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gaoqiong
composable_kernel
Commits
b2290854
Commit
b2290854
authored
May 27, 2022
by
rocking
Browse files
Merge commit '
3e6c2610
' into gemm_norm
parents
253f7ef2
3e6c2610
Changes
201
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20 changed files
with
1904 additions
and
300 deletions
+1904
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Dockerfile
Dockerfile
+8
-1
Jenkinsfile
Jenkinsfile
+42
-24
example/01_gemm/CMakeLists.txt
example/01_gemm/CMakeLists.txt
+4
-0
example/01_gemm/gemm_dl_fp16.cpp
example/01_gemm/gemm_dl_fp16.cpp
+211
-0
example/01_gemm/gemm_dl_fp32.cpp
example/01_gemm/gemm_dl_fp32.cpp
+210
-0
example/01_gemm/gemm_dl_int8.cpp
example/01_gemm/gemm_dl_int8.cpp
+208
-0
example/01_gemm/gemm_xdl_bf16.cpp
example/01_gemm/gemm_xdl_bf16.cpp
+1
-1
example/01_gemm/gemm_xdl_fp16.cpp
example/01_gemm/gemm_xdl_fp16.cpp
+1
-1
example/01_gemm/gemm_xdl_fp64.cpp
example/01_gemm/gemm_xdl_fp64.cpp
+240
-0
example/01_gemm/gemm_xdl_int8.cpp
example/01_gemm/gemm_xdl_int8.cpp
+7
-2
example/09_convnd_fwd/CMakeLists.txt
example/09_convnd_fwd/CMakeLists.txt
+2
-0
example/09_convnd_fwd/convnd_fwd_xdl_fp64.cpp
example/09_convnd_fwd/convnd_fwd_xdl_fp64.cpp
+344
-0
example/12_reduce/CMakeLists.txt
example/12_reduce/CMakeLists.txt
+2
-1
example/12_reduce/README.md
example/12_reduce/README.md
+28
-13
example/12_reduce/reduce_blockwise.cpp
example/12_reduce/reduce_blockwise.cpp
+71
-117
example/12_reduce/reduce_blockwise_two_call.cpp
example/12_reduce/reduce_blockwise_two_call.cpp
+290
-0
example/13_pool2d_fwd/CMakeLists.txt
example/13_pool2d_fwd/CMakeLists.txt
+3
-1
example/13_pool2d_fwd/README.md
example/13_pool2d_fwd/README.md
+27
-8
example/13_pool2d_fwd/pool2d_fwd_common.hpp
example/13_pool2d_fwd/pool2d_fwd_common.hpp
+89
-131
example/13_pool2d_fwd/pool2d_fwd_fp16.cpp
example/13_pool2d_fwd/pool2d_fwd_fp16.cpp
+116
-0
No files found.
Dockerfile
View file @
b2290854
...
@@ -35,7 +35,7 @@ RUN apt-get update && DEBIAN_FRONTEND=noninteractive apt-get install -y --allow-
...
@@ -35,7 +35,7 @@ RUN apt-get update && DEBIAN_FRONTEND=noninteractive apt-get install -y --allow-
llvm-amdgpu
\
llvm-amdgpu
\
pkg-config
\
pkg-config
\
python
\
python
\
python3
\
python3
.8
\
python-dev
\
python-dev
\
python3-dev
\
python3-dev
\
python-pip
\
python-pip
\
...
@@ -72,6 +72,13 @@ ARG PREFIX=/opt/rocm
...
@@ -72,6 +72,13 @@ ARG PREFIX=/opt/rocm
RUN
cget
install
pfultz2/rocm-recipes
RUN
cget
install
pfultz2/rocm-recipes
# Install rbuild
# Install rbuild
RUN
pip3
install
https://github.com/RadeonOpenCompute/rbuild/archive/6d78a0553babdaea8d2da5de15cbda7e869594b8.tar.gz
RUN
pip3
install
https://github.com/RadeonOpenCompute/rbuild/archive/6d78a0553babdaea8d2da5de15cbda7e869594b8.tar.gz
# Install packages for processing the performance results
RUN
pip3
install
--upgrade
pip
RUN
pip3
install
sqlalchemy
RUN
pip3
install
pymysql
RUN
pip3
install
pandas
RUN
pip3
install
setuptools-rust
RUN
pip3
install
sshtunnel
# Setup ubsan environment to printstacktrace
# Setup ubsan environment to printstacktrace
ENV
UBSAN_OPTIONS=print_stacktrace=1
ENV
UBSAN_OPTIONS=print_stacktrace=1
...
...
Jenkinsfile
View file @
b2290854
...
@@ -213,15 +213,29 @@ def runCKProfiler(Map conf=[:]){
...
@@ -213,15 +213,29 @@ def runCKProfiler(Map conf=[:]){
cmake_build
(
conf
)
cmake_build
(
conf
)
dir
(
"script"
){
dir
(
"script"
){
def
perf_log
=
"perf_gemm_${gpu_arch}.log"
def
perf_log
=
"perf_gemm_${gpu_arch}.log"
def
artifact
=
"profile_gemm_${gpu_arch}.txt"
sh
"rm -f ${perf_log}"
sh
"./profile_gemm.sh gemm 0 0 0 1 0 5 | tee ${perf_log} ||true"
sh
"echo Branch name: ${env.BRANCH_NAME} > ${perf_log}"
sh
"./profile_gemm.sh gemm 0 1 0 1 0 5 | tee -a ${perf_log} ||true"
sh
"./profile_gemm.sh gemm 0 0 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 0 2 0 1 0 5 | tee -a ${perf_log} ||true"
sh
"./profile_gemm.sh gemm 1 0 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 0 3 0 1 0 5 | tee -a ${perf_log} || true"
sh
"./profile_gemm.sh gemm 2 0 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 3 0 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 0 1 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 1 1 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 2 1 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 3 1 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 0 2 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 1 2 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 2 2 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 3 2 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 0 3 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 1 3 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 2 3 0 1 0 5 | tee -a ${perf_log}"
sh
"./profile_gemm.sh gemm 3 3 0 1 0 5 | tee -a ${perf_log}"
//results will be parsed, stored, and analyzed within the python script
//results will be parsed, stored, and analyzed within the python script
//the script will return 0 if the performance criteria are met
//the script will return 0 if the performance criteria are met
//or return 1 if the criteria are not met
//or return 1 if the criteria are not met
sh
"python3 parse_perf_data.py ${perf_log} | tee ${artifact}"
archiveArtifacts
"${perf_log}"
sh
"python3 parse_perf_data.py ${perf_log} "
}
}
}
}
}
}
...
@@ -246,7 +260,6 @@ def runPerfTest(Map conf=[:]){
...
@@ -246,7 +260,6 @@ def runPerfTest(Map conf=[:]){
}
}
}
}
pipeline
{
pipeline
{
agent
none
agent
none
options
{
options
{
...
@@ -280,19 +293,19 @@ pipeline {
...
@@ -280,19 +293,19 @@ pipeline {
// buildHipClangJobAndReboot(setup_args:setup_args, config_targets: "ckProfiler", no_reboot:true, build_type: 'Release')
// buildHipClangJobAndReboot(setup_args:setup_args, config_targets: "ckProfiler", no_reboot:true, build_type: 'Release')
// }
// }
//}
//}
stage
(
'Build Profiler: Debug, gfx908'
)
//
stage('Build Profiler: Debug, gfx908')
{
//
{
agent
{
label
rocmnode
(
"nogpu"
)}
//
agent { label rocmnode("nogpu")}
environment
{
//
environment{
setup_args
=
""" -D CMAKE_CXX_FLAGS="--offload-arch=gfx908 -O3 " -DBUILD_DEV=On """
//
setup_args = """ -D CMAKE_CXX_FLAGS="--offload-arch=gfx908 -O3 " -DBUILD_DEV=On """
}
//
}
steps
{
//
steps{
// until we stabilize debug build due to compiler crashes
//
// until we stabilize debug build due to compiler crashes
catchError
(
buildResult:
'SUCCESS'
,
stageResult:
'FAILURE'
)
{
//
catchError(buildResult: 'SUCCESS', stageResult: 'FAILURE') {
buildHipClangJobAndReboot
(
setup_args:
setup_args
,
config_targets:
"ckProfiler"
,
no_reboot:
true
,
build_type:
'Debug'
)
//
buildHipClangJobAndReboot(setup_args:setup_args, config_targets: "ckProfiler", no_reboot:true, build_type: 'Debug')
}
//
}
}
//
}
}
//
}
stage
(
'Clang Format'
)
{
stage
(
'Clang Format'
)
{
agent
{
label
rocmnode
(
"nogpu"
)
}
agent
{
label
rocmnode
(
"nogpu"
)
}
environment
{
environment
{
...
@@ -312,7 +325,7 @@ pipeline {
...
@@ -312,7 +325,7 @@ pipeline {
}
}
}
}
}
}
stage
(
"Tests"
)
stage
(
"Tests"
)
{
{
parallel
parallel
{
{
...
@@ -367,15 +380,20 @@ pipeline {
...
@@ -367,15 +380,20 @@ pipeline {
agent
{
label
rocmnode
(
"gfx908"
)}
agent
{
label
rocmnode
(
"gfx908"
)}
environment
{
environment
{
setup_args
=
""" -D CMAKE_CXX_FLAGS="--offload-arch=gfx908 -O3 " -DBUILD_DEV=On """
setup_args
=
""" -D CMAKE_CXX_FLAGS="--offload-arch=gfx908 -O3 " -DBUILD_DEV=On """
}
dbuser
=
"${dbuser}"
dbpassword
=
"${dbpassword}"
dbsship
=
"${dbsship}"
dbsshport
=
"${dbsshport}"
dbsshuser
=
"${dbsshuser}"
dbsshpassword
=
"${dbsshpassword}"
}
steps
{
steps
{
runPerfTest
(
setup_args:
setup_args
,
config_targets:
"ckProfiler"
,
no_reboot:
true
,
build_type:
'Release'
)
runPerfTest
(
setup_args:
setup_args
,
config_targets:
"ckProfiler"
,
no_reboot:
true
,
build_type:
'Release'
)
}
}
}
}
}
}
}
}
// enable after the cmake file supports packaging
// enable after the cmake file supports packaging
// stage("Packages") {
// stage("Packages") {
// when {
// when {
...
...
example/01_gemm/CMakeLists.txt
View file @
b2290854
add_example_executable
(
example_gemm_dl_fp32 gemm_dl_fp32.cpp
)
add_example_executable
(
example_gemm_dl_fp16 gemm_dl_fp16.cpp
)
add_example_executable
(
example_gemm_dl_int8 gemm_dl_int8.cpp
)
add_example_executable
(
example_gemm_xdl_fp16 gemm_xdl_fp16.cpp
)
add_example_executable
(
example_gemm_xdl_fp16 gemm_xdl_fp16.cpp
)
add_example_executable
(
example_gemm_xdl_bf16 gemm_xdl_bf16.cpp
)
add_example_executable
(
example_gemm_xdl_bf16 gemm_xdl_bf16.cpp
)
add_example_executable
(
example_gemm_xdl_int8 gemm_xdl_int8.cpp
)
add_example_executable
(
example_gemm_xdl_int8 gemm_xdl_int8.cpp
)
add_example_executable
(
example_gemm_xdl_fp64 gemm_xdl_fp64.cpp
)
example/01_gemm/gemm_dl_fp16.cpp
0 → 100644
View file @
b2290854
#include <iostream>
#include <numeric>
#include <initializer_list>
#include <cstdlib>
#include <stdlib.h>
#include <half.hpp>
#include "check_err.hpp"
#include "config.hpp"
#include "device.hpp"
#include "host_tensor.hpp"
#include "host_tensor_generator.hpp"
#include "device_tensor.hpp"
#include "device_gemm_dl.hpp"
#include "element_wise_operation.hpp"
#include "reference_gemm.hpp"
#include "gemm_specialization.hpp"
template
<
ck
::
index_t
...
Is
>
using
S
=
ck
::
Sequence
<
Is
...
>
;
using
F16
=
ck
::
half_t
;
using
F32
=
float
;
using
Row
=
ck
::
tensor_layout
::
gemm
::
RowMajor
;
using
Col
=
ck
::
tensor_layout
::
gemm
::
ColumnMajor
;
using
PassThrough
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
ADataType
=
ck
::
half_t
;
using
BDataType
=
ck
::
half_t
;
using
CDataType
=
ck
::
half_t
;
using
AccDataType
=
float
;
using
ALayout
=
Col
;
using
BLayout
=
Row
;
using
CLayout
=
Row
;
using
AElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
BElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
CElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
static
constexpr
auto
GemmDefault
=
ck
::
tensor_operation
::
device
::
GemmSpecialization
::
Default
;
// clang-format off
using
DeviceGemmInstance
=
ck
::
tensor_operation
::
device
::
// ########| AData| BData| CData| AccData| ALayout| BLayout| CLayout| A| B| C| GEMM| Block| MPer| NPer| K0Per| K1| M1Per| N1Per| KPer| M11N11Thread| M11N11Thread| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| CThreadTransfer| CThreadTransfer| CThreadTransfer|
// ########| Type| Type| Type| Type| | | | Elementwise| Elementwise| Elementwise| Spacialization| Size| Block| Block| Block| | ThreadM111| ThreadN111| Thread| ClusterM110Xs| ClusterN110Xs| ThreadSliceLengths| ThreadClusterLengths| ThreadCluster| SrcAccess| SrcVectorTensor| SrcVectorTensor| DstVectorTensor| ThreadSliceLengths| ThreadClusterLengths| ThreadCluster| SrcAccess| SrcVectorTensor| SrcVectorTensor| DstVectorTensor| SrcDstAccess| SrcDstVectorDim| DstScalarPerVector|
// ########| | | | | | | | Operation| Operation| Operation| | | | | | | | | | | | K0_M0_M1_K1| K0_M0_M1_K1| ArrangeOrder| Order| Lengths_K0_M0_M1_K1| ContiguousDimOrder| Lengths_K0_M0_M1_K1| K0_N0_N1_K1| K0_N0_N1_K1| ArrangeOrder| Order| Lengths_K0_N0_N1_K1| ContiguousDimOrder| Lengths_K0_N0_N1_K1| Order| | |
// ########| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceGemmDl
<
F16
,
F16
,
F16
,
F32
,
Col
,
Row
,
Row
,
PassThrough
,
PassThrough
,
PassThrough
,
GemmDefault
,
256
,
128
,
128
,
16
,
2
,
4
,
4
,
1
,
S
<
8
,
2
>
,
S
<
8
,
2
>
,
S
<
2
,
1
,
4
,
2
>
,
S
<
8
,
1
,
32
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
2
>
,
S
<
2
,
1
,
4
,
2
>
,
S
<
8
,
1
,
32
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
2
>
,
S
<
0
,
1
,
2
,
3
,
4
,
5
>
,
5
,
4
>
;
// clang-format on
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceGemm
<
ADataType
,
BDataType
,
CDataType
,
AccDataType
,
AElementOp
,
BElementOp
,
CElementOp
>
;
int
main
(
int
argc
,
char
*
argv
[])
{
bool
do_verification
=
true
;
int
init_method
=
1
;
bool
time_kernel
=
false
;
// GEMM shape
ck
::
index_t
M
=
3840
;
ck
::
index_t
N
=
4096
;
ck
::
index_t
K
=
4096
;
ck
::
index_t
StrideA
=
4096
;
ck
::
index_t
StrideB
=
4096
;
ck
::
index_t
StrideC
=
4096
;
if
(
argc
==
1
)
{
// do nothing
}
else
if
(
argc
==
4
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
}
else
if
(
argc
==
10
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
M
=
std
::
stoi
(
argv
[
4
]);
N
=
std
::
stoi
(
argv
[
5
]);
K
=
std
::
stoi
(
argv
[
6
]);
StrideA
=
std
::
stoi
(
argv
[
7
]);
StrideB
=
std
::
stoi
(
argv
[
8
]);
StrideC
=
std
::
stoi
(
argv
[
9
]);
}
else
{
printf
(
"arg1: verification (0=no, 1=yes)
\n
"
);
printf
(
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
);
printf
(
"arg3: time kernel (0=n0, 1=yes)
\n
"
);
printf
(
"arg4 to 9: M (256x), N(128x), K(32x), StrideA, StrideB, StrideC
\n
"
);
exit
(
1
);
}
auto
f_host_tensor_descriptor
=
[](
std
::
size_t
row
,
std
::
size_t
col
,
std
::
size_t
stride
,
auto
layout
)
{
if
(
std
::
is_same
<
decltype
(
layout
),
ck
::
tensor_layout
::
gemm
::
RowMajor
>::
value
)
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
row
,
col
}),
std
::
vector
<
std
::
size_t
>
({
stride
,
1
}));
}
else
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
row
,
col
}),
std
::
vector
<
std
::
size_t
>
({
1
,
stride
}));
}
};
Tensor
<
ADataType
>
a_m_k
(
f_host_tensor_descriptor
(
M
,
K
,
StrideA
,
ALayout
{}));
Tensor
<
BDataType
>
b_k_n
(
f_host_tensor_descriptor
(
K
,
N
,
StrideB
,
BLayout
{}));
Tensor
<
CDataType
>
c_m_n_host_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
Tensor
<
CDataType
>
c_m_n_device_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
std
::
cout
<<
"a_m_k: "
<<
a_m_k
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"b_k_n: "
<<
b_k_n
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"c_m_n: "
<<
c_m_n_host_result
.
mDesc
<<
std
::
endl
;
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_2
<
ADataType
>
{
-
5
,
5
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
5
,
5
});
break
;
case
2
:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
0.0
,
1.0
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
break
;
default:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_Sequential
<
0
>
{});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_Sequential
<
1
>
{});
}
DeviceMem
a_m_k_device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
b_k_n_device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
c_m_n_device_buf
(
sizeof
(
CDataType
)
*
c_m_n_device_result
.
mDesc
.
