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testgroup
pytensor
Commits
c9a6f69e
提交
c9a6f69e
authored
11月 10, 2021
作者:
Brandon T. Willard
提交者:
Brandon T. Willard
11月 15, 2021
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Implement basic rewrites for Unique
上级
b48b803d
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
468 行增加
和
2 行删除
+468
-2
basic_opt.py
aesara/tensor/basic_opt.py
+158
-1
test_basic_opt.py
tests/tensor/test_basic_opt.py
+310
-1
没有找到文件。
aesara/tensor/basic_opt.py
浏览文件 @
c9a6f69e
...
@@ -71,7 +71,7 @@ from aesara.tensor.basic import (
...
@@ -71,7 +71,7 @@ from aesara.tensor.basic import (
)
)
from
aesara.tensor.elemwise
import
DimShuffle
,
Elemwise
from
aesara.tensor.elemwise
import
DimShuffle
,
Elemwise
from
aesara.tensor.exceptions
import
NotScalarConstantError
,
ShapeError
from
aesara.tensor.exceptions
import
NotScalarConstantError
,
ShapeError
from
aesara.tensor.extra_ops
import
broadcast_shape
from
aesara.tensor.extra_ops
import
BroadcastTo
,
Repeat
,
Unique
,
broadcast_shape
from
aesara.tensor.math
import
all
as
at_all
from
aesara.tensor.math
import
all
as
at_all
from
aesara.tensor.math
import
eq
from
aesara.tensor.math
import
eq
from
aesara.tensor.shape
import
Reshape
,
Shape
,
Shape_i
,
SpecifyShape
,
shape_padleft
from
aesara.tensor.shape
import
Reshape
,
Shape
,
Shape_i
,
SpecifyShape
,
shape_padleft
...
@@ -3495,3 +3495,160 @@ def local_Shape_i_of_broadcastable(fgraph, node):
...
@@ -3495,3 +3495,160 @@ def local_Shape_i_of_broadcastable(fgraph, node):
if
shape_arg
.
broadcastable
[
node
.
op
.
i
]:
if
shape_arg
.
broadcastable
[
node
.
op
.
i
]:
return
[
as_tensor_variable
(
1
,
dtype
=
np
.
int64
)]
return
[
as_tensor_variable
(
1
,
dtype
=
np
.
int64
)]
@register_useless
@register_canonicalize
@local_optimizer
([
Unique
])
def
local_Unique_scalar
(
fgraph
,
node
):
"""Convert ``unique(x)`` to ``x`` when ``x`` is a scalar."""
if
not
isinstance
(
node
.
op
,
Unique
):
return
False
if
node
.
op
.
return_index
or
node
.
op
.
return_inverse
or
node
.
op
.
return_counts
:
return
False
uniqued_var
=
node
.
inputs
[
0
]
if
uniqued_var
.
ndim
!=
0
:
return
False
old_out
=
node
.
outputs
[
0
]
res
=
as_tensor_variable
(
uniqued_var
,
ndim
=
old_out
.
ndim
,
dtype
=
old_out
.
dtype
)
return
[
res
]
@register_useless
@register_canonicalize
@local_optimizer
([
Unique
])
def
local_Unique_Alloc_lift
(
fgraph
,
node
):
"""Convert ``unique(alloc(x, ...), axis=None)`` to ``unique(x, axis=None)``.
This isn't really so much a lift as a "reduction/consumption".
"""
if
not
isinstance
(
node
.
op
,
Unique
):
return
False
if
(
node
.
op
.
return_index
or
node
.
op
.
return_inverse
or
node
.
op
.
return_counts
or
node
.
op
.
axis
is
not
None
):
return
False
alloc_var
=
node
.
inputs
[
0
]
if
not
(
alloc_var
.
owner
and
isinstance
(
alloc_var
.
owner
.
op
,
Alloc
)):
return
False
alloced_var
,
*
alloc_shape
=
alloc_var
.
owner
.
inputs
new_unique
,
*
_
=
node
.
op
.
make_node
(
alloced_var
)
.
outputs
old_out
=
node
.
outputs
[
0
]
new_x
=
as_tensor_variable
(
new_unique
,
ndim
=
old_out
.
ndim
,
dtype
=
old_out
.
dtype
)
return
[
new_x
]
@register_useless
@register_canonicalize
@local_optimizer
([
Unique
])
def
local_Unique_BroadcastTo_lift
(
fgraph
,
node
):
"""Convert ``unique(broadcast_to(x, ...), axis=None)`` to ``unique(x, axis=None)``.
