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Contents

Introduction

This wiki describes the computational kernels used by the BLIS framework.

One of the primary features of BLIS is that it provides a large set of dense linear algebra functionality while simultaneously minimizing the amount of kernel code that must be optimized for a given architecture. BLIS does this by isolating a handful of kernels which, when implemented, facilitate functionality and performance of several of the higher-level operations.

Presently, BLIS supports several groups of operations:

Most of the interest with BLAS libraries centers around level-3 operations because they exhibit favorable ratios of floating-point operations (flops) to memory operations (memops), which allows high performance. Some applications also require level-2 computation; however, these operations are at an inherent disadvantage on modern architectures due to their less favorable flop-to-memop ratio. The BLIS framework allows developers to quickly and easily build high performance level-3 operations, as well as relatively well-performing level-2 operations, simply by optimizing a small set of kernels. These kernels, and their relationship to the other higher-level operations supported by BLIS, are the subject of this wiki.

Some level-1v, level-1m, and level-1d operations may also be accelerated, but since they are memory-bound, optimization typically yields minor performance improvement.


BLIS kernels summary

This section lists and briefly describes each of the main computational kernels supported by the BLIS framework. (Other kernels are supported, but they are not of interest to most developers.)

Level-3

BLIS supports the following three level-3 microkernels. These microkernels are used to implement optimized level-3 operations.

  • gemm: The gemm microkernel performs a small matrix multiplication and is used by every level-3 operation.
  • trsm: The trsm microkernel performs a small triangular solve with multiple right-hand sides. It is not required for optimal performance and in fact is only needed when the developer opts to not implement the fused gemmtrsm kernel.
  • gemmtrsm: The gemmtrsm microkernel implements a fused operation whereby a gemm and a trsm subproblem are fused together in a single routine. This avoids redundant memory operations that would otherwise be incurred if the operations were executed separately.

The following shows the steps one would take to optimize, to varying degrees, the level-3 operations supported by BLIS:

  1. By implementing and optimizing the gemm microkernel, all level-3 operations except trsm are fully optimized. In this scenario, the trsm operation may achieve 60-90% of attainable peak performance, depending on the architecture and problem size.
  2. If one goes further and implements and optimizes the trsm microkernel, this kernel, when paired with an optimized gemm microkernel, results in a trsm implementation that is accelerated (but not optimized).
  3. Alternatively, if one implements and optimizes the fused gemmtrsm microkernel, this kernel, when paired with an optimized gemm microkernel, enables a fully optimized trsm implementation.

Level-1f

BLIS supports the following five level-1f (fused) kernels. These kernels are used to implement optimized level-2 operations (as well as self-similar level-1f operations; that is, the axpyf kernel can be invoked indirectly via the axpyf operation).

  • axpy2v: Performs and fuses two axpyv operations, accumulating to the same output vector.
  • dotaxpyv: Performs and fuses a dotv followed by an axpyv operation with x.
  • axpyf: Performs and fuses some implementation-dependent number of axpyv operations, accumulating to the same output vector. Can also be expressed as a gemv operation where matrix A is m x nf, where nf is the number of fused operations (fusing factor).
  • dotxf: Performs and fuses some implementation-dependent number of dotxv operations, reusing the y vector for each dotxv.
  • dotxaxpyf: Performs and fuses a dotxf and axpyf in which the matrix operand is reused.

Level-1v

BLIS supports the following 14 level-1v kernels. These kernels are used primarily to implement their self-similar operations. However, they are occasionally used to handle special cases of level-1f kernels or in situations where level-2 operations are partially optimized.

Level-1v/-1f Dependencies for Level-2 operations

The table below shows dependencies between level-2 operations and each of the level-1v and level-1f kernels.

Kernels marked with a "1" for a given level-2 operation are preferred for optimization because they facilitate an optimal implementation on most architectures. Kernels marked with a "2", "3", or "4" denote those which need to be optimized for alternative implementations that would typically be second, third, or fourth choices, respectively, if the preferred kernels are not optimized.

operation / kernel effective storage axpyv dotxv axpy2v dotaxpyv axpyf dotxf dotxaxpyf
gemv, trmv, trsv row-wise 2 1
column-wise 2 1
hemv, symv row- or column-wise 4 4 3 2 2 1
ger, her, syr row- or column-wise 1
her2, syr2 row- or column-wise 2 1

Note: The "effective storage" column reflects the orientation of the matrix operand after transposition via the corresponding trans_t parameter (if applicable). For example, calling gemv with a column-stored matrix A and the transa parameter equal to BLIS_TRANSPOSE would be effectively equivalent to row-wise storage.


Calling kernels

Note that all kernels, whether they be reference implementations or based on fully optimized assembly code, use names that are architecture- and implementation-specific. (This appears as a <suffix> in the kernel reference below.) Therefore, the easiest way to call the kernel is by querying a pointer from a valid context.

