5900hx scikit learn

AMD Ryzen 9 5900HX testing with a ASUS G513QY v1.0 (G513QY.318 BIOS) and ASUS AMD Cezanne 512MB 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 2305113-NE-5900HXSCI86
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a
May 10 2023
  7 Hours, 56 Minutes
b
May 10 2023
  7 Hours, 34 Minutes
c
May 11 2023
  7 Hours, 33 Minutes
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  7 Hours, 41 Minutes

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{ "title": "5900hx scikit learn", "last_modified": "2023-05-11 13:59:28", "description": "AMD Ryzen 9 5900HX testing with a ASUS G513QY v1.0 (G513QY.318 BIOS) and ASUS AMD Cezanne 512MB on Ubuntu 22.10 via the Phoronix Test Suite.", "systems": { "a": { "identifier": "a", "hardware": { "Processor": "AMD Ryzen 9 5900HX @ 3.30GHz (8 Cores \/ 16 Threads)", "Motherboard": "ASUS G513QY v1.0 (G513QY.318 BIOS)", "Chipset": "AMD Renoir\/Cezanne", "Memory": "16GB", "Disk": "512GB SAMSUNG MZVLQ512HBLU-00B00", "Graphics": "ASUS AMD Cezanne 512MB (2500\/1000MHz)", "Audio": "AMD Navi 21\/23", "Monitor": "LQ156M1JW25", "Network": "Realtek RTL8111\/8168\/8411 + MEDIATEK MT7921 802.11ax PCI" }, "software": { "OS": "Ubuntu 22.10", "Kernel": "5.19.0-41-generic (x86_64)", "Desktop": "GNOME Shell 43.0", "Display Server": "X Server 1.21.1.4 + Wayland", "OpenGL": "4.6 Mesa 22.2.5 (LLVM 15.0.2 DRM 3.47)", "Vulkan": "1.3.224", "Compiler": "GCC 12.2.0", "File-System": "ext4", "Screen Resolution": "1920x1080" }, 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affected + mmio_stale_data: Not affected + retbleed: Not affected + spec_store_bypass: Mitigation of SSB disabled via prctl + spectre_v1: Mitigation of usercopy\/swapgs barriers and __user pointer sanitization + spectre_v2: Mitigation of Retpolines IBPB: conditional IBRS_FW STIBP: always-on RSB filling PBRSB-eIBRS: Not affected + srbds: Not affected + tsx_async_abort: Not affected" } }, "c": { "identifier": "c", "hardware": { "Processor": "AMD Ryzen 9 5900HX @ 3.30GHz (8 Cores \/ 16 Threads)", "Motherboard": "ASUS G513QY v1.0 (G513QY.318 BIOS)", "Chipset": "AMD Renoir\/Cezanne", "Memory": "16GB", "Disk": "512GB SAMSUNG MZVLQ512HBLU-00B00", "Graphics": "ASUS AMD Cezanne 512MB (2500\/1000MHz)", "Audio": "AMD Navi 21\/23", "Monitor": "LQ156M1JW25", "Network": "Realtek RTL8111\/8168\/8411 + MEDIATEK MT7921 802.11ax PCI" }, "software": { "OS": "Ubuntu 22.10", "Kernel": "5.19.0-41-generic (x86_64)", "Desktop": "GNOME Shell 43.0", "Display Server": "X Server 1.21.1.4 + Wayland", "OpenGL": "4.6 Mesa 22.2.5 (LLVM 15.0.2 DRM 3.47)", "Vulkan": "1.3.224", "Compiler": "GCC 12.2.0", "File-System": "ext4", "Screen Resolution": "1920x1080" }, "user": "phoronix", "timestamp": "2023-05-11 05:19:55", "client_version": "10.8.4", "data": { "compiler-configuration": "--build=x86_64-linux-gnu --disable-vtable-verify --disable-werror --enable-cet --enable-checking=release --enable-clocale=gnu --enable-default-pie --enable-gnu-unique-object --enable-languages=c,ada,c++,go,d,fortran,objc,obj-c++,m2 --enable-libphobos-checking=release --enable-libstdcxx-debug --enable-libstdcxx-time=yes --enable-multiarch --enable-multilib --enable-nls --enable-objc-gc=auto --enable-offload-defaulted --enable-offload-targets=nvptx-none=\/build\/gcc-12-U8K4Qv\/gcc-12-12.2.0\/debian\/tmp-nvptx\/usr,amdgcn-amdhsa=\/build\/gcc-12-U8K4Qv\/gcc-12-12.2.0\/debian\/tmp-gcn\/usr --enable-plugin --enable-shared --enable-threads=posix --host=x86_64-linux-gnu --program-prefix=x86_64-linux-gnu- --target=x86_64-linux-gnu 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-lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: ModuleNotFoundError: No module named 'glmnet'" } }, "b": { "test_run_times": [ 0.34999999999999997779553950749686919152736663818359375, 0.340000000000000024424906541753443889319896697998046875, 0.340000000000000024424906541753443889319896697998046875 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: ModuleNotFoundError: No module named 'glmnet'" } }, "c": { "test_run_times": [ 0.34999999999999997779553950749686919152736663818359375, 0.340000000000000024424906541753443889319896697998046875, 0.34999999999999997779553950749686919152736663818359375 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: ModuleNotFoundError: No module named 'glmnet'" } } } }, "73d95696995fe15d266a22c3dd2be8b7d68c6bfe": { "identifier": "pts\/scikit-learn-2.0.0", "title": "Scikit-Learn", "app_version": "1.2.2", "arguments": "sparsify.py", "description": "Benchmark: Sparsify", "scale": "Seconds", "proportion": "LIB", "display_format": "BAR_GRAPH", "results": { "a": { "value": 114.7450000000000045474735088646411895751953125, "raw_values": [ 113.929000000000002046363078989088535308837890625, 114.66599999999999681676854379475116729736328125, 115.6400000000000005684341886080801486968994140625 ], "test_run_times": [ 114.2699999999999960209606797434389591217041015625, 113.93000000000000682121026329696178436279296875, 114.6700000000000017053025658242404460906982421875, 115.6400000000000005684341886080801486968994140625 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" } } }, "b": { "value": 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-fno-tree-vectorize -lm -lpthread -lgfortran -lc" } } } } }, "ed44b3bb5383f263e9d8ae1c7656ef0c8374a497": { "identifier": "pts\/scikit-learn-2.0.0", "title": "Scikit-Learn", "app_version": "1.2.2", "arguments": "online_ocsvm.py", "description": "Benchmark: SGDOneClassSVM", "scale": "Seconds", "proportion": "LIB", "display_format": "BAR_GRAPH", "results": { "a": { "test_run_times": [ 0.59999999999999997779553950749686919152736663818359375, 0.57999999999999996003197111349436454474925994873046875, 0.58999999999999996891375531049561686813831329345703125 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: OSError: The cache for fetch_kddcup99 is invalid, please delete \/home\/phoronix\/scikit_learn_data\/kddcup99-py3 and run the fetch_kddcup99 again" } }, "b": { "test_run_times": [ 0.59999999999999997779553950749686919152736663818359375, 0.58999999999999996891375531049561686813831329345703125, 0.58999999999999996891375531049561686813831329345703125 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: OSError: The cache for fetch_kddcup99 is invalid, please delete \/home\/phoronix\/scikit_learn_data\/kddcup99-py3 and run the fetch_kddcup99 again" } }, "c": { "test_run_times": [ 0.60999999999999998667732370449812151491641998291015625, 0.58999999999999996891375531049561686813831329345703125, 0.57999999999999996003197111349436454474925994873046875 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: OSError: The cache for fetch_kddcup99 is invalid, please delete \/home\/phoronix\/scikit_learn_data\/kddcup99-py3 and run the fetch_kddcup99 again" } } } }, "28b1b20731171aac5a2c58f51dec271541d6ac80": { "identifier": "pts\/scikit-learn-2.0.0", "title": "Scikit-Learn", "app_version": "1.2.2", "arguments": "plot_lasso_path.py", "description": "Benchmark: Plot Lasso Path", "scale": "Seconds", "proportion": "LIB", "display_format": "BAR_GRAPH", "results": { "a": { "value": 196.188999999999992951416061259806156158447265625, "raw_values": [ 196.490000000000009094947017729282379150390625, 196.51200000000000045474735088646411895751953125, 195.566000000000002501110429875552654266357421875 ], "test_run_times": [ 