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gaoqiong
composable_kernel_ROCM
Commits
965021d2
Unverified
Commit
965021d2
authored
Oct 07, 2024
by
M.Emin Ozturk
Committed by
GitHub
Oct 07, 2024
Browse files
Merge branch 'develop' into gemm_bf16_sk_muozturk
parents
8a34c640
7d8ea5f0
Changes
29
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Showing
9 changed files
with
425 additions
and
168 deletions
+425
-168
include/ck/tensor_operation/gpu/device/impl/device_grouped_gemm_xdl_fixed_nk.hpp
...tion/gpu/device/impl/device_grouped_gemm_xdl_fixed_nk.hpp
+1
-1
include/ck_tile/host/convolution_parameter.hpp
include/ck_tile/host/convolution_parameter.hpp
+0
-6
include/ck_tile/ops/fmha/kernel/fmha_bwd_kernel.hpp
include/ck_tile/ops/fmha/kernel/fmha_bwd_kernel.hpp
+77
-14
include/ck_tile/ops/fmha/kernel/fmha_fwd_kernel.hpp
include/ck_tile/ops/fmha/kernel/fmha_fwd_kernel.hpp
+70
-13
include/ck_tile/ops/layernorm2d/kernel/layernorm2d_fwd_kernel.hpp
...ck_tile/ops/layernorm2d/kernel/layernorm2d_fwd_kernel.hpp
+247
-86
include/ck_tile/ops/layernorm2d/pipeline/block_layernorm2d_fwd_problem.hpp
...ps/layernorm2d/pipeline/block_layernorm2d_fwd_problem.hpp
+13
-9
library/src/tensor_operation_instance/gpu/CMakeLists.txt
library/src/tensor_operation_instance/gpu/CMakeLists.txt
+7
-21
profiler/src/CMakeLists.txt
profiler/src/CMakeLists.txt
+6
-6
test/CMakeLists.txt
test/CMakeLists.txt
+4
-12
No files found.
include/ck/tensor_operation/gpu/device/impl/device_grouped_gemm_xdl_fixed_nk.hpp
View file @
965021d2
...
...
@@ -68,7 +68,7 @@ __global__ void
const
index_t
N
=
gemm_desc_ptr
[
group_id
].
N
;
const
index_t
K
=
gemm_desc_ptr
[
group_id
].
K
;
if
(
M
*
N
*
K
==
0
)
if
(
M
==
0
||
N
==
0
||
K
==
0
)
return
;
const
auto
StrideA
=
gemm_desc_ptr
[
group_id
].
StrideA
;
...
...
include/ck_tile/host/convolution_parameter.hpp
View file @
965021d2
...
...
@@ -13,7 +13,6 @@ namespace conv {
struct
ConvParam
{
ConvParam
();
ConvParam
(
ck_tile
::
index_t
n_dim
,
ck_tile
::
index_t
group_count
,
ck_tile
::
index_t
n_batch
,
...
...
@@ -199,11 +198,6 @@ struct ConvParam
}
};
ConvParam
::
ConvParam
()
:
ConvParam
::
ConvParam
(
2
,
1
,
128
,
256
,
192
,
{
3
,
3
},
{
71
,
71
},
{
2
,
2
},
{
1
,
1
},
{
1
,
1
},
{
1
,
1
})
{
}
CK_TILE_HOST
std
::
string
get_conv_param_parser_helper_msg
()
{
std
::
string
msg
;
...
...
include/ck_tile/ops/fmha/kernel/fmha_bwd_kernel.hpp
View file @
965021d2
...
...
@@ -6,8 +6,11 @@
#include "ck_tile/core.hpp"
#include "ck_tile/ops/common.hpp"
#include "ck_tile/ops/fmha/block/block_attention_bias_enum.hpp"
#include <string>
#include <type_traits>
#include <utility>
#include <variant>
// S[seqlen_q, seqlen_k] = Q[seqlen_q, hdim_q] @ K[seqlen_k, hdim_q]
// S'[seqlen_q, seqlen_k] = S[seqlen_q, seqlen_k] * Scale[1]
...
...
@@ -194,11 +197,39 @@ struct FmhaBwdDQDKDVKernel
ck_tile
::
GenericAttentionMaskEnum
mask_type
;
};
struct
FmhaBwd
Common
Dropout
Kargs
struct
FmhaBwdDropout
SeedOffset
{
void
init_dropout
(
const
float
p_drop
,
const
std
::
tuple
<
uint64_t
,
uint64_t
>&
drop_seed_offset
,
const
float
raw_scale
)
template
<
typename
T
>
union
ValueOrPointer
{
T
val
;
const
T
*
ptr
;
};
ValueOrPointer
<
uint64_t
>
drop_seed
;
ValueOrPointer
<
uint64_t
>
drop_offset
;
bool
is_drop_seed_offset_from_host
;
};
struct
FmhaBwdCommonDropoutKargs
:
FmhaBwdDropoutSeedOffset
{
void
init_dropout
(
float
p_drop
,
uint64_t
seed
,
uint64_t
offset
,
float
raw_scale
)
{
float
p_undrop
=
1.0
-
p_drop
;
p_undrop_in_uint8_t
=
uint8_t
(
std
::
floor
(
p_undrop
*
std
::
numeric_limits
<
uint8_t
>::
max
()));
rp_undrop
=
1.0
/
p_undrop
;
scale_rp_undrop
=
rp_undrop
*
raw_scale
;
this
->
drop_seed
.
val
=
seed
;
this
->
drop_offset
.
val
=
offset
;
this
->
is_drop_seed_offset_from_host
=
true
;
}
void
init_dropout
(
float
p_drop
,
const
uint64_t
*
seed_ptr
,
const
uint64_t
*
offset_ptr
,
float
raw_scale
)
{
float
p_undrop
=
1.0
-
p_drop
;
p_undrop_in_uint8_t
=
...
...
