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Comment: add inference accuracy

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The model is from gluon model zoo by pre-trained parameters. The top1 and top5 accuracy are verified by MKL-DNN backend.

Inference Accuracy Comparison
AliasNetwork# ParametersGPU (with cuDNN) BackendCPU (without MKL-DNN)CPU (with MKL-DNN) Backend
 top1top5 top1 top5 top1 top5
alexnetAlexNet61,100,840     0.5631250.78992190.5631250.789921880.5631250.7899219 
densenet121DenseNet-1218,062,504     0.742031250.91929690.742031250.919296880.74203130.9192969 
densenet161DenseNet-16128,900,936     0.771953130.93390630.771953130.933906250.77195310.9339063 
densenet169DenseNet-16914,307,880     0.757109380.92828130.757109380.928281250.75710940.9282813 
densenet201DenseNet-20120,242,984     0.76906250.93093750.76906250.93093750.76906250.9309375 
inceptionv3Inception V3 299x29923,869,000     0.776093750.93664060.776093750.936640630.77609380.9366406 
mobilenet0.25MobileNet 0.25475,544     0.510390630.7568750.510390630.7568750.51039060.756875 
mobilenet0.5MobileNet 0.51,342,536     0.618515630.83789060.618515630.837890630.61851560.8378906 
mobilenet0.75MobileNet 0.752,601,976     0.665468750.87070310.665468750.870703130.66546880.8707031 
mobilenet1.0MobileNet 1.04,253,864     0.70093750.89109380.70093750.891093750.70093750.8910938 
mobilenetv2_1.0MobileNetV2 1.03,539,136     0.699765630.89281250.699765630.89281250.69976560.8928125 
mobilenetv2_0.75MobileNetV2 0.752,653,864     0.682109380.88007810.682109380.880078130.68210940.8800781 
mobilenetv2_0.5MobileNetV2 0.51,983,104     0.644531250.84929690.644531250.849296880.64453130.8492969 
mobilenetv2_0.25MobileNetV2 0.251,526,856     0.508906250.74546880.508906250.745468750.50890630.7454688 
resnet18_v1ResNet-18 V111,699,112     0.7081250.89453130.7081250.894531250.7081250.8945313 
resnet34_v1ResNet-34 V121,814,696     0.739609380.91609380.739609380.916093750.73960940.9160938 
resnet50_v1ResNet-50 V125,629,032     0.7606250.93046880.7606250.930468750.7606250.9304688 
resnet101_v1ResNet-101 V144,695,144     0.7793750.93617190.7793750.936171880.7793750.9361719 
resnet152_v1ResNet-152 V160,404,072     0.783203130.93867190.783203130.938671880.78320310.9386719 
resnet18_v2ResNet-18 V211,695,796     0.710468750.89671880.710468750.896718750.71046880.8967188 
resnet34_v2ResNet-34 V221,811,380     0.740859380.91578130.740859380.915781250.74085940.9157813 
resnet50_v2ResNet-50 V225,595,060     0.76750.9318750.76750.9318750.76750.931875 
resnet101_v2ResNet-101 V244,639,412     0.781250.94015630.781250.940156250.781250.9401563 
resnet152_v2ResNet-152 V260,329,140     0.785546880.94140630.785546880.941406250.78554690.9414063 
squeezenet1.0SqueezeNet 1.01,248,424     0.572734380.79554690.572734380.795546880.57273440.7955469 
squeezenet1.1SqueezeNet 1.11,235,496     0.570234380.79601560.570234380.796015630.57023440.7960156 
vgg11VGG-11132,863,336     0.6706250.87531250.6706250.87531250.6706250.8753125 
vgg13VGG-13133,047,848     0.681328130.87984380.681328130.879843750.68132810.8798438 
vgg16VGG-16138,357,544     0.7206250.90585940.7206250.905859380.7206250.9058594 
vgg19VGG-19143,667,240     0.73468750.910.73468750.910.73468750.91 
vgg11_bnVGG-11 with batch normalization132,874,344     0.689531250.88882810.689531250.888828130.68953130.8888281 
vgg13_bnVGG-13 with batch normalization133,059,624     0.698359380.88953130.698359380.889531250.69835940.8895313 
vgg16_bnVGG-16 with batch normalization138,374,440     0.722265630.90390630.722265630.903906250.72226560.9039063 
vgg19_bnVGG-19 with batch normalization143,689,256     0.729921880.90992190.729921880.909921880.72992190.9099219