test_LayerGrad.cpp 79.5 KB
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/* Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserve.
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Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at

    http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License. */

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#ifdef PADDLE_WITH_CUDA
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#include <cudnn.h>
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#endif
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#include <gtest/gtest.h>
#include <string>
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#include <vector>
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#include "ModelConfig.pb.h"
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#include "paddle/gserver/layers/DataLayer.h"
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#include "paddle/math/MathUtils.h"
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#include "LayerGradUtil.h"
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#include "paddle/testing/TestUtil.h"
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using namespace paddle;  // NOLINT
using namespace std;     // NOLINT

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DECLARE_bool(use_gpu);
DECLARE_int32(gpu_id);
DECLARE_double(checkgrad_eps);
DECLARE_bool(thread_local_rand_use_global_seed);
DECLARE_bool(prev_batch_state);
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TEST(Operator, dot_mul) {
  TestConfig config;
  config.layerConfig.set_size(10);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  OperatorConfig& operatorConf = *config.layerConfig.add_operator_confs();
  operatorConf.set_type("dot_mul");
  operatorConf.set_dotmul_scale(-1);

  testOperatorGrad(config, operatorConf, 100, false, false);
}

TEST(Projection, context) {
  for (auto contextStart : {-5, -3, -1, 0, 3}) {
    for (auto contextLength : {1, 2, 5, 7}) {
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      for (auto batchSize : {1, 2, 5, 20}) {
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        for (auto trainablePadding : {false, true}) {
          LOG(INFO) << " contextStart=" << contextStart
                    << " contextLength=" << contextLength
                    << " batchSize=" << batchSize
                    << " trainablePadding=" << trainablePadding;
          ProjectionConfig conf;
          conf.set_type("context");
          conf.set_input_size(10);
          conf.set_context_start(contextStart);
          conf.set_context_length(contextLength);
          conf.set_trainable_padding(trainablePadding);
          conf.set_output_size(conf.context_length() * conf.input_size());
          int pad =
              std::max(0, -conf.context_start()) +
              std::max(0, conf.context_start() + conf.context_length() - 1);
          for (auto useGpu : {false, true}) {
            testProjectionGrad(
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                conf,
                INPUT_SEQUENCE_DATA,
                trainablePadding ? conf.input_size() * pad : 0,
                batchSize,
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                useGpu,
                contextStart + contextLength <= 1);  // = testState
          }
        }
      }
    }
  }
}

TEST(Projection, trans_fc) {
  ProjectionConfig conf;
  conf.set_type("trans_fc");
  conf.set_input_size(50);
  conf.set_output_size(20);
  for (auto useGpu : {false, true}) {
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    testProjectionGrad(conf,
                       INPUT_DATA,
                       /* parameterSize */ 1000,
                       /* batchSize */ 100,
                       useGpu);
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  }
}

TEST(Projection, fc) {
  ProjectionConfig conf;
  conf.set_type("fc");
  conf.set_input_size(10);
  conf.set_output_size(20);
  for (auto useGpu : {false, true}) {
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    testProjectionGrad(conf,
                       INPUT_DATA,
                       /* parameterSize */ 200,
                       /* batchSize */ 100,
                       useGpu);
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  }
}

TEST(Projection, dot_mul) {
  ProjectionConfig conf;
  conf.set_type("dot_mul");
  conf.set_input_size(20);
  conf.set_output_size(20);
  for (auto useGpu : {false, true}) {
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    testProjectionGrad(conf,
                       INPUT_DATA,
                       /* parameterSize */ 20,
                       /* batchSize */ 100,
                       useGpu);
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  }
}

TEST(Projection, table) {
  ProjectionConfig conf;
  conf.set_type("table");
  conf.set_input_size(10);
  conf.set_output_size(20);
  for (auto useGpu : {false, true}) {
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    testProjectionGrad(conf,
                       INPUT_LABEL,
                       /* parameterSize */ 200,
                       /* batchSize */ 100,
                       useGpu);
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  }
}

TEST(Projection, identity) {
  ProjectionConfig conf;
  conf.set_type("identity");
  conf.set_input_size(10);
  conf.set_output_size(10);
  for (auto useGpu : {false, true}) {
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    testProjectionGrad(conf,
                       INPUT_DATA,
                       /* parameterSize */ 0,
                       /* batchSize */ 100,
                       useGpu);
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  }
}

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TEST(Projection, slice) {
  ProjectionConfig conf;
  conf.set_type("slice");
  conf.set_input_size(100);
  SliceConfig& slice1 = *conf.add_slices();
  slice1.set_start(10);
  slice1.set_end(20);
  SliceConfig& slice2 = *conf.add_slices();
  slice2.set_start(50);
  slice2.set_end(70);
  conf.set_output_size(30);
  for (auto useGpu : {false, true}) {
    testProjectionGrad(conf,
                       INPUT_DATA,
                       /* parameterSize */ 0,
                       /* batchSize */ 10,
                       useGpu);
  }
}

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TEST(Projection, scaling) {
  ProjectionConfig conf;
  conf.set_type("scaling");
  conf.set_input_size(10);
  conf.set_output_size(10);
  for (auto useGpu : {false}) {
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    testProjectionGrad(conf,
                       INPUT_DATA,
                       /* parameterSize */ 1,
                       /* batchSize */ 100,
                       useGpu);
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  }
}

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void testProjectionConv(size_t groups, bool isDeconv) {
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  const int NUM_FILTERS = 18;
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  const int FILTER_SIZE = 2;
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  const int FILTER_SIZE_Y = 2;
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  const int CHANNELS = 3;
  const int IMAGE_SIZE = 16;

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#if CUDNN_VERSION >= 6000
  const int DILATION = 2;
#else
  const int DILATION = 1;
#endif

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  ProjectionConfig conf;
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  if (isDeconv) {
    conf.set_type("convt");
  } else {
    conf.set_type("conv");
  }
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  conf.set_num_filters(NUM_FILTERS);

  ConvConfig* conv = conf.mutable_conv_conf();
  conv->set_filter_size(FILTER_SIZE);
  conv->set_filter_size_y(FILTER_SIZE_Y);
  conv->set_channels(CHANNELS);
  conv->set_padding(0);
  conv->set_padding_y(1);
  conv->set_stride(2);
  conv->set_stride_y(2);
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  conv->set_dilation(DILATION);
  conv->set_dilation_y(DILATION);
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  conv->set_groups(groups);
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  if (isDeconv) {
    conv->set_filter_channels(NUM_FILTERS / conv->groups());
  } else {
    conv->set_filter_channels(conv->channels() / conv->groups());
  }
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  conv->set_img_size(IMAGE_SIZE);
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  int output_x = outputSize(conv->img_size(),
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                            (conv->filter_size() - 1) * DILATION + 1,
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                            conv->padding(),
                            conv->stride(),
                            /* caffeMode */ true);
  int output_y = outputSize(conv->img_size(),
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                            (conv->filter_size_y() - 1) * DILATION + 1,
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                            conv->padding_y(),
                            conv->stride_y(),
                            /* caffeMode */ true);
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  conv->set_output_x(output_x);
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  conv->set_output_y(output_y);
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  LOG(INFO) << "DILATION:" << DILATION << "; output_x: " << output_x
            << "; output_y: " << output_y;
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  if (isDeconv) {
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    int deconv_image_x = imageSize(output_x,
                                   (conv->filter_size() - 1) * DILATION + 1,
                                   conv->padding(),
                                   conv->stride(),
                                   /* caffeMode */ true);
    int deconv_image_y = imageSize(output_y,
                                   (conv->filter_size_y() - 1) * DILATION + 1,
                                   conv->padding_y(),
                                   conv->stride_y(),
                                   /* caffeMode */ true);

    LOG(INFO) << " deconv_image_x: " << deconv_image_x
              << "; deconv_image_y: " << deconv_image_y;
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    conf.set_input_size(output_x * output_y * CHANNELS);
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    conf.set_output_size(deconv_image_x * deconv_image_y * NUM_FILTERS);
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  } else {
    conf.set_input_size(IMAGE_SIZE * IMAGE_SIZE * CHANNELS);
    conf.set_output_size(output_x * output_y * NUM_FILTERS);
  }
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  testProjectionGrad(conf,
                     INPUT_DATA,
                     /* parameterSize */ NUM_FILTERS * CHANNELS * FILTER_SIZE *
                         FILTER_SIZE_Y / groups,
                     /* batchSize */ 100,
                     true,
                     false,
                     NUM_FILTERS,
                     true);
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}
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#ifdef PADDLE_WITH_CUDA
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TEST(Projection, conv) {
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  /// test ConvProjection
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  testProjectionConv(1, false);
  testProjectionConv(3, false);
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  /// test ConvTransProjection
  testProjectionConv(1, true);
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  testProjectionConv(3, true);
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}
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#endif

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TEST(Layer, BilinearInterpLayer) {
  TestConfig config;
  config.layerConfig.set_type("bilinear_interp");
  config.biasSize = 0;
  config.inputDefs.push_back({INPUT_DATA, "layer_0", 4096, 0});

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  LayerInputConfig* input = config.layerConfig.add_inputs();
  BilinearInterpConfig* bilinear = input->mutable_bilinear_interp_conf();
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  ImageConfig* image = bilinear->mutable_image_conf();
  image->set_img_size(32);
  image->set_img_size_y(32);
  image->set_channels(4);
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  for (auto useGpu : {false, true}) {
    for (auto outSize : {32, 64}) {
      bilinear->set_out_size_x(outSize);
      bilinear->set_out_size_y(outSize);
      testLayerGrad(config, "bilinear_interp", 10, false, useGpu);
    }
  }
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}

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TEST(Layer, concat) {
  TestConfig config;
  config.biasSize = 0;
  config.layerConfig.set_type("concat");
  config.layerConfig.set_size(15);
  config.layerConfig.set_active_type("sigmoid");

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 5, 0});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 10, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "concat", 100, false, useGpu);
  }
}

TEST(Layer, AddtoLayer) {
  TestConfig config;
  config.biasSize = 0;
  config.layerConfig.set_type("addto");
  config.layerConfig.set_size(10);
  config.layerConfig.set_active_type("sigmoid");

