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trainf.py
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335 lines (275 loc) · 12.4 KB
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import os
import json
import math
import datetime
import numpy as np
import torch
import torch.nn as nn
import torch.nn.functional as F
import sentencepiece as spm
import matplotlib.pyplot as plt
from model_optimized import MemoryOptimizedBigramLM
# --------------------------- 超参数 ---------------------------
device = 'cuda' if torch.cuda.is_available() else 'cpu'
batch_size = 8
num_iter = 10000
eval_interval = 500
eval_iters = 500
d_model = 512
h = 8
Nx = 6
dropout_rate = 0.2
lr_rate = 1e-4
max_seq_len = 2048
# 停止标记增强参数
stop_token_weight = 1 # 增加停止标记的损失权重
enable_stop_training = True # 启用停止标记专门训练
model_save_dir = "saved_models"
os.makedirs(model_save_dir, exist_ok=True)
torch.manual_seed(1337)
# --------------------------- tokenizer ------------------------
sp = spm.SentencePieceProcessor()
sp.load("tokenizer.model")
def encode(s):
return sp.encode(s, out_type=int)
def decode(tokens):
text = sp.decode(tokens)
if "<END>" in text:
text = text.split("<END>")[0]
return text.strip()
vocab_size = sp.get_piece_size()
print(f"词汇表大小: {vocab_size}")
# 获取<END>标记ID
end_token_id = sp.piece_to_id("<END>")
print(f"<END>标记ID: {end_token_id}")
# --------------------------- 数据加载 ------------------------
all_lines = []
with open('data.txt', 'r', encoding='utf-8') as f:
for line in f:
line = line.strip()
if not line:
continue
tokens = encode(line)
# 过滤掉超过最大序列长度的序列
if len(tokens) <= max_seq_len:
all_lines.append(tokens)
split_90perc = int(0.9 * len(all_lines))
train_lines = all_lines[:split_90perc]
valid_lines = all_lines[split_90perc:]
print(f"训练样本数: {len(train_lines)}, 验证样本数: {len(valid_lines)}")
# 分析<END>标记在训练数据中的分布
def analyze_stop_token_distribution():
"""分析停止标记在训练数据中的分布"""
print(f"\n分析<END>标记分布:")
end_positions = []
for tokens in train_lines[:100]: # 分析前100个样本
if end_token_id in tokens:
pos = tokens.index(end_token_id)
end_positions.append(pos)
# 检查<END>是否在末尾
if pos != len(tokens) - 1:
print(f"警告: <END>不在末尾,位置: {pos}/{len(tokens)}")
if end_positions:
avg_position = np.mean(end_positions)
print(f"<END>平均位置: {avg_position:.1f} (总长度)")
print(f"包含<END>的样本比例: {len(end_positions)}/100")
else:
print("未找到<END>标记")
analyze_stop_token_distribution()
# --------------------------- 增强的损失函数 ---------------------------
class EnhancedLoss(nn.Module):
def __init__(self, stop_token_id, stop_weight=2.0):
super().__init__()
self.stop_token_id = stop_token_id
self.stop_weight = stop_weight
self.criterion = nn.CrossEntropyLoss()
def forward(self, logits, targets):
# 标准交叉熵损失
standard_loss = self.criterion(logits.view(-1, logits.size(-1)), targets.view(-1))
if enable_stop_training:
# 增强停止标记的损失权重
batch_size, seq_len, vocab_size = logits.shape
# 找到目标中<END>标记的位置
stop_mask = (targets == self.stop_token_id)
if stop_mask.any():
# 计算停止标记的损失
stop_logits = logits[stop_mask]
stop_targets = targets[stop_mask]
stop_loss = self.criterion(stop_logits, stop_targets)
# 加权组合损失
total_loss = standard_loss + self.stop_weight * stop_loss
return total_loss, standard_loss.item(), stop_loss.item()
return standard_loss, standard_loss.item(), 0.0