GetElementSpace
());
a_m_k_device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
b_k_n_device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
c_element_op
=
CElementOp
{};
// do GEMM
auto
gemm
=
DeviceGemmInstance
{};
auto
invoker
=
gemm
.
MakeInvoker
();
auto
argument
=
gemm
.
MakeArgument
(
static_cast
<
ADataType
*>
(
a_m_k_device_buf
.
GetDeviceBuffer
()),
static_cast
<
BDataType
*>
(
b_k_n_device_buf
.
GetDeviceBuffer
()),
static_cast
<
CDataType
*>
(
c_m_n_device_buf
.
GetDeviceBuffer
()),
M
,
N
,
K
,
StrideA
,
StrideB
,
StrideC
,
a_element_op
,
b_element_op
,
c_element_op
);
if
(
!
gemm
.
IsSupportedArgument
(
argument
))
{
std
::
cout
<<
"wrong! device_gemm with the specified compilation parameters does "
"not support this GEMM problem"
<<
std
::
endl
;
return
0
;
}
float
ave_time
=
invoker
.
Run
(
argument
,
StreamConfig
{
nullptr
,
time_kernel
});
std
::
size_t
flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
sizeof
(
CDataType
)
*
M
*
N
;
float
tflops
=
static_cast
<
float
>
(
flop
)
/
1.E9
/
ave_time
;
float
gb_per_sec
=
num_btype
/
1.E6
/
ave_time
;
std
::
cout
<<
"Perf: "
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s, "
<<
gemm
.
GetTypeString
()
<<
std
::
endl
;
c_m_n_device_buf
.
FromDevice
(
c_m_n_device_result
.
mData
.
data
());
bool
pass
=
true
;
if
(
do_verification
)
{
auto
ref_gemm
=
ReferenceGemmInstance
{};
auto
ref_invoker
=
ref_gemm
.
MakeInvoker
();
auto
ref_argument
=
ref_gemm
.
MakeArgument
(
a_m_k
,
b_k_n
,
c_m_n_host_result
,
a_element_op
,
b_element_op
,
c_element_op
);
ref_invoker
.
Run
(
ref_argument
);
pass
=
ck
::
utils
::
check_err
(
c_m_n_device_result
.
mData
,
c_m_n_host_result
.
mData
);
}
return
pass
?
0
:
1
;
}
example/01_gemm/gemm_dl_fp32.cpp
0 → 100644
View file @
b2290854
#include <iostream>
#include <numeric>
#include <initializer_list>
#include <cstdlib>
#include <stdlib.h>
#include <half.hpp>
#include "check_err.hpp"
#include "config.hpp"
#include "device.hpp"
#include "host_tensor.hpp"
#include "host_tensor_generator.hpp"
#include "device_tensor.hpp"
#include "device_gemm_dl.hpp"
#include "element_wise_operation.hpp"
#include "reference_gemm.hpp"
#include "gemm_specialization.hpp"
template
<
ck
::
index_t
...
Is
>
using
S
=
ck
::
Sequence
<
Is
...
>
;
using
F32
=
float
;
using
Row
=
ck
::
tensor_layout
::
gemm
::
RowMajor
;
using
Col
=
ck
::
tensor_layout
::
gemm
::
ColumnMajor
;
using
PassThrough
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
ADataType
=
float
;
using
BDataType
=
float
;
using
CDataType
=
float
;
using
AccDataType
=
float
;
using
ALayout
=
Col
;
using
BLayout
=
Row
;
using
CLayout
=
Row
;
using
AElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
BElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
CElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
static
constexpr
auto
GemmDefault
=
ck
::
tensor_operation
::
device
::
GemmSpecialization
::
Default
;
// clang-format off
using
DeviceGemmInstance
=
ck
::
tensor_operation
::
device
::
// ########| AData| BData| CData| AccData| ALayout| BLayout| CLayout| A| B| C| GEMM| Block| MPer| NPer| K0Per| K1| M1Per| N1Per| KPer| M11N11Thread| M11N11Thread| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| CThreadTransfer| CThreadTransfer| CThreadTransfer|
// ########| Type| Type| Type| Type| | | | Elementwise| Elementwise| Elementwise| Spacialization| Size| Block| Block| Block| | ThreadM111| ThreadN111| Thread| ClusterM110Xs| ClusterN110Xs| ThreadSliceLengths| ThreadClusterLengths| ThreadCluster| SrcAccess| SrcVectorTensor| SrcVectorTensor| DstVectorTensor| ThreadSliceLengths| ThreadClusterLengths| ThreadCluster| SrcAccess| SrcVectorTensor| SrcVectorTensor| DstVectorTensor| SrcDstAccess| SrcDstVectorDim| DstScalarPerVector|
// ########| | | | | | | | Operation| Operation| Operation| | | | | | | | | | | | K0_M0_M1_K1| K0_M0_M1_K1| ArrangeOrder| Order| Lengths_K0_M0_M1_K1| ContiguousDimOrder| Lengths_K0_M0_M1_K1| K0_N0_N1_K1| K0_N0_N1_K1| ArrangeOrder| Order| Lengths_K0_N0_N1_K1| ContiguousDimOrder| Lengths_K0_N0_N1_K1| Order| | |
// ########| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceGemmDl
<
F32
,
F32
,
F32
,
F32
,
Col
,
Row
,
Row
,
PassThrough
,
PassThrough
,
PassThrough
,
GemmDefault
,
256
,
128
,
128
,
16
,
1
,
4
,
4
,
1
,
S
<
8
,
2
>
,
S
<
8
,
2
>
,
S
<
2
,
1
,
4
,
1
>
,
S
<
8
,
1
,
32
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
1
>
,
S
<
2
,
1
,
4
,
1
>
,
S
<
8
,
1
,
32
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
1
>
,
S
<
0
,
1
,
2
,
3
,
4
,
5
>
,
5
,
4
>
;
// clang-format on
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceGemm
<
ADataType
,
BDataType
,
CDataType
,
AccDataType
,
AElementOp
,
BElementOp
,
CElementOp
>
;
int
main
(
int
argc
,
char
*
argv
[])
{
bool
do_verification
=
true
;
int
init_method
=
1
;
bool
time_kernel
=
false
;
// GEMM shape
ck
::
index_t
M
=
3840
;
ck
::
index_t
N
=
4096
;
ck
::
index_t
K
=
4096
;
ck
::
index_t
StrideA
=
4096
;
ck
::
index_t
StrideB
=
4096
;
ck
::
index_t
StrideC
=
4096
;
if
(
argc
==
1
)
{
// do nothing
}
else
if
(
argc
==
4
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
}
else
if
(
argc
==
10
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
M
=
std
::
stoi
(
argv
[
4
]);
N
=
std
::
stoi
(
argv
[
5
]);
K
=
std
::
stoi
(
argv
[
6
]);
StrideA
=
std
::
stoi
(
argv
[
7
]);
StrideB
=
std
::
stoi
(
argv
[
8
]);
StrideC
=
std
::
stoi
(
argv
[
9
]);
}
else
{
printf
(
"arg1: verification (0=no, 1=yes)
\n
"
);
printf
(
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
);
printf
(
"arg3: time kernel (0=n0, 1=yes)
\n
"
);
printf
(
"arg4 to 9: M (256x), N(128x), K(32x), StrideA, StrideB, StrideC
\n
"
);
exit
(
1
);
}
auto
f_host_tensor_descriptor
=
[](
std
::
size_t
row
,
std
::
size_t
col
,
std
::
size_t
stride
,
auto
layout
)
{
if
(
std
::
is_same
<
decltype
(
layout
),
ck
::
tensor_layout
::
gemm
::
RowMajor
>::
value
)
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
row
,
col
}),
std
::
vector
<
std
::
size_t
>
({
stride
,
1
}));
}
else
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
row
,
col
}),
std
::
vector
<
std
::
size_t
>
({
1
,
stride
}));
}
};
Tensor
<
ADataType
>
a_m_k
(
f_host_tensor_descriptor
(
M
,
K
,
StrideA
,
ALayout
{}));
Tensor
<
BDataType
>
b_k_n
(
f_host_tensor_descriptor
(
K
,
N
,
StrideB
,
BLayout
{}));
Tensor
<
CDataType
>
c_m_n_host_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
Tensor
<
CDataType
>
c_m_n_device_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
std
::
cout
<<
"a_m_k: "
<<
a_m_k
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"b_k_n: "
<<
b_k_n
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"c_m_n: "
<<
c_m_n_host_result
.
mDesc
<<
std
::
endl
;
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_2
<
ADataType
>
{
-
5
,
5
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
5
,
5
});
break
;
case
2
:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
0.0
,
1.0
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
break
;
default:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_Sequential
<
0
>
{});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_Sequential
<
1
>
{});
}
DeviceMem
a_m_k_device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
b_k_n_device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
c_m_n_device_buf
(
sizeof
(
CDataType
)
*
c_m_n_device_result
.
mDesc
.
GetElementSpace
());
a_m_k_device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
b_k_n_device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
c_element_op
=
CElementOp
{};
// do GEMM
auto
gemm
=
DeviceGemmInstance
{};
auto
invoker
=
gemm
.
MakeInvoker
();
auto
argument
=
gemm
.
MakeArgument
(
static_cast
<
ADataType
*>
(
a_m_k_device_buf
.
GetDeviceBuffer
()),
static_cast
<
BDataType
*>
(
b_k_n_device_buf
.
GetDeviceBuffer
()),
static_cast
<
CDataType
*>
(
c_m_n_device_buf
.
GetDeviceBuffer
()),
M
,
N
,
K
,
StrideA
,
StrideB
,
StrideC
,
a_element_op
,
b_element_op
,
c_element_op
);
if
(
!
gemm
.
IsSupportedArgument
(
argument
))
{
std
::
cout
<<
"wrong! device_gemm with the specified compilation parameters does "
"not support this GEMM problem"
<<
std
::
endl
;
return
0
;
}
float
ave_time
=
invoker
.
Run
(
argument
,
StreamConfig
{
nullptr
,
time_kernel
});
std
::
size_t
flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
sizeof
(
CDataType
)
*
M
*
N
;
float
tflops
=
static_cast
<
float
>
(
flop
)
/
1.E9
/
ave_time
;
float
gb_per_sec
=
num_btype
/
1.E6
/
ave_time
;
std
::
cout
<<
"Perf: "
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s, "
<<
gemm
.
GetTypeString
()
<<
std
::
endl
;
c_m_n_device_buf
.
FromDevice
(
c_m_n_device_result
.
mData
.
data
());
bool
pass
=
true
;
if
(
do_verification
)
{
auto
ref_gemm
=
ReferenceGemmInstance
{};
auto
ref_invoker
=
ref_gemm
.
MakeInvoker
();
auto
ref_argument
=
ref_gemm
.
MakeArgument
(
a_m_k
,
b_k_n
,
c_m_n_host_result
,
a_element_op
,
b_element_op
,
c_element_op
);
ref_invoker
.
Run
(
ref_argument
);
pass
=
ck
::
utils
::
check_err
(
c_m_n_device_result
.
mData
,
c_m_n_host_result
.
mData
);
}
return
pass
?
0
:
1
;
}
example/01_gemm/gemm_dl_int8.cpp
0 → 100644
View file @
b2290854
#include <iostream>
#include <numeric>
#include <initializer_list>
#include <cstdlib>
#include <stdlib.h>
#include <half.hpp>
#include "check_err.hpp"
#include "config.hpp"
#include "device.hpp"
#include "host_tensor.hpp"
#include "host_tensor_generator.hpp"
#include "device_tensor.hpp"
#include "device_gemm_dl.hpp"
#include "element_wise_operation.hpp"
#include "reference_gemm.hpp"
#include "gemm_specialization.hpp"
template
<
ck
::
index_t
...
Is
>
using
S
=
ck
::
Sequence
<
Is
...
>
;
using
Row
=
ck
::
tensor_layout
::
gemm
::
RowMajor
;
using
Col
=
ck
::
tensor_layout
::
gemm
::
ColumnMajor
;
using
PassThrough
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
ADataType
=
int8_t
;
using
BDataType
=
int8_t
;
using
CDataType
=
int8_t
;
using
AccDataType
=
int32_t
;
using
ALayout
=
Col
;
using
BLayout
=
Row
;
using
CLayout
=
Row
;
using
AElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
BElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
CElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
static
constexpr
auto
GemmDefault
=
ck
::
tensor_operation
::
device
::
GemmSpecialization
::
Default
;
// clang-format off
using
DeviceGemmInstance
=
ck
::
tensor_operation
::
device
::
// #########| AData| BData| CData| AccData| ALayout| BLayout| CLayout| A| B| C| GEMM| Block| MPer| NPer| K0Per| K1| M1Per| N1Per| KPer| M11N11Thread| M11N11Thread| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| BBlockTransfer| CThreadTransfer| CThreadTransfer| CThreadTransfer|
// #########| Type| Type| Type| Type| | | | Elementwise| Elementwise| Elementwise| Spacialization| Size| Block| Block| Block| | ThreadM111| ThreadN111| Thread| ClusterM110Xs| ClusterN110Xs| ThreadSliceLengths| ThreadClusterLengths| ThreadCluster| SrcAccess| SrcVectorTensor| SrcVectorTensor| DstVectorTensor| ThreadSliceLengths| ThreadClusterLengths| ThreadCluster| SrcAccess| SrcVectorTensor| SrcVectorTensor| DstVectorTensor| SrcDstAccess| SrcDstVectorDim| DstScalarPerVector|
// #########| | | | | | | | Operation| Operation| Operation| | | | | | | | | | | | K0_M0_M1_K1| K0_M0_M1_K1| ArrangeOrder| Order| Lengths_K0_M0_M1_K1| ContiguousDimOrder| Lengths_K0_M0_M1_K1| K0_N0_N1_K1| K0_N0_N1_K1| ArrangeOrder| Order| Lengths_K0_N0_N1_K1| ContiguousDimOrder| Lengths_K0_N0_N1_K1| Order| | |
// #########| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceGemmDl
<
int8_t
,
int8_t
,
int8_t
,
int32_t
,
Col
,
Row
,
Row
,
PassThrough
,
PassThrough
,
PassThrough
,
GemmDefault
,
256
,
128
,
128
,
16
,
4
,
4
,
4
,
1
,
S
<
8
,
2
>
,
S
<
8
,
2
>
,
S
<
2
,
1
,
4
,
4
>
,
S
<
8
,
1
,
32
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
4
>
,
S
<
2
,
1
,
4
,
4
>
,
S
<
8
,
1
,
32
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
1
>
,
S
<
0
,
3
,
1
,
2
>
,
S
<
1
,
1
,
4
,
4
>
,
S
<
0
,
1
,
2
,
3
,
4
,
5
>
,
5
,
4
>
;
// clang-format on
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceGemm
<
ADataType
,
BDataType
,
CDataType
,
AccDataType
,
AElementOp
,
BElementOp
,
CElementOp
>
;
int
main
(
int
argc
,
char
*
argv
[])
{
bool
do_verification
=
true
;
int
init_method
=
1
;
bool
time_kernel
=
false
;
// GEMM shape
ck
::
index_t
M
=
3840
;
ck
::
index_t
N
=
4096
;
ck
::
index_t
K
=
4096
;
ck
::
index_t
StrideA
=
4096
;
ck
::
index_t
StrideB
=
4096
;
ck
::
index_t
StrideC
=
4096
;
if
(
argc
==
1
)
{
// do nothing
}
else
if
(
argc
==
4
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
}
else
if
(
argc
==
10
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
M
=
std
::
stoi
(
argv
[
4
]);
N
=
std
::
stoi
(
argv
[
5
]);
K
=
std
::
stoi
(
argv
[
6
]);
StrideA
=
std
::
stoi
(
argv
[
7
]);
StrideB
=
std
::
stoi
(
argv
[
8
]);
StrideC
=
std
::
stoi
(
argv
[
9
]);
}
else
{
printf
(
"arg1: verification (0=no, 1=yes)
\n
"
);
printf
(
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
);
printf
(
"arg3: time kernel (0=n0, 1=yes)
\n
"
);
printf
(
"arg4 to 9: M (256x), N(128x), K(32x), StrideA, StrideB, StrideC
\n
"
);
exit
(
1
);
}
auto
f_host_tensor_descriptor
=
[](
std
::
size_t
row
,
std
::
size_t
col
,
std
::
size_t
stride
,
auto
layout
)
{
if
(
std
::
is_same
<
decltype
(
layout
),
ck
::
tensor_layout
::
gemm
::
RowMajor
>::
value
)
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
row
,
col
}),
std
::
vector
<
std
::
size_t
>
({
stride
,
1
}));
}
else
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
row
,
col
}),
std
::
vector
<
std
::
size_t
>
({
1
,
stride
}));
}
};
Tensor
<
ADataType
>
a_m_k
(
f_host_tensor_descriptor
(
M
,
K
,
StrideA
,
ALayout
{}));
Tensor
<
BDataType
>
b_k_n
(
f_host_tensor_descriptor
(
K
,
N
,
StrideB
,
BLayout
{}));
Tensor
<
CDataType
>
c_m_n_host_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
Tensor
<
CDataType
>
c_m_n_device_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
std
::
cout
<<
"a_m_k: "
<<
a_m_k
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"b_k_n: "
<<
b_k_n
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"c_m_n: "
<<
c_m_n_host_result
.
