I'm working with a dataset that is 6.4 million samples with 500 dimensions and I'm trying to group it into 200 clusters. I'm limited to 90GB of RAM and when I try to run MiniBatchKmeans from sklearn.cluster, the OS kills the process for using up too much memory.
This is the code:
data = np.loadtxt('temp/data.csv', delimiter=',') labels = np.genfromtxt('temp/labels', delimiter=',') kmeans = cluster.MiniBatchKMeans(n_clusters=numClusters, random_state=0).fit(data) predict = kmeans.predict(data) Tdata = kmeans.transform(data)
It doesn't get past clustering.