Senior Commercial Data Analyst

Harnham
London
2 months ago
Applications closed

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Senior Commercial Data Analyst
Location: London (Hybrid, 1-2 days per week)
Salary: £42,700-£53,700 + annual bonus

A global media and entertainment business is looking for a Senior Commercial Data Analyst to own analytics within a cross-functional team. This role blends technical capability with commercial thinking, supporting senior stakeholders across multiple regions and business lines.

What You'll Do:

  • Act as the go-to data expert for commercial teams, partnering with finance, sales, marketing and strategy

  • Build dashboards and reporting tools (Power BI or similar) and support the rollout of a new BI platform

  • Translate complex data into actionable commercial recommendations across pricing, product and market performance

  • Connect data from multiple systems (CRM, finance systems, web analytics, etc.) to create a single source of truth

  • Analyse deal value, product performance, customer behaviour and digital/content trends

  • Support budgeting, forecasting and wider commercial planning

  • Build automated reporting and enable self-serve analytics across the business

Example Projects:

  • Migrating legacy reports into a modern BI platform and improving reporting structures

  • Analysing financial, customer and digital data to inform commercial strategy for new product or venue launches

  • Implementing forecasting and predictive analytics within dashboards

  • Supporting CRM and commercial system integrations and helping drive adoption across global teams

  • Creating reporting frameworks from scratch to track market trends, revenue performance and customer engagement

What You'll Need:

  • 3-5 years' experience in analytics or commercial insights

  • Strong SQL skills; Python experience desirable

  • Experience building dashboards in Power BI, Tableau or similar, with end-to-end ownership

  • Strong understanding of relational data structures and data modelling

  • Confident communicator able to translate data into commercial action for non-technical stakeholders

  • Proactive, curious, and comfortable operating as the sole data specialist in a team

Ideal Backgrounds:
Digital, media, retail, FMCG, tech or similar, ideally from smaller or growing data teams.

Interview Process:

  1. Initial conversation (CV anonymised)

  2. Technical task

  3. Task presentation to commercial stakeholders

  4. Final interview with senior leadership

Find out more and apply via the link below.

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