# Removing rows in NumPy efficiently

I have a large numpy array with a lot of ID values (call it X):

``````X:
id   rating
1    88
2    99
3    77
4    66
...
``````

etc. I also have another numpy array of "bad IDs" -- which signify rows I'd like to remove from X.

``````B: [2, 3]
``````

So when I'm done, I'd like:

``````X:
id   rating
1    88
4    66
``````

What is the cleanest way to do this, without iterating?

-
Maybe relevant to your interests: stackoverflow.com/questions/1962980/… –  machine yearning Aug 28 '11 at 3:45
Specifically the highest-voted solution. –  machine yearning Aug 28 '11 at 3:47

This is the fastest way I could come up with:

``````import numpy

x = numpy.arange(1000000, dtype=numpy.int32).reshape((-1,2))
bad = numpy.arange(0, 1000000, 2000, dtype=numpy.int32)

print x.shape

cleared = numpy.delete(x, numpy.where(numpy.in1d(x[:,0], bad)), 0)
print cleared.shape
``````

This prints:

``````(500000, 2)
(500,)
(499500, 2)
``````

and runs much faster than a ufunc. It will use some extra memory, but whether that's okay for you depends on how big your array is.

Explanation:

• The numpy.in1d returns an array the same size as `x` containing `True` if the element is in the `bad` array, and `False` otherwise.
• The numpy.where turns that `True`/`False` array into an array of integers containing the index values where the array was `True`.
• It then passes the index locations to numpy.delete, telling it to delete along the first axis (0)
-
+1, i suspect this is the best solution (avoids a ufunc and is very fast compared to mine). –  doug Aug 28 '11 at 21:34
thanks! This is much faster for me than the solution referenced in the other comments (stackoverflow.com/questions/1962980/…) –  thegreatt Aug 28 '11 at 23:01

reproduce the problem spec from OP:

``````X = NP.array('1 88 2 99 3 77 4 66'.split(), dtype=int).reshape(4, 2)
``````

Vectorize a bult-in from Python's membership tests--i.e., X in Y syntax

``````@NP.vectorize
Doesn't `in` take O(N) time for a list? You should probably make `bad_ids = set([3,2])` –  jterrace Aug 28 '11 at 16:20