From chemistry-request@ccl.net Sat Jun  5 01:40:01 2004
Received: from iris (iris.inc.bme.hu [152.66.63.5])
	by server.ccl.net (8.12.8/8.12.8) with ESMTP id i556e0fn002923
	for <CHEMISTRY*at*ccl.net>; Sat, 5 Jun 2004 01:40:01 -0500
Received: from dino (helo=localhost)
	by iris with local-esmtp (Exim 3.36 #1 (Debian))
	id 1BWUtz-0007sd-00; Sat, 05 Jun 2004 08:43:35 +0200
Date: Sat, 5 Jun 2004 08:43:35 +0200 (CEST)
From: Szieberth Denes <dino*at*iris.inc.bme.hu>
To: Rick Venable <rvenable*at*pollux.cber.nih.gov>
cc: CHEMISTRY*at*ccl.net
Subject: Re: CCL:3D Iso-valued Surfaces
In-Reply-To: <Pine.SGI.4.51.0406042329420.484025*at*pollux.cber.nih.gov>
Message-ID: <Pine.LNX.4.40.0406050841160.30103-100000*at*iris.inc.bme.hu>
MIME-Version: 1.0
Content-Type: TEXT/PLAIN; charset=US-ASCII
X-Spam-Status: No, hits=0.0 required=7.5 tests=WORKSTATION_NAME6 autolearn=no 
	version=2.61
X-Spam-Checker-Version: SpamAssassin 2.61 (1.212.2.1-2003-12-09-exp) on 
	servernd.ccl.net



On Fri, 4 Jun 2004, Rick Venable wrote:

> Can anyone recommend a good freeware graphics program for Linux or IRIX
> that can render iso-valued surfaces from a 3D grid dataset?  I'm looking
> for something with a well documented input data format.  I'd considered
> a QM orbital viewer, but my data units are quite a bit different.
>

Hi,
www.opendx.org.
regards
Denes




From chemistry-request@ccl.net Sat Jun  5 09:21:48 2004
Received: from wn1.sci.kun.nl (wn1.sci.kun.nl [131.174.8.1])
	by server.ccl.net (8.12.8/8.12.8) with ESMTP id i55ELkZS023507
	for <chemistry_at_ccl.net>; Sat, 5 Jun 2004 09:21:46 -0500
Received: from dialin-27.sci.kun.nl [131.174.9.27]  (helo=sci.kun.nl)
	by wn1.sci.kun.nl (8.12.10/3.67) with ESMTP id i55EPPWa029589;
	Sat, 5 Jun 2004 16:25:25 +0200 (MEST)
From: Egon Willighagen <egonw_at_sci.kun.nl>
Reply-To: egonw_at_sci.kun.nl
To: "Mark Thompson" <mark_at_arguslab.com>
Subject: Re: CCL:Why program in Java?
Date: Sat, 5 Jun 2004 16:27:13 +0200
User-Agent: KMail/1.6.1
Cc: <jle_at_TheWorld.com>, <chemistry_at_ccl.net>
References: <000001c44a4d$026a61c0$0200a8c0@planaria>
In-Reply-To: <000001c44a4d$026a61c0$0200a8c0@planaria>
MIME-Version: 1.0
Content-Disposition: inline
Content-Type: text/plain;
  charset="iso-8859-1"
Content-Transfer-Encoding: 7bit
Message-Id: <200406051627.13352.egonw_at_sci.kun.nl>
X-Spam-Status: No, hits=0.0 required=7.5 tests=none autolearn=no version=2.61
X-Spam-Checker-Version: SpamAssassin 2.61 (1.212.2.1-2003-12-09-exp) on 
	servernd.ccl.net

On Friday 04 June 2004 18:00, Mark Thompson wrote:
> One major drawback to scientific programing in Java, at the present time,
> is good 3D graphics. 

I agree with the situation that OpenGL support for Java is not where it should 
be... Java3D had very many bugs, and I guess JOGL is its successor announced 
quite some time ago already, and have not heard much about it yet...

But, the good news is, that for top quality molecular graphics, you don't 
necessarily need hardware accelerated graphics... Unless you need a *very* 
general 3D library, but just focus on molecular stuff, I would suggest to 
have a look at the Jmol v10 prereleases of which demo's can be found on this 
website:

http://jmol.sourceforge.net/preview/

Note that thousands of atoms as in the Nanotech example are not really a 
problem. In the field of biomolecular sciences, there are nice examples of 3D 
rendering in cartoon, ribbon format and some others.

