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conv_bias.h 6.5 kB

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  1. /**
  2. * \file dnn/test/common/conv_bias.h
  3. * MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
  4. *
  5. * Copyright (c) 2014-2021 Megvii Inc. All rights reserved.
  6. *
  7. * Unless required by applicable law or agreed to in writing,
  8. * software distributed under the License is distributed on an
  9. * "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  10. */
  11. #pragma once
  12. #include "megdnn/basic_types.h"
  13. #include "megdnn/opr_param_defs.h"
  14. #include "test/common/checker.h"
  15. #include "src/fallback/conv_bias/opr_impl.h"
  16. #include <regex>
  17. namespace megdnn {
  18. namespace test {
  19. namespace conv_bias {
  20. struct TestArg {
  21. param::ConvBias param;
  22. TensorShape src, filter, bias;
  23. TestArg(param::ConvBias param, TensorShape src, TensorShape filter,
  24. TensorShape bias)
  25. : param(param), src(src), filter(filter), bias(bias) {}
  26. };
  27. std::vector<TestArg> get_args();
  28. std::vector<TestArg> get_args_1x1();
  29. std::vector<TestArg> get_chanwise_args();
  30. std::vector<TestArg> get_winograd_args(size_t kernel_size);
  31. std::vector<TestArg> get_winograd_mk_packed_args(size_t pack_size = 4);
  32. std::vector<TestArg> get_quantized_winograd_mk_packed_args(
  33. size_t pack_size = 4, bool compute_float32 = false);
  34. std::vector<TestArg> get_quantized_args_with_nlmode(
  35. param::ConvBias::NonlineMode nlmode);
  36. std::vector<TestArg> get_quantized_args();
  37. std::vector<TestArg> get_int8_nchw4_args(size_t kernel_size);
  38. std::vector<TestArg> get_int8_nchw4_args_check_bounds(size_t kernel_size);
  39. std::vector<TestArg> get_int8_nchw4_small_channel_args(size_t kernel_size);
  40. std::vector<TestArg> get_int8_nchw4_small_channel_args_check_bounds(size_t kernel_size);
  41. std::vector<TestArg> get_int8_nchw4_args_small_batch(size_t kernel_size);
  42. std::vector<TestArg> get_int8_chwn4_args(size_t kernel_size);
  43. std::vector<TestArg> get_int8_chwn4_args_check_bounds(size_t kernel_size);
  44. std::vector<TestArg> get_int8_chwn4_small_channel_args(size_t kernel_size);
  45. std::vector<TestArg> get_int8_chwn4_small_channel_args_check_bounds(size_t kernel_size);
  46. std::vector<TestArg> get_int8_chwn4_args_small_batch(size_t kernel_size);
  47. std::vector<TestArg> get_int8_nchw4_tensorcore_args(size_t kernel_size);
  48. std::vector<TestArg> get_int8_chwn4_tensorcore_args(size_t kernel_size);
  49. std::vector<TestArg> get_int8_nchw44_args(
  50. size_t kernel_size, size_t pack_size, bool compute_float32 = false,
  51. bool group_mode = false);
  52. void check_conv_bias_preprocess(
  53. std::vector<conv_bias::TestArg> args, Handle* handle, RNG* rng, float epsilon,
  54. DType type0, DType type1, DType type2, DType type3, const char* algo_name);
  55. template <typename Opr>
  56. using ConvBiasAlgoChecker = AlgoChecker<Opr>;
  57. void check_conv_bias(
  58. DType src_dtype, DType filter_dtype, DType bias_dtype, DType dst_dtype,
  59. Handle* handle, const char* algo = nullptr,
