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testgroup
pytensor
Commits
51de50be
提交
51de50be
authored
11月 25, 2021
作者:
Brandon T. Willard
提交者:
Brandon T. Willard
12月 05, 2021
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Extract general utility methods from Subtensor class
上级
df2a45d8
隐藏空白字符变更
内嵌
并排
正在显示
7 个修改的文件
包含
208 行增加
和
178 行删除
+208
-178
opt.py
aesara/scan/opt.py
+3
-2
basic.py
aesara/tensor/basic.py
+3
-1
basic.py
aesara/tensor/nnet/basic.py
+8
-3
subtensor.py
aesara/tensor/subtensor.py
+163
-163
subtensor_opt.py
aesara/tensor/subtensor_opt.py
+12
-5
var.py
aesara/tensor/var.py
+4
-4
test_subtensor.py
tests/tensor/test_subtensor.py
+15
-0
没有找到文件。
aesara/scan/opt.py
浏览文件 @
51de50be
...
...
@@ -50,6 +50,7 @@ from aesara.tensor.subtensor import (
Subtensor
,
get_canonical_form_slice
,
get_idx_list
,
get_slice_elements
,
set_subtensor
,
)
from
aesara.tensor.var
import
TensorConstant
,
get_unique_value
...
...
@@ -1548,7 +1549,7 @@ def save_mem_new_scan(fgraph, node):
subtens
=
Subtensor
(
nw_slice
)
# slice inputs
sl_ins
=
Subtensor
.
collapse
(
sl_ins
=
get_slice_elements
(
nw_slice
,
lambda
entry
:
isinstance
(
entry
,
Variable
)
)
new_o
=
subtens
(
new_outs
[
nw_pos
],
*
sl_ins
)
...
...
@@ -1598,7 +1599,7 @@ def save_mem_new_scan(fgraph, node):
nw_slice
=
(
sanitize
(
position
),)
+
tuple
(
old_slices
[
1
:])
subtens
=
Subtensor
(
nw_slice
)
sl_ins
=
Subtensor
.
collapse
(
sl_ins
=
get_slice_elements
(
nw_slice
,
lambda
entry
:
isinstance
(
entry
,
Variable
)
)
new_o
=
subtens
(
new_outs
[
nw_pos
],
*
sl_ins
)
...
...
aesara/tensor/basic.py
浏览文件 @
51de50be
...
...
@@ -417,7 +417,9 @@ def get_scalar_constant_value(
and
v
.
ndim
==
0
):
if
isinstance
(
v
.
owner
.
inputs
[
0
],
TensorConstant
):
cdata
=
tuple
(
v
.
owner
.
op
.
get_constant_idx
(
v
.
owner
.
inputs
))
from
aesara.tensor.subtensor
import
get_constant_idx
cdata
=
tuple
(
get_constant_idx
(
v
.
owner
.
op
.
idx_list
,
v
.
owner
.
inputs
))
try
:
return
v
.
owner
.
inputs
[
0
]
.
data
.
__getitem__
(
cdata
)
.
copy
()
except
IndexError
:
...
...
aesara/tensor/nnet/basic.py
浏览文件 @
51de50be
...
...
@@ -58,7 +58,12 @@ from aesara.tensor.math import sum as aet_sum
from
aesara.tensor.math
import
tanh
,
tensordot
,
true_div
from
aesara.tensor.nnet.blocksparse
import
sparse_block_dot
from
aesara.tensor.shape
import
shape
,
shape_padleft
from
aesara.tensor.subtensor
import
AdvancedIncSubtensor
,
AdvancedSubtensor
,
Subtensor
from
aesara.tensor.subtensor
import
(
AdvancedIncSubtensor
,
AdvancedSubtensor
,
Subtensor
,
get_constant_idx
,
)
from
aesara.tensor.type
import
(
TensorType
,
discrete_dtypes
,
...
...
@@ -1736,8 +1741,8 @@ def _check_rows_is_arange_len_labels(fgraph, rows, labels):
# ShapeOptimizer, but we keep it if ShapeOptimizer is not present
if
isinstance
(
stop
.
owner
.
op
,
Subtensor
):
shape_subtensor
=
stop
.
owner
if
shape_subtensor
.
op
.
get_constant_idx
(
shape_subtensor
.
inputs
,
allow_partial
=
True
if
get_constant_idx
(
shape_subtensor
.
op
.
idx_list
,
shape_subtensor
.
inputs
,
allow_partial
=
True
)
==
[
0
]:
shape_var
=
shape_subtensor
.
inputs
[
0
]
if
shape_var
.
owner
and
shape_var
.
owner
.
op
==
shape
:
...
