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Graduate Data Analyst - French Speaking

Sphere Digital Recruitment Group
London
3 days ago
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Graduate Data Executive - Hybrid working - London

Join a small but ambitious consultancy that helps leading global brands understand and improve their media and communications strategies. Our work combines data, content, and strategy to deliver real impact. Being part of a close-knit team means you'll have the chance to learn fast, contribute directly to client success, and work on exciting projects that shape how well-known brands connect with the world.

Why Join Us?

  • Work on exciting projects with global luxury brands
  • Supportive team where your contribution really counts
  • Hybrid working and opportunities to learn and grow
  • Private healthcare, pension, training allowance, and regular team socials

The Role

As a Graduate Data Executive, you'll play a vital role in keeping our data and reporting running smoothly, supporting both internal teams and clients. This is a hands-on role in a collaborative environment, perfect for someone who's curious, organised, and eager to get stuck in.

Key Responsibilities:

  • Update and maintain campaign performance dashboards
  • Clean and format campaign data for accurate reporting
  • Support campaign wrap-ups and performance analysis
  • Provide data for reports to internal teams and clients
  • Respond to ad-hoc data requests with clarity and accuracy

You:

  • Strong attention to detail and confidence using Excel (any data visualisation a bonus)
  • Ideally you'll be a French speaker, but not essential
  • Interested in marketing, media, and how brands communicate
  • Clear and confident communicator, able to work well with colleagues and clients
  • Curious problem-solver who enjoys finding solutions in data
  • Flexible, proactive, and comfortable working in a fast-moving small-team environment
  • Have full right to work in the UK

Apply Now:

You can apply for this role now by sending us your CV or by calling us now! Don't forget to register as a candidate too.

Amy Gladdish - Associate Director - Agencies

Sphere Digital Recruitment currently have a variety of job opportunities across digital so feel free to get in touch with us to find out how we can help you. Please take a look at our website.

Sphere Digital Recruitment currently have a variety of job opportunities across digital so feel free to get in touch with us to find out how we can help you. Please take a look at our website.


Sphere is an equal opportunities employer. We encourage applications regardless of ethnic origin, race, religious beliefs, age, disability, gender or sexual orientation, and any other protected status as required by applicable law.


If you require any adjustments or additional support during the recruitment process for any reason whatsoever, please let us know.

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