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							- @c -*-texinfo-*-
 
- @c This file is part of the StarPU Handbook.
 
- @c Copyright (C) 2009--2011  Universit@'e de Bordeaux 1
 
- @c Copyright (C) 2010, 2011, 2012  Centre National de la Recherche Scientifique
 
- @c Copyright (C) 2011 Institut National de Recherche en Informatique et Automatique
 
- @c See the file starpu.texi for copying conditions.
 
- @menu
 
- * Using multiple implementations of a codelet::
 
- * Enabling implementation according to capabilities::
 
- * Task and Worker Profiling::   
 
- * Partitioning Data::           Partitioning Data
 
- * Performance model example::   
 
- * Theoretical lower bound on execution time::  
 
- * Insert Task Utility::          
 
- * Parallel Tasks::
 
- * Debugging::
 
- * The multiformat interface::
 
- * On-GPU rendering::
 
- * More examples::               More examples shipped with StarPU
 
- @end menu
 
- @node Using multiple implementations of a codelet
 
- @section Using multiple implementations of a codelet
 
- One may want to write multiple implementations of a codelet for a single type of
 
- device and let StarPU choose which one to run. As an example, we will show how
 
- to use SSE to scale a vector. The codelet can be written as follows:
 
- @cartouche
 
- @smallexample
 
- #include <xmmintrin.h>
 
- void scal_sse_func(void *buffers[], void *cl_arg)
 
- @{
 
-     float *vector = (float *) STARPU_VECTOR_GET_PTR(buffers[0]);
 
-     unsigned int n = STARPU_VECTOR_GET_NX(buffers[0]);
 
-     unsigned int n_iterations = n/4;
 
-     if (n % 4 != 0)
 
-         n_iterations++;
 
-     __m128 *VECTOR = (__m128*) vector;
 
-     __m128 factor __attribute__((aligned(16)));
 
-     factor = _mm_set1_ps(*(float *) cl_arg);
 
-     unsigned int i;    
 
-     for (i = 0; i < n_iterations; i++)
 
-         VECTOR[i] = _mm_mul_ps(factor, VECTOR[i]);
 
- @}
 
- @end smallexample
 
- @end cartouche
 
- @cartouche
 
- @smallexample
 
- struct starpu_codelet cl = @{
 
-     .where = STARPU_CPU,
 
-     .cpu_funcs = @{ scal_cpu_func, scal_sse_func, NULL @},
 
-     .nbuffers = 1,
 
-     .modes = @{ STARPU_RW @}
 
- @};
 
- @end smallexample
 
- @end cartouche
 
- Schedulers which are multi-implementation aware (only @code{dmda}, @code{heft}
 
- and @code{pheft} for now) will use the performance models of all the
 
- implementations it was given, and pick the one that seems to be the fastest.
 
- @node Enabling implementation according to capabilities
 
- @section Enabling implementation according to capabilities
 
- Some implementations may not run on some devices. For instance, some CUDA
 
- devices do not support double floating point precision, and thus the kernel
 
- execution would just fail; or the device may not have enough shared memory for
 
- the implementation being used. The @code{can_execute} field of the @code{struct
 
- starpu_codelet} structure permits to express this. For instance:
 
- @cartouche
 
- @smallexample
 
- static int can_execute(unsigned workerid, struct starpu_task *task, unsigned nimpl)
 
- @{
 
-   const struct cudaDeviceProp *props;
 
-   if (starpu_worker_get_type(workerid) == STARPU_CPU_WORKER)
 
-     return 1;
 
-   /* Cuda device */
 
-   props = starpu_cuda_get_device_properties(workerid);
 
-   if (props->major >= 2 || props->minor >= 3)
 
-     /* At least compute capability 1.3, supports doubles */
 
-     return 1;
 
-   /* Old card, does not support doubles */
 
-   return 0;
 
- @}
 
- struct starpu_codelet cl = @{
 
-     .where = STARPU_CPU|STARPU_CUDA,
 
-     .can_execute = can_execute,
 
-     .cpu_funcs = @{ cpu_func, NULL @},
 
-     .cuda_funcs = @{ gpu_func, NULL @}
 
-     .nbuffers = 1,
 
-     .modes = @{ STARPU_RW @}
 
- @};
 
- @end smallexample
 
- @end cartouche
 
- This can be essential e.g. when running on a machine which mixes various models
 
- of CUDA devices, to take benefit from the new models without crashing on old models.
 
