JAVA多线程之当一个线程在执行死循环时会影响另外一个线程吗?

时间:2023-03-09 21:31:11
JAVA多线程之当一个线程在执行死循环时会影响另外一个线程吗?

一,问题描述

假设有两个线程在并发运行,一个线程执行的代码中含有一个死循环如:while(true)....当该线程在执行while(true)中代码时,另一个线程会有机会执行吗?

二,示例代码(代码来源于互联网)

 public class Service {
Object object1 = new Object(); public void methodA() {
synchronized (object1) {
System.out.println("methodA begin");
boolean isContinueRun = true;
//在这里执行一个死循环
while (isContinueRun) { }
System.out.println("methodA end");
}
} Object object2 = new Object(); public void methodB() {
synchronized (object2) {
System.out.println("methodB begin");
System.out.println("methodB end");
}
}
}

两个线程类的实现如下:

 import service.Service;

 public class ThreadA extends Thread {

     private Service service;

     public ThreadA(Service service) {
super();
this.service = service;
} @Override
public void run() {
service.methodA();
} }

线程A执行methodA(),methodA()中有一个死循环

 import service.Service;

 public class ThreadB extends Thread {

     private Service service;

     public ThreadB(Service service) {
super();
this.service = service;
} @Override
public void run() {
service.methodB();
} }

线程B执行methodB(),当线程A进入methodA()中的while死循环时,线程B的能不能执行完成?

测试类

 import service.Service;
import extthread.ThreadA;
import extthread.ThreadB; public class Run { public static void main(String[] args) {
Service service = new Service(); ThreadA athread = new ThreadA(service);
athread.start(); ThreadB bthread = new ThreadB(service);
bthread.start();
} }

执行结果:

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" alt="" />

由于线程A和线程B获得的对象锁不是同一把锁,从结果中可以看出,线程B是可以执行完成的。而线程A由于进入了while死循环,故线程A一直执行运行下去了(整个程序未结束),但线程B会结束。

也就是说,尽管线程A一直在while中执行,需要占用CPU。但是,线程的调度是由JVM或者说是操作系统来负责的,并不是说线程A一直在while循环,然后线程B就占用不到CPU了。对于线程A而言,它就相当于一个“计算密集型”作业了。如果我们的while循环是不断地测试某个条件是否成立,那么这种方式就很浪费CPU,可参考一个具体的实例:JAVA多线程之线程间的通信方式 中的“线程间的通信方式”第二点while轮询。

如果把Service.java修改成如下:

 public class Service {
// Object object1 = new Object(); public void methodA() {
synchronized (this) {
System.out.println("methodA begin");
boolean isContinueRun = true;
//在这里执行一个死循环
while (isContinueRun) { }
System.out.println("methodA end");
}
} // Object object2 = new Object(); public void methodB() {
synchronized (this) {
System.out.println("methodB begin");
System.out.println("methodB end");
}
}
}

若线程A先获得对象锁时,由于while循环,线程A一直在while空循环中。而线程B也因为无法获得锁而执行不了methodB()。

可以看出,如果在一个线程在synchronized方法中无法退出,无法将锁释放,另一个线程就只能无限等待了。