SlideShare a Scribd company logo
1 of 56
Download to read offline
Big Bird.
(scaling twitter)
Rails Scales.
(but not out of the box)
First, Some Facts
• 600 requests per second. Growing fast.
• 180 Rails Instances (Mongrel). Growing fast.
• 1 Database Server (MySQL) + 1 Slave.
• 30-odd Processes for Misc. Jobs
• 8 Sun X4100s
• Many users, many updates.
Joy          Pain




Oct   Nov   Dec    Jan   Feb     March   Apr
IM IN UR RAILZ




     MAKIN EM GO FAST
It’s Easy, Really.
1. Realize Your Site is Slow
2. Optimize the Database
3. Cache the Hell out of Everything
4. Scale Messaging
5. Deal With Abuse
It’s Easy, Really.
1. Realize Your Site is Slow
2. Optimize the Database
3. Cache the Hell out of Everything
4. Scale Messaging
5. Deal With Abuse
6. Profit
the
     more
      you
        know

{ Part the First }
We Failed at This.
Don’t Be Like Us

• Munin
• Nagios
• AWStats & Google Analytics
• Exception Notifier / Exception Logger
• Immediately add reporting to track problems.
Test Everything

•   Start Before You Start

•   No Need To Be Fancy

•   Tests Will Save Your Life

•   Agile Becomes
    Important When Your
    Site Is Down
<!-- served to you through a copper wire by sampaati at 22 Apr
    15:02 in 343 ms (d 102 / r 217). thank you, come again. -->
 <!-- served to you through a copper wire by kolea.twitter.com at
22 Apr 15:02 in 235 ms (d 87 / r 130). thank you, come again. -->
 <!-- served to you through a copper wire by raven.twitter.com at
22 Apr 15:01 in 450 ms (d 96 / r 337). thank you, come again. -->



                  Benchmarks?
                       let your users do it.
 <!-- served to you through a copper wire by kolea.twitter.com at
22 Apr 15:00 in 409 ms (d 88 / r 307). thank you, come again. -->
  <!-- served to you through a copper wire by firebird at 22 Apr
   15:03 in 2094 ms (d 643 / r 1445). thank you, come again. -->
   <!-- served to you through a copper wire by quetzal at 22 Apr
     15:01 in 384 ms (d 70 / r 297). thank you, come again. -->
The Database
  { Part the Second }
“The Next Application I Build is Going
to Be Easily Partitionable” - S. Butterfield
“The Next Application I Build is Going
to Be Easily Partitionable” - S. Butterfield
“The Next Application I Build is Going
to Be Easily Partitionable” - S. Butterfield
Too Late.
Index Everything
class AddIndex < ActiveRecord::Migration
     def self.up
       add_index :users, :email
     end

     def self.down
       remove_index :users, :email
     end
   end


Repeat for any column that appears in a WHERE clause

             Rails won’t do this for you.
Denormalize A Lot
class DenormalizeFriendsIds < ActiveRecord::Migration
  def self.up
    add_column "users", "friends_ids", :text
  end

  def self.down
    remove_column "users", "friends_ids"
  end
end
class Friendship < ActiveRecord::Base
  belongs_to :user
  belongs_to :friend

 after_create :add_to_denormalized_friends
 after_destroy :remove_from_denormalized_friends

  def add_to_denormalized_friends
    user.friends_ids << friend.id
    user.friends_ids.uniq!
    user.save_without_validation
  end

  def remove_from_denormalized_friends
    user.friends_ids.delete(friend.id)
    user.save_without_validation
  end
end
Don’t be Stupid
bob.friends.map(&:email)
     Status.count()
“email like ‘%#{search}%’”
That’s where we are.
                  Seriously.
  If your Rails application is doing anything more
complex than that, you’re doing something wrong*.



