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Yuxi Yang
Intern Embedded Software Engineer specializing in autonomous driving and applied computer vision
iFLYTEKJohns Hopkins Universitynull1 Years ExperienceIntern LevelWorks Remote
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About
Autonomous driving engineer from iFLYTEK who shipped 5+ middleware modules for vehicles across three models, with deep experience in reliability, IPC performance, and real-world system hardening. Stands out for translating flaky production behavior into measurable signals—resolving 30+ faults, cutting backlog 39%, improving latency 20%, and supporting 500+ hours of road testing with 99%+ reliability.
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