`NaN`

values never compare equal. That is, the test `NaN==NaN`

is always `False`

*by definition of *`NaN`

.

So `[1.0, NaN] == [1.0, NaN]`

is also `False`

. Indeed, once a `NaN`

occurs in any list, it cannot compare equal to any other list, even itself.

If you want to test a variable to see if it's `NaN`

in `numpy`

, you use the `numpy.isnan()`

function. I don't see any obvious way of obtaining the comparison semantics that you seem to want other than by “manually” iterating over the list with a loop.

Consider the following:

```
import math
import numpy as np
def nan_eq(a, b):
for i,j in zip(a,b):
if i!=j and not (math.isnan(i) and math.isnan(j)):
return False
return True
a=[1.0, float('nan')]
b=[1.0, float('nan')]
print( float('nan')==float('nan') )
print( a==a )
print( a==b )
print( nan_eq(a,a) )
```

It will print:

```
False
True
False
True
```

The test `a==a`

succeeds because, presumably, Python's idea that references to the same object are equal trumps what would be the result of the element-wise comparison that `a==b`

requires.