# Interactive matplotlib plot with two sliders

I used matplotlib to create some plot, which depends on 8 variables. I would like to study how the plot changes when I change some of them. I created some script that calls the matplotlib one and generates different snapshots that later I convert into a movie, it is not bad, but a bit clumsy.

1. I wonder if somehow I could interact with the plot regeneration using keyboard keys to increase / decrease values of some of the variables and see instantly how the plot changes.

2. What is the best approach for this?

3. Also if you can point me to interesting links or a link with a plot example with just two sliders?

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In addition to what @triplepoint mentioned, have a look at the slider widget.

There's an example on the matplotlib examples page. It's a graphical slider bar rather than keyboard bindings, but it works quite well for what you want to do.

(I'm making this community wiki, as I'm just copy-pasting from the example. This particular example teaches bad habits (e.g. `from pylab import *`), but it gets the point across.)

``````from pylab import *
from matplotlib.widgets import Slider, Button, RadioButtons

ax = subplot(111)
t = arange(0.0, 1.0, 0.001)
a0 = 5
f0 = 3
s = a0*sin(2*pi*f0*t)
l, = plot(t,s, lw=2, color='red')
axis([0, 1, -10, 10])

axcolor = 'lightgoldenrodyellow'
axfreq = axes([0.25, 0.1, 0.65, 0.03], axisbg=axcolor)
axamp  = axes([0.25, 0.15, 0.65, 0.03], axisbg=axcolor)

sfreq = Slider(axfreq, 'Freq', 0.1, 30.0, valinit=f0)
samp = Slider(axamp, 'Amp', 0.1, 10.0, valinit=a0)

def update(val):
amp = samp.val
freq = sfreq.val
l.set_ydata(amp*sin(2*pi*freq*t))
draw()
sfreq.on_changed(update)
samp.on_changed(update)

resetax = axes([0.8, 0.025, 0.1, 0.04])
button = Button(resetax, 'Reset', color=axcolor, hovercolor='0.975')
def reset(event):
sfreq.reset()
samp.reset()
button.on_clicked(reset)

rax = axes([0.025, 0.5, 0.15, 0.15], axisbg=axcolor)
def colorfunc(label):
l.set_color(label)
draw()

show()
``````

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wow, this is awesome, exactly what I need! thanks! –  flow Jul 14 '11 at 17:41
Is it possible to actually interact with this tool or does it just generate an image? If so, what do I need to run it? I'm currently using IPython –  triplebig Feb 15 '14 at 8:12
@triplebig - Yes, it's interactive. If nothing is happening when you call show(), then you're missing av interactive backend in your matplotlib install. How did you install matplotlib? –  Joe Kington Feb 15 '14 at 17:15
@triplebig - Yes, by default matplotlib will be built with an interactive backend of some sort. If you're using pre-built binaries (as you would be on windows), presumably the person who built them did it correctly. If you're using winpython, matplotlib definitely has an interactive backend (probably TkAgg). Try running the script directly and see what happens. (i.e. type "python name_of_the_file.py" in a terminal/cmd window.) –  Joe Kington Feb 15 '14 at 18:17
To explain more about what's going on, an ipython notebook is not the same as ipython. `ipython` is an interactive python shell. An ipython notebook is a web-based interface that basically sends snippets of code back to `ipython` to evaluate and return the results of. For that reason, ipython notebooks just render matplotlib figures as static .png's, instead of popping up an interactive window. `ipython` itself (or just running the script directly with `python`) will show an interactive gui window for each matplotlib figure. –  Joe Kington Feb 15 '14 at 18:23

I don't think that simply plotting graphs using `plt.plot` will allow you to do this. You will need to yourself make a custom GUI script/app by embedding Matplotlib into it. Currently, Matplotlib supports all the major GUI toolkits - PyGTK+, PyQt4 and wxPython.
I use wxPython and embedding matplotlib in it is fairly easy. Similar should be case with the other GUI toolkits. You can get all the information you need for this in the book -

It is available on amazon here.

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If you want to do it fast and simple, then the method of the slider inside matplotlib is much better and easier. Just copy the snippet and change a few things. This book is also good, but more for advance and if you want to make it correct! –  PateToni Jul 14 '11 at 19:26

Matplotlib has some fairly nice gui functionality. There are some documentation examples in the source tarball of matplotlib, in /examples/user_interfaces and matplotlib>/examples/event_handling. Specifically on keyhandling is: http://matplotlib.sourceforge.net/examples/event_handling/keypress_demo.html

I have done something kind of similar to what you are aiming for:

``````import numpy as np
import pylab

class plotter:
def __init__(self, initial_values):
self.values
self.fig = pylab.figure()
pylab.gray()
self.draw()
self.fig.canvas.mpl_connect('key_press_event',self.key)

def draw(self):
im = your_function(self.values)
pylab.show()
self.ax.imshow(im)

def key(self, event):
if event.key=='right':
self.values = modify()
elif event.key == 'left':
self.values = modify()

self.draw()
self.fig.canvas.draw()
``````

I was using this to shift through displaying different images in a stack on keypresses, but you should be able to put logic in to modify your values given keyboard input.

If you want to do things like have the user input values, I think the examples have options for dialog boxes, but if you just want to increment/decrement a number of variables, just defining keyboard pairs for them in this manner might work well

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Use `waitforbuttonpress(timeout=0.001)` then plot will see your mouse ticks.

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