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convolution.cpp 39 kB

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  1. /**
  2. * \file dnn/test/cuda/convolution.cpp
  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
  10. * implied.
  11. */
  12. #include "megdnn/dtype.h"
  13. #include "megdnn/oprs.h"
  14. #include "megdnn/opr_param_defs.h"
  15. #include "test/cuda/fixture.h"
  16. #include "test/common/tensor.h"
  17. #include "test/common/workspace_wrapper.h"
  18. #include "test/common/checker.h"
  19. #include "test/common/convolution.h"
  20. #include "test/common/rng.h"
  21. #include "test/cuda/benchmark.h"
  22. #include "src/cuda/utils.h"
  23. #include "test/common/accuracy_shake_checker.h"
  24. #define V1(x) #x
  25. #define V(x) V1(x)
  26. #define CUDNN_VERSION_STRING \
  27. "v" V(CUDNN_MAJOR) "." V(CUDNN_MINOR) "." V(CUDNN_PATCHLEVEL)
  28. namespace megdnn {
  29. namespace test {
  30. TEST_F(CUDA, CONVOLUTION_8X8X32) {
  31. if (!cuda::is_compute_capability_required(6, 1)) {
  32. printf("Skip CUDA.CONVOLUTION_8X8X32 test as current device"
  33. "doesn't support\n");
  34. return;
  35. }
  36. using namespace convolution;
  37. std::vector<TestArg> args;
  38. {
  39. auto v = get_args();
  40. for (auto&& a : v) {
  41. args.push_back(std::move(a));
  42. }
  43. }
  44. {
  45. auto v = get_dilated_args();
  46. for (auto&& a : v) {
  47. args.push_back(std::move(a));
  48. }
  49. }
  50. {
  51. auto v = get_chanwise_args();
  52. for (auto&& a : v) {
  53. args.push_back(std::move(a));
  54. }
  55. }
  56. Checker<ConvolutionForward> checker(handle_cuda());
  57. UniformIntRNG rng(-4, 4);
  58. for (auto arg : args) {
  59. arg.param.format = param::Convolution::Format::NHWC;
  60. arg.src = cvt_src_or_dst_nchw2nhwc(arg.src);
  61. arg.filter = cvt_filter_nchw2nhwc(arg.filter);
  62. checker.set_dtype(0, dtype::Int8())
  63. .set_dtype(1, dtype::Int8())
  64. .set_dtype(2, dtype::Int32())
  65. .set_param(arg.param)
  66. .set_rng(0, &rng)
  67. .set_rng(1, &rng)
  68. .execs({arg.src, arg.filter, {}});
  69. }
  70. }
  71. TEST_F(CUDA, CONVOLUTION_FORWARD) {
  72. using namespace convolution;
  73. std::vector<TestArg> args = get_args();
  74. Checker<ConvolutionForward> checker(handle_cuda());
  75. NormalRNG default_rng;
  76. for (auto&& arg : args) {
  77. float scale =
  78. 1.0f / sqrt(arg.filter[1] * arg.filter[2] * arg.filter[3]);
  79. UniformFloatRNG rng(scale, 2 * scale);
  80. checker.set_dtype(0, dtype::Float32())
  81. .set_dtype(1, dtype::Float32())
  82. .set_dtype(2, dtype::Float32())
  83. .set_rng(0, &default_rng)
  84. .set_rng(1, &default_rng)
  85. .set_epsilon(1e-3)
  86. .set_param(arg.param)
  87. .execs({arg.src, arg.filter, {}});
  88. checker.set_dtype(0, dtype::Float16())
  89. .set_dtype(1, dtype::Float16())
  90. .set_dtype(2, dtype::Float16())
  91. .set_rng(0, &rng)
  92. .set_rng(1, &rng)
  93. .set_epsilon(1e-1)
  94. .set_param(arg.param)
  95. .execs({arg.src, arg.filter, {}});
  96. arg.param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  97. checker.set_dtype(0, dtype::Float16())
  98. .set_dtype(1, dtype::Float16())
  99. .set_dtype(2, dtype::Float16())
  100. .set_rng(0, &rng)
  101. .set_rng(1, &rng)
  102. .set_epsilon(1e-1)
  103. .set_param(arg.param)
  104. .execs({arg.src, arg.filter, {}});
  105. checker.set_dtype(0, dtype::BFloat16())
  106. .set_dtype(1, dtype::BFloat16())
  107. .set_dtype(2, dtype::BFloat16())
  108. .set_epsilon(1e-1)
  109. .set_param(arg.param)
  110. .execs({arg.src, arg.filter, {}});
  111. }
  112. }
  113. TEST_F(CUDA, CONV_FORWARD_MATMUL_NCHW4) {
  114. if (!cuda::is_compute_capability_required(6, 1))
  115. return;
  116. using namespace convolution;
  117. Checker<Convolution> checker(handle_cuda());
  118. UniformIntRNG int_rng{-127, 127};
  119. Convolution::Param param;
  120. param.format = Convolution::Param::Format::NCHW4;
  121. checker.set_dtype(0, dtype::QuantizedS8(0.132f))
  122. .set_dtype(1, dtype::QuantizedS8(0.0239f))
  123. .set_dtype(2, dtype::QuantizedS32(0.132f * 0.0239f))
  124. .set_rng(0, &int_rng)
  125. .set_rng(1, &int_rng)
  126. .set_param(param);
  127. checker.set_before_exec_callback(
  128. AlgoChecker<ConvolutionForward>(ExecutionPolicyAlgoName{
  129. "DEFAULT",
  130. {{ConvBiasForward::algo_name<ConvBiasForward::MatmulParam>(
  131. "MATMUL8X8X32", {})
  132. .c_str(),
  133. {}}}}));
  134. param.sparse = Convolution::Param::Sparse::DENSE;
  135. param.pad_h = param.pad_w = 1;
  136. param.stride_h = param.stride_w = 1;
  137. checker.set_param(param);
