flow-matching-1 / src /inference.py
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"""Evaluate trained Stage 1 + Stage 2 checkpoints on configured validation sets."""
import argparse
from pathlib import Path
import torch
from .flowfm.checkpointing import load_state_dict, resolve_stage2_checkpoint
from .flowfm.config import load_config, resolve_subjects
from .flowfm.data_pipeline import make_data_loaders
from .flowfm.model_factory import (
build_stage1_model,
build_stage2_models,
infer_feature_dims,
infer_target_dim,
)
from .flowfm.stage1 import evaluate_stage1
from .flowfm.stage2 import evaluate_stage2
def build_models(
cfg,
sample_batch,
subjects: list[int],
checkpoint_dir: Path,
stage2_ckpt_name: str | None,
device: torch.device,
):
"""Construct Stage 1/2 models and load checkpoint weights."""
feat_dims = infer_feature_dims(sample_batch)
target_dim = infer_target_dim(sample_batch)
stage1_model = build_stage1_model(
cfg=cfg,
feat_dims=feat_dims,
subjects=subjects,
device=device,
)
stage1_model.load_state_dict(load_state_dict(checkpoint_dir / "stage1_best.pt", device))
stage1_model.eval()
stage2_models = build_stage2_models(
cfg=cfg,
target_dim=target_dim,
subjects=subjects,
device=device,
)
stage2_ckpt = resolve_stage2_checkpoint(checkpoint_dir, stage2_ckpt_name)
stage2_models.load_state_dict(load_state_dict(stage2_ckpt, device))
stage2_models.eval()
return stage1_model, stage2_models, stage2_ckpt
def main() -> None:
parser = argparse.ArgumentParser(description="Evaluate two-stage checkpoints")
parser.add_argument("--checkpoint-dir", type=str, required=True)
parser.add_argument("--cfg-path", type=str, default=None)
parser.add_argument("--stage2-ckpt", type=str, default=None)
parser.add_argument("--device", type=str, default=None)
parser.add_argument("--split", action="append", default=None)
parser.add_argument("--n-timesteps", type=int, default=None)
args = parser.parse_args()
checkpoint_dir = Path(args.checkpoint_dir)
cfg_path = args.cfg_path or str(checkpoint_dir / "config.yaml")
cfg = load_config(cfg_path)
if args.device is not None:
cfg.device = args.device
device = torch.device(cfg.device)
subjects = resolve_subjects(cfg)
n_timesteps = int(args.n_timesteps or cfg.stage2.get("n_timesteps", 25))
print(f"Checkpoint dir: {checkpoint_dir}")
print(f"Config: {cfg_path}")
print(f"Device: {device}")
print(f"Subjects: {subjects}")
data_loaders = make_data_loaders(cfg)
train_loader = data_loaders["train"]
eval_loaders = {name: loader for name, loader in data_loaders.items() if name != "train"}
if args.split:
selected = set(args.split)
eval_loaders = {name: loader for name, loader in eval_loaders.items() if name in selected}
missing = selected - set(eval_loaders)
if missing:
raise ValueError(f"Requested split(s) not found: {sorted(missing)}")
sample_batch = next(iter(train_loader))
stage1_model, stage2_models, stage2_ckpt = build_models(
cfg=cfg,
sample_batch=sample_batch,
subjects=subjects,
checkpoint_dir=checkpoint_dir,
stage2_ckpt_name=args.stage2_ckpt,
device=device,
)
print(f"Loaded Stage 1 checkpoint: {checkpoint_dir / 'stage1_best.pt'}")
print(f"Loaded Stage 2 checkpoint: {stage2_ckpt}")
for split_name, loader in eval_loaders.items():
print(f"\n=== Evaluating split: {split_name} ===")
stage1_acc, _ = evaluate_stage1(
epoch=0,
model=stage1_model,
val_loader=loader,
device=device,
subjects=subjects,
ds_name=split_name,
)
stage2_acc, _ = evaluate_stage2(
epoch=0,
stage1_model=stage1_model,
stage2_models=stage2_models,
val_loader=loader,
device=device,
subjects=subjects,
ds_name=split_name,
n_timesteps=n_timesteps,
)
print(f"Summary [{split_name}] Stage1={stage1_acc:.4f} Stage2={stage2_acc:.4f}")
if __name__ == "__main__":
main()