SlideShare ist ein Scribd-Unternehmen logo
1 von 19
Downloaden Sie, um offline zu lesen
O C T O B E R 1 1 - 1 4 , 2 0 1 6 • B O S T O N , M A
Building and Running Solr-as-a-Service
Shai Erera
STSM, IBM
3
01
Who Am I?
• Working at IBM – Social Analytics & Technologies
• Lucene/Solr committer and PMC member
• http://shaierera.blogspot.com
• shaie@apache.org
4
01
Background
• More and more teams develop solutions with Solr
• Different use cases: search, analytics, key-value store…
• Many solutions become cloud-based
• Similar challenges deploying Solr in the cloud
• Security, cloud infrastructure
• Solr version upgrades
• Data center awareness / multi-DC support
• …
5
01
Mission
Provide a cloud-based service for managing hosted Solr instances
• Let users focus on indexing, search, collections management
• NOT worry about cluster health, deployment, high-availability …
• Support the full Solr API
• Adapt Solr to the challenging cloud environment
6
01
Developing Cloud-Based Software is Fun!
• A world of micro-services: Auth, Logging, Service Discovery, Uptime, PagerDuty …
• Infrastructure decisions
• Virtual Machines or Containers?
• Local or Remote storage?
• Single or Multi Data Center support?
• Software development and maintenance challenges
• How to test the code?
• How to perform software upgrades?
• How to migrate the infrastructure?
• Stability/Recovery – “edge” cases are not so rare
* Whatever can go wrong, will go wrong!
7
01
Multi-Tenancy
• A cluster per tenant
• Each cluster is isolated from other clusters
• Resources
• Collections
• Configurations
• ZK chroot
• Different Solr versions…
• Every tenant can create multiple Solr cluster instances
• Department indexes, dev/staging/production …
StorageStorageStorageStorageStorage
8
01
Architecture
Marathon, Mesos, Docker
Software
Upgrades
Lifecycle
Management
Routing
Solr
Monitor
Marathon
Spray
…
Eureka
Uptime
Graphite
Kibana
Zuul
ZooKeeper
WS3
(ObjectStore)
SearchService
CloudInfrastructure
Solr C1N1
Solr C3N1
Solr C2N1
Solr C3N2
Solr C1N2
Solr C2N2
Solr C3N3
Solr C3N4
9
01
Sizing Your Cluster
• A Solr cluster’s size is measured in units
• Each unit translates to memory, storage and CPU resources
• A size-7 cluster has 7X more resources than a size-1
• All collections have the same number of shards and a replicationFactor of 2
• Bigger clusters also mean sharding and more Solr nodes
• Cluster sizes are divided into (conceptual) tiers
• Tier1 = 1 shard, 2 nodes
• Tier2 = 2 shards, 4 nodes
• Tiern = 2 x (Tiern-1) shards, 2 x (Tiern-1) nodes
• Example, a size-16 (Tier3) cluster has
• 4 shards, 2 replicas each, 8 nodes
• Total 32 cores
• Total 64 GB (effective) memory
• Total 512 GB (effective) storage
10
01
Software Upgrades
• Need to upgrade Solr version, but also own code
• Software upgrade means a full Docker image upgrade (even if only replacing a single .jar)
• SSH and upgrade software forbidden (security)
• Important: no down-time
• Data-replication Upgrade
• Replicate data to new nodes
• Expensive: a lot of data is copied around
• Useful when resizing a cluster, migrating data center etc.
• In-place Upgrade
• Relies on Marathon’s pinning of applications to host
• Very fast: re-deploy a Marathon application + Solr restart; No data replication
• The default upgrade mechanism, unless a data-copy is needed
11
01
Software Upgrades
• Start with 2 containers on version X
• Create 2 additional containers on version Y
• Add replicas on new Solr nodes
• Re-assign shard leadership to new replicas
• Route traffic to the new nodes
• Delete old containers
Data-Replication
• Start with 2 containers on version X
• Update one container’s Marathon application
configuration to version Y
• Marathon re-deploys the applications on the
same host
• Wait for Solr to come up and report “healthy”
• Repeat with second container
In-Place
12
01
Resize Your Cluster
• As your index grows, you will need to increase the available resources to your cluster
• Resizing a cluster means allocating bigger containers (RAM, CPU, Storage)
• A cluster resize behaves very similar to a data-replication upgrade
• New containers with appropriate size are allocated and the data is replicated to them
• Resize across tiers is a bit different
• More containers are allocated
• Each new container is potentially smaller than the previous ones, but overall you have more resources
• Simply replicating data isn’t possible – index may not fit in the new containers
• Before the resize is carried on, shards are split
• Each shard eventually lands on its own container
13
01
Collection Configuration Has Too Many Options
• Lock factory must stay “native”
• No messing with uLog
• Do not override dataDir!
• No XSLT
• Only Classic/Managed schema factory allowed
• No update listeners
• No custom replication handler
• No JMX
14
01
Replicas Housekeeping
• In some cases containers are re-spawned on a different host than where their data is located
• Missing replicas
• Solr does not automatically add replicas to shards that do not meet their replicationFactor
• Add missing replicas to those shards
• Dead replicas
• Replicas are not automatically removed from CLUSTERSTATUS
• When a shard has enough ACTIVE replicas, delete those “dead” replicas
• Extra replicas
• Many replicas added to shards (“Stuck Overseer”)
• Cluster re-balancing
• Delete “extra” replicas from most occupied nodes
15
01
Cluster Balancing
• In some cases, Solr nodes may host more replicas than others
• Cluster resize: shard splitting does not distribute all sub-shards’ replicas across all nodes
• Fill missing replicas: always aim to achieve HA
• Cluster balancing involves multiple operations
• Find collections with replicas of more than one shard on same host
• Find candidate nodes to host those replicas (least occupied nodes #replicas-wise)
• Add additional replicas of those shards on those nodes
• Invoke the “delete extra replicas” procedure to delete the replicas on the overbooked node
16
01
More Solr Challenges
• CLOSE_WAIT (SOLR-9290)
• DOWN replicas
• <int name="maxUpdateConnections">10000</int>
• <int name="maxUpdateConnectionsPerHost">100</int>
Fixed in 5.5.3
• “Stuck” Overseer
• Various tasks accumulated in Overseer queue
• Cluster is unable to get to a healthy state (missing replicas)
Many Overseer changes in recent releases + CLOSE_WAIT fix
17
01
More Solr Challenges
• Admin APIs are too powerful (and irrelevant)
• Users need not worry about Solr cluster deployment aspects
Block most admin APIs (shard split, leaders handling, replicas management, roles…)
Create collection with minimum set of parameters: configuration and collection names
• Collection Configuration API
• Users do not have access to ZK
API to manage a collection’s configuration in ZK
18
01
Current Status
• Two years in production, currently running Solr 5.5.3
• Usage / Capacity
• 450 Baremetal servers
• 3000+ Solr clusters
• 6000+ Solr nodes
• 300,000+ API calls per day
• 99.5% uptime
19
01
Questions?

