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/*
* Copyright 2015 Facebook, 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.
*/
#ifndef FOLLY_TIMESERIES_HISTOGRAM_H_
#define FOLLY_TIMESERIES_HISTOGRAM_H_
#include <string>
#include <boost/static_assert.hpp>
#include <folly/stats/Histogram.h>
#include <folly/stats/MultiLevelTimeSeries.h>
namespace folly {
/*
* TimeseriesHistogram tracks data distributions as they change over time.
*
* Specifically, it is a bucketed histogram with different value ranges assigned
* to each bucket. Within each bucket is a MultiLevelTimeSeries from
* 'folly/stats/MultiLevelTimeSeries.h'. This means that each bucket contains a
* different set of data for different historical time periods, and one can
* query data distributions over different trailing time windows.
*
* For example, this can answer questions: "What is the data distribution over
* the last minute? Over the last 10 minutes? Since I last cleared this
* histogram?"
*
* The class can also estimate percentiles and answer questions like: "What was
* the 99th percentile data value over the last 10 minutes?"
*
* Note: that depending on the size of your buckets and the smoothness
* of your data distribution, the estimate may be way off from the actual
* value. In particular, if the given percentile falls outside of the bucket
* range (i.e. your buckets range in 0 - 100,000 but the 99th percentile is
* around 115,000) this estimate may be very wrong.
*
* The memory usage for a typical histogram is roughly 3k * (# of buckets). All
* insertion operations are amortized O(1), and all queries are O(# of buckets).
*/
template <class T, class TT=std::chrono::seconds,
class C=folly::MultiLevelTimeSeries<T, TT>>
class TimeseriesHistogram {
private:
// NOTE: T must be equivalent to _signed_ numeric type for our math.
BOOST_STATIC_ASSERT(std::numeric_limits<T>::is_signed);
public:
// values to be inserted into container
typedef T ValueType;
// the container type we use internally for each bucket
typedef C ContainerType;
// The time type.
typedef TT TimeType;
/*
* Create a TimeSeries histogram and initialize the bucketing and levels.
*
* The buckets are created by chopping the range [min, max) into pieces
* of size bucketSize, with the last bucket being potentially shorter. Two
* additional buckets are always created -- the "under" bucket for the range
* (-inf, min) and the "over" bucket for the range [max, +inf).
*
* @param bucketSize the width of each bucket
* @param min the smallest value for the bucket range.
* @param max the largest value for the bucket range
* @param defaultContainer a pre-initialized timeseries with the desired
* number of levels and their durations.
*/
TimeseriesHistogram(ValueType bucketSize, ValueType min, ValueType max,
const ContainerType& defaultContainer);
/* Return the bucket size of each bucket in the histogram. */
ValueType getBucketSize() const { return buckets_.getBucketSize(); }
/* Return the min value at which bucketing begins. */
ValueType getMin() const { return buckets_.getMin(); }
/* Return the max value at which bucketing ends. */
ValueType getMax() const { return buckets_.getMax(); }
/* Return the number of levels of the Timeseries object in each bucket */
int getNumLevels() const {
return buckets_.getByIndex(0).numLevels();
}
/* Return the number of buckets */
int getNumBuckets() const { return buckets_.getNumBuckets(); }
/* Return the bucket index into which the given value would fall. */
int getBucketIdx(const ValueType& value) const;
/*
* Return the threshold of the bucket for the given index in range
* [0..numBuckets). The bucket will have range [thresh, thresh + bucketSize)
* or [thresh, max), whichever is shorter.
*/
ValueType getBucketMin(int bucketIdx) const {
return buckets_.getBucketMin(bucketIdx);
}
/* Return the actual timeseries in the given bucket (for reading only!) */
const ContainerType& getBucket(int bucketIdx) const {
return buckets_.getByIndex(bucketIdx);
}
/* Total count of values at the given timeseries level (all buckets). */
int64_t count(int level) const {
int64_t total = 0;
for (unsigned int b = 0; b < buckets_.getNumBuckets(); ++b) {
total += buckets_.getByIndex(b).count(level);
}
return total;
}
/* Total count of values added during the given interval (all buckets). */
int64_t count(TimeType start, TimeType end) const {
int64_t total = 0;
for (unsigned int b = 0; b < buckets_.getNumBuckets(); ++b) {
total += buckets_.getByIndex(b).count(start, end);
}
return total;
}
/* Total sum of values at the given timeseries level (all buckets). */
ValueType sum(int level) const {
ValueType total = ValueType();
for (unsigned int b = 0; b < buckets_.getNumBuckets(); ++b) {
total += buckets_.getByIndex(b).sum(level);
}
return total;
}
/* Total sum of values added during the given interval (all buckets). */
ValueType sum(TimeType start, TimeType end) const {
ValueType total = ValueType();
for (unsigned int b = 0; b < buckets_.getNumBuckets(); ++b) {
total += buckets_.getByIndex(b).sum(start, end);
}
return total;
}
/* Average of values at the given timeseries level (all buckets). */
template <typename ReturnType=double>
ReturnType avg(int level) const;
/* Average of values added during the given interval (all buckets). */
template <typename ReturnType=double>
ReturnType avg(TimeType start, TimeType end) const;
/*
* Rate at the given timeseries level (all buckets).
