Senior Data Analyst

FDM Group
London
3 days ago
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  • Have you had a career break of 12+ months?
  • Do you have 5+ years of commercial experience, including hands-on experience in Data, Analytics, or related technology roles?
  • Are you ready to re-join the workforce with structured training, support and career coaching included?

Then you’ll want to hear about the UK’s leading Returners Programme and the opportunities to join our Data & Analytics Practice.

Our Returners Programme is specifically designed to support professionals returning to work after a career break. Having restarted over 550 careers since 2016, our Returners Team are here to support you through every stage of the journey, ensuring you have the confidence, skills and opportunity to step back into a successful and rewarding career in business or technology.

You’ll be joining FDM as a Consultant within our Data and Analytics Practice, where you will be delivering large-scale projects for our clients across a wide range of sectors and specialist areas.

Depending on your background and experience, you could take on the role of:

  • BI Developer
  • Data Engineer
  • Data Scientist
  • Machine learning Engineer
  • Robotic Process Automation Consultant

Whatever your experience, we can help you pro...

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