I have a function that takes an array as input and does some computation on it. The input array may or may not be a numpy ndarray (may be a list, pandas object, etc).

In the function, I convert the input array (regardless of its type) to a numpy ndarray. But this step may be computationally expensive for large arrays, especially if the function is called multiple times in a for loop.

Hence, I want to convert the input array to numpy ndarray ONLY if it is not already a numpy ndarray.

How can I do this?

```
import numpy as np
def myfunc(array):
# Check if array is not already numpy ndarray
# Not correct way, this is where I need help
if type(array) != 'numpy.ndarray':
array = np.array(array)
# The computation on array
# Do something with array
new_array = other_func(array)
return new_array
```