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  • 【深夜福利】Caffe 添加自己定义 Layer 及其 ProtoBuffer 參数

    在飞驰的列车上,无法入眠。外面阴雨绵绵,思绪被拉扯到天边。


    翻看之前聊天,想起还欠一个读者一篇博客。


    于是花了点时间整理一下之前学习 Caffe 时添加自己定义 Layer 及自己定义 ProtoBuffer 參数的简单例程,希望对刚開始学习的人有借鉴意义。


    博客内容基于新书《深度学习:21 天实战 Caffe》。书中课后习题答案欢迎读者留言讨论。

    以下进入正文。


    在使用 Caffe 过程中常常会有这种需求:已有 Layer 不符合我的应用场景;我须要这样这种功能。原版代码没有实现。或者已经实现但效率太低。我有更好的实现。


    方案一:简单粗暴的解法——偷天换日


    假设你对 ConvolutionLayer 的实现不惬意,那就直接改这两个文件:$CAFFE_ROOT/include/caffe/layers/conv_layer.hpp 和 $CAFFE_ROOT/src/caffe/layers/conv_layer.cpp 或 conv_layer.cu 。将 im2col + gemm 替换为你自己的实现(比方基于 winograd 算法的实现)。

    长处:高速迭代,不须要对 Caffe 框架有过多了解,糙快狠准。

    缺点:代码难维护,不能 merge 到 caffe master branch,easy给使用代码的人带来困惑(效果和 #define TRUE false 几乎相同)。


    方案二:略微温和的解法——千人千面

    和方案一相似,仅仅是通过预编译宏来确定使用哪种实现。

    比如能够保留 ConvolutionLayer 默认实现,同一时候在代码中添加例如以下段:

    #ifdef SWITCH_MY_IMPLEMENTATION
    // 你的实现代码
    #else
    // 默认代码
    #endif

    这样能够在须要使用该 Layer 的代码中,添加宏定义:

    #define SWITCH_MY_IMPLEMENTATION

    就能够使用你的实现。而没有定义该宏的代码,仍然使用原版实现。


    长处:能够在新旧实现代码之间灵活切换;

    缺点:每次切换须要又一次编译。


    方案三:优雅转身——山路十八弯

    同一个功能的 Layer 有不同实现。希望能灵活切换又不须要又一次编译代码,该怎样实现?

    这时不得不使用 ProtoBuffer 工具了。

    首先。要把你的实现,要像正常的 Layer 类一样,分解为声明部分和实现部分。分别放在 .hpp 与 .cpp、.cu 中。Layer 名称要起一个能差别于原版实现的新名称。.hpp 文件置于 $CAFFE_ROOT/include/caffe/layers/,而 .cpp 和 .cu 置于 $CAFFE_ROOT/src/caffe/layers/,这样你在 $CAFFE_ROOT 下运行 make 编译时。会自己主动将这些文件添加构建过程,省去了手动设置编译选项的繁琐流程。

    其次,在 $CAFFE_ROOT/src/caffe/proto/caffe.proto 中,添加新 LayerParameter 选项,这样你在编写 train.prototxt 或者 test.prototxt 或者 deploy.prototxt 时就能把新 Layer 的描写叙述写进去,便于改动网络结构和替换其它同样功能的 Layer 了。

    最后也是最easy忽视的一点,在 Layer 工厂注冊新 Layer 加工函数,不然在你运行过程中可能会报例如以下错误:

    F1002 01:51:22.656038 1954701312 layer_factory.hpp:81] Check failed: registry.count(type) == 1 (0 vs. 1) Unknown layer type: AllPass (known types: AbsVal, Accuracy, ArgMax, BNLL, BatchNorm, BatchReindex, Bias, Concat, ContrastiveLoss, Convolution, Crop, Data, Deconvolution, Dropout, DummyData, ELU, Eltwise, Embed, EuclideanLoss, Exp, Filter, Flatten, HDF5Data, HDF5Output, HingeLoss, Im2col, ImageData, InfogainLoss, InnerProduct, Input, LRN, Log, MVN, MemoryData, MultinomialLogisticLoss, PReLU, Pooling, Power, ReLU, Reduction, Reshape, SPP, Scale, Sigmoid, SigmoidCrossEntropyLoss, Silence, Slice, Softmax, SoftmaxWithLoss, Split, TanH, Threshold, Tile, WindowData)
    *** Check failure stack trace: ***
        @        0x10243154e  google::LogMessage::Fail()
        @        0x102430c53  google::LogMessage::SendToLog()
        @        0x1024311a9  google::LogMessage::Flush()
        @        0x1024344d7  google::LogMessageFatal::~LogMessageFatal()
        @        0x10243183b  google::LogMessageFatal::~LogMessageFatal()
        @        0x102215356  caffe::LayerRegistry<>::CreateLayer()
        @        0x102233ccf  caffe::Net<>::Init()
        @        0x102235996  caffe::Net<>::Net()
        @        0x102118d8b  time()
        @        0x102119c9a  main
        @     0x7fff851285ad  start
        @                0x4  (unknown)
    Abort trap: 6



