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What is edge machine learning (edge ML)?
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Officially supported CPU/GPU targets
macOS
Linux x86_64
NVIDIA Jetson Nano
Raspberry Pi 4
Renesas RZ/V2L
Texas Instruments SK-TDA4VM
Texas Instruments SK-AM62A-LP
Texas Instruments SK-AM68A
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