Java 8 HashMap的分离链表

从Java 2到Java 1.7,HashMap在分离链表上的改变并不多,他们的算法基本上是相同的。如果我们假设对象的Hash值服从平均分布,那么获取一个对象需要的次数时间复杂度应该是O(NM)O(NM)(原为E(NM)E(NM),但数学期望应改为E(N2M)E(N2M)疑有误,译者注)。
Java 8 在没有降低哈希冲突的度的情况下,使用 红黑树 代替 链表 ,将这个值降低到了O(log(NM))O(log⁡(NM))(与上同,疑有误,译者注)。

数据越多,O(NM)O(NM)和O(log(NM))O(log⁡(NM))的差别就会越明显。此外,在实践中,Hash值的分布并非均匀的,正如”生日问题”所描述那样,哈希值有时也会集中在几个特定值上。因此使用平衡树比如红黑树有着比使用链表更强的性能。

使用链表还是树,与一个哈希桶中的元素数目有关。
下面的代码展示了Java 8的HashMap在使用树和使用链表之间切换的阈值。
当冲突的元素数增加到8时,链表变为树;
当减少至6时,树切换为链表。
中间有2个缓冲值的原因是避免频繁的切换浪费计算机资源。

static final int TREEIFY_THRESHOLD = 8;

static final int UNTREEIFY_THRESHOLD = 6;

 

Code No.5 Java 8 HashMap中的TREEIFY_THRESHOLD & UNTREEIFY_THRESHOLD

HashMap在JDK1.8及以后的版本中引入了红黑树结构,若桶中链表元素个数大于等于8时,链表转换成树结构;若桶中链表元素个数小于等于6时,树结构还原成链表。因为红黑树的平均查找长度是log(n),长度为8的时候,平均查找长度为3,如果继续使用链表,平均查找长度为8/2=4,这才有转换为树的必要。链表长度如果是小于等于6,6/2=3,虽然速度也很快的,但是转化为树结构和生成树的时间并不会太短。

还有选择6和8,中间有个差值7可以有效防止链表和树频繁转换。假设一下,如果设计成链表个数超过8则链表转换成树结构,链表个数小于8则树结构转换成链表,如果一个HashMap不停的插入、删除元素,链表个数在8左右徘徊,就会频繁的发生树转链表、链表转树,效率会很低。

Java 8 HashMap使用Node类替代了Entry类,它们的结构大体相同。一个显著地差别是,Node类具有导出类TreeNode,通过这种继承关系,一个链表很容易被转换成树。

Java 8 HashMap使用的树是红黑树,它的实现基本与JCF中的TreeMap相同。通常,树的有序性通过两个或更多对象比较大小来保证。Java 8 HashMap中的树也通过对象的Hash值(这个hash值与哈希桶索引值不同,索引值在这个hash值的基础上对桶大小M取模,译者注)作为对象的排序键。因为使用Hash值作为排序键打破了Total Ordering(可以理解为数学中的小于等于关系,译者注),因此这里有一个tieBreakOrder()方法来处理这个问题。


 

treeifyBin方法,应该可以解释为:把容器里的元素变成树结构。当HashMap的内部元素数组中某个位置上存在多个hash值相同的键值对,这些Node已经形成了一个链表,当该链表的长度大于等于10(为什么是10?TREEIFY_THRESHOLD默认值为8呀?详见put方法解析
---------------------
作者:老艮头

/**
* 方法为final,不可被覆写,子类可以通过实现afterNodeRemoval方法来增加自己的处理逻辑(解析中有描述)
*
* @param hash key的hash值,该值是通过hash(key)获取到的
* @param key 要删除的键值对的key
* @param value 要删除的键值对的value,该值是否作为删除的条件取决于matchValue是否为true
* @param matchValue 如果为true,则当key对应的键值对的值equals(value)为true时才删除;否则不关心value的值
* @param movable 删除后是否移动节点,如果为false,则不移动
* @return 返回被删除的节点对象,如果没有删除任何节点则返回null
*/
final Node<K,V> removeNode(int hash, Object key, Object value,
boolean matchValue, boolean movable) {
Node<K,V>[] tab; Node<K,V> p; int n, index; // 声明节点数组、当前节点、数组长度、索引值
/*
* 如果 节点数组tab不为空、数组长度n大于0、根据hash定位到的节点对象p(该节点为 树的根节点 或 链表的首节点)不为空
* 需要从该节点p向下遍历,找到那个和key匹配的节点对象
*/
if ((tab = table) != null && (n = tab.length) > 0 &&
(p = tab[index = (n - 1) & hash]) != null) {
Node<K,V> node = null, e; K k; V v; // 定义要返回的节点对象,声明一个临时节点变量、键变量、值变量

// 如果当前节点的键和key相等,那么当前节点就是要删除的节点,赋值给node
if (p.hash == hash &&
((k = p.key) == key || (key != null && key.equals(k))))
node = p;

/*
* 到这一步说明首节点没有匹配上,那么检查下是否有next节点
* 如果没有next节点,就说明该节点所在位置上没有发生hash碰撞, 就一个节点并且还没匹配上,也就没得删了,最终也就返回null了
* 如果存在next节点,就说明该数组位置上发生了hash碰撞,此时可能存在一个链表,也可能是一颗红黑树
*/
else if ((e = p.next) != null) {
// 如果当前节点是TreeNode类型,说明已经是一个红黑树,那么调用getTreeNode方法从树结构中查找满足条件的节点
if (p instanceof TreeNode)
node = ((TreeNode<K,V>)p).getTreeNode(hash, key);
// 如果不是树节点,那么就是一个链表,只需要从头到尾逐个节点比对即可
else {
do {
// 如果e节点的键是否和key相等,e节点就是要删除的节点,赋值给node变量,调出循环
if (e.hash == hash &&
((k = e.key) == key ||
(key != null && key.equals(k)))) {
node = e;
break;
}

// 走到这里,说明e也没有匹配上
p = e; // 把当前节点p指向e,这一步是让p存储的永远下一次循环里e的父节点,如果下一次e匹配上了,那么p就是node的父节点
} while ((e = e.next) != null); // 如果e存在下一个节点,那么继续去匹配下一个节点。直到匹配到某个节点跳出 或者 遍历完链表所有节点
}
}

/*
* 如果node不为空,说明根据key匹配到了要删除的节点
* 如果不需要对比value值 或者 需要对比value值但是value值也相等
* 那么就可以删除该node节点了
*/
if (node != null && (!matchValue || (v = node.value) == value ||
(value != null && value.equals(v)))) {
if (node instanceof TreeNode) // 如果该节点是个TreeNode对象,说明此节点存在于红黑树结构中,调用removeTreeNode方法(该方法单独解析)移除该节点
((TreeNode<K,V>)node).removeTreeNode(this, tab, movable);
else if (node == p) // 如果该节点不是TreeNode对象,node == p 的意思是该node节点就是首节点
tab[index] = node.next; // 由于删除的是首节点,那么直接将节点数组对应位置指向到第二个节点即可
else // 如果node节点不是首节点,此时p是node的父节点,由于要删除node,所有只需要把p的下一个节点指向到node的下一个节点即可把node从链表中删除了
p.next = node.next;
++modCount; // HashMap的修改次数递增
--size; // HashMap的元素个数递减
afterNodeRemoval(node); // 调用afterNodeRemoval方法,该方法HashMap没有任何实现逻辑,目的是为了让子类根据需要自行覆写
return node;
}
}
return null;
}


红黑树中,我们可以认为左子树节点 < 当前节点 < 右子树节点 而当前节点的左子树节点的子树节点中,最右侧的子树节点则最为接近当前节点,右子树则相反,右子树中的子树节点中,最左侧的子树节点则最为节点当前节点 ,下面会用到这个理论

final void removeTreeNode(HashMap<K,V> map, Node<K,V>[] tab,
boolean movable) {
int n;
if (tab == null || (n = tab.length) == 0)
return;
int index = (n - 1) & hash;
// first 为当前桶的头结点,root为树的头结点 rl为根节点的左子树节点
TreeNode<K,V> first = (TreeNode<K,V>)tab[index], root = first, rl;
// succ 为当前节点的下一节点 pred为当前节点的上一个节点(用来关联双链表的上下节点)
TreeNode<K,V> succ = (TreeNode<K,V>)next, pred = prev;
// 如果当前节点无前一节点,则当前节点为头结点,则直接将当前节点的下一节点设置为头结点,否则的话将当上一节点(pred)的下一节点指针指向下一节点(next)
if (pred == null)
tab[index] = first = succ;
else
pred.next = succ;
// 如果下一节点不为空 说明当前节点不是尾节点,则将下一节点(next)的前一节点指针指向前一节点(pred),这样,当前节点在双链表中就脱离出来了
if (succ != null)
succ.prev = pred;
if (first == null)
return;
if (root.parent != null)
root = root.root();
// 这个是判断当前红黑树的结构是否太小,当然这种情况下是不存在,如果太小的话,当前桶结构就是单链表了,而不是红黑树了.
if (root == null || root.right == null ||
(rl = root.left) == null || rl.left == null) {
tab[index] = first.untreeify(map); // too small
return;
}
// 上面解析并使当前链表节点脱离双链表,下面就是使当前树节点脱离红黑树
// p为当前树节点,pl为当前树节点的左子树节点,pr为右子树节点,replacement为要替代当前树节点的节点(下面简称为当前树节点,左子树节点,右子树节点和替换节点)
TreeNode<K,V> p = this, pl = left, pr = right, replacement;
// 如果左右子树节点都不为空 进入判断
if (pl != null && pr != null) {
TreeNode<K,V> s = pr, sl;
// 通过while循环遍历有右子树节点的最左侧的左子树节点,并赋值给s(下面简称为右子树最小树节点)
while ((sl = s.left) != null) // find successor
s = sl;
// 将当前节点的与s节点的颜色进行互换
boolean c = s.red; s.red = p.red; p.red = c; // swap colors
TreeNode<K,V> sr = s.right;
TreeNode<K,V> pp = p.parent;
// 下面这个判断是当前节点的右子树节点是否无子树节点,如果没有则将当前节点的父子树节点指针指向右子树节点,右子树节点的右子树指针指向当前节点,从而完成子树节点的替换
if (s == pr) { // p was s's direct parent
p.parent = s;
s.right = p;
}
else {
// 如果右子树节点有子树节点,则将右子树最小节点与当前节点进行替换,分别将当前节点的父子树节点的子树节点指针指向右子树最小节点,原先右子树最小节点的父子树节点的子树节点指针指向当前节点,右子树最小节点的右子树节点指针指向右子树,(到这里是完成了当前节点的右子树的替换,下面就是左子树替换)
TreeNode<K,V> sp = s.parent;
if ((p.parent = sp) != null) {
if (s == sp.left)
sp.left = p;
else
sp.right = p;
}
if ((s.right = pr) != null)
pr.parent = s;
}
// 将当前节点左子树节点指针指向空
p.left = null;
// 将右子树最小树节点的右子树节点指针指向当前节点的右子树节点,右子树最小树节点的右子树节点的父子树节点指向当前节点
if ((p.right = sr) != null)
sr.parent = p;
// 将右子树最小节点的左子树指针指向左子树节点,并将左子树节点的父子树节点指针指向右子树最小节点
if ((s.left = pl) != null)
pl.parent = s;
// 如果此时的右子树最小子树节点的父子树节点为空,则其为根节点,将其赋值给root,否则的话,将父子树节点的的左/右子树节点的指针指向s
if ((s.parent = pp) == null)
root = s;
else if (p == pp.left)
pp.left = s;
else
pp.right = s;
// 此时的sr是当前节点p的右子树节点,如果不为空则将replacement指向sr,否则指向p
if (sr != null)
replacement = sr;
else
replacement = p;
}
else if (pl != null)
replacement = pl;
else if (pr != null)
replacement = pr;
else
replacement = p;
// 上面的三个else 如果当前节点有子树节点则将relpacement指向此子树节点,否则指向p
// 下面就开始使p脱离树了
//下面的判断 如果p有子树节点(无论是替换前还是替换后)即replacement != p
if (replacement != p) {
TreeNode<K,V> pp = replacement.parent = p.parent;
if (pp == null)
root = replacement;
else if (p == pp.left)
pp.left = replacement;
else
pp.right = replacement;
p.left = p.right = p.parent = null;
}

