diff options
Diffstat (limited to 'src/core/CL/cl_kernels/common/mat_mul.cl')
-rw-r--r-- | src/core/CL/cl_kernels/common/mat_mul.cl | 27 |
1 files changed, 20 insertions, 7 deletions
diff --git a/src/core/CL/cl_kernels/common/mat_mul.cl b/src/core/CL/cl_kernels/common/mat_mul.cl index 90d485e815..9656a59728 100644 --- a/src/core/CL/cl_kernels/common/mat_mul.cl +++ b/src/core/CL/cl_kernels/common/mat_mul.cl @@ -21,6 +21,7 @@ * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE * SOFTWARE. */ +#include "activation_float_helpers.h" #include "helpers.h" #include "tile_helpers.h" @@ -31,6 +32,7 @@ * should NOT be confused with the batch size of the model. For NHWC the "batch" is the "H" dimension * @note The data type must be passed at compile time using -DDATA_TYPE (e.g. -DDATA_TYPE=float) * @note The block's dimensions used for the LHS and RHS matrices (M0, N0 and K0) must be passed at compile time using -DN0, -DM0 and -DK0 (e.g. -DN0=8, -DM0=4, -DK0=4). + * @note The fused activation function used should be passed with -DACTIVATION_TYPE, -DA_VAL and -DB_VAL are used for min and max output bounded activation functions. * @note The number of leftover outputs rows/columns must be passed using -DPARTIAL_STORE_N0 and -DPARTIAL_STORE_M0 (e.g. -DPARTIAL_STORE_N0=2, -DPARTIAL_STORE_M0=3) * @note The dimension K must be passed at compile time using -DK (e.g. -DK=6) * @note The tensor type ("BUFFER" or "IMAGE") of the rhs tensor must be passed at compile time using -DRHS_TENSOR_TYPE (e.g. -DRHS_TENSOR_TYPE=BUFFER) @@ -86,7 +88,7 @@ __kernel void mat_mul_native_nt_nt( }) const int rhs_z = z * rhs_h; - int k; + int k; for(k = 0; k <= K - K0; k += K0) { TILE(DATA_TYPE, M0, K0, a); @@ -111,7 +113,7 @@ __kernel void mat_mul_native_nt_nt( lhs_offset_first_element_in_bytes += K0 * sizeof(DATA_TYPE); } -#ifdef K % K0 != 0 +#if K % K0 != 0 /* Leftover Loop */ for(; k < K; ++k) { @@ -147,6 +149,8 @@ __kernel void mat_mul_native_nt_nt( indirect_buffer[_i].v = min(_i, select(M0 - 1, PARTIAL_STORE_M0 - 1, y_cond)); }); + T_ACTIVATION(DATA_TYPE, M0, N0, ACTIVATION_TYPE, A_VAL, B_VAL, acc, acc); + T_STORE_INDIRECT_WIDTH_SELECT(DATA_TYPE, M0, N0, PARTIAL_STORE_N0, BUFFER, dst, 0, dst_stride_y, x_cond, acc, indirect_buffer); } #endif // defined(MAT_MUL_NATIVE_NT_NT) @@ -158,6 +162,7 @@ __kernel void mat_mul_native_nt_nt( * should NOT be confused with the batch size of the model. For NHWC the "batch" is the "H" dimension * @note The data type must be passed at compile time using -DDATA_TYPE (e.g. -DDATA_TYPE=float) * @note The block's dimensions used for the LHS and RHS matrices (M0, N0 and K0) must be passed at compile time using -DN0, -DM0 and -DK0 (e.g. -DN0=8, -DM0=4, -DK0=4). + * @note The fused activation function used should be passed with -DACTIVATION_TYPE, -DA_VAL and -DB_VAL are used for min and max output bounded activation functions. * @note The number of leftover outputs rows/columns must be passed using -DPARTIAL_STORE_N0 and -DPARTIAL_STORE_M0 (e.g. -DPARTIAL_STORE_N0=2, -DPARTIAL_STORE_M0=3) * @note The dimension K must be passed at compile time using -DK (e.g. -DK=6) * @note The tensor type ("BUFFER" or "IMAGE") of the rhs tensor must be passed at compile time using -DRHS_TENSOR_TYPE (e.g. -DRHS_TENSOR_TYPE=BUFFER) @@ -213,7 +218,7 @@ __kernel void mat_mul_native_nt_t(TENSOR3D_T(lhs, BUFFER), }) const int rhs_z = z * rhs_h; - int k; + int k; for(k = 0; k <= K - K0; k += K0) { TILE(DATA_TYPE, M0, K0, a); @@ -301,6 +306,8 @@ __kernel void mat_mul_native_nt_t(TENSOR3D_T(lhs, BUFFER), indirect_buffer[_i].v = min(_i, select(M0 - 1, PARTIAL_STORE_M0 - 