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matrix_mul.cpp 17 kB

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  1. /**
  2. * \file dnn/test/common/matrix_mul.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 "src/common/utils.h"
  13. #include "test/common/benchmarker.h"
  14. #include "test/common/checker.h"
  15. #include "test/common/matrix_mul.h"
  16. using namespace megdnn;
  17. using namespace test;
  18. constexpr size_t matrix_mul::TestArg::UNSET_STRIDE_VAL;
  19. std::vector<matrix_mul::TestArg> matrix_mul::get_matmul_args_no_mask() {
  20. std::vector<TestArg> args;
  21. for (size_t m : {1, 2, 3, 4, 5, 6, 7, 8, 11, 12, 15, 16, 32})
  22. for (size_t n : {1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13,
  23. 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 32})
  24. for (size_t k : {1, 2, 4, 8, 11, 12, 15, 16, 31, 32, 37})
  25. args.emplace_back(m, n, k, 0);
  26. for (size_t m : {1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17})
  27. args.emplace_back(m, m + 1, m + 2, 0);
  28. for (size_t mbase : {11})
  29. for (size_t test_case_offset : {64, 256, 512}) {
  30. size_t mnk = mbase + test_case_offset;
  31. args.emplace_back(mnk, mnk, mnk, 0);
  32. return args;
  33. }
  34. return args;
  35. }
  36. std::vector<matrix_mul::TestArg> matrix_mul::get_matmul_mk_packed_args(
  37. size_t nbase) {
  38. std::vector<TestArg> args;
  39. for (size_t m : {1, 2, 3, 4, 5, 6, 7, 8, 11})
  40. for (size_t n : {1, 2, 3, 4, 5, 8, 12, 16, 24})
  41. for (size_t k : {1, 2, 3, 4, 5, 9, 10, 11})
  42. args.emplace_back(m, n * nbase, k, 0);
  43. return args;
  44. }
  45. std::vector<matrix_mul::TestArg>
  46. matrix_mul::get_batched_matmul_args_cublaslt() {
  47. std::vector<TestArg> args;
  48. for (size_t m : {4, 6, 8, 16}) {
  49. for (size_t n : {4, 6, 8, 16}) {
  50. //[TODO]: the following test case are disabled due to the
  51. // cublasLt(version: 10020) produce wrong result when k in [65, 97],
  52. // so please uncomment it if the bug is fixed
  53. for (size_t k : {32, 64}) {
  54. args.emplace_back(m, n, k, 0, TestArg::UNSET_STRIDE_VAL,
  55. TestArg::UNSET_STRIDE_VAL,
  56. TestArg::UNSET_STRIDE_VAL, 2);
  57. }
  58. }
  59. }
  60. return args;
  61. }
  62. std::vector<matrix_mul::TestArg>
  63. matrix_mul::get_batched_matmul_args_int8x8x32() {
  64. std::vector<TestArg> args;
  65. for (size_t m : {1, 2, 3, 4, 5, 8, 64}) {
  66. for (size_t n : {1, 2, 3, 4, 5, 8, 64}) {
  67. for (size_t k : {1, 2, 3, 4, 5, 8, 64}) {
  68. args.emplace_back(m, n, k, 0, TestArg::UNSET_STRIDE_VAL,
  69. TestArg::UNSET_STRIDE_VAL,
  70. TestArg::UNSET_STRIDE_VAL, 2);
  71. }
  72. }
  73. }
  74. return args;
  75. }
  76. std::vector<matrix_mul::TestArg> matrix_mul::get_matmul_args_mask(
  77. uint8_t mask) {
  78. std::vector<TestArg> args;
  79. std::vector<TestArg> args_temp = matrix_mul::get_matmul_args_no_mask();
  80. for (auto arg : args_temp) {
  81. arg.mask = mask;
  82. args.emplace_back(arg);
  83. }
  84. // non-contiguous case
  85. for (size_t m : {110})
  86. for (size_t n : {119})
  87. for (size_t k : {120}) {
