I am trying to execute the following code :( this is a simple code for Kmeans algorithm which has been written in Python.The two-step procedure continues until the assignments of clusters and centroids no longer change. The convergence is guaranteed but the solution might be a local minimum. In practice, the algorithm is run multiple times and averaged.

```
import numpy as np
import random
from numpy import *
points = [[1,1],[1.5,2],[3,4],[5,7],[3.5,5],[4.5,5], [3.5,4]]
def cluster(points,center):
clusters = {}
for x in points:
z= min([(i[0], np.linalg.norm(x-center[i[0]])) for i in enumerate(center)], key=lambda t:t[1])
try:
clusters[z].append(x)
except KeyError:
clusters[z]=[x]
return clusters
def update(oldcenter,clusters):
d=[]
r=[]
newcenter=[]
for k in clusters:
if k[0]==0:
d.append(clusters[(k[0],k[1])])
else:
r.append(clusters[(k[0],k[1])])
c=np.mean(d, axis=0)
u=np.mean(r,axis=0)
newcenter.append(c)
newcenter.append(u)
return newcenter
def shouldStop(oldcenter,center, iterations):
MAX_ITERATIONS=4
if iterations > MAX_ITERATIONS: return True
return (oldcenter == center)
def kmeans():
points = np.array([[1,1],[1.5,2],[3,4],[5,7],[3.5,5],[4.5,5], [3.5,4]])
clusters={}
iterations = 0
oldcenter=([[],[]])
center= ([[1,1],[5,7]])
while not shouldStop(oldcenter, center, iterations):
# Save old centroids for convergence test. Book keeping.
oldcenter=center
iterations += 1
clusters=cluster(points,center)
center=update(oldcenter,clusters)
return (center,clusters)
kmeans()
```

but now i stuck. Can anybody help me with this, please?

```
Traceback (most recent call last):
File "has_converged.py", line 64, in <module>
(center,clusters)=kmeans()
File "has_converged.py", line 55, in kmeans
while not shouldStop(oldcenter, center, iterations):
File "has_converged.py", line 46, in shouldStop
return (oldcenter == center)
ValueError: The truth value of an array with more than one element is ambiguous.
Use a.any() or a.all()
```

in practicemeans a production setting of some sorts, you may want to consider e.g.`sklearn.cluster.KMeans`

or, for a large amount of data`sklearn.cluster.MiniBatchKMeans`

– eickenberg May 30 '14 at 9:06