Interim Data Delivery Manager
Initial 3-6-month contract - Interim Data Delivery Manager - Incredible opportunity with a global market leading brand.
Role Summary
- Lead one or more data-focussed delivery teams to ensure successful delivery of high-quality data products and services in a way that aligns to the goals of the value streams and our data strategy.
- Negotiate and agree with value stream stakeholders on delivery objectives, scope, deliverables, timescales, and budgets.
- Communicate and collaborate with value stream stakeholders to provide visibility into delivery progress, capacity, and risks
- Drive effective execution of prioritised backlogs, aligning with business goals and technical requirements.
- Be accountable for the end-to-end delivery of projects including anticipating, identifying and mitigating project risks and managing cross team dependencies.
Responsibilities
- Overseeing delivery of a range of different data projects across a diverse variety of business functions
- Manage changes in delivery scope or requirements, negotiating as necessary with business stakeholders.
- Consider and manage non-functional requirements such as information security, data protection (GDPR), and compliance with internal standards.
- Proactively map and manage interdependencies, identifying and addressing delivery risks.
- Collaborate with product, service, and technical owners to refine and prioritise backlogs, ensuring alignment with business outcomes.
- Monitor tasks, milestones, and resources weekly against the delivery plan. Provide regular reports and updates in line with programme governance and business stakeholder requirements.
Technical Capabilities
- Understand the high-level solution architecture of the data service or platform and its interface points.
- Collaborate with data architects to align delivery outputs with enterprise architecture principles.
- Evaluate emerging technologies and methodologies to enhance delivery practices.
- Have an awareness of different technologies used within a typical data stack, such as Databricks, Azure Data Factory and Power BI.
- Knowledge of data warehousing and data modelling approaches and appropriate use.