- Note: the @code{can_execute} function is called by the scheduler each time it
 
- tries to match a task with a worker, and should thus be very fast. The
 
- @code{starpu_cuda_get_device_properties} provides a quick access to CUDA
 
- properties of CUDA devices to achieve such efficiency.
 
- Another example is compiling CUDA code for various compute capabilities,
 
- resulting with two CUDA functions, e.g. @code{scal_gpu_13} for compute capability
 
- 1.3, and @code{scal_gpu_20} for compute capability 2.0. Both functions can be
 
- provided to StarPU by using @code{cuda_funcs}, and @code{can_execute} can then be
 
- used to rule out the @code{scal_gpu_20} variant on a CUDA device which
 
- will not be able to execute it:
 
- @cartouche
 
- @smallexample
 
- static int can_execute(unsigned workerid, struct starpu_task *task, unsigned nimpl)
 
- @{
 
-   const struct cudaDeviceProp *props;
 
-   if (starpu_worker_get_type(workerid) == STARPU_CPU_WORKER)
 
-     return 1;
 
-   /* Cuda device */
 
-   if (nimpl == 0)
 
-     /* Trying to execute the 1.3 capability variant, we assume it is ok in all cases.  */
 
-     return 1;
 
-   /* Trying to execute the 2.0 capability variant, check that the card can do it.  */
 
-   props = starpu_cuda_get_device_properties(workerid);
 
-   if (props->major >= 2 || props->minor >= 0)
 
-     /* At least compute capability 2.0, can run it */
 
-     return 1;
 
-   /* Old card, does not support 2.0, will not be able to execute the 2.0 variant.  */
 
-   return 0;
 
- @}
 
- struct starpu_codelet cl = @{
 
-     .where = STARPU_CPU|STARPU_CUDA,
 
-     .can_execute = can_execute,
 
-     .cpu_funcs = @{ cpu_func, NULL @},
 
-     .cuda_funcs = @{ scal_gpu_13, scal_gpu_20, NULL @},
 
-     .nbuffers = 1,
 
-     .modes = @{ STARPU_RW @}
 
- @};
 
- @end smallexample
 
- @end cartouche
 
- Note: the most generic variant should be provided first, as some schedulers are
 
- not able to try the different variants.
 
- @node Task and Worker Profiling
 
- @section Task and Worker Profiling
 
- A full example showing how to use the profiling API is available in
 
- the StarPU sources in the directory @code{examples/profiling/}.
 
- @cartouche
 
- @smallexample
 
- 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_task_profiling_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);
 
- @end smallexample
 
- @end cartouche
 
- @cartouche
 
- @smallexample
 
- /* Display the occupancy of all workers during the test */
 
- int worker;
 
- for (worker = 0; worker < starpu_worker_get_count(); worker++)
 
- @{
 
-         struct starpu_worker_profiling_info worker_info;
 
-         int ret = starpu_worker_get_profiling_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);
 
-         float executing_ratio = 100.0*executing_time/total_time;
 
-         float sleeping_ratio = 100.0*sleeping_time/total_time;
 
-         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);
 
- @}
 
- @end smallexample
 
- @end cartouche
 
- @node Partitioning Data
 
- @section Partitioning Data
 
- An existing piece of data can be partitioned in sub parts to be used by different tasks, for instance:
 
- @cartouche
 
- @smallexample
 
- int vector[NX];
 
- starpu_data_handle_t handle;
 
- /* Declare data to StarPU */
 
- starpu_vector_data_register(&handle, 0, (uintptr_t)vector, NX, sizeof(vector[0]));
 
- /* Partition the vector in PARTS sub-vectors */
 
- starpu_filter f =
 
- @{
 
-     .filter_func = starpu_block_filter_func_vector,
 
-     .nchildren = PARTS
 
- @};
 
- starpu_data_partition(handle, &f);
 
- @end smallexample
 
- @end cartouche
 
- The task submission then uses @code{starpu_data_get_sub_data} to retrive the
 
- sub-handles to be passed as tasks parameters.
 
- @cartouche
 
- @smallexample
 
- /* Submit a task on each sub-vector */
 
- for (i=0; i<starpu_data_get_nb_children(handle); i++) @{
 
-     /* Get subdata number i (there is only 1 dimension) */
 
-     starpu_data_handle_t sub_handle = starpu_data_get_sub_data(handle, 1, i);
 
-     struct starpu_task *task = starpu_task_create();
 
-     task->handles[0] = sub_handle;
 
-     task->cl = &cl;
 
-     task->synchronous = 1;
 
-     task->cl_arg = &factor;
 
-     task->cl_arg_size = sizeof(factor);
 
-     starpu_task_submit(task);
 
- @}
 
- @end smallexample
 
- @end cartouche
 
- Partitioning can be applied several times, see
 
- @code{examples/basic_examples/mult.c} and @code{examples/filters/}.
 