197.330000000000012505552149377763271331787109375, 196.490000000000009094947017729282379150390625, 196.509999999999990905052982270717620849609375, 195.56999999999999317878973670303821563720703125 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" } } }, "b": { "value": 194.41599999999999681676854379475116729736328125, "raw_values": [ 194.073000000000007503331289626657962799072265625, 194.655000000000001136868377216160297393798828125, 194.519000000000005456968210637569427490234375 ], "test_run_times": [ 195.5, 194.06999999999999317878973670303821563720703125, 194.650000000000005684341886080801486968994140625, 194.520000000000010231815394945442676544189453125 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" } } }, "c": { "value": 194.465000000000003410605131648480892181396484375, "raw_values": [ 194.818999999999988403942552395164966583251953125, 195.167000000000001591615728102624416351318359375, 193.409999999999996589394868351519107818603515625 ], "test_run_times": [ 193.05000000000001136868377216160297393798828125, 194.81999999999999317878973670303821563720703125, 195.169999999999987494447850622236728668212890625, 193.409999999999996589394868351519107818603515625 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" } } } } }, "25540795787dee5964af5bc291deddcfed0eb726": { "identifier": "pts\/scikit-learn-2.0.0", "title": "Scikit-Learn", "app_version": "1.2.2", "arguments": "isolation_forest.py", "description": "Benchmark: Isolation Forest", "scale": "Seconds", "proportion": "LIB", "display_format": "BAR_GRAPH", "results": { "a": { "test_run_times": [ 0.7399999999999999911182158029987476766109466552734375, 0.729999999999999982236431605997495353221893310546875, 0.7399999999999999911182158029987476766109466552734375 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: OSError: The cache for fetch_kddcup99 is invalid, please delete \/home\/phoronix\/scikit_learn_data\/kddcup99-py3 and run the fetch_kddcup99 again" } }, "b": { "test_run_times": [ 0.7399999999999999911182158029987476766109466552734375, 0.6999999999999999555910790149937383830547332763671875, 0.7199999999999999733546474089962430298328399658203125 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: OSError: The cache for fetch_kddcup99 is invalid, please delete \/home\/phoronix\/scikit_learn_data\/kddcup99-py3 and run the fetch_kddcup99 again" } }, "c": { "test_run_times": [ 0.7199999999999999733546474089962430298328399658203125, 0.7199999999999999733546474089962430298328399658203125, 0.70999999999999996447286321199499070644378662109375 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status. E: OSError: The cache for fetch_kddcup99 is invalid, please delete \/home\/phoronix\/scikit_learn_data\/kddcup99-py3 and run the fetch_kddcup99 again" } } } }, "8174ce61c42810468f08ad8d0bde12d251b635fc": { "identifier": "pts\/scikit-learn-2.0.0", "title": "Scikit-Learn", "app_version": "1.2.2", "arguments": "plot_fastkmeans.py", "description": "Benchmark: Plot Fast KMeans", "scale": "Seconds", "proportion": "LIB", "display_format": "BAR_GRAPH", "results": { "a": { "test_run_times": [ 234.960000000000007958078640513122081756591796875, 226.68999999999999772626324556767940521240234375, 230.18000000000000682121026329696178436279296875 ], "details": { "compiler-options": { "compiler-type": "F9X", "compiler": "gfortran", "compiler-options": "-O3 -fopenmp -fno-tree-vectorize -lm -lpthread -lgfortran -lc" }, "error": "The test quit with a non-zero exit status." } }, "b": { "test_run_times": [ 232.599999999999994315658113919198513031005859375, 227.31000000000000227373675443232059478759765625, 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