PythonUse classes (class) and objects (object) to perform object-oriented programming (referred to as OOP) programming.
The main purpose of object-oriented is to improve the reusability of programs. The reason we got into object-oriented programming so early is that the entire concept of Python is based on objects. Understanding OOP is the key to further learning Python. The following is an understanding of object-oriented, based on classification. Similar objects are classified into categoriesIn human cognition, things will be classified according to Object-oriented is to simulate the above human cognitive process. In the Python language, to sound cool, we call the "things" mentioned above objects. First define birdsclass Bird(object): have_feather = True way_of_reproduction = 'egg'We define a category (class), which is Bird. In the statement block belonging to this analogy, we define two Suppose I raise a chicken called summer. It is an object, and it belongs to birds. Use the previously defined class:
summer = Bird() print summer.way_of_reproductionCreate the object
through the first sentence , and explain that summer is an object in the category bird. Summer will have the class attribute of bird and a reference to the attribute. It is implemented in the form of object.attribute.
Poor summer, you are just a hairy egg product, so unrefined. ActionIn daily cognition, when we identify categories through attributes, we sometimes distinguish categories based on what this thing can do. For example, birds move. In this way, the bird is distinguished from the category of house. These actions will bring certain results, such as movement leading to position changes. Some such "Behavior" attributes are methods. In Python, methods are described by defining functions inside the class. class Bird(object):
have_feather = True
way_of_reproduction = 'egg'
def move(self, dx, dy):
position = [0,0]
position[0] = position[0] + dx
position[1] = position[1] + dy
return position
summer = Bird()
print 'after move:',summer.move(5,8)
We have redefined the category of bird. Bird
a new method attribute, which is the method move that represents movement. (I admit that this method is silly. You can define a more interesting method after reading the next lecture) (There is a self in its parameters, which is to facilitate us to refer to the object itself. The method The first parameter must be self, whether used or not. The content about self will be expanded in the next lecture)
The other two parameters, dx, dy represent the distance moved in the x and y directions. The move method will eventually return the calculated position.
When we finally called the move method, we only passed the two parameters dx and dy, and there was no need to pass the self parameter (because self is only for internal use).
My summer can run.
Subcategory
The category itself can be further subdivided into subcategories
For example, birds can be further divided into chickens, wild geese, and orioles.
In OOP, we express the above concept through
inheritanceWhen defining the class, in brackets: Bird. This shows that Chicken is a subclass of Bird, that is, Chicken inherits from Bird. Naturally, Bird is the parent class of Chicken. Chicken will enjoy all the properties of Bird. Although I only declared that summer is a chicken class, it enjoys the attributes of the parent class through inheritance (whether it is the variable attribute have_feather or the method attribute move)
The newly defined Oriole (Oriole) class also inherits from birds . When you create an oriole object, the object automatically has the properties of the bird.
Through the inheritance system, we can reduce repeated information and repeated statements in the program. If we define two classes separately without inheriting from birds, we must enter the attributes of birds into the definitions of chicken and oriole classes respectively. The entire process can become tedious, therefore, object orientation improves the reusability of the program.
(Go back to question 1, the object in the brackets. When the brackets are object, it means that this class has no parent class (the end))
Classifying various things to understand the world, we have been practicing this cognitive process since our ancestors. Object-oriented is in line with human thinking habits. The so-called process-oriented, that is, executing one statement before executing the next one, is more of machine thinking. Through object-oriented programming, we can express complex ideas in our thinking more conveniently.
Summary
Category things according to attributes (classify objects as classes)
Method is an attribute that represents action
Use inheritance to illustrate Parent class-child class relationship. Subclasses automatically have all the properties of the parent class.
self represents an object created based on the class definition.
Create an object: object name = class name()
Reference the attributes of the object: object.attribute
The above is the detailed content of Introduction to basic concepts of Python object-oriented. For more information, please follow other related articles on the PHP Chinese website!

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