Deep learning for autonomous vehicles, from a system design perspective
Designing a suitable architecture for a changing and computationally demanding workload for autonomous driving (AD) is a difficult task. See why FPGAs are suitable for Autonomous driving applications.
Видео Deep learning for autonomous vehicles, from a system design perspective канала Kontron
Видео Deep learning for autonomous vehicles, from a system design perspective канала Kontron
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