mult.c 12 KB

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  1. /* StarPU --- Runtime system for heterogeneous multicore architectures.
  2. *
  3. * Copyright (C) 2010-2011, 2013 Université de Bordeaux 1
  4. * Copyright (C) 2010 Mehdi Juhoor <mjuhoor@gmail.com>
  5. * Copyright (C) 2010, 2011, 2012, 2013 Centre National de la Recherche Scientifique
  6. *
  7. * StarPU is free software; you can redistribute it and/or modify
  8. * it under the terms of the GNU Lesser General Public License as published by
  9. * the Free Software Foundation; either version 2.1 of the License, or (at
  10. * your option) any later version.
  11. *
  12. * StarPU is distributed in the hope that it will be useful, but
  13. * WITHOUT ANY WARRANTY; without even the implied warranty of
  14. * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.
  15. *
  16. * See the GNU Lesser General Public License in COPYING.LGPL for more details.
  17. */
  18. /*
  19. * This example shows a simple implementation of a blocked matrix
  20. * multiplication. Note that this is NOT intended to be an efficient
  21. * implementation of sgemm! In this example, we show:
  22. * - how to declare dense matrices (starpu_matrix_data_register)
  23. * - how to manipulate matrices within codelets (eg. descr[0].blas.ld)
  24. * - how to use filters to partition the matrices into blocks
  25. * (starpu_data_partition and starpu_data_map_filters)
  26. * - how to unpartition data (starpu_data_unpartition) and how to stop
  27. * monitoring data (starpu_data_unregister)
  28. * - how to manipulate subsets of data (starpu_data_get_sub_data)
  29. * - how to construct an autocalibrated performance model (starpu_perfmodel)
  30. * - how to submit asynchronous tasks
  31. */
  32. #include <string.h>
  33. #include <math.h>
  34. #include <sys/types.h>
  35. #include <signal.h>
  36. #include <starpu.h>
  37. static float *A, *B, *C;
  38. static starpu_data_handle_t A_handle, B_handle, C_handle;
  39. static unsigned nslicesx = 4;
  40. static unsigned nslicesy = 4;
  41. static unsigned xdim = 1024;
  42. static unsigned ydim = 1024;
  43. static unsigned zdim = 512;
  44. /*
  45. * That program should compute C = A * B
  46. *
  47. * A of size (z,y)
  48. * B of size (x,z)
  49. * C of size (x,y)
  50. |---------------|
  51. z | B |
  52. |---------------|
  53. z x
  54. |----| |---------------|
  55. | | | |
  56. | | | |
  57. | A | y | C |
  58. | | | |
  59. | | | |
  60. |----| |---------------|
  61. */
  62. /*
  63. * The codelet is passed 3 matrices, the "descr" union-type field gives a
  64. * description of the layout of those 3 matrices in the local memory (ie. RAM
  65. * in the case of CPU, GPU frame buffer in the case of GPU etc.). Since we have
  66. * registered data with the "matrix" data interface, we use the matrix macros.
  67. */
  68. void cpu_mult(void *descr[], STARPU_ATTRIBUTE_UNUSED void *arg)
  69. {
  70. float *subA, *subB, *subC;
  71. uint32_t nxC, nyC, nyA;
  72. uint32_t ldA, ldB, ldC;
  73. /* .blas.ptr gives a pointer to the first element of the local copy */
  74. subA = (float *)STARPU_MATRIX_GET_PTR(descr[0]);
  75. subB = (float *)STARPU_MATRIX_GET_PTR(descr[1]);
  76. subC = (float *)STARPU_MATRIX_GET_PTR(descr[2]);
  77. /* .blas.nx is the number of rows (consecutive elements) and .blas.ny
  78. * is the number of lines that are separated by .blas.ld elements (ld
  79. * stands for leading dimension).
