Return-Path: X-Original-To: apmail-hadoop-mapreduce-user-archive@minotaur.apache.org Delivered-To: apmail-hadoop-mapreduce-user-archive@minotaur.apache.org Received: from mail.apache.org (hermes.apache.org [140.211.11.3]) by minotaur.apache.org (Postfix) with SMTP id 72A0410210 for ; Sun, 21 Apr 2013 05:17:30 +0000 (UTC) Received: (qmail 66303 invoked by uid 500); 21 Apr 2013 05:17:22 -0000 Delivered-To: apmail-hadoop-mapreduce-user-archive@hadoop.apache.org Received: (qmail 65941 invoked by uid 500); 21 Apr 2013 05:17:22 -0000 Mailing-List: contact user-help@hadoop.apache.org; run by ezmlm Precedence: bulk List-Help: List-Unsubscribe: List-Post: List-Id: Reply-To: user@hadoop.apache.org Delivered-To: mailing list user@hadoop.apache.org Received: (qmail 65915 invoked by uid 99); 21 Apr 2013 05:17:21 -0000 Received: from athena.apache.org (HELO athena.apache.org) (140.211.11.136) by apache.org (qpsmtpd/0.29) with ESMTP; Sun, 21 Apr 2013 05:17:21 +0000 X-ASF-Spam-Status: No, hits=1.8 required=5.0 tests=HTML_FONT_FACE_BAD,HTML_MESSAGE,RCVD_IN_DNSWL_LOW,SPF_PASS,WEIRD_QUOTING X-Spam-Check-By: apache.org Received-SPF: pass (athena.apache.org: domain of geelongyao@gmail.com designates 209.85.212.50 as permitted sender) Received: from [209.85.212.50] (HELO mail-vb0-f50.google.com) (209.85.212.50) by apache.org (qpsmtpd/0.29) with ESMTP; Sun, 21 Apr 2013 05:17:17 +0000 Received: by mail-vb0-f50.google.com with SMTP id w15so4930776vbb.9 for ; Sat, 20 Apr 2013 22:16:54 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=x-received:mime-version:in-reply-to:references:from:date:message-id :subject:to:content-type; bh=yXIwXj81RmBc86J7SAWyyv7bTFjkHwkRy+IXSf81cw0=; b=A9H1NVJ87fiI21TNMcQJ+MhdW9lIYtkb9nB1SjbJ2gdWbYv5CtKK5hEaPv/gaQJfYj SJ61zWkYjaADFSsBG/rUukqIW9QHTRUG+yyMQ1ec+uzs9qkXhveu+LU4Ro8n42BN1g/4 C+lUd9xcpAXrHm0KnUdG4kxVlfgVf9Xy0s2YhoDGhwzct0eJyh/20eGIhielZGGV5PNx nXY7N2USCG6PF+JzZlzgUvWlowRBjUjKhdMedexNM6rtr6ZqA06hmLuOdeikRdhlEds2 hqa+v1utMqtMIj5ETeAnHyqTg7CAC1I9b+Ki64wQCPMJ6GEqBvpJcgeu6GrGWbfEsjwL j63Q== X-Received: by 10.58.168.208 with SMTP id zy16mr15854642veb.3.1366521414341; Sat, 20 Apr 2013 22:16:54 -0700 (PDT) MIME-Version: 1.0 Received: by 10.59.5.98 with HTTP; Sat, 20 Apr 2013 22:16:33 -0700 (PDT) In-Reply-To: References: From: =?UTF-8?B?5aea5ZCJ6b6Z?= Date: Sun, 21 Apr 2013 13:16:33 +0800 Message-ID: Subject: Re: Errors about MRunit To: user@hadoop.apache.org Content-Type: multipart/related; boundary=047d7b6773587adbe604dad80f25 X-Virus-Checked: Checked by ClamAV on apache.org --047d7b6773587adbe604dad80f25 Content-Type: multipart/alternative; boundary=047d7b6773587adbe304dad80f24 --047d7b6773587adbe304dad80f24 Content-Type: text/plain; charset=GB2312 Content-Transfer-Encoding: quoted-printable I am the newer for MRunit and Maven I just google this issue and find a solution: http://stackoverflow.com/questions/12444663/hadoop-mrunit-throws-exception it said that we need to change the pon.xml, I am wondering whether this file is in mrunit-0.9.0-incubating-hadoop2.jar [image: =C4=DA=C7=B6=CD=BC=C6=AC 1][image: =C4=DA=C7=B6=CD=BC=C6=AC 2] but it still not working BRs Geelong 2013/4/21 =D2=A6=BC=AA=C1=FA > How to confirm this? > > > > 2013/4/21 Jagat Singh > >> Can you please confirm if you are not mixing old and new mapreduce API >> >> >> On Sun, Apr 21, 2013 at 12:52 PM, =D2=A6=BC=AA=C1=FA wrote: >> >>> Thanks >>> But I am confused about the MRunit. How to use MRunit without maven >>> I am just following the tutorial: >>> https://cwiki.apache.org/confluence/display/MRUNIT/MRUnit+Tutorial >>> >>> My test code is below, the maper and reducer is in another project >>> linked in my testing project >>> >>> >>> >>> import java.io.IOException; >>> import java.util.ArrayList; >>> import java.util.List; >>> import junit.framework.TestCase; >>> import org.apache.hadoop.io.IntWritable; >>> import org.apache.hadoop.io.LongWritable; >>> import org.apache.hadoop.io.Text; >>> import org.apache.hadoop.mapred.lib.IdentityMapper; >>> import org.apache.hadoop.mapred.Mapper; >>> import org.apache.hadoop.mrunit.mapreduce.MapDriver; >>> import org.apache.hadoop.mrunit.mapreduce.MapReduceDriver; >>> import org.apache.hadoop.mrunit.mapreduce.ReduceDriver; >>> import org.apache.hadoop.mrunit.types.Pair; >>> import org.junit.Assert; >>> import org.junit.Before; >>> import org.junit.Test; >>> >>> public class UnitTest extends TestCase{ >>> MapDriver mapDriver; >>> ReduceDriver reduceDriver; >>> MapReduceDriver mapReduceDriver= ; >>> @Before >>> public void setUp() { >>> carTest.FirstMapper mapper =3D new carTest.FirstMapper(); >>> carTest.FirstReducer reducer =3D new carTest.FirstReducer(); >>> mapDriver =3D MapDriver.newMapDriver(mapper);; >>> reduceDriver =3D ReduceDriver.newReduceDriver(reducer); >>> mapReduceDriver =3D MapReduceDriver.newMapReduceDriver(mapper, >>> reducer); >>> } >>> @Test >>> public void testMapper() throws IOException { >>> mapDriver.withInput(new Object(), new Text( >>> >>> "199397,32100000000000000800000120110131014195,321000000000000008,2011= 0131170958,00,,=CB=D5K16423,2,,34.00,,,,460,,,K33,02,,1710048437180058,4760= 96")); >>> mapDriver.withOutput(new Text("=CB=D5K16423"), new >>> Text("321000000000000008")); >>> mapDriver.runTest(); >>> >>> //"199397","32100000000000000800000120110131014195","32100000000000000= 8","20110131170958","00","","=CB=D5K16423","2","","34.00","","","","460",""= ,"","K33","02","","1710048437180058","476096" >>> >>> } >>> @Test >>> public void testReducer() throws IOException { >>> List values =3D new ArrayList(); >>> values.add(new >>> Text("199397,32100000000000000800000120110131014195,321000000000000005,= 20110131172000,00,,=CB=D5K16423,2,,34.00,,,,460,,,K33,02,,1710048437180058,= 476096")); >>> // values.add(new Text("1")); >>> reduceDriver.withInput(new Text("6"), values); >>> reduceDriver.withOutput(new Text("6"), new Text("2")); >>> reduceDriver.runTest(); >>> } >>> >>> >>> } >>> >>> While, always failed to pass >>> [image: =C4=DA=C7=B6=CD=BC=C6=AC 1] >>> Here is the trace >>> >>> java.lang.IncompatibleClassChangeError: Found class >>> org.apache.hadoop.mapreduce.TaskInputOutputContext, but interface was >>> expected >>> at >>> org.apache.hadoop.mrunit.mapreduce.mock.MockContextWrapper.createCommon= (MockContextWrapper.java:53) >>> at >>> org.apache.hadoop.mrunit.mapreduce.mock.MockMapContextWrapper.create(Mo= ckMapContextWrapper.java:70) >>> at >>> org.apache.hadoop.mrunit.mapreduce.mock.MockMapContextWrapper.(Mo= ckMapContextWrapper.java:62) >>> at org.apache.hadoop.mrunit.mapreduce.MapDriver.run(MapDriver.java:217= ) >>> at org.apache.hadoop.mrunit.MapDriverBase.runTest(MapDriverBase.java:15= 0) >>> at org.apache.hadoop.mrunit.TestDriver.runTest(TestDriver.java:137) >>> at UnitTest.testMapper(UnitTest.java:37) >>> at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >>> at >>> sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.ja= va:39) >>> at >>> sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccesso= rImpl.java:25) >>> at java.lang.reflect.Method.invoke(Method.java:597) >>> at junit.framework.TestCase.runTest(TestCase.java:168) >>> at junit.framework.TestCase.runBare(TestCase.java:134) >>> at junit.framework.TestResult$1.protect(TestResult.java:110) >>> at junit.framework.TestResult.runProtected(TestResult.java:128) >>> at junit.framework.TestResult.run(TestResult.java:113) >>> at junit.framework.TestCase.run(TestCase.java:124) >>> at junit.framework.TestSuite.runTest(TestSuite.java:232) >>> at junit.framework.TestSuite.run(TestSuite.java:227) >>> at >>> org.junit.internal.runners.JUnit38ClassRunner.run(JUnit38ClassRunner.ja= va:79) >>> at >>> org.eclipse.jdt.internal.junit4.runner.JUnit4TestReference.run(JUnit4Te= stReference.java:50) >>> at >>> org.eclipse.jdt.internal.junit.runner.TestExecution.run(TestExecution.j= ava:38) >>> at >>> org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.runTests(RemoteT= estRunner.java:467) >>> at >>> org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.runTests(RemoteT= estRunner.java:683) >>> at >>> org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.run(RemoteTestRu= nner.java:390) >>> at >>> org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.main(RemoteTestR= unner.java:197) >>> >>> Any body help to figure out these? >>> I am going crazy >>> >>> >>> BRs >>> Geelong >>> >>> >>> >>> 2013/4/21 Rishi Yadav >>> >>>> Maven is not necessary to use hadoop or MRUnit. That being said I am a >>>> big fan of maven. Please find attached wordcount with maven. >>>> >>>> >>>> >>>> On Sat, Apr 20, 2013 at 7:17 PM, =D2=A6=BC=AA=C1=FA wrote: >>>> >>>>> Thank for your reply >>>>> But I think the main problem is that I do konw how to use maven with >>>>> hadoop or MRunit >>>>> Any body can give me a example for MRunit project >>>>> >>>>> >>>>> >>>>> 2013/4/21 Rishi Yadav >>>>> >>>>>> your problem is simple, you are mixing mapred (old api) and >>>>>> mapreduce(new api) libraries. MRUnit has implementation for both api= s. >>>>>> >>>>>> Here's an example of WordCountTest with use of new api. >>>>>> >>>>>> >>>>>> --------------------------------------------------------------------= -------------------------------------------------- >>>>>> >>>>>> package com.infoobjects.hadoop.wc; >>>>>> >>>>>> >>>>>> import java.util.ArrayList; >>>>>> >>>>>> import java.util.List; >>>>>> >>>>>> >>>>>> import org.apache.hadoop.io.IntWritable; >>>>>> >>>>>> import org.apache.hadoop.io.LongWritable; >>>>>> >>>>>> import org.apache.hadoop.io.Text; >>>>>> >>>>>> import org.apache.hadoop.mrunit.mapreduce.MapDriver; >>>>>> >>>>>> import org.apache.hadoop.mrunit.mapreduce.MapReduceDriver; >>>>>> >>>>>> import org.apache.hadoop.mrunit.mapreduce.ReduceDriver; >>>>>> >>>>>> import org.junit.Before; >>>>>> >>>>>> import org.junit.Test; >>>>>> >>>>>> >>>>>> public class WordCountTest { >>>>>> >>>>>> MapDriver mapDriver; >>>>>> >>>>>> ReduceDriver reduceDriver; >>>>>> >>>>>> MapReduceDriver>>>>> IntWritable> mapReduceDriver; >>>>>> >>>>>> >>>>>> @Before >>>>>> >>>>>> public void init() { >>>>>> >>>>>> WordMapper mapper =3D new WordMapper(); >>>>>> >>>>>> WordReducer reducer =3D new WordReducer(); >>>>>> >>>>>> mapDriver =3D new MapDriver(= ); >>>>>> >>>>>> mapDriver.setMapper(mapper); >>>>>> >>>>>> reduceDriver =3D ReduceDriver.newReduceDriver(reducer); >>>>>> >>>>>> mapReduceDriver =3D MapReduceDriver.newMapReduceDriver(mapper, >>>>>> reducer); >>>>>> >>>>>> } >>>>>> >>>>>> >>>>>> @Test >>>>>> >>>>>> public void testMapper() { >>>>>> >>>>>> mapDriver.withInput(new LongWritable(1), new Text("foo bar")); >>>>>> >>>>>> mapDriver.withOutput(new Text("foo"), new IntWritable(1)); >>>>>> >>>>>> mapDriver.withOutput(new Text("bar"), new IntWritable(1)); >>>>>> >>>>>> mapDriver.runTest(); >>>>>> >>>>>> } >>>>>> >>>>>> @Test >>>>>> >>>>>> public void testReducer() { >>>>>> >>>>>> List values =3D new ArrayList(); >>>>>> >>>>>> values.add(new IntWritable(1)); >>>>>> >>>>>> values.add(new IntWritable(1)); >>>>>> >>>>>> reduceDriver.withInput(new Text("foo"), values); >>>>>> >>>>>> reduceDriver.withOutput(new Text("foo"), new IntWritable(2)); >>>>>> >>>>>> reduceDriver.runTest(); >>>>>> >>>>>> } >>>>>> >>>>>> >>>>>> >>>>>> @Test >>>>>> >>>>>> public void testMapReduce() { >>>>>> >>>>>> mapReduceDriver.withInput(new LongWritable(1), new Text("brian >>>>>> felix")); >>>>>> >>>>>> mapReduceDriver.withOutput(new Text("foo"), new IntWritable(1)); >>>>>> >>>>>> mapReduceDriver.withOutput(new Text("bar"), new IntWritable(1)); >>>>>> >>>>>> mapReduceDriver.runTest(); >>>>>> >>>>>> } >>>>>> >>>>>> >>>>>> } >>>>>> >>>>>> Thanks and Regards, >>>>>> >>>>>> Rishi Yadav >>>>>> >>>>>> (o) 408.988.2000x113 || (f) 408.716.2726 >>>>>> >>>>>> InfoObjects Inc || http://www.infoobjects.com *(Big Data Solutions)* >>>>>> >>>>>> *INC 500 Fastest growing company in 2012 || 2011* >>>>>> >>>>>> *Best Place to work in Bay Area 2012 - *SF Business Times and the >>>>>> Silicon Valley / San Jose Business Journal >>>>>> >>>>>> 2041 Mission College Boulevard, #280 || Santa Clara, CA 95054 >>>>>> >>>>>> >>>>>> >>>>>> >>>>>> On Sat, Apr 20, 2013 at 7:14 AM, =D2=A6=BC=AA=C1=FA wrote: >>>>>> >>>>>>> This is what I got form my eclipse. Why still errors about the lib >>>>>>> from hadoop >>>>>>> [image: =C4=DA=C7=B6=CD=BC=C6=AC 1][image: =C4=DA=C7=B6=CD=BC=C6=AC= 2] >>>>>>> anybody tell me how to use MRunit and Maven >>>>>>> >>>>>>> >>>>>>> 2013/4/20 Hemanth Yamijala >>>>>>> >>>>>>>> Hi, >>>>>>>> >>>>>>>> If your goal is to use the new API, I am able to get it to work >>>>>>>> with the following maven configuration: >>>>>>>> >>>>>>>> >>>>>>>> org.apache.mrunit >>>>>>>> mrunit >>>>>>>> 0.9.0-incubating >>>>>>>> hadoop1 >>>>>>>> >>>>>>>> >>>>>>>> If I switch with classifier hadoop2, I get the same errors as what >>>>>>>> you facing. >>>>>>>> >>>>>>>> Thanks >>>>>>>> Hemanth >>>>>>>> >>>>>>>> >>>>>>>> On Sat, Apr 20, 2013 at 3:42 PM, =D2=A6=BC=AA=C1=FA wrote: >>>>>>>> >>>>>>>>> Hi Everyone >>>>>>>>> >>>>>>>>> I am testing my MR programe with MRunit, it's version >>>>>>>>> is mrunit-0.9.0-incubating-hadoop2. My hadoop version is 1.0.4 >>>>>>>>> The error trace is below: >>>>>>>>> >>>>>>>>> java.lang.IncompatibleClassChangeError: Found class >>>>>>>>> org.apache.hadoop.mapreduce.TaskInputOutputContext, but interface= was >>>>>>>>> expected >>>>>>>>> at >>>>>>>>> org.apache.hadoop.mrunit.mapreduce.mock.MockContextWrapper.create= Common(MockContextWrapper.java:53) >>>>>>>>> at >>>>>>>>> org.apache.hadoop.mrunit.mapreduce.mock.MockMapContextWrapper.cre= ate(MockMapContextWrapper.java:70) >>>>>>>>> at >>>>>>>>> org.apache.hadoop.mrunit.mapreduce.mock.MockMapContextWrapper.(MockMapContextWrapper.java:62) >>>>>>>>> at >>>>>>>>> org.apache.hadoop.mrunit.mapreduce.MapDriver.run(MapDriver.java:2= 17) >>>>>>>>> at >>>>>>>>> org.apache.hadoop.mrunit.MapDriverBase.runTest(MapDriverBase.java= :150) >>>>>>>>> at >>>>>>>>> org.apache.hadoop.mrunit.TestDriver.runTest(TestDriver.java:137) >>>>>>>>> at UnitTest.testMapper(UnitTest.java:41) >>>>>>>>> at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) >>>>>>>>> at >>>>>>>>> sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorI= mpl.java:39) >>>>>>>>> at >>>>>>>>> sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodA= ccessorImpl.java:25) >>>>>>>>> at java.lang.reflect.Method.invoke(Method.java:597) >>>>>>>>> at junit.framework.TestCase.runTest(TestCase.java:168) >>>>>>>>> at junit.framework.TestCase.runBare(TestCase.java:134) >>>>>>>>> at junit.framework.TestResult$1.protect(TestResult.java:110) >>>>>>>>> at junit.framework.TestResult.runProtected(TestResult.java:128) >>>>>>>>> at junit.framework.TestResult.run(TestResult.java:113) >>>>>>>>> at junit.framework.TestCase.run(TestCase.java:124) >>>>>>>>> at junit.framework.TestSuite.runTest(TestSuite.java:232) >>>>>>>>> at junit.framework.TestSuite.run(TestSuite.java:227) >>>>>>>>> at >>>>>>>>> org.junit.internal.runners.JUnit38ClassRunner.run(JUnit38ClassRun= ner.java:79) >>>>>>>>> at >>>>>>>>> org.eclipse.jdt.internal.junit4.runner.JUnit4TestReference.run(JU= nit4TestReference.java:50) >>>>>>>>> at >>>>>>>>> org.eclipse.jdt.internal.junit.runner.TestExecution.run(TestExecu= tion.java:38) >>>>>>>>> at >>>>>>>>> org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.runTests(R= emoteTestRunner.java:467) >>>>>>>>> at >>>>>>>>> org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.runTests(R= emoteTestRunner.java:683) >>>>>>>>> at >>>>>>>>> org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.run(Remote= TestRunner.java:390) >>>>>>>>> at >>>>>>>>> org.eclipse.jdt.internal.junit.runner.RemoteTestRunner.main(Remot= eTestRunner.java:197) >>>>>>>>> >>>>>>>>> >>>>>>>>> Anyone has idea? >>>>>>>>> >>>>>>>>> BRs >>>>>>>>> Geelong >>>>>>>>> >>>>>>>>> -- >>>>>>>>> From Good To Great >>>>>>>>> >>>>>>>> >>>>>>>> >>>>>>> >>>>>>> >>>>>>> -- >>>>>>> From Good To Great >>>>>>> >>>>>> >>>>>> >>>>> >>>>> >>>>> -- >>>>> From Good To Great >>>>> >>>> >>>> >>> >>> >>> -- >>> From Good To Great >>> >> >> > > > -- > From Good To Great > --=20 >From Good To Great --047d7b6773587adbe304dad80f24 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
I am the newer for MRunit and Maven
it said that we need to change the pon.xml, I am wondering wheth= er this file is in mrunit-0.9.0-incubating-hadoop2.jar
3D"=E5=86=85=E5=B5=8C=E5=9B=

