Skip to content
GitLab
Menu
Projects
Groups
Snippets
Loading...
Help
Help
Support
Community forum
Keyboard shortcuts
?
Submit feedback
Contribute to GitLab
Sign in / Register
Toggle navigation
Menu
Open sidebar
gaoqiong
composable_kernel
Commits
6dfb4e78
Commit
6dfb4e78
authored
Jun 12, 2022
by
carlushuang
Browse files
Merge remote-tracking branch 'origin/develop' into cpu_avx2
parents
397a68f2
1ced00a5
Changes
268
Hide whitespace changes
Inline
Side-by-side
Showing
20 changed files
with
2661 additions
and
261 deletions
+2661
-261
example/21_gemm_layernorm/CMakeLists.txt
example/21_gemm_layernorm/CMakeLists.txt
+1
-0
example/21_gemm_layernorm/gemm_layernorm_xdl_fp16.cpp
example/21_gemm_layernorm/gemm_layernorm_xdl_fp16.cpp
+378
-0
example/22_cgemm/CMakeLists.txt
example/22_cgemm/CMakeLists.txt
+1
-0
example/22_cgemm/cgemm_xdl_fp16.cpp
example/22_cgemm/cgemm_xdl_fp16.cpp
+302
-0
example/CMakeLists.txt
example/CMakeLists.txt
+7
-3
include/ck/config.hpp
include/ck/config.hpp
+22
-1
include/ck/host_utility/device_prop.hpp
include/ck/host_utility/device_prop.hpp
+50
-0
include/ck/options.hpp
include/ck/options.hpp
+3
-0
include/ck/options.hpp.in
include/ck/options.hpp.in
+0
-4
include/ck/tensor_operation/gpu/block/blockwise_gemm_dl_v2r3.hpp
.../ck/tensor_operation/gpu/block/blockwise_gemm_dl_v2r3.hpp
+7
-9
include/ck/tensor_operation/gpu/block/blockwise_tensor_slice_transfer_v5r1.hpp
...ration/gpu/block/blockwise_tensor_slice_transfer_v5r1.hpp
+3
-4
include/ck/tensor_operation/gpu/device/convolution_backward_weight_specialization.hpp
...gpu/device/convolution_backward_weight_specialization.hpp
+17
-0
include/ck/tensor_operation/gpu/device/device_5ary_elementwise.hpp
...k/tensor_operation/gpu/device/device_5ary_elementwise.hpp
+333
-0
include/ck/tensor_operation/gpu/device/device_base.hpp
include/ck/tensor_operation/gpu/device/device_base.hpp
+4
-0
include/ck/tensor_operation/gpu/device/device_batched_gemm_reduce_xdl_cshuffle.hpp
...on/gpu/device/device_batched_gemm_reduce_xdl_cshuffle.hpp
+90
-124
include/ck/tensor_operation/gpu/device/device_batched_gemm_xdl.hpp
...k/tensor_operation/gpu/device/device_batched_gemm_xdl.hpp
+10
-49
include/ck/tensor_operation/gpu/device/device_binary_elementwise.hpp
...tensor_operation/gpu/device/device_binary_elementwise.hpp
+234
-0
include/ck/tensor_operation/gpu/device/device_cgemm.hpp
include/ck/tensor_operation/gpu/device/device_cgemm.hpp
+73
-0
include/ck/tensor_operation/gpu/device/device_cgemm_4gemm_xdl_cshuffle.hpp
..._operation/gpu/device/device_cgemm_4gemm_xdl_cshuffle.hpp
+974
-0
include/ck/tensor_operation/gpu/device/device_conv2d_backward_weight_xdl_c_shuffle_nhwc_kyxc_nhwk.hpp
...e_conv2d_backward_weight_xdl_c_shuffle_nhwc_kyxc_nhwk.hpp
+152
-67
No files found.
example/21_gemm_layernorm/CMakeLists.txt
0 → 100644
View file @
6dfb4e78
add_example_executable
(
example_gemm_layernorm_xdl_fp16 gemm_layernorm_xdl_fp16.cpp
)
example/21_gemm_layernorm/gemm_layernorm_xdl_fp16.cpp
0 → 100644
View file @
6dfb4e78
#include <iostream>
#include <numeric>
#include <initializer_list>
#include <cstdlib>
#include <stdlib.h>
#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_5ary_elementwise.hpp"
#include "device_gemm_reduce_xdl_cshuffle.hpp"
#include "element_wise_operation.hpp"
#include "reference_gemm.hpp"
#include "gemm_specialization.hpp"
#include "element_wise_reduce_operation.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
ADataType
=
F16
;
using
BDataType
=
F16
;
using
CDataType
=
F16
;
using
GemmAccDataType
=
F32
;
using
ReduceAccDataType
=
F32
;
using
DDataType
=
F32
;
using
DPtrsGlobal
=
ck
::
Tuple
<
DDataType
*
,
DDataType
*>
;
using
GammaDataType
=
F16
;
using
BetaDataType
=
F16
;
using
LayerNormOutDataType
=
F16
;
using
NormalizeComputeDataType
=
F32
;
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
;
using
ReduceSumOp
=
ck
::
reduce
::
Add
<
ReduceAccDataType
>
;
using
DxsReduceOp
=
ck
::
Tuple
<
ReduceSumOp
,
ReduceSumOp
>
;
using
UnaryIdenticElementOp
=
ck
::
tensor_operation
::
element_wise
::
UnaryIdentic
<
ReduceAccDataType
,
ReduceAccDataType
,
false
>
;
using
UnaryDivElementOp
=
ck
::
tensor_operation
::
element_wise
::
UnaryIdentic
<
ReduceAccDataType
,
ReduceAccDataType
,
true
>
;
using
UnarySquareElementOp
=
ck
::
tensor_operation
::
element_wise
::
UnarySquare
<
ReduceAccDataType
,
ReduceAccDataType
,
false
>
;
using
DxsInElementOp
=
ck
::
Tuple
<
UnaryIdenticElementOp
,
UnarySquareElementOp
>
;
using
DxsOutElementOp
=
ck
::
Tuple
<
UnaryDivElementOp
,
UnaryDivElementOp
>
;
using
DxsGlobalMemOp
=
ck
::
InMemoryDataOperationEnumSequence
<
ck
::
InMemoryDataOperationEnum
::
AtomicAdd
,
ck
::
InMemoryDataOperationEnum
::
AtomicAdd
>
;
static
constexpr
auto
GemmSpecialization
=
ck
::
tensor_operation
::
device
::
GemmSpecialization
::
Default
;
// clang-format off
using
DeviceGemmReduceInstance
=
ck
::
tensor_operation
::
device
::
DeviceGemmReduce_Xdl_CShuffle
//######| ALayout| BLayout| CLayout|AData| BData| CData| GemmAcc| CShuffle| ReduceAcc| DData| A| B| C| Dxs| DxsInEleOp| DxsAccEleOp| D| GEMM| NumGemmK| Block| MPer| NPer| KPer| AK1| BK1| MPer| NPer| MXdl| NXdl| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockTransfer| ABlockLds| BBlockTransfer| BBlockTransfer| BBlockTransfer| BlockTransfer| BBlockTransfer| BBlockTransfer| BBlockLds| CShuffle| CShuffle| CBlockTransferClusterLengths| CBlockTransfer| CReduce| CReduceThreadLds2VGprCopy| CReduceThreadVgpr2GlobalCopy|
//######| | | | Type| Type| Type| DataType| DataType| DataType| Type Tuple| Elementwise| Elementwise| Elementwise| Reduce| | | MemoryData| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| ExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| ExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MPerBlock| ScalarPerVector| ThreadClusterLengths| SrcDstScalarPerVector| SrcDstScalarPerVector|
//######| | | | | | | | | | | Operation| Operation| Operation| Operation| | | Operation| | Stage| | | | | | | | | Wave| Wave| Lengths_K0_M_K1| ArrangeOrder| | | PerVector| PerVector_K1| | Lengths_K0_N_K1| ArrangeOrder| | | PerVector| PerVector_K1| | PerShuffle| PerShuffle| _NBlock_NPerBlock| _NPerBlock| _MPerBlock_NPerBlock| _NPerBlock| _MPerBlock|
//######| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
<
Row
,
Col
,
Row
,
F16
,
F16
,
F16
,
F32
,
F32
,
F32
,
DPtrsGlobal
,
AElementOp
,
BElementOp
,
CElementOp
,
DxsReduceOp
,
DxsInElementOp
,
DxsOutElementOp
,
DxsGlobalMemOp
,
GemmSpecialization
,
1
,
256
,
256
,
128
,
32
,
8
,
8
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
8
,
8
,
1
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
8
,
8
,
1
,
1
,
1
,
S
<
1
,
32
,
1
,
8
>
,
8
,
S
<
64
,
4
>
,
4
,
1
>
;
// clang-format on
using
ReferenceGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceGemm
<
ADataType
,
BDataType
,
CDataType
,
GemmAccDataType
,
AElementOp
,
BElementOp
,
CElementOp
>
;
using
NormalizeFunctor
=
ck
::
tensor_operation
::
element_wise
::
Normalize
;
// A:x, B:E[x], C:E[x^2], D:Gamma, E:Beta , F:y
using
DeviceNormalizeInstance
=
ck
::
tensor_operation
::
device
::
Device5AryElementwise
<
CDataType
,
DDataType
,
DDataType
,
GammaDataType
,
BetaDataType
,
LayerNormOutDataType
,
NormalizeComputeDataType
,
NormalizeFunctor
,
2
,
8
,
8
,
// scalarPerVector: gemm_out
1
,
// scalarPerVector: reduce_mean
1
,
// scalarPerVector: reduce_mean_square
8
,
// scalarPerVector: Gamma
8
,
// scalarPerVector: Beta
8
>
;
// scalarPerVector: LayerNorm_out
auto
f_host_tensor_descriptor1d
=
[](
std
::
size_t
len
,
std
::
size_t
stride
)
{
return
HostTensorDescriptor
(
std
::
vector
<
std
::
size_t
>
({
len
}),
std
::
vector
<
std
::
size_t
>
({
stride
}));
};
auto
f_host_tensor_descriptor2d
=
[](
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
}));
}
};
template
<
typename
CDataType
,
typename
DDataType
,
typename
A_functor
,
typename
B_functor
,
typename
C_functor
>
void
host_gemm_layernorm
(
Tensor
<
LayerNormOutDataType
>&
out_m_n
,
const
Tensor
<
ADataType
>&
a_m_k
,
const
Tensor
<
ADataType
>&
b_k_n
,
const
Tensor
<
GammaDataType
>&
gamma_n
,
const
Tensor
<
GammaDataType
>&
beta_n
,
A_functor
a_element_op
,
B_functor
b_element_op
,
C_functor
c_element_op
,
int
M
,
int
N
)
{
using
out_type
=
ck
::
remove_reference_t
<
decltype
(
out_m_n
(
0
,
0
))
>
;
int
StrideC
=
N
;
Tensor
<
CDataType
>
c_m_n
(
f_host_tensor_descriptor2d
(
M
,
N
,
StrideC
,
CLayout
{}));
Tensor
<
DDataType
>
mean_m
(
f_host_tensor_descriptor1d
(
M
,
1
));
Tensor
<
DDataType
>
meanSquare_m
(
f_host_tensor_descriptor1d
(
M
,
1
));
auto
averageOpInst
=
UnaryDivElementOp
{
M
};
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
,
a_element_op
,
b_element_op
,
c_element_op
);
ref_invoker
.
Run
(
ref_argument
);
// reduce_mean and reduce_square_mean
auto
reduceSumOpInst
=
ReduceSumOp
{};
for
(
int
m
=
0
;
m
<
M
;
++
m
)
{
float
mean_acc
=
reduceSumOpInst
.
GetIdentityValue
();
float
square_mean_acc
=
reduceSumOpInst
.
GetIdentityValue
();
for
(
int
n
=
0
;
n
<
N
;
++
n
)
{
ReduceAccDataType
c_val
=
ck
::
type_convert
<
float
>
(
c_m_n
(
m
,
n
));
ReduceAccDataType
square_c_val
=
0
;
UnarySquareElementOp
{}(
square_c_val
,
c_val
);
reduceSumOpInst
(
mean_acc
,
c_val
);
reduceSumOpInst
(
square_mean_acc
,
square_c_val
);
}
averageOpInst
(
mean_acc
,
mean_acc
);
averageOpInst
(
square_mean_acc
,
square_mean_acc
);
mean_m
(
m
)
=
ck
::
type_convert
<
DDataType
>
(
mean_acc
);
meanSquare_m
(
m
)
=
ck
::
type_convert
<
DDataType
>
(
square_mean_acc
);
}
// LayerNorm
auto
layerNormInst
=
NormalizeFunctor
{};
for
(
int
m
=
0
;
m
<
M
;
++
m
)
{
for
(
int
n
=
0
;
n
<
N
;
++
n
)
{
float
out_f32
=
0
;
layerNormInst
(
out_f32
,
c_m_n
(
m
,
n
),
mean_m
(
m
),
meanSquare_m
(
m
),
gamma_n
(
n
),
beta_n
(
n
));
out_m_n
(
m
,
n
)
=
static_cast
<
out_type
>
(
out_f32
);
}
}
}
template
<
typename
ADataType
,
typename
BDataType
,
typename
CDataType
,
typename
DDataType
,
typename
GammaDataType
,
typename
BetaDataType
,
typename
NormalizeDataType
>
void
DumpGemmLayerNormPerf
(
float
gemm_reduce_time
,
float
normalize_time
,
int
M
,
int
N
,
int
K
)
{
std
::
size_t
gemm_flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
gemm_num_byte
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
sizeof
(
CDataType
)
*
M
*
N
+
sizeof
(
DDataType
)
*
M
+
sizeof
(
DDataType
)
*
M
;
std
::
size_t
normalize_num_btye
=
sizeof
(
CDataType
)
*
M
*
N
+
sizeof
(
DDataType
)
*
M
+
sizeof
(
DDataType
)
*
M
+
sizeof
(
GammaDataType
)
*
N
+
sizeof
(
BetaDataType
)
*
N
+
sizeof
(
NormalizeDataType
)
*
M
*
N
;
float
tflops
=
static_cast
<
float
>
(
gemm_flop
)
/
1.E9
/
gemm_reduce_time
;
float
gemm_gb_per_sec
=
gemm_num_byte
/
1.E6
/
gemm_reduce_time
;
float
normalize_gb_per_sec
=
normalize_num_btye
/
1.E6
/
normalize_time
;
std
::
cout
<<
"gemm + reduce_mean + reduce_square_mean Perf: "
<<
gemm_reduce_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gemm_gb_per_sec
<<
" GB/s, "
<<
std
::
endl
;
std
::
cout
<<
"5-ary elementwise Perf: "
<<
normalize_time
<<
" ms, "
<<
normalize_gb_per_sec
<<
" GB/s, "
<<
std
::
endl
;
}
int
main
()
{
// GEMM shape
ck
::
index_t
M
=
1024
;
ck
::
index_t
N
=
1024
;
ck
::
index_t
K
=
1024
;
ck
::
index_t
StrideA
=
1024
;
ck
::
index_t
StrideB
=
1024
;
ck
::
index_t
StrideC
=
1024
;
Tensor
<
ADataType
>
a_m_k
(
f_host_tensor_descriptor2d
(
M
,
K
,
StrideA
,
ALayout
{}));
Tensor
<
BDataType
>
b_k_n
(
f_host_tensor_descriptor2d
(
K
,
N
,
StrideB
,
BLayout
{}));
Tensor
<
CDataType
>
c_m_n
(
f_host_tensor_descriptor2d
(
M
,
N
,
StrideC
,
CLayout
{}));
Tensor
<
DDataType
>
reduceMean_m
(
f_host_tensor_descriptor1d
(
M
,
1
));
Tensor
<
DDataType
>
reduceMeanSquare_m
(
f_host_tensor_descriptor1d
(
M
,
1
));
Tensor
<
GammaDataType
>
gamma_n
(
f_host_tensor_descriptor1d
(
N
,
1
));
Tensor
<
BetaDataType
>
beta_n
(
f_host_tensor_descriptor1d
(
N
,
1
));
Tensor
<
LayerNormOutDataType
>
layerNorm_m_n
(
f_host_tensor_descriptor2d
(
M
,
N
,
StrideC
,
CLayout
{}));
a_m_k
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
-
1
,
1
});
b_k_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
1
,
1
});
gamma_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
GammaDataType
>
{
-
1
,
1
});
beta_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
BetaDataType
>
{
-
1
,
1
});
DeviceMem
a_device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
b_device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
c_device_buf
(
sizeof
(
CDataType
)
*
c_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
reduceMean_device_buf
(
sizeof
(
DDataType
)
*
reduceMean_m
.
mDesc
.
GetElementSpace
());
DeviceMem
reduceMeanSquare_device_buf
(
sizeof
(
DDataType
)
*
reduceMeanSquare_m
.
mDesc
.
GetElementSpace
());
DeviceMem
gamma_device_buf
(
sizeof
(
GammaDataType
)
*
gamma_n
.
mDesc
.
GetElementSpace
());
DeviceMem
beta_device_buf
(
sizeof
(
BetaDataType
)
*
beta_n
.
mDesc
.
GetElementSpace
());
DeviceMem
layerNorm_device_buf
(
sizeof
(
LayerNormOutDataType
)
*
layerNorm_m_n
.
mDesc
.
GetElementSpace
());
a_device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
b_device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
gamma_device_buf
.
ToDevice
(
gamma_n
.
mData
.
data
());
beta_device_buf
.
ToDevice
(
beta_n
.
mData
.
data
());
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
c_element_op
=
CElementOp
{};
auto
dxs_global
=
ck
::
make_tuple
(
static_cast
<
DDataType
*>
(
reduceMean_device_buf
.
GetDeviceBuffer
()),
static_cast
<
DDataType
*>
(
reduceMeanSquare_device_buf
.
GetDeviceBuffer
()));
auto
dxs_in_element_op
=
DxsInElementOp
{};
auto
dxs_out_element_op
=
DxsOutElementOp
{
M
,
M
};
// Prepare GEMM, reduce_mean, reduce_mean_square
auto
gemmReduce
=
DeviceGemmReduceInstance
{};
auto
gemmReduce_invoker
=
gemmReduce
.
MakeInvoker
();
auto
gemmReduce_argument
=
gemmReduce
.
MakeArgument
(
static_cast
<
ADataType
*>
(
a_device_buf
.
GetDeviceBuffer
()),
static_cast
<
BDataType
*>
(
b_device_buf
.
