SlideShare una empresa de Scribd logo
1 de 42
Descargar para leer sin conexión
Scaling Massive ElasticSearch
          Clusters

    Rafał Kuć – Sematext International
   @kucrafal @sematext sematext.com
Who Am I
•   „Solr 3.1 Cookbook” author
•   Sematext software engineer
•   Solr.pl co-founder
•   Father and husband :-)




                Copyright 2012 Sematext Int’l. All rights reserved
What Will I Talk About ?
•   ElasticSearch scaling
•   Indexing thousands of documents per second
•   Performing queries in tens of milliseconds
•   Controling shard and replica placement
•   Handling multilingual content
•   Performance testing
•   Cluster monitoring

                Copyright 2012 Sematext Int’l. All rights reserved
The Challenge
•   More than 50 millions of documents a day
•   Real time search
•   Less than 200ms average query latency
•   Throughput of at least 1000 QPS
•   Multilingual indexing
•   Multilingual querying



                Copyright 2012 Sematext Int’l. All rights reserved
Why ElasticSearch ?
• Written with NRT and cloud support in mind
• Uses Lucene and all its goodness
• Distributed indexing with document
  distribution control out of the box
• Easy index, shard and replicas creation on live
  cluster



               Copyright 2012 Sematext Int’l. All rights reserved
Index Design
• Several indices (at least one index for each day
  of data)
• Indices divided into multiple shards
• Multiple replicas of a single shard
• Real-time, synchronous replication
• Near-real-time index refresh (1 to 30 seconds)



               Copyright 2012 Sematext Int’l. All rights reserved
Shard Deployment Problems
•   Multiple shards per node
•   Replicas on the same nodes as shards
•   Not evenly distributed shards and replicas
•   Some nodes being hot, while others are cold




                Copyright 2012 Sematext Int’l. All rights reserved
Default Shard Deployment

 Shard 1       Shard 2                         Shard 3            Replica 1


              Replica 2
Node 1                                      Node 2




                    Replica 3



                  Node 3
ElasticSearch Cluster

                   Copyright 2012 Sematext Int’l. All rights reserved
What Can We Do With Shards Then ?
• Contol shard placement with node tags:
  – index.routing.allocation.include.tag
  – index.routing.allocation.exclude.tag
• Control shard placement with nodes IP
  addresses:
  – cluster.routing.allocation.include._ip
  – cluster.routing.allocation.exclude._ip
• Specified on index or cluster level
• Can be changed on live cluster !
                Copyright 2012 Sematext Int’l. All rights reserved
Shard Allocation Examples
• Cluster level:
curl -XPUT localhost:9200/_cluster/settings -d '{
   "persistent" : {
     "cluster.routing.allocation.exclude._ip" : "192.168.2.1"
   }
}'
• Index level:
curl -XPUT localhost:9200/sematext/ -d '{
   "index.routing.allocation.include.tag" : "nodeOne,nodeTwo"
}'

                    Copyright 2012 Sematext Int’l. All rights reserved
Number of Shards Per Node
• Allows one to specify number of shards per
  node
• Specified on index level
• Can be changed on live indices
• Example:
curl -XPUT localhost:9200/sematext -d '{
   "index.routing.allocation.total_shards_per_node" : 2
}'


                   Copyright 2012 Sematext Int’l. All rights reserved
Controlled Shard Deployment

 Shard 1     Replica 2                        Shard 3            Replica 1



Node 1                                     Node 2



                    Shard 2            Replica 3



                  Node 3
ElasticSearch Cluster

                  Copyright 2012 Sematext Int’l. All rights reserved
Does Routing Matters ?
• Controls target shard for each document
• Defaults to hash of a document identifier
• Can be specified explicitly (routing parameter) or
  as a field value (a bit less performant)
• Can take any value
• Example:
curl -XPUT localhost:9200/sematext/test/1?routing=1234 -d '{
  "title" : "Test routing document"
}'


                   Copyright 2012 Sematext Int’l. All rights reserved
Indexing the Data

  Shard       Replica                              Shard           Replica
    1           2                                    3               1


              Node 1                                                Node 2


                         Shard             Replica
                           2                 3


                                            Node 3
ElasticSearch Cluster

                        Indexing application
              Copyright 2012 Sematext Int’l. All rights reserved
How We Indexed Data