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 10, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "addto", 100, false, useGpu);
  }
}

TEST(Layer, CTCLayer) {
  TestConfig config;
  config.layerConfig.set_type("ctc");
  config.layerConfig.set_norm_by_times(false);
  config.layerConfig.set_size(10);
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_SEQUENCE_DATA, "layer_0", 10, 0});
  config.inputDefs.push_back({INPUT_SEQUENCE_LABEL, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config,
                  "ctc",
                  100,
                  /* trans */ false, /* useGpu */
                  useGpu);
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  }
}

TEST(Layer, cosSimLayer) {
  TestConfig config;
  config.layerConfig.set_type("cos");
  config.layerConfig.set_size(1);
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 50, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 50, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "cos", 100, false, useGpu);
  }
}

TEST(Layer, CosSimVecMatLayer) {
  TestConfig config;
  config.layerConfig.set_type("cos_vm");
  config.layerConfig.set_size(5);  // output size
  config.layerConfig.set_cos_scale(2.0);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 20, 0});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 100, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "cos_vm", 100, false, useGpu);
  }
}

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void testDepthwiseConvLayer(const string& type, bool useGpu) {
  TestConfig config;
  config.biasSize = 32;
  config.layerConfig.set_type(type);
  config.layerConfig.set_num_filters(32);
  config.layerConfig.set_partial_sum(1);
  config.layerConfig.set_shared_biases(true);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 2048, 192});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  ConvConfig* conv = input->mutable_conv_conf();
  conv->set_filter_size(2);
  conv->set_filter_size_y(3);
  conv->set_channels(16);
  conv->set_padding(0);
  conv->set_padding_y(1);
  conv->set_stride(2);
  conv->set_stride_y(2);
  conv->set_groups(16);
  conv->set_filter_channels(conv->channels() / conv->groups());
  conv->set_img_size(16);
  conv->set_img_size_y(8);
  conv->set_output_x(outputSize(conv->img_size(),
                                conv->filter_size(),
                                conv->padding(),
                                conv->stride(),
                                /* caffeMode */ true));
  conv->set_output_y(outputSize(conv->img_size_y(),
                                conv->filter_size_y(),
                                conv->padding_y(),
                                conv->stride_y(),
                                /* caffeMode */ true));
  config.layerConfig.set_size(conv->output_x() * conv->output_y() *
                              config.layerConfig.num_filters());

  testLayerGrad(config, "depthwise_conv", 100, false, useGpu);
  // Use small batch_size and useWeight=true to test biasGrad
  testLayerGrad(config, "depthwise_conv", 2, false, useGpu, true, 0.02);
}

TEST(Layer, depthwiseConvLayer) {
  //  'depthwise_conv' is a sepecial case of 'exconv' whose
  //  groups size equals to the input channels size.
  testDepthwiseConvLayer("exconv", /* useGpu= */ false);
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#ifdef PADDLE_WITH_CUDA
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  testDepthwiseConvLayer("exconv", /* useGpu= */ true);
#endif
}

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void testConvLayer(const string& type, bool trans, bool useGpu) {
  TestConfig config;
  config.biasSize = 16;
  config.layerConfig.set_type(type);
  config.layerConfig.set_num_filters(16);
  config.layerConfig.set_partial_sum(1);
  config.layerConfig.set_shared_biases(true);

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  int dilation = 2;
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  if (type == "cudnn_conv") {
#if CUDNN_VERSION >= 6000
    dilation = 2;
#else
    dilation = 1;
#endif
  }

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 768, 192});
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  LayerInputConfig* input = config.layerConfig.add_inputs();
  ConvConfig* conv = input->mutable_conv_conf();
  conv->set_filter_size(2);
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  conv->set_filter_size_y(2);
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  conv->set_channels(3);
  conv->set_padding(0);
  conv->set_padding_y(1);
  conv->set_stride(2);
  conv->set_stride_y(2);
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  conv->set_dilation(dilation);
  conv->set_dilation_y(dilation);
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  conv->set_groups(1);
  conv->set_filter_channels(conv->channels() / conv->groups());
  conv->set_img_size(16);
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  conv->set_img_size_y(16);
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  conv->set_output_x(outputSize(conv->img_size(),
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                                (conv->filter_size() - 1) * dilation + 1,
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                                conv->padding(),
                                conv->stride(),
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                                /* caffeMode */ true));
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  conv->set_output_y(outputSize(conv->img_size_y(),
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                                (conv->filter_size_y() - 1) * dilation + 1,
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                                conv->padding_y(),
                                conv->stride_y(),
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                                /* caffeMode */ true));
  config.layerConfig.set_size(conv->output_x() * conv->output_y() *
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                              config.layerConfig.num_filters());

  testLayerGrad(config, "conv", 100, trans, useGpu);
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  // Use small batch_size and useWeight=true to test biasGrad
  testLayerGrad(config, "conv", 2, trans, useGpu, true, 0.02);
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}

TEST(Layer, convLayer) {
  testConvLayer("exconv", /* trans= */ false, /* useGpu= */ false);
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#ifdef PADDLE_WITH_CUDA
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  testConvLayer("exconv", /* trans= */ false, /* useGpu= */ true);
  testConvLayer("cudnn_conv", /* trans= */ false, /* useGpu= */ true);
#endif
}

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void testConvTransLayer(const string& type, bool trans, bool useGpu) {
  TestConfig config;
  config.biasSize = 3;
  config.layerConfig.set_type(type);
  config.layerConfig.set_num_filters(3);
  config.layerConfig.set_partial_sum(1);
  config.layerConfig.set_shared_biases(true);

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  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1024, 384});
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  LayerInputConfig* input = config.layerConfig.add_inputs();
  ConvConfig* conv = input->mutable_conv_conf();
  conv->set_filter_size(2);
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  conv->set_filter_size_y(4);
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  conv->set_channels(16);
  conv->set_padding(0);
  conv->set_padding_y(1);
  conv->set_stride(2);
  conv->set_stride_y(2);
  conv->set_groups(1);
  conv->set_filter_channels(3 / conv->groups());
  conv->set_img_size(16);
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  conv->set_output_x(outputSize(conv->img_size(),
                                conv->filter_size(),
                                conv->padding(),
                                conv->stride(),
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                                /* caffeMode */ true));
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  config.layerConfig.set_size(conv->img_size() * conv->img_size() *
                              config.layerConfig.num_filters());

  testLayerGrad(config, "convTrans", 100, trans, useGpu);
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  // Use small batch_size and useWeight=true to test biasGrad
  testLayerGrad(config, "convTrans", 2, trans, useGpu, true, 0.02);
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}

TEST(Layer, convTransLayer) {
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  for (auto useGpu : {false, true}) {
    testConvTransLayer("exconvt", /* trans= */ false, /* useGpu= */ useGpu);
  }
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#ifdef PADDLE_WITH_CUDA
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  testConvTransLayer("cudnn_convt", /* trans= */ false, /* useGpu= */ true);
#endif
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}

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TEST(Layer, blockExpandLayer) {
  TestConfig config;
  config.biasSize = 0;
  config.layerConfig.set_type("blockexpand");

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 6144, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  BlockExpandConfig* blockExpand = input->mutable_block_expand_conf();
  blockExpand->set_img_size_x(64);
  blockExpand->set_img_size_y(32);
  blockExpand->set_channels(3);
  blockExpand->set_padding_x(0);
  blockExpand->set_padding_y(0);
  blockExpand->set_block_x(4);
  blockExpand->set_block_y(32);
  blockExpand->set_stride_x(2);
  blockExpand->set_stride_y(2);
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  blockExpand->set_output_x(outputSize(blockExpand->img_size_x(),
                                       blockExpand->block_x(),
                                       blockExpand->padding_x(),
                                       blockExpand->stride_x(),
                                       /* caffeMode */ false));
  blockExpand->set_output_y(outputSize(blockExpand->img_size_y(),
                                       blockExpand->block_y(),
                                       blockExpand->padding_y(),
                                       blockExpand->stride_y(),
                                       /* caffeMode */ false));
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  config.layerConfig.set_size(blockExpand->block_x() * blockExpand->block_y() *
                              blockExpand->channels());

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "blockexpand", 100, false, useGpu);
  }
}

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TEST(Layer, maxoutLayer) {
  TestConfig config;
  config.biasSize = 0;
  config.layerConfig.set_type("maxout");

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 4096, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  MaxOutConfig* maxout = input->mutable_maxout_conf();
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  ImageConfig* image = maxout->mutable_image_conf();
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  image->set_img_size(32);
  image->set_img_size_y(32);
  image->set_channels(4);
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  maxout->set_groups(2);

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "maxout", 10, false, useGpu);
  }
}
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void testFcLayer(string format, size_t nnz) {
  TestConfig config;
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  config.biasSize = 1024;
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  config.layerConfig.set_type("fc");
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  config.layerConfig.set_size(1024);
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  config.layerConfig.set_active_type("sigmoid");
  config.layerConfig.set_drop_rate(0.1);

  config.inputDefs.push_back(
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      {INPUT_DATA, "layer_0", 2048, nnz, ParaSparse(format)});
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  config.layerConfig.add_inputs();

  LOG(INFO) << config.inputDefs[0].sparse.sparse << " "
            << config.inputDefs[0].sparse.format;

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config,
                  "fc",
                  100,
                  /* trans */ false,
                  useGpu,
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                  /* weight */ true);
  }
}

TEST(Layer, fcLayer) {
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  testFcLayer("", 1024 * 1024 * 2);
  testFcLayer("csc", 1024 * 10);
  testFcLayer("csr", 1024 * 10);
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}

TEST(Layer, SelectiveFullyConnectedLayer) {
  TestConfig config;
  size_t nin = 16;
  size_t nout = 256;
  config.layerConfig.set_type("selective_fc");
  config.layerConfig.set_size(nout);
  config.layerConfig.set_active_type("sigmoid");
  config.layerConfig.set_has_selected_colums(true);
  config.layerConfig.set_selective_fc_pass_generation(false);
  config.biasSize = nout;

  config.inputDefs.push_back({INPUT_DATA, "input0", nin, nin * nout});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back(
      {INPUT_SPARSE_NON_VALUE_DATA, "index", nout, 0, ParaSparse("csr", true)});
  config.layerConfig.add_inputs();

