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testgroup
pytensor
Commits
ad8dca48
提交
ad8dca48
authored
1月 24, 2026
作者:
jessegrabowski
提交者:
Jesse Grabowski
1月 29, 2026
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Implement QZ Op
上级
9834e96c
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
512 行增加
和
0 行删除
+512
-0
slinalg.py
pytensor/tensor/slinalg.py
+411
-0
test_slinalg.py
tests/tensor/test_slinalg.py
+101
-0
没有找到文件。
pytensor/tensor/slinalg.py
浏览文件 @
ad8dca48
...
...
@@ -1963,6 +1963,415 @@ def schur(
return
Blockwise
(
Schur
(
output
=
output
,
sort
=
sort
))(
A
)
# type: ignore[return-value]
class
QZ
(
Op
):
"""
QZ Decomposition
"""
__props__
=
(
"complex_output"
,
"overwrite_a"
,
"overwrite_b"
,
"sort"
,
"return_eigenvalues"
,
)
def
__init__
(
self
,
complex_output
:
bool
=
False
,
overwrite_a
:
bool
=
False
,
overwrite_b
:
bool
=
False
,
sort
:
Literal
[
"lhp"
,
"rhp"
,
"iuc"
,
"ouc"
]
|
None
=
None
,
return_eigenvalues
:
bool
=
False
,
):
self
.
complex_output
=
complex_output
self
.
overwrite_a
=
overwrite_a
self
.
overwrite_b
=
overwrite_b
self
.
sort
=
sort
self
.
return_eigenvalues
=
return_eigenvalues
if
return_eigenvalues
:
self
.
gufunc_signature
=
"(m,m),(m,m)->(m,m),(m,m),(m),(m),(m,m),(m,m)"
else
:
self
.
gufunc_signature
=
"(m,m),(m,m)->(m,m),(m,m),(m,m),(m,m)"
self
.
destroy_map
=
{}
if
overwrite_a
:
self
.
destroy_map
[
0
]
=
[
0
]
if
overwrite_b
:
self
.
destroy_map
[
1
]
=
[
1
]
if
sort
is
not
None
and
sort
not
in
(
"lhp"
,
"rhp"
,
"iuc"
,
"ouc"
):
raise
ValueError
(
"sort must be None or one of ('lhp', 'rhp', 'iuc', 'ouc')"
)
def
make_sort_function
(
self
,
sort
:
Literal
[
"lhp"
,
"rhp"
,
"iuc"
,
"ouc"
,
"none"
]
|
None
=
None
):
if
sort
is
None
:
sort
=
self
.
sort
sort_t
=
1
match
sort
:
case
None
|
"none"
:
sort_t
=
0
def
sort_function
(
alpha
,
beta
):
"""No sorting."""
return
None
case
"lhp"
:
def
sort_function
(
alpha
,
beta
):
"""Sort eigenvalues with negative real part (left half-plane) to upper-left."""
out
=
np
.
empty
(
alpha
.
shape
,
dtype
=
bool
)
nonzero
=
beta
!=
0
out
[
~
nonzero
]
=
False
out
[
nonzero
]
=
(
alpha
[
nonzero
]
/
beta
[
nonzero
])
.
real
<
0.0
return
out
case
"rhp"
:
def
sort_function
(
alpha
,
beta
):
"""Sort eigenvalues with positive real part (right half-plane) to upper-left."""
out
=
np
.
empty
(
alpha
.
shape
,
dtype
=
bool
)
nonzero
=
beta
!=
0
out
[
~
nonzero
]
=
False
out
[
nonzero
]
=
(
alpha
[
nonzero
]
/
beta
[
nonzero
])
.
real
>
0.0
return
out
case
"iuc"
:
def
sort_function
(
alpha
,
beta
):
"""Sort eigenvalues inside the unit circle (abs(lambda) < 1) to upper-left."""
out
=
np
.
empty
(
alpha
.
shape
,
dtype
=
bool
)
nonzero
=
beta
!=
0
out
[
~
nonzero
]
=
False
out
[
nonzero
]
=
np
.
abs
(
alpha
[
nonzero
]
/
beta
[
nonzero
])
<
1.0
return
out
case
"ouc"
:
def
sort_function
(
alpha
,
beta
):
"""Sort eigenvalues outside the unit circle (abs(lambda) > 1) to upper-left.
