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testgroup
pytensor
Commits
f85856b2
提交
f85856b2
authored
12月 23, 2011
作者:
James Bergstra
提交者:
Frederic
1月 23, 2012
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
added GpuGemv and GpuGer
上级
1b01d9b9
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
320 行增加
和
18 行删除
+320
-18
blas.py
theano/sandbox/cuda/blas.py
+182
-0
cuda_ndarray.cu
theano/sandbox/cuda/cuda_ndarray.cu
+80
-0
cuda_ndarray.cuh
theano/sandbox/cuda/cuda_ndarray.cuh
+1
-0
opt.py
theano/sandbox/cuda/opt.py
+57
-18
没有找到文件。
theano/sandbox/cuda/blas.py
浏览文件 @
f85856b2
...
@@ -251,6 +251,188 @@ class GpuGemm(Op):
...
@@ -251,6 +251,188 @@ class GpuGemm(Op):
gpu_gemm_no_inplace
=
GpuGemm
(
inplace
=
False
)
gpu_gemm_no_inplace
=
GpuGemm
(
inplace
=
False
)
gpu_gemm_inplace
=
GpuGemm
(
inplace
=
True
)
gpu_gemm_inplace
=
GpuGemm
(
inplace
=
True
)
class
GpuGemv
(
Op
):
"""
implement gemv on the gpu.
"""
def
__init__
(
self
,
inplace
):
self
.
__setstate__
({
'inplace'
:
inplace
})
def
__str__
(
self
):
if
self
.
inplace
:
return
'GpuGemv{inplace}'
else
:
return
'GpuGemv{no_inplace}'
def
__eq__
(
self
,
other
):
return
(
type
(
self
)
==
type
(
other
)
\
and
self
.
inplace
==
other
.
inplace
)
def
__hash__
(
self
):
return
hash
(
type
(
self
))
^
hash
(
self
.
inplace
)
def
__setstate__
(
self
,
dct
):
inplace
=
dct
.
get
(
'inplace'
,
True
)
if
inplace
:
self
.
destroy_map
=
{
0
:
[
0
]}
self
.
inplace
=
inplace
def
__getstate__
(
self
):
return
dict
(
inplace
=
self
.
inplace
)
def
make_node
(
self
,
z
,
a
,
x
,
y
,
b
):
# the more complicated error checking performed by tensor.gemv is assumed to already
# have been done
return
Apply
(
self
,
[
z
,
a
,
x
,
y
,
b
],
[
z
.
type
()])
def
c_code_cache_version
(
self
):
return
()
def
c_code
(
self
,
node
,
name
,
inputs
,
outputs
,
sub
):
#z_out = alpha * dot(x,y) + beta * z_in
#inplace version, set set z_out = z_in
#not inplace version, we copy z_in to z_out.
z_in
,
a
,
x
,
y
,
b
=
inputs
z_out
,
=
outputs
fail
=
sub
[
'fail'
]
sio
=
StringIO
.
StringIO
()
print
>>
sio
,
"""
float
%(name)
s_alpha = ((dtype_
%(a)
s*)(
%(a)
s->data))[0];
float
%(name)
s_beta = ((dtype_
%(b)
s*)(
%(b)
s->data))[0];
"""
if
self
.
inplace
:
print
>>
sio
,
"""
Py_XDECREF(
%(z_out)
s);
%(z_out)
s =
%(z_in)
s;
Py_INCREF(
%(z_out)
s);
"""
else
:
print
>>
sio
,
"""
if (!
%(z_out)
s
|| (
%(z_out)
s->nd != 1)
|| (CudaNdarray_HOST_DIMS(
%(z_out)
s)[0] != CudaNdarray_HOST_DIMS(
%(z_in)
s)[0])
)
{
Py_XDECREF(
%(z_out)
s);
%(z_out)
s = (CudaNdarray*)CudaNdarray_Copy(
%(z_in)
s);
if (!