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  testLayerGrad(config,
                "selective_fc",
                100,
                /* trans= */ false,
                /* useGup= */ false,
                false);
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#ifdef PADDLE_WITH_CUDA
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  testLayerGrad(config,
                "selective_fc",
                100,
                /* trans= */ false,
                /* useGup= */ true,
                false);
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#endif
}

TEST(Layer, DataNormLayer) {
  TestConfig config;
  config.layerConfig.set_type("data_norm");
  config.layerConfig.set_size(20);
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 20, 100});
  config.inputDefs.back().isStatic = true;
  config.layerConfig.add_inputs();

  for (auto strategy : {"z-score", "min-max", "decimal-scaling"}) {
    config.layerConfig.set_data_norm_strategy(strategy);
    // The parameters are static, so not support GPU now
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    testLayerGrad(config,
                  "data_norm",
                  200,
                  /* trans */ false,
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                  /* useGpu */ false);
  }
}

TEST(Layer, hsigmoidLayer) {
  TestConfig config;
  config.layerConfig.set_type("hsigmoid");
  config.layerConfig.set_num_classes(5);
  config.layerConfig.set_size(1);
  config.biasSize = config.layerConfig.num_classes() - 1;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 50, 200});
  config.inputDefs.push_back({INPUT_LABEL, "layer_1", 5, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

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  for (auto useGpu : {false, true}) {
    testLayerGrad(config,
                  "hsigmoid",
                  100,
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                  /* trans */ false,
                  /* useGpu */ useGpu);
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  }
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}

TEST(Layer, multi_cross) {
  TestConfig config;
  config.layerConfig.set_type("multi-class-cross-entropy");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 50, 0});
  config.inputDefs.push_back({INPUT_LABEL, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(
        config, "multi-class-cross-entropy", 100, /* trans */ false, useGpu);
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  }
}

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TEST(Layer, multi_binary_label_sparse_mat) {
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  TestConfig config;
  config.layerConfig.set_type("multi_binary_label_cross_entropy");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 50, 0});
  config.inputDefs.push_back({INPUT_SPARSE_NON_VALUE_DATA, "layer_1", 50, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

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  for (auto useGpu : {false, true}) {
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    testLayerGrad(config,
                  "multi_binary_label_cross_entropy",
                  100,
                  /* trans */ false,
                  useGpu);
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  }
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}

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TEST(layer, multi_binary_label_id) {
  TestConfig config;
  config.layerConfig.set_type("multi_binary_label_cross_entropy");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 50, 0});
  config.inputDefs.push_back({INPUT_LABEL, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config,
                  "multi_binary_label_cross_entropy",
                  100,
                  /* trans */ false,
                  useGpu);
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  }
}

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TEST(Layer, multi_cross_with_selfnorm) {
  TestConfig config;
  config.layerConfig.set_type("multi_class_cross_entropy_with_selfnorm");
  config.layerConfig.set_softmax_selfnorm_alpha(0.1);
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 50, 0});
  config.inputDefs.push_back({INPUT_LABEL, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  // Not support GPU now
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  testLayerGrad(config,
                "multi_class_cross_entropy_with_selfnorm",
                100,
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                /* trans */ false,
                /* useGpu */ false);
}

TEST(Layer, multi_cross_soft) {
  TestConfig config;
  config.layerConfig.set_type("soft_binary_class_cross_entropy");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config,
                  "soft_binary_class_cross_entropy",
                  100,
                  /* trans */ false,
                  useGpu);
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  }
}

TEST(Layer, square_error) {
  TestConfig config;
  config.layerConfig.set_type("square_error");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "square_error", 100, /* trans */ false, useGpu);
  }
}

TEST(Layer, sparse_square_error) {
  TestConfig config;
  config.layerConfig.set_type("square_error");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 50, 0});
  config.inputDefs.push_back({INPUT_SPARSE_NON_VALUE_DATA, "layer_1", 50, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  // "GpuSparseMatrix" as label is not supported
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  testLayerGrad(config,
                "square_error",
                100,
                /* trans */ false,
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                /* useGpu */ false);
}

TEST(Layer, sparse_float_square_error) {
  TestConfig config;
  config.layerConfig.set_type("square_error");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 50, 0});
  config.inputDefs.push_back({INPUT_SPARSE_FLOAT_VALUE_DATA, "layer_1", 50, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  // "GpuSparseMatrix" as label is not supported
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  testLayerGrad(config,
                "square_error",
                100,
                /* trans */ false,
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                /* useGpu */ false);
}

TEST(Layer, square_error_weighted) {
  TestConfig config;
  config.layerConfig.set_type("square_error");
  config.biasSize = 0;
  config.testAccumulate = false;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_1", 10, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_2", 1, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "square_error", 100, /* trans */ false, useGpu);
  }
}

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TEST(Layer, huber_regression_loss) {
  TestConfig config;
  config.layerConfig.set_type("huber_regression");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    for (auto delta : {1, 3, 5}) {
      config.layerConfig.set_delta(delta);
      testLayerGrad(config, "huber_regression", 100, /* trans */ false, useGpu);
    }
  }
}

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TEST(Layer, huber_two_class) {
  TestConfig config;
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  config.layerConfig.set_type("huber_classification");
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  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1, 0});
  config.inputDefs.push_back({INPUT_LABEL, "layer_1", 2, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config, "huber_two_class", 100, /* trans */ false, useGpu);
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  }
}

void testExpandLayer(string trans_type, bool hasSubseq) {
  TestConfig config;
  config.layerConfig.set_type("expand");

  config.inputDefs.push_back(
      {trans_type == "non-seq" ? INPUT_DENSE_DIM_DATA : INPUT_SEQUENCE_DATA,
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       "layer_0",
       10,
       0});
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  config.inputDefs.push_back(
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      {hasSubseq ? INPUT_HASSUB_SEQUENCE_DATA : INPUT_SEQUENCE_DATA,
       "layer_1",
       10,
       0});
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  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.set_trans_type(trans_type);
  LOG(INFO) << " trans_type=" << trans_type << " hasSubseq=" << hasSubseq;

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "expand", 30, false, useGpu);
  }
}

TEST(Layer, ExpandLayer) {
  testExpandLayer("non-seq", false);  // non-seq expand to seq
  testExpandLayer("non-seq", true);   // non-seq expand to hasSubseq
  testExpandLayer("seq", true);       // seq expand to hasSubseq
}

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void testDegradeLayer(bool hasSubseq,
                      string layer_type,
                      string trans_type,
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                      int stride) {
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  TestConfig config;
  config.layerConfig.set_type(layer_type);
  config.layerConfig.set_size(10);
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  config.layerConfig.set_seq_pool_stride(stride);
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  config.biasSize = 0;

  config.inputDefs.push_back(
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      {hasSubseq ? INPUT_HASSUB_SEQUENCE_DATA : INPUT_SEQUENCE_DATA,
       "layer_0",
       10,
       0});
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  config.layerConfig.add_inputs();
  config.layerConfig.set_trans_type(trans_type);

  auto testDegradeLayerGrad = [](TestConfig& config, string layer_type) {
    for (auto useGpu : {false, true}) {
      testLayerGrad(config, layer_type, 100, false, useGpu);
    }
  };

  if (layer_type == "average") {
    for (auto strategy : {"average", "sum", "squarerootn"}) {
      LOG(INFO) << " hasSubseq=" << hasSubseq << " trans_type=" << trans_type
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                << " average_strategy=" << strategy
                << " seq_pool_stride=" << stride;
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      config.layerConfig.set_average_strategy(strategy);
      testDegradeLayerGrad(config, layer_type);
    }
  } else {
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    LOG(INFO) << " hasSubseq=" << hasSubseq << " trans_type=" << trans_type
              << " seq_pool_stride=" << stride;
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    testDegradeLayerGrad(config, layer_type);
  }
}

TEST(Layer, MaxLayer) {
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  testDegradeLayer(false, "max", "non-seq", -1);  // seq max to non-seq
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  testDegradeLayer(false,
                   "max",
                   "non-seq",
                   5);  // seq max to a shorten seq, stride window = 5
  testDegradeLayer(true, "max", "non-seq", -1);  // hasSubseq max to non-seq
  testDegradeLayer(true, "max", "seq", -1);      // hasSubseq max to seq
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}

TEST(Layer, SequenceLastInstanceLayer) {
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  testDegradeLayer(false,
                   "seqlastins",
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                   "non-seq",
                   -1);  // seq seqlastins to non-seq
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  testDegradeLayer(false,
                   "seqlastins",
                   "non-seq",
                   5);  // seq seqlastins to a shorten seq, stride window = 5
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  testDegradeLayer(true,
                   "seqlastins",
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                   "non-seq",
                   -1);  // hasSubseq seqlastins to non-seq
  testDegradeLayer(
      true, "seqlastins", "seq", -1);  // hasSubseq seqlastins to seq
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}

TEST(Layer, AverageLayer) {
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  testDegradeLayer(false, "average", "non-seq", -1);  // seq average to non-seq
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  testDegradeLayer(false,
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                   "average",
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                   "non-seq",
                   5);  // seq average to a shorten seq, stride window = 5
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  testDegradeLayer(
      true, "average", "non-seq", -1);           // hasSubseq average to non-seq
  testDegradeLayer(true, "average", "seq", -1);  // hasSubseq average to seq
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}

TEST(Layer, SequenceConcatLayer) {
  TestConfig config;
  config.layerConfig.set_type("seqconcat");
  config.layerConfig.set_size(10);
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_SEQUENCE_DATA, "layer_0", 10, 0});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back({INPUT_SEQUENCE_DATA, "layer_1", 10, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "seqconcat", 100, false, useGpu);
  }
}

TEST(Layer, SequenceReshapeLayer) {
  TestConfig config;
  config.layerConfig.set_type("seqreshape");
  config.layerConfig.set_size(10);

  config.inputDefs.push_back({INPUT_SEQUENCE_DATA, "layer_0", 100, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "seqreshape", 100, false, useGpu);
  }
}

