


Analysis of implementation methods of Python extended built-in types
This article mainly introduces the method of extending built-in types in Python, and analyzes the specific implementation techniques of Python embedded built-in type extensions and subclass extensions in the form of examples. Friends in need can refer to this article
The example describes how Python implements extending built-in types. Share it with everyone for your reference, the details are as follows:
Introduction
In addition to implementing new types of object methods, sometimes we can also use Extend Python built-in types to support other types of data structures, such as adding queue insertion and deletion methods to lists. In response to this problem, this article introduces two methods of extending Python's built-in types by combining examples of implementing collection functions: extending types by embedding built-in types and extending types by subclassing.
Extension by embedding built-in types
The following example implements a collection object by using the list object as an embedded type, and adds some operator overloading. This class wraps Python's lists, as well as additional set operations.
class Set: def __init__(self, value=[]): # Constructor self.data = [] # Manages a list self.concat(value) def intersect(self, other): # other is any sequence res = [] # self is the subject for x in self.data: if x in other: # Pick common items res.append(x) return Set(res) # Return a new Set def union(self, other): # other is any sequence res = self.data[:] # Copy of my list for x in other: # Add items in other if not x in res: res.append(x) return Set(res) def concat(self, value): # value: list, Set... for x in value: # Removes duplicates if not x in self.data: self.data.append(x) def __len__(self): return len(self.data) # len(self) def __getitem__(self, key): return self.data[key] # self[i] def __and__(self, other): return self.intersect(other) # self & other def __or__(self, other): return self.union(other) # self | other def __repr__(self): return 'Set:' + repr(self.data) # print() if __name__ == '__main__': x = Set([1, 3, 5, 7]) print(x.union(Set([1, 4, 7]))) # prints Set:[1, 3, 5, 7, 4] print(x | Set([1, 4, 6])) # prints Set:[1, 3, 5, 7, 4, 6]
Extending types by subclassing
Starting from Python 2.2, all built-in types Subclasses such as list, str, dict and tuple can be created directly. This allows you to customize or extend built-in types through user-defined class statements: subclass the type name and customize it. An instance of a subtype of a type can be used anywhere the original built-in type can appear.
class Set(list): def __init__(self, value = []): # Constructor list.__init__([]) # Customizes list self.concat(value) # Copies mutable defaults def intersect(self, other): # other is any sequence res = [] # self is the subject for x in self: if x in other: # Pick common items res.append(x) return Set(res) # Return a new Set def union(self, other): # other is any sequence res = Set(self) # Copy me and my list res.concat(other) return res def concat(self, value): # value: list, Set . . . for x in value: # Removes duplicates if not x in self: self.append(x) def __and__(self, other): return self.intersect(other) def __or__(self, other): return self.union(other) def __repr__(self): return 'Set:' + list.__repr__(self) if __name__ == '__main__': x = Set([1,3,5,7]) y = Set([2,1,4,5,6]) print(x, y, len(x)) print(x.intersect(y), y.union(x)) print(x & y, x | y) x.reverse(); print(x)
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