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Senior Data Analyst

Michael Page (UK)
City of London
1 week ago
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Contract opportunity with this London-based university - approx 4-6months


Experience in the following: Power BI/Tableau, SQL, ETL tools, testing, python


About Our Client

Our client is a London-based University.


Job Description

  • Develop and maintain robust SQL queries to support reporting and analytics
  • Work with ETL tools to manage data pipelines and transformations
  • Build insightful dashboards and reports using BI tools such as Power BI or Tableau
  • Conduct thorough testing to ensure data accuracy and reliability
  • Collaborate with stakeholders across departments to understand data needs and deliver actionable insights

The Successful Applicant

Essential Skills:



  • Strong proficiency in SQL
  • Hands-on experience with ETL tools
  • Advanced skills in Power BI or Tableau (Excel is not sufficient)
  • Experience in data testing and validation

Desirable:



  • Python skills for data manipulation and automation

What's on Offer

  • Daily rate, inside IR35, paid in GBP.
  • Opportunity to work within the not-for-profit industry.
  • Temporary role based in London - hybrid working.
  • Chance to contribute to impactful projects within a respected organisation.


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