GetDeviceBuffer
()),
static_cast
<
CDataType
*>
(
c_device_buf
.
GetDeviceBuffer
()),
dxs_global
,
M
,
N
,
K
,
StrideA
,
StrideB
,
StrideC
,
a_element_op
,
b_element_op
,
c_element_op
,
dxs_in_element_op
,
dxs_out_element_op
);
if
(
!
gemmReduce
.
IsSupportedArgument
(
gemmReduce_argument
))
{
throw
std
::
runtime_error
(
"wrong! device_gemm with the specified compilation parameters does "
"not support this GEMM problem"
);
}
reduceMean_device_buf
.
SetZero
();
reduceMeanSquare_device_buf
.
SetZero
();
// Prepare LayerNorm
auto
normalize
=
DeviceNormalizeInstance
{};
auto
normalize_invoker
=
normalize
.
MakeInvoker
();
auto
normalize_argument
=
normalize
.
MakeArgument
(
static_cast
<
CDataType
*>
(
c_device_buf
.
GetDeviceBuffer
()),
static_cast
<
DDataType
*>
(
reduceMean_device_buf
.
GetDeviceBuffer
()),
static_cast
<
DDataType
*>
(
reduceMeanSquare_device_buf
.
GetDeviceBuffer
()),
static_cast
<
GammaDataType
*>
(
gamma_device_buf
.
GetDeviceBuffer
()),
static_cast
<
BetaDataType
*>
(
beta_device_buf
.
GetDeviceBuffer
()),
static_cast
<
LayerNormOutDataType
*>
(
layerNorm_device_buf
.
GetDeviceBuffer
()),
{
M
,
N
},
{
StrideC
,
1
},
{
1
,
0
},
{
1
,
0
},
{
0
,
1
},
{
0
,
1
},
{
StrideC
,
1
},
NormalizeFunctor
{});
if
(
!
normalize
.
IsSupportedArgument
(
normalize_argument
))
{
throw
std
::
runtime_error
(
"The runtime parameters seems not supported by the "
"Device5AryElementwise instance, exiting!"
);
}
// run kernel
gemmReduce_invoker
.
Run
(
gemmReduce_argument
,
StreamConfig
{
nullptr
,
false
});
normalize_invoker
.
Run
(
normalize_argument
,
StreamConfig
{
nullptr
,
false
});
bool
pass
=
true
;
{
// verification
Tensor
<
LayerNormOutDataType
>
host_layerNorm_m_n
(
f_host_tensor_descriptor2d
(
M
,
N
,
StrideC
,
CLayout
{}));
host_gemm_layernorm
<
CDataType
,
DDataType
>
(
host_layerNorm_m_n
,
a_m_k
,
b_k_n
,
gamma_n
,
beta_n
,
a_element_op
,
b_element_op
,
c_element_op
,
M
,
N
);
layerNorm_device_buf
.
FromDevice
(
layerNorm_m_n
.
mData
.
data
());
pass
&=
ck
::
utils
::
check_err
(
layerNorm_m_n
.
mData
,
host_layerNorm_m_n
.
mData
,
"Error: Incorrect results d1"
,
1e-3
,
1e-3
);
}
{
// evaluate kernel perf
bool
time_kernel
=
true
;
float
gemm_reduce_mean_reduce_square_mean_ave_time
=
gemmReduce_invoker
.
Run
(
gemmReduce_argument
,
StreamConfig
{
nullptr
,
time_kernel
});
float
normalize_ave_time
=
normalize_invoker
.
Run
(
normalize_argument
,
StreamConfig
{
nullptr
,
time_kernel
});
if
(
time_kernel
)
DumpGemmLayerNormPerf
<
ADataType
,
BDataType
,
CDataType
,
DDataType
,
GammaDataType
,
BetaDataType
,
LayerNormOutDataType
>
(
gemm_reduce_mean_reduce_square_mean_ave_time
,
normalize_ave_time
,
M
,
N
,
K
);
}
return
pass
?
0
:
1
;
}
example/22_cgemm/CMakeLists.txt
0 → 100644
View file @
6dfb4e78
add_example_executable
(
example_cgemm_xdl_fp16 cgemm_xdl_fp16.cpp
)
example/22_cgemm/cgemm_xdl_fp16.cpp
0 → 100644
View file @
6dfb4e78
/*******************************************************************************
*
* MIT License
*
* Copyright (c) 2022 Advanced Micro Devices, Inc.
*
* Permission is hereby granted, free of charge, to any person obtaining a copy
* of this software and associated documentation files (the "Software"), to deal
* in the Software without restriction, including without limitation the rights
* to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
* copies of the Software, and to permit persons to whom the Software is
* furnished to do so, subject to the following conditions:
*
* The above copyright notice and this permission notice shall be included in all
* copies or substantial portions of the Software.
*
* THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
* IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
* FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
* AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
* LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
* OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
* SOFTWARE.
*
*******************************************************************************/
#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_cgemm_4gemm_xdl_cshuffle.hpp"
#include "element_wise_operation.hpp"
#include "reference_cgemm.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
=
F16
;
using
BDataType
=
F16
;
using
CDataType
=
F16
;
using
AccDataType
=
F32
;
using
ALayout
=
ck
::
tensor_layout
::
gemm
::
RowMajor
;
using
BLayout
=
ck
::
tensor_layout
::
gemm
::
ColumnMajor
;
using
CLayout
=
ck
::
tensor_layout
::
gemm
::
RowMajor
;
static
constexpr
auto
GemmDefault
=
ck
::
tensor_operation
::
device
::
GemmSpecialization
::
Default
;
// clang-format off
using
DeviceCGemmInstance
=
ck
::
tensor_operation
::
device
::
DeviceCGemm_4Gemm_Xdl_CShuffle
<
ALayout
,
// typename ALayout
BLayout
,
// typename BLayout
CLayout
,
// typename CLayout
ADataType
,
// typename ADataType
BDataType
,
// typename BDataType
CDataType
,
// typename CDataType
AccDataType
,
// typename GemmAccDataType
CDataType
,
// typename CShuffleDataType
PassThrough
,
// typename AElementwiseOperation
PassThrough
,
// typename BElementwiseOperation
PassThrough
,
// typename CElementwiseOperation
GemmDefault
,
// GemmSpecialization GemmSpec
1
,
// index_t NumGemmKPrefetchStage
256
,
// index_t BlockSize
256
,
// index_t MPerBlock
128
,
// index_t NPerBlock
32
,
// index_t KPerBlock
8
,
// index_t AK1
8
,
// index_t BK1
32
,
// index_t MPerXDL
32
,
// index_t NPerXDL
4
,
// index_t MXdlPerWave
2
,
// index_t NXdlPerWave
S
<
4
,
64
,
1
>
,
// typename ABlockTransferThreadClusterLengths_AK0_M_AK1
S
<
1
,
0
,
2
>
,
// typename ABlockTransferThreadClusterArrangeOrder
S
<
1
,
0
,
2
>
,
// typename ABlockTransferSrcAccessOrder
2
,
// index_t ABlockTransferSrcVectorDim
8
,
// index_t ABlockTransferSrcScalarPerVector
8
,
// index_t ABlockTransferDstScalarPerVector_AK1
1
,
// index_t ABlockLdsExtraM
S
<
4
,
64
,
1
>
,
// typename BBlockTransferThreadClusterLengths_BK0_N_BK1
S
<
1
,
0
,
2
>
,
// typename BBlockTransferThreadClusterArrangeOrder
S
<
1
,
0
,
2
>
,
// typename BBlockTransferSrcAccessOrder
2
,
// index_t BBlockTransferSrcVectorDim
8
,
// index_t BBlockTransferSrcScalarPerVector
8
,
// index_t BBlockTransferDstScalarPerVector_BK1
1
,
// index_t BBlockLdsExtraN
1
,
// index_t CShuffleMXdlPerWavePerShuffle
1
,
// index_t CShuffleNXdlPerWavePerShuffle
S
<
1
,
32
,
1
,
8
>
,
// typename CShuffleBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
8
>
;
// index_t CShuffleBlockTransferScalarPerVector_NPerBlock
// clang-format on
using
ReferenceCGemmInstance
=
ck
::
tensor_operation
::
host
::
ReferenceCGemm
<
ADataType
,
BDataType
,
CDataType
,
PassThrough
,
PassThrough
,
PassThrough
>
;
int
main
(
int
argc
,
char
*
argv
[])
{
bool
do_verification
=
true
;
int
init_method
=
1
;
bool
time_kernel
=
false
;
// CGEMM 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_real
(
f_host_tensor_descriptor
(
M
,
K
,
StrideA
,
ALayout
{}));
Tensor
<
ADataType
>
a_m_k_imag
(
f_host_tensor_descriptor
(
M
,
K
,
StrideA
,
ALayout
{}));
Tensor
<
BDataType
>
b_k_n_real
(
f_host_tensor_descriptor
(
K
,
N
,
StrideB
,
BLayout
{}));
Tensor
<
BDataType
>
b_k_n_imag
(
f_host_tensor_descriptor
(
K
,
N
,
StrideB
,
BLayout
{}));
Tensor
<
CDataType
>
c_m_n_real_device_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
Tensor
<
CDataType
>
c_m_n_imag_device_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
std
::
cout
<<
"a_m_k_real: "
<<
a_m_k_real
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"a_m_k_imag: "
<<
a_m_k_imag
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"b_k_n_real: "
<<
b_k_n_real
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"b_k_n_imag: "
<<
b_k_n_imag
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"c_m_n_real: "
<<
c_m_n_real_device_result
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"c_m_n_imag: "
<<
c_m_n_imag_device_result
.
mDesc
<<
std
::
endl
;
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
a_m_k_real
.
GenerateTensorValue
(
GeneratorTensor_2
<
ADataType
>
{
-
2
,
2
});
a_m_k_imag
.
GenerateTensorValue
(
GeneratorTensor_2
<
ADataType
>
{
-
2
,
2
});
b_k_n_real
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
2
,
2
});
b_k_n_imag
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
2
,
2
});
break
;
default:
a_m_k_real
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
-
0.5
,
0.5
});
a_m_k_imag
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
-
0.5
,
0.5
});
b_k_n_real
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
b_k_n_imag
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
}
auto
cgemm
=
DeviceCGemmInstance
{};
DeviceMem
a_m_k_real_device_buf
(
sizeof
(
ADataType
)
*
a_m_k_real
.
mDesc
.
GetElementSpace
());
DeviceMem
a_m_k_imag_device_buf
(
sizeof
(
ADataType
)
*
a_m_k_imag
.
mDesc
.
GetElementSpace
());
DeviceMem
b_k_n_real_device_buf
(
sizeof
(
BDataType
)
*
b_k_n_real
.
mDesc
.
GetElementSpace
());
DeviceMem
b_k_n_imag_device_buf
(
sizeof
(
BDataType
)
*
b_k_n_imag
.
mDesc
.
GetElementSpace
());
DeviceMem
c_m_n_real_device_buf
(
sizeof
(
CDataType
)
*
c_m_n_real_device_result
.
mDesc
.
GetElementSpace
());
DeviceMem
c_m_n_imag_device_buf
(
sizeof
(
CDataType
)
*
c_m_n_imag_device_result
.
mDesc
.
GetElementSpace
());
DeviceMem
workspace_device_buf
(
cgemm
.
GetWorkspaceSize
(
M
,
N
,
K
,
StrideA
,
StrideB
,
StrideC
));
a_m_k_real_device_buf
.
ToDevice
(
a_m_k_real
.
mData
.
data
());
a_m_k_imag_device_buf
.
ToDevice
(
a_m_k_imag
.
mData
.
data
());
b_k_n_real_device_buf
.
ToDevice
(
b_k_n_real
.
mData
.
data
());
b_k_n_imag_device_buf
.
ToDevice
(
b_k_n_imag
.
mData
.
data
());
auto
a_element_op
=
PassThrough
{};
auto
b_element_op
=
PassThrough
{};
auto
c_element_op
=
PassThrough
{};
// do GEMM
auto
invoker
=
cgemm
.
MakeInvoker
();
auto
argument
=
cgemm
.
MakeArgument
(
static_cast
<
ADataType
*>
(
a_m_k_real_device_buf
.
GetDeviceBuffer
()),
static_cast
<
ADataType
*>
(
a_m_k_imag_device_buf
.
GetDeviceBuffer
()),
static_cast
<
BDataType
*>
(
b_k_n_real_device_buf
.
GetDeviceBuffer
()),
static_cast
<
BDataType
*>
(
b_k_n_imag_device_buf
.
GetDeviceBuffer
()),
static_cast
<
CDataType
*>
(
c_m_n_real_device_buf
.
GetDeviceBuffer
()),
static_cast
<
CDataType
*>
(
c_m_n_imag_device_buf
.
GetDeviceBuffer
()),
static_cast
<
CDataType
*>
(
workspace_device_buf
.
GetDeviceBuffer
()),
M
,
N
,
K
,
StrideA
,
StrideB
,
StrideC
,
a_element_op
,
b_element_op
,
c_element_op
);
if
(
!
cgemm
.
IsSupportedArgument
(
argument
))
{
throw
std
::
runtime_error
(
"wrong! device_cgemm with the specified compilation parameters does "
"not support this CGEMM problem"
);
}
float
ave_time
=
invoker
.
Run
(
argument
,
StreamConfig
{
nullptr
,
time_kernel
});
std
::
size_t
flop
=
std
::
size_t
(
8
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
std
::
size_t
(
2
)
*
(
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, "
<<
cgemm
.
GetTypeString
()
<<
std
::
endl
;
c_m_n_real_device_buf
.
FromDevice
(
c_m_n_real_device_result
.
mData
.
data
());
c_m_n_imag_device_buf
.
FromDevice
(
c_m_n_imag_device_result
.
mData
.
data
());
if
(
do_verification
)
{
Tensor
<
CDataType
>
c_m_n_real_host_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
Tensor
<
CDataType
>
c_m_n_imag_host_result
(
f_host_tensor_descriptor
(
M
,
N
,
StrideC
,
CLayout
{}));
auto
ref_cgemm
=
ReferenceCGemmInstance
{};
auto
ref_invoker
=
ref_cgemm
.
MakeInvoker
();
auto
ref_argument
=
ref_cgemm
.
MakeArgument
(
a_m_k_real
,
a_m_k_imag
,
b_k_n_real
,
b_k_n_imag
,
c_m_n_real_host_result
,
c_m_n_imag_host_result
,
a_element_op
,
b_element_op
,
c_element_op
);
ref_invoker
.
Run
(
ref_argument
);
ck
::
utils
::
check_err
(
c_m_n_real_device_result
.
mData
,
c_m_n_real_host_result
.
mData
,
"Verification error: incorrect results in real part!"
,
1e-2
f
,
1e-1
f
);
ck
::
utils
::
check_err
(
c_m_n_imag_device_result
.
mData
,
c_m_n_imag_host_result
.
mData
,
"Verification error: incorrect results in imaginary part!"
,
1e-2
f
,
1e-1
f
);
}
return
0
;
}
example/CMakeLists.txt
View file @
6dfb4e78
include_directories
(
BEFORE
${
PROJECT_SOURCE_DIR
}
/include/ck
${
PROJECT_SOURCE_DIR
}
/include/ck/utility
${
PROJECT_SOURCE_DIR
}
/include/ck/host_utility
${
PROJECT_SOURCE_DIR
}
/include/ck/tensor_description
${
PROJECT_SOURCE_DIR
}
/include/ck/tensor
${
PROJECT_SOURCE_DIR
}
/include/ck/problem_transform
...
...
@@ -38,7 +39,7 @@ function(add_example_executable_no_testing EXAMPLE_NAME FILE_NAME)
add_executable
(
${
EXAMPLE_NAME
}
${
FILE_NAME
}
)
target_link_libraries
(
${
EXAMPLE_NAME
}
PRIVATE host_tensor
)
add_dependencies
(
examples
${
EXAMPLE_NAME
}
)
endfunction
(
add_example_executable EXAMPLE_NAME
)
endfunction
(
add_example_executable
_no_testing
EXAMPLE_NAME
)
add_subdirectory
(
01_gemm
)
add_subdirectory
(
02_gemm_alpha_beta
)
...
...
@@ -52,10 +53,13 @@ add_subdirectory(11_conv2d_bwd_weight)
add_subdirectory
(
12_reduce
)
add_subdirectory
(
13_pool2d_fwd
)
add_subdirectory
(
14_gemm_xdl_requant_relu_requant
)
add_subdirectory
(
17_convnd_bwd_data_xdl
)
add_subdirectory
(
15_grouped_gemm
)
add_subdirectory
(
16_gemm_reduce
)
add_subdirectory
(
17_convnd_bwd_data_xdl
)
add_subdirectory
(
18_batched_gemm_reduce
)
add_subdirectory
(
19_binary_elementwise
)
add_subdirectory
(
20_convnd_bwd_weight_xdl
)
add_subdirectory
(
21_gemm_layernorm
)
add_subdirectory
(
22_cgemm
)
add_subdirectory
(
cpu_01_conv2d_fwd
)
add_subdirectory
(
cpu_02_conv2d_fwd_bias_relu_add
)
include/ck/config.hpp
View file @
6dfb4e78
...
...
@@ -87,6 +87,12 @@
#define CK_USE_AMD_BUFFER_ATOMIC_ADD_FLOAT 0
#endif
#if defined(__gfx90a__) // for GPU code
#define CK_USE_AMD_BUFFER_ATOMIC_MAX_FLOAT64 1
#else
#define CK_USE_AMD_BUFFER_ATOMIC_MAX_FLOAT64 0
#endif
// inline asm
#define CK_USE_AMD_INLINE_ASM 1
...
...
@@ -102,10 +108,11 @@
// experimental feature: static tensor descriptor
#define CK_EXPERIMENTAL_STATIC_TENSOR_DESCRIPTOR 0
// experimental feature: buffer load/store/atomic-add OOB trick
// experimental feature: buffer load/store/atomic-add
/
OOB trick
#define CK_EXPERIMENTAL_USE_BUFFER_LOAD_OOB_CHECK_OFFSET_TRICK 0
#define CK_EXPERIMENTAL_USE_BUFFER_STORE_OOB_CHECK_OFFSET_TRICK 1
#define CK_EXPERIMENTAL_USE_BUFFER_ATOMIC_ADD_OOB_CHECK_OFFSET_TRICK 1
#define CK_EXPERIMENTAL_USE_BUFFER_ATOMIC_MAX_OOB_CHECK_OFFSET_TRICK 1
// experimental feature: in-regsiter sub-dword transpose
#define CK_EXPERIMENTAL_USE_IN_REGISTER_SUB_DWORD_TRANSPOSE 1
...
