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概述
- 定义
- 特性
- 何时使用
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部署
-
Local安装
- 快速启动
- 手动设置集群
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Docker安装
- 快速启动
- 手动启动集群
- Docker Compose
-
Local安装
-
实操
- 批导入数据
- 流式导入数据
概述
定义
Apache Pinot 官网地址 https://pinot.apache.org/ 最新版本0.12.1
Apache Pinot 官网文档地址 https://docs.pinot.apache.org/
Apache Pinot 源码地址 https://github.com/apache/pinot
Apache Pinot是一个实时分布式OLAP数据存储,专为低延迟高吞吐量分析而构建,非常适合面向用户的分析的工作。Pinot 携手 Kafka 和 Presto 提供面向用户的分析。
Pinot可直接从流数据源(如Apache Kafka和Amazon Kinesis)中摄取数据,基于实时事件实现即时的查询。还可以从批处理数据源中摄取数据,如Hadoop HDFS、Amazon S3、Azure ADLS和谷歌云存储。核心采用列式存储,基于智能索引和预聚合技术实现低延迟;还提供内部仪表板、异常检测和临时数据探索。
特性
Pinot最初是在LinkedIn上构建的,用于支持丰富的交互式实时分析应用程序,如Who Viewed Profile, Company Analytics, Talent Insights等等。
- 面向列:面向列的存储技术,并提供各种压缩方案。
- 可插索引:可插拔的索引技术,支持排序索引、位图索引、倒排索引。
- 查询优化:能够基于查询和段元数据优化查询/执行计划。
- 来自Kafka、Kinesis等流的近实时摄取,以及来自Hadoop、S3、Azure、GCS等源的批量摄取
- 类似sql的语言,支持对数据的选择、聚合、过滤、分组、排序和不同的查询。
- 支持多值字段
- 水平可扩展和容错
何时使用
Pinot旨在为大型数据集提供低延迟查询;为了实现这一性能,Pinot以列式格式存储数据,并添加额外的索引来执行快速过滤、聚合和分组。原始数据被分解成小的数据碎片,每个碎片被转换成一个称为段的单位。一个或多个段一起形成一个表,这是使用SQL/PQL查询Pinot的逻辑容器。Pinot非常适合查询具有许多维度和指标的时间序列数据。Pinot不是数据库的替代品,也即是它不能用作真值存储的来源,不能改变数据。虽然Pinot支持文本搜索,但它并不能取代搜索引擎。此外,默认情况下,Pinot查询不能跨多个表,但可以使用Trino-Pinot连接器或preto-pinot连接器来实现表连接和其他功能。主要使用场景如下:
- 面向用户分析的产品
- 用于业务指标的实时仪表板
- 异常检测
部署
Local安装
快速启动
# 下载Pinot发行版最新版本0.12.1,需要JDK11或以上版本,JDK16除外
PINOT_VERSION=0.12.1
wget https://downloads.apache.org/pinot/apache-pinot-$PINOT_VERSION/apache-pinot-$PINOT_VERSION-bin.tar.gz
# 解压文件
tar -zxvf apache-pinot-$PINOT_VERSION-bin.tar.gz
# 导航到包含启动程序脚本的目录:
cd apache-pinot-$PINOT_VERSION-bin
# 有两种方法启动:快速启动或手动设置集群。
# Pinot附带快速启动命令,可以在同一进程中启动Pinot组件实例,并导入预构建的数据集。下面的快速启动命令启动预装棒球数据集的Pinot,所有可用的快速入门命令列表请参见快速入门示例。
./bin/pinot-admin.sh QuickStart -type batch
手动设置集群
# 如果想处理更大的数据集(超过几兆字节),可以单独启动Pinot各个组件,并将它们扩展到多个实例
# 启动Zookeeper
./bin/pinot-admin.sh StartZookeeper
-zkPort 2191
# 启动Pinot Controller
export JAVA_OPTS="-Xms4G -Xmx8G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-controller.log"
./bin/pinot-admin.sh StartController
-zkAddress localhost:2191
-controllerPort 9000
# 启动Pinot Broker
export JAVA_OPTS="-Xms4G -Xmx4G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-broker.log"
./bin/pinot-admin.sh StartBroker
-zkAddress localhost:2191
# 启动Pinot Server
export JAVA_OPTS="-Xms4G -Xmx16G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-server.log"
./bin/pinot-admin.sh StartServer
-zkAddress localhost:2191
# 启动Kafka
./bin/pinot-admin.sh StartKafka
-zkAddress=localhost:2191/kafka
-port 19092
Docker安装
快速启动
# 启动Apache Zookeeper、Pinot Controller、Pinot Broker和Pinot Server。创建baseballStats表启动一个独立的数据摄取作业,为baseballStats表的给定CSV数据文件构建一个段,并将该段推到Pinot Controller。向Pinot发出示例查询
docker run
-p 9000:9000
apachepinot/pinot:0.12.1 QuickStart
-type batch
