dataset_service.py 26 KB

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  1. import asyncio
  2. import json
  3. import uuid
  4. from datetime import datetime, timezone
  5. from pathlib import Path
  6. from typing import Any
  7. from fastapi import UploadFile
  8. from app.config import get_settings
  9. from app.core.background_tasks import background_task_manager
  10. from app.core.db import async_session, DatasetRecord, DatasetDownloadTask
  11. from app.core.logging import logger
  12. from app.schemas.dataset import DatasetDownloadRequest, DatasetDownloadResponse
  13. from sqlalchemy import select
  14. settings = get_settings()
  15. # Known metadata filenames that are NOT training data
  16. META_FILENAMES = frozenset({
  17. "configuration.json", "configuration.yaml", "README.md",
  18. ".mdl", ".msc", ".mv", "model_index.json", "generation_config.json",
  19. "special_tokens_map.json", "tokenizer_config.json",
  20. "added_tokens.json", "vocab.json", "merges.txt",
  21. "config.json", "preprocessor_config.json",
  22. "dataset_infos.json", "dataset_info.json",
  23. "state.json", "card_data.json",
  24. })
  25. # File size threshold: files smaller than this (bytes) are likely metadata
  26. META_SIZE_THRESHOLD = 500
  27. def _is_training_data_file(path: Path) -> bool:
  28. """判断文件是否可能是训练数据文件(而非配置/元数据)。"""
  29. if path.name in META_FILENAMES:
  30. return False
  31. if path.suffix in (".jsonl", ".parquet", ".csv"):
  32. # 小文件可能是元数据(如 ModelScope CLI 生成的 data.jsonl 只有几十字节)
  33. if path.stat().st_size < META_SIZE_THRESHOLD:
  34. return False
  35. return True
  36. if path.suffix == ".json":
  37. # 小 JSON 文件通常是配置
  38. if path.stat().st_size < META_SIZE_THRESHOLD:
  39. return False
  40. # 尝试读取首行判断格式
  41. try:
  42. first_line = path.read_text(encoding="utf-8", errors="ignore").splitlines()[0].strip()
  43. obj = json.loads(first_line)
  44. # 如果有 input/output/conversation/instruction 等字段,则是训练数据
  45. if isinstance(obj, dict):
  46. data_keys = {"input", "output", "conversations", "instruction", "prompt",
  47. "text", "completion", "source", "target", "query", "response"}
  48. if data_keys & set(obj.keys()):
  49. return True
  50. # 如果只有 framework/task/model_type 等字段,则是元数据
  51. meta_keys = {"framework", "task", "license", "base_model", "model_type",
  52. "language", "domains", "tags", "authors"}
  53. if meta_keys & set(obj.keys()):
  54. return False
  55. return True # 大 JSON 文件默认是数据
  56. except Exception:
  57. return False
  58. # 无后缀文件:尝试读取判断是否为 JSON/JSONL
  59. if not path.suffix:
  60. try:
  61. first_line = path.read_text(encoding="utf-8", errors="ignore").splitlines()[0].strip()
  62. json.loads(first_line)
  63. return True
  64. except Exception:
  65. return False
  66. return False
  67. def _extract_archives(ds_dir: Path):
  68. """检测并解压数据集目录中的压缩包(zip/tar.gz/tar.bz2/tgz),
  69. 图片数据集通常将图片存放在压缩包中,需要解压后才能在预览时显示。"""
  70. import zipfile
  71. import tarfile
  72. extracted_any = False
  73. for f in list(ds_dir.rglob("*")):
  74. if not f.is_file():
  75. continue
  76. # 判断是否为压缩包
  77. name_lower = f.name.lower()
  78. is_zip = name_lower.endswith(".zip")
  79. is_tar = any(name_lower.endswith(ext) for ext in
  80. (".tar.gz", ".tgz", ".tar.bz2", ".tbz2", ".tar"))
  81. if not is_zip and not is_tar:
  82. continue
  83. # 用压缩包名(去掉所有后缀)作为解压目标目录
  84. stem = f.name
  85. for ext in (".tar.gz", ".tar.bz2", ".tgz", ".tbz2", ".tar", ".zip"):
  86. if stem.lower().endswith(ext):
  87. stem = stem[:-len(ext)]
  88. break
  89. extract_dir = f.parent / stem
  90. if extract_dir.exists():
  91. logger.info(f"Archive already extracted, skipping: {f.name}")
  92. continue
