flow-matching-1 / src /loaders.py
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import numpy as np
from pathlib import Path
from omegaconf import DictConfig, OmegaConf
from torch.utils.data import DataLoader
from .data import (
Algonauts2025Dataset,
load_algonauts2025_friends_fmri,
load_algonauts2025_movie10_fmri,
load_sharded_features,
episode_filter,
)
DEFAULT_DATA_DIR = Path("/raid/lttung05/fmri_encoder/data")
SUBJECTS = (1, 2, 3, 5)
OOD_MOVIES = ["chaplin", "mononoke", "passepartout", "planetearth", "pulpfiction", "wot"]
def pool_features(features: dict[str, np.ndarray]) -> dict[str, np.ndarray]:
pooled = {}
for key, feat in features.items():
assert feat.ndim in {2, 3}
if feat.ndim == 3:
feat = feat.mean(axis=1)
pooled[key] = feat
return pooled
def load_features(cfg: DictConfig, model: str, layer: str) -> dict[str, np.ndarray]:
data_dir = Path(cfg.datasets_root or DEFAULT_DATA_DIR)
friends_features = load_sharded_features(
data_dir / "features", model=model, layer=layer, series="friends"
)
movie10_features = load_sharded_features(
data_dir / "features", model=model, layer=layer, series="movie10"
)
features = {**friends_features, **movie10_features}
return features
def load_all_features(cfg, datasets_root: Path) -> list[dict[str, np.ndarray]]:
all_features = []
for feat_name in cfg.include_features:
model, layer = feat_name.split("/")
feat_cfg = cfg.features[model]
model_name = feat_cfg.model
layer_name = feat_cfg.layers[layer]
print(f" Loading {feat_name} ({model_name}/{layer_name})")
features_dir = datasets_root / "features"
# Load friends (all seasons including s7)
friends_features = load_sharded_features(
features_dir, model=model_name, layer=layer_name, series="friends"
)
# Load ood movies
ood_features = load_sharded_features(
features_dir, model=model_name, layer=layer_name, series="ood"
)
features = {**friends_features, **ood_features}
if cfg.stage1.model.global_pool == "avg":
features = pool_features(features)
all_features.append(features)
return all_features
def make_data_loaders(cfg: DictConfig) -> dict[str, DataLoader]:
print("loading fmri data")
data_dir = Path(cfg.datasets_root or DEFAULT_DATA_DIR)
subjects = cfg.get("subjects", SUBJECTS)
friends_fmri = load_algonauts2025_friends_fmri(
data_dir / "algonauts_2025.competitors", subjects=subjects
)
movie10_fmri = load_algonauts2025_movie10_fmri(
data_dir / "algonauts_2025.competitors", subjects=subjects
)
all_fmri = {**friends_fmri, **movie10_fmri}
all_episodes = list(all_fmri)
all_features = []
for feat_name in cfg.include_features:
model, layer = feat_name.split("/")
feat_cfg = cfg.features[model]
model_name = feat_cfg.model
layer_name = feat_cfg.layers[layer]
print(f"loading features {feat_name} ({model_name}/{layer_name})")
features = load_features(cfg, model_name, layer_name)
if cfg.stage1.model.global_pool == "avg":
features = pool_features(features)
all_features.append(features)
data_loaders = {}
for ds_name, ds_cfg in cfg.datasets.items():
print(f"loading dataset: {ds_name}\n\n{OmegaConf.to_yaml(ds_cfg)}")
ds_cfg = ds_cfg.copy()
filter_cfg = ds_cfg.pop("filter")
filter_fn = episode_filter(**filter_cfg)
ds_episodes = list(filter(filter_fn, all_episodes))
dataset = Algonauts2025Dataset(
episode_list=ds_episodes,
fmri_data=all_fmri,
feat_data=all_features,
**ds_cfg,
)
batch_size = cfg.batch_size if ds_name == "train" else 1
loader = DataLoader(dataset, batch_size=batch_size)
data_loaders[ds_name] = loader
return data_loaders
def make_test_loader(cfg, all_features, fmri_num_samples, test_set_name):
all_episodes = list(all_features[0])
if test_set_name == "friends-s7":
filter_fn = episode_filter(seasons=[7], movies=[])
elif test_set_name == "ood":
filter_fn = episode_filter(seasons=[], movies=OOD_MOVIES)
else:
raise ValueError(f"Unknown test set: {test_set_name}")
ds_episodes = sorted(filter(filter_fn, all_episodes))
print(f" Episodes ({len(ds_episodes)}): {ds_episodes}")
expected_episodes = set()
for sub_samples in fmri_num_samples.values():
expected_episodes.update(sub_samples.keys())
ds_episodes = [ep for ep in ds_episodes if ep in expected_episodes]
feature_episodes = set(all_episodes)
for ep in expected_episodes:
if ep not in ds_episodes and ep in feature_episodes:
ds_episodes.append(ep)
ds_episodes = sorted(ds_episodes)
episode_num_samples = {}
for ep in ds_episodes:
max_samples = max(
fmri_num_samples[sub].get(ep, 0) for sub in fmri_num_samples
)
if max_samples == 0:
print(f" Warning: no fmri_num_samples for episode {ep}, skipping")
continue
episode_num_samples[ep] = max_samples
ds_episodes = [ep for ep in ds_episodes if ep in episode_num_samples]
missing = expected_episodes - set(ds_episodes)
if missing:
raise ValueError(
f"Missing episodes in features: {missing}. "
f"Cannot produce complete submission."
)
dataset = Algonauts2025Dataset(
episode_list=ds_episodes,
feat_data=all_features,
fmri_num_samples=episode_num_samples,
sample_length=None,
shuffle=False,
)
loader = DataLoader(dataset, batch_size=1)
return loader