Solution: Shortest Path Visiting All Nodes
Let's solve the Shortest Path Visiting All Nodes problem using the Graphs pattern.
We'll cover the following...
Statement
You are given an undirected connected graph with n nodes numbered from graph, where graph[i] contains all nodes that share an edge with node i.
Your task is to find the length of the shortest path that visits every node. You may:
Start from any node.
End at any node.
Revisit nodes and reuse edges as many times as needed.
Constraints:
ngraph.lengthngraph[i].lengthngraph[i]does not containi.If
graph[a]containsb, thengraph[b]containsa.The input graph is always connected.
Solution
The problem asks for the minimum number of steps needed to visit every node in an undirected, connected graph. A naive approach might attempt to explore all possible paths or rely on depth-first search (DFS). However, DFS explores one path deeply before considering alternatives. This implies that it may eventually find a solution, but has no mechanism for guaranteeing that the solution is the shortest without exploring all other possibilities as well. The number of potential paths grows factorially, making direct enumeration computationally inefficient, even for graphs of size
Because all edges have equal cost (each move takes exactly one step), breadth-first search (BFS) is the natural choice. BFS explores the graph level by level: first all states reachable in
To use BFS effectively, the algorithm must define what constitutes a state. Tracking only the current node is insufficient because that tells us nothing about which nodes remain unvisited. Tracking only the visited set is also insufficient, because we would not know our current position to continue exploring. Therefore, the algorithm uses
The current node
The visited set (encoded efficiently as a bitmask)
This combination uniquely describes the algorithm’s progress at any moment.
About the bitmask:
A bitmask is simply an integer interpreted in binary form, where the
It is an
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