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b38753da
编写于
2月 12, 2020
作者:
Y
Yuan Shuai
提交者:
GitHub
2月 12, 2020
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
[LITE][OPENCL] Add opencl image2d conv3x3. test=develop (#2853)
* [LITE][OPENCL] Add opencl image2d conv3x3. test=develop
上级
6e39cfa6
变更
4
展开全部
显示空白变更内容
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并排
Showing
4 changed file
with
987 addition
and
0 deletion
+987
-0
lite/backends/opencl/cl_kernel/image/conv2d_3x3_kernel.cl
lite/backends/opencl/cl_kernel/image/conv2d_3x3_kernel.cl
+428
-0
lite/kernels/opencl/conv_compute.cc
lite/kernels/opencl/conv_compute.cc
+193
-0
lite/kernels/opencl/conv_compute.h
lite/kernels/opencl/conv_compute.h
+1
-0
lite/kernels/opencl/conv_image2d_compute_test.cc
lite/kernels/opencl/conv_image2d_compute_test.cc
+365
-0
未找到文件。
lite/backends/opencl/cl_kernel/image/conv2d_3x3_kernel.cl
0 → 100644
浏览文件 @
b38753da
此差异已折叠。
点击以展开。
lite/kernels/opencl/conv_compute.cc
浏览文件 @
b38753da
...
...
@@ -362,6 +362,20 @@ void ConvImageCompute::PrepareForRun() {
filter_image_dims
[
0
],
filter_image_dims
[
1
],
filter_image_v
.
data
());
impl_
=
&
ConvImageCompute
::
Conv2d1x1
;
}
else
if
(
kernel_h
==
3
&&
kernel_h
==
3
)
{
// conv2d_3x3
kernel_func_names_
.
push_back
(
"conv2d_3x3"
);
kernel_func_paths_
.
push_back
(
"image/conv2d_3x3_kernel.cl"
);
CLImageConverterFolder
converter
;
const
DDim
&
filter_image_dims
=
converter
.
InitImageDimInfoWith
(
filter_dims
);
std
::
vector
<
float
>
filter_image_v
(
filter_image_dims
[
0
]
*
filter_image_dims
[
1
]
*
4
);
// 4 : RGBA
converter
.
NCHWToImage
(
filter_cpu
,
filter_image_v
.
data
(),
filter_dims
);
filter_gpu_image_
.
mutable_data
<
float
,
cl
::
Image2D
>
(
filter_image_dims
[
0
],
filter_image_dims
[
1
],
filter_image_v
.
data
());
impl_
=
&
ConvImageCompute
::
Conv2d3x3
;
}
else
if
(
kernel_h
==
5
&&
kernel_w
==
5
)
{
// conv2d_5x5
kernel_func_names_
.
push_back
(
"conv2d_5x5"
);
...
...
@@ -582,6 +596,184 @@ void ConvImageCompute::Conv2d1x1() {
CL_CHECK_FATAL
(
status
);
context
.
cl_wait_list
()
->
emplace
(
out_image
,
event_
);
}
void
ConvImageCompute
::
Conv2d3x3
()
{
const
auto
&
param
=
*
param_
.
get_mutable
<
param_t
>
();
auto
input_dims
=
param
.
x
->
dims
();
auto
paddings
=
*
param
.
paddings
;
auto
strides
=
param
.
strides
;
auto
*
input_image
=
param
.
x
->
data
<
float
,
cl
::
Image2D
>
();
auto
*
filter_image
=
filter_gpu_image_
.
data
<
float
,
cl
::
Image2D
>
();
auto
filter_dims
=
param
.
filter
->
dims
();
auto
output_dims
=
param
.
output
->
dims
();
int
input_width
=
input_dims
[
3
];
int
input_height
=
input_dims
[
2
];
int
input_channel
=
input_dims
[
1
];
int
output_width
=
output_dims
[
3
];
int
output_height
=
output_dims
[
2
];
int
output_channel
=
output_dims
[
1
];
int
filter_width
=
filter_dims
[
3
];
int
filter_height
=
filter_dims
[
2
];
int
filter_channel
=
filter_dims
[
1
];
auto
out_image_shape
=
InitImageDimInfoWith
(
output_dims
);
auto
*
out_image
=
param
.
