Prim's algorithm is a minimum spanning tree algorithm that takes a graph as input and finds the subset of the edges of that graph which
- form a tree that includes every vertex
- has the minimum sum of weights among all the trees that can be formed from the graph
How Prim's algorithm works
It falls under a class of algorithms called greedy algorithms that find the local optimum in the hopes of finding a global optimum.
We start from one vertex and keep adding edges with the lowest weight until we reach our goal.
The steps for implementing Prim's algorithm are as follows:
- Initialize the minimum spanning tree with a vertex chosen at random.
- Find all the edges that connect the tree to new vertices, find the minimum and add it to the tree
- Keep repeating step 2 until we get a minimum spanning tree
Example of Prim's algorithm
Prim's Algorithm pseudocode
The pseudocode for prim's algorithm shows how we create two sets of vertices U and V-U. U contains the list of vertices that have been visited and V-U the list of vertices that haven't. One by one, we move vertices from set V-U to set U by connecting the least weight edge.
T = ∅;
U = { 1 };
while (U ≠ V)
let (u, v) be the lowest cost edge such that u ∈ U and v ∈ V - U;
T = T ∪ {(u, v)}
U = U ∪ {v}
Python, Java and C/C++ Examples
Although adjacency matrix representation of graphs is used, this algorithm can also be implemented using Adjacency List to improve its efficiency.
# Prim's Algorithm in Python
INF = 9999999
# number of vertices in graph
V = 5
# create a 2d array of size 5x5
# for adjacency matrix to represent graph
G = [[0, 9, 75, 0, 0],
[9, 0, 95, 19, 42],
[75, 95, 0, 51, 66],
[0, 19, 51, 0, 31],
[0, 42, 66, 31, 0]]
# create a array to track selected vertex
# selected will become true otherwise false
selected = [0, 0, 0, 0, 0]
# set number of edge to 0
no_edge = 0
# the number of egde in minimum spanning tree will be
# always less than(V - 1), where V is number of vertices in
# graph
# choose 0th vertex and make it true
selected[0] = True
# print for edge and weight
print("Edge : Weight\n")
while (no_edge < V - 1):
# For every vertex in the set S, find the all adjacent vertices
#, calculate the distance from the vertex selected at step 1.
# if the vertex is already in the set S, discard it otherwise
# choose another vertex nearest to selected vertex at step 1.
minimum = INF
x = 0
y = 0
for i in range(V):
if selected[i]:
for j in range(V):
if ((not selected[j]) and G[i][j]):
# not in selected and there is an edge
if minimum > G[i][j]:
minimum = G[i][j]
x = i
y = j
print(str(x) + "-" + str(y) + ":" + str(G[x][y]))
selected[y] = True
no_edge += 1
// Prim's Algorithm in Java
import java.util.Arrays;
class PGraph {
public void Prim(int G[][], int V) {
int INF = 9999999;
int no_edge; // number of edge
// create a array to track selected vertex
// selected will become true otherwise false
boolean[] selected = new boolean[V];
// set selected false initially
Arrays.fill(selected, false);
// set number of edge to 0
no_edge = 0;
// the number of egde in minimum spanning tree will be
// always less than (V -1), where V is number of vertices in
// graph
// choose 0th vertex and make it true
selected[0] = true;
// print for edge and weight
System.out.println("Edge : Weight");
while (no_edge < V - 1) {
// For every vertex in the set S, find the all adjacent vertices
// , calculate the distance from the vertex selected at step 1.
// if the vertex is already in the set S, discard it otherwise
// choose another vertex nearest to selected vertex at step 1.
