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I have a number of scripts that currently read in a lot of data from some .CSV files. For efficiency, I use the Text::CSV_XS module to read them in and then create a hash using one of the columns as an index. However, I have a lot of files and they are quite large. And each of the scripts needs to read in the data all over again.

The question is: How can I have persistent storage of these Perl hashes so that all them can be read back in with a minimum of CPU?

Combining the scripts is not an option. I wish...

I applied the 2nd rule of optimization and used profiling to find that the vast majority of the CPU (about 90%) was in:

Text::CSV_XS::fields
Text::CSV_XS::Parse
Text::CSV_XS::parse

So, I made a test script that read in all the .CSV files (Text::CSV_XS), dumped them using the Storable module, and then went back and read them back in using the Storable module. I profiled this so I could see the CPU times:

$ c:/perl/bin/dprofpp.bat
Total Elapsed Time = 1809.397 Seconds
  User+System Time = 950.5560 Seconds
Exclusive Times
%Time ExclSec CumulS #Calls sec/call Csec/c  Name
 25.6   243.6 243.66    126   1.9338 1.9338  Storable::pretrieve
 20.5   194.9 194.92 893448   0.0002 0.0002  Text::CSV_XS::fields
 9.49   90.19 90.198 893448   0.0001 0.0001  Text::CSV_XS::Parse
 7.48   71.07 71.072    126   0.5641 0.5641  Storable::pstore
 4.45   42.32 132.52 893448   0.0000 0.0001  Text::CSV_XS::parse
 (the rest was in terms of 0.07% or less and can be ignored)

So, using Storable costs about 25.6% to load back in as compared to Text::CSV_XS at about 35%. Not a lot of savings...

Has anybody got a suggestion on how I can read in these data more efficiently?

Thanks for your help.

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5 Answers 5

up vote 9 down vote accepted

Parse the data once and put it in an SQLite db. Query using DBI.

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Yours and friedo's get the thumbs up from me. –  Axeman Jul 24 '09 at 22:54
    
@Axeman Thank you. –  Sinan Ünür Jul 24 '09 at 23:30
    
That's the way to go if you don't need write access. –  brian d foy Jul 25 '09 at 19:23
    
Thanks for the suggestion; this is the way I went. Test results are posted in a separate answer. –  Harold Bamford Jul 27 '09 at 18:34

It's vastly preferable to not pull the entire list into memory every time you run the script. Using an on-disk database will allow you to do this. If, for some reason, you have to touch each entry in the CSV file every time you run, I might recommend storing it on a RAM disk instead of physical disk. It obviously fits in memory, I don't think you'll get much improvement by changing the on-disk format you store it in. The only way to really speed it up is store it on a faster medium.

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The easiest way to put a very large hash on disk, IMHO, is with BerkeleyDB. It's fast, time-tested and rock-solid, and the CPAN module provides a tied API. That means you can continue using your hash as if it were an in-memory data structure, but it will automatically read and write through BerkeleyDB to disk.

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If you only need to access part of the data in each script, rather than ALL of it, DBM::Deep is probably your best bet.

Disk/IO is likely to be your biggest bottleneck no matter what you do. Perhaps you could use a data provider that keeps all the data available in a mmapped cache--using something like Sys::Mmap::Simple I've never needed to do this sort of thing, so I don't have much else to offer.

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Explain why DBM::Deep would be better for accessing part of the data, please? –  ysth Jul 24 '09 at 23:33
1  
DBM::Deep is a beautiful module: Think of it literally storing Perl data structures on disk without the need to deserialize the whole DB as with Storable. That being said, it's very, very slow if you need any significant fraction of the data. It puts convenience over performance. –  tsee Jul 25 '09 at 10:18

Well, I've taken the suggestion of Sinan Ünür (thanks!) and made an SQLite database and re-run my test program to compare getting the data via CSV files as compared to getting the data out of the SQLite data base:

$ c:/perl/bin/dprofpp.bat
Total Elapsed Time = 1705.947 Seconds
  User+System Time = 1084.296 Seconds
Exclusive Times
%Time ExclSec CumulS #Calls sec/call Csec/c  Name
 19.5   212.2 212.26 893448   0.0002 0.0002  Text::CSV_XS::fields
 15.7   170.7 224.45    126   1.3549 1.7814  DBD::_::st::fetchall_hashref
 9.14   99.15 99.157 893448   0.0001 0.0001  Text::CSV_XS::Parse
 6.03   65.34 164.49 893448   0.0001 0.0002  Text::CSV_XS::parse
 4.93   53.41 53.412 893574   0.0001 0.0001  DBI::st::fetch
   [ *removed the items of less than 0.01 percent* ]

The total for CSV_XS is 34.67% as compared to 20.63% for SQLite which is somewhat better than the Storable solution I tried before. However, this isn't a fair comparison since with the CSV_XS solution I have to load the entire CSV file but with the SQLite interface, I can just load the parts I want. Thus in practice, I expect even more improvement than this simple-minded test shows.

I have not tried using BerkeleyDB (sorry, friedo) instead of SQLite, mostly because I didn't see that suggestion until I was well involved with trying out SQLite. Setting up the test was a non-trivial task since I almost never have occasion to use SQL databases.

Still, the solution is clearly to load all the data into a database and access via the DBI module. Thanks for everyone's help. All responses are greatly appreciated.

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@Harold Thanks for accepting my answer, but, more importantly, thank you very much for a nice summary with actual numbers. –  Sinan Ünür Jul 27 '09 at 18:43

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