Skip to content
GitLab
Menu
Projects
Groups
Snippets
Loading...
Help
Help
Support
Community forum
Keyboard shortcuts
?
Submit feedback
Contribute to GitLab
Sign in / Register
Toggle navigation
Menu
Open sidebar
jerrrrry
infinicore
Commits
125afeb5
Unverified
Commit
125afeb5
authored
May 13, 2025
by
PanZezhong1725
Committed by
GitHub
May 13, 2025
Browse files
Merge pull request #192 from YdrMaster/random-sample-cuda
issue/191/docs: 规范 random sample 算子构造过程,添加 cuda 接口
parents
1d0af1e4
5c0cb198
Changes
8
Hide whitespace changes
Inline
Side-by-side
Showing
8 changed files
with
546 additions
and
107 deletions
+546
-107
README.md
README.md
+5
-1
src/infiniop/ops/random_sample/cpu/random_sample_cpu.cc
src/infiniop/ops/random_sample/cpu/random_sample_cpu.cc
+33
-96
src/infiniop/ops/random_sample/cuda/random_sample_cuda.cu
src/infiniop/ops/random_sample/cuda/random_sample_cuda.cu
+99
-0
src/infiniop/ops/random_sample/cuda/random_sample_cuda.cuh
src/infiniop/ops/random_sample/cuda/random_sample_cuda.cuh
+8
-0
src/infiniop/ops/random_sample/cuda/random_sample_kernel.cuh
src/infiniop/ops/random_sample/cuda/random_sample_kernel.cuh
+254
-0
src/infiniop/ops/random_sample/info.h
src/infiniop/ops/random_sample/info.h
+33
-0
src/infiniop/ops/random_sample/operator.cc
src/infiniop/ops/random_sample/operator.cc
+17
-1
src/infiniop/ops/random_sample/random_sample.h
src/infiniop/ops/random_sample/random_sample.h
+97
-9
No files found.
README.md
View file @
125afeb5
...
...
@@ -175,6 +175,10 @@ options:
{
"clangd.arguments": [
"--compile-commands-dir=.vscode"
]
],
"xmake.additionalConfigArguments": [
// 在这里配置 XMAKE_CONFIG_FLAGS
"--nv-gpu=y"
],
}
```
src/infiniop/ops/random_sample/cpu/random_sample_cpu.cc
View file @
125afeb5
#include "random_sample_cpu.h"
#include "../../../devices/cpu/common_cpu.h"
#include "../
../../devices/cpu/cpu_handle
.h"
#include "
../../../tens
or.h"
#include "../
info
.h"
#include "
infinic
or
e
.h"
#include <algorithm>
namespace
op
::
random_sample
::
cpu
{
...
...
@@ -15,29 +15,14 @@ infiniStatus_t Descriptor::create(
infiniopTensorDescriptor_t
probs_desc
)
{
auto
handle
=
reinterpret_cast
<
device
::
cpu
::
Handle
*>
(
handle_
);
auto
dt_i
=
result_desc
->
dtype
();
auto
dt_p
=
probs_desc
->
dtype
();
CHECK_DTYPE
(
dt_i
,
INFINI_DTYPE_U8
,
INFINI_DTYPE_U16
,
INFINI_DTYPE_U32
,
INFINI_DTYPE_U64
,
INFINI_DTYPE_I8
,
INFINI_DTYPE_I16
,
INFINI_DTYPE_I32
,
INFINI_DTYPE_I64
);
CHECK_DTYPE
(
dt_p
,
INFINI_DTYPE_F16
,
INFINI_DTYPE_F32
,
INFINI_DTYPE_F64
);
CHECK_API_OR
(
result_desc
->
ndim
(),
0
,
return
INFINI_STATUS_BAD_TENSOR_SHAPE
);
CHECK_API_OR
(
probs_desc
->
ndim
(),
1
,
return
INFINI_STATUS_BAD_TENSOR_SHAPE
);
CHECK_API_OR
(
probs_desc
->
stride
(
0
),
1
,
return
INFINI_STATUS_BAD_TENSOR_STRIDES
);
auto
result
=
RandomSampleInfo
::
create
(
result_desc
,
probs_desc
);
CHECK_RESULT
(
result
);
*
desc_ptr
=
new
Descriptor
(
dt_i
,
dt_p
,
probs_desc
->
dim
(
0
),
result
.
take
(),
0
,
nullptr
,
handle
->
device
,
handle
->
device_id
);
handle
->
device
,
handle
->
device_id
);
return
INFINI_STATUS_SUCCESS
;
}
...
