Skip to content
项目
群组
代码片段
帮助
当前项目
正在载入...
登录 / 注册
切换导航面板
P
pytensor
项目
项目
详情
活动
周期分析
仓库
仓库
文件
提交
分支
标签
贡献者
图表
比较
统计图
议题
0
议题
0
列表
看板
标记
里程碑
合并请求
0
合并请求
0
CI / CD
CI / CD
流水线
作业
日程
统计图
Wiki
Wiki
代码片段
代码片段
成员
成员
折叠边栏
关闭边栏
活动
图像
聊天
创建新问题
作业
提交
问题看板
Open sidebar
testgroup
pytensor
Commits
bacc5f6f
提交
bacc5f6f
authored
8月 11, 2017
作者:
Boris Fomitchev
提交者:
notoraptor
8月 18, 2017
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
Tensor op, cache
上级
2d3ab3b0
隐藏空白字符变更
内嵌
并排
正在显示
8 个修改的文件
包含
615 行增加
和
120 行删除
+615
-120
dnn_conv_find.c
theano/gpuarray/c_code/dnn_conv_find.c
+142
-0
dnn_conv_find.cc
theano/gpuarray/c_code/dnn_conv_find.cc
+133
-0
dnn_conv_find.h
theano/gpuarray/c_code/dnn_conv_find.h
+36
-0
dnn_fwd.c
theano/gpuarray/c_code/dnn_fwd.c
+106
-37
dnn_gi.c
theano/gpuarray/c_code/dnn_gi.c
+85
-35
dnn_gw.c
theano/gpuarray/c_code/dnn_gw.c
+95
-35
dnn.py
theano/gpuarray/dnn.py
+4
-4
subtensor.py
theano/gpuarray/subtensor.py
+14
-9
没有找到文件。
theano/gpuarray/c_code/dnn_conv_find.c
0 → 100644
浏览文件 @
bacc5f6f
#section support_code
#include <cuda.h>
#include <sstream>
#include <vector>
#include <string>
#include "dnn_conv_find.h"
#if __cplusplus < 201103L
#include <tr1/unordered_map>
typedef
std
::
tr1
::
unordered_map
<
std
::
string
,
AlgoRec
>
AlgoCache
;
#else
#include <unordered_map>
typedef
std
::
unordered_map
<
std
::
string
,
AlgoRec
>
AlgoCache
;
#endif
#include "pthread.h"
#line 10 "dnn_conv_find.cc"
using
std
::
vector
;
using
std
::
string
;
pthread_mutex_t
algoMutex
;
AlgoCache
algoCache
;
static
std
::
string
shape
(
int
*
res
,
int
size
)
{
std
::
stringstream
s
;
if
(
size
>
0
)
{
s
<<
res
[
0
];
for
(
int
i
=
1
;
i
<
size
;
++
i
)
s
<<
','
<<
res
[
i
];
}
return
std
::
string
(
s
.
str
().
c_str
());
}
static
std
::
string
shape
(
cudnnTensorDescriptor_t
t
)
{
std
::
vector
<
int
>
res
;
std
::
vector
<
int
>
stride
;
int
nbDims
;
cudnnDataType_t
type
;
checkCudnnStatus
(
cudnnGetTensorNdDescriptor
(
t
,
0
,
&
type
,
&
nbDims
,
0
,
0
));
res
.
resize
(
nbDims
);
stride
.
resize
(
nbDims
);
checkCudnnStatus
(
cudnnGetTensorNdDescriptor
(
t
,
nbDims
,
&
type
,
&
nbDims
,
res
.
data
(),
stride
.
data
()));
return
shape
(
&
res
[
0
],
nbDims
)
+
shape
(
&
stride
[
0
],
nbDims
);
};
static
std
::
string
shape
(
cudnnFilterDescriptor_t
t
,
cudnnDataType_t
*
type
)
{
cudnnTensorFormat_t
format
;
int
sizes
=
8
;
std
::
vector
<
int
>
res
(
sizes
);
int
outDims
;
checkCudnnStatus
(
cudnnGetFilterNdDescriptor
(
t
,
sizes
,
type
,
&
format
,
&
outDims
,
res
.
data
()));
return
shape
(
&
res
[
0
],
outDims
);
};
static
std
::
string
shape
(
cudnnConvolutionDescriptor_t
convDesc
)
{
const
int
maxDim
=
5
;
int
nDim
=
0
;
cudnnConvolutionMode_t
mode
;
cudnnDataType_t
computeType
;
int
padA
[
maxDim
];
int
strideA
[
maxDim
];
int
dilationA
[
maxDim
];
checkCudnnStatus
(
cudnnGetConvolutionNdDescriptor
(
convDesc
,
maxDim
,
&
nDim
,
&
padA
[
0
],
&
strideA
[
0
],
&
dilationA
[
0
],
&
mode
,
&
computeType
));
return
std
::
string
(
"-mode "
)
+
(((
int
)
mode
==
0
)
?
"conv"
:
"corr"
)
+
" -padA"
+
shape
(
padA
,
nDim
)
+
" -convStrideA "
+
shape
(
strideA
,
nDim
)
+
" -dilationA "
+
shape
(
dilationA
,
nDim
);
}
static
bool
all_aligned
(
cudnnDataType_t
type
,
void
*
in
,
void
*
out
,
void
*
filter
)
{
size_t
alignMask
=
(
type
==
CUDNN_DATA_HALF
)
?
0x7F
:
0xFF
;
// there have to be entries for both aligned and not
if
(((
size_t
)
in
|
(
size_t
)
out
|
(
size_t
)
filter
)
&
alignMask
)
{
return
false
;
}
return
true
;
}
std
::
string
dnn_conv_shape
(
cudnnTensorDescriptor_t
input
,
void
*
in
,
cudnnFilterDescriptor_t
filterDesc
,
void
*
filter
,
cudnnConvolutionDescriptor_t
convDesc
,
void
*
out
)
{
cudnnDataType_t
dType
;
std
::
stringstream
s
;
s
<<
" -dimA"
<<
shape
(
input
)
<<
" -filtA"
<<
shape
(
filterDesc
,
&
dType
)
<<
shape
(
convDesc
);
// there have to be entries for both aligned and not
if
(
!
all_aligned
(
dType
,
in
,
out
,
filter
))
{
s
<<
" [unaligned] "
;
}
return
std
::
string
(
s
.
str
().
c_str
());
}
void
dnn_conv_update_cache
(
const
std
::
string
&
hash
,
const
AlgoRec
&
rec
)
{
pthread_mutex_lock
(
&
algoMutex
);
algoCache
[
hash
]
=
rec
;
pthread_mutex_unlock
(
&
algoMutex
);
}
const
AlgoRec
*
dnn_conv_check_cache
(
const
std
::
string
&
hash
)
{
pthread_mutex_lock
(
&
algoMutex
);
bool
cacheHit
=
false
;
const
AlgoRec
*
ret
=
0
;
// cout << "dnn_conv_check_cache: "<< hash << endl;
AlgoCache
::
iterator
hit
=
algoCache
.
