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Author | SHA1 | Date | |
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770c34f0e3 | |||
1678e739b6 |
2
.gitignore
vendored
2
.gitignore
vendored
@ -7,3 +7,5 @@ models/sentence_transformers/
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models/sentence_transformers_cache/
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**/*.pyc
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qwen2-1.7B/
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images/
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cache/
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8
.vscode/launch.json
vendored
8
.vscode/launch.json
vendored
@ -7,7 +7,7 @@
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"request": "launch",
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"program": "${workspaceFolder}/train_pretrain_accelerate.py",
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"console": "integratedTerminal",
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"python": "/home/iomgaa/miniconda3/envs/accelerate/bin/python",
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"python": "/opt/conda/envs/mini/bin/python",
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"cwd": "${workspaceFolder}",
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"env": {
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"PYTHONPATH": "${workspaceFolder}",
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@ -23,7 +23,7 @@
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"request": "launch",
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"program": "${workspaceFolder}/train_pretrain_accelerate.py",
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"console": "integratedTerminal",
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"python": "/home/iomgaa/miniconda3/envs/accelerate/bin/python",
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"python": "/opt/conda/envs/mini/bin/python",
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"args": [
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"--hidden_size", "512",
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"--max_seq_len", "512",
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@ -46,7 +46,7 @@
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"request": "launch",
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"program": "${workspaceFolder}/train_pretrain_accelerate.py",
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"console": "integratedTerminal",
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"python": "/home/iomgaa/miniconda3/envs/accelerate/bin/python",
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"python": "/opt/conda/envs/mini/bin/python",
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"args": [
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"--hidden_size", "512",
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"--max_seq_len", "512",
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@ -73,7 +73,7 @@
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"request": "launch",
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"program": "${workspaceFolder}/train_pretrain_accelerate.py",
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"console": "integratedTerminal",
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"python": "/home/iomgaa/miniconda3/envs/accelerate/bin/python",
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"python": "/opt/conda/envs/mini/bin/python",
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"args": [
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"--hidden_size", "512",
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"--max_seq_len", "256",
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@ -19,6 +19,7 @@ class LMConfig(PretrainedConfig):
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rope_theta: int = 1e6,
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dropout: float = 0.0,
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flash_attn: bool = True,
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embeddings_epoch: int = 2,
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####################################################
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# DB related configurations
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####################################################
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@ -54,6 +55,7 @@ class LMConfig(PretrainedConfig):
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self.rope_theta = rope_theta
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self.dropout = dropout
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self.flash_attn = flash_attn
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self.embeddings_epoch = embeddings_epoch
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####################################################
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# DB related configurations
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####################################################
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@ -81,6 +81,8 @@ class KnowledgeDataset(nn.Module):
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# 计算step数目,用于动态调整权重
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self.step_counter = 0
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self.freeze_embedding = False
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def intelligent_selection(self, query, all_scores, all_indices):
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@ -169,6 +171,8 @@ class KnowledgeDataset(nn.Module):
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return all_best_tokens, all_best_tokens_embeddings
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def _update_keys_with_embeddings(self, pre_update_indices, pre_update_embeddings):
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if self.freeze_embedding:
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return
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# 使用pre_update_embeddings更新self.keys
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with torch.no_grad():
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pre_update_embeddings = pre_update_embeddings.mean(dim=1) # [337, 512]
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@ -199,8 +203,26 @@ class KnowledgeDataset(nn.Module):
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if self.is_train:
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# 获取未更新过的keys的索引
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not_updated_indices = torch.where(self.has_update_keys == 0)[0]
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# 如果有未更新的keys,随机选择num_update_keys个进行更新
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if len(not_updated_indices) > 0:
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num_update_keys = int(self.knowledge_num * 0.01)
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perm = torch.randperm(len(not_updated_indices))[:num_update_keys]
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perm_num = perm.shape[0]
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pre_update_indices = not_updated_indices[perm]
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pre_update_tokens = self.knowledge_dataset[pre_update_indices]
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pre_update_embeddings = self.tok_embeddings(pre_update_tokens.view(-1))
