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testgroup
pytensor
Commits
4807ebf9
提交
4807ebf9
authored
1月 02, 2021
作者:
Brandon T. Willard
提交者:
Brandon T. Willard
1月 03, 2021
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Move theano.tensor/scalar utility functions to more appropriate modules
上级
deb437d8
隐藏空白字符变更
内嵌
并排
正在显示
6 个修改的文件
包含
150 行增加
和
168 行删除
+150
-168
basic.py
theano/scalar/basic.py
+1
-16
basic.py
theano/tensor/basic.py
+56
-146
elemwise.py
theano/tensor/elemwise.py
+53
-1
inplace.py
theano/tensor/inplace.py
+2
-3
utils.py
theano/tensor/utils.py
+10
-0
utils.py
theano/utils.py
+28
-2
没有找到文件。
theano/scalar/basic.py
浏览文件 @
4807ebf9
...
...
@@ -13,7 +13,6 @@ you probably want to use theano.tensor.[c,z,f,d,b,w,i,l,]scalar!
import
math
from
collections.abc
import
Callable
from
copy
import
copy
from
functools
import
partial
from
itertools
import
chain
from
textwrap
import
dedent
...
...
@@ -31,7 +30,7 @@ from theano.gof.utils import MetaObject, MethodNotDefined
from
theano.gradient
import
DisconnectedType
,
grad_undefined
from
theano.misc.safe_asarray
import
_asarray
from
theano.printing
import
pprint
from
theano.utils
import
difference
,
from_return_values
,
to_return_values
from
theano.utils
import
_multi
,
difference
,
from_return_values
,
to_return_values
builtin_bool
=
bool
...
...
@@ -861,20 +860,6 @@ Scalar.Constant = ScalarConstant
# Easy constructors
def
_multi
(
*
fns
):
def
f2
(
f
,
names
):
if
len
(
names
)
==
1
:
return
f
(
names
)
else
:
return
[
f
(
name
)
for
name
in
names
]
if
len
(
fns
)
==
1
:
return
partial
(
f2
,
fns
[
0
])
else
:
return
[
partial
(
f2
,
f
)
for
f
in
fns
]
ints
=
_multi
(
int64
)
floats
=
_multi
(
float64
)
complexs
=
_multi
(
complex128
)
...
...
theano/tensor/basic.py
浏览文件 @
4807ebf9
...
...
@@ -4,7 +4,6 @@ import builtins
import
logging
import
warnings
from
collections.abc
import
Sequence
from
functools
import
partial
import
numpy
as
np
...
...
@@ -28,10 +27,12 @@ from theano.scalar import int32
from
theano.tensor
import
elemwise
# set up the external interface
from
theano.tensor.elemwise
import
CAReduce
,
DimShuffle
,
Elemwise
,
Sum
from
theano.tensor.elemwise
import
CAReduce
,
DimShuffle
,
Elemwise
,
Sum
,
_scal_elemwise
from
theano.tensor.type
import
TensorType
,
values_eq_approx_always_true
from
theano.tensor.type_other
import
NoneConst
from
theano.tensor.utils
import
_pack
from
theano.tensor.var
import
TensorConstant
,
TensorVariable
,
_tensor_py_operators
from
theano.utils
import
_multi
_logger
=
logging
.
getLogger
(
"theano.tensor.basic"
)
...
...
@@ -685,27 +686,6 @@ def tensor(*args, **kwargs):
return
TensorType
(
*
args
,
**
kwargs
)(
name
=
name
)
def
_multi
(
*
fns
):
def
f2
(
f
,
*
names
):
if
names
and
isinstance
(
names
[
0
],
int
):
if
names
==
1
:
return
f
()
else
:
return
[
f
()
for
i
in
range
(
names
[
0
])]
if
isinstance
(
names
,
tuple
):
if
len
(
names
)
==
1
:
names
=
names
[
0
]
if
len
(
names
)
==
1
:
return
f
(
names
)
else
:
return
[
f
(
name
)
for
name
in
names
]
if
len
(
fns
)
==
1
:
return
partial
(
f2
,
fns
)
else
:
return
[
partial
(
f2
,
f
)
for
f
in
fns
]
cscalar
=
TensorType
(
"complex64"
,
())
zscalar
=
TensorType
(
"complex128"
,
())
fscalar
=
TensorType
(
"float32"
,
())
...
...
@@ -1037,129 +1017,6 @@ elemwise.TensorType = TensorType
elemwise
.
