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testgroup
pytensor
Commits
1c974f4f
提交
1c974f4f
authored
11月 28, 2013
作者:
Arnaud Bergeron
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
- Only run local optimizers on the ops they are registered for.
- Fix existing optimizers in base code to register properly.
上级
ab660ca3
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
90 行增加
和
59 行删除
+90
-59
opt.py
theano/gof/opt.py
+45
-13
scan_opt.py
theano/scan_module/scan_opt.py
+2
-2
blas.py
theano/tensor/blas.py
+2
-2
nnet.py
theano/tensor/nnet/nnet.py
+2
-2
opt.py
theano/tensor/opt.py
+38
-39
raw_random.py
theano/tensor/raw_random.py
+1
-1
没有找到文件。
theano/gof/opt.py
浏览文件 @
1c974f4f
...
@@ -736,6 +736,14 @@ class LocalOptimizer(object):
...
@@ -736,6 +736,14 @@ class LocalOptimizer(object):
_optimizer_idx
[
0
]
+=
1
_optimizer_idx
[
0
]
+=
1
return
self
.
_optimizer_idx
return
self
.
_optimizer_idx
def
tracks
(
self
):
"""
Return the list of op classes that this opt applies to.
Return None to apply to all nodes.
"""
return
None
def
transform
(
self
,
node
):
def
transform
(
self
,
node
):
"""Transform a subgraph whose output is `node`.
"""Transform a subgraph whose output is `node`.
...
@@ -791,9 +799,15 @@ class FromFunctionLocalOptimizer(LocalOptimizer):
...
@@ -791,9 +799,15 @@ class FromFunctionLocalOptimizer(LocalOptimizer):
id
(
self
))
id
(
self
))
def
local_optimizer
(
*
tracks
):
def
local_optimizer
(
tracks
):
def
decorator
(
f
):
def
decorator
(
f
):
"""WRITEME"""
"""WRITEME"""
if
tracks
is
not
None
:
if
len
(
tracks
)
is
0
:
raise
ValueError
,
(
"Use None instead of an empty list to apply to all nodes."
,
f
.
__module__
,
f
.
__name__
)
for
t
in
tracks
:
if
not
(
isinstance
(
t
,
type
)
or
isinstance
(
t
,
op
.
Op
)):
raise
ValueError
,
(
"Tracks are op classes or instances"
,
f
.
__module__
,
f
.
__name__
)
rval
=
FromFunctionLocalOptimizer
(
f
,
tracks
)
rval
=
FromFunctionLocalOptimizer
(
f
,
tracks
)
rval
.
__name__
=
f
.
__name__
rval
.
__name__
=
f
.
__name__
return
rval
return
rval
...
@@ -870,7 +884,7 @@ class OpSub(LocalOptimizer):
...
@@ -870,7 +884,7 @@ class OpSub(LocalOptimizer):
return
self
.
op1
return
self
.
op1
def
tracks
(
self
):
def
tracks
(
self
):
return
[
[
self
.
op1
]
]
return
[
self
.
op1
]
def
transform
(
self
,
node
):
def
transform
(
self
,
node
):
if
node
.
op
!=
self
.
op1
:
if
node
.
op
!=
self
.
op1
:
...
@@ -901,7 +915,7 @@ class OpRemove(LocalOptimizer):
...
@@ -901,7 +915,7 @@ class OpRemove(LocalOptimizer):
return
self
.
op
return
self
.
op
def
tracks
(
self
):
def
tracks
(
self
):
return
[
[
self
.
op
]
]
return
[
self
.
op
]
def
transform
(
self
,
node
):
def
transform
(
self
,
node
):
if
node
.
op
!=
self
.
op
:
if
node
.
op
!=
self
.
op
:
...
@@ -1500,12 +1514,17 @@ class EquilibriumOptimizer(NavigatorOptimizer):
...
@@ -1500,12 +1514,17 @@ class EquilibriumOptimizer(NavigatorOptimizer):
None
,
None
,
ignore_newtrees
=
True
,
ignore_newtrees
=
True
,
failure_callback
=
failure_callback
)
failure_callback
=
failure_callback
)
self
.
local_optimizers
=
[]
self
.
local_optimizers_map
=
dict
()
self
.
local_optimizers_all
=
[]
self
.
global_optimizers
=
[]
self
.
global_optimizers
=
[]
for
opt
in
optimizers
:
for
opt
in
optimizers
:
if
isinstance
(
opt
,
LocalOptimizer
):
if
isinstance
(
opt
,
LocalOptimizer
):
self
.
local_optimizers
.
append
(
opt
)
if
opt
.
tracks
is
None
:
self
.
local_optimizers_all
.
append
(
opt
)
else
:
for
c
in
opt
.
tracks
():
self
.
local_optimizers_map
.
setdefault
(
c
,
[])
.
append
(
opt
)
else
:
else
:
self
.
global_optimizers
.
append
(
opt
)
self
.
global_optimizers
.
append
(
opt
)
self
.
max_depth
=
max_depth
self
.
max_depth
=
max_depth
...