but it still not working


BRs
Geelong





2013/4/21 =E5= =A7=9A=E5=90=89=E9=BE=99 <geelongyao@gmail.com>
How to confirm this?



2013/4/21 Jagat Singh <jagatsingh@gmail.com>
Can you please confirm if y= ou are not mixing old and new mapreduce API


On Sun, Apr 2= 1, 2013 at 12:52 PM, =E5=A7=9A=E5=90=89=E9=BE=99 <geelongyao@gmail.com<= /a>> wrote:
Thanks
But I am confuse= d about the MRunit. How to use MRunit without maven

My test code =C2=A0is below, the maper and reducer is i= n another project linked in my testing project


import java.io.IOException; =C2=A0
import java.util.ArrayList; = =C2=A0
import java.util.List; =C2=A0
import junit.frame= work.TestCase;
import org.apache.hadoop.io.IntWritable; =C2= =A0
import org.apache.hadoop.io.LongWritable;
import org.apache.hadoop.io.Text; =C2=A0
import org.ap= ache.hadoop.mapred.lib.IdentityMapper;
import org.apache.hadoop.m= apred.Mapper; =C2=A0
import org.apache.hadoop.mrunit.mapredu= ce.MapDriver; =C2=A0
import org.apache.hadoop.mrunit.mapreduce.MapReduceDriver; =C2=A0
import org.apache.hadoop.mrunit.mapreduce.ReduceDriver; =C2=A0
<= /div>
import org.apache.hadoop.mrunit.types.Pair; =C2=A0
impo= rt org.junit.Assert; =C2=A0
import org.junit.Before; =C2=A0
import org.junit.Test;
=