mDesc
<<
std
::
endl
;
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_2
<
ADataType
>
{
-
5
,
5
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
5
,
5
});
break
;
case
2
:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
0.0
,
1.0
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
break
;
default:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_Sequential
<
0
>
{});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_Sequential
<
1
>
{});
}
DeviceMem
a_m_k_device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
b_k_n_device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
c_m_n_device_buf
(
sizeof
(
CDataType
)
*
c_m_n_device_result
.
mDesc
.
GetElementSpace
());
a_m_k_device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
b_k_n_device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
c_element_op
=
CElementOp
{};
// do GEMM
auto
gemm
=
DeviceGemmInstance
{};
auto
invoker
=
gemm
.
MakeInvoker
();
auto
argument
=
gemm
.
MakeArgument
(
static_cast
<
ADataType
*>
(
a_m_k_device_buf
.
GetDeviceBuffer
()),
static_cast
<
BDataType
*>
(
b_k_n_device_buf
.
GetDeviceBuffer
()),
static_cast
<
CDataType
*>
(
c_m_n_device_buf
.
GetDeviceBuffer
()),
M
,
N
,
K
,
StrideA
,
StrideB
,
StrideC
,
a_element_op
,
b_element_op
,
c_element_op
);
if
(
!
gemm
.
IsSupportedArgument
(
argument
))
{
std
::
cout
<<
"wrong! device_gemm with the specified compilation parameters does "
"not support this GEMM problem"
<<
std
::
endl
;
return
0
;
}
float
ave_time
=
invoker
.
Run
(
argument
,
StreamConfig
{
nullptr
,
time_kernel
});
std
::
size_t
flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
sizeof
(
CDataType
)
*
M
*
N
;
float
tflops
=
static_cast
<
float
>
(
flop
)
/
1.E9
/
ave_time
;
float
gb_per_sec
=
num_btype
/
1.E6
/
ave_time
;
std
::
cout
<<
"Perf: "
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s, "
<<
gemm
.
GetTypeString
()
<<
std
::
endl
;
c_m_n_device_buf
.
FromDevice
(
c_m_n_device_result
.
mData
.
data
());
bool
pass
=
true
;
if
(
do_verification
)
{
auto
ref_gemm
=
ReferenceGemmInstance
{};
auto
ref_invoker
=
ref_gemm
.
MakeInvoker
();
auto
ref_argument
=
ref_gemm
.
MakeArgument
(
a_m_k
,
b_k_n
,
c_m_n_host_result
,
a_element_op
,
b_element_op
,
c_element_op
);
ref_invoker
.
Run
(
ref_argument
);
pass
=
ck
::
utils
::
check_err
(
c_m_n_device_result
.
mData
,
c_m_n_host_result
.
mData
);
}
return
pass
?
0
:
1
;
}
example/01_gemm/gemm_xdl_bf16.cpp
View file @
b2290854
...
@@ -84,7 +84,7 @@ using DeviceGemmInstance = ck::tensor_operation::device::DeviceGemm_Xdl_CShuffle
...
@@ -84,7 +84,7 @@ using DeviceGemmInstance = ck::tensor_operation::device::DeviceGemm_Xdl_CShuffle
// clang-format on
// clang-format on
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceGemm
<
float
,
float
,
float
,
PassThrough
,
PassThrough
,
PassThrough
>
;
ReferenceGemm
<
float
,
float
,
float
,
float
,
PassThrough
,
PassThrough
,
PassThrough
>
;
int
main
(
int
argc
,
char
*
argv
[])
int
main
(
int
argc
,
char
*
argv
[])
{
{
...
...
example/01_gemm/gemm_xdl_fp16.cpp
View file @
b2290854
...
@@ -52,7 +52,7 @@ using DeviceGemmInstance = ck::tensor_operation::device::DeviceGemm_Xdl_CShuffle
...
@@ -52,7 +52,7 @@ using DeviceGemmInstance = ck::tensor_operation::device::DeviceGemm_Xdl_CShuffle
// clang-format on
// clang-format on
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceGemm
<
ADataType
,
BDataType
,
CDataType
,
AElementOp
,
BElementOp
,
CElementOp
>
;
ReferenceGemm
<
ADataType
,
BDataType
,
CDataType
,
AccDataType
,
AElementOp
,
BElementOp
,
CElementOp
>
;
int
main
(
int
argc
,
char
*
argv
[])
int
main
(
int
argc
,
char
*
argv
[])
{
{
...
...
example/01_gemm/gemm_xdl_fp64.cpp
0 → 100644
View file @
b2290854
#include <iostream>
#include <numeric>
#include <initializer_list>
#include <cstdlib>
#include <stdlib.h>
#include <half.hpp>
#include "check_err.hpp"
#include "config.hpp"
#include "device.hpp"
#include "host_tensor.hpp"
#include "host_tensor_generator.hpp"
#include "device_tensor.hpp"
#include "device_gemm_xdl.hpp"
#include "device_gemm_xdl_cshuffle.hpp"
#include "element_wise_operation.hpp"
#include "reference_gemm.hpp"
#include "gemm_specialization.hpp"
template
<
ck
::
index_t
...
Is
>
using
S
=
ck
::
Sequence
<
Is
...
>
;
using
F64
=
double
;
using
F32
=
float
;
using
F16
=
ck
::
half_t
;
using
ADataType
=
double
;
using
BDataType
=
double
;
using
CDataType
=
double
;
using
AccDataType
=
double
;
using
Row
=
ck
::
tensor_layout
::
gemm
::
RowMajor
;
using
Col
=
ck
::
tensor_layout
::
gemm
::
ColumnMajor
;
using
PassThrough
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
ALayout
=
ck
::
tensor_layout
::
gemm
::
RowMajor
;
using
BLayout
=
ck
::
tensor_layout
::
gemm
::
ColumnMajor
;
using
CLayout
=
ck
::
tensor_layout
::
gemm
::
RowMajor
;
using
AElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
BElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
CElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
static
constexpr
auto
GemmDefault
=
ck
::
tensor_operation
::
device
::
GemmSpecialization
::
Default
;
// clang-format off
using
DeviceGemmInstance
=
ck
::
tensor_operation
::
device
::
DeviceGemmXdl
//##########| AData| BData| CData| AccData| ALayout| BLayout| CLayout| A| B| C| GEMM| Block| MPer| NPer| K0Per| K1| MPer| NPer| MXdl| NXdl| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockLds| BBlockTransfer| BBlockTransfer| BBlockTransfer| BlockTransfer| BBlockTransfer| BBlockTransfer| BBlockLds| CThreadTransfer| CThreadTransfer|
//##########| Type| Type| Type| Type| | | | Elementwise| Elementwise| Elementwise|Spacialization| Size| Block| Block| Block| | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| SrcDstVectorDim| DstScalar|
//##########| | | | | | | | Operation| Operation| Operation| | | | | | | | | Wave| Wave| Lengths_K0_M_K1| ArrangeOrder| | | PerVector| PerVector_K1| | Lengths_K0_N_K1| ArrangeOrder| | | PerVector| PerVector_K1| | | PerVector|
//##########| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
#if 0
< F64, F64, F64, F64, Row, Col, Row, PassThrough, PassThrough, PassThrough, GemmDefault, 64, 32, 32, 4, 1, 16, 16, 2, 2, S<4, 16, 1>, S<1, 0, 2>, S<1, 0, 2>, 2, 1, 1, true, S<4, 16, 1>, S<1, 0, 2>, S<1, 0, 2>, 2, 1, 1, true, 7, 1>;
#else
<
F64
,
F64
,
F64
,
F64
,
Row
,
Col
,
Row
,
PassThrough
,
PassThrough
,
PassThrough
,
GemmDefault
,
256
,
128
,
128
,
4
,
2
,
16
,
16
,
4
,
4
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
2
,
2
,
true
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
2
,
2
,
true
,
7
,
1
>
;
#endif
// clang-format on
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceGemm
<
ADataType
,
BDataType
,
CDataType
,
AccDataType
,
AElementOp
,
BElementOp
,
CElementOp
>
;
template
<
typename
DataType
>
std
::
ostream
&
show_2d_matrix
(
std
::
ostream
&
os
,
Tensor
<
DataType
>&
matrix
)
{
os
<<
"["
<<
std
::
endl
;
for
(
int
x
=
0
;
x
<
matrix
.
mDesc
.
GetLengths
()[
0
];
x
++
)
{
os
<<
"["
;
for
(
int
y
=
0
;
y
<
matrix
.
mDesc
.
GetLengths
()[
1
];
y
++
)
{
os
<<
std
::
setw
(
4
)
<<
static_cast
<
float
>
(
matrix
(
x
,
y
));
}
os
<<
"]"
<<
std
::
endl
;
}
os
<<
"]"
;
return
os
;
}
int
main
(
int
argc
,
char
*
argv
[])
{
bool
do_verification
=
0
;
int
init_method
=
0
;
bool
time_kernel
=
false
;
// GEMM shape
ck
::
index_t
M
=
3840
;
ck
::
index_t
N
=
4096
;
ck
::
index_t
K
=
4096
;
ck
::
index_t
StrideA
=
4096
;
ck
::
index_t
StrideB
=
4096
;
ck
::
index_t
StrideC
=
4096
;
if
(
argc
==
4
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
}
else
if
(
argc
==
10
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
M
=
std
::
stoi
(
argv
[
4
]);
N
=
std
::
stoi
(
argv
[
5
]);
K
=
std
::
stoi
(
argv
[
6
]);
StrideA
=
std
::
stoi
(
argv
[
7
]);
StrideB
=
std
::
stoi
(
argv
[
8
]);
StrideC
=
std
::
stoi
(
argv
[
9
]);
}
else
{
printf
(
"arg1: verification (0=no, 1=yes)
\n
"
);
printf
(
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
);
printf
(
"arg3: run kernel # of times (>1)
\n
"
);
printf
(
"arg4 to 9: M (256x), N(128x), K(32x), StrideA, StrideB, StrideC
\n
"
);
exit
(
0
);
}
auto
f_host_tensor_descriptor
=
[](
std
::
size_t
row
,
std
::
size_t
col
,
std
::
size_t
stride
,
auto
layout
)
{
if
(
std
::
is_same
<
decltype
(
layout
),
ck
::
tensor_layout
::
gemm
::
RowMajor
>::
value
)
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
row
,
col
}),
std
::
vector
<
std
::
size_t
>
({
stride
,
1
}));
}
else
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
row
,
col
}),
std
::
vector
<
std
::
size_t
>
({
1
,
stride
}));
}
};
Tensor
<
ADataType
>
a_m_k
(
f_host_tensor_descriptor
(
M
,
K
,
StrideA
,
ALayout
{}));
Tensor
<
BDataType
>
b_k_n
(
f_host_tensor_descriptor
(
K
,
N
,
StrideB
,
BLayout
{}));
Tensor
<
CDataType
>
c_m_n_host_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
Tensor
<
CDataType
>
c_m_n_device_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
std
::
cout
<<
"data type: "
<<
typeid
(
ADataType
{}).
name
()
<<
std
::
endl
;
std
::
cout
<<
"a_m_k: "
<<
a_m_k
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"b_k_n: "
<<
b_k_n
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"c_m_n: "
<<
c_m_n_host_result
.
mDesc
<<
std
::
endl
;
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_2
<
ADataType
>
{
-
5
,
5
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
5
,
5
});
break
;
case
2
:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
0.0
,
1.0
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
break
;
default:
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_1
<
ADataType
>
{
1
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_1
<
BDataType
>
{
1
});
}
DeviceMem
a_m_k_device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
b_k_n_device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
c_m_n_device_buf
(
sizeof
(
CDataType
)
*
c_m_n_device_result
.
mDesc
.
GetElementSpace
());
a_m_k_device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
b_k_n_device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
c_element_op
=
CElementOp
{};
// do GEMM
auto
gemm
=
DeviceGemmInstance
{};
auto
invoker
=
gemm
.
MakeInvoker
();
auto
argument
=
gemm
.
MakeArgument
(
static_cast
<
ADataType
*>
(
a_m_k_device_buf
.
GetDeviceBuffer
()),
static_cast
<
BDataType
*>
(
b_k_n_device_buf
.
GetDeviceBuffer
()),
static_cast
<
CDataType
*>
(
c_m_n_device_buf
.
GetDeviceBuffer
()),
M
,
N
,
K
,
StrideA
,
StrideB
,
StrideC
,
a_element_op
,
b_element_op
,
c_element_op
);
if
(
!
gemm
.
IsSupportedArgument
(
argument
))
{
throw
std
::
runtime_error
(
"wrong! device_gemm with the specified compilation parameters does "
"not support this GEMM problem"
);
}
float
ave_time
=
invoker
.
Run
(
argument
,
StreamConfig
{
nullptr
,
time_kernel
});
std
::
size_t
flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
sizeof
(
CDataType
)
*
M
*
N
;
float
tflops
=
static_cast
<
float
>
(
flop
)
/
1.E9
/
ave_time
;
float
gb_per_sec
=
num_btype
/
1.E6
/
ave_time
;
std
::
cout
<<
"Perf: "
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s, "
<<
gemm
.
GetTypeString
()
<<
std
::
endl
;
c_m_n_device_buf
.
FromDevice
(
c_m_n_device_result
.
mData
.
data
());
if
(
do_verification
)
{
auto
ref_gemm
=
ReferenceGemmInstance
{};
auto
ref_invoker
=
ref_gemm
.
MakeInvoker
();
auto
ref_argument
=
ref_gemm
.
MakeArgument
(
a_m_k
,
b_k_n
,
c_m_n_host_result
,
a_element_op
,
b_element_op
,
c_element_op
);
ref_invoker
.
Run
(
ref_argument
);
#if 0
{
show_2d_matrix(std::cout << "a : ", a_m_k) << std::endl;
show_2d_matrix(std::cout << "b: ", b_k_n) << std::endl;
show_2d_matrix(std::cout << "c_device: ", c_m_n_device_result) << std::endl;
show_2d_matrix(std::cout << "c_host :", c_m_n_host_result) << std::endl;
}
#endif
ck
::
utils
::
check_err
(
c_m_n_device_result
.
mData
,
c_m_n_host_result
.
mData
);
}
return
0
;
}
example/01_gemm/gemm_xdl_int8.cpp
View file @
b2290854
...
