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I am currently working on a project in Java where I must perform several Infromation Retrieval and Classification tasks over a very large dataset. A small collection would have 10K documents. From each document about 100 150-dimensional vectors of doubles. So about 1M vectors of 150 doubles or 150M doubles. After storing I need to recall all of them OR a percentage of them and perform clustering (e.g. KMEANS). Actual collections have many more documents (I am currently dealing with 200K documents).

Of course I have dealt with OutOfMemoryError several times and my last solution to the problem was storing in 10 huge XML files with total size >5GB. The files had to be 10 because DOM Writer got the memory full. For the reading I used SAX Parser which did the job without loading them in memory. In addition storing a double into any kind of text multiplies his actual size and adds the computational cost of parsing and converting. Finally clustering algorithms usually are itterative, so they will need the same data again and again. My method didn't cahce anything, it just read from disk many times.

I am now searching for a more compact way of storing any amount of data in binary format (Database, raw binary file etc.) and an efficient way of reading them. Does anyone have any ideas to propose?

Thanks in advance!

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4 Answers 4

up vote 3 down vote accepted

Embedded database or key-value storage. There are plenty of them, e.g. JDBM3. And what a strange idea to store in xml format? You could simply dump an array on a file using standard serialization technique.

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JDBM3 has been upgraded to JDBM4, better know as MapDB. –  mat_boy Apr 12 '13 at 8:03

I am not so sure about your case, but for our "large data handling" needs we used noSQL DB and it worked quite fine.

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I'll extend this answer with the Big Data approach in general. Look to hadoop to process very large files and NoSQL databases (per @jakub.petr ) to hold that data –  Chris Gerken Oct 3 '12 at 17:46

Don't use Derby for this purpose. Storing of more than 500k entries is very slow and uses way too much memory

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In-Memory Datagrids may solve your problem. There are several open source solution available (Hazelcast, Infinispan).

I have only worked with hazelcast yet - so can't tell you anything about the others.

Hazelcast spreads the data over multiple nodes. Queries are also distributed over all nodes in the cluster.

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