🔥码云GVP开源项目 12k star Uniapp+ElementUI 功能强大 支持多语言、二开方便! 广告
## 背景 本文主要介绍PostgreSQL 在中高端x86服务器上的数据插入速度(目标表包含一个时间字段的索引),帮助企业用户了解PostgreSQL在这类场景下的性能表现。 这类场景常见于运营商网关数据和金融行业数据,产生量大,并且要求快速插入大数据库中持久化保存。另外, 用户如果需要流式实时处理,可以参考基于PostgreSQL的流式处理方案,一天处理1万亿的实时流式处理是如何实现的?[PostgreSQL “物联网”应用 - 1 实时流式数据处理案例(万亿每天)](https://yq.aliyun.com/articles/166) ## TEST CASE 1. 平均每条记录长度360字节(比较常见的长度); 2. 时间字段创建索引; 3. 每轮测试插入12TB数据,插入完12T后清除数据继续插入。循环; 4. 测试满24小时停止测试; 5. 统计24小时插入的记录数; ## TEST 结果 24小时一共完成12轮测试,平均每轮测试耗时7071秒。 506万行/s,1.78 GB/s,全天插入4372亿,154TB数据。 ## 测试的硬件环境 ~~~ 1\. X86服务器 2\. 3?核。 3\. 5??G 内存 4\. 几块SSD,15TB容量 ~~~ ## 软件环境 ~~~ 1\. CENTOS 6.x x64 2\. xfs 3\. PostgreSQL 9.5 ~~~ ### 系统配置参考 [pgsql_perf_tuning](https://github.com/digoal/pgsql_admin_script/blob/master/pgsql_perf_tuning.md) ### 数据库配置 ~~~ ./configure --prefix=/home/digoal/pgsql9.5.1 --with-blocksize=32 --with-segsize=128 --with-wal-blocksize=32 --with-wal-segsize=64 make && make install ~~~ [PostgreSQL支持hugepage的方法](https://yq.aliyun.com/articles/8482) 参数 ~~~ listen_addresses = '0.0.0.0' # what IP address(es) to listen on; fsync=on port = 1921 # (change requires restart) max_connections = 600 # (change requires restart) superuser_reserved_connections = 13 # (change requires restart) unix_socket_directories = '.' # comma-separated list of directories unix_socket_permissions = 0700 # begin with 0 to use octal notation tcp_keepalives_idle = 60 # TCP_KEEPIDLE, in seconds; tcp_keepalives_interval = 10 # TCP_KEEPINTVL, in seconds; tcp_keepalives_count = 10 # TCP_KEEPCNT; shared_buffers = 256GB # min 128kB huge_pages = on # on, off, or try work_mem = 512MB # min 64kB maintenance_work_mem = 1GB # min 1MB autovacuum_work_mem = 1GB # min 1MB, or -1 to use maintenance_work_mem dynamic_shared_memory_type = posix # the default is the first option bgwriter_delay = 10ms # 10-10000ms between rounds bgwriter_lru_maxpages = 1000 # 0-1000 max buffers written/round bgwriter_lru_multiplier = 2.0 synchronous_commit = off # synchronization level; full_page_writes = on # recover from partial page writes wal_buffers = 2047MB # min 32kB, -1 sets based on shared_buffers wal_writer_delay = 10ms # 1-10000 milliseconds checkpoint_timeout = 55min # range 30s-1h max_wal_size = 512GB checkpoint_completion_target = 0.9 # checkpoint target duration, 0.0 - 1.0 effective_cache_size = 40GB log_destination = 'csvlog' # Valid values are combinations of logging_collector = on # Enable capturing of stderr and csvlog log_directory = 'pg_log' # directory where log files are written, log_filename = 'postgresql-%Y-%m-%d_%H%M%S.log' # log file name pattern, log_file_mode = 0600 # creation mode for log files, log_truncate_on_rotation = on # If on, an existing log file with the log_checkpoints = off log_connections = off log_disconnections = off log_error_verbosity = verbose # terse, default, or verbose messages log_timezone = 'PRC' log_autovacuum_min_duration = 0 # -1 disables, 0 logs all actions and datestyle = 'iso, mdy' timezone = 'PRC' lc_messages = 'C' # locale for system error message lc_monetary = 'C' # locale for monetary formatting lc_numeric = 'C' # locale for number formatting lc_time = 'C' # locale for time formatting default_text_search_config = 'pg_catalog.english' autovacuum=off ~~~ 创建测试表 : 每32K的block存储89条记录, 每条记录360字节。 ~~~ postgres=# select string_agg(i,'') from (select md5(random()::text) i from generate_series(1,10) t(i)) t(i); string_agg ---------------------------------------------------------------------- 53d3ec7adbeacc912a45bdd8557b435be848e4b1050dc0f5e46b75703d4745833541b5dabc177db460b6b1493961fc72c478daaaac74bcc89aec4f946a496028d9cff1cc4144f738e01ea36436455c216aa697d87fe1f87ceb49134a687dc69cba34c9951d0c9ce9ca82bba229d56874af40498dca5f d8dfb9c877546db76c35a3362d6bdba6472d3919289b6eaeeab58feb4f6e79592fc1dd8253fd4c588a29 (1 row) postgres=# create unlogged table test(crt_time timestamp, info text default '53d3ec7adbeacc912a45bdd8557b435be848e4b1050dc0f5e46b75703d4745833541b5dabc177db460b6b1493961fc72c478daaaac74bcc89aec4f946a496028d9cff1cc4144f738e01ea36436455c216aa697d87fe1f87ceb49134a687dc69cba34c9951d0c9ce9ca82bba229d56874af40498dca5f d8dfb9c877546db76c35a3362d6bdba6472d3919289b6eaeeab58feb4f6e79592fc1dd8253fd4c588a29'); postgres=# alter table test alter column info set storage plain; postgres=# insert into test select now() from generate_series(1,1000); postgres=# select ctid from test limit 1000; ~~~ 分别在3个物理块设备上创建3个表空间目录,同时在数据库中创建表空间。 tbs1, tbs2, tbs3. 创建多个分表,用于减少 block extend 冲突。 ~~~ do language plpgsql $$ declare i int; sql text; begin for i in 1..42 loop sql := 'create unlogged table test'||i||' (like test including all) tablespace tbs1'; execute sql; sql := 'create index idx_test'||i||' on test'||i||' using brin (crt_time) with (pages_per_range=512) tablespace tbs1'; execute sql; end loop; for i in 43..84 loop sql := 'create unlogged table test'||i||' (like test including all) tablespace tbs2'; execute sql; sql := 'create index idx_test'||i||' on test'||i||' using brin (crt_time) with (pages_per_range=512) tablespace tbs2'; execute sql; end loop; for i in 85..128 loop sql := 'create unlogged table test'||i||' (like test including all) tablespace tbs3'; execute sql; sql := 'create index idx_test'||i||' on test'||i||' using brin (crt_time) with (pages_per_range=512) tablespace tbs3'; execute sql; end loop; end; $$; ~~~ ## PostgreSQL 黑科技 BRIN 索引方法 这里使用的是brin范围索引,PostgreSQL 针对物联网流式数据的黑科技。 ~~~ postgres=# \di List of relations Schema | Name | Type | Owner | Table --------+-------------+-------+----------+--------- public | idx_test1 | index | postgres | test1 public | idx_test10 | index | postgres | test10 public | idx_test100 | index | postgres | test100 public | idx_test101 | index | postgres | test101 public | idx_test102 | index | postgres | test102 public | idx_test103 | index | postgres | test103 public | idx_test104 | index | postgres | test104 public | idx_test105 | index | postgres | test105 public | idx_test106 | index | postgres | test106 ...... ...... public | idx_test90 | index | postgres | test90 public | idx_test91 | index | postgres | test91 public | idx_test92 | index | postgres | test92 public | idx_test93 | index | postgres | test93 public | idx_test94 | index | postgres | test94 public | idx_test95 | index | postgres | test95 public | idx_test96 | index | postgres | test96 public | idx_test97 | index | postgres | test97 public | idx_test98 | index | postgres | test98 public | idx_test99 | index | postgres | test99 (128 rows) ~~~ 生成测试脚本, 一个连接一次插入178条记录,占用2个32KB的block : ~~~ vi test.sql insert into test(crt_time) values (now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()),(now()); for ((i=1;i<=128;i++)) do sed "s/test/test$i/" test.sql > ./test$i.sql; done ~~~ 开始测试前清除数据: ~~~ do language plpgsql $$ declare i int; sql text; begin for i in 1..128 loop sql := 'truncate test'||i; execute sql; end loop; end; $$; ~~~ 测试方法: 每轮测试插入12TB数据。通过以下方式控制: 1. 使用128个并行连接,每个连接执行1572864个事务; 2. 一共执行201326592个事务(每个事务插入178条记录); 3. 一共插入35836133376条记录(358.36 亿记录)(共计12TB 数据,索引空间另算)。 进行下一轮测试前,输出日志,并TRUNCATE所有的数据,然后重复以上测试。直到测试满24小时,输出统计数据。 测试脚本如下 : ~~~ vi test.sh #!