public class UnitTest extends TestCase{
=C2=A0MapDriver<Object, Text, T= ext, Text> mapDriver;
=C2=A0ReduceDriver<Te= xt, Text, Text, Text> reduceDriver;
=C2=A0MapReduceDriver<Object, Text, Text, Text, Text= , Text> mapReduceDriver;
=C2=A0@Before
=C2=A0public void setUp() {
carTest.FirstMapper mapper =3D new carT= est.FirstMapper();
carTest.FirstReducer red= ucer =3D new carTest.FirstReducer();
=C2=A0 =C2=A0mapDriver =3D MapDriver.newMapDriver(mapper)= ;;
=C2=A0 =C2=A0reduceDrive= r =3D ReduceDriver.newReduceDriver(reducer);
=C2=A0 =C2=A0mapReduceDriver =3D MapReduceDriver.= newMapReduceDriver(mapper, reducer);
=C2=A0}
=C2=A0@Test
=C2=A0public void testMapper() throw= s IOException {
=C2=A0 =C2=A0mapDriver.w= ithInput(new Object(), new Text(
=C2=A0 =C2=A0 =C2=A0 =C2=A0"199397,321000000000000008000= 00120110131014195,321000000000000008,20110131170958,00,,=E8=8B=8FK16423,2,,= 34.00,,,,460,,,K33,02,,1710048437180058,476096"));
=C2=A0 =C2=A0mapDriver.w= ithOutput(new Text("=E8=8B=8FK16423"), new Text("32100000000= 0000008"));
= =C2=A0 =C2=A0mapDriver.runTest();
=C2=A0 =C2=A0//"199= 397","32100000000000000800000120110131014195","32100000= 0000000008","20110131170958","00","",&qu= ot;=E8=8B=8FK16423","2","","34.00","= ;","","","460","",""= ,"K33","02","","1710048437180058",&= quot;476096"
=C2=A0 =C2=A0
= =C2=A0}
=C2=A0@Test
=C2=A0public void testReducer() throws IOExcept= ion {
=C2=A0 =C2=A0List<Tex= t> values =3D new ArrayList<Text>();
=C2=A0 =C2=A0values.add(new Text("199397,32= 100000000000000800000120110131014195,321000000000000005,20110131172000,00,,= =E8=8B=8FK16423,2,,34.00,,,,460,,,K33,02,,1710048437180058,476096"));<= /div>
=C2=A0// =C2=A0values.ad= d(new Text("1"));
= =C2=A0 =C2=A0reduceDriver.withInput(new Text("6"), value= s);
=C2=A0 =C2=A0reduceDriver.wit= hOutput(new Text("6"), new Text("2"));
=C2=A0 =C2=A0reduceDriver.runTest()= ;
=C2=A0}

<= div>
=C2=A0}

While, always failed to pass=C2=A0
<= img src=3D"cid:ii_13e2a817086c0c38" alt=3D"=E5=86=85=E5=B5=8C=E5=9B=BE=E7= =89=87 1">
Here is the trace

java.lang.I= ncompatibleClassChangeError: Found class org.apache.hadoop.mapreduce.TaskIn= putOutputContext, but interface was expected
at org.apache.hadoop.mrunit.mapreduce.mock.MockCon= textWrapper.createCommon(MockContextWrapper.java:53)
at org.apache.hadoop.mrun= it.mapreduce.mock.MockMapContextWrapper.create(MockMapContextWrapper.java:7= 0)
at org.apache.had= oop.mrunit.mapreduce.mock.MockMapContextWrapper.<init>(MockMapContext= Wrapper.java:62)
at org.apache.hadoop.mrun= it.mapreduce.MapDriver.run(MapDriver.java:217)
at org.apache.hadoop.mrunit.MapDriverBase.runTes= t(MapDriverBase.java:150)
at org.apache.hadoop.mrun= it.TestDriver.runTest(TestDriver.java:137)
at UnitTest.testMapper(UnitTest.java:37)
at sun.reflect.NativeMeth= odAccessorImpl.invoke0(Native Method)
at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMeth= odAccessorImpl.java:39)
at sun.reflect.Delegating= MethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:25)
<= span style=3D"white-space:pre-wrap"> at java.lang.reflect.Method.inv= oke(Method.java:597)
at junit.framework.TestCa= se.runTest(TestCase.java:168)
at junit.framework.TestCase.runBare(TestCase.java:134)
at junit.framework.TestRe= sult$1.protect(TestResult.java:110)
at junit.framework.TestResult.runProtected(TestResult.java:= 128)
at junit.framework.TestRe= sult.run(TestResult.java:113)
at junit.framework.TestCase.run(TestCase.java:124)
at junit.framework.TestSuite.r= unTest(TestSuite.java:232)
= at junit.framework.TestSuite.run(TestSuite.java:227)
at org.junit.internal.runners.= JUnit38ClassRunner.run(JUnit38ClassRunner.java:79)
at org.eclipse.jdt.internal.junit4.runner.JU= nit4TestReference.run(JUnit4TestReference.java:50)
at org.eclipse.jdt.intern= al.junit.runner.TestExecution.run(TestExecution.java:38)
at org.eclipse.jdt.internal.junit.runn= er.RemoteTestRunner.runTests(RemoteTestRunner.java:467)
at org.eclipse.jdt.intern= al.junit.runner.RemoteTestRunner.runTests(RemoteTestRunner.java:683)
<= div> at org.eclipse.jdt.interna= l.junit.runner.RemoteTestRunner.run(RemoteTestRunner.java:390)
at org.eclipse.jdt.intern= al.junit.runner.RemoteTestRunner.main(RemoteTestRunner.java:197)
=
Any body help to figure out these?
I am going crazy


