本文通过示例为您介绍,如何快速将数据随机写入ClickHouse集群各个节点的本地表。
前提条件
已创建ClickHouse集群,详情请参见创建ClickHouse集群。
操作步骤
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使用SSH方式登录ClickHouse集群,详情请参见登录集群。
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执行以下命令,下载官方样例数据集。
curl https://datasets.clickhouse.com/hits/tsv/hits_v1.tsv.xz | unxz --threads=`nproc` > hits_v1.tsv -
执行如下命令,启动ClickHouse客户端。
clickhouse-client -h core-1-1 -m说明本示例登录core-1-1节点,如果您有多个Core节点,可以登录任意一个节点。
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执行如下命令,创建数据库。
可以使用on CLUSTER参数在集群的所有节点创建数据库,默认集群标识为cluster_emr。
CREATE DATABASE IF NOT EXISTS demo on CLUSTER cluster_emr;返回信息如下所示。
core-1-1.c-2ecd13e05xxx cn-hangzhou.emr.aliyuncs.com :) CREATE DATABASE IF NOT EXISTS demo on CLUSTER cluster_emr; CREATE DATABASE IF NOT EXISTS demo ON CLUSTER cluster_emr Query id: ecf856dc-3490-498a-8368-386f38dcxxx ┌─host──────────────────────────────────────────────────┬─port─┬─status─┬─error─┬─num_hosts_remaining─┬─num_hosts_active─┐ │ core-1-1.c-2ecd13e05xxx.cn-hangzhou.emr.aliyuncs.com │ 9000 │ 0 │ │ 0 │ 0 │ └───────────────────────────────────────────────────────┴──────┴────────┴───────┴─────────────────────┴──────────────────┘ 1 rows in set. Elapsed: 0.123 sec.core-1-1.c-2ecd13e05xxx cn-hangzhou.emr.aliyuncs.com :) CREATE DATABASE IF NOT EXISTS demo on CLUSTER cluster_emr; CREATE DATABASE IF NOT EXISTS demo ON CLUSTER cluster_emr Query id: ecf856dc-3490-498a-8368-386f38dcxxx ┌─host──────────────────────────────────────────────────┬─port─┬─status─┬─error─┬─num_hosts_remaining─┬─num_hosts_active─┐ │ core-1-1.c-2ecd13e05xxx.cn-hangzhou.emr.aliyuncs.com │ 9000 │ 0 │ │ 0 │ 0 │ └───────────────────────────────────────────────────────┴──────┴────────┴───────┴─────────────────────┴──────────────────┘ 1 rows in set. Elapsed: 0.123 sec.
在集群上的所有节点创建一张复制表(Replicated表)。
复制表(Replicated表)会根据副本的个数,实现数据的多副本,并实现数据的最终一致性。
CREATE TABLE demo.hits_local ON CLUSTER cluster_emr
(
`WatchID` UInt64,
`JavaEnable` UInt8,
`Title` String,
`GoodEvent` Int16,
`EventTime` DateTime,
`EventDate` Date,
`CounterID` UInt32,
`ClientIP` UInt32,
`ClientIP6` FixedString(16),
`RegionID` UInt32,
`UserID` UInt64,
`CounterClass` Int8,
`OS` UInt8,
`UserAgent` UInt8,
`URL` String,
`Referer` String,
`URLDomain` String,
`RefererDomain` String,
`Refresh` UInt8,
`IsRobot` UInt8,
`RefererCategories` Array(UInt16),
`URLCategories` Array(UInt16),
`URLRegions` Array(UInt32),
`RefererRegions` Array(UInt32),
`ResolutionWidth` UInt16,
`ResolutionHeight` UInt16,
`ResolutionDepth` UInt8,
`FlashMajor` UInt8,
`FlashMinor` UInt8,
`FlashMinor2` String,
`NetMajor` UInt8,
`NetMinor` UInt8,
`UserAgentMajor` UInt16,
`UserAgentMinor` FixedString(2),
`CookieEnable` UInt8,
`JavascriptEnable` UInt8,
`IsMobile` UInt8,
`MobilePhone` UInt8,
`MobilePhoneModel` String,
`Params` String,
`IPNetworkID` UInt32,
`TraficSourceID` Int8,
`SearchEngineID` UInt16,
`SearchPhrase` String,
`AdvEngineID` UInt8,
`IsArtifical` UInt8,
`WindowClientWidth` UInt16,
`WindowClientHeight` UInt16,
`ClientTimeZone` Int16,
`ClientEventTime` DateTime,
`SilverlightVersion1` UInt8,
`SilverlightVersion2` UInt8,