  Shard 1                                        Shard 2


Node 1                                        Node 2




                      Node 3

ElasticSearch Cluster



                  Indexing application

               Copyright 2012 Sematext Int’l. All rights reserved
Nodes Without Data
• Nodes used only to route data and queries to
  other nodes in the cluster
• Such nodes don’t suffer from I/O waits (of
  course Data Nodes don’t suffer from I/O waits
  all the time)
• Not default ElasticSearch behavior
• Setup by setting node.data to false


              Copyright 2012 Sematext Int’l. All rights reserved
Multilingual Indexing
• Detection of document's language before
  sending it for indexing
• With, e.g. Sematext LangID or Apache Tika
• Set known language analyzers in configuration
  or mappings
• Set analyzer during indexing (_analyzer field)



               Copyright 2012 Sematext Int’l. All rights reserved
Multilingual Indexing Example
{
 "test" : {
  "_analyzer" : { "path" : "langId" },
  "properties" : {
   "id" : { "type" : "long", "store" : "yes", "precision_step" : "0" },
   "title" : { "type" : "string", "store" : "yes", "index" : "analyzed" },
   "langId" : { "type" : "string", "store" : "yes", "index" : "not_analyzed" }
  }
 }
}

curl -XPUT localhost:9200/sematext/test/10 -d '{
  "title" : "Test document",
  "langId" : "english"
}'

                        Copyright 2012 Sematext Int’l. All rights reserved
Multilingual Queries
• Identify language of query before its execution
  (can be problematic)
• Query analyzer can be specified per query
  (analyzer parameter):
  curl -XGET
  localhost:9200/sematext/_search?q=let+AND+me&analyzer=english




                    Copyright 2012 Sematext Int’l. All rights reserved
Query Performance Factors – Lucene
               level
• Refresh interval
  – Defaults to 1 second
  – Can be specified on cluster or index level
  – curl -XPUT localhost:9200/_settings -d '{ "index" : {
    "refresh_interval" : "600s" } }'
• Merge factor
  – Defaults to 10
  – Can be specified on cluster or index level
  – curl -XPUT localhost:9200/_settings -d '{ "index" : {
    "merge.policy.merge_factor" : 30 } }'

                 Copyright 2012 Sematext Int’l. All rights reserved
Let’s Talk About Routing Once Again
• Routes a query to a particular shard
• Speeds up queries depending on number of
  shards for a given index
• Have to be specified manualy with routing
  parameter during query
• routing parameter can take any value:

curl -XGET
'localhost:9200/sematext/_search?q=test&routing=2012-02-16'


                  Copyright 2012 Sematext Int’l. All rights reserved
Querying ElasticSearch – No Routing

        Shard 1           Shard 2                 Shard 3               Shard 4



        Shard 5           Shard 6                 Shard 7               Shard 8


  ElasticSearch Index




                                     Application


                   Copyright 2012 Sematext Int’l. All rights reserved
Querying ElasticSearch – With Routing

         Shard 1           Shard 2                 Shard 3               Shard 4



         Shard 5           Shard 6                 Shard 7               Shard 8


   ElasticSearch Index




                                      Application


                    Copyright 2012 Sematext Int’l. All rights reserved
Performance Numbers
                  Queries without routing (200 shards, 1 replica)
#threads   Avg response time          Throughput             90% line           Median   CPU Utilization

   1          3169ms                  19,0/min              5214ms              2692ms    95 – 99%


                    Queries with routing (200 shards, 1 replica)
#threads   Avg response time          Throughput             90% line           Median   CPU Utilization

  10           196ms                   50,6/sec              642ms              29ms      25 – 40%
  20           218ms                   91,2/sec              718ms              11ms      10 – 15%




                           Copyright 2012 Sematext Int’l. All rights reserved
Scaling Query Throughput – What Else ?

• Increasing the number of shards for data
  distribution
• Increasing the number of replicas
• Using routing
• Avoid always hitting the same node and
  hotspotting it



              Copyright 2012 Sematext Int’l. All rights reserved
FieldCache and OutOfMemory
• ElasticSearch default setup doesn’t limit field
  data cache size




               Copyright 2012 Sematext Int’l. All rights reserved
FieldCache – What We Can do With It ?
• Keep its default type and set:
   – Maximum size (index.cache.field.max_size)
   – Expiration time (index.cache.field.expire)
• Change its type:
   – soft (index.cache.field.type)
• Change your data:
   – Make your fields less precise (ie: dates)
   – If you sort or facet on fields think if you can reduce
     fields granularity
• Buy more servers :-)

