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graph-data-structure
Advanced tools
The graph-data-structure npm package provides a simple and efficient way to create and manipulate graph data structures in JavaScript. It supports various graph operations such as adding nodes and edges, finding paths, and detecting cycles.
Add Nodes and Edges
This feature allows you to add nodes and edges to the graph. The code sample demonstrates how to create a graph, add nodes 'A' and 'B', and then add an edge from 'A' to 'B'.
const Graph = require('graph-data-structure');
const graph = Graph();
graph.addNode('A');
graph.addNode('B');
graph.addEdge('A', 'B');
console.log(graph.serialize());
Find Paths
This feature allows you to find paths between nodes in the graph. The code sample demonstrates how to find a path from node 'A' to node 'C' through node 'B'.
const Graph = require('graph-data-structure');
const graph = Graph();
graph.addNode('A');
graph.addNode('B');
graph.addNode('C');
graph.addEdge('A', 'B');
graph.addEdge('B', 'C');
const path = graph.path('A', 'C');
console.log(path);
Detect Cycles
This feature allows you to detect cycles in the graph. The code sample demonstrates how to detect a cycle in a graph where nodes 'A', 'B', and 'C' form a cycle.
const Graph = require('graph-data-structure');
const graph = Graph();
graph.addNode('A');
graph.addNode('B');
graph.addNode('C');
graph.addEdge('A', 'B');
graph.addEdge('B', 'C');
graph.addEdge('C', 'A');
const hasCycle = graph.hasCycle();
console.log(hasCycle);
Graphlib is a library for creating and manipulating directed graphs in JavaScript. It offers a rich set of features including graph serialization, pathfinding, and cycle detection. Compared to graph-data-structure, graphlib provides more advanced functionalities and is suitable for more complex graph operations.
Cytoscape is a graph theory library for visualizing and analyzing graphs. It supports a wide range of graph operations and provides extensive visualization capabilities. While graph-data-structure focuses on basic graph operations, Cytoscape is more geared towards visualization and complex graph analysis.
d3-graphviz is a library that integrates Graphviz with D3.js to create interactive graph visualizations. It is particularly useful for rendering graphs and visualizing their structure. Unlike graph-data-structure, which is more about graph manipulation, d3-graphviz excels in graph visualization.
A graph data structure with topological sort.
This library provides a minimalist implementation of a directed graph data structure. Nodes are represented by unique strings or any other object. Internally, an adjacency list is used to represent nodes and edges.
The primary use case for this library is in implementing dataflow programming or reactive programming. The key algorithm necessary for these is topological sorting, to get an ordering of nodes such that for each edge (u -> v), u comes before v in the sorted order. The topological sorting algorithm exposed here has modifications useful for computing the order in which functions in a data flow graph should be executed, namely specifying source nodes for propagation and specifying to exclude the source nodes themselves from the result.
Table of Contents
This library is distributed only via NPM. Install by running
npm install graph-data-structure
Require it in your code like this.
import { Graph, serializeGraph, deserializeGraph, topologicalSort, shortestPath } from 'graph-data-structure';
Start by creating a new Graph object.
var graph = new Graph();
Add some nodes and edges with addNode and addEdge.
graph.addNode('a');
graph.addNode('b');
graph.addEdge('a', 'b');
Nodes are added implicitly when edges are added.
graph.addEdge('b', 'c');
Now we have the following graph.
Topological sorting can be done by invoking the standalone function topologicalSort like this.
topologicalSort(graph); // Returns ["a", "b", "c"]
Here's an example of topological sort with getting dressed (from Cormen et al. "Introduction to Algorithms" page 550).
const graph = new Graph();
graph.addEdge('socks', 'shoes')
.addEdge('shirt', 'belt')
.addEdge('shirt', 'tie')
.addEdge('tie', 'jacket')
.addEdge('belt', 'jacket')
.addEdge('pants', 'shoes')
.addEdge('underpants', 'pants')
.addEdge('pants', 'belt');
// prints [ "underpants", "pants", "shirt", "tie", "belt", "jacket", "socks", "shoes" ]
console.log(topologicalSort(graph));
For more detailed example code that shows more methods, have a look at the tests.
# Graph([serialized])
Constructs an instance of the graph data structure.
The optional argument serialized is a serialized graph that may have been generated by serializeGraph. If serialized is present, it is deserialized by invoking deserializeGraph(mySerializedObject).
# graph.addNode(node)
Adds a node to the graph. Returns graph to support method chaining. If the given node was already added to the graph, this function does nothing.
# graph.removeNode(node)
Removes the specified node. Returns graph to support method chaining. The argument node is a string or object identifier for the node to remove. This function also removes all edges connected to the specified node, both incoming and outgoing.
Note: You have to remove them using the exact same reference as when they were created. One can use getNode() to retrieve such reference.
# graph.addEdge(u, v[,weight])
Adds an edge from node u to node v. Returns graph to support method chaining. The arguments u and v are node references (either objects or strings). This function also adds u and v as nodes if they were not already added.
The last argument weight (optional) specifies the weight of this edge.
# graph.removeEdge(u, v)
Removes the edge from node u to node v. Returns graph to support method chaining. The arguments u and v are node references. This function does not remove the nodes u and v. Does nothing if the edge does not exist.
# graph.hasEdge(u, v)
Returns true
if there exists an edge from node u to node v. Returns false
otherwise.
# graph.setEdgeWeight(u, v, weight)
Sets the weight (a number) of the edge from node u to node v.
# graph.getEdgeWeight(u, v)
Gets the weight of the edge from node u to node v. If no weight was previously set on this edge, then the value 1 is returned.
# graph.adjacent(node)
Gets the adjacent node list for the specified node. The argument node is a node reference (object or string). Returns a Set
of adjacent node references or undefined
if the node is not found.
# serializeGraph(graph)
Serializes the graph. Returns an object with the following properties.
nodes
An array of objects, each representing a node reference.links
An array of objects representing edges, each with the following properties.
source
The node reference of the source node (u).target
The node reference of the target node (v).weight
The weight of the edge between the source and target nodes.Here's example code for serializing a graph.
var graph = new Graph();
graph.addEdge('a', 'b');
graph.addEdge('b', 'c');
var serialized = serializeGraph(graph);
# deserializeGraph(serialized)
Deserializes the given serialized graph. Returns a new graph. The argument serialized is a graph representation with the structure described in serializeGraph.
# topologicalSort(graph)
Performs [Topological Sort](
https://en.wikipedia.org/wiki/Topological_sorting). Returns an array of node identifier strings. The returned array includes nodes in topologically sorted order. This means that for each visited edge (u -> v), u comes before v in the topologically sorted order.
Note: this function raises a CycleError
when the input is not a DAG.
# shortestPath(graph, sourceNode, destinationNode)
Performs Dijkstra's Algorithm. Returns an object with two properties: nodes
, an array of node references representing the path, and weight
, the total weight of the path.
var result = shortestPath(graph, 'a', 'c');
console.log(result.nodes); // Prints the array of nodes in the shortest path
console.log(result.weight); // Prints the total weight of the path
```FAQs
A graph data structure with topological sort.
The npm package graph-data-structure receives a total of 184,403 weekly downloads. As such, graph-data-structure popularity was classified as popular.
We found that graph-data-structure demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
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