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pytensor
Commits
94c2e4c2
提交
94c2e4c2
authored
11月 02, 2022
作者:
Brandon T. Willard
提交者:
Brandon T. Willard
11月 15, 2022
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电子邮件补丁
差异文件
Replace use of broadcastable with shape in aesara.tensor.elemwise
上级
f1dc0897
隐藏空白字符变更
内嵌
并排
正在显示
1 个修改的文件
包含
24 行增加
和
29 行删除
+24
-29
elemwise.py
aesara/tensor/elemwise.py
+24
-29
没有找到文件。
aesara/tensor/elemwise.py
浏览文件 @
94c2e4c2
...
...
@@ -62,17 +62,17 @@ class DimShuffle(ExternalCOp):
If `j = new_order[i]` is an index, the output's ith dimension
will be the input's jth dimension.
If `new_order[i]` is `x`, the output's ith dimension will
be 1 and
B
roadcast operations will be allowed to do broadcasting
be 1 and
b
roadcast operations will be allowed to do broadcasting
over that dimension.
If `input.
broadcastable[i] == False` then `i` must be found in new_order
.
If `input.
type.shape[i] != 1` then `i` must be found in `new_order`
.
Broadcastable dimensions, on the other hand, can be discarded.
.. code-block:: python
DimShuffle((False, False, False), ['x', 2, 'x', 0, 1])
This
op
will only work on 3d tensors with no broadcastable
This
`Op`
will only work on 3d tensors with no broadcastable
dimensions. The first dimension will be broadcastable,
then we will have the third dimension of the input tensor as
the second of the resulting tensor, etc. If the tensor has
...
...
@@ -83,7 +83,7 @@ class DimShuffle(ExternalCOp):
DimShuffle((True, False), [1])
This
op
will only work on 2d tensors with the first dimension
This
`Op`
will only work on 2d tensors with the first dimension
broadcastable.
The second dimension of the input tensor will be the first dimension of
the resulting tensor.
...
...
@@ -186,7 +186,7 @@ class DimShuffle(ExternalCOp):
def
make_node
(
self
,
_input
):
input
=
as_tensor_variable
(
_input
)
ib
=
tuple
(
input
.
type
.
broadcastabl
e
)
ib
=
tuple
(
s
==
1
for
s
in
input
.
type
.
shap
e
)
if
ib
!=
self
.
input_broadcastable
:
if
len
(
ib
)
!=
len
(
self
.
input_broadcastable
):
raise
TypeError
(
...
...
@@ -258,7 +258,7 @@ class DimShuffle(ExternalCOp):
(
x
,)
=
inp
(
gz
,)
=
grads
gz
=
as_tensor_variable
(
gz
)
grad_order
=
[
"x"
]
*
len
(
x
.
type
.
broadcastable
)
grad_order
=
[
"x"
]
*
x
.
type
.
ndim
for
i
,
v
in
enumerate
(
self
.
new_order
):
if
v
!=
"x"
:
grad_order
[
v
]
=
i
...
...
@@ -269,7 +269,7 @@ class DimShuffle(ExternalCOp):
return
[
inp
[
0
]
.
zeros_like
(
dtype
=
config
.
floatX
)]
else
:
return
[
DimShuffle
(
gz
.
type
.
broadcastable
,
grad_order
)(
DimShuffle
(
tuple
(
s
==
1
for
s
in
gz
.
type
.
shape
)
,
grad_order
)(
Elemwise
(
scalar_identity
)(
gz
)
)
]
...
...
@@ -406,7 +406,7 @@ class Elemwise(OpenMPOp):
# TODO: use LComplete instead
args
.
append
(
dim_shuffle
(
input
.
type
.
broadcastable
,
tuple
(
1
if
s
==
1
else
None
for
s
in
input
.
type
.
shape
)
,
[
"x"
]
*
difference
+
list
(
range
(
length
)),
)(
input
)
)
...
...
@@ -452,11 +452,11 @@ class Elemwise(OpenMPOp):
inplace_pattern
=
self
.
inplace_pattern
if
inplace_pattern
:
for
overwriter
,
overwritten
in
inplace_pattern
.
items
():
for
o
b
,
ib
in
zip
(
for
o
ut_s
,
in_s
in
zip
(
out_shapes
[
overwriter
],
inputs
[
overwritten
]
.
type
.
broadcastabl
e
,
inputs
[
overwritten
]
.
type
.
shap
e
,
):
if
i
b
and
not
ob
=
=
1
:
if
i
n_s
==
1
and
out_s
!
=
1
:
raise
ValueError
(
"Operation cannot be done inplace on an input "
"with broadcasted dimensions."
...
...
@@ -578,8 +578,8 @@ class Elemwise(OpenMPOp):
# TODO: only count dimensions that were effectively broadcasted
to_sum
=
[
j
for
j
,
bcast
in
enumerate
(
ipt
.
type
.
broadcastabl
e
)
if
bcast
and
not
outs
[
0
]
.
broadcastable
[
j
]
for
j
,
in_s
in
enumerate
(
ipt
.
type
.
shap
e
)
if
in_s
==
1
and
outs
[
0
]
.
type
.
shape
[
j
]
!=
1
]
if
to_sum
:
...
