646 lines
24 KiB
Python
646 lines
24 KiB
Python
import pickle
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from importlib.resources import files
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from pathlib import Path
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from typing import Optional, Union
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import torch
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import torch.amp as amp
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import torch.nn as nn
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import torch.nn.functional as F
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import torch.optim as optim
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from loguru import logger
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from modelscope import AutoModel
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from tqdm import tqdm
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from .monitor import TrainingMonitor
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def eval_dataloader(path: Union[str, Path] = (files(__package__) / "eval_dataset")):
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return [pickle.load(file.open("rb")) for file in Path(path).glob("*.pkl")]
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def round_to_power_of_two(x):
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if x < 1:
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return 0
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n = x.bit_length()
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n = min(max(7, n), 9)
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lower = 1 << (n) # 小于等于x的最大2的幂次
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upper = lower << 1 # 大于x的最小2的幂次
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if x - lower < upper - x:
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return lower
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else:
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return upper
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EXPORT_HIDE_DIM = {
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0: 1024,
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1: 1024,
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2: 1024,
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3: 512,
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4: 512,
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5: 512,
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6: 512,
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7: 512,
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8: 512,
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9: 512,
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10: 512,
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11: 512,
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12: 512,
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13: 512,
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14: 512,
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15: 512,
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16: 512,
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17: 512,
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18: 512,
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19: 256,
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}
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# ---------------------------- 残差块 ----------------------------
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class ResidualBlock(nn.Module):
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def __init__(self, dim, dropout_prob=0.1):
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super().__init__()
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self.linear1 = nn.Linear(dim, dim)
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self.ln1 = nn.LayerNorm(dim)
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self.linear2 = nn.Linear(dim, dim)
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self.ln2 = nn.LayerNorm(dim)
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self.relu = nn.ReLU()
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self.dropout = nn.Dropout(dropout_prob)
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def forward(self, x):
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residual = x
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x = self.relu(self.linear1(x))
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x = self.ln1(x)
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x = self.linear2(x)
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x = self.ln2(x)
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x = self.dropout(x) # 残差前加 Dropout(符合原描述)
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x = x + residual
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return self.relu(x)
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# ---------------------------- 专家网络 ----------------------------
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class Expert(nn.Module):
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def __init__(
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self,
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input_dim,
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d_model=1024,
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num_resblocks=4,
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output_multiplier=2,
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dropout_prob=0.1,
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):
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"""
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input_dim : BERT 输出的 hidden_size(如 312/768)
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d_model : 专家内部维度(固定 1024)
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output_multiplier : 输出维度 = input_dim * output_multiplier
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dropout_prob : 残差块内 Dropout
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"""
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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 = 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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# 残差堆叠
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self.res_blocks = nn.ModuleList(
