All Apps and Add-ons

Is there a way to fix the random seed used within the kmeans algorithm with reproducible clustering?

TAE
Engager

In my new dashboard, I use the Kmeans algorithm twice.  The clustering is different in each case, is there a way to fix the random seed used within the algorithm?  I want to fix the random nature of the algorithm so that I get repeatable clustering.  

 

Thank you

Labels (2)
Tags (1)
0 Karma

TAE
Engager

Sorry Everyone,

I solved the problem by "reading."  The docs say:

Each clustering may be slightly different, unless you specify the random_state parameter.

So, I used the parameter and sure enough, it worked.

Tags (1)
0 Karma
Get Updates on the Splunk Community!

Join Us for Splunk University and Get Your Bootcamp Game On!

If you know, you know! Splunk University is the vibe this summer so register today for bootcamps galore ...

.conf24 | Learning Tracks for Security, Observability, Platform, and Developers!

.conf24 is taking place at The Venetian in Las Vegas from June 11 - 14. Continue reading to learn about the ...

Announcing Scheduled Export GA for Dashboard Studio

We're excited to announce the general availability of Scheduled Export for Dashboard Studio. Starting in ...