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.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: