Vice President – Strategy Lead for Data Development Lifecycle (ddlc)

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Corporate Sector

This role focuses on defining and driving the adoption of a target-state Data Development Lifecycle (DDLC) for data and AI solutions within JPMorgan Chase's Chief Data Office. The goal is to enable safe, efficient, and scalable development, validation, release, and operation of data products by establishing standards, reference patterns, and user-centric ways of working. The role involves partnering with various stakeholders to remove execution friction, embed controls, and improve practitioner experience, balancing speed with control.

What you'd actually do

  1. Define and continuously improve the target-state data development lifecycle across intake, design, build, test, release, and run, including decision rights and exception management
  2. Partner with architecture and engineering leaders to establish reference architectures and reusable patterns that enable secure, controlled development and testing environments
  3. Drive roadmap, adoption, and outcomes for lifecycle-enabling platforms and toolchains by translating practitioner needs into clear product requirements, prioritization, and rollout plans
  4. Enable adoption through playbooks, training, communications, change champions, and practitioner feedback loops
  5. Embed and automate controls-by-design into the lifecycle in partnership with risk and control stakeholders, using automation-first approaches where possible

Skills

Required

  • At least eight years of experience in financial services, management consulting, and/or large-scale data or technology transformation
  • Strong technical fluency across data analytics, data science, data engineering, and modern data platforms, with the ability to translate between practitioners and senior stakeholders
  • Practical knowledge of data product concepts and modern distributed data patterns, including integration between software and data development lifecycles
  • Demonstrated experience driving cross-functional operating model or process change and scaling adoption across multiple organizations
  • Demonstrated ability to influence stakeholders and align diverse groups without direct authority
  • Strong written and verbal communication skills, including executive-level communication of complex technical topics
  • Experience improving lifecycle capabilities for data products, including continuous integration and delivery enablement, environment promotion strategies, automated testing approaches, release governance, and production support operating models
  • Experience partnering with engineering and platform teams to deliver measurable workflow improvements (for example: reduced onboarding time, faster release cadence, improved reliability, and increased control automation coverage)

Nice to have

  • Experience supporting data science and AI development workflows (for example: reproducibility, model validation, monitoring, and experimentation-to-production practices)
  • Experience designing or scaling control frameworks that improve compliance outcomes while reducing practitioner friction
  • Experience working in a large, highly regulated environment with complex technology landscapes
  • Experience developing reusable reference patterns and standards that improve developer experience and consistency

What the JD emphasized

  • strong governance
  • clear standards
  • scalable delivery practices
  • controls
  • practitioner experience
  • data products at scale
  • target-state Data Development Lifecycle
  • safe and efficient data and AI development at scale
  • controls-by-design
  • automation-first approaches
  • develop, validate, release, and operate data products
  • continuous integration and delivery enablement
  • environment promotion strategies
  • automated testing approaches
  • release governance
  • production support operating models
  • workflow improvements
  • reduced onboarding time
  • faster release cadence
  • improved reliability
  • increased control automation coverage