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xc-llm-ascend/tests/ut/ops/test_layernorm.py

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import unittest
from unittest.mock import patch
import pytest
import torch
from pytest_mock import MockerFixture
from vllm.model_executor.layers.layernorm import RMSNorm
from tests.ut.base import PytestBase
from vllm_ascend.quantization.w8a8 import AscendW8A8LinearMethod
[refact] unified soc_version code (#4359) ### What this PR does / why we need it? Currently, there are two paths to judge the chip type in code, `get_ascend_soc_version` use `get_soc_version` api in torch_npu, and `is_310p` `use _build_info.__soc_version__`, which generate when install. We need to unify the two paths. We need to unify these codes based on the following points: 1. We need to ensure consistency in chip type judgment between compiling and running states; 2. In compiling state, we need chip type to complete op's compilation, but in running state, we only need device type(910B/910_93/310P/910_95/etc) to make code branch judgement; 3. In compiling state, torch_npu may not have been installed yet, so we can't use torch_npu's api. Based on the above points, we have made the following changes: 1. When user set env `SOC_VERSION`, use it; when not set, query soc_version by `npu-smi`; 2. generate device_type based on soc_version when compiling, and write `__device_type__` instead of `__soc_version__` in `_build_info.py`; 3. In running state, use `__device_type__` to judge code branch. ### Does this PR introduce _any_ user-facing change? When not set env `SOC_VERSION`, it will not be `ASCEND910B1` by default, we will query soc_version by `npu-smi`. And env `SOC_VERSION` must be in the list `soc_to_device` in `setup.py`. - vLLM version: v0.11.0 - vLLM main: https://github.com/vllm-project/vllm/commit/2918c1b49c88c29783c86f78d2c4221cb9622379 Signed-off-by: zzzzwwjj <1183291235@qq.com>
2025-11-26 14:28:55 +08:00
from vllm_ascend.utils import AscendDeviceType
def mock_rms_norm(x, weight, eps):
return x + 1, None
def mock_add_rms_norm(x, residual, weight, eps):
return 2 * x, None, 2 * residual
def mock_add_rms_norm_quant_with_bias(x, residual, weight, quant_scale,
quant_offset, beta, epsilon):
x_out = 2 * x
residual_out = 2 * residual
x_out_quant = x_out.to(torch.int8)
residual_out_quant = residual_out.to(torch.int8)
return x_out_quant, None, residual_out_quant
class TestAscendRMSNorm(PytestBase):
@pytest.fixture(autouse=True)
def context(self, mocker: MockerFixture):
mocker.patch("torch_npu.npu_rms_norm", side_effect=mock_rms_norm)
mocker.patch("torch_npu.npu_add_rms_norm",
side_effect=mock_add_rms_norm)
mocker.patch("torch_npu.npu_add_rms_norm_quant",
side_effect=mock_add_rms_norm_quant_with_bias)
mocker.patch("torch.ops.vllm.maybe_wait_prefetch_done",
side_effect=lambda x: None)
# Test case for the most common and basic scenario
@pytest.mark.parametrize(
"residual", [None, torch.randn(4, 8, dtype=torch.float16)])
@patch("torch.ops.vllm.maybe_chunk_residual")
def test_forward_oot_basic(self, mock_maybe_chunk_residual, residual):
mock_maybe_chunk_residual.side_effect = lambda x, residual: residual
layer = RMSNorm(hidden_size=8, eps=1e-05)
x = torch.randn(4, 8, dtype=torch.float16)
if residual is not None:
x_out, residual_out = layer.forward_oot(x, residual)
x_out_expected = 2 * x
residual_out_expected = 2 * residual
assert torch.allclose(x_out, x_out_expected)
assert torch.allclose(residual_out, residual_out_expected)
else:
x_out = layer.forward(x, residual)
x_out_expected = x + 1
assert torch.allclose(x_out, x_out_expected)
# Test case for addrmsnorm + w8a8 quant fusion
def test_forward_oot_with_quant_fusion(self, mocker: MockerFixture):
[refact] unified soc_version code (#4359) ### What this PR does / why we need it? Currently, there are two paths to judge the chip type in code, `get_ascend_soc_version` use `get_soc_version` api in torch_npu, and `is_310p` `use _build_info.