@@ -1513,10 +1532,21 @@ class EquilibriumOptimizer(NavigatorOptimizer):
...
@@ -1513,10 +1532,21 @@ class EquilibriumOptimizer(NavigatorOptimizer):
assert
self
.
max_use_ratio
is
not
None
,
(
assert
self
.
max_use_ratio
is
not
None
,
(
'max_use_ratio has to be a number'
)
'max_use_ratio has to be a number'
)
def
get_local_optimizers
(
self
):
for
opt
in
self
.
local_optimizers_all
:
yield
opt
# if repeat is not a problem we can drop the set
s
=
set
()
for
lopt
in
self
.
local_optimizers_map
.
values
():
for
opt
in
lopt
:
if
opt
not
in
s
:
yield
opt
s
.
add
(
opt
)
def
add_requirements
(
self
,
fgraph
):
def
add_requirements
(
self
,
fgraph
):
super
(
EquilibriumOptimizer
,
self
)
.
add_requirements
(
fgraph
)
super
(
EquilibriumOptimizer
,
self
)
.
add_requirements
(
fgraph
)
fgraph
.
attach_feature
(
ChangeTracker
())
fgraph
.
attach_feature
(
ChangeTracker
())
for
opt
in
self
.
local_optimizers
:
for
opt
in
self
.
get_local_optimizers
()
:
opt
.
add_requirements
(
fgraph
)
opt
.
add_requirements
(
fgraph
)
for
opt
in
self
.
global_optimizers
:
for
opt
in
self
.
global_optimizers
:
opt
.
add_requirements
(
fgraph
)
opt
.
add_requirements
(
fgraph
)
...
@@ -1542,7 +1572,7 @@ class EquilibriumOptimizer(NavigatorOptimizer):
...
@@ -1542,7 +1572,7 @@ class EquilibriumOptimizer(NavigatorOptimizer):
time_opts
=
{}
time_opts
=
{}
io_toposort_timing
=
[]
io_toposort_timing
=
[]
nb_nodes
=
[]
nb_nodes
=
[]
for
opt
in
self
.
global_optimizers
+
self
.
local_optimizers
:
for
opt
in
self
.
global_optimizers
+
list
(
self
.
get_local_optimizers
())
:
global_process_count
.
setdefault
(
opt
,
0
)
global_process_count
.
setdefault
(
opt
,
0
)
time_opts
.
setdefault
(
opt
,
0
)
time_opts
.
setdefault
(
opt
,
0
)
...
@@ -1595,7 +1625,9 @@ class EquilibriumOptimizer(NavigatorOptimizer):
...
@@ -1595,7 +1625,9 @@ class EquilibriumOptimizer(NavigatorOptimizer):
node
=
q
.
pop
()
node
=
q
.
pop
()
current_node
=
node
current_node
=
node
for
lopt
in
self
.
local_optimizers
:
for
lopt
in
(
self
.
local_optimizers_all
+
self
.
local_optimizers_map
.
get
(
type
(
node
.
op
),
[])
+
self
.
local_optimizers_map
.
get
(
node
.
op
,
[])):
t_opt
=
time
.
time
()
t_opt
=
time
.
time
()
lopt_change
=
self
.
process_node
(
fgraph
,
node
,
lopt
)
lopt_change
=
self
.
process_node
(
fgraph
,
node
,
lopt
)
time_opts
[
lopt
]
+=
time
.
time
()
-
t_opt
time_opts
[
lopt
]
+=
time
.
time
()
-
t_opt
...
@@ -1634,7 +1666,7 @@ class EquilibriumOptimizer(NavigatorOptimizer):
...
@@ -1634,7 +1666,7 @@ class EquilibriumOptimizer(NavigatorOptimizer):
print
>>
stream
,
"
%
s
%
s
%
s id=
%
i"
%
(
print
>>
stream
,
"
%
s
%
s
%
s id=
%
i"
%
(
(
' '
*
level
),
self
.
__class__
.
__name__
,
name
,
id
(
self
))
(
' '
*
level
),
self
.
__class__
.
__name__
,
name
,
id
(
self
))
if
depth
!=
0
:
if
depth
!=
0
:
for
lopt
in
self
.
local_optimizers
:
for
lopt
in
self
.
get_local_optimizers
()
:
lopt
.
print_summary
(
stream
,
level
=
(
level
+
2
),
lopt
.
print_summary
(
stream
,
level
=
(
level
+
2
),
depth
=
(
depth
-
1
))
depth
=
(
depth
-
1
))
...
@@ -1654,7 +1686,7 @@ class EquilibriumOptimizer(NavigatorOptimizer):
...
