Data Scientist

Stripe Stripe · Fintech · Canada · 7112 Data Science

Data Scientist at Stripe to partner with Product, Finance, Payments, Security, Risk, Growth and Go-to-Market teams. Will optimize systems and leverage data using machine learning, statistical modeling, causal inference, optimization, and experimentation to make strategic business decisions and drive impact. Focus on building models and running experiments.

What you'd actually do

  1. You’ll work closely with a specific part of the business, playing a crucial role in optimizing our systems and leveraging data to make strategic business decisions.
  2. As Data Scientists as Stripe, it’s our mission to ensure that the company strategy, products, and user interactions make smart use of our rich data, using techniques like machine learning, statistical modeling, causal inference, optimization, experimentation, and all forms of analytics.
  3. partner with the Product, Finance, Payments, Security, Risk, Growth and Go-to-Market teams.

Skills

Required

  • PhD + 3 years, MS/MA + 6 years or BS/BA + 8 years of data science/quantitative modeling experience
  • Proficiency in SQL and a computing language such as Python or R
  • Strong knowledge and hands-on experience in several of the following areas: machine learning, statistics, optimization, product analytics, causal inference, and/or experimentation
  • Experience in working with cross-functional teams to deliver results
  • Ability to communicate results clearly and a focus on driving impact
  • A demonstrated ability to manage and deliver on multiple projects with a high attention to detail
  • Solid business acumen and experience in synthesizing complex analyses into actionable recommendations
  • A builder's mindset with a willingness to question assumptions and conventional wisdom

Nice to have

  • Experience deploying models in production and adjusting model thresholds to improve performance
  • Experience designing, running, and analyzing complex experiments or leveraging causal inference designs
  • Experience with distributed tools such as Spark, Hadoop, etc.
  • A PhD or MS in a quantitative field (e.g., Statistics, Engineering, Mathematics, Economics, Quantitative Finance, Sciences, Operations Research)

What the JD emphasized

  • machine learning
  • statistical modeling
  • causal inference
  • optimization
  • experimentation

Other signals

  • building machine learning and statistical models
  • running experiments
  • optimizing our systems
  • leveraging data to make strategic business decisions
  • machine learning, statistical modeling, causal inference, optimization, experimentation, and all forms of analytics