TEST(Layer, ConvShiftLayer) {
  TestConfig config;
  config.layerConfig.set_type("conv_shift");
  config.layerConfig.set_size(10);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 3, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  // Not support GPU now
  testLayerGrad(config, "conv_shift", 100, false, false);
}

TEST(Layer, PowerLayer) {
  TestConfig config;
  config.layerConfig.set_type("power");
  config.layerConfig.set_size(10);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "power", 100, false, useGpu);
  }
}

TEST(Layer, ConvexCombinationLayer) {
  TestConfig config;
  config.layerConfig.set_type("convex_comb");
  config.layerConfig.set_size(20);
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 5, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 100, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "convex_comb", 100, false, useGpu);
  }
}

TEST(Layer, InterpolationLayer) {
  TestConfig config;
  config.layerConfig.set_type("interpolation");
  config.layerConfig.set_size(10);
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 10, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_2", 10, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "interpolation", 100, false, useGpu);
  }
}

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TEST(Layer, DotProdLayer) {
  TestConfig config;
  config.layerConfig.set_type("dot_prod");
  config.layerConfig.set_size(1);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 10, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config, "dot_prod", 10, false, useGpu);
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  }
}

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TEST(Layer, OuterProdLayer) {
  TestConfig config;
  config.layerConfig.set_type("out_prod");
  config.layerConfig.set_size(100);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 10, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "out_prod", 100, false, useGpu);
  }
}

TEST(Layer, SlopeInterceptLayer) {
  TestConfig config;
  config.layerConfig.set_type("slope_intercept");
  config.layerConfig.set_size(10);
  config.layerConfig.set_slope(1.0);
  config.layerConfig.set_intercept(0.1);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 10, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "slope_intercept", 100, false, useGpu);
  }
}

TEST(Layer, ScalingLayer) {
  TestConfig config;
  config.layerConfig.set_type("scaling");
  config.layerConfig.set_size(10);
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1, 0});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 10, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "scaling", 100, false, useGpu);
  }
}

void testNormLayer(const string& normType, bool trans, bool useGpu) {
  TestConfig config;
  config.layerConfig.set_type("norm");
  config.layerConfig.set_active_type("relu");

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  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1568, 0});
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  LayerInputConfig* input = config.layerConfig.add_inputs();
  NormConfig* norm = input->mutable_norm_conf();
  norm->set_norm_type(normType);
  norm->set_channels(16);
  norm->set_size(5);
  norm->set_scale(0.001);
  norm->set_pow(0.75);
  norm->set_blocked(0);
  norm->set_img_size(14);
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  norm->set_img_size_y(7);
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  norm->set_output_x(norm->img_size());
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  norm->set_output_y(norm->img_size_y());
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  if (norm->norm_type() == "cmrnorm" ||
      norm->norm_type() == "cmrnorm-projection") {
    norm->set_scale(norm->scale() / norm->size());
  } else {
    norm->set_scale(norm->scale() / (norm->size() * norm->size()));
  }

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  config.layerConfig.set_size(norm->output_x() * norm->output_y() *
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                              norm->channels());
  config.biasSize = 0;

  testLayerGrad(config, "norm", 100, trans, useGpu);
}

TEST(Layer, NormLayer) {
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  testNormLayer("cmrnorm-projection",
                /* trans= */ false, /* useGpu= */
                true);
  testNormLayer("cmrnorm-projection",
                /* trans= */ false, /* useGpu= */
                false);
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}

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void setPoolConfig(TestConfig* config,
                   PoolConfig* pool,
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                   const string& poolType) {
  (*config).biasSize = 0;
  (*config).layerConfig.set_type("pool");
  (*config).layerConfig.set_num_filters(16);

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  int kw = 3, kh = 3;
  int pw = 0, ph = 0;
  int sw = 2, sh = 2;
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  pool->set_pool_type(poolType);
  pool->set_channels(16);
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  pool->set_size_x(kw);
  pool->set_size_y(kh);
  pool->set_start(0);
  pool->set_padding(pw);
  pool->set_padding_y(ph);
  pool->set_stride(sw);
  pool->set_stride_y(sh);

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  int ow = outputSize(pool->img_size(), kw, pw, sw, /* caffeMode */ false);
  int oh = outputSize(pool->img_size_y(), kh, ph, sh, /* caffeMode */ false);
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  pool->set_output_x(ow);
  pool->set_output_y(oh);
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}

void testPoolLayer(const string& poolType, bool trans, bool useGpu) {
  TestConfig config;
  config.inputDefs.push_back({INPUT_DATA, "layer_0", 3136, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  PoolConfig* pool = input->mutable_pool_conf();

  pool->set_img_size(14);
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  pool->set_img_size_y(14);
  setPoolConfig(&config, pool, poolType);
  config.layerConfig.set_size(pool->output_x() * pool->output_y() *
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                              pool->channels());

  testLayerGrad(config, "pool", 100, trans, useGpu);
}

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#ifdef PADDLE_WITH_CUDA
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void testPoolLayer2(const string& poolType, bool trans, bool useGpu) {
  TestConfig config;
  config.inputDefs.push_back({INPUT_DATA, "layer_0", 3200, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  PoolConfig* pool = input->mutable_pool_conf();

  pool->set_size_y(4);
  pool->set_stride_y(3);
  pool->set_img_size(10);
  pool->set_img_size_y(20);
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  setPoolConfig(&config, pool, poolType);
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  pool->set_output_y((pool->img_size_y() - pool->start() - pool->size_y()) /
                         ((float)pool->stride_y()) +
                     1.5);
  config.layerConfig.set_size(pool->output_x() * pool->output_y() *
                              pool->channels());

  testLayerGrad(config, "pool", 100, trans, useGpu);
}
#endif

TEST(Layer, PoolLayer) {
  testPoolLayer("avg-projection", /* trans= */ false, /* useGpu= */ false);
  testPoolLayer("max-projection", /* trans= */ false, /* useGpu= */ false);
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  testPoolLayer("max-pool-with-mask", /* trans= */ false, /* useGpu= */ false);
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#ifdef PADDLE_WITH_CUDA
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  testPoolLayer("avg-projection", /* trans= */ false, /* useGpu= */ true);
  testPoolLayer("max-projection", /* trans= */ false, /* useGpu= */ true);
  testPoolLayer("cudnn-max-pool", /* trans= */ false, /* useGpu= */ true);
  testPoolLayer("cudnn-avg-pool", /* trans= */ false, /* useGpu= */ true);
  testPoolLayer2("cudnn-max-pool", /* trans= */ false, /* useGpu= */ true);
  testPoolLayer2("cudnn-avg-pool", /* trans= */ false, /* useGpu= */ true);
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  testPoolLayer("max-pool-with-mask", /* trans= */ false, /* useGpu= */ true);
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#endif
}

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void setPool3DConfig(TestConfig* config,
                     PoolConfig* pool,
                     const string& poolType) {
  // filter size
  const int NUM_FILTERS = 16;
  const int FILTER_SIZE = 3;
  const int FILTER_SIZE_Y = 3;
  const int FILTER_SIZE_Z = 3;
  const int CHANNELS = 16;

  (*config).biasSize = 0;
  (*config).layerConfig.set_type("pool3d");
  (*config).layerConfig.set_num_filters(NUM_FILTERS);

  int kw = FILTER_SIZE, kh = FILTER_SIZE_Y, kd = FILTER_SIZE_Z;
  int pw = 0, ph = 0, pd = 0;
  int sw = 2, sh = 2, sd = 2;

  pool->set_pool_type(poolType);
  pool->set_pool_type("avg");
  pool->set_channels(CHANNELS);
  pool->set_size_x(kw);
  pool->set_size_y(kh);
  pool->set_size_z(kd);
  pool->set_padding(0);
  pool->set_padding_y(0);
  pool->set_padding_z(0);
  pool->set_stride(sw);
  pool->set_stride_y(sh);
  pool->set_stride_z(sd);
  pool->set_start(0);
  int ow = outputSize(pool->img_size(), kw, pw, sw, /* caffeMode */ false);
  int oh = outputSize(pool->img_size_y(), kh, ph, sh, /* caffeMode */ false);
  int od = outputSize(pool->img_size_z(), kd, pd, sd, /* caffeMode */ false);
  pool->set_output_x(ow);
  pool->set_output_y(oh);
  pool->set_output_z(od);
}

void testPool3DLayer(const string& poolType, bool trans, bool useGpu) {
  TestConfig config;
  config.inputDefs.push_back({INPUT_DATA, "layer_0", 11664, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  PoolConfig* pool = input->mutable_pool_conf();

  const int IMAGE_SIZE = 9;
  const int IMAGE_SIZE_Y = 9;
  const int IMAGE_SIZE_Z = 9;

  pool->set_img_size(IMAGE_SIZE);
  pool->set_img_size_y(IMAGE_SIZE_Y);
  pool->set_img_size_z(IMAGE_SIZE_Z);

  setPool3DConfig(&config, pool, poolType);
  config.layerConfig.set_size(pool->output_x() * pool->output_y() *
                              pool->channels());

  testLayerGrad(config, "pool3d", 100, trans, useGpu);
}

TEST(Layer, Pool3DLayer) {
  testPool3DLayer("avg", /* trans= */ false, /* useGpu= */ false);
  testPool3DLayer("max", /* trans= */ false, /* useGpu= */ false);
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#ifdef PADDLE_WITH_CUDA
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  testPool3DLayer("avg", /* trans= */ false, /* useGpu= */ true);
  testPool3DLayer("max", /* trans= */ false, /* useGpu= */ true);
#endif
}

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void testSppLayer(const string& poolType,
                  const int pyramidHeight,
                  bool trans,
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                  bool useGpu) {
  TestConfig config;
  config.layerConfig.set_type("spp");
  config.inputDefs.push_back({INPUT_DATA, "layer_0", 3200, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  SppConfig* sppConfig = input->mutable_spp_conf();
  sppConfig->set_pool_type(poolType);
  sppConfig->set_pyramid_height(pyramidHeight);
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  ImageConfig* imageConfig = sppConfig->mutable_image_conf();
  imageConfig->set_channels(16);
  imageConfig->set_img_size(10);
  imageConfig->set_img_size_y(20);
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  int outputSize = (std::pow(4, sppConfig->pyramid_height()) - 1) / (4 - 1);
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  config.layerConfig.set_size(outputSize * imageConfig->channels());
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  testLayerGrad(config, "spp", 100, trans, useGpu);
}