        * or you observed the First Rule of Butterfield.
Partitioning Comes Later.
   (we’ll let you know how it goes)
The Cache
 { Part the Third }
MemCache
MemCache
MemCache
!
class Status < ActiveRecord::Base
  class << self
    def count_with_memcache(*args)
      return count_without_memcache unless args.empty?
      count = CACHE.get(“status_count”)
      if count.nil?
        count = count_without_memcache
        CACHE.set(“status_count”, count)
      end
      count
    end
    alias_method_chain :count, :memcache
  end
  after_create :increment_memcache_count
  after_destroy :decrement_memcache_count
  ...
end
class User < ActiveRecord::Base
  def friends_statuses
    ids = CACHE.get(“friends_statuses:#{id}”)
    Status.find(:all, :conditions => [“id IN (?)”, ids])
  end
end

class Status < ActiveRecord::Base
  after_create :update_caches
  def update_caches
    user.friends_ids.each do |friend_id|
      ids = CACHE.get(“friends_statuses:#{friend_id}”)
      ids.pop
      ids.unshift(id)
      CACHE.set(“friends_statuses:#{friend_id}”, ids)
    end
  end
end
The Future


            ve d
          ti r
         co
         Ac
           e
         R
90% API Requests
     Cache Them!
“There are only two hard things in CS:
 cache invalidation and naming things.”

             – Phil Karlton, via Tim Bray
Messaging
{ Part the Fourth }
You Already Knew All
That Other Stuff, Right?
Producer             Consumer
           Message
Producer             Consumer
           Queue
Producer             Consumer
DRb
• The Good:
 • Stupid Easy
 • Reasonably Fast
• The Bad:
 • Kinda Flaky
 • Zero Redundancy
 • Tightly Coupled
ejabberd


            Jabber Client
                (drb)




           Incoming         Outgoing
Presence
           Messages         Messages


              MySQL
Server
     DRb.start_service ‘druby://localhost:10000’, myobject




                         Client
myobject = DRbObject.new_with_uri(‘druby://localhost:10000’)
Rinda

• Shared Queue (TupleSpace)
• Built with DRb
• RingyDingy makes it stupid easy
• See Eric Hodel’s documentation
• O(N) for take(). Sigh.
Timestamp: 12/22/06 01:53:14 (4 months ago)
      Author: lattice
      Message: Fugly. Seriously. Fugly.




        SELECT * FROM messages WHERE
substring(truncate(id,0),-2,1) = #{@fugly_dist_idx}
It Scales.
(except it stopped on Tuesday)
Options

• ActiveMQ (Java)
• RabbitMQ (erlang)
• MySQL + Lightweight Locking
• Something Else?
erlang?


What are you doing?
 Stabbing my eyes out with a fork.
Starling

• Ruby, will be ported to something faster
• 4000 transactional msgs/s
• First pass written in 4 hours
• Speaks MemCache (set, get)
Use Messages to
Invalidate Cache
   (it’s really not that hard)
Abuse
{ Part the Fifth }
The Italians
9000 friends in 24 hours
        (doesn’t scale)
http://flickr.com/photos/heather/464504545/
http://flickr.com/photos/curiouskiwi/165229284/
http://flickr.com/photo_zoom.gne?id=42914103&size=l
http://flickr.com/photos/madstillz/354596905/
http://flickr.com/photos/laughingsquid/382242677/
http://flickr.com/photos/bng/46678227/

More Related Content

What's hot

From cache to in-memory data grid. Introduction to Hazelcast.
From cache to in-memory data grid. Introduction to Hazelcast.From cache to in-memory data grid. Introduction to Hazelcast.
From cache to in-memory data grid. Introduction to Hazelcast.Taras Matyashovsky
 
Handling Data Skew Adaptively In Spark Using Dynamic Repartitioning
Handling Data Skew Adaptively In Spark Using Dynamic RepartitioningHandling Data Skew Adaptively In Spark Using Dynamic Repartitioning
Handling Data Skew Adaptively In Spark Using Dynamic RepartitioningSpark Summit
 
Sizing MongoDB Clusters
Sizing MongoDB Clusters Sizing MongoDB Clusters
Sizing MongoDB Clusters MongoDB
 
Sql vs NoSQL
Sql vs NoSQLSql vs NoSQL
Sql vs NoSQLRTigger
 
Faceted Search with Lucene
Faceted Search with LuceneFaceted Search with Lucene
Faceted Search with Lucenelucenerevolution
 
Cassandra Introduction & Features
Cassandra Introduction & FeaturesCassandra Introduction & Features
Cassandra Introduction & FeaturesDataStax Academy
 
HBase in Practice
HBase in PracticeHBase in Practice
HBase in Practicelarsgeorge
 
Elasticsearch Query DSL - Not just for wizards...
Elasticsearch Query DSL - Not just for wizards...Elasticsearch Query DSL - Not just for wizards...
Elasticsearch Query DSL - Not just for wizards...clintongormley
 
