/* * This file is part of the StarPU Handbook. * Copyright (C) 2009--2011 Universit@'e de Bordeaux * Copyright (C) 2010, 2011, 2012, 2013, 2014 Centre National de la Recherche Scientifique * Copyright (C) 2011, 2012 Institut National de Recherche en Informatique et Automatique * See the file version.doxy for copying conditions. */ /*! \page OnlinePerformanceTools Online Performance Tools \section On-linePerformanceFeedback On-line Performance Feedback \subsection EnablingOn-linePerformanceMonitoring Enabling On-line Performance Monitoring In order to enable online performance monitoring, the application can call starpu_profiling_status_set() with the parameter ::STARPU_PROFILING_ENABLE. It is possible to detect whether monitoring is already enabled or not by calling starpu_profiling_status_get(). Enabling monitoring also reinitialize all previously collected feedback. The environment variable \ref STARPU_PROFILING can also be set to <c>1</c> to achieve the same effect. The function starpu_profiling_init() can also be called during the execution to reinitialize performance counters and to start the profiling if the environment variable \ref STARPU_PROFILING is set to <c>1</c>. Likewise, performance monitoring is stopped by calling starpu_profiling_status_set() with the parameter ::STARPU_PROFILING_DISABLE. Note that this does not reset the performance counters so that the application may consult them later on. More details about the performance monitoring API are available in \ref API_Profiling. \subsection Per-taskFeedback Per-task Feedback If profiling is enabled, a pointer to a structure starpu_profiling_task_info is put in the field starpu_task::profiling_info when a task terminates. This structure is automatically destroyed when the task structure is destroyed, either automatically or by calling starpu_task_destroy(). The structure starpu_profiling_task_info indicates the date when the task was submitted (starpu_profiling_task_info::submit_time), started (starpu_profiling_task_info::start_time), and terminated (starpu_profiling_task_info::end_time), relative to the initialization of StarPU with starpu_init(). It also specifies the identifier of the worker that has executed the task (starpu_profiling_task_info::workerid). These date are stored as <c>timespec</c> structures which the user may convert into micro-seconds using the helper function starpu_timing_timespec_to_us(). It it worth noting that the application may directly access this structure from the callback executed at the end of the task. The structure starpu_task associated to the callback currently being executed is indeed accessible with the function starpu_task_get_current(). \subsection Per-codeletFeedback Per-codelet Feedback The field starpu_codelet::per_worker_stats is an array of counters. The i-th entry of the array is incremented every time a task implementing the codelet is executed on the i-th worker. This array is not reinitialized when profiling is enabled or disabled. \subsection Per-workerFeedback Per-worker Feedback The second argument returned by the function starpu_profiling_worker_get_info() is a structure starpu_profiling_worker_info that gives statistics about the specified worker. This structure specifies when StarPU started collecting profiling information for that worker (starpu_profiling_worker_info::start_time), the duration of the profiling measurement interval (starpu_profiling_worker_info::total_time), the time spent executing kernels (starpu_profiling_worker_info::executing_time), the time spent sleeping because there is no task to execute at all (starpu_profiling_worker_info::sleeping_time), and the number of tasks that were executed while profiling was enabled. These values give an estimation of the proportion of time spent do real work, and the time spent either sleeping because there are not enough executable tasks or simply wasted in pure StarPU overhead. Calling starpu_profiling_worker_get_info() resets the profiling information associated to a worker. When an FxT trace is generated (see \ref GeneratingTracesWithFxT), it is also possible to use the tool <c>starpu_workers_activity</c> (see \ref MonitoringActivity) to generate a graphic showing the evolution of these values during the time, for the different workers. \subsection Bus-relatedFeedback Bus-related Feedback TODO: ajouter \ref STARPU_BUS_STATS // how to enable/disable performance monitoring // what kind of information do we get ? The bus speed measured by StarPU can be displayed by using the tool <c>starpu_machine_display</c>, for instance: \verbatim StarPU has found: 3 CUDA devices CUDA 0 (Tesla C2050 02:00.0) CUDA 1 (Tesla C2050 03:00.0) CUDA 2 (Tesla C2050 84:00.0) from to RAM to CUDA 0 to CUDA 1 to CUDA 2 RAM 0.000000 5176.530428 5176.492994 5191.710722 CUDA 0 4523.732446 0.000000 2414.074751 2417.379201 CUDA 1 4523.718152 2414.078822 0.000000 2417.375119 