@@ -1654,7 +1686,7 @@ class EquilibriumOptimizer(NavigatorOptimizer):
start_nb_nodes
,
end_nb_nodes
,
max_nb_nodes
)
start_nb_nodes
,
end_nb_nodes
,
max_nb_nodes
)
print
>>
stream
,
blanc
,
" time io_toposort
%.3
fs"
%
sum
(
print
>>
stream
,
blanc
,
" time io_toposort
%.3
fs"
%
sum
(
io_toposort_timing
)
io_toposort_timing
)
s
=
sum
([
time_opts
[
o
]
for
o
in
opt
.
local_optimizers
])
s
=
sum
([
time_opts
[
o
]
for
o
in
opt
.
get_local_optimizers
()
])
print
>>
stream
,
blanc
,
" time in local optimizers
%.3
fs"
%
s
print
>>
stream
,
blanc
,
" time in local optimizers
%.3
fs"
%
s
s
=
sum
([
time_opts
[
o
]
for
o
in
opt
.
global_optimizers
])
s
=
sum
([
time_opts
[
o
]
for
o
in
opt
.
global_optimizers
])
print
>>
stream
,
blanc
,
" time in global optimizers
%.3
fs"
%
s
print
>>
stream
,
blanc
,
" time in global optimizers
%.3
fs"
%
s
...
@@ -1679,7 +1711,7 @@ class EquilibriumOptimizer(NavigatorOptimizer):
...
@@ -1679,7 +1711,7 @@ class EquilibriumOptimizer(NavigatorOptimizer):
not_used
=
0
not_used
=
0
not_used_time
=
0
not_used_time
=
0
process_count
=
{}
process_count
=
{}
for
o
in
opt
.
global_optimizers
+
opt
.
local_optimizers
:
for
o
in
opt
.
global_optimizers
+
opt
.
get_local_optimizers
()
:
process_count
.
setdefault
(
o
,
0
)
process_count
.
setdefault
(
o
,
0
)
for
count
in
loop_process_count
:
for
count
in
loop_process_count
:
for
o
,
v
in
count
.
iteritems
():
for
o
,
v
in
count
.
iteritems
():
...
@@ -1707,8 +1739,8 @@ class EquilibriumOptimizer(NavigatorOptimizer):
...
@@ -1707,8 +1739,8 @@ class EquilibriumOptimizer(NavigatorOptimizer):
#(opt, loop_timing, loop_process_count, max_nb_nodes,
#(opt, loop_timing, loop_process_count, max_nb_nodes,
# global_opt_timing, nb_nodes, time_opts, io_toposort_timing) = prof1
# global_opt_timing, nb_nodes, time_opts, io_toposort_timing) = prof1
local_optimizers
=
set
(
prof1
[
0
]
.
local_optimizers
)
.
union
(
local_optimizers
=
set
(
prof1
[
0
]
.
get_local_optimizers
()
)
.
union
(
prof2
[
0
]
.
local_optimizers
)
prof2
[
0
]
.
get_local_optimizers
()
)
global_optimizers
=
set
(
prof1
[
0
]
.
global_optimizers
)
.
union
(
global_optimizers
=
set
(
prof1
[
0
]
.
global_optimizers
)
.
union
(
prof2
[
0
]
.
global_optimizers
)
prof2
[
0
]
.
global_optimizers
)
new_opt
=
EquilibriumOptimizer
(
new_opt
=
EquilibriumOptimizer
(
...
...
theano/scan_module/scan_opt.py
浏览文件 @
1c974f4f
...
@@ -49,7 +49,7 @@ def info(*msg):
...
@@ -49,7 +49,7 @@ def info(*msg):
_logger
.
info
(
'INFO theano.scan: '
+
' '
.
join
(
msg
))
_logger
.
info
(
'INFO theano.scan: '
+
' '
.
join
(
msg
))
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
scan_op
.
Scan
])
def
remove_constants_and_unused_inputs_scan
(
node
):
def
remove_constants_and_unused_inputs_scan
(
node
):
'''
'''
Move constants into the inner graph, and remove unused inputs.
Move constants into the inner graph, and remove unused inputs.
...
@@ -1337,7 +1337,7 @@ def make_equiv(lo, li):
...
@@ -1337,7 +1337,7 @@ def make_equiv(lo, li):
return
left
,
right
return
left
,
right
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
scan_op
.
Scan
])
def
scan_merge_inouts
(
node
):
def
scan_merge_inouts
(
node
):
if
not
isinstance
(
node
.
op
,
scan_op
.
Scan
):
if
not
isinstance
(
node
.
op
,
scan_op
.
Scan
):
return
False
return
False
...
...
theano/tensor/blas.py
浏览文件 @
1c974f4f
...
@@ -1645,7 +1645,7 @@ class Dot22(GemmRelated):
...
@@ -1645,7 +1645,7 @@ class Dot22(GemmRelated):
_dot22
=
Dot22
()
_dot22
=
Dot22
()
@local_optimizer
([
T
.
_d
ot
])
@local_optimizer
([
T
.
D
ot
])
def
local_dot_to_dot22
(
node
):
def
local_dot_to_dot22
(
node
):
# This works for tensor.outer too because basic.outer is a macro that
# This works for tensor.outer too because basic.outer is a macro that
# produces a dot(dimshuffle,dimshuffle) of form 4 below
# produces a dot(dimshuffle,dimshuffle) of form 4 below
...
@@ -2025,7 +2025,7 @@ blas_optdb.register('local_dot22_to_dot22scalar',
...
