advanced-examples.texi 42 KB

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  1. @c -*-texinfo-*-
  2. @c This file is part of the StarPU Handbook.
  3. @c Copyright (C) 2009--2011 Universit@'e de Bordeaux 1
  4. @c Copyright (C) 2010, 2011, 2012 Centre National de la Recherche Scientifique
  5. @c Copyright (C) 2011 Institut National de Recherche en Informatique et Automatique
  6. @c See the file starpu.texi for copying conditions.
  7. @menu
  8. * Using multiple implementations of a codelet::
  9. * Enabling implementation according to capabilities::
  10. * Task and Worker Profiling::
  11. * Partitioning Data::
  12. * Performance model example::
  13. * Theoretical lower bound on execution time::
  14. * Insert Task Utility::
  15. * Data reduction::
  16. * Temporary buffers::
  17. * Parallel Tasks::
  18. * Debugging::
  19. * The multiformat interface::
  20. * On-GPU rendering::
  21. * More examples:: More examples shipped with StarPU
  22. @end menu
  23. @node Using multiple implementations of a codelet
  24. @section Using multiple implementations of a codelet
  25. One may want to write multiple implementations of a codelet for a single type of
  26. device and let StarPU choose which one to run. As an example, we will show how
  27. to use SSE to scale a vector. The codelet can be written as follows:
  28. @cartouche
  29. @smallexample
  30. #include <xmmintrin.h>
  31. void scal_sse_func(void *buffers[], void *cl_arg)
  32. @{
  33. float *vector = (float *) STARPU_VECTOR_GET_PTR(buffers[0]);
  34. unsigned int n = STARPU_VECTOR_GET_NX(buffers[0]);
  35. unsigned int n_iterations = n/4;
  36. if (n % 4 != 0)
  37. n_iterations++;
  38. __m128 *VECTOR = (__m128*) vector;
  39. __m128 factor __attribute__((aligned(16)));
  40. factor = _mm_set1_ps(*(float *) cl_arg);
  41. unsigned int i;
  42. for (i = 0; i < n_iterations; i++)
  43. VECTOR[i] = _mm_mul_ps(factor, VECTOR[i]);
  44. @}
  45. @end smallexample
  46. @end cartouche
  47. @cartouche
  48. @smallexample
  49. struct starpu_codelet cl = @{
  50. .where = STARPU_CPU,
  51. .cpu_funcs = @{ scal_cpu_func, scal_sse_func, NULL @},
  52. .nbuffers = 1,
  53. .modes = @{ STARPU_RW @}
  54. @};
  55. @end smallexample
  56. @end cartouche
  57. Schedulers which are multi-implementation aware (only @code{dmda}, @code{heft}
  58. and @code{pheft} for now) will use the performance models of all the
  59. implementations it was given, and pick the one that seems to be the fastest.
  60. @node Enabling implementation according to capabilities
  61. @section Enabling implementation according to capabilities
  62. Some implementations may not run on some devices. For instance, some CUDA
  63. devices do not support double floating point precision, and thus the kernel
  64. execution would just fail; or the device may not have enough shared memory for
  65. the implementation being used. The @code{can_execute} field of the @code{struct
  66. starpu_codelet} structure permits to express this. For instance:
  67. @cartouche
  68. @smallexample
  69. static int can_execute(unsigned workerid, struct starpu_task *task, unsigned nimpl)
  70. @{
  71. const struct cudaDeviceProp *props;
  72. if (starpu_worker_get_type(workerid) == STARPU_CPU_WORKER)
  73. return 1;
  74. /* Cuda device */
  75. props = starpu_cuda_get_device_properties(workerid);
  76. if (props->major >= 2 || props->minor >= 3)
  77. /* At least compute capability 1.3, supports doubles */
  78. return 1;
  79. /* Old card, does not support doubles */
  80. return 0;
  81. @}
  82. struct starpu_codelet cl = @{
  83. .where = STARPU_CPU|STARPU_CUDA,
  84. .can_execute = can_execute,
  85. .cpu_funcs = @{ cpu_func, NULL @},
  86. .cuda_funcs = @{ gpu_func, NULL @}
  87. .nbuffers = 1,
  88. .modes = @{ STARPU_RW @}
  89. @};
  90. @end smallexample
  91. @end cartouche
  92. This can be essential e.g. when running on a machine which mixes various models
  93. of CUDA devices, to take benefit from the new models without crashing on old models.
  94. Note: the @code{can_execute} function is called by the scheduler each time it
  95. tries to match a task with a worker, and should thus be very fast. The
  96. @code{starpu_cuda_get_device_properties} provides a quick access to CUDA
  97. properties of CUDA devices to achieve such efficiency.
  98. Another example is compiling CUDA code for various compute capabilities,
  99. resulting with two CUDA functions, e.g. @code{scal_gpu_13} for compute capability
  100. 1.3, and @code{scal_gpu_20} for compute capability 2.0. Both functions can be
  101. provided to StarPU by using @code{cuda_funcs}, and @code{can_execute} can then be
  102. used to rule out the @code{scal_gpu_20} variant on a CUDA device which
  103. will not be able to execute it:
  104. @cartouche
  105. @smallexample
  106. static int can_execute(unsigned workerid, struct starpu_task *task, unsigned nimpl)
  107. @{
  108. const struct cudaDeviceProp *props;
  109. if (starpu_worker_get_type(workerid) == STARPU_CPU_WORKER)
  110. return 1;
  111. /* Cuda device */
  112. if (nimpl == 0)
  113. /* Trying to execute the 1.3 capability variant, we assume it is ok in all cases. */
  114. return 1;
  115. /* Trying to execute the 2.0 capability variant, check that the card can do it. */
  116. props = starpu_cuda_get_device_properties(workerid);
  117. if (props->major >= 2 || props->minor >= 0)
  118. /* At least compute capability 2.0, can run it */
  119. return 1;
  120. /* Old card, does not support 2.0, will not be able to execute the 2.0 variant. */
  121. return 0;
  122. @}
  123. struct starpu_codelet cl = @{
  124. .where = STARPU_CPU|STARPU_CUDA,
  125. .can_execute = can_execute,
  126. .cpu_funcs = @{ cpu_func, NULL @},
  127. .cuda_funcs = @{ scal_gpu_13, scal_gpu_20, NULL @},
  128. .nbuffers = 1,
  129. .modes = @{ STARPU_RW @}
  130. @};
  131. @end smallexample
  132. @end cartouche
  133. Note: the most generic variant should be provided first, as some schedulers are
  134. not able to try the different variants.