@@ -206,23 +237,25 @@ struct FmhaBwdDQDKDVKernel
rp_undrop
=
1.0
/
p_undrop
;
scale_rp_undrop
=
rp_undrop
*
raw_scale
;
drop_seed
=
std
::
get
<
0
>
(
drop_seed_offset
);
drop_offset
=
std
::
get
<
1
>
(
drop_seed_offset
);
this
->
drop_seed
.
ptr
=
seed_ptr
;
this
->
drop_offset
.
ptr
=
offset_ptr
;
this
->
is_drop_seed_offset_from_host
=
false
;
}
float
rp_undrop
=
1
;
float
scale_rp_undrop
=
1
;
uint8_t
p_undrop_in_uint8_t
=
std
::
numeric_limits
<
uint8_t
>::
max
();
uint64_t
drop_seed
=
1
;
uint64_t
drop_offset
=
0
;
void
*
rand_val_ptr
=
nullptr
;
ck_tile
::
index_t
stride_randval
=
0
;
ck_tile
::
index_t
nhead_stride_randval
=
0
;
};
struct
FmhaBwdBatchModeDropoutKargs
:
FmhaBwdCommonDropoutKargs
{
ck_tile
::
index_t
batch_stride_randval
=
0
;
};
struct
FmhaBwdDeterministicKargs
{
ck_tile
::
index_t
split_stride_dq_acc
=
0
;
...
...
@@ -327,7 +360,8 @@ struct FmhaBwdDQDKDVKernel
ck_tile
::
index_t
window_size_right
,
ck_tile
::
index_t
mask_type
,
float
p_drop
,
const
std
::
tuple
<
uint64_t
,
uint64_t
>&
drop_seed_offset
)
std
::
variant
<
std
::
pair
<
uint64_t
,
uint64_t
>
,
std
::
pair
<
const
void
*
,
const
void
*>>
drop_seed_offset
)
{
Kargs
kargs
{{
q_ptr
,
k_ptr
,
...
...
@@ -405,7 +439,20 @@ struct FmhaBwdDQDKDVKernel
if
constexpr
(
kHasDropout
)
{
kargs
.
init_dropout
(
p_drop
,
drop_seed_offset
,
scale
);
if
(
drop_seed_offset
.
index
()
==
0
)
// seed & offset come from host
{
const
auto
&
[
seed
,
offset
]
=
std
::
get
<
0
>
(
drop_seed_offset
);
kargs
.
init_dropout
(
p_drop
,
seed
,
offset
,
scale
);
}
else
// seed & offset come from device
{
const
auto
&
[
seed_ptr
,
offset_ptr
]
=
std
::
get
<
1
>
(
drop_seed_offset
);
kargs
.
init_dropout
(
p_drop
,
reinterpret_cast
<
const
uint64_t
*>
(
seed_ptr
),
reinterpret_cast
<
const
uint64_t
*>
(
offset_ptr
),
scale
);
}
if
constexpr
(
kIsStoreRandval
)
{
kargs
.
rand_val_ptr
=
rand_val_ptr
;
...
...
@@ -471,7 +518,8 @@ struct FmhaBwdDQDKDVKernel
ck_tile
::
index_t
window_size_right
,
ck_tile
::
index_t
mask_type
,
float
p_drop
,
const
std
::
tuple
<
uint64_t
,
uint64_t
>&
drop_seed_offset
)
std
::
variant
<
std
::
pair
<
uint64_t
,
uint64_t
>
,
std
::
pair
<
const
void
*
,
const
void
*>>
drop_seed_offset
)
{
Kargs
kargs
{{
q_ptr
,
k_ptr
,
...
...
@@ -539,7 +587,20 @@ struct FmhaBwdDQDKDVKernel
}
if
constexpr
(
kHasDropout
)
{
kargs
.
init_dropout
(
p_drop
,
drop_seed_offset
,
scale
);
if
(
drop_seed_offset
.
index
()
==
0
)
// seed & offset come from host
{
const
auto
&
[
seed
,
offset
]
=
std
::
get
<
0
>
(
drop_seed_offset
);
kargs
.
init_dropout
(
p_drop
,
seed
,
offset
,
scale
);
}
else
// seed & offset come from device
{
const
auto
&
[
seed_ptr
,
offset_ptr
]
=
std
::
get
<
1
>
(
drop_seed_offset
);
kargs
.
init_dropout
(
p_drop
,
reinterpret_cast
<
const
uint64_t
*>
(
seed_ptr
),
reinterpret_cast
<
const
uint64_t
*>
(
offset_ptr
),
scale
);
}
if
constexpr
(
kIsStoreRandval
)
{
kargs
.
rand_val_ptr
=
rand_val_ptr
;
...
...
@@ -958,8 +1019,10 @@ struct FmhaBwdDQDKDVKernel
return
FmhaDropout
{
i_batch_
,
i_nhead_
,
kargs
.
num_head_q
,
kargs
.
drop_seed
,
kargs
.
drop_offset
,
kargs
.
is_drop_seed_offset_from_host
?
kargs
.
drop_seed
.
val
:
*
kargs
.
drop_seed
.
ptr
,
kargs
.
is_drop_seed_offset_from_host
?
kargs
.
drop_offset
.
val
:
*
kargs
.
drop_offset
.
ptr
,
kargs
.
rp_undrop
,
kargs
.
p_undrop_in_uint8_t
};
}
...
...
include/ck_tile/ops/fmha/kernel/fmha_fwd_kernel.hpp
View file @
965021d2
...
...
@@ -6,8 +6,11 @@
#include "ck_tile/core.hpp"
#include "ck_tile/ops/common.hpp"
#include "ck_tile/ops/fmha/block/block_attention_bias_enum.hpp"
#include <string>
#include <type_traits>
#include <utility>
#include <variant>
// S[seqlen_q, seqlen_k] = Q[seqlen_q, hdim_q] @ K[seqlen_k, hdim_q]
// S'[seqlen_q, seqlen_k] = S[seqlen_q, seqlen_k] * Scale[1]
...
...
@@ -170,29 +173,55 @@ struct FmhaFwdKernel
ck_tile
::
index_t
batch_stride_lse
=
0
;
};
struct
FmhaFwd
Common
Dropout
Kargs
struct
FmhaFwdDropout
SeedOffset
{
void
init_dropout
(
const
float
p_drop
,
const
std
::
tuple
<
uint64_t
,
uint64_t
>&
drop_seed_offset
)
template
<
typename
T
>
union
ValueOrPointer
{
T
val
;
const
T
*
ptr
;
};
ValueOrPointer
<
uint64_t
>
drop_seed
;
ValueOrPointer
<
uint64_t
>
drop_offset
;
bool
is_drop_seed_offset_from_host
;
};
struct
FmhaFwdCommonDropoutKargs
:
FmhaFwdDropoutSeedOffset
{
void
init_dropout
(
float
p_drop
,
uint64_t
seed
,
uint64_t
offset
)
{
float
p_undrop
=
1.0
-
p_drop
;
p_undrop_in_uint8_t
=
uint8_t
(
std
::
floor
(
p_undrop
*
std
::
numeric_limits
<
uint8_t
>::
max
()));
rp_undrop
=
1.0
/
p_undrop
;
this
->
drop_seed
.
