This seems like a simple question, but I haven't been able to find a good answer.

I'm looking for a pythonic way to test whether a 2d numpy array contains a given row. For example:

```
myarray = numpy.array([[0,1],
[2,3],
[4,5]])
myrow1 = numpy.array([2,3])
myrow2 = numpy.array([2,5])
myrow3 = numpy.array([0,3])
myrow4 = numpy.array([6,7])
```

Given myarray, I want to write a function that returns True if I test myrow1, and False if I test myrow2, myrow3 and myrow4.

I tried the "in" keyword, and it didn't give me the results I expected:

```
>>> myrow1 in myarray
True
>>> myrow2 in myarray
True
>>> myrow3 in myarray
True
>>> myrow4 in myarray
False
```

It seems to only check if one or more of the elements are the same, not if all elements are the same. Can someone explain why that's happening?

I can do this test element by element, something like this:

```
def test_for_row(array,row):
numpy.any(numpy.logical_and(array[:,0]==row[0],array[:,1]==row[1]))
```

But that's not very pythonic, and becomes problematic if the rows have many elements. There must be a more elegant solution. Any help is appreciated!