* This is the sum of all values divided by the time interval (in seconds).
*/
ValueType rate(int level) const;
/*
* Rate for the given interval (all buckets).
* This is the sum of all values divided by the time interval (in seconds).
*/
template <typename ReturnType=double>
ReturnType rate(TimeType start, TimeType end) const;
/*
* Update every underlying timeseries object with the given timestamp. You
* must call this directly before querying to ensure that the data in all
* buckets is decayed properly.
*/
void update(TimeType now);
/* clear all the data from the histogram. */
void clear();
/* Add a value into the histogram with timestamp 'now' */
void addValue(TimeType now, const ValueType& value);
/* Add a value the given number of times with timestamp 'now' */
void addValue(TimeType now, const ValueType& value, int64_t times);
/*
* Add all of the values from the specified histogram.
*
* All of the values will be added to the current time-slot.
*
* One use of this is for thread-local caching of frequently updated
* histogram data. For example, each thread can store a thread-local
* Histogram that is updated frequently, and only add it to the global
* TimeseriesHistogram once a second.
*/
void addValues(TimeType now, const folly::Histogram<ValueType>& values);
/*
* Return an estimate of the value at the given percentile in the histogram
* in the given timeseries level. The percentile is estimated as follows:
*
* - We retrieve a count of the values in each bucket (at the given level)
* - We determine via the counts which bucket the given percentile falls in.
* - We assume the average value in the bucket is also its median
* - We then linearly interpolate within the bucket, by assuming that the
* distribution is uniform in the two value ranges [left, median) and
* [median, right) where [left, right) is the bucket value range.
*
* Caveats:
* - If the histogram is empty, this always returns ValueType(), usually 0.
* - For the 'under' and 'over' special buckets, their range is unbounded
* on one side. In order for the interpolation to work, we assume that
* the average value in the bucket is equidistant from the two edges of
* the bucket. In other words, we assume that the distance between the
* average and the known bound is equal to the distance between the average
* and the unknown bound.
*/
ValueType getPercentileEstimate(double pct, int level) const;
/*
* Return an estimate of the value at the given percentile in the histogram
* in the given historical interval. Please see the documentation for
* getPercentileEstimate(int pct, int level) for the explanation of the
* estimation algorithm.
*/
ValueType getPercentileEstimate(double pct, TimeType start, TimeType end)
const;
/*
* Return the bucket index that the given percentile falls into (in the
* given timeseries level). This index can then be used to retrieve either
* the bucket threshold, or other data from inside the bucket.
*/
int getPercentileBucketIdx(double pct, int level) const;
/*
* Return the bucket index that the given percentile falls into (in the
* given historical interval). This index can then be used to retrieve either
* the bucket threshold, or other data from inside the bucket.
*/
int getPercentileBucketIdx(double pct, TimeType start, TimeType end) const;
/* Get the bucket threshold for the bucket containing the given pct. */
int getPercentileBucketMin(double pct, int level) const {
return getBucketMin(getPercentileBucketIdx(pct, level));
}
/* Get the bucket threshold for the bucket containing the given pct. */
int getPercentileBucketMin(double pct, TimeType start, TimeType end) const {
return getBucketMin(getPercentileBucketIdx(pct, start, end));
}
/*
* Print out serialized data from all buckets at the given level.
* Format is: BUCKET [',' BUCKET ...]
* Where: BUCKET == bucketMin ':' count ':' avg
*/
std::string getString(int level) const;
/*
* Print out serialized data for all buckets in the historical interval.
* For format, please see getString(int level).
*/
std::string getString(TimeType start, TimeType end) const;
private:
typedef ContainerType Bucket;
struct CountFromLevel {
explicit CountFromLevel(int level) : level_(level) {}
uint64_t operator()(const ContainerType& bucket) const {
return bucket.count(level_);
}
private:
int level_;
};
struct CountFromInterval {
explicit CountFromInterval(TimeType start, TimeType end)
: start_(start),
end_(end) {}
uint64_t operator()(const ContainerType& bucket) const {
return bucket.count(start_, end_);
}
private:
TimeType start_;
TimeType end_;
};
struct AvgFromLevel {
explicit AvgFromLevel(int level) : level_(level) {}
ValueType operator()(const ContainerType& bucket) const {
return bucket.template avg<ValueType>(level_);
}
private:
int level_;
};
template <typename ReturnType>
struct AvgFromInterval {
explicit AvgFromInterval(TimeType start, TimeType end)
: start_(start),
end_(end) {}
ReturnType operator()(const ContainerType& bucket) const {
return bucket.template avg<ReturnType>(start_, end_);
}
private:
TimeType start_;
TimeType end_;
};
/*
* Special logic for the case of only one unique value registered
* (this can happen when clients don't pick good bucket ranges or have
* other bugs). It's a lot easier for clients to track down these issues
* if they are getting the correct value.
*/
void maybeHandleSingleUniqueValue(const ValueType& value);
folly::detail::HistogramBuckets<ValueType, ContainerType> buckets_;
bool haveNotSeenValue_;
bool singleUniqueValue_;
ValueType firstValue_;
};
} // folly
#endif // FOLLY_TIMESERIES_HISTOGRAM_H_