The first step is to obtain a valid context. Contexts store all of the information specific to a particular sub-configuration (usually loosely specific to a microarchitecture or group of closely-related microarchitectuers). If a context is not already available in your current scope, a default context for the hardware for which BLIS was configured (or, in the case of multi-configuration builds, the hardware on which BLIS is currently running) may be queried via:

cntx_t* bli_gks_query_cntx( void );

Once this cntx_t* pointer is obtained, you may call one of three functions to query any of the computation kernels described in this document:

void* bli_cntx_get_l3_nat_ukr_dt
     (
       num_t   dt,
       l3ukr_t ker_id,
       cntx_t* cntx
     );

void* bli_cntx_get_l1f_ker_dt
     (
       num_t   dt,
       l1fkr_t ker_id,
       cntx_t* cntx
     );

void* bli_cntx_get_l1v_ker_dt
     (
       num_t   dt,
       l1vkr_t ker_id,
       cntx_t* cntx
     );

The dt and ker_id parameters specify the floating-point datatype and the kernel operation you wish to query, respectively. Valid values for dt are BLIS_FLOAT, BLIS_DOUBLE, BLIS_SCOMPLEX, and BLIS_DCOMPLEX for single- and double-precision real, and single- and double-precision complex, respectively. Valid values for ker_id are given in the tables below.

Also, note that the return values of bli_cntx_get_l1v_ker_dt bli_cntx_get_l1f_ker_dt(), and bli_cntx_get_l3_nat_ukr_dt(), will be void* and must be typecast to typed function pointers before being called. As a convenience, BLIS defines function pointer types appropriate for usage in these situations. The function pointer type for each operation is given in the third columns of each table, with the ? taking the place of one of the supported datatype characters.

kernel operation l3ukr_t function pointer type
gemm BLIS_GEMM ?gemm_ukr_ft
trsm_l BLIS_TRSM_L_UKR ?trsm_ukr_ft
trsm_u BLIS_TRSM_U_UKR ?trsm_ukr_ft
gemmtrsm_l BLIS_GEMMTRSM_L_UKR ?gemmtrsm_ukr_ft
gemmtrsm_u BLIS_GEMMTRSM_U_UKR ?gemmtrsm_ukr_ft
kernel operation l1fkr_t function pointer type
axpy2v BLIS_AXPY2V_KER ?axpy2v_ft
dotaxpyv BLIS_DOTAXPYV_KER ?dotaxpyv_ft
axpyf BLIS_AXPYF_KER ?axpyf_ft
dotxf BLIS_DOTXF_KER ?dotxf_ft
dotxaxpyf BLIS_DOTXAXPYF_KER ?dotxaxpyf_ft
kernel operation l1vkr_t function pointer type
addv BLIS_ADDV_KER ?addv_ft
amaxv BLIS_AMAXV_KER ?amaxv_ft
axpyv BLIS_AXPYV_KER ?axpyv_ft
axpbyv BLIS_AXPBYV_KER ?axpbyv_ft
dotaxpyv BLIS_DOTAXPYV_KER ?dotaxpyv_ft
copyv BLIS_COPYV_KER ?copyv_ft
dotxv BLIS_DOTXV_KER ?dotxv_ft
invertv BLIS_INVERTV_KER ?invertv_ft
scalv BLIS_SCALV_KER ?scalv_ft
scal2v BLIS_SCAL2V_KER ?scal2v_ft
setv BLIS_SETV_KER ?setv_ft
subv BLIS_SUBV_KER ?subv_ft
swapv BLIS_SWAPV_KER ?swapv_ft
xpybv BLIS_XPBYV_KER ?xpbyv_ft

The specific information behind a queried function pointer is not typically available. However, it is guaranteed that the function pointer will always be valid (usually either an optimized assembly implementation or a reference implementation).


BLIS kernels reference

This section seeks to provide developers with a complete reference for each of the following BLIS kernels, including function prototypes, parameter descriptions, implementation notes, and diagrams:

The function prototypes in this section follow the same guidelines as those listed in the BLIS typed API reference. Namely:

  • Any occurrence of ? should be replaced with s, d, c, or z to form an actual function name.
  • Any occurrence of ctype should be replaced with the actual C type corresponding to the datatype instance in question.
  • Some matrix arguments have associated row and column strides arguments that proceed them, typically listed as rsX and csX for a given matrix X. Row strides are always listed first, and column strides are always listed second. The semantic meaning of a row stride is "the distance, in units of elements, from any given element to the corresponding element (within the same column) of the next row," and the meaning of a column stride is "the distance, in units of elements, from any given element to the corresponding element (within the same row) of the next column." Thus, unit row stride implies column-major storage and unit column stride implies row-major storage.
  • All occurrences of alpha and beta parameters are scalars.

