mirror of
https://github.com/prometheus/prometheus.git
synced 2024-12-26 14:09:41 -08:00
af1a19fc78
Signed-off-by: Matthieu MOREL <matthieu.morel35@gmail.com>
634 lines
20 KiB
Go
634 lines
20 KiB
Go
// Copyright 2021 The Prometheus Authors
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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package histogram
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import (
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"errors"
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"fmt"
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"math"
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"slices"
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"strings"
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)
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// CounterResetHint contains the known information about a counter reset,
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// or alternatively that we are dealing with a gauge histogram, where counter resets do not apply.
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type CounterResetHint byte
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const (
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UnknownCounterReset CounterResetHint = iota // UnknownCounterReset means we cannot say if this histogram signals a counter reset or not.
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CounterReset // CounterReset means there was definitely a counter reset starting from this histogram.
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NotCounterReset // NotCounterReset means there was definitely no counter reset with this histogram.
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GaugeType // GaugeType means this is a gauge histogram, where counter resets do not happen.
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)
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// Histogram encodes a sparse, high-resolution histogram. See the design
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// document for full details:
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// https://docs.google.com/document/d/1cLNv3aufPZb3fNfaJgdaRBZsInZKKIHo9E6HinJVbpM/edit#
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//
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// The most tricky bit is how bucket indices represent real bucket boundaries.
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// An example for schema 0 (by which each bucket is twice as wide as the
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// previous bucket):
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//
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// Bucket boundaries → [-2,-1) [-1,-0.5) [-0.5,-0.25) ... [-0.001,0.001] ... (0.25,0.5] (0.5,1] (1,2] ....
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// ↑ ↑ ↑ ↑ ↑ ↑ ↑
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// Zero bucket (width e.g. 0.001) → | | | ZB | | |
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// Positive bucket indices → | | | ... -1 0 1 2 3
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// Negative bucket indices → 3 2 1 0 -1 ...
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//
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// Which bucket indices are actually used is determined by the spans.
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type Histogram struct {
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// Counter reset information.
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CounterResetHint CounterResetHint
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// Currently valid schema numbers are -4 <= n <= 8 for exponential buckets,
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// They are all for base-2 bucket schemas, where 1 is a bucket boundary in
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// each case, and then each power of two is divided into 2^n logarithmic buckets.
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// Or in other words, each bucket boundary is the previous boundary times
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// 2^(2^-n). Another valid schema number is -53 for custom buckets, defined by
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// the CustomValues field.
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Schema int32
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// Width of the zero bucket.
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ZeroThreshold float64
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// Observations falling into the zero bucket.
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ZeroCount uint64
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// Total number of observations.
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Count uint64
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// Sum of observations. This is also used as the stale marker.
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Sum float64
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// Spans for positive and negative buckets (see Span below).
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PositiveSpans, NegativeSpans []Span
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// Observation counts in buckets. The first element is an absolute
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// count. All following ones are deltas relative to the previous
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// element.
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PositiveBuckets, NegativeBuckets []int64
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// Holds the custom (usually upper) bounds for bucket definitions, otherwise nil.
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// This slice is interned, to be treated as immutable and copied by reference.
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// These numbers should be strictly increasing. This field is only used when the
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// schema is for custom buckets, and the ZeroThreshold, ZeroCount, NegativeSpans
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// and NegativeBuckets fields are not used in that case.
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CustomValues []float64
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}
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// A Span defines a continuous sequence of buckets.
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type Span struct {
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// Gap to previous span (always positive), or starting index for the 1st
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// span (which can be negative).
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Offset int32
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// Length of the span.
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Length uint32
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}
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func (h *Histogram) UsesCustomBuckets() bool {
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return IsCustomBucketsSchema(h.Schema)
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}
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// Copy returns a deep copy of the Histogram.