output
->
mutable_data
<
float
,
cl
::
Image2D
>
(
out_image_shape
[
"width"
],
out_image_shape
[
"height"
]);
const
bool
has_bias
=
param
.
bias
!=
nullptr
;
const
bool
is_element_wise_bias
=
has_bias
&&
param
.
output
->
dims
()
==
param
.
bias
->
dims
();
int
offset
=
static_cast
<
int
>
(
param
.
filter
->
dims
()[
2
])
/
2
-
static_cast
<
int
>
(
paddings
[
0
]);
// calc input_c_block
auto
input_image_shape
=
InitImageDimInfoWith
(
input_dims
);
int
input_c_block
=
input_image_shape
[
"width"
]
/
input_dims
[
3
];
int
input_c
=
input_dims
[
1
];
auto
dilations
=
*
param
.
dilations
;
// re-calc group
int
new_groups
{
param
.
groups
};
if
(
filter_dims
[
0
]
==
output_dims
[
1
]
&&
filter_dims
[
1
]
==
input_dims
[
1
])
{
new_groups
=
1
;
}
else
if
(
!
(
filter_dims
[
0
]
==
input_dims
[
1
]
&&
filter_dims
[
1
]
==
1
))
{
new_groups
=
input_channel
/
filter_channel
;
}
/* TODO(ysh329): mobile has no case below
else {
LOG(FATAL) << "Not support conv3x3 case with"
<< " input_dims:" << input_dims << " output_dims:" <<
output_dims
<< " filter_dims:" << filter_dims;
}
*/
const
std
::
vector
<
size_t
>&
default_work_size
=
DefaultWorkSize
(
output_dims
,
DDim
(
std
::
vector
<
DDim
::
value_type
>
{
static_cast
<
int64_t
>
(
out_image_shape
[
"width"
]),
static_cast
<
int64_t
>
(
out_image_shape
[
"height"
])}));
int
c_block
=
default_work_size
[
0
];
int
w
=
default_work_size
[
1
];
int
nh
=
default_work_size
[
2
];
VLOG
(
4
)
<<
"============ conv2d params ============"
;
VLOG
(
4
)
<<
"input_image_shape: "
<<
input_image_shape
[
"width"
]
<<
","
<<
input_image_shape
[
"height"
];
VLOG
(
4
)
<<
"input_c_block: "
<<
input_c_block
;
VLOG
(
4
)
<<
"input_c: "
<<
input_c
;
VLOG
(
4
)
<<
"input_image: "
<<
input_image
;
VLOG
(
4
)
<<
"input_dims: "
<<
input_dims
;
VLOG
(
4
)
<<
"filter_dims: "
<<
filter_dims
;
VLOG
(
4
)
<<
"filter_image: "
<<
filter_image
;
VLOG
(
4
)
<<
"output_dims: "
<<
output_dims
;
VLOG
(
4
)
<<
"out_image_shape: "
<<
out_image_shape
[
"width"
]
<<
", "
<<
out_image_shape
[
"height"
];
VLOG
(
4
)
<<
"paddings: "
<<
paddings
[
0
]
<<
","
<<
paddings
[
1
];
VLOG
(
4
)
<<
"has bias: "
<<
has_bias
;
VLOG
(
4
)
<<
"is_element_wise_bias : "
<<
is_element_wise_bias
;
VLOG
(
4
)
<<
"strides: "
<<
strides
[
0
]
<<
","
<<
strides
[
1
];
VLOG
(
4
)
<<
"offset: "
<<
offset
;
VLOG
(
4
)
<<
"dilations.size : "
<<
dilations
.
size
();
VLOG
(
4
)
<<
"dilations: "
<<
dilations
[
0
]
<<
", "
<<
dilations
[
1
];
VLOG
(
4
)
<<
"param.groups(groups):"
<<
param
.
groups
;
VLOG
(
4
)
<<
"new_groups:"
<<
new_groups
;
VLOG
(
4
)
<<
"default work size{c_block, w, nh}: "
<<
"{"
<<
c_block
<<
", "
<<
w
<<
", "
<<
nh
<<
""
<<
"}"
;
CHECK_GE
(
dilations
.
size
(),
2
);
CHECK
(
dilations
[
0
]
==
dilations
[
1
]);
CHECK_GE
(
input_dims
.