@@ -2025,7 +2025,7 @@ blas_optdb.register('local_dot22_to_dot22scalar',
#from opt import register_specialize, register_canonicalize
#from opt import register_specialize, register_canonicalize
#@register_specialize
#@register_specialize
@local_optimizer
([])
@local_optimizer
([
T
.
sub
,
T
.
add
])
def
local_print_as_we_go_along
(
node
):
def
local_print_as_we_go_along
(
node
):
if
node
.
op
in
(
T
.
sub
,
T
.
add
):
if
node
.
op
in
(
T
.
sub
,
T
.
add
):
debugprint
(
node
)
debugprint
(
node
)
theano/tensor/nnet/nnet.py
浏览文件 @
1c974f4f
...
@@ -589,7 +589,7 @@ opt.local_mul_canonizer.add_simplifier(softmax_simplifier,
...
@@ -589,7 +589,7 @@ opt.local_mul_canonizer.add_simplifier(softmax_simplifier,
if
0
:
if
0
:
@opt.register_specialize
@opt.register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
tensor
.
add
])
def
local_softmax_grad
(
node
):
def
local_softmax_grad
(
node
):
'''dy*sm - DimShuffle{0,'x'}(sum{1}(dy*sm))*sm -> softmax_grad(dy,sm)'''
'''dy*sm - DimShuffle{0,'x'}(sum{1}(dy*sm))*sm -> softmax_grad(dy,sm)'''
#TODO what if the signs are changed?
#TODO what if the signs are changed?
...
@@ -1417,7 +1417,7 @@ def _is_const(z, val, approx=False):
...
@@ -1417,7 +1417,7 @@ def _is_const(z, val, approx=False):
@opt.register_specialize
@opt.register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
subtensor
.
AdvancedSubtensor
])
def
local_advanced_indexing_crossentropy_onehot
(
node
):
def
local_advanced_indexing_crossentropy_onehot
(
node
):
log
=
None
log
=
None
sm
=
None
sm
=
None
...
...
theano/tensor/opt.py
浏览文件 @
1c974f4f
...
@@ -347,7 +347,7 @@ compile.optdb['canonicalize'].register(
...
@@ -347,7 +347,7 @@ compile.optdb['canonicalize'].register(
@register_canonicalize
@register_canonicalize
@register_stabilize
@register_stabilize
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
T
.
Dot
])
def
local_0_dot_x
(
node
):
def
local_0_dot_x
(
node
):
if
not
isinstance
(
node
.
op
,
T
.
Dot
):
if
not
isinstance
(
node
.
op
,
T
.
Dot
):
return
False
return
False
...
@@ -390,7 +390,7 @@ def local_0_dot_x(node):
...
@@ -390,7 +390,7 @@ def local_0_dot_x(node):
######################
######################
@gof.local_optimizer
([
None
,
Non
e
])
@gof.local_optimizer
([
DimShuffl
e
])
def
local_dimshuffle_lift
(
node
):
def
local_dimshuffle_lift
(
node
):
"""
"""
"Lifts" DimShuffle through Elemwise operations and merges
"Lifts" DimShuffle through Elemwise operations and merges
...
@@ -431,7 +431,7 @@ def local_dimshuffle_lift(node):
...
@@ -431,7 +431,7 @@ def local_dimshuffle_lift(node):
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
DimShuffle
])
def
local_lift_transpose_through_dot
(
node
):
def
local_lift_transpose_through_dot
(
node
):
"""
"""
dot(x,y).T -> dot(y.T, x.T)
dot(x,y).T -> dot(y.T, x.T)
...
@@ -456,7 +456,7 @@ def local_lift_transpose_through_dot(node):
...
@@ -456,7 +456,7 @@ def local_lift_transpose_through_dot(node):
return
[
T
.
dot
(
y
.
T
,
x
.
T
)]
return
[
T
.
dot
(
y
.
T
,
x
.
T
)]
@gof.local_optimizer
([])
@gof.local_optimizer
([
DimShuffle
])
def
dimshuffle_as_view
(
node
):
def
dimshuffle_as_view
(
node
):
op
=
node
.
op
op
=
node
.
op
if
not
isinstance
(
op
,
DimShuffle
)
or
op
.
inplace
:
if
not
isinstance
(
op
,
DimShuffle
)
or
op
.
inplace
:
...
@@ -476,7 +476,7 @@ register_specialize(local_dimshuffle_lift)
...
@@ -476,7 +476,7 @@ register_specialize(local_dimshuffle_lift)
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
DimShuffle
])
def
local_dimshuffle_no_inplace_at_canonicalize
(
node
):
def
local_dimshuffle_no_inplace_at_canonicalize
(
node
):
if
isinstance
(
node
.
op
,
T
.
DimShuffle
)
and
node
.
op
.
inplace
:
if
isinstance
(
node
.
op
,
T
.
DimShuffle
)
and
node
.
op
.
inplace
:
return
[
T
.
DimShuffle
(
node
.
op
.
input_broadcastable
,
return
[
T
.
