def backward()

in models/densenet_efficient_multi_gpu.py [0:0]


    def backward(self, weight, bias, input, grad_output):
        grad_input = input.new()
        grad_input.resize_as_(input)
        torch._C._cudnn_convolution_backward_data(
            grad_output, grad_input, weight, self._cudnn_info,
            cudnn.benchmark)

        grad_weight = weight.new().resize_as_(weight)
        torch._C._cudnn_convolution_backward_filter(grad_output, input, grad_weight, self._cudnn_info,
                                                    cudnn.benchmark)

        if bias is not None:
            grad_bias = bias.new().resize_as_(bias)
            torch._C._cudnn_convolution_backward_bias(grad_output, grad_bias, self._cudnn_info)
        else:
            grad_bias = None

        return grad_weight, grad_bias, grad_input