miscellaneous / case_study_gemini_sync.py
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"""Re-test the 12 case-study candidates' sync variants on Gemini.
Pipeline:
1. Read /home/ubuntu/case_study_candidates.jsonl (12 base videos).
2. Filter the master test jsonl to the 36 rows that belong to those 12 bases
(each base + its delay + early variant).
3. Invoke scripts/eval_gemini_mute_sync_swap.py --task sync --openai-parse-sync.
4. Read the Gemini sync results and report which of the 36 are wrong, using
the same correctness rule as find_case_study.py:
wrong = (gt_synced != pred_synced) OR
(not gt_synced AND pred_direction != gt_direction)
Usage:
GEMINI_API_KEY=... OPENAI_API_KEY=... python3 /home/ubuntu/case_study_gemini_sync.py
or pass --gemini-key / --openai-key.
"""
import argparse
import json
import os
import re
import subprocess
import sys
from pathlib import Path
REPO = Path("/home/ubuntu/CleverHans-Evaluation")
TEST_JSONL = REPO / "data" / "kto_training_data_v2_test.jsonl"
EVAL_SCRIPT = REPO / "scripts" / "eval_gemini_mute_sync_swap.py"
DATA_ROOT = Path("/opt/dlami/nvme/video_source")
CANDIDATES = Path("/home/ubuntu/case_study_pool.jsonl") # 45-video pool
OUT_ROOT = Path("/home/ubuntu/eval_results/case_study_pool")
FILTERED_JSON = OUT_ROOT / "sync_test.jsonl"
LABEL = "case_study_pool_gemini_sync"
GEMINI_RESULT = OUT_ROOT / "sync" / LABEL / "eval_results.jsonl"
WRONG_OUT = OUT_ROOT / "gemini_wrong.jsonl"
SYNC_SUFFIX_RE = re.compile(r"_(delay|early)_\d+(?:\.\d+)?s(?=\.mp4$)")
def base_of(name: str) -> str:
return SYNC_SUFFIX_RE.sub("", name)
def load_jsonl(path):
with open(path) as f:
for line in f:
line = line.strip()
if line:
yield json.loads(line)
def step_filter():
bases = {row["video"] for row in load_jsonl(CANDIDATES)}
print(f"[filter] {len(bases)} base videos from {CANDIDATES}")
OUT_ROOT.mkdir(parents=True, exist_ok=True)
kept = []
for row in load_jsonl(TEST_JSONL):
if base_of(row["video"]) in bases:
kept.append(row)
with open(FILTERED_JSON, "w") as f:
for row in kept:
f.write(json.dumps(row, ensure_ascii=False) + "\n")
print(f"[filter] kept {len(kept)} rows -> {FILTERED_JSON}")
if len(kept) != 3 * len(bases):
print(f"[warn] expected {3*len(bases)} rows (3 per base), got {len(kept)}")
def step_run_gemini(gemini_key: str, openai_key: str, model: str, workers: int):
env = os.environ.copy()
env["GEMINI_API_KEY"] = gemini_key
env["OPENAI_API_KEY"] = openai_key
cmd = [
sys.executable, str(EVAL_SCRIPT),
"--task", "sync",
"--model", model,
"--data-root", str(DATA_ROOT),
"--test-jsonl", str(FILTERED_JSON),
"--output-dir", str(OUT_ROOT),
"--label", LABEL,
"--openai-parse-sync",
"--workers", str(workers),
]
print(f"[run] {' '.join(cmd)}")
subprocess.run(cmd, env=env, check=True)
def step_report():
if not GEMINI_RESULT.exists():
sys.exit(f"[error] expected results at {GEMINI_RESULT}; eval did not produce one")
rows = list(load_jsonl(GEMINI_RESULT))
wrong = []
for r in rows:
gt_synced = bool(r["gt_synced"])
pred_synced = bool(r["pred_synced"])
is_wrong = (gt_synced != pred_synced) or (
(not gt_synced) and r.get("pred_direction") != r.get("gt_direction")
)
if is_wrong:
wrong.append({
"video": r["video"],
"base": base_of(r["video"]),
"gt": (r["gt_direction"], r["gt_offset_sec"]),
"pred_synced": pred_synced,
"pred": (r.get("pred_direction"), r.get("pred_offset_sec")),
"raw": r.get("raw_output", "")[:200],
})
by_base = {}
for w in wrong:
by_base.setdefault(w["base"], []).append(w)
print(f"\n[report] {len(rows)} sync samples evaluated, {len(wrong)} wrong")
print(f"[report] wrong distribution by base video:")
for base in sorted(by_base):
hits = by_base[base]
print(f"\n {base} ({len(hits)} variant(s) wrong)")
for h in hits:
print(f" - {h['video']}")
print(f" gt={h['gt']} pred_synced={h['pred_synced']} pred={h['pred']}")
with open(WRONG_OUT, "w") as f:
for w in wrong:
f.write(json.dumps(w, ensure_ascii=False) + "\n")
print(f"\n[saved] wrong rows -> {WRONG_OUT}")
bases_total = {base_of(r["video"]) for r in rows}
bases_any_wrong = set(by_base)
bases_all_three_wrong = {b for b, hs in by_base.items()
if len(hs) == 3}
print(f"\n[summary]")
print(f" candidates with >=1 wrong sync : {len(bases_any_wrong)} / {len(bases_total)}")
print(f" candidates with all 3 wrong : {len(bases_all_three_wrong)} / {len(bases_total)}")
if bases_all_three_wrong:
print(f" perfect-fail candidates:")
for b in sorted(bases_all_three_wrong):
print(f" - {b}")
def main():
p = argparse.ArgumentParser()
p.add_argument("--gemini-key", default=os.environ.get("GEMINI_API_KEY"))
p.add_argument("--openai-key", default=os.environ.get("OPENAI_API_KEY"))
p.add_argument("--model", default="gemini-3.1-pro-preview")
p.add_argument("--workers", type=int, default=4)
p.add_argument("--skip-run", action="store_true",
help="Skip the Gemini call (use existing results to re-report).")
args = p.parse_args()
step_filter()
if not args.skip_run:
if not args.gemini_key:
sys.exit("[error] need --gemini-key or GEMINI_API_KEY env")
if not args.openai_key:
sys.exit("[error] need --openai-key or OPENAI_API_KEY env")
step_run_gemini(args.gemini_key, args.openai_key, args.model, args.workers)
step_report()
if __name__ == "__main__":
main()