                   Copyright 2012 Sematext Int’l. All rights reserved
FieldCache After Changes




     Copyright 2012 Sematext Int’l. All rights reserved
Additional Problems We Encountered
• Rebalancing after full cluster restarts
  – cluster.routing.allocation.disable_allocation
  – cluster.routing.allocation.disable_replica_allocation
• Long startup and initialization
• Faceting with strings vs faceting on numbers on
  high cardinality fields



                Copyright 2012 Sematext Int’l. All rights reserved
JVM Optimization
• Remember to leave enough memory to OS for
  cache
• Make GC frequent ans short vs. rare and long
  – -XX:+UseParNewGC
  – -XX:+UseConcMarkSweepGC
  – -XX:+CMSParallelRemarkEnabled
• -XX:+AlwaysPreTouch (for short performance
  tests)

              Copyright 2012 Sematext Int’l. All rights reserved
Performance Testing
• Data
  – How much data do I need ?
  – Choosing the right queries
• Make changes
  – One change at a time
  – Understand the impact of the change
• Monitor your cluster (jstat, dstat/vmstat,
  SPM)
• Analyze your results
               Copyright 2012 Sematext Int’l. All rights reserved
ElasticSearch Cluster Monitoring
•   Cluster health
•   Indexing statistics
•   Query rate
•   JVM memory and garbage collector work
•   Cache usage
•   Node memory and CPU usage



               Copyright 2012 Sematext Int’l. All rights reserved
Cluster Health




                Node restart




Copyright 2012 Sematext Int’l. All rights reserved
Indexing Statistics




  Copyright 2012 Sematext Int’l. All rights reserved
Query Rate




Copyright 2012 Sematext Int’l. All rights reserved
JVM Memory and GC




   Copyright 2012 Sematext Int’l. All rights reserved
Cache Usage




Copyright 2012 Sematext Int’l. All rights reserved
CPU and Memory




 Copyright 2012 Sematext Int’l. All rights reserved
Summary
• Controlling shard and replica placement
• Indexing and querying multilingual data
• How to use sharding and routing and not to
  tear your hair out
• How to test your cluster performance to find
  bottle-necks
• How to monitor your cluster and find
  problems right away
              Copyright 2012 Sematext Int’l. All rights reserved
We Are Hiring !
•   Dig Search ?
•   Dig Analytics ?
•   Dig Big Data ?
•   Dig Performance ?
•   Dig working with and in open – source ?
•   We’re hiring world – wide !
       http://sematext.com/about/jobs.html

                Copyright 2012 Sematext Int’l. All rights reserved
How to Reach Us
• Rafał Kuć
  – Twitter: @kucrafal
  – E-mail: rafal.kuc@sematext.com
• Sematext
  – Twitter: @sematext
  – Website: http://sematext.com
• Graphs used in the presentation are from:
  – SPM for ElasticSearch (http://sematext.com/spm)

               Copyright 2012 Sematext Int’l. All rights reserved
Thank You For Your Attention

Más contenido relacionado

La actualidad más candente

Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
SANG WON PARK
 

La actualidad más candente (20)

Understanding of Apache kafka metrics for monitoring
Understanding of Apache kafka metrics for monitoring Understanding of Apache kafka metrics for monitoring
Understanding of Apache kafka metrics for monitoring
 
Kudu Deep-Dive
Kudu Deep-DiveKudu Deep-Dive
Kudu Deep-Dive
 
Apache kafka performance(latency)_benchmark_v0.3
Apache kafka performance(latency)_benchmark_v0.3Apache kafka performance(latency)_benchmark_v0.3
Apache kafka performance(latency)_benchmark_v0.3
 
Hoodie - DataEngConf 2017
Hoodie - DataEngConf 2017Hoodie - DataEngConf 2017
Hoodie - DataEngConf 2017
 
Hudi architecture, fundamentals and capabilities
Hudi architecture, fundamentals and capabilitiesHudi architecture, fundamentals and capabilities
Hudi architecture, fundamentals and capabilities
 
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
 
Elasticsearch Tutorial | Getting Started with Elasticsearch | ELK Stack Train...
Elasticsearch Tutorial | Getting Started with Elasticsearch | ELK Stack Train...Elasticsearch Tutorial | Getting Started with Elasticsearch | ELK Stack Train...
Elasticsearch Tutorial | Getting Started with Elasticsearch | ELK Stack Train...
 