val
=
seed
;
this
->
drop_offset
.
val
=
offset
;
this
->
is_drop_seed_offset_from_host
=
true
;
}
void
init_dropout
(
float
p_drop
,
const
uint64_t
*
seed_ptr
,
const
uint64_t
*
offset_ptr
)
{
float
p_undrop
=
1.0
-
p_drop
;
p_undrop_in_uint8_t
=
uint8_t
(
std
::
floor
(
p_undrop
*
std
::
numeric_limits
<
uint8_t
>::
max
()));
rp_undrop
=
1.0
/
p_undrop
;
drop_seed
=
std
::
get
<
0
>
(
drop_seed_offset
);
drop_offset
=
std
::
get
<
1
>
(
drop_seed_offset
);
this
->
drop_seed
.
ptr
=
seed_ptr
;
this
->
drop_offset
.
ptr
=
offset_ptr
;
this
->
is_drop_seed_offset_from_host
=
false
;
}
float
rp_undrop
=
1
;
uint8_t
p_undrop_in_uint8_t
=
std
::
numeric_limits
<
uint8_t
>::
max
();
bool
is_store_randval
=
false
;
uint64_t
drop_seed
=
1
;
uint64_t
drop_offset
=
0
;
void
*
rand_val_ptr
=
nullptr
;
ck_tile
::
index_t
stride_randval
=
0
;
ck_tile
::
index_t
nhead_stride_randval
=
0
;
};
struct
FmhaFwdBatchModeDropoutKargs
:
FmhaFwdCommonDropoutKargs
{
ck_tile
::
index_t
batch_stride_randval
=
0
;
...
...
@@ -278,7 +307,8 @@ struct FmhaFwdKernel
ck_tile
::
index_t
mask_type
,
float
p_drop
,
bool
s_randval
,
const
std
::
tuple
<
uint64_t
,
uint64_t
>&
drop_seed_offset
)
std
::
variant
<
std
::
pair
<
uint64_t
,
uint64_t
>
,
std
::
pair
<
const
void
*
,
const
void
*>>
drop_seed_offset
)
{
Kargs
kargs
{{
q_ptr
,
k_ptr
,
...
...
@@ -344,7 +374,19 @@ struct FmhaFwdKernel
}
if
constexpr
(
kHasDropout
)
{
kargs
.
init_dropout
(
p_drop
,
drop_seed_offset
);
if
(
drop_seed_offset
.
index
()
==
0
)
// seed & offset come from host
{
const
auto
&
[
seed
,
offset
]
=
std
::
get
<
0
>
(
drop_seed_offset
);
kargs
.
init_dropout
(
p_drop
,
seed
,
offset
);
}
else
// seed & offset come from device
{
const
auto
&
[
seed_ptr
,
offset_ptr
]
=
std
::
get
<
1
>
(
drop_seed_offset
);
kargs
.
init_dropout
(
p_drop
,
reinterpret_cast
<
const
uint64_t
*>
(
seed_ptr
),
reinterpret_cast
<
const
uint64_t
*>
(
offset_ptr
));
}
kargs
.
rand_val_ptr
=
rand_val_ptr
;
kargs
.
stride_randval
=
stride_randval
;
kargs
.
nhead_stride_randval
=
nhead_stride_randval
;
...
...
@@ -392,7 +434,8 @@ struct FmhaFwdKernel
ck_tile
::
index_t
mask_type
,
float
p_drop
,
bool
s_randval
,
const
std
::
tuple
<
uint64_t
,
uint64_t
>&
drop_seed_offset
)
std
::
variant
<
std
::
pair
<
uint64_t
,
uint64_t
>
,
std
::
pair
<
const
void
*
,
const
void
*>>
drop_seed_offset
)
{
Kargs
kargs
{{
q_ptr
,
k_ptr
,
...
...
@@ -455,7 +498,19 @@ struct FmhaFwdKernel
}
if
constexpr
(
kHasDropout
)
{
kargs
.
init_dropout
(
p_drop
,
drop_seed_offset
);
if
(
drop_seed_offset
.
index
()
==
0
)
// seed & offset come from host
{
const
auto
&
[
seed
,
offset
]
=
std
::
get
<
0
>
(
drop_seed_offset
);
kargs
.
init_dropout
(
p_drop
,
seed
,
offset
);
}
else
// seed & offset come from device
{
const
auto
&
[
seed_ptr
,
offset_ptr
]
=
std
::
get
<
1
>
(
drop_seed_offset
);
kargs
.
init_dropout
(
p_drop
,
reinterpret_cast
<
const
uint64_t
*>
(
seed_ptr
),
reinterpret_cast
<
const
uint64_t
*>
(
offset_ptr
));
}
kargs
.
rand_val_ptr
=
rand_val_ptr
;
kargs
.
stride_randval
=
stride_randval
;
kargs
.
nhead_stride_randval
=
nhead_stride_randval
;
...
...
@@ -748,8 +803,10 @@ struct FmhaFwdKernel
return
BlockDropout
{
i_batch_
,
i_nhead_
,
kargs
.
num_head_q
,
kargs
.
drop_seed
,
kargs
.
drop_offset
,
kargs
.
is_drop_seed_offset_from_host
?
kargs
.
drop_seed
.
val
:
*
kargs
.
drop_seed
.
ptr
,
kargs
.
is_drop_seed_offset_from_host
?
kargs
.
drop_offset
.
val
:
*
kargs
.
drop_offset
.
ptr
,
kargs
.
rp_undrop
,
kargs
.
p_undrop_in_uint8_t
,
kargs
.
is_store_randval
};
...
...
include/ck_tile/ops/layernorm2d/kernel/layernorm2d_fwd_kernel.hpp
View file @
965021d2
...
...
@@ -31,8 +31,14 @@ struct Layernorm2dFwd
static
constexpr
ck_tile
::
index_t
kMPerBlock
=
Problem
::
BlockShape
::
kMPerBlock
;
static
constexpr
ck_tile
::
index_t
kNPerBlock
=
Problem
::
BlockShape
::
kNPerBlock
;
static
constexpr
bool
kPadM
=
Problem
::
kPadM
;
static
constexpr
bool
kPadN
=
Problem
::
kPadN
;
static
constexpr
ck_tile
::
index_t
kNThreadPerWarp
=
Problem
::
BlockShape
::
kNThreadPerWarp
;
static
constexpr
ck_tile
::
index_t
kNPerThread
=
Problem
::
BlockShape
::
kNPerThread
;
static
constexpr
auto
I0
=
number
<
0
>
{};
static
constexpr
auto
I1
=
number
<
1
>
{};
struct
Kargs
{
...
...
@@ -96,19 +102,25 @@ struct Layernorm2dFwd
sequence
<
2
>>
{});
}
template
<
typename
Dstr
>
CK_TILE_DEVICE
static
constexpr
auto
GetNPerThread
(
Dstr
)
CK_TILE_DEVICE
static
int
GetWelfordMaxCount
(
int
N
)
{
constexpr
auto
nDstrSpan
=
Dstr
::
get_distributed_spans
().
template
at
<
1
>();
using
Lengths
=
decltype
(
nDstrSpan
.
impl_
);
constexpr
ck_tile
::
index_t
kNThreadPerBlock
=
kNPerBlock
/
kNPerThread
;
ck_tile
::
index_t
ret
=
1
;
int
thread_id_n
=
get_thread_id
()
%
kNThreadPerBlock
;
int
max_count
=
__builtin_amdgcn_readfirstlane
(
N
<
kNPerBlock
?
0
:
kNPerThread
*
(
N
/
kNPerBlock
));
int
n_per_block_tail_loop
=
__builtin_amdgcn_readfirstlane
(
N
-
max_count
*
kNThreadPerBlock
);
ck_tile
::
static_for
<
0
,
Lengths
::
size
(),
1
>
{}(
[
&
](
auto
idx
)
{
ret
*=
Lengths
::
template
at
(
idx
);
});
if
(
n_per_block_tail_loop
>
0
)
{
int
thread_max_n
=
(
thread_id_n
+
1
)
*
kNPerThread
;
int
delta
=
thread_max_n
-
n_per_block_tail_loop
;
delta
=
clamp
(
thread_max_n
-
n_per_block_tail_loop
,
0
,
kNPerThread
);
max_count
+=
kNPerThread
-
delta
;
}
return
re
t
;
return
max_coun
t
;
}
template
<
typename
DistributedTensor
>
...
...
@@ -129,42 +141,29 @@ struct Layernorm2dFwd
return
out_dstr_tensor
;
}
template
<
bool
Cond
=
(
kHasGamma
&&
kHasBeta
)>
CK_TILE_DEVICE
std
::
enable_if_t
<
Cond
>
TwoPassLayernorm2dFwd
(
const
XDataType
*
p_x
,
const
GammaDataType
*
p_gamma
,
const
BetaDataType
*
p_beta
,
YDataType
*
p_y
,
MeanDataType
*
p_mean
,
InvStdDataType
*
p_invStd
,
const
ComputeDataType
epsilon
,
ck_tile
::
index_t
M
,
ck_tile
::
index_t
N
)
const
template
<
typename
XBlockWindow
,
typename
GammaBlockWindow
,
typename
BetaBlockWindow
,
typename
YBlockWindow
,
typename
MeanBlockWindow
,
typename
InvStdBlockWindow
,
bool
Cond
=
(
kHasGamma
&&
kHasBeta
)>
CK_TILE_DEVICE
std
::
enable_if_t
<
Cond
>
TwoPassLayernorm2dFwd
(
XBlockWindow
&
x_block_window
,
GammaBlockWindow
&
gamma_block_window
,
BetaBlockWindow
&
beta_block_window
,
YBlockWindow
&
y_block_window
,
MeanBlockWindow
&
mean_block_window
,
InvStdBlockWindow
&
inv_std_block_window
,
ComputeDataType
epsilon
,
ck_tile
::
index_t
N
)
const
{
constexpr
auto
I0
=
number
<
0
>
{};
constexpr
auto
I1
=
number
<
1
>
{};
const
auto
x_m_n
=
make_naive_tensor_view
<
address_space_enum
::
global
>
(
p_x
,
make_tuple
(
M
,
N
),
make_tuple
(
N
,
1
),
number
<
32
>
{},
number
<
1
>
{});
const
auto
gamma_n
=
make_naive_tensor_view
<
address_space_enum
::
global
>
(
p_gamma
,
make_tuple
(
N
),
make_tuple
(
1
),
number
<
32
>
{},
number
<
1
>
{});
// TODO - Optimize tail loop to reduce move_tile_window()
index_t
num_n_tile_iteration
=
__builtin_amdgcn_readfirstlane
(
integer_divide_ceil
(
N
,
kNPerBlock
));
const
auto
beta_n
=
make_naive_tensor_view
<
address_space_enum
::
global
>
(
p_beta
,
make_tuple
(
N
),
make_tuple
(
1
),
number
<
32
>
{},
number
<
1
>
{});
const
auto
iM
=
get_block_id
()
*
kMPerBlock
;
constexpr
auto
xDstr
=
MakeXBlockTileDistribution
();
auto
x_block_window
=
make_tile_window
(
x_m_n
,
make_tuple
(
number
<
kMPerBlock
>
{},
number
<
kNPerBlock
>
{}),
{
iM
,
0
},
xDstr
);
index_t
num_n_tile_iteration
=
__builtin_amdgcn_readfirstlane
(
N
/
kNPerBlock
);
// TODO: padding - handle max_count if N % kNPerBlock != 0
constexpr
auto
NPerThread
=
GetNPerThread
(
xDstr
);
ThreadWelford
<
ComputeDataType
,
XDataType
>
thread_welford
{
type_convert
<
int
>
(
NPerThread
*
N
/
kNPerBlock
)};
int
welford_max_count
=
GetWelfordMaxCount
(
N
);
ThreadWelford
<
ComputeDataType
,
XDataType
>
thread_welford
{
welford_max_count
};
using
XTensorType
=
decltype
(
load_tile
(
x_block_window
));
auto
mean_compute_block_tensor
=
...
...
