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- import os
- # 禁用 FlashAttention 和 FLA,解决沐曦显卡共享内存不足问题
- os.environ["PYTORCH_NO_FLASH"] = "1"
- os.environ["FLASH_ATTENTION_ENABLED"] = "0"
- os.environ["USE_FLASH_ATTENTION"] = "0"
- os.environ["TORCH_FLASH_ATTN"] = "0"
- # 禁用 torch.compile,避免每个任务 fork 几十个 inductor worker
- os.environ["PT2_COMPILE"] = "0"
- os.environ["TORCHINDUCTOR_MAX_WORKERS"] = "1"
- # 解决 PyTorch 显存碎片化问题(避免 reserved unallocated 占用大量显存)
- os.environ["PYTORCH_CUDA_ALLOC_CONF"] = "expandable_segments:True"
- # CUDA_VISIBLE_DEVICES 由 docker exec 层设置(remote_executor.py),此处不再覆盖
- # 单 GPU 模式: "3" (物理 GPU 3 → 逻辑 cuda:0)
- # 多 GPU 模式: "2,3" (物理 GPU 2,3 → 逻辑 cuda:0,1)
- # 启用 MPS 多进程服务,允许与 VLLM 共享 GPU
- os.environ["MACA_MPS_MODE"] = "1"
- import asyncio
- import json
- import logging
- from pathlib import Path
- from typing import Any
- # 远程训练节点没有 pydantic-settings/数据库,直接用环境变量
- from types import SimpleNamespace
- _data_dir = Path(os.environ.get("COMPUTE_NODE_REMOTE_DATA_DIR", "/root/Fine-tuning/backend/data"))
- settings = SimpleNamespace(
- data_dir=_data_dir,
- processed_dir=_data_dir / "processed",
- adapters_dir=_data_dir / "adapters",
- models_dir=_data_dir / "models",
- )
- logger = logging.getLogger(__name__)
- from app.engines.base import BaseEngine
- class TextEngine(BaseEngine):
- """文本模型训练引擎 (LLaMA/Qwen/ChatGLM 等因果语言模型)。"""
- def __init__(self):
- self._tokenizer = None
- self._model = None
- async def load_model(self, model_id: str, **kwargs: Any) -> None:
- """下载并加载基础模型。GPU 加载超时直接报错。"""
- import torch
- from transformers import AutoModelForCausalLM, AutoTokenizer
- # 远程节点不查数据库,直接扫描本地模型目录
- local_path = str(settings.models_dir / model_id.replace("/", "_"))
- # 如果本地没有,从 HF 下载
- if not (Path(local_path) / "config.json").exists():
- ms_path = settings.models_dir / model_id
- if (ms_path / "config.json").exists():
- local_path = str(ms_path)
- else:
- from huggingface_hub import snapshot_download
- snapshot_download(
- repo_id=model_id,
- local_dir=local_path,
- local_dir_use_symlinks=False,
- )
- quantization = kwargs.get("quantization", None)
- gpu_timeout = int(os.environ.get("GPU_LOAD_TIMEOUT", "30"))
- # 记录 GPU 状态
- logger.info(f"CUDA available: {torch.cuda.is_available()}")
- logger.info(f"CUDA device count: {torch.cuda.device_count()}")
- if torch.cuda.is_available():
- for i in range(torch.cuda.device_count()):
- logger.info(f"GPU {i}: {torch.cuda.get_device_name(i)}")
- logger.info(f"GPU {i} memory: {torch.cuda.get_device_properties(i).total_memory / (1024**3):.2f} GB")
- else:
- raise RuntimeError("No GPU detected! Training requires GPU.")
