Revolution Medicines

Vice President, Engineering - Data, Platforms & Digital Products

Revolution Medicines$352K — $414K *
Enterprise Technology
15+ years of experience
Job Overview by Ladders

Qualifications

  • 20+ years in software engineering with substantial leadership experience across platform engineering and product delivery.
  • Proven experience building and operating enterprise data platforms and data engineering capabilities at scale.
  • Strong architecture background across cloud, distributed systems, integration patterns, and modern data stacks.
  • Demonstrated ability to ship user-facing digital products that integrate multiple systems and support real workflows.
  • Hands-on operational excellence in reliability, observability, incident response, security-by-design, and cost-aware engineering.
  • Track record of building high-performing teams, setting standards, and delivering through ambiguity.
  • Bachelor's degree in Computer Science/Engineering or equivalent experience.

Responsibilities

  • Ship production-grade data products with curated, governed, and dependable datasets/services.
  • Build integration layers that connect existing systems and data products through APIs and events.
  • Deliver new digital products and workflow applications to enhance system interactions.
  • Establish DataOps / MLOps / LLMOps workflows for transitioning analytics and machine learning from prototypes to production.
  • Enable self-serve insight experiences with safe data access and feedback loops.
  • Provide a secure cloud and engineering foundation for fast and scalable delivery.
  • Partner with Information Sciences to ensure alignment and integration across platforms.

Benefits

  • Competitive cash compensation and robust equity awards.
  • Strong benefits package tailored for employee well-being.
  • Significant learning and development opportunities for career growth.
Full Job Description
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.

The VP, Engineering - Data, Platforms & Digital Products reports to the Chief Digital Officer. This position will be the senior engineering counterpart to the VP, Head of Data Product Management, jointly owning the end-to-end execution of RevMed's data and AI platform strategy. This position will be responsible for building and operating the engineering "engine" that turns strategy into shipped, reliable capabilities-spanning platforms, data products, integrations, and user-facing digital experiences.

Responsibilities

In this role, your organization will:
  • Ship production-grade data products through the Data Engineering function-curated, governed, and dependable datasets/services with automated pipelines, quality controls, lineage, and clear operational ownership.
  • Build the integration layer that connects existing transactional systems to each other and to data products-APIs, data contracts, connectors, event/stream patterns, and workflow services.
  • Deliver new digital products and workflow applications that sit on top of systems + data products-purpose-built experiences that enable new end-to-end workflows.
  • Stand up and run DataOps / MLOps / LLMOps so analytics, ML, and GenAI move from prototypes to production-CI/CD, environments, monitoring, evaluation, governance, reliability, and cost controls.
  • Enable self-serve insight experiences such as analytical copilots / "ask me anything" applications that expose trusted data safely, with appropriate guardrails, observability, and feedback loops.
  • Provide the secure cloud and engineering foundation (cloud infrastructure engineering, CI/CD, IaC, identity/access patterns, observability) that makes delivery fast, consistent, and scalable across domains.
  • Partner with the Information Sciences organization (owners of enterprise business applications and transactional systems) to ensure platform and product engineering efforts integrate cleanly with system roadmaps, data stewardship, and operational ownership.

Engineering leadership and operating model
  • Build, lead, and scale teams acrossdata engineering, platform engineering, cloud infrastructure engineering, architecture, and software engineering.
  • Establish the operating model for execution across central platforms and domain delivery teams, enabling speed while maintaining standards and reliability.
  • Partner closely with Security, Privacy, QA/Validation (as applicable), and business stakeholders to ensure delivery is secure, compliant, and adopted.
  • Drive an outcomes-oriented culture: product-minded engineering, measurable impact, and disciplined execution.

Data engineering and data products
  • Implement repeatable patterns for data pipelines, quality gates, testing, backfills, versioning, and remediation.
  • Ensure high trust through consistent metadata, lineage, stewardship, and access controls embedded in engineering workflows.

Platform engineering and architecture
  • Define and enforce platform standards through templates, reference implementations, and automated guardrails (not "docs-only" governance).
  • Lead architecture across cloud, data, and application layers to ensure scalability, interoperability, and long-term maintainability.
  • Build the developer experience: self-service environments, golden paths, reusable libraries, and observability baked into every workload.

Integration and interoperability
  • Establish integration patterns that connect transactional systems to each other and to the data platform.
  • Build shared services for workflow orchestration, eventing, APIs, and data contracts to reduce fragmentation and vendor lock-in.
  • Improve time-to-integrate for new systems and partners by standardizing connectors and exchange patterns.