- Wherever the whole piece of data is already available, the partitioning will
 
- be done in-place, i.e. without allocating new buffers but just using pointers
 
- inside the existing copy. This is particularly important to be aware of when
 
- using OpenCL, where the kernel parameters are not pointers, but handles. The
 
- kernel thus needs to be also passed the offset within the OpenCL buffer:
 
- @cartouche
 
- @smallexample
 
- void opencl_func(void *buffers[], void *cl_arg)
 
- @{
 
-     cl_mem vector = (cl_mem) STARPU_VECTOR_GET_DEV_HANDLE(buffers[0]);
 
-     unsigned offset = STARPU_BLOCK_GET_OFFSET(buffers[0]);
 
-     ...
 
-     clSetKernelArg(kernel, 0, sizeof(vector), &vector);
 
-     clSetKernelArg(kernel, 1, sizeof(offset), &offset);
 
-     ...
 
- @}
 
- @end smallexample
 
- @end cartouche
 
- And the kernel has to shift from the pointer passed by the OpenCL driver:
 
- @cartouche
 
- @smallexample
 
- __kernel void opencl_kernel(__global int *vector, unsigned offset)
 
- @{
 
-     block = (__global void *)block + offset;
 
-     ...
 
- @}
 
- @end smallexample
 
- @end cartouche
 
- @node Performance model example
 
- @section 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 @code{starpu_perfmodel} structure and
 
- providing its address in the @code{model} field of the @code{struct starpu_codelet}
 
- structure. The @code{symbol} and @code{type} fields of @code{starpu_perfmodel}
 
- are mandatory, to give a name to the model, and the type of the model, since
 
- there are several kinds of performance models.
 
- @itemize
 
- @item
 
- Measured at runtime (@code{STARPU_HISTORY_BASED} model type). 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 @code{~/.starpu/sampling/codelets}
 
- for further executions, and can be observed by using the
 
- @code{starpu_perfmodel_display} command, or drawn by using
 
- the @code{starpu_perfmodel_plot}.  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}. Measurements are only done when using a task scheduler which makes use of it, such as @code{heft} or @code{dmda}.
 
- 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.
 
- @cartouche
 
- @smallexample
 
- static struct starpu_perfmodel mult_perf_model = @{
 
-     .type = STARPU_HISTORY_BASED,
 
-     .symbol = "mult_perf_model"
 
- @};
 
- struct starpu_codelet cl = @{
 
-     .where = STARPU_CPU,
 
-     .cpu_funcs = @{ cpu_mult, NULL @},
 
-     .nbuffers = 3,
 
-     .modes = @{ STARPU_R, STARPU_R, STARPU_W @},
 
-     /* for the scheduling policy to be able to use performance models */
 
-     .model = &mult_perf_model
 
- @};
 
- @end smallexample
 
- @end cartouche
 
- @item
 
- Measured at runtime and refined by regression (@code{STARPU_*REGRESSION_BASED}
 
- model type). This still assumes performance regularity, but can work
 
- 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,
 
- @code{tests/perfmodels/regression_based.c} uses a regression-based performance
 
- model for the @code{memset} operation. 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. 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 uses history-based performance model to perform
 
- scheduling.
 
- @item
 
- Provided as an estimation from the application itself (@code{STARPU_COMMON} model type and @code{cost_function} field),
 
- see for instance
 
- @code{examples/common/blas_model.h} and @code{examples/common/blas_model.c}.
 
- @item
 
- Provided explicitly by the application (@code{STARPU_PER_ARCH} model type): the
 
- @code{.per_arch[arch][nimpl].cost_function} fields have to be filled with pointers to
 
- functions which return the expected duration of the task in micro-seconds, one
 
- per architecture.
 
- @end itemize
 
- For the @code{STARPU_HISTORY_BASED} and @code{STARPU_*REGRESSION_BASE},
 
- the total size of task data (both input and output) is used as an index by
 
- default. The @code{size_base} field of @code{struct starpu_perfmodel} however
 
- permits 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, etc.
 
- How to use schedulers which can benefit from such performance model is explained
 
- in @ref{Task scheduling policy}.
 