Hive User Meeting August 2009 Facebook
Hive User Meeting August 2009 FacebookHive User Meeting August 2009 Facebook
Hive User Meeting August 2009 Facebook
 
Introduction to elasticsearch
Introduction to elasticsearchIntroduction to elasticsearch
Introduction to elasticsearch
 
Elasticsearch for beginners
Elasticsearch for beginnersElasticsearch for beginners
Elasticsearch for beginners
 
차곡차곡 쉽게 알아가는 Elasticsearch와 Node.js
차곡차곡 쉽게 알아가는 Elasticsearch와 Node.js차곡차곡 쉽게 알아가는 Elasticsearch와 Node.js
차곡차곡 쉽게 알아가는 Elasticsearch와 Node.js
 
Hive Does ACID
Hive Does ACIDHive Does ACID
Hive Does ACID
 
The Impala Cookbook
The Impala CookbookThe Impala Cookbook
The Impala Cookbook
 
Introduction to elasticsearch
Introduction to elasticsearchIntroduction to elasticsearch
Introduction to elasticsearch
 
Apache Nifi Crash Course
Apache Nifi Crash CourseApache Nifi Crash Course
Apache Nifi Crash Course
 
ORC File - Optimizing Your Big Data
ORC File - Optimizing Your Big DataORC File - Optimizing Your Big Data
ORC File - Optimizing Your Big Data
 
Hadoop발표자료
Hadoop발표자료Hadoop발표자료
Hadoop발표자료
 
Parquet overview
Parquet overviewParquet overview
Parquet overview
 
HDFS: Optimization, Stabilization and Supportability
HDFS: Optimization, Stabilization and SupportabilityHDFS: Optimization, Stabilization and Supportability
HDFS: Optimization, Stabilization and Supportability
 
Ingestion in data pipelines with Managed Kafka Clusters in Azure HDInsight
Ingestion in data pipelines with Managed Kafka Clusters in Azure HDInsightIngestion in data pipelines with Managed Kafka Clusters in Azure HDInsight
Ingestion in data pipelines with Managed Kafka Clusters in Azure HDInsight
 

Destacado

Elasticsearch Data Analyses
Elasticsearch Data AnalysesElasticsearch Data Analyses
Elasticsearch Data Analyses
Alaa Elhadba
 
Elasticsearch in Zalando
Elasticsearch in ZalandoElasticsearch in Zalando
Elasticsearch in Zalando
Alaa Elhadba
 

Destacado (20)

You know, for search. Querying 24 Billion Documents in 900ms
You know, for search. Querying 24 Billion Documents in 900msYou know, for search. Querying 24 Billion Documents in 900ms
You know, for search. Querying 24 Billion Documents in 900ms
 
Elasticsearch 101 - Cluster setup and tuning
Elasticsearch 101 - Cluster setup and tuningElasticsearch 101 - Cluster setup and tuning
Elasticsearch 101 - Cluster setup and tuning
 
Tuning Elasticsearch Indexing Pipeline for Logs
Tuning Elasticsearch Indexing Pipeline for LogsTuning Elasticsearch Indexing Pipeline for Logs
Tuning Elasticsearch Indexing Pipeline for Logs
 
Battle of the giants: Apache Solr vs ElasticSearch
Battle of the giants: Apache Solr vs ElasticSearchBattle of the giants: Apache Solr vs ElasticSearch
Battle of the giants: Apache Solr vs ElasticSearch
 
Side by Side with Elasticsearch & Solr, Part 2
Side by Side with Elasticsearch & Solr, Part 2Side by Side with Elasticsearch & Solr, Part 2
Side by Side with Elasticsearch & Solr, Part 2
 
From zero to hero - Easy log centralization with Logstash and Elasticsearch
From zero to hero - Easy log centralization with Logstash and ElasticsearchFrom zero to hero - Easy log centralization with Logstash and Elasticsearch
From zero to hero - Easy log centralization with Logstash and Elasticsearch
 
03. ElasticSearch : Data In, Data Out
03. ElasticSearch : Data In, Data Out03. ElasticSearch : Data In, Data Out
03. ElasticSearch : Data In, Data Out
 
Elasticsearch Data Analyses
Elasticsearch Data AnalysesElasticsearch Data Analyses
Elasticsearch Data Analyses
 
Benchmark slideshow
Benchmark slideshowBenchmark slideshow
Benchmark slideshow
 
Introduction to Elasticsearch
Introduction to ElasticsearchIntroduction to Elasticsearch
Introduction to Elasticsearch
 
Lucene Introduction
Lucene IntroductionLucene Introduction
Lucene Introduction
 
Lucene basics
Lucene basicsLucene basics
Lucene basics
 
Elasticsearch for Logs & Metrics - a deep dive
Elasticsearch for Logs & Metrics - a deep diveElasticsearch for Logs & Metrics - a deep dive
Elasticsearch for Logs & Metrics - a deep dive
 
