Python is an object-oriented programming language, which means that it provides features that support object-oriented programming.
It is not easy to define object-oriented programming, but we have already seen some of its characteristics:
For example, the Time class defined in the last chapter corresponds to the way people record the time of day, and the functions we defined correspond to the kinds of things people do with times. Similarly, the Point and Rectangle classes correspond to the mathematical concepts of a point and a rectangle.
So far, we have not taken advantage of the features Python provides to support object-oriented programming. Strictly speaking, these features are not necessary. For the most part, they provide an alternative syntax for things we have already done, but in many cases, the alternative is more concise and more accurately conveys the structure of the program.
For example, in the Time program, there is no obvious connection between the class definition and the function definitions that follow. With some examination, it is apparent that every function takes at least one Time object as a parameter.
This observation is the motivation for methods. We have already seen some methods, such as keys and values, which were invoked on dictionaries. Each method is associated with a class and is intended to be invoked on instances of that class.
Methods are just like functions, with two differences:
In the next few sections, we will take the functions from the previous two chapters and transform them into methods. This transformation is purely mechanical; you can do it simply by following a sequence of steps. If you are comfortable converting from one form to another, you will be able to choose the best form for whatever you are doing.
In the last chapter, we defined a class named Time and you wrote a function named print_time, which should have looked something like this:
class Time: pass def print_time(time): print (str(time.hours) + ":" + str(time.minutes) + ":" + str(time.seconds))
To call this function, we passed a Time object as a parameter:
>>> current_time = Time() >>> current_time.hours = 9 >>> current_time.minutes = 14 >>> current_time.seconds = 30 >>> print_time(current_time)
To make print_time a method, all we have to do is move the function definition inside the class definition. Notice the change in indentation.
class Time: def print_time(time): print (str(time.hours) + ":" + str(time.minutes) + ":" + str(time.seconds))
Now we can invoke print_time using dot notation.
As usual, the object on which the method is invoked appears before the dot and the name of the method appears after the dot.
The object on which the method is invoked is assigned to the first parameter, so in this case current_time is assigned to the parameter time.
By convention, the first parameter of a method is called self. The reason for this is a little convoluted, but it is based on a useful metaphor.
The syntax for a function call, print_time(current_time), suggests that the function is the active agent. It says something like, Hey print_time! Here’s an object for you to print.
In object-oriented programming, the objects are the active agents. An invocation like current_time.print_time() says Hey current_time! Please print yourself!
This change in perspective might be more polite, but it is not obvious that it is useful. In the examples we have seen so far, it may not be. But sometimes shifting responsibility from the functions onto the objects makes it possible to write more versatile functions, and makes it easier to maintain and reuse code.
Let’s convert increment to a method. To save space, we will leave out previously defined methods, but you should keep them in your version:
class Time: #previous method definitions here... def increment(self, seconds): self.seconds = seconds + self.seconds while self.seconds >= 60: self.seconds = self.seconds - 60 self.minutes = self.minutes + 1 while self.minutes >= 60: self.minutes = self.minutes - 60 self.hours = self.hours + 1
The transformation is purely mechanical - we move the method definition into the class definition and change the name of the first parameter.
Now we can invoke increment as a method.
Again, the object on which the method is invoked gets assigned to the first parameter, self. The second parameter, seconds gets the value 500.
The after function is slightly more complicated because it operates on two Time objects, not just one. We can only convert one of the parameters to self; the other stays the same:
class Time: #previous method definitions here... def after(self, time2): if self.hour > time2.hour: return True if self.hour < time2.hour: return False if self.minute > time2.minute: return True if self.minute < time2.minute: return False if self.second > time2.second: return True return False
We invoke this method on one object and pass the other as an argument:
if doneTime.after(current_time): print "The bread will be done after it starts."
You can almost read the invocation like English: If the done-time is after the current-time, then...
We have seen built-in functions that take a variable number of arguments. For example, string.find can take two, three, or four arguments.
It is possible to write user-defined functions with optional argument lists. For example, we can upgrade our own version of find to do the same thing as string.find.
This is the original version:
def find(str, ch): index = 0 while index < len(str): if str[index] == ch: return index index = index + 1 return -1
This is the new and improved version:
def find(str, ch, start=0): index = start while index < len(str): if str[index] == ch: return index index = index + 1 return -1
The third parameter, start, is optional because a default value, 0, is provided. If we invoke find with only two arguments, we use the default value and start from the beginning of the string:
>>> find("apple", "p") 1
If we provide a third parameter, it overrides the default:
>>> find("apple", "p", 2) 2 >>> find("apple", "p", 3) -1
The initialization method is a special method that is invoked when an object is created. The name of this method is __init__ (two underscore characters, followed by init, and then two more underscores). An initialization method for the Time class looks like this:
class Time: def __init__(self, hours=0, minutes=0, seconds=0): self.hours = hours self.minutes = minutes self.seconds = seconds
There is no conflict between the attribute self.hours and the parameter hours. Dot notation specifies which variable we are referring to.
When we invoke the Time constructor, the arguments we provide are passed along to init:
>>> current_time = Time(9, 14, 30) >>> current_time.print_time() >>> 9:14:30
Because the parameters are optional, we can omit them:
>>> current_time = Time() >>> current_time.print_time() >>> 0:0:0
Or provide only the first parameter:
>>> current_time = Time (9) >>> current_time.print_time() >>> 9:0:0
Or the first two parameters:
>>> current_time = Time (9, 14) >>> current_time.print_time() >>> 9:14:0
Finally, we can provide a subset of the parameters by naming them explicitly:
>>> current_time = Time(seconds = 30, hours = 9) >>> current_time.print_time() >>> 9:0:30
Let’s rewrite the Point class from chapter 12 in a more object- oriented style:
class Point: def __init__(self, x=0, y=0): self.x = x self.y = y def __str__(self): return '(' + str(self.x) + ', ' + str(self.y) + ')'
The initialization method takes x and y values as optional parameters; the default for either parameter is 0.