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pre_update_embeddings = pre_update_embeddings.view(perm_num, self.knowledge_length, -1)
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self._update_keys_with_embeddings(pre_update_indices, pre_update_embeddings)
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# 更新被修改过的key
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with torch.no_grad():
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self.has_update_keys[pre_update_indices] = 1
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else:
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print("all keys are updated")
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# 重置所有keys的更新状态
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self.has_update_keys.zero_()
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# 重新获取所有可更新的索引
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not_updated_indices = torch.arange(len(self.has_update_keys), device=self.has_update_keys.device)
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num_update_keys = int(self.knowledge_num * 0.01)
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perm = torch.randperm(len(not_updated_indices))[:num_update_keys]
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pre_update_indices = not_updated_indices[perm]
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@ -208,6 +230,12 @@ class KnowledgeDataset(nn.Module):
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pre_update_embeddings = self.tok_embeddings(pre_update_tokens.view(-1))
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pre_update_embeddings = pre_update_embeddings.view(num_update_keys, self.knowledge_length, -1)
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self._update_keys_with_embeddings(pre_update_indices, pre_update_embeddings)
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# 更新被修改过的key
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with torch.no_grad():
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self.has_update_keys[pre_update_indices] = 1
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return best_tokens, best_tokens_embeddings
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@ -484,12 +512,20 @@ class MiniMindLM(PreTrainedModel):
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precompute_pos_cis(dim=params.dim // params.n_heads, theta=params.rope_theta),
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persistent=False)
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self.OUT = CausalLMOutputWithPast()
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self.freeze_embedding = False
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def forward(self,
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input_ids: Optional[torch.Tensor] = None,
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logits_to_keep: Union[int, torch.Tensor] = 0,
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step: int = 0,
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**args):
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start_pos = args.get('start_pos', 0)
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if self.freeze_embedding and step == 0:
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self.tok_embeddings.weight.requires_grad = False
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# 同时冻结KnowledgeDataset的嵌入更新
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self.knowledge_dataset.freeze_embedding = True
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print("tok_embeddings.weight.requires_grad: ", self.tok_embeddings.weight.requires_grad)
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print("knowledge_dataset.freeze_embedding: ", self.knowledge_dataset.freeze_embedding)
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h = self.dropout(self.tok_embeddings(input_ids))
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pos_cis = self.pos_cis[start_pos:start_pos + input_ids.size(1)]
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for l, layer in enumerate(self.layers):
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@ -1,8 +1,8 @@
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#!/bin/bash
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# 激活conda环境
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# source $(conda info --base)/etc/profile.d/conda.sh
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# conda activate ycz_accelerate
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source $(conda info --base)/etc/profile.d/conda.sh
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conda activate mini
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# 设置环境变量以帮助调试
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export NCCL_DEBUG=INFO
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@ -26,24 +26,9 @@ export PYTHONFAULTHANDLER=1
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# --profile_interval 10
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# 方法2: 使用命令行参数直接配置accelerate
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CUDA_VISIBLE_DEVICES=0 accelerate launch \
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CUDA_VISIBLE_DEVICES=0 /opt/conda/envs/mini/bin/python -m accelerate.commands.launch \
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--num_processes=1 \
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--mixed_precision=bf16 \
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--main_process_port=29500 \
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train_pretrain_accelerate.py \
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--epochs 3 \
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--batch_size 24 \
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--learning_rate 2e-4 \
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--dtype bfloat16 \
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--accumulation_steps 32 \
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--grad_clip 1.0 \
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--log_interval 100 \
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--save_interval 10000 \
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--dim 512 \
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--n_layers 12 \
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--max_seq_len 512 \
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--use_flash_attn \
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--profile \
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--profile_interval 10\
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--knowledge_num 4096 \
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--knowledge_length 8
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@ -88,54 +88,52 @@ def init_model(lm_config, pretrained_embedding_path=None, database_init_path=Non
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if database_init_path:
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import json
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import numpy as np
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from sentence_transformers import SentenceTransformer
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import os
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# 聚类参数(需要提前定义用于缓存检查)
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# 数据库参数
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knowledge_num = args.knowledge_num
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knowledge_length = args.knowledge_length
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# 检查是否使用缓存(提前检查,避免不必要的数据处理)