%(z_out)
s)
{
%(fail)
s;
}
}
else
{
if (CudaNdarray_CopyFromCudaNdarray(
%(z_out)
s,
%(z_in)
s))
{
%(fail)
s;
}
}
"""
print
>>
sio
,
"""
if (CudaNdarray_sgemv(
%(name)
s_alpha,
%(x)
s,
%(y)
s,
%(name)
s_beta,
%(z_out)
s))
{
%(fail)
s;
}
"""
return
sio
.
getvalue
()
%
locals
()
gpu_gemv_no_inplace
=
GpuGemv
(
inplace
=
False
)
gpu_gemv_inplace
=
GpuGemv
(
inplace
=
True
)
class
GpuGer
(
Op
):
"""
implement ger on the gpu.
"""
def
__init__
(
self
,
inplace
):
self
.
__setstate__
({
'inplace'
:
inplace
})
def
__str__
(
self
):
if
self
.
inplace
:
return
'GpuGer{inplace}'
else
:
return
'GpuGer{no_inplace}'
def
__eq__
(
self
,
other
):
return
(
type
(
self
)
==
type
(
other
)
\
and
self
.
inplace
==
other
.
inplace
)
def
__hash__
(
self
):
return
hash
(
type
(
self
))
^
hash
(
self
.
inplace
)
def
__setstate__
(
self
,
dct
):
inplace
=
dct
.
get
(
'inplace'
,
True
)
if
inplace
:
self
.
destroy_map
=
{
0
:
[
0
]}
self
.
inplace
=
inplace
def
__getstate__
(
self
):
return
dict
(
inplace
=
self
.
inplace
)
def
make_node
(
self
,
z
,
a
,
x
,
y
):
# the more complicated error checking performed by tensor.ger is
# assumed to already have been done
return
Apply
(
self
,
[
z
,
a
,
x
,
y
],
[
z
.
type
()])
def
c_code_cache_version
(
self
):
return
()
def
c_code
(
self
,
node
,
name
,
inputs
,
outputs
,
sub
):
#z_out = alpha * dot(x,y) + beta * z_in
#inplace version, set set z_out = z_in
#not inplace version, we copy z_in to z_out.
z_in
,
a
,
x
,
y
=
inputs
z_out
,
=
outputs
fail
=
sub
[
'fail'
]
sio
=
StringIO
.
StringIO
()
print
>>
sio
,
"""
float
%(name)
s_alpha = ((dtype_
%(a)
s*)(
%(a)
s->data))[0];
"""
if
self
.
inplace
:
print
>>
sio
,
"""
Py_XDECREF(
%(z_out)
s);
%(z_out)
s =
%(z_in)
s;
Py_INCREF(
%(z_out)
s);
"""
else
:
print
>>
sio
,
"""
if (!
%(z_out)
s
|| (
%(z_out)
s->nd != 2)
|| (CudaNdarray_HOST_DIMS(
%(z_out)
s)[0] != CudaNdarray_HOST_DIMS(
%(z_in)
s)[0])
|| (CudaNdarray_HOST_DIMS(
%(z_out)
s)[1] != CudaNdarray_HOST_DIMS(
%(z_in)
s)[1])
)
{
Py_XDECREF(
%(z_out)
s);
%(z_out)
s = (CudaNdarray*)CudaNdarray_Copy(
%(z_in)
s);
if (!
%(z_out)
s)
{
%(fail)
s;
}
}
else
{
if (CudaNdarray_CopyFromCudaNdarray(
%(z_out)
s,
%(z_in)
s))
{
%(fail)
s;
}
}
"""
print
>>
sio
,
"""
if (CudaNdarray_sger(
%(name)
s_alpha,
%(x)
s,
%(y)
s,
%(z_out)
s))
{
%(fail)
s;
}
"""
return
sio
.
getvalue
()
%
locals
()
gpu_ger_no_inplace
=
GpuGer
(
inplace
=
False
)
gpu_ger_inplace
=
GpuGer
(
inplace
=
True
)
class
GpuOuter
(
Op
):
class
GpuOuter
(
Op
):
def
make_node
(
self
,
x
,
y
):
def
make_node
(
self
,
x
,
y
):
# we suppose type checking has been done, but make sure.
# we suppose type checking has been done, but make sure.
...