@@ -190,44 +189,14 @@ struct Layernorm2dFwd
auto
inv_std_compute_block_tensor
=
InvSqrt
(
var_compute_block_tensor
,
epsilon
);
if
constexpr
(
kSaveMean
)
{
const
auto
mean_m
=
make_naive_tensor_view_packed
<
address_space_enum
::
global
>
(
p_mean
,
make_tuple
(
M
),
number
<
32
>
{});
auto
mean_block_window
=
make_tile_window
(
mean_m
,
make_tuple
(
number
<
kMPerBlock
>
{}),
{
iM
});
store_tile
(
mean_block_window
,
cast_tile
<
MeanDataType
>
(
mean_compute_block_tensor
));
}
if
constexpr
(
kSaveInvStd
)
{
const
auto
inv_std_m
=
make_naive_tensor_view_packed
<
address_space_enum
::
global
>
(
p_invStd
,
make_tuple
(
M
),
number
<
32
>
{});
auto
inv_std_block_window
=
make_tile_window
(
inv_std_m
,
make_tuple
(
number
<
kMPerBlock
>
{}),
{
iM
});
store_tile
(
inv_std_block_window
,
cast_tile
<
MeanDataType
>
(
inv_std_compute_block_tensor
));
}
// TODO: Extract normalize pipeline
const
auto
y_m_n
=
make_naive_tensor_view
<
address_space_enum
::
global
>
(
p_y
,
make_tuple
(
M
,
N
),
make_tuple
(
N
,
1
),
number
<
32
>
{},
number
<
1
>
{});
auto
y_block_window
=
make_tile_window
(
y_m_n
,
make_tuple
(
number
<
kMPerBlock
>
{},
number
<
kNPerBlock
>
{}),
{
iM
,
0
});
constexpr
auto
gammaDstr
=
MakeGammaBetaBlockTileDistribution
();
constexpr
auto
betaDstr
=
gammaDstr
;
auto
gamma_block_window
=
make_tile_window
(
gamma_n
,
make_tuple
(
number
<
kNPerBlock
>
{}),
{
0
},
gammaDstr
);
auto
beta_block_window
=
make_tile_window
(
beta_n
,
make_tuple
(
number
<
kMPerBlock
>
{},
number
<
kNPerBlock
>
{}),
{
0
},
betaDstr
);
store_tile
(
inv_std_block_window
,
cast_tile
<
InvStdDataType
>
(
inv_std_compute_block_tensor
));
// reverse read x to reuse cache
ck_tile
::
index_t
stride_to_right_most_window
=
N
-
kNPerBlock
;
ck_tile
::
index_t
stride_to_right_most_window
=
N
%
kNPerBlock
==
0
?
N
-
kNPerBlock
:
N
-
N
%
kNPerBlock
;
move_tile_window
(
x_block_window
,
{
0
,
-
kNPerBlock
});
move_tile_window
(
gamma_block_window
,
{
stride_to_right_most_window
});
...
...
@@ -274,17 +243,209 @@ struct Layernorm2dFwd
}
}
template
<
typename
XBlockWindow
,
typename
GammaBlockWindow
,
typename
BetaBlockWindow
,
typename
YBlockWindow
,
typename
MeanBlockWindow
,
typename
InvStdBlockWindow
,
bool
Cond
=
(
kHasGamma
&&
kHasBeta
)>
CK_TILE_DEVICE
std
::
enable_if_t
<
Cond
>
OnePassLayernorm2dFwd
(
XBlockWindow
&
x_block_window
,
GammaBlockWindow
&
gamma_block_window
,
BetaBlockWindow
&
beta_block_window
,
YBlockWindow
&
y_block_window
,
MeanBlockWindow
&
mean_block_window
,
InvStdBlockWindow
&
inv_std_block_window
,
ComputeDataType
epsilon
,
ck_tile
::
index_t
N
)
const
{
int
welford_max_count
=
GetWelfordMaxCount
(
N
);
ThreadWelford
<
ComputeDataType
,
XDataType
>
thread_welford
{
welford_max_count
};
using
XTensorType
=
decltype
(
load_tile
(
x_block_window
));
auto
mean_compute_block_tensor
=
thread_welford
.
template
MakeInitialMeanVarDistributedTensor
<
XTensorType
>();
auto
var_compute_block_tensor
=
thread_welford
.
template
MakeInitialMeanVarDistributedTensor
<
XTensorType
>();
clear_tile
(
mean_compute_block_tensor
);
clear_tile
(
var_compute_block_tensor
);
const
auto
x_block_tensor
=
load_tile
(
x_block_window
);
thread_welford
(
x_block_tensor
,
mean_compute_block_tensor
,
var_compute_block_tensor
);
// TODO: support cross warp Welford
WarpMergeWelford
<
ComputeDataType
,
true
>
{}(
mean_compute_block_tensor
,
var_compute_block_tensor
,
thread_welford
.
cur_count_
);
auto
inv_std_compute_block_tensor
=
InvSqrt
(
var_compute_block_tensor
,
epsilon
);
if
constexpr
(
kSaveMean
)
store_tile
(
mean_block_window
,
cast_tile
<
MeanDataType
>
(
mean_compute_block_tensor
));
if
constexpr
(
kSaveInvStd
)
store_tile
(
inv_std_block_window
,
cast_tile
<
InvStdDataType
>
(
inv_std_compute_block_tensor
));
// normalize
const
auto
gamma_block_tensor
=
load_tile
(
gamma_block_window
);
const
auto
beta_block_tensor
=
load_tile
(
beta_block_window
);
constexpr
auto
x_spans
=
decltype
(
x_block_tensor
)
::
get_distributed_spans
();
auto
y_block_tensor
=
make_static_distributed_tensor
<
YDataType
>
(
x_block_tensor
.
get_tile_distribution
());
sweep_tile_span
(
x_spans
[
I1
],
[
&
](
auto
idx1
)
{
constexpr
auto
j_idx
=
make_tuple
(
idx1
);
const
auto
gamma
=
type_convert
<
ComputeDataType
>
(
gamma_block_tensor
[
j_idx
]);
const
auto
beta
=
type_convert
<
ComputeDataType
>
(
beta_block_tensor
[
j_idx
]);
sweep_tile_span
(
x_spans
[
I0
],
[
&
](
auto
idx0
)
{
constexpr
auto
i_idx
=
make_tuple
(
idx0
);
constexpr
auto
i_j_idx
=
make_tuple
(
idx0
,
idx1
);
const
auto
mean
=
mean_compute_block_tensor
[
i_idx
];
const
auto
inv_std
=
inv_std_compute_block_tensor
[
i_idx
];
const
auto
x
=
type_convert
<
ComputeDataType
>
(
x_block_tensor
[
i_j_idx
]);
auto
y
=
(
x
-
mean
)
*
inv_std
*
gamma
+
beta
;
y_block_tensor
(
i_j_idx
)
=
type_convert
<
YDataType
>
(
y
);
});
});
store_tile
(
y_block_window
,
y_block_tensor
);
}
CK_TILE_DEVICE
void
operator
()(
Kargs
kargs
)
const
{
TwoPassLayernorm2dFwd
(
static_cast
<
const
XDataType
*>
(
kargs
.
p_x
),
static_cast
<
const
GammaDataType
*>
(
kargs
.
p_gamma
),
static_cast
<
const
BetaDataType
*>
(
kargs
.
p_beta
),
static_cast
<
YDataType
*>
(
kargs
.
p_y
),
static_cast
<
MeanDataType
*>
(
kargs
.
p_mean
),
static_cast
<
InvStdDataType
*>
(
kargs
.
p_invStd
),
static_cast
<
const
ComputeDataType
>
(
kargs
.
epsilon
),
kargs
.