DimShuffle
(
node
.
op
.
input_broadcastable
,
...
@@ -1213,9 +1213,10 @@ def local_shape_to_shape_i(node):
...
@@ -1213,9 +1213,10 @@ def local_shape_to_shape_i(node):
return
[
shape_feature
.
make_vector_shape
(
node
.
inputs
[
0
])]
return
[
shape_feature
.
make_vector_shape
(
node
.
inputs
[
0
])]
# TODO: Not sure what type of node we are expecting here
@register_specialize
@register_specialize
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
(
[
T
.
_shape
]
)
@gof.local_optimizer
(
None
)
def
local_track_shape_i
(
node
):
def
local_track_shape_i
(
node
):
try
:
try
:
shape_feature
=
node
.
fgraph
.
shape_feature
shape_feature
=
node
.
fgraph
.
shape_feature
...
@@ -1415,7 +1416,7 @@ def local_remove_useless_assert(node):
...
@@ -1415,7 +1416,7 @@ def local_remove_useless_assert(node):
return
[
assert_
(
node
.
inputs
[
0
],
*
cond
)]
return
[
assert_
(
node
.
inputs
[
0
],
*
cond
)]
@gof.local_optimizer
([
T
.
Alloc
])
@gof.local_optimizer
([
T
.
Elemwise
])
def
local_alloc_elemwise
(
node
):
def
local_alloc_elemwise
(
node
):
"""
"""
elemwise(alloc(x, shp), ..., y.TensorType(BROADCAST CONDITION))
elemwise(alloc(x, shp), ..., y.TensorType(BROADCAST CONDITION))
...
@@ -1534,7 +1535,7 @@ else:
...
@@ -1534,7 +1535,7 @@ else:
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Elemwise
])
def
local_upcast_elemwise_constant_inputs
(
node
):
def
local_upcast_elemwise_constant_inputs
(
node
):
"""This explicitly upcasts constant inputs to elemwise Ops, when
"""This explicitly upcasts constant inputs to elemwise Ops, when
those Ops do implicit upcasting anyway.
those Ops do implicit upcasting anyway.
...
@@ -1682,7 +1683,7 @@ def local_useless_subtensor(node):
...
@@ -1682,7 +1683,7 @@ def local_useless_subtensor(node):
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
Subtensor
])
def
local_subtensor_lift
(
node
):
def
local_subtensor_lift
(
node
):
"""
"""
unary(x)[idx] -> unary(x[idx])#any broadcast pattern.
unary(x)[idx] -> unary(x[idx])#any broadcast pattern.
...
@@ -1892,7 +1893,7 @@ def merge_two_slices(slice1, len1, slice2, len2):
...
@@ -1892,7 +1893,7 @@ def merge_two_slices(slice1, len1, slice2, len2):
@register_canonicalize
@register_canonicalize
@register_specialize
@register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
Subtensor
])
def
local_subtensor_merge
(
node
):
def
local_subtensor_merge
(
node
):
"""
"""
Refactored optimization to deal with all cases of tensor merging.
Refactored optimization to deal with all cases of tensor merging.
...
@@ -1954,7 +1955,7 @@ def local_subtensor_merge(node):
...
@@ -1954,7 +1955,7 @@ def local_subtensor_merge(node):
@register_canonicalize
@register_canonicalize
@register_specialize
@register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
Subtensor
])
def
local_subtensor_of_alloc
(
node
):
def
local_subtensor_of_alloc
(
node
):
"""alloc[x:y] -> alloc"""
"""alloc[x:y] -> alloc"""
if
not
isinstance
(
node
.
op
,
Subtensor
):
if
not
isinstance
(
node
.
op
,
Subtensor
):
...
@@ -2007,7 +2008,7 @@ def local_subtensor_of_alloc(node):
...
@@ -2007,7 +2008,7 @@ def local_subtensor_of_alloc(node):
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
T
.
add
])
def
local_IncSubtensor_serialize
(
node
):
def
local_IncSubtensor_serialize
(
node
):
"""
"""
When using Subtensor, gradient graphs can be ugly.
When using Subtensor, gradient graphs can be ugly.
...
@@ -2079,7 +2080,7 @@ compile.optdb.register('pre_local_IncSubtensor_serialize',
...
@@ -2079,7 +2080,7 @@ compile.optdb.register('pre_local_IncSubtensor_serialize',
#after priority 50 Destructive inplace operations
#after priority 50 Destructive inplace operations
#gemm is the first one now, at priority 70
#gemm is the first one now, at priority 70
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
IncSubtensor
])
# XXX: GPU
def
local_inplace_setsubtensor
(
node
):
def
local_inplace_setsubtensor
(
node
):
"""
"""
Also work for GpuIncSubtensor
Also work for GpuIncSubtensor
...
@@ -2098,7 +2099,7 @@ compile.optdb.register('local_inplace_setsubtensor',
...