size
(),
4
);
CHECK_GE
(
paddings
.
size
(),
2
);
CHECK
(
paddings
[
0
]
==
paddings
[
1
]);
CHECK_GE
(
strides
.
size
(),
2
);
CHECK
(
strides
[
0
]
==
strides
[
1
]);
const
cl
::
Image2D
*
bias_image
=
nullptr
;
if
(
has_bias
)
{
bias_image
=
bias_gpu_image_
.
data
<
float
,
cl
::
Image2D
>
();
}
auto
&
context
=
ctx_
->
As
<
OpenCLContext
>
();
CHECK
(
context
.
cl_context
()
!=
nullptr
);
STL
::
stringstream
kernel_key
;
kernel_key
<<
kernel_func_names_
[
0
]
<<
build_options_
[
0
];
auto
kernel
=
context
.
cl_context
()
->
GetKernel
(
kernel_key
.
str
());
VLOG
(
4
)
<<
"kernel_key: "
<<
kernel_key
.
str
();
VLOG
(
4
)
<<
"kernel ready ... "
<<
kernel_key
.
str
();
VLOG
(
4
)
<<
"w: "
<<
w
;
cl_int
status
;
int
arg_idx
=
0
;
status
=
kernel
.
setArg
(
arg_idx
,
c_block
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
w
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
nh
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
*
input_image
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
*
filter_image
);
CL_CHECK_FATAL
(
status
);
if
(
has_bias
)
{
VLOG
(
4
)
<<
"set bias_image: "
;
status
=
kernel
.
setArg
(
++
arg_idx
,
*
bias_image
);
CL_CHECK_FATAL
(
status
);
}
status
=
kernel
.
setArg
(
++
arg_idx
,
*
out_image
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
strides
[
0
]);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
offset
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
input_c_block
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
dilations
[
0
]);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
input_width
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
input_height
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
output_width
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
output_height
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
output_channel
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
filter_channel
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
filter_width
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
filter_height
);
CL_CHECK_FATAL
(
status
);
status
=
kernel
.
setArg
(
++
arg_idx
,
new_groups
);
CL_CHECK_FATAL
(
status
);
auto
global_work_size
=
cl
::
NDRange
{
static_cast
<
size_t
>
(
default_work_size
.
data
()[
0
]),
static_cast
<
size_t
>
(
default_work_size
.
data
()[
1
]),
static_cast
<
size_t
>
(
default_work_size
.
data
()[
2
])};
VLOG
(
4
)
<<
"out_image: "
<<
out_image
;
VLOG
(
4
)
<<
"global_work_size[3D]: {"
<<
global_work_size
[
0
]
<<
","
<<
global_work_size
[
1
]
<<
","
<<
global_work_size
[
2
]
<<
"}"
;
status
=
context
.
cl_context
()
->
GetCommandQueue
().
enqueueNDRangeKernel
(
kernel
,
cl
::
NullRange
,
global_work_size
,
cl
::
NullRange
,
nullptr
,
event_
.
get
());
CL_CHECK_FATAL
(
status
);
context
.
cl_wait_list
()
->
emplace
(
out_image
,
event_
);
}
void
ConvImageCompute
::
Conv2d5x5
()
{
const
auto
&
param
=
*
param_
.
get_mutable
<
param_t
>
();
auto
input_dims
=
param
.
x
->
dims
();
...
...
@@ -726,6 +918,7 @@ void ConvImageCompute::Conv2d5x5() {
CL_CHECK_FATAL
(
status
);
context
.
cl_wait_list
()
->
emplace
(
out_image
,
event_
);
}
void
ConvImageCompute
::
Conv2d7x7
()
{
const
auto
&
param
=
*
param_
.
get_mutable
<
param_t
>
();
auto
input_dims
=
param
.
x
->
dims
();
...
...
lite/kernels/opencl/conv_compute.h
浏览文件 @
b38753da
...
...
@@ -71,6 +71,7 @@ class ConvImageCompute : public KernelLite<TARGET(kOpenCL),
private:
void
Conv2d1x1
();
void
Conv2d3x3
();
void
Conv2d5x5
();
void
Conv2d7x7
();
...
...
lite/kernels/opencl/conv_image2d_compute_test.cc
浏览文件 @
b38753da
...
...
