Senior SAP Data Architect - Director

PwC UK
Manchester
3 days ago
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About The Role

At PwC, we’re proud of the impact we’ve made helping clients stay ahead on Finance Transformation and SAP S/4HANA enabled change. Demand for transformation is growing — and so are we. We’re expanding our team to meet that ambition and build on our position as a trusted delivery partner for enterprise-wide SAP and Finance programmes.

Our team thrives on collaboration, inclusion and fresh thinking. We value diverse perspectives and create an environment where everyone is empowered to learn, grow and lead — so you can move your career forward with purpose and confidence.

The Senior Data Architect will play a pivotal role in supporting the sales process for new SAP and ERP transformation work and building the data capability within FT&ERP. The role will be responsible for fronting the data transformation components of the sales process and will provide oversight of the components of a solution architecture and solution plan that relate to data. Additionally, the role will lead the ongoing development of a data capability within the FT&ERP Solution group and collaborate with other Lines of Service (Risk) and PwC Delivery Centres to set the strategy for building an overall data capability across architecting and delivering data solutions for key programmes.

What Your Days Will Look Like
  • Sales Support: Acting as the primary data transformation lead during the sales process, providing expertise and insights to support the winning of SAP and ERP transformation opportunities.
  • Solution Architecture: Overseeing the definition and design of data-related components within the overall solution architecture and solution plans.
  • Data Capability Development: Leading the development of a robust SAP data capability within the FT&ERP Solution group, ensuring alignment across other Lines of Service (Risk) and PwC Delivery Centres.
  • Data Transformation Advisory: Advise and support on the execution of SAP data transformation work for clients, including data strategy, data migration, data integration, data quality, and data governance. Engage with key stakeholders to understand their data needs and ensure that data solutions are aligned with business goals.
  • Innovation: Staying abreast of industry trends and emerging technologies to continuously improve data capabilities and solutions.
This role is for you if
  • You have experience in data architecture and data capability development, preferably within SAP and ERP transformation projects.
  • You have a strong understanding of data transformation processes, including data migration, data integration, data quality, and data governance.
  • You have excellent communication and presentation skills, with the ability to articulate complex data concepts to non-technical stakeholders.
  • You have strong problem-solving skills and the ability to think strategically.
  • Relevant certifications in data architecture or SAP are a plus.
What You’ll Receive From Us

No matter where you may be in your career or personal life, our benefits are designed to add value and support, recognising and rewarding you fairly for your contributions. We offer a range of benefits including empowered flexibility and a working week split between office, home and client site; private medical cover and 24/7 access to a qualified virtual GP; six volunteering days a year and much more.


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