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func (h *Histogram) Copy() *Histogram {
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c := Histogram{
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CounterResetHint: h.CounterResetHint,
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Schema: h.Schema,
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Count: h.Count,
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Sum: h.Sum,
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}
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if h.UsesCustomBuckets() {
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if len(h.CustomValues) != 0 {
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c.CustomValues = make([]float64, len(h.CustomValues))
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copy(c.CustomValues, h.CustomValues)
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}
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} else {
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c.ZeroThreshold = h.ZeroThreshold
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c.ZeroCount = h.ZeroCount
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if len(h.NegativeSpans) != 0 {
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c.NegativeSpans = make([]Span, len(h.NegativeSpans))
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copy(c.NegativeSpans, h.NegativeSpans)
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}
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if len(h.NegativeBuckets) != 0 {
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c.NegativeBuckets = make([]int64, len(h.NegativeBuckets))
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copy(c.NegativeBuckets, h.NegativeBuckets)
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}
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}
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if len(h.PositiveSpans) != 0 {
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c.PositiveSpans = make([]Span, len(h.PositiveSpans))
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copy(c.PositiveSpans, h.PositiveSpans)
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}
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if len(h.PositiveBuckets) != 0 {
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c.PositiveBuckets = make([]int64, len(h.PositiveBuckets))
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copy(c.PositiveBuckets, h.PositiveBuckets)
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}
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return &c
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}
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// CopyTo makes a deep copy into the given Histogram object.
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// The destination object has to be a non-nil pointer.
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func (h *Histogram) CopyTo(to *Histogram) {
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to.CounterResetHint = h.CounterResetHint
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to.Schema = h.Schema
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to.Count = h.Count
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to.Sum = h.Sum
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if h.UsesCustomBuckets() {
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to.ZeroThreshold = 0
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to.ZeroCount = 0
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to.NegativeSpans = clearIfNotNil(to.NegativeSpans)
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to.NegativeBuckets = clearIfNotNil(to.NegativeBuckets)
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to.CustomValues = resize(to.CustomValues, len(h.CustomValues))
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copy(to.CustomValues, h.CustomValues)
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} else {
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to.ZeroThreshold = h.ZeroThreshold
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to.ZeroCount = h.ZeroCount
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to.NegativeSpans = resize(to.NegativeSpans, len(h.NegativeSpans))
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copy(to.NegativeSpans, h.NegativeSpans)
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to.NegativeBuckets = resize(to.NegativeBuckets, len(h.NegativeBuckets))
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copy(to.NegativeBuckets, h.NegativeBuckets)
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to.CustomValues = clearIfNotNil(to.CustomValues)
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}
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to.PositiveSpans = resize(to.PositiveSpans, len(h.PositiveSpans))
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copy(to.PositiveSpans, h.PositiveSpans)
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to.PositiveBuckets = resize(to.PositiveBuckets, len(h.PositiveBuckets))
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copy(to.PositiveBuckets, h.PositiveBuckets)
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}
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// String returns a string representation of the Histogram.
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func (h *Histogram) String() string {
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var sb strings.Builder
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fmt.Fprintf(&sb, "{count:%d, sum:%g", h.Count, h.Sum)
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var nBuckets []Bucket[uint64]
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for it := h.NegativeBucketIterator(); it.Next(); {
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bucket := it.At()
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if bucket.Count != 0 {
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nBuckets = append(nBuckets, it.At())
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}
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}
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for i := len(nBuckets) - 1; i >= 0; i-- {
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fmt.Fprintf(&sb, ", %s", nBuckets[i].String())
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}
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if h.ZeroCount != 0 {
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fmt.Fprintf(&sb, ", %s", h.ZeroBucket().String())
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}
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for it := h.PositiveBucketIterator(); it.Next(); {
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bucket := it.At()
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if bucket.Count != 0 {
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fmt.Fprintf(&sb, ", %s", bucket.String())
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}
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}
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sb.WriteRune('}')
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return sb.String()
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}
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// ZeroBucket returns the zero bucket. This method panics if the schema is for custom buckets.
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func (h *Histogram) ZeroBucket() Bucket[uint64] {
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if h.UsesCustomBuckets() {
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panic("histograms with custom buckets have no zero bucket")
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}
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return Bucket[uint64]{
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Lower: -h.ZeroThreshold,
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Upper: h.ZeroThreshold,
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LowerInclusive: true,
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UpperInclusive: true,
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Count: h.ZeroCount,
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}
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}
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// PositiveBucketIterator returns a BucketIterator to iterate over all positive
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// buckets in ascending order (starting next to the zero bucket and going up).
