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pytensor
Commits
51813bfe
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51813bfe
authored
7月 19, 2011
作者:
Razvan Pascanu
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13fa643c
29783b30
隐藏空白字符变更
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正在显示
1 个修改的文件
包含
75 行增加
和
42 行删除
+75
-42
scan_opt.py
theano/scan_module/scan_opt.py
+75
-42
没有找到文件。
theano/scan_module/scan_opt.py
浏览文件 @
51813bfe
...
@@ -561,15 +561,37 @@ class ScanSaveMem(gof.Optimizer):
...
@@ -561,15 +561,37 @@ class ScanSaveMem(gof.Optimizer):
# If the memory for this output has been pre-allocated
# If the memory for this output has been pre-allocated
# before going into the scan op (by an alloc node)
# before going into the scan op (by an alloc node)
if
idx
<
op
.
n_mit_sot
+
op
.
n_sit_sot
:
if
idx
<
op
.
n_mit_sot
+
op
.
n_sit_sot
:
# In case the input is still an alloc node
# In case the input is still an alloc node, we
if
nw_inputs
[
offset
+
idx
]
.
owner
:
# actually have two options:
# a) the input is an alloc (due to an optimization
# that converts set_subtensor(0,0) in 0
# b) the input is an set subtensor
if
(
nw_inputs
[
offset
+
idx
]
.
owner
and
isinstance
(
nw_inputs
[
offset
+
idx
]
.
owner
.
op
,
tensor
.
IncSubtensor
)):
_nw_input
=
nw_inputs
[
offset
+
idx
]
.
owner
.
inputs
[
1
]
_nw_input
=
nw_inputs
[
offset
+
idx
]
.
owner
.
inputs
[
1
]
nw_input
=
scan_utils
.
expand
(
_nw_input
,
val
-
init_l
[
i
]
)
tmp
=
pre_greedy_local_optimizer
(
list_opt_slice
,
tensor
.
as_tensor_variable
(
val
-
init_l
[
i
]))
tmp
=
pre_constant_merge
([
tmp
])[
0
]
nw_input
=
scan_utils
.
expand
(
_nw_input
,
tmp
)
# If it is an alloc
elif
(
nw_inputs
[
offset
+
idx
]
.
owner
and
isinstance
(
nw_inputs
[
offset
+
idx
]
.
owner
.
op
,
tensor
.
Alloc
)):
tmp
=
pre_greedy_local_optimizer
(
list_opt_slice
,
tensor
.
as_tensor_variable
(
val
))
tmp
=
pre_constant_merge
([
tmp
])[
0
]
nw_input
=
nw_inputs
[
offset
+
idx
][:
tmp
]
# Else, if it was constant folded to a single value
# Else, if it was constant folded to a single value
elif
isinstance
(
nw_inputs
[
offset
+
idx
],
tensor
.
Constant
):
elif
isinstance
(
nw_inputs
[
offset
+
idx
],
tensor
.
Constant
):
# The hope is that constant folding will fold
# The hope is that constant folding will fold
# this as well
# this as well
nw_input
=
nw_inputs
[
offset
+
idx
][:
val
]
tmp
=
pre_greedy_local_optimizer
(
list_opt_slice
,
tensor
.
as_tensor_variable
(
val
))
tmp
=
pre_constant_merge
([
tmp
])[
0
]
nw_input
=
nw_inputs
[
offset
+
idx
][:
tmp
]
else
:
else
:
raise
Exception
((
'Unforseen case. Please report'
raise
Exception
((
'Unforseen case. Please report'
' to theano-dev with an example'
' to theano-dev with an example'
...
@@ -613,7 +635,17 @@ class ScanSaveMem(gof.Optimizer):
...
@@ -613,7 +635,17 @@ class ScanSaveMem(gof.Optimizer):
# 3.5 Remove unwanted orphane outputs
# 3.5 Remove unwanted orphane outputs
(
inps
,
outs
,
info
,
node_ins
,
compress_map
)
=
\
(
inps
,
outs
,
info
,
node_ins
,
compress_map
)
=
\
scan_utils
.
compress_outs
(
op
,
not_required
,
nw_inputs
)
scan_utils
.
compress_outs
(
op
,
not_required
,
nw_inputs
)
inv_compress_map
=
{}
for
k
,
v
in
compress_map
.
items
():
inv_compress_map
[
v
]
=
k
node_ins
=
[
pre_greedy_local_optimizer
(
list_opt_slice
,
x
)
for
x
in
node_ins
]
node_ins
=
pre_constant_merge
(
node_ins
)
# 3.6 Compose the new scan
# 3.6 Compose the new scan
# I need to make sure I'm not reapplying the same optimization
# twice since bad things usually happen if I do that
info
[
'_scan_merge_visited'
]
=
True
new_outs
=
scan_op
.
Scan
(
inps
new_outs
=
scan_op
.
Scan
(
inps
,
outs
,
outs
,
info
)
.
make_node
(
*
node_ins
)
.
outputs
,
info
)
.
make_node
(
*
node_ins
)
.
outputs
...
@@ -641,7 +673,7 @@ class ScanSaveMem(gof.Optimizer):
...
@@ -641,7 +673,7 @@ class ScanSaveMem(gof.Optimizer):
nw_slice
=
(
fslice
,)
+
tuple
(
old_slices
[
1
:])
nw_slice
=
(
fslice
,)
+
tuple
(
old_slices
[
1
:])
nw_pos
=
compress_map
[
idx
]
nw_pos
=
inv_
compress_map
[
idx
]
nw_out
=
new_outs
[
nw_pos
]
nw_out
=
new_outs
[
nw_pos
]
...
