/*
 * Copyright (C) 2011 The Guava Authors
 *
 * 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 com.google.common.hash;

import static com.google.common.base.Preconditions.checkArgument;
import static com.google.common.base.Preconditions.checkNotNull;
import com.google.common.annotations.Beta;
import com.google.common.annotations.VisibleForTesting;
import com.google.common.base.Objects;
import com.google.common.base.Predicate;
import com.google.common.hash.BloomFilterStrategies.BitArray;
import com.google.common.primitives.SignedBytes;
import com.google.common.primitives.UnsignedBytes;
import com.google.errorprone.annotations.CanIgnoreReturnValue;
import java.io.DataInputStream;
import java.io.DataOutputStream;
import java.io.IOException;
import java.io.InputStream;
import java.io.OutputStream;
import java.io.Serializable;
import javax.annotation.Nullable;

/**
 * A Bloom filter for instances of {@code T}. A Bloom filter offers an approximate containment test
 * with one-sided error: if it claims that an element is contained in it, this might be in error,
 * but if it claims that an element is <i>not</i> contained in it, then this is definitely true.
 *
 * <p>If you are unfamiliar with Bloom filters, this nice
 * <a href="http://llimllib.github.com/bloomfilter-tutorial/">tutorial</a> may help you understand
 * how they work.
 *
 * <p>The false positive probability ({@code FPP}) of a bloom filter is defined as the probability
 * that {@linkplain #mightContain(Object)} will erroneously return {@code true} for an object that
 * has not actually been put in the {@code BloomFilter}.
 *
 * <p>Bloom filters are serializable. They also support a more compact serial representation via the
 * {@link #writeTo} and {@link #readFrom} methods. Both serialized forms will continue to be
 * supported by future versions of this library. However, serial forms generated by newer versions
 * of the code may not be readable by older versions of the code (e.g., a serialized bloom filter
 * generated today may <i>not</i> be readable by a binary that was compiled 6 months ago).
 *
 * @param <T> the type of instances that the {@code BloomFilter} accepts
 * @author Dimitris Andreou
 * @author Kevin Bourrillion
 * @since 11.0
 */


@Beta
public final class BloomFilter<T> implements Predicate<T>, Serializable {
  /**
   * A strategy to translate T instances, to {@code numHashFunctions} bit indexes.
   *
   * <p>Implementations should be collections of pure functions (i.e. stateless).
   */
  interface Strategy extends java.io.Serializable {

    /**
     * Sets {@code numHashFunctions} bits of the given bit array, by hashing a user element.
     *
     * <p>Returns whether any bits changed as a result of this operation.
     */

    <T> boolean put(T object, Funnel<? super T> funnel, int numHashFunctions, BitArray bits);

    /**
     * Queries {@code numHashFunctions} bits of the given bit array, by hashing a user element;
     * returns {@code true} if and only if all selected bits are set.
     */


    <T> boolean mightContain(T object, Funnel<? super T> funnel, int numHashFunctions, BitArray bits);

    /**
     * Identifier used to encode this strategy, when marshalled as part of a BloomFilter. Only
     * values in the [-128, 127] range are valid for the compact serial form. Non-negative values
     * are reserved for enums defined in BloomFilterStrategies; negative values are reserved for any
     * custom, stateful strategy we may define (e.g. any kind of strategy that would depend on user
     * input).
     */


    int ordinal();
  }

  /** The bit set of the BloomFilter (not necessarily power of 2!) */

  private final BitArray bits;

  /** Number of hashes per element */
  private final int numHashFunctions;

  /** The funnel to translate Ts to bytes */
  private final Funnel<? super T> funnel;

  /**
   * The strategy we employ to map an element T to {@code numHashFunctions} bit indexes.
   */
  private final Strategy strategy;

  /**
   * Creates a BloomFilter.
   */
  private BloomFilter(BitArray bits, int numHashFunctions, Funnel<? super T> funnel, Strategy strategy) {
    checkArgument(numHashFunctions > 0, "numHashFunctions (%s) must be > 0", numHashFunctions);
    checkArgument(numHashFunctions <= 255, "numHashFunctions (%s) must be <= 255", numHashFunctions);
    this.bits = checkNotNull(bits);
    this.numHashFunctions = numHashFunctions;
    this.funnel = checkNotNull(funnel);
    this.strategy = checkNotNull(strategy);
  }

