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This should be easy but I'm having a hard time with it. Basically, I have a subplot in matplotlib that I'm drawing a hexbin plot in every time a function is called, but every time I call the function I get a new colorbar, so what I'd really like to do is update the colorbar. Unfortunately, this doesn't seem to work since the object the colorbar is attached to is being recreated by subplot.hexbin.

def foo(self):
   self.subplot.clear()
   hb = self.subplot.hexbin(...)
   if self.cb:
      self.cb.update_bruteforce() # Doesn't work (hb is new)
   else:
      self.cb = self.figure.colorbar(hb)

I'm now in this annoying place where I'm trying to delete the colorbar axes altogether and simply recreate it. Unfortunately, when I delete the colorbar axes, the subplot axes don't reclaim the space, and calling self.subplot.reset_position() isn't doing what I thought it would.

def foo(self):
   self.subplot.clear()
   hb = self.subplot.hexbin(...)
   if self.cb:
      self.figure.delaxes(self.figure.axes[1])
      del self.cb
      # TODO: resize self.subplot so it fills the 
      #    whole figure before adding the new colorbar
   self.cb = self.figure.colorbar(hb)

Does anyone have any suggestions?

Much appreciated! Adam

share|improve this question
    
I don't think you should be creating a new hexbin plot every time the function is called. I think what you want is to update the data of the existing plot somehow (I'm not familiar enough with hexbin to say how). I have some questions. Is this plot animated? Are you getting multiple colorbars side-by-side? Could you post a running example with some fake data? – Paul Mar 10 '11 at 18:50
    
I considered that, but I felt like it was a harder path to take since this is all an interactive plotting tool. The user can change the number of bins, gridsize, axis scales, data source, etc. I'll keep banging my head against this colorbar thing for now, and if I hit a wall I'll consider boiling it down to a working example that I can share. Thanks Paul. – Adam Fraser Mar 10 '11 at 20:15
    
You can create a specific ax for the colorbar and clear this ax. fig.colorbar(cax=cax) and cax.cla() – MaxNoe Nov 25 '15 at 13:02
up vote 7 down vote accepted

Alright, here's my solution. Not terribly elegant, but not a terrible hack either.

def foo(self):
   self.subplot.clear()
   hb = self.subplot.hexbin(...)
   if self.cb:
      self.figure.delaxes(self.figure.axes[1])
      self.figure.subplots_adjust(right=0.90)  #default right padding
   self.cb = self.figure.colorbar(hb)

This works for my needs since I only ever have a single subplot. People who run into the same problem when using multiple subplots or when drawing the colorbar in a different position will need to tweak.

share|improve this answer
    
Here with the same problem: colorbar associated to a scatterplot, reproduces each time a new scatterplot is drawn. Posted solution works. I'm wondering if someone arrived to a 'cleaner' one. – joaquin Sep 3 '12 at 16:20

I had a similar problem and played around a little bit. I came up with two solutions which might be slightly more elegant:

  1. Clear the whole figure and add the subplot (+colorbar if wanted) again.

  2. If there's always a colorbar, you can simply update the axes with autoscale which also updates the colorbar.

I've tried this with imshow, but I guess it works similar for other plotting methods.

from pylab import *
close('all') #close all figures in memory

#1. Figures for fig.clf method
fig1 = figure()
fig2 = figure()
cbar1=None
cbar2=None
data = rand(250, 250)

def makefig(fig,cbar):
  fig.clf()
  ax = fig.add_subplot(111)
  im = ax.imshow(data)
  if cbar:
    cbar=None
  else:
    cbar = fig.colorbar(im)
  return cbar


#2. Update method
fig_update = figure()
cbar3=None
data_update = rand(250, 250)
img=None

def makefig_update(fig,im,cbar,data):
  if im:
    data*=2 #change data, so there is change in output (look at colorbar)
    #im.set_data(data) #use this if you use new array
    im.autoscale()
    #cbar.update_normal(im) #cbar is updated automatically
  else:
    ax = fig.add_subplot(111)
    im = ax.imshow(data)
    cbar=fig.colorbar(im)
  return im,cbar,data

#Execute functions a few times
for i in range(3):
  print i
  cbar1=makefig(fig1,cbar1)
  cbar2=makefig(fig2,cbar2)
  img,cbar3,data_update=makefig_update(fig_update,img,cbar3,data_update)
cbar2=makefig(fig2,cbar2)

fig1.show()
fig2.show()
fig_update.show()
share|improve this answer
    
the problem with solution 1 though is that if you have more than 1 plot in the figure surely it will clear the whole thing - right? – JPH Sep 15 '13 at 16:13
    
Yep it will clear the whole thing. I don't know how to only clear a single subplot. – cass Sep 24 '13 at 10:05

I managed to solve the same issue using fig.clear() and display.clear_output()

import matplotlib.pyplot as plt
import IPython.display as display
import matplotlib.tri as tri
from pylab import *
%matplotlib inline

def plot_res(fig):
    ax=fig.add_axes([0,0,1,1])
    ax.set_xlabel("x")
    ax.set_ylabel('y')
    plotted=ax.imshow(rand(250, 250))
    ax.set_title("title")
    cbar=fig.colorbar(mappable=plotted)
    display.clear_output(wait=True)
    display.display(plt.gcf())
    fig.clear()

fig=plt.figure()
N=20
for j in range(N):
    plot_res(fig)
share|improve this answer

I think the problem is that with del you cancel the variable, but not the referenced object colorbar. If you want the colorbar to be removed from plot and disappear, you have to use the method remove of the colorbar instance and to do this you need to have the colorbar in a variable, for which you have two options:

  1. holding the colorbar in a value at the moment of creation, as shown in other answers e.g. cb=plt.colorbar()
  2. retrieve an existing colorbar, that you can do following (and upvoting :)) what I wrote here: How to retrieve colorbar instance from figure in matplotlib then:

cb.remove() plt.draw() #update plot

share|improve this answer

I am using matplotlib 1.4.0. This is how I solve this problem:

import matplotlib
import numpy as np
import matplotlib.cm as cm
import matplotlib.mlab as mlab
import matplotlib.pyplot as plt

# A contour plot example:
delta = 0.025
x = np.arange(-3.0, 3.0, delta)
y = np.arange(-2.0, 2.0, delta)
X, Y = np.meshgrid(x, y)
Z1 = mlab.bivariate_normal(X, Y, 1.0, 1.0, 0.0, 0.0)
Z2 = mlab.bivariate_normal(X, Y, 1.5, 0.5, 1, 1)
Z = 10.0 * (Z2 - Z1)
#

# first drawing
fig = plt.figure()
ax = fig.add_subplot(111)  # drawing axes
c = ax.contourf(Z)   # contour fill c
cb = fig.colorbar(c)  # colorbar for contour c

# clear first drawimg
ax.clear()  # clear drawing axes
cb.ax.clear()  # clear colorbar axes

# replace with new drawing
# 1. drawing new contour at drawing axes
c_new = ax.contour(Z)  
# 2. create new colorbar for new contour at colorbar axes
cb_new = ax.get_figure().colorbar(c_new, cax=cb.ax) 

plt.show()

Above code draws a contour fill plot with colorbar, clear it and draw a new contour plot with new colorbar at the same figure.

By using cb.ax i am able to identify the colorbar axes and clear the old colorbar. And specifying cax=cb.ax simply draws the new colorbar in the old colorbar axes.

share|improve this answer

"on_mappable_changed" works for me (despite the ominous warning that it "... should not be called manually.")

if self.cb:
    self.cb.on_mappable_changed(hb)
else:
    self.cb = self.fig.colorbar(hb)
share|improve this answer

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