Below is my code for generating my sparse matrix:

```
import numpy as np
import scipy
def sparsemaker(X, Y, Z):
'X, Y, and Z are 2D arrays of the same size'
x_, row = np.unique(X, return_inverse=True)
y_, col = np.unique(Y, return_inverse=True)
return scipy.sparse.csr_matrix( (Z.flat,(row,col)), shape=(x_.size, y_.size) )
>>> print sparsemaker(A, B, C) #A, B, and C are (220, 256) sized arrays.
(0, 0) 167064.269831
(0, 2) 56.6146564629
(0, 9) 53.8660340698
(0, 23) 80.6529717039
(0, 28) 0.0
(0, 33) 53.2379218326
(0, 40) 54.3868995375
: :
```

Now my input arrays are a bit large, so i don't know how to post them here (unless anyone has any ideas); but even looking at the first value, i can already tell something is wrong:

```
>>> test = sparsemaker(A, B, C)
>>> np.max(test.toarray())
167064.26983076424
>>> np.where(C==np.max(test.toarray()))
(array([], dtype=int64), array([], dtype=int64))
```

Does anyone know why this would happen? Where did that value come from?