  135. @node Task and Worker Profiling
  136. @section Task and Worker Profiling
  137. A full example showing how to use the profiling API is available in
  138. the StarPU sources in the directory @code{examples/profiling/}.
  139. @cartouche
  140. @smallexample
  141. struct starpu_task *task = starpu_task_create();
  142. task->cl = &cl;
  143. task->synchronous = 1;
  144. /* We will destroy the task structure by hand so that we can
  145. * query the profiling info before the task is destroyed. */
  146. task->destroy = 0;
  147. /* Submit and wait for completion (since synchronous was set to 1) */
  148. starpu_task_submit(task);
  149. /* The task is finished, get profiling information */
  150. struct starpu_task_profiling_info *info = task->profiling_info;
  151. /* How much time did it take before the task started ? */
  152. double delay += starpu_timing_timespec_delay_us(&info->submit_time, &info->start_time);
  153. /* How long was the task execution ? */
  154. double length += starpu_timing_timespec_delay_us(&info->start_time, &info->end_time);
  155. /* We don't need the task structure anymore */
  156. starpu_task_destroy(task);
  157. @end smallexample
  158. @end cartouche
  159. @cartouche
  160. @smallexample
  161. /* Display the occupancy of all workers during the test */
  162. int worker;
  163. for (worker = 0; worker < starpu_worker_get_count(); worker++)
  164. @{
  165. struct starpu_worker_profiling_info worker_info;
  166. int ret = starpu_worker_get_profiling_info(worker, &worker_info);
  167. STARPU_ASSERT(!ret);
  168. double total_time = starpu_timing_timespec_to_us(&worker_info.total_time);
  169. double executing_time = starpu_timing_timespec_to_us(&worker_info.executing_time);
  170. double sleeping_time = starpu_timing_timespec_to_us(&worker_info.sleeping_time);
  171. float executing_ratio = 100.0*executing_time/total_time;
  172. float sleeping_ratio = 100.0*sleeping_time/total_time;
  173. char workername[128];
  174. starpu_worker_get_name(worker, workername, 128);
  175. fprintf(stderr, "Worker %s:\n", workername);
  176. fprintf(stderr, "\ttotal time: %.2lf ms\n", total_time*1e-3);
  177. fprintf(stderr, "\texec time: %.2lf ms (%.2f %%)\n", executing_time*1e-3,
  178. executing_ratio);
  179. fprintf(stderr, "\tblocked time: %.2lf ms (%.2f %%)\n", sleeping_time*1e-3,
  180. sleeping_ratio);
  181. @}
  182. @end smallexample
  183. @end cartouche
  184. @node Partitioning Data
  185. @section Partitioning Data
  186. An existing piece of data can be partitioned in sub parts to be used by different tasks, for instance:
  187. @cartouche
  188. @smallexample
  189. int vector[NX];
  190. starpu_data_handle_t handle;
  191. /* Declare data to StarPU */
  192. starpu_vector_data_register(&handle, 0, (uintptr_t)vector, NX, sizeof(vector[0]));
  193. /* Partition the vector in PARTS sub-vectors */
  194. starpu_filter f =
  195. @{
  196. .filter_func = starpu_block_filter_func_vector,
  197. .nchildren = PARTS
  198. @};
  199. starpu_data_partition(handle, &f);
  200. @end smallexample
  201. @end cartouche
  202. The task submission then uses @code{starpu_data_get_sub_data} to retrieve the
  203. sub-handles to be passed as tasks parameters.
  204. @cartouche
  205. @smallexample
  206. /* Submit a task on each sub-vector */
  207. for (i=0; i<starpu_data_get_nb_children(handle); i++) @{
  208. /* Get subdata number i (there is only 1 dimension) */
  209. starpu_data_handle_t sub_handle = starpu_data_get_sub_data(handle, 1, i);
  210. struct starpu_task *task = starpu_task_create();
  211. task->handles[0] = sub_handle;
  212. task->cl = &cl;
  213. task->synchronous = 1;
  214. task->cl_arg = &factor;
  215. task->cl_arg_size = sizeof(factor);
  216. starpu_task_submit(task);
  217. @}
  218. @end smallexample
  219. @end cartouche
  220. Partitioning can be applied several times, see
  221. @code{examples/basic_examples/mult.c} and @code{examples/filters/}.
  222. Wherever the whole piece of data is already available, the partitioning will
  223. be done in-place, i.e. without allocating new buffers but just using pointers
  224. inside the existing copy. This is particularly important to be aware of when
  225. using OpenCL, where the kernel parameters are not pointers, but handles. The
  226. kernel thus needs to be also passed the offset within the OpenCL buffer:
  227. @cartouche
  228. @smallexample
  229. void opencl_func(void *buffers[], void *cl_arg)
  230. @{
  231. cl_mem vector = (cl_mem) STARPU_VECTOR_GET_DEV_HANDLE(buffers[0]);
  232. unsigned offset = STARPU_BLOCK_GET_OFFSET(buffers[0]);
  233. ...
  234. clSetKernelArg(kernel, 0, sizeof(vector), &vector);
  235. clSetKernelArg(kernel, 1, sizeof(offset), &offset);
  236. ...
  237. @}
  238. @end smallexample
  239. @end cartouche
  240. And the kernel has to shift from the pointer passed by the OpenCL driver:
  241. @cartouche
  242. @smallexample
  243. __kernel void opencl_kernel(__global int *vector, unsigned offset)
  244. @{
  245. block = (__global void *)block + offset;
  246. ...
