Benchmarks for a future article. 2 x Intel Xeon Platinum 8380 testing with a Intel M50CYP2SB2U (SE5C6200.86B.0022.D08.2103221623 BIOS) and ASPEED on Ubuntu 22.10 via the Phoronix Test Suite.
Compare your own system(s) to this result file with the
Phoronix Test Suite by running the command:
phoronix-test-suite benchmark 2308099-NE-XEONPLATI49
Xeon Platinum 8380 AVX-512 Workloads
Benchmarks for a future article. 2 x Intel Xeon Platinum 8380 testing with a Intel M50CYP2SB2U (SE5C6200.86B.0022.D08.2103221623 BIOS) and ASPEED on Ubuntu 22.10 via the Phoronix Test Suite.
,,"0xd000390","0xd0003a5"
Processor,,2 x Intel Xeon Platinum 8380 @ 3.40GHz (80 Cores / 160 Threads),2 x Intel Xeon Platinum 8380 @ 3.40GHz (80 Cores / 160 Threads)
Motherboard,,Intel M50CYP2SB2U (SE5C6200.86B.0022.D08.2103221623 BIOS),Intel M50CYP2SB2U (SE5C6200.86B.0022.D08.2103221623 BIOS)
Chipset,,Intel Ice Lake IEH,Intel Ice Lake IEH
Memory,,512GB,512GB
Disk,,7682GB INTEL SSDPF2KX076TZ,7682GB INTEL SSDPF2KX076TZ
Graphics,,ASPEED,ASPEED
Monitor,,VE228,VE228
Network,,2 x Intel X710 for 10GBASE-T + 2 x Intel E810-C for QSFP,2 x Intel X710 for 10GBASE-T + 2 x Intel E810-C for QSFP
OS,,Ubuntu 22.10,Ubuntu 22.10
Kernel,,6.5.0-060500rc4daily20230804-generic (x86_64),6.5.0-rc5-phx-tues (x86_64)
Desktop,,GNOME Shell 43.0,GNOME Shell 43.0
Display Server,,X Server 1.21.1.3,X Server 1.21.1.3
Vulkan,,1.3.224,1.3.224
Compiler,,GCC 12.2.0,GCC 12.2.0
File-System,,ext4,ext4
Screen Resolution,,1920x1080,1920x1080
,,"0xd000390","0xd0003a5"
"Blender - Blend File: BMW27 - Compute: CPU-Only (sec)",LIB,23.83,23.72
"Blender - Blend File: Fishy Cat - Compute: CPU-Only (sec)",LIB,30.74,30.90
"CloverLeaf - Lagrangian-Eulerian Hydrodynamics (sec)",LIB,12.04,11.98
"Cpuminer-Opt - Algorithm: Magi (kH/s)",HIB,2309.47,2308.66
"Cpuminer-Opt - Algorithm: x25x (kH/s)",HIB,2659.17,2659.55
"Cpuminer-Opt - Algorithm: scrypt (kH/s)",HIB,2319.31,2321.74
"Cpuminer-Opt - Algorithm: Deepcoin (kH/s)",HIB,64677,64897
"Cpuminer-Opt - Algorithm: Blake-2 S (kH/s)",HIB,4462327,4466653
"Cpuminer-Opt - Algorithm: Garlicoin (kH/s)",HIB,29203,22086.25
"Cpuminer-Opt - Algorithm: Skeincoin (kH/s)",HIB,613333,617130
"Cpuminer-Opt - Algorithm: Myriad-Groestl (kH/s)",HIB,43127,43450
"Cpuminer-Opt - Algorithm: LBC, LBRY Credits (kH/s)",HIB,421660,423130
"Cpuminer-Opt - Algorithm: Quad SHA-256, Pyrite (kH/s)",HIB,921730,926277
"Cpuminer-Opt - Algorithm: Triple SHA-256, Onecoin (kH/s)",HIB,1332237,1333117
"dav1d - Video Input: Chimera 1080p (FPS)",HIB,515.81,514.58
"dav1d - Video Input: Summer Nature 4K (FPS)",HIB,281.36,280.84
"Embree - Binary: Pathtracer ISPC - Model: Crown (FPS)",HIB,88.1941,83.4621
"Embree - Binary: Pathtracer ISPC - Model: Asian Dragon (FPS)",HIB,104.6844,101.0959
"GROMACS - Implementation: MPI CPU - Input: water_GMX50_bare (Ns/Day)",HIB,9.234,9.094
"HeFFTe - Highly Efficient FFT for Exascale - Test: c2c - Backend: FFTW - Precision: float - X Y Z: 128 (GFLOP/s)",HIB,154.731,159.100
"HeFFTe - Highly Efficient FFT for Exascale - Test: c2c - Backend: FFTW - Precision: float - X Y Z: 256 (GFLOP/s)",HIB,101.977,102.920
"HeFFTe - Highly Efficient FFT for Exascale - Test: r2c - Backend: FFTW - Precision: float - X Y Z: 128 (GFLOP/s)",HIB,195.199,198.869
"HeFFTe - Highly Efficient FFT for Exascale - Test: r2c - Backend: FFTW - Precision: float - X Y Z: 256 (GFLOP/s)",HIB,224.417,226.783
"HeFFTe - Highly Efficient FFT for Exascale - Test: c2c - Backend: FFTW - Precision: double - X Y Z: 128 (GFLOP/s)",HIB,93.0906,93.9207
"HeFFTe - Highly Efficient FFT for Exascale - Test: c2c - Backend: FFTW - Precision: double - X Y Z: 256 (GFLOP/s)",HIB,46.3516,46.9833
"HeFFTe - Highly Efficient FFT for Exascale - Test: r2c - Backend: FFTW - Precision: double - X Y Z: 128 (GFLOP/s)",HIB,144.942,153.790
"HeFFTe - Highly Efficient FFT for Exascale - Test: r2c - Backend: FFTW - Precision: double - X Y Z: 256 (GFLOP/s)",HIB,93.7474,94.8614
"Intel Open Image Denoise - Run: RT.ldr_alb_nrm.3840x2160 - Device: CPU-Only (Images / Sec)",HIB,3.03,3.03
"Intel Open Image Denoise - Run: RTLightmap.hdr.4096x4096 - Device: CPU-Only (Images / Sec)",HIB,1.46,1.46
"Laghos - Test: Triple Point Problem (Major Kernels Rate)",HIB,256.27,256.87
"Laghos - Test: Sedov Blast Wave, ube_922_hex.mesh (Major Kernels Rate)",HIB,385.89,386.08
"libxsmm - M N K: 128 (GFLOPS/s)",HIB,1941.1,1978.9
"libxsmm - M N K: 256 (GFLOPS/s)",HIB,594.6,600.2
"libxsmm - M N K: 32 (GFLOPS/s)",HIB,604.7,609.2
"libxsmm - M N K: 64 (GFLOPS/s)",HIB,1098.8,1177.1
"miniBUDE - Implementation: OpenMP - Input Deck: BM1 (GFInst/s)",HIB,2353.389,2372.418
"miniBUDE - Implementation: OpenMP - Input Deck: BM1 (Billion Interactions/s)",HIB,94.136,94.897
"miniBUDE - Implementation: OpenMP - Input Deck: BM2 (GFInst/s)",HIB,2526.887,2601.212
"miniBUDE - Implementation: OpenMP - Input Deck: BM2 (Billion Interactions/s)",HIB,101.076,104.048
"NCNN - Target: CPU - Model: mobilenet (ms)",LIB,15.46,15.66
"NCNN - Target: CPU-v2-v2 - Model: mobilenet-v2 (ms)",LIB,8.03,7.96
"NCNN - Target: CPU-v3-v3 - Model: mobilenet-v3 (ms)",LIB,8.88,8.76
"NCNN - Target: CPU - Model: shufflenet-v2 (ms)",LIB,9.89,9.76
"NCNN - Target: CPU - Model: mnasnet (ms)",LIB,7.57,7.41
"NCNN - Target: CPU - Model: efficientnet-b0 (ms)",LIB,11.62,11.71
"NCNN - Target: CPU - Model: blazeface (ms)",LIB,4.35,4.54
"NCNN - Target: CPU - Model: googlenet (ms)",LIB,15.36,16.58
"NCNN - Target: CPU - Model: vgg16 (ms)",LIB,23.86,25.71
"NCNN - Target: CPU - Model: resnet18 (ms)",LIB,8.97,9.42
"NCNN - Target: CPU - Model: alexnet (ms)",LIB,5.39,5.46
"NCNN - Target: CPU - Model: resnet50 (ms)",LIB,17.15,18.51
"NCNN - Target: CPU - Model: yolov4-tiny (ms)",LIB,23.71,24.10
"NCNN - Target: CPU - Model: squeezenet_ssd (ms)",LIB,15.34,16.10
"NCNN - Target: CPU - Model: regnety_400m (ms)",LIB,45.54,38.85
"NCNN - Target: CPU - Model: vision_transformer (ms)",LIB,46.92,45.23
"NCNN - Target: CPU - Model: FastestDet (ms)",LIB,10.20,9.71
"Neural Magic DeepSparse - Model: NLP Document Classification, oBERT base uncased on IMDB - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,72.0674,71.8868
