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Java example source code file (TestEarlyStoppingCompGraph.java)
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The TestEarlyStoppingCompGraph.java Java example source code
/*
*
* * Copyright 2016 Skymind,Inc.
* *
* * Licensed under the Apache License, Version 2.0 (the "License");
* * you may not use this file except in compliance with the License.
* * You may obtain a copy of the License at
* *
* * http://www.apache.org/licenses/LICENSE-2.0
* *
* * Unless required by applicable law or agreed to in writing, software
* * distributed under the License is distributed on an "AS IS" BASIS,
* * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* * See the License for the specific language governing permissions and
* * limitations under the License.
*
*/
package org.deeplearning4j.earlystopping;
import org.nd4j.linalg.dataset.api.iterator.DataSetIterator;
import org.deeplearning4j.datasets.iterator.impl.IrisDataSetIterator;
import org.deeplearning4j.earlystopping.listener.EarlyStoppingListener;
import org.deeplearning4j.earlystopping.saver.InMemoryModelSaver;
import org.deeplearning4j.earlystopping.scorecalc.DataSetLossCalculatorCG;
import org.deeplearning4j.earlystopping.termination.MaxEpochsTerminationCondition;
import org.deeplearning4j.earlystopping.termination.MaxScoreIterationTerminationCondition;
import org.deeplearning4j.earlystopping.termination.MaxTimeIterationTerminationCondition;
import org.deeplearning4j.earlystopping.termination.ScoreImprovementEpochTerminationCondition;
import org.deeplearning4j.earlystopping.trainer.EarlyStoppingGraphTrainer;
import org.deeplearning4j.earlystopping.trainer.IEarlyStoppingTrainer;
import org.deeplearning4j.nn.api.OptimizationAlgorithm;
import org.deeplearning4j.nn.conf.ComputationGraphConfiguration;
import org.deeplearning4j.nn.conf.NeuralNetConfiguration;
import org.deeplearning4j.nn.conf.Updater;
import org.deeplearning4j.nn.conf.layers.OutputLayer;
import org.deeplearning4j.nn.graph.ComputationGraph;
import org.deeplearning4j.nn.weights.WeightInit;
import org.deeplearning4j.optimize.listeners.ScoreIterationListener;
import org.junit.Test;
import org.nd4j.linalg.factory.Nd4j;
import org.nd4j.linalg.lossfunctions.LossFunctions;
import org.slf4j.Logger;
import org.slf4j.LoggerFactory;
import java.util.Map;
import java.util.concurrent.TimeUnit;
import static org.junit.Assert.*;
public class TestEarlyStoppingCompGraph {
@Test
public void testEarlyStoppingIris(){
ComputationGraphConfiguration conf = new NeuralNetConfiguration.Builder()
.optimizationAlgo(OptimizationAlgorithm.STOCHASTIC_GRADIENT_DESCENT).iterations(1)
.updater(Updater.SGD)
.weightInit(WeightInit.XAVIER)
.graphBuilder()
.addInputs("in")
.addLayer("0",new OutputLayer.Builder().nIn(4).nOut(3).lossFunction(LossFunctions.LossFunction.MCXENT).build(),"in")
.setOutputs("0")
.pretrain(false).backprop(true)
.build();
ComputationGraph net = new ComputationGraph(conf);
net.setListeners(new ScoreIterationListener(1));
DataSetIterator irisIter = new IrisDataSetIterator(150,150);
EarlyStoppingModelSaver<ComputationGraph> saver = new InMemoryModelSaver<>();
EarlyStoppingConfiguration<ComputationGraph> esConf = new EarlyStoppingConfiguration.Builder()
.epochTerminationConditions(new MaxEpochsTerminationCondition(5))
.iterationTerminationConditions(new MaxTimeIterationTerminationCondition(1, TimeUnit.MINUTES))
.scoreCalculator(new DataSetLossCalculatorCG(irisIter,true))
.modelSaver(saver)
.build();
IEarlyStoppingTrainer<ComputationGraph> trainer = new EarlyStoppingGraphTrainer(esConf,net,irisIter);
EarlyStoppingResult<ComputationGraph> result = trainer.fit();
System.out.println(result);
assertEquals(5, result.getTotalEpochs());
assertEquals(EarlyStoppingResult.TerminationReason.EpochTerminationCondition,result.getTerminationReason());
Map<Integer,Double> scoreVsIter = result.getScoreVsEpoch();
assertEquals(5,scoreVsIter.size());
String expDetails = esConf.getEpochTerminationConditions().get(0).toString();
assertEquals(expDetails, result.getTerminationDetails());