BRs
Geel= ong


2013/4/21 Rishi Yadav &l= t;rishi@infoobje= cts.com>
Maven is not necessary to u= se hadoop or MRUnit. That being said I am a big fan of maven. Please find a= ttached wordcount with maven.



On Sat, Apr 20, 2013 at 7:17 PM, =E5=A7= =9A=E5=90=89=E9=BE=99 <geelongyao@gmail.com> wrote:
Thank for your reply
But I think the main problem is t= hat I do konw how to use maven with hadoop or MRunit
Any body can= give me a example for MRunit project



2013/4/21 Rishi Yadav <rishi@infoobjects.com>
your problem is simple, you are mixing mapred (old api) an= d mapreduce(new api) libraries. MRUnit has implementation for both apis.=C2= =A0

Here's an example of WordCountTest with use of n= ew api.

-------------------------------------------------------= ---------------------------------------------------------------

package com.infoobjects.hadoop.wc;


import java.util.ArrayList;

import java.util.List;


import org.apache.hadoop.io.IntWritable;

import org.apache.hadoop.io.LongWritable;

import org.apache.hadoop.io.Text;

import org.apache.hadoop.mrunit.mapreduce.MapDriver;

import org.apache.hadoop.mrunit.mapreduce.MapReduceDriver;<= /p>

import org.apache.hadoop.mrunit.mapreduce.ReduceDriver;

import org.junit.Before;

import org.junit.Test;


public class WordCountTest {

MapDriver<LongWritable, Text, Text, IntWritable> map= Driver;

ReduceDriver<Text, IntWritable, Text, IntWritable> r= educeDriver;

MapReduceDriver<LongWritable, Text, Text, IntWritable, = Text, IntWritable> mapReduceDriver;


@Before

public void init() {

WordMapper mapper =3D new WordM= apper();

WordReducer reducer =3D new Wor= dReducer();

mapDriver =3D new MapDriver<= LongWritable, Text, Text, IntWritable>();

mapDriver.setMapper(mapper);

=C2=A0 =C2=A0 reduceDriver =3D ReduceDriver.newReduceDrive= r(reducer);

=C2=A0 =C2=A0 mapReduceDriver =3D MapReduceDriver.newMapRe= duceDriver(mapper, reducer);

}


@Test

public void testMapper() {

mapDriver.withInput(new LongWri= table(1), new Text("foo bar"));

mapDriver.withOutput(new Text(<= span>"foo"), new IntWritable(1));

mapDriver.withOutput(new Text(<= span>"bar"), new IntWritable(1));

mapDriver.runTest();

}

=C2=A0 @Test

=C2=A0 public void testReducer()= {

=C2=A0 =C2=A0 List<IntWritable> values =3D new= ArrayList<IntWritable>();

=C2=A0 =C2=A0 values.add(new IntWritable(1));=

=C2=A0 =C2=A0 values.add(new IntWritable(1));=

=C2=A0 =C2=A0 reduceDriver.withInput(new Text= ("foo"), values);

=C2=A0 =C2=A0 reduceDriver.withOutput(new Tex= t("foo"), new IntWritable(2));

=C2=A0 =C2=A0 reduceDriver.runTest();

=C2=A0 }

=C2=A0

=C2=A0 @Test

=C2=A0 public void testMapReduce= () {

=C2=A0 mapReduceDriver.withInput(new LongWritable(1), new Text("brian felix"<= /span>));

=C2=A0 mapReduceDriver.withOutput(new<= /span> Text("foo"), new IntWritable(1))= ;

=C2=A0 mapReduceDriver.withOutput(new<= /span> Text("bar"), new IntWritable(1))= ;

=C2=A0 mapReduceDriver.runTest();

=C2=A0 }


}


Thanks and Regards,

Rishi= Yadav

(o) 408.988.2000x113 || =C2=A0(f) 408.716.2726

InfoObjects= Inc ||=C2=A0http= ://www.infoobjects.com=C2=A0(Big Data Solutions)

