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testgroup
pytensor
Commits
3f9d0601
提交
3f9d0601
authored
6月 06, 2016
作者:
sentient07
浏览文件
操作
浏览文件
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电子邮件补丁
差异文件
Changed op_lifter to accept Op and Inputs
上级
e45b6cd6
全部展开
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
41 行增加
和
41 行删除
+41
-41
dnn.py
theano/gpuarray/dnn.py
+24
-24
extra_ops.py
theano/gpuarray/extra_ops.py
+4
-4
multinomial.py
theano/gpuarray/multinomial.py
+6
-6
neighbours.py
theano/gpuarray/neighbours.py
+3
-3
nerv.py
theano/gpuarray/nerv.py
+4
-4
opt.py
theano/gpuarray/opt.py
+0
-0
没有找到文件。
theano/gpuarray/dnn.py
浏览文件 @
3f9d0601
...
@@ -1498,35 +1498,35 @@ def local_dnn_convi_output_merge(node, *inputs):
...
@@ -1498,35 +1498,35 @@ def local_dnn_convi_output_merge(node, *inputs):
@register_opt
(
'cudnn'
,
'fast_compile'
)
@register_opt
(
'cudnn'
,
'fast_compile'
)
@op_lifter
([
Pool
])
@op_lifter
([
Pool
])
def
local_pool_dnn_alternative
(
node
,
ctx_name
):
def
local_pool_dnn_alternative
(
op
,
ctx_name
,
inputs
):
if
not
dnn_available
(
ctx_name
):
if
not
dnn_available
(
ctx_name
):
raise_no_cudnn
()
raise_no_cudnn
()
if
not
node
.
op
.
ignore_border
:
if
not
op
.
ignore_border
:
return
return
img
,
=
node
.
inputs
img
,
=
inputs
img
=
as_gpuarray_variable
(
img
,
ctx_name
)
img
=
as_gpuarray_variable
(
img
,
ctx_name
)
ds
=
node
.
op
.
ds
ds
=
op
.
ds
stride
=
node
.
op
.
st
stride
=
op
.
st
pad
=
node
.
op
.
padding
pad
=
op
.
padding
mode
=
node
.
op
.
mode
mode
=
op
.
mode
return
dnn_pool
(
gpu_contiguous
(
img
),
ds
,
stride
=
stride
,
pad
=
pad
,
mode
=
mode
)
return
dnn_pool
(
gpu_contiguous
(
img
),
ds
,
stride
=
stride
,
pad
=
pad
,
mode
=
mode
)
@register_opt
(
'cudnn'
,
'fast_compile'
)
@register_opt
(
'cudnn'
,
'fast_compile'
)
@op_lifter
([
MaxPoolGrad
])
@op_lifter
([
MaxPoolGrad
])
def
local_pool_dnn_grad_stride
(
node
,
ctx_name
):
def
local_pool_dnn_grad_stride
(
op
,
ctx_name
,
inputs
):
if
not
dnn_available
(
ctx_name
):
if
not
dnn_available
(
ctx_name
):
raise_no_cudnn
()
raise_no_cudnn
()
if
not
node
.
op
.
ignore_border
:
if
not
node
.
op
.
ignore_border
:
return
return
inp
,
out
,
out_grad
=
node
.
inputs
inp
,
out
,
out_grad
=
inputs
inp
=
as_gpuarray_variable
(
inp
,
ctx_name
)
inp
=
as_gpuarray_variable
(
inp
,
ctx_name
)
out
=
as_gpuarray_variable
(
out
,
ctx_name
)
out
=
as_gpuarray_variable
(
out
,
ctx_name
)
out_grad
=
as_gpuarray_variable
(
out_grad
,
ctx_name
)
out_grad
=
as_gpuarray_variable
(
out_grad
,
ctx_name
)
ds
=
node
.
op
.
ds
ds
=
op
.
ds
st
=
node
.
op
.
st
st
=
op
.
st
pad
=
node
.
op
.
padding
pad
=
op
.
padding
mode
=
node
.
op
.
mode
mode
=
op
.
mode
return
GpuDnnPoolGrad
(
mode
=
mode
)(
gpu_contiguous
(
inp
),
return
GpuDnnPoolGrad
(
mode
=
mode
)(
gpu_contiguous
(
inp
),
gpu_contiguous
(
out
),
gpu_contiguous
(
out
),
...
@@ -1538,18 +1538,18 @@ def local_pool_dnn_grad_stride(node, ctx_name):
...