  88. // A: (m, k)
  89. size_t Astride = mask & 1 ? m + 2 : k + 2;
  90. // B: (k, n)
  91. size_t Bstride = mask & 2 ? k + 2 : n + 2;
  92. size_t Cstride = n * 2 + 2;
  93. args.emplace_back(m, n, k, mask, Astride, Bstride, Cstride);
  94. }
  95. return args;
  96. }
  97. std::vector<matrix_mul::TestArg> matrix_mul::get_matmul_args() {
  98. std::vector<TestArg> args;
  99. for (size_t mask = 0; mask < 4; ++mask) {
  100. std::vector<TestArg> args_temp = matrix_mul::get_matmul_args_mask(mask);
  101. for (auto arg : args_temp)
  102. args.emplace_back(arg);
  103. }
  104. return args;
  105. }
  106. std::vector<matrix_mul::TestArg> matrix_mul::get_matmul_args_split_k() {
  107. std::vector<TestArg> args = get_matmul_args();
  108. for (auto iter = args.begin(); iter < args.end();) {
  109. if (iter->k <= iter->n) {
  110. iter = args.erase(iter);
  111. } else {
  112. iter++;
  113. }
  114. }
  115. return args;
  116. }
  117. std::vector<matrix_mul::TestArg> matrix_mul::get_batched_matmul_args_mask(
  118. uint8_t mask) {
  119. std::vector<TestArg> args;
  120. for (size_t b : {1, 2, 3}) {
  121. std::vector<TestArg> args_temp =
  122. megdnn::test::matrix_mul::get_matmul_args_mask(mask);
  123. for (auto arg : args_temp) {
  124. arg.b = b;
  125. args.emplace_back(arg);
  126. }
  127. }
  128. return args;
  129. }
  130. std::vector<matrix_mul::TestArg> matrix_mul::get_batched_matmul_args() {
  131. std::vector<TestArg> args;
  132. for (size_t mask = 0; mask < 4; ++mask) {
  133. std::vector<TestArg> args_temp =
  134. matrix_mul::get_batched_matmul_args_mask(mask);
  135. for (auto arg : args_temp)
  136. args.emplace_back(arg);
  137. }
  138. return args;
  139. }
  140. std::vector<matrix_mul::TestArg>
  141. matrix_mul::get_batched_matmul_broadcast_args() {
  142. std::vector<TestArg> args;
  143. for (size_t mask = 0; mask < 4; ++mask) {
  144. std::vector<TestArg> args_temp =
  145. matrix_mul::get_batched_matmul_broadcast_args_mask(mask);
  146. for (auto arg : args_temp)
  147. args.emplace_back(arg);
  148. }
  149. return args;
  150. }
  151. std::vector<matrix_mul::TestArg>
  152. matrix_mul::get_batched_matmul_broadcast_args_mask(uint8_t mask) {
  153. std::vector<TestArg> args;
  154. std::vector<TestArg> args_temp =
  155. matrix_mul::get_batched_matmul_args_mask(mask);
  156. for (auto arg : args_temp) {
  157. args.emplace_back(arg);
  158. args.back().A_batch_stride = 0;
  159. }
  160. return args;
  161. }
  162. template <typename Opr>
  163. void matrix_mul::check_matrix_mul(DType A_dtype, DType B_dtype, DType C_dtype,
  164. Handle* handle,
  165. const ExecutionPolicyAlgoName& algo,
  166. param::MatrixMul::Format format, size_t nbase,
  167. float eps, std::vector<TestArg>&& user_args,
  168. bool force_deduce_dst) {
  169. megdnn_assert(A_dtype.enumv() == B_dtype.enumv());
  170. Checker<Opr> checker(handle);
  171. checker.set_force_deduce_dst(force_deduce_dst);
  172. if (!algo.name.empty()) {
  173. checker.set_before_exec_callback(AlgoChecker<Opr>(algo));
  174. }
  175. std::unique_ptr<RNG> rng;
  176. checker.set_epsilon(eps);
