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ColossalAI/colossalai/zero/loss_scaler.py

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# Copyright 2019 The Microsoft DeepSpeed Team
# Copyright (c) 2019, NVIDIA CORPORATION. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# Taken and modified for DeepSpeed from:
# https://github.com/NVIDIA/Megatron-LM/blob/master/fp16/loss_scaler.py
# Commit: 93ab4bea59dc5cbf97c079d313741866af4deac9
INITIAL_LOSS_SCALE = 'init_scale'
SCALE_WINDOW = 'scale_window'
DELAYED_SHIFT = 'delayed_shift'
MIN_LOSS_SCALE = 'min_scale'
# item() is a recent addition, so this helps with backward compatibility.
def to_python_float(t):
if hasattr(t, 'item'):
return t.item()
return t[0]
class LossScalerBase:
"""LossScalarBase
Base class for a loss scaler
"""
def __init__(self, cur_scale):
self.cur_scale = cur_scale
@property
def loss_scale(self):
return self.cur_scale
def scale_gradient(self, module, grad_in, grad_out):
return tuple(self.loss_scale * g for g in grad_in)
def update_scale(self, overflow):
pass
def backward(self, loss, retain_graph=False):
scaled_loss = loss * self.loss_scale
scaled_loss.backward(retain_graph=retain_graph)
class LossScaler(LossScalerBase):
"""
Class that manages a static loss scale. This class is intended to interact with
:class:`FP16_Optimizer`, and should not be directly manipulated by the user.
Use of :class:`LossScaler` is enabled via the ``static_loss_scale`` argument to
:class:`FP16_Optimizer`'s constructor.
Args:
scale (float, optional, default=1.0): The loss scale.
"""
def __init__(self, scale=1):
super(LossScaler, self).__init__(scale)
# `params` is a list / generator of torch.Variable
def has_overflow(self, params):
return False
# `x` is a torch.Tensor
def _has_inf_or_nan(x):
return False
class DynamicLossScaler(LossScalerBase):
"""
Class that manages dynamic loss scaling. It is recommended to use :class:`DynamicLossScaler`
indirectly, by supplying ``dynamic_loss_scale=True`` to the constructor of
:class:`FP16_Optimizer`. However, it's important to understand how :class:`DynamicLossScaler`
operates, because the default options can be changed using the
the ``dynamic_loss_args`` argument to :class:`FP16_Optimizer`'s constructor.
Loss scaling is designed to combat the problem of underflowing gradients encountered at long
times when training fp16 networks. Dynamic loss scaling begins by attempting a very high loss
scale. Ironically, this may result in OVERflowing gradients. If overflowing gradients are
encountered, :class:`DynamicLossScaler` informs :class:`FP16_Optimizer` that an overflow has
occurred.
:class:`FP16_Optimizer` then skips the update step for this particular iteration/minibatch,
and :class:`DynamicLossScaler` adjusts the loss scale to a lower value.
If a certain number of iterations occur without overflowing gradients detected,
:class:`DynamicLossScaler` increases the loss scale once more.
In this way :class:`DynamicLossScaler` attempts to "ride the edge" of
always using the highest loss scale possible without incurring overflow.
Args:
init_scale (float, optional, default=2**32): Initial loss scale attempted by :class:`DynamicLossScaler.`
scale_factor (float, optional, default=2.0): Factor used when adjusting the loss scale. If an overflow is encountered, the loss scale is readjusted to loss scale/``scale_factor``. If ``scale_window`` consecutive iterations take place without an overflow, the loss scale is readjusted to loss_scale*``scale_factor``.
scale_window (int, optional, default=1000): Number of consecutive iterations without an overflow to wait before increasing the loss scale.
"""
def __init__(self,
init_scale=2 ** 32,
scale_factor=2.,
scale_window=1000,
min_scale=1,
delayed_shift=1,
consecutive_hysteresis=False):
super(DynamicLossScaler, self).__init__(init_scale)
self.cur_iter = 0
self.last_overflow_iter = -1
self.scale_factor = scale_factor
self.scale_window = scale_window
self.min_scale = min_scale
self.delayed_shift = delayed_shift
self.cur_hysteresis = delayed_shift
self.consecutive_hysteresis = consecutive_hysteresis
# `params` is a list / generator of torch.Variable
def has_overflow_serial(self, params):
for p in params:
if p.grad is not None and self._has_inf_or_nan(p.grad.data):
return True
return False
# `x` is a torch.Tensor
@staticmethod
def _has_inf_or_nan(x):
try:
# if x is half, the .float() incurs an additional deep copy, but it's necessary if
# Pytorch's .sum() creates a one-element tensor of the same type as x
# (which is true for some recent version of pytorch).
cpu_sum = float(x.float().sum())
# More efficient version that can be used if .sum() returns a Python scalar
# cpu_sum = float(x.sum())
except RuntimeError as instance:
# We want to check if inst is actually an overflow exception.
# RuntimeError could come from a different error.
# If so, we still want the exception to propagate.
if "value cannot be converted" not in instance.args[0]:
raise
return True
else:
if cpu_sum in [float('inf'), -float('inf')] or cpu_sum != cpu_sum:
return True
return False
# `overflow` is boolean indicating whether the gradient overflowed
def update_scale(self, overflow):
if overflow:
# self.cur_scale /= self.scale_factor
if self.delayed_shift == 1 or self.cur_hysteresis == 1:
self.cur_scale = max(
self.cur_scale / self.scale_factor, self.min_scale)
else:
self.cur_hysteresis -= 1
self.last_overflow_iter = self.cur_iter
else:
if self.consecutive_hysteresis:
self.cur_hysteresis = self.delayed_shift
if (self.cur_iter - self.last_overflow_iter) % self.scale_window == 0:
if not self.consecutive_hysteresis:
self.cur_hysteresis = self.delayed_shift
self.cur_scale *= self.scale_factor
self.cur_iter += 1