Data Analyst

Farrer Barnes Limited
Rochester
1 week ago
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The CompanyA fast-growing, well-established business operating at scale, with a strong focus on performance, efficiency and continuous improvement. Data sits at the heart of how decisions are made, and insight is genuinely used to drive real operational change. It’s a collaborative, hands-on environment where teams work closely together on-site and value practical, real-world impact.The RoleThey are looking to bring on an experienced Data Analyst to support both operational and leadership teams by turning complex data into clear, actionable insight. This is a hands-on role, ideal for someone who enjoys being close to the operation and seeing the direct impact of their work across the business.Key Responsibilities

  • Analyse operational, preparation and service-centre data to identify trends, patterns and opportunities for improvement
  • Process-map the end-to-end operational journey, highlighting inefficiencies and areas for enhancement
  • Build, maintain and continuously improve interactive dashboards and reports using Power BI to support real-time decision making
  • Use SQL to interrogate full databases and extract meaningful insights
  • Work closely with leadership and operational teams to deliver insights that drive performance and profitability
  • Present findings and recommendations clearly and confidently to senior stakeholders
  • Ensure data accuracy, con...

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