启动完后生成示例数据,可以通过查询控制台进行SQL编辑查询,显示查询结果并可以导出EXCEL和CSV格式文件。
官方还提供多种多种数据类型格式样例数据,比如JSON
# 启动Apache Zookeeper、Pinot Controller、Pinot Broker和Pinot Server。创建githubEvents表启动一个独立的数据摄取作业,为githubEvents表的给定JSON数据文件构建一个段,并将该段推到Pinot Controller。向Pinot发出示例查询
docker run
-p 9000:9000
apachepinot/pinot:0.12.1 QuickStart
-type batch_json_index
还提供其他流式、Upsert、混合的类型,各位有兴趣可以详细查看
docker run
-p 9000:9000
apachepinot/pinot:0.12.1 QuickStart
-type batch_complex_type
docker run
-p 9000:9000
apachepinot/pinot:0.12.1 QuickStart
-type stream
docker run
-p 9000:9000
apachepinot/pinot:0.12.1 QuickStart
-type realtime_minion
docker run
-p 9000:9000
apachepinot/pinot:latest QuickStart
-type stream_complex_type
docker run
-p 9000:9000
apachepinot/pinot:latest QuickStart
-type upsert
docker run
-p 9000:9000
apachepinot/pinot:latest QuickStart
-type upsert_json_index
docker run
-p 9000:9000
apachepinot/pinot:latest QuickStart
-type hybrid
docker run
-p 9000:9000
apachepinot/pinot:latest QuickStart
-type join
手动启动集群
# 创建网络,在docker中创建一个隔离的桥接网络
docker network create -d bridge pinot-demo
# 启动 Zookeeper,以daemon模式启动Zookeeper。这是一个单节点zookeeper设置。Zookeeper是Pinot的中央元数据存储,应该设置为用于生产的复制。更多信息请参见运行复制的Zookeeper。
docker run
--network=pinot-demo
--name pinot-zookeeper
--restart always
-p 2181:2181
-d zookeeper:3.5.6
# 启动 Pinot Controller,在守护进程中启动Pinot Controller并连接到Zookeeper。下面的命令需要一个4GB的内存容器。如果您的机器没有足够的资源,那么就调整- xms和xmx。
docker run --rm -ti
--network=pinot-demo
--name pinot-controller
-p 9000:9000
-e JAVA_OPTS="-Dplugins.dir=/opt/pinot/plugins -Xms1G -Xmx4G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-controller.log"
-d ${PINOT_IMAGE} StartController
-zkAddress pinot-zookeeper:2181
# 启动 Pinot Broker,在守护进程中启动Pinot Broker并连接到Zookeeper。下面的命令需要一个4GB的内存容器。如果您的机器没有足够的资源,那么就调整- xms和xmx。
docker run --rm -ti
--network=pinot-demo
--name pinot-broker
-p 8099:8099
-e JAVA_OPTS="-Dplugins.dir=/opt/pinot/plugins -Xms4G -Xmx4G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-broker.log"
-d ${PINOT_IMAGE} StartBroker
-zkAddress pinot-zookeeper:2181
# 启动 Pinot Server,在守护进程中启动Pinot服务器并连接到Zookeeper。下面的命令需要一个16GB的内存容器。如果您的机器没有足够的资源,那么就调整- xms和xmx。
docker run --rm -ti
--network=pinot-demo
--name pinot-server
-p 8098:8098
-e JAVA_OPTS="-Dplugins.dir=/opt/pinot/plugins -Xms4G -Xmx16G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-server.log"
-d ${PINOT_IMAGE} StartServer
-zkAddress pinot-zookeeper:2181
# 启动 Kafka,你也可以选择启动Kafka来设置实时流。这会在端口9092上打开Kafka代理。
docker run --rm -ti
--network pinot-demo --name=kafka
-e KAFKA_ZOOKEEPER_CONNECT=pinot-zookeeper:2181/kafka
-e KAFKA_BROKER_ID=0
-e KAFKA_ADVERTISED_HOST_NAME=kafka
-p 9092:9092
-d bitnami/kafka:latest
# 查看运行容器
docker container ls -a
Docker Compose
创建docker-compose.yml文件内容如下
version: '3.7'
services:
pinot-zookeeper:
image: zookeeper:3.5.6
container_name: pinot-zookeeper
ports:
- "2181:2181"
environment:
ZOOKEEPER_CLIENT_PORT: 2181
