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NAME

MCE::Examples - Various examples and demonstrations

VERSION

This document describes MCE::Examples version 1.803

INCLUDED WITH THE DISTRIBUTION

A wrapper script for parallelizing the grep binary. Hence, processing is done by the binary, not Perl. This wrapper resides under the bin directory.

    mce_grep
        A wrapper script with support for the following C binaries.
        agrep, grep, egrep, fgrep, and tre-agrep

        Chunking may be applied either at the [file] level, for large
        file(s), or at the [list] level when parsing many files
        recursively.

        The gain in performance is noticeable for expensive patterns,
        especially with agrep and tre-agrep.

MCE EXAMPLES ON GITHUB

The examples directory, beginning with 1.700, is maintained separately at a Github repository https://github.com/marioroy/mce-examples and no longer included with the Perl MCE distribution.

PROCESSING INPUT DATA

The next section describes ways to process input data in MCE.

CHUNK_SIZE => 1 (in essence, disabling chunking)

Imagine a long running process and wanting to parallelize an array against a pool of workers. The sequence option may be used if simply wanting to loop through a sequence of numbers instead.

Below, a callback function is used for displaying results. The logic shows how one can output results immediately while still preserving output order as if processing serially. The %tmp hash is a temporary cache for out-of-order results.

   use MCE;

   ## Return an iterator for preserving output order.

   sub preserve_order {
      my (%result_n, %result_d); my $order_id = 1;

      return sub {
         my ($chunk_id, $n, $data) = @_;

         $result_n{ $chunk_id } = $n;
         $result_d{ $chunk_id } = $data;

         while (1) {
            last unless exists $result_d{$order_id};

            printf "n: %5d sqrt(n): %7.3f\n",
               $result_n{$order_id}, $result_d{$order_id};

            delete $result_n{$order_id};
            delete $result_d{$order_id};

            $order_id++;
         }

         return;
      };
   }

   ## Use $chunk_ref->[0] or $_ to retrieve the element.
   my @input_data = (0 .. 18000 - 1);

   my $mce = MCE->new(
      gather => preserve_order, input_data => \@input_data,
      chunk_size => 1, max_workers => 3,

      user_func => sub {
         my ($mce, $chunk_ref, $chunk_id) = @_;
         MCE->gather($chunk_id, $_, sqrt($_));
      }
   );

   $mce->run;

This does the same thing using the foreach "sugar" method.

   use MCE;

   sub preserve_order {
      ...
   }

   my $mce = MCE->new(
      chunk_size => 1, max_workers => 3,
      gather => preserve_order
   );

   ## Use $chunk_ref->[0] or $_ to retrieve the element.
   my @input_data = (0 .. 18000 - 1);

   $mce->foreach( \@input_data, sub {
      my ($mce, $chunk_ref, $chunk_id) = @_;
      MCE->gather($chunk_id, $_, sqrt($_));
   });

The 2 examples described above were done using the Core API. MCE 1.5 comes with several models. The MCE::Loop model is used below.

   use MCE::Loop;

   sub preserve_order {
      ...
   }

   MCE::Loop::init {
      chunk_size => 1, max_workers => 3,
      gather => preserve_order
   };

   ## Use $chunk_ref->[0] or $_ to retrieve the element.
   my @input_data = (0 .. 18000 - 1);

   mce_loop {
      my ($mce, $chunk_ref, $chunk_id) = @_;
      MCE->gather($chunk_id, $_, sqrt($_));

   } @input_data;

   MCE::Loop::finish;

CHUNKING INPUT DATA

Chunking has the effect of reducing IPC overhead by many folds. A chunk containing $chunk_size items is sent to the next available worker.

   use MCE;

   ## Return an iterator for preserving output order.

   sub preserve_order {
      my (%result_n, %result_d, $size); my $order_id = 1;

      return sub {
         my ($chunk_id, $n_ref, $data_ref) = @_;

         $result_n{ $chunk_id } = $n_ref;
         $result_d{ $chunk_id } = $data_ref;

         while (1) {
            last unless exists $result_d{$order_id};
            $size = @{ $result_d{$order_id} };

            for (0 .. $size - 1) {
               printf "n: %5d sqrt(n): %7.3f\n",
                  $result_n{$order_id}->[$_], $result_d{$order_id}->[$_];
            }

            delete $result_n{$order_id};
            delete $result_d{$order_id};

