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Ecommerce Data Analyst

Widen the Net | B Corp
London
1 month ago
Applications closed

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Ecommerce Operations Analyst / Ecommerce Financial Analyst / Ecommerce Ops Analyst

(Other relevant titles: Suppy Chain Analyst / Logistics Analyst / Ecommerce Operations Analyst / Fulfillment Analyst / Operations Analyst/ Inventory Analyst)


Our client is a global well-known fashion brand:

-Brand with 100 + years history;

-Over 3000 stores and 15,000 + staff across 100 countries;

-Expanding globally with turn over of $7 billions


They are looking for an e-commerce ops analyst to join their team and ensure accurate financial reporting and insightful analysis to support the business:


-Analyse eComm operational flows, performance and manage financial processes related to S&OP and operation

-Monitor and optimise distribution and supply chain operations

-Track key performance indicators (KPIs) such as delivery times, customer

experience and order accuracy

-Identify and recommend improvements in processes

-Budget planning, PO management, overall cost control and reporting, develop cost models for distribution strategies

-Forecasting and reporting within ecommerce


Requirement and Experience:

• Experience in finance, distribution, logistics, supply chain or ecommerce

• Strong analytical and problem-solving skill. Advanced Excel with experience in SQL, Python (a plus) and Looker (a plus)

• ERP systems such as SAP or Oracle is a plus

• Knowledge of supply chain and distribution processes, including freight,

warehousing, and inventory management

• Experience with financial modelling and cost analysis tools is a plus


Initially 6 months full time contract and very likely to extend afterwards. Inside IR35 contract and we are open to discuss on the daily rate depending on experience. Hybrid working near London or Northampton area.

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