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gaoqiong
composable_kernel
Commits
6f393c3d
Commit
6f393c3d
authored
Jul 07, 2022
by
Chao Liu
Browse files
Merge remote-tracking branch 'origin/develop' into standalone-layernorm
parents
af055f4b
4fe9c393
Changes
118
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20 changed files
with
2477 additions
and
58 deletions
+2477
-58
client_example/04_contraction/CMakeLists.txt
client_example/04_contraction/CMakeLists.txt
+6
-0
client_example/04_contraction/contraction_bilinear.cpp
client_example/04_contraction/contraction_bilinear.cpp
+241
-0
client_example/04_contraction/contraction_scale.cpp
client_example/04_contraction/contraction_scale.cpp
+227
-0
client_example/CMakeLists.txt
client_example/CMakeLists.txt
+1
-0
example/02_gemm_bilinear/gemm_bilinear_xdl_fp16.cpp
example/02_gemm_bilinear/gemm_bilinear_xdl_fp16.cpp
+14
-14
example/03_gemm_bias_relu/gemm_bias_relu_xdl_fp16.cpp
example/03_gemm_bias_relu/gemm_bias_relu_xdl_fp16.cpp
+12
-12
example/04_gemm_add_add_fastgelu/gemm_add_add_fastgelu_xdl_fp16.cpp
..._gemm_add_add_fastgelu/gemm_add_add_fastgelu_xdl_fp16.cpp
+15
-15
example/21_gemm_layernorm/gemm_bias_relu_add_layernorm_xdl_fp16.cpp
..._gemm_layernorm/gemm_bias_relu_add_layernorm_xdl_fp16.cpp
+10
-10
example/26_contraction/CMakeLists.txt
example/26_contraction/CMakeLists.txt
+2
-0
example/26_contraction/README.md
example/26_contraction/README.md
+20
-0
example/26_contraction/contraction_bilinear_xdl_fp32.cpp
example/26_contraction/contraction_bilinear_xdl_fp32.cpp
+444
-0
example/26_contraction/contraction_scale_xdl_fp32.cpp
example/26_contraction/contraction_scale_xdl_fp32.cpp
+424
-0
example/27_layernorm/CMakeLists.txt
example/27_layernorm/CMakeLists.txt
+0
-0
example/27_layernorm/layernorm_blockwise.cpp
example/27_layernorm/layernorm_blockwise.cpp
+0
-0
example/CMakeLists.txt
example/CMakeLists.txt
+2
-1
include/ck/ck.hpp
include/ck/ck.hpp
+5
-0
include/ck/tensor_operation/gpu/device/device_contraction_multiple_d.hpp
...or_operation/gpu/device/device_contraction_multiple_d.hpp
+63
-0
include/ck/tensor_operation/gpu/device/device_contraction_multiple_d_xdl_cshuffle.hpp
...gpu/device/device_contraction_multiple_d_xdl_cshuffle.hpp
+981
-0
include/ck/tensor_operation/gpu/device/device_gemm.hpp
include/ck/tensor_operation/gpu/device/device_gemm.hpp
+2
-1
include/ck/tensor_operation/gpu/device/device_gemm_multiple_d.hpp
...ck/tensor_operation/gpu/device/device_gemm_multiple_d.hpp
+8
-5
No files found.
client_example/04_contraction/CMakeLists.txt
0 → 100644
View file @
6f393c3d
add_executable
(
client_contraction_scale contraction_scale.cpp
)
target_link_libraries
(
client_contraction_scale PRIVATE composable_kernel::device_operations
)
add_executable
(
client_contraction_bilinear contraction_bilinear.cpp
)
target_link_libraries
(
client_contraction_bilinear PRIVATE composable_kernel::device_operations
)
client_example/04_contraction/contraction_bilinear.cpp
0 → 100644
View file @
6f393c3d
// SPDX-License-Identifier: MIT
// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
#include <iomanip>
#include <numeric>
#include <vector>
#include <iostream>
#include "ck/ck.hpp"
#include "ck/tensor_operation/gpu/device/tensor_layout.hpp"
#include "ck/tensor_operation/gpu/device/device_contraction_multiple_d.hpp"
#include "ck/tensor_operation/gpu/element/element_wise_operation.hpp"
#include "ck/library/tensor_operation_instance/gpu/contraction_bilinear.hpp"
using
F32
=
float
;
using
PassThrough
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
Bilinear
=
ck
::
tensor_operation
::
element_wise
::
Bilinear
;
using
AElementOp
=
PassThrough
;
using
BElementOp
=
PassThrough
;
using
CDEElementOp
=
Bilinear
;
using
ADataType
=
F32
;
using
BDataType
=
F32
;
using
AccDataType
=
F32
;
using
CShuffleDataType
=
F32
;
using
DDataType
=
F32
;
using
DsDataType
=
ck
::
Tuple
<
DDataType
>
;
using
EDataType
=
F32
;
static
constexpr
ck
::
index_t
NumDimM
=
2
;
static
constexpr
ck
::
index_t
NumDimN
=
2
;
static
constexpr
ck
::
index_t
NumDimK
=
2
;
struct
SimpleDeviceMem
{
SimpleDeviceMem
()
=
delete
;
SimpleDeviceMem
(
std
::
size_t
mem_size
)
:
p_mem_
{}
{
(
void
)
hipMalloc
(
static_cast
<
void
**>
(
&
p_mem_
),
mem_size
);
}
void
*
GetDeviceBuffer
()
{
return
p_mem_
;
}
~
SimpleDeviceMem
()
{
(
void
)
hipFree
(
p_mem_
);
}
void
*
p_mem_
;
};
int
main
(
int
argc
,
char
*
argv
[])
{
// A[M0, M1, K0, K1]
std
::
vector
<
ck
::
index_t
>
a_ms_ks_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
a_ms_ks_strides
{
524288
,
4096
,
128
,
1
};
// B[N0, N1, K0, K1]
std
::
vector
<
ck
::
index_t
>
b_ns_ks_lengths
{
32
,
64
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
b_ns_ks_strides
{
524288
,
4096
,
128
,
1
};
// D[M0, M1, N0, N1]
std
::
vector
<
ck
::
index_t
>
d_ms_ns_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
d_ms_ns_strides
{
524288
,
4096
,
128
,
1
};
// E[M0, M1, N0, N1]
std
::
vector
<
ck
::
index_t
>
e_ms_ns_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
e_ms_ns_strides
{
524288
,
4096
,
128
,
1
};
float
alpha
=
1.
f
;
float
beta
=
1.
f
;
if
(
argc
==
1
)
{
// use default case
}
else
if
(
argc
==
25
)
{
const
ck
::
index_t
M0
=
std
::
stoi
(
argv
[
1
]);
const
ck
::
index_t
M1
=
std
::
stoi
(
argv
[
2
]);
const
ck
::
index_t
N0
=
std
::
stoi
(
argv
[
3
]);
const
ck
::
index_t
N1
=
std
::
stoi
(
argv
[
4
]);
const
ck
::
index_t
K0
=
std
::
stoi
(
argv
[
5
]);
const
ck
::
index_t
K1
=
std
::
stoi
(
argv
[
6
]);
a_ms_ks_lengths
=
{
M0
,
M1
,
K0
,
K1
};
a_ms_ks_strides
=
{
std
::
stoi
(
argv
[
7
]),
std
::
stoi
(
argv
[
8
]),
std
::
stoi
(
argv
[
9
]),
std
::
stoi
(
argv
[
10
])};
b_ns_ks_lengths
=
{
N0
,
N1
,
K0
,
K1
};
b_ns_ks_strides
=
{
std
::
stoi
(
argv
[
11
]),
std
::
stoi
(
argv
[
12
]),
std
::
stoi
(
argv
[
13
]),
std
::
stoi
(
argv
[
14
])};
d_ms_ns_lengths
=
{
M0
,
M1
,
N0
,
N1
};
d_ms_ns_strides
=
{
std
::
stoi
(
argv
[
15
]),
std
::
stoi
(
argv
[
16
]),
std
::
stoi
(
argv
[
17
]),
std
::
stoi
(
argv
[
18
])};
e_ms_ns_lengths
=
{
M0
,
M1
,
N0
,
N1
};
e_ms_ns_strides
=
{
std
::
stoi
(
argv
[
19
]),
std
::
stoi
(
argv
[
20
]),
std
::
stoi
(
argv
[
21
]),
std
::
stoi
(
argv
[
22
])};
alpha
=
std
::
stof
(
argv
[
23
]);
beta
=
std
::
stof
(
argv
[
24
]);
}
else
{
printf
(
"arg1 to 6: M0, M1, N0, N1, K0, K1
\n
"
);
printf
(
"arg7 to 10: Stride_A_M0, Stride_A_M1, Stride_A_K0, Stride_A_K1
\n
"
);
printf
(
"arg11 to 14: Stride_B_N0, Stride_B_N1, Stride_B_K0, Stride_B_K1
\n
"
);
printf
(
"arg15 to 18: Stride_D_M0, Stride_D_M1, Stride_D_N0, Stride_D_N1
\n
"
);
printf
(
"arg19 to 22: Stride_E_M0, Stride_E_M1, Stride_E_N0, Stride_E_N1
\n
"
);
printf
(
"arg23 to 24: alpha, beta
\n
"
);
exit
(
0
);
}
auto
f_tensor_space_size
=
[](
auto
lengths
,
auto
strides
)
{
std
::
size_t
space_size
=
1
;
for
(
std
::
size_t
i
=
0
;
i
<
lengths
.
size
();
++
i
)
{
space_size
+=
(
lengths
[
i
]
-
1
)
*
strides
[
i
];
}
return
space_size
;
};
SimpleDeviceMem
a_device_buf
(
sizeof
(
ADataType
)
*
f_tensor_space_size
(
a_ms_ks_lengths
,
a_ms_ks_strides
));
SimpleDeviceMem
b_device_buf
(
sizeof
(
BDataType
)
*
f_tensor_space_size
(
b_ns_ks_lengths
,
b_ns_ks_strides
));
SimpleDeviceMem
d_device_buf
(
sizeof
(
DDataType
)
*
f_tensor_space_size
(
d_ms_ns_lengths
,
d_ms_ns_strides
));
SimpleDeviceMem
e_device_buf
(
sizeof
(
EDataType
)
*
f_tensor_space_size
(
e_ms_ns_lengths
,
e_ms_ns_strides
));
using
DeviceOp
=
ck
::
tensor_operation
::
device
::
DeviceContractionMultipleD
<
NumDimM
,
NumDimN
,
NumDimK
,
ADataType
,
BDataType
,
ck
::
Tuple
<
DDataType
>
,
EDataType
,
ck
::
tensor_operation
::
element_wise
::
PassThrough
,
ck
::
tensor_operation
::
element_wise
::
PassThrough
,
ck
::
tensor_operation
::
element_wise
::
Bilinear
>
;
// get device op instances
const
auto
op_ptrs
=
ck
::
tensor_operation
::
device
::
instance
::
DeviceOperationInstanceFactory
<
DeviceOp
>::
GetInstances
();
std
::
cout
<<
"found "
<<
op_ptrs
.
size
()
<<
" instances"
<<
std
::
endl
;
const
auto
a_element_op
=
AElementOp
{};
const
auto
b_element_op
=
BElementOp
{};
const
auto
cde_element_op
=
CDEElementOp
{
alpha
,
beta
};
std
::
string
best_op_name
;
bool
found
=
false
;
int
best_op_id
=
-
1
;
float
best_ave_time
=
0
;
float
best_tflops
=
0
;
float
best_gb_per_sec
=
0
;
// profile device operation instances
std
::
cout
<<
"Run all instances and do timing"
<<
std
::
endl
;
for
(
int
i
=
0
;
i
<
op_ptrs
.
size
();
++
i
)
{
auto
&
op_ptr
=
op_ptrs
[
i
];
auto
argument_ptr
=
op_ptr
->
MakeArgumentPointer
(
a_device_buf
.
GetDeviceBuffer
(),
b_device_buf
.
GetDeviceBuffer
(),
std
::
array
<
const
void
*
,
1
>
{
d_device_buf
.
GetDeviceBuffer
()},
e_device_buf
.
GetDeviceBuffer
(),
a_ms_ks_lengths
,
a_ms_ks_strides
,
b_ns_ks_lengths
,
b_ns_ks_strides
,
std
::
array
<
std
::
vector
<
ck
::
index_t
>
,
1
>
{
d_ms_ns_lengths
},
std
::
array
<
std
::
vector
<
ck
::
index_t
>
,
1
>
{
d_ms_ns_strides
},
e_ms_ns_lengths
,
e_ms_ns_strides
,
a_element_op
,
b_element_op
,
cde_element_op
);
auto
invoker_ptr
=
op_ptr
->
MakeInvokerPointer
();
std
::
string
op_name
=
op_ptr
->
GetTypeString
();
if
(
op_ptr
->
IsSupportedArgument
(
argument_ptr
.
get
()))
{
float
ave_time
=
invoker_ptr
->
Run
(
argument_ptr
.
get
(),
StreamConfig
{
nullptr
,
true
});
ck
::
index_t
M
=
std
::
accumulate
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
begin
()
+
NumDimM
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
ck
::
index_t
N
=
std
::
accumulate
(
e_ms_ns_lengths
.
begin
()
+
NumDimM
,
e_ms_ns_lengths
.
begin
()
+
NumDimM
+
NumDimN
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
ck
::
index_t
K
=
std
::
accumulate
(
a_ms_ks_lengths
.
begin
()
+
NumDimM
,
a_ms_ks_lengths
.
begin
()
+
NumDimM
+
NumDimK
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
std
::
size_t
flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
sizeof
(
DDataType
)
*
M
*
N
+
sizeof
(
EDataType
)
*
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: "
<<
std
::
setw
(
10
)
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s, "
<<
op_name
<<
std
::
endl
;
if
(
tflops
>
best_tflops
)
{
found
=
true
;
best_op_id
=
i
;
best_op_name
=
op_name
;
best_tflops
=
tflops
;
best_ave_time
=
ave_time
;
best_gb_per_sec
=
gb_per_sec
;
}
}
else
{
std
::
cout
<<
op_name
<<
" does not support this problem"
<<
std
::
endl
;
}
}
std
::
cout
<<
"Best Perf: "
<<
best_ave_time
<<
" ms, "
<<
best_tflops
<<
" TFlops, "
<<
best_gb_per_sec
<<
" GB/s, "
<<
best_op_name
<<
std
::
endl
;
return
0
;
}
client_example/04_contraction/contraction_scale.cpp
0 → 100644
View file @
6f393c3d
// SPDX-License-Identifier: MIT
// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
#include <iomanip>
#include <numeric>
#include <vector>
#include <iostream>
#include "ck/ck.hpp"
#include "ck/tensor_operation/gpu/device/tensor_layout.hpp"
#include "ck/tensor_operation/gpu/device/device_contraction_multiple_d.hpp"
#include "ck/tensor_operation/gpu/element/element_wise_operation.hpp"
#include "ck/library/tensor_operation_instance/gpu/contraction_scale.hpp"
using
F32
=
float
;
using
PassThrough
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
Scale
=
ck
::
tensor_operation
::
element_wise
::
Scale
;
using
AElementOp
=
PassThrough
;
using
BElementOp
=
PassThrough
;
using
CDEElementOp
=
Scale
;
using
ADataType
=
F32
;
using
BDataType
=
F32
;
using
AccDataType
=
F32
;
using
CShuffleDataType
=
F32
;
using
DsDataType
=
ck
::
Tuple
<>
;
using
EDataType
=
F32
;
static
constexpr
ck
::
index_t
NumDimM
=
2
;
static
constexpr
ck
::
index_t
NumDimN
=
2
;
static
constexpr
ck
::
index_t
NumDimK
=
2
;
struct
SimpleDeviceMem
{
SimpleDeviceMem
()
=
delete
;
SimpleDeviceMem
(
std
::
size_t
mem_size
)
:
p_mem_
{}
{
(
void
)
hipMalloc
(
static_cast
<
void
**>
(
&
p_mem_
),
mem_size
);
}
void
*
GetDeviceBuffer
()
{
return
p_mem_
;
}
~
SimpleDeviceMem
()
{
(
void
)
hipFree
(
p_mem_
);
}
void
*
p_mem_
;
};
int
main
(
int
argc
,
char
*
argv
[])
{
// A[M0, M1, K0, K1]
std
::
vector
<
ck
::
index_t
>
a_ms_ks_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
a_ms_ks_strides
{
524288
,
4096
,
128
,
1
};
// B[N0, N1, K0, K1]
std
::
vector
<
ck
::
index_t
>
b_ns_ks_lengths
{
32
,
64
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
b_ns_ks_strides
{
524288
,
4096
,
128
,
1
};
// E[M0, M1, N0, N1]
std
::
vector
<
ck
::
index_t
>
e_ms_ns_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
e_ms_ns_strides
{
524288
,
4096
,
128
,
1
};
float
scale
=
1.
