Anthony Romano b1d41016b2 vendor: only vendor on emitted binaries | há 8 anos atrás | |
---|---|---|
.. | ||
.travis.yml | há 8 anos atrás | |
graphite.go | há 8 anos atrás | |
metrics.go | há 8 anos atrás | |
opentsdb.go | há 8 anos atrás | |
print_benchmark.go | há 8 anos atrás | |
readme.md | há 8 anos atrás | |
submitter.go | há 8 anos atrás |
A metric system for high performance counters and histograms. Unlike popular metric systems today, this does not destroy the accuracy of histograms by sampling. Instead, a logarithmic bucketing function compresses values, generally within 1% of their true value (although between 0 and 1 the precision loss may not be within this boundary). This allows for extreme compression, which allows us to calculate arbitrarily high percentiles with no loss of accuracy - just a small amount of precision. This is particularly useful for highly-clustered events that are tolerant of a small precision loss, but for which you REALLY care about what the tail looks like, such as measuring latency across a distributed system.
Copied out of my work for the CockroachDB metrics system. Based on an algorithm created by Keith Frost.
package main
import (
"runtime"
"github.com/spacejam/loghisto"
)
func benchmark() {
// do some stuff
}
func main() {
numCPU := runtime.NumCPU()
runtime.GOMAXPROCS(numCPU)
desiredConcurrency := uint(100)
loghisto.PrintBenchmark("benchmark1234", desiredConcurrency, benchmark)
}
results in something like this printed to stdout each second:
2014-12-11 21:41:45 -0500 EST
benchmark1234_count: 2.0171025e+07
benchmark1234_max: 2.4642914167480484e+07
benchmark1234_99.99: 4913.768840299134
benchmark1234_99.9: 1001.2472422902518
benchmark1234_99: 71.24044000732538
benchmark1234_95: 67.03348428941965
benchmark1234_90: 65.68633104092515
benchmark1234_75: 63.07152259993664
benchmark1234_50: 58.739891704145194
benchmark1234_min: -657.5233632152207 // Corollary: time.Since(time.Now()) is often < 0
benchmark1234_sum: 1.648051169322668e+09
benchmark1234_avg: 81.70388809307748
benchmark1234_agg_avg: 89
benchmark1234_agg_count: 6.0962226e+07
benchmark1234_agg_sum: 5.454779078e+09
sys.Alloc: 1.132672e+06
sys.NumGC: 5741
sys.PauseTotalNs: 1.569390954e+09
sys.NumGoroutine: 113
import (
"time"
"fmt"
"github.com/spacejam/loghisto"
)
func ExampleMetricSystem() {
// Create metric system that reports once a minute, and includes stats
// about goroutines, memory usage and GC.
includeGoProcessStats := true
ms := loghisto.NewMetricSystem(time.Minute, includeGoProcessStats)
ms.Start()
// create a channel that subscribes to metrics as they are produced once
// per minute.
// NOTE: if you allow this channel to fill up, the metric system will NOT
// block, and will FORGET about your channel if you fail to unblock the
// channel after 3 configured intervals (in this case 3 minutes) rather
// than causing a memory leak.
myMetricStream := make(chan *loghisto.ProcessedMetricSet, 2)
ms.SubscribeToProcessedMetrics(myMetricStream)
// create some metrics
timeToken := ms.StartTimer("time for creating a counter and histo")
ms.Counter("some event", 1)
ms.Histogram("some measured thing", 123)
timeToken.Stop()
for m := range myMetricStream {
fmt.Printf("number of goroutines: %f\n", m.Metrics["sys.NumGoroutine"])
}
// if you want to manually unsubscribe from the metric stream
ms.UnsubscribeFromProcessedMetrics(myMetricStream)
// to stop and clean up your metric system
ms.Stop()
}
func ExampleExternalSubmitter() {
includeGoProcessStats := true
ms := NewMetricSystem(time.Minute, includeGoProcessStats)
ms.Start()
// graphite
s := NewSubmitter(ms, GraphiteProtocol, "tcp", "localhost:7777")
s.Start()
// opentsdb / kairosdb
s := NewSubmitter(ms, OpenTSDBProtocol, "tcp", "localhost:7777")
s.Start()
// to tear down:
s.Shutdown()
}
See code for the Graphite/OpenTSDB protocols for adding your own output plugins, it's pretty simple.