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pytensor
Commits
16220296
提交
16220296
authored
12月 10, 2025
作者:
Ricardo Vieira
提交者:
Ricardo Vieira
1月 15, 2026
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电子邮件补丁
差异文件
Generalize log(prod(x)) -> sum(log(x)) rewrite
Co-authored-by:
Jesse Grabowski
<
48652735+jessegrabowski@users.noreply.github.com
>
上级
060d85f3
隐藏空白字符变更
内嵌
并排
正在显示
2 个修改的文件
包含
98 行增加
和
14 行删除
+98
-14
linalg.py
pytensor/tensor/rewriting/linalg.py
+28
-14
test_rewriting.py
tests/tensor/linalg/test_rewriting.py
+70
-0
没有找到文件。
pytensor/tensor/rewriting/linalg.py
浏览文件 @
16220296
...
...
@@ -14,7 +14,7 @@ from pytensor.graph.rewriting.basic import (
node_rewriter
,
)
from
pytensor.graph.rewriting.unify
import
OpPattern
from
pytensor.scalar.basic
import
Abs
,
Log
,
Mul
,
Sign
from
pytensor.scalar.basic
import
Abs
,
Exp
,
Log
,
Mul
,
Sign
,
Sqr
from
pytensor.tensor.basic
import
(
AllocDiag
,
ExtractDiag
,
...
...
@@ -319,27 +319,41 @@ def local_det_chol(fgraph, node):
return
[
prod
(
diagonal
(
L
,
axis1
=-
2
,
axis2
=-
1
)
**
2
,
axis
=-
1
)]
@register_canonicalize
@register_stabilize
@register_specialize
@node_rewriter
([
log
])
def
local_log_prod_
sqr
(
fgraph
,
node
):
"""
This utilizes a boolean `positive` tag on matrices.
"""
(
x
,)
=
node
.
inputs
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
Prod
)
:
# we cannot always make this substitution becaus
e
# the prod might include negative terms
p
=
x
.
owner
.
inputs
[
0
]
def
local_log_prod_
to_sum_log
(
fgraph
,
node
):
"""
Rewrite log(prod(x)) as sum(log(x)), when x is known to be positive."""
[
p
]
=
node
.
inputs
p_node
=
p
.
owner
if
p_node
is
None
:
return
Non
e
p_op
=
p_node
.
op
# p is the matrix we're reducing with prod
if
getattr
(
p
.
tag
,
"positive"
,
None
)
is
True
:
return
[
log
(
p
)
.
sum
(
axis
=
x
.
owner
.
op
.
axis
)]
if
isinstance
(
p_op
,
Prod
):
x
=
p_node
.
inputs
[
0
]
# TODO: The product of diagonals of a Cholesky(A) are also strictly positive
if
(
x
.
owner
is
not
None
and
isinstance
(
x
.
owner
.
op
,
Elemwise
)
and
isinstance
(
x
.
owner
.
op
.
scalar_op
,
Abs
|
Sqr
|
Exp
)
)
or
getattr
(
x
.
tag
,
"positive"
,
False
):
return
[
log
(
x
)
.
sum
(
axis
=
p_node
.
op
.
axis
)]
# TODO: have a reduction like prod and sum that simply
# returns the sign of the prod multiplication.
# Special case for log(abs(prod(x))) -> sum(log(abs(x))) that shows up in slogdet
elif
isinstance
(
p_op
,
Elemwise
)
and
isinstance
(
p_op
.
scalar_op
,
Abs
):
[
p
]
=
p_node
.
inputs
p_node
=
p
.
owner
if
p_node
is
not
None
and
isinstance
(
p_node
.
op
,
Prod
):
[
x
]
=
p
.
owner
.
inputs
return
[
log
(
abs
(
x
))
.
sum
(
axis
=
p_node
.
op
.
axis
)]
@register_specialize
@node_rewriter
([
blockwise_of
(
MatrixInverse
|
Cholesky
|
MatrixPinv
)])
...
...
tests/tensor/linalg/test_rewriting.py
浏览文件 @
16220296
...
...
