Threadpool interoperability API¶
Overview¶
API extensions to interact with the underlying Threadpool run-time. More…
// namespaces namespace dnnl::threadpool_interop; // global functions dnnl_status_t DNNL_API dnnl_threadpool_interop_stream_create( dnnl_stream_t* stream, dnnl_engine_t engine, void* threadpool ); dnnl_status_t DNNL_API dnnl_threadpool_interop_stream_get_threadpool( dnnl_stream_t astream, void** threadpool ); dnnl_status_t DNNL_API dnnl_threadpool_interop_sgemm( char transa, char transb, dnnl_dim_t M, dnnl_dim_t N, dnnl_dim_t K, float alpha, const float* A, dnnl_dim_t lda, const float* B, dnnl_dim_t ldb, float beta, float* C, dnnl_dim_t ldc, void* threadpool ); dnnl_status_t DNNL_API dnnl_threadpool_interop_gemm_u8s8s32( char transa, char transb, char offsetc, dnnl_dim_t M, dnnl_dim_t N, dnnl_dim_t K, float alpha, const uint8_t* A, dnnl_dim_t lda, uint8_t ao, const int8_t* B, dnnl_dim_t ldb, int8_t bo, float beta, int32_t* C, dnnl_dim_t ldc, const int32_t* co, void* threadpool ); dnnl_status_t DNNL_API dnnl_threadpool_interop_gemm_s8s8s32( char transa, char transb, char offsetc, dnnl_dim_t M, dnnl_dim_t N, dnnl_dim_t K, float alpha, const int8_t* A, dnnl_dim_t lda, int8_t ao, const int8_t* B, dnnl_dim_t ldb, int8_t bo, float beta, int32_t* C, dnnl_dim_t ldc, const int32_t* co, void* threadpool );
Detailed Documentation¶
API extensions to interact with the underlying Threadpool run-time.
Global Functions¶
dnnl_status_t DNNL_API dnnl_threadpool_interop_stream_create( dnnl_stream_t* stream, dnnl_engine_t engine, void* threadpool )
Creates an execution stream with specified threadpool.
Parameters:
stream |
Output execution stream. |
engine |
Engine to create the execution stream on. |
threadpool |
Pointer to an instance of a C++ class that implements dnnl::threapdool_iface interface. |
Returns:
dnnl_success on success and a status describing the error otherwise.
See also:
Using oneDNN with Threadpool-Based Threading
dnnl_status_t DNNL_API dnnl_threadpool_interop_stream_get_threadpool( dnnl_stream_t astream, void** threadpool )
Returns a threadpool to be used by the execution stream.
Parameters:
astream |
Execution stream. |
threadpool |
Output pointer to an instance of a C++ class that implements dnnl::threapdool_iface interface. Set to NULL if the stream was created without threadpool. |
Returns:
dnnl_success on success and a status describing the error otherwise.
See also:
Using oneDNN with Threadpool-Based Threading
dnnl_status_t DNNL_API dnnl_threadpool_interop_sgemm( char transa, char transb, dnnl_dim_t M, dnnl_dim_t N, dnnl_dim_t K, float alpha, const float* A, dnnl_dim_t lda, const float* B, dnnl_dim_t ldb, float beta, float* C, dnnl_dim_t ldc, void* threadpool )
Performs single-precision matrix-matrix multiply.
The operation is defined as:
C := alpha * op( A ) * op( B ) + beta * C
where
op( X ) = X
orop( X ) = X**T
,alpha
andbeta
are scalars, andA
,B
, andC
are matrices:op( A )
is anMxK
matrix,op( B )
is anKxN
matrix,C
is anMxN
matrix.
The matrices are assumed to be stored in row-major order (the elements in each of the matrix rows are contiguous in memory).
Note
This API does not support XERBLA. Instead, unlike the standard BLAS functions, this one returns a dnnl_status_t value to allow error handling.
Parameters:
transa |
Transposition flag for matrix A: ‘N’ or ‘n’ means A is not transposed, and ‘T’ or ‘t’ means that A is transposed. |
transb |
Transposition flag for matrix B: ‘N’ or ‘n’ means B is not transposed, and ‘T’ or ‘t’ means that B is transposed. |
M |
The M dimension. |
N |
The N dimension. |
K |
The K dimension. |
alpha |
The alpha parameter that is used to scale the product of matrices A and B. |
A |
A pointer to the A matrix data. |
lda |
The leading dimension for the matrix A. |
B |
A pointer to the B matrix data. |
ldb |
The leading dimension for the matrix B. |
beta |
The beta parameter that is used to scale the matrix C. |
C |
A pointer to the C matrix data. |
ldc |
The leading dimension for the matrix C. |
threadpool |
A pointer to a threadpool interface (only when built with the THREADPOOL CPU runtime). |
Returns:
dnnl_success / dnnl::status::success on success and a status describing the error otherwise.
dnnl_status_t DNNL_API dnnl_threadpool_interop_gemm_u8s8s32( char transa, char transb, char offsetc, dnnl_dim_t M, dnnl_dim_t N, dnnl_dim_t K, float alpha, const uint8_t* A, dnnl_dim_t lda, uint8_t ao, const int8_t* B, dnnl_dim_t ldb, int8_t bo, float beta, int32_t* C, dnnl_dim_t ldc, const int32_t* co, void* threadpool )
Performs integer matrix-matrix multiply on 8-bit unsigned matrix A, 8-bit signed matrix B, and 32-bit signed resulting matrix C.
