/* * Licensed to Elasticsearch under one or more contributor * license agreements. See the NOTICE file distributed with * this work for additional information regarding copyright * ownership. Elasticsearch licenses this file to you 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 org.elasticsearch.search.aggregations.metrics.stats; import org.apache.lucene.index.LeafReaderContext; import org.elasticsearch.common.lease.Releasables; import org.elasticsearch.common.util.BigArrays; import org.elasticsearch.common.util.DoubleArray; import org.elasticsearch.common.util.LongArray; import org.elasticsearch.index.fielddata.SortedNumericDoubleValues; import org.elasticsearch.search.DocValueFormat; import org.elasticsearch.search.aggregations.Aggregator; import org.elasticsearch.search.aggregations.InternalAggregation; import org.elasticsearch.search.aggregations.LeafBucketCollector; import org.elasticsearch.search.aggregations.LeafBucketCollectorBase; import org.elasticsearch.search.aggregations.metrics.NumericMetricsAggregator; import org.elasticsearch.search.aggregations.pipeline.PipelineAggregator; import org.elasticsearch.search.aggregations.support.ValuesSource; import org.elasticsearch.search.internal.SearchContext; import java.io.IOException; import java.util.List; import java.util.Map; public class StatsAggregator extends NumericMetricsAggregator.MultiValue { final ValuesSource.Numeric valuesSource; final DocValueFormat format; LongArray counts; DoubleArray sums; DoubleArray mins; DoubleArray maxes; public StatsAggregator(String name, ValuesSource.Numeric valuesSource, DocValueFormat format, SearchContext context, Aggregator parent, List<PipelineAggregator> pipelineAggregators, Map<String, Object> metaData) throws IOException { super(name, context, parent, pipelineAggregators, metaData); this.valuesSource = valuesSource; if (valuesSource != null) { final BigArrays bigArrays = context.bigArrays(); counts = bigArrays.newLongArray(1, true); sums = bigArrays.newDoubleArray(1, true); mins = bigArrays.newDoubleArray(1, false); mins.fill(0, mins.size(), Double.POSITIVE_INFINITY); maxes = bigArrays.newDoubleArray(1, false); maxes.fill(0, maxes.size(), Double.NEGATIVE_INFINITY); } this.format = format; } @Override public boolean needsScores() { return valuesSource != null && valuesSource.needsScores(); } @Override public LeafBucketCollector getLeafCollector(LeafReaderContext ctx, final LeafBucketCollector sub) throws IOException { if (valuesSource == null) { return LeafBucketCollector.NO_OP_COLLECTOR; } final BigArrays bigArrays = context.bigArrays(); final SortedNumericDoubleValues values = valuesSource.doubleValues(ctx); return new LeafBucketCollectorBase(sub, values) { @Override public void collect(int doc, long bucket) throws IOException { if (bucket >= counts.size()) { final long from = counts.size(); final long overSize = BigArrays.overSize(bucket + 1); counts = bigArrays.resize(counts, overSize); sums = bigArrays.resize(sums, overSize); mins = bigArrays.resize(mins, overSize); maxes = bigArrays.resize(maxes, overSize); mins.fill(from, overSize, Double.POSITIVE_INFINITY); maxes.fill(from, overSize, Double.NEGATIVE_INFINITY); } if (values.advanceExact(doc)) { final int valuesCount = values.docValueCount(); counts.increment(bucket, valuesCount); double sum = 0; double min = mins.get(bucket); double max = maxes.get(bucket); for (int i = 0; i < valuesCount; i++) { double value = values.nextValue(); sum += value; min = Math.min(min, value); max = Math.max(max, value); } sums.increment(bucket, sum); mins.set(bucket, min); maxes.set(bucket, max); } } }; } @Override public boolean hasMetric(String name) { try { InternalStats.Metrics.resolve(name); return true; } catch (IllegalArgumentException iae) { return false; } } @Override public double metric(String name, long owningBucketOrd) { if (valuesSource == null || owningBucketOrd >= counts.size()) { switch(InternalStats.Metrics.resolve(name)) { case count: return 0; case sum: return 0; case min: return Double.POSITIVE_INFINITY; case max: return Double.NEGATIVE_INFINITY; case avg: return Double.NaN; default: throw new IllegalArgumentException("Unknown value [" + name + "] in common stats aggregation"); } } switch(InternalStats.Metrics.resolve(name)) { case count: return counts.get(owningBucketOrd); case sum: return sums.get(owningBucketOrd); case min: return mins.get(owningBucketOrd); case max: return maxes.get(owningBucketOrd); case avg: return sums.get(owningBucketOrd) / counts.get(owningBucketOrd); default: throw new IllegalArgumentException("Unknown value [" + name + "] in common stats aggregation"); } } @Override public InternalAggregation buildAggregation(long bucket) { if (valuesSource == null || bucket >= sums.size()) { return buildEmptyAggregation(); } return new InternalStats(name, counts.get(bucket), sums.get(bucket), mins.get(bucket), maxes.get(bucket), format, pipelineAggregators(), metaData()); } @Override public InternalAggregation buildEmptyAggregation() { return new InternalStats(name, 0, 0, Double.POSITIVE_INFINITY, Double.NEGATIVE_INFINITY, format, pipelineAggregators(), metaData()); } @Override public void doClose() { Releasables.close(counts, maxes, mins, sums); } }