  177. if (A_dtype.enumv() == DTypeEnum::Int8 ||
  178. A_dtype.enumv() == DTypeEnum::QuantizedS8) {
  179. //! use larger rng to check the overflow
  180. rng = std::make_unique<UniformIntRNG>(-127, 127);
  181. } else if (A_dtype.enumv() == DTypeEnum::Uint8 ||
  182. A_dtype.enumv() == DTypeEnum::Quantized8Asymm) {
  183. rng = std::make_unique<NormalRNG>(128.f);
  184. } else if (A_dtype.enumv() == DTypeEnum::Int16) {
  185. rng = std::make_unique<UniformIntRNG>(-32767, 32767);
  186. } else if (A_dtype.enumv() == DTypeEnum::Float16) {
  187. rng = std::make_unique<NormalRNG>(2.f);
  188. //! if fp16 not set eps, default 1e-3, we just set it to 1e-2
  189. if (eps < 1e-2) {
  190. checker.set_epsilon(1e-2);
  191. }
  192. }
  193. if (rng) {
  194. checker.set_rng(0, rng.get()).set_rng(1, rng.get());
  195. }
  196. //! return expect if stride == -1, stride otherwise
  197. auto stride_val = [](size_t stride, size_t expect) -> size_t {
  198. if (stride == TestArg::UNSET_STRIDE_VAL) {
  199. return expect;
  200. } else {
  201. return stride;
  202. }
  203. };
  204. constexpr static bool batched =
  205. std::is_same<Opr, megdnn::BatchedMatrixMul>::value;
  206. using Param = MatrixMul::Param;
  207. std::vector<TestArg> args;
  208. if (user_args.empty()) {
  209. if (format == param::MatrixMul::Format::DEFAULT) {
  210. if (batched) {
  211. args = matrix_mul::get_batched_matmul_args();
  212. } else {
  213. args = matrix_mul::get_matmul_args();
  214. }
  215. } else {
  216. megdnn_assert(!batched,
  217. "BatchedMatrixMul does not support MK4/MK8");
  218. args = matrix_mul::get_matmul_mk_packed_args(nbase);
  219. }
  220. } else {
  221. args = user_args;
  222. }
  223. size_t pack_size = MatrixMulForward::pack_size(format);
  224. for (auto& arg : args) {
  225. size_t m = arg.m, n = arg.n, k = arg.k;
  226. if (handle->type() == Handle::HandleType::CUDA) {
  227. //! NOTE: cublas can only process 4B aligned 8-bit input matrix;
  228. bool is_dt_8bit = A_dtype.enumv() == DTypeEnum::Int8 ||
  229. A_dtype.enumv() == DTypeEnum::QuantizedS8 ||
  230. A_dtype.enumv() == DTypeEnum::Uint8 ||
  231. A_dtype.enumv() == DTypeEnum::Quantized8Asymm;
  232. if (is_dt_8bit && ((m % 4 != 0) || (n % 4 != 0))) {
  233. continue;
  234. }
  235. }
  236. Param param;
  237. param.transposeA = arg.mask & 0x1;
  238. param.transposeB = arg.mask & 0x2;
  239. param.format = format;
  240. checker.set_dtype(0, A_dtype)
  241. .set_dtype(1, B_dtype)
  242. .set_dtype(2, C_dtype);
  243. size_t A0 = m, A1 = k, B0 = k, B1 = n;
  244. TensorShape A, B;
  245. if (param.transposeA) {
  246. std::swap(A0, A1);
  247. }
  248. if (param.transposeB) {
  249. std::swap(B0, B1);
  250. }
  251. ptrdiff_t A_stride = arg.A_stride, B_stride = arg.B_stride,
  252. C_stride = arg.C_stride, A_batch_stride = arg.A_batch_stride,
  253. B_batch_stride = arg.B_batch_stride,
  254. C_batch_stride = arg.C_batch_stride;
  255. A_stride = stride_val(A_stride, A1);
  256. B_stride = stride_val(B_stride, B1);
  257. C_stride = stride_val(C_stride, n);
  258. A_batch_stride = stride_val(A_batch_stride, A0 * A_stride);
