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Shashank Suhas
seminar-breakout
Commits
152c4c2c
Commit
152c4c2c
authored
Feb 20, 2019
by
Yuxin Wu
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Reimplement Conv2DTranspose to avoid Keras bugs.
parent
d0e410ad
Changes
8
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8 changed files
with
77 additions
and
33 deletions
+77
-33
tensorpack/models/_old_batch_norm.py
tensorpack/models/_old_batch_norm.py
+1
-1
tensorpack/models/batch_norm.py
tensorpack/models/batch_norm.py
+1
-1
tensorpack/models/conv2d.py
tensorpack/models/conv2d.py
+66
-22
tensorpack/models/layer_norm.py
tensorpack/models/layer_norm.py
+2
-2
tensorpack/models/pool.py
tensorpack/models/pool.py
+1
-1
tensorpack/models/tflayer.py
tensorpack/models/tflayer.py
+1
-1
tensorpack/train/trainers.py
tensorpack/train/trainers.py
+1
-1
tensorpack/utils/argtools.py
tensorpack/utils/argtools.py
+4
-4
No files found.
tensorpack/models/_old_batch_norm.py
View file @
152c4c2c
...
...
@@ -98,7 +98,7 @@ def BatchNorm(inputs, training=None, momentum=0.9, epsilon=1e-5,
don't want to fine tune the EMA. EMA will not be updated in
this case.
"""
data_format
=
get_data_format
(
data_format
,
tf
mode
=
False
)
data_format
=
get_data_format
(
data_format
,
keras_
mode
=
False
)
shape
=
inputs
.
get_shape
()
.
as_list
()
ndims
=
len
(
shape
)
assert
ndims
in
[
2
,
4
]
...
...
tensorpack/models/batch_norm.py
View file @
152c4c2c
...
...
@@ -147,7 +147,7 @@ def BatchNorm(inputs, axis=None, training=None, momentum=0.9, epsilon=1e-5,
this case.
"""
# parse shapes
data_format
=
get_data_format
(
data_format
,
tf
mode
=
False
)
data_format
=
get_data_format
(
data_format
,
keras_
mode
=
False
)
shape
=
inputs
.
get_shape
()
.
as_list
()
ndims
=
len
(
shape
)
assert
ndims
in
[
2
,
4
],
ndims
...
...
tensorpack/models/conv2d.py
View file @
152c4c2c
...
...
@@ -80,7 +80,7 @@ def Conv2D(
else
:
# group conv implementation
data_format
=
get_data_format
(
data_format
,
tf
mode
=
False
)
data_format
=
get_data_format
(
data_format
,
keras_
mode
=
False
)
in_shape
=
inputs
.
get_shape
()
.
as_list
()
channel_axis
=
3
if
data_format
==
'NHWC'
else
1
in_channel
=
in_shape
[
channel_axis
]
...
...
@@ -163,27 +163,71 @@ def Conv2DTranspose(
else
:
kernel_initializer
=
tf
.
keras
.
initializers
.
VarianceScaling
(
2.0
,
distribution
=
'untruncated_normal'
)
with
rename_get_variable
({
'kernel'
:
'W'
,
'bias'
:
'b'
}):
layer
=
tf
.
layers
.
Conv2DTranspose
(
filters
,
kernel_size
,
strides
=
strides
,
padding
=
padding
,
data_format
=
data_format
,
activation
=
activation
,
use_bias
=
use_bias
,
kernel_initializer
=
kernel_initializer
,
bias_initializer
=
bias_initializer
,
kernel_regularizer
=
kernel_regularizer
,
bias_regularizer
=
bias_regularizer
,
activity_regularizer
=
activity_regularizer
,
_reuse
=
tf
.
get_variable_scope
()
.
reuse
)
ret
=
layer
.
apply
(
inputs
,
scope
=
tf
.
get_variable_scope
())
ret
=
tf
.
identity
(
ret
,
name
=
'output'
)
ret
.
variables
=
VariableHolder
(
W
=
layer
.
kernel
)
if
use_bias
:
ret
.
variables
.
b
=
layer
.
bias
if
get_tf_version_tuple
()
<=
(
1
,
12
):
with
rename_get_variable
({
'kernel'
:
'W'
,
'bias'
:
'b'
}):
layer
=
tf
.
layers
.