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# 检查是否使用缓存
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cache_dir = os.path.dirname(args.cluster_cache_path)
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if cache_dir:
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os.makedirs(cache_dir, exist_ok=True)
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clustered_tensor = None
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processed_tensor = None
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# 尝试加载缓存的聚类结果
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# 尝试加载缓存的处理结果
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if not args.recompute_clusters and os.path.exists(args.cluster_cache_path):
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try:
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Logger(f"Loading cached cluster results from {args.cluster_cache_path}")
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clustered_tensor = torch.load(args.cluster_cache_path)
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Logger(f"Loading cached processed results from {args.cluster_cache_path}")
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processed_tensor = torch.load(args.cluster_cache_path)
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# 验证缓存文件的形状是否可用
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cached_knowledge_num, cached_knowledge_length = clustered_tensor.shape
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cached_knowledge_num, cached_knowledge_length = processed_tensor.shape
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if cached_knowledge_length == knowledge_length:
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if cached_knowledge_num >= knowledge_num:
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# 缓存足够大,可以截取使用
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clustered_tensor = clustered_tensor[:knowledge_num, :]
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Logger(f"Successfully loaded cached clusters with shape {clustered_tensor.shape}")
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processed_tensor = processed_tensor[:knowledge_num, :]
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Logger(f"Successfully loaded cached data with shape {processed_tensor.shape}")
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Logger(f"Truncated from cached shape ({cached_knowledge_num}, {cached_knowledge_length}) to required shape ({knowledge_num}, {knowledge_length})")
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Logger("Skipping database initialization and clustering - using cached results")
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Logger("Skipping database initialization - using cached results")
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else:
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# 缓存太小,需要重新计算
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Logger(f"Cached knowledge_num ({cached_knowledge_num}) < required knowledge_num ({knowledge_num}), recomputing...")
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clustered_tensor = None
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processed_tensor = None
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else:
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# knowledge_length不匹配,需要重新计算
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Logger(f"Cached knowledge_length ({cached_knowledge_length}) != required knowledge_length ({knowledge_length}), recomputing...")
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clustered_tensor = None
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processed_tensor = None
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except Exception as e:
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Logger(f"Failed to load cached clusters: {e}, recomputing...")
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clustered_tensor = None
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Logger(f"Failed to load cached data: {e}, recomputing...")
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processed_tensor = None
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# 只有在没有有效缓存时才进行数据库初始化和聚类计算
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if clustered_tensor is None:
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# 只有在没有有效缓存时才进行数据库初始化和处理
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if processed_tensor is None:
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Logger(f"Loading database initialization data from {database_init_path}")
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# 1. 加载JSON文件并转换为字典
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# 1. 加载JSON文件
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with open(database_init_path, 'r', encoding='utf-8') as f:
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database_data = json.load(f)
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@ -147,300 +145,73 @@ def init_model(lm_config, pretrained_embedding_path=None, database_init_path=Non
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sorted_sentences = sorted(sentences_data, key=lambda x: x.get('importance_score', 0.0), reverse=True)
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Logger(f"Sorted sentences by importance score (highest: {sorted_sentences[0].get('importance_score', 0.0)}, lowest: {sorted_sentences[-1].get('importance_score', 0.0)})")
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# 3. 下载并初始化本地嵌入模型
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embedding_model_name = "sentence-transformers/all-mpnet-base-v2" # 轻量级但效果好的模型
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embedding_model_dir = "./models/sentence_transformers/models--sentence-transformers--all-mpnet-base-v2"
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embedding_cache_dir = "./models/sentence_transformers/cache"
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os.makedirs(embedding_cache_dir, exist_ok=True)
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# 3. 处理每条数据,不进行聚类
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Logger("Processing individual sentences...")
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processed_rows = []
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Logger(f"Loading embedding model: {embedding_model_name}")
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try:
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embedding_model = SentenceTransformer(embedding_model_dir, cache_folder=embedding_cache_dir)
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Logger("Embedding model loaded successfully")
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except Exception as e:
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Logger(f"Failed to load embedding model: {e}")
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Logger("Falling back to random embeddings")
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embedding_model = None
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# 4. 对每个corrected_sentence进行嵌入和token长度计算
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Logger("Processing sentences for embeddings and token lengths...")
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# 提取所有句子
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sentences = [sentence_data.get('corrected_sentence', '') for sentence_data in sorted_sentences]
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# 批量计算token长度
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Logger("Computing token lengths...")
