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315 lines
12 KiB
315 lines
12 KiB
#!/usr/bin/env python
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# -*- encoding: utf-8 -*-
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import torch
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import torch.distributed as dist
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try:
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import colossal_C
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except:
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print('Colossalai should be built with cuda extension to use the FP16 optimizer')
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from torch.optim import Optimizer
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from colossalai.core import global_context as gpc
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from colossalai.context import ParallelMode
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from colossalai.logging import get_dist_logger
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from colossalai.utils import (copy_tensor_parallel_attributes, clip_grad_norm_fp32, multi_tensor_applier)
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from torch.distributed import ProcessGroup
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from .grad_scaler import BaseGradScaler
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from ._utils import has_inf_or_nan, zero_gard_by_list
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__all__ = ['FP16Optimizer']
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def _multi_tensor_copy_this_to_that(this, that, overflow_buf=None):
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"""
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adapted from Megatron-LM (https://github.com/NVIDIA/Megatron-LM)
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Use multi-tensor-applier to copy values from one list to another.
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We don't have a blfoat16 implementation so for now if the overflow_buf
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is not provided, we default back to simple loop copy to be compatible
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with bfloat16.
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"""
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if overflow_buf:
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overflow_buf.fill_(0)
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# Scaling with factor `1.0` is equivalent to copy.
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multi_tensor_applier(colossal_C.multi_tensor_scale, overflow_buf, [this, that], 1.0)
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else:
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for this_, that_ in zip(this, that):
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that_.copy_(this_)
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class FP16Optimizer(Optimizer):
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"""Float16 optimizer for fp16 and bf16 data types.
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:param optimizer: base optimizer such as Adam or SGD
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:type optimizer: torch.optim.Optimizer
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:param clip_grad: clip gradeints with this global L2 norm. Note that clipping is ignored if clip_grad == 0
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:type param clip_grad: float
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:param log_num_zeros_in_grad: return number of zeros in the gradients.
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:type log_num_zeros_in_grad: bool
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:param initial_scale: initial scale of gradient scaler
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:type initial_scale: int
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:param growth_factor: the growth rate of loss scale
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:type growth_factor: int
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:param backoff_factor: the decrease rate of loss scale
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:type backoff_factor: float
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:param hysterisis: delay shift in dynamic loss scaling
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:type hysterisis: int
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:param max_scale: maximum loss scale allowed
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:type max_scale: int
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:param verbose: if set to `True`, will print debug info
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:type verbose: bool
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"""
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def __init__(self,
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optimizer: Optimizer,
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grad_scaler: BaseGradScaler,
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verbose: bool = False,
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clip_grad_norm=0,
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dp_process_group: ProcessGroup = None,
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mp_process_group: ProcessGroup = None):
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# have a defaults for compatibility with pytorch optim
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self._optimizer = optimizer
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self._defaults = optimizer.defaults
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# fp16-related params
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assert isinstance(grad_scaler, BaseGradScaler)
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self._grad_scaler = grad_scaler
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self._found_overflow = torch.cuda.FloatTensor([0.0])
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self._dummy_overflow_buf = torch.cuda.IntTensor([0])
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# misc params
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self._clip_grad_max_norm = clip_grad_norm
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# get process group
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def _get_process_group(parallel_mode):
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if gpc.is_initialized(ParallelMode.DATA) and gpc.get_world_size(ParallelMode.DATA):
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return gpc.get_group(ParallelMode.DATA)
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else:
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return None
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if dp_process_group is None:
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dp_process_group = _get_process_group(ParallelMode.DATA)
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if mp_process_group is None:
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mp_process_group = _get_process_group(ParallelMode.MODEL)
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self._dp_process_group = dp_process_group
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self._mp_process_group = mp_process_group
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# we maintain three groups of parameters
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# so that the model can have a mixture
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# of fp16 and fp32 params
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# fp16_param_groups: the fp16 params of the model
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# fp32_master_param_groups: the fp32 params cast from the fp16 param of the model
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# fp32_param_groups: the fp32 params of the model
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# NOTE:
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# 1. fp16_param_groups and fp32_master_param_groups have one-to-one correspondence
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# 2. fp32_param_groups and fp16_param_groups are exclusive of each other
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self._fp16_param_groups = []
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self._fp32_master_param_groups = []
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self._fp32_param_groups = []
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# For all the groups in the original optimizer:
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for param_group in self._optimizer.param_groups:
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fp16_params = []
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fp32_master_params = []
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fp32_params = []
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# For all the parameters in this group:
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for i, param in enumerate(param_group['params']):
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if param.requires_grad:
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# float16 params:
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if param.type() in ['torch.cuda.HalfTensor']:
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fp16_params.append(param)
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# Create a fp32 copy
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fp32_param = param.detach().clone().float()
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# Copy tensor model parallel attributes.
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copy_tensor_parallel_attributes(param, fp32_param)
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# Replace the optimizer params with the new fp32 copy.
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param_group['params'][i] = fp32_param
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fp32_master_params.append(fp32_param)
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# Reset existing state dict key to the new main param.
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if param in self._optimizer.state:
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self._optimizer.state[fp32_param] = self._optimizer.state.pop(param)
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# fp32 params.
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elif param.type() == 'torch.cuda.FloatTensor':
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fp32_params.append(param)
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else:
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raise TypeError('Expected parameter of type torch.cuda.FloatTensor '
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f'or torch.cuda.HalfTensor, but got {param.type()}')
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self._fp16_param_groups.append(fp16_params)
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self._fp32_master_param_groups.append(fp32_master_params)
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self._fp32_param_groups.append(fp32_params)
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# Leverage state_dict() and load_state_dict() to
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# recast preexisting per-param state tensors
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self._optimizer.load_state_dict(self._optimizer.state_dict())
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# log config
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self._logger = get_dist_logger()
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if verbose:
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self._logger.info(
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f"\n========= FP16 Optimizer Config =========\n"
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f"Optimizer: {optimizer.__class__.__name__}\n"
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f"clip_grad_norm = {clip_grad_norm}\n"
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f"grad_scaler = {self._grad_scaler.__class__.__name__}"
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f"==========================================",
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ranks=[0])
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@property
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def grad_scaler(self):
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return self._grad_scaler
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@property
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def loss_scale(self):
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return self._grad_scaler.scale
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@property
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def optimizer(self):
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return self._optimizer
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@property
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def defaults(self):
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return self._defaults
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def _check_overflow(self):
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# clear previous overflow record
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self._found_overflow.fill_(0.0)
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# check for overflow
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for group in self._optimizer.param_groups:
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for p in group['params']:
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if p.grad is not None and has_inf_or_nan(p.grad):
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self._found_overflow.fill_(1.0)
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break
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# all-reduce across dp group
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if self._dp_process_group:
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dist.all_reduce(self._found_overflow, op=dist.ReduceOp.MAX, group=self._dp_process_group)
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# all-reduce over model parallel group
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if self._mp_process_group:
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dist.all_reduce(self._found_overflow, op=dist.ReduceOp.MAX, group=self._mp_process_group)
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return self._found_overflow.item() > 0
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def zero_grad(self, set_to_none=True):
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# set_to_none = True can save some memory space
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for param_group in self._optimizer.param_groups:
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zero_gard_by_list(param_group['params'], set_to_none=set_to_none)
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def _get_fp32_param_groups_to_update(self):
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return self._fp32_master_param_groups + self._fp32_param_groups
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def _unscale_grads(self):
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for group in self._get_fp32_param_groups_to_update():
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for p in group:
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if p.grad is not None:
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p.grad.data.div_(self.loss_scale)
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def _assign_grad_to_fp32_master_param(self):
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# This only needs to be done for the float16 group.
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for fp16_param_group, fp32_master_param_group in zip(self._fp16_param_groups, self._fp32_master_param_groups):
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for fp16_param, fp32_param in zip(fp16_param_group, fp32_master_param_group):
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if fp16_param.grad is not None:
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fp32_param.grad = fp16_param.grad.float()
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# clear unneeded grad on fp16 param
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fp16_param.grad = None
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def _update_fp16_param_from_fp32_param(self):
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fp16_param_data = []
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fp32_master_param_data = []
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for fp16_group, fp32_group in zip(self._fp16_param_groups, self._fp32_master_param_groups):
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for fp16_param, fp32_param in zip(fp16_group, fp32_group):
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fp16_param_data.append(fp16_param.data)
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fp32_master_param_data.append(fp32_param.data)
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_multi_tensor_copy_this_to_that(this=fp32_master_param_data,
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that=fp16_param_data,
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overflow_buf=self._dummy_overflow_buf)
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def step(self):
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# Copy gradients from model params to main params.
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self._assign_grad_to_fp32_master_param()
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self._unscale_grads()
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overflow = self._check_overflow()
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self._grad_scaler.update(overflow)
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if overflow:
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self.zero_grad()
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return False, None
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# Clip the main gradients.
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grad_norm = None
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if self._clip_grad_max_norm > 0.0:
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grad_norm = self.clip_grad_norm(self._clip_grad_max_norm)
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# Step the optimizer.
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self._optimizer.step()
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# Update params from main params.
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self._update_fp16_param_from_fp32_param()
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# Successful update.
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return True, grad_norm
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def backward(self, loss):
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scaled_loss = loss * self.grad_scaler.scale
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scaled_loss.backward()
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def state_dict(self):
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state_dict = {}
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state_dict['optimizer'] = self._optimizer.state_dict()
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if self.grad_scaler:
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state_dict['grad_scaler'] = self.grad_scaler.state_dict()
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state_dict['fp32_master_param_groups'] = self._fp32_master_param_groups
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return state_dict
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def load_state_dict(self, state_dict):
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# Optimizer.
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self._optimizer.load_state_dict(state_dict['optimizer'])
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# Grad scaler.
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if 'grad_scaler' in state_dict:
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self.grad_scaler.load_state_dict(state_dict['grad_scaler'])
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# Copy data for the main params.
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if 'fp32_master_param_groups' in state_dict:
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for current_group, ckpt_group in zip(self._fp32_master_param_groups,
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state_dict['fp32_master_param_groups']):
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for current_param, ckpt_param in zip(current_group, ckpt_group):
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current_param.data.copy_(ckpt_param.data)
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def clip_grad_norm(self, clip_grad):
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params = []
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for param_group in self._optimizer.param_groups:
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for param in param_group['params']:
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params.append(param)
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return clip_grad_norm_fp32(params, clip_grad)
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# Promote state so it can be retrieved or set via
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# "optimizer_instance.state"
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def _get_state(self):
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return self._optimizer.state
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def _set_state(self, value):
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self._optimizer.state = value
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state = property(_get_state, _set_state)
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# Promote param_groups so it can be retrieved or set via
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# "optimizer_instance.param_groups"
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# (for example, to adjust the learning rate)
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def _get_param_groups(self):
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return self._optimizer.param_groups
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def _set_param_groups(self, value):
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self._optimizer.param_groups = value
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param_groups = property(_get_param_groups, _set_param_groups)
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