M
,
kargs
.
N
);
const
auto
x_m_n
=
[
&
]()
{
const
auto
x_dram_naive
=
make_naive_tensor_view
<
address_space_enum
::
global
>
(
static_cast
<
const
XDataType
*>
(
kargs
.
p_x
),
make_tuple
(
kargs
.
M
,
kargs
.
N
),
make_tuple
(
kargs
.
N
,
1
),
number
<
kNPerThread
>
{},
number
<
1
>
{});
return
pad_tensor_view
(
x_dram_naive
,
make_tuple
(
number
<
kMPerBlock
>
{},
number
<
kNPerBlock
>
{}),
sequence
<
kPadM
,
kPadN
>
{});
}();
const
auto
gamma_n
=
[
&
]()
{
const
auto
gamma_dram_naive
=
make_naive_tensor_view
<
address_space_enum
::
global
>
(
static_cast
<
const
GammaDataType
*>
(
kargs
.
p_gamma
),
make_tuple
(
kargs
.
N
),
make_tuple
(
1
),
number
<
kNPerThread
>
{},
number
<
1
>
{});
return
pad_tensor_view
(
gamma_dram_naive
,
make_tuple
(
number
<
kNPerBlock
>
{}),
sequence
<
kPadN
>
{});
}();
const
auto
beta_n
=
[
&
]()
{
const
auto
gamma_dram_naive
=
make_naive_tensor_view
<
address_space_enum
::
global
>
(
static_cast
<
const
BetaDataType
*>
(
kargs
.
p_beta
),
make_tuple
(
kargs
.
N
),
make_tuple
(
1
),
number
<
kNPerThread
>
{},
number
<
1
>
{});
return
pad_tensor_view
(
gamma_dram_naive
,
make_tuple
(
number
<
kNPerBlock
>
{}),
sequence
<
kPadN
>
{});
}();
const
auto
iM
=
get_block_id
()
*
kMPerBlock
;
constexpr
auto
xDstr
=
MakeXBlockTileDistribution
();
auto
x_block_window
=
make_tile_window
(
x_m_n
,
make_tuple
(
number
<
kMPerBlock
>
{},
number
<
kNPerBlock
>
{}),
{
iM
,
0
},
xDstr
);
const
auto
y_m_n
=
[
&
]()
{
const
auto
y_dram_naive
=
make_naive_tensor_view
<
address_space_enum
::
global
>
(
static_cast
<
YDataType
*>
(
kargs
.
p_y
),
make_tuple
(
kargs
.
M
,
kargs
.
N
),
make_tuple
(
kargs
.
N
,
1
),
number
<
kNPerThread
>
{},
number
<
1
>
{});
return
pad_tensor_view
(
y_dram_naive
,
make_tuple
(
number
<
kMPerBlock
>
{},
number
<
kNPerBlock
>
{}),
sequence
<
kPadM
,
kPadN
>
{});
}();
auto
y_block_window
=
make_tile_window
(
y_m_n
,
make_tuple
(
number
<
kMPerBlock
>
{},
number
<
kNPerBlock
>
{}),
{
iM
,
0
});
constexpr
auto
gammaDstr
=
MakeGammaBetaBlockTileDistribution
();
constexpr
auto
betaDstr
=
gammaDstr
;
auto
gamma_block_window
=
make_tile_window
(
gamma_n
,
make_tuple
(
number
<
kNPerBlock
>
{}),
{
0
},
gammaDstr
);
auto
beta_block_window
=
make_tile_window
(
beta_n
,
make_tuple
(
number
<
kMPerBlock
>
{},
number
<
kNPerBlock
>
{}),
{
0
},
betaDstr
);
auto
mean_block_window
=
[
&
]()
{
if
constexpr
(
kSaveMean
)
{
const
auto
mean_m
=
[
&
]()
{
const
auto
mean_dram_naive
=
make_naive_tensor_view_packed
<
address_space_enum
::
global
>
(
static_cast
<
MeanDataType
*>
(
kargs
.
p_mean
),
make_tuple
(
kargs
.
M
),
number
<
1
>
{});
return
pad_tensor_view
(
mean_dram_naive
,
make_tuple
(
number
<
kMPerBlock
>
{}),
sequence
<
kPadM
>
{});
}();
return
make_tile_window
(
mean_m
,
make_tuple
(
number
<
kMPerBlock
>
{}),
{
iM
});
}
else
return
make_null_tile_window
(
make_tuple
(
number
<
kMPerBlock
>
{}));
}();
auto
inv_std_block_window
=
[
&
]()
{
if
constexpr
(
kSaveInvStd
)
{
const
auto
inv_std_m
=
[
&
]()
{
const
auto
inv_std_dram_naive
=
make_naive_tensor_view_packed
<
address_space_enum
::
global
>
(
static_cast
<
InvStdDataType
*>
(
kargs
.
p_invStd
),
make_tuple
(
kargs
.
M
),
number
<
1
>
{});
return
pad_tensor_view
(
inv_std_dram_naive
,
make_tuple
(
number
<
kMPerBlock
>
{}),
sequence
<
kPadM
>
{});
}();
return
make_tile_window
(
inv_std_m
,
make_tuple
(
number
<
kMPerBlock
>
{}),
{
iM
});
}
else
return
make_null_tile_window
(
make_tuple
(
number
<
kMPerBlock
>
{}));
}();
if
(
kargs
.
N
<=
kNPerBlock
)
OnePassLayernorm2dFwd
(
x_block_window
,
gamma_block_window
,
beta_block_window
,
y_block_window
,
mean_block_window
,
inv_std_block_window
,
static_cast
<
const
ComputeDataType
>
(
kargs
.
epsilon
),
kargs
.
N
);
else
TwoPassLayernorm2dFwd
(
x_block_window
,
gamma_block_window
,
beta_block_window
,
y_block_window
,
mean_block_window
,
inv_std_block_window
,
static_cast
<
const
ComputeDataType
>
(
kargs
.
epsilon
),
kargs
.