  138. checker.exec({{8, 4, 10, 10, 4}, {16, 4, 3, 3, 4}, {}});
  139. checker.exec({{1, 4, 2, 2, 4}, {16, 4, 3, 3, 4}, {}});
  140. checker.exec({{8, 64, 12, 12, 4}, {256, 64, 3, 3, 4}, {}});
  141. }
  142. TEST_F(CUDA, CONVOLUTION_1X1_FORWARD) {
  143. using namespace convolution;
  144. std::vector<TestArg> args = get_1x1_args();
  145. Checker<ConvolutionForward> checker(handle_cuda());
  146. NormalRNG default_rng;
  147. for (auto&& arg : args) {
  148. float scale =
  149. 1.0f / sqrt(arg.filter[1] * arg.filter[2] * arg.filter[3]);
  150. UniformFloatRNG rng(scale, 2 * scale);
  151. checker.set_dtype(0, dtype::Float32())
  152. .set_dtype(1, dtype::Float32())
  153. .set_rng(0, &default_rng)
  154. .set_rng(1, &default_rng)
  155. .set_epsilon(1e-3)
  156. .set_param(arg.param)
  157. .execs({arg.src, arg.filter, {}});
  158. }
  159. }
  160. TEST_F(CUDA, BENCHMARK_CONVOLUTION_1X1_FORWARD) {
  161. using namespace convolution;
  162. std::vector<TestArg> args = get_1x1_args();
  163. Benchmarker<ConvolutionForward> marker(handle_cuda());
  164. NormalRNG default_rng;
  165. for (auto&& arg : args) {
  166. float scale =
  167. 1.0f / sqrt(arg.filter[1] * arg.filter[2] * arg.filter[3]);
  168. UniformFloatRNG rng(scale, 2 * scale);
  169. marker.set_dtype(0, dtype::Float32())
  170. .set_dtype(1, dtype::Float32())
  171. .set_rng(0, &default_rng)
  172. .set_rng(1, &default_rng)
  173. .set_param(arg.param)
  174. .execs({arg.src, arg.filter, {}});
  175. }
  176. }
  177. TEST_F(CUDA, CONVOLUTION_BACKWARD_DATA) {
  178. using namespace convolution;
  179. std::vector<TestArg> args = get_args_cuda_conv_bwd_data();
  180. Checker<ConvolutionBackwardData> checker(handle_cuda());
  181. NormalRNG default_rng;
  182. for (auto&& arg : args) {
  183. float scale =
  184. 64.f / sqrt(arg.filter[0] * arg.filter[2] * arg.filter[3]);
  185. UniformFloatRNG rng(scale, 2 * scale);
  186. auto src = TensorLayout(arg.src, dtype::Float32());
  187. auto filter = TensorLayout(arg.filter, dtype::Float32());
  188. TensorLayout dst;
  189. {
  190. auto opr = handle_cuda()->create_operator<Convolution>();
  191. opr->param() = arg.param;
  192. opr->deduce_layout(src, filter, dst);
  193. }
  194. src.dtype = dst.dtype = filter.dtype = dtype::Float32();
  195. checker.set_rng(0, &default_rng)
  196. .set_rng(1, &default_rng)
  197. .set_epsilon(1e-3)
  198. .set_param(arg.param)
  199. .exec(TensorLayoutArray{filter, dst, src});
  200. if (!cuda::is_compute_capability_required(6, 0)) {
  201. src.dtype = dst.dtype = filter.dtype = dtype::Float16();
  202. checker.set_rng(0, &rng)
  203. .set_rng(1, &rng)
  204. .set_epsilon(1e-1)
  205. .set_param(arg.param)
  206. .exec(TensorLayoutArray{filter, dst, src});
  207. arg.param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  208. checker.set_rng(0, &rng)
  209. .set_rng(1, &rng)
  210. .set_epsilon(1e-1)
  211. .set_param(arg.param)
  212. .exec(TensorLayoutArray{filter, dst, src});
  213. }
  214. checker.set_before_exec_callback(AlgoChecker<ConvolutionBackwardData>(
  215. ExecutionPolicyAlgoName{"CONVOLUTION_BACKWARD_DATD_BFLOAT16",
  216. {{"MATMUL", {{"CUBLAS", {}}}}}}));
  217. src.dtype = dst.dtype = filter.dtype = dtype::BFloat16();
  218. arg.param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  219. checker.set_rng(0, &rng)
  220. .set_rng(1, &rng)
  221. .set_epsilon(1e-1)
  222. .set_param(arg.param)
  223. .exec(TensorLayoutArray{filter, dst, src});
  224. checker.reset_before_exec_callback();
  225. checker.opr()->execution_policy() = {};
  226. }
  227. }
  228. TEST_F(CUDA, CONVOLUTION_BACKWARD_DATA_CUDNN) {
  229. if (cuda::is_compute_capability_required(7, 0))
  230. return;
  231. using namespace convolution;
  232. Checker<ConvolutionBackwardData> checker(handle_cuda());
  233. checker.set_before_exec_callback(AlgoChecker<ConvolutionBackwardData>(
  234. "CUDNN_CONVOLUTION"));
  235. //! noncontiguous case
  236. {
  237. param::Convolution param;
  238. param.pad_h = param.pad_w = 1;
  239. checker.set_param(param).execl(TensorLayoutArray{
  240. {{16, 16, 3, 3}, {144, 9, 3, 1}, dtype::Float32()},
  241. {{2, 16, 7, 7}, {1568, 49, 7, 1}, dtype::Float32()},
  242. {{2, 16, 7, 7}, {1568, 49, 7, 1}, dtype::Float32()},
  243. });
  244. }
  245. }
  246. TEST_F(CUDA, CONVOLUTION_BACKWARD_DATA_MATMUL) {
  247. using namespace convolution;
  248. std::vector<TestArg> args = get_args_cuda_conv_bwd_data();
  249. Checker<ConvolutionBackwardData> checker(handle_cuda());
  250. checker.set_before_exec_callback(AlgoChecker<ConvolutionBackwardData>(
  251. ExecutionPolicyAlgoName{"MATMUL", {{"CUBLAS", {}}}}));
