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* Licensed to the Apache Software Foundation (ASF) under one or more
* contributor license agreements. See the NOTICE file distributed with
* this work for additional information regarding copyright ownership.
* The ASF licenses this file to You 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.
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package org.apache.ignite.examples.ml.regression.linear;
import java.io.IOException;
import org.apache.ignite.Ignite;
import org.apache.ignite.IgniteCache;
import org.apache.ignite.Ignition;
import org.apache.ignite.examples.ml.util.MLSandboxDatasets;
import org.apache.ignite.examples.ml.util.SandboxMLCache;
import org.apache.ignite.ml.dataset.feature.extractor.Vectorizer;
import org.apache.ignite.ml.dataset.feature.extractor.impl.DummyVectorizer;
import org.apache.ignite.ml.math.primitives.vector.Vector;
import org.apache.ignite.ml.regressions.linear.LinearRegressionLSQRTrainer;
import org.apache.ignite.ml.regressions.linear.LinearRegressionModel;
import org.apache.ignite.ml.selection.scoring.evaluator.Evaluator;
import org.apache.ignite.ml.selection.scoring.metric.MetricName;
/**
* Run linear regression model based on <a href="http://web.stanford.edu/group/SOL/software/lsqr/">LSQR algorithm</a>
* ({@link LinearRegressionLSQRTrainer}) over cached dataset.
* <p>
* Code in this example launches Ignite grid and fills the cache with simple test data.</p>
* <p>
* After that it trains the linear regression model based on the specified data.</p>
* <p>
* Finally, this example loops over the test set of data points, applies the trained model to predict the target value
* and compares prediction to expected outcome (ground truth).</p>
* <p>
* You can change the test data used in this example and re-run it to explore this algorithm further.</p>
*/
public class LinearRegressionLSQRTrainerExample {
/**
* Run example.
*/
public static void main(String[] args) throws IOException {
System.out.println();
System.out.println(">>> Linear regression model over cache based dataset usage example started.");
// Start ignite grid.
try (Ignite ignite = Ignition.start("examples/config/example-ignite.xml")) {
System.out.println(">>> Ignite grid started.");
IgniteCache<Integer, Vector> dataCache = null;
try {
dataCache = new SandboxMLCache(ignite).fillCacheWith(MLSandboxDatasets.MORTALITY_DATA);
System.out.println(">>> Create new linear regression trainer object.");
LinearRegressionLSQRTrainer trainer = new LinearRegressionLSQRTrainer();
System.out.println(">>> Perform the training to get the model.");
// This object is used to extract features and vectors from upstream entities which are
// essentially tuples of the form (key, value) (in our case (Integer, Vector)).
// Key part of tuple in our example is ignored.
// Label is extracted from 0th entry of the value (which is a Vector)
// and features are all remaining vector part. Alternatively we could use
// DatasetTrainer#fit(Ignite, IgniteCache, IgniteBiFunction, IgniteBiFunction) method call
// where there is a separate lambda for extracting label from (key, value) and a separate labmda for
// extracting features.
LinearRegressionModel mdl = trainer.fit(ignite, dataCache, new DummyVectorizer<Integer>()
.labeled(Vectorizer.LabelCoordinate.FIRST));
double rmse = Evaluator.evaluate(
dataCache, mdl,
new DummyVectorizer<Integer>().labeled(Vectorizer.LabelCoordinate.FIRST),
MetricName.RMSE
);
System.out.println("\n>>> Rmse = " + rmse);
System.out.println(">>> Linear regression model over cache based dataset usage example completed.");
}
finally {
if (dataCache != null)
dataCache.destroy();
}
}
finally {
System.out.flush();
}
}
}