    以下给出一个实际案例。走一遍方案三的流程。

    这里我们实现一个新 Layer,名称为 AllPassLayer。顾名思义就是全通 Layer,“全通”借鉴于信号处理中的全通滤波器,将信号无失真地从输入转到输出。

    尽管这个 Layer 并没有什么卵用,可是在这个基础上添加你的处理是很easy的事情。

    另外也是出于实验考虑。全通层的 Forward/Backward 函数很easy不须要读者有不论什么高等数学和求导的背景知识。读者使用该层时能够插入到不论什么已有网络中,而不会影响训练、预測的准确性。


    首先看头文件:

    #ifndef CAFFE_ALL_PASS_LAYER_HPP_
    #define CAFFE_ALL_PASS_LAYER_HPP_
    
    #include <vector>
    
    #include "caffe/blob.hpp"
    #include "caffe/layer.hpp"
    #include "caffe/proto/caffe.pb.h"
    
    #include "caffe/layers/neuron_layer.hpp"
    
    namespace caffe {
    template <typename Dtype>
    class AllPassLayer : public NeuronLayer<Dtype> {
     public:
      explicit AllPassLayer(const LayerParameter& param)
          : NeuronLayer<Dtype>(param) {}
    
      virtual inline const char* type() const { return "AllPass"; }
    
     protected:
    
      virtual void Forward_cpu(const vector<Blob<Dtype>*>& bottom,
          const vector<Blob<Dtype>*>& top);
      virtual void Forward_gpu(const vector<Blob<Dtype>*>& bottom,
          const vector<Blob<Dtype>*>& top);
      virtual void Backward_cpu(const vector<Blob<Dtype>*>& top,
          const vector<bool>& propagate_down, const vector<Blob<Dtype>*>& bottom);
      virtual void Backward_gpu(const vector<Blob<Dtype>*>& top,
          const vector<bool>& propagate_down, const vector<Blob<Dtype>*>& bottom);
    };
    
    }  // namespace caffe
    
    #endif  // CAFFE_ALL_PASS_LAYER_HPP_


    再看源文件:

    #include <algorithm>
    #include <vector>
    
    #include "caffe/layers/all_pass_layer.hpp"
    
    #include <iostream>
    using namespace std;
    #define DEBUG_AP(str) cout<<str<<endl
    namespace caffe {
    
    template <typename Dtype>
    void AllPassLayer<Dtype>::Forward_cpu(const vector<Blob<Dtype>*>& bottom,
        const vector<Blob<Dtype>*>& top) {
      const Dtype* bottom_data = bottom[0]->cpu_data();
      Dtype* top_data = top[0]->mutable_cpu_data();
      const int count = bottom[0]->count();
      for (int i = 0; i < count; ++i) {
        top_data[i] = bottom_data[i];
      }
      DEBUG_AP("Here is All Pass Layer, forwarding.");
      DEBUG_AP(this->layer_param_.all_pass_param().key());
    }
    
    template <typename Dtype>
    void AllPassLayer<Dtype>::Backward_cpu(const vector<Blob<Dtype>*>& top,
        const vector<bool>& propagate_down,
        const vector<Blob<Dtype>*>& bottom) {
      if (propagate_down[0]) {
        const Dtype* bottom_data = bottom[0]->cpu_data();
        const Dtype* top_diff = top[0]->cpu_diff();
        Dtype* bottom_diff = bottom[0]->mutable_cpu_diff();
        const int count = bottom[0]->count();
        for (int i = 0; i < count; ++i) {
          bottom_diff[i] = top_diff[i];
        }
      }
      DEBUG_AP("Here is All Pass Layer, backwarding.");
      DEBUG_AP(this->layer_param_.all_pass_param().key());
    }
    
    
    #ifdef CPU_ONLY
    STUB_GPU(AllPassLayer);
    #endif
    
    INSTANTIATE_CLASS(AllPassLayer);
    REGISTER_LAYER_CLASS(AllPass);
    }  // namespace caffe
    
    