Weitere ähnliche Inhalte

Was ist angesagt?

NYC Lucene/Solr Meetup: Spark / Solr
NYC Lucene/Solr Meetup: Spark / SolrNYC Lucene/Solr Meetup: Spark / Solr
NYC Lucene/Solr Meetup: Spark / Solrthelabdude
 
Best practices for highly available and large scale SolrCloud
Best practices for highly available and large scale SolrCloudBest practices for highly available and large scale SolrCloud
Best practices for highly available and large scale SolrCloudAnshum Gupta
 
Introduction to SolrCloud
Introduction to SolrCloudIntroduction to SolrCloud
Introduction to SolrCloudVarun Thacker
 
Your Big Data Stack is Too Big!: Presented by Timothy Potter, Lucidworks
Your Big Data Stack is Too Big!: Presented by Timothy Potter, LucidworksYour Big Data Stack is Too Big!: Presented by Timothy Potter, Lucidworks
Your Big Data Stack is Too Big!: Presented by Timothy Potter, LucidworksLucidworks
 
Lessons From Sharding Solr At Etsy: Presented by Gregg Donovan, Etsy
Lessons From Sharding Solr At Etsy: Presented by Gregg Donovan, EtsyLessons From Sharding Solr At Etsy: Presented by Gregg Donovan, Etsy
Lessons From Sharding Solr At Etsy: Presented by Gregg Donovan, EtsyLucidworks
 
Solrcloud Leader Election
Solrcloud Leader ElectionSolrcloud Leader Election
Solrcloud Leader Electionravikgiitk
 
Cross Data Center Replication for the Enterprise: Presented by Adam Williams,...
Cross Data Center Replication for the Enterprise: Presented by Adam Williams,...Cross Data Center Replication for the Enterprise: Presented by Adam Williams,...
Cross Data Center Replication for the Enterprise: Presented by Adam Williams,...Lucidworks
 
What's New on AWS and What it Means to You
What's New on AWS and What it Means to YouWhat's New on AWS and What it Means to You
What's New on AWS and What it Means to YouAmazon Web Services
 
Deploying and managing SolrCloud in the cloud using the Solr Scale Toolkit
Deploying and managing SolrCloud in the cloud using the Solr Scale ToolkitDeploying and managing SolrCloud in the cloud using the Solr Scale Toolkit
Deploying and managing SolrCloud in the cloud using the Solr Scale Toolkitthelabdude
 
Rebalance API for SolrCloud: Presented by Nitin Sharma, Netflix & Suruchi Sha...
Rebalance API for SolrCloud: Presented by Nitin Sharma, Netflix & Suruchi Sha...Rebalance API for SolrCloud: Presented by Nitin Sharma, Netflix & Suruchi Sha...
Rebalance API for SolrCloud: Presented by Nitin Sharma, Netflix & Suruchi Sha...Lucidworks
 
Webinar: What's New in Solr 6
Webinar: What's New in Solr 6Webinar: What's New in Solr 6
Webinar: What's New in Solr 6Lucidworks
 
How to make a simple cheap high availability self-healing solr cluster
How to make a simple cheap high availability self-healing solr clusterHow to make a simple cheap high availability self-healing solr cluster
How to make a simple cheap high availability self-healing solr clusterlucenerevolution
 
Cross Datacenter Replication in Apache Solr 6
Cross Datacenter Replication in Apache Solr 6Cross Datacenter Replication in Apache Solr 6
Cross Datacenter Replication in Apache Solr 6Shalin Shekhar Mangar
 
Inside Solr 5 - Bangalore Solr/Lucene Meetup
Inside Solr 5 - Bangalore Solr/Lucene MeetupInside Solr 5 - Bangalore Solr/Lucene Meetup
Inside Solr 5 - Bangalore Solr/Lucene MeetupShalin Shekhar Mangar
 
Data Engineering with Solr and Spark
Data Engineering with Solr and SparkData Engineering with Solr and Spark
Data Engineering with Solr and SparkLucidworks
 
Streaming Aggregation in Solr - New Horizons for Search: Presented by Erick E...
Streaming Aggregation in Solr - New Horizons for Search: Presented by Erick E...Streaming Aggregation in Solr - New Horizons for Search: Presented by Erick E...
Streaming Aggregation in Solr - New Horizons for Search: Presented by Erick E...Lucidworks
 
Mail Search As A Sercive: Presented by Rishi Easwaran, Aol
Mail Search As A Sercive: Presented by Rishi Easwaran, AolMail Search As A Sercive: Presented by Rishi Easwaran, Aol
Mail Search As A Sercive: Presented by Rishi Easwaran, AolLucidworks
 
Call me maybe: Jepsen and flaky networks
Call me maybe: Jepsen and flaky networksCall me maybe: Jepsen and flaky networks
Call me maybe: Jepsen and flaky networksShalin Shekhar Mangar
 

Was ist angesagt? (20)

NYC Lucene/Solr Meetup: Spark / Solr
NYC Lucene/Solr Meetup: Spark / SolrNYC Lucene/Solr Meetup: Spark / Solr
NYC Lucene/Solr Meetup: Spark / Solr
 
Best practices for highly available and large scale SolrCloud
Best practices for highly available and large scale SolrCloudBest practices for highly available and large scale SolrCloud
Best practices for highly available and large scale SolrCloud
 
Solr4 nosql search_server_2013
Solr4 nosql search_server_2013Solr4 nosql search_server_2013
Solr4 nosql search_server_2013
 
Introduction to SolrCloud
Introduction to SolrCloudIntroduction to SolrCloud
Introduction to SolrCloud
 
Your Big Data Stack is Too Big!: Presented by Timothy Potter, Lucidworks
Your Big Data Stack is Too Big!: Presented by Timothy Potter, LucidworksYour Big Data Stack is Too Big!: Presented by Timothy Potter, Lucidworks
Your Big Data Stack is Too Big!: Presented by Timothy Potter, Lucidworks
 
Lessons From Sharding Solr At Etsy: Presented by Gregg Donovan, Etsy
Lessons From Sharding Solr At Etsy: Presented by Gregg Donovan, EtsyLessons From Sharding Solr At Etsy: Presented by Gregg Donovan, Etsy
Lessons From Sharding Solr At Etsy: Presented by Gregg Donovan, Etsy
 
Solrcloud Leader Election
Solrcloud Leader ElectionSolrcloud Leader Election
Solrcloud Leader Election
 
Cross Data Center Replication for the Enterprise: Presented by Adam Williams,...
Cross Data Center Replication for the Enterprise: Presented by Adam Williams,...Cross Data Center Replication for the Enterprise: Presented by Adam Williams,...
Cross Data Center Replication for the Enterprise: Presented by Adam Williams,...
 