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[ResidualBlock(d_model, dropout_prob) for _ in range(num_resblocks)]
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)
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# 输出映射:d_model -> output_dim
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self.output = nn.Sequential(
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nn.Linear(d_model, d_model),
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nn.ReLU(inplace=True),
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nn.Linear(d_model, self.output_dim),
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)
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def forward(self, x):
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x = self.linear_in(x)
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for block in self.res_blocks:
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x = block(x)
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return self.output(x)
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# ---------------------------- 主模型(MoE + 硬路由)------------------------
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class MoEModel(nn.Module):
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def __init__(
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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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output_multiplier=2,
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d_model=768,
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num_resblocks=4,
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num_domain_experts=20,
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experts_dim=EXPORT_HIDE_DIM,
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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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self.bert_config = bert.config
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self.hidden_size = self.bert_config.hidden_size # BERT 隐层维度
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self.device = None # 将在 to() 调用时设置
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self.experts_dim = experts_dim
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# 2. 4 层标准 Transformer Encoder(从 config 读取参数)
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encoder_layer = nn.TransformerEncoderLayer(
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d_model=self.hidden_size,
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nhead=8,
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dim_feedforward=self.bert_config.intermediate_size,
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dropout=self.bert_config.hidden_dropout_prob,
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activation="gelu",
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batch_first=True,
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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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self.total_experts = 20
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self.experts = nn.ModuleList()
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for i in range(self.total_experts):
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expert = Expert(
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input_dim=self.hidden_size,
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d_model=self.experts_dim[i],
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num_resblocks=num_resblocks,
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output_multiplier=self.output_multiplier, # 输出维度 = 2 * hidden_size
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dropout_prob=0.1,
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)
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self.experts.append(expert)
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self.expert_bias = nn.Embedding(
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self.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 * 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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"""重写 to 方法,记录设备"""
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self.device = device
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return super().to(device)
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def forward(self, input_ids, attention_mask, pg):
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"""
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input_ids : [batch, seq_len]
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attention_mask: [batch, seq_len] (1 为有效,0 为 padding)
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pg : group_id,训练时为 [batch] 的 LongTensor,推理导出时为标量 Tensor
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"""
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# ----- 1. Embeddings -----
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embeddings = self.embedding(input_ids) # [B, S, H]
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# ----- 2. Transformer Encoder -----
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# padding mask: True 表示忽略该位置
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padding_mask = attention_mask == 0
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encoded = self.encoder(
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embeddings, src_key_padding_mask=padding_mask
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) # [B, S, H]
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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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if torch.jit.is_tracing():
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# ------------------ ONNX 导出模式:条件分支(batch=1)------------------
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# 此时 pg 为标量 Tensor,转换为 Python int
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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) + 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) + 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) + 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) + 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) + 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) + 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) + 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) + self.expert_bias(
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torch.tensor(7, device=pooled.device)