...
theano/sandbox/cuda/cuda_ndarray.cu
浏览文件 @
f85856b2
...
@@ -2892,6 +2892,86 @@ int CudaNdarray_gemm(float alpha, const CudaNdarray * A, const CudaNdarray * B,
...
@@ -2892,6 +2892,86 @@ int CudaNdarray_gemm(float alpha, const CudaNdarray * A, const CudaNdarray * B,
return
0
;
return
0
;
}
}
int
CudaNdarray_sgemv
(
float
alpha
,
const
CudaNdarray
*
A
,
const
CudaNdarray
*
B
,
float
beta
,
CudaNdarray
*
C
)
{
if
(
A
->
nd
!=
2
)
{
PyErr_SetString
(
PyExc_ValueError
,
"non-matrix arg to gemv"
);
return
-
1
;
}
if
(
B
->
nd
!=
1
)
{
PyErr_SetString
(
PyExc_ValueError
,
"non-vector arg to gemv"
);
return
-
1
;
}
if
(
C
->
nd
!=
1
)
{
PyErr_SetString
(
PyExc_ValueError
,
"non-vector arg to gemv"
);
return
-
1
;
}
// We must allow dimensions to be zeros.
if
((
CudaNdarray_HOST_DIMS
(
A
)[
1
]
!=
CudaNdarray_HOST_DIMS
(
B
)[
0
])
||
(
CudaNdarray_HOST_DIMS
(
A
)[
0
]
!=
CudaNdarray_HOST_DIMS
(
C
)[
0
]))
{
PyErr_Format
(
PyExc_ValueError
,
"dimension mismatch in args to gemv (%i,%i)x(%i)->(%i)"
,
CudaNdarray_HOST_DIMS
(
A
)[
0
],
CudaNdarray_HOST_DIMS
(
A
)[
1
],
CudaNdarray_HOST_DIMS
(
B
)[
0
],
CudaNdarray_HOST_DIMS
(
C
)[
0
]);
return
-
1
;
}
// a matrix has non-unit size and non-unit stride in both directions, we can't operate in-place
// TODO: make a copy instead of returning in error
if
(((
CudaNdarray_HOST_DIMS
(
A
)[
0
]
>
1
)
&&
(
CudaNdarray_HOST_STRIDES
(
A
)[
0
]
!=
1
))
&&
((
CudaNdarray_HOST_DIMS
(
A
)[
1
]
>
1
)
&&
(
CudaNdarray_HOST_STRIDES
(
A
)[
1
]
!=
1
)))
{
PyErr_SetString
(
PyExc_NotImplementedError
,
"non-unit stride in gemv arg"
);
return
-
1
;
}
// I don't know if cudablas handles negative strides
if
(
(
CudaNdarray_HOST_STRIDES
(
A
)[
0
]
<
0
)
||
(
CudaNdarray_HOST_STRIDES
(
A
)[
1
]
<
0
)
||
(
CudaNdarray_HOST_STRIDES
(
B
)[
0
]
<
0
)
||
(
CudaNdarray_HOST_STRIDES
(
C
)[
0
]
<
0
))
{
PyErr_Format
(
PyExc_ValueError
,
"illegal strides in args to gemv (%i,%i)x(%i)->(%i)"
,
CudaNdarray_HOST_STRIDES
(
A
)[
0
],
CudaNdarray_HOST_STRIDES
(
A
)[
1
],
CudaNdarray_HOST_STRIDES
(
B
)[
0
],
CudaNdarray_HOST_STRIDES
(
C
)[
0
]);
return
-
1
;
}
/* create appropriate strides for malformed matrices that are row or column
* vectors
*/
int
sa_0
=
(
CudaNdarray_HOST_DIMS
(
A
)[
0
]
>
1
)
?
CudaNdarray_HOST_STRIDES
(
A
)[
0
]
:
CudaNdarray_HOST_DIMS
(
A
)[
1
];
int
sa_1
=
(
CudaNdarray_HOST_DIMS
(
A
)[
1
]
>
1
)
?
