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import json
import random
import zlib
from pathlib import Path
from typing import Dict, List
from make_master_configs import (
build_light_index,
build_master_configs,
rows_from_files,
write_rows_to_parquet,
)
def _stable_seed(base_seed: int, cfg_name: str, tag: str) -> int:
h = zlib.adler32(f"{cfg_name}::{tag}".encode("utf-8")) & 0xFFFFFFFF
return (base_seed * 1_000_003 + h * 97) & 0xFFFFFFFF
def _sample_k(items: List[str], k: int, seed: int) -> List[str]:
if k <= 0:
return []
if k >= len(items):
return sorted(items)
rng = random.Random(seed)
return sorted(rng.sample(sorted(items), k))
def build_fewshot_split_map(
base_split_map: Dict[str, Dict[str, List[str]]],
seed: int,
) -> Dict[str, Dict[str, List[str]]]:
out: Dict[str, Dict[str, List[str]]] = {}
for base_cfg, splits in base_split_map.items():
base_train = sorted(splits["train"])
base_id_test = sorted(splits["id_test"])
base_ood_train = sorted(splits["ood_train"])
base_ood_test = sorted(splits["ood_test"]) # never changes across few-shot variants
# Build a single deterministic ordering of ood_train so that few-shot sets
# are guaranteed to be progressive subsets: fs1 ⊂ fs10 ⊂ fs100 ⊂ fsall
ordering_seed = _stable_seed(seed, base_cfg, "fsordering")
ordered_ood_train = list(base_ood_train)
rng = random.Random(ordering_seed)
rng.shuffle(ordered_ood_train)
for label, k in [("1", 1), ("10", 10), ("100", 100)]:
k_actual = min(k, len(ordered_ood_train))
chosen = ordered_ood_train[:k_actual]
chosen_set = set(chosen)
fs_cfg_name = f"{base_cfg}__fs{label}"
out[fs_cfg_name] = {
"train": sorted(set(base_train) | chosen_set),
"id_test": list(base_id_test),
"ood_train": sorted(set(base_ood_train) - chosen_set),
"ood_test": list(base_ood_test), # unchanged
}
# fsall: move all ood_train into train; ood_test still unchanged
fs_cfg_name = f"{base_cfg}__fsall"
out[fs_cfg_name] = {
"train": sorted(set(base_train) | set(base_ood_train)),
"id_test": list(base_id_test),
"ood_train": [], # all moved to train
"ood_test": list(base_ood_test), # unchanged
}
return out
def write_configs_from_split_map(
split_map: Dict[str, Dict[str, List[str]]],
out_configs_dir: Path,
rows_per_shard: int,
light_index: Dict[str, Dict],
images_root: Path,
) -> None:
out_configs_dir.mkdir(parents=True, exist_ok=True)
total = len(split_map)
print(f"[make_configs] Writing {total} configs to {out_configs_dir}")
for cfg_name, splits in split_map.items():
cfg_dir = out_configs_dir / cfg_name
cfg_dir.mkdir(parents=True, exist_ok=True)
train_n = len(splits["train"])
id_n = len(splits["id_test"])
ood_train_n = len(splits.get("ood_train", []))
ood_n = len(splits["ood_test"])
print(f"[make_configs] -> {cfg_name} (train={train_n}, id_test={id_n}, ood_train={ood_train_n}, ood_test={ood_n})")
for split in ("train", "id_test", "ood_train", "ood_test"):
if split not in splits or not splits[split]:
continue
write_rows_to_parquet(
rows_from_files(splits[split], light_index, images_root),
cfg_dir,
split,
rows_per_shard,
)
print(f"[make_configs] <- {cfg_name} done")
def main() -> None:
ap = argparse.ArgumentParser()
ap.add_argument("--src_root", required=True, help="root containing metadata.csv and world_images/")
ap.add_argument("--master_dir", required=True, help="hf_repo/data/master (parquet shards)")
ap.add_argument("--out_configs_dir", required=True, help="hf_repo/data/configs")
ap.add_argument("--train_ratio", type=float, default=0.9)
ap.add_argument("--ood_train_ratio", type=float, default=0.7,
help="Fraction of OOD pool used for ood_train (few-shot source); remainder is ood_test")
ap.add_argument("--seed", type=int, default=42)
ap.add_argument("--rows_per_shard", type=int, default=16)
ap.add_argument("--scan_batch_size", type=int, default=32)
ap.add_argument("--min_pool", type=int, default=200)
ap.add_argument("--manifest_path", default=None, help="optional path to write JSON manifest")
args = ap.parse_args()
src_root = Path(args.src_root)
out_configs_dir = Path(args.out_configs_dir)
images_root = src_root / "world_images"
base_split_map = build_master_configs(
src_root=src_root,
master_dir=Path(args.master_dir),
out_configs_dir=out_configs_dir,
train_ratio=args.train_ratio,
seed=args.seed,
rows_per_shard=args.rows_per_shard,
scan_batch_size=args.scan_batch_size,
min_pool=args.min_pool,
ood_train_ratio=args.ood_train_ratio,
write_parquet=False,
)
fewshot_split_map = build_fewshot_split_map(base_split_map, seed=args.seed)
all_split_map = {}
all_split_map.update(base_split_map)
all_split_map.update(fewshot_split_map)
print(
f"[make_configs] Prepared split plans: base={len(base_split_map)} "
f"fewshot={len(fewshot_split_map)} total={len(all_split_map)}"
)
print("[make_configs] Building lightweight master index...")
light_index = build_light_index(str(args.master_dir), args.scan_batch_size)
print(f"[make_configs] Indexed {len(light_index)} master rows")
write_configs_from_split_map(
split_map=all_split_map,
out_configs_dir=out_configs_dir,
rows_per_shard=args.rows_per_shard,
light_index=light_index,
images_root=images_root,
)
base_cfgs = sorted(base_split_map.keys())
fs_cfgs = sorted(fewshot_split_map.keys())
manifest = {
"base_config_count": len(base_cfgs),
"fewshot_per_base": ["fs1", "fs10", "fs100", "fsall"],
"total_config_count": len(all_split_map),
"splits": ["train", "id_test", "ood_train", "ood_test"],
"split_notes": {
"train": "ID training set (90% of ID pool)",
"id_test": "ID test set (10% of ID pool, fixed across all configs)",
"ood_train": "OOD training pool (70% of OOD pool); source for few-shot images",
"ood_test": "OOD test set (30% of OOD pool, fixed across all configs including few-shot variants)",
},
"base_configs": base_cfgs,
"fewshot_configs": fs_cfgs,
"all_configs": sorted(all_split_map.keys()),
}
if args.manifest_path:
manifest_path = Path(args.manifest_path)
manifest_path.parent.mkdir(parents=True, exist_ok=True)
manifest_path.write_text(json.dumps(manifest, indent=2))
print(json.dumps(manifest, indent=2))
if __name__ == "__main__":
main()
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