[petsc-users] DMPlex memory problem in scaling test
Dave May
dave.mayhem23 at gmail.com
Thu Oct 10 07:31:30 CDT 2019
On Thu, 10 Oct 2019 at 13:21, Matthew Knepley via petsc-users <
petsc-users at mcs.anl.gov> wrote:
> On Wed, Oct 9, 2019 at 5:10 PM Danyang Su via petsc-users <
> petsc-users at mcs.anl.gov> wrote:
>
>> Dear All,
>>
>> I have a question regarding the maximum memory usage for the scaling
>> test. My code is written in Fortran with support for both structured grid
>> (DM) and unstructured grid (DMPlex). It looks like memory consumption is
>> much larger when DMPlex is used and finally causew out_of_memory problem.
>>
>> Below are some test using both structured grid and unstructured grid. The
>> memory consumption by the code is estimated based on all allocated arrays
>> and PETSc memory consumption is estimated based on
>> PetscMemoryGetMaximumUsage.
>>
>> I just wonder why the PETSc memory consumption does not decrease when
>> number of processors increases. For structured grid (scenario 7-9), the
>> memory consumption decreases as number of processors increases. However,
>> for unstructured grid case (scenario 14-16), the memory for PETSc part
>> remains unchanged. When I run a larger case, the code crashes because
>> memory is ran out. The same case works on another cluster with 480GB memory
>> per node. Does this make sense?
>>
> We would need a finer breakdown of where memory is being used. I did this
> for a paper:
>
> https://agupubs.onlinelibrary.wiley.com/doi/full/10.1002/jgrb.50217
>
> If the subdomains, the halo sizes can overwhelm the basic storage. It
> looks like the subdomains are big here,
> but things are not totally clear to me. It would be helpful to send the
> output of -log_view for each case since
> PETSc tries to keep track of allocated memory.
>
Matt - I'd guess that there is a sequential (non-partitioned) mesh hanging
around in memory.
Is it possible that he's created the PLEX object which is loaded
sequentially (stored and retained in memory and never released), and then
afterwards distributed?
This can never happen with the DMDA and the table verifies this.
If his code using the DMDA and DMPLEX are as identical as possible (albeit
the DM used), then a sequential mesh held in memory seems the likely cause.
>
> Thanks,
>
> Matt
>
>> scenario no. points cell type DMPLex nprocs no. nodes mem per node GB
>> solver Rank 0 memory MB Rank 0 petsc memory MB Runtime (sec)
>> 1 2121 rectangle no 40 1 200 GMRES,Hypre preconditioner 0.21 41.6
>> 2 8241 rectangle no 40 1 200 GMRES,Hypre preconditioner 0.59 51.84
>> 3 32481 rectangle no 40 1 200 GMRES,Hypre preconditioner 1.95 59.1
>> 4 128961 rectangle no 40 1 200 GMRES,Hypre preconditioner 7.05 89.71
>> 5 513921 rectangle no 40 1 200 GMRES,Hypre preconditioner 26.76 110.58
>> 6 2051841 rectangle no 40 1 200 GMRES,Hypre preconditioner 104.21 232.05
>> *7* *8199681* *rectangle* *no* *40* *1* *200* *GMRES,Hypre
>> preconditioner* *411.26* *703.27* *140.29*
>> *8* *8199681* *rectangle* *no* *80* *2* *200* *GMRES,Hypre
>> preconditioner* *206.6* *387.25* *62.04*
>> *9* *8199681* *rectangle* *no* *160* *4* *200* *GMRES,Hypre
>> preconditioner* *104.28* *245.3* *32.76*
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>> 10 2121 triangle yes 40 1 200 GMRES,Hypre preconditioner 0.49 61.78
>> 11 15090 triangle yes 40 1 200 GMRES,Hypre preconditioner 2.32 96.61
>> 12 59847 triangle yes 40 1 200 GMRES,Hypre preconditioner 8.28 176.14
>> 13 238568 triangle yes 40 1 200 GMRES,Hypre preconditioner 31.89 573.73
>> *14* *953433* *triangle* *yes* *40* *1* *200* *GMRES,Hypre
>> preconditioner* *119.23* *2102.54* *44.11*
>> *15* *953433* *triangle* *yes* *80* *2* *200* *GMRES,Hypre
>> preconditioner* *72.99* *2123.8* *24.36*
>> *16* *953433* *triangle* *yes* *160* *4* *200* *GMRES,Hypre
>> preconditioner* *48.65* *2076.25* *14.87*
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>> 17 55770 prism yes 40 1 200 GMRES,Hypre preconditioner 18.46 219.39
>> 18 749814 prism yes 40 1 200 GMRES,Hypre preconditioner 149.86 2412.39
>> 19 7000050 prism yes 40 to 640 1 to 16 200 GMRES,Hypre preconditioner
>> out_of_memory
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>>
>> *20* *7000050* *prism* *yes* *64* *2* *480* *GMRES,Hypre preconditioner*
>> *890.92* *17214.41*
>>
>> The error information of scenario 19 is shown below:
>>
>> kernel messages produced during job executions:
>> [Oct 9 10:41] mpiexec.hydra invoked oom-killer: gfp_mask=0x200da,
>> order=0, oom_score_adj=0
>> [ +0.010274] mpiexec.hydra cpuset=/ mems_allowed=0-1
>> [ +0.006680] CPU: 2 PID: 144904 Comm: mpiexec.hydra Tainted: G
>> OE ------------ 3.10.0-862.14.4.el7.x86_64 #1
>> [ +0.013365] Hardware name: Lenovo ThinkSystem SD530
>> -[7X21CTO1WW]-/-[7X21CTO1WW]-, BIOS -[TEE124N-1.40]- 06/12/2018
>> [ +0.012866] Call Trace:
>> [ +0.003945] [<ffffffffb3313754>] dump_stack+0x19/0x1b
>> [ +0.006995] [<ffffffffb330e91f>] dump_header+0x90/0x229
>> [ +0.007121] [<ffffffffb2cfa982>] ? ktime_get_ts64+0x52/0xf0
>> [ +0.007451] [<ffffffffb2d5141f>] ? delayacct_end+0x8f/0xb0
>> [ +0.007393] [<ffffffffb2d9ac94>] oom_kill_process+0x254/0x3d0
>> [ +0.007592] [<ffffffffb2d9a73d>] ? oom_unkillable_task+0xcd/0x120
>> [ +0.007978] [<ffffffffb2d9a7e6>] ? find_lock_task_mm+0x56/0xc0
>> [ +0.007729] [<ffffffffb2d9b4d6>] *out_of_memory+0x4b6/0x4f0*
>> [ +0.007358] [<ffffffffb330f423>] __alloc_pages_slowpath+0x5d6/0x724
>> [ +0.008190] [<ffffffffb2da18b5>] __alloc_pages_nodemask+0x405/0x420
>>
>> Thanks,
>>
>> Danyang
>>
>
>
> --
> What most experimenters take for granted before they begin their
> experiments is infinitely more interesting than any results to which their
> experiments lead.
> -- Norbert Wiener
>
> https://www.cse.buffalo.edu/~knepley/
> <http://www.cse.buffalo.edu/~knepley/>
>
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