#!/bin/bash # ============================================================================ # MiniMind 实验脚本 - Experiment 1.4.5 # ============================================================================ # # 🎯 实验目标: # 基于实验1.4.4,实现VQ-VAE风格的EMA更新机制替代memory_bank的梯度更新 # # 使用方法: # bash run_file/experiment_1_4_5.sh # ============================================================================ # ---------------------------------------------------------------------------- # 🧑‍🔬 实验基本信息 # ---------------------------------------------------------------------------- EXPERIMENT_VERSION="1.4.5" EXPERIMENT_DESCRIPTION="VQ-VAE风格EMA更新机制实验" RESEARCHER_NAME="AI Assistant" EXPERIMENT_DATE="$(date '+%Y-%m-%d %H:%M:%S')" # ---------------------------------------------------------------------------- # 🤖 环境配置 # ---------------------------------------------------------------------------- # 调试和监控环境变量 export NCCL_DEBUG=INFO export PYTHONFAULTHANDLER=1 export CUDA_LAUNCH_BLOCKING=1 # SwanLab 配置 export SWANLAB_PROJECT="MiniMind-Experiment-1.4.5" # 日志配置 LOG_DIR="out/experiment_${EXPERIMENT_VERSION}" mkdir -p "$LOG_DIR" LOG_FILE="$LOG_DIR/experiment.log" # ---------------------------------------------------------------------------- # 🤖 硬件配置 # ---------------------------------------------------------------------------- CUDA_VISIBLE_DEVICES="0" NUM_PROCESSES="1" MIXED_PRECISION="bf16" MAIN_PROCESS_PORT="29500" # ---------------------------------------------------------------------------- # 🤖 模型架构参数 # ---------------------------------------------------------------------------- MODEL_TYPE="model_memory" MODEL_SIZE="50.0" DIM="512" N_LAYERS="8" N_HEADS="32" MAX_SEQ_LEN="512" USE_MOE="false" # 知识库配置(使用更大规模测试EMA机制) KNOWLEDGE_NUM="1048576" # 1024x1024 = 1048576,更大规模测试EMA KNOWLEDGE_LENGTH="32" KNOWLEDGE_DIM="128" DISABLE_DB="false" # ---------------------------------------------------------------------------- # 🤖 训练超参数 # ---------------------------------------------------------------------------- EPOCHS="3" EMBEDDING_EPOCH="2" BATCH_SIZE="96" ACCUMULATION_STEPS="8" LEARNING_RATE="2e-4" DTYPE="bfloat16" GRAD_CLIP="1.0" WARMUP_ITERS="0" # 平衡损失配置(沿用1.4.4的成功配置) BALANCE_LOSS_COEF="0.1" # 数据和缓存路径 DATA_PATH="/home/pci/ycz/Code/Minimind/dataset/stable/merged_pretrain.jsonl" DATABASE_INIT_PATH="/home/pci/ycz/Code/Minimind/dataset/stable/sentence_trex_data.json" CLUSTER_CACHE_PATH="None" # 禁用聚类缓存以测试EMA效果 VAL_DATA_PATH="dataset/stable/eval_data.json" # 训练配置 NUM_WORKERS="1" LOG_INTERVAL="100" VAL_INTERVAL="100" SAVE_INTERVAL="10000" # 性能分析配置 USE_PROFILE="true" PROFILE_INTERVAL="10" MEMORY_MONITOR_INTERVAL="100" # 高级功能 USE_FLASH_ATTN="true" FAST_CLUSTERING="true" # ---------------------------------------------------------------------------- # 🤖 预检查函数 # ---------------------------------------------------------------------------- check_environment() { echo "🔍 环境检查中..." # 检查GPU可用性 if ! nvidia-smi &> /dev/null; then echo "❌ 错误: 未检测到GPU或nvidia-smi不可用" exit 1 fi # 检查CUDA设备 if ! nvidia-smi -i "$CUDA_VISIBLE_DEVICES" &> /dev/null; then echo "❌ 错误: GPU $CUDA_VISIBLE_DEVICES 不可用" exit 1 fi # 检查Python环境 if ! .venv/bin/python -c "import torch; print(f'PyTorch: {torch.