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There are a lot of discussions on the web on the topic of sorting huge files on Unix when the data will not fit into memory. Generally using mergesort and variants.

Hoewever, if suppose, there was enough memory to fit the entire data into it, what could be the most efficient / fastest way of sorting ? The csv files are ~ 50 GB (> 1 billion rows) and there is enough memory (5x the size of data) to hold the entire data.

I can use the Unix sort, but that still takes > 1 hr. I can use any language necessary, but what I am primarily looking for is speed. I understand we can load the data into say, a columnar type db table and sort, but it's a one-time effort, so looking for something more nimble ...

Thanks in advance.

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    RAM=5x50GB? Really? 250GB RAM. That's some serious hardware you've got to play with. Are they hiring :-) – Neil Jun 26 '13 at 11:49
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    :-) ... That's a standard size server for most investment banks, this has modest memory in comparison. It's mainly to support KDB+ (see kx.com). – xbsd Jun 26 '13 at 11:58
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    "... cvs files... >1 billion rows...": forget about the sorting. You have a far more serious problem to solve, a foundational/architectural one. You lost the war when your architecture put you in the position of doing random-access processing of a billion records from a variable-record-length file. You need to go back and redesign your whole process. – Euro Micelli Jun 26 '13 at 12:01
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    This sounds like something worthy some experimenting. If sort is not fast enough, I would try sqlite next. (1) Load the data to a table without index, (2) add index, (3) query the sorted table for all record. Sqlite should be able to load the data from CSV. In case you can use a real RDBMS instead of SQLite, it might be worth it to split the CSV import into several processes. – wilx Jun 26 '13 at 12:02
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    Also, back to sort, the GNU sort has --parallel=N and --batch-size=NMERGE options. – wilx Jun 26 '13 at 12:07
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Use parallel sorting algorithms for huge data.

Useful topic: Which parallel sorting algorithm has the best average case performance?

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What about QuickSort? Did you try? std::sort is usually implemented by quicksort (more precisely introsort, which switches to heapsort if quicksort performance would be bad), so you can try with it. quicksort is usually the fastest option (although the worst-case complexity is O(n^2), but in usual cases it beats all other sorting algorithms).

The space complexity of quicksort should not be too bad, it requires log2(N) stack space, which is around 30 stack frames for 1 billion items.

However, it is unstable sorting algorithm (order of "equal" items is not preserved), so it depends if you are ok with that.

Btw. Unix sort seems to be implemented by merge sort, which usually isn't the fastest option for in-RAM sort.

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