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import jax
import jax.numpy as jnp
import ninjax as nj
from . import internal
sg = jax.lax.stop_gradient
f32 = jnp.float32
i32 = jnp.int32
COMPUTE_DTYPE = jnp.bfloat16
class Normalize(nj.Module):
rate: float = 0.01
limit: float = 1e-8
perclo: float = 5.0
perchi: float = 95.0
debias: bool = True
def __init__(self, impl):
self.impl = impl
if self.debias and self.impl != 'none':
self.corr = nj.Variable(jnp.zeros, (), f32, name='corr')
if self.impl == 'none':
pass
elif self.impl == 'meanstd':
self.mean = nj.Variable(jnp.zeros, (), f32, name='mean')
self.sqrs = nj.Variable(jnp.zeros, (), f32, name='sqrs')
elif self.impl == 'perc':
self.lo = nj.Variable(jnp.zeros, (), f32, name='lo')
self.hi = nj.Variable(jnp.zeros, (), f32, name='hi')
else:
raise NotImplementedError(self.impl)
def __call__(self, x, update):
if update:
self.update(x)
return self.stats()
def update(self, x):
x = sg(f32(x))
if self.impl == 'none':
pass
elif self.impl == 'meanstd':
self._update(self.mean, self._mean(x))
self._update(self.sqrs, self._mean(jnp.square(x)))
elif self.impl == 'perc':
self._update(self.lo, self._perc(x, self.perclo))
self._update(self.hi, self._perc(x, self.perchi))
else:
raise NotImplementedError(self.impl)
if self.debias and self.impl != 'none':
self._update(self.corr, 1.0)
def stats(self):
corr = 1.0
if self.debias and self.impl != 'none':
corr /= jnp.maximum(self.rate, self.corr.read())
if self.impl == 'none':
return 0.0, 1.0
elif self.impl == 'meanstd':
mean = self.mean.read() * corr
std = jnp.sqrt(jax.nn.relu(self.sqrs.read() * corr - mean ** 2))
std = jnp.maximum(self.limit, std)
return mean, std
elif self.impl == 'perc':
lo, hi = self.lo.read() * corr, self.hi.read() * corr
return sg(lo), sg(jnp.maximum(self.limit, hi - lo))
else:
raise NotImplementedError(self.impl)
def _mean(self, x):
x = x.mean()
axes = internal.get_data_axes()
if axes:
x = jax.lax.pmean(x, axes)
return x
def _perc(self, x, q):
axes = internal.get_data_axes()
if axes:
x = jax.lax.all_gather(x, axes)
x = jnp.percentile(x, q)
return x
def _update(self, var, x):
var.write((1 - self.rate) * var.read() + self.rate * sg(x))
class SlowModel:
def __init__(self, model, *, source, rate=1.0, every=1):
assert rate == 1 or rate < 0.5, rate
self.source = source
self.model = model
self.rate = rate
self.every = every
name = self.model.path + '_count'
self.count = nj.Variable(jnp.zeros, (), i32, name=name)
def __getattr__(self, name):
self._initonce()
return getattr(self.model, name)
def __call__(self, *args, **kwargs):
self._initonce()
return self.model(*args, **kwargs)
def update(self):
self._initonce()
mix = jnp.where(self.count.read() % self.every == 0, self.rate, 0)
fn = lambda src, dst: mix * src + (1 - mix) * dst
values = jax.tree.map(fn, self.source.values, self.model.values)
[self.model.write(k, v) for k, v in values.items()]
self.count.write(self.count.read() + 1)
def _initonce(self, *args, method=None, **kwargs):
assert self.source.values, 'no parameters to track'
if not self.model.values:
p = self.model.path + '/'
nj.context().update({p + k: v for k, v in self.source.values.items()})
assert self.model.values.keys() == self.source.values.keys(), (
self.model.values.keys(), self.source.values.keys())
class LayerScan:
def __init__(self, module, count, names=('__call__',)):
self.module = module
self.count = count
self.names = names
def __call__(self, *args, **kwargs):
# Magic methods need to be forwarded explicitly.
return self.__getattr__('__call__')(*args, **kwargs)
def __getattr__(self, name):
value = getattr(self.module, name)
if name in self.names:
assert callable(value)
value = nj.pure(value, nested=True)
value = functools.partial(
layer_scan, value, self.module.path, self.count)
return value
def layer_scan(fn, scope, count, inp, *args, **kwargs):
isinner = lambda k: k.startswith(scope + '/')
args_ = jax.tree.map(lambda x: x[0], args) # Copy structure
kwargs_ = jax.tree.map(lambda x: x, kwargs) # Copy structure
state_ = {k: v[0] if isinner(k) else v for k, v in nj.context().items()}
state, _, accessed, modified, created = fn(
state_, inp, *args_, ignore=True, track=True,
seed=nj.seed(None, True), **kwargs_)
# print('-' * 79)
# print('accessed:', accessed)
# print('modified:', modified)
# print('created:', created)
inner = lambda xs: {k: v for k, v in xs.items() if isinner(k)}
outer = lambda xs: {k: v for k, v in xs.items() if not isinner(k)}
unchanging = {
k: v for k, v in nj.context().items()
if k in accessed and k not in modified and k not in created}
unchanging_inner = inner(unchanging)
unchanging_outer = outer(unchanging)
creations = {k: v for k, v in state.items() if k in created}
creations_inner = inner(creations)
creations_outer = outer(creations)
nj.context().update(creations_outer)
del creations_inner # Will be created inside the scan.
# Inner values do not exist yet, so we only keep them in the creations. This
# is fine, because inner values cannot change across scan iterations anyways.
# Outer values can change over iterations, so we need to thread them even
# during creation.
changing_inner = inner({
# k: v for k, v in state.items()
k: v for k, v in nj.context().items()
if k in modified and k not in created})
changing_outer = outer({
k: v for k, v in state.items()
if k in modified})
# f = lambda x: {k: v.shape for k, v in x.items()}
# print('-' * 79)
# print('unchanging_inner', f(unchanging_inner))
# print('unchanging_outer', f(unchanging_outer))
# print('creations_inner', f(inner(creations)))
# print('creations_outer', f(creations_outer))
# print('changing_inner', f(changing_inner))
# print('changing_outer', f(changing_outer))
def body(carry, x):
inp, changing_outer = carry
arg, seed, unchanging_inner, changing_inner = x
state = {
**unchanging_inner, **unchanging_outer,
**changing_inner, **changing_outer}
state, out = fn(state, inp, *arg, **kwargs, seed=seed)
out, *other = out if isinstance(out, tuple) else (out,)
changing = {k: v for k, v in state.items() if k in modified}
changing_inner = inner(changing)
changing_outer = outer(changing)
creations = {k: v for k, v in state.items() if k in created}
creations_inner = inner(creations)
carry = (out, changing_outer)
y = (other, creations_inner, changing_inner)
return carry, y
seeds = nj.seed(count, True)
carry, ys = jax.lax.scan(
f=body,
init=(inp, changing_outer),
xs=(args, seeds, unchanging_inner, changing_inner),
length=count)
out, changing_outer = carry
other, creations_inner, changing_inner = ys
if nj.context().modify:
nj.context().update(creations_inner)
nj.context().update(changing_inner)
nj.context().update(changing_outer)
return (out, *other) if len(other) else out
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