@@ -78,8 +78,13 @@ using DeviceGemmInstance = ck::tensor_operation::device::DeviceGemm_Xdl_CShuffle
...
@@ -78,8 +78,13 @@ using DeviceGemmInstance = ck::tensor_operation::device::DeviceGemm_Xdl_CShuffle
16
>
;
// index_t CShuffleBlockTransferScalarPerVector_NPerBlock
16
>
;
// index_t CShuffleBlockTransferScalarPerVector_NPerBlock
// clang-format on
// clang-format on
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceGemm
<
ADataType
,
ReferenceGemm
<
ADataType
,
BDataType
,
CDataType
,
PassThrough
,
PassThrough
,
PassThrough
>
;
BDataType
,
CDataType
,
AccDataType
,
PassThrough
,
PassThrough
,
PassThrough
>
;
int
main
(
int
argc
,
char
*
argv
[])
int
main
(
int
argc
,
char
*
argv
[])
{
{
...
...
example/09_convnd_fwd/CMakeLists.txt
View file @
b2290854
add_example_executable
(
example_convnd_fwd_xdl_fp32 convnd_fwd_xdl_fp32.cpp
)
add_example_executable
(
example_convnd_fwd_xdl_fp32 convnd_fwd_xdl_fp32.cpp
)
add_example_executable
(
example_convnd_fwd_xdl_int8 convnd_fwd_xdl_int8.cpp
)
add_example_executable
(
example_convnd_fwd_xdl_int8 convnd_fwd_xdl_int8.cpp
)
add_example_executable
(
example_convnd_fwd_xdl_fp16 convnd_fwd_xdl_fp16.cpp
)
add_example_executable
(
example_convnd_fwd_xdl_fp16 convnd_fwd_xdl_fp16.cpp
)
add_example_executable
(
example_convnd_fwd_xdl_fp64 convnd_fwd_xdl_fp64.cpp
)
target_link_libraries
(
example_convnd_fwd_xdl_fp64 PRIVATE conv_util
)
target_link_libraries
(
example_convnd_fwd_xdl_fp32 PRIVATE conv_util
)
target_link_libraries
(
example_convnd_fwd_xdl_fp32 PRIVATE conv_util
)
target_link_libraries
(
example_convnd_fwd_xdl_int8 PRIVATE conv_util
)
target_link_libraries
(
example_convnd_fwd_xdl_int8 PRIVATE conv_util
)
target_link_libraries
(
example_convnd_fwd_xdl_fp16 PRIVATE conv_util
)
target_link_libraries
(
example_convnd_fwd_xdl_fp16 PRIVATE conv_util
)
example/09_convnd_fwd/convnd_fwd_xdl_fp64.cpp
0 → 100644
View file @
b2290854
#include <cstdlib>
#include <iostream>
#include <numeric>
#include <type_traits>
#include "check_err.hpp"
#include "config.hpp"
#include "conv_util.hpp"
#include "device.hpp"
#include "device_tensor.hpp"
#include "device_convnd_fwd_xdl_nhwc_kyxc_nhwk.hpp"
#include "element_wise_operation.hpp"
#include "host_tensor.hpp"
#include "host_tensor_generator.hpp"
#include "reference_conv_fwd.hpp"
#include "tensor_layout.hpp"
namespace
{
using
InDataType
=
double
;
using
WeiDataType
=
double
;
using
OutDataType
=
double
;
using
AccDataType
=
double
;
template
<
ck
::
index_t
...
Is
>
using
S
=
ck
::
Sequence
<
Is
...
>
;
using
InElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
WeiElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
OutElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
static
constexpr
auto
ConvFwdDefault
=
ck
::
tensor_operation
::
device
::
ConvolutionForwardSpecialization
::
Default
;
using
DeviceConvFwdBasePtr
=
ck
::
tensor_operation
::
device
::
DeviceConvFwdPtr
<
InElementOp
,
WeiElementOp
,
OutElementOp
>
;
template
<
ck
::
index_t
NumDimSpatial
>
using
DeviceConvNDFwdInstance
=
ck
::
tensor_operation
::
device
::
DeviceConvNDFwdXdl_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_N_Ho_Wo_K
<
// clang-format off
InDataType
,
//
WeiDataType
,
//
OutDataType
,
//
AccDataType
,
//
InElementOp
,
// Input Elementwise Operation
WeiElementOp
,
// Weights Elementwise Operation
OutElementOp
,
// Output Elementwise Operation
ConvFwdDefault
,
// ConvForwardSpecialization
NumDimSpatial
,
// NumDimSpatial
256
,
// BlockSize
128
,
// MPerBlock
128
,
// NPerBlock
4
,
// K0PerBlock
2
,
// K1
16
,
// MPerXDL
16
,
// NPerXDL
4
,
// MXdlPerWave
4
,
// NXdlPerWave
S
<
4
,
64
,
1
>
,
// ABlockTransferThreadClusterLengths_K0_M_K1
S
<
1
,
0
,
2
>
,
// ABlockTransferThreadClusterArrangeOrder
S
<
1
,
0
,
2
>
,
// ABlockTransferSrcAccessOrder
2
,
// ABlockTransferSrcVectorDim
2
,
// ABlockTransferSrcScalarPerVector
2
,
// ABlockTransferDstScalarPerVector_K1
true
,
// ABlockLdsAddExtraM
S
<
4
,
64
,
1
>
,
// BBlockTransferThreadClusterLengths_K0_N_K1
S
<
1
,
0
,
2
>
,
// BBlockTransferThreadClusterArrangeOrder
S
<
1
,
0
,
2
>
,
// BBlockTransferSrcAccessOrder
2
,
// BBlockTransferSrcVectorDim
2
,
// BBlockTransferSrcScalarPerVector
2
,
// BBlockTransferDstScalarPerVector_K1
true
,
// BBlockTransferAddExtraN
7
,
// CThreadTransferSrcDstVectorDim
1
>
;
// CThreadTransferDstScalarPerVector
// clang-format on
template
<
ck
::
index_t
NumDimSpatial
>
using
ReferenceConvNDFwdInstance
=
ck
::
tensor_operation
::
host
::
ReferenceConvFwd
<
InDataType
,
WeiDataType
,
OutDataType
,
InElementOp
,
WeiElementOp
,
OutElementOp
,
NumDimSpatial
>
;
DeviceConvFwdBasePtr
get_conv_instance
(
int
num_dim_spatial
)
{
switch
(
num_dim_spatial
)
{
case
3
:
{
return
std
::
make_unique
<
DeviceConvNDFwdInstance
<
3
>>
();
}
case
2
:
{
return
std
::
make_unique
<
DeviceConvNDFwdInstance
<
2
>>
();
}
case
1
:
{
return
std
::
make_unique
<
DeviceConvNDFwdInstance
<
1
>>
();
}
default:
{
throw
std
::
runtime_error
(
"Unsupported number of spatial dimensions provided!"
);
}
}
}
void
print_use_msg
()
{
std
::
cout
<<
"arg1: verification (0=no, 1=yes)
\n
"
<<
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
<<
"arg3: run kernel # of times (>1)
\n
"
<<
"arg4: N spatial dimensions (default 2)
\n
"
<<
"Following arguments (depending on number of spatial dims):
\n
"
<<
" N, K, C,
\n
"
<<
" <filter spatial dimensions>, (ie Y, X for 2D)
\n
"
<<
" <input image spatial dimensions>, (ie Hi, Wi for 2D)
\n
"
<<
" <strides>, (ie Sy, Sx for 2D)
\n
"
<<
" <dilations>, (ie Dy, Dx for 2D)
\n
"
<<
" <left padding>, (ie LeftPy, LeftPx for 2D)
\n
"
<<
" <right padding>, (ie RightPy, RightPx for 2D)
\n
"
<<
std
::
endl
;
}
ck
::
utils
::
conv
::
ConvParams
parse_conv_params
(
int
num_dim_spatial
,
int
argc
,
char
*
argv
[])
{
// (N, K, C) + num_dim_spatial * 6 (filter, input, strides, dilations, pad left, pad right)
int
conv_args
=
3
+
num_dim_spatial
*
6
;
int
cmdline_nargs
=
conv_args
+
5
;
if
(
cmdline_nargs
!=
argc
)
{
print_use_msg
();
exit
(
0
);
}
ck
::
utils
::
conv
::
ConvParams
params
;
int
arg_idx
=
5
;
params
.
num_dim_spatial_
=
num_dim_spatial
;
params
.
N_
=
std
::
stoi
(
argv
[
arg_idx
++
]);
params
.
K_
=
std
::
stoi
(
argv
[
arg_idx
++
]);
params
.
C_
=
std
::
stoi
(
argv
[
arg_idx
++
]);
params
.
filter_spatial_lengths_
.
resize
(
num_dim_spatial
);
for
(
int
i
=
0
;
i
<
num_dim_spatial
;
++
i
)
{
params
.
filter_spatial_lengths_
[
i
]
=
std
::
stoi
(
argv
[
arg_idx
++
]);
}
params
.
input_spatial_lengths_
.
resize
(
num_dim_spatial
);
for
(
int
i
=
0
;
i
<
num_dim_spatial
;
++
i
)
{
params
.
input_spatial_lengths_
[
i
]
=
std
::
stoi
(
argv
[
arg_idx
++
]);
}
params
.
conv_filter_strides_
.
resize
(
num_dim_spatial
);
for
(
int
i
=
0
;
i
<
num_dim_spatial
;
++
i
)
{
params
.
conv_filter_strides_
[
i
]
=
std
::
stoi
(
argv
[
arg_idx
++
]);
}
params
.
conv_filter_dilations_
.
resize
(
num_dim_spatial
);
for
(
int
i
=
0
;
i
<
num_dim_spatial
;
++
i
)
{
params
.
conv_filter_dilations_
[
i
]
=
std
::
stoi
(
argv
[
arg_idx
++
]);
}
params
.
input_left_pads_
.
resize
(
num_dim_spatial
);
for
(
int
i
=
0
;
i
<
num_dim_spatial
;
++
i
)
{
params
.
input_left_pads_
[
i
]
=
std
::
stoi
(
argv
[
arg_idx
++
]);
}
params
.
input_right_pads_
.
resize
(
num_dim_spatial
);
for
(
int
i
=
0
;
i
<
num_dim_spatial
;
++
i
)
{
params
.
input_right_pads_
[
i
]
=
std
::
stoi
(
argv
[
arg_idx
++
]);
}
return
params
;
}
}
// anonymous namespace
int
main
(
int
argc
,
char
*
argv
[])
{
using
namespace
ck
::
utils
::
conv
;
bool
do_verification
=
0
;
int
init_method
=
0
;
bool
time_kernel
=
false
;
int
num_dim_spatial
=
2
;
ck
::
utils
::
conv
::
ConvParams
params
;
if
(
argc
>=
5
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
num_dim_spatial
=
std
::
stoi
(
argv
[
4
]);
}
if
(
argc
>=
6
)
{
params
=
parse_conv_params
(
num_dim_spatial
,
argc
,
argv
);
}
std
::
vector
<
std
::
size_t
>
input_dims
{
static_cast
<
std
::
size_t
>
(
params
.
N_
),
static_cast
<
std
::
size_t
>
(
params
.
C_
)};
input_dims
.
insert
(
std
::
end
(
input_dims
),
std
::
begin
(
params
.
input_spatial_lengths_
),
std
::
end
(
params
.
input_spatial_lengths_
));
std
::
vector
<
std
::
size_t
>
filter_dims
{
static_cast
<
std
::
size_t
>
(
params
.
K_
),
static_cast
<
std
::
size_t
>
(
params
.
C_
)};
filter_dims
.
insert
(
std
::
end
(
filter_dims
),
std
::
begin
(
params
.
filter_spatial_lengths_
),
std
::
end
(
params
.
filter_spatial_lengths_
));
const
std
::
vector
<
ck
::
index_t
>&
output_spatial_lengths
=
params
.
GetOutputSpatialLengths
();
std
::
vector
<
std
::
size_t
>
output_dims
{
static_cast
<
std
::
size_t
>
(
params
.
N_
),
static_cast
<
std
::
size_t
>
(
params
.
K_
)};
output_dims
.
insert
(
std
::
end
(
output_dims
),
std
::
begin
(
output_spatial_lengths
),
std
::
end
(
output_spatial_lengths
));
Tensor
<
InDataType
>
input
(
get_input_host_tensor_descriptor
(
input_dims
,
num_dim_spatial
));
Tensor
<
WeiDataType
>
weights
(
get_filters_host_tensor_descriptor
(
filter_dims
,
num_dim_spatial
));
Tensor
<
OutDataType
>
host_output
(
get_output_host_tensor_descriptor
(
output_dims
,
num_dim_spatial
));
Tensor
<
OutDataType
>
device_output
(
get_output_host_tensor_descriptor
(
output_dims
,
num_dim_spatial
));
std
::
cout
<<
"input: "
<<
input
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"weights: "
<<
weights
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"output: "
<<
host_output
.
mDesc
<<
std
::
endl
;
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
input
.
GenerateTensorValue
(
GeneratorTensor_2
<
InDataType
>
{
-
5
,
5
});
weights
.
GenerateTensorValue
(
GeneratorTensor_2
<
WeiDataType
>
{
-
5
,
5
});
break
;
case
2
:
input
.
GenerateTensorValue
(
GeneratorTensor_3
<
InDataType
>
{
0.0
,
1.0
});
weights
.
GenerateTensorValue
(
GeneratorTensor_3
<
WeiDataType
>
{
-
0.5
,
0.5
});
break
;
default:
input
.
GenerateTensorValue
(
GeneratorTensor_1
<
InDataType
>
{
1
});
weights
.
GenerateTensorValue
(
GeneratorTensor_1
<
WeiDataType
>
{
1
});
}
DeviceMem
in_device_buf
(
sizeof
(
InDataType
)
*
input
.
mDesc
.
GetElementSpace
());
DeviceMem
wei_device_buf
(
sizeof
(
WeiDataType
)
*
weights
.
mDesc
.
GetElementSpace
());
DeviceMem
out_device_buf
(
sizeof
(
OutDataType
)
*
device_output
.
mDesc
.
GetElementSpace
());
in_device_buf
.
ToDevice
(
input
.
mData
.
data
());
wei_device_buf
.
ToDevice
(
weights
.
mData
.
data
());
// do GEMM
auto
conv
=
get_conv_instance
(
num_dim_spatial
);
auto
invoker
=
conv
->
MakeInvokerPointer
();
auto
argument
=
conv
->
MakeArgumentPointer
(
static_cast
<
InDataType
*>
(
in_device_buf
.
GetDeviceBuffer
()),
static_cast
<
WeiDataType
*>
(
wei_device_buf
.
GetDeviceBuffer
()),
static_cast
<
OutDataType
*>
(
out_device_buf
.
GetDeviceBuffer
()),
params
.
N_
,
params
.
K_
,
params
.
C_
,
params
.
input_spatial_lengths_
,
params
.
filter_spatial_lengths_
,
output_spatial_lengths
,
params
.
conv_filter_strides_
,
params
.
conv_filter_dilations_
,
params
.
input_left_pads_
,
params
.
input_right_pads_
,
InElementOp
{},
WeiElementOp
{},
OutElementOp
{});
if
(
!
conv
->
IsSupportedArgument
(
argument
.
get
()))
{
throw
std
::
runtime_error
(
"wrong! device_conv with the specified compilation parameters does "
"not support this Conv problem"
);
}
float
ave_time
=
invoker
->
Run
(
argument
.
get
(),
StreamConfig
{
nullptr
,
time_kernel
});
std
::
size_t
flop
=
get_flops
(
params
.
N_
,
params
.
C_
,
params
.
K_
,
params
.
filter_spatial_lengths_
,
output_spatial_lengths
);
std
::
size_t
num_btype
=
get_btype
<
InDataType
,
WeiDataType
,
OutDataType
>
(
params
.
N_
,
params
.
C_
,
params
.
K_
,
params
.
input_spatial_lengths_
,
params
.
filter_spatial_lengths_
,
output_spatial_lengths
);
float
tflops
=
static_cast
<
float
>
(
flop
)
/
1.E9
/
ave_time
;
float
gb_per_sec
=
num_btype
/
1.E6
/
ave_time
;
std
::
cout
<<
"Perf: "
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s"
<<
std
::
endl
;
if
(
do_verification
)
{
auto
verify_f
=
[
&
input
,
&
weights
,
&
host_output
,
&
params
,
&
out_device_buf
,
&
device_output
](
const
auto
&
ref_conv
)
{
auto
ref_invoker
=
ref_conv
.
MakeInvoker
();
auto
ref_argument
=
ref_conv
.
MakeArgument
(
input
,
weights
,
host_output
,
params
.
conv_filter_strides_
,
params
.
conv_filter_dilations_
,
params
.
input_left_pads_
,
params
.
input_right_pads_
,
InElementOp
{},
WeiElementOp
{},
OutElementOp
{});
ref_invoker
.
Run
(
ref_argument
);
out_device_buf
.
FromDevice
(
device_output
.
mData
.
data
());
ck
::
utils
::
check_err
(
host_output
.
mData
,
device_output
.
mData
,
"Error: incorrect results!"
,
1e-5
f
,
1e-4
f
);
};
switch
(
num_dim_spatial
)
{
case
3
:
{
auto
ref_conv
=
ReferenceConvNDFwdInstance
<
3
>
();
verify_f
(
ref_conv
);
break
;
}
case
2
:
{
auto
ref_conv
=
ReferenceConvNDFwdInstance
<
2
>
();
verify_f
(
ref_conv
);
break
;
}
case
1
:
{
auto
ref_conv
=
ReferenceConvNDFwdInstance
<
1
>
();
verify_f
(
ref_conv
);
break
;
}
default:
{
throw
std
::
runtime_error
(
"Unsupported number of spatial dimensions provided!"
);
}
}
}
}
example/12_reduce/CMakeLists.txt
View file @
b2290854
add_example_executable
(
example_reduce_blockwise reduce_blockwise.cpp -D 16,64,32,960 -v 1 1 10
)
add_example_executable
(
example_reduce_blockwise reduce_blockwise.cpp
)
add_example_executable
(
example_reduce_blockwise_two_call reduce_blockwise_two_call.cpp
)
example/12_reduce/README.md
View file @
b2290854
...
@@ -5,23 +5,38 @@
...
@@ -5,23 +5,38 @@
# -D <xxx> : input 4-d tensor lengths
# -D <xxx> : input 4-d tensor lengths
# -v <x> : verification (0=no, 1=yes)
# -v <x> : verification (0=no, 1=yes)
#arg1: initialization (0=no init, 1=single integer value, 2=scope integer value, 3=decimal value)
#arg1: initialization (0=no init, 1=single integer value, 2=scope integer value, 3=decimal value)
#arg2:
run
kernel
# of times (>1)
#arg2:
time
kernel
(0=no, 1=yes)
./bin/example_reduce_blockwise
-D
16,64,32,960
-v
1 1 1
0
./bin/example_reduce_blockwise
-D
16,64,32,960
-v
1 1 1
```
```
Result
Result
```
```
./bin/example_reduce_blockwise -D 16,64,32,960 -v 1 1 1
launch_and_time_kernel: grid_dim {240, 1, 1}, block_dim {256, 1, 1}
launch_and_time_kernel: grid_dim {240, 1, 1}, block_dim {256, 1, 1}
Warm up
Warm up 1 time
Start running 3 times...
Start running 10 times...
Perf: 0.23536 ms, 267.32 GB/s, DeviceReduceBlockWise<256,M_C4_S1,K_C64_S1,InSrcVectorDim_0_InSrcVectorSize_1_OutDstVectorSize_1>
Perf: 0.282592 ms, 222.641 GB/s, DeviceReduceBlockWise<256,M_C4_S1,K_C64_S1,InSrcVectorDim_0_InSrcVectorSize_1_OutDstVectorSize_1>
error: 0
```
max_diff: 0, 529, 529
root@dc-smc-18:/data/composable_kernel/Build3# bin/example_reduce_blockwise -D 16,64,32,960 -v 1 1 10
# Instructions for ```example_reduce_blockwise_two_call```
launch_and_time_kernel: grid_dim {240, 1, 1}, block_dim {256, 1, 1}
Warm up
## Run ```example_reduce_blockwise_two_call```
```
bash
#arg1: verification (0=no, 1=yes(
#arg2: initialization (0=no init, 1=single integer value, 2=scope integer value, 3=decimal value)
#arg3: time kernel (0=no, 1=yes)
./bin/example_reduce_blockwise_two_call 1 2 1
Result
```
./bin/example_reduce_blockwise_two_call 1 2 1
launch_and_time_kernel: grid_dim {204800, 1, 1}, block_dim {256, 1, 1}
Warm up 1 time
Start running 10 times...
launch_and_time_kernel: grid_dim {6400, 1, 1}, block_dim {256, 1, 1}
Warm up 1 time
Start running 10 times...
Start running 10 times...
Perf: 0.23392 ms, 268.966 GB/s, DeviceReduceBlockWise<256,M_C4_S1,K_C64_S1,InSrcVectorDim_0_InSrcVectorSize_1_OutDstVectorSize_1>
Perf: 2.1791 ms, 771.42 GB/s, DeviceReduceBlockWise
<
256,
M_C32_S1
,
K_C8_S1
,
InSrcVectorDim_1_InSrcVectorSize_1_OutDstVectorSize_1
>
=> DeviceReduceBlockWise
<
256,
M_C256_S1
,
K_C1_S1
,
InSrcVectorDim_1_InSrcVectorSize_1_OutDstVectorSize_1
>
error: 0
max_diff: 0, 528, 528
```
```
example/12_reduce/reduce_blockwise.cpp
View file @
b2290854
...
@@ -12,8 +12,8 @@
...
@@ -12,8 +12,8 @@
#include "host_tensor_generator.hpp"
#include "host_tensor_generator.hpp"
#include "device_tensor.hpp"
#include "device_tensor.hpp"
#include "device_base.hpp"
#include "device_base.hpp"
#include "device_reduce_block
wise
.hpp"
#include "device_reduce_
multi
block.hpp"
#include "host_
reduce
_util.hpp"
#include "host_
common
_util.hpp"
#include "host_reduction.hpp"
#include "host_reduction.hpp"
#include "reduction_enums.hpp"
#include "reduction_enums.hpp"
...
@@ -30,9 +30,8 @@ constexpr int Rank = 4;
...
@@ -30,9 +30,8 @@ constexpr int Rank = 4;
constexpr
int
NumReduceDim
=
3
;
constexpr
int
NumReduceDim
=
3
;
constexpr
ReduceTensorOp
ReduceOpId
=
ReduceTensorOp
::
NORM2
;
constexpr
ReduceTensorOp
ReduceOpId
=
ReduceTensorOp
::
NORM2
;
constexpr
NanPropagation
NanOpt
=
NanPropagation
::
PROPAGATE_NAN
;
constexpr
bool
PropagateNan
=
true
;
constexpr
bool
PropagateNan
=
(
NanOpt
==
NanPropagation
::
NOT_PROPAGATE_NAN
)
?
false
:
true
;
constexpr
bool
OutputIndex
=
false
;
constexpr
ReduceTensorIndices
IndicesOpt
=
ReduceTensorIndices
::
NO_INDICES
;
using
ReduceOperation
=
typename
reduce_binary_operator
<
AccDataType
,
ReduceOpId
>::
opType
;
using
ReduceOperation
=
typename
reduce_binary_operator
<
AccDataType
,
ReduceOpId
>::
opType
;
using
InElementwiseOperation
=
using
InElementwiseOperation
=
...
@@ -40,85 +39,44 @@ using InElementwiseOperation =
...
@@ -40,85 +39,44 @@ using InElementwiseOperation =
using
AccElementwiseOperation
=
using
AccElementwiseOperation
=
typename
reduce_unary_operator
<
AccDataType
,
ReduceOpId
,
true
,
true
>::
AccElementwiseOperation
;
typename
reduce_unary_operator
<
AccDataType
,
ReduceOpId
,
true
,
true
>::
AccElementwiseOperation
;
using
DeviceReduceInstance
=
DeviceReduceBlockWise
<
InDataType
,
using
DeviceReduceInstance
=
DeviceReduceMultiBlock
<
InDataType
,
AccDataType
,
AccDataType
,
OutDataType
,
OutDataType
,
Rank
,
Rank
,
NumReduceDim
,
NumReduceDim
,
ReduceOperation
,
ReduceOperation
,
InElementwiseOperation
,
InElementwiseOperation
,
AccElementwiseOperation
,
AccElementwiseOperation
,
PropagateNan
,
InMemoryDataOperationEnum
::
Set
,
false
,
PropagateNan
,
256
,
OutputIndex
,
4
,
false
,
// HaveIndexInputIfOutputIndex
64
,
256
,
1
,
4
,
1
,
64
,
0
,
1
,
1
,
1
,
1
>
;
0
,
1
,
1
>
;
static
struct
option
long_options
[]
=
{{
"inLengths"
,
required_argument
,
nullptr
,
'D'
},
static
struct
option
long_options
[]
=
{{
"inLengths"
,
required_argument
,
nullptr
,
'D'
},
{
"scales"
,
required_argument
,
nullptr
,
'S'
},
{
"verify"
,
required_argument
,
nullptr
,
'v'
},
{
"verify"
,
required_argument
,
nullptr
,
'v'
},
{
"help"
,
no_argument
,
nullptr
,
'?'
},
{
"help"
,
no_argument
,
nullptr
,
'?'
},
{
nullptr
,
0
,
nullptr
,
0
}};
{
nullptr
,
0
,
nullptr
,
0
}};
class
SimpleAppArgs
class
SimpleAppArgs
{
{
template
<
typename
T
>
static
T
getSingleValueFromString
(
const
std
::
string
&
valueStr
)
{
std
::
istringstream
iss
(
valueStr
);
T
ret
;
iss
>>
ret
;
return
(
ret
);
};
template
<
typename
T
>
static
std
::
vector
<
T
>
getTypeValuesFromString
(
const
char
*
cstr_values
)
{
std
::
string
valuesStr
(
cstr_values
);
std
::
vector
<
T
>
values
;
std
::
size_t
pos
=
0
;
std
::
size_t
new_pos
;
new_pos
=
valuesStr
.
find
(
','
,
pos
);
while
(
new_pos
!=
std
::
string
::
npos
)
{
const
std
::
string
sliceStr
=
valuesStr
.
substr
(
pos
,
new_pos
-
pos
);
T
val
=
getSingleValueFromString
<
T
>
(
sliceStr
);
values
.
push_back
(
val
);
pos
=
new_pos
+
1
;
new_pos
=
valuesStr
.
find
(
','
,
pos
);
};
std
::
string
sliceStr
=
valuesStr
.
substr
(
pos
);
T
val
=
getSingleValueFromString
<
T
>
(
sliceStr
);
values
.
push_back
(
val
);
return
(
values
);
};
private:
private:
int
option_index
=
0
;
int
option_index
=
0
;
public:
public:
std
::
vector
<
size_t
>
inLengths
;
std
::
vector
<
size_t
>
inLengths
=
{
16
,
64
,
32
,
960
}
;
std
::
vector
<
float
>
scales
;
std
::
vector
<
float
>
scales
=
{
1.0
f
,
0.0
f
}
;
bool
do_verification
=
true
;
bool
do_verification
=
true
;
int
init_method
=
1
;
int
init_method
=
1
;
bool
time_kernel
=
fals
e
;
bool
time_kernel
=
tru
e
;
public:
public:
void
show_usage
(
const
char
*
cmd
)
void
show_usage
(
const
char
*
cmd
)
...
@@ -126,24 +84,24 @@ class SimpleAppArgs
...
@@ -126,24 +84,24 @@ class SimpleAppArgs
std
::
cout
<<
"Usage of "
<<
cmd
<<
std
::
endl
;
std
::
cout
<<
"Usage of "
<<
cmd
<<
std
::
endl
;
std
::
cout
<<
"--inLengths or -D, comma separated list of input tensor dimension lengths"
std
::
cout
<<
"--inLengths or -D, comma separated list of input tensor dimension lengths"
<<
std
::
endl
;
<<
std
::
endl
;
std
::
cout
<<
"--scales or -S, comma separated two float values for alpha and beta"
<<
std
::
endl
;
std
::
cout
<<
"--verify or -v, 1/0 to indicate whether to verify the reduction result by "
std
::
cout
<<
"--verify or -v, 1/0 to indicate whether to verify the reduction result by "
"comparing with the host-based reduction"
"comparing with the host-based reduction"
<<
std
::
endl
;
<<
std
::
endl
;
std
::
cout
<<
"Arg1 -- init method (0=no init, 1=single integer value, 2=scope integer "
std
::
cout
<<
"Arg1 -- init method (0=no init, 1=single integer value, 2=scope integer "
"value, 3=decimal value)"
"value, 3=decimal value)"
<<
std
::
endl
;
<<
std
::
endl
;
std
::
cout
<<
"Arg2 -- time kernel (0=n
0
, 1=yes)"
<<
std
::
endl
;
std
::
cout
<<
"Arg2 -- time kernel (0=n
o
, 1=yes)"
<<
std
::
endl
;
};
};
int
processArgs
(
int
argc
,
char
*
argv
[])
int
processArgs
(
int
argc
,
char
*
argv
[])
{
{
using
ck
::
host_common
::
getTypeValuesFromString
;
int
ch
;
int
ch
;
while
(
1
)
while
(
1
)
{
{
ch
=
getopt_long
(
argc
,
argv
,
"D:
S:
v:l:"
,
long_options
,
&
option_index
);
ch
=
getopt_long
(
argc
,
argv
,
"D:v:l:"
,
long_options
,
&
option_index
);
if
(
ch
==
-
1
)
if
(
ch
==
-
1
)
break
;
break
;
switch
(
ch
)
switch
(
ch
)
...
@@ -154,12 +112,6 @@ class SimpleAppArgs
...
@@ -154,12 +112,6 @@ class SimpleAppArgs
inLengths
=
getTypeValuesFromString
<
size_t
>
(
optarg
);
inLengths
=
getTypeValuesFromString
<
size_t
>
(
optarg
);
break
;
break
;
case
'S'
:
if
(
!
optarg
)
throw
std
::
runtime_error
(
"Invalid option format!"
);
scales
=
getTypeValuesFromString
<
float
>
(
optarg
);
break
;
case
'v'
:
case
'v'
:
if
(
!
optarg
)
if
(
!
optarg
)
throw
std
::
runtime_error
(
"Invalid option format!"
);
throw
std
::
runtime_error
(
"Invalid option format!"
);
...
@@ -181,7 +133,7 @@ class SimpleAppArgs
...
@@ -181,7 +133,7 @@ class SimpleAppArgs
throw
std
::
runtime_error
(
"Invalid cmd-line arguments, more argumetns are needed!"
);
throw
std
::
runtime_error
(
"Invalid cmd-line arguments, more argumetns are needed!"
);
init_method
=
std
::
atoi
(
argv
[
optind
++
]);
init_method
=
std
::
atoi
(
argv
[
optind
++
]);
time_kernel
=
std
::
atoi
(
argv
[
optind
]);
time_kernel
=
static_cast
<
bool
>
(
std
::
atoi
(
argv
[
optind
])
)
;
if
(
scales
.
empty
())
if
(
scales
.
empty
())
{
{
...
@@ -202,16 +154,16 @@ int main(int argc, char* argv[])
...
@@ -202,16 +154,16 @@ int main(int argc, char* argv[])
SimpleAppArgs
args
;
SimpleAppArgs
args
;
if
(
args
.
processArgs
(
argc
,
argv
)
<
0
)
if
(
argc
>
1
)
return
(
-
1
);
{
if
(
args
.
processArgs
(
argc
,
argv
)
<
0
)
return
(
-
1
);
};
constexpr
bool
op_support_indices
=
constexpr
bool
op_support_indices
=
(
ReduceOpId
==
ReduceTensorOp
::
MIN
||
ReduceOpId
==
ReduceTensorOp
::
MAX
||
(
ReduceOpId
==
ReduceTensorOp
::
MIN
||
ReduceOpId
==
ReduceTensorOp
::
MAX
||
ReduceOpId
==
ReduceTensorOp
::
AMAX
);
ReduceOpId
==
ReduceTensorOp
::
AMAX
);
constexpr
bool
NeedIndices
=
(
op_support_indices
&&
(
IndicesOpt
!=
ReduceTensorIndices
::
NO_INDICES
));
// if input is half type, no reason to use float for indiced reduction operation and must use
// if input is half type, no reason to use float for indiced reduction operation and must use
// float for non-indiced reduction operation for accuracy
// float for non-indiced reduction operation for accuracy
constexpr
bool
invalid_reduce_1
=
constexpr
bool
invalid_reduce_1
=
...