@@ -446,6 +446,371 @@ TEST(conv2d, compute_image2d_1x1) {
#undef LOOP_TEST
#undef PRINT_RESULT
// #define PRINT_RESULT
// #define LOOP_TEST
TEST
(
conv2d
,
compute_image2d_3x3
)
{
// conv infos
const
int
ksize
=
3
;
// int loop_cnt = 0;
#ifdef LOOP_TEST
const
int
pad
=
1
;
const
int
dilation
=
1
;
const
int
stride
=
2
;
const
int
group
=
1
;
for
(
int
batch_size
=
1
;
batch_size
<
2
;
++
batch_size
)
{
for
(
int
oc
=
1
;
oc
<
10
;
oc
+=
1
)
{
// oc
for
(
int
ih
=
5
;
ih
<
9
;
ih
+=
1
)
{
// ih
int
iw
=
ih
;
for
(
int
ic
=
1
;
ic
<
10
;
ic
+=
1
)
{
// ic
for
(
bool
bias_flag
:
{
true
,
false
})
{
for
(
std
::
string
relu_flag
:
{
/*true,*/
"relu"
})
{
#else
const
int
pad
=
1
;
const
int
dilation
=
1
;
#if 0 // small scale with group, but result of cpu reference is wrong
const int stride = 2;
const int group = 2;
const int batch_size = 1;
const int ic = 1;
const int ih = 3;
const int iw = 3;
const int oc = 2;
#else
// big scale with group
const
int
stride
=
1
;
const
int
group
=
32
;
const
int
batch_size
=
1
;
const
int
ic
=
32
;
const
int
ih
=
112
;
const
int
iw
=
112
;
const
int
oc
=
32
;
#endif
const
bool
bias_flag
=
false
;
const
std
::
string
relu_flag
=
"relu"
;
#endif
int
filter_channel
=
ic
;
if
(
group
>
1
)
{
filter_channel
=
1
;
}
const
int
oh
=
ConvOutputSize
(
ih
,
ksize
,
dilation
,
pad
,
pad
,
stride
);
const
int
ow
=
ConvOutputSize
(
iw
,
ksize
,
dilation
,
pad
,
pad
,
stride
);
SHADOW_LOG
<<
"to get kernel ..."
;
auto
kernels
=
KernelRegistry
::
Global
().
Create
(
"conv2d"
,
TARGET
(
kOpenCL
),
PRECISION
(
kFloat
),
DATALAYOUT
(
kImageDefault
));
ASSERT_FALSE
(
kernels
.
empty
());
CHECK
(
batch_size
==
1
)
<<
"conv3x3 only supprt batch_size == 1"
;
auto
kernel
=
std
::
move
(
kernels
.
front
());
SHADOW_LOG
<<
"created conv2d kernel"
;
SHADOW_LOG
<<
"prepare kernel ------"
;
lite
::
Tensor
input
,
filter
,
bias
,
output
;
operators
::
ConvParam
param
;
param
.
x
=
&
input
;
param
.
filter
=
&
filter
;
param
.
output
=
&
output
;
param
.
groups
=
group
;
if
(
bias_flag
)
{
param
.
bias
=
&
bias
;
}
if
(
relu_flag
==
"relu"
)
{
param
.
fuse_relu
=
true
;
}
else
if
(
relu_flag
==
"None"
)
{
param
.
fuse_relu
=
false
;
}
else
if
(
relu_flag
==
"relu6"
)
{
param
.
activation_param
.
Relu_clipped_coef
=
6.
f
;
param
.
activation_param
.
has_active
=
true
;
param
.
activation_param
.
active_type
=
lite_api
::
ActivationType
::
kRelu6
;
}
std
::
vector
<
int
>
paddings
=
{
pad
,
pad
,
pad
,
pad
};
std
::
vector
<
int
>
dilations
=
{
dilation
,
dilation
};
param
.
paddings
=
std
::
make_shared
<
std
::
vector
<
int
>>
(
paddings
);
param
.
dilations
=
std
::
make_shared
<
std
::
vector
<
int
>>
(
dilations
);
param
.
strides
=
std
::
vector
<
int
>
{
stride
,
stride
};
std
::
unique_ptr
<
KernelContext
>
context
(
new
KernelContext
);
context
->
As
<
OpenCLContext
>
().