@@ -2,8 +2,10 @@ import numpy as np
import
pytest
from
pytensor
import
config
,
function
,
scan
from
pytensor
import
tensor
as
pt
from
pytensor.compile.mode
import
get_default_mode
from
pytensor.gradient
import
grad
from
pytensor.graph
import
rewrite_graph
from
pytensor.scan.op
import
Scan
from
pytensor.tensor._linalg.solve.rewriting
import
(
reuse_decomposition_multiple_solves
,
...
...
@@ -23,6 +25,7 @@ from pytensor.tensor.slinalg import (
SolveTriangular
,
)
from
pytensor.tensor.type
import
tensor
from
tests.unittest_tools
import
assert_equal_computations
class
DecompSolveOpCounter
:
...
...
@@ -213,3 +216,70 @@ def test_lu_decomposition_reused_scan(assume_a, counter, transposed):
resx1
=
fn_opt
(
A_test
,
x0_test
)
rtol
=
1e-7
if
config
.
floatX
==
"float64"
else
1e-4
np
.
testing
.
assert_allclose
(
resx0
,
resx1
,
rtol
=
rtol
)
@pytest.mark.parametrize
(
"original_fn, expected_fn"
,
[
pytest
.
param
(
lambda
x
:
pt
.
log
(
pt
.
prod
(
pt
.
abs
(
x
))),
lambda
x
:
pt
.
sum
(
pt
.
log
(
pt
.
abs
(
x
))),
id
=
"log_prod_abs"
,
),
pytest
.
param
(
lambda
x
:
pt
.
log
(
pt
.
prod
(
pt
.
exp
(
x
))),
lambda
x
:
pt
.
sum
(
x
),
id
=
"log_prod_exp"
),
pytest
.
param
(
lambda
x
:
pt
.
log
(
pt
.
prod
(
x
**
2
)),
lambda
x
:
pt
.
sum
(
pt
.
log
(
pt
.
sqr
(
x
))),
id
=
"log_prod_sqr"
,
),
pytest
.
param
(
lambda
x
:
pt
.
log
(
pt
.
abs
(
pt
.
prod
(
x
))),
lambda
x
:
pt
.
sum
(
pt
.
log
(
pt
.
abs
(
x
))),
id
=
"log_abs_prod"
,
),
pytest
.
param
(
lambda
x
:
pt
.
log
(
pt
.
prod
(
pt
.
abs
(
x
),
axis
=
0
)),
lambda
x
:
pt
.
sum
(
pt
.
log
(
pt
.
abs
(
x
)),
axis
=
0
),
id
=
"log_prod_abs_axis0"
,
),
pytest
.
param
(
lambda
x
:
pt
.
log
(
pt
.
prod
(
pt
.
exp
(
x
),
axis
=-
1
)),
lambda
x
:
pt
.
sum
(
x
,
axis
=-
1
),
id
=
"log_prod_exp_axis-1"
,
),
],
)
def
test_local_log_prod_to_sum_log
(
original_fn
,
expected_fn
):
x
=
pt
.
tensor
(
"x"
,
shape
=
(
3
,
4
))
out
=
original_fn
(
x
)
expected
=
expected_fn
(
x
)
rewritten
=
rewrite_graph
(
out
,
include
=
[
"stabilize"
,
"specialize"
])
assert_equal_computations
([
rewritten
],
[
expected
])
@pytest.mark.parametrize
(
"expected, pos_tag"
,
[
pytest
.
param
(
lambda
x
:
pt
.
sum
(
pt
.
log
(
x
)),
True
,
id
=
"local_log_prod_to_sum_log_positive_tag"
,
),
pytest
.
param
(
lambda
x
:
pt
.
log
(
pt
.
prod
(
x
)),
False
,
id
=
"local_log_prod_to_sum_log_no_rewrite"
,
),
],
)
def
test_local_log_prod_to_sum_log_positive_tag
(
expected
,
pos_tag
):
x
=
pt
.
tensor
(
"x"
,
shape
=
(
3
,
4
))
if
pos_tag
:
x
.
tag
.
positive
=
True
out
=
pt
.
log
(
pt
.
prod
(
x
))
rewritten
=
rewrite_graph
(
out
,
include
=
[
"stabilize"
,
"specialize"
])
assert_equal_computations
([
rewritten
],
[
expected
(
x
)])
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