// 如果此时的p为红色,则返回root否则进入balanceDeletion,balanceDeletion是重新调整树结构并返回调整后的树的根节点.这里就不在多说了
TreeNode<K,V> r = p.red ? root : balanceDeletion(root, replacement);

// 如果p无子树节点(无论是替换前还是替换后),使此时的p的父子树节点的左/右子树节点指向null,此时的p也算是脱离出来了
if (replacement == p) { // detach
TreeNode<K,V> pp = p.parent;
p.parent = null;
if (pp != null) {
if (p == pp.left)
pp.left = null;
else if (p == pp.right)
pp.right = null;
}
}
// 最后通过moveRootToFront重新定义双链表的头部节点使之与树的根节点相同
if (movable)
moveRootToFront(tab, r);
}

作者:小川君
链接:https://www.jianshu.com/p/79715ac5c908
來源:简书
简书著作权归作者所有,任何形式的转载都请联系作者获得授权并注明出处。

 

 

 

简述:
HashMap也是我们使用非常多的Collection,它是基于哈希表的 Map 接口的实现,以key-value的形式存在。在HashMap中,key-value总是会当做一个整体来处理,系统会根据hash算法来来计算key-value的存储位置,我们总是可以通过key快速地存、取value。 

一、定义

HashMap实现了Map接口,继承AbstractMap。其中Map接口定义了键映射到值的规则,而AbstractMap类提供 Map 接口的骨干实现,以最大限度地减少实现此接口所需的工作,其实AbstractMap类已经实现了Map,这里标注Map 

public class HashMap<K,V> extends AbstractMap<K,V> implements Map<K,V>, Cloneable, Serializable {

}

 

二、构造函数

HashMap提供了三个构造函数:
      HashMap():构造一个具有默认初始容量 (16) 和默认加载因子 (0.75) 的空 HashMap。

      HashMap(int initialCapacity):构造一个带指定初始容量和默认加载因子 (0.75) 的空 HashMap。

      HashMap(int initialCapacity, float loadFactor):构造一个带指定初始容量和加载因子的空 HashMap。

        这里提到了两个参数:初始容量,加载因子。这两个参数是影响HashMap性能的重要参数,其中容量表示哈希表中桶的数量,初始容量是创建哈希表时的容量,加载因子是哈希表在其容量自动增加之前可以达到多满的一种尺度,它衡量的是一个散列表的空间的使用程度,负载因子越大表示散列表的装填程度越高,反之愈小。对于使用链表法的散列表来说,查找一个元素的平均时间是O(1+a),因此如果负载因子越大,对空间的利用更充分,然而后果是查找效率的降低;如果负载因子太小,那么散列表的数据将过于稀疏,对空间造成严重浪费。系统默认负载因子为0.75,一般情况下我们是无需修改的。

      HashMap是一种支持快速存取的数据结构,要了解它的性能必须要了解它的数据结构。

三、数据结构

我们知道在Java中最常用的两种结构是数组和模拟指针(引用),几乎所有的数据结构都可以利用这两种来组合实现,HashMap也是如此。实际上HashMap是一个“链表散列”.

JDK1.6实现hashmap的方式是采用位桶(数组)+链表的方式,即散列链表方式。

JDK1.8则是采用位桶+链表/红黑树的方式,即当某个位桶的链表长度达到某个阈值(8)的时候,这个链表就转化成红黑树,这样大大减少了查找时间。

/**
* 带俩参数构造方法
* @param initialCapacity the initial capacity
* @param loadFactor the load factor
* @throws IllegalArgumentException if the initial capacity is negative
* or the load factor is nonpositive
*/
public HashMap(int initialCapacity, float loadFactor) {
//初始化容量不能小于0,否者抛出异常
if (initialCapacity < 0)
throw new IllegalArgumentException("Illegal initial capacity: " +
initialCapacity);
//控制最大初始容量,如果给定的初始化容量大于最大容量,则取最大容量
if (initialCapacity > MAXIMUM_CAPACITY)
initialCapacity = MAXIMUM_CAPACITY;
//控制加载因子 如果加载因子小于或者不是浮点型数字则抛出异常
if (loadFactor <= 0 || Float.isNaN(loadFactor))
throw new IllegalArgumentException("Illegal load factor: " +
loadFactor);
this.loadFactor = loadFactor;

this.threshold = tableSizeFor(initialCapacity);
}

 

一个内部实现类Node

/**
*相比于之前的版本,jdk1.8在解决哈希冲突时有了较大的变化,当链表长度大于阈值(默认为8)时,将链表转化为红黑树,以减少搜索时间。
*原本Map.Entry接口的实现类Entry改名为了Node。转化为红黑树时改用另一种实现TreeNode
*/
static class Node<K,V> implements Map.Entry<K,V> {
// 哈希值
final int hash;
//指向下一个节点
final K key;
V value;
Node<K,V> next;

Node(int hash, K key, V value, Node<K,V> next) {
this.hash = hash;
this.key = key;
this.value = value;
this.next = next;
}

public final K getKey() { return key; }
public final V getValue() { return value; }
public final String toString() { return key + "=" + value; }

//重写hashCode方法
public final int hashCode() {
return Objects.hashCode(key) ^ Objects.hashCode(value);
}
public final V setValue(V newValue) {
V oldValue = value;
value = newValue;
return oldValue;
}
//重写equals方法

public final boolean equals(Object o) {
if (o == this)
return true;
if (o instanceof Map.Entry) {
Map.Entry<?,?> e = (Map.Entry<?,?>)o;
if (Objects.equals(key, e.getKey()) &&Objects.equals(value, e.getValue()))
return true;
}
return false;
}
}

 

Node类实现了Map.Entry接口,是HashMap内部的一种数据结构,主要是键值对组成,是一个对象结点,它包含了键key、值value、下一个节点next,以及hash值,HashMap可以想象成一个table数组,而数组中存放的元素是Node<k,v>对象对应的地址。HashMap根据对Node对象的key值进行hash获取hash地址,然后找到相应的hash地址,如果有发生哈希冲突,则将该对象元素存入链表中,当链表元素个数达到一定要求,则将链表结构转化为红黑树。

源码速读及点睛:HashMap_链表

 

四、存储实现

1).put方法

public V put(K key, V value) {
return putVal(hash(key), key, value, false, true);
}

 

2)hash(key)方法

static final int hash(Object key) {
int h;
return (key == null) ? 0 : (h = key.hashCode()) ^ (h >>> 16);
}

 

2.1) 看出key是可以空的  返回值为0

2.2)(h = key.hashCode()) ^ (h >>> 16)

        第一步取key的hashcode值

       第二步 高位参与运算 h ^ (h >>> 16)

        这里这么干是出于性能考虑,底层的移位和异或运算肯定比加减乘除取模等效率好
         hashcode是32位的,无符号右移16位,那生成的就是16位0加原高位的16位值, 就是对半了,异或计算也就变成了高16位和低16位进行异或,原高16位不变。这么干主要用于当hashmap 数组比较小的时候所有bit都参与运算了,防止hash冲突太大,

            所谓hash冲突是指不同的key计算出的hash是一样的,比如a和97,这个肯定是存在的没毛病

3)putVal()方法

final V putVal(int hash, K key, V value, boolean onlyIfAbsent,boolean evict) {
//申明变量,Node是一个内部类
Node<K,V>[] tab;
Node<K,V> p;
int n, i;

//tab = table赋值,table现在是null的,so n = tab.length不运行了 运行这个if的代码块
if ((tab = table) == null || (n = tab.length) == 0)
n = (tab = resize()).length;

//再看就知道了判断当前存的key计算出的索引位置是不是已经存过值了
if ((p = tab[i = (n - 1) & hash]) == null)
tab[i] = newNode(hash, key, value, null
//前存的key计算出的索引位置有值,其实就意味着发生hash冲突了 比如key分别是a和97 hashCode都是97 冲突
else {
Node<K,V> e; K k;


//再看就知道了判断当前存的key计算出的索引位置是不是已经存过值了
//1.存过值了首先重新判断hash值是否一样,然后key分别判断是否key值一样,此处用equals方法
if (p.hash == hash && ((k = p.key) == key || (key != null && key.equals(k))))

e = p;
//2.判断原来元素是不是 TreeNode(红黑树) 类型,TreeNode一样是静态内部类
else if (p instanceof TreeNode)
// putTreeVal 向红黑树中添加元素内部实现,存在相同key就返回赋值给e 不存在就添加并返回null 源码就是红黑树算法
e = ((TreeNode<K,V>)p).putTreeVal(this, tab, hash, key, value);
//3.key不同也不是红黑树---
else {
//明显的链表啊--整个循环,明显是在从头开始遍历链表,找到相同key或链表找完了新元素挂链表最后
for (int binCount = 0; ; ++binCount) {
//这是在链表找完了,且新元素已经挂在链表最后了有的一个判断
if ((e = p.next) == null) {
p.next = newNode(hash, key, value, null);
//判断循环次数,其实就是链表长度,长度超过TREEIFY_THRESHOLD 默认8则运行treeifyBin(tab, hash);
if (binCount >= TREEIFY_THRESHOLD - 1) // -1 for 1st
//就是这个方法把链表变成红黑树了,具体方法源码不谈了,学红黑树就可以了
treeifyBin(tab, hash);
break;
}
if (e.hash == hash &&((k = e.key) == key || (key != null && key.equals(k))))

break;
p = e;
}
}
//4.最后判断e是不是空,上面的冲突方案看出e不是空就是表示有相同的key,进行value覆盖就可以,e空就是无相同key且完成了数据挂载
if (e != null) { // existing mapping for key
V oldValue = e.value;
if (!onlyIfAbsent || oldValue == null)
e.value = value;
afterNodeAccess(e);
return oldValue;
}
}
++modCount;
//resize 再详走 putVal最后一段size>threshold
if (++size > threshold)
//threshold初始12 ++size元素数量肯定会有超12个的时候,这里也就看出了threshold代表HashMap的容量,到上限就要扩容了,默认现在16数组,12元素上限
resize();
afterNodeInsertion(evict);
return null;
}

 

 

4)Node<K,V>内部类

/**
*相比于之前的版本,jdk1.8在解决哈希冲突时有了较大的变化,当链表长度大于阈值(默认为8)时,将链表转化为红黑树,以减少搜索时间。
*原本Map.Entry接口的实现类Entry改名为了Node。转化为红黑树时改用另一种实现TreeNode
*
*Node是内部的一个静态类
*是一个带有3个值,hash、key、value和另一个Node对象引用的HashMap子元素结构,即我们装的每个键值对就用一个Node对象存放
*
*
*
*/
static class Node<K,V> implements Map.Entry<K,V> {
// 哈希值
final int hash;
//指向下一个节点
final K key;
V value;

Node<K,V> next;

Node(int hash, K key, V value, Node<K,V> next) {
this.hash = hash;
this.key = key;
this.value = value;
this.next = next;
}

public final K getKey() { return key; }
public final V getValue() { return value; }
public final String toString() { return key + "=" + value; }

public final int hashCode() {
return Objects.hashCode(key) ^ Objects.hashCode(value);
}

public final V setValue(V newValue) {
V oldValue = value;
value = newValue;
return oldValue;
}

public final boolean equals(Object o) {
if (o == this)
return true;
if (o instanceof Map.Entry) {
Map.Entry<?,?> e = (Map.Entry<?,?>)o;
if (Objects.equals(key, e.getKey()) &&
Objects.equals(value, e.getValue()))
return true;
}
return false;
}
}

 

