OpenAI· Data Science· Seattle
Data Scientist, Core Experimentation
Comp$293K – $325K
Classified Tasks (20)
Automate 5%Augment 60%Human-Only 35%
Automate (1)
Fully handled by AI agents
Detect sample ratio mismatches in experiments
analytical
Augment (12)
AI assists, human decides
Design and improve experimentation methodologies used across product and research teams
analytical
Build pragmatic solutions to real-world experimentation challenges balancing rigor with operational simplicity
technical
Detect and prevent bias, logging issues, and data quality failures to improve reliability of experiment results
analytical
Develop scalable analytical systems and pipelines in Python and distributed compute environments
technical
Translate advanced statistical concepts into practical systems and product experiences
communication
Implement variance reduction techniques (e.g., CUPED) for experiments
technical
Mitigate bias in experiment measurement and analysis
analytical
Design and refine experiment metrics
analytical
Develop and run triggered analysis for experiments
operational
Analyze heterogeneous treatment effects across user segments
analytical
Apply and operationalize sequential testing methods
technical
Build, scale, or operate experimentation platform infrastructure and tooling at production scale
technical
Human-Only (7)
Requires human judgment
Drive the statistical direction and technical strategy for OpenAI’s experimentation platform
leadership
Lead the evolution of OpenAI’s core experimentation platform
leadership
Partner with engineers and product teams to improve experiment design, metric quality, and decision-making practices
communication
Lead investigations into complex experimentation anomalies and measurement failures
analytical
Establish best practices for experimentation governance, interpretation, and statistical correctness
leadership
Mentor other data scientists and raise the overall technical bar for experimentation and causal inference
leadership
Design experimentation approaches suitable for complex ML systems
analytical
Job description
Data Scientist, Core Experimentation | OpenAI Careers ## Data Scientist, Core Experimentation Data Science - Seattle Apply now(opens in a new window) **About the Team** The Statsig team at OpenAI builds and operates the experimentation platform that powers product development, measurement, and decision-making across the company. We partner closely with product, engineering, and infrastructure teams to ensure experiments are trustworthy, statistically rigorous, and scalable to the needs of frontier AI products. Our mission is to help teams make better decisions through reliable experimentation. We care deeply about statistical correctness, pragmatic solutions, and building systems that researchers and engineers can trust at massive scale. The team operates at the intersection of experimentation methodology, data infrastructure, causal inference, and product analytics. We are looking for experienced experimentation experts who want to shape the future of experimentation in the AI era. **About the Role** We are hiring a Staff-level Data Scientist to help lead the evolution of OpenAI’s core experimentation platform. This role is focused on improving the statistical rigor, reliability, and practical usability of experimentation across the company. You’ll work on some of the hardest problems in online experimentation: sample ratio mismatch detection, variance reduction, bias mitigation, metric design, triggered analysis, heterogeneous treatment effects, sequential testing, and experimentation in complex ML systems. You’ll also help translate advanced statistical concepts into pragmatic systems and product experiences that teams can actually use. This is a highly technical individual contributor role with significant influence across methodology, platform architecture, and experimentation best practices. The ideal candidate combines deep statistical expertise with strong systems intuition and hands-on experience building or operating experimentation platforms at scale. **In this role, you will:** * Drive the statistical direction and technical strategy for OpenAI’s experimentation platform * Design and improve experimentation methodologies used across product and research teams * Build pragmatic solutions to real-world experimentation challenges, balancing rigor with operational simplicity * Improve the reliability and trustworthiness of experiment results, including detection and prevention of bias, logging issues, and data quality failures * Developscalable analytical systems and pipelines in Python and distributed compute environments * Partner with engineers and product teams to improve experiment design, metric quality, and decision-making practices * Lead investigations into complex experimentation anomalies and measurement failures * Establish best practices for experimentation governance, interpretation, and statistical correctness * Mentor other data scientists and raising the overall technical bar for experimentation and causal inference **You might thrive in this role if you have:** * Experience building, scaling, or operating experimentation platforms at a large technology company * Deep expertise in statistics, causal inference, and online experimentation methodology * Strong understanding of practical experimentation challenges in production systems * Experience with areas such as variance reduction, CUPED, sequential testing, SRM detection, metric design, or heterogeneous effects * Strong coding and systems skills in Python and large-scale data processing frameworks (e.g. Spark) * Experience designing analytical data models and scalable experimentation pipelines * Ability to communicate complex statistical concepts clearly to technical and non-technical audiences * Track record of influencing technical strategy through hands-on technical leadership * Experience in large-scale product experimentation, ML experimentation, ranking systems, marketplace systems