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testgroup
pytensor
Commits
a09fbf2a
提交
a09fbf2a
authored
8月 21, 2012
作者:
Ian Goodfellow
浏览文件
操作
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差异文件
Merge remote-tracking branch 'origin/unimp_undef_grad' into unimp_undef_grad
Conflicts: theano/gradient.py
上级
82db3cfa
848b62bd
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
153 行增加
和
169 行删除
+153
-169
function_module.py
theano/compile/function_module.py
+23
-4
__init__.py
theano/gof/__init__.py
+1
-0
fg.py
theano/gof/fg.py
+3
-41
op.py
theano/gof/op.py
+57
-0
toolbox.py
theano/gof/toolbox.py
+61
-5
gradient.py
theano/gradient.py
+8
-119
没有找到文件。
theano/compile/function_module.py
浏览文件 @
a09fbf2a
...
@@ -15,7 +15,6 @@ import numpy
...
@@ -15,7 +15,6 @@ import numpy
import
theano
import
theano
from
theano
import
gof
from
theano
import
gof
from
theano.gof.python25
import
partial
from
theano.gof.python25
import
partial
from
theano.gradient
import
check_for_bad_grad
import
mode
as
mode_module
import
mode
as
mode_module
from
io
import
In
,
SymbolicInput
,
SymbolicInputKit
,
SymbolicOutput
from
io
import
In
,
SymbolicInput
,
SymbolicInputKit
,
SymbolicOutput
...
@@ -144,9 +143,31 @@ def std_fgraph(input_specs, output_specs, accept_inplace = False):
...
@@ -144,9 +143,31 @@ def std_fgraph(input_specs, output_specs, accept_inplace = False):
fgraph
.
extend
(
Supervisor
(
input
for
spec
,
input
in
zip
(
input_specs
,
inputs
)
if
not
(
spec
.
mutable
or
(
hasattr
(
fgraph
,
'destroyers'
)
and
fgraph
.
destroyers
(
input
)))))
fgraph
.
extend
(
Supervisor
(
input
for
spec
,
input
in
zip
(
input_specs
,
inputs
)
if
not
(
spec
.
mutable
or
(
hasattr
(
fgraph
,
'destroyers'
)
and
fgraph
.
destroyers
(
input
)))))
# If named nodes are replaced, keep the name
# If named nodes are replaced, keep the name
fgraph
.
extend
(
gof
.
toolbox
.
PreserveNames
())
for
feature
in
std_fgraph
.
features
:
fgraph
.
extend
(
feature
())
return
fgraph
,
map
(
SymbolicOutput
,
updates
)
return
fgraph
,
map
(
SymbolicOutput
,
updates
)
std_fgraph
.
features
=
[
gof
.
toolbox
.
PreserveNames
]
class
UncomputableFeature
(
gof
.
Feature
):
"""A feature that ensures the graph never contains any
uncomputable nodes. This check must be made at compile time
rather than runtime in order to make sure that NaN nodes are
not optimized out. It must be done as a Feature so that
the fgraph will continually check that optimizations have
not introduce any uncomputable nodes."""
def
on_attach
(
self
,
fgraph
):
for
node
in
fgraph
.
nodes
:
return
self
.
on_import
(
fgraph
,
node
)
def
on_import
(
self
,
fgraph
,
node
):
gof
.
op
.
raise_if_uncomputable
(
node
)
std_fgraph
.
features
.
append
(
UncomputableFeature
)
class
AliasedMemoryError
(
Exception
):
class
AliasedMemoryError
(
Exception
):
"""Memory is aliased that should not be"""
"""Memory is aliased that should not be"""
pass
pass
...
@@ -1337,8 +1358,6 @@ def orig_function(inputs, outputs, mode=None, accept_inplace=False,
...
@@ -1337,8 +1358,6 @@ def orig_function(inputs, outputs, mode=None, accept_inplace=False,
t1
=
time
.
time
()
t1
=
time
.
time
()
mode
=
mode_module
.
get_mode
(
mode
)
mode
=
mode_module
.
get_mode
(
mode
)
check_for_bad_grad
(
outputs
)
inputs
=
map
(
convert_function_input
,
inputs
)
inputs
=
map
(
convert_function_input
,
inputs
)
if
outputs
is
not
None
:
if
outputs
is
not
None
:
if
isinstance
(
outputs
,
(
list
,
tuple
)):
if
isinstance
(
outputs
,
(
list
,
tuple
)):
...
