org.apache.kafka.common.metrics.stats.Rate Maven / Gradle / Ivy
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* The ASF 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
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package org.apache.kafka.common.metrics.stats;
import java.util.Locale;
import java.util.concurrent.TimeUnit;
import org.apache.kafka.common.metrics.MeasurableStat;
import org.apache.kafka.common.metrics.MetricConfig;
import static org.apache.kafka.common.metrics.internals.MetricsUtils.convert;
/**
* The rate of the given quantity. By default this is the total observed over a set of samples from a sampled statistic
* divided by the elapsed time over the sample windows. Alternative {@link SampledStat} implementations can be provided,
* however, to record the rate of occurrences (e.g. the count of values measured over the time interval) or other such
* values.
*/
public class Rate implements MeasurableStat {
protected final TimeUnit unit;
protected final SampledStat stat;
public Rate() {
this(TimeUnit.SECONDS);
}
public Rate(TimeUnit unit) {
this(unit, new WindowedSum());
}
public Rate(SampledStat stat) {
this(TimeUnit.SECONDS, stat);
}
public Rate(TimeUnit unit, SampledStat stat) {
this.stat = stat;
this.unit = unit;
}
public String unitName() {
return unit.name().substring(0, unit.name().length() - 2).toLowerCase(Locale.ROOT);
}
@Override
public void record(MetricConfig config, double value, long timeMs) {
this.stat.record(config, value, timeMs);
}
@Override
public double measure(MetricConfig config, long now) {
double value = stat.measure(config, now);
return value / convert(windowSize(config, now), unit);
}
public long windowSize(MetricConfig config, long now) {
// purge old samples before we compute the window size
stat.purgeObsoleteSamples(config, now);
/*
* Here we check the total amount of time elapsed since the oldest non-obsolete window.
* This give the total windowSize of the batch which is the time used for Rate computation.
* However, there is an issue if we do not have sufficient data for e.g. if only 1 second has elapsed in a 30 second
* window, the measured rate will be very high.
* Hence we assume that the elapsed time is always N-1 complete windows plus whatever fraction of the final window is complete.
*
* Note that we could simply count the amount of time elapsed in the current window and add n-1 windows to get the total time,
* but this approach does not account for sleeps. SampledStat only creates samples whenever record is called,
* if no record is called for a period of time that time is not accounted for in windowSize and produces incorrect results.
*/
long totalElapsedTimeMs = now - stat.oldest(now).lastWindowMs;
// Check how many full windows of data we have currently retained
int numFullWindows = (int) (totalElapsedTimeMs / config.timeWindowMs());
int minFullWindows = config.samples() - 1;
// If the available windows are less than the minimum required, add the difference to the totalElapsedTime
if (numFullWindows < minFullWindows)
totalElapsedTimeMs += (minFullWindows - numFullWindows) * config.timeWindowMs();
// If window size is being calculated at the exact beginning of the window with no prior samples, the window size
// will result in a value of 0. Calculation of rate over a window is size 0 is undefined, hence, we assume the
// minimum window size to be at least 1ms.
return Math.max(totalElapsedTimeMs, 1);
}
@Override
public String toString() {
return "Rate(" +
"unit=" + unit +
", stat=" + stat +
')';
}
}
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