What's New on AWS and What it Means to You
What's New on AWS and What it Means to YouWhat's New on AWS and What it Means to You
What's New on AWS and What it Means to You
 
Deploying and managing SolrCloud in the cloud using the Solr Scale Toolkit
Deploying and managing SolrCloud in the cloud using the Solr Scale ToolkitDeploying and managing SolrCloud in the cloud using the Solr Scale Toolkit
Deploying and managing SolrCloud in the cloud using the Solr Scale Toolkit
 
Rebalance API for SolrCloud: Presented by Nitin Sharma, Netflix & Suruchi Sha...
Rebalance API for SolrCloud: Presented by Nitin Sharma, Netflix & Suruchi Sha...Rebalance API for SolrCloud: Presented by Nitin Sharma, Netflix & Suruchi Sha...
Rebalance API for SolrCloud: Presented by Nitin Sharma, Netflix & Suruchi Sha...
 
Webinar: What's New in Solr 6
Webinar: What's New in Solr 6Webinar: What's New in Solr 6
Webinar: What's New in Solr 6
 
How to make a simple cheap high availability self-healing solr cluster
How to make a simple cheap high availability self-healing solr clusterHow to make a simple cheap high availability self-healing solr cluster
How to make a simple cheap high availability self-healing solr cluster
 
Cross Datacenter Replication in Apache Solr 6
Cross Datacenter Replication in Apache Solr 6Cross Datacenter Replication in Apache Solr 6
Cross Datacenter Replication in Apache Solr 6
 
High Performance Solr
High Performance SolrHigh Performance Solr
High Performance Solr
 
Inside Solr 5 - Bangalore Solr/Lucene Meetup
Inside Solr 5 - Bangalore Solr/Lucene MeetupInside Solr 5 - Bangalore Solr/Lucene Meetup
Inside Solr 5 - Bangalore Solr/Lucene Meetup
 
Data Engineering with Solr and Spark
Data Engineering with Solr and SparkData Engineering with Solr and Spark
Data Engineering with Solr and Spark
 
Streaming Aggregation in Solr - New Horizons for Search: Presented by Erick E...
Streaming Aggregation in Solr - New Horizons for Search: Presented by Erick E...Streaming Aggregation in Solr - New Horizons for Search: Presented by Erick E...
Streaming Aggregation in Solr - New Horizons for Search: Presented by Erick E...
 
Mail Search As A Sercive: Presented by Rishi Easwaran, Aol
Mail Search As A Sercive: Presented by Rishi Easwaran, AolMail Search As A Sercive: Presented by Rishi Easwaran, Aol
Mail Search As A Sercive: Presented by Rishi Easwaran, Aol
 
Call me maybe: Jepsen and flaky networks
Call me maybe: Jepsen and flaky networksCall me maybe: Jepsen and flaky networks
Call me maybe: Jepsen and flaky networks
 

Andere mochten auch

The Evolution of Lucene & Solr Numerics from Strings to Points: Presented by ...
The Evolution of Lucene & Solr Numerics from Strings to Points: Presented by ...The Evolution of Lucene & Solr Numerics from Strings to Points: Presented by ...
The Evolution of Lucene & Solr Numerics from Strings to Points: Presented by ...Lucidworks
 
Rebuilding Solr 6 Examples - Layer by Layer: Presented by Alexandre Rafalovit...
Rebuilding Solr 6 Examples - Layer by Layer: Presented by Alexandre Rafalovit...Rebuilding Solr 6 Examples - Layer by Layer: Presented by Alexandre Rafalovit...
Rebuilding Solr 6 Examples - Layer by Layer: Presented by Alexandre Rafalovit...Lucidworks
 
Near Real Time Indexing: Presented by Umesh Prasad & Thejus V M, Flipkart
Near Real Time Indexing: Presented by Umesh Prasad & Thejus V M, FlipkartNear Real Time Indexing: Presented by Umesh Prasad & Thejus V M, Flipkart
Near Real Time Indexing: Presented by Umesh Prasad & Thejus V M, FlipkartLucidworks
 
State of Solr Security 2016: Presented by Ishan Chattopadhyaya, Lucidworks
State of Solr Security 2016: Presented by Ishan Chattopadhyaya, LucidworksState of Solr Security 2016: Presented by Ishan Chattopadhyaya, Lucidworks
State of Solr Security 2016: Presented by Ishan Chattopadhyaya, LucidworksLucidworks
 
The Seven Deadly Sins of Solr - By Jay Hill
The Seven Deadly Sins of Solr - By Jay Hill The Seven Deadly Sins of Solr - By Jay Hill
The Seven Deadly Sins of Solr - By Jay Hill lucenerevolution
 
Battle of the Giants Round 2 - Apache Solr vs. Elasticsearch
Battle of the Giants Round 2 - Apache Solr vs. ElasticsearchBattle of the Giants Round 2 - Apache Solr vs. Elasticsearch
Battle of the Giants Round 2 - Apache Solr vs. ElasticsearchSematext Group, Inc.
 
Queue Based Solr Indexing with Collection Management: Presented by Devansh Dh...
Queue Based Solr Indexing with Collection Management: Presented by Devansh Dh...Queue Based Solr Indexing with Collection Management: Presented by Devansh Dh...
Queue Based Solr Indexing with Collection Management: Presented by Devansh Dh...Lucidworks
 
Parallel SQL and Analytics with Solr: Presented by Yonik Seeley, Cloudera
Parallel SQL and Analytics with Solr: Presented by Yonik Seeley, ClouderaParallel SQL and Analytics with Solr: Presented by Yonik Seeley, Cloudera
Parallel SQL and Analytics with Solr: Presented by Yonik Seeley, ClouderaLucidworks
 
Events Processing and Data Analysis with Lucidworks Fusion: Presented by Kira...
Events Processing and Data Analysis with Lucidworks Fusion: Presented by Kira...Events Processing and Data Analysis with Lucidworks Fusion: Presented by Kira...
Events Processing and Data Analysis with Lucidworks Fusion: Presented by Kira...Lucidworks
 
Facettensuche mit Lucene und Solr
Facettensuche mit Lucene und SolrFacettensuche mit Lucene und Solr
Facettensuche mit Lucene und SolrThomas Koch
 
Warum 'ne Datenbank, wenn wir Elasticsearch haben?
Warum 'ne Datenbank, wenn wir Elasticsearch haben?Warum 'ne Datenbank, wenn wir Elasticsearch haben?
Warum 'ne Datenbank, wenn wir Elasticsearch haben?Jodok Batlogg
 
PlayStation and Lucene - Indexing 1M documents per second: Presented by Alexa...
PlayStation and Lucene - Indexing 1M documents per second: Presented by Alexa...PlayStation and Lucene - Indexing 1M documents per second: Presented by Alexa...
PlayStation and Lucene - Indexing 1M documents per second: Presented by Alexa...Lucidworks
 
Large Scale Log Analytics with Solr: Presented by Rafał Kuć & Radu Gheorghe, ...
Large Scale Log Analytics with Solr: Presented by Rafał Kuć & Radu Gheorghe, ...Large Scale Log Analytics with Solr: Presented by Rafał Kuć & Radu Gheorghe, ...
Large Scale Log Analytics with Solr: Presented by Rafał Kuć & Radu Gheorghe, ...Lucidworks
 
