perf-optimization.texi 15 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. TODO: improve!
  8. @menu
  9. * Data management::
  10. * Task granularity::
  11. * Task submission::
  12. * Task priorities::
  13. * Task scheduling policy::
  14. * Performance model calibration::
  15. * Task distribution vs Data transfer::
  16. * Data prefetch::
  17. * Power-based scheduling::
  18. * Profiling::
  19. * CUDA-specific optimizations::
  20. * Performance debugging::
  21. @end menu
  22. Simply encapsulating application kernels into tasks already permits to
  23. seamlessly support CPU and GPUs at the same time. To achieve good performance, a
  24. few additional changes are needed.
  25. @node Data management
  26. @section Data management
  27. When the application allocates data, whenever possible it should use the
  28. @code{starpu_malloc} function, which will ask CUDA or
  29. OpenCL to make the allocation itself and pin the corresponding allocated
  30. memory. This is needed to permit asynchronous data transfer, i.e. permit data
  31. transfer to overlap with computations. Otherwise, the trace will show that the
  32. @code{DriverCopyAsync} state takes a lot of time, this is because CUDA or OpenCL
  33. then reverts to synchronous transfers.
  34. By default, StarPU leaves replicates of data wherever they were used, in case they
  35. will be re-used by other tasks, thus saving the data transfer time. When some
  36. task modifies some data, all the other replicates are invalidated, and only the
  37. processing unit which ran that task will have a valid replicate of the data. If the application knows
  38. that this data will not be re-used by further tasks, it should advise StarPU to
  39. immediately replicate it to a desired list of memory nodes (given through a
  40. bitmask). This can be understood like the write-through mode of CPU caches.
  41. @cartouche
  42. @smallexample
  43. starpu_data_set_wt_mask(img_handle, 1<<0);
  44. @end smallexample
  45. @end cartouche
  46. will for instance request to always automatically transfer a replicate into the
  47. main memory (node 0), as bit 0 of the write-through bitmask is being set.
  48. @cartouche
  49. @smallexample
  50. starpu_data_set_wt_mask(img_handle, ~0U);
  51. @end smallexample
  52. @end cartouche
  53. will request to always automatically broadcast the updated data to all memory
  54. nodes.
  55. @node Task granularity
  56. @section Task granularity
  57. Like any other runtime, StarPU has some overhead to manage tasks. Since
  58. it does smart scheduling and data management, that overhead is not always
  59. neglectable. The order of magnitude of the overhead is typically a couple of
  60. microseconds. The amount of work that a task should do should thus be somewhat
  61. bigger, to make sure that the overhead becomes neglectible. The offline
  62. performance feedback can provide a measure of task length, which should thus be
  63. checked if bad performance are observed.
  64. @node Task submission
  65. @section Task submission
  66. To let StarPU make online optimizations, tasks should be submitted
  67. asynchronously as much as possible. Ideally, all the tasks should be
  68. submitted, and mere calls to @code{starpu_task_wait_for_all} or
  69. @code{starpu_data_unregister} be done to wait for
  70. termination. StarPU will then be able to rework the whole schedule, overlap
  71. computation with communication, manage accelerator local memory usage, etc.
  72. @node Task priorities
  73. @section Task priorities
  74. By default, StarPU will consider the tasks in the order they are submitted by
  75. the application. If the application programmer knows that some tasks should
  76. be performed in priority (for instance because their output is needed by many
  77. other tasks and may thus be a bottleneck if not executed early enough), the
  78. @code{priority} field of the task structure should be set to transmit the
  79. priority information to StarPU.
  80. @node Task scheduling policy
  81. @section Task scheduling policy
  82. By default, StarPU uses the @code{eager} simple greedy scheduler. This is
  83. because it provides correct load balance even if the application codelets do not
  84. have performance models. If your application codelets have performance models
  85. (@pxref{Performance model example} for examples showing how to do it),
  86. you should change the scheduler thanks to the @code{STARPU_SCHED} environment
  87. variable. For instance @code{export STARPU_SCHED=dmda} . Use @code{help} to get
  88. the list of available schedulers.
  89. The @b{eager} scheduler uses a central task queue, from which workers draw tasks
  90. to work on. This however does not permit to prefetch data since the scheduling
  91. decision is taken late. If a task has a non-0 priority, it is put at the front of the queue.
  92. The @b{prio} scheduler also uses a central task queue, but sorts tasks by
  93. priority (between -5 and 5).
  94. The @b{random} scheduler distributes tasks randomly according to assumed worker
  95. overall performance.
  96. The @b{ws} (work stealing) scheduler schedules tasks on the local worker by
  97. default. When a worker becomes idle, it steals a task from the most loaded
  98. worker.
  99. The @b{dm} (deque model) scheduler uses task execution performance models into account to
  100. perform an HEFT-similar scheduling strategy: it schedules tasks where their
  101. termination time will be minimal.