TensorVariable
=
TensorVariable
elemwise
.
TensorConstant
=
TensorConstant
#########################
# Utilities
#########################
def
_scal_elemwise
(
*
symbol
,
nfunc
=
None
,
nin
=
None
,
nout
=
None
,
symbolname
=
None
):
"""
Replace a symbol definition with an elementwise version of the
corresponding scalar Op. If it is not None, the nfunc argument
should be a string such that getattr(numpy, nfunc) implements
a vectorized version of the elemwise operation. nin is the number
of inputs expected by that function, and nout is the number of
**destination** inputs it takes. That is, the function should
take nin+nout inputs. nout == 0 means that the numpy function
does not take a numpy array argument to put its result in.
"""
def
construct
(
symbol
):
nonlocal
symbolname
symbolname
=
symbolname
or
symbol
.
__name__
if
symbolname
.
endswith
(
"_inplace"
):
elemwise_name
=
f
"Elemwise{{{symbolname},inplace}}"
scalar_op
=
getattr
(
scal
,
symbolname
[:
-
len
(
"_inplace"
)])
inplace_scalar_op
=
scalar_op
.
__class__
(
scal
.
transfer_type
(
0
))
rval
=
elemwise
.
Elemwise
(
inplace_scalar_op
,
{
0
:
0
},
name
=
elemwise_name
,
nfunc_spec
=
(
nfunc
and
(
nfunc
,
nin
,
nout
)),
)
else
:
elemwise_name
=
f
"Elemwise{{{symbolname},no_inplace}}"
scalar_op
=
getattr
(
scal
,
symbolname
)
rval
=
elemwise
.
Elemwise
(
scalar_op
,
name
=
elemwise_name
,
nfunc_spec
=
(
nfunc
and
(
nfunc
,
nin
,
nout
))
)
if
getattr
(
symbol
,
"__doc__"
):
rval
.
__doc__
=
symbol
.
__doc__
+
"
\n
"
+
rval
.
__doc__
# for the meaning of this see the ./epydoc script
# it makes epydoc display rval as if it were a function, not an object
rval
.
__epydoc_asRoutine
=
symbol
rval
.
__module__
=
symbol
.
__module__
pprint
.
assign
(
rval
,
printing
.
FunctionPrinter
(
symbolname
.
replace
(
"_inplace"
,
"="
))
)
return
rval
if
symbol
:
return
construct
(
symbol
[
0
])
else
:
return
construct
def
_pack
(
x
):
"""
Convert x to a list if it is an iterable, otherwise wrap it in a list.
"""
try
:
return
list
(
x
)
except
TypeError
:
return
[
x
]
def
check_and_normalize_axes
(
x
,
axis
):
"""
Check axes, normalize and convert them to a Python list of integers.
Return an empty list if argument is None.
Parameters
----------
x: Tensor variable
axis = Integer, tuple or list of integers
Returns
-------
axis: list of integers
"""
x
=
as_tensor_variable
(
x
)
if
axis
is
None
:
axis
=
[]
elif
isinstance
(
axis
,
(
int
,
np
.
integer
))
or
(
isinstance
(
axis
,
np
.
ndarray
)
and
axis
.
ndim
==
0
):
axis
=
[
int
(
axis
)]
elif
isinstance
(
axis
,
(
tuple
,
list
,
np
.
ndarray
)):
axis
=
[
int
(
i
)
for
i
in
axis
]
elif
isinstance
(
axis
,
Variable
):
if
NoneConst
.
equals
(
axis
):
axis
=
[]
elif
not
isinstance
(
axis
,
TensorConstant
):
raise
TypeError
(
f
"Computation needs a constant axis. Got {axis}"
)
else
:
assert
axis
.
dtype
in
integer_dtypes
if
isinstance
(
axis
.
data
,
(
int
,
np
.
integer
))
or
(
isinstance
(
axis
.
data
,
np
.
ndarray
)
and
axis
.
data
.
ndim
==
0
):
axis
=
[
int
(
axis
.
data
)]
elif
isinstance
(
axis
.
data
,
(
list
,
np
.
ndarray
)):
axis
=
[
int
(
i
)
for
i
in
axis
.
data
]
else
:
raise
TypeError
(
f
"Axis must be an integer, tuple, list of integers or a TensorVariable. Got {axis}"
)
if
len
(
axis
)
>
0
:
for
i
in
range
(
len
(
axis
)):
if
axis
[
i
]
<
0
:
axis
[
i
]
+=
x
.
type
.
ndim
if
axis
[
i
]
<
0
or
axis
[
i
]
>=
x
.
type
.
ndim
:
raise
ValueError
(
f
"Computation needs a valid axis number for {int(x.type.ndim)}-D tensor. Got {int(axis[i])}"
)
axis
=
list
(
set
(
axis
))
axis
.
sort
()
return
axis
#########################
# Casting Operations
#########################
...