TEST(Layer, SpatialPyramidPoolLayer) {
  for (auto useGpu : {false, true}) {
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    for (auto pyramidHeight : {1, 2, 3}) {
      testSppLayer("avg-projection", pyramidHeight, false, useGpu);
      testSppLayer("max-projection", pyramidHeight, false, useGpu);
    }
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  }
}

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TEST(Layer, rankCostLayer) {
  TestConfig config;
  config.layerConfig.set_type("rank-cost");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 1, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_2", 1, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "rank-cost", 100, false, useGpu);
  }
}

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TEST(Layer, sumCostLayer) {
  TestConfig config;
  config.layerConfig.set_type("sum_cost");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "sum_cost", 100, false, useGpu);
  }
}

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TEST(Layer, weightedRankCostLayer) {
  TestConfig config;
  config.layerConfig.set_type("rank-cost");
  config.biasSize = 0;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 1, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_2", 1, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_3", 1, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "weighted-rank-cost", 100, false, useGpu);
  }
}

TEST(Layer, TensorLayer) {
  TestConfig config;
  config.layerConfig.set_type("tensor");
  config.layerConfig.set_size(10);
  config.layerConfig.set_active_type("sigmoid");
  config.biasSize = config.layerConfig.size();

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 5, 250});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 5, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "tensor", 100, false, useGpu);
  }
}

TEST(Layer, RecurrentLayer) {
  TestConfig config;
  config.layerConfig.set_type("recurrent");
  config.layerConfig.set_size(4);
  config.layerConfig.set_active_type("tanh");
  config.biasSize = 4;

  config.inputDefs.push_back(
      {INPUT_SEQUENCE_DATA, "layer_0", /* dim= */ 4, /* paraSize= */ 16});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    for (auto reversed : {false, true}) {
      config.layerConfig.set_reversed(reversed);
      config.testState = !reversed;
      testLayerGrad(config, "recurrent", 50, /* trans= */ false, useGpu);
    }
  }
}

TEST(Layer, LstmLayer) {
  TestConfig config;
  config.layerConfig.set_type("lstmemory");
  config.layerConfig.set_size(4);
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  config.layerConfig.set_active_type("tanh");
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  config.layerConfig.set_active_state_type("sigmoid");
  config.layerConfig.set_active_gate_type("sigmoid");
  config.biasSize = 28;

  config.inputDefs.push_back(
      {INPUT_SEQUENCE_DATA, "layer_0", /* dim= */ 16, /* paraSize= */ 64});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    for (auto reversed : {false, true}) {
      config.layerConfig.set_reversed(reversed);
      config.testState = !reversed;
      testLayerGrad(config, "lstmemory", 100, /* trans= */ false, useGpu);
    }
  }
  for (auto useGpu : {true}) {
    config.testBatchState = true;
    config.layerConfig.set_reversed(false);
    testLayerGrad(config, "lstmemory", 10, /* trans= */ false, useGpu);
  }
}

TEST(Layer, MDLstmLayer) {
  TestConfig config;
  config.layerConfig.set_type("mdlstmemory");
  config.layerConfig.set_size(4);
  config.layerConfig.set_active_type("sigmoid");
  config.layerConfig.set_active_state_type("sigmoid");
  config.layerConfig.set_active_gate_type("sigmoid");
  config.biasSize = 4 * 9;

  config.inputDefs.push_back(
      {INPUT_SEQUENCE_MDIM_DATA, "layer_0", 4 * 5, 4 * 4 * 5});
  config.layerConfig.add_inputs();
  config.layerConfig.add_directions(true);
  config.layerConfig.add_directions(true);

  for (auto useGpu : {false, true}) {
    for (int i = 0; i < 2; i++) {
      for (int j = 0; j < 2; j++) {
        config.layerConfig.set_directions(0, bool(i));
        config.layerConfig.set_directions(1, bool(j));
        testLayerGrad(config, "mdlstmemory", 100, false, useGpu);
      }
    }
  }
}

TEST(Layer, ParameterReluLayer) {
  auto testParameterReluLayer = [&](size_t inputSize, size_t channels) {
    TestConfig config;
    config.layerConfig.set_type("prelu");
    config.inputDefs.push_back({INPUT_DATA, "layer_0", inputSize, channels});
    config.layerConfig.add_inputs();
    config.layerConfig.set_size(inputSize);
    config.layerConfig.set_partial_sum(inputSize /
                                       channels);  // size of feature map
    for (auto useGpu : {false, true}) {
      testLayerGrad(config, "prelu", 100, false, useGpu);
    }
  };

  testParameterReluLayer(192, 1);
  testParameterReluLayer(192, 3);
  testParameterReluLayer(192, 192);
}

TEST(Layer, ResizeLayer) {
  TestConfig config;
  config.biasSize = 0;
  config.layerConfig.set_type("resize");
  config.layerConfig.set_size(64);

  config.inputDefs.push_back({INPUT_DATA, "layer_0", 16, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "resize", 100, false, useGpu);
  }
}

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TEST(Layer, RotateLayer) {
  TestConfig config;
  config.biasSize = 0;
  config.layerConfig.set_type("rotate");
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  const int CHANNEL = 2;
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  const int HEIGHT = 8;
  const int WIDTH = 4;
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  const int INPUT_SIZE = HEIGHT * WIDTH * CHANNEL;
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  config.layerConfig.set_size(INPUT_SIZE);
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  config.layerConfig.set_height(HEIGHT);
  config.layerConfig.set_width(WIDTH);
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  config.inputDefs.push_back({INPUT_DATA, "layer_0", INPUT_SIZE, 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "rotate", 100, false, useGpu);
  }
}

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TEST(Layer, NCELayer) {
  TestConfig config;
  size_t numClasses = 4;
  config.layerConfig.set_type("nce");
  config.layerConfig.set_size(1);
  config.layerConfig.set_active_type("sigmoid");
  config.layerConfig.set_num_classes(numClasses);
  config.biasSize = numClasses;

  config.inputDefs.push_back(
      {INPUT_DATA, "layer_0", /* dim= */ 16, /* paraSize= */ 16 * numClasses});
  config.inputDefs.push_back(
      {INPUT_LABEL, "label", /* dim= */ numClasses, /* paraSize= */ 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto withWeight : {false, true}) {
    if (withWeight) {
      config.inputDefs.push_back(
          {INPUT_DATA_TARGET, "weight", /* dim= */ 1, /* paraSize= */ 0});
      config.layerConfig.add_inputs();
    }

    for (auto isIdLabel : {false, true}) {
      config.inputDefs[1] = {
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          isIdLabel ? INPUT_LABEL : INPUT_SPARSE_NON_VALUE_DATA,
          "label",
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          /* dim= */ numClasses,
          /* paraSize= */ 0};

      for (auto withDist : {false, true}) {
        config.layerConfig.clear_neg_sampling_dist();
        if (withDist) {
          double sum = 0;
          for (size_t i = 0; i < numClasses; ++i) {
            real p = rand();  // NOLINT use rand_r
            config.layerConfig.add_neg_sampling_dist(p);
            sum += p;
          }
          for (size_t i = 0; i < numClasses; ++i) {
            real p = config.layerConfig.neg_sampling_dist(i) / sum;
            config.layerConfig.set_neg_sampling_dist(i, p);
          }
        }
        LOG(INFO) << "NCELayer "
                  << " isIdLabel=" << isIdLabel << " withWeight=" << withWeight
                  << " withDist=" << withDist;
        // Not support GPU now
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        testLayerGrad(config,
                      "nce",
                      100,
                      /* trans= */ false,
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                      /* useGpu */ false);
      }
    }
  }
}

TEST(Layer, GatedRecurrentLayer) {
  TestConfig config;
  config.layerConfig.set_type("gated_recurrent");
  config.layerConfig.set_size(4);
  config.layerConfig.set_active_type("sigmoid");
  config.layerConfig.set_active_gate_type("sigmoid");
  config.biasSize = 12;

  config.inputDefs.push_back(
      {INPUT_SEQUENCE_DATA, "layer_0", /* dim= */ 12, /* paraSize= */ 48});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    for (auto reversed : {false, true}) {
      config.layerConfig.set_reversed(reversed);
      config.testState = !reversed;
      testLayerGrad(config, "gated_recurrent", 100, /* trans= */ false, useGpu);
    }
  }
}

TEST(Layer, GruStepLayer) {
  TestConfig config;
  config.layerConfig.set_type("gru_step");
  config.layerConfig.set_size(4);
  config.layerConfig.set_active_type("sigmoid");
  config.layerConfig.set_active_gate_type("sigmoid");
  config.biasSize = 12;

  config.inputDefs.push_back(
      {INPUT_DATA, "layer_0", /* dim= */ 12, /* paraSize= */ 48});
  config.inputDefs.push_back(
      {INPUT_DATA, "layer_1", /* dim= */ 4, /* paraSize= */ 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "gruStep", 100, /* trans= */ false, useGpu);
  }
}

TEST(Layer, LstmStepLayer) {
  TestConfig config;
  config.layerConfig.set_type("lstm_step");
  config.layerConfig.set_size(4);
  config.layerConfig.set_active_type("sigmoid");
  config.layerConfig.set_active_state_type("sigmoid");
  config.layerConfig.set_active_gate_type("sigmoid");
  config.biasSize = 12;
  config.testAccumulate = false;

  config.inputDefs.push_back(
      {INPUT_DATA, "layer_0", /* dim= */ 16, /* paraSize= */ 0});
  config.inputDefs.push_back(
      {INPUT_DATA, "layer_1", /* dim= */ 4, /* paraSize= */ 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "lstmStep", 100, /* trans= */ false, useGpu);
  }
}

void testBatchNormLayer(const string& type, bool trans, bool useGpu) {
  TestConfig config;
  const int CHANNELS = 10;
  const int IMG_SIZE = 16;
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  const int IMG_SIZE_Y = 8;
  size_t size = CHANNELS * IMG_SIZE * IMG_SIZE_Y;
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  config.layerConfig.set_type(type);
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  config.layerConfig.set_size(size);
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  config.layerConfig.set_active_type("sigmoid");
  config.biasSize = CHANNELS;
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  config.inputDefs.push_back({INPUT_DATA,
                              "layer_0",
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                              /* dim= */ size,
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                              /* paraSize= */ CHANNELS});

  config.inputDefs.push_back({INPUT_DATA, "layer_1_running_mean", 1, CHANNELS});
  config.inputDefs.back().isStatic = true;
  config.inputDefs.push_back({INPUT_DATA, "layer_2_running_var", 1, CHANNELS});
  config.inputDefs.back().isStatic = true;