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token_lengths = []
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for sentence in sentences:
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tokens = tokenizer.encode(sentence, add_special_tokens=False)
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token_lengths.append(len(tokens))
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# 批量计算嵌入 - 大幅提升速度
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Logger("Computing embeddings in batches...")
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embeddings_list = []
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batch_size = 256 # 可以根据GPU内存调整
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if embedding_model is not None:
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try:
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for i in range(0, len(sentences), batch_size):
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batch_sentences = sentences[i:i+batch_size]
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batch_embeddings = embedding_model.encode(
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batch_sentences,
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convert_to_tensor=False,
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show_progress_bar=True if i == 0 else False,
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batch_size=batch_size
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)
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embeddings_list.extend(batch_embeddings)
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if (i + batch_size) % (batch_size * 10) == 0:
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Logger(f"Processed {min(i + batch_size, len(sentences))}/{len(sentences)} sentences")
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Logger("Batch embedding computation completed")
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except Exception as e:
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Logger(f"Error in batch encoding: {e}")
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Logger("Falling back to random embeddings")
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embeddings_list = [np.random.randn(384).astype(np.float32) for _ in sentences]
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else:
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# 使用随机嵌入
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embeddings_list = [np.random.randn(384).astype(np.float32) for _ in sentences]
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# 创建处理后的句子列表
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processed_sentences = []
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for i, (sentence_data, embedding, token_length) in enumerate(zip(sorted_sentences, embeddings_list, token_lengths)):
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processed_sentences.append({
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'sentence': sentence_data.get('corrected_sentence', ''),
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'importance_score': sentence_data.get('importance_score', 0.0),
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'token_length': token_length,
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'embedding': embedding, # Convert numpy array to list
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'original_index': i
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})
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# 转换为numpy数组以便后续处理
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embeddings_array = np.array(embeddings_list)
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token_lengths_array = np.array(token_lengths)
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Logger(f"Embedding processing completed:")
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Logger(f" - Total sentences: {len(processed_sentences)}")
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Logger(f" - Embedding shape: {embeddings_array.shape}")
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Logger(f" - Average token length: {np.mean(token_lengths_array):.2f}")
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Logger(f" - Token length range: {np.min(token_lengths_array)} - {np.max(token_lengths_array)}")
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# 聚类参数定义
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min_tokens = int(0.85 * knowledge_length)
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max_tokens = int(0.95 * knowledge_length)
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# 优化1: 预计算所有嵌入的相似度矩阵(如果数据量不太大)
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if len(processed_sentences) <= 10000: # 只有在数据量不太大时才预计算
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Logger("Pre-computing similarity matrix for faster clustering...")
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embeddings_matrix = np.array([s['embedding'] for s in processed_sentences])
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similarity_matrix = cosine_similarity(embeddings_matrix)
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Logger(f"Similarity matrix computed: {similarity_matrix.shape}")
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else:
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similarity_matrix = None
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embeddings_matrix = np.array([s['embedding'] for s in processed_sentences])
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clustered_rows = []
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remaining_indices = list(range(len(processed_sentences))) # 使用索引而不是对象
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Logger(f"Target: {knowledge_num} clusters, each with {min_tokens}-{max_tokens} tokens")
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# 选择聚类算法
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if args.fast_clustering and len(processed_sentences) > 5000:
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Logger("Using ultra-fast approximate clustering algorithm...")
