The relevant parameters are
figure.facecolor
and
savefigure.facecolor
but as I indicated before I think your issue is due to an out of date
version of Jupyter/IPython and is fixed in the latest version. Please can
you check which versions you are running
I think the issue that you are seeing is
https://github.com/ipython/ipython/issues/7964 which was fixed in IPython
3.2
best
Jens
···
On Thu, 11 Aug 2016 at 17:33 Sudheer Joseph <sudheer.joseph at yahoo.com> wrote:
Thank you Benjamin & Jens,
I have registered in
python.org now. Regarding the issue I had already checked the
matplotlibrc parameters. I tried increasing margin option but resulting in
only plot getting shrunk. There is no apparent effect for facecolor
parameter. May I know which parameter sets the margin as non-transparent?
With best regards,
SudheerOn Wednesday, 10 August 2016 8:19 PM, Benjamin Root <ben.v.root at gmail.com> > wrote:
The other reason why this message never got posted is because this message
was sent to the now defunct mailing list hosted by sourceforge. The mailing
list moved about a year ago (I think) to python.org. You will have to
subscribe in order to post unmoderated.https://mail.python.org/mailman/listinfo/matplotlib-users
Ben Root
On Wed, Aug 10, 2016 at 4:25 AM, Jens Nielsen <jenshnielsen at gmail.com> > wrote:
At least for me gmail put your mail in the spam folder.
Anyway the inline backend is actually from in IPython/Jupyter and not in
matplotlib. I think they have changed the default a couple of times and had
the transparent as a default earlier but changed it. Looking at the current
master it looks like they are respecting the matplotlib default colors
from the matplotlib rc params. Can you please check which version on
IPython and Jupyter you are running.You can change the matplotlib rc parameters as described in the docs http://matplotlib.org/
users/customizing.html# customizing-matplotlib
<http://matplotlib.org/users/customizing.html#customizing-matplotlib> but
the default ones should be white.best
JensOn Wed, 10 Aug 2016 at 05:06 Sudheer Joseph <sudheer.joseph at yahoo.com> > wrote:
Hi,
I have send below query to matplotlib user group recently but did not get
posted so far. Can you please tell me is there is any thin wrong with the
message?
With best regards,
Sudheer>
> Dear Expert,
> Recently after up-gradation of matplotlib and ubuntu
16.04 I am
> getting transparent figure axis when using the "linux color scheme"
> option in ipython qtconsole. May I know if there is a way to fix this
issue?. I
> wanted to keep black screen as it reduces eye strain.
>
> ipython qtconsole --matplotlib inline
>
> If I save the image i am able to get axis properly but to see on screen
as the
> axis is not plotted with white background the black axis line and labels
are not
> visible. Earlier I used to get figures as attached in second figure.
> Earlier Satus which I am looking for below link
> https://drive.google.com/open? id= 0B3heUQNme7G5ZmVlUHpRakZxUlk
> Present status without boarder below link
>
>
> https://drive.google.com/open? id= 0B3heUQNme7G5VkhZWHhiUnpfWDg
>
> Kindly suggest a solution
> with best regards,
> Sudheer
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