...
theano/gof/__init__.py
浏览文件 @
a09fbf2a
...
@@ -70,6 +70,7 @@ from optdb import \
...
@@ -70,6 +70,7 @@ from optdb import \
EquilibriumDB
,
SequenceDB
,
ProxyDB
EquilibriumDB
,
SequenceDB
,
ProxyDB
from
toolbox
import
\
from
toolbox
import
\
Feature
,
\
Bookkeeper
,
History
,
Validator
,
ReplaceValidate
,
NodeFinder
,
\
Bookkeeper
,
History
,
Validator
,
ReplaceValidate
,
NodeFinder
,
\
PrintListener
,
ReplacementDidntRemovedError
PrintListener
,
ReplacementDidntRemovedError
...
...
theano/gof/fg.py
浏览文件 @
a09fbf2a
...
@@ -19,6 +19,7 @@ class InconsistencyError(Exception):
...
@@ -19,6 +19,7 @@ class InconsistencyError(Exception):
"""
"""
pass
pass
class
MissingInputError
(
Exception
):
class
MissingInputError
(
Exception
):
"""
"""
A symbolic input needed to compute the outputs is missing.
A symbolic input needed to compute the outputs is missing.
...
@@ -26,7 +27,6 @@ class MissingInputError(Exception):
...
@@ -26,7 +27,6 @@ class MissingInputError(Exception):
pass
pass
class
FunctionGraph
(
utils
.
object2
):
class
FunctionGraph
(
utils
.
object2
):
""" WRITEME
""" WRITEME
A FunctionGraph represents a subgraph bound by a set of input variables and a
A FunctionGraph represents a subgraph bound by a set of input variables and a
...
@@ -46,46 +46,8 @@ class FunctionGraph(utils.object2):
...
@@ -46,46 +46,8 @@ class FunctionGraph(utils.object2):
The .clients field combined with the .owner field and the Apply nodes'
The .clients field combined with the .owner field and the Apply nodes'
.inputs field allows the graph to be traversed in both directions.
.inputs field allows the graph to be traversed in both directions.
It can also be "extended" using function_graph.extend(some_object). See the
It can also be "extended" using function_graph.extend(some_object).
toolbox and ext modules for common extensions.
See toolbox.Feature for event types and documentation.
Features added with the`extend` function can handle the following events:
- feature.on_attach(function_graph)
Called by extend. The feature has great freedom in what
it can do with the function_graph: it may, for example, add methods
to it dynamically.
- feature.on_detach(function_graph)
Called by remove_feature(feature). Should remove any dynamically-added
functionality that it installed into the function_graph.
- feature.on_import(function_graph, node)*
Called whenever a node is imported into function_graph, which is
just before the node is actually connected to the graph.
- feature.on_prune(function_graph, node)*
Called whenever a node is pruned (removed) from the function_graph,
after it is disconnected from the graph.
- feature.on_change_input(function_graph, node, i, r, new_r, [reason=None])*
Called whenever node.inputs[i] is changed from r to new_r.
At the moment the callback is done, the change has already
taken place.
- feature.orderings(function_graph)
Called by toposort. It should return a dictionary of
{node: predecessors} where predecessors is a list of
nodes that should be computed before the key node.
* If you raise an exception in the functions marked with an
asterisk, the state of the graph might be inconsistent.
- feature.on_setup_node(function_graph, node):
WRITEME
- feature.on_setup_variable(function_graph, variable):
WRITEME
Historically, the FunctionGraph was called an Env. Keep this in mind
Historically, the FunctionGraph was called an Env. Keep this in mind
while reading out-of-date documentation, e-mail support threads, etc.
while reading out-of-date documentation, e-mail support threads, etc.
...
...
theano/gof/op.py
浏览文件 @
a09fbf2a
...
@@ -606,6 +606,63 @@ class Op(utils.object2, PureOp, CLinkerOp):
...
@@ -606,6 +606,63 @@ class Op(utils.object2, PureOp, CLinkerOp):
rval
.
lazy
=
False
rval
.
lazy
=
False
return
rval
return
rval
class
UncomputableOp
(
Op
):
"""
An Op representing an expression that cannot be computed.
theano.function checks that the subgraph it implements
does not contain these ops, and that optimization does not
introduce any such ops.
theano.tensor.grad checks the graphs it returns to ensure
they do not contain these ops.
