The London Perl and Raku Workshop takes place on 26th Oct 2024. If your company depends on Perl, please consider sponsoring and/or attending.

NAME

CPS::Functional - functional utilities in Continuation-Passing Style

SYNOPSIS

use CPS::Functional qw( kmap );

use Example::HTTP::Client qw( k_get_http );
use List::Util qw( sum );

my @URLs = (
   "http://www.foo.com",
   "http://www.bar.com",
);

kmap( \@URLs,
   sub {
      my ( $item, $kret ) = @_;

      k_get_http( uri => $item, on_response => sub {
         my ( $response ) = @_;

         $kret->( $response->content_length );
      } );
   },
   sub {
      my ( @sizes ) = @_;

      say "Total length of all URLs: " . sum(@sizes);
   },
);

DESCRIPTION

This module provides CPS versions of data-flow functionals, such as Perl's map and grep, where function bodies are invoked and expected to return data, which the functional manages. They are built on top of the control-flow functionals provided by the CPS module itself.

FUNCTIONS

kmap( \@items, \&body, $k )

CPS version of perl's map statement. Calls the body code once for each element in @items, capturing the list of values the body passes into its continuation. When the items are exhausted, $k is invoked and passed a list of all the collected values.

$body->( $item, $kret )
   $kret->( @items_out )

$k->( @all_items_out )

kgrep( \@items, \&body, $k )

CPS version of perl's grep statement. Calls the body code once for each element in @items, capturing those elements where the body's continuation was invoked with a true value. When the items are exhausted, $k is invoked and passed a list of the subset of @items which were selected.

$body->( $item, $kret )
   $kret->( $select )

$k->( @chosen_items )

kfoldl( \@items, \&body, $k )

CPS version of List::Util::reduce, which collapses (or "folds") a list of values down to a single scalar, by successively accumulating values together.

If @items is empty, invokes $k immediately, passing in undef.

If @items contains a single value, invokes $k immediately, passing in just that single value.

Otherwise, initialises an accumulator variable with the first value in @items, then for each additional item, invokes the body passing in the accumulator and the next item, storing back into the accumulator the value that body passed to its continuation. When the @items are exhausted, it invokes $k, passing in the final value of the accumulator.

$body->( $acc, $item, $kret )
   $kret->( $new_acc )

$k->( $final_acc )

Technically, this is not a true Scheme/Haskell-style foldl, as it does not take an initial value. (It is what Haskell calls foldl1.) However, if such an initial value is required, this can be provided by

kfoldl( [ $initial, @items ], \&body, $k )

kfoldr( \@items, \&body, $k )

A right-associative version of kfoldl(). Where kfoldl() starts with the first two elements in @items and works forward, kfoldr() starts with the last two and works backward.

$body->( $item, $acc, $kret )
   $kret->( $new_acc )

$k->( $final_acc )

As before, an initial value can be provided by modifying the @items array, though note it has to be last this time:

kfoldr( [ @items, $initial ], \&body, $k )

kunfold( $seed, \&body, $k )

An inverse operation to kfoldl(); turns a single scalar into a list of items. Repeatedly calls the body code, capturing the values it returns, until it indicates the end of the loop, then invoke $k with the collected values.

$body->( $seed, $kmore, $kdone )
   $kmore->( $new_seed, @items )
   $kdone->( @items )

$k->( @all_items )

With each iteration, the body is invoked and passed the current $seed value and two continuations, $kmore and $kdone. If $kmore is invoked, the passed items, if any, are appended to the eventual result list. The body is then re-invoked with the new $seed value. If $klast is invoked, the passed items, if any, are appended to the return list, then the entire list is passed to $k.

EXAMPLES

The following aren't necessarily examples of code which would be found in real programs, but instead, demonstrations of how to use the above functions as ways of controlling program flow.

Without dragging in large amount of detail on an asynchronous or event-driven framework, it is difficult to give a useful example of behaviour that CPS allows that couldn't be done just as easily without. Nevertheless, I hope the following examples will be useful to demonstrate use of the above functions, in a way which hints at their use in a real program.

Implementing join() using kfoldl()

use CPS::Functional qw( kfoldl );

my @words = qw( My message here );

kfoldl(
   \@words,
   sub {
      my ( $left, $right, $k ) = @_;

      $k->( "$left $right" );
   },
   sub {
      my ( $str ) = @_;

      print "Joined up words: $str\n";
   }
);

Implementing split() using kunfold()

The following program illustrates the way that kunfold() can split a string, in a reverse way to the way kfoldl() can join it.

use CPS::Functional qw( kunfold );

my $str = "My message here";

kunfold(
   $str,
   sub {
      my ( $s, $kmore, $kdone ) = @_;

      if( $s =~ s/^(.*?) // ) {
         return $kmore->( $s, $1 );
      }
      else {
         return $kdone->( $s );
      }
   },
   sub {
      my @words = @_;
      print "Words in message:\n";
      print "$_\n" for @words;
   }
);

Generating Prime Numbers

While the design of kunfold() is symmetric to kfoldl(), the seed value doesn't have to be successively broken apart into pieces. Another valid use for it may be storing intermediate values in computation, such as in this example, storing a list of known primes, to help generate the next one:

use CPS::Functional qw( kunfold );

kunfold(
   [ 2, 3 ],
   sub {
      my ( $vals, $kmore, $kdone ) = @_;

      return $kdone->() if @$vals >= 50;

      PRIME: for( my $n = $vals->[-1] + 2; ; $n += 2 ) {
         $n % $_ == 0 and next PRIME for @$vals;

         push @$vals, $n;
         return $kmore->( $vals, $n );
      }
   },
   sub {
      my @primes = ( 2, 3, @_ );
      print "Primes are @primes\n";
   }
);

Forward-reading Program Flow

One side benefit of the CPS control-flow methods which is unassociated with asynchronous operation, is that the flow of data reads in a more natural left-to-right direction, instead of the right-to-left flow in functional style. Compare

sub square { $_ * $_ }
sub add { $a + $b }

print reduce( \&add, map( square, primes(10) ) );

(because map is a language builtin but reduce is a function with (&) prototype, it has a different way to pass in the named functions)

with

my $ksquare = liftk { $_[0] * $_[0] };
my $kadd = liftk { $_[0] + $_[1] };

kprimes 10, sub {
   kmap \@_, $ksquare, sub {
      kfoldl \@_, $kadd, sub {
         print $_[0];
      }
   }
};

This translates roughly to a functional vs imperative way to describe the problem:

Print the sum of the squares of the first 10 primes.

Take the first 10 primes. Square them. Sum them. Print.

Admittedly the closure creation somewhat clouds the point in this small example, but in a larger example, the real problem-solving logic would be larger, and stand out more clearly against the background boilerplate.

SEE ALSO

  • CPS - manage flow of control in Continuation-Passing Style

AUTHOR

Paul Evans <leonerd@leonerd.org.uk>