...
@@ -157,9 +164,23 @@ enum struct InMemoryDataOperationEnum
{
Set
,
AtomicAdd
,
AtomicMax
,
Add
};
template
<
InMemoryDataOperationEnum
...
Is
>
struct
InMemoryDataOperationEnumSequence
{
static
constexpr
int
mSize
=
sizeof
...(
Is
);
__host__
__device__
static
constexpr
InMemoryDataOperationEnum
At
(
int
I
)
{
// the last dummy element is to prevent compiler complain about empty array, when mSize = 0
const
InMemoryDataOperationEnum
mData
[
mSize
+
1
]
=
{
Is
...,
InMemoryDataOperationEnum
::
Set
};
return
mData
[
I
];
}
};
// TODO: no longer needed, remove this
enum
struct
ActivTypeEnum
{
...
...
include/ck/host_utility/device_prop.hpp
0 → 100644
View file @
6dfb4e78
#pragma once
#include <string>
#include <map>
namespace
ck
{
inline
std
::
string
get_device_name
()
{
hipDeviceProp_t
props
{};
int
device
;
auto
status
=
hipGetDevice
(
&
device
);
if
(
status
!=
hipSuccess
)
{
return
std
::
string
();
}
status
=
hipGetDeviceProperties
(
&
props
,
device
);
if
(
status
!=
hipSuccess
)
{
return
std
::
string
();
}
const
std
::
string
raw_name
(
props
.
gcnArchName
);
// https://github.com/ROCmSoftwarePlatform/MIOpen/blob/8498875aef84878e04c1eabefdf6571514891086/src/target_properties.cpp#L40
static
std
::
map
<
std
::
string
,
std
::
string
>
device_name_map
=
{
{
"Ellesmere"
,
"gfx803"
},
{
"Baffin"
,
"gfx803"
},
{
"RacerX"
,
"gfx803"
},
{
"Polaris10"
,
"gfx803"
},
{
"Polaris11"
,
"gfx803"
},
{
"Tonga"
,
"gfx803"
},
{
"Fiji"
,
"gfx803"
},
{
"gfx800"
,
"gfx803"
},
{
"gfx802"
,
"gfx803"
},
{
"gfx804"
,
"gfx803"
},
{
"Vega10"
,
"gfx900"
},
{
"gfx901"
,
"gfx900"
},
{
"10.3.0 Sienna_Cichlid 18"
,
"gfx1030"
},
};
const
auto
name
=
raw_name
.
substr
(
0
,
raw_name
.
find
(
':'
));
// str.substr(0, npos) returns str.
auto
match
=
device_name_map
.
find
(
name
);
if
(
match
!=
device_name_map
.
end
())
return
match
->
second
;
return
name
;
}
}
// namespace ck
include/ck/options.hpp
0 → 100644
View file @
6dfb4e78
#pragma once
#define CK_TIME_KERNEL 1
include/ck/options.hpp.in
deleted
100644 → 0
View file @
397a68f2
#pragma once
#cmakedefine01 CK_TIME_KERNEL
#cmakedefine CK_NOGPU
include/ck/tensor_operation/gpu/block/blockwise_gemm_dl
ops
_v2r3.hpp
→
include/ck/tensor_operation/gpu/block/blockwise_gemm_dl_v2r3.hpp
View file @
6dfb4e78
#ifndef CK_BLOCKWISE_GEMM_DLOPS_V2R3_HPP
#define CK_BLOCKWISE_GEMM_DLOPS_V2R3_HPP
#pragma once
#include "common_header.hpp"
#include "tensor_adaptor.hpp"
#include "threadwise_tensor_slice_transfer_v
2
.hpp"
#include "threadwise_contraction_dl
ops
.hpp"
#include "threadwise_tensor_slice_transfer_v
4r1
.hpp"
#include "threadwise_contraction_dl.hpp"
namespace
ck
{
...
...
@@ -41,7 +39,7 @@ template <index_t BlockSize,
typename
enable_if
<
ABlockDesc_BK0_BM_BK1
::
IsKnownAtCompileTime
()
&&
BBlockDesc_BK0_BN_BK1
::
IsKnownAtCompileTime
(),
bool
>
::
type
=
false
>
struct
BlockwiseGemmDl
ops
_A_BK0_BM_BK1_B_BK0_BN_BK1_C_BM0_BM1_BN0_BN1_pipeline_BM0_2_BN0_2
struct
BlockwiseGemmDl_A_BK0_BM_BK1_B_BK0_BN_BK1_C_BM0_BM1_BN0_BN1_pipeline_BM0_2_BN0_2
{
using
AIndex
=
MultiIndex
<
3
>
;
using
BIndex
=
MultiIndex
<
3
>
;
...
...
@@ -148,7 +146,7 @@ struct BlockwiseGemmDlops_A_BK0_BM_BK1_B_BK0_BN_BK1_C_BM0_BM1_BN0_BN1_pipeline_B
MakeBBlockDescriptor_BK0_BN0_BN1_BK1
(
BBlockDesc_BK0_BN_BK1
{});
public:
__device__
BlockwiseGemmDl
ops
_A_BK0_BM_BK1_B_BK0_BN_BK1_C_BM0_BM1_BN0_BN1_pipeline_BM0_2_BN0_2
()
__device__
BlockwiseGemmDl_A_BK0_BM_BK1_B_BK0_BN_BK1_C_BM0_BM1_BN0_BN1_pipeline_BM0_2_BN0_2
()
:
c_thread_origin_data_idx_
{
CalculateCThreadOriginOnBlock_BM0_BM1_BN0_BN1
(
get_thread_local_1d_id
())},
a_thread_copy_
{
...
...
@@ -175,6 +173,7 @@ struct BlockwiseGemmDlops_A_BK0_BM_BK1_B_BK0_BN_BK1_C_BM0_BM1_BN0_BN1_pipeline_B
"wrong!"
);
// TODO: remove this restriction
static_assert
(
BM0
==
2
,
"wrong"
);
static_assert
(
BM0
==
2
&&
BN0
==
2
,
"wrong"
);
}
...
...
@@ -226,7 +225,7 @@ struct BlockwiseGemmDlops_A_BK0_BM_BK1_B_BK0_BN_BK1_C_BM0_BM1_BN0_BN1_pipeline_B
b_thread_desc_bk0_bn0_bn1_bk1_
.
GetElementSpaceSize
());
constexpr
auto
threadwise_contraction
=
ThreadwiseContractionDl
ops
_A_TK0_TM0_TM1_TK1_B_TK0_TN0_TN1_TK1_C_TM0_TM1_TN0_TN1
<
ThreadwiseContractionDl_A_TK0_TM0_TM1_TK1_B_TK0_TN0_TN1_TK1_C_TM0_TM1_TN0_TN1
<
FloatA
,
FloatB
,
FloatC
,
...
...
@@ -407,4 +406,3 @@ struct BlockwiseGemmDlops_A_BK0_BM_BK1_B_BK0_BN_BK1_C_BM0_BM1_BN0_BN1_pipeline_B
};
}
// namespace ck
#endif
include/ck/tensor_operation/gpu/block/blockwise_tensor_slice_transfer_v5r1.hpp
View file @
6dfb4e78
...
...
@@ -75,14 +75,13 @@ struct BlockwiseTensorSliceTransfer_v5r1
}
}
template
<
typename
SrcBuffer
,
typename
SrcStepHacks
>
__device__
void
RunRead
(
const
SrcDesc
&
src_desc
,
const
SrcBuffer
&
src_buf
,
const
SrcStepHacks
&
src_step_hacks
)
template
<
typename
SrcBuffer
>
__device__
void
RunRead
(
const
SrcDesc
&
src_desc
,
const
SrcBuffer
&
src_buf
)
{
if
(
BlockSize
==
thread_cluster_desc_
.
GetElementSize
()
or
get_thread_local_1d_id
()
<
thread_cluster_desc_
.
GetElementSize
())
{
threadwise_transfer_
.
RunRead
(
src_desc
,
src_buf
,
src_step_hacks
);
threadwise_transfer_
.
RunRead
(
src_desc
,
src_buf
);
}
}
...
...
include/ck/tensor_operation/gpu/device/convolution_backward_weight_specialization.hpp
0 → 100644
View file @
6dfb4e78
#pragma once
namespace
ck
{
namespace
tensor_operation
{
namespace
device
{
enum
struct
ConvolutionBackwardWeightSpecialization
{
Default
,
Filter1x1Stride1Pad0
,
Filter1x1Pad0
,
OddC
,
};
}
// namespace device
}
// namespace tensor_operation
}
// namespace ck
include/ck/tensor_operation/gpu/device/device_5ary_elementwise.hpp
0 → 100644
View file @
6dfb4e78
#pragma once
#include <iostream>
#include <sstream>
#include "device.hpp"
#include "device_base.hpp"
#include "common_header.hpp"
#include "gridwise_5ary_Elementwise_1d.hpp"
#include "tensor_layout.hpp"
#include "tensor_descriptor.hpp"
#include "tensor_descriptor_helper.hpp"
namespace
ck
{
namespace
tensor_operation
{
namespace
device
{
template
<
typename
ADataType
,
typename
BDataType
,
typename
CDataType
,
typename
DDataType
,
typename
EDataType
,
typename
FDataType
,
typename
ComputeDataType
,
typename
ElementwiseFunctor
,
index_t
NDim
,
index_t
MPerThread
,
index_t
AScalarPerVector
,
index_t
BScalarPerVector
,
index_t
CScalarPerVector
,
index_t
DScalarPerVector
,
index_t
EScalarPerVector
,
index_t
FScalarPerVector
>
struct
Device5AryElementwise
:
public
BaseOperator
{
static
constexpr
auto
I0
=
Number
<
0
>
{};
template
<
typename
Desc_M
>
static
auto
PadDescriptor_M_1d
(
Desc_M
desc_m
,
index_t
gridSize
,
index_t
blockSize
)
{
const
auto
m
=
desc_m
.
GetLength
(
I0
);
const
index_t
loop_step
=
gridSize
*
blockSize
*
MPerThread
;
const
auto
pad
=
math
::
integer_least_multiple
(
m
,
loop_step
)
-
m
;
const
auto
desc_m_pad
=
transform_tensor_descriptor
(
desc_m
,
make_tuple
(
make_right_pad_transform
(
m
,
pad
)),
make_tuple
(
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
>
{}));
return
desc_m_pad
;
}
static
auto
MakeDescriptor_M
(
const
std
::
vector
<
index_t
>&
lengths
,
const
std
::
vector
<
index_t
>&
stride
,
index_t
gridSize
,
index_t
blockSize
)
{
auto
tupleOfShape
=
generate_tuple
([
&
](
auto
I
)
{
return
lengths
[
I
];
},
Number
<
NDim
>
{});
auto
tupleOfStride
=
generate_tuple
([
&
](
auto
I
)
{
return
stride
[
I
];
},
Number
<
NDim
>
{});
// nd desc - [s0, s1, s2, ...]
const
auto
desc
=
make_naive_tensor_descriptor
(
tupleOfShape
,
tupleOfStride
);
// merge nd to 1d desc - [s0 * s1 * ...]
if
constexpr
(
NDim
>
1
)
{
const
auto
desc_m
=
transform_tensor_descriptor
(
desc
,
make_tuple
(
make_merge_transform
(
tupleOfShape
)),
make_tuple
(
generate_sequence_v2
([
&
](
auto
I
)
{
return
I
;
},
Number
<
NDim
>
{})),
make_tuple
(
Sequence
<
0
>
{}));
return
PadDescriptor_M_1d
(
desc_m
,
gridSize
,
blockSize
);
}
else
return
PadDescriptor_M_1d
(
desc
,
gridSize
,
blockSize
);
}
using
AGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
BGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
CGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
DGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
EGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
FGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
Gridwise5AryEltwise
=
Gridwise5AryElementwise_1D
<
ADataType
,
BDataType
,
CDataType
,
DDataType
,
EDataType
,
FDataType
,
ComputeDataType
,
AGridDesc_M
,
BGridDesc_M
,
CGridDesc_M
,
DGridDesc_M
,
EGridDesc_M
,
FGridDesc_M
,
ElementwiseFunctor
,
MPerThread
,
AScalarPerVector
,
BScalarPerVector
,
CScalarPerVector
,
DScalarPerVector
,
EScalarPerVector
,
FScalarPerVector
>
;
struct
Argument
:
public
BaseArgument
{
Argument
(
const
ADataType
*
p_a
,
const
BDataType
*
p_b
,
const
CDataType
*
p_c
,
const
DDataType
*
p_d
,
const
EDataType
*
p_e
,
FDataType
*
p_f
,
const
std
::
vector
<
index_t
>&
lengths
,
const
std
::
vector
<
index_t
>&
a_strides
,
const
std
::
vector
<
index_t
>&
b_strides
,
const
std
::
vector
<
index_t
>&
c_strides
,
const
std
::
vector
<
index_t
>&
d_strides
,
const
std
::
vector
<
index_t
>&
e_strides
,
const
std
::
vector
<
index_t
>&
f_strides
,
ElementwiseFunctor
functor
)
:
p_a_
(
p_a
),
p_b_
(
p_b
),
p_c_
(
p_c
),
p_d_
(
p_d
),
p_e_
(
p_e
),
p_f_
(
p_f
),
lengths_
(
lengths
),
a_strides_
(
a_strides
),
b_strides_
(
b_strides
),
c_strides_
(
c_strides
),
d_strides_
(
d_strides
),
e_strides_
(
e_strides
),
f_strides_
(
f_strides
),
functor_
(
functor
),
blockSize_
(
256
),
gridSize_
(
120
)
// FIXME - Calculate the grid size by number of CU in the future
{
a_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
a_strides
,
gridSize_
,
blockSize_
);
b_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
b_strides
,
gridSize_
,
blockSize_
);
c_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
c_strides
,
gridSize_
,
blockSize_
);
d_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
d_strides
,
gridSize_
,
blockSize_
);
e_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
e_strides
,
gridSize_
,
blockSize_
);
f_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
f_strides
,
gridSize_
,
blockSize_
);
}
const
ADataType
*
p_a_
;
const
BDataType
*
p_b_
;
const
CDataType
*
p_c_
;
const
DDataType
*
p_d_
;
const
EDataType
*
p_e_
;
FDataType
*
p_f_
;
std
::
vector
<
index_t
>
lengths_
;
AGridDesc_M
a_grid_desc_m_
;
BGridDesc_M
b_grid_desc_m_
;
CGridDesc_M
c_grid_desc_m_
;
DGridDesc_M
d_grid_desc_m_
;
EGridDesc_M
e_grid_desc_m_
;
FGridDesc_M
f_grid_desc_m_
;
std
::
vector
<
index_t
>
a_strides_
;
std
::
vector
<
index_t
>
b_strides_
;
std
::
vector
<
index_t
>
c_strides_
;
std
::
vector
<
index_t
>
d_strides_
;
std
::
vector
<
index_t
>
e_strides_
;
std
::
vector
<
index_t
>
f_strides_
;
ElementwiseFunctor
functor_
;
index_t
blockSize_
;
index_t
gridSize_
;
};
struct
Invoker
:
public
BaseInvoker
{
float
Run
(
const
Argument
&
arg
,
const
StreamConfig
&
stream_config
=
StreamConfig
{})
{
const
auto
kernel
=
kernel_5ary_elementwise_1d
<
Gridwise5AryEltwise
,
ADataType
,
BDataType
,
CDataType
,
DDataType
,
EDataType
,
FDataType
,
AGridDesc_M
,
BGridDesc_M
,
CGridDesc_M
,
DGridDesc_M
,
EGridDesc_M
,
FGridDesc_M
,
ElementwiseFunctor
>
;
float
elapsed_time
=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
arg
.
gridSize_
),
dim3
(
arg
.
blockSize_
),
0
,
arg
.
p_a_
,
arg
.
p_b_
,
arg
.
p_c_
,
arg
.
p_d_
,
arg
.
p_e_
,
arg
.
p_f_
,
arg
.
a_grid_desc_m_
,
arg
.
b_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
arg
.
d_grid_desc_m_
,
arg
.
e_grid_desc_m_
,
arg
.
f_grid_desc_m_
,
arg
.
functor_
);
return
elapsed_time
;
}
// polymorphic
float
Run
(
const
BaseArgument
*
p_arg
,
const
StreamConfig
&
stream_config
=
StreamConfig
{})
override
{
return
Run
(
*
dynamic_cast
<
const
Argument
*>
(
p_arg
),
stream_config
);
}
};
bool
IsSupportedArgument
(
const
BaseArgument
&
p_arg
)
{
return
IsSupportedArgument
(
&
p_arg
);
}
bool
IsSupportedArgument
(
const
BaseArgument
*
p_arg
)
override
{
const
Argument
*
pArg
=
dynamic_cast
<
const
Argument
*>
(
p_arg
);
if
(
pArg
==
nullptr
)
return
false
;
if
(
pArg
->
lengths_
.
size
()
!=
NDim
)
return
false
;
if
(
pArg
->
lengths_
.
back
()
%
MPerThread
!=
0
)
return
false
;
auto
IsScalarPerVectorValid
=
[](
bool
isLastDimensionCoalesced
,
int
scalarPerVector
)
{
bool
ret
=
true
;
if
(
!
isLastDimensionCoalesced
)
ret
=
scalarPerVector
==
1
;
else
ret
=
MPerThread
%
scalarPerVector
==
0
;
return
ret
;
};
if
(
!
IsScalarPerVectorValid
(
pArg
->
a_strides_
.
back
()
==
1
,
AScalarPerVector
))
return
false
;
if
(
!
IsScalarPerVectorValid
(
pArg
->
b_strides_
.
back
()
==
1
,
BScalarPerVector
))
return
false
;
if
(
!
IsScalarPerVectorValid
(
pArg
->
c_strides_
.
back
()
==
1
,
CScalarPerVector
))
return
false
;
if
(
!
IsScalarPerVectorValid
(
pArg
->
d_strides_
.
back
()
==
1
,
DScalarPerVector
))
return
false
;
if
(
!
IsScalarPerVectorValid
(
pArg
->
e_strides_
.
back
()
==
1
,
EScalarPerVector
))
return
false
;
if
(
!
