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pytensor
Commits
5c10bb1d
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5c10bb1d
authored
8月 22, 2017
作者:
notoraptor
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差异文件
Add debug profiling for dnn_fwd
上级
1bb1bb8e
隐藏空白字符变更
内嵌
并排
正在显示
3 个修改的文件
包含
125 行增加
和
37 行删除
+125
-37
dnn_conv_base.c
theano/gpuarray/c_code/dnn_conv_base.c
+17
-0
dnn_fwd.c
theano/gpuarray/c_code/dnn_fwd.c
+103
-37
test_dnn.py
theano/gpuarray/tests/test_dnn.py
+5
-0
没有找到文件。
theano/gpuarray/c_code/dnn_conv_base.c
浏览文件 @
5c10bb1d
...
...
@@ -85,6 +85,23 @@ typedef std::unordered_map<std::string, AlgoRec> AlgoCache;
#line 87 "dnn_conv_base.c"
#if __cplusplus < 201103L
/* Using C standard interface (<ctime>). */
#define theano_clock_t clock_t
#define theano_clock() clock()
#define theano_clock_to_milliseconds(t) ( 1000.0 * (t) / CLOCKS_PER_SEC )
#define theano_clock_average_to_milliseconds(t, n) ( (1000.0 * (t) / (n)) / CLOCKS_PER_SEC )
#else
/* Using C++11 standard interface (<chrono>).
I don't know if it's really more accurate, but at least
it provides interfaces up to nanoseconds. */
#include <chrono>
#define theano_clock_t std::chrono::time_point
#define theano_clock() std::chrono::steady_clock::now()
#define theano_clock_to_milliseconds(t) ( std::chrono::duration_cast<std::chrono::nanoseconds>(t).count() / 1000000.0 )
#define theano_clock_average_to_milliseconds(t, n) ( theano_clock_to_milliseconds(t) / (n) )
#endif
pthread_mutex_t
algoMutex
;
AlgoCache
algoCache
;
...
...
theano/gpuarray/c_code/dnn_fwd.c
浏览文件 @
5c10bb1d
...
...
@@ -3,9 +3,22 @@ prev_algo.algo = PARAMS->conv_algo;
prev_algo
.
mathType
=
CUDNN_DEFAULT_MATH
;
reuse_algo
=
0
;
hash_prefix
=
std
::
string
(
"FWD|GPU#"
);
#ifdef DEBUG
total_computation_time
=
0
;
total_selection_time
=
0
;
n_computations
=
0
;
n_selections
=
0
;
if
(
PARAMS
->
choose_algo
)
{
if
(
PARAMS
->
choose_time
)
{
selection_name
=
"fastest"
;
}
else
{
selection_name
=
"best suited"
;
}
};
#endif
#section support_code_struct
#line
9
"dnn_fwd.c"
#line
22
"dnn_fwd.c"
int
reuse_algo
;
AlgoRec
prev_algo
;
std
::
string
hash_prefix
;
...
...
@@ -14,6 +27,11 @@ std::string hash_prefix;
#ifdef DEBUG
char
algorithm_name
[
128
];
theano_clock_t
total_computation_time
;
theano_clock_t
total_selection_time
;
size_t
n_computations
;
size_t
n_selections
;
const
char
*
selection_name
;
#endif
/** Check given algorithm against inputs and convolution descriptor,
...
...
@@ -121,6 +139,9 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
float
af
=
alpha
,
bf
=
beta
;
cudnnStatus_t
err
=
CUDNN_STATUS_SUCCESS
;
bool
use_cached
=
0
;
#ifdef DEBUG
theano_clock_t
t
;
#endif
if
(
PyGpuArray_DIMS
(
input
)[
1
]
!=
PyGpuArray_DIMS
(
kerns
)[
1
]
*
params
->
num_groups
)
{
PyErr_SetString
(
PyExc_ValueError
,
...
...
@@ -242,12 +263,18 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
}
// We don't sync the buffer as we don't care about the values.
#ifdef DEBUG
t
=
theano_clock
();
#endif
err
=
cudnnFindConvolutionForwardAlgorithmEx
(
params
->
handle
,
APPLY_SPECIFIC
(
input
),
PyGpuArray_DEV_DATA
(
input
),
APPLY_SPECIFIC
(
kerns
),
PyGpuArray_DEV_DATA
(
kerns
),
desc
,
APPLY_SPECIFIC
(
output
),
PyGpuArray_DEV_DATA
(
o
),
1
,
&
count
,
&
choice
,
*
(
void
**
)
tmpmem
,
maxfree
);
#ifdef DEBUG
t
=
theano_clock
()
-
t
;
#endif
gpudata_release
(
tmpmem
);
if
(
beta
!=
0
)
{
Py_XDECREF
(
o
);
...
...
@@ -282,10 +309,16 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
mathtype
=
choice
.
mathType
;
#endif
}
else
{
#ifdef DEBUG
t
=
theano_clock
();
#endif
err
=
cudnnGetConvolutionForwardAlgorithm
(
params
->
handle
,
APPLY_SPECIFIC
(
input
),
APPLY_SPECIFIC
(
kerns
),
desc
,
APPLY_SPECIFIC
(
output
),
CUDNN_CONVOLUTION_FWD_SPECIFY_WORKSPACE_LIMIT
,
maxfree
,
&
algo
);
#ifdef DEBUG
t
=
theano_clock
()
-
t
;
#endif
if
(
err
!=
CUDNN_STATUS_SUCCESS
)
{
PyErr_Format
(
PyExc_RuntimeError
,
"error selecting convolution algo: %s"
,
...
...
@@ -294,6 +327,10 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
return
1
;
}
}
#ifdef DEBUG
total_selection_time
+=
t
;
++
n_selections
;
#endif
}
}
...
...
@@ -356,7 +393,19 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
use_cached
?
"(cache)"
:
""
,
worksize
,
hashkey
.
c_str
()
);
);
if
(
!
(
reuse_algo
||
use_cached
))
{
// We have selected an algorithm at runtime.
// `t` still contains timing about selection step.
fprintf
(
stderr
,
"
\t
(selected %s fwd algo in %g milliseconds)
\n
"
,
selection_name
,
theano_clock_to_milliseconds
(
t
));
if
(
n_selections
>
1
)
{
fprintf
(
stderr
,
"
\t
(selected %lu fwd algos in %g milliseconds (average: %g milliseconds per selection))
\n
"
,
n_selections
,
theano_clock_to_milliseconds
(
total_selection_time
),
theano_clock_average_to_milliseconds
(
total_selection_time
,
n_selections
));
}
}
}
#endif
if
(
!
reuse_algo
)
{
...
...
@@ -375,45 +424,53 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
}
// params->choose_algo
{
gpudata
*
workspace
=
0
;
/*
* This is less than ideal since we need to free it after (which
* introduces a synchronization point. But we don't have a module
* to place a nice get_work_mem() function in.
*/
if
(
worksize
!=
0
)
{
workspace
=
gpudata_alloc
(
c
->
ctx
,
worksize
,
NULL
,
0
,
NULL
);
if
(
workspace
==
NULL
)
{
PyErr_SetString
(
PyExc_RuntimeError
,
"Could not allocate working memory"
);
cuda_exit
(
c
->
ctx
);
return
1
;
}
gpudata
*
workspace
=
0
;
/*
* This is less than ideal since we need to free it after (which
* introduces a synchronization point. But we don't have a module
* to place a nice get_work_mem() function in.
