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tps-dashboard/ai-labeling/scripts/summarize.py
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"""
summarize.py - 汇总打标结果命中情况
用法: python summarize.py --model m3
"""
import sys
sys.stdout.reconfigure(encoding='utf-8')
sys.stderr.reconfigure(encoding='utf-8')
import json
import glob
import argparse
from pathlib import Path
BASE_DIR = Path(__file__).parent.parent
EXPERIMENTS_DIR = BASE_DIR / "experiments"
def load_json(path):
try:
return json.loads(path.read_text(encoding="utf-8"))
except Exception:
return None
def latest_per_ep(files):
"""同 ep 有多个文件时取时间戳最新的。"""
latest = {}
for f in files:
name = f.name
# 文件名格式: 20260611_154037_m3_ep04.json
parts = name.replace(".json", "").split("_")
if len(parts) >= 4:
ts = parts[0] + parts[1] # yyyymmddHHMMSS
ep = int(parts[-1].replace("ep", ""))
key = ep
if key not in latest or ts > latest[key][1]:
latest[key] = (f, ts)
return {ep: info[0] for ep, info in latest.items()}
def run(model):
pattern = str(EXPERIMENTS_DIR / f"*_{model}_*.json")
files = sorted(Path(p) for p in glob.glob(pattern))
if not files:
print(f"未找到 {pattern}")
return
ep_files = latest_per_ep(files)
rows = []
parse_fail = 0
for ep in sorted(ep_files.keys()):
data = load_json(ep_files[ep])
if data is None:
parse_fail += 1
rows.append({"ep": ep, "title": "?", "gt": "?", "pred": "解析失败", "hit": False, "conf": "?"})
continue
gt = data.get("ground_truth", {})
result = data.get("result")
title = gt.get("title", "?")
gt_val = gt.get("narrative_structure", "?")
pred_val = result.get("narrative_structure") if result else None
conf = result.get("confidence", "?") if result else "?"
hit = pred_val == gt_val if pred_val is not None else False
rows.append({"ep": ep, "title": title, "gt": gt_val, "pred": pred_val or "解析失败", "hit": hit, "conf": conf})
# 打印每行
for r in rows:
mark = "✓" if r["hit"] else "✗"
conf_str = f'置信度:{r["conf"]}' if r["conf"] != "?" else ""
print(f' ep{r["ep"]:02d} {r["title"]:<10} | 标准:{r["gt"]:<8} | {model}:{r["pred"]:<8} | {mark} {conf_str}')
# 汇总
total = len(rows)
hits = sum(1 for r in rows if r["hit"])
hi_conf = [r for r in rows if r["conf"] == "高"]
mid_low = [r for r in rows if r["conf"] in ("中", "低")]
hi_hit = sum(1 for r in hi_conf if r["hit"])
ml_hit = sum(1 for r in mid_low if r["hit"])
print(f"\n ===== {model} 命中情况 =====")
print(f" narrative_structure 命中: {hits}/{total} = {hits*100//total}%")
print(f" 自评\"\"置信的命中率: {hi_hit}/{len(hi_conf)}")
print(f" 自评\"中/低\"置信的命中率: {ml_hit}/{len(mid_low)}")
print(f" 解析失败: {parse_fail} 期")
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument("--model", required=True, help="模型键名,如 m3 / deepseek-v4")
args = parser.parse_args()
run(args.model)