This isn't really so much a lift as a "reduction/consumption".
"""
if
not
isinstance
(
node
.
op
,
Unique
):
return
False
if
(
node
.
op
.
return_index
or
node
.
op
.
return_inverse
or
node
.
op
.
return_counts
or
node
.
op
.
axis
is
not
None
):
return
False
bcast_var
=
node
.
inputs
[
0
]
if
not
(
bcast_var
.
owner
and
isinstance
(
bcast_var
.
owner
.
op
,
BroadcastTo
)):
return
False
bcasted_var
,
*
bcast_shape
=
bcast_var
.
owner
.
inputs
new_unique
,
*
_
=
node
.
op
.
make_node
(
bcasted_var
)
.
outputs
old_out
=
node
.
outputs
[
0
]
new_x
=
as_tensor_variable
(
new_unique
,
ndim
=
old_out
.
ndim
,
dtype
=
old_out
.
dtype
)
return
[
new_x
]
@register_useless
@register_canonicalize
@local_optimizer
([
Unique
])
def
local_Unique_Repeat_lift
(
fgraph
,
node
):
"""Convert ``unique(repeat(x, ...), axis=None)`` to ``unique(x, axis=None)``.
This isn't really so much a lift as a "reduction/consumption".
"""
if
not
isinstance
(
node
.
op
,
Unique
):
return
False
if
(
node
.
op
.
return_index
or
node
.
op
.
return_inverse
or
node
.
op
.
return_counts
or
node
.
op
.
axis
is
not
None
):
return
False
repeat_var
=
node
.
inputs
[
0
]
if
not
(
repeat_var
.
owner
and
isinstance
(
repeat_var
.
owner
.
op
,
Repeat
)):
return
False
repeated_var
,
*
repeat_shape
=
repeat_var
.
owner
.
inputs
new_unique
,
*
_
=
node
.
op
.
make_node
(
repeated_var
)
.
outputs
old_out
=
node
.
outputs
[
0
]
new_x
=
as_tensor_variable
(
new_unique
,
ndim
=
old_out
.
ndim
,
dtype
=
old_out
.
dtype
)
return
[
new_x
]
@register_useless
@register_canonicalize
@local_optimizer
([
Unique
])
def
local_Unique_second
(
fgraph
,
node
):
"""Convert ``unique(second(x, ...), axis=None)`` to ``second(x, axis=None)``.
This isn't really so much a lift as a "reduction/consumption".
"""
if
not
isinstance
(
node
.
op
,
Unique
):
return
False
if
(
node
.
op
.
return_index
or
node
.
op
.
return_inverse
or
node
.
op
.
return_counts
or
node
.
op
.
axis
is
not
None
):
return
False
second_var
=
node
.
inputs
[
0
]
if
not
(
second_var
.
owner
and
isinstance
(
second_var
.
owner
.
op
,
Elemwise
)
and
isinstance
(
second_var
.
owner
.
op
.
scalar_op
,
aes
.
Second
)
):
return
False
shape_var
,
seconded_var
=
second_var
.
owner
.
inputs
new_unique
,
*
_
=
node
.
op
.
make_node
(
seconded_var
)
.
outputs
old_out
=
node
.
outputs
[
0
]
new_x
=
as_tensor_variable
(
new_unique
,
ndim
=
old_out
.
ndim
,
dtype
=
old_out
.
dtype
)
return
[
new_x
]
tests/tensor/test_basic_opt.py
浏览文件 @
c9a6f69e
...
@@ -11,7 +11,7 @@ from aesara.assert_op import Assert
...
