ColossalAI/colossalai/booster/plugin/low_level_zero_plugin.py

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import warnings
from typing import Callable, Iterator, List, Optional, Tuple, Union
import torch
import torch.nn as nn
from torch import Tensor
from torch.optim import Optimizer
from torch.optim.lr_scheduler import _LRScheduler as LRScheduler
from torch.utils._pytree import tree_map
from torch.utils.data import DataLoader
from colossalai.checkpoint_io import CheckpointIO, GeneralCheckpointIO
from colossalai.interface import ModelWrapper, OptimizerWrapper
from colossalai.utils import get_current_device
from colossalai.zero import zero_model_wrapper, zero_optim_wrapper
from .dp_plugin_base import DPPluginBase
from .torch_ddp_plugin import TorchDDPCheckpointIO
__all__ = ['LowLevelZeroPlugin']
def _convert_to_fp16(x):
if isinstance(x, torch.Tensor) and torch.is_floating_point(x):
return x.half()
return x
class LowLevelZeroCheckpointIO(TorchDDPCheckpointIO):
def save_unsharded_optimizer(self, optimizer: Optimizer, checkpoint: str, gather_dtensor: bool):
"""
Save optimizer to checkpoint but only on master process.
"""
# TODO(ver217): optimizer state dict is sharded, and cannot get full state dict now
warnings.warn(
'LowLevelZeroPlugin does not support save full optimizer checkpoint now. Save it on every process.')
checkpoint = f'{checkpoint}.rank{self.coordinator.rank}'
GeneralCheckpointIO.save_unsharded_optimizer(self, optimizer, checkpoint, gather_dtensor)
def load_optimizer(self, optimizer: Optimizer, checkpoint: str):
warnings.warn(
'LowLevelZeroPlugin can only load optimizer checkpoint saved by itself with the same number of processes.')
checkpoint = f'{checkpoint}.rank{self.coordinator.rank}'
super().load_optimizer(optimizer, checkpoint)
class LowLevelZeroModel(ModelWrapper):
def __init__(self, module: nn.Module, stage: int, precision: str) -> None:
super().__init__(module)
self.convert_inputs = (precision == 'fp16')
module = zero_model_wrapper(module, zero_stage=stage)
if precision == 'fp16':
module = module.half()
module = module.to(get_current_device())
self.module = module
def forward(self, *args, **kwargs):
if self.convert_inputs:
args = tree_map(_convert_to_fp16, args)
kwargs = tree_map(_convert_to_fp16, kwargs)
return super().forward(*args, **kwargs)
class LowLevelZeroOptimizer(OptimizerWrapper):
def __init__(self,
module: nn.Module,
optimizer: Optimizer,
zero_optim_config: dict,
optim_kwargs: dict,
verbose: bool = False) -> None:
optimizer = zero_optim_wrapper(module,
optimizer,
optim_config=zero_optim_config,
**optim_kwargs,
verbose=verbose)
super().__init__(optimizer)
def backward(self, loss: Tensor, *args, **kwargs):
self.optim.backward(loss)
def clip_grad_by_norm(self,
max_norm: Union[float, int],
norm_type: Union[float, int] = 2,
error_if_nonfinite: bool = False,
*args,
**kwargs) -> Tensor:
warnings.warn(f'LowLevelZero controls grad clipping by itself, so you should not use clip_grad_by_norm')
def clip_grad_by_value(self, clip_value: float, *args, **kwargs) -> None:
raise NotImplementedError('LowLevelZero does not support clip_grad_by_value')
class LowLevelZeroPlugin(DPPluginBase):
"""
Plugin for low level zero.
Example:
>>> from colossalai.booster import Booster
>>> from colossalai.booster.plugin import LowLevelZeroPlugin
>>>
>>> model, train_dataset, optimizer, criterion = ...