N
);
}
};
...
...
include/ck_tile/ops/layernorm2d/pipeline/block_layernorm2d_fwd_problem.hpp
View file @
965021d2
...
...
@@ -14,17 +14,21 @@ template <typename XDataType_,
typename
YDataType_
,
typename
MeanDataType_
,
typename
InvStdDataType_
,
typename
BlockShape_
>
typename
BlockShape_
,
bool
kPadM_
,
bool
kPadN_
>
struct
BlockLayernorm2dFwdProblem
{
using
XDataType
=
remove_cvref_t
<
XDataType_
>
;
using
GammaDataType
=
remove_cvref_t
<
GammaDataType_
>
;
using
BetaDataType
=
remove_cvref_t
<
BetaDataType_
>
;
using
ComputeDataType
=
remove_cvref_t
<
ComputeDataType_
>
;
using
YDataType
=
remove_cvref_t
<
YDataType_
>
;
using
MeanDataType
=
remove_cvref_t
<
MeanDataType_
>
;
using
InvStdDataType
=
remove_cvref_t
<
InvStdDataType_
>
;
using
BlockShape
=
remove_cvref_t
<
BlockShape_
>
;
using
XDataType
=
remove_cvref_t
<
XDataType_
>
;
using
GammaDataType
=
remove_cvref_t
<
GammaDataType_
>
;
using
BetaDataType
=
remove_cvref_t
<
BetaDataType_
>
;
using
ComputeDataType
=
remove_cvref_t
<
ComputeDataType_
>
;
using
YDataType
=
remove_cvref_t
<
YDataType_
>
;
using
MeanDataType
=
remove_cvref_t
<
MeanDataType_
>
;
using
InvStdDataType
=
remove_cvref_t
<
InvStdDataType_
>
;
using
BlockShape
=
remove_cvref_t
<
BlockShape_
>
;
static
constexpr
bool
kPadM
=
kPadM_
;
static
constexpr
bool
kPadN
=
kPadN_
;
};
}
// namespace ck_tile
library/src/tensor_operation_instance/gpu/CMakeLists.txt
View file @
965021d2
...
...
@@ -37,11 +37,7 @@ function(add_instance_library INSTANCE_NAME)
endforeach
()
endif
()
if
(
INSTANCES_ONLY
)
set
(
INST_TARGETS
${
DEFAULT_GPU_TARGETS
}
)
else
()
set
(
INST_TARGETS
${
GPU_TARGETS
}
)
endif
()
set
(
INST_TARGETS
${
SUPPORTED_GPU_TARGETS
}
)
# Do not build DL instances if DL_KERNELS macro is not set
foreach
(
source IN LISTS ARGN
)
...
...
@@ -64,9 +60,9 @@ function(add_instance_library INSTANCE_NAME)
list
(
REMOVE_ITEM ARGN
"
${
source
}
"
)
endif
()
endforeach
()
# Do not build mha instances if gfx94 targets are not on the target list
# Do not build mha instances if gfx94
or gfx90a
targets are not on the target list
foreach
(
source IN LISTS ARGN
)
if
(
NOT INST_TARGETS MATCHES
"gfx94"
AND source MATCHES
"mha"
)
if
(
NOT INST_TARGETS MATCHES
"gfx94"
AND
NOT INST_TARGETS MATCHES
"gfx90a"
AND
source MATCHES
"mha"
)
message
(
"removing mha instance
${
source
}
"
)
list
(
REMOVE_ITEM ARGN
"
${
source
}
"
)
endif
()
...
...
@@ -75,17 +71,13 @@ function(add_instance_library INSTANCE_NAME)
if
(
ARGN
)
set
(
INST_OBJ
)
foreach
(
source IN LISTS ARGN
)
if
(
INSTANCES_ONLY
)
set
(
INST_TARGETS
${
DEFAULT_GPU_TARGETS
}
)
else
()
set
(
INST_TARGETS
${
GPU_TARGETS
}
)
endif
()
set
(
INST_TARGETS
${
SUPPORTED_GPU_TARGETS
}
)
if
(
source MATCHES
"_xdl"
)
list
(
REMOVE_ITEM INST_TARGETS gfx900 gfx906 gfx1030 gfx1100 gfx1101 gfx1102 gfx1103 gfx1200 gfx1201
)
elseif
(
ARGN MATCHES
"_wmma"
)
list
(
REMOVE_ITEM INST_TARGETS gfx900 gfx906 gfx908 gfx90a gfx940 gfx941 gfx942 gfx1030
)
elseif
(
ARGN MATCHES
"mha"
)
list
(
REMOVE_ITEM INST_TARGETS gfx900 gfx906 gfx908
gfx90a
gfx1030 gfx1100 gfx1101 gfx1102 gfx1103 gfx1200 gfx1201
)
list
(
REMOVE_ITEM INST_TARGETS gfx900 gfx906 gfx908 gfx1030 gfx1100 gfx1101 gfx1102 gfx1103 gfx1200 gfx1201
)
endif
()
set
(
offload_targets
)
foreach
(
target IN LISTS INST_TARGETS
)
...
...
@@ -191,12 +183,7 @@ FOREACH(subdir_path ${dir_list})
set
(
add_inst 1
)
endif
()
if
(
INSTANCES_ONLY
)
set
(
INST_TARGETS
${
DEFAULT_GPU_TARGETS
}
)
else
()
set
(
INST_TARGETS
${
GPU_TARGETS
}
)
endif
()
set
(
INST_TARGETS
${
SUPPORTED_GPU_TARGETS
}
)
if
((
"
${
cmake_instance
}
"
MATCHES
"quantization"
)
AND
(
DEFINED DTYPES
)
AND
(
NOT DTYPES MATCHES
"int8"
))
message
(
"quantization instances will not be built!"
)
...
...
@@ -320,8 +307,7 @@ if(CK_DEVICE_CONV_INSTANCES)
endif
()
if
(
CK_DEVICE_MHA_INSTANCES
)
set
(
gpu_list
${
INST_TARGETS
}
)
list
(
FILTER gpu_list INCLUDE REGEX
"^gfx94"
)
if
(
gpu_list
)
if
(
gpu_list MATCHES
"gfx94"
OR gpu_list MATCHES
"gfx90a"
)
add_library
(
device_mha_operations STATIC
${
CK_DEVICE_MHA_INSTANCES
}
)
add_library
(
composablekernels::device_mha_operations ALIAS device_mha_operations
)
target_compile_features
(
device_mha_operations PUBLIC
)
...