- The same can be done for task power consumption estimation, by setting the
 
- @code{power_model} field the same way as the @code{model} field. 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 @code{starpu_data_register}
 
- functions with a @code{NULL} pointer (and need to be unregistered as usual)
 
- and the desired data sizes. The @code{starpu_task_expected_length} and
 
- @code{starpu_task_expected_power} functions can then be called to get an
 
- estimation of the task duration on a given arch. @code{starpu_task_destroy}
 
- needs to be called to destroy the dummy task afterwards. See
 
- @code{tests/perfmodels/regression_based.c} for an example.
 
- @node Theoretical lower bound on execution time
 
- @section Theoretical lower bound on execution time
 
- For kernels with history-based performance models, StarPU can very easily provide a theoretical lower
 
- bound for the execution time of a whole set of tasks. See for
 
- instance @code{examples/lu/lu_example.c}: before submitting tasks,
 
- call @code{starpu_bound_start}, and after complete execution, call
 
- @code{starpu_bound_stop}. @code{starpu_bound_print_lp} or
 
- @code{starpu_bound_print_mps} can then be used to output a Linear Programming
 
- problem corresponding to the schedule of your tasks. Run it through
 
- @code{lp_solve} or any other linear programming solver, and that will give you a
 
- lower bound for the total execution time of your tasks. If StarPU was compiled
 
- with the glpk library installed, @code{starpu_bound_compute} can be used to
 
- solve it immediately and get the optimized minimum, in ms. Its @code{integer}
 
- parameter allows to decide whether integer resolution should be computed
 
- and returned too.
 
- The @code{deps} parameter tells StarPU whether to take tasks and implicit data
 
- dependencies into account. It must be understood that the linear programming
 
- problem size is quadratic with the number of tasks and thus the time to solve it
 
- will be very long, it could be minutes for just a few dozen tasks. You should
 
- probably use @code{lp_solve -timeout 1 test.pl -wmps test.mps} to convert the
 
- problem to MPS format and then use a better solver, @code{glpsol} might be
 
- better than @code{lp_solve} for instance (the @code{--pcost} option may be
 
- useful), but sometimes doesn't manage to converge. @code{cbc} might look
 
- slower, but it is parallel. Be sure to try at least all the @code{-B} options
 
- of @code{lp_solve}. For instance, we often just use
 
- @code{lp_solve -cc -B1 -Bb -Bg -Bp -Bf -Br -BG -Bd -Bs -BB -Bo -Bc -Bi} , and
 
- the @code{-gr} option can also be quite useful.
 
- Setting @code{deps} to 0 will only take into account the actual computations
 
- on processing units. It however still properly takes into account the varying
 
- performances of kernels and processing units, which is quite more accurate than
 
- just comparing StarPU performances with the fastest of the kernels being used.
 
- The @code{prio} parameter tells StarPU whether to simulate taking into account
 
- the priorities as the StarPU scheduler would, i.e. schedule prioritized
 
- tasks before less prioritized tasks, to check to which extend this results
 
- to a less optimal solution. This increases even more computation time.
 
- Note that for simplicity, all this however doesn't take into account data
 
- transfers, which are assumed to be completely overlapped.
 
- @node Insert Task Utility
 
- @section Insert Task Utility
 
- StarPU provides the wrapper function @code{starpu_insert_task} to ease
 
- the creation and submission of tasks.
 
- @deftypefun int starpu_insert_task (struct starpu_codelet *@var{cl}, ...)
 
- Create and submit a task corresponding to @var{cl} with the following
 
- arguments.  The argument list must be zero-terminated.
 
- The arguments following the codelets can be of the following types:
 
- @itemize
 
- @item
 
- @code{STARPU_R}, @code{STARPU_W}, @code{STARPU_RW}, @code{STARPU_SCRATCH}, @code{STARPU_REDUX} an access mode followed by a data handle;
 
- @item
 
- the specific values @code{STARPU_VALUE}, @code{STARPU_CALLBACK},
 
- @code{STARPU_CALLBACK_ARG}, @code{STARPU_CALLBACK_WITH_ARG},
 
- @code{STARPU_PRIORITY}, followed by the appropriated objects as
 
- defined below.
 
- @end itemize
 
- Parameters to be passed to the codelet implementation are defined
 
- through the type @code{STARPU_VALUE}. The function
 
- @code{starpu_codelet_unpack_args} must be called within the codelet
 
- implementation to retrieve them.
 
