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pytensor
Commits
269903aa
提交
269903aa
authored
1月 25, 2022
作者:
Brandon T. Willard
提交者:
Brandon T. Willard
2月 22, 2022
浏览文件
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浏览文件
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电子邮件补丁
差异文件
Use TensorType.ndim instead of TensorVariable.ndim in shape operations
This change makes the respective operations work with non-`TensorVariable` classes.
上级
7bc40c67
隐藏空白字符变更
内嵌
并排
正在显示
4 个修改的文件
包含
51 行增加
和
53 行删除
+51
-53
builders.py
aesara/compile/builders.py
+2
-2
basic_opt.py
aesara/tensor/basic_opt.py
+34
-42
shape.py
aesara/tensor/shape.py
+12
-8
test_basic_opt.py
tests/tensor/test_basic_opt.py
+3
-1
没有找到文件。
aesara/compile/builders.py
浏览文件 @
269903aa
...
...
@@ -39,8 +39,8 @@ def infer_shape(outs, inputs, input_shapes):
# let it initialize itself with an empty fgraph, otherwise we will
# need to do it manually
for
inp
,
inp_shp
in
zip
(
inputs
,
input_shapes
):
if
inp_shp
is
not
None
and
len
(
inp_shp
)
!=
inp
.
ndim
:
assert
len
(
inp_shp
)
==
inp
.
ndim
if
inp_shp
is
not
None
and
len
(
inp_shp
)
!=
inp
.
type
.
ndim
:
assert
len
(
inp_shp
)
==
inp
.
type
.
ndim
shape_feature
=
ShapeFeature
()
shape_feature
.
on_attach
(
FunctionGraph
([],
[]))
...
...
aesara/tensor/basic_opt.py
浏览文件 @
269903aa
...
...
@@ -909,7 +909,7 @@ class ShapeFeature(features.Feature):
node
=
var
.
owner
# recur on inputs
for
i
in
node
.
inputs
:
if
getattr
(
i
,
"ndim"
,
None
)
>
0
:
if
getattr
(
i
.
type
,
"ndim"
,
None
)
>
0
:
self
.
get_shape
(
i
,
0
)
o_shapes
=
self
.
get_node_infer_shape
(
node
)
assert
len
(
o_shapes
)
==
len
(
node
.
outputs
)
...
...
@@ -917,12 +917,12 @@ class ShapeFeature(features.Feature):
# Only change the variables and dimensions that would introduce
# extra computation
for
new_shps
,
out
in
zip
(
o_shapes
,
node
.
outputs
):
if
not
hasattr
(
out
,
"ndim"
):
if
not
hasattr
(
out
.
type
,
"ndim"
):
continue
merged_shps
=
list
(
self
.
shape_of
[
out
])
changed
=
False
for
i
in
range
(
out
.
ndim
):
for
i
in
range
(
out
.
type
.
ndim
):
n_r
=
merged_shps
[
i
]
if
(
n_r
.
owner
...
...
@@ -951,10 +951,10 @@ class ShapeFeature(features.Feature):
def
shape_tuple
(
self
,
r
):
"""Return a tuple of symbolic shape vars for tensor variable r."""
if
not
hasattr
(
r
,
"ndim"
):
if
not
hasattr
(
r
.
type
,
"ndim"
):
# This happen for NoneConst.
return
None
return
tuple
(
[
self
.
shape_ir
(
i
,
r
)
for
i
in
range
(
r
.
ndim
)]
)
return
tuple
(
self
.
shape_ir
(
i
,
r
)
for
i
in
range
(
r
.
type
.
ndim
)
)
def
default_infer_shape
(
self
,
fgraph
,
node
,
i_shapes
):
"""Return a list of shape tuple or None for the outputs of node.
...
...
@@ -1020,7 +1020,7 @@ class ShapeFeature(features.Feature):
and
s_i
.
owner
.
inputs
[
0
]
.
owner
and
isinstance
(
s_i
.
owner
.
inputs
[
0
]
.
owner
.
op
,
Shape
)
):
assert
s_i
.
ndim
==
0
assert
s_i
.
type
.
ndim
==
0
assert
len
(
s_i
.
owner
.
op
.
idx_list
)
==
1
# The current Subtensor always put constant index in the graph.
...
...