A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiDatabricks
 
Virtual Flink Forward 2020: Netflix Data Mesh: Composable Data Processing - J...
Virtual Flink Forward 2020: Netflix Data Mesh: Composable Data Processing - J...Virtual Flink Forward 2020: Netflix Data Mesh: Composable Data Processing - J...
Virtual Flink Forward 2020: Netflix Data Mesh: Composable Data Processing - J...Flink Forward
 
Distributed Databases Deconstructed: CockroachDB, TiDB and YugaByte DB
Distributed Databases Deconstructed: CockroachDB, TiDB and YugaByte DBDistributed Databases Deconstructed: CockroachDB, TiDB and YugaByte DB
Distributed Databases Deconstructed: CockroachDB, TiDB and YugaByte DBYugabyteDB
 
Stability Patterns for Microservices
Stability Patterns for MicroservicesStability Patterns for Microservices
Stability Patterns for Microservicespflueras
 
Moving to Databricks & Delta
Moving to Databricks & DeltaMoving to Databricks & Delta
Moving to Databricks & DeltaDatabricks
 
Large Scale Lakehouse Implementation Using Structured Streaming
Large Scale Lakehouse Implementation Using Structured StreamingLarge Scale Lakehouse Implementation Using Structured Streaming
Large Scale Lakehouse Implementation Using Structured StreamingDatabricks
 
Making Apache Spark Better with Delta Lake
Making Apache Spark Better with Delta LakeMaking Apache Spark Better with Delta Lake
Making Apache Spark Better with Delta LakeDatabricks
 

What's hot (20)

From cache to in-memory data grid. Introduction to Hazelcast.
From cache to in-memory data grid. Introduction to Hazelcast.From cache to in-memory data grid. Introduction to Hazelcast.
From cache to in-memory data grid. Introduction to Hazelcast.
 
Handling Data Skew Adaptively In Spark Using Dynamic Repartitioning
Handling Data Skew Adaptively In Spark Using Dynamic RepartitioningHandling Data Skew Adaptively In Spark Using Dynamic Repartitioning
Handling Data Skew Adaptively In Spark Using Dynamic Repartitioning
 
MongodB Internals
MongodB InternalsMongodB Internals
MongodB Internals
 
Sizing MongoDB Clusters
Sizing MongoDB Clusters Sizing MongoDB Clusters
Sizing MongoDB Clusters
 
Presto
PrestoPresto
Presto
 
Kafka internals
Kafka internalsKafka internals
Kafka internals
 
Sql vs NoSQL
Sql vs NoSQLSql vs NoSQL
Sql vs NoSQL
 
Faceted Search with Lucene
Faceted Search with LuceneFaceted Search with Lucene
Faceted Search with Lucene
 
Cassandra Introduction & Features
Cassandra Introduction & FeaturesCassandra Introduction & Features
Cassandra Introduction & Features
 
HBase in Practice
HBase in PracticeHBase in Practice
HBase in Practice
 
Elasticsearch Query DSL - Not just for wizards...
Elasticsearch Query DSL - Not just for wizards...Elasticsearch Query DSL - Not just for wizards...
Elasticsearch Query DSL - Not just for wizards...
 
Apache Spark Architecture
Apache Spark ArchitectureApache Spark Architecture
Apache Spark Architecture
 
A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and Hudi
 
Virtual Flink Forward 2020: Netflix Data Mesh: Composable Data Processing - J...
Virtual Flink Forward 2020: Netflix Data Mesh: Composable Data Processing - J...Virtual Flink Forward 2020: Netflix Data Mesh: Composable Data Processing - J...
Virtual Flink Forward 2020: Netflix Data Mesh: Composable Data Processing - J...
 