CudaNdarray_HOST_STRIDES
(
A
)[
1
]
:
CudaNdarray_HOST_DIMS
(
A
)[
0
];
int
sb_0
=
(
CudaNdarray_HOST_DIMS
(
B
)[
0
]
>
1
)
?
CudaNdarray_HOST_STRIDES
(
B
)[
0
]
:
CudaNdarray_HOST_DIMS
(
B
)[
1
];
int
sc_0
=
(
CudaNdarray_HOST_DIMS
(
C
)[
0
]
>
1
)
?
CudaNdarray_HOST_STRIDES
(
C
)[
0
]
:
CudaNdarray_HOST_DIMS
(
C
)[
1
];
if
(
sa_0
==
1
)
{
cublasSgemv
(
'N'
,
CudaNdarray_HOST_DIMS
(
A
)[
0
],
CudaNdarray_HOST_DIMS
(
A
)[
1
],
alpha
,
CudaNdarray_DEV_DATA
(
A
),
sa_1
,
CudaNdarray_DEV_DATA
(
B
),
sb_0
,
beta
,
CudaNdarray_DEV_DATA
(
C
),
sc_0
);
}
else
if
(
sa_1
==
1
)
{
cublasSgemv
(
'T'
,
CudaNdarray_HOST_DIMS
(
A
)[
1
],
CudaNdarray_HOST_DIMS
(
A
)[
0
],
alpha
,
CudaNdarray_DEV_DATA
(
A
),
sa_0
,
CudaNdarray_DEV_DATA
(
B
),
sb_0
,
beta
,
CudaNdarray_DEV_DATA
(
C
),
sc_0
);
}
else
{
PyErr_SetString
(
PyExc_NotImplementedError
,
"too many strides strides in sgemv"
);
return
-
1
;
}
CNDA_THREAD_SYNC
;
cudaError_t
err
=
cudaGetLastError
();
if
(
CUBLAS_STATUS_SUCCESS
!=
err
)
{
PyErr_Format
(
PyExc_RuntimeError
,
"cublassGemv failed (%s)"
,
cudaGetErrorString
(
err
));
return
-
1
;
}
return
0
;
}
int
CudaNdarray_sger
(
float
alpha
,
CudaNdarray
*
x
,
CudaNdarray
*
y
,
CudaNdarray
*
A
)
{
int
CudaNdarray_sger
(
float
alpha
,
CudaNdarray
*
x
,
CudaNdarray
*
y
,
CudaNdarray
*
A
)
{
if
(
x
->
nd
!=
1
)
{
PyErr_SetString
(
PyExc_ValueError
,
"non-vector arg x to sger"
);
return
-
1
;
}
if
(
x
->
nd
!=
1
)
{
PyErr_SetString
(
PyExc_ValueError
,
"non-vector arg x to sger"
);
return
-
1
;
}
if
(
y
->
nd
!=
1
)
{
PyErr_SetString
(
PyExc_ValueError
,
"non-vector arg y to sger"
);
return
-
1
;
}
if
(
y
->
nd
!=
1
)
{
PyErr_SetString
(
PyExc_ValueError
,
"non-vector arg y to sger"
);
return
-
1
;
}
...
...
theano/sandbox/cuda/cuda_ndarray.cuh
浏览文件 @
f85856b2
...
@@ -320,6 +320,7 @@ DllExport bool CudaNdarray_is_c_contiguous(const CudaNdarray * self);
...