@@ -1068,32 +1068,28 @@ class ShapeFeature(features.Feature):
if
not
isinstance
(
s
,
(
tuple
,
list
)):
raise
TypeError
(
"shapes must be tuple/list"
,
(
r
,
s
))
if
r
.
ndim
!=
len
(
s
):
if
r
.
type
.
ndim
!=
len
(
s
):
sio
=
StringIO
()
aesara
.
printing
.
debugprint
(
r
,
file
=
sio
,
print_type
=
True
)
raise
AssertionError
(
f
"Something inferred a shape with {len(s)} dimensions "
f
"for a variable with {int(r.ndim)} dimensions"
f
"for a variable with {int(r.
type.
ndim)} dimensions"
f
" for the variable:
\n
{sio.getvalue()}"
)
shape_vars
=
[]
for
i
in
range
(
r
.
ndim
):
for
i
in
range
(
r
.
type
.
ndim
):
if
hasattr
(
r
.
type
,
"broadcastable"
)
and
r
.
type
.
broadcastable
[
i
]:
shape_vars
.
append
(
self
.
lscalar_one
)
else
:
shape_vars
.
append
(
self
.
unpack
(
s
[
i
],
r
))
assert
all
(
[
not
hasattr
(
r
.
type
,
"broadcastable"
)
or
not
r
.
type
.
broadcastable
[
i
]
or
# The two following comparison are a speed optimization
# But we never timed this speed optimization!
self
.
lscalar_one
.
equals
(
shape_vars
[
i
])
or
self
.
lscalar_one
.
equals
(
extract_constant
(
shape_vars
[
i
]))
for
i
in
range
(
r
.
ndim
)
]
not
hasattr
(
r
.
type
,
"broadcastable"
)
or
not
r
.
type
.
broadcastable
[
i
]
or
# The two following comparison are a speed optimization
# But we never timed this speed optimization!
self
.
lscalar_one
.
equals
(
shape_vars
[
i
])
or
self
.
lscalar_one
.
equals
(
extract_constant
(
shape_vars
[
i
]))
for
i
in
range
(
r
.
type
.
ndim
)
)
self
.
shape_of
[
r
]
=
tuple
(
shape_vars
)
for
sv
in
shape_vars
:
...
...
@@ -1171,21 +1167,19 @@ class ShapeFeature(features.Feature):
else
:
merged_shape
.
append
(
other_shape
[
i
])
assert
all
(
[
(
not
hasattr
(
r
.
type
,
"broadcastable"
)
or
not
r
.
type
.
broadcastable
[
i
]
and
not
other_r
.
type
.
broadcastable
[
i
]
)
or
# The two following comparison are a speed optimization
# But we never timed this speed optimization!
self
.
lscalar_one
.
equals
(
merged_shape
[
i
])
or
self
.
lscalar_one
.
equals
(
extract_constant
(
merged_shape
[
i
],
only_process_constants
=
True
)
)
for
i
in
range
(
r
.
ndim
)
]
(
not
hasattr
(
r
.
type
,
"broadcastable"
)
or
not
r
.
type
.
broadcastable
[
i
]
and
not
other_r
.
type
.
broadcastable
[
i
]
)
or
# The two following comparison are a speed optimization
# But we never timed this speed optimization!
self
.
lscalar_one
.
equals
(
merged_shape
[
i
])
or
self
.
lscalar_one
.
equals
(
extract_constant
(
merged_shape
[
i
],
only_process_constants
=
True
)
)
for
i
in
range
(
r
.
type
.
ndim
)
)
self
.
shape_of
[
r
]
=
tuple
(
merged_shape
)
for
sv
in
self
.
shape_of
[
r
]:
...
...
@@ -1204,14 +1198,12 @@ class ShapeFeature(features.Feature):
else
:
new_shape
.
append
(
s_j
)
assert
all
(
[
not
hasattr
(
r
.
type
,
"broadcastable"
)
or
not
r
.
type
.
broadcastable
[
idx
]
or
# The two following comparison are a speed optimization
# But we never timed this speed optimization!
self
.
lscalar_one
.
equals
(
new_shape
[
idx
])
or
self
.
lscalar_one
.
equals
(
extract_constant
(
new_shape
[
idx
]))
for
idx
in
range
(
r
.
ndim
)
]
not
hasattr
(
r
.
type
,
"broadcastable"
)
or
not
r
.
type
.
broadcastable
[
idx
]
or
# The two following comparison are a speed optimization
# But we never timed this speed optimization!
self
.
lscalar_one
.
equals
(
new_shape
[
idx
])
or
self
.
lscalar_one
.
equals
(
extract_constant
(
new_shape
[
idx
]))
for
idx
in
range
(
r
.
type
.
ndim
)
)
self
.
shape_of
[
r
]
=
tuple
(
new_shape
)
for
sv
in
self
.
shape_of
[
r
]:
...