@@ -1538,18 +1538,18 @@ def local_pool_dnn_grad_stride(node, ctx_name):
@register_opt
(
'cudnn'
,
'fast_compile'
)
@register_opt
(
'cudnn'
,
'fast_compile'
)
@op_lifter
([
AveragePoolGrad
])
@op_lifter
([
AveragePoolGrad
])
def
local_avg_pool_dnn_grad_stride
(
node
,
ctx_name
):
def
local_avg_pool_dnn_grad_stride
(
op
,
ctx_name
,
inputs
):
if
not
dnn_available
(
ctx_name
):
if
not
dnn_available
(
ctx_name
):
raise_no_cudnn
()
raise_no_cudnn
()
if
not
node
.
op
.
ignore_border
:
if
not
op
.
ignore_border
:
return
return
inp
,
out_grad
=
node
.
inputs
inp
,
out_grad
=
inputs
inp
=
as_gpuarray_variable
(
inp
,
ctx_name
)
inp
=
as_gpuarray_variable
(
inp
,
ctx_name
)
out_grad
=
as_gpuarray_variable
(
out_grad
,
ctx_name
)
out_grad
=
as_gpuarray_variable
(
out_grad
,
ctx_name
)
ds
=
node
.
op
.
ds
ds
=
op
.
ds
st
=
node
.
op
.
st
st
=
op
.
st
pad
=
node
.
op
.
padding
pad
=
op
.
padding
mode
=
node
.
op
.
mode
mode
=
op
.
mode
cg
=
gpu_contiguous
(
out_grad
)
cg
=
gpu_contiguous
(
out_grad
)
...
@@ -1591,9 +1591,9 @@ def local_log_softmax_dnn(node):
...
@@ -1591,9 +1591,9 @@ def local_log_softmax_dnn(node):
@register_opt
(
'cudnn'
,
'fast_compile'
)
@register_opt
(
'cudnn'
,
'fast_compile'
)
@op_lifter
([
LogSoftmax
])
@op_lifter
([
LogSoftmax
])
def
local_logsoftmax_to_dnn
(
node
,
ctx_name
):
def
local_logsoftmax_to_dnn
(
op
,
ctx_name
,
inputs
):
# Transform the input in the format expected by GpuDnnSoftmax
# Transform the input in the format expected by GpuDnnSoftmax
inp
=
node
.
inputs
[
0
]
inp
=
inputs
[
0
]
if
inp
.
ndim
!=
2
:
if
inp
.
ndim
!=
2
:
return
return
if
not
dnn_available
(
ctx_name
)
or
version
(
raises
=
False
)
<
3000
:
if
not
dnn_available
(
ctx_name
)
or
version
(
raises
=
False
)
<
3000
:
...
@@ -1629,11 +1629,11 @@ gpu_seqopt.register("NoCuDNNRaise", NoCuDNNRaise(), 0, 'cudnn')
...
@@ -1629,11 +1629,11 @@ gpu_seqopt.register("NoCuDNNRaise", NoCuDNNRaise(), 0, 'cudnn')
@register_opt
(
'cudnn'
,
'fast_compile'
)
@register_opt
(
'cudnn'
,
'fast_compile'
)
@op_lifter
([
SoftmaxGrad
])
@op_lifter
([
SoftmaxGrad
])
def
local_softmax_dnn_grad
(
node
,
ctx_name
):
def
local_softmax_dnn_grad
(
op
,
ctx_name
,
inputs
):
if
not
dnn_available
(
ctx_name
):
if
not
dnn_available
(
ctx_name
):
raise_no_cudnn
(
"cuDNN needed for SoftmaxGrad"
)
raise_no_cudnn
(
"cuDNN needed for SoftmaxGrad"
)
ins
=
[]
ins
=
[]
for
n
in
node
.
inputs
:
for
n
in
inputs
:
n
=
as_gpuarray_variable
(
n
,
ctx_name
)
n
=
as_gpuarray_variable
(
n
,
ctx_name
)
if
n
.
ndim
!=
2
:
if
n
.
ndim
!=
2
:
return
return
...
...
theano/gpuarray/extra_ops.py
浏览文件 @
3f9d0601
...
@@ -452,10 +452,10 @@ class GpuCumsum(GpuKernelBase, Op):
...
@@ -452,10 +452,10 @@ class GpuCumsum(GpuKernelBase, Op):
@op_lifter
([
CumsumOp
])
@op_lifter
([
CumsumOp
])
def
use_gpu_cumsumop
(
node
,
ctx_name
):
def
use_gpu_cumsumop
(
op
,
ctx_name
,
inputs
):
if
node
.
inputs
[
0
]
.
dtype
==
'float32'
:
if
inputs
[
0
]
.
dtype
==
'float32'
:
axis
=
node
.
op
.
axis
axis
=
op
.
axis
x
=
node
.
inputs
[
0
]
x
=
inputs
[
0
]
if
axis
is
not
None
and
x
.
ndim
>
GpuCumsum
.
SUPPORTED_NDIMS
:
if
axis
is
not
None
and
x
.
ndim
>
GpuCumsum
.
SUPPORTED_NDIMS
:
return
None
return
None
...
...
theano/gpuarray/multinomial.py
浏览文件 @
3f9d0601
...
@@ -229,21 +229,21 @@ KERNEL void k_multi_warp_multinomial(
...
@@ -229,21 +229,21 @@ KERNEL void k_multi_warp_multinomial(
@register_opt
()
@register_opt
()
@op_lifter
([
theano
.
sandbox
.
multinomial
.
