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tSNE for TensorFlow.js

This library contains a improved tSNE implementation that runs in the browser.

Installation & Usage

You can use tfjs-tsne via a script tag or via NPM

Script tag

To use tfjs-tsne via script tag you need to load tfjs first. The following tags can be put into the head section of your html page to load the library.

<script src="https://cdn.jsdelivr.net/npm/@tensorflow/tfjs@0.14.1"></script>
<script src="https://cdn.jsdelivr.net/npm/@tensorflow/tfjs-tsne"></script>

This library will create a tsne variable on the global scope. You can then do the following

// Create some data
const data = tf.randomUniform([2000,10]);

// Get a tsne optimizer
const tsneOpt = tsne.tsne(data);

// Compute a T-SNE embedding, returns a promise.
// Runs for 1000 iterations by default.
tsneOpt.compute().then(() => {
  // tsne.coordinate returns a *tensor* with x, y coordinates of
  // the embedded data.
  const coordinates = tsneOpt.coordinates();
  coordinates.print();
}) ;

Via NPM

yarn add @tensorflow/tfjs-tsne

or

npm install @tensorflow/tfjs-tsne

Then

import * as tsne from '@tensorflow/tfjs-tsne';

// Create some data
const data = tf.randomUniform([2000,10]);

// Initialize the tsne optimizer
const tsneOpt = tsne.tsne(data);

// Compute a T-SNE embedding, returns a promise.
// Runs for 1000 iterations by default.
tsneOpt.compute().then(() => {
  // tsne.coordinate returns a *tensor* with x, y coordinates of
  // the embedded data.
  const coordinates = tsneOpt.coordinates();
  coordinates.print();
}) ;

API

tsne.tsne(data: tf.Tensor2d, config?: TSNEConfiguration)

Creates and returns a TSNE optimizer.

.compute(iterations: number): Promise<void>

The most direct way to get a tsne projection. Automatically runs the knn preprocessing and the tsne optimization. Returns a promise to indicate when it is done.

.iterateKnn(iterations: number): Promise<void>

When running tsne iteratively (see section below). This runs runs the knn preprocessing for the specified number of iterations.

.iterate(iterations: number): Promise<void>

When running tsne iteratively (see section below). This runs the tsne step for the specified number of iterations.

.coordinates(normalize: boolean): tf.Tensor

Gets the current x, y coordinates of the projected data as a tensor. By default the coordinates are normalized to the range 0-1.

.coordsArray(normalize: boolean): Promise<number[][]>

Gets the current x, y coordinates of the projected data as a JavaScript array. By default the coordinates are normalized to the range 0-1. This function is async and returns a promise.

Computing tSNE iteratively

While the .compute method provides the most direct way to get an embedding. You can also compute the embedding iteratively and have more control over the process.

The first step is computing the KNN graph using iterateKNN.

Then you can compute the tSNE iteratively and examine the result as it evolves.

The code below shows what that would look like

const data = tf.randomUniform([2000,10]);
const tsne = tf_tsne.tsne(data);

async function iterativeTsne() {
  // Get the suggested number of iterations to perform.
  const knnIterations = tsne.knnIterations();
  // Do the KNN computation. This needs to complete before we run tsne
  for(let i = 0; i < knnIterations; ++i){
    await tsne.iterateKnn();
    // You can update knn progress in your ui here.
  }

  const tsneIterations = 1000;
  for(let i = 0; i < tsneIterations; ++i){
    await tsne.iterate();
    // Draw the embedding here...
    const coordinates = tsne.coordinates();
    coordinates.print();
  }
}

iterativeTsne();

Example

We also have an example of using this library to perform TSNE on the MNIST dataset here.

Limitations

This library requires WebGL 2 support and thus will not work on certain devices, mobile devices especially. Currently it best works on desktop devices.

From our current experiments we suggest limiting the data size passed to this implementation to data with a shape of [10000,100], i.e. up to 10000 points with 100 dimensions each. You can do more but it might slow down.

Above a certain number of data points the computation of the similarities becomes a bottleneck, a problem that we plan to address in the future.

Implementation

This work makes use of linear tSNE optimization for the optimization of the embedding and an optimized brute force computation of the kNN graph in the GPU.

Reference

Reference to cite if you use this implementation in a research paper:

@article{TFjs:tSNE,
  author = {Nicola Pezzotti and Alexander Mordvintsev and Thomas Hollt and Boudewijn P. F. Lelieveldt and Elmar Eisemann and Anna Vilanova},
  title = {Linear tSNE Optimization for the Web},
  year = {2018},
  journal={arXiv preprint arXiv:1805.10817},
}