  247. @}
  248. @end smallexample
  249. @end cartouche
  250. @node Performance model example
  251. @section Performance model example
  252. To achieve good scheduling, StarPU scheduling policies need to be able to
  253. estimate in advance the duration of a task. This is done by giving to codelets
  254. a performance model, by defining a @code{starpu_perfmodel} structure and
  255. providing its address in the @code{model} field of the @code{struct starpu_codelet}
  256. structure. The @code{symbol} and @code{type} fields of @code{starpu_perfmodel}
  257. are mandatory, to give a name to the model, and the type of the model, since
  258. there are several kinds of performance models. For compatibility, make sure to
  259. initialize the whole structure to zero, either by using explicit memset, or by
  260. letting the compiler implicitly do it as examplified below.
  261. @itemize
  262. @item
  263. Measured at runtime (@code{STARPU_HISTORY_BASED} model type). This assumes that for a
  264. given set of data input/output sizes, the performance will always be about the
  265. same. This is very true for regular kernels on GPUs for instance (<0.1% error),
  266. and just a bit less true on CPUs (~=1% error). This also assumes that there are
  267. few different sets of data input/output sizes. StarPU will then keep record of
  268. the average time of previous executions on the various processing units, and use
  269. it as an estimation. History is done per task size, by using a hash of the input
  270. and ouput sizes as an index.
  271. It will also save it in @code{$HOME/.starpu/sampling/codelets}
  272. for further executions (@code{$USERPROFILE/.starpu/sampling/codelets} in windows
  273. environments), and can be observed by using the
  274. @code{starpu_perfmodel_display} command, or drawn by using
  275. the @code{starpu_perfmodel_plot} (@pxref{Performance model calibration}). The
  276. models are indexed by machine name. To
  277. share the models between machines (e.g. for a homogeneous cluster), use
  278. @code{export STARPU_HOSTNAME=some_global_name}. Measurements are only done
  279. when using a task scheduler which makes use of it, such as @code{heft} or
  280. @code{dmda}. Measurements can also be provided explicitly by the application, by
  281. using the @code{starpu_perfmodel_update_history} function.
  282. The following is a small code example.
  283. If e.g. the code is recompiled with other compilation options, or several
  284. variants of the code are used, the symbol string should be changed to reflect
  285. that, in order to recalibrate a new model from zero. The symbol string can even
  286. be constructed dynamically at execution time, as long as this is done before
  287. submitting any task using it.
  288. @cartouche
  289. @smallexample
  290. static struct starpu_perfmodel mult_perf_model = @{
  291. .type = STARPU_HISTORY_BASED,
  292. .symbol = "mult_perf_model"
  293. @};
  294. struct starpu_codelet cl = @{
  295. .where = STARPU_CPU,
  296. .cpu_funcs = @{ cpu_mult, NULL @},
  297. .nbuffers = 3,
  298. .modes = @{ STARPU_R, STARPU_R, STARPU_W @},
  299. /* for the scheduling policy to be able to use performance models */
  300. .model = &mult_perf_model
  301. @};
  302. @end smallexample
  303. @end cartouche
  304. @item
  305. Measured at runtime and refined by regression (@code{STARPU_*REGRESSION_BASED}
  306. model type). This still assumes performance regularity, but works
  307. with various data input sizes, by applying regression over observed
  308. execution times. STARPU_REGRESSION_BASED uses an a*n^b regression
  309. form, STARPU_NL_REGRESSION_BASED uses an a*n^b+c (more precise than
  310. STARPU_REGRESSION_BASED, but costs a lot more to compute).
  311. For instance,
  312. @code{tests/perfmodels/regression_based.c} uses a regression-based performance
  313. model for the @code{memset} operation.
  314. Of course, the application has to issue
  315. tasks with varying size so that the regression can be computed. StarPU will not
  316. trust the regression unless there is at least 10% difference between the minimum
  317. and maximum observed input size. It can be useful to set the
  318. @code{STARPU_CALIBRATE} environment variable to @code{1} and run the application
  319. on varying input sizes, so as to feed the performance model for a variety of
  320. inputs, or to provide the measurements explictly by using
  321. @code{starpu_perfmodel_update_history}. The @code{starpu_perfmodel_display} and
  322. @code{starpu_perfmodel_plot}
  323. tools can be used to observe how much the performance model is calibrated (@pxref{Performance model calibration}); when
  324. their output look good, @code{STARPU_CALIBRATE} can be reset to @code{0} to let
  325. StarPU use the resulting performance model without recording new measures. If
  326. the data input sizes vary a lot, it is really important to set
  327. @code{STARPU_CALIBRATE} to @code{0}, otherwise StarPU will continue adding the
  328. measures, and result with a very big performance model, which will take time a
  329. lot of time to load and save.
  330. For non-linear regression, since computing it
  331. is quite expensive, it is only done at termination of the application. This
  332. means that the first execution of the application will use only history-based
  333. performance model to perform scheduling, without using regression.
  334. @item
  335. Provided as an estimation from the application itself (@code{STARPU_COMMON} model type and @code{cost_function} field),
  336. see for instance
  337. @code{examples/common/blas_model.h} and @code{examples/common/blas_model.c}.
  338. @item
  339. Provided explicitly by the application (@code{STARPU_PER_ARCH} model type): the
  340. @code{.per_arch[arch][nimpl].cost_function} fields have to be filled with pointers to
  341. functions which return the expected duration of the task in micro-seconds, one
  342. per architecture.
  343. @end itemize
  344. For the @code{STARPU_HISTORY_BASED} and @code{STARPU_*REGRESSION_BASE},
  345. the total size of task data (both input and output) is used as an index by
  346. default. The @code{size_base} field of @code{struct starpu_perfmodel} however
  347. permits the application to override that, when for instance some of the data
  348. do not matter for task cost (e.g. mere reference table), or when using sparse
  349. structures (in which case it is the number of non-zeros which matter), or when
  350. there is some hidden parameter such as the number of iterations, etc.
  351. How to use schedulers which can benefit from such performance model is explained
  352. in @ref{Task scheduling policy}.
  353. The same can be done for task power consumption estimation, by setting the
  354. @code{power_model} field the same way as the @code{model} field. Note: for
  355. now, the application has to give to the power consumption performance model
  356. a name which is different from the execution time performance model.
