Senior Commercial Data Analyst

Harnham
London
5 days ago
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SENIOR COMMERCIAL DATA ANALYST

£70,000 - £80,000

SOUTHWEST LONDON – 4 DAYS A WEEK


*Please note, you must be a UK resident to apply with full right to work in the UK*


THE COMPANY

This dynamic online and in-store lingerie retailer operates 50/50 across e-commerce and physical retail, including standalone stores and department store concessions. While store expansion continues, their strategic focus is firmly on scaling digital.


THE ROLE

This company is looking for a commercially minded Data Analyst to embed within their brand team as the sole data expert. You'll work across Marketing, Digital, Finance and Buying—handling ad hoc reporting, but more importantly, driving proactive, exploratory analysis that uncovers opportunities and informs business decisions. From shaping their customer data model with new data sources, to influencing campaign timing or store openings, you’ll own a roadmap of insight across customer, product, digital, and brand. Experience with tools like Fospha and a passion for unlocking the potential of AI in retail analytics are a big plus.


SKILLS + EXPERIENCE

  • Strong SQL experience and exposure to Python needed
  • Any data visualisation tools – Looker, Tableau, Power BI etc
  • Marketing/Customer/Digital experience such as segmentation, attribution, CRO


HOW TO APPLY

If this sounds like the role for you, swiftly send over your CV to Izzi at Harnham by using the link below.

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