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I am using scikit-learn SVC to classify some data. I would like to increase the training performance.

clf = svm.SVC(cache_size=4000, probability=True, verbose=True)

Since sckikit-learn interfaces with libsvm and libsvm uses OpenMp I was hoping that:


would run on multiple cores. Unfortunately this did not help.

Any Ideas?


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Are you sure that it uses OpenMP or it might use OpenMP (but was not compiled so)? – Hristo Iliev Nov 7 '12 at 16:43
I am not sure if scikit-learn compiles against openmp. github.com/scikit-learn/scikit-learn/blob/master/sklearn/svm/… suggest not – locojay Nov 7 '12 at 16:45
I don't see any OpenMP pragma directives in the source. Only the libsvm wrapper seems to include omp.h but this looks more like template code as OpenMP is not used at all. – Hristo Iliev Nov 7 '12 at 17:11
libsvm (version 3.1) does not use OpenMP - it only suggests how OpenMP can be supported (see FAQ and search for "pragma omp"). – Peter Prettenhofer Nov 7 '12 at 20:53
up vote 8 down vote accepted

There is no OpenMP support in the current binding for libsvm in scikit-learn. However it is very likely that if you have performance issues with sklearn.svm.SVC should you use a more scalable model instead.

If your data is high dimensional it might be linearly separable. In that case it is advised to first try simpler models such as naive bayes models or sklearn.linear_model.Perceptron that are known to be very speedy to train. You can also try sklearn.linear_model.LogisticRegression and sklearn.svm.LinearSVC both implemented using liblinear that is more scalable than libsvm albeit less memory efficients than other linear models in scikit-learn.

If your data is not linearly separable, you can try sklearn.ensemble.ExtraTreesClassifier (adjust the n_estimators parameter to trade-off training speed vs. predictive accuracy).

Alternatively you can try to approximate a RBF kernel using the RBFSampler transformer of scikit-learn + fitting a linear model on the output:


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thanks. my data only has 3 features. 220000 samples and 3 targets. libsvm works well on smaller samples (30k). I ended up using a Random Forest which has n_job since the data is not linearly separable. – locojay Nov 7 '12 at 20:40
The SMO optimizer of libsvm has a complexity between n_samples^2 and n_samples^3 hence is not scalable to more than a couple 10k samples in practice. Random Forests and Extremely Randomized Trees (which is a Random Forests variant that generally yields slightly better results) are more scalable as long as the data fits in memory (for scikit-learn). – ogrisel Nov 7 '12 at 21:46
Larger problems will often require out-of-core / streaming non-linear feature extraction followed by a linear models incrementally updated possibly using averaging with several machines. It is also be possible to train trees on random subsamples of the dataset in parallel on separate machines and aggregate the trees as a single random forest model (bagging). But this is not yet implemented in scikit-learn. – ogrisel Nov 7 '12 at 21:51

If you are using cross validation or grid search in scikit-learn then you can use multiple CPUs with the n_jobs parameter:

GridSearchCV(..., n_jobs=-1)
cross_val_score(..., n_jobs=-1)

Note that cross_val_score only needs a job per forld so if your number of folds is less than your CPUs you still won't be using all of your processing power.

LibSVM can use OpenMP if you can compile it and use it directly as per these instructions in the LibSVM FAQ. So you could export your scaled data in LibSVM format (here's a StackOverflow question on how to do that) and use LibSVM directly to train your data. But that will only be of benefit if you're grid searching or wanting to know accuracy scores, as far as I know the model LibSVM creates cannot be used in scikit-learn.

There is also a GPU accelerated version of LibSVM which I have tried and is extremely fast, but is not based on the current LibSVM version. I have talked to the developers and they say they hope to release a new version soon.

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Although this thread is a year+ old, I though it is worth answering.

I wrote a patch for openmp support on scikit-learn for both libsvm and liblinear (linearSVC) that's available here - https://github.com/fidlr/sklearn-openmp.

It is based on libsvm's FAQ on how to add OpenMP support, and the multi-core implementation of liblinear.

Just clone the repo and run sklearn-build-openmp.sh to apply the patch and build it.

Timing OMP_NUM_THREADS=4 python plot_permutation_test_for_classification.py:

  • svmlib with linear kernel timinig dropped by a factor of 2.3
  • RBF kernel - same.
  • Liblinear with 4 thread dropped by x1.6

Details about and usage information can be found here - http://fidlr.org/post/137303264732/scikit-learn-017-with-libsvm-openmp-support

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While this link may answer the question, it is better to include the essential parts of the answer here and provide the link for reference. Link-only answers can become invalid if the linked page changes. - From Review – GoBrewers14 Jan 16 at 6:23
Hope this is better – fidlr Jan 16 at 19:15

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