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Data Analyst/ Data Science Manager

Leeds
4 days ago
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Job Title: Data Science Manager / Data Analyst

Location: Leeds / Edinburgh

Hybrid model: office twice a week

Length of Contract: 6 Months (potential to extension)

Salary: £70- £80k + 5% Bonus

Join a collaborative team shaping the future of the modern workplace.

As a Data Analyst, you'll transform data into insights that help improve how colleagues work, communicate, and collaborate. You'll partner across teams, explore new data sources, and build meaningful visualisations that drive smarter decisions.

What you'll do:

Extract and analyse data from multiple sources
Build reports and dashboards (Power BI / Tableau)
Identify trends, risks, and opportunities through data
Present insights clearly to both technical and business audiencesWhat we're looking for:

Experience with Power BI or Tableau
SQL /Python is good to have.
Great communication and data storytelling abilities
A curious mindset and passion for improving workplace experiences

If you love turning data into action, we'd love to hear from you

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