[petsc-users] About parallel performance

Barry Smith bsmith at mcs.anl.gov
Thu May 29 16:17:28 CDT 2014


  You need to run the streams benchmarks are one and two processes to see how the memory bandwidth changes. If you are using petsc-3.4 you can 

 cd  src/benchmarks/streams/ 

 make MPIVersion

 mpiexec -n 1 ./MPIVersion

 mpiexec -n 2 ./MPIVersion 

   and send all the results

   Barry


On May 29, 2014, at 4:06 PM, Qin Lu <lu_qin_2000 at yahoo.com> wrote:

> For now I only care about the CPU of PETSc subroutines. I tried to add PetscLogEventBegin/End and the results are consistent with the log_summary attached in my first email.
>  
> The CPU of MatSetValues and MatAssemblyBegin/End of both p1 and p2 runs are small (< 20 sec). The CPU of PCSetup/PCApply are about the same between p1 and p2 (~120 sec). The CPU of KSPSolve of p2 (143 sec) is a little faster than p1's (176 sec), but p2 spent more time in MatGetSubMatrice (43 sec). So the total CPU of PETSc subtroutines are about the same between p1 and p2 (502 sec vs. 488 sec).
> 
> It seems I need a more efficient parallel preconditioner. Do you have any suggestions for that?
> 
> Many thanks,
> Qin
> 
> ----- Original Message -----
> From: Barry Smith <bsmith at mcs.anl.gov>
> To: Qin Lu <lu_qin_2000 at yahoo.com>
> Cc: "petsc-users at mcs.anl.gov" <petsc-users at mcs.anl.gov>
> Sent: Thursday, May 29, 2014 2:12 PM
> Subject: Re: [petsc-users] About parallel performance
> 
> 
>    You need to determine where the other 80% of the time is. My guess it is in setting the values into the matrix each time. Use PetscLogEventRegister() and put a PetscLogEventBegin/End() around the code that computes all the entries in the matrix and calls MatSetValues() and MatAssemblyBegin/End().
> 
>    Likely the reason the linear solver does not scale better is that you have a machine with multiple cores that share the same memory bandwidth and the first core is already using well over half the memory bandwidth so the second core cannot be fully utilized since both cores have to wait for data to arrive from memory.  If you are using the development version of PETSc you can run make streams NPMAX=2 from the PETSc root directory and send this to us to confirm this.
> 
>    Barry
> 
> 
> 
> 
> 
> On May 29, 2014, at 1:23 PM, Qin Lu <lu_qin_2000 at yahoo.com> wrote:
> 
>> Hello,
>> 
>> I implemented PETSc parallel linear solver in a program, the implementation is basically the same as /src/ksp/ksp/examples/tutorials/ex2.c, i.e., I preallocated the MatMPIAIJ, and let PETSc partition the matrix through MatGetOwnershipRange. However, a few tests shows the parallel solver is always a little slower the serial solver (I have excluded the matrix generation CPU).
>> 
>> For serial run I used PCILU as preconditioner; for parallel run, I used ASM with ILU(0) at each subblocks (-sub_pc_type ilu -sub_ksp_type preonly -ksp_type bcgs -pc_type asm). The number of unknowns are around 200,000.
>>   
>> I have used -log_summary to print out the performance summary as attached (log_summary_p1 for serial run and log_summary_p2 for the run with 2 processes). It seems the KSPSolve counts only for less than 20% of Global %T. 
>> My questions are:
>>   
>> 1. what is the bottle neck of the parallel run according to the summary?
>> 2. Do you have any suggestions to improve the parallel performance?
>>   
>> Thanks a lot for your suggestions!
>>   
>> Regards,
>> Qin    <log_summary_p1.txt><log_summary_p2.txt>



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