mirror of
https://github.com/superseriousbusiness/gotosocial.git
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234 lines
6.1 KiB
Go
234 lines
6.1 KiB
Go
// Copyright The OpenTelemetry Authors
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// SPDX-License-Identifier: Apache-2.0
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package aggregate // import "go.opentelemetry.io/otel/sdk/metric/internal/aggregate"
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import (
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"context"
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"slices"
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"sort"
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"sync"
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"time"
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"go.opentelemetry.io/otel/attribute"
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"go.opentelemetry.io/otel/sdk/metric/internal/exemplar"
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"go.opentelemetry.io/otel/sdk/metric/metricdata"
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)
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type buckets[N int64 | float64] struct {
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attrs attribute.Set
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res exemplar.FilteredReservoir[N]
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counts []uint64
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count uint64
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total N
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min, max N
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}
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// newBuckets returns buckets with n bins.
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func newBuckets[N int64 | float64](attrs attribute.Set, n int) *buckets[N] {
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return &buckets[N]{attrs: attrs, counts: make([]uint64, n)}
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}
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func (b *buckets[N]) sum(value N) { b.total += value }
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func (b *buckets[N]) bin(idx int, value N) {
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b.counts[idx]++
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b.count++
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if value < b.min {
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b.min = value
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} else if value > b.max {
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b.max = value
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}
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}
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// histValues summarizes a set of measurements as an histValues with
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// explicitly defined buckets.
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type histValues[N int64 | float64] struct {
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noSum bool
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bounds []float64
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newRes func() exemplar.FilteredReservoir[N]
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limit limiter[*buckets[N]]
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values map[attribute.Distinct]*buckets[N]
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valuesMu sync.Mutex
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}
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func newHistValues[N int64 | float64](bounds []float64, noSum bool, limit int, r func() exemplar.FilteredReservoir[N]) *histValues[N] {
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// The responsibility of keeping all buckets correctly associated with the
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// passed boundaries is ultimately this type's responsibility. Make a copy
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// here so we can always guarantee this. Or, in the case of failure, have
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// complete control over the fix.
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b := slices.Clone(bounds)
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slices.Sort(b)
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return &histValues[N]{
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noSum: noSum,
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bounds: b,
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newRes: r,
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limit: newLimiter[*buckets[N]](limit),
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values: make(map[attribute.Distinct]*buckets[N]),
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}
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}
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// Aggregate records the measurement value, scoped by attr, and aggregates it
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// into a histogram.
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func (s *histValues[N]) measure(ctx context.Context, value N, fltrAttr attribute.Set, droppedAttr []attribute.KeyValue) {
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// This search will return an index in the range [0, len(s.bounds)], where
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// it will return len(s.bounds) if value is greater than the last element
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// of s.bounds. This aligns with the buckets in that the length of buckets
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// is len(s.bounds)+1, with the last bucket representing:
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// (s.bounds[len(s.bounds)-1], +∞).
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idx := sort.SearchFloat64s(s.bounds, float64(value))
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s.valuesMu.Lock()
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defer s.valuesMu.Unlock()
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attr := s.limit.Attributes(fltrAttr, s.values)
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b, ok := s.values[attr.Equivalent()]
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if !ok {
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// N+1 buckets. For example:
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//
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// bounds = [0, 5, 10]
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//
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// Then,
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//
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// buckets = (-∞, 0], (0, 5.0], (5.0, 10.0], (10.0, +∞)
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b = newBuckets[N](attr, len(s.bounds)+1)
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b.res = s.newRes()
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// Ensure min and max are recorded values (not zero), for new buckets.
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b.min, b.max = value, value
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s.values[attr.Equivalent()] = b
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}
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b.bin(idx, value)
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if !s.noSum {
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b.sum(value)
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}
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b.res.Offer(ctx, value, droppedAttr)
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}
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// newHistogram returns an Aggregator that summarizes a set of measurements as
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// an histogram.
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func newHistogram[N int64 | float64](boundaries []float64, noMinMax, noSum bool, limit int, r func() exemplar.FilteredReservoir[N]) *histogram[N] {
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return &histogram[N]{
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histValues: newHistValues[N](boundaries, noSum, limit, r),
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noMinMax: noMinMax,
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start: now(),
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}
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}
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// histogram summarizes a set of measurements as an histogram with explicitly
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// defined buckets.
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type histogram[N int64 | float64] struct {
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*histValues[N]
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noMinMax bool
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start time.Time
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}
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func (s *histogram[N]) delta(dest *metricdata.Aggregation) int {
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t := now()
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// If *dest is not a metricdata.Histogram, memory reuse is missed. In that
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// case, use the zero-value h and hope for better alignment next cycle.
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h, _ := (*dest).(metricdata.Histogram[N])
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h.Temporality = metricdata.DeltaTemporality
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s.valuesMu.Lock()
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defer s.valuesMu.Unlock()
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// Do not allow modification of our copy of bounds.
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bounds := slices.Clone(s.bounds)
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n := len(s.values)
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hDPts := reset(h.DataPoints, n, n)
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var i int
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for _, val := range s.values {
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hDPts[i].Attributes = val.attrs
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hDPts[i].StartTime = s.start
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hDPts[i].Time = t
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hDPts[i].Count = val.count
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hDPts[i].Bounds = bounds
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hDPts[i].BucketCounts = val.counts
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if !s.noSum {
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hDPts[i].Sum = val.total
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}
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if !s.noMinMax {
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hDPts[i].Min = metricdata.NewExtrema(val.min)
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hDPts[i].Max = metricdata.NewExtrema(val.max)
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}
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collectExemplars(&hDPts[i].Exemplars, val.res.Collect)
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i++
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}
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// Unused attribute sets do not report.
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clear(s.values)
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// The delta collection cycle resets.
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s.start = t
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h.DataPoints = hDPts
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*dest = h
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return n
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}
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func (s *histogram[N]) cumulative(dest *metricdata.Aggregation) int {
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t := now()
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// If *dest is not a metricdata.Histogram, memory reuse is missed. In that
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// case, use the zero-value h and hope for better alignment next cycle.
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h, _ := (*dest).(metricdata.Histogram[N])
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h.Temporality = metricdata.CumulativeTemporality
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s.valuesMu.Lock()
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defer s.valuesMu.Unlock()
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// Do not allow modification of our copy of bounds.
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bounds := slices.Clone(s.bounds)
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n := len(s.values)
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hDPts := reset(h.DataPoints, n, n)
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var i int
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for _, val := range s.values {
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hDPts[i].Attributes = val.attrs
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hDPts[i].StartTime = s.start
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hDPts[i].Time = t
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hDPts[i].Count = val.count
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hDPts[i].Bounds = bounds
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// The HistogramDataPoint field values returned need to be copies of
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// the buckets value as we will keep updating them.
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//
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// TODO (#3047): Making copies for bounds and counts incurs a large
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// memory allocation footprint. Alternatives should be explored.
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hDPts[i].BucketCounts = slices.Clone(val.counts)
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if !s.noSum {
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hDPts[i].Sum = val.total
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}
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if !s.noMinMax {
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hDPts[i].Min = metricdata.NewExtrema(val.min)
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hDPts[i].Max = metricdata.NewExtrema(val.max)
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}
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collectExemplars(&hDPts[i].Exemplars, val.res.Collect)
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i++
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// TODO (#3006): This will use an unbounded amount of memory if there
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// are unbounded number of attribute sets being aggregated. Attribute
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// sets that become "stale" need to be forgotten so this will not
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// overload the system.
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}
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h.DataPoints = hDPts
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*dest = h
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return n
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}
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