ZOOKEEPER_TICK_TIME: 2000
pinot-controller:
image: apachepinot/pinot:0.12.1
command: "StartController -zkAddress pinot-zookeeper:2181"
container_name: pinot-controller
restart: unless-stopped
ports:
- "9000:9000"
environment:
JAVA_OPTS: "-Dplugins.dir=/opt/pinot/plugins -Xms1G -Xmx4G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-controller.log"
depends_on:
- pinot-zookeeper
pinot-broker:
image: apachepinot/pinot:0.12.1
command: "StartBroker -zkAddress pinot-zookeeper:2181"
restart: unless-stopped
container_name: "pinot-broker"
ports:
- "8099:8099"
environment:
JAVA_OPTS: "-Dplugins.dir=/opt/pinot/plugins -Xms4G -Xmx4G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-broker.log"
depends_on:
- pinot-controller
pinot-server:
image: apachepinot/pinot:0.12.1
command: "StartServer -zkAddress pinot-zookeeper:2181"
restart: unless-stopped
container_name: "pinot-server"
ports:
- "8098:8098"
environment:
JAVA_OPTS: "-Dplugins.dir=/opt/pinot/plugins -Xms4G -Xmx16G -XX:+UseG1GC -XX:MaxGCPauseMillis=200 -Xloggc:gc-pinot-server.log"
depends_on:
- pinot-broker
运行docker-compose命令启动所有组件
docker-compose --project-name pinot-demo up
访问9000端口管理端点,http://mypinot:9000/
实操
批导入数据
- 准备数据
# 创建数据目录mkdir -p /tmp/pinot-quick-start/rawdata# 支持的文件格式有CSV、JSON、AVRO、PARQUET、THRIFT、ORC。创建一个/tmp/pinot-quick-start/rawdata/transcript.csv文件,内容如下studentID,firstName,lastName,gender,subject,score,timestampInEpoch200,Lucy,Smith,Female,Maths,3.8,1570863600000200,Lucy,Smith,Female,English,3.5,1571036400000201,Bob,King,Male,Maths,3.2,1571900400000202,Nick,Young,Male,Physics,3.6,1572418800000
- 创建Schema:模式用于定义Pinot表的列和数据类型。模式的详细概述可以在schema中找到。简单地说,将列分为3种类型
列类型 | 描述 |
---|---|
维度列 | 通常用于过滤器和分组by,用于对数据进行切片和切块 |
度量列 | 通常用于聚合,表示定量数据 |
时间 | 可选列,表示与每行关联的时间戳 |
例如,在上面数据中,studententid、firstName、lastName、gender、subject列是维度列,score列是度量列,timestampInEpoch是时间列。确定了维度、指标和时间列,使用下面的参考为数据创建一个schema,创建/tmp/pinot-quick-start/transcript-schema.json
{ "schemaName": "transcript", "dimensionFieldSpecs": [ { "name": "studentID", "dataType": "INT" }, { "name": "firstName", "dataType": "STRING" }, { "name": "lastName", "dataType": "STRING" }, { "name": "gender", "dataType": "STRING" }, { "name": "subject", "dataType": "STRING" } ], "metricFieldSpecs": [ { "name": "score", "dataType": "FLOAT" } ], "dateTimeFieldSpecs": [{ "name": "timestampInEpoch", "dataType": "LONG", "format" : "1:MILLISECONDS:EPOCH", "granularity": "1:MILLISECONDS" }]}
- 创建表配置:表配置用于定义与Pinot表相关的配置。该表的详细概述可以在表中找到。下面是上面CSV数据文件的表配置,创建表配置文件/tmp/pinot-quick-start/transcript-table-offline.json
{ "tableName": "transcript", "segmentsConfig" : { "timeColumnName": "timestampInEpoch", "timeType": "MILLISECONDS", "replication" : "1", "schemaName" : "transcript" }, "tableIndexConfig" : { "invertedIndexColumns" : [], "loadMode" : "MMAP" }, "tenants" : { "broker":"DefaultTenant", "server":"DefaultTenant" }, "tableType":"OFFLINE", "metadata": {}}
