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.

• 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
• if you just want to count words, you can read the file line-by-line or by file stream. You don't need to load the whole file into RAM. – Raptor 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 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.
• 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 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 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.

• nice approach. but would you sort the dictionary between every word? does that result in quicker search for future words? – Fredrik Feb 7 '13 at 8:21
• no... Sort the dictionary after all words are added. – Sani Singh 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 Singh Huttunen Feb 7 '13 at 8:26
• Assuming the majority of words are not duplicate. Will this approach work fine while reading the content of file size 1 Pebibyte (PiB)? – hemanto Dec 4 '17 at 6:41

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.

• 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.