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benchncnn.cpp 5.7 kB

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  1. #include <float.h>
  2. #include <stdio.h>
  3. #include "benchmark.h"
  4. #include "cpu.h"
  5. #include "net.h"
  6. namespace ncnn {
  7. // always return empty weights
  8. class ModelBinFromEmpty : public ModelBin
  9. {
  10. public:
  11. virtual Mat load(int w, int /*type*/) const { return Mat(w); }
  12. };
  13. class BenchNet : public Net
  14. {
  15. public:
  16. int load_model()
  17. {
  18. // load file
  19. int ret = 0;
  20. ModelBinFromEmpty mb;
  21. for (size_t i=0; i<layers.size(); i++)
  22. {
  23. Layer* layer = layers[i];
  24. int lret = layer->load_model(mb);
  25. if (lret != 0)
  26. {
  27. fprintf(stderr, "layer load_model %d failed\n", (int)i);
  28. ret = -1;
  29. break;
  30. }
  31. }
  32. return ret;
  33. }
  34. };
  35. } // namespace ncnn
  36. static int g_loop_count = 4;
  37. void benchmark(const char* comment, void (*init)(ncnn::Net&), void (*run)(const ncnn::Net&))
  38. {
  39. ncnn::BenchNet net;
  40. init(net);
  41. net.load_model();
  42. // warm up
  43. run(net);
  44. double time_min = DBL_MAX;
  45. double time_max = -DBL_MAX;
  46. double time_avg = 0;
  47. for (int i=0; i<g_loop_count; i++)
  48. {
  49. double start = ncnn::get_current_time();
  50. run(net);
  51. double end = ncnn::get_current_time();
  52. double time = end - start;
  53. time_min = std::min(time_min, time);
  54. time_max = std::max(time_max, time);
  55. time_avg += time;
  56. }
  57. time_avg /= g_loop_count;
  58. fprintf(stderr, "%16s min = %7.2f max = %7.2f avg = %7.2f\n", comment, time_min, time_max, time_avg);
  59. }
  60. void squeezenet_init(ncnn::Net& net)
  61. {
  62. net.load_param("squeezenet.param");
  63. }
  64. void squeezenet_run(const ncnn::Net& net)
  65. {
  66. ncnn::Extractor ex = net.create_extractor();
  67. ncnn::Mat in(227, 227, 3);
  68. ex.input("data", in);
  69. ncnn::Mat out;
  70. ex.extract("prob", out);
  71. }
  72. void mobilenet_init(ncnn::Net& net)
  73. {
  74. net.load_param("mobilenet.param");
  75. }
  76. void mobilenet_run(const ncnn::Net& net)
  77. {
  78. ncnn::Extractor ex = net.create_extractor();
  79. ncnn::Mat in(224, 224, 3);
  80. ex.input("data", in);
  81. ncnn::Mat out;
  82. ex.extract("prob", out);
  83. }
  84. void mobilenet_v2_init(ncnn::Net& net)
  85. {
  86. net.load_param("mobilenet_v2.param");
  87. }
  88. void mobilenet_v2_run(const ncnn::Net& net)
  89. {
  90. ncnn::Extractor ex = net.create_extractor();
  91. ncnn::Mat in(224, 224, 3);
  92. ex.input("data", in);
  93. ncnn::Mat out;
  94. ex.extract("prob", out);
  95. }
  96. void shufflenet_init(ncnn::Net& net)
  97. {
  98. net.load_param("shufflenet.param");
  99. }
  100. void shufflenet_run(const ncnn::Net& net)
  101. {
  102. ncnn::Extractor ex = net.create_extractor();
  103. ncnn::Mat in(224, 224, 3);
  104. ex.input("data", in);
  105. ncnn::Mat out;
  106. ex.extract("fc1000", out);
  107. }
  108. void googlenet_init(ncnn::Net& net)
  109. {
  110. net.load_param("googlenet.param");
  111. }
  112. void googlenet_run(const ncnn::Net& net)
  113. {
  114. ncnn::Extractor ex = net.create_extractor();
