Data Analyst

Searchability®
Manchester
2 days ago
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DATA ANALYST - POWERBI - MANCHESTER/LEEDS/LONDON

  • Hybrid working, 2 days per week in a London/Manchester/Leeds office
  • Salary up to £35k + private healthcare, pension, and strong benefits package
  • Join a growing centralised data team working across premium brands
  • Opportunity to build high-quality Power BI dashboards that drive real commercial insight

WHO WE ARE?

Due to continued growth, we’re seeking a talented Data Analyst to join a well‑established organisation known for delivering data‑driven insights across a portfolio of recognised brands. Their centralised data function works closely with marketing, media, and technology teams to turn complex data into meaningful business intelligence.


You’ll be joining a collaborative team of specialists focused on delivering high‑quality BI solutions, combining data insight, modern technology, and thoughtful design to help clients make better decisions.


THE BENEFITS

  • Generous annual leave allowance
  • Private health insurance
  • Company pension and life assurance
  • Ongoing career development and progression opportunities
  • Cycle to work scheme
  • Season ticket loan
  • 1 paid charity day per year
  • And much more!!

DATA ANALYST - POWERBI

As a Data Analyst you’ll focus on designing and building high‑quality dashboards that are both technically robust and visually intuitive. This role is suited to someone who takes pride in creating reporting solutions that not only present data accurately but guide users to meaningful insight.


You’ll work closely with stakeholders to define measurement frameworks, translate business requirements into scalable data models, and develop dashboards that support marketing and commercial decision‑making.


Your responsibilities will include designing Power BI reports with strong UX principles, developing efficient data models using star schema design, and writing advanced DAX measures to support complex reporting needs. You will also collaborate with stakeholders to scope dashboard requirements, produce wireframes or prototypes, and ensure reporting solutions remain maintainable and performant.


This is also a client‑facing position, so strong communication skills are essential. You’ll regularly translate technical concepts into clear reporting solutions while managing expectations around what can be delivered within Power BI.


DATA ANALYST(POWERBI) – ESSENTIAL SKILLS

  • Strong commercial experience with Power BI development
  • Advanced DAX skills including time intelligence and performance optimisation
  • Solid understanding of data modelling, including star schema design
  • Experience with Power Query (M) for data transformation
  • Ability to translate business requirements into clear reporting solutions
  • Experience working with KPIs, measurement frameworks, or marketing analytics
  • Strong attention to detail and appreciation for dashboard design and usability
  • Experience with Power BI Service, workspaces, and report deployment
  • Confident stakeholder or client communication skills

TO BE CONSIDERED:

Please either apply through this advert or email me directly via .


By applying for this role, you give express consent for us to process and submit (subject to required skills) your application to our client in conjunction with this vacancy only.


KEY SKILLS


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