Distributed Databases Deconstructed: CockroachDB, TiDB and YugaByte DB
Distributed Databases Deconstructed: CockroachDB, TiDB and YugaByte DBDistributed Databases Deconstructed: CockroachDB, TiDB and YugaByte DB
Distributed Databases Deconstructed: CockroachDB, TiDB and YugaByte DB
 
Stability Patterns for Microservices
Stability Patterns for MicroservicesStability Patterns for Microservices
Stability Patterns for Microservices
 
Moving to Databricks & Delta
Moving to Databricks & DeltaMoving to Databricks & Delta
Moving to Databricks & Delta
 
Large Scale Lakehouse Implementation Using Structured Streaming
Large Scale Lakehouse Implementation Using Structured StreamingLarge Scale Lakehouse Implementation Using Structured Streaming
Large Scale Lakehouse Implementation Using Structured Streaming
 
Making Apache Spark Better with Delta Lake
Making Apache Spark Better with Delta LakeMaking Apache Spark Better with Delta Lake
Making Apache Spark Better with Delta Lake
 
Presto: SQL-on-anything
Presto: SQL-on-anythingPresto: SQL-on-anything
Presto: SQL-on-anything
 

Similar to Scaling Twitter

Hiveminder - Everything but the Secret Sauce
Hiveminder - Everything but the Secret SauceHiveminder - Everything but the Secret Sauce
Hiveminder - Everything but the Secret SauceJesse Vincent
 
Beijing Perl Workshop 2008 Hiveminder Secret Sauce
Beijing Perl Workshop 2008 Hiveminder Secret SauceBeijing Perl Workshop 2008 Hiveminder Secret Sauce
Beijing Perl Workshop 2008 Hiveminder Secret SauceJesse Vincent
 
Microblogging via XMPP
Microblogging via XMPPMicroblogging via XMPP
Microblogging via XMPPStoyan Zhekov
 
Aprendendo solid com exemplos
Aprendendo solid com exemplosAprendendo solid com exemplos
Aprendendo solid com exemplosvinibaggio
 
Socket applications
Socket applicationsSocket applications
Socket applicationsJoão Moura
 
Dynomite at Erlang Factory
Dynomite at Erlang FactoryDynomite at Erlang Factory
Dynomite at Erlang Factorymoonpolysoft
 
Performance Optimization of Rails Applications
Performance Optimization of Rails ApplicationsPerformance Optimization of Rails Applications
Performance Optimization of Rails ApplicationsSerge Smetana
 
Ensuring High Availability for Real-time Analytics featuring Boxed Ice / Serv...
Ensuring High Availability for Real-time Analytics featuring Boxed Ice / Serv...Ensuring High Availability for Real-time Analytics featuring Boxed Ice / Serv...
Ensuring High Availability for Real-time Analytics featuring Boxed Ice / Serv...MongoDB
 
WebPerformance: Why and How? – Stefan Wintermeyer
WebPerformance: Why and How? – Stefan WintermeyerWebPerformance: Why and How? – Stefan Wintermeyer
WebPerformance: Why and How? – Stefan WintermeyerElixir Club
 
NPW2009 - my.opera.com scalability v2.0
NPW2009 - my.opera.com scalability v2.0NPW2009 - my.opera.com scalability v2.0
NPW2009 - my.opera.com scalability v2.0Cosimo Streppone
 
Fisl - Deployment
Fisl - DeploymentFisl - Deployment
Fisl - DeploymentFabio Akita
 
SD, a P2P bug tracking system
SD, a P2P bug tracking systemSD, a P2P bug tracking system
SD, a P2P bug tracking systemJesse Vincent
 
RubyEnRails2007 - Dr Nic Williams - Keynote
RubyEnRails2007 - Dr Nic Williams - KeynoteRubyEnRails2007 - Dr Nic Williams - Keynote
RubyEnRails2007 - Dr Nic Williams - KeynoteDr Nic Williams
 
MongoDB: Optimising for Performance, Scale & Analytics
MongoDB: Optimising for Performance, Scale & AnalyticsMongoDB: Optimising for Performance, Scale & Analytics
MongoDB: Optimising for Performance, Scale & AnalyticsServer Density
 
JDD2015: Sharding with Akka Cluster: From Theory to Production - Krzysztof Ot...
JDD2015: Sharding with Akka Cluster: From Theory to Production - Krzysztof Ot...JDD2015: Sharding with Akka Cluster: From Theory to Production - Krzysztof Ot...
JDD2015: Sharding with Akka Cluster: From Theory to Production - Krzysztof Ot...PROIDEA
 
Web 2.0 Performance and Reliability: How to Run Large Web Apps
Web 2.0 Performance and Reliability: How to Run Large Web AppsWeb 2.0 Performance and Reliability: How to Run Large Web Apps
Web 2.0 Performance and Reliability: How to Run Large Web Appsadunne
 