Level-3 microkernels

This section describes in detail the various level-3 microkernels supported by BLIS:

gemm microkernel

void bli_?gemm_<suffix>
     (
       dim_t               k,
       ctype*     restrict alpha,
       ctype*     restrict a1,
       ctype*     restrict b1,
       ctype*     restrict beta,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

where <suffix> is implementation-dependent. (Recall that the precise <suffix> associated with the microkernel along with the rest of the function name doesn't matter if you are querying the function address from the context. See section on calling kernels for details.) The following (more portable) wrapper is also defined:

void bli_?gemm_ukernel
     (
       dim_t               k,
       ctype*     restrict alpha,
       ctype*     restrict a1,
       ctype*     restrict b1,
       ctype*     restrict beta,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

The gemm microkernel, sometimes simply referred to as "the BLIS microkernel" or "the microkernel", performs the following operation:

  C11 := beta * C11 + A1 * B1

where A1 is an MR x k "micropanel" matrix stored in packed (column-wise) format, B1 is a k x NR "micropanel" matrix stored in packed (row-wise) format, C11 is an MR x NR general matrix stored according to its row and column strides rsc and csc, and alpha and beta are scalars.

MR and NR are the register blocksizes associated with the microkernel. They are chosen by the developer when the microkernel is written and then encoded into a BLIS configuration, which will reference the microkernel when the BLIS framework is instantiated into a library. For more information on setting register blocksizes and related constants, please see the BLIS developer configuration guide.

Parameters:

  • k: The number of columns of A1 and rows of B1.
  • alpha: The address of a scalar to the A1 * B1 product.
  • a1: The address of a micropanel of matrix A of dimension MR x k, stored by columns with leading dimension PACKMR, where typically PACKMR = MR. (See Implementation Notes for gemm for a discussion of PACKMR.)
  • b1: The address of a micropanel of matrix B of dimension k x NR, stored by rows with leading dimension PACKNR, where typically PACKNR = NR. (See Implementation Notes for gemm for a discussion of PACKNR.)
  • beta: The address of a scalar to the input value of matrix C11.
  • c11: The address of a matrix C11 of dimension MR x NR, stored according to rsc and csc.
  • rsc: The row stride of matrix C11 (ie: the distance to the next row, in units of matrix elements).
  • csc: The column stride of matrix C11 (ie: the distance to the next column, in units of matrix elements).
  • data: The address of an auxinfo_t object that contains auxiliary information that may be useful when optimizing the gemm microkernel implementation. (See Using the auxinfo_t object for a discussion of the kinds of values available via auxinfo_t.)
  • cntx: The address of the runtime context. The context can be queried for implementation-specific values such as cache and register blocksizes. However, most microkernels intrinsically "know" these values already, and thus the cntx argument usually can be safely ignored.

Diagram for gemm

The diagram below shows the packed micropanel operands and how elements of each would be stored when MR = NR = 4. The hex digits indicate the layout and order (but NOT the numeric contents) of the elements in memory. Note that the storage of C11 is not shown since it is determined by the row and column strides of C11.

         c11:           a1:                        b1:                  
         _______        ______________________     _______              
        |       |      |0 4 8 C               |   |0 1 2 3|             
    MR  |       |      |1 5 9 D . . .         |   |4 5 6 7|             
        |       |  +=  |2 6 A E               |   |8 9 A B|             
        |_______|      |3_7_B_F_______________|   |C D E F|             
                                                  |   .   |             
            NR                    k               |   .   | k           
                                                  |   .   |             
                                                  |       |             
                                                  |       |             
                                                  |_______|             
                                                                        
                                                      NR                

Implementation Notes for gemm

  • Register blocksizes. The register blocksizes MR and NR, corresponding to the number of logical rows in a1 and columns in b1, respectively, are defined in the context and may be queried via bli_cntx_get_blksz_def_dt(). However, you shouldn't need to query these values since the implementation inherently "knows" them already.
  • Leading dimensions of a1 and b1: PACKMR and PACKNR. The packed micropanels a1 and b1 are simply stored in column-major and row-major order, respectively. Usually, the width of either micropanel (ie: the number of logical rows of a1, or MR, and the number of columns of b1, or NR) is equal to that micropanel's so-called "leading dimension", or number of physical rows. Sometimes, it may be beneficial to specify a leading dimension that is larger than the panel width. This may be desirable because it allows each column of a1 or row of b1 to maintain a certain alignment in memory that would not otherwise be maintained by MR and/or NR. In this case, you should index through a1 and b1 using the values PACKMR and PACKNR, respectively (which are stored in the context as the blocksize "maximums" associated with the bszid_t values BLIS_MR and BLIS_NR). These values are defined in the context and may be queried via bli_cntx_get_blksz_max_dt(). However, you shouldn't need to query these values since the implementation inherently "knows" them already.
  • Storage preference of c11. Usually, an optimized gemm microkernel will have a "preferred" storage format for C11--typically either contiguous row-storage (i.e. cs_c = 1) or contiguous column-storage (i.e. rs_c = 1). This preference comes from how the microkernel is most efficiently able to load/store elements of C11 from/to memory. Most microkernels use vector instructions to access contiguous columns (or column segments) of C11. However, the developer may decide that accessing contiguous rows (or row segments) is more desirable. If this is the case, this preference should be indicated via the bool_t argument when registering microkernels via bli_cntx_set_l3_nat_ukrs()--TRUE indicating a row preference and FALSE indicating a column preference. Properly setting this property allows the framework to perform a runtime optimization that will ensure the microkernel preference is honored, if at all possible.
  • Edge cases in MR, NR dimensions. Sometimes the microkernel will be called with micropanels a1 and b1 that correspond to edge cases, where only partial results are needed. Zero-padding is handled automatically by the packing function to facilitate reuse of the same microkernel. Similarly, the logic for computing to temporary storage and then saving only the elements that correspond to elements of C11 that exist (at the edges) is handled automatically within the macrokernel.
  • Alignment of a1 and b1. By default, the alignment of addresses a1 and b1 are aligned only to sizeof(type). If BLIS_POOL_ADDR_ALIGN_SIZE is set to some larger multiple of sizeof(type), such as the page size, then the first a1 and b1 micropanels will be aligned to that value, but subsequent micropanels will only be aligned to sizeof(type), or, if BLIS_POOL_ADDR_ALIGN_SIZE is a multiple of PACKMR and PACKNR, then subsequent micropanels a1 and b1 will be aligned to PACKMR * sizeof(type) and PACKNR * sizeof(type), respectively.
  • Unrolling loops. As a general rule of thumb, the loop over k is sometimes moderately unrolled; for example, in our experience, an unrolling factor of u = 4 is fairly common. If unrolling is applied in the k dimension, edge cases must be handled to support values of k that are not multiples of u. It is nearly universally true that there should be no loops in the MR or NR directions; in other words, iteration over these dimensions should always be fully unrolled (within the loop over k).
  • Zero beta. If beta = 0.0 (or 0.0 + 0.0i for complex datatypes), then the microkernel should NOT use it explicitly, as C11 may contain uninitialized memory (including elements containing NaN or Inf). This case should be detected and handled separately by overwriting C11 with the alpha * A1 * B1 product.