  357. The application can request time estimations from the StarPU performance
  358. models by filling a task structure as usual without actually submitting
  359. it. The data handles can be created by calling @code{starpu_data_register}
  360. functions with a @code{NULL} pointer (and need to be unregistered as usual)
  361. and the desired data sizes. The @code{starpu_task_expected_length} and
  362. @code{starpu_task_expected_power} functions can then be called to get an
  363. estimation of the task duration on a given arch. @code{starpu_task_destroy}
  364. needs to be called to destroy the dummy task afterwards. See
  365. @code{tests/perfmodels/regression_based.c} for an example.
  366. @node Theoretical lower bound on execution time
  367. @section Theoretical lower bound on execution time
  368. For kernels with history-based performance models (and provided that they are completely calibrated), StarPU can very easily provide a theoretical lower
  369. bound for the execution time of a whole set of tasks. See for
  370. instance @code{examples/lu/lu_example.c}: before submitting tasks,
  371. call @code{starpu_bound_start}, and after complete execution, call
  372. @code{starpu_bound_stop}. @code{starpu_bound_print_lp} or
  373. @code{starpu_bound_print_mps} can then be used to output a Linear Programming
  374. problem corresponding to the schedule of your tasks. Run it through
  375. @code{lp_solve} or any other linear programming solver, and that will give you a
  376. lower bound for the total execution time of your tasks. If StarPU was compiled
  377. with the glpk library installed, @code{starpu_bound_compute} can be used to
  378. solve it immediately and get the optimized minimum, in ms. Its @code{integer}
  379. parameter allows to decide whether integer resolution should be computed
  380. and returned too.
  381. The @code{deps} parameter tells StarPU whether to take tasks and implicit data
  382. dependencies into account. It must be understood that the linear programming
  383. problem size is quadratic with the number of tasks and thus the time to solve it
  384. will be very long, it could be minutes for just a few dozen tasks. You should
  385. probably use @code{lp_solve -timeout 1 test.pl -wmps test.mps} to convert the
  386. problem to MPS format and then use a better solver, @code{glpsol} might be
  387. better than @code{lp_solve} for instance (the @code{--pcost} option may be
  388. useful), but sometimes doesn't manage to converge. @code{cbc} might look
  389. slower, but it is parallel. Be sure to try at least all the @code{-B} options
  390. of @code{lp_solve}. For instance, we often just use
  391. @code{lp_solve -cc -B1 -Bb -Bg -Bp -Bf -Br -BG -Bd -Bs -BB -Bo -Bc -Bi} , and
  392. the @code{-gr} option can also be quite useful.
  393. Setting @code{deps} to 0 will only take into account the actual computations
  394. on processing units. It however still properly takes into account the varying
  395. performances of kernels and processing units, which is quite more accurate than
  396. just comparing StarPU performances with the fastest of the kernels being used.
  397. The @code{prio} parameter tells StarPU whether to simulate taking into account
  398. the priorities as the StarPU scheduler would, i.e. schedule prioritized
  399. tasks before less prioritized tasks, to check to which extend this results
  400. to a less optimal solution. This increases even more computation time.
  401. Note that for simplicity, all this however doesn't take into account data
  402. transfers, which are assumed to be completely overlapped.
  403. @node Insert Task Utility
  404. @section Insert Task Utility
  405. StarPU provides the wrapper function @code{starpu_insert_task} to ease
  406. the creation and submission of tasks.
  407. @deftypefun int starpu_insert_task (struct starpu_codelet *@var{cl}, ...)
  408. Create and submit a task corresponding to @var{cl} with the following
  409. arguments. The argument list must be zero-terminated.
  410. The arguments following the codelets can be of the following types:
  411. @itemize
  412. @item
  413. @code{STARPU_R}, @code{STARPU_W}, @code{STARPU_RW}, @code{STARPU_SCRATCH}, @code{STARPU_REDUX} an access mode followed by a data handle;
  414. @item
  415. the specific values @code{STARPU_VALUE}, @code{STARPU_CALLBACK},
  416. @code{STARPU_CALLBACK_ARG}, @code{STARPU_CALLBACK_WITH_ARG},
  417. @code{STARPU_PRIORITY}, followed by the appropriated objects as
  418. defined below.
  419. @end itemize
  420. Parameters to be passed to the codelet implementation are defined
  421. through the type @code{STARPU_VALUE}. The function
  422. @code{starpu_codelet_unpack_args} must be called within the codelet
  423. implementation to retrieve them.
  424. @end deftypefun
  425. @defmac STARPU_VALUE
  426. this macro is used when calling @code{starpu_insert_task}, and must be
  427. followed by a pointer to a constant value and the size of the constant
  428. @end defmac
  429. @defmac STARPU_CALLBACK
  430. this macro is used when calling @code{starpu_insert_task}, and must be
  431. followed by a pointer to a callback function
  432. @end defmac
  433. @defmac STARPU_CALLBACK_ARG
  434. this macro is used when calling @code{starpu_insert_task}, and must be
  435. followed by a pointer to be given as an argument to the callback
  436. function
  437. @end defmac
  438. @defmac STARPU_CALLBACK_WITH_ARG
  439. this macro is used when calling @code{starpu_insert_task}, and must be
  440. followed by two pointers: one to a callback function, and the other to
  441. be given as an argument to the callback function; this is equivalent
  442. to using both @code{STARPU_CALLBACK} and
  443. @code{STARPU_CALLBACK_WITH_ARG}
  444. @end defmac
  445. @defmac STARPU_PRIORITY
  446. this macro is used when calling @code{starpu_insert_task}, and must be
  447. followed by a integer defining a priority level
  448. @end defmac
  449. @deftypefun void starpu_codelet_pack_args ({char **}@var{arg_buffer}, {size_t *}@var{arg_buffer_size}, ...)
  450. Pack arguments of type @code{STARPU_VALUE} into a buffer which can be
  451. given to a codelet and later unpacked with the function
  452. @code{starpu_codelet_unpack_args} defined below.
  453. @end deftypefun
  454. @deftypefun void starpu_codelet_unpack_args ({void *}@var{cl_arg}, ...)