- 上传表配置和Schema
# 前面是通过docker网络创建,确保可以访问controllerHost(manual-pinot-controller为可以访问主机名、容器、IP)和controllerPort端口即可docker run --rm -ti --network=pinot-demo -v /tmp/pinot-quick-start:/tmp/pinot-quick-start --name pinot-batch-table-creation apachepinot/pinot:0.12.1 AddTable -schemaFile /tmp/pinot-quick-start/transcript-schema.json -tableConfigFile /tmp/pinot-quick-start/transcript-table-offline.json -controllerHost manual-pinot-controller -controllerPort 9000 -exec
可以通过检查Rest API中的表配置和模式,以确保它已成功上传。
- 创建段:Pinot表的数据存储为Pinot段。段的详细概述可以在段中找到。为了生成一个段,首先需要创建一个作业规范yaml文件。JobSpec yaml文件包含有关数据格式、输入数据位置和pinot集群坐标的所有信息。创建/tmp/pinot-quick-start/docker-job-spec.yml文件,内容如下
executionFrameworkSpec: name: 'standalone' segmentGenerationJobRunnerClassName: 'org.apache.pinot.plugin.ingestion.batch.standalone.SegmentGenerationJobRunner' segmentTarPushJobRunnerClassName: 'org.apache.pinot.plugin.ingestion.batch.standalone.SegmentTarPushJobRunner' segmentUriPushJobRunnerClassName: 'org.apache.pinot.plugin.ingestion.batch.standalone.SegmentUriPushJobRunner'jobType: SegmentCreationAndTarPushinputDirURI: '/tmp/pinot-quick-start/rawdata/'includeFileNamePattern: 'glob:**/*.csv'outputDirURI: '/tmp/pinot-quick-start/segments/'overwriteOutput: truepinotFSSpecs: - scheme: file className: org.apache.pinot.spi.filesystem.LocalPinotFSrecordReaderSpec: dataFormat: 'csv' className: 'org.apache.pinot.plugin.inputformat.csv.CSVRecordReader' configClassName: 'org.apache.pinot.plugin.inputformat.csv.CSVRecordReaderConfig'tableSpec: tableName: 'transcript' schemaURI: 'http://manual-pinot-controller:9000/tables/transcript/schema' tableConfigURI: 'http://manual-pinot-controller:9000/tables/transcript'pinotClusterSpecs: - controllerURI: 'http://manual-pinot-controller:9000'
使用以下命令生成一个段并上传
docker run --rm -ti --network=pinot-demo -v /tmp/pinot-quick-start:/tmp/pinot-quick-start --name pinot-data-ingestion-job apachepinot/pinot:0.12.1 LaunchDataIngestionJob -jobSpecFile /tmp/pinot-quick-start/docker-job-spec.yml
流式导入数据
- 创建Kafka和主题
# 首先,需要设置一个流。Pinot为Kafka提供了开箱即用的实时摄取支持。在本地设置一个演示Kafka集群,并创建一个示例主题转录主题docker run --rm -ti --network pinot-demo --name=kafka -e KAFKA_ZOOKEEPER_CONNECT=pinot-zookeeper:2181/kafka -e ALLOW_PLAINTEXT_LISTENER=yes -e KAFKA_BROKER_ID=0 -e KAFKA_ADVERTISED_HOST_NAME=kafka -p 9092:9092 -d bitnami/kafka:latest # 创建一个Kafka主题docker exec -t kafka /opt/bitnami/kafka/bin/kafka-topics.sh --bootstrap-server kafka:9092 --partitions=1 --replication-factor=1 --create --topic transcript-topic
- 创建表配置,创建/tmp/pinot-quick-start/transcript-table-realtime.json文件,内容如下
