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I'm trying to test several combinations of multilayer networks, but the Network configuration Builder doesn't allow adding or removing layers after the build.

If someone can give me a hint, thanks in advance.

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  • The transfer learning api is what you're looking for: github.com/eclipse/deeplearning4j-examples/tree/master/… Mar 28, 2021 at 23:04
  • Probably I didn't explain myself correctly. Based on the number of inputs and training rows, I want to create each layer with certain parameters. That configuration of each layer will be different, amount of neurons, nr of layers, etc. I don't know how can I decouple the Builder to do this separately in a for loop and add it again to the MultiLayerNetworkConfiguration. Sorry, but the example you gave, I can't relate to this. Thank you anyway. :/ @AdamGibson Mar 29, 2021 at 13:19
  • @AdamGibson For example I can do this in DeepNetts like this: nc.neuralNet = FeedForwardNetwork.builder() .addInputLayer(d.inputs[0].length) -----> .addFullyConnectedLayers(nc.hiddenActivationType, hiddenLayers.stream().mapToInt(i -> i).toArray()) .addOutputLayer(d.outputs[0].length, nc.outputActivationType) ..... .build(); How can I do something similar with DL4J? Mar 29, 2021 at 13:23

1 Answer 1

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I got it!

This did the trick .list(layers.toArray(new DenseLayer[layers.size()]))

System.out.println("CREATING NETWORK.");
        List<Integer> hiddenLayers = NetworkSizeCalculator.getNetwork(nc.networkStructure, d.inputs[0].length, d.inputs.length);
        List<DenseLayer> layers=new ArrayList<>();
        for(int i=0;i<hiddenLayers.size();i++){
            layers.add(new DenseLayer.Builder()
                    .nIn(hiddenLayers.get(i))
                    .nOut(hiddenLayers.get(i))
                    .weightInit(WeightInit.XAVIER)
                    .activation((Activation) nc.hiddenActivationType)
                    .build());
        }

        MultiLayerConfiguration configuration = new NeuralNetConfiguration.Builder()
                .seed(randomSeed)
                .updater(t.getOptimizer())
                .activation(nc.hiddenActivationType)
                .weightInit(WeightInit.XAVIER)
                .list(layers.toArray(new DenseLayer[layers.size()]))
                .layer(hiddenLayers.size(),new OutputLayer.Builder()
                        .nIn(d.inputs[0].length)
                        .nOut(d.outputs[0].length)
                        .weightInit(WeightInit.XAVIER)
                        .activation((Activation) nc.outputActivationType)
                        .lossFunction(LossFunctions.LossFunction.MSE)
                        .build()).build();

        MultiLayerNetwork network = new MultiLayerNetwork(configuration);

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