### What this PR does / why we need it?
This PR add docs of batch invariance and make some extra operators
according to validation result.
please see https://github.com/vllm-project/vllm-ascend/issues/5487 to
track progress.
### Does this PR introduce _any_ user-facing change?
No
### How was this patch tested?
- vLLM version: v0.16.0
- vLLM main:
15d76f74e2
---------
Signed-off-by: Ronald1995 <ronaldautomobile@163.com>
225 lines
9.7 KiB
Python
225 lines
9.7 KiB
Python
# Copyright (c) 2026 Huawei Technologies Co., Ltd. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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# This file is a part of the vllm-ascend project.
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#
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# type: ignore
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import os
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from unittest.mock import MagicMock, patch
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import pytest
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import torch
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# Now import the module under test
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import vllm_ascend.batch_invariant as batch_invariant
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class TestBatchInvariant:
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"""Complete test suite for batch_invariant.py"""
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def test_override_envs_for_invariance(self):
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"""Test environment variable override"""
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# Clear environment variables
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env_vars = ["VLLM_ASCEND_ENABLE_NZ", "HCCL_DETERMINISTIC", "LCCL_DETERMINISTIC"]
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for var in env_vars:
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if var in os.environ:
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del os.environ[var]
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# Call function
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batch_invariant.override_envs_for_invariance()
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# Verify environment variables
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assert os.environ["VLLM_ASCEND_ENABLE_NZ"] == "0"
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assert os.environ["HCCL_DETERMINISTIC"] == "strict"
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assert os.environ["LCCL_DETERMINISTIC"] == "1"
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@patch("vllm_ascend.batch_invariant.HAS_TRITON", False)
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@patch("vllm_ascend.batch_invariant.HAS_ASCENDC_BATCH_INVARIANT", True)
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def test_enable_batch_invariant_mode_ascendc_path(self):
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"""Test enable_batch_invariant_mode with AscendC ops available"""
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# Mock dependencies
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mock_library = MagicMock()
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batch_invariant.torch.library.Library = MagicMock(return_value=mock_library)
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batch_invariant.torch.ops.batch_invariant_ops = MagicMock()
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# Call function
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batch_invariant.enable_batch_invariant_mode()
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# Verify library created
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batch_invariant.torch.library.Library.assert_called_once_with("aten", "IMPL")
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# Verify operator registrations
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assert mock_library.impl.call_count == 3
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mock_library.impl.assert_any_call(
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"aten::mm", batch_invariant.torch.ops.batch_invariant_ops.npu_mm_batch_invariant, "NPU"
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)
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mock_library.impl.assert_any_call(
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"aten::matmul", batch_invariant.torch.ops.batch_invariant_ops.npu_matmul_batch_invariant, "NPU"
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)
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mock_library.impl.assert_any_call(
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"aten::sum", batch_invariant.torch.ops.batch_invariant_ops.npu_reduce_sum_batch_invariant, "NPU"
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)
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# Verify torch_npu function patching
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assert (
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batch_invariant.torch_npu.npu_fused_infer_attention_score
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== batch_invariant.torch.ops.batch_invariant_ops.npu_fused_infer_attention_score_batch_invariant
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)
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@patch("vllm_ascend.batch_invariant.HAS_TRITON", True)
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@patch("vllm_ascend.batch_invariant.HAS_ASCENDC_BATCH_INVARIANT", False)
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def test_enable_batch_invariant_mode_triton_path(self):
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"""Test enable_batch_invariant_mode with only Triton available"""
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# Mock dependencies
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mock_library = MagicMock()
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batch_invariant.torch.library.Library = MagicMock(return_value=mock_library)
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# Mock triton imports
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batch_invariant.addmm_batch_invariant = MagicMock()
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batch_invariant.bmm_batch_invariant = MagicMock()
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batch_invariant.mm_batch_invariant = MagicMock()
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batch_invariant.matmul_batch_invariant = MagicMock()
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batch_invariant.linear_batch_invariant = MagicMock()
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batch_invariant.softmax_batch_invariant = MagicMock()
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# Call function
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batch_invariant.enable_batch_invariant_mode()
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# Verify operator registrations
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assert mock_library.impl.call_count == 7
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mock_library.impl.assert_any_call("aten::addmm", batch_invariant.addmm_batch_invariant, "NPU")
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mock_library.impl.assert_any_call("aten::bmm", batch_invariant.bmm_batch_invariant, "NPU")
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mock_library.impl.assert_any_call("aten::mm", batch_invariant.mm_batch_invariant, "NPU")
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mock_library.impl.assert_any_call("aten::matmul", batch_invariant.matmul_batch_invariant, "NPU")
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mock_library.impl.assert_any_call("aten::linear", batch_invariant.linear_batch_invariant, "NPU")
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mock_library.impl.assert_any_call("aten::softmax", batch_invariant.softmax_batch_invariant, "NPU")
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mock_library.impl.assert_any_call("aten::_softmax", batch_invariant.softmax_batch_invariant, "NPU")
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@patch("vllm_ascend.batch_invariant.HAS_TRITON", False)
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@patch("vllm_ascend.batch_invariant.HAS_ASCENDC_BATCH_INVARIANT", False)
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def test_enable_batch_invariant_mode_no_backend(self):
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"""Test enable_batch_invariant_mode with no backends available"""
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# Mock library
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mock_library = MagicMock()