  259. B_batch_stride = stride_val(B_batch_stride, B0 * B_stride);
  260. C_batch_stride = stride_val(C_batch_stride, m * C_stride);
  261. checker.set_param(param);
  262. if (format == param::MatrixMul::Format::DEFAULT) {
  263. if (batched) {
  264. checker.execl({TensorLayout{{arg.b, A0, A1},
  265. {A_batch_stride, A_stride, 1},
  266. A_dtype},
  267. TensorLayout{{arg.b, B0, B1},
  268. {B_batch_stride, B_stride, 1},
  269. B_dtype},
  270. TensorLayout{{arg.b, m, n},
  271. {C_batch_stride, C_stride, 1},
  272. C_dtype}});
  273. } else {
  274. checker.execl({TensorLayout{{A0, A1}, {A_stride, 1}, A_dtype},
  275. TensorLayout{{B0, B1}, {B_stride, 1}, B_dtype},
  276. TensorLayout{{m, n}, {C_stride, 1}, C_dtype}});
  277. }
  278. } else {
  279. //! ignore non-contiguous, only DEFAULT format support
  280. //! non-contiguous input
  281. checker.execs(
  282. {{A0, A1, pack_size, pack_size}, {B0, B1, pack_size}, {}});
  283. }
  284. }
  285. }
  286. void matrix_mul::check_batched_matrix_mul(DType A_dtype, DType B_dtype,
  287. DType C_dtype, Handle* handle,
  288. const ExecutionPolicyAlgoName& algo,
  289. float eps,
  290. std::vector<TestArg>&& args,
  291. bool force_deduce_dst) {
  292. check_matrix_mul<megdnn::BatchedMatrixMul>(
  293. A_dtype, B_dtype, C_dtype, handle, algo,
  294. param::MatrixMul::Format::DEFAULT, 8, eps,
  295. std::forward<decltype(args)>(args), force_deduce_dst);
  296. }
  297. void matrix_mul::check_matrix_mul(DType A_dtype, DType B_dtype, DType C_dtype,
  298. Handle* handle,
  299. const ExecutionPolicyAlgoName& algo,
  300. param::MatrixMul::Format format, size_t nbase,
  301. float eps, bool force_deduce_dst) {
  302. check_matrix_mul<megdnn::MatrixMul>(A_dtype, B_dtype, C_dtype, handle, algo,
  303. format, nbase, eps, {},
  304. force_deduce_dst);
  305. }
  306. #if MEGDNN_WITH_BENCHMARK
  307. std::vector<matrix_mul::TestArg> matrix_mul::get_benchmark_matmul_args() {
  308. std::vector<matrix_mul::TestArg> args;
  309. args.emplace_back(256, 12 * 24, 256, 0);
  310. //////////////////////// gemv //////////////////////////
  311. for (size_t M : {8, 64, 112, 256}) {
  312. for (size_t K : {8, 64, 112, 256}) {
  313. args.emplace_back(M, 1, K, 0);
  314. }
  315. }
  316. //////////////////////// gemm //////////////////////////
  317. for (size_t M : {8, 64, 112, 256}) {
  318. for (size_t K : {8, 16, 32, 64, 112, 256}) {
  319. for (size_t N : {8, 64, 112, 256}) {
  320. args.emplace_back(M, N, K, 0);
  321. }
  322. }
  323. }
  324. return args;
  325. }
  326. std::vector<matrix_mul::TestArg>
  327. matrix_mul::get_benchmark_matmul_mk_packed_args(size_t nbase) {
  328. std::vector<TestArg> args;
  329. for (size_t m : {2, 4, 8, 16, 24, 32, 64})
  330. for (size_t n : {1, 2, 3, 4, 8, 16, 32, 64})
  331. for (size_t k : {2, 4, 8, 16, 24, 32, 64})
  332. args.emplace_back(m, n * nbase, k, 0);
  333. return args;
  334. }
  335. void matrix_mul::benchmark_with_contrast(
  336. Handle* handle, const std::vector<TestArg>& args, DType A_dtype,
  337. DType B_dtype, DType C_dtype, const char* algo,
  338. param::MatrixMul::Format format, DType contrast_A_dtype,
