Data Analyst

Harvey Nash Group
Newcastle upon Tyne
4 days ago
Create job alert
Overview

Data Analyst / Senior Data Analyst (Contract)

Location: Newcastle (with ad-hoc travel)
Duration: 3 months
Rate: £300-£480 per day (Inside IR35)

This is an opportunity for a Data Analyst or Senior Data Analyst / Engineer to join a short-term contract. If you're passionate about turning data into actionable insights and have strong Power BI development skills, we'd love to hear from you.

Responsibilities
  • Design and develop interactive Power BI dashboards and reports
  • Collaborate with stakeholders to understand requirements and deliver clear, impactful insights
  • Ensure data accuracy, consistency, and usability across reporting solutions
What we’re looking for
  • Proven experience in Power BI development
  • Strong communication skills to engage with both technical and non-technical stakeholders
  • Ability to work independently and deliver results in a fast-paced environment

Interviews to begin next week, apply now to secure your place!


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