            $order_id++;
         }

         return;
      };
   }

   ## Chunking requires one to loop inside the code block.
   my @input_data = (0 .. 18000 - 1);

   my $mce = MCE->new(
      gather => preserve_order, input_data => \@input_data,
      chunk_size => 500, max_workers => 3,

      user_func => sub {
         my ($mce, $chunk_ref, $chunk_id) = @_;
         my (@n, @result);

         foreach ( @{ $chunk_ref } ) {
            push @n, $_;
            push @result, sqrt($_);
         }

         MCE->gather($chunk_id, \@n, \@result);
      }
   );

   $mce->run;

This does the same thing using the forchunk "sugar" method.

   use MCE;

   sub preserve_order {
      ...
   }

   my $mce = MCE->new(
      chunk_size => 500, max_workers => 3,
      gather => preserve_order
   );

   ## Chunking requires one to loop inside the code block.
   my @input_data = (0 .. 18000 - 1);

   $mce->forchunk( \@input_data, sub {
      my ($mce, $chunk_ref, $chunk_id) = @_;
      my (@n, @result);

      foreach ( @{ $chunk_ref } ) {
         push @n, $_;
         push @result, sqrt($_);
      }

      MCE->gather($chunk_id, \@n, \@result);
   });

Finally, chunking with the MCE::Loop model.

   use MCE::Loop;

   sub preserve_order {
      ...
   }

   MCE::Loop::init {
      chunk_size => 500, max_workers => 3,
      gather => preserve_order
   };

   ## Chunking requires one to loop inside the code block.
   my @input_data = (0 .. 18000 - 1);

   mce_loop {
      my ($mce, $chunk_ref, $chunk_id) = @_;
      my (@n, @result);

      foreach ( @{ $chunk_ref } ) {
         push @n, $_;
         push @result, sqrt($_);
      }

      MCE->gather($chunk_id, \@n, \@result);

   } @input_data;

   MCE::Loop::finish;

DEMO APPLYING SEQUENCES WITH USER_TASKS

The following is an extract from the seq_demo.pl example included with MCE. Think of having several MCEs running in parallel. The sequence and chunk_size options may be specified uniquely per each task.

The input scalar $_ (not shown below) contains the same value as $seq_n in user_func.

   use MCE;
   use Time::HiRes 'sleep';

   ## Run with seq_demo.pl | sort

   sub user_func {
      my ($mce, $seq_n, $chunk_id) = @_;

      my $wid      = MCE->wid;
      my $task_id  = MCE->task_id;
      my $task_wid = MCE->task_wid;

      if (ref $seq_n eq 'ARRAY') {
         ## seq_n or $_ is an array reference when chunk_size > 1
         foreach (@{ $seq_n }) {
            MCE->printf(
               "task_id %d: seq_n %s: chunk_id %d: wid %d: task_wid %d\n",
               $task_id,    $_,       $chunk_id,   $wid,   $task_wid
            );
         }
      }
      else {
         MCE->printf(
            "task_id %d: seq_n %s: chunk_id %d: wid %d: task_wid %d\n",
            $task_id,    $seq_n,   $chunk_id,   $wid,   $task_wid
         );
      }

      sleep 0.003;

      return;
   }

   ## Each task can be configured uniquely.

   my $mce = MCE->new(
      user_tasks => [{
         max_workers => 2,
         chunk_size  => 1,
         sequence    => { begin => 11, end => 19, step => 1 },
         user_func   => \&user_func
      },{
         max_workers => 2,
         chunk_size  => 5,
         sequence    => { begin => 21, end => 29, step => 1 },
         user_func   => \&user_func
      },{
         max_workers => 2,
         chunk_size  => 3,
         sequence    => { begin => 31, end => 39, step => 1 },
         user_func   => \&user_func
      }]
   );

   $mce->run;