find
(
hash
);
if
(
hit
!=
algoCache
.
end
())
ret
=
&
hit
->
second
;
pthread_mutex_unlock
(
&
algoMutex
);
return
ret
;
}
theano/gpuarray/c_code/dnn_conv_find.cc
0 → 100644
浏览文件 @
bacc5f6f
#section support_code
#include <cuda.h>
#include <mutex>
#include <sstream>
#include <vector>
#include <string>
#include <unordered_map>
#include "dnn_conv_find.h"
#line 10 "dnn_conv_find.cc"
using
std
::
vector
;
using
std
::
string
;
using
std
::
unique_lock
;
using
std
::
mutex
;
typedef
std
::
unordered_map
<
string
,
AlgoRec
>
AlgoCache
;
mutex
algoMutex
;
AlgoCache
algoCache
;
static
std
::
string
shape
(
int
*
res
,
int
size
)
{
std
::
stringstream
s
;
if
(
size
>
0
)
{
s
<<
res
[
0
];
for
(
int
i
=
1
;
i
<
size
;
++
i
)
s
<<
','
<<
res
[
i
];
}
return
std
::
string
(
s
.
str
().
c_str
());
}
static
std
::
string
shape
(
cudnnTensorDescriptor_t
t
)
{
std
::
vector
<
int
>
res
;
std
::
vector
<
int
>
stride
;
int
nbDims
;
cudnnDataType_t
type
;
checkCudnnStatus
(
cudnnGetTensorNdDescriptor
(
t
,
0
,
&
type
,
&
nbDims
,
nullptr
,
nullptr
));
res
.
resize
(
nbDims
);
stride
.
resize
(
nbDims
);
checkCudnnStatus
(
cudnnGetTensorNdDescriptor
(
t
,
nbDims
,
&
type
,
&
nbDims
,
res
.
data
(),
stride
.
data
()));
return
shape
(
&
res
[
0
],
nbDims
)
+
shape
(
&
stride
[
0
],
nbDims
);
};
static
std
::
string
shape
(
cudnnFilterDescriptor_t
t
,
cudnnDataType_t
*
type
)
{
cudnnTensorFormat_t
format
;
int
sizes
=
8
;
std
::
vector
<
int
>
res
(
sizes
);
int
outDims
;
checkCudnnStatus
(
cudnnGetFilterNdDescriptor
(
t
,
sizes
,
type
,
&
format
,
&
outDims
,
res
.
data
()));
return
shape
(
&
res
[
0
],
outDims
);
};
static
std
::
string
shape
(
cudnnConvolutionDescriptor_t
convDesc
)
{
const
int
maxDim
=
5
;
int
nDim
=
0
;
cudnnConvolutionMode_t
mode
;
cudnnDataType_t
computeType
;
int
padA
[
maxDim
];
int
strideA
[
maxDim
];
int
dilationA
[
maxDim
];
checkCudnnStatus
(
cudnnGetConvolutionNdDescriptor
(
convDesc
,
maxDim
,
&
nDim
,
&
padA
[
0
],
&
strideA
[
0
],
&
dilationA
[
0
],
&
mode
,
&
computeType
));
return
std
::
string
(
"-mode "
)
+
(((
int
)
mode
==
0
)
?
"conv"
:
"corr"
)
+
" -padA"
+
shape
(
padA
,
nDim
)
+
" -convStrideA "
+
shape
(
strideA
,
nDim
)
+
" -dilationA "
+
shape
(
dilationA
,
nDim
);
}
static
bool
all_aligned
(
cudnnDataType_t
type
,
void
*
in
,
void
*
out
,
void
*
filter
)
{
size_t
alignMask
=
(
type
==
CUDNN_DATA_HALF
)
?
0x7F
:
0xFF
;
// there have to be entries for both aligned and not
if
(((
size_t
)
in
|
(
size_t
)
out
|
(
size_t
)
filter
)
&
alignMask
)
{
return
false
;
}
return
true
;
}
std
::
string
dnn_conv_shape
(
cudnnTensorDescriptor_t
input
,
void
*
in
,
cudnnFilterDescriptor_t
filterDesc
,
void
*
filter
,
cudnnConvolutionDescriptor_t
convDesc
,
void
*
out
)
{
cudnnDataType_t
dType
;
std
::
stringstream
s
;
s
<<
" -dimA"
<<
shape
(
input
)
<<
" -filtA"
<<
shape
(
filterDesc
,
&
dType
)
<<
shape
(
convDesc
);
// there have to be entries for both aligned and not
if
(
!
all_aligned
(
dType
,
in
,
out
,
filter
))
{
s
<<
" [unaligned] "
;
}
return
std
::
string
(
s
.
str
().
c_str
());
}
void
dnn_conv_update_cache
(
const
std
::
string
&
hash
,
const
AlgoRec
&
rec
)
{
unique_lock
<
mutex
>
lock
(
algoMutex
);
algoCache
[
hash
]
=
rec
;
}
const
AlgoRec
*
dnn_conv_check_cache
(
const
std
::
string
&
hash
)
{
unique_lock
<
mutex
>
lock
(
algoMutex
);
bool
cacheHit
=
false
;
// cout << "dnn_conv_check_cache: "<< hash << endl;
AlgoCache
::
iterator
hit
=
algoCache
.
find
(
hash
);
if
(
hit
!=
algoCache
.
end
())
return
&
hit
->
second
;
return
nullptr
;
}
theano/gpuarray/c_code/dnn_conv_find.h
0 → 100644
浏览文件 @
bacc5f6f
#pragma once
#include <string>
#include <cuda.h>
#include <cudnn.h>
#if CUDNN_MAJOR < 7
enum
cudnnMathType_t
{
CUDNN_DEFAULT_MATH
=
0
,
CUDNN_TENSOR_OP_MATH
=
1
};
#endif
inline
void
checkCudnnStatus
(
cudnnStatus_t
err
)
{
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
PyErr_Format
(
PyExc_RuntimeError
,
"CUDNN Error: %s"
,
cudnnGetErrorString
(
err
));
}
}
/* a common struct for all 3 CUDNN enums */
struct
AlgoRec
{
int
algo
;
cudnnDataType_t
dataType
;
size_t
wsSize
;
cudnnMathType_t
mathType
;
};
const
AlgoRec
*
dnn_conv_check_cache
(
const
std
::
string
&
);
std
::
string
dnn_conv_shape
(
cudnnTensorDescriptor_t
input
,
void
*
in
,
cudnnFilterDescriptor_t
filterDesc
,
void
*
filter
,
cudnnConvolutionDescriptor_t
convDesc
,
void
*
out
);
void
dnn_conv_update_cache
(
const
std
::
string
&
hash
,
const
AlgoRec
&
rec
);
theano/gpuarray/c_code/dnn_fwd.c
浏览文件 @
bacc5f6f
#section init_code_struct
#section init_code_struct
reuse_algo
=
0
;
reuse_algo
=
0
;
prev_algo
=
PARAMS
->
conv_algo
;
prev_algo
.
algo
=
PARAMS
->
conv_algo
;
prev_algo
.
mathType
=
CUDNN_DEFAULT_MATH
;
prev_algo
.
dataType
=
CUDNN_DATA_FLOAT
;
memset
(
prev_img_dims
,
0
,
sizeof
(
prev_img_dims
));
memset
(
prev_img_dims
,
0
,
sizeof
(
prev_img_dims
));
memset
(
prev_kern_dims
,
0
,
sizeof
(
prev_kern_dims
));
memset
(
prev_kern_dims
,
0
,
sizeof
(
prev_kern_dims
));
#section support_code_struct
#section support_code_struct
#line 12 "dnn_fwd.c"
int
reuse_algo
;
#include "dnn_conv_find.h"
cudnnConvolutionFwdAlgo_t
prev_algo
;
int
reuse_algo
;
size_t
prev_img_dims
[
5
];
bool
use_cached
;
size_t
prev_kern_dims
[
5
];
AlgoRec
prev_algo
;
size_t
prev_img_dims
[
5
];
size_t
prev_kern_dims
[
5
];
int
int
APPLY_SPECIFIC
(
conv_fwd
)(
PyGpuArrayObject
*
input
,
PyGpuArrayObject
*
kerns
,
APPLY_SPECIFIC
(
conv_fwd
)(
PyGpuArrayObject
*
input
,
PyGpuArrayObject
*
kerns
,
...
@@ -84,12 +88,16 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -84,12 +88,16 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
size_t
output_offset
=
PyGpuArray_STRIDE
(
*
output
,
0
)
/
params
->
num_groups
;
size_t
output_offset
=
PyGpuArray_STRIDE
(
*
output
,
0
)
/
params
->
num_groups
;
cudnnConvolutionFwdAlgo_t
algo
=
params
->
conv_algo
;
cudnnConvolutionFwdAlgo_t
algo
=
params
->
conv_algo
;
size_t
worksize
=
0
;
cudnnMathType_t
mathtype
=
CUDNN_DEFAULT_MATH
;
std
::
string
hashkey
=
"F| GPU#"
;
#ifdef DEBUG
#ifdef DEBUG
char
algorithm_name
[
128
];
char
algorithm_name
[
128
];
#endif
#endif
cuda_enter
(
c
->
ctx
);
cuda_enter
(
c
->
ctx
);
if
(
params
->
choose_algo
)
{
if
(
params
->
choose_algo
)
{
if
(
!
params
->
choose_once
)
{
if
(
!
params
->
choose_once
)
{
reuse_algo
=
1
;
reuse_algo
=
1
;
...
@@ -100,10 +108,26 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -100,10 +108,26 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
PyGpuArray_DIM
(
kerns
,
i
)
==
prev_kern_dims
[
i
]);
PyGpuArray_DIM
(
kerns
,
i
)
==
prev_kern_dims
[
i
]);
}
}
}
}
char
pci_id
[
16
];
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_PCIBUSID
,
pci_id
);
hashkey
+=
pci_id
;
hashkey
+=
dnn_conv_shape
(
APPLY_SPECIFIC
(
input
),
PyGpuArray_DEV_DATA
(
input
),
APPLY_SPECIFIC
(
kerns
),
PyGpuArray_DEV_DATA
(
kerns
),
desc
,
PyGpuArray_DEV_DATA
(
*
output
));
if
(
!
reuse_algo
)
{
if
(
!
reuse_algo
)
{
// check out cache
const
AlgoRec
*
cached
=
dnn_conv_check_cache
(
hashkey
);
if
(
cached
)
{
prev_algo
=
*
cached
;
use_cached
=
1
;
}
}
if
(
!
(
reuse_algo
||
use_cached
))
{
size_t
free
;
size_t
free
;
int
err2
=
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_LARGEST_MEMBLOCK
,
&
free
);
int
err2
=
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_LARGEST_MEMBLOCK
,
&
free
);
if
(
err2
!=
GA_NO_ERROR
)
{
if
(
err2
!=
GA_NO_ERROR
)
{
PyErr_Format
(
PyExc_RuntimeError
,
"Error when trying to find the "
PyErr_Format
(
PyExc_RuntimeError
,
"Error when trying to find the "
...
@@ -125,6 +149,7 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -125,6 +149,7 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
PyErr_SetString
(
PyExc_MemoryError
,
"Could not allocate working GPU memory"
);
PyErr_SetString
(
PyExc_MemoryError
,
"Could not allocate working GPU memory"
);
return
-
1
;
return
-
1
;
}
}
// We don't sync the buffer as we don't care about the values.
// We don't sync the buffer as we don't care about the values.
err
=
cudnnFindConvolutionForwardAlgorithmEx
(
err
=
cudnnFindConvolutionForwardAlgorithmEx
(
params
->
handle
,
APPLY_SPECIFIC
(
input
),
PyGpuArray_DEV_DATA
(
input
),
params
->
handle
,
APPLY_SPECIFIC
(
input
),
PyGpuArray_DEV_DATA
(
input
),
...
@@ -134,6 +159,9 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -134,6 +159,9 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
free
);
free
);
gpudata_release
(
tmpmem
);
gpudata_release
(
tmpmem
);
// fprintf(stderr, "(cudnnFindConvolutionForwardAlgorithmEx: (err:%d), algo: %d, mem: %ld, free: %ld\n",
// err, choice.algo, choice.memory, free);
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
PyErr_Format
(
PyExc_RuntimeError
,
PyErr_Format
(
PyExc_RuntimeError
,
"error selecting convolution algo: %s"
,
"error selecting convolution algo: %s"
,
...
@@ -142,6 +170,12 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -142,6 +170,12 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
return
1
;
return
1
;
}
}
algo
=
choice
.
algo
;
algo
=
choice
.
algo
;
prev_algo
.
algo
=
(
int
)
algo
;
prev_algo
.
wsSize
=
worksize
=
choice
.
memory
;
prev_algo
.
mathType
=
mathtype
=
choice
.
mathType
;
// Add to the cache
dnn_conv_update_cache
(
hashkey
,
prev_algo
);
#ifdef DEBUG
#ifdef DEBUG
if
(
count
==
0
)
{
if
(
count
==
0
)
{
...
@@ -167,31 +201,17 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -167,31 +201,17 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
cuda_exit
(
c
->
ctx
);
cuda_exit
(
c
->
ctx
);
return
1
;
return
1
;
}
}
prev_algo
.
algo
=
algo
;
// no tensor_op returned from Get()
prev_algo
.
mathType
=
mathtype
=
CUDNN_DEFAULT_MATH
;
// fprintf(stderr, "(cudnnGetConvolutionForwardAlgorithm: (err:%d), algo: %d\n", err, algo);
}
}
prev_algo
=
algo
;
}
else
{
}
else
{
algo
=
(
cudnnConvolutionFwdAlgo_t
)
prev_algo
.
algo
;
algo
=
prev_algo
;
worksize
=
prev_algo
.
wsSize
;
mathtype
=
prev_algo
.
mathType
;
}
}
}
else
{
/* choose_algo */
#ifdef DEBUG
if
(
0
!=
theano_enum_to_string_cudnnConvolutionFwdAlgo_t
(
algo
,
algorithm_name
))
return
1
;
// NB: This is printed only when algorithm is chosen at runtime.
if
(
reuse_algo
)
fprintf
(
stderr
,
"(reused %s)
\n
"
,
algorithm_name
);
else
fprintf
(
stderr
,
"(using %s)
\n
"
,
algorithm_name
);
#endif
if
(
params
->
choose_once
)
{
reuse_algo
=
1
;
}
else
{
for
(
unsigned
int
i
=
0
;
i
<
PyGpuArray_NDIM
(
input
);
i
++
)
{
prev_img_dims
[
i
]
=
PyGpuArray_DIM
(
input
,
i
);
prev_kern_dims
[
i
]
=
PyGpuArray_DIM
(
kerns
,
i
);
}
}
}
/* Only these algos are supported for 3d conv with cuDNN >= V5.1. */
/* Only these algos are supported for 3d conv with cuDNN >= V5.1. */
if
(
PyGpuArray_NDIM
(
input
)
==
5
&&
if
(
PyGpuArray_NDIM
(
input
)
==
5
&&
...
@@ -269,10 +289,11 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -269,10 +289,11 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
}
}
}
}
}
}
}
/* choose_algo */
// if FindEx was used (choose_time), workspace size is set.
if
(
!
(
reuse_algo
||
use_cached
||
params
->
choose_time
))
{
{
size_t
worksize
;
gpudata
*
workspace
;
err
=
cudnnGetConvolutionForwardWorkspaceSize
(
params
->
handle
,
err
=
cudnnGetConvolutionForwardWorkspaceSize
(
params
->
handle
,
APPLY_SPECIFIC
(
input
),
APPLY_SPECIFIC
(
input
),
APPLY_SPECIFIC
(
kerns
),
APPLY_SPECIFIC
(
kerns
),
...
@@ -309,7 +330,52 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -309,7 +330,52 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
cuda_exit
(
c
->
ctx
);
cuda_exit
(
c
->
ctx
);
return
1
;
return
1
;
}
}
// save worksize for next time/cache
prev_algo
.
wsSize
=
worksize
;
// Add to the cache
if
(
params
->
choose_algo
)
dnn_conv_update_cache
(
hashkey
,
prev_algo
);
}
#ifdef DEBUG
if
(
params
->
choose_algo
)
{
if
(
0
!=
theano_enum_to_string_cudnnConvolutionFwdAlgo_t
(
algo
,
algorithm_name
))
return
1
;
fprintf
(
stderr
,
"%s%s algo: %d %s%s ws: %ld, tensor: %d hash:%s
\n
"
,
params
->
choose_algo
?
"[A]"
:
""
,
params
->
choose_time
?
"[T]"
:
""
,
algo
,
// algorithm_name,
reuse_algo
?
"(reused)"
:
""
,
use_cached
?
"(cache)"
:
""
,
worksize
,
mathtype
,
hashkey
.
c_str
()
);
}
#endif
if
(
params
->
choose_once
)
{
reuse_algo
=
1
;
}
else
{
for
(
unsigned
int
i
=
0
;
i
<
PyGpuArray_NDIM
(
input
);
i
++
)
{
prev_img_dims
[
i
]
=
PyGpuArray_DIM
(
input
,
i
);
prev_kern_dims
[
i
]
=
PyGpuArray_DIM
(
kerns
,
i
);
}
}
{
gpudata
*
workspace
=
0
;
#if CUDNN_MAJOR >= 7
// CUDNN7: need to set math type
err
=
cudnnSetConvolutionMathType
(
desc
,
prev_algo
.
mathType
);
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
PyErr_Format
(
PyExc_RuntimeError
,
"error setting math type for convolution : %s"
,
cudnnGetErrorString
(
err
));
cuda_exit
(
c
->
ctx
);
return
1
;
}
#endif
/*
/*
* This is less than ideal since we need to free it after (which
* This is less than ideal since we need to free it after (which
* introduces a synchronization point. But we don't have a module
* introduces a synchronization point. But we don't have a module
...
@@ -324,7 +390,7 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -324,7 +390,7 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
return
1
;
return
1
;
}
}
}
}
cuda_wait
(
input
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_wait
(
input
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_wait
(
kerns
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_wait
(
kerns
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_wait
((
*
output
)
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_WRITE
);
cuda_wait
((
*
output
)
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_WRITE
);
...
@@ -348,6 +414,7 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -348,6 +414,7 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
cuda_record
(
kerns
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_record
(
kerns
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_record
((
*
output
)
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_WRITE
);
cuda_record
((
*
output
)
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_WRITE
);
}
}
cuda_exit
(
c
->
ctx
);
cuda_exit
(
c
->
ctx
);
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
...
@@ -357,3 +424,5 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
...
@@ -357,3 +424,5 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
}
}
return
0
;
return
0
;
}
}
theano/gpuarray/c_code/dnn_gi.c
浏览文件 @
bacc5f6f
#section init_code_struct
#section init_code_struct
prev_algo
.
algo
=
PARAMS
->
conv_algo
;
prev_algo
.
mathType
=
CUDNN_DEFAULT_MATH
;
prev_algo
.
dataType
=
CUDNN_DATA_FLOAT
;
reuse_algo
=
0
;
reuse_algo
=
0
;
prev_algo
=
PARAMS
->
conv_algo
;
memset
(
prev_kern_dims
,
0
,
sizeof
(
prev_kern_dims
));
memset
(
prev_kern_dims
,
0
,
sizeof
(
prev_kern_dims
));
memset
(
prev_top_dims
,
0
,
sizeof
(
prev_top_dims
));
memset
(
prev_top_dims
,
0
,
sizeof
(
prev_top_dims
));
#section support_code_struct
#section support_code_struct
#include "dnn_conv_find.h"
int
reuse_algo
;
#line 12 "dnn_gi.c"
cudnnConvolutionBwdDataAlgo_t
prev_algo
;
int
reuse_algo
;
bool
use_cached
;
AlgoRec
prev_algo
;
size_t
prev_kern_dims
[
5
];
size_t
prev_kern_dims
[
5
];
size_t
prev_top_dims
[
5
];
size_t
prev_top_dims
[
5
];
...
@@ -86,6 +89,8 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
...
@@ -86,6 +89,8 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
#ifdef DEBUG
#ifdef DEBUG
char
algorithm_name
[
128
];
char
algorithm_name
[
128
];
#endif
#endif
size_t
worksize
=
0
;
cudnnMathType_t
mathtype
=
CUDNN_DEFAULT_MATH
;
cuda_enter
(
c
->
ctx
);
cuda_enter
(
c
->
ctx
);
...
@@ -104,7 +109,7 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
...
