Function of Numpy Array with if-statement

I am using Matplotlib and Numpy to produce some plots. I wish to define a function which given an array returns another array with values calculated elementwise, for example:

``````def func(x):
return x*10

x = numpy.arrange(-1,1,0.01)
y = func(x)
``````

This is fine. Now however I wish to have an if-statement inside `func`, for example:

``````def func(x):
if x<0:
return 0
else:
return x*10

x = numpy.arrange(-1,1,0.01)
y = func(x)
``````

This unfortunately throws the following error

``````Traceback (most recent call last):
File "D:\Scripts\test.py", line 17, in <module>
y = func(x)
File "D:\Scripts\test.py", line 11, in func
if x<0:
ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()
``````

I looked at the documentation for `all()` and `any()` and they do not fit the bill for what I need. So is there a nice way to make the function handle arrays element wise as in the first example?

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You have to decide whether you want to treat `x` as `int` or as a `numpy.array`. Or use `ininstance()` to check what type is being passed –  pajton Nov 7 '11 at 13:10
What do you mean by `x<0`? `x` is an array, so it is not clear what this is supposed to mean. –  Björn Pollex Nov 7 '11 at 13:10
@Bjoern Pollex I know that is why python is getting confused, I want to apply this function to each element of the array individually (i.e. elementwise) –  Dan Nov 7 '11 at 13:12
@pajton Indeed but is there a way to make the second handle this gracefully like the first example? –  Dan Nov 7 '11 at 13:13
So what exactly do you want the output to be, for the illustrated input? –  Karl Knechtel Nov 7 '11 at 13:52

Use numpy.vectorize to wrap func before applying it to array x:

``````from numpy import vectorize
vfunc = vectorize(func)
y = vfunc(x)
``````
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Neat. I do believe however, that my solution is faster as long as you use operations for which Numpy has it's own implementations (have not tested it though, just a feeling). –  Björn Pollex Nov 7 '11 at 13:28
Sure. All the built-in ops, such as those you compose, will be faster than pure python. I was just targeting the "is there a nice way to make the function handle arrays element wise?" question. –  Chris Kuklewicz Nov 7 '11 at 13:35
I wonder if there is a way to make this efficient when using functions written in C (e.g. by using Cython). I have a feeling there might be. –  Björn Pollex Nov 7 '11 at 13:50
Accepted this answer since I was after readable code more than speed (this is only a little script after all) :) –  Dan Nov 7 '11 at 14:10

This should do what you want:

``````def func(x):
small_indices = x < 10
x[small_indices] = 0
x[invert(small_indices)] *= 10
return x
``````

`invert` is a Numpy-function. Note that this modifies the argument. To prevent this, you'd have to modify and return a `copy` of `x`.

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Thanks, this seems to work. I'm curious as to why `x[x<0]=0 etc` doesn't seem to work? –  Dan Nov 7 '11 at 13:24
@Dan: It does work, but the way I show it, the potentially expensive operation `x<0` has to be executed only once (on second thought, `invert` is probably just as expensive, you'd have to test that). –  Björn Pollex Nov 7 '11 at 13:26
Well, "x[x<0]=0" works for me. (Python 2.6.1 numpy 2.0.0.dev-3071eab) –  Chris Kuklewicz Nov 7 '11 at 13:28
I think using np.where is even better. –  tillsten Nov 7 '11 at 20:20
``````x = numpy.arrange(-1,1,0.01)
y = numpy.zeros(len(x))
``````

`mask` is a boolean array that equates to `True` are array indices matching the condition and `False` elsewhere. The last line replaces all values in the original array with that value mulitplied by 10.

Edited to reflect Bjorn's pertinent comment

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It would be even nicer (and correct) if you'd make `y = zeroes(len(x))` and then `y[mask] = x[mask] * 10`. –  Björn Pollex Nov 7 '11 at 13:32

(I realize this is an old question, but ...)

There is one more option which wasn't mentioned here -- using `np.choose`.

``````np.choose(
# the boolean condition
x < 0,
[
# index 0: value if condition is False
10 * x,
# index 1: value if condition is True
0
]
)
``````

Though not terribly readable, this is just a single expression (not a series of statements), and does not compromize numpy's inherent speed (as `np.vectorize` does).

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