MultinomialFromUniform
])
@op_lifter
([
theano
.
sandbox
.
multinomial
.
MultinomialFromUniform
])
def
local_gpua_multinomial
(
node
,
context_name
):
def
local_gpua_multinomial
(
op
,
context_name
,
inputs
):
# TODO : need description for function
# TODO : need description for function
if
len
(
node
.
inputs
)
==
2
:
if
len
(
inputs
)
==
2
:
p
,
u
=
node
.
inputs
p
,
u
=
inputs
n_samples
=
1
n_samples
=
1
else
:
else
:
p
,
u
,
n_samples
=
node
.
inputs
p
,
u
,
n_samples
=
inputs
try
:
try
:
if
get_scalar_constant_value
(
n_samples
)
!=
1
:
if
get_scalar_constant_value
(
n_samples
)
!=
1
:
return
None
return
None
except
NotScalarConstantError
:
except
NotScalarConstantError
:
return
None
return
None
m
,
=
node
.
outputs
m
,
=
outputs
if
(
p
.
dtype
==
u
.
dtype
==
m
.
dtype
==
'float32'
):
if
(
p
.
dtype
==
u
.
dtype
==
m
.
dtype
==
'float32'
):
gpu_op
=
GPUAMultinomialFromUniform
(
node
.
op
.
odtype
)
gpu_op
=
GPUAMultinomialFromUniform
(
op
.
odtype
)
return
gpuarray
.
elemwise
.
GpuDimShuffle
([
False
,
False
],
[
1
,
0
])(
return
gpuarray
.
elemwise
.
GpuDimShuffle
([
False
,
False
],
[
1
,
0
])(
gpu_op
(
p
,
u
))
gpu_op
(
p
,
u
))
theano/gpuarray/neighbours.py
浏览文件 @
3f9d0601
...
@@ -469,8 +469,8 @@ class GpuImages2Neibs(GpuKernelBase, Images2Neibs, Op):
...
@@ -469,8 +469,8 @@ class GpuImages2Neibs(GpuKernelBase, Images2Neibs, Op):
@op_lifter
([
Images2Neibs
])
@op_lifter
([
Images2Neibs
])
def
use_gpu_images2neibs
(
node
,
context_name
):
def
use_gpu_images2neibs
(
op
,
context_name
,
inputs
):
if
node
.
op
.
mode
in
[
'valid'
,
'ignore_borders'
,
'wrap_centered'
]:
if
op
.
mode
in
[
'valid'
,
'ignore_borders'
,
'wrap_centered'
]:
return
GpuImages2Neibs
(
node
.
op
.
mode
)
return
GpuImages2Neibs
(
op
.
mode
)
register_gpu_opt
()(
use_gpu_images2neibs
)
register_gpu_opt
()(
use_gpu_images2neibs
)
theano/gpuarray/nerv.py
浏览文件 @
3f9d0601
...
@@ -149,14 +149,14 @@ if (GpuKernel_init(&k_%(name)s, c->ctx, 1, &bcode, &sz,
...
@@ -149,14 +149,14 @@ if (GpuKernel_init(&k_%(name)s, c->ctx, 1, &bcode, &sz,
@opt.register_opt
()
@opt.register_opt
()
@opt.op_lifter
([
tensor
.
Dot
])
@opt.op_lifter
([
tensor
.
Dot
])
def
local_dot_to_gemm16
(
node
,
ctx_name
):
def
local_dot_to_gemm16
(
op
,
ctx_name
,
inputs
):
if
nerv
is
None
:
if
nerv
is
None
:
return
return
A
=
node
.
inputs
[
0
]
A
=
inputs
[
0
]
B
=
node
.
inputs
[
1
]
B
=
inputs
[
1
]
if
(
A
.
ndim
==
2
and
B
.
ndim
==
2
and
if
(
A
.
ndim
==
2
and
B
.
ndim
==
2
and
A
.
dtype
==
'float16'
and
B
.
dtype
==
'float16'
):
A
.
dtype
==
'float16'
and
B
.
dtype
==
'float16'
):
fgraph
=
node
.
inputs
[
0
]
.
fgraph
fgraph
=
inputs
[
0
]
.
fgraph
C
=
GpuAllocEmpty
(
dtype
=
'float16'
,
context_name
=
ctx_name
)(
C
=
GpuAllocEmpty
(
dtype
=
'float16'
,
context_name
=
ctx_name
)(
shape_i
(
A
,
0
,
fgraph
),
shape_i
(
B
,
1
,
fgraph
))
shape_i
(
A
,
0
,
fgraph
),
shape_i
(
B
,
1
,
fgraph
))
return
Gemm16
()(
C
,
1.0
,
A
,
B
,
0.0
)
return
Gemm16
()(
C
,
1.0
,
A
,
B
,
0.0
)
...
...
theano/gpuarray/opt.py
浏览文件 @
3f9d0601
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