I have a list called network which needs to be modified by the use of a function. The list contains 100 elements, of which each is at random +1 or -1. This list has to be modified in a way so that every time a function runs, it modifies an element in a copy of network. I then need to graph these lists on a graph.

My code is as follows:

```
import math
import random
import numpy as np
#Generate network elements
network=[]
for x in range(0,100):
network.append(random.choice([-1,1]))
#Generate Matrix
matrix=np.ones((100,100))
p=np.random.permutation(100)
matrix[p[:10]]=1
matrix[p[:10]]=-1
#Set diagonal values to zero
matrix[np.diag_indices_from(matrix)]=0
#THIS IS THE FUNCTION THAT WILL BE MODIFYING AN ELEMENT, i, IN NETWORK.
def new_sum(i):
hi=np.sum(np.dot(matrix[i][:100],network[:100]))
if hi>0:
hi==1
if hi<0:
hi==-1
return hi
"""HERE IS WHERE I NEED HELP. I NEED TO HAVE THIS FUNCTION RUN AT RANDOM
ON ANY ELEMENT IN NETWORK. WHEN IT RUNS, I NEED TO COPY NETWORK AS A NEW
LIST AND HAVE hi REPLACE THE CORRESPONDING INDEX, i, IN THE COPIED LIST. THE
PROBLEM IS THAT I NEED TO HAVE THIS FUNCTION RUN 300 TIMES, AND EVERYTIME
IT RUNS, I NEED TO COPY NETWORK AS A NEW LIST AND HAVE hi REPLACE THE
CORRESPONDING INDEX, i, IN THE COPIED LIST. HERE IS CODE: """
def new_function(value):
for i in range(0,value):
new_list=network[:]
new_sum(i)= x
new_list[i]=x
return new_list
def plot_data(ax, data, xval):
N:len(data)
uniqdata, idx=np.unique(data, return_inverse=True)
ax.scatter(np.ones(N)*xval,np.arange(1,N+1),s=50,c=cmap[idx])
cmap = np.array([(1,0,0),(0,1,0)])
fig, ax=plt.subplots
```

I then have to graph the 300 lists that need to be created, where each list is the argument, `data`

, in the function `plot_data`

. How do I do this?