  252. NormalRNG default_rng;
  253. for (auto&& arg : args) {
  254. float scale =
  255. 64.f / sqrt(arg.filter[0] * arg.filter[2] * arg.filter[3]);
  256. UniformFloatRNG rng(scale, 2 * scale);
  257. auto src = TensorLayout(arg.src, dtype::Float32());
  258. auto filter = TensorLayout(arg.filter, dtype::Float32());
  259. TensorLayout dst;
  260. {
  261. auto opr = handle_cuda()->create_operator<Convolution>();
  262. opr->param() = arg.param;
  263. opr->deduce_layout(src, filter, dst);
  264. }
  265. src.dtype = dst.dtype = filter.dtype = dtype::Float32();
  266. checker.set_rng(0, &default_rng)
  267. .set_rng(1, &default_rng)
  268. .set_epsilon(1e-3)
  269. .set_param(arg.param)
  270. .exec(TensorLayoutArray{filter, dst, src});
  271. }
  272. //! noncontiguous case
  273. {
  274. param::Convolution param;
  275. param.pad_h = param.pad_w = 1;
  276. checker.set_param(param).execl(TensorLayoutArray{
  277. {{16, 16, 3, 3}, {144, 9, 3, 1}, dtype::Float32()},
  278. {{2, 16, 7, 7}, {1568, 49, 7, 1}, dtype::Float32()},
  279. {{2, 16, 7, 7}, {1568, 49, 7, 1}, dtype::Float32()},
  280. });
  281. }
  282. }
  283. TEST_F(CUDA, CONVOLUTION_BACKWARD_DATA_INT8_NCHW4_DP4A) {
  284. if (!cuda::is_compute_capability_required(6, 1)) {
  285. printf("Skip CUDA.CONVOLUTION_BACKWARD_DATA_INT8_NCHW4_DP4A test as "
  286. "current device doesn't support\n");
  287. return;
  288. }
  289. using namespace convolution;
  290. std::vector<TestArg> args = get_args_int8_nchw4_conv_bwd_data();
  291. struct AlgoParam {
  292. int threadblock_m;
  293. int threadblock_n;
  294. int threadblock_k;
  295. int warp_m;
  296. int warp_n;
  297. int warp_k;
  298. int stage;
  299. std::string to_string() {
  300. return ssprintf("_%dX%dX%d_%dX%dX%d_%dstage", threadblock_m,
  301. threadblock_n, threadblock_k, warp_m, warp_n,
  302. warp_k, stage);
  303. }
  304. };
  305. std::vector<AlgoParam> all_params;
  306. all_params.emplace_back(AlgoParam{16, 64, 8, 16, 64, 8, 2});
  307. all_params.emplace_back(AlgoParam{16, 128, 16, 16, 64, 16, 2});
  308. all_params.emplace_back(AlgoParam{16, 128, 16, 16, 128, 16, 1});
  309. all_params.emplace_back(AlgoParam{32, 128, 32, 32, 64, 32, 2});
  310. all_params.emplace_back(AlgoParam{64, 128, 32, 64, 32, 32, 2});
  311. for (auto algo_param : all_params) {
  312. Checker<ConvolutionBackwardData> checker(handle_cuda());
  313. std::string algo_name(ssprintf("INT8_NCHW4_DOTPROD_IMPLICIT_GEMM%s",
  314. algo_param.to_string().c_str()));
  315. checker.set_before_exec_callback(
  316. AlgoChecker<ConvolutionBackwardData>(algo_name.c_str()));
  317. checker.set_epsilon(1 + 1e-3).set_max_avg_error(1e-1);
  318. for (auto&& arg : args) {
  319. UniformIntRNG rng(-3, 3);
  320. auto src = TensorLayout(arg.src, dtype::QuantizedS8{1.2f});
  321. auto filter = TensorLayout(arg.filter, dtype::QuantizedS8{1.3f});
  322. TensorLayout dst;
  323. dst.dtype = dtype::QuantizedS8{1.2f};
  324. {
  325. auto opr = handle_cuda()->create_operator<Convolution>();
  326. opr->param() = arg.param;
  327. opr->deduce_layout(src, filter, dst);
  328. }
  329. checker.set_rng(0, &rng).set_rng(1, &rng).set_param(arg.param).exec(
  330. TensorLayoutArray{filter, dst, src});
  331. }
  332. }
  333. }
  334. TEST_F(CUDA, CONVOLUTION_BACKWARD_DATA_INT8_NCHW_DP4A) {
  335. if (!cuda::is_compute_capability_required(6, 1)) {
  336. printf("Skip CUDA.CONVOLUTION_BACKWARD_DATA_INT8_NCHW_DP4A test as "
  337. "current device doesn't support\n");
  338. return;
  339. }
  340. using namespace convolution;
  341. std::vector<TestArg> args = get_args_int8_nchw_conv_bwd_data();
  342. Checker<ConvolutionBackwardData> checker(handle_cuda());
  343. checker.set_before_exec_callback(AlgoChecker<ConvolutionBackwardData>(
  344. "INT8_NCHW_DOTPROD_IMPLICIT_GEMM"));
  345. checker.set_epsilon(1 + 1e-3).set_max_avg_error(1e-1);
  346. for (auto&& arg : args) {
  347. UniformIntRNG rng(-3, 3);
  348. auto src = TensorLayout(arg.src, dtype::QuantizedS8{1.2f});
  349. auto filter = TensorLayout(arg.filter, dtype::QuantizedS8{1.3f});
  350. TensorLayout dst;
  351. dst.dtype = dtype::QuantizedS8{1.2f};
  352. {
  353. auto opr = handle_cuda()->create_operator<Convolution>();
  354. opr->param() = arg.param;
  355. opr->deduce_layout(src, filter, dst);
  356. }
  357. checker.set_rng(0, &rng).set_rng(1, &rng).set_param(arg.param).exec(
  358. TensorLayoutArray{filter, dst, src});
  359. }
  360. }
  361. TEST_F(CUDA, CONVOLUTION_BACKWARD_DATA_FAILED_CUDNN7_5) {
  362. // BRAIN-481 failed on architectures 7.0, remove the following if statement,
  363. // when cudnn fixed the problem.
