10+ years of experience in data-driven product or platform roles, with 5+ years specifically in data platform or data lake environments.
Proven track record managing complex enterprise-scale data platforms using Microsoft Azure, Databricks, and related tools.
Strong understanding of supply chain and/or quality management business processes and data needs.
Experience delivering AI-powered solutions or advanced analytics within data products.
Demonstrated ability to lead Agile teams with an emphasis on accountability, urgency, and financial discipline.
Proficiency in Agile product management and delivery tools: Jira, Aha!, Confluence, or similar.
Deep familiarity with data governance, security standards, and enterprise architecture compliance.
Outstanding communication and stakeholder management skills, with the ability to translate technical requirements into business value.
Optional
Industry experience in manufacturing, life sciences, CPG, or global supply chain operations.
Knowledge of modern architectural paradigms like data mesh, data fabric, or domain-oriented data ownership.
Exposure to working with global, matrixed organizations with multiple stakeholder groups.
Your responsibilities
Platform ownership: Serve as the end-to-end product owner for the Quality and Supply Chain Data Lake, managing its lifecycle, architecture compliance, and overall platform health.
Roadmap development & execution: Define and drive the platform roadmap based on strategic priorities and business demand, balancing long-term vision with rapid, incremental delivery.
Agile delivery with urgency: Operate in an agile methodology while maintaining strict accountability for timeliness and budget. Lead sprints, manage trade-offs, and remove blockers to ensure delivery success.
AI & Advanced analytics enablement: Drive integration of AI/ML solutions and advanced analytics use cases that improve supply chain visibility, quality insights, and operational efficiency.
Stakeholder management and cross-team collaboration: Work with a diverse mix of technical and business stakeholders, including data engineers, data analysts, business analysts, data architects, solutions architects, scrum masters, and domain experts across Quality and Supply Chain functions.
Compliance & Governance: Ensure platform development adheres to enterprise reference architecture, cybersecurity standards, and data governance frameworks.
Tooling & Delivery management: Use tools like Jira, Aha!, Confluence, or similar to manage backlog, sprints, roadmaps, and communications. Track KPIs and delivery metrics to continuously improve execution.
Communication & Alignment: Clearly articulate priorities, trade-offs, value delivery, and technical implications to both executive stakeholders and implementation teams.