169 lines
9.9 KiB
Plaintext
169 lines
9.9 KiB
Plaintext
srun: Job time limit was unset; set to partition default of 60 minutes
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srun: ################################################################################
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srun: # Please note that the oasis compute nodes have aarch64 architecture CPUs. #
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srun: # All submission nodes and all other compute nodes have x86_64 architecture #
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srun: # CPUs. Programs, environments, or other software that was built on x86_64 #
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srun: # nodes may need to be rebuilt to properly execute on these nodes. #
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srun: ################################################################################
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srun: job 3394985 queued and waiting for resources
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srun: job 3394985 has been allocated resources
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/nfshomes/vut/ampere_research/pytorch/spmv.py:20: UserWarning: Sparse CSR tensor support is in beta state. If you miss a functionality in the sparse tensor support, please submit a feature request to https://github.com/pytorch/pytorch/issues. (Triggered internally at /space/jenkins/workspace/Releases/pytorch-dls/pytorch-dls/aten/src/ATen/SparseCsrTensorImpl.cpp:55.)
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).to_sparse_csr().type(torch.float)
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tensor(crow_indices=tensor([ 0, 13, 21, ..., 116047, 116051,
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116056]),
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col_indices=tensor([ 250, 251, 757, ..., 23334, 23553, 24050]),
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values=tensor([ 14900., 33341., 20255., ..., 164227., 52413.,
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16949.]), size=(24115, 24115), nnz=116056,
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layout=torch.sparse_csr)
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tensor([0.6055, 0.8789, 0.0482, ..., 0.0736, 0.1316, 0.6744])
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Matrix: de2010
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Shape: torch.Size([24115, 24115])
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NNZ: 116056
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Density: 0.0001995689928120616
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Time: 2.6956887245178223 seconds
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Performance counter stats for 'apptainer run pytorch-altra.sif -c numactl --cpunodebind=0 --membind=0 python spmv.py matrices/de2010.mtx 1000':
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48.96 msec task-clock:u # 0.008 CPUs utilized
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0 context-switches:u # 0.000 /sec
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0 cpu-migrations:u # 0.000 /sec
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3,285 page-faults:u # 67.090 K/sec
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48,563,060 cycles:u # 0.992 GHz (59.76%)
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73,465,190 instructions:u # 1.51 insn per cycle (78.23%)
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<not supported> branches:u
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369,314 branch-misses:u (98.16%)
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31,769,641 L1-dcache-loads:u # 648.836 M/sec
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479,594 L1-dcache-load-misses:u # 1.51% of all L1-dcache accesses
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<not supported> LLC-loads:u
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<not supported> LLC-load-misses:u
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30,338,929 L1-icache-loads:u # 619.616 M/sec
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282,162 L1-icache-load-misses:u # 0.93% of all L1-icache accesses
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55,516,925 dTLB-loads:u # 1.134 G/sec (23.54%)
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12,345 dTLB-load-misses:u # 0.02% of all dTLB cache accesses (3.47%)
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<not counted> iTLB-loads:u (0.00%)
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<not counted> iTLB-load-misses:u (0.00%)
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6.017085179 seconds time elapsed
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17.484355000 seconds user
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28.678064000 seconds sys
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/nfshomes/vut/ampere_research/pytorch/spmv.py:20: UserWarning: Sparse CSR tensor support is in beta state. If you miss a functionality in the sparse tensor support, please submit a feature request to https://github.com/pytorch/pytorch/issues. (Triggered internally at /space/jenkins/workspace/Releases/pytorch-dls/pytorch-dls/aten/src/ATen/SparseCsrTensorImpl.cpp:55.)
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).to_sparse_csr().type(torch.float)
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tensor(crow_indices=tensor([ 0, 13, 21, ..., 116047, 116051,
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116056]),
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col_indices=tensor([ 250, 251, 757, ..., 23334, 23553, 24050]),
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values=tensor([ 14900., 33341., 20255., ..., 164227., 52413.,
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16949.]), size=(24115, 24115), nnz=116056,
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layout=torch.sparse_csr)
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tensor([0.2815, 0.8196, 0.3706, ..., 0.1328, 0.4062, 0.9113])
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Matrix: de2010
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Shape: torch.Size([24115, 24115])
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NNZ: 116056
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Density: 0.0001995689928120616
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Time: 2.7908551692962646 seconds
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Performance counter stats for 'apptainer run pytorch-altra.sif -c numactl --cpunodebind=0 --membind=0 python spmv.py matrices/de2010.mtx 1000':
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326,361 BR_MIS_PRED_RETIRED:u # 0.0 per branch branch_misprediction_ratio
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19,599,354 BR_RETIRED:u
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6.215591535 seconds time elapsed
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18.097112000 seconds user
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27.831633000 seconds sys
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/nfshomes/vut/ampere_research/pytorch/spmv.py:20: UserWarning: Sparse CSR tensor support is in beta state. If you miss a functionality in the sparse tensor support, please submit a feature request to https://github.com/pytorch/pytorch/issues. (Triggered internally at /space/jenkins/workspace/Releases/pytorch-dls/pytorch-dls/aten/src/ATen/SparseCsrTensorImpl.cpp:55.)