@@ -104,7 +109,7 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
(
PyGpuArray_DIMS
(
output
)[
2
]
!=
expected_output_dims
[
2
])
||
(
PyGpuArray_DIMS
(
output
)[
2
]
!=
expected_output_dims
[
2
])
||
(
PyGpuArray_DIMS
(
output
)[
3
]
!=
expected_output_dims
[
3
]))
{
(
PyGpuArray_DIMS
(
output
)[
3
]
!=
expected_output_dims
[
3
]))
{
PyErr_Format
(
PyExc_ValueError
,
"impossible convolution output dim: expected %ldx%ldx%ldx%ld"
PyErr_Format
(
PyExc_ValueError
,
"impossible convolution output dim: expected %ldx%ldx%ldx%ld"
" but received gradient with shape %
ldx%ldx%ldx%l
d"
,
" but received gradient with shape %
dx%dx% dx%
d"
,
expected_output_dims
[
0
],
expected_output_dims
[
1
],
expected_output_dims
[
0
],
expected_output_dims
[
1
],
expected_output_dims
[
2
],
expected_output_dims
[
3
],
expected_output_dims
[
2
],
expected_output_dims
[
3
],
PyGpuArray_DIMS
(
output
)[
0
],
PyGpuArray_DIMS
(
output
)[
1
],
PyGpuArray_DIMS
(
output
)[
0
],
PyGpuArray_DIMS
(
output
)[
1
],
...
@@ -131,6 +136,10 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
...
@@ -131,6 +136,10 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
}
}
}
}
char
pci_id
[
16
];
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_PCIBUSID
,
pci_id
);
std
::
string
hashkey
;
if
(
params
->
choose_algo
)
{
if
(
params
->
choose_algo
)
{
if
(
!
params
->
choose_once
)
{
if
(
!
params
->
choose_once
)
{
reuse_algo
=
1
;
reuse_algo
=
1
;
...
@@ -140,9 +149,22 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
...
@@ -140,9 +149,22 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
reuse_algo
=
(
reuse_algo
&&
reuse_algo
=
(
reuse_algo
&&
PyGpuArray_DIM
(
output
,
i
)
==
prev_top_dims
[
i
]);
PyGpuArray_DIM
(
output
,
i
)
==
prev_top_dims
[
i
]);
}
}
}
if
(
!
reuse_algo
)
{
// check out cache
hashkey
=
std
::
string
(
"GI | GPU#"
)
+
pci_id
+
dnn_conv_shape
(
APPLY_SPECIFIC
(
input
),
PyGpuArray_DEV_DATA
(
*
input
),
APPLY_SPECIFIC
(
kerns
),
PyGpuArray_DEV_DATA
(
kerns
),
desc
,
PyGpuArray_DEV_DATA
(
output
)
);
const
AlgoRec
*
cached
=
dnn_conv_check_cache
(
hashkey
);
if
(
cached
)
{
prev_algo
=
*
cached
;
use_cached
=
1
;
}
}
}
if
(
!
reuse_algo
)
{
if
(
!
(
reuse_algo
||
use_cached
)
)
{
size_t
free
;
size_t
free
;
int
err2
=
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_LARGEST_MEMBLOCK
,
&
free
);
int
err2
=
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_LARGEST_MEMBLOCK
,
&
free
);
...
@@ -182,6 +204,12 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
...
@@ -182,6 +204,12 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
}
}
algo
=
choice
.
algo
;
algo
=
choice
.
algo
;
prev_algo
.
algo
=
(
int
)
algo
;
prev_algo
.
wsSize
=
worksize
=
choice
.
memory
;
prev_algo
.
mathType
=
mathtype
=
choice
.
mathType
;
// Add to the cache
dnn_conv_update_cache
(
hashkey
,
prev_algo
);
#ifdef DEBUG
#ifdef DEBUG
if
(
count
==
0
)
{
if
(
count
==
0
)
{
...
@@ -206,32 +234,12 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
...
@@ -206,32 +234,12 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
cuda_exit
(
c
->
ctx
);
cuda_exit
(
c
->
ctx
);
return
1
;
return
1
;
}
}
prev_algo
.
algo
=
algo
;
// no tensor_op returned from Get()
prev_algo
.
mathType
=
mathtype
=
CUDNN_DEFAULT_MATH
;
}
}
prev_algo
=
algo
;
}
else
{
algo
=
prev_algo
;
}
#ifdef DEBUG
char
algorithm_name
[
128
];
if
(
0
!=
theano_enum_to_string_cudnnConvolutionBwdDataAlgo_t
(
algo
,
algorithm_name
))
return
1
;
// NB: This is printed only when algorithm is chosen at runtime.
if
(
reuse_algo
)
fprintf
(
stderr
,
"(reused %s)
\n
"
,
algorithm_name
);
else
fprintf
(
stderr
,
"(using %s)
\n
"
,
algorithm_name
);
#endif
if
(
params
->
choose_once
)
{
reuse_algo
=
1
;
}
else
{
for
(
unsigned
int
i
=
0
;
i
<
PyGpuArray_NDIM
(
kerns
);
i
++
)
{
prev_kern_dims
[
i
]
=
PyGpuArray_DIM
(
kerns
,
i
);
prev_top_dims
[
i
]
=
PyGpuArray_DIM
(
output
,
i
);
}
}
}
}
}
else
{
/*choose_algo */
// The FFT implementation does not support strides, 1x1 filters or inputs
// The FFT implementation does not support strides, 1x1 filters or inputs
// with a spatial dimension larger than 1024. The tiled-FFT implementation
// with a spatial dimension larger than 1024. The tiled-FFT implementation
...
@@ -279,9 +287,11 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
...
@@ -279,9 +287,11 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
}
}
}
}
}
}
}
/* choose_algo */
size_t
worksize
;
gpudata
*
workspace
;
// if FindEx was used (choose_time), workspace size is set.
if
(
!
(
reuse_algo
||
use_cached
||
params
->
choose_time
))
{
err
=
cudnnGetConvolutionBackwardDataWorkspaceSize
(
err
=
cudnnGetConvolutionBackwardDataWorkspaceSize
(
params
->
handle
,
APPLY_SPECIFIC
(
kerns
),
APPLY_SPECIFIC
(
output
),
desc
,
params
->
handle
,
APPLY_SPECIFIC
(
kerns
),
APPLY_SPECIFIC
(
output
),
desc
,
...
@@ -293,7 +303,47 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
...