Conv2DTranspose
(
filters
,
kernel_size
,
strides
=
strides
,
padding
=
padding
,
data_format
=
data_format
,
activation
=
activation
,
use_bias
=
use_bias
,
kernel_initializer
=
kernel_initializer
,
bias_initializer
=
bias_initializer
,
kernel_regularizer
=
kernel_regularizer
,
bias_regularizer
=
bias_regularizer
,
activity_regularizer
=
activity_regularizer
,
_reuse
=
tf
.
get_variable_scope
()
.
reuse
)
ret
=
layer
.
apply
(
inputs
,
scope
=
tf
.
get_variable_scope
())
ret
=
tf
.
identity
(
ret
,
name
=
'output'
)
ret
.
variables
=
VariableHolder
(
W
=
layer
.
kernel
)
if
use_bias
:
ret
.
variables
.
b
=
layer
.
bias
else
:
# Our own implementation, to avoid Keras bugs. https://github.com/tensorflow/tensorflow/issues/25946
assert
kernel_regularizer
is
None
and
bias_regularizer
is
None
and
activity_regularizer
is
None
,
\
"Unsupported arguments due to bug in TensorFlow 1.13"
data_format
=
get_data_format
(
data_format
,
keras_mode
=
False
)
shape_dyn
=
tf
.
shape
(
inputs
)
strides2d
=
shape2d
(
strides
)
channels_in
=
inputs
.
shape
[
1
if
data_format
==
'NCHW'
else
3
]
if
data_format
==
'NCHW'
:
channels_in
=
inputs
.
shape
[
1
]
out_shape_dyn
=
tf
.
stack
(
[
shape_dyn
[
0
],
filters
,
shape_dyn
[
2
]
*
strides2d
[
0
],
shape_dyn
[
3
]
*
strides2d
[
1
]])
out_shape3_sta
=
[
filters
,
None
if
inputs
.
shape
[
2
]
is
None
else
inputs
.
shape
[
2
]
*
strides2d
[
0
],
None
if
inputs
.
shape
[
3
]
is
None
else
inputs
.
shape
[
3
]
*
strides2d
[
1
]]
else
:
channels_in
=
inputs
.
shape
[
-
1
]
out_shape_dyn
=
tf
.
stack
(
[
shape_dyn
[
0
],
shape_dyn
[
1
]
*
strides2d
[
0
],
shape_dyn
[
2
]
*
strides2d
[
1
],
channels_in
])
out_shape3_sta
=
[
None
if
inputs
.
shape
[
1
]
is
None
else
inputs
.
shape
[
1
]
*
strides2d
[
0
],
None
if
inputs
.
shape
[
2
]
is
None
else
inputs
.
shape
[
2
]
*
strides2d
[
1
],
filters
]
kernel_shape
=
shape2d
(
kernel_size
)
W
=
tf
.
get_variable
(
'W'
,
kernel_shape
+
[
filters
,
channels_in
],
initializer
=
kernel_initializer
)
if
use_bias
:
b
=
tf
.
get_variable
(
'b'
,
[
filters
],
initializer
=
bias_initializer
)
conv
=
tf
.
nn
.
conv2d_transpose
(
inputs
,
W
,
out_shape_dyn
,
shape4d
(
strides
,
data_format
=
data_format
),
padding
=
padding
.
upper
(),
data_format
=
data_format
)
conv
.
set_shape
(
tf
.
TensorShape
([
None
]
+
out_shape3_sta
))
ret
=
activation
(
tf
.
nn
.
bias_add
(
conv
,
b
,
data_format
=
data_format
)
if
use_bias
else
conv
,
name
=
'output'
)
ret
.
variables
=
VariableHolder
(
W
=
W
)
if
use_bias
:
ret
.
variables
.
b
=
b
return
ret
...
...
tensorpack/models/layer_norm.py
View file @
152c4c2c
...
...