@@ -320,6 +320,7 @@ DllExport bool CudaNdarray_is_c_contiguous(const CudaNdarray * self);
DllExport
PyObject
*
CudaNdarray_IS_C_Contiguous
(
CudaNdarray
*
self
);
DllExport
PyObject
*
CudaNdarray_IS_C_Contiguous
(
CudaNdarray
*
self
);
DllExport
int
CudaNdarray_gemm
(
float
alpha
,
const
CudaNdarray
*
A
,
const
CudaNdarray
*
B
,
float
beta
,
CudaNdarray
*
C
);
DllExport
int
CudaNdarray_gemm
(
float
alpha
,
const
CudaNdarray
*
A
,
const
CudaNdarray
*
B
,
float
beta
,
CudaNdarray
*
C
);
DllExport
int
CudaNdarray_sgemv
(
float
alpha
,
const
CudaNdarray
*
A
,
const
CudaNdarray
*
B
,
float
beta
,
CudaNdarray
*
C
);
DllExport
int
CudaNdarray_sger
(
float
alpha
,
CudaNdarray
*
x
,
CudaNdarray
*
y
,
CudaNdarray
*
A
);
DllExport
int
CudaNdarray_sger
(
float
alpha
,
CudaNdarray
*
x
,
CudaNdarray
*
y
,
CudaNdarray
*
A
);
DllExport
int
CudaNdarray_reduce_sum
(
CudaNdarray
*
self
,
CudaNdarray
*
A
);
DllExport
int
CudaNdarray_reduce_sum
(
CudaNdarray
*
self
,
CudaNdarray
*
A
);
...
...
theano/sandbox/cuda/opt.py
浏览文件 @
f85856b2
...
@@ -16,6 +16,10 @@ from theano.sandbox.cuda.basic_ops import *
...
@@ -16,6 +16,10 @@ from theano.sandbox.cuda.basic_ops import *
from
theano.sandbox.cuda.type
import
CudaNdarrayType
from
theano.sandbox.cuda.type
import
CudaNdarrayType
from
theano.sandbox.cuda.blas
import
(
gpu_dot22
,
gpu_dot22scalar
,
from
theano.sandbox.cuda.blas
import
(
gpu_dot22
,
gpu_dot22scalar
,
gpu_gemm_inplace
,
gpu_gemm_no_inplace
,
gpu_outer
,
GpuConv
)
gpu_gemm_inplace
,
gpu_gemm_no_inplace
,
gpu_outer
,
GpuConv
)
from
theano.sandbox.cuda.blas
import
gpu_gemv_inplace
from
theano.sandbox.cuda.blas
import
gpu_gemv_no_inplace
from
theano.sandbox.cuda.blas
import
gpu_ger_inplace
from
theano.sandbox.cuda.blas
import
gpu_ger_no_inplace
from
theano.sandbox.cuda.blas
import
(
GpuDownsampleFactorMax
,
from
theano.sandbox.cuda.blas
import
(
GpuDownsampleFactorMax
,
GpuDownsampleFactorMaxGrad
)
GpuDownsampleFactorMaxGrad
)
from
theano.sandbox.cuda.nnet
import
(
from
theano.sandbox.cuda.nnet
import
(
...
@@ -375,47 +379,82 @@ def local_gpu_dot22scalar(node):
...
@@ -375,47 +379,82 @@ def local_gpu_dot22scalar(node):
@register_opt
()
@register_opt
()
@local_optimizer
([])
@local_optimizer
([])
def
local_gpu_gemv
_as_gemm
(
node
):
def
local_gpu_gemv
(
node
):
"""
"""
gpu_from_host(gemv) -> gpu_gemv(gpu_from_host)
gpu_from_host(gemv) -> gpu_gemv(gpu_from_host)
gem
m
(host_from_gpu) -> host_from_gpu(gpu_gemv)
gem
v
(host_from_gpu) -> host_from_gpu(gpu_gemv)
This optimization solves the vector-matrix multiplication issue by
transforming the vector into a matrix, apply gpudot22 and reshaping
the output.
A more suitable solution would be to use the right cublas call
"""
"""
gemvs
=
{
tensor
.
blas
.
gemv_inplace
:
gpu_gemm_inplace
,
gemvs
=
{
tensor
.
blas
.
gemv_inplace
:
gpu_gemv_inplace
,
tensor
.
blas
.
gemv_no_inplace
:
gpu_gemm_no_inplace
}
tensor
.
blas
.
gemv_no_inplace
:
gpu_gemv_no_inplace
,
tensor
.
blas_c
.
CGemv
(
inplace
=
True
):
gpu_gemv_inplace
,
tensor
.
blas_c
.
