feat(model): 优化专家输出结构并添加专家偏置支持
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@ -89,12 +89,15 @@ class MoEModel(nn.Module):
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self,
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pretrained_model_name="iic/nlp_structbert_backbone_tiny_std",
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num_classes=10018,
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d_model=1024,
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output_multiplier=2,
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d_model=768,
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num_resblocks=4,
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num_domain_experts=8,
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num_shared_experts=1,
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):
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super().__init__()
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self.output_multiplier = output_multiplier
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# 1. 加载预训练 BERT,仅保留 embeddings
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bert = AutoModel.from_pretrained(pretrained_model_name)
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self.embedding = bert.embeddings
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@ -126,18 +129,36 @@ class MoEModel(nn.Module):
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input_dim=self.hidden_size,
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d_model=d_model,
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num_resblocks=num_resblocks,
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output_multiplier=2, # 输出维度 = 2 * hidden_size
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output_multiplier=self.output_multiplier, # 输出维度 = 2 * hidden_size
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dropout_prob=dropout_prob,
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)
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self.experts.append(expert)
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# 4. 分类头
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self.classifier = nn.Sequential(
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nn.LayerNorm(2 * self.hidden_size), # 专家输出维度
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nn.Dropout(0.1),
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nn.Linear(2 * self.hidden_size, num_classes),
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self.expert_bias = nn.Embedding(
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total_experts, self.output_multiplier * self.hidden_size
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)
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# 4. 分类头
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self.classifier = nn.Sequential(
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nn.LayerNorm(self.output_multiplier * self.hidden_size),
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nn.Linear(
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self.output_multiplier * self.hidden_size,
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self.output_multiplier * self.hidden_size,
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),
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nn.ReLU(inplace=True),
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nn.Linear(
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self.output_multiplier * self.hidden_size,
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self.output_multiplier * self.hidden_size,
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),
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nn.ReLU(inplace=True),
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nn.Linear(
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self.output_multiplier * self.hidden_size,
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self.output_multiplier * self.hidden_size * 2,
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),
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nn.ReLU(inplace=True),
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nn.Dropout(0.2),
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nn.Linear(self.output_multiplier * self.hidden_size * 2, num_classes),
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)
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# 可选:为领域专家和共享专家设置不同权重衰减(通过优化器实现,此处不处理)
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def to(self, device):
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@ -161,7 +182,7 @@ class MoEModel(nn.Module):
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embeddings, src_key_padding_mask=padding_mask
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) # [B, S, H]
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# ----- 3. [CLS] 向量 -----
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# ----- 3. 池化量 -----
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pooled = self.pooler(encoded.transpose(1, 2)).squeeze(-1)
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# ----- 4. 专家路由(硬路由)-----
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@ -171,36 +192,53 @@ class MoEModel(nn.Module):
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group_id = pg.item() if torch.is_tensor(pg) else pg
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if group_id == 0:
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expert_out = self.experts[0](pooled)
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expert_out = self.experts[0](pooled) + self.expert_bias(
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torch.tensor(0, device=pooled.device)
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)
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elif group_id == 1:
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expert_out = self.experts[1](pooled)
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expert_out = self.experts[1](pooled) + self.expert_bias(
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torch.tensor(1, device=pooled.device)
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)
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elif group_id == 2:
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expert_out = self.experts[2](pooled)
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expert_out = self.experts[2](pooled) + self.expert_bias(
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torch.tensor(2, device=pooled.device)
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)
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elif group_id == 3:
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expert_out = self.experts[3](pooled)
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expert_out = self.experts[3](pooled) + self.expert_bias(
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torch.tensor(3, device=pooled.device)
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)
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elif group_id == 4:
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expert_out = self.experts[4](pooled)
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expert_out = self.experts[4](pooled) + self.expert_bias(
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torch.tensor(4, device=pooled.device)
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)
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elif group_id == 5:
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expert_out = self.experts[5](pooled)
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expert_out = self.experts[5](pooled) + self.expert_bias(
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torch.tensor(5, device=pooled.device)
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)
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elif group_id == 6:
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expert_out = self.experts[6](pooled)
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expert_out = self.experts[6](pooled) + self.expert_bias(
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torch.tensor(6, device=pooled.device)
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)
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elif group_id == 7:
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expert_out = self.experts[7](pooled)
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expert_out = self.experts[7](pooled) + self.expert_bias(
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torch.tensor(7, device=pooled.device)
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)
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else: # group_id == 8
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expert_out = self.experts[8](pooled)
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expert_out = self.experts[8](pooled) + self.expert_bias(
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torch.tensor(8, device=pooled.device)
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)
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else:
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# ------------------ 训练 / 普通推理:全量计算 + Gather ------------------
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# 此时 pg 为 [batch] 的 LongTensor
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batch_size = cls_output.size(0)
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# 所有专家并行计算,输出堆叠
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batch_size = pooled.size(0)
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# 并行计算所有专家输出
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expert_outputs = torch.stack(
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[e(cls_output) for e in self.experts], dim=0
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) # [num_experts, batch, output_dim]
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# 根据 pg 索引对应的专家输出
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expert_out = expert_outputs[
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pg, torch.arange(batch_size)
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] # [batch, output_dim]
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[e(pooled) for e in self.experts], dim=0
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) # [E, B, D]
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# 根据 pg 索引专家输出
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expert_out = expert_outputs[pg, torch.arange(batch_size)] # [B, D]
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# 添加专家偏置
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bias = self.expert_bias(pg) # [B, D]
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expert_out = expert_out + bias
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# ----- 5. 分类头 -----
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logits = self.classifier(expert_out) # [batch, num_classes]
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