Senior Product Manager, Content Metadata and Vectorization
Elsevier
2d ago
0$105k - $175kManagementUnited Stateshimalayas
Senior-Product-ManagerContent-Product-ManagerSenior-AI-Product-ManagerSenior
Job Description
Senior Product Manager – Content Metadata and Vectorization (Search and AI)About Elsevier
Elsevieris a global leader in information, analytics, and decision support solutions for science, health, and technology professionals. We help researchers, clinicians, and educators advance knowledge and improve outcomes by delivering trusted content, data, and insights at the moments they matter most.Across healthcare, Elsevier partners with clinicians and health systems to support evidence-based decision making, education, and lifelong learning. Our clinical solutions, includingClinicalKeyandClinicalKeyAI, are designed to help healthcare professionals quickly find relevant, trusted information and apply it confidently in patient care.As part of the RELX Group, Elsevieroperatesin a global, diverse, and collaborative environment that brings togetherexpertisein content, technology, data science, and product innovation. We invest heavily in digital platforms, search, and AI to ensure our solutions continue to evolve alongside the needs of our users and the communities we serve.At Elsevier, we are committed to advancing inclusion, fostering curiosity, and building products that make a meaningful impact on healthcare and society. We value thoughtful problem solving, cross-functional collaboration, anda strong senseof ownership, empowering our teams to shape the future of knowledge-driven decision support.About the Role
Elsevier Clinical Solutions is seeking a Senior Product Manager to own the content metadata and vectorization strategy that powers search and AI-driven experiences acrossClinicalKeyandClinicalKeyAI.This roleis responsible fordefining how clinical content is represented for machines, spanning lexical metadata, semantic embeddings, and scalable pipelines that support hybrid search and retrieval-augmented generation. The role sits at the intersection of Search, AI, Content, and Platform teams and plays a critical part in ensuring that Elsevier’s clinical content is discoverable, reliable, and usable in high-trust clinical workflows.What You Will OwnContent Representation Strategy
Define the product vision and strategy for content metadata and vectorization acrossClinicalKeyandClinicalKeyAI. Establish principles for content granularity, lexical versus semantic representation, and consistency across products and use cases. Ensure alignment between query understanding, retrieval strategies, search relevance, and AI answer quality.Content Vectorization Product Ownership
Own product decisions related to semantic representation of content, including what content is embedded,appropriate levelsof granularity, refresh cadence, and success metrics for vector-based retrieval. Partner with Search and AI teams to evaluate embedding approaches and make informed trade-offs between quality, cost, latency, and scalability. Define requirements to ensure vectorized content supports hybrid retrieval, RAG pipelines, and clinical explainability.Metadata and Content Tagging Strategy
Own the metadata and content tagging roadmap acrossClinicalKeyandClinicalKeyAI. Define product requirements for clinical concept tagging, content attributes such as specialty, content type, and evidence level, and editorial or trust signals. Ensure metadata supports lexical search relevance,facets, filters, boosts, and transparency, while also enabling safety and grounding in AI outputs. Balance automated tagging approaches with editorial and subject matter expert workflows.Pipelines, Platforms, and Enablement
Define product requirements for scalable pipelines that support metadata generation, content embedding, re-embedding, monitoring, and quality controls. Partner with Platform and Data teams to translate strategy into executable roadmaps and ensure consistency across ingestion paths forClinicalKeyandClinicalKeyAI. Drive prioritization across competing needs from Search, AI, and Content stakeholders.Metrics, Governance, and Quality
Define and track success metrics related to metadata coverage, quality, and retrieval effectiveness across lexical and semantic systems. Establish governance frameworks for metadata standards, taxonomy changes, model updates, and the introduction ofnew contenttypes. Act as the product owner and decision-maker for content representation initiatives, ensuring long-term consistency and impact.Required Qualifications
Five or more years of experience as a Product Manager or Senior Product Manager. Proven experience owning platform, data, search, or AI-adjacent products in acomplex, cross-functional environment. Strong ability to partner effectively with Search, AI or ML engineering teams, and content or editorial organizations. Demonstrated ability to translate complex technical concepts into clear product strategy, requirements, and success metrics.Preferred Qualifications
Experience working on search, information retrieval, or AI-powered products. Familiarity with metadata systems, taxonomies, embeddings, vector search, or ret