"Neural Magic DeepSparse - Model: NLP Document Classification, oBERT base uncased on IMDB - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,551.1195,553.2682
"Neural Magic DeepSparse - Model: NLP Text Classification, BERT base uncased SST2, Sparse INT8 - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,2301.1554,2068.3047
"Neural Magic DeepSparse - Model: NLP Text Classification, BERT base uncased SST2, Sparse INT8 - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,17.3504,19.3090
"Neural Magic DeepSparse - Model: NLP Sentiment Analysis, 80% Pruned Quantized BERT Base Uncased - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,922.9302,930.7506
"Neural Magic DeepSparse - Model: NLP Sentiment Analysis, 80% Pruned Quantized BERT Base Uncased - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,43.3033,42.9405
"Neural Magic DeepSparse - Model: NLP Question Answering, BERT base uncased SQuaD 12layer Pruned90 - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,230.0525,231.4277
"Neural Magic DeepSparse - Model: NLP Question Answering, BERT base uncased SQuaD 12layer Pruned90 - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,173.7945,172.5579
"Neural Magic DeepSparse - Model: ResNet-50, Baseline - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,1006.3407,1013.8215
"Neural Magic DeepSparse - Model: ResNet-50, Baseline - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,39.6954,39.4131
"Neural Magic DeepSparse - Model: ResNet-50, Sparse INT8 - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,7633.2598,7092.5030
"Neural Magic DeepSparse - Model: ResNet-50, Sparse INT8 - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,5.2210,5.6210
"Neural Magic DeepSparse - Model: CV Detection, YOLOv5s COCO - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,422.1167,412.0531
"Neural Magic DeepSparse - Model: CV Detection, YOLOv5s COCO - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,94.6126,96.9429
"Neural Magic DeepSparse - Model: BERT-Large, NLP Question Answering - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,98.3394,94.2573
"Neural Magic DeepSparse - Model: BERT-Large, NLP Question Answering - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,405.9662,421.7544
"Neural Magic DeepSparse - Model: CV Classification, ResNet-50 ImageNet - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,1005.5843,987.5452
"Neural Magic DeepSparse - Model: CV Classification, ResNet-50 ImageNet - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,39.7308,40.4508
"Neural Magic DeepSparse - Model: CV Detection, YOLOv5s COCO, Sparse INT8 - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,426.9495,398.7153
"Neural Magic DeepSparse - Model: CV Detection, YOLOv5s COCO, Sparse INT8 - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,93.5399,100.1856
"Neural Magic DeepSparse - Model: NLP Text Classification, DistilBERT mnli - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,644.4430,620.2548
"Neural Magic DeepSparse - Model: NLP Text Classification, DistilBERT mnli - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,62.0099,64.4439