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)
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elif group_id == 8: # group_id == 8
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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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elif group_id == 9: # group_id == 9
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expert_out = self.experts[9](pooled) + self.expert_bias(
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torch.tensor(9, device=pooled.device)
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)
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elif group_id == 10: # group_id == 10
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expert_out = self.experts[10](pooled) + self.expert_bias(
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torch.tensor(10, device=pooled.device)
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)
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elif group_id == 11: # group_id == 11
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expert_out = self.experts[11](pooled) + self.expert_bias(
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torch.tensor(11, device=pooled.device)
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)
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elif group_id == 12: # group_id == 12
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expert_out = self.experts[12](pooled) + self.expert_bias(
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torch.tensor(12, device=pooled.device)
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)
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elif group_id == 13: # group_id == 13
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expert_out = self.experts[13](pooled) + self.expert_bias(
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torch.tensor(13, device=pooled.device)
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)
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elif group_id == 14: # group_id == 14
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expert_out = self.experts[14](pooled) + self.expert_bias(
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torch.tensor(14, device=pooled.device)
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)
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elif group_id == 15: # group_id == 15
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expert_out = self.experts[15](pooled) + self.expert_bias(
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torch.tensor(15, device=pooled.device)
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)
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elif group_id == 16: # group_id == 16
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expert_out = self.experts[16](pooled) + self.expert_bias(
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torch.tensor(16, device=pooled.device)
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)
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elif group_id == 17: # group_id == 17
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expert_out = self.experts[17](pooled) + self.expert_bias(
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torch.tensor(17, device=pooled.device)
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)
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elif group_id == 18: # group_id == 18
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expert_out = self.experts[18](pooled) + self.expert_bias(
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torch.tensor(18, device=pooled.device)
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)
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else: # group_id == 19
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expert_out = self.experts[19](pooled) + self.expert_bias(
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torch.tensor(19, device=pooled.device)
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)
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else:
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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(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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if not self.training: # 推理时加 Softmax
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probs = torch.softmax(logits, dim=-1)
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return probs
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return logits
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def model_eval(self, eval_dataloader, criterion=None):
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"""
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在验证集上评估模型,返回准确率和平均损失。
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参数:
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eval_dataloader: DataLoader,提供 'input_ids', 'attention_mask', 'pg', 'char_id'
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criterion: 损失函数,默认为 CrossEntropyLoss()
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返回:
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accuracy: float, 准确率
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avg_loss: float, 平均损失
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"""
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if criterion is None:
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criterion = nn.CrossEntropyLoss()
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self.eval()
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total_loss = 0.0
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correct = 0
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total = 0
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with torch.no_grad():
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for batch in eval_dataloader:
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# 移动数据到模型设备
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input_ids = batch["hint"]["input_ids"].to(self.device)
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attention_mask = batch["hint"]["attention_mask"].to(self.device)
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pg = batch["pg"].to(self.device)
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labels = batch["char_id"].to(self.device)
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# 前向传播
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probs = self(input_ids, attention_mask, pg)
