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Checkpointing | ||
============= | ||
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**Prerequisites** | ||
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Make sure to read the following sections of the documentation before using this | ||
example: | ||
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* :ref:`pytorch_setup` | ||
* :ref:`001 - Single GPU Job` | ||
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The full source code for this example is available on `the mila-docs GitHub | ||
repository. | ||
<https://github.com/mila-iqia/mila-docs/tree/master/docs/examples/data/checkpointing>`_ | ||
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**job.sh** | ||
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.. code:: diff | ||
# distributed/001_single_gpu/job.sh -> data/checkpointing/job.sh | ||
#!/bin/bash | ||
#SBATCH --gpus-per-task=rtx8000:1 | ||
#SBATCH --cpus-per-task=4 | ||
#SBATCH --ntasks-per-node=1 | ||
#SBATCH --mem=16G | ||
#SBATCH --time=00:15:00 | ||
+#SBATCH --signal=B:TERM@300 # tells the controller to send SIGTERM to the job 5 | ||
+ # min before its time ends to give it a chance for | ||
+ # better cleanup. If you cancel the job manually, | ||
+ # make sure that you specify the signal as TERM like | ||
+ # so scancel --signal=TERM <jobid>. | ||
+ # https://dhruveshp.com/blog/2021/signal-propagation-on-slurm/ | ||
+ | ||
+# trap the signal to the main BATCH script here. | ||
+sig_handler() | ||
+{ | ||
+ echo "BATCH interrupted" | ||
+ wait # wait for all children, this is important! | ||
+} | ||
+ | ||
+trap 'sig_handler' SIGINT SIGTERM SIGCONT | ||
# Echo time and hostname into log | ||
echo "Date: $(date)" | ||
echo "Hostname: $(hostname)" | ||
# Ensure only anaconda/3 module loaded. | ||
module --quiet purge | ||
# This example uses Conda to manage package dependencies. | ||
# See https://docs.mila.quebec/Userguide.html#conda for more information. | ||
module load anaconda/3 | ||
module load cuda/11.7 | ||
+ | ||
# Creating the environment for the first time: | ||
# conda create -y -n pytorch python=3.9 pytorch torchvision torchaudio \ | ||
-# pytorch-cuda=11.7 -c pytorch -c nvidia | ||
+# pytorch-cuda=11.7 scipy -c pytorch -c nvidia | ||
# Other conda packages: | ||
# conda install -y -n pytorch -c conda-forge rich tqdm | ||
# Activate pre-existing environment. | ||
conda activate pytorch | ||
# Stage dataset into $SLURM_TMPDIR | ||
mkdir -p $SLURM_TMPDIR/data | ||
cp /network/datasets/cifar10/cifar-10-python.tar.gz $SLURM_TMPDIR/data/ | ||
# General-purpose alternatives combining copy and unpack: | ||
# unzip /network/datasets/some/file.zip -d $SLURM_TMPDIR/data/ | ||
# tar -xf /network/datasets/some/file.tar -C $SLURM_TMPDIR/data/ | ||
# Fixes issues with MIG-ed GPUs with versions of PyTorch < 2.0 | ||
unset CUDA_VISIBLE_DEVICES | ||
# Execute Python script | ||
python main.py | ||
**main.py** | ||
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.. code:: diff | ||
# distributed/001_single_gpu/main.py -> data/checkpointing/main.py | ||
"""Single-GPU training example.""" | ||
import logging | ||
import os | ||
-from pathlib import Path | ||
+import shutil | ||
import rich.logging | ||
import torch | ||
from torch import Tensor, nn | ||
from torch.nn import functional as F | ||
from torch.utils.data import DataLoader, random_split | ||
from torchvision import transforms | ||
from torchvision.datasets import CIFAR10 | ||
from torchvision.models import resnet18 | ||
from tqdm import tqdm | ||
+try: | ||
+ _CHECKPTS_DIR = f"{os.environ['SCRATCH']}/checkpoints" | ||
+except KeyError: | ||
+ _CHECKPTS_DIR = "../checkpoints" | ||
+ | ||
+ | ||
def main(): | ||
training_epochs = 10 | ||
learning_rate = 5e-4 | ||
weight_decay = 1e-4 | ||
batch_size = 128 | ||
+ resume_file = f"{_CHECKPTS_DIR}/resnet18_cifar10/checkpoint.pth.tar" | ||
+ start_epoch = 0 | ||
+ best_acc = 0 | ||
# Check that the GPU is available | ||
assert torch.cuda.is_available() and torch.cuda.device_count() > 0 | ||
device = torch.device("cuda", 0) | ||
