0.2.0 • Published 5 years ago

tfjs-data-mnist v0.2.0

Weekly downloads
2
License
Apache-2.0
Repository
github
Last release
5 years ago

Dataset API (tfjs-data) for MNIST

This package provides the Dataset API for MNIST dataset. It is built using @tensorflow/tfjs-data package (which is now included in @tensorflow/tfjs union package) that provides a uniform and consistent way to access various datasets.

Installation

npm install tfjs-data-mnist

Usage

// get the dataset
const ds = await MNISTDataset.create();

// there are 2 properties in ds (testDataset and trainDataset)

// get the iterator for testDataset
const it = await ds.testDataset.iterator();

// iterate by invoking next
const dataElement =  await it.next();

// dataElement.done === true => there are no more elements 

// dataElement.value is **TensorContainer** of type [feature, label]
// where feature and label are of type Tensor1D
//
// feature is Tensor1D with shape [784]
// label is Tensor1D with shape [10]
//
//
// label is actually a one-hot encoded vector

// how to get the feature and label
const feature = dataElement.value[0] as tfjs.Tensor;
const label = dataElement.value[1] as tfjs.Tensor;

// The nice thing about dataset API is that you get
// lot of operations such as suffle, repeat, take etc
// for free

// Here is an example to first shuffle the dataset
// and then take only first 5 samples

const shuffled5 = await ds.testDataset.shuffle(10).take(5).iterator();

// You can also pass dataset to train the model
await model.fitDataset(ds.trainDataset.batch(32), {
    epochs: 1,
    callbacks: {
      onBatchEnd: async (batch: number, logs?: tf.Logs) => {
        batchProgressEl.innerText =
            `${batch} - ${logs['loss']} -  ${logs['acc']}`;
      },
      onEpochEnd: async (epoch: number, logs?: tf.Logs) => {
        epochEndResultEl.innerText =
            `${epoch} - ${logs['loss']} -  ${logs['acc']}`;
      }
    }
  });

Examples

Running the samples

# do npm install at the root of this directory
npm install

# install peer dependnencies
npm install @tensorflow/tfjs-core @tensorflow/tfjs-data --no-save

# change directory into example
cd examples

# do npm install in example
npm install

# Run a basic example that shows
# how to use the api of Dataset
npm run basic

# Another example is to train a model
# where I use fitDataset api that takes Dataset
# as an input
npm run train
0.2.0

5 years ago

0.1.2

5 years ago

0.1.1

5 years ago

0.1.0

5 years ago