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BLASFEO - BLAS For Embedded Optimization

BLASFEO provides a set of basic linear algebra routines, performance-optimized for matrices that fit in cache (i.e. generally up to a couple hundred size in each dimension), as typically encountered in embedded optimization applications.

BLASFEO APIs

BLASFEO provides two APIs (Application Programming Interfaces):

  • BLAS API: the standard BLAS and LAPACK APIs, with matrices stored in column-major.
  • BLASFEO API: BLASFEO's own API is optimized to reduce overhead for small matrices. It employes structures to describe matrices (blasfeo_dmat) and vectors (blasfeo_dvec), defined in include/blasfeo_common.h. The actual implementation of blasfeo_dmat and blasfeo_dvec depends on the TARGET, LA (Linear Algebra) and MF (Matrix Format) choice. The API is non-destructive, and compared to the BLAS API it has an additional matrix/vector argument reserved for the output.
API Optimized (level 3) routines
BLASFEO
(small matrices)
dgemm, dsyrk, dsyr2k, dtrmm, dtrsm, dpotrf, dgetrf, dgeqrf, dgelqf,
sgemm, ssyrk, strmm, strsm, spotrf
BLAS
(small matrices)
dgemm, dsyrk, dsyr2k, dtrmm, dtrsm, dpotrf, dgetrf
sgemm, strsm, spotrf
BLAS
(large matrices)
dgemm, dsyrk, dsyr2k, dtrmm*, dtrsm*, dpotrf*,
sgemm

Note: BLASFEO is currently under active development. Some of the routines listed in the previous table may only be optimized for some variants, and provide reference implementations for other variants. E.g. only some variants of the routines marked with '*' are optimized for large matrices.

Supported Computer Architectures

The architecture for BLASFEO to use is specified using the TARGET build variable. Currently BLASFEO supports the following architectures:

TARGET Description
X64_INTEL_SKYLAKE_X Intel Skylake-X architecture or newer (optimized for 2 512-bit FMA pipes). x86_64 with AVX512 (F+VL) ISA, 64-bit OS
X64_INTEL_HASWELL Intel Haswell, Intel Skylake, AMD Zen, AMD Zen2, AMD Zen3 architectures or newer. x86_64 with AVX2 and FMA ISA, 64-bit OS
X64_INTEL_SANDY_BRIDGE Intel Sandy-Bridge architecture. x86_64 with AVX ISA, 64-bit OS
X64_INTEL_CORE Intel Core architecture. x86_64 with SSE3 ISA, 64-bit OS
X64_AMD_BULLDOZER AMD Bulldozer architecture. x86_64 with AVX and FMA ISAs, 64-bit OS
X86_AMD_JAGUAR AMD Jaguar architecture. x86 with AVX ISA, 32-bit OS
X86_AMD_BARCELONA AMD Barcelona architecture. x86 with SSE3 ISA, 32-bit OS
ARMV8A_APPLE_M1 Apple M1 architecture or newer. ARMv8A with VFPv4 and NEONv2 ISAs, 64-bit OS
ARMV8A_ARM_CORTEX_A76 ARM Cortex A76 architecture or newer. ARMv8A with VFPv4 and NEONv2 ISAs, 64-bit OS
ARMV8A_ARM_CORTEX_A73 ARM Cortex A73 architecture or newer. ARMv8A with VFPv4 and NEONv2 ISAs, 64-bit OS
ARMV8A_ARM_CORTEX_A57 ARM Cortex A57, A72 architectures. ARMv8A with VFPv4 and NEONv2 ISAs, 64-bit OS
ARMV8A_ARM_CORTEX_A55 ARM Cortex A55 architecture. ARMv8A with VFPv4 and NEONv2 ISAs, 64-bit OS
ARMV8A_ARM_CORTEX_A53 ARM Cortex A53 architecture. ARMv8A with VFPv4 and NEONv2 ISAs, 64-bit OS
ARMV7A_ARM_CORTEX_A15 ARM Cortex A15 architecture. ARMv7A with VFPv4 and NEON ISAs, 32-bit OS
ARMV7A_ARM_CORTEX_A9 ARM Cortex A9 architecture. ARMv7A with VFPv3 and NEON ISAs, 32-bit OS
ARMV7A_ARM_CORTEX_A7 ARM Cortex A7 architecture. ARMv7A with VFPv4 and NEON ISAs, 32-bit OS
GENERIC Generic target, coded in C, giving better performance if the architecture provides more than 16 scalar FP registers (e.g. many RISC such as ARM)

