leetcode802. Find Eventual Safe States(python)
原题地址:https://leetcode.com/problems/find-eventual-safe-states/
题目
In a directed graph, we start at some node and every turn, walk along a directed edge of the graph. If we reach a node that is terminal (that is, it has no outgoing directed edges), we stop.
Now, say our starting node is eventually safe if and only if we must eventually walk to a terminal node. More specifically, there exists a natural number K so that for any choice of where to walk, we must have stopped at a terminal node in less than K steps.
Which nodes are eventually safe? Return them as an array in sorted order.
The directed graph has N nodes with labels 0, 1, …, N-1, where N is the length of graph. The graph is given in the following form: graph[i] is a list of labels j such that (i, j) is a directed edge of the graph.
Example:
Input: graph = [[1,2],[2,3],[5],[0],[5],[],[]]
Output: [2,4,5,6]
Here is a diagram of the above graph.
Note:
- graph will have length at most 10000.
- The number of edges in the graph will not exceed 32000.
- Each graph[i] will be a sorted list of different integers, chosen within the range [0, graph.length - 1].
python代码
class Solution:
def eventualSafeNodes(self, graph):
"""
:type graph: List[List[int]]
:rtype: List[int]
"""
safe = [0] * len(graph)
a = []
for key, value in enumerate(graph):
if value == []:
safe[key] = 1
else:
a.append((key, value))
flag = 1
while flag == 1:
temp = []
flag = 0
for nodes in a:
flag1= 1
for node in nodes[1]:
if safe[node] == 0:
flag1 = 0
break
if flag1 == 1:
safe[nodes[0]] = 1
flag = 1
else:
temp.append(nodes)
a = temp
return [i for i in range(len(graph)) if safe[i] == 1]
版权声明:转载注明 http://blog.youkuaiyun.com/birdreamer/article/details/79600461
本文介绍了如何解决LeetCode上的找到最终安全状态的问题,通过使用Python实现一种有效的算法来确定图中哪些节点最终是安全的,并提供了一个具体的例子进行说明。

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