f
;
if
(
argc
==
1
)
{
// use default case
}
else
if
(
argc
==
20
)
{
const
ck
::
index_t
M0
=
std
::
stoi
(
argv
[
1
]);
const
ck
::
index_t
M1
=
std
::
stoi
(
argv
[
2
]);
const
ck
::
index_t
N0
=
std
::
stoi
(
argv
[
3
]);
const
ck
::
index_t
N1
=
std
::
stoi
(
argv
[
4
]);
const
ck
::
index_t
K0
=
std
::
stoi
(
argv
[
5
]);
const
ck
::
index_t
K1
=
std
::
stoi
(
argv
[
6
]);
a_ms_ks_lengths
=
{
M0
,
M1
,
K0
,
K1
};
a_ms_ks_strides
=
{
std
::
stoi
(
argv
[
7
]),
std
::
stoi
(
argv
[
8
]),
std
::
stoi
(
argv
[
9
]),
std
::
stoi
(
argv
[
10
])};
b_ns_ks_lengths
=
{
N0
,
N1
,
K0
,
K1
};
b_ns_ks_strides
=
{
std
::
stoi
(
argv
[
11
]),
std
::
stoi
(
argv
[
12
]),
std
::
stoi
(
argv
[
13
]),
std
::
stoi
(
argv
[
14
])};
e_ms_ns_lengths
=
{
M0
,
M1
,
N0
,
N1
};
e_ms_ns_strides
=
{
std
::
stoi
(
argv
[
15
]),
std
::
stoi
(
argv
[
16
]),
std
::
stoi
(
argv
[
17
]),
std
::
stoi
(
argv
[
18
])};
scale
=
std
::
stof
(
argv
[
19
]);
}
else
{
printf
(
"arg1 to 6: M0, M1, N0, N1, K0, K1
\n
"
);
printf
(
"arg7 to 10: Stride_A_M0, Stride_A_M1, Stride_A_K0, Stride_A_K1
\n
"
);
printf
(
"arg11 to 14: Stride_B_N0, Stride_B_N1, Stride_B_K0, Stride_B_K1
\n
"
);
printf
(
"arg15 to 18: Stride_E_M0, Stride_E_M1, Stride_E_N0, Stride_E_N1
\n
"
);
printf
(
"arg19: scale
\n
"
);
exit
(
0
);
}
auto
f_tensor_space_size
=
[](
auto
lengths
,
auto
strides
)
{
std
::
size_t
space_size
=
1
;
for
(
std
::
size_t
i
=
0
;
i
<
lengths
.
size
();
++
i
)
{
space_size
+=
(
lengths
[
i
]
-
1
)
*
strides
[
i
];
}
return
space_size
;
};
SimpleDeviceMem
a_device_buf
(
sizeof
(
ADataType
)
*
f_tensor_space_size
(
a_ms_ks_lengths
,
a_ms_ks_strides
));
SimpleDeviceMem
b_device_buf
(
sizeof
(
BDataType
)
*
f_tensor_space_size
(
b_ns_ks_lengths
,
b_ns_ks_strides
));
SimpleDeviceMem
e_device_buf
(
sizeof
(
EDataType
)
*
f_tensor_space_size
(
e_ms_ns_lengths
,
e_ms_ns_strides
));
using
DeviceOp
=
ck
::
tensor_operation
::
device
::
DeviceContractionMultipleD
<
NumDimM
,
NumDimN
,
NumDimK
,
ADataType
,
BDataType
,
ck
::
Tuple
<>
,
EDataType
,
ck
::
tensor_operation
::
element_wise
::
PassThrough
,
ck
::
tensor_operation
::
element_wise
::
PassThrough
,
ck
::
tensor_operation
::
element_wise
::
Scale
>
;
// get device op instances
const
auto
op_ptrs
=
ck
::
tensor_operation
::
device
::
instance
::
DeviceOperationInstanceFactory
<
DeviceOp
>::
GetInstances
();
std
::
cout
<<
"found "
<<
op_ptrs
.
size
()
<<
" instances"
<<
std
::
endl
;
const
auto
a_element_op
=
AElementOp
{};
const
auto
b_element_op
=
BElementOp
{};
const
auto
cde_element_op
=
CDEElementOp
{
scale
};
std
::
string
best_op_name
;
bool
found
=
false
;
int
best_op_id
=
-
1
;
float
best_ave_time
=
0
;
float
best_tflops
=
0
;
float
best_gb_per_sec
=
0
;
// profile device operation instances
std
::
cout
<<
"Run all instances and do timing"
<<
std
::
endl
;
for
(
int
i
=
0
;
i
<
op_ptrs
.
size
();
++
i
)
{
auto
&
op_ptr
=
op_ptrs
[
i
];
auto
argument_ptr
=
op_ptr
->
MakeArgumentPointer
(
a_device_buf
.
GetDeviceBuffer
(),
b_device_buf
.
GetDeviceBuffer
(),
std
::
array
<
const
void
*
,
0
>
{},
e_device_buf
.
GetDeviceBuffer
(),
a_ms_ks_lengths
,
a_ms_ks_strides
,
b_ns_ks_lengths
,
b_ns_ks_strides
,
std
::
array
<
std
::
vector
<
ck
::
index_t
>
,
0
>
{},
std
::
array
<
std
::
vector
<
ck
::
index_t
>
,
0
>
{},
e_ms_ns_lengths
,
e_ms_ns_strides
,
a_element_op
,
b_element_op
,
cde_element_op
);
auto
invoker_ptr
=
op_ptr
->
MakeInvokerPointer
();
std
::
string
op_name
=
op_ptr
->
GetTypeString
();
if
(
op_ptr
->
IsSupportedArgument
(
argument_ptr
.
get
()))
{
float
ave_time
=
invoker_ptr
->
Run
(
argument_ptr
.
get
(),
StreamConfig
{
nullptr
,
true
});
ck
::
index_t
M
=
std
::
accumulate
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
begin
()
+
NumDimM
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
ck
::
index_t
N
=
std
::
accumulate
(
e_ms_ns_lengths
.
begin
()
+
NumDimM
,
e_ms_ns_lengths
.
begin
()
+
NumDimM
+
NumDimN
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
ck
::
index_t
K
=
std
::
accumulate
(
a_ms_ks_lengths
.
begin
()
+
NumDimM
,
a_ms_ks_lengths
.
begin
()
+
NumDimM
+
NumDimK
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
std
::
size_t
flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
sizeof
(
EDataType
)
*
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: "
<<
std
::
setw
(
10
)
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s, "
<<
op_name
<<
std
::
endl
;
if
(
tflops
>
best_tflops
)
{
found
=
true
;
best_op_id
=
i
;
best_op_name
=
op_name
;
best_tflops
=
tflops
;
best_ave_time
=
ave_time
;
best_gb_per_sec
=
gb_per_sec
;
}
}
else
{
std
::
cout
<<
op_name
<<
" does not support this problem"
<<
std
::
endl
;
}
}
std
::
cout
<<
"Best Perf: "
<<
best_ave_time
<<
" ms, "
<<
best_tflops
<<
" TFlops, "
<<
best_gb_per_sec
<<
" GB/s, "
<<
best_op_name
<<
std
::
endl
;
return
0
;
}
client_example/CMakeLists.txt
View file @
6f393c3d
...
@@ -9,3 +9,4 @@ message(STATUS "Build with HIP ${hip_VERSION}")
...
@@ -9,3 +9,4 @@ message(STATUS "Build with HIP ${hip_VERSION}")
add_subdirectory
(
01_gemm
)
add_subdirectory
(
01_gemm
)
add_subdirectory
(
02_gemm_add_add_fastgelu
)
add_subdirectory
(
02_gemm_add_add_fastgelu
)
add_subdirectory
(
03_gemm_layernorm
)
add_subdirectory
(
03_gemm_layernorm
)
add_subdirectory
(
04_contraction
)
example/02_gemm_bilinear/gemm_bilinear_xdl_fp16.cpp
View file @
6f393c3d
...
@@ -213,15 +213,15 @@ int main(int argc, char* argv[])
...
@@ -213,15 +213,15 @@ int main(int argc, char* argv[])
d_m_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
DDataType
>
{
-
0.5
,
0.5
});
d_m_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
DDataType
>
{
-
0.5
,
0.5
});
}
}
DeviceMem
a_
m_k_
device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
a_device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
b_
k_n_
device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
b_device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
d_
m_n_
device_buf
(
sizeof
(
DDataType
)
*
d_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
d_device_buf
(
sizeof
(
DDataType
)
*
d_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
e_
m_n_
device_buf
(
sizeof
(
EDataType
)
*
e_m_n_device_result
.
mDesc
.
GetElementSpace
());
DeviceMem
e_device_buf
(
sizeof
(
EDataType
)
*
e_m_n_device_result
.
mDesc
.
GetElementSpace
());
a_
m_k_
device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
a_device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
b_
k_n_
device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
b_device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
d_
m_n_
device_buf
.
ToDevice
(
d_m_n
.
mData
.
data
());
d_device_buf
.
ToDevice
(
d_m_n
.
mData
.
data
());
e_
m_n_
device_buf
.
ToDevice
(
e_m_n_device_result
.
mData
.
data
());
e_device_buf
.
ToDevice
(
e_m_n_device_result
.
mData
.
data
());
auto
a_element_op
=
AElementOp
{};
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
b_element_op
=
BElementOp
{};
...
@@ -231,10 +231,10 @@ int main(int argc, char* argv[])
...
@@ -231,10 +231,10 @@ int main(int argc, char* argv[])
auto
device_op
=
DeviceOpInstance
{};
auto
device_op
=
DeviceOpInstance
{};
auto
invoker
=
device_op
.
MakeInvoker
();
auto
invoker
=
device_op
.
MakeInvoker
();
auto
argument
=
auto
argument
=
device_op
.
MakeArgument
(
a_
m_k_
device_buf
.
GetDeviceBuffer
(),
device_op
.
MakeArgument
(
a_device_buf
.
GetDeviceBuffer
(),
b_
k_n_
device_buf
.
GetDeviceBuffer
(),
b_device_buf
.
GetDeviceBuffer
(),
std
::
array
<
const
void
*
,
1
>
{
d_
m_n_
device_buf
.
GetDeviceBuffer
()},
std
::
array
<
const
void
*
,
1
>
{
d_device_buf
.
GetDeviceBuffer
()},
e_
m_n_
device_buf
.
GetDeviceBuffer
(),
e_device_buf
.
GetDeviceBuffer
(),
M
,
M
,
N
,
N
,
K
,
K
,
...
@@ -266,7 +266,7 @@ int main(int argc, char* argv[])
...
@@ -266,7 +266,7 @@ int main(int argc, char* argv[])
std
::
cout
<<
"Perf: "
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s"
std
::
cout
<<
"Perf: "
<<
ave_time
<<
" ms, "
<<
tflops
<<
" TFlops, "
<<
gb_per_sec
<<
" GB/s"
<<
std
::
endl
;
<<
std
::
endl
;
e_
m_n_
device_buf
.
FromDevice
(
e_m_n_device_result
.
mData
.
data
());
e_device_buf
.
FromDevice
(
e_m_n_device_result
.
mData
.
data
());
if
(
do_verification
)
if
(
do_verification
)
{
{
...
@@ -296,7 +296,7 @@ int main(int argc, char* argv[])
...
@@ -296,7 +296,7 @@ int main(int argc, char* argv[])
}
}
}
}
e_
m_n_
device_buf
.
FromDevice
(
e_m_n_device_result
.
mData
.
data
());
e_device_buf
.
FromDevice
(
e_m_n_device_result
.
mData
.
data
());
return
ck
::
utils
::
check_err
(
e_m_n_device_result
.
mData
,
e_m_n_host_result
.
mData
)
?
0
:
1
;
return
ck
::
utils
::
check_err
(
e_m_n_device_result
.
mData
,
e_m_n_host_result
.
mData
)
?
0
:
1
;
}
}
...
...
example/03_gemm_bias_relu/gemm_bias_relu_xdl_fp16.cpp
View file @
6f393c3d
...
@@ -191,14 +191,14 @@ int main(int argc, char* argv[])
...
@@ -191,14 +191,14 @@ int main(int argc, char* argv[])
d_m_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
DDataType
>
{
0.0
,
1.0
});
d_m_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
DDataType
>
{
0.0
,
1.0
});
}
}
DeviceMem
a_
m_k_
device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
a_device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
b_
k_n_
device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
b_device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
d_
m_n_
device_buf
(
sizeof
(
DDataType
)
*
d_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
d_device_buf
(
sizeof
(
DDataType
)
*
d_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
e_
m_n_
device_buf
(
sizeof
(
EDataType
)
*
e_m_n_device_result
.
mDesc
.
GetElementSpace
());
DeviceMem
e_device_buf
(
sizeof
(
EDataType
)
*
e_m_n_device_result
.
mDesc
.
GetElementSpace
());
a_
m_k_
device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
a_device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
b_
k_n_
device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
b_device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
d_
m_n_
device_buf
.
ToDevice
(
d_m_n
.
mData
.
data
());
d_device_buf
.
ToDevice
(
d_m_n
.
mData
.
data
());
auto
a_element_op
=
AElementOp
{};
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
b_element_op
=
BElementOp
{};
...
@@ -210,10 +210,10 @@ int main(int argc, char* argv[])
...
@@ -210,10 +210,10 @@ int main(int argc, char* argv[])
auto
invoker
=
device_op
.
MakeInvoker
();
auto
invoker
=
device_op
.
MakeInvoker
();
auto
argument
=
auto
argument
=
device_op
.
MakeArgument
(
a_
m_k_
device_buf
.
GetDeviceBuffer
(),
device_op
.
MakeArgument
(
a_device_buf
.
GetDeviceBuffer
(),
b_
k_n_
device_buf
.
GetDeviceBuffer
(),
b_device_buf
.
GetDeviceBuffer
(),
std
::
array
<
const
void
*
,
1
>
{
d_
m_n_
device_buf
.
