Aimed at the problems that the layered parallel SVM algorithm is to generate subsample sets by completely adopting the random partition method, and the distribution deviation exists in between the subsample sets and the original sample set, this paper proposes a randomoriented partition method based on distributed k-means clustering. Not that the method is used to take a layer of the training results directly as input of the next layer, but that the k-means clustering algorithm is used to cluster into the number of the next layer node clusters. Then, the paper divides each cluster samples into N parts randomly, and takes out one from each cluster reassembled into N subsample sets to next layer of training to ensure the distribution of the subsample sets similar to original sample set. The results show that this method can not only improve learning ability effectively, but also reduce the jitter of training model.