  364. if (cuda::is_compute_capability_required(7, 0))
  365. return;
  366. using namespace convolution;
  367. std::vector<TestArg> args = get_args_cudnn_7_5_failures();
  368. Checker<ConvolutionBackwardData> checker(handle_cuda());
  369. NormalRNG default_rng;
  370. for (auto&& arg : args) {
  371. float scale =
  372. 128.f / sqrt(arg.filter[0] * arg.filter[2] * arg.filter[3]);
  373. scale = std::max(scale, 1.f);
  374. UniformFloatRNG rng(scale, 2 * scale);
  375. auto src = TensorLayout(arg.src, dtype::Float32());
  376. auto filter = TensorLayout(arg.filter, dtype::Float32());
  377. TensorLayout dst;
  378. {
  379. auto opr = handle_cuda()->create_operator<Convolution>();
  380. opr->param() = arg.param;
  381. opr->deduce_layout(src, filter, dst);
  382. }
  383. src.dtype = dst.dtype = filter.dtype = dtype::Float32();
  384. checker.set_rng(0, &default_rng)
  385. .set_rng(1, &default_rng)
  386. .set_epsilon(1e-3)
  387. .set_param(arg.param)
  388. .exec(TensorLayoutArray{filter, dst, src});
  389. src.dtype = dst.dtype = filter.dtype = dtype::Float16();
  390. checker.set_rng(0, &rng)
  391. .set_rng(1, &rng)
  392. .set_epsilon(1e-1)
  393. .set_param(arg.param)
  394. .exec(TensorLayoutArray{filter, dst, src});
  395. arg.param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  396. checker.set_rng(0, &rng)
  397. .set_rng(1, &rng)
  398. .set_epsilon(1e-1)
  399. .set_param(arg.param)
  400. .exec(TensorLayoutArray{filter, dst, src});
  401. }
  402. }
  403. TEST_F(CUDA, CONVOLUTION_BACKWARD_FILTER) {
  404. using namespace convolution;
  405. std::vector<TestArg> args = get_args();
  406. Checker<ConvolutionBackwardFilter> checker(handle_cuda());
  407. bool f16_checked = false;
  408. for (auto&& arg : args) {
  409. auto src = TensorLayout(arg.src, dtype::Float32());
  410. auto filter = TensorLayout(arg.filter, dtype::Float32());
  411. TensorLayout dst;
  412. {
  413. auto opr = handle_cuda()->create_operator<Convolution>();
  414. opr->param() = arg.param;
  415. opr->deduce_layout(src, filter, dst);
  416. }
  417. float scale = 1.0f / sqrt(dst[2] * dst[3]);
  418. UniformFloatRNG rng(scale, 2 * scale);
  419. src.dtype = dst.dtype = filter.dtype = dtype::Float32();
  420. checker.set_rng(0, &rng)
  421. .set_rng(1, &rng)
  422. .set_epsilon(1e-3)
  423. .set_param(arg.param)
  424. .exec(TensorLayoutArray{src, dst, filter});
  425. // reduce on large f16 array may introduce significant error
  426. if (dst.total_nr_elems() >= 1000 && f16_checked)
  427. continue;
  428. f16_checked = true;
  429. src.dtype = dst.dtype = filter.dtype = dtype::Float16();
  430. checker.set_rng(0, &rng)
  431. .set_rng(1, &rng)
  432. .set_epsilon(1e-1)
  433. .set_param(arg.param)
  434. .exec(TensorLayoutArray{src, dst, filter});
  435. arg.param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  436. checker.set_rng(0, &rng)
  437. .set_rng(1, &rng)
  438. .set_epsilon(1e-1)
  439. .set_param(arg.param)
  440. .exec(TensorLayoutArray{src, dst, filter});
  441. checker.set_before_exec_callback(AlgoChecker<ConvolutionBackwardFilter>(
  442. ExecutionPolicyAlgoName{"CONVOLUTION_BACKWARD_FILTER_BFLOAT16",
  443. {{"MATMUL", {{"CUBLAS", {}}}}}}));
  444. src.dtype = dst.dtype = filter.dtype = dtype::BFloat16();
  445. checker.set_rng(0, &rng)
  446. .set_rng(1, &rng)
  447. .set_epsilon(1e-1)
  448. .set_param(arg.param)
  449. .exec(TensorLayoutArray{src, dst, filter});
  450. checker.reset_before_exec_callback();
  451. checker.opr()->execution_policy() = {};
  452. }
  453. }
  454. TEST_F(CUDA, CONVOLUTION_BACKWARD_FILTER_MATMUL) {
  455. using namespace convolution;
  456. std::vector<TestArg> args = get_args();
  457. Checker<ConvolutionBackwardFilter> checker(handle_cuda());
  458. checker.set_before_exec_callback(AlgoChecker<ConvolutionBackwardFilter>(
  459. ExecutionPolicyAlgoName{"MATMUL", {{"CUBLAS", {}}}}));
  460. for (auto&& arg : args) {
  461. auto src = TensorLayout(arg.src, dtype::Float32());
  462. auto filter = TensorLayout(arg.filter, dtype::Float32());
  463. TensorLayout dst;
  464. {
  465. auto opr = handle_cuda()->create_operator<Convolution>();
  466. opr->param() = arg.param;
  467. opr->deduce_layout(src, filter, dst);
  468. }
  469. float scale = 1.0f / sqrt(dst[2] * dst[3]);
  470. UniformFloatRNG rng(scale, 2 * scale);
  471. src.dtype = dst.dtype = filter.dtype = dtype::Float32();
  472. checker.set_rng(0, &rng)
  473. .set_rng(1, &rng)
  474. .set_epsilon(1e-3)
  475. .set_param(arg.param)
  476. .exec(TensorLayoutArray{src, dst, filter});
  477. }
  478. //! noncontiguous case
  479. {
  480. NormalRNG default_rng;
  481. param::Convolution param;
  482. param.pad_h = param.pad_w = 1;