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# 超快速聚类:随机采样 + 批量处理
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import random
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random.seed(42) # 确保可重现性
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# 按重要性分层采样
|
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high_importance = [i for i, s in enumerate(processed_sentences) if s['importance_score'] > 0.7]
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medium_importance = [i for i, s in enumerate(processed_sentences) if 0.3 <= s['importance_score'] <= 0.7]
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low_importance = [i for i, s in enumerate(processed_sentences) if s['importance_score'] < 0.3]
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Logger(f"Importance distribution: High={len(high_importance)}, Medium={len(medium_importance)}, Low={len(low_importance)}")
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for cluster_idx in tqdm(range(knowledge_num)):
|
||||
# 分层选择种子:优先选择高重要性句子
|
||||
if high_importance:
|
||||
seed_pool = high_importance
|
||||
elif medium_importance:
|
||||
seed_pool = medium_importance
|
||||
else:
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||||
seed_pool = low_importance if low_importance else list(range(len(processed_sentences)))
|
||||
|
||||
if not seed_pool:
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||||
break
|
||||
|
||||
# 随机选择种子(在同一重要性层级内)
|
||||
seed_global_idx = random.choice(seed_pool)
|
||||
seed_sentence = processed_sentences[seed_global_idx]
|
||||
|
||||
# 从所有池中移除种子
|
||||
for pool in [high_importance, medium_importance, low_importance]:
|
||||
if seed_global_idx in pool:
|
||||
pool.remove(seed_global_idx)
|
||||
|
||||
current_cluster_indices = [seed_global_idx]
|
||||
current_tokens = seed_sentence['token_length']
|
||||
|
||||
if current_tokens < max_tokens:
|
||||
# 快速选择:只从附近的句子中随机选择
|
||||
all_remaining = high_importance + medium_importance + low_importance
|
||||
if all_remaining:
|
||||
# 随机采样候选句子(而不是计算所有相似度)
|
||||
sample_size = min(2000, len(all_remaining))
|
||||
candidates = random.sample(all_remaining, sample_size)
|
||||
|
||||
# 简单按token长度和重要性选择
|
||||
for candidate_idx in candidates:
|
||||
candidate = processed_sentences[candidate_idx]
|
||||
candidate_tokens = candidate['token_length']
|
||||
|
||||
if current_tokens + candidate_tokens + 1 <= max_tokens:
|
||||
current_cluster_indices.append(candidate_idx)
|
||||
current_tokens += candidate_tokens + 1
|
||||
|
||||
# 从池中移除
|
||||
for pool in [high_importance, medium_importance, low_importance]:
|
||||
if candidate_idx in pool:
|
||||
pool.remove(candidate_idx)
|
||||
break
|
||||
|
||||
if current_tokens >= min_tokens:
|
||||
break
|
||||
|
||||
# 生成聚类文本
|
||||
cluster_sentences = [processed_sentences[idx]['sentence'] for idx in current_cluster_indices]
|
||||
cluster_text = '\n '.join(cluster_sentences)
|
||||
|
||||
# 转换为tokens
|
||||
cluster_tokens = tokenizer.encode(cluster_text, add_special_tokens=False)
|
||||
if len(cluster_tokens) > knowledge_length:
|
||||
cluster_tokens = cluster_tokens[:knowledge_length]
|
||||
else:
|
||||
# 获取空token的id(用于填充)
|
||||
pad_token_id = tokenizer.pad_token_id if tokenizer.pad_token_id is not None else 0
|
||||
cluster_tokens.extend([pad_token_id] * (knowledge_length - len(cluster_tokens)))
|
||||
|
||||
clustered_rows.append(cluster_tokens)
|
||||
# 处理所需数量的句子
|
||||
num_to_process = min(knowledge_num, len(sorted_sentences))
|
||||
|
||||
if (cluster_idx + 1) % 1000 == 0:
|
||||
total_remaining = len(high_importance) + len(medium_importance) + len(low_importance)
|
||||
Logger(f"Fast clustering: {cluster_idx + 1}/{knowledge_num} clusters, {total_remaining} sentences remaining")
|
||||
for i in range(num_to_process):
|
||||
sentence_data = sorted_sentences[i]
|
||||
sentence = sentence_data.get('corrected_sentence', '')
|
||||
|
||||
else:
|
||||
# 原始优化算法(适用于中等规模数据集)
|
||||
# 优化2: 批量处理和更高效的数据结构
|
||||
for cluster_idx in tqdm(range(knowledge_num)):
|
||||
if not remaining_indices:
|
||||
Logger(f"No more sentences available. Created {cluster_idx} clusters.")
|
||||
break
|
||||
|
||||
# 2.1 选择importance_score最高的句子作为种子
|
||||
remaining_sentences_subset = [processed_sentences[i] for i in remaining_indices]
|
||||
seed_idx_in_subset = max(range(len(remaining_sentences_subset)),
|
||||
key=lambda i: remaining_sentences_subset[i]['importance_score'])
|
||||
seed_global_idx = remaining_indices[seed_idx_in_subset]
|
||||
seed_sentence = processed_sentences[seed_global_idx]
|
||||
|
||||
# 从剩余索引中移除种子
|
||||
remaining_indices.remove(seed_global_idx)
|
||||
|
||||
# 当前聚类
|
||||
current_cluster_indices = [seed_global_idx]
|
||||
current_tokens = seed_sentence['token_length']
|
||||
|
||||
if current_tokens >= max_tokens:
|
||||
# 如果种子句子已经超过最大token数,直接作为一个聚类
|
||||
cluster_text = seed_sentence['sentence']
|
||||
else:
|
||||
# 2.2 优化的相似度计算和选择
|
||||
if remaining_indices:
|
||||
if similarity_matrix is not None:
|
||||
# 使用预计算的相似度矩阵
|
||||
similarities = similarity_matrix[seed_global_idx][remaining_indices]
|
||||
else:
|
||||
# 动态计算相似度(批量)
|
||||
seed_embedding = embeddings_matrix[seed_global_idx:seed_global_idx+1]
|
||||
remaining_embeddings = embeddings_matrix[remaining_indices]
|
||||
similarities = cosine_similarity(seed_embedding, remaining_embeddings)[0]
|
||||
|
||||
# 创建(相似度, 原始索引, 在remaining_indices中的位置)的元组列表
|
||||
similarity_tuples = [(similarities[i], remaining_indices[i], i)
|
||||
for i in range(len(remaining_indices))]
|
||||
|
||||
# 按相似度排序(降序)
|
||||
similarity_tuples.sort(key=lambda x: x[0], reverse=True)
|
||||
|
||||
# 优化3: 贪心选择,但限制搜索范围以提高速度
|
||||
max_candidates = min(len(similarity_tuples), 500) # 只考虑前500个最相似的句子
|
||||
|
||||
selected_indices_in_remaining = []
|
||||
for sim_score, global_idx, pos_in_remaining in similarity_tuples[:max_candidates]:
|
||||
candidate = processed_sentences[global_idx]
|
||||
candidate_tokens = candidate['token_length']
|
||||
|
||||
if current_tokens + candidate_tokens + 1 <= max_tokens: # +1 for newline
|
||||
current_cluster_indices.append(global_idx)
|
||||
selected_indices_in_remaining.append(pos_in_remaining)
|
||||
current_tokens += candidate_tokens + 1
|
||||
|
||||
if current_tokens >= min_tokens:
|
||||
break
|
||||
|
||||
# 批量移除选中的句子(从后往前移除以避免索引问题)
|
||||
for pos in sorted(selected_indices_in_remaining, reverse=True):
|
||||
remaining_indices.pop(pos)
|
||||
|
||||
# 拼接句子
|
||||
cluster_sentences = [processed_sentences[idx]['sentence'] for idx in current_cluster_indices]
|
||||
cluster_text = '\n'.join(cluster_sentences)
|
||||
|
||||
# 将聚类文本转换为token
|
||||
cluster_tokens = tokenizer.encode(cluster_text, add_special_tokens=False)
|
||||
# 将句子转换为tokens
|
||||
sentence_tokens = tokenizer.encode(sentence, add_special_tokens=False)
|
||||
|
||||
# 截断或填充到knowledge_length
|
||||
if len(cluster_tokens) > knowledge_length:
|
||||
cluster_tokens = cluster_tokens[:knowledge_length]
|
||||
if len(sentence_tokens) > knowledge_length:
|
||||
# 如果超过长度,截断
|
||||
sentence_tokens = sentence_tokens[:knowledge_length]
|
||||
Logger(f"Sentence {i+1} truncated from {len(tokenizer.encode(sentence, add_special_tokens=False))} to {knowledge_length} tokens")
|
||||
else:
|
||||
# 用pad_token_id填充
|
||||
pad_token_id = tokenizer.pad_token_id if tokenizer.pad_token_id is not None else 0
|
||||
cluster_tokens.extend([pad_token_id] * (knowledge_length - len(cluster_tokens)))
|
||||
# 如果不足长度,用空token填充
|
||||
original_length = len(sentence_tokens)
|
||||
sentence_tokens.extend([pad_token_id] * (knowledge_length - len(sentence_tokens)))
