SAP Master Data Governance Manager MDG

Accenture
York
1 month ago
Applications closed

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SAP Master Data Governance Manager MDG

Accenture

London, South East England

£81,653 per year - estimated ?

Permanent

Full time

NEW

Role: SAP Master Data Governance Manager - MDGh3>

Location: London /Birmingham/ Manchester

Salary: Competitive salary and package dependent on experience

Career Level: Manager

Accenture is a leading global professional services company, providing a broad variety of services in strategy and consulting, interactive, technology and operations, with digital capabilities across all of these services. With our thought leadership and culture of innovation, we apply industry expertise, diverse skill sets and next-generation technology to each business challenge. We believe in inclusion and diversity and supporting the whole person. Our core values comprise of Stewardship, Best People, Client Value Creation, One Global Network, Respect for the Individual and Integrity. Year after year, Accenture is recognized worldwide not just for business performance but for inclusion and diversity too. “Across the globe, one thing is universally true of the people of Accenture: We care deeply about what we do and the impact we have with our clients and with the communities in which we work and live. It is personal to all of us.” - Julie Sweet, Accenture CEO

As a team: As one of SAP's Tier 1 global partners we understand the importance of data in our client's transformation journeys. Whether in the context of a S/4HANA transformation or of a data roadmap we strive to bring leading thinking and delivery of innovative solutions to our clients. You will work on full lifecycle data journeys with clients from roadmap through to execution, delivering value through the latest features and benefits within SAP solution set.

In our team you will:

  • Be an integral part of our team supporting our clients SAP transformation projects through acting as a Functional Expert in the master data governance area.
  • You will work closely with clients, translating their business and functional requirements into SAP functional designs and overseeing solution delivery.
  • Your strong business process knowledge, combined with your in-depth expertise will be key to designing effective and efficient solutions for our clients.


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