  483. checker.set_rng(0, &default_rng)
  484. .set_rng(1, &default_rng)
  485. .set_param(param)
  486. .execl(TensorLayoutArray{
  487. {{2, 16, 7, 7}, {1568, 49, 7, 1}, dtype::Float32()},
  488. {{2, 16, 7, 7}, {1568, 49, 7, 1}, dtype::Float32()},
  489. {{16, 16, 3, 3}, {144, 9, 3, 1}, dtype::Float32()}});
  490. }
  491. }
  492. TEST_F(CUDA, CONVOLUTION_BACKWARD_FILTER_CUDNN) {
  493. if (cuda::is_compute_capability_required(7, 0))
  494. return;
  495. using namespace convolution;
  496. Checker<ConvolutionBackwardFilter> checker(handle_cuda());
  497. checker.set_before_exec_callback(AlgoChecker<ConvolutionBackwardFilter>(
  498. "CUDNN_CONVOLUTION"));
  499. //! noncontiguous case
  500. {
  501. param::Convolution param;
  502. param.pad_h = param.pad_w = 1;
  503. checker.set_param(param).execl(TensorLayoutArray{
  504. {{2, 16, 7, 7}, {1568, 49, 7, 1}, dtype::Float32()},
  505. {{2, 16, 7, 7}, {1568, 49, 7, 1}, dtype::Float32()},
  506. {{16, 16, 3, 3}, {144, 9, 3, 1}, dtype::Float32()}
  507. });
  508. }
  509. }
  510. TEST_F(CUDA, CONV_CONFIG_COMBINATIONS) {
  511. auto eps_getter = [](bool f16, int stage, const char* name) -> float {
  512. if (f16) {
  513. return stage == 2 ? 0.5 : 0.2;
  514. }
  515. if (strstr(name, "WINOGRAD_NONFUSED"))
  516. return 0.3;
  517. return 1e-3;
  518. };
  519. convolution::test_conv_config_combinations(2, handle_cuda(), false, true,
  520. true, eps_getter, true);
  521. convolution::test_conv_config_combinations(3, handle_cuda(), false, true,
  522. true, eps_getter, true);
  523. convolution::test_conv_config_combinations(5, handle_cuda(), false, true,
  524. true, eps_getter, true);
  525. }
  526. TEST_F(CUDA, CONVOLUTION_BACKWARD_DATA_1) {
  527. if (cuda::is_compute_capability_required(7, 0))
  528. return;
  529. using namespace convolution;
  530. Checker<ConvolutionBackwardData> checker(handle_cuda());
  531. checker.set_before_exec_callback(AlgoChecker<ConvolutionBackwardData>(
  532. "CUDNN_CONVOLUTION_BWD_DATA_ALGO_1" CUDNN_VERSION_STRING));
  533. NormalRNG default_rng;
  534. TensorShape s_filter = TensorShape{8, 8, 2, 2},
  535. s_src = TensorShape{2, 8, 18, 18};
  536. float scale = 1.0f / sqrt(s_filter[0] * s_filter[2] * s_filter[3]);
  537. UniformFloatRNG rng(scale, 2 * scale);
  538. auto src = TensorLayout(s_src, dtype::Float16());
  539. auto filter = TensorLayout(s_filter, dtype::Float16());
  540. TensorLayout dst;
  541. param::Convolution param;
  542. param.pad_h = param.pad_w = 2;
  543. param.stride_h = param.stride_w = 2;
  544. {
  545. auto opr = handle_cuda()->create_operator<Convolution>();
  546. opr->param() = param;
  547. opr->deduce_layout(src, filter, dst);
  548. }
  549. src.dtype = dst.dtype = filter.dtype = dtype::Float16();
  550. param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  551. checker.set_rng(0, &rng)
  552. .set_rng(1, &rng)
  553. .set_epsilon(0.2)
  554. .set_param(param)
  555. .exec(TensorLayoutArray{filter, dst, src});
  556. }
  557. #if MEGDNN_WITH_BENCHMARK
  558. TEST_F(CUDA, CONV_FWD_BENCHMARK) {
  559. auto run = [&](size_t N, size_t OC, size_t IC, size_t IH, size_t IW,
  560. size_t SH = 1, size_t SW = 1, size_t FH = 1, size_t FW = 1,
  561. size_t PH = 0, size_t PW = 0, bool fp16io_c32 = false) {
  562. auto benchmarker = Benchmarker<ConvolutionForward>(handle_cuda());
  563. benchmarker.set_dtype(0, dtype::Float16())
  564. .set_dtype(1, dtype::Float16())
  565. .set_dtype(2, dtype::Float16());
  566. ConvolutionForward::Param param;
  567. param.stride_h = SH;
  568. param.stride_w = SW;
  569. param.pad_h = PH;
  570. param.pad_w = PW;
  571. if (fp16io_c32) {
  572. param.compute_mode =
  573. ConvolutionForward::Param::ComputeMode::FLOAT32;
  574. }
  575. benchmarker.set_param(param);
  576. std::unique_ptr<OprProxy<ConvolutionForward>> proxy{
  577. new OprProxy<ConvolutionForward>{true}};
  578. benchmarker.set_proxy(proxy);
  579. size_t OH = (IH - FH + 2 * PH) / SH + 1;
  580. size_t OW = (IW - FW + 2 * PW) / SW + 1;
  581. auto time = benchmarker.execs(
  582. {{N, IC, IH, IW}, {OC, IC, FH, FW}, {N, OC, OH, OW}});
  583. time /= 1000.0 * 10.0;
  584. auto flo = (double)N * OC * IC * OH * OW * FH * FW * 2;
  585. auto flops = flo / time / 1e12;
  586. printf("comp_type %s: ", fp16io_c32 ? "32" : "16");
  587. printf("%.3fG FLO, flops %.3fTFLOPS\n", flo / 1e9, flops);
  588. };
  589. run(32, 512, 256, 56, 56, 1, 1, 1, 1, 0, 0, false);
  590. run(32, 512, 256, 56, 56, 1, 1, 1, 1, 0, 0, true);
  591. }
  592. TEST_F(CUDA, CONVOLUTION_FWD_BENCHMARK) {
  593. CUBenchmarker<ConvolutionForward> bench{handle_cuda()};
  594. std::unique_ptr<OprProxy<ConvolutionForward>> proxy{
  595. new OprProxy<ConvolutionForward>{true}};