GetDeviceBuffer
()},
std
::
array
<
const
void
*
,
1
>
{
d_device_buf
.
GetDeviceBuffer
()},
e_
m_n_
device_buf
.
GetDeviceBuffer
(),
e_device_buf
.
GetDeviceBuffer
(),
M
,
M
,
N
,
N
,
K
,
K
,
...
@@ -246,7 +246,7 @@ int main(int argc, char* argv[])
...
@@ -246,7 +246,7 @@ int main(int argc, char* argv[])
if
(
do_verification
)
if
(
do_verification
)
{
{
e_
m_n_
device_buf
.
FromDevice
(
e_m_n_device_result
.
mData
.
data
());
e_device_buf
.
FromDevice
(
e_m_n_device_result
.
mData
.
data
());
Tensor
<
AccDataType
>
c_m_n
(
f_host_tensor_descriptor
(
M
,
N
,
StrideE
,
ELayout
{}));
Tensor
<
AccDataType
>
c_m_n
(
f_host_tensor_descriptor
(
M
,
N
,
StrideE
,
ELayout
{}));
...
...
example/04_gemm_add_add_fastgelu/gemm_add_add_fastgelu_xdl_fp16.cpp
View file @
6f393c3d
...
@@ -156,16 +156,16 @@ int main(int argc, char* argv[])
...
@@ -156,16 +156,16 @@ int main(int argc, char* argv[])
d1_m_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
D1DataType
>
{
0.0
,
1.0
});
d1_m_n
.
GenerateTensorValue
(
GeneratorTensor_3
<
D1DataType
>
{
0.0
,
1.0
});
}
}
DeviceMem
a_
m_k_
device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
a_device_buf
(
sizeof
(
ADataType
)
*
a_m_k
.
mDesc
.
GetElementSpace
());
DeviceMem
b_
k_n_
device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
b_device_buf
(
sizeof
(
BDataType
)
*
b_k_n
.
mDesc
.
GetElementSpace
());
DeviceMem
d0_
m_n_
device_buf
(
sizeof
(
D0DataType
)
*
d0_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
d0_device_buf
(
sizeof
(
D0DataType
)
*
d0_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
d1_
m_n_
device_buf
(
sizeof
(
D1DataType
)
*
d1_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
d1_device_buf
(
sizeof
(
D1DataType
)
*
d1_m_n
.
mDesc
.
GetElementSpace
());
DeviceMem
e_
m_n_
device_buf
(
sizeof
(
EDataType
)
*
e_m_n_device_result
.
mDesc
.
GetElementSpace
());
DeviceMem
e_device_buf
(
sizeof
(
EDataType
)
*
e_m_n_device_result
.
mDesc
.
GetElementSpace
());
a_
m_k_
device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
a_device_buf
.
ToDevice
(
a_m_k
.
mData
.
data
());
b_
k_n_
device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
b_device_buf
.
ToDevice
(
b_k_n
.
mData
.
data
());
d0_
m_n_
device_buf
.
ToDevice
(
d0_m_n
.
mData
.
data
());
d0_device_buf
.
ToDevice
(
d0_m_n
.
mData
.
data
());
d1_
m_n_
device_buf
.
ToDevice
(
d1_m_n
.
mData
.
data
());
d1_device_buf
.
ToDevice
(
d1_m_n
.
mData
.
data
());
auto
a_element_op
=
AElementOp
{};
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
b_element_op
=
BElementOp
{};
...
@@ -175,11 +175,11 @@ int main(int argc, char* argv[])
...
@@ -175,11 +175,11 @@ int main(int argc, char* argv[])
auto
device_op
=
DeviceOpInstance
{};
auto
device_op
=
DeviceOpInstance
{};
auto
invoker
=
device_op
.
MakeInvoker
();
auto
invoker
=
device_op
.
MakeInvoker
();
auto
argument
=
auto
argument
=
device_op
.
MakeArgument
(
a_
m_k_
device_buf
.
GetDeviceBuffer
(),
device_op
.
MakeArgument
(
a_device_buf
.
GetDeviceBuffer
(),
b_
k_n_
device_buf
.
GetDeviceBuffer
(),
b_device_buf
.
GetDeviceBuffer
(),
std
::
array
<
const
void
*
,
2
>
{
d0_
m_n_
device_buf
.
GetDeviceBuffer
(),
std
::
array
<
const
void
*
,
2
>
{
d0_device_buf
.
GetDeviceBuffer
(),
d1_
m_n_
device_buf
.
GetDeviceBuffer
()},
d1_device_buf
.
GetDeviceBuffer
()},
e_
m_n_
device_buf
.
GetDeviceBuffer
(),
e_device_buf
.
GetDeviceBuffer
(),
M
,
M
,
N
,
N
,
K
,
K
,
...
@@ -239,7 +239,7 @@ int main(int argc, char* argv[])
...
@@ -239,7 +239,7 @@ int main(int argc, char* argv[])
}
}
}
}
e_
m_n_
device_buf
.
FromDevice
(
e_m_n_device_result
.
mData
.
data
());
e_device_buf
.
FromDevice
(
e_m_n_device_result
.
mData
.
data
());
return
ck
::
utils
::
check_err
(
e_m_n_device_result
.
mData
,
e_m_n_host_result
.
mData
)
?
0
:
1
;
return
ck
::
utils
::
check_err
(
e_m_n_device_result
.
mData
,
e_m_n_host_result
.
mData
)
?
0
:
1
;
}
}
...
...
example/21_gemm_layernorm/gemm_bias_relu_add_layernorm_xdl_fp16.cpp
View file @
6f393c3d
...
@@ -166,15 +166,15 @@ void host_gemm_layernorm(Tensor<LayerNormOutDataType>& out_m_n,
...
@@ -166,15 +166,15 @@ void host_gemm_layernorm(Tensor<LayerNormOutDataType>& out_m_n,
for
(
int
m
=
0
;
m
<
M
;
++
m
)
for
(
int
m
=
0
;
m
<
M
;
++
m
)
for
(
int
n
=
0
;
n
<
N
;
++
n
)
for
(
int
n
=
0
;
n
<
N
;
++
n
)
{
{
AccDataType
acc
=
AccDataType
acc
=
ck
::
type_convert
<
AccDataType
>
(
c_m_n
(
m
,
n
))
+
static_cast
<
AccDataType
>
(
c_m_n
(
m
,
n
))
+
static_cas
t
<
AccDataType
>
(
bias_n
(
n
));
ck
::
type_conver
t
<
AccDataType
>
(
bias_n
(
n
));
AccDataType
c1
=
static_cas
t
<
AccDataType
>
(
c1_m_n
(
m
,
n
));
AccDataType
c1
=
ck
::
type_conver
t
<
AccDataType
>
(
c1_m_n
(
m
,
n
));
c_element_op
(
acc
,
acc
);
c_element_op
(
acc
,
acc
);
c1_element_op
(
c1
,
c1
);
c1_element_op
(
c1
,
c1
);
acc
+=
c1
;
acc
+=
c1
;
c_m_n
(
m
,
n
)
=
static_cas
t
<
CDataType
>
(
acc
);
c_m_n
(
m
,
n
)
=
ck
::
type_conver
t
<
CDataType
>
(
acc
);
}
}
// reduce_mean and reduce_square_mean
// reduce_mean and reduce_square_mean
...
@@ -208,12 +208,12 @@ void host_gemm_layernorm(Tensor<LayerNormOutDataType>& out_m_n,
...
@@ -208,12 +208,12 @@ void host_gemm_layernorm(Tensor<LayerNormOutDataType>& out_m_n,
{
{
AccDataType
out_acc
=
0
;
AccDataType
out_acc
=
0
;
layerNormInst
(
out_acc
,
layerNormInst
(
out_acc
,
static_cas
t
<
AccDataType
>
(
c_m_n
(
m
,
n
)),
ck
::
type_conver
t
<
AccDataType
>
(
c_m_n
(
m
,
n
)),
static_cas
t
<
AccDataType
>
(
mean_m
(
m
)),
ck
::
type_conver
t
<
AccDataType
>
(
mean_m
(
m
)),
static_cas
t
<
AccDataType
>
(
meanSquare_m
(
m
)),
ck
::
type_conver
t
<
AccDataType
>
(
meanSquare_m
(
m
)),
static_cas
t
<
AccDataType
>
(
gamma_n
(
n
)),
ck
::
type_conver
t
<
AccDataType
>
(
gamma_n
(
n
)),
static_cas
t
<
AccDataType
>
(
beta_n
(
n
)));
ck
::
type_conver
t
<
AccDataType
>
(
beta_n
(
n
)));
out_m_n
(
m
,
n
)
=
static_cas
t
<
ReduceDataType
>
(
out_acc
);
out_m_n
(
m
,
n
)
=
ck
::
type_conver
t
<
ReduceDataType
>
(
out_acc
);
}
}
}
}
}
}
...
...
example/26_contraction/CMakeLists.txt
0 → 100644
View file @
6f393c3d
add_example_executable
(
example_contraction_bilinear_xdl_fp32 contraction_bilinear_xdl_fp32.cpp
)
add_example_executable
(
example_contraction_scale_xdl_fp32 contraction_scale_xdl_fp32.cpp
)
example/26_contraction/README.md
0 → 100644
View file @
6f393c3d
# Instructions for ```example_contraction_bilinear_xdl_fp32```
## Run
```
bash
#arg1: verification (0=no, 1=yes)
#arg2: initialization (0=no init, 1=integer value, 2=decimal value)
#arg3: time kernel (0=no, 1=yes)
./bin/example_contraction_bilinear_xdl_fp32 1 1 1
```
Result (MI100 @ dynammic freq, 46TFlops peak FP32)
```
a_ms_ks: dim 4, lengths {30, 128, 32, 64}, strides {524288, 4096, 128, 1}
b_ks_ns: dim 4, lengths {32, 64, 32, 64}, strides {128, 1, 524288, 4096}
c_ms_ns: dim 4, lengths {30, 128, 32, 64}, strides {524288, 4096, 128, 1}
launch_and_time_kernel: grid_dim {240, 1, 1}, block_dim {256, 1, 1}
Warm up 1 time
Start running 10 times...
Perf: 0.843286 ms, 38.1985 TFlops, 94.5014 GB/s, DeviceContractionMultipleD_Xdl_CShuffle<256, 256, 128, 16, 4, 4>
```
example/26_contraction/contraction_bilinear_xdl_fp32.cpp
0 → 100644
View file @
6f393c3d
// SPDX-License-Identifier: MIT
// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
#include <iostream>
#include <numeric>
#include <initializer_list>
#include <cstdlib>
#include "ck/ck.hpp"
#include "ck/tensor_operation/gpu/device/gemm_specialization.hpp"
#include "ck/tensor_operation/gpu/device/device_contraction_multiple_d_xdl_cshuffle.hpp"
#include "ck/tensor_operation/gpu/element/element_wise_operation.hpp"
#include "ck/library/utility/check_err.hpp"
#include "ck/library/host_tensor/device_memory.hpp"
#include "ck/library/host_tensor/host_tensor.hpp"
#include "ck/library/host_tensor/host_tensor_generator.hpp"
template
<
ck
::
index_t
...
Is
>
using
S
=
ck
::
Sequence
<
Is
...
>
;
using
F32
=
float
;
using
PassThrough
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
ADataType
=
F32
;
using
BDataType
=
F32
;
using
AccDataType
=
F32
;
using
CShuffleDataType
=
F32
;
using
DDataType
=
F32
;
using
DsDataType
=
ck
::
Tuple
<
DDataType
>
;
using
EDataType
=
F32
;
static
constexpr
ck
::
index_t
NumDimM
=
2
;
static
constexpr
ck
::
index_t
NumDimN
=
2
;
static
constexpr
ck
::
index_t
NumDimK
=
2
;
using
AElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
BElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
CDEElementOp
=
ck
::
tensor_operation
::
element_wise
::
Bilinear
;
static
constexpr
auto
GemmSpec
=
ck
::
tensor_operation
::
device
::
GemmSpecialization
::
MNKPadding
;
// clang-format off
using
DeviceOpInstanceKKNN
=
ck
::
tensor_operation
::
device
::
//#####################################| NumDimM| NumDimN| NumDimK| AData| BData| AccData| CShuffle| DsData| EData| A| B| CDE| 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|
//#####################################| | | | Type| Type| Type| DataType| Type| Type| Elementwise| Elementwise| Elementwise| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MWaveMPerXdl| ScalarPerVector|
//#####################################| | | | | | | | | | 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_NWaveNPerXdl| _NWaveNPerXdl|
//#####################################| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceContractionMultipleD_Xdl_CShuffle
<
NumDimM
,
NumDimN
,
NumDimK
,
F32
,
F32
,
F32
,
F32
,
DsDataType
,
F32
,
AElementOp
,
BElementOp
,
CDEElementOp
,
GemmSpec
,
1
,
256
,
256
,
128
,
16
,
4
,
4
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
4
,
4
,
1
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
4
,
4
,
1
,
1
,
1
,
S
<
1
,
16
,
1
,
16
>
,
4
>
;
using
DeviceOpInstanceKNNN
=
ck
::
tensor_operation
::
device
::
//#####################################| NumDimM| NumDimN| NumDimK| AData| BData| AccData| CShuffle| DsData| EData| A| B| CDE| 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|
//#####################################| | | | Type| Type| Type| DataType| Type| Type| Elementwise| Elementwise| Elementwise| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MWaveMPerXdl| ScalarPerVector|
//#####################################| | | | | | | | | | 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_NWaveNPerXdl| _NWaveNPerXdl|
//#####################################| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceContractionMultipleD_Xdl_CShuffle
<
NumDimM
,
NumDimN
,
NumDimK
,
F32
,
F32
,
F32
,
F32
,
DsDataType
,
F32
,
AElementOp
,
BElementOp
,
CDEElementOp
,
GemmSpec
,
1
,
256
,
256
,
128
,
16
,
4
,
1
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
4
,
4
,
1
,
S
<
8
,
32
,
1
>
,
S
<
0
,
2
,
1
>
,
S
<
0
,
2
,
1
>
,
1
,
4
,
1
,
0
,
1
,
1
,
S
<
1
,
16
,
1
,
16
>
,
4
>
;
using
DeviceOpInstanceMKNN
=
ck
::
tensor_operation
::
device
::
//#####################################| NumDimM| NumDimN| NumDimK| AData| BData| AccData| CShuffle| DsData| EData| A| B| CDE| 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|
//#####################################| | | | Type| Type| Type| DataType| Type| Type| Elementwise| Elementwise| Elementwise| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MWaveMPerXdl| ScalarPerVector|
//#####################################| | | | | | | | | | 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_NWaveNPerXdl| _NWaveNPerXdl|
//#####################################| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceContractionMultipleD_Xdl_CShuffle
<
NumDimM
,
NumDimN
,
NumDimK
,
F32
,
F32
,
F32
,
F32
,
DsDataType
,
F32
,
AElementOp
,
BElementOp
,
CDEElementOp
,
GemmSpec
,
1
,
256
,
256
,
128
,
16
,
1
,
4
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
0
,
2
,
1
>
,
S
<
0
,
2
,
1
>
,
1
,
4
,
1
,
0
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
4
,
4
,
1
,
1
,
1
,
S
<
1
,
16
,
1
,
16
>
,
4
>
;
using
DeviceOpInstanceMNNN
=
ck
::
tensor_operation
::
device
::
//#####################################| NumDimM| NumDimN| NumDimK| AData| BData| AccData| CShuffle| DsData| EData| A| B| CDE| 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|
//#####################################| | | | Type| Type| Type| DataType| Type| Type| Elementwise| Elementwise| Elementwise| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MWaveMPerXdl| ScalarPerVector|
//#####################################| | | | | | | | | | 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_NWaveNPerXdl| _NWaveNPerXdl|
//#####################################| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceContractionMultipleD_Xdl_CShuffle
<
NumDimM
,
NumDimN
,
NumDimK
,
F32
,
F32
,
F32
,
F32
,
DsDataType
,
F32
,
AElementOp
,
BElementOp
,
CDEElementOp
,
GemmSpec
,
1
,
256
,
256
,
128
,
16
,
1
,
1
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
0
,
2
,
1
>
,
S
<
0
,
2
,
1
>
,
1
,
4
,
1
,
0
,
S
<
8
,
32
,
1
>
,
S
<
0
,
2
,
1
>
,
S
<
0
,
2
,
1
>
,
1
,
4
,
1
,
0
,
1
,
1
,
S
<
1
,
16
,
1
,
16
>
,
4
>
;
// clang-format on
using
DeviceOpInstance
=
DeviceOpInstanceKKNN
;
// hardcoded for NumDimM == NumDimN == NumDimK == 2
template
<
ck
::
index_t
NumDimM
,
ck
::
index_t
NumDimN
,
ck
::
index_t
NumDimK
,
typename
ADataType
,
typename
BDataType
,
typename
EDataType
,
typename
AccDataType
,
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CDEElementwiseOperation
,
ck
::
enable_if_t
<
NumDimM
==
2
&&
NumDimN
==
2
&&
NumDimK
==
2
,
bool
>
=
false
>
struct
ReferenceContraction_M2_N2_K2
:
public
ck
::
tensor_operation
::
device
::
BaseOperator
{
// Argument
struct
Argument
:
public
ck
::
tensor_operation
::
device
::
BaseArgument
{
Argument
(
const
Tensor
<
ADataType
>&
a_ms_ks
,
const
Tensor
<
BDataType
>&
b_ns_ks
,
Tensor
<
EDataType
>&
e_ms_ns
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CDEElementwiseOperation
cde_element_op
)
:
a_ms_ks_
{
a_ms_ks
},
b_ns_ks_
{
b_ns_ks
},
e_ms_ns_
{
e_ms_ns
},
a_element_op_
{
a_element_op
},
b_element_op_
{
b_element_op
},
cde_element_op_
{
cde_element_op
}
{
}
const
Tensor
<
ADataType
>&
a_ms_ks_
;
const
Tensor
<
BDataType
>&
b_ns_ks_
;
Tensor
<
EDataType
>&
e_ms_ns_
;
AElementwiseOperation
a_element_op_
;
BElementwiseOperation
b_element_op_
;
CDEElementwiseOperation
cde_element_op_
;
};
// Invoker
struct
Invoker
:
public
ck
::
tensor_operation
::
device
::
BaseInvoker
{
using
Argument
=
ReferenceContraction_M2_N2_K2
::
Argument
;
float
Run
(
const
Argument
&
arg
)
{
auto
f_ms_ns
=
[
&
](
auto
m0
,
auto
m1
,
auto
n0
,
auto
n1
)
{
const
int
K0
=
arg
.