...
aesara/tensor/shape.py
浏览文件 @
269903aa
...
...
@@ -63,7 +63,7 @@ class Shape(COp):
x
=
at
.
as_tensor_variable
(
x
)
if
isinstance
(
x
.
type
,
TensorType
):
out_var
=
TensorType
(
"int64"
,
(
x
.
ndim
,))()
out_var
=
TensorType
(
"int64"
,
(
x
.
type
.
ndim
,))()
else
:
out_var
=
aesara
.
tensor
.
type
.
lvector
()
...
...
@@ -164,7 +164,9 @@ def shape_tuple(x: Variable) -> Tuple[Variable]:
one_at
=
aesara
.
scalar
.
ScalarConstant
(
aesara
.
scalar
.
int64
,
1
)
return
tuple
(
one_at
if
getattr
(
sh
,
"value"
,
sh
)
==
1
or
bcast
else
sh
for
sh
,
bcast
in
zip
(
shape
(
x
),
getattr
(
x
,
"broadcastable"
,
(
False
,)
*
x
.
ndim
))
for
sh
,
bcast
in
zip
(
shape
(
x
),
getattr
(
x
,
"broadcastable"
,
(
False
,)
*
x
.
type
.
ndim
)
)
)
...
...
@@ -214,9 +216,11 @@ class Shape_i(COp):
return
"
%
s{
%
i}"
%
(
self
.
__class__
.
__name__
,
self
.
i
)
def
make_node
(
self
,
x
):
if
not
isinstance
(
x
,
Variable
):
raise
TypeError
(
f
"{x} must be Variable with ndim attribute"
)
if
x
.
ndim
<=
self
.
i
:
if
not
isinstance
(
x
,
Variable
)
or
not
hasattr
(
x
.
type
,
"ndim"
):
raise
TypeError
(
f
"{x} must be `Variable` with a `Type` having an ndim attribute"
)
if
x
.
type
.
ndim
<=
self
.
i
:
raise
TypeError
(
f
"{x} has too few dimensions for Shape_i"
)
return
Apply
(
self
,
[
x
],
[
aesara
.
tensor
.
type
.
lscalar
()])
...
...
@@ -421,9 +425,9 @@ class SpecifyShape(COp):
if
any
(
s
.
dtype
not
in
aesara
.
tensor
.
type
.
integer_dtypes
for
s
in
shape
):
raise
TypeError
(
"Shape values must be integer types"
)
if
len
(
shape
)
!=
x
.
ndim
:
if
len
(
shape
)
!=
x
.
type
.
ndim
:
raise
ValueError
(
f
"Input `x` is {x.ndim}-dimensional and will never match a shape of length {len(shape)}."
f
"Input `x` is {x.
type.
ndim}-dimensional and will never match a shape of length {len(shape)}."
)
if
isinstance
(
x
.
type
,
TensorType
)
and
all
(
isinstance
(
s
,
Number
)
for
s
in
shape
):
...
...
@@ -451,7 +455,7 @@ class SpecifyShape(COp):
def
infer_shape
(
self
,
fgraph
,
node
,
shapes
):
xshape
,
sshape
=
shapes
new_shape
=
[]
for
dim
in
range
(
node
.
inputs
[
0
]
.
ndim
):
for
dim
in
range
(
node
.
inputs
[
0
]
.
type
.
ndim
):
try
:
s
=
at
.
get_scalar_constant_value
(
node
.
inputs
[
1
][
dim
])
s
=
at
.
as_tensor_variable
(
s
)
...
...
tests/tensor/test_basic_opt.py
浏览文件 @
269903aa
...
...
@@ -2987,6 +2987,8 @@ def test_local_Shape_i_of_broadcastable():
# A test for a non-`TensorType`
class
MyType
(
Type
):
ndim
=
1
def
filter
(
self
,
*
args
,
**
kwargs
):
raise
NotImplementedError
()
...
...
@@ -2994,7 +2996,7 @@ def test_local_Shape_i_of_broadcastable():
return
isinstance
(
other
,
MyType
)
and
other
.
thingy
==
self
.
thingy
class
MyVariable
(
Variable
):
ndim
=
1
pass
x
=
MyVariable
(
MyType
(),
None
,
None
)
s
=
Shape_i
(
0
)(
x
)
...
...
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