mirror of
https://github.com/VictoriaMetrics/VictoriaMetrics.git
synced 2024-12-29 23:30:04 +01:00
918 lines
21 KiB
Go
918 lines
21 KiB
Go
package promql
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import (
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"fmt"
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"math"
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"sort"
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"strconv"
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"strings"
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"github.com/VictoriaMetrics/VictoriaMetrics/lib/logger"
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"github.com/VictoriaMetrics/VictoriaMetrics/lib/storage"
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"github.com/VictoriaMetrics/metrics"
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"github.com/VictoriaMetrics/metricsql"
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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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// See https://prometheus.io/docs/prometheus/latest/querying/operators/#aggregation-operators
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"sum": newAggrFunc(aggrFuncSum),
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"min": newAggrFunc(aggrFuncMin),
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"max": newAggrFunc(aggrFuncMax),
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"avg": newAggrFunc(aggrFuncAvg),
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"stddev": newAggrFunc(aggrFuncStddev),
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"stdvar": newAggrFunc(aggrFuncStdvar),
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"count": newAggrFunc(aggrFuncCount),
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"count_values": aggrFuncCountValues,
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"bottomk": newAggrFuncTopK(true),
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"topk": newAggrFuncTopK(false),
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"quantile": aggrFuncQuantile,
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"group": newAggrFunc(aggrFuncGroup),
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// PromQL extension funcs
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"median": aggrFuncMedian,
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"limitk": aggrFuncLimitK,
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"distinct": newAggrFunc(aggrFuncDistinct),
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"sum2": newAggrFunc(aggrFuncSum2),
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"geomean": newAggrFunc(aggrFuncGeomean),
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"histogram": newAggrFunc(aggrFuncHistogram),
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"topk_min": newAggrFuncRangeTopK(minValue, false),
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"topk_max": newAggrFuncRangeTopK(maxValue, false),
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"topk_avg": newAggrFuncRangeTopK(avgValue, false),
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"topk_median": newAggrFuncRangeTopK(medianValue, false),
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"bottomk_min": newAggrFuncRangeTopK(minValue, true),
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"bottomk_max": newAggrFuncRangeTopK(maxValue, true),
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"bottomk_avg": newAggrFuncRangeTopK(avgValue, true),
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"bottomk_median": newAggrFuncRangeTopK(medianValue, true),
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"any": aggrFuncAny,
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"outliersk": aggrFuncOutliersK,
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"mode": newAggrFunc(aggrFuncMode),
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"zscore": aggrFuncZScore,
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}
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type aggrFunc func(afa *aggrFuncArg) ([]*timeseries, error)
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type aggrFuncArg struct {
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args [][]*timeseries
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ae *metricsql.AggrFuncExpr
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ec *EvalConfig
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}
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func getAggrFunc(s string) aggrFunc {
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s = strings.ToLower(s)
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return aggrFuncs[s]
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}
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func newAggrFunc(afe func(tss []*timeseries) []*timeseries) aggrFunc {
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return func(afa *aggrFuncArg) ([]*timeseries, error) {
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tss, err := getAggrTimeseries(afa.args)
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if err != nil {
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return nil, err
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}
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return aggrFuncExt(func(tss []*timeseries, modififer *metricsql.ModifierExpr) []*timeseries {
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return afe(tss)
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}, tss, &afa.ae.Modifier, afa.ae.Limit, false)
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}
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}
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func getAggrTimeseries(args [][]*timeseries) ([]*timeseries, error) {
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if len(args) == 0 {
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return nil, fmt.Errorf("expecting at least one arg")
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}
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tss := args[0]
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for _, arg := range args[1:] {
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tss = append(tss, arg...)
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}
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return tss, nil
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}
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func removeGroupTags(metricName *storage.MetricName, modifier *metricsql.ModifierExpr) {
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groupOp := strings.ToLower(modifier.Op)
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switch groupOp {
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case "", "by":
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metricName.RemoveTagsOn(modifier.Args)
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case "without":
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metricName.RemoveTagsIgnoring(modifier.Args)
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// Reset metric group as Prometheus does on `aggr(...) without (...)` call.
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metricName.ResetMetricGroup()
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default:
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logger.Panicf("BUG: unknown group modifier: %q", groupOp)
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}
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}
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func aggrFuncExt(afe func(tss []*timeseries, modifier *metricsql.ModifierExpr) []*timeseries, argOrig []*timeseries,
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modifier *metricsql.ModifierExpr, maxSeries int, keepOriginal bool) ([]*timeseries, error) {
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arg := copyTimeseriesMetricNames(argOrig, keepOriginal)
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// Perform grouping.