a_ms_ks_
.
mDesc
.
GetLengths
()[
2
];
const
int
K1
=
arg
.
a_ms_ks_
.
mDesc
.
GetLengths
()[
3
];
AccDataType
v_acc
=
0
;
for
(
int
k0
=
0
;
k0
<
K0
;
++
k0
)
{
for
(
int
k1
=
0
;
k1
<
K1
;
++
k1
)
{
AccDataType
v_a
;
AccDataType
v_b
;
arg
.
a_element_op_
(
v_a
,
ck
::
type_convert
<
const
AccDataType
>
(
arg
.
a_ms_ks_
(
m0
,
m1
,
k0
,
k1
)));
arg
.
b_element_op_
(
v_b
,
ck
::
type_convert
<
const
AccDataType
>
(
arg
.
b_ns_ks_
(
n0
,
n1
,
k0
,
k1
)));
v_acc
+=
v_a
*
v_b
;
}
}
AccDataType
v_c
;
arg
.
cde_element_op_
(
v_c
,
v_acc
);
arg
.
e_ms_ns_
(
m0
,
m1
,
n0
,
n1
)
=
v_c
;
};
make_ParallelTensorFunctor
(
f_ms_ns
,
arg
.
e_ms_ns_
.
mDesc
.
GetLengths
()[
0
],
arg
.
e_ms_ns_
.
mDesc
.
GetLengths
()[
1
],
arg
.
e_ms_ns_
.
mDesc
.
GetLengths
()[
2
],
arg
.
e_ms_ns_
.
mDesc
.
GetLengths
()[
3
])(
std
::
thread
::
hardware_concurrency
());
return
0
;
}
float
Run
(
const
ck
::
tensor_operation
::
device
::
BaseArgument
*
p_arg
,
const
StreamConfig
&
/* stream_config */
=
StreamConfig
{})
override
{
return
Run
(
*
dynamic_cast
<
const
Argument
*>
(
p_arg
));
}
};
static
constexpr
bool
IsValidCompilationParameter
()
{
// TODO: properly implement this check
return
true
;
}
bool
IsSupportedArgument
(
const
ck
::
tensor_operation
::
device
::
BaseArgument
*
)
override
{
return
true
;
}
static
auto
MakeArgument
(
const
Tensor
<
ADataType
>&
a_ms_ks
,
const
Tensor
<
BDataType
>&
b_ns_ks
,
Tensor
<
EDataType
>&
e_ms_ns
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CDEElementwiseOperation
cde_element_op
)
{
return
Argument
{
a_ms_ks
,
b_ns_ks
,
e_ms_ns
,
a_element_op
,
b_element_op
,
cde_element_op
};
}
static
auto
MakeInvoker
()
{
return
Invoker
{};
}
virtual
std
::
unique_ptr
<
ck
::
tensor_operation
::
device
::
BaseInvoker
>
MakeInvokerPointer
()
{
return
std
::
make_unique
<
Invoker
>
(
Invoker
{});
}
std
::
string
GetTypeString
()
const
override
{
auto
str
=
std
::
stringstream
();
// clang-format off
str
<<
"ReferenceContraction_M2_N2_K2"
<<
std
::
endl
;
// clang-format on
return
str
.
str
();
}
};
int
main
(
int
argc
,
char
*
argv
[])
{
bool
do_verification
=
true
;
int
init_method
=
1
;
bool
time_kernel
=
false
;
// A[M0, M1, K0, K1]
std
::
vector
<
ck
::
index_t
>
a_ms_ks_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
a_ms_ks_strides
{
524288
,
4096
,
128
,
1
};
// B[N0, N1, K0, K1]
std
::
vector
<
ck
::
index_t
>
b_ns_ks_lengths
{
32
,
64
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
b_ns_ks_strides
{
524288
,
4096
,
128
,
1
};
// D[M0, M1, N0, N1]
std
::
vector
<
ck
::
index_t
>
d_ms_ns_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
d_ms_ns_strides
{
524288
,
4096
,
128
,
1
};
// E[M0, M1, N0, N1]
std
::
vector
<
ck
::
index_t
>
e_ms_ns_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
e_ms_ns_strides
{
524288
,
4096
,
128
,
1
};
float
alpha
=
1.
f
;
float
beta
=
1.
f
;
if
(
argc
==
1
)
{
// use default case
}
else
if
(
argc
==
4
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
}
else
if
(
argc
==
28
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
const
ck
::
index_t
M0
=
std
::
stoi
(
argv
[
4
]);
const
ck
::
index_t
M1
=
std
::
stoi
(
argv
[
5
]);
const
ck
::
index_t
N0
=
std
::
stoi
(
argv
[
6
]);
const
ck
::
index_t
N1
=
std
::
stoi
(
argv
[
7
]);
const
ck
::
index_t
K0
=
std
::
stoi
(
argv
[
8
]);
const
ck
::
index_t
K1
=
std
::
stoi
(
argv
[
9
]);
a_ms_ks_lengths
=
{
M0
,
M1
,
K0
,
K1
};
a_ms_ks_strides
=
{
std
::
stoi
(
argv
[
10
]),
std
::
stoi
(
argv
[
11
]),
std
::
stoi
(
argv
[
12
]),
std
::
stoi
(
argv
[
13
])};
b_ns_ks_lengths
=
{
N0
,
N1
,
K0
,
K1
};
b_ns_ks_strides
=
{
std
::
stoi
(
argv
[
14
]),
std
::
stoi
(
argv
[
15
]),
std
::
stoi
(
argv
[
16
]),
std
::
stoi
(
argv
[
17
])};
d_ms_ns_lengths
=
{
M0
,
M1
,
N0
,
N1
};
d_ms_ns_strides
=
{
std
::
stoi
(
argv
[
18
]),
std
::
stoi
(
argv
[
19
]),
std
::
stoi
(
argv
[
20
]),
std
::
stoi
(
argv
[
21
])};
e_ms_ns_lengths
=
{
M0
,
M1
,
N0
,
N1
};
e_ms_ns_strides
=
{
std
::
stoi
(
argv
[
22
]),
std
::
stoi
(
argv
[
23
]),
std
::
stoi
(
argv
[
24
]),
std
::
stoi
(
argv
[
25
])};
alpha
=
std
::
stof
(
argv
[
26
]);
beta
=
std
::
stof
(
argv
[
27
]);
}
else
{
printf
(
"arg1: verification (0=no, 1=yes)
\n
"
);
printf
(
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
);
printf
(
"arg3: time kernel (0=no, 1=yes)
\n
"
);
printf
(
"arg4 to 7: M0, M1, N0, N1, K0, K1
\n
"
);
printf
(
"arg10 to 13: Stride_A_M0, Stride_A_M1, Stride_A_K0, Stride_A_K1
\n
"
);
printf
(
"arg14 to 17: Stride_B_N0, Stride_B_N1, Stride_B_K0, Stride_B_K1
\n
"
);
printf
(
"arg18 to 21: Stride_D_M0, Stride_D_M1, Stride_D_N0, Stride_D_N1
\n
"
);
printf
(
"arg22 to 25: Stride_E_M0, Stride_E_M1, Stride_E_N0, Stride_E_N1
\n
"
);
printf
(
"arg26 to 27: alpha, beta
\n
"
);
exit
(
0
);
}
Tensor
<
ADataType
>
a_ms_ks
(
std
::
vector
<
std
::
size_t
>
(
a_ms_ks_lengths
.
begin
(),
a_ms_ks_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
a_ms_ks_strides
.
begin
(),
a_ms_ks_strides
.
end
()));
Tensor
<
BDataType
>
b_ns_ks
(
std
::
vector
<
std
::
size_t
>
(
b_ns_ks_lengths
.
begin
(),
b_ns_ks_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
b_ns_ks_strides
.
begin
(),
b_ns_ks_strides
.
end
()));
Tensor
<
EDataType
>
d_ms_ns
(
std
::
vector
<
std
::
size_t
>
(
d_ms_ns_lengths
.
begin
(),
d_ms_ns_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
d_ms_ns_strides
.
begin
(),
d_ms_ns_strides
.
end
()));
Tensor
<
EDataType
>
e_ms_ns_host_result
(
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_strides
.
begin
(),
e_ms_ns_strides
.
end
()));
Tensor
<
EDataType
>
e_ms_ns_device_result
(
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_strides
.
begin
(),
e_ms_ns_strides
.
end
()));
std
::
cout
<<
"a_ms_ks: "
<<
a_ms_ks
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"b_ns_ks: "
<<
b_ns_ks
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"d_ms_ns: "
<<
d_ms_ns
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"e_ms_ns: "
<<
e_ms_ns_host_result
.
mDesc
<<
std
::
endl
;
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
a_ms_ks
.
GenerateTensorValue
(
GeneratorTensor_2
<
ADataType
>
{
-
5
,
5
});
b_ns_ks
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
5
,
5
});
d_ms_ns
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
5
,
5
});
break
;
default:
a_ms_ks
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
0.0
,
1.0
});
b_ns_ks
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
d_ms_ns
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
break
;
}
DeviceMem
a_device_buf
(
sizeof
(
ADataType
)
*
a_ms_ks
.
mDesc
.
GetElementSpace
());
DeviceMem
b_device_buf
(
sizeof
(
BDataType
)
*
b_ns_ks
.
mDesc
.
GetElementSpace
());
DeviceMem
d_device_buf
(
sizeof
(
DDataType
)
*
d_ms_ns
.
mDesc
.
GetElementSpace
());
DeviceMem
e_device_buf
(
sizeof
(
EDataType
)
*
e_ms_ns_device_result
.
mDesc
.
GetElementSpace
());
a_device_buf
.
ToDevice
(
a_ms_ks
.
mData
.
data
());
b_device_buf
.
ToDevice
(
b_ns_ks
.
mData
.
data
());
d_device_buf
.
ToDevice
(
d_ms_ns
.
mData
.
data
());
// set zero
e_device_buf
.
SetZero
();
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
cde_element_op
=
CDEElementOp
{
alpha
,
beta
};
// device operation
auto
op
=
DeviceOpInstance
{};
auto
invoker
=
op
.
MakeInvoker
();
auto
argument
=
op
.
MakeArgument
(
a_device_buf
.
GetDeviceBuffer
(),
b_device_buf
.
GetDeviceBuffer
(),
std
::
array
<
const
void
*
,
1
>
{
d_device_buf
.
GetDeviceBuffer
()},
e_device_buf
.
GetDeviceBuffer
(),
a_ms_ks_lengths
,
a_ms_ks_strides
,
b_ns_ks_lengths
,
b_ns_ks_strides
,
std
::
array
<
std
::
vector
<
ck
::
index_t
>
,
1
>
{
d_ms_ns_lengths
},
std
::
array
<
std
::
vector
<
ck
::
index_t
>
,
1
>
{
d_ms_ns_strides
},
e_ms_ns_lengths
,
e_ms_ns_strides
,
a_element_op
,
b_element_op
,
cde_element_op
);
if
(
!
op
.
IsSupportedArgument
(
argument
))
{
std
::
cout
<<
op
.
GetTypeString
()
<<
" does not support this problem"
<<
std
::
endl
;
return
0
;
}
float
ave_time
=
invoker
.
Run
(
argument
,
StreamConfig
{
nullptr
,
time_kernel
});
ck
::
index_t
M
=
std
::
accumulate
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
begin
()
+
NumDimM
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
ck
::
index_t
N
=
std
::
accumulate
(
e_ms_ns_lengths
.
begin
()
+
NumDimM
,
e_ms_ns_lengths
.
begin
()
+
NumDimM
+
NumDimN
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
ck
::
index_t
K
=
std
::
accumulate
(
a_ms_ks_lengths
.
begin
()
+
NumDimM
,
a_ms_ks_lengths
.
begin
()
+
NumDimM
+
NumDimK
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
std
::
size_t
flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
sizeof
(
DDataType
)
*
M
*
N
+
sizeof
(
EDataType
)
*
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, "
<<
op
.
GetTypeString
()
<<
std
::
endl
;
e_device_buf
.
