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Home » Modeling » EMF "Technology" (Ecore Tools, EMFatic, etc)  » [EMF Compare] GenericMatchEngine - Lists of java.lang.String aren't being matched
[EMF Compare] GenericMatchEngine - Lists of java.lang.String aren't being matched [message #127181] Tue, 15 July 2008 21:00 Go to next message
Matt Seashore is currently offline Matt SeashoreFriend
Messages: 58
Registered: July 2009
Member
I have an model in which one of the objects contains a list of
'java.lang.String' elements. I would like to run a match/diff and get
an 'AddAttribute' or something similar when a new string is added to the
list.

However, when I add a new string to one side of the model and run the
GenericMatchEngine (2 way) on it, I don't get an
'unMatchedElement/Attribute' for the newly added String, so nothing
shows up in the Diff.

Is there a way to run a comparison like this with a list of Strings (or
maybe this is this a known issue with EMF Compare)?

I can create a 'snippet' to recreate the problem or provide more
detailed information if that would be helpful. I'm running with EMF
Compare 0.80 (june 18th).

Thanks again for all the hard work!

Matt
Re: [EMF Compare] GenericMatchEngine - Lists of java.lang.String aren't being matched [message #127295 is a reply to message #127181] Fri, 18 July 2008 22:30 Go to previous messageGo to next message
Matt Seashore is currently offline Matt SeashoreFriend
Messages: 58
Registered: July 2009
Member
This is a multi-part message in MIME format.
--------------080304030905020703050703
Content-Type: text/plain; charset=ISO-8859-1; format=flowed
Content-Transfer-Encoding: 7bit

As I look that this more, it seems that EMF Compare assumes that any
lists it's comparing contain only EObjects and not any other kind of
Object. Any list which doesn't contain EObjects will either be ignored
by EMF Compare or (worst case) have an exception thrown.

I think this is a bug (see below and attached files for more
info...maybe I'm just missing something here?). Anyone agree/disagree?

The heart of the problem appears that AttributeChangeRightTarget and
AttributeChangeLeftTarget's 'target' field is an EObject. The target is
the object in the list that changed. So, when you're Diffing a list of
EObjects, everything works, but when you have a list of "Object", it
either throws an exception on setting the 'target' (class cast
exception) or doesn't register as an 'Add/RemoveAttribute' at all
(instanceof check)!

For where these things occur (not an exhaustive list):
-GenericDiffEngine (version 1.17), lines 838,840,842 for the class cast
exception (finally happens in internalFindActualEObject, line 1588)
-GenericDiffEngine, lines 1120,1130 for the instanceof check which
prevents the add/remove.

I've attached a few files which show the issue (and a full zipped
Eclipse project if it gets through). The code to run the compare it is
set up in Application.java and outputs to the console.

Please let me know if there's something I'm missing, otherwise, I can go
ahead and file a bug report about this.

Thanks!

Matt


Matt Seashore wrote:
> I have an model in which one of the objects contains a list of
> 'java.lang.String' elements. I would like to run a match/diff and get
> an 'AddAttribute' or something similar when a new string is added to the
> list.
>
> However, when I add a new string to one side of the model and run the
> GenericMatchEngine (2 way) on it, I don't get an
> 'unMatchedElement/Attribute' for the newly added String, so nothing
> shows up in the Diff.
>
> Is there a way to run a comparison like this with a list of Strings (or
> maybe this is this a known issue with EMF Compare)?
>
> I can create a 'snippet' to recreate the problem or provide more
> detailed information if that would be helpful. I'm running with EMF
> Compare 0.80 (june 18th).
>
> Thanks again for all the hard work!
>
> Matt
>

--------------080304030905020703050703
Content-Type: text/xml;
name="model.ecore"
Content-Transfer-Encoding: 7bit
Content-Disposition: inline;
filename="model.ecore"

<?xml version="1.0" encoding="UTF-8"?>
<ecore:EPackage xmi:version="2.0"
xmlns:xmi="http://www.omg.org/XMI" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance"
xmlns:ecore="http://www.eclipse.org/emf/2002/Ecore" name="PhotoDatabase"
nsURI="Example" nsPrefix="PhotoDatabase">
<eClassifiers xsi:type="ecore:EClass" name="Photo">
<eStructuralFeatures xsi:type="ecore:EAttribute" name="name" eType="ecore:EDataType http://www.eclipse.org/emf/2002/Ecore#//EString"
defaultValueLiteral=""/>
<eStructuralFeatures xsi:type="ecore:EAttribute" name="tags" upperBound="-1" eType="ecore:EDataType http://www.eclipse.org/emf/2002/Ecore#//EString"/>
<eStructuralFeatures xsi:type="ecore:EAttribute" name="id" eType="ecore:EDataType http://www.eclipse.org/emf/2002/Ecore#//EString"
iD="true"/>
</eClassifiers>
</ecore:EPackage>