  80. * NB: in case some filters were used, the leading dimension is not
  81. * guaranteed to be the same in main memory (on the original matrix)
  82. * and on the accelerator! */
  83. nxC = STARPU_MATRIX_GET_NX(descr[2]);
  84. nyC = STARPU_MATRIX_GET_NY(descr[2]);
  85. nyA = STARPU_MATRIX_GET_NY(descr[0]);
  86. ldA = STARPU_MATRIX_GET_LD(descr[0]);
  87. ldB = STARPU_MATRIX_GET_LD(descr[1]);
  88. ldC = STARPU_MATRIX_GET_LD(descr[2]);
  89. /* we assume a FORTRAN-ordering! */
  90. unsigned i,j,k;
  91. for (i = 0; i < nyC; i++)
  92. {
  93. for (j = 0; j < nxC; j++)
  94. {
  95. float sum = 0.0;
  96. for (k = 0; k < nyA; k++)
  97. {
  98. sum += subA[j+k*ldA]*subB[k+i*ldB];
  99. }
  100. subC[j + i*ldC] = sum;
  101. }
  102. }
  103. }
  104. static void init_problem_data(void)
  105. {
  106. unsigned i,j;
  107. /* we initialize matrices A, B and C in the usual way */
  108. A = (float *) malloc(zdim*ydim*sizeof(float));
  109. B = (float *) malloc(xdim*zdim*sizeof(float));
  110. C = (float *) malloc(xdim*ydim*sizeof(float));
  111. /* fill the A and B matrices */
  112. srand(2009);
  113. for (j=0; j < ydim; j++)
  114. {
  115. for (i=0; i < zdim; i++)
  116. {
  117. A[j+i*ydim] = (float)(starpu_drand48());
  118. }
  119. }
  120. for (j=0; j < zdim; j++)
  121. {
  122. for (i=0; i < xdim; i++)
  123. {
  124. B[j+i*zdim] = (float)(starpu_drand48());
  125. }
  126. }
  127. for (j=0; j < ydim; j++)
  128. {
  129. for (i=0; i < xdim; i++)
  130. {
  131. C[j+i*ydim] = (float)(0);
  132. }
  133. }
  134. }
  135. static void partition_mult_data(void)
  136. {
  137. /* note that we assume a FORTRAN ordering here! */
  138. /* The BLAS data interface is described by 4 parameters:
  139. * - the location of the first element of the matrix to monitor (3rd
  140. * argument)
  141. * - the number of elements between columns, aka leading dimension
  142. * (4th arg)
  143. * - the number of (contiguous) elements per column, ie. contiguous
  144. * elements (5th arg)
  145. * - the number of columns (6th arg)
  146. * The first elements is a pointer to the data_handle that will be
  147. * associated to the matrix, and the second elements gives the memory
  148. * node in which resides the matrix: 0 means that the 3rd argument is
  149. * an adress in main memory.
  150. */
  151. starpu_matrix_data_register(&A_handle, STARPU_MAIN_RAM, (uintptr_t)A,
  152. ydim, ydim, zdim, sizeof(float));
  153. starpu_matrix_data_register(&B_handle, STARPU_MAIN_RAM, (uintptr_t)B,
  154. zdim, zdim, xdim, sizeof(float));
  155. starpu_matrix_data_register(&C_handle, STARPU_MAIN_RAM, (uintptr_t)C,
  156. ydim, ydim, xdim, sizeof(float));
  157. /* A filter is a method to partition a data into disjoint chunks, it is
  158. * described by the means of the "struct starpu_data_filter" structure that
  159. * contains a function that is applied on a data handle to partition it
  160. * into smaller chunks, and an argument that is passed to the function
  161. * (eg. the number of blocks to create here).