  596. size_t RUNS = 10;
  597. bench.set_proxy(proxy).set_times(RUNS);
  598. auto run = [&](size_t N, size_t OC, size_t IC, size_t IH, size_t IW,
  599. size_t FH, size_t SH, size_t PH) {
  600. bench.set_dtype(0, dtype::Float32())
  601. .set_dtype(1, dtype::Float32())
  602. .set_dtype(2, dtype::Float32());
  603. param::Convolution param;
  604. param.stride_h = param.stride_w = SH;
  605. param.pad_h = param.pad_w = PH;
  606. param.compute_mode = param::Convolution::ComputeMode::DEFAULT;
  607. bench.set_param(param);
  608. bench.proxy()->target_execution_policy.algo.reset();
  609. TensorLayout src{{N, IC, IH, IW}, dtype::Float32()},
  610. filter{{OC, IC, FH, FH}, dtype::Float32()};
  611. TensorLayout dst;
  612. {
  613. auto&& opr = handle_cuda()->create_operator<Convolution>();
  614. opr->param() = param;
  615. opr->deduce_layout(src, filter, dst);
  616. }
  617. auto time_ms_fp32 = bench.execl({src, filter, dst}) / RUNS;
  618. src.dtype = filter.dtype = dst.dtype = dtype::Float16();
  619. bench.proxy()->target_execution_policy.algo.reset();
  620. bench.set_dtype(0, dtype::Float16())
  621. .set_dtype(1, dtype::Float16())
  622. .set_dtype(2, dtype::Float16());
  623. auto time_ms_true_fp16 = bench.execl({src, filter, dst}) / RUNS;
  624. param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  625. bench.proxy()->target_execution_policy.algo.reset();
  626. bench.set_param(param);
  627. auto time_ms_pseudo_fp16 = bench.execl({src, filter, dst}) / RUNS;
  628. float flo = 2.0 * N * OC * IC * dst[2] * dst[3] * FH * FH;
  629. printf("inp=%s, kern=%s, dst=%s ", src.to_string().c_str(),
  630. filter.to_string().c_str(), dst.to_string().c_str());
  631. printf("time_fp32=%.2fms, flops=%.3fTFLOPS\ntime_true_fp16=%.2fms, "
  632. "flops=%.3fTFLOPS\ntime_pseudo_fp16=%.2fms, flops=%.3fFLOPS\n",
  633. time_ms_fp32, (flo / (time_ms_fp32 * 1e9)), time_ms_true_fp16,
  634. (flo / (time_ms_true_fp16 * 1e9)), time_ms_pseudo_fp16,
  635. (flo / (time_ms_pseudo_fp16 * 1e9)));
  636. printf("speedup (true_fp16/fp32)=%.2f, (true_fp16/pseudo_fp16)=%.2f\n",
  637. time_ms_fp32 / time_ms_true_fp16,
  638. time_ms_pseudo_fp16 / time_ms_true_fp16);
  639. };
  640. run(32, 64, 3, 224, 224, 7, 2, 3);
  641. run(32, 128, 128, 28, 28, 3, 1, 1);
  642. run(32, 256, 256, 14, 14, 3, 1, 1);
  643. run(32, 512, 512, 7, 7, 3, 1, 1);
  644. run(32, 64, 64, 56, 56, 3, 1, 1);
  645. run(32, 512, 256, 56, 56, 1, 2, 0);
  646. run(32, 1024, 512, 28, 28, 1, 2, 0);
  647. run(32, 2048, 1024, 14, 14, 1, 2, 0);
  648. run(32, 512, 128, 28, 28, 1, 1, 0);
  649. run(32, 128, 512, 28, 28, 1, 1, 0);
  650. run(32, 1024, 256, 14, 14, 1, 1, 0);
  651. run(32, 256, 1024, 14, 14, 1, 1, 0);
  652. run(32, 2048, 512, 7, 7, 1, 1, 0);
  653. run(32, 512, 2048, 7, 7, 1, 1, 0);
  654. run(32, 256, 64, 56, 56, 1, 1, 0);
  655. run(32, 64, 256, 56, 56, 1, 1, 0);
  656. run(32, 128, 256, 56, 56, 1, 2, 0);
  657. run(32, 256, 512, 28, 28, 1, 2, 0);
  658. run(32, 512, 1024, 14, 14, 1, 2, 0);
  659. run(32, 64, 64, 56, 56, 1, 1, 0);
  660. }
  661. TEST_F(CUDA, CONVOLUTION_BWD_DATA_BENCHMARK) {
  662. CUBenchmarker<ConvolutionBackwardData> bench{handle_cuda()};
  663. std::unique_ptr<OprProxy<ConvolutionBackwardData>> proxy{
  664. new OprProxy<ConvolutionBackwardData>{true}};
  665. size_t RUNS = 10;
  666. bench.set_proxy(proxy).set_times(RUNS);
  667. auto run = [&](size_t N, size_t OC, size_t IC, size_t IH, size_t IW,
  668. size_t FH, size_t SH, size_t PH) {
  669. bench.set_dtype(0, dtype::Float32())
  670. .set_dtype(1, dtype::Float32())
  671. .set_dtype(2, dtype::Float32());
  672. param::Convolution param;
  673. param.stride_h = param.stride_w = SH;
  674. param.pad_h = param.pad_w = PH;
  675. param.compute_mode = param::Convolution::ComputeMode::DEFAULT;
  676. bench.set_param(param);
  677. bench.proxy()->target_execution_policy.algo.reset();
  678. TensorLayout src{{N, IC, IH, IW}, dtype::Float32()},
  679. filter{{OC, IC, FH, FH}, dtype::Float32()};
  680. TensorLayout dst;
  681. {
  682. auto&& opr = handle_cuda()->create_operator<Convolution>();
  683. opr->param() = param;
  684. opr->deduce_layout(src, filter, dst);
  685. }
  686. auto time_ms_fp32 = bench.execl({filter, dst, src}) / RUNS;
  687. src.dtype = filter.dtype = dst.dtype = dtype::Float16();
  688. bench.proxy()->target_execution_policy.algo.reset();
  689. bench.set_dtype(0, dtype::Float16())
  690. .set_dtype(1, dtype::Float16())
  691. .set_dtype(2, dtype::Float16());
  692. auto time_ms_true_fp16 = bench.execl({filter, dst, src}) / RUNS;
  693. param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  694. bench.proxy()->target_execution_policy.algo.reset();