  /**
   * Creates a new {@code BloomFilter} that's a copy of this instance. The new instance is equal to
   * this instance but shares no mutable state.
   *
   * @since 12.0
   */


  public BloomFilter<T> copy() {
    return new BloomFilter<T>(bits.copy(), numHashFunctions, funnel, strategy);
         }

  /**
   * Returns {@code true} if the element <i>might</i> have been put in this Bloom filter,
   * {@code false} if this is <i>definitely</i> not the case.
   */


  public boolean mightContain(T object) {
    return strategy.mightContain(object, funnel, numHashFunctions, bits);
         }

  /**
   * @deprecated Provided only to satisfy the {@link Predicate} interface; use {@link #mightContain}
   *     instead.
   */

  @Deprecated
  @Override
  public boolean apply(T input) {
    return mightContain(input);
  }

  /**
   * Puts an element into this {@code BloomFilter}. Ensures that subsequent invocations of
   * {@link #mightContain(Object)} with the same element will always return {@code true}.
   *
   * @return true if the bloom filter's bits changed as a result of this operation. If the bits
   *     changed, this is <i>definitely</i> the first time {@code object} has been added to the
   *     filter. If the bits haven't changed, this <i>might</i> be the first time {@code object} has
   *     been added to the filter. Note that {@code put(t)} always returns the <i>opposite</i>
   *     result to what {@code mightContain(t)} would have returned at the time it is called."
   * @since 12.0 (present in 11.0 with {@code void} return type})
   */

  @CanIgnoreReturnValue
  public boolean put(T object) {
    return strategy.put(object, funnel, numHashFunctions, bits);
  }

  /**
   * Returns the probability that {@linkplain #mightContain(Object)} will erroneously return
   * {@code true} for an object that has not actually been put in the {@code BloomFilter}.
   *
   * <p>Ideally, this number should be close to the {@code fpp} parameter passed in
   * {@linkplain #create(Funnel, int, double)}, or smaller. If it is significantly higher, it is
   * usually the case that too many elements (more than expected) have been put in the
   * {@code BloomFilter}, degenerating it.
   *
   * @since 14.0 (since 11.0 as expectedFalsePositiveProbability())
   */


  public double expectedFpp() {
    // You down with FPP? (Yeah you know me!) Who's down with FPP? (Every last homie!)
    return Math.pow((double) bits.bitCount() / bitSize(), numHashFunctions);
         }

  /**
   * Returns the number of bits in the underlying bit array.
   */

  @VisibleForTesting
  long bitSize() {
    return bits.bitSize();
  }

  /**
   * Determines whether a given bloom filter is compatible with this bloom filter. For two bloom
   * filters to be compatible, they must:
   *
   * <ul>
   * <li>not be the same instance
   * <li>have the same number of hash functions
   * <li>have the same bit size
   * <li>have the same strategy
   * <li>have equal funnels
   * <ul>
   *
   * @param that The bloom filter to check for compatibility.
   * @since 15.0
   */


  public boolean isCompatible(BloomFilter<T> that) {
    checkNotNull(that);
    return (this != that) && (this.numHashFunctions == that.numHashFunctions)
&& (this.bitSize() == that.bitSize())
  && (this.strategy.equals(that.strategy))
&& (this.funnel.equals(that.funnel));
         }