Understanding the Solr Security Framekwork: Presented by Anshum Gupta, IBM
Understanding the Solr Security Framekwork: Presented by Anshum Gupta, IBMUnderstanding the Solr Security Framekwork: Presented by Anshum Gupta, IBM
Understanding the Solr Security Framekwork: Presented by Anshum Gupta, IBMLucidworks
 
Grouping and Joining in Lucene/Solr
Grouping and Joining in Lucene/SolrGrouping and Joining in Lucene/Solr
Grouping and Joining in Lucene/Solrlucenerevolution
 
Build a Great Application in Minutes!: Presented by Stefan Olafsson, Twigkit
Build a Great Application in Minutes!: Presented by Stefan Olafsson, TwigkitBuild a Great Application in Minutes!: Presented by Stefan Olafsson, Twigkit
Build a Great Application in Minutes!: Presented by Stefan Olafsson, TwigkitLucidworks
 
Portable Lucene Index Format & Applications - Andrzej Bialecki
Portable Lucene Index Format & Applications - Andrzej BialeckiPortable Lucene Index Format & Applications - Andrzej Bialecki
Portable Lucene Index Format & Applications - Andrzej Bialeckilucenerevolution
 
Introduction to Lucene and Solr - 1
Introduction to Lucene and Solr - 1Introduction to Lucene and Solr - 1
Introduction to Lucene and Solr - 1YI-CHING WU
 
Reflected Intelligence - Lucene/Solr as a self-learning data system: Presente...
Reflected Intelligence - Lucene/Solr as a self-learning data system: Presente...Reflected Intelligence - Lucene/Solr as a self-learning data system: Presente...
Reflected Intelligence - Lucene/Solr as a self-learning data system: Presente...Lucidworks
 

Andere mochten auch (20)

The Evolution of Lucene & Solr Numerics from Strings to Points: Presented by ...
The Evolution of Lucene & Solr Numerics from Strings to Points: Presented by ...The Evolution of Lucene & Solr Numerics from Strings to Points: Presented by ...
The Evolution of Lucene & Solr Numerics from Strings to Points: Presented by ...
 
Rebuilding Solr 6 Examples - Layer by Layer: Presented by Alexandre Rafalovit...
Rebuilding Solr 6 Examples - Layer by Layer: Presented by Alexandre Rafalovit...Rebuilding Solr 6 Examples - Layer by Layer: Presented by Alexandre Rafalovit...
Rebuilding Solr 6 Examples - Layer by Layer: Presented by Alexandre Rafalovit...
 
Near Real Time Indexing: Presented by Umesh Prasad & Thejus V M, Flipkart
Near Real Time Indexing: Presented by Umesh Prasad & Thejus V M, FlipkartNear Real Time Indexing: Presented by Umesh Prasad & Thejus V M, Flipkart
Near Real Time Indexing: Presented by Umesh Prasad & Thejus V M, Flipkart
 
State of Solr Security 2016: Presented by Ishan Chattopadhyaya, Lucidworks
State of Solr Security 2016: Presented by Ishan Chattopadhyaya, LucidworksState of Solr Security 2016: Presented by Ishan Chattopadhyaya, Lucidworks
State of Solr Security 2016: Presented by Ishan Chattopadhyaya, Lucidworks
 
The Seven Deadly Sins of Solr - By Jay Hill
The Seven Deadly Sins of Solr - By Jay Hill The Seven Deadly Sins of Solr - By Jay Hill
The Seven Deadly Sins of Solr - By Jay Hill
 
Battle of the Giants Round 2 - Apache Solr vs. Elasticsearch
Battle of the Giants Round 2 - Apache Solr vs. ElasticsearchBattle of the Giants Round 2 - Apache Solr vs. Elasticsearch
Battle of the Giants Round 2 - Apache Solr vs. Elasticsearch
 
Queue Based Solr Indexing with Collection Management: Presented by Devansh Dh...
Queue Based Solr Indexing with Collection Management: Presented by Devansh Dh...Queue Based Solr Indexing with Collection Management: Presented by Devansh Dh...
Queue Based Solr Indexing with Collection Management: Presented by Devansh Dh...
 
Parallel SQL and Analytics with Solr: Presented by Yonik Seeley, Cloudera
Parallel SQL and Analytics with Solr: Presented by Yonik Seeley, ClouderaParallel SQL and Analytics with Solr: Presented by Yonik Seeley, Cloudera
Parallel SQL and Analytics with Solr: Presented by Yonik Seeley, Cloudera
 
Events Processing and Data Analysis with Lucidworks Fusion: Presented by Kira...
Events Processing and Data Analysis with Lucidworks Fusion: Presented by Kira...Events Processing and Data Analysis with Lucidworks Fusion: Presented by Kira...
Events Processing and Data Analysis with Lucidworks Fusion: Presented by Kira...
 
Facettensuche mit Lucene und Solr
Facettensuche mit Lucene und SolrFacettensuche mit Lucene und Solr
Facettensuche mit Lucene und Solr
 
Warum 'ne Datenbank, wenn wir Elasticsearch haben?
Warum 'ne Datenbank, wenn wir Elasticsearch haben?Warum 'ne Datenbank, wenn wir Elasticsearch haben?
Warum 'ne Datenbank, wenn wir Elasticsearch haben?
 
PlayStation and Lucene - Indexing 1M documents per second: Presented by Alexa...
PlayStation and Lucene - Indexing 1M documents per second: Presented by Alexa...PlayStation and Lucene - Indexing 1M documents per second: Presented by Alexa...
PlayStation and Lucene - Indexing 1M documents per second: Presented by Alexa...
 
Large Scale Log Analytics with Solr: Presented by Rafał Kuć & Radu Gheorghe, ...
Large Scale Log Analytics with Solr: Presented by Rafał Kuć & Radu Gheorghe, ...Large Scale Log Analytics with Solr: Presented by Rafał Kuć & Radu Gheorghe, ...
Large Scale Log Analytics with Solr: Presented by Rafał Kuć & Radu Gheorghe, ...
 