INC 500 Faste= st growing company in 2012 || 2011

Be= st Place to work in Bay Area 2012 -=C2=A0SF Business Times and t= he Silicon Valley / San Jose Business Journal

2041 Mission College Boulevard, #280 ||=C2=A0Santa Clara, CA 95= 054=C2=A0




On Sat, Apr 20, 2013 at 7:14 AM, =E5=A7= =9A=E5=90=89=E9=BE=99 <geelongyao@gmail.com> wrote:
This is what I got form my eclipse. Why still errors about= the lib from hadoop
3D"=3D"=E5=86=85=E5=B5=8C=E5=9B=BE=E7=89=87
anybody tel= l me how to use MRunit and Maven


2013/4/20 Hemanth Yamijala <yhemanth@thoughtworks.com= >
Hi,

If your goal is to use the new API,= I am able to get it to work with the following maven configuration:
<= div>
=C2=A0 =C2=A0 <dependency>
=C2=A0 = =C2=A0 =C2=A0 <groupId>org.apache.mrunit</groupId>
=C2=A0 =C2=A0 =C2=A0 <artifactId>mrunit</artifactId>
=
=C2=A0 =C2=A0 =C2=A0 <version>0.9.0-incubating</version>
=C2=A0 =C2=A0 =C2=A0 <classifier>hadoop1</classifier><= /div>
=C2=A0 =C2=A0 </dependency>

If I switch with classifier hadoop2, I get the same err= ors as what you facing.

Thanks
Hemanth


On Sat, Apr 20, 2013 at 3:42 PM, =E5=A7=9A=E5=90=89=E9=BE=99 <geelongya= o@gmail.com> wrote:
Hi Everyone

I am testing my = MR programe with MRunit, it's version is=C2=A0mrunit-0.9.0-incubating-h= adoop2. My hadoop version is 1.0.4
The error trace is below:

java.lang.IncompatibleClassChangeError: Found class org= .apache.hadoop.mapreduce.TaskInputOutputContext, but interface was expected=
at org.apache.hadoo= p.mrunit.mapreduce.mock.MockContextWrapper.createCommon(MockContextWrapper.= java:53)
at org.apache.hadoop.mrun= it.mapreduce.mock.MockMapContextWrapper.create(MockMapContextWrapper.java:7= 0)
at org.apache.had= oop.mrunit.mapreduce.mock.MockMapContextWrapper.<init>(MockMapContext= Wrapper.java:62)
at org.apache.hadoop.mrun= it.mapreduce.MapDriver.run(MapDriver.java:217)
at org.apache.hadoop.mrunit.MapDriverBase.runTes= t(MapDriverBase.java:150)
at org.apache.hadoop.mrun= it.TestDriver.runTest(TestDriver.java:137)
at UnitTest.testMapper(UnitTest.java:41)
at sun.reflect.NativeMeth= odAccessorImpl.invoke0(Native Method)
at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMeth= odAccessorImpl.java:39)
at sun.reflect.Delegating= MethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:25)
<= span style=3D"white-space:pre-wrap"> at java.lang.reflect.Method.inv= oke(Method.java:597)
at junit.framework.TestCa= se.runTest(TestCase.java:168)
at junit.framework.TestCase.runBare(TestCase.java:134)
at junit.framework.TestRe= sult$1.protect(TestResult.java:110)
at junit.framework.TestResult.runProtected(TestResult.java:= 128)
at junit.framework.TestRe= sult.run(TestResult.java:113)
at junit.framework.TestCase.run(TestCase.java:124)
at junit.framework.TestSuite.r= unTest(TestSuite.java:232)
= at junit.framework.TestSuite.run(TestSuite.java:227)
at org.junit.internal.runners.= JUnit38ClassRunner.run(JUnit38ClassRunner.java:79)
at org.eclipse.jdt.internal.junit4.runner.JU= nit4TestReference.run(JUnit4TestReference.java:50)
at org.eclipse.jdt.intern= al.junit.runner.TestExecution.run(TestExecution.java:38)
at org.eclipse.jdt.internal.junit.runn= er.RemoteTestRunner.runTests(RemoteTestRunner.java:467)
at org.eclipse.jdt.intern= al.junit.runner.RemoteTestRunner.runTests(RemoteTestRunner.java:683)
<= div> at org.eclipse.jdt.interna= l.junit.runner.RemoteTestRunner.run(RemoteTestRunner.java:390)
at org.eclipse.jdt.intern= al.junit.runner.RemoteTestRunner.main(RemoteTestRunner.java:197)
=

Anyone has idea?

BRs
Geelong

--
From Good To Great




--
= From Good To = Great




--
From Good To Great




--
From Good To Great




--
= From Good To = Great


--
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