# --------------------------- batch ---------------------------
def get_batch(split, batch_size_override=None):
current_batch_size = batch_size_override if batch_size_override else batch_size
dataset = train_lines if split == "train" else valid_lines
batch_lines = [dataset[i] for i in np.random.randint(0, len(dataset), current_batch_size)]
x = [torch.tensor(line[:-1], dtype=torch.long) for line in batch_lines]
y = [torch.tensor(line[1:], dtype=torch.long) for line in batch_lines]
max_len = max(len(xx) for xx in x)
# Use padding token ID 1 instead of 0
x = torch.stack([F.pad(xx, (0, max_len - len(xx)), value=1) for xx in x]).to(device)
y = torch.stack([F.pad(yy, (0, max_len - len(yy)), value=1) for yy in y]).to(device)
return x, y
# --------------------------- 验证函数 ---------------------------
@torch.no_grad()
def estimate_loss_and_ppl(model, criterion):
result = {}
model.eval()
for split in ['train', 'valid']:
losses = []
stop_losses = []
for e in range(eval_iters):
X, Y = get_batch(split, batch_size_override=4)#验证batch减半
logits, _ = model(X, Y)
total_loss, standard_loss, stop_loss = criterion(logits, Y)
losses.append(standard_loss)
stop_losses.append(stop_loss)
# 显式清理GPU内存
del X, Y, logits
if device == 'cuda':
torch.cuda.empty_cache()
avg_loss = np.mean(losses)
avg_stop_loss = np.mean(stop_losses) if stop_losses[0] > 0 else 0.0
ppl = math.exp(avg_loss)
result[f'{split}_loss'] = avg_loss
result[f'{split}_ppl'] = ppl
result[f'{split}_stop_loss'] = avg_stop_loss
model.train()
return result
# --------------------------- 保存模型 ---------------------------
def save_model(model, optimizer, iteration, train_losses, valid_losses, train_ppls, valid_ppls, final=False):
timestamp = datetime.datetime.now().strftime("%Y%m%d_%H%M%S")
checkpoint = {
'iteration': iteration,
'model_state_dict': model.state_dict(),
'optimizer_state_dict': optimizer.state_dict(),
'train_losses': train_losses,
'valid_losses': valid_losses,
'train_ppls': train_ppls,
'valid_ppls': valid_ppls,
'vocab_size': vocab_size,
'd_model': d_model,
'h': h,
'Nx': Nx,
'dropout_rate': dropout_rate,
'save_time': timestamp
}
if final:
filename = f"{model_save_dir}/gpt_model_enhanced_stop_{timestamp}.pth"
else:
filename = f"{model_save_dir}/gpt_model_checkpoint_enhanced_stop_{timestamp}_iter_{iteration}.pth"
torch.save(checkpoint, filename)
print(f"模型已保存到: {filename}")
# --------------------------- 加载已训练模型 ---------------------------
def load_pretrained_model():
"""加载已训练好的模型"""
model = MemoryOptimizedBigramLM(
vocab_size=vocab_size,
d_model=d_model,
max_seq_len=max_seq_len,
h=h,
Nx=Nx,
dropout_rate=dropout_rate
).to(device)
# 加载最新的训练模型权重
try:
checkpoint = torch.load("saved_models/gpt_model_enhanced_stop_20251003_200243.pth", map_location=device, weights_only=False)
# 过滤掉mask相关的键,因为它们不是模型参数而是缓冲区
state_dict = checkpoint['model_state_dict']
filtered_state_dict = {k: v for k, v in state_dict.items() if 'mask' not in k}
model.load_state_dict(filtered_state_dict, strict=False)
print("✅ 成功加载已训练模型权重")
print(f"已训练迭代次数: {checkpoint['iteration']}")
print(f"最终训练损失: {checkpoint['train_losses'][-1]:.4f}")
print(f"最终验证损失: {checkpoint['valid_losses'][-1]:.4f}")
return model, checkpoint
except Exception as e:
print(f"❌ 加载模型失败: {e}")
print("将从头开始训练...")
