Home » Modeling » UML2 » Re: Creating Stereotype extending AssociationEnd
Re: Creating Stereotype extending AssociationEnd [message #478459] |
Tue, 26 May 2009 16:55 |
Ed Merks Messages: 33218 Registered: July 2009 |
Senior Member |
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Gilbert,
I've added the UML2 newsgroup to the "to" list of the reply to redirect
this question to the appropriate group.
Gilbert Mirenque wrote:
> Hello NG,
> I don't exactly know if this is the right NG. Please point me to the
> correct one.
> I recently started to create a UML-profile which is aimed to put some
> special semantics to my use-cases and class-diagrams. I added a
> stereotype DataChannel extending the "Association"-metaclass. Now it
> would be fine if I could create a new stereotype "Event" extending
> AssociationEnd. But I couldn't select "AssociationEnd" as a metaclass in
> my profile. And if it is possible - how can I specify that the
> association-ends of my newly created stereotype DataChannel are of
> stereotype "Event"? Or isn't it possible at all?
>
> greets
> Gilbert
>
Ed Merks
Professional Support: https://www.macromodeling.com/
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Re: Creating Stereotype extending AssociationEnd [message #478466 is a reply to message #478464] |
Wed, 27 May 2009 15:24 |
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It seems that my newsreader doesn't know how to reply to cross-posted
messages, so here is my reply from the EMF newsgroup.
-----8<-----
Hi, Gilbert,
There is no AssociationEnd metaclass: it was removed in UML 2.0.
Instead, association ends are represented by the Property metaclass.
So, your Event stereotype needs to extend Property.
To assert that the ends of a <<dataChannel>> association are <<events>>
you will need to use OCL. e.g.:
context DataChannel
inv ends_are_events: base_Assocation.end->forAll(e |
e.extension_Event->notEmpty())
HTH,
Christian
----->8-----
On Wed, 2009-05-27 at 10:23 +0200, Gilbert Mirenque wrote:
> no suggestions?
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It seems that my newsreader doesn't know how to reply to cross-posted messages, so here is my reply from the EMF newsgroup.<BR>
<BR>
-----8<-----<BR>
<BR>
Hi, Gilbert,<BR>
<BR>
There is no AssociationEnd metaclass: it was removed in UML 2.0. Instead, association ends are represented by the Property metaclass. So, your Event stereotype needs to extend Property.<BR>
<BR>
To assert that the ends of a <<dataChannel>> association are <<events>> you will need to use OCL. e.g.:<BR>
<BR>
context DataChannel<BR>
inv ends_are_events: base_Assocation.end->forAll(e | e.extension_Event->notEmpty())<BR>
<BR>
HTH,<BR>
<BR>
Christian<BR>
<BR>
----->8-----<BR>
<BR>
On Wed, 2009-05-27 at 10:23 +0200, Gilbert Mirenque wrote:
<BLOCKQUOTE TYPE=CITE>
<PRE>
no suggestions?
</PRE>
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Re: Creating Stereotype extending AssociationEnd [message #478492 is a reply to message #478484] |
Thu, 04 June 2009 09:15 |
Eclipse User |
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Originally posted by: formatzeh.gmx.de
This is a multi-part message in MIME format.
--------------060105080205020100080001
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Hi Vlad,
> My article is available at:
> http://www.forum-omondo.com/documentation_eclipseuml_2008/As sociation_ends_stereotypes.html
thanks for your article. Nice possibility to apply stereotypes to
association ends. But I think that it is only possible in this way with
the Omondo Modeler because other UML-Tools, such as TOPCASED, don't
display the specified association-names as attributes in the class (see
the attached screenshots). That means one has first to open the
generated uml-file, select the association-end-property, and apply the
stereotype via the uml2tools from eclipse. Well, the stereotype is
applied but it isn't visible in the diagram. Another issue is that you
could apply the associationEnd-stereotype to any property of a class -
not only to associationEnds.
But a big thank you for your article. I could solve my problem in
another way. I found out that I can model my concerns better with a
StateMachine and not with a ClassDiagram. There I extended the
Pseudostate metaclass.
best regards,
Gilbert
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Re: Creating Stereotype extending AssociationEnd [message #478495 is a reply to message #478492] |
Thu, 04 June 2009 13:12 |
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--=-YpAQoeXb2vYf8Nr9ZORN
Content-Type: text/plain
Content-Transfer-Encoding: 7bit
Hi, Gilbert,
If you need to constrain a stereotype to be applied only to association
ends, then you can do that with another OCL constraint:
context MyProfile::Event
inv is_association_end: base_Property.association.oclIsUndefined()
HTH,
Christian
On Thu, 2009-06-04 at 11:15 +0200, Gilbert Mirenque wrote:
> Hi Vlad,
>
> > My article is available at:
> > http://www.forum-omondo.com/documentation_eclipseuml_2008/As sociation_ends_stereotypes.html
>
>
> thanks for your article. Nice possibility to apply stereotypes to
> association ends. But I think that it is only possible in this way with
> the Omondo Modeler because other UML-Tools, such as TOPCASED, don't
> display the specified association-names as attributes in the class (see
> the attached screenshots). That means one has first to open the
> generated uml-file, select the association-end-property, and apply the
> stereotype via the uml2tools from eclipse. Well, the stereotype is
> applied but it isn't visible in the diagram. Another issue is that you
> could apply the associationEnd-stereotype to any property of a class -
> not only to associationEnds.
