Senior Data Analyst

Michael Page Technology
Brighton
1 week ago
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We're hiring an experienced Data & Insights Analyst to help shape evidence-driven decision-making within a major national regulatory environment. In this role, you'll transform complex data into clear, actionable insights that directly inform strategy, policy development, and operational priorities.

Client Details

This role is within a well-established public sector organisation. The company is recognised for its structured approach and commitment to delivering high-quality services.

Description

  • Analysing large and complex datasets to identify emerging risks, evaluate policy impacts, and guide organisational priorities.
  • Producing clear, tailored analytical outputs for a wide range of stakeholders.
  • Leading the delivery of an official statistics publication, ensuring quality, transparency and adherence to recognised standards.
  • Reviewing and assuring statistical and modelling work delivered by other analysts.
  • Identifying evidence gaps and recommending areas for deeper investigation.
  • Promoting best practice in statistical rigour, documentation, and quality assurance.
  • Using modern tools and techniques to continually improve analytical processes.

Profile

  • Advanced skills in R or Python, with additional experience in PowerBI, Tableau or SQL

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