Not likely the best performance ever, but very close.

Egon

From chemistry-request@ccl.net Sat Jun  5 15:20:29 2004
Received: from anubis.medic.chalmers.se (anubis.medic.chalmers.se [129.16.30.218])
	by server.ccl.net (8.12.8/8.12.8) with ESMTP id i55KKOGx010891
	for <chemistry(at)ccl.net>; Sat, 5 Jun 2004 15:20:25 -0500
Received: from fy.chalmers.se (sss19-10.inre.asu.edu [129.219.101.123])
	by anubis.medic.chalmers.se (Postfix) with ESMTP
	id 4A7BC11CC; Sat,  5 Jun 2004 22:24:02 +0200 (MEST)
Message-ID: <40C22BD8.9000907(at)fy.chalmers.se>
Date: Sat, 05 Jun 2004 13:23:52 -0700
From: Henrik Markusson <henrikn(at)fy.chalmers.se>
User-Agent: Mozilla/5.0 (Windows; U; Windows NT 5.1; en-US; rv:1.4) Gecko/20030624 Netscape/7.1 (ax)
X-Accept-Language: en-us, en
MIME-Version: 1.0
To: "Pradyumna S. Singh" <pradyu(at)chem.udel.edu>, chemistry(at)ccl.net
Subject: Re: CCL:Del G from PCM
References: <Pine.SGI.4.10.10406041941090.358338-100000(at)chem.udel.edu>
In-Reply-To: <Pine.SGI.4.10.10406041941090.358338-100000(at)chem.udel.edu>
Content-Type: text/plain; charset=us-ascii; format=flowed
Content-Transfer-Encoding: 7bit
X-Spam-Status: No, hits=0.6 required=7.5 tests=FVGT_s_SINGLE_LETTER 
	autolearn=no version=2.61
X-Spam-Checker-Version: SpamAssassin 2.61 (1.212.2.1-2003-12-09-exp) on 
	servernd.ccl.net

Hello!
Use the keyword SCFVAC with the read keyword. You might also want to 
check out other default changes in the gaussian website online manual.
Good luck!
Henrik

Pradyumna S. Singh wrote:

>Hello,
>
>COuld somebody on the list tell me how I could obtain an explicit value
>for Delta G (solvation) using the PCM on Gaussian 03 ? G98 gave an
>explicit value, but G03 doesnt seem to be doing so.
>
>Thanks,
>Pradyumna
>
>
>
>
>
>-= This is automatically added to each message by the mailing script =-
>To send e-mail to subscribers of CCL put the string CCL: on your Subject: line
>and send your message to:  CHEMISTRY(at)ccl.net
>
>Send your subscription/unsubscription requests to: CHEMISTRY-REQUEST(at)ccl.net 
>HOME Page: http://www.ccl.net   | Jobs Page: http://www.ccl.net/jobs 
>
>If your mail is bouncing from CCL.NET domain send it to the maintainer:
>Jan Labanowski,  jlabanow(at)nd.edu (read about it on CCL Home Page)
>-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+-+
>
>
>
>
>
>  
>


From chemistry-request@ccl.net Sat Jun  5 10:20:04 2004
Received: from collapsed.wormhole.hu (collapsed.wormhole.hu [195.70.35.130])
	by server.ccl.net (8.12.8/8.12.8) with ESMTP id i55FK4ZS026922
	for <chemistry^at^ccl.net>; Sat, 5 Jun 2004 10:20:04 -0500
Received: from zeus.canet.hu ([212.97.0.169] helo=Moon)
	by collapsed.wormhole.hu with asmtp (Exim 4.34 #1 (Debian))
	id 1BWd1N-0001st-Fs
	for <chemistry^at^ccl.net>; Sat, 05 Jun 2004 17:23:46 +0200
Received: from szilva (helo=localhost)
	by Moon with local-esmtp (Exim 3.36 #1 (Debian))
	id 1BWcvm-0000Tn-00
	for <chemistry^at^ccl.net>; Sat, 05 Jun 2004 17:17:58 +0200
Date: Sat, 5 Jun 2004 17:17:57 +0200 (CEST)
From: Szilveszter JUHOS <szilveszter.juhos^at^chemaxon.hu>
X-X-Sender: szilva@Moon
To: CCL <chemistry^at^ccl.net>
Subject: CCL:Why program in Java?
In-Reply-To: <200406051627.13352.egonw^at^sci.kun.nl>
Message-ID: <Pine.LNX.4.58.0406051657430.515@Moon>
References: <000001c44a4d$026a61c0$0200a8c0@planaria> <200406051627.13352.egonw^at^sci.kun.nl>
MIME-Version: 1.0
Content-Type: TEXT/PLAIN; charset=US-ASCII
Sender: Szilveszter Juhos <szilva^at^computer.org>
X-Authenticated-Sender: cb03f6d7a9a75da4bed42e75e281e973