5).resize()方法

/**
* 对table进行初始化或者扩容
* 如果table为null,则对table进行初始化
* 如果对table扩容,因为每次扩容都是翻倍,与原来计算(n-1)&hash的结果相比,节点要么就在原来的位置,要么就被分配到“原位置+旧容量”这个位置
* resize的步骤总结为:
* 1.计算扩容后的容量,临界值。
* 2.将hashMap的临界值修改为扩容后的临界值
* 3.根据扩容后的容量新建数组,然后将hashMap的table的引用指向新数组。
* 4.将旧数组的元素复制到table中。
* @return the table
*/
final Node<K,V>[] resize() {
//新建oldTab数组保存扩容前的数组table
Node<K,V>[] oldTab = table;
//获取原来数组的长度
int oldCap = (oldTab == null) ? 0 : oldTab.length;
//原来数组扩容的临界值
int oldThr = threshold;
int newCap, newThr = 0;
//如果扩容前的容量 > 0
if (oldCap > 0) {
//如果原来的数组长度大于最大值(2^30)
if (oldCap >= MAXIMUM_CAPACITY) {
//扩容临界值提高到正无穷
threshold = Integer.MAX_VALUE;
//无法进行扩容,返回原来的数组
return oldTab;
//如果现在容量的两倍小于MAXIMUM_CAPACITY且现在的容量大于DEFAULT_INITIAL_CAPACITY
} else if ((newCap = oldCap << 1) < MAXIMUM_CAPACITY && oldCap >= DEFAULT_INITIAL_CAPACITY)
//临界值变为原来的2倍
newThr = oldThr << 1; // double threshold
}
else if (oldThr > 0) //如果旧容量 <= 0,而且旧临界值 > 0
//数组的新容量设置为老数组扩容的临界值
newCap = oldThr;
else { //如果旧容量 <= 0,且旧临界值 <= 0,新容量扩充为默认初始化容量,新临界值为DEFAULT_LOAD_FACTOR * DEFAULT_INITIAL_CAPACITY
newCap = DEFAULT_INITIAL_CAPACITY;//新数组初始容量设置为默认值
newThr = (int)(DEFAULT_LOAD_FACTOR * DEFAULT_INITIAL_CAPACITY);//计算默认容量下的阈值
}
// 计算新的resize上限
if (newThr == 0) {//在当上面的条件判断中,只有oldThr > 0成立时,newThr == 0
//ft为临时临界值,下面会确定这个临界值是否合法,如果合法,那就是真正的临界值
float ft = (float)newCap * loadFactor;
//当新容量< MAXIMUM_CAPACITY且ft < (float)MAXIMUM_CAPACITY,新的临界值为ft,否则为Integer.MAX_VALUE
newThr = (newCap < MAXIMUM_CAPACITY && ft < (float)MAXIMUM_CAPACITY ?
(int)ft : Integer.MAX_VALUE);
}
//将扩容后hashMap的临界值设置为newThr
threshold = newThr;
@SuppressWarnings({"rawtypes","unchecked"})
//创建新的table,初始化容量为newCap
Node<K,V>[] newTab = (Node<K,V>[])new Node[newCap];

//修改hashMap的table为新建的newTab
table = newTab;
//如果旧table不为空,将旧table中的元素复制到新的table中
if (oldTab != null) {
//遍历旧哈希表的每个桶,将旧哈希表中的桶复制到新的哈希表中
for (int j = 0; j < oldCap; ++j) {
Node<K,V> e;
//如果旧桶不为null,使用e记录旧桶
if ((e = oldTab[j]) != null) {
//将旧桶置为null
oldTab[j] = null;
//如果旧桶中只有一个node
if (e.next == null)
//将e也就是oldTab[j]放入newTab中e.hash & (newCap - 1)的位置
newTab[e.hash & (newCap - 1)] = e;
//如果旧桶中的结构为红黑树
else if (e instanceof TreeNode)
//将树中的node分离
((TreeNode<K,V>)e).split(this, newTab, j, oldCap);
else {
//如果旧桶中的结构为链表,链表重排,jdk1.8做的一系列优化
Node<K,V> loHead = null, loTail = null;
Node<K,V> hiHead = null, hiTail = null;
Node<K,V> next;
//遍历整个链表中的节点
do {
next = e.next;
// 原索引
if ((e.hash & oldCap) == 0) {
if (loTail == null)
loHead = e;
else
loTail.next = e;
loTail = e;
}
else {// 原索引+oldCap
if (hiTail == null)
hiHead = e;
else
hiTail.next = e;
hiTail = e;
}
} while ((e = next) != null);
// 原索引放到bucket里
if (loTail != null) {
loTail.next = null;
newTab[j] = loHead;
}
// 原索引+oldCap放到bucket里
if (hiTail != null) {
hiTail.next = null;
newTab[j + oldCap] = hiHead;
}
}
}
}
}
return newTab;
}

 

 

存储查找原理:

存储:首先获取key的hashcode,然后取模数组的长度,这样可以快速定位到要存储到数组中的坐标,然后判断数组中是否存储元素,如果没有存储则,新构建Node节点,把Node节点存储到数组中,如果有元素,则迭代链表(红黑二叉树),如果存在此key,默认更新value,不存在则把新构建的Node存储到链表的尾部。查找:同上,获取key的hashcode,通过hashcode取模数组的长度,获取要定位元素的坐标,然后迭代链表,进行每一个元素的key的equals对比,如果相同则返回该元素。

HashMap在相同元素个数时,数组的长度越大,则Hash的碰撞率越低,则读取的效率就越高,数组长度越小,则碰撞率高,读取速度就越慢。典型的空间换时间的例子。

问题:
1、hash取余数,为什么不用取模操作呢,而用tab[i = (n - 1) & hash]?
它通过 (n - 1) & hash来得到该对象的保存位,而HashMap底层数组的长度总是2的n次方,这是HashMap在速度上的优化。当length总是2的n次方时, (n - 1) & hash运算等价于对length取模,也就是h%length,但是&比%具有更高的效率。

2、为什么使用红黑二叉树呢?
因为在好的算法,也避免不了hash的碰撞,避免不了链表过长的的情况,一旦出现链表过长,则严重影响到HashMap的性能。JDK8对HashMap做了优化,把链表长度超过8个的,则改成红黑二叉树,提高访问的速度。

 

完整的源码:

package java.util;

import java.io.IOException;
import java.io.InvalidObjectException;
import java.io.Serializable;
import java.lang.reflect.ParameterizedType;
import java.lang.reflect.Type;
import java.util.function.BiConsumer;
import java.util.function.BiFunction;
import java.util.function.Consumer;
import java.util.function.Function;

/**
*
* @param <K> the type of keys maintained by this map
* @param <V> the type of mapped values
*
* @author Doug Lea
* @author Josh Bloch
* @author Arthur van Hoff
* @author Neal Gafter
* @see Object#hashCode()
* @see Collection
* @see Map
* @see TreeMap
* @see Hashtable
* @since 1.2
*/
public class HashMap<K,V> extends AbstractMap<K,V> implements Map<K,V>, Cloneable, Serializable {


private static final long serialVersionUID = 362498820763181265L;

/**
* 默认初始化容量
* 1的二进制表示 0001
* 1 << 4即1左移4位 1000 即等于 2^4
* 且实际容量必须是2的整数次幂
*/
static final int DEFAULT_INITIAL_CAPACITY = 1 << 4; //2^4=16

/**
* 初始化最大容量
* 1的二进制表示 0000 0000 0000 0000 0000 0000 0000 0001
* 1 << 30即1左移30位 0010 0000 0000 0000 0000 0000 0000 0000 即等于2^30=
* 必须是2的幂且小于2的30次方,传入容量过大将被这个值替换
*
*/
static final int MAXIMUM_CAPACITY = 1 << 30;

/**
* 加载因子,默认值为0.75f---浮点型
*/
static final float DEFAULT_LOAD_FACTOR = 0.75f;

/**
*JDK1.8 新加
* 一个桶的树化阈值即Node链表最大长度
* 当桶中元素个数超过这个值时,需要使用红黑树节点替换链表节点
* 这个值必须为 8,要不然频繁转换效率也不高
*/
static final int TREEIFY_THRESHOLD = 8;

/**
* JDK1.8 新加
* 一个树的链表还原阈值
* 当扩容时,桶中元素个数小于这个值,就会把树形的桶元素 还原(切分)为链表结构
* 这个值应该比上面那个小,至少为 6,避免频繁转换
*/
static final int UNTREEIFY_THRESHOLD = 6;

/**
* 哈希表的最小树形化容量
* 当哈希表中的容量大于这个值时,表中的桶才能进行树形化
* 否则桶内元素太多时会扩容,而不是树形化
* 为了避免进行扩容、树形化选择的冲突,这个值不能小于 4 * TREEIFY_THRESHOLDlds.
*/
static final int MIN_TREEIFY_CAPACITY = 64;

/**
*相比于之前的版本,jdk1.8在解决哈希冲突时有了较大的变化,当链表长度大于阈值(默认为8)时,将链表转化为红黑树,以减少搜索时间。
*原本Map.Entry接口的实现类Entry改名为了Node。转化为红黑树时改用另一种实现TreeNode
*/
static class Node<K,V> implements Map.Entry<K,V> {
// 哈希值
final int hash;
//指向下一个节点
final K key;
V value;
Node<K,V> next;

Node(int hash, K key, V value, Node<K,V> next) {
this.hash = hash;
this.key = key;
this.value = value;
this.next = next;
}

public final K getKey() { return key; }
public final V getValue() { return value; }
public final String toString() { return key + "=" + value; }

//重写hashCode方法
public final int hashCode() {
return Objects.hashCode(key) ^ Objects.hashCode(value);
}
public final V setValue(V newValue) {
V oldValue = value;
value = newValue;
return oldValue;
}
//重写equals方法

public final boolean equals(Object o) {
if (o == this)
return true;
if (o instanceof Map.Entry) {
Map.Entry<?,?> e = (Map.Entry<?,?>)o;
if (Objects.equals(key, e.getKey()) &&Objects.equals(value, e.getValue()))
return true;
}
return false;
}
}

/* ---------------- Static utilities -------------- */

/**
*HashMap中键值对的存储形式为链表节点,hashCode相同的节点(位于同一个桶)用链表组织
*hash方法分为三步:
*1.取key的hashCode
*2.key的hashCode高16位异或低16位
*3.将第一步和第二步得到的结果进行取模运算。
*/
static final int hash(Object key) {
int h;
//key都等于空的时候 hash值返回0,否则返回hash算法算出的hash值
////计算key的hashCode, h = Objects.hashCode(key)
return (key == null) ? 0 : (h = key.hashCode()) ^ (h >>> 16);
}

/**
* 如果参数x实现了Comparable接口,返回参数x的类名,否则返回null
* .
*/
static Class<?> comparableClassFor(Object x) {
if (x instanceof Comparable) {
Class<?> c; Type[] ts, as; Type t; ParameterizedType p;
if ((c = x.getClass()) == String.class) // bypass checks
return c;
if ((ts = c.getGenericInterfaces()) != null) {
for (int i = 0; i < ts.length; ++i) {
if (((t = ts[i]) instanceof ParameterizedType) &&
((p = (ParameterizedType)t).getRawType() ==
Comparable.class) &&
(as = p.getActualTypeArguments()) != null &&
as.length == 1 && as[0] == c) // type arg is c
return c;
}
}
}
return null;
}

/**
* 如果x的类型为kc,则返回k.compareTo(x),否则返回0
*
*/
@SuppressWarnings({"rawtypes","unchecked"})
static int compareComparables(Class<?> kc, Object k, Object x) {
return (x == null || x.getClass() != kc ? 0 :
((Comparable)k).compareTo(x));
}

/**
* 结果为>=cap的最小2的自然数幂
*/
static final int tableSizeFor(int cap) {
int n = cap - 1;
//先移位再或运算,最终保证返回值是2的整数幂
n |= n >>> 1;
n |= n >>> 2;
n |= n >>> 4;
n |= n >>> 8;
n |= n >>> 16;
return (n < 0) ? 1 : (n >= MAXIMUM_CAPACITY) ? MAXIMUM_CAPACITY : n + 1;
}

/* ---------------- Fields -------------- */

/**
* 存储数据的Node数组,分配的时候,table的长度总是2的幂
*/
transient Node<K,V>[] table;

/**
* 返回Map中所包含的Map.Entry<K,V>的Set视图
*HashMap将数据转换成set的另一种存储形式,这个变量主要用于迭代功能
*/
transient Set<Map.Entry<K,V>> entrySet;

/**
* 当前存储元素的总个数即实际存储的数量
* HashMap的size()方法,实际返回的就是这个值,isEmpty()也是判断该值是否为0
*/
transient int size;

/**
*HashMap内部结构发生变化的次数,主要用于迭代的快速失败======>fail-fast机制
*/
transient int modCount;

/**
* 下次扩容的临界值,size>=threshold就会扩容,
* jdk1.8前 threshold等于capacity*load factor
* jdk1.8对threshold值进行了改进,通过一系列位移操作算法最后得到一个power of two size的值,
* HashMap的扩容阈值,在HashMap中存储的Node键值对超过这个数量时,自动扩容容量为原来的二倍
*/
int threshold;

/**
*
* HashMap的负加载因子,可计算出当前table长度下的扩容阈值:threshold = loadFactor * table.length
* @serial
*/
final float loadFactor;

