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I have been trying to graph a function with two parameters that can be varied to see different behavior. I would like to use a slider to vary the parameters.

In my search I have come across sliders that change the axes but not parts of a mathematical function.

So I have the following code which should work if my two parameters Gmax and Km were the axes:

    from matplotlib.widgets import Slider
    import numpy as np

    Gmax=1
    Km= 1

    def f(S):
        s1 = Gmax*S  #G_max
        e1 = S + Km #K_m
        return divide(s1,e1)

    S=arange(0,100,0.1)

    ax = subplot(111)
    subplots_adjust(left=0.15, bottom=0.25)
    l = plot(f(S))
    grid(False)
    title('Playing with sliders')
    xlabel('time')
    ylabel('concentration')


    axcolor = 'lightgoldenrodyellow'
    axGmax = axes([0.15, 0.1, 0.65, 0.03], axisbg=axcolor)
    axKm = axes([0.15, 0.15, 0.65, 0.03], axisbg=axcolor)

    sGmax = Slider(axGmax, 'Gmax', 0.1, 3.0, valinit=1)
    sKm = Slider(axKm, 'Km', 0.01, 1.0, valinit=1)

    def update(val):
        s1 = Gmax*S * sGmax.val 
        e1 = S + Km * sKm.val
        l.set_ydata(y)    
        ax.set_ylim(y.min(), y.max())  
        draw()

    sGmax.on_changed(update)
    sKm.on_changed(update)

    show()

So I guess my question is if there is a command for parameters instead of the ax command for axes sliders? Or if there is another way of doing it?

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I'm not sure about how to do this with matplotlib, but for interactive plots like this I would highly suggest using Chaco + Traits. Here's a similar example with sliders from their documentation: code.enthought.com/projects/chaco/docs/html/user_manual/… –  reptilicus Aug 17 '12 at 14:24
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2 Answers

Your code is almost right, but you should change l = plot(f(S)) to l, = plot(f(S)) because plot() returns a list. Then you can call l.set_ydata(...) to set the new value.

Here is the code:

from matplotlib.widgets import Slider
from pylab import *

def f(S, Gmax, Km):
    s1 = Gmax*S  #G_max
    e1 = S + Km #K_m
    return divide(s1,e1)

S=arange(0,100,0.1)

ax = subplot(111)
subplots_adjust(left=0.15, bottom=0.25)
l, = plot(f(S, 1.0, 1.0))
grid(False)
title('Playing with sliders')
xlabel('time')
ylabel('concentration')

axcolor = 'lightgoldenrodyellow'
axGmax = axes([0.15, 0.1, 0.65, 0.03], axisbg=axcolor)
axKm = axes([0.15, 0.15, 0.65, 0.03], axisbg=axcolor)

sGmax = Slider(axGmax, 'Gmax', 0.1, 3.0, valinit=1)
sKm = Slider(axKm, 'Km', 0.01, 1.0, valinit=1)

def update(val):
    l.set_ydata(f(S, sGmax.val, sKm.val))

sGmax.on_changed(update)
sKm.on_changed(update)

show()
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I cannot add a comment because I don't have enough reputation. ....

I was trying to do something exactly like that... Maybe someone could change the title to "slider for V_max and K_M in the Michealis-Menten equation." to find it more easily.

ps. I think the axes are wrong, it should read vo vs [S]

check http://www.wiley.com/college/pratt/0471393878/student/animations/enzyme_kinetics/ section 5.

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