@@ -293,7 +303,47 @@ APPLY_SPECIFIC(conv_gi)(PyGpuArrayObject *kerns, PyGpuArrayObject *output,
cuda_exit
(
c
->
ctx
);
cuda_exit
(
c
->
ctx
);
return
1
;
return
1
;
}
}
// save worksize for next time/cache
prev_algo
.
wsSize
=
worksize
;
// Add to the cache
if
(
params
->
choose_algo
)
dnn_conv_update_cache
(
hashkey
,
prev_algo
);
}
#ifdef DEBUG
char
algorithm_name
[
128
];
if
(
0
!=
theano_enum_to_string_cudnnConvolutionBwdDataAlgo_t
(
algo
,
algorithm_name
))
return
1
;
// NB: This is printed only when algorithm is chosen at runtime.
if
(
reuse_algo
)
fprintf
(
stderr
,
"(reused %s)
\n
"
,
algorithm_name
);
else
fprintf
(
stderr
,
"(using %s)
\n
"
,
algorithm_name
);
#endif
if
(
params
->
choose_once
)
{
reuse_algo
=
1
;
}
else
{
for
(
unsigned
int
i
=
0
;
i
<
PyGpuArray_NDIM
(
kerns
);
i
++
)
{
prev_kern_dims
[
i
]
=
PyGpuArray_DIM
(
kerns
,
i
);
prev_top_dims
[
i
]
=
PyGpuArray_DIM
(
output
,
i
);
}
}
gpudata
*
workspace
=
0
;
#if CUDNN_MAJOR >= 7
// CUDNN7: need to set math type
err
=
cudnnSetConvolutionMathType
(
desc
,
prev_algo
.
mathType
);
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
PyErr_Format
(
PyExc_RuntimeError
,
"error setting math type for convolution : %s"
,
cudnnGetErrorString
(
err
));
cuda_exit
(
c
->
ctx
);
return
1
;
}
#endif
if
(
worksize
!=
0
)
{
if
(
worksize
!=
0
)
{
workspace
=
gpudata_alloc
(
c
->
ctx
,
worksize
,
NULL
,
0
,
NULL
);
workspace
=
gpudata_alloc
(
c
->
ctx
,
worksize
,
NULL
,
0
,
NULL
);
if
(
workspace
==
NULL
)
{
if
(
workspace
==
NULL
)
{
...
...
theano/gpuarray/c_code/dnn_gw.c
浏览文件 @
bacc5f6f
#section init_code_struct
#section init_code_struct
prev_algo
.
algo
=
PARAMS
->
conv_algo
;
prev_algo
.
mathType
=
CUDNN_DEFAULT_MATH
;
prev_algo
.
dataType
=
CUDNN_DATA_FLOAT
;
reuse_algo
=
0
;
reuse_algo
=
0
;
prev_algo
=
PARAMS
->
conv_algo
;
memset
(
prev_img_dims
,
0
,
sizeof
(
prev_img_dims
));
memset
(
prev_img_dims
,
0
,
sizeof
(
prev_img_dims
));
memset
(
prev_top_dims
,
0
,
sizeof
(
prev_top_dims
));
memset
(
prev_top_dims
,
0
,
sizeof
(
prev_top_dims
));
#section support_code_struct
#section support_code_struct
#line 12 "dnn_gw.c"
int
reuse_algo
;
#include "dnn_conv_find.h"
cudnnConvolutionBwdFilterAlgo_t
prev_algo
;
int
reuse_algo
;
bool
use_cached
;
AlgoRec
prev_algo
;
size_t
prev_img_dims
[
5
];
size_t
prev_img_dims
[
5
];
size_t
prev_top_dims
[
5
];
size_t
prev_top_dims
[
5
];
...
@@ -87,6 +90,10 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
...
@@ -87,6 +90,10 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
#ifdef DEBUG
#ifdef DEBUG
char
algorithm_name
[
128
];
char
algorithm_name
[
128
];
#endif
#endif
size_t
worksize
=
0
;
cudnnMathType_t
mathtype
=
CUDNN_DEFAULT_MATH
;
std
::
string
hashkey
=
"GW | GPU#"
;
cuda_enter
(
c
->
ctx
);
cuda_enter
(
c
->
ctx
);
...
@@ -104,8 +111,8 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
...
@@ -104,8 +111,8 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
(
PyGpuArray_DIMS
(
output
)[
1
]
/
params
->
num_groups
!=
expected_output_dims
[
1
])
||
(
PyGpuArray_DIMS
(
output
)[
1
]
/
params
->
num_groups
!=
expected_output_dims
[
1
])
||
(
PyGpuArray_DIMS
(
output
)[
2
]
!=
expected_output_dims
[
2
])
||
(
PyGpuArray_DIMS
(
output
)[
2
]
!=
expected_output_dims
[
2
])
||
(
PyGpuArray_DIMS
(
output
)[
3
]
!=
expected_output_dims
[
3
]))
{
(
PyGpuArray_DIMS
(
output
)[
3
]
!=
expected_output_dims
[
3
]))
{
PyErr_Format
(
PyExc_ValueError
,
"impossible convolution output dim: expected %
ldx%ldx%dx%l
d"
PyErr_Format
(
PyExc_ValueError
,
"impossible convolution output dim: expected %
dx%dx%dx%
d"
" but received gradient with shape %ldx%ldx%dx%ld"
,
" but received gradient with shape %ldx%ldx%
l
dx%ld"
,
expected_output_dims
[
0
],
expected_output_dims
[
1
],
expected_output_dims
[
0
],
expected_output_dims
[
1
],
expected_output_dims
[
2
],
expected_output_dims
[
3
],
expected_output_dims
[
2
],
expected_output_dims
[
3
],
PyGpuArray_DIMS
(
output
)[
0
],
PyGpuArray_DIMS
(
output
)[
1
],
PyGpuArray_DIMS
(
output
)[
0
],
PyGpuArray_DIMS
(
output
)[
1
],
...
@@ -119,7 +126,7 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
...
@@ -119,7 +126,7 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
(
PyGpuArray_DIMS
(
output
)[
2
]
!=
expected_output_dims
[
2
])
||
(
PyGpuArray_DIMS
(
output
)[
2
]
!=
expected_output_dims
[
2
])
||
(
PyGpuArray_DIMS
(
output
)[
3
]
!=
expected_output_dims
[
3
])
||
(
PyGpuArray_DIMS
(
output
)[
3
]
!=
expected_output_dims
[
3
])
||
(
PyGpuArray_DIMS
(
output
)[
4
]
!=
expected_output_dims
[
4
]))
{
(
PyGpuArray_DIMS
(
output
)[
4
]
!=
expected_output_dims
[
4
]))
{
PyErr_Format
(
PyExc_ValueError
,
"impossible convolution output dim: expected %
ldx%ldx%ldx%ldx%l
d"
PyErr_Format
(
PyExc_ValueError
,
"impossible convolution output dim: expected %
dx%dx%dx%dx%
d"
" but received gradient with shape %ldx%ldx%ldx%ldx%ld"
,
" but received gradient with shape %ldx%ldx%ldx%ldx%ld"
,
expected_output_dims
[
0
],
expected_output_dims
[
1
],
expected_output_dims
[
0
],
expected_output_dims
[
1
],
expected_output_dims
[
2
],
expected_output_dims
[
3
],
expected_output_dims
[
2
],
expected_output_dims
[
3
],
...
@@ -143,7 +150,26 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
...