/bin/bash if [ $# -ne 5 ]; then echo "please use: $0 ip port dbname user pwd" exit 1 fi IP=$1 PORT=$2 DBNAME=$3 USER=$4 PASSWORD=$5 export PGPASSWORD=$PASSWORD DEP_CMD="psql" which $DEP_CMD if [ $? -ne 0 ]; then echo -e "dep commands: $DEP_CMD not exist." exit 1 fi truncate() { psql -h $IP -p $PORT -U $USER $DBNAME <<EOF do language plpgsql \$\$ declare i int; sql text; begin for i in 1..128 loop sql := 'truncate test'||i; execute sql; end loop; end; \$\$; checkpoint; \q EOF } # truncate data first truncate START=`date +%s` echo "`date +%F%T` $START" for ((x=1;x>0;x++)) do # ------------------------------------------------------ echo "Round $x test start: `date +%F%T` `date +%s`" for ((i=1;i<=128;i++)) do pgbench -M prepared -n -r -f ./test$i.sql -h $IP -p $PORT -U $USER $DBNAME -c 1 -j 1 -t 1572864 >>./$i.log 2>&1 & done wait echo "Round $x test end: `date +%F%T` `date +%s`" # ------------------------------------------------------ if [ $((`date +%s`-$START)) -gt 86400 ]; then echo "end `date +%F%T` `date +%s`" echo "duration second: $((`date +%s`-$START))" exit 0 fi echo "Round $x test end, start truncate `date +%F%T` `date +%s`" truncate echo "Round $x test end, end truncate `date +%F%T` `date +%s`" done ~~~ 测试 ~~~ nohup ./test.sh xxx.xxx.xxx.xxx 1921 postgres postgres postgres >./test.log 2>&1 & ~~~ ## 查询性能(索引能力) ~~~ postgres=# select min(crt_time),max(crt_time) from test1; min | max ----------------------------+---------------------------- 2016-04-08 00:32:26.842728 | 2016-04-08 02:29:41.583367 (1 row) postgres=# explain select count(*) from test1 where crt_time between '2016-04-08 00:32:00' and '2016-04-08 00:33:00'; QUERY PLAN ------------------------------------------------------------------------------------------------------------------------------------------------------------------- Aggregate (cost=1183919.81..1183919.82 rows=1 width=0) -> Bitmap Heap Scan on test1 (cost=14351.45..1180420.19 rows=1399849 width=0) Recheck Cond: ((crt_time >= '2016-04-08 00:32:00'::timestamp without time zone) AND (crt_time <= '2016-04-08 00:33:00'::timestamp without time zone)) -> Bitmap Index Scan on idx_test1 (cost=0.00..14001.49 rows=1399849 width=0) Index Cond: ((crt_time >= '2016-04-08 00:32:00'::timestamp without time zone) AND (crt_time <= '2016-04-08 00:33:00'::timestamp without time zone)) (5 rows) Time: 0.382 ms postgres=# select count(*) from test1 where crt_time between '2016-04-08 00:32:00' and '2016-04-08 00:33:00'; count --------- 2857968 (1 row) Time: 554.474 ms ~~~ ## 小结 1. 这个CASE主要的应用场景是实时的大数据入库,例如物联网的应用场景,大量的传感器会产生庞大的数据。 又比如传统的运营商网关,也会有非常庞大的流量数据或业务数据需要实时的入库。索引方面,用到了PostgreSQL黑科技BRIN。 2. 除了实时入库,用户如果需要流式实时处理,可以参考基于PostgreSQL的流式处理方案,一天处理1万亿的实时流式处理是如何实现的?[PostgreSQL “物联网”应用 - 1 实时流式数据处理案例(万亿每天)](https://yq.aliyun.com/articles/166) 3. 瓶颈, 还是在IO上面 , 有几个表现,TOP大量进程处于D(front io)状态 。 ~~~ w: S -- Process Status The status of the task which can be one of: ’D’ = uninterruptible sleep ’R’ = running ’S’ = sleeping ’T’ = traced or stopped ’Z’ = zombie ~~~ 所有块设备的使用率均达100% 。 清理数据时 : ~~~ Device: rrqm/s wrqm/s r/s w/s rsec/s wsec/s avgrq-sz avgqu-sz await svctm %util dfa 0.00 0.00 5807.39 167576.65 1464080.93 1340613.23 16.18 535.69 3.02 0.01 116.77 dfb 0.00 0.00 5975.10 185132.68 1506714.40 1481061.48 15.63 459.46 2.32 0.01 110.62 dfc 0.00 0.00 5715.56 182584.05 1440771.98 1460672.37 15.41 568.02 2.93 0.01 112.37 ~~~ 插入数据时: ~~~ Device: rrqm/s wrqm/s r/s w/s rsec/s wsec/s avgrq-sz avgqu-sz await svctm %util dfa 0.00 0.00 0.00 235936.00 0.00 1887488.00 8.00 2676.34 11.17 0.00 99.10 dfb 0.00 0.00 0.00 237621.00 0.00 1900968.00 8.00 66.02 0.10 0.00 99.10 dfc 0.00 0.00 0.00 239830.00 0.00 1918632.00 8.00 10.66 0.04 0.00 101.30 ~~~ IO层面的性能问题,可以通过优化代码(例如 PostgreSQL bgwriter 在写出数据时,尽量顺序写出),便于OS层进行IO合并,来缓解IO压力,从这个信息来看,单次写IO的大小还可以再大点。 有几个工具你可能用得上,perf、systemtap和goprof。如果要较全面的分析,建议把 PostgreSQL –enable-profiling 打开用于诊断。