1、简单回顾ConcurrentHashMap在jdk1.7中的设计html
先简单看下ConcurrentHashMap类在jdk1.7中的设计,其基本结构如图所示:编程
每个segment都是一个HashEntry<K,V>[] table, table中的每个元素本质上都是一个HashEntry的单向队列。好比table[3]为首节点,table[3]->next为节点1,以后为节点2,依次类推。数组
public class ConcurrentHashMap<K, V> extends AbstractMap<K, V> implements ConcurrentMap<K, V>, Serializable { // 将整个hashmap分红几个小的map,每一个segment都是一个锁;与hashtable相比,这么设计的目的是对于put, remove等操做,能够减小并发冲突,对 // 不属于同一个片断的节点能够并发操做,大大提升了性能 final Segment<K,V>[] segments; // 本质上Segment类就是一个小的hashmap,里面table数组存储了各个节点的数据,继承了ReentrantLock, 能够做为互拆锁使用 static final class Segment<K,V> extends ReentrantLock implements Serializable { transient volatile HashEntry<K,V>[] table; transient int count; } // 基本节点,存储Key, Value值 static final class HashEntry<K,V> { final int hash; final K key; volatile V value; volatile HashEntry<K,V> next; } }
2、在jdk1.8中主要作了2方面的改进数据结构
改进一:取消segments字段,直接采用transient volatile HashEntry<K,V>[] table保存数据,采用table数组元素做为锁,从而实现了对每一行数据进行加锁,进一步减小并发冲突的几率。并发
改进二:将原先table数组+单向链表的数据结构,变动为table数组+单向链表+红黑树的结构。对于hash表来讲,最核心的能力在于将key hash以后能均匀的分布在数组中。若是hash以后散列的很均匀,那么table数组中的每一个队列长度主要为0或者1。但实际状况并不是老是如此理想,虽然ConcurrentHashMap类默认的加载因子为0.75,可是在数据量过大或者运气不佳的状况下,仍是会存在一些队列长度过长的状况,若是仍是采用单向列表方式,那么查询某个节点的时间复杂度为O(n);所以,对于个数超过8(默认值)的列表,jdk1.8中采用了红黑树的结构,那么查询的时间复杂度能够下降到O(logN),能够改进性能。ide
为了说明以上2个改动,看一下put操做是如何实现的。性能
final V putVal(K key, V value, boolean onlyIfAbsent) { if (key == null || value == null) throw new NullPointerException(); int hash = spread(key.hashCode()); int binCount = 0; for (Node<K,V>[] tab = table;;) { Node<K,V> f; int n, i, fh; // 若是table为空,初始化;不然,根据hash值计算获得数组索引i,若是tab[i]为空,直接新建节点Node便可。注:tab[i]实质为链表或者红黑树的首节点。 if (tab == null || (n = tab.length) == 0) tab = initTable(); else if ((f = tabAt(tab, i = (n - 1) & hash)) == null) { if (casTabAt(tab, i, null, new Node<K,V>(hash, key, value, null))) break; // no lock when adding to empty bin } // 若是tab[i]不为空而且hash值为MOVED,说明该链表正在进行transfer操做,返回扩容完成后的table。 else if ((fh = f.hash) == MOVED) tab = helpTransfer(tab, f); else { V oldVal = null; // 针对首个节点进行加锁操做,而不是segment,进一步减小线程冲突 synchronized (f) { if (tabAt(tab, i) == f) { if (fh >= 0) { binCount = 1; for (Node<K,V> e = f;; ++binCount) { K ek; // 若是在链表中找到值为key的节点e,直接设置e.val = value便可。 if (e.hash == hash && ((ek = e.key) == key || (ek != null && key.equals(ek)))) { oldVal = e.val; if (!onlyIfAbsent) e.val = value; break; } // 若是没有找到值为key的节点,直接新建Node并加入链表便可。 Node<K,V> pred = e; if ((e = e.next) == null) { pred.next = new Node<K,V>(hash, key, value, null); break; } } } // 若是首节点为TreeBin类型,说明为红黑树结构,执行putTreeVal操做。 else if (f instanceof TreeBin) { Node<K,V> p; binCount = 2; if ((p = ((TreeBin<K,V>)f).putTreeVal(hash, key, value)) != null) { oldVal = p.val; if (!onlyIfAbsent) p.val = value; } } } } if (binCount != 0) { // 若是节点数>=8,那么转换链表结构为红黑树结构。 if (binCount >= TREEIFY_THRESHOLD) treeifyBin(tab, i); if (oldVal != null) return oldVal; break; } } } // 计数增长1,有可能触发transfer操做(扩容)。 addCount(1L, binCount); return null; }
另外,在其余方面也有一些小的改进,好比新增字段 transient volatile CounterCell[] counterCells; 可方便的计算hashmap中全部元素的个数,性能大大优于jdk1.7中的size()方法。测试
3、ConcurrentHashMap jdk1.七、jdk1.8性能比较spa
测试程序以下:线程
