feat(trainer): 使用 hidden_size 代替 d_model 计算输出维度并添加池化层
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@ -59,7 +59,7 @@ class Expert(nn.Module):
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super().__init__()
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self.input_dim = input_dim
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self.d_model = d_model
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self.output_dim = d_model * output_multiplier
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self.output_dim = input_dim * output_multiplier
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# 输入映射:input_dim -> d_model
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self.linear_in = nn.Linear(input_dim, d_model)
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@ -113,6 +113,7 @@ class MoEModel(nn.Module):
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norm_first=True, # Pre-LN,与预训练一致
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)
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self.encoder = nn.TransformerEncoder(encoder_layer, num_layers=4)
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self.pooler = nn.AdaptiveAvgPool1d(1)
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# 3. 专家层:8个领域专家 + 1个共享专家
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total_experts = num_domain_experts + num_shared_experts
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@ -125,16 +126,16 @@ 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 * d_model
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output_multiplier=2, # 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 * d_model), # 专家输出维度
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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 * d_model, num_classes),
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nn.Linear(2 * self.hidden_size, 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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@ -161,7 +162,7 @@ class MoEModel(nn.Module):
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) # [B, S, H]
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# ----- 3. [CLS] 向量 -----
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cls_output = encoded[:, 0, :] # [B, H]
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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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if torch.jit.is_tracing():
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@ -170,23 +171,23 @@ 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](cls_output)
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expert_out = self.experts[0](pooled)
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elif group_id == 1:
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expert_out = self.experts[1](cls_output)
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expert_out = self.experts[1](pooled)
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elif group_id == 2:
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expert_out = self.experts[2](cls_output)
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expert_out = self.experts[2](pooled)
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elif group_id == 3:
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expert_out = self.experts[3](cls_output)
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expert_out = self.experts[3](pooled)
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elif group_id == 4:
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expert_out = self.experts[4](cls_output)
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expert_out = self.experts[4](pooled)
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elif group_id == 5:
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expert_out = self.experts[5](cls_output)
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expert_out = self.experts[5](pooled)
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elif group_id == 6:
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expert_out = self.experts[6](cls_output)
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expert_out = self.experts[6](pooled)
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elif group_id == 7:
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expert_out = self.experts[7](cls_output)
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expert_out = self.experts[7](pooled)
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else: # group_id == 8
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expert_out = self.experts[8](cls_output)
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expert_out = self.experts[8](pooled)
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else:
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# ------------------ 训练 / 普通推理:全量计算 + Gather ------------------
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