  93. logger.info(f"Extracting archive: {f.name} -> {extract_dir}")
  94. try:
  95. if is_zip:
  96. with zipfile.ZipFile(f, "r") as zf:
  97. zf.extractall(f.parent)
  98. else:
  99. with tarfile.open(f, "r:*") as tf:
  100. tf.extractall(f.parent)
  101. extracted_any = True
  102. logger.info(f"Successfully extracted: {f.name}")
  103. except Exception as e:
  104. logger.warning(f"Failed to extract {f.name}: {e}")
  105. if extracted_any:
  106. logger.info(f"Archive extraction completed for {ds_dir}")
  107. async def download_dataset(req: DatasetDownloadRequest) -> DatasetDownloadResponse:
  108. """启动数据集下载后台任务,立即返回 task_id。"""
  109. task_id = str(uuid.uuid4())
  110. # 写 DB
  111. record = DatasetDownloadTask(
  112. id=task_id,
  113. dataset_id=req.dataset_id,
  114. use_modelscope=1 if req.use_modelscope else 0,
  115. status="pending",
  116. )
  117. async with async_session() as session:
  118. session.add(record)
  119. await session.commit()
  120. # 注册并启动
  121. background_task_manager.register_task(task_id, "dataset_download", {"dataset_id": req.dataset_id})
  122. await background_task_manager.run(
  123. task_id, "dataset_download", _execute_dataset_download(task_id, req)
  124. )
  125. logger.info(f"Dataset download task started: {req.dataset_id} (task_id={task_id})")
  126. return DatasetDownloadResponse(
  127. dataset_id=req.dataset_id, status="pending", task_id=task_id, path=task_id
  128. )
  129. async def _execute_dataset_download(task_id: str, req: DatasetDownloadRequest) -> dict:
  130. """后台执行数据集下载。"""
  131. try:
  132. if req.use_modelscope:
  133. ds_dir, jsonl_path, record_count = await asyncio.to_thread(
  134. _download_modelscope_dataset, req.dataset_id
  135. )
  136. else:
  137. from datasets import load_dataset
  138. ds = load_dataset(req.dataset_id)
  139. ds_dir = settings.processed_dir / f"hf_{req.dataset_id.replace('/', '_')}"
  140. ds_dir.mkdir(parents=True, exist_ok=True)
  141. if "train" in ds:
  142. split = ds["train"]
  143. else:
  144. split = ds[list(ds.keys())[0]]
  145. output_path = ds_dir / "data.jsonl"
  146. with open(output_path, "w", encoding="utf-8") as f:
  147. for item in split:
  148. f.write(json.dumps(item, ensure_ascii=False) + "\n")
  149. jsonl_path = output_path
  150. record_count = len(split) if hasattr(split, "__len__") else 0
  151. db_record = DatasetRecord(
  152. id=str(uuid.uuid4()),
  153. name=req.dataset_id,
  154. format="jsonl",
  155. record_count=record_count,
  156. file_path=str(jsonl_path),
  157. created_at=datetime.utcnow(),
  158. )
  159. async with async_session() as session:
  160. session.add(db_record)
  161. await session.commit()
  162. await _update_dataset_download_status(task_id, "completed", path=str(jsonl_path), record_count=record_count)
  163. logger.info(f"Dataset downloaded: {req.dataset_id} ({record_count} records)")
  164. return {"path": str(jsonl_path), "record_count": record_count}
  165. except Exception as e:
  166. logger.error(f"Dataset download failed: {e}")
  167. await _update_dataset_download_status(task_id, "failed", error=str(e))
  168. return {"error": str(e)}
  169. async def _update_dataset_download_status(task_id: str, status: str, path: str = None, error: str = None, record_count: int = 0):
  170. async with async_session() as session:
  171. result = await session.execute(select(DatasetDownloadTask).where(DatasetDownloadTask.id == task_id))
  172. record = result.scalar_one_or_none()
  173. if record:
  174. record.status = status
  175. if path:
  176. record.path = path
  177. if error:
  178. record.error = error
  179. if record_count:
  180. record.record_count = record_count
  181. if status in ("completed", "failed"):