ElasticSearch in Production: lessons learned
ElasticSearch in Production: lessons learnedElasticSearch in Production: lessons learned
ElasticSearch in Production: lessons learned
 
Elasticsearch in Zalando
Elasticsearch in ZalandoElasticsearch in Zalando
Elasticsearch in Zalando
 
Administering and Monitoring SolrCloud Clusters
Administering and Monitoring SolrCloud ClustersAdministering and Monitoring SolrCloud Clusters
Administering and Monitoring SolrCloud Clusters
 
Battle of the Giants round 2
Battle of the Giants round 2Battle of the Giants round 2
Battle of the Giants round 2
 
Solr Anti - patterns
Solr Anti - patternsSolr Anti - patterns
Solr Anti - patterns
 
What is in a Lucene index?
What is in a Lucene index?What is in a Lucene index?
What is in a Lucene index?
 
Elasticsearch - Dynamic Nodes
Elasticsearch - Dynamic NodesElasticsearch - Dynamic Nodes
Elasticsearch - Dynamic Nodes
 

Similar a Scaling massive elastic search clusters - Rafał Kuć - Sematext

Scaling Massive Elasticsearch Clusters
Scaling Massive Elasticsearch ClustersScaling Massive Elasticsearch Clusters
Scaling Massive Elasticsearch Clusters
Sematext Group, Inc.
 
Battle of the Giants - Apache Solr vs. Elasticsearch (ApacheCon)
Battle of the Giants - Apache Solr vs. Elasticsearch (ApacheCon)Battle of the Giants - Apache Solr vs. Elasticsearch (ApacheCon)
Battle of the Giants - Apache Solr vs. Elasticsearch (ApacheCon)
Sematext Group, Inc.
 
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DCIntro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Lucidworks (Archived)
 
[Hic2011] using hadoop lucene-solr-for-large-scale-search by systex
[Hic2011] using hadoop lucene-solr-for-large-scale-search by systex[Hic2011] using hadoop lucene-solr-for-large-scale-search by systex
[Hic2011] using hadoop lucene-solr-for-large-scale-search by systex
James Chen
 

Similar a Scaling massive elastic search clusters - Rafał Kuć - Sematext (20)

Scaling Massive Elasticsearch Clusters
Scaling Massive Elasticsearch ClustersScaling Massive Elasticsearch Clusters
Scaling Massive Elasticsearch Clusters
 
BigData Faceted Search Comparison between Apache Solr vs. ElasticSearch
BigData Faceted Search Comparison between Apache Solr vs. ElasticSearchBigData Faceted Search Comparison between Apache Solr vs. ElasticSearch
BigData Faceted Search Comparison between Apache Solr vs. ElasticSearch
 
Devnexus 2018
Devnexus 2018Devnexus 2018
Devnexus 2018
 
Battle of the Giants - Apache Solr vs. Elasticsearch (ApacheCon)
Battle of the Giants - Apache Solr vs. Elasticsearch (ApacheCon)Battle of the Giants - Apache Solr vs. Elasticsearch (ApacheCon)
Battle of the Giants - Apache Solr vs. Elasticsearch (ApacheCon)
 
RedisConf17 - Doing More With Redis - Ofer Bengal and Yiftach Shoolman
RedisConf17 - Doing More With Redis - Ofer Bengal and Yiftach ShoolmanRedisConf17 - Doing More With Redis - Ofer Bengal and Yiftach Shoolman
RedisConf17 - Doing More With Redis - Ofer Bengal and Yiftach Shoolman
 
Dictionary Based Annotation at Scale with Spark by Sujit Pal
Dictionary Based Annotation at Scale with Spark by Sujit PalDictionary Based Annotation at Scale with Spark by Sujit Pal
Dictionary Based Annotation at Scale with Spark by Sujit Pal
 
Dictionary based Annotation at Scale with Spark, SolrTextTagger and OpenNLP
Dictionary based Annotation at Scale with Spark, SolrTextTagger and OpenNLPDictionary based Annotation at Scale with Spark, SolrTextTagger and OpenNLP
Dictionary based Annotation at Scale with Spark, SolrTextTagger and OpenNLP
 
Dev nexus 2017
Dev nexus 2017Dev nexus 2017
Dev nexus 2017
 
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DCIntro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
 
Solr Exchange: Introduction to SolrCloud
Solr Exchange: Introduction to SolrCloudSolr Exchange: Introduction to SolrCloud
Solr Exchange: Introduction to SolrCloud
 
"Source Code Abstracts Classification Using CNN", Vadim Markovtsev, Lead Soft...
"Source Code Abstracts Classification Using CNN", Vadim Markovtsev, Lead Soft..."Source Code Abstracts Classification Using CNN", Vadim Markovtsev, Lead Soft...
"Source Code Abstracts Classification Using CNN", Vadim Markovtsev, Lead Soft...
 
