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main.py
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main.py
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import logging
import os
from copy import deepcopy
from datetime import datetime
import hydra
import lightning as L
import torch
import torchio as tio
from dotenv import load_dotenv
from lightning.pytorch.callbacks import ModelCheckpoint
from lightning.pytorch.loggers import WandbLogger
from omegaconf import DictConfig
from rich.logging import RichHandler
from sparseml.exporters.onnx_to_deepsparse import ONNXToDeepsparse
import wandb
from hsftrain.callbacks import SparseMLCallback
from hsftrain.data.loader import load_from_config
from hsftrain.exporter import TorchToONNX
from hsftrain.models.losses import FocalTversky_loss
from hsftrain.models.models import SegmentationModel
VERSION = "4.0.0"
FORMAT = "%(message)s"
logging.basicConfig(level="INFO",
format=FORMAT,
datefmt="[%X]",
handlers=[RichHandler(markup=True)])
log = logging.getLogger(__name__)
load_dotenv()
# from hydra import compose, initialize
# initialize(config_path="conf")
# cfg = compose(config_name="config")
@hydra.main(version_base=None, config_path="conf", config_name="config")
def main(cfg: DictConfig) -> None:
dt = datetime.now()
ts = int(datetime.timestamp(dt))
name = f"arunet2_{ts}"
log.info(f"Experiment name: {name}")
mri_datamodule = load_from_config(cfg.datasets)(
preprocessing_pipeline=tio.Compose([
tio.ToCanonical(),
tio.ZNormalization(),
tio.OneHot(),
]),
augmentation_pipeline=tio.Compose([
tio.RandomFlip(axes=('LR',), p=.5),
tio.RandomMotion(degrees=5, translation=5, num_transforms=3, p=.1),
tio.RandomBlur(std=(0, 0.5), p=.1),
tio.RandomNoise(mean=0, std=0.5, p=.1),
tio.RandomGamma(log_gamma=0.4, p=.1),
tio.RandomAffine(scales=.3,
degrees=30,
translation=5,
isotropic=False,
p=.2),
# tio.RandomAnisotropy(p=.1, scalars_only=False),
tio.transforms.RandomElasticDeformation(num_control_points=4,
max_displacement=4,
locked_borders=0,
p=.1),
# tio.RandomSpike(p=.01),
# tio.RandomBiasField(coefficients=.2, p=.01),
]),
postprocessing_pipeline=tio.Compose([
tio.CopyAffine("mri"),
tio.EnsureShapeMultiple(8),
]))
wandb.login(key=os.getenv("WANDB_API_KEY"))
wandb_logger = WandbLogger(name=name, project="arunet2")
_dm = deepcopy(mri_datamodule)
_dm.setup()
N = len(_dm.subjects_train_list)
N_val = len(_dm.subjects_val_list)
log.info(f"Train dataset size: {N}")
log.info(f"Validation dataset size: {N_val}")
steps_per_epoch = N // cfg.datasets.batch_size
steps_per_epoch = steps_per_epoch // cfg.lightning.accumulate_grad_batches
wandb_logger.experiment.config.update({"train_size": N, "val_size": N_val})
seg_loss = FocalTversky_loss({"apply_nonlin": None})
hparams = cfg.models.hparams
model = SegmentationModel(hparams=hparams,
learning_rate=cfg.models.lr,
seg_loss=seg_loss,
use_forgiving_loss=cfg.models.use_forgiving_loss,
epochs=cfg.lightning.max_epochs,
steps_per_epoch=steps_per_epoch,
precision=cfg.lightning.precision)
callbacks = [
ModelCheckpoint(monitor="val/epoch/loss",
mode="min",
save_top_k=1,
save_last=True,
verbose=True,
dirpath=f"{cfg.datasets.output_path}ckpt/",
filename=f"arunet_{VERSION}_{ts}"),
]
if cfg.models.use_sparseml:
sparseml = SparseMLCallback(recipe_path="sparseml/scratch.yaml",
steps_per_epoch=steps_per_epoch)
callbacks.append(sparseml)
trainer = L.Trainer(logger=wandb_logger,
callbacks=callbacks,
**cfg.lightning)
trainer.fit(model, datamodule=mri_datamodule)
dummy_input = torch.randn(1, 1, 16, 16, 16)
model.eval()
if cfg.models.use_sparseml:
exporter = TorchToONNX(
sample_batch=dummy_input.to(model.device),
input_names=["cropped_hippocampus"],
output_names=["segmented_hippocampus"],
opset=17,
)
exporter.export(
model,
f"{cfg.datasets.output_path}onnx/arunet_{VERSION}_{ts}.onnx",
)
# Convert to deepsparse
exporter = ONNXToDeepsparse(skip_input_quantize=False)
exporter.export(
f"{cfg.datasets.output_path}onnx/arunet_{VERSION}_{ts}.onnx",
f"{cfg.datasets.output_path}onnx/arunet_{VERSION}_{ts}_deepsparse.onnx",
)
else:
model = model.to("cpu").float()
torch.onnx.export(
model,
dummy_input,
f"{cfg.datasets.output_path}onnx/arunet_{VERSION}_{ts}.onnx",
input_names=["cropped_hippocampus"],
output_names=["segmented_hippocampus"],
dynamic_axes={
'cropped_hippocampus': {
0: 'batch',
2: "x",
3: "y",
4: "z"
},
'segmented_hippocampus': {
0: 'batch',
2: "x",
3: "y",
4: "z"
}
},
opset_version=17)
if __name__ == "__main__":
torch.set_float32_matmul_precision("medium")
L.seed_everything(42)
main()