  LayerInputConfig* input = config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  ImageConfig* img_conf = input->mutable_image_conf();
  img_conf->set_channels(CHANNELS);
  img_conf->set_img_size(IMG_SIZE);
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  img_conf->set_img_size_y(IMG_SIZE_Y);
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  testLayerGrad(config,
                "batch_norm",
                64,
                /* trans= */ trans,
                useGpu,
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                /* useWeight */ true);
}

TEST(Layer, BatchNormalizationLayer) {
  testBatchNormLayer("batch_norm", false, false);
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#ifdef PADDLE_WITH_CUDA
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  testBatchNormLayer("batch_norm", false, true);
  if (hl_get_cudnn_lib_version() >= int(4000)) {
    testBatchNormLayer("cudnn_batch_norm", false, true);
  }
#endif
}

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void testBatchNorm3DLayer(const string& type, bool trans, bool useGpu) {
  TestConfig config;
  const int CHANNELS = 10;
  const int IMG_SIZE = 16;
  const int IMG_SIZE_Y = 8;
  const int IMG_SIZE_Z = 8;
  size_t size = CHANNELS * IMG_SIZE * IMG_SIZE_Y * IMG_SIZE_Z;
  config.layerConfig.set_type(type);
  config.layerConfig.set_size(size);
  config.layerConfig.set_active_type("sigmoid");
  config.biasSize = CHANNELS;
  config.inputDefs.push_back({INPUT_DATA,
                              "layer_0",
                              /* dim= */ size,
                              /* paraSize= */ CHANNELS});

  config.inputDefs.push_back({INPUT_DATA, "layer_1_running_mean", 1, CHANNELS});
  config.inputDefs.back().isStatic = true;
  config.inputDefs.push_back({INPUT_DATA, "layer_2_running_var", 1, CHANNELS});
  config.inputDefs.back().isStatic = true;

  LayerInputConfig* input = config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  ImageConfig* img_conf = input->mutable_image_conf();
  img_conf->set_channels(CHANNELS);
  img_conf->set_img_size(IMG_SIZE);
  img_conf->set_img_size_y(IMG_SIZE_Y);
  img_conf->set_img_size_z(IMG_SIZE_Z);

  testLayerGrad(config,
                "batch_norm",
                64,
                /* trans= */ trans,
                useGpu,
                /* useWeight */ true);
}

TEST(Layer, testBatchNorm3DLayer) {
  testBatchNorm3DLayer("batch_norm", false, false);
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  testBatchNorm3DLayer("batch_norm", false, true);
  if (hl_get_cudnn_lib_version() >= int(4000)) {
    testBatchNorm3DLayer("cudnn_batch_norm", false, true);
  }
#endif
}

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void testConvOperator(bool isDeconv) {
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  TestConfig config;
  const int NUM_FILTERS = 16;
  const int FILTER_SIZE = 2;
  const int FILTER_SIZE_Y = 3;
  const int CHANNELS = 3;
  const int IMAGE_SIZE = 16;
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  const int IMAGE_SIZE_Y = 9;
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  OperatorConfig& operatorConf = *config.layerConfig.add_operator_confs();
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  if (isDeconv) {
    operatorConf.set_type("convt");
  } else {
    operatorConf.set_type("conv");
  }
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  ConvConfig* conv = operatorConf.mutable_conv_conf();
  operatorConf.set_num_filters(NUM_FILTERS);
  conv->set_filter_size(FILTER_SIZE);
  conv->set_filter_size_y(FILTER_SIZE_Y);
  conv->set_channels(CHANNELS);
  conv->set_padding(0);
  conv->set_padding_y(1);
  conv->set_stride(2);
  conv->set_stride_y(2);
  conv->set_groups(1);
  conv->set_img_size(IMAGE_SIZE);
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  conv->set_img_size_y(IMAGE_SIZE_Y);
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  conv->set_output_x(outputSize(conv->img_size(),
                                conv->filter_size(),
                                conv->padding(),
                                conv->stride(),
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                                /*  caffeMode */ true));
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  conv->set_output_y(outputSize(conv->img_size_y(),
                                conv->filter_size_y(),
                                conv->padding_y(),
                                conv->stride_y(),
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                                /*  caffeMode */ true));
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  if (isDeconv) {
    conv->set_filter_channels(NUM_FILTERS / conv->groups());
    config.inputDefs.push_back({INPUT_DATA,
                                "layer_0",
                                conv->output_x() * conv->output_y() * CHANNELS,
                                0});
    config.layerConfig.set_size(IMAGE_SIZE * IMAGE_SIZE_Y * NUM_FILTERS);
  } else {
    conv->set_filter_channels(conv->channels() / conv->groups());
    config.inputDefs.push_back(
        {INPUT_DATA, "layer_0", IMAGE_SIZE * IMAGE_SIZE_Y * CHANNELS, 0});
    config.layerConfig.set_size(conv->output_x() * conv->output_y() *
                                NUM_FILTERS);
  }

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  config.inputDefs.push_back(
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      {INPUT_DATA,
       "layer_1",
       FILTER_SIZE * FILTER_SIZE_Y * CHANNELS * NUM_FILTERS,
       0});
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  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  testOperatorGrad(config, operatorConf, 100, /*useGpu*/ true, false);
}

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TEST(Operator, conv) {
  testConvOperator(/*isDeconv*/ true);
  testConvOperator(/*isDeconv*/ false);
}

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TEST(Layer, FeatureMapExpandLayer) {
  TestConfig config;
  config.layerConfig.set_type("featmap_expand");
  const int CHANNELS = 10;
  const int INPUT_SIZE = 100;
  config.layerConfig.set_size(INPUT_SIZE * CHANNELS);
  config.layerConfig.set_num_filters(CHANNELS);
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  config.inputDefs.push_back({INPUT_SEQUENCE_DATA,
                              "layer_0",
                              /* dim= */ INPUT_SIZE,
                              /* paraSize= */ 0});
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  config.layerConfig.add_inputs();
  for (auto useGpu : {false, true}) {
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    for (auto asRowVec : {false, true}) {
      config.layerConfig.set_user_arg(asRowVec ? "as_row_vec" : "as_col_vec");
      testLayerGrad(config,
                    "featmap_expand",
                    /*batch_size*/ 100,
                    /* trans= */ false,
                    useGpu,
                    /* useWeight */ true);
    }
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  }
}

TEST(Layer, MultiplexLayer) {
  TestConfig config;
  const int LAYER_SIZE = 100;
  config.layerConfig.set_type("multiplex");
  config.layerConfig.set_size(LAYER_SIZE);

  config.inputDefs.push_back({INPUT_LABEL, "layer_0", 2, 0});
  config.inputDefs.push_back(
      {INPUT_DATA, "layer_1", /* dim= */ LAYER_SIZE, /* paraSize= */ 0});
  config.inputDefs.push_back(
      {INPUT_DATA, "layer_2", /* dim= */ LAYER_SIZE, /* paraSize= */ 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "multiplex", 512, /* trans= */ false, useGpu);
  }
}

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TEST(Layer, PadLayer) {
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  TestConfig config;
  config.biasSize = 0;
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  config.layerConfig.set_type("pad");
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  int c = 4;
  int h = 31;
  int w = 36;
  size_t size = c * h * w;
  config.inputDefs.push_back({INPUT_DATA, "layer_0", size, 0});
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  LayerInputConfig* input = config.layerConfig.add_inputs();
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  PadConfig* pad = input->mutable_pad_conf();
  ImageConfig* image = pad->mutable_image_conf();

  image->set_channels(c);
  image->set_img_size(h);
  image->set_img_size_y(w);
  pad->add_pad_c(1);
  pad->add_pad_c(2);
  pad->add_pad_h(2);
  pad->add_pad_h(3);
  pad->add_pad_w(3);
  pad->add_pad_w(5);
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  for (auto useGpu : {false, true}) {
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    testLayerGrad(config, "pad", 10, false, useGpu);
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  }
}

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TEST(Layer, CrossChannelNormLayer) {
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  TestConfig config;
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  config.paramInitialMean = 1.;
  config.paramInitialStd = 0.;
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  config.layerConfig.set_type("norm");
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  config.layerConfig.set_size(100);
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  LayerInputConfig* input = config.layerConfig.add_inputs();
  NormConfig* norm = input->mutable_norm_conf();
  norm->set_norm_type("cross-channel-norm");
  norm->set_channels(10);
  norm->set_size(100);
  norm->set_scale(0);
  norm->set_pow(0);
  norm->set_blocked(0);
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  config.inputDefs.push_back({INPUT_DATA, "layer_0", 100, 10});

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config, "cross-channel-norm", 10, false, useGpu, false);
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  }
}

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TEST(Layer, smooth_l1) {
  TestConfig config;
  config.layerConfig.set_type("smooth_l1");

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  config.inputDefs.push_back({INPUT_DATA, "layer_0", 200, 0});
  config.inputDefs.push_back({INPUT_DATA_TARGET, "layer_1", 200, 0});
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  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config, "smooth_l1", 100, false, useGpu, false);
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  }
}

