VP Data Scientist Lead – Product, Experience and Technology (pxt) Analytics Team

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Consumer & Community Banking

Lead a team to define and execute analytics strategy for measuring developer productivity, technology efficiency, and product value, focusing on software delivery and developer workflows, including the impact of generative AI solutions. Responsibilities include building measurement frameworks, dashboards, and models, partnering with leaders, and driving scalable analytics.

What you'd actually do

  1. Lead, manage, and develop a team of data scientists and analysts through goal setting, coaching, feedback, and performance management.
  2. Define and own measurement frameworks that quantify adoption, engagement, feature effectiveness, and value delivery across internal developer platforms and tools.
  3. Partner with senior product and engineering leaders to align analytics priorities with developer productivity and technology efficiency objectives.
  4. Analyze large, complex datasets (for example, pipeline events, activity logs, and usage telemetry) to identify trends and opportunities across the software development lifecycle.
  5. Direct the development of models that quantify the impact of workflow automation and generative AI tools on delivery speed and engineering outcomes.

Skills

Required

  • Bachelor’s degree in data science, statistics, computer science, or a related field.
  • Six or more years of experience in data science, product analytics, or a related analytics role.
  • Two or more years of people management experience, including coaching, performance management, and team development.
  • Demonstrated ability to define metrics and measurement frameworks for product adoption, engagement, and value.
  • Proven ability to structure ambiguous problems and deliver clear analytical approaches and outputs.
  • Strong proficiency in SQL and Python for analysis, and experience with data visualization tools used for executive reporting.
  • Experience working with modern data warehouse or lakehouse technologies.
  • Strong foundation in machine learning, statistical modeling, and data mining techniques.
  • Excellent communication and presentation skills, including ability to influence technical and non-technical senior stakeholders.
  • Demonstrated ability to manage competing priorities and deliver results in a fast-paced environment.

Nice to have

  • Master’s degree or PhD in a quantitative field.
  • Experience leading analytics for platform, infrastructure, or internal tooling products.
  • Familiarity with Agile delivery practices and common work management tools used to run sprints and track delivery.
  • Experience with analytics engineering or orchestration frameworks (for example, dbt or Airflow).
  • Working knowledge of software delivery lifecycle concepts and related operational metrics.
  • Familiarity with AI-assisted development tools used to support coding and delivery workflows.
  • Experience building or scaling an analytics team function, including defining standards and repeatable processes.

What the JD emphasized

  • define measurement frameworks in an area where standards are still evolving
  • impact of workflow automation and generative AI tools

Other signals

  • measurement frameworks
  • developer productivity
  • generative AI solutions
  • software development lifecycle
  • impact of workflow automation and generative AI tools