  695. bench.set_param(param);
  696. auto time_ms_pseudo_fp16 = bench.execl({filter, dst, src}) / RUNS;
  697. float flo = 2.0 * N * OC * IC * dst[2] * dst[3] * FH * FH;
  698. printf("inp=%s, kern=%s, dst=%s ", src.to_string().c_str(),
  699. filter.to_string().c_str(), dst.to_string().c_str());
  700. printf("time_fp32=%.2fms, flops=%.3fTFLOPS\ntime_true_fp16=%.2fms, "
  701. "flops=%.3fTFLOPS\ntime_pseudo_fp16=%.2fms, flops=%.3fFLOPS\n",
  702. time_ms_fp32, (flo / (time_ms_fp32 * 1e9)), time_ms_true_fp16,
  703. (flo / (time_ms_true_fp16 * 1e9)), time_ms_pseudo_fp16,
  704. (flo / (time_ms_pseudo_fp16 * 1e9)));
  705. printf("speedup (true_fp16/fp32)=%.2f, (true_fp16/pseudo_fp16)=%.2f\n",
  706. time_ms_fp32 / time_ms_true_fp16,
  707. time_ms_pseudo_fp16 / time_ms_true_fp16);
  708. };
  709. run(32, 64, 3, 224, 224, 7, 2, 3);
  710. run(32, 128, 128, 28, 28, 3, 1, 1);
  711. run(32, 256, 256, 14, 14, 3, 1, 1);
  712. run(32, 512, 512, 7, 7, 3, 1, 1);
  713. run(32, 64, 64, 56, 56, 3, 1, 1);
  714. run(32, 512, 256, 56, 56, 1, 2, 0);
  715. run(32, 1024, 512, 28, 28, 1, 2, 0);
  716. run(32, 2048, 1024, 14, 14, 1, 2, 0);
  717. run(32, 512, 128, 28, 28, 1, 1, 0);
  718. run(32, 128, 512, 28, 28, 1, 1, 0);
  719. run(32, 1024, 256, 14, 14, 1, 1, 0);
  720. run(32, 256, 1024, 14, 14, 1, 1, 0);
  721. run(32, 2048, 512, 7, 7, 1, 1, 0);
  722. run(32, 512, 2048, 7, 7, 1, 1, 0);
  723. run(32, 256, 64, 56, 56, 1, 1, 0);
  724. run(32, 64, 256, 56, 56, 1, 1, 0);
  725. run(32, 128, 256, 56, 56, 1, 2, 0);
  726. run(32, 256, 512, 28, 28, 1, 2, 0);
  727. run(32, 512, 1024, 14, 14, 1, 2, 0);
  728. run(32, 64, 64, 56, 56, 1, 1, 0);
  729. }
  730. TEST_F(CUDA, BENCHMARK_CONVOLUTION_BWD_DATA_BF16) {
  731. CUBenchmarker<ConvolutionBackwardData> bench{handle_cuda()};
  732. std::unique_ptr<OprProxy<ConvolutionBackwardData>> proxy{
  733. new OprProxy<ConvolutionBackwardData>{true}};
  734. size_t RUNS = 10;
  735. bench.set_proxy(proxy).set_times(RUNS);
  736. auto run = [&](size_t N, size_t OC, size_t IC, size_t IH, size_t IW,
  737. size_t FH, size_t SH, size_t PH) {
  738. bench.set_dtype(0, dtype::BFloat16())
  739. .set_dtype(1, dtype::BFloat16())
  740. .set_dtype(2, dtype::BFloat16());
  741. param::Convolution param;
  742. param.stride_h = param.stride_w = SH;
  743. param.pad_h = param.pad_w = PH;
  744. param.compute_mode = param::Convolution::ComputeMode::DEFAULT;
  745. bench.set_param(param);
  746. bench.proxy()->target_execution_policy = {};
  747. TensorLayout src{{N, IC, IH, IW}, dtype::BFloat16()},
  748. filter{{OC, IC, FH, FH}, dtype::BFloat16()};
  749. TensorLayout dst;
  750. {
  751. auto&& opr = handle_cuda()->create_operator<Convolution>();
  752. opr->param() = param;
  753. opr->deduce_layout(src, filter, dst);
  754. }
  755. auto used = bench.execl({filter, dst, src}) / RUNS;
  756. float flo = 2.0 * N * OC * IC * dst[2] * dst[3] * FH * FH;
  757. printf("inp=%s, kern=%s, dst=%s ", src.to_string().c_str(),
  758. filter.to_string().c_str(), dst.to_string().c_str());
  759. printf("time_fp32=%.2fms, flops=%.3fTFLOPS\n", used,
  760. (flo / (used * 1e9)));
  761. };
  762. run(32, 64, 3, 224, 224, 7, 2, 3);
  763. run(32, 128, 128, 28, 28, 3, 1, 1);
  764. run(32, 256, 256, 14, 14, 3, 1, 1);
  765. run(32, 512, 512, 7, 7, 3, 1, 1);
  766. run(32, 64, 64, 56, 56, 3, 1, 1);
  767. run(32, 512, 256, 56, 56, 1, 2, 0);
  768. run(32, 1024, 512, 28, 28, 1, 2, 0);
  769. run(32, 2048, 1024, 14, 14, 1, 2, 0);
  770. run(32, 512, 128, 28, 28, 1, 1, 0);
  771. run(32, 128, 512, 28, 28, 1, 1, 0);
  772. run(32, 1024, 256, 14, 14, 1, 1, 0);
  773. run(32, 256, 1024, 14, 14, 1, 1, 0);
  774. run(32, 2048, 512, 7, 7, 1, 1, 0);
  775. run(32, 512, 2048, 7, 7, 1, 1, 0);
  776. run(32, 256, 64, 56, 56, 1, 1, 0);
  777. run(32, 64, 256, 56, 56, 1, 1, 0);
  778. run(32, 128, 256, 56, 56, 1, 2, 0);
  779. run(32, 256, 512, 28, 28, 1, 2, 0);
  780. run(32, 512, 1024, 14, 14, 1, 2, 0);
  781. run(32, 64, 64, 56, 56, 1, 1, 0);
  782. }
  783. TEST_F(CUDA, BENCHMARK_CONVOLUTION_BWD_DATA_INT8_DP4A) {
  784. CUBenchmarker<ConvolutionBackwardData> bench{handle_cuda()};
  785. std::unique_ptr<OprProxy<ConvolutionBackwardData>> proxy{
  786. new OprProxy<ConvolutionBackwardData>{true}};
  787. size_t RUNS = 10;
  788. bench.set_proxy(proxy).set_times(RUNS);
  789. auto run = [&](size_t N, size_t OC, size_t IC, size_t IH, size_t IW,
  790. size_t FH, size_t SH, size_t PH) {
  791. bench.set_dtype(0, dtype::QuantizedS8{1.0f})
  792. .set_dtype(1, dtype::QuantizedS8{1.0f})
  793. .set_dtype(2, dtype::QuantizedS8{1.0f});
  794. param::Convolution param;
  795. param.format = param::Convolution::Format::NCHW4;
  796. param.stride_h = param.stride_w = SH;