@@ -11,7 +11,7 @@ from aesara.assert_op import Assert
from
aesara.compile
import
optdb
from
aesara.compile
import
optdb
from
aesara.compile.debugmode
import
DebugMode
from
aesara.compile.debugmode
import
DebugMode
from
aesara.compile.function
import
function
from
aesara.compile.function
import
function
from
aesara.compile.mode
import
Mode
,
get_default_mode
,
get_mode
from
aesara.compile.mode
import
OPT_NONE
,
Mode
,
get_default_mode
,
get_mode
from
aesara.compile.ops
import
DeepCopyOp
,
deep_copy_op
from
aesara.compile.ops
import
DeepCopyOp
,
deep_copy_op
from
aesara.configdefaults
import
config
from
aesara.configdefaults
import
config
from
aesara.graph.basic
import
Apply
,
Constant
,
Variable
from
aesara.graph.basic
import
Apply
,
Constant
,
Variable
...
@@ -30,8 +30,10 @@ from aesara.tensor.basic import (
...
@@ -30,8 +30,10 @@ from aesara.tensor.basic import (
ScalarFromTensor
,
ScalarFromTensor
,
Split
,
Split
,
TensorFromScalar
,
TensorFromScalar
,
alloc
,
as_tensor_variable
,
as_tensor_variable
,
join
,
join
,
second
,
tile
,
tile
,
)
)
from
aesara.tensor.basic_opt
import
(
from
aesara.tensor.basic_opt
import
(
...
@@ -49,6 +51,14 @@ from aesara.tensor.basic_opt import (
...
@@ -49,6 +51,14 @@ from aesara.tensor.basic_opt import (
register_specialize
,
register_specialize
,
)
)
from
aesara.tensor.elemwise
import
DimShuffle
,
Elemwise
from
aesara.tensor.elemwise
import
DimShuffle
,
Elemwise
from
aesara.tensor.extra_ops
import
(
BroadcastTo
,
Repeat
,
Unique
,
broadcast_to
,
repeat
,
unique
,
)
from
aesara.tensor.math
import
(
from
aesara.tensor.math
import
(
add
,
add
,
bitwise_and
,
bitwise_and
,
...
@@ -3293,3 +3303,302 @@ def test_apply_rebroadcast_opt():
...
@@ -3293,3 +3303,302 @@ def test_apply_rebroadcast_opt():
res
=
apply_rebroadcast_opt
(
rval
)
res
=
apply_rebroadcast_opt
(
rval
)
assert
res
is
rval
assert
res
is
rval
@pytest.mark.parametrize
(
"return_index"
,
[
False
])
@pytest.mark.parametrize
(
"return_counts"
,
[
False
])
@pytest.mark.parametrize
(
"return_inverse"
,
[
False
])
def
test_local_Unique_scalar
(
return_index
,
return_counts
,
return_inverse
):
x
=
dscalar
()
y
=
unique
(
x
,
return_index
=
return_index
,
return_counts
=
return_counts
,
return_inverse
=
return_inverse
,
axis
=
None
,
)
y_fg
=
FunctionGraph
(
outputs
=
[
y
],
copy_inputs
=
False
)
y_opt_fg
=
optimize_graph
(
y_fg
,
clone
=
False
,
include
=
[
"canonicalize"
,
"local_Unique_scalar"
]
)
y_opt
=
y_opt_fg
.
outputs
[
0
]
y_opt_start
=
y_opt
if
isinstance
(
y_opt
.
owner
.
op
,
Rebroadcast
):
y_opt_start
=
y_opt
.
owner
.
inputs
[
0
]
assert
isinstance
(
y_opt_start
.
owner
.
op
,
DimShuffle
)
assert
y_opt_start
.
owner
.
inputs
[
0
]
==
x
default_mode
=
get_default_mode
()
opt_mode
=
default_mode
.
excluding
(
"local_Unique_scalar"
)
y_fn
=
function
([
x
],
[
y
,
y_opt
],
mode
=
opt_mode
)
x_val
=
np
.
array
(
-
10.0
,
dtype
=
np
.
float64
)
y_exp_val
,
y_val
=
y_fn
(
x_val
)
assert
np
.
array_equal
(
y_exp_val
,
y_val
)
@pytest.mark.parametrize
(
"x_val, axis, new_shape"
,
[
(
np
.
array
(
-
10
,
dtype
=
np
.
int64
),
None
,
()),
(
np
.
array
(
-
10
,
dtype
=
np
.
int64
),
None
,
(
2
,
3
)),
(
np
.
