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EfficientRep:An Efficient Repvgg-style ConvNets with Hardware-aware Neural Network Design

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arxiv 2302.00386 v1 pith:PFSJ2KTY submitted 2023-02-01 cs.CV

EfficientRep:An Efficient Repvgg-style ConvNets with Hardware-aware Neural Network Design

classification cs.CV
keywords networkneuraldesignhardwareabilityarchitecturebandwidthcomputing
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a hardware-efficient architecture of convolutional neural network, which has a repvgg-like architecture. Flops or parameters are traditional metrics to evaluate the efficiency of networks which are not sensitive to hardware including computing ability and memory bandwidth. Thus, how to design a neural network to efficiently use the computing ability and memory bandwidth of hardware is a critical problem. This paper proposes a method how to design hardware-aware neural network. Based on this method, we designed EfficientRep series convolutional networks, which are high-computation hardware(e.g. GPU) friendly and applied in YOLOv6 object detection framework. YOLOv6 has published YOLOv6N/YOLOv6S/YOLOv6M/YOLOv6L models in v1 and v2 versions.

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