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I have a 4M records. Each record has about 5078 fields at max. Some might have less but this is the upper limit.

In the beginning, this data structures holds no data.

I have also a stream of files. Each of which is about 30G and it results in updating the above data structure, mostly by adding numbers to the existing ones after some light-computation.

Data types are all primitives and I'm using trove collections but I would like to see/know if any have had similar application and if in-memory databases or google collections would introduce some gain in performance.


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closed as not constructive by Oliver Charlesworth, millimoose, AlexWien, sgarizvi, CloudyMarble Feb 18 '13 at 5:36

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Is the entire data set active over the entire processing period? Or do some records eventually get 'settled' in their final state at some point prior to all the computation being done? –  Perception Feb 17 '13 at 12:49
Doing back-of-the-envelope guesstimates tells me that assuming a field requires at least 4 bytes for an empty pointer, your dataset size should be 80+ GB. I can safely guess you do not have this much memory available, so looking for an in-memory database seems pointless. That said, while a nontrivial amount, it should be easily handled by any non-toy database, relational or not. Going by the numbers H2 mentions, holding the indices for that much data would take ~10MB RAM which is peanuts. –  millimoose Feb 17 '13 at 12:52
@Perception thanks for replying. All are active. –  DotNet Feb 17 '13 at 12:53
So, assuming you cannot hold everything in memory anyway (not without using some sort of big data techniques), to improve performance you obviously need to reduce IO, and try to cluster updates to a given part of data. This also means that if the writes to the database really need to be randomly scattered your throughput is IO-bound. –  millimoose Feb 17 '13 at 12:54
My guess however would be that if you do not need to persist this dataset on a disk, adding any DB into the mix would flat out reduce the performance over a straightforward approach. –  millimoose Feb 17 '13 at 14:01