#!/usr/bin/env python3
"""Show a few concrete papers — v15 actual n_pred, v16 actual n_pred, n_gt,
and what each setting would charge.
Stratified pick: small-GT, mid-GT, large-GT to show edge behavior.
"""
import json
import re
from pathlib import Path
ROOT = Path("/gpfs/radev/scratch/cohan/yz979/xucai/Abforge_Training")
_TARGET_BULLET_RE = re.compile(
r'\n\s*[-*]\s*(?:\*\*)?Target Module(?:\*\*)?\s*:', re.IGNORECASE)
_RQ_BULLET_RE = re.compile(
r'\n\s*[-*]\s*(?:\*\*)?Research Question(?:\*\*)?\s*:', re.IGNORECASE)
def extract_result(raw):
m = re.search(r"(.*?)", raw, re.DOTALL | re.IGNORECASE)
if m: return m.group(1)
m2 = re.search(r"(.*)", raw, re.DOTALL | re.IGNORECASE)
return m2.group(1) if m2 else raw
def count_pairs(raw):
t = "\n" + extract_result(raw or "")
return min(len(_TARGET_BULLET_RE.findall(t)), len(_RQ_BULLET_RE.findall(t)))
def cp_progressive(n, g, tol, base, step, cap=0.5):
excess = max(0, n - g - tol)
if excess <= 0: return 0.0
return min(cap, sum(base + step * (i - 1) for i in range(1, excess + 1)))
def cp_fixed(n, g, tol, rate, cap=0.5):
return min(cap, max(0, n - g - tol) * rate)
SETTINGS = [
("v16-now", lambda n, g: cp_progressive(n, g, 1, 0.05, 0.01)),
("E (rec)", lambda n, g: cp_progressive(n, g, 2, 0.01, 0.01)),
("A ", lambda n, g: cp_progressive(n, g, 1, 0.01, 0.01)),
("C fixed", lambda n, g: cp_fixed(n, g, 1, 0.02)),
]
def title_key(r):
return r.get("meta", {}).get("title", "")
v15 = {title_key(json.loads(l)): json.loads(l)
for l in open(ROOT / "infer/task1_v15_ckpt100_bench50_qwen3_infer_task1.jsonl")}
v16 = {title_key(json.loads(l)): json.loads(l)
for l in open(ROOT / "infer/task1_v16_ckpt50_bench50_qwen3_infer_task1.jsonl")}
evals = [json.loads(l) for l in open(ROOT / "infer/task1_v15_ckpt100_eval_50.jsonl")]
papers = []
for ev in evals:
title = title_key(ev)
if title not in v15 or title not in v16: continue
n_gt = ev.get("n_gt", 0)
n15 = count_pairs(v15[title].get("infer_task1_response", ""))
n16 = count_pairs(v16[title].get("infer_task1_response", ""))
mr = ev.get("match_rate", 0)
papers.append((title, n_gt, n15, n16, mr))
# stratified pick: 2 small-GT, 2 mid-GT, 2 large-GT
papers.sort(key=lambda x: x[1])
small = papers[:2] + papers[3:5]
mid = [p for p in papers if 3 <= p[1] <= 4][:3]
large = [p for p in papers if p[1] >= 6][:3]
print("CASE-BY-CASE count_penalty under each setting")
print("=" * 100)
print(f"{'title':<55} {'n_gt':>4} {'n15':>4} {'n16':>4} "
f"{'v16-now (v15→v16)':>22} {'E (v15→v16)':>16} {'A (v15→v16)':>16} {'C (v15→v16)':>16}")
print("-" * 160)
for label, group in [("SMALL n_gt", small), ("MID n_gt", mid), ("LARGE n_gt", large)]:
print(f"\n--- {label} ---")
for title, n_gt, n15, n16, mr in group:
title_s = (title[:50] + "…") if len(title) > 50 else title
row = f"{title_s:<55} {n_gt:>4} {n15:>4} {n16:>4} "
for name, fn in SETTINGS:
p15 = fn(n15, n_gt)
p16 = fn(n16, n_gt)
row += f" {p15:.3f}→{p16:.3f} "
print(row)
# also: average penalty if model "stabilizes at n=5" vs current v16 n=4
print("\n\n=== summary: avg penalty across all 49 papers if model writes constant N ===")
print(f"{'setting':<10} {'n=4 (v16 cur)':>15} {'n=5':>10} {'n=6':>10} {'n=7':>10}")
for name, fn in SETTINGS:
row = f"{name:<10} "
for N in [4, 5, 6, 7]:
mean = sum(fn(N, p[1]) for p in papers) / len(papers)
row += f" {mean:>10.4f} "
print(row)