|
||||
if original_length < knowledge_length:
|
||||
Logger(f"Sentence {i+1} padded from {original_length} to {knowledge_length} tokens")
|
||||
|
||||
clustered_rows.append(cluster_tokens)
|
||||
processed_rows.append(sentence_tokens)
|
||||
|
||||
# 优化4: 减少日志频率
|
||||
if (cluster_idx + 1) % 500 == 0:
|
||||
Logger(f"Created {cluster_idx + 1}/{knowledge_num} clusters, {len(remaining_indices)} sentences remaining")
|
||||
if (i + 1) % 1000 == 0:
|
||||
Logger(f"Processed {i + 1}/{num_to_process} sentences")
|
||||
|
||||
# 如果聚类数量不足,用随机token填充
|
||||
while len(clustered_rows) < knowledge_num:
|
||||
pad_token_id = tokenizer.pad_token_id if tokenizer.pad_token_id is not None else 0
|
||||
random_tokens = [pad_token_id] * knowledge_length
|
||||
clustered_rows.append(random_tokens)
|
||||
# 如果句子数量不足,用空token填充剩余位置
|
||||
while len(processed_rows) < knowledge_num:
|
||||
empty_tokens = [pad_token_id] * knowledge_length
|
||||
processed_rows.append(empty_tokens)
|
||||
if len(processed_rows) % 1000 == 0:
|
||||
Logger(f"Added empty entry {len(processed_rows)}/{knowledge_num}")
|
||||
|
||||
Logger(f"Finished adding empty entries. Total: {len(processed_rows)}/{knowledge_num}")
|
||||
|
||||
# 转换为tensor
|
||||
clustered_tensor = torch.tensor(clustered_rows, dtype=torch.long)
|
||||
processed_tensor = torch.tensor(processed_rows, dtype=torch.long)
|
||||
|
||||
Logger(f"Clustering completed:")
|
||||
Logger(f" - Created {len(clustered_rows)} clusters")
|
||||
Logger(f" - Cluster shape: {clustered_tensor.shape}")
|
||||
Logger(f"Data processing completed:")
|
||||
Logger(f" - Processed {num_to_process} sentences")
|
||||
Logger(f" - Added {knowledge_num - num_to_process} empty entries")
|
||||
Logger(f" - Final shape: {processed_tensor.shape}")
|
||||
Logger(f" - Expected shape: ({knowledge_num}, {knowledge_length})")
|
||||
|
||||
# 保存聚类结果到缓存文件
|
||||
# 保存处理结果到缓存文件
|
||||
try:
|
||||
torch.save(clustered_tensor, args.cluster_cache_path)
|
||||
Logger(f"Cluster results saved to {args.cluster_cache_path}")
|
||||
torch.save(processed_tensor, args.cluster_cache_path)
|
||||
Logger(f"Processed results saved to {args.cluster_cache_path}")
|
||||
except Exception as e:
|
||||
Logger(f"Failed to save cluster results: {e}")
|
||||
Logger(f"Failed to save processed results: {e}")
|
||||
|
||||
# 3. 初始化模型的weight_down_embed
|
||||
# 4. 初始化模型的knowledge_dataset
|
||||
if hasattr(model, 'knowledge_dataset') and hasattr(model.knowledge_dataset, 'knowledge_dataset'):
|
||||
model.knowledge_dataset.knowledge_dataset.data.copy_(clustered_tensor)
|
||||
Logger("Successfully initialized model.knowledge_dataset.knowledge_dataset with clustered data")
|
||||
model.knowledge_dataset.knowledge_dataset.data.copy_(processed_tensor)
|
||||
Logger("Successfully initialized model.knowledge_dataset.knowledge_dataset with processed data")
|
||||
else:
|
||||
Logger("Warning: Could not find model.knowledge_dataset.knowledge_dataset to initialize")
|
||||
# 存储为全局变量作为备选
|
||||
globals()['clustered_database'] = clustered_tensor
|
||||
globals()['processed_database'] = processed_tensor
|
||||
|
||||
Logger(f"Database embeddings and sentences stored in model")
|
||||
|
||||
@ -453,6 +224,7 @@ def train_epoch(epoch, accelerator, model, train_loader, optimizer, scheduler, a
|
||||
total_steps_in_epoch = len(train_loader)
|
||||
total_training_steps = args.epochs * total_steps_in_epoch
