284 lines
9.5 KiB
Python
284 lines
9.5 KiB
Python
"""三池:held-out test + 验证 + 诊断,分层采样 + 冻结持久化。
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三池切分对应训练循环中的 DataLoader 阶段——从题目全集中按
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test -> validation -> diagnosis 的顺序 progressive exclusion,
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保证 question_id 互斥。test 池用自然分布(correct_ratio=None),
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验证池/诊断池按对错比例分层采样。
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"""
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from __future__ import annotations
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import json
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from dataclasses import dataclass, field
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from typing import TYPE_CHECKING
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from app.question_gen import stratified_sample
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from core.types import GeneratedQuestion
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if TYPE_CHECKING:
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from pathlib import Path
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from app.harness.config import RunConfig
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@dataclass
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class Pools:
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"""冻结的三池及其基线指标。
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字段:
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diagnosis: 诊断池(用于错误归因,对应 loss.backward)。
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validation: 验证池(按类局部验证,每题型有保底样本)。
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test: held-out 测试池(自然分布,用于最终无偏评估)。
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baseline_run_id: 基线 run 标识。
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baseline_val_accuracy: 基线在验证池上的准确率。
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correctness: 三池所有题的 question_id -> 基线是否答对。
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"""
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diagnosis: list[GeneratedQuestion]
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validation: list[GeneratedQuestion]
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test: list[GeneratedQuestion]
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baseline_run_id: str
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baseline_val_accuracy: float
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correctness: dict[str, bool] = field(default_factory=dict)
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def build_pools(
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questions: list[GeneratedQuestion],
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correctness: dict[str, bool],
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diag_cfg: dict,
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val_cfg: dict,
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test_cfg: dict,
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baseline_run_id: str,
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) -> Pools:
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"""先抽 held-out test,再抽验证集,最后抽诊断池,三池互斥。
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参数:
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questions: 题目全集。
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correctness: question_id -> 基线是否答对。
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diag_cfg: 诊断池采样配置(size/correct_ratio/task_types[/seed])。
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val_cfg: 验证池采样配置,可含 min_per_class 做按类保底。
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test_cfg: 测试池配置(size[/seed]);走自然分布,不强制对错比与题型。
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baseline_run_id: 基线 run 标识。
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返回:
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冻结的三池 Pools。
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关键实现细节:
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切分顺序 test -> validation -> diagnosis;后两步从剩余题中采样以保证
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question_id 互斥。test 池用 correct_ratio=None 的自然分布采样。
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"""
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test = _sample_excluding(
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questions,
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set(),
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correctness,
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size=test_cfg["size"],
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correct_ratio=None,
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task_types=None,
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seed=test_cfg.get("seed", 0),
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min_per_class=None,
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)
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selected_ids = {q.question_id for q in test}
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validation = _sample_excluding(questions, selected_ids, correctness, **val_cfg)
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selected_ids |= {q.question_id for q in validation}
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diagnosis = _sample_excluding(questions, selected_ids, correctness, **diag_cfg)
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val_correct = sum(1 for q in validation if correctness.get(q.question_id))
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baseline_val_accuracy = val_correct / len(validation) if validation else 0.0
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return Pools(
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diagnosis=diagnosis,
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validation=validation,
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test=test,
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baseline_run_id=baseline_run_id,
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baseline_val_accuracy=baseline_val_accuracy,
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correctness={
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q.question_id: correctness.get(q.question_id, False)
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for q in test + validation + diagnosis
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},
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)
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def _sample_excluding(
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questions: list[GeneratedQuestion],
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exclude_ids: set[str],
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correctness: dict[str, bool],
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**cfg: object,
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) -> list[GeneratedQuestion]:
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"""排除已选 question_id 后,按 cfg 对剩余题做分层采样。
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参数:
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questions: 题目全集。
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exclude_ids: 已被其他池选走的 question_id,从候选中剔除以保证三池互斥。
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correctness: question_id -> 基线是否答对。
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cfg: 透传给 stratified_sample 的采样配置
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(size/correct_ratio/task_types[/seed/min_per_class])。
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返回:
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采样后的题目列表。
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"""
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pool = [q for q in questions if q.question_id not in exclude_ids]
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return stratified_sample(pool, correctness, **cfg)
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def _q_to_dict(q: GeneratedQuestion) -> dict:
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"""将 GeneratedQuestion 转为可序列化字典。
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参数:
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q: 题目对象。
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返回:
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包含全部字段的字典(options/source_nodes 从 tuple 转为 list)。
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"""
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return {
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"question_id": q.question_id,
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"video_id": q.video_id,
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"task_type": q.task_type,
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"question": q.question,
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"options": list(q.options),
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"answer": q.answer,
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"source_nodes": list(q.source_nodes),
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"difficulty": q.difficulty,
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}
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def _dict_to_q(d: dict) -> GeneratedQuestion:
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"""从字典恢复 GeneratedQuestion。
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参数:
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d: 由 _q_to_dict 产出的字典。
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返回:
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恢复的 GeneratedQuestion 实例(options/source_nodes 恢复为 tuple)。
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"""
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return GeneratedQuestion(
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question_id=d["question_id"],
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video_id=d["video_id"],
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task_type=d["task_type"],
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question=d["question"],
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options=tuple(d["options"]),
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answer=d["answer"],
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source_nodes=tuple(d.get("source_nodes", ())),
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difficulty=d.get("difficulty", "medium"),
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)
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def save_pools(pools: Pools, path: Path) -> None:
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"""将三池及基线指标冻结为 JSON。
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参数:
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pools: 待冻结的三池。
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path: 目标 JSON 文件路径。
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"""
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path.write_text(
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json.dumps(
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{
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"baseline_run_id": pools.baseline_run_id,
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"baseline_val_accuracy": pools.baseline_val_accuracy,
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"correctness": pools.correctness,
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"diagnosis": [_q_to_dict(q) for q in pools.diagnosis],
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"validation": [_q_to_dict(q) for q in pools.validation],
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"test": [_q_to_dict(q) for q in pools.test],
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},
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ensure_ascii=False,
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indent=2,
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),
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encoding="utf-8",
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)
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def load_pools(path: Path) -> Pools:
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"""从 JSON 恢复冻结的三池。
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参数:
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path: 冻结的 pools.json 路径。
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返回:
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恢复的三池 Pools。
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异常:
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ValueError: 旧格式 pools.json(无 test 池)。
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关键实现细节:
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旧格式 pools.json(无 test 池)会以清晰的 ValueError 中止——本项目不做
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向后兼容,也不为缺失字段填默认值。删除旧文件后 build_pools 会重新采样切分,
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无需重新推理。
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"""
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d = json.loads(path.read_text(encoding="utf-8"))
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if "test" not in d:
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raise ValueError(
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f"{path} 为旧格式 pools.json(缺 test 池),"
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"请删除后重新切分(build_pools 会重新采样,无需重新推理)。"
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)
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return Pools(
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diagnosis=[_dict_to_q(x) for x in d["diagnosis"]],
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validation=[_dict_to_q(x) for x in d["validation"]],
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test=[_dict_to_q(x) for x in d["test"]],
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baseline_run_id=d["baseline_run_id"],
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baseline_val_accuracy=d["baseline_val_accuracy"],
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correctness=d["correctness"],
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)
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def build_or_load_pools(
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config: RunConfig,
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run_id: str,
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task_types: list[str] | None = None,
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) -> Pools:
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"""train 模式的三池获取入口:pools.json 已存在则加载,否则从基线 db 切分并冻结。
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把 main.py train 分支「pools.json 存在则 load_pools 否则 build_pools 再 save_pools」
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那段抽成纯函数,使 main 与集成测试共用同一切分逻辑、避免重复。pools.json 是
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一次 fresh 训练的冻结切分,resume/重跑同一 workspace 时直接复用以保证三池一致。
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参数:
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config: 运行配置,提供 workspace_dir 与三池采样旋钮(diag/val/test 各项)。
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run_id: 基线全量记录的 run_id(fresh 时来自 seed.json,决定从哪个 run 读对错)。
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task_types: 可选题型过滤,限定诊断/验证池只采样这些题型;None 表示不过滤。
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返回:
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冻结的三池 Pools。
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关键实现:
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切分前从基线 db 的 predictions 表读该 run_id 的逐题对错,作为分层采样依据。
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pools.json 落在 config.workspace_dir 下,存在即视为已冻结,原样加载不重切。
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"""
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from app.harness.log import HarnessLog
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from app.harness.workspace import resolve_paths
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from app.question_gen import load_benchmark
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pools_path = config.workspace_dir / "pools.json"
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if pools_path.exists():
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return load_pools(pools_path)
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paths = resolve_paths(config.workspace_dir)
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questions = load_benchmark(paths.questions_dir)
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with HarnessLog(str(paths.db_path), run_id) as log:
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rows = log.query(
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"SELECT question_id, prediction, answer FROM predictions WHERE run_id=?",
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(run_id,),
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)
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correctness = {r["question_id"]: r["prediction"] == r["answer"] for r in rows}
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pools = build_pools(
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questions,
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correctness,
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diag_cfg={
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"size": config.diag_size,
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"correct_ratio": config.diag_correct_ratio,
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"task_types": task_types,
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"seed": 0,
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"min_per_class": None,
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},
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val_cfg={
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"size": config.val_size,
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"correct_ratio": config.val_correct_ratio,
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"task_types": task_types,
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"seed": 0,
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"min_per_class": config.eval_min_per_class,
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},
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test_cfg={"size": config.test_size},
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baseline_run_id=run_id,
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)
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save_pools(pools, pools_path)
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return pools
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