To get the same behavior as `in`

for lists, you could do something like this:

```
any(np.all(row == m2) for row in m1)
```

That does the loop over rows in python, which isn't ideal, but it should work.

To understand what's going on with the numpy `in`

, here's a description of the semantics of `in`

from Robert Kern on the numpy mailing list:

It dates back to Numeric's semantics for bool(some_array), which would
be True if any of the elements were nonzero. Just like any other
iterable container in Python, `x in y`

will essentially do

```
for row in y:
if x == row:
return True
return False
```

Iterate along the first axis of y and compare by boolean equality. In
Numeric/numpy's case, this comparison is broadcasted. So that's why
[3,6,4] works, because there is one row where 3 is in the first
column. [4,2,345] doesn't work because the 4 and the 2 are not in
those columns.

Probably, this should be considered a mistake during the transition to
numpy's semantics of having bool(some_array) raise an exception.
`scalar in array`

should probably work as-is for an ND array, but
there are several different possible semantics for `array in array`

that should be explicitly spelled out, much like bool(some_array).

`m3 = [[1, 2, 3], [5, 4, 3]]`

in place of`m3 = [[1, 2, 3], [5, 3, 4]]`

. – Bi Rico Nov 2 '12 at 18:22