  455. Retrieve the arguments of type @code{STARPU_VALUE} associated to a
  456. task automatically created using the function
  457. @code{starpu_insert_task} defined above.
  458. @end deftypefun
  459. Here the implementation of the codelet:
  460. @smallexample
  461. void func_cpu(void *descr[], void *_args)
  462. @{
  463. int *x0 = (int *)STARPU_VARIABLE_GET_PTR(descr[0]);
  464. float *x1 = (float *)STARPU_VARIABLE_GET_PTR(descr[1]);
  465. int ifactor;
  466. float ffactor;
  467. starpu_codelet_unpack_args(_args, &ifactor, &ffactor);
  468. *x0 = *x0 * ifactor;
  469. *x1 = *x1 * ffactor;
  470. @}
  471. struct starpu_codelet mycodelet = @{
  472. .where = STARPU_CPU,
  473. .cpu_funcs = @{ func_cpu, NULL @},
  474. .nbuffers = 2,
  475. .modes = @{ STARPU_RW, STARPU_RW @}
  476. @};
  477. @end smallexample
  478. And the call to the @code{starpu_insert_task} wrapper:
  479. @smallexample
  480. starpu_insert_task(&mycodelet,
  481. STARPU_VALUE, &ifactor, sizeof(ifactor),
  482. STARPU_VALUE, &ffactor, sizeof(ffactor),
  483. STARPU_RW, data_handles[0], STARPU_RW, data_handles[1],
  484. 0);
  485. @end smallexample
  486. The call to @code{starpu_insert_task} is equivalent to the following
  487. code:
  488. @smallexample
  489. struct starpu_task *task = starpu_task_create();
  490. task->cl = &mycodelet;
  491. task->handles[0] = data_handles[0];
  492. task->handles[1] = data_handles[1];
  493. char *arg_buffer;
  494. size_t arg_buffer_size;
  495. starpu_codelet_pack_args(&arg_buffer, &arg_buffer_size,
  496. STARPU_VALUE, &ifactor, sizeof(ifactor),
  497. STARPU_VALUE, &ffactor, sizeof(ffactor),
  498. 0);
  499. task->cl_arg = arg_buffer;
  500. task->cl_arg_size = arg_buffer_size;
  501. int ret = starpu_task_submit(task);
  502. @end smallexample
  503. If some part of the task insertion depends on the value of some computation,
  504. the @code{STARPU_DATA_ACQUIRE_CB} macro can be very convenient. For
  505. instance, assuming that the index variable @code{i} was registered as handle
  506. @code{i_handle}:
  507. @smallexample
  508. /* Compute which portion we will work on, e.g. pivot */
  509. starpu_insert_task(&which_index, STARPU_W, i_handle, 0);
  510. /* And submit the corresponding task */
  511. STARPU_DATA_ACQUIRE_CB(i_handle, STARPU_R, starpu_insert_task(&work, STARPU_RW, A_handle[i], 0));
  512. @end smallexample
  513. The @code{STARPU_DATA_ACQUIRE_CB} macro submits an asynchronous request for
  514. acquiring data @code{i} for the main application, and will execute the code
  515. given as third parameter when it is acquired. In other words, as soon as the
  516. value of @code{i} computed by the @code{which_index} codelet can be read, the
  517. portion of code passed as third parameter of @code{STARPU_DATA_ACQUIRE_CB} will
  518. be executed, and is allowed to read from @code{i} to use it e.g. as an
  519. index. Note that this macro is only avaible when compiling StarPU with
  520. the compiler @code{gcc}.
  521. @node Data reduction
  522. @section Data reduction
  523. In various cases, some piece of data is used to accumulate intermediate
  524. results. For instances, the dot product of a vector, maximum/minimum finding,
  525. the histogram of a photograph, etc. When these results are produced along the
  526. whole machine, it would not be efficient to accumulate them in only one place,
  527. incurring data transmission each and access concurrency.
  528. StarPU provides a @code{STARPU_REDUX} mode, which permits to optimize
  529. that case: it will allocate a buffer on each memory node, and accumulate
  530. intermediate results there. When the data is eventually accessed in the normal
  531. @code{STARPU_R} mode, StarPU will collect the intermediate results in just one
  532. buffer.
  533. For this to work, the user has to use the
  534. @code{starpu_data_set_reduction_methods} to declare how to initialize these
  535. buffers, and how to assemble partial results.
  536. For instance, @code{cg} uses that to optimize its dot product: it first defines
  537. the codelets for initialization and reduction:
  538. @smallexample
  539. struct starpu_codelet bzero_variable_cl =
  540. @{
  541. .cpu_funcs = @{ bzero_variable_cpu, NULL @},
  542. .cuda_funcs = @{ bzero_variable_cuda, NULL @},
  543. .nbuffers = 1,
  544. @}
  545. static void accumulate_variable_cpu(void *descr[], void *cl_arg)
  546. @{
  547. double *v_dst = (double *)STARPU_VARIABLE_GET_PTR(descr[0]);
  548. double *v_src = (double *)STARPU_VARIABLE_GET_PTR(descr[1]);
  549. *v_dst = *v_dst + *v_src;
  550. @}
  551. static void accumulate_variable_cuda(void *descr[], void *cl_arg)
  552. @{
  553. double *v_dst = (double *)STARPU_VARIABLE_GET_PTR(descr[0]);
  554. double *v_src = (double *)STARPU_VARIABLE_GET_PTR(descr[1]);
  555. cublasaxpy(1, (double)1.0, v_src, 1, v_dst, 1);
  556. cudaStreamSynchronize(starpu_cuda_get_local_stream());
  557. @}
  558. struct starpu_codelet accumulate_variable_cl =
  559. @{
  560. .cpu_funcs = @{ accumulate_variable_cpu, NULL @},
  561. .cuda_funcs = @{ accumulate_variable_cuda, NULL @},
  562. .nbuffers = 1,
  563. @}
  564. @end smallexample
  565. and attaches them as reduction methods for its dtq handle:
  566. @smallexample
  567. starpu_data_set_reduction_methods(dtq_handle,
  568. &accumulate_variable_cl, &bzero_variable_cl);
  569. @end smallexample
  570. and dtq_handle can now be used in @code{STARPU_REDUX} mode for the dot products
  571. with partitioned vectors:
  572. @smallexample
  573. int dots(starpu_data_handle_t v1, starpu_data_handle_t v2,
  574. starpu_data_handle_t s, unsigned nblocks)
  575. @{
  576. starpu_insert_task(&bzero_variable_cl, STARPU_W, s, 0);
  577. for (b = 0; b < nblocks; b++)
  578. starpu_insert_task(&dot_kernel_cl,
  579. STARPU_RW, s,
  580. STARPU_R, starpu_data_get_sub_data(v1, 1, b),
  581. STARPU_R, starpu_data_get_sub_data(v2, 1, b),
  582. 0);
  583. @}
  584. @end smallexample
  585. The @code{cg} example also uses reduction for the blocked gemv kernel, leading
  586. to yet more relaxed dependencies and more parallelism.