   -- Output

   task_id 0: seq_n 11: chunk_id 1: wid 2: task_wid 2
   task_id 0: seq_n 12: chunk_id 2: wid 1: task_wid 1
   task_id 0: seq_n 13: chunk_id 3: wid 2: task_wid 2
   task_id 0: seq_n 14: chunk_id 4: wid 1: task_wid 1
   task_id 0: seq_n 15: chunk_id 5: wid 2: task_wid 2
   task_id 0: seq_n 16: chunk_id 6: wid 1: task_wid 1
   task_id 0: seq_n 17: chunk_id 7: wid 2: task_wid 2
   task_id 0: seq_n 18: chunk_id 8: wid 1: task_wid 1
   task_id 0: seq_n 19: chunk_id 9: wid 2: task_wid 2
   task_id 1: seq_n 21: chunk_id 1: wid 3: task_wid 1
   task_id 1: seq_n 22: chunk_id 1: wid 3: task_wid 1
   task_id 1: seq_n 23: chunk_id 1: wid 3: task_wid 1
   task_id 1: seq_n 24: chunk_id 1: wid 3: task_wid 1
   task_id 1: seq_n 25: chunk_id 1: wid 3: task_wid 1
   task_id 1: seq_n 26: chunk_id 2: wid 4: task_wid 2
   task_id 1: seq_n 27: chunk_id 2: wid 4: task_wid 2
   task_id 1: seq_n 28: chunk_id 2: wid 4: task_wid 2
   task_id 1: seq_n 29: chunk_id 2: wid 4: task_wid 2
   task_id 2: seq_n 31: chunk_id 1: wid 5: task_wid 1
   task_id 2: seq_n 32: chunk_id 1: wid 5: task_wid 1
   task_id 2: seq_n 33: chunk_id 1: wid 5: task_wid 1
   task_id 2: seq_n 34: chunk_id 2: wid 6: task_wid 2
   task_id 2: seq_n 35: chunk_id 2: wid 6: task_wid 2
   task_id 2: seq_n 36: chunk_id 2: wid 6: task_wid 2
   task_id 2: seq_n 37: chunk_id 3: wid 5: task_wid 1
   task_id 2: seq_n 38: chunk_id 3: wid 5: task_wid 1
   task_id 2: seq_n 39: chunk_id 3: wid 5: task_wid 1

GLOBALLY SCOPED VARIABLES AND MCE MODELS

It is possible that Perl may create a new code ref on subsequent runs causing MCE models to re-spawn. One solution to this is to declare global variables, referenced by workers, with "our" instead of "my".

Let's take a look. The $i variable is declared with my and being reference in both user_begin and mce_loop blocks. This will cause Perl to create a new code ref for mce_loop on subsequent runs.

   use MCE::Loop;

   my $i = 0;   ## <-- this is the reason, try our instead

   MCE::Loop::init {
      user_begin => sub {
         print "process_id: $$\n" if MCE->wid == 1;
         $i++;
      },
      chunk_size => 1, max_workers => 'auto',
   };

   for (1..2) {
      ## Perl creates another code block ref causing workers
      ## to re-spawn on subsequent runs.
      print "\n"; mce_loop { print "$i: $_\n" } 1..4;
   }

   MCE::Loop::finish;

   -- Output

   process_id: 51380
   1: 1
   1: 2
   1: 3
   1: 4

   process_id: 51388
   1: 1
   1: 2
   1: 3
   1: 4

By making the one line change, we see that workers persist for the duration of the script.

   use MCE::Loop;

   our $i = 0;  ## <-- changed my to our

   MCE::Loop::init {
      user_begin => sub {
         print "process_id: $$\n" if MCE->wid == 1;
         $i++;
      },
      chunk_size => 1, max_workers => 'auto',
   };

   for (1..2) {
      ## Workers persist between runs. No re-spawning.
      print "\n"; mce_loop { print "$i: $_\n" } 1..4;
   }

   -- Output

   process_id: 51457
   1: 1
   1: 2
   1: 4
   1: 3

   process_id: 51457
   2: 1
   2: 2
   2: 3
   2: 4

One may alternatively specify a code reference to existing routines for user_begin and mce_loop. Take notice of the comma after \&_func though.

   use MCE::Loop;

   my $i = 0;  ## my (ok)

   sub _begin {
      print "process_id: $$\n" if MCE->wid == 1;
      $i++;
   }
   sub _func {
      print "$i: $_\n";
   }

   MCE::Loop::init {
      user_begin => \&_begin,
      chunk_size => 1, max_workers => 'auto',
   };

   for (1..2) {
      print "\n"; mce_loop \&_func, 1..4;
   }

   MCE::Loop::finish;

   -- Output

   process_id: 51626
   1: 1
   1: 2
   1: 3
   1: 4

   process_id: 51626
   2: 1
   2: 2
   2: 3
   2: 4

MONTE CARLO SIMULATION

There is an article on the web (search for comp.lang.perl.misc MCE) suggesting that MCE::Examples does not cover a simple simulation scenario. This section demonstrates just that.