- @end deftypefun
 
- @defmac STARPU_VALUE
 
- this macro is used when calling @code{starpu_insert_task}, and must be
 
- followed by a pointer to a constant value and the size of the constant
 
- @end defmac
 
- @defmac STARPU_CALLBACK
 
- this macro is used when calling @code{starpu_insert_task}, and must be
 
- followed by a pointer to a callback function
 
- @end defmac
 
- @defmac STARPU_CALLBACK_ARG
 
- this macro is used when calling @code{starpu_insert_task}, and must be
 
- followed by a pointer to be given as an argument to the callback
 
- function
 
- @end defmac
 
- @defmac  STARPU_CALLBACK_WITH_ARG
 
- this macro is used when calling @code{starpu_insert_task}, and must be
 
- followed by two pointers: one to a callback function, and the other to
 
- be given as an argument to the callback function; this is equivalent
 
- to using both @code{STARPU_CALLBACK} and
 
- @code{STARPU_CALLBACK_WITH_ARG}
 
- @end defmac
 
- @defmac STARPU_PRIORITY
 
- this macro is used when calling @code{starpu_insert_task}, and must be
 
- followed by a integer defining a priority level
 
- @end defmac
 
- @deftypefun void starpu_codelet_pack_args ({char **}@var{arg_buffer}, {size_t *}@var{arg_buffer_size}, ...)
 
- Pack arguments of type @code{STARPU_VALUE} into a buffer which can be
 
- given to a codelet and later unpacked with the function
 
- @code{starpu_codelet_unpack_args} defined below.
 
- @end deftypefun
 
- @deftypefun void starpu_codelet_unpack_args ({void *}@var{cl_arg}, ...)
 
- Retrieve the arguments of type @code{STARPU_VALUE} associated to a
 
- task automatically created using the function
 
- @code{starpu_insert_task} defined above.
 
- @end deftypefun
 
- Here the implementation of the codelet:
 
- @smallexample
 
- void func_cpu(void *descr[], void *_args)
 
- @{
 
-         int *x0 = (int *)STARPU_VARIABLE_GET_PTR(descr[0]);
 
-         float *x1 = (float *)STARPU_VARIABLE_GET_PTR(descr[1]);
 
-         int ifactor;
 
-         float ffactor;
 
-         starpu_codelet_unpack_args(_args, &ifactor, &ffactor);
 
-         *x0 = *x0 * ifactor;
 
-         *x1 = *x1 * ffactor;
 
- @}
 
- struct starpu_codelet mycodelet = @{
 
-         .where = STARPU_CPU,
 
-         .cpu_funcs = @{ func_cpu, NULL @},
 
-         .nbuffers = 2,
 
-         .modes = @{ STARPU_RW, STARPU_RW @}
 
- @};
 
- @end smallexample
 
- And the call to the @code{starpu_insert_task} wrapper:
 
- @smallexample
 
- starpu_insert_task(&mycodelet,
 
-                    STARPU_VALUE, &ifactor, sizeof(ifactor),
 
-                    STARPU_VALUE, &ffactor, sizeof(ffactor),
 
-                    STARPU_RW, data_handles[0], STARPU_RW, data_handles[1],
 
-                    0);
 
- @end smallexample
 
- The call to @code{starpu_insert_task} is equivalent to the following
 
- code:
 
- @smallexample
 
- struct starpu_task *task = starpu_task_create();
 
- task->cl = &mycodelet;
 
- task->handles[0] = data_handles[0];
 
- task->handles[1] = data_handles[1];
 
- char *arg_buffer;
 
- size_t arg_buffer_size;
 
- starpu_codelet_pack_args(&arg_buffer, &arg_buffer_size,
 
-                     STARPU_VALUE, &ifactor, sizeof(ifactor),
 
-                     STARPU_VALUE, &ffactor, sizeof(ffactor),
 
-                     0);
 
- task->cl_arg = arg_buffer;
 
- task->cl_arg_size = arg_buffer_size;
 
- int ret = starpu_task_submit(task);
 
- @end smallexample
 
- If some part of the task insertion depends on the value of some computation,
 
- the @code{STARPU_DATA_ACQUIRE_CB} macro can be very convenient. For
 
- instance, assuming that the index variable @code{i} was registered as handle
 
- @code{i_handle}:
 
- @smallexample
 
- /* Compute which portion we will work on, e.g. pivot */
 
- starpu_insert_task(&which_index, STARPU_W, i_handle, 0);
 
- /* And submit the corresponding task */
 
- STARPU_DATA_ACQUIRE_CB(i_handle, STARPU_R, starpu_insert_task(&work, STARPU_RW, A_handle[i], 0));
 
- @end smallexample
 
- The @code{STARPU_DATA_ACQUIRE_CB} macro submits an asynchronous request for
 
- acquiring data @code{i} for the main application, and will execute the code
 
- given as third parameter when it is acquired. In other words, as soon as the
 
- value of @code{i} computed by the @code{which_index} codelet can be read, the
 
- portion of code passed as third parameter of @code{STARPU_DATA_ACQUIRE_CB} will
 
- be executed, and is allowed to read from @code{i} to use it e.g. as an
 
- index. Note that this macro is only avaible when compiling StarPU with
 
- the compiler @code{gcc}.
 