Software engineering and digital products
  • Deliver new user-facing applications that solve workflow gaps across R&D, G&A, Commercial and operations-integrating systems and data products into cohesive experiences.
  • Co-design digital experiences withInformation Sciences to align with enterprise application architecture, identity/access patterns, and operational support responsibilities.
  • Ensure applications meet enterprise expectations: performance, reliability, security, and maintainability.

Data/ML/LLM Ops and production AI
  • Build and operate the tooling and practices to productionize analytics, ML, and GenAI.
  • Own CI/CD for data and models, environment strategy, monitoring, evaluation, governance controls, and cost management.
  • Collaborate with Information Sciences and Security to ensure AI experiences respect authorization boundaries, data access policies, and auditability requirements.
  • Establish safe GenAI patterns (e.g., RAG/agent architectures, evaluation harnesses, usage telemetry, guardrails) suitable for enterprise decision-making.

Cloud infrastructure engineering and reliability
  • Own cloud foundations, environment provisioning, logging/monitoring, and incident response.
  • Establish reliability practices: SLOs, on-call readiness (as appropriate), runbooks, operational dashboards, and post-incident learning.
  • Drive cost visibility and controls (FinOps) across platform and product workloads.

Key Deliverables (in context)
  • A production-ready enterprise data/AI platform with standardized deployment patterns, monitoring, and operational ownership.
  • A scalable data product factory: pipeline templates, quality/testing frameworks, metadata/lineage capture, and clear support processes.
  • A robust integration layer with reusable APIs, connectors, event patterns, and data contracts-aligned with Information Sciences' system ownership and interface standards.
  • A first wave of workflow applications that reduce manual work and connect systems + data products into end-to-end experiences, delivered in close partnership with Information Sciences.
  • A production baseline for DataOps / MLOps / LLMOps, including evaluation, monitoring, governance, and release processes.
  • A secure cloud engineering foundation with CI/CD, IaC, environment strategy, access patterns, and observability that accelerates all teams.

Required Skills, Experience, and Education:
  • 20+ years in software engineering with substantial leadership experience across platform engineering and product delivery.
  • Proven experience building and operatingenterprise data platforms and data engineering capabilities at scale.
  • Strong architecture background across cloud, distributed systems, integration patterns, and modern data stacks.
  • Demonstrated ability to ship user-facing digital products that integrate multiple systems and support real workflows.
  • Hands-on operational excellence: reliability, observability, incident response, security-by-design, and cost-aware engineering.
  • Track record of building high-performing teams, setting standards, and delivering through ambiguity.
  • Bachelor's degree in Computer Science/Engineering or equivalent experience.

Preferred Skills:
  • Advanced degree a plus.
    #LI-Hybrid #LI-GL1


The base pay salary range for this full-time position for candidates working onsite at our headquarters in Redwood City, CA is listed below. The range displayed on each job posting is intended to be the base pay salary range for an individual working onsite in Redwood City and will be adjusted for the local market a candidate is based in. Our base pay salary ranges are determined by role, level, and location. Individual base pay salary is determined by multiple factors, including job-related skills, experience, market dynamics, and relevant education or training.

Please note that base pay salary range is one part of the overall total rewards program at RevMed, which includes competitive cash compensation, robust equity awards, strong benefits, and significant learning and development opportunities.

Base Pay Salary Range

$352,000-$414,000 USD

We are aware of recent recruitment scams in which individuals or organizations falsely represent themselves as being affiliated with Revolution Medicines. These scams may appear as false job advertisements or unsolicited contacts through communication or chat platforms, email, phone, or text message.

Please note that Revolution Medicines does not extend unsolicited employment offers and will never ask candidates to provide financial information, purchase equipment, or pay fees as part of the hiring process. All legitimate communication from Revolution Medicines will come from an official @revmed.com email address.

If you believe you've been contacted by someone impersonating a Revolution Medicines recruiter, please report it to [email protected] so we can share these impersonations with our IT team for tracking and awareness.

About Revolution Medicines

Revolution Medicines is a clinical-stage precision oncology company focused on developing targeted therapies to inhibit elusive frontier targets within notorious growth and survival pathways, with particular emphasis on RAS and mTOR signaling pathways. The company's proprietary platform enables the discovery and development of small molecules that bind covalently to proteins. Revolution Medicines was founded in 2014 and is headquartered in South San Francisco, California.
Learn more about Revolution Medicines
Size
201 employees
Market Cap
$2.1 billion
Industry
Net Income
-$108.1 million
Revenue
$42.9 million
NASDAQ

Similar Jobs

More Jobs at Revolution Medicines

More Enterprise Technology Jobs

Find similar Vice President, Engineering - Data, Platforms & Digital Products jobs: