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Merchandising & Data Analyst

Naked Wolfe
London
1 day ago
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Merchandising & Data Analyst

Naked Wolfe

Naked Wolfe is a global fashion-footwear brand built on speed, creativity and data-driven decision making. We’re looking for a highly organised, analytical and commercially minded Merchandising & Data Analyst to own all business-critical merchandising operations, buying support, and reporting across our global business.

This is a central role working directly with the Directors and wider leadership team to ensure we are buying the right product, at the right time, in the right quantities — while keeping our inbound, warehouse operations and inventory perfectly aligned.

This is an on-site, full time role based in our Central London office nearby to Tottenham Court Road Station.


What You’ll Own


Merchandising & Buying Support

  • Support Directors with all product planning, buying analysis, range building and seasonal forecasting.
  • Build and maintain buy plans across DTC, wholesale and global regions.
  • Identify risks, opportunities and trading actions based on sales, stock coverage, and performance insights.

Purchase Order Ownership

  • Create every purchase order for the business — accurately, on time, and aligned with approved buys.
  • Ensure all PO details are complete (costs, quantities, EANs, deadlines, ship windows, destinations).

Inbound Logistics & Freight

  • Manage all inbound shipping, freight forwarders, warehouse receiving and receiving timelines.
  • Track shipments end-to-end and ensure all warehouses meet SLA for receiving, scanning and put-away.
  • Resolve delays, discrepancies, and inbound issues before they impact stock availability.
  • Ensure ASNs are transmitted to each warehouse for timely receipt.

Inventory, Replenishment & Store Operations

  • Oversee inventory accuracy across all global warehouses.
  • Manage store replenishment and stock transfers.
  • Monitor sell-through and margins to drive daily and weekly trading decisions.

Data, Reporting & Analytics

  • Become the company’s go-to person for inventory, sales, product, and operational data.
  • Build dashboards and reports (daily/weekly/monthly) for leadership across sales, margin, OTB, forecast accuracy, stock levels, and inbound timelines.
  • Partner with eCommerce, Operations and Finance to keep data aligned and actionable.


Who You Are

  • Highly analytical, detail-obsessed and strong with numbers.
  • A proactive problem solver who thrives in fast-moving environments.
  • Experienced in merchandising, planning, buying, demand forecasting or inventory management.
  • Comfortable using spreadsheets, BI tools, and ERP systems (experience with Madden, Looker, BigQuery, Airtable or Fulfil.io a plus).
  • Able to manage suppliers, warehouses, freight partners and internal teams with confidence and clarity.


Why Join Naked Wolfe

  • Work directly with founders and directors in a fast-growing global brand.
  • High ownership role with huge impact on product, sales, operations and future growth.
  • Fast-paced, creative culture with real career progression and autonomy.


If you’re passionate about data, product and operational excellence — this role is for you.


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