@@ -2098,7 +2099,7 @@ compile.optdb.register('local_inplace_setsubtensor',
'fast_run'
,
'inplace'
)
# DEBUG
'fast_run'
,
'inplace'
)
# DEBUG
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
AdvancedIncSubtensor1
])
# XXX: GPU
def
local_inplace_incsubtensor1
(
node
):
def
local_inplace_incsubtensor1
(
node
):
""" also work for GpuAdvancedIncSubtensor1 """
""" also work for GpuAdvancedIncSubtensor1 """
if
isinstance
(
node
.
op
,
AdvancedIncSubtensor1
)
and
not
node
.
op
.
inplace
:
if
isinstance
(
node
.
op
,
AdvancedIncSubtensor1
)
and
not
node
.
op
.
inplace
:
...
@@ -2116,7 +2117,7 @@ compile.optdb.register('local_inplace_incsubtensor1',
...
@@ -2116,7 +2117,7 @@ compile.optdb.register('local_inplace_incsubtensor1',
@register_canonicalize
@register_canonicalize
@register_stabilize
@register_stabilize
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
IncSubtensor
])
def
local_incsubtensor_of_allocs
(
node
):
def
local_incsubtensor_of_allocs
(
node
):
"""
"""
IncSubtensor(x, zeros, idx) -> x
IncSubtensor(x, zeros, idx) -> x
...
@@ -2139,7 +2140,7 @@ def local_incsubtensor_of_allocs(node):
...
@@ -2139,7 +2140,7 @@ def local_incsubtensor_of_allocs(node):
@register_canonicalize
@register_canonicalize
@register_stabilize
@register_stabilize
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
IncSubtensor
])
def
local_setsubtensor_of_allocs
(
node
):
def
local_setsubtensor_of_allocs
(
node
):
"""
"""
SetSubtensor(x, x[idx], idx) -> x
SetSubtensor(x, x[idx], idx) -> x
...
@@ -2286,7 +2287,7 @@ def local_join_1(node):
...
@@ -2286,7 +2287,7 @@ def local_join_1(node):
###############
###############
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Elemwise
])
def
local_remove_switch_const_cond
(
node
):
def
local_remove_switch_const_cond
(
node
):
"""
"""
This optimization makes the following changes in the graph:
This optimization makes the following changes in the graph:
...
@@ -2369,7 +2370,7 @@ def local_mul_switch_sink(node):
...
@@ -2369,7 +2370,7 @@ def local_mul_switch_sink(node):
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([
T
.
true_div
])
@gof.local_optimizer
([
T
.
true_div
,
T
.
int_div
,
T
.
floor_div
])
def
local_div_switch_sink
(
node
):
def
local_div_switch_sink
(
node
):
"""
"""
This optimization makes the folowing changes in the graph:
This optimization makes the folowing changes in the graph:
...
@@ -2413,7 +2414,7 @@ def local_div_switch_sink(node):
...
@@ -2413,7 +2414,7 @@ def local_div_switch_sink(node):
################
################
@register_canonicalize
@register_canonicalize
@register_stabilize
@register_stabilize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Flatten
])
def
local_flatten_lift
(
node
):
def
local_flatten_lift
(
node
):
"""
"""
Flatten(UnaryElemwise(x)) -> UnaryElemwise(Flatten(x))
Flatten(UnaryElemwise(x)) -> UnaryElemwise(Flatten(x))
...
@@ -2434,7 +2435,7 @@ def local_flatten_lift(node):
...
@@ -2434,7 +2435,7 @@ def local_flatten_lift(node):
##################
##################
@gof.local_optimizer
([
None
,
Non
e
])
@gof.local_optimizer
([
T
.
Reshap
e
])
def
local_reshape_chain
(
node
):
def
local_reshape_chain
(
node
):
"""
"""
Reshape(Reshape(shape1),shape2) -> Reshape(shape2)
Reshape(Reshape(shape1),shape2) -> Reshape(shape2)
...
@@ -2462,7 +2463,7 @@ register_canonicalize(local_reshape_chain)
...
@@ -2462,7 +2463,7 @@ register_canonicalize(local_reshape_chain)
@register_canonicalize
@register_canonicalize
@register_stabilize
@register_stabilize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Reshape
])
def
local_reshape_lift
(
node
):
def
local_reshape_lift
(
node
):
"""
"""
Reshape(UnaryElemwise(x)) -> UnaryElemwise(Reshape(x))
Reshape(UnaryElemwise(x)) -> UnaryElemwise(Reshape(x))
...
@@ -2482,7 +2483,7 @@ def local_reshape_lift(node):
...
@@ -2482,7 +2483,7 @@ def local_reshape_lift(node):
if
0
:
if
0
:
# TODO: Test that this optimziation works.
# TODO: Test that this optimziation works.
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Reshape
])
def
local_scalar_reshape
(
node
):
def
local_scalar_reshape
(
node
):
"""Eliminate reshape Ops whose inputs and outputs are scalars """
"""Eliminate reshape Ops whose inputs and outputs are scalars """
if
isinstance
(
node
.
op
,
T
.
Reshape
):
if
isinstance
(
node
.
op
,
T
.
Reshape
):
...
@@ -2498,7 +2499,7 @@ if 0:
...
