排序算法可以分为内部排序和外部排序,内部排序是数据记录在内存中进行排序,而外部排序是因排序的数据很大,一次不能容纳全部的排序记录,在排序过程中需要访问外存。常见的内部排序算法有:插入排序、希尔排序、选择排序、冒泡排序、归并排序、快速排序、堆排序、基数排序等。用一张图概括:
def bubble_sort1(origin_items,comp=lambda x, y: x > y):
items = origin_items[:]
for i in range(len(items) - 1):
for j in range(i, len(items) - 1 - i):
if comp(items[j], items[j + 1]):
items[j], items[j + 1] = items[j + 1], items[j]
# 改进1
def bubble_sort1(origin_items,comp=lambda x, y: x > y):
items = origin_items[:]
for i in range(len(items) - 1):
swapped = False # 交换标志
for j in range(i, len(items) - 1 - i):
if comp(items[j], items[j + 1]):
items[j], items[j + 1] = items[j + 1], items[j]
if not swapped: # 如果一趟排序中没有交换,则说明整体有序,结束排序
break
# 改进版2
def bubble_sort2(origin_items, comp=lambda x, y: x > y):
"""高质量冒泡排序(搅拌排序)"""
items = origin_items[:]
for i in range(len(items) - 1):
swapped = False
for j in range(i, len(items) - 1 - i): # 从左向右排序
if comp(items[j], items[j + 1]):
items[j], items[j + 1] = items[j + 1], items[j]
swapped = True
if swapped:
swapped = False
for j in range(len(items) - 2 - i, i, -1): # 从右向左排序
if comp(items[j - 1], items[j]):
items[j], items[j - 1] = items[j - 1], items[j]
swapped = True
if not swapped:
break
return items
def select_sort(origin_items, comp=lambda x, y: x < y):
"""简单选择排序"""
items = origin_items[:]
for i in range(len(items) - 1):
min_index = i
for j in range(i + 1, len(items)):
if comp(items[j], items[min_index]):
min_index = j
items[i], items[min_index] = items[min_index], items[i]
return items
def insertionSort(arr):
for i in range(len(arr)):
preIndex = i-1
current = arr[i]
while preIndex >= 0 and arr[preIndex] > current:
arr[preIndex+1] = arr[preIndex]
preIndex-=1
arr[preIndex+1] = current
return arr
归并排序(Merge sort)是建立在归并操作上的一种有效的排序算法。该算法是采用分治法(Divide and Conquer)的一个非常典型的应用。
作为一种典型的分而治之思想的算法应用,归并排序的实现由两种方法:
分治法:

def merge_sort(items, comp=lambda x, y: x <= y):
"""归并排序(分治法)"""
if len(items) < 2:
return items[:]
mid = len(items) // 2
left = merge_sort(items[:mid], comp)
right = merge_sort(items[mid:], comp)
return merge(left, right, comp)
def merge(items1, items2, comp):
"""合并(将两个有序的列表合并成一个有序的列表)"""
items = []
index1, index2 = 0, 0
while index1 < len(items1) and index2 < len(items2):
if comp(items1[index1], items2[index2]):
items.append(items1[index1])
index1 += 1
else:
items.append(items2[index2])
index2 += 1
items += items1[index1:]
items += items2[index2:]
return items
快速排序使用分治法(Divide and conquer)策略来把一个序列(list)分为较小和较大的2个子序列,然后递归地排序两个子序列。步骤为:
# 快速排序 - 选择枢轴对元素进行划分,左边都比枢轴小右边都比枢轴大
def quick_sort(origin_items, comp=lambda x, y: x <= y):
items = origin_items[:]
_quick_sort(items, 0, len(items) - 1, comp)
return items
def _quick_sort(items, start, end, comp):
if start < end:
pos = _partition(items, start, end, comp)
_quick_sort(items, start, pos - 1, comp)
_quick_sort(items, pos + 1, end, comp)
def _partition(items, start, end, comp):
pivot = items[end]
i = start - 1
for j in range(start, end):
if comp(items[j], pivot):
i += 1
items[i], items[j] = items[j], items[i]
items[i + 1], items[end] = items[end], items[i + 1]
return i + 1
原文:https://www.cnblogs.com/landmark/p/12683262.html