IsScalarPerVectorValid
(
pArg
->
f_strides_
.
back
()
==
1
,
FScalarPerVector
))
return
false
;
return
true
;
};
static
auto
MakeArgument
(
const
ADataType
*
p_a
,
const
BDataType
*
p_b
,
const
CDataType
*
p_c
,
const
DDataType
*
p_d
,
const
EDataType
*
p_e
,
FDataType
*
p_f
,
std
::
vector
<
index_t
>
lengths
,
std
::
vector
<
index_t
>
a_strides
,
std
::
vector
<
index_t
>
b_strides
,
std
::
vector
<
index_t
>
c_strides
,
std
::
vector
<
index_t
>
d_strides
,
std
::
vector
<
index_t
>
e_strides
,
std
::
vector
<
index_t
>
f_strides
,
ElementwiseFunctor
functor
)
{
return
Argument
{
p_a
,
p_b
,
p_c
,
p_d
,
p_e
,
p_f
,
lengths
,
a_strides
,
b_strides
,
c_strides
,
d_strides
,
e_strides
,
f_strides
,
functor
};
}
std
::
unique_ptr
<
BaseArgument
>
MakeArgumentPointer
(
const
void
*
p_a
,
const
void
*
p_b
,
const
void
*
p_c
,
const
void
*
p_d
,
const
void
*
p_e
,
void
*
p_f
,
std
::
vector
<
index_t
>
lengths
,
std
::
vector
<
index_t
>
a_strides
,
std
::
vector
<
index_t
>
b_strides
,
std
::
vector
<
index_t
>
c_strides
,
std
::
vector
<
index_t
>
d_strides
,
std
::
vector
<
index_t
>
e_strides
,
std
::
vector
<
index_t
>
f_strides
,
ElementwiseFunctor
functor
)
{
return
std
::
make_unique
<
Argument
>
(
static_cast
<
const
ADataType
*>
(
p_a
),
static_cast
<
const
BDataType
*>
(
p_b
),
static_cast
<
const
CDataType
*>
(
p_c
),
static_cast
<
const
DDataType
*>
(
p_d
),
static_cast
<
const
EDataType
*>
(
p_e
),
static_cast
<
FDataType
*>
(
p_f
),
lengths
,
a_strides
,
b_strides
,
c_strides
,
d_strides
,
e_strides
,
f_strides
,
functor
);
}
static
auto
MakeInvoker
()
{
return
Invoker
{};
}
std
::
unique_ptr
<
BaseInvoker
>
MakeInvokerPointer
()
{
return
std
::
make_unique
<
Invoker
>
();
}
};
// namespace device
}
// namespace device
}
// namespace tensor_operation
}
// namespace ck
include/ck/tensor_operation/gpu/device/device_base.hpp
View file @
6dfb4e78
...
...
@@ -40,6 +40,10 @@ struct BaseOperator
virtual
bool
IsSupportedArgument
(
const
BaseArgument
*
)
{
return
false
;
}
virtual
std
::
string
GetTypeString
()
const
{
return
""
;
}
virtual
size_t
GetWorkSpaceSize
(
const
BaseArgument
*
)
const
{
return
0
;
}
virtual
void
SetWorkSpacePointer
(
BaseArgument
*
,
void
*
)
const
{}
virtual
~
BaseOperator
()
{}
};
...
...
include/ck/tensor_operation/gpu/device/device_batched_gemm_reduce_xdl_cshuffle.hpp
View file @
6dfb4e78
...
...
@@ -17,11 +17,12 @@ namespace device {
template
<
typename
GridwiseGemm
,
typename
FloatAB
,
typename
FloatC
,
typename
FloatD
,
typename
DPtrsGlobal
,
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CElementwiseOperation
,
typename
D1ElementwiseOperation
,
typename
DxsInElementwiseOperation
,
typename
DxsAccElementwiseOperation
,
typename
AGridDesc_AK0_M_AK1
,
typename
BGridDesc_BK0_N_BK1
,
typename
CGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
...
...
@@ -37,13 +38,13 @@ __global__ void
const
FloatAB
*
__restrict__
p_a_grid
,
const
FloatAB
*
__restrict__
p_b_grid
,
FloatC
*
__restrict__
p_c_grid
,
FloatD
*
__restrict__
p_d0_grid
,
FloatD
*
__restrict__
p_d1_grid
,
DPtrsGlobal
p_ds_grid
,
const
index_t
batch_count
,
const
AElementwiseOperation
a_element_op
,
const
BElementwiseOperation
b_element_op
,
const
CElementwiseOperation
c_element_op
,
const
D1ElementwiseOperation
d1_element_op
,
const
DxsInElementwiseOperation
dxs_in_element_op
,
const
DxsAccElementwiseOperation
dxs_out_element_op
,
const
AGridDesc_AK0_M_AK1
a_grid_desc_ak0_m_ak1
,
const
BGridDesc_BK0_N_BK1
b_grid_desc_bk0_n_bk1
,
const
CGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
...
...
@@ -64,23 +65,24 @@ __global__ void
const
long_index_t
c_batch_offset
=
__builtin_amdgcn_readfirstlane
(
static_cast
<
long_index_t
>
(
compute_base_ptr_of_batch_
.
GetCBasePtr
(
g_idx
)));
const
long_index_t
d0_batch_offset
=
__builtin_amdgcn_readfirstlane
(
static_cast
<
long_index_t
>
(
compute_base_ptr_of_batch_
.
GetD0BasePtr
(
g_idx
)));
const
long_index_t
d1_batch_offset
=
__builtin_amdgcn_readfirstlane
(
static_cast
<
long_index_t
>
(
compute_base_ptr_of_batch_
.
GetD1BasePtr
(
g_idx
)));
static_for
<
0
,
p_ds_grid
.
Size
(),
1
>
{}([
&
](
auto
In
)
{
const
long_index_t
d_batch_offset
=
__builtin_amdgcn_readfirstlane
(
static_cast
<
long_index_t
>
(
compute_base_ptr_of_batch_
.
GetDBasePtr
(
g_idx
,
In
)));
p_ds_grid
(
In
)
=
p_ds_grid
(
In
)
+
d_batch_offset
;
});
__shared__
char
p_shared
[
GridwiseGemm
::
GetSharedMemoryNumberOfByte
()];
GridwiseGemm
::
template
Run
<
HasMainK0BlockLoop
>(
p_a_grid
+
a_batch_offset
,
p_b_grid
+
b_batch_offset
,
p_c_grid
+
c_batch_offset
,
p_d0_grid
+
d0_batch_offset
,
p_d1_grid
+
d1_batch_offset
,
p_ds_grid
,
p_shared
,
a_element_op
,
b_element_op
,
c_element_op
,
d1_element_op
,
dxs_in_element_op
,
dxs_out_element_op
,
a_grid_desc_ak0_m_ak1
,
b_grid_desc_bk0_n_bk1
,
c_grid_desc_mblock_mperblock_nblock_nperblock
,
...
...
@@ -90,13 +92,13 @@ __global__ void
ignore
=
p_a_grid
;
ignore
=
p_b_grid
;
ignore
=
p_c_grid
;
ignore
=
p_d0_grid
;
ignore
=
p_d1_grid
;
ignore
=
p_ds_grid
;
ignore
=
batch_count
;
ignore
=
a_element_op
;
ignore
=
b_element_op
;
ignore
=
c_element_op
;
ignore
=
d1_element_op
;
ignore
=
dxs_in_element_op
;
ignore
=
dxs_out_element_op
;
ignore
=
a_grid_desc_ak0_m_ak1
;
ignore
=
b_grid_desc_bk0_n_bk1
;
ignore
=
c_grid_desc_mblock_mperblock_nblock_nperblock
;
...
...
@@ -118,13 +120,14 @@ template <typename ALayout,
typename
GemmAccDataType
,
typename
CShuffleDataType
,
typename
ReduceAccDataType
,
typename
D
DataType
,
typename
D
PtrsGlobal
,
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CElementwiseOperation
,
typename
D0ReduceOperation
,
typename
D1ReduceOperation
,
typename
D1ElementwiseOperation
,
typename
DxsReduceOperation
,
typename
DxsInElementwiseOperation
,
typename
DxsAccElementwiseOperation
,
typename
DGlobalMemoryDataOperation
,
GemmSpecialization
GemmSpec
,
index_t
NumGemmKPrefetchStage
,
index_t
BlockSize
,
...
...
@@ -159,10 +162,12 @@ template <typename ALayout,
index_t
CReduceThreadLds2VGprCopySrcDstScalarPerVector_NPerBlock
,
index_t
CReduceThreadVgpr2GlobalCopySrcDstScalarPerVector_MPerBlock
,
LoopScheduler
LoopSched
=
make_default_loop_scheduler
()>
struct
DeviceBatchedGemmReduce_Xdl_CShuffle
:
public
DeviceGemmReduce
<
AElementwiseOperation
,
struct
DeviceBatchedGemmReduce_Xdl_CShuffle
:
public
DeviceGemmReduce
<
DPtrsGlobal
,
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
,
D1ElementwiseOperation
>
DxsInElementwiseOperation
,
DxsAccElementwiseOperation
>
{
using
DeviceOp
=
DeviceBatchedGemmReduce_Xdl_CShuffle
;
...
...
@@ -465,56 +470,16 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
using
CGridDesc_M_N
=
decltype
(
MakeCGridDescriptor_M_N
(
1
,
1
,
1
));
using
DGridDesc_M
=
decltype
(
MakeDGridDescriptor_M
(
1
));
static
constexpr
auto
MakeBlock2CTileMap
(
index_t
batch_count
,
const
CGridDesc_M_N
&
c_grid_desc_m_n
,
index_t
M01
,
index_t
N01
)
{
const
auto
M
=
c_grid_desc_m_n
.
GetLength
(
I0
);
const
auto
N
=
c_grid_desc_m_n
.
GetLength
(
I1
);
constexpr
auto
M1
=
Number
<
MPerBlock
>
{};
constexpr
auto
N1
=
Number
<
NPerBlock
>
{};
const
auto
M0
=
M
/
M1
;
const
auto
N0
=
N
/
N1
;
const
auto
M00
=
M0
/
M01
;
const
auto
N00
=
N0
/
N01
;
const
auto
g_m00_m01_n00_n01_to_m0_n0_block_cluster_adaptor
=
make_single_stage_tensor_adaptor
(
make_tuple
(
make_insert_transform
(
batch_count
),
make_unmerge_transform
(
make_tuple
(
M00
,
M01
)),
make_unmerge_transform
(
make_tuple
(
N00
,
N01
))),
make_tuple
(
Sequence
<>
{},
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
,
3
>
{},
Sequence
<
2
,
4
>
{}));
const
auto
globalblockid_to_m00_m01_n00_n01_block_cluster_adaptor
=
make_single_stage_tensor_adaptor
(
make_tuple
(
make_merge_transform
(
make_tuple
(
batch_count
,
M00
,
N00
,
M01
,
N01
))),
make_tuple
(
Sequence
<
0
,
1
,
2
,
3
,
4
>
{}),
make_tuple
(
Sequence
<
0
>
{}));
const
auto
globalblockid_to_m0_n0_block_cluster_adaptor
=
chain_tensor_adaptors
(
g_m00_m01_n00_n01_to_m0_n0_block_cluster_adaptor
,
globalblockid_to_m00_m01_n00_n01_block_cluster_adaptor
);
return
globalblockid_to_m0_n0_block_cluster_adaptor
;
}
struct
ComputeBasePtrOfStridedBatch
{
ComputeBasePtrOfStridedBatch
(
index_t
BatchStrideA
,
index_t
BatchStrideB
,
index_t
BatchStrideC
,
index_t
BatchStrideD0
,
index_t
BatchStrideD1
)
index_t
BatchStrideD
)
:
BatchStrideA_
(
BatchStrideA
),
BatchStrideB_
(
BatchStrideB
),
BatchStrideC_
(
BatchStrideC
),
BatchStrideD0_
(
BatchStrideD0
),
BatchStrideD1_
(
BatchStrideD1
)
BatchStrideD_
(
BatchStrideD
)
{
}
...
...
@@ -533,22 +498,20 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
return
g_idx
*
static_cast
<
long_index_t
>
(
BatchStrideC_
);
}
__host__
__device__
constexpr
long_index_t
GetD0BasePtr
(
index_t
g_idx
)
const
{
return
g_idx
*
static_cast
<
long_index_t
>
(
BatchStrideD0_
);
}
__host__
__device__
constexpr
long_index_t
GetD1BasePtr
(
index_t
g_idx
)
const
template
<
index_t
I
>
__host__
__device__
constexpr
long_index_t
GetDBasePtr
(
index_t
g_idx
,
Number
<
I
>
reduction_idx
)
const
{
return
g_idx
*
static_cast
<
long_index_t
>
(
BatchStrideD1_
);
// TODO - Support sequence of StrideD in MakeArgument()
(
void
)
reduction_idx
;
return
g_idx
*
static_cast
<
long_index_t
>
(
BatchStrideD_
);
}
private:
index_t
BatchStrideA_
;
index_t
BatchStrideB_
;
index_t
BatchStrideC_
;
index_t
BatchStrideD0_
;
index_t
BatchStrideD1_
;
index_t
BatchStrideD_
;
};
// GridwiseGemm
...
...
@@ -558,15 +521,15 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
CShuffleDataType
,
CDataType
,
ReduceAccDataType
,
D
DataType
,
D
PtrsGlobal
,
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
,
D
0
ReduceOperation
,
D
1Reduc
eOperation
,
D
1
ElementwiseOperation
,
D
xs
ReduceOperation
,
D
xsInElementwis
eOperation
,
D
xsAcc
ElementwiseOperation
,
InMemoryDataOperationEnum
::
Set
,
In
MemoryDataOperation
Enum
::
AtomicAdd
,
DGlobal
MemoryDataOperation
,
AGridDesc_AK0_M_AK1
,
BGridDesc_BK0_N_BK1
,
CGridDesc_M_N
,
...
...
@@ -607,16 +570,13 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
CReduceThreadVgpr2GlobalCopySrcDstScalarPerVector_MPerBlock
,
LoopSched
>
;
using
Block2CTileMap
=
decltype
(
MakeBlock2CTileMap
(
1
,
CGridDesc_M_N
{},
1
,
1
));
// Argument
struct
Argument
:
public
BaseArgument
{
Argument
(
const
ADataType
*
p_a_grid
,
const
BDataType
*
p_b_grid
,
CDataType
*
p_c_grid
,
DDataType
*
p_d0_grid
,
DDataType
*
p_d1_grid
,
DPtrsGlobal
p_ds_grid
,
index_t
MRaw
,
index_t
NRaw
,
index_t
KRaw
,
...
...
@@ -626,13 +586,13 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CElementwiseOperation
c_element_op
,
D1ElementwiseOperation
d1_element_op
,
DxsInElementwiseOperation
dxs_in_element_op
,
DxsAccElementwiseOperation
dxs_out_element_op
,
index_t
BatchCount
)
:
p_a_grid_
{
p_a_grid
},
p_b_grid_
{
p_b_grid
},
p_c_grid_
{
p_c_grid
},
p_d0_grid_
{
p_d0_grid
},
p_d1_grid_
{
p_d1_grid
},
p_ds_grid_
{
p_ds_grid
},
BatchCount_
(
BatchCount
),
a_grid_desc_ak0_m_ak1_
{
DeviceOp
::
MakeAGridDescriptor_AK0_M_AK1
(
MRaw
,
KRaw
,
StrideA
)},
b_grid_desc_bk0_n_bk1_
{
DeviceOp
::
MakeBGridDescriptor_BK0_N_BK1
(
KRaw
,
NRaw
,
StrideB
)},
...
...
@@ -644,16 +604,18 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
type_convert
<
index_t
>
(
a_grid_desc_ak0_m_ak1_
.
GetElementSpaceSize
()),
type_convert
<
index_t
>
(
b_grid_desc_bk0_n_bk1_
.
GetElementSpaceSize
()),
type_convert
<
index_t
>
(
c_grid_desc_m_n_
.
GetElementSpaceSize
()),
type_convert
<
index_t
>
(
d_grid_desc_m_
.
GetElementSpaceSize
()),
type_convert
<
index_t
>
(
d_grid_desc_m_
.
GetElementSpaceSize
())},
block_2_ctile_map_
{},
block_2_ctile_map_
{
GridwiseGemm
::
MakeDefaultBlock2CTileMap
(
c_grid_desc_m_n_
)
},
a_element_op_
{
a_element_op
},
b_element_op_
{
b_element_op
},
c_element_op_
{
c_element_op
},
d1_element_op_
{
d1_element_op
}
dxs_in_element_op_
{
dxs_in_element_op
},
dxs_out_element_op_
{
dxs_out_element_op
}
{
if
(
GridwiseGemm
::
CheckValidity
(
a_grid_desc_ak0_m_ak1_
,
b_grid_desc_bk0_n_bk1_
,
c_grid_desc_m_n_
))
if
(
GridwiseGemm
::
CheckValidity
(
a_grid_desc_ak0_m_ak1_
,
b_grid_desc_bk0_n_bk1_
,
c_grid_desc_m_n_
,
block_2_ctile_map_
))
{
c_grid_desc_mblock_mperblock_nblock_nperblock_
=
GridwiseGemm
::
MakeCGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
(
...
...
@@ -661,8 +623,6 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
d_grid_desc_mblock_mperblock_
=
GridwiseGemm
::
MakeDGridDescriptor_MBlock_MPerBlock
(
d_grid_desc_m_
);
block_2_ctile_map_
=
MakeBlock2CTileMap
(
BatchCount
,
c_grid_desc_m_n_
,
1
,
1
);
}
}
...
...
@@ -670,8 +630,7 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
const
ADataType
*
p_a_grid_
;
const
BDataType
*
p_b_grid_
;
CDataType
*
p_c_grid_
;
DDataType
*
p_d0_grid_
;
DDataType
*
p_d1_grid_
;
DPtrsGlobal
p_ds_grid_
;
index_t
BatchCount_
;
AGridDesc_AK0_M_AK1
a_grid_desc_ak0_m_ak1_
;
BGridDesc_BK0_N_BK1
b_grid_desc_bk0_n_bk1_
;
...
...
@@ -681,11 +640,12 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
c_grid_desc_mblock_mperblock_nblock_nperblock_
;
typename
GridwiseGemm
::
DGridDescriptor_MBlock_MPerBlock
d_grid_desc_mblock_mperblock_
;
ComputeBasePtrOfStridedBatch
compute_base_ptr_of_batch_
;
Block2CTileMap
block_2_ctile_map_
;
typename
GridwiseGemm
::
Default
Block2CTileMap
block_2_ctile_map_
;
AElementwiseOperation
a_element_op_
;
BElementwiseOperation
b_element_op_
;
CElementwiseOperation
c_element_op_
;
D1ElementwiseOperation
d1_element_op_
;
DxsInElementwiseOperation
dxs_in_element_op_
;
DxsAccElementwiseOperation
dxs_out_element_op_
;
};
// Invoker
...