  182. record.finished_at = datetime.utcnow()
  183. await session.commit()
  184. background_task_manager.update_task(
  185. task_id, status=status, path=path, error=error, record_count=record_count,
  186. )
  187. async def get_dataset_download_status(task_id: str) -> dict[str, Any]:
  188. async with async_session() as session:
  189. result = await session.execute(select(DatasetDownloadTask).where(DatasetDownloadTask.id == task_id))
  190. record = result.scalar_one_or_none()
  191. if record:
  192. return {
  193. "task_id": record.id,
  194. "dataset_id": record.dataset_id,
  195. "status": record.status,
  196. "use_modelscope": bool(record.use_modelscope),
  197. "path": record.path,
  198. "error": record.error,
  199. "record_count": record.record_count,
  200. "created_at": record.created_at.isoformat() if record.created_at else "",
  201. }
  202. mem = background_task_manager.get_task(task_id)
  203. if mem:
  204. return {
  205. "task_id": task_id,
  206. "dataset_id": mem.get("dataset_id", ""),
  207. "status": mem["status"],
  208. "error": mem.get("error"),
  209. "record_count": mem.get("record_count", 0),
  210. }
  211. return {"task_id": task_id, "status": "not_found"}
  212. async def list_dataset_downloads() -> list[dict[str, Any]]:
  213. async with async_session() as session:
  214. result = await session.execute(
  215. select(DatasetDownloadTask).order_by(DatasetDownloadTask.created_at.desc())
  216. )
  217. records = result.scalars().all()
  218. return [
  219. {
  220. "task_id": r.id,
  221. "dataset_id": r.dataset_id,
  222. "status": r.status,
  223. "use_modelscope": bool(r.use_modelscope),
  224. "path": r.path,
  225. "error": r.error,
  226. "record_count": r.record_count,
  227. "created_at": r.created_at.isoformat() if r.created_at else "",
  228. }
  229. for r in records
  230. ]
  231. async def cancel_dataset_download(task_id: str) -> dict[str, Any]:
  232. background_task_manager.cancel_task(task_id)
  233. async with async_session() as session:
  234. result = await session.execute(select(DatasetDownloadTask).where(DatasetDownloadTask.id == task_id))
  235. record = result.scalar_one_or_none()
  236. if record and record.status in ("pending", "downloading"):
  237. record.status = "cancelled"
  238. record.error = "Cancelled by user"
  239. record.finished_at = datetime.utcnow()
  240. await session.commit()
  241. return {"task_id": task_id, "status": "cancelled"}
  242. async def recover_stale_downloads() -> None:
  243. async with async_session() as session:
  244. result = await session.execute(
  245. select(DatasetDownloadTask).where(
  246. DatasetDownloadTask.status.in_(["pending", "downloading"])
  247. )
  248. )
  249. records = result.scalars().all()
  250. for record in records:
  251. record.status = "failed"
  252. record.error = "Server restarted, task interrupted"
  253. record.finished_at = datetime.utcnow()
  254. if records:
  255. await session.commit()
  256. logger.info(f"Recovered {len(records)} stale dataset download tasks")
  257. def _download_modelscope_dataset(dataset_id: str) -> tuple[Path, Path, int]:
  258. """用 modelscope CLI 下载数据集,完全绕过 datasets 库,避免版本兼容问题。"""
  259. import subprocess
  260. ds_dir = settings.processed_dir / f"ms_{dataset_id.replace('/', '_')}"
  261. ds_dir.mkdir(parents=True, exist_ok=True)
  262. # 使用 CLI 方式下载,避免 snapshot_download API 的路径问题
  263. cmd = ["modelscope", "download", "--dataset", dataset_id, "--local_dir", str(ds_dir)]
  264. logger.info(f"Running: {' '.join(cmd)}")
  265. proc = subprocess.run(cmd, capture_output=True, text=True, timeout=600)
  266. if proc.returncode != 0:
