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pytensor
Commits
b4522d23
Unverified
提交
b4522d23
authored
7月 14, 2025
作者:
Pablo de Roque
提交者:
GitHub
7月 14, 2025
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Remove uses of `numba_basic.global_numba_func`
上级
21218d77
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
69 行增加
和
81 行删除
+69
-81
basic.py
pytensor/link/numba/dispatch/basic.py
+9
-11
scalar.py
pytensor/link/numba/dispatch/scalar.py
+60
-70
没有找到文件。
pytensor/link/numba/dispatch/basic.py
浏览文件 @
b4522d23
...
...
@@ -402,24 +402,22 @@ def numba_funcify_DeepCopyOp(op, node, **kwargs):
return
deepcopyop
@numba_njit
def
makeslice
(
*
x
):
return
slice
(
*
x
)
@numba_funcify.register
(
MakeSlice
)
def
numba_funcify_MakeSlice
(
op
,
**
kwargs
):
return
global_numba_func
(
makeslice
)
@numba_njit
def
makeslice
(
*
x
):
return
slice
(
*
x
)
@numba_njit
def
shape
(
x
):
return
np
.
asarray
(
np
.
shape
(
x
))
return
makeslice
@numba_funcify.register
(
Shape
)
def
numba_funcify_Shape
(
op
,
**
kwargs
):
return
global_numba_func
(
shape
)
@numba_njit
def
shape
(
x
):
return
np
.
asarray
(
np
.
shape
(
x
))
return
shape
@numba_funcify.register
(
Shape_i
)
...
...
pytensor/link/numba/dispatch/scalar.py
浏览文件 @
b4522d23
...
...
@@ -141,17 +141,16 @@ def {scalar_op_fn_name}({', '.join(input_names)}):
)(
scalar_op_fn
)
@numba_basic.numba_njit
def
switch
(
condition
,
x
,
y
):
if
condition
:
return
x
else
:
return
y
@numba_funcify.register
(
Switch
)
def
numba_funcify_Switch
(
op
,
node
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
switch
)
@numba_basic.numba_njit
def
switch
(
condition
,
x
,
y
):
if
condition
:
return
x
else
:
return
y
return
switch
def
binary_to_nary_func
(
inputs
:
list
[
Variable
],
binary_op_name
:
str
,
binary_op
:
str
):
...
...
@@ -197,34 +196,32 @@ def numba_funcify_Cast(op, node, **kwargs):
return
cast
@numba_basic.numba_njit
def
identity
(
x
):
return
x
@numba_funcify.register
(
Identity
)
@numba_funcify.register
(
TypeCastingOp
)
def
numba_funcify_type_casting
(
op
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
identity
)
@numba_basic.numba_njit
def
clip
(
_x
,
_min
,
_max
):
x
=
numba_basic
.
to_scalar
(
_x
)
_min_scalar
=
numba_basic
.
to_scalar
(
_min
)
_max_scalar
=
numba_basic
.
to_scalar
(
_max
)
if
x
<
_min_scalar
:
return
_min_scalar
elif
x
>
_max_scalar
:
return
_max_scalar
else
:
@numba_basic.numba_njit
def
identity
(
x
):
return
x
return
identity
@numba_funcify.register
(
Clip
)
def
numba_funcify_Clip
(
op
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
clip
)
@numba_basic.numba_njit
def
clip
(
x
,
min_val
,
max_val
):
x
=
numba_basic
.
to_scalar
(
x
)
min_scalar
=
numba_basic
.
to_scalar
(
min_val
)
max_scalar
=
numba_basic
.
to_scalar
(
max_val
)
if
x
<
min_scalar
:
return
min_scalar
elif
x
>
max_scalar
:
return
max_scalar
else
:
return
x
return
clip
@numba_funcify.register
(
Composite
)
...
...
@@ -239,79 +236,72 @@ def numba_funcify_Composite(op, node, **kwargs):
return
composite_fn
@numba_basic.numba_njit
def
second
(
x
,
y
):
return
y
@numba_funcify.register
(
Second
)
def
numba_funcify_Second
(
op
,
node
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
second
)
@numba_basic.numba_njit
def
second
(
x
,
y
):
return
y
@numba_basic.numba_njit
def
reciprocal
(
x
):
# TODO FIXME: This isn't really the behavior or `numpy.reciprocal` when
# `x` is an `int`
return
1
/
x
return
second
@numba_funcify.register
(
Reciprocal
)
def
numba_funcify_Reciprocal
(
op
,
node
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
reciprocal
)
@numba_basic.numba_njit
def
reciprocal
(
x
):
# TODO FIXME: This isn't really the behavior or `numpy.reciprocal` when
# `x` is an `int`
return
1
/
x
@numba_basic.numba_njit
def
sigmoid
(
x
):
return
1
/
(
1
+
np
.
exp
(
-
x
))
return
reciprocal
@numba_funcify.register
(
Sigmoid
)
def
numba_funcify_Sigmoid
(
op
,
node
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
sigmoid
)
@numba_basic.numba_njit
def
sigmoid
(
x
):
return
1
/
(
1
+
np
.
exp
(
-
x
))
@numba_basic.numba_njit
def
gammaln
(
x
):
return
math
.
lgamma
(
x
)
return
sigmoid
@numba_funcify.register
(
GammaLn
)
def
numba_funcify_GammaLn
(
op
,
node
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
gammaln
)
@numba_basic.numba_njit
def
gammaln
(
x
):
return
math
.
lgamma
(
x
)
@numba_basic.numba_njit
def
logp1mexp
(
x
):
if
x
<
np
.
log
(
0.5
):
return
np
.
log1p
(
-
np
.
exp
(
x
))
else
:
return
np
.
log
(
-
np
.
expm1
(
x
))
return
gammaln
@numba_funcify.register
(
Log1mexp
)
def
numba_funcify_Log1mexp
(
op
,
node
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
logp1mexp
)
@numba_basic.numba_njit
def
logp1mexp
(
x
):
if
x
<
np
.
log
(
0.5
):
return
np
.
log1p
(
-
np
.
exp
(
x
))
else
:
return
np
.
log
(
-
np
.
expm1
(
x
))
@numba_basic.numba_njit
def
erf
(
x
):
return
math
.
erf
(
x
)
return
logp1mexp
@numba_funcify.register
(
Erf
)
def
numba_funcify_Erf
(
op
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
erf
)
@numba_basic.numba_njit
def
erf
(
x
):
return
math
.
erf
(
x
)
@numba_basic.numba_njit
def
erfc
(
x
):
return
math
.
erfc
(
x
)
return
erf
@numba_funcify.register
(
Erfc
)
def
numba_funcify_Erfc
(
op
,
**
kwargs
):
return
numba_basic
.
global_numba_func
(
erfc
)
@numba_basic.numba_njit
def
erfc
(
x
):
return
math
.
erfc
(
x
)
return
erfc
@numba_funcify.register
(
Softplus
)
...
...
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