### Summary
This PR refactors the `vllm_ascend/quantization` module to improve code
organization, maintainability, and extensibility. The refactoring
introduces a clear separation of concerns with a registry-based scheme
discovery pattern, abstract base classes for quantization schemes, and
dedicated wrapper classes.
### Key Changes
#### 1. **Modular Directory Structure**
| Before | After |
|--------|-------|
| Flat file structure with mixed responsibilities | Organized into
`methods/` subpackage for schemes |
| Single `quant_config.py` (600+ lines) | Separate config files:
`modelslim_config.py`, `compressed_tensors_config.py` |
| `utils.py` with scheme lookup logic | `methods/registry.py` with
decorator-based registration |
#### 2. **Registry-Based Scheme Discovery**
Replaced hardcoded `ASCEND_QUANTIZATION_METHOD_MAP` dictionary with a
decorator-based registry pattern:
```python
# Before: Manual dictionary mapping
ASCEND_QUANTIZATION_METHOD_MAP = {
"W8A8_DYNAMIC": {"linear": AscendW8A8DynamicLinearMethod, ...},
...
}
# After: Decorator-based registration
@register_scheme("W8A8_DYNAMIC", "linear")
class AscendW8A8DynamicLinearMethod(AscendLinearScheme):
...
```
#### 3. **Abstract Base Classes**
Introduced three abstract base classes in `methods/base.py`:
- `AscendLinearScheme` - Base for linear layer quantization
- `AscendMoEScheme` - Base for MoE layer quantization
- `AscendAttentionScheme` - Base for attention layer quantization
#### 4. **Separated Config and Wrapper Classes**
- **Config classes** (`AscendModelSlimConfig`,
`AscendCompressedTensorsConfig`): Handle config parsing and scheme
selection
- **Wrapper classes** (`AscendLinearMethod`, `AscendFusedMoEMethod`,
etc.): Implement vLLM interfaces and delegate to schemes
#### 5. **Cleaner Public API**
```python
# New clean module interface
from vllm_ascend.quantization import (
AscendModelSlimConfig,
AscendCompressedTensorsConfig,
)
from vllm_ascend.quantization.methods import get_scheme_class
```
### Architecture Diagram
```mermaid
classDiagram
direction TB
class QuantizationConfig {
<<vLLM Interface>>
+get_quant_method()
}
class AscendModelSlimConfig {
+quant_description
+get_quant_method()
-create_scheme_for_layer()
}
class AscendCompressedTensorsConfig {
+target_scheme_map
+get_quant_method()
-_get_scheme_from_parts()
}
class AscendLinearMethod {
<<Wrapper>>
+quant_method: AscendLinearScheme
+create_weights()
+apply()
}
class AscendFusedMoEMethod {
<<Wrapper>>
+quant_method: AscendMoEScheme
+create_weights()
+apply()
}
class AscendLinearScheme {
<<Abstract>>
+get_weight()*
+apply()*
+get_pertensor_param()
+get_perchannel_param()
}
class AscendMoEScheme {
<<Abstract>>
+get_weight()*
+get_dynamic_quant_param()*
+apply()*
}
class W8A8DynamicLinear {
+get_weight()
+apply()
}
class W8A8DynamicMoE {
+get_weight()
+apply()
}
QuantizationConfig <|-- AscendModelSlimConfig
QuantizationConfig <|-- AscendCompressedTensorsConfig
AscendModelSlimConfig ..> AscendLinearMethod : creates
AscendModelSlimConfig ..> AscendFusedMoEMethod : creates
AscendCompressedTensorsConfig ..> AscendLinearMethod : creates
AscendCompressedTensorsConfig ..> AscendFusedMoEMethod : creates
AscendLinearMethod o-- AscendLinearScheme : delegates to
AscendFusedMoEMethod o-- AscendMoEScheme : delegates to
AscendLinearScheme <|-- W8A8DynamicLinear
AscendMoEScheme <|-- W8A8DynamicMoE
```
### Scheme Registration Flow
```mermaid
sequenceDiagram
participant Module as Scheme Module
participant Registry as _SCHEME_REGISTRY
participant Config as QuantConfig
participant Wrapper as Wrapper Class
Note over Module: At import time
Module->>Registry: @register_scheme("W8A8_DYNAMIC", "linear")
Registry->>Registry: Store (quant_type, layer_type) -> Class
Note over Config: At runtime
Config->>Config: Determine quant_type from description
Config->>Registry: get_scheme_class(quant_type, layer_type)
Registry-->>Config: Return scheme class
Config->>Config: scheme = scheme_cls()
Config->>Wrapper: Create wrapper with scheme
Wrapper-->>Config: Return wrapper instance
```
### File Changes Summary
| Original Files | Refactored Files |
|----------------|------------------|
| `__init__.py` (empty) | `__init__.py` (exports public API) |
| `quant_config.py` | `modelslim_config.py` + `wrappers.py` |
| `compressed_tensors/` | `compressed_tensors_config.py` |
| `utils.py` | `methods/registry.py` |
| `w8a8_dynamic.py` | `methods/w8a8_dynamic.py` |
| `w8a8.py` | `methods/w8a8_static.py` |
| `w4a4_flatquant_dynamic.py` | `methods/w4a4_flatquant.py` |
| ... | `methods/base.py` (new) |
### Benefits
1. **Extensibility**: Adding new quantization schemes only requires
implementing the base class and adding `@register_scheme` decorator
2. **Maintainability**: Clear separation between config parsing, wrapper
logic, and scheme implementation
3. **Testability**: Abstract base classes enable easier unit testing and
mocking
4. **Discoverability**: Registry pattern makes it easy to list all
supported schemes
5. **Reduced Coupling**: Config classes no longer need to know about all
scheme implementations
___
- vLLM version: v0.13.0
- vLLM main:
2f4e6548ef
---------
Signed-off-by: SlightwindSec <slightwindsec@gmail.com>
118 lines
4.6 KiB
Python
118 lines
4.6 KiB
Python
#
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# Copyright (c) 2025 Huawei Technologies Co., Ltd. All Rights Reserved.
