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0

You cannot directly send a 2-D matrix (double**). Instead, you have to pass the address of the actual data: &A[0][0]. For receiving, you also have to pass an address to where the data is actually stored. In your case this would be: &A[from][0] instead of &A[from]. Try this as the scatter: MPI_Scatter(&A[0][0], N*N/P, MPI_INT, ...


0

This is no surprise. You are using the MPI datatype MPI_CHAR for sending and receiving the string lengths. This sends only 1 byte. Use MPI_INT as the MPI datatype instead to send the full 4 byte integer: // what you are doing: MPI_Send(&lengthText1, 1, MPI_CHAR, 1, 0, MPI_COMM_WORLD); // ... and MPI_Recv(&lengthText1, 1, MPI_CHAR, MPI_ANY_SOURCE, ...


0

Non-blocking communication could be your friend! Use a root rank. From here on assume: When I say all ranks, I really mean all ranks except the root I'm referring to all non-blocking communication. Post receives on the root rank from all ranks, and on all ranks from the root rank. Ping the receives on every N iterations on all ranks. If a value was ...


0

If you have control over a process before it terminates you should send a non-blocking flag to a rank that cannot terminate early (lets call it the root rank). Then instead of having a blocking all_reduce, you could have sends from all ranks to the root rank with their value. The root rank could post non-blocking receives for a possible flag, and the value. ...


1

As MPI must be capable of handling errors from all nodes it is run on, I'm pretty confident you can't split the MPI error stream and the processes error streams. You can remove all the stderr with 2>/dev/null or to an error log with 2> err.log, but again, I don't believe you can split the errors.


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A, B, and C are dynamic 2D arrays that use the pointer of pointers approach. The indices are A[row][col]. When omitting the last index the address of the first element (column zero) in that row is returned. This is useful because you can pass a single row by using that address and the "width" of the matrix. This is how the 2D arrays are being stored in ...


0

I have a somewhat more positive view of MPI fault tolerance than Jonathan Dursi does, but only slightly. You can instruct MPI to report errors. It's not enitrely clear what you would do with that information, but in some cases it might be possible to retry or take an alternate approach. This paper gets cited a ton and talks about the subset of MPI one ...


1

First of all, your cluster is definitely not managed by SGE even if the latter is installed. SGE doesn't understand the #PBS sentinel in the job files and it doesn't export the PBS_NODEFILE environment variable (most environment variables that SGE exports start with SGE_). It also won't accept the nodes=2:ppn=24 resource request as the distribution of the ...


2

Some MPI implementations have an -x flag for mpirun for this, e.g. OpenMPI: -x <env> Export the specified environment variables to the remote nodes before executing the program. Only one environment variable can be specified per -x option. Existing environment variables can be specified or new variable names specified with corresponding values. ...


3

As long as message0, message1, and message2 have the same tag and are sent within the same communicator comm, the MPI standard guarantees that MPI_Recv(..., source, tag, comm, ...) will receive the messages in exactly the same order. The size of the message is limited by the implementation, but most modern ones support messages of more than 2 GiB of size. ...


0

The -np 1 part of your mpirun invocation instructs MPI to use only one core. Try removing that part so that OpenMPI gets the number of core from the environment set by SGE.


1

As much as it pains me to suggest it, this might be the one good use of MPI "Shared file pointers". These work in fortran, too, but I'm going to get the syntax wrong. Each process can read a row from the file with MPI_File_read_shared This independent I/O routine will update a global "shared file pointer" bit of state. Should B or C finish their work ...


0

The Blue Gene architecture might only have a few years left, but the problem of how to do "scalable I/O" will remain with us for some time. First, MPI-IO is essentially a requirement at this scale, particularly the collective I/O features. Even though this paper was written for /L, the lessons are still relevant: collective open lets the library set up ...


3

This is just undefined behavior. The number of processes running after this routine is called is undefined; it is best not to perform much more than a return rc after calling MPI_Finalize. http://www.mpich.org/static/docs/v3.1/www3/MPI_Finalize.html


0

As far as I understand you use Intel MPI Library for Windows. Correct? If so, make sure you have started the process manager service (Hydra or SMPD) - refer to the User's Guide for details how to start them.


0

A parallelized BLAS only helps with a limited amount of numpy/scipy functions (see these test scripts); numpy.dot scipy.linalg.cholesky scipy.linalg.svd If you can run import numpy.core._dotblas without getting an ImportError, you have an optimized numpy.dot available. Array creation speed should not be influenced by this, however. Can you post your ...


2

In order to have both MPI processes placed on separate cores of the same socket, you should pass the following options to mpiexec: -genv I_MPI_PIN=1 -genv I_MPI_PIN_DOMAIN=core -genv I_MPI_PIN_ORDER=compact In order to have both MPI processes on cores from different sockets, you should use: -genv I_MPI_PIN=1 -genv I_MPI_PIN_DOMAIN=core -genv ...


