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Business Intelligence Analyst

KDR Talent Solutions
Liverpool
1 week ago
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Business Intelligence Analyst

Location: Liverpool (2 days a week)

Salary: £32,000 - £40,000

Are you a highly skilled Business Intelligence Analyst with a passion for turning data into actionable business insight? Our client, a leading organisation based in Liverpool, is looking for an experienced BI professional to join their internal BI team and play a key role in shaping data-driven decision-making.

The Role:

This is an exciting opportunity for someone who thrives on delivering impactful BI solutions and influencing strategic outcomes. You’ll lead the development, automation, and optimisation of Power BI dashboards and reports, collaborate with stakeholders to translate business needs into actionable insights, and use data storytelling to inform decision-makers at all levels.

Key Responsibilities:

  • Deliver measurable business impact through advanced BI solutions that support strategic and operational decisions.
  • Develop, optimise, and automate Power BI dashboards and reports that are insightful, scalable, and user-friendly.
  • Work closely with stakeholders to understand business needs and translate them into actionable insights and data products.
  • Act as a Power BI subject matter expert, including DAX, data modelling, and visualisation best practices.
  • Build strong relationships across the business to ensure BI outputs align with organisational goals.
  • Drive continuous improvement in BI tools, processes, and governance frameworks.

Ideal Candidate:

  • Expert in Power BI, including DAX, data modelling, and advanced visualisation techniques.
  • Proven experience delivering strategic insights that drive business performance.
  • Exceptional stakeholder management and communication skills, with the ability to influence at all levels.
  • Experience mentoring and sharing BI knowledge with colleagues.
  • Strong problem-solving skills, able to work autonomously and tackle complex challenges.

Technical Skills:

  • Advanced Power BI expertise: DAX, Power Query, modelling, and storytelling through visualisations.
  • Experience with Kimball modelling, data manipulation, mining, and validation.
  • SQL proficiency and familiarity with cloud platforms (Azure or AWS).
  • Exposure to Data Warehousing concepts, ideally with Snowflake or DataFactory.
  • PL-300 certification or near completion.

What You’ll Bring:

  • Demonstrable experience in analytics within a professional environment.
  • Ability to craft compelling, clear, and engaging stories with data.
  • Strong time management, attention to detail, and a collaborative mindset.
  • Values such as honesty, ownership, and teamwork at the core of your approach.

If you’re ready to take your BI expertise to the next level and work in a collaborative, data-driven environment, we want to hear from you!

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