Note that the X64_INTEL_SKYLAKE_X, X86_AMD_JAGUAR and X86_AMD_BARCELONA architectures are not currently supported by the CMake build system and can only be used through the included Makefile.

Automatic Target Detection

When using the CMake build system, it is possible to automatically detect the X64 target the current computer can use. This can be enabled by specifying the X64_AUTOMATIC target. In this mode, the build system will automatically search through the X64 targets to find the best one that can both compile and run on the host machine.

Target Testing

When using the CMake build system, tests will automatically be performed to see if the current compiler can compile the needed code for the selected target and that the current computer can execute the code compiled for the current target. The execution test can be disabled by setting the BLASFEO_CROSSCOMPILING flag to true. This is automatically done when CMake detects that cross compilation is happening.

Linear Algebra Routines

The BLASFEO backend provides three possible implementations of each linear algebra routine, specified using the LA build variable:

LA Description
HIGH_PERFORMANCE Target-tailored; performance-optimized for cache resident matrices; panel- or column-major matrix format. Currently provided for OS_LINUX (x86_64 64-bit, x86 32-bit, ARMv8A 64-bit, ARMv7A 32-bit), OS_WINDOWS (x86_64 64-bit) and OS_MAC (x86_64 64-bit).
REFERENCE Target-unspecific lightly-optimizated; small code footprint; panel- or column-major matrix format
EXTERNAL_BLAS_WRAPPER Call to external BLAS and LAPACK libraries; column-major matrix format

Matrix Formats

Currently there are two matrix formats used in the BLASFEO matrix structures blasfeo_dmat and blasfeo_smat, specified using the MF build variable:

MF Description
COLMAJ column-major (or FORTRAN-style): the standard matrix format used in the BLAS and LAPACK libraries
PANELMAJ panel-major: BLASFEO's own matrix format, which is designed to improve performance for matrices fitting in cache. Each matrix is stored in block-row-major with blocks (called panels) of fixed height, and within each panel the matrix elements are stored in column-major.

Tests

BLASFEO provides some functionality to test the correctness of its linear algebra routines, for both the BLASFEO and the BLAS APIs. The testing framework is written in python (minimum version 3.6) and uses jinja template engine, which can be installed with the command pip install jinja2. In the tests folder there are several predefined test sets targeting different combinations of architecture, precision and matrix format, and which are used for automatic testing in Travis CI.

In order to run a test set, from the tests folder run for example the command

python tester.py testset_travis_blasfeo_pm_double_amd64.json

where you can replace the testset with any other. If no test set is specified, the testset_default.json is selected; this testset can be easily edited to test just a few routines of your choice.

Recommended guidelines

Some general guidelines to install BLASFEO, maximise its performance and avoid known performance issues can be found in the file guidelines.md.
Covered topics:

  • installation tips on Android
  • denormals
  • memory alignment

More Information

More information can be found on the BLASFEO wiki at https://blasfeo.syscop.de, including more detailed installation instructions, examples, and a rich collection of benchmarks and comparisions.

More scientific information can be found in:

Notes

  • BLASFEO is released under the 2-Clause BSD License.

  • 06-01-2018: BLASFEO employs now a new naming convention. The bash script change_name.sh can be used to automatically change the source code of any software using BLASFEO to adapt it to the new naming convention.