@@ -24,7 +24,7 @@ def LayerNorm(
epsilon (float): epsilon to avoid divide-by-zero.
use_scale, use_bias (bool): whether to use the extra affine transformation or not.
"""
data_format
=
get_data_format
(
data_format
,
tf
mode
=
False
)
data_format
=
get_data_format
(
data_format
,
keras_
mode
=
False
)
shape
=
x
.
get_shape
()
.
as_list
()
ndims
=
len
(
shape
)
assert
ndims
in
[
2
,
4
]
...
...
@@ -75,7 +75,7 @@ def InstanceNorm(x, epsilon=1e-5, use_affine=True, gamma_init=None, data_format=
epsilon (float): avoid divide-by-zero
use_affine (bool): whether to apply learnable affine transformation
"""
data_format
=
get_data_format
(
data_format
,
tf
mode
=
False
)
data_format
=
get_data_format
(
data_format
,
keras_
mode
=
False
)
shape
=
x
.
get_shape
()
.
as_list
()
assert
len
(
shape
)
==
4
,
"Input of InstanceNorm has to be 4D!"
...
...
tensorpack/models/pool.py
View file @
152c4c2c
...
...
@@ -102,7 +102,7 @@ def FixedUnPooling(x, shape, unpool_mat=None, data_format='channels_last'):
Returns:
tf.Tensor: a 4D image tensor.
"""
data_format
=
get_data_format
(
data_format
,
tf
mode
=
False
)
data_format
=
get_data_format
(
data_format
,
keras_
mode
=
False
)
shape
=
shape2d
(
shape
)
output_shape
=
StaticDynamicShape
(
x
)
...
...
tensorpack/models/tflayer.py
View file @
152c4c2c
...
...
@@ -15,7 +15,7 @@ __all__ = []
def
map_common_tfargs
(
kwargs
):
df
=
kwargs
.
pop
(
'data_format'
,
None
)
if
df
is
not
None
:
df
=
get_data_format
(
df
,
tf
mode
=
True
)
df
=
get_data_format
(
df
,
keras_
mode
=
True
)
kwargs
[
'data_format'
]
=
df
old_nl
=
kwargs
.
pop
(
'nl'
,
None
)
...
...
tensorpack/train/trainers.py
View file @
152c4c2c
...
...
@@ -340,7 +340,7 @@ class HorovodTrainer(SingleCostTrainer):
for Horovod installation and in the MPI command line.
See Horovod docs for details.
2. Due to a TF bug, you must not initialize CUDA context before the trainer starts training.
2. Due to a TF bug
(#8136)
, you must not initialize CUDA context before the trainer starts training.
Therefore TF functions like `is_gpu_available()` or `list_local_devices()`
must be avoided.
...
...
tensorpack/utils/argtools.py
View file @
152c4c2c
...
...
@@ -104,8 +104,8 @@ def shape2d(a):
raise
RuntimeError
(
"Illegal shape: {}"
.
format
(
a
))
def
get_data_format
(
data_format
,
tf
mode
=
True
):
if
tf
mode
:
def
get_data_format
(
data_format
,
keras_
mode
=
True
):
if
keras_
mode
:
dic
=
{
'NCHW'
:
'channels_first'
,
'NHWC'
:
'channels_last'
}
else
:
dic
=
{
'channels_first'
:
'NCHW'
,
'channels_last'
:
'NHWC'
}
...
...
@@ -115,7 +115,7 @@ def get_data_format(data_format, tfmode=True):
return
ret
def
shape4d
(
a
,
data_format
=
'
channels_last
'
):
def
shape4d
(
a
,
data_format
=
'
NHWC
'
):
"""
Ensuer a 4D shape, to use with 4D symbolic functions.
...
...
@@ -127,7 +127,7 @@ def shape4d(a, data_format='channels_last'):
or ``[1, 1, a, a]`` depending on data_format.
"""
s2d
=
shape2d
(
a
)
if
get_data_format
(
data_format
)
==
'channels_last
'
:
if
get_data_format
(
data_format
,
False
)
==
'NHWC
'
:
return
[
1
]
+
s2d
+
[
1
]
else
:
return
[
1
,
1
]
+
s2d
...
...
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