Using the auxinfo_t object

Each microkernel (gemm, trsm, and gemmtrsm) takes as its last argument a pointer of type auxinfo_t. This BLIS-defined type is defined as a struct whose fields contain auxiliary values that may be useful to some microkernel authors, particularly when implementing certain optimization techniques. BLIS provides kernel authors access to the fields of the auxinfo_t object via the following function-like preprocessor macros. Each macro takes a single argument, the auxinfo_t pointer, and returns one of the values stored within the object.

  • bli_auxinfo_next_a(). Returns the address (void*) of the micropanel of A that will be used the next time the microkernel will be called.
  • bli_auxinfo_next_b(). Returns the address (void*) of the micropanel of B that will be used the next time the microkernel will be called.
  • bli_auxinfo_ps_a(). Returns the panel stride (inc_t) of the current micropanel of A.
  • bli_auxinfo_ps_b(). Returns the panel stride (inc_t) of the current micropanel of B.

The addresses of the next micropanels of A and B may be used by the microkernel to perform prefetching, if prefetching is supported by the architecture. Similarly, it may be useful to know the precise distance in memory to the next micropanel. (Note that sometimes the next micropanel to be used is not the same as the next micropanel in memory.)

Any and all of these values may be safely ignored; they are completely optional. However, BLIS guarantees that all values accessed via the macros listed above will always be initialized and meaningful, for every invocation of each microkernel (gemm, trsm, and gemmtrsm).

Example code for gemm

An example implementation of the gemm microkernel may be found in the template configuration directory in:

Note that this implementation is coded in C99 and lacks several kinds of optimization that are typical of real-world optimized microkernels, such as vector instructions (or intrinsics) and loop unrolling in MR or NR. It is meant to serve only as a starting point for a microkernel developer.


trsm microkernels

void bli_?trsm_l_<suffix>
     (
       ctype*     restrict a11,
       ctype*     restrict b11,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

void bli_?trsm_u_<suffix>
     (
       ctype*     restrict a11,
       ctype*     restrict b11,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

where <suffix> is implementation-dependent. (Recall that the precise <suffix> associated with the microkernel along with the rest of the function name doesn't matter if you are querying the function address from the context. See section on calling kernels for details.) The following (more portable) wrappers are also defined:

void bli_?trsm_l_ukernel
     (
       ctype*     restrict a11,
       ctype*     restrict b11,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

void bli_?trsm_u_ukernel
     (
       ctype*     restrict a11,
       ctype*     restrict b11,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

The trsm_l and trsm_u microkernels perform the following operation:

  C11 := inv(A11) * B11

where A11 is MR x MR and lower (trsm_l) or upper (trsm_u) triangular, B11 is MR x NR, and C11 is MR x NR.

MR and NR are the register blocksizes associated with the microkernel. They are chosen by the developer when the microkernel is written and then encoded into a BLIS configuration, which will reference the microkernel when the BLIS framework is instantiated into a library. For more information on setting register blocksizes and related constants, please see the BLIS developer configuration guide.

