Vice President, Head of Data Product Management

Revolution MedicinesRedwood City, CA
1dOnsite

About The Position

Revolution Medicines is a clinical-stage precision oncology company focused on developing novel targeted therapies to inhibit frontier targets in RAS-addicted cancers. The company’s R&D pipeline comprises RAS(ON) Inhibitors designed to suppress diverse oncogenic variants of RAS proteins, and RAS Companion Inhibitors for use in combination treatment strategies. As a new member of the Revolution Medicines team, you will join other outstanding Revolutionaries in a tireless commitment to patients with cancers harboring mutations in the RAS signaling pathway. The Opportunity: We are pioneering a data-driven discovery and development ecosystem that integrates chemistry, biology, and digital innovation to accelerate insight generation across the R&D continuum — from discovery to clinical development and commercialization. As the founding Vice President, Head of Data Product Management, this role represents a unique opportunity to define and scale a global data product ecosystem that powers the company’s scientific, clinical, commercial, medical affairs, HEOR/RWE, and patient services excellence. This role sits at the intersection of science, technology, and business, enabling data-driven decision making from early research through clinical development and full commercialization. Reporting to the Chief Digital Officer, you will operate within a hub-and-spoke model, where the central hub drives enterprise-level data product strategy, standards, and architecture, and the spokes consist of Data Product Managers embedded within key functions (Research, Clinical Development, PDM, Commercial, and G&A) who bring deep domain expertise. You are both visionary and hands-on, capable of designing enterprise-ready data products that power discovery, operational execution, and commercial impact.

Requirements

  • 15+ years of experience in data product management or data platform leadership in life sciences, diagnostics, or biopharma.
  • Proven record of designing and managing enterprise-grade data products supporting research, development, and commercialization.
  • Deep understanding of the scientific data lifecycle and systems used across discovery, translational, and clinical domains.
  • Demonstrated experience in defining API contracts, managing evolving schemas, and overseeing metadata frameworks.
  • Expertise in cloud-native data platforms (AWS, Azure, Snowflake, Databricks) and modern data governance practices.
  • Experience integrating data from CROs, CDMOs, and research partners with rigorous quality and compliance controls.
  • Strong technical fluency and ability to communicate across both scientific and engineering stakeholders.
  • Skilled in data cataloging, metadata management, data lineage, privacy, and security.
  • Excellent leadership and change management skills with a history of influencing across functions.

Nice To Haves

  • Advanced degree in Computer Science, Bioinformatics, or related technical discipline; graduate training in Life Sciences a plus.
  • Direct experience in oncology drug discovery or RAS pathway research.
  • Familiarity with GenAI and LLM applications in scientific and business domains.
  • Experience leading digital transformation or data mesh initiatives in complex organizations
  • Experience with GxP requirements and Computer System Validation.

Responsibilities

  • Define and Execute the Global Data Product Vision
  • Develop a unified, enterprise-wide data product strategy spanning discovery, translational science, clinical development, commercialization, medical affairs, HEOR, market access, marketing analytics, and patient services.
  • Define and maintain data product lifecycle frameworks, including schema evolution, version control, metadata standards, and data governance.
  • Build, mentor, develop, recruit, and retain talent in your teams; provide leadership to direct reports and non-direct report team members. Ensure training, career development, and performance management.
  • Establish and maintain an Enterprise Data Product Catalog and MDM solution covering chemical entities, assay and assay data, biology samples, in vitro and in vivo studies, patient data, real-world datasets, customer and HCP data, market access and payer data, medical insights, and patient service interactions.
  • Drive adoption of API-first data contracts to ensure interoperability, reproducibility, and automation across scientific, commercial, and medical systems.
  • Develop and govern agent-ready interfaces (e.g., MCP-based tools) that expose data products to AI assistants and automation workflows in a secure, auditable manner.
  • Lead the Hub-and-Spoke Operating Model
  • Build and manage the central Data Product Management function responsible for architecture, design patterns, product governance, and enterprise alignment.
  • Partner with embedded Data Product Managers across Research, Clinical, Commercial, Medical Affairs, HEOR/RWE, Market Access, and Patient Services to ensure each domain’s needs are served while meeting global standards.
  • Align cross-functional stakeholders across Research, Data Science, IT, Clinical, Commercial, Medical Affairs and G&A to ensure consistent data strategies and product usage.
  • Deliver AI- and ML-Optimized Data Products
  • Design and oversee modular, scalable data products that serve multiple use cases: analytics, AI model training, GenAI fine-tuning, and operational decision support.
  • Collaborate with Data Engineering, CloudOps, MLOps, and Architecture teams to ensure that data products are optimized for high performance, security, and scalability.
  • Ensure all data products are compatible with modern AI-driven applications and can fuel predictive modeling and large language model (LLM) training.
  • Integrate and Harmonize CRO and External Data Sources
  • Develop standardized frameworks and data exchange pipelines with Contract Research Organizations (CROs), academic partners, and external data vendors.
  • Implement automated ingestion and validation workflows to ensure data quality, integrity, and compliance.
  • Define and enforce metadata, lineage, and security requirements for all external data to ensure harmonization with RevMed’s internal data ecosystem.
  • Partner with Legal, Compliance, and Procurement to align external data sharing and usage agreements with enterprise data governance policies.
  • Govern, Measure, and Evangelize Data Products
  • Lead the Data Product Council to set priorities, establish governance, and drive organizational alignment.
  • Define and monitor leading and lagging indicators to track adoption, quality, and business impact of data products.
  • Champion data culture and literacy across the organization, ensuring scientific and analytical workflows are data product driven.
  • Partner Across RevMed and the Broader Ecosystem
  • Collaborate with internal technology, research, data scientists, analysts and business partners to ensure enterprise data strategy alignment.
  • Engage with external SaaS and data partners (e.g., Benchling, Genedata, Mosaic, IQVIA, Komodo Health, SteepRock, CDD Vault, Knime, Veeva, Posit, Databricks, etc.) to expand data and application capabilities.
  • Continuously evaluate and integrate new technologies that enhance the data product portfolio, including GenAI tools, data mesh architectures, and modern cataloging systems.
  • Identify, evaluate, and integrate high-value public and open-source biomedical data assets (e.g., protein structure and language model resources, large-scale omics and drug-response datasets) to augment RevMed’s internal data ecosystem while ensuring proper licensing, provenance, and scientific alignment.
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