  267. logger.error(f"ModelScope CLI download failed (code={proc.returncode}): {proc.stderr[:500]}")
  268. raise RuntimeError(f"ModelScope download failed: {proc.stderr[:500]}")
  269. # 下载完成后,检测并解压图片压缩包(图片数据集通常把图片放在"数据文件"区的压缩包中)
  270. _extract_archives(ds_dir)
  271. # 扫描下载目录中的所有文件
  272. all_files = [p for p in ds_dir.rglob("*") if p.is_file()]
  273. logger.info(f"ModelScope CLI downloaded {len(all_files)} files to {ds_dir}")
  274. # 识别训练数据文件
  275. data_files = [f for f in all_files if _is_training_data_file(f)]
  276. if not data_files:
  277. fallback = [f for f in all_files if f.suffix in (".json", ".jsonl") and f.name not in META_FILENAMES and f.name != "README.md"]
  278. logger.warning(f"No training data files found in {dataset_id}. "
  279. f"Available JSON files: {[f.name for f in fallback]}")
  280. if fallback:
  281. data_files = fallback
  282. else:
  283. # 如果还是没有,列出所有文件供排查
  284. logger.error(f"All downloaded files: {[str(f.relative_to(ds_dir)) for f in all_files]}")
  285. raise ValueError(f"No JSON/JSONL data files found in dataset {dataset_id}. "
  286. f"Available files: {[f.name for f in all_files]}")
  287. # 按文件大小排序,取最大的文件作为训练数据(真正的数据集通常是最大的)
  288. target = sorted(data_files, key=lambda f: f.stat().st_size, reverse=True)[0]
  289. logger.info(f"Selected data file: {target} (size={target.stat().st_size})")
  290. # 读取并统一转为 JSONL
  291. jsonl_path = ds_dir / "data.jsonl"
  292. record_count = 0
  293. content = target.read_text(encoding="utf-8")
  294. if target.suffix == ".jsonl" or not target.suffix:
  295. # JSONL 或无后缀文件:逐行解析
  296. records = []
  297. for line in content.splitlines():
  298. line = line.strip()
  299. if not line:
  300. continue
  301. try:
  302. records.append(json.loads(line))
  303. except json.JSONDecodeError:
  304. # 单行解析失败,尝试整体解析
  305. try:
  306. data = json.loads(content)
  307. records = data if isinstance(data, list) else [data]
  308. except json.JSONDecodeError:
  309. records = []
  310. break
  311. elif target.suffix == ".json":
  312. # JSON 文件:先尝试 JSON 数组,失败再逐行解析(可能是 JSONL 格式)
  313. try:
  314. records = json.loads(content)
  315. if not isinstance(records, list):
  316. records = [records]
  317. except json.JSONDecodeError:
  318. records = []
  319. for line in content.splitlines():
  320. line = line.strip()
  321. if not line:
  322. continue
  323. try:
  324. records.append(json.loads(line))
  325. except json.JSONDecodeError:
  326. continue
  327. elif target.suffix == ".csv":
  328. import csv as _csv
  329. records = []
  330. reader = _csv.DictReader(content.splitlines())
  331. for row in reader:
  332. records.append(dict(row))
  333. else:
  334. records = []
  335. with open(jsonl_path, "w", encoding="utf-8") as f:
  336. for item in records:
  337. f.write(json.dumps(item, ensure_ascii=False) + "\n")
  338. record_count += 1
  339. return ds_dir, jsonl_path, record_count
  340. async def upload_dataset(file: UploadFile) -> dict[str, Any]:
  341. """保存上传文件并写入数据库。"""
  342. upload_dir = settings.uploads_dir
  343. upload_dir.mkdir(parents=True, exist_ok=True)
  344. safe_name = file.filename or "unknown"
  345. file_path = upload_dir / safe_name
  346. if file_path.exists():
  347. file_path = upload_dir / f"{uuid.uuid4().hex}_{safe_name}"
  348. content = await file.read()
  349. file_path.write_bytes(content)
  350. fmt = _detect_format(safe_name)
  351. record_count = _count_records(file_path, fmt)
  352. record_id = str(uuid.uuid4())
  353. record = DatasetRecord(
  354. id=record_id,
  355. name=safe_name,
  356. format=fmt,
  357. record_count=record_count,
  358. file_path=str(file_path),
  359. created_at=datetime.utcnow(),
  360. )
