fix UT failures on XPU w/ stock PyTorch 2.7 & 2.8 (#39116)
* fix UT failures on XPU w/ stock PyTorch 2.7 & 2.8 Signed-off-by: YAO Matrix <matrix.yao@intel.com> * zamba2 Signed-off-by: YAO Matrix <matrix.yao@intel.com> * xx Signed-off-by: YAO Matrix <matrix.yao@intel.com> * internvl Signed-off-by: YAO Matrix <matrix.yao@intel.com> * tp cases Signed-off-by: YAO Matrix <matrix.yao@intel.com> --------- Signed-off-by: YAO Matrix <matrix.yao@intel.com>
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@@ -520,14 +520,14 @@ class Pipeline4BitTest(Base4bitTest):
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@require_torch_multi_accelerator
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@apply_skip_if_not_implemented
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class Bnb4bitTestMultiGpu(Base4bitTest):
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class Bnb4bitTestMultiAccelerator(Base4bitTest):
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def setUp(self):
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super().setUp()
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def test_multi_gpu_loading(self):
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def test_multi_accelerator_loading(self):
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r"""
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This tests that the model has been loaded and can be used correctly on a multi-GPU setup.
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Let's just try to load a model on 2 GPUs and see if it works. The model we test has ~2GB of total, 3GB should suffice
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This tests that the model has been loaded and can be used correctly on a multi-accelerator setup.
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Let's just try to load a model on 2 accelerators and see if it works. The model we test has ~2GB of total, 3GB should suffice
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"""
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device_map = {
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"transformer.word_embeddings": 0,
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