    时间考虑,我没有实现 GPU 模式的 forward、backward。故本文例程仅支持 CPU_ONLY 模式。


    编辑 caffe.proto。找到 LayerParameter 描写叙述,添加一项:

    message LayerParameter {
      optional string name = 1; // the layer name
      optional string type = 2; // the layer type
      repeated string bottom = 3; // the name of each bottom blob
      repeated string top = 4; // the name of each top blob
    
      // The train / test phase for computation.
      optional Phase phase = 10;
    
      // The amount of weight to assign each top blob in the objective.
      // Each layer assigns a default value, usually of either 0 or 1,
      // to each top blob.
      repeated float loss_weight = 5;
    
      // Specifies training parameters (multipliers on global learning constants,
      // and the name and other settings used for weight sharing).
      repeated ParamSpec param = 6;
    
      // The blobs containing the numeric parameters of the layer.
      repeated BlobProto blobs = 7;
    
      // Specifies on which bottoms the backpropagation should be skipped.
      // The size must be either 0 or equal to the number of bottoms.
      repeated bool propagate_down = 11;
    
      // Rules controlling whether and when a layer is included in the network,
      // based on the current NetState.  You may specify a non-zero number of rules
      // to include OR exclude, but not both.  If no include or exclude rules are
      // specified, the layer is always included.  If the current NetState meets
      // ANY (i.e., one or more) of the specified rules, the layer is
      // included/excluded.
      repeated NetStateRule include = 8;
      repeated NetStateRule exclude = 9;
    
      // Parameters for data pre-processing.
      optional TransformationParameter transform_param = 100;
    
      // Parameters shared by loss layers.
      optional LossParameter loss_param = 101;
    
      // Layer type-specific parameters.
      //
      // Note: certain layers may have more than one computational engine
      // for their implementation. These layers include an Engine type and
      // engine parameter for selecting the implementation.
      // The default for the engine is set by the ENGINE switch at compile-time.
      optional AccuracyParameter accuracy_param = 102;
      optional ArgMaxParameter argmax_param = 103;
      optional BatchNormParameter batch_norm_param = 139;
      optional BiasParameter bias_param = 141;
      optional ConcatParameter concat_param = 104;
      optional ContrastiveLossParameter contrastive_loss_param = 105;
      optional ConvolutionParameter convolution_param = 106;
      optional CropParameter crop_param = 144;
      optional DataParameter data_param = 107;
      optional DropoutParameter dropout_param = 108;
      optional DummyDataParameter dummy_data_param = 109;
      optional EltwiseParameter eltwise_param = 110;
      optional ELUParameter elu_param = 140;
      optional EmbedParameter embed_param = 137;
      optional ExpParameter exp_param = 111;
      optional FlattenParameter flatten_param = 135;
      optional HDF5DataParameter hdf5_data_param = 112;
      optional HDF5OutputParameter hdf5_output_param = 113;
      optional HingeLossParameter hinge_loss_param = 114;
      optional ImageDataParameter image_data_param = 115;
      optional InfogainLossParameter infogain_loss_param = 116;
      optional InnerProductParameter inner_product_param = 117;
      optional InputParameter input_param = 143;
      optional LogParameter log_param = 134;
      optional LRNParameter lrn_param = 118;
      optional MemoryDataParameter memory_data_param = 119;
      optional MVNParameter mvn_param = 120;
      optional PoolingParameter pooling_param = 121;
      optional PowerParameter power_param = 122;
      optional PReLUParameter prelu_param = 131;
      optional PythonParameter python_param = 130;
      optional ReductionParameter reduction_param = 136;
      optional ReLUParameter relu_param = 123;
      optional ReshapeParameter reshape_param = 133;
      optional ScaleParameter scale_param = 142;
      optional SigmoidParameter sigmoid_param = 124;
      optional SoftmaxParameter softmax_param = 125;
      optional SPPParameter spp_param = 132;
      optional SliceParameter slice_param = 126;
      optional TanHParameter tanh_param = 127;
      optional ThresholdParameter threshold_param = 128;
      optional TileParameter tile_param = 138;
      optional WindowDataParameter window_data_param = 129;
      optional AllPassParameter all_pass_param = 155;
    }

    注意新增数字不要和曾经的 Layer 数字反复。


    仍然在 caffe.proto 中,添加 AllPassParameter 声明,位置随意。我设定了一个參数,能够用于从 prototxt 中读取预设值。


    message AllPassParameter {
      optional float key = 1 [default = 0];
    }

    在 cpp 代码中,通过

    this->layer_param_.all_pass_param().key()
    这句来读取 prototxt 预设值。

    在 $CAFFE_ROOT 下运行 make clean,然后又一次 make all。要想一次编译成功,务必规范代码,对常见错误保持敏锐的嗅觉并加以避免。


    万事具备,仅仅欠 prototxt 了。


    不难,我们写个最简单的 deploy.prototxt,不须要 data layer 和 softmax layer。just for fun。

    name: "AllPassTest"
    layer {
      name: "data"
      type: "Input"
      top: "data"
      input_param { shape: { dim: 10 dim: 3 dim: 227 dim: 227 } }
    }
    layer {
      name: "ap"
      type: "AllPass"
      bottom: "data"
      top: "conv1"
      all_pass_param {
        key: 12.88
      }
    }


