forked from EngineX-Cambricon/enginex-mlu370-vllm
add qwen3
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from typing import Optional, Tuple
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import torch
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from vllm import _custom_ops as ops
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from vllm.model_executor.layers.quantization.utils.quant_utils import (
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pack_quantized_values_into_int32)
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from vllm.model_executor.parameter import (BasevLLMParameter,
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permute_param_layout_)
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from vllm.scalar_type import scalar_types
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from .MPLinearKernel import MPLinearKernel, MPLinearLayerConfig
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class ExllamaLinearKernel(MPLinearKernel):
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SUPPORTED_QUANT_TYPES = [scalar_types.uint4b8, scalar_types.uint8b128]
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# In theory supports `scalar_types.uint2b2, scalar_types.uint3b4` too but
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# currently untested so not added to the list
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@classmethod
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def get_min_capability(cls) -> int:
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return 60
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@classmethod
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def can_implement(cls,
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c: MPLinearLayerConfig) -> Tuple[bool, Optional[str]]:
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if c.has_g_idx and\
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c.partition_weight_shape[0] != c.full_weight_shape[0]:
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return False, "Act reordering currently not supported by Exllama, "\
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"when the input features are partitioned across "\
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"devices"
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if c.partition_weight_shape[1] % (32 // c.weight_type.size_bits) != 0:
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return False, "Output features must be a multiple of the pack " \
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"factor (32 / num_bits) so that we can correctly " \
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"pack the zero points"
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if c.act_type != torch.float16:
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return False, "Exllama only supports float16 activations"
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if c.weight_type not in cls.SUPPORTED_QUANT_TYPES:
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return False, f"Quant type ({c.weight_type}) not supported by "\
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"Exllama, supported types are: "\
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f"{cls.SUPPORTED_QUANT_TYPES}"
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if c.full_weight_shape[0] % c.group_size != 0:
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return False, f"Group size ({c.group_size}) does not evenly divide"\
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" the number of input features "\
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f"({c.full_weight_shape[0]})"
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return True, None
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def process_weights_after_loading(self, layer: torch.nn.Module):
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c = self.config
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# For Exllama, we need to set a zero-point tensor if there is not one
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if not c.zero_points:
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self.w_zp_name = "qzeros"
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device = getattr(layer, self.w_q_name).device
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groups = c.partition_weight_shape[0] // c.group_size
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out_features = c.partition_weight_shape[1]
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if c.weight_type.has_bias():
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# if the type has a bias we have to create a zeros tensor that
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# contains the bias values repeated for each group (-1 due to
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# a bug in the original GPTQ checkpoint format leading to
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# exllama kernel adding 1 to the zero points during inference)
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# Documentation of the bug can be found here:
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# https://garden.danieldk.eu/GPTQ-Checkpoint-Format
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zeros = torch.full((groups, out_features),
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c.weight_type.bias - 1,
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dtype=torch.int32,
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device=device)
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else:
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raise NotImplementedError(
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"A 0 zero-point is not supported by Exllama due to "
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"a bug in the original GPTQ checkpoint format leading to "
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"exllama kernel adding 1 to the zero points during "
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"inference")
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zeros = pack_quantized_values_into_int32(zeros,
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c.weight_type,
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packed_dim=1)
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setattr(layer, self.w_zp_name,
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torch.nn.Parameter(zeros, requires_grad=False))
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if c.has_g_idx:
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def transform_w_g_idx(x):
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# Exllama wants the permutation array instead of the group
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# indices
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return torch.argsort(x).to(torch.int)
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self._transform_param(layer, self.w_gidx_name, transform_w_g_idx)
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else:
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self.w_gidx_name = "g_idx"
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empty_g_idx = torch.nn.Parameter(torch.empty((0, ),
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dtype=torch.int,
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device=device),
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requires_grad=False)
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setattr(layer, self.w_gidx_name, empty_g_idx)
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def transform_w_q(x):
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assert isinstance(x, BasevLLMParameter)
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assert self.w_gidx_name is not None
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g_idx = getattr(layer, self.w_gidx_name)
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permute_param_layout_(x, input_dim=0, output_dim=1, packed_dim=0)
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x_cont = x.data.contiguous()
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ops.gptq_shuffle(x_cont, g_idx, c.weight_type.size_bits)
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return x_cont
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def transform_w_s(x):
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assert isinstance(x, BasevLLMParameter)
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permute_param_layout_(x, input_dim=0, output_dim=1)
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x.data = x.data.contiguous()
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return x.to(dtype=c.act_type)
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# Repack weights and scales for Machete
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self._transform_param(layer, self.w_q_name, transform_w_q)
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self._transform_param(layer, self.w_s_name, transform_w_s)
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def apply_weights(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) -> torch.Tensor:
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c = self.config
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x_2d = x.reshape(-1, x.shape[-1])
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out_shape = x.shape[:-1] + (c.partition_weight_shape[1], )
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w_q, w_s, w_zp, w_g_idx = self._get_weight_params(layer)
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assert w_zp is not None, "Zero points are required by Exllama"
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assert w_g_idx is not None, "Group index is required by Exllama"
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output = ops.gptq_gemm(x_2d, w_q, w_zp, w_s, w_g_idx, True,
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c.weight_type.size_bits)
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if bias is not None:
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output.add_(bias)
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return output.reshape(out_shape)
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