  587. @node Temporary buffers
  588. @section Temporary buffers
  589. There are two kinds of temporary buffers: temporary data which just pass results
  590. from a task to another, and scratch data which are needed only internally by
  591. tasks.
  592. @subsection Temporary data
  593. Data can sometimes be entirely produced by a task, and entirely consumed by
  594. another task, without the need for other parts of the application to access
  595. it. In such case, registration can be done without prior allocation, by using
  596. the special -1 memory node number, and passing a zero pointer. StarPU will
  597. actually allocate memory only when the task creating the content gets scheduled,
  598. and destroy it on unregistration.
  599. In addition to that, it can be tedious for the application to have to unregister
  600. the data, since it will not use its content anyway. The unregistration can be
  601. done lazily by using the @code{starpu_data_unregister_lazy(handle)} function,
  602. which will record that no more tasks accessing the handle will be submitted, so
  603. that it can be freed as soon as the last task accessing it is over.
  604. The following code examplifies both points: it registers the temporary
  605. data, submits three tasks accessing it, and records the data for automatic
  606. unregistration.
  607. @smallexample
  608. starpu_vector_data_register(&handle, -1, 0, n, sizeof(float));
  609. starpu_insert_task(&produce_data, STARPU_W, handle, 0);
  610. starpu_insert_task(&compute_data, STARPU_RW, handle, 0);
  611. starpu_insert_task(&summarize_data, STARPU_R, handle, STARPU_W, result_handle, 0);
  612. starpu_data_unregister_lazy(handle);
  613. @end smallexample
  614. @subsection Scratch data
  615. Some kernels sometimes need temporary data to achieve the computations, i.e. a
  616. workspace. The application could allocate it at the start of the codelet
  617. function, and free it at the end, but that would be costly. It could also
  618. allocate one buffer per worker (similarly to @ref{Per-worker library
  619. initialization }), but that would make them systematic and permanent. A more
  620. optimized way is to use the SCRATCH data access mode, as examplified below,
  621. which provides per-worker buffers without content consistency.
  622. @smallexample
  623. starpu_vector_data_register(&workspace, -1, 0, sizeof(float));
  624. for (i = 0; i < N; i++)
  625. starpu_insert_task(&compute, STARPU_R, input[i], STARPU_SCRATCH, workspace, STARPU_W, output[i], 0);
  626. @end smallexample
  627. StarPU will make sure that the buffer is allocated before executing the task,
  628. and make this allocation per-worker: for CPU workers, notably, each worker has
  629. its own buffer. This means that each task submitted above will actually have its
  630. own workspace, which will actually be the same for all tasks running one after
  631. the other on the same worker. Also, if for instance GPU memory becomes scarce,
  632. StarPU will notice that it can free such buffers easily, since the content does
  633. not matter.
  634. @node Parallel Tasks
  635. @section Parallel Tasks
  636. StarPU can leverage existing parallel computation libraries by the means of
  637. parallel tasks. A parallel task is a task which gets worked on by a set of CPUs
  638. (called a parallel or combined worker) at the same time, by using an existing
  639. parallel CPU implementation of the computation to be achieved. This can also be
  640. useful to improve the load balance between slow CPUs and fast GPUs: since CPUs
  641. work collectively on a single task, the completion time of tasks on CPUs become
  642. comparable to the completion time on GPUs, thus relieving from granularity
  643. discrepancy concerns. Hwloc support needs to be enabled to get good performance,
  644. otherwise StarPU will not know how to better group cores.
  645. Two modes of execution exist to accomodate with existing usages.
  646. @subsection Fork-mode parallel tasks
  647. In the Fork mode, StarPU will call the codelet function on one
  648. of the CPUs of the combined worker. The codelet function can use
  649. @code{starpu_combined_worker_get_size()} to get the number of threads it is
  650. allowed to start to achieve the computation. The CPU binding mask for the whole
  651. set of CPUs is already enforced, so that threads created by the function will
  652. inherit the mask, and thus execute where StarPU expected, the OS being in charge
  653. of choosing how to schedule threads on the corresponding CPUs. The application
  654. can also choose to bind threads by hand, using e.g. sched_getaffinity to know
  655. the CPU binding mask that StarPU chose.
  656. For instance, using OpenMP (full source is available in
  657. @code{examples/openmp/vector_scal.c}):
  658. @example
  659. void scal_cpu_func(void *buffers[], void *_args)
  660. @{
  661. unsigned i;
  662. float *factor = _args;
  663. struct starpu_vector_interface *vector = buffers[0];
  664. unsigned n = STARPU_VECTOR_GET_NX(vector);
  665. float *val = (float *)STARPU_VECTOR_GET_PTR(vector);
  666. #pragma omp parallel for num_threads(starpu_combined_worker_get_size())
  667. for (i = 0; i < n; i++)
  668. val[i] *= *factor;
  669. @}
  670. static struct starpu_codelet cl =
  671. @{
  672. .modes = @{ STARPU_RW @},
  673. .where = STARPU_CPU,
  674. .type = STARPU_FORKJOIN,
  675. .max_parallelism = INT_MAX,
  676. .cpu_funcs = @{scal_cpu_func, NULL@},
  677. .nbuffers = 1,
  678. @};
  679. @end example
  680. Other examples include for instance calling a BLAS parallel CPU implementation
  681. (see @code{examples/mult/xgemm.c}).
