[petsc-dev] MatMult on Summit
Zhang, Junchao
jczhang at mcs.anl.gov
Mon Sep 23 11:01:51 CDT 2019
I also did OpenMP stream test and then I found mismatch between OpenMPI and MPI. That reminded me a subtle issue on summit: pair of cores share L2 cache. One has to place MPI ranks to different pairs to get best bandwidth. See different bindings
https://jsrunvisualizer.olcf.ornl.gov/?s4f1o01n2c21g3r12d1b21l0= and https://jsrunvisualizer.olcf.ornl.gov/?s4f1o01n2c21g3r12d1b22l0=. Note each node has 21 cores. I assume that means 11 pairs. The new results are below. They match with we what I got from OpenMPI. The bandwidth is almost doubled from 1 to 2 cores per socket. IBM document also says each socket has two memory controllers. I could not find the core-memory controller affinity info. I tried different bindings but did not find huge difference.
#Ranks Rate (MB/s) Ratio over 2 ranks
1 29229.8 -
2 59091.0 1.0
4 112260.7 1.9
6 159852.8 2.7
8 194351.7 3.3
10 215841.0 3.7
12 232316.6 3.9
14 244615.7 4.1
16 254450.8 4.3
18 262185.7 4.4
20 267181.0 4.5
22 270290.4 4.6
24 221944.9 3.8
26 238302.8 4.0
--Junchao Zhang
On Sun, Sep 22, 2019 at 6:04 PM Smith, Barry F. <bsmith at mcs.anl.gov<mailto:bsmith at mcs.anl.gov>> wrote:
Junchao,
For completeness could you please run with a single core? But leave the ratio as you have with over 2 ranks since that is the correct model.
Thanks
Barry
> On Sep 22, 2019, at 11:14 AM, Zhang, Junchao <jczhang at mcs.anl.gov<mailto:jczhang at mcs.anl.gov>> wrote:
>
> I did stream test on Summit. I used the MPI version from petsc, but largely increased the array size N since one socket of Summit has 120MB L3 cache. I used MPI version since it was easy for me to distribute ranks evenly to the two sockets.
> The result matches with data released by OLCF (see attached figure) and data given by Jed. We can see the bandwidth saturates around 24 ranks.
>
> #Ranks Rate (MB/s) Ratio over 2 ranks
> ------------------------------------------
> 2 59012.2834 1.00
> 4 70959.1475 1.20
> 6 106639.9837 1.81
> 8 138638.6929 2.35
> 10 171125.0873 2.90
> 12 196162.5197 3.32
> 14 215272.7810 3.65
> 16 229562.4040 3.89
> 18 242587.4913 4.11
> 20 251057.1731 4.25
> 22 258569.7794 4.38
> 24 265443.2924 4.50
> 26 266562.7872 4.52
> 28 267043.6367 4.53
> 30 266833.7212 4.52
> 32 267183.8474 4.53
>
> On Sat, Sep 21, 2019 at 11:24 PM Smith, Barry F. <bsmith at mcs.anl.gov<mailto:bsmith at mcs.anl.gov>> wrote:
>
> Junchao could try the PETSc (and non-PETSc) streams tests on the machine.
>
> There are a few differences, compiler, the reported results are with OpenMP, different number of cores but yes the performance is a bit low. For DOE that is great, makes GPUs look better :-)
>
>
> > On Sep 21, 2019, at 11:11 PM, Jed Brown <jed at jedbrown.org<mailto:jed at jedbrown.org>> wrote:
> >
> > For an AIJ matrix with 32-bit integers, this is 1 flops/6 bytes, or 165
> > GB/s for the node for the best case (42 ranks).
> >
> > My understanding is that these systems have 8 channels of DDR4-2666 per
> > socket, which is ~340 GB/s of theoretical bandwidth on a 2-socket
> > system, and 270 GB/s STREAM Triad according to this post
> >
> > https://openpowerblog.wordpress.com/2018/07/19/epyc-skylake-vs-power9-stream-memory-bandwidth-comparison-via-zaius-barreleye-g2/
> >
> > Is this 60% of Triad the best we can get for SpMV?
