I am trying to install numpy with OpenBLAS , however I am at loss as to how the site.cfg file needs to be written.

When the installation procedure was followed the installation completed without errors, however there is performance degradation on increasing the number of threads used by OpenBLAS from 1 (controlled by the environment variable OMP_NUM_THREADS).

I am not sure if the OpenBLAS integration has been perfect. Could any one provide a site.cfg file to achieve the same.

P.S.: OpenBLAS integration in other toolkits like Theano, which is based on Python, provides substantial performance boost on increasing the number of threads, on the same machine.

  • When you say that there was a performance degradation, are you sure that the problem was big enough to warrant the additional threads? For too small problems you will cause performance degradation when using extra threads, and I don't know if openblas is smart enough to only use extra threads when they are useful. – DaveP Jul 12 '12 at 7:54
  • In order to check for variation of performance with the size of the problem I tried using the numpy.linalg.svd function on randomly generated matrices of various sizes, (100x100, 100x1000, 1000x1000, 1000x10000,10000x10000) but in all these cases the best execution times are achieved with single thread in openblas. Even for heavy computation load (e.g. 10000x10000 matrix SVD) the single thread takes 5000 secs while 3 threads take 6000 seconds. This worries me a bit, I just want to check if the openblas integration is right. – Vijay Jul 12 '12 at 19:48
up vote 85 down vote accepted
+100

I just compiled numpy inside a virtualenv with OpenBLAS integration, and it seems to be working OK.

This was my process:

  1. Compile OpenBLAS:

    $ git clone https://github.com/xianyi/OpenBLAS
    $ cd OpenBLAS && make FC=gfortran
    $ sudo make PREFIX=/opt/OpenBLAS install
    

    If you don't have admin rights you could set PREFIX= to a directory where you have write privileges (just modify the corresponding steps below accordingly).

  2. Make sure that the directory containing libopenblas.so is in your shared library search path.

    • To do this locally, you could edit your ~/.bashrc file to contain the line

      export LD_LIBRARY_PATH=/opt/OpenBLAS/lib:$LD_LIBRARY_PATH
      

      The LD_LIBRARY_PATH environment variable will be updated when you start a new terminal session (use $ source ~/.bashrc to force an update within the same session).

    • Another option that will work for multiple users is to create a .conf file in /etc/ld.so.conf.d/ containing the line /opt/OpenBLAS/lib, e.g.:

      $ sudo sh -c "echo '/opt/OpenBLAS/lib' > /etc/ld.so.conf.d/openblas.conf"
      

    Once you are done with either option, run

    $ sudo ldconfig
    
  3. Grab the numpy source code:

    $ git clone https://github.com/numpy/numpy
    $ cd numpy
    
  4. Copy site.cfg.example to site.cfg and edit the copy:

    $ cp site.cfg.example site.cfg
    $ nano site.cfg
    

    Uncomment these lines:

    ....
    [openblas]
    libraries = openblas
    library_dirs = /opt/OpenBLAS/lib
    include_dirs = /opt/OpenBLAS/include
    ....
    
  5. Check configuration, build, install (optionally inside a virtualenv)

    $ python setup.py config
    

    The output should look something like this:

    ...
    openblas_info:
      FOUND:
        libraries = ['openblas', 'openblas']
        library_dirs = ['/opt/OpenBLAS/lib']
        language = c
        define_macros = [('HAVE_CBLAS', None)]
    
      FOUND:
        libraries = ['openblas', 'openblas']
        library_dirs = ['/opt/OpenBLAS/lib']
        language = c
        define_macros = [('HAVE_CBLAS', None)]
    ...
    

    Installing with pip is preferable to using python setup.py install, since pip will keep track of the package metadata and allow you to easily uninstall or upgrade numpy in the future.

    $ pip install .
    
  6. Optional: you can use this script to test performance for different thread counts.

    $ OMP_NUM_THREADS=1 python build/test_numpy.py
    
    version: 1.10.0.dev0+8e026a2
    maxint:  9223372036854775807
    
    BLAS info:
     * libraries ['openblas', 'openblas']
     * library_dirs ['/opt/OpenBLAS/lib']
     * define_macros [('HAVE_CBLAS', None)]
     * language c
    
    dot: 0.099796795845 sec
    
    $ OMP_NUM_THREADS=8 python build/test_numpy.py
    
    version: 1.10.0.dev0+8e026a2
    maxint:  9223372036854775807
    
    BLAS info:
     * libraries ['openblas', 'openblas']
     * library_dirs ['/opt/OpenBLAS/lib']
     * define_macros [('HAVE_CBLAS', None)]
     * language c
    
    dot: 0.0439578056335 sec
    

There seems to be a noticeable improvement in performance for higher thread counts. However, I haven't tested this very systematically, and it's likely that for smaller matrices the additional overhead would outweigh the performance benefit from a higher thread count.