> But a big thank you for your article. I could solve my problem in
> another way. I found out that I can model my concerns better with a
> StateMachine and not with a ClassDiagram. There I extended the
> Pseudostate metaclass.
>
> best regards,
> Gilbert
--=-YpAQoeXb2vYf8Nr9ZORN
Content-Type: text/html; charset="utf-8"
<!DOCTYPE HTML PUBLIC "-//W3C//DTD HTML 4.0 TRANSITIONAL//EN">
<HTML>
<HEAD>
<META HTTP-EQUIV="Content-Type" CONTENT="text/html; CHARSET=UTF-8">
<META NAME="GENERATOR" CONTENT="GtkHTML/3.24.1.1">
</HEAD>
<BODY>
Hi, Gilbert,<BR>
<BR>
If you need to constrain a stereotype to be applied only to association ends, then you can do that with another OCL constraint:<BR>
<BR>
context MyProfile::Event<BR>
inv is_association_end: base_Property.association.oclIsUndefined()<BR>
<BR>
HTH,<BR>
<BR>
Christian<BR>
<BR>
On Thu, 2009-06-04 at 11:15 +0200, Gilbert Mirenque wrote:
<BLOCKQUOTE TYPE=CITE>
<PRE>
Hi Vlad,
> My article is available at:
> <A HREF=" http://www.forum-omondo.com/documentation_eclipseuml_2008/As sociation_ends_stereotypes.html"> http://www.forum-omondo.com/documentation_eclipseuml_2008/As sociation_ends_stereotypes.html</A>
thanks for your article. Nice possibility to apply stereotypes to
association ends. But I think that it is only possible in this way with
the Omondo Modeler because other UML-Tools, such as TOPCASED, don't
display the specified association-names as attributes in the class (see
the attached screenshots). That means one has first to open the
generated uml-file, select the association-end-property, and apply the
stereotype via the uml2tools from eclipse. Well, the stereotype is
applied but it isn't visible in the diagram. Another issue is that you
could apply the associationEnd-stereotype to any property of a class -
not only to associationEnds.
But a big thank you for your article. I could solve my problem in
another way. I found out that I can model my concerns better with a
StateMachine and not with a ClassDiagram. There I extended the
Pseudostate metaclass.
best regards,
Gilbert
</PRE>
</BLOCKQUOTE>
</BODY>
</HTML>
--=-YpAQoeXb2vYf8Nr9ZORN--
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Re: Creating Stereotype extending AssociationEnd [message #627641 is a reply to message #478464] |
Wed, 27 May 2009 15:24 |
|
--=-QG4LWcFXZb7t8qbC46WC
Content-Type: text/plain
Content-Transfer-Encoding: 7bit
It seems that my newsreader doesn't know how to reply to cross-posted
messages, so here is my reply from the EMF newsgroup.
-----8<-----
Hi, Gilbert,
There is no AssociationEnd metaclass: it was removed in UML 2.0.
Instead, association ends are represented by the Property metaclass.
So, your Event stereotype needs to extend Property.
To assert that the ends of a <<dataChannel>> association are <<events>>
you will need to use OCL. e.g.:
context DataChannel
inv ends_are_events: base_Assocation.end->forAll(e |
e.extension_Event->notEmpty())
HTH,
Christian
----->8-----
On Wed, 2009-05-27 at 10:23 +0200, Gilbert Mirenque wrote:
> no suggestions?
--=-QG4LWcFXZb7t8qbC46WC
Content-Type: text/html; charset="utf-8"
<!DOCTYPE HTML PUBLIC "-//W3C//DTD HTML 4.0 TRANSITIONAL//EN">
<HTML>
<HEAD>
<META HTTP-EQUIV="Content-Type" CONTENT="text/html; CHARSET=UTF-8">
<META NAME="GENERATOR" CONTENT="GtkHTML/3.24.1.1">
</HEAD>
<BODY>
It seems that my newsreader doesn't know how to reply to cross-posted messages, so here is my reply from the EMF newsgroup.<BR>
<BR>
-----8<-----<BR>
<BR>
Hi, Gilbert,<BR>
<BR>
There is no AssociationEnd metaclass: it was removed in UML 2.0. Instead, association ends are represented by the Property metaclass. So, your Event stereotype needs to extend Property.<BR>
<BR>
To assert that the ends of a <<dataChannel>> association are <<events>> you will need to use OCL. e.g.:<BR>
<BR>
context DataChannel<BR>
inv ends_are_events: base_Assocation.end->forAll(e | e.extension_Event->notEmpty())<BR>
<BR>
HTH,<BR>
<BR>
Christian<BR>
<BR>
----->8-----<BR>
<BR>
On Wed, 2009-05-27 at 10:23 +0200, Gilbert Mirenque wrote:
<BLOCKQUOTE TYPE=CITE>
<PRE>
no suggestions?
