Data Science Trainee

ITOL Recruit
Birmingham
1 day ago
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Data Science Trainee – No Experience Needed

Build a future-proof career in Data & AI – starting today.

Artificial Intelligence runs on data — and businesses are crying out for professionals who can collect, analyse, and interpret it.

Looking for a career change? Want something analytical, structured, and financially rewarding? Or maybe you're ready to break into tech but don’t know where to start? ITOL Recruit’s Data Analyst Career Programme is designed to take you from complete beginner to employable Data Analyst.

Most candidates secure their first role within 1-3 months of qualifying — often sooner in major cities.

Please note this is a training course and fees apply.

Job guaranteed - complete the programme and get a job or get your money back.

Our graduates earn £30,000–£65,000+.

Why Data?

Every business decision today is backed by data. From finance and healthcare to retail and sport, organisations rely on skilled analysts to interpret information and guide strategy.

Demand for Data and AI professionals continues to grow year on year, with excellent progression opportunities:

  • Junior Data Analyst – £30,000
  • Data Analyst – £50,000
  • Business Analyst – £60,000
  • Data Scientist – £65,000+

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