Parameters:

  • a11: The address of A11, which is the MR x MR lower (trsm_l) or upper (trsm_u) triangular submatrix within the packed micropanel of matrix A. A11 is stored by columns with leading dimension PACKMR, where typically PACKMR = MR. (See Implementation Notes for gemm for a discussion of PACKMR.) Note that A11 contains elements in both triangles, though elements in the unstored triangle are not guaranteed to be zero and thus should not be referenced.
  • b11: The address of B11, which is an MR x NR submatrix of the packed micropanel of B. B11 is stored by rows with leading dimension PACKNR, where typically PACKNR = NR. (See Implementation Notes for gemm for a discussion of PACKNR.)
  • c11: The address of C11, which is an MR x NR submatrix of matrix C, stored according to rsc and csc. C11 is the submatrix within C that corresponds to the elements which were packed into B11. Thus, C is the original input matrix B to the overall trsm operation.
  • rsc: The row stride of matrix C11 (ie: the distance to the next row, in units of matrix elements).
  • csc: The column stride of matrix C11 (ie: the distance to the next column, in units of matrix elements).
  • data: The address of an auxinfo_t object that contains auxiliary information that may be useful when optimizing the trsm microkernel implementation. (See Using the auxinfo_t object for a discussion of the kinds of values available via auxinfo_t, and also Implementation Notes for trsm for caveats.)
  • cntx: The address of the runtime context. The context can be queried for implementation-specific values such as cache and register blocksizes. However, most microkernels intrinsically "know" these values already, and thus the cntx argument usually can be safely ignored.

Diagrams for trsm

Please see the diagram for gemmtrsm_l and gemmtrsm_u to see depictions of the trsm_l and trsm_u microkernel operations and where they fit in with their preceding gemm subproblems.

Implementation Notes for trsm

  • Register blocksizes. See Implementation Notes for gemm.
  • Leading dimensions of a11 and b11: PACKMR and PACKNR. See Implementation Notes for gemm.
  • Edge cases in MR, NR dimensions. See Implementation Notes for gemm.
  • Alignment of a11 and b11. The addresses a11 and b11 are aligned according to PACKMR * sizeof(type) and PACKNR * sizeof(type), respectively.
  • Unrolling loops. Most optimized implementations should unroll all three loops within the trsm microkernel.
  • Prefetching next micropanels of A and B. We advise against using the bli_auxinfo_next_a() and bli_auxinfo_next_b() macros from within the trsm_l and trsm_u microkernels, since the values returned usually only make sense in the context of the overall gemmtrsm subproblem.
  • Diagonal elements of A11. At the time this microkernel is called, the diagonal entries of triangular matrix A11 contain the inverse of the original elements. This inversion is done during packing so that we can avoid expensive division instructions within the microkernel itself. If the diag parameter to the higher level trsm operation was equal to BLIS_UNIT_DIAG, the diagonal elements will be explicitly unit.
  • Zero elements of A11. Since A11 is lower triangular (for trsm_l), the strictly upper triangle implicitly contains zeros. Similarly, the strictly lower triangle of A11 implicitly contains zeros when A11 is upper triangular (for trsm_u). However, the packing function may or may not actually write zeros to this region. Thus, the implementation should not reference these elements.
  • Output. This microkernel must write its result to two places: the submatrix B11 of the current packed micropanel of B and the submatrix C11 of the output matrix C.

Example code for trsm

Example implementations of the trsm microkernels may be found in the template configuration directory in:

Note that these implementations are coded in C99 and lack several kinds of optimization that are typical of real-world optimized microkernels, such as vector instructions (or intrinsics) and loop unrolling in MR or NR. They are meant to serve only as a starting point for a microkernel developer.


gemmtrsm microkernels

void bli_?gemmtrsm_l_<suffix>
     (
       dim_t               k,
       ctype*     restrict alpha,
       ctype*     restrict a10,
       ctype*     restrict a11,
       ctype*     restrict b01,
       ctype*     restrict b11,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

void bli_?gemmtrsm_u_<suffix>
     (
       dim_t               k,
       ctype*     restrict alpha,
       ctype*     restrict a12,
       ctype*     restrict a11,
       ctype*     restrict b21,
       ctype*     restrict b11,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

where <suffix> is implementation-dependent. (Recall that the precise <suffix> associated with the microkernel along with the rest of the function name doesn't matter if you are querying the function address from the context. See section on calling kernels for details.) The following (more portable) wrappers are also defined:

void bli_?gemmtrsm_l_ukernel
     (
       dim_t               k,
       ctype*     restrict alpha,
       ctype*     restrict a10,
       ctype*     restrict a11,
       ctype*     restrict b01,
       ctype*     restrict b11,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

void bli_?gemmtrsm_u_ukernel
     (
       dim_t               k,
       ctype*     restrict alpha,
       ctype*     restrict a12,
       ctype*     restrict a11,
       ctype*     restrict b21,
       ctype*     restrict b11,
       ctype*     restrict c11, inc_t rsc, inc_t csc,
       auxinfo_t* restrict data,
       cntx_t*    restrict cntx
     );

The gemmtrsm_l microkernel performs the following compound operation:

  B11 := alpha * B11 - A10 * B01
  B11 := inv(A11) * B11
  C11 := B11

where A11 is MR x MR and lower triangular, A10 is MR x k, and B01 is k x NR. The gemmtrsm_u microkernel performs:

  B11 := alpha * B11 - A12 * B21
  B11 := inv(A11) * B11
  C11 := B11

where A11 is MR x MR and upper triangular, A12 is MR x k, and B21 is k x NR. In both cases, B11 is MR x NR and alpha is a scalar. Here, inv() denotes matrix inverse.