  /**
   * Combines this bloom filter with another bloom filter by performing a bitwise OR of the
   * underlying data. The mutations happen to <b>this</b> instance. Callers must ensure the bloom
   * filters are appropriately sized to avoid saturating them.
   *
   * @param that The bloom filter to combine this bloom filter with. It is not mutated.
   * @throws IllegalArgumentException if {@code isCompatible(that) == false}
   *
   * @since 15.0
   */


  public void putAll(BloomFilter<T> that) {
    checkNotNull(that);
    checkArgument(this != that, "Cannot combine a BloomFilter with itself.");
    checkArgument(this.numHashFunctions == that.numHashFunctions, "BloomFilters must have the same number of hash functions (%s != %s)", this.numHashFunctions, that.numHashFunctions);
    checkArgument(this.bitSize() == that.bitSize(),
                  "BloomFilters must have the same size underlying bit arrays (%s != %s)",
                  this.bitSize(),
                  that.bitSize());
    checkArgument(this.strategy.equals(that.strategy),
                  "BloomFilters must have equal strategies (%s != %s)",
                  this.strategy,
                  that.strategy);
    checkArgument(this.funnel.equals(that.funnel),
                  "BloomFilters must have equal funnels (%s != %s)",
                  this.funnel,
                  that.funnel);
    this.bits.putAll(that.bits);
         }

  @Override
  public boolean equals(@Nullable Object object) {
    if (object == this) {
      return true;
    }
    if (object instanceof BloomFilter) {
      BloomFilter<?> that = (BloomFilter<?>) object;
      return this.numHashFunctions == that.numHashFunctions
&& this.funnel.equals(that.funnel)
  && this.bits.equals(that.bits)
&& this.strategy.equals(that.strategy);
    }
    return false;
  }

  @Override
  public int hashCode() {
    return Objects.hashCode(numHashFunctions, funnel, strategy, bits);
  }

  /**
   * Creates a {@link BloomFilter BloomFilter<T>} with the expected number of insertions and
   * expected false positive probability.
   *
   * <p>Note that overflowing a {@code BloomFilter} with significantly more elements than specified,
   * will result in its saturation, and a sharp deterioration of its false positive probability.
   *
   * <p>The constructed {@code BloomFilter<T>} will be serializable if the provided
   * {@code Funnel<T>} is.
   *
   * <p>It is recommended that the funnel be implemented as a Java enum. This has the benefit of
   * ensuring proper serialization and deserialization, which is important since {@link #equals}
   * also relies on object identity of funnels.
   *
   * @param funnel the funnel of T's that the constructed {@code BloomFilter<T>} will use
   * @param expectedInsertions the number of expected insertions to the constructed
   *     {@code BloomFilter<T>}; must be positive
   * @param fpp the desired false positive probability (must be positive and less than 1.0)
   * @return a {@code BloomFilter}
   */


  public static <T> BloomFilter<T> create(Funnel<? super T> funnel, int expectedInsertions, double fpp) {
    return create(funnel, (long) expectedInsertions, fpp);
  }

  /**
   * Creates a {@link BloomFilter BloomFilter<T>} with the expected number of insertions and
   * expected false positive probability.
   *
   * <p>Note that overflowing a {@code BloomFilter} with significantly more elements than specified,
   * will result in its saturation, and a sharp deterioration of its false positive probability.
   *
   * <p>The constructed {@code BloomFilter<T>} will be serializable if the provided
   * {@code Funnel<T>} is.
   *
   * <p>It is recommended that the funnel be implemented as a Java enum. This has the benefit of
   * ensuring proper serialization and deserialization, which is important since {@link #equals}
   * also relies on object identity of funnels.
   *
   * @param funnel the funnel of T's that the constructed {@code BloomFilter<T>} will use
   * @param expectedInsertions the number of expected insertions to the constructed
   *     {@code BloomFilter<T>}; must be positive
   * @param fpp the desired false positive probability (must be positive and less than 1.0)
   * @return a {@code BloomFilter}
   * @since 19.0
   */


  public static <T> BloomFilter<T> create(Funnel<? super T> funnel, long expectedInsertions, double fpp) {
    return create(funnel, expectedInsertions, fpp, BloomFilterStrategies.MURMUR128_MITZ_64);
  }

