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testgroup
pytensor
Commits
e93c61d1
提交
e93c61d1
authored
3月 25, 2014
作者:
abergeron
浏览文件
操作
浏览文件
下载
差异文件
Merge pull request #1779 from nouiz/faster_opt
Faster opt
上级
8cc9395f
08d61b24
隐藏空白字符变更
内嵌
并排
正在显示
4 个修改的文件
包含
204 行增加
和
190 行删除
+204
-190
opt.py
theano/gof/opt.py
+21
-18
optdb.py
theano/gof/optdb.py
+14
-4
opt.py
theano/sandbox/cuda/opt.py
+133
-123
blas.py
theano/tensor/blas.py
+36
-45
没有找到文件。
theano/gof/opt.py
浏览文件 @
e93c61d1
...
...
@@ -1047,10 +1047,6 @@ class PatternSub(LocalOptimizer):
self
.
__name__
=
name
self
.
pdb
=
pdb
def
skip_identities
(
self
,
expr
):
if
self
.
skip_identities_fn
:
return
self
.
skip_identities_fn
(
expr
)
def
op_key
(
self
):
return
self
.
op
...
...
@@ -1064,10 +1060,13 @@ class PatternSub(LocalOptimizer):
"""
if
node
.
op
!=
self
.
op
:
return
False
#TODO: if we remove pdb, do this speed things up?
def
match
(
pattern
,
expr
,
u
,
allow_multiple_clients
=
False
,
pdb
=
False
):
#TODO move outside match
def
retry_with_equiv
():
expr_equiv
=
self
.
skip_identities
(
expr
)
if
not
self
.
skip_identities_fn
:
return
False
expr_equiv
=
self
.
skip_identities_fn
(
expr
)
if
expr_equiv
is
None
:
return
False
#TODO: Not sure how to handle multiple_clients flag
...
...
@@ -1126,19 +1125,19 @@ class PatternSub(LocalOptimizer):
pdb
.
set_trace
()
return
u
def
build
(
pattern
,
u
):
if
isinstance
(
pattern
,
(
list
,
tuple
)):
args
=
[
build
(
p
,
u
)
for
p
in
pattern
[
1
:]]
return
pattern
[
0
](
*
args
)
elif
isinstance
(
pattern
,
basestring
):
return
u
[
unify
.
Var
(
pattern
)]
elif
isinstance
(
pattern
,
(
int
,
float
)):
return
pattern
else
:
return
pattern
.
clone
()
u
=
match
(
self
.
in_pattern
,
node
.
out
,
unify
.
Unification
(),
True
,
self
.
pdb
)
if
u
:
def
build
(
pattern
,
u
):
if
isinstance
(
pattern
,
(
list
,
tuple
)):
args
=
[
build
(
p
,
u
)
for
p
in
pattern
[
1
:]]
return
pattern
[
0
](
*
args
)
elif
isinstance
(
pattern
,
basestring
):
return
u
[
unify
.
Var
(
pattern
)]
elif
isinstance
(
pattern
,
(
int
,
float
)):
return
pattern
else
:
return
pattern
.
clone
()
p
=
self
.
out_pattern
new
=
build
(
p
,
u
)
####print "PatternSub matched:", new
...
...
@@ -1520,19 +1519,23 @@ class EquilibriumOptimizer(NavigatorOptimizer):
def
__init__
(
self
,
optimizers
,
failure_callback
=
None
,
ignore_newtrees
=
True
,
max_use_ratio
=
None
):
"""
""" Apply optimizations until equilibrium point.
:param optimizers: list or set of local or global optimizations to
apply until equilibrium.
:param max_use_ratio: each optimizer can be applied at most
(size of graph * this number) times
:param ignore_newtrees: See EquilibriumDB ignore_newtrees
parameter definition
"""
super
(
EquilibriumOptimizer
,
self
)
.
__init__
(
None
,
ignore_newtrees
=
True
,
ignore_newtrees
=
ignore_newtrees
,
failure_callback
=
failure_callback
)
self
.
local_optimizers_map
=
dict
()
self
.
local_optimizers_all
=
[]
...
...
theano/gof/optdb.py
浏览文件 @
e93c61d1
...
...
@@ -179,23 +179,33 @@ class Query(object):
class
EquilibriumDB
(
DB
):
"""
A set of potential optimizations which should be applied in an
"""A set of potential optimizations which should be applied in an
arbitrary order until equilibrium is reached.
Canonicalize, Stabilize, and Specialize are all equilibrium optimizations.
:param ignore_newtrees: If False, we will apply local opt on new
node introduced during local optimization application. This
could result in less fgraph iterations, but this don't mean it
will be faster globally.
.. note::
We can put LocalOptimizer and Optimizer as EquilibriumOptimizer
suppor both.
"""
def
__init__
(
self
,
ignore_newtrees
=
True
):
super
(
EquilibriumDB
,
self
)
.
__init__
()
self
.
ignore_newtrees
=
ignore_newtrees
def
query
(
self
,
*
tags
,
**
kwtags
):
opts
=
super
(
EquilibriumDB
,
self
)
.
query
(
*
tags
,
**
kwtags
)
return
opt
.
EquilibriumOptimizer
(
opts
,
max_use_ratio
=
config
.
optdb
.
max_use_ratio
,
failure_callback
=
opt
.
NavigatorOptimizer
.
warn_inplace
)
return
opt
.
EquilibriumOptimizer
(
opts
,
max_use_ratio
=
config
.
optdb
.
max_use_ratio
,
ignore_newtrees
=
self
.
ignore_newtrees
,
failure_callback
=
opt
.
NavigatorOptimizer
.
warn_inplace
)
class
SequenceDB
(
DB
):
...
...
theano/sandbox/cuda/opt.py
浏览文件 @
e93c61d1
...
...