int min = INF;
int x = 0; // row number
int y = 0; // col number
for (int i = 0; i < V; i++) {
if (selected[i] == true) {
for (int j = 0; j < V; j++) {
// not in selected and there is an edge
if (!selected[j] && G[i][j] != 0) {
if (min > G[i][j]) {
min = G[i][j];
x = i;
y = j;
}
}
}
}
}
System.out.println(x + " - " + y + " : " + G[x][y]);
selected[y] = true;
no_edge++;
}
}
public static void main(String[] args) {
PGraph g = new PGraph();
// number of vertices in grapj
int V = 5;
// create a 2d array of size 5x5
// for adjacency matrix to represent graph
int[][] G = { { 0, 9, 75, 0, 0 }, { 9, 0, 95, 19, 42 }, { 75, 95, 0, 51, 66 }, { 0, 19, 51, 0, 31 },
{ 0, 42, 66, 31, 0 } };
g.Prim(G, V);
}
}
// Prim's Algorithm in C
#include<stdio.h>
#include<stdbool.h>
#define INF 9999999
// number of vertices in graph
#define V 5
// create a 2d array of size 5x5
//for adjacency matrix to represent graph
int G[V][V] = {
{0, 9, 75, 0, 0},
{9, 0, 95, 19, 42},
{75, 95, 0, 51, 66},
{0, 19, 51, 0, 31},
{0, 42, 66, 31, 0}};
int main() {
int no_edge; // number of edge
// create a array to track selected vertex
// selected will become true otherwise false
int selected[V];
// set selected false initially
memset(selected, false, sizeof(selected));
// set number of edge to 0
no_edge = 0;
// the number of egde in minimum spanning tree will be
// always less than (V -1), where V is number of vertices in
//graph
// choose 0th vertex and make it true
selected[0] = true;
int x; // row number
int y; // col number
// print for edge and weight
printf("Edge : Weight\n");
while (no_edge < V - 1) {
//For every vertex in the set S, find the all adjacent vertices
// , calculate the distance from the vertex selected at step 1.
// if the vertex is already in the set S, discard it otherwise
//choose another vertex nearest to selected vertex at step 1.
int min = INF;
x = 0;
y = 0;
for (int i = 0; i < V; i++) {
if (selected[i]) {
for (int j = 0; j < V; j++) {
if (!selected[j] && G[i][j]) { // not in selected and there is an edge
if (min > G[i][j]) {
min = G[i][j];
x = i;
y = j;
}
}
}
}
}
printf("%d - %d : %d\n", x, y, G[x][y]);
selected[y] = true;
no_edge++;
}
return 0;
}
// Prim's Algorithm in C++
#include <cstring>
#include <iostream>
using namespace std;
#define INF 9999999
// number of vertices in grapj
#define V 5
// create a 2d array of size 5x5
//for adjacency matrix to represent graph
int G[V][V] = {
{0, 9, 75, 0, 0},
{9, 0, 95, 19, 42},
{75, 95, 0, 51, 66},
{0, 19, 51, 0, 31},
{0, 42, 66, 31, 0}};
int main() {
int no_edge; // number of edge
// create a array to track selected vertex
// selected will become true otherwise false
int selected[V];
// set selected false initially
memset(selected, false, sizeof(selected));
// set number of edge to 0
no_edge = 0;
// the number of egde in minimum spanning tree will be
// always less than (V -1), where V is number of vertices in
//graph
// choose 0th vertex and make it true
selected[0] = true;
int x; // row number
int y; // col number
// print for edge and weight
cout << "Edge"
<< " : "
<< "Weight";
cout << endl;
while (no_edge < V - 1) {
//For every vertex in the set S, find the all adjacent vertices
// , calculate the distance from the vertex selected at step 1.
// if the vertex is already in the set S, discard it otherwise
//choose another vertex nearest to selected vertex at step 1.
int min = INF;
x = 0;
y = 0;
for (int i = 0; i < V; i++) {
if (selected[i]) {
for (int j = 0; j < V; j++) {
if (!selected[j] && G[i][j]) { // not in selected and there is an edge
if (min > G[i][j]) {
min = G[i][j];
x = i;
y = j;
}
}
}
}
}
cout << x << " - " << y << " : " << G[x][y];
cout << endl;
selected[y] = true;
no_edge++;
}
return 0;
}
Prim's vs Kruskal's Algorithm
Kruskal's algorithm is another popular minimum spanning tree algorithm that uses a different logic to find the MST of a graph. Instead of starting from a vertex, Kruskal's algorithm sorts all the edges from low weight to high and keeps adding the lowest edges, ignoring those edges that create a cycle.
Prim's Algorithm Complexity
The time complexity of Prim's algorithm is O(E log V)
.
Prim's Algorithm Application
- Laying cables of electrical wiring
- In network designed
- To make protocols in network cycles