--------------080304030905020703050703
Content-Type: text/plain;
name="Application.java"
Content-Transfer-Encoding: 7bit
Content-Disposition: inline;
filename="Application.java"

package emfcomparedatalist;

import java.io.IOException;
import java.util.HashMap;

import org.eclipse.emf.common.util.URI;
import org.eclipse.emf.compare.diff.engine.GenericDiffEngine;
import org.eclipse.emf.compare.diff.metamodel.DiffModel;
import org.eclipse.emf.compare.match.engine.GenericMatchEngine;
import org.eclipse.emf.compare.match.metamodel.MatchModel;
import org.eclipse.emf.compare.util.ModelUtils;
import org.eclipse.emf.ecore.resource.Resource;
import org.eclipse.emf.ecore.xmi.impl.XMIResourceImpl;
import org.eclipse.equinox.app.IApplication;
import org.eclipse.equinox.app.IApplicationContext;

import PhotoDatabase.ExampleFactory;
import PhotoDatabase.Photo;

/**
* This class controls all aspects of the application's execution
*/
public class Application implements IApplication {

/* (non-Javadoc)
* @see org.eclipse.equinox.app.IApplication#start(org.eclipse.equin ox.app.IApplicationContext)
*/
public Object start(IApplicationContext context) throws Exception {
Photo beforePhoto = ExampleFactory.eINSTANCE.createPhoto();
Photo afterPhoto = ExampleFactory.eINSTANCE.createPhoto();
Photo ancestorPhoto = ExampleFactory.eINSTANCE.createPhoto();

beforePhoto.setId("123");
afterPhoto.setId("123");
ancestorPhoto.setId("123");

beforePhoto.setName("test");
afterPhoto.setName("test");
ancestorPhoto.setName("");

beforePhoto.getTags().add("camping");
afterPhoto.getTags().add("camping");
afterPhoto.getTags().add("fishing");

Resource resourceBefore = new XMIResourceImpl(URI.createURI("http://ex/before"));
Resource resourceAfter = new XMIResourceImpl(URI.createURI("http://ex/after"));
Resource resourceAncestor = new XMIResourceImpl(URI.createURI("http://ex/ancestor"));

resourceBefore.getContents().add(beforePhoto);
resourceAfter.getContents().add(afterPhoto);
resourceAncestor.getContents().add(ancestorPhoto);

HashMap<String, Object> options = new HashMap<String, Object>();

GenericMatchEngine genericMatch = new GenericMatchEngine();
GenericDiffEngine diffEngine = new GenericDiffEngine();

try
{
MatchModel match2way = genericMatch.resourceMatch(resourceBefore, resourceAfter,
options);
System.out.print("\n2 way match: \n"+ModelUtils.serialize(match2way));

DiffModel diff2way = diffEngine.doDiff(match2way, false);
System.out.print("\n2 way diff: (Note no differences shown)\n"+ModelUtils.serialize(diff2way));


MatchModel match3way = genericMatch.resourceMatch(resourceBefore, resourceAfter,resourceAncestor,
options);
System.out.print("\n3 way match: \n"+ModelUtils.serialize(match3way));

DiffModel diff3way = diffEngine.doDiff(match3way, true);
System.out.print("Never get here! \n"+ModelUtils.serialize(diff3way));
}
catch(Exception ex)
{
ex.printStackTrace();
}

return IApplication.EXIT_OK;
}

/* (non-Javadoc)
* @see org.eclipse.equinox.app.IApplication#stop()
*/
public void stop() {
// nothing to do
}
}

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Re: [EMF Compare] GenericMatchEngine - Lists of java.lang.String aren't being matched [message #127327 is a reply to message #127295] Sat, 19 July 2008 10:30 Go to previous messageGo to next message
Laurent Goubet is currently offline Laurent GoubetFriend
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Hi Matt,

This indeed seems like a bug. Could you open a new bugzilla issue with
the snippet you've provided here?

Thanks!