CUDA 2 4534.229519 2417.069025 2417.060863 0.000000 \endverbatim \subsection StarPU-TopInterface StarPU-Top Interface StarPU-Top is an interface which remotely displays the on-line state of a StarPU application and permits the user to change parameters on the fly. Variables to be monitored can be registered by calling the functions starpu_top_add_data_boolean(), starpu_top_add_data_integer(), starpu_top_add_data_float(), e.g.: \code{.c} starpu_top_data *data = starpu_top_add_data_integer("mynum", 0, 100, 1); \endcode The application should then call starpu_top_init_and_wait() to give its name and wait for StarPU-Top to get a start request from the user. The name is used by StarPU-Top to quickly reload a previously-saved layout of parameter display. \code{.c} starpu_top_init_and_wait("the application"); \endcode The new values can then be provided thanks to starpu_top_update_data_boolean(), starpu_top_update_data_integer(), starpu_top_update_data_float(), e.g.: \code{.c} starpu_top_update_data_integer(data, mynum); \endcode Updateable parameters can be registered thanks to starpu_top_register_parameter_boolean(), starpu_top_register_parameter_integer(), starpu_top_register_parameter_float(), e.g.: \code{.c} float alpha; starpu_top_register_parameter_float("alpha", &alpha, 0, 10, modif_hook); \endcode <c>modif_hook</c> is a function which will be called when the parameter is being modified, it can for instance print the new value: \code{.c} void modif_hook(struct starpu_top_param *d) { fprintf(stderr,"%s has been modified: %f\n", d->name, alpha); } \endcode Task schedulers should notify StarPU-Top when it has decided when a task will be scheduled, so that it can show it in its Gantt chart, for instance: \code{.c} starpu_top_task_prevision(task, workerid, begin, end); \endcode Starting StarPU-Top (StarPU-Top is started via the binary <c>starpu_top</c>.) and the application can be done two ways: <ul> <li> The application is started by hand on some machine (and thus already waiting for the start event). In the Preference dialog of StarPU-Top, the SSH checkbox should be unchecked, and the hostname and port (default is 2011) on which the application is already running should be specified. Clicking on the connection button will thus connect to the already-running application. </li> <li> StarPU-Top is started first, and clicking on the connection button will start the application itself (possibly on a remote machine). The SSH checkbox should be checked, and a command line provided, e.g.: \verbatim $ ssh myserver STARPU_SCHED=dmda ./application \endverbatim If port 2011 of the remote machine can not be accessed directly, an ssh port bridge should be added: \verbatim $ ssh -L 2011:localhost:2011 myserver STARPU_SCHED=dmda ./application \endverbatim and "localhost" should be used as IP Address to connect to. </li> </ul> \section TaskAndWorkerProfiling Task And Worker Profiling A full example showing how to use the profiling API is available in the StarPU sources in the directory <c>examples/profiling/</c>. \code{.c} struct starpu_task *task = starpu_task_create(); task->cl = &cl; task->synchronous = 1; /* We will destroy the task structure by hand so that we can * query the profiling info before the task is destroyed. */ task->destroy = 0; /* Submit and wait for completion (since synchronous was set to 1) */ starpu_task_submit(task); /* The task is finished, get profiling information */ struct starpu_profiling_task_info *info = task->profiling_info; /* How much time did it take before the task started ? */ double delay += starpu_timing_timespec_delay_us(&info->submit_time, &info->start_time); /* How long was the task execution ? */ double length += starpu_timing_timespec_delay_us(&info->start_time, &info->end_time); /* We don't need the task structure anymore */ starpu_task_destroy(task); \endcode \code{.c} /* Display the occupancy of all workers during the test */ int worker; for (worker = 0; worker < starpu_worker_get_count(); worker++) { struct starpu_profiling_worker_info worker_info; int ret = starpu_profiling_worker_get_info(worker, &worker_info); STARPU_ASSERT(!ret); double total_time = starpu_timing_timespec_to_us(&worker_info.total_time); double executing_time = starpu_timing_timespec_to_us(&worker_info.executing_time); double sleeping_time = starpu_timing_timespec_to_us(&worker_info.sleeping_time); double overhead_time = total_time - executing_time - sleeping_time; float executing_ratio = 100.0*executing_time/total_time; float sleeping_ratio = 100.0*sleeping_time/total_time; float overhead_ratio = 100.0 - executing_ratio - sleeping_ratio; char workername[128]; starpu_worker_get_name(worker, workername, 128); fprintf(stderr, "Worker %s:\n", workername); fprintf(stderr, "\ttotal time: %.2lf ms\n", total_time*1e-3); fprintf(stderr, "\texec time: %.2lf ms (%.2f %%)\n", executing_time*1e-3, executing_ratio); fprintf(stderr, "\tblocked