Business Intelligence Analyst

Accountable Recruitment
Liverpool
3 months ago
Applications closed

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Business Intelligence Analyst

Business Intelligence Analyst

Business Intelligence Analyst

Business Intelligence Analyst

Business Intelligence Analyst

Business Intelligence Analyst


Business Intelligence Analyst

We are partnering with a highly respected organisation to recruit an experienced Business Intelligence Analyst for their growing BI function. This is an excellent opportunity for a proven BI professional to take ownership of high-impact analytics work and play a key role in driving data-led decision-making across the business.

Role Overview

  • Lead the development, optimisation, and automation of Power BI dashboards and reports
  • Work closely with a range of stakeholders to understand business needs and turn them into clear, actionable insights
  • Influence strategic decisions through strong analysis, visual storytelling, and data-driven narratives
  • Act as the in-house Power BI specialist, supporting with DAX, modelling, and best-practice visualisation
  • Build strong working relationships across multiple teams to ensure BI outputs align with business priorities
  • Support and uplift BI processes, tools, and governance as part of a modern data environment

Candidate Profile

Technical Expertise

  • Expert Power BI capability, including DAX, Power Query, data modelling, and advanced visualisation
  • Experience implementing Kimball modelling
  • Strong data storytelling and design skills
  • Proven experience in data manipulation, mining, and validation
  • Conf...

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