/* ---------------- Public operations -------------- */

/**
* 带俩参数构造方法
* @param initialCapacity the initial capacity 初始化容量
* @param loadFactor the load factor 加载因子
* @throws IllegalArgumentException if the initial capacity is negative
* or the load factor is nonpositive如果指定的初始化容量为负数或者加载因子为非正数
*/
public HashMap(int initialCapacity, float loadFactor) {
//初始化容量不能小于0,否者抛出异常
if (initialCapacity < 0)
throw new IllegalArgumentException("Illegal initial capacity: " +
initialCapacity);
//控制最大初始容量,如果给定的初始化容量大于最大容量,则取最大容量
if (initialCapacity > MAXIMUM_CAPACITY)
initialCapacity = MAXIMUM_CAPACITY;
//控制加载因子 如果加载因子小于或者不是浮点型数字则抛出异常
if (loadFactor <= 0 || Float.isNaN(loadFactor))
throw new IllegalArgumentException("Illegal load factor: " +
loadFactor);
this.loadFactor = loadFactor;

//在jdk1.7及以前,threshold = capacity * loadFactor,其中 capacity 为桶数组的长度
//jdk1.8对threshold值进行了改进,通过一系列位移操作算法最后得到一个power of two size的值,

this.threshold = tableSizeFor(initialCapacity);
}

/**
* 带一个初始化容量参数的构造方法,默认加载因子为0.75
*/
public HashMap(int initialCapacity) {
this(initialCapacity, DEFAULT_LOAD_FACTOR);
}

/**
* 不带参数的构造方法,默认加载因子为0.75
*/
public HashMap() {
this.loadFactor = DEFAULT_LOAD_FACTOR;
}

/**
* 使用指定Map m构造新的HashMap。
* 使用指定的初始化容量(16)和默认加载因子DEFAULT_LOAD_FACTOR(0.75)
* @param m the map whose mappings are to be placed in this map
* @throws NullPointerException if the specified map is null
*/
public HashMap(Map<? extends K, ? extends V> m) {
this.loadFactor = DEFAULT_LOAD_FACTOR;
putMapEntries(m, false);
}

/**
* Map.putAll and Map constructor的实现需要的方法
* 将m的键值对插入本map中
* @param m the map 指定的map
* @param evict false when initially constructing this map, else
* true (relayed to method afterNodeInsertion). 初始化map时使用false,否则使用true
*/
final void putMapEntries(Map<? extends K, ? extends V> m, boolean evict) {
int s = m.size();
//如果参数map不为空
if (s > 0) {
//判断table是否已经初始化
if (table == null) { // pre-size
//未初始化,s为m的实际元素个数
float ft = ((float)s / loadFactor) + 1.0F;
int t = ((ft < (float)MAXIMUM_CAPACITY) ?
(int)ft : MAXIMUM_CAPACITY);
// 计算得到的t大于阈值,则初始化阈值
if (t > threshold)
//根据容量初始化临界值
threshold = tableSizeFor(t);
}
// 已初始化,并且m元素个数大于阈值,进行扩容处理
else if (s > threshold)
//扩容处理
resize();
//将m中的所有元素添加至HashMap中
for (Map.Entry<? extends K, ? extends V> e : m.entrySet()) {
K key = e.getKey();
V value = e.getValue();
putVal(hash(key), key, value, false, evict);
}
}
}

/**
* 返回map中键值对映射的个数
*
* @return the number of key-value mappings in this map
*/
public int size() {
return size;
}

/**
* 如果map中没有键值对映射,返回true
*
* @return <tt>true</tt> if this map contains no key-value mappings
*/
public boolean isEmpty() {
return size == 0;
}

/**
*返回指定的key映射的value,如果value为null,则返回nul
*get可以分为三个步骤:
*1.通过hash(Object key)方法计算key的哈希值hash。
*2.通过getNode( int hash, Object key)方法获取node。
*3.如果node为null,返回null,否则返回node.value。
*/
public V get(Object key) {
Node<K,V> e;
//根据key及其hash值查询node节点,如果存在,则返回该节点的value值
return (e = getNode(hash(key), key)) == null ? null : e.value;
}

/**
* 根据key的哈希值和key获取对应的节点
*getNode可分为以下几个步骤:
*1.如果哈希表为空,或key对应的桶为空,返回null
*2.如果桶中的第一个节点就和指定参数hash和key匹配上了,返回这个节点
*3.如果桶中的第一个节点没有匹配上,而且有后续节点
*3.1如果当前的桶采用红黑树,则调用红黑树的get方法去获取节点
*3.2如果当前的桶不采用红黑树,即桶中节点结构为链式结构,遍历链表,直到key匹配
*4.找到节点返回null,否则返回null。
* @param hash hash for key
* @param key the key
* @return the node, or null if none
*/
final Node<K,V> getNode(int hash, Object key) {
Node<K,V>[] tab;
Node<K,V> first, e;
int n;
K k;
//&运算时均把运算数转换为二进制再做比较,规则:当相同的位上均为1时结果为1,否则结 果为0.

////如果哈希表不为空,而且key对应的桶上不为空
if ((tab = table) != null && (n = tab.length) > 0 && (first = tab[(n - 1) & hash]) != null) {

//如果桶中的第一个节点就和指定参数hash和key匹配上了
if (first.hash == hash && ((k = first.key) == key || (key != null && key.equals(k))))

return first;
//如果桶中的第一个节点没有匹配上,而且有后续节点
if ((e = first.next) != null) {
//如果当前的桶采用红黑树,则调用红黑树的get方法去获取节点
if (first instanceof TreeNode)
return ((TreeNode<K,V>)first).getTreeNode(hash, key);
//如果当前的桶不采用红黑树,即桶中节点结构为链式结构
do {
////遍历链表,直到key匹配
if (e.hash == hash && ((k = e.key) == key || (key != null && key.equals(k))))

return e;
} while ((e = e.next) != null);
}
}
//如果哈希表为空,或者没有找到节点,返回null
return null;
}

/**
*如果map中含有key为指定参数key的键值对,返回true
*
* @param key The key whose presence in this map is to be tested
* @return <tt>true</tt> if this map contains a mapping for the specified
* key.
*/
public boolean containsKey(Object key) {
return getNode(hash(key), key) != null;
}

/**
*将指定参数key和指定参数value插入map中,如果key已经存在,那就替换key对应的valu
* put(K key, V value)可以分为三个步骤:
*1.通过hash(Object key)方法计算key的哈希值。
*2.通过putVal(hash(key), key, value, false, true)方法实现功能
*3.返回putVal方法返回的结果。
* @param key key with which the specified value is to be associated
* @param value value to be associated with the specified key
* @return the previous value associated with <tt>key</tt>, or
* <tt>null</tt> if there was no mapping for <tt>key</tt>.
* (A <tt>null</tt> return can also indicate that the map
* previously associated <tt>null</tt> with <tt>key</tt>.)
*/
public V put(K key, V value) {
// 倒数第二个参数false:表示允许旧值替换
// 最后一个参数true:表示HashMap不处于创建模式
return putVal(hash(key), key, value, false, true);
}

/**
* Map.put和其他相关方法的实现需要的方法
* putVal方法可以分为下面的几个步骤:
*1.如果哈希表为空,调用resize()创建一个哈希表。
*2.如果指定参数hash在表中没有对应的桶,即为没有碰撞,直接将键值对插入到哈希表中即可。
*3.如果有碰撞,遍历桶,找到key映射的节点
* 3.1桶中的第一个节点就匹配了,将桶中的第一个节点记录起来。
* 3.2如果桶中的第一个节点没有匹配,且桶中结构为红黑树,则调用红黑树对应的方法插入键值对。
* 3.3如果不是红黑树,那么就肯定是链表。遍历链表,如果找到了key映射的节点,就记录这个节点,退出循环。如果没有找到,在链表尾部插入节点。
* 插入后,如果链的长度大于TREEIFY_THRESHOLD这个临界值,则使用treeifyBin方法把链表转为红黑树。
*4.如果找到了key映射的节点,且节点不为null
* 4.1记录节点的vlaue。
* 4.2如果参数onlyIfAbsent为false,或者oldValue为null,替换value,否则不替换
* 4.3返回记录下来的节点的value。
* 5.如果没有找到key映射的节点(2、3步中讲了,这种情况会插入到hashMap中),插入节点后size会加1,这时要检查size是否大于临界值threshold,如果大于会使用resize方法进行扩容。
* @param hash hash for key
* @param key the key
* @param value the value to put
* @param onlyIfAbsent if true, don't change existing value
* @param evict if false, the table is in creation mode.
* @return previous value, or null if none
*/
final V putVal(int hash, K key, V value, boolean onlyIfAbsent, boolean evict) {

Node<K,V>[] tab;
Node<K,V> p;
int n, i;
if ((tab = table) == null || (n = tab.length) == 0)
//如果哈希表为空,调用resize()创建一个哈希表,并用变量n记录哈希表长度
n = (tab = resize()).length;
//如果指定参数hash在表中没有对应的桶,即为没有碰撞
//Hash函数,(n - 1) & hash 计算key将被放置的槽位
//(n - 1) & hash 本质上是hash % n,位运算更快
if ((p = tab[i = (n - 1) & hash]) == null)
//直接将键值对插入到map中即可
tab[i] = newNode(hash, key, value, null);
else {
// 桶中已经存在元素
Node<K,V> e;
K k;
// 比较桶中第一个元素(数组中的结点)的hash值相等,key相等
if (p.hash == hash &&((k = p.key) == key || (key != null && key.equals(k))))
// 将第一个元素赋值给e,用e来记录
e = p;
// 当前桶中无该键值对,且桶是红黑树结构,按照红黑树结构插入
else if (p instanceof TreeNode)
e = ((TreeNode<K,V>)p).putTreeVal(this, tab, hash, key, value);
else {
// 当前桶中无该键值对,且桶是链表结构,按照链表结构插入到尾部
for (int binCount = 0; ; ++binCount) {
// 遍历到链表尾部
if ((e = p.next) == null) {
p.next = newNode(hash, key, value, null);
// 检查链表长度是否达到阈值,达到将该槽位节点组织形式转为红黑树
if (binCount >= TREEIFY_THRESHOLD - 1) // -1 for 1st
treeifyBin(tab, hash);
break;
}
// 链表节点的<key, value>与put操作<key, value>相同时,不做重复操作,跳出循环
if (e.hash == hash &&
((k = e.key) == key || (key != null && key.equals(k))))
break;
p = e;
}
}
// 找到或新建一个key和hashCode与插入元素相等的键值对,进行put操作
if (e != null) { // existing mapping for key
// 记录e的value
V oldValue = e.value;
//onlyIfAbsent为false或旧值为null时,允许替换旧值否则无需替换
if (!onlyIfAbsent || oldValue == null)
e.value = value;
// 访问后回调
afterNodeAccess(e);
// 返回旧值
return oldValue;
}
}
// 更新结构化修改信息
++modCount;
// 键值对数目超过阈值时,进行rehash
if (++size > threshold)
resize();
// 插入后回调
afterNodeInsertion(evict);
return null;
}