</PRE>
</BLOCKQUOTE>
</BODY>
</HTML>
--=-QG4LWcFXZb7t8qbC46WC--
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Re: Creating Stereotype extending AssociationEnd [message #627670 is a reply to message #478484] |
Thu, 04 June 2009 09:15 |
Eclipse User |
|
|
|
Originally posted by: formatzeh.gmx.de
This is a multi-part message in MIME format.
--------------060105080205020100080001
Content-Type: text/plain; charset=ISO-8859-15
Content-Transfer-Encoding: 7bit
Hi Vlad,
> My article is available at:
> http://www.forum-omondo.com/documentation_eclipseuml_2008/As sociation_ends_stereotypes.html
thanks for your article. Nice possibility to apply stereotypes to
association ends. But I think that it is only possible in this way with
the Omondo Modeler because other UML-Tools, such as TOPCASED, don't
display the specified association-names as attributes in the class (see
the attached screenshots). That means one has first to open the
generated uml-file, select the association-end-property, and apply the
stereotype via the uml2tools from eclipse. Well, the stereotype is
applied but it isn't visible in the diagram. Another issue is that you
could apply the associationEnd-stereotype to any property of a class -
not only to associationEnds.
But a big thank you for your article. I could solve my problem in
another way. I found out that I can model my concerns better with a
StateMachine and not with a ClassDiagram. There I extended the
Pseudostate metaclass.
best regards,
Gilbert
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Re: Creating Stereotype extending AssociationEnd [message #627672 is a reply to message #478492] |
Thu, 04 June 2009 13:12 |
|
--=-YpAQoeXb2vYf8Nr9ZORN
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Hi, Gilbert,
If you need to constrain a stereotype to be applied only to association
ends, then you can do that with another OCL constraint:
context MyProfile::Event
inv is_association_end: base_Property.association.oclIsUndefined()
HTH,
Christian
On Thu, 2009-06-04 at 11:15 +0200, Gilbert Mirenque wrote:
> Hi Vlad,
>
> > My article is available at:
> > http://www.forum-omondo.com/documentation_eclipseuml_2008/As sociation_ends_stereotypes.html
>
>
> thanks for your article. Nice possibility to apply stereotypes to
> association ends. But I think that it is only possible in this way with
> the Omondo Modeler because other UML-Tools, such as TOPCASED, don't
> display the specified association-names as attributes in the class (see
> the attached screenshots). That means one has first to open the
> generated uml-file, select the association-end-property, and apply the
> stereotype via the uml2tools from eclipse. Well, the stereotype is
> applied but it isn't visible in the diagram. Another issue is that you
> could apply the associationEnd-stereotype to any property of a class -
> not only to associationEnds.
> But a big thank you for your article. I could solve my problem in
> another way. I found out that I can model my concerns better with a
> StateMachine and not with a ClassDiagram. There I extended the
> Pseudostate metaclass.
>
> best regards,
> Gilbert
--=-YpAQoeXb2vYf8Nr9ZORN
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<!DOCTYPE HTML PUBLIC "-//W3C//DTD HTML 4.0 TRANSITIONAL//EN">
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Hi, Gilbert,<BR>
<BR>
If you need to constrain a stereotype to be applied only to association ends, then you can do that with another OCL constraint:<BR>
<BR>
context MyProfile::Event<BR>
inv is_association_end: base_Property.association.oclIsUndefined()<BR>
<BR>
HTH,<BR>
<BR>
Christian<BR>
<BR>
On Thu, 2009-06-04 at 11:15 +0200, Gilbert Mirenque wrote:
<BLOCKQUOTE TYPE=CITE>
<PRE>
Hi Vlad,
> My article is available at:
> <A HREF=" http://www.forum-omondo.com/documentation_eclipseuml_2008/As sociation_ends_stereotypes.html"> http://www.forum-omondo.com/documentation_eclipseuml_2008/As sociation_ends_stereotypes.html</A>
thanks for your article. Nice possibility to apply stereotypes to
association ends. But I think that it is only possible in this way with
the Omondo Modeler because other UML-Tools, such as TOPCASED, don't
display the specified association-names as attributes in the class (see
the attached screenshots). That means one has first to open the
generated uml-file, select the association-end-property, and apply the
stereotype via the uml2tools from eclipse. Well, the stereotype is
applied but it isn't visible in the diagram. Another issue is that you
could apply the associationEnd-stereotype to any property of a class -
not only to associationEnds.
But a big thank you for your article. I could solve my problem in
another way. I found out that I can model my concerns better with a
StateMachine and not with a ClassDiagram. There I extended the
Pseudostate metaclass.
best regards,
Gilbert
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