...
@@ -55,36 +40,42 @@ struct ComputeType<fp16_t> {
using
type
=
float
;
};
template
<
class
Tidx
,
class
Tval
>
struct
Scheme
{
using
Tcompute
=
typename
ComputeType
<
Tval
>::
type
;
struct
Algo
{
static
Tcompute
get
(
void
const
*
ptr
,
size_t
i
)
{
return
utils
::
cast
<
Tcompute
,
Tval
>
(
reinterpret_cast
<
Tval
const
*>
(
ptr
)[
i
]);
template
<
class
Tidx
,
class
Tval
>
static
auto
get
(
void
const
*
ptr
,
size_t
i
)
{
return
utils
::
cast
<
typename
ComputeType
<
Tval
>::
type
,
Tval
>
(
reinterpret_cast
<
Tval
const
*>
(
ptr
)[
i
]);
}
static
void
argmax
(
void
*
result
,
void
const
*
probs
,
size_t
n
)
{
template
<
class
Tidx
,
class
Tval
>
infiniStatus_t
argmax
(
void
*
workspace
,
size_t
workspace_size
,
void
*
result
,
void
const
*
probs
,
size_t
n
,
void
*
stream
)
{
auto
idx
=
reinterpret_cast
<
Tidx
*>
(
result
);
*
idx
=
0
;
auto
max_val
=
get
(
probs
,
0
);
auto
max_val
=
get
<
Tidx
,
Tval
>
(
probs
,
0
);
for
(
size_t
i
=
0
;
i
<
n
;
i
++
)
{
if
(
auto
val
=
get
(
probs
,
i
);
val
>
max_val
)
{
if
(
auto
val
=
get
<
Tidx
,
Tval
>
(
probs
,
i
);
val
>
max_val
)
{
max_val
=
val
;
*
idx
=
static_cast
<
Tidx
>
(
i
);
}
}
return
INFINI_STATUS_SUCCESS
;
}
static
void
random
(
template
<
class
Tidx
,
class
Tval
>
infiniStatus_t
random
(
void
*
workspace
,
size_t
workspace_size
,
void
*
result
,
void
const
*
probs
,
size_t
n
,
float
random_val
,
float
topp
,
int
topk
,
float
temperature
)
{
float
random_val
,
float
topp
,
int
topk
,
float
temperature
,
void
*
stream
)
{
struct
KVPair
{
Tidx
idx
;
Tcomput
e
val
;
typename
ComputeType
<
Tval
>::
typ
e
val
;
bool
operator
<
(
const
KVPair
&
other
)
const
{
return
val
>
other
.
val
;
...
...
@@ -95,7 +86,7 @@ struct Scheme {
// build & sort
std
::
vector
<
KVPair
>
pairs
(
n
);
for
(
size_t
i
=
0
;
i
<
n
;
i
++
)
{
pairs
[
i
]
=
{
static_cast
<
Tidx
>
(
i
),
get
(
probs
,
i
)};
pairs
[
i
]
=
{
static_cast
<
Tidx
>
(
i
),
get
<
Tidx
,
Tval
>
(
probs
,
i
)};
}
std
::
sort
(
pairs
.
begin
(),
pairs
.
end
());
// softmax & sum
...
...
