zoukankan      html  css  js  c++  java
  • redis集群本地搭建

    Redis集群部署文档(centos6,redhat系统)

    (要让集群正常工作至少需要3个主节点,在这里我们要创建6个redis节点,其中三个为主节点,三个为从节点,对应的redis节点的ip和端口对应关系如下)

    127.0.0.1:7000
    127.0.0.1:7001

    127.0.0.1:7002

    127.0.0.1:7003

    127.0.0.1:7004

    127.0.0.1:7005

     

    1:下载redis。官网下载3.0.0版本,之前2.几的版本不支持集群模式(3.0版本以上也支持)

    下载地址:https://github.com/antirez/redis/archive/3.0.0-rc2.tar.gz

    2:上传服务器,解压,编译

    tar -zxvf redis-3.0.0-rc2.tar.gz 

    mv redis-3.0.0-rc2.tar.gz redis3.0

    cd /usr/local/redis3.0

    make

    make install

     

     

     

     

     

     

    3:创建集群需要的目录

    mkdir -p /usr.local/cluster

    cd /usr.local/cluster

    mkdir 7000

    mkdir 7001

    mkdir 7002

    mkdir 7003

    mkdir 7004

    mkdir 7005

     

     

     

     

     

     

     

     

     

     

     

     

    4:修改配置文件redis.conf

    cp /usr/local/redis3.0/redis.conf  /usr.local/cluster

    vi redis.conf

    ##修改配置文件中的下面选项

    port 7000

    daemonize yes

    cluster-enabled yes

    cluster-config-file nodes.conf

    cluster-node-timeout 5000

    appendonly yes

    ##修改完redis.conf配置文件中的这些配置项之后把这个配置文件分别拷贝到7000/7001/7002/7003/7004/7005目录下面

    cp /usr/local/cluster/redis.conf /usr/local/cluster/7000

    cp /usr/local/cluster/redis.conf /usr/local/cluster/7001

    cp /usr/local/cluster/redis.conf /usr/local/cluster/7002

    cp /usr/local/cluster/redis.conf /usr/local/cluster/7003

    cp /usr/local/cluster/redis.conf /usr/local/cluster/7004

    cp /usr/local/cluster/redis.conf /usr/local/cluster/7005

    ##注意:拷贝完成之后要修改7001/7002/7003/7004/7005目录下面redis.conf文件中的port参数,分别改为对应的文件夹的名称

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

    5:分别启动这6个redis实例

    cd /usr/local/cluster/7000

    redis-server redis.conf

    cd /usr/local/cluster/7001

    redis-server redis.conf

    cd /usr/local/cluster/7002

    redis-server redis.conf

    cd /usr/local/cluster/7003

    redis-server redis.conf

    cd /usr/local/cluster/7004

    redis-server redis.conf

    cd /usr/local/cluster/7005

    redis-server redis.conf

    ##启动之后使用命令查看redis的启动情况ps -ef|grep redis

    如下图显示则说明启动成功

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

     

    6:执行redis的创建集群命令创建集群

    cd /usr/local/redis3.0/src

    ./redis-trib.rb  create --replicas 1 127.0.0.1:7000 127.0.0.1:7001 127.0.0.1:7002 127.0.0.1:7003 127.0.0.1:7004 127.0.0.1:7005

     

     

     

    6.1执行上面的命令的时候会报错,因为是执行的ruby的脚本,需要ruby的环境

    错误内容:/usr/bin/env: ruby: No such file or directory

    所以需要安装ruby的环境,这里推荐使用yum install ruby安装

    yum install ruby

     

     

     

    6.2然后再执行第6步的创建集群命令,还会报错,提示缺少rubygems组件,使用yum安装

     

    错误内容:

    ./redis-trib.rb:24:in `require': no such file to load -- rubygems (LoadError)

    from ./redis-trib.rb:24

    yum install rubygems

     

     

     

    6.3再次执行第6步的命令,还会报错,提示不能加载redis,是因为缺少redis和ruby的接口,使用gem 安装

    错误内容:

    /usr/lib/ruby/site_ruby/1.8/rubygems/custom_require.rb:31:in `gem_original_require': no such file to load -- redis (LoadError)

    from /usr/lib/ruby/site_ruby/1.8/rubygems/custom_require.rb:31:in `require'

    from ./redis-trib.rb:25

     

    gem install  redis --version 3.0.0

     

     

    注意:gem install redis --version 3.0.0 失败的话,需要修改一下gem的源
    gem sources --remove https://rubygems.org/
    gem sources -a https://ruby.taobao.org/

     

    6.4 再次执行第6步的命令,正常执行

     

    输入yes,然后配置完成。

     

    至此redis集群即搭建成功!

