mirror of
https://github.com/VictoriaMetrics/VictoriaMetrics.git
synced 2024-12-15 16:30:55 +01:00
260 lines
4.3 KiB
Go
260 lines
4.3 KiB
Go
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package graphite
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import (
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"fmt"
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"math"
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"strings"
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"sync"
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"github.com/valyala/histogram"
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)
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var aggrFuncs = map[string]aggrFunc{
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"average": aggrAvg,
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"avg": aggrAvg,
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"avg_zero": aggrAvgZero,
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"median": aggrMedian,
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"sum": aggrSum,
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"total": aggrSum,
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"min": aggrMin,
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"max": aggrMax,
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"diff": aggrDiff,
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"pow": aggrPow,
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"stddev": aggrStddev,
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"count": aggrCount,
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"range": aggrRange,
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"rangeOf": aggrRange,
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"multiply": aggrMultiply,
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"first": aggrFirst,
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"last": aggrLast,
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"current": aggrLast,
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}
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func getAggrFunc(funcName string) (aggrFunc, error) {
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s := strings.TrimSuffix(funcName, "Series")
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aggrFunc := aggrFuncs[s]
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if aggrFunc == nil {
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return nil, fmt.Errorf("unsupported aggregate function %q", funcName)
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}
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return aggrFunc, nil
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}
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type aggrFunc func(values []float64) float64
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func (af aggrFunc) apply(xFilesFactor float64, values []float64) float64 {
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if aggrCount(values) >= float64(len(values))*xFilesFactor {
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return af(values)
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}
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return nan
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}
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func aggrAvg(values []float64) float64 {
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pos := getFirstNonNaNPos(values)
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if pos < 0 {
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return nan
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}
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sum := values[pos]
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count := 1
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for _, v := range values[pos+1:] {
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if !math.IsNaN(v) {
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sum += v
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count++
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}
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}
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return sum / float64(count)
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}
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func aggrAvgZero(values []float64) float64 {
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if len(values) == 0 {
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return nan
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}
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sum := float64(0)
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for _, v := range values {
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if !math.IsNaN(v) {
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sum += v
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}
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}
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return sum / float64(len(values))
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}
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var aggrMedian = newAggrFuncPercentile(50)
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func aggrSum(values []float64) float64 {
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pos := getFirstNonNaNPos(values)
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if pos < 0 {
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return nan
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}
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sum := values[pos]
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for _, v := range values[pos+1:] {
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if !math.IsNaN(v) {
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sum += v
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}
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}
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return sum
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}
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func aggrMin(values []float64) float64 {
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pos := getFirstNonNaNPos(values)
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if pos < 0 {
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return nan
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}
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min := values[pos]
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for _, v := range values[pos+1:] {
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if !math.IsNaN(v) && v < min {
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min = v
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}
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}
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return min
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}
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func aggrMax(values []float64) float64 {
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pos := getFirstNonNaNPos(values)
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if pos < 0 {
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return nan
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}
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max := values[pos]
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for _, v := range values[pos+1:] {
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if !math.IsNaN(v) && v > max {
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max = v
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}
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}
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return max
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}
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func aggrDiff(values []float64) float64 {
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pos := getFirstNonNaNPos(values)
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if pos < 0 {
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return nan
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}
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sum := float64(0)
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for _, v := range values[pos+1:] {
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if !math.IsNaN(v) {
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sum += v
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}
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}
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return values[pos] - sum
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}
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func aggrPow(values []float64) float64 {
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pos := getFirstNonNaNPos(values)
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if pos < 0 {
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return nan
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}
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pow := values[pos]
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for _, v := range values[pos+1:] {
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if !math.IsNaN(v) {
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pow = math.Pow(pow, v)
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}
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}
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return pow
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}
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func aggrStddev(values []float64) float64 {
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avg := aggrAvg(values)
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if math.IsNaN(avg) {
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return nan
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}
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sum := float64(0)
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count := 0
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for _, v := range values {
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if !math.IsNaN(v) {
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d := avg - v
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sum += d * d
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count++
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}
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}
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return math.Sqrt(sum / float64(count))
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}
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func aggrCount(values []float64) float64 {
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count := 0
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for _, v := range values {
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if !math.IsNaN(v) {
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count++
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}
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}
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return float64(count)
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}
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func aggrRange(values []float64) float64 {
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min := aggrMin(values)
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if math.IsNaN(min) {
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return nan
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}
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max := aggrMax(values)
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return max - min
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}
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func aggrMultiply(values []float64) float64 {
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pos := getFirstNonNaNPos(values)
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if pos < 0 {
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return nan
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}
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p := values[pos]
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for _, v := range values[pos+1:] {
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if !math.IsNaN(v) {
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p *= v
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}
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}
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return p
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}
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func aggrFirst(values []float64) float64 {
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pos := getFirstNonNaNPos(values)
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if pos < 0 {
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return nan
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}
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return values[pos]
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}
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func aggrLast(values []float64) float64 {
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for i := len(values) - 1; i >= 0; i-- {
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v := values[i]
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if !math.IsNaN(v) {
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return v
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}
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}
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return nan
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}
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func getFirstNonNaNPos(values []float64) int {
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for i, v := range values {
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if !math.IsNaN(v) {
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return i
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}
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}
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return -1
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}
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var nan = math.NaN()
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func newAggrFuncPercentile(n float64) aggrFunc {
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f := func(values []float64) float64 {
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h := getHistogram()
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for _, v := range values {
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if !math.IsNaN(v) {
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h.Update(v)
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}
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}
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p := h.Quantile(n / 100)
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putHistogram(h)
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return p
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}
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return f
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}
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func getHistogram() *histogram.Fast {
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return histogramPool.Get().(*histogram.Fast)
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}
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func putHistogram(h *histogram.Fast) {
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h.Reset()
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histogramPool.Put(h)
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}
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var histogramPool = &sync.Pool{
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New: func() interface{} {
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return histogram.NewFast()
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},
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}
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