public class CompareConcurrentHashMap { private static ConcurrentHashMap<String, Integer> map = new ConcurrentHashMap<String, Integer>(40000); public static void putPerformance(int index, int num) { for (int i = index; i < (num + index) ; i++) map.put(String.valueOf(i), i); } public static void getPerformance2() { long start = System.currentTimeMillis(); for (int i = 0; i < 400000; i++) map.get(String.valueOf(i)); long end = System.currentTimeMillis(); System.out.println("get: it costs " + (end - start) + " ms"); } public static void main(String[] args) throws InterruptedException { long start = System.currentTimeMillis(); final CountDownLatch cdLatch = new CountDownLatch(4); for (int i = 0; i < 4; i++) { final int finalI = i; new Thread(new Runnable() { public void run() { CompareConcurrentHashMap.putPerformance(100000 * finalI, 100000); cdLatch.countDown(); } }).start(); } cdLatch.await(); long end = System.currentTimeMillis(); System.out.println("put: it costs " + (end - start) + " ms"); CompareConcurrentHashMap.getPerformance2(); } }
程序运行屡次后取平均值,结果以下:
4、Collections.synchronizedList和CopyOnWriteArrayList性能分析
CopyOnWriteArrayList在线程对其进行变动操做的时候,会拷贝一个新的数组以存放新的字段,所以写操做性能不好;而Collections.synchronizedList读操做采用了synchronized,所以读性能较差。如下为测试程序:
public class App { private static List<String> arrayList = Collections.synchronizedList(new ArrayList<String>()); private static List<String> copyOnWriteArrayList = new CopyOnWriteArrayList<String>(); private static CountDownLatch cdl1 = new CountDownLatch(2); private static CountDownLatch cdl2 = new CountDownLatch(2); private static CountDownLatch cdl3 = new CountDownLatch(2); private static CountDownLatch cdl4 = new CountDownLatch(2); static class Thread1 extends Thread { @Override public void run() { for (int i = 0; i < 10000; i++) arrayList.add(String.valueOf(i)); cdl1.countDown(); } } static class Thread2 extends Thread { @Override public void run() { for (int i = 0; i < 10000; i++) copyOnWriteArrayList.add(String.valueOf(i)); cdl2.countDown(); } } static class Thread3 extends Thread1 { @Override public void run() { int size = arrayList.size(); for (int i = 0; i < size; i++) arrayList.get(i); cdl3.countDown(); } } static class Thread4 extends Thread1 { @Override public void run() { int size = copyOnWriteArrayList.size(); for (int i = 0; i < size; i++) copyOnWriteArrayList.get(i); cdl4.countDown(); } } public static void main(String[] args) throws InterruptedException { long start1 = System.currentTimeMillis(); new Thread1().start(); new Thread1().start(); cdl1.await(); System.out.println("arrayList add: " + (System.currentTimeMillis() - start1)); long start2 = System.currentTimeMillis(); new Thread2().start(); new Thread2().start(); cdl2.await(); System.out.println("copyOnWriteArrayList add: " + (System.currentTimeMillis() - start2)); long start3 = System.currentTimeMillis(); new Thread3().start(); new Thread3().start(); cdl3.await(); System.out.println("arrayList get: " + (System.currentTimeMillis() - start3)); long start4 = System.currentTimeMillis(); new Thread4().start(); new Thread4().start(); cdl4.await(); System.out.println("copyOnWriteArrayList get: " + (System.currentTimeMillis() - start4)); } }
结果以下:
标签: Java并发编程总结
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