Understanding the Solr Security Framekwork: Presented by Anshum Gupta, IBM
Understanding the Solr Security Framekwork: Presented by Anshum Gupta, IBMUnderstanding the Solr Security Framekwork: Presented by Anshum Gupta, IBM
Understanding the Solr Security Framekwork: Presented by Anshum Gupta, IBM
 
Grouping and Joining in Lucene/Solr
Grouping and Joining in Lucene/SolrGrouping and Joining in Lucene/Solr
Grouping and Joining in Lucene/Solr
 
Build a Great Application in Minutes!: Presented by Stefan Olafsson, Twigkit
Build a Great Application in Minutes!: Presented by Stefan Olafsson, TwigkitBuild a Great Application in Minutes!: Presented by Stefan Olafsson, Twigkit
Build a Great Application in Minutes!: Presented by Stefan Olafsson, Twigkit
 
Portable Lucene Index Format & Applications - Andrzej Bialecki
Portable Lucene Index Format & Applications - Andrzej BialeckiPortable Lucene Index Format & Applications - Andrzej Bialecki
Portable Lucene Index Format & Applications - Andrzej Bialecki
 
Introduction to Lucene and Solr - 1
Introduction to Lucene and Solr - 1Introduction to Lucene and Solr - 1
Introduction to Lucene and Solr - 1
 
Lucene And Solr Intro
Lucene And Solr IntroLucene And Solr Intro
Lucene And Solr Intro
 
Reflected Intelligence - Lucene/Solr as a self-learning data system: Presente...
Reflected Intelligence - Lucene/Solr as a self-learning data system: Presente...Reflected Intelligence - Lucene/Solr as a self-learning data system: Presente...
Reflected Intelligence - Lucene/Solr as a self-learning data system: Presente...
 

Ähnlich wie Building and Running Solr-as-a-Service: Presented by Shai Erera, IBM

Scaling SolrCloud to a Large Number of Collections: Presented by Shalin Shekh...
Scaling SolrCloud to a Large Number of Collections: Presented by Shalin Shekh...Scaling SolrCloud to a Large Number of Collections: Presented by Shalin Shekh...
Scaling SolrCloud to a Large Number of Collections: Presented by Shalin Shekh...Lucidworks
 
Benchmarking Solr Performance at Scale
Benchmarking Solr Performance at ScaleBenchmarking Solr Performance at Scale
Benchmarking Solr Performance at Scalethelabdude
 
Scaling SolrCloud to a Large Number of Collections - Fifth Elephant 2014
Scaling SolrCloud to a Large Number of Collections - Fifth Elephant 2014Scaling SolrCloud to a Large Number of Collections - Fifth Elephant 2014
Scaling SolrCloud to a Large Number of Collections - Fifth Elephant 2014Shalin Shekhar Mangar
 
Managing Security At 1M Events a Second using Elasticsearch
Managing Security At 1M Events a Second using ElasticsearchManaging Security At 1M Events a Second using Elasticsearch
Managing Security At 1M Events a Second using ElasticsearchJoe Alex
 
Scaling SolrCloud to a large number of Collections
Scaling SolrCloud to a large number of CollectionsScaling SolrCloud to a large number of Collections
Scaling SolrCloud to a large number of CollectionsAnshum Gupta
 
Lessons from Sharding Solr
Lessons from Sharding SolrLessons from Sharding Solr
Lessons from Sharding SolrGregg Donovan
 
Cassandra
CassandraCassandra
Cassandraexsuns
 
Autoscaling Solr - Shalin Shekhar Mangar, Lucidworks
Autoscaling Solr - Shalin Shekhar Mangar, LucidworksAutoscaling Solr - Shalin Shekhar Mangar, Lucidworks
Autoscaling Solr - Shalin Shekhar Mangar, LucidworksLucidworks
 
Real time analytics using Hadoop and Elasticsearch
Real time analytics using Hadoop and ElasticsearchReal time analytics using Hadoop and Elasticsearch
Real time analytics using Hadoop and ElasticsearchAbhishek Andhavarapu
 
Building a Large Scale SEO/SEM Application with Apache Solr: Presented by Rah...
Building a Large Scale SEO/SEM Application with Apache Solr: Presented by Rah...Building a Large Scale SEO/SEM Application with Apache Solr: Presented by Rah...
Building a Large Scale SEO/SEM Application with Apache Solr: Presented by Rah...Lucidworks
 
Apache Solr - Enterprise search platform
Apache Solr - Enterprise search platformApache Solr - Enterprise search platform
Apache Solr - Enterprise search platformTommaso Teofili
 
Building a Large Scale SEO/SEM Application with Apache Solr
Building a Large Scale SEO/SEM Application with Apache SolrBuilding a Large Scale SEO/SEM Application with Apache Solr
Building a Large Scale SEO/SEM Application with Apache SolrRahul Jain
 
Real-time Inverted Search in the Cloud Using Lucene and Storm
Real-time Inverted Search in the Cloud Using Lucene and StormReal-time Inverted Search in the Cloud Using Lucene and Storm
Real-time Inverted Search in the Cloud Using Lucene and Stormlucenerevolution
 
Meet Solr For The Tirst Again
Meet Solr For The Tirst AgainMeet Solr For The Tirst Again
Meet Solr For The Tirst AgainVarun Thacker
 
Swift at Scale: The IBM SoftLayer Story
Swift at Scale: The IBM SoftLayer StorySwift at Scale: The IBM SoftLayer Story
Swift at Scale: The IBM SoftLayer StoryBrian Cline
 
Automated Cluster Management and Recovery for Large Scale Multi-Tenant Sea...
  Automated Cluster Management and Recovery  for Large Scale Multi-Tenant Sea...  Automated Cluster Management and Recovery  for Large Scale Multi-Tenant Sea...
Automated Cluster Management and Recovery for Large Scale Multi-Tenant Sea...Lucidworks
 
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 DCLucidworks (Archived)
 

Ähnlich wie Building and Running Solr-as-a-Service: Presented by Shai Erera, IBM (20)

Scaling SolrCloud to a Large Number of Collections: Presented by Shalin Shekh...
Scaling SolrCloud to a Large Number of Collections: Presented by Shalin Shekh...Scaling SolrCloud to a Large Number of Collections: Presented by Shalin Shekh...
Scaling SolrCloud to a Large Number of Collections: Presented by Shalin Shekh...
 
L6.sp17.pptx
L6.sp17.pptxL6.sp17.pptx
L6.sp17.pptx
 
Benchmarking Solr Performance at Scale
Benchmarking Solr Performance at ScaleBenchmarking Solr Performance at Scale
Benchmarking Solr Performance at Scale
 
Scaling SolrCloud to a Large Number of Collections - Fifth Elephant 2014
Scaling SolrCloud to a Large Number of Collections - Fifth Elephant 2014Scaling SolrCloud to a Large Number of Collections - Fifth Elephant 2014
Scaling SolrCloud to a Large Number of Collections - Fifth Elephant 2014
 
Managing Security At 1M Events a Second using Elasticsearch
Managing Security At 1M Events a Second using ElasticsearchManaging Security At 1M Events a Second using Elasticsearch
Managing Security At 1M Events a Second using Elasticsearch
 
Scaling SolrCloud to a large number of Collections
Scaling SolrCloud to a large number of CollectionsScaling SolrCloud to a large number of Collections
Scaling SolrCloud to a large number of Collections
 
Lessons from Sharding Solr
Lessons from Sharding SolrLessons from Sharding Solr
Lessons from Sharding Solr
 
Cassandra
CassandraCassandra
Cassandra
 
Autoscaling Solr - Shalin Shekhar Mangar, Lucidworks
Autoscaling Solr - Shalin Shekhar Mangar, LucidworksAutoscaling Solr - Shalin Shekhar Mangar, Lucidworks
Autoscaling Solr - Shalin Shekhar Mangar, Lucidworks
 
Real time analytics using Hadoop and Elasticsearch
Real time analytics using Hadoop and ElasticsearchReal time analytics using Hadoop and Elasticsearch
Real time analytics using Hadoop and Elasticsearch
 
Building a Large Scale SEO/SEM Application with Apache Solr: Presented by Rah...
Building a Large Scale SEO/SEM Application with Apache Solr: Presented by Rah...Building a Large Scale SEO/SEM Application with Apache Solr: Presented by Rah...
Building a Large Scale SEO/SEM Application with Apache Solr: Presented by Rah...
 