@@ -225,8 +177,7 @@ int main(int argc, char* argv[])
...
@@ -225,8 +177,7 @@ int main(int argc, char* argv[])
(
op_support_indices
&&
!
std
::
is_same
<
AccDataType
,
float
>::
value
);
(
op_support_indices
&&
!
std
::
is_same
<
AccDataType
,
float
>::
value
);
// indices option can only be used when it is really needed
// indices option can only be used when it is really needed
constexpr
bool
invalid_reduce_3
=
constexpr
bool
invalid_reduce_3
=
(
!
op_support_indices
&&
OutputIndex
);
(
!
op_support_indices
&&
IndicesOpt
!=
ReduceTensorIndices
::
NO_INDICES
);
constexpr
bool
invalid_reduce
=
(
invalid_reduce_1
||
invalid_reduce_2
||
invalid_reduce_3
);
constexpr
bool
invalid_reduce
=
(
invalid_reduce_1
||
invalid_reduce_2
||
invalid_reduce_3
);
...
@@ -294,9 +245,9 @@ int main(int argc, char* argv[])
...
@@ -294,9 +245,9 @@ int main(int argc, char* argv[])
if
(
beta
!=
0.0
f
)
if
(
beta
!=
0.0
f
)
out_dev
.
ToDevice
(
out
.
mData
.
data
());
out_dev
.
ToDevice
(
out
.
mData
.
data
());
size_t
indicesSizeInBytes
=
NeedIndices
?
out
.
mDesc
.
GetElementSize
()
*
sizeof
(
int32_t
)
:
0
;
size_t
indicesSizeInBytes
=
OutputIndex
?
out
.
mDesc
.
GetElementSize
()
*
sizeof
(
int32_t
)
:
0
;
DeviceMem
out_ind
ices
_dev
(
indicesSizeInBytes
);
DeviceMem
out_ind
ex
_dev
(
indicesSizeInBytes
);
if
(
args
.
do_verification
)
if
(
args
.
do_verification
)
{
{
...
@@ -307,38 +258,39 @@ int main(int argc, char* argv[])
...
@@ -307,38 +258,39 @@ int main(int argc, char* argv[])
Rank
,
Rank
,
NumReduceDim
,
NumReduceDim
,
PropagateNan
,
PropagateNan
,
NeedIndices
>
OutputIndex
>
hostReduce
(
in
.
mDesc
,
out_ref
.
mDesc
,
invariantDims
,
reduceDims
);
hostReduce
(
in
.
mDesc
,
out_ref
.
mDesc
,
invariantDims
,
reduceDims
);
hostReduce
.
Run
(
hostReduce
.
Run
(
alpha
,
in
.
mData
.
data
(),
beta
,
out_ref
.
mData
.
data
(),
out_indices_ref
.
mData
.
data
());
alpha
,
in
.
mData
.
data
(),
beta
,
out_ref
.
mData
.
data
(),
out_indices_ref
.
mData
.
data
());
};
};
const
auto
i_inLengths
=
to_int_vector
(
args
.
inLengths
);
std
::
vector
<
ck
::
index_t
>
i_inLengths
;
const
auto
i_inStrides
=
to_int_vector
(
inStrides
);
std
::
vector
<
ck
::
index_t
>
i_inStrides
;
const
auto
i_outLengths
=
to_int_vector
(
outLengths
);
std
::
vector
<
ck
::
index_t
>
i_outLengths
;
const
auto
i_outStrides
=
to_int_vector
(
outStrides
);
std
::
vector
<
ck
::
index_t
>
i_outStrides
;
i_inLengths
.
assign
(
args
.
inLengths
.
begin
(),
args
.
inLengths
.
end
());
i_inStrides
.
assign
(
inStrides
.
begin
(),
inStrides
.
end
());
i_outLengths
.
assign
(
outLengths
.
begin
(),
outLengths
.
end
());
i_outStrides
.
assign
(
outStrides
.
begin
(),
outStrides
.
end
());
auto
reduce
=
DeviceReduceInstance
{};
auto
reduce
=
DeviceReduceInstance
{};
auto
wsSizeInBytes
=
reduce
.
GetWorkspaceSizeInBytes
(
i_inLengths
,
reduceDims
);
auto
argument_ptr
=
reduce
.
MakeArgumentPointer
(
i_inLengths
,
DeviceMem
ws_dev
(
wsSizeInBytes
);
i_inStrides
,
i_outLengths
,
auto
argument_ptr
=
i_outStrides
,
reduce
.
MakeArgumentPointer
(
i_inLengths
,
reduceDims
,
i_inStrides
,
alpha
,
i_outLengths
,
beta
,
i_outStrides
,
in_dev
.
GetDeviceBuffer
(),
reduceDims
,
nullptr
,
alpha
,
out_dev
.
GetDeviceBuffer
(),
beta
,
out_index_dev
.
GetDeviceBuffer
(),
in_dev
.
GetDeviceBuffer
(),
InElementwiseOperation
{
static_cast
<
int32_t
>
(
reduce_total_length
)},
out_dev
.
GetDeviceBuffer
(),
AccElementwiseOperation
{
static_cast
<
int32_t
>
(
reduce_total_length
)});
out_indices_dev
.
GetDeviceBuffer
(),
ws_dev
.
GetDeviceBuffer
(),
InElementwiseOperation
{
static_cast
<
int
>
(
reduce_total_length
)},
AccElementwiseOperation
{
static_cast
<
int
>
(
reduce_total_length
)});
if
(
!
reduce
.
IsSupportedArgument
(
argument_ptr
.
get
()))
if
(
!
reduce
.
IsSupportedArgument
(
argument_ptr
.
get
()))
{
{
...
@@ -362,16 +314,18 @@ int main(int argc, char* argv[])
...
@@ -362,16 +314,18 @@ int main(int argc, char* argv[])
<<
std
::
endl
;
<<
std
::
endl
;
bool
pass
=
true
;
bool
pass
=
true
;
if
(
args
.
do_verification
)
if
(
args
.
do_verification
)
{
{
out_dev
.
FromDevice
(
out
.
mData
.
data
());
out_dev
.
FromDevice
(
out
.
mData
.
data
());
pass
&
=
ck
::
utils
::
check_err
(
out
.
mData
,
out_ref
.
mData
);
pass
=
pass
&&
ck
::
utils
::
check_err
(
out
.
mData
,
out_ref
.
mData
);
if
(
NeedIndices
)
if
(
OutputIndex
)
{
{
out_ind
ices
_dev
.
FromDevice
(
out_indices
.
mData
.
data
());
out_ind
ex
_dev
.
FromDevice
(
out_indices
.
mData
.
data
());
pass
&
=
ck
::
utils
::
check_err
(
out_indices
.
mData
,
out_indices_ref
.
mData
);
pass
=
pass
&&
ck
::
utils
::
check_err
(
out_indices
.
mData
,
out_indices_ref
.
mData
);
};
};
};
};
return
pass
?
0
:
1
;
return
(
pass
?
0
:
1
);
}
}
example/12_reduce/reduce_blockwise_two_call.cpp
0 → 100644
View file @
b2290854
#include <iostream>
#include <numeric>
#include <sstream>
#include <initializer_list>
#include <cstdlib>
#include <getopt.h>
#include "check_err.hpp"
#include "config.hpp"
#include "print.hpp"
#include "device.hpp"
#include "host_tensor.hpp"
#include "host_tensor_generator.hpp"
#include "device_tensor.hpp"
#include "device_base.hpp"
#include "device_reduce_multiblock.hpp"
#include "host_common_util.hpp"
#include "host_reduction.hpp"
#include "reduction_enums.hpp"
#include "reduction_operator_mapping.hpp"
using
namespace
ck
;
using
namespace
ck
::
tensor_operation
::
device
;
using
InOutDataType
=
ck
::
half_t
;
using
InOutDataType
=
ck
::
half_t
;
using
AccDataType
=
float
;
constexpr
ReduceTensorOp
ReduceOpId
=
ReduceTensorOp
::
NORM2
;
constexpr
bool
PropagateNan
=
true
;
constexpr
bool
OutputIndex
=
false
;
using
ReduceOperation
=
typename
reduce_binary_operator
<
AccDataType
,
ReduceOpId
>::
opType
;
using
InElementwiseOperation
=
typename
reduce_unary_operator
<
AccDataType
,
ReduceOpId
,
true
,
true
>::
InElementwiseOperation
;
using
AccElementwiseOperation
=
typename
reduce_unary_operator
<
AccDataType
,
ReduceOpId
,
true
,
true
>::
AccElementwiseOperation
;
using
PassThroughOp
=
tensor_operation
::
element_wise
::
UnaryIdentic
<
AccDataType
,
AccDataType
>
;
using
DeviceReduceInstance_1
=
DeviceReduceMultiBlock
<
InOutDataType
,
AccDataType
,
InOutDataType
,
5
,
// Rank
1
,
// NumReduceDim
ReduceOperation
,
InElementwiseOperation
,
PassThroughOp
,
InMemoryDataOperationEnum
::
Set
,
PropagateNan
,
OutputIndex
,
false
,
// HaveIndexInputIfOutputIndex
256
,
32
,
8
,
1
,
1
,
1
,
// vector dim
1
,
1
>
;
using
DeviceReduceInstance_2
=
DeviceReduceMultiBlock
<
InOutDataType
,
AccDataType
,
InOutDataType
,
4
,
// Rank
1
,
// NumReduceDim
ReduceOperation
,
PassThroughOp
,
AccElementwiseOperation
,
InMemoryDataOperationEnum
::
Set
,
PropagateNan
,
OutputIndex
,
false
,
// HaveIndexInputIfOutputIndex
256
,
128
,
2
,
1
,
1
,
1
,
// vector dim
1
,
1
>
;
static
bool
do_verify
;
static
int
init_method
;
static
float
alpha
;
static
float
beta
;
static
bool
time_kernel
;
int
main
(
int
argc
,
char
*
argv
[])
{
// used by the device reduction
const
std
::
vector
<
int
>
reduceDims_1
=
{
4
};
const
std
::
vector
<
int
>
invariantDims_1
=
{
0
,
1
,
2
,
3
};
const
std
::
vector
<
int
>
reduceDims_2
=
{
3
};
const
std
::
vector
<
int
>
invariantDims_2
=
{
0
,
1
,
2
};
// used by the host reduction
const
std
::
vector
<
int
>
reduceDims
=
{
3
,
4
};
const
std
::
vector
<
int
>
invariantDims
=
{
0
,
1
,
2
};
const
std
::
vector
<
size_t
>
inLengths_1
=
{
64
,
320
,
80
,
4
,
128
};
// input lengths of the second reduction, which is also the output lengths of the first
// reduction
const
std
::
vector
<
size_t
>
inLengths_2
=
{
64
,
320
,
80
,
4
};
const
std
::
vector
<
size_t
>
outLengths
=
{
64
,
320
,
80
};
using
namespace
ck
::
host_reduce
;
if
(
argc
==
1
)
{
do_verify
=
true
;
init_method
=
2
;
time_kernel
=
true
;
}
else
if
(
argc
==
4
)
{
do_verify
=
static_cast
<
bool
>
(
argv
[
1
]);
init_method
=
atoi
(
argv
[
2
]);
time_kernel
=
static_cast
<
bool
>
(
atoi
(
argv
[
3
]));
}
else
{
std
::
ostringstream
ostr
;
ostr
<<
"Wrong parameter! "
<<
std
::
endl
<<
"Usage: "
<<
argv
[
0
]
<<
"[verify 0/1] init_method time_kernel"
<<
std
::
endl
;
throw
std
::
runtime_error
(
ostr
.
str
());
};
alpha
=
1.0
f
;
beta
=
0.0
f
;
Tensor
<
InOutDataType
>
in_1
(
inLengths_1
);
Tensor
<
InOutDataType
>
out_ref
(
outLengths
);
Tensor
<
InOutDataType
>
in_2
(
inLengths_2
);
// also the output tensor of the first reduction
Tensor
<
InOutDataType
>
out
(
outLengths
);
auto
inStrides_1
=
in_1
.
mDesc
.
GetStrides
();
auto
inStrides_2
=
in_2
.
mDesc
.
GetStrides
();
auto
outStrides
=
out
.
mDesc
.
GetStrides
();
size_t
invariant_total_length
=
out
.
mDesc
.
GetElementSize
();
size_t
reduce_total_length
=
in_1
.
mDesc
.
GetElementSize
()
/
invariant_total_length
;
std
::
size_t
num_thread
=
1
;
if
(
do_verify
)
{
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
in_1
.
GenerateTensorValue
(
GeneratorTensor_1
<
InOutDataType
>
{
1
},
num_thread
);
if
(
beta
!=
0.0
f
)
out_ref
.
GenerateTensorValue
(
GeneratorTensor_1
<
InOutDataType
>
{
1
},
num_thread
);
break
;
case
2
:
in_1
.
GenerateTensorValue
(
GeneratorTensor_2
<
InOutDataType
>
{
-
5
,
5
},
num_thread
);
if
(
beta
!=
0.0
f
)
out_ref
.
GenerateTensorValue
(
GeneratorTensor_2
<
InOutDataType
>
{
-
5
,
5
},
num_thread
);
break
;
default:
in_1
.
GenerateTensorValue
(
GeneratorTensor_3
<
InOutDataType
>
{
-
5.0
,
5.0
},
num_thread
);
if
(
beta
!=
0.0
f
)
out_ref
.
GenerateTensorValue
(
GeneratorTensor_3
<
InOutDataType
>
{
-
5.0
,
5.0
},
num_thread
);
}
if
(
beta
!=
0.0
f
)
for
(
size_t
i
=
0
;
i
<
out_ref
.
mDesc
.
GetElementSpace
();
i
++
)
out
.
mData
[
i
]
=
out_ref
.
mData
[
i
];
};
DeviceMem
in_1_dev
(
sizeof
(
InOutDataType
)
*
in_1
.
mDesc
.
GetElementSpace
());
DeviceMem
in_2_dev
(
sizeof
(
InOutDataType
)
*
in_2
.
mDesc
.
GetElementSpace
());
DeviceMem
out_dev
(
sizeof
(
InOutDataType
)
*
out
.
mDesc
.
GetElementSpace
());
in_1_dev
.
ToDevice
(
in_1
.
mData
.
data
());
if
(
beta
!=
0.0
f
)
out_dev
.
ToDevice
(
out
.
mData
.
data
());
if
(
do_verify
)
{
ReductionHost
<
InOutDataType
,
AccDataType
,
InOutDataType
,
ReduceOpId
,
5
,
// Rank
2
,
// NumReduceDim
PropagateNan
,
OutputIndex
>
hostReduce
(
in_1
.
mDesc
,
out_ref
.
mDesc
,
invariantDims
,
reduceDims
);
hostReduce
.
Run
(
alpha
,
in_1
.
mData
.
data
(),
beta
,
out_ref
.
mData
.
data
(),
nullptr
);
};
std
::
vector
<
ck
::
index_t
>
i_inLengths_1
;
std
::
vector
<
ck
::
index_t
>
i_inStrides_1
;
std
::
vector
<
ck
::
index_t
>
i_inLengths_2
;
std
::
vector
<
ck
::
index_t
>
i_inStrides_2
;
std
::
vector
<
ck
::
index_t
>
i_outLengths
;
std
::
vector
<
ck
::
index_t
>
i_outStrides
;
i_inLengths_1
.
assign
(
inLengths_1
.
begin
(),
inLengths_1
.
end
());
i_inStrides_1
.
assign
(
inStrides_1
.
begin
(),
inStrides_1
.
end
());
i_inLengths_2
.
assign
(
inLengths_2
.
begin
(),
inLengths_2
.
end
());
i_inStrides_2
.
assign
(
inStrides_2
.
begin
(),
inStrides_2
.
end
());
i_outLengths
.
assign
(
outLengths
.
begin
(),
outLengths
.
end
());
i_outStrides
.
assign
(
outStrides
.
begin
(),
outStrides
.
end
());
auto
reduce_1
=
DeviceReduceInstance_1
{};
auto
argument_ptr_1
=
reduce_1
.
MakeArgumentPointer
(
i_inLengths_1
,
i_inStrides_1
,
i_inLengths_2
,
i_inStrides_2
,
reduceDims_1
,
1.0
f
,
0.0
f
,
in_1_dev
.
GetDeviceBuffer
(),
nullptr
,
in_2_dev
.
GetDeviceBuffer
(),
nullptr
,
InElementwiseOperation
{
static_cast
<
int32_t
>
(
reduce_total_length
)},
PassThroughOp
{});
if
(
!
reduce_1
.