Laurent Goubet
Obeo

Matt Seashore a
Re: [EMF Compare] GenericMatchEngine - Lists of java.lang.String aren't being matched [message #127373 is a reply to message #127327] Mon, 21 July 2008 15:41 Go to previous message
Matt Seashore is currently offline Matt SeashoreFriend
Messages: 58
Registered: July 2009
Member
Thanks! I've opened an issue in bugzilla here:

https://bugs.eclipse.org/bugs/show_bug.cgi?id=241555

Matt

laurent Goubet wrote:
> Hi Matt,
>
> This indeed seems like a bug. Could you open a new bugzilla issue with
> the snippet you've provided here?
>
> Thanks!
>
> Laurent Goubet
> Obeo
>
> Matt Seashore a écrit :
>> As I look that this more, it seems that EMF Compare assumes that any
>> lists it's comparing contain only EObjects and not any other kind of
>> Object. Any list which doesn't contain EObjects will either be
>> ignored by EMF Compare or (worst case) have an exception thrown.
>>
>> I think this is a bug (see below and attached files for more
>> info...maybe I'm just missing something here?). Anyone agree/disagree?
>>
>> The heart of the problem appears that AttributeChangeRightTarget and
>> AttributeChangeLeftTarget's 'target' field is an EObject. The target
>> is the object in the list that changed. So, when you're Diffing a
>> list of EObjects, everything works, but when you have a list of
>> "Object", it either throws an exception on setting the 'target' (class
>> cast exception) or doesn't register as an 'Add/RemoveAttribute' at all
>> (instanceof check)!
>>
>> For where these things occur (not an exhaustive list):
>> -GenericDiffEngine (version 1.17), lines 838,840,842 for the class
>> cast exception (finally happens in internalFindActualEObject, line 1588)
>> -GenericDiffEngine, lines 1120,1130 for the instanceof check which
>> prevents the add/remove.
>>
>> I've attached a few files which show the issue (and a full zipped
>> Eclipse project if it gets through). The code to run the compare it
>> is set up in Application.java and outputs to the console.
>>
>> Please let me know if there's something I'm missing, otherwise, I can
>> go ahead and file a bug report about this.
>>
>> Thanks!
>>
>> Matt
>>
>>
>> Matt Seashore wrote:
>>> I have an model in which one of the objects contains a list of
>>> 'java.lang.String' elements. I would like to run a match/diff and
>>> get an 'AddAttribute' or something similar when a new string is added
>>> to the list.
>>>
>>> However, when I add a new string to one side of the model and run the
>>> GenericMatchEngine (2 way) on it, I don't get an
>>> 'unMatchedElement/Attribute' for the newly added String, so nothing
>>> shows up in the Diff.
>>>
>>> Is there a way to run a comparison like this with a list of Strings
>>> (or maybe this is this a known issue with EMF Compare)?
>>>
>>> I can create a 'snippet' to recreate the problem or provide more
>>> detailed information if that would be helpful. I'm running with EMF
>>> Compare 0.80 (june 18th).
>>>
>>> Thanks again for all the hard work!
>>>
>>> Matt
>>>
>
Re: [EMF Compare] GenericMatchEngine - Lists of java.lang.String aren't being matched [message #620126 is a reply to message #127181] Fri, 18 July 2008 22:30 Go to previous message
Matt Seashore is currently offline Matt SeashoreFriend
Messages: 58
Registered: July 2009
Member
This is a multi-part message in MIME format.
--------------080304030905020703050703
Content-Type: text/plain; charset=ISO-8859-1; format=flowed
Content-Transfer-Encoding: 7bit

As I look that this more, it seems that EMF Compare assumes that any
lists it's comparing contain only EObjects and not any other kind of
Object. Any list which doesn't contain EObjects will either be ignored
by EMF Compare or (worst case) have an exception thrown.

I think this is a bug (see below and attached files for more
info...maybe I'm just missing something here?). Anyone agree/disagree?

The heart of the problem appears that AttributeChangeRightTarget and
AttributeChangeLeftTarget's 'target' field is an EObject. The target is
the object in the list that changed. So, when you're Diffing a list of
EObjects, everything works, but when you have a list of "Object", it
either throws an exception on setting the 'target' (class cast
exception) or doesn't register as an 'Add/RemoveAttribute' at all
(instanceof check)!

For where these things occur (not an exhaustive list):
-GenericDiffEngine (version 1.17), lines 838,840,842 for the class cast
exception (finally happens in internalFindActualEObject, line 1588)
-GenericDiffEngine, lines 1120,1130 for the instanceof check which
prevents the add/remove.

I've attached a few files which show the issue (and a full zipped
Eclipse project if it gets through). The code to run the compare it is
set up in Application.java and outputs to the console.

Please let me know if there's something I'm missing, otherwise, I can go
ahead and file a bug report about this.