array
([[
-
10
,
-
3
],
[
-
10
,
2
],
[
-
10
,
2
]],
dtype
=
np
.
int64
),
None
,
(
2
,
3
,
2
)),
],
)
@pytest.mark.parametrize
(
"return_index"
,
[
False
])
@pytest.mark.parametrize
(
"return_counts"
,
[
False
])
@pytest.mark.parametrize
(
"return_inverse"
,
[
False
])
def
test_local_Unique_Alloc_lift
(
x_val
,
axis
,
new_shape
,
return_index
,
return_counts
,
return_inverse
):
x
=
as_tensor_variable
(
x_val
)
.
type
()
y
=
unique
(
alloc
(
x
,
*
new_shape
),
return_index
=
return_index
,
return_counts
=
return_counts
,
return_inverse
=
return_inverse
,
axis
=
axis
,
)
if
isinstance
(
y
,
list
):
y
,
*
_
=
y
# This approach allows us to directly confirm that `x` is in the result.
y_fg
=
FunctionGraph
(
outputs
=
[
y
],
copy_inputs
=
False
)
y_opt_fg
=
optimize_graph
(
y_fg
,
clone
=
False
,
include
=
[
"canonicalize"
,
"local_Unique_Alloc_lift"
],
exclude
=
[
"local_Unique_scalar"
],
)
y_opt
=
y_opt_fg
.
outputs
[
0
]
y_opt_start
=
y_opt
# Ignore any initial `Rebroadcast`s (they serve to
# make the replacement match the original type)
if
isinstance
(
y_opt
.
owner
.
op
,
Rebroadcast
):
y_opt_start
=
y_opt
.
owner
.
inputs
[
0
]
assert
isinstance
(
y_opt_start
.
owner
.
op
,
Unique
)
assert
y_opt_start
.
owner
.
inputs
[
0
]
==
x
assert
not
any
(
isinstance
(
node
.
op
,
Alloc
)
for
node
in
y_opt_fg
.
apply_nodes
)
default_mode
=
get_default_mode
()
# The optimization has already been applied to `y_opt`, so we can--and
# should--exclude it from the compilation of both our reference, `y`, and
# the optimized result, `y_opt`.
# The remaining exclusions simply allow us to perform the check below that
# makes sure the original `Alloc` is present in our reference (sub)graph.
opt_mode
=
default_mode
.
excluding
(
"local_useless_alloc"
,
"local_canonicalize_alloc"
,
"local_Unique_Alloc_lift"
)
y_fn
=
function
([
x
],
[
y
,
y_opt
],
mode
=
opt_mode
)
# Make sure that the original `Alloc` is used to compute the reference `y`
# result
assert
any
(
isinstance
(
node
.
op
,
Alloc
)
for
node
in
y_fn
.
maker
.
fgraph
.
apply_nodes
)
y_exp_val
,
y_val
=
y_fn
(
x_val
)
assert
np
.
array_equal
(
y_exp_val
,
y_val
)
@pytest.mark.parametrize
(
"x_val, axis, new_shape"
,
[
(
np
.
array
(
-
10
,
dtype
=
np
.
int64
),
None
,
()),
(
np
.
array
(
-
10
,
dtype
=
np
.
int64
),
None
,
(
2
,
3
)),
(
np
.
array
([[
-
10
,
-
3
],
[
-
10
,
2
],
[
-
10
,
2
]],
dtype
=
np
.
int64
),
None
,
(
2
,
3
,
2
)),
],
)
@pytest.mark.parametrize
(
"return_index"
,
[
False
])
@pytest.mark.parametrize
(
"return_counts"
,
[
False
])
@pytest.mark.parametrize
(
"return_inverse"
,
[
False
])
def
test_local_Unique_BroadcastTo
(
x_val
,
axis
,
new_shape
,
return_index
,
return_counts
,
return_inverse
):
x
=
as_tensor_variable
(
x_val
)
.
type
()
y
=
unique
(
broadcast_to
(
x
,
tuple
(
new_shape
)),
return_index
=
return_index
,
return_counts
=
return_counts
,
return_inverse
=
return_inverse
,
axis
=
axis
,
)
if
isinstance
(
y
,
list
):
y
,
*
_
=
y
# This approach allows us to directly confirm that `x` is in the result.
y_fg
=
FunctionGraph
(
outputs
=
[
y
],
copy_inputs
=
False
)
y_opt_fg
=
optimize_graph
(
y_fg
,
clone
=
False
,
include
=
[
"canonicalize"
,
"local_Unique_BroadcastTo_lift"
],
exclude
=
[
"local_Unique_scalar"
],
)
y_opt
=
y_opt_fg
.
outputs
[
0
]
y_opt_start
=
y_opt
# Ignore any initial `Rebroadcast`s (they serve to
# make the replacement match the original type)
if
isinstance
(
y_opt
.
owner
.
op
,
Rebroadcast
):
y_opt_start
=
y_opt
.
owner
.
inputs
[
0
]
assert
isinstance
(
y_opt_start
.
owner
.
op
,
Unique
)
assert
y_opt_start
.
owner
.
inputs
[
0
]
==
x
assert
not
any
(
isinstance
(
node
.
op
,
BroadcastTo
)
for
node
in
y_opt_fg
.
apply_nodes
)
default_mode
=
get_default_mode
()
# The optimization has already been applied to `y_opt`, so we can--and
# should--exclude it from the compilation of both our reference, `y`, and
# the optimized result, `y_opt`.
opt_mode
=
default_mode
.
excluding
(
"local_Unique_BroadcastTo_lift"
)
y_fn
=
function
([
x
],
[
y
,
y_opt
],
mode
=
opt_mode
)
# Make sure that the original `BroadcastTo` is used to compute the
# reference `y` result
assert
any
(
isinstance
(
node
.
op
,
BroadcastTo
)
for
node
in
y_fn
.
maker
.
fgraph
.
apply_nodes
)
y_exp_val
,
y_val
=
y_fn
(
x_val
)
assert
np
.
array_equal
(
y_exp_val
,
y_val
)
@pytest.mark.parametrize
(
"x_val, unique_axis, repeats, repeat_axis"
,
[
(
np
.
array
([[
-
10
,
-
3
],
[
-
10
,
2
]],
dtype
=
np
.
int64
),
None
,
(
1
,
2
),
0
),
],
)
@pytest.mark.parametrize
(
"return_index"
,
[
False
])
@pytest.mark.parametrize
(
"return_counts"
,
[
False
])
@pytest.mark.parametrize
(
"return_inverse"
,
[
False
])
def
test_local_Unique_Repeat
(
x_val
,
unique_axis
,
repeats
,
repeat_axis
,
return_index
,
return_counts
,
return_inverse
,
):
x
=
as_tensor_variable
(
x_val
)
.
type
()
y
=
unique
(
repeat
(
x
,
tuple
(
repeats
),
axis
=
repeat_axis
),
return_index
=
return_index
,
return_counts
=
return_counts
,
return_inverse
=
return_inverse
,
axis
=
unique_axis
,
)
if
isinstance
(
y
,
list
):
y
,
*
_
=
y
# This approach allows us to directly confirm that `x` is in the result.
y_fg
=
FunctionGraph
(
outputs
=
[
y
],
copy_inputs
=
False
)
y_opt_fg
=
optimize_graph
(
y_fg
,
clone
=
False
,
include
=
[
"canonicalize"
,
"local_Unique_Repeat_lift"
],
exclude
=
[
"local_Unique_scalar"
],
)
y_opt
=
y_opt_fg
.
outputs
[
0
]
y_opt_start
=
y_opt
# Ignore any initial `Rebroadcast`s (they serve to
# make the replacement match the original type)
if
isinstance
(
y_opt
.
owner
.
op
,
Rebroadcast
):
y_opt_start
=
y_opt
.
owner
.
inputs
[
0
]
assert
isinstance
(
y_opt_start
.
owner
.
op
,
Unique
)
assert
y_opt_start
.
owner
.
inputs
[
0
]
==
x
assert
not
any
(
isinstance
(
node
.
op
,
Repeat
)
for
node
in
y_opt_fg
.
apply_nodes
)
default_mode
=
get_default_mode
()
# The optimization has already been applied to `y_opt`, so we can--and
# should--exclude it from the compilation of both our reference, `y`, and
# the optimized result, `y_opt`.
opt_mode
=
default_mode
.