InitOnce
();
std
::
unique_ptr
<
KernelContext
>
conv_1x1_context
(
new
KernelContext
);
context
->
As
<
OpenCLContext
>
().
CopySharedTo
(
&
(
conv_1x1_context
->
As
<
OpenCLContext
>
()));
kernel
->
SetContext
(
std
::
move
(
conv_1x1_context
));
const
DDim
&
input_dim
=
lite
::
DDim
{
std
::
vector
<
int64_t
>
({
batch_size
,
ic
,
ih
,
iw
})};
const
DDim
&
filter_dim
=
lite
::
DDim
{
std
::
vector
<
int64_t
>
({
oc
,
filter_channel
,
ksize
,
ksize
})};
const
DDim
&
out_dim
=
lite
::
DDim
{
std
::
vector
<
int64_t
>
({
batch_size
,
oc
,
oh
,
ow
})};
// element wise bias
const
DDim
&
bias_dim
=
lite
::
DDim
{
std
::
vector
<
int64_t
>
({
oc
})};
LOG
(
INFO
)
<<
"input_dim:"
<<
input_dim
<<
" filter_dim:"
<<
filter_dim
<<
" out_dim:"
<<
out_dim
;
param
.
x
->
Resize
(
input_dim
);
param
.
filter
->
Resize
(
filter_dim
);
param
.
output
->
Resize
(
out_dim
);
if
(
bias_flag
)
{
param
.
bias
->
Resize
(
bias_dim
);
}
kernel
->
SetParam
(
param
);
size_t
input_image_width
=
iw
*
((
ic
+
3
)
/
4
);
size_t
input_image_height
=
ih
*
batch_size
;
size_t
out_image_width
=
ow
*
((
oc
+
3
)
/
4
);
size_t
out_image_height
=
oh
*
batch_size
;
size_t
bias_image_width
=
ow
*
((
oc
+
3
)
/
4
);
size_t
bias_image_height
=
oh
*
batch_size
;
size_t
filter_image_width
=
ksize
*
((
filter_channel
+
3
)
/
4
);
size_t
filter_image_height
=
oc
*
ksize
;
const
size_t
cl_image2d_row_pitch
{
0
};
const
size_t
cl_image2d_slice_pitch
{
0
};
std
::
default_random_engine
engine
;
std
::
uniform_real_distribution
<
float
>
gen
(
-
5
,
5
);
std
::
vector
<
float
>
input_v
(
batch_size
*
ic
*
ih
*
iw
);
std
::
vector
<
float
>
filter_v
(
oc
*
filter_channel
*
ksize
*
ksize
);
std
::
vector
<
float
>
output_v
(
batch_size
*
oc
*
oh
*
ow
);
std
::
vector
<
float
>
bias_v
(
oc
);
SHADOW_LOG
<<
"gen input and filter ..."
;
for
(
int
i
=
0
;
i
<
input_v
.
size
();
++
i
)
{
input_v
[
i
]
=
i
;
// gen(engine);
}
for
(
int
i
=
0
;
i
<
filter_v
.
size
();
++
i
)
{
filter_v
[
i
]
=
1
;
// gen(engine);
}
SHADOW_LOG
<<
"after gen input and filter ..."
;
SHADOW_LOG
<<
"input_v.size(): "
<<
input_v
.
size
();
SHADOW_LOG
<<
"filter_v.size(): "
<<
filter_v
.
size
();
SHADOW_LOG
<<
"output_v.size(): "
<<
output_v
.
size
();
SHADOW_LOG
<<
"bias_v.size(): "
<<
bias_v
.
size
();
SHADOW_LOG
<<
"input_dim.production(): "
<<
input_dim
.
production
();
SHADOW_LOG
<<
"filter_dim.production(): "
<<
filter_dim
.
production
();
SHADOW_LOG
<<
"out_dim.production(): "
<<
out_dim
.
production
();
SHADOW_LOG
<<
"bias_dim.production(): "
<<
bias_dim
.
