neocortex

Run trained deep neural networks in the browser or node.js

  • Owner: scienceai/neocortex
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PROJECT PAGE AND EXAMPLES

Run trained deep neural networks in the browser or node.js. Currently supports serialization from trained Keras models (note: not up-to-date with the current Keras API).

build status
npm version

Background

Training deep neural networks on any meaningful dataset requires massive computational resources and lots and lots of time. However, the forward-pass prediction phase is relatively cheap - typically there is no backpropagation, computational graphs, loss functions, or optimization algorithms to worry about.

What do you do when you have a trained deep neural network and now wish to use it to power a part of your client-facing web application? Traditionally, you would deploy your model on a server and call it from your web application through an API. But what if you can deploy it in the browser alongside the rest of your webapp? Computation would be offloaded entirely to your end-user!

Perhaps most users will not be able to run billion-parameter networks in their browsers quite yet, but smaller networks are certainly within the realm of possibility.

The goal of this project is to provide a lightweight javascript library that can take a serialized Keras, Caffe, Torch or [insert other deep learning framework here] model, together with pre-trained weights, pack it in your webapp, and be up and running. Currently supports serialization from trained Keras models.

Examples

  • MNIST multi-layer perceptron / src / demo

  • CIFAR-10 VGGNet-like convolutional neural network / src / demo

  • LSTM recurrent neural network for classifying astronomical object names / src / demo

You can also run the examples on your local machine at http://localhost:8000:

$ npm run examples-server

Usage

See the source code of the examples above. In particular, the CIFAR-10 example demonstrates a multi-threaded implementation using Web Workers.

In the browser:

<script src="neocortex.min.js"></script>
<script>
  // use neural network here
</script>

In node.js:

$ npm install neocortex-js
import NeuralNet from 'neocortex-js';

The core steps involve:

  1. Instantiate neural network class
let nn = new NeuralNet({
  // relative URL in browser/webworker, absolute path in node.js
  modelFilePath: 'model.json',
  arrayType: 'float64', // float64 or float32
});
  1. Load the model JSON file, then once loaded, feed input data into neural network
nn.init().then(() => {
  let predictions = nn.predict(input);
  // make use of predictions
});

Build

To build the project yourself, for both the browser (outputs to build/neocortex.min.js) and node.js (outputs to dist/):

$ npm install
$ npm run build

To build just for the browser:

$ npm run build-browser

Keras

A script to serialize a trained Keras model together with its hdf5 formatted weights is located in the utils/ folder. It currently only supports sequential models with layers listed below. Implementation of graph models is planned.

Functions and layers currently implemented are listed below. More forthcoming.

  • Activation functions: linear, relu, sigmoid, hard_sigmoid, tanh, softmax

  • Advanced activation layers: leakyReLULayer, parametricReLULayer, parametricSoftplusLayer, thresholdedLinearLayer, thresholdedReLuLayer

  • Basic layers: denseLayer, dropoutLayer, flattenLayer, mergeLayer

  • Recurrent layers: rGRULayer (gated-recurrent unit or GRU), rLSTMLayer (long short-term memory or LSTM)

  • Convolutional layers: convolution2DLayer, maxPooling2DLayer, convolution1DLayer, maxPooling1DLayer

  • Embedding layers: embeddingLayer (maps indices to corresponding embedding vectors)

  • Normalization layers: batchNormalizationLayer

Tests

$ npm test

Browser testing is planned.

Credits

Thanks to @halmos for the logo.

Citation

DOI

License

Apache 2.0

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Overview
Name With Ownerscienceai/neocortex
Primary LanguageJavaScript
Program languageJavaScript (Language Count: 3)
Platform
License:Apache License 2.0
所有者活动
Created At2015-09-19 03:09:45
Pushed At2016-11-11 02:44:47
Last Commit At2016-02-13 21:20:11
Release Count1
Last Release Name0.5.0 (Posted on )
First Release Name0.5.0 (Posted on )
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Stargazers Count275
Watchers Count16
Fork Count26
Commits Count205
Has Issues Enabled
Issues Count10
Issue Open Count6
Pull Requests Count1
Pull Requests Open Count2
Pull Requests Close Count0
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