> >
> > "Zhang, Junchao via petsc-dev" <petsc-dev at mcs.anl.gov<mailto:petsc-dev at mcs.anl.gov>> writes:
> >
> >> 42 cores have better performance.
> >>
> >> 36 MPI ranks
> >> MatMult 100 1.0 2.2435e+00 1.0 1.75e+09 1.3 2.9e+04 4.5e+04 0.0e+00 6 99 97 28 0 100100100100 0 25145 0 0 0.00e+00 0 0.00e+00 0
> >> VecScatterBegin 100 1.0 2.1869e-02 3.3 0.00e+00 0.0 2.9e+04 4.5e+04 0.0e+00 0 0 97 28 0 1 0100100 0 0 0 0 0.00e+00 0 0.00e+00 0
> >> VecScatterEnd 100 1.0 7.9205e-0152.6 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 1 0 0 0 0 22 0 0 0 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>
> >> --Junchao Zhang
> >>
> >>
> >> On Sat, Sep 21, 2019 at 9:41 PM Smith, Barry F. <bsmith at mcs.anl.gov<mailto:bsmith at mcs.anl.gov><mailto:bsmith at mcs.anl.gov<mailto:bsmith at mcs.anl.gov>>> wrote:
> >>
> >> Junchao,
> >>
> >> Mark has a good point; could you also try for completeness the CPU with 36 cores and see if it is any better than the 42 core case?
> >>
> >> Barry
> >>
> >> So extrapolating about 20 nodes of the CPUs is equivalent to 1 node of the GPUs for the multiply for this problem size.
> >>
> >>> On Sep 21, 2019, at 6:40 PM, Mark Adams <mfadams at lbl.gov<mailto:mfadams at lbl.gov><mailto:mfadams at lbl.gov<mailto:mfadams at lbl.gov>>> wrote:
> >>>
> >>> I came up with 36 cores/node for CPU GAMG runs. The memory bus is pretty saturated at that point.
> >>>
> >>> On Sat, Sep 21, 2019 at 1:44 AM Zhang, Junchao via petsc-dev <petsc-dev at mcs.anl.gov<mailto:petsc-dev at mcs.anl.gov><mailto:petsc-dev at mcs.anl.gov<mailto:petsc-dev at mcs.anl.gov>>> wrote:
> >>> Here are CPU version results on one node with 24 cores, 42 cores. Click the links for core layout.
> >>>
> >>> 24 MPI ranks, https://jsrunvisualizer.olcf.ornl.gov/?s4f1o01n6c4g1r14d1b21l0=
> >>> MatMult 100 1.0 3.1431e+00 1.0 2.63e+09 1.2 1.9e+04 5.9e+04 0.0e+00 8 99 97 25 0 100100100100 0 17948 0 0 0.00e+00 0 0.00e+00 0
> >>> VecScatterBegin 100 1.0 2.0583e-02 2.3 0.00e+00 0.0 1.9e+04 5.9e+04 0.0e+00 0 0 97 25 0 0 0100100 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>> VecScatterEnd 100 1.0 1.0639e+0050.0 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 2 0 0 0 0 19 0 0 0 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>
> >>> 42 MPI ranks, https://jsrunvisualizer.olcf.ornl.gov/?s4f1o01n6c7g1r17d1b21l0=
> >>> MatMult 100 1.0 2.0519e+00 1.0 1.52e+09 1.3 3.5e+04 4.1e+04 0.0e+00 23 99 97 30 0 100100100100 0 27493 0 0 0.00e+00 0 0.00e+00 0
> >>> VecScatterBegin 100 1.0 2.0971e-02 3.4 0.00e+00 0.0 3.5e+04 4.1e+04 0.0e+00 0 0 97 30 0 1 0100100 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>> VecScatterEnd 100 1.0 8.5184e-0162.0 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 6 0 0 0 0 24 0 0 0 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>
> >>> --Junchao Zhang
> >>>
> >>>
> >>> On Fri, Sep 20, 2019 at 11:48 PM Smith, Barry F. <bsmith at mcs.anl.gov<mailto:bsmith at mcs.anl.gov><mailto:bsmith at mcs.anl.gov<mailto:bsmith at mcs.anl.gov>>> wrote:
> >>>
> >>> Junchao,
> >>>
> >>> Very interesting. For completeness please run also 24 and 42 CPUs without the GPUs. Note that the default layout for CPU cores is not good. You will want 3 cores on each socket then 12 on each.