  682. @subsection SPMD-mode parallel tasks
  683. In the SPMD mode, StarPU will call the codelet function on
  684. each CPU of the combined worker. The codelet function can use
  685. @code{starpu_combined_worker_get_size()} to get the total number of CPUs
  686. involved in the combined worker, and thus the number of calls that are made in
  687. parallel to the function, and @code{starpu_combined_worker_get_rank()} to get
  688. the rank of the current CPU within the combined worker. For instance:
  689. @example
  690. static void func(void *buffers[], void *args)
  691. @{
  692. unsigned i;
  693. float *factor = _args;
  694. struct starpu_vector_interface *vector = buffers[0];
  695. unsigned n = STARPU_VECTOR_GET_NX(vector);
  696. float *val = (float *)STARPU_VECTOR_GET_PTR(vector);
  697. /* Compute slice to compute */
  698. unsigned m = starpu_combined_worker_get_size();
  699. unsigned j = starpu_combined_worker_get_rank();
  700. unsigned slice = (n+m-1)/m;
  701. for (i = j * slice; i < (j+1) * slice && i < n; i++)
  702. val[i] *= *factor;
  703. @}
  704. static struct starpu_codelet cl =
  705. @{
  706. .modes = @{ STARPU_RW @},
  707. .where = STARP_CPU,
  708. .type = STARPU_SPMD,
  709. .max_parallelism = INT_MAX,
  710. .cpu_funcs = @{ func, NULL @},
  711. .nbuffers = 1,
  712. @}
  713. @end example
  714. Of course, this trivial example will not really benefit from parallel task
  715. execution, and was only meant to be simple to understand. The benefit comes
  716. when the computation to be done is so that threads have to e.g. exchange
  717. intermediate results, or write to the data in a complex but safe way in the same
  718. buffer.
  719. @subsection Parallel tasks performance
  720. To benefit from parallel tasks, a parallel-task-aware StarPU scheduler has to
  721. be used. When exposed to codelets with a Fork or SPMD flag, the @code{pheft}
  722. (parallel-heft) and @code{pgreedy} (parallel greedy) schedulers will indeed also
  723. try to execute tasks with several CPUs. It will automatically try the various
  724. available combined worker sizes and thus be able to avoid choosing a large
  725. combined worker if the codelet does not actually scale so much.
  726. @subsection Combined worker sizes
  727. By default, StarPU creates combined workers according to the architecture
  728. structure as detected by hwloc. It means that for each object of the hwloc
  729. topology (NUMA node, socket, cache, ...) a combined worker will be created. If
  730. some nodes of the hierarchy have a big arity (e.g. many cores in a socket
  731. without a hierarchy of shared caches), StarPU will create combined workers of
  732. intermediate sizes.
  733. The user can give some hints to StarPU about combined workers sizes to favor.
  734. This can be done by using the environment variables @code{STARPU_MIN_WORKERSIZE}
  735. and @code{STARPU_MAX_WORKERSIZE}. When set, they will force StarPU to create the
  736. biggest combined workers possible without overstepping the defined boundaries.
  737. However, StarPU will create the remaining combined workers without abiding by
  738. the rules if not possible.
  739. For example : if the user specifies a minimum and maximum combined workers size
  740. of 3 on a machine containing 8 CPUs, StarPU will create a combined worker of
  741. size 2 beside the combined workers of size 3.
  742. @subsection Concurrent parallel tasks
  743. Unfortunately, many environments and librairies do not support concurrent
  744. calls.
  745. For instance, most OpenMP implementations (including the main ones) do not
  746. support concurrent @code{pragma omp parallel} statements without nesting them in
  747. another @code{pragma omp parallel} statement, but StarPU does not yet support
  748. creating its CPU workers by using such pragma.
  749. Other parallel libraries are also not safe when being invoked concurrently
  750. from different threads, due to the use of global variables in their sequential
  751. sections for instance.
  752. The solution is then to use only one combined worker at a time. This can be
  753. done by setting @code{single_combined_worker} to 1 in the @code{starpu_conf}
  754. structure, or setting the @code{STARPU_SINGLE_COMBINED_WORKER} environment
  755. variable to 1. StarPU will then run only one parallel task at a time.
  756. @node Debugging
  757. @section Debugging
  758. StarPU provides several tools to help debugging aplications. Execution traces
  759. can be generated and displayed graphically, see @ref{Generating traces}. Some
  760. gdb helpers are also provided to show the whole StarPU state:
  761. @smallexample
  762. (gdb) source tools/gdbinit
  763. (gdb) help starpu
  764. @end smallexample
  765. @node The multiformat interface
  766. @section The multiformat interface
  767. It may be interesting to represent the same piece of data using two different
  768. data structures: one that would only be used on CPUs, and one that would only
  769. be used on GPUs. This can be done by using the multiformat interface. StarPU
  770. will be able to convert data from one data structure to the other when needed.
  771. Note that the heft scheduler is the only one optimized for this interface. The
  772. user must provide StarPU with conversion codelets:
  773. @cartouche
  774. @smallexample
  775. #define NX 1024
  776. struct point array_of_structs[NX];
  777. starpu_data_handle_t handle;
  778. /*
  779. * The conversion of a piece of data is itself a task, though it is created,
  780. * submitted and destroyed by StarPU internals and not by the user. Therefore,
  781. * we have to define two codelets.
  782. * Note that for now the conversion from the CPU format to the GPU format has to
  783. * be executed on the GPU, and the conversion from the GPU to the CPU has to be
  784. * executed on the CPU.