/**
* 对table进行初始化或者扩容
* 如果table为null,则对table进行初始化
* 如果对table扩容,因为每次扩容都是翻倍,与原来计算(n-1)&hash的结果相比,节点要么就在原来的位置,要么就被分配到“原位置+旧容量”这个位置
* resize的步骤总结为:
* 1.计算扩容后的容量,临界值。
* 2.将hashMap的临界值修改为扩容后的临界值
* 3.根据扩容后的容量新建数组,然后将hashMap的table的引用指向新数组。
* 4.将旧数组的元素复制到table中。
* @return the table
*/
final Node<K,V>[] resize() {
//新建oldTab数组保存扩容前的数组table
Node<K,V>[] oldTab = table;
//获取原来数组的长度
int oldCap = (oldTab == null) ? 0 : oldTab.length;
//原来数组扩容的临界值
int oldThr = threshold;
int newCap, newThr = 0;
//如果扩容前的容量 > 0
if (oldCap > 0) {
//如果原来的数组长度大于最大值(2^30)
if (oldCap >= MAXIMUM_CAPACITY) {
//扩容临界值提高到正无穷
threshold = Integer.MAX_VALUE;
//无法进行扩容,返回原来的数组
return oldTab;
//如果现在容量的两倍小于MAXIMUM_CAPACITY且现在的容量大于DEFAULT_INITIAL_CAPACITY
} else if ((newCap = oldCap << 1) < MAXIMUM_CAPACITY && oldCap >= DEFAULT_INITIAL_CAPACITY)
//临界值变为原来的2倍
newThr = oldThr << 1; // double threshold
}
else if (oldThr > 0) //如果旧容量 <= 0,而且旧临界值 > 0
//数组的新容量设置为老数组扩容的临界值
newCap = oldThr;
else { //如果旧容量 <= 0,且旧临界值 <= 0,新容量扩充为默认初始化容量,新临界值为DEFAULT_LOAD_FACTOR * DEFAULT_INITIAL_CAPACITY
newCap = DEFAULT_INITIAL_CAPACITY;//新数组初始容量设置为默认值
newThr = (int)(DEFAULT_LOAD_FACTOR * DEFAULT_INITIAL_CAPACITY);//计算默认容量下的阈值
}
// 计算新的resize上限
if (newThr == 0) {//在当上面的条件判断中,只有oldThr > 0成立时,newThr == 0
//ft为临时临界值,下面会确定这个临界值是否合法,如果合法,那就是真正的临界值
float ft = (float)newCap * loadFactor;
//当新容量< MAXIMUM_CAPACITY且ft < (float)MAXIMUM_CAPACITY,新的临界值为ft,否则为Integer.MAX_VALUE
newThr = (newCap < MAXIMUM_CAPACITY && ft < (float)MAXIMUM_CAPACITY ?
(int)ft : Integer.MAX_VALUE);
}
//将扩容后hashMap的临界值设置为newThr
threshold = newThr;
@SuppressWarnings({"rawtypes","unchecked"})
//创建新的table,初始化容量为newCap
Node<K,V>[] newTab = (Node<K,V>[])new Node[newCap];

//修改hashMap的table为新建的newTab
table = newTab;
//如果旧table不为空,将旧table中的元素复制到新的table中
if (oldTab != null) {
//遍历旧哈希表的每个桶,将旧哈希表中的桶复制到新的哈希表中
for (int j = 0; j < oldCap; ++j) {
Node<K,V> e;
//如果旧桶不为null,使用e记录旧桶
if ((e = oldTab[j]) != null) {
//将旧桶置为null
oldTab[j] = null;
//如果旧桶中只有一个node
if (e.next == null)
//将e也就是oldTab[j]放入newTab中e.hash & (newCap - 1)的位置
newTab[e.hash & (newCap - 1)] = e;
//如果旧桶中的结构为红黑树
else if (e instanceof TreeNode)
//将树中的node分离
((TreeNode<K,V>)e).split(this, newTab, j, oldCap);
else {
//如果旧桶中的结构为链表,链表重排,jdk1.8做的一系列优化
Node<K,V> loHead = null, loTail = null;
Node<K,V> hiHead = null, hiTail = null;
Node<K,V> next;
//遍历整个链表中的节点
do {
next = e.next;
// 原索引
if ((e.hash & oldCap) == 0) {
if (loTail == null)
loHead = e;
else
loTail.next = e;
loTail = e;
}
else {// 原索引+oldCap
if (hiTail == null)
hiHead = e;
else
hiTail.next = e;
hiTail = e;
}
} while ((e = next) != null);
// 原索引放到bucket里
if (loTail != null) {
loTail.next = null;
newTab[j] = loHead;
}
// 原索引+oldCap放到bucket里
if (hiTail != null) {
hiTail.next = null;
newTab[j + oldCap] = hiHead;
}
}
}
}
}
return newTab;
}

/**
* 将链表转化为红黑树
*
*/
final void treeifyBin(Node<K,V>[] tab, int hash) {
int n, index; Node<K,V> e;
//如果桶数组table为空,或者桶数组table的长度小于MIN_TREEIFY_CAPACITY,不符合转化为红黑树的条件
if (tab == null || (n = tab.length) < MIN_TREEIFY_CAPACITY)
resize();

//如果符合转化为红黑树的条件,而且hash对应的桶不为null
else if ((e = tab[index = (n - 1) & hash]) != null) {
// 红黑树的头、尾节点
TreeNode<K,V> hd = null, tl = null;
//遍历链表
do {
//替换链表node为树node,建立双向链表
TreeNode<K,V> p = replacementTreeNode(e, null);
if (tl == null)
// 确定树头节点
hd = p;
else {
p.prev = tl;
tl.next = p;
}
tl = p;
} while ((e = e.next) != null);
//遍历链表插入每个节点到红黑树
if ((tab[index] = hd) != null)
hd.treeify(tab);
}
}

/**
*将参数map中的所有键值对映射插入到hashMap中,如果有碰撞,则覆盖value。
*
* @param m mappings to be stored in this map
* @throws NullPointerException if the specified map is null
*/
public void putAll(Map<? extends K, ? extends V> m) {
putMapEntries(m, true);
}

/**
* 删除hashMap中key映射的node
*remove方法的实现可以分为三个步骤:
* 1.通过 hash(Object key)方法计算key的哈希值
* 2.通过 removeNode 方法实现功能。
* 3.返回被删除的node的value。
*
*/
public V remove(Object key) {
Node<K,V> e;
//根据key来删除node。removeNode方法的具体实现在下面
return (e = removeNode(hash(key), key, null, false, true)) == null ?
null : e.value;
}

/**
* Map.remove和相关方法的实现需要的方法
* removeNode方法的步骤总结为:
* 1.如果数组table为空或key映射到的桶为空,返回null。
* 2.如果key映射到的桶上第一个node的就是要删除的node,记录下来。
* 3.如果桶内不止一个node,且桶内的结构为红黑树,记录key映射到的node。
* 4.桶内的结构不为红黑树,那么桶内的结构就肯定为链表,遍历链表,找到key映射到的node,记录下来。
* 5.如果被记录下来的node不为null,删除node,size-1被删除。
* 6.返回被删除的node。
*/
final Node<K,V> removeNode(int hash, Object key, Object value,
boolean matchValue, boolean movable) {
Node<K,V>[] tab; Node<K,V> p; int n, index;
//如果数组table不为空且key映射到的桶不为空
if ((tab = table) != null && (n = tab.length) > 0 &&(p = tab[index = (n - 1) & hash]) != null) {

Node<K,V> node = null, e; K k; V v;
//如果桶上第一个node的就是要删除的node
if (p.hash == hash &&((k = p.key) == key || (key != null && key.equals(k))))
//记录桶上第一个node
node = p;
else if ((e = p.next) != null) {//如果桶内不止一个node
//如果桶内的结构为红黑树
if (p instanceof TreeNode)
//记录key映射到的node
node = ((TreeNode<K,V>)p).getTreeNode(hash, key);
else {
//如果桶内的结构为链表
do {
//遍历链表,找到key映射到的node
if (e.hash == hash &&((k = e.key) == key ||(key != null && key.equals(k)))) {
//记录key映射到的node
node = e;
break;
}
p = e;
} while ((e = e.next) != null);
}
}
//如果得到的node不为null且(matchValue为false||node.value和参数value匹配)
if (node != null && (!matchValue || (v = node.value) == value ||(value != null && value.equals(v)))) {

//如果桶内的结构为红黑树
if (node instanceof TreeNode)
// 使用红黑树的删除方法删除node
((TreeNode<K,V>)node).removeTreeNode(this, tab, movable);
else if (node == p)//如果桶的第一个node的就是要删除的node
//删除node
tab[index] = node.next;
else
//如果桶内的结构为链表,使用链表删除元素的方式删除node
p.next = node.next;
++modCount;//结构性修改次数+1
--size;//哈希表大小-1
afterNodeRemoval(node);
return node;//返回被删除的node
}
}
return null;//如果数组table为空或key映射到的桶为空,返回null。
}

/**
* 删除map中所有的键值对
*
*/
public void clear() {
Node<K,V>[] tab;
modCount++;
if ((tab = table) != null && size > 0) {
size = 0;
for (int i = 0; i < tab.length; ++i)
tab[i] = null;
}
}

/**
* 如果hashMap中的键值对有一对或多对的value为参数value,返回true
*
* @param value value whose presence in this map is to be tested
* @return <tt>true</tt> if this map maps one or more keys to the
* specified value
*/
public boolean containsValue(Object value) {
Node<K,V>[] tab; V v;
if ((tab = table) != null && size > 0) {
//遍历数组table
for (int i = 0; i < tab.length; ++i) {
//遍历桶中的node
for (Node<K,V> e = tab[i]; e != null; e = e.next) {
if ((v = e.value) == value ||
(value != null && value.equals(v)))
return true;
}
}
}
return false;
}

/**
* 返回hashMap中所有key的视图。
* 改变hashMap会影响到set,反之亦然。
* 如果当迭代器迭代set时,hashMap被修改(除非是迭代器自己的remove()方法),迭代器的结果是不确定的。
* set支持元素的删除,通过Iterator.remove、Set.remove、removeAll、retainAll、clear操作删除hashMap中对应的键值对。
* 不支持add和addAll方法。
*
* @return a set view of the keys contained in this map
*/
public Set<K> keySet() {
Set<K> ks = keySet;
if (ks == null) {
ks = new KeySet();
keySet = ks;
}
return ks;
}

/**
* 内部类KeySet
*/
final class KeySet extends AbstractSet<K> {
public final int size() { return size; }
public final void clear() { HashMap.this.clear(); }
public final Iterator<K> iterator() { return new KeyIterator(); }
public final boolean contains(Object o) { return containsKey(o); }
public final boolean remove(Object key) {
return removeNode(hash(key), key, null, false, true) != null;
}
public final Spliterator<K> spliterator() {
return new KeySpliterator<>(HashMap.this, 0, -1, 0, 0);
}
public final void forEach(Consumer<? super K> action) {
Node<K,V>[] tab;
if (action == null)
throw new NullPointerException();
if (size > 0 && (tab = table) != null) {
int mc = modCount;
for (int i = 0; i < tab.length; ++i) {
for (Node<K,V> e = tab[i]; e != null; e = e.next)
action.accept(e.key);
}
if (modCount != mc)
throw new ConcurrentModificationException();
}
}
}

/**
* 返回hashMap中所有value的collection视图
* 改变hashMap会改变collection,反之亦然。
* 如果当迭代器迭代collection时,hashMap被修改(除非是迭代器自己的remove()方法),迭代器的结果是不确定的。
* collection支持元素的删除,通过Iterator.remove、Collection.remove、removeAll、retainAll、clear操作删除hashMap中对应的键值对。
* 不支持add和addAll方法。
*
* @return a view of the values contained in this map
*/
public Collection<V> values() {
Collection<V> vs = values;
if (vs == null) {
vs = new Values();
values = vs;
}
return vs;
}
/**
* 内部类Values
*/
final class Values extends AbstractCollection<V> {
public final int size() { return size; }
public final void clear() { HashMap.this.clear(); }
public final Iterator<V> iterator() { return new ValueIterator(); }
public final boolean contains(Object o) { return containsValue(o); }
public final Spliterator<V> spliterator() {
return new ValueSpliterator<>(HashMap.this, 0, -1, 0, 0);
}
public final void forEach(Consumer<? super V> action) {
Node<K,V>[] tab;
if (action == null)
throw new NullPointerException();
if (size > 0 && (tab = table) != null) {
int mc = modCount;
for (int i = 0; i < tab.length; ++i) {
for (Node<K,V> e = tab[i]; e != null; e = e.next)
action.accept(e.value);
}
if (modCount != mc)
throw new ConcurrentModificationException();
}
}
}

/**
* 返回hashMap中所有键值对的set视图
* 改变hashMap会影响到set,反之亦然。
* 如果当迭代器迭代set时,hashMap被修改(除非是迭代器自己的remove()方法),迭代器的结果是不确定的。
* set支持元素的删除,通过Iterator.remove、Set.remove、removeAll、retainAll、clear操作删除hashMap中对应的键值对。
* 不支持add和addAll方法。
* @return a set view of the mappings contained in this map
*/
public Set<Map.Entry<K,V>> entrySet() {
Set<Map.Entry<K,V>> es;
return (es = entrySet) == null ? (entrySet = new EntrySet()) : es;
}

final class EntrySet extends AbstractSet<Map.Entry<K,V>> {
public final int size() { return size; }
public final void clear() { HashMap.this.clear(); }
public final Iterator<Map.Entry<K,V>> iterator() {
return new EntryIterator();
}
public final boolean contains(Object o) {
if (!(o instanceof Map.Entry))
return false;
Map.Entry<?,?> e = (Map.Entry<?,?>) o;
Object key = e.getKey();
Node<K,V> candidate = getNode(hash(key), key);
return candidate != null && candidate.equals(e);
}
public final boolean remove(Object o) {
if (o instanceof Map.Entry) {
Map.Entry<?,?> e = (Map.Entry<?,?>) o;
Object key = e.getKey();
Object value = e.getValue();
return removeNode(hash(key), key, value, true, true) != null;
}
return false;
}
public final Spliterator<Map.Entry<K,V>> spliterator() {
return new EntrySpliterator<>(HashMap.this, 0, -1, 0, 0);
}
public final void forEach(Consumer<? super Map.Entry<K,V>> action) {
Node<K,V>[] tab;
if (action == null)
throw new NullPointerException();
if (size > 0 && (tab = table) != null) {
int mc = modCount;
for (int i = 0; i < tab.length; ++i) {
for (Node<K,V> e = tab[i]; e != null; e = e.next)
action.accept(e);
}
if (modCount != mc)
throw new ConcurrentModificationException();
}
}
}

