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Java 并发编程中的 Executor 框架与线程池

2015-12-05 17:34 519 查看
Java 5 开始引入 Conccurent 软件包,提供完备的并发能力,对线程池有了更好的支持。其中,Executor 框架是最值得称道的。

Executor框架是指java 5中引入的一系列并发库中与executor相关的一些功能类,其中包括线程池,Executor,Executors,ExecutorService,CompletionService,Future,Callable等。并发编程的一种编程方式是把任务拆分为一些列的小任务,即Runnable,然后在提交给一个Executor执行,Executor.execute(Runnalbe) 。Executor在执行时使用内部的线程池完成操作。

一、创建线程池

Executors类,提供了一系列工厂方法用于创先线程池,返回的线程池都实现了ExecutorService接口。

public static ExecutorService newFixedThreadPool(int nThreads)

创建固定数目线程的线程池。

public static ExecutorService newCachedThreadPool()

创建一个可缓存的线程池,调用execute 将重用以前构造的线程(如果线程可用)。如果现有线程没有可用的,则创建一个新线程并添加到池中。终止并从缓存中移除那些已有 60 秒钟未被使用的线程。

public static ExecutorService newSingleThreadExecutor()

创建一个单线程化的Executor。

public static ScheduledExecutorService newScheduledThreadPool(int corePoolSize)

创建一个支持定时及周期性的任务执行的线程池,多数情况下可用来替代Timer类。

Executor executor = Executors.newFixedThreadPool(10);
Runnable task = new Runnable() {

@Override

public void run() {

System.out.println("task over");

}

};

executor.execute(task);


或者

executor = Executors.newScheduledThreadPool(10);
ScheduledExecutorService scheduler = (ScheduledExecutorService) executor;
scheduler.scheduleAtFixedRate(task, 10, 10, TimeUnit.SECONDS);


二、ExecutorService与生命周期

ExecutorService扩展了Executor并添加了一些生命周期管理的方法。一个Executor的生命周期有三种状态,运行关闭终止 。Executor创建时处于运行状态。当调用ExecutorService.shutdown()后,处于关闭状态,isShutdown()方法返回true。这时,不应该再想Executor中添加任务,所有已添加的任务执行完毕后,Executor处于终止状态,isTerminated()返回true。

如果Executor处于关闭状态,往Executor提交任务会抛出unchecked exception RejectedExecutionException。

ExecutorService executorService = (ExecutorService) executor;

while (!executorService.isShutdown()) {

try {

executorService.execute(task);

} catch (RejectedExecutionException ignored) {

}

}

executorService.shutdown();


三、使用Callable,Future返回结果

Future代表一个异步执行的操作,通过get()方法可以获得操作的结果,如果异步操作还没有完成,则,get()会使当前线程阻塞。FutureTask实现了Future和Runable。Callable代表一个有返回值得操作。

Callable func = new Callable(){

public Integer call() throws Exception {

System.out.println("inside callable");

Thread.sleep(1000);

return new Integer(8);

}

};

FutureTask futureTask  = new FutureTask(func);

Thread newThread = new Thread(futureTask);

newThread.start();

try {

System.out.println("blocking here");

Integer result = futureTask.get();

System.out.println(result);

} catch (InterruptedException ignored) {

} catch (ExecutionException ignored) {

}


ExecutoreService提供了submit()方法,传递一个Callable,或Runnable,返回Future。如果Executor后台线程池还没有完成Callable的计算,这调用返回Future对象的get()方法,会阻塞直到计算完成。

例子:并行计算数组的和。

package executorservice;

import java.util.ArrayList;

import java.util.List;

import java.util.concurrent.Callable;

import java.util.concurrent.ExecutionException;

import java.util.concurrent.ExecutorService;

import java.util.concurrent.Executors;

import java.util.concurrent.Future;

import java.util.concurrent.FutureTask;

public class ConcurrentCalculator {

private ExecutorService exec;

private int cpuCoreNumber;

private List> tasks = new ArrayList>();

// 内部类

class SumCalculator implements Callable {

private int[] numbers;

private int start;

private int end;

public SumCalculator(final int[] numbers, int start, int end) {

this.numbers = numbers;

this.start = start;

this.end = end;

}

public Long call() throws Exception {

Long sum = 0l;

for (int i = start; i < end; i++) {

sum += numbers[i];

}

return sum;

}

}

public ConcurrentCalculator() {

cpuCoreNumber = Runtime.getRuntime().availableProcessors();

exec = Executors.newFixedThreadPool(cpuCoreNumber);

}

public Long sum(final int[] numbers) {

// 根据CPU核心个数拆分任务,创建FutureTask并提交到Executor

for (int i = 0; i < cpuCoreNumber; i++) {

int increment = numbers.length / cpuCoreNumber + 1;

int start = increment * i;

int end = increment * i + increment;

if (end > numbers.length)

end = numbers.length;

SumCalculator subCalc = new SumCalculator(numbers, start, end);

FutureTask task = new FutureTask(subCalc);

tasks.add(task);

if (!exec.isShutdown()) {

exec.submit(task);

}

}

return getResult();

}

public Long getResult() {

Long result = 0l;

for (Future task : tasks) {

try {

// 如果计算未完成则阻塞

Long subSum = task.get();

result += subSum;

} catch (InterruptedException e) {

e.printStackTrace();

} catch (ExecutionException e) {

e.printStackTrace();

}

}

return result;

}

public void close() {

exec.shutdown();

}

}


Main

int[] numbers = new int[] { 1, 2, 3, 4, 5, 6, 7, 8, 10, 11 };

ConcurrentCalculator calc = new ConcurrentCalculator();

Long sum = calc.sum(numbers);

System.out.println(sum);

calc.close();


四、CompletionService

在刚在的例子中,getResult()方法的实现过程中,迭代了FutureTask的数组,如果任务还没有完成则当前线程会阻塞,如果我们希望任意字任务完成后就把其结果加到result中,而不用依次等待每个任务完成,可以使CompletionService。生产者submit()执行的任务。使用者take()已完成的任务,并按照完成这些任务的顺序处理它们的结果 。也就是调用CompletionService的take方法是,会返回按完成顺序放回任务的结果,CompletionService内部维护了一个阻塞队列BlockingQueue,如果没有任务完成,take()方法也会阻塞。修改刚才的例子使用CompletionService:

public class ConcurrentCalculator2 {

private ExecutorService exec;

private CompletionService completionService;

private int cpuCoreNumber;

// 内部类

class SumCalculator implements Callable {

......

}

public ConcurrentCalculator2() {

cpuCoreNumber = Runtime.getRuntime().availableProcessors();

exec = Executors.newFixedThreadPool(cpuCoreNumber);

completionService = new ExecutorCompletionService(exec);

}

public Long sum(final int[] numbers) {

// 根据CPU核心个数拆分任务,创建FutureTask并提交到Executor

for (int i = 0; i < cpuCoreNumber; i++) {

int increment = numbers.length / cpuCoreNumber + 1;

int start = increment * i;

int end = increment * i + increment;

if (end > numbers.length)

end = numbers.length;

SumCalculator subCalc = new SumCalculator(numbers, start, end);

if (!exec.isShutdown()) {

completionService.submit(subCalc);

}

}

return getResult();

}

public Long getResult() {

Long result = 0l;

for (int i = 0; i < cpuCoreNumber; i++) {

try {

Long subSum = completionService.take().get();

result += subSum;

} catch (InterruptedException e) {

e.printStackTrace();

} catch (ExecutionException e) {

e.printStackTrace();

}

}

return result;

}

public void close() {

exec.shutdown();

}

}
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