
(Java programming Example for Beginners)
Java Queue Interface
In this tutorial, we will learn about the Java Queue interface and its methods.
The Queue
interface of the Java collections framework provides the functionality of the queue data structure. It extends the Collection
interface.
Classes that Implement Queue
Since the Queue
is an interface, we cannot provide the direct implementation of it.
In order to use the functionalities of Queue
, we need to use classes that implement it:
- ArrayDeque
- LinkedList
- PriorityQueue
Interfaces that extend Queue
The Queue
interface is also extended by various subinterfaces:
Deque
BlockingQueue
BlockingDeque
Working of Queue Data Structure
In queues, elements are stored and accessed in First In, First Out manner. That is, elements are added from the behind and removed from the front.
How to use Queue?
In Java, we must import java.util.Queue
package in order to use Queue
.
// LinkedList implementation of Queue
Queue<String> animal1 = new LinkedList<>();
// Array implementation of Queue
Queue<String> animal2 = new ArrayDeque<>();
// Priority Queue implementation of Queue
Queue<String> animal 3 = new PriorityQueue<>();
Here, we have created objects animal1, animal2 and animal3 of classes LinkedList
, ArrayDeque
and PriorityQueue
respectively. These objects can use the functionalities of the Queue
interface.
Methods of Queue
The Queue
interface includes all the methods of the Collection
interface. It is because Collection
is the super interface of Queue
.
Some of the commonly used methods of the Queue
interface are:
- add() – Inserts the specified element into the queue. If the task is successful,
add()
returnstrue
, if not it throws an exception. - offer() – Inserts the specified element into the queue. If the task is successful,
offer()
returnstrue
, if not it returnsfalse
. - element() – Returns the head of the queue. Throws an exception if the queue is empty.
- peek() – Returns the head of the queue. Returns
null
if the queue is empty. - remove() – Returns and removes the head of the queue. Throws an exception if the queue is empty.
- poll() – Returns and removes the head of the queue. Returns
null
if the queue is empty.
Implementation of the Queue Interface
1. Implementing the LinkedList Class
import java.util.Queue;
import java.util.LinkedList;
class Main{
public static void main(String[] args){
// Creating Queue using the LinkedList class
Queue<Integer> numbers = new LinkedList<>();
// offer elements to the Queue
numbers.offer(1);
numbers.offer(2);
numbers.offer(3);
System.out.println("Queue: " + numbers);
// Access elements of the Queue
int accessedNumber = numbers.peek();
System.out.println("Accessed Element: " + accessedNumber);
// Remove elements from the Queue
int removedNumber = numbers.poll();
System.out.println("Removed Element: " + removedNumber);
System.out.println("Updated Queue: " + numbers);
}
}
Output
Queue: [1, 2, 3] Accessed Element: 1 Removed Element: 1 Updated Queue: [2, 3]
2. Implementing the PriorityQueue Class
import java.util.Queue;
import java.util.PriorityQueue;
class Main{
public static void main(String[] args){
// Creating Queue using the PriorityQueue class
Queue<Integer> numbers = new PriorityQueue<>();
// offer elements to the Queue
numbers.offer(5);
numbers.offer(1);
numbers.offer(2);
System.out.println("Queue: " + numbers);
// Access elements of the Queue
int accessedNumber = numbers.peek();
System.out.println("Accessed Element: " + accessedNumber);
// Remove elements from the Queue
int removedNumber = numbers.poll();
System.out.println("Removed Element: " + removedNumber);
System.out.println("Updated Queue: " + numbers);
}
}
Output
Queue: [1, 5, 2] Accessed Element: 1 Removed Element: 1 Updated Queue: [2, 5]
Java tutorials for Beginners – Java Queue Interface
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