Data Science Manager

Stripe Stripe · Fintech · Canada · 7112 Data Science

Stripe's MaaS Data Science team is looking for a Data Science Manager to lead teams focused on Embedded Finance (Capital, Issuing) and Connect. The role involves driving roadmap and priorities, collaborating with stakeholders, managing and mentoring data scientists, recruiting, and contributing to broader data science initiatives. The ideal candidate has a PhD/MS/BS in a quantitative field, at least 3 years of management experience leading data science or ML teams, and 10 years of overall data science experience. They should have expertise in designing metrics, guiding business decisions with data, and experience managing teams that have built and shipped ML systems and data products at scale.

What you'd actually do

  1. Drive the roadmap and priorities for your team, and work with many Stripe leaders across the company to enhance our ability to be data driven.
  2. Collaborate with stakeholders across the organization such as engineering, analytics, operations, finance, and marketing.
  3. Lead and manage processes to help the team do its best work and engage effectively with the rest of Stripe
  4. Manage a high-performing team of data scientists, supporting them to achieve a high level of technical excellence and advance in their careers.
  5. Recruit and onboard great data scientists, in collaboration with Stripe’s recruiting team

Skills

Required

  • PhD or MS or BS in a quantitative field (e.g., Statistics, Operations Research, Economics, Computer Science, Engineering)
  • at least 3 years of direct management experience leading data science or ML teams
  • 10 years of overall data science experience
  • demonstrated expertise in designing metrics and guiding business decisions with data
  • technical expertise to drive clarity with staff and senior scientists about architecture and strategic modeling decisions
  • managed teams that have built and shipped machine learning systems and data products at scale, and have hands-on experience with challenging problems
  • work very well cross-functionally, and are able to think rigorously and make hard decisions and tradeoffs
  • clear and persuasive communication skills in writing and verbally
  • thrive on a high level of autonomy and responsibility
  • foster a healthy, inclusive, challenging, and supportive work environment

Nice to have

  • comfortable working with geographically distributed teams
  • Expertise in time series forecasting, predictive modeling, or optimization
  • Expertise in data design and building scalable data architectures

What the JD emphasized

  • managed teams that have built and shipped machine learning systems and data products at scale