@@ -18,7 +18,7 @@ from theano.gof import (local_optimizer, EquilibriumDB, SequenceDB, ProxyDB,
from
theano.gof.python25
import
all
,
any
from
theano.sandbox.cuda.basic_ops
import
(
device_properties
,
gpu_eye
,
gpu_from_host
,
host_from_gpu
,
HostFromGpu
,
gpu_from_host
,
host_from_gpu
,
GpuFromHost
,
HostFromGpu
,
GpuElemwise
,
GpuDimShuffle
,
GpuReshape
,
GpuCAReduce
,
GpuFlatten
,
GpuSubtensor
,
GpuAdvancedSubtensor1
,
GpuAdvancedIncSubtensor1
,
GpuAdvancedIncSubtensor1_dev20
,
...
...
@@ -42,10 +42,14 @@ from theano.sandbox.cuda.elemwise import erfinv_gpu
from
theano.sandbox.cuda.var
import
CudaNdarrayConstant
from
theano.scan_module
import
scan_utils
,
scan_op
,
scan_opt
from
theano.tensor.blas
import
_is_real_vector
,
_is_real_matrix
linalg
=
None
#optdb.print_summary() # shows what is currently registered
gpu_optimizer
=
EquilibriumDB
()
#ignore_newtrees is to speed the optimization as this is the pattern
#we use for optimization. Otherwise, we can iterate 100s of time on
#the graph and apply only a few optimizations each time.
gpu_optimizer
=
EquilibriumDB
(
ignore_newtrees
=
False
)
gpu_cut_copies
=
EquilibriumDB
()
gpu_seqopt
=
SequenceDB
()
gpu_seqopt
.
register
(
'gpu_local_optimizations'
,
gpu_optimizer
,
1
,
...
...
@@ -65,6 +69,9 @@ optdb.register('gpu_after_fusion',
optdb
.
__position__
.
get
(
'elemwise_fusion'
,
49
)
+
.
1
,
'gpu'
)
## Register merge_optimizer as a global opt
gpu_optimizer
.
register
(
'gpu_merge'
,
theano
.
gof
.
opt
.
merge_optimizer
,
'fast_run'
)
def
register_opt
(
*
tags
,
**
kwargs
):
def
f
(
local_opt
):
...
...
@@ -76,6 +83,8 @@ def register_opt(*tags, **kwargs):
#register local_track_shape_i at this level too
#to make multi-level lift of shape work.
register_opt
()(
theano
.
tensor
.
opt
.
local_track_shape_i
)
register_opt
(
name
=
'gpu_constant_folding'
)(
tensor
.
opt
.
constant_folding
)
class
InputToGpuOptimizer
(
Optimizer
):
...
...
@@ -128,7 +137,7 @@ def local_cut_gpu_host_gpu(node):
return
[
node
.
inputs
[
0
]
.
owner
.
inputs
[
0
]]
return
False
gpu_cut_copies
.
register
(
'cut_gpu_host_transfers'
,
local_cut_gpu_host_gpu
,
'fast_run'
,
'
inplace'
,
'
gpu'
)
'fast_run'
,
'gpu'
)
gpu_cut_copies
.
register
(
'cut_gpu_constant_transfers'
,
tensor
.
opt
.
constant_folding
,
'fast_run'
,
'gpu'
)
...
...
@@ -176,10 +185,10 @@ def local_gpu_elemwise_0(node):
"""
if
(
isinstance
(
node
.
op
,
tensor
.
Elemwise
)
and
dtype_in_elemwise_supported
(
node
.
op
)):
if
numpy
.
any
([
i
.
owner
and
isinstance
(
i
.
owner
.
op
,
HostFromGpu
)
for
i
in
node
.
inputs
]):
if
numpy
.
all
([
o
.
type
.
dtype
==
'float32'
for
o
in
node
.
outputs
]):
if
any
([
i
.
owner
and
isinstance
(
i
.
owner
.
op
,
HostFromGpu
)
for
i
in
node
.
inputs
]):
if
all
([
o
.
type
.
dtype
==
'float32'
for
o
in
node
.
outputs
]):
# Don't set any inplace pattern.
# gpu_inplace_elemwise_optimizer will do it later
...
...
@@ -196,14 +205,14 @@ def local_gpu_elemwise_0(node):
upcastable
=
set
([
'float32'
,
'int8'
,
'int16'
,
'uint8'
,
'uint16'
])
# case 1 - all inputs are already float32
if
numpy
.
all
([
i
.
type
.
dtype
==
'float32'
for
i
in
node
.
inputs
]):
if
all
([
i
.
type
.
dtype
==
'float32'
for
i
in
node
.
inputs
]):
#TODO: change this when fusion makes Elemwise with multiple
# outputs
gpu_elemwise
=
new_op
(
*
(
gpu_from_host
(
i
)
for
i
in
node
.
inputs
))
# case 2 - it is still ok if some inputs were upcast to float32
elif
numpy
.
all
([
i
.
type
.
dtype
in
upcastable
for
i
in
node
.
inputs
]):
elif
all
([
i
.
type
.
dtype
in
upcastable
for
i
in
node
.
inputs
]):
# second - establish that a new node with upcasted inputs
# has the same outputs types as the original node
upcasted
=
node
.
op
.
make_node
(
*
[
tensor
.
cast
(
i
,
'float32'
)
...
...
@@ -233,7 +242,7 @@ def local_gpu_elemwise_1(node):
"""
gpu_from_host(Elemwise)) -> GpuElemwise(gpu_from_host(...))
"""
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_i
,
=
node
.
inputs
if
(
host_i
.
owner
and
isinstance
(
host_i
.
owner
.
op
,
tensor
.
Elemwise
)
and
...
...
@@ -277,7 +286,7 @@ def local_gpu_dimshuffle_0(node):
new_op
=
GpuDimShuffle
(
node
.
op
.
input_broadcastable
,
node
.
op
.
new_order
)
return
[
host_from_gpu
(
new_op
(
gpu_from_host
(
input
)))]
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
tensor
.
DimShuffle
):
...
...
@@ -300,7 +309,7 @@ def local_gpu_specifyShape_0(node):
if
input
.
owner
and
isinstance
(
input
.
owner
.
op
,
HostFromGpu
):
return
[
host_from_gpu
(
tensor
.
specify_shape
(
gpu_from_host
(
input
),
*
node
.
inputs
[
1
:]))]
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
tensor
.
