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Data Analyst (Tableau Expertise)

IntaPeople: STEM Recruitment
London
1 week ago
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Join a high-impact analytics & insights team driving data excellence across a global multi-cloud technology estate. We’re looking for a talented Data Analyst to transform complex datasets into powerful dashboards and reports that inform strategic decisions at the highest levels.


What You’ll Do:

  • Design and build intuitive Tableau dashboards focused on cloud infrastructure and operational performance
  • Collaborate with stakeholders to gather requirements and translate them into actionable insights
  • Support migration to a new data warehouse by updating and refining existing dashboards
  • Cleanse, model, and prepare data using DBT and AWS Athena
  • Ensure data integrity and accuracy across large, complex datasets


What You’ll Bring:

  • Proven Tableau expertise with a strong eye for design and user experience
  • Solid experience in SQL, Snowflake, and DBT
  • Familiarity with AWS services (Lambda, S3, Athena)
  • An understanding of IT asset management is a plus
  • Excellent communication skills across technical and non-technical audiences


Please include a link to your Tableau Public profile or data visualisation portfolio with your application.


Please note this is a 1-month contract, inside IR35, paying up to £450pd.

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