...
@@ -717,14 +677,16 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
}
#endif
if
(
!
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_m_n_
))
if
(
!
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_m_n_
,
arg
.
block_2_ctile_map_
))
{
throw
std
::
runtime_error
(
"wrong! GridwiseGemm has invalid setting"
);
}
const
index_t
grid_size
=
GridwiseGemm
::
CalculateGridSize
(
arg
.
c_grid_desc_m_n_
)
*
arg
.
BatchCount_
;
arg
.
block_2_ctile_map_
.
CalculateGridSize
(
arg
.
c_grid_desc_m_n_
)
*
arg
.
BatchCount_
;
const
auto
K
=
arg
.
a_grid_desc_ak0_m_ak1_
.
GetLength
(
I0
)
*
arg
.
a_grid_desc_ak0_m_ak1_
.
GetLength
(
I2
);
...
...
@@ -736,17 +698,18 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
GridwiseGemm
,
ADataType
,
// TODO: distiguish A/B datatype
CDataType
,
D
DataType
,
D
PtrsGlobal
,
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
,
D1ElementwiseOperation
,
DxsInElementwiseOperation
,
DxsAccElementwiseOperation
,
DeviceOp
::
AGridDesc_AK0_M_AK1
,
DeviceOp
::
BGridDesc_BK0_N_BK1
,
typename
GridwiseGemm
::
CGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
typename
GridwiseGemm
::
DGridDescriptor_MBlock_MPerBlock
,
ComputeBasePtrOfStridedBatch
,
remove_reference_t
<
Block2CTileMap
>
,
typename
GridwiseGemm
::
Default
Block2CTileMap
,
true
>
;
elapsed_time
=
...
...
@@ -758,13 +721,13 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
arg
.
p_a_grid_
,
arg
.
p_b_grid_
,
arg
.
p_c_grid_
,
arg
.
p_d0_grid_
,
arg
.
p_d1_grid_
,
arg
.
p_ds_grid_
,
arg
.
BatchCount_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
d1_element_op_
,
arg
.
dxs_in_element_op_
,
arg
.
dxs_out_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
...
...
@@ -778,17 +741,18 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
GridwiseGemm
,
ADataType
,
// TODO: distiguish A/B datatype
CDataType
,
D
DataType
,
D
PtrsGlobal
,
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
,
D1ElementwiseOperation
,
DxsInElementwiseOperation
,
DxsAccElementwiseOperation
,
DeviceOp
::
AGridDesc_AK0_M_AK1
,
DeviceOp
::
BGridDesc_BK0_N_BK1
,
typename
GridwiseGemm
::
CGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
typename
GridwiseGemm
::
DGridDescriptor_MBlock_MPerBlock
,
ComputeBasePtrOfStridedBatch
,
remove_reference_t
<
Block2CTileMap
>
,
typename
GridwiseGemm
::
Default
Block2CTileMap
,
false
>
;
elapsed_time
=
...
...
@@ -800,13 +764,13 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
arg
.
p_a_grid_
,
arg
.
p_b_grid_
,
arg
.
p_c_grid_
,
arg
.
p_d0_grid_
,
arg
.
p_d1_grid_
,
arg
.
p_ds_grid_
,
arg
.
BatchCount_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
d1_element_op_
,
arg
.
dxs_in_element_op_
,
arg
.
dxs_out_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
...
...
@@ -834,8 +798,10 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
static
bool
IsSupportedArgument
(
const
Argument
&
arg
)
{
return
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_m_n_
);
return
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_m_n_
,
arg
.
block_2_ctile_map_
);
}
// polymorphic
...
...
@@ -855,8 +821,7 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
static
auto
MakeArgument
(
const
ADataType
*
p_a
,
const
BDataType
*
p_b
,
CDataType
*
p_c
,
DDataType
*
p_d0
,
DDataType
*
p_d1
,
DPtrsGlobal
p_dxs
,
index_t
MRaw
,
index_t
NRaw
,
index_t
KRaw
,
...
...
@@ -866,14 +831,14 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CElementwiseOperation
c_element_op
,
D1ElementwiseOperation
d1_element_op
,
DxsInElementwiseOperation
dxs_in_element_op
,
DxsAccElementwiseOperation
dxs_out_element_op
,
index_t
BatchCount
)
{
return
Argument
{
p_a
,
p_b
,
p_c
,
p_d0
,
p_d1
,
p_dxs
,
MRaw
,
NRaw
,
KRaw
,
...
...
@@ -883,7 +848,8 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
a_element_op
,
b_element_op
,
c_element_op
,
d1_element_op
,
dxs_in_element_op
,
dxs_out_element_op
,
BatchCount
};
}
...
...
@@ -893,8 +859,7 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
std
::
unique_ptr
<
BaseArgument
>
MakeArgumentPointer
(
const
void
*
p_a
,
const
void
*
p_b
,
void
*
p_c
,
void
*
p_d0
,
void
*
p_d1
,
DPtrsGlobal
p_dxs
,
index_t
MRaw
,
index_t
NRaw
,
index_t
KRaw
,
...
...
@@ -904,14 +869,14 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CElementwiseOperation
c_element_op
,
D1ElementwiseOperation
d1_element_op
,
DxsInElementwiseOperation
dxs_in_element_op
,
DxsAccElementwiseOperation
dxs_out_element_op
,
index_t
BatchCount
)
override
{
return
std
::
make_unique
<
Argument
>
(
static_cast
<
const
ADataType
*>
(
p_a
),
static_cast
<
const
BDataType
*>
(
p_b
),
static_cast
<
CDataType
*>
(
p_c
),
static_cast
<
DDataType
*>
(
p_d0
),
static_cast
<
DDataType
*>
(
p_d1
),
p_dxs
,
MRaw
,
NRaw
,
KRaw
,
...
...
@@ -921,7 +886,8 @@ struct DeviceBatchedGemmReduce_Xdl_CShuffle : public DeviceGemmReduce<AElementwi
a_element_op
,
b_element_op
,
c_element_op
,
d1_element_op
,
dxs_in_element_op
,
dxs_out_element_op
,
BatchCount
);
}
...
...
include/ck/tensor_operation/gpu/device/device_batched_gemm_xdl.hpp
View file @
6dfb4e78
...
...
@@ -243,44 +243,6 @@ struct DeviceBatchedGemmXdl
using
BGridDesc_K0_N_K1
=
decltype
(
MakeBGridDescriptor_K0_N_K1
(
1
,
1
,
1
));
using
CGridDesc_M_N
=
decltype
(
MakeCGridDescriptor_M_N
(
1
,
1
,
1
));
static
constexpr
auto
MakeBlock2CTileMap
(
index_t
batch_count
,
const
CGridDesc_M_N
&
c_grid_desc_m_n
,
index_t
M01
,
index_t
N01
)
{
const
auto
M
=
c_grid_desc_m_n
.
GetLength
(
I0
);
const
auto
N
=
c_grid_desc_m_n
.
GetLength
(
I1
);
constexpr
auto
M1
=
Number
<
MPerBlock
>
{};
constexpr
auto
N1
=
Number
<
NPerBlock
>
{};
const
auto
M0
=
M
/
M1
;
const
auto
N0
=
N
/
N1
;
const
auto
M00
=
M0
/
M01
;
const
auto
N00
=
N0
/
N01
;
const
auto
g_m00_m01_n00_n01_to_m0_n0_block_cluster_adaptor
=
make_single_stage_tensor_adaptor
(
make_tuple
(
make_insert_transform
(
batch_count
),
make_unmerge_transform
(
make_tuple
(
M00
,
M01
)),
make_unmerge_transform
(
make_tuple
(
N00
,
N01
))),
make_tuple
(
Sequence
<>
{},
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
,
3
>
{},
Sequence
<
2
,
4
>
{}));
const
auto
globalblockid_to_m00_m01_n00_n01_block_cluster_adaptor
=
make_single_stage_tensor_adaptor
(
make_tuple
(
make_merge_transform
(
make_tuple
(
batch_count
,
M00
,
N00
,
M01
,
N01
))),
make_tuple
(
Sequence
<
0
,
1
,
2
,
3
,
4
>
{}),
make_tuple
(
Sequence
<
0
>
{}));
const
auto
globalblockid_to_m0_n0_block_cluster_adaptor
=
chain_tensor_adaptors
(
g_m00_m01_n00_n01_to_m0_n0_block_cluster_adaptor
,
globalblockid_to_m00_m01_n00_n01_block_cluster_adaptor
);
return
globalblockid_to_m0_n0_block_cluster_adaptor
;
}
struct
ComputePtrOffsetOfStridedBatch
{
ComputePtrOffsetOfStridedBatch
(
index_t
BatchStrideA
,
...
...
@@ -354,7 +316,7 @@ struct DeviceBatchedGemmXdl
using
CGridDesc_M0_N0_M1_N1_M2_M3_M4_N2
=
decltype
(
GridwiseGemm
::
MakeCGridDescriptor_M0_N0_M1_N1_M2_M3_M4_N2
(
CGridDesc_M_N
{}));
using
Block2CTileMap
=
decltype
(
MakeBlock2CTileMap
(
1
,
CGridDesc_M_N
{},
1
,
1
))
;
using
Block2CTileMap
=
typename
GridwiseGemm
::
DefaultBlock2CTileMap
;
// Argument
struct
Argument
:
public
BaseArgument
...
...
@@ -388,20 +350,21 @@ struct DeviceBatchedGemmXdl
type_convert
<
index_t
>
(
a_grid_desc_k0_m_k1_
.
GetElementSpaceSize
()),
type_convert
<
index_t
>
(
b_grid_desc_k0_n_k1_
.
GetElementSpaceSize
()),
type_convert
<
index_t
>
(
c_grid_desc_m_n_
.
GetElementSpaceSize
())},
block_2_ctile_map_
{},
block_2_ctile_map_
{
GridwiseGemm
::
MakeDefaultBlock2CTileMap
(
c_grid_desc_m_n_
,
M01
,
N01
)},
M01_
{
M01
},
N01_
{
N01
},
a_element_op_
{
a_element_op
},
b_element_op_
{
b_element_op
},
c_element_op_
{
c_element_op
}
{
if
(
GridwiseGemm
::
CheckValidity
(
a_grid_desc_k0_m_k1_
,
b_grid_desc_k0_n_k1_
,
c_grid_desc_m_n_
,
M01_
,
N01_
))
if
(
GridwiseGemm
::
CheckValidity
(
a_grid_desc_k0_m_k1_
,
b_grid_desc_k0_n_k1_
,
c_grid_desc_m_n_
,
block_2_ctile_map_
))
{
c_grid_desc_m0_n0_m1_n1_m2_m3_m4_n2_
=
GridwiseGemm
::
MakeCGridDescriptor_M0_N0_M1_N1_M2_M3_M4_N2
(
c_grid_desc_m_n_
);
block_2_ctile_map_
=
MakeBlock2CTileMap
(
BatchCount
,
c_grid_desc_m_n_
,
M01
,
N01
);
}
}
...
...
@@ -446,15 +409,14 @@ struct DeviceBatchedGemmXdl
if
(
!
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_k0_m_k1_
,
arg
.
b_grid_desc_k0_n_k1_
,
arg
.
c_grid_desc_m_n_
,
arg
.
M01_
,
arg
.
N01_
))
arg
.
block_2_ctile_map_
))
{
throw
std
::
runtime_error
(
"wrong! GridwiseBatchedGemm_km_kn_m0m1n0n1_xdlops_v2r3 has invalid setting"
);
}
const
index_t
grid_size
=
GridwiseGemm
::
CalculateGridSize
(
arg
.
c_grid_desc_m_n_
)
*
arg
.
BatchCount_
;
arg
.
block_2_ctile_map_
.
CalculateGridSize
(
arg
.
c_grid_desc_m_n_
)
*
arg
.
BatchCount_
;
const
auto
K
=
arg
.
a_grid_desc_k0_m_k1_
.
GetLength
(
I0
)
*
arg
.
a_grid_desc_k0_m_k1_
.
GetLength
(
I2
);
...
...
@@ -552,8 +514,7 @@ struct DeviceBatchedGemmXdl
return
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_k0_m_k1_
,
arg
.
b_grid_desc_k0_n_k1_
,
arg
.
c_grid_desc_m_n_
,
arg
.
M01_
,
arg
.
N01_
);
arg
.
block_2_ctile_map_
);
}
// polymorphic
...
...
include/ck/tensor_operation/gpu/device/device_binary_elementwise.hpp
0 → 100644
View file @
6dfb4e78
#pragma once
#include <iostream>
#include <vector>
#include "device.hpp"
#include "device_base.hpp"
#include "gridwise_binary_elementwise_1d.hpp"
namespace
ck
{
namespace
tensor_operation
{
namespace
device
{
template
<
typename
ADataType
,
typename
BDataType
,
typename
CDataType
,
typename
ComputeDataType
,
typename
ElementwiseFunctor
,
index_t
NDim
,
index_t
MPerThread
,
index_t
AScalarPerVector
,
index_t
BScalarPerVector
,
index_t
CScalarPerVector
>
struct
DeviceBinaryElementwise
:
public
BaseOperator
{
static
constexpr
auto
I0
=
Number
<
0
>
{};
template
<
typename
Desc_M
>
static
auto
PadDescriptor_M_1d
(
Desc_M
desc_m
,
index_t
gridSize
,
index_t
blockSize
)
{
const
auto
M
=
desc_m
.
GetLength
(
I0
);
const
index_t
loop_step
=
gridSize
*
blockSize
*
MPerThread
;
const
auto
pad
=
math
::
integer_least_multiple
(
M
,
loop_step
)
-
M
;
const
auto
desc_m_pad
=
transform_tensor_descriptor
(
desc_m
,
make_tuple
(
make_right_pad_transform
(
M
,
pad
)),
make_tuple
(
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
>
{}));
return
desc_m_pad
;
}
static
auto
MakeDescriptor_M
(
const
std
::
vector
<
index_t
>&
lengths
,
const
std
::
vector
<
index_t
>&
strides
,
index_t
gridSize
,
index_t
blockSize
)
{
auto
tupleOfShape
=
generate_tuple
([
&
](
auto
I
)
{
return
lengths
[
I
];
},
Number
<
NDim
>
{});
auto
tupleOfStride
=
generate_tuple
([
&
](
auto
I
)
{
return
strides
[
I
];
},
Number
<
NDim
>
{});
// nd desc - [s0, s1, s2, ...]
const
auto
desc
=
make_naive_tensor_descriptor
(
tupleOfShape
,
tupleOfStride
);
// merge nd to 1d desc - [s0 * s1 * ...]
if
constexpr
(
NDim
>
1
)
{
const
auto
desc_m
=
transform_tensor_descriptor
(
desc
,
make_tuple
(
make_merge_transform
(
tupleOfShape
)),
make_tuple
(
generate_sequence_v2
([
&
](
auto
I
)
{
return
I
;
},
Number
<
NDim
>
{})),
make_tuple
(
Sequence
<
0
>
{}));
return
PadDescriptor_M_1d
(
desc_m
,
gridSize
,
blockSize
);
}
else
return
PadDescriptor_M_1d
(
desc
,
gridSize
,
blockSize
);
}
using
AGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
BGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
CGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
using
GridwiseBinEltwise
=
GridwiseBinaryElementwise_1D
<
ADataType
,
BDataType
,
CDataType
,
ComputeDataType
,
AGridDesc_M
,
BGridDesc_M
,
CGridDesc_M
,
ElementwiseFunctor
,
MPerThread
,
AScalarPerVector
,
BScalarPerVector
,
CScalarPerVector
>
;
struct
Argument
:
public
BaseArgument
{
Argument
(
const
ADataType
*
p_a
,
const
BDataType
*
p_b
,
CDataType
*
p_c
,
const
std
::
vector
<
index_t
>&
lengths
,
const
std
::
vector
<
index_t
>&
a_strides
,
const
std
::
vector
<
index_t
>&
b_strides
,
const
std
::
vector
<
index_t
>&
c_strides
,
ElementwiseFunctor
functor
)
:
p_a_
(
p_a
),
p_b_
(
p_b
),
p_c_
(
p_c
),
lengths_
(
lengths
),
a_strides_
(
a_strides
),
b_strides_
(
b_strides
),
c_strides_
(
c_strides
),
functor_
(
functor
),
blockSize_
(
256
),
gridSize_
(
120
)
// FIXME - Calculate the grid size by number of CU in the future
{
a_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
a_strides
,
gridSize_
,
blockSize_
);
b_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
b_strides
,
gridSize_
,
blockSize_
);
c_grid_desc_m_
=
MakeDescriptor_M
(
lengths
,
c_strides
,
gridSize_
,
blockSize_
);
}
const
ADataType
*
p_a_
;
const
BDataType
*
p_b_
;
CDataType
*
p_c_
;
std
::
vector
<
int
>
lengths_
;
AGridDesc_M
a_grid_desc_m_
;
BGridDesc_M
b_grid_desc_m_
;
CGridDesc_M
c_grid_desc_m_
;
std
::
vector
<
index_t
>
a_strides_
;
std
::
vector
<
index_t
>
b_strides_
;
std
::
vector
<
index_t
>
c_strides_
;
ElementwiseFunctor
functor_
;
index_t
blockSize_
;
index_t
gridSize_
;
};
struct
Invoker
:
public
BaseInvoker
{
float
Run
(
const
Argument
&
arg
,
const
StreamConfig
&
stream_config
=
StreamConfig
{})
{
const
auto
kernel
=
kernel_binary_elementwise_1d
<
GridwiseBinEltwise
,
ADataType
,
BDataType
,
CDataType
,
AGridDesc_M
,
BGridDesc_M
,
CGridDesc_M
,
ElementwiseFunctor
>
;
float
elapsed_time
=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
arg
.
gridSize_
),
dim3
(
arg
.
blockSize_
),
0
,
arg
.
p_a_
,
arg
.
p_b_
,
arg
.
p_c_
,
arg
.
a_grid_desc_m_
,
arg
.
b_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
arg
.
functor_
);
return
elapsed_time
;
}
// polymorphic
float
Run
(
const
BaseArgument
*
p_arg
,
const
StreamConfig
&
stream_config
=
StreamConfig
{})
override
{
return
Run
(
*
dynamic_cast
<
const
Argument
*>
(
p_arg
),
stream_config
);
}
};
bool
IsSupportedArgument
(
const
BaseArgument
*
p_arg
)
override
{
const
Argument
*
pArg
=
dynamic_cast
<
const
Argument
*>
(
p_arg
);
if
(
pArg
==
nullptr
)
return
false
;
if
(
pArg
->
lengths_
.
size
()
!=
NDim
)
return
false
;
if
(
pArg
->
lengths_
.
back
()
%
MPerThread
!=
0
)
return
false
;
auto
IsScalarPerVectorValid
=
[](
bool
isLastDimensionCoalesced
,
int
scalarPerVector
)
{
bool
ret
=
true
;
if
(
!
isLastDimensionCoalesced
)
ret
=
scalarPerVector
==
1
;
else
ret
=
MPerThread
%
scalarPerVector
==
0
;
return
ret
;
};
if
(
!