SpecifyShape
):
...
...
@@ -327,7 +336,7 @@ def local_gpu_dot_to_dot22(node):
# In case the got do input upcast, we much check that we can
# make it run on the gpu.
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
if
node
.
outputs
[
0
]
.
type
.
dtype
!=
'float32'
:
return
False
host_input
=
node
.
inputs
[
0
]
...
...
@@ -352,8 +361,8 @@ def local_gpu_dot_to_dot22(node):
if
node
.
op
==
tensor
.
basic
.
dot
:
if
node
.
outputs
[
0
]
.
type
.
dtype
!=
'float32'
:
return
False
if
numpy
.
any
([(
i
.
owner
and
i
.
owner
.
op
==
host_from_g
pu
)
for
i
in
node
.
inputs
]):
if
any
([
i
.
owner
and
isinstance
(
i
.
owner
.
op
,
HostFromG
pu
)
for
i
in
node
.
inputs
]):
x
,
y
=
node
.
inputs
if
_is_real_vector
(
x
)
and
_is_real_matrix
(
y
):
new_op
=
GpuDimShuffle
((
False
,),
[
'x'
,
0
])
...
...
@@ -386,10 +395,10 @@ def local_gpu_lazy_ifelse(node):
gpu_ifelse
=
theano
.
ifelse
.
IfElse
(
node
.
op
.
n_outs
,
gpu
=
True
)
outs_clients
=
reduce
(
list
.
__add__
,
[
out
.
clients
for
out
in
node
.
outputs
])
if
numpy
.
any
([(
i
.
owner
and
i
.
owner
.
op
==
host_from_gpu
)
for
i
in
node
.
inputs
])
or
numpy
.
any
(
[
c
!=
'output'
and
c
.
op
==
gpu_from_host
for
c
,
idx
in
outs_clients
]):
if
any
([(
i
.
owner
and
isinstance
(
i
.
owner
.
op
,
HostFromGpu
)
)
for
i
in
node
.
inputs
])
or
any
(
[
c
!=
'output'
and
c
.
op
==
gpu_from_host
for
c
,
idx
in
outs_clients
]):
c
=
node
.
inputs
[
0
]
outs
=
node
.
inputs
[
1
:]
...
...
@@ -403,7 +412,7 @@ def local_gpu_lazy_ifelse(node):
return
[
host_from_gpu
(
out
)
for
out
in
gpu_ifelse
.
make_node
(
c
,
*
outs
)
.
outputs
]
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
(
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
theano
.
ifelse
.
IfElse
)
and
...
...
@@ -440,14 +449,15 @@ def local_gpu_dot22(node):
dot(host_from_gpu) -> host_from_gpu(gpudot22)
"""
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
host_input
.
owner
.
op
==
tensor
.
blas
.
_dot22
:
if
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
tensor
.
blas
.
Dot22
):
x
,
y
=
host_input
.
owner
.
inputs
return
[
gpu_dot22
(
gpu_from_host
(
x
),
gpu_from_host
(
y
))]
if
node
.
op
==
tensor
.
blas
.
_dot22
:
if
numpy
.
any
([(
i
.
owner
and
i
.
owner
.
op
==
host_from_gpu
)
for
i
in
node
.
inputs
]):
if
isinstance
(
node
.
op
,
tensor
.
blas
.
Dot22
)
:
if
any
([(
i
.
owner
and
isinstance
(
i
.
owner
.
op
,
HostFromGpu
)
)
for
i
in
node
.
inputs
]):
x
,
y
=
node
.
inputs
return
[
host_from_gpu
(
gpu_dot22
(
gpu_from_host
(
x
),
gpu_from_host
(
y
)))]
...
...
@@ -462,16 +472,17 @@ def local_gpu_dot22scalar(node):
dot(host_from_gpu) -> host_from_gpu(gpudot22scalar)
"""
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
(
host_input
.
owner
and
host_input
.
owner
.
op
==
tensor
.
blas
.
_dot22scalar
):
isinstance
(
host_input
.
owner
.
op
,
tensor
.
blas
.
Dot22Scalar
)):
x
,
y
,
scalar
=
host_input
.
owner
.
inputs
return
[
gpu_dot22scalar
(
gpu_from_host
(
x
),
gpu_from_host
(
y
),
tensor
.
blas
.
_as_scalar
(
scalar
))]
if
node
.
op
==
tensor
.
blas
.
_dot22scalar
:
if
numpy
.
any
([(
i
.
owner
and
i
.
owner
.
op
==
host_from_g
pu
)
for
i
in
node
.
inputs
]):
if
isinstance
(
node
.
op
,
tensor
.
blas
.
Dot22Scalar
)
:
if
any
([
i
.
owner
and
isinstance
(
i
.
owner
.
op
,
HostFromG
pu
)
for
i
in
node
.
inputs
]):
x
,
y
,
scalar
=
node
.
inputs
return
[
host_from_gpu
(
gpu_dot22scalar
(
gpu_from_host
(
x
),
...
...
@@ -488,31 +499,28 @@ def local_gpu_gemv(node):
gemv(host_from_gpu) -> host_from_gpu(gpu_gemv)
"""
gemvs
=
{
tensor
.
blas
.
gemv_inplace
:
gpu_gemv_no_inplace
,
tensor
.
blas
.
gemv_no_inplace
:
gpu_gemv_no_inplace
,
tensor
.
blas_c
.
CGemv
(
inplace
=
True
):
gpu_gemv_no_inplace
,
tensor
.
blas_c
.
CGemv
(
inplace
=
False
):
gpu_gemv_no_inplace
,
}
if
node
.
op
==
gpu_from_host
:
gemvs
=
(
tensor
.
blas
.
Gemv
,
tensor
.
blas_c
.