time: %.2lf ms (%.2f %%)\n", sleeping_time*1e-3, sleeping_ratio); fprintf(stderr, "\toverhead time: %.2lf ms (%.2f %%)\n", overhead_time*1e-3, overhead_ratio); } \endcode \section PerformanceModelExample Performance Model Example To achieve good scheduling, StarPU scheduling policies need to be able to estimate in advance the duration of a task. This is done by giving to codelets a performance model, by defining a structure starpu_perfmodel and providing its address in the field starpu_codelet::model. The fields starpu_perfmodel::symbol and starpu_perfmodel::type are mandatory, to give a name to the model, and the type of the model, since there are several kinds of performance models. For compatibility, make sure to initialize the whole structure to zero, either by using explicit memset(), or by letting the compiler implicitly do it as examplified below. <ul> <li> Measured at runtime (model type ::STARPU_HISTORY_BASED). This assumes that for a given set of data input/output sizes, the performance will always be about the same. This is very true for regular kernels on GPUs for instance (<0.1% error), and just a bit less true on CPUs (~=1% error). This also assumes that there are few different sets of data input/output sizes. StarPU will then keep record of the average time of previous executions on the various processing units, and use it as an estimation. History is done per task size, by using a hash of the input and ouput sizes as an index. It will also save it in <c>$STARPU_HOME/.starpu/sampling/codelets</c> for further executions, and can be observed by using the tool <c>starpu_perfmodel_display</c>, or drawn by using the tool <c>starpu_perfmodel_plot</c> (\ref PerformanceModelCalibration). The models are indexed by machine name. To share the models between machines (e.g. for a homogeneous cluster), use <c>export STARPU_HOSTNAME=some_global_name</c>. Measurements are only done when using a task scheduler which makes use of it, such as <c>dmda</c>. Measurements can also be provided explicitly by the application, by using the function starpu_perfmodel_update_history(). The following is a small code example. If e.g. the code is recompiled with other compilation options, or several variants of the code are used, the symbol string should be changed to reflect that, in order to recalibrate a new model from zero. The symbol string can even be constructed dynamically at execution time, as long as this is done before submitting any task using it. \code{.c} static struct starpu_perfmodel mult_perf_model = { .type = STARPU_HISTORY_BASED, .symbol = "mult_perf_model" }; struct starpu_codelet cl = { .cpu_funcs = { cpu_mult }, .cpu_funcs_name = { "cpu_mult" }, .nbuffers = 3, .modes = { STARPU_R, STARPU_R, STARPU_W }, /* for the scheduling policy to be able to use performance models */ .model = &mult_perf_model }; \endcode </li> <li> Measured at runtime and refined by regression (model types ::STARPU_REGRESSION_BASED and ::STARPU_NL_REGRESSION_BASED). This still assumes performance regularity, but works with various data input sizes, by applying regression over observed execution times. ::STARPU_REGRESSION_BASED uses an a*n^b regression form, ::STARPU_NL_REGRESSION_BASED uses an a*n^b+c (more precise than ::STARPU_REGRESSION_BASED, but costs a lot more to compute). For instance, <c>tests/perfmodels/regression_based.c</c> uses a regression-based performance model for the function memset(). Of course, the application has to issue tasks with varying size so that the regression can be computed. StarPU will not trust the regression unless there is at least 10% difference between the minimum and maximum observed input size. It can be useful to set the environment variable \ref STARPU_CALIBRATE to <c>1</c> and run the application on varying input sizes with \ref STARPU_SCHED set to <c>dmda</c> scheduler, so as to feed the performance model for a variety of inputs. The application can also provide the measurements explictly by using the function starpu_perfmodel_update_history(). The tools <c>starpu_perfmodel_display</c> and <c>starpu_perfmodel_plot</c> can be used to observe how much the performance model is calibrated (\ref PerformanceModelCalibration); when their output look good, \ref STARPU_CALIBRATE can be reset to <c>0</c> to let StarPU use the resulting performance model without recording new measures, and \ref STARPU_SCHED can be set to <c>dmda</c> to benefit from the performance models. If the data input sizes vary a lot, it is really important to set \ref STARPU_CALIBRATE to <c>0</c>, otherwise StarPU will continue adding the measures, and result with a very big performance model, which will take time a lot of time to load and save. For non-linear regression, since computing it is quite expensive, it is only done at termination of the application. This means that the first execution of the application will