//// JDK8重写的方法
/**
*通过key映射到对应node,如果没映射到则返回默认值defaultValue
*
*
*@param key
*@param defaultValue
* @return key映射到对应的node,如果没映射到则返回默认值defaultValue
*/
@Override
public V getOrDefault(Object key, V defaultValue) {
Node<K,V> e;
return (e = getNode(hash(key), key)) == null ? defaultValue : e.value;
}

@Override
public V putIfAbsent(K key, V value) {
return putVal(hash(key), key, value, true, true);
}

@Override
public boolean remove(Object key, Object value) {
return removeNode(hash(key), key, value, true, true) != null;
}

@Override
public boolean replace(K key, V oldValue, V newValue) {
Node<K,V> e; V v;
if ((e = getNode(hash(key), key)) != null &&
((v = e.value) == oldValue || (v != null && v.equals(oldValue)))) {
e.value = newValue;
afterNodeAccess(e);
return true;
}
return false;
}

@Override
public V replace(K key, V value) {
Node<K,V> e;
if ((e = getNode(hash(key), key)) != null) {
V oldValue = e.value;
e.value = value;
afterNodeAccess(e);
return oldValue;
}
return null;
}

@Override
public V computeIfAbsent(K key,
Function<? super K, ? extends V> mappingFunction) {
if (mappingFunction == null)
throw new NullPointerException();
int hash = hash(key);
Node<K,V>[] tab; Node<K,V> first; int n, i;
int binCount = 0;
TreeNode<K,V> t = null;
Node<K,V> old = null;
if (size > threshold || (tab = table) == null ||
(n = tab.length) == 0)
n = (tab = resize()).length;
if ((first = tab[i = (n - 1) & hash]) != null) {
if (first instanceof TreeNode)
old = (t = (TreeNode<K,V>)first).getTreeNode(hash, key);
else {
Node<K,V> e = first; K k;
do {
if (e.hash == hash &&
((k = e.key) == key || (key != null && key.equals(k)))) {
old = e;
break;
}
++binCount;
} while ((e = e.next) != null);
}
V oldValue;
if (old != null && (oldValue = old.value) != null) {
afterNodeAccess(old);
return oldValue;
}
}
V v = mappingFunction.apply(key);
if (v == null) {
return null;
} else if (old != null) {
old.value = v;
afterNodeAccess(old);
return v;
}
else if (t != null)
t.putTreeVal(this, tab, hash, key, v);
else {
tab[i] = newNode(hash, key, v, first);
if (binCount >= TREEIFY_THRESHOLD - 1)
treeifyBin(tab, hash);
}
++modCount;
++size;
afterNodeInsertion(true);
return v;
}

public V computeIfPresent(K key,
BiFunction<? super K, ? super V, ? extends V> remappingFunction) {
if (remappingFunction == null)
throw new NullPointerException();
Node<K,V> e; V oldValue;
int hash = hash(key);
if ((e = getNode(hash, key)) != null &&
(oldValue = e.value) != null) {
V v = remappingFunction.apply(key, oldValue);
if (v != null) {
e.value = v;
afterNodeAccess(e);
return v;
}
else
removeNode(hash, key, null, false, true);
}
return null;
}

@Override
public V compute(K key,
BiFunction<? super K, ? super V, ? extends V> remappingFunction) {
if (remappingFunction == null)
throw new NullPointerException();
int hash = hash(key);
Node<K,V>[] tab; Node<K,V> first; int n, i;
int binCount = 0;
TreeNode<K,V> t = null;
Node<K,V> old = null;
if (size > threshold || (tab = table) == null ||
(n = tab.length) == 0)
n = (tab = resize()).length;
if ((first = tab[i = (n - 1) & hash]) != null) {
if (first instanceof TreeNode)
old = (t = (TreeNode<K,V>)first).getTreeNode(hash, key);
else {
Node<K,V> e = first; K k;
do {
if (e.hash == hash &&
((k = e.key) == key || (key != null && key.equals(k)))) {
old = e;
break;
}
++binCount;
} while ((e = e.next) != null);
}
}
V oldValue = (old == null) ? null : old.value;
V v = remappingFunction.apply(key, oldValue);
if (old != null) {
if (v != null) {
old.value = v;
afterNodeAccess(old);
}
else
removeNode(hash, key, null, false, true);
}
else if (v != null) {
if (t != null)
t.putTreeVal(this, tab, hash, key, v);
else {
tab[i] = newNode(hash, key, v, first);
if (binCount >= TREEIFY_THRESHOLD - 1)
treeifyBin(tab, hash);
}
++modCount;
++size;
afterNodeInsertion(true);
}
return v;
}

@Override
public V merge(K key, V value,
BiFunction<? super V, ? super V, ? extends V> remappingFunction) {
if (value == null)
throw new NullPointerException();
if (remappingFunction == null)
throw new NullPointerException();
int hash = hash(key);
Node<K,V>[] tab; Node<K,V> first; int n, i;
int binCount = 0;
TreeNode<K,V> t = null;
Node<K,V> old = null;
if (size > threshold || (tab = table) == null ||
(n = tab.length) == 0)
n = (tab = resize()).length;
if ((first = tab[i = (n - 1) & hash]) != null) {
if (first instanceof TreeNode)
old = (t = (TreeNode<K,V>)first).getTreeNode(hash, key);
else {
Node<K,V> e = first; K k;
do {
if (e.hash == hash &&
((k = e.key) == key || (key != null && key.equals(k)))) {
old = e;
break;
}
++binCount;
} while ((e = e.next) != null);
}
}
if (old != null) {
V v;
if (old.value != null)
v = remappingFunction.apply(old.value, value);
else
v = value;
if (v != null) {
old.value = v;
afterNodeAccess(old);
}
else
removeNode(hash, key, null, false, true);
return v;
}
if (value != null) {
if (t != null)
t.putTreeVal(this, tab, hash, key, value);
else {
tab[i] = newNode(hash, key, value, first);
if (binCount >= TREEIFY_THRESHOLD - 1)
treeifyBin(tab, hash);
}
++modCount;
++size;
afterNodeInsertion(true);
}
return value;
}

@Override
public void forEach(BiConsumer<? super K, ? super V> action) {
Node<K,V>[] tab;
if (action == null)
throw new NullPointerException();
if (size > 0 && (tab = table) != null) {
int mc = modCount;
for (int i = 0; i < tab.length; ++i) {
for (Node<K,V> e = tab[i]; e != null; e = e.next)
action.accept(e.key, e.value);
}
if (modCount != mc)
throw new ConcurrentModificationException();
}
}

@Override
public void replaceAll(BiFunction<? super K, ? super V, ? extends V> function) {
Node<K,V>[] tab;
if (function == null)
throw new NullPointerException();
if (size > 0 && (tab = table) != null) {
int mc = modCount;
for (int i = 0; i < tab.length; ++i) {
for (Node<K,V> e = tab[i]; e != null; e = e.next) {
e.value = function.apply(e.key, e.value);
}
}
if (modCount != mc)
throw new ConcurrentModificationException();
}
}

/* ------------------------------------------------------------ */
// Cloning and serialization

/**
* Returns a shallow copy of this <tt>HashMap</tt> instance: the keys and
* values themselves are not cloned.
*
* @return a shallow copy of this map
*/
@SuppressWarnings("unchecked")
@Override
public Object clone() {
HashMap<K,V> result;
try {
result = (HashMap<K,V>)super.clone();
} catch (CloneNotSupportedException e) {
// this shouldn't happen, since we are Cloneable
throw new InternalError(e);
}
result.reinitialize();
result.putMapEntries(this, false);
return result;
}

// These methods are also used when serializing HashSets
final float loadFactor() { return loadFactor; }
final int capacity() {
return (table != null) ? table.length :
(threshold > 0) ? threshold :
DEFAULT_INITIAL_CAPACITY;
}

/**
* Save the state of the <tt>HashMap</tt> instance to a stream (i.e.,
* serialize it).
*
* @serialData The <i>capacity</i> of the HashMap (the length of the
* bucket array) is emitted (int), followed by the
* <i>size</i> (an int, the number of key-value
* mappings), followed by the key (Object) and value (Object)
* for each key-value mapping. The key-value mappings are
* emitted in no particular order.
*/
private void writeObject(java.io.ObjectOutputStream s)
throws IOException {
int buckets = capacity();
// Write out the threshold, loadfactor, and any hidden stuff
s.defaultWriteObject();
s.writeInt(buckets);
s.writeInt(size);
internalWriteEntries(s);
}

/**
* Reconstitute the {@code HashMap} instance from a stream (i.e.,
* deserialize it).
*/
private void readObject(java.io.ObjectInputStream s)
throws IOException, ClassNotFoundException {
// Read in the threshold (ignored), loadfactor, and any hidden stuff
s.defaultReadObject();
reinitialize();
if (loadFactor <= 0 || Float.isNaN(loadFactor))
throw new InvalidObjectException("Illegal load factor: " +
loadFactor);
s.readInt(); // Read and ignore number of buckets
int mappings = s.readInt(); // Read number of mappings (size)
if (mappings < 0)
throw new InvalidObjectException("Illegal mappings count: " +
mappings);
else if (mappings > 0) { // (if zero, use defaults)
// Size the table using given load factor only if within
// range of 0.25...4.0
float lf = Math.min(Math.max(0.25f, loadFactor), 4.0f);
float fc = (float)mappings / lf + 1.0f;
int cap = ((fc < DEFAULT_INITIAL_CAPACITY) ?
DEFAULT_INITIAL_CAPACITY :
(fc >= MAXIMUM_CAPACITY) ?
MAXIMUM_CAPACITY :
tableSizeFor((int)fc));
float ft = (float)cap * lf;
threshold = ((cap < MAXIMUM_CAPACITY && ft < MAXIMUM_CAPACITY) ?
(int)ft : Integer.MAX_VALUE);
@SuppressWarnings({"rawtypes","unchecked"})
Node<K,V>[] tab = (Node<K,V>[])new Node[cap];
table = tab;

// Read the keys and values, and put the mappings in the HashMap
for (int i = 0; i < mappings; i++) {
@SuppressWarnings("unchecked")
K key = (K) s.readObject();
@SuppressWarnings("unchecked")
V value = (V) s.readObject();
putVal(hash(key), key, value, false, false);
}
}
}

/* ------------------------------------------------------------ */
// iterators

abstract class HashIterator {
Node<K,V> next; // next entry to return
Node<K,V> current; // current entry
int expectedModCount; // for fast-fail
int index; // current slot

HashIterator() {
expectedModCount = modCount;
Node<K,V>[] t = table;
current = next = null;
index = 0;
if (t != null && size > 0) { // advance to first entry
do {} while (index < t.length && (next = t[index++]) == null);
}
}

public final boolean hasNext() {
return next != null;
}

final Node<K,V> nextNode() {
Node<K,V>[] t;
Node<K,V> e = next;
if (modCount != expectedModCount)
throw new ConcurrentModificationException();
if (e == null)
throw new NoSuchElementException();
if ((next = (current = e).next) == null && (t = table) != null) {
do {} while (index < t.length && (next = t[index++]) == null);
}
return e;
}

public final void remove() {
Node<K,V> p = current;
if (p == null)
throw new IllegalStateException();
if (modCount != expectedModCount)
throw new ConcurrentModificationException();
current = null;
K key = p.key;
removeNode(hash(key), key, null, false, false);
expectedModCount = modCount;
}
}

final class KeyIterator extends HashIterator
implements Iterator<K> {
public final K next() { return nextNode().key; }
}

final class ValueIterator extends HashIterator
implements Iterator<V> {
public final V next() { return nextNode().value; }
}

final class EntryIterator extends HashIterator
implements Iterator<Map.Entry<K,V>> {
public final Map.Entry<K,V> next() { return nextNode(); }
}

