# Finding top n numbers in a file

I was trying to find an algo to find top n numbers in a file containing thousands of numbers. Before that i checked finding top n numbers in an array but couldnt get a concrete solution. Sorting is an obvious option but is there any other way? Maybe same logic can be applied to file

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What tools can you use? How is the file organised? –  user647772 Feb 2 '12 at 7:50
Same question here: stackoverflow.com/questions/9074463/… –  Nick Barnes Feb 2 '12 at 7:50
file is organised with numbers in random order... I guess the prev post has the answer... variation of max heap sort shud be one of the soln –  Akshay Feb 2 '12 at 7:53
That's probably the best solution in this case. There are faster approaches, but they rely on having the whole file in memory; rob mayoff's solution only needs O(n) space to find the top n numbers, so it's better suited to reading inputs from a stream. But it might be overkill depending on what kind of scales we're dealing with here. How many numbers in your file, and how big is your "n"? –  Nick Barnes Feb 2 '12 at 8:04

If `f` is the number of numbers in the file, and `n` is the number you need to extract, you can do it in `O(n + f lg n)` (which actually is `O(f lg n)`, as `n <= f`) as follows:

• Build a (binary) min-heap of the first `n` numbers in the file. (`O(n)`)
• For each remaining number in the file, compare it to the top element in the heap. If the new number is larger, pop the top element off and insert the new one. (`O(f)` times a `O(lg n)` operation).
• When done, the heap contains the `n` largest numbers in the file.
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Assume your file looks something like this.

``````123 448 28239
1299 23729 71829
18283 75723 817
93993 1791 9
``````

Using standard Unix tools, I'd do something like this.

``````\$ tr " " "\n" < in.txt | sort -n -r | head -5
93993
75723
71829
28239
23729
``````

Explanation:

• `tr` converts every space into a newline `\n`
• `sort -n -r` sorts the lines, which now contain one number each, numerically and revers
• `head -5` takes the top five of these sorted rows

Edit: A Comparison of Internal Sorting Algorithms from 2008 gives some details about the algorithms used by various tools.

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internal sorting tool can be used but for a file with a huge volume of numbers would increase the time complexity by a significant amount A single scan is an optimum solution –  Akshay Feb 2 '12 at 7:59
Do you know how `sort` is implemented? Besides, the size of the input will definitely not increase the complexity of the algorithm. –  user647772 Feb 2 '12 at 8:01
dunno how its internally done in UNIX... it should be the most efficient one.. not sure though –  Akshay Feb 2 '12 at 8:06

You can keep an array (say topN[n]) with length `n` and for every number in the file check if it's smaller then all `n` numbers in `topN` if no, replace with the smallest in topTen. It's a good solution if your `n` is not very big because complexity of this algorithm is O(n*k) where K is number of numbers in our file. Actually complexity is O(n*(k+1)) because every time you should place new number in `topN` so that `topN` stay sorted (it will help when adding the next number)

1) Get next number
2) Search it in your topN array with binary search and find the place for it (biggest item in array which is smaller then nextNumber)
3) Insert nextNumber in that location and shift all the next items in `topN` to right. The last item in topN will be putted off from the array.

P.S. sorry for my Eenglish...

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hmm i had thought of the soln... but here there is an overhead of searching for the entire array heap sort would achieve a complexity of log n maybe maintaining the array in sorted order and using a binary search would reduce the complexity –  Akshay Feb 2 '12 at 7:56
I've edited my answer, please take a look. –  shift66 Feb 2 '12 at 8:05
Hmm.. this implementation of the array is similar to maxheap.. Maxheap is likely to be more efficient though than this as there is no overhead for removing elements..we are just replacing them Swaps will do in maxheaps unless we have to remove elements –  Akshay Feb 2 '12 at 18:47