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m := make(map[string][]*timeseries)
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bb := bbPool.Get()
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for i, ts := range arg {
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removeGroupTags(&ts.MetricName, modifier)
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bb.B = marshalMetricNameSorted(bb.B[:0], &ts.MetricName)
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if keepOriginal {
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ts = argOrig[i]
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}
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tss := m[string(bb.B)]
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if tss == nil && maxSeries > 0 && len(m) >= maxSeries {
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// We already reached time series limit after grouping. Skip other time series.
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continue
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}
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tss = append(tss, ts)
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m[string(bb.B)] = tss
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}
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bbPool.Put(bb)
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srcTssCount := 0
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dstTssCount := 0
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rvs := make([]*timeseries, 0, len(m))
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for _, tss := range m {
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rv := afe(tss, modifier)
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rvs = append(rvs, rv...)
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srcTssCount += len(tss)
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dstTssCount += len(rv)
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if dstTssCount > 2000 && dstTssCount > 16*srcTssCount {
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// This looks like count_values explosion.
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return nil, fmt.Errorf(`too many timeseries after aggragation; got %d; want less than %d`, dstTssCount, 16*srcTssCount)
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}
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}
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return rvs, nil
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}
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func aggrFuncAny(afa *aggrFuncArg) ([]*timeseries, error) {
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tss, err := getAggrTimeseries(afa.args)
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if err != nil {
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return nil, err
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}
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afe := func(tss []*timeseries, modifier *metricsql.ModifierExpr) []*timeseries {
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return tss[:1]
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}
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limit := afa.ae.Limit
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if limit > 1 {
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// Only a single time series per group must be returned
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limit = 1
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}
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return aggrFuncExt(afe, tss, &afa.ae.Modifier, limit, true)
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}
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func aggrFuncGroup(tss []*timeseries) []*timeseries {
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// See https://github.com/prometheus/prometheus/commit/72425d4e3d14d209cc3f3f6e10e3240411303399
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dst := tss[0]
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for i := range dst.Values {
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v := nan
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for _, ts := range tss {
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if math.IsNaN(ts.Values[i]) {
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continue
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}
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v = 1
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}
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dst.Values[i] = v
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}
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return tss[:1]
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}
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func aggrFuncSum(tss []*timeseries) []*timeseries {
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if len(tss) == 1 {
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// Fast path - nothing to sum.
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return tss
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}
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dst := tss[0]
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for i := range dst.Values {
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sum := float64(0)
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count := 0
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for _, ts := range tss {
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v := ts.Values[i]
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if math.IsNaN(v) {
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continue
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}
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sum += v
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count++
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}
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if count == 0 {
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sum = nan
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}
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dst.Values[i] = sum
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}
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return tss[:1]
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}
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func aggrFuncSum2(tss []*timeseries) []*timeseries {
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dst := tss[0]
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for i := range dst.Values {
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sum2 := float64(0)
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count := 0
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for _, ts := range tss {
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v := ts.Values[i]
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if math.IsNaN(v) {
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continue
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}
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sum2 += v * v
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count++
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}
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if count == 0 {
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sum2 = nan
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}
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dst.Values[i] = sum2
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}
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return tss[:1]
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}
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func aggrFuncGeomean(tss []*timeseries) []*timeseries {
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if len(tss) == 1 {
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// Fast path - nothing to geomean.
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return tss
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}
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dst := tss[0]
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for i := range dst.Values {
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p := 1.0
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count := 0
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for _, ts := range tss {
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v := ts.Values[i]
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if math.IsNaN(v) {
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continue
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}
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p *= v
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count++
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}
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if count == 0 {
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p = nan
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}
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dst.Values[i] = math.Pow(p, 1/float64(count))
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}
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return tss[:1]
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}
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func aggrFuncHistogram(tss []*timeseries) []*timeseries {
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var h metrics.Histogram
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m := make(map[string]*timeseries)
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for i := range tss[0].Values {
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h.Reset()
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for _, ts := range tss {
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v := ts.Values[i]
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h.Update(v)
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}
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h.VisitNonZeroBuckets(func(vmrange string, count uint64) {
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ts := m[vmrange]
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if ts == nil {
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ts = ×eries{}
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ts.CopyFromShallowTimestamps(tss[0])
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ts.MetricName.RemoveTag("vmrange")
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ts.MetricName.AddTag("vmrange", vmrange)
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values := ts.Values
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for k := range values {
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values[k] = 0
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}
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m[vmrange] = ts
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}
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ts.Values[i] = float64(count)
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})
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}
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rvs := make([]*timeseries, 0, len(m))
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for _, ts := range m {
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rvs = append(rvs, ts)
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}
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return vmrangeBucketsToLE(rvs)
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}
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func aggrFuncMin(tss []*timeseries) []*timeseries {
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if len(tss) == 1 {
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// Fast path - nothing to min.
