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  • python数据结构和算法

    栈-先进后出

    class Stack():
        def __init__(self):
            self.items = []
        def push(self,item):
            self.items.append(item)
        def pop(self):
            return self.items.pop()
        def peek(self):
            return len(self.items)-1
        def isEmpty(self):
            return self.items == []
        def size(self):
            return len(self.items)
    stack = Stack()
    stack.push(1)
    stack.push(2)
    stack.push(3)
    
    print('栈顶元素下标:',stack.peek())
    print(stack.isEmpty())
    print(stack.pop())
    print(stack.pop())
    print(stack.pop())

     队列-先进先出

    class Queue():
        def __init__(self):
            self.items = []
        def enqueue(self,item):
            self.items.insert(0,item)
        def dequeue(self):
            return self.items.pop()
        def isEmpty(self):
            return self.items == []
        def size(self):
            return len(self.items)
    
    q = Queue()
    q.enqueue(1)
    q.enqueue(2)
    q.enqueue(3)
    print(q.dequeue())
    print(q.dequeue())
    print(q.dequeue())

     双向队列-头尾都能进出-实现判断回文

     

     单链表-从头部插入节点

    该数据结构主要是依靠head的不停改变,

    class Node():
        def __init__(self,item):
            self.item = item
            self.next = None
    
    class Link():
        def __init__(self):
            #构造出一个空的链表
            self._head = None
        def add(self,item):
            node = Node(item) #先创建一个节点,在内存中,再考虑怎样操作
            node.next =self. _head
            self._head = node
        def travel(self):
            cur = self._head
            while cur:
                print(cur.item)
                cur = cur.next
        
    link = Link()
    link.add(3)
    link.add(4)
    link.travel()

     两个队列实现栈

    队列是先进先出,栈是先进后出,所以只要把数据一个一个先进的后出即可

    主要思想就是利用另一个队列来放主要数据队列的n-1个,然后主要数据队列就只剩下最后一个,取出即可,然后重复,就把最后的先出了

     链表倒置

     二叉树

     

    class Node():
        def __init__(self,item):
            self.item = item
            self.left = None
            self.right = None
    
    class Tree():
        def __init__(self):
            self.root = None
    
        def addNode(self,item):
            node = Node(item)
            if self.root == None:
                self.root = node
                return
            cur  = self.root
            q = [cur] #用列表来进行遍历节点
            while q:
                nd = q.pop(0) #先把根结点取出
                if nd.left == None:
                    nd.left = node
                    return
                else:
                    q.append(nd.left)
                if nd.right == None:
                    nd.right = node
                    return
                else:
                    q.append(nd.right)
    
        def travel(self):
            cur = self.root
            q = [cur]
            while q:
                nd = q.pop(0)
                print(nd.item)
                if nd.left:
                    q.append(nd.left)
                if nd.right:
                    q.append(nd.right)
    
    tree = Tree()
    tree.addNode(1)
    tree.addNode(2)
    tree.addNode(3)
    tree.addNode(4)
    tree.addNode(5)
    tree.addNode(6)
    tree.addNode(7)
    tree.travel()

     排序二叉树

    class Node():
        def __init__(self,item):
            self.item = item
            self.left = None
            self.right = None
    
    class SortTree():
        def __init__(self):
            self.root = None
    
        def addNode(self,item):
            node = Node(item)
            cur = self.root
            if self.root == None:
                self.root = node
                return
            while cur:
                #向右插入
                if item>cur.item:
                    if cur.right == None:
                        cur.right = node
                        break
                    else:
                        cur=cur.right
                #向左插入
                else:
                    if cur.left == None:
                        cur.left = node
                        break
                    else:
                        cur =cur.left
        
    tree = SortTree()
    alist = [3,8,5,7,6,2,9,4,1]
    for i in alist:
        tree.addNode(i)
    
            

     二分查找

    排序 

    1 冒泡排序

     2 快速排序

    def sort(alist):
        #基数
        mid = alist[0]
        low = 0
        high = len(alist)
        while low < high:
            #偏移high
            while low<high:
                if alist[high] > mid:
                    high-=1
                else:
                    alist[low]=alist[high]
                    break
            #偏移low
            while low<high:
                if alist[low]<mid:
                    low+=1
                else:
                    alist[high]=alist[low]
                    break
            if low==high:
                alist[low]=mid
                break
        return alist
    
    alist=[6,1,24,5,3,7,4]
    print(sort(alist))

    BFS(广度优先搜索)

     由谁先展开就需要把它的子节点先遍历出来,然后接子节点的遍历,当然节点也是不唯一的,如第一个的CB当然可以换,不过换了后面也要需要注意前面的子节点遍历

    DFS(深度优先搜索)

    一条路走到底,从头到尾的探索,结果也是不唯一的

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  • 原文地址:https://www.cnblogs.com/yangj-Blog/p/13216900.html
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