Hi all,
Please find attached the image of benchmark results. The table in the previous mail got messed up. Thanks.



On Friday 19 September 2014 10:55 AM, Meethu Mathew wrote:
Hi all,

We have come up with an initial distributed implementation of Gaussian
Mixture Model in pyspark where the parameters are estimated using the
Expectation-Maximization algorithm.Our current implementation considers
diagonal covariance matrix for each component.
We did an initial benchmark study on a 2 node Spark standalone cluster
setup where each node config is 8 Cores,8 GB RAM, the spark version used
is 1.0.0. We also evaluated python version of k-means available in spark
on the same datasets.Below are the results from this benchmark study.
The reported stats are average from 10 runs.Tests were done on multiple
datasets with varying number of features and instances.


           Dataset            Gaussian mixture model
                       Kmeans(Python)

Instances       Dimensions      Avg time per iteration  Time for 100 iterations
        Avg time per iteration  Time for 100 iterations
0.7million      13
        7s
        12min
          13s   26min
1.8million      11
        17s
         29min     33s
         53min
10 million      16
        1.6min  2.7hr
          1.2min        2 hr


We are interested in contributing this implementation as a patch to
SPARK. Does MLLib accept python implementations? If not, can we
contribute to the pyspark component
I have created a JIRA for the same
https://issues.apache.org/jira/browse/SPARK-3588 .How do I get the
ticket assigned to myself?

Please review and suggest how to take this forward.




--

Regards,

*Meethu Mathew*

*Engineer*

*Flytxt*

Skype: meethu.mathew7

 F: +91 471.2700202

www.flytxt.com | Visit our blog <http://blog.flytxt.com/> | Follow us <http://www.twitter.com/flytxt> | _Connect on Linkedin <http://www.linkedin.com/home?trk=hb_tab_home_top>_

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