Containers orchestrators: Docker vs. Kubernetes
Containers orchestrators: Docker vs. KubernetesContainers orchestrators: Docker vs. Kubernetes
Containers orchestrators: Docker vs. Kubernetes
 
Introduction to Apache Geode (Cork, Ireland)
Introduction to Apache Geode (Cork, Ireland)Introduction to Apache Geode (Cork, Ireland)
Introduction to Apache Geode (Cork, Ireland)
 
Scality S3 Server: Node js Meetup Presentation
Scality S3 Server: Node js Meetup PresentationScality S3 Server: Node js Meetup Presentation
Scality S3 Server: Node js Meetup Presentation
 
Apache Geode Meetup, Cork, Ireland at CIT
Apache Geode Meetup, Cork, Ireland at CITApache Geode Meetup, Cork, Ireland at CIT
Apache Geode Meetup, Cork, Ireland at CIT
 
GIDS2014: SolrCloud: Searching Big Data
GIDS2014: SolrCloud: Searching Big DataGIDS2014: SolrCloud: Searching Big Data
GIDS2014: SolrCloud: Searching Big Data
 
About elasticsearch
About elasticsearchAbout elasticsearch
About elasticsearch
 
Building a Database for the End of the World
Building a Database for the End of the WorldBuilding a Database for the End of the World
Building a Database for the End of the World
 
[Hic2011] using hadoop lucene-solr-for-large-scale-search by systex
[Hic2011] using hadoop lucene-solr-for-large-scale-search by systex[Hic2011] using hadoop lucene-solr-for-large-scale-search by systex
[Hic2011] using hadoop lucene-solr-for-large-scale-search by systex
 
Why databases cry at night
Why databases cry at nightWhy databases cry at night
Why databases cry at night
 

Último

Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
 

Último (20)

Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 

Scaling massive elastic search clusters - Rafał Kuć - Sematext

  • 1. Scaling Massive ElasticSearch Clusters Rafał Kuć – Sematext International @kucrafal @sematext sematext.com
  • 2. Who Am I • „Solr 3.1 Cookbook” author • Sematext software engineer • Solr.pl co-founder • Father and husband :-) Copyright 2012 Sematext Int’l. All rights reserved
  • 3. What Will I Talk About ? • ElasticSearch scaling • Indexing thousands of documents per second • Performing queries in tens of milliseconds • Controling shard and replica placement • Handling multilingual content • Performance testing • Cluster monitoring Copyright 2012 Sematext Int’l. All rights reserved
  • 4. The Challenge • More than 50 millions of documents a day • Real time search • Less than 200ms average query latency • Throughput of at least 1000 QPS • Multilingual indexing • Multilingual querying Copyright 2012 Sematext Int’l. All rights reserved
  • 5. Why ElasticSearch ? • Written with NRT and cloud support in mind • Uses Lucene and all its goodness • Distributed indexing with document distribution control out of the box • Easy index, shard and replicas creation on live cluster Copyright 2012 Sematext Int’l. All rights reserved
  • 6. Index Design • Several indices (at least one index for each day of data) • Indices divided into multiple shards • Multiple replicas of a single shard • Real-time, synchronous replication • Near-real-time index refresh (1 to 30 seconds) Copyright 2012 Sematext Int’l. All rights reserved
  • 7. Shard Deployment Problems • Multiple shards per node • Replicas on the same nodes as shards • Not evenly distributed shards and replicas • Some nodes being hot, while others are cold Copyright 2012 Sematext Int’l. All rights reserved
  • 8. Default Shard Deployment Shard 1 Shard 2 Shard 3 Replica 1 Replica 2 Node 1 Node 2 Replica 3 Node 3 ElasticSearch Cluster Copyright 2012 Sematext Int’l. All rights reserved
  • 9. What Can We Do With Shards Then ? • Contol shard placement with node tags: – index.routing.allocation.include.tag – index.routing.allocation.exclude.tag • Control shard placement with nodes IP addresses: – cluster.routing.allocation.include._ip – cluster.routing.allocation.exclude._ip • Specified on index or cluster level • Can be changed on live cluster ! Copyright 2012 Sematext Int’l. All rights reserved
  • 10. Shard Allocation Examples • Cluster level: curl -XPUT localhost:9200/_cluster/settings -d '{ "persistent" : { "cluster.routing.allocation.exclude._ip" : "192.168.2.1" } }' • Index level: curl -XPUT localhost:9200/sematext/ -d '{ "index.routing.allocation.include.tag" : "nodeOne,nodeTwo" }' Copyright 2012 Sematext Int’l. All rights reserved
  • 11. Number of Shards Per Node • Allows one to specify number of shards per node • Specified on index level • Can be changed on live indices • Example: curl -XPUT localhost:9200/sematext -d '{ "index.routing.allocation.total_shards_per_node" : 2 }' Copyright 2012 Sematext Int’l. All rights reserved
  • 12. Controlled Shard Deployment Shard 1 Replica 2 Shard 3 Replica 1 Node 1 Node 2 Shard 2 Replica 3 Node 3 ElasticSearch Cluster Copyright 2012 Sematext Int’l. All rights reserved
  • 13. Does Routing Matters ? • Controls target shard for each document • Defaults to hash of a document identifier • Can be specified explicitly (routing parameter) or as a field value (a bit less performant) • Can take any value • Example: curl -XPUT localhost:9200/sematext/test/1?routing=1234 -d '{ "title" : "Test routing document" }' Copyright 2012 Sematext Int’l. All rights reserved
  • 14. Indexing the Data Shard Replica Shard Replica 1 2 3 1 Node 1 Node 2 Shard Replica 2 3 Node 3 ElasticSearch Cluster Indexing application Copyright 2012 Sematext Int’l. All rights reserved
  • 15. How We Indexed Data Shard 1 Shard 2 Node 1 Node 2 Node 3 ElasticSearch Cluster Indexing application Copyright 2012 Sematext Int’l. All rights reserved
  • 16. Nodes Without Data • Nodes used only to route data and queries to other nodes in the cluster • Such nodes don’t suffer from I/O waits (of course Data Nodes don’t suffer from I/O waits all the time) • Not default ElasticSearch behavior • Setup by setting node.data to false Copyright 2012 Sematext Int’l. All rights reserved
  • 17. Multilingual Indexing • Detection of document's language before sending it for indexing • With, e.g. Sematext LangID or Apache Tika • Set known language analyzers in configuration or mappings • Set analyzer during indexing (_analyzer field) Copyright 2012 Sematext Int’l. All rights reserved
  • 18. Multilingual Indexing Example { "test" : { "_analyzer" : { "path" : "langId" }, "properties" : { "id" : { "type" : "long", "store" : "yes", "precision_step" : "0" }, "title" : { "type" : "string", "store" : "yes", "index" : "analyzed" }, "langId" : { "type" : "string", "store" : "yes", "index" : "not_analyzed" } } } } curl -XPUT localhost:9200/sematext/test/10 -d '{ "title" : "Test document", "langId" : "english" }' Copyright 2012 Sematext Int’l. All rights reserved
  • 19. Multilingual Queries • Identify language of query before its execution (can be problematic) • Query analyzer can be specified per query (analyzer parameter): curl -XGET localhost:9200/sematext/_search?q=let+AND+me&analyzer=english Copyright 2012 Sematext Int’l. All rights reserved