...
@@ -1736,6 +1593,59 @@ def makeKeepDims(x, y, axis):
return
DimShuffle
(
y
.
type
.
broadcastable
,
new_dims
)(
y
)
def
check_and_normalize_axes
(
x
,
axis
):
"""
Check axes, normalize and convert them to a Python list of integers.
Return an empty list if argument is None.
Parameters
----------
x: Tensor variable
axis = Integer, tuple or list of integers
Returns
-------
axis: list of integers
"""
x
=
as_tensor_variable
(
x
)
if
axis
is
None
:
axis
=
[]
elif
isinstance
(
axis
,
(
int
,
np
.
integer
))
or
(
isinstance
(
axis
,
np
.
ndarray
)
and
axis
.
ndim
==
0
):
axis
=
[
int
(
axis
)]
elif
isinstance
(
axis
,
(
tuple
,
list
,
np
.
ndarray
)):
axis
=
[
int
(
i
)
for
i
in
axis
]
elif
isinstance
(
axis
,
Variable
):
if
NoneConst
.
equals
(
axis
):
axis
=
[]
elif
not
isinstance
(
axis
,
TensorConstant
):
raise
TypeError
(
f
"Computation needs a constant axis. Got {axis}"
)
else
:
assert
axis
.
dtype
in
integer_dtypes
if
isinstance
(
axis
.
data
,
(
int
,
np
.
integer
))
or
(
isinstance
(
axis
.
data
,
np
.
ndarray
)
and
axis
.
data
.
ndim
==
0
):
axis
=
[
int
(
axis
.
data
)]
elif
isinstance
(
axis
.
data
,
(
list
,
np
.
ndarray
)):
axis
=
[
int
(
i
)
for
i
in
axis
.
data
]
else
:
raise
TypeError
(
f
"Axis must be an integer, tuple, list of integers or a TensorVariable. Got {axis}"
)
if
len
(
axis
)
>
0
:
for
i
in
range
(
len
(
axis
)):
if
axis
[
i
]
<
0
:
axis
[
i
]
+=
x
.
type
.
ndim
if
axis
[
i
]
<
0
or
axis
[
i
]
>=
x
.
type
.
ndim
:
raise
ValueError
(
f
"Computation needs a valid axis number for {int(x.type.ndim)}-D tensor. Got {int(axis[i])}"
)
axis
=
list
(
set
(
axis
))
axis
.
sort
()
return
axis
@constructor
def
max_and_argmax
(
a
,
axis
=
None
,
keepdims
=
False
):
"""
...
...
theano/tensor/elemwise.py
浏览文件 @
4807ebf9
...
...
@@ -12,7 +12,7 @@ from theano.gof.op import COp, ExternalCOp, OpenMPOp
from
theano.gradient
import
DisconnectedType
from
theano.misc.frozendict
import
frozendict
from
theano.misc.safe_asarray
import
_asarray
from
theano.printing
import
pprint
from
theano.printing
import
FunctionPrinter
,
pprint
from
theano.scalar
import
get_scalar_type
from
theano.tensor
import
elemwise_cgen
as
cgen
from
theano.utils
import
uniq
...
...
@@ -2240,3 +2240,55 @@ class ProdWithoutZeros(CAReduceDtype):
"`product(a, no_zeros_in_input=True)`."
,
)
return
[
a_grad
]
def
_scal_elemwise
(
*
symbol
,
nfunc
=
None
,
nin
=
None
,
nout
=
None
,
symbolname
=
None
):
"""Replace a symbol definition with an `Elemwise`-wrapped version of the corresponding scalar `Op`.
If it is not ``None``, the `nfunc` argument should be a string such that
``getattr(numpy, nfunc)`` implements a vectorized version of the `Elemwise`
operation. `nin` is the number of inputs expected by that function, and nout
is the number of **destination** inputs it takes. That is, the function
should take nin + nout inputs. `nout == 0` means that the numpy function does
not take a NumPy array argument to put its result in.
"""
def
construct
(
symbol
):
nonlocal
symbolname
symbolname
=
symbolname
or
symbol
.