  797. param.pad_h = param.pad_w = PH;
  798. param.compute_mode = param::Convolution::ComputeMode::DEFAULT;
  799. bench.set_param(param);
  800. bench.proxy()->target_execution_policy = {};
  801. TensorLayout src{{N, IC / 4, IH, IW, 4}, dtype::QuantizedS8{1.0f}},
  802. filter{{OC, IC / 4, FH, FH, 4}, dtype::QuantizedS8{1.0f}};
  803. TensorLayout dst;
  804. dst.dtype = dtype::QuantizedS8{1.0f};
  805. {
  806. auto&& opr = handle_cuda()->create_operator<Convolution>();
  807. opr->param() = param;
  808. opr->deduce_layout(src, filter, dst);
  809. }
  810. auto used = bench.execl({filter, dst, src}) / RUNS;
  811. float flo = 2.0 * N * OC * IC * dst[2] * dst[3] * FH * FH;
  812. printf("inp=%s, kern=%s, dst=%s ", src.to_string().c_str(),
  813. filter.to_string().c_str(), dst.to_string().c_str());
  814. printf("time_fp32=%.2fms, flops=%.3fTFLOPS\n", used,
  815. (flo / (used * 1e9)));
  816. };
  817. run(64, 32, 32, 92, 180, 4, 2, 2);
  818. run(64, 32, 32, 46, 80, 4, 2, 2);
  819. run(16, 16, 16, 92, 180, 4, 2, 2);
  820. run(16, 16, 16, 46, 80, 4, 2, 2);
  821. }
  822. TEST_F(CUDA, CONVOLUTION_BWD_FILTER_BENCHMARK) {
  823. CUBenchmarker<ConvolutionBackwardFilter> bench{handle_cuda()};
  824. std::unique_ptr<OprProxy<ConvolutionBackwardFilter>> proxy{
  825. new OprProxy<ConvolutionBackwardFilter>{true}};
  826. size_t RUNS = 10;
  827. bench.set_proxy(proxy).set_times(RUNS);
  828. auto run = [&](size_t N, size_t OC, size_t IC, size_t IH, size_t IW,
  829. size_t FH, size_t SH, size_t PH) {
  830. bench.set_dtype(0, dtype::Float32())
  831. .set_dtype(1, dtype::Float32())
  832. .set_dtype(2, dtype::Float32());
  833. param::Convolution param;
  834. param.stride_h = param.stride_w = SH;
  835. param.pad_h = param.pad_w = PH;
  836. param.compute_mode = param::Convolution::ComputeMode::DEFAULT;
  837. bench.set_param(param);
  838. bench.proxy()->target_execution_policy.algo.reset();
  839. TensorLayout src{{N, IC, IH, IW}, dtype::Float32()},
  840. filter{{OC, IC, FH, FH}, dtype::Float32()};
  841. TensorLayout dst;
  842. {
  843. auto&& opr = handle_cuda()->create_operator<Convolution>();
  844. opr->param() = param;
  845. opr->deduce_layout(src, filter, dst);
  846. }
  847. auto time_ms_fp32 = bench.execl({src, dst, filter}) / RUNS;
  848. src.dtype = filter.dtype = dst.dtype = dtype::Float16();
  849. bench.proxy()->target_execution_policy.algo.reset();
  850. bench.set_dtype(0, dtype::Float16())
  851. .set_dtype(1, dtype::Float16())
  852. .set_dtype(2, dtype::Float16());
  853. auto time_ms_true_fp16 = bench.execl({src, dst, filter}) / RUNS;
  854. param.compute_mode = param::Convolution::ComputeMode::FLOAT32;
  855. bench.proxy()->target_execution_policy.algo.reset();
  856. bench.set_param(param);
  857. auto time_ms_pseudo_fp16 = bench.execl({src, dst, filter}) / RUNS;
  858. float flo = 2.0 * N * OC * IC * dst[2] * dst[3] * FH * FH;
  859. printf("inp=%s, kern=%s, dst=%s ", src.to_string().c_str(),
  860. filter.to_string().c_str(), dst.to_string().c_str());
  861. printf("time_fp32=%.2fms, flops=%.3fTFLOPS\ntime_true_fp16=%.2fms, "
  862. "flops=%.3fTFLOPS\ntime_pseudo_fp16=%.2fms, flops=%.3fFLOPS\n",
  863. time_ms_fp32, (flo / (time_ms_fp32 * 1e9)), time_ms_true_fp16,
  864. (flo / (time_ms_true_fp16 * 1e9)), time_ms_pseudo_fp16,
  865. (flo / (time_ms_pseudo_fp16 * 1e9)));
  866. printf("speedup (true_fp16/fp32)=%.2f, (true_fp16/pseudo_fp16)=%.2f\n",
  867. time_ms_fp32 / time_ms_true_fp16,
  868. time_ms_pseudo_fp16 / time_ms_true_fp16);
  869. };
  870. run(32, 64, 3, 224, 224, 7, 2, 3);
  871. run(32, 128, 128, 28, 28, 3, 1, 1);
  872. run(32, 256, 256, 14, 14, 3, 1, 1);
  873. run(32, 512, 512, 7, 7, 3, 1, 1);
  874. run(32, 64, 64, 56, 56, 3, 1, 1);
  875. run(32, 512, 256, 56, 56, 1, 2, 0);
  876. run(32, 1024, 512, 28, 28, 1, 2, 0);
  877. run(32, 2048, 1024, 14, 14, 1, 2, 0);
  878. run(32, 512, 128, 28, 28, 1, 1, 0);
  879. run(32, 128, 512, 28, 28, 1, 1, 0);
  880. run(32, 1024, 256, 14, 14, 1, 1, 0);
  881. run(32, 256, 1024, 14, 14, 1, 1, 0);
  882. run(32, 2048, 512, 7, 7, 1, 1, 0);
  883. run(32, 512, 2048, 7, 7, 1, 1, 0);
  884. run(32, 256, 64, 56, 56, 1, 1, 0);
  885. run(32, 64, 256, 56, 56, 1, 1, 0);
  886. run(32, 128, 256, 56, 56, 1, 2, 0);
  887. run(32, 256, 512, 28, 28, 1, 2, 0);
  888. run(32, 512, 1024, 14, 14, 1, 2, 0);
  889. run(32, 64, 64, 56, 56, 1, 1, 0);
  890. }
  891. #endif
  892. #undef CUDNN_VERSION_STRING
  893. #undef V
  894. #undef V1
  895. } // namespace test
  896. } // namespace megdnn
  897. // vim: syntax=cpp.doxygen

MegEngine 安装包中集成了使用 GPU 运行代码所需的 CUDA 环境,不用区分 CPU 和 GPU 版。 如果想要运行 GPU 程序,请确保机器本身配有 GPU 硬件设备并安装好驱动。 如果你想体验在云端 GPU 算力平台进行深度学习开发的感觉,欢迎访问 MegStudio 平台