package metrics import ( "bytes" "encoding/gob" "fmt" "math" "reflect" "runtime/metrics" "testing" "time" ) var _ Histogram = (*runtimeHistogram)(nil) type runtimeHistogramTest struct { h metrics.Float64Histogram Count int64 Min int64 Max int64 Sum int64 Mean float64 Variance float64 StdDev float64 Percentiles []float64 // .5 .8 .9 .99 .995 } // This test checks the results of statistical functions implemented // by runtimeHistogramSnapshot. func TestRuntimeHistogramStats(t *testing.T) { tests := []runtimeHistogramTest{ 0: { h: metrics.Float64Histogram{ Counts: []uint64{}, Buckets: []float64{}, }, Count: 0, Max: 0, Min: 0, Sum: 0, Mean: 0, Variance: 0, StdDev: 0, Percentiles: []float64{0, 0, 0, 0, 0}, }, 1: { // This checks the case where the highest bucket is +Inf. h: metrics.Float64Histogram{ Counts: []uint64{0, 1, 2}, Buckets: []float64{0, 0.5, 1, math.Inf(1)}, }, Count: 3, Max: 1, Min: 0, Sum: 3, Mean: 0.9166666, Percentiles: []float64{1, 1, 1, 1, 1}, Variance: 0.020833, StdDev: 0.144433, }, 2: { h: metrics.Float64Histogram{ Counts: []uint64{8, 6, 3, 1}, Buckets: []float64{12, 16, 18, 24, 25}, }, Count: 18, Max: 25, Min: 12, Sum: 270, Mean: 16.75, Variance: 10.3015, StdDev: 3.2096, Percentiles: []float64{16, 18, 18, 24, 24}, }, } for i, test := range tests { t.Run(fmt.Sprint(i), func(t *testing.T) { s := RuntimeHistogramFromData(1.0, &test.h).Snapshot() if v := s.Count(); v != test.Count { t.Errorf("Count() = %v, want %v", v, test.Count) } if v := s.Min(); v != test.Min { t.Errorf("Min() = %v, want %v", v, test.Min) } if v := s.Max(); v != test.Max { t.Errorf("Max() = %v, want %v", v, test.Max) } if v := s.Sum(); v != test.Sum { t.Errorf("Sum() = %v, want %v", v, test.Sum) } if v := s.Mean(); !approxEqual(v, test.Mean, 0.0001) { t.Errorf("Mean() = %v, want %v", v, test.Mean) } if v := s.Variance(); !approxEqual(v, test.Variance, 0.0001) { t.Errorf("Variance() = %v, want %v", v, test.Variance) } if v := s.StdDev(); !approxEqual(v, test.StdDev, 0.0001) { t.Errorf("StdDev() = %v, want %v", v, test.StdDev) } ps := []float64{.5, .8, .9, .99, .995} if v := s.Percentiles(ps); !reflect.DeepEqual(v, test.Percentiles) { t.Errorf("Percentiles(%v) = %v, want %v", ps, v, test.Percentiles) } }) } } func approxEqual(x, y, ε float64) bool { if math.IsInf(x, -1) && math.IsInf(y, -1) { return true } if math.IsInf(x, 1) && math.IsInf(y, 1) { return true } if math.IsNaN(x) && math.IsNaN(y) { return true } return math.Abs(x-y) < ε } // This test verifies that requesting Percentiles in unsorted order // returns them in the requested order. func TestRuntimeHistogramStatsPercentileOrder(t *testing.T) { s := RuntimeHistogramFromData(1.0, &metrics.Float64Histogram{ Counts: []uint64{1, 1, 1, 1, 1, 1, 1, 1, 1, 1}, Buckets: []float64{0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10}, }).Snapshot() result := s.Percentiles([]float64{1, 0.2, 0.5, 0.1, 0.2}) expected := []float64{10, 2, 5, 1, 2} if !reflect.DeepEqual(result, expected) { t.Fatal("wrong result:", result) } } func BenchmarkRuntimeHistogramSnapshotRead(b *testing.B) { var sLatency = "7\xff\x81\x03\x01\x01\x10Float64Histogram\x01\xff\x82\x00\x01\x02\x01\x06Counts\x01\xff\x84\x00\x01\aBuckets\x01\xff\x86\x00\x00\x00\x16\xff\x83\x02\x01\x01\b[]uint64\x01\xff\x84\x00\x01\x06\x00\x00\x17\xff\x85\x02\x01\x01\t[]float64\x01\xff\x86\x00\x01\b\x00\x00\xfe\x06T\xff\x82\x01\xff\xa2\x00\xfe\r\xef\x00\x01\x02\x02\x04\x05\x04\b\x15\x17 B?6.L;$!2) \x1a? 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