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batch_invariant.torch.library.Library = MagicMock(return_value=mock_library)
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# Call function
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batch_invariant.enable_batch_invariant_mode()
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# Verify no operators registered
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mock_library.impl.assert_not_called()
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@pytest.mark.parametrize(
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"batch_invariant_enabled, has_backend, expected_logger_call",
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[(True, True, "info"), (True, False, "warning"), (False, True, None), (False, False, None)],
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)
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def test_init_batch_invariance(self, batch_invariant_enabled, has_backend, expected_logger_call):
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"""Test init_batch_invariance under different conditions"""
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# Mock dependencies
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batch_invariant.vllm_is_batch_invariant = MagicMock(return_value=batch_invariant_enabled)
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batch_invariant.HAS_TRITON = has_backend
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batch_invariant.HAS_ASCENDC_BATCH_INVARIANT = has_backend
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batch_invariant.override_envs_for_invariance = MagicMock()
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batch_invariant.enable_batch_invariant_mode = MagicMock()
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# Call function
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batch_invariant.init_batch_invariance()
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# Verify function calls based on conditions
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if batch_invariant_enabled and has_backend:
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batch_invariant.override_envs_for_invariance.assert_called_once()
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batch_invariant.enable_batch_invariant_mode.assert_called_once()
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elif batch_invariant_enabled and not has_backend:
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batch_invariant.override_envs_for_invariance.assert_not_called()
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batch_invariant.enable_batch_invariant_mode.assert_not_called()
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else:
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batch_invariant.override_envs_for_invariance.assert_not_called()
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batch_invariant.enable_batch_invariant_mode.assert_not_called()
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@patch("vllm_ascend.batch_invariant.torch_npu")
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def test_add_rms_norm(self, mock_torch_npu):
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"""Test add_rms_norm function"""
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# Mock dependencies
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mock_torch = batch_invariant.torch
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# Create mock tensors
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batch_size = 2
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hidden_size = 4
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x = MagicMock(spec=torch.Tensor)
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residual = MagicMock(spec=torch.Tensor)
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weight = MagicMock(spec=torch.Tensor)
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eps = 1e-6
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# Set up mock return value for addition
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x_plus_residual = MagicMock(spec=torch.Tensor)
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x.__add__.return_value = x_plus_residual
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# Set up expected outputs from npu_rms_norm
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expected_output = MagicMock(spec=torch.Tensor)
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expected_residual = MagicMock(spec=torch.Tensor)
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mock_torch_npu.npu_rms_norm.return_value = (expected_output, expected_residual)
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# Call the function
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result_x, result_placeholder, result_residual = batch_invariant.add_rms_norm(x, residual, weight, eps)
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# Verify the addition was called
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x.__add__.assert_called_once_with(residual)
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# Verify the npu_rms_norm was called with the correct parameters
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mock_torch_npu.npu_rms_norm.assert_called_once_with(x_plus_residual, weight, eps)
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# Verify the results
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assert result_x is expected_output
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assert result_placeholder is None
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@patch("vllm_ascend.batch_invariant.torch_npu")
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def test_add_rms_norm_consistency(self, mock_torch_npu):
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"""Test that add_rms_norm produces the same output as torch_npu.npu_add_rms_norm"""
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# Create mock tensors
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batch_size = 2
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hidden_size = 4
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x = MagicMock(spec=torch.Tensor)
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residual = MagicMock(spec=torch.Tensor)
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weight = MagicMock(spec=torch.Tensor)
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eps = 1e-6
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# Set up mock values
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x_plus_residual = MagicMock(spec=torch.Tensor)
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x.__add__.return_value = x_plus_residual
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# Define consistent mock results
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expected_output = MagicMock(spec=torch.Tensor)
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expected_residual = MagicMock(spec=torch.Tensor)
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# Set up mock_npu_rms_norm to return the same results as if it were npu_add_rms_norm
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mock_torch_npu.npu_rms_norm.return_value = (expected_output, expected_residual)
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mock_torch_npu.npu_add_rms_norm.return_value = (expected_output, None, expected_residual)
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# Call add_rms_norm
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add_rms_norm_result = batch_invariant.add_rms_norm(x, residual, weight, eps)
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# Call npu_add_rms_norm directly
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npu_add_rms_norm_result = mock_torch_npu.npu_add_rms_norm(x, residual, weight, eps)
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# Verify both functions return the same results
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assert add_rms_norm_result[0] == npu_add_rms_norm_result[0]
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# Verify the function composition is correct
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x.__add__.assert_called_once_with(residual)
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mock_torch_npu.npu_rms_norm.assert_called_once_with(x_plus_residual, weight, eps)
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mock_torch_npu.npu_add_rms_norm.assert_called_once_with(x, residual, weight, eps)
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if __name__ == "__main__":
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pytest.main([__file__])
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