From mboxrd@z Thu Jan 1 00:00:00 1970 From: "David O'Toole" Subject: org-plotting with date as the independent variable Date: Tue, 23 Jun 2009 10:49:59 -0400 Message-ID: <64bfe3d50906230749h5d5fd04djdec158e2d581fed9@mail.gmail.com> Mime-Version: 1.0 Content-Type: multipart/mixed; boundary=001636988b5cde1f2c046d051a3b Return-path: Received: from mailman by lists.gnu.org with tmda-scanned (Exim 4.43) id 1MJ7KA-0006wG-2H for emacs-orgmode@gnu.org; Tue, 23 Jun 2009 10:50:14 -0400 Received: from exim by lists.gnu.org with spam-scanned (Exim 4.43) id 1MJ7K5-0006qE-7H for emacs-orgmode@gnu.org; Tue, 23 Jun 2009 10:50:13 -0400 Received: from [199.232.76.173] (port=60526 helo=monty-python.gnu.org) by lists.gnu.org with esmtp (Exim 4.43) id 1MJ7K5-0006q4-0R for emacs-orgmode@gnu.org; Tue, 23 Jun 2009 10:50:09 -0400 Received: from mail-yx0-f201.google.com ([209.85.210.201]:42793) by monty-python.gnu.org with esmtp (Exim 4.60) (envelope-from ) id 1MJ7K4-0003Is-7u for emacs-orgmode@gnu.org; Tue, 23 Jun 2009 10:50:08 -0400 Received: by yxe39 with SMTP id 39so197963yxe.14 for ; Tue, 23 Jun 2009 07:50:07 -0700 (PDT) List-Id: "General discussions about Org-mode." List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , Sender: emacs-orgmode-bounces+geo-emacs-orgmode=m.gmane.org@gnu.org Errors-To: emacs-orgmode-bounces+geo-emacs-orgmode=m.gmane.org@gnu.org To: emacs-orgmode@gnu.org --001636988b5cde1f2c046d051a3b Content-Type: multipart/alternative; boundary=001636988b5cde1f26046d051a39 --001636988b5cde1f26046d051a39 Content-Type: text/plain; charset=ISO-8859-1 Content-Transfer-Encoding: 7bit I'm having trouble with org-plotting data that is captured on certain dates over time, like my bodyweight. My table looks like this, but the plotting seems to be very wrong: #+PLOT: ind:1 timefmt:"%Y-%m-%d" with:points | Date | Weight | |------------+--------| | 2008-09-26 | 266 | | 2008-10-08 | 261 | | 2008-10-16 | 263 | | 2008-10-19 | 259 | | 2009-05-20 | 272 | | 2009-06-12 | 274 | | 2009-06-23 | 275 | I've attached the incorrect image. Also how can I plot the totals from a bunch of separate tables as the dependent variable? Each of the tables would be like the following below: | Time | Description | Calories | |------+------------------------+----------| | 6:00 | Whey shake, 2 scoops | 200 | | | + 2 cups skim milk | 180 | | 9:30 | 4 egg whites | 120 | | | + 2 slices salami | 200 | | | + 1 slice cheese | 110 | | | Whey shake, 2 scoops | 200 | | | + 2 cups skim milk | 180 | | | light yogurt | 60 | | | rice cake | 40 | | | + 2 tbsp peanut butter | 200 | |------+------------------------+----------| | | TOTAL | 1490 | #+TBLFM: @12$3=vsum(@2$3..@11$3) --001636988b5cde1f26046d051a39 Content-Type: text/html; charset=ISO-8859-1 Content-Transfer-Encoding: quoted-printable I'm having trouble with org-plotting data that is captured on certain d= ates over time, like my bodyweight. My table looks like this, but the plott= ing seems to be very wrong:

#+PLOT: ind:1 timefmt:"%Y-%m-%d&qu= ot; with:points
|=A0=A0=A0=A0=A0=A0 Date | Weight |
|------------+--------|
| 2008-09= -26 |=A0=A0=A0 266 |
| 2008-10-08 |=A0=A0=A0 261 |
| 2008-10-16 |=A0= =A0=A0 263 |
| 2008-10-19 |=A0=A0=A0 259 |
| 2009-05-20 |=A0=A0=A0 27= 2 |
| 2009-06-12 |=A0=A0=A0 274 |
| 2009-06-23 |=A0=A0=A0 275 |

I've attached the incorrect image.

Also how can I plot the = totals from a bunch of separate tables as the dependent variable? Each of t= he tables would be like the following below:

| Time | Description=A0= =A0=A0=A0=A0=A0=A0=A0=A0=A0=A0 | Calories |
|------+------------------------+----------|
| 6:00 | Whey shake, 2 scoo= ps=A0=A0 |=A0=A0=A0=A0=A0 200 |
|=A0=A0=A0=A0=A0 | + 2 cups skim milk=A0= =A0=A0=A0 |=A0=A0=A0=A0=A0 180 |
| 9:30 | 4 egg whites=A0=A0=A0=A0=A0=A0= =A0=A0=A0=A0 |=A0=A0=A0=A0=A0 120 |
|=A0=A0=A0=A0=A0 | + 2 slices salami= =A0=A0=A0=A0=A0 |=A0=A0=A0=A0=A0 200 |
|=A0=A0=A0=A0=A0 | + 1 slice cheese=A0=A0=A0=A0=A0=A0 |=A0=A0=A0=A0=A0 110 = |
|=A0=A0=A0=A0=A0 | Whey shake, 2 scoops=A0=A0 |=A0=A0=A0=A0=A0 200 ||=A0=A0=A0=A0=A0 | + 2 cups skim milk=A0=A0=A0=A0 |=A0=A0=A0=A0=A0 180 |<= br>|=A0=A0=A0=A0=A0 | light yogurt=A0=A0=A0=A0=A0=A0=A0=A0=A0=A0 |=A0=A0=A0= =A0=A0=A0 60 |
|=A0=A0=A0=A0=A0 | rice cake=A0=A0=A0=A0=A0=A0=A0=A0=A0= =A0=A0=A0=A0 |=A0=A0=A0=A0=A0=A0 40 |
|=A0=A0=A0=A0=A0 | + 2 tbsp peanut butter |=A0=A0=A0=A0=A0 200 |
|------= +------------------------+----------|
|=A0=A0=A0=A0=A0 | TOTAL=A0=A0=A0= =A0=A0=A0=A0=A0=A0=A0=A0=A0=A0=A0=A0=A0=A0 |=A0=A0=A0=A0 1490 |
#+TBLFM:= @12$3=3Dvsum(@2$3..@11$3)

=A0=A0=A0
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