• Python排序


    关于sorted与sort的比较

    Another difference is that the list.sort() method is only defined for lists. In contrast, the sorted() function accepts any iterable.

    >>> sorted({1: 'D', 2: 'B', 3: 'B', 4: 'E', 5: 'A'})
    [1, 2, 3, 4, 5]

    list,sort只能用于列表,而sorted可以接收任何迭代器

    关于key

     

    Starting with Python 2.4, both list.sort() and sorted() added a key parameter to specify a function to be called on each list element prior to making comparisons.

    key参数用于知名一个函数,这个函数对于每一个元素被调用,与前一个进行比较。

    For example, here's a case-insensitive string comparison:

    >>> sorted("This is a test string from Andrew".split(), key=str.lower)
    ['a', 'Andrew', 'from', 'is', 'string', 'test', 'This']

    字符串.split() 默认分隔符将字符串分成若干片段:空格,回车等

    str.lower() 小写形式

    The value of the key parameter should be a function thattakes a single argument and returns a key to use for sorting purposes. This technique is fast because the key function is called exactly once for each input record.

    A common pattern is to sort complex objects using some of the object's indices as a key. For example:

    >>> student_tuples = [
            ('john', 'A', 15),
            ('jane', 'B', 12),
            ('dave', 'B', 10),
    ]
    >>> sorted(student_tuples, key=lambda student: student[2])   # sort by age
    [('dave', 'B', 10), ('jane', 'B', 12), ('john', 'A', 15)]

    关于lambda

    http://www.cnblogs.com/wanpython/archive/2010/11/01/1865919.html

    下面举几个python lambda的例子吧
    1单个参数的:
    g = lambda x:x*2
    print g(3)
    结果是6

    2多个参数的:
    m = lambda x,y,z: (x-y)*z
    print m(3,1,2)
    结果是4

    本例中定义了一个传入参数为student ,返回值是传入函数中的第3个元素的函数。
     

    The same technique works for objects with named attributes. For example:

    >>> class Student:
            def __init__(self, name, grade, age):
                    self.name = name
                    self.grade = grade
                    self.age = age
            def __repr__(self):
                    return repr((self.name, self.grade, self.age))
    
    >>> student_objects = [
            Student('john', 'A', 15),
            Student('jane', 'B', 12),
            Student('dave', 'B', 10),
    ]
    >>> sorted(student_objects, key=lambda student: student.age)   # sort by age
    [('dave', 'B', 10), ('jane', 'B', 12), ('john', 'A', 15)]

     

    The operator module has itemgetter, attrgetter, and starting in Python 2.6 a methodcaller function.

    Using those functions, the above examples become simpler and faster.

    >>> from operator import itemgetter, attrgetter
    
    >>> sorted(student_tuples, key=itemgetter(2))
    [('dave', 'B', 10), ('jane', 'B', 12), ('john', 'A', 15)]
    
    >>> sorted(student_objects, key=attrgetter('age'))
    [('dave', 'B', 10), ('jane', 'B', 12), ('john', 'A', 15)]

    The operator module functions allow multiple levels of sorting. For example, to sort by grade then by age:

    >>> sorted(student_tuples, key=itemgetter(1,2))
    [('john', 'A', 15), ('dave', 'B', 10), ('jane', 'B', 12)]
    
    >>> sorted(student_objects, key=attrgetter('grade', 'age'))
    [('john', 'A', 15), ('dave', 'B', 10), ('jane', 'B', 12)]

    关于reverse

     

    Both list.sort() and sorted() accept a reverse parameter with a boolean value. This is using to flag descending sorts. For example, to get the student data in reverse age order:

    >>> sorted(student_tuples, key=itemgetter(2), reverse=True)
    [('john', 'A', 15), ('jane', 'B', 12), ('dave', 'B', 10)]
    
    >>> sorted(student_objects, key=attrgetter('age'), reverse=True)
    [('john', 'A', 15), ('jane', 'B', 12), ('dave', 'B', 10)]

     

    Starting with Python 2.2, sorts are guaranteed to be stable. That means that when multiple records have the same key, their original order is preserved.

    >>> data = [('red', 1), ('blue', 1), ('red', 2), ('blue', 2)]
    >>> sorted(data, key=itemgetter(0))
    [('blue', 1), ('blue', 2), ('red', 1), ('red', 2)]

    Notice how the two records for 'blue' retain their original order so that ('blue', 1) is guaranteed to precede ('blue', 2).

    This wonderful property lets you build complex sorts in a series of sorting steps. For example, to sort the student data by descending grade and then ascending age, do the age sort first and then sort again using grade:

    >>> s = sorted(student_objects, key=attrgetter('age'))     # sort on secondary key
    >>> sorted(s, key=attrgetter('grade'), reverse=True)       # now sort on primary key, descending
    [('dave', 'B', 10), ('jane', 'B', 12), ('john', 'A', 15)]

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  • 原文地址:https://www.cnblogs.com/miki/p/3308583.html
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