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Apr
24
comment How can a single sqrt() runs twice slower than when it was put in a for loop
When benchmarking with rdtsc it is very important to pin (bind) the process to a single core using the taskset utility or the sched_setaffinity(2) system call. If the OS migrates the process from one core to another in the middle of the benchmark, you'll get very different results. This is not the cause of the difference in your case - I'm just mentioning it as a warning.
Apr
18
comment Number of OpenMP threads limited to 4 on Ubuntu 14.04, gfortran 4.8.2
The standard allows for quite some thoughtfulness to be present on the side of the OpenMP runtime, but the GCC runtime is not known for being one of those intelligent OpenMP runtimes. It is probably something else (and probably trivial) that causes such behaviour.
Apr
18
comment Number of OpenMP threads limited to 4 on Ubuntu 14.04, gfortran 4.8.2
Check that your session not confined within a cpuset, e.g. by something like cat /proc/self/status and looking at the value of Cpus_allowed_list, alternatively at the value of Cpus_allowed. Mind that the latter one is a bitmask. The affinity mask as set by e.g. GOMP_CPU_AFFINITY is bitwise AND-ed with the one in Cpus_allowed.
Apr
15
comment how to make MPI_Send have processors send in order instead of randomly?
Why are you reimplementing the gather-to-all operation using reduce-to-all with excess zeros?
Apr
15
comment Tiny microcontroller connected by SIM card
Your question is off-topic on Stack Overflow. Please ask it on the Electrical Engineering site.
Apr
15
comment Is MPI_Reduce blocking (or a natural barrier)?
The MPI standard allows for early exit of participating processes. The only collective call that guarantees synchronisation is MPI_Barrier.
Apr
15
comment Is MPI_Reduce blocking (or a natural barrier)?
This answer is only half-correct. The receiving buffers might run full. Most MPI libraries implement flow control mechanisms that prevent such thing from happening.
Apr
15
comment 16-bit float MPI_Reduce?
It looks like REAL*2 is not supported on x86, at least by GCC and Intel.
Apr
15
comment 16-bit float MPI_Reduce?
You are missing a call to MPI_Type_commit(). It should also be possible to abuse the language interoperability feature in newer MPI libraries and utilise the Fortran REAL*2 type by something like mpi_type_float16 = MPI_Type_f2c(MPI_REAL2);. It still needs a user-defined reduction operator since the standard ones do not operate on MPI_REAL2.
Apr
15
comment 16-bit float MPI_Reduce?
MPI_FLOAT is 32-bit (single precision), not 16-bit.
Apr
14
comment C++ openmp parallelize std::vector loop
Use omp_get_wtime(). If it still shows the same result, then you might want to use a performance tool like Intel VTune (commercial tool, might require paid license)
Apr
14
comment Strange behaviour of fftw_mpi_plan_dft_r2c_3d
It looks like an error in Open MPI. Please report it to the Open MPI developers here (post to the User list) Or it could be FFTW incorrectly computing some kind of Scatterv distribution resulting in overlapping segments. In any case, ask the Open MPI guys.
Apr
14
comment Can false sharing lead to wrong results?
@Ali: It is very hard to find a general-purpose non-cache-coherent system nowadays, especially in the x86 world. Some vendors are even building multiboard cache-coherent systems by routing the HT/QPI links externally.
Apr
14
comment C++ openmp parallelize std::vector loop
How did you measure the time?
Apr
14
comment A sample openmp program with speedup
What operating system are you running?
Apr
13
comment Accessing the data from MPI_Irecv()
This is not a solution. Your code still has multiple issues. I would recommend that you replace all non-blocking calls (e,g, MPI_Irecv) by blocking ones (e.g. MPI_Recv).
Apr
11
comment openmp reduction of multidimentional arrays in fortran
I considered carefully the similarity. Still, there is no indication that in the current state of the code the OP of the other question is still getting segmentation fault when the reduction clause is used. But the culprit in the second of the two questions you suggest is the same.
Apr
11
comment openmp reduction of multidimentional arrays in fortran
@VladimirF: The original code in the other question contained data races that probably resulted in out-of-bound array access. If I read the timeline correctly, he applied the reduction clause before fixing the data race issue. In any case, the OpenMP standard states that reduction works as private when it comes to data allocation, i.e. it should create allocatable private copies of allocatable list items.
Apr
10
comment openmp reduction of multidimentional arrays in fortran
Simply make tab an ALLOCATABLE array. Otherwise REDUCTION makes multiple private copies of it and many compilers tend to place those private copies on the stack even when they are bigger than the threshold for automatic heap allocation.
Apr
10
comment Need help debugging parallel matrix multiplication using MPI
Edit your question an replace the code with the one after the fixes.