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I am developing an app on App Engine and am using kmeans2 from SciPy.

When the cluster runs, I get this error:

Exceeded soft private memory limit with 159.852 MB after servicing 1 requests total

Here is what I'm doing, color_data will be around 5 million x,y,z points:

def _cluster(color_data, k):
  """ Clusters colors and return top k 

          TYPE: list
          DESC: The pixel rgb values to cluster
          TYPE: int
          DESC: number of clusters to find in the colors

          TYPE: list
          DESC: A list of rgb centroids for each color cluster

  # make rgbs into x,y,z points
  x,y,z = [],[],[]
  for color in color_data:

  # averaged_colors are points at center of color clusters
  # labels are cluster numbers for each point
  averaged_colors, labels = kmeans2(array(zip(x,y,z)), k, iter=10)

  # get count of nodes per cluster
  frequencies = {}
  for i in range(k):
    frequencies[i] = labels.tolist().count(i)

  # sort labels on frequency
  sorted_labels = sorted(frequencies.iteritems(), key=itemgetter(1))

  # sort colors on label they belong to
  sorted_colors = []
  for l in sorted_labels:

  return sorted_colors

How can I do this in under 128MB of memory?

EDIT: On my local machine, running my app shows ~500 MB of memory being used in my Activity Monitor

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I believe Mini-Batch K-means implementation in sklearn scikit-learn.org/stable/modules/clustering.html is more efficient in time and space; however, it is less accurate. –  Akavall Jul 17 '13 at 2:22
You need to get below 128MB, F1 instances will let you peak for short periods but not for long and will still run into problems. See developers.google.com/appengine/docs/adminconsole/… –  Tim Hoffman Jul 17 '13 at 2:28
MiniBatchKMeans only saves me 20 MB, which leaves me at ~480 MB on my local machine. Still way to much –  Michael Johnston Jul 17 '13 at 5:43
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2 Answers

Don't use all pixels.

K-Means will usually return an almost identical result if you only use 10% or less of the pixels. Because it computes means, and the mean doesn't change much anymore, if you add more information, unless the data is distributed differently.

Only using 10% of the pixels should make your application use much less memory.

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Do you have a suggestion on which 10% to use? A random sample? Every 10th pixel? –  Michael Johnston Jul 17 '13 at 21:38
A true random sample would obviously be better, but random number generation may be too slow for your use case. –  Anony-Mousse Jul 19 '13 at 8:04
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If you can't decrease the sustained memory usage of your operations, you should look for this answer for advice on increasing your memory allotment inside apps or change to another provider. For $20/ month this is a simple request of a rackspace server, although by definition it's closer to the metal and requires more setup.

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