  361. async with async_session() as session:
  362. session.add(record)
  363. await session.commit()
  364. logger.info(f"Uploaded dataset: {safe_name} ({record_count} records, format={fmt})")
  365. return {
  366. "id": record_id,
  367. "name": safe_name,
  368. "format": fmt,
  369. "record_count": record_count,
  370. "file_path": str(file_path),
  371. "created_at": record.created_at.isoformat(),
  372. }
  373. def _detect_image_column(columns: list[str]) -> str | None:
  374. """检测哪一列是图片路径列。"""
  375. candidates = ["image_path", "image", "img_path", "img", "file_path", "filename", "path", "file"]
  376. for c in candidates:
  377. if c in columns:
  378. return c
  379. # 模糊匹配:列名包含 image 或 path
  380. for c in columns:
  381. cl = c.lower()
  382. if "image" in cl or ("path" in cl and "label" not in cl):
  383. return c
  384. return None
  385. def _resolve_image_path(path_str: str, data_dir: Path) -> Path | None:
  386. """解析图片路径,返回绝对路径。"""
  387. if not path_str:
  388. return None
  389. p = Path(path_str)
  390. # 已经是绝对路径
  391. if p.is_absolute():
  392. return p if p.exists() else None
  393. # 相对路径:先尝试相对于数据目录
  394. candidate = data_dir / p
  395. if candidate.exists():
  396. return candidate
  397. # 也可能直接在 data_dir 下(去掉目录前缀只保留文件名)
  398. if data_dir.joinpath(p.name).exists():
  399. return data_dir / p.name
  400. # 在 data_dir 的子目录中递归查找
  401. for child in data_dir.rglob(p.name):
  402. if child.is_file():
  403. return child
  404. logger.debug(f"Image not found: '{path_str}' (searched in {data_dir})")
  405. return None
  406. def _encode_image_base64(image_path: Path, max_size: int = 200) -> str | None:
  407. """将图片转为 base64 data URI,用于前端预览。"""
  408. import base64
  409. try:
  410. from PIL import Image
  411. img = Image.open(image_path)
  412. # 缩小尺寸用于预览
  413. img.thumbnail((max_size, max_size))
  414. if img.mode in ("RGBA", "P", "LA"):
  415. img = img.convert("RGB")
  416. import io
  417. buf = io.BytesIO()
  418. img.save(buf, format="JPEG", quality=85)
  419. b64 = base64.b64encode(buf.getvalue()).decode("ascii")
  420. return f"data:image/jpeg;base64,{b64}"
  421. except Exception as e:
  422. logger.warning(f"Failed to encode image {image_path}: {e}")
  423. return None
  424. def _format_value(value) -> str:
  425. """将复杂值格式化为可读字符串。"""
  426. if isinstance(value, (dict, list)):
  427. return json.dumps(value, ensure_ascii=False, indent=2)
  428. return str(value)
  429. def _is_sharegpt_format(records: list[dict]) -> bool:
  430. """检测是否为 ShareGPT 格式。"""
  431. if not records:
  432. return False
  433. first = records[0]
  434. if "conversations" in first and isinstance(first["conversations"], list):
  435. if len(first["conversations"]) > 0 and isinstance(first["conversations"][0], dict):
  436. conv = first["conversations"][0]
  437. return "from" in conv and "value" in conv
  438. return False
  439. def _flatten_sharegpt(records: list[dict]) -> tuple[list[dict], list[str]]:
  440. """将 ShareGPT 格式展平为 input/output 列。"""
  441. flat_rows = []
  442. for row in records:
  443. conversations = row.get("conversations", [])
  444. for i in range(0, len(conversations) - 1, 2):
  445. user_turn = conversations[i]
  446. assistant_turn = conversations[i + 1] if i + 1 < len(conversations) else None
  447. if user_turn.get("from") in ("human", "user"):
  448. input_text = str(user_turn.get("value", ""))
  449. output_text = str(assistant_turn.get("value", "")) if assistant_turn else ""
  450. else:
  451. input_text = str(assistant_turn.get("value", "")) if assistant_turn else ""
  452. output_text = str(user_turn.get("value", ""))
  453. if len(input_text) > 500:
  454. input_text = input_text[:500] + "..."