  • 20. Query Performance Factors – Lucene level • Refresh interval – Defaults to 1 second – Can be specified on cluster or index level – curl -XPUT localhost:9200/_settings -d '{ "index" : { "refresh_interval" : "600s" } }' • Merge factor – Defaults to 10 – Can be specified on cluster or index level – curl -XPUT localhost:9200/_settings -d '{ "index" : { "merge.policy.merge_factor" : 30 } }' Copyright 2012 Sematext Int’l. All rights reserved
  • 21. Let’s Talk About Routing Once Again • Routes a query to a particular shard • Speeds up queries depending on number of shards for a given index • Have to be specified manualy with routing parameter during query • routing parameter can take any value: curl -XGET 'localhost:9200/sematext/_search?q=test&routing=2012-02-16' Copyright 2012 Sematext Int’l. All rights reserved
  • 22. Querying ElasticSearch – No Routing Shard 1 Shard 2 Shard 3 Shard 4 Shard 5 Shard 6 Shard 7 Shard 8 ElasticSearch Index Application Copyright 2012 Sematext Int’l. All rights reserved
  • 23. Querying ElasticSearch – With Routing Shard 1 Shard 2 Shard 3 Shard 4 Shard 5 Shard 6 Shard 7 Shard 8 ElasticSearch Index Application Copyright 2012 Sematext Int’l. All rights reserved
  • 24. Performance Numbers Queries without routing (200 shards, 1 replica) #threads Avg response time Throughput 90% line Median CPU Utilization 1 3169ms 19,0/min 5214ms 2692ms 95 – 99% Queries with routing (200 shards, 1 replica) #threads Avg response time Throughput 90% line Median CPU Utilization 10 196ms 50,6/sec 642ms 29ms 25 – 40% 20 218ms 91,2/sec 718ms 11ms 10 – 15% Copyright 2012 Sematext Int’l. All rights reserved
  • 25. Scaling Query Throughput – What Else ? • Increasing the number of shards for data distribution • Increasing the number of replicas • Using routing • Avoid always hitting the same node and hotspotting it Copyright 2012 Sematext Int’l. All rights reserved
  • 26. FieldCache and OutOfMemory • ElasticSearch default setup doesn’t limit field data cache size Copyright 2012 Sematext Int’l. All rights reserved
  • 27. FieldCache – What We Can do With It ? • Keep its default type and set: – Maximum size (index.cache.field.max_size) – Expiration time (index.cache.field.expire) • Change its type: – soft (index.cache.field.type) • Change your data: – Make your fields less precise (ie: dates) – If you sort or facet on fields think if you can reduce fields granularity • Buy more servers :-) Copyright 2012 Sematext Int’l. All rights reserved
  • 28. FieldCache After Changes Copyright 2012 Sematext Int’l. All rights reserved
  • 29. Additional Problems We Encountered • Rebalancing after full cluster restarts – cluster.routing.allocation.disable_allocation – cluster.routing.allocation.disable_replica_allocation • Long startup and initialization • Faceting with strings vs faceting on numbers on high cardinality fields Copyright 2012 Sematext Int’l. All rights reserved
  • 30. JVM Optimization • Remember to leave enough memory to OS for cache • Make GC frequent ans short vs. rare and long – -XX:+UseParNewGC – -XX:+UseConcMarkSweepGC – -XX:+CMSParallelRemarkEnabled • -XX:+AlwaysPreTouch (for short performance tests) Copyright 2012 Sematext Int’l. All rights reserved
  • 31. Performance Testing • Data – How much data do I need ? – Choosing the right queries • Make changes – One change at a time – Understand the impact of the change • Monitor your cluster (jstat, dstat/vmstat, SPM) • Analyze your results Copyright 2012 Sematext Int’l. All rights reserved
  • 32. ElasticSearch Cluster Monitoring • Cluster health • Indexing statistics • Query rate • JVM memory and garbage collector work • Cache usage • Node memory and CPU usage Copyright 2012 Sematext Int’l. All rights reserved
  • 33. Cluster Health Node restart Copyright 2012 Sematext Int’l. All rights reserved
  • 34. Indexing Statistics Copyright 2012 Sematext Int’l. All rights reserved
  • 35. Query Rate Copyright 2012 Sematext Int’l. All rights reserved
  • 36. JVM Memory and GC Copyright 2012 Sematext Int’l. All rights reserved
  • 37. Cache Usage Copyright 2012 Sematext Int’l. All rights reserved
  • 38. CPU and Memory Copyright 2012 Sematext Int’l. All rights reserved
  • 39. Summary • Controlling shard and replica placement • Indexing and querying multilingual data • How to use sharding and routing and not to tear your hair out • How to test your cluster performance to find bottle-necks • How to monitor your cluster and find problems right away Copyright 2012 Sematext Int’l. All rights reserved
  • 40. We Are Hiring ! • Dig Search ? • Dig Analytics ? • Dig Big Data ? • Dig Performance ? • Dig working with and in open – source ? • We’re hiring world – wide ! http://sematext.com/about/jobs.html Copyright 2012 Sematext Int’l. All rights reserved
  • 41. How to Reach Us • Rafał Kuć – Twitter: @kucrafal – E-mail: rafal.kuc@sematext.com • Sematext – Twitter: @sematext – Website: http://sematext.com • Graphs used in the presentation are from: – SPM for ElasticSearch (http://sematext.com/spm) Copyright 2012 Sematext Int’l. All rights reserved
  • 42. Thank You For Your Attention