*/
if
(
worksize
!=
0
)
{
workspace
=
gpudata_alloc
(
c
->
ctx
,
worksize
,
NULL
,
0
,
NULL
);
if
(
workspace
==
NULL
)
{
PyErr_SetString
(
PyExc_RuntimeError
,
"Could not allocate working memory"
);
cuda_exit
(
c
->
ctx
);
return
1
;
}
}
cuda_wait
(
input
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_wait
(
kerns
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_wait
((
*
output
)
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_WRITE
);
for
(
int
g
=
0
;
g
<
groups
;
g
++
)
{
err
=
cudnnConvolutionForward
(
params
->
handle
,
alpha_p
,
APPLY_SPECIFIC
(
input
),
((
char
*
)
PyGpuArray_DEV_DATA
(
input
))
+
input_offset
*
g
,
APPLY_SPECIFIC
(
kerns
),
((
char
*
)
PyGpuArray_DEV_DATA
(
kerns
))
+
kern_offset
*
g
,
desc
,
algo
,
worksize
==
0
?
NULL
:
*
(
void
**
)
workspace
,
worksize
,
beta_p
,
APPLY_SPECIFIC
(
output
),
((
char
*
)
PyGpuArray_DEV_DATA
(
*
output
))
+
output_offset
*
g
);
}
cuda_wait
(
input
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_wait
(
kerns
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_wait
((
*
output
)
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_WRITE
);
#ifdef DEBUG
t
=
theano_clock
();
#endif
for
(
int
g
=
0
;
g
<
groups
;
g
++
)
{
err
=
cudnnConvolutionForward
(
params
->
handle
,
alpha_p
,
APPLY_SPECIFIC
(
input
),
((
char
*
)
PyGpuArray_DEV_DATA
(
input
))
+
input_offset
*
g
,
APPLY_SPECIFIC
(
kerns
),
((
char
*
)
PyGpuArray_DEV_DATA
(
kerns
))
+
kern_offset
*
g
,
desc
,
algo
,
worksize
==
0
?
NULL
:
*
(
void
**
)
workspace
,
worksize
,
beta_p
,
APPLY_SPECIFIC
(
output
),
((
char
*
)
PyGpuArray_DEV_DATA
(
*
output
))
+
output_offset
*
g
);
}
if
(
worksize
!=
0
)
gpudata_release
(
workspace
);
if
(
worksize
!=
0
)
gpudata_release
(
workspace
);
cuda_record
(
input
->
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
(
input
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_record
(
kerns
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_READ
);
cuda_record
((
*
output
)
->
ga
.
data
,
GPUARRAY_CUDA_WAIT_WRITE
);
#ifdef DEBUG
t
=
theano_clock
()
-
t
;
total_computation_time
+=
t
;
++
n_computations
;
#endif
cuda_exit
(
c
->
ctx
);
...
...
@@ -422,6 +479,15 @@ APPLY_SPECIFIC(conv_fwd)(PyGpuArrayObject *input, PyGpuArrayObject *kerns,
cudnnGetErrorString
(
err
));
return
1
;
}
#ifdef DEBUG
fprintf
(
stderr
,
"
\t
(ran fwd algo in %g milliseconds)
\n
"
,
theano_clock_to_milliseconds
(
t
));
if
(
n_computations
>
1
)
{
fprintf
(
stderr
,
"
\t
(ran %lu fwd computations in %g milliseconds (average: %g milliseconds per call))
\n
"
,
n_computations
,
theano_clock_to_milliseconds
(
total_computation_time
),
theano_clock_average_to_milliseconds
(
total_computation_time
,
n_computations
));
}
#endif
return
0
;
}
...
...
theano/gpuarray/tests/test_dnn.py
浏览文件 @
5c10bb1d
...
...
@@ -2720,6 +2720,11 @@ class TestDnnConv3DRuntimeAlgorithms(TestDnnConv2DRuntimeAlgorithms):
]
class
TestDnnConv2DRuntimeAlgorithmsWithBigInputs
(
TestDnnConv2DRuntimeAlgorithms
):
runtime_shapes
=
[(
5
,
[(
12
,
4
,
128
,
128
),
(
5
,
4
,
64
,
64
)]),
(
6
,
[(
12
,
4
,
256
,
256
),
(
5
,
4
,
32
,
64
)])]
def
test_conv_guess_once_with_dtypes
():
# This test checks that runtime conv algorithm selection does not raise any exception
# when consecutive functions with different dtypes and precisions are executed.
...
...
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