...
@@ -614,7 +614,7 @@ class Elemwise(OpenMPOp):
f
"{str(self.scalar_op)}.grad returned {str(type(scalar_igrads))} instead of list or tuple"
)
nd
=
len
(
inputs
[
0
]
.
type
.
broadcastable
)
# this is the same for everyone
nd
=
inputs
[
0
]
.
type
.
ndim
# this is the same for everyone
def
transform
(
r
):
# From a graph of ScalarOps, make a graph of Broadcast ops.
...
...
@@ -897,7 +897,7 @@ class Elemwise(OpenMPOp):
# for each input:
# same as range(ndim), but with 'x' at all broadcastable positions
orders
=
[
[
x
and
"x"
or
i
for
i
,
x
in
enumerate
(
input
.
type
.
broadcastabl
e
)]
[
s
==
1
and
"x"
or
i
for
i
,
s
in
enumerate
(
input
.
type
.
shap
e
)]
for
input
in
inputs
]
...
...
@@ -920,7 +920,7 @@ class Elemwise(OpenMPOp):
[
f
"PyArray_ISFORTRAN({arr})"
for
arr
,
var
in
z
if
not
all
(
var
.
broadcastabl
e
)
if
not
all
(
s
==
1
for
s
in
var
.
type
.
shap
e
)
]
)
# If it is a scalar, make it c contig to prevent problem with
...
...
@@ -1005,7 +1005,7 @@ class Elemwise(OpenMPOp):
or
# Use simpler code when output ndim == 0 or 1
# or for broadcated scalar.
all
(
node
.
outputs
[
0
]
.
broadcastabl
e
)
all
(
s
==
1
for
s
in
node
.
outputs
[
0
]
.
type
.
shap
e
)
):
if
nnested
:
all_code
=
[(
""
,
""
)]
*
(
nnested
-
1
)
+
[(
""
,
code
)]
+
[
""
]
...
...
@@ -1077,7 +1077,7 @@ class Elemwise(OpenMPOp):
all
(
o
.
ndim
>=
1
for
o
in
node
.
outputs
)
and
# Don't use the contig code for broadcasted scalar.
not
all
(
node
.
outputs
[
0
]
.
broadcastabl
e
)
not
all
(
s
==
1
for
s
in
node
.
outputs
[
0
]
.
type
.
shap
e
)
):
contig
=
None
try
:
...
...
@@ -1110,7 +1110,7 @@ class Elemwise(OpenMPOp):
"""
index
=
""
for
x
,
var
in
zip
(
inames
+
onames
,
inputs
+
node
.
outputs
):
if
not
all
(
var
.
broadcastabl
e
):
if
not
all
(
s
==
1
for
s
in
var
.
type
.
shap
e
):
contig
+=
(
"""
dtype_
%(x)
s *
%(x)
s_ptr = (dtype_
%(x)
s*) PyArray_DATA(
%(x)
s);
...
...
@@ -1144,18 +1144,19 @@ class Elemwise(OpenMPOp):
)
if
contig
is
not
None
:
z
=
list
(
zip
(
inames
+
onames
,
inputs
+
node
.
outputs
))
all_broadcastable
=
all
(
s
==
1
for
s
in
var
.
type
.
shape
)
cond1
=
" && "
.
join
(
[
"PyArray_ISCONTIGUOUS(
%
s)"
%
arr
for
arr
,
var
in
z
if
not
all
(
var
.
broadcastable
)
if
not
all
_broadcastable
]
)
cond2
=
" && "
.
join
(
[
"PyArray_ISFORTRAN(
%
s)"
%
arr
for
arr
,
var
in
z
if
not
all
(
var
.
broadcastable
)
if
not
all
_broadcastable
]
)
loop
=
(
...
...
@@ -1388,13 +1389,7 @@ class CAReduce(COp):
axis
=
self
.
axis
if
axis
is
None
:
return
((),)
return
(
[
ishape
[
i
]
for
(
i
,
b
)
in
enumerate
(
node
.
inputs
[
0
]
.
type
.
broadcastable
)
if
i
not
in
axis
],
)
return
([
ishape
[
i
]
for
i
in
range
(
node
.
inputs
[
0
]
.
type
.
ndim
)
if
i
not
in
axis
],)
def
_c_all
(
self
,
node
,
name
,
inames
,
onames
,
sub
):
...
...
@@ -1419,7 +1414,7 @@ class CAReduce(COp):
axis
=
self
.
axis
if
axis
is
None
:
axis
=
list
(
range
(
len
(
input
.
type
.
broadcastable
)
))
axis
=
list
(
range
(
input
.
type
.
ndim
))
if
len
(
axis
)
==
0
:
# The acc_dtype is never a downcast compared to the input dtype
...
...
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