• LruCache算法原理及实现


    LruCache算法原理及实现

    LruCache算法原理

    LRULeast Recently Used的缩写,意思也就是近期最少使用算法。LruCacheLinkedHashMap的顺序设置为LRU顺序来实现LRU缓存,每次调用get并获取到值(也就是从内存缓存中命中),则将该对象移到链表的尾端。调用put插入新的对象也是存储在链表尾端,这样当内存缓存达到设定的最大值时,将链表头部的对象(近期最少用到的)移除。

    基于LinkedHashMapLRUCache的实现,关键是重写LinkedHashMapremoveEldestEntry方法,在LinkedHashMap中该方法默认返回false(LRUCache本身未考虑线程安全的问题),这样此映射的行为将类似于正常映射,即永远不能移除最旧的元素。

    LruCache算法实现的思路

    • 按从近期访问最少到近期访问最多的顺序(即访问顺序)来保存元素,LinkedHashMap提供了LinkedHashMap(int initialCapacity, float loadFactor, boolean accessOrder)构造函数,该哈希映射的迭代顺序就是最后访问其条目的顺序,这种映射很适合构建LRU缓存。
    • LinkedHashMap提供了removeEldestEntry(Map.Entry<K,V> eldest)方法。该方法在每次添加新条目时移除最旧条目,但该方法默认返回false,这样,此映射的行为将类似于正常映射,即永远不能移除最旧的元素。因而需要重写该方法。

    基于LinkedHashMap的LruCache具体实现

    import java.util.LinkedHashMap;
    import java.util.Map;
    
    public class LruCache<K, V> {
        private LinkedHashMap<K, V> map;//链表存储对象
    
        private int cacheSize;//cache大小
        private int hitCount;//命中次数
        private int missCount;//未命中次数
    
        public synchronized final int getCacheSize() {
            return cacheSize;
        }
    
        public synchronized final int getHitCount() {
            return hitCount;
        }
    
        public synchronized final int getMissCount() {
            return missCount;
        }
    
        static final int DEFAULT_CACHE_SIZE = 2;//cache默认大小
    
        public V put(K key, V value) {
            return map.put(key, value);
        }
    
        public V get(Object key) {
    
            if (null == key) {
                throw new NullPointerException(" key == null ");
            }
    
            V val = null;
            synchronized (this) {
                val = map.get(key);
                if (null != val) {
                    hitCount += 1;
                    return val;
                }
    
                missCount += 1;
            }
    
            return val;
        }
    
        public LruCache() {
            this(DEFAULT_CACHE_SIZE);
        }
    
        public LruCache(int cacheSize) {
            this.cacheSize = cacheSize;
            int hashTableSize = (int) (Math.ceil(cacheSize / 0.75f) + 1);
    
            //LruCache算法实现的关键
    
            //1、按从近期访问最少到近期访问最多的顺序(即访问顺序)来保存元素,那么请使用下面的构造方法构造LinkedHashMap
            //public LinkedHashMap(int initialCapacity, float loadFactor, boolean accessOrder); //该哈希映射的迭代顺序就是最后访问其条目的顺序,这种映射很适合构建LRU缓存。
            //2、LinkedHashMap提供了removeEldestEntry(Map.Entry<K,V> eldest)方法。该方法可以提供在每次添加新条目时移除最旧条目的实现程序,默认返回false,这样,此映射的行为将类似于正常映射,即永远不能移除最旧的元素。
            map = new LinkedHashMap<K, V>(hashTableSize, 0.75f, true){
                private static final long serialVersionUID = 1L;
    
                @Override
                protected boolean removeEldestEntry(Map.Entry<K, V> eldest) {
                    System.out.println(" ***** size=" + size() + " cacheSize=" + LruCache.this.cacheSize + " ****");
    //                return super.removeEldestEntry(eldest);
                    return size() > LruCache.this.cacheSize;
                }
            };
        }
    
        public static void main(String[] args) {
    
            LruCache<String, String> lruCache = new LruCache<String, String>(3);
            lruCache.put("1", "1");
            lruCache.put("2", "2");
            lruCache.put("3", "3");
            lruCache.put("4", "4");
            lruCache.put("5", "5");
    
            System.out.println("==========================================================================");
            System.out.println("hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
            System.out.println("==========================================================================");
    
            System.out.println(lruCache.get("1") + " hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
            System.out.println(lruCache.get("2") + " hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
            System.out.println(lruCache.get("3") + " hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
            System.out.println(lruCache.get("4") + " hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
            System.out.println(lruCache.get("4") + " hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
            System.out.println(lruCache.get("4") + " hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
            System.out.println(lruCache.get("4") + " hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
            lruCache.put("6", "6");
            lruCache.put("7", "7");
            System.out.println(lruCache.get("4") + " hitCount=" + lruCache.getHitCount() + " missCount=" + lruCache.getMissCount());
            lruCache.put("8", "8");
    
            System.out.println(lruCache.get("5") + " hitCount=" + lruCache.getHitCount() + " missCount=" +  lruCache.getMissCount());
    
            System.out.println("==========================================================================");
            for(Map.Entry<String, String> entry : lruCache.map.entrySet()) {
                System.out.println(entry.getKey()+":"+entry.getValue());
            }
    
        }
    }
    

    执行结果

    ***** size=1 cacheSize=3 ****
    ***** size=2 cacheSize=3 ****
    ***** size=3 cacheSize=3 ****
    ***** size=4 cacheSize=3 ****
    ***** size=4 cacheSize=3 ****
    ==========================================================================
    hitCount=0 missCount=0
    ==========================================================================
    null hitCount=0 missCount=1
    null hitCount=0 missCount=2
    3 hitCount=1 missCount=2
    4 hitCount=2 missCount=2
    4 hitCount=3 missCount=2
    4 hitCount=4 missCount=2
    4 hitCount=5 missCount=2
    ***** size=4 cacheSize=3 ****
    ***** size=4 cacheSize=3 ****
    4 hitCount=6 missCount=2
    ***** size=4 cacheSize=3 ****
    null hitCount=6 missCount=3
    ==========================================================================
    7:7
    4:4
    8:8
    

    参考文档:

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  • 原文地址:https://www.cnblogs.com/rwxwsblog/p/6093198.html
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