     

     

    7:使用redis-cli命令进入集群环境

    redis-cli -c -p 7000

     

    集群性能测试:

    Redis-benchmark是官方自带的Redis性能测试工具,可以有效的测试Redis服务的性能。

    使用说明如下:

     

    Usage: redis-benchmark [-h <host>] [-p <port>] [-c <clients>] [-n <requests]> [-k <boolean>]

     

     -h <hostname>      Server hostname (default 127.0.0.1)

     -p <port>          Server port (default 6379)

     -s <socket>        Server socket (overrides host and port)

     -c <clients>       Number of parallel connections (default 50)

     -n <requests>      Total number of requests (default 10000)

     -d <size>          Data size of SET/GET value in bytes (default 2)

     -k <boolean>       1=keep alive 0=reconnect (default 1)

     -r <keyspacelen>   Use random keys for SET/GET/INCR, random values for SADD

      Using this option the benchmark will get/set keys

      in the form mykey_rand:000000012456 instead of constant

      keys, the <keyspacelen> argument determines the max

      number of values for the random number. For instance

      if set to 10 only rand:000000000000 - rand:000000000009

      range will be allowed.

     -P <numreq>        Pipeline <numreq> requests. Default 1 (no pipeline).

     -q                 Quiet. Just show query/sec values

     --csv              Output in CSV format

     -l                 Loop. Run the tests forever

     -t <tests>         Only run the comma-separated list of tests. The test

                        names are the same as the ones produced as output.

     -I                 Idle mode. Just open N idle connections and wait.

     


    测试命令事例:

    1、redis-benchmark -h 192.168.1.201 -p 6379 -c 100 -n 100000 
    100个并发连接,100000个请求,检测hostlocalhost 端口为6379redis服务器性能 

    2、redis-benchmark -h 192.168.1.201 -p 6379 -q -d 100  

    测试存取大小为100字节的数据包的性能

    3redis-benchmark -t set,lpush -n 100000 -q

    只测试某些操作的性能

    4redis-benchmark -n 100000 -q script load "redis.call('set','foo','bar')"

    只测试某些数值存取的性能

     

    测试结果分析:

     

      10000 requests completed in 0.30 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.11% <= 1 milliseconds

    86.00% <= 2 milliseconds

    90.12% <= 3 milliseconds

    96.68% <= 4 milliseconds

    99.27% <= 5 milliseconds

    99.54% <= 6 milliseconds

    99.69% <= 7 milliseconds

    99.78% <= 8 milliseconds

    99.89% <= 9 milliseconds

    100.00% <= 9 milliseconds

    33222.59 requests per second

     

    ====== PING_BULK ======

      10000 requests completed in 0.27 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.93% <= 1 milliseconds

    97.66% <= 2 milliseconds

    100.00% <= 2 milliseconds

    37174.72 requests per second

     

    ====== SET ======

      10000 requests completed in 0.32 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.22% <= 1 milliseconds

    91.68% <= 2 milliseconds

    97.78% <= 3 milliseconds

    98.80% <= 4 milliseconds

    99.38% <= 5 milliseconds

    99.61% <= 6 milliseconds

    99.72% <= 7 milliseconds

    99.83% <= 8 milliseconds

    99.94% <= 9 milliseconds

    100.00% <= 9 milliseconds

    30959.75 requests per second

     

    ====== GET ======

      10000 requests completed in 0.28 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.55% <= 1 milliseconds

    98.86% <= 2 milliseconds

    100.00% <= 2 milliseconds

    35971.22 requests per second

     

    ====== INCR ======

      10000 requests completed in 0.14 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    95.61% <= 1 milliseconds

    100.00% <= 1 milliseconds

    69444.45 requests per second

     

    ====== LPUSH ======

      10000 requests completed in 0.21 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    18.33% <= 1 milliseconds

    100.00% <= 1 milliseconds

    48309.18 requests per second

     

    ====== LPOP ======

      10000 requests completed in 0.23 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.29% <= 1 milliseconds

    99.76% <= 2 milliseconds

    100.00% <= 2 milliseconds

    44052.86 requests per second

     

    ====== SADD ======

      10000 requests completed in 0.22 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    2.37% <= 1 milliseconds

    99.81% <= 2 milliseconds

    100.00% <= 2 milliseconds

    44444.45 requests per second

     

    ====== SPOP ======

      10000 requests completed in 0.22 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    4.27% <= 1 milliseconds

    99.84% <= 2 milliseconds

    100.00% <= 2 milliseconds

    44642.86 requests per second

     

    ====== LPUSH (needed to benchmark LRANGE) ======

      10000 requests completed in 0.22 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    12.35% <= 1 milliseconds

    99.62% <= 2 milliseconds

    100.00% <= 2 milliseconds

    46082.95 requests per second

     

    ====== LRANGE_100 (first 100 elements) ======

      10000 requests completed in 0.48 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.01% <= 1 milliseconds

    3.27% <= 2 milliseconds

    98.71% <= 3 milliseconds

    99.93% <= 4 milliseconds

    100.00% <= 4 milliseconds

    20964.36 requests per second

     