...
aesara/tensor/subtensor.py
浏览文件 @
51de50be
...
...
@@ -2,7 +2,7 @@ import logging
import
sys
from
itertools
import
chain
,
groupby
from
textwrap
import
dedent
from
typing
import
Iterable
,
List
,
Optional
,
Tuple
,
Union
from
typing
import
Callable
,
Iterable
,
List
,
Optional
,
Tuple
,
Union
import
numpy
as
np
...
...
@@ -498,184 +498,184 @@ def indexed_result_shape(array_shape, indices, indices_are_shapes=False):
return
res_shape
class
Subtensor
(
COp
)
:
"""
Basic NumPy indexing operator."""
def
get_slice_elements
(
idxs
:
List
,
cond
:
Callable
)
->
List
:
"""
Extract slice elements conditional on a given predicate function.
check_input
=
False
view_map
=
{
0
:
[
0
]}
_f16_ok
=
True
__props__
=
(
"idx_list"
,)
Parameters
----------
idxs : a list of indices or slices.
cond : a callable that returns a bool
@staticmethod
def
collapse
(
idxs
,
cond
):
"""
Parameters
----------
idxs : a list of indices or slices.
cond : a callable that returns a bool
Returns
-------
list
idxs, with the slices flattened out into a list.
If cond is true for an entry, does not flatten it.
Returns
-------
list
idxs, with the slices flattened out into a list.
If cond is true for an entry, does not flatten it.
"""
ret
=
[]
"""
ret
=
[]
def
helper
(
entry
):
if
cond
(
entry
):
ret
.
append
(
entry
)
elif
isinstance
(
entry
,
slice
):
helper
(
entry
.
start
)
helper
(
entry
.
stop
)
helper
(
entry
.
step
)
def
helper
(
entry
):
if
cond
(
entry
):
ret
.
append
(
entry
)
elif
isinstance
(
entry
,
slice
):
helper
(
entry
.
start
)
helper
(
entry
.
stop
)
helper
(
entry
.
step
)
for
idx
in
idxs
:
helper
(
idx
)
for
idx
in
idxs
:
helper
(
idx
)
return
ret
return
ret
@staticmethod
def
convert
(
entry
,
slice_ok
=
True
):
"""
Change references to Variables into references to Types.
def
index_vars_to_types
(
entry
,
slice_ok
=
True
):
r"""Change references to `Variable`s into references to `Type`s.
The "idx_list" field is unique to each Subtensor instance.
It is not unique to each Apply node, so it should not refer to
specific Variables.
TODO: WRITEME: This method also accepts "entry" already being a Type;
when would that happen?
The `Subtensor.idx_list` field is unique to each `Subtensor` instance. It
is not unique to each `Apply` node, so it should not refer to specific
`Variable`s.
"""
if
(
isinstance
(
entry
,
(
np
.
ndarray
,
Variable
))
and
hasattr
(
entry
,
"dtype"
)
and
entry
.
dtype
==
"bool"
):
raise
AdvancedIndexingError
(
"Invalid index type or slice for Subtensor"
)
TODO WRITEME: This function also accepts an `entry` already being a `Type`;
when would that happen?
if
isinstance
(
entry
,
Variable
)
and
(
entry
.
type
in
invalid_scal_types
or
entry
.
type
in
invalid_tensor_types
):
raise
TypeError
(
"Expected an integer"
)
"""
if
(
isinstance
(
entry
,
(
np
.
ndarray
,
Variable
))
and
hasattr
(
entry
,
"dtype"
)
and
entry
.
dtype
==
"bool"
):
raise
AdvancedIndexingError
(
"Invalid index type or slice for Subtensor"
)
if
isinstance
(
entry
,
Variable
)
and
entry
.
type
in
scal_types
:
return
entry
.
type
elif
isinstance
(
entry
,
Type
)
and
entry
in
scal_types
:
return
entry
if
isinstance
(
entry
,
Variable
)
and
(
entry
.
type
in
invalid_scal_types
or
entry
.
type
in
invalid_tensor_types
)
:
raise
TypeError
(
"Expected an integer"
)
if
(
isinstance
(
entry
,
Variable
)
and
entry
.
type
in
tensor_types
and
np
.
all
(
entry
.
type
.
broadcastable
)
):
return
aes
.