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func (h *Histogram) PositiveBucketIterator() BucketIterator[uint64] {
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it := newRegularBucketIterator(h.PositiveSpans, h.PositiveBuckets, h.Schema, true, h.CustomValues)
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return &it
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}
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// NegativeBucketIterator returns a BucketIterator to iterate over all negative
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// buckets in descending order (starting next to the zero bucket and going down).
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func (h *Histogram) NegativeBucketIterator() BucketIterator[uint64] {
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it := newRegularBucketIterator(h.NegativeSpans, h.NegativeBuckets, h.Schema, false, nil)
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return &it
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}
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// CumulativeBucketIterator returns a BucketIterator to iterate over a
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// cumulative view of the buckets. This method currently only supports
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// Histograms without negative buckets and panics if the Histogram has negative
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// buckets. It is currently only used for testing.
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func (h *Histogram) CumulativeBucketIterator() BucketIterator[uint64] {
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if len(h.NegativeBuckets) > 0 {
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panic("CumulativeBucketIterator called on Histogram with negative buckets")
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}
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return &cumulativeBucketIterator{h: h, posSpansIdx: -1}
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}
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// Equals returns true if the given histogram matches exactly.
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// Exact match is when there are no new buckets (even empty) and no missing buckets,
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// and all the bucket values match. Spans can have different empty length spans in between,
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// but they must represent the same bucket layout to match.
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// Sum is compared based on its bit pattern because this method
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// is about data equality rather than mathematical equality.
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// We ignore fields that are not used based on the exponential / custom buckets schema,
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// but check fields where differences may cause unintended behaviour even if they are not
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// supposed to be used according to the schema.
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func (h *Histogram) Equals(h2 *Histogram) bool {
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if h2 == nil {
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return false
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}
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if h.Schema != h2.Schema || h.Count != h2.Count ||
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math.Float64bits(h.Sum) != math.Float64bits(h2.Sum) {
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return false
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}
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if h.UsesCustomBuckets() {
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if !FloatBucketsMatch(h.CustomValues, h2.CustomValues) {
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return false
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}
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}
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if h.ZeroThreshold != h2.ZeroThreshold || h.ZeroCount != h2.ZeroCount {
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return false
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}
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if !spansMatch(h.NegativeSpans, h2.NegativeSpans) {
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return false
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}
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if !slices.Equal(h.NegativeBuckets, h2.NegativeBuckets) {
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return false
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}
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if !spansMatch(h.PositiveSpans, h2.PositiveSpans) {
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return false
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}
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if !slices.Equal(h.PositiveBuckets, h2.PositiveBuckets) {
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return false
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}
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return true
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}
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// spansMatch returns true if both spans represent the same bucket layout
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// after combining zero length spans with the next non-zero length span.
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func spansMatch(s1, s2 []Span) bool {
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if len(s1) == 0 && len(s2) == 0 {
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return true
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}
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s1idx, s2idx := 0, 0
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for {
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if s1idx >= len(s1) {
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return allEmptySpans(s2[s2idx:])
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}
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if s2idx >= len(s2) {
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return allEmptySpans(s1[s1idx:])
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}
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currS1, currS2 := s1[s1idx], s2[s2idx]
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s1idx++
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s2idx++
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if currS1.Length == 0 {
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// This span is zero length, so we add consecutive such spans
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// until we find a non-zero span.
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for ; s1idx < len(s1) && s1[s1idx].Length == 0; s1idx++ {
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currS1.Offset += s1[s1idx].Offset
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}
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if s1idx < len(s1) {
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currS1.Offset += s1[s1idx].Offset
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currS1.Length = s1[s1idx].Length
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s1idx++
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}
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}
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if currS2.Length == 0 {
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// This span is zero length, so we add consecutive such spans
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// until we find a non-zero span.
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for ; s2idx < len(s2) && s2[s2idx].Length == 0; s2idx++ {
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currS2.Offset += s2[s2idx].Offset
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}
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if s2idx < len(s2) {
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currS2.Offset += s2[s2idx].Offset
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currS2.Length = s2[s2idx].Length
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s2idx++
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}
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}
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if currS1.Length == 0 && currS2.Length == 0 {
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// The last spans of both set are zero length. Previous spans match.