The serial code is based off the one by "gamo". A sleep is added to imitate extra CPU time. The while loop is wrapped within a for loop to run 10 times. The random number generator is seeded as well.

   use Time::HiRes qw/sleep time/;

   srand 5906;

   my ($var, $foo, $bar) = (1, 2, 3);
   my ($r, $a, $b);

   my $start = time;

   for (1..10) {
      while (1) {
         $r = rand;

         $a = $r * ($var + $foo + $bar);
         $b = sqrt($var + $foo + $bar);

         last if ($a < $b + 0.001 && $a > $b - 0.001);
         sleep 0.002;
      }

      print "$r -> $a\n";
   }

   my $end = time;

   printf {*STDERR} "\n## compute time: %0.03f secs\n\n", $end - $start;

   -- Output

   0.408246276657106 -> 2.44947765994264
   0.408099657137821 -> 2.44859794282693
   0.408285842931324 -> 2.44971505758794
   0.408342292008765 -> 2.45005375205259
   0.408333076522673 -> 2.44999845913604
   0.408344266898869 -> 2.45006560139321
   0.408084104120526 -> 2.44850462472316
   0.408197400014714 -> 2.44918440008828
   0.408344783704855 -> 2.45006870222913
   0.408248062985479 -> 2.44948837791287

   ## compute time: 93.049 secs

Next, we'd do the same with MCE. The demonstration requires at least MCE 1.509 to run properly. Folks on prior releases (1.505 - 1.508) will not see output for the 2nd run and beyond.

   use Time::HiRes qw/sleep time/;
   use MCE::Loop;

   srand 5906;

   ## Configure MCE. Move common variables inside the user_begin
   ## block when not needed by the manager process.

   MCE::Loop::init {
      user_begin => sub {
         use vars qw($var $foo $bar);
         our ($var, $foo, $bar) = (1, 2, 3);
      },
      chunk_size => 1, max_workers => 'auto',
      input_data => \&_input, gather => \&_gather
   };

   ## Callback functions.

   my ($done, $r, $a);

   sub _input {
      return if $done;
      return rand;
   }

   sub _gather {
      my ($_r, $_a, $_b) = @_;
      return if $done;

      if ($_a < $_b + 0.001 && $_a > $_b - 0.001) {
         ($done, $r, $a) = (1, $_r, $_a);
      }
      return;
   }

   ## Compute in parallel.

   my $start = time;

   for (1..10) {
      $done = 0;      ## Reset $done before running

      mce_loop {
       # my ($mce, $chunk_ref, $chunk_id) = @_;
       # my $r = $chunk_ref->[0];

         my $r = $_;  ## Valid due to chunk_size => 1

         my $a = $r * ($var + $foo + $bar);
         my $b = sqrt($var + $foo + $bar);

         MCE->gather($r, $a, $b);
         sleep 0.002;
      };

      print "$r -> $a\n";
   }

   printf "\n## compute time: %0.03f secs\n\n", time - $start;

   -- Output

   0.408246276657106 -> 2.44947765994264
   0.408099657137821 -> 2.44859794282693
   0.408285842931324 -> 2.44971505758794
   0.408342292008765 -> 2.45005375205259
   0.408333076522673 -> 2.44999845913604
   0.408344266898869 -> 2.45006560139321
   0.408084104120526 -> 2.44850462472316
   0.408197400014714 -> 2.44918440008828
   0.408344783704855 -> 2.45006870222913
   0.408248062985479 -> 2.44948837791287

   ## compute time: 12.990 secs

Well, there you have it. MCE is able to complete the same simulation many times faster.

MANY WORKERS RUNNING IN PARALLEL

There are occasions when one wants several workers to run in parallel without having to specify input_data or sequence. These two options are optional in MCE. The "do" and "sendto" methods, for sending data to the manager process, are demonstrated below. Both process serially by the manager process on a first come, first serve basis.

   use MCE::Flow max_workers => 4;

   sub report_stats {
      my ($wid, $msg, $h_ref) = @_;
      print "Worker $wid says $msg: ", $h_ref->{"counter"}, "\n";
   }

   mce_flow sub {
      my ($mce) = @_;
      my $wid = MCE->wid;

      if ($wid == 1) {
         my %h = ("counter" => 0);
         while (1) {
            $h{"counter"} += 1;
            MCE->do("report_stats", $wid, "Hey there", \%h);
            last if ($h{"counter"} == 4);
            sleep 2;
         }
      }
      else {
         my %h = ("counter" => 0);
         while (1) {
            $h{"counter"} += 1;
            MCE->do("report_stats", $wid, "Welcome..", \%h);
            last if ($h{"counter"} == 2);
            sleep 4;
         }
      }

      MCE->print(\*STDERR, "Worker $wid is exiting\n");
   };

   -- Output

   Note how worker 2 comes first in the 2nd run below.