`SilverlightVersion3` UInt32,
`SilverlightVersion4` UInt16,
`PageCharset` String,
`CodeVersion` UInt32,
`IsLink` UInt8,
`IsDownload` UInt8,
`IsNotBounce` UInt8,
`FUniqID` UInt64,
`HID` UInt32,
`IsOldCounter` UInt8,
`IsEvent` UInt8,
`IsParameter` UInt8,
`DontCountHits` UInt8,
`WithHash` UInt8,
`HitColor` FixedString(1),
`UTCEventTime` DateTime,
`Age` UInt8,
`Sex` UInt8,
`Income` UInt8,
`Interests` UInt16,
`Robotness` UInt8,
`GeneralInterests` Array(UInt16),
`RemoteIP` UInt32,
`RemoteIP6` FixedString(16),
`WindowName` Int32,
`OpenerName` Int32,
`HistoryLength` Int16,
`BrowserLanguage` FixedString(2),
`BrowserCountry` FixedString(2),
`SocialNetwork` String,
`SocialAction` String,
`HTTPError` UInt16,
`SendTiming` Int32,
`DNSTiming` Int32,
`ConnectTiming` Int32,
`ResponseStartTiming` Int32,
`ResponseEndTiming` Int32,
`FetchTiming` Int32,
`RedirectTiming` Int32,
`DOMInteractiveTiming` Int32,
`DOMContentLoadedTiming` Int32,
`DOMCompleteTiming` Int32,
`LoadEventStartTiming` Int32,
`LoadEventEndTiming` Int32,
`NSToDOMContentLoadedTiming` Int32,
`FirstPaintTiming` Int32,
`RedirectCount` Int8,
`SocialSourceNetworkID` UInt8,
`SocialSourcePage` String,
`ParamPrice` Int64,
`ParamOrderID` String,
`ParamCurrency` FixedString(3),
`ParamCurrencyID` UInt16,
`GoalsReached` Array(UInt32),
`OpenstatServiceName` String,
`OpenstatCampaignID` String,
`OpenstatAdID` String,
`OpenstatSourceID` String,
`UTMSource` String,
`UTMMedium` String,
`UTMCampaign` String,
`UTMContent` String,
`UTMTerm` String,
`FromTag` String,
`HasGCLID` UInt8,
`RefererHash` UInt64,
`URLHash` UInt64,
`CLID` UInt32,
`YCLID` UInt64,
`ShareService` String,
`ShareURL` String,
`ShareTitle` String,
`ParsedParams` Nested(Key1 String,Key2 String,Key3 String,Key4 String,Key5 String,ValueDouble Float64),
`IslandID` FixedString(16),
`RequestNum` UInt32,
`RequestTry` UInt8
)
ENGINE = ReplicatedMergeTree('/clickhouse/tables/{shard}/{database}/hits_local', '{replica}')
PARTITION BY toYYYYMM(EventDate)
ORDER BY (CounterID, EventDate, intHash32(UserID))
SAMPLE BY intHash32(UserID);
{shard}和{replica}是阿里云EMR为ClickHouse集群自动生成的宏定义,可以直接使用。
执行以下命令,创建分布式(Distributed)表。
分布式表不存储数据,仅仅是底层表的一个View,但可以在多个服务器上进行分布式查询。本例中使用随机函数rand(),表示数据会随机写入各个节点的本地表。
CREATE TABLE demo.hits_all on CLUSTER cluster_emr AS demo.hits_local
ENGINE = Distributed(cluster_emr, demo, hits_local, rand());
退出ClickHouse客户端,在样例数据的目录下执行以下命令,导入数据。
clickhouse-client -h core-1-1 --query "INSERT INTO demo.hits_all FORMAT TSV" --max_insert_block_size=100000 < hits_v1.tsv;重新启动ClickHouse客户端,查看数据。
因为数据是随机写入的,各节点数据量可能不同。
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查看core-1-1节点demo.hits_all的数据量。
select count(*) from demo.hits_all; -
查看core-1-1节点demo.hits_local的数据量。
select count(*) from demo.hits_local; -
查看core-1-2节点demo.hits_local的数据量。
说明其余节点,您也可以按照以下步骤来查看demo.hits_local的数据量。节点名称您可以在EMR控制台的节点管理页面查看。
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执行以下命令,登录ClickHouse客户端。
clickhouse-client -h core-1-2 -m -
在ClickHouse客户端,执行以下命令,查看demo.hits_local的数据量。
select count(*) from demo.hits_local;
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