  162. */
  163. /* StarPU supplies some basic filters such as the partition of a matrix
  164. * into blocks, note that we are using a FORTRAN ordering so that the
  165. * name of the filters are a bit misleading */
  166. struct starpu_data_filter vert =
  167. {
  168. .filter_func = starpu_matrix_filter_vertical_block,
  169. .nchildren = nslicesx
  170. };
  171. struct starpu_data_filter horiz =
  172. {
  173. .filter_func = starpu_matrix_filter_block,
  174. .nchildren = nslicesy
  175. };
  176. /*
  177. * Illustration with nslicex = 4 and nslicey = 2, it is possible to access
  178. * sub-data by using the "starpu_data_get_sub_data" method, which takes a data handle,
  179. * the number of filters to apply, and the indexes for each filters, for
  180. * instance:
  181. *
  182. * A' handle is starpu_data_get_sub_data(A_handle, 1, 1);
  183. * B' handle is starpu_data_get_sub_data(B_handle, 1, 2);
  184. * C' handle is starpu_data_get_sub_data(C_handle, 2, 2, 1);
  185. *
  186. * Note that here we applied 2 filters recursively onto C.
  187. *
  188. * "starpu_data_get_sub_data(C_handle, 1, 3)" would return a handle to the 4th column
  189. * of blocked matrix C for example.
  190. *
  191. * |---|---|---|---|
  192. * | | | B'| | B
  193. * |---|---|---|---|
  194. * 0 1 2 3
  195. * |----| |---|---|---|---|
  196. * | | | | | | |
  197. * | | 0 | | | | |
  198. * |----| |---|---|---|---|
  199. * | A' | | | | C'| |
  200. * | | | | | | |
  201. * |----| |---|---|---|---|
  202. * A C
  203. *
  204. * IMPORTANT: applying filters is equivalent to partitionning a piece of
  205. * data in a hierarchical manner, so that memory consistency is enforced
  206. * for each of the elements independantly. The tasks should therefore NOT
  207. * access inner nodes (eg. one column of C or the whole C) but only the
  208. * leafs of the tree (ie. blocks here). Manipulating inner nodes is only
  209. * possible by disapplying the filters (using starpu_data_unpartition), to
  210. * enforce memory consistency.
  211. */
  212. starpu_data_partition(B_handle, &vert);
  213. starpu_data_partition(A_handle, &horiz);
  214. /* starpu_data_map_filters is a variable-arity function, the first argument
  215. * is the handle of the data to partition, the second argument is the
  216. * number of filters to apply recursively. Filters are applied in the
  217. * same order as the arguments.
  218. * This would be equivalent to starpu_data_partition(C_handle, &vert) and
  219. * then applying horiz on each sub-data (ie. each column of C)
  220. */
  221. starpu_data_map_filters(C_handle, 2, &vert, &horiz);
  222. }
  223. static struct starpu_perfmodel mult_perf_model =
  224. {
  225. .type = STARPU_HISTORY_BASED,
  226. .symbol = "mult_perf_model"
  227. };
  228. static struct starpu_codelet cl =
  229. {
  230. /* we can only execute that kernel on a CPU yet */
  231. /* CPU implementation of the codelet */
  232. .cpu_funcs = {cpu_mult, NULL},
  233. .cpu_funcs_name = {"cpu_mult", NULL},
  234. /* the codelet manipulates 3 buffers that are managed by the
  235. * DSM */
  236. .nbuffers = 3,
  237. .modes = {STARPU_R, STARPU_R, STARPU_W},
  238. /* in case the scheduling policy may use performance models */
  239. .model = &mult_perf_model
  240. };
  241. static int launch_tasks(void)
  242. {
  243. int ret;
  244. /* partition the work into slices */
  245. unsigned taskx, tasky;
  246. for (taskx = 0; taskx < nslicesx; taskx++)
  247. {
  248. for (tasky = 0; tasky < nslicesy; tasky++)
  249. {
  250. /* C[taskx, tasky] = A[tasky] B[taskx] */
  251. /* by default, starpu_task_create() returns an
  252. * asynchronous task (ie. task->synchronous = 0) */
  253. struct starpu_task *task = starpu_task_create();
  254. /* this task implements codelet "cl" */
  255. task->cl = &cl;
  256. /*
  257. * |---|---|---|---|
  258. * | | * | | | B
  259. * |---|---|---|---|
  260. * X
  261. * |----| |---|---|---|---|
  262. * |****| Y | |***| | |
  263. * |****| | |***| | |
  264. * |----| |---|---|---|---|
  265. * | | | | | | |
  266. * | | | | | | |
  267. * |----| |---|---|---|---|
  268. * A C
  269. */
  270. /* there was a single filter applied to matrices A
  271. * (respectively B) so we grab the handle to the chunk
  272. * identified by "tasky" (respectively "taskx). The "1"
  273. * tells StarPU that there is a single argument to the
  274. * variable-arity function starpu_data_get_sub_data */
  275. task->handles[0] = starpu_data_get_sub_data(A_handle, 1, tasky);
  276. task->handles[1] = starpu_data_get_sub_data(B_handle, 1, taskx);
  277. /* 2 filters were applied on matrix C, so we give
  278. * starpu_data_get_sub_data 2 arguments. The order of the arguments
  279. * must match the order in which the filters were
  280. * applied.