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# This file is a part of the vllm-ascend project.
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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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#
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"""W8A8 Prefill-Decode Mix quantization methods.
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This module provides quantization methods that use different strategies
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for prefill and decode phases:
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- Prefill: Uses dynamic W8A8 quantization
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- Decode (KV consumer): Uses static W8A8 quantization
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"""
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from typing import Any, Dict, Optional
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import torch
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from vllm.config import get_current_vllm_config
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from .base import AscendLinearScheme
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from .registry import register_scheme
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from .w8a8_dynamic import (AscendW8A8DynamicFusedMoEMethod,
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AscendW8A8DynamicLinearMethod)
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from .w8a8_static import AscendW8A8LinearMethod
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@register_scheme("W8A8_MIX", "linear")
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class AscendW8A8PDMixLinearMethod(AscendLinearScheme):
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"""Linear method for W8A8 prefill-decode mix quantization.
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This scheme uses composition to delegate to the appropriate quantization
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method based on the execution phase:
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- Static W8A8 for KV consumer (decode phase)
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- Dynamic W8A8 for prefill phase
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The static method is used for weight/parameter specifications since
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it requires more parameters (input_scale, deq_scale, etc.) that are
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needed for static quantization during decode.
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"""
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def __init__(self):
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self._static_method = AscendW8A8LinearMethod()
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self._dynamic_method = AscendW8A8DynamicLinearMethod()
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kv_transfer_config = get_current_vllm_config().kv_transfer_config
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self._is_kv_consumer = (kv_transfer_config is not None
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and kv_transfer_config.is_kv_consumer)
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def get_weight(self, input_size: int, output_size: int,
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params_dtype: torch.dtype) -> Dict[str, Any]:
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return self._static_method.get_weight(input_size, output_size,
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params_dtype)
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def get_pertensor_param(self, params_dtype: torch.dtype) -> Dict[str, Any]:
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return self._static_method.get_pertensor_param(params_dtype)
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def get_perchannel_param(
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self,
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output_size: int,
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params_dtype: torch.dtype,
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) -> Dict[str, Any]:
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return self._static_method.get_perchannel_param(
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output_size, params_dtype)
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def apply(
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self,
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layer: torch.nn.Module,
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x: torch.Tensor,
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bias: Optional[torch.Tensor] = None,
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tp_rank: Optional[int] = 0,
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) -> torch.Tensor:
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if layer.is_kv_consumer:
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return self._static_method.apply(layer, x, bias, tp_rank)
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else:
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return self._dynamic_method.apply(layer, x, bias, tp_rank)
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def process_weights_after_loading(self, layer: torch.nn.Module) -> None:
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self._static_method.process_weights_after_loading(layer)
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layer.weight_scale_fp32 = layer.weight_scale.data.to(torch.float32)
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layer.is_kv_consumer = self._is_kv_consumer
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@register_scheme("W8A8_MIX", "moe")
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class AscendW8A8PDMixFusedMoeMethod(AscendW8A8DynamicFusedMoEMethod):
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def get_dynamic_quant_param(self, num_experts: int,
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intermediate_size_per_partition: int,
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hidden_sizes: int,
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params_dtype: torch.dtype) -> Dict[str, Any]:
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param_dict = super().get_dynamic_quant_param(
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num_experts, intermediate_size_per_partition, hidden_sizes,
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params_dtype)
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param_dict["w2_deq_scale"] = torch.empty(num_experts,
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hidden_sizes,
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dtype=torch.float32)
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param_dict["w13_deq_scale"] = torch.empty(
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num_experts,
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2 * intermediate_size_per_partition,
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dtype=torch.float32)
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param_dict["w2_input_offset"] = torch.empty(num_experts,
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1,
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dtype=torch.int8)
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param_dict["w13_input_offset"] = torch.empty(num_experts,
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1,
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dtype=torch.int8)
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return param_dict
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