- @node Parallel Tasks
 
- @section Parallel Tasks
 
- StarPU can leverage existing parallel computation libraries by the means of
 
- parallel tasks. A parallel task is a task which gets worked on by a set of CPUs
 
- (called a parallel or combined worker) at the same time, by using an existing
 
- parallel CPU implementation of the computation to be achieved. This can also be
 
- useful to improve the load balance between slow CPUs and fast GPUs: since CPUs
 
- work collectively on a single task, the completion time of tasks on CPUs become
 
- comparable to the completion time on GPUs, thus relieving from granularity
 
- discrepancy concerns.
 
- Two modes of execution exist to accomodate with existing usages.
 
- @subsection Fork-mode parallel tasks
 
- In the Fork mode, StarPU will call the codelet function on one
 
- of the CPUs of the combined worker. The codelet function can use
 
- @code{starpu_combined_worker_get_size()} to get the number of threads it is
 
- allowed to start to achieve the computation. The CPU binding mask is already
 
- enforced, so that threads created by the function will inherit the mask, and
 
- thus execute where StarPU expected. For instance, using OpenMP (full source is
 
- available in @code{examples/openmp/vector_scal.c}):
 
- @example
 
- void scal_cpu_func(void *buffers[], void *_args)
 
- @{
 
-     unsigned i;
 
-     float *factor = _args;
 
-     struct starpu_vector_interface *vector = buffers[0];
 
-     unsigned n = STARPU_VECTOR_GET_NX(vector);
 
-     float *val = (float *)STARPU_VECTOR_GET_PTR(vector);
 
- #pragma omp parallel for num_threads(starpu_combined_worker_get_size())
 
-     for (i = 0; i < n; i++)
 
-         val[i] *= *factor;
 
- @}
 
- static struct starpu_codelet cl =
 
- @{
 
-     .modes = @{ STARPU_RW @},
 
-     .where = STARPU_CPU,
 
-     .type = STARPU_FORKJOIN,
 
-     .max_parallelism = INT_MAX,
 
-     .cpu_funcs = @{scal_cpu_func, NULL@},
 
-     .nbuffers = 1,
 
- @};
 
- @end example
 
- Other examples include for instance calling a BLAS parallel CPU implementation
 
- (see @code{examples/mult/xgemm.c}).
 
- @subsection SPMD-mode parallel tasks
 
- In the SPMD mode, StarPU will call the codelet function on
 
- each CPU of the combined worker. The codelet function can use
 
- @code{starpu_combined_worker_get_size()} to get the total number of CPUs
 
- involved in the combined worker, and thus the number of calls that are made in
 
- parallel to the function, and @code{starpu_combined_worker_get_rank()} to get
 
- the rank of the current CPU within the combined worker. For instance:
 
- @example
 
- static void func(void *buffers[], void *args)
 
- @{
 
-     unsigned i;
 
-     float *factor = _args;
 
-     struct starpu_vector_interface *vector = buffers[0];
 
-     unsigned n = STARPU_VECTOR_GET_NX(vector);
 
-     float *val = (float *)STARPU_VECTOR_GET_PTR(vector);
 
-     /* Compute slice to compute */
 
-     unsigned m = starpu_combined_worker_get_size();
 
-     unsigned j = starpu_combined_worker_get_rank();
 
-     unsigned slice = (n+m-1)/m;
 
-     for (i = j * slice; i < (j+1) * slice && i < n; i++)
 
-         val[i] *= *factor;
 
- @}
 
- static struct starpu_codelet cl =
 
- @{
 
-     .modes = @{ STARPU_RW @},
 
-     .where = STARP_CPU,
 
-     .type = STARPU_SPMD,
 
-     .max_parallelism = INT_MAX,
 
-     .cpu_funcs = @{ func, NULL @},
 
-     .nbuffers = 1,
 
- @}
 
- @end example
 
- Of course, this trivial example will not really benefit from parallel task
 
- execution, and was only meant to be simple to understand.  The benefit comes
 
- when the computation to be done is so that threads have to e.g. exchange
 
- intermediate results, or write to the data in a complex but safe way in the same
 
- buffer.
 