IsScalarPerVectorValid
(
pArg
->
a_strides_
.
back
()
==
1
,
AScalarPerVector
))
return
false
;
if
(
!
IsScalarPerVectorValid
(
pArg
->
b_strides_
.
back
()
==
1
,
BScalarPerVector
))
return
false
;
if
(
!
IsScalarPerVectorValid
(
pArg
->
c_strides_
.
back
()
==
1
,
CScalarPerVector
))
return
false
;
return
true
;
};
std
::
unique_ptr
<
BaseArgument
>
MakeArgumentPointer
(
const
void
*
p_a
,
const
void
*
p_b
,
void
*
p_c
,
std
::
vector
<
index_t
>
lengths
,
std
::
vector
<
index_t
>
a_strides
,
std
::
vector
<
index_t
>
b_strides
,
std
::
vector
<
index_t
>
c_strides
,
ElementwiseFunctor
functor
)
{
return
std
::
make_unique
<
Argument
>
(
static_cast
<
const
ADataType
*>
(
p_a
),
static_cast
<
const
BDataType
*>
(
p_b
),
static_cast
<
CDataType
*>
(
p_c
),
lengths
,
a_strides
,
b_strides
,
c_strides
,
functor
);
}
std
::
unique_ptr
<
BaseInvoker
>
MakeInvokerPointer
()
{
return
std
::
make_unique
<
Invoker
>
();
}
std
::
string
GetTypeString
()
const
override
{
auto
str
=
std
::
stringstream
();
// clang-format off
str
<<
"DeviceBinaryElementwise"
<<
"<"
<<
"MPerThread = "
<<
MPerThread
<<
">"
;
// clang-format on
return
str
.
str
();
}
};
}
// namespace device
}
// namespace tensor_operation
}
// namespace ck
include/ck/tensor_operation/gpu/device/device_cgemm.hpp
0 → 100644
View file @
6dfb4e78
/*******************************************************************************
*
* MIT License
*
* Copyright (c) 2022 Advanced Micro Devices, Inc.
*
* Permission is hereby granted, free of charge, to any person obtaining a copy
* of this software and associated documentation files (the "Software"), to deal
* in the Software without restriction, including without limitation the rights
* to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
* copies of the Software, and to permit persons to whom the Software is
* furnished to do so, subject to the following conditions:
*
* The above copyright notice and this permission notice shall be included in all
* copies or substantial portions of the Software.
*
* THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
* IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
* FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
* AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
* LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
* OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
* SOFTWARE.
*
*******************************************************************************/
#pragma once
#include "device_base.hpp"
namespace
ck
{
namespace
tensor_operation
{
namespace
device
{
template
<
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CElementwiseOperation
>
struct
DeviceCGemm
:
public
BaseOperator
{
virtual
std
::
unique_ptr
<
BaseArgument
>
MakeArgumentPointer
(
const
void
*
p_a_real
,
const
void
*
p_a_imag
,
const
void
*
p_b_real
,
const
void
*
p_b_imag
,
void
*
p_c_real
,
void
*
p_c_imag
,
void
*
p_workspace
,
ck
::
index_t
M
,
ck
::
index_t
N
,
ck
::
index_t
K
,
ck
::
index_t
StrideA
,
ck
::
index_t
StrideB
,
ck
::
index_t
StrideC
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CElementwiseOperation
c_element_op
,
ck
::
index_t
KBatch
=
1
)
=
0
;
virtual
std
::
unique_ptr
<
BaseInvoker
>
MakeInvokerPointer
()
=
0
;
virtual
std
::
size_t
GetWorkspaceSize
(
index_t
MRaw
,
index_t
NRaw
,
index_t
KRaw
,
index_t
StrideA
,
index_t
StrideB
,
index_t
StrideC
)
=
0
;
};
template
<
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CElementwiseOperation
>
using
DeviceCGemmPtr
=
std
::
unique_ptr
<
DeviceCGemm
<
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
>>
;
}
// namespace device
}
// namespace tensor_operation
}
// namespace ck
include/ck/tensor_operation/gpu/device/device_cgemm_4gemm_xdl_cshuffle.hpp
0 → 100644
View file @
6dfb4e78
/*******************************************************************************
*
* MIT License
*
* Copyright (c) 2022 Advanced Micro Devices, Inc.
*
* Permission is hereby granted, free of charge, to any person obtaining a copy
* of this software and associated documentation files (the "Software"), to deal
* in the Software without restriction, including without limitation the rights
* to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
* copies of the Software, and to permit persons to whom the Software is
* furnished to do so, subject to the following conditions:
*
* The above copyright notice and this permission notice shall be included in all
* copies or substantial portions of the Software.
*
* THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
* IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
* FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
* AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
* LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
* OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
* SOFTWARE.
*
*******************************************************************************/
#pragma once
#include <iostream>
#include <sstream>
#include "device.hpp"
#include "device_gemm.hpp"
#include "device_cgemm.hpp"
#include "common_header.hpp"
#include "tensor_layout.hpp"
#include "tensor_descriptor.hpp"
#include "tensor_descriptor_helper.hpp"
#include "gridwise_gemm_xdl_cshuffle_v1.hpp"
#include "binary_element_wise_operation.hpp"
#include "gridwise_binary_elementwise_1d.hpp"
#include "tensor_operation/gpu/device/gemm_specialization.hpp"
namespace
ck
{
namespace
tensor_operation
{
namespace
device
{
template
<
typename
ALayout
,
typename
BLayout
,
typename
CLayout
,
typename
ADataType
,
typename
BDataType
,
typename
CDataType
,
typename
GemmAccDataType
,
typename
CShuffleDataType
,
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CElementwiseOperation
,
GemmSpecialization
GemmSpec
,
index_t
NumGemmKPrefetchStage
,
index_t
BlockSize
,
index_t
MPerBlock
,
index_t
NPerBlock
,
index_t
KPerBlock
,
index_t
AK1
,
index_t
BK1
,
index_t
MPerXDL
,
index_t
NPerXDL
,
index_t
MXdlPerWave
,
index_t
NXdlPerWave
,
typename
ABlockTransferThreadClusterLengths_AK0_M_AK1
,
typename
ABlockTransferThreadClusterArrangeOrder
,
typename
ABlockTransferSrcAccessOrder
,
index_t
ABlockTransferSrcVectorDim
,
index_t
ABlockTransferSrcScalarPerVector
,
index_t
ABlockTransferDstScalarPerVector_AK1
,
bool
ABlockLdsExtraM
,
typename
BBlockTransferThreadClusterLengths_BK0_N_BK1
,
typename
BBlockTransferThreadClusterArrangeOrder
,
typename
BBlockTransferSrcAccessOrder
,
index_t
BBlockTransferSrcVectorDim
,
index_t
BBlockTransferSrcScalarPerVector
,
index_t
BBlockTransferDstScalarPerVector_BK1
,
bool
BBlockLdsExtraN
,
index_t
CShuffleMXdlPerWavePerShuffle
,
index_t
CShuffleNXdlPerWavePerShuffle
,
typename
CShuffleBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
,
index_t
CShuffleBlockTransferScalarPerVector_NPerBlock
,
LoopScheduler
LoopSched
=
make_default_loop_scheduler
(),
enable_if_t
<
is_same_v
<
AElementwiseOperation
,
ck
::
tensor_operation
::
element_wise
::
PassThrough
>
&&
is_same_v
<
BElementwiseOperation
,
ck
::
tensor_operation
::
element_wise
::
PassThrough
>
&&
is_same_v
<
CElementwiseOperation
,
ck
::
tensor_operation
::
element_wise
::
PassThrough
>
,
bool
>
=
false
>
struct
DeviceCGemm_4Gemm_Xdl_CShuffle
:
public
DeviceCGemm
<
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
>
{
using
DeviceOp
=
DeviceCGemm_4Gemm_Xdl_CShuffle
;
static
constexpr
auto
I0
=
Number
<
0
>
{};
static
constexpr
auto
I1
=
Number
<
1
>
{};
static
constexpr
auto
I2
=
Number
<
2
>
{};
static
constexpr
auto
MPerThread
=
Number
<
4
>
{};
static
constexpr
auto
AScalarPerVector
=
Number
<
4
>
{};
static
constexpr
auto
BScalarPerVector
=
Number
<
4
>
{};
static
constexpr
auto
CScalarPerVector
=
Number
<
4
>
{};
template
<
typename
Desc_M
>
static
auto
PadDescriptor_M_1d
(
Desc_M
desc_m
,
index_t
gridSize
,
index_t
blockSize
)
{
const
auto
M
=
desc_m
.
GetLength
(
I0
);
const
index_t
loop_step
=
gridSize
*
blockSize
*
MPerThread
;
const
auto
pad
=
math
::
integer_least_multiple
(
M
,
loop_step
)
-
M
;
const
auto
desc_m_pad
=
transform_tensor_descriptor
(
desc_m
,
make_tuple
(
make_right_pad_transform
(
M
,
pad
)),
make_tuple
(
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
>
{}));
return
desc_m_pad
;
}
static
auto
MakeDescriptor_M
(
const
std
::
vector
<
index_t
>&
lengths
,
const
std
::
vector
<
index_t
>&
strides
,
index_t
gridSize
,
index_t
blockSize
)
{
auto
tupleOfShape
=
generate_tuple
([
&
](
auto
I
)
{
return
lengths
[
I
];
},
Number
<
2
>
{});
auto
tupleOfStride
=
generate_tuple
([
&
](
auto
I
)
{
return
strides
[
I
];
},
Number
<
2
>
{});
// nd desc - [s0, s1, s2, ...]
const
auto
desc
=
make_naive_tensor_descriptor
(
tupleOfShape
,
tupleOfStride
);
const
auto
desc_m
=
transform_tensor_descriptor
(
desc
,
make_tuple
(
make_merge_transform
(
tupleOfShape
)),
make_tuple
(
generate_sequence_v2
([
&
](
auto
I
)
{
return
I
;
},
Number
<
2
>
{})),
make_tuple
(
Sequence
<
0
>
{}));
return
PadDescriptor_M_1d
(
desc_m
,
gridSize
,
blockSize
);
}
static
auto
MakeAGridDescriptor_AK0_M_AK1
(
index_t
MRaw
,
index_t
KRaw
,
index_t
StrideA
)
{
const
auto
a_grid_desc_mraw_kraw
=
[
&
]()
{
if
constexpr
(
is_same_v
<
tensor_layout
::
gemm
::
RowMajor
,
ALayout
>
)
{
return
make_naive_tensor_descriptor
(
make_tuple
(
MRaw
,
KRaw
),
make_tuple
(
StrideA
,
I1
));
}
else
if
constexpr
(
is_same_v
<
tensor_layout
::
gemm
::
ColumnMajor
,
ALayout
>
)
{
return
make_naive_tensor_descriptor
(
make_tuple
(
MRaw
,
KRaw
),
make_tuple
(
I1
,
StrideA
));
}
}();
const
auto
M
=
math
::
integer_divide_ceil
(
MRaw
,
MPerBlock
)
*
MPerBlock
;
const
auto
K
=
math
::
integer_divide_ceil
(
KRaw
,
KPerBlock
)
*
KPerBlock
;
const
auto
MPad
=
M
-
MRaw
;
const
auto
KPad
=
K
-
KRaw
;
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
MKPadding
||
GemmSpec
==
GemmSpecialization
::
MNKPadding
)
{
// pad both M and K
assert
(
K
%
AK1
==
0
);
const
auto
AK0
=
K
/
AK1
;
const
auto
a_grid_desc_m_k
=
transform_tensor_descriptor
(
a_grid_desc_mraw_kraw
,
make_tuple
(
make_right_pad_transform
(
MRaw
,
MPad
),
make_right_pad_transform
(
KRaw
,
KPad
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
const
auto
a_grid_desc_ak0_m_ak1
=
transform_tensor_descriptor
(
a_grid_desc_m_k
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
AK0
,
AK1
)),
make_pass_through_transform
(
M
)),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
,
2
>
{},
Sequence
<
1
>
{}));
return
a_grid_desc_ak0_m_ak1
;
}
else
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
MPadding
||
GemmSpec
==
GemmSpecialization
::
MNPadding
)
{
// pad M, but not K
assert
(
KRaw
%
AK1
==
0
);
const
auto
AK0
=
KRaw
/
AK1
;
const
auto
a_grid_desc_ak0_m_ak1
=
transform_tensor_descriptor
(
a_grid_desc_mraw_kraw
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
AK0
,
AK1
)),
make_right_pad_transform
(
MRaw
,
MPad
)),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
,
2
>
{},
Sequence
<
1
>
{}));
return
a_grid_desc_ak0_m_ak1
;
}
else
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
KPadding
||
GemmSpec
==
GemmSpecialization
::
NKPadding
)
{
// pad K, but not M
assert
(
K
%
AK1
==
0
);
const
auto
AK0
=
K
/
AK1
;
const
auto
a_grid_desc_m_k
=
transform_tensor_descriptor
(
a_grid_desc_mraw_kraw
,
make_tuple
(
make_pass_through_transform
(
MRaw
),
make_right_pad_transform
(
KRaw
,
KPad
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
const
auto
a_grid_desc_ak0_m_ak1
=
transform_tensor_descriptor
(
a_grid_desc_m_k
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
AK0
,
AK1
)),
make_pass_through_transform
(
MRaw
)),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
,
2
>
{},
Sequence
<
1
>
{}));
return
a_grid_desc_ak0_m_ak1
;
}
else
{
// not pad M or K
assert
(
KRaw
%
AK1
==
0
);
const
auto
AK0
=
KRaw
/
AK1
;
const
auto
a_grid_desc_ak0_m_ak1
=
transform_tensor_descriptor
(
a_grid_desc_mraw_kraw
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
AK0
,
AK1
)),
make_pass_through_transform
(
MRaw
)),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
,
2
>
{},
Sequence
<
1
>
{}));
return
a_grid_desc_ak0_m_ak1
;
}
}
static
auto
MakeBGridDescriptor_BK0_N_BK1
(
index_t
KRaw
,
index_t
NRaw
,
index_t
StrideB
)
{
const
auto
b_grid_desc_nraw_kraw
=
[
&
]()
{
if
constexpr
(
is_same
<
tensor_layout
::
gemm
::
RowMajor
,
BLayout
>::
value
)
{
return
make_naive_tensor_descriptor
(
make_tuple
(
NRaw
,
KRaw
),
make_tuple
(
I1
,
StrideB
));
}
else
if
constexpr
(
is_same
<
tensor_layout
::
gemm
::
ColumnMajor
,
BLayout
>::
value
)
{
return
make_naive_tensor_descriptor
(
make_tuple
(
NRaw
,
KRaw
),
make_tuple
(
StrideB
,
I1
));
}
}();
const
auto
N
=
math
::
integer_divide_ceil
(
NRaw
,
NPerBlock
)
*
NPerBlock
;
const
auto
K
=
math
::
integer_divide_ceil
(
KRaw
,
KPerBlock
)
*
KPerBlock
;
const
auto
NPad
=
N
-
NRaw
;
const
auto
KPad
=
K
-
KRaw
;
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
NKPadding
||
GemmSpec
==
GemmSpecialization
::
MNKPadding
)
{
// pad both N and K
assert
(
K
%
BK1
==
0
);
const
auto
BK0
=
K
/
BK1
;
const
auto
b_grid_desc_n_k
=
transform_tensor_descriptor
(
b_grid_desc_nraw_kraw
,
make_tuple
(
make_right_pad_transform
(
NRaw
,
NPad
),
make_right_pad_transform
(
KRaw
,
KPad
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
const
auto
b_grid_desc_bk0_n_bk1
=
transform_tensor_descriptor
(
b_grid_desc_n_k
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
BK0
,
BK1
)),
make_pass_through_transform
(
N
)),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
,
2
>
{},
Sequence
<
1
>
{}));
return
b_grid_desc_bk0_n_bk1
;
}
else
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
NPadding
||
GemmSpec
==
GemmSpecialization
::
MNPadding
)
{
// pad N, but not K
assert
(
KRaw
%
BK1
==
0
);
const
auto
BK0
=
KRaw
/
BK1
;
const
auto
b_grid_desc_bk0_n_bk1
=
transform_tensor_descriptor
(
b_grid_desc_nraw_kraw
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
BK0
,
BK1
)),
make_right_pad_transform
(
NRaw
,
NPad
)),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
,
2
>
{},
Sequence
<
1
>
{}));
return
b_grid_desc_bk0_n_bk1
;
}
else
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
KPadding
||
GemmSpec
==
GemmSpecialization
::
MKPadding
)
{
// pad K, but not N
assert
(
K
%
BK1
==
0
);
const
auto
BK0
=
K
/
BK1
;
const
auto
b_grid_desc_n_k
=
transform_tensor_descriptor
(
b_grid_desc_nraw_kraw
,
make_tuple
(
make_pass_through_transform
(
NRaw
),
make_right_pad_transform
(
KRaw
,
KPad
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
const
auto
b_grid_desc_bk0_n_bk1
=
transform_tensor_descriptor
(
b_grid_desc_n_k
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
BK0
,
BK1
)),
make_pass_through_transform
(
NRaw