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TEST(Layer, multibox_loss) {
  TestConfig config;
  config.layerConfig.set_type("multibox_loss");
  config.biasSize = 0;
  LayerInputConfig* input = config.layerConfig.add_inputs();
  MultiBoxLossConfig* multiboxLoss = input->mutable_multibox_loss_conf();
  multiboxLoss->set_num_classes(21);
  multiboxLoss->set_input_num(1);
  multiboxLoss->set_overlap_threshold(0.5);
  multiboxLoss->set_neg_pos_ratio(3);
  multiboxLoss->set_neg_overlap(0.5);
  multiboxLoss->set_background_id(0);
  multiboxLoss->set_height(3);
  multiboxLoss->set_width(3);

  size_t gtNum = 1;
  MatrixPtr labelValue = Matrix::create(gtNum, 6, false, false);
  labelValue->randomizeUniform();
  labelValue->add(-0.5);
  labelValue->sigmoid(*labelValue);
  real* labelData = labelValue->getData();
  size_t labelWidth = labelValue->getWidth();
  for (size_t i = 0; i < gtNum; ++i) {
    *(labelData + i * labelWidth) = std::rand() % 20 + 1;
    *(labelData + i * labelWidth + 1) = 0.400259;
    *(labelData + i * labelWidth + 2) = 0.377857;
    *(labelData + i * labelWidth + 3) = 0.525712;
    *(labelData + i * labelWidth + 4) = 0.519368;
  }
  vector<int> seqStartPositions(gtNum + 1, 0);
  for (size_t i = 1; i <= gtNum; ++i) {
    seqStartPositions[i] = i;
  }

  // Ensure at lease one matched bbox
  MatrixPtr priorValue = Matrix::create(1, 72, false, false);
  priorValue->randomizeUniform();
  priorValue->add(-0.5);
  priorValue->sigmoid(*priorValue);
  real* priorData = priorValue->getData();
  *(priorData) = 0.424811;
  *(priorData + 1) = 0.397059;
  *(priorData + 2) = 0.538905;
  *(priorData + 3) = 0.447091;
  *(priorData + 4) = 0.425720;
  *(priorData + 5) = 0.515228;
  *(priorData + 6) = 0.519452;
  *(priorData + 7) = 0.591065;

  config.inputDefs.push_back(
      {INPUT_SELF_DEFINE_DATA, "priorbox", priorValue, {}});
  config.inputDefs.push_back(
      {INPUT_SELF_DEFINE_DATA, "label", labelValue, seqStartPositions});
  config.inputDefs.push_back({INPUT_DATA, "locPred", 36, 0});
  config.inputDefs.push_back({INPUT_DATA, "confPred", 189, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "multibox_loss", 1, false, useGpu, false);
  }
}

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TEST(Layer, TransLayer) {
  TestConfig config;
  const int height = 128;
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  const int width = 256;
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  config.layerConfig.set_type("trans");
  config.layerConfig.set_size(width);

  config.inputDefs.push_back(
      {INPUT_DATA, "layer_0", /* dim= */ height * width, /* paraSize= */ 0});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "trans", height, /* trans= */ false, useGpu);
  }
}

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TEST(Layer, RowConvLayer) {
  const int context = 3;
  const int size = 512;

  TestConfig config;
  config.layerConfig.set_type("row_conv");
  config.layerConfig.set_size(size);
  config.layerConfig.set_active_type("sigmoid");

  config.inputDefs.push_back(
      {INPUT_SEQUENCE_DATA, "layer_0", size, context * size});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  RowConvConfig* conv = input->mutable_row_conv_conf();
  conv->set_context_length(context);

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "row_conv", 100, false, useGpu, false);
  }
}

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TEST(Layer, CropLayer) {
  TestConfig config;
  // config input_0
  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1024, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  ImageConfig* img = input->mutable_image_conf();
  img->set_channels(4);
  img->set_img_size(16);
  config.layerConfig.set_axis(2);
  config.layerConfig.add_offset(0);
  config.layerConfig.add_offset(0);

  // config input_1
  config.inputDefs.push_back({INPUT_DATA, "layer_1", 128, 0});
  input = config.layerConfig.add_inputs();
  img = input->mutable_image_conf();
  img->set_channels(2);
  img->set_img_size(8);

  // config crop layer
  config.layerConfig.set_type("crop");
  config.layerConfig.set_name("cropLayer");

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "crop", 100, false, useGpu, false);
  }
}

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TEST(Layer, roi_pool) {
  TestConfig config;
  config.layerConfig.set_type("roi_pool");
  config.biasSize = 0;
  LayerInputConfig* input = config.layerConfig.add_inputs();
  ROIPoolConfig* roiPoolConf = input->mutable_roi_pool_conf();
  roiPoolConf->set_pooled_width(7);
  roiPoolConf->set_pooled_height(7);
  roiPoolConf->set_spatial_scale(1. / 16);
  roiPoolConf->set_width(14);
  roiPoolConf->set_height(14);

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  const size_t roiNum = 10;
  const size_t roiDim = 10;
  const size_t batchSize = 5;
  MatrixPtr roiValue = Matrix::create(roiNum, roiDim, false, false);
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  roiValue->zeroMem();
  real* roiData = roiValue->getData();
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  for (size_t i = 0; i < roiNum; ++i) {
    roiData[i * roiDim + 0] = std::rand() % batchSize;
    roiData[i * roiDim + 1] = std::rand() % 224;  // xMin
    roiData[i * roiDim + 2] = std::rand() % 224;  // yMin
    size_t xMin = static_cast<size_t>(roiData[i * roiDim + 1]);
    size_t yMin = static_cast<size_t>(roiData[i * roiDim + 2]);
    roiData[i * roiDim + 3] = xMin + std::rand() % (224 - xMin);  // xMax
    roiData[i * roiDim + 4] = yMin + std::rand() % (224 - yMin);  // yMax
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  }

  config.inputDefs.push_back({INPUT_DATA, "input", 3 * 14 * 14, {}});
  config.inputDefs.push_back({INPUT_SELF_DEFINE_DATA, "rois", roiValue, {}});
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config, "roi_pool", batchSize, false, useGpu, false);
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  }
}

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TEST(Layer, SwitchOrderLayer) {
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  TestConfig config;
  // config input_0
  config.inputDefs.push_back({INPUT_DATA, "layer_0", 1024, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  ImageConfig* img = input->mutable_image_conf();
  img->set_channels(4);
  img->set_img_size(16);
  img->set_img_size_y(16);

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  ReshapeConfig* reshape = config.layerConfig.mutable_reshape_conf();
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  reshape->add_height_axis(0);
  reshape->add_height_axis(1);
  reshape->add_height_axis(2);
  reshape->add_width_axis(3);
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  // config softmax layer
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  config.layerConfig.set_type("switch_order");
  config.layerConfig.set_name("switchOrderLayer");
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  for (auto useGpu : {false, true}) {
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    testLayerGrad(config, "switch_order", 100, false, useGpu, true);
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  }
}

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vector<real> randSampling(real range, int n) {
  CHECK_GE(range, n);
  vector<real> num(range);
  iota(begin(num), end(num), 0.);
  if (range == n) return num;

  random_shuffle(begin(num), end(num));
  num.resize(n);
  sort(begin(num), end(num));
  return num;
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}

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TEST(Layer, SubNestedSequenceLayer) {
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  // layer size is not crutial for this layer,
  // so use a small layer size in unittest
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  const int layerSize = 4;

  const int maxSeqNum = 50;
  const int maxSeqLen = 50;
  const int maxBeamSize = 32;

  srand((size_t)(time(NULL)));
  int beamSize = 1 + (rand() % maxBeamSize);
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  TestConfig config;
  config.layerConfig.set_type("sub_nested_seq");
  config.layerConfig.set_name("sub_nested_seq_layer");
  config.layerConfig.set_size(layerSize);

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  int seqNum = 1 + (rand() % maxSeqNum);

  // sequence information for the first input, it is a nested sequence
  vector<int> seqStartPos(seqNum + 1, 0);
  vector<int> subSeqStartPos(1, 0);

  // selected indices
  MatrixPtr selectedIndices = Matrix::create(seqNum, beamSize, false, false);
  selectedIndices->one();
  selectedIndices->mulScalar(-1.);
  real* indicesData = selectedIndices->getData();

  for (int i = 0; i < seqNum; ++i) {
    int subSeqNum = 1 + (rand() % maxSeqNum);
    for (int j = 0; j < subSeqNum; ++j) {
      subSeqStartPos.push_back(subSeqStartPos.back() +
                               (1 + (rand() % maxSeqLen)));
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    }
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    vector<real> selSeqs =
        randSampling(static_cast<real>(subSeqNum), min(beamSize, subSeqNum));
    memcpy(indicesData + (i * beamSize),
           selSeqs.data(),
           selSeqs.size() * sizeof(real));
    seqStartPos[i + 1] = subSeqStartPos.back();
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  }

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  MatrixPtr seqInputPtr =
      Matrix::create(seqStartPos.back(), layerSize, false, false);
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  seqInputPtr->randomizeUniform();
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  config.inputDefs.push_back({INPUT_SELF_DEFINE_DATA,
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                              "nested_seq_input",
                              seqInputPtr,
                              seqStartPos,
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                              subSeqStartPos});
  config.layerConfig.add_inputs();
  config.inputDefs.push_back(
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      {INPUT_SELF_DEFINE_DATA, "selected_indices", selectedIndices});
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  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config,
                  "sub_nested_seq",
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                  /* batchSize */ seqNum,
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                  /* trans */ false,
                  /* useGpu*/ useGpu,
                  /* useWeight */ false);
  }
}

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TEST(Layer, ClipLayer) {
  const size_t batchSize = 128;
  const size_t size = 512;
  TestConfig config;
  config.layerConfig.set_type("clip");
  config.inputDefs.push_back({INPUT_DATA, "input", size, 0});
  LayerInputConfig* input = config.layerConfig.add_inputs();
  ClipConfig* layerConf = input->mutable_clip_conf();
  double p1 = std::rand() / (double)RAND_MAX;
  double p2 = std::rand() / (double)RAND_MAX;
  layerConf->set_min(std::min(p1, p2));
  layerConf->set_max(std::max(p1, p2));
  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "clip", batchSize, false, useGpu, false);
  }
}