CGemv
(
inplace
=
False
):
gpu_gemv_no_inplace
,
}
if
node
.
op
==
gpu_from_host
:
if
node
.
op
==
gpu_from_host
:
host_input
=
node
.
inputs
[
0
]
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
host_input
.
owner
.
op
in
gemvs
:
if
host_input
.
owner
and
host_input
.
owner
.
op
in
gemvs
:
op
=
host_input
.
owner
.
op
op
=
host_input
.
owner
.
op
z
,
a
,
x
,
y
,
b
=
host_input
.
owner
.
inputs
z
,
a
,
x
,
y
,
b
=
host_input
.
owner
.
inputs
return
[
return
[
gemvs
[
op
](
GpuDimShuffle
((
False
,
True
),[
0
])(
gemvs
[
op
](
gpu_from_host
(
z
)
GpuDimShuffle
((
False
,),[
0
,
'x'
])(
gpu_from_host
(
z
))
,
a
,
a
,
gpu_from_host
(
x
)
,
gpu_from_host
(
x
)
,
GpuDimShuffle
((
False
,),[
0
,
'x'
])(
gpu_from_host
(
y
)
)
,
gpu_from_host
(
y
)
,
b
)
)
]
,
b
)]
if
node
.
op
in
gemvs
:
if
node
.
op
in
gemvs
:
z
,
a
,
x
,
y
,
b
=
node
.
inputs
z
,
a
,
x
,
y
,
b
=
node
.
inputs
x_on_gpu
=
(
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
)
x_on_gpu
=
(
x
.
owner
and
x
.
owner
.
op
==
host_from_gpu
)
y_on_gpu
=
(
y
.
owner
and
y
.
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
)
z_on_gpu
=
(
z
.
owner
and
z
.
owner
.
op
==
host_from_gpu
)
if
x_on_gpu
or
y_on_gpu
or
z_on_gpu
:
if
x_on_gpu
or
y_on_gpu
or
z_on_gpu
:
return
[
host_from_gpu
(
GpuDimShuffle
((
False
,
True
),[
0
])(
return
[
host_from_gpu
(
gemvs
[
node
.
op
](
gemvs
[
node
.
op
](
GpuDimShuffle
((
False
,),[
0
,
'x'
])(
gpu_from_host
(
z
)
)
gpu_from_host
(
z
)
,
a
,
a
,
gpu_from_host
(
x
)
,
gpu_from_host
(
x
)
,
GpuDimShuffle
((
False
,),[
0
,
'x'
])(
gpu_from_host
(
y
)
)
,
gpu_from_host
(
y
)
,
b
))
)
]
,
b
))]
return
False
return
False
@register_opt
()
@local_optimizer
([])
def
local_gpu_ger
(
node
):
"""
gpu_from_host(gemv) -> gpu_gemv(gpu_from_host)
gemv(host_from_gpu) -> host_from_gpu(gpu_gemv)
"""
gers
=
{
tensor
.
blas_c
.
CGer
(
destructive
=
True
):
gpu_ger_inplace
,
tensor
.
blas_c
.
CGer
(
destructive
=
False
):
gpu_ger_no_inplace
,
}
if
node
.
op
==
gpu_from_host
:
host_input
=
node
.
inputs
[
0
]
if
host_input
.
owner
and
host_input
.
owner
.
op
in
gers
:
op
=
host_input
.
owner
.
op
z
,
a
,
x
,
y
=
host_input
.
owner
.
inputs
return
[
gers
[
op
](
gpu_from_host
(
z
)
,
a
,
gpu_from_host
(
x
)
,
gpu_from_host
(
y
)
)]
if
node
.
op
in
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
)
if
x_on_gpu
or
y_on_gpu
or
z_on_gpu
:
return
[
host_from_gpu
(
gers
[
node
.
op
](
gpu_from_host
(
z
)
,
a
,
gpu_from_host
(
x
)
,
gpu_from_host
(
y
)
))]
return
False
@register_opt
()
@register_opt
()
@local_optimizer
([])
@local_optimizer
([])
def
local_gpu_gemm
(
node
):
def
local_gpu_gemm
(
node
):
...
...
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