- # DDP 模式: LOCAL_RANK 由 torchrun 设置;单 GPU 模式默认为 0
- local_rank = int(os.environ.get("LOCAL_RANK", "0"))
- device_map = {"": local_rank}
- load_kwargs: dict[str, Any] = {
- "dtype": torch.float16,
- "device_map": device_map,
- "low_cpu_mem_usage": True,
- "use_safetensors": True,
- "attn_implementation": "sdpa",
- }
- if quantization == "4bit" or quantization == "qlora":
- # 沐曦 GPU 不支持 bitsandbytes/HQQ,直接 fp16 + LoRA
- load_kwargs["torch_dtype"] = torch.float16
- logger.info("4-bit quantization not supported on this GPU; "
- "falling back to fp16 + LoRA")
- elif quantization == "8bit":
- # 沐曦 GPU 不支持 bitsandbytes,直接 fp16 + LoRA
- load_kwargs["torch_dtype"] = torch.float16
- logger.info("8-bit quantization not supported on this GPU; "
- "falling back to fp16 + LoRA")
- self._tokenizer = AutoTokenizer.from_pretrained(local_path, trust_remote_code=True)
- if self._tokenizer.pad_token is None:
- self._tokenizer.pad_token = self._tokenizer.eos_token
- # GPU 加载:用超时包装,避免 MetaX 驱动无限重试卡死
- model_load_result = [None]
- load_error = [None]
- def _load_on_gpu():
- try:
- model_load_result[0] = AutoModelForCausalLM.from_pretrained(local_path, **load_kwargs)
- except Exception as e:
- load_error[0] = e
- load_thread = __import__("threading").Thread(target=_load_on_gpu, daemon=True)
- load_thread.start()
- load_thread.join(timeout=gpu_timeout)
- if load_thread.is_alive():
- raise RuntimeError(
- f"GPU model loading timed out after {gpu_timeout}s. "
- f"This is usually caused by GPU resource conflict (e.g., VLLM occupying the GPU). "
- f"Set GPU_LOAD_TIMEOUT env var to adjust timeout."
- )
- if load_error[0] is not None:
- raise RuntimeError(f"GPU model loading failed: {load_error[0]}")
- self._model = model_load_result[0]
- logger.info(f"Loaded model on GPU: {model_id}")
- def get_peft_config(self, method: str, params: dict[str, Any]) -> Any:
- """根据 PEFT 方法返回对应的配置对象。"""
- from app.peft import (
- build_adalora_config,
- build_lora_config,
- build_qlora_config,
- )
- builders = {
- "lora": build_lora_config,
- "qlora": build_qlora_config,
- "adalora": build_adalora_config,
- }
- builder = builders.get(method, build_lora_config)
- return builder(params)
- async def preprocess_dataset(
- self,
- dataset_path: str,
- output_path: str,
- task_type: str = "sft",
- template: str = "alpaca",
- **kwargs: Any,
- ) -> str:
- """将数据集预处理为训练格式。"""
- from app.preprocessors import preprocess_file
- processed = preprocess_file(dataset_path, output_path, task_type, template)
- logger.info(f"Preprocessed {len(processed)} samples for {task_type}/{template}")
- return output_path
- async def train(
- self,
- job_id: str,
- dataset_path: str,
- peft_config: Any,
- training_args: dict[str, Any],
- callbacks: list | None = None,
- ) -> str:
- """执行训练。"""
- from peft import get_peft_model
- from transformers import DataCollatorForSeq2Seq, TrainingArguments
- task_type = training_args.get("task_type", "sft")
- epochs = training_args.get("epochs", 3)
- batch_size = training_args.get("batch_size", 4)
- gradient_accumulation = training_args.get("gradient_accumulation", 4)
- learning_rate = training_args.get("learning_rate", 2e-4)
- max_seq_length = training_args.get("max_seq_length", 2048)
- warmup_ratio = training_args.get("warmup_ratio", 0.05)
- save_strategy = training_args.get("save_strategy", "epoch")
- deepspeed_config = training_args.get("deepspeed", None)
- # DDP 支持
- local_rank = int(os.environ.get("LOCAL_RANK", "0"))
- world_size = int(os.environ.get("WORLD_SIZE", "1"))
- is_ddp = world_size > 1
- # SFT 需要预先 tokenize;DPO/PPO 各自处理数据
- if task_type == "sft":
- dataset = self._tokenize_dataset(dataset_path, max_seq_length)
- elif task_type == "dpo":
- dataset = self._load_dataset_dpo(dataset_path)
- else:
- dataset = None # PPO 在后面单独处理
- # 计算总步数(DDP 模式下 Trainer 自动按 world_size 分发数据)
- if dataset is not None:
- dataset_len = len(dataset)
- else:
- # PPO: 从文件行数估算
- with open(dataset_path, "r", encoding="utf-8") as f:
- dataset_len = sum(1 for line in f if line.strip())
- effective_batch = batch_size * gradient_accumulation * world_size
- max_steps = max(1, (dataset_len * epochs) // effective_batch)
- # AdaLoRA 要求 total_step > 0(通过属性名判断而非 isinstance,避免导入路径问题)
- if hasattr(peft_config, "init_r") and hasattr(peft_config, "target_r"):
- peft_config.total_step = max_steps
- self._model = get_peft_model(self._model, peft_config)
- self._model.print_trainable_parameters()
- output_dir = str(settings.adapters_dir / job_id)
- tr_args = TrainingArguments(
- output_dir=output_dir,
- num_train_epochs=epochs,
- max_steps=max_steps,
- per_device_train_batch_size=batch_size,
- gradient_accumulation_steps=gradient_accumulation,
- learning_rate=learning_rate,
- warmup_ratio=warmup_ratio,
- save_strategy=save_strategy,
- logging_strategy="steps",
- logging_steps=10,
- fp16=True,
- optim="adamw_torch",
- remove_unused_columns=False,
- report_to="none",
- gradient_checkpointing=True,
- dataloader_num_workers=4,
- dataloader_pin_memory=False,
- local_rank=local_rank if is_ddp else -1,
- ddp_find_unused_parameters=False if is_ddp else None,
- **({"deepspeed": deepspeed_config} if deepspeed_config else {}),
- )
- # 本地模式用 WebSocket 回调,远程模式用传入的文件日志回调
- # 用 is None 判断而非 falsy,因为 DDP 非 rank 0 传入空列表 [],不需要进度回调
- all_callbacks = callbacks if callbacks is not None else [_ProgressCallback(job_id)]
- if task_type == "sft":
- from transformers import Trainer
- trainer = Trainer(
- model=self._model,
- args=tr_args,
- train_dataset=dataset,
- data_collator=DataCollatorForSeq2Seq(self._tokenizer),
- callbacks=all_callbacks,
- )
- elif task_type == "dpo":
- from copy import deepcopy
- from trl import DPOConfig, DPOTrainer
- # 显式创建 reference model 并冻结,避免 AdaLora 多 adapter 冲突
- ref_model = deepcopy(self._model)
- ref_model.eval()
- for param in ref_model.parameters():
- param.requires_grad = False
- # 将 ref_model 上的 PEFT adapter 设为推理模式
- # AdaLora 只允许 1 个可训练 adapter,policy model 已有 1 个
- if hasattr(ref_model, "set_adapter"):
- try:
- ref_model.set_adapter("default", inference_mode=True)
- except Exception:
- pass
- elif hasattr(ref_model, "peft_config"):
- for adapter_name in list(ref_model.peft_config.keys()):
- try:
- ref_model.peft_config[adapter_name].inference_mode = True
- except Exception:
- pass
- base_trainer_kwargs = dict(
- output_dir=output_dir,
- num_train_epochs=epochs,
- max_steps=max_steps,
- per_device_train_batch_size=batch_size,
- gradient_accumulation_steps=gradient_accumulation,
- learning_rate=learning_rate,
- warmup_ratio=warmup_ratio,
- save_strategy=save_strategy,
- logging_steps=10,
- fp16=True,
- report_to="none",
- dataloader_num_workers=4,
- dataloader_pin_memory=False,
- )
- trainer = DPOTrainer(
- model=self._model,
- ref_model=ref_model,
- args=DPOConfig(**base_trainer_kwargs),
- train_dataset=dataset,
- processing_class=self._tokenizer,
- )
- elif task_type == "ppo":
- from copy import deepcopy
- import torch
- from trl import PPOConfig, PPOTrainer
- ppo_epochs = training_args.get("ppo_epochs", 4)
- vf_coef = training_args.get("vf_coef", 0.1)
- kl_coef = training_args.get("kl_coef", 0.2)
- response_length = training_args.get("response_length", 512)
- reward_model_path = training_args.get("reward_model_path")
- reward_type = training_args.get("reward_type", "heuristic")
- # PPO 专用:仅 tokenize prompt
- ppo_dataset = self._tokenize_dataset_ppo(dataset_path, max_seq_length, response_length)
- # Reference 模型(冻结,用于 KL 惩罚)
- ref_model = deepcopy(self._model)
- ref_model.eval()
- for param in ref_model.parameters():
- param.requires_grad = False
- ppo_config = PPOConfig(
- learning_rate=learning_rate,
- batch_size=batch_size,
- gradient_accumulation_steps=gradient_accumulation,
- ppo_epochs=ppo_epochs,
- vf_coef=vf_coef,
- kl_ctl=kl_coef,
- response_length=response_length,
- output_dir=output_dir,
- logging_steps=10,
- save_strategy=save_strategy,
- fp16=True,
- report_to="none",
- dataloader_num_workers=4,
- dataloader_pin_memory=False,
- )
- trainer = PPOTrainer(
- config=ppo_config,
- model=self._model,
- ref_model=ref_model,
- processing_class=self._tokenizer,
- train_dataset=ppo_dataset,
- )
- dataloader = trainer.dataloader
- total_steps = len(dataloader) * epochs
- step_count = 0
- for epoch in range(epochs):
- for batch in dataloader:
- step_count += 1
- query_tensors = batch["input_ids"]
- # 生成回答
- response_tensors = []
- for query in query_tensors:
- query_tensor = torch.tensor(query).unsqueeze(0).to(self._model.device)
- gen_output = self._model.generate(
- query_tensor,
- max_new_tokens=response_length,
- do_sample=True,
- top_p=0.9,
- temperature=0.7,
- )
- response_tensors.append(gen_output[0][query_tensor.shape[-1]:])
- # 解码文本用于奖励计算
- responses_text = [
- self._tokenizer.decode(r, skip_special_tokens=True)
- for r in response_tensors
- ]
- prompts_text = [
- self._tokenizer.decode(q, skip_special_tokens=True)
- for q in query_tensors
- ]
- # 计算奖励
- if reward_type == "model" and reward_model_path:
- from transformers import AutoModelForSequenceClassification
- reward_model = AutoModelForSequenceClassification.from_pretrained(
- reward_model_path, device_map={"": 0}
- )
- reward_inputs = [p + r for p, r in zip(prompts_text, responses_text)]
- tokenized = self._tokenizer(
- reward_inputs, return_tensors="pt", padding=True, truncation=True
- ).to(self._model.device)
- with torch.no_grad():
- rewards = reward_model(**tokenized).logits.squeeze(-1).tolist()
- else:
- rewards = _compute_heuristic_reward(prompts_text, responses_text)
- reward_tensors = [torch.tensor(r, device=self._model.device) for r in rewards]
- # PPO 更新
- stats = trainer.step(query_tensors, response_tensors, reward_tensors)
- # 报告进度
- if step_count % 10 == 0:
- for cb in (all_callbacks or []):
- if hasattr(cb, "on_log"):
- cb.on_log(
- SimpleNamespace(),
- SimpleNamespace(
- epoch=epoch, global_step=step_count, max_steps=total_steps
- ),
- None,
- logs={
- "loss": stats.get("ppo/loss/total", 0),
- "learning_rate": stats.get("ppo/learning_rate", learning_rate),
- },
- )
- self._model.save_pretrained(output_dir)
- self._tokenizer.save_pretrained(output_dir)
- logger.info(f"PPO training completed for job {job_id}")
- return output_dir
- else:
- raise ValueError(f"Unsupported task_type: {task_type}. Supported: sft, dpo, ppo")
- try:
- trainer.train()
- self._model.save_pretrained(output_dir)
- self._tokenizer.save_pretrained(output_dir)
- logger.info(f"Training completed for job {job_id}")
- except Exception as e:
- logger.error(f"Training failed for job {job_id}: {e}")
- raise
- return output_dir
- def get_model_info(self, model_id: str) -> dict[str, Any]:
- """读取模型配置信息。"""
- import json
- from pathlib import Path
- # 同步查找模型路径(兼容 HF 和 ModelScope)
- candidates = [
- settings.models_dir / model_id.replace("/", "_"),
- settings.models_dir / model_id,
- ]
- config_path = None
- for p in candidates:
- if (p / "config.json").exists():
- config_path = p / "config.json"
- break
- if not config_path:
- # 最后尝试扫描
- model_name = model_id.split("/")[-1]
- for cp in settings.models_dir.rglob("config.json"):
- if model_name in str(cp.parent):
- config_path = cp
- break
- if config_path.exists():
- with open(config_path) as f:
- config = json.load(f)
- return {
- "model_type": config.get("model_type", "causal_lm"),
- "context_length": config.get("max_position_embeddings", config.get("max_sequence_length", 2048)),
- "hidden_size": config.get("hidden_size", 0),
- "num_layers": config.get("num_hidden_layers", 0),
- }
- return {"model_type": "causal_lm", "context_length": 2048}
- def _tokenize_dataset_ppo(self, dataset_path: str, max_seq_length: int, response_length: int):
- """Tokenize PPO 数据集:仅 prompt(模型在训练中自己生成回答)。"""
- from datasets import Dataset as HFDataset
- data = []
- with open(dataset_path, "r", encoding="utf-8") as f:
- for line in f:
- line = line.strip()
- if line:
- item = json.loads(line)
- if "prompt" not in item:
- item["prompt"] = item.get("question", item.get("query", item.get("text", item.get("input", ""))))
- if isinstance(item["prompt"], (list, dict)):
- item["prompt"] = json.dumps(item["prompt"], ensure_ascii=False)
- item["prompt"] = str(item["prompt"])
- data.append(item)
- hf_dataset = HFDataset.from_list(data)
- def tokenize_fn(batch):
- raw_prompts = batch.get("prompt", [])
- prompts = [str(v) if v is not None else "" for v in raw_prompts]
- # 仅 tokenize prompt,预留 response_length 空间给生成的回答
- tokenized = self._tokenizer(
- prompts,
- truncation=True,
- max_length=max_seq_length - response_length,
- padding=False,
- )
- return tokenized
- tokenized_dataset = hf_dataset.map(
- tokenize_fn,
- batched=True,
- remove_columns=hf_dataset.column_names,
- )
- return tokenized_dataset
- def _tokenize_dataset(self, dataset_path: str, max_seq_length: int):
- """Tokenize 处理后的 JSONL 数据集。"""
- from datasets import Dataset as HFDataset
- data = []
- with open(dataset_path, "r", encoding="utf-8") as f:
- for line in f:
- line = line.strip()
- if line:
- item = json.loads(line)
- # 兼容多种列名 → 统一映射为 prompt / completion
- if "prompt" not in item:
- item["prompt"] = item.get("question", item.get("query", item.get("text", item.get("input", ""))))
- if "completion" not in item:
- item["completion"] = item.get("answer", item.get("response", item.get("target", item.get("output", ""))))
- # 确保 prompt 和 completion 是字符串
- if isinstance(item["prompt"], (list, dict)):
- item["prompt"] = json.dumps(item["prompt"], ensure_ascii=False)
- item["prompt"] = str(item["prompt"])
- if isinstance(item["completion"], (list, dict)):
- item["completion"] = json.dumps(item["completion"], ensure_ascii=False)
- item["completion"] = str(item["completion"])
- data.append(item)