MR and NR are the register blocksizes associated with the microkernel. They are chosen by the developer when the microkernel is written and then encoded into a BLIS configuration, which will reference the microkernel when the BLIS framework is instantiated into a library. For more information on setting register blocksizes and related constants, please see the BLIS developer configuration guide.

Parameters:

  • k: The number of columns of A10 and rows of B01 (trsm_l); the number of columns of A12 and rows of B21 (trsm_u).
  • alpha: The address of a scalar to be applied to B11.
  • a10, a12: The address of A10 or A12, which is the MR x k submatrix of the packed micropanel of A that is situated to the left (trsm_l) or right (trsm_u) of the MR x MR triangular submatrix A11. A10 and A12 are stored by columns with leading dimension PACKMR, where typically PACKMR = MR. (See Implementation Notes for gemm for a discussion of PACKMR.)
  • a11: The address of A11, which is the MR x MR lower (trsm_l) or upper (trsm_u) triangular submatrix within the packed micropanel of matrix A that is situated to the right of A10 (trsm_l) or the left of A12 (trsm_u). A11 is stored by columns with leading dimension PACKMR, where typically PACKMR = MR. (See Implementation Notes for gemm for a discussion of PACKMR.) Note that A11 contains elements in both triangles, though elements in the unstored triangle are not guaranteed to be zero and thus should not be referenced.
  • b01, b21: The address of B01 and B21, which is the k x NR submatrix of the packed micropanel of B that is situated above (trsm_l) or below (trsm_u) the MR x NR block B11. B01 and B21 are stored by rows with leading dimension PACKNR, where typically PACKNR = NR. (See Implementation Notes for gemm for a discussion of PACKNR.)
  • b11: The address of B11, which is the MR x NR submatrix of the packed micropanel of B, situated below B01 (trsm_l) or above B21 (trsm_u). B11 is stored by rows with leading dimension PACKNR, where typically PACKNR = NR. (See Implementation Notes for gemm for a discussion of PACKNR.)
  • c11: The address of C11, which is an MR x NR submatrix of matrix C, stored according to rsc and csc. C11 is the submatrix within C that corresponds to the elements which were packed into B11. Thus, C is the original input matrix B to the overall trsm operation.
  • rsc: The row stride of matrix C11 (ie: the distance to the next row, in units of matrix elements).
  • csc: The column stride of matrix C11 (ie: the distance to the next column, in units of matrix elements).
  • data: The address of an auxinfo_t object that contains auxiliary information that may be useful when optimizing the gemmtrsm microkernel implementation. (See Using the auxinfo_t object for a discussion of the kinds of values available via auxinfo_t, and also Implementation Notes for gemmtrsm for caveats.)
  • cntx: The address of the runtime context. The context can be queried for implementation-specific values such as cache and register blocksizes. However, most microkernels intrinsically "know" these values already, and thus the cntx argument usually can be safely ignored.

Diagram for gemmtrsm_l

The diagram below shows the packed micropanel operands for trsm_l and how elements of each would be stored when MR = NR = 4. (The hex digits indicate the layout and order (but NOT the numeric contents) in memory. Here, matrix A11 (referenced by a11) is lower triangular. Matrix A11 does contain elements corresponding to the strictly upper triangle, however, they are not guaranteed to contain zeros and thus these elements should not be referenced.

                                              NR    
                                            _______ 
                                       b01:|0 1 2 3|
                                           |4 5 6 7|
                                           |8 9 A B|
                                           |C D E F|
                                         k |   .   |
                                           |   .   |
       a10:                a11:            |   .   |
       ___________________  _______        |_______|
      |0 4 8 C            |`.      |   b11:|       |
  MR  |1 5 9 D . . .      |  `.    |       |       |
      |2 6 A E            |    `.  |    MR |       |
      |3_7_B_F____________|______`.|       |_______|
                                                    
                k             MR                    

Diagram for gemmtrsm_u

The diagram below shows the packed micropanel operands for trsm_u and how elements of each would be stored when MR = NR = 4. (The hex digits indicate the layout and order (but NOT the numeric contents) in memory. Here, matrix A11 (referenced by a11) is upper triangular. Matrix A11 does contain elements corresponding to the strictly lower triangle, however, they are not guaranteed to contain zeros and thus these elements should not be referenced.

       a11:     a12:                          NR    
       ________ ___________________         _______ 
      |`.      |0 4 8              |   b11:|0 1 2 3|
  MR  |  `.    |1 5 9 . . .        |       |4 5 6 7|
      |    `.  |2 6 A              |    MR |8 9 A B|
      |______`.|3_7_B______________|       |___.___|
                                       b21:|   .   |
          MR             k                 |   .   |
                                           |       |
                                           |       |
     NOTE: Storage digits are shown      k |       |
     starting with a12 to avoid            |       |
     obscuring triangular structure        |       |
     of a11.                               |_______|
                                                                            

