Distributed checkpoints (expert)¶
Generally, the bigger your model is, the longer it takes to save a checkpoint to disk. With distributed checkpoints (sometimes called sharded checkpoints), you can save and load the state of your training script with multiple GPUs or nodes more efficiently, avoiding memory issues.
Save a distributed checkpoint¶
The distributed checkpoint format can be enabled when you train with the FSDP strategy.
import lightning as L
from lightning.pytorch.strategies import FSDPStrategy
# 1. Select the FSDP strategy and set the sharded/distributed checkpoint format
strategy = FSDPStrategy(state_dict_type="sharded")
# 2. Pass the strategy to the Trainer
trainer = L.Trainer(devices=2, strategy=strategy, ...)
# 3. Run the trainer
trainer.fit(model)
With state_dict_type="sharded"
, each process/GPU will save its own file into a folder at the given path.
This reduces memory peaks and speeds up the saving to disk.
Full example
import lightning as L
from lightning.pytorch.strategies import FSDPStrategy
from lightning.pytorch.demos import LightningTransformer
model = LightningTransformer()
strategy = FSDPStrategy(state_dict_type="sharded")
trainer = L.Trainer(
accelerator="cuda",
devices=4,
strategy=strategy,
max_steps=3,
)
trainer.fit(model)
Check the contents of the checkpoint folder:
ls -a lightning_logs/version_0/checkpoints/epoch=0-step=3.ckpt/
epoch=0-step=3.ckpt/
├── __0_0.distcp
├── __1_0.distcp
├── __2_0.distcp
├── __3_0.distcp
├── .metadata
└── meta.pt
The .distcp
files contain the tensor shards from each process/GPU. You can see that the size of these files
is roughly 1/4 of the total size of the checkpoint since the script distributes the model across 4 GPUs.
Load a distributed checkpoint¶
You can easily load a distributed checkpoint in Trainer if your script uses FSDP.
import lightning as L
from lightning.pytorch.strategies import FSDPStrategy
# 1. Select the FSDP strategy and set the sharded/distributed checkpoint format
strategy = FSDPStrategy(state_dict_type="sharded")
# 2. Pass the strategy to the Trainer
trainer = L.Trainer(devices=2, strategy=strategy, ...)
# 3. Set the checkpoint path to load
trainer.fit(model, ckpt_path="path/to/checkpoint")
Note that you can load the distributed checkpoint even if the world size has changed, i.e., you are running on a different number of GPUs than when you saved the checkpoint.
Full example
import lightning as L
from lightning.pytorch.strategies import FSDPStrategy
from lightning.pytorch.demos import LightningTransformer
model = LightningTransformer()
strategy = FSDPStrategy(state_dict_type="sharded")
trainer = L.Trainer(
accelerator="cuda",
devices=2,
strategy=strategy,
max_steps=5,
)
trainer.fit(model, ckpt_path="lightning_logs/version_0/checkpoints/epoch=0-step=3.ckpt")
Important
If you want to load a distributed checkpoint into a script that doesn’t use FSDP (or Trainer at all), then you will have to convert it to a single-file checkpoint first.
Convert a distributed checkpoint¶
It is possible to convert a distributed checkpoint to a regular, single-file checkpoint with this utility:
python -m lightning.pytorch.utilities.consolidate_checkpoint path/to/my/checkpoint
You will need to do this for example if you want to load the checkpoint into a script that doesn’t use FSDP, or need to export the checkpoint to a different format for deployment, evaluation, etc.
Note
All tensors in the checkpoint will be converted to CPU tensors, and no GPUs are required to run the conversion command. This function assumes you have enough free CPU memory to hold the entire checkpoint in memory.
Full example
Assuming you have saved a checkpoint epoch=0-step=3.ckpt
using the examples above, run the following command to convert it:
cd lightning_logs/version_0/checkpoints
python -m lightning.pytorch.utilities.consolidate_checkpoint epoch=0-step=3.ckpt
This saves a new file epoch=0-step=3.ckpt.consolidated
next to the sharded checkpoint which you can load normally in PyTorch:
import torch
checkpoint = torch.load("epoch=0-step=3.ckpt.consolidated")
print(list(checkpoint.keys()))
print(checkpoint["state_dict"]["model.transformer.decoder.layers.31.norm1.weight"])