@@ -115,68 +106,10 @@ struct Scheme {
break
;
}
}
}
};
template
<
class
Tidx
,
class
Tval
>
void
switch_f
(
size_t
n
,
void
*
result
,
const
void
*
probs
,
float
random_val
,
float
topp
,
int
topk
,
float
temperature
)
{
if
(
random_val
==
0
||
topp
==
0
||
topk
==
1
||
temperature
==
0
)
{
Scheme
<
Tidx
,
Tval
>::
argmax
(
result
,
probs
,
n
);
}
else
{
Scheme
<
Tidx
,
Tval
>::
random
(
result
,
probs
,
n
,
random_val
,
topp
,
topk
,
temperature
);
}
}
template
<
class
Tidx
>
void
switch_val
(
infiniDtype_t
dt_p
,
size_t
n
,
void
*
result
,
void
const
*
probs
,
float
random_val
,
float
topp
,
int
topk
,
float
temperature
)
{
switch
(
dt_p
)
{
case
INFINI_DTYPE_F16
:
switch_f
<
Tidx
,
fp16_t
>
(
n
,
result
,
probs
,
random_val
,
topp
,
topk
,
temperature
);
break
;
case
INFINI_DTYPE_F32
:
switch_f
<
Tidx
,
float
>
(
n
,
result
,
probs
,
random_val
,
topp
,
topk
,
temperature
);
break
;
case
INFINI_DTYPE_F64
:
switch_f
<
Tidx
,
double
>
(
n
,
result
,
probs
,
random_val
,
topp
,
topk
,
temperature
);
break
;
default:
// unreachable
std
::
abort
();
}
}
void
switch_idx
(
infiniDtype_t
dt_i
,
infiniDtype_t
dt_p
,
size_t
n
,
void
*
result
,
void
const
*
probs
,
float
random_val
,
float
topp
,
int
topk
,
float
temperature
)
{
#define CASE(DT_VAL, DT_TYP) \
case DT_VAL: \
switch_val<DT_TYP>(dt_p, n, result, probs, random_val, topp, topk, temperature); \
break
switch
(
dt_i
)
{
CASE
(
INFINI_DTYPE_I8
,
int8_t
);
CASE
(
INFINI_DTYPE_I16
,
int16_t
);
CASE
(
INFINI_DTYPE_I32
,
int32_t
);
CASE
(
INFINI_DTYPE_I64
,
int64_t
);
CASE
(
INFINI_DTYPE_U8
,
uint8_t
);
CASE
(
INFINI_DTYPE_U16
,
uint16_t
);
CASE
(
INFINI_DTYPE_U32
,
uint32_t
);
CASE
(
INFINI_DTYPE_U64
,
uint64_t
);
default:
// unreachable
std
::
abort
();
return
INFINI_STATUS_SUCCESS
;
}
#undef CASE
}
};
infiniStatus_t
Descriptor
::
calculate
(
void
*
workspace
,
...
...
@@ -189,7 +122,11 @@ infiniStatus_t Descriptor::calculate(
float
temperature
,
void
*
stream
)
const
{
switch_idx
(
_dt_i
,
_dt_p
,
_n
,
result
,
probs
,
random_val
,
topp
,
topk
,
temperature
);
Calculate
::
calculate
<
Algo
>
(
Algo
{},
_info
,
workspace
,
workspace_size
,
result
,
probs
,
random_val
,
topp
,
topk
,
temperature
,
stream
);
return
INFINI_STATUS_SUCCESS
;
}
...
...
src/infiniop/ops/random_sample/cuda/random_sample_cuda.cu
0 → 100644
View file @
125afeb5
#
include
"../../../devices/cuda/cuda_handle.cuh"
#include "../info.h"
#include "random_sample_cuda.cuh"
#include "random_sample_kernel.cuh"
namespace
op
::
random_sample
::
cuda
{
struct
Descriptor
::
Opaque
{
std
::
shared_ptr
<
device
::
cuda
::
Handle
::
Internal
>
internal
;
};
Descriptor
::~
Descriptor
()
{
delete
_opaque
;
}
infiniStatus_t
Descriptor
::
create
(
infiniopHandle_t
handle_
,
Descriptor
**
desc_ptr
,
infiniopTensorDescriptor_t
result_desc
,
infiniopTensorDescriptor_t
probs_desc
)
{
auto
handle
=
reinterpret_cast
<
device
::
cuda
::
Handle
*>
(
handle_
);
auto
result
=
RandomSampleInfo
::
create
(
result_desc
,
probs_desc
);
CHECK_RESULT
(
result
);
auto
info
=
result
.
take
();
size_t
workspace_size
;
#define CASE_P(CASE, Tidx, Tval) \
case CASE: \
workspace_size = calculateWorkspace<Tidx, Tval>(info.n); \
break
#define CASE_I(CASE, Tidx) \
case CASE: \
switch (info.dt_p) { \
CASE_P(INFINI_DTYPE_F16, Tidx, half); \
CASE_P(INFINI_DTYPE_F32, Tidx, float); \
CASE_P(INFINI_DTYPE_F64, Tidx, double); \
default: \
abort(); \
} \
break
switch
(
info
.
