Associate Director, Global Sales Analytics Engineering - Business Decision Intelligence
BD · 3 Locations
Job description
We are the people who give possibilities purpose BD is one of the largest global medical technology companies in the world. Advancing the world of health™ is our Purpose, and it’s no small feat. It takes the imagination and passion of all of us—from design and engineering to the manufacturing and marketing of our billions of MedTech products per year—to look at the impossible and find transformative solutions that turn dreams into possibilities. Job DescriptionRole Summary The Associate Director, Global Sales Analytics Engineering Lead is the senior people leader responsible for the strategy, delivery, and continuous evolution of the commercial analytics semantic layer and business intelligence engineering function. This role owns the enterprise vision for how commercial sales data is modeled, governed, and consumed by business users globally — and builds the team, operating model, and platform capabilities required to deliver governed, scalable, and trusted analytics at scale. A defining priority for this role is leading the transformation of the commercial analytics function from reactive, dashboard-centric reporting to a proactive, AI-ready analytics model — where governed data products, predictive signals, and intelligent alerting replace static reports as the primary vehicle for commercial insight delivery. This leader will champion the architectural and cultural shift required to move the organization from answering yesterday's questions to anticipating tomorrow's decisions. As a member of the commercial analytics leadership team, this role partners directly with peers across Commercial Data Product Strategy, Decision Science & AI, Data Engineering, and IT to shape the enterprise data and analytics platform roadmap. The Associate Director leads a team of JG3–JG5 analysts and senior individual contributors, setting performance expectations, developing talent, and creating a culture of technical craftsmanship, stakeholder focus, and continuous improvement. Key Responsibilities Team Leadership & Organizational Development Lead, manage, and develop a high-performing team of Analytics Analysts (JG3–JG5) and senior individual contributors across semantic layer engineering and BI development disciplines. Set clear performance expectations, provide ongoing coaching and feedback, and conduct formal performance and development reviews for all direct reports. Own team hiring, onboarding, and workforce planning in partnership with HR and analytics leadership, ensuring the team has the skills and capacity to deliver on the roadmap. Build a team culture of technical excellence, accountability, stakeholder orientation, and continuous improvement. Represent the analytics engineering function on the commercial analytics leadership team, contributing to cross-functional strategy, prioritization, and organizational decisions. Enterprise Semantic Layer Strategy & Governance Define and own the enterprise semantic layer strategy for commercial sales analytics — establishing the long-term vision for how business metrics, dimensions, and hierarchies are governed and consumed globally. Set the direction for semantic layer architecture across tooling platforms, ensuring scalability, consistency, and alignment to enterprise data governance and access control standards. Serve as the ultimate authority on semantic layer design trade-offs, resolving escalated conflicts between business metric definitions and physical data model constraints. Partner with Commercial Data Product Strategy to co-own the enterprise business glossary, metric registry, and commercial KPI framework. Lead cross-functional governance forums to align commercial stakeholders, data engineering, and enterprise architecture teams on metric definitions, calculation methodologies, and data lineage. Global Self-Service Analytics Operating Model Own the global self-service analytics operating model — defining the standards, tooling, enablement programs, and governance processes that allow commercial users across all Regions and Business Units to access governed insights independently. Define self-service maturity frameworks, adoption KPIs, and investment priorities, using data to demonstrate business value and guide platform decisions. Champion data literacy across the commercial organization through executive-level enablement programs, community of practice initiatives, and structured user education. Drive the elimination of bespoke reporting by leading the design of modular, reusable analytics asset libraries that accelerate insight delivery at scale. Analytics Platform & BI Engineering Excellence Lead the evaluation, selection, and adoption of semantic layer, BI, and analytics platform capabilities in partnership with IT, Data Engineering, and enterprise architecture teams. Establish and enforce BI development standards, design systems, component libraries, and UX/UI principles that ensure consistent, high-quality analytics experiences across the commercial organization. Ensure all semantic layer assets and BI deliverables meet data governance, privacy, access control, and regulatory compliance requirements. Drive continuous improvement of platform performance, semantic layer health, and report reliability through structured operational reviews and engineering best practices. Agentic AI Development & Training Define and drive the enterprise strategy for agentic AI integration within the commercial analytics platform, establishing the vision for how AI agents consume, generate, and augment governed semantic layer assets. Lead the architecture and governance of AI training data programs, ensuring commercial analytics outputs used for model development meet quality, lineage, and compliance standards. Partner with Decision Science & AI and enterprise architecture teams to define reference architectures for agentic AI workflows embedded in commercial reporting, forecasting, and decision intelligence use cases. Establish enterprise-wide standards for prompt engineering, AI output validation, and human-in-the-loop governance across commercial analytics agentic workflows. Represent the analytics function in senior cross-functional forums on AI platform strategy, contributing to investment decisions, risk governance, and responsible AI frameworks. Mentor JG3 and JG4 analysts in agentic AI development and training practices, fostering a culture of responsible, governed AI adoption within the commercial analytics team. Track and assess the maturity of agentic AI capabilities across the commercial analytics ecosystem, defining roadmap priorities and success metrics that align to enterprise AI strategy. Transformation from Reactive Reporting to Proactive, AI-Ready Data Products Own and drive the strategic transformation of commercial analytics from reactive dashboard reporting to proactive, AI-ready data products — establishing the vision, roadmap, and delivery model for this multi-year capability shift. Redesign the analytics asset portfolio to prioritize intelligent, event-driven data products that surface insights, anomalies, and recommendations proactively — reducing reliance on manually-queried dashboards and static reports. Partner with Decision Science & AI teams to architect semantic layer and data product foundations that are consumption-ready for machine learning models, predictive analytics, and AI-generated insights. Define and enforce data product standards — including freshness SLAs, semantic consistency, access controls, and lineage documentation — that enable safe, scalable AI and analytics consumption across the commercial organization. Lead the commercial organization through the cultural and behavioral change required to shift from pull-based report consumption to proactive, insight-driven workflows, working closely with business leaders to drive adoption. Establish metrics to track the funct
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