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return true
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}
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if currS1.Offset != currS2.Offset || currS1.Length != currS2.Length {
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return false
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}
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}
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}
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func allEmptySpans(s []Span) bool {
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for _, ss := range s {
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if ss.Length > 0 {
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return false
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}
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}
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return true
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}
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// Compact works like FloatHistogram.Compact. See there for detailed
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// explanations.
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func (h *Histogram) Compact(maxEmptyBuckets int) *Histogram {
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h.PositiveBuckets, h.PositiveSpans = compactBuckets(
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h.PositiveBuckets, h.PositiveSpans, maxEmptyBuckets, true,
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)
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h.NegativeBuckets, h.NegativeSpans = compactBuckets(
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h.NegativeBuckets, h.NegativeSpans, maxEmptyBuckets, true,
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)
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return h
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}
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// ToFloat returns a FloatHistogram representation of the Histogram. It is a deep
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// copy (e.g. spans are not shared). The function accepts a FloatHistogram as an
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// argument whose memory will be reused and overwritten if provided. If this
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// argument is nil, a new FloatHistogram will be allocated.
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func (h *Histogram) ToFloat(fh *FloatHistogram) *FloatHistogram {
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if fh == nil {
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fh = &FloatHistogram{}
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}
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fh.CounterResetHint = h.CounterResetHint
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fh.Schema = h.Schema
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fh.Count = float64(h.Count)
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fh.Sum = h.Sum
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if h.UsesCustomBuckets() {
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fh.ZeroThreshold = 0
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fh.ZeroCount = 0
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fh.NegativeSpans = clearIfNotNil(fh.NegativeSpans)
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fh.NegativeBuckets = clearIfNotNil(fh.NegativeBuckets)
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fh.CustomValues = resize(fh.CustomValues, len(h.CustomValues))
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copy(fh.CustomValues, h.CustomValues)
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} else {
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fh.ZeroThreshold = h.ZeroThreshold
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fh.ZeroCount = float64(h.ZeroCount)
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fh.NegativeSpans = resize(fh.NegativeSpans, len(h.NegativeSpans))
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copy(fh.NegativeSpans, h.NegativeSpans)
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fh.NegativeBuckets = resize(fh.NegativeBuckets, len(h.NegativeBuckets))
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var currentNegative float64
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for i, b := range h.NegativeBuckets {
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currentNegative += float64(b)
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fh.NegativeBuckets[i] = currentNegative
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}
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fh.CustomValues = clearIfNotNil(fh.CustomValues)
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}
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fh.PositiveSpans = resize(fh.PositiveSpans, len(h.PositiveSpans))
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copy(fh.PositiveSpans, h.PositiveSpans)
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fh.PositiveBuckets = resize(fh.PositiveBuckets, len(h.PositiveBuckets))
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var currentPositive float64
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for i, b := range h.PositiveBuckets {
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currentPositive += float64(b)
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fh.PositiveBuckets[i] = currentPositive
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}
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return fh
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}
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func resize[T any](items []T, n int) []T {
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if cap(items) < n {
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return make([]T, n)
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}
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return items[:n]
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}
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// Validate validates consistency between span and bucket slices. Also, buckets are checked
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// against negative values. We check to make sure there are no unexpected fields or field values
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// based on the exponential / custom buckets schema.
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// For histograms that have not observed any NaN values (based on IsNaN(h.Sum) check), a
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// strict h.Count = nCount + pCount + h.ZeroCount check is performed.
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// Otherwise, only a lower bound check will be done (h.Count >= nCount + pCount + h.ZeroCount),
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// because NaN observations do not increment the values of buckets (but they do increment
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// the total h.Count).
