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Theodore Vasiloudis commented on FLINK-1731: -------------------------------------------- Since the centroids will have to be broadcast to all task managers, that means that they will have to be placed inside a DataSet eventually. One approach is to use a Sequence which you then convert into a DataSet inside the algorithm, or require that the user provides a DataSet as a parameter. In GradientDescent we are using the second option, i.e. we expect a DataSet of weights, you can do the same with centroids. > Add kMeans clustering algorithm to machine learning library > ----------------------------------------------------------- > > Key: FLINK-1731 > URL: https://issues.apache.org/jira/browse/FLINK-1731 > Project: Flink > Issue Type: New Feature > Components: Machine Learning Library > Reporter: Till Rohrmann > Assignee: Peter Schrott > Labels: ML > > The Flink repository already contains a kMeans implementation but it is not > yet ported to the machine learning library. I assume that only the used data > types have to be adapted and then it can be more or less directly moved to > flink-ml. > The kMeans++ [1] and the kMeans|| [2] algorithm constitute a better > implementation because the improve the initial seeding phase to achieve near > optimal clustering. It might be worthwhile to implement kMeans||. > Resources: > [1] http://ilpubs.stanford.edu:8090/778/1/2006-13.pdf > [2] http://theory.stanford.edu/~sergei/papers/vldb12-kmpar.pdf -- This message was sent by Atlassian JIRA (v6.3.4#6332)