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pytensor
Commits
8483b046
提交
8483b046
authored
8月 30, 2025
作者:
ricardoV94
提交者:
Ricardo Vieira
9月 20, 2025
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差异文件
Move io_connection_pattern to graph/op.py
上级
c6dae89f
隐藏空白字符变更
内嵌
并排
正在显示
6 个修改的文件
包含
73 行增加
和
75 行删除
+73
-75
builders.py
pytensor/compile/builders.py
+1
-2
basic.py
pytensor/graph/basic.py
+0
-65
op.py
pytensor/graph/op.py
+66
-1
op.py
pytensor/scan/op.py
+1
-2
test_basic.py
tests/graph/test_basic.py
+0
-5
test_op.py
tests/graph/test_op.py
+5
-0
没有找到文件。
pytensor/compile/builders.py
浏览文件 @
8483b046
...
...
@@ -17,11 +17,10 @@ from pytensor.graph.basic import (
NominalVariable
,
Variable
,
graph_inputs
,
io_connection_pattern
,
)
from
pytensor.graph.fg
import
FunctionGraph
from
pytensor.graph.null_type
import
NullType
from
pytensor.graph.op
import
HasInnerGraph
,
Op
from
pytensor.graph.op
import
HasInnerGraph
,
Op
,
io_connection_pattern
from
pytensor.graph.replace
import
clone_replace
from
pytensor.graph.utils
import
MissingInputError
...
...
pytensor/graph/basic.py
浏览文件 @
8483b046
...
...
@@ -1633,71 +1633,6 @@ def default_node_formatter(op, argstrings):
return
f
"{op.op}({', '.join(argstrings)})"
def
io_connection_pattern
(
inputs
,
outputs
):
"""Return the connection pattern of a subgraph defined by given inputs and outputs."""
inner_nodes
=
io_toposort
(
inputs
,
outputs
)
# Initialize 'connect_pattern_by_var' by establishing each input as
# connected only to itself
connect_pattern_by_var
=
{}
nb_inputs
=
len
(
inputs
)
for
i
in
range
(
nb_inputs
):
input
=
inputs
[
i
]
inp_connection_pattern
=
[
i
==
j
for
j
in
range
(
nb_inputs
)]
connect_pattern_by_var
[
input
]
=
inp_connection_pattern
# Iterate through the nodes used to produce the outputs from the
# inputs and, for every node, infer their connection pattern to
# every input from the connection patterns of their parents.
for
n
in
inner_nodes
:
# Get the connection pattern of the inner node's op. If the op
# does not define a connection_pattern method, assume that
# every node output is connected to every node input
try
:
op_connection_pattern
=
n
.
op
.
connection_pattern
(
n
)
except
AttributeError
:
op_connection_pattern
=
[[
True
]
*
len
(
n
.
outputs
)]
*
len
(
n
.
inputs
)
# For every output of the inner node, figure out which inputs it
# is connected to by combining the connection pattern of the inner
# node and the connection patterns of the inner node's inputs.
for
out_idx
in
range
(
len
(
n
.
outputs
)):
out
=
n
.
outputs
[
out_idx
]
out_connection_pattern
=
[
False
]
*
nb_inputs
for
inp_idx
in
range
(
len
(
n
.
inputs
)):
inp
=
n
.
inputs
[
inp_idx
]
if
inp
in
connect_pattern_by_var
:
inp_connection_pattern
=
connect_pattern_by_var
[
inp
]
# If the node output is connected to the node input, it
# means it is connected to every inner input that the
# node inputs is connected to
if
op_connection_pattern
[
inp_idx
][
out_idx
]:
out_connection_pattern
=
[
out_connection_pattern
[
i
]
or
inp_connection_pattern
[
i
]
for
i
in
range
(
nb_inputs
)
]
# Store the connection pattern of the node output
connect_pattern_by_var
[
out
]
=
out_connection_pattern
# Obtain the global connection pattern by combining the
# connection patterns of the individual outputs
global_connection_pattern
=
[[]
for
o
in
range
(
len
(
inputs
))]
for
out
in
outputs
:
out_connection_pattern
=
connect_pattern_by_var
.
get
(
out
)
if
out_connection_pattern
is
None
:
# the output is completely isolated from inputs
out_connection_pattern
=
[
False
]
*
len
(
inputs
)
for
i
in
range
(
len
(
inputs
)):
global_connection_pattern
[
i
]
.
append
(
out_connection_pattern
[
i
])
return
global_connection_pattern
def
op_as_string
(
i
,
op
,
leaf_formatter
=
default_leaf_formatter
,
node_formatter
=
default_node_formatter
):
...
...
pytensor/graph/op.py
浏览文件 @
8483b046
...
...