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func (h *Histogram) Validate() error {
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var nCount, pCount uint64
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if h.UsesCustomBuckets() {
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if err := checkHistogramCustomBounds(h.CustomValues, h.PositiveSpans, len(h.PositiveBuckets)); err != nil {
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return fmt.Errorf("custom buckets: %w", err)
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}
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if h.ZeroCount != 0 {
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return errors.New("custom buckets: must have zero count of 0")
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}
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if h.ZeroThreshold != 0 {
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return errors.New("custom buckets: must have zero threshold of 0")
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}
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if len(h.NegativeSpans) > 0 {
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return errors.New("custom buckets: must not have negative spans")
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}
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if len(h.NegativeBuckets) > 0 {
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return errors.New("custom buckets: must not have negative buckets")
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}
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} else {
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if err := checkHistogramSpans(h.PositiveSpans, len(h.PositiveBuckets)); err != nil {
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return fmt.Errorf("positive side: %w", err)
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}
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if err := checkHistogramSpans(h.NegativeSpans, len(h.NegativeBuckets)); err != nil {
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return fmt.Errorf("negative side: %w", err)
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}
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err := checkHistogramBuckets(h.NegativeBuckets, &nCount, true)
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if err != nil {
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return fmt.Errorf("negative side: %w", err)
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}
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if h.CustomValues != nil {
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return errors.New("histogram with exponential schema must not have custom bounds")
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}
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}
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err := checkHistogramBuckets(h.PositiveBuckets, &pCount, true)
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if err != nil {
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return fmt.Errorf("positive side: %w", err)
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}
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sumOfBuckets := nCount + pCount + h.ZeroCount
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if math.IsNaN(h.Sum) {
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if sumOfBuckets > h.Count {
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return fmt.Errorf("%d observations found in buckets, but the Count field is %d: %w", sumOfBuckets, h.Count, ErrHistogramCountNotBigEnough)
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}
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} else {
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if sumOfBuckets != h.Count {
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return fmt.Errorf("%d observations found in buckets, but the Count field is %d: %w", sumOfBuckets, h.Count, ErrHistogramCountMismatch)
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}
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}
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return nil
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}
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type regularBucketIterator struct {
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baseBucketIterator[uint64, int64]
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}
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func newRegularBucketIterator(spans []Span, buckets []int64, schema int32, positive bool, customValues []float64) regularBucketIterator {
|
|
i := baseBucketIterator[uint64, int64]{
|
|
schema: schema,
|
|
spans: spans,
|
|
buckets: buckets,
|
|
positive: positive,
|
|
customValues: customValues,
|
|
}
|
|
return regularBucketIterator{i}
|
|
}
|
|
|
|
func (r *regularBucketIterator) Next() bool {
|
|
if r.spansIdx >= len(r.spans) {
|
|
return false
|
|
}
|
|
span := r.spans[r.spansIdx]
|
|
// Seed currIdx for the first bucket.
|
|
if r.bucketsIdx == 0 {
|
|
r.currIdx = span.Offset
|
|
} else {
|
|
r.currIdx++
|
|
}
|
|
for r.idxInSpan >= span.Length {
|
|
// We have exhausted the current span and have to find a new
|
|
// one. We'll even handle pathologic spans of length 0.
|
|
r.idxInSpan = 0
|
|
r.spansIdx++
|
|
if r.spansIdx >= len(r.spans) {
|
|
return false
|
|
}
|
|
span = r.spans[r.spansIdx]
|
|
r.currIdx += span.Offset
|
|
}
|
|
|
|
r.currCount += r.buckets[r.bucketsIdx]
|
|
r.idxInSpan++
|
|
r.bucketsIdx++
|
|
return true
|
|
}
|
|
|
|
type cumulativeBucketIterator struct {
|
|
h *Histogram
|
|
|
|
posSpansIdx int // Index in h.PositiveSpans we are in. -1 means 0 bucket.
|
|
posBucketsIdx int // Index in h.PositiveBuckets.
|
|
idxInSpan uint32 // Index in the current span. 0 <= idxInSpan < span.Length.
|
|
|
|
initialized bool
|
|
currIdx int32 // The actual bucket index after decoding from spans.
|
|
currUpper float64 // The upper boundary of the current bucket.
|
|
currCount int64 // Current non-cumulative count for the current bucket. Does not apply for empty bucket.
|
|
currCumulativeCount uint64 // Current "cumulative" count for the current bucket.