|
||||
moe_path = '_moe' if args.use_moe else ''
|
||||
best_loss = float('10000')
|
||||
|
||||
# 添加CUDA事件来分析性能 (只在主进程进行)
|
||||
if args.profile and accelerator.is_main_process:
|
||||
@ -516,7 +288,12 @@ def train_epoch(epoch, accelerator, model, train_loader, optimizer, scheduler, a
|
||||
|
||||
# 前向传播
|
||||
with ctx:
|
||||
res = model(X)
|
||||
if step == 0 and args.embedding_epoch == epoch:
|
||||
# 需要设置原始模型的freeze_embedding属性,而不是包装后的模型
|
||||
unwrapped_model = accelerator.unwrap_model(model)
|
||||
unwrapped_model.freeze_embedding = True
|
||||
Logger(f"Set freeze_embedding=True for epoch {epoch}, step {step}", accelerator)
|
||||
res = model(X, step=step)
|
||||
loss = loss_fct(
|
||||
res.logits.view(-1, res.logits.size(-1)),
|
||||
Y.view(-1)
|
||||
@ -640,7 +417,9 @@ def train_epoch(epoch, accelerator, model, train_loader, optimizer, scheduler, a
|
||||
wandb.log(log_dict)
|
||||
|
||||
# 保存模型 (只在主进程进行)
|
||||
if (step + 1) % args.save_interval == 0 and accelerator.is_main_process:
|
||||
loss_total = loss.item() * args.accumulation_steps
|
||||
if best_loss > loss_total and accelerator.is_main_process:
|
||||
best_loss = loss_total
|
||||
# 使用函数开始处定义的moe_path变量
|
||||
ckp = f'{args.save_dir}/pretrain_{args.dim}{moe_path}.pth'
|
||||
|
||||
@ -660,7 +439,8 @@ def main():
|
||||
parser = argparse.ArgumentParser(description="MiniMind Pretraining with Accelerate")
|
||||
parser.add_argument("--out_dir", type=str, default="out")
|
||||
parser.add_argument("--epochs", type=int, default=4)
|
||||
parser.add_argument("--batch_size", type=int, default=48)
|
||||
parser.add_argument("--embedding_epoch", type=int, default=2, help="embedding训练的epoch数")
|
||||
parser.add_argument("--batch_size", type=int, default=64)
|
||||
parser.add_argument("--learning_rate", type=float, default=2e-4)
|
||||
parser.add_argument("--dtype", type=str, default="bfloat16")
|
||||
parser.add_argument("--use_wandb", default=True, action="store_true")
|
||||
@ -681,8 +461,8 @@ def main():
|
||||
parser.add_argument("--profile", action="store_true", default=True, help="启用性能分析")
|
||||
parser.add_argument("--profile_interval", type=int, default=10, help="性能分析打印间隔(步数)")
|
||||
parser.add_argument("--use_flash_attn", action="store_true", default=True, help="启用FlashAttention")
|
||||
parser.add_argument("--knowledge_num", type=int, default=4096,help="知识库的数据数目")
|
||||
parser.add_argument("--knowledge_length", type=int, default=16,help="知识库的句子长度")
|
||||
parser.add_argument("--knowledge_num", type=int, default=8192,help="知识库的数据数目")
|
||||
parser.add_argument("--knowledge_length", type=int, default=32,help="知识库的句子长度")
|
||||
parser.add_argument("--database_init_path", type=str, default="./dataset/database_init.json", help="数据库初始化路径")
|
||||
parser.add_argument("--fast_clustering", action="store_true", default=True, help="使用快速近似聚类算法(适用于大数据集)")
|
||||
parser.add_argument("--cluster_cache_path", type=str, default="./cache/cluster_tokens_single.pt", help="聚类结果缓存文件路径")
|
||||
@ -724,7 +504,8 @@ def main():
|
||||
disable_db=args.disable_db,
|
||||
flash_attn=args.use_flash_attn,
|
||||
knowledge_num=args.knowledge_num,
|
||||
knowledge_length=args.knowledge_length
|
||||
knowledge_length=args.knowledge_length,
|
||||
embeddings_epoch=args.embedding_epoch
|
||||
)
|
||||
|
||||
#########################################################
|
||||
|
Loading…
x
Reference in New Issue
Block a user