Depending on the task java can be viable option - note I am working for a
company writing java software for chemists, so I am biased :) Well, for
high-quality 3D java have a look to VTK: http://www.vtk.org/ that has java
binding. AFAIK CheVi (never seen in action myself) uses VTK:
http://www.simbiosys.ca/visualization.html

Szilva
> On Friday 04 June 2004 18:00, Mark Thompson wrote:
> > One major drawback to scientific programing in Java, at the present time,
> > is good 3D graphics.


From chemistry-request@ccl.net Sat Jun  5 08:43:58 2004
Received: from ned.sims.nrc.ca (ned.SIMS.nrc.ca [132.246.109.100])
	by server.ccl.net (8.12.8/8.12.8) with ESMTP id i55DhvZS021284
	for <CHEMISTRY..at..ccl.net>; Sat, 5 Jun 2004 08:43:57 -0500
Received: from ned.sims.nrc.ca (localhost [127.0.0.1])
	by ned.sims.nrc.ca (8.12.6/8.12.6/SuSE Linux 0.6) with ESMTP id i55DlOt1022070;
	Sat, 5 Jun 2004 09:47:29 -0400
Received: from localhost (ps@localhost)
	by ned.sims.nrc.ca (8.12.6/8.12.6/Submit) with ESMTP id i55DlONA022067;
	Sat, 5 Jun 2004 09:47:24 -0400
Date: Sat, 5 Jun 2004 09:47:24 -0400 (EDT)
From: Serguei Patchkovskii <ps..at..ned.sims.nrc.ca>
Reply-To: Serguei.Patchkovskii..at..nrc.ca
To: Rick Venable <rvenable..at..pollux.cber.nih.gov>
cc: CHEMISTRY..at..ccl.net
Subject: Re: CCL:3D Iso-valued Surfaces
In-Reply-To: <Pine.SGI.4.51.0406042329420.484025..at..pollux.cber.nih.gov>
Message-ID: <Pine.LNX.4.44.0406050932050.21895-100001..at..ned.sims.nrc.ca>
MIME-Version: 1.0
Content-Type: MULTIPART/MIXED; BOUNDARY="-159095699-534147126-1086443244=:22019"
X-Virus-Scanned: by AMaViS - amavis-milter (http://www.amavis.org/)
X-Spam-Status: No, hits=0.0 required=7.5 tests=none autolearn=no version=2.61
X-Spam-Checker-Version: SpamAssassin 2.61 (1.212.2.1-2003-12-09-exp) on 
	servernd.ccl.net

  This message is in MIME format.  The first part should be readable text,
  while the remaining parts are likely unreadable without MIME-aware tools.
  Send mail to mime..at..docserver.cac.washington.edu for more info.

---159095699-534147126-1086443244=:22019
Content-Type: TEXT/PLAIN; charset=US-ASCII


On Fri, 4 Jun 2004, Rick Venable wrote:

> Can anyone recommend a good freeware graphics program for Linux or IRIX
> that can render iso-valued surfaces from a 3D grid dataset?  I'm looking
> for something with a well documented input data format.  I'd considered
> a QM orbital viewer, but my data units are quite a bit different.

OpenDX. http://www.opendx.org/

It can handle arbitrary grids (not just uniformly spaced grids), periodic
boundaries, both scalar and vector fields (tensor fields are possible as
well - but the display gets a little cluttered). It can handle
transparency and volumetric rendering as well. You also get very
detailed control over exactly what gets rendered, and how. The input
format is very well documented, too - both for static data sets, and for
run-time, dynamic data exchange.

Just to give you an idea, the attached picture (which is an isosurface)
has been prepared with OpenDX.

Serguei


---159095699-534147126-1086443244=:22019
Content-Type: IMAGE/jpeg; name="iso.jpg"
Content-Transfer-Encoding: BASE64
Content-ID: <Pine.LNX.4.44.0406050947240.22019..at..ned.sims.nrc.ca>
Content-Description: 
Content-Disposition: attachment; filename="iso.jpg"
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---159095699-534147126-1086443244=:22019--


