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I need a fast way to keep a running maximum of a numpy array. For example, if my array was:

x = numpy.array([11,12,13,20,19,18,17,18,23,21])

I'd want:


Obviously I could do this with a little loop:

def running_max(x):
    result = [x[0]]
    for val in x:
        if val > result[-1]:
    return result

But my arrays have hundreds of thousands of entries and I need to call this many times. It seems like there's got to be a numpy trick to remove the loop, but I can't seem to find anything that will work. The alternative will be to write this as a C extension, but it seems like I'd be reinventing the wheel.

share|improve this question
i would call that the cumulative max - running max suggests a window to me. unfortunately googling for that doesn't turn up anything useful. – andrew cooke Aug 31 '11 at 0:54
i don't have numpy installed, but max.accumulate might work. check out "accumulate" in the docs. – andrew cooke Aug 31 '11 at 0:56
@andrew max doesn't have an accumulate attribute in numpy. That would have been a good built-in solution though if it did. – JoshAdel Aug 31 '11 at 1:01
@JoshAdel: numpy.maximum.accumulate – wim Aug 31 '11 at 1:12
ah, so close.... :o) – andrew cooke Aug 31 '11 at 1:25
up vote 23 down vote accepted

numpy.maximum.accumulate works for me.

>>> import numpy
>>> numpy.maximum.accumulate(numpy.array([11,12,13,20,19,18,17,18,23,21]))
array([11, 12, 13, 20, 20, 20, 20, 20, 23, 23])
share|improve this answer
wim got there just before I did. – Charles Beattie Aug 31 '11 at 1:19

As suggested, there is scipy.maximum.accumulate:

In [9]: x
Out[9]: [1, 3, 2, 5, 4]

In [10]: scipy.maximum.accumulate(x)
Out[10]: array([1, 3, 3, 5, 5])
share|improve this answer
There is no need to get it from the scipy namespace. It's a numpy ufunc. The duplication of the numpy symbols in scipy.* is a backwards-compatibility leftover from the days of Numeric. – Robert Kern Aug 31 '11 at 2:14
Sorry about that. Personal bias, I guess. – Steve Tjoa Aug 31 '11 at 22:24

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