  @VisibleForTesting
  static <T> BloomFilter<T> create(Funnel<? super T> funnel, long expectedInsertions, double fpp, Strategy strategy) {
    checkNotNull(funnel);
    checkArgument(expectedInsertions >= 0, "Expected insertions (%s) must be >= 0", expectedInsertions);
    checkArgument(fpp > 0.0, "False positive probability (%s) must be > 0.0", fpp);
    checkArgument(fpp < 1.0, "False positive probability (%s) must be < 1.0", fpp);
    checkNotNull(strategy);
    if (expectedInsertions == 0) {
      expectedInsertions = 1;
    }
    /*
     * TODO(user): Put a warning in the javadoc about tiny fpp values, since the resulting size
     * is proportional to -log(p), but there is not much of a point after all, e.g.
     * optimalM(1000, 0.0000000000000001) = 76680 which is less than 10kb. Who cares!
     */
    long numBits = optimalNumOfBits(expectedInsertions, fpp);
    int numHashFunctions = optimalNumOfHashFunctions(expectedInsertions, numBits);
    try {
      return new BloomFilter<T>(new BitArray(numBits), numHashFunctions, funnel, strategy);
    } catch (IllegalArgumentException e) {
      throw new IllegalArgumentException("Could not create BloomFilter of " + numBits + " bits", e);
    }
  }

  /**
   * Creates a {@link BloomFilter BloomFilter<T>} with the expected number of insertions and a
   * default expected false positive probability of 3%.
   *
   * <p>Note that overflowing a {@code BloomFilter} with significantly more elements than specified,
   * will result in its saturation, and a sharp deterioration of its false positive probability.
   *
   * <p>The constructed {@code BloomFilter<T>} will be serializable if the provided
   * {@code Funnel<T>} is.
   *
   * <p>It is recommended that the funnel be implemented as a Java enum. This has the benefit of
   * ensuring proper serialization and deserialization, which is important since {@link #equals}
   * also relies on object identity of funnels.
   *
   * @param funnel the funnel of T's that the constructed {@code BloomFilter<T>} will use
   * @param expectedInsertions the number of expected insertions to the constructed
   *     {@code BloomFilter<T>}; must be positive
   * @return a {@code BloomFilter}
   */


  public static <T> BloomFilter<T> create(Funnel<? super T> funnel, int expectedInsertions) {
    return create(funnel, (long) expectedInsertions);
  }

  /**
   * Creates a {@link BloomFilter BloomFilter<T>} with the expected number of insertions and a
   * default expected false positive probability of 3%.
   *
   * <p>Note that overflowing a {@code BloomFilter} with significantly more elements than specified,
   * will result in its saturation, and a sharp deterioration of its false positive probability.
   *
   * <p>The constructed {@code BloomFilter<T>} will be serializable if the provided
   * {@code Funnel<T>} is.
   *
   * <p>It is recommended that the funnel be implemented as a Java enum. This has the benefit of
   * ensuring proper serialization and deserialization, which is important since {@link #equals}
   * also relies on object identity of funnels.
   *
   * @param funnel the funnel of T's that the constructed {@code BloomFilter<T>} will use
   * @param expectedInsertions the number of expected insertions to the constructed
   *     {@code BloomFilter<T>}; must be positive
   * @return a {@code BloomFilter}
   * @since 19.0
   */


  public static <T> BloomFilter<T> create(Funnel<? super T> funnel, long expectedInsertions) {
    return create(funnel, expectedInsertions, 0.03); // FYI, for 3%, we always get 5 hash functions
  }

  // Cheat sheet:
  //
  // m: total bits
  // n: expected insertions
  // b: m/n, bits per insertion
  // p: expected false positive probability
  //
  // 1) Optimal k = b * ln2
  // 2) p = (1 - e ^ (-kn/m))^k
  // 3) For optimal k: p = 2 ^ (-k) ~= 0.6185^b
  // 4) For optimal k: m = -nlnp / ((ln2) ^ 2)

  /**
   * Computes the optimal k (number of hashes per element inserted in Bloom filter), given the
   * expected insertions and total number of bits in the Bloom filter.
   *
   * See http://en.wikipedia.org/wiki/File:Bloom_filter_fp_probability.svg for the formula.
   *
   * @param n expected insertions (must be positive)
   * @param m total number of bits in Bloom filter (must be positive)
   */

  @VisibleForTesting
  static int optimalNumOfHashFunctions(long n, long m) {
    // (m / n) * log(2), but avoid truncation due to division!
    return Math.max(1, (int) Math.round((double) m / n * Math.log(2)));
  }

