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利用python实现常见的数据结构

利用python实现常见的数据结构

作者: DamaoShao | 来源:发表于2018-09-11 17:31 被阅读0次
    # 二叉树
    class Tree(object):
        def __init__(self, element=None):
            self.element = element
            self.left = None
            self.right = None
    
        def traversal(self):
            """
            树的遍历, 是一个递归操作
            """
            print(self.element)
            if self.left is not None:
                self.left.traversal()
            if self.right is not None:
                self.right.traversal()
    
        def reverse(self):
            self.left, self.right = self.right, self.left
            if self.left is not None:
                self.left.reverse()
            if self.right is not None:
                self.right.reverse()
    
    
    
    # hash表
    class HashTable(object):
        def __init__(self):
            self.table_size = 10007
            self.table = [0] * self.table_size
    
        # 这个魔法方法是用来实现 in  not in 语法的
        def __contains__(self, item):
            return self.has_key(item)
    
        def has_key(self, key):
            """
            检查一个 key 是否存在, 时间很短, 是 O(1)
            如果用 list 来存储, 需要遍历, 时间是 O(n)
            """
            index = self._index(key)
            # 取元素
            v = self.table[index]
            if isinstance(v, list):
                # 检查是否包含我们要找的 key
                for kv in v:
                    if kv[0] == key:
                        return True
            return False
    
        def _insert_at_index(self, index, key, value):
            # 检查下标处是否是第一次插入数据
            v = self.table[index]
            data = [key, value]
            # 也可以用这个判断 if v == 0:
            if isinstance(v, int):
                self.table[index] = [data]
            else:
                # 如果不是, 得到的会是 list, 直接 append
                self.table[index].append(data)
    
        def add(self, key, value):
            """
            add 函数往 hashtable 中加入一对元素
            我们先只支持字符串当 key
            """
            # 先计算出下标
            index = self._index(key)
            # 在下标处插入元素
            self._insert_at_index(index, key, value)
    
        def get(self, key, default_value=None):
            """
            这个和 dict 的 get 函数一样
            """
            index = self._index(key)
            # 取元素
            v = self.table[index]
            if isinstance(v, list):
                for kv in v:
                    if kv[0] == key:
                        return kv[1]
            return default_value
    
        def _index(self, key):
            # 先计算出下标
            return self._hash(key) % self.table_size
    
        def _hash(self, s):
            n = 1
            f = 1
            for i in s:
                n += ord(i) * f
                f *= 10
            return n
    
    
    
    
    # 链表
    class Node(object):
        def __init__(self, element=-1):
            self.element = element
            self.next = None
    
    
    class LinkedList(object):
        def __init__(self):
            self.head = None
    
        def is_empty(self):
            return self.head is None
    
        def length(self):
            index = 0
            node = self.head
            while node is not None:
                index += 1
                node = node.next
            return index
    
        def find(self, element):
            node = self.head
            while node is not None:
                if node.element == element:
                    break
                node = node.next
            return node
    
        def _node_at_index(self, index):
            i = 0
            node = self.head
            while node is not None:
                if i == index:
                    return node
                node = node.next
                i += 1
            return None
    
        def element_at_index(self, index):
            node = self._node_at_index(index)
            return node.element
    
    
    # 队列
    class Node():
        def __init__(self, element=None, next=None):
            self.element = element
            self.next = next
    
        def __repr__(self):
            return str(self.element)
    
    
    class Queue():
        def __init__(self):
            self.head = Node()
            self.tail = self.head
    
        def empty(self):
            return self.head.next is None
    
        def enqueue(self, element):
            n = Node(element)
            self.tail.next = n
            self.tail = n
    
        def dequeue(self):
            node = self.head.next
            if not self.empty():
                self.head.next = node.next
            return node
    
    # 栈
    class Node():
        def __init__(self, element=None, next=None):
            self.element = element
            self.next = next
    
        def __repr__(self):
            return str(self.element)
    
    
    class Stack():
        def __init__(self):
            self.head = Node()
    
        def is_empty(self):
            return self.head.next is None
    
        def push(self, element):
            self.head.next = Node(element, self.head.next)
    
        # 取出head.next指向的元素,如果栈不是空的,就让head.next指向node.next,这样node就不在栈中了
        def pop(self):
            node = self.head.next
            if not self.is_empty():
                self.head.next = node.next
            return node
    
        # head.next就是栈里面第一个元素
        def top(self):
            return self.head.next
    

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