dt_i
)
{
CASE_I
(
INFINI_DTYPE_I8
,
int8_t
);
CASE_I
(
INFINI_DTYPE_I16
,
int16_t
);
CASE_I
(
INFINI_DTYPE_I32
,
int32_t
);
CASE_I
(
INFINI_DTYPE_I64
,
int64_t
);
CASE_I
(
INFINI_DTYPE_U8
,
uint8_t
);
CASE_I
(
INFINI_DTYPE_U16
,
uint16_t
);
CASE_I
(
INFINI_DTYPE_U32
,
uint32_t
);
CASE_I
(
INFINI_DTYPE_U64
,
uint64_t
);
default:
abort
();
}
#undef CASE_I
#undef CASE_P
*
desc_ptr
=
new
Descriptor
(
info
,
workspace_size
,
new
Opaque
{
handle
->
internal
()},
handle
->
device
,
handle
->
device_id
);
return
INFINI_STATUS_SUCCESS
;
}
size_t
Descriptor
::
minWorkspaceSize
()
const
{
return
_min_workspace_size
;
}
infiniStatus_t
Descriptor
::
calculate
(
void
*
workspace
,
size_t
workspace_size
,
void
*
result
,
const
void
*
probs
,
float
random_val
,
float
topp
,
int
topk
,
float
temperature
,
void
*
stream
)
const
{
if
(
workspace_size
<
_min_workspace_size
)
{
return
INFINI_STATUS_INSUFFICIENT_WORKSPACE
;
}
auto
block_size
=
_opaque
->
internal
->
blockSizeX
();
Calculate
::
calculate
<
Algo
>
(
Algo
{
block_size
},
_info
,
workspace
,
workspace_size
,
result
,
probs
,
random_val
,
topp
,
topk
,
temperature
,
stream
);
return
INFINI_STATUS_SUCCESS
;
}
}
// namespace op::random_sample::cuda
src/infiniop/ops/random_sample/cuda/random_sample_cuda.cuh
0 → 100644
View file @
125afeb5
#
ifndef
__RANDOM_SAMPLE_CUDA_CUH__
#define __RANDOM_SAMPLE_CUDA_CUH__
#include "../random_sample.h"
DESCRIPTOR
(
cuda
)
#endif // __RANDOM_SAMPLE_CUDA_CUH__
src/infiniop/ops/random_sample/cuda/random_sample_kernel.cuh
0 → 100644
View file @
125afeb5
#
include
"../../../devices/cuda/cuda_kernel_common.cuh"
#include "infinicore.h"
#include <cub/device/device_radix_sort.cuh>
#include <cub/device/device_reduce.cuh>
#include <cub/device/device_scan.cuh>
namespace
op
::
random_sample
::
cuda
{
// ↓↓↓ 重新封装 cub api,减少模板参数,方便调用
template
<
class
T
>
static
cudaError
argMax_
(
cub
::
KeyValuePair
<
int
,
T
>
*
kv_pair
,
const
T
*
logits
,
int
n
,
void
*
workspace_ptr
,
size_t
&
workspace_len
,
cudaStream_t
stream
)
{
return
cub
::
DeviceReduce
::
ArgMax
(
workspace_ptr
,
workspace_len
,
logits
,
kv_pair
,
n
,
stream
);
}
template
<
class
Tval
,
class
Tidx
>
static
cudaError
radixSort
(
void
*
workspace_ptr
,
size_t
&
workspace_len
,
const
Tval
*
key_in
,
Tval
*
key_out
,
const
Tidx
*
val_in
,
Tidx
*
val_out
,
int
n
,
cudaStream_t
stream
)
{
return
cub
::
DeviceRadixSort
::
SortPairsDescending