> >>>
> >>> Thanks
> >>>
> >>> Barry
> >>>
> >>> Since Tim is one of our reviewers next week this is a very good test matrix :-)
> >>>
> >>>
> >>>> On Sep 20, 2019, at 11:39 PM, Zhang, Junchao via petsc-dev <petsc-dev at mcs.anl.gov<mailto:petsc-dev at mcs.anl.gov><mailto:petsc-dev at mcs.anl.gov<mailto:petsc-dev at mcs.anl.gov>>> wrote:
> >>>>
> >>>> Click the links to visualize it.
> >>>>
> >>>> 6 ranks
> >>>> https://jsrunvisualizer.olcf.ornl.gov/?s4f1o01n6c1g1r11d1b21l0=
> >>>> jsrun -n 6 -a 1 -c 1 -g 1 -r 6 --latency_priority GPU-GPU --launch_distribution packed --bind packed:1 js_task_info ./ex900 -f HV15R.aij -mat_type aijcusparse -vec_type cuda -n 100 -log_view
> >>>>
> >>>> 24 ranks
> >>>> https://jsrunvisualizer.olcf.ornl.gov/?s4f1o01n6c4g1r14d1b21l0=
> >>>> jsrun -n 6 -a 4 -c 4 -g 1 -r 6 --latency_priority GPU-GPU --launch_distribution packed --bind packed:1 js_task_info ./ex900 -f HV15R.aij -mat_type aijcusparse -vec_type cuda -n 100 -log_view
> >>>>
> >>>> --Junchao Zhang
> >>>>
> >>>>
> >>>> On Fri, Sep 20, 2019 at 11:34 PM Mills, Richard Tran via petsc-dev <petsc-dev at mcs.anl.gov<mailto:petsc-dev at mcs.anl.gov><mailto:petsc-dev at mcs.anl.gov<mailto:petsc-dev at mcs.anl.gov>>> wrote:
> >>>> Junchao,
> >>>>
> >>>> Can you share your 'jsrun' command so that we can see how you are mapping things to resource sets?
> >>>>
> >>>> --Richard
> >>>>
> >>>> On 9/20/19 11:22 PM, Zhang, Junchao via petsc-dev wrote:
> >>>>> I downloaded a sparse matrix (HV15R) from Florida Sparse Matrix Collection. Its size is about 2M x 2M. Then I ran the same MatMult 100 times on one node of Summit with -mat_type aijcusparse -vec_type cuda. I found MatMult was almost dominated by VecScatter in this simple test. Using 6 MPI ranks + 6 GPUs, I found CUDA aware SF could improve performance. But if I enabled Multi-Process Service on Summit and used 24 ranks + 6 GPUs, I found CUDA aware SF hurt performance. I don't know why and have to profile it. I will also collect data with multiple nodes. Are the matrix and tests proper?