__soc_version__`, which generate when install. We need to unify the two paths. We need to unify these codes based on the following points: 1. We need to ensure consistency in chip type judgment between compiling and running states; 2. In compiling state, we need chip type to complete op's compilation, but in running state, we only need device type(910B/910_93/310P/910_95/etc) to make code branch judgement; 3. In compiling state, torch_npu may not have been installed yet, so we can't use torch_npu's api. Based on the above points, we have made the following changes: 1. When user set env `SOC_VERSION`, use it; when not set, query soc_version by `npu-smi`; 2. generate device_type based on soc_version when compiling, and write `__device_type__` instead of `__soc_version__` in `_build_info.py`; 3. In running state, use `__device_type__` to judge code branch. ### Does this PR introduce _any_ user-facing change? When not set env `SOC_VERSION`, it will not be `ASCEND910B1` by default, we will query soc_version by `npu-smi`. And env `SOC_VERSION` must be in the list `soc_to_device` in `setup.py`. - vLLM version: v0.11.0 - vLLM main: https://github.com/vllm-project/vllm/commit/2918c1b49c88c29783c86f78d2c4221cb9622379 Signed-off-by: zzzzwwjj <1183291235@qq.com>
2025-11-26 14:28:55 +08:00
mock_soc_version = mocker.patch(
"vllm_ascend.utils.get_ascend_device_type")
mock_soc_version.return_value = AscendDeviceType._910_93
mock_get_forward_context = mocker.patch(
"vllm_ascend.ops.layernorm.get_forward_context")
# Simulating a scenario with quant_fusion enabled
mock_forward_context = mocker.MagicMock()
mock_model_instance = mocker.MagicMock()
mock_forward_context.model_instance = mock_model_instance
num_hidden_layers = 3
mock_model_instance.model.layers = [
mocker.MagicMock() for _ in range(num_hidden_layers)
]
mock_layer_0 = mock_model_instance.model.layers[0]
mock_layer_0.self_attn.qkv_proj = mocker.MagicMock()
mock_layer_0.mlp.gate_up_proj = mocker.MagicMock()
mock_layer_1 = mock_model_instance.model.layers[1]
mock_layer_1.self_attn.qkv_proj = mocker.MagicMock()
mock_layer_1.mlp.gate_up_proj = mocker.MagicMock()
mock_quant_method_0_qkv = mocker.MagicMock()
mock_quant_method_0_qkv.quant_method = AscendW8A8LinearMethod()
mock_quant_method_0_gate_up = mocker.MagicMock()
mock_quant_method_0_gate_up.quant_method = AscendW8A8LinearMethod()
mock_layer_0.self_attn.qkv_proj.quant_method = mock_quant_method_0_qkv
mock_layer_0.mlp.gate_up_proj.quant_method = mock_quant_method_0_gate_up
mock_quant_method_1_qkv = mocker.MagicMock()
mock_quant_method_1_qkv.quant_method = AscendW8A8LinearMethod()
mock_quant_method_1_gate_up = mocker.MagicMock()
mock_quant_method_1_gate_up.quant_method = AscendW8A8LinearMethod()
mock_layer_1.self_attn.qkv_proj.quant_method = mock_quant_method_1_qkv
mock_layer_1.mlp.gate_up_proj.quant_method = mock_quant_method_1_gate_up
mock_get_forward_context.return_value = mock_forward_context
mock_forward_context.addrmsnorm_quant_fusion_enabled = True
mock_forward_context.prefetch_mlp_enabled = False
mock_forward_context.layer_idx = 0
mock_forward_context.num_hidden_layers = num_hidden_layers
mock_forward_context.fusion_linear = "gate_up_dense"
mock_forward_context.weight_prefetch_method = None
mocker.patch("torch.ops.vllm.maybe_chunk_residual",
lambda x, residual: residual)
# Ensure fusion and layer_idx increment are handled correctly
x = torch.randn(4, 8, dtype=torch.float16)
residual = torch.randn(4, 8, dtype=torch.float16)
layer = RMSNorm(hidden_size=8, eps=1e-05)
x_out, residual_out = layer.forward_oot(x, residual)
assert mock_get_forward_context.call_count == 2
assert mock_forward_context.fusion_linear == "qkv_dense"
assert mock_forward_context.layer_idx == 1
x_out, residual_out = layer.forward_oot(x, residual)
assert mock_get_forward_context.call_count == 4
assert mock_forward_context.fusion_linear == "gate_up_dense"
assert mock_forward_context.layer_idx == 1
mock_forward_context.fusion_linear = "gate_moe"
x_out, residual_out = layer.forward_oot(x, residual)
assert mock_get_forward_context.call_count == 5
fusion_linear_expected = "qkv_moe"
assert mock_forward_context.fusion_linear == fusion_linear_expected
assert mock_forward_context.layer_idx == 2
x_out, residual_out = layer.forward_oot(x, residual)
assert mock_get_forward_context.call_count == 6
fusion_linear_expected = "gate_moe"
assert mock_forward_context.fusion_linear == fusion_linear_expected
assert mock_forward_context.layer_idx == 2
# last layer returned directly
x_out, residual_out = layer.forward_oot(x, residual)
assert mock_get_forward_context.call_count == 7
assert mock_forward_context.fusion_linear == "qkv_moe"
assert mock_forward_context.layer_idx == 3
x_out, residual_out = layer.forward_oot(x, residual)
assert mock_get_forward_context.call_count == 8
assert mock_forward_context.fusion_linear == "qkv_moe"
assert mock_forward_context.layer_idx == 3
if __name__ == '__main__':
unittest.main()