{ "tableName": "transcript", "tableType": "REALTIME", "segmentsConfig": { "timeColumnName": "timestampInEpoch", "timeType": "MILLISECONDS", "schemaName": "transcript", "replicasPerPartition": "1" }, "tenants": {}, "tableIndexConfig": { "loadMode": "MMAP", "streamConfigs": { "streamType": "kafka", "stream.kafka.consumer.type": "lowlevel", "stream.kafka.topic.name": "transcript-topic", "stream.kafka.decoder.class.name": "org.apache.pinot.plugin.stream.kafka.KafkaJSONMessageDecoder", "stream.kafka.consumer.factory.class.name": "org.apache.pinot.plugin.stream.kafka20.KafkaConsumerFactory", "stream.kafka.broker.list": "kafka:9092", "realtime.segment.flush.threshold.rows": "0", "realtime.segment.flush.threshold.time": "24h", "realtime.segment.flush.threshold.segment.size": "50M", "stream.kafka.consumer.prop.auto.offset.reset": "smallest" } }, "metadata": { "customConfigs": {} }}
- 上传Schema和表配置
docker run --network=pinot-demo -v /tmp/pinot-quick-start:/tmp/pinot-quick-start --name pinot-streaming-table-creation apachepinot/pinot:0.12.1 AddTable -schemaFile /tmp/pinot-quick-start/transcript-schema.json -tableConfigFile /tmp/pinot-quick-start/transcript-table-realtime.json -controllerHost pinot-controller -controllerPort 9000 -exec
- 创建数据文件用于kafka生产者发送,/tmp/pinot-quick-start/rawdata/transcript.json,内容如下
{"studentID":205,"firstName":"Natalie","lastName":"Jones","gender":"Female","subject":"Maths","score":3.8,"timestampInEpoch":1571900400000}{"studentID":205,"firstName":"Natalie","lastName":"Jones","gender":"Female","subject":"History","score":3.5,"timestampInEpoch":1571900400000}{"studentID":207,"firstName":"Bob","lastName":"Lewis","gender":"Male","subject":"Maths","score":3.2,"timestampInEpoch":1571900400000}{"studentID":207,"firstName":"Bob","lastName":"Lewis","gender":"Male","subject":"Chemistry","score":3.6,"timestampInEpoch":1572418800000}{"studentID":209,"firstName":"Jane","lastName":"Doe","gender":"Female","subject":"Geography","score":3.8,"timestampInEpoch":1572505200000}{"studentID":209,"firstName":"Jane","lastName":"Doe","gender":"Female","subject":"English","score":3.5,"timestampInEpoch":1572505200000}{"studentID":209,"firstName":"Jane","lastName":"Doe","gender":"Female","subject":"Maths","score":3.2,"timestampInEpoch":1572678000000}{"studentID":209,"firstName":"Jane","lastName":"Doe","gender":"Female","subject":"Physics","score":3.6,"timestampInEpoch":1572678000000}{"studentID":211,"firstName":"John","lastName":"Doe","gender":"Male","subject":"Maths","score":3.8,"timestampInEpoch":1572678000000}{"studentID":211,"firstName":"John","lastName":"Doe","gender":"Male","subject":"English","score":3.5,"timestampInEpoch":1572678000000}{"studentID":211,"firstName":"John","lastName":"Doe","gender":"Male","subject":"History","score":3.2,"timestampInEpoch":1572854400000}{"studentID":212,"firstName":"Nick","lastName":"Young","gender":"Male","subject":"History","score":3.6,"timestampInEpoch":1572854400000}
将示例JSON推入Kafka主题,使用从Kafka下载的Kafka脚本
bin/kafka-console-producer.sh --bootstrap-server kafka:9092 --topic transcript-topic
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