  281. * NB: starpu_data_get_sub_data(C_handle, 1, k) would have returned
  282. * a handle to the column number k of matrix C.
  283. * NB2: starpu_data_get_sub_data(C_handle, 2, taskx, tasky) is
  284. * equivalent to
  285. * starpu_data_get_sub_data(starpu_data_get_sub_data(C_handle, 1, taskx), 1, tasky)*/
  286. task->handles[2] = starpu_data_get_sub_data(C_handle, 2, taskx, tasky);
  287. /* this is not a blocking call since task->synchronous = 0 */
  288. ret = starpu_task_submit(task);
  289. if (ret == -ENODEV) return ret;
  290. STARPU_CHECK_RETURN_VALUE(ret, "starpu_task_submit");
  291. }
  292. }
  293. return 0;
  294. }
  295. int main(STARPU_ATTRIBUTE_UNUSED int argc,
  296. STARPU_ATTRIBUTE_UNUSED char **argv)
  297. {
  298. int ret;
  299. /* start the runtime */
  300. ret = starpu_init(NULL);
  301. if (ret == -ENODEV)
  302. return 77;
  303. STARPU_CHECK_RETURN_VALUE(ret, "starpu_init");
  304. /* initialize matrices A, B and C and register them to StarPU */
  305. init_problem_data();
  306. /* partition matrices into blocks that can be manipulated by the
  307. * codelets */
  308. partition_mult_data();
  309. /* submit all tasks in an asynchronous fashion */
  310. ret = launch_tasks();
  311. if (ret == -ENODEV) goto enodev;
  312. /* wait for termination */
  313. starpu_task_wait_for_all();
  314. /* remove the filters applied by the means of starpu_data_map_filters; now
  315. * it's not possible to manipulate a subset of C using starpu_data_get_sub_data until
  316. * starpu_data_map_filters is called again on C_handle.
  317. * The second argument is the memory node where the different subsets
  318. * should be reassembled, 0 = main memory (RAM) */
  319. starpu_data_unpartition(A_handle, STARPU_MAIN_RAM);
  320. starpu_data_unpartition(B_handle, STARPU_MAIN_RAM);
  321. starpu_data_unpartition(C_handle, STARPU_MAIN_RAM);
  322. /* stop monitoring matrix C : after this, it is not possible to pass C
  323. * (or any subset of C) as a codelet input/output. This also implements
  324. * a barrier so that the piece of data is put back into main memory in
  325. * case it was only available on a GPU for instance. */
  326. starpu_data_unregister(A_handle);
  327. starpu_data_unregister(B_handle);
  328. starpu_data_unregister(C_handle);
  329. free(A);
  330. free(B);
  331. free(C);
  332. starpu_shutdown();
  333. return 0;
  334. enodev:
  335. starpu_shutdown();
  336. return 77;
  337. }