CGemv
,
)
if
isinstance
(
node
.
op
,
GpuFromHost
):
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
host_input
.
owner
.
op
in
gemvs
:
if
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
gemvs
)
:
op
=
host_input
.
owner
.
op
z
,
a
,
x
,
y
,
b
=
host_input
.
owner
.
inputs
return
[
g
emvs
[
op
]
(
return
[
g
pu_gemv_no_inplace
(
gpu_from_host
(
z
),
a
,
gpu_from_host
(
x
),
gpu_from_host
(
y
),
b
)]
if
node
.
op
in
gemvs
:
if
isinstance
(
node
.
op
,
gemvs
)
:
z
,
a
,
x
,
y
,
b
=
node
.
inputs
x_on_gpu
=
(
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
)
y_on_gpu
=
(
y
.
owner
and
y
.
owner
.
op
==
host_from_gpu
)
z_on_gpu
=
(
z
.
owner
and
z
.
owner
.
op
==
host_from_gpu
)
x_on_gpu
=
(
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
)
y_on_gpu
=
(
y
.
owner
and
isinstance
(
y
.
owner
.
op
,
HostFromGpu
)
)
z_on_gpu
=
(
z
.
owner
and
isinstance
(
z
.
owner
.
op
,
HostFromGpu
)
)
if
x_on_gpu
or
y_on_gpu
or
z_on_gpu
:
return
[
host_from_gpu
(
g
emvs
[
node
.
op
]
(
g
pu_gemv_no_inplace
(
gpu_from_host
(
z
),
a
,
gpu_from_host
(
x
),
...
...
@@ -530,33 +538,30 @@ def local_gpu_ger(node):
ger(host_from_gpu) -> host_from_gpu(gpu_ger)
"""
gers
=
{
tensor
.
blas_c
.
CGer
(
destructive
=
True
):
gpu_ger_no_inplace
,
tensor
.
blas_c
.
CGer
(
destructive
=
False
):
gpu_ger_no_inplace
,
tensor
.
blas
.
Ger
(
destructive
=
True
):
gpu_ger_no_inplace
,
tensor
.
blas
.
Ger
(
destructive
=
False
):
gpu_ger_no_inplace
,
tensor
.
blas_scipy
.
ScipyGer
(
destructive
=
True
):
gpu_ger_no_inplace
,
tensor
.
blas_scipy
.
ScipyGer
(
destructive
=
False
):
gpu_ger_no_inplace
,
}
if
node
.
op
==
gpu_from_host
:
gers
=
(
tensor
.
blas_c
.
CGer
,
tensor
.
blas
.
Ger
,
tensor
.
blas_scipy
.
ScipyGer
,
)
if
isinstance
(
node
.
op
,
GpuFromHost
):
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
host_input
.
owner
.
op
in
gers
:
if
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
gers
)
:
op
=
host_input
.
owner
.
op
z
,
a
,
x
,
y
=
host_input
.
owner
.
inputs
return
[
g
ers
[
op
]
(
return
[
g
pu_ger_no_inplace
(
gpu_from_host
(
z
),
a
,
gpu_from_host
(
x
),
gpu_from_host
(
y
)
)]
if
node
.
op
in
gers
:
if
isinstance
(
node
.
op
,
gers
)
:
z
,
a
,
x
,
y
=
node
.
inputs
x_on_gpu
=
(
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
)
y_on_gpu
=
(
y
.
owner
and
y
.
owner
.
op
==
host_from_gpu
)
z_on_gpu
=
(
z
.
owner
and
z
.
owner
.
op
==
host_from_gpu
)
x_on_gpu
=
(
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
)
y_on_gpu
=
(
y
.
owner
and
isinstance
(
y
.
owner
.
op
,
HostFromGpu
)
)
z_on_gpu
=
(
z
.
owner
and
isinstance
(
z
.
owner
.
op
,
HostFromGpu
)
)
if
x_on_gpu
or
y_on_gpu
or
z_on_gpu
:
return
[
host_from_gpu
(
g
ers
[
node
.
op
]
(
g
pu_ger_no_inplace
(
gpu_from_host
(
z
),
a
,
gpu_from_host
(
x
),
...
...
@@ -573,26 +578,24 @@ def local_gpu_gemm(node):
gemm(host_from_gpu) -> host_from_gpu(gpu_gemm)
"""
gemms
=
{
#tensor.blas.gemm_inplace: gpu_gemm_inplace,
tensor
.
blas
.
gemm_no_inplace
:
gpu_gemm_no_inplace
}
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
):
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
host_input
.
owner
.
op
in
gemms
:
if
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
tensor
.
blas
.
Gemm
):
op
=
host_input
.
owner
.
op
z
,
a
,
x
,
y
,
b
=
host_input
.
owner
.
inputs
return
[
g
emms
[
op
]
(
gpu_from_host
(
z
),
a
,
gpu_from_host
(
x
),
gpu_from_host
(
y
),
b
)]
if
node
.
op
in
gemms
:
return
[
g
pu_gemm_no_inplace
(
gpu_from_host
(
z
),
a
,
gpu_from_host
(
x
),
gpu_from_host
(
y
),
b
)]
if
isinstance
(
node
.
op
,
tensor
.
blas
.
Gemm
)
:
z
,
a
,
x
,
y
,
b
=
node
.
inputs
x_on_gpu
=
(
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
)
y_on_gpu
=
(
y
.
owner
and
y
.
owner
.
op
==
host_from_gpu
)
z_on_gpu
=
(
z
.
owner
and
z
.
owner
.
op
==
host_from_gpu
)
x_on_gpu
=
(
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
)
y_on_gpu
=
(
y
.
owner
and
isinstance
(
y
.
owner
.
op
,
HostFromGpu
)
)
z_on_gpu
=
(
z
.
owner
and
isinstance
(
z
.
owner
.
op
,
HostFromGpu
)
)
if
x_on_gpu
or
y_on_gpu
or
z_on_gpu
:
return
[
host_from_gpu
(
g
emms
[
node
.
op
]
(
gpu_from_host
(
z
),
return
[
host_from_gpu
(
g
pu_gemm_no_inplace
(
gpu_from_host
(
z
),
a
,
gpu_from_host
(
x
),
gpu_from_host
(
y
),
...
...