ComputationGraph out = result.getBestModel();
assertNotNull(out);
//Check that best score actually matches (returned model vs. manually calculated score)
ComputationGraph bestNetwork = result.getBestModel();
irisIter.reset();
double score = bestNetwork.score(irisIter.next());
assertEquals(result.getBestModelScore(), score, 1e-2);
}
@Test
public void testBadTuning(){
//Test poor tuning (high LR): should terminate on MaxScoreIterationTerminationCondition
Nd4j.getRandom().setSeed(12345);
ComputationGraphConfiguration conf = new NeuralNetConfiguration.Builder()
.seed(12345)
.optimizationAlgo(OptimizationAlgorithm.STOCHASTIC_GRADIENT_DESCENT).iterations(1)
.updater(Updater.SGD).learningRate(1.0) //Intentionally huge LR
.weightInit(WeightInit.XAVIER)
.graphBuilder()
.addInputs("in")
.addLayer("0", new OutputLayer.Builder().nIn(4).nOut(3).lossFunction(LossFunctions.LossFunction.MCXENT).build(), "in")
.setOutputs("0")
.pretrain(false).backprop(true)
.build();
ComputationGraph net = new ComputationGraph(conf);
net.setListeners(new ScoreIterationListener(1));
DataSetIterator irisIter = new IrisDataSetIterator(150,150);
EarlyStoppingModelSaver<ComputationGraph> saver = new InMemoryModelSaver<>();
EarlyStoppingConfiguration<ComputationGraph> esConf = new EarlyStoppingConfiguration.Builder()
.epochTerminationConditions(new MaxEpochsTerminationCondition(5000))
.iterationTerminationConditions(new MaxTimeIterationTerminationCondition(1, TimeUnit.MINUTES),
new MaxScoreIterationTerminationCondition(7.5)) //Initial score is ~2.5
.scoreCalculator(new DataSetLossCalculatorCG(irisIter, true))
.modelSaver(saver)
.build();
IEarlyStoppingTrainer trainer = new EarlyStoppingGraphTrainer(esConf,net,irisIter);
EarlyStoppingResult result = trainer.fit();
assertTrue(result.getTotalEpochs() < 5);
assertEquals(EarlyStoppingResult.TerminationReason.IterationTerminationCondition, result.getTerminationReason());
String expDetails = new MaxScoreIterationTerminationCondition(7.5).toString();
assertEquals(expDetails, result.getTerminationDetails());
assertEquals(0, result.getBestModelEpoch());
assertNotNull(result.getBestModel());
}
@Test
public void testTimeTermination(){
//test termination after max time
Nd4j.getRandom().setSeed(12345);
ComputationGraphConfiguration conf = new NeuralNetConfiguration.Builder()
.seed(12345)
.optimizationAlgo(OptimizationAlgorithm.STOCHASTIC_GRADIENT_DESCENT).iterations(1)
.updater(Updater.SGD).learningRate(1e-6)
.weightInit(WeightInit.XAVIER)
.graphBuilder()
.addInputs("in")
.addLayer("0", new OutputLayer.Builder().nIn(4).nOut(3).lossFunction(LossFunctions.LossFunction.MCXENT).build(), "in")
.setOutputs("0")
.pretrain(false).backprop(true)
.build();
ComputationGraph net = new ComputationGraph(conf);
net.setListeners(new ScoreIterationListener(1));
DataSetIterator irisIter = new IrisDataSetIterator(150,150);
EarlyStoppingModelSaver<ComputationGraph> saver = new InMemoryModelSaver<>();
EarlyStoppingConfiguration<ComputationGraph> esConf = new EarlyStoppingConfiguration.Builder()
.epochTerminationConditions(new MaxEpochsTerminationCondition(10000))
.iterationTerminationConditions(new MaxTimeIterationTerminationCondition(3, TimeUnit.SECONDS),
new MaxScoreIterationTerminationCondition(7.5)) //Initial score is ~2.5
//.scoreCalculator(new DataSetLossCalculator(irisIter, true)) //No score calculator in this test (don't need score)
.modelSaver(saver)
.build();
IEarlyStoppingTrainer trainer = new EarlyStoppingGraphTrainer(esConf,net,irisIter);
long startTime = System.currentTimeMillis();
EarlyStoppingResult result = trainer.fit();
long endTime = System.currentTimeMillis();
int durationSeconds = (int)(endTime-startTime)/1000;
assertTrue(durationSeconds >= 3);
assertTrue(durationSeconds <= 9);
assertEquals(EarlyStoppingResult.TerminationReason.IterationTerminationCondition, result.getTerminationReason());
String expDetails = new MaxTimeIterationTerminationCondition(3,TimeUnit.SECONDS).toString();
assertEquals(expDetails, result.getTerminationDetails());
}
@Test
public void testNoImprovementNEpochsTermination(){
