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I want to store 100 Million terms and their frequencies (in a text database ) into a HashMap <String, Double>. It is giving me "Out of Memory" Error. I tried to increase the heap-space to -Xmx15000M. However it runs half an hour then again throw the same exception. The file size from which I'm trying to read the words and frequencies is 1.7GB.

Any help would be much appreciated.

Thanks :-)

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Are you running a 32 bit or a 64 bit JVM ? –  nos Nov 2 '10 at 17:47
What on earth are you doing that requires 100 million terms? Are you working for Google? –  DJClayworth Nov 2 '10 at 18:02
Why do you want to store it in HashMap in the first place? As many have suggested you can store in database, you may want to map reduce it (Hadoop?). Although it would entirely depend on why HashMap. –  ch4nd4n Nov 2 '10 at 18:02
How many distinct terms are there? If there are many duplicates then it's possible that while the volume of data is too big for memory, the frequency table could still be a reasonable size. In that case, it's just a problem of processing the full file in stages.... –  mikera Nov 2 '10 at 18:16
Duplicate of Java HashMap performance optimization / alternative Use a database. –  BalusC Nov 2 '10 at 18:25

13 Answers 13

up vote 8 down vote accepted

For word processing like that the answer is usually a trie rather than hashmap, if you can live with the longer lookup times. That structure is quite memory efficient for natural languages, where many words have common start strings.

Depending on the input, a Patricia trie might be even better.

(Also, if this is indeed words from a natural language, are you sure you really need 100,000,000 entries? The majority of commonly used words is surprisingly low, commercial solutions (word prediction, spelling correction) rarely use more than 100,000 words regardless of language.)

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I tried the Patricia trie. This time I'm hitting the GC limit and 15GB memory is still not enough. :-) –  ablimit Nov 3 '10 at 3:40
So this answer doesn't work, and yet you've accepted it. –  DJClayworth Nov 3 '10 at 13:53
It pointed me to other solution and I learned a new library tool. It's hard pick the best one whereas all the answers pointed something useful. Best answer goes to one, but I'm very thankful to all earnest answerers here. I hope I can choose more than one best answer... –  ablimit Nov 3 '10 at 18:24

Your problem is that 1.7 GB raw Text is more than 1500 MB even without the overhead added by the individual string objects. For huge mappings you should either use a database or a file backed Map, these would use disk memory instead of heap.


I don't think allocating 15 GB for the heap is possible for most jvms. It wont work with any 32bit jvm and I don't think that a 64bit jvm would work either.

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@nos it would be up to 3.4 GB –  josefx Nov 2 '10 at 17:50
You could put a database in-memory to speed that up, but yeah, a database would be much, much more typical. –  Dean J Nov 2 '10 at 19:21
@josefk: I know this post is old but you can allocate more than 15G on RAM to a single JVM process. I have tried it till 25GB and it works. Specifications: 64 core machine with 64 GB RAM and Sun JDK 6. –  Sanjay T. Sharma Feb 3 '11 at 16:06
@Sanjay T. Sharma good to know, I don't have access to a 64 bit system so I couldn't check it and wrongly assumed that the heapsize would be limited due to system or jvm limitations. –  josefx Feb 3 '11 at 17:46

With 100 million terms you are almost certainly over the limit of what should be stored in-memory. Store your terms in a database of some kind. Either use a commercial database, or write something that allows you to access the file to get the information you want. If the file format you have doesn't let you quickly access the file then convert it to one that does - for example make each record a fixed size, so you can instantly calculate the file offset for any record number. Sorting the records will then allow you to do a binary search very quickly. You can also write code to hugely speed up access to the files without needing to store the whole file in memory.

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If you want just a lightweight KeyValue (Map) store, I would look into using Redis. It is very fast and has the ability to persist the data if it needs. The only downside is that you need to run the Redis store on a linux machine.

If you are limited to Windows, MongoDB is a good option if you can run it in 64bit.