>>> plugin = LowLevelZeroPlugin()
>>> train_dataloader = plugin.prepare_dataloader(train_dataset, batch_size=8)
>>> booster = Booster(plugin=plugin)
>>> model, optimizer, train_dataloader, criterion = booster.boost(model, optimizer, train_dataloader, criterion)
Args:
strage (int, optional): ZeRO stage. Defaults to 1.
precision (str, optional): precision. Support 'fp16' and 'fp32'. Defaults to 'fp16'.
initial_scale (float, optional): Initial scale used by DynamicGradScaler. Defaults to 2**32.
min_scale (float, optional): Min scale used by DynamicGradScaler. Defaults to 1.
growth_factor (float, optional): growth_factor used by DynamicGradScaler. Defaults to 2.
backoff_factor (float, optional): backoff_factor used by DynamicGradScaler. Defaults to 0.5.
growth_interval (float, optional): growth_interval used by DynamicGradScaler. Defaults to 1000.
hysteresis (float, optional): hysteresis used by DynamicGradScaler. Defaults to 2.
max_scale (int, optional): max_scale used by DynamicGradScaler. Defaults to 2**32.
max_norm (float, optional): max_norm used for `clip_grad_norm`. You should notice that you shall not do
clip_grad_norm by yourself when using ZeRO DDP. The ZeRO optimizer will take care of clip_grad_norm.
norm_type (float, optional): norm_type used for `clip_grad_norm`.
reduce_bucket_size_in_m (int, optional): grad reduce bucket size in M. Defaults to 12.
communication_dtype (torch.dtype, optional): communication dtype. If not specified, the dtype of param will be used. Defaults to None.
overlap_communication (bool, optional): whether to overlap communication and computation. Defaults to True.
cpu_offload (bool, optional): whether to offload grad, master weight and optimizer state to cpu. Defaults to False.
verbose (bool, optional): verbose mode. Debug info including grad overflow will be printed. Defaults to False.
"""
def __init__(
self,
stage: int = 1,
precision: str = 'fp16',
initial_scale: float = 2**32,
min_scale: float = 1,
growth_factor: float = 2,
backoff_factor: float = 0.5,
growth_interval: int = 1000,
hysteresis: int = 2,
max_scale: float = 2**32,
max_norm: float = 0.0,
norm_type: float = 2.0,
reduce_bucket_size_in_m: int = 12,
communication_dtype: Optional[torch.dtype] = None,
overlap_communication: bool = True,
cpu_offload: bool = False,
verbose: bool = False,
) -> None:
super().__init__()
assert stage in (1, 2), f'LowLevelZeroPlugin only supports stage 1/2 training'
assert precision in ('fp16', 'fp32'), f'LowLevelZeroPlugin only supports fp16/fp32 training'
self.stage = stage
self.precision = precision
self.zero_optim_config = dict(reduce_bucket_size=reduce_bucket_size_in_m * 1024 * 1024,
communication_dtype=communication_dtype,
overlap_communication=overlap_communication,
cpu_offload=cpu_offload)
self.optim_kwargs = dict(initial_scale=initial_scale,
growth_factor=growth_factor,
backoff_factor=backoff_factor,
growth_interval=growth_interval,
hysteresis=hysteresis,
min_scale=min_scale,
max_scale=max_scale,
max_norm=max_norm,
norm_type=norm_type)
self.verbose = verbose
def support_no_sync(self) -> bool:
return False
def control_precision(self) -> bool:
return True
def supported_precisions(self) -> List[str]:
return ['fp16', 'fp32']
def control_device(self) -> bool:
return True
def supported_devices(self) -> List[str]:
return ['cuda']
def configure(
self,
model: nn.Module,
optimizer: Optimizer,
criterion: Callable = None,
dataloader: DataLoader = None,
lr_scheduler: LRScheduler = None,
) -> Tuple[Union[nn.Module, OptimizerWrapper, LRScheduler, DataLoader]]:
if not isinstance(model, ModelWrapper):
model = LowLevelZeroModel(model, self.stage, self.precision)
if not isinstance(optimizer, OptimizerWrapper):
optimizer = LowLevelZeroOptimizer(model.unwrap(), optimizer, self.zero_optim_config, self.optim_kwargs,
self.verbose)
return model, optimizer, criterion, dataloader, lr_scheduler
def control_checkpoint_io(self) -> bool:
return True
def get_checkpoint_io(self) -> CheckpointIO:
return LowLevelZeroCheckpointIO()
def no_sync(self, model: nn.Module) -> Iterator[None]:
raise NotImplementedError