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// Copyright 2023 The Prometheus 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 main
import (
"context"
"errors"
"fmt"
"io"
"math"
"net/http"
"net/url"
"os"
"sort"
"strconv"
"strings"
"time"
v1 "github.com/prometheus/client_golang/api/prometheus/v1"
"github.com/prometheus/common/model"
"github.com/prometheus/prometheus/model/labels"
)
var (
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errNotNativeHistogram = errors . New ( "not a native histogram" )
errNotEnoughData = errors . New ( "not enough data" )
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outputHeader = ` Bucket stats for each histogram series over time
-- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- -- --
First the min , avg , and max number of populated buckets , followed by the total
number of buckets ( only if different from the max number of populated buckets
which is typical for classic but not native histograms ) . `
outputFooter = ` Aggregated bucket stats
-- -- -- -- -- -- -- -- -- -- -- -
Each line shows min / avg / max over the series above . `
)
type QueryAnalyzeConfig struct {
metricType string
duration time . Duration
time string
matchers [ ] string
}
// run retrieves metrics that look like conventional histograms (i.e. have _bucket
// suffixes) or native histograms, depending on metricType flag.
func ( c * QueryAnalyzeConfig ) run ( url * url . URL , roundtripper http . RoundTripper ) error {
if c . metricType != "histogram" {
return fmt . Errorf ( "analyze type is %s, must be 'histogram'" , c . metricType )
}
ctx := context . Background ( )
api , err := newAPI ( url , roundtripper , nil )
if err != nil {
return err
}
var endTime time . Time
if c . time != "" {
endTime , err = parseTime ( c . time )
if err != nil {
return fmt . Errorf ( "error parsing time '%s': %w" , c . time , err )
}
} else {
endTime = time . Now ( )
}
return c . getStatsFromMetrics ( ctx , api , endTime , os . Stdout , c . matchers )
}
func ( c * QueryAnalyzeConfig ) getStatsFromMetrics ( ctx context . Context , api v1 . API , endTime time . Time , out io . Writer , matchers [ ] string ) error {
fmt . Fprintf ( out , "%s\n\n" , outputHeader )
metastatsNative := newMetaStatistics ( )
metastatsClassic := newMetaStatistics ( )
for _ , matcher := range matchers {
seriesSel := seriesSelector ( matcher , c . duration )
matrix , err := querySamples ( ctx , api , seriesSel , endTime )
if err != nil {
return err
}
matrices := make ( map [ string ] model . Matrix )
for _ , series := range matrix {
// We do not handle mixed types. If there are float values, we assume it is a
// classic histogram, otherwise we assume it is a native histogram, and we
// ignore series with errors if they do not match the expected type.
if len ( series . Values ) == 0 {
stats , err := calcNativeBucketStatistics ( series )
if err != nil {
if errors . Is ( err , errNotNativeHistogram ) || errors . Is ( err , errNotEnoughData ) {
continue
}
return err
}
fmt . Fprintf ( out , "- %s (native): %v\n" , series . Metric , * stats )
metastatsNative . update ( stats )
} else {
lbs := model . LabelSet ( series . Metric ) . Clone ( )
if _ , ok := lbs [ "le" ] ; ! ok {
continue
}
metricName := string ( lbs [ labels . MetricName ] )
if ! strings . HasSuffix ( metricName , "_bucket" ) {
continue
}
delete ( lbs , labels . MetricName )
delete ( lbs , "le" )
key := formatSeriesName ( metricName , lbs )
matrices [ key ] = append ( matrices [ key ] , series )
}
}
for key , matrix := range matrices {
stats , err := calcClassicBucketStatistics ( matrix )
if err != nil {
if errors . Is ( err , errNotEnoughData ) {
continue
}
return err
}
fmt . Fprintf ( out , "- %s (classic): %v\n" , key , * stats )
metastatsClassic . update ( stats )
}
}
fmt . Fprintf ( out , "\n%s\n" , outputFooter )
if metastatsNative . Count ( ) > 0 {
fmt . Fprintf ( out , "\nNative %s\n" , metastatsNative )
}
if metastatsClassic . Count ( ) > 0 {
fmt . Fprintf ( out , "\nClassic %s\n" , metastatsClassic )
}
return nil
}
func seriesSelector ( metricName string , duration time . Duration ) string {
builder := strings . Builder { }
builder . WriteString ( metricName )
builder . WriteRune ( '[' )
builder . WriteString ( duration . String ( ) )
builder . WriteRune ( ']' )
return builder . String ( )
}
func formatSeriesName ( metricName string , lbs model . LabelSet ) string {
builder := strings . Builder { }
builder . WriteString ( metricName )
builder . WriteString ( lbs . String ( ) )
return builder . String ( )
}
func querySamples ( ctx context . Context , api v1 . API , query string , end time . Time ) ( model . Matrix , error ) {
values , _ , err := api . Query ( ctx , query , end )
if err != nil {
return nil , err
}
matrix , ok := values . ( model . Matrix )
if ! ok {
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return nil , errors . New ( "query of buckets resulted in non-Matrix" )
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}
return matrix , nil
}
// minPop/avgPop/maxPop is for the number of populated (non-zero) buckets.