    注意,这里的 type :后面写的内容,应该是你在 .hpp 中声明的新类 class name 去掉 Layer 后的名称。

    上面设定了 key 这个參数的预设值为 12.88。嗯。你想到了刘翔对不正确。


    为了检验该 Layer 能否正常创建和运行  forward, backward,我们运行 caffe time 命令并指定刚刚实现的 prototxt :

    $ ./build/tools/caffe.bin time -model deploy.prototxt
    I1002 02:03:41.667682 1954701312 caffe.cpp:312] Use CPU.
    I1002 02:03:41.671360 1954701312 net.cpp:49] Initializing net from parameters:
    name: "AllPassTest"
    state {
      phase: TRAIN
    }
    layer {
      name: "data"
      type: "Input"
      top: "data"
      input_param {
        shape {
          dim: 10
          dim: 3
          dim: 227
          dim: 227
        }
      }
    }
    layer {
      name: "ap"
      type: "AllPass"
      bottom: "data"
      top: "conv1"
      all_pass_param {
        key: 12.88
      }
    }
    I1002 02:03:41.671463 1954701312 layer_factory.hpp:77] Creating layer data
    I1002 02:03:41.671484 1954701312 net.cpp:91] Creating Layer data
    I1002 02:03:41.671499 1954701312 net.cpp:399] data -> data
    I1002 02:03:41.671555 1954701312 net.cpp:141] Setting up data
    I1002 02:03:41.671566 1954701312 net.cpp:148] Top shape: 10 3 227 227 (1545870)
    I1002 02:03:41.671592 1954701312 net.cpp:156] Memory required for data: 6183480
    I1002 02:03:41.671605 1954701312 layer_factory.hpp:77] Creating layer ap
    I1002 02:03:41.671620 1954701312 net.cpp:91] Creating Layer ap
    I1002 02:03:41.671630 1954701312 net.cpp:425] ap <- data
    I1002 02:03:41.671644 1954701312 net.cpp:399] ap -> conv1
    I1002 02:03:41.671663 1954701312 net.cpp:141] Setting up ap
    I1002 02:03:41.671674 1954701312 net.cpp:148] Top shape: 10 3 227 227 (1545870)
    I1002 02:03:41.671685 1954701312 net.cpp:156] Memory required for data: 12366960
    I1002 02:03:41.671695 1954701312 net.cpp:219] ap does not need backward computation.
    I1002 02:03:41.671705 1954701312 net.cpp:219] data does not need backward computation.
    I1002 02:03:41.671710 1954701312 net.cpp:261] This network produces output conv1
    I1002 02:03:41.671720 1954701312 net.cpp:274] Network initialization done.
    I1002 02:03:41.671746 1954701312 caffe.cpp:320] Performing Forward
    Here is All Pass Layer, forwarding.
    12.88
    I1002 02:03:41.679689 1954701312 caffe.cpp:325] Initial loss: 0
    I1002 02:03:41.679714 1954701312 caffe.cpp:326] Performing Backward
    I1002 02:03:41.679738 1954701312 caffe.cpp:334] *** Benchmark begins ***
    I1002 02:03:41.679746 1954701312 caffe.cpp:335] Testing for 50 iterations.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.681139 1954701312 caffe.cpp:363] Iteration: 1 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.682394 1954701312 caffe.cpp:363] Iteration: 2 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.683653 1954701312 caffe.cpp:363] Iteration: 3 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.685096 1954701312 caffe.cpp:363] Iteration: 4 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.686326 1954701312 caffe.cpp:363] Iteration: 5 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.687713 1954701312 caffe.cpp:363] Iteration: 6 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.689038 1954701312 caffe.cpp:363] Iteration: 7 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.690251 1954701312 caffe.cpp:363] Iteration: 8 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.691548 1954701312 caffe.cpp:363] Iteration: 9 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.692805 1954701312 caffe.cpp:363] Iteration: 10 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.694056 1954701312 caffe.cpp:363] Iteration: 11 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.695264 1954701312 caffe.cpp:363] Iteration: 12 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.696761 1954701312 caffe.cpp:363] Iteration: 13 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.698225 1954701312 caffe.cpp:363] Iteration: 14 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.699653 1954701312 caffe.cpp:363] Iteration: 15 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.700945 1954701312 caffe.cpp:363] Iteration: 16 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.702761 1954701312 caffe.cpp:363] Iteration: 17 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.704056 1954701312 caffe.cpp:363] Iteration: 18 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.706471 1954701312 caffe.cpp:363] Iteration: 19 forward-backward time: 2 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.708784 