package org.gd.spark.opendl.example.spark;
import java.util.ArrayList;
import java.util.List;
import org.apache.log4j.Logger;
import org.apache.spark.api.java.JavaRDD;
import org.apache.spark.api.java.JavaSparkContext;
import org.apache.spark.storage.StorageLevel;
import org.gd.spark.opendl.downpourSGD.SGDTrainConfig;
import org.gd.spark.opendl.downpourSGD.SampleVector;
import org.gd.spark.opendl.downpourSGD.TiedWeightLayer.AutoEncoder;
import org.gd.spark.opendl.downpourSGD.train.DownpourSGDTrain;
import org.gd.spark.opendl.example.ClassVerify;
import org.gd.spark.opendl.example.DataInput;
public class dATest {
private static final Logger logger = Logger.getLogger(dATest.class);
public static void main(String[] args) {
try {
int x_feature = 784;
int y_feature = 10;
int n_hidden = 160;
List<SampleVector> samples = DataInput.readMnist("mnist_784_1000.txt", x_feature, y_feature);
List<SampleVector> trainList = new ArrayList<SampleVector>();
List<SampleVector> testList = new ArrayList<SampleVector>();
DataInput.splitList(samples, trainList, testList, 0.7);
JavaSparkContext context = SparkContextBuild.getContext(args);
JavaRDD<SampleVector> rdds = context.parallelize(trainList);
rdds.count();
logger.info("RDD ok.");
AutoEncoder da = new AutoEncoder(x_feature, n_hidden);
SGDTrainConfig config = new SGDTrainConfig();
config.setUseCG(true);
config.setDoCorruption(true);
config.setCorruption_level(0.25);
config.setCgEpochStep(50);
config.setCgTolerance(0);
config.setCgMaxIterations(10);
config.setMaxEpochs(50);
config.setNbrModelReplica(4);
config.setMinLoss(0.01);
config.setUseRegularization(true);
config.setMrDataStorage(StorageLevel.MEMORY_ONLY());
config.setPrintLoss(true);
config.setLossCalStep(3);
logger.info("Start to train dA.");
DownpourSGDTrain.train(da, rdds, config);
double[] reconstruct_x = new double[x_feature];
double totalError = 0;
for(SampleVector test : testList) {
da.reconstruct(test.getX(), reconstruct_x);
totalError += ClassVerify.squaredError(test.getX(), reconstruct_x);
}
logger.info("Mean square error is " + totalError / testList.size());
} catch(Throwable e) {
logger.error("", e);
}
}
}