)),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
,
2
>
{},
Sequence
<
1
>
{}));
return
b_grid_desc_bk0_n_bk1
;
}
else
{
// not pad N or K
assert
(
KRaw
%
BK1
==
0
);
const
auto
BK0
=
KRaw
/
BK1
;
const
auto
b_grid_desc_bk0_n_bk1
=
transform_tensor_descriptor
(
b_grid_desc_nraw_kraw
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
BK0
,
BK1
)),
make_pass_through_transform
(
NRaw
)),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}),
make_tuple
(
Sequence
<
0
,
2
>
{},
Sequence
<
1
>
{}));
return
b_grid_desc_bk0_n_bk1
;
}
}
static
auto
MakeCGridDescriptor_M_N
(
index_t
MRaw
,
index_t
NRaw
,
index_t
StrideC
)
{
const
auto
c_grid_desc_mraw_nraw
=
[
&
]()
{
if
constexpr
(
is_same
<
tensor_layout
::
gemm
::
RowMajor
,
CLayout
>::
value
)
{
return
make_naive_tensor_descriptor
(
make_tuple
(
MRaw
,
NRaw
),
make_tuple
(
StrideC
,
I1
));
}
else
if
constexpr
(
is_same
<
tensor_layout
::
gemm
::
ColumnMajor
,
CLayout
>::
value
)
{
return
make_naive_tensor_descriptor
(
make_tuple
(
MRaw
,
NRaw
),
make_tuple
(
I1
,
StrideC
));
}
}();
const
auto
M
=
math
::
integer_divide_ceil
(
MRaw
,
MPerBlock
)
*
MPerBlock
;
const
auto
N
=
math
::
integer_divide_ceil
(
NRaw
,
NPerBlock
)
*
NPerBlock
;
const
auto
MPad
=
M
-
MRaw
;
const
auto
NPad
=
N
-
NRaw
;
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
MNPadding
||
GemmSpec
==
GemmSpecialization
::
MNKPadding
)
{
// pad M and N
return
transform_tensor_descriptor
(
c_grid_desc_mraw_nraw
,
make_tuple
(
make_right_pad_transform
(
MRaw
,
MPad
),
make_right_pad_transform
(
NRaw
,
NPad
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
}
else
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
MPadding
||
GemmSpec
==
GemmSpecialization
::
MKPadding
)
{
// pad M, but not N
return
transform_tensor_descriptor
(
c_grid_desc_mraw_nraw
,
make_tuple
(
make_right_pad_transform
(
MRaw
,
MPad
),
make_pass_through_transform
(
NRaw
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
}
else
if
constexpr
(
GemmSpec
==
GemmSpecialization
::
NPadding
||
GemmSpec
==
GemmSpecialization
::
NKPadding
)
{
// pad N, but not M
return
transform_tensor_descriptor
(
c_grid_desc_mraw_nraw
,
make_tuple
(
make_pass_through_transform
(
MRaw
),
make_right_pad_transform
(
NRaw
,
NPad
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
}
else
{
// not pad M or N
return
c_grid_desc_mraw_nraw
;
}
}
using
AGridDesc_AK0_M_AK1
=
decltype
(
MakeAGridDescriptor_AK0_M_AK1
(
1
,
1
,
1
));
using
BGridDesc_BK0_N_BK1
=
decltype
(
MakeBGridDescriptor_BK0_N_BK1
(
1
,
1
,
1
));
using
CGridDesc_M_N
=
decltype
(
MakeCGridDescriptor_M_N
(
1
,
1
,
1
));
using
CGridDesc_M
=
decltype
(
MakeDescriptor_M
({
1
,
1
},
{
1
,
1
},
1
,
1
));
// GridwiseGemm
using
GridwiseGemm
=
GridwiseGemm_k0mk1_k0nk1_mn_xdl_cshuffle_v1
<
ADataType
,
// TODO: distinguish A/B datatype
GemmAccDataType
,
CShuffleDataType
,
CDataType
,
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
,
InMemoryDataOperationEnum
::
Set
,
AGridDesc_AK0_M_AK1
,
BGridDesc_BK0_N_BK1
,
CGridDesc_M_N
,
NumGemmKPrefetchStage
,
BlockSize
,
MPerBlock
,
NPerBlock
,
KPerBlock
,
AK1
,
BK1
,
MPerXDL
,
NPerXDL
,
MXdlPerWave
,
NXdlPerWave
,
ABlockTransferThreadClusterLengths_AK0_M_AK1
,
ABlockTransferThreadClusterArrangeOrder
,
ABlockTransferSrcAccessOrder
,
ABlockTransferSrcVectorDim
,
ABlockTransferSrcScalarPerVector
,
ABlockTransferDstScalarPerVector_AK1
,
false
,
ABlockLdsExtraM
,
BBlockTransferThreadClusterLengths_BK0_N_BK1
,
BBlockTransferThreadClusterArrangeOrder
,
BBlockTransferSrcAccessOrder
,
BBlockTransferSrcVectorDim
,
BBlockTransferSrcScalarPerVector
,
BBlockTransferDstScalarPerVector_BK1
,
false
,
BBlockLdsExtraN
,
CShuffleMXdlPerWavePerShuffle
,
CShuffleNXdlPerWavePerShuffle
,
CShuffleBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
,
CShuffleBlockTransferScalarPerVector_NPerBlock
,
LoopSched
>
;
// Argument
struct
Argument
:
public
BaseArgument
{
Argument
(
const
ADataType
*
p_a_grid_real
,
const
ADataType
*
p_a_grid_imag
,
const
BDataType
*
p_b_grid_real
,
const
BDataType
*
p_b_grid_imag
,
CDataType
*
p_c_grid_real
,
CDataType
*
p_c_grid_imag
,
CDataType
*
p_workspace
,
index_t
MRaw
,
index_t
NRaw
,
index_t
KRaw
,
index_t
StrideA
,
index_t
StrideB
,
index_t
StrideC
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CElementwiseOperation
c_element_op
)
:
p_a_grid_real_
{
p_a_grid_real
},
p_a_grid_imag_
{
p_a_grid_imag
},
p_b_grid_real_
{
p_b_grid_real
},
p_b_grid_imag_
{
p_b_grid_imag
},
p_c_grid_real_
{
p_c_grid_real
},
p_c_grid_imag_
{
p_c_grid_imag
},
p_aux_grid_
{
p_workspace
},
a_grid_desc_ak0_m_ak1_
{
DeviceOp
::
MakeAGridDescriptor_AK0_M_AK1
(
MRaw
,
KRaw
,
StrideA
)},
b_grid_desc_bk0_n_bk1_
{
DeviceOp
::
MakeBGridDescriptor_BK0_N_BK1
(
KRaw
,
NRaw
,
StrideB
)},
c_grid_desc_m_n_
{
DeviceOp
::
MakeCGridDescriptor_M_N
(
MRaw
,
NRaw
,
StrideC
)},
c_grid_desc_mblock_mperblock_nblock_nperblock_
{},
block_2_ctile_map_
{
GridwiseGemm
::
MakeDefaultBlock2CTileMap
(
c_grid_desc_m_n_
)},
a_element_op_
{
a_element_op
},
b_element_op_
{
b_element_op
},
c_element_op_
{
c_element_op
}
{
if
(
GridwiseGemm
::
CheckValidity
(
a_grid_desc_ak0_m_ak1_
,
b_grid_desc_bk0_n_bk1_
,
c_grid_desc_m_n_
,
block_2_ctile_map_
))
{
c_grid_desc_mblock_mperblock_nblock_nperblock_
=
GridwiseGemm
::
MakeCGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
(
c_grid_desc_m_n_
);
}
const
index_t
grid_size
=
block_2_ctile_map_
.
CalculateGridSize
(
c_grid_desc_m_n_
);
if
constexpr
(
is_same
<
tensor_layout
::
gemm
::
RowMajor
,
CLayout
>::
value
)
{
c_grid_desc_m_
=
DeviceOp
::
MakeDescriptor_M
({
MRaw
,
NRaw
},
{
StrideC
,
I1
},
grid_size
,
BlockSize
);
}
else
if
constexpr
(
is_same
<
tensor_layout
::
gemm
::
ColumnMajor
,
CLayout
>::
value
)
{
c_grid_desc_m_
=
DeviceOp
::
MakeDescriptor_M
({
MRaw
,
NRaw
},
{
I1
,
StrideC
},
grid_size
,
BlockSize
);
}
p_aux_2_grid_
=
p_workspace
+
c_grid_desc_m_n_
.
GetElementSpaceSize
();
}
// private:
const
ADataType
*
p_a_grid_real_
;
const
ADataType
*
p_a_grid_imag_
;
const
BDataType
*
p_b_grid_real_
;
const
BDataType
*
p_b_grid_imag_
;
CDataType
*
p_c_grid_real_
;
CDataType
*
p_c_grid_imag_
;
CDataType
*
p_aux_grid_
;
CDataType
*
p_aux_2_grid_
;
AGridDesc_AK0_M_AK1
a_grid_desc_ak0_m_ak1_
;
BGridDesc_BK0_N_BK1
b_grid_desc_bk0_n_bk1_
;
CGridDesc_M_N
c_grid_desc_m_n_
;
CGridDesc_M
c_grid_desc_m_
;
typename
GridwiseGemm
::
CGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
c_grid_desc_mblock_mperblock_nblock_nperblock_
;
typename
GridwiseGemm
::
DefaultBlock2CTileMap
block_2_ctile_map_
;
AElementwiseOperation
a_element_op_
;
BElementwiseOperation
b_element_op_
;
CElementwiseOperation
c_element_op_
;
};
// Invoker
struct
Invoker
:
public
BaseInvoker
{
using
Argument
=
DeviceOp
::
Argument
;
float
Run
(
const
Argument
&
arg
,
const
StreamConfig
&
stream_config
=
StreamConfig
{})
{
if
(
!
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_m_n_
,
arg
.
block_2_ctile_map_
))
{
throw
std
::
runtime_error
(
"wrong! GridwiseGemm has invalid setting"
);
}
const
index_t
grid_size
=
arg
.
block_2_ctile_map_
.
CalculateGridSize
(
arg
.
c_grid_desc_m_n_
);
const
auto
K
=
arg
.
a_grid_desc_ak0_m_ak1_
.
GetLength
(
I0
)
*
arg
.
a_grid_desc_ak0_m_ak1_
.
GetLength
(
I2
);
float
ave_time
=
0
;
using
Add
=
ck
::
tensor_operation
::
binary_element_wise
::
Add
<
CDataType
,
CDataType
,
CDataType
>
;
using
Substract
=
ck
::
tensor_operation
::
binary_element_wise
::
Substract
<
CDataType
,
CDataType
,
CDataType
>
;
using
GridwiseBinAdd
=
GridwiseBinaryElementwise_1D
<
CDataType
,
CDataType
,
CDataType
,
CDataType
,
CGridDesc_M
,
CGridDesc_M
,
CGridDesc_M
,
Add
,
MPerThread
,
AScalarPerVector
,
BScalarPerVector
,
CScalarPerVector
>
;
using
GridwiseBinSubstract
=
GridwiseBinaryElementwise_1D
<
CDataType
,
CDataType
,
CDataType
,
CDataType
,
CGridDesc_M
,
CGridDesc_M
,
CGridDesc_M
,
Substract
,
MPerThread
,
AScalarPerVector
,
BScalarPerVector
,
CScalarPerVector
>
;
const
auto
add_kernel
=
kernel_binary_elementwise_1d
<
GridwiseBinAdd
,
CDataType
,
CDataType
,
CDataType
,
CGridDesc_M
,
CGridDesc_M
,
CGridDesc_M
,
Add
>
;
const
auto
substract_kernel
=
kernel_binary_elementwise_1d
<
GridwiseBinSubstract
,
CDataType
,
CDataType
,
CDataType
,
CGridDesc_M
,
CGridDesc_M
,
CGridDesc_M
,
Substract
>
;
if
(
GridwiseGemm
::
CalculateHasMainKBlockLoop
(
K
))
{
const
auto
kernel
=
kernel_gemm_xdl_cshuffle_v1
<
GridwiseGemm
,
ADataType
,
// TODO: distiguish A/B datatype
CDataType
,
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
,
DeviceOp
::
AGridDesc_AK0_M_AK1
,
DeviceOp
::
BGridDesc_BK0_N_BK1
,
typename
GridwiseGemm
::
CGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
typename
GridwiseGemm
::
DefaultBlock2CTileMap
,
true
>
;
ave_time
+=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_real_
,
arg
.
p_b_grid_real_
,
arg
.
p_aux_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_ctile_map_
);
ave_time
+=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_imag_
,
arg
.
p_b_grid_imag_
,
arg
.
p_aux_2_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_ctile_map_
);
// c_real = aux - aux_2
ave_time
+=
launch_and_time_kernel
(
stream_config
,
substract_kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_aux_grid_
,
arg
.
p_aux_2_grid_
,
arg
.
p_c_grid_real_
,
arg
.
c_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
Substract
{});
ave_time
+=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_real_
,
arg
.
p_b_grid_imag_
,
arg
.
p_aux_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_ctile_map_
);
ave_time
+=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_imag_
,
arg
.
p_b_grid_real_
,
arg
.
p_aux_2_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_ctile_map_
);
// c_imag = aux + aux_2
ave_time
+=
launch_and_time_kernel
(
stream_config
,
add_kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_aux_grid_
,
arg
.
p_aux_2_grid_
,
arg
.
p_c_grid_imag_
,
arg
.
c_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
Add
{});
}
else
{
const
auto
kernel
=
kernel_gemm_xdl_cshuffle_v1
<
GridwiseGemm
,
ADataType
,
// TODO: distiguish A/B datatype
CDataType
,
AElementwiseOperation
,
BElementwiseOperation
,
CElementwiseOperation
,
DeviceOp
::
AGridDesc_AK0_M_AK1
,
DeviceOp
::
BGridDesc_BK0_N_BK1
,
typename
GridwiseGemm
::
CGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
typename
GridwiseGemm
::
DefaultBlock2CTileMap
,
false
>
;
ave_time
+=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_real_
,
arg
.
p_b_grid_real_
,
arg
.
p_aux_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_ctile_map_
);
ave_time
+=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_imag_
,
arg
.
p_b_grid_imag_
,
arg
.
p_aux_2_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_ctile_map_
);
// c_real = aux - aux_2
ave_time
+=
launch_and_time_kernel
(
stream_config
,
substract_kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_aux_grid_
,
arg
.
p_aux_2_grid_
,
arg
.
p_c_grid_real_
,
arg
.
c_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
Substract
{});
ave_time
+=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_real_
,
arg
.
p_b_grid_imag_
,
arg
.
p_aux_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_ctile_map_
);
ave_time
+=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_imag_
,
arg
.
p_b_grid_real_
,
arg
.
p_aux_2_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_ctile_map_
);
// c_imag = aux + aux_2
ave_time
+=
launch_and_time_kernel
(
stream_config
,
add_kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_aux_grid_
,
arg
.
p_aux_2_grid_
,
arg
.
p_c_grid_imag_
,
arg
.
c_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
arg
.
c_grid_desc_m_
,
Add
{});
}
return
ave_time
;
}
// polymorphic
float
Run
(
const
BaseArgument
*
p_arg
,
const
StreamConfig
&
stream_config
=
StreamConfig
{})
override
{
return
Run
(
*
dynamic_cast
<
const
Argument
*>
(
p_arg
),
stream_config
);
}
};
static
constexpr
bool
IsValidCompilationParameter
()
{
// TODO: properly implement this check
return
true
;
}
static
bool
IsSupportedArgument
(
const
Argument
&
arg
)
{
return
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
c_grid_desc_m_n_
,
arg
.
block_2_ctile_map_
);
}
// polymorphic
bool
IsSupportedArgument
(
const
BaseArgument
*
p_arg
)
override
{
return
IsSupportedArgument
(
*
dynamic_cast
<
const
Argument
*>
(
p_arg
));
}
static
auto
MakeArgument
(
const
ADataType
*
p_a_real
,
const
ADataType
*
p_a_imag
,
const
BDataType
*
p_b_real
,
const
BDataType
*
p_b_imag
,
CDataType
*
p_c_real
,
CDataType
*
p_c_imag
,
CDataType
*
p_workspace
,
index_t
MRaw
,
index_t
NRaw
,
index_t
KRaw
,
index_t
StrideA
,
index_t
StrideB
,
index_t
StrideC
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CElementwiseOperation
c_element_op
)
{
return
Argument
{
p_a_real
,
p_a_imag
,
p_b_real
,
p_b_imag
,
p_c_real
,
p_c_imag
,
p_workspace
,
MRaw
,
NRaw
,
KRaw
,
StrideA
,
StrideB
,
StrideC
,
a_element_op
,
b_element_op
,
c_element_op
};
}
static
auto
MakeInvoker
()
{
return
Invoker
{};
}
// polymorphic
std
::
unique_ptr
<
BaseArgument
>
MakeArgumentPointer
(
const
void
*
p_a_real
,
const
void
*
p_a_imag
,
const
void
*
p_b_real
,
const
void
*
p_b_imag
,
void
*
p_c_real
,
void
*
p_c_imag
,
void
*
p_workspace
,
index_t
MRaw
,
index_t
NRaw
,
index_t
KRaw
,
index_t
StrideA
,
index_t
StrideB
,
index_t
StrideC
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CElementwiseOperation
c_element_op
,
index_t
/* KBatch */
=
1
)
override
{
return
std
::
make_unique
<
Argument
>
(
static_cast
<
const
ADataType
*>
(
p_a_real
),
static_cast
<
const
ADataType
*>
(
p_a_imag
),
static_cast
<
const
BDataType
*>
(
p_b_real
),
static_cast
<
const
BDataType
*>
(
p_b_imag
),
static_cast
<
CDataType
*>
(
p_c_real
),
static_cast
<
CDataType
*>
(
p_c_imag
),
static_cast
<
CDataType
*>
(
p_workspace
),
MRaw
,
NRaw
,
KRaw
,
StrideA
,
StrideB
,
StrideC
,
a_element_op
,
b_element_op
,
c_element_op
);
}
// polymorphic
std
::
unique_ptr
<
BaseInvoker
>
MakeInvokerPointer
()
override
{
return
std
::
make_unique
<
Invoker
>
(
Invoker
{});
}
// polymorphic
std
::
string
GetTypeString
()
const
override
{
auto
str
=
std
::
stringstream
();
// clang-format off
str
<<
"DeviceCGemm_4Gemm_Xdl_CShuffle"
<<
"<"
<<
BlockSize
<<
", "
<<
MPerBlock
<<
", "
<<
NPerBlock
<<
", "
<<
KPerBlock
<<
", "
<<
AK1
<<
", "
<<
BK1
<<
">"
;
// clang-format on
return
str
.
str
();
}
std
::
size_t
GetWorkspaceSize
(
index_t
MRaw
,
index_t
NRaw
,
[[
maybe_unused
]]
index_t
KRaw
,
[[
maybe_unused
]]
index_t
StrideA
,
[[
maybe_unused
]]
index_t
StrideB
,
index_t
StrideC
)
override
{
const
auto
c_grid_desc_m_n
=
MakeCGridDescriptor_M_N
(
MRaw
,
NRaw
,
StrideC
);
return
2
*
sizeof
(
CDataType
)
*
c_grid_desc_m_n
.
