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We are in a situation that we need to store millions of records everyday,

Data Structure Model:

  • id
  • date
  • title
  • ...
  • Data [RAW TEXT]

Our [RAW TEXT] is different each time, from ~30KB to 300KB, and on average it's 100Kbs. We never need to search [RAW TEXT], also maybe once a month data access is required to some of them by id.

Now we are storing all of them(attributes and data) in MongoDb because of the great INSERT speed and performance in MongoDb. But our database size is growing rapidly and it's about 85GBs now, and in next few days it will be a problem for us.

Here is the question, how would you implement it?
Does it really worth to change Database and Software Structures to store data[RAW TEXT] in File System(/datafiles/x/y/z/id.txt)?
Will this change have a significant impact on system performance?

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up vote 2 down vote accepted

If you're concerned about storage, why not compress the text data? Decent text compression should be about 10:1.

Personally, I'd take the file-based approach, because it sounds like your main function is archiving. I'd write all the info into the file that's needed to regenerate the database record, compress it, and store it in some kind of sensible directory structure based on the key. The reason being that it's easy to start a new disk or move sections of the data off to archival storage.

If you are collecting 10 million records each day with compression, that amounts to about 100GB per day. You might want to make a 'Disk ID' to form part of the key, as at this rate you'd fill up a 2TB disk in about 3 weeks. Even a 20TB RAID array would fill up in about 6 months.

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The compression need a lot of process and it has terrible impact on INSERT performance. But based on your opinion, we can do compression after storing in the idle times. Thanks for idea, and your vote for File System – Kousha May 9 '13 at 22:45
If you store the file data on a different disk, this shouldn't be such an issue. Pipe the data off to a background process that does nothing but compress and archive. You can make that process responsible for batching database writes, too. With a separate disk for the database, you can do these operations simultaneously. Use a compression library that can utilise multiple cores. Set up your filesystem on the archive disk(s) to be optimized for the expected average file size. – paddy May 9 '13 at 23:04

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