- @subsection Parallel tasks performance
 
- To benefit from parallel tasks, a parallel-task-aware StarPU scheduler has to
 
- be used. When exposed to codelets with a Fork or SPMD flag, the @code{pheft}
 
- (parallel-heft) and @code{pgreedy} (parallel greedy) schedulers will indeed also
 
- try to execute tasks with several CPUs. It will automatically try the various
 
- available combined worker sizes and thus be able to avoid choosing a large
 
- combined worker if the codelet does not actually scale so much.
 
- @subsection Combined worker sizes
 
- By default, StarPU creates combined workers according to the architecture
 
- structure as detected by hwloc. It means that for each object of the hwloc
 
- topology (NUMA node, socket, cache, ...) a combined worker will be created. If
 
- some nodes of the hierarchy have a big arity (e.g. many cores in a socket
 
- without a hierarchy of shared caches), StarPU will create combined workers of
 
- intermediate sizes.
 
- @subsection Concurrent parallel tasks
 
- Unfortunately, many environments and librairies do not support concurrent
 
- calls.
 
- For instance, most OpenMP implementations (including the main ones) do not
 
- support concurrent @code{pragma omp parallel} statements without nesting them in
 
- another @code{pragma omp parallel} statement, but StarPU does not yet support
 
- creating its CPU workers by using such pragma.
 
- Other parallel libraries are also not safe when being invoked concurrently
 
- from different threads, due to the use of global variables in their sequential
 
- sections for instance.
 
- The solution is then to use only one combined worker at a time.  This can be
 
- done by setting @code{single_combined_worker} to 1 in the @code{starpu_conf}
 
- structure, or setting the @code{STARPU_SINGLE_COMBINED_WORKER} environment
 
- variable to 1. StarPU will then run only one parallel task at a time.
 
- @node Debugging
 
- @section Debugging
 
- StarPU provides several tools to help debugging aplications. Execution traces
 
- can be generated and displayed graphically, see @ref{Generating traces}. Some
 
- gdb helpers are also provided to show the whole StarPU state:
 
- @smallexample
 
- (gdb) source tools/gdbinit
 
- (gdb) help starpu
 
- @end smallexample
 
- @node The multiformat interface
 
- @section The multiformat interface
 
- It may be interesting to represent the same piece of data using two different
 
- data structures: one that would only be used on CPUs, and one that would only
 
- be used on GPUs. This can be done by using the multiformat interface. StarPU
 
- will be able to convert data from one data structure to the other when needed.
 
- Note that the heft scheduler is the only one optimized for this interface. The
 
- user must provide StarPU with conversion codelets:
 
- @cartouche
 
- @smallexample
 
- #define NX 1024
 
- struct point array_of_structs[NX];
 
- starpu_data_handle_t handle;
 
- /*
 
-  * The conversion of a piece of data is itself a task, though it is created,
 
-  * submitted and destroyed by StarPU internals and not by the user. Therefore,
 
-  * we have to define two codelets.
 
-  * Note that for now the conversion from the CPU format to the GPU format has to
 
-  * be executed on the GPU, and the conversion from the GPU to the CPU has to be
 
-  * executed on the CPU.
 
-  */
 
- #ifdef STARPU_USE_OPENCL
 
- void cpu_to_opencl_opencl_func(void *buffers[], void *args);
 
- struct starpu_codelet cpu_to_opencl_cl = @{
 
-     .where = STARPU_OPENCL,
 
-     .opencl_funcs = @{ cpu_to_opencl_opencl_func, NULL @},
 
-     .nbuffers = 1,
 
-     .modes = @{ STARPU_RW @}
 
- @};
 
- void opencl_to_cpu_func(void *buffers[], void *args);
 
- struct starpu_codelet opencl_to_cpu_cl = @{
 
-     .where = STARPU_CPU,
 
-     .cpu_funcs = @{ opencl_to_cpu_func, NULL @},
 
-     .nbuffers = 1,
 
-     .modes = @{ STARPU_RW @}
 
- @};
 
- #endif
 
- struct starpu_multiformat_data_interface_ops format_ops = @{
 
- #ifdef STARPU_USE_OPENCL
 
-     .opencl_elemsize = 2 * sizeof(float),
 
-     .cpu_to_opencl_cl = &cpu_to_opencl_cl,
 
-     .opencl_to_cpu_cl = &opencl_to_cpu_cl,
 
- #endif
 
-     .cpu_elemsize = 2 * sizeof(float),
 
-     ...
 
