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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
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*/
package org.apache.sysds.test.functions.reorg;
import java.util.HashMap;
import org.junit.Test;
import org.apache.sysds.api.DMLScript;
import org.apache.sysds.common.Types.ExecMode;
import org.apache.sysds.lops.LopProperties.ExecType;
import org.apache.sysds.runtime.matrix.data.MatrixValue.CellIndex;
import org.apache.sysds.test.AutomatedTestBase;
import org.apache.sysds.test.TestConfiguration;
import org.apache.sysds.test.TestUtils;
public class VectorReshapeTest extends AutomatedTestBase
{
private final static String TEST_NAME = "VectorReshape";
private final static String TEST_DIR = "functions/reorg/";
private static final String TEST_CLASS_DIR = TEST_DIR + VectorReshapeTest.class.getSimpleName() + "/";
private final static int rows1 = 1;
private final static int cols1 = 802816;
private final static int rows2 = 64;
private final static int cols2 = 12544;
private final static double sparsityDense = 0.9;
private final static double sparsitySparse = 0.1;
@Override
public void setUp() {
addTestConfiguration(TEST_NAME, new TestConfiguration(
TEST_CLASS_DIR, TEST_NAME, new String[] { "R" }) );
}
@Test
public void testVectorReshapeDenseCP() {
runVectorReshape(false, ExecType.CP);
}
@Test
public void testVectorReshapeSparseCP() {
runVectorReshape(true, ExecType.CP);
}
@Test
public void testVectorReshapeDenseSpark() {
runVectorReshape(false, ExecType.SPARK);
}
@Test
public void testVectorReshapeSparseSpark() {
runVectorReshape(true, ExecType.SPARK);
}
private void runVectorReshape(boolean sparse, ExecType et)
{
//rtplatform for MR
ExecMode platformOld = rtplatform;
switch( et ){
case SPARK: rtplatform = ExecMode.SPARK; break;
default: rtplatform = ExecMode.HYBRID; break;
}
boolean sparkConfigOld = DMLScript.USE_LOCAL_SPARK_CONFIG;
if( rtplatform == ExecMode.SPARK )
DMLScript.USE_LOCAL_SPARK_CONFIG = true;
try
{
//register test configuration
TestConfiguration config = getTestConfiguration(TEST_NAME);
loadTestConfiguration(config);
String HOME = SCRIPT_DIR + TEST_DIR;
fullDMLScriptName = HOME + TEST_NAME + ".dml";
programArgs = new String[]{"-args", input("X"),
String.valueOf(rows2), String.valueOf(cols2), output("R") };
fullRScriptName = HOME + TEST_NAME + ".R";
rCmd = "Rscript" + " " + fullRScriptName + " " +
inputDir() + " " + rows2 + " " + cols2 + " " + expectedDir();
double sparsity = sparse ? sparsitySparse : sparsityDense;
double[][] X = getRandomMatrix(rows1, cols1, 0, 1, sparsity, 7);
writeInputMatrixWithMTD("X", X, true);
runTest(true, false, null, -1);
runRScript(true);
//compare matrices
HashMap<CellIndex, Double> dmlfile = readDMLMatrixFromOutputDir("R");
HashMap<CellIndex, Double> rfile = readRMatrixFromExpectedDir("R");
TestUtils.compareMatrices(dmlfile, rfile, 10e-10, "Stat-DML", "Stat-R");
}
finally {
//reset platform for additional tests
rtplatform = platformOld;
DMLScript.USE_LOCAL_SPARK_CONFIG = sparkConfigOld;
}
}
}