About The Position

The Onyx Research Data Tech organization represents a major investment by GSK R&D and Digital & Tech, designed to deliver a step-change in our ability to leverage data, knowledge, and prediction to find new medicines. We are a full-stack shop consisting of product and portfolio leadership, data engineering, infrastructure and DevOps, data / metadata / knowledge platforms, and AI/ML and analysis platforms, all geared toward: Building a next-generation data experience for GSK’s scientists, engineers, and decision-makers, increasing productivity and reducing time spent on “data mechanics” Providing best-in-class AI/ML and data analysis environments to accelerate our predictive capabilities and attract top-tier talent Aggressively engineering our data at scale to unlock the value of our combined data assets and predictions in real-time Onyx Product Management is at the heart of our mission, ensuring that everything from our infrastructure, to platforms, to end-user facing data assets and environments is designed to maximize our impact on R&D. The Product Management team partners with R&D stakeholders and Onyx leadership to develop a strategic roadmap for all customer-facing aspects of Onyx, including data assets, ontology, Knowledge Graph / semantic search, data / computing / analysis platforms, and data-powered / LLM-enabled applications. We are seeking an experienced Senior Product Manager to lead the strategy and delivery of GenAI platform products – the core platform that enables development and deployment of GenAI-powered applications, agents, and MCP services. This platform provides unified access to LLM, embeddings, vector search prompt orchestration, model routing, and agent frameworks, enabling R&D teams to rapidly prototype, operationalize, and scale GenAI solutions and ultimately deliver new medicines for our patients.

Requirements

  • PhD + 2 years, Masters + 4 years, or Bachelors + 6 years
  • 4+ years of experience in product management with a proven track record of shipping 0-to-1 platform capabilities powered by GenAI, LLMs, or autonomous agents in a commercial or large-scale enterprise setting.
  • Experience defining platform strategy for modern GenAI systems, including hands-on familiarity with core technologies such as RAG pipelines, embedding services, prompt templates, agent frameworks, vector databases, and evaluation tooling.
  • Experience with cloud-native architectures (e.g., AWS, Azure, GCP), API design, high-performance serving infrastructure, and platform components required to securely deploy and scale LLM-based applications for enterprise use.
  • Experience working closely with platform engineering, MLOps, and security teams to build reliable, governed, reusable GenAI capabilities that accelerate development for multiple downstream product teams.
  • Experience driving platform adoption, governance, and developer enablement, including SDKs, templates, guardrails, and onboarding materials for cross-functional teams.

Nice To Haves

  • Direct product management experience designing and launching GenAI agents and platform capabilities that leverage tool use (APIs, function calling), planning modules, and multi-step reasoning to support a broad set of enterprise or scientific workflows.
  • Hands-on software engineering or data science experience within a GenAI or ML platform team prior to transitioning into product management, with exposure to LLM infrastructure, RAG pipelines, and developer tooling.
  • Deep familiarity with modern transformer-based model architectures, with the ability to make platform-level strategic decisions between proprietary models (e.g., GPT-4, Claude), open-source models (e.g., Llama, Mistral), domain-adapted models, and fine-tuning approaches.
  • Experience delivering platform capabilities that manage, index, or interpret complex, unstructured biomedical or scientific data through embeddings, vector stores, or structured retrieval frameworks.
  • Extensive knowledge of bioinformatics, computational biology, or cheminformatics, and a strong vision for how enterprise-scale GenAI platforms can power the next generation of scientific automation and agentic workflows.
  • Extensive platform product experience designing, optimizing, and implementing Model Context Protocols (MCP) or similar orchestration frameworks for LLM-powered agents, including strategies for context management, memory systems, prompt optimization, safety, and maintaining coherence over long-running tasks.
  • Hands-on experience with product management and technical collaboration tools such as Confluence, Jira, Miro, Monday, Notion, and Git-based documentation.
  • Previous experience in life sciences or biopharma R&D is a strong plus.

Responsibilities

  • Ownership & Strategy Own and drive the vision, roadmap, development, and adoption of GenAI platform capabilities, ensuring a unified, governed, and high-quality experience for LLMs, embeddings, vector search, prompt orchestration, model routing, agent frameworks, and MCP services.
  • Define the strategic direction for GenAI capabilities, enabling scalable, compliant, production-ready GenAI and agentic applications across R&D.
  • Customer & Stakeholder Engagement Conduct ongoing customer discovery with scientists and AI/ML practitioners to identify emerging needs and translate them into actionable product requirements.
  • Lead technical product discussions with engineering and scientific leaders to clarify objectives and shape platform direction.
  • Product Planning & Delivery Collaborate with stakeholders to define platform features, requirements, and success criteria aligned with scientific use cases and business goals.
  • Drive agile product execution with engineering and program teams, owning prioritization, backlog management, and delivery of high-quality platform releases.
  • Platform Integration & Governance Ensure seamless integration with the Data Platform and AI/ML Platform to enable shared data standards, consistent data and model lifecycle management, and full interoperability across GenAI-powered applications.
  • Coordinate and align roadmap with R&D platforms to ensure interoperability, governance alignment, and a unified enterprise data, compute, AI, and application ecosystem.
  • Launch, Adoption & Optimization Lead platform launches and change-management activities to ensure clear communication, training, and successful adoption across R&D.
  • Monitor platform usage and performance, analyze feedback and telemetry, and drive continuous improvements to enhance usability, reliability, and scientific impact.

Benefits

  • health care and other insurance benefits (for employee and family)
  • retirement benefits
  • paid holidays
  • vacation
  • paid caregiver/parental and medical leave
  • annual bonus
  • eligibility to participate in our share based long term incentive program
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service