production
();
SHADOW_LOG
<<
"input_image_height:"
<<
input_image_height
<<
" input_image_width:"
<<
input_image_width
;
SHADOW_LOG
<<
"filter_image_height:"
<<
filter_image_height
<<
" filter_image_width:"
<<
filter_image_width
;
SHADOW_LOG
<<
"4 * input_image_height *input_image_width: "
<<
4
*
input_image_height
*
input_image_width
;
SHADOW_LOG
<<
"4 * filter_image_width * filter_image_height: "
<<
4
*
filter_image_width
*
filter_image_height
;
CHECK
(
input_dim
.
production
()
==
input_v
.
size
());
CHECK_LE
(
input_dim
.
production
(),
4
*
input_image_height
*
input_image_width
);
CHECK
(
filter_dim
.
production
()
==
filter_v
.
size
());
CHECK_LE
(
filter_dim
.
production
(),
4
*
filter_image_width
*
filter_image_height
);
paddle
::
lite
::
CLImageConverterDefault
default_convertor
;
SHADOW_LOG
<<
"set mapped input ..."
;
std
::
vector
<
float
>
x_image_v
(
input_image_width
*
input_image_height
*
4
);
// 4 :RGBA
std
::
vector
<
float
>
filter_image_v
(
filter_image_width
*
filter_image_height
*
4
);
// 4 : RGBA
std
::
vector
<
float
>
bias_image_v
(
bias_image_width
*
bias_image_height
*
4
);
// 4 : RGBA
std
::
vector
<
float
>
out_image_v
(
out_image_width
*
out_image_height
*
4
);
// 4 :RGBA
default_convertor
.
NCHWToImage
(
input_v
.
data
(),
x_image_v
.
data
(),
input_dim
);
SHADOW_LOG
<<
"输入: ---- "
;
for
(
int
i
=
0
;
i
<
input_v
.
size
();
i
++
)
{
SHADOW_LOG
<<
"("
<<
i
<<
")"
<<
input_v
[
i
];
}
SHADOW_LOG
<<
"输入image : ---- "
;
for
(
int
i
=
0
;
i
<
x_image_v
.
size
();
i
++
)
{
SHADOW_LOG
<<
"("
<<
i
<<
")"
<<
x_image_v
[
i
];
}
SHADOW_LOG
<<
"set mapped filter ..."
;
CLImageConverterFolder
folder_convertor
;
folder_convertor
.
NCHWToImage
(
filter_v
.
data
(),
filter_image_v
.
data
(),
filter_dim
);
SHADOW_LOG
<<
"卷积核: ---- "
;
for
(
int
i
=
0
;
i
<
filter_v
.
size
();
i
++
)
{
SHADOW_LOG
<<
"("
<<
i
<<
")"
<<
filter_v
[
i
];
}
SHADOW_LOG
<<
"卷积核image: ---- "
;
for
(
int
i
=
0
;
i
<
filter_image_v
.
size
();
i
++
)
{
SHADOW_LOG
<<
"("
<<
i
<<
")"
<<
filter_image_v
[
i
];
}
auto
*
input_image2d
=
input
.
mutable_data
<
float
,
cl
::
Image2D
>
(
input_image_width
,
input_image_height
,
x_image_v
.
data
());
// assign filter as target arm
filter
.
Assign
<
float
,
lite
::
DDim
,
TARGET
(
kARM
)
>
(
filter_v
.
data
(),
filter_dim
);
// filter kernel
// auto* filter_image2d = filter.mutable_data<float,
// cl::Image2D>(
// filter_image_width,
// filter_image_height,
// filter_image_v.data());
if
(
bias_flag
)
{
for
(
int
i
=
0
;
i
<
bias_dim
.
production
();
++
i
)
{
bias_v
[
i
]
=
static_cast
<
int
>
(
gen
(
engine
));
}
bias
.
Assign
<
float
,
lite
::
DDim
,
TARGET
(
kARM
)
>
(
bias_v
.
data
(),
bias_dim
);
// CLImageConverterFolder folder_convertor;
// folder_convertor.NCHWToImage(
// bias_v.data(), bias_image_v.data(),
// bias_dim);
//
// auto* bias_data = bias.mutable_data<float,
// cl::Image2D>(
// bias_image_width, bias_image_height,
// bias_image_v.data());
}
SHADOW_LOG
<<
"resize output ..."
;
output
.
Resize
(
out_dim
);
// cpu conv basic calc
lite
::
Tensor
out_ref
;
out_ref
.
Resize
(
out_dim
);
SHADOW_LOG
<<
"prepare kernel ready"
;
SHADOW_LOG
<<
"kernel launch ..."
;
kernel
->
Launch
();
SHADOW_LOG
<<
"mutable output ..."
;
auto
*
output_image2d
=
output
.
mutable_data
<
float
,
cl
::
Image2D
>
(
out_image_width
,
out_image_height
);
auto
*
wait_list
=
context
->
As
<
OpenCLContext
>
().
cl_wait_list
();
auto
*
out_ptr
=
param
.
output
->
data
<
float
,
cl
::
Image2D
>
();
auto
it
=
wait_list
->
find
(
out_ptr
);
if
(
it
!=
wait_list
->
end
())
{
SHADOW_LOG
<<
"--- Find the sync event for the target cl "
"tensor. ---"
;
auto
&
event
=
*
(
it
->
second
);
event
.
wait
();
}
else
{
LOG
(
FATAL
)
<<
"Could not find the sync event for the target "
"cl tensor."
;
}
TargetWrapperCL
::
ImgcpySync
(
out_image_v
.
data
(),
output
.
data
<
float
,
cl
::
Image2D
>
(),
out_image_width
,
out_image_height
,
cl_image2d_row_pitch
,
cl_image2d_slice_pitch
,
IoDirection
::
DtoH
);
DDim
out_image_shape
=
default_convertor
.
InitImageDimInfoWith
(
output
.
dims
());
default_convertor
.
ImageToNCHW
(
out_image_v
.
data
(),
output_v
.
data
(),
out_image_shape
,
output
.
dims
());
SHADOW_LOG
<<
"输出: ---- "
;
for
(
int
i
=
0
;
i
<
output_v
.
size
();
i
++
)
{
SHADOW_LOG
<<
"("
<<
i
<<
")"
<<
output_v
[
i
];
}
SHADOW_LOG
<<
"输出image: ---- "
;
for
(
int
i
=
0
;
i
<
out_image_v
.
size
();
i
++
)
{
SHADOW_LOG
<<
"("
<<
i
<<
")"
<<
out_image_v
[
i
];
}
SHADOW_LOG
<<
"mutable_data out_ref_data: "
;
// run cpu ref
auto
*
out_ref_data
=
out_ref
.
mutable_data
<
float
>
(
TARGET
(
kARM
));
SHADOW_LOG
<<
" conv_basic beigin ..... "
;
conv_basic
<
float
,
float
>
(
input_v
.
data
(),
out_ref_data
,
batch_size
,
oc
,
oh
,
ow
,
ic
,
ih
,
iw
,
filter_v
.
data
(),
bias_v
.
data
(),
// mapped_bias,
group
,
ksize
,
ksize
,
stride
,
stride
,
dilation
,
dilation
,
pad
,
pad
,
bias_flag
,
relu_flag
);
SHADOW_LOG
<<
" conv_basic end ..... "
;
SHADOW_LOG
<<
" out_dim: "
<<
out_dim
;
const
DDim
&
out_image_dims
=
lite
::
DDim
{
std
::
vector
<
int64_t
>
(
{
static_cast
<
int64_t
>
(
out_image_width
),
static_cast
<
int64_t
>
(
out_image_height
)})};
#ifdef PRINT_RESULT
for
(
int
i
=
0
;
i
<
out_dim
.
production
();
i
++
)
{
VLOG
(
4
)
<<
"output_v["
<<
i
<<
"]:"
<<
output_v
[
i
]
<<
" out_ref_data["
<<
i
<<
"]:"
<<
out_ref_data
[
i
];
}
#endif
for
(
int
i
=
0
;
i
<
out_dim
.
production
();
i
++
)
{
EXPECT_NEAR
(
output_v
[
i
],
out_ref_data
[
i
],
1e-2
);
if
(
abs
(
output_v
[
i
]
-
out_ref_data
[
i
])
>
1e-2
)
{
LOG
(
FATAL
)
<<
"error idx:"
<<
i
;
}
}
#ifdef LOOP_TEST
}
}
}
}
}
}
#else
// nothing to do.
#endif
}
#undef LOOP_TEST
#undef PRINT_RESULT
// #define PRINT_RESULT
// #define LOOP_TEST
TEST
(
conv2d
,
compute_image2d_5x5
)
{
...
...
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