"Neural Magic DeepSparse - Model: CV Segmentation, 90% Pruned YOLACT Pruned - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,84.0181,83.2041
"Neural Magic DeepSparse - Model: CV Segmentation, 90% Pruned YOLACT Pruned - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,474.6917,478.8510
"Neural Magic DeepSparse - Model: BERT-Large, NLP Question Answering, Sparse INT8 - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,1051.7868,869.0393
"Neural Magic DeepSparse - Model: BERT-Large, NLP Question Answering, Sparse INT8 - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,37.9943,45.9597
"Neural Magic DeepSparse - Model: NLP Text Classification, BERT base uncased SST2 - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,307.8729,293.1241
"Neural Magic DeepSparse - Model: NLP Text Classification, BERT base uncased SST2 - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,129.8095,136.1780
"Neural Magic DeepSparse - Model: NLP Token Classification, BERT base uncased conll2003 - Scenario: Asynchronous Multi-Stream (items/sec)",HIB,72.1788,71.5436
"Neural Magic DeepSparse - Model: NLP Token Classification, BERT base uncased conll2003 - Scenario: Asynchronous Multi-Stream (ms/batch)",LIB,551.8180,555.0876
"oneDNN - Harness: IP Shapes 3D - Data Type: bf16bf16bf16 - Engine: CPU (ms)",LIB,2.59271,2.57437
"oneDNN - Harness: Convolution Batch Shapes Auto - Data Type: bf16bf16bf16 - Engine: CPU (ms)",LIB,2.06936,2.06967
"oneDNN - Harness: Deconvolution Batch shapes_1d - Data Type: bf16bf16bf16 - Engine: CPU (ms)",LIB,3.90360,3.91322
"oneDNN - Harness: Deconvolution Batch shapes_3d - Data Type: bf16bf16bf16 - Engine: CPU (ms)",LIB,3.62526,3.62266
"oneDNN - Harness: Recurrent Neural Network Training - Data Type: bf16bf16bf16 - Engine: CPU (ms)",LIB,832.452,816.508
"oneDNN - Harness: Recurrent Neural Network Inference - Data Type: bf16bf16bf16 - Engine: CPU (ms)",LIB,524.381,521.742
"ONNX Runtime - Model: GPT-2 - Device: CPU - Executor: Standard (Inferences/sec)",HIB,180.163,190.570
"ONNX Runtime - Model: GPT-2 - Device: CPU - Executor: Standard (Inference Time Cost (ms))",LIB,5.54783,5.28095
"ONNX Runtime - Model: yolov4 - Device: CPU - Executor: Standard (Inferences/sec)",HIB,11.6605,11.1539
"ONNX Runtime - Model: yolov4 - Device: CPU - Executor: Standard (Inference Time Cost (ms))",LIB,85.7987,89.8299
"ONNX Runtime - Model: bertsquad-12 - Device: CPU - Executor: Standard (Inferences/sec)",HIB,16.7110,16.3098
"ONNX Runtime - Model: bertsquad-12 - Device: CPU - Executor: Standard (Inference Time Cost (ms))",LIB,59.8415,61.5091
"ONNX Runtime - Model: CaffeNet 12-int8 - Device: CPU - Executor: Standard (Inferences/sec)",HIB,696.725,664.537
"ONNX Runtime - Model: CaffeNet 12-int8 - Device: CPU - Executor: Standard (Inference Time Cost (ms))",LIB,1.43407,1.51029
"ONNX Runtime - Model: fcn-resnet101-11 - Device: CPU - Executor: Standard (Inferences/sec)",HIB,9.08067,8.59908
"ONNX Runtime - Model: fcn-resnet101-11 - Device: CPU - Executor: Standard (Inference Time Cost (ms))",LIB,110.323,117.545
