Data Architect / Data Workstream Lead

Warwick
1 month ago
Applications closed

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Data Architect / Data Workstream Lead
Duration: 6 months
1 day per week in Warwick
£500-£530pd per day
Outside IR35

We are looking for a skilled Data Architect / Data Workstream Lead to join our team. This position is integral to our Finance Transformation Programme, which aims to improve financial acumen, promote cost-conscious decision-making, and enhance user experience for budget managers across the organisation.
You will be responsible for solution architecture related to data governance implementation, as well as building bespoke technology solutions and alert systems. Working alongside business analysts and data engineers, you will translate high-level vision and strategy into defined deliverables and actionable implementation plans. Collaboration with diverse stakeholder teams, including Asset Operations, leadership, customer connections, planning, and Strategic Infrastructure, will be essential. The existing technology utilised in this role includes Snowflake and Power BI presentation layers.
Experience Required:

Proven experience as a customer journey/user-centric Data (Solution) Architect within large-scale complex enterprise organisations.
Hands-on experience implementing data solutions throughout the complete project lifecycle.
Experience collaborating with Business Analysts and Data Engineers to develop technology solutions.
Background in project/programme management in a Data Architect role.
Exceptional communication skills with the ability to empathise and connect with key stakeholders during periods of cultural, process, and technology change.
Strong track record of influencing senior stakeholders and driving engagement at the executive level.
Experience working with finance, reporting, and data teams to ensure alignment of solutions with cost-centre management processes, data, analytics, and business intelligence tools.
Expertise in change management.
Relevant project management and data management certifications.
Familiarity with connecting to SAP enterprise systems is desirable

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