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testgroup
pytensor
Commits
5229feba
提交
5229feba
authored
5月 06, 2025
作者:
Ricardo Vieira
提交者:
Ricardo Vieira
5月 19, 2025
浏览文件
操作
浏览文件
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电子邮件补丁
差异文件
Implement C code for ExtractDiagonal and ARange
Set view flag of ExtractDiagonal to True and respect by default
上级
d9a8471b
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
89 行增加
和
35 行删除
+89
-35
basic.py
pytensor/tensor/basic.py
+89
-35
没有找到文件。
pytensor/tensor/basic.py
浏览文件 @
5229feba
...
...
@@ -3207,13 +3207,14 @@ def tile(
return
A_replicated
.
reshape
(
tiled_shape
)
class
ARange
(
Op
):
class
ARange
(
C
Op
):
"""Create an array containing evenly spaced values within a given interval.
Parameters and behaviour are the same as numpy.arange().
"""
# TODO: Arange should work with scalars as inputs, not arrays
__props__
=
(
"dtype"
,)
def
__init__
(
self
,
dtype
):
...
...
@@ -3293,13 +3294,30 @@ class ARange(Op):
)
]
def
perform
(
self
,
node
,
inp
,
out_
):
start
,
stop
,
step
=
inp
(
out
,)
=
out_
start
=
start
.
item
()
stop
=
stop
.
item
()
step
=
step
.
item
()
out
[
0
]
=
np
.
arange
(
start
,
stop
,
step
,
dtype
=
self
.
dtype
)
def
perform
(
self
,
node
,
inputs
,
output_storage
):
start
,
stop
,
step
=
inputs
output_storage
[
0
][
0
]
=
np
.
arange
(
start
.
item
(),
stop
.
item
(),
step
.
item
(),
dtype
=
self
.
dtype
)
def
c_code
(
self
,
node
,
nodename
,
input_names
,
output_names
,
sub
):
[
start_name
,
stop_name
,
step_name
]
=
input_names
[
out_name
]
=
output_names
typenum
=
np
.
dtype
(
self
.
dtype
)
.
num
return
f
"""
double start = ((dtype_{start_name}*)PyArray_DATA({start_name}))[0];
double stop = ((dtype_{stop_name}*)PyArray_DATA({stop_name}))[0];
double step = ((dtype_{step_name}*)PyArray_DATA({step_name}))[0];
//printf("start:
%
f, stop:
%
f, step:
%
f
\\
n", start, stop, step);
Py_XDECREF({out_name});
{out_name} = (PyArrayObject*) PyArray_Arange(start, stop, step, {typenum});
if (!{out_name}) {{
{sub["fail"]}
}}
"""
def
c_code_cache_version
(
self
):
return
(
0
,)
def
connection_pattern
(
self
,
node
):
return
[[
True
],
[
False
],
[
True
]]
...
...
@@ -3685,8 +3703,7 @@ def inverse_permutation(perm):
)
# TODO: optimization to insert ExtractDiag with view=True
class
ExtractDiag
(
Op
):
class
ExtractDiag
(
COp
):
"""
Return specified diagonals.
...
...
@@ -3742,7 +3759,7 @@ class ExtractDiag(Op):
__props__
=
(
"offset"
,
"axis1"
,
"axis2"
,
"view"
)
def
__init__
(
self
,
offset
=
0
,
axis1
=
0
,
axis2
=
1
,
view
=
Fals
e
):
def
__init__
(
self
,
offset
=
0
,
axis1
=
0
,
axis2
=
1
,
view
=
Tru
e
):
self
.
view
=
view
if
self
.
view
:
self
.
view_map
=
{
0
:
[
0
]}
...
...
