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Is there specific algorithm that allows me to maintain a min/max over a small/medium sized sliding window (typical size is 600, with all elements being integers)? The window is really the last N observations in a stream. So, I add a new observation and remove the oldest observation at each time unit, so I'd like to keep the min and max over the last N obervations.

This is a different problem from the one stated in Sliding window minimum algorithm because I do not maintain the entire data, and therefore the "index-based" solution will not be applicable here. Moreover my input data itself will be in a circular array.

Heaps will probably not work too well: I don't delete/pop the Min/Max element, but the oldest element, which will defeat the purpose of having the heap in the first place.

log(n) complexity-based structures such as Red-black trees will work just fine, and splay trees may be even more suitable for the type of data I'd have, but are they a bit of an overkill for the size I'd deal with?

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Better late than never, may help people in the future. There is indeed an algorithm : home.tiac.net/~cri/2001/slidingmin.html – Wam Nov 20 '12 at 14:47
    
The link above doesn't work but I found a version on archive.org: web.archive.org/web/20120805114719/http://home.tiac.net/~cri/… – user674669 Feb 28 '13 at 17:59

The solution to the problem of finding maximum over stream of input data is hosted on the below link, you may easily tweak it to find Min as well.

The size of input stream isn't important and can be infinite. The algorithm executes in Amortized constant O(1) complexity.

https://github.com/varoonverma/code-challenge.git

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