The operation is defined as:
C := alpha * (op(A) - A_offset) * (op(B) - B_offset) + beta * C + C_offset
where
op( X ) = X
orop( X ) = X**T
,alpha
andbeta
are scalars, andA
,B
, andC
are matrices:op( A )
is anMxK
matrix,op( B )
is anKxN
matrix,C
is anMxN
matrix.
A_offset
is anMxK
matrix with every element equal theao
value,B_offset
is anKxN
matrix with every element equal thebo
value,C_offset
is anMxN
matrix which is defined by theco
array of sizelen
:if
offsetc = F
: thelen
must be at least1
,if
offsetc = C
: thelen
must be at leastmax(1, m)
,if
offsetc = R
: thelen
must be at leastmax(1, n)
,
The matrices are assumed to be stored in row-major order (the elements in each of the matrix rows are contiguous in memory).
Note
This API does not support XERBLA. Instead, unlike the standard BLAS functions, this one returns a dnnl_status_t value to allow error handling.
Warning
On some architectures saturation may happen during intermediate computations, which would lead to unexpected results. For more details, refer to Nuances of int8 Computations.
Parameters:
transa |
Transposition flag for matrix A: ‘N’ or ‘n’ means A is not transposed, and ‘T’ or ‘t’ means that A is transposed. |
transb |
Transposition flag for matrix B: ‘N’ or ‘n’ means B is not transposed, and ‘T’ or ‘t’ means that B is transposed. |
offsetc |
Flag specifying how offsets should be applied to matrix C:
|
M |
The M dimension. |
N |
The N dimension. |
K |
The K dimension. |
alpha |
The alpha parameter that is used to scale the product of matrices A and B. |
A |
A pointer to the A matrix data. |
lda |
The leading dimension for the matrix A. |
ao |
The offset value for the matrix A. |
B |
A pointer to the B matrix data. |
ldb |
The leading dimension for the matrix B. |
bo |
The offset value for the matrix B. |
beta |
The beta parameter that is used to scale the matrix C. |
C |
A pointer to the C matrix data. |
ldc |
The leading dimension for the matrix C. |
co |
An array of offset values for the matrix C. The number of elements in the array depends on the value of |
threadpool |
A pointer to a threadpool interface (only when built with the THREADPOOL CPU runtime). |
Returns:
dnnl_success / dnnl::status::success on success and a status describing the error otherwise.
dnnl_status_t DNNL_API dnnl_threadpool_interop_gemm_s8s8s32( char transa, char transb, char offsetc, dnnl_dim_t M, dnnl_dim_t N, dnnl_dim_t K, float alpha, const int8_t* A, dnnl_dim_t lda, int8_t ao, const int8_t* B, dnnl_dim_t ldb, int8_t bo, float beta, int32_t* C, dnnl_dim_t ldc, const int32_t* co, void* threadpool )
Performs integer matrix-matrix multiply on 8-bit signed matrix A, 8-bit signed matrix B, and 32-bit signed resulting matrix C.
The operation is defined as:
C := alpha * (op(A) - A_offset) * (op(B) - B_offset) + beta * C + C_offset
where
op( X ) = X
orop( X ) = X**T
,alpha
andbeta
are scalars, andA
,B
, andC
are matrices:op( A )
is anMxK
matrix,op( B )
is anKxN
matrix,C
is anMxN
matrix.
A_offset
is anMxK
matrix with every element equal theao
value,B_offset
is anKxN
matrix with every element equal thebo
value,C_offset
is anMxN
matrix which is defined by theco
array of sizelen
:if
offsetc = F
: thelen
must be at least1
,if
offsetc = C
: thelen
must be at leastmax(1, m)
,if
offsetc = R
: thelen
must be at leastmax(1, n)
,
The matrices are assumed to be stored in row-major order (the elements in each of the matrix rows are contiguous in memory).
Note
This API does not support XERBLA. Instead, unlike the standard BLAS functions, this one returns a dnnl_status_t value to allow error handling.
Warning
On some architectures saturation may happen during intermediate computations, which would lead to unexpected results. For more details, refer to Nuances of int8 Computations.
Parameters:
transa |
Transposition flag for matrix A: ‘N’ or ‘n’ means A is not transposed, and ‘T’ or ‘t’ means that A is transposed. |
transb |
Transposition flag for matrix B: ‘N’ or ‘n’ means B is not transposed, and ‘T’ or ‘t’ means that B is transposed. |
offsetc |
Flag specifying how offsets should be applied to matrix C:
|
M |
The M dimension. |
N |
The N dimension. |
K |
The K dimension. |
alpha |
The alpha parameter that is used to scale the product of matrices A and B. |
A |
A pointer to the A matrix data. |
lda |
The leading dimension for the matrix A. |
ao |
The offset value for the matrix A. |
B |
A pointer to the B matrix data. |
ldb |
The leading dimension for the matrix B. |
bo |
The offset value for the matrix B. |
beta |
The beta parameter that is used to scale the matrix C. |
C |
A pointer to the C matrix data. |
ldc |
The leading dimension for the matrix C. |
co |
An array of offset values for the matrix C. The number of elements in the array depends on the value of |
threadpool |
A pointer to a threadpool interface (only when built with the THREADPOOL CPU runtime). |
Returns:
dnnl_success / dnnl::status::success on success and a status describing the error otherwise.