How to avoid hanging yourself with Rails
How to avoid hanging yourself with RailsHow to avoid hanging yourself with Rails
How to avoid hanging yourself with RailsRowan Hick
 
Monkeybars in the Manor
Monkeybars in the ManorMonkeybars in the Manor
Monkeybars in the Manormartinbtt
 

Similar to Scaling Twitter (20)

Hiveminder - Everything but the Secret Sauce
Hiveminder - Everything but the Secret SauceHiveminder - Everything but the Secret Sauce
Hiveminder - Everything but the Secret Sauce
 
Beijing Perl Workshop 2008 Hiveminder Secret Sauce
Beijing Perl Workshop 2008 Hiveminder Secret SauceBeijing Perl Workshop 2008 Hiveminder Secret Sauce
Beijing Perl Workshop 2008 Hiveminder Secret Sauce
 
Microblogging via XMPP
Microblogging via XMPPMicroblogging via XMPP
Microblogging via XMPP
 
Aprendendo solid com exemplos
Aprendendo solid com exemplosAprendendo solid com exemplos
Aprendendo solid com exemplos
 
Socket applications
Socket applicationsSocket applications
Socket applications
 
From crash to testcase
From crash to testcaseFrom crash to testcase
From crash to testcase
 
Dynomite at Erlang Factory
Dynomite at Erlang FactoryDynomite at Erlang Factory
Dynomite at Erlang Factory
 
Performance Optimization of Rails Applications
Performance Optimization of Rails ApplicationsPerformance Optimization of Rails Applications
Performance Optimization of Rails Applications
 
Ensuring High Availability for Real-time Analytics featuring Boxed Ice / Serv...
Ensuring High Availability for Real-time Analytics featuring Boxed Ice / Serv...Ensuring High Availability for Real-time Analytics featuring Boxed Ice / Serv...
Ensuring High Availability for Real-time Analytics featuring Boxed Ice / Serv...
 
WebPerformance: Why and How? – Stefan Wintermeyer
WebPerformance: Why and How? – Stefan WintermeyerWebPerformance: Why and How? – Stefan Wintermeyer
WebPerformance: Why and How? – Stefan Wintermeyer
 
NPW2009 - my.opera.com scalability v2.0
NPW2009 - my.opera.com scalability v2.0NPW2009 - my.opera.com scalability v2.0
NPW2009 - my.opera.com scalability v2.0
 
Fisl - Deployment
Fisl - DeploymentFisl - Deployment
Fisl - Deployment
 
SD, a P2P bug tracking system
SD, a P2P bug tracking systemSD, a P2P bug tracking system
SD, a P2P bug tracking system
 
RubyEnRails2007 - Dr Nic Williams - Keynote
RubyEnRails2007 - Dr Nic Williams - KeynoteRubyEnRails2007 - Dr Nic Williams - Keynote
RubyEnRails2007 - Dr Nic Williams - Keynote
 
Sinatra for REST services
Sinatra for REST servicesSinatra for REST services
Sinatra for REST services
 
MongoDB: Optimising for Performance, Scale & Analytics
MongoDB: Optimising for Performance, Scale & AnalyticsMongoDB: Optimising for Performance, Scale & Analytics
MongoDB: Optimising for Performance, Scale & Analytics
 
JDD2015: Sharding with Akka Cluster: From Theory to Production - Krzysztof Ot...
JDD2015: Sharding with Akka Cluster: From Theory to Production - Krzysztof Ot...JDD2015: Sharding with Akka Cluster: From Theory to Production - Krzysztof Ot...
JDD2015: Sharding with Akka Cluster: From Theory to Production - Krzysztof Ot...
 