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return tss
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}
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dst := tss[0]
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for i := range dst.Values {
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min := dst.Values[i]
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for _, ts := range tss {
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if math.IsNaN(min) || ts.Values[i] < min {
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min = ts.Values[i]
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}
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}
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dst.Values[i] = min
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}
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return tss[:1]
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}
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func aggrFuncMax(tss []*timeseries) []*timeseries {
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if len(tss) == 1 {
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// Fast path - nothing to max.
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return tss
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}
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dst := tss[0]
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for i := range dst.Values {
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max := dst.Values[i]
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for _, ts := range tss {
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if math.IsNaN(max) || ts.Values[i] > max {
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max = ts.Values[i]
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}
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}
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dst.Values[i] = max
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}
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return tss[:1]
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}
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func aggrFuncAvg(tss []*timeseries) []*timeseries {
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if len(tss) == 1 {
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// Fast path - nothing to avg.
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return tss
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}
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dst := tss[0]
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for i := range dst.Values {
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// Do not use `Rapid calculation methods` at https://en.wikipedia.org/wiki/Standard_deviation,
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// since it is slower and has no obvious benefits in increased precision.
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var sum float64
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count := 0
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for _, ts := range tss {
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v := ts.Values[i]
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if math.IsNaN(v) {
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continue
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}
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count++
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sum += v
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}
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avg := nan
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if count > 0 {
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avg = sum / float64(count)
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}
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dst.Values[i] = avg
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}
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return tss[:1]
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}
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func aggrFuncStddev(tss []*timeseries) []*timeseries {
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if len(tss) == 1 {
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// Fast path - stddev over a single time series is zero
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values := tss[0].Values
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for i, v := range values {
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if !math.IsNaN(v) {
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values[i] = 0
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}
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}
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return tss
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}
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rvs := aggrFuncStdvar(tss)
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dst := rvs[0]
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for i, v := range dst.Values {
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dst.Values[i] = math.Sqrt(v)
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}
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return rvs
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}
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func aggrFuncStdvar(tss []*timeseries) []*timeseries {
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if len(tss) == 1 {
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// Fast path - stdvar over a single time series is zero
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values := tss[0].Values
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for i, v := range values {
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if !math.IsNaN(v) {
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values[i] = 0
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}
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}
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return tss
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}
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dst := tss[0]
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for i := range dst.Values {
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// See `Rapid calculation methods` at https://en.wikipedia.org/wiki/Standard_deviation
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var avg, count, q float64
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for _, ts := range tss {
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v := ts.Values[i]
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if math.IsNaN(v) {
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continue
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}
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count++
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avgNew := avg + (v-avg)/count
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q += (v - avg) * (v - avgNew)
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avg = avgNew
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}
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if count == 0 {
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q = nan
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}
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dst.Values[i] = q / count
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}
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return tss[:1]
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}
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func aggrFuncCount(tss []*timeseries) []*timeseries {
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dst := tss[0]
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for i := range dst.Values {
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count := 0
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for _, ts := range tss {
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if math.IsNaN(ts.Values[i]) {
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continue
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}
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count++
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}
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v := float64(count)
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if count == 0 {
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v = nan
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}
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dst.Values[i] = v
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}
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return tss[:1]
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}
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func aggrFuncDistinct(tss []*timeseries) []*timeseries {
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dst := tss[0]
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m := make(map[float64]struct{}, len(tss))
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for i := range dst.Values {
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for _, ts := range tss {
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v := ts.Values[i]
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if math.IsNaN(v) {
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continue
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}
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m[v] = struct{}{}
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}
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n := float64(len(m))
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if n == 0 {
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n = nan
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}
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dst.Values[i] = n
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for k := range m {
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delete(m, k)
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}
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}
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return tss[:1]
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}
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func aggrFuncMode(tss []*timeseries) []*timeseries {
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dst := tss[0]
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a := make([]float64, 0, len(tss))
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for i := range dst.Values {
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a := a[:0]
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for _, ts := range tss {
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v := ts.Values[i]
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if !math.IsNaN(v) {
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a = append(a, v)
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}
|
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}
|
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dst.Values[i] = modeNoNaNs(nan, a)
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}
|
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return tss[:1]
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}
|
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|
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func aggrFuncZScore(afa *aggrFuncArg) ([]*timeseries, error) {
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tss, err := getAggrTimeseries(afa.args)
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if err != nil {
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return nil, err
|
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}
|
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afe := func(tss []*timeseries, modifier *metricsql.ModifierExpr) []*timeseries {
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for i := range tss[0].Values {
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// Calculate avg and stddev for tss points at position i.