Apache Solr - Enterprise search platform
Apache Solr - Enterprise search platformApache Solr - Enterprise search platform
Apache Solr - Enterprise search platform
 
Building a Large Scale SEO/SEM Application with Apache Solr
Building a Large Scale SEO/SEM Application with Apache SolrBuilding a Large Scale SEO/SEM Application with Apache Solr
Building a Large Scale SEO/SEM Application with Apache Solr
 
Real-time Inverted Search in the Cloud Using Lucene and Storm
Real-time Inverted Search in the Cloud Using Lucene and StormReal-time Inverted Search in the Cloud Using Lucene and Storm
Real-time Inverted Search in the Cloud Using Lucene and Storm
 
Meet Solr For The Tirst Again
Meet Solr For The Tirst AgainMeet Solr For The Tirst Again
Meet Solr For The Tirst Again
 
Swift at Scale: The IBM SoftLayer Story
Swift at Scale: The IBM SoftLayer StorySwift at Scale: The IBM SoftLayer Story
Swift at Scale: The IBM SoftLayer Story
 
BigData Developers MeetUp
BigData Developers MeetUpBigData Developers MeetUp
BigData Developers MeetUp
 
Automated Cluster Management and Recovery for Large Scale Multi-Tenant Sea...
  Automated Cluster Management and Recovery  for Large Scale Multi-Tenant Sea...  Automated Cluster Management and Recovery  for Large Scale Multi-Tenant Sea...
Automated Cluster Management and Recovery for Large Scale Multi-Tenant Sea...
 
Redshift deep dive
Redshift deep diveRedshift deep dive
Redshift deep dive
 
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
 

Mehr von Lucidworks

Search is the Tip of the Spear for Your B2B eCommerce Strategy
Search is the Tip of the Spear for Your B2B eCommerce StrategySearch is the Tip of the Spear for Your B2B eCommerce Strategy
Search is the Tip of the Spear for Your B2B eCommerce StrategyLucidworks
 
Drive Agent Effectiveness in Salesforce
Drive Agent Effectiveness in SalesforceDrive Agent Effectiveness in Salesforce
Drive Agent Effectiveness in SalesforceLucidworks
 
How Crate & Barrel Connects Shoppers with Relevant Products
How Crate & Barrel Connects Shoppers with Relevant ProductsHow Crate & Barrel Connects Shoppers with Relevant Products
How Crate & Barrel Connects Shoppers with Relevant ProductsLucidworks
 
Lucidworks & IMRG Webinar – Best-In-Class Retail Product Discovery
Lucidworks & IMRG Webinar – Best-In-Class Retail Product DiscoveryLucidworks & IMRG Webinar – Best-In-Class Retail Product Discovery
Lucidworks & IMRG Webinar – Best-In-Class Retail Product DiscoveryLucidworks
 
Connected Experiences Are Personalized Experiences
Connected Experiences Are Personalized ExperiencesConnected Experiences Are Personalized Experiences
Connected Experiences Are Personalized ExperiencesLucidworks
 
Intelligent Insight Driven Policing with MC+A, Toronto Police Service and Luc...
Intelligent Insight Driven Policing with MC+A, Toronto Police Service and Luc...Intelligent Insight Driven Policing with MC+A, Toronto Police Service and Luc...
Intelligent Insight Driven Policing with MC+A, Toronto Police Service and Luc...Lucidworks
 
[Webinar] Intelligent Policing. Leveraging Data to more effectively Serve Com...
[Webinar] Intelligent Policing. Leveraging Data to more effectively Serve Com...[Webinar] Intelligent Policing. Leveraging Data to more effectively Serve Com...
[Webinar] Intelligent Policing. Leveraging Data to more effectively Serve Com...Lucidworks
 
Preparing for Peak in Ecommerce | eTail Asia 2020
Preparing for Peak in Ecommerce | eTail Asia 2020Preparing for Peak in Ecommerce | eTail Asia 2020
Preparing for Peak in Ecommerce | eTail Asia 2020Lucidworks
 
Accelerate The Path To Purchase With Product Discovery at Retail Innovation C...
Accelerate The Path To Purchase With Product Discovery at Retail Innovation C...Accelerate The Path To Purchase With Product Discovery at Retail Innovation C...
Accelerate The Path To Purchase With Product Discovery at Retail Innovation C...Lucidworks
 
AI-Powered Linguistics and Search with Fusion and Rosette
AI-Powered Linguistics and Search with Fusion and RosetteAI-Powered Linguistics and Search with Fusion and Rosette
AI-Powered Linguistics and Search with Fusion and RosetteLucidworks
 
The Service Industry After COVID-19: The Soul of Service in a Virtual Moment
The Service Industry After COVID-19: The Soul of Service in a Virtual MomentThe Service Industry After COVID-19: The Soul of Service in a Virtual Moment
The Service Industry After COVID-19: The Soul of Service in a Virtual MomentLucidworks
 
Webinar: Smart answers for employee and customer support after covid 19 - Europe
Webinar: Smart answers for employee and customer support after covid 19 - EuropeWebinar: Smart answers for employee and customer support after covid 19 - Europe
Webinar: Smart answers for employee and customer support after covid 19 - EuropeLucidworks
 
Smart Answers for Employee and Customer Support After COVID-19
Smart Answers for Employee and Customer Support After COVID-19Smart Answers for Employee and Customer Support After COVID-19
Smart Answers for Employee and Customer Support After COVID-19Lucidworks
 
Applying AI & Search in Europe - featuring 451 Research
Applying AI & Search in Europe - featuring 451 ResearchApplying AI & Search in Europe - featuring 451 Research
Applying AI & Search in Europe - featuring 451 ResearchLucidworks
 
Webinar: Accelerate Data Science with Fusion 5.1
Webinar: Accelerate Data Science with Fusion 5.1Webinar: Accelerate Data Science with Fusion 5.1
Webinar: Accelerate Data Science with Fusion 5.1Lucidworks
 
Webinar: 5 Must-Have Items You Need for Your 2020 Ecommerce Strategy
Webinar: 5 Must-Have Items You Need for Your 2020 Ecommerce StrategyWebinar: 5 Must-Have Items You Need for Your 2020 Ecommerce Strategy
Webinar: 5 Must-Have Items You Need for Your 2020 Ecommerce StrategyLucidworks
 