# Setup logging (optional, but much better than using print statements) | ||
logging.basicConfig( | ||
level=logging.INFO, | ||
handlers=[rich.logging.RichHandler(markup=True)], # Very pretty, uses the `rich` package. | ||
) | ||
logger = logging.getLogger(__name__) | ||
- # Create a model and move it to the GPU. | ||
+ # Create a model. | ||
model = resnet18(num_classes=10) | ||
+ | ||
+ # Resume from a checkpoint | ||
+ if os.path.isfile(resume_file): | ||
+ logger.debug(f"=> loading checkpoint '{resume_file}'") | ||
+ # Map model to be loaded to gpu. | ||
+ checkpoint = torch.load(resume_file, map_location="cuda:0") | ||
+ start_epoch = checkpoint["epoch"] | ||
+ best_acc = checkpoint["best_acc"] | ||
+ # best_acc may be from a checkpoint from a different GPU | ||
+ best_acc = best_acc.to(device) | ||
+ model.load_state_dict(checkpoint["state_dict"]) | ||
+ optimizer.load_state_dict(checkpoint["optimizer"]) | ||
+ logger.debug(f"=> loaded checkpoint '{resume_file}' (epoch {checkpoint['epoch']})") | ||
+ else: | ||
+ logger.debug(f"=> no checkpoint found at '{resume_file}'") | ||
+ | ||
+ # Move the model to the GPU. | ||
model.to(device=device) | ||
optimizer = torch.optim.AdamW(model.parameters(), lr=learning_rate, weight_decay=weight_decay) | ||
# Setup CIFAR10 | ||
num_workers = get_num_workers() | ||
- dataset_path = Path(os.environ.get("SLURM_TMPDIR", ".")) / "data" | ||
- train_dataset, valid_dataset, test_dataset = make_datasets(str(dataset_path)) | ||
+ if "SLURM_TMPDIR" in os.environ: | ||
+ dataset_path = f"{os.environ['SLURM_TMPDIR']}/data" | ||
+ else: | ||
+ dataset_path = "../dataset" | ||
+ train_dataset, valid_dataset, test_dataset = make_datasets(dataset_path) | ||
train_dataloader = DataLoader( | ||
train_dataset, | ||
batch_size=batch_size, | ||
num_workers=num_workers, | ||
shuffle=True, | ||
) | ||
valid_dataloader = DataLoader( | ||
valid_dataset, | ||
batch_size=batch_size, | ||
num_workers=num_workers, | ||
shuffle=False, | ||
) | ||
test_dataloader = DataLoader( # NOTE: Not used in this example. | ||
test_dataset, | ||
batch_size=batch_size, | ||
num_workers=num_workers, | ||
shuffle=False, | ||
) | ||
- # Checkout the "checkpointing and preemption" example for more info! | ||
logger.debug("Starting training from scratch.") | ||
- for epoch in range(training_epochs): | ||
+ for epoch in range(start_epoch, training_epochs): | ||
logger.debug(f"Starting epoch {epoch}/{training_epochs}") | ||
- # Set the model in training mode (important for e.g. BatchNorm and Dropout layers) | ||
+ # Set the model in training mode (this is important for e.g. BatchNorm and Dropout layers) | ||
model.train() | ||
# NOTE: using a progress bar from tqdm because it's nicer than using `print`. | ||
progress_bar = tqdm( | ||
total=len(train_dataloader), | ||
desc=f"Train epoch {epoch}", | ||
) | ||
# Training loop | ||
for batch in train_dataloader: | ||
# Move the batch to the GPU before we pass it to the model | ||
batch = tuple(item.to(device) for item in batch) | ||
x, y = batch | ||
# Forward pass | ||
logits: Tensor = model(x) | ||
loss = F.cross_entropy(logits, y) | ||
optimizer.zero_grad() | ||
loss.backward() | ||
optimizer.step() | ||
# Calculate some metrics: | ||
n_correct_predictions = logits.detach().argmax(-1).eq(y).sum() | ||
n_samples = y.shape[0] | ||
accuracy = n_correct_predictions / n_samples | ||
logger.debug(f"Accuracy: {accuracy.item():.2%}") | ||
logger.debug(f"Average Loss: {loss.item()}") | ||
# Advance the progress bar one step, and update the "postfix" () the progress bar. (nicer than just) | ||
progress_bar.update(1) | ||
progress_bar.set_postfix(loss=loss.item(), accuracy=accuracy.item()) | ||
progress_bar.close() | ||
val_loss, val_accuracy = validation_loop(model, valid_dataloader, device) | ||
logger.info(f"Epoch {epoch}: Val loss: {val_loss:.3f} accuracy: {val_accuracy:.2%}") | ||
+ # remember best acc and save checkpoint | ||
+ is_best = val_accuracy > best_acc | ||
+ best_acc = max(val_accuracy, best_acc) | ||
+ | ||
+ save_checkpoint({ | ||
+ "epoch": epoch + 1, | ||
+ "arch": "resnet18", | ||
+ "state_dict": model.state_dict(), | ||