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).to_sparse_csr().type(torch.float)
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tensor(crow_indices=tensor([ 0, 13, 21, ..., 116047, 116051,
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116056]),
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col_indices=tensor([ 250, 251, 757, ..., 23334, 23553, 24050]),
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values=tensor([ 14900., 33341., 20255., ..., 164227., 52413.,
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16949.]), size=(24115, 24115), nnz=116056,
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layout=torch.sparse_csr)
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tensor([0.9002, 0.0843, 0.5558, ..., 0.3931, 0.8070, 0.7414])
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Matrix: de2010
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Shape: torch.Size([24115, 24115])
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NNZ: 116056
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Density: 0.0001995689928120616
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Time: 2.819589376449585 seconds
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Performance counter stats for 'apptainer run pytorch-altra.sif -c numactl --cpunodebind=0 --membind=0 python spmv.py matrices/de2010.mtx 1000':
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26,666,488 L1I_TLB:u # 0.0 per TLB access itlb_walk_ratio
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6,643 ITLB_WALK:u
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17,347 DTLB_WALK:u # 0.0 per TLB access dtlb_walk_ratio
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35,986,736 L1D_TLB:u
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6.243883495 seconds time elapsed
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17.783312000 seconds user
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31.714619000 seconds sys
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/nfshomes/vut/ampere_research/pytorch/spmv.py:20: UserWarning: Sparse CSR tensor support is in beta state. If you miss a functionality in the sparse tensor support, please submit a feature request to https://github.com/pytorch/pytorch/issues. (Triggered internally at /space/jenkins/workspace/Releases/pytorch-dls/pytorch-dls/aten/src/ATen/SparseCsrTensorImpl.cpp:55.)
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).to_sparse_csr().type(torch.float)
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tensor(crow_indices=tensor([ 0, 13, 21, ..., 116047, 116051,
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116056]),
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col_indices=tensor([ 250, 251, 757, ..., 23334, 23553, 24050]),
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values=tensor([ 14900., 33341., 20255., ..., 164227., 52413.,
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16949.]), size=(24115, 24115), nnz=116056,
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layout=torch.sparse_csr)
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tensor([0.9109, 0.6392, 0.7899, ..., 0.0945, 0.3298, 0.6865])
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Matrix: de2010
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Shape: torch.Size([24115, 24115])
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NNZ: 116056
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Density: 0.0001995689928120616
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Time: 2.747800827026367 seconds
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Performance counter stats for 'apptainer run pytorch-altra.sif -c numactl --cpunodebind=0 --membind=0 python spmv.py matrices/de2010.mtx 1000':
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32,502,068 L1I_CACHE:u # 0.0 per cache access l1i_cache_miss_ratio
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302,739 L1I_CACHE_REFILL:u
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480,619 L1D_CACHE_REFILL:u # 0.0 per cache access l1d_cache_miss_ratio
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34,031,072 L1D_CACHE:u
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6.126767063 seconds time elapsed
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17.702029000 seconds user
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29.137072000 seconds sys
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/nfshomes/vut/ampere_research/pytorch/spmv.py:20: UserWarning: Sparse CSR tensor support is in beta state. If you miss a functionality in the sparse tensor support, please submit a feature request to https://github.com/pytorch/pytorch/issues. (Triggered internally at /space/jenkins/workspace/Releases/pytorch-dls/pytorch-dls/aten/src/ATen/SparseCsrTensorImpl.cpp:55.)
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).to_sparse_csr().type(torch.float)
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tensor(crow_indices=tensor([ 0, 13, 21, ..., 116047, 116051,
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116056]),
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col_indices=tensor([ 250, 251, 757, ..., 23334, 23553, 24050]),
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values=tensor([ 14900., 33341., 20255., ..., 164227., 52413.,
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16949.]), size=(24115, 24115), nnz=116056,
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layout=torch.sparse_csr)
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tensor([0.7083, 0.6766, 0.7649, ..., 0.3027, 0.9885, 0.8086])
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Matrix: de2010
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Shape: torch.Size([24115, 24115])
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NNZ: 116056
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Density: 0.0001995689928120616
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Time: 2.795116901397705 seconds
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Performance counter stats for 'apptainer run pytorch-altra.sif -c numactl --cpunodebind=0 --membind=0 python spmv.py matrices/de2010.mtx 1000':
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552,815 LL_CACHE_MISS_RD:u # 1.0 per cache access ll_cache_read_miss_ratio
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567,373 LL_CACHE_RD:u
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188,248 L2D_TLB:u # 0.1 per TLB access l2_tlb_miss_ratio
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23,165 L2D_TLB_REFILL:u
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308,211 L2D_CACHE_REFILL:u # 0.2 per cache access l2_cache_miss_ratio
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1,787,647 L2D_CACHE:u
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6.041792624 seconds time elapsed
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17.791735000 seconds user
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29.790006000 seconds sys
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