Infinite eigenvalues (beta=0, alpha != 0) are included."""
out
=
np
.
empty
(
alpha
.
shape
,
dtype
=
bool
)
alpha_zero
=
alpha
==
0
beta_zero
=
beta
==
0
beta_nonzero
=
~
beta_zero
out
[
alpha_zero
&
beta_zero
]
=
False
out
[
~
alpha_zero
&
beta_zero
]
=
True
out
[
beta_nonzero
]
=
(
np
.
abs
(
alpha
[
beta_nonzero
]
/
beta
[
beta_nonzero
])
>
1.0
)
return
out
case
_
:
raise
ValueError
(
"sort must be None or one of ('lhp', 'rhp', 'iuc', 'ouc', 'none')"
)
return
sort_function
,
sort_t
def
make_node
(
self
,
A
,
B
):
A
=
as_tensor_variable
(
A
)
B
=
as_tensor_variable
(
B
)
assert
A
.
ndim
==
2
assert
B
.
ndim
==
2
out_dtype
=
pytensor
.
scalar
.
upcast
(
A
.
dtype
,
B
.
dtype
)
if
np
.
dtype
(
out_dtype
)
.
kind
in
"ibu"
:
out_dtype
=
"float64"
if
np
.
dtype
(
out_dtype
)
.
itemsize
>
2
else
"float32"
complex_input
=
out_dtype
in
(
"complex64"
,
"complex128"
)
# Scipy behavior: output parameter only affects real inputs
# Complex inputs always return complex output
if
self
.
complex_output
and
not
complex_input
:
out_dtype
=
pytensor
.
scalar
.
upcast
(
out_dtype
,
"complex64"
)
AA
=
matrix
(
dtype
=
out_dtype
,
shape
=
A
.
type
.
shape
)
BB
=
matrix
(
dtype
=
out_dtype
,
shape
=
B
.
type
.
shape
)
Q
=
matrix
(
dtype
=
out_dtype
,
shape
=
A
.
type
.
shape
)
Z
=
matrix
(
dtype
=
out_dtype
,
shape
=
A
.
type
.
shape
)
if
self
.
return_eigenvalues
:
# Eigenvalues can be complex even for real matrices, so alpha is always complex
# beta has the same dtype as the matrix outputs
if
complex_input
or
self
.
complex_output
:
alpha_dtype
=
out_dtype
else
:
alpha_dtype
=
pytensor
.
scalar
.
upcast
(
out_dtype
,
"complex64"
)
alpha
=
vector
(
dtype
=
alpha_dtype
,
shape
=
(
A
.
type
.
shape
[
0
],))
beta
=
vector
(
dtype
=
out_dtype
,
shape
=
(
A
.
type
.
shape
[
0
],))
return
Apply
(
self
,
[
A
,
B
],
[
AA
,
BB
,
alpha
,
beta
,
Q
,
Z
])
else
:
return
Apply
(
self
,
[
A
,
B
],
[
AA
,
BB
,
Q
,
Z
])
def
perform
(
self
,
node
,
inputs
,
outputs
):
(
A
,
B
)
=
inputs
if
self
.
return_eigenvalues
:
(
AA_out
,
BB_out
,
alpha_out
,
beta_out
,
Q_out
,
Z_out
)
=
outputs
else
:
(
AA_out
,
BB_out
,
Q_out
,
Z_out
)
=
outputs
overwrite_a
=
self
.
overwrite_a
overwrite_b
=
self
.
overwrite_b
A_work
=
A
B_work
=
B
if
self
.
complex_output
and
not
np
.
iscomplexobj
(
A
):
overwrite_a
=
False
if
A
.
dtype
==
np
.
float32
:
A_work
=
A
.
astype
(
np
.
complex64
)
else
:
A_work
=
A
.
astype
(
np
.
complex128
)
if
self
.
complex_output
and
not
np
.
iscomplexobj
(
B
):
overwrite_b
=
False
if
B
.
dtype
==
np
.
float32
:
B_work
=
B
.
astype
(
np
.
complex64
)
else
:
B_work
=
B
.
astype
(
np
.
complex128
)
if
not
self
.
complex_output
and
np
.
iscomplexobj
(
A
):
overwrite_a
=
False
if
not
self
.
complex_output
and
np
.
iscomplexobj
(
B
):
overwrite_b
=
False
(
gges
,)
=
scipy_linalg
.