|
|
|
|
// Between 2 spans there could be some empty buckets which
|
|
// still needs to be counted for cumulative buckets.
|
|
// When we hit the end of a span, we use this to iterate
|
|
// through the empty buckets.
|
|
emptyBucketCount int32
|
|
}
|
|
|
|
func (c *cumulativeBucketIterator) Next() bool {
|
|
if c.posSpansIdx == -1 {
|
|
// Zero bucket.
|
|
c.posSpansIdx++
|
|
if c.h.ZeroCount == 0 {
|
|
return c.Next()
|
|
}
|
|
|
|
c.currUpper = c.h.ZeroThreshold
|
|
c.currCount = int64(c.h.ZeroCount)
|
|
c.currCumulativeCount = uint64(c.currCount)
|
|
return true
|
|
}
|
|
|
|
if c.posSpansIdx >= len(c.h.PositiveSpans) {
|
|
return false
|
|
}
|
|
|
|
if c.emptyBucketCount > 0 {
|
|
// We are traversing through empty buckets at the moment.
|
|
c.currUpper = getBound(c.currIdx, c.h.Schema, c.h.CustomValues)
|
|
c.currIdx++
|
|
c.emptyBucketCount--
|
|
return true
|
|
}
|
|
|
|
span := c.h.PositiveSpans[c.posSpansIdx]
|
|
if c.posSpansIdx == 0 && !c.initialized {
|
|
// Initializing.
|
|
c.currIdx = span.Offset
|
|
// The first bucket is an absolute value and not a delta with Zero bucket.
|
|
c.currCount = 0
|
|
c.initialized = true
|
|
}
|
|
|
|
c.currCount += c.h.PositiveBuckets[c.posBucketsIdx]
|
|
c.currCumulativeCount += uint64(c.currCount)
|
|
c.currUpper = getBound(c.currIdx, c.h.Schema, c.h.CustomValues)
|
|
|
|
c.posBucketsIdx++
|
|
c.idxInSpan++
|
|
c.currIdx++
|
|
if c.idxInSpan >= span.Length {
|
|
// Move to the next span. This one is done.
|
|
c.posSpansIdx++
|
|
c.idxInSpan = 0
|
|
if c.posSpansIdx < len(c.h.PositiveSpans) {
|
|
c.emptyBucketCount = c.h.PositiveSpans[c.posSpansIdx].Offset
|
|
}
|
|
}
|
|
|
|
return true
|
|
}
|
|
|
|
func (c *cumulativeBucketIterator) At() Bucket[uint64] {
|
|
return Bucket[uint64]{
|
|
Upper: c.currUpper,
|
|
Lower: math.Inf(-1),
|
|
UpperInclusive: true,
|
|
LowerInclusive: true,
|
|
Count: c.currCumulativeCount,
|
|
Index: c.currIdx - 1,
|
|
}
|
|
}
|
|
|
|
// ReduceResolution reduces the histogram's spans, buckets into target schema.
|
|
// The target schema must be smaller than the current histogram's schema.
|
|
// This will panic if the histogram has custom buckets or if the target schema is
|
|
// a custom buckets schema.
|
|
func (h *Histogram) ReduceResolution(targetSchema int32) *Histogram {
|
|
if h.UsesCustomBuckets() {
|
|
panic("cannot reduce resolution when there are custom buckets")
|
|
}
|
|
if IsCustomBucketsSchema(targetSchema) {
|
|
panic("cannot reduce resolution to custom buckets schema")
|
|
}
|
|
if targetSchema >= h.Schema {
|
|
panic(fmt.Errorf("cannot reduce resolution from schema %d to %d", h.Schema, targetSchema))
|
|
}
|
|
|
|
h.PositiveSpans, h.PositiveBuckets = reduceResolution(
|
|
h.PositiveSpans, h.PositiveBuckets, h.Schema, targetSchema, true, true,
|
|
)
|
|
h.NegativeSpans, h.NegativeBuckets = reduceResolution(
|
|
h.NegativeSpans, h.NegativeBuckets, h.Schema, targetSchema, true, true,
|
|
)
|
|
h.Schema = targetSchema
|
|
return h
|
|
}
|