  115. ncnn::Mat in(224, 224, 3);
  116. ex.input("data", in);
  117. ncnn::Mat out;
  118. ex.extract("prob", out);
  119. }
  120. void resnet18_init(ncnn::Net& net)
  121. {
  122. net.load_param("resnet18.param");
  123. }
  124. void resnet18_run(const ncnn::Net& net)
  125. {
  126. ncnn::Extractor ex = net.create_extractor();
  127. ncnn::Mat in(224, 224, 3);
  128. ex.input("data", in);
  129. ncnn::Mat out;
  130. ex.extract("prob", out);
  131. }
  132. void alexnet_init(ncnn::Net& net)
  133. {
  134. net.load_param("alexnet.param");
  135. }
  136. void alexnet_run(const ncnn::Net& net)
  137. {
  138. ncnn::Extractor ex = net.create_extractor();
  139. ncnn::Mat in(227, 227, 3);
  140. ex.input("data", in);
  141. ncnn::Mat out;
  142. ex.extract("prob", out);
  143. }
  144. void vgg16_init(ncnn::Net& net)
  145. {
  146. net.load_param("vgg16.param");
  147. }
  148. void vgg16_run(const ncnn::Net& net)
  149. {
  150. ncnn::Extractor ex = net.create_extractor();
  151. ncnn::Mat in(224, 224, 3);
  152. ex.input("data", in);
  153. ncnn::Mat out;
  154. ex.extract("prob", out);
  155. }
  156. void squeezenet_ssd_init(ncnn::Net& net)
  157. {
  158. net.load_param("squeezenet_ssd.param");
  159. }
  160. void squeezenet_ssd_run(const ncnn::Net& net)
  161. {
  162. ncnn::Extractor ex = net.create_extractor();
  163. ncnn::Mat in(227, 227, 3);
  164. ex.input("data", in);
  165. ncnn::Mat out;
  166. ex.extract("detection_out", out);
  167. }
  168. void mobilenet_ssd_init(ncnn::Net& net)
  169. {
  170. net.load_param("mobilenet_ssd.param");
  171. }
  172. void mobilenet_ssd_run(const ncnn::Net& net)
  173. {
  174. ncnn::Extractor ex = net.create_extractor();
  175. ncnn::Mat in(227, 227, 3);
  176. ex.input("data", in);
  177. ncnn::Mat out;
  178. ex.extract("detection_out", out);
  179. }
  180. int main(int argc, char** argv)
  181. {
  182. int loop_count = 4;
  183. int num_threads = ncnn::get_cpu_count();
  184. int powersave = 0;
  185. if (argc >= 2)
  186. {
  187. loop_count = atoi(argv[1]);
  188. }
  189. if (argc >= 3)
  190. {
  191. num_threads = atoi(argv[2]);
  192. }
  193. if (argc >= 4)
  194. {
  195. powersave = atoi(argv[3]);
  196. }
  197. g_loop_count = loop_count;
  198. ncnn::set_cpu_powersave(powersave);
  199. ncnn::set_omp_dynamic(0);
  200. ncnn::set_omp_num_threads(num_threads);
  201. fprintf(stderr, "loop_count = %d\n", g_loop_count);
  202. fprintf(stderr, "num_threads = %d\n", num_threads);
  203. fprintf(stderr, "powersave = %d\n", ncnn::get_cpu_powersave());
  204. // run
  205. benchmark("squeezenet", squeezenet_init, squeezenet_run);
  206. benchmark("mobilenet", mobilenet_init, mobilenet_run);
  207. benchmark("mobilenet_v2", mobilenet_v2_init, mobilenet_v2_run);
  208. benchmark("shufflenet", shufflenet_init, shufflenet_run);
  209. benchmark("googlenet", googlenet_init, googlenet_run);
  210. benchmark("resnet18", resnet18_init, resnet18_run);
  211. benchmark("alexnet", alexnet_init, alexnet_run);
  212. benchmark("vgg16", vgg16_init, vgg16_run);
  213. benchmark("squeezenet-ssd", squeezenet_ssd_init, squeezenet_ssd_run);
  214. benchmark("mobilenet-ssd", mobilenet_ssd_init, mobilenet_ssd_run);
  215. return 0;
  216. }