Where Search Meets Science and Style Meets Savings: Nordstrom Rack's Journey ...
Where Search Meets Science and Style Meets Savings: Nordstrom Rack's Journey ...Where Search Meets Science and Style Meets Savings: Nordstrom Rack's Journey ...
Where Search Meets Science and Style Meets Savings: Nordstrom Rack's Journey ...Lucidworks
 
Apply Knowledge Graphs and Search for Real-World Decision Intelligence
Apply Knowledge Graphs and Search for Real-World Decision IntelligenceApply Knowledge Graphs and Search for Real-World Decision Intelligence
Apply Knowledge Graphs and Search for Real-World Decision IntelligenceLucidworks
 
Webinar: Building a Business Case for Enterprise Search
Webinar: Building a Business Case for Enterprise SearchWebinar: Building a Business Case for Enterprise Search
Webinar: Building a Business Case for Enterprise SearchLucidworks
 
Why Insight Engines Matter in 2020 and Beyond
Why Insight Engines Matter in 2020 and BeyondWhy Insight Engines Matter in 2020 and Beyond
Why Insight Engines Matter in 2020 and BeyondLucidworks
 

Mehr von Lucidworks (20)

Search is the Tip of the Spear for Your B2B eCommerce Strategy
Search is the Tip of the Spear for Your B2B eCommerce StrategySearch is the Tip of the Spear for Your B2B eCommerce Strategy
Search is the Tip of the Spear for Your B2B eCommerce Strategy
 
Drive Agent Effectiveness in Salesforce
Drive Agent Effectiveness in SalesforceDrive Agent Effectiveness in Salesforce
Drive Agent Effectiveness in Salesforce
 
How Crate & Barrel Connects Shoppers with Relevant Products
How Crate & Barrel Connects Shoppers with Relevant ProductsHow Crate & Barrel Connects Shoppers with Relevant Products
How Crate & Barrel Connects Shoppers with Relevant Products
 
Lucidworks & IMRG Webinar – Best-In-Class Retail Product Discovery
Lucidworks & IMRG Webinar – Best-In-Class Retail Product DiscoveryLucidworks & IMRG Webinar – Best-In-Class Retail Product Discovery
Lucidworks & IMRG Webinar – Best-In-Class Retail Product Discovery
 
Connected Experiences Are Personalized Experiences
Connected Experiences Are Personalized ExperiencesConnected Experiences Are Personalized Experiences
Connected Experiences Are Personalized Experiences
 
Intelligent Insight Driven Policing with MC+A, Toronto Police Service and Luc...
Intelligent Insight Driven Policing with MC+A, Toronto Police Service and Luc...Intelligent Insight Driven Policing with MC+A, Toronto Police Service and Luc...
Intelligent Insight Driven Policing with MC+A, Toronto Police Service and Luc...
 
[Webinar] Intelligent Policing. Leveraging Data to more effectively Serve Com...
[Webinar] Intelligent Policing. Leveraging Data to more effectively Serve Com...[Webinar] Intelligent Policing. Leveraging Data to more effectively Serve Com...
[Webinar] Intelligent Policing. Leveraging Data to more effectively Serve Com...
 
Preparing for Peak in Ecommerce | eTail Asia 2020
Preparing for Peak in Ecommerce | eTail Asia 2020Preparing for Peak in Ecommerce | eTail Asia 2020
Preparing for Peak in Ecommerce | eTail Asia 2020
 
Accelerate The Path To Purchase With Product Discovery at Retail Innovation C...
Accelerate The Path To Purchase With Product Discovery at Retail Innovation C...Accelerate The Path To Purchase With Product Discovery at Retail Innovation C...
Accelerate The Path To Purchase With Product Discovery at Retail Innovation C...
 
AI-Powered Linguistics and Search with Fusion and Rosette
AI-Powered Linguistics and Search with Fusion and RosetteAI-Powered Linguistics and Search with Fusion and Rosette
AI-Powered Linguistics and Search with Fusion and Rosette
 
The Service Industry After COVID-19: The Soul of Service in a Virtual Moment
The Service Industry After COVID-19: The Soul of Service in a Virtual MomentThe Service Industry After COVID-19: The Soul of Service in a Virtual Moment
The Service Industry After COVID-19: The Soul of Service in a Virtual Moment
 
Webinar: Smart answers for employee and customer support after covid 19 - Europe
Webinar: Smart answers for employee and customer support after covid 19 - EuropeWebinar: Smart answers for employee and customer support after covid 19 - Europe
Webinar: Smart answers for employee and customer support after covid 19 - Europe
 
Smart Answers for Employee and Customer Support After COVID-19
Smart Answers for Employee and Customer Support After COVID-19Smart Answers for Employee and Customer Support After COVID-19
Smart Answers for Employee and Customer Support After COVID-19
 
Applying AI & Search in Europe - featuring 451 Research
Applying AI & Search in Europe - featuring 451 ResearchApplying AI & Search in Europe - featuring 451 Research
Applying AI & Search in Europe - featuring 451 Research
 
Webinar: Accelerate Data Science with Fusion 5.1
Webinar: Accelerate Data Science with Fusion 5.1Webinar: Accelerate Data Science with Fusion 5.1
Webinar: Accelerate Data Science with Fusion 5.1
 
Webinar: 5 Must-Have Items You Need for Your 2020 Ecommerce Strategy
Webinar: 5 Must-Have Items You Need for Your 2020 Ecommerce StrategyWebinar: 5 Must-Have Items You Need for Your 2020 Ecommerce Strategy
Webinar: 5 Must-Have Items You Need for Your 2020 Ecommerce Strategy
 
Where Search Meets Science and Style Meets Savings: Nordstrom Rack's Journey ...
Where Search Meets Science and Style Meets Savings: Nordstrom Rack's Journey ...Where Search Meets Science and Style Meets Savings: Nordstrom Rack's Journey ...
Where Search Meets Science and Style Meets Savings: Nordstrom Rack's Journey ...
 
Apply Knowledge Graphs and Search for Real-World Decision Intelligence
Apply Knowledge Graphs and Search for Real-World Decision IntelligenceApply Knowledge Graphs and Search for Real-World Decision Intelligence
Apply Knowledge Graphs and Search for Real-World Decision Intelligence
 
Webinar: Building a Business Case for Enterprise Search
Webinar: Building a Business Case for Enterprise SearchWebinar: Building a Business Case for Enterprise Search
Webinar: Building a Business Case for Enterprise Search
 
Why Insight Engines Matter in 2020 and Beyond
Why Insight Engines Matter in 2020 and BeyondWhy Insight Engines Matter in 2020 and Beyond
Why Insight Engines Matter in 2020 and Beyond
 

Kürzlich hochgeladen

Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityWSO2
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...Zilliz
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native ApplicationsWSO2
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAndrey Devyatkin
 
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdfSandro Moreira
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MIND CTI
 
Introduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDMIntroduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDMKumar Satyam
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...apidays
 
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 FMESafe Software
 
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUKSpring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUKJago de Vreede
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyKhushali Kathiriya
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Zilliz
 
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptxJohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptxJohnPollard37
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024The Digital Insurer
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherRemote DBA Services
 
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...DianaGray10
 
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 FMESafe Software
 
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, Adobeapidays
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 
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 WoodJuan lago vázquez
 

Kürzlich hochgeladen (20)

Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Introduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDMIntroduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDM
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
 
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
 
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUKSpring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
 
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptxJohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptx
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
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...
 
