SAP Master Data Governance Manager (MDG)

Accenture UK & Ireland
London
6 days ago
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SAP Master Data Governance Manager (MDG)

Accenture UK & Ireland is looking for a SAP Master Data Governance Manager (MDG). This role supports clients in SAP transformation projects, acting as a functional expert in master data governance.


Accenture is a leading global professional services company, providing a broad variety of services in strategy, consulting, technology, and operations. With culture of innovation, we bring industry expertise and next‑generation technology to each challenge.


In our team you will:

  • Work on full lifecycle data journeys with clients from roadmap through to execution, delivering value through the latest features and benefits within the SAP solution set.
  • Act as a Functional Expert in the master data governance area, translating clients' business and functional requirements into SAP functional designs and overseeing solution delivery.
  • Leverage strong business process knowledge and in-depth expertise to design effective and efficient solutions.

We are looking for experience in the following skills:

  • Advising clients on Master Data Management strategy elements of their S/4HANA roadmaps and supporting implementation of solutions based on SAP MDG and other complementary MDM applications.
  • Leading the transformation of clients' data governance models, ensuring relevant business accountabilities are in place and a clear target operating model for MDM is implemented prior to deployment of SAP MDG based solutions.
  • At least 7 years of functional data experience and recognized SME skills for at least two “Big 4” data objects demonstrated across multiple full end‑to‑end SAP implementation lifecycles from data strategy definition through to cutover.
  • Proven capabilities in leading a distributed delivery team, working with colleagues in offshore delivery centres for solution delivery.
  • Proven ability to advise & support clients with data quality challenges, defining corrective actions and delivering data quality monitoring solutions.
  • Understanding of methodologies for the deployment of SAP MDG.
  • Good understanding of Agile and Waterfall methodologies.

Set yourself apart:

  • Broader S/4HANA functional experience ensuring stronger alignment of SAP MDG with other functional solution elements.
  • Broader understanding of full data lifecycle management processes, especially instances where lifecycle stages are linked to non‑SAP solutions.
  • Experience demonstrated in the development of solid relationships with client C‑Suite stakeholders.
  • Experience with other leading MDM tools (e.g., SimpleMDG) that typically complement SAP landscapes.

What’s In It For You

At Accenture, in addition to a competitive basic salary, you will also have an extensive benefits package which includes 30 days’ vacation per year, private medical insurance and 3 extra days leave per year for charitable work of your choice.


Flexibility and mobility are required as there will be requirements to spend time onsite with our clients and partners to deliver first‑class services.


Seniority level: Mid‑Senior level


Employment type: Full‑time


Job function: Strategy/Planning and Information Technology


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