Business Intelligence Analyst

Harnham
Liverpool
1 month 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

Harnham, Liverpool, England, United Kingdom


About the Organization

Our client is a well‑established UK public services provider transforming communities through employment services, skills training, and youth development programmes. They work with job centres and employers to increase employment opportunities and genuinely change lives.


The Role

Power BI Analyst position within the Employment Analytics team. 100% Power BI development, data visualization and stakeholder engagement – no SQL or Excel focus.


eliminación
What You’ll Do

  • Build and maintain Power BI dashboards and reports analysing office performance against targets, job centre conversion rates, and youth‑program outcomes.
  • Present findings to stakeholders at all levels, translating complex data into clear, actionable insights.
  • Develop advanced DAX calculations and data models to enable powerful analysis.

What You Need

  • Strong Power BI experience with demonstrable expertise in DAX, data modelling and dashboard development.
  • Stakeholder engagement and presentation skills – you’ll present toMatched leaders regularly.
  • Ability to work with large volumes of grate and identify trends, patterns and anomalies.
  • Experience presenting business intelligence to all levels of an organisation.
  • Ability to work under pressure and meet reporting deadlines.

Nice to Have

  • Experience in public services, employment services or mission‑driven organisations.
  • Exposure to Snowflake or cloud data warehouses.
  • Experience building self‑service analytics solutions.

What’s on Offer

  • £32,000 – £40,000 depending on experience.
  • Hybrid working – one day per week in office on Wednesdays (multiple UK office locations available).
  • 25 days annual leave plus bank holidays mandatory.
  • Huge L&D budget – the organisationuelles pays for professional training, certifications and skill development.
  • Bi‑annual pay reviews.
  • The chance to make a genuine difference to communities – your insights help unemployed people get back into work and support youth development.
  • Award‑winning management training.
  • Collaborative, values‑driven culture.

Application Process

  1. Stage one – Online assessment, including English language and personality profiling (practice tests provided).
  2. Stage two – Virtual competency interview where you’ll present a Power своnavigation dashboard, explain insights and delivery, discuss stakeholder engagement, and demonstrate DAX and data modelling knowledge.
  3. Stage three – In‑person interview with senior leadership.

The Team

You’ll join a Business Intelligence function of around 19 people across data engineering, data analysis and insight teams. You will sit within the analyst team working alongside other analysts. The team is led by an experienced manager building out BI capabilities.


How to Apply

Send your CV to Mohammed Buhariwala at or contact +44 20 3854 4777.


Seniority level

Entry level


Employment type

Full‑time


Job function

Analyst


Industries

Staffing and recruiting


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