- @};
 
- starpu_multiformat_data_register(handle, 0, &array_of_structs, NX, &format_ops);
 
- @end smallexample
 
- @end cartouche
 
- Kernels can be written almost as for any other interface. Note that
 
- STARPU_MULTIFORMAT_GET_CPU_PTR shall only be used for CPU kernels. CUDA kernels
 
- must use STARPU_MULTIFORMAT_GET_CUDA_PTR, and OpenCL kernels must use
 
- STARPU_MULTIFORMAT_GET_OPENCL_PTR. STARPU_MULTIFORMAT_GET_NX may be used in any
 
- kind of kernel.
 
- @cartouche
 
- @smallexample
 
- static void
 
- multiformat_scal_cpu_func(void *buffers[], void *args)
 
- @{
 
-     struct point *aos;
 
-     unsigned int n;
 
-     aos = STARPU_MULTIFORMAT_GET_CPU_PTR(buffers[0]);
 
-     n = STARPU_MULTIFORMAT_GET_NX(buffers[0]);
 
-     ...
 
- @}
 
- extern "C" void multiformat_scal_cuda_func(void *buffers[], void *_args)
 
- @{
 
-     unsigned int n;
 
-     struct struct_of_arrays *soa;
 
-     soa = (struct struct_of_arrays *) STARPU_MULTIFORMAT_GET_CUDA_PTR(buffers[0]);
 
-     n = STARPU_MULTIFORMAT_GET_NX(buffers[0]);
 
-     ...
 
- @}
 
- @end smallexample
 
- @end cartouche
 
- A full example may be found in @code{examples/basic_examples/multiformat.c}.
 
- @node On-GPU rendering
 
- @section On-GPU rendering
 
- Graphical-oriented applications need to draw the result of their computations,
 
- typically on the very GPU where these happened. Technologies such as OpenGL/CUDA
 
- interoperability permit to let CUDA directly work on the OpenGL buffers, making
 
- them thus immediately ready for drawing, by mapping OpenGL buffer, textures or
 
- renderbuffer objects into CUDA. To achieve this with StarPU, it simply needs to
 
- be given the CUDA pointer at registration, for instance:
 
- @cartouche
 
- @smallexample
 
- for (workerid = 0; workerid < starpu_worker_get_count(); workerid++)
 
-         if (starpu_worker_get_type(workerid) == STARPU_CUDA_WORKER)
 
-                 break;
 
- cudaSetDevice(starpu_worker_get_devid(workerid));
 
- cudaGraphicsResourceGetMappedPointer((void**)&output, &num_bytes, resource);
 
- starpu_vector_data_register(&handle, starpu_worker_get_memory_node(workerid), output, num_bytes / sizeof(float4), sizeof(float4));
 
- starpu_insert_task(&cl, STARPU_RW, handle, 0);
 
- starpu_data_unregister(handle);
 
- cudaSetDevice(starpu_worker_get_devid(workerid));
 
- cudaGraphicsUnmapResources(1, &resource, 0);
 
- /* Now display it */
 
- @end smallexample
 
- @end cartouche
 
- @node More examples
 
- @section More examples
 
- More examples are available in the StarPU sources in the @code{examples/}
 
- directory. Simple examples include:
 
- @table @asis
 
- @item @code{incrementer/}:
 
-     Trivial incrementation test.
 
- @item @code{basic_examples/}:
 
-         Simple documented Hello world (as shown in @ref{Hello World}), vector/scalar product (as shown
 
-         in @ref{Vector Scaling on an Hybrid CPU/GPU Machine}), matrix
 
-         product examples (as shown in @ref{Performance model example}), an example using the blocked matrix data
 
-         interface, an example using the variable data interface, and an example
 
-         using different formats on CPUs and GPUs.
 
- @item @code{matvecmult/}:
 
-     OpenCL example from NVidia, adapted to StarPU.
 
- @item @code{axpy/}:
 
-     AXPY CUBLAS operation adapted to StarPU.
 
- @item @code{fortran/}:
 
-     Example of Fortran bindings.
 
- @end table
 
- More advanced examples include:
 
- @table @asis
 
- @item @code{filters/}:
 
-     Examples using filters, as shown in @ref{Partitioning Data}.
 
- @item @code{lu/}:
 
-     LU matrix factorization, see for instance @code{xlu_implicit.c}
 
- @item @code{cholesky/}:
 
-     Cholesky matrix factorization, see for instance @code{cholesky_implicit.c}.
 
- @end table
 
 
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