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redistimeseries-ooo-benchmark

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Overview

This repo contains code to mimic the out ot order / backfilled workloads on RedisTimeSeries >= v1.4.

Several aspects can dictate the overall system performance, like the:

  • Pipeline size
  • Number of distinct clients ( each client has a dedicated time-serie )
  • Compressed / Uncompressed series
  • Out of order ratio

Installation

This benchmark go program is know to be supported for go >= 1.13. The easiest way to get and install the Subscriber Go program is to use go get and then go install:

# Fetch this repo
go get github.com/RedisTimeSeries/redistimeseries-ooo-benchmark
cd $GOPATH/src/github.com/RedisTimeSeries/redistimeseries-ooo-benchmark
make

Usage of redistimeseries-ooo-benchmark

Usage of redistimeseries-ooo-benchmark:
  -chunk-size int
        chunk size. (default 4096)
  -client-update-tick int
        client update tick. (default 1)
  -compressed
        test for compressed TS
  -debug-level int
        debug level.
  -host string
        redis host. (default "127.0.0.1:6379")
  -json-out-file string
        Name of json output file, if not set, will not print to json.
  -ooo-percentage float
        out of order percentage [0.0,100.0]
  -pipeline int
        pipeline. (default 1)
  -random-seed int
        random seed to be used. (default 12345)
  -samples-per-ts uint
        Number of total samples per timeseries. (default 100000)
  -ts-maximum uint
        channel ID maximum value ( each channel has a dedicated thread ). (default 100)
  -ts-minimum uint
        channel ID minimum value ( each channel has a dedicated thread ). (default 1)

redistimeseries-ooo-benchmark's People

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redistimeseries-ooo-benchmark's Issues

codahale/hdrhistogram repo url has been transferred under the github HdrHstogram umbrella

Problem

The codahale/hdrhistogram repo has been transferred under the github HdrHstogram umbrella with the help from the original author in Sept 2020 (new repo url https://github.com/HdrHistogram/hdrhistogram-go). The main reasons are to group all implementations under the same roof and to provide more active contribution from the community as the original repository was archived several years ago.

The dependency URL should be modified to point to the new repository URL. The tag "v0.9.0" was applied at the point of transfer and will reflect the exact code that was frozen in the original repository.

If you are using Go modules, you can update to the exact point of transfer using the @v0.9.0 tag in your go get command.

go mod edit -replace github.com/codahale/hdrhistogram=github.com/HdrHistogram/[email protected]

Performance Improvements

From the point of transfer, up until now (mon 16 aug 2021), we've released 3 versions that aim support the standard HdrHistogram serialization/exposition formats, and deeply improve READ performance.
We recommend to update to the latest version.

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