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log_probs = torch.log(probs + 1e-12)
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loss = nn.NLLLoss()(log_probs, labels)
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total_loss += loss.item() * labels.size(0)
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# 计算准确率
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preds = probs.argmax(dim=-1)
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correct += (preds == labels).sum().item()
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total += labels.size(0)
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avg_loss = total_loss / total if total > 0 else 0.0
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accuracy = correct / total if total > 0 else 0.0
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return accuracy, avg_loss
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def predict(self, sample, debug=False):
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"""
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基于 sample 字典进行预测,支持批量/单样本,可选调试打印错误样本信息。
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参数:
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sample : dict
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必须包含字段:
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- 'input_ids' : [batch, seq_len] 或 [seq_len] (单样本)
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- 'attention_mask': 同上
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- 'pg' : [batch] 或标量
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- 'char_id' : [batch] 或标量,真实标签(当 debug=True 时必须提供)
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调试时(debug=True)必须包含字段:
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- 'txt' : 字符串列表(batch)或单个字符串
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- 'char' : 字符串列表(batch)或单个字符串
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- 'py' : 字符串列表(batch)或单个字符串
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debug : bool
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是否打印预测错误的样本信息。若为 True 但 sample 缺少 char_id/txt/char/py,抛出 ValueError。
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返回:
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preds : torch.Tensor
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[batch] 预测类别标签(若输入为单样本且无 batch 维度,则返回标量)
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"""
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self.eval()
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# ------------------ 1. 提取并规范化输入 ------------------
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# 判断是否为单样本(input_ids 无 batch 维度)
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input_ids = sample['hint']["input_ids"]
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attention_mask = sample['hint']["attention_mask"]
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pg = sample["pg"]
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has_batch_dim = input_ids.dim() > 1
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if not has_batch_dim:
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input_ids = input_ids.unsqueeze(0)
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attention_mask = attention_mask.unsqueeze(0)
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if pg.dim() == 0:
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pg = pg.unsqueeze(0).expand(input_ids.size(0))
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# ------------------ 2. 移动设备 ------------------
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input_ids = input_ids.to(self.device)
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attention_mask = attention_mask.to(self.device)
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pg = pg.to(self.device)
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# ------------------ 3. 推理 ------------------
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with torch.no_grad():
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logits = self(input_ids, attention_mask, pg)
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preds = torch.softmax(logits, dim=-1).argmax(dim=-1) # [batch]
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# ------------------ 4. 调试打印(错误样本) ------------------
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if debug:
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# 检查必需字段
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required_keys = ["char_id", "txt", "char", "py"]
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missing = [k for k in required_keys if k not in sample]
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if missing:
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raise ValueError(f"debug=True 时 sample 必须包含字段: {missing}")
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# 提取真实标签
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true_labels = sample["char_id"]
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if true_labels.dim() == 0:
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true_labels = true_labels.unsqueeze(0)
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# 移动真实标签到相同设备
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true_labels = true_labels.to(self.device)
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# 找出预测错误的索引
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incorrect_mask = preds != true_labels
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incorrect_indices = torch.where(incorrect_mask)[0]
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if len(incorrect_indices) > 0:
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print("\n=== 预测错误样本 ===")
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# 获取调试字段(可能是列表或单个字符串)
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txts = sample["txt"]
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chars = sample["char"]
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pys = sample["py"]
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# 统一转换为列表(如果输入是单个字符串)
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if isinstance(txts, str):
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txts = [txts]
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chars = [chars]
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pys = [pys]
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for idx in incorrect_indices.cpu().numpy():
