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2 changes: 2 additions & 0 deletions DIRECTORY.md
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* [ZeroOneKnapsack](https://github.com/TheAlgorithms/Javascript/blob/master/Dynamic-Programming/ZeroOneKnapsack.js)

## Graphs
* [BreadthFirstSearch](https://github.com/TheAlgorithms/Javascript/blob/master/Graphs/BreadthFirstSearch.js)
* [BreadthFirstShortestPath](https://github.com/TheAlgorithms/Javascript/blob/master/Graphs/BreadthFirstShortestPath.js)
* [ConnectedComponents](https://github.com/TheAlgorithms/Javascript/blob/master/Graphs/ConnectedComponents.js)
* [Density](https://github.com/TheAlgorithms/Javascript/blob/master/Graphs/Density.js)
* [DepthFirstSearchIterative](https://github.com/TheAlgorithms/Javascript/blob/master/Graphs/DepthFirstSearchIterative.js)
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64 changes: 64 additions & 0 deletions Graphs/BreadthFirstSearch.js
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/*
Breadth-first search is an algorithm for traversing a graph. It's discovers all nodes reachable from the starting position by exploring all of the neighbor nodes at the present depth prior to moving on to the nodes at the next depth level.
(description adapted from https://en.wikipedia.org/wiki/Breadth-first_search )
(see also: https://www.koderdojo.com/blog/breadth-first-search-and-shortest-path-in-csharp-and-net-core )
*/

/*
Doctests
> Array.from(breadthFirstSearch(graph, "C"))
[ 'C', 'D', 'A', 'B', 'E' ]
> Array.from(breadthFirstSearch(graph, "A"))
[ 'A', 'B', 'D', 'E' ]
> Array.from(breadthFirstSearch(graph, "F"))
[ 'F', 'G' ]
*/

function breadthFirstSearch (graph, startingNode) {
// visited keeps track of all nodes visited
const visited = new Set()

// queue contains the nodes to be explored in the future
const queue = [startingNode]

while (queue.length > 0) {
// start with the queue's first node
const node = queue.shift()

if (!visited.has(node)) {
// mark the node as visited
visited.add(node)
const neighbors = graph[node]

// put all its neighbors into the queue
for (let i = 0; i < neighbors.length; i++) {
queue.push(neighbors[i])
}
}
}

return visited
}

const graph = {
A: ['B', 'D'],
B: ['E'],
C: ['D'],
D: ['A'],
E: ['D'],
F: ['G'],
G: []
}
/*
A <-> B
ʌ |
| |
v v
C --> D <-- E

F --> G
*/

console.log(breadthFirstSearch(graph, 'C'))
console.log(breadthFirstSearch(graph, 'A'))
console.log(breadthFirstSearch(graph, 'F'))
88 changes: 88 additions & 0 deletions Graphs/BreadthFirstShortestPath.js
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/*
Breadth-first approach can be applied to determine the shortest path between two nodes
in an equi-weighted graph. It searches the target node among all neighbors of the
starting node, then the process is repeated on the level of the neighbors of the
neighbors and so on.
(See also: https://en.wikipedia.org/wiki/Breadth-first_search )
(see also: https://www.koderdojo.com/blog/breadth-first-search-and-shortest-path-in-csharp-and-net-core )
*/

/*
Doctests
> breadthFirstShortestPath(graph, 'C', 'E')
[ 'C', 'D', 'A', 'B', 'E' ]
> breadthFirstShortestPath(graph, 'E', 'B')
[ 'E', 'D', 'A', 'B' ]
> breadthFirstShortestPath(graph, 'F', 'G')
[ 'F', 'G' ]
> breadthFirstShortestPath(graph, 'A', 'G')
[]
*/

function breadthFirstShortestPath (graph, startNode, targetNode) {
// check if startNode & targetNode are identical
if (startNode === targetNode) {
return [startNode]
}

// visited keeps track of all nodes visited
const visited = new Set()

// queue contains the paths to be explored in the future
const initialPath = [startNode]
const queue = [initialPath]

while (queue.length > 0) {
// start with the queue's first path
const path = queue.shift()
const node = path[path.length - 1]

// explore this node if it hasn't been visited yet
if (!visited.has(node)) {
// mark the node as visited
visited.add(node)

const neighbors = graph[node]

// create a new path in the queue for each neighbor
for (let i = 0; i < neighbors.length; i++) {
const newPath = path.concat([neighbors[i]])

// the first path to contain the target node is the shortest path
if (neighbors[i] === targetNode) {
return newPath
}

// queue the new path
queue.push(newPath)
}
}
}

// the target node was not reachable
return []
}

const graph = {
A: ['B', 'D'],
B: ['E'],
C: ['D'],
D: ['A'],
E: ['D'],
F: ['G'],
G: []
}
/*
A <-> B
ʌ |
| |
v v
C --> D <-- E

F --> G
*/

console.log(breadthFirstShortestPath(graph, 'C', 'E'))
console.log(breadthFirstShortestPath(graph, 'E', 'B'))
console.log(breadthFirstShortestPath(graph, 'F', 'G'))
console.log(breadthFirstShortestPath(graph, 'A', 'G'))