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英伟达System Software Engineer, AI Performance and Efficiency Tools - New College Grad 2026

社招全职地点:上海状态:招聘

任职要求


• Pursuing a Bachelor's or higher degree in Computer Science or Computer Engineering.
• Strong programming skills with Python and C++.
• Familiar at least one GPU API among CUDA, DirectX and Vulkan.
• Proven understanding of solving low level software and hardware problems.

Ways to stand out fro…
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工作职责


• Build internal profiling/analysis tools for real world application perf/power analysis at system from small to large scale.
• Build infrastructure or services for data visualization/mining and management.
• Work with our users to build their perf/power models on top of our tools for next generation HW design.
包括英文材料
Python+
C+
CUDA+
DirectX+
Vulkan+
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