return model, None
# --------------------------- 主训练 ---------------------------
def main():
# 加载已训练模型
model, pretrained_checkpoint = load_pretrained_model()
# 使用增强的损失函数
criterion = EnhancedLoss(end_token_id, stop_token_weight)
optimizer = torch.optim.AdamW(model.parameters(), lr=lr_rate)
# 如果加载了预训练模型,可以继续使用之前的优化器状态
if pretrained_checkpoint and 'optimizer_state_dict' in pretrained_checkpoint:
optimizer.load_state_dict(pretrained_checkpoint['optimizer_state_dict'])
print("✅ 加载优化器状态")
train_losses, valid_losses, train_ppls, valid_ppls = [], [], [], []
train_stop_losses = []
print("开始增强停止标记训练...")
print(f"停止标记权重: {stop_token_weight}")
print(f"启用停止训练: {enable_stop_training}")
try:
for iter in range(num_iter):
if iter % eval_interval == 0:
# 验证前清理内存
if device == 'cuda':
torch.cuda.empty_cache()
results = estimate_loss_and_ppl(model, criterion)
train_losses.append(results['train_loss'])
valid_losses.append(results['valid_loss'])
train_ppls.append(results['train_ppl'])
valid_ppls.append(results['valid_ppl'])
train_stop_losses.append(results['train_stop_loss'])
print(f"step {iter}: train_loss={results['train_loss']:.4f}, "
f"valid_loss={results['valid_loss']:.4f}, "
f"train_ppl={results['train_ppl']:.2f}, valid_ppl={results['valid_ppl']:.2f}")
if results['train_stop_loss'] > 0:
print(f" stop_loss={results['train_stop_loss']:.4f}")
optimizer.zero_grad(set_to_none=True)
xb, yb = get_batch("train")
logits, _ = model(xb, yb)
loss, standard_loss, stop_loss = criterion(logits, yb)
loss.backward()
optimizer.step()
# 每100步清理一次GPU缓存
if iter % 100 == 0 and device == 'cuda':
torch.cuda.empty_cache()
except KeyboardInterrupt:
print("\n训练中断,保存当前进度...")
save_model(model, optimizer, iter, train_losses, valid_losses, train_ppls, valid_ppls, final=False)
except torch.OutOfMemoryError as e:
print(f"\n内存不足错误: {e}")
print("尝试保存当前进度...")
save_model(model, optimizer, iter, train_losses, valid_losses, train_ppls, valid_ppls, final=False)
raise e
save_model(model, optimizer, num_iter, train_losses, valid_losses, train_ppls, valid_ppls, final=True)
# --------------------------- 测试停止功能 ---------------------------
print("\n测试停止功能:")
test_prompts = [
"关键词: 风 雾 寂寞",
"关键词: 信 天涯 晚风",
"关键词: 贴心 改变 自信"
]
for prompt in test_prompts:
print(f"\n{'='*50}")
print(f"测试: {prompt}")
context = torch.tensor([encode(prompt)], dtype=torch.long, device=device)
with torch.no_grad():
generated_tokens = model.generate(
context,
max_new_tokens=300,
temperature=0.9,
top_k=50,
repetition_penalty=1.3,
eos_token_id=end_token_id
)[0].tolist()
generated_text = sp.decode(generated_tokens)
has_end = "<END>" in generated_text
if has_end:
end_pos = generated_text.find("<END>")
response = generated_text[:end_pos].strip()
print(f"✅ 成功使用<END>停止")
print(f"输出: {response}")
else:
print(f"❌ 未使用<END>停止")
print(f"输出: {generated_text}")
print(f"\n增强停止标记训练完成,模型已保存到 '{model_save_dir}'")
if __name__ == "__main__":
main()