"""
def
__init__
(
self
,
exc
,
msg
=
""
):
"""
exc: the exception type to raise if a subgraph contains
this op.
msg: the message to include in the exception.
"""
self
.
exc
=
exc
self
.
msg
=
msg
def
__eq__
(
self
,
other
):
return
type
(
self
)
==
type
(
other
)
def
__hash__
(
self
):
return
hash
((
type
(
self
)))
def
__str__
(
self
):
return
"Uncomputable{
%
s,
%
s}"
%
(
self
.
exc
,
self
.
msg
)
def
make_node
(
self
,
x
):
return
graph
.
Apply
(
self
,
[
x
],
[
x
.
type
()]
)
def
perform
(
self
,
node
,
inputs
,
out_storage
):
""" This should never be called"""
raise
AssertionError
(
"A BadGradOp should never be compiled, "
+
\
"and certainly not executed."
)
#Note: essentially, this op should just be NaNs_like(inputs[0])
#but 0 * BadGradOp(x) + y optimizes to just y
#so until we develop a way of symbolically representing a variable
#that is always NaN and implement the logic for 0 * NaN = NaN, etc.
#the only way we can guarantee correctness of a theano function
#is to guarantee that its initial subgraph contained no BadGradOps
def
raise_exc
(
self
):
raise
self
.
exc
(
self
.
msg
)
def
raise_if_uncomputable
(
node
):
print
'raise_if_computable called on '
,
node
if
node
is
not
None
:
print
'node is not None'
if
isinstance
(
node
.
op
,
UncomputableOp
):
node
.
op
.
raise_exc
()
else
:
print
'node.op is not an UncomputableOp'
print
type
(
node
.
op
)
else
:
print
'node is None'
def
get_test_value
(
v
):
def
get_test_value
(
v
):
"""
"""
...
...
theano/gof/toolbox.py
浏览文件 @
a09fbf2a
...
@@ -19,7 +19,61 @@ class ReplacementDidntRemovedError(Exception):
...
@@ -19,7 +19,61 @@ class ReplacementDidntRemovedError(Exception):
pass
pass
class
Bookkeeper
:
class
Feature
(
object
):
"""
Base class for FunctionGraph extensions.
See toolbox and ext modules for common extensions.
"""
def
on_attach
(
self
,
function_graph
):
"""
Called by extend. The feature has great freedom in what
it can do with the function_graph: it may, for example, add methods
to it dynamically.
"""
def
on_detach
(
self
,
function_graph
):
"""
Called by remove_feature(feature). Should remove any dynamically-added
functionality that it installed into the function_graph.
"""
def
on_import
(
self
,
function_graph
,
node
):
"""
Called whenever a node is imported into function_graph, which is
just before the node is actually connected to the graph.
"""
def
on_prune
(
self
,
function_graph
,
node
):
"""
Called whenever a node is pruned (removed) from the function_graph,
after it is disconnected from the graph.
"""
def
on_change_input
(
self
,
function_graph
,
node
,
i
,
r
,
new_r
,
reason
=
None
):
"""
Called whenever node.inputs[i] is changed from r to new_r.
At the moment the callback is done, the change has already
taken place.
If you raise an exception in this function, the state of the graph
might be broken for all intents and purposes.
"""
def
orderings
(
self
,
function_graph
):
"""
Called by toposort. It should return a dictionary of
{node: predecessors} where predecessors is a list of
nodes that should be computed before the key node.
If you raise an exception in this function, the state of the graph
might be broken for all intents and purposes.
"""
return
{}
class
Bookkeeper
(
Feature
):
def
on_attach
(
self
,
fgraph
):
def
on_attach
(
self
,
fgraph
):
for
node
in
graph
.
io_toposort
(
fgraph
.
inputs
,
fgraph
.
outputs
):
for
node
in
graph
.
io_toposort
(
fgraph
.
inputs
,
fgraph
.
outputs
):
...
@@ -30,7 +84,7 @@ class Bookkeeper:
...