- hf_dataset = HFDataset.from_list(data)
- def tokenize_fn(batch):
- def _to_str(v):
- if isinstance(v, (list, dict)):
- return json.dumps(v, ensure_ascii=False)
- return str(v) if v is not None else ""
- raw_prompts = batch.get("prompt", [])
- raw_completions = batch.get("completion", [])
- prompts = [_to_str(v) for v in raw_prompts]
- completions = [_to_str(v) for v in raw_completions]
- if not prompts:
- return {"input_ids": [], "attention_mask": [], "labels": []}
- full_texts = [f"{p}\n{c}" for p, c in zip(prompts, completions)]
- tokenized = self._tokenizer(
- full_texts, truncation=True, max_length=max_seq_length, padding=False,
- )
- tokenized["labels"] = list(tokenized["input_ids"])
- return tokenized
- tokenized_dataset = hf_dataset.map(
- tokenize_fn,
- batched=True,
- remove_columns=["prompt", "completion"],
- )
- return tokenized_dataset
- def _load_dataset_dpo(self, dataset_path: str):
- """加载 DPO 数据集,保留 prompt/chosen/rejected 原始文本,由 DPOTrainer 内部 tokenize。"""
- from datasets import Dataset as HFDataset
- data = []
- with open(dataset_path, "r", encoding="utf-8") as f:
- for line in f:
- line = line.strip()
- if line:
- item = json.loads(line)
- prompt = item.get("prompt", item.get("instruction", item.get("input", "")))
- chosen = item.get("chosen", item.get("positive", ""))
- rejected = item.get("rejected", item.get("negative", ""))
- data.append({
- "prompt": str(prompt) if prompt else "",
- "chosen": str(chosen) if chosen else "",
- "rejected": str(rejected) if rejected else "",
- })
- return HFDataset.from_list(data)
- try:
- from transformers import TrainerCallback as _TrainerCallbackBase
- except ImportError:
- _TrainerCallbackBase = object # 151 主节点无 transformers,仅做占位
- class _ProgressCallback(_TrainerCallbackBase):
- """自定义训练进度回调,通过 WebSocket 发送进度。"""
- def __init__(self, job_id: str):
- super().__init__()
- self.job_id = job_id
- def on_log(self, args, state, control, logs=None, **kwargs):
- if logs and "loss" in logs:
- asyncio.create_task(
- send_progress(
- self.job_id,
- epoch=int(state.epoch or 0),
- step=state.global_step,
- total_steps=state.max_steps or 0,
- loss=logs["loss"],
- learning_rate=logs.get("learning_rate", 0),
- )
- )
- def on_epoch_end(self, args, state, control, **kwargs):
- asyncio.create_task(
- send_epoch_done(self.job_id, epoch=int(state.epoch or 0), eval_loss=None, eval_accuracy=None)
- )
- def on_train_end(self, args, state, control, **kwargs):
- asyncio.create_task(
- send_completed(
- self.job_id,
- total_time_seconds=getattr(state, "train_runtime", 0),
- adapter_path=str(settings.adapters_dir / self.job_id),
- )
- )
- # 全局单例
- text_engine = TextEngine()
- def _compute_heuristic_reward(prompts: list[str], responses: list[str]) -> list[float]:
- """启发式奖励函数:无需额外奖励模型即可用于 PPO 训练。
- 评分维度:长度合理性 + 非空 + 重复度惩罚。
- """
- rewards = []
- for _prompt, response in zip(prompts, responses):
- reward = 0.0
- resp_len = len(response.split())
- # 长度评分:20-200 词为佳
- if 20 <= resp_len <= 200:
- reward += 0.5
- elif resp_len < 5:
- reward -= 1.0
- elif resp_len > 500:
- reward -= 0.5
- # 非空奖励
- if response.strip():
- reward += 0.2
- # 重复度惩罚(trigram 重复率过高)
- words = response.split()
- if len(words) > 10:
- trigrams = set(tuple(words[i:i+3]) for i in range(len(words) - 2))
- if len(trigrams) < len(words) * 0.3:
- reward -= 0.5
- rewards.append(reward)
- return rewards
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