excluding
(
"local_Unique_Repeat_lift"
)
y_fn
=
function
([
x
],
[
y
,
y_opt
],
mode
=
opt_mode
)
# Make sure that the original `BroadcastTo` is used to compute the
# reference `y` result
assert
any
(
isinstance
(
node
.
op
,
Repeat
)
for
node
in
y_fn
.
maker
.
fgraph
.
apply_nodes
)
y_exp_val
,
y_val
=
y_fn
(
x_val
)
assert
np
.
array_equal
(
y_exp_val
,
y_val
)
@pytest.mark.parametrize
(
"x_val, unique_axis, new_shape"
,
[
(
np
.
array
(
-
10
,
dtype
=
np
.
int64
),
None
,
()),
(
np
.
array
(
-
10
,
dtype
=
np
.
int64
),
None
,
(
2
,
3
)),
(
np
.
array
([[
-
10
,
-
3
],
[
-
10
,
2
],
[
-
10
,
2
]],
dtype
=
np
.
int64
),
None
,
(
2
,
3
,
2
)),
],
)
@pytest.mark.parametrize
(
"return_index"
,
[
False
])
@pytest.mark.parametrize
(
"return_counts"
,
[
False
])
@pytest.mark.parametrize
(
"return_inverse"
,
[
False
])
def
test_local_Unique_second
(
x_val
,
unique_axis
,
new_shape
,
return_index
,
return_counts
,
return_inverse
):
x
=
as_tensor_variable
(
x_val
)
.
type
()
a
=
np
.
zeros
(
tuple
(
new_shape
),
dtype
=
x
.
dtype
)
y
=
unique
(
second
(
a
,
x
),
return_index
=
return_index
,
return_counts
=
return_counts
,
return_inverse
=
return_inverse
,
axis
=
unique_axis
,
)
if
isinstance
(
y
,
list
):
y
,
*
_
=
y
# This approach allows us to directly confirm that `x` is in the result.
y_fg
=
FunctionGraph
(
outputs
=
[
y
],
copy_inputs
=
False
)
y_opt_fg
=
optimize_graph
(
y_fg
,
clone
=
False
,
include
=
[
"canonicalize"
,
"local_Unique_second_lift"
],
exclude
=
[
"local_Unique_scalar"
,
"topo_constant_folding"
],
)
y_opt
=
y_opt_fg
.
outputs
[
0
]
y_opt_start
=
y_opt
# Ignore any initial `Rebroadcast`s (they serve to
# make the replacement match the original type)
if
y_opt
.
owner
and
isinstance
(
y_opt
.
owner
.
op
,
Rebroadcast
):
y_opt_start
=
y_opt
.
owner
.
inputs
[
0
]
assert
isinstance
(
y_opt_start
.
owner
.
op
,
Unique
)
y_opt_start
=
y_opt_start
.
owner
.
inputs
[
0
]
if
y_opt_start
.
owner
and
isinstance
(
y_opt_start
.
owner
.
op
,
DimShuffle
):
y_opt_start
=
y_opt_start
.
owner
.
inputs
[
0
]
assert
y_opt_start
==
x
assert
not
any
(
isinstance
(
node
.
op
.
scalar_op
,
aes
.
Second
)
for
node
in
y_opt_fg
.
apply_nodes
if
isinstance
(
node
.
op
,
Elemwise
)
)
# The optimization has already been applied to `y_opt`, so we can--and
# should--exclude it from the compilation of both our reference, `y`, and
# the optimized result, `y_opt`.
y_fn
=
function
([
x
],
[
y
,
y_opt
],
mode
=
Mode
(
optimizer
=
OPT_NONE
))
# Make sure that the original `BroadcastTo` is used to compute the
# reference `y` result
assert
any
(
isinstance
(
node
.
op
.
scalar_op
,
aes
.
Second
)
for
node
in
y_fn
.
maker
.
fgraph
.
apply_nodes
if
isinstance
(
node
.
op
,
Elemwise
)
)
y_exp_val
,
y_val
=
y_fn
(
x_val
)
assert
np
.
array_equal
(
y_exp_val
,
y_val
)
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