//Idea: terminate training if score (test set loss) does not improve for 5 consecutive epochs
//Simulate this by setting LR = 0.0
Nd4j.getRandom().setSeed(12345);
ComputationGraphConfiguration conf = new NeuralNetConfiguration.Builder()
.seed(12345)
.optimizationAlgo(OptimizationAlgorithm.STOCHASTIC_GRADIENT_DESCENT).iterations(1)
.updater(Updater.SGD).learningRate(0.0)
.weightInit(WeightInit.XAVIER)
.graphBuilder()
.addInputs("in")
.addLayer("0", new OutputLayer.Builder().nIn(4).nOut(3).lossFunction(LossFunctions.LossFunction.MCXENT).build(), "in")
.setOutputs("0")
.pretrain(false).backprop(true)
.build();
ComputationGraph net = new ComputationGraph(conf);
net.setListeners(new ScoreIterationListener(1));
DataSetIterator irisIter = new IrisDataSetIterator(150,150);
EarlyStoppingModelSaver<ComputationGraph> saver = new InMemoryModelSaver<>();
EarlyStoppingConfiguration<ComputationGraph> esConf = new EarlyStoppingConfiguration.Builder()
.epochTerminationConditions(new MaxEpochsTerminationCondition(100),
new ScoreImprovementEpochTerminationCondition(5))
.iterationTerminationConditions(new MaxTimeIterationTerminationCondition(3, TimeUnit.SECONDS),
new MaxScoreIterationTerminationCondition(7.5)) //Initial score is ~2.5
.scoreCalculator(new DataSetLossCalculatorCG(irisIter, true))
.modelSaver(saver)
.build();
IEarlyStoppingTrainer trainer = new EarlyStoppingGraphTrainer(esConf,net,irisIter);
EarlyStoppingResult result = trainer.fit();
//Expect no score change due to 0 LR -> terminate after 6 total epochs
assertEquals(6, result.getTotalEpochs());
assertEquals(0, result.getBestModelEpoch());
assertEquals(EarlyStoppingResult.TerminationReason.EpochTerminationCondition,result.getTerminationReason());
String expDetails = new ScoreImprovementEpochTerminationCondition(5).toString();
assertEquals(expDetails, result.getTerminationDetails());
}
@Test
public void testListeners(){
ComputationGraphConfiguration conf = new NeuralNetConfiguration.Builder()
.optimizationAlgo(OptimizationAlgorithm.STOCHASTIC_GRADIENT_DESCENT).iterations(1)
.updater(Updater.SGD)
.weightInit(WeightInit.XAVIER)
.graphBuilder()
.addInputs("in")
.addLayer("0", new OutputLayer.Builder().nIn(4).nOut(3).lossFunction(LossFunctions.LossFunction.MCXENT).build(), "in")
.setOutputs("0")
.pretrain(false).backprop(true)
.build();
ComputationGraph net = new ComputationGraph(conf);
net.setListeners(new ScoreIterationListener(1));
DataSetIterator irisIter = new IrisDataSetIterator(150,150);
EarlyStoppingModelSaver<ComputationGraph> saver = new InMemoryModelSaver<>();
EarlyStoppingConfiguration<ComputationGraph> esConf = new EarlyStoppingConfiguration.Builder()
.epochTerminationConditions(new MaxEpochsTerminationCondition(5))
.iterationTerminationConditions(new MaxTimeIterationTerminationCondition(1, TimeUnit.MINUTES))
.scoreCalculator(new DataSetLossCalculatorCG(irisIter,true))
.modelSaver(saver)
.build();
LoggingEarlyStoppingListener listener = new LoggingEarlyStoppingListener();
IEarlyStoppingTrainer trainer = new EarlyStoppingGraphTrainer(esConf,net,irisIter,listener);
trainer.fit();
assertEquals(1,listener.onStartCallCount);
assertEquals(5,listener.onEpochCallCount);
assertEquals(1,listener.onCompletionCallCount);
}
private static class LoggingEarlyStoppingListener implements EarlyStoppingListener<ComputationGraph> {
private static Logger log = LoggerFactory.getLogger(LoggingEarlyStoppingListener.class);
private int onStartCallCount = 0;
private int onEpochCallCount = 0;
private int onCompletionCallCount = 0;
@Override
public void onStart(EarlyStoppingConfiguration esConfig, ComputationGraph net) {
log.info("EarlyStopping: onStart called");
onStartCallCount++;
}
@Override
public void onEpoch(int epochNum, double score, EarlyStoppingConfiguration esConfig, ComputationGraph net) {
log.info("EarlyStopping: onEpoch called (epochNum={}, score={}}",epochNum,score);
onEpochCallCount++;
}
@Override
public void onCompletion(EarlyStoppingResult esResult) {
log.info("EarlyStopping: onCompletion called (result: {})",esResult);
onCompletionCallCount++;
}
}
}
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