FromDevice
(
e_ms_ns_device_result
.
mData
.
data
());
if
(
do_verification
)
{
Tensor
<
CShuffleDataType
>
c_ms_ns_host_result
(
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_strides
.
begin
(),
e_ms_ns_strides
.
end
()));
using
ReferenceOpInstance
=
ReferenceContraction_M2_N2_K2
<
NumDimM
,
NumDimN
,
NumDimK
,
ADataType
,
BDataType
,
CShuffleDataType
,
AccDataType
,
AElementOp
,
BElementOp
,
PassThrough
>
;
auto
ref_gemm
=
ReferenceOpInstance
{};
auto
ref_invoker
=
ref_gemm
.
MakeInvoker
();
auto
ref_argument
=
ref_gemm
.
MakeArgument
(
a_ms_ks
,
b_ns_ks
,
c_ms_ns_host_result
,
a_element_op
,
b_element_op
,
PassThrough
{});
ref_invoker
.
Run
(
ref_argument
);
for
(
size_t
m0
=
0
;
m0
<
e_ms_ns_host_result
.
mDesc
.
GetLengths
()[
0
];
++
m0
)
{
for
(
size_t
m1
=
0
;
m1
<
e_ms_ns_host_result
.
mDesc
.
GetLengths
()[
1
];
++
m1
)
{
for
(
size_t
n0
=
0
;
n0
<
e_ms_ns_host_result
.
mDesc
.
GetLengths
()[
2
];
++
n0
)
{
for
(
size_t
n1
=
0
;
n1
<
e_ms_ns_host_result
.
mDesc
.
GetLengths
()[
3
];
++
n1
)
{
cde_element_op
(
e_ms_ns_host_result
(
m0
,
m1
,
n0
,
n1
),
c_ms_ns_host_result
(
m0
,
m1
,
n0
,
n1
),
d_ms_ns
(
m0
,
m1
,
n0
,
n1
));
}
}
}
}
return
ck
::
utils
::
check_err
(
e_ms_ns_device_result
.
mData
,
e_ms_ns_host_result
.
mData
)
?
0
:
1
;
}
return
0
;
}
example/26_contraction/contraction_scale_xdl_fp32.cpp
0 → 100644
View file @
6f393c3d
// SPDX-License-Identifier: MIT
// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
#include <iostream>
#include <numeric>
#include <initializer_list>
#include <cstdlib>
#include "ck/ck.hpp"
#include "ck/tensor_operation/gpu/device/gemm_specialization.hpp"
#include "ck/tensor_operation/gpu/device/device_contraction_multiple_d_xdl_cshuffle.hpp"
#include "ck/tensor_operation/gpu/element/element_wise_operation.hpp"
#include "ck/library/utility/check_err.hpp"
#include "ck/library/host_tensor/device_memory.hpp"
#include "ck/library/host_tensor/host_tensor.hpp"
#include "ck/library/host_tensor/host_tensor_generator.hpp"
template
<
ck
::
index_t
...
Is
>
using
S
=
ck
::
Sequence
<
Is
...
>
;
using
F32
=
float
;
using
PassThrough
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
ADataType
=
F32
;
using
BDataType
=
F32
;
using
AccDataType
=
F32
;
using
CShuffleDataType
=
F32
;
using
DsDataType
=
ck
::
Tuple
<>
;
using
EDataType
=
F32
;
static
constexpr
ck
::
index_t
NumDimM
=
2
;
static
constexpr
ck
::
index_t
NumDimN
=
2
;
static
constexpr
ck
::
index_t
NumDimK
=
2
;
using
AElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
BElementOp
=
ck
::
tensor_operation
::
element_wise
::
PassThrough
;
using
CDEElementOp
=
ck
::
tensor_operation
::
element_wise
::
Scale
;
static
constexpr
auto
GemmSpec
=
ck
::
tensor_operation
::
device
::
GemmSpecialization
::
MNKPadding
;
// clang-format off
using
DeviceOpInstanceKKNN
=
ck
::
tensor_operation
::
device
::
//#####################################| NumDimM| NumDimN| NumDimK| AData| BData| AccData| CShuffle| DsData| EData| A| B| CDE| 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|
//#####################################| | | | Type| Type| Type| DataType| Type| Type| Elementwise| Elementwise| Elementwise| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MWaveMPerXdl| ScalarPerVector|
//#####################################| | | | | | | | | | 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_NWaveNPerXdl| _NWaveNPerXdl|
//#####################################| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceContractionMultipleD_Xdl_CShuffle
<
NumDimM
,
NumDimN
,
NumDimK
,
F32
,
F32
,
F32
,
F32
,
DsDataType
,
F32
,
AElementOp
,
BElementOp
,
CDEElementOp
,
GemmSpec
,
1
,
256
,
256
,
128
,
16
,
4
,
4
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
4
,
4
,
1
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
4
,
4
,
1
,
1
,
1
,
S
<
1
,
16
,
1
,
16
>
,
4
>
;
using
DeviceOpInstanceKNNN
=
ck
::
tensor_operation
::
device
::
//#####################################| NumDimM| NumDimN| NumDimK| AData| BData| AccData| CShuffle| DsData| EData| A| B| CDE| 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|
//#####################################| | | | Type| Type| Type| DataType| Type| Type| Elementwise| Elementwise| Elementwise| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MWaveMPerXdl| ScalarPerVector|
//#####################################| | | | | | | | | | 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_NWaveNPerXdl| _NWaveNPerXdl|
//#####################################| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceContractionMultipleD_Xdl_CShuffle
<
NumDimM
,
NumDimN
,
NumDimK
,
F32
,
F32
,
F32
,
F32
,
DsDataType
,
F32
,
AElementOp
,
BElementOp
,
CDEElementOp
,
GemmSpec
,
1
,
256
,
256
,
128
,
16
,
4
,
1
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
4
,
4
,
1
,
S
<
8
,
32
,
1
>
,
S
<
0
,
2
,
1
>
,
S
<
0
,
2
,
1
>
,
1
,
4
,
1
,
0
,
1
,
1
,
S
<
1
,
16
,
1
,
16
>
,
4
>
;
using
DeviceOpInstanceMKNN
=
ck
::
tensor_operation
::
device
::
//#####################################| NumDimM| NumDimN| NumDimK| AData| BData| AccData| CShuffle| DsData| EData| A| B| CDE| 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|
//#####################################| | | | Type| Type| Type| DataType| Type| Type| Elementwise| Elementwise| Elementwise| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MWaveMPerXdl| ScalarPerVector|
//#####################################| | | | | | | | | | 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_NWaveNPerXdl| _NWaveNPerXdl|
//#####################################| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceContractionMultipleD_Xdl_CShuffle
<
NumDimM
,
NumDimN
,
NumDimK
,
F32
,
F32
,
F32
,
F32
,
DsDataType
,
F32
,
AElementOp
,
BElementOp
,
CDEElementOp
,
GemmSpec
,
1
,
256
,
256
,
128
,
16
,
1
,
4
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
0
,
2
,
1
>
,
S
<
0
,
2
,
1
>
,
1
,
4
,
1
,
0
,
S
<
4
,
64
,
1
>
,
S
<
1
,
0
,
2
>
,
S
<
1
,
0
,
2
>
,
2
,
4
,
4
,
1
,
1
,
1
,
S
<
1
,
16
,
1
,
16
>
,
4
>
;
using
DeviceOpInstanceMNNN
=
ck
::
tensor_operation
::
device
::
//#####################################| NumDimM| NumDimN| NumDimK| AData| BData| AccData| CShuffle| DsData| EData| A| B| CDE| 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|
//#####################################| | | | Type| Type| Type| DataType| Type| Type| Elementwise| Elementwise| Elementwise| Spacialization| Prefetch| Size| Block| Block| Block| | | XDL| XDL| Per| Per| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraM| ThreadCluster| ThreadCluster| SrcAccessOrder| SrcVectorDim| SrcScalar| DstScalar| AddExtraN| MXdlPerWave| NXdlPerWave| _MBlock_MWaveMPerXdl| ScalarPerVector|
//#####################################| | | | | | | | | | 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_NWaveNPerXdl| _NWaveNPerXdl|
//#####################################| | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | | |
DeviceContractionMultipleD_Xdl_CShuffle
<
NumDimM
,
NumDimN
,
NumDimK
,
F32
,
F32
,
F32
,
F32
,
DsDataType
,
F32
,
AElementOp
,
BElementOp
,
CDEElementOp
,
GemmSpec
,
1
,
256
,
256
,
128
,
16
,
1
,
1
,
32
,
32
,
4
,
2
,
S
<
4
,
64
,
1
>
,
S
<
0
,
2
,
1
>
,
S
<
0
,
2
,
1
>
,
1
,
4
,
1
,
0
,
S
<
8
,
32
,
1
>
,
S
<
0
,
2
,
1
>
,
S
<
0
,
2
,
1
>
,
1
,
4
,
1
,
0
,
1
,
1
,
S
<
1
,
16
,
1
,
16
>
,
4
>
;
// clang-format on
using
DeviceOpInstance
=
DeviceOpInstanceKKNN
;
// hardcoded for NumDimM == NumDimN == NumDimK == 2
template
<
ck
::
index_t
NumDimM
,
ck
::
index_t
NumDimN
,
ck
::
index_t
NumDimK
,
typename
ADataType
,
typename
BDataType
,
typename
EDataType
,
typename
AccDataType
,
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CDEElementwiseOperation
,
ck
::
enable_if_t
<
NumDimM
==
2
&&
NumDimN
==
2
&&
NumDimK
==
2
,
bool
>
=
false
>
struct
ReferenceContraction_M2_N2_K2
:
public
ck
::
tensor_operation
::
device
::
BaseOperator
{
// Argument
struct
Argument
:
public
ck
::
tensor_operation
::
device
::
BaseArgument
{
Argument
(
const
Tensor
<
ADataType
>&
a_ms_ks
,
const
Tensor
<
BDataType
>&
b_ns_ks
,
Tensor
<
EDataType
>&
e_ms_ns
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CDEElementwiseOperation
cde_element_op
)
:
a_ms_ks_
{
a_ms_ks
},
b_ns_ks_
{
b_ns_ks
},
e_ms_ns_
{
e_ms_ns
},
a_element_op_
{
a_element_op
},
b_element_op_
{
b_element_op
},
cde_element_op_
{
cde_element_op
}
{
}
const
Tensor
<
ADataType
>&
a_ms_ks_
;
const
Tensor
<
BDataType
>&
b_ns_ks_
;
Tensor
<
EDataType
>&
e_ms_ns_
;
AElementwiseOperation
a_element_op_
;
BElementwiseOperation
b_element_op_
;
CDEElementwiseOperation
cde_element_op_
;
};
// Invoker
struct
Invoker
:
public
ck
::
tensor_operation
::
device
::
BaseInvoker
{
using
Argument
=
ReferenceContraction_M2_N2_K2
::
Argument
;
float
Run
(
const
Argument
&
arg
)
{
auto
f_ms_ns
=
[
&
](
auto
m0
,
auto
m1
,
auto
n0
,
auto
n1
)
{
const
int
K0
=
arg
.
a_ms_ks_
.
mDesc
.
GetLengths
()[
2
];
const
int
K1
=
arg
.
a_ms_ks_
.
mDesc
.
GetLengths
()[
3
];
AccDataType
v_acc
=
0
;
for
(
int
k0
=
0
;
k0
<
K0
;
++
k0
)
{
for
(
int
k1
=
0
;
k1
<
K1
;
++
k1
)
{
AccDataType
v_a
;
AccDataType
v_b
;
arg
.
a_element_op_
(
v_a
,
ck
::
type_convert
<
const
AccDataType
>
(
arg
.
a_ms_ks_
(
m0
,
m1
,
k0
,
k1
)));
arg
.
b_element_op_
(
v_b
,
ck
::
type_convert
<
const
AccDataType
>
(
arg
.
b_ns_ks_
(
n0
,
n1
,
k0
,
k1
)));
v_acc
+=
v_a
*
v_b
;
}
}
AccDataType
v_c
;
arg
.
cde_element_op_
(
v_c
,
v_acc
);
arg
.
e_ms_ns_
(
m0
,
m1
,
n0
,
n1
)
=
v_c
;
};
make_ParallelTensorFunctor
(
f_ms_ns
,
arg
.
e_ms_ns_
.
mDesc
.
GetLengths
()[
0
],
arg
.
e_ms_ns_
.
mDesc
.
GetLengths
()[
1
],
arg
.
e_ms_ns_
.
mDesc
.
GetLengths
()[
2
],
arg
.
e_ms_ns_
.
mDesc
.
GetLengths
()[
3
])(
std
::
thread
::
hardware_concurrency
());
return
0
;
}
float
Run
(
const
ck
::
tensor_operation
::
device
::
BaseArgument
*
p_arg
,
const
StreamConfig
&
/* stream_config */
=
StreamConfig
{})
override
{
return
Run
(
*
dynamic_cast
<
const
Argument
*>
(
p_arg
));
}
};
static
constexpr
bool
IsValidCompilationParameter
()
{
// TODO: properly implement this check
return
true
;
}
bool
IsSupportedArgument
(
const
ck
::
tensor_operation
::
device
::
BaseArgument
*
)
override
{
return
true
;
}
static
auto
MakeArgument
(
const
Tensor
<
ADataType
>&
a_ms_ks
,
const
Tensor
<
BDataType
>&
b_ns_ks
,
Tensor
<
EDataType
>&
e_ms_ns
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CDEElementwiseOperation
cde_element_op
)
{
return
Argument
{
a_ms_ks
,
b_ns_ks
,
e_ms_ns
,
a_element_op
,
b_element_op
,
cde_element_op
};
}
static
auto
MakeInvoker
()
{
return
Invoker
{};
}
virtual
std
::
unique_ptr
<
ck
::
tensor_operation
::
device
::
BaseInvoker
>
MakeInvokerPointer
()
{
return
std
::
make_unique
<
Invoker
>
(
Invoker
{});
}
std
::
string
GetTypeString
()
const
override
{
auto
str
=
std
::
stringstream
();
// clang-format off
str
<<
"ReferenceContraction_M2_N2_K2"
<<
std
::
endl
;
// clang-format on
return
str
.
str
();
}
};
int
main
(
int
argc
,
char
*
argv
[])
{
bool
do_verification
=
true
;
int
init_method
=
1
;
bool
time_kernel
=
false
;
// A[M0, M1, K0, K1]
std
::
vector
<
ck
::
index_t
>
a_ms_ks_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
a_ms_ks_strides
{
524288
,
4096
,
128
,
1
};
// B[N0, N1, K0, K1]
std
::
vector
<
ck
::
index_t
>
b_ns_ks_lengths
{
32
,
64
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
b_ns_ks_strides
{
524288
,
4096
,
128
,
1
};
// E[M0, M1, N0, N1]
std
::
vector
<
ck
::
index_t
>
e_ms_ns_lengths
{
30
,
128
,
32
,
64
};
std
::
vector
<
ck
::
index_t
>
e_ms_ns_strides
{
524288
,
4096
,
128
,
1
};
float
scale
=
1.