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// See `Rapid calculation methods` at https://en.wikipedia.org/wiki/Standard_deviation
|
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var avg, count, q float64
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for _, ts := range tss {
|
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v := ts.Values[i]
|
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if math.IsNaN(v) {
|
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continue
|
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}
|
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count++
|
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avgNew := avg + (v-avg)/count
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q += (v - avg) * (v - avgNew)
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avg = avgNew
|
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}
|
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if count == 0 {
|
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// Cannot calculate z-score for NaN points.
|
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continue
|
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}
|
|
|
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// Calculate z-score for tss points at position i.
|
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// See https://en.wikipedia.org/wiki/Standard_score
|
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stddev := math.Sqrt(q / count)
|
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for _, ts := range tss {
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v := ts.Values[i]
|
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if math.IsNaN(v) {
|
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continue
|
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}
|
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ts.Values[i] = (v - avg) / stddev
|
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}
|
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}
|
|
|
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// Remove MetricGroup from all the tss.
|
|
for _, ts := range tss {
|
|
ts.MetricName.ResetMetricGroup()
|
|
}
|
|
return tss
|
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}
|
|
return aggrFuncExt(afe, tss, &afa.ae.Modifier, afa.ae.Limit, true)
|
|
}
|
|
|
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// modeNoNaNs returns mode for a.
|
|
//
|
|
// It is expected that a doesn't contain NaNs.
|
|
//
|
|
// The function modifies contents for a, so the caller must prepare it accordingly.
|
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//
|
|
// See https://en.wikipedia.org/wiki/Mode_(statistics)
|
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func modeNoNaNs(prevValue float64, a []float64) float64 {
|
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if len(a) == 0 {
|
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return prevValue
|
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}
|
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sort.Float64s(a)
|
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j := -1
|
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dMax := 0
|
|
mode := prevValue
|
|
for i, v := range a {
|
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if prevValue == v {
|
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continue
|
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}
|
|
if d := i - j; d > dMax || math.IsNaN(mode) {
|
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dMax = d
|
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mode = prevValue
|
|
}
|
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j = i
|
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prevValue = v
|
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}
|
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if d := len(a) - j; d > dMax || math.IsNaN(mode) {
|
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mode = prevValue
|
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}
|
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return mode
|
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}
|
|
|
|
func aggrFuncCountValues(afa *aggrFuncArg) ([]*timeseries, error) {
|
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args := afa.args
|
|
if err := expectTransformArgsNum(args, 2); err != nil {
|
|
return nil, err
|
|
}
|
|
dstLabel, err := getString(args[0], 0)
|
|
if err != nil {
|
|
return nil, err
|
|
}
|
|
|
|
// Remove dstLabel from grouping like Prometheus does.