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print(f"样本索引 {idx}:")
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print(f" Text : {txts[idx]}")
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print(f" Char : {chars[idx]}")
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print(f" Pinyin: {pys[idx]}")
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print(
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f" 预测标签: {preds[idx].item()}, 真实标签: {true_labels[idx].item()}"
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)
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print("===================\n")
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# ------------------ 5. 返回结果(保持与输入维度一致) ------------------
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if not has_batch_dim:
|
||
return preds.squeeze(0) # 返回标量
|
||
return preds
|
||
|
||
def fit(
|
||
self,
|
||
train_dataloader,
|
||
eval_dataloader=None,
|
||
monitor: Optional[TrainingMonitor] = None,
|
||
criterion=nn.CrossEntropyLoss(),
|
||
optimizer=None,
|
||
num_epochs=1,
|
||
eval_frequency=500,
|
||
grad_accum_steps=1,
|
||
clip_grad_norm=1.0,
|
||
mixed_precision=False,
|
||
lr=1e-4,
|
||
lr_schedule=None, # 新增:可选的自定义学习率调度函数
|
||
):
|
||
"""
|
||
训练模型,支持混合精度、梯度累积、学习率调度、实时监控。
|
||
|
||
参数:
|
||
train_dataloader: DataLoader
|
||
训练数据加载器。
|
||
eval_dataloader: DataLoader, optional
|
||
评估数据加载器。
|
||
monitor: TrainingMonitor, optional
|
||
训练监控器。
|
||
criterion: nn.Module, optional
|
||
损失函数。
|
||
optimizer: optim.Optimizer, optional
|
||
优化器。
|
||
num_epochs: int, optional
|
||
训练轮数。
|
||
eval_frequency: int, optional
|
||
评估频率。
|
||
grad_accum_steps: int, optional
|
||
梯度累积步数。
|
||
clip_grad_norm: float, optional
|
||
梯度裁剪范数。
|
||
mixed_precision: bool, optional
|
||
是否使用混合精度。
|
||
lr: float, optional
|
||
初始学习率。
|
||
lr_schedule : callable, optional
|
||
自定义学习率调度函数,接收参数 (processed_batches, optimizer),
|
||
可在内部直接修改 optimizer.param_groups 中的学习率。
|
||
"""
|
||
# 确保模型在正确的设备上
|
||
if self.device is None:
|
||
self.device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
|
||
self.to(self.device)
|
||
|
||
# 切换到训练模式
|
||
super().train()
|
||
|
||
# 默认优化器
|
||
if optimizer is None:
|
||
optimizer = optim.AdamW(self.parameters(), lr=lr) # 初始学习率 1e-4
|
||
|
||
# 混合精度缩放器
|
||
scaler = amp.GradScaler(enabled=mixed_precision)
|
||
|
||
global_step = 0
|
||
processed_batches = 0 # 新增:实际处理的 batch 数量计数器
|
||
batch_loss_sum = 0.0
|
||
optimizer.zero_grad()
|
||
|
||
for epoch in range(num_epochs):
|
||
for batch_idx, batch in enumerate(tqdm(train_dataloader, total=1e6)):
|
||
# ---------- 更新 batch 计数器 ----------
|
||
processed_batches += 1
|
||
|
||
# ---------- 学习率调度(仅当使用默认优化器且未传入自定义调度函数时)----------
|
||
if lr_schedule is not None:
|
||
# 调用用户自定义的调度函数
|
||
lr_schedule(processed_batches, optimizer)
|
||
|
||
# ---------- 移动数据 ----------
|
||
input_ids = batch["hint"]["input_ids"].to(self.device)
|
||
attention_mask = batch["hint"]["attention_mask"].to(self.device)
|
||
pg = batch["pg"].to(self.device)
|
||
labels = batch["char_id"].to(self.device)
|
||
|
||
# 混合精度前向
|
||
with amp.autocast(
|
||
device_type=self.device.type, enabled=mixed_precision
|
||
):
|
||
logits = self(input_ids, attention_mask, pg)
|
||
loss = criterion(logits, labels)
|
||
loss = loss / grad_accum_steps
|
||
|
||
# 反向传播
|
||
scaler.scale(loss).backward()
|
||
|
||
# 梯度累积
|
||
if (batch_idx + 1) % grad_accum_steps == 0:
|
||
scaler.unscale_(optimizer)
|
||
torch.nn.utils.clip_grad_norm_(self.parameters(), clip_grad_norm)
|
||
scaler.step(optimizer)
|
||
scaler.update()
|
||
optimizer.zero_grad()
|
||
global_step += 1
|
||
original_loss = loss.item() * grad_accum_steps
|
||
batch_loss_sum += original_loss
|
||
# 周期性评估(与原代码相同)
|
||
if (
|
||
eval_dataloader is not None
|
||
and global_step % eval_frequency == 0
|
||
):
|
||
avg_loss = batch_loss_sum / eval_frequency
|
||
acc, eval_loss = self.model_eval(eval_dataloader, criterion)
|
||
super().train()
|
||
if monitor is not None:
|
||
monitor.add_step(
|
||
global_step,
|
||
{"loss": avg_loss, "acc": acc},
|
||
)
|
||
logger.info(
|
||
f"step: {global_step}, loss: {avg_loss:.4f}, acc: {acc:.4f}, eval_loss: {eval_loss:.4f}"
|
||
)
|
||
batch_loss_sum = 0.0
|
||
|
||
def load_from_state_dict(self, state_dict_path: Union[str, Path]):
|
||
state_dict = torch.load(
|
||
state_dict_path, weights_only=True, map_location=self.device
|
||
)
|
||
self.load_state_dict(state_dict)
|
||
|
||
def load_from_pretrained_base_model(
|
||
self,
|
||
BaseModel,
|
||
snapshot_path: Union[str, Path],
|
||
device=torch.device("cuda" if torch.cuda.is_available() else "cpu"),
|
||
*args,
|
||
**kwargs,
|
||
):
|
||
base_model = BaseModel(*args, **kwargs)
|
||
base_model.load_state_dict(torch.load(snapshot_path, map_location=device))
|
||
self_static_dict = self.state_dict()
|
||
pretrained_dict = base_model.state_dict()
|
||
|
||
freeze_layers = []
|
||
|
||
for key in self_static_dict.keys():
|
||
if key in pretrained_dict.keys():
|
||
if self_static_dict[key].shape == pretrained_dict[key].shape:
|
||
self_static_dict[key] = pretrained_dict[key].to(self.device)
|
||
freeze_layers.append(key)
|
||
self.load_state_dict(self_static_dict)
|
||
for name, param in self.named_parameters():
|
||
if name in freeze_layers:
|
||
param.requires_grad = False
|
||
|
||
|
||
# ============================ 使用示例 ============================
|
||
if __name__ == "__main__":
|
||
# 1. 初始化模型
|
||
model = MoEModel()
|
||
model.eval()
|
||
|
||
# 2. 构造 dummy 输入(batch=1,用于导出 ONNX)
|
||
dummy_input_ids = torch.randint(0, 100, (1, 64)) # [1, 64]
|
||
dummy_attention_mask = torch.ones_like(dummy_input_ids) # [1, 64]
|
||
dummy_pg = torch.tensor(3, dtype=torch.long) # 标量 group_id
|
||
|
||
# 3. 导出 ONNX(使用条件分支,仅计算一个专家)
|
||
torch.onnx.export(
|
||
model,
|
||
(dummy_input_ids, dummy_attention_mask, dummy_pg),
|
||
"moe_cpu.onnx",
|
||
input_names=["input_ids", "attention_mask", "pg"],
|
||
output_names=["logits"],
|
||
dynamic_axes={ # 固定 batch=1,可不设 dynamic_axes
|
||
"input_ids": {0: "batch"},
|
||
"attention_mask": {0: "batch"},
|
||
},
|
||
opset_version=12,
|
||
do_constant_folding=True,
|
||
)
|
||
print("ONNX 导出成功!")
|
||
|
||
# 4. 测试训练模式(batch=4)
|
||
model.train()
|
||
batch_input_ids = torch.randint(0, 100, (4, 64))
|
||
batch_attention_mask = torch.ones_like(batch_input_ids)
|
||
batch_pg = torch.tensor([0, 3, 8, 1], dtype=torch.long) # 不同 group
|
||
logits = model(batch_input_ids, batch_attention_mask, batch_pg)
|
||
print("训练模式输出形状:", logits.shape) # [4, 10018]
|