0

See Calling mpi binary in serial as subprocess of mpi application : the safiest way to go is to use MPI_Comm_spawn() . Take a look at this manager-worker example for instance. A quick fix would be to use subprocess.Popen as signaled by @EdSmith. Yet, notice that the default behavior of subprocess.Popen use the parent's environment. My guess is that it is ...


1

You don't need the same number of particles on each processor. What you do need is for every processor to participate. One or more could very well have zero particles, even. Allgather is a fine way to do it, and the single integer exchanged among all processes is not such large overhead. However, a better way is to use MPI_SCAN: incr = numparts; ...


0

You need to perform MPI_Allgather(np, 1, MPI_INTEGER, procnp, 1, & MPI_INTEGER, MPI_COMM_WORLD, ierr) where np is the number of particles per process and procnp is an array of size number of processes nprocs. This gives you an array on every process of the number of molecules on all other processes. That way MPI_File_set_view can be ...


0

NumMat<double>::operator() (this=0x0, i=0, j=0) ^^^^^^^^ This shows that you are calling the operator() through a NULL pointer and should already hint you that trgPos is that NULL pointer. You should examine the code and trace the code path that each rank takes. It must be that in some cases trgPos is not properly ...


1

You could have a look at BigDataBench. It has a range of different workloads and it also works with MPI. Maybe checking out their existing publications could be helpful as well.


0

Check out this tutorial, which I found super useful when just starting to use ScaLAPACK: https://www.sharcnet.ca/help/index.php/LAPACK_and_ScaLAPACK_Examples Also, you will eventually run into the 32 bit integer problem when using pdgemr2d for matrices with more than 2^31 elements - it will crash with the warning "xxmr2d: out of memory". That's due to a ...


0

In general, the phenomenon you're describing is known as load imbalance. There are many potential sources of this imbalance, depending on the problem, your numerical method, your parallelization scheme, your input data, your OS/runtime/application configuration, and even your hardware! Hardware Your stated processor supports Intel TurboBoost, Intel RAPL, ...


1

A simpler and more elegant option would be to use the MPI_IBARRIER. Have each worker call all of the sends that it needs to and then call MPI_IBARRIER when it's done. On the master, you can loop on both an MPI_IRECV on MPI_ANY_SOURCE and an MPI_IBARRIER. When the MPI_IBARRIER is done, you know that everyone has finished and you can cancel the MPI_IRECV and ...


4

You're passing the count parameter of MPI_Recv as strlen(inputList)+1, but inputList was never initialised. You probably want sizeof(inputList) here.


4

Your problem seems to be here: char value="10@1"; The correct code should be: char* value="10@1"; Explanation: A single character cannot contain a string. If the code compiles, the address of the first character of the string will be assigned to the character variable. In fact, even the 32 or 64 bit address will not fit in a one byte character. ...


0

1- you called MPI_Barrier in wrong place, it should be called after MPI_Send. 2- the root will exit from loop when it receives DONE from all other ranks (size -1). the code after some modifications: #include <mpi.h> #include <stdlib.h> #include <stdio.h> int main(int argc, char** argv) { MPI_Init(NULL, NULL); int size; ...


3

The stack trace shows that the error is not in the MPI_Recv as the question title suggests. The error is actually here: int sz = sizeof(buf); int lst = buf[sz-1]; // <---- here Since buf is an array of int and sizeof(buf) returns its size in bytes, sz is set to 4 times the number of elements in the array. Accessing buf[sz-1] goes way beyond the bounds ...


3

Throughout the MPI standard the term locations is used and not the term variables in order to prevent such confusion. The MPI library does not care where the memory comes from as long outstanding MPI operations are operating on disjoint sets of memory locations. Different memory locations could be different variables or different elements of a big array. In ...


3

There are multiple errors in the code presented here. 1) All displacements are equal: if (mpi_rank == 0) then ... displacement = (/0, 0, 0, 0, 0, 0, 0, 0, 0, 0/) sendcounts = (/2, 10, 5, 8, 5, 2, 2, 2, 2, 2/) endif The MPI standard mandates that no location in the send buffer should be read twice and no location in the receive buffer should ...


2

The problem is that amount of data sent is greater than the amount of data that the root told MPI it expects. You created an array called sendcounts that has some counts that the root process will use to assign spaces in the array to different ranks, however each process is sending mpi_size, which is probably bigger than some of the sendcounts (like 2 for ...


4

I'm not 100% sure I understand what you're asking, so I'll restate the question first: If I have a large array of data, can I create nonblocking calls to receive data from subsets of the array and then send the data back out to other processes? The answer to that is yes, as long as you synchronize between the receives and sends. Remember that the data ...


1

I'll discuss a linked list, but all of this applies to a binary tree just as easily with a little extra work. Implementing a linked list in the classical sense isn't exactly possible in MPI because, as you said, each process has its own local memory which won't be consistent on other processes. So that essentially limits using something simple like point to ...