@@ -613,9 +616,10 @@ def local_gpu_careduce(node):
scalar_op
=
node
.
op
.
scalar_op
# currently, only these two ops are supported at all,
# and max does not support all combinations of axes
if
node
.
op
.
scalar_op
in
[
scal
.
add
,
scal
.
mul
,
scal
.
maximum
,
scal
.
minimum
]:
if
isinstance
(
node
.
op
.
scalar_op
,
(
scal
.
Add
,
scal
.
Mul
,
scal
.
Maximum
,
scal
.
Minimum
)):
x
,
=
node
.
inputs
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
if
node
.
op
.
axis
is
None
:
reduce_mask
=
[
1
]
*
x
.
type
.
ndim
else
:
...
...
@@ -685,7 +689,7 @@ def local_gpu_careduce(node):
@register_opt
()
@local_optimizer
([
gpu_from_host
,
tensor
.
Reshape
])
def
local_gpu_reshape
(
node
):
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
\
isinstance
(
host_input
.
owner
.
op
,
tensor
.
Reshape
):
...
...
@@ -702,7 +706,7 @@ def local_gpu_reshape(node):
return
[
gpu_reshape
]
if
isinstance
(
node
.
op
,
tensor
.
Reshape
):
x
,
shp
=
node
.
inputs
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
gpu_x
,
=
x
.
owner
.
inputs
gpu_reshape
=
GpuReshape
(
node
.
op
.
ndim
)(
gpu_x
,
shp
)
if
gpu_reshape
.
broadcastable
!=
node
.
outputs
[
0
]
.
broadcastable
:
...
...
@@ -719,7 +723,7 @@ def local_gpu_reshape(node):
@register_opt
()
@local_optimizer
([
gpu_from_host
,
tensor
.
Flatten
])
def
local_gpu_flatten
(
node
):
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
\
isinstance
(
host_input
.
owner
.
op
,
tensor
.
Flatten
):
...
...
@@ -729,7 +733,7 @@ def local_gpu_flatten(node):
if
isinstance
(
node
.
op
,
tensor
.
Flatten
):
x
,
=
node
.
inputs
outdim
=
node
.
op
.
outdim
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
gpu_x
,
=
x
.
owner
.
inputs
return
[
host_from_gpu
(
GpuFlatten
(
outdim
)(
gpu_x
))]
return
False
...
...
@@ -738,7 +742,7 @@ def local_gpu_flatten(node):
@register_opt
()
@local_optimizer
([
gpu_from_host
,
tensor
.
Subtensor
])
def
local_gpu_subtensor
(
node
):
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
\
isinstance
(
host_input
.
owner
.
op
,
tensor
.
Subtensor
):
...
...
@@ -748,9 +752,11 @@ def local_gpu_subtensor(node):
return
[
GpuSubtensor
(
subt
.
idx_list
)(
gpu_from_host
(
x
),
*
coords
)]
if
isinstance
(
node
.
op
,
tensor
.
Subtensor
):
x
=
node
.
inputs
[
0
]
coords
=
node
.
inputs
[
1
:]
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
and
x
.
dtype
==
"float32"
:
if
(
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
and
x
.
dtype
==
"float32"
):
gpu_x
,
=
x
.
owner
.
inputs
coords
=
node
.
inputs
[
1
:]
return
[
host_from_gpu
(
GpuSubtensor
(
node
.
op
.
idx_list
)(
gpu_x
,
*
coords
))]
return
False
...
...
@@ -759,7 +765,7 @@ def local_gpu_subtensor(node):
@register_opt
()
@local_optimizer
([
gpu_from_host
,
tensor
.
AdvancedSubtensor1
])
def
local_gpu_advanced_subtensor1
(
node
):
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
\
host_input
.
owner
.
op
.
__class__
is
tensor
.
AdvancedSubtensor1
:
...
...
@@ -769,7 +775,7 @@ def local_gpu_advanced_subtensor1(node):
if
node
.
op
.
__class__
is
tensor
.
AdvancedSubtensor1
:
x
=
node
.
inputs
[
0
]
coords
=
node
.
inputs
[
1
:]
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
and
x
.
dtype
==
"float32"
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
and
x
.
dtype
==
"float32"
:
gpu_x
,
=
x
.
owner
.
inputs
return
[
host_from_gpu
(
GpuAdvancedSubtensor1
()(
gpu_x
,
*
coords
))]
return
False
...
...
@@ -778,7 +784,7 @@ def local_gpu_advanced_subtensor1(node):
@register_opt
()
@local_optimizer
([
gpu_from_host
,
tensor
.
AdvancedIncSubtensor1
])
def
local_gpu_advanced_incsubtensor1
(
node
):
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
# Should not execute for GpuAdvancedIncSubtensor1
if
host_input
.
owner
and
\
...
...
@@ -813,12 +819,12 @@ def local_gpu_advanced_incsubtensor1(node):
x
,
y
=
node
.
inputs
[
0
:
2
]
coords
=
node
.
inputs
[
2
:]
go_gpu
=
False
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
go_gpu
=
True
gpu_x
,
=
x
.
owner
.
inputs
else
:
gpu_x
=
gpu_from_host
(
x
)
if
y
.
owner
and
y
.
owner
.
op
==
host_from_gpu
:
if
y
.
owner
and
isinstance
(
y
.
owner
.
op
,
HostFromGpu
)
:
go_gpu
=
True
gpu_y
,
=
y
.
owner
.
inputs
else
:
...
...
@@ -852,7 +858,7 @@ def local_gpu_advanced_incsubtensor1(node):
@register_opt
()
@local_optimizer
([
gpu_from_host
,
tensor
.
IncSubtensor
])
def
local_gpu_incsubtensor
(
node
):
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_output
=
node
.
inputs
[
0
]
if
host_output
.
owner
and
\
type
(
host_output
.
owner
.
op
)
==
tensor
.
IncSubtensor
:
...
...
@@ -876,12 +882,12 @@ def local_gpu_incsubtensor(node):
assert
isinstance
(
y
.
type
,
tensor
.