The next method, __str__, returns a string representation of a Point object. If a class provides a method named __str__, it overrides the default behavior of the Python built-in str function.
>>> p = Point(3, 4) >>> str(p) '(3, 4)'
Printing a Point object implicitly invokes __str__ on the object, so defining __str__ also changes the behavior of print:
>>> p = Point(3, 4) >>> print p (3, 4)
When we write a new class, we almost always start by writing __init__, which makes it easier to instantiate objects, and __str__, which is almost always useful for debugging.
Some languages make it possible to change the definition of the built- in operators when they are applied to user-defined types. This feature is called operator overloading. It is especially useful when defining new mathematical types.
For example, to override the addition operator +, we provide a method named __add__:
class Point: # previously defined methods here... def __add__(self, other): return Point(self.x + other.x, self.y + other.y)
As usual, the first parameter is the object on which the method is invoked. The second parameter is conveniently named other to distinguish it from self. To add two Points, we create and return a new Point that contains the sum of the x coordinates and the sum of the y coordinates.
Now, when we apply the + operator to Point objects, Python invokes __add__:
>>> p1 = Point(3, 4) >>> p2 = Point(5, 7) >>> p3 = p1 + p2 >>> print p3 (8, 11)
The expression p1 + p2 is equivalent to p1.__add__(p2), but obviously more elegant. As an exercise, add a method __sub__(self, other) that overloads the subtraction operator, and try it out. There are several ways to override the behavior of the multiplication operator: by defining a method named __mul__, or __rmul__, or both.
If the left operand of * is a Point, Python invokes __mul__, which assumes that the other operand is also a Point. It computes the dot product of the two points, defined according to the rules of linear algebra:
def __mul__(self, other): return self.x * other.x + self.y * other.y
If the left operand of * is a primitive type and the right operand is a Point, Python invokes __rmul__, which performs scalar multiplication:
def __rmul__(self, other): return Point(other * self.x, other * self.y)
The result is a new Point whose coordinates are a multiple of the original coordinates. If other is a type that cannot be multiplied by a floating-point number, then __rmul__ will yield an error.
This example demonstrates both kinds of multiplication:
>>> p1 = Point(3, 4) >>> p2 = Point(5, 7) >>> print p1 * p2 43 >>> print 2 * p2 (10, 14)
What happens if we try to evaluate p2 * 2? Since the first parameter is a Point, Python invokes __mul__ with 2 as the second argument. Inside __mul__, the program tries to access the x coordinate of other, which fails because an integer has no attributes:
>>> print p2 * 2 AttributeError: 'int' object has no attribute 'x'
Unfortunately, the error message is a bit opaque. This example demonstrates some of the difficulties of object-oriented programming. Sometimes it is hard enough just to figure out what code is running.
For a more complete example of operator overloading, see Appendix (reference overloading).
Most of the methods we have written only work for a specific type. When you create a new object, you write methods that operate on that type.
But there are certain operations that you will want to apply to many types, such as the arithmetic operations in the previous sections. If many types support the same set of operations, you can write functions that work on any of those types.
For example, the multadd operation (which is common in linear algebra) takes three parameters; it multiplies the first two and then adds the third. We can write it in Python like this:
def multadd (x, y, z): return x * y + z
This method will work for any values of x and y that can be multiplied and for any value of z that can be added to the product.
We can invoke it with numeric values:
>>> multadd (3, 2, 1) 7
Or with Points:
>>> p1 = Point(3, 4) >>> p2 = Point(5, 7) >>> print multadd (2, p1, p2) (11, 15) >>> print multadd (p1, p2, 1) 44
In the first case, the Point is multiplied by a scalar and then added to another Point. In the second case, the dot product yields a numeric value, so the third parameter also has to be a numeric value.
A function like this that can take parameters with different types is called polymorphic.
As another example, consider the method front_and_back, which prints a list twice, forward and backward:
def front_and_back(front): import copy back = copy.copy(front) back.reverse() print str(front) + str(back)
Because the reverse method is a modifier, we make a copy of the list before reversing it. That way, this method doesn’t modify the list it gets as a parameter.
Here’s an example that applies front_and_back to a list:
>>> myList = [1, 2, 3, 4] >>> front_and_back(myList) [1, 2, 3, 4][4, 3, 2, 1]
Of course, we intended to apply this function to lists, so it is not surprising that it works. What would be surprising is if we could apply it to a Point.
To determine whether a function can be applied to a new type, we apply the fundamental rule of polymorphism: If all of the operations inside the function can be applied to the type, the function can be applied to the type. The operations in the method include copy, reverse, and print.
copy works on any object, and we have already written a __str__ method for Points, so all we need is a reverse method in the Point class:
def reverse(self): self.x , self.y = self.y, self.x
Then we can pass Points to front_and_back:
>>> p = Point(3, 4) >>> front_and_back(p) (3, 4)(4, 3)
The best kind of polymorphism is the unintentional kind, where you discover that a function you have already written can be applied to a type for which you never planned.
Convert the function convertToSeconds:
def convertToSeconds(t): minutes = t.hours * 60 + t.minutes seconds = minutes * 60 + t.seconds return seconds
to a method in the Time class.
Add a fourth parameter, end, to the find function that specifies where to stop looking. Warning: This exercise is a bit tricky. The default value of end should be len(str), but that doesn’t work. The default values are evaluated when the function is defined, not when it is called. When find is defined, str doesn’t exist yet, so you can’t find its length.