Algorithm in C – LinkedList Data Structure

LinkedList Data Structure

 

In this tutorial, you will learn about linked list data structure and it’s implementation in C.

A linked list data structure includes a series of connected nodes. Here, each node store the data and the address of the next node. For example,

linkedlist data structure
LinkedList Data Structure

You have to start somewhere, so we give the address of the first node a special name called HEAD.

Also, the last node in the linked list can be identified because its next portion points to NULL.

You might have played the game Treasure Hunt, where each clue includes the information about the next clue. That is how the linked list operates.


Representation of LinkedList

Let’s see how each node of the LinkedList is represented. Each node consists:

  • A data item
  • An address of another node

 

We wrap both the data item and the next node reference in a struct as:

struct node
{
  int data;
  struct node *next;
};

Understanding the structure of a linked list node is the key to having a grasp on it.

Each struct node has a data item and a pointer to another struct node. Let us create a simple Linked List with three items to understand how this works.

/* Initialize nodes */
struct node *head;
struct node *one = NULL;
struct node *two = NULL;
struct node *three = NULL;

/* Allocate memory */
one = malloc(sizeof(struct node));
two = malloc(sizeof(struct node));
three = malloc(sizeof(struct node));

/* Assign data values */
one->data = 1;
two->data = 2;
three->data=3;

/* Connect nodes */
one->next = two;
two->next = three;
three->next = NULL;

/* Save address of first node in head */
head = one;

If you didn’t understand any of the lines above, all you need is a refresher on pointers and structs.

In just a few steps, we have created a simple linked list with three nodes.

representing linked list by connecting each node with next node using address of next node
LinkedList Representation

The power of LinkedList comes from the ability to break the chain and rejoin it. E.g. if you wanted to put an element 4 between 1 and 2, the steps would be:

  • Create a new struct node and allocate memory to it.
  • Add its data value as 4
  • Point its next pointer to the struct node containing 2 as the data value
  • Change the next pointer of “1” to the node we just created.

 

Doing something similar in an array would have required shifting the positions of all the subsequent elements.

In python and Java, the linked list can be implemented using classes as shown in the codes below.


Linked List Utility

Lists are one of the most popular and efficient data structures, with implementation in every programming language like C, C++, Python, Java, and C#.

Apart from that, linked lists are a great way to learn how pointers work. By practicing how to manipulate linked lists, you can prepare yourself to learn more advanced data structures like graphs and trees.


Linked List Implementations in C Examples

// Linked list implementation in C

#include <stdio.h>
#include <stdlib.h>

// Creating a node
struct node {
  int value;
  struct node *next;
};

// print the linked list value
void printLinkedlist(struct node *p){
  while (p != NULL) {
    printf("%d ", p->value);
    p = p->next;
  }
}

int main(){
  // Initialize nodes
  struct node *head;
  struct node *one = NULL;
  struct node *two = NULL;
  struct node *three = NULL;

  // Allocate memory
  one = malloc(sizeof(struct node));
  two = malloc(sizeof(struct node));
  three = malloc(sizeof(struct node));

  // Assign value values
  one->value = 1;
  two->value = 2;
  three->value = 3;

  // Connect nodes
  one->next = two;
  two->next = three;
  three->next = NULL;

  // printing node-value
  head = one;
  printLinkedlist(head);
}

Linked List Complexity

Time Complexity

Worst case Average Case
Search O(n) O(n)
Insert O(1) O(1)
Deletion O(1) O(1)

Space Complexity: O(n)


Linked List Applications

  • Dynamic memory allocation
  • Implemented in stack and queue
  • In undo functionality of softwares
  • Hash tables, Graphs

 

Python Example for Beginners

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