  102. The @b{dmda} (deque model data aware) scheduler is similar to dm, it also takes
  103. into account data transfer time.
  104. The @b{dmdar} (deque model data aware ready) scheduler is similar to dmda,
  105. it also sorts tasks on per-worker queues by number of already-available data
  106. buffers.
  107. The @b{dmdas} (deque model data aware sorted) scheduler is similar to dmda, it
  108. also supports arbitrary priority values.
  109. The @b{heft} (heterogeneous earliest finish time) scheduler is similar to dmda, it also supports task bundles.
  110. The @b{pheft} (parallel HEFT) scheduler is similar to heft, it also supports
  111. parallel tasks (still experimental).
  112. The @b{pgreedy} (parallel greedy) scheduler is similar to greedy, it also
  113. supports parallel tasks (still experimental).
  114. @node Performance model calibration
  115. @section Performance model calibration
  116. Most schedulers are based on an estimation of codelet duration on each kind
  117. of processing unit. For this to be possible, the application programmer needs
  118. to configure a performance model for the codelets of the application (see
  119. @ref{Performance model example} for instance). History-based performance models
  120. use on-line calibration. StarPU will automatically calibrate codelets
  121. which have never been calibrated yet, and save the result in
  122. @code{~/.starpu/sampling/codelets}.
  123. The models are indexed by machine name. To share the models between machines (e.g. for a homogeneous cluster), use @code{export STARPU_HOSTNAME=some_global_name}. To force continuing calibration, use
  124. @code{export STARPU_CALIBRATE=1} . This may be necessary if your application
  125. has not-so-stable performance. StarPU will force calibration (and thus ignore
  126. the current result) until 10 (_STARPU_CALIBRATION_MINIMUM) measurements have been
  127. made on each architecture, to avoid badly scheduling tasks just because the
  128. first measurements were not so good. Details on the current performance model status
  129. can be obtained from the @code{starpu_perfmodel_display} command: the @code{-l}
  130. option lists the available performance models, and the @code{-s} option permits
  131. to choose the performance model to be displayed. The result looks like:
  132. @example
  133. $ starpu_perfmodel_display -s starpu_dlu_lu_model_22
  134. performance model for cpu
  135. # hash size mean dev n
  136. 880805ba 98304 2.731309e+02 6.010210e+01 1240
  137. b50b6605 393216 1.469926e+03 1.088828e+02 1240
  138. 5c6c3401 1572864 1.125983e+04 3.265296e+03 1240
  139. @end example
  140. Which shows that for the LU 22 kernel with a 1.5MiB matrix, the average
  141. execution time on CPUs was about 11ms, with a 3ms standard deviation, over
  142. 1240 samples. It is a good idea to check this before doing actual performance
  143. measurements.
  144. A graph can be drawn by using the @code{starpu_perfmodel_plot}:
  145. @example
  146. $ starpu_perfmodel_plot -s starpu_dlu_lu_model_22
  147. 98304 393216 1572864
  148. $ gnuplot starpu_starpu_dlu_lu_model_22.gp
  149. $ gv starpu_starpu_dlu_lu_model_22.eps
  150. @end example
  151. If a kernel source code was modified (e.g. performance improvement), the
  152. calibration information is stale and should be dropped, to re-calibrate from
  153. start. This can be done by using @code{export STARPU_CALIBRATE=2}.
  154. Note: due to CUDA limitations, to be able to measure kernel duration,
  155. calibration mode needs to disable asynchronous data transfers. Calibration thus
  156. disables data transfer / computation overlapping, and should thus not be used
  157. for eventual benchmarks. Note 2: history-based performance models get calibrated
  158. only if a performance-model-based scheduler is chosen.
  159. @node Task distribution vs Data transfer
  160. @section Task distribution vs Data transfer
  161. Distributing tasks to balance the load induces data transfer penalty. StarPU
  162. thus needs to find a balance between both. The target function that the
  163. @code{dmda} scheduler of StarPU
  164. tries to minimize is @code{alpha * T_execution + beta * T_data_transfer}, where
  165. @code{T_execution} is the estimated execution time of the codelet (usually
  166. accurate), and @code{T_data_transfer} is the estimated data transfer time. The
  167. latter is estimated based on bus calibration before execution start,
  168. i.e. with an idle machine, thus without contention. You can force bus re-calibration by running
  169. @code{starpu_calibrate_bus}. The beta parameter defaults to 1, but it can be
  170. worth trying to tweak it by using @code{export STARPU_SCHED_BETA=2} for instance,
  171. since during real application execution, contention makes transfer times bigger.
  172. This is of course imprecise, but in practice, a rough estimation already gives
  173. the good results that a precise estimation would give.
  174. @node Data prefetch
  175. @section Data prefetch
  176. The @code{heft}, @code{dmda} and @code{pheft} scheduling policies perform data prefetch (see @ref{STARPU_PREFETCH}):
  177. as soon as a scheduling decision is taken for a task, requests are issued to
  178. transfer its required data to the target processing unit, if needeed, so that
  179. when the processing unit actually starts the task, its data will hopefully be
  180. already available and it will not have to wait for the transfer to finish.