get_scalar_type
(
entry
.
type
.
dtype
)
elif
(
isinstance
(
entry
,
Type
)
and
entry
in
tensor_types
and
np
.
all
(
entry
.
broadcastable
)
):
return
aes
.
get_scalar_type
(
entry
.
dtype
)
elif
slice_ok
and
isinstance
(
entry
,
slice
):
a
=
entry
.
start
b
=
entry
.
stop
c
=
entry
.
step
if
a
is
not
None
:
slice_a
=
Subtensor
.
convert
(
a
,
False
)
else
:
slice_a
=
None
if
isinstance
(
entry
,
Variable
)
and
entry
.
type
in
scal_types
:
return
entry
.
type
elif
isinstance
(
entry
,
Type
)
and
entry
in
scal_types
:
return
entry
if
b
is
not
None
and
b
!=
sys
.
maxsize
:
# The special "maxsize" case is probably not needed here,
# as slices containing maxsize are not generated by
# __getslice__ anymore.
slice_b
=
Subtensor
.
convert
(
b
,
False
)
else
:
slice_b
=
None
if
(
isinstance
(
entry
,
Variable
)
and
entry
.
type
in
tensor_types
and
np
.
all
(
entry
.
type
.
broadcastable
)
):
return
aes
.
get_scalar_type
(
entry
.
type
.
dtype
)
elif
(
isinstance
(
entry
,
Type
)
and
entry
in
tensor_types
and
np
.
all
(
entry
.
broadcastable
)
):
return
aes
.
get_scalar_type
(
entry
.
dtype
)
elif
slice_ok
and
isinstance
(
entry
,
slice
):
a
=
entry
.
start
b
=
entry
.
stop
c
=
entry
.
step
if
a
is
not
None
:
slice_a
=
index_vars_to_types
(
a
,
False
)
else
:
slice_a
=
None
if
c
is
not
None
:
slice_c
=
Subtensor
.
convert
(
c
,
False
)
else
:
slice_c
=
None
if
b
is
not
None
and
b
!=
sys
.
maxsize
:
# The special "maxsize" case is probably not needed here,
# as slices containing maxsize are not generated by
# __getslice__ anymore.
slice_b
=
index_vars_to_types
(
b
,
False
)
else
:
slice_b
=
None
return
slice
(
slice_a
,
slice_b
,
slice_c
)
elif
isinstance
(
entry
,
(
int
,
np
.
integer
)):
# Disallow the use of python scalars in idx_list
raise
TypeError
(
"Python scalar in idx_list."
"Please report this error to aesara-dev."
)
if
c
is
not
None
:
slice_c
=
index_vars_to_types
(
c
,
False
)
else
:
raise
AdvancedIndexingError
(
"Invalid index type or slice for Subtensor"
)
slice_c
=
None
def
get_constant_idx
(
self
,
inputs
,
allow_partial
=
False
,
only_process_constants
=
False
,
elemwise
=
True
):
"""
Return the idx_list with constant inputs replaced by their
python scalar equivalent.
May raise `NotScalarConstantError` if the idx contains
non-constant entries.
return
slice
(
slice_a
,
slice_b
,
slice_c
)
elif
isinstance
(
entry
,
(
int
,
np
.
integer
)):
raise
TypeError
()
else
:
raise
AdvancedIndexingError
(
"Invalid index type or slice for Subtensor"
)
If allow_partial is True, then entries that are not constant will
stay as their input variable rather than raising an exception.
None entries are always left as-is.
def
get_constant_idx
(
idx_list
,
inputs
,
allow_partial
=
False
,
only_process_constants
=
False
,
elemwise
=
True
):
r"""Return an `idx_list` with its constant inputs replaced by their Python scalar equivalents.
Parameters
----------
only_process_constants
If True, we only attempt to obtain the value of an index/slice if
it's directly constant and don't try to dig through dimshuffles,
fills, allocs, and other to figure out its value.
Examples
--------
Example usage where v, a are appropriately typed aesara variables :
>>> b = a[v, 1:3]
>>> b.owner.op.idx_list
(Scalar(int64), slice(Scalar(int64), Scalar(int64), None))
>>> b.owner.op.get_constant_idx(b.owner.inputs, allow_partial=True)
[v, slice(1, 3, None)]
>>> b.owner.op.get_constant_idx(b.owner.inputs)
NotScalarConstantError: v
May raise `NotScalarConstantError` if the indices contain non-constant entries.