get_lapack_funcs
((
"gges"
,),
dtype
=
A_work
.
dtype
)
gges_type
=
gges
.
typecode
no_sort_fn
,
no_sort_t
=
self
.
make_sort_function
(
sort
=
"none"
)
# Workspace query
*
_
,
work
,
_info
=
gges
(
no_sort_fn
,
A_work
,
B_work
,
lwork
=-
1
,
overwrite_a
=
False
,
overwrite_b
=
False
,
sort_t
=
no_sort_t
,
)
lwork
=
int
(
work
[
0
]
.
real
)
# This Op is a combination of scipy.linalg.qz and scipy.linalg.ordqz. They first call gges with no sorting,
# then do the sorting in a second step if required
AA
,
BB
,
_sdim
,
*
ab
,
Q
,
Z
,
_work
,
info
=
gges
(
no_sort_fn
,
A_work
,
B_work
,
lwork
=
lwork
,
overwrite_a
=
overwrite_a
,
overwrite_b
=
overwrite_b
,
sort_t
=
no_sort_t
,
)
# If this first pass failed, we skip the sorting step no matter what and return NaNs
# TODO: When info > 0 and info < A.shape[0], gges fails to put A and B in Shur form but the eigenvalues
# are still valid. We could potentially still return something in this case.
if
info
!=
0
:
AA_out
[
0
]
=
np
.
full
(
A_work
.
shape
,
np
.
nan
,
dtype
=
node
.
outputs
[
0
]
.
type
.
dtype
)
BB_out
[
0
]
=
np
.
full
(
B_work
.
shape
,
np
.
nan
,
dtype
=
node
.
outputs
[
1
]
.
type
.
dtype
)
Q_out
[
0
]
=
np
.
full
(
A_work
.
shape
,
np
.
nan
,
dtype
=
node
.
outputs
[
-
2
]
.
type
.
dtype
)
Z_out
[
0
]
=
np
.
full
(
A_work
.
shape
,
np
.
nan
,
dtype
=
node
.
outputs
[
-
1
]
.
type
.
dtype
)
if
self
.
return_eigenvalues
:
alpha_out
[
0
]
=
np
.
full
(
(
A_work
.
shape
[
0
],),
np
.
nan
,
dtype
=
node
.
outputs
[
2
]
.
type
.
dtype
)
beta_out
[
0
]
=
np
.
full
(
(
A_work
.
shape
[
0
],),
np
.
nan
,
dtype
=
node
.
outputs
[
3
]
.
type
.
dtype
)
return
if
self
.
sort
is
not
None
or
self
.
return_eigenvalues
:
if
gges_type
==
"s"
:
_alphar
,
_alphai
,
beta
=
ab
alpha
=
_alphar
+
np
.
complex64
(
1
j
)
*
_alphai
elif
gges_type
==
"d"
:
_alphar
,
_alphai
,
beta
=
ab
alpha
=
_alphar
+
1
j
*
_alphai
else
:
alpha
,
beta
=
ab
if
self
.
sort
is
not
None
:
sort_function
,
_
=
self
.
make_sort_function
()
select
=
sort_function
(
alpha
,
beta
)
tgsen
=
get_lapack_funcs
(
"tgsen"
,
(
AA
,
BB
))
lwork
=
4
*
AA
.
shape
[
0
]
+
16
if
gges_type
in
"sd"
else
1
AA
,
BB
,
*
ab
,
Q
,
Z
,
_
,
_
,
_
,
_
,
info
=
tgsen
(
select
,
AA
,
BB
,
Q
,
Z
,
ijob
=
0
,
lwork
=
lwork
,
liwork
=
1
,
overwrite_a
=
overwrite_a
,
overwrite_b
=
overwrite_b
,
)
if
gges_type
==
"s"
:
alphar
,
alphai
,
beta
=
ab
alpha
=
alphar
+
np
.
complex64
(
1
j
)
*
alphai
elif
gges_type
==
"d"
:
alphar
,
alphai
,
beta
=
ab
alpha
=
alphar
+
1
j
*
alphai
else
:
alpha
,
beta
=
ab
if
info
!=
0
:
AA_out
[
0
]
=
np
.
full
(
A_work
.
shape
,
np
.
nan
,
dtype
=
node
.
outputs
[
0
]
.
type
.
dtype
)
BB_out
[
0
]
=
np
.
full
(
B_work
.