use only history-based performance model to perform scheduling, without using regression. </li> <li> Provided as an estimation from the application itself (model type ::STARPU_COMMON and field starpu_perfmodel::cost_function), see for instance <c>examples/common/blas_model.h</c> and <c>examples/common/blas_model.c</c>. </li> <li> Provided explicitly by the application (model type ::STARPU_PER_ARCH): the fields <c>.per_arch[arch][nimpl].cost_function</c> have to be filled with pointers to functions which return the expected duration of the task in micro-seconds, one per architecture. </li> </ul> For ::STARPU_HISTORY_BASED, ::STARPU_REGRESSION_BASED, and ::STARPU_NL_REGRESSION_BASED, the dimensions of task data (both input and output) are used as an index by default. ::STARPU_HISTORY_BASED uses a CRC hash of the dimensions as an index to distinguish histories, and ::STARPU_REGRESSION_BASED and ::STARPU_NL_REGRESSION_BASED use the total size as an index for the regression. The starpu_perfmodel::size_base and starpu_perfmodel::footprint fields however permit the application to override that, when for instance some of the data do not matter for task cost (e.g. mere reference table), or when using sparse structures (in which case it is the number of non-zeros which matter), or when there is some hidden parameter such as the number of iterations, or when the application actually has a very good idea of the complexity of the algorithm, and just not the speed of the processor, etc. The example in the directory <c>examples/pi</c> uses this to include the number of iterations in the base size. starpu_perfmodel::size_base should be used when the variance of the actual performance is known (i.e. bigger returned value is longer execution time), and thus particularly useful for ::STARPU_REGRESSION_BASED or ::STARPU_NL_REGRESSION_BASED. starpu_perfmodel::footprint can be used when the variance of the actual performance is unknown (irregular performance behavior, etc.), and thus only useful for ::STARPU_HISTORY_BASED. starpu_task_data_footprint() can be used as a base and combined with other parameters through starpu_hash_crc32c_be for instance. StarPU will automatically determine when the performance model is calibrated, or rather, it will assume the performance model is calibrated until the application submits a task for which the performance can not be predicted. For ::STARPU_HISTORY_BASED, StarPU will require 10 (STARPU_CALIBRATE_MINIMUM) measurements for a given size before estimating that an average can be taken as estimation for further executions with the same size. For ::STARPU_REGRESSION_BASED and ::STARPU_NL_REGRESSION_BASED, StarPU will require 10 (STARPU_CALIBRATE_MINIMUM) measurements, and that the minimum measured data size is smaller than 90% of the maximum measured data size (i.e. the measurement interval is large enough for a regression to have a meaning). Calibration can also be forced by setting the \ref STARPU_CALIBRATE environment variable to <c>1</c>, or even reset by setting it to <c>2</c>. How to use schedulers which can benefit from such performance model is explained in \ref TaskSchedulingPolicy. The same can be done for task power consumption estimation, by setting the field starpu_codelet::power_model the same way as the field starpu_codelet::model. Note: for now, the application has to give to the power consumption performance model a name which is different from the execution time performance model. The application can request time estimations from the StarPU performance models by filling a task structure as usual without actually submitting it. The data handles can be created by calling any of the functions <c>starpu_*_data_register</c> with a <c>NULL</c> pointer and <c>-1</c> node and the desired data sizes, and need to be unregistered as usual. The functions starpu_task_expected_length() and starpu_task_expected_power() can then be called to get an estimation of the task cost on a given arch. starpu_task_footprint() can also be used to get the footprint used for indexing history-based performance models. starpu_task_destroy() needs to be called to destroy the dummy task afterwards. See <c>tests/perfmodels/regression_based.c</c> for an example. \section DataTrace Data trace and tasks length It is possible to get statistics about tasks length and data size by using : \verbatim $ starpu_fxt_data_trace filename [codelet1 codelet2 ... codeletn] \endverbatim Where filename is the FxT trace file and codeletX the names of the codelets you want to profile (if no names are specified, <c>starpu_fxt_data_trace</c> will profile them all). This will create a file, <c>data_trace.gp</c> which can be executed to get a <c>.eps</c> image of these results. On the image, each point represents a task, and each color corresponds to a codelet. \image html data_trace.png \image latex data_trace.eps "" width=\textwidth */