(
workspace_ptr
,
workspace_len
,
key_in
,
key_out
,
val_in
,
val_out
,
n
,
0
,
sizeof
(
Tval
)
*
8
,
stream
);
}
template
<
class
T
>
static
cudaError
inclusiveSum
(
void
*
workspace_ptr
,
size_t
&
workspace_len
,
T
*
data
,
int
n
,
cudaStream_t
stream
)
{
return
cub
::
DeviceScan
::
InclusiveSum
(
workspace_ptr
,
workspace_len
,
data
,
data
,
n
,
stream
);
}
// ↑↑↑ 重新封装 cub api,减少模板参数,方便调用
// ↓↓↓ 计算 workspace
// 地址对齐到 256
static
constexpr
size_t
align256
(
size_t
size
)
{
return
(
size
+
255
)
&
(
~
255
);
}
template
<
class
Tidx
,
class
Tval
>
utils
::
Result
<
size_t
>
calculateWorkspace
(
size_t
n_
)
{
const
auto
n
=
static_cast
<
int
>
(
n_
);
size_t
argmax
;
CHECK_CUDA
(
argMax_
<
Tval
>
(
nullptr
,
nullptr
,
n
,
nullptr
,
argmax
,
nullptr
));
// 前 256 字节用于 kv pair
argmax
+=
256
;
// indices
size_t
size_random
=
align256
(
sizeof
(
Tidx
)
*
n
);
// sorted
size_random
+=
align256
(
sizeof
(
Tval
)
*
n
);
// indices_out
size_random
+=
align256
(
sizeof
(
Tidx
)
*
n
);
// cub device api
size_t
size_radix_sort
;
CHECK_CUDA
((
radixSort
<
Tval
,
Tidx
>
(
nullptr
,
size_radix_sort
,
nullptr
,
nullptr
,
nullptr
,
nullptr
,
n
,
nullptr
)));
size_t
size_inclusive_sum
;
CHECK_CUDA
(
inclusiveSum
<
Tval
>
(
nullptr
,
size_inclusive_sum
,
nullptr
,
n
,
nullptr
));
size_random
+=
cub
::
Max
()(
size_radix_sort
,
size_inclusive_sum
);
return
utils
::
Result
<
size_t
>
(
cub
::
Max
()(
argmax
,
size_random
));
}
// ↑↑↑ 计算 workspace
// ↓↓↓ 通过特化将 fp16_t 转换为 half
template
<
class
Tval
>
struct
CudaTval
{
using
Type
=
Tval
;
};
template
<
>
struct
CudaTval
<
fp16_t
>
{
using
Type
=
half
;
};
// ↑↑↑ 通过特化将 fp16_t 转换为 half
// ↓↓↓ 用于采样过程的小型 kernel
// cuda toolkit 11.x 带的 cub::DeviceReduce::ArgMax 只接受 cub::KeyValuePair<int, Tval> 输出。
// 这个 kernel 用于取出序号
template
<
class
Tidx
,
class
Tval
>
static
__global__
void
castIdx
(
Tidx
*
result
,
const
cub
::
KeyValuePair
<
int
,
Tval
>
*
kv_pair
)
{
*
result
=
kv_pair
->
key
;
}
// 填充排序要求的序号数组
template
<
class
Tidx
>
static
__global__
void
fillIndices
(
Tidx
*
indices
,
int
n
)
{
int
i
=
blockIdx
.
x
*
blockDim
.
x
+
threadIdx
.
x
;
if
(
i
<
n
)
{
indices
[
i
]
=
i
;
}
}
// random sample 使用的 softmax 可以简化为一个基本的线性映射
// 由于已经排序,最大值就是第一个数字
// 第一个数字需要被多个 block 读取,不能写
template
<
class
T
>
static
__global__
void
partialSoftmaxKernel
(
T
*
__restrict__
data
,
int
n
,
float
temperature
)
{
int
i
=
blockIdx
.
x
*
blockDim
.
x
+
threadIdx
.