@@ -143,7 +150,26 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
}
}
}
}
if
(
!
reuse_algo
)
{
char
pci_id
[
16
];
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_PCIBUSID
,
pci_id
);
hashkey
=
pci_id
;
hashkey
=
dnn_conv_shape
(
APPLY_SPECIFIC
(
input
),
PyGpuArray_DEV_DATA
(
input
),
APPLY_SPECIFIC
(
kerns
),
PyGpuArray_DEV_DATA
(
*
kerns
),
desc
,
PyGpuArray_DEV_DATA
(
output
)
);
if
(
!
reuse_algo
)
{
// check out cache
const
AlgoRec
*
cached
=
dnn_conv_check_cache
(
hashkey
);
if
(
cached
)
{
prev_algo
=
*
cached
;
use_cached
=
1
;
}
}
if
(
!
(
reuse_algo
||
use_cached
))
{
size_t
free
;
size_t
free
;
int
err2
=
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_LARGEST_MEMBLOCK
,
&
free
);
int
err2
=
gpucontext_property
(
c
->
ctx
,
GA_CTX_PROP_LARGEST_MEMBLOCK
,
&
free
);
...
@@ -184,6 +210,12 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
...
@@ -184,6 +210,12 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
}
}
algo
=
choice
.
algo
;
algo
=
choice
.
algo
;
prev_algo
.
algo
=
(
int
)
algo
;
prev_algo
.
wsSize
=
worksize
=
choice
.
memory
;
prev_algo
.
mathType
=
mathtype
=
choice
.
mathType
;
// Add to the cache
dnn_conv_update_cache
(
hashkey
,
prev_algo
);
#ifdef DEBUG
#ifdef DEBUG
if
(
count
==
0
)
{
if
(
count
==
0
)
{
...
@@ -209,32 +241,16 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
...
@@ -209,32 +241,16 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
cuda_exit
(
c
->
ctx
);
cuda_exit
(
c
->
ctx
);
return
1
;
return
1
;
}
}
prev_algo
.
algo
=
algo
;
// no tensor_op returned from Get()
prev_algo
.
mathType
=
mathtype
=
CUDNN_DEFAULT_MATH
;
}
}
prev_algo
=
algo
;
}
else
{
}
else
{
algo
=
(
cudnnConvolutionBwdFilterAlgo_t
)
prev_algo
.
algo
;
algo
=
prev_algo
;
worksize
=
prev_algo
.
wsSize
;
}
mathtype
=
prev_algo
.
mathType
;
#ifdef DEBUG
if
(
0
!=
theano_enum_to_string_cudnnConvolutionBwdFilterAlgo_t
(
algo
,
algorithm_name
))
return
1
;
// NB: This is printed only when algorithm is chosen at runtime.
if
(
reuse_algo
)
fprintf
(
stderr
,
"(reused %s)
\n
"
,
algorithm_name
);
else
fprintf
(
stderr
,
"(using %s)
\n
"
,
algorithm_name
);
#endif
if
(
params
->
choose_once
)
{
reuse_algo
=
1
;
}
else
{
for
(
unsigned
int
i
=
0
;
i
<
PyGpuArray_NDIM
(
input
);
i
++
)
{
prev_img_dims
[
i
]
=
PyGpuArray_DIM
(
input
,
i
);
prev_top_dims
[
i
]
=
PyGpuArray_DIM
(
output
,
i
);
}
}
}
}
}
else
{
// The FFT implementation does not support strides, 1x1 filters or inputs
// The FFT implementation does not support strides, 1x1 filters or inputs
// with a spatial dimension larger than 1024.
// with a spatial dimension larger than 1024.
// If the chosen implementation is FFT, validate that it can
// If the chosen implementation is FFT, validate that it can
...
@@ -267,9 +283,11 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
...
@@ -267,9 +283,11 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
algo
=
CUDNN_CONVOLUTION_BWD_FILTER_ALGO_0
;
algo
=
CUDNN_CONVOLUTION_BWD_FILTER_ALGO_0
;
}
}
}
}
}
/* choose_algo */
size_t
worksize
;
// if FindEx was used (choose_time), workspace size is set.
gpudata
*
workspace
;
if
(
!
(
reuse_algo
||
use_cached
||
params
->
choose_time
))
{
err
=
cudnnGetConvolutionBackwardFilterWorkspaceSize
(
err
=
cudnnGetConvolutionBackwardFilterWorkspaceSize
(
params
->
handle
,
APPLY_SPECIFIC
(
input
),
APPLY_SPECIFIC
(
output
),
desc
,
params
->
handle
,
APPLY_SPECIFIC
(
input
),
APPLY_SPECIFIC
(
output
),
desc
,
...
@@ -281,7 +299,49 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
...
@@ -281,7 +299,49 @@ APPLY_SPECIFIC(conv_gw)(PyGpuArrayObject *input, PyGpuArrayObject *output,
cuda_exit
(
c
->
ctx
);
cuda_exit
(
c
->
ctx
);
return
1
;
return
1
;
}
}
// save worksize for next time/cache
prev_algo
.
wsSize
=
worksize
;
// Add to the cache
if
(
params
->
choose_algo
)
dnn_conv_update_cache
(
hashkey
,
prev_algo
);
}
#ifdef DEBUG
if
(
0
!=
theano_enum_to_string_cudnnConvolutionBwdFilterAlgo_t
(
algo
,
algorithm_name
))
return
1
;
// NB: This is printed only when algorithm is chosen at runtime.
fprintf
(
stderr
,
"%s%s algo: %d %s%s ws: %ld, tensor: %d hash:%s
\n
"
,
params
->
choose_algo
?
"[A]"
:
""
,
params
->
choose_time
?
"[T]"
:
""
,
algo
,
// algorithm_name,
reuse_algo
?
"(reused)"
:
""
,
use_cached
?
"(cache)"
:
""
,
worksize
,
mathtype
,
hashkey
.
c_str
()
);
#endif
if
(
params
->
choose_once
)
{
reuse_algo
=
1
;
}
else
{
for
(
unsigned
int
i
=
0
;
i
<
PyGpuArray_NDIM
(
input
);
i
++
)
{
prev_img_dims
[
i
]
=
PyGpuArray_DIM
(
input
,
i
);
prev_top_dims
[
i
]
=
PyGpuArray_DIM
(
output
,
i
);
}
}
gpudata
*
workspace
=
0
;
#if CUDNN_MAJOR >= 7
// CUDNN7: need to set math type
err
=
cudnnSetConvolutionMathType
(
desc
,
prev_algo
.
mathType
);
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
PyErr_Format
(
PyExc_RuntimeError
,
"error setting math type for convolution : %s"
,
cudnnGetErrorString
(
err
));
cuda_exit
(
c
->
ctx
);
return
1
;
}
#endif
if
(
worksize
!=
0
)
{
if
(
worksize
!=
0
)
{
workspace
=
gpudata_alloc
(
c
->
ctx
,
worksize
,
NULL
,
0
,
NULL
);
workspace
=
gpudata_alloc
(
c
->
ctx
,
worksize
,
NULL
,
0
,
NULL
);
if
(
workspace
==
NULL
)
{
if
(
workspace
==
NULL
)
{
...