Thanks!

Matt


Matt Seashore wrote:
> I have an model in which one of the objects contains a list of
> 'java.lang.String' elements. I would like to run a match/diff and get
> an 'AddAttribute' or something similar when a new string is added to the
> list.
>
> However, when I add a new string to one side of the model and run the
> GenericMatchEngine (2 way) on it, I don't get an
> 'unMatchedElement/Attribute' for the newly added String, so nothing
> shows up in the Diff.
>
> Is there a way to run a comparison like this with a list of Strings (or
> maybe this is this a known issue with EMF Compare)?
>
> I can create a 'snippet' to recreate the problem or provide more
> detailed information if that would be helpful. I'm running with EMF
> Compare 0.80 (june 18th).
>
> Thanks again for all the hard work!
>
> Matt
>

--------------080304030905020703050703
Content-Type: text/xml;
name="model.ecore"
Content-Transfer-Encoding: 7bit
Content-Disposition: inline;
filename="model.ecore"

<?xml version="1.0" encoding="UTF-8"?>
<ecore:EPackage xmi:version="2.0"
xmlns:xmi="http://www.omg.org/XMI" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance"
xmlns:ecore="http://www.eclipse.org/emf/2002/Ecore" name="PhotoDatabase"
nsURI="Example" nsPrefix="PhotoDatabase">
<eClassifiers xsi:type="ecore:EClass" name="Photo">
<eStructuralFeatures xsi:type="ecore:EAttribute" name="name" eType="ecore:EDataType http://www.eclipse.org/emf/2002/Ecore#//EString"
defaultValueLiteral=""/>
<eStructuralFeatures xsi:type="ecore:EAttribute" name="tags" upperBound="-1" eType="ecore:EDataType http://www.eclipse.org/emf/2002/Ecore#//EString"/>
<eStructuralFeatures xsi:type="ecore:EAttribute" name="id" eType="ecore:EDataType http://www.eclipse.org/emf/2002/Ecore#//EString"
iD="true"/>
</eClassifiers>
</ecore:EPackage>

--------------080304030905020703050703
Content-Type: text/plain;
name="Application.java"
Content-Transfer-Encoding: 7bit
Content-Disposition: inline;
filename="Application.java"

package emfcomparedatalist;

import java.io.IOException;
import java.util.HashMap;

import org.eclipse.emf.common.util.URI;
import org.eclipse.emf.compare.diff.engine.GenericDiffEngine;
import org.eclipse.emf.compare.diff.metamodel.DiffModel;
import org.eclipse.emf.compare.match.engine.GenericMatchEngine;
import org.eclipse.emf.compare.match.metamodel.MatchModel;
import org.eclipse.emf.compare.util.ModelUtils;
import org.eclipse.emf.ecore.resource.Resource;
import org.eclipse.emf.ecore.xmi.impl.XMIResourceImpl;
import org.eclipse.equinox.app.IApplication;
import org.eclipse.equinox.app.IApplicationContext;

import PhotoDatabase.ExampleFactory;
import PhotoDatabase.Photo;

/**
* This class controls all aspects of the application's execution
*/
public class Application implements IApplication {

/* (non-Javadoc)
* @see org.eclipse.equinox.app.IApplication#start(org.eclipse.equin ox.app.IApplicationContext)
*/
public Object start(IApplicationContext context) throws Exception {
Photo beforePhoto = ExampleFactory.eINSTANCE.createPhoto();
Photo afterPhoto = ExampleFactory.eINSTANCE.createPhoto();
Photo ancestorPhoto = ExampleFactory.eINSTANCE.createPhoto();

beforePhoto.setId("123");
afterPhoto.setId("123");
ancestorPhoto.setId("123");

beforePhoto.setName("test");
afterPhoto.setName("test");
ancestorPhoto.setName("");

beforePhoto.getTags().add("camping");
afterPhoto.getTags().add("camping");
afterPhoto.getTags().add("fishing");

Resource resourceBefore = new XMIResourceImpl(URI.createURI("http://ex/before"));
Resource resourceAfter = new XMIResourceImpl(URI.createURI("http://ex/after"));
Resource resourceAncestor = new XMIResourceImpl(URI.createURI("http://ex/ancestor"));

resourceBefore.getContents().add(beforePhoto);
resourceAfter.getContents().add(afterPhoto);
resourceAncestor.getContents().add(ancestorPhoto);

HashMap<String, Object> options = new HashMap<String, Object>();