|
|
modifier := &afa.ae.Modifier
|
|
switch strings.ToLower(modifier.Op) {
|
|
case "without":
|
|
modifier.Args = append(modifier.Args, dstLabel)
|
|
case "by":
|
|
dstArgs := modifier.Args[:0]
|
|
for _, arg := range modifier.Args {
|
|
if arg == dstLabel {
|
|
continue
|
|
}
|
|
dstArgs = append(dstArgs, arg)
|
|
}
|
|
modifier.Args = dstArgs
|
|
default:
|
|
// Do nothing
|
|
}
|
|
|
|
afe := func(tss []*timeseries, modififer *metricsql.ModifierExpr) []*timeseries {
|
|
m := make(map[float64]bool)
|
|
for _, ts := range tss {
|
|
for _, v := range ts.Values {
|
|
if math.IsNaN(v) {
|
|
continue
|
|
}
|
|
m[v] = true
|
|
}
|
|
}
|
|
values := make([]float64, 0, len(m))
|
|
for v := range m {
|
|
values = append(values, v)
|
|
}
|
|
sort.Float64s(values)
|
|
|
|
var rvs []*timeseries
|
|
for _, v := range values {
|
|
var dst timeseries
|
|
dst.CopyFromShallowTimestamps(tss[0])
|
|
dst.MetricName.RemoveTag(dstLabel)
|
|
dst.MetricName.AddTag(dstLabel, strconv.FormatFloat(v, 'g', -1, 64))
|
|
for i := range dst.Values {
|
|
count := 0
|
|
for _, ts := range tss {
|
|
if ts.Values[i] == v {
|
|
count++
|
|
}
|
|
}
|
|
n := float64(count)
|
|
if n == 0 {
|
|
n = nan
|
|
}
|
|
dst.Values[i] = n
|
|
}
|
|
rvs = append(rvs, &dst)
|
|
}
|
|
return rvs
|
|
}
|
|
return aggrFuncExt(afe, args[1], &afa.ae.Modifier, afa.ae.Limit, false)
|
|
}
|
|
|
|
func newAggrFuncTopK(isReverse bool) aggrFunc {
|
|
return func(afa *aggrFuncArg) ([]*timeseries, error) {
|
|
args := afa.args
|
|
if err := expectTransformArgsNum(args, 2); err != nil {
|
|
return nil, err
|
|
}
|
|
ks, err := getScalar(args[0], 0)
|
|
if err != nil {
|
|
return nil, err
|
|
}
|
|
afe := func(tss []*timeseries, modififer *metricsql.ModifierExpr) []*timeseries {
|
|
for n := range tss[0].Values {
|
|
sort.Slice(tss, func(i, j int) bool {
|
|
a := tss[i].Values[n]
|
|
b := tss[j].Values[n]
|
|
if isReverse {
|
|
a, b = b, a
|
|
}
|
|
return lessWithNaNs(a, b)
|
|
})
|
|
fillNaNsAtIdx(n, ks[n], tss)
|
|
}
|
|
return removeNaNs(tss)
|
|
}
|
|
return aggrFuncExt(afe, args[1], &afa.ae.Modifier, afa.ae.Limit, true)
|
|
}
|
|
}
|
|
|
|
func newAggrFuncRangeTopK(f func(values []float64) float64, isReverse bool) aggrFunc {
|
|
return func(afa *aggrFuncArg) ([]*timeseries, error) {
|
|
args := afa.args
|
|
if len(args) < 2 {
|
|
return nil, fmt.Errorf(`unexpected number of args; got %d; want at least %d`, len(args), 2)
|
|
}
|
|
if len(args) > 3 {
|
|
return nil, fmt.Errorf(`unexpected number of args; got %d; want no more than %d`, len(args), 3)
|
|
}
|
|
ks, err := getScalar(args[0], 0)
|
|
if err != nil {
|
|
return nil, err
|
|
}
|
|
remainingSumTagName := ""
|
|
if len(args) == 3 {
|
|
remainingSumTagName, err = getString(args[2], 2)
|
|
if err != nil {
|
|
return nil, err
|
|
}
|
|
}
|
|
afe := func(tss []*timeseries, modifier *metricsql.ModifierExpr) []*timeseries {
|
|
return getRangeTopKTimeseries(tss, modifier, ks, remainingSumTagName, f, isReverse)
|
|
}
|
|
return aggrFuncExt(afe, args[1], &afa.ae.Modifier, afa.ae.Limit, true)
|
|
}
|
|
}
|
|
|
|
func getRangeTopKTimeseries(tss []*timeseries, modifier *metricsql.ModifierExpr, ks []float64, remainingSumTagName string,
|
|
f func(values []float64) float64, isReverse bool) []*timeseries {
|
|
type tsWithValue struct {
|
|
ts *timeseries
