What sort of problem are you running into, and what does "large" mean to you? I have friends you need to load 200 Gb files into memory, so their idea of good tips is a lot different than the budget shopper for minimal VM slices suffering with 250 Mb of RAM (really? My phone has more than that).
In general, Perl holds on to any memory you use, even if it's not using it. Realize that optimizing in one direction, e.g. memory, might negatively impact another, such as speed.
This is not a comprehensive list (and there's more in Programming Perl):
☹ Use Perl memory profiling tools to help you find problem areas. See Profiling heap memory usage on perl programs and How to find the amount of physical memory occupied by a hash in Perl?
☹ Use lexical variables with the smallest scope possible to allow Perl to re-use that memory when you don't need it.
☹ Avoid creating big temporary structures. For instance, reading a file with a foreach
reads all the input at once. If you only need it line-by-line, use while
.
foreach ( <FILE> ) { ... } # list context, all at once
while( <FILE> ) { ... } # scalar context, line by line
☹ You might not even need to have the file in memory. Memory-map files instead of slurping them
☹ If you need to create big data structures, consider something like DBM::Deep or other storage engines to keep most of it out of RAM and on disk until you need it. Outside of Perl, there are various key-value stores, such as Redis, that may help.
☹ Don't let people use your program. Whenever I've done that, I've reduced the memory footprint by about 100%. It also cuts down on support requests.
☹ (Update: Perl can now handle this for you in most cases because it uses a Copy On Write (COW) mechanism) Pass large chunks of text and large aggregates by reference so you don't make a copy, thus storing the same information twice. If you have to copy it because you want to change something, you might be stuck. This goes both ways as subroutine arguments and subroutine return values:
call_some_sub( \$big_text, \@long_array );
sub call_some_sub {
my( $text_ref, $array_ref ) = @_;
...
return \%hash;
}
☹ Track down memory leaks in modules. I had big problems with an application until I realized that a module wasn't releasing memory. I found a patch in the module's RT queue, applied it, and solved the problem.
☹ If you need to handle a big chunk of data once but don't want the persistent memory footprint, offload the work to a child process. The child process only has the memory footprint while it's working. When you get the answer, the child process shuts down and releases it memory. Similarly, work distribution systems, such as Minion, can spread work out among machines.
☹ Turn recursive solutions into iterative ones. Perl doesn't have tail recursion optimization, so every new call adds to the call stack. You can optimize the tail problem yourself with tricks with goto or a module, but that's a lot of work to hang onto a technique that you probably don't need.
☹ Use external programs, forks, job queues, or other separate actors so you don't have to carry around short-term memory burdens. If you have a have processing task that will use a big chunk of memory, let a different program (perhaps a fork of the current program) handle that and give you back the answer. When that other program is done, all of its memory returns to the operating system. This program doesn't even need to be on the same box.
☹ Did he use 6 Gb or only five? Well, to tell you the truth, in all this excitement I kind of lost track myself. But being as this is Perl, the most powerful language in the world, and would blow your memory clean off, you've got to ask yourself one question: Do I feel lucky? Well, do ya, punk?
There are many more, but it's too early in the morning to figure out what those are. I cover some in Mastering Perl and Effective Perl Programming.