+ "best_acc": best_acc, | ||
+ "optimizer": optimizer.state_dict(), | ||
+ }, is_best) | ||
+ | ||
print("Done!") | ||
@torch.no_grad() | ||
def validation_loop(model: nn.Module, dataloader: DataLoader, device: torch.device): | ||
model.eval() | ||
total_loss = 0.0 | ||
n_samples = 0 | ||
correct_predictions = 0 | ||
for batch in dataloader: | ||
batch = tuple(item.to(device) for item in batch) | ||
x, y = batch | ||
logits: Tensor = model(x) | ||
loss = F.cross_entropy(logits, y) | ||
batch_n_samples = x.shape[0] | ||
batch_correct_predictions = logits.argmax(-1).eq(y).sum() | ||
total_loss += loss.item() | ||
n_samples += batch_n_samples | ||
correct_predictions += batch_correct_predictions | ||
accuracy = correct_predictions / n_samples | ||
return total_loss, accuracy | ||
def make_datasets( | ||
dataset_path: str, | ||
val_split: float = 0.1, | ||
val_split_seed: int = 42, | ||
): | ||
"""Returns the training, validation, and test splits for CIFAR10. | ||
NOTE: We don't use image transforms here for simplicity. | ||
Having different transformations for train and validation would complicate things a bit. | ||
Later examples will show how to do the train/val/test split properly when using transforms. | ||
""" | ||
train_dataset = CIFAR10( | ||
root=dataset_path, transform=transforms.ToTensor(), download=True, train=True | ||
) | ||
test_dataset = CIFAR10( | ||
root=dataset_path, transform=transforms.ToTensor(), download=True, train=False | ||
) | ||
# Split the training dataset into a training and validation set. | ||
- n_samples = len(train_dataset) | ||
- n_valid = int(val_split * n_samples) | ||
- n_train = n_samples - n_valid | ||
train_dataset, valid_dataset = random_split( | ||
- train_dataset, (n_train, n_valid), torch.Generator().manual_seed(val_split_seed) | ||
+ train_dataset, ((1 - val_split), val_split), torch.Generator().manual_seed(val_split_seed) | ||
) | ||
return train_dataset, valid_dataset, test_dataset | ||
def get_num_workers() -> int: | ||
"""Gets the optimal number of DatLoader workers to use in the current job.""" | ||
if "SLURM_CPUS_PER_TASK" in os.environ: | ||
return int(os.environ["SLURM_CPUS_PER_TASK"]) | ||
if hasattr(os, "sched_getaffinity"): | ||
return len(os.sched_getaffinity(0)) | ||
return torch.multiprocessing.cpu_count() | ||
+def save_checkpoint(state: dict, is_best: bool, filename: str=f"{_CHECKPOINTS_DIR}/checkpoint.pth.tar") -> None: | ||
+ torch.save(state, filename) | ||
+ if is_best: | ||
+ _dir = os.path.dirname(filename) | ||
+ shutil.copyfile(filename, f"{_dir}/model_best.pth.tar") | ||
+ | ||
+ | ||
if __name__ == "__main__": | ||
main() | ||
**Running this example** | ||
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.. code-block:: bash | ||
$ sbatch job.sh |
This file contains bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Original file line number | Diff line number | Diff line change |
---|---|---|
@@ -0,0 +1,34 @@ | ||
Checkpointing | ||
============= | ||
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||
|
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**Prerequisites** | ||
|
||
Make sure to read the following sections of the documentation before using this | ||
example: | ||
|
||
* :ref:`pytorch_setup` | ||
* :ref:`001 - Single GPU Job` | ||
|
||
The full source code for this example is available on `the mila-docs GitHub | ||
repository. | ||
<https://github.com/mila-iqia/mila-docs/tree/master/docs/examples/data/checkpointing>`_ | ||
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**job.sh** | ||
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.. literalinclude:: examples/data/checkpointing/job.sh.diff | ||
:language: diff | ||
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**main.py** | ||
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.. literalinclude:: examples/data/checkpointing/main.py.diff | ||
:language: diff | ||
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**Running this example** | ||
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.. code-block:: bash | ||
$ sbatch job.sh |
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