|
|
value float64
|
|
}
|
|
maxs := make([]tsWithValue, len(tss))
|
|
for i, ts := range tss {
|
|
value := f(ts.Values)
|
|
maxs[i] = tsWithValue{
|
|
ts: ts,
|
|
value: value,
|
|
}
|
|
}
|
|
sort.Slice(maxs, func(i, j int) bool {
|
|
a := maxs[i].value
|
|
b := maxs[j].value
|
|
if isReverse {
|
|
a, b = b, a
|
|
}
|
|
return lessWithNaNs(a, b)
|
|
})
|
|
for i := range maxs {
|
|
tss[i] = maxs[i].ts
|
|
}
|
|
remainingSumTS := getRemainingSumTimeseries(tss, modifier, ks, remainingSumTagName)
|
|
for i, k := range ks {
|
|
fillNaNsAtIdx(i, k, tss)
|
|
}
|
|
if remainingSumTS != nil {
|
|
tss = append(tss, remainingSumTS)
|
|
}
|
|
return removeNaNs(tss)
|
|
}
|
|
|
|
func getRemainingSumTimeseries(tss []*timeseries, modifier *metricsql.ModifierExpr, ks []float64, remainingSumTagName string) *timeseries {
|
|
if len(remainingSumTagName) == 0 || len(tss) == 0 {
|
|
return nil
|
|
}
|
|
var dst timeseries
|
|
dst.CopyFromShallowTimestamps(tss[0])
|
|
removeGroupTags(&dst.MetricName, modifier)
|
|
dst.MetricName.RemoveTag(remainingSumTagName)
|
|
dst.MetricName.AddTag(remainingSumTagName, remainingSumTagName)
|
|
for i, k := range ks {
|
|
kn := getIntK(k, len(tss))
|
|
var sum float64
|
|
count := 0
|
|
for _, ts := range tss[:len(tss)-kn] {
|
|
v := ts.Values[i]
|
|
if math.IsNaN(v) {
|
|
continue
|
|
}
|
|
sum += v
|
|
count++
|
|
}
|
|
if count == 0 {
|
|
sum = nan
|
|
}
|
|
dst.Values[i] = sum
|
|
}
|
|
return &dst
|
|
}
|
|
|
|
func fillNaNsAtIdx(idx int, k float64, tss []*timeseries) {
|
|
kn := getIntK(k, len(tss))
|
|
for _, ts := range tss[:len(tss)-kn] {
|
|
ts.Values[idx] = nan
|
|
}
|
|
}
|
|
|
|
func getIntK(k float64, kMax int) int {
|
|
if math.IsNaN(k) {
|
|
return 0
|
|
}
|
|
kn := int(k)
|
|
if kn < 0 {
|
|
return 0
|
|
}
|
|
if kn > kMax {
|
|
return kMax
|
|
}
|
|
return kn
|
|
}
|
|
|
|
func minValue(values []float64) float64 {
|
|
min := nan
|
|
for len(values) > 0 && math.IsNaN(min) {
|
|
min = values[0]
|
|
values = values[1:]
|
|
}
|
|
for _, v := range values {
|
|
if !math.IsNaN(v) && v < min {
|
|
min = v
|
|
}
|
|
}
|
|
return min
|
|
}
|
|
|
|
func maxValue(values []float64) float64 {
|
|
max := nan
|
|
for len(values) > 0 && math.IsNaN(max) {
|
|
max = values[0]
|
|
values = values[1:]
|
|
}
|
|
for _, v := range values {
|
|
if !math.IsNaN(v) && v > max {
|
|
max = v
|
|
}
|
|
}
|
|
return max
|
|
}
|
|
|
|
func avgValue(values []float64) float64 {
|
|
sum := float64(0)
|
|
count := 0
|
|
for _, v := range values {
|
|
if math.IsNaN(v) {
|
|
continue
|
|
}
|
|
count++
|
|
sum += v
|
|
}
|
|
if count == 0 {
|
|
return nan
|
|
}
|
|
return sum / float64(count)
|
|
}
|
|
|
|
func medianValue(values []float64) float64 {
|
|
h := histogram.GetFast()
|
|
for _, v := range values {
|
|
if !math.IsNaN(v) {
|
|
h.Update(v)
|
|
}
|
|
}
|
|
value := h.Quantile(0.5)
|
|
histogram.PutFast(h)
|
|
return value
|
|
}
|
|
|
|
func aggrFuncOutliersK(afa *aggrFuncArg) ([]*timeseries, error) {
|
|
args := afa.args
|
|
if err := expectTransformArgsNum(args, 2); err != nil {
|
|
return nil, err
|
|
}
|
|
ks, err := getScalar(args[0], 0)
|
|
if err != nil {
|
|
return nil, err
|
|
}
|
|
afe := func(tss []*timeseries, modifier *metricsql.ModifierExpr) []*timeseries {
|
|
// Calculate medians for each point across tss.