shape
,
np
.
nan
,
dtype
=
node
.
outputs
[
1
]
.
type
.
dtype
)
Q_out
[
0
]
=
np
.
full
(
A_work
.
shape
,
np
.
nan
,
dtype
=
node
.
outputs
[
-
2
]
.
type
.
dtype
)
Z_out
[
0
]
=
np
.
full
(
A_work
.
shape
,
np
.
nan
,
dtype
=
node
.
outputs
[
-
1
]
.
type
.
dtype
)
if
self
.
return_eigenvalues
:
alpha_out
[
0
]
=
np
.
full
(
(
A_work
.
shape
[
0
],),
np
.
nan
,
dtype
=
node
.
outputs
[
2
]
.
type
.
dtype
)
beta_out
[
0
]
=
np
.
full
(
(
A_work
.
shape
[
0
],),
np
.
nan
,
dtype
=
node
.
outputs
[
3
]
.
type
.
dtype
)
else
:
AA_out
[
0
]
=
AA
BB_out
[
0
]
=
BB
Q_out
[
0
]
=
Q
Z_out
[
0
]
=
Z
if
self
.
return_eigenvalues
:
alpha_out
[
0
]
=
alpha
beta_out
[
0
]
=
beta
def
infer_shape
(
self
,
fgraph
,
node
,
shapes
):
A_shape
,
B_shape
=
shapes
if
self
.
return_eigenvalues
:
return
[
A_shape
,
B_shape
,
(
A_shape
[
0
],),
(
A_shape
[
0
],),
A_shape
,
B_shape
]
else
:
return
[
A_shape
,
B_shape
,
A_shape
,
B_shape
]
def
inplace_on_inputs
(
self
,
allowed_inplace_inputs
:
list
[
int
])
->
"Op"
:
if
not
allowed_inplace_inputs
:
return
self
new_props
=
self
.
_props_dict
()
# type: ignore
if
0
in
allowed_inplace_inputs
:
new_props
[
"overwrite_a"
]
=
True
if
1
in
allowed_inplace_inputs
:
new_props
[
"overwrite_b"
]
=
True
return
type
(
self
)(
**
new_props
)
def
qz
(
A
:
TensorLike
,
B
:
TensorLike
,
output
:
Literal
[
"real"
,
"complex"
]
=
"real"
,
sort
:
Literal
[
"lhp"
,
"rhp"
,
"iuc"
,
"ouc"
]
|
None
=
None
,
return_eigenvalues
:
bool
=
False
,
)
->
(
tuple
[
TensorVariable
,
TensorVariable
,
TensorVariable
,
TensorVariable
]
|
tuple
[
TensorVariable
,
TensorVariable
,
TensorVariable
,
TensorVariable
,
TensorVariable
,
TensorVariable
,
]
):
"""
QZ Decomposition of input matrix pair `(A, B)`.
The QZ decomposition (also known as the generalized Schur decomposition) of a matrix pair
`(A, B)` is a factorization of the form :math:`A = Q H Z^H` and :math:`B = Q K Z^H`,
where `Q` and `Z` are unitary matrices, and `H` and `K` are upper-triangular matrices.
Parameters
----------
A: TensorLike
First input square matrix of shape (M, M) to be decomposed.
B: TensorLike
Second input square matrix of shape (M, M) to be decomposed.
output: str, one of "real" or "complex"
For real-valued `A` and `B`, if output='real', then the Schur forms are quasi-upper-triangular.
If output='complex', the Schur forms are upper-triangular. For complex-valued `A` and `B`,
the Schur forms are always upper-triangular regardless of the output parameter.
sort: str or None, optional
Specifies whether the generalized eigenvalues should be sorted. Available options are:
- None (default): eigenvalues are not sorted
- 'lhp': left half-plane (real(λ) < 0)
- 'rhp': right half-plane (real(λ) >= 0)
- 'iuc': inside unit circle (abs(λ) <= 1)
- 'ouc': outside unit circle (abs(λ) > 1)
return_eigenvalues: bool, default False
If True, the function also returns the generalized eigenvalues as two arrays `alpha` and `beta`,
where the generalized eigenvalues are given by the ratio `alpha / beta`.
Returns
-------
H : TensorVariable
Schur form of A. An upper-triangular matrix (or quasi-upper-triangular if output='real').