GetElementSpaceSize
();
}
};
}
// namespace device
}
// namespace tensor_operation
}
// namespace ck
include/ck/tensor_operation/gpu/device/device_conv2d_backward_weight_xdl_c_shuffle_nhwc_kyxc_nhwk.hpp
View file @
6dfb4e78
...
...
@@ -11,7 +11,7 @@
#include "tensor_layout.hpp"
#include "tensor_descriptor.hpp"
#include "tensor_descriptor_helper.hpp"
#include "gridwise_gemm_xdlops_
v2r4r2
.hpp"
#include "gridwise_gemm_xdlops_
bwd_weight
.hpp"
namespace
ck
{
namespace
tensor_operation
{
...
...
@@ -81,6 +81,22 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
static
constexpr
auto
K1Number
=
Number
<
K1
>
{};
static
constexpr
auto
GemmK1Number
=
K1Number
;
static
constexpr
auto
N1Number
=
K1Number
;
// Bytes per 32 lds bank: 32 * 4 bytes
static
constexpr
auto
BankLength
=
128
;
static
constexpr
auto
ElePerBank
=
BankLength
/
sizeof
(
ADataType
);
// M1 & M0
static
constexpr
auto
ABlockLdsM1PerBlock
=
ElePerBank
/
K1
;
static
constexpr
auto
ABlockLdsM0PerBlock
=
MPerBlock
/
ABlockLdsM1PerBlock
;
static
constexpr
auto
ABlockLdsM1Padding
=
4
;
// N1 & N0
static
constexpr
auto
BBlockLdsN1PerBlock
=
ElePerBank
/
K1
;
static
constexpr
auto
BBlockLdsN0PerBlock
=
NPerBlock
/
BBlockLdsN1PerBlock
;
static
constexpr
auto
BBlockLdsN1Padding
=
4
;
static
auto
MakeABCGridDescriptor_A_K0_M_K1_B_K0_N_K1_C_M_N
(
ck
::
index_t
N
,
ck
::
index_t
K
,
...
...
@@ -125,27 +141,51 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
const
index_t
GemmK0
=
math
::
integer_divide_ceil
(
GemmKTotal
,
GemmK1Number
*
K0PerBlock
*
GemmKBatch
)
*
K0PerBlock
;
const
index_t
GemmKPad
=
GemmKBatch
*
GemmK0
*
GemmK1Number
;
const
auto
out_gemmktotal_gemmm_grid_desc
=
make_naive_tensor_descriptor_packed
(
make_tuple
(
N
*
Ho
*
Wo
,
K
));
const
auto
in_n_hi_wi_c_grid_desc
=
make_naive_tensor_descriptor_packed
(
make_tuple
(
N
,
Hi
,
Wi
,
C
));
// A: output tensor
const
auto
out_gemmkpad_gemmm_grid_desc
=
transform_tensor_descriptor
(
out_gemmktotal_gemmm_grid_desc
,
make_tuple
(
make_right_pad_transform
(
GemmKTotal
,
GemmKPad
-
GemmKTotal
),
make_pass_through_transform
(
GemmM
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
const
index_t
N0
=
N
/
N1Number
;
const
index_t
GemmK0Total
=
N0
*
Ho
*
Wo
;
const
index_t
GemmK0S
=
math
::
integer_divide_ceil
(
GemmK0Total
,
K0PerBlock
*
GemmKBatch
)
*
K0PerBlock
;
const
index_t
GemmK0Pad
=
GemmKBatch
*
GemmK0S
;
const
auto
out_n_ho_wo_k_grid_desc
=
make_naive_tensor_descriptor_packed
(
make_tuple
(
N
,
Ho
*
Wo
,
K
));
const
auto
out_n0_ho_wo_k_n1_grid_desc
=
transform_tensor_descriptor
(
out_n_ho_wo_k_grid_desc
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
N0
,
N1Number
)),
make_pass_through_transform
(
Ho
*
Wo
),
make_pass_through_transform
(
K
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}),
make_tuple
(
Sequence
<
0
,
3
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}));
const
auto
out_gemmk0total_gemmm_gemmk1_grid_desc
=
transform_tensor_descriptor
(
out_n0_ho_wo_k_n1_grid_desc
,
make_tuple
(
make_merge_transform
(
make_tuple
(
N0
,
Ho
*
Wo
)),
make_pass_through_transform
(
K
),
make_pass_through_transform
(
N1Number
)),
make_tuple
(
Sequence
<
0
,
1
>
{},
Sequence
<
2
>
{},
Sequence
<
3
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}));
const
auto
out_gemmk0pad_gemmm_gemmk1_grid_desc
=
transform_tensor_descriptor
(
out_gemmk0total_gemmm_gemmk1_grid_desc
,
make_tuple
(
make_right_pad_transform
(
GemmK0Total
,
GemmK0Pad
-
GemmK0Total
),
make_pass_through_transform
(
GemmM
),
make_pass_through_transform
(
N1Number
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}));
const
auto
out_gemmkbatch_gemmk0_gemmm_gemmk1_grid_desc
=
transform_tensor_descriptor
(
out_gemmkpad_gemmm_grid_desc
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
GemmKBatch
,
GemmK0
,
GemmK1Number
)),
make_pass_through_transform
(
GemmM
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
,
1
,
3
>
{},
Sequence
<
2
>
{}));
out_gemmk0pad_gemmm_gemmk1_grid_desc
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
GemmKBatch
,
GemmK0
)),
make_pass_through_transform
(
GemmM
),
make_pass_through_transform
(
N1Number
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}),
make_tuple
(
Sequence
<
0
,
1
>
{},
Sequence
<
2
>
{},
Sequence
<
3
>
{}));
// B: input tensor
const
auto
in_n_hip_wip_c_grid_desc
=
transform_tensor_descriptor
(
...
...
@@ -167,26 +207,50 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{},
Sequence
<
3
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
,
2
>
{},
Sequence
<
3
,
4
>
{},
Sequence
<
5
>
{}));
const
auto
in_
gemmktotal_gemmn
_grid_desc
=
const
auto
in_
n0_y_ho_x_wo_c_n1
_grid_desc
=
transform_tensor_descriptor
(
in_n_y_ho_x_wo_c_grid_desc
,
make_tuple
(
make_merge_transform
(
make_tuple
(
Y
,
X
,
C
)),
make_merge_transform
(
make_tuple
(
N
,
Ho
,
Wo
))),
make_tuple
(
Sequence
<
1
,
3
,
5
>
{},
Sequence
<
0
,
2
,
4
>
{}),
make_tuple
(
Sequence
<
1
>
{},
Sequence
<
0
>
{}));
const
auto
in_gemmkpad_gemmn_grid_desc
=
transform_tensor_descriptor
(
in_gemmktotal_gemmn_grid_desc
,
make_tuple
(
make_right_pad_transform
(
GemmKTotal
,
GemmKPad
-
GemmKTotal
),
make_pass_through_transform
(
GemmN
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
make_tuple
(
make_unmerge_transform
(
make_tuple
(
N0
,
N1Number
)),
make_pass_through_transform
(
Y
),
make_pass_through_transform
(
Ho
),
make_pass_through_transform
(
X
),
make_pass_through_transform
(
Wo
),
make_pass_through_transform
(
C
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{},
Sequence
<
3
>
{},
Sequence
<
4
>
{},
Sequence
<
5
>
{}),
make_tuple
(
Sequence
<
0
,
6
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{},
Sequence
<
3
>
{},
Sequence
<
4
>
{},
Sequence
<
5
>
{}));
const
auto
in_gemmk0total_gemmn_gemmk1_grid_desc
=
transform_tensor_descriptor
(
in_n0_y_ho_x_wo_c_n1_grid_desc
,
make_tuple
(
make_merge_transform
(
make_tuple
(
N0
,
Ho
,
Wo
)),
make_merge_transform
(
make_tuple
(
Y
,
X
,
C
)),
make_pass_through_transform
(
N1Number
)),
make_tuple
(
Sequence
<
0
,
2
,
4
>
{},
Sequence
<
1
,
3
,
5
>
{},
Sequence
<
6
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}));
const
auto
in_gemmk0pad_gemmn_gemmk1_grid_desc
=
transform_tensor_descriptor
(
in_gemmk0total_gemmn_gemmk1_grid_desc
,
make_tuple
(
make_right_pad_transform
(
GemmK0Total
,
GemmK0Pad
-
GemmK0Total
),
make_pass_through_transform
(
GemmN
),
make_pass_through_transform
(
N1Number
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}));
const
auto
in_gemmkbatch_gemmk0_gemmn_gemmk1_grid_desc
=
transform_tensor_descriptor
(
in_gemmkpad_gemmn_grid_desc
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
GemmKBatch
,
GemmK0
,
GemmK1Number
)),
make_pass_through_transform
(
GemmN
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}),
make_tuple
(
Sequence
<
0
,
1
,
3
>
{},
Sequence
<
2
>
{}));
in_gemmk0pad_gemmn_gemmk1_grid_desc
,
make_tuple
(
make_unmerge_transform
(
make_tuple
(
GemmKBatch
,
GemmK0
)),
make_pass_through_transform
(
GemmN
),
make_pass_through_transform
(
N1Number
)),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{},
Sequence
<
2
>
{}),
make_tuple
(
Sequence
<
0
,
1
>
{},
Sequence
<
2
>
{},
Sequence
<
3
>
{}));
// C: weight tensor
const
auto
wei_gemmm_gemmn_grid_desc
=
...
...
@@ -205,7 +269,7 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
using
CGridDesc_M_N
=
remove_cvref_t
<
decltype
(
ABCGridDescs
{}[
I2
])
>
;
// GridwiseGemm
using
GridwiseGemm
=
GridwiseGemm_bk0mk1_bk0nk1_mn_xdlops_
v2r4r2
<
using
GridwiseGemm
=
GridwiseGemm_bk0mk1_bk0nk1_mn_xdlops_
bwd_weight
<
BlockSize
,
ADataType
,
// TODO: distinguish A/B datatype
AccDataType
,
...
...
@@ -233,6 +297,9 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
ABlockTransferDstScalarPerVector_K1
,
false
,
// AThreadTransferSrcResetCoordinateAfterRun,
ABlockLdsAddExtraM
,
ABlockLdsM1PerBlock
,
ABlockLdsM0PerBlock
,
ABlockLdsM1Padding
,
BBlockTransferThreadClusterLengths_K0_N_K1
,
BBlockTransferThreadClusterArrangeOrder
,
BBlockTransferSrcAccessOrder
,
...
...
@@ -241,12 +308,17 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
BBlockTransferDstScalarPerVector_K1
,
false
,
// BThreadTransferSrcResetCoordinateAfterRun,
BBlockLdsAddExtraN
,
BBlockLdsN1PerBlock
,
BBlockLdsN0PerBlock
,
BBlockLdsN1Padding
,
CShuffleMXdlPerWavePerShuffle
,
CShuffleNXdlPerWavePerShuffle
,
CBlockTransferScalarPerVector_NWaveNPerXdl
,
CBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
>
;
CBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
,
true
,
true
>
;
using
GridwiseGemmAtomicAdd
=
GridwiseGemm_bk0mk1_bk0nk1_mn_xdlops_
v2r4r2
<
using
GridwiseGemmAtomicAdd
=
GridwiseGemm_bk0mk1_bk0nk1_mn_xdlops_
bwd_weight
<
BlockSize
,
ADataType
,
// TODO: distinguish A/B datatype
AccDataType
,
...
...
@@ -274,6 +346,9 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
ABlockTransferDstScalarPerVector_K1
,
false
,
// AThreadTransferSrcResetCoordinateAfterRun,
ABlockLdsAddExtraM
,
ABlockLdsM1PerBlock
,
ABlockLdsM0PerBlock
,
ABlockLdsM1Padding
,
BBlockTransferThreadClusterLengths_K0_N_K1
,
BBlockTransferThreadClusterArrangeOrder
,
BBlockTransferSrcAccessOrder
,
...
...
@@ -282,10 +357,15 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
BBlockTransferDstScalarPerVector_K1
,
false
,
// BThreadTransferSrcResetCoordinateAfterRun,
BBlockLdsAddExtraN
,
BBlockLdsN1PerBlock
,
BBlockLdsN0PerBlock
,
BBlockLdsN1Padding
,
CShuffleMXdlPerWavePerShuffle
,
CShuffleNXdlPerWavePerShuffle
,
CBlockTransferScalarPerVector_NWaveNPerXdl
,
CBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
>
;
CBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
,
true
,
true
>
;
// Argument
using
CGridDesc_MBlock_MPerBlock_NBlock_NPerBlock
=
decltype
(
GridwiseGemm
::
MakeCGridDesc_MBlock_MPerBlock_NBlock_NPerBlock
(
CGridDesc_M_N
{}));
...
...
@@ -353,17 +433,16 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
b_grid_desc_kbatch_k0_n_k1_
=
descs
[
I1
];
c_grid_desc_m_n_
=
descs
[
I2
];
block_2_ctile_map_
=
GridwiseGemm
::
MakeCBlockClusterAdaptor
(
c_grid_desc_m_n_
,
M01
,
N01
,
k_batch_
);
if
(
GridwiseGemm
::
CheckValidity
(
a_grid_desc_kbatch_k0_m_k1_
,
b_grid_desc_kbatch_k0_n_k1_
,
c_grid_desc_m_n_
,
M01_
,
N01_
))
block_2_ctile_map_
))
{
c_grid_desc_mblock_mperblock_nblock_nperblock_
=
GridwiseGemm
::
MakeCGridDesc_MBlock_MPerBlock_NBlock_NPerBlock
(
c_grid_desc_m_n_
);
block_2_ctile_map_
=
GridwiseGemm
::
MakeCBlockClusterAdaptor
(
c_grid_desc_m_n_
,
M01
,
N01
,
k_batch_
);
}
}
...
...
@@ -422,14 +501,14 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
if
(
!
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_kbatch_k0_m_k1_
,
arg
.
b_grid_desc_kbatch_k0_n_k1_
,
arg
.
c_grid_desc_m_n_
,
arg
.
M01_
,
arg
.
N01_
))
arg
.
block_2_ctile_map_
))
{
throw
std
::
runtime_error
(
"wrong! GridwiseGemm_
km_kn_m0m1n0n1_xdlops_v3r1
has invalid setting"
);
"wrong! GridwiseGemm_
bk0mk1_bk0nk1_mn_xdlops_bwd_weight
has invalid setting"
);
}
const
auto
kbatch
=
arg
.
a_grid_desc_kbatch_k0_m_k1_
.
GetLength
(
I0
);
const
index_t
grid_size
=
GridwiseGemm
::
CalculateGridSize
(
arg
.
c_grid_desc_m_n_
,
kbatch
);
const
auto
kbatch
=
arg
.
a_grid_desc_kbatch_k0_m_k1_
.
GetLength
(
I0
);
const
index_t
grid_size
=
arg
.
block_2_ctile_map_
.
CalculateGridSize
(
arg
.
c_grid_desc_m_n_
);
const
auto
K0
=
arg
.
a_grid_desc_kbatch_k0_m_k1_
.
GetLength
(
I1
);
...
...
@@ -444,28 +523,29 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
.
GetElementSpaceSize
()
*
sizeof
(
CDataType
)));
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_
,
arg
.
p_b_grid_
,
arg
.
p_c_grid_
,
arg
.
a_grid_desc_kbatch_k0_m_k1_
,
arg
.
b_grid_desc_kbatch_k0_n_k1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
block_2_ctile_map_
);
ave_time
=
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_
,
arg
.
p_b_grid_
,
arg
.
p_c_grid_
,
arg
.
a_grid_desc_kbatch_k0_m_k1_
,
arg
.
b_grid_desc_kbatch_k0_n_k1_
,
arg
.
c_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
c_element_op_
,
arg
.
block_2_ctile_map_
);
};
if
(
has_main_k0_block_loop
)
{
if
(
kbatch
==
1
)
{
const
auto
kernel
=
kernel_gemm_xdlops_
v2r4r2
<
const
auto
kernel
=
kernel_gemm_xdlops_
bwd_weight
<
GridwiseGemm
,
ADataType
,
// TODO: distiguish A/B datatype
CDataType
,
...
...
@@ -482,7 +562,7 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
}
else
{
const
auto
kernel
=
kernel_gemm_xdlops_
v2r4r2
<
const
auto
kernel
=
kernel_gemm_xdlops_
bwd_weight
<
GridwiseGemmAtomicAdd
,
ADataType
,
// TODO: distiguish A/B datatype
CDataType
,
...
...
@@ -502,7 +582,7 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
{
if
(
kbatch
==
1
)
{
const
auto
kernel
=
kernel_gemm_xdlops_
v2r4r2
<
const
auto
kernel
=
kernel_gemm_xdlops_
bwd_weight
<
GridwiseGemm
,
ADataType
,
// TODO: distiguish A/B datatype
CDataType
,
...
...
@@ -519,7 +599,7 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
}
else
{
const
auto
kernel
=
kernel_gemm_xdlops_
v2r4r2
<
const
auto
kernel
=
kernel_gemm_xdlops_
bwd_weight
<
GridwiseGemmAtomicAdd
,
ADataType
,
// TODO: distiguish A/B datatype
CDataType
,
...
...
@@ -562,6 +642,12 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
return
false
;
}
// unmerge N to N0 and N1, where N1 equals to K1
if
(
!
(
arg
.
Conv_N_
%
K1
==
0
))
{
return
false
;
}
// vector store C matrix into global memory
if
(
!
(
arg
.
Conv_C_
%
CBlockTransferScalarPerVector_NWaveNPerXdl
==
0
))
{
...
...
@@ -572,8 +658,7 @@ struct DeviceConv2dBwdWeightXdl_C_Shuffle_Input_N_Hi_Wi_C_Weight_K_Y_X_C_Output_
return
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_kbatch_k0_m_k1_
,
arg
.
b_grid_desc_kbatch_k0_n_k1_
,
arg
.
c_grid_desc_m_n_
,
arg
.
M01_
,
arg
.
N01_
);
arg
.
block_2_ctile_map_
);
}
bool
IsSupportedArgument
(
const
BaseArgument
*
p_arg
)
override
...
...
Prev
1
2
3
4
5
6
7
…
14
Next
Write
Preview
Markdown
is supported
0%
Try again
or
attach a new file
.
Attach a file
Cancel
You are about to add
0
people
to the discussion. Proceed with caution.
Finish editing this message first!
Cancel
Please
register
or
sign in
to comment