1954701312 caffe.cpp:363] Iteration: 20 forward-backward time: 2 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.710043 1954701312 caffe.cpp:363] Iteration: 21 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.711272 1954701312 caffe.cpp:363] Iteration: 22 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.712528 1954701312 caffe.cpp:363] Iteration: 23 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.713964 1954701312 caffe.cpp:363] Iteration: 24 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.715248 1954701312 caffe.cpp:363] Iteration: 25 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.716487 1954701312 caffe.cpp:363] Iteration: 26 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.717725 1954701312 caffe.cpp:363] Iteration: 27 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.718962 1954701312 caffe.cpp:363] Iteration: 28 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.720289 1954701312 caffe.cpp:363] Iteration: 29 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.721837 1954701312 caffe.cpp:363] Iteration: 30 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.723042 1954701312 caffe.cpp:363] Iteration: 31 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.724261 1954701312 caffe.cpp:363] Iteration: 32 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.725587 1954701312 caffe.cpp:363] Iteration: 33 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.726771 1954701312 caffe.cpp:363] Iteration: 34 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.728013 1954701312 caffe.cpp:363] Iteration: 35 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.729249 1954701312 caffe.cpp:363] Iteration: 36 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.730716 1954701312 caffe.cpp:363] Iteration: 37 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.732275 1954701312 caffe.cpp:363] Iteration: 38 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.733809 1954701312 caffe.cpp:363] Iteration: 39 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.735049 1954701312 caffe.cpp:363] Iteration: 40 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.737144 1954701312 caffe.cpp:363] Iteration: 41 forward-backward time: 2 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.739090 1954701312 caffe.cpp:363] Iteration: 42 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.741575 1954701312 caffe.cpp:363] Iteration: 43 forward-backward time: 2 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.743450 1954701312 caffe.cpp:363] Iteration: 44 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.744732 1954701312 caffe.cpp:363] Iteration: 45 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.745970 1954701312 caffe.cpp:363] Iteration: 46 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.747185 1954701312 caffe.cpp:363] Iteration: 47 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.748430 1954701312 caffe.cpp:363] Iteration: 48 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.749826 1954701312 caffe.cpp:363] Iteration: 49 forward-backward time: 1 ms.
    Here is All Pass Layer, forwarding.
    12.88
    Here is All Pass Layer, backwarding.
    12.88
    I1002 02:03:41.751124 1954701312 caffe.cpp:363] Iteration: 50 forward-backward time: 1 ms.
    I1002 02:03:41.751147 1954701312 caffe.cpp:366] Average time per layer:
    I1002 02:03:41.751157 1954701312 caffe.cpp:369]       data	forward: 0.00108 ms.
    I1002 02:03:41.751183 1954701312 caffe.cpp:372]       data	backward: 0.001 ms.
    I1002 02:03:41.751194 1954701312 caffe.cpp:369]         ap	forward: 1.37884 ms.
    I1002 02:03:41.751205 1954701312 caffe.cpp:372]         ap	backward: 0.01156 ms.
    I1002 02:03:41.751220 1954701312 caffe.cpp:377] Average Forward pass: 1.38646 ms.
    I1002 02:03:41.751231 1954701312 caffe.cpp:379] Average Backward pass: 0.0144 ms.
    I1002 02:03:41.751240 1954701312 caffe.cpp:381] Average Forward-Backward: 1.42 ms.
    I1002 02:03:41.751250 1954701312 caffe.cpp:383] Total Time: 71 ms.
    I1002 02:03:41.751260 1954701312 caffe.cpp:384] *** Benchmark ends ***

    可见该 Layer 能够正常创建、载入预设參数、运行 forward、backward 函数。

    实际上对于算法 Layer。还要写 Test Case 保证功能正确。因为我们选择了极为简单的全通 Layer,故这一步能够省去。我这里偷点懒,您省点阅读时间。


    感谢各位读者提出的宝贵建议和意见,这些都是无价的有监督学习数据集,是激励我不断 update 的 back prop 源动力。

    祝各位同学国庆快乐!

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  • 原文地址:https://www.cnblogs.com/zhchoutai/p/8848085.html
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