From mboxrd@z Thu Jan 1 00:00:00 1970 X-Msuck: nntp://news.gmane.io/gmane.comp.tex.context/4012 Path: main.gmane.org!not-for-mail From: Taco Hoekwater Newsgroups: gmane.comp.tex.context Subject: TeXCalc Date: Sun, 11 Feb 2001 02:39:44 +0100 Sender: owner-ntg-context@let.uu.nl Message-ID: <3A85ED60.C2C266F0@quicknet.nl> References: <3.0.6.32.20010208110517.019e6790@server-1> <3.0.6.32.20010209093726.0173d350@server-1> NNTP-Posting-Host: coloc-standby.netfonds.no Mime-Version: 1.0 Content-Type: multipart/mixed; boundary="------------5E41125169273536D3B7E88A" X-Trace: main.gmane.org 1035394708 22060 80.91.224.250 (23 Oct 2002 17:38:28 GMT) X-Complaints-To: usenet@main.gmane.org NNTP-Posting-Date: Wed, 23 Oct 2002 17:38:28 +0000 (UTC) Original-To: ntg-context@ntg.nl Xref: main.gmane.org gmane.comp.tex.context:4012 X-Report-Spam: http://spam.gmane.org/gmane.comp.tex.context:4012 This is a multi-part message in MIME format. --------------5E41125169273536D3B7E88A Content-Type: text/plain; charset=us-ascii Content-Transfer-Encoding: 7bit Hi all, For those who want to play with a little new program, here is TeXCalc, version 0.1. TeXCalc is a program that can convert and do calculus with TeX units. You know the "how much is (21cm-28pc)/2" problems you have when you design a new layout? TeXCalc can (or should) solve these problems! All of TeX's normal units are supported, conversion is quite accurate (most calculations use scaled points), and input is fairly fast. The expression can be entered from the keyboard as "21c28p-2/", and you need only one keystroke to get the result in a different unit (like alt-t for points) Let me know what you think. 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