K : TensorVariable
Schur form of B. An upper-triangular matrix (or quasi-upper-triangular if output='real').
Q : TensorVariable
Unitary matrix such that A = Q @ H @ Z.conj().T and B = Q @ K @ Z.conj().T.
Z : TensorVariable
Unitary matrix such that A = Q @ H @ Z.conj().T and B = Q @ K @ Z.conj().T.
alpha : TensorVariable, optional
Numerators of the generalized eigenvalues (returned if `return_eigenvalues` is True).
beta : TensorVariable, optional
Denominators of the generalized eigenvalues (returned if `return_eigenvalues` is True).
Notes
-----
Unlike scipy.linalg.qz, the sort function is allowed. Behavior in this case follows that of scipy.linalg.ordqz.
"""
if
output
not
in
[
"real"
,
"complex"
]:
raise
ValueError
(
"output must be 'real' or 'complex'"
)
complex_output
=
output
==
"complex"
qz_op
=
QZ
(
complex_output
=
complex_output
,
sort
=
sort
,
return_eigenvalues
=
return_eigenvalues
)
return
Blockwise
(
qz_op
)(
A
,
B
)
# type: ignore[return-value]
def
ordqz
(
A
:
TensorLike
,
B
:
TensorLike
,
sort
:
Literal
[
"lhp"
,
"rhp"
,
"iuc"
,
"ouc"
]
|
None
=
None
,
output
:
Literal
[
"real"
,
"complex"
]
=
"real"
,
)
->
(
tuple
[
TensorVariable
,
TensorVariable
,
TensorVariable
,
TensorVariable
]
|
tuple
[
TensorVariable
,
TensorVariable
,
TensorVariable
,
TensorVariable
,
TensorVariable
,
TensorVariable
,
]
):
"""
Ordered QZ Decomposition of input matrix pair `(A, B)`.
Alias for `qz`. Included for API consistency with `scipy.linalg`. For details, see the docstring of
`pytensor.linalg.qz`.
"""
return
qz
(
A
,
B
,
output
=
output
,
sort
=
sort
,
return_eigenvalues
=
True
)
_deprecated_names
=
{
"solve_continuous_lyapunov"
,
"solve_discrete_are"
,
...
...
@@ -1994,7 +2403,9 @@ __all__ = [
"lu"
,
"lu_factor"
,
"lu_solve"
,
"ordqz"
,
"qr"
,
"qz"
,
"schur"
,
"solve"
,
"solve_triangular"
,
...
...
tests/tensor/test_slinalg.py
浏览文件 @
ad8dca48
...
...
@@ -37,6 +37,7 @@ from pytensor.tensor.slinalg import (
lu_solve
,
pivot_to_permutation
,
qr
,
qz
,
schur
,
solve
,
solve_triangular
,
...
...
@@ -1366,3 +1367,103 @@ class TestSchur:
assert
Z_out
.
size
==
0
assert
T_out
.
dtype
==
config
.
floatX
assert
Z_out
.
dtype
==
config
.
floatX
class
TestQZ
:
@pytest.mark.parametrize
(
"shape, output"
,
[((
5
,
5
),
"real"
),
((
5
,
5
),
"complex"
),
((
2
,
4
,
4
),
"real"
)],
ids
=
[
"not_batched_real"
,
"not_batched_complex"
,
"batched_real"
],
)
@pytest.mark.parametrize
(
"complex"
,
[
False
,
True
],
ids
=
[
"real"
,
"complex"
])
@pytest.mark.parametrize
(
"sort"
,
[
None
,
"lhp"
,
"rhp"
,
"iuc"
,
"ouc"
])
def
test_qz_decomposition
(
self
,
shape
,
output
,
complex
,
sort
):
dtype
=
(
config
.
floatX
if
not
complex
else
f
"complex{int(config.floatX[-2:]) * 2}"
)
A
=
tensor
(
"A"
,
shape
=
shape
,
dtype
=
dtype
)
B
=
tensor
(
"B"
,
shape
=
shape
,
dtype
=
dtype
)
outputs
=
qz
(
A
,
B
,
output
=
output
,
sort
=
sort
,
return_eigenvalues
=
sort
is
not
None
)
f
=
function
([
A
,
B
],
outputs
)
rng
=
np
.
random
.
default_rng
(
utt
.
fetch_seed
())
A_val
,
B_val
=
rng
.
