Trainee Data Analyst (Career Programme – UK Only)

Uptrail
London
3 days ago
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Location: Remote (UK-based applicants only)

This listing is for a paidstructured Data Analyst Career Programme, not a traditional job.

We are recruiting motivated UK-based candidates who want to transition into a Data Analyst career through a guided, industry-aligned training programme with portfolio projects, certifications, and career support.

This is a 6-month, part-time, online Data Analyst Career Programme designed to help beginners and career-switchers gain job-ready data analyst skills and prepare for real roles in the UK job market.

You will be trained in the exact tools and workflows employers expect from junior and entry-level data analysts.

What you will learn

  • Data analysis using Excel, SQL, Python
  • Business intelligence and dashboards with Power BI
  • Data cleaning, data modelling, and reporting
  • Real-world portfolio projects for your CV and LinkedIn
  • Interview preparation and career coaching
  • Understanding how data analysts work in real companies

What You Get

  • Structured online training (8–10 hours per week)
  • Multiple hands-on portfolio projects
  • Industry-recognised certifications
  • Career coaching and...

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