I already posted this in another thread but I think it fits better in this one:
Some time ago I had to optimize some linear algebra calculations/algorithms which were written in python using numpy and BLAS so I benchmarked/tested different numpy/BLAS configurations.
Specifically I tested:
- Numpy with ATLAS
- Numpy with GotoBlas2 (1.13)
- Numpy with MKL (11.1/073)
- Numpy with Accelerate Framework (Mac OS X)
I did run two different benchmarks:
- simple dot product of matrices with different sizes
- Benchmark suite which can be found here.
Here are my results:
Linux (MKL, ATLAS, No-MKL, GotoBlas2):
- OS: Ubuntu Lucid 10.4 64 Bit.
- CPU: 2 x 4 Intel(R) Xeon(R) E5504 @ 2.00GHz (8 Cores)
- RAM: 24 GB
- Intel Compiler: 11.1/073
- Scipy: 0.8
- Numpy: 1.5
Mac Book Pro (Accelerate Framework):
- OS: Mac OS X Snow Leopard (10.6)
- CPU: 1 Intel Core 2 Duo 2.93 Ghz (2 Cores)
- RAM: 4 GB
- Scipy: 0.7
- Numpy: 1.3
Mac Server (Accelerate Framework):
- OS: Mac OS X Snow Leopard Server (10.6)
- CPU: 4 X Intel(R) Xeon(R) E5520 @ 2.26 Ghz (8 Cores)
- RAM: 4 GB
- Scipy: 0.8
- Numpy: 1.5.1
Dot product benchmark
import numpy as np
a = np.random.random_sample((size,size))
b = np.random.random_sample((size,size))
System | size = 1000 | size = 2000 | size = 3000 |
netlib BLAS | 1350 ms | 10900 ms | 39200 ms |
ATLAS (1 CPU) | 314 ms | 2560 ms | 8700 ms |
MKL (1 CPUs) | 268 ms | 2110 ms | 7120 ms |
MKL (2 CPUs) | - | - | 3660 ms |
MKL (8 CPUs) | 39 ms | 319 ms | 1000 ms |
GotoBlas2 (1 CPU) | 266 ms | 2100 ms | 7280 ms |
GotoBlas2 (2 CPUs)| 139 ms | 1009 ms | 3690 ms |
GotoBlas2 (8 CPUs)| 54 ms | 389 ms | 1250 ms |
Mac OS X (1 CPU) | 143 ms | 1060 ms | 3605 ms |
Mac Server (1 CPU)| 92 ms | 714 ms | 2130 ms |
For additional information about the benchmark suite see here.
System | eigenvalues | svd | det | inv | dot |
netlib BLAS | 1688 ms | 13102 ms | 438 ms | 2155 ms | 3522 ms |
ATLAS (1 CPU) | 1210 ms | 5897 ms | 170 ms | 560 ms | 893 ms |
MKL (1 CPUs) | 691 ms | 4475 ms | 141 ms | 450 ms | 736 ms |
MKL (2 CPUs) | 552 ms | 2718 ms | 96 ms | 267 ms | 423 ms |
MKL (8 CPUs) | 525 ms | 1679 ms | 60 ms | 137 ms | 197 ms |
GotoBlas2 (1 CPU) | 2124 ms | 4636 ms | 147 ms | 456 ms | 743 ms |
GotoBlas2 (2 CPUs)| 1560 ms | 3278 ms | 116 ms | 295 ms | 460 ms |
GotoBlas2 (8 CPUs)| 741 ms | 2914 ms | 82 ms | 262 ms | 192 ms |
Mac OS X (1 CPU) | 948 ms | 4339 ms | 151 ms | 318 ms | 566 ms |
Mac Server (1 CPU)| 1033 ms | 3645 ms | 99 ms | 232 ms | 342 ms |
Installation of MKL included installing the complete Intel Compiler Suite which is pretty straight forward. However because of some bugs/issues configuring and compiling numpy with MKL support was a bit of a hassle.
GotoBlas2 is a small package which can be easily compiled as a shared library. However because of a bug you have to re-create the shared library after building it in order to use it with numpy.
In addition to this building it for multiple target plattform didn't work for some reason. So I had to create an .so file for each platform for which i want to have an optimized libgoto2.so file.
If you install numpy from Ubuntu's repository it will automatically install and configure numpy to use ATLAS. Installing ATLAS from source can take some time and requires some additional steps (fortran, etc).
If you install numpy on a Mac OS X machine with Fink or Mac Ports it will either configure numpy to use ATLAS or Apple's Accelerate Framework.
You can check by either running ldd on the numpy.core._dotblas file or calling numpy.show_config().
MKL performs best closely followed by GotoBlas2.
In the eigenvalue test GotoBlas2 performs surprisingly worse than expected. Not sure why this is the case.
Apple's Accelerate Framework performs really good especially in single threaded mode (compared to the other BLAS implementations).
Both GotoBlas2 and MKL scale very well with number of threads. So if you have to deal with big matrices running it on multiple threads will help a lot.
In any case don't use the default netlib blas implementation because it is way too slow for any serious computational work.
On our cluster I also installed AMD's ACML and performance was similar to MKL and GotoBlas2. I don't have any numbers tough.
I personally would recommend to use GotoBlas2 because it's easier to install and it's free.
If you want to code in C++/C also check out Eigen3 which is supposed to outperform MKL/*GotoBlas2* in some cases and is also pretty easy to use.