Intel Core i7-1065G7 testing with a Dell 06CDVY (1.0.9 BIOS) and Intel Iris Plus ICL GT2 16GB on Ubuntu 23.04 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 2311164-NE-PYTORCHIC86
{
"title": "pytorch icelake",
"last_modified": "2023-11-16 18:57:46",
"description": "Intel Core i7-1065G7 testing with a Dell 06CDVY (1.0.9 BIOS) and Intel Iris Plus ICL GT2 16GB on Ubuntu 23.04 via the Phoronix Test Suite.",
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"Graphics": "Intel Iris Plus ICL GT2 16GB (1100MHz)",
"Audio": "Realtek ALC289",
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},
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"timestamp": "2023-11-16 14:26:28",
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