Why is numpy vectorized function apparently called an extra time?

I have a numpy object array containing several lists of index numbers:

``````>>> idxLsts = np.array([[1], [0, 2]], dtype=object)
``````

I define a vectorized function to append a value to each list:

``````>>> idx = 99
>>> f = np.vectorize(lambda idxLst: idxLst.append(idx))
``````

I invoke the function. I don't care about the return value, just the side effect.

``````>>> f(idxLsts)
array([None, None], dtype=object)
``````

The index 99 was added twice to the first list. Why? I'm stumped.

``````>>> idxLsts
array([[1, 99, 99], [0, 2, 99]], dtype=object)
``````

With other values of idxLsts, it doesn't happen:

``````>>> idxLsts = np.array([[1, 2], [0, 2, 4]], dtype=object)
>>> f(idxLsts)
array([None, None], dtype=object)
>>> idxLsts
array([[1, 2, 99], [0, 2, 4, 99]], dtype=object)
``````

My suspicion is it's related to the documentation which says: "Define a vectorized function which takes a nested sequence of objects or numpy arrays as inputs and returns a numpy array as output. The vectorized function evaluates pyfunc over successive tuples of the input arrays like the python map function, except it uses the broadcasting rules of numpy."

-

From the `vectorize` docstring:

``````The data type of the output of `vectorized` is determined by calling
the function with the first element of the input.  This can be avoided
by specifying the `otypes` argument.
``````

And from the code:

``````        theout = self.thefunc(*newargs)
``````

This is an extra call to `thefunc`, used to determine the output type. This is why the first element is getting two `99`s appended.

This behavior happens in your second case as well:

``````import numpy as np
idxLsts = np.array([[1, 2], [0,2,4]], dtype = object)
idx = 99
f = np.vectorize(lambda x: x.append(idx))
f(idxLsts)
print(idxLsts)
``````

yields

``````[[1, 2, 99, 99] [0, 2, 4, 99]]
``````

You could use `np.frompyfunc` instead of `np.vectorize`:

``````import numpy as np
idxLsts = np.array([[1, 2], [0,2,4]], dtype = object)
idx = 99
f = np.frompyfunc(lambda x: x.append(idx), 1, 1)
f(idxLsts)
print(idxLsts)
``````

yields

``````[[1, 2, 99] [0, 2, 4, 99]]
``````
-
A minor footnote: I have found that although the docs say that this behavior "can be avoided by specifying the `otypes` argument," supplying `otypes` does not prevent the double-call (at least in version 1.6.2). – senderle Oct 27 '12 at 1:28
@senderle: Thanks. I was not able to avoid the double-call either, except by specifying `otypes = '?'`, and `f.nout = 1` and `f.lastcallargs = 1`, which seems a bit crazy :) – unutbu Oct 27 '12 at 1:38