"ONNX Runtime - Model: ArcFace ResNet-100 - Device: CPU - Executor: Standard (Inferences/sec)",HIB,39.1157,38.7185
"ONNX Runtime - Model: ArcFace ResNet-100 - Device: CPU - Executor: Standard (Inference Time Cost (ms))",LIB,25.5687,25.8601
"ONNX Runtime - Model: ResNet50 v1-12-int8 - Device: CPU - Executor: Standard (Inferences/sec)",HIB,221.020,216.481
"ONNX Runtime - Model: ResNet50 v1-12-int8 - Device: CPU - Executor: Standard (Inference Time Cost (ms))",LIB,4.52403,4.62085
"ONNX Runtime - Model: super-resolution-10 - Device: CPU - Executor: Standard (Inferences/sec)",HIB,158.355,158.014
"ONNX Runtime - Model: super-resolution-10 - Device: CPU - Executor: Standard (Inference Time Cost (ms))",LIB,6.31428,6.71968
"OpenVINO - Model: Face Detection FP16 - Device: CPU (FPS)",HIB,24.04,24.18
"OpenVINO - Model: Face Detection FP16 - Device: CPU (ms)",LIB,827.51,823.09
"OpenVINO - Model: Person Detection FP16 - Device: CPU (FPS)",HIB,13.29,13.25
"OpenVINO - Model: Person Detection FP16 - Device: CPU (ms)",LIB,1490.76,1496.19
"OpenVINO - Model: Person Detection FP32 - Device: CPU (FPS)",HIB,13.03,13.04
"OpenVINO - Model: Person Detection FP32 - Device: CPU (ms)",LIB,1517.69,1519.84
"OpenVINO - Model: Vehicle Detection FP16 - Device: CPU (FPS)",HIB,1121.56,1117.09
"OpenVINO - Model: Vehicle Detection FP16 - Device: CPU (ms)",LIB,17.80,17.87
"OpenVINO - Model: Face Detection FP16-INT8 - Device: CPU (FPS)",HIB,95.42,95.54
"OpenVINO - Model: Face Detection FP16-INT8 - Device: CPU (ms)",LIB,209.31,209.02
"OpenVINO - Model: Vehicle Detection FP16-INT8 - Device: CPU (FPS)",HIB,4419.17,4442.98
"OpenVINO - Model: Vehicle Detection FP16-INT8 - Device: CPU (ms)",LIB,4.51,4.49
"OpenVINO - Model: Weld Porosity Detection FP16 - Device: CPU (FPS)",HIB,2344.97,2362.84
"OpenVINO - Model: Weld Porosity Detection FP16 - Device: CPU (ms)",LIB,33.89,33.63
"OpenVINO - Model: Machine Translation EN To DE FP16 - Device: CPU (FPS)",HIB,251.00,255.09
"OpenVINO - Model: Machine Translation EN To DE FP16 - Device: CPU (ms)",LIB,79.47,78.18
"OpenVINO - Model: Weld Porosity Detection FP16-INT8 - Device: CPU (FPS)",HIB,9396.52,9419.77
"OpenVINO - Model: Weld Porosity Detection FP16-INT8 - Device: CPU (ms)",LIB,8.50,8.48
"OpenVINO - Model: Person Vehicle Bike Detection FP16 - Device: CPU (FPS)",HIB,2039.63,2070.72
"OpenVINO - Model: Person Vehicle Bike Detection FP16 - Device: CPU (ms)",LIB,9.77,9.63
"OpenVINO - Model: Age Gender Recognition Retail 0013 FP16 - Device: CPU (FPS)",HIB,59274.06,59377.96
"OpenVINO - Model: Age Gender Recognition Retail 0013 FP16 - Device: CPU (ms)",LIB,1.33,1.33
"OpenVINO - Model: Age Gender Recognition Retail 0013 FP16-INT8 - Device: CPU (FPS)",HIB,67604.00,67754.34
"OpenVINO - Model: Age Gender Recognition Retail 0013 FP16-INT8 - Device: CPU (ms)",LIB,1.16,1.16
"OpenVKL - Benchmark: vklBenchmark ISPC (Items / Sec)",HIB,912,856
"OSPRay - Benchmark: particle_volume/ao/real_time (Items/sec)",HIB,24.7473,16.4611