/* ------------------------------------------------------------ */
// spliterators

static class HashMapSpliterator<K,V> {
final HashMap<K,V> map;
Node<K,V> current; // current node
int index; // current index, modified on advance/split
int fence; // one past last index
int est; // size estimate
int expectedModCount; // for comodification checks

HashMapSpliterator(HashMap<K,V> m, int origin,
int fence, int est,
int expectedModCount) {
this.map = m;
this.index = origin;
this.fence = fence;
this.est = est;
this.expectedModCount = expectedModCount;
}

final int getFence() { // initialize fence and size on first use
int hi;
if ((hi = fence) < 0) {
HashMap<K,V> m = map;
est = m.size;
expectedModCount = m.modCount;
Node<K,V>[] tab = m.table;
hi = fence = (tab == null) ? 0 : tab.length;
}
return hi;
}

public final long estimateSize() {
getFence(); // force init
return (long) est;
}
}

static final class KeySpliterator<K,V>
extends HashMapSpliterator<K,V>
implements Spliterator<K> {
KeySpliterator(HashMap<K,V> m, int origin, int fence, int est,
int expectedModCount) {
super(m, origin, fence, est, expectedModCount);
}

public KeySpliterator<K,V> trySplit() {
int hi = getFence(), lo = index, mid = (lo + hi) >>> 1;
return (lo >= mid || current != null) ? null :
new KeySpliterator<>(map, lo, index = mid, est >>>= 1,
expectedModCount);
}

public void forEachRemaining(Consumer<? super K> action) {
int i, hi, mc;
if (action == null)
throw new NullPointerException();
HashMap<K,V> m = map;
Node<K,V>[] tab = m.table;
if ((hi = fence) < 0) {
mc = expectedModCount = m.modCount;
hi = fence = (tab == null) ? 0 : tab.length;
}
else
mc = expectedModCount;
if (tab != null && tab.length >= hi &&
(i = index) >= 0 && (i < (index = hi) || current != null)) {
Node<K,V> p = current;
current = null;
do {
if (p == null)
p = tab[i++];
else {
action.accept(p.key);
p = p.next;
}
} while (p != null || i < hi);
if (m.modCount != mc)
throw new ConcurrentModificationException();
}
}

public boolean tryAdvance(Consumer<? super K> action) {
int hi;
if (action == null)
throw new NullPointerException();
Node<K,V>[] tab = map.table;
if (tab != null && tab.length >= (hi = getFence()) && index >= 0) {
while (current != null || index < hi) {
if (current == null)
current = tab[index++];
else {
K k = current.key;
current = current.next;
action.accept(k);
if (map.modCount != expectedModCount)
throw new ConcurrentModificationException();
return true;
}
}
}
return false;
}

public int characteristics() {
return (fence < 0 || est == map.size ? Spliterator.SIZED : 0) |
Spliterator.DISTINCT;
}
}

static final class ValueSpliterator<K,V>
extends HashMapSpliterator<K,V>
implements Spliterator<V> {
ValueSpliterator(HashMap<K,V> m, int origin, int fence, int est,
int expectedModCount) {
super(m, origin, fence, est, expectedModCount);
}

public ValueSpliterator<K,V> trySplit() {
int hi = getFence(), lo = index, mid = (lo + hi) >>> 1;
return (lo >= mid || current != null) ? null :
new ValueSpliterator<>(map, lo, index = mid, est >>>= 1,
expectedModCount);
}

public void forEachRemaining(Consumer<? super V> action) {
int i, hi, mc;
if (action == null)
throw new NullPointerException();
HashMap<K,V> m = map;
Node<K,V>[] tab = m.table;
if ((hi = fence) < 0) {
mc = expectedModCount = m.modCount;
hi = fence = (tab == null) ? 0 : tab.length;
}
else
mc = expectedModCount;
if (tab != null && tab.length >= hi &&
(i = index) >= 0 && (i < (index = hi) || current != null)) {
Node<K,V> p = current;
current = null;
do {
if (p == null)
p = tab[i++];
else {
action.accept(p.value);
p = p.next;
}
} while (p != null || i < hi);
if (m.modCount != mc)
throw new ConcurrentModificationException();
}
}

public boolean tryAdvance(Consumer<? super V> action) {
int hi;
if (action == null)
throw new NullPointerException();
Node<K,V>[] tab = map.table;
if (tab != null && tab.length >= (hi = getFence()) && index >= 0) {
while (current != null || index < hi) {
if (current == null)
current = tab[index++];
else {
V v = current.value;
current = current.next;
action.accept(v);
if (map.modCount != expectedModCount)
throw new ConcurrentModificationException();
return true;
}
}
}
return false;
}

public int characteristics() {
return (fence < 0 || est == map.size ? Spliterator.SIZED : 0);
}
}

static final class EntrySpliterator<K,V>
extends HashMapSpliterator<K,V>
implements Spliterator<Map.Entry<K,V>> {
EntrySpliterator(HashMap<K,V> m, int origin, int fence, int est,
int expectedModCount) {
super(m, origin, fence, est, expectedModCount);
}

public EntrySpliterator<K,V> trySplit() {
int hi = getFence(), lo = index, mid = (lo + hi) >>> 1;
return (lo >= mid || current != null) ? null :
new EntrySpliterator<>(map, lo, index = mid, est >>>= 1,
expectedModCount);
}

public void forEachRemaining(Consumer<? super Map.Entry<K,V>> action) {
int i, hi, mc;
if (action == null)
throw new NullPointerException();
HashMap<K,V> m = map;
Node<K,V>[] tab = m.table;
if ((hi = fence) < 0) {
mc = expectedModCount = m.modCount;
hi = fence = (tab == null) ? 0 : tab.length;
}
else
mc = expectedModCount;
if (tab != null && tab.length >= hi &&
(i = index) >= 0 && (i < (index = hi) || current != null)) {
Node<K,V> p = current;
current = null;
do {
if (p == null)
p = tab[i++];
else {
action.accept(p);
p = p.next;
}
} while (p != null || i < hi);
if (m.modCount != mc)
throw new ConcurrentModificationException();
}
}

public boolean tryAdvance(Consumer<? super Map.Entry<K,V>> action) {
int hi;
if (action == null)
throw new NullPointerException();
Node<K,V>[] tab = map.table;
if (tab != null && tab.length >= (hi = getFence()) && index >= 0) {
while (current != null || index < hi) {
if (current == null)
current = tab[index++];
else {
Node<K,V> e = current;
current = current.next;
action.accept(e);
if (map.modCount != expectedModCount)
throw new ConcurrentModificationException();
return true;
}
}
}
return false;
}

public int characteristics() {
return (fence < 0 || est == map.size ? Spliterator.SIZED : 0) |
Spliterator.DISTINCT;
}
}

/* ------------------------------------------------------------ */
// LinkedHashMap support


/*
* The following package-protected methods are designed to be
* overridden by LinkedHashMap, but not by any other subclass.
* Nearly all other internal methods are also package-protected
* but are declared final, so can be used by LinkedHashMap, view
* classes, and HashSet.
*/

// Create a regular (non-tree) node
Node<K,V> newNode(int hash, K key, V value, Node<K,V> next) {
return new Node<>(hash, key, value, next);
}

// For conversion from TreeNodes to plain nodes
Node<K,V> replacementNode(Node<K,V> p, Node<K,V> next) {
return new Node<>(p.hash, p.key, p.value, next);
}

// Create a tree bin node
TreeNode<K,V> newTreeNode(int hash, K key, V value, Node<K,V> next) {
return new TreeNode<>(hash, key, value, next);
}

// For treeifyBin
TreeNode<K,V> replacementTreeNode(Node<K,V> p, Node<K,V> next) {
return new TreeNode<>(p.hash, p.key, p.value, next);
}

/**
* Reset to initial default state. Called by clone and readObject.
*/
void reinitialize() {
table = null;
entrySet = null;
keySet = null;
values = null;
modCount = 0;
threshold = 0;
size = 0;
}

// Callbacks to allow LinkedHashMap post-actions
void afterNodeAccess(Node<K,V> p) { }
void afterNodeInsertion(boolean evict) { }
void afterNodeRemoval(Node<K,V> p) { }

// Called only from writeObject, to ensure compatible ordering.
void internalWriteEntries(java.io.ObjectOutputStream s) throws IOException {
Node<K,V>[] tab;
if (size > 0 && (tab = table) != null) {
for (int i = 0; i < tab.length; ++i) {
for (Node<K,V> e = tab[i]; e != null; e = e.next) {
s.writeObject(e.key);
s.writeObject(e.value);
}
}
}
}

/* ------------------------------------------------------------ */
// Tree bins

/**
* JDK1.8新增,用来支持桶的红黑树结构实现
* 性质1. 节点是红色或黑色。
* 性质2. 根是黑色。
* 性质3. 所有叶子都是黑色(叶子是NIL节点)。
* 性质4. 每个红色节点必须有两个黑色的子节点。(从每个叶子到根的所有路径上不能有两个连续的红色节点。)
* 性质5. 从任一节点到其每个叶子的所有简单路径都包含相同数目的黑色节点。
*/
static final class TreeNode<K,V> extends LinkedHashMap.Entry<K,V> {
TreeNode<K,V> parent; //节点的父亲
TreeNode<K,V> left; //节点的左孩子
TreeNode<K,V> right; //节点的右孩子
TreeNode<K,V> prev; //节点的前一个节点
boolean red; //true表示红节点,false表示黑节点
TreeNode(int hash, K key, V val, Node<K,V> next) {
super(hash, key, val, next);
}

/**
* 获取红黑树的根
*/
final TreeNode<K,V> root() {
for (TreeNode<K,V> r = this, p;;) {
if ((p = r.parent) == null)
return r;
r = p;
}
}

/**
*确保root是桶中的第一个元素 ,将root移到中中的第一个
*/
static <K,V> void moveRootToFront(Node<K,V>[] tab, TreeNode<K,V> root) {
int n;
if (root != null && tab != null && (n = tab.length) > 0) {
int index = (n - 1) & root.hash;
TreeNode<K,V> first = (TreeNode<K,V>)tab[index];
if (root != first) {
Node<K,V> rn;
tab[index] = root;
TreeNode<K,V> rp = root.prev;
if ((rn = root.next) != null)
((TreeNode<K,V>)rn).prev = rp;
if (rp != null)
rp.next = rn;
if (first != null)
first.prev = root;
root.next = first;
root.prev = null;
}
assert checkInvariants(root);
}
}

/**
* 查找hash为h,key为k的节点
*/
final TreeNode<K,V> find(int h, Object k, Class<?> kc) {
TreeNode<K,V> p = this;
do {
int ph, dir; K pk;
TreeNode<K,V> pl = p.left, pr = p.right, q;
if ((ph = p.hash) > h)
p = pl;
else if (ph < h)
p = pr;
else if ((pk = p.key) == k || (k != null && k.equals(pk)))
return p;
else if (pl == null)
p = pr;
else if (pr == null)
p = pl;
else if ((kc != null ||
(kc = comparableClassFor(k)) != null) &&
(dir = compareComparables(kc, k, pk)) != 0)
p = (dir < 0) ? pl : pr;
else if ((q = pr.find(h, k, kc)) != null)
return q;
else
p = pl;
} while (p != null);
return null;
}

/**
* 获取树节点,通过根节点查找
*/
final TreeNode<K,V> getTreeNode(int h, Object k) {
return ((parent != null) ? root() : this).find(h, k, null);
}

/**
* 比较2个对象的大小
*/
static int tieBreakOrder(Object a, Object b) {
int d;
if (a == null || b == null ||
(d = a.getClass().getName().
compareTo(b.getClass().getName())) == 0)
d = (System.identityHashCode(a) <= System.identityHashCode(b) ?
-1 : 1);
return d;
}