@@ -30,7 +84,7 @@ class Bookkeeper:
self
.
on_prune
(
fgraph
,
node
)
self
.
on_prune
(
fgraph
,
node
)
class
History
:
class
History
(
Feature
)
:
def
__init__
(
self
):
def
__init__
(
self
):
self
.
history
=
{}
self
.
history
=
{}
...
@@ -69,7 +123,7 @@ class History:
...
@@ -69,7 +123,7 @@ class History:
self
.
history
[
fgraph
]
=
h
self
.
history
[
fgraph
]
=
h
class
Validator
:
class
Validator
(
Feature
)
:
def
on_attach
(
self
,
fgraph
):
def
on_attach
(
self
,
fgraph
):
for
attr
in
(
'validate'
,
'validate_time'
):
for
attr
in
(
'validate'
,
'validate_time'
):
...
@@ -224,7 +278,7 @@ class NodeFinder(dict, Bookkeeper):
...
@@ -224,7 +278,7 @@ class NodeFinder(dict, Bookkeeper):
return
all
return
all
class
PrintListener
(
object
):
class
PrintListener
(
Feature
):
def
__init__
(
self
,
active
=
True
):
def
__init__
(
self
,
active
=
True
):
self
.
active
=
active
self
.
active
=
active
...
@@ -251,7 +305,9 @@ class PrintListener(object):
...
@@ -251,7 +305,9 @@ class PrintListener(object):
node
,
i
,
r
,
new_r
)
node
,
i
,
r
,
new_r
)
class
PreserveNames
:
class
PreserveNames
(
Feature
)
:
def
on_change_input
(
self
,
fgraph
,
mode
,
i
,
r
,
new_r
,
reason
=
None
):
def
on_change_input
(
self
,
fgraph
,
mode
,
i
,
r
,
new_r
,
reason
=
None
):
if
r
.
name
is
not
None
and
new_r
.
name
is
None
:
if
r
.
name
is
not
None
and
new_r
.
name
is
None
:
new_r
.
name
=
r
.
name
new_r
.
name
=
r
.
name
theano/gradient.py
浏览文件 @
a09fbf2a
...
@@ -194,52 +194,8 @@ def grad_sources_inputs(sources, graph_inputs, warn_type=True):
...
@@ -194,52 +194,8 @@ def grad_sources_inputs(sources, graph_inputs, warn_type=True):
gmap
[
r
]
=
g_r
gmap
[
r
]
=
g_r
return
gmap
return
gmap
class
BadGradOp
(
gof
.
Op
):
"""
An Op representing a gradient that cannot be computed.
theano.tensor.grad checks the graphs it returns to ensure
they do not contain these ops.
theano.function also checks that the subgraph it implements
does not contain these ops.
"""
def
__init__
(
self
,
exc
,
msg
=
""
):
"""
exc: the exception type to raise if a subgraph contains
this op.
msg: the message to include in the exception.
"""
self
.
exc
=
exc
class
GradNotImplementedOp
(
gof
.
op
.
UncomputableOp
):
self
.
msg
=
msg
def
__eq__
(
self
,
other
):
return
type
(
self
)
==
type
(
other
)
def
__hash__
(
self
):
return
hash
((
type
(
self
)))
def
__str__
(
self
):
return
"BadGrad{
%
s,
%
s}"
%
(
self
.
exc
,
self
.
msg
)
def
make_node
(
self
,
x
):
return
gof
.
Apply
(
self
,
[
x
],
[
x
.
type
()]
)
def
perform
(
self
,
node
,
inputs
,
out_storage
):
""" This should never be called"""
raise
AssertionError
(
"A BadGradOp should never be compiled, "
+
\
"and certainly not executed."
)
#Note: essentially, this op should just be NaNs_like(inputs[0])
#but 0 * BadGradOp(x) + y optimizes to just y
#so until we develop a way of symbolically representing a variable
#that is always NaN and implement the logic for 0 * NaN = NaN, etc.
#the only way we can guarantee correctness of a theano function
#is to guarantee that its initial subgraph contained no BadGradOps
def
raise_exc
(
self
):
raise
self
.
exc
(
self
.
msg
)
class
GradNotImplementedOp
(
BadGradOp
):
""" A BadGradOp representing a gradient that hasn't been implemented yet.
""" A BadGradOp representing a gradient that hasn't been implemented yet.
"""
"""
...
@@ -261,6 +217,7 @@ class GradNotImplementedOp(BadGradOp):
...