x
;
if
(
0
<
i
&&
i
<
n
)
{
float
max
=
__ldg
(
data
);
data
[
i
]
=
(
T
)
expf
(((
float
)
data
[
i
]
-
max
)
/
temperature
);
}
}
// 将第一个数字写成 1,即 exp(0)
template
<
class
T
>
static
__global__
void
setSoftmaxMaxKernel
(
T
*
__restrict__
data
)
{
*
data
=
1
;
}
// 直接 for 循环遍历采样
// 这个 kernel 仅用于避免将数据拷贝到 cpu
template
<
class
Tval
,
class
Tidx
>
static
__global__
void
randomSampleKernel
(
Tidx
*
__restrict__
result
,
const
Tval
*
__restrict__
sorted
,
const
Tidx
*
__restrict__
indices_out
,
size_t
n
,
float
random
,
float
topp
,
size_t
topk
)
{
topk
=
cub
::
Min
()(
topk
,
n
);
auto
p
=
(
Tval
)(
random
*
cub
::
Min
()(
topp
*
(
float
)
sorted
[
n
-
1
],
(
float
)
sorted
[
topk
-
1
]));
for
(
size_t
i
=
0
;;
++
i
)
{
if
((
sorted
[
i
])
>=
p
)
{
*
result
=
indices_out
[
i
];
return
;
}
}
}
// ↑↑↑ 用于采样过程的小型 kernel
struct
Algo
{
int
block_size
;
template
<
class
Tidx
,
class
Tval_
>
infiniStatus_t
argmax
(
void
*
workspace
,
size_t
workspace_size
,
void
*
result
,
const
void
*
probs
,
size_t
n
,
void
*
stream_
)
const
{
using
Tval
=
typename
CudaTval
<
Tval_
>::
Type
;
auto
stream
=
(
cudaStream_t
)
stream_
;
auto
logits
=
(
Tval
*
)
probs
;
auto
kv_pair
=
(
cub
::
KeyValuePair
<
int
,
Tval
>
*
)
workspace
;
workspace
=
(
void
*
)((
char
*
)
workspace
+
256
);
workspace_size
-=
256
;
argMax_
(
kv_pair
,
logits
,
n
,
workspace
,
workspace_size
,
stream
);
castIdx
<<<
1
,
1
,
0
,
stream
>>>
((
Tidx
*
)
result
,
kv_pair
);
return
INFINI_STATUS_SUCCESS
;
}
template
<
class
Tidx
,
class
Tval_
>
infiniStatus_t
random
(
void
*
workspace_
,
size_t
workspace_size
,
void
*
result_
,
const
void
*
probs
,
size_t
n
,
float
random_val
,
float
topp
,
int
topk
,
float
temperature
,
void
*
stream_
)
const
{
using
Tval
=
typename
CudaTval
<
Tval_
>::
Type
;
auto
stream
=
(
cudaStream_t
)
stream_
;
auto
logits
=
(
Tval
*
)
probs
;
auto
result
=
(
Tidx
*
)
result_
;
auto
workspace
=
reinterpret_cast
<
size_t
>
(
workspace_
);
auto
workspace_end
=
workspace
+
workspace_size
;
auto
indices
=
reinterpret_cast
<
Tidx
*>
(
workspace
);
workspace
+=
align256
(
sizeof
(
Tidx
)
*
n
);
auto
sorted
=
reinterpret_cast
<
Tval
*>
(
workspace
);
workspace
+=
align256
(
sizeof
(
Tval
)
*
n
);
auto
indices_out
=
reinterpret_cast
<
Tidx
*>
(
workspace
);
workspace
+=
align256
(
sizeof
(
Tidx
)
*
n
);
workspace_
=
reinterpret_cast
<
void
*>
(
workspace
);
workspace_size
=
workspace_end
-
workspace
;
auto
block
=
cub
::
Min
()((
size_t
)
block_size
,
n
);
auto
grid
=
(
n
+
block
-
1
)
/
block
;
// sort
fillIndices
<<<
grid
,
block
,
0
,
stream
>>>
(
indices
,
n
);
CHECK_CUDA
(
radixSort
(
workspace_
,
workspace_size
,
logits
,
sorted
,
indices
,
indices_out
,
n
,
stream
));
// softmax
partialSoftmaxKernel
<<<
grid
,
block
,
0
,
stream
>>>
(
sorted
,
n
,
temperature
);
setSoftmaxMaxKernel
<<<
1
,
1
,
0
,
stream
>>>
(
sorted
);
// sum
CHECK_CUDA
(
inclusiveSum
(
workspace_
,
workspace
,
sorted
,
n
,
stream
));
// sample
randomSampleKernel
<<<
1
,
1
,
0
,
stream
>>>
(
result
,
sorted
,
indices_out
,
n
,
random_val
,
topp
,
topk
);
return
INFINI_STATUS_SUCCESS
;
}
};
}
// namespace op::random_sample::cuda
src/infiniop/ops/random_sample/info.h
0 → 100644
View file @
125afeb5
#
ifndef
__RANDOM_SAMPLE_INFO_H__
#define __RANDOM_SAMPLE_INFO_H__
#include "../../../utils.h"
#include "../../tensor.h"
namespace
op
::
random_sample
{
struct
RandomSampleInfo
{
infiniDtype_t
dt_i
,
dt_p
;
size_t
n
;
static
utils
::
Result
<
RandomSampleInfo
>
create
(
infiniopTensorDescriptor_t
result_desc
,
infiniopTensorDescriptor_t
probs_desc
)
{
auto
dt_i
=
result_desc
->
dtype
();
auto
dt_p
=
probs_desc
->
dtype
();
CHECK_DTYPE_ANY_INT
(
dt_i
);
CHECK_DTYPE
(
dt_p
,
INFINI_DTYPE_F16
,
INFINI_DTYPE_F32
,
INFINI_DTYPE_F64
);
CHECK_OR_RETURN
(
result_desc
->
ndim
()
==
0
,
INFINI_STATUS_BAD_TENSOR_SHAPE
);
CHECK_OR_RETURN
(
probs_desc
->
ndim
()
==
1
,
INFINI_STATUS_BAD_TENSOR_SHAPE
);
CHECK_OR_RETURN
(
probs_desc
->
stride
(
0
)
==
1
,
INFINI_STATUS_BAD_TENSOR_STRIDES
);
return
utils
::
Result
<
RandomSampleInfo
>
({
dt_i
,
dt_p
,
probs_desc
->
dim
(
0
)});
}
};
}
// namespace op::random_sample
#endif // __RANDOM_SAMPLE_INFO_H__
src/infiniop/ops/random_sample/operator.cc
View file @
125afeb5
...