  181. The application may want to perform some manual prefetching, for several reasons
  182. such as excluding initial data transfers from performance measurements, or
  183. setting up an initial statically-computed data distribution on the machine
  184. before submitting tasks, which will thus guide StarPU toward an initial task
  185. distribution (since StarPU will try to avoid further transfers).
  186. This can be achieved by giving the @code{starpu_data_prefetch_on_node} function
  187. the handle and the desired target memory node.
  188. @node Power-based scheduling
  189. @section Power-based scheduling
  190. If the application can provide some power performance model (through
  191. the @code{power_model} field of the codelet structure), StarPU will
  192. take it into account when distributing tasks. The target function that
  193. the @code{dmda} scheduler minimizes becomes @code{alpha * T_execution +
  194. beta * T_data_transfer + gamma * Consumption} , where @code{Consumption}
  195. is the estimated task consumption in Joules. To tune this parameter, use
  196. @code{export STARPU_SCHED_GAMMA=3000} for instance, to express that each Joule
  197. (i.e kW during 1000us) is worth 3000us execution time penalty. Setting
  198. @code{alpha} and @code{beta} to zero permits to only take into account power consumption.
  199. This is however not sufficient to correctly optimize power: the scheduler would
  200. simply tend to run all computations on the most energy-conservative processing
  201. unit. To account for the consumption of the whole machine (including idle
  202. processing units), the idle power of the machine should be given by setting
  203. @code{export STARPU_IDLE_POWER=200} for 200W, for instance. This value can often
  204. be obtained from the machine power supplier.
  205. The power actually consumed by the total execution can be displayed by setting
  206. @code{export STARPU_PROFILING=1 STARPU_WORKER_STATS=1} .
  207. @node Profiling
  208. @section Profiling
  209. A quick view of how many tasks each worker has executed can be obtained by setting
  210. @code{export STARPU_WORKER_STATS=1} This is a convenient way to check that
  211. execution did happen on accelerators without penalizing performance with
  212. the profiling overhead.
  213. A quick view of how much data transfers have been issued can be obtained by setting
  214. @code{export STARPU_BUS_STATS=1} .
  215. More detailed profiling information can be enabled by using @code{export STARPU_PROFILING=1} or by
  216. calling @code{starpu_profiling_status_set} from the source code.
  217. Statistics on the execution can then be obtained by using @code{export
  218. STARPU_BUS_STATS=1} and @code{export STARPU_WORKER_STATS=1} .
  219. More details on performance feedback are provided by the next chapter.
  220. @node CUDA-specific optimizations
  221. @section CUDA-specific optimizations
  222. Due to CUDA limitations, StarPU will have a hard time overlapping its own
  223. communications and the codelet computations if the application does not use a
  224. dedicated CUDA stream for its computations. StarPU provides one by the use of
  225. @code{starpu_cuda_get_local_stream()} which should be used by all CUDA codelet
  226. operations. For instance:
  227. @cartouche
  228. @smallexample
  229. func <<<grid,block,0,starpu_cuda_get_local_stream()>>> (foo, bar);
  230. cudaStreamSynchronize(starpu_cuda_get_local_stream());
  231. @end smallexample
  232. @end cartouche
  233. StarPU already does appropriate calls for the CUBLAS library.
  234. Unfortunately, some CUDA libraries do not have stream variants of
  235. kernels. That will lower the potential for overlapping.
  236. @node Performance debugging
  237. @section Performance debugging
  238. To get an idea of what is happening, a lot of performance feedback is available,
  239. detailed in the next chapter. The various informations should be checked for.
  240. @itemize
  241. @item What does the Gantt diagram look like? (see @ref{Gantt diagram})
  242. @itemize
  243. @item If it's mostly green (running tasks), then the machine is properly
  244. utilized, and perhaps the codelets are just slow. Check their performance, see
  245. @ref{Codelet performance}.
  246. @item If it's mostly purple (FetchingInput), tasks keep waiting for data
  247. transfers, do you perhaps have far more communication than computation? Did
  248. you properly use CUDA streams to make sure communication can be
  249. overlapped? Did you use data-locality aware schedulers to avoid transfers as
  250. much as possible?
  251. @item If it's mostly red (Blocked), tasks keep waiting for dependencies,
  252. do you have enough parallelism? It might be a good idea to check what the DAG
  253. looks like (see @ref{DAG}).
  254. @item If only some workers are completely red (Blocked), for some reason the
  255. scheduler didn't assign tasks to them. Perhaps the performance model is bogus,
  256. check it (see @ref{Codelet performance}). Do all your codelets have a
  257. performance model? When some of them don't, the schedulers switches to a
  258. greedy algorithm which thus performs badly.
  259. @end itemize
  260. @end itemize