@@ -13,7 +13,7 @@ from typing import (
import
pytensor
from
pytensor.configdefaults
import
config
from
pytensor.graph.basic
import
Apply
,
Variable
from
pytensor.graph.basic
import
Apply
,
Variable
,
io_toposort
from
pytensor.graph.utils
import
(
MetaObject
,
TestValueError
,
...
...
@@ -753,3 +753,68 @@ def get_test_values(*args: Variable) -> Any | list[Any]:
return
rval
return
[
tuple
(
rval
)]
def
io_connection_pattern
(
inputs
,
outputs
):
"""Return the connection pattern of a subgraph defined by given inputs and outputs."""
inner_nodes
=
io_toposort
(
inputs
,
outputs
)
# Initialize 'connect_pattern_by_var' by establishing each input as
# connected only to itself
connect_pattern_by_var
=
{}
nb_inputs
=
len
(
inputs
)
for
i
in
range
(
nb_inputs
):
input
=
inputs
[
i
]
inp_connection_pattern
=
[
i
==
j
for
j
in
range
(
nb_inputs
)]
connect_pattern_by_var
[
input
]
=
inp_connection_pattern
# Iterate through the nodes used to produce the outputs from the
# inputs and, for every node, infer their connection pattern to
# every input from the connection patterns of their parents.
for
n
in
inner_nodes
:
# Get the connection pattern of the inner node's op. If the op
# does not define a connection_pattern method, assume that
# every node output is connected to every node input
try
:
op_connection_pattern
=
n
.
op
.
connection_pattern
(
n
)
except
AttributeError
:
op_connection_pattern
=
[[
True
]
*
len
(
n
.
outputs
)]
*
len
(
n
.
inputs
)
# For every output of the inner node, figure out which inputs it
# is connected to by combining the connection pattern of the inner
# node and the connection patterns of the inner node's inputs.
for
out_idx
in
range
(
len
(
n
.
outputs
)):
out
=
n
.
outputs
[
out_idx
]
out_connection_pattern
=
[
False
]
*
nb_inputs
for
inp_idx
in
range
(
len
(
n
.
inputs
)):
inp
=
n
.
inputs
[
inp_idx
]
if
inp
in
connect_pattern_by_var
:
inp_connection_pattern
=
connect_pattern_by_var
[
inp
]
# If the node output is connected to the node input, it
# means it is connected to every inner input that the
# node inputs is connected to
if
op_connection_pattern
[
inp_idx
][
out_idx
]:
out_connection_pattern
=
[
out_connection_pattern
[
i
]
or
inp_connection_pattern
[
i
]
for
i
in
range
(
nb_inputs
)
]
# Store the connection pattern of the node output
connect_pattern_by_var
[
out
]
=
out_connection_pattern
# Obtain the global connection pattern by combining the
# connection patterns of the individual outputs
global_connection_pattern
=
[[]
for
o
in
range
(
len
(
inputs
))]
for
out
in
outputs
:
out_connection_pattern
=
connect_pattern_by_var
.
get
(
out
)
if
out_connection_pattern
is
None
:
# the output is completely isolated from inputs
out_connection_pattern
=
[
False
]
*
len
(
inputs
)
for
i
in
range
(
len
(
inputs
)):
global_connection_pattern
[
i
]
.
append
(
out_connection_pattern
[
i
])
return
global_connection_pattern
pytensor/scan/op.py
浏览文件 @
8483b046
...
...
@@ -68,10 +68,9 @@ from pytensor.graph.basic import (
Variable
,
equal_computations
,
graph_inputs
,
io_connection_pattern
,
)
from
pytensor.graph.features
import
NoOutputFromInplace
from
pytensor.graph.op
import
HasInnerGraph
,
Op
from
pytensor.graph.op
import
HasInnerGraph
,
Op
,
io_connection_pattern
from
pytensor.graph.replace
import
clone_replace
from
pytensor.graph.type
import
HasShape
from
pytensor.graph.utils
import
InconsistencyError
,
MissingInputError
...
...
tests/graph/test_basic.py
浏览文件 @
8483b046
...
...
@@ -584,11 +584,6 @@ def test_apply_depends_on():
assert
apply_depends_on
(
o3
.
owner
,
[
o1
.
owner
,
o2
.
owner
])
@pytest.mark.xfail
(
reason
=
"Not implemented"
)
def
test_io_connection_pattern
():
raise
AssertionError
()
def
test_get_var_by_name
():
r1
,
r2
,
r3
=
MyVariable
(
1
),
MyVariable
(
2
),
MyVariable
(
3
)
o1
=
MyOp
(
r1
,
r2
)
...
...
tests/graph/test_op.py
浏览文件 @
8483b046
...
...
@@ -275,3 +275,8 @@ def test_call_name(multi_output):
res_nameless
=
single_op
(
x
)
assert
res_nameless
.
name
is
None
@pytest.mark.xfail
(
reason
=
"Not implemented"
)
def
test_io_connection_pattern
():
raise
AssertionError
()
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