// total is the total number of buckets across all samples in the series,
// populated or not.
type statistics struct {
minPop , maxPop , total int
avgPop float64
}
func ( s statistics ) String ( ) string {
if s . maxPop == s . total {
return fmt . Sprintf ( "%d/%.3f/%d" , s . minPop , s . avgPop , s . maxPop )
}
return fmt . Sprintf ( "%d/%.3f/%d/%d" , s . minPop , s . avgPop , s . maxPop , s . total )
}
func calcClassicBucketStatistics ( matrix model . Matrix ) ( * statistics , error ) {
numBuckets := len ( matrix )
stats := & statistics {
minPop : math . MaxInt ,
total : numBuckets ,
}
if numBuckets == 0 || len ( matrix [ 0 ] . Values ) < 2 {
return stats , errNotEnoughData
}
numSamples := len ( matrix [ 0 ] . Values )
sortMatrix ( matrix )
totalPop := 0
for timeIdx := 0 ; timeIdx < numSamples ; timeIdx ++ {
curr , err := getBucketCountsAtTime ( matrix , numBuckets , timeIdx )
if err != nil {
return stats , err
}
countPop := 0
for _ , b := range curr {
if b != 0 {
countPop ++
}
}
totalPop += countPop
if stats . minPop > countPop {
stats . minPop = countPop
}
if stats . maxPop < countPop {
stats . maxPop = countPop
}
}
stats . avgPop = float64 ( totalPop ) / float64 ( numSamples )
return stats , nil
}
func sortMatrix ( matrix model . Matrix ) {
sort . SliceStable ( matrix , func ( i , j int ) bool {
return getLe ( matrix [ i ] ) < getLe ( matrix [ j ] )
} )
}
func getLe ( series * model . SampleStream ) float64 {
lbs := model . LabelSet ( series . Metric )
le , _ := strconv . ParseFloat ( string ( lbs [ "le" ] ) , 64 )
return le
}
func getBucketCountsAtTime ( matrix model . Matrix , numBuckets , timeIdx int ) ( [ ] int , error ) {
counts := make ( [ ] int , numBuckets )
if timeIdx >= len ( matrix [ 0 ] . Values ) {
// Just return zeroes instead of erroring out so we can get partial results.
return counts , nil
}
counts [ 0 ] = int ( matrix [ 0 ] . Values [ timeIdx ] . Value )
for i , bucket := range matrix [ 1 : ] {
if timeIdx >= len ( bucket . Values ) {
// Just return zeroes instead of erroring out so we can get partial results.
return counts , nil
}
curr := bucket . Values [ timeIdx ]
prev := matrix [ i ] . Values [ timeIdx ]
// Assume the results are nicely aligned.
if curr . Timestamp != prev . Timestamp {
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return counts , errors . New ( "matrix result is not time aligned" )
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}
counts [ i + 1 ] = int ( curr . Value - prev . Value )
}
return counts , nil
}
type bucketBounds struct {
boundaries int32
upper , lower float64
}
func makeBucketBounds ( b * model . HistogramBucket ) bucketBounds {
return bucketBounds {
boundaries : b . Boundaries ,
upper : float64 ( b . Upper ) ,
lower : float64 ( b . Lower ) ,
}
}
func calcNativeBucketStatistics ( series * model . SampleStream ) ( * statistics , error ) {
stats := & statistics {
minPop : math . MaxInt ,
}
overall := make ( map [ bucketBounds ] struct { } )
totalPop := 0
if len ( series . Histograms ) == 0 {
return nil , errNotNativeHistogram
}
if len ( series . Histograms ) == 1 {
return nil , errNotEnoughData
}
for _ , histogram := range series . Histograms {
for _ , bucket := range histogram . Histogram . Buckets {
bb := makeBucketBounds ( bucket )
overall [ bb ] = struct { } { }
}
countPop := len ( histogram . Histogram . Buckets )
totalPop += countPop
if stats . minPop > countPop {
stats . minPop = countPop
}
if stats . maxPop < countPop {
stats . maxPop = countPop
}
}
stats . avgPop = float64 ( totalPop ) / float64 ( len ( series . Histograms ) )
stats . total = len ( overall )
return stats , nil
}
type distribution struct {
min , max , count int
avg float64
}
func newDistribution ( ) distribution {
return distribution {
min : math . MaxInt ,
}
}
func ( d * distribution ) update ( num int ) {
if d . min > num {
d . min = num
}
if d . max < num {
d . max = num
}
d . count ++
d . avg += float64 ( num ) / float64 ( d . count ) - d . avg / float64 ( d . count )
}
func ( d distribution ) String ( ) string {
return fmt . Sprintf ( "%d/%.3f/%d" , d . min , d . avg , d . max )
}
type metaStatistics struct {
minPop , avgPop , maxPop , total distribution
}
func newMetaStatistics ( ) * metaStatistics {
return & metaStatistics {
minPop : newDistribution ( ) ,
avgPop : newDistribution ( ) ,
maxPop : newDistribution ( ) ,
total : newDistribution ( ) ,
}
}
func ( ms metaStatistics ) Count ( ) int {
return ms . minPop . count
}
func ( ms metaStatistics ) String ( ) string {
if ms . maxPop == ms . total {
return fmt . Sprintf ( "histogram series (%d in total):\n- min populated: %v\n- avg populated: %v\n- max populated: %v" , ms . Count ( ) , ms . minPop , ms . avgPop , ms . maxPop )
}
return fmt . Sprintf ( "histogram series (%d in total):\n- min populated: %v\n- avg populated: %v\n- max populated: %v\n- total: %v" , ms . Count ( ) , ms . minPop , ms . avgPop , ms . maxPop , ms . total )
}
func ( ms * metaStatistics ) update ( s * statistics ) {
ms . minPop . update ( s . minPop )
ms . avgPop . update ( int ( s . avgPop ) )
ms . maxPop . update ( s . maxPop )
ms . total . update ( s . total )
}