TensorType
)
coords
=
node
.
inputs
[
2
:]
go_gpu
=
False
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
go_gpu
=
True
gpu_x
,
=
x
.
owner
.
inputs
else
:
gpu_x
=
gpu_from_host
(
x
)
if
y
.
owner
and
y
.
owner
.
op
==
host_from_gpu
:
if
y
.
owner
and
isinstance
(
y
.
owner
.
op
,
HostFromGpu
)
:
go_gpu
=
True
gpu_y
,
=
y
.
owner
.
inputs
else
:
...
...
@@ -901,7 +907,7 @@ def local_gpu_incsubtensor(node):
def
local_gpu_shape
(
node
):
if
isinstance
(
node
.
op
,
tensor
.
Shape
):
x
,
=
node
.
inputs
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
gpu_x
,
=
x
.
owner
.
inputs
return
[
gpu_shape
(
gpu_x
)]
return
False
...
...
@@ -913,7 +919,7 @@ def local_gpu_rebroadcast(node):
'''rebroadcast(host_from_gpu(x)) -> host_from_gpu(rebroadcast(x))'''
if
isinstance
(
node
.
op
,
tensor
.
Rebroadcast
):
x
,
=
node
.
inputs
if
(
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
):
if
(
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
):
gpu_x
=
x
.
owner
.
inputs
[
0
]
return
[
host_from_gpu
(
node
.
op
(
gpu_x
))]
...
...
@@ -927,7 +933,7 @@ def gpu_print_wrapper(op, cnda):
def
local_gpu_print_op
(
node
):
if
isinstance
(
node
.
op
,
tensor
.
printing
.
Print
):
x
,
=
node
.
inputs
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
gpu_x
,
=
x
.
owner
.
inputs
new_op
=
node
.
op
.
__class__
(
global_fn
=
gpu_print_wrapper
)
new_op
.
old_op
=
node
.
op
...
...
@@ -948,7 +954,7 @@ import theano.tensor.nnet
def
local_gpu_crossentorpy_softmax_argmax_1hot_with_bias
(
node
):
if
isinstance
(
node
.
op
,
tensor
.
nnet
.
CrossentropySoftmaxArgmax1HotWithBias
):
x
,
b
,
y
=
node
.
inputs
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
gpu_x
,
=
x
.
owner
.
inputs
# if y is a cast to integers, we can go to the underlying
# thing if we want, since this gpu op will cast to integers
...
...
@@ -978,7 +984,7 @@ def local_gpu_crossentorpy_softmax_argmax_1hot_with_bias(node):
def
local_gpu_crossentorpy_softmax_1hot_with_bias_dx
(
node
):
if
isinstance
(
node
.
op
,
tensor
.
nnet
.
CrossentropySoftmax1HotWithBiasDx
):
dnll
,
sm
,
yidx
=
node
.
inputs
if
sm
.
owner
and
sm
.
owner
.
op
==
host_from_gpu
:
if
sm
.
owner
and
isinstance
(
sm
.
owner
.
op
,
HostFromGpu
)
:
gpu_sm
,
=
sm
.
owner
.
inputs
gpu_dx
=
GpuCrossentropySoftmax1HotWithBiasDx
()(
gpu_from_host
(
dnll
),
...
...
@@ -993,7 +999,7 @@ def local_gpu_crossentorpy_softmax_1hot_with_bias_dx(node):
def
local_gpu_softmax
(
node
):
if
isinstance
(
node
.
op
,
tensor
.
nnet
.
Softmax
):
x
,
=
node
.
inputs
if
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
:
if
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
:
gpu_x
,
=
x
.
owner
.
inputs
gpu_sm
=
GpuSoftmax
()(
gpu_x
)
return
[
host_from_gpu
(
gpu_sm
)]
...
...
@@ -1005,8 +1011,8 @@ def local_gpu_softmax(node):
def
local_gpu_softmax_with_bias
(
node
):
if
isinstance
(
node
.
op
,
tensor
.
nnet
.
SoftmaxWithBias
):
x
,
b
=
node
.
inputs
x_on_gpu
=
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
b_on_gpu
=
b
.
owner
and
b
.
owner
.
op
==
host_from_gpu
x_on_gpu
=
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
b_on_gpu
=
b
.
owner
and
isinstance
(
b
.
owner
.
op
,
HostFromGpu
)
if
x_on_gpu
or
b_on_gpu
:
gpu_sm
=
GpuSoftmaxWithBias
()(
gpu_from_host
(
x
),
gpu_from_host
(
b
))
return
[
host_from_gpu
(
gpu_sm
)]
...
...
@@ -1078,7 +1084,7 @@ def local_gpu_conv(node):
atol
=
3e-5
return
CudaNdarrayType
.
values_eq_approx
(
a
,
b
,
atol
=
atol
)
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
#gpu_from_host(conv) -> gpu_conv(gpu_from_host)
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
conv
.
ConvOp
):
...
...
@@ -1098,8 +1104,8 @@ def local_gpu_conv(node):
if
isinstance
(
node
.
op
,
conv
.
ConvOp
):
#conv(host_from_gpu) -> host_from_gpu(gpu_conv)
img
,
kern
=
node
.
inputs
img_on_gpu
=
(
img
.
owner
and
i
mg
.
owner
.
op
==
host_from_gpu
)
kern_on_gpu
=
(
kern
.
owner
and
kern
.
owner
.
op
==
host_from_gpu
)
img_on_gpu
=
(
img
.
owner
and
i
sinstance
(
img
.
owner
.
op
,
HostFromGpu
)
)
kern_on_gpu
=
(
kern
.
owner
and
isinstance
(
kern
.
owner
.
op
,
HostFromGpu
)
)
if
img_on_gpu
or
kern_on_gpu
:
gpu_conv
=
GpuConvOp_from_ConvOp
(
node
.
op
)
if
gpu_conv
is
None
:
...
...
@@ -1122,7 +1128,7 @@ import theano.tensor.signal.downsample as downsample
def
local_gpu_downsample_factor_max
(
node
):
if
isinstance
(
node
.
op
,
downsample
.