Implementation Notes for gemmtrsm

  • Register blocksizes. See Implementation Notes for gemm.
  • Leading dimensions of a1 and b1: PACKMR and PACKNR. See Implementation Notes for gemm.
  • Edge cases in MR, NR dimensions. See Implementation Notes for gemm.
  • Alignment of a1 and b1. See Implementation Notes for gemm.
  • Unrolling loops. Most optimized implementations should unroll all three loops within the trsm subproblem of gemmtrsm. See Implementation Notes for gemm for remarks on unrolling the gemm subproblem.
  • Prefetching next micropanels of A and B. When invoked from within a gemmtrsm_l microkernel, the addresses accessible via bli_auxinfo_next_a() and bli_auxinfo_next_b() refer to the next invocation's a10 and b01, respectively, while in gemmtrsm_u, the _next_a() and _next_b() macros return the addresses of the next invocation's a11 and b11 (since those submatrices precede a12 and b21).
  • Zero alpha. The microkernel can safely assume that alpha is non-zero; "alpha equals zero" handling is performed at a much higher level, which means that, in such a scenario, the microkernel will never get called.
  • Diagonal elements of A11. See Implementation Notes for trsm.
  • Zero elements of A11. See Implementation Notes for trsm.
  • Output. See Implementation Notes for trsm.
  • Optimization. Let's assume that the gemm microkernel has already been optimized. You have two options with regard to optimizing the fused gemmtrsm microkernels:
    1. Optimize only the trsm microkernels. This will result in the gemm and trsm_l microkernels being called in sequence. (Likewise for gemm and trsm_u.)
    2. Fuse the implementation of the gemm microkernel with that of the trsm microkernels by inlining both into the gemmtrsm_l and gemmtrsm_u microkernel definitions. This option is more labor-intensive, but also more likely to yield higher performance because it avoids redundant memory operations on the packed MR x NR submatrix B11.

Example code for gemmtrsm

Example implementations of the gemmtrsm microkernels may be found in the template configuration directory in:

Note that these implementations are coded in C99 and lack several kinds of optimization that are typical of real-world optimized microkernels, such as vector instructions (or intrinsics) and loop unrolling in MR or NR. They are meant to serve only as a starting point for a microkernel developer.

Level-1f kernels


axpy2v kernel

void bli_?axpy2v_<suffix>
     (
       conj_t           conjx,
       conj_t           conjy,
       dim_t            n,
       ctype*  restrict alphax,
       ctype*  restrict alphay,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       ctype*  restrict z, inc_t incz,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  z := z + alphax * conjx(x) + alphay * conjy(y)

where x, y, and z are vectors of length n stored with strides incx, incy, and incz, respectively. This kernel is typically implemented as the fusion of two axpyv operations on different input vectors x and y and with different scalars alphax and alpay to update the same output vector z.


dotaxpyv kernel

void bli_?dotaxpyv_<suffix>
     (
       conj_t           conjxt,
       conj_t           conjx,
       conj_t           conjy,
       dim_t            n,
       ctype*  restrict alpha,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       ctype*  restrict rho,
       ctype*  restrict z, inc_t incz,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  rho := conjxt(x)^T * conjy(y)
  z   := z + alpha * conjx(x)

where x, y, and z are vectors of length n stored with strides incx, incy, and incz, respectively, and rho is a scalar. This kernel is typically implemented as a dotv operation fused with an axpyv operation.


axpyf kernel

void bli_?axpyf_<suffix>
     (
       conj_t           conja,
       conj_t           conjx,
       dim_t            m,
       dim_t            b,
       ctype*  restrict alpha,
       ctype*  restrict a, inc_t inca, inc_t lda,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := y + alpha * conja(a) * conjy(x)

where a is an m x b matrix, x is a vector of length b, and y is a vector of length m. Vectors x and y are stored with strides incx and incy, respectively. Matrix a is stored with row stride inca and column stride lda, though inca is most often (in practice) unit. This kernel is typically implemented as a fused series of b axpyv operations updating the same vector y (with the elements of x serving as the scalars and the columns of a serving as the vectors to be scaled).


dotxf kernel

void bli_?dotxf_<suffix>
     (
       conj_t           conjat,
       conj_t           conjx,
       dim_t            m,
       dim_t            b,
       ctype*  restrict alpha,
       ctype*  restrict a, inc_t inca, inc_t lda,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict beta,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := beta * y + alpha * conjat(a)^T conjx(x)

where a is an m x b matrix, where w is a vector of length m, y is a vector of length b, and alpha is a scalar. Vectors x and y are stored with strides incx and incy, respectively. Matrix a is stored with row stride inca and column stride lda, though inca is most often (in practice) unit. This kernel is typically implemented as a series of b dotxv operations with the same right-hand operand vector x (contracted with the rows of a^T and accumulating to the corresponding elements of vector y).