@@ -2498,7 +2499,7 @@ if 0:
# TODO: Remember to take into account the new sum dtype argument if this
# TODO: Remember to take into account the new sum dtype argument if this
# optimization is enabled.
# optimization is enabled.
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Sum
])
def
local_sum_over_empty
(
node
):
def
local_sum_over_empty
(
node
):
if
isinstance
(
node
.
op
,
T
.
Sum
):
if
isinstance
(
node
.
op
,
T
.
Sum
):
# This optimization needs ShapeOpt and fgraph.shape_feature
# This optimization needs ShapeOpt and fgraph.shape_feature
...
@@ -2520,7 +2521,7 @@ if 0:
...
@@ -2520,7 +2521,7 @@ if 0:
##################
##################
@gof.local_optimizer
([
None
,
T
.
fill
])
@gof.local_optimizer
([
T
.
Elemwise
])
def
local_fill_cut
(
node
):
def
local_fill_cut
(
node
):
"""
"""
f(fill(a,b), c) -> f(b, c)
f(fill(a,b), c) -> f(b, c)
...
@@ -2574,7 +2575,7 @@ register_canonicalize(local_fill_cut)
...
@@ -2574,7 +2575,7 @@ register_canonicalize(local_fill_cut)
register_canonicalize
(
gof
.
OpRemove
(
T
.
tensor_copy
),
name
=
'remove_tensor_copy'
)
register_canonicalize
(
gof
.
OpRemove
(
T
.
tensor_copy
),
name
=
'remove_tensor_copy'
)
@gof.local_optimizer
([
None
,
T
.
fill
])
@gof.local_optimizer
([
T
.
Elemwise
])
def
local_fill_sink
(
node
):
def
local_fill_sink
(
node
):
"""
"""
f(fill(a, b), fill(c, d), e) -> fill(a, fill(c, f(b, d, e)))
f(fill(a, b), fill(c, d), e) -> fill(a, fill(c, f(b, d, e)))
...
@@ -2662,8 +2663,7 @@ class Canonizer(gof.LocalOptimizer):
...
@@ -2662,8 +2663,7 @@ class Canonizer(gof.LocalOptimizer):
self
.
external_simplifiers
.
append
((
reason
,
simplifier
))
self
.
external_simplifiers
.
append
((
reason
,
simplifier
))
def
tracks
(
self
):
def
tracks
(
self
):
return
[[
self
.
main
,
None
],
[
self
.
inverse
,
None
],
return
[
self
.
main
,
self
.
inverse
,
self
.
reciprocal
]
[
self
.
reciprocal
,
None
]]
def
get_num_denum
(
self
,
input
):
def
get_num_denum
(
self
,
input
):
"""
"""
...
@@ -3051,7 +3051,7 @@ register_canonicalize(local_neg_to_mul)
...
@@ -3051,7 +3051,7 @@ register_canonicalize(local_neg_to_mul)
@register_specialize
@register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Sum
])
def
local_sum_mul_by_scalar
(
node
):
def
local_sum_mul_by_scalar
(
node
):
"""sum(scalar * smth) -> scalar * sum(smth)
"""sum(scalar * smth) -> scalar * sum(smth)
sum(-smth) -> -sum(smth)
sum(-smth) -> -sum(smth)
...
@@ -3088,7 +3088,7 @@ def local_sum_mul_by_scalar(node):
...
@@ -3088,7 +3088,7 @@ def local_sum_mul_by_scalar(node):
@register_specialize
@register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Elemwise
])
def
local_elemwise_sub_zeros
(
node
):
def
local_elemwise_sub_zeros
(
node
):
"""
"""
Elemwise{sub}(X,X) -> zeros_like(X)
Elemwise{sub}(X,X) -> zeros_like(X)
...
@@ -3102,7 +3102,7 @@ def local_elemwise_sub_zeros(node):
...
@@ -3102,7 +3102,7 @@ def local_elemwise_sub_zeros(node):
@register_canonicalize
@register_canonicalize
@register_specialize
@register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Sum
])
def
local_sum_div_dimshuffle
(
node
):
def
local_sum_div_dimshuffle
(
node
):
'''sum(a / dimshuffle{...}(b), axis=l) -> sum(a, axis={...}) / b,
'''sum(a / dimshuffle{...}(b), axis=l) -> sum(a, axis={...}) / b,
if dimension l of the DimShuffle is 'x'.'''
if dimension l of the DimShuffle is 'x'.'''
...
@@ -3191,7 +3191,7 @@ def local_sum_div_dimshuffle(node):
...
@@ -3191,7 +3191,7 @@ def local_sum_div_dimshuffle(node):
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Sum
])
def
local_sum_all_to_none
(
node
):
def
local_sum_all_to_none
(
node
):
"""Sum{0,1,...N} -> Sum{}"""
"""Sum{0,1,...N} -> Sum{}"""
if
isinstance
(
node
.
op
,
T
.
Sum
):
if
isinstance
(
node
.
op
,
T
.
Sum
):
...
