Trying to create a dendrogram with this found code block, and it works up until the call:
r('mt_dist <- dist(t(mt))')
then spouts the error:
RPy_RException: Error in dist(t(mt)) : (list) object cannot be coerced to type 'double'
up until that point it was looking good ... I'm probably missing something really simple
#importing modules from numpy import array from random import normalvariate,shuffle from rpy import r # creating a random matrix # creating it with different 'samples' in different columns mt =  for l in range(20): #20 lines line =  means = range(1,9) for c in range(8): # 8 columns #Colum 1: mean 1; Column 2: mean 2.... values normally distributed s.d. = 0.5 line.append(normalvariate(means.pop(), 0.5)) mt.append(line) # once we have a matrix, transform it in an array mt_array = array(mt) # The R work # Pass the array to 'mt' variable in R r.assign("mt", mt_array) # manipulate R via r('command') r('print(mt)') #print the matrix 'mt' to check values #The clustering process #Calculating distances with 'dist' #'dist' calculates distance among lines, so I am transposing (with t()) in order to have my columns clustered ## I guess 'dist' uses euclidian distance as default r('mt_dist <- dist(t(mt))') # hclust does the clustering with upgma as default r('result = hclust(mt_dist)') # directs the output to a determinde file r('png("output_file.png")') # plot the result labels = ["sample A", "sample B","sample C", "sample D","sample E", "sample F", "sample G", "sample H"] r.assign("labels", labels) r('plot(result, labels=labels, main="My title")') # 'close' you output r('dev.off()')