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# Copyright 2022 Xiaomi Corp. (authors: Daniel Povey)
#
# See ../../../../LICENSE for clarification regarding multiple authors
#
# 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.
#import logging
import math
import random
from typing import Optional
from typing import Tuple
from typing import Union
import torch
import torch.nn as nn
from torch import Tensor
class DoubleSwishFunction(torch.autograd.Function):
"""
double_swish(x) = x * torch.sigmoid(x-1)
This is a definition, originally motivated by its close numerical
similarity to swish(swish(x)), where swish(x) = x * sigmoid(x).
Memory-efficient derivative computation:
double_swish(x) = x * s, where s(x) = torch.sigmoid(x-1)
double_swish'(x) = d/dx double_swish(x) = x * s'(x) + x' * s(x) = x * s'(x) + s(x).
Now, s'(x) = s(x) * (1-s(x)).
double_swish'(x) = x * s'(x) + s(x).
= x * s(x) * (1-s(x)) + s(x).
= double_swish(x) * (1-s(x)) + s(x)
... so we just need to remember s(x) but not x itself.
"""
@staticmethod
def forward(ctx, x: Tensor) -> Tensor:
requires_grad = x.requires_grad
x_dtype = x.dtype
if x.dtype == torch.float16:
x = x.to(torch.float32)
s = torch.sigmoid(x - 1.0)
y = x * s
if requires_grad:
deriv = y * (1 - s) + s
# notes on derivative of x * sigmoid(x - 1):
# https://www.wolframalpha.com/input?i=d%2Fdx+%28x+*+sigmoid%28x-1%29%29
# min \simeq -0.043638. Take floor as -0.043637 so it's a lower bund
# max \simeq 1.1990. Take ceil to be 1.2 so it's an upper bound.
# the combination of "+ torch.rand_like(deriv)" and casting to torch.uint8 (which
# floors), should be expectation-preserving.
floor = -0.043637
ceil = 1.2
d_scaled = (deriv - floor) * (255.0 / (ceil - floor)) + torch.rand_like(
deriv
)
if __name__ == "__main__":
# for self-testing only.
assert d_scaled.min() >= 0.0
assert d_scaled.max() < 256.0
d_int = d_scaled.to(torch.uint8)
ctx.save_for_backward(d_int)
if x.dtype == torch.float16 or torch.is_autocast_enabled():
y = y.to(torch.float16)
return y
@staticmethod
def backward(ctx, y_grad: Tensor) -> Tensor:
(d,) = ctx.saved_tensors
# the same constants as used in forward pass.
floor = -0.043637
ceil = 1.2
d = d * ((ceil - floor) / 255.0) + floor
return y_grad * d
class DoubleSwish(torch.nn.Module):
def forward(self, x: Tensor) -> Tensor:
"""Return double-swish activation function which is an approximation to Swish(Swish(x)),
that we approximate closely with x * sigmoid(x-1).
"""
if torch.jit.is_scripting() or torch.jit.is_tracing():
return x * torch.sigmoid(x - 1.0)
return DoubleSwishFunction.apply(x)
class ActivationBalancerFunction(torch.autograd.Function):
@staticmethod
def forward(
ctx,
x: Tensor,
scale_factor: Tensor,
sign_factor: Optional[Tensor],
channel_dim: int,
) -> Tensor:
if channel_dim < 0:
channel_dim += x.ndim
ctx.channel_dim = channel_dim
xgt0 = x > 0
if sign_factor is None:
ctx.save_for_backward(xgt0, scale_factor)
else:
ctx.save_for_backward(xgt0, scale_factor, sign_factor)
return x
@staticmethod
def backward(ctx, x_grad: Tensor) -> Tuple[Tensor, None, None, None]:
if len(ctx.saved_tensors) == 3:
xgt0, scale_factor, sign_factor = ctx.saved_tensors
for _ in range(ctx.channel_dim, x_grad.ndim - 1):
scale_factor = scale_factor.unsqueeze(-1)
sign_factor = sign_factor.unsqueeze(-1)
factor = sign_factor + scale_factor * (xgt0.to(x_grad.dtype) - 0.5)
else:
xgt0, scale_factor = ctx.saved_tensors
for _ in range(ctx.channel_dim, x_grad.ndim - 1):
scale_factor = scale_factor.unsqueeze(-1)
factor = scale_factor * (xgt0.to(x_grad.dtype) - 0.5)
neg_delta_grad = x_grad.abs() * factor
return (
x_grad - neg_delta_grad,
None,
None,
None,
)
def _compute_scale_factor(
x: Tensor,
channel_dim: int,
min_abs: float,
max_abs: float,
gain_factor: float,
max_factor: float,
) -> Tensor:
if channel_dim < 0:
channel_dim += x.ndim
sum_dims = [d for d in range(x.ndim) if d != channel_dim]
x_abs_mean = torch.mean(x.abs(), dim=sum_dims).to(torch.float32)
if min_abs == 0.0:
below_threshold = 0.0
else:
# below_threshold is 0 if x_abs_mean > min_abs, can be at most max_factor if
# x_abs)_mean , min_abs.
below_threshold = ((min_abs - x_abs_mean) * (gain_factor / min_abs)).clamp(
min=0, max=max_factor
)
above_threshold = ((x_abs_mean - max_abs) * (gain_factor / max_abs)).clamp(
min=0, max=max_factor
)
return below_threshold - above_threshold
def _compute_sign_factor(
x: Tensor,
channel_dim: int,
min_positive: float,
max_positive: float,
gain_factor: float,
max_factor: float,
) -> Tensor:
if channel_dim < 0:
channel_dim += x.ndim
sum_dims = [d for d in range(x.ndim) if d != channel_dim]
proportion_positive = torch.mean((x > 0).to(torch.float32), dim=sum_dims)
if min_positive == 0.0:
factor1 = 0.0
else:
# 0 if proportion_positive >= min_positive, else can be
# as large as max_factor.
factor1 = (
(min_positive - proportion_positive) * (gain_factor / min_positive)
).clamp_(min=0, max=max_factor)
if max_positive == 1.0:
factor2 = 0.0
else:
# 0 if self.proportion_positive <= max_positive, else can be
# as large as -max_factor.
factor2 = (
(proportion_positive - max_positive) * (gain_factor / (1.0 - max_positive))
).clamp_(min=0, max=max_factor)
sign_factor = factor1 - factor2
# require min_positive != 0 or max_positive != 1:
assert not isinstance(sign_factor, float)
return sign_factor
class ActivationBalancer(torch.nn.Module):
"""
Modifies the backpropped derivatives of a function to try to encourage, for
each channel, that it is positive at least a proportion `threshold` of the
time. It does this by multiplying negative derivative values by up to
(1+max_factor), and positive derivative values by up to (1-max_factor),
interpolated from 1 at the threshold to those extremal values when none
of the inputs are positive.
Args:
num_channels: the number of channels
channel_dim: the dimension/axis corresponding to the channel, e.g.
-1, 0, 1, 2; will be interpreted as an offset from x.ndim if negative.
min_positive: the minimum, per channel, of the proportion of the time
that (x > 0), below which we start to modify the derivatives.
max_positive: the maximum, per channel, of the proportion of the time
that (x > 0), above which we start to modify the derivatives.
max_factor: the maximum factor by which we modify the derivatives for
either the sign constraint or the magnitude constraint;
e.g. with max_factor=0.02, the the derivatives would be multiplied by
values in the range [0.98..1.02].
sign_gain_factor: determines the 'gain' with which we increase the
change in gradient once the constraints on min_positive and max_positive
are violated.
scale_gain_factor: determines the 'gain' with which we increase the
change in gradient once the constraints on min_abs and max_abs
are violated.
min_abs: the minimum average-absolute-value difference from the mean
value per channel, which we allow, before we start to modify
the derivatives to prevent this.
max_abs: the maximum average-absolute-value difference from the mean
value per channel, which we allow, before we start to modify
the derivatives to prevent this.
min_prob: determines the minimum probability with which we modify the
gradients for the {min,max}_positive and {min,max}_abs constraints,
on each forward(). This is done randomly to prevent all layers
from doing it at the same time. Early in training we may use
higher probabilities than this; it will decay to this value.
"""
def __init__(
self,
num_channels: int,
channel_dim: int,
min_positive: float = 0.05,
max_positive: float = 0.95,
max_factor: float = 0.04,
sign_gain_factor: float = 0.01,
scale_gain_factor: float = 0.02,
min_abs: float = 0.2,
max_abs: float = 100.0,
min_prob: float = 0.1,
):
super(ActivationBalancer, self).__init__()
self.num_channels = num_channels
self.channel_dim = channel_dim
self.min_positive = min_positive
self.max_positive = max_positive
self.max_factor = max_factor
self.min_abs = min_abs
self.max_abs = max_abs
self.min_prob = min_prob
self.sign_gain_factor = sign_gain_factor
self.scale_gain_factor = scale_gain_factor
# count measures how many times the forward() function has been called.
# We occasionally sync this to a tensor called `count`, that exists to
# make sure it is synced to disk when we load and save the model.
self.cpu_count = 0
self.register_buffer("count", torch.tensor(0, dtype=torch.int64))
def forward(self, x: Tensor) -> Tensor:
if torch.jit.is_scripting() or not x.requires_grad or torch.jit.is_tracing():
return _no_op(x)
count = self.cpu_count
self.cpu_count += 1
if random.random() < 0.01:
# Occasionally sync self.cpu_count with self.count.
# count affects the decay of 'prob'. don't do this on every iter,
# because syncing with the GPU is slow.
self.cpu_count = max(self.cpu_count, self.count.item())
self.count.fill_(self.cpu_count)
# the prob of doing some work exponentially decreases from 0.5 till it hits
# a floor at min_prob (==0.1, by default)
prob = max(self.min_prob, 0.5 ** (1 + (count / 4000.0)))
if random.random() < prob:
sign_gain_factor = 0.5
if self.min_positive != 0.0 or self.max_positive != 1.0:
sign_factor = _compute_sign_factor(
x,
self.channel_dim,
self.min_positive,
self.max_positive,
gain_factor=self.sign_gain_factor / prob,
max_factor=self.max_factor,
)
else:
sign_factor = None
scale_factor = _compute_scale_factor(
x.detach(),
self.channel_dim,
min_abs=self.min_abs,
max_abs=self.max_abs,
gain_factor=self.scale_gain_factor / prob,
max_factor=self.max_factor,
)
return ActivationBalancerFunction.apply(
x,
scale_factor,
sign_factor,
self.channel_dim,
)
else:
return _no_op(x)
def BalancedDoubleSwish(
d_model, channel_dim=-1, max_abs=10.0, min_prob=0.25
) -> nn.Sequential:
"""
ActivationBalancer -> DoubleSwish
"""
balancer = ActivationBalancer(
d_model, channel_dim=channel_dim, max_abs=max_abs, min_prob=min_prob
)
return nn.Sequential(
balancer,
DoubleSwish(),
)