...
profiler/src/CMakeLists.txt
View file @
965021d2
...
...
@@ -24,7 +24,7 @@ set(PROFILER_SOURCES
profile_permute_scale.cpp
)
if
(
GPU_TARGETS MATCHES
"gfx9"
)
if
(
SUPPORTED_
GPU_TARGETS MATCHES
"gfx9"
)
if
(
DTYPES MATCHES
"fp32"
OR DTYPES MATCHES
"fp64"
OR NOT DEFINED DTYPES
)
list
(
APPEND PROFILER_SOURCES profile_contraction_bilinear.cpp
)
list
(
APPEND PROFILER_SOURCES profile_contraction_scale.cpp
)
...
...
@@ -49,7 +49,7 @@ if(GPU_TARGETS MATCHES "gfx9")
list
(
APPEND PROFILER_SOURCES profile_grouped_gemm_multiply_tile_loop.cpp
)
endif
()
list
(
APPEND PROFILER_SOURCES profile_gemm_multiply_add.cpp
)
if
(
GPU_TARGETS MATCHES
"gfx94"
)
if
(
SUPPORTED_
GPU_TARGETS MATCHES
"gfx94"
)
list
(
APPEND PROFILER_SOURCES profile_gemm_multiply_multiply.cpp
)
list
(
APPEND PROFILER_SOURCES profile_gemm_ab_scale.cpp
)
endif
()
...
...
@@ -69,7 +69,7 @@ if(GPU_TARGETS MATCHES "gfx9")
endif
()
if
(
GPU_TARGETS MATCHES
"gfx11"
OR GPU_TARGETS MATCHES
"gfx12"
OR GPU_TARGETS MATCHES
"gfx9"
)
if
(
SUPPORTED_
GPU_TARGETS MATCHES
"gfx11"
OR
SUPPORTED_
GPU_TARGETS MATCHES
"gfx12"
OR
SUPPORTED_
GPU_TARGETS MATCHES
"gfx9"
)
if
(
DTYPES MATCHES
"fp16"
OR NOT DEFINED DTYPES
)
list
(
APPEND PROFILER_SOURCES profile_gemm_bilinear.cpp
)
endif
()
...
...
@@ -111,7 +111,7 @@ target_link_libraries(${PROFILER_EXECUTABLE} PRIVATE device_column_to_image_inst
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_transpose_instance
)
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_permute_scale_instance
)
if
(
GPU_TARGETS MATCHES
"gfx9"
)
if
(
SUPPORTED_
GPU_TARGETS MATCHES
"gfx9"
)
if
(
DTYPES MATCHES
"fp32"
OR DTYPES MATCHES
"fp64"
OR NOT DEFINED DTYPES
)
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_contraction_bilinear_instance
)
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_contraction_scale_instance
)
...
...
@@ -135,7 +135,7 @@ if(GPU_TARGETS MATCHES "gfx9")
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_batched_gemm_instance
)
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_batched_gemm_reduce_instance
)
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_gemm_multiply_add_instance
)
if
(
GPU_TARGETS MATCHES
"gfx94"
)
if
(
SUPPORTED_
GPU_TARGETS MATCHES
"gfx94"
)
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_gemm_multiply_multiply_instance
)
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_gemm_ab_scale_instance
)
endif
()
...
...
@@ -159,7 +159,7 @@ if(GPU_TARGETS MATCHES "gfx9")
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_grouped_conv3d_fwd_convinvscale_instance
)
endif
()
if
(
GPU_TARGETS MATCHES
"gfx9"
OR GPU_TARGETS MATCHES
"gfx11"
OR GPU_TARGETS MATCHES
"gfx12"
)
if
(
SUPPORTED_
GPU_TARGETS MATCHES
"gfx9"
OR
SUPPORTED_
GPU_TARGETS MATCHES
"gfx11"
OR
SUPPORTED_
GPU_TARGETS MATCHES
"gfx12"
)
if
(
DTYPES MATCHES
"fp16"
OR NOT DEFINED DTYPES
)
target_link_libraries
(
${
PROFILER_EXECUTABLE
}
PRIVATE device_gemm_bilinear_instance
)
endif
()
...
...
test/CMakeLists.txt
View file @
965021d2
...
...
@@ -41,11 +41,7 @@ function(add_test_executable TEST_NAME)
endforeach
()
endif
()
if
(
INSTANCES_ONLY
)
set
(
TEST_TARGETS
${
DEFAULT_GPU_TARGETS
}
)
else
()
set
(
TEST_TARGETS
${
GPU_TARGETS
}
)
endif
()
set
(
TEST_TARGETS
${
SUPPORTED_GPU_TARGETS
}
)
foreach
(
source IN LISTS ARGN
)
if
(
NOT DEFINED DL_KERNELS AND source MATCHES
"_dl"
)
...
...
@@ -122,11 +118,7 @@ function(add_gtest_executable TEST_NAME)
endforeach
()
endif
()
if
(
INSTANCES_ONLY
)
set
(
TEST_TARGETS
${
DEFAULT_GPU_TARGETS
}
)
else
()
set
(
TEST_TARGETS
${
GPU_TARGETS
}
)
endif
()
set
(
TEST_TARGETS
${
SUPPORTED_GPU_TARGETS
}
)
foreach
(
source IN LISTS ARGN
)
if
(
NOT DEFINED DL_KERNELS AND source MATCHES
"_dl"
)
...
...
@@ -211,10 +203,10 @@ add_subdirectory(conv_tensor_rearrange)
add_subdirectory
(
transpose
)
add_subdirectory
(
permute_scale
)
add_subdirectory
(
wrapper
)
if
(
GPU_TARGETS MATCHES
"gfx11"
)
if
(
SUPPORTED_
GPU_TARGETS MATCHES
"gfx11"
)
add_subdirectory
(
wmma_op
)
endif
()
if
(
GPU_TARGETS MATCHES
"gfx942"
AND CK_HIP_VERSION_MAJOR GREATER_EQUAL 6 AND CK_HIP_VERSION_MINOR GREATER_EQUAL 2
)
# smfmac needs ROCm6.2
if
(
SUPPORTED_
GPU_TARGETS MATCHES
"gfx942"
AND CK_HIP_VERSION_MAJOR GREATER_EQUAL 6 AND CK_HIP_VERSION_MINOR GREATER_EQUAL 2
)
# smfmac needs ROCm6.2
add_subdirectory
(
smfmac_op
)
endif
()
add_subdirectory
(
position_embedding
)
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