0

Even though the message is routed to receive process B , process B still has to acknowledge that it wants to receive A's data. Once it does this, the data has been transmitted. Process A is acknowledged that the data has been transmitted and may go back to work. So your second code can't satisfy the condition, which seems like that you don't answer the ...


1

These papers describe MPI reduction algorithms: http://www.mcs.anl.gov/~thakur/papers/ijhpca-coll.pdf https://fs.hlrs.de/projects/rabenseifner/publ/myreduce_iccs2004_2.pdf In general, there are many different protocols used for MPI collections, with selection based upon message size, how many processes are involved, etc. In the case of MPI reductions, ...


1

Based on FindPETSC.cmake it seems that the default options for PETSC_ARCH are: linux-gnu-c-debug linux-gnu-c-opt x86_64-unknown-linux-gnu i386-unknown-linux-gnu or the one you have used in case of the manual build. CMake tries to find file ${PETSC_DIR}/${PETSC_ARCH}/include/petscconf.h or ${PETSC_DIR}/bmake/${PETSC_ARCH}/petscconf.h.


5

I would guess that one of the MPI functions you call is in turn calling the connect() system call. But since ELF executables have a flat namespace for symbols, your connect() is being called instead. The problem doesn't happen on Mac OS because Mach-O libraries have a two-level namespace, so symbols in different libraries don't conflict with each other. If ...


2

Yes as @Alexey mentioned It was a exactly network error. Here is the things what I did get this working. 1). Exported host file as HYDRA_HOST_FILE to understand for MPICH (for more information: https://wiki.mpich.org/mpich/index.php/Using_the_Hydra_Process_Manager) export HYDRA_HOST_FILE=<path_to_host_file>/hosts 2). I had to solve this issue ...


0

I'm not sure why you would like to use Message Passing Interface for an applet, but MPI.Init() can be called with an empty String[] (not null). After all the MPI.Init() doesn't do that much with the arguments (this can be deduced from here). I must admit though that I really doubt whether you really want to be making applets using MPI.


1

GDB from an Xterm from mpirun is possible, but your mpi implementation might make this harder to accomplish. Say you've got a hello-mpi you want to debug: $ mpiexec -np 4 xterm -e 'gdb hello-mpi' With mpich, this will get me four xterms all running gdb (as you can imagine, it's not terribly practical for more than a few processes. I just tried this ...


6

MPI requires that the sending and receiving processes agree on the type of data and amount (sort of; for point to point communications receiver can request more than is sent). But MPI data types also describe the layout in memory of the data, and that's a very common reason to need to use different types for the sender and the receiver. You ask in ...


2

When you use MPI derived types, you can view the array as n elements of some basic numeric type and also just as one or more elements of some MPI derived type. In that case not only the counts but also the datatypes can differ although they correspond to the same buffer. On the other hand it is NOT affected by the number of processes in the communicator. ...


0

For the sender, these two would be the same, but the receivers might not know how many elements were received.


1

I think the problem is your trying to launch gdb from within xterm from within mpirun, which I would say you cannot do. But I never used X with mpi. Nor gdb for that matter. You can use gdb to attach to the running process. So launch your program normally with mpirun, find the process id and attach to it using gdb <progname> <pid>. If you do ...


0

Visual studio 2012 and later versions do not support MPI debugging. However there is a workaround: Start debugging by specifying mpiexec.exe as your command and related parameters and the name of your executable as command arguments: Command-> mpiexec.exe CommandArguments-> -n 2 myapp.exe When the execution starts, use Debug->Attach to process... ...


1

You are passing MPI_Irecv the address of the pointer buf itself plus an offset instead of its value. When the message is received, it overwrites the last byte (on little endian systems like x86/x64) of the value of one or more nearby stack variables, which, depending on the stack layout, might include requests and statuses. Therefore MPI_Waitsome receives a ...


0

There is no need to divide the communicator. In a binary tree the work is 2^n where n is the level. Depending on if you are traversing upwards or downwards you will have increase in idle processors or increase in number of processors (try imagining this). So for example if you start from top could divide your work done by root into 2. Now W1 to root (proc0) ...


0

Probably should have turned this into an answer long ago to make it easier for other to track this down. As has been discussed in other posts, MPI_Send and friend's completion does not necessarily indicate that a message has been received on the other end. Only MPI_Ssend implies any sort of completion and even that only indicates that the receiver has ...


2

It looks like your call to MPI_Irecv might be a problem. Remove the extra & before the buf (you have a double pointer instead of a pointer). MPI_Irecv(buf+i, 1, MPI_CHAR,i, 110, MPI_COMM_WORLD, &requests[i]); When I fix that, add closing braces and a call to MPI_Finalize(), and remove a bunch of extra output, I don't have any issues running your ...



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