SAP Master Data Analyst

Vickerstock
Stafford
6 days ago
Create job alert

A leading international organisation within the energy sector is seeking a Data Specialist (SAP Altias) to join their team in Stafford. This is an excellent opportunity for a detail-oriented data professional looking to support operational efficiency within a fast-paced manufacturing environment.
If you have strong SAP experience and enjoy working across functions to ensure data accuracy, improve processes, and support product lifecycle management, this role could be a great fit for you.
Key Responsibilities:

  • Supporting the creation, maintenance, and validation of master data within SAP Altias

  • Accurately creating and maintaining materials and material structures for manufactured, purchased, and repair products
  • Developing and maintaining Excel or similar modelling/product selector tools aligned to SAP/GANESH configurable materials
  • Participating in new product development and industrialisation meetings to ensure product structures are production-ready
  • Supporting data governance standards and promoting best practices in master data management
  • Identifying and implementing process improvements to enhance data accuracy and efficiency
  • Coordinating and guiding design change activities across multiple business functions
  • Providing technical support to commercial and production teams regarding SAP materials and lifecycle statuses
  • Monitoring KPIs relating to workflow requests and supporting continuous improvement initiatives
    Essential Criteria:
  • Demonstrated expertise in SAP Altias, SAP Ganesh, or related SAP modules.
  • Extensive experience as SAP Ganesh user
  • Strong understanding of master data management and data governance principles
  • Proficiency in Microsoft Excel and data modelling tools
  • Excellent analytical and problem-solving skills
  • Strong communication skills with the ability to collaborate cross-functionally
  • High attention to detail and commitment to data accuracy
  • Ability to manage multiple priorities in a fast-paced environment
    To speak in absolute confidence about this opportunity please send an up to date CV via the link provided or contact Ruairi McCann, Recruitment Manager at Vickerstock.
    Even if this position is not right for you, we may have others that are. Please visit Vickerstock to view a wide selection of our current jobs.
    All conversations will be treated in the strictest of confidence

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