I have some issues with the *FuncAnimation* fonction of *MatPlotLib*. I can't configure it to my code... I hope someone could help me !!

This is a diffusion equation, I need to plot it for each step of the time. At each step, the result of the calculation is a numpy array. I manage to plot it in a dynamic way with *pyplot.interactive(True)* but it is very laggy. I read that *FuncAnimation* can deal with that problem but I did not manage to have it working with results in lists or arrays.

Here is the code with a classic slow plot :

It produces a vector of vectors (*U*) wich are ploted after all calculations

```
import numpy as np
import scipy
from scipy.linalg import solve_banded
from matplotlib import pyplot as plt
import matplotlib.animation as animation
def DrawRecord(U):
plt.interactive(True)
plt.figure(1)
for i in range(0,len(U)):
plt.clf()
plt.plot(U[i])
plt.ylim([0,1])
plt.draw()
J=350.0
dt=0.01
T=3.0
t=np.arange(dt,T,dt)
dx=1.0/J
D=0.005
c=0.5
r=0.1
mu=c*dt/(2.0*dx)
lambd=D*dt/(dx**2.0)
K_x=50.0*np.ones(J-1)
alpha_t=0.5*np.ones(len(t))
#initial conditions
u=np.zeros(J)
u[J/5*1:J/5*2]=1
U=u
espace=np.linspace(0,1,J)
#Matrix
A=np.diag(-lambd*np.ones(J-2),1)+np.diag((1+2*lambd)*np.ones(J-1),0)+np.diag(-lambd*np.ones(J-2),-1)
AA=scipy.linalg.inv(A)
for i in t:
u[1:J]=scipy.dot(AA,u[1:J]+(r-alpha_t[i/dt])*dt*(u[1:J]-u[1:J]/K_x))
u[0]=0
u[J-1]=0
U=np.vstack([U,u])
DrawRecord(U)
```

And here is my try of making turn the *FuncAnimation* with the previous code (big fail) :

*nb :* U contents the arrays of results calculated for each steps

```
global U
fig = plt.figure()
window = fig.add_subplot(111)
line, = window.plot(list(U[1,:]))
def init():
line=list(U[1,:])
return line
def animate(i):
line.set_ydata(list(U[i,:]))
return line
anim = animation.FuncAnimation(fig, animate, init_func=init,
frames=200, interval=20, blit=True)
plt.show()
```

That produces a lot of errors ... Maybe someone can set it up for the previous code !

I hope I'm clear (sorry for my english) and thank you for your help.