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But it seems using redis with java is a little bit complicated ? –  ablimit Nov 2 '10 at 21:45
See code.google.com/p/jredis –  Joshua Nov 3 '10 at 12:03
Redis is now Windows Compatible too :) –  agpt Sep 20 '14 at 18:32

You could also try stemming to increase the number of duplicates.

For instance, cat = Cats = cats = Cat


swim = swimming = swims

try Googling "Porter Stemmer"

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Its a bad design. Having 1.7GB of data in memory on a HashMap, I would have done any of the two:

  1. Persist all the data (file/database) and have the top 1% or something in memory. Use some algorithm for deciding which IDs will be in memory and when.

  2. Use memcached. The easiest way out. An in-memory distributed hashable. This is exactly what DHTs are used for.

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Other answers have already pointed out that the problem lies with memory usage. Depending on your problem domain you could design a key class that reduced the overall memory footprint. For example, if your key consists of natural language phrases you could separate and intern the words that make up the phrase; e.g.

public class Phrase {
  private final String[] interned;

  public Phrase(String phrase) {
    String[] tmp = phrase.split(phrase, "\\s");

    this.interned = new String[tmp.length];

    for (int i=0; i<tmp.length; ++i) {
      this.interned[i] = tmp[i].intern();

  public boolean equals(Object o) { /* TODO */ }
  public int hashCode() { /* TODO */ }

In fact this solution might work even if the Strings do not represent natural language, providing there is significant overlap that can be exploited between Strings.

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Drop the HashMap and load all that data into HBase or one of the other NoSQL datastores and write your queries in terms of MapReduce operations. This is the approach taken by Google Search and many other sites dealing with huge amounts of data. It has proven to scale to basically infinite size.

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Saying basically infinite is a bit misleading: multivax.com/last_question.html –  Ehtesh Choudhury Jun 11 '12 at 23:03

Trove THashMap uses a lot less memory. Still, doubt if that would be enough of a reduction in size. You need somewhere else to store this information for retrieval besides strictly in memory.

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For the reason why it failed, I would agree with the above answers.

DB is good choice.. But even comercial level of DB, they would also suggest 'Partitioning' the data to do effective action.

Depending on your environment, I might suggest to use distribute your data multiple nodes that connedte through LAN. Based on the Key value,

Node 01 has key starting with 'a' Node 02 has key starging with 'b'....

So your program suddenly changed to network programming..

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Oh, come on. 100 million rows is small change for a proper database server. No sense to go to parittioning here. I have tables with 10 times that amount of data without any performance problems. –  TomTom Nov 2 '10 at 20:08

Consider replacing it with a cdb. Up to 4 GB and:

A successful lookup in a large database normally takes just two disk accesses. An unsuccessful lookup takes only one.

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There is interesting offering from Terracotta - BigMemory which seems to be exactly what you're want. I haven't tried it myself and don't know licensing terms etc. though.

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Back of the envelope: 1.7Gb/100M = avg 18 bytes = per term and freq

We can use a handcoded hashmap backed by two logical arrays.

  1. One to hold int frequencies (values) and the other is to build a C style char array to simulate a two dimensional c array (an array of char arrays). so we index by calculation. we cannot use a java two dimensional array since it comes with too much object overhead. This char array can hold fixed size char arrays to represent the keys. So we calculate the hash of the key and put it in this "two dimensional array" and if we have a conflict it can be resolved by say linear probing. key and value pairs are tied by the common index of the arrays.

  2. The hashmap has to use open addressing since we do not have enough memory for chaining.

  3. We can have say 10 instances of this hashmap based on the length of the keys; cannot be certain since I don't know the characteristics of data.

  4. Space used = 2 power 29 for int array + (2 power 4 (16 bytes per string) * 2 pow 27) = 3.5 gig

  5. If we want double frequencies instead of ints then we may need to reduce the size of the strings appropriately.

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