in a STEM subject

Applications are encouraged from graduates with related degrees looking for an apprenticeship route to a Data Analytics career.


Salary: this will be above National Apprenticeship WageLocation:Warwick, CV34 4LL (It is anticipated that the successful candidate will have a commute of no more than 1hr)


BenefitsYou’llLove

  • 37hourworkingweek
  • 25 days’ holiday+ bank holidays
  • Competitive starting salary(Above National Apprenticeship wage UK)
  • Pension & sick pay
  • Staff discounts
  • A fully trained mentor
  • Wellbeing and health support
  • Devon Excursion(yes,it’sas fun as it sounds!)

Ready to Join Us?

Ifyou’reexcited about a career with loads of potential, real qualifications, and the chance to make a difference —we want to hear from you!


Hit apply and start your journey to becoming ananalystof the future.


We’reProud to Be Inclusive

We are anequal opportunity employer. We celebrate diversity and do not discriminate based on race, religion, colour, nationality, gender, sexual orientation, age, marital status, or disability status.


By applying you are agreeing to Digital Native retaining your information, sharing this with potential employers and contacting you about apprenticeship opportunities that we feel you could be interested in.


Candidates that have read and followed the advice in our CV Guide are more likely to be successful...


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