TEST(Layer, RowL2NormLayer) {
  const size_t batchSize = 128;
  const size_t size = 512;
  TestConfig config;
  config.layerConfig.set_type("row_l2_norm");
  config.layerConfig.set_size(size);
  config.inputDefs.push_back({INPUT_DATA, "input", size, 0});
  config.layerConfig.add_inputs();
  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "row_l2_norm", batchSize, false, useGpu, false);
  }
}
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void test3DConvLayer(const string& type, bool trans, bool useGpu) {
  // filter size
  const int NUM_FILTERS = 6;
  // const int CHANNELS = 3;
  const int FILTER_SIZE = 3;
  const int FILTER_SIZE_Y = 3;
  const int FILTER_SIZE_Z = 3;

  // input image
  const int CHANNELS = 3;
  const int IMAGE_SIZE = 9;
  const int IMAGE_SIZE_Y = 9;
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  const int IMAGE_SIZE_Z = 9;
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  TestConfig config;
  config.biasSize = NUM_FILTERS;
  config.layerConfig.set_type(type);
  config.layerConfig.set_num_filters(NUM_FILTERS);
  config.layerConfig.set_partial_sum(1);
  config.layerConfig.set_shared_biases(true);

  // Setting up conv3D-trans layer
  LayerInputConfig* input = config.layerConfig.add_inputs();
  ConvConfig* conv = input->mutable_conv_conf();

  conv->set_channels(CHANNELS);
  conv->set_filter_size(FILTER_SIZE);
  conv->set_filter_size_y(FILTER_SIZE_Y);
  conv->set_filter_size_z(FILTER_SIZE_Z);
  conv->set_padding(0);
  conv->set_padding_y(0);
  conv->set_padding_z(0);
  conv->set_stride(2);
  conv->set_stride_y(2);
  conv->set_stride_z(2);
  conv->set_img_size(IMAGE_SIZE);
  conv->set_img_size_y(IMAGE_SIZE_Y);
  conv->set_img_size_z(IMAGE_SIZE_Z);
  conv->set_output_x(outputSize(conv->img_size(),
                                conv->filter_size(),
                                conv->padding(),
                                conv->stride(),
                                /*  caffeMode */ true));
  conv->set_output_y(outputSize(conv->img_size_y(),
                                conv->filter_size_y(),
                                conv->padding_y(),
                                conv->stride_y(),
                                /*  caffeMode */ true));
  conv->set_output_z(outputSize(conv->img_size_z(),
                                conv->filter_size_z(),
                                conv->padding_z(),
                                conv->stride_z(),
                                /*  caffeMode */ true));

  config.layerConfig.set_size(conv->output_x() * conv->output_y() *
                              conv->output_z() * NUM_FILTERS);
  conv->set_groups(1);
  conv->set_filter_channels(conv->channels() / conv->groups());
  config.inputDefs.push_back(
      {INPUT_DATA,
       "layer_0",
       CHANNELS * IMAGE_SIZE * IMAGE_SIZE_Y * IMAGE_SIZE_Z,
       conv->filter_channels() * FILTER_SIZE * FILTER_SIZE_Y * FILTER_SIZE_Z *
           NUM_FILTERS});

  testLayerGrad(config, "conv3D", 10, trans, useGpu);
  // Use small batch_size and useWeight=true to test biasGrad
  testLayerGrad(config, "conv3D", 2, trans, useGpu, true, 0.02);
}

TEST(Layer, test3DConvLayer) {
  test3DConvLayer("conv3d", /* trans= */ false, /* useGpu= */ false);
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  test3DConvLayer("conv3d", /* trans= */ false, /* useGpu= */ true);
#endif
}

void test3DDeConvLayer(const string& type, bool trans, bool useGpu) {
  // filter size
  const int NUM_FILTERS = 6;
  // const int CHANNELS = 3;
  const int FILTER_SIZE = 3;
  const int FILTER_SIZE_Y = 3;
  const int FILTER_SIZE_Z = 3;

  // input image
  const int CHANNELS = 3;
  const int IMAGE_SIZE = 4;
  const int IMAGE_SIZE_Y = 6;
  const int IMAGE_SIZE_Z = 6;

  // Setting up conv-trans layer
  TestConfig config;
  config.biasSize = NUM_FILTERS;
  config.layerConfig.set_type("deconv3d");
  config.layerConfig.set_num_filters(NUM_FILTERS);
  config.layerConfig.set_partial_sum(1);
  config.layerConfig.set_shared_biases(true);

  LayerInputConfig* input = config.layerConfig.add_inputs();
  ConvConfig* conv = input->mutable_conv_conf();

  conv->set_channels(CHANNELS);
  conv->set_filter_size(FILTER_SIZE);
  conv->set_filter_size_y(FILTER_SIZE_Y);
  conv->set_filter_size_z(FILTER_SIZE_Z);
  conv->set_padding(0);
  conv->set_padding_y(0);
  conv->set_padding_z(0);
  conv->set_stride(2);
  conv->set_stride_y(2);
  conv->set_stride_z(2);
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  conv->set_output_x(IMAGE_SIZE);
  conv->set_output_y(IMAGE_SIZE_Y);
  conv->set_output_z(IMAGE_SIZE_Z);

  conv->set_img_size(imageSize(conv->output_x(),
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                               conv->filter_size(),
                               conv->padding(),
                               conv->stride(),
                               true));
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  conv->set_img_size_y(imageSize(conv->output_y(),
                                 conv->filter_size_y(),
                                 conv->padding_y(),
                                 conv->stride_y(),
                                 true));
  conv->set_img_size_z(imageSize(conv->output_z(),
                                 conv->filter_size_z(),
                                 conv->padding_z(),
                                 conv->stride_z(),
                                 true));
  config.layerConfig.set_size(conv->img_size() * conv->img_size_y() *
                              conv->img_size_z() * NUM_FILTERS);
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  conv->set_groups(1);
  conv->set_filter_channels(conv->channels() / conv->groups());
  config.inputDefs.push_back(
      {INPUT_DATA,
       "layer_0",
       CHANNELS * IMAGE_SIZE * IMAGE_SIZE_Y * IMAGE_SIZE_Z,
       conv->filter_channels() * FILTER_SIZE * FILTER_SIZE_Y * FILTER_SIZE_Z *
           NUM_FILTERS});

  testLayerGrad(config, "deconv3D", 10, trans, useGpu);
  // Use small batch_size and useWeight=true to test biasGrad
  testLayerGrad(config, "deconv3D", 2, trans, useGpu, true, 0.02);
}

TEST(Layer, test3DDeConvLayer) {
  test3DDeConvLayer("deconv3d", /* trans= */ false, /* useGpu= */ false);
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  test3DDeConvLayer("deconv3d", /* trans= */ false, /* useGpu= */ true);
#endif
}

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TEST(Layer, ScaleShiftLayer) {
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  const size_t batchSize = 16;
  const size_t size = 32;
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  TestConfig config;
  config.layerConfig.set_type("scale_shift");
  config.layerConfig.set_size(size);
  config.biasSize = 1;
  config.inputDefs.push_back(
      {INPUT_DATA, "input", /* dim= */ size, /* paraSize= */ 1});
  config.layerConfig.add_inputs();
  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "scale_shift", batchSize, false, useGpu, false);
  }
}

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TEST(Layer, ScaleSubRegionLayer) {
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  const size_t batchSize = 64;
  const size_t size = 4096;
  TestConfig config;
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  config.layerConfig.set_type("scale_sub_region");
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  config.inputDefs.push_back({INPUT_DATA, "input", size, 0});
  MatrixPtr indicesV = Matrix::create(batchSize, 6, false, false);
  auto* data = indicesV->getData();
  for (size_t i = 0; i < batchSize; ++i) {
    data[i * 2] = 2;
    data[i * 2 + 1] = 4;
    data[i * 2 + 2] = 16;
    data[i * 2 + 3] = 32;
    data[i * 2 + 4] = 16;
    data[i * 2 + 5] = 32;
  }
  config.inputDefs.push_back({INPUT_SELF_DEFINE_DATA, "indices", indicesV, {}});
  LayerInputConfig* input = config.layerConfig.add_inputs();
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  ScaleSubRegionConfig* scaleSubRegionConf =
      input->mutable_scale_sub_region_conf();
  ImageConfig* imgConf = scaleSubRegionConf->mutable_image_conf();
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  imgConf->set_img_size(32);
  imgConf->set_img_size_y(32);
  imgConf->set_channels(4);
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  scaleSubRegionConf->set_value(2.0);
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  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
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    testLayerGrad(config, "scale_sub_region", batchSize, false, useGpu, false);
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  }
}

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TEST(Layer, L2DistanceLayer) {
  TestConfig config;
  config.layerConfig.set_type("l2_distance");
  config.layerConfig.set_size(1);
  config.biasSize = 0;

  const size_t input_dim = 27;
  const size_t batch_size = 11;

  config.inputDefs.push_back({INPUT_DATA, "layer_0", input_dim, 0});
  config.inputDefs.push_back({INPUT_DATA, "layer_1", input_dim, 0});
  config.layerConfig.add_inputs();
  config.layerConfig.add_inputs();

  for (auto useGpu : {false, true}) {
    testLayerGrad(config, "l2_distance", batch_size, false, useGpu);
  }
}

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void testFactorizationMachineLayer(InputType type, bool useGpu) {
  const int FACTOR_SIZE = 10;
  TestConfig config;
  config.layerConfig.set_type("factorization_machine");
  config.layerConfig.set_factor_size(FACTOR_SIZE);
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  config.layerConfig.set_size(1);
  config.biasSize = 0;
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  config.inputDefs.push_back({type, "layer_0", 128, 1280});
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  config.layerConfig.add_inputs();
  testLayerGrad(config, "factorization_machine", 16, false, useGpu, false);
}

TEST(Layer, FactorizationMachineLayer) {
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  for (auto useGpu : {false, true}) {
    testFactorizationMachineLayer(INPUT_DATA, useGpu);
  }
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  testFactorizationMachineLayer(INPUT_SPARSE_FLOAT_VALUE_DATA, false);
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}

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int main(int argc, char** argv) {
  testing::InitGoogleTest(&argc, argv);
  initMain(argc, argv);
  FLAGS_thread_local_rand_use_global_seed = true;
  srand(1);
  return RUN_ALL_TESTS();
}