@@ -660,41 +692,42 @@ class ScanSaveMem(gof.Optimizer):
...
@@ -660,41 +692,42 @@ class ScanSaveMem(gof.Optimizer):
# 3.8. Get replace pairs for those outputs that change
# 3.8. Get replace pairs for those outputs that change
# the number of stored intermediate steps
# the number of stored intermediate steps
for
pos
,
old_outs
in
old_outputs
:
for
pos
,
old_outs
in
old_outputs
:
nw_pos
=
compress_map
[
pos
]
if
len
(
old_outs
)
>
0
:
nw_out
=
new_outs
[
nw_pos
]
nw_pos
=
compress_map
[
pos
]
for
k
,
old
in
enumerate
(
old_outs
):
nw_out
=
new_outs
[
nw_pos
]
# Get the correct slice
for
k
,
old
in
enumerate
(
old_outs
):
cnf_slice
,
old_slices
=
slices
[
pos
][
k
]
# Get the correct slice
if
type
(
cnf_slice
[
0
])
is
slice
:
cnf_slice
,
old_slices
=
slices
[
pos
][
k
]
start
=
(
cnf_slice
[
0
]
.
start
-
nw_steps
-
if
type
(
cnf_slice
[
0
])
is
slice
:
init_l
[
pos
]
+
store_steps
[
pos
]
)
start
=
(
cnf_slice
[
0
]
.
start
-
nw_steps
-
if
(
cnf_slice
[
0
]
.
stop
is
not
None
and
init_l
[
pos
]
+
store_steps
[
pos
]
)
cnf_slice
[
0
]
.
stop
!=
sys
.
maxint
):
if
(
cnf_slice
[
0
]
.
stop
is
not
None
and
stop
=
(
cnf_slice
[
0
]
.
stop
-
nw_steps
-
cnf_slice
[
0
]
.
stop
!=
sys
.
maxint
):
init_l
[
pos
]
+
store_steps
[
pos
])
stop
=
(
cnf_slice
[
0
]
.
stop
-
nw_steps
-
init_l
[
pos
]
+
store_steps
[
pos
])
else
:
stop
=
None
nw_slice
=
(
(
slice
(
sanitize
(
start
),
sanitize
(
stop
),
sanitize
(
cnf_slice
[
0
]
.
step
)),)
+
tuple
(
old_slices
[
1
:])
)
else
:
else
:
stop
=
None
position
=
(
cnf_slice
[
0
]
-
nw_steps
-
nw_slice
=
(
(
slice
(
sanitize
(
start
),
init_l
[
pos
]
+
store_steps
[
pos
]
)
sanitize
(
stop
),
sanitize
(
cnf_slice
[
0
]
.
step
)),)
+
tuple
(
old_slices
[
1
:])
)
else
:
nw_slice
=
(
sanitize
(
position
),)
+
tuple
(
old_slices
[
1
:])
position
=
(
cnf_slice
[
0
]
-
nw_steps
-
init_l
[
pos
]
+
store_steps
[
pos
]
)
subtens
=
tensor
.
basic
.
Subtensor
(
nw_slice
)
sl_ins
=
tensor
.
basic
.
Subtensor
.
collapse
(
nw_slice
=
(
sanitize
(
position
),)
+
tuple
(
old_slices
[
1
:])
nw_slice
,
lambda
entry
:
isinstance
(
entry
subtens
=
tensor
.
basic
.
Subtensor
(
nw_slice
)
,
tensor
.
Variable
))
sl_ins
=
tensor
.
basic
.
Subtensor
.
collapse
(
new_o
=
subtens
.
make_node
(
new_outs
[
nw_pos
],
nw_slice
*
sl_ins
)
.
outputs
[
0
]
,
lambda
entry
:
isinstance
(
entry
if
new_o
.
ndim
>
0
:
,
tensor
.
Variable
))
new_o
=
new_o
[::
cnf_slice
[
1
]]
new_o
=
subtens
.
make_node
(
new_outs
[
nw_pos
],
old_new
+=
[(
old
,
new_o
)]
*
sl_ins
)
.
outputs
[
0
]
if
new_o
.
ndim
>
0
:
new_o
=
new_o
[::
cnf_slice
[
1
]]
old_new
+=
[(
old
,
new_o
)]
# 3.9. Get replace pairs for all other nodes
# 3.9. Get replace pairs for all other nodes
if
flag_store
or
global_nsteps
is
not
None
:
if
flag_store
or
global_nsteps
is
not
None
:
...
@@ -707,11 +740,11 @@ class ScanSaveMem(gof.Optimizer):
...
@@ -707,11 +740,11 @@ class ScanSaveMem(gof.Optimizer):
def
apply
(
self
,
env
):
def
apply
(
self
,
env
):
nodelist
=
list
(
env
.
toposort
())
old_new
=
[]
nodelist
=
[
x
for
x
in
env
.
toposort
()
if
isinstance
(
x
.
op
,
scan_op
.
Scan
)]
for
node
in
nodelist
:
for
node
in
nodelist
:
op
=
node
.
op
if
not
hasattr
(
node
.
op
,
'_scan_merge_visited'
):
if
isinstance
(
op
,
scan_op
.
Scan
):
self
.
process_node
(
env
,
node
)
self
.
process_node
(
env
,
node
)
# Just before specialize to have the other optimization
# Just before specialize to have the other optimization
...
...
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