  455. if len(output_text) > 500:
  456. output_text = output_text[:500] + "..."
  457. flat_rows.append({"input": input_text, "output": output_text})
  458. return flat_rows, ["input", "output"]
  459. async def preview_dataset(dataset_id: str, rows: int = 10) -> dict[str, Any]:
  460. """预览数据集前 N 行。"""
  461. async with async_session() as session:
  462. from sqlalchemy import select
  463. result = await session.execute(select(DatasetRecord).where(DatasetRecord.id == dataset_id))
  464. record = result.scalar_one_or_none()
  465. if not record:
  466. return {"total_records": 0, "preview_rows": [], "columns": [], "image_column": None}
  467. file_path = Path(record.file_path)
  468. if not file_path.exists():
  469. return {"total_records": 0, "preview_rows": [], "columns": [], "image_column": None}
  470. fmt = record.format
  471. preview_data = _read_records(file_path, fmt, rows)
  472. # 检测是否为 ShareGPT 格式,如果是则展平为 input/output 列
  473. if _is_sharegpt_format(preview_data):
  474. preview_data, columns = _flatten_sharegpt(preview_data)
  475. else:
  476. columns = list(preview_data[0].keys()) if preview_data else []
  477. # 检测是否为视觉数据集(有图片路径列),将图片转为 base64 嵌入预览
  478. image_column = _detect_image_column(columns)
  479. data_dir = file_path.parent
  480. preview_rows = []
  481. for i, row in enumerate(preview_data):
  482. data = {}
  483. for k, v in row.items():
  484. if k == image_column:
  485. # 解析图片路径,转为 base64 嵌入
  486. img_path = _resolve_image_path(str(v), data_dir)
  487. if img_path:
  488. encoded = _encode_image_base64(img_path)
  489. data[k] = encoded if encoded else str(v)
  490. else:
  491. # 路径解析失败,保留原始路径文本
  492. data[k] = str(v)
  493. else:
  494. data[k] = _format_value(v)
  495. preview_rows.append({"row_index": i, "data": data})
  496. return {
  497. "total_records": record.record_count,
  498. "preview_rows": preview_rows,
  499. "columns": columns,
  500. "image_column": image_column,
  501. }
  502. async def validate_dataset(dataset_id: str) -> dict[str, Any]:
  503. """校验数据集格式和 Schema。"""
  504. async with async_session() as session:
  505. from sqlalchemy import select
  506. result = await session.execute(select(DatasetRecord).where(DatasetRecord.id == dataset_id))
  507. record = result.scalar_one_or_none()
  508. if not record:
  509. return {"is_valid": False, "errors": ["Dataset not found"], "warnings": []}
  510. file_path = Path(record.file_path)
  511. if not file_path.exists():
  512. return {"is_valid": False, "errors": ["File not found"], "warnings": []}
  513. errors = []
  514. warnings = []
  515. fmt = record.format
  516. if fmt not in ("jsonl", "csv", "json", "parquet"):
  517. errors.append(f"Unsupported format: {fmt}")
  518. try:
  519. preview = _read_records(file_path, fmt, 5)
  520. if not preview:
  521. warnings.append("Dataset appears to be empty")
  522. else:
  523. first = preview[0]
  524. has_sft_fields = any(k in first for k in ("instruction", "prompt", "text", "input", "output", "completion"))
  525. if not has_sft_fields:
  526. warnings.append(f"No common SFT fields found. Keys: {list(first.keys())}")
  527. except Exception as e:
  528. errors.append(f"Failed to read file: {str(e)}")
  529. return {"is_valid": len(errors) == 0, "errors": errors, "warnings": warnings}
  530. async def list_datasets() -> list[dict[str, Any]]:
  531. """列出所有已上传数据集。"""
  532. async with async_session() as session:
  533. from sqlalchemy import select
  534. result = await session.execute(select(DatasetRecord).order_by(DatasetRecord.created_at.desc()))
  535. records = result.scalars().all()
  536. return [
  537. {
  538. "id": r.id,
  539. "name": r.name,
  540. "format": r.format,
  541. "record_count": r.record_count,
  542. "file_path": r.file_path,
  543. "created_at": r.created_at.isoformat(),
  544. }
  545. for r in records
  546. ]
  547. async def delete_dataset(dataset_id: str) -> dict[str, Any]:
  548. """删除数据集。"""
  549. async with async_session() as session:
  550. from sqlalchemy import select
  551. result = await session.execute(select(DatasetRecord).where(DatasetRecord.id == dataset_id))
  552. record = result.scalar_one_or_none()
  553. if record:
  554. file_path = Path(record.file_path)
  555. if file_path.exists():
  556. file_path.unlink()
  557. await session.delete(record)
  558. await session.commit()
  559. logger.info(f"Deleted dataset: {record.name}")
  560. return {"status": "deleted"}
  561. def _detect_format(filename: str) -> str:
  562. ext = Path(filename).suffix.lower().lstrip(".")
  563. if ext in ("jsonl", "csv", "parquet", "json"):
  564. return ext
  565. return "unknown"
  566. def _count_records(file_path: Path, fmt: str) -> int:
  567. try:
  568. if fmt == "jsonl":
  569. return sum(1 for line in open(file_path, encoding="utf-8") if line.strip())
  570. elif fmt == "json":
  571. with open(file_path, encoding="utf-8") as f:
  572. data = json.load(f)
  573. return len(data) if isinstance(data, list) else 1
  574. elif fmt == "csv":
  575. import csv
  576. with open(file_path, encoding="utf-8") as f:
  577. return sum(1 for _ in csv.reader(f)) - 1
  578. elif fmt == "parquet":
  579. import pandas as pd
  580. return len(pd.read_parquet(file_path))
  581. except Exception:
  582. pass
  583. return 0
  584. def _read_records(file_path: Path, fmt: str, n: int) -> list[dict]:
  585. if fmt == "jsonl":
  586. records = []
  587. with open(file_path, encoding="utf-8") as f:
  588. for i, line in enumerate(f):
  589. if i >= n:
  590. break
  591. line = line.strip()
  592. if line:
  593. records.append(json.loads(line))
  594. return records
  595. elif fmt == "json":
  596. with open(file_path, encoding="utf-8") as f:
  597. data = json.load(f)
  598. return data[:n] if isinstance(data, list) else [data]
  599. elif fmt == "csv":
  600. import csv
  601. with open(file_path, encoding="utf-8") as f:
  602. reader = csv.DictReader(f)
  603. return [dict(row) for i, row in enumerate(reader) if i < n]
  604. elif fmt == "parquet":
  605. import pandas as pd
  606. df = pd.read_parquet(file_path)
  607. return df.head(n).to_dict(orient="records")
  608. return []