"OSPRay - Benchmark: particle_volume/scivis/real_time (Items/sec)",HIB,24.9506,16.3849
"OSPRay - Benchmark: particle_volume/pathtracer/real_time (Items/sec)",HIB,150.281,136.853
"OSPRay - Benchmark: gravity_spheres_volume/dim_512/ao/real_time (Items/sec)",HIB,21.0761,18.8862
"OSPRay - Benchmark: gravity_spheres_volume/dim_512/scivis/real_time (Items/sec)",HIB,20.5780,18.4626
"Palabos - Grid Size: 100 (Mega Site Updates/sec)",HIB,312.195,312.530
"Palabos - Grid Size: 400 (Mega Site Updates/sec)",HIB,388.476,393.844
"Palabos - Grid Size: 500 (Mega Site Updates/sec)",HIB,413.207,417.483
"QMCPACK - Input: Li2_STO_ae (Execution Time - sec)",LIB,124.23,123.26
"QMCPACK - Input: simple-H2O (Execution Time - sec)",LIB,39.555,41.246
"QMCPACK - Input: FeCO6_b3lyp_gms (Execution Time - sec)",LIB,147.51,178.19
"QMCPACK - Input: FeCO6_b3lyp_gms (Execution Time - sec)",LIB,268.56,263.23
"Remhos - Test: Sample Remap Example (sec)",LIB,12.245,12.401
"simdjson - Throughput Test: Kostya (GB/s)",HIB,2.61,2.87
"simdjson - Throughput Test: TopTweet (GB/s)",HIB,5.60,5.75
"simdjson - Throughput Test: LargeRandom (GB/s)",HIB,0.85,0.96
"simdjson - Throughput Test: PartialTweets (GB/s)",HIB,4.62,4.77
"simdjson - Throughput Test: DistinctUserID (GB/s)",HIB,5.52,5.71
"SPECFEM3D - Model: Mount St. Helens (sec)",LIB,13.148692362,12.948759795
"SPECFEM3D - Model: Layered Halfspace (sec)",LIB,29.497987898,29.373606551
"SPECFEM3D - Model: Tomographic Model (sec)",LIB,14.574192022,14.145999546
"SPECFEM3D - Model: Homogeneous Halfspace (sec)",LIB,18.022236470,17.751628972
"SPECFEM3D - Model: Water-layered Halfspace (sec)",LIB,31.146951238,31.381798528
"SVT-AV1 - Encoder Mode: Preset 8 - Input: Bosphorus 4K (FPS)",HIB,67.170,66.460
"SVT-AV1 - Encoder Mode: Preset 12 - Input: Bosphorus 4K (FPS)",HIB,180.967,177.721
"SVT-AV1 - Encoder Mode: Preset 13 - Input: Bosphorus 4K (FPS)",HIB,175.102,177.203
"SVT-HEVC - Tuning: 1 - Input: Bosphorus 4K (FPS)",HIB,10.46,10.45
"SVT-HEVC - Tuning: 7 - Input: Bosphorus 4K (FPS)",HIB,138.75,138.49
"SVT-HEVC - Tuning: 10 - Input: Bosphorus 4K (FPS)",HIB,184.38,182.74
"TensorFlow - Device: CPU - Batch Size: 256 - Model: AlexNet (images/sec)",HIB,723.27,781.25
"TensorFlow - Device: CPU - Batch Size: 512 - Model: AlexNet (images/sec)",HIB,760.15,839.41
"TensorFlow - Device: CPU - Batch Size: 256 - Model: GoogLeNet (images/sec)",HIB,309.63,321.72
"TensorFlow - Device: CPU - Batch Size: 256 - Model: ResNet-50 (images/sec)",HIB,83.89,86.93
"TensorFlow - Device: CPU - Batch Size: 512 - Model: GoogLeNet (images/sec)",HIB,317.27,323.79
"TensorFlow - Device: CPU - Batch Size: 512 - Model: ResNet-50 (images/sec)",HIB,85.97,84.84
"Timed MrBayes Analysis - Primate Phylogeny Analysis (sec)",LIB,166.528,165.419
"VP9 libvpx Encoding - Speed: Speed 5 - Input: Bosphorus 4K (FPS)",HIB,12.63,12.33
"VVenC - Video Input: Bosphorus 4K - Video Preset: Fast (FPS)",HIB,5.722,5.705
"VVenC - Video Input: Bosphorus 4K - Video Preset: Faster (FPS)",HIB,10.364,10.415
"Xcompact3d Incompact3d - Input: input.i3d 193 Cells Per Direction (sec)",LIB,11.0240278,11.0041968