f
;
if
(
argc
==
1
)
{
// use default case
}
else
if
(
argc
==
4
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
}
else
if
(
argc
==
23
)
{
do_verification
=
std
::
stoi
(
argv
[
1
]);
init_method
=
std
::
stoi
(
argv
[
2
]);
time_kernel
=
std
::
stoi
(
argv
[
3
]);
const
ck
::
index_t
M0
=
std
::
stoi
(
argv
[
4
]);
const
ck
::
index_t
M1
=
std
::
stoi
(
argv
[
5
]);
const
ck
::
index_t
N0
=
std
::
stoi
(
argv
[
6
]);
const
ck
::
index_t
N1
=
std
::
stoi
(
argv
[
7
]);
const
ck
::
index_t
K0
=
std
::
stoi
(
argv
[
8
]);
const
ck
::
index_t
K1
=
std
::
stoi
(
argv
[
9
]);
a_ms_ks_lengths
=
{
M0
,
M1
,
K0
,
K1
};
a_ms_ks_strides
=
{
std
::
stoi
(
argv
[
10
]),
std
::
stoi
(
argv
[
11
]),
std
::
stoi
(
argv
[
12
]),
std
::
stoi
(
argv
[
13
])};
b_ns_ks_lengths
=
{
N0
,
N1
,
K0
,
K1
};
b_ns_ks_strides
=
{
std
::
stoi
(
argv
[
14
]),
std
::
stoi
(
argv
[
15
]),
std
::
stoi
(
argv
[
16
]),
std
::
stoi
(
argv
[
17
])};
e_ms_ns_lengths
=
{
M0
,
M1
,
N0
,
N1
};
e_ms_ns_strides
=
{
std
::
stoi
(
argv
[
22
]),
std
::
stoi
(
argv
[
23
]),
std
::
stoi
(
argv
[
24
]),
std
::
stoi
(
argv
[
25
])};
scale
=
std
::
stof
(
argv
[
26
]);
}
else
{
printf
(
"arg1: verification (0=no, 1=yes)
\n
"
);
printf
(
"arg2: initialization (0=no init, 1=integer value, 2=decimal value)
\n
"
);
printf
(
"arg3: time kernel (0=no, 1=yes)
\n
"
);
printf
(
"arg4 to 7: M0, M1, N0, N1, K0, K1
\n
"
);
printf
(
"arg10 to 13: Stride_A_M0, Stride_A_M1, Stride_A_K0, Stride_A_K1
\n
"
);
printf
(
"arg14 to 17: Stride_B_N0, Stride_B_N1, Stride_B_K0, Stride_B_K1
\n
"
);
printf
(
"arg18 to 21: Stride_E_M0, Stride_E_M1, Stride_E_N0, Stride_E_N1
\n
"
);
printf
(
"arg22: scale
\n
"
);
exit
(
0
);
}
Tensor
<
ADataType
>
a_ms_ks
(
std
::
vector
<
std
::
size_t
>
(
a_ms_ks_lengths
.
begin
(),
a_ms_ks_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
a_ms_ks_strides
.
begin
(),
a_ms_ks_strides
.
end
()));
Tensor
<
BDataType
>
b_ns_ks
(
std
::
vector
<
std
::
size_t
>
(
b_ns_ks_lengths
.
begin
(),
b_ns_ks_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
b_ns_ks_strides
.
begin
(),
b_ns_ks_strides
.
end
()));
Tensor
<
EDataType
>
e_ms_ns_host_result
(
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_strides
.
begin
(),
e_ms_ns_strides
.
end
()));
Tensor
<
EDataType
>
e_ms_ns_device_result
(
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_strides
.
begin
(),
e_ms_ns_strides
.
end
()));
std
::
cout
<<
"a_ms_ks: "
<<
a_ms_ks
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"b_ns_ks: "
<<
b_ns_ks
.
mDesc
<<
std
::
endl
;
std
::
cout
<<
"e_ms_ns: "
<<
e_ms_ns_host_result
.
mDesc
<<
std
::
endl
;
switch
(
init_method
)
{
case
0
:
break
;
case
1
:
a_ms_ks
.
GenerateTensorValue
(
GeneratorTensor_2
<
ADataType
>
{
-
5
,
5
});
b_ns_ks
.
GenerateTensorValue
(
GeneratorTensor_2
<
BDataType
>
{
-
5
,
5
});
break
;
default:
a_ms_ks
.
GenerateTensorValue
(
GeneratorTensor_3
<
ADataType
>
{
0.0
,
1.0
});
b_ns_ks
.
GenerateTensorValue
(
GeneratorTensor_3
<
BDataType
>
{
-
0.5
,
0.5
});
break
;
}
DeviceMem
a_device_buf
(
sizeof
(
ADataType
)
*
a_ms_ks
.
mDesc
.
GetElementSpace
());
DeviceMem
b_device_buf
(
sizeof
(
BDataType
)
*
b_ns_ks
.
mDesc
.
GetElementSpace
());
DeviceMem
e_device_buf
(
sizeof
(
EDataType
)
*
e_ms_ns_device_result
.
mDesc
.
GetElementSpace
());
a_device_buf
.
ToDevice
(
a_ms_ks
.
mData
.
data
());
b_device_buf
.
ToDevice
(
b_ns_ks
.
mData
.
data
());
// set zero
e_device_buf
.
SetZero
();
auto
a_element_op
=
AElementOp
{};
auto
b_element_op
=
BElementOp
{};
auto
cde_element_op
=
CDEElementOp
{
scale
};
// device operation
auto
op
=
DeviceOpInstance
{};
auto
invoker
=
op
.
MakeInvoker
();
auto
argument
=
op
.
MakeArgument
(
a_device_buf
.
GetDeviceBuffer
(),
b_device_buf
.
GetDeviceBuffer
(),
std
::
array
<
const
void
*
,
0
>
{},
e_device_buf
.
GetDeviceBuffer
(),
a_ms_ks_lengths
,
a_ms_ks_strides
,
b_ns_ks_lengths
,
b_ns_ks_strides
,
std
::
array
<
std
::
vector
<
ck
::
index_t
>
,
0
>
{},
std
::
array
<
std
::
vector
<
ck
::
index_t
>
,
0
>
{},
e_ms_ns_lengths
,
e_ms_ns_strides
,
a_element_op
,
b_element_op
,
cde_element_op
);
if
(
!
op
.
IsSupportedArgument
(
argument
))
{
std
::
cout
<<
op
.
GetTypeString
()
<<
" does not support this problem"
<<
std
::
endl
;
return
0
;
}
float
ave_time
=
invoker
.
Run
(
argument
,
StreamConfig
{
nullptr
,
time_kernel
});
ck
::
index_t
M
=
std
::
accumulate
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
begin
()
+
NumDimM
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
ck
::
index_t
N
=
std
::
accumulate
(
e_ms_ns_lengths
.
begin
()
+
NumDimM
,
e_ms_ns_lengths
.
begin
()
+
NumDimM
+
NumDimN
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
ck
::
index_t
K
=
std
::
accumulate
(
a_ms_ks_lengths
.
begin
()
+
NumDimM
,
a_ms_ks_lengths
.
begin
()
+
NumDimM
+
NumDimK
,
ck
::
index_t
{
1
},
std
::
multiplies
<
ck
::
index_t
>
{});
std
::
size_t
flop
=
std
::
size_t
(
2
)
*
M
*
N
*
K
;
std
::
size_t
num_btype
=
sizeof
(
ADataType
)
*
M
*
K
+
sizeof
(
BDataType
)
*
K
*
N
+
+
sizeof
(
EDataType
)
*
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, "
<<
op
.
GetTypeString
()
<<
std
::
endl
;
e_device_buf
.
FromDevice
(
e_ms_ns_device_result
.
mData
.
data
());
if
(
do_verification
)
{
Tensor
<
CShuffleDataType
>
c_ms_ns_host_result
(
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_lengths
.
begin
(),
e_ms_ns_lengths
.
end
()),
std
::
vector
<
std
::
size_t
>
(
e_ms_ns_strides
.
begin
(),
e_ms_ns_strides
.
end
()));
using
ReferenceOpInstance
=
ReferenceContraction_M2_N2_K2
<
NumDimM
,
NumDimN
,
NumDimK
,
ADataType
,
BDataType
,
CShuffleDataType
,
AccDataType
,
AElementOp
,
BElementOp
,
PassThrough
>
;
auto
ref_gemm
=
ReferenceOpInstance
{};
auto
ref_invoker
=
ref_gemm
.
MakeInvoker
();
auto
ref_argument
=
ref_gemm
.
MakeArgument
(
a_ms_ks
,
b_ns_ks
,
c_ms_ns_host_result
,
a_element_op
,
b_element_op
,
PassThrough
{});
ref_invoker
.
Run
(
ref_argument
);
for
(
size_t
m0
=
0
;
m0
<
e_ms_ns_host_result
.
mDesc
.
GetLengths
()[
0
];
++
m0
)
{
for
(
size_t
m1
=
0
;
m1
<
e_ms_ns_host_result
.
mDesc
.
GetLengths
()[
1
];
++
m1
)
{
for
(
size_t
n0
=
0
;
n0
<
e_ms_ns_host_result
.
mDesc
.
GetLengths
()[
2
];
++
n0
)
{
for
(
size_t
n1
=
0
;
n1
<
e_ms_ns_host_result
.
mDesc
.
GetLengths
()[
3
];
++
n1
)
{
cde_element_op
(
e_ms_ns_host_result
(
m0
,
m1
,
n0
,
n1
),
c_ms_ns_host_result
(
m0
,
m1
,
n0
,
n1
));
}
}
}
}
return
ck
::
utils
::
check_err
(
e_ms_ns_device_result
.
mData
,
e_ms_ns_host_result
.
mData
)
?
0
:
1
;
}
return
0
;
}
example/2
6
_layernorm/CMakeLists.txt
→
example/2
7
_layernorm/CMakeLists.txt
View file @
6f393c3d
File moved
example/2
6
_layernorm/layernorm_blockwise.cpp
→
example/2
7
_layernorm/layernorm_blockwise.cpp
View file @
6f393c3d
File moved
example/CMakeLists.txt
View file @
6f393c3d
...
@@ -44,4 +44,5 @@ add_subdirectory(22_cgemm)
...
@@ -44,4 +44,5 @@ add_subdirectory(22_cgemm)
add_subdirectory
(
23_softmax
)
add_subdirectory
(
23_softmax
)
add_subdirectory
(
24_batched_gemm_c_permute
)
add_subdirectory
(
24_batched_gemm_c_permute
)
add_subdirectory
(
25_gemm_bias_c_permute
)
add_subdirectory
(
25_gemm_bias_c_permute
)
add_subdirectory
(
26_layernorm
)
add_subdirectory
(
26_contraction
)
add_subdirectory
(
27_layernorm
)
include/ck/ck.hpp
View file @
6f393c3d
...
@@ -102,7 +102,12 @@
...
@@ -102,7 +102,12 @@
#define CK_EXPERIMENTAL_STATIC_TENSOR_DESCRIPTOR 0
#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
// This (ifndef) is a hack to use customized behavior for buffer load rather than using default
// setting Don't use this hack unless absolutely necessary!
// FIXME: make the behavior of buffer load a configurable (template) parameter of each device op
#ifndef CK_EXPERIMENTAL_USE_BUFFER_LOAD_OOB_CHECK_OFFSET_TRICK
#define CK_EXPERIMENTAL_USE_BUFFER_LOAD_OOB_CHECK_OFFSET_TRICK 0
#define CK_EXPERIMENTAL_USE_BUFFER_LOAD_OOB_CHECK_OFFSET_TRICK 0
#endif
#define CK_EXPERIMENTAL_USE_BUFFER_STORE_OOB_CHECK_OFFSET_TRICK 1
#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_ADD_OOB_CHECK_OFFSET_TRICK 1
#define CK_EXPERIMENTAL_USE_BUFFER_ATOMIC_MAX_OOB_CHECK_OFFSET_TRICK 1
#define CK_EXPERIMENTAL_USE_BUFFER_ATOMIC_MAX_OOB_CHECK_OFFSET_TRICK 1
...
...
include/ck/tensor_operation/gpu/device/device_contraction_multiple_d.hpp
0 → 100644
View file @
6f393c3d
// SPDX-License-Identifier: MIT
// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
#pragma once
#include <iostream>
#include <vector>
#include "ck/tensor_operation/gpu/device/device_base.hpp"
namespace
ck
{
namespace
tensor_operation
{
namespace
device
{
// Tensor Contraction:
// input : A
// input : B
// input : D0, D1, ...
// output : E
// C = a_op(A) * b_op(B)
// E = cde_op(C, D0, D1, ...)
// Assume:
// A[M0, M1, M2, ..., K0, K1, K2, ...]
// B[N0, N1, N2, ..., K0, K1, K2, ...]
// D[M0, M1, M2, ..., N0, N1, N2, ...]
// E[M0, M1, M2, ..., N0, N1, N2, ...]
template
<
index_t
NumDimM
,
index_t
NumDimN
,
index_t
NumDimK
,
typename
ADataType
,
typename
BDataType
,
typename
DsDataType
,
typename
EDataType
,
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CDEElementwiseOperation
>
struct
DeviceContractionMultipleD
:
public
BaseOperator
{
static
constexpr
index_t
NumDTensor
=
DsDataType
::
Size
();
virtual
std
::
unique_ptr
<
BaseArgument
>
MakeArgumentPointer
(
const
void
*
p_a
,
const
void
*
p_b
,
std
::
array
<
const
void
*
,
NumDTensor
>
p_ds
,
void
*
p_e
,
std
::
vector
<
index_t
>
a_ms_ks_lengths
,
std
::
vector
<
index_t
>
a_ms_ks_strides
,
std
::
vector
<
index_t
>
b_ns_ks_lengths
,
std
::
vector
<
index_t
>
b_ns_ks_strides
,
std
::
array
<
std
::
vector
<
index_t
>
,
NumDTensor
>
ds_ms_ns_lengths
,
std
::
array
<
std
::
vector
<
index_t
>
,
NumDTensor
>
ds_ms_ns_strides
,
std
::
vector
<
index_t
>
e_ms_ns_lengths
,
std
::
vector
<
index_t
>
e_ms_ns_strides
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CDEElementwiseOperation
cde_element_op
)
=
0
;
virtual
std
::
unique_ptr
<
BaseInvoker
>
MakeInvokerPointer
()
=
0
;
};
}
// namespace device
}
// namespace tensor_operation
}
// namespace ck
include/ck/tensor_operation/gpu/device/device_contraction_multiple_d_xdl_cshuffle.hpp
0 → 100644
View file @
6f393c3d
// SPDX-License-Identifier: MIT
// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
#pragma once
#include <iostream>
#include <sstream>
#include "ck/utility/common_header.hpp"
#include "ck/tensor_description/tensor_descriptor.hpp"
#include "ck/tensor_description/tensor_descriptor_helper.hpp"
#include "ck/tensor_operation/gpu/device/tensor_layout.hpp"
#include "ck/tensor_operation/gpu/device/device_contraction_multiple_d.hpp"
#include "ck/tensor_operation/gpu/device/gemm_specialization.hpp"
#include "ck/tensor_operation/gpu/grid/gridwise_gemm_multiple_d_xdl_cshuffle.hpp"
#include "ck/device_utility/device_prop.hpp"
#include "ck/device_utility/kernel_launch.hpp"
namespace
ck
{
template
<
typename
GridwiseGemm
,
typename
FloatAB
,
typename
FloatDsPointer
,
typename
FloatE
,
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CDEElementwiseOperation
,
typename
AGridDesc_AK0_M_AK1
,
typename
BGridDesc_BK0_N_BK1
,
typename
DsGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
typename
EGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
typename
Block2ETileMap
,
bool
HasMainKBlockLoop
>
__global__
void
#if CK_USE_LAUNCH_BOUNDS
__launch_bounds__
(
CK_MAX_THREAD_PER_BLOCK
,
CK_MIN_BLOCK_PER_CU
)
#endif
kernel_contraction_multiple_d_xdl_cshuffle
(
const
FloatAB
*
__restrict__
p_a_grid
,
const
FloatAB
*
__restrict__
p_b_grid
,
FloatDsPointer
p_ds_grid
,
FloatE
*
__restrict__
p_e_grid
,
const
AElementwiseOperation
a_element_op
,
const
BElementwiseOperation
b_element_op
,
const
CDEElementwiseOperation
cde_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
DsGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
ds_grid_desc_mblock_mperblock_nblock_nperblock
,
const
EGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
e_grid_desc_mblock_mperblock_nblock_nperblock
,
const
Block2ETileMap
block_2_etile_map
)
{
#if(!defined(__HIP_DEVICE_COMPILE__) || defined(__gfx908__) || defined(__gfx90a__))
__shared__
char
p_shared
[
GridwiseGemm
::
GetSharedMemoryNumberOfByte
()];
GridwiseGemm
::
template
Run
<
HasMainKBlockLoop
>(
p_a_grid
,
p_b_grid
,
p_ds_grid
,
p_e_grid
,
p_shared
,
a_element_op
,
b_element_op
,
cde_element_op
,
a_grid_desc_ak0_m_ak1
,
b_grid_desc_bk0_n_bk1
,
ds_grid_desc_mblock_mperblock_nblock_nperblock
,
e_grid_desc_mblock_mperblock_nblock_nperblock
,
block_2_etile_map
);
#else
ignore
=
p_a_grid
;
ignore
=
p_b_grid
;
ignore
=
p_ds_grid
;
ignore
=
p_e_grid
;
ignore
=
a_element_op
;
ignore
=
b_element_op
;
ignore
=
cde_element_op
;
ignore
=
a_grid_desc_ak0_m_ak1
;
ignore
=
b_grid_desc_bk0_n_bk1
;
ignore
=
ds_grid_desc_mblock_mperblock_nblock_nperblock
;
ignore
=
e_grid_desc_mblock_mperblock_nblock_nperblock
;
ignore
=
block_2_etile_map
;
#endif
}
}
// namespace ck
namespace
ck
{
namespace
tensor_operation
{
namespace
device
{
// Tensor Contraction:
// input : A
// input : B
// input : D0, D1, ...