> >>>>>
> >>>>> ------------------------------------------------------------------------------------------------------------------------
> >>>>> Event Count Time (sec) Flop --- Global --- --- Stage ---- Total GPU - CpuToGpu - - GpuToCpu - GPU
> >>>>> Max Ratio Max Ratio Max Ratio Mess AvgLen Reduct %T %F %M %L %R %T %F %M %L %R Mflop/s Mflop/s Count Size Count Size %F
> >>>>> ---------------------------------------------------------------------------------------------------------------------------------------------------------------
> >>>>> 6 MPI ranks (CPU version)
> >>>>> MatMult 100 1.0 1.1895e+01 1.0 9.63e+09 1.1 2.8e+03 2.2e+05 0.0e+00 24 99 97 18 0 100100100100 0 4743 0 0 0.00e+00 0 0.00e+00 0
> >>>>> VecScatterBegin 100 1.0 4.9145e-02 3.0 0.00e+00 0.0 2.8e+03 2.2e+05 0.0e+00 0 0 97 18 0 0 0100100 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>>> VecScatterEnd 100 1.0 2.9441e+00133 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 3 0 0 0 0 13 0 0 0 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>>>
> >>>>> 6 MPI ranks + 6 GPUs + regular SF
> >>>>> MatMult 100 1.0 1.7800e-01 1.0 9.66e+09 1.1 2.8e+03 2.2e+05 0.0e+00 0 99 97 18 0 100100100100 0 318057 3084009 100 1.02e+02 100 2.69e+02 100
> >>>>> VecScatterBegin 100 1.0 1.2786e-01 1.3 0.00e+00 0.0 2.8e+03 2.2e+05 0.0e+00 0 0 97 18 0 64 0100100 0 0 0 0 0.00e+00 100 2.69e+02 0
> >>>>> VecScatterEnd 100 1.0 6.2196e-02 3.0 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 0 0 0 0 0 22 0 0 0 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>>> VecCUDACopyTo 100 1.0 1.0850e-02 2.3 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 0 0 0 0 0 5 0 0 0 0 0 0 100 1.02e+02 0 0.00e+00 0
> >>>>> VecCopyFromSome 100 1.0 1.0263e-01 1.2 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 0 0 0 0 0 54 0 0 0 0 0 0 0 0.00e+00 100 2.69e+02 0
> >>>>>
> >>>>> 6 MPI ranks + 6 GPUs + CUDA-aware SF
> >>>>> MatMult 100 1.0 1.1112e-01 1.0 9.66e+09 1.1 2.8e+03 2.2e+05 0.0e+00 1 99 97 18 0 100100100100 0 509496 3133521 0 0.00e+00 0 0.00e+00 100
> >>>>> VecScatterBegin 100 1.0 7.9461e-02 1.1 0.00e+00 0.0 2.8e+03 2.2e+05 0.0e+00 1 0 97 18 0 70 0100100 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>>> VecScatterEnd 100 1.0 2.2805e-02 1.5 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 0 0 0 0 0 17 0 0 0 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>>>
> >>>>> 24 MPI ranks + 6 GPUs + regular SF
> >>>>> MatMult 100 1.0 1.1094e-01 1.0 2.63e+09 1.2 1.9e+04 5.9e+04 0.0e+00 1 99 97 25 0 100100100100 0 510337 951558 100 4.61e+01 100 6.72e+01 100
> >>>>> VecScatterBegin 100 1.0 4.8966e-02 1.8 0.00e+00 0.0 1.9e+04 5.9e+04 0.0e+00 0 0 97 25 0 34 0100100 0 0 0 0 0.00e+00 100 6.72e+01 0
> >>>>> VecScatterEnd 100 1.0 7.2969e-02 4.9 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 1 0 0 0 0 42 0 0 0 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>>> VecCUDACopyTo 100 1.0 4.4487e-03 1.8 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 0 0 0 0 0 3 0 0 0 0 0 0 100 4.61e+01 0 0.00e+00 0
> >>>>> VecCopyFromSome 100 1.0 4.3315e-02 1.9 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 0 0 0 0 0 29 0 0 0 0 0 0 0 0.00e+00 100 6.72e+01 0
> >>>>>
> >>>>> 24 MPI ranks + 6 GPUs + CUDA-aware SF
> >>>>> MatMult 100 1.0 1.4597e-01 1.2 2.63e+09 1.2 1.9e+04 5.9e+04 0.0e+00 1 99 97 25 0 100100100100 0 387864 973391 0 0.00e+00 0 0.00e+00 100
> >>>>> VecScatterBegin 100 1.0 6.4899e-02 2.9 0.00e+00 0.0 1.9e+04 5.9e+04 0.0e+00 1 0 97 25 0 35 0100100 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>>> VecScatterEnd 100 1.0 1.1179e-01 4.1 0.00e+00 0.0 0.0e+00 0.0e+00 0.0e+00 1 0 0 0 0 48 0 0 0 0 0 0 0 0.00e+00 0 0.00e+00 0
> >>>>>
> >>>>>
> >>>>> --Junchao Zhang
> >>>>
> >>>
>
> <SummitNode.png>
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