SAP Master Data Governance (MDG) & MDM Senior Manager

WeAreTechWomen
London
6 days ago
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Job Description

Accenture is a leading global professional services company, providing a broad range 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 the communities in which we work and live. It is personal to all of us.” - Julie Sweet, Accenture CEO


Introduction

Accenture seeks a SAP MDG & Data Migration Senior Manager for our SAP Integrated Platform Team (IPT) in Europe.


This role focuses on Master Data Management and SAP MDG, advising clients across industries from sales and consulting to solution design and delivery.


You’ll bring deep technology expertise and industry insight to architect master data solutions leveraging SAP’s digital platform for medium to large enterprises.


What’s in it for you

  • Opportunity to work on cutting-edge SAP S/4HANA and data transformation projects.
  • Exposure to global clients and complex digital transformation journeys.
  • Chance to influence data governance strategies and leverage AI/ML innovations.
  • Career growth through leadership roles and mentoring opportunities.
  • Collaboration with Accenture’s diverse teams and access to predefined solution assets.

Qualification
Key Responsibilities

  • Advise clients on master data management, governance, and data architecture strategies.
  • Support SAP S/4HANA migration planning and execution, including data conversion.
  • Design and implement data governance models using SAP MDG and related tools.
  • Translate client requirements into innovative, value-driven solutions.
  • Drive sales origination and contribute to building a successful practice.

Necessary Knowledge / Skills

  • Strong SAP data management expertise and experience with governance models.
  • Hands‑on experience with S/4HANA migration and ETL tools (SAP Data Services, Syniti ADM).
  • Solid understanding of Agile/Scrum methodologies and data management best practices.
  • Ability to communicate complex technical concepts to senior non‑technical stakeholders.
  • Bachelor’s degree and proven experience in client‑facing roles.

Locations

London


Equal Employment Opportunity Statement

Accenture is an equal opportunities employer and welcomes applications from all sections of society and does not discriminate on grounds of race, religion or belief, ethnic or national origin, disability, age, citizenship, marital, domestic or civil partnership status, sexual orientation or gender identity, or any other basis as protected by applicable law.


All employment decisions shall be made without regard to age, race, creed, color, religion, sex, national origin, ancestry, disability status, veteran status, sexual orientation, gender identity or expression, genetic information, marital status, citizenship status or any other basis as protected by federal, state, or local law.


Job candidates will not be obligated to disclose sealed or expunged records of conviction or arrest as part of the hiring process.


Accenture is committed to providing veteran employment opportunities to our service men and women.


Please read Accenture’s Recruiting and Hiring Statement for more information on how we process your data during the Recruiting and Hiring process.


Additional Information

We work with one shared purpose: to deliver on the promise of technology and human ingenuity. Every day, more than 775,000 of us help our stakeholders continuously reinvent. Together, we drive positive change and deliver value to our clients, partners, shareholders, communities, and each other.


We believe that delivering value requires innovation, and innovation thrives in an inclusive and diverse environment. We actively foster a workplace free from bias, where everyone feels a sense of belonging and is respected and empowered to do their best work.


At Accenture, we see well‑being holistically, supporting our people’s physical, mental, and financial health. We also provide opportunities to keep skills relevant through certifications, learning, and diverse work experiences. We’re proud to be consistently recognized as one of the World’s Best Workplaces™.


Join Accenture to work at the heart of change. Visit us at www.accenture.com.



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