// output : E
// C = a_op(A) * b_op(B)
// E = cde_op(C, D0, D1, ...)
// Assume:
// A[M0, M1, M2, ..., K0, K1, K2, ...]
// B[N0, N1, N2, ..., K0, K1, K2, ...]
// D[M0, M1, M2, ..., N0, N1, N2, ...]
// E[M0, M1, M2, ..., N0, N1, N2, ...]
template
<
index_t
NumDimM
,
index_t
NumDimN
,
index_t
NumDimK
,
typename
ADataType
,
typename
BDataType
,
typename
GemmAccDataType
,
typename
CShuffleDataType
,
typename
DsDataType
,
typename
EDataType
,
typename
AElementwiseOperation
,
typename
BElementwiseOperation
,
typename
CDEElementwiseOperation
,
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
CDEBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
,
index_t
CDEBlockTransferScalarPerVector_NPerBlock
,
LoopScheduler
LoopSched
=
make_default_loop_scheduler
()>
struct
DeviceContractionMultipleD_Xdl_CShuffle
:
public
DeviceContractionMultipleD
<
NumDimM
,
NumDimN
,
NumDimK
,
ADataType
,
BDataType
,
DsDataType
,
EDataType
,
AElementwiseOperation
,
BElementwiseOperation
,
CDEElementwiseOperation
>
{
using
DeviceOp
=
DeviceContractionMultipleD_Xdl_CShuffle
;
static
constexpr
index_t
NumDTensor
=
DsDataType
::
Size
();
static
constexpr
auto
I0
=
Number
<
0
>
{};
static
constexpr
auto
I1
=
Number
<
1
>
{};
static
constexpr
auto
I2
=
Number
<
2
>
{};
static
constexpr
auto
I3
=
Number
<
3
>
{};
// Assume: A[M0, M1, M2, ..., K0, K1, K2, ...]
static
auto
MakeAGridDescriptor_AK0_M_AK1
(
const
std
::
vector
<
index_t
>&
a_ms_ks_lengths_vec
,
const
std
::
vector
<
index_t
>&
a_ms_ks_strides_vec
)
{
assert
(
a_ms_ks_lengths_vec
.
size
()
==
NumDimM
+
NumDimK
&&
a_ms_ks_strides_vec
.
size
()
==
NumDimM
+
NumDimK
);
const
auto
to_tuple
=
[
&
](
auto
&
vec
,
auto
num
)
{
return
generate_tuple
([
&
](
auto
i
)
{
return
vec
[
i
];
},
num
);
};
const
auto
a_ms_ns_lengths
=
to_tuple
(
a_ms_ks_lengths_vec
,
Number
<
NumDimM
+
NumDimK
>
{});
const
auto
a_ms_ks_strides
=
to_tuple
(
a_ms_ks_strides_vec
,
Number
<
NumDimM
+
NumDimK
>
{});
// dimension Ids for M0, M1, ...
constexpr
auto
mDimIds
=
typename
arithmetic_sequence_gen
<
0
,
NumDimM
,
1
>::
type
{};
// dimension Ids for K0, K1, ...
constexpr
auto
kDimIds
=
typename
arithmetic_sequence_gen
<
NumDimM
,
NumDimM
+
NumDimK
,
1
>::
type
{};
// lengths for M0, M1, ...
const
auto
mLengths
=
get_container_subset
(
a_ms_ns_lengths
,
mDimIds
);
// lengths for K0, K1, ...
const
auto
kLengths
=
get_container_subset
(
a_ms_ns_lengths
,
kDimIds
);
// naive tensor A[M0, M1, M2, ..., K0, K1, K2...]
const
auto
a_grid_desc_ms_ks
=
make_naive_tensor_descriptor
(
a_ms_ns_lengths
,
a_ms_ks_strides
);
// transformed tensor A[MRaw = M0 * M1 * M2 * ... , KRaw = K0 * K1 * K2 * ...]
const
auto
a_grid_desc_mraw_kraw
=
transform_tensor_descriptor
(
a_grid_desc_ms_ks
,
make_tuple
(
make_merge_transform
(
mLengths
),
make_merge_transform
(
kLengths
)),
make_tuple
(
mDimIds
,
kDimIds
),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
const
auto
MRaw
=
a_grid_desc_mraw_kraw
.
GetLength
(
I0
);
const
auto
KRaw
=
a_grid_desc_mraw_kraw
.
GetLength
(
I1
);
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
;
}
}
// Assume: B[N0, N1, N2, ..., K0, K1, K2, ...]
static
auto
MakeBGridDescriptor_BK0_N_BK1
(
const
std
::
vector
<
index_t
>&
b_ns_ks_lengths_vec
,
const
std
::
vector
<
index_t
>&
b_ns_ks_strides_vec
)
{
assert
(
b_ns_ks_lengths_vec
.
size
()
==
NumDimN
+
NumDimK
&&
b_ns_ks_strides_vec
.
size
()
==
NumDimN
+
NumDimK
);
const
auto
to_tuple
=
[
&
](
auto
&
vec
,
auto
num
)
{
return
generate_tuple
([
&
](
auto
i
)
{
return
vec
[
i
];
},
num
);
};
const
auto
b_ns_ks_lengths
=
to_tuple
(
b_ns_ks_lengths_vec
,
Number
<
NumDimN
+
NumDimK
>
{});
const
auto
b_ns_ks_strides
=
to_tuple
(
b_ns_ks_strides_vec
,
Number
<
NumDimN
+
NumDimK
>
{});
// dimension Ids for N0, N1, ...
constexpr
auto
nDimIds
=
typename
arithmetic_sequence_gen
<
0
,
NumDimN
,
1
>::
type
{};
// dimension Ids for K0, K1, ...
constexpr
auto
kDimIds
=
typename
arithmetic_sequence_gen
<
NumDimN
,
NumDimN
+
NumDimK
,
1
>::
type
{};
// lengths for K0, K1, ...
const
auto
kLengths
=
get_container_subset
(
b_ns_ks_lengths
,
kDimIds
);
// lengths for N0, N1, ...
const
auto
nLengths
=
get_container_subset
(
b_ns_ks_lengths
,
nDimIds
);
// naive tensor B[N0, N1, N2, ..., K0, K1, K2, ...]
const
auto
b_grid_desc_ns_ks
=
make_naive_tensor_descriptor
(
b_ns_ks_lengths
,
b_ns_ks_strides
);
// transformed tensor B[NRaw = N0 * N1 * N2 * ..., KRaw = K0 * K1 * K2 * ...]
const
auto
b_grid_desc_nraw_kraw
=
transform_tensor_descriptor
(
b_grid_desc_ns_ks
,
make_tuple
(
make_merge_transform
(
nLengths
),
make_merge_transform
(
kLengths
)),
make_tuple
(
nDimIds
,
kDimIds
),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
const
auto
NRaw
=
b_grid_desc_nraw_kraw
.
GetLength
(
I0
);
const
auto
KRaw
=
b_grid_desc_nraw_kraw
.
GetLength
(
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
;
}
}
// assume E[M0, M1, M2, ..., N0, N1, N2...]
static
auto
MakeEGridDescriptor_M_N
(
const
std
::
vector
<
index_t
>&
e_ms_ns_lengths_vec
,
const
std
::
vector
<
index_t
>&
e_ms_ns_strides_vec
)
{
assert
(
e_ms_ns_lengths_vec
.
size
()
==
NumDimM
+
NumDimN
&&
e_ms_ns_strides_vec
.
size
()
==
NumDimM
+
NumDimN
);
const
auto
to_tuple
=
[
&
](
auto
&
vec
,
auto
num
)
{
return
generate_tuple
([
&
](
auto
i
)
{
return
vec
[
i
];
},
num
);
};
const
auto
e_ms_ns_lengths
=
to_tuple
(
e_ms_ns_lengths_vec
,
Number
<
NumDimM
+
NumDimN
>
{});
const
auto
e_ms_ns_strides
=
to_tuple
(
e_ms_ns_strides_vec
,
Number
<
NumDimM
+
NumDimN
>
{});
// dimension Ids for M0, M1, ...
constexpr
auto
mDimIds
=
typename
arithmetic_sequence_gen
<
0
,
NumDimM
,
1
>::
type
{};
// dimension Ids for N0, N1, ...
constexpr
auto
nDimIds
=
typename
arithmetic_sequence_gen
<
NumDimM
,
NumDimM
+
NumDimN
,
1
>::
type
{};
// lengths for M0, M1, ...
const
auto
mLengths
=
get_container_subset
(
e_ms_ns_lengths
,
mDimIds
);
// lengths for K0, K1, ...
const
auto
nLengths
=
get_container_subset
(
e_ms_ns_lengths
,
nDimIds
);
// naive tensor E[M0, M1, M2, ..., N0, N1, N2...]
const
auto
e_grid_desc_ms_ns
=
make_naive_tensor_descriptor
(
e_ms_ns_lengths
,
e_ms_ns_strides
);
// transformed tensor E[MRaw = M0 * M1 * M2 * ... , NRaw = N0 * N1 * N2 * ...]
const
auto
e_grid_desc_mraw_nraw
=
transform_tensor_descriptor
(
e_grid_desc_ms_ns
,
make_tuple
(
make_merge_transform
(
mLengths
),
make_merge_transform
(
nLengths
)),
make_tuple
(
mDimIds
,
nDimIds
),
make_tuple
(
Sequence
<
0
>
{},
Sequence
<
1
>
{}));
const
auto
MRaw
=
e_grid_desc_mraw_nraw
.
GetLength
(
I0
);
const
auto
NRaw
=
e_grid_desc_mraw_nraw
.
GetLength
(
I1
);
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
(
e_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
(
e_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
(
e_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
e_grid_desc_mraw_nraw
;
}
}
using
AGridDesc_AK0_M_AK1
=
decltype
(
MakeAGridDescriptor_AK0_M_AK1
(
std
::
vector
<
index_t
>
{},
std
::
vector
<
index_t
>
{}));
using
BGridDesc_BK0_N_BK1
=
decltype
(
MakeBGridDescriptor_BK0_N_BK1
(
std
::
vector
<
index_t
>
{},
std
::
vector
<
index_t
>
{}));
using
EGridDesc_M_N
=
decltype
(
MakeEGridDescriptor_M_N
(
std
::
vector
<
index_t
>
{},
std
::
vector
<
index_t
>
{}));
// GridwiseGemm
using
GridwiseGemm
=
GridwiseGemmMultipleD_k0mk1_k0nk1_mn_xdl_cshuffle
<
ADataType
,
// TODO: distinguish A/B datatype
GemmAccDataType
,
CShuffleDataType
,
DsDataType
,
EDataType
,
AElementwiseOperation
,
BElementwiseOperation
,
CDEElementwiseOperation
,
InMemoryDataOperationEnum
::
Set
,
AGridDesc_AK0_M_AK1
,
BGridDesc_BK0_N_BK1
,
EGridDesc_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
,
CDEBlockTransferClusterLengths_MBlock_MPerBlock_NBlock_NPerBlock
,
CDEBlockTransferScalarPerVector_NPerBlock
,
LoopSched
>
;
// Argument
struct
Argument
:
public
BaseArgument
{
Argument
(
const
void
*
p_a_grid
,
const
void
*
p_b_grid
,
std
::
array
<
const
void
*
,
NumDTensor
>
p_ds_grid
,
void
*
p_e_grid
,
std
::
vector
<
index_t
>
a_ms_ns_lengths
,
std
::
vector
<
index_t
>
a_ms_ks_strides
,
std
::
vector
<
index_t
>
b_ns_ks_lengths
,
std
::
vector
<
index_t
>
b_ns_ks_strides
,
std
::
array
<
std
::
vector
<
index_t
>
,
NumDTensor
>
ds_ms_ns_lengths
,
std
::
array
<
std
::
vector
<
index_t
>
,
NumDTensor
>
ds_ms_ns_strides
,
std
::
vector
<
index_t
>
e_ms_ns_lengths
,
std
::
vector
<
index_t
>
e_ms_ns_strides
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CDEElementwiseOperation
cde_element_op
)
:
p_a_grid_
{
static_cast
<
const
ADataType
*>
(
p_a_grid
)},
p_b_grid_
{
static_cast
<
const
BDataType
*>
(
p_b_grid
)},
p_ds_grid_
{},
// FIXME
p_e_grid_
{
static_cast
<
EDataType
*>
(
p_e_grid
)},
a_grid_desc_ak0_m_ak1_
{
DeviceOp
::
MakeAGridDescriptor_AK0_M_AK1
(
a_ms_ns_lengths
,
a_ms_ks_strides
)},
b_grid_desc_bk0_n_bk1_
{
DeviceOp
::
MakeBGridDescriptor_BK0_N_BK1
(
b_ns_ks_lengths
,
b_ns_ks_strides
)},
ds_grid_desc_mblock_mperblock_nblock_nperblock_
{},
e_grid_desc_m_n_
{
DeviceOp
::
MakeEGridDescriptor_M_N
(
e_ms_ns_lengths
,
e_ms_ns_strides
)},
e_grid_desc_mblock_mperblock_nblock_nperblock_
{},
block_2_etile_map_
{
GridwiseGemm
::
MakeDefaultBlock2ETileMap
(
e_grid_desc_m_n_
)},
a_element_op_
{
a_element_op
},
b_element_op_
{
b_element_op
},
cde_element_op_
{
cde_element_op
},
a_mz_stride_
{},
a_kz_stride_
{},
b_nz_stride_
{},
b_kz_stride_
{},
ds_nz_stride_
{},
e_nz_stride_
{}
{
if
(
GridwiseGemm
::
CheckValidity
(
a_grid_desc_ak0_m_ak1_
,
b_grid_desc_bk0_n_bk1_
,
e_grid_desc_m_n_
,
block_2_etile_map_
))
{
e_grid_desc_mblock_mperblock_nblock_nperblock_
=
GridwiseGemm
::
MakeEGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
(
e_grid_desc_m_n_
);
static_for
<
0
,
NumDTensor
,
1
>
{}([
&
](
auto
i
)
{
using
DDataType
=
remove_cvref_t
<
tuple_element_t
<
i
.