@@ -3204,7 +3204,7 @@ def local_sum_all_to_none(node):
...
@@ -3204,7 +3204,7 @@ def local_sum_all_to_none(node):
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Sum
])
def
local_sum_sum
(
node
):
def
local_sum_sum
(
node
):
"""
"""
Sum(Sum()) -> Sum
Sum(Sum()) -> Sum
...
@@ -3272,7 +3272,7 @@ def local_sum_sum(node):
...
@@ -3272,7 +3272,7 @@ def local_sum_sum(node):
@register_canonicalize
@register_canonicalize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
CAReduce
])
def
local_cut_useless_reduce
(
node
):
def
local_cut_useless_reduce
(
node
):
"""Sum(a, axis=[]) -> a """
"""Sum(a, axis=[]) -> a """
if
isinstance
(
node
.
op
,
T
.
CAReduce
):
if
isinstance
(
node
.
op
,
T
.
CAReduce
):
...
@@ -3288,7 +3288,7 @@ def local_cut_useless_reduce(node):
...
@@ -3288,7 +3288,7 @@ def local_cut_useless_reduce(node):
#
#
#@register_canonicalize
#@register_canonicalize
@register_specialize
@register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
CAReduce
])
def
local_reduce_broadcastable
(
node
):
def
local_reduce_broadcastable
(
node
):
"""Remove reduction over broadcastable dimensions"""
"""Remove reduction over broadcastable dimensions"""
if
isinstance
(
node
.
op
,
T
.
CAReduce
):
if
isinstance
(
node
.
op
,
T
.
CAReduce
):
...
@@ -3327,7 +3327,7 @@ def local_reduce_broadcastable(node):
...
@@ -3327,7 +3327,7 @@ def local_reduce_broadcastable(node):
@register_specialize
@register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
Sum
])
def
local_sum_alloc
(
node
):
def
local_sum_alloc
(
node
):
""" sum(alloc(constant,shapes...)) => constant*prod(shapes)"""
""" sum(alloc(constant,shapes...)) => constant*prod(shapes)"""
if
isinstance
(
node
.
op
,
T
.
Sum
):
if
isinstance
(
node
.
op
,
T
.
Sum
):
...
@@ -3734,7 +3734,7 @@ def local_abs_lift(node):
...
@@ -3734,7 +3734,7 @@ def local_abs_lift(node):
@register_specialize
@register_specialize
@gof.local_optimizer
([])
@gof.local_optimizer
([
T
.
mul
])
def
local_abs_merge
(
node
):
def
local_abs_merge
(
node
):
"""
"""
merge abs generated by local_abs_lift when the canonizer don't
merge abs generated by local_abs_lift when the canonizer don't
...
@@ -3909,8 +3909,7 @@ def attempt_distribution(factor, num, denum):
...
@@ -3909,8 +3909,7 @@ def attempt_distribution(factor, num, denum):
neg_pairs
))),
num
,
denum
neg_pairs
))),
num
,
denum
@gof.local_optimizer
([
T
.
mul
,
T
.
add
,
T
.
mul
],
[
T
.
mul
,
T
.
sub
,
T
.
mul
],
@gof.local_optimizer
([
T
.
mul
])
[
T
.
mul
,
T
.
add
,
T
.
true_div
],
[
T
.
mul
,
T
.
sub
,
T
.
true_div
])
def
local_greedy_distributor
(
node
):
def
local_greedy_distributor
(
node
):
"""
"""
This optimization tries to apply distributivity of multiplication
This optimization tries to apply distributivity of multiplication
...
@@ -3976,7 +3975,7 @@ register_canonicalize(local_greedy_distributor)
...
@@ -3976,7 +3975,7 @@ register_canonicalize(local_greedy_distributor)
register_stabilize
(
local_greedy_distributor
)
register_stabilize
(
local_greedy_distributor
)
@gof.local_optimizer
(
[
None
]
)
@gof.local_optimizer
(
None
)
def
constant_folding
(
node
):
def
constant_folding
(
node
):
for
input
in
node
.
inputs
:
for
input
in
node
.
inputs
:
if
not
isinstance
(
input
,
Constant
):
if
not
isinstance
(
input
,
Constant
):
...
...
theano/tensor/raw_random.py
浏览文件 @
1c974f4f
...
@@ -816,7 +816,7 @@ def multinomial(random_state, size=None, n=1, pvals=[0.5, 0.5],
...
@@ -816,7 +816,7 @@ def multinomial(random_state, size=None, n=1, pvals=[0.5, 0.5],
return
op
(
random_state
,
size
,
n
,
pvals
)
return
op
(
random_state
,
size
,
n
,
pvals
)
@gof.local_optimizer
([
None
])
@gof.local_optimizer
([
RandomFunction
])
def
random_make_inplace
(
node
):
def
random_make_inplace
(
node
):
op
=
node
.
op
op
=
node
.
op
if
isinstance
(
op
,
RandomFunction
)
and
not
op
.
inplace
:
if
isinstance
(
op
,
RandomFunction
)
and
not
op
.
inplace
:
...
...
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