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Count word frequency of huge text file [duplicate]

I have a huge text file (larger than the available RAM memory). I need to count the frequency of all words and output the word and the frequency count into a new file. The result should be sorted in the descending order of frequency count.

My Approach:

1. Sort the given file - external sort
2. Count the frequency of each word sequentially, store the count in another file (along with the word)
3. Sort the output file based of frequency count - external sort.

I want to know if there are better approaches to do it. I have heard of disk based hash tables? or B+ trees, but never tried them before.

Note: I have seen similar questions asked on SO, but none of them have to address the issue with data larger than memory.

Edit: Based on the comments, agreed the a dictionary in practice should fit in the memory of today's computers. But lets take a hypothetical dictionary of words, that is huge enough not to fit in the memory.

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marked as duplicate by amit, jlordo, Troy Alford, hjpotter92, BakudanFeb 8 '13 at 0:07

which programming language are you working on? – Raptor Feb 7 '13 at 8:13
All different words still larger then RAM ? – xvorsx Feb 7 '13 at 8:13
@ShivanRaptor: Java – vikky.rk Feb 7 '13 at 8:14
How many different words are there in the file? Would they fit in memory if you don't store duplicates? – comocomocomocomo Feb 7 '13 at 8:15
Really? How much RAM? Even a complete dictionary fits into today's computers RAM... – Mörre Noseshine Feb 7 '13 at 8:17

I would go with a `map reduce` approach:

1. Distribute your text file on nodes, assuming each text in a node can fit into RAM.
2. Calculate each word frequency within the node. (using `hash tables` )
3. Collect each result in a master node and combine them all.
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Since the poster claims not even a dictionary of words used in the file fits into his tiny RAM(???) I vote +1 on THIS solution - and this also works when there's just one machine when you do the slices sequentially. – Mörre Noseshine Feb 7 '13 at 8:21
I thought about this approach sequentially, but how would I combine the results efficiently? – vikky.rk Feb 7 '13 at 8:26
Sort each result file individually, then open them all and read line by line, deciding whether to add the results (same word) and/or, depending on sequence in alphabet, which word/nr pair to write to the result file. – Mörre Noseshine Feb 7 '13 at 8:28
Yes that is almost what external sort does. Except that we don't need to sort the entire file, just sorting the slices should be enough. – vikky.rk Feb 7 '13 at 8:42

All unique words probably fit in memory so I'd use this approach:

• Create a dictionary (`HashMap<string, int>`).
• Read the huge text file line by line.
• Add new words into the dictionary and set value to 1.
• Add 1 to the value of existing words.

After you've parsed the entire huge file:

• Sort the dictionary by frequency.
• Write, to a new file, the sorted dictionary with words and frequency.

Mind though to convert the words to either lowercase or uppercase.

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nice approach. but would you sort the dictionary between every word? does that result in quicker search for future words? – FredrikRedin Feb 7 '13 at 8:21
no... Sort the dictionary after all words are added. – Sani Huttunen Feb 7 '13 at 8:22
Why a `Dictionary`? The class is marked as obsolete. – Matteo Feb 7 '13 at 8:23
@Matteo: I'm not suggesting to use the `Dictionary` class. Other than being obsolete it's also an abstract class and would be of no use. The choice of the word `dictionary` is based on what the `HashMap` is used for. – Sani Huttunen Feb 7 '13 at 8:26

Best way to achieve it would be to read the file line by line and store the words into a Multimap (e.g. Guava). If this Map extends your memory you could try using a Key-Value store (e.g. Berkeley JE DB, or MapDB). These key-value stores work similar to a map, but they store their values on the HDD. I used MapDB for a similar problem and it was blazing fast.

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Cool, I will give it a try. – vikky.rk Feb 7 '13 at 8:32

If the list of unique words and the frequency fits in memory (not the file just the unique words) you can use a hash table and read the file sequentially (without storing it).

You can then sort the entries of the hash table by the number of occurrences.

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You can use a divide and conquer approach.

1. Read the file and write all words starting with A to file A.txt, words starting with B to file B.txt ... words starting with Z to file Z.txt.
2. If any of these files are still greater than your memory limit, divide the large files again using their second letters, i.e. words starting with AA goes into file AA.txt, words starting with AB goes into file AB.txt etc.
3. Since a word cannot appear in two different files now, you can easily count all words at each file and merge the results without further calculations.

You can divide each file in only one pass, so it would take linear time to divide the files. Then, you can count words in each file and merge the files in linear time.

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