value
,
DsDataType
>>
;
p_ds_grid_
(
i
)
=
static_cast
<
const
DDataType
*>
(
p_ds_grid
[
i
]);
const
auto
d_grid_desc_m_n
=
DeviceOp
::
MakeEGridDescriptor_M_N
(
ds_ms_ns_lengths
[
i
],
ds_ms_ns_strides
[
i
]);
ds_grid_desc_mblock_mperblock_nblock_nperblock_
(
i
)
=
GridwiseGemm
::
MakeEGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
(
d_grid_desc_m_n
);
});
}
// for sanity check of vector memory access
a_mz_stride_
=
a_ms_ks_strides
[
NumDimM
-
1
];
a_kz_stride_
=
a_ms_ks_strides
[
NumDimM
+
NumDimK
-
1
];
b_nz_stride_
=
b_ns_ks_strides
[
NumDimN
-
1
];
b_kz_stride_
=
b_ns_ks_strides
[
NumDimN
+
NumDimK
-
1
];
for
(
index_t
i
=
0
;
i
<
NumDTensor
;
++
i
)
{
ds_nz_stride_
[
i
]
=
ds_ms_ns_strides
[
i
][
NumDimM
+
NumDimN
-
1
];
}
e_nz_stride_
=
e_ms_ns_strides
[
NumDimM
+
NumDimN
-
1
];
}
// private:
// pointers
const
ADataType
*
p_a_grid_
;
const
BDataType
*
p_b_grid_
;
typename
GridwiseGemm
::
DsGridPointer
p_ds_grid_
;
EDataType
*
p_e_grid_
;
// tensor descriptors
AGridDesc_AK0_M_AK1
a_grid_desc_ak0_m_ak1_
;
BGridDesc_BK0_N_BK1
b_grid_desc_bk0_n_bk1_
;
StaticallyIndexedArray
<
typename
GridwiseGemm
::
EGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
NumDTensor
>
ds_grid_desc_mblock_mperblock_nblock_nperblock_
;
// FIXME: Ds desc may be of different
// type from E
EGridDesc_M_N
e_grid_desc_m_n_
;
typename
GridwiseGemm
::
EGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
e_grid_desc_mblock_mperblock_nblock_nperblock_
;
// block-to-e-tile map
typename
GridwiseGemm
::
DefaultBlock2ETileMap
block_2_etile_map_
;
// element-wise op
AElementwiseOperation
a_element_op_
;
BElementwiseOperation
b_element_op_
;
CDEElementwiseOperation
cde_element_op_
;
// Strides for the last M/N/K dimensions of A/B/Ds/E
// for sanity check of vector load/store
index_t
a_mz_stride_
;
index_t
a_kz_stride_
;
index_t
b_nz_stride_
;
index_t
b_kz_stride_
;
std
::
array
<
index_t
,
NumDTensor
>
ds_nz_stride_
;
index_t
e_mz_stride_
;
index_t
e_nz_stride_
;
};
// Invoker
struct
Invoker
:
public
BaseInvoker
{
using
Argument
=
DeviceOp
::
Argument
;
float
Run
(
const
Argument
&
arg
,
const
StreamConfig
&
stream_config
=
StreamConfig
{})
{
#if 0
{
std::cout << "arg.a_grid_desc_ak0_m_ak1_{"
<< arg.a_grid_desc_ak0_m_ak1_.GetLength(I0) << ", "
<< arg.a_grid_desc_ak0_m_ak1_.GetLength(I1) << ", "
<< arg.a_grid_desc_ak0_m_ak1_.GetLength(I2) << "}" << std::endl;
std::cout << "arg.b_grid_desc_bk0_n_bk1_{"
<< arg.b_grid_desc_bk0_n_bk1_.GetLength(I0) << ", "
<< arg.b_grid_desc_bk0_n_bk1_.GetLength(I1) << ", "
<< arg.b_grid_desc_bk0_n_bk1_.GetLength(I2) << "}" << std::endl;
std::cout << "arg.e_grid_desc_m_n_{ " << arg.e_grid_desc_m_n_.GetLength(I0) << ", "
<< arg.e_grid_desc_m_n_.GetLength(I1) << "}" << std::endl;
}
#endif
if
(
!
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
e_grid_desc_m_n_
,
arg
.
block_2_etile_map_
))
{
throw
std
::
runtime_error
(
"wrong! GridwiseGemm has invalid setting"
);
}
const
index_t
grid_size
=
arg
.
block_2_etile_map_
.
CalculateGridSize
(
arg
.
e_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
);
auto
launch_kernel
=
[
&
](
auto
has_main_k_block_loop
)
{
constexpr
bool
has_main_loop
=
has_main_k_block_loop
.
value
;
const
auto
kernel
=
kernel_contraction_multiple_d_xdl_cshuffle
<
GridwiseGemm
,
ADataType
,
// TODO: distiguish A/B datatype
typename
GridwiseGemm
::
DsGridPointer
,
EDataType
,
AElementwiseOperation
,
BElementwiseOperation
,
CDEElementwiseOperation
,
DeviceOp
::
AGridDesc_AK0_M_AK1
,
DeviceOp
::
BGridDesc_BK0_N_BK1
,
ck
::
StaticallyIndexedArray
<
typename
GridwiseGemm
::
EGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
NumDTensor
>
,
typename
GridwiseGemm
::
EGridDescriptor_MBlock_MPerBlock_NBlock_NPerBlock
,
typename
GridwiseGemm
::
DefaultBlock2ETileMap
,
has_main_loop
>
;
return
launch_and_time_kernel
(
stream_config
,
kernel
,
dim3
(
grid_size
),
dim3
(
BlockSize
),
0
,
arg
.
p_a_grid_
,
arg
.
p_b_grid_
,
arg
.
p_ds_grid_
,
arg
.
p_e_grid_
,
arg
.
a_element_op_
,
arg
.
b_element_op_
,
arg
.
cde_element_op_
,
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
ds_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
e_grid_desc_mblock_mperblock_nblock_nperblock_
,
arg
.
block_2_etile_map_
);
};
float
ave_time
=
0
;
if
(
GridwiseGemm
::
CalculateHasMainKBlockLoop
(
K
))
{
ave_time
=
launch_kernel
(
integral_constant
<
bool
,
true
>
{});
}
else
{
ave_time
=
launch_kernel
(
integral_constant
<
bool
,
false
>
{});
}
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
)
{
if
(
!
(
ck
::
get_device_name
()
==
"gfx908"
||
ck
::
get_device_name
()
==
"gfx90a"
))
{
return
false
;
}
if
(
!
GridwiseGemm
::
CheckValidity
(
arg
.
a_grid_desc_ak0_m_ak1_
,
arg
.
b_grid_desc_bk0_n_bk1_
,
arg
.
e_grid_desc_m_n_
,
arg
.
block_2_etile_map_
))
{
return
false
;
}
// check vector access
static_assert
((
ABlockTransferSrcVectorDim
==
1
||
ABlockTransferSrcVectorDim
==
2
)
&&
(
BBlockTransferSrcVectorDim
==
1
||
BBlockTransferSrcVectorDim
==
2
),
"wrong!"
);
// vector memory access of A: could be on M or AK1 dimension
if
constexpr
(
ABlockTransferSrcVectorDim
==
1
)
{
if
(
!
(
arg
.
a_mz_stride_
==
1
&&
arg
.
a_grid_desc_ak0_m_ak1_
.
GetLength
(
I1
)
%
ABlockTransferSrcScalarPerVector
==
0
))
{
return
false
;
}
}
else
{
if
(
!
(
arg
.
a_kz_stride_
==
1
&&
arg
.
a_grid_desc_ak0_m_ak1_
.
GetLength
(
I2
)
%
ABlockTransferSrcScalarPerVector
==
0
))
{
return
false
;
}
}
// vector memory access of B: could be on N or BK1 dimension
if
constexpr
(
BBlockTransferSrcVectorDim
==
1
)
{
if
(
!
(
arg
.
b_nz_stride_
==
1
&&
arg
.
b_grid_desc_bk0_n_bk1_
.
GetLength
(
I1
)
%
BBlockTransferSrcScalarPerVector
==
0
))
{
return
false
;
}
}
else
{
if
(
!
(
arg
.
b_kz_stride_
==
1
&&
arg
.
b_grid_desc_bk0_n_bk1_
.
GetLength
(
I2
)
%
BBlockTransferSrcScalarPerVector
==
0
))
{
return
false
;
}
}
// vector memory access of Ds: always on NPerBlock dimension
bool
valid_d_access
=
true
;
static_for
<
0
,
NumDTensor
,
1
>
{}([
&
](
auto
i
)
{
if
(
!
(
arg
.
ds_nz_stride_
[
i
]
==
1
&&
arg
.
ds_grid_desc_mblock_mperblock_nblock_nperblock_
[
i
].
GetLength
(
I3
)
%
CDEBlockTransferScalarPerVector_NPerBlock
==
0
))
{
valid_d_access
=
false
;
}
});
if
(
valid_d_access
==
false
)
{
return
false
;
}
// vector memory access of E: always on NPerBlock dimension
if
(
!
(
arg
.
e_nz_stride_
==
1
&&
arg
.
e_grid_desc_mblock_mperblock_nblock_nperblock_
.
GetLength
(
I3
)
%
CDEBlockTransferScalarPerVector_NPerBlock
==
0
))
{
return
false
;
}
return
true
;
}
// polymorphic
bool
IsSupportedArgument
(
const
BaseArgument
*
p_arg
)
override
{
return
IsSupportedArgument
(
*
dynamic_cast
<
const
Argument
*>
(
p_arg
));
}
static
auto
MakeArgument
(
const
void
*
p_a
,
const
void
*
p_b
,
std
::
array
<
const
void
*
,
NumDTensor
>
p_ds
,
void
*
p_e
,
std
::
vector
<
index_t
>
a_ms_ns_lengths
,
std
::
vector
<
index_t
>
a_ms_ks_strides
,
std
::
vector
<
index_t
>
b_ns_ks_lengths
,
std
::
vector
<
index_t
>
b_ns_ks_strides
,
std
::
array
<
std
::
vector
<
index_t
>
,
NumDTensor
>
ds_ms_ns_lengths
,
std
::
array
<
std
::
vector
<
index_t
>
,
NumDTensor
>
ds_ms_ns_strides
,
std
::
vector
<
index_t
>
e_ms_ns_lengths
,
std
::
vector
<
index_t
>
e_ms_ns_strides
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CDEElementwiseOperation
cde_element_op
)
{
return
Argument
{
p_a
,
p_b
,
p_ds
,
p_e
,
a_ms_ns_lengths
,
a_ms_ks_strides
,
b_ns_ks_lengths
,
b_ns_ks_strides
,
ds_ms_ns_lengths
,
ds_ms_ns_strides
,
e_ms_ns_lengths
,
e_ms_ns_strides
,
a_element_op
,
b_element_op
,
cde_element_op
};
}
static
auto
MakeInvoker
()
{
return
Invoker
{};
}
// polymorphic
std
::
unique_ptr
<
BaseArgument
>
MakeArgumentPointer
(
const
void
*
p_a
,
const
void
*
p_b
,
std
::
array
<
const
void
*
,
NumDTensor
>
p_ds
,
void
*
p_e
,
std
::
vector
<
index_t
>
a_ms_ns_lengths
,
std
::
vector
<
index_t
>
a_ms_ks_strides
,
std
::
vector
<
index_t
>
b_ns_ks_lengths
,
std
::
vector
<
index_t
>
b_ns_ks_strides
,
std
::
array
<
std
::
vector
<
index_t
>
,
NumDTensor
>
ds_ms_ns_lengths
,
std
::
array
<
std
::
vector
<
index_t
>
,
NumDTensor
>
ds_ms_ns_strides
,
std
::
vector
<
index_t
>
e_ms_ns_lengths
,
std
::
vector
<
index_t
>
e_ms_ns_strides
,
AElementwiseOperation
a_element_op
,
BElementwiseOperation
b_element_op
,
CDEElementwiseOperation
cde_element_op
)
override
{
return
std
::
make_unique
<
Argument
>
(
p_a
,
p_b
,
p_ds
,
p_e
,
a_ms_ns_lengths
,
a_ms_ks_strides
,
b_ns_ks_lengths
,
b_ns_ks_strides
,
ds_ms_ns_lengths
,
ds_ms_ns_strides
,
e_ms_ns_lengths
,
e_ms_ns_strides
,
a_element_op
,
b_element_op
,
cde_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
<<
"DeviceContractionMultipleD_Xdl_CShuffle"
<<
"<"
<<
NumDimM
<<
", "
<<
NumDimN
<<
", "
<<
NumDimK
<<
", "
<<
BlockSize
<<
", "
<<
MPerBlock
<<
", "
<<
NPerBlock
<<
", "
<<
KPerBlock
<<
", "
<<
AK1
<<
", "
<<
BK1
<<
", "
<<
ABlockTransferSrcVectorDim
<<
", "
<<
BBlockTransferSrcVectorDim
<<
">"
;
// clang-format on
return
str
.
str
();
}
};
}
// namespace device
}
// namespace tensor_operation
}
// namespace ck
include/ck/tensor_operation/gpu/device/device_gemm.hpp
View file @
6f393c3d
...
@@ -2,10 +2,11 @@
...
@@ -2,10 +2,11 @@
// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
#pragma once
#pragma once
#include <iostream>
#include <iostream>
#include <vector>
#include <vector>
#include "device_base.hpp"
#include "
ck/tensor_operation/gpu/device/
device_base.hpp"
namespace
ck
{
namespace
ck
{
namespace
tensor_operation
{
namespace
tensor_operation
{
...
...
include/ck/tensor_operation/gpu/device/device_gemm_multiple_d.hpp
View file @
6f393c3d
...
@@ -11,11 +11,14 @@ namespace ck {
...
@@ -11,11 +11,14 @@ namespace ck {
namespace
tensor_operation
{
namespace
tensor_operation
{
namespace
device
{
namespace
device
{
// input : A[M, K], B[K, N],
// GEMM:
// input : D0[M, N], D1[M, N], ...
// input : A[M, K], B[K, N],
// output : E[M, N]
// input : D0[M, N], D1[M, N], ...
// C = a_op(A) * b_op(B)
// output : E[M, N]
// E = cde_op(C, D0, D1, ...)
// C = a_op(A) * b_op(B)
// E = cde_op(C, D0, D1, ...)
// Assume:
// D0, D1, ... and E have the same layout
template
<
typename
ALayout
,
template
<
typename
ALayout
,
typename
BLayout
,
typename
BLayout
,
typename
DELayout
,
typename
DELayout
,
...
...
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