From mboxrd@z Thu Jan 1 00:00:00 1970 From: Eric S Fraga Subject: [parser] feature request: column and row numbers available for table-cell elements Date: Wed, 18 Jan 2017 21:55:11 +0000 Message-ID: <87d1fk6nk0.fsf@delle7240.chemeng.ucl.ac.uk> Reply-To: Eric S Fraga Mime-Version: 1.0 Content-Type: multipart/signed; boundary="==-=-="; micalg=pgp-sha1; protocol="application/pgp-signature" Return-path: Received: from eggs.gnu.org ([2001:4830:134:3::10]:43357) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1cTyCO-0002An-Uf for emacs-orgmode@gnu.org; Wed, 18 Jan 2017 16:55:22 -0500 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1cTyCK-0004vq-RU for emacs-orgmode@gnu.org; Wed, 18 Jan 2017 16:55:20 -0500 Received: from mail-db5eur01on0109.outbound.protection.outlook.com ([104.47.2.109]:20984 helo=EUR01-DB5-obe.outbound.protection.outlook.com) by eggs.gnu.org with esmtps (TLS1.0:RSA_AES_256_CBC_SHA1:32) (Exim 4.71) (envelope-from ) id 1cTyCK-0004ua-Bo for emacs-orgmode@gnu.org; Wed, 18 Jan 2017 16:55:16 -0500 List-Id: "General discussions about Org-mode." List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , Errors-To: emacs-orgmode-bounces+geo-emacs-orgmode=m.gmane.org@gnu.org Sender: "Emacs-orgmode" To: emacs-orgmode@gnu.org --==-=-= Content-Type: multipart/mixed; boundary="=-=-=" --=-=-= Content-Type: text/plain Content-Transfer-Encoding: quoted-printable Hello, I have been writing a derived backend for LaTeX export which outputs the formulae used in a table. This is for teaching purposes where I currently use an external spreadsheet to illustrate some simple modelling concepts. I would prefer to use org (as my slides are generated by org via beamer) and am able to output a formatted table of the formulae used in a table. However, due to various possible hidden rows and columns that do not appear in the exported table, the row and column references are not easily usable directly to identify the reference entries in the table. Would it be possible to extend the table-cell element in the parser to add :row and :column attributes that have the internal org values, as used by the formulae? An example table that I have been using to test my derived backend and which illustrates the issue is: #+begin_src org | | Strategy | Average performance | |---+----------+---------------------| | / | | 8.69 | | / | | 9.72 | | / | | 9.03 | |---+----------+---------------------| | | 1 | 9.15 | |---+----------+---------------------| | / | | 9.15 | | / | | 7.60 | | / | | 7.46 | |---+----------+---------------------| | | 2 | 8.07 | |---+----------+---------------------| ,#+TBLFM: @5$3=3Dvmean(@-I..@-II);%.2f::@9$3=3Dvmean(@-I..@-II);%.2f #+end_src This table does not export the first column nor any of the rows with / in the first column. So, in the exported table, there are only 3 rows and 2 columns but the formulae refer to, e.g. column 3 and row 9. I would like to be able to annotate the output with the org row and column numbers so need access to these data. A screenshot of what the derived backend generates currently is attached. thanks, eric =2D-=20 : Eric S Fraga (0xFFFCF67D), Emacs 26.0.50.1, Org release_9.0.2-104-gf5b7de --=-=-= Content-Type: image/png Content-Disposition: attachment; filename=screendump-20170118214644.png Content-Transfer-Encoding: base64 iVBORw0KGgoAAAANSUhEUgAAAjMAAAFbCAAAAAAFdlC0AAAABGdBTUEAALGPC/xhBQAAACBjSFJN AAB6JgAAgIQAAPoAAACA6AAAdTAAAOpgAAA6mAAAF3CculE8AAAAAmJLR0QA/4ePzL8AAAAJb0ZG cwAAAqkAAAGkALgP9BsAAAAJdnBBZwAAB4AAAAQ4AN5Tg3gAAErKSURBVHja7V11YJPH+/8kaZK2 qbt7odACBVpKgeEydMiQwYCNodtwxthgw8eGDXfGcGe4uxcp1EvdNdW0aaP3++NNKlAg4bv9lnb3 +Sf3Xu49/bx3zz139xyLgIJCK7BpFVBQzlBQzlBQzlBQzlBQzlBQUM5QUM5QUM5QUM5QUM5QUFDO UFDOUFDOUFDOUFDOUFDOUFBQzlBQzmgLWQVt3H8IelqELYvOkrFtfKwhedLcVNcLdi1sumH9aYbQ 3DJegGPD40zY9vs8M5bU6vOeYTP3NNPxcpWeuTau3nBGuPNSO4fz1j83bmiciZibMqu7Pim7ufZJ YabOlyv1sOjgrHpCmcKlu76fcSc6j7/OpGFxJn58/vHWAODTbmKoemSSpHhwNU4qWWDz/1euayJc 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