...
@@ -5,6 +5,9 @@
#ifdef ENABLE_CPU_API
#include "cpu/random_sample_cpu.h"
#endif
#ifdef ENABLE_CUDA_API
#include "cuda/random_sample_cuda.cuh"
#endif
__C
infiniStatus_t
infiniopCreateRandomSampleDescriptor
(
infiniopHandle_t
handle
,
...
...
@@ -25,6 +28,9 @@ __C infiniStatus_t infiniopCreateRandomSampleDescriptor(
#ifdef ENABLE_CPU_API
CREATE
(
INFINI_DEVICE_CPU
,
cpu
);
#endif
#ifdef ENABLE_CUDA_API
CREATE
(
INFINI_DEVICE_NVIDIA
,
cuda
);
#endif
default:
return
INFINI_STATUS_DEVICE_TYPE_NOT_SUPPORTED
;
...
...
@@ -38,9 +44,10 @@ __C infiniStatus_t infiniopGetRandomSampleWorkspaceSize(
size_t
*
size
)
{
#define GET(CASE, NAMESPACE) \
case CASE:
\
case CASE:
{
\
using Ptr = const op::random_sample::NAMESPACE::Descriptor *; \
*size = reinterpret_cast<Ptr>(desc)->minWorkspaceSize(); \
} \
return INFINI_STATUS_SUCCESS
switch
(
desc
->
device_type
)
{
...
...
@@ -48,6 +55,9 @@ __C infiniStatus_t infiniopGetRandomSampleWorkspaceSize(
#ifdef ENABLE_CPU_API
GET
(
INFINI_DEVICE_CPU
,
cpu
);
#endif
#ifdef ENABLE_CUDA_API
GET
(
INFINI_DEVICE_NVIDIA
,
cuda
);
#endif
default:
return
INFINI_STATUS_DEVICE_TYPE_NOT_SUPPORTED
;
...
...
@@ -82,6 +92,9 @@ __C infiniStatus_t infiniopRandomSample(
#ifdef ENABLE_CPU_API
CALCULATE
(
INFINI_DEVICE_CPU
,
cpu
);
#endif
#ifdef ENABLE_CUDA_API
CALCULATE
(
INFINI_DEVICE_NVIDIA
,
cuda
);
#endif
default:
return
INFINI_STATUS_DEVICE_TYPE_NOT_SUPPORTED
;
...
...
@@ -103,6 +116,9 @@ __C infiniStatus_t infiniopDestroyRandomSampleDescriptor(
#ifdef ENABLE_CPU_API
DELETE
(
INFINI_DEVICE_CPU
,
cpu
);
#endif
#ifdef ENABLE_CUDA_API
DELETE
(
INFINI_DEVICE_NVIDIA
,
cuda
);
#endif
default:
return
INFINI_STATUS_DEVICE_TYPE_NOT_SUPPORTED
;
...
...
src/infiniop/ops/random_sample/random_sample.h
View file @
125afeb5
#ifndef __RANDOM_SAMPLE_H__
#define __RANDOM_SAMPLE_H__
#include "../../../utils.h"
#include "../../operator.h"
#include "info.h"
#define DESCRIPTOR(NAMESPACE) \
\
...
...