Web 2.0 Performance and Reliability: How to Run Large Web Apps
Web 2.0 Performance and Reliability: How to Run Large Web AppsWeb 2.0 Performance and Reliability: How to Run Large Web Apps
Web 2.0 Performance and Reliability: How to Run Large Web Apps
 
How to avoid hanging yourself with Rails
How to avoid hanging yourself with RailsHow to avoid hanging yourself with Rails
How to avoid hanging yourself with Rails
 
Monkeybars in the Manor
Monkeybars in the ManorMonkeybars in the Manor
Monkeybars in the Manor
 

More from Blaine

Social Privacy for HTTP over Webfinger
Social Privacy for HTTP over WebfingerSocial Privacy for HTTP over Webfinger
Social Privacy for HTTP over WebfingerBlaine
 
Social Software for Robots
Social Software for RobotsSocial Software for Robots
Social Software for RobotsBlaine
 
Building the Real Time Web
Building the Real Time WebBuilding the Real Time Web
Building the Real Time WebBlaine
 
You & Me & Everyone We Know
You & Me & Everyone We KnowYou & Me & Everyone We Know
You & Me & Everyone We KnowBlaine
 
Social Software for Robots
Social Software for RobotsSocial Software for Robots
Social Software for RobotsBlaine
 

More from Blaine (6)

Social Privacy for HTTP over Webfinger
Social Privacy for HTTP over WebfingerSocial Privacy for HTTP over Webfinger
Social Privacy for HTTP over Webfinger
 
Social Software for Robots
Social Software for RobotsSocial Software for Robots
Social Software for Robots
 
OAuth
OAuthOAuth
OAuth
 
Building the Real Time Web
Building the Real Time WebBuilding the Real Time Web
Building the Real Time Web
 
You & Me & Everyone We Know
You & Me & Everyone We KnowYou & Me & Everyone We Know
You & Me & Everyone We Know
 
Social Software for Robots
Social Software for RobotsSocial Software for Robots
Social Software for Robots
 

Recently uploaded

Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Mattias Andersson
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyAlfredo García Lavilla
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfAlex Barbosa Coqueiro
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024Stephanie Beckett
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machinePadma Pradeep
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsMark Billinghurst
 
SAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxSAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxNavinnSomaal
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Enterprise Knowledge
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsMemoori
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfAddepto
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 
Search Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfSearch Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfRankYa
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr BaganFwdays
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationRidwan Fadjar
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsRizwan Syed
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLScyllaDB
 

Recently uploaded (20)

Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easy
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdf
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machine
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR Systems
 
SAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxSAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptx
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial Buildings
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdf
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 
Search Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfSearch Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdf
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan
 
DMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special EditionDMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special Edition
 
My Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 PresentationMy Hashitalk Indonesia April 2024 Presentation
My Hashitalk Indonesia April 2024 Presentation
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL Certs
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQL
 

