1.5 KiB
1.5 KiB
title | short_title | description | category | weight |
---|---|---|---|---|
Deeplearning4j Iterators | Iterators | Data iteration tools for loading into neural networks. | Models | 5 |
What is an iterator?
A dataset iterator allows for easy loading of data into neural networks and help organize batching, conversion, and masking. The iterators included in Eclipse Deeplearning4j help with either user-provided data, or automatic loading of common benchmarking datasets such as MNIST and IRIS.
Usage
For most use cases, initializing an iterator and passing a reference to a MultiLayerNetwork
or ComputationGraph
fit()
method is all you need to begin a task for training:
MultiLayerNetwork model = new MultiLayerNetwork(conf);
model.init();
// pass an MNIST data iterator that automatically fetches data
DataSetIterator mnistTrain = new MnistDataSetIterator(batchSize, true, rngSeed);
net.fit(mnistTrain);
Many other methods also accept iterators for tasks such as evaluation:
// passing directly to the neural network
DataSetIterator mnistTest = new MnistDataSetIterator(batchSize, false, rngSeed);
net.eval(mnistTest);
// using an evaluation class
Evaluation eval = new Evaluation(10); //create an evaluation object with 10 possible classes
while(mnistTest.hasNext()){
DataSet next = mnistTest.next();
INDArray output = model.output(next.getFeatureMatrix()); //get the networks prediction
eval.eval(next.getLabels(), output); //check the prediction against the true class
}
Available iterators
{{autogenerated}}