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tf-kmeans-node

0.1.0
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  • License MIT

A Library for Calculating K-Means using Tensorflow, add save model function, only on nodejs

Package Exports

  • tf-kmeans-node
  • tf-kmeans-node/dist/index.js

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Readme

TF-KMeans

Description

A Simple JavaScript Library to make it easy for people to use KMeans algorithms with Tensorflow JS.

The library was born out of another project in which except KMeans, our code completely depended on TF.JS

As such, moving to TF.JS helped standardise our code base substantially and reduce dependency on other libraries

Sample Code

 const KMeans = require("tf-kmeans");
 const tf = require("@tensorflow/tfjs");
 const kmeans = new KMeans.default({
  k: 2,
  maxIter: 30,
  distanceFunction: KMeans.default.EuclideanDistance
 });
 const dataset = tf.tensor([[2, 2, 2], [5, 5, 5], [3, 3, 3], [4, 4, 4], [7, 8, 7]]);
 const predictions = kmeans.Train(
  dataset
 );

 console.log("Assigned To ", predictions.arraySync());
 console.log("Centroids Used are ", kmeans.Centroids().arraySync());
 console.log("Prediction for Given Value is");
 kmeans.Predict(tf.tensor([2, 3, 2])).print();

You can use the Asynchronous TrainAsync if you want to use an asynchronous callback function

 const kmeans = new KMeans.default({
  k: 3,
  maxIter: 30,
  distanceFunction: KMeans.default.EuclideanDistance
 });
 const dataset = tf.tensor([[2, 2, 2], [5, 5, 5], [3, 3, 3], [4, 4, 4], [7, 8, 7]]);

 console.log("\n\nAsync Test");
 const predictions = await kmeans.TrainAsync(
  dataset,
  // Called At End of Every Iteration
  // This function is Asynchronous
  async(iter, centroid, preds)=>{
   console.log("===");
   console.log("Iteration Count", iter);
   console.log("Centroid ", await centroid.array());
   console.log("Prediction ", await preds.array());
   console.log("===");
   // You could instead use TFVIS for Plotting Here
  }
 );

Functions

  1. Constructor

    Takes 3 Optional parameters

    1. k:- Number of Clusters
    2. maxIter:- Max Iterations
    3. distanceFunction:- The Distance function Used Currently only Eucledian Distance Provided
  2. train

    Takes Dataset as Parameter

Performs Training on This Dataset

Sync callback function is optional

  1. trainAsync

    Takes Dataset as Parameter

Performs Training on This Dataset

Also takes async callback function called at the end of every iteration

  1. predict

Performs Predictions on the data Provided as Input

  1. save

Save trained k-means to a json file. Pls give a '/path/to/xxx.json' into it.

PEER DEPENDENCIES

  1. TensorFlow.JS

Typings

As the code is originally written in TypeScript, Type Support is provided out of the box

Contact Me

You could contact me via LinkedIn You could file issues or add features via Pull Requests on GitHub