Business Intelligence Analyst

PA Media Group
Goole
3 days ago
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Role overview

About us. Alamy isn’t just a global visual content platform; it’s the fuel behind the creativity of some of the world’s most recognisable brands. With millions of high-quality images and videos, and a global community of over 150,000 contributors, we help customers tell powerful stories every day.


The role

We’re looking for a Business Intelligence Analyst to play a pivotal role in driving revenue growth and commercial performance across Alamy’s eCommerce business. This is a newly created role at a key moment for the business. As demand for data and insight continues to grow, we’re shifting away from simply putting reports in front of stakeholders and instead focusing on clear, actionable insight that drive decision‑making. You’ll sit at the heart of our commercial activity, acting as a trusted partner to Go To Market, SEO, Finance and Product Development teams, translating complex data into insight people can understand, trust and act on. Your work will directly influence pricing, product changes, marketing effectiveness and the online customer journey. This is an opportunity for someone who enjoys being visible, influential and close to the action; not just analysing data but shaping what happens next.


How you’ll make an impact

  • Acting as the Business Intelligence partner for Go-to Market, SEO, Finance and Product Development teams, influencing strategy and decision-making through insight
  • Analysing the end-to-end eCommerce customer journey, identifying drop‑off points, friction and opportunities to improve conversion and revenue
  • Translating Google Analytics (GA4) data into clear, meaningful insight that stakeholders can immediately understand and act on
  • Combining website, customer, invoicing and finance data to create a complete, end-to-end commercial story
  • Monitoring and evaluating the impact of pricing changes, promotions and commercial initiatives
  • Analysing marketing campaign performance across channels, providing insight into ROI, attribution and optimisation opportunities
  • Designing, building and owning intuitive, executive‑level Power BI dashboards
  • Proactively surfacing insights, trends and risks – and recommending practical next steps, not just reporting what’s happened
  • Working closely with Product teams to support experimentation, A/B testing and continuous website optimisation
  • Championing best practice in data quality, analytics methodology and insight storytelling
  • Exploring how AI-assisted analysis and automation can improve the speed, accuracy and impact of insight delivery

About you

To succeed in this role, you’ll bring commercial instincts alongside deep analytical capability. You’ll be confident engaging with stakeholders at all levels and translating data into plain English; comfortable challenging assumptions and influencing decisions.


You’ll also demonstrate:



  • Proven experience in a Business Intelligence, Analytics or Data Analyst role, ideally within eCommerce or digital environments
  • Strong experience working with GA4, including event-based tracking, funnel analysis and integration into BI tools
  • Power BI skills, including data modelling, DAX and executive-level dashboard design
  • Experience working with multiple data sources (e.g. website, CRM, finance, Salesforce)
  • A track record of presenting insights and recommendations directly to stakeholders
  • Strong commercial awareness and understanding of revenue drivers and customer behaviour
  • Confidence, ownership and curiosity – you spot when something doesn’t look right and aren’t afraid to dig deeper
  • Excellent communication and data storytelling skillsAn interest in how AI and automation can enhance analytics and insight

Why join us?

  • A newly created role with real freedom to shape how it works and how insight is delivered
  • High visibility and influence across commercial, marketing and product teams
  • The chance to make a measurable impact on revenue, conversion and customer experience
  • A collaborative, change-positive environment where insight genuinely drives action
  • Hybrid working (typically 3 days in the office)

What we offer

Alongside a competitive salary, we offer a comprehensive benefits package, including:



  • 5 weeks’ holiday plus 8 public holidays
  • 10% annual bonus
  • Holiday purchase scheme
  • Enhanced maternity, paternity and adoption pay
  • Company pension
  • Life assurance (4× salary)
  • Annual wellbeing day and volunteering day


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