  60. param::ConvBias::Format format = param::ConvBias::Format::NCHW4,
  61. const std::vector<TestArg>& args = {}, bool fuse_z = false,
  62. bool stable_test = false);
  63. #if MEGDNN_WITH_BENCHMARK
  64. std::vector<conv_bias::TestArg> get_winograd_benchmark_args(
  65. size_t kernel, size_t pack_size = 1);
  66. void benchmark_winograd(
  67. const char* algo_name, megdnn::Handle* handle, size_t kernel,
  68. size_t pack_size = 1);
  69. #endif // MEGDNN_WITH_BENCHMARK
  70. std::vector<megdnn::test::conv_bias::TestArg> get_conv_bias_args(
  71. std::vector<size_t> kernel, size_t stride, bool no_pad, bool no_bias,
  72. bool no_nonlinemode, bool quantized_nlmod = false,
  73. bool only_broadcast_bias = false);
  74. std::vector<megdnn::test::conv_bias::TestArg> get_conv_bias_1x1_args(
  75. bool no_bias, bool no_nonlinemode, bool quantized_nlmod = false,
  76. bool only_broadcast_bias = false);
  77. void check_conv_bias(
  78. std::vector<megdnn::test::conv_bias::TestArg> args, megdnn::Handle* handle,
  79. const char* algo_name);
  80. void checker_conv_bias_int8x8x16(
  81. std::vector<megdnn::test::conv_bias::TestArg> args, megdnn::Handle* handle,
  82. const char* algo_name);
  83. void checker_conv_bias_common(
  84. std::vector<conv_bias::TestArg> args, Handle* handle, RNG* rng, float epsilon,
  85. DType type0, DType type1, DType type2, DType type3, const char* algo_name);
  86. std::vector<conv_bias::TestArg> get_nchw44_conv_bias_args(
  87. std::vector<size_t> kernel_vec,
  88. std::vector<param::ConvBias::NonlineMode> nlmode_vec,
  89. std::vector<megdnn::BiasMode> biasmode_vec, size_t stride, bool no_pad = false,
  90. bool is_input_nchw = false, bool is_nchw44_dot = false);
  91. void checker_conv_bias_mul_int8x8x32(
  92. std::vector<conv_bias::TestArg> args, Handle* handle, const char* algo_name);
  93. void checker_conv_bias_int8x8x32_preprocess(
  94. std::vector<conv_bias::TestArg> args, Handle* handle, const char* algo_name);
  95. #define FULL_NLMODE \
  96. { \
  97. param::ConvBias::NonlineMode::IDENTITY, param::ConvBias::NonlineMode::RELU, \
  98. param::ConvBias::NonlineMode::H_SWISH, \
  99. param::ConvBias::NonlineMode::SIGMOID \
  100. }
  101. #define QUAN_NLMODE \
  102. { \
  103. param::ConvBias::NonlineMode::IDENTITY, param::ConvBias::NonlineMode::RELU, \
  104. param::ConvBias::NonlineMode::H_SWISH \
  105. }
  106. #define ONLY_IDENTITY_NLMODE \
  107. { param::ConvBias::NonlineMode::IDENTITY }
  108. #define ALL_BIASMODE \
  109. { \
  110. megdnn::BiasMode::NO_BIAS, megdnn::BiasMode::BROADCAST_CHANNEL_BIAS, \
  111. megdnn::BiasMode::BIAS \
  112. }
  113. #define BR_AND_NO_BIASMODE \
  114. { megdnn::BiasMode::NO_BIAS, megdnn::BiasMode::BROADCAST_CHANNEL_BIAS }
  115. #define BR_AND_BIAS_BIASMODE \
  116. { megdnn::BiasMode::NO_BIAS, megdnn::BiasMode::BIAS }
  117. #define ONLY_BR_BIASMODE \
  118. { megdnn::BiasMode::BROADCAST_CHANNEL_BIAS }
  119. #define ONLY_NO_BIASMODE \
  120. { megdnn::BiasMode::NO_BIAS }
  121. #define ONLY_BIAS_BIASMODE \
  122. { megdnn::BiasMode::BIAS }
  123. } // namespace conv_bias
  124. } // namespace test
  125. } // namespace megdnn
  126. // vim: syntax=cpp.doxygen

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