  339. DType contrast_B_dtype, DType contrast_C_dtype,
  340. const char* contrast_algo, param::MatrixMul::Format contrast_format) {
  341. using Param = MatrixMul::Param;
  342. megdnn_assert(A_dtype.enumv() == B_dtype.enumv());
  343. megdnn_assert(contrast_A_dtype.enumv() == contrast_B_dtype.enumv());
  344. Benchmarker<MatrixMul> benchmark_contrast(handle);
  345. Benchmarker<MatrixMul> benchmark(handle);
  346. constexpr size_t RUNS = 50;
  347. if (algo) {
  348. benchmark.set_before_exec_callback(AlgoChecker<MatrixMul>(algo));
  349. }
  350. if (contrast_algo) {
  351. benchmark_contrast.set_before_exec_callback(
  352. AlgoChecker<MatrixMul>(contrast_algo));
  353. }
  354. benchmark.set_dtype(0, A_dtype).set_dtype(1, B_dtype).set_dtype(2, C_dtype);
  355. benchmark.set_times(RUNS);
  356. benchmark_contrast.set_dtype(0, contrast_A_dtype)
  357. .set_dtype(1, contrast_B_dtype)
  358. .set_dtype(2, contrast_C_dtype);
  359. benchmark_contrast.set_times(RUNS);
  360. auto bench = [](Benchmarker<MatrixMul>& benchmark, Param param,
  361. param::MatrixMul::Format format, size_t m, size_t n,
  362. size_t k, size_t pack_size) -> float {
  363. param.format = format;
  364. benchmark.set_param(param);
  365. float used_algo = 1.0;
  366. if (format == param::MatrixMul::Format::DEFAULT) {
  367. size_t A0 = m * pack_size, A1 = k * pack_size, B0 = k * pack_size,
  368. B1 = n;
  369. TensorShape A, B;
  370. if (param.transposeA) {
  371. std::swap(A0, A1);
  372. }
  373. if (param.transposeB) {
  374. std::swap(B0, B1);
  375. }
  376. used_algo = benchmark.execs({{A0, A1}, {B0, B1}, {}}) / RUNS;
  377. } else {
  378. size_t A0 = m, A1 = k, B0 = k, B1 = n;
  379. if (param.transposeA) {
  380. std::swap(A0, A1);
  381. }
  382. if (param.transposeB) {
  383. std::swap(B0, B1);
  384. }
  385. used_algo = benchmark.execs({{A0, A1, pack_size, pack_size},
  386. {B0, B1, pack_size},
  387. {}}) /
  388. RUNS;
  389. }
  390. return used_algo;
  391. };
  392. size_t mk_size = MatrixMulForward::pack_size(format);
  393. size_t mk_size_contrast = MatrixMulForward::pack_size(contrast_format);
  394. size_t pack_size = std::max(mk_size, mk_size_contrast);
  395. for (auto& arg : args) {
  396. Param param;
  397. param.transposeA = arg.mask & 0x1;
  398. param.transposeB = arg.mask & 0x2;
  399. auto used_contrast = bench(benchmark_contrast, param, contrast_format,
  400. arg.m, arg.n, arg.k, pack_size);
  401. auto used_algo =
  402. bench(benchmark, param, format, arg.m, arg.n, arg.k, pack_size);
  403. float computations =
  404. 2.f * arg.m * pack_size * arg.k * pack_size * arg.n * 1e-6;
  405. printf("run: {(%zu, %zu) x (%zu, %zu)} contrast: %f ms %f Gflops %s: "
  406. "%f "
  407. "ms "
  408. "%f Gflops "
  409. "speedup: %f \n",
  410. arg.m * pack_size, arg.k * pack_size, arg.k * pack_size, arg.n,
  411. used_contrast, computations / used_contrast, algo, used_algo,
  412. computations / used_algo, used_contrast / used_algo);
  413. }
  414. }
  415. #endif
  416. // vim: syntax=cpp.doxygen

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