Data Analyst - Merchandising

Clarks
Street
2 weeks ago
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Opportunity to join our Merchandising team as a Data Analyst, based in our Head Office in Street, Somerset BA16 0EQ.

Job Overview

To support the regional Merchandising function, providing insights to action, to optimise our performance. Develop the analytics and tools that support understanding and effective merchandising decision making. Work collaboratively across the Merchandising function to continuously develop and enhance reporting & dashboards. Deliver facts and insights, and support effective and timely decision making.

Responsibilities

• Produce and maintain long term, short term and historical tools to enable merchandising to get the right product, the right place, at the right time, at the right price.

• Deliver accurate view of NTO, GM, Pairs, ROS, ST, Flat Cover and Inventory by Channel, Gender and BU, over the required timelines, for Merchandising to take action, as well as communicate recommendations to key internal and external stakeholders.

• Provide reporting to support Merchandising to deliver robust seasonal planning and dynamic, quality trading.

• Ensure connectivity to Brand Strategy and Season Merchandising strategies and planning in order to understand the business priorities and needs, when carrying out every aspect of the role.

• Provide reporting and analytics feeding from multiple systems and executed into...

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