@@ -11,22 +11,18 @@
struct Opaque; \
Opaque *_opaque; \
\
infiniDtype_t _dt_i, _dt_p;
\
size_t
_n,
_min_workspace_size; \
RandomSampleInfo _info;
\
size_t _min_workspace_size;
\
\
Descriptor( \
infiniDtype_t dt_i, \
infiniDtype_t dt_p, \
size_t n, \
RandomSampleInfo info, \
size_t min_workspace_size, \
Opaque *opaque, \
infiniDevice_t device_type, \
int device_id) \
: InfiniopDescriptor{device_type, device_id}, \
_opaque(opaque), \
_dt_i(dt_i), \
_dt_p(dt_p), \
_n(n), \
_info(info), \
_min_workspace_size(min_workspace_size) {} \
\
public: \
...
...
@@ -53,4 +49,96 @@
}; \
}
namespace
op
::
random_sample
{
struct
CalculateArgs
{
void
*
workspace
;
size_t
workspace_size
;
void
*
result
;
const
void
*
probs
;
float
random_val
,
topp
,
temperature
;
int
topk
;
void
*
stream
;
};
class
Calculate
{
template
<
class
Tidx
,
class
Tval
,
class
Algo
>
static
void
switch_f
(
Algo
algo
,
size_t
n
,
CalculateArgs
args
)
{
if
(
args
.
random_val
==
0
||
args
.
topp
==
0
||
args
.
topk
==
1
||
args
.
temperature
==
0
)
{
algo
.
template
argmax
<
Tidx
,
Tval
>(
args
.
workspace
,
args
.
workspace_size
,
args
.
result
,
args
.
probs
,
n
,
args
.
stream
);
}
else
{
algo
.
template
random
<
Tidx
,
Tval
>(
args
.
workspace
,
args
.
workspace_size
,
args
.
result
,
args
.
probs
,
n
,
args
.
random_val
,
args
.
topp
,
args
.
topk
,
args
.
temperature
,
args
.
stream
);
}
}
template
<
class
Tidx
,
class
Algo
>
static
void
switch_val
(
Algo
algo
,
infiniDtype_t
dt_p
,
size_t
n
,
CalculateArgs
args
)
{
switch
(
dt_p
)
{
case
INFINI_DTYPE_F16
:
switch_f
<
Tidx
,
fp16_t
>
(
algo
,
n
,
args
);
break
;
case
INFINI_DTYPE_F32
:
switch_f
<
Tidx
,
float
>
(
algo
,
n
,
args
);
break
;
case
INFINI_DTYPE_F64
:
switch_f
<
Tidx
,
double
>
(
algo
,
n
,
args
);
break
;
default:
// unreachable
std
::
abort
();
}
}
public:
template
<
class
Algo
>
static
infiniStatus_t
calculate
(
Algo
algo
,
RandomSampleInfo
info
,
void
*
workspace
,
size_t
workspace_size
,
void
*
result
,
const
void
*
probs
,
float
random_val
,
float
topp
,
int
topk
,
float
temperature
,
void
*
stream
)
{
#define CASE(DT_VAL, DT_TYP) \
case DT_VAL: \
switch_val<DT_TYP>( \
algo, info.dt_p, info.n, \
{workspace, workspace_size, \
result, probs, \
random_val, topp, temperature, topk, \
stream}); \
break
switch
(
info
.
dt_i
)
{
CASE
(
INFINI_DTYPE_I8
,
int8_t
);
CASE
(
INFINI_DTYPE_I16
,
int16_t
);
CASE
(
INFINI_DTYPE_I32
,
int32_t
);
CASE
(
INFINI_DTYPE_I64
,
int64_t
);
CASE
(
INFINI_DTYPE_U8
,
uint8_t
);
CASE
(
INFINI_DTYPE_U16
,
uint16_t
);
CASE
(
INFINI_DTYPE_U32
,
uint32_t
);
CASE
(
INFINI_DTYPE_U64
,
uint64_t
);
default:
// unreachable
std
::
abort
();
}
#undef CASE
return
INFINI_STATUS_SUCCESS
;
}
};
}
// namespace op::random_sample
#endif // __RANDOM_SAMPLE_H__
Write
Preview
Markdown
is supported
0%
Try again
or
attach a new file
.
Attach a file
Cancel
You are about to add
0
people
to the discussion. Proceed with caution.
Finish editing this message first!
Cancel
Please
register
or
sign in
to comment