"""
real_idx
=
get_idx_list
(
inputs
,
self
.
idx_list
)
If `allow_partial` is ``True``, then entries that are not constant will
stay as their input variable rather than raising an exception.
def
conv
(
val
):
if
val
is
None
:
return
None
elif
isinstance
(
val
,
slice
):
return
slice
(
conv
(
val
.
start
),
conv
(
val
.
stop
),
conv
(
val
.
step
))
else
:
try
:
return
get_scalar_constant_value
(
val
,
only_process_constants
=
only_process_constants
,
elemwise
=
elemwise
,
)
except
NotScalarConstantError
:
if
allow_partial
:
return
val
else
:
raise
``None`` entries are always left as-is.
return
list
(
map
(
conv
,
real_idx
))
Parameters
----------
only_process_constants
If ``True``, we only attempt to obtain the value of an index/slice if
it's directly constant and don't try to dig through `DimShuffle`\s,
fills, `Alloc`\s, and other to figure out its value.
def
__init__
(
self
,
idx_list
):
self
.
idx_list
=
tuple
(
map
(
self
.
convert
,
idx_list
))
Examples
--------
Example usage where `v` and `a` are appropriately typed Aesara variables :
>>> b = a[v, 1:3]
>>> b.owner.op.idx_list
(Scalar(int64), slice(Scalar(int64), Scalar(int64), None))
>>> get_constant_idx(b.owner.op.idx_list, b.owner.inputs, allow_partial=True)
[v, slice(1, 3, None)]
>>> get_constant_idx(b.owner.op.idx_list, b.owner.inputs)
NotScalarConstantError: v
@staticmethod
def
my_as_scalar
(
a
):
# Since aes.as_scalar does not know about tensor types (it would
# create a circular import) , this method converts either a
# TensorVariable or a ScalarVariable to a scalar.
if
isinstance
(
a
,
Variable
)
and
isinstance
(
a
.
type
,
TensorType
):
return
aesara
.
tensor
.
scalar_from_tensor
(
a
)
"""
real_idx
=
get_idx_list
(
inputs
,
idx_list
)
# TODO: Combine this with `as_index_literal`
def
conv
(
val
):
if
val
is
None
:
return
None
elif
isinstance
(
val
,
slice
):
return
slice
(
conv
(
val
.
start
),
conv
(
val
.
stop
),
conv
(
val
.
step
))
else
:
return
aes
.
as_scalar
(
a
)
try
:
return
get_scalar_constant_value
(
val
,
only_process_constants
=
only_process_constants
,
elemwise
=
elemwise
,
)
except
NotScalarConstantError
:
if
allow_partial
:
return
val
else
:
raise
return
list
(
map
(
conv
,
real_idx
))
def
as_nontensor_scalar
(
a
:
Variable
)
->
aes
.
ScalarVariable
:
"""Convert a value to a `Scalar` variable."""
# Since aes.as_scalar does not know about tensor types (it would
# create a circular import) , this method converts either a
# TensorVariable or a ScalarVariable to a scalar.
if
isinstance
(
a
,
Variable
)
and
isinstance
(
a
.
type
,
TensorType
):
return
aesara
.
tensor
.
scalar_from_tensor
(
a
)
else
:
return
aes
.
as_scalar
(
a
)
class
Subtensor
(
COp
):
"""Basic NumPy indexing operator."""
check_input
=
False
view_map
=
{
0
:
[
0
]}
_f16_ok
=
True
__props__
=
(
"idx_list"
,)
def
__init__
(
self
,
idx_list
):
# TODO: Provide the type of `self.idx_list`
self
.
idx_list
=
tuple
(
map
(
index_vars_to_types
,
idx_list
))
def
make_node
(
self
,
x
,
*
inputs
):
"""
...
...
@@ -688,13 +688,13 @@ class Subtensor(COp):
"""
x
=
aesara
.
tensor
.
as_tensor_variable
(
x
)
inputs
=
tuple
(
self
.
my_as
_scalar
(
a
)
for
a
in
inputs
)
inputs
=
tuple
(
as_nontensor
_scalar
(
a
)
for
a
in
inputs
)
idx_list
=
list
(
self
.
idx_list
)
if
len
(
idx_list
)
>
x
.
type
.
ndim
:
raise
IndexError
(
"too many indices for array"
)
input_types
=
Subtensor
.
collapse
(
input_types
=
get_slice_elements
(
idx_list
,
lambda
entry
:
isinstance
(
entry
,
Type
)
)
if
len
(
inputs
)
!=
len
(
input_types
):
...
