/* * This file from * https://github.com/addthis/stream-lib/blob/master/src/main/java/com/clearspring/analytics/stream/cardinality/HyperLogLog.java * * This class modified by Scouter-Project * - original package : com.clearspring.analytics.stream.cardinality * - remove implements : ICardinality, Serializable * - add method : public boolean offer(long o) * - remove classes : Builder, enum Format, HyperLogLogPlusMergeException, SerializationHolder * * ==================================== * * Copyright (C) 2012 Clearspring Technologies, Inc. * * Licensed under the Apache License, Version 2.0 (the "License"); * you may not use this file except in compliance with the License. * You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ package scouter.server.util.cardinality; import java.io.IOException; import scouter.io.DataInputX; import scouter.io.DataOutputX; /** * Java implementation of HyperLogLog (HLL) algorithm from this paper: * <p/> * http://algo.inria.fr/flajolet/Publications/FlFuGaMe07.pdf * <p/> * HLL is an improved version of LogLog that is capable of estimating the * cardinality of a set with accuracy = 1.04/sqrt(m) where m = 2^b. So we can * control accuracy vs space usage by increasing or decreasing b. * <p/> * The main benefit of using HLL over LL is that it only requires 64% of the * space that LL does to get the same accuracy. * <p/> * This implementation implements a single counter. If a large (millions) number * of counters are required you may want to refer to: * <p/> * http://dsiutils.dsi.unimi.it/ * <p/> * It has a more complex implementation of HLL that supports multiple counters * in a single object, drastically reducing the java overhead from creating a * large number of objects. * <p/> * This implementation leveraged a javascript implementation that Yammer has * been working on: * <p/> * https://github.com/yammer/probablyjs * <p> * Note that this implementation does not include the long range correction * function defined in the original paper. Empirical evidence shows that the * correction function causes more harm than good. * </p> * <p/> * <p> * Users have different motivations to use different types of hashing functions. * Rather than try to keep up with all available hash functions and to remove * the concern of causing future binary incompatibilities this class allows * clients to offer the value in hashed int or long form. This way clients are * free to change their hash function on their own time line. We recommend using * Google's Guava Murmur3_128 implementation as it provides good performance and * speed when high precision is required. In our tests the 32bit MurmurHash * function included in this project is faster and produces better results than * the 32 bit murmur3 implementation google provides. * </p> * */ public class HyperLogLog { /** * It's is dirty flag to use any purpose * #Scouter-Project */ public boolean dirty; private final RegisterSet registerSet; private final int log2m; private final double alphaMM; /** * Create a new HyperLogLog instance using the specified standard deviation. * * @param rsd * - the relative standard deviation for the counter. smaller * values create counters that require more space. */ public HyperLogLog(double rsd) { this(log2m(rsd)); } private static int log2m(double rsd) { return (int) (Math.log((1.106 / rsd) * (1.106 / rsd)) / Math.log(2)); } private static double rsd(int log2m) { return 1.106 / Math.sqrt(Math.exp(log2m * Math.log(2))); } private static void validateLog2m(int log2m) { if (log2m < 0 || log2m > 30) { throw new IllegalArgumentException("log2m argument is " + log2m + " and is outside the range [0, 30]"); } } /** * Create a new HyperLogLog instance. The log2m parameter defines the * accuracy of the counter. The larger the log2m the better the accuracy. * <p/> * accuracy = 1.04/sqrt(2^log2m) * * @param log2m * - the number of bits to use as the basis for the HLL instance */ public HyperLogLog(int log2m) { this(log2m, new RegisterSet(1 << log2m)); } /** * Creates a new HyperLogLog instance using the given registers. Used for * unmarshalling a serialized instance and for merging multiple counters * together. * * @param registerSet * - the initial values for the register set */ @Deprecated public HyperLogLog(int log2m, RegisterSet registerSet) { validateLog2m(log2m); this.registerSet = registerSet; this.log2m = log2m; int m = 1 << this.log2m; alphaMM = getAlphaMM(log2m, m); } public boolean offerHashed(long hashedValue) { // j becomes the binary address determined by the first b log2m of x // j will be between 0 and 2^log2m final int j = (int) (hashedValue >>> (Long.SIZE - log2m)); final int r = Long.numberOfLeadingZeros((hashedValue << this.log2m) | (1 << (this.log2m - 1)) + 1) + 1; return registerSet.updateIfGreater(j, r); } public boolean offerHashed(int hashedValue) { // j becomes the binary address determined by the first b log2m of x // j will be between 0 and 2^log2m final int j = hashedValue >>> (Integer.SIZE - log2m); final int r = Integer.numberOfLeadingZeros((hashedValue << this.log2m) | (1 << (this.log2m - 1)) + 1) + 1; return registerSet.updateIfGreater(j, r); } public boolean offer(Object o) { final int x = MurmurHash.hash(o); return offerHashed(x); } public boolean offer(long o) { final int x = MurmurHash.hashLong(o); return offerHashed(x); } public long cardinality() { double registerSum = 0; int count = registerSet.count; double zeros = 0.0; for (int j = 0; j < registerSet.count; j++) { int val = registerSet.get(j); registerSum += 1.0 / (1 << val); if (val == 0) { zeros++; } } double estimate = alphaMM * (1 / registerSum); if (estimate <= (5.0 / 2.0) * count) { // Small Range Estimate return Math.round(linearCounting(count, zeros)); } else { return Math.round(estimate); } } public int sizeof() { return registerSet.size * 4; } /* * This method is modified by Souter-project * */ public byte[] getBytes() throws IOException { DataOutputX out = new DataOutputX(); out.writeInt(log2m); out.writeInt(registerSet.size); for (int x : registerSet.readOnlyBits()) { out.writeInt(x); } return out.toByteArray(); } /** * Add all the elements of the other set to this set. * <p/> * This operation does not imply a loss of precision. * * @param other * A compatible Hyperloglog instance (same log2m) * @throws CardinalityMergeException * if other is not compatible */ public void addAll(HyperLogLog other) { if (this.sizeof() != other.sizeof()) { throw new RuntimeException("Cannot merge estimators of different sizes"); } registerSet.merge(other.registerSet); } public HyperLogLog merge(HyperLogLog... estimators) { HyperLogLog merged = new HyperLogLog(log2m, new RegisterSet(this.registerSet.count)); merged.addAll(this); if (estimators == null) { return merged; } for (HyperLogLog estimator : estimators) { HyperLogLog hll = (HyperLogLog) estimator; merged.addAll(hll); } return merged; } /* * Initial code from HyperLogLog.Builder.build() * by Scouter-Project */ public static HyperLogLog build(byte[] bytes) throws IOException { DataInputX in = new DataInputX(bytes); int log2m = in.readInt(); int n = in.readInt(); int[] ints = new int[n]; for (int i = 0; i < n; i++) { ints[i] = in.readInt(); } return new HyperLogLog(log2m, new RegisterSet(1 << log2m, ints)); } protected static double getAlphaMM(final int p, final int m) { // See the paper. switch (p) { case 4: return 0.673 * m * m; case 5: return 0.697 * m * m; case 6: return 0.709 * m * m; default: return (0.7213 / (1 + 1.079 / m)) * m * m; } } protected static double linearCounting(int m, double V) { return m * Math.log(m / V); } }