  /**
   * Computes m (total bits of Bloom filter) which is expected to achieve, for the specified
   * expected insertions, the required false positive probability.
   *
   * See http://en.wikipedia.org/wiki/Bloom_filter#Probability_of_false_positives for the formula.
   *
   * @param n expected insertions (must be positive)
   * @param p false positive rate (must be 0 < p < 1)
   */

  @VisibleForTesting
  static long optimalNumOfBits(long n, double p) {
    if (p == 0) {
      p = Double.MIN_VALUE;
    }
    return (long) (-n * Math.log(p) / (Math.log(2) * Math.log(2)));
  }

  private Object writeReplace() {
    return new SerialForm<T>(this);
          }

  private static class SerialForm<T> implements Serializable {
    final long[] data;
    final int numHashFunctions;
    final Funnel<? super T> funnel;
    final Strategy strategy;

    SerialForm(BloomFilter<T> bf) {
      this.data = bf.bits.data;
      this.numHashFunctions = bf.numHashFunctions;
      this.funnel = bf.funnel;
      this.strategy = bf.strategy;
    }

    Object readResolve() {
      return new BloomFilter<T>(new BitArray(data), numHashFunctions, funnel, strategy);
    }

    private static final long serialVersionUID = 1;
  }

  /**
   * Writes this {@code BloomFilter} to an output stream, with a custom format (not Java
   * serialization). This has been measured to save at least 400 bytes compared to regular
   * serialization.
   *
   * <p>Use {@linkplain #readFrom(InputStream, Funnel)} to reconstruct the written BloomFilter.
   */


  public void writeTo(OutputStream out) throws IOException {
    // Serial form:
    // 1 signed byte for the strategy
    // 1 unsigned byte for the number of hash functions
    // 1 big endian int, the number of longs in our bitset
    // N big endian longs of our bitset
    DataOutputStream dout = new DataOutputStream(out);
    dout.writeByte(SignedBytes.checkedCast(strategy.ordinal()));
    dout.writeByte(UnsignedBytes.checkedCast(numHashFunctions)); // note: checked at the c'tor
    dout.writeInt(bits.data.length);
    for (long value : bits.data) {
      dout.writeLong(value);
    }
  }

  /**
   * Reads a byte stream, which was written by {@linkplain #writeTo(OutputStream)}, into a
   * {@code BloomFilter<T>}.
   *
   * The {@code Funnel} to be used is not encoded in the stream, so it must be provided here.
   * <b>Warning:</b> the funnel provided <b>must</b> behave identically to the one used to populate
   * the original Bloom filter!
   *
   * @throws IOException if the InputStream throws an {@code IOException}, or if its data does not
   *     appear to be a BloomFilter serialized using the {@linkplain #writeTo(OutputStream)} method.
   */


  public static <T> BloomFilter<T> readFrom(InputStream in, Funnel<T> funnel)
throws IOException {
    checkNotNull(in, "InputStream");
    checkNotNull(funnel, "Funnel");
    int strategyOrdinal = -1;
    int numHashFunctions = -1;
    int dataLength = -1;
    try {
      DataInputStream din = new DataInputStream(in);
      // currently this assumes there is no negative ordinal; will have to be updated if we
      // add non-stateless strategies (for which we've reserved negative ordinals; see
      // Strategy.ordinal()).
      strategyOrdinal = din.readByte();
      numHashFunctions = UnsignedBytes.toInt(din.readByte());
      dataLength = din.readInt();
      Strategy strategy = BloomFilterStrategies.values() [strategyOrdinal];
      long[] data = new long[dataLength];
      for (int i = 0; i < data.length; i++) {
        data[i] = din.readLong();
      }
      return new BloomFilter<T>(new BitArray(data), numHashFunctions, funnel, strategy);
    } catch (RuntimeException e) {
      IOException ioException = new IOException("Unable to deserialize BloomFilter from InputStream." + " strategyOrdinal: "
+ strategyOrdinal
+ " numHashFunctions: "
+ numHashFunctions + " dataLength: " + dataLength);
      ioException.initCause(e);
      throw ioException;
    }
  }
}