Help expand and enhance Zoox's safety risk assessment framework while collaborating with cross-functional teams to ensure safety in pioneering autonomous vehicle technology.
Lead efforts to improve the fidelity of Zoox’s safety and progress performance metrics
Apply distributed computing algorithms to efficiently analyze petabytes of urban driving and vehicle testing data
Develop and standardize best practices of safety risk assessment across the company
Develop and automate the tooling of the the risk assessment framework
Contribute to the improvement and evolution of the Safety Case of Zoox technology, in close collaboration with cross-functional teams including Software, Hardware, Vehicle Development, Fleet Operations, Safety Strategy and Operations, Legal, etc.
M.S. or higher degree in an Engineering or Science discipline with a strong focus on Statistics, Probability Theory, or Data Science
Proficiency in quantitative analysis/modeling tools
Proficient with SQL / Spark / Python for interfacing with Zoox’s urban driving and simulation data
At least 3 years of relevant work experience in understanding and quantifying safety risks
Collaborative team player with strong written and in-person communication skills
Ph.D. in an Engineering or Science discipline with a strong Data Science or Statistics focus
Publications in the field of quantitative risk assessment for safety engineering
Experience with human behavior data
Zoox is building a fully autonomous vehicle fleet from the ground up, coupled with the ecosystem necessary to launch this technology into urban environments. By integrating robotics, machine learning, and innovative design, Zoox is paving the way for a new era of mobility-as-a-service.
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