IsSupportedArgument
(
argument_ptr_1
.
get
()))
{
std
::
cout
<<
"The runtime parameters seems not supported by the DeviceReduce instance, exiting!"
<<
std
::
endl
;
};
auto
invoker_ptr_1
=
reduce_1
.
MakeInvokerPointer
();
auto
reduce_2
=
DeviceReduceInstance_2
{};
auto
argument_ptr_2
=
reduce_2
.
MakeArgumentPointer
(
i_inLengths_2
,
i_inStrides_2
,
i_outLengths
,
i_outStrides
,
reduceDims_2
,
alpha
,
beta
,
in_2_dev
.
GetDeviceBuffer
(),
nullptr
,
out_dev
.
GetDeviceBuffer
(),
nullptr
,
PassThroughOp
{},
AccElementwiseOperation
{
static_cast
<
int32_t
>
(
reduce_total_length
)});
if
(
!
reduce_2
.
IsSupportedArgument
(
argument_ptr_2
.
get
()))
{
std
::
cout
<<
"The runtime parameters seems not supported by the DeviceReduce instance, exiting!"
<<
std
::
endl
;
};
auto
invoker_ptr_2
=
reduce_2
.
MakeInvokerPointer
();
float
avg_time_1
=
invoker_ptr_1
->
Run
(
argument_ptr_1
.
get
(),
StreamConfig
{
nullptr
,
time_kernel
});
float
avg_time_2
=
invoker_ptr_2
->
Run
(
argument_ptr_2
.
get
(),
StreamConfig
{
nullptr
,
time_kernel
});
std
::
size_t
num_bytes
=
invariant_total_length
*
reduce_total_length
*
sizeof
(
InOutDataType
)
+
invariant_total_length
*
sizeof
(
InOutDataType
);
float
gb_per_sec
=
num_bytes
/
1.E6
/
(
avg_time_1
+
avg_time_2
);
std
::
cout
<<
"Perf: "
<<
avg_time_1
+
avg_time_2
<<
" ms, "
<<
gb_per_sec
<<
" GB/s, "
<<
reduce_1
.
GetTypeString
()
<<
" => "
<<
reduce_2
.
GetTypeString
()
<<
std
::
endl
;
bool
pass
=
true
;
if
(
do_verify
)
{
out_dev
.
FromDevice
(
out
.
mData
.
data
());
pass
=
pass
&&
ck
::
utils
::
check_err
(
out
.
mData
,
out_ref
.
mData
);
};
return
(
pass
?
0
:
1
);
}
example/13_pool2d_fwd/CMakeLists.txt
View file @
b2290854
add_example_executable
(
example_pool2d_fwd pool2d_fwd.cpp
)
add_example_executable
(
example_pool2d_fwd_fp16 pool2d_fwd_fp16.cpp
)
add_example_executable
(
example_pool2d_fwd_fp32 pool2d_fwd_fp32.cpp
)
example/13_pool2d_fwd/README.md
View file @
b2290854
# Instructions for ```example_pool2d_fwd``` Example
# Instructions for ```example_pool2d_fwd``` Example
s
## Run ```example_pool2d_fwd```
## Run ```example_pool2d_fwd
_fp16
```
```
bash
```
bash
#arg1: verification (0=no, 1=yes)
#arg1: verification (0=no, 1=yes)
#arg2: initialization (0=no init, 1=single integer value, 2=scope integer value, 3=decimal value)
#arg2: initialization (0=no init, 1=single integer value, 2=scope integer value, 3=decimal value)
#arg3:
run
kernel
# of times (>1
)
#arg3:
time
kernel
(0=no, 1=yes
)
#arg4 to 15: N, C, Y, X, Hi, Wi, Sy, Sx, LeftPy, LeftPx, RightPy, RightPx
#arg4 to 15: N, C, Y, X, Hi, Wi, Sy, Sx, LeftPy, LeftPx, RightPy, RightPx
./bin/example_pool2d_fwd 1 1 1
0
./bin/example_pool2d_fwd
_fp16
1 1 1
```
```
Result
Result
...
@@ -14,9 +14,28 @@ Result
...
@@ -14,9 +14,28 @@ Result
in_n_c_hi_wi: dim 4, lengths {128, 192, 71, 71}, strides {967872, 1, 13632, 192}
in_n_c_hi_wi: dim 4, lengths {128, 192, 71, 71}, strides {967872, 1, 13632, 192}
out_n_c_ho_wo: dim 4, lengths {128, 192, 36, 36}, strides {248832, 1, 6912, 192}
out_n_c_ho_wo: dim 4, lengths {128, 192, 36, 36}, strides {248832, 1, 6912, 192}
launch_and_time_kernel: grid_dim {124416, 1, 1}, block_dim {64, 1, 1}
launch_and_time_kernel: grid_dim {124416, 1, 1}, block_dim {64, 1, 1}
Warm up
Warm up
1 time
Start running 10 times...
Start running 10 times...
Perf: 0.415453 ms, 1.37996 TFlops, 749.726 GB/s
Perf: 0.397436 ms, 1.44252 TFlops, 783.713 GB/s
error: 0
```
max_diff: 0, 1, 1
## Run ```example_pool2d_fwd_fp32```
```
bash
#arg1: verification (0=no, 1=yes)
#arg2: initialization (0=no init, 1=single integer value, 2=scope integer value, 3=decimal value)
#arg3: time kernel (0=no, 1=yes)
#arg4 to 15: N, C, Y, X, Hi, Wi, Sy, Sx, LeftPy, LeftPx, RightPy, RightPx
./bin/example_pool2d_fwd_fp32 1 1 1
```
Result
```
./bin/example_pool2d_fwd_fp32 1 1 1
in_n_c_hi_wi: dim 4, lengths {128, 192, 71, 71}, strides {967872, 1, 13632, 192}
out_n_c_ho_wo: dim 4, lengths {128, 192, 36, 36}, strides {248832, 1, 6912, 192}
launch_and_time_kernel: grid_dim {124416, 1, 1}, block_dim {64, 1, 1}
Warm up 1 time
Start running 10 times...
Perf: 1.01823 ms, 0.563045 TFlops, 611.8 GB/s
```
```
example/13_pool2d_fwd/pool2d_fwd
.c
pp
→
example/13_pool2d_fwd/pool2d_fwd
_common.h
pp
View file @
b2290854
#pragma once
#include <iostream>
#include <iostream>
#include <numeric>
#include <initializer_list>
#include <cstdlib>
#include <stdlib.h>
#include "check_err.hpp"
#include "check_err.hpp"
#include "config.hpp"
#include "config.hpp"
...
@@ -13,48 +11,19 @@
...
@@ -13,48 +11,19 @@
#include "host_reduce_util.hpp"
#include "host_reduce_util.hpp"
#include "device_tensor.hpp"
#include "device_tensor.hpp"
#include "tensor_layout.hpp"
#include "tensor_layout.hpp"
#include "reduction_
operator
.hpp"
#include "reduction_
enums
.hpp"
#include "device_pool2d_fwd_nhwc_nhwc.hpp"
#include "device_pool2d_fwd_nhwc_nhwc.hpp"
using
InDataType
=
ck
::
half_t
;
using
OutDataType
=
ck
::
half_t
;
using
AccDataType
=
float
;
using
InLayout
=
ck
::
tensor_layout
::
convolution
::
NHWC
;
using
OutLayout
=
ck
::
tensor_layout
::
convolution
::
NHWC
;
#if 1
static
constexpr
auto
ReduceOpId
=
ck
::
ReduceTensorOp
::
MAX
;
#else
static
constexpr
auto
ReduceOpId
=
ck
::
ReduceTensorOp
::
AVG
;
#endif
static
constexpr
bool
NeedIndices
=
false
;
static
constexpr
bool
PropagateNan
=
false
;
using
DevicePoolFwdInstance
=
ck
::
tensor_operation
::
device
::
DevicePool2dFwd_Input_N_Hi_Wi_C_Output_N_Ho_Wo_C
<
InDataType
,
// InDataType
OutDataType
,
// OutDataType
AccDataType
,
// AccDataType
ReduceOpId
,
NeedIndices
,
64
,
// BlockSize
64
,
// ReduceMThreadClusterSize
1
,
// ReduceKThreadClusterSize
4
,
// ReduceMThreadSliceSize
1
,
// ReduceKThreadSliceSize
4
>
;
// InSrcOutDstVectorSize
template
<
typename
InDataType
,
template
<
typename
InDataType
,
typename
OutDataType
,
typename
OutDataType
,
typename
AccDataType
,
typename
AccDataType
,
typename
IndexDataType
,
ck
::
ReduceTensorOp
ReduceOpId
,
ck
::
ReduceTensorOp
ReduceOpId
,
bool
PropagateNan
,
bool
PropagateNan
,
bool
NeedIndices
>
bool
OutputIndex
>
static
void
pool_host_verify
(
const
Tensor
<
InDataType
>&
in
,
static
void
pool_host_verify
(
const
Tensor
<
InDataType
>&
in
,
Tensor
<
OutDataType
>&
out
,
Tensor
<
OutDataType
>&
out
,
Tensor
<
int
>&
out_indices
,
Tensor
<
IndexDataType
>&
out_indices
,
const
std
::
array
<
ck
::
index_t
,
2
>&
window_spatial_lengths
,
const
std
::
array
<
ck
::
index_t
,
2
>&
window_spatial_lengths
,
const
std
::
array
<
ck
::
index_t
,
2
>&
window_strides
,
const
std
::
array
<
ck
::
index_t
,
2
>&
window_strides
,
const
std
::
array
<
ck
::
index_t
,
2
>&
in_left_pads
,
const
std
::
array
<
ck
::
index_t
,
2
>&
in_left_pads
,
...
@@ -62,26 +31,26 @@ static void pool_host_verify(const Tensor<InDataType>& in,
...
@@ -62,26 +31,26 @@ static void pool_host_verify(const Tensor<InDataType>& in,
{
{
using
namespace
ck
::
host_reduce
;
using
namespace
ck
::
host_reduce
;
const
int
divider
=
window_spatial_lengths
[
0
]
*
window_spatial_lengths
[
1
];
const
int
32_t
divider
=
window_spatial_lengths
[
0
]
*
window_spatial_lengths
[
1
];
const
auto
PreUnaryOp
=
PreUnaryOpFn
<
AccDataType
,
ReduceOpId
>
(
divider
);
const
auto
PreUnaryOp
=
PreUnaryOpFn
<
AccDataType
,
ReduceOpId
>
(
divider
);
const
auto
PosUnaryOp
=
PosUnaryOpFn
<
AccDataType
,
ReduceOpId
>
(
divider
);
const
auto
PosUnaryOp
=
PosUnaryOpFn
<
AccDataType
,
ReduceOpId
>
(
divider
);
if
constexpr
(
!
NeedIndices
)
if
constexpr
(
!
OutputIndex
)
{
{
auto
opReduce
=
ReduceOpFn
<
AccDataType
,
ReduceOpId
>
();
auto
opReduce
=
ReduceOpFn
<
AccDataType
,
ReduceOpId
>
();
auto
f_nchw
=
[
&
](
auto
n
,
auto
c
,
auto
ho
,
auto
wo
)
{
auto
f_nchw
=
[
&
](
auto
n
,
auto
c
,
auto
ho
,
auto
wo
)
{
auto
accuVal
=
ReduceOpZeroVal
<
AccDataType
,
ReduceOpId
>
();
auto
accuVal
=
ReduceOpZeroVal
<
AccDataType
,
ReduceOpId
>
();
for
(
in
t
y
=
0
;
y
<
window_spatial_lengths
[
0
];
++
y
)
for
(
ck
::
index_
t
y
=
0
;
y
<
window_spatial_lengths
[
0
];
++
y
)
{
{
in
t
hi
=
ho
*
window_strides
[
0
]
+
y
-
in_left_pads
[
0
];
ck
::
index_
t
hi
=
ho
*
window_strides
[
0
]
+
y
-
in_left_pads
[
0
];
for
(
in
t
x
=
0
;
x
<
window_spatial_lengths
[
1
];
++
x
)
for
(
ck
::
index_
t
x
=
0
;
x
<
window_spatial_lengths
[
1
];
++
x
)
{
{
in
t
wi
=
wo
*
window_strides
[
1
]
+
x
-
in_left_pads
[
1
];
ck
::
index_
t
wi
=
wo
*
window_strides
[
1
]
+
x
-
in_left_pads
[
1
];
if
(
hi
>=
0
&&
hi
<
ck
::
type_convert
<
in
t
>
(
in
.
mDesc
.
GetLengths
()[
2
])
&&
wi
>=
0
&&
if
(
hi
>=
0
&&
hi
<
static_cast
<
ck
::
index_
t
>
(
in
.
mDesc
.
GetLengths
()[
2
])
&&
wi
<
ck
::
type_convert
<
in
t
>
(
in
.
mDesc
.
GetLengths
()[
3
]))
wi
>=
0
&&
wi
<
static_cast
<
ck
::
index_
t
>
(
in
.
mDesc
.
GetLengths
()[
3
]))
{
{
AccDataType
currVal
=
static_cast
<
AccDataType
>
(
in
(
n
,
c
,
hi
,
wi
));
AccDataType
currVal
=
static_cast
<
AccDataType
>
(
in
(
n
,
c
,
hi
,
wi
));
...
@@ -108,24 +77,24 @@ static void pool_host_verify(const Tensor<InDataType>& in,
...
@@ -108,24 +77,24 @@ static void pool_host_verify(const Tensor<InDataType>& in,
auto
opReduce
=
ReduceOpFn2
<
AccDataType
,
ReduceOpId
>
();
auto
opReduce
=
ReduceOpFn2
<
AccDataType
,
ReduceOpId
>
();
auto
f_nchw
=
[
&
](
auto
n
,
auto
c
,
auto
ho
,
auto
wo
)
{
auto
f_nchw
=
[
&
](
auto
n
,
auto
c
,
auto
ho
,
auto
wo
)
{
auto
accuVal
=
ReduceOpZeroVal
<
AccDataType
,
ReduceOpId
>
();
auto
accuVal
=
ReduceOpZeroVal
<
AccDataType
,
ReduceOpId
>
();
int
accuIndex
=
0
;
IndexDataType
accuIndex
=
0
;
for
(
in
t
y
=
0
;
y
<
window_spatial_lengths
[
0
];
++
y
)
for
(
ck
::
index_
t
y
=
0
;
y
<
window_spatial_lengths
[
0
];
++
y
)
{
{
in
t
hi
=
ho
*
window_strides
[
0
]
+
y
-
in_left_pads
[
0
];
ck
::
index_
t
hi
=
ho
*
window_strides
[
0
]
+
y
-
in_left_pads
[
0
];
for
(
in
t
x
=
0
;
x
<
window_spatial_lengths
[
1
];
++
x
)
for
(
ck
::
index_
t
x
=
0
;
x
<
window_spatial_lengths
[
1
];
++
x
)
{
{
in
t
wi
=
wo
*
window_strides
[
1
]
+
x
-
in_left_pads
[
1
];
ck
::
index_
t
wi
=
wo
*
window_strides
[
1
]
+
x
-
in_left_pads
[
1
];
if
(
hi
>=
0
&&
hi
<
in
.
mDesc
.
GetLengths
()[
2
]
&&
wi
>=
0
&&
if
(
hi
>=
0
&&
hi
<
in
.
mDesc
.
GetLengths
()[
2
]
&&
wi
>=
0
&&
wi
<
in
.
mDesc
.
GetLengths
()[
3
])
wi
<
in
.
mDesc
.
GetLengths
()[
3
])
{
{
AccDataType
currVal
=
static_cast
<
AccDataType
>
(
in
(
n
,
c
,
hi
,
wi
));
AccDataType
currVal
=
static_cast
<
AccDataType
>
(
in
(
n
,
c
,
hi
,
wi
));
int
currIndex
=
y
*
window_spatial_lengths
[
1
]
+
x
;
IndexDataType
currIndex
=
y
*
window_spatial_lengths
[
1
]
+
x
;
PreUnaryOp
(
currVal
);
PreUnaryOp
(
currVal
);
binop_with_nan_check
2
<
AccDataType
,
PropagateNan
>
(
binop_with_
index_and_
nan_check
<
AccDataType
,
IndexDataType
,
PropagateNan
>
(
opReduce
,
accuVal
,
currVal
,
accuIndex
,
currIndex
);
opReduce
,
accuVal
,
currVal
,
accuIndex
,
currIndex
);
}
}
}
}
...