DownsampleFactorMax
):
x
,
=
node
.
inputs
if
(
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
):
if
(
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
):
gpu_ds
=
GpuDownsampleFactorMax
(
node
.
op
.
ds
,
node
.
op
.
ignore_border
)
return
[
host_from_gpu
(
gpu_ds
(
x
.
owner
.
inputs
[
0
]))]
...
...
@@ -1132,7 +1138,7 @@ def local_gpu_downsample_factor_max(node):
def
local_gpu_downsample_factor_max_grad
(
node
):
if
isinstance
(
node
.
op
,
downsample
.
DownsampleFactorMaxGrad
):
x
,
z
,
gz
=
node
.
inputs
if
(
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
):
if
(
x
.
owner
and
isinstance
(
x
.
owner
.
op
,
HostFromGpu
)
):
gpu_ds_grad
=
GpuDownsampleFactorMaxGrad
(
node
.
op
.
ds
,
node
.
op
.
ignore_border
)
return
[
host_from_gpu
(
gpu_ds_grad
(
x
.
owner
.
inputs
[
0
],
...
...
@@ -1184,12 +1190,12 @@ def local_gpu_join(node):
#print "OPT: axis_and_tensors=", axis_and_tensors
matches
=
[(
not
t
.
owner
is
None
and
t
.
owner
.
op
==
host_from_gpu
)
or
matches
=
[(
not
t
.
owner
is
None
and
isinstance
(
t
.
owner
.
op
,
HostFromGpu
)
)
or
isinstance
(
t
,
gof
.
Constant
)
for
t
in
axis_and_tensors
[
1
:]]
#print "OPT: matches =", matches
# if all input tensors are host_from_gpu'ified
if
numpy
.
all
(
matches
):
if
all
(
matches
):
# the extra gpu_from_host introduced here will
# be removed by further optimizations
new_tensors
=
[
gpu_from_host
(
t
)
for
t
in
axis_and_tensors
[
1
:]]
...
...
@@ -1363,18 +1369,18 @@ def local_gpualloc(node):
replace
=
False
if
node
.
op
==
tensor
.
alloc
:
if
node
.
inputs
[
0
]
.
owner
and
\
node
.
inputs
[
0
]
.
owner
.
op
==
host_from_gpu
:
isinstance
(
node
.
inputs
[
0
]
.
owner
.
op
,
HostFromGpu
)
:
replace
=
True
elif
all
([
c
!=
'output'
and
c
.
op
==
gpu_from_host
for
c
,
idx
in
node
.
outputs
[
0
]
.
clients
]):
for
c
,
idx
in
node
.
outputs
[
0
]
.
clients
]):
# if all clients are on gpu
replace
=
True
elif
all
([
c
!=
'output'
and
c
.
op
==
tensor
.
join
and
all
([
i
.
owner
and
i
.
owner
.
op
in
[
host_from_gpu
,
tensor
.
alloc
]
for
i
in
c
.
inputs
[
1
:]])
for
c
,
idx
in
node
.
outputs
[
0
]
.
clients
]):
c
.
op
==
tensor
.
join
and
all
([
i
.
owner
and
i
.
owner
.
op
in
[
host_from_gpu
,
tensor
.
alloc
]
for
i
in
c
.
inputs
[
1
:]])
for
c
,
idx
in
node
.
outputs
[
0
]
.
clients
]):
# if the client is a subtensor with input on gpu or alloc
replace
=
True
if
replace
and
node
.
inputs
[
0
]
.
dtype
!=
'float32'
:
...
...
@@ -1424,15 +1430,15 @@ def local_gpu_eye(node):
eye(host_from_gpu) -> host_from_gpu(gpueye)
"""
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
(
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
tensor
.
Eye
)
and
host_input
.
owner
.
op
.
dtype
==
"float32"
):
return
[
gpu_eye
(
*
host_input
.
owner
.
inputs
)]
if
isinstance
(
node
.
op
,
tensor
.
Eye
)
and
node
.
op
.
dtype
==
"float32"
:
if
numpy
.
any
([(
i
.
owner
and
i
.
owner
.
op
==
host_from_gpu
)
for
i
in
node
.
inputs
]):
if
any
([(
i
.
owner
and
isinstance
(
i
.
owner
.
op
,
HostFromGpu
)
)
for
i
in
node
.
inputs
]):
return
[
host_from_gpu
(
gpu_eye
(
*
node
.
inputs
))]
return
False
...
...
@@ -1507,14 +1513,18 @@ def local_gpu_extract_diagonal(node):
extract_diagonal(host_from_gpu()) -> host_from_gpu(extract_diagonal)
gpu_from_host(extract_diagonal) -> extract_diagonal(gpu_from_host)
"""
from
theano.sandbox
import
linalg
global
linalg
if
linalg
is
None
:
from
theano.sandbox
import
linalg
linalg
=
theano
.
sandbox
.
linalg
if
(
isinstance
(
node
.
op
,
linalg
.
ops
.
ExtractDiag
)
and
isinstance
(
node
.
inputs
[
0
]
.
type
,
theano
.
tensor
.
TensorType
)):
inp
=
node
.
inputs
[
0
]
if
inp
.
owner
and
isinstance
(
inp
.
owner
.
op
,
HostFromGpu
):
return
[
host_from_gpu
(
linalg
.
extract_diag
(
gpu_from_host
(
inp
)))]
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
(
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
linalg
.
ops
.
ExtractDiag
)
and
...
...
@@ -1535,7 +1545,7 @@ def gpuScanOptimization(node):
"""
#gpu_from_host(scan) -> GPUscan(gpu_from_host)
if
node
.
op
==
gpu_from_host
:
if
isinstance
(
node
.
op
,
GpuFromHost
)
:
host_input
=
node
.
inputs
[
0
]
if
(
host_input
.
owner
and
isinstance
(
host_input
.
owner
.
op
,
scan_op
.
Scan
)
and
...
...
@@ -1596,8 +1606,8 @@ def gpuScanOptimization(node):
#scan(host_from_gpu) -> host_from_gpu(GPUscan)
if
(
type
(
node
.
op
)
==
scan_op
.