1, y_cond)); }); + T_ACTIVATION(DATA_TYPE, M0, N0, ACTIVATION_TYPE, A_VAL, B_VAL, acc, acc); + T_STORE_INDIRECT_WIDTH_SELECT(DATA_TYPE, M0, N0, PARTIAL_STORE_N0, BUFFER, dst, 0, dst_stride_y, x_cond, acc, indirect_buffer); } #endif // defined(MAT_MUL_NATIVE_NT_T) @@ -312,6 +319,7 @@ __kernel void mat_mul_native_nt_t(TENSOR3D_T(lhs, BUFFER), * should NOT be confused with the batch size of the model. For NHWC the "batch" is the "H" dimension * @note The data type must be passed at compile time using -DDATA_TYPE (e.g. -DDATA_TYPE=float) * @note The block's dimensions used for the LHS and RHS matrices (M0, N0 and K0) must be passed at compile time using -DN0, -DM0 and -DK0 (e.g. -DN0=8, -DM0=4, -DK0=4). + * @note The fused activation function used should be passed with -DACTIVATION_TYPE, -DA_VAL and -DB_VAL are used for min and max output bounded activation functions. * @note The number of leftover outputs rows/columns must be passed using -DPARTIAL_STORE_N0 and -DPARTIAL_STORE_M0 (e.g. -DPARTIAL_STORE_N0=2, -DPARTIAL_STORE_M0=3) * @note The dimension K must be passed at compile time using -DK (e.g. -DK=6) * @note The tensor type ("BUFFER" or "IMAGE") of the rhs tensor must be passed at compile time using -DRHS_TENSOR_TYPE (e.g. -DRHS_TENSOR_TYPE=BUFFER) @@ -367,7 +375,7 @@ __kernel void mat_mul_native_t_nt( }) const int rhs_z = z * rhs_h; - int k; + int k; for(k = 0; k <= K - K0; k += K0) { TILE(DATA_TYPE, K0, M0, a); @@ -405,7 +413,7 @@ __kernel void mat_mul_native_t_nt( lhs_offset_first_element_in_bytes += K0 * lhs_stride_y; } -#ifdef K % K0 != 0 +#if K % K0 != 0 /* Leftover Loop */ for(; k < K; ++k) { @@ -451,6 +459,8 @@ __kernel void mat_mul_native_t_nt( indirect_buffer[_i].v = min(_i, select(M0 - 1, PARTIAL_STORE_M0 - 1, y_cond)); }); + T_ACTIVATION(DATA_TYPE, M0, N0, ACTIVATION_TYPE, A_VAL, B_VAL, acc, acc); + T_STORE_INDIRECT_WIDTH_SELECT(DATA_TYPE, M0, N0, PARTIAL_STORE_N0, BUFFER, dst, 0, dst_stride_y, x_cond, acc, indirect_buffer); } #endif // defined(MAT_MUL_NATIVE_T_NT) @@ -462,6 +472,7 @@ __kernel void mat_mul_native_t_nt( * should NOT be confused with the batch size of the model. For NHWC the "batch" is the "H" dimension * @note The data type must be passed at compile time using -DDATA_TYPE (e.g. -DDATA_TYPE=float) * @note The block's dimensions used for the LHS and RHS matrices (M0, N0 and K0) must be passed at compile time using -DN0, -DM0 and -DK0 (e.g. -DN0=8, -DM0=4, -DK0=4). + * @note The fused activation function used should be passed with -DACTIVATION_TYPE, -DA_VAL and -DB_VAL are used for min and max output bounded activation functions. * @note The number of leftover outputs rows/columns must be passed using -DPARTIAL_STORE_N0 and -DPARTIAL_STORE_M0 (e.g. -DPARTIAL_STORE_N0=2, -DPARTIAL_STORE_M0=3) * @note The dimension K must be passed at compile time using -DK (e.g. -DK=6) * @note The tensor type ("BUFFER" or "IMAGE") of the rhs tensor must be passed at compile time using -DRHS_TENSOR_TYPE (e.g. -DRHS_TENSOR_TYPE=BUFFER) @@ -517,7 +528,7 @@ __kernel void mat_mul_native_t_t( }) const int rhs_z = z * rhs_h; - int k; + int k; for(k = 0; k <= K - K0; k += K0) { TILE(DATA_TYPE, K0, M0, a); @@ -565,7 +576,7 @@ __kernel void mat_mul_native_t_t( lhs_offset_first_element_in_bytes += K0 * lhs_stride_y; } -#ifdef K % K0 != 0 +#if K % K0 != 0 /* Leftover Loop */ for(; k < K; ++k) { @@ -619,6 +630,8 @@ __kernel void mat_mul_native_t_t( indirect_buffer[_i].v = min(_i, select(M0 - 1, PARTIAL_STORE_M0 - 1, y_cond)); }); + T_ACTIVATION(DATA_TYPE, M0, N0, ACTIVATION_TYPE, A_VAL, B_VAL, acc, acc); + T_STORE_INDIRECT_WIDTH_SELECT(DATA_TYPE, M0, N0, PARTIAL_STORE_N0, BUFFER, dst, 0, dst_stride_y, x_cond, acc, indirect_buffer); } #endif // defined(MAT_MUL_NATIVE_T_T) |