__version__}')" 2>/dev/null; then echo "❌ 错误: PyTorch未正确安装" exit 1 fi # 检查数据文件 if [[ ! -f "$DATA_PATH" ]]; then echo "❌ 错误: 训练数据文件不存在: $DATA_PATH" exit 1 fi if [[ ! -f "$DATABASE_INIT_PATH" ]]; then echo "❌ 错误: 数据库初始化文件不存在: $DATABASE_INIT_PATH" exit 1 fi # 检查EMA相关模型实现 if ! .venv/bin/python -c "from model.model_memory import *; print('EMA模型实现检查通过')" 2>/dev/null; then echo "❌ 错误: EMA模型实现存在问题" exit 1 fi echo "✅ 环境检查通过" } # ---------------------------------------------------------------------------- # 🤖 实验信息记录 # ---------------------------------------------------------------------------- log_experiment_info() { echo "📝 记录实验信息..." cat > "$LOG_DIR/experiment_info.txt" << EOF ======================================== MiniMind 实验信息 ======================================== 实验版本: $EXPERIMENT_VERSION 实验描述: $EXPERIMENT_DESCRIPTION 研究者: $RESEARCHER_NAME 开始时间: $EXPERIMENT_DATE ======================================== 硬件配置: GPU设备: $CUDA_VISIBLE_DEVICES 进程数: $NUM_PROCESSES 混合精度: $MIXED_PRECISION ======================================== 模型配置: 模型类型: $MODEL_TYPE 模型大小: $MODEL_SIZE MB 维度: $DIM 层数: $N_LAYERS 注意力头数: $N_HEADS 最大序列长度: $MAX_SEQ_LEN 知识库大小: $KNOWLEDGE_NUM 知识长度: $KNOWLEDGE_LENGTH 知识维度: $KNOWLEDGE_DIM ======================================== 训练配置: 训练轮次: $EPOCHS 批次大小: $BATCH_SIZE 学习率: $LEARNING_RATE 梯度累积: $ACCUMULATION_STEPS 数据类型: $DTYPE 平衡损失系数: $BALANCE_LOSS_COEF ======================================== EMA配置: 使用EMA更新: 是(VQ-VAE风格) EMA衰减率: 0.999(默认配置) EMA更新频率: 1(每步更新) ======================================== 数据路径: 训练数据: $DATA_PATH 验证数据: $VAL_DATA_PATH 数据库初始化: $DATABASE_INIT_PATH 聚类缓存: $CLUSTER_CACHE_PATH ======================================== EOF } # ---------------------------------------------------------------------------- # 🤖 主执行函数 # ---------------------------------------------------------------------------- run_experiment() { echo "🚀 开始执行实验 $EXPERIMENT_VERSION" echo "📄 实验描述: $EXPERIMENT_DESCRIPTION" echo "⏰ 开始时间: $EXPERIMENT_DATE" # 构建训练命令 local train_cmd="CUDA_VISIBLE_DEVICES=$CUDA_VISIBLE_DEVICES .venv/bin/python train_pretrain_accelerate.py" # 添加训练参数 train_cmd+=" --out_dir \"$LOG_DIR\"" train_cmd+=" --epochs $EPOCHS" train_cmd+=" --embedding_epoch $EMBEDDING_EPOCH" train_cmd+=" --batch_size $BATCH_SIZE" train_cmd+=" --learning_rate $LEARNING_RATE" train_cmd+=" --dtype $DTYPE" train_cmd+=" --num_workers $NUM_WORKERS" train_cmd+=" --accumulation_steps $ACCUMULATION_STEPS" train_cmd+=" --grad_clip $GRAD_CLIP" train_cmd+=" --warmup_iters $WARMUP_ITERS" train_cmd+=" --log_interval $LOG_INTERVAL" train_cmd+=" --val_interval $VAL_INTERVAL" train_cmd+=" --save_interval $SAVE_INTERVAL" train_cmd+=" --dim $DIM" train_cmd+=" --n_layers $N_LAYERS" train_cmd+=" --n_heads $N_HEADS" train_cmd+=" --max_seq_len $MAX_SEQ_LEN" train_cmd+=" --data_path \"$DATA_PATH\"" train_cmd+=" --val_data_path \"$VAL_DATA_PATH\"" train_cmd+=" --knowledge_num $KNOWLEDGE_NUM" train_cmd+=" --knowledge_length $KNOWLEDGE_LENGTH" train_cmd+=" --database_init_path \"$DATABASE_INIT_PATH\"" train_cmd+=" --memory_monitor_interval $MEMORY_MONITOR_INTERVAL" train_cmd+=" --model_type \"$MODEL_TYPE\"" train_cmd+=" --model_size $MODEL_SIZE" train_cmd+=" --balance_loss_coef $BALANCE_LOSS_COEF" # 可选参数 if [[ "$USE_PROFILE" == "true" ]]; then train_cmd+=" --profile" train_cmd+=" --profile_interval $PROFILE_INTERVAL" fi if [[ "$USE_FLASH_ATTN" == "true" ]]; then train_cmd+=" --use_flash_attn" fi if [[ "$FAST_CLUSTERING" == "true" ]]; then train_cmd+=" --fast_clustering" fi if [[ "$CLUSTER_CACHE_PATH" != "None" ]]; then train_cmd+=" --cluster_cache_path \"$CLUSTER_CACHE_PATH\"" fi # SwanLab配置 train_cmd+=" --use_swanlab" train_cmd+=" --swanlab_project \"$SWANLAB_PROJECT\"" train_cmd+=" --swanlab_online True" echo "📋 执行命令:" echo "$train_cmd" echo # 记录命令到日志文件 echo "执行命令: $train_cmd" >> "$LOG_FILE" echo "开始时间: $(date)" >> "$LOG_FILE" # 使用nohup执行训练(后台运行,输出写入日志文件) echo "🔄 使用nohup后台运行训练,输出将写入日志文件: $LOG_FILE" # 创建训练脚本 train_script="/tmp/train_${EXPERIMENT_VERSION}.sh" cat > "$train_script" << EOF #!/bin/bash cd /home/pci/ycz/Code/pretrain-worktree source /home/pci/ycz/Code/pretrain-worktree/.venv/bin/activate $train_cmd echo "结束时间: \$(date)" echo "退出代码: \$?" EOF chmod +x "$train_script" # 使用nohup后台运行 nohup bash "$train_script" >> "$LOG_FILE" 2>&1 & local train_pid=$! echo "🔥 训练进程已启动,PID: $train_pid" echo "训练PID: $train_pid" >> "$LOG_FILE" echo "训练脚本: $train_script" >> "$LOG_FILE" # 等待几秒确保进程启动 sleep 5 # 检查进程是否还在运行 if kill -0 $train_pid 2>/dev/null; then echo "✅ 训练进程正在后台运行" echo "📋 实时查看日志: tail -f $LOG_FILE" echo "📋 检查进程状态: ps -p $train_pid" echo "🛑 停止训练: kill $train_pid" echo "📈 SwanLab: https://swanlab.cn/project/$SWANLAB_PROJECT" echo "" echo "🧠 VQ-VAE风格EMA更新机制正在测试中..." echo " - memory_bank使用EMA更新而非梯度更新" echo " - EMA衰减率: 0.999" echo " - 每步更新频率" echo " - 预期: 更稳定的训练和更好的记忆表示学习" echo "" echo "训练正在后台运行,可以安全关闭终端。" else echo "❌ 训练进程启动失败" echo "📋 查看日志: $LOG_FILE" exit 1 fi } # ---------------------------------------------------------------------------- # 🤖 清理函数 # ---------------------------------------------------------------------------- cleanup() { echo "🧹 清理临时文件..." # 删除临时验证文件 rm -f /tmp/temp_val.jsonl } # ---------------------------------------------------------------------------- # 🤖 信号处理 # ---------------------------------------------------------------------------- trap cleanup EXIT trap 'echo "❌ 实验被中断"; cleanup; exit 130' INT TERM # ---------------------------------------------------------------------------- # 🤖 主程序入口 # ---------------------------------------------------------------------------- main() { echo "============================================================================" echo "🧠 MiniMind 预训练实验 1.4.5" echo "🎯 VQ-VAE风格EMA更新机制 - 替代memory_bank梯度更新" echo "============================================================================" # 执行检查和初始化 check_environment log_experiment_info # 运行实验 run_experiment echo "============================================================================" echo "✅ 实验 $EXPERIMENT_VERSION 启动完成" echo "📅 启动时间: $(date)" echo "============================================================================" } # 执行主程序 main "$@"