...
@@ -709,9 +709,9 @@ class Subtensor(COp):
)
# infer the broadcasting pattern
padded
=
self
.
get_constant_idx
((
None
,)
+
inputs
,
allow_partial
=
True
)
+
[
s
lice
(
None
,
None
,
None
)
]
*
(
x
.
type
.
ndim
-
len
(
idx_list
))
padded
=
get_constant_idx
(
s
elf
.
idx_list
,
(
None
,)
+
inputs
,
allow_partial
=
True
)
+
[
slice
(
None
,
None
,
None
)
]
*
(
x
.
type
.
ndim
-
len
(
idx_list
))
broadcastable
=
[]
for
i
,
(
p
,
bc
)
in
enumerate
(
zip
(
padded
,
x
.
type
.
broadcastable
)):
if
isinstance
(
p
,
slice
):
...
...
@@ -1435,7 +1435,7 @@ class IncSubtensor(COp):
):
if
destroyhandler_tolerate_aliased
is
None
:
destroyhandler_tolerate_aliased
=
[]
self
.
idx_list
=
list
(
map
(
Subtensor
.
convert
,
idx_list
))
self
.
idx_list
=
list
(
map
(
index_vars_to_types
,
idx_list
))
self
.
inplace
=
inplace
if
inplace
:
self
.
destroy_map
=
{
0
:
[
0
]}
...
...
@@ -1483,13 +1483,13 @@ class IncSubtensor(COp):
f
"Trying to increment a {int(x.ndim)}-dimensional "
f
"subtensor with a {int(y.ndim)}-dimensional value."
)
inputs
=
tuple
(
map
(
Subtensor
.
my_as
_scalar
,
inputs
))
inputs
=
tuple
(
map
(
as_nontensor
_scalar
,
inputs
))
idx_list
=
list
(
self
.
idx_list
)
if
len
(
idx_list
)
>
x
.
type
.
ndim
:
raise
IndexError
(
"too many indices for array"
)
input_types
=
Subtensor
.
collapse
(
input_types
=
get_slice_elements
(
idx_list
,
lambda
entry
:
isinstance
(
entry
,
Type
)
)
if
len
(
inputs
)
!=
len
(
input_types
):
...
...
@@ -1513,17 +1513,17 @@ class IncSubtensor(COp):
x
,
y
=
inputs
[:
2
]
indices
=
list
(
reversed
(
inputs
[
2
:]))
def
convert
(
entry
):
def
_
convert
(
entry
):
if
isinstance
(
entry
,
Type
):
return
indices
.
pop
()
elif
isinstance
(
entry
,
slice
):
return
slice
(
convert
(
entry
.
start
),
convert
(
entry
.
stop
),
convert
(
entry
.
step
)
_convert
(
entry
.
start
),
_convert
(
entry
.
stop
),
_
convert
(
entry
.
step
)
)
else
:
return
entry
cdata
=
tuple
(
map
(
convert
,
self
.
idx_list
))
cdata
=
tuple
(
map
(
_
convert
,
self
.
idx_list
))
if
len
(
cdata
)
==
1
:
cdata
=
cdata
[
0
]
if
not
self
.
inplace
:
...
...
aesara/tensor/subtensor_opt.py
浏览文件 @
51de50be
...
...
@@ -67,7 +67,9 @@ from aesara.tensor.subtensor import (
as_index_constant
,
as_index_literal
,
get_canonical_form_slice
,
get_constant_idx
,
get_idx_list
,
get_slice_elements
,
inc_subtensor
,
)
from
aesara.tensor.type
import
TensorType
...
...
@@ -347,7 +349,7 @@ def local_useless_slice(fgraph, node):
# check if we removed something
if
last_slice
<
len
(
slices
):
subtens
=
Subtensor
(
slices
[:
last_slice
])
sl_ins
=
Subtensor
.
collapse
(
sl_ins
=
get_slice_elements
(
slices
[:
last_slice
],
lambda
x
:
isinstance
(
x
,
Variable
)
)
out
=
subtens
(
node
.
inputs
[
0
],
*
sl_ins
)
...
...
@@ -518,7 +520,7 @@ def local_subtensor_merge(fgraph, node):
merged_slices
=
tuple
(
as_index_constant
(
s
)
for
s
in
merged_slices
)
subtens
=
Subtensor
(
merged_slices
)
sl_ins
=
Subtensor
.
collapse
(
sl_ins
=
get_slice_elements
(
merged_slices
,
lambda
x
:
isinstance
(
x
,
Variable
)
)
# Do not call make_node for test_value
...