Scaling Twitter

  • 2. Rails Scales. (but not out of the box)
  • 3. First, Some Facts • 600 requests per second. Growing fast. • 180 Rails Instances (Mongrel). Growing fast. • 1 Database Server (MySQL) + 1 Slave. • 30-odd Processes for Misc. Jobs • 8 Sun X4100s • Many users, many updates.
  • 4.
  • 5.
  • 6.
  • 7. Joy Pain Oct Nov Dec Jan Feb March Apr
  • 8. IM IN UR RAILZ MAKIN EM GO FAST
  • 9. It’s Easy, Really. 1. Realize Your Site is Slow 2. Optimize the Database 3. Cache the Hell out of Everything 4. Scale Messaging 5. Deal With Abuse
  • 10. It’s Easy, Really. 1. Realize Your Site is Slow 2. Optimize the Database 3. Cache the Hell out of Everything 4. Scale Messaging 5. Deal With Abuse 6. Profit
  • 11. the more you know { Part the First }
  • 12. We Failed at This.
  • 13. Don’t Be Like Us • Munin • Nagios • AWStats & Google Analytics • Exception Notifier / Exception Logger • Immediately add reporting to track problems.
  • 14. Test Everything • Start Before You Start • No Need To Be Fancy • Tests Will Save Your Life • Agile Becomes Important When Your Site Is Down
  • 15. <!-- served to you through a copper wire by sampaati at 22 Apr 15:02 in 343 ms (d 102 / r 217). thank you, come again. --> <!-- served to you through a copper wire by kolea.twitter.com at 22 Apr 15:02 in 235 ms (d 87 / r 130). thank you, come again. --> <!-- served to you through a copper wire by raven.twitter.com at 22 Apr 15:01 in 450 ms (d 96 / r 337). thank you, come again. --> Benchmarks? let your users do it. <!-- served to you through a copper wire by kolea.twitter.com at 22 Apr 15:00 in 409 ms (d 88 / r 307). thank you, come again. --> <!-- served to you through a copper wire by firebird at 22 Apr 15:03 in 2094 ms (d 643 / r 1445). thank you, come again. --> <!-- served to you through a copper wire by quetzal at 22 Apr 15:01 in 384 ms (d 70 / r 297). thank you, come again. -->
  • 16. The Database { Part the Second }
  • 17. “The Next Application I Build is Going to Be Easily Partitionable” - S. Butterfield
  • 18. “The Next Application I Build is Going to Be Easily Partitionable” - S. Butterfield
  • 19. “The Next Application I Build is Going to Be Easily Partitionable” - S. Butterfield
  • 22. class AddIndex < ActiveRecord::Migration def self.up add_index :users, :email end def self.down remove_index :users, :email end end Repeat for any column that appears in a WHERE clause Rails won’t do this for you.
  • 24. class DenormalizeFriendsIds < ActiveRecord::Migration def self.up add_column "users", "friends_ids", :text end def self.down remove_column "users", "friends_ids" end end
  • 25. class Friendship < ActiveRecord::Base belongs_to :user belongs_to :friend after_create :add_to_denormalized_friends after_destroy :remove_from_denormalized_friends def add_to_denormalized_friends user.friends_ids << friend.id user.friends_ids.uniq! user.save_without_validation end def remove_from_denormalized_friends user.friends_ids.delete(friend.id) user.save_without_validation end end
  • 27. bob.friends.map(&:email) Status.count() “email like ‘%#{search}%’”
  • 28. That’s where we are. Seriously. If your Rails application is doing anything more complex than that, you’re doing something wrong*. * or you observed the First Rule of Butterfield.
  • 29. Partitioning Comes Later. (we’ll let you know how it goes)
  • 30. The Cache { Part the Third }
  • 34. !
  • 35. class Status < ActiveRecord::Base class << self def count_with_memcache(*args) return count_without_memcache unless args.empty? count = CACHE.get(“status_count”) if count.nil? count = count_without_memcache CACHE.set(“status_count”, count) end count end alias_method_chain :count, :memcache end after_create :increment_memcache_count after_destroy :decrement_memcache_count ... end
  • 36. class User < ActiveRecord::Base def friends_statuses ids = CACHE.get(“friends_statuses:#{id}”) Status.find(:all, :conditions => [“id IN (?)”, ids]) end end class Status < ActiveRecord::Base after_create :update_caches def update_caches user.friends_ids.each do |friend_id| ids = CACHE.get(“friends_statuses:#{friend_id}”) ids.pop ids.unshift(id) CACHE.set(“friends_statuses:#{friend_id}”, ids) end end end
  • 37. The Future ve d ti r co Ac e R
  • 38. 90% API Requests Cache Them!
  • 39. “There are only two hard things in CS: cache invalidation and naming things.” – Phil Karlton, via Tim Bray
  • 41. You Already Knew All That Other Stuff, Right?
  • 42. Producer Consumer Message Producer Consumer Queue Producer Consumer
  • 43. DRb • The Good: • Stupid Easy • Reasonably Fast • The Bad: • Kinda Flaky • Zero Redundancy • Tightly Coupled
  • 44. ejabberd Jabber Client (drb) Incoming Outgoing Presence Messages Messages MySQL
  • 45. Server DRb.start_service ‘druby://localhost:10000’, myobject Client myobject = DRbObject.new_with_uri(‘druby://localhost:10000’)
  • 46. Rinda • Shared Queue (TupleSpace) • Built with DRb • RingyDingy makes it stupid easy • See Eric Hodel’s documentation • O(N) for take(). Sigh.
  • 47. Timestamp: 12/22/06 01:53:14 (4 months ago) Author: lattice Message: Fugly. Seriously. Fugly. SELECT * FROM messages WHERE substring(truncate(id,0),-2,1) = #{@fugly_dist_idx}
  • 48. It Scales. (except it stopped on Tuesday)
  • 49. Options • ActiveMQ (Java) • RabbitMQ (erlang) • MySQL + Lightweight Locking • Something Else?
  • 50. erlang? What are you doing? Stabbing my eyes out with a fork.
  • 51. Starling • Ruby, will be ported to something faster • 4000 transactional msgs/s • First pass written in 4 hours • Speaks MemCache (set, get)
  • 52. Use Messages to Invalidate Cache (it’s really not that hard)
  • 55. 9000 friends in 24 hours (doesn’t scale)