@@ -145,62 +114,46 @@ static void pool_host_verify(const Tensor<InDataType>& in,
...
@@ -145,62 +114,46 @@ static void pool_host_verify(const Tensor<InDataType>& in,
};
};
}
}
int
main
(
int
argc
,
char
*
argv
[])
template
<
typename
InDataType
,
typename
OutDataType
,
typename
AccDataType
,
typename
IndexDataType
,
typename
InLayout
,
typename
OutLayout
,
ck
::
ReduceTensorOp
ReduceOpId
,
bool
PropagateNan
,
bool
OutputIndex
>
bool
pool_test
(
bool
do_verification
,
int
init_method
,
bool
time_kernel
,
ck
::
index_t
N
,
ck
::
index_t
C
,
ck
::
index_t
Y
,
ck
::
index_t
X
,
ck
::
index_t
Hi
,
ck
::
index_t
Wi
,
ck
::
index_t
window_stride_h
,
ck
::
index_t
window_stride_w
,
ck
::
index_t
in_left_pad_h
,
ck
::
index_t
in_left_pad_w
,
ck
::
index_t
in_right_pad_h
,
ck
::
index_t
in_right_pad_w
)
{
{
using
namespace
ck
::
host_reduce
;
using
namespace
ck
::
host_reduce
;
bool
do_verification
=
true
;
using
DevicePoolFwdInstance
=
int
init_method
=
1
;
ck
::
tensor_operation
::
device
::
DevicePool2dFwd_Input_N_Hi_Wi_C_Output_N_Ho_Wo_C
<
bool
time_kernel
=
false
;
InDataType
,
// InDataType
OutDataType
,
// OutDataType
// Pool shape
AccDataType
,
// AccDataType
ck
::
index_t
N
=
128
;
ReduceOpId
,
ck
::
index_t
C
=
192
;
OutputIndex
,
ck
::
index_t
Y
=
3
;
64
,
// BlockSize
ck
::
index_t
X
=
3
;
64
,
// ReduceMThreadClusterSize
ck
::
index_t
Hi
=
71
;
1
,
// ReduceKThreadClusterSize
ck
::
index_t
Wi
=
71
;
4
,
// ReduceMThreadSliceSize
ck
::
index_t
window_stride_h
=
2
;
1
,
// ReduceKThreadSliceSize
ck
::
index_t
window_stride_w
=
2
;
4
>
;
// InSrcOutDstVectorSize
ck
::
index_t
in_left_pad_h
=
1
;
ck
::
index_t
in_left_pad_w
=
1
;
ck
::
index_t
in_right_pad_h
=
1
;
ck
::
index_t
in_right_pad_w
=
1
;
if
(
argc
==
4
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
}
else
if
(
argc
==
16
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
N
=
std
::
stoi
(
argv
[
4
]);
C
=
std
::
stoi
(
argv
[
5
]);
Y
=
std
::
stoi
(
argv
[
6
]);
X
=
std
::
stoi
(
argv
[
7
]);
Hi
=
std
::
stoi
(
argv
[
8
]);
Wi
=
std
::
stoi
(
argv
[
9
]);
window_stride_h
=
std
::
stoi
(
argv
[
10
]);
window_stride_w
=
std
::
stoi
(
argv
[
11
]);
in_left_pad_h
=
std
::
stoi
(
argv
[
12
]);
in_left_pad_w
=
std
::
stoi
(
argv
[
13
]);
in_right_pad_h
=
std
::
stoi
(
argv
[
14
]);
in_right_pad_w
=
std
::
stoi
(
argv
[
15
]);
}
else
{
printf
(
"arg1: verification (0=no, 1=yes)
\n
"
);
printf
(
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
);
printf
(
"arg3: time kernel (0=n0, 1=yes)
\n
"
);
printf
(
"arg4 to 15: N, C, Y, X, Hi, Wi, Sy, Sx, LeftPy, LeftPx, RightPy, "
"RightPx
\n
"
);
exit
(
0
);
}
const
ck
::
index_t
Ho
=
(
Hi
+
in_left_pad_h
+
in_right_pad_h
-
Y
)
/
window_stride_h
+
1
;
const
ck
::
index_t
Ho
=
(
Hi
+
in_left_pad_h
+
in_right_pad_h
-
Y
)
/
window_stride_h
+
1
;
const
ck
::
index_t
Wo
=
(
Wi
+
in_left_pad_w
+
in_right_pad_w
-
X
)
/
window_stride_w
+
1
;
const
ck
::
index_t
Wo
=
(
Wi
+
in_left_pad_w
+
in_right_pad_w
-
X
)
/
window_stride_w
+
1
;
...
@@ -228,9 +181,11 @@ int main(int argc, char* argv[])
...
@@ -228,9 +181,11 @@ int main(int argc, char* argv[])
Tensor
<
InDataType
>
in_n_c_hi_wi
(
f_host_tensor_descriptor
(
N
,
C
,
Hi
,
Wi
,
InLayout
{}));
Tensor
<
InDataType
>
in_n_c_hi_wi
(
f_host_tensor_descriptor
(
N
,
C
,
Hi
,
Wi
,
InLayout
{}));
Tensor
<
OutDataType
>
out_n_c_ho_wo_host
(
f_host_tensor_descriptor
(
N
,
C
,
Ho
,
Wo
,
OutLayout
{}));
Tensor
<
OutDataType
>
out_n_c_ho_wo_host
(
f_host_tensor_descriptor
(
N
,
C
,
Ho
,
Wo
,
OutLayout
{}));
Tensor
<
int
>
out_indices_n_c_ho_wo_host
(
f_host_tensor_descriptor
(
N
,
C
,
Ho
,
Wo
,
OutLayout
{}));
Tensor
<
IndexDataType
>
out_indices_n_c_ho_wo_host
(
f_host_tensor_descriptor
(
N
,
C
,
Ho
,
Wo
,
OutLayout
{}));
Tensor
<
OutDataType
>
out_n_c_ho_wo_device
(
f_host_tensor_descriptor
(
N
,
C
,
Ho
,
Wo
,
OutLayout
{}));
Tensor
<
OutDataType
>
out_n_c_ho_wo_device
(
f_host_tensor_descriptor
(
N
,
C
,
Ho
,
Wo
,
OutLayout
{}));
Tensor
<
int
>
out_indices_n_c_ho_wo_device
(
f_host_tensor_descriptor
(
N
,
C
,
Ho
,
Wo
,
OutLayout
{}));
Tensor
<
IndexDataType
>
out_indices_n_c_ho_wo_device
(
f_host_tensor_descriptor
(
N
,
C
,
Ho
,
Wo
,
OutLayout
{}));
std
::
cout
<<
"in_n_c_hi_wi: "
<<
in_n_c_hi_wi
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"in_n_c_hi_wi: "
<<
in_n_c_hi_wi
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"out_n_c_ho_wo: "
<<
out_n_c_ho_wo_host
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"out_n_c_ho_wo: "
<<
out_n_c_ho_wo_host
.
mDesc
<<
std
::
endl
;
...
@@ -245,25 +200,25 @@ int main(int argc, char* argv[])
...
@@ -245,25 +200,25 @@ int main(int argc, char* argv[])
DeviceMem
in_device_buf
(
sizeof
(
InDataType
)
*
in_n_c_hi_wi
.
mDesc
.
GetElementSpace
());
DeviceMem
in_device_buf
(
sizeof
(
InDataType
)
*
in_n_c_hi_wi
.
mDesc
.
GetElementSpace
());
DeviceMem
out_device_buf
(
sizeof
(
OutDataType
)
*
out_n_c_ho_wo_device
.
mDesc
.
GetElementSpace
());
DeviceMem
out_device_buf
(
sizeof
(
OutDataType
)
*
out_n_c_ho_wo_device
.
mDesc
.
GetElementSpace
());
DeviceMem
out_indices_device_buf
(
sizeof
(
int
)
*
DeviceMem
out_indices_device_buf
(
sizeof
(
IndexDataType
)
*
out_indices_n_c_ho_wo_device
.
mDesc
.
GetElementSpace
());
out_indices_n_c_ho_wo_device
.
mDesc
.
GetElementSpace
());
in_device_buf
.
ToDevice
(
in_n_c_hi_wi
.
mData
.
data
());
in_device_buf
.
ToDevice
(
in_n_c_hi_wi
.
mData
.
data
());
auto
pool
=
DevicePoolFwdInstance
{};
auto
pool
=
DevicePoolFwdInstance
{};
auto
invoker_ptr
=
pool
.
MakeInvokerPointer
();
auto
invoker_ptr
=
pool
.
MakeInvokerPointer
();
auto
argument_ptr
=
auto
argument_ptr
=
pool
.
MakeArgumentPointer
(
pool
.
MakeArgumentPointer
(
static_cast
<
InDataType
*>
(
in_device_buf
.
GetDeviceBuffer
()),
static_cast
<
InDataType
*>
(
in_device_buf
.
GetDeviceBuffer
()),
static_cast
<
OutDataType
*>
(
out_device_buf
.
GetDeviceBuffer
()),
static_cast
<
OutDataType
*>
(
out_device_buf
.
GetDeviceBuffer
()),
static_cast
<
int
*>
(
out_indices_device_buf
.
GetDeviceBuffer
()),
static_cast
<
IndexDataType
*>
(
out_indices_device_buf
.
GetDeviceBuffer
()),
N
,
N
,
C
,
C
,
std
::
array
<
ck
::
index_t
,
2
>
{{
Hi
,
Wi
}},
std
::
array
<
ck
::
index_t
,
2
>
{{
Hi
,
Wi
}},
std
::
array
<
ck
::
index_t
,
2
>
{{
Y
,
X
}},
std
::
array
<
ck
::
index_t
,
2
>
{{
Y
,
X
}},
std
::
array
<
ck
::
index_t
,
2
>
{{
Ho
,
Wo
}},
std
::
array
<
ck
::
index_t
,
2
>
{{
Ho
,
Wo
}},
window_strides
,
window_strides
,
input_left_pads
,
input_left_pads
,
input_right_pads
);
input_right_pads
);
if
(
!
pool
.
IsSupportedArgument
(
argument_ptr
.
get
()))
if
(
!
pool
.
IsSupportedArgument
(
argument_ptr
.
get
()))
{
{
...
@@ -286,14 +241,16 @@ int main(int argc, char* argv[])
...
@@ -286,14 +241,16 @@ int main(int argc, char* argv[])
<<
std
::
endl
;
<<
std
::
endl
;
bool
pass
=
true
;
bool
pass
=
true
;
if
(
do_verification
)
if
(
do_verification
)
{
{
pool_host_verify
<
InDataType
,
pool_host_verify
<
InDataType
,
OutDataType
,
OutDataType
,
AccDataType
,
AccDataType
,
IndexDataType
,
ReduceOpId
,
ReduceOpId
,
PropagateNan
,
PropagateNan
,
NeedIndices
>
(
in_n_c_hi_wi
,
OutputIndex
>
(
in_n_c_hi_wi
,
out_n_c_ho_wo_host
,
out_n_c_ho_wo_host
,
out_indices_n_c_ho_wo_host
,
out_indices_n_c_ho_wo_host
,
window_spatial_lengths
,
window_spatial_lengths
,
...
@@ -303,15 +260,16 @@ int main(int argc, char* argv[])
...
@@ -303,15 +260,16 @@ int main(int argc, char* argv[])
out_device_buf
.
FromDevice
(
out_n_c_ho_wo_device
.
mData
.
data
());
out_device_buf
.
FromDevice
(
out_n_c_ho_wo_device
.
mData
.
data
());
pass
&
=
ck
::
utils
::
check_err
(
out_n_c_ho_wo_device
.
mData
,
out_n_c_ho_wo_host
.
mData
);
pass
=
pass
&&
ck
::
utils
::
check_err
(
out_n_c_ho_wo_device
.
mData
,
out_n_c_ho_wo_host
.
mData
);
if
constexpr
(
NeedIndices
)
if
constexpr
(
OutputIndex
)
{
{
out_indices_device_buf
.
FromDevice
(
out_indices_n_c_ho_wo_device
.
mData
.
data
());
out_indices_device_buf
.
FromDevice
(
out_indices_n_c_ho_wo_device
.
mData
.
data
());
pass
&
=
ck
::
utils
::
check_err
(
out_indices_n_c_ho_wo_device
.
mData
,
pass
=
pass
&&
ck
::
utils
::
check_err
(
out_indices_n_c_ho_wo_device
.
mData
,
out_indices_n_c_ho_wo_host
.
mData
);
out_indices_n_c_ho_wo_host
.
mData
);
};
};
}
}
return
pass
?
0
:
1
;
}
return
(
pass
);
};
example/13_pool2d_fwd/pool2d_fwd_fp16.cpp
0 → 100644
View file @
b2290854
#include <iostream>
#include <cstdlib>
#include "config.hpp"
#include "tensor_layout.hpp"
#include "reduction_enums.hpp"
#include "pool2d_fwd_common.hpp"
using
InDataType
=
ck
::
half_t
;
using
OutDataType
=
ck
::
half_t
;
using
AccDataType
=
float
;
using
IndexDataType
=
int32_t
;
using
InLayout
=
ck
::
tensor_layout
::
convolution
::
NHWC
;
using
OutLayout
=
ck
::
tensor_layout
::
convolution
::
NHWC
;
#if 1
static
constexpr
auto
ReduceOpId
=
ck
::
ReduceTensorOp
::
MAX
;
#else
static
constexpr
auto
ReduceOpId
=
ck
::
ReduceTensorOp
::
AVG
;
#endif
static
constexpr
bool
OutputIndex
=
false
;
static
constexpr
bool
PropagateNan
=
false
;
int
main
(
int
argc
,
char
*
argv
[])
{
using
namespace
ck
::
host_reduce
;
bool
do_verification
;
int
init_method
;
bool
time_kernel
;
// Pool shape
ck
::
index_t
N
=
128
;
ck
::
index_t
C
=
192
;
ck
::
index_t
Y
=
3
;
ck
::
index_t
X
=
3
;
ck
::
index_t
Hi
=
71
;
ck
::
index_t
Wi
=
71
;
ck
::
index_t
window_stride_h
=
2
;
ck
::
index_t
window_stride_w
=
2
;
ck
::
index_t
in_left_pad_h
=
1
;
ck
::
index_t
in_left_pad_w
=
1
;
ck
::
index_t
in_right_pad_h
=
1
;
ck
::
index_t
in_right_pad_w
=
1
;
if
(
argc
==
1
)
{
do_verification
=
true
;
init_method
=
1
;
time_kernel
=
true
;
}
else
if
(
argc
==
4
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
static_cast
<
bool
>
(
std
::
stoi
(
argv
[
3
]));
}
else
if
(
argc
==
16
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
static_cast
<
bool
>
(
std
::
stoi
(
argv
[
3
]));
N
=
std
::
stoi
(
argv
[
4
]);
C
=
std
::
stoi
(
argv
[
5
]);
Y
=
std
::
stoi
(
argv
[
6
]);
X
=
std
::
stoi
(
argv
[
7
]);
Hi
=
std
::
stoi
(
argv
[
8
]);
Wi
=
std
::
stoi
(
argv
[
9
]);
window_stride_h
=
std
::
stoi
(
argv
[
10
]);
window_stride_w
=
std
::
stoi
(
argv
[
11
]);
in_left_pad_h
=
std
::
stoi
(
argv
[
12
]);
in_left_pad_w
=
std
::
stoi
(
argv
[
13
]);
in_right_pad_h
=
std
::
stoi
(
argv
[
14
]);
in_right_pad_w
=
std
::
stoi
(
argv
[
15
]);
}
else
{
printf
(
"arg1: verification (0=no, 1=yes)
\n
"
);
printf
(
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
);
printf
(
"arg3: time kernel (0=no, 1=yes)
\n
"
);
printf
(
"arg4 to 15: N, C, Y, X, Hi, Wi, Sy, Sx, LeftPy, LeftPx, RightPy, "
"RightPx
\n
"
);
exit
(
0
);
}
bool
pass
=
pool_test
<
InDataType
,
OutDataType
,
AccDataType
,
IndexDataType
,
InLayout
,
OutLayout
,
ReduceOpId
,
PropagateNan
,
OutputIndex
>
(
do_verification
,
init_method
,
time_kernel
,
N
,
C
,
Y
,
X
,
Hi
,
Wi
,
window_stride_h
,
window_stride_w
,
in_left_pad_h
,
in_left_pad_w
,
in_right_pad_h
,
in_right_pad_w
);
return
(
pass
?
0
:
1
);
}
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