...
@@ -766,7 +768,9 @@ def local_subtensor_make_vector(fgraph, node):
# The index is a slice. If it's a constant slice, we can perform the
# index operation here.
try
:
const_slice
=
node
.
op
.
get_constant_idx
(
node
.
inputs
,
allow_partial
=
False
)[
0
]
const_slice
=
get_constant_idx
(
node
.
op
.
idx_list
,
node
.
inputs
,
allow_partial
=
False
)[
0
]
ret
=
make_vector_op
(
*
x
.
owner
.
inputs
[
const_slice
])
copy_stack_trace
(
node
.
outputs
,
ret
)
ret
=
patternbroadcast
(
ret
,
node
.
outputs
[
0
]
.
broadcastable
)
...
...
@@ -896,8 +900,11 @@ def local_useless_subtensor(fgraph, node):
shape_of
=
fgraph
.
shape_feature
.
shape_of
if
isinstance
(
node
.
op
,
Subtensor
):
cdata
=
node
.
op
.
get_constant_idx
(
node
.
inputs
,
allow_partial
=
True
,
only_process_constants
=
True
cdata
=
get_constant_idx
(
node
.
op
.
idx_list
,
node
.
inputs
,
allow_partial
=
True
,
only_process_constants
=
True
,
)
for
pos
,
idx
in
enumerate
(
cdata
):
if
not
isinstance
(
idx
,
slice
):
...
...
aesara/tensor/var.py
浏览文件 @
51de50be
...
...
@@ -526,8 +526,8 @@ class _tensor_py_operators:
)
# Determine if advanced indexing is needed or not. The logic is
# already in `
Subtensor.convert
`: if it succeeds, standard indexing is
# used; if it fails with
AdvancedIndexingError
, advanced indexing is
# already in `
index_vars_to_types
`: if it succeeds, standard indexing is
# used; if it fails with
`AdvancedIndexingError`
, advanced indexing is
# used
advanced
=
False
for
i
,
arg
in
enumerate
(
args
):
...
...
@@ -537,7 +537,7 @@ class _tensor_py_operators:
if
arg
is
not
np
.
newaxis
:
try
:
aet
.
subtensor
.
Subtensor
.
convert
(
arg
)
aet
.
subtensor
.
index_vars_to_types
(
arg
)
except
AdvancedIndexingError
:
if
advanced
:
break
...
...
@@ -589,7 +589,7 @@ class _tensor_py_operators:
else
:
return
aet
.
subtensor
.
Subtensor
(
args
)(
self
,
*
aet
.
subtensor
.
Subtensor
.
collapse
(
*
aet
.
subtensor
.
get_slice_elements
(
args
,
lambda
entry
:
isinstance
(
entry
,
Variable
)
),
)
...
...
tests/tensor/test_subtensor.py
浏览文件 @
51de50be
...
...
@@ -23,6 +23,7 @@ from aesara.tensor.math import sum as aet_sum
from
aesara.tensor.subtensor
import
(
AdvancedIncSubtensor
,
AdvancedIncSubtensor1
,
AdvancedIndexingError
,
AdvancedSubtensor
,
AdvancedSubtensor1
,
IncSubtensor
,
...
...
@@ -35,6 +36,7 @@ from aesara.tensor.subtensor import (
basic_shape
,
get_canonical_form_slice
,
inc_subtensor
,
index_vars_to_types
,
indexed_result_shape
,
set_subtensor
,
take
,
...
...
@@ -2558,3 +2560,16 @@ def test_pprint_IncSubtensor(indices, set_instead_of_inc, exp_res):
z
=
tensor3
(
"z"
)
y
=
inc_subtensor
(
x
[
indices
],
z
,
set_instead_of_inc
=
set_instead_of_inc
)
assert
pprint
(
y
)
==
exp_res
def
test_index_vars_to_types
():
x
=
aet
.
as_tensor_variable
(
np
.
array
([
True
,
False
]))
with
pytest
.
raises
(
AdvancedIndexingError
):
index_vars_to_types
(
x
)
with
pytest
.
raises
(
TypeError
):
index_vars_to_types
(
1
)
res
=
index_vars_to_types
(
iscalar
)
assert
isinstance
(
res
,
scal
.
Scalar
)
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