@@ -3765,24 +3782,74 @@ class ExtractDiag(Op):
if
x
.
ndim
<
2
:
raise
ValueError
(
"ExtractDiag needs an input with 2 or more dimensions"
,
x
)
out_shape
=
[
st_dim
for
i
,
st_dim
in
enumerate
(
x
.
type
.
shape
)
if
i
not
in
(
self
.
axis1
,
self
.
axis2
)
]
+
[
None
]
if
(
dim1
:
=
x
.
type
.
shape
[
self
.
axis1
])
is
not
None
and
(
dim2
:
=
x
.
type
.
shape
[
self
.
axis2
]
)
is
not
None
:
offset
=
self
.
offset
if
offset
>
0
:
diag_size
=
int
(
np
.
clip
(
dim2
-
offset
,
0
,
dim1
))
elif
offset
<
0
:
diag_size
=
int
(
np
.
clip
(
dim1
+
offset
,
0
,
dim2
))
else
:
diag_size
=
int
(
np
.
minimum
(
dim1
,
dim2
))
else
:
diag_size
=
None
out_shape
=
(
*
(
dim
for
i
,
dim
in
enumerate
(
x
.
type
.
shape
)
if
i
not
in
(
self
.
axis1
,
self
.
axis2
)
),
diag_size
,
)
return
Apply
(
self
,
[
x
],
[
x
.
type
.
clone
(
dtype
=
x
.
dtype
,
shape
=
tuple
(
out_shape
)
)()],
[
x
.
type
.
clone
(
dtype
=
x
.
dtype
,
shape
=
out_shape
)()],
)
def
perform
(
self
,
node
,
inputs
,
output
s
):
def
perform
(
self
,
node
,
inputs
,
output
_storage
):
(
x
,)
=
inputs
(
z
,)
=
outputs
z
[
0
]
=
x
.
diagonal
(
self
.
offset
,
self
.
axis1
,
self
.
axis2
)
if
not
self
.
view
:
z
[
0
]
=
z
[
0
]
.
copy
()
out
=
x
.
diagonal
(
self
.
offset
,
self
.
axis1
,
self
.
axis2
)
if
self
.
view
:
try
:
out
.
flags
.
writeable
=
True
except
ValueError
:
# We can't make this array writable
out
=
out
.
copy
()
else
:
out
=
out
.
copy
()
output_storage
[
0
][
0
]
=
out
def
c_code
(
self
,
node
,
nodename
,
input_names
,
output_names
,
sub
):
[
x_name
]
=
input_names
[
out_name
]
=
output_names
return
f
"""
Py_XDECREF({out_name});
{out_name} = (PyArrayObject*) PyArray_Diagonal({x_name}, {self.offset}, {self.axis1}, {self.axis2});
if (!{out_name}) {{
{sub["fail"]} // Error already set by Numpy
}}
if ({int(self.view)} && PyArray_ISWRITEABLE({x_name})) {{
// Make output writeable if input was writeable
PyArray_ENABLEFLAGS({out_name}, NPY_ARRAY_WRITEABLE);
}} else {{
// Make a copy
PyArrayObject *{out_name}_copy = (PyArrayObject*) PyArray_Copy({out_name});
Py_DECREF({out_name});
if (!{out_name}_copy) {{
{sub['fail']}; // Error already set by Numpy
}}
{out_name} = {out_name}_copy;
}}
"""
def
c_code_cache_version
(
self
):
return
(
0
,)
def
grad
(
self
,
inputs
,
gout
):
# Avoid circular import
...
...
@@ -3829,19 +3896,6 @@ class ExtractDiag(Op):
out_shape
.
append
(
diag_size
)
return
[
tuple
(
out_shape
)]
def
__setstate__
(
self
,
state
):
self
.
__dict__
.
update
(
state
)
if
self
.
view
:
self
.
view_map
=
{
0
:
[
0
]}
if
"offset"
not
in
state
:
self
.
offset
=
0
if
"axis1"
not
in
state
:
self
.
axis1
=
0
if
"axis2"
not
in
state
:
self
.
axis2
=
1
def
extract_diag
(
x
):
warnings
.
warn
(
...
...
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