/**
*将链表转为二叉树
* @return root of tree
*/
final void treeify(Node<K,V>[] tab) {
TreeNode<K,V> root = null;
for (TreeNode<K,V> x = this, next; x != null; x = next) {
next = (TreeNode<K,V>)x.next;
x.left = x.right = null;
if (root == null) {
x.parent = null;
x.red = false;
root = x;
}
else {
K k = x.key;
int h = x.hash;
Class<?> kc = null;
for (TreeNode<K,V> p = root;;) {
int dir, ph;
K pk = p.key;
if ((ph = p.hash) > h)
dir = -1;
else if (ph < h)
dir = 1;
else if ((kc == null &&
(kc = comparableClassFor(k)) == null) ||
(dir = compareComparables(kc, k, pk)) == 0)
dir = tieBreakOrder(k, pk);

TreeNode<K,V> xp = p;
if ((p = (dir <= 0) ? p.left : p.right) == null) {
x.parent = xp;
if (dir <= 0)
xp.left = x;
else
xp.right = x;
root = balanceInsertion(root, x);
break;
}
}
}
}
moveRootToFront(tab, root);
}

/**
* Returns a list of non-TreeNodes replacing those linked from
* this node.
*/
final Node<K,V> untreeify(HashMap<K,V> map) {
Node<K,V> hd = null, tl = null;
for (Node<K,V> q = this; q != null; q = q.next) {
Node<K,V> p = map.replacementNode(q, null);
if (tl == null)
hd = p;
else
tl.next = p;
tl = p;
}
return hd;
}

/**
* Tree version of putVal.
*/
final TreeNode<K,V> putTreeVal(HashMap<K,V> map, Node<K,V>[] tab,
int h, K k, V v) {
Class<?> kc = null;
boolean searched = false;
TreeNode<K,V> root = (parent != null) ? root() : this;
for (TreeNode<K,V> p = root;;) {
int dir, ph; K pk;
if ((ph = p.hash) > h)
dir = -1;
else if (ph < h)
dir = 1;
else if ((pk = p.key) == k || (k != null && k.equals(pk)))
return p;
else if ((kc == null &&
(kc = comparableClassFor(k)) == null) ||
(dir = compareComparables(kc, k, pk)) == 0) {
if (!searched) {
TreeNode<K,V> q, ch;
searched = true;
if (((ch = p.left) != null &&
(q = ch.find(h, k, kc)) != null) ||
((ch = p.right) != null &&
(q = ch.find(h, k, kc)) != null))
return q;
}
dir = tieBreakOrder(k, pk);
}

TreeNode<K,V> xp = p;
if ((p = (dir <= 0) ? p.left : p.right) == null) {
Node<K,V> xpn = xp.next;
TreeNode<K,V> x = map.newTreeNode(h, k, v, xpn);
if (dir <= 0)
xp.left = x;
else
xp.right = x;
xp.next = x;
x.parent = x.prev = xp;
if (xpn != null)
((TreeNode<K,V>)xpn).prev = x;
moveRootToFront(tab, balanceInsertion(root, x));
return null;
}
}
}

/**
* Removes the given node, that must be present before this call.
* This is messier than typical red-black deletion code because we
* cannot swap the contents of an interior node with a leaf
* successor that is pinned by "next" pointers that are accessible
* independently during traversal. So instead we swap the tree
* linkages. If the current tree appears to have too few nodes,
* the bin is converted back to a plain bin. (The test triggers
* somewhere between 2 and 6 nodes, depending on tree structure).
*/
final void removeTreeNode(HashMap<K,V> map, Node<K,V>[] tab,
boolean movable) {
int n;
if (tab == null || (n = tab.length) == 0)
return;
int index = (n - 1) & hash;
TreeNode<K,V> first = (TreeNode<K,V>)tab[index], root = first, rl;
TreeNode<K,V> succ = (TreeNode<K,V>)next, pred = prev;
if (pred == null)
tab[index] = first = succ;
else
pred.next = succ;
if (succ != null)
succ.prev = pred;
if (first == null)
return;
if (root.parent != null)
root = root.root();
if (root == null || root.right == null ||
(rl = root.left) == null || rl.left == null) {
tab[index] = first.untreeify(map); // too small
return;
}
TreeNode<K,V> p = this, pl = left, pr = right, replacement;
if (pl != null && pr != null) {
TreeNode<K,V> s = pr, sl;
while ((sl = s.left) != null) // find successor
s = sl;
boolean c = s.red; s.red = p.red; p.red = c; // swap colors
TreeNode<K,V> sr = s.right;
TreeNode<K,V> pp = p.parent;
if (s == pr) { // p was s's direct parent
p.parent = s;
s.right = p;
}
else {
TreeNode<K,V> sp = s.parent;
if ((p.parent = sp) != null) {
if (s == sp.left)
sp.left = p;
else
sp.right = p;
}
if ((s.right = pr) != null)
pr.parent = s;
}
p.left = null;
if ((p.right = sr) != null)
sr.parent = p;
if ((s.left = pl) != null)
pl.parent = s;
if ((s.parent = pp) == null)
root = s;
else if (p == pp.left)
pp.left = s;
else
pp.right = s;
if (sr != null)
replacement = sr;
else
replacement = p;
}
else if (pl != null)
replacement = pl;
else if (pr != null)
replacement = pr;
else
replacement = p;
if (replacement != p) {
TreeNode<K,V> pp = replacement.parent = p.parent;
if (pp == null)
root = replacement;
else if (p == pp.left)
pp.left = replacement;
else
pp.right = replacement;
p.left = p.right = p.parent = null;
}

TreeNode<K,V> r = p.red ? root : balanceDeletion(root, replacement);

if (replacement == p) { // detach
TreeNode<K,V> pp = p.parent;
p.parent = null;
if (pp != null) {
if (p == pp.left)
pp.left = null;
else if (p == pp.right)
pp.right = null;
}
}
if (movable)
moveRootToFront(tab, r);
}

/**
* Splits nodes in a tree bin into lower and upper tree bins,
* or untreeifies if now too small. Called only from resize;
* see above discussion about split bits and indices.
*
* @param map the map
* @param tab the table for recording bin heads
* @param index the index of the table being split
* @param bit the bit of hash to split on
*/
final void split(HashMap<K,V> map, Node<K,V>[] tab, int index, int bit) {
TreeNode<K,V> b = this;
// Relink into lo and hi lists, preserving order
TreeNode<K,V> loHead = null, loTail = null;
TreeNode<K,V> hiHead = null, hiTail = null;
int lc = 0, hc = 0;
for (TreeNode<K,V> e = b, next; e != null; e = next) {
next = (TreeNode<K,V>)e.next;
e.next = null;
if ((e.hash & bit) == 0) {
if ((e.prev = loTail) == null)
loHead = e;
else
loTail.next = e;
loTail = e;
++lc;
}
else {
if ((e.prev = hiTail) == null)
hiHead = e;
else
hiTail.next = e;
hiTail = e;
++hc;
}
}

if (loHead != null) {
if (lc <= UNTREEIFY_THRESHOLD)
tab[index] = loHead.untreeify(map);
else {
tab[index] = loHead;
if (hiHead != null) // (else is already treeified)
loHead.treeify(tab);
}
}
if (hiHead != null) {
if (hc <= UNTREEIFY_THRESHOLD)
tab[index + bit] = hiHead.untreeify(map);
else {
tab[index + bit] = hiHead;
if (loHead != null)
hiHead.treeify(tab);
}
}
}

/* ------------------------------------------------------------ */
// Red-black tree methods, all adapted from CLR

static <K,V> TreeNode<K,V> rotateLeft(TreeNode<K,V> root,
TreeNode<K,V> p) {
TreeNode<K,V> r, pp, rl;
if (p != null && (r = p.right) != null) {
if ((rl = p.right = r.left) != null)
rl.parent = p;
if ((pp = r.parent = p.parent) == null)
(root = r).red = false;
else if (pp.left == p)
pp.left = r;
else
pp.right = r;
r.left = p;
p.parent = r;
}
return root;
}

static <K,V> TreeNode<K,V> rotateRight(TreeNode<K,V> root,
TreeNode<K,V> p) {
TreeNode<K,V> l, pp, lr;
if (p != null && (l = p.left) != null) {
if ((lr = p.left = l.right) != null)
lr.parent = p;
if ((pp = l.parent = p.parent) == null)
(root = l).red = false;
else if (pp.right == p)
pp.right = l;
else
pp.left = l;
l.right = p;
p.parent = l;
}
return root;
}

static <K,V> TreeNode<K,V> balanceInsertion(TreeNode<K,V> root,
TreeNode<K,V> x) {
x.red = true;
for (TreeNode<K,V> xp, xpp, xppl, xppr;;) {
if ((xp = x.parent) == null) {
x.red = false;
return x;
}
else if (!xp.red || (xpp = xp.parent) == null)
return root;
if (xp == (xppl = xpp.left)) {
if ((xppr = xpp.right) != null && xppr.red) {
xppr.red = false;
xp.red = false;
xpp.red = true;
x = xpp;
}
else {
if (x == xp.right) {
root = rotateLeft(root, x = xp);
xpp = (xp = x.parent) == null ? null : xp.parent;
}
if (xp != null) {
xp.red = false;
if (xpp != null) {
xpp.red = true;
root = rotateRight(root, xpp);
}
}
}
}
else {
if (xppl != null && xppl.red) {
xppl.red = false;
xp.red = false;
xpp.red = true;
x = xpp;
}
else {
if (x == xp.left) {
root = rotateRight(root, x = xp);
xpp = (xp = x.parent) == null ? null : xp.parent;
}
if (xp != null) {
xp.red = false;
if (xpp != null) {
xpp.red = true;
root = rotateLeft(root, xpp);
}
}
}
}
}
}

static <K,V> TreeNode<K,V> balanceDeletion(TreeNode<K,V> root,
TreeNode<K,V> x) {
for (TreeNode<K,V> xp, xpl, xpr;;) {
if (x == null || x == root)
return root;
else if ((xp = x.parent) == null) {
x.red = false;
return x;
}
else if (x.red) {
x.red = false;
return root;
}
else if ((xpl = xp.left) == x) {
if ((xpr = xp.right) != null && xpr.red) {
xpr.red = false;
xp.red = true;
root = rotateLeft(root, xp);
xpr = (xp = x.parent) == null ? null : xp.right;
}
if (xpr == null)
x = xp;
else {
TreeNode<K,V> sl = xpr.left, sr = xpr.right;
if ((sr == null || !sr.red) &&
(sl == null || !sl.red)) {
xpr.red = true;
x = xp;
}
else {
if (sr == null || !sr.red) {
if (sl != null)
sl.red = false;
xpr.red = true;
root = rotateRight(root, xpr);
xpr = (xp = x.parent) == null ?
null : xp.right;
}
if (xpr != null) {
xpr.red = (xp == null) ? false : xp.red;
if ((sr = xpr.right) != null)
sr.red = false;
}
if (xp != null) {
xp.red = false;
root = rotateLeft(root, xp);
}
x = root;
}
}
}
else { // symmetric
if (xpl != null && xpl.red) {
xpl.red = false;
xp.red = true;
root = rotateRight(root, xp);
xpl = (xp = x.parent) == null ? null : xp.left;
}
if (xpl == null)
x = xp;
else {
TreeNode<K,V> sl = xpl.left, sr = xpl.right;
if ((sl == null || !sl.red) &&
(sr == null || !sr.red)) {
xpl.red = true;
x = xp;
}
else {
if (sl == null || !sl.red) {
if (sr != null)
sr.red = false;
xpl.red = true;
root = rotateLeft(root, xpl);
xpl = (xp = x.parent) == null ?
null : xp.left;
}
if (xpl != null) {
xpl.red = (xp == null) ? false : xp.red;
if ((sl = xpl.left) != null)
sl.red = false;
}
if (xp != null) {
xp.red = false;
root = rotateRight(root, xp);
}
x = root;
}
}
}
}
}

/**
* Recursive invariant check
*/
static <K,V> boolean checkInvariants(TreeNode<K,V> t) {
TreeNode<K,V> tp = t.parent, tl = t.left, tr = t.right,
tb = t.prev, tn = (TreeNode<K,V>)t.next;
if (tb != null && tb.next != t)
return false;
if (tn != null && tn.prev != t)
return false;
if (tp != null && t != tp.left && t != tp.right)
return false;
if (tl != null && (tl.parent != t || tl.hash > t.hash))
return false;
if (tr != null && (tr.parent != t || tr.hash < t.hash))
return false;
if (t.red && tl != null && tl.red && tr != null && tr.red)
return false;
if (tl != null && !checkInvariants(tl))
return false;
if (tr != null && !checkInvariants(tr))
return false;
return true;
}
}

}

 

 

---------------------
作者:轩辕花狐貂