flow-matching-1 / src /evaluate.py
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import numpy as np
import torch
import torch.nn as nn
from timm.utils import AverageMeter
from torch.utils.data import DataLoader
from .metric import pearsonr_score
from .submission_utils import EXPECTED_SUBJECTS, EXPECTED_OOD_KEYS
@torch.no_grad()
def evaluate_stage1(
*,
epoch: int,
model: torch.nn.Module,
val_loader: DataLoader,
device: torch.device,
subjects: list,
ds_name: str = "val",
):
model.eval()
loss_m = AverageMeter()
samples = []
outputs = []
for batch_idx, batch in enumerate(val_loader):
feats = [f.to(device) for f in batch["features"]]
fmri = batch["fmri"].to(device)
batch_size = fmri.size(0)
pred, _ = model(feats)
loss = nn.MSELoss()(pred, fmri)
loss_m.update(loss.item(), batch_size)
N, S, L, C = fmri.shape
assert N, S == (1, 4)
outputs.append(pred.cpu().numpy().swapaxes(0, 1).reshape((S, N * L, C)))
samples.append(fmri.cpu().numpy().swapaxes(0, 1).reshape((S, N * L, C)))
outputs = np.concatenate(outputs, axis=1)
samples = np.concatenate(samples, axis=1)
metrics = {}
dim = samples.shape[-1]
acc = 0.0
acc_map = np.zeros(dim)
for ii, sub in enumerate(subjects):
y_true = samples[ii].reshape(-1, dim)
y_pred = outputs[ii].reshape(-1, dim)
metrics[f"accmap_sub-{sub}"] = acc_map_i = pearsonr_score(y_true, y_pred)
metrics[f"acc_sub-{sub}"] = acc_i = np.mean(acc_map_i)
acc_map += acc_map_i / len(subjects)
acc += acc_i / len(subjects)
metrics["accmap_avg"] = acc_map
metrics["acc_avg"] = acc
accs_fmt = ",".join(
f"{val:.3f}" for key, val in metrics.items() if key.startswith("acc_sub-")
)
print(
f"Evaluate Stage 1 ({ds_name}): {epoch:>3d}"
f" Loss: {loss_m.avg:#.3g}"
f" Acc: {accs_fmt} ({acc:.3f})"
)
return acc, metrics
@torch.no_grad()
def evaluate_stage2(
*,
epoch: int,
stage1_model: torch.nn.Module,
stage2_models: nn.ModuleDict,
val_loader: DataLoader,
device: torch.device,
subjects: list,
ds_name: str = "val",
n_timesteps: int = 10,
):
stage1_model.eval()
for model in stage2_models.values():
model.eval()
samples = []
outputs = []
for batch in val_loader:
feats = [f.to(device) for f in batch["features"]]
fmri = batch["fmri"].to(device)
mu_anchor, embed_anchor = stage1_model(feats)
batch_preds = []
for i, sub in enumerate(subjects):
sub_key = str(sub)
cfm = stage2_models[sub_key]
src_cond = mu_anchor[:, i].transpose(1, 2)
mu_fusion = embed_anchor.transpose(1, 2)
pred = cfm(src_cond, mu_fusion, n_timesteps=n_timesteps)
pred = pred.transpose(1, 2).unsqueeze(1)
batch_preds.append(pred)
pred_combined = torch.cat(batch_preds, dim=1)
N, S, L, C = fmri.shape
assert N, S == (1, 4)
outputs.append(
pred_combined.cpu().numpy().swapaxes(0, 1).reshape((S, N * L, C))
)
samples.append(fmri.cpu().numpy().swapaxes(0, 1).reshape((S, N * L, C)))
outputs = np.concatenate(outputs, axis=1)
samples = np.concatenate(samples, axis=1)
metrics = {}
dim = samples.shape[-1]
acc = 0.0
acc_map = np.zeros(dim)
for ii, sub in enumerate(subjects):
y_true = samples[ii].reshape(-1, dim)
y_pred = outputs[ii].reshape(-1, dim)
metrics[f"accmap_sub-{sub}"] = acc_map_i = pearsonr_score(y_true, y_pred)
metrics[f"acc_sub-{sub}"] = acc_i = np.mean(acc_map_i)
acc_map += acc_map_i / len(subjects)
acc += acc_i / len(subjects)
metrics["accmap_avg"] = acc_map
metrics["acc_avg"] = acc
accs_fmt = ",".join(
f"{val:.3f}" for key, val in metrics.items() if key.startswith("acc_sub-")
)
print(f"Evaluate Stage 2 ({ds_name}): {epoch:>3d}" f" Acc: {accs_fmt} ({acc:.3f})")
return acc, metrics
def validate_submission(
predictions: dict[str, dict[str, np.ndarray]],
test_set_name: str,
fmri_num_samples: dict[str, dict[str, int]],
):
subject_keys = set(predictions.keys())
if subject_keys != EXPECTED_SUBJECTS:
extra = subject_keys - EXPECTED_SUBJECTS
missing = EXPECTED_SUBJECTS - subject_keys
raise ValueError(
f"Subject key mismatch. Extra: {extra}, Missing: {missing}. "
f"Expected exactly: {EXPECTED_SUBJECTS}"
)
if test_set_name == "ood":
expected_episodes = EXPECTED_OOD_KEYS
elif test_set_name == "friends-s7":
all_episodes = set()
for sub_samples in fmri_num_samples.values():
all_episodes.update(sub_samples.keys())
expected_episodes = all_episodes
else:
print(f" Warning: no key validation for test set '{test_set_name}'")
return
for sub, episodes_dict in predictions.items():
episode_keys = set(episodes_dict.keys())
extra = episode_keys - expected_episodes
missing = expected_episodes - episode_keys
if extra:
raise ValueError(
f"{sub}: extra episode keys {extra} — these will cause a formatting error"
)
if missing:
raise ValueError(
f"{sub}: missing episode keys {missing} — submission is incomplete"
)
for ep, pred in episodes_dict.items():
expected_n = fmri_num_samples[sub].get(ep)
if expected_n is not None and pred.shape[0] != expected_n:
raise ValueError(
f"{sub}/{ep}: shape {pred.shape} but expected N={expected_n}"
)
if pred.shape[1] != 1000:
raise ValueError(
f"{sub}/{ep}: shape {pred.shape} but expected 1000 parcels"
)
if pred.dtype != np.float32:
raise ValueError(
f"{sub}/{ep}: dtype {pred.dtype} but expected float32"
)
print(f" Validation passed: {len(predictions)} subjects, "
f"{len(expected_episodes)} episodes each")