    ====== LRANGE_300 (first 300 elements) ======

      10000 requests completed in 1.26 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.01% <= 2 milliseconds

    0.14% <= 3 milliseconds

    0.90% <= 4 milliseconds

    7.03% <= 5 milliseconds

    31.68% <= 6 milliseconds

    78.93% <= 7 milliseconds

    98.88% <= 8 milliseconds

    99.56% <= 9 milliseconds

    99.72% <= 10 milliseconds

    99.95% <= 11 milliseconds

    100.00% <= 11 milliseconds

    7961.78 requests per second

     

    ====== LRANGE_500 (first 450 elements) ======

      10000 requests completed in 1.82 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.01% <= 2 milliseconds

    0.06% <= 3 milliseconds

    0.14% <= 4 milliseconds

    0.30% <= 5 milliseconds

    0.99% <= 6 milliseconds

    2.91% <= 7 milliseconds

    8.11% <= 8 milliseconds

    43.15% <= 9 milliseconds

    88.38% <= 10 milliseconds

    97.25% <= 11 milliseconds

    98.61% <= 12 milliseconds

    99.26% <= 13 milliseconds

    99.30% <= 14 milliseconds

    99.44% <= 15 milliseconds

    99.48% <= 16 milliseconds

    99.64% <= 17 milliseconds

    99.85% <= 18 milliseconds

    99.92% <= 19 milliseconds

    99.95% <= 20 milliseconds

    99.96% <= 21 milliseconds

    99.97% <= 22 milliseconds

    100.00% <= 23 milliseconds

    5491.49 requests per second

     

    ====== LRANGE_600 (first 600 elements) ======

      10000 requests completed in 2.29 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.01% <= 2 milliseconds

    0.05% <= 3 milliseconds

    0.10% <= 4 milliseconds

    0.19% <= 5 milliseconds

    0.34% <= 6 milliseconds

    0.46% <= 7 milliseconds

    0.58% <= 8 milliseconds

    4.46% <= 9 milliseconds

    21.80% <= 10 milliseconds

    40.48% <= 11 milliseconds

    60.14% <= 12 milliseconds

    79.81% <= 13 milliseconds

    93.77% <= 14 milliseconds

    97.14% <= 15 milliseconds

    98.67% <= 16 milliseconds

    99.08% <= 17 milliseconds

    99.30% <= 18 milliseconds

    99.41% <= 19 milliseconds

    99.52% <= 20 milliseconds

    99.61% <= 21 milliseconds

    99.79% <= 22 milliseconds

    99.88% <= 23 milliseconds

    99.89% <= 24 milliseconds

    99.95% <= 26 milliseconds

    99.96% <= 27 milliseconds

    99.97% <= 28 milliseconds

    99.98% <= 29 milliseconds

    100.00% <= 29 milliseconds

    4359.20 requests per second

     

    ====== MSET (10 keys) ======

      10000 requests completed in 0.37 seconds

      100 parallel clients

      3 bytes payload

      keep alive: 1

     

    0.01% <= 1 milliseconds

    2.00% <= 2 milliseconds

    18.41% <= 3 milliseconds

    88.55% <= 4 milliseconds

    96.09% <= 5 milliseconds

    99.50% <= 6 milliseconds

    99.65% <= 7 milliseconds

    99.75% <= 8 milliseconds

    99.77% <= 9 milliseconds

    99.78% <= 11 milliseconds

    99.79% <= 12 milliseconds

    99.80% <= 13 milliseconds

    99.81% <= 15 milliseconds

    99.82% <= 16 milliseconds

    99.83% <= 17 milliseconds

    99.84% <= 19 milliseconds

    99.85% <= 21 milliseconds

    99.86% <= 23 milliseconds

    99.87% <= 24 milliseconds

    99.88% <= 25 milliseconds

    99.89% <= 27 milliseconds

    99.90% <= 28 milliseconds

    99.91% <= 30 milliseconds

    99.92% <= 32 milliseconds

    99.93% <= 34 milliseconds

    99.95% <= 35 milliseconds

    99.96% <= 36 milliseconds

    99.97% <= 37 milliseconds

    99.98% <= 39 milliseconds

    99.99% <= 41 milliseconds

    100.00% <= 41 milliseconds

    27173.91 requests per second

     

  • 相关阅读:
    volume 方式使用 Secret【转】
    查看 Secret【转】
    用 k8s 管理机密信息【转】
    MySQL 如何使用 PV 和 PVC?【转】
    【docker问题】Client.Timeout exceeded while awaiting headers
    PV 动态供给【转】
    回收 PV【转】
    NFS PersistentVolume【转】
    PV & PVC【转】
    IO流中的常见问题
  • 原文地址:https://www.cnblogs.com/to-be-rich/p/7285805.html
Copyright © 2011-2022 走看看