  785. */
  786. #ifdef STARPU_USE_OPENCL
  787. void cpu_to_opencl_opencl_func(void *buffers[], void *args);
  788. struct starpu_codelet cpu_to_opencl_cl = @{
  789. .where = STARPU_OPENCL,
  790. .opencl_funcs = @{ cpu_to_opencl_opencl_func, NULL @},
  791. .nbuffers = 1,
  792. .modes = @{ STARPU_RW @}
  793. @};
  794. void opencl_to_cpu_func(void *buffers[], void *args);
  795. struct starpu_codelet opencl_to_cpu_cl = @{
  796. .where = STARPU_CPU,
  797. .cpu_funcs = @{ opencl_to_cpu_func, NULL @},
  798. .nbuffers = 1,
  799. .modes = @{ STARPU_RW @}
  800. @};
  801. #endif
  802. struct starpu_multiformat_data_interface_ops format_ops = @{
  803. #ifdef STARPU_USE_OPENCL
  804. .opencl_elemsize = 2 * sizeof(float),
  805. .cpu_to_opencl_cl = &cpu_to_opencl_cl,
  806. .opencl_to_cpu_cl = &opencl_to_cpu_cl,
  807. #endif
  808. .cpu_elemsize = 2 * sizeof(float),
  809. ...
  810. @};
  811. starpu_multiformat_data_register(handle, 0, &array_of_structs, NX, &format_ops);
  812. @end smallexample
  813. @end cartouche
  814. Kernels can be written almost as for any other interface. Note that
  815. STARPU_MULTIFORMAT_GET_CPU_PTR shall only be used for CPU kernels. CUDA kernels
  816. must use STARPU_MULTIFORMAT_GET_CUDA_PTR, and OpenCL kernels must use
  817. STARPU_MULTIFORMAT_GET_OPENCL_PTR. STARPU_MULTIFORMAT_GET_NX may be used in any
  818. kind of kernel.
  819. @cartouche
  820. @smallexample
  821. static void
  822. multiformat_scal_cpu_func(void *buffers[], void *args)
  823. @{
  824. struct point *aos;
  825. unsigned int n;
  826. aos = STARPU_MULTIFORMAT_GET_CPU_PTR(buffers[0]);
  827. n = STARPU_MULTIFORMAT_GET_NX(buffers[0]);
  828. ...
  829. @}
  830. extern "C" void multiformat_scal_cuda_func(void *buffers[], void *_args)
  831. @{
  832. unsigned int n;
  833. struct struct_of_arrays *soa;
  834. soa = (struct struct_of_arrays *) STARPU_MULTIFORMAT_GET_CUDA_PTR(buffers[0]);
  835. n = STARPU_MULTIFORMAT_GET_NX(buffers[0]);
  836. ...
  837. @}
  838. @end smallexample
  839. @end cartouche
  840. A full example may be found in @code{examples/basic_examples/multiformat.c}.
  841. @node On-GPU rendering
  842. @section On-GPU rendering
  843. Graphical-oriented applications need to draw the result of their computations,
  844. typically on the very GPU where these happened. Technologies such as OpenGL/CUDA
  845. interoperability permit to let CUDA directly work on the OpenGL buffers, making
  846. them thus immediately ready for drawing, by mapping OpenGL buffer, textures or
  847. renderbuffer objects into CUDA. CUDA however imposes some technical
  848. constraints: peer memcpy has to be disabled, and the thread that runs OpenGL has
  849. to be the one that runs CUDA computations for that GPU.
  850. To achieve this with StarPU, pass the @code{--disable-cuda-memcpy-peer} option
  851. to @code{./configure} (TODO: make it dynamic), OpenGL/GLUT has to be initialized
  852. first, and the interoperability mode has to
  853. be enabled by using the @code{cuda_opengl_interoperability} field of the
  854. @code{starpu_conf} structure, and the driver loop has to be run by
  855. the application, by using the @code{not_launched_drivers} field of
  856. @code{starpu_conf} to prevent StarPU from running it in a separate thread, and
  857. by using @code{starpu_driver_run} to run the loop. The @code{gl_interop} and
  858. @code{gl_interop_idle} examples shows how it articulates in a simple case, where
  859. rendering is done in task callbacks. The former uses @code{glutMainLoopEvent}
  860. to make GLUT progress from the StarPU driver loop, while the latter uses
  861. @code{glutIdleFunc} to make StarPU progress from the GLUT main loop.
  862. Then, to use an OpenGL buffer as a CUDA data, StarPU simply needs to be given
  863. the CUDA pointer at registration, for instance:
  864. @cartouche
  865. @smallexample
  866. for (workerid = 0; workerid < starpu_worker_get_count(); workerid++)
  867. if (starpu_worker_get_type(workerid) == STARPU_CUDA_WORKER)
  868. break;
  869. cudaGraphicsResourceGetMappedPointer((void**)&output, &num_bytes, resource);
  870. starpu_vector_data_register(&handle, starpu_worker_get_memory_node(workerid), output, num_bytes / sizeof(float4), sizeof(float4));
  871. starpu_insert_task(&cl, STARPU_RW, handle, 0);
  872. @end smallexample
  873. @end cartouche
  874. and display it e.g. in the callback function.
  875. @node More examples
  876. @section More examples
  877. More examples are available in the StarPU sources in the @code{examples/}
  878. directory. Simple examples include:
  879. @table @asis
  880. @item @code{incrementer/}:
  881. Trivial incrementation test.
  882. @item @code{basic_examples/}:
  883. Simple documented Hello world (as shown in @ref{Hello World}), vector/scalar product (as shown
  884. in @ref{Vector Scaling on an Hybrid CPU/GPU Machine}), matrix
  885. product examples (as shown in @ref{Performance model example}), an example using the blocked matrix data
  886. interface, an example using the variable data interface, and an example
  887. using different formats on CPUs and GPUs.
  888. @item @code{matvecmult/}:
  889. OpenCL example from NVidia, adapted to StarPU.
  890. @item @code{axpy/}:
  891. AXPY CUBLAS operation adapted to StarPU.
  892. @item @code{fortran/}:
  893. Example of Fortran bindings.
  894. @end table
  895. More advanced examples include:
  896. @table @asis
  897. @item @code{filters/}:
  898. Examples using filters, as shown in @ref{Partitioning Data}.
  899. @item @code{lu/}:
  900. LU matrix factorization, see for instance @code{xlu_implicit.c}
  901. @item @code{cholesky/}:
  902. Cholesky matrix factorization, see for instance @code{cholesky_implicit.c}.
  903. @end table