__name__
if
symbolname
.
endswith
(
"_inplace"
):
elemwise_name
=
f
"Elemwise{{{symbolname},inplace}}"
scalar_op
=
getattr
(
scalar
,
symbolname
[:
-
len
(
"_inplace"
)])
inplace_scalar_op
=
scalar_op
.
__class__
(
scalar
.
transfer_type
(
0
))
rval
=
Elemwise
(
inplace_scalar_op
,
{
0
:
0
},
name
=
elemwise_name
,
nfunc_spec
=
(
nfunc
and
(
nfunc
,
nin
,
nout
)),
)
else
:
elemwise_name
=
f
"Elemwise{{{symbolname},no_inplace}}"
scalar_op
=
getattr
(
scalar
,
symbolname
)
rval
=
Elemwise
(
scalar_op
,
name
=
elemwise_name
,
nfunc_spec
=
(
nfunc
and
(
nfunc
,
nin
,
nout
))
)
if
getattr
(
symbol
,
"__doc__"
):
rval
.
__doc__
=
symbol
.
__doc__
+
"
\n
"
+
rval
.
__doc__
# for the meaning of this see the ./epydoc script
# it makes epydoc display rval as if it were a function, not an object
rval
.
__epydoc_asRoutine
=
symbol
rval
.
__module__
=
symbol
.
__module__
pprint
.
assign
(
rval
,
FunctionPrinter
(
symbolname
.
replace
(
"_inplace"
,
"="
)))
return
rval
if
symbol
:
return
construct
(
symbol
[
0
])
else
:
return
construct
theano/tensor/inplace.py
浏览文件 @
4807ebf9
from
theano
import
printing
from
theano.printing
import
pprint
from
theano.tensor
import
elemwise
from
theano.tensor.basic
import
_scal_elemwise
from
theano.tensor.elemwise
import
DimShuffle
,
_scal_elemwise
@_scal_elemwise
...
...
@@ -360,4 +359,4 @@ pprint.assign(pow_inplace, printing.OperatorPrinter("**=", 1, "right"))
def
transpose_inplace
(
x
,
**
kwargs
):
"Perform a transpose on a tensor without copying the underlying storage"
dims
=
list
(
range
(
x
.
ndim
-
1
,
-
1
,
-
1
))
return
elemwise
.
DimShuffle
(
x
.
broadcastable
,
dims
,
inplace
=
True
)(
x
)
return
DimShuffle
(
x
.
broadcastable
,
dims
,
inplace
=
True
)(
x
)
theano/tensor/utils.py
浏览文件 @
4807ebf9
...
...
@@ -97,3 +97,13 @@ def shape_of_variables(fgraph, input_shapes):
sym_to_num_dict
[
sym
]
for
sym
in
fgraph
.
shape_feature
.
shape_of
[
var
]
)
return
l
def
_pack
(
x
):
"""
Convert x to a list if it is an iterable, otherwise wrap it in a list.
"""
try
:
return
list
(
x
)
except
TypeError
:
return
[
x
]
theano/utils.py
浏览文件 @
4807ebf9
"""Utility functions that only depend on the standard library."""
import
hashlib
import
inspect
import
logging
...
...
@@ -12,7 +11,7 @@ import traceback
import
warnings
from
collections
import
OrderedDict
from
collections.abc
import
Callable
from
functools
import
wraps
from
functools
import
partial
,
wraps
__all__
=
[
...
...
@@ -392,3 +391,30 @@ class NoDuplicateOptWarningFilter(logging.Filter):
self
.
prev_msgs
.
add
(
msg
)
return
True
return
True
def
_multi
(
*
fns
):
"""Create new functions that distributes the wrapped functions across iterable arguments.
For example, a function, `fn`, that uses this decorator satisfies
`fn("hi") == [fn("h"), fn("i")]`.
"""
def
f2
(
f
,
*
names
):
if
names
and
isinstance
(
names
[
0
],
int
):
if
names
==
1
:
return
f
()
else
:
return
[
f
()
for
i
in
range
(
names
[
0
])]
if
isinstance
(
names
,
tuple
):
if
len
(
names
)
==
1
:
names
=
names
[
0
]
if
len
(
names
)
==
1
:
return
f
(
names
)
else
:
return
[
f
(
name
)
for
name
in
names
]
if
len
(
fns
)
==
1
:
return
partial
(
f2
,
fns
[
0
])
else
:
return
[
partial
(
f2
,
f
)
for
f
in
fns
]
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