   $ ./demo.pl
   Worker 1 says Hey there: 1
   Worker 2 says Welcome..: 1
   Worker 3 says Welcome..: 1
   Worker 4 says Welcome..: 1
   Worker 1 says Hey there: 2
   Worker 2 says Welcome..: 2
   Worker 3 says Welcome..: 2
   Worker 1 says Hey there: 3
   Worker 2 is exiting
   Worker 3 is exiting
   Worker 4 says Welcome..: 2
   Worker 4 is exiting
   Worker 1 says Hey there: 4
   Worker 1 is exiting

   $ ./demo.pl
   Worker 2 says Welcome..: 1
   Worker 1 says Hey there: 1
   Worker 4 says Welcome..: 1
   Worker 3 says Welcome..: 1
   Worker 1 says Hey there: 2
   Worker 2 says Welcome..: 2
   Worker 4 says Welcome..: 2
   Worker 3 says Welcome..: 2
   Worker 2 is exiting
   Worker 4 is exiting
   Worker 1 says Hey there: 3
   Worker 3 is exiting
   Worker 1 says Hey there: 4
   Worker 1 is exiting

TESTING AND CAPTURING OUTPUT

Capturing STDERR and STDOUT is possible with App::Cmd::Tester. MCE v1.708 or later is required to run the demonstration.

   use App::Cmd::Tester;
   use MCE;

   my $mce = MCE->new(
      max_workers => 4,

      user_func => sub {
         my $wid = MCE->wid;

         # MCE->sendto('stderr', "$wid: sendto err\n");
         # MCE->sendto(\*STDERR, "$wid: sendto err\n");
           MCE->print(\*STDERR, "$wid: print err\n");

         # MCE->sendto('stdout', "$wid: sendto out\n");
         # MCE->sendto(\*STDOUT, "$wid: sendto out\n");
         # MCE->print(\*STDOUT, "$wid: print out\n");
           MCE->print("$wid: print out\n");
      }
   );

   my $result = test_app(
      $mce => []
   );

   print "# stderr\n";
   print $result->stderr;
   print "\n";

   print "# stdout\n";
   print $result->stdout;
   print "\n";

   print "# output\n";
   print $result->output;
   print "\n";

   print "# exit code\n";
   print $result->exit_code;
   print "\n\n";

   -- Output

   # stderr
   3: print err
   4: print err
   1: print err
   2: print err

   # stdout
   3: print out
   4: print out
   1: print out
   2: print out

   # output
   3: print err
   3: print out
   4: print err
   1: print err
   4: print out
   1: print out
   2: print err
   2: print out

   # exit code
   0

The next demonstration captures a sequence of numbers orderly. The slot name for IO::TieCombine must be stdout or stderr for MCE->print to work.

   use MCE::Flow;
   use MCE::Candy;
   use IO::TieCombine;

   my $hub = IO::TieCombine->new;

   {
      tie local *STDOUT, $hub, 'stdout';

      MCE::Flow::init {
         max_workers => 4,
         chunk_size  => 500,
         bounds_only => 1,
         gather      => MCE::Candy::out_iter_fh(\*STDOUT),
      };

      mce_flow_s sub {
         my ($mce, $seq, $chunk_id) = @_;
         my $output = '';

         for my $n ( $seq->[0] .. $seq->[1] ) {
            $output .= "$n\n";
         }

         # do this if output order is not required
         # $mce->print(\*STDOUT, $output);

         # or this if preserving output order is desired
           $mce->gather($chunk_id, $output);

      }, 1, 100000;

      MCE::Flow::finish;
   }

   my $content = $hub->slot_contents('stdout');
   my $answer  = join("", map { "$_\n" } 1..100000);

   if ($content eq $answer) {
      print "ordered: yes\n";
   } else {
      print "ordered: no\n";
   }

   -- Ouput

   ordered: yes

INDEX

MCE, MCE::Core

AUTHOR

Mario E. Roy, <marioeroy AT gmail DOT com>