dotxaxpyf kernel

void bli_?dotxaxpyf_<suffix>
     (
       conj_t           conjat,
       conj_t           conja,
       conj_t           conjw,
       conj_t           conjx,
       dim_t            m,
       dim_t            b,
       ctype*  restrict alpha,
       ctype*  restrict a, inc_t inca, inc_t lda,
       ctype*  restrict w, inc_t incw,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict beta,
       ctype*  restrict y, inc_t incy,
       ctype*  restrict z, inc_t incz,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := beta * y + alpha * conjat(a)^T conjw(w)
  z :=        z + alpha *  conja(a)   conjx(x)

where a is an m x b matrix, w and z are vectors of length m, x and y are vectors of length b, and alpha and beta are scalars. Vectors w, z, x and y are stored with strides incw, incz, incx, and incy, respectively. Matrix a is stored with row stride inca and column stride lda, though inca is most often (in practice) unit. This kernel is typically implemented as a series of b dotxv operations with the same right-hand operand vector w fused with a series of b axpyv operations updating the same vector z.


Level-1v kernels


addv kernel

void bli_?addv_<suffix>
     (
       conj_t           conjx,
       dim_t            n,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := y + conjx(x)

where x and y are vectors of length n stored with strides incx and incy, respectively.


amaxv kernel

void bli_?amaxv_<suffix>
     (
       dim_t            n,
       ctype*  restrict x, inc_t incx,
       dim_t*  restrict index,
       cntx_t* restrict cntx
     )

Given a vector of length n, this kernel returns the zero-based index index of the element of vector x that contains the largest absolute value (or, in the complex domain, the largest complex modulus).

If NaN is encountered, it is treated as if it were a valid value that was smaller than any other value in the vector. If more than one element contains the same maximum value, the index of the latter element is returned via index.


axpyv kernel

void bli_?axpyv_<suffix>
     (
       conj_t           conjx,
       dim_t            n,
       ctype*  restrict alpha,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := y + alpha * conjx(x)

where x and y are vectors of length n stored with strides incx and incy, respectively, and alpha is a scalar.


axpbyv kernel

void bli_?axpbyv_<suffix>
     (
       conj_t           conjx,
       dim_t            n,
       ctype*  restrict alpha,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict beta,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := beta * y + alpha * conjx(x)

where x and y are vectors of length n stored with strides incx and incy, respectively, and alpha and beta are scalars.


copyv kernel

void bli_?copyv_<suffix>
     (
       conj_t           conjx,
       dim_t            n,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := conjx(x)

where x and y are vectors of length n stored with strides incx and incy, respectively.


dotv kernel

void bli_?dotv_<suffix>
     (
       conj_t           conjx,
       conj_t           conjy,
       dim_t            n,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       ctype*  restrict rho,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  rho := conjxt(x)^T * conjy(y)

where x and y are vectors of length n stored with strides incx and incy, respectively, and rho is a scalar.


dotxv kernel

void bli_?dotxv_<suffix>
     (
       conj_t           conjx,
       conj_t           conjy,
       dim_t            n,
       ctype*  restrict alpha,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       ctype*  restrict beta,
       ctype*  restrict rho,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  rho := beta * rho + alpha * conjxt(x)^T * conjy(y)

where x and y are vectors of length n stored with strides incx and incy, respectively, and alpha, beta, and rho are scalars.


invertv kernel

void bli_?invertv_<suffix>
     (
       dim_t            n,
       ctype*  restrict x, inc_t incx,
       cntx_t* restrict cntx
     )

This kernel inverts all elements of an n-length vector x.


scalv kernel

void bli_?scalv_<suffix>
     (
       conj_t           conjalpha,
       dim_t            n,
       ctype*  restrict alpha,
       ctype*  restrict x, inc_t incx,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  x := conjalpha(alpha) * x

where x is a vector of length n stored with stride incx and alpha is a scalar.


scal2v kernel

void bli_?scal2v_<suffix>
     (
       conj_t           conjx,
       dim_t            n,
       ctype*  restrict alpha,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := alpha * conjx(x)

where x and y are vectors of length n stored with strides incx and incy, respectively, and alpha is a scalar.


setv kernel

void bli_?setv_<suffix>
     (
       conj_t           conjalpha,
       dim_t            n,
       ctype*  restrict alpha,
       ctype*  restrict x, inc_t incx,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  x := conjalpha(alpha)

where x is a vector of length n stored with stride incx and alpha is a scalar. Note that here, the := operator represents a broadcast of conjalpha(alpha) to every element in x.


subv kernel

void bli_?subv_<suffix>
     (
       conj_t           conjx,
       dim_t            n,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := y - conjx(x)

where x and y are vectors of length n.


swapv kernel

void bli_?swapv_<suffix>
     (
       dim_t            n,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel swaps corresponding elements of two n-length vectors x and y stored with strides incx and incy, respectively.


xpbyv kernel

void bli_?xpbyv_<suffix>
     (
       conj_t           conjx,
       dim_t            n,
       ctype*  restrict x, inc_t incx,
       ctype*  restrict beta,
       ctype*  restrict y, inc_t incy,
       cntx_t* restrict cntx
     )

This kernel performs the following operation:

  y := beta * y + conjx(x)

where x and y are vectors of length n stored with strides incx and incy, respectively, and beta is a scalar.