model_service.py 7.6 KB

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  1. import json
  2. from pathlib import Path
  3. from typing import Any
  4. from app.config import get_settings
  5. from app.core.db import async_session, ModelCache
  6. from app.core.logging import logger
  7. from sqlalchemy import select
  8. settings = get_settings()
  9. async def resolve_model_path(model_id: str) -> str | None:
  10. """解析模型的实际路径,兼容 HuggingFace 和 ModelScope 的不同目录结构。"""
  11. # 策略 1: 从数据库读取实际路径
  12. info = await get_model_info(model_id)
  13. if info and info.get("path"):
  14. p = Path(info["path"])
  15. if (p / "config.json").exists():
  16. return str(p)
  17. # 策略 2: HuggingFace 风格(namespace_name 扁平化)
  18. hf_path = settings.models_dir / model_id.replace("/", "_")
  19. if (hf_path / "config.json").exists():
  20. return str(hf_path)
  21. # 策略 3: ModelScope 风格(namespace/name 嵌套,含软链接)
  22. ms_path = settings.models_dir / model_id
  23. if (ms_path / "config.json").exists():
  24. return str(ms_path)
  25. # 策略 4: 扫描 models_dir 下所有目录,匹配名称
  26. model_name = model_id.split("/")[-1]
  27. for p in settings.models_dir.rglob("config.json"):
  28. if p.parent.name == model_name or model_name in str(p.parent):
  29. return str(p.parent)
  30. return None
  31. async def download_model(model_id: str, use_modelscope: bool = False) -> dict[str, Any]:
  32. """从 HF 或 ModelScope 下载模型到本地缓存。"""
  33. try:
  34. if use_modelscope:
  35. from modelscope.hub.snapshot_download import snapshot_download as ms_snapshot_download
  36. download_dir = str(settings.models_dir / model_id.replace("/", "_"))
  37. local_path = ms_snapshot_download(
  38. model_id,
  39. local_dir=download_dir,
  40. )
  41. else:
  42. from huggingface_hub import snapshot_download
  43. local_path = snapshot_download(
  44. repo_id=model_id,
  45. local_dir=str(settings.models_dir / model_id.replace("/", "_")),
  46. local_dir_use_symlinks=False,
  47. )
  48. # 读取 config.json 获取模型信息
  49. config_path = Path(local_path) / "config.json"
  50. model_type = "text"
  51. context_length = 2048
  52. peft_methods = "lora,qlora,ia3,adalora,prefix_tuning"
  53. if config_path.exists():
  54. with open(config_path) as f:
  55. cfg = json.load(f)
  56. model_type = cfg.get("model_type", "text")
  57. context_length = cfg.get("max_position_embeddings", cfg.get("max_sequence_length", 2048))
  58. # 写入数据库(如果已存在则更新)
  59. async with async_session() as session:
  60. result = await session.execute(select(ModelCache).where(ModelCache.id == model_id))
  61. existing = result.scalar_one_or_none()
  62. if existing:
  63. existing.name = model_id.split("/")[-1]
  64. existing.model_type = model_type
  65. existing.path = local_path
  66. existing.is_downloaded = 1
  67. existing.context_length = context_length
  68. existing.supported_peft_methods = peft_methods
  69. else:
  70. record = ModelCache(
  71. id=model_id,
  72. name=model_id.split("/")[-1],
  73. model_type=model_type,
  74. path=local_path,
  75. is_downloaded=1,
  76. context_length=context_length,
  77. supported_peft_methods=peft_methods,
  78. )
  79. session.add(record)
  80. await session.commit()
  81. logger.info(f"Model downloaded: {model_id} -> {local_path}")
  82. return {"model_id": model_id, "status": "completed", "path": local_path}
  83. except Exception as e:
  84. error_msg = str(e)
  85. if "Connection" in error_msg or "timeout" in error_msg.lower() or "network" in error_msg.lower():
  86. error_msg += "\n提示: 可能是 HuggingFace 网络问题。尝试使用 ModelScope 下载。"
  87. logger.error(f"Model download failed: {e}")
  88. return {"model_id": model_id, "status": "failed", "error": error_msg}
  89. async def list_cached_models() -> list[dict[str, Any]]:
  90. """从数据库列出已缓存的模型(不扫描目录,避免 HF 缓存子目录干扰)。"""
  91. async with async_session() as session:
  92. result = await session.execute(select(ModelCache).order_by(ModelCache.created_at.desc()))
  93. records = result.scalars().all()
  94. models = []
  95. for r in records:
  96. # 验证目录是否真的存在,如果不存在则标记为未下载
  97. dir_exists = r.path and Path(r.path).exists()
  98. if not dir_exists:
  99. # 尝试从 models_dir 下查找
  100. alt_path = settings.models_dir / r.id.replace("/", "_")
  101. dir_exists = alt_path.exists()
  102. if dir_exists:
  103. r.path = str(alt_path)
  104. models.append({
  105. "id": r.id,
  106. "name": r.name,
  107. "model_type": r.model_type,
  108. "path": r.path,
  109. "is_downloaded": dir_exists,
  110. "context_length": r.context_length,
  111. "supported_peft_methods": r.supported_peft_methods.split(",") if r.supported_peft_methods else [],
  112. })
  113. return models
  114. async def get_model_info(model_id: str) -> dict[str, Any] | None:
  115. """获取已缓存模型的元数据。"""
  116. async with async_session() as session:
  117. result = await session.execute(select(ModelCache).where(ModelCache.id == model_id))
  118. record = result.scalar_one_or_none()
  119. if record:
  120. return {
  121. "id": record.id,
  122. "name": record.name,
  123. "model_type": record.model_type,
  124. "path": record.path,
  125. "is_downloaded": bool(record.is_downloaded) and Path(record.path).exists() if record.path else False,
  126. "context_length": record.context_length,
  127. "supported_peft_methods": record.supported_peft_methods.split(",") if record.supported_peft_methods else [],
  128. }
  129. return None
  130. async def delete_model(model_id: str) -> dict[str, Any]:
  131. """删除已缓存的模型(数据库记录 + 本地文件)。"""
  132. async with async_session() as session:
  133. result = await session.execute(select(ModelCache).where(ModelCache.id == model_id))
  134. record = result.scalar_one_or_none()
  135. if not record:
  136. return {"status": "not_found", "message": f"Model not found: {model_id}"}
  137. # 删除本地文件目录(对软链接,删除其指向的真实目录)
  138. model_dir = Path(record.path) if record.path else settings.models_dir / record.id.replace("/", "_")
  139. deleted_files = False
  140. if model_dir.is_symlink():
  141. # ModelScope 下载的模型可能是软链接,删除真实目录
  142. real_dir = model_dir.resolve()
  143. import shutil
  144. if real_dir.exists() and real_dir.is_dir():
  145. shutil.rmtree(real_dir, ignore_errors=True)
  146. # 如果还有父级软链接(如 dphn/ 下的其他链接),一并清理
  147. parent_link = model_dir.parent
  148. if parent_link.is_symlink():
  149. shutil.rmtree(parent_link, ignore_errors=True)
  150. deleted_files = True
  151. elif model_dir.exists() and model_dir.is_dir():
  152. import shutil
  153. shutil.rmtree(model_dir, ignore_errors=True)
  154. deleted_files = True
  155. # 删除数据库记录
  156. await session.delete(record)
  157. await session.commit()
  158. logger.info(f"Model deleted: {model_id} (files={deleted_files})")
  159. return {"status": "deleted", "model_id": model_id, "files_deleted": deleted_files}