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
 
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
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
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
 

Building and Running Solr-as-a-Service: Presented by Shai Erera, IBM

  • 1. O C T O B E R 1 1 - 1 4 , 2 0 1 6 • B O S T O N , M A
  • 2. Building and Running Solr-as-a-Service Shai Erera STSM, IBM
  • 3. 3 01 Who Am I? • Working at IBM – Social Analytics & Technologies • Lucene/Solr committer and PMC member • http://shaierera.blogspot.com • shaie@apache.org
  • 4. 4 01 Background • More and more teams develop solutions with Solr • Different use cases: search, analytics, key-value store… • Many solutions become cloud-based • Similar challenges deploying Solr in the cloud • Security, cloud infrastructure • Solr version upgrades • Data center awareness / multi-DC support • …
  • 5. 5 01 Mission Provide a cloud-based service for managing hosted Solr instances • Let users focus on indexing, search, collections management • NOT worry about cluster health, deployment, high-availability … • Support the full Solr API • Adapt Solr to the challenging cloud environment
  • 6. 6 01 Developing Cloud-Based Software is Fun! • A world of micro-services: Auth, Logging, Service Discovery, Uptime, PagerDuty … • Infrastructure decisions • Virtual Machines or Containers? • Local or Remote storage? • Single or Multi Data Center support? • Software development and maintenance challenges • How to test the code? • How to perform software upgrades? • How to migrate the infrastructure? • Stability/Recovery – “edge” cases are not so rare * Whatever can go wrong, will go wrong!
  • 7. 7 01 Multi-Tenancy • A cluster per tenant • Each cluster is isolated from other clusters • Resources • Collections • Configurations • ZK chroot • Different Solr versions… • Every tenant can create multiple Solr cluster instances • Department indexes, dev/staging/production …
  • 9. 9 01 Sizing Your Cluster • A Solr cluster’s size is measured in units • Each unit translates to memory, storage and CPU resources • A size-7 cluster has 7X more resources than a size-1 • All collections have the same number of shards and a replicationFactor of 2 • Bigger clusters also mean sharding and more Solr nodes • Cluster sizes are divided into (conceptual) tiers • Tier1 = 1 shard, 2 nodes • Tier2 = 2 shards, 4 nodes • Tiern = 2 x (Tiern-1) shards, 2 x (Tiern-1) nodes • Example, a size-16 (Tier3) cluster has • 4 shards, 2 replicas each, 8 nodes • Total 32 cores • Total 64 GB (effective) memory • Total 512 GB (effective) storage
  • 10. 10 01 Software Upgrades • Need to upgrade Solr version, but also own code • Software upgrade means a full Docker image upgrade (even if only replacing a single .jar) • SSH and upgrade software forbidden (security) • Important: no down-time • Data-replication Upgrade • Replicate data to new nodes • Expensive: a lot of data is copied around • Useful when resizing a cluster, migrating data center etc. • In-place Upgrade • Relies on Marathon’s pinning of applications to host • Very fast: re-deploy a Marathon application + Solr restart; No data replication • The default upgrade mechanism, unless a data-copy is needed
  • 11. 11 01 Software Upgrades • Start with 2 containers on version X • Create 2 additional containers on version Y • Add replicas on new Solr nodes • Re-assign shard leadership to new replicas • Route traffic to the new nodes • Delete old containers Data-Replication • Start with 2 containers on version X • Update one container’s Marathon application configuration to version Y • Marathon re-deploys the applications on the same host • Wait for Solr to come up and report “healthy” • Repeat with second container In-Place
  • 12. 12 01 Resize Your Cluster • As your index grows, you will need to increase the available resources to your cluster • Resizing a cluster means allocating bigger containers (RAM, CPU, Storage) • A cluster resize behaves very similar to a data-replication upgrade • New containers with appropriate size are allocated and the data is replicated to them • Resize across tiers is a bit different • More containers are allocated • Each new container is potentially smaller than the previous ones, but overall you have more resources • Simply replicating data isn’t possible – index may not fit in the new containers • Before the resize is carried on, shards are split • Each shard eventually lands on its own container
  • 13. 13 01 Collection Configuration Has Too Many Options • Lock factory must stay “native” • No messing with uLog • Do not override dataDir! • No XSLT • Only Classic/Managed schema factory allowed • No update listeners • No custom replication handler • No JMX
  • 14. 14 01 Replicas Housekeeping • In some cases containers are re-spawned on a different host than where their data is located • Missing replicas • Solr does not automatically add replicas to shards that do not meet their replicationFactor • Add missing replicas to those shards • Dead replicas • Replicas are not automatically removed from CLUSTERSTATUS • When a shard has enough ACTIVE replicas, delete those “dead” replicas • Extra replicas • Many replicas added to shards (“Stuck Overseer”) • Cluster re-balancing • Delete “extra” replicas from most occupied nodes
  • 15. 15 01 Cluster Balancing • In some cases, Solr nodes may host more replicas than others • Cluster resize: shard splitting does not distribute all sub-shards’ replicas across all nodes • Fill missing replicas: always aim to achieve HA • Cluster balancing involves multiple operations • Find collections with replicas of more than one shard on same host • Find candidate nodes to host those replicas (least occupied nodes #replicas-wise) • Add additional replicas of those shards on those nodes • Invoke the “delete extra replicas” procedure to delete the replicas on the overbooked node
  • 16. 16 01 More Solr Challenges • CLOSE_WAIT (SOLR-9290) • DOWN replicas • <int name="maxUpdateConnections">10000</int> • <int name="maxUpdateConnectionsPerHost">100</int> Fixed in 5.5.3 • “Stuck” Overseer • Various tasks accumulated in Overseer queue • Cluster is unable to get to a healthy state (missing replicas) Many Overseer changes in recent releases + CLOSE_WAIT fix
  • 17. 17 01 More Solr Challenges • Admin APIs are too powerful (and irrelevant) • Users need not worry about Solr cluster deployment aspects Block most admin APIs (shard split, leaders handling, replicas management, roles…) Create collection with minimum set of parameters: configuration and collection names • Collection Configuration API • Users do not have access to ZK API to manage a collection’s configuration in ZK
  • 18. 18 01 Current Status • Two years in production, currently running Solr 5.5.3 • Usage / Capacity • 450 Baremetal servers • 3000+ Solr clusters • 6000+ Solr nodes • 300,000+ API calls per day • 99.5% uptime