  • 4
    I apply what you did bu tending with foollowing error at your test script /linalg/lapack_lite.so: undefined symbol: zgelsd_ – erogol Jan 30 '14 at 17:47
  • 1
    I have following line even I do strictly what you typed above answer. libopenblas.so.0 => /usr/lib/libopenblas.so.0 (0x00007f77e08fc000) – erogol Jan 30 '14 at 18:06
  • One more question. Is openBlas depended to OpenMPI or using it increases the performance? – erogol Jan 30 '14 at 22:54
  • 1
    In 2015, I had a few problems with the suggested steps here. I found this to work better. – Felipe Almeida Jun 25 '15 at 4:27
  • 2
    @Afshin - If not a sudo user, best thing it to alter the first step sudo make PREFIX=/opt/OpenBLAS install to use a prefix with a location in your own home directory (e.g. make PREFIX=/home/your_username/my_software/), which then should allow you to run the ldconfig command for your own files. – n1k31t4 Apr 16 '17 at 5:21

Just in case you are using ubuntu or mint, you can easily have openblas linked numpy by installing both numpy and openblas via apt-get as

sudo apt-get install numpy libopenblas-dev

On a fresh docker ubuntu, I tested the following script copied from the blog post "Installing Numpy and OpenBLAS"

import numpy as np
import numpy.random as npr
import time

# --- Test 1
N = 1
n = 1000

A = npr.randn(n,n)
B = npr.randn(n,n)

t = time.time()
for i in range(N):
    C = np.dot(A, B)
td = time.time() - t
print("dotted two (%d,%d) matrices in %0.1f ms" % (n, n, 1e3*td/N))

# --- Test 2
N = 100
n = 4000

A = npr.randn(n)
B = npr.randn(n)

t = time.time()
for i in range(N):
    C = np.dot(A, B)
td = time.time() - t
print("dotted two (%d) vectors in %0.2f us" % (n, 1e6*td/N))

# --- Test 3
m,n = (2000,1000)

A = npr.randn(m,n)

t = time.time()
[U,s,V] = np.linalg.svd(A, full_matrices=False)
td = time.time() - t
print("SVD of (%d,%d) matrix in %0.3f s" % (m, n, td))

# --- Test 4
n = 1500
A = npr.randn(n,n)

t = time.time()
w, v = np.linalg.eig(A)
td = time.time() - t
print("Eigendecomp of (%d,%d) matrix in %0.3f s" % (n, n, td))

Without openblas the result is:

dotted two (1000,1000) matrices in 563.8 ms
dotted two (4000) vectors in 5.16 us
SVD of (2000,1000) matrix in 6.084 s
Eigendecomp of (1500,1500) matrix in 14.605 s

After I installed openblas with apt install openblas-dev, I checked the numpy linkage with

import numpy as np
np.__config__.show()

and the information is

atlas_threads_info:
  NOT AVAILABLE
openblas_info:
  NOT AVAILABLE
atlas_blas_info:
  NOT AVAILABLE
atlas_3_10_threads_info:
  NOT AVAILABLE
blas_info:
    library_dirs = ['/usr/lib']
    libraries = ['blas', 'blas']
    language = c
    define_macros = [('HAVE_CBLAS', None)]
mkl_info:
  NOT AVAILABLE
atlas_3_10_blas_threads_info:
  NOT AVAILABLE
atlas_3_10_blas_info:
  NOT AVAILABLE
openblas_lapack_info:
  NOT AVAILABLE
lapack_opt_info:
    library_dirs = ['/usr/lib']
    libraries = ['lapack', 'lapack', 'blas', 'blas']
    language = c
    define_macros = [('NO_ATLAS_INFO', 1), ('HAVE_CBLAS', None)]
blas_opt_info:
    library_dirs = ['/usr/lib']
    libraries = ['blas', 'blas']
    language = c
    define_macros = [('NO_ATLAS_INFO', 1), ('HAVE_CBLAS', None)]
atlas_info:
  NOT AVAILABLE
blas_mkl_info:
  NOT AVAILABLE
lapack_mkl_info:
  NOT AVAILABLE
atlas_3_10_info:
  NOT AVAILABLE
lapack_info:
    library_dirs = ['/usr/lib']
    libraries = ['lapack', 'lapack']
    language = f77
atlas_blas_threads_info:
  NOT AVAILABLE

It doesn't show linkage to openblas. However, the new result of the script shows that numpy must have used openblas:

dotted two (1000,1000) matrices in 15.2 ms
dotted two (4000) vectors in 2.64 us
SVD of (2000,1000) matrix in 0.469 s
Eigendecomp of (1500,1500) matrix in 2.794 s

Here's a simpler approach than @ali_m's answer and it works on macOS.

  1. Install a gfortran compiler if you don't have one. E.g. using homebrew on macOS:

    $ brew install gcc
    
  2. Compile OpenBLAS from source [installing a release should also work unless you need unreleased bug fixes]:

    $ git clone https://github.com/xianyi/OpenBLAS
    $ cd OpenBLAS && make FC=gfortran
    $ sudo make PREFIX=/opt/OpenBLAS install
    

    If you don't/can't sudo, set PREFIX= to another directory and modify the path in the next step.

    OpenBLAS does not need to be on the compiler include path or the linker library path.

  3. Download https://github.com/numpy/numpy/blob/master/site.cfg.example to ~/.numpy-site.cfg, uncomment these lines, and edit them to give the PREFIX path you used in step 2:

    [openblas]
    libraries = openblas
    library_dirs = /opt/OpenBLAS/lib
    include_dirs = /opt/OpenBLAS/include
    
  4. pip-install numpy and scipy from source (preferably into a virtualenv) without manually downloading them [you can also specify the release versions]:

    pip install numpy scipy --no-binary numpy,scipy
    

See the other answers for ways to test it.

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