GenericMatchEngine genericMatch = new GenericMatchEngine();
GenericDiffEngine diffEngine = new GenericDiffEngine();

try
{
MatchModel match2way = genericMatch.resourceMatch(resourceBefore, resourceAfter,
options);
System.out.print("\n2 way match: \n"+ModelUtils.serialize(match2way));

DiffModel diff2way = diffEngine.doDiff(match2way, false);
System.out.print("\n2 way diff: (Note no differences shown)\n"+ModelUtils.serialize(diff2way));


MatchModel match3way = genericMatch.resourceMatch(resourceBefore, resourceAfter,resourceAncestor,
options);
System.out.print("\n3 way match: \n"+ModelUtils.serialize(match3way));

DiffModel diff3way = diffEngine.doDiff(match3way, true);
System.out.print("Never get here! \n"+ModelUtils.serialize(diff3way));
}
catch(Exception ex)
{
ex.printStackTrace();
}

return IApplication.EXIT_OK;
}

/* (non-Javadoc)
* @see org.eclipse.equinox.app.IApplication#stop()
*/
public void stop() {
// nothing to do
}
}

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Re: [EMF Compare] GenericMatchEngine - Lists of java.lang.String aren't being matched [message #620129 is a reply to message #127295] Sat, 19 July 2008 10:30 Go to previous message
Laurent Goubet is currently offline Laurent GoubetFriend
Messages: 1881
Registered: July 2009
Senior Member
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Hi Matt,

This indeed seems like a bug. Could you open a new bugzilla issue with
the snippet you've provided here?

Thanks!

Laurent Goubet
Obeo

Matt Seashore a
Re: [EMF Compare] GenericMatchEngine - Lists of java.lang.String aren't being matched [message #620135 is a reply to message #127327] Mon, 21 July 2008 15:41 Go to previous message
Matt Seashore is currently offline Matt SeashoreFriend
Messages: 58
Registered: July 2009
Member
Thanks! I've opened an issue in bugzilla here:

https://bugs.eclipse.org/bugs/show_bug.cgi?id=241555

Matt

laurent Goubet wrote:
> Hi Matt,
>
> This indeed seems like a bug. Could you open a new bugzilla issue with
> the snippet you've provided here?
>
> Thanks!
>
> Laurent Goubet
> Obeo
>
> Matt Seashore a écrit :
>> As I look that this more, it seems that EMF Compare assumes that any
>> lists it's comparing contain only EObjects and not any other kind of
>> Object. Any list which doesn't contain EObjects will either be
>> ignored by EMF Compare or (worst case) have an exception thrown.
>>
>> I think this is a bug (see below and attached files for more
>> info...maybe I'm just missing something here?). Anyone agree/disagree?
>>
>> The heart of the problem appears that AttributeChangeRightTarget and
>> AttributeChangeLeftTarget's 'target' field is an EObject. The target
>> is the object in the list that changed. So, when you're Diffing a
>> list of EObjects, everything works, but when you have a list of
>> "Object", it either throws an exception on setting the 'target' (class
>> cast exception) or doesn't register as an 'Add/RemoveAttribute' at all
>> (instanceof check)!
>>
>> For where these things occur (not an exhaustive list):
>> -GenericDiffEngine (version 1.17), lines 838,840,842 for the class
>> cast exception (finally happens in internalFindActualEObject, line 1588)
>> -GenericDiffEngine, lines 1120,1130 for the instanceof check which
>> prevents the add/remove.
>>
>> I've attached a few files which show the issue (and a full zipped
>> Eclipse project if it gets through). The code to run the compare it
>> is set up in Application.java and outputs to the console.
>>
>> Please let me know if there's something I'm missing, otherwise, I can
>> go ahead and file a bug report about this.
>>
>> Thanks!
>>
>> Matt
>>
>>
>> Matt Seashore wrote:
>>> I have an model in which one of the objects contains a list of
>>> 'java.lang.String' elements. I would like to run a match/diff and
>>> get an 'AddAttribute' or something similar when a new string is added
>>> to the list.
>>>
>>> However, when I add a new string to one side of the model and run the
>>> GenericMatchEngine (2 way) on it, I don't get an
>>> 'unMatchedElement/Attribute' for the newly added String, so nothing
>>> shows up in the Diff.
>>>
>>> Is there a way to run a comparison like this with a list of Strings
>>> (or maybe this is this a known issue with EMF Compare)?
>>>
>>> I can create a 'snippet' to recreate the problem or provide more
>>> detailed information if that would be helpful. I'm running with EMF
>>> Compare 0.80 (june 18th).
>>>
>>> Thanks again for all the hard work!
>>>
>>> Matt
>>>
>
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