CSC/ECE 517 Fall 2010/ch4 4g HW

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Introduction

Drawing from the concepts discussed in Chapter 2 Section 24, Metaprogramming in Statically Typed Languages, we will continue to examine metaprogramming concepts in the environment of dynamically typed languages. As always, the focus will be on object-oriented languages to demonstrate the common usages of metaprogramming.

As you may recall from the previous chapter, metaprogramming can be defined as "the technique that allows us to write programs that can manipulate other programs or themselves as a part of their data" [[1]]. Thus it allows us to add behavior to classes or objects that was not previously specified, often done at compile time instead of runtime. The same basic concepts still apply here, although in a few different fashions for dynamically typed languages instead of those that are statically typed.

This chapter will begin with a brief overview of object-oriented dynamic programming languages, or languages with an object-oriented bent, and progress into a further analysis of dynamic typing within those dynamic languages. The majority of the chapter will then cover metaprogramming within the previous described environment, offering examples, common methods of use, and existence in real-world software projects. Examples will be given to illustrate important concepts, and will be expressed in sample object-oriented dynamically typed languages.

Dynamic Languages

Dynamic programming languages are loosely defined as languages that are designed to exhibit, or provide as extra functionality, behaviors at run-time that are otherwise normally found at compile-time. This difference from static languages is exemplified in behaviors such as (during execution) adding new methods, classes or objects, extending existing classes or objects, and modifying the type system [[2]].

Common and useful examples of object-oriented dynamic languages include Ruby, Python, and Perl.

Ruby: Ruby is considered a pure object-oriented dynamic language with dynamic typing.

Python: Python is not technically (by definition) purely object-oriented, but it was designed mainly for such purposes, is dynamic and dynamically typed, and so is relevant to our discussions.

Perl: Perl is not completely object-oriented, but has essential object-oriented elements. It was designed as procedural but has since been extended to implement object-oriented mentalities, and is also dynamic and dynamically typed.

Dynamic Typing

Most but not all dynamic programming languages are also dynamically typed. Dynamic typing describes the method of type checking that occurs mainly at run-time, instead of compile-time. Put simply, the type of a variable is not statically defined; instead, a variable refers to a value, and only the value has a strict type [[3]]. This enables a more fluid style of programming, especially in areas like metaprogramming as we soon shall see.

Example

Duck typing is a well-known and interesting form of dynamic typing that appears prominently in Ruby. Here, the type of the object is ignored in favor of the usable aspects of an object. As is often said, "if it walks like a duck, and quacks like a duck, then it is a duck" [[4]]. Suppose we wanted to code the concatenation of information about a song to a string. Without duck typing, we might write it as:

def append_song(result, song) # test we're given the right parameters 
 unless result.kind_of?(String)
  fail TypeError.new("String expected") 
 end
 unless song.kind_of?(Song) 
  fail TypeError.new("Song expected")
 end
 result << song.title << " (" << song.artist << ")" 
end
result = ""
append_song(result, song)    # =>    "I Got Rhythm (Gene Kelly)"

This sort of tedious checking need not really be done. If whatever object is passed in 'song' responds to .title and .artist, then things will be alright. If not, the exceptions will be thrown anyway, regardless of if we're explicitly checked and then failed. Thus duck typing enables us to more succinctly write [[5]]:

def append_song(result, song) 
 result << song.title << " (" << song.artist << ")"
end
result = "" 
append_song(result, song)	# =>	"I Got Rhythm (Gene Kelly)"

Metaprogramming

Now that we've established clearly what dynamic programming languages that use dynamic typing are, and shown a typical example of how this appears in simple code, we can immerse ourselves further into the more complex arena of metaprogramming with these kinds of languages.


Common Usage

Examples

Ruby

Let's consider how we might implement our append_song method from above using metaprogramming techniques to create its superclass and then dynamically define the method itself.

info = Class.new
info.class_eval do
 define_method: append_song(song) do
   self << song.title << " (" << song.artist << ")"
 end
info.new.append_song(RandomSong)

class_eval sets self for the duration of the block just as if it was inside the class definition body. Thus the method defintion append_song will define an instance method of that name.

Python

One way that python uses metaprogramming is through decorators. Drawn from the concept of the Decorator Pattern, a decorator in python is a specific change to syntax that allows us to change functions and methods (although not classes as of yet) [[6]]. In the example below, the use of a decorator lets us define a function inside a function (so one modifies the other).

def elementwise(fn):
   def newfn(arg):
       if hasattr(arg,'__getitem__'):  # is a Sequence
           return type(arg)(map(fn, arg))
       else:
           return fn(arg)
   return newfn
@elementwise
def compute(x):
   return x**3 - 1

print compute(5)        # => prints: 124
print compute([1,2,3])  # => prints: [0, 7, 26]
print compute((1,2,3))  # => prints: (0, 7, 26)

This decorater enhances the original compute function by adding the functionality of elementwise [[7]]. Now we can operate on one thing, or a series of things, a very useful tactic that is applicable in many dynamic programming situations.


Perl

Perl 6 is a revised version of that language, and provides greater functionality and support for object-oriented programming along with the various methods of metaprogramming [[8]]. The follow piece of code demonstrates how perl can dynamically edit a class and methods via this added functionality.

use v6;
class Ninja {
 has Str $.name is rw;
}   
my Ninja $drew .= new( name => 'Drew' );
augment class Ninja {            # adds a method
 method battle_cry {
  say $.name ~ ' says hiya!!';
 }
}
$drew.battle_cry;   # => prints: Drew says hiya!
my $sword_symbol = '********';
$drew.^add_method( 'swing', method ( Str $sound_effect ) {
 say "{$.name}: {$sword_symbol} {$sound_effect}";
});
$drew.swing( 'slash!' );    # => Drew: ********* slash!

As we saw above, using perl you can define a class, dynamically add a method to it, and additionally define another method (swing) on an instance ($drew) that accesses the instance’s state by closing over local scope [[9]].

Impact and Development

Real-world examples.

Proposed improvements in the given language-examples.

Summary

Review everything.

References

[1] CSC/ECE 517 Fall 2010/ch2 S24 NS . http://pg-server.csc.ncsu.edu/mediawiki/index.php/CSC/ECE_517_Fall_2010/ch2_S24_NS#What_is_Metaprogramming.3F.

[2] http://en.wikipedia.org/wiki/Dynamic_programming_language.

[3] http://en.wikipedia.org/wiki/Dynamic_typing#Dynamic_typing

[4] http://en.wikipedia.org/wiki/Dynamic_typing#Duck_typing

[5] Pragmatic Ruby 1.9, p.375.