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Master Data Analyst

Charlotte Tilbury
London
6 days ago
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Overview

The Product Master Data Analyst enables the interactions between Supply Chain, Finance, Systems, NPD, Regulatory, eCommerce and suppliers by ensuring consistent data management for product, financial and inventory information. You will play a key role in the creation and management of data that facilitates a range of processes supporting our data customers both inside and outside the business. As a Master Data Analyst you will



  • Create, maintain, and update product master data in PDM and in the ERP system.
  • Ensure product attributes (SKU code, UPC and EANs, BOMs, pricing, units of measure, categories, regulatory attributes) are accurate, complete, and consistent.
  • Partner with stakeholders to gather requirements for new product setups and changes.
  • Develop and enforce data governance rules, standards, and processes to maintain data quality.
  • Conduct regular data audits, identify discrepancies, and resolve data integrity issues.
  • Perform Root Cause Analysis on issues raised and work to resolve, prevent and design those issues out of our processes.
  • Support ERP system enhancements, data migration projects, and testing activities related to product data.
  • Provide reporting and analytics on master data KPIs, including completeness, accuracy, and timeliness.
  • Collaborate with Business Systems Team to troubleshoot master data issues.
  • Train end-users and support data-related change management initiatives.
  • Facilitate the downstream flow of product data to other teams and systems, understanding the impact of changes in master data on these downstream processes.
  • Document and maintain operational procedures and processes.

Qualifications

  • Bachelor's degree in business, Supply Chain, Information Systems, or related field.
  • Extensive experience in master data management, preferably with a focus on product data.
  • Hands-on experience with at least one major ERP system (SAP, Oracle, or similar).
  • Strong understanding of product lifecycle, supply chain processes, and data dependencies in ERP.
  • Proficiency in Excel and data analysis tools.
  • Knowledge of data governance principles and best practices.
  • Excellent attention to detail, problem-solving, and communication skills.
  • Ability to manage multiple priorities and collaborate across global, cross-functional teams.
  • Ability to thrive in a changing environment as we implement our new master data strategy.

Benefits

  • Hybrid model with flexibility, allowing you to work how best suits you
  • 25 days holiday (plus bank holidays) with an additional day to celebrate your birthday
  • Inclusive parental leave policy that supports all parents and carers throughout their parenting and caring journey
  • Financial security and planning with our pension and life assurance for all
  • Wellness and social benefits including Medicash, Employee Assist Programs and regular social connects with colleagues
  • Bring your furry friend to work with you on our allocated dog friendly days and spaces
  • Generous product discount and gifting

At Charlotte Tilbury Beauty, our mission is to empower everybody in the world to be the most beautiful version of themselves. We celebrate and support this by encouraging and hiring people with diverse backgrounds, cultures, voices, beliefs, and perspectives into our growing global workforce. If you want to learn more about life at Charlotte Tilbury Beauty please follow our LinkedIn page!


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