...
theano/gpuarray/dnn.py
浏览文件 @
bacc5f6f
...
@@ -399,7 +399,7 @@ class DnnBase(COp):
...
@@ -399,7 +399,7 @@ class DnnBase(COp):
return
[]
return
[]
def
c_code_cache_version
(
self
):
def
c_code_cache_version
(
self
):
return
(
super
(
DnnBase
,
self
)
.
c_code_cache_version
(),
version
(),
1
)
return
(
super
(
DnnBase
,
self
)
.
c_code_cache_version
(),
version
(),
2
)
class
GpuDnnConvDesc
(
COp
):
class
GpuDnnConvDesc
(
COp
):
...
@@ -567,7 +567,7 @@ class GpuDnnConv(DnnBase):
...
@@ -567,7 +567,7 @@ class GpuDnnConv(DnnBase):
num_groups
=
int_t
)
num_groups
=
int_t
)
def
__init__
(
self
,
algo
=
None
,
inplace
=
False
,
num_groups
=
1
):
def
__init__
(
self
,
algo
=
None
,
inplace
=
False
,
num_groups
=
1
):
DnnBase
.
__init__
(
self
,
[
"c_code/dnn_conv_base.c"
,
"c_code/dnn_fwd.c"
],
DnnBase
.
__init__
(
self
,
[
"c_code/dnn_conv_base.c"
,
"c_code/dnn_
conv_find.c"
,
"c_code/dnn_
fwd.c"
],
"APPLY_SPECIFIC(conv_fwd)"
)
"APPLY_SPECIFIC(conv_fwd)"
)
if
algo
is
None
:
if
algo
is
None
:
...
@@ -710,7 +710,7 @@ class GpuDnnConvGradW(DnnBase):
...
@@ -710,7 +710,7 @@ class GpuDnnConvGradW(DnnBase):
num_groups
=
int_t
)
num_groups
=
int_t
)
def
__init__
(
self
,
inplace
=
False
,
algo
=
None
,
num_groups
=
1
):
def
__init__
(
self
,
inplace
=
False
,
algo
=
None
,
num_groups
=
1
):
DnnBase
.
__init__
(
self
,
[
"c_code/dnn_conv_base.c"
,
"c_code/dnn_gw.c"
],
DnnBase
.
__init__
(
self
,
[
"c_code/dnn_conv_base.c"
,
"c_code/dnn_
conv_find.c"
,
"c_code/dnn_
gw.c"
],
"APPLY_SPECIFIC(conv_gw)"
)
"APPLY_SPECIFIC(conv_gw)"
)
self
.
inplace
=
bool
(
inplace
)
self
.
inplace
=
bool
(
inplace
)
if
self
.
inplace
:
if
self
.
inplace
:
...
@@ -846,7 +846,7 @@ class GpuDnnConvGradI(DnnBase):
...
@@ -846,7 +846,7 @@ class GpuDnnConvGradI(DnnBase):
num_groups
=
int_t
)
num_groups
=
int_t
)
def
__init__
(
self
,
inplace
=
False
,
algo
=
None
,
num_groups
=
1
):
def
__init__
(
self
,
inplace
=
False
,
algo
=
None
,
num_groups
=
1
):
DnnBase
.
__init__
(
self
,
[
"c_code/dnn_conv_base.c"
,
"c_code/dnn_gi.c"
],
DnnBase
.
__init__
(
self
,
[
"c_code/dnn_conv_base.c"
,
"c_code/dnn_
conv_find.c"
,
"c_code/dnn_
gi.c"
],
"APPLY_SPECIFIC(conv_gi)"
)
"APPLY_SPECIFIC(conv_gi)"
)
self
.
inplace
=
bool
(
inplace
)
self
.
inplace
=
bool
(
inplace
)
if
self
.
inplace
:
if
self
.
inplace
:
...
...
theano/gpuarray/subtensor.py
浏览文件 @
bacc5f6f
...
@@ -1180,15 +1180,19 @@ __device__ ga_half atomicAdd(ga_half *addr, ga_half val) {
...
@@ -1180,15 +1180,19 @@ __device__ ga_half atomicAdd(ga_half *addr, ga_half val) {
old = *base;
old = *base;
do {
do {
assumed = old;
assumed = old;
sum = __float2half_rn(
ga_half old_perm;
__HALF_TO_US(old_perm) = __byte_perm(old, 0,
((ga_size)addr & 2) ? 0x4432 : 0x4410);
sum = __float2half_as_us(
__half2float(val) +
__half2float(val) +
__half2float((ga_half)__byte_perm(old, 0,
__half2float(old_perm));
((ga_size)addr & 2) ? 0x4432 : 0x4410)));
new_ = __byte_perm(old, sum, ((ga_size)addr & 2) ? 0x5410 : 0x3254);
new_ = __byte_perm(old, sum, ((ga_size)addr & 2) ? 0x5410 : 0x3254);
old = atomicCAS(base, assumed, new_);
old = atomicCAS(base, assumed, new_);
} while (assumed != old);
} while (assumed != old);
return (ga_half)__byte_perm(old, 0,
ga_half ret;
((ga_size)addr & 2) ? 0x4432 : 0x4410);
__HALF_TO_US(ret) = __byte_perm(old, 0,
((ga_size)addr & 2) ? 0x4432 : 0x4410);
return ret;
}
}
__device__ ga_half atomicExch(ga_half *addr, ga_half val) {
__device__ ga_half atomicExch(ga_half *addr, ga_half val) {
...
@@ -1197,13 +1201,14 @@ __device__ ga_half atomicExch(ga_half *addr, ga_half val) {
...
@@ -1197,13 +1201,14 @@ __device__ ga_half atomicExch(ga_half *addr, ga_half val) {
old = *base;
old = *base;
do {
do {
assumed = old;
assumed = old;
new_ = __byte_perm(old,
val
, ((ga_size)addr & 2) ? 0x5410 : 0x3254);
new_ = __byte_perm(old,
__HALF_TO_US(val)
, ((ga_size)addr & 2) ? 0x5410 : 0x3254);
old = atomicCAS(base, assumed, new_);
old = atomicCAS(base, assumed, new_);
} while (assumed != old);
} while (assumed != old);
return (ga_half)__byte_perm(old, 0,
ga_half ret;
((ga_size)addr & 2) ? 0x4432 : 0x4410);
__HALF_TO_US(ret) =__byte_perm(old, 0,
((ga_size)addr & 2) ? 0x4432 : 0x4410);
return ret;
}
}
KERNEL void k_vector_add_fast(const ga_size numRowsX,
KERNEL void k_vector_add_fast(const ga_size numRowsX,
const ga_size numColsX,
const ga_size numColsX,
const ga_ssize stridesX0,
const ga_ssize stridesX0,
...
...
编写
预览
Markdown
格式
0%
重试
或
添加新文件
添加附件
取消
您添加了
0
人
到此讨论。请谨慎行事。
请先完成此评论的编辑!
取消
请
注册
或者
登录
后发表评论