Scan
and
not
node
.
op
.
info
[
'gpu'
]):
if
numpy
.
any
([(
i
.
owner
and
i
.
owner
.
op
==
host_from_gpu
)
for
i
in
node
.
inputs
]):
if
any
([(
i
.
owner
and
isinstance
(
i
.
owner
.
op
,
HostFromGpu
)
)
for
i
in
node
.
inputs
]):
thescan
=
node
.
op
info
=
copy
.
deepcopy
(
thescan
.
info
)
...
...
theano/tensor/blas.py
浏览文件 @
e93c61d1
...
...
@@ -1190,32 +1190,31 @@ def _beta_L_plus_alpha_M(beta, L, alpha, M, recurse_flip=True):
# it also might be the case that there is a dimshuffle between the +
# and the dot22. local_dot_to_dot22 in particular will put in such things.
if
M
.
owner
and
isinstance
(
M
.
owner
.
op
,
T
.
DimShuffle
):
if
(
M
.
owner
and
isinstance
(
M
.
owner
.
op
,
T
.
DimShuffle
)
and
M
.
owner
.
inputs
[
0
]
.
owner
and
isinstance
(
M
.
owner
.
inputs
[
0
]
.
owner
.
op
,
Dot22
)):
MM
=
M
.
owner
.
inputs
[
0
]
if
tuple
(
M
.
owner
.
op
.
new_order
)
==
(
0
,):
if
M
.
owner
.
op
.
new_order
==
(
0
,):
# it is making a column MM into a vector
if
MM
.
owner
and
MM
.
owner
.
op
==
_dot22
:
MMl
,
MMr
=
MM
.
owner
.
inputs
g
=
gemm_no_inplace
(
L
.
dimshuffle
(
0
,
'x'
),
alpha
,
MMl
,
MMr
,
beta
)
rval
=
[
g
.
dimshuffle
(
0
)]
return
rval
,
MM
if
tuple
(
M
.
owner
.
op
.
new_order
)
==
(
1
,):
MMl
,
MMr
=
MM
.
owner
.
inputs
g
=
gemm_no_inplace
(
L
.
dimshuffle
(
0
,
'x'
),
alpha
,
MMl
,
MMr
,
beta
)
rval
=
[
g
.
dimshuffle
(
0
)]
return
rval
,
MM
if
M
.
owner
.
op
.
new_order
==
(
1
,):
# it is making a row MM into a vector
if
MM
.
owner
and
MM
.
owner
.
op
==
_dot22
:
MMl
,
MMr
=
MM
.
owner
.
inputs
g
=
gemm_no_inplace
(
L
.
dimshuffle
(
'x'
,
0
),
alpha
,
MMl
,
MMr
,
beta
)
rval
=
[
g
.
dimshuffle
(
1
)]
return
rval
,
MM
if
tuple
(
M
.
owner
.
op
.
new_order
)
==
():
MMl
,
MMr
=
MM
.
owner
.
inputs
g
=
gemm_no_inplace
(
L
.
dimshuffle
(
'x'
,
0
),
alpha
,
MMl
,
MMr
,
beta
)
rval
=
[
g
.
dimshuffle
(
1
)]
return
rval
,
MM
if
len
(
M
.
owner
.
op
.
new_order
)
==
0
:
# it is making a row MM into a vector
if
MM
.
owner
and
MM
.
owner
.
op
==
_dot22
:
MMl
,
MMr
=
MM
.
owner
.
inputs
g
=
gemm_no_inplace
(
L
.
dimshuffle
(
'x'
,
'x'
),
alpha
,
MMl
,
MMr
,
beta
)
rval
=
[
g
.
dimshuffle
()]
return
rval
,
MM
MMl
,
MMr
=
MM
.
owner
.
inputs
g
=
gemm_no_inplace
(
L
.
dimshuffle
(
'x'
,
'x'
),
alpha
,
MMl
,
MMr
,
beta
)
rval
=
[
g
.
dimshuffle
()]
return
rval
,
MM
# this is False'd out because of inadequate testing.
# TODO see ticket #237
...
...
@@ -1379,29 +1378,31 @@ def _gemm_from_factored_list(lst):
"""Returns None, or a list to replace node.outputs
"""
# Make every pair in list have matching dtypes
# sM can be a tuple of 2 elements or a theano variable.
# We should not use __len__ as theano variables don't support
# it. I don't want to change this to isinstance(sM, tuple)
# as I'm not able to make a test that triggers this case.
def
is_pair
(
sM
):
try
:
s
,
M
=
sM
return
True
except
Exception
:
return
False
lst2
=
[]
# Remove the tuple that can't be cast correctly.
# This can happen when we try to cast a complex to a real
for
sM
in
lst
:
if
is_pair
(
sM
):
# Make every pair in list have matching dtypes
# sM can be a tuple of 2 elements or a theano variable.
if
isinstance
(
sM
,
tuple
):
sm0
,
sm1
=
sM
sm0
=
T
.
as_tensor_variable
(
sm0
)
if
theano
.
scalar
.
upcast
(
sm0
.
dtype
,
sm1
.
dtype
)
==
sm1
.
dtype
:
lst2
.
append
((
T
.
cast
(
sm0
,
sm1
.
dtype
),
sM
[
1
]))
lst
=
lst2
def
item_to_var
(
t
):
try
:
s
,
M
=
t
except
Exception
:
return
t
if
s
==
1
:
return
M
if
s
==
-
1
:
return
-
M
return
s
*
M
# Try every pair in the sM_list, trying to turn it into a gemm operation
for
i
in
xrange
(
len
(
lst
)
-
1
):
s_i
,
M_i
=
lst
[
i
]
...
...
@@ -1418,16 +1419,6 @@ def _gemm_from_factored_list(lst):
s_j
,
M_j
)
#print 'GOT IT', gemm_of_sM_list
if
gemm_of_sM_list
:
def
item_to_var
(
t
):
try
:
s
,
M
=
t
except
Exception
:
return
t
if
s
==
1
:
return
M
if
s
==
-
1
:
return
-
M
return
s
*
M
assert
len
(
gemm_of_sM_list
)
==
1
add_inputs
=
[
item_to_var
(
input
)
...
...
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