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K-Means Clusterring Visualizer

K-means algorithm is an iterative algorithm that tries to partition the dataset into K pre-defined distinct non-overlapping subgroups (clusters) where each data point belongs to only one group.

Created an application visualizing the K-Means CLustering using basic HTML, CSS, JS and a JS library D3JS for visualization. It takes input -> Number of data points(min-2 and max-250) and Number of clusters to be formed(min-2 and max-50).

How to use:-

  • Specify the number of data points and clusters points in appropriate text boxes.
  • Press the New button to generate new data and clusters.
  • Press the Start button to start the visualizer.
  • Press Stop to stop the visualizer at any given time.
  • Press Restart to start the visualization from beginning.

Screenshots:-