@@ -261,6 +217,7 @@ class GradNotImplementedOp(BadGradOp):
"
%
s does not implement its gradient with respect to input
%
d"
\
"
%
s does not implement its gradient with respect to input
%
d"
\
%
(
str
(
type
(
op
)),
x_pos
))
%
(
str
(
type
(
op
)),
x_pos
))
def
grad_not_implemented
(
op
,
x_pos
,
x
):
def
grad_not_implemented
(
op
,
x_pos
,
x
):
"""
"""
Return an un-computable symbolic variable of type `x.type`.
Return an un-computable symbolic variable of type `x.type`.
...
@@ -274,79 +231,6 @@ def grad_not_implemented(op, x_pos, x):
...
@@ -274,79 +231,6 @@ def grad_not_implemented(op, x_pos, x):
return
GradNotImplementedOp
(
op
,
x_pos
)(
x
)
return
GradNotImplementedOp
(
op
,
x_pos
)(
x
)
def
check_for_bad_grad
(
variables
):
"""
variables: A gof.Variable or list thereof
Raises an exception if any of the variables represents
an expression involving a BadGradOp
"""
#preprocess variables to make sure it is a list and make
#sure everything is really a variable and not a
#theano.compile.io.SymbolicOutput
if
not
isinstance
(
variables
,
list
):
variables
=
[
variables
]
for
i
in
xrange
(
len
(
variables
)):
if
not
isinstance
(
variables
[
i
],
gof
.
Variable
):
if
hasattr
(
variables
[
i
],
'variable'
)
and
\
isinstance
(
variables
[
i
]
.
variable
,
gof
.
Variable
):
variables
[
i
]
=
variables
[
i
]
.
variable
for
v
in
gof
.
graph
.
ancestors
(
variables
):
if
v
.
owner
is
not
None
and
isinstance
(
v
.
owner
.
op
,
BadGradOp
):
v
.
owner
.
op
.
raise_exc
()
"""
#implemented using a deque rather than recursion because python recursion
#limit is set low by default
#handle the case where var is a theano.compile.io.SymbolicOutput
if hasattr(variables,'variable'):
variables = [ variables.variable ]
if not (isinstance(variables, list) or
\
isinstance(variables, gof.Variable)):
raise TypeError("Expected gof.Variable or list thereof, got "+
\
str(type(variables)))
if not isinstance(variables,list):
variables = [ variables ]
vars_to_check = deque(variables)
already_checked = set([])
while True:
try:
var = vars_to_check.pop()
except IndexError:
break
if var not in already_checked:
already_checked.update([var])
#handle the case where var is a theano.compile.io.SymbolicOutput
if hasattr(var, 'variable'):
var = var.variable
if not isinstance(var, gof.Variable):
raise TypeError("Expected gof.Variable, got "+str(type(var)))
node = var.owner
if node is not None:
op = node.op
if isinstance(op, BadGradOp):
op.raise_exc()
vars_to_check.extendleft(node.inputs)
#end if node is not None
#end if not already_checked
#end while
"""
########################
########################
# R Operator
# R Operator
...
@@ -667,7 +551,12 @@ def grad(cost, wrt, g_cost=None, consider_constant=None, warn_type=False,
...
@@ -667,7 +551,12 @@ def grad(cost, wrt, g_cost=None, consider_constant=None, warn_type=False,
and
ret
[
-
1
]
.
name
is
None
:
and
ret
[
-
1
]
.
name
is
None
:
ret
[
-
1
]
.
name
=
'(d
%
s/d
%
s)'
%
(
cost
.
name
,
p
.
name
)
ret
[
-
1
]
.
name
=
'(d
%
s/d
%
s)'
%
(
cost
.
name
,
p
.
name
)
check_for_bad_grad
(
ret
)
# new_vars is meant to be a list of all variables created
# by this call to grad(), which will be visible to the caller
# after we return.
new_vars
=
gof
.
graph
.
ancestors
(
ret
,
blockers
=
gof
.
graph
.
ancestors
([
cost
])
+
list
(
wrt
))
map
(
gof
.
op
.
raise_if_uncomputable
,
[
v
.
owner
for
v
in
new_vars
])
return
format_as
(
using_list
,
using_tuple
,
ret
)
return
format_as
(
using_list
,
using_tuple
,
ret
)
...
...
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