normal
(
size
=
(
2
,
*
shape
))
A_val
=
A_val
.
astype
(
config
.
floatX
)
B_val
=
B_val
.
astype
(
config
.
floatX
)
if
complex
:
A_val
=
A_val
+
1
j
*
rng
.
normal
(
size
=
shape
)
.
astype
(
config
.
floatX
)
B_val
=
B_val
+
1
j
*
rng
.
normal
(
size
=
shape
)
.
astype
(
config
.
floatX
)
output_values
=
f
(
A_val
,
B_val
)
if
sort
is
None
:
AA_val
,
BB_val
,
Q_val
,
Z_val
=
output_values
else
:
AA_val
,
BB_val
,
alpha_val
,
beta_val
,
Q_val
,
Z_val
=
output_values
# Verify reconstruction
A_rebuilt
=
np
.
einsum
(
"...ij,...jk,...lk->...il"
,
Q_val
,
AA_val
,
Z_val
.
conj
())
B_rebuilt
=
np
.
einsum
(
"...ij,...jk,...lk->...il"
,
Q_val
,
BB_val
,
Z_val
.
conj
())
np
.
testing
.
assert_allclose
(
A_val
,
A_rebuilt
,
atol
=
1e-6
if
config
.
floatX
==
"float64"
else
1e-3
,
rtol
=
1e-6
if
config
.
floatX
==
"float64"
else
1e-3
,
)
np
.
testing
.
assert_allclose
(
B_val
,
B_rebuilt
,
atol
=
1e-6
if
config
.
floatX
==
"float64"
else
1e-3
,
rtol
=
1e-6
if
config
.
floatX
==
"float64"
else
1e-3
,
)
scipy_fn
=
(
scipy_linalg
.
qz
if
sort
is
None
else
functools
.
partial
(
scipy_linalg
.
ordqz
,
sort
=
sort
)
)
scipy_signature
=
(
"(m,m),(m,m)->(m,m),(m,m),(m,m),(m,m)"
if
sort
is
None
else
(
"(m,m),(m,m)->(m,m),(m,m),(m),(m),(m,m),(m,m)"
)
)
vec_qz
=
np
.
vectorize
(
lambda
a
,
b
:
scipy_fn
(
a
,
b
,
output
=
output
),
signature
=
scipy_signature
,
)
scipy_result
=
vec_qz
(
A_val
,
B_val
)
if
sort
is
None
:
scipy_AA
,
scipy_BB
,
scipy_Q
,
scipy_Z
=
scipy_result
else
:
scipy_AA
,
scipy_BB
,
scipy_alpha
,
scipy_beta
,
scipy_Q
,
scipy_Z
=
scipy_result
np
.
testing
.
assert_allclose
(
AA_val
,
scipy_AA
,
atol
=
1e-6
,
rtol
=
1e-6
)
np
.
testing
.
assert_allclose
(
BB_val
,
scipy_BB
,
atol
=
1e-6
,
rtol
=
1e-6
)
np
.
testing
.
assert_allclose
(
Q_val
,
scipy_Q
,
atol
=
1e-6
,
rtol
=
1e-6
)
np
.
testing
.
assert_allclose
(
Z_val
,
scipy_Z
,
atol
=
1e-6
,
rtol
=
1e-6
)
if
sort
is
not
None
:
np
.
testing
.
assert_allclose
(
alpha_val
,
scipy_alpha
,
atol
=
1e-6
,
rtol
=
1e-6
)
np
.
testing
.
assert_allclose
(
beta_val
,
scipy_beta
,
atol
=
1e-6
,
rtol
=
1e-6
)
if
len
(
shape
)
==
2
and
(
output
==
"complex"
)
==
complex
:
A_f
=
np
.
asfortranarray
(
A_val
.
copy
())
B_f
=
np
.
asfortranarray
(
B_val
.
copy
())
f_mut
=
function
(
[
In
(
A
,
mutable
=
True
),
In
(
B
,
mutable
=
True
)],
outputs
,
mode
=
get_default_mode
()
.
including
(
"inplace"
),
)
f_mut
(
A_f
,
B_f
)
np
.
testing
.
assert_allclose
(
A_f
,
scipy_AA
,
atol
=
1e-6
,
rtol
=
1e-6
)
np
.
testing
.
assert_allclose
(
B_f
,
scipy_BB
,
atol
=
1e-6
,
rtol
=
1e-6
)
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