|
|
medians := make([]float64, len(ks))
|
|
h := histogram.GetFast()
|
|
for n := range ks {
|
|
h.Reset()
|
|
for j := range tss {
|
|
v := tss[j].Values[n]
|
|
if !math.IsNaN(v) {
|
|
h.Update(v)
|
|
}
|
|
}
|
|
medians[n] = h.Quantile(0.5)
|
|
}
|
|
histogram.PutFast(h)
|
|
|
|
// Return topK time series with the highest variance from median.
|
|
f := func(values []float64) float64 {
|
|
sum2 := float64(0)
|
|
for n, v := range values {
|
|
d := v - medians[n]
|
|
sum2 += d * d
|
|
}
|
|
return sum2
|
|
}
|
|
return getRangeTopKTimeseries(tss, &afa.ae.Modifier, ks, "", f, false)
|
|
}
|
|
return aggrFuncExt(afe, args[1], &afa.ae.Modifier, afa.ae.Limit, true)
|
|
}
|
|
|
|
func aggrFuncLimitK(afa *aggrFuncArg) ([]*timeseries, error) {
|
|
args := afa.args
|
|
if err := expectTransformArgsNum(args, 2); err != nil {
|
|
return nil, err
|
|
}
|
|
ks, err := getScalar(args[0], 0)
|
|
if err != nil {
|
|
return nil, err
|
|
}
|
|
maxK := 0
|
|
for _, kf := range ks {
|
|
k := int(kf)
|
|
if k > maxK {
|
|
maxK = k
|
|
}
|
|
}
|
|
afe := func(tss []*timeseries, modifier *metricsql.ModifierExpr) []*timeseries {
|
|
if len(tss) > maxK {
|
|
tss = tss[:maxK]
|
|
}
|
|
for i, kf := range ks {
|
|
k := int(kf)
|
|
if k < 0 {
|
|
k = 0
|
|
}
|
|
for j := k; j < len(tss); j++ {
|
|
tss[j].Values[i] = nan
|
|
}
|
|
}
|
|
return tss
|
|
}
|
|
return aggrFuncExt(afe, args[1], &afa.ae.Modifier, afa.ae.Limit, true)
|
|
}
|
|
|
|
func aggrFuncQuantile(afa *aggrFuncArg) ([]*timeseries, error) {
|
|
args := afa.args
|
|
if err := expectTransformArgsNum(args, 2); err != nil {
|
|
return nil, err
|
|
}
|
|
phis, err := getScalar(args[0], 0)
|
|
if err != nil {
|
|
return nil, err
|
|
}
|
|
afe := newAggrQuantileFunc(phis)
|
|
return aggrFuncExt(afe, args[1], &afa.ae.Modifier, afa.ae.Limit, false)
|
|
}
|
|
|
|
func aggrFuncMedian(afa *aggrFuncArg) ([]*timeseries, error) {
|
|
tss, err := getAggrTimeseries(afa.args)
|
|
if err != nil {
|
|
return nil, err
|
|
}
|
|
phis := evalNumber(afa.ec, 0.5)[0].Values
|
|
afe := newAggrQuantileFunc(phis)
|
|
return aggrFuncExt(afe, tss, &afa.ae.Modifier, afa.ae.Limit, false)
|
|
}
|
|
|
|
func newAggrQuantileFunc(phis []float64) func(tss []*timeseries, modifier *metricsql.ModifierExpr) []*timeseries {
|
|
return func(tss []*timeseries, modifier *metricsql.ModifierExpr) []*timeseries {
|
|
dst := tss[0]
|
|
h := histogram.GetFast()
|
|
defer histogram.PutFast(h)
|
|
for n := range dst.Values {
|
|
h.Reset()
|
|
for j := range tss {
|
|
v := tss[j].Values[n]
|
|
if !math.IsNaN(v) {
|
|
h.Update(v)
|
|
}
|
|
}
|
|
phi := phis[n]
|
|
dst.Values[n] = h.Quantile(phi)
|
|
}
|
|
tss[0] = dst
|
|
return tss[:1]
|
|
}
|
|
}
|
|
|
|
func lessWithNaNs(a, b float64) bool {
|
|
if math.IsNaN(a) {
|
|
return !math.IsNaN(b)
|
|
}
|
|
return a < b
|
|
}
|