SlideShare a Scribd company logo
1 of 24
Building a Highly
    Scalable, Open
Source Twitter Clone
 Dan Diephouse (dan@netzooid.com)
  Paul Brown (prb@mult.ifario.us)
Motivation
★   Wide (and growing) variety of
    non-relational databases.
    (viz. NoSQL — http://bit.ly/pLhqQ, http://bit.ly/17MmTk)


★   Twitter application model
    presents interesting
    challenges of scope and
    scale.
    (viz. “Fixing Twitter” http://bit.ly/2VmZdz)
Storage Metaphors
★   Key/Value Store
    Opaque values; fast and simple.
★   Examples:
    ★   Cassandra* — http://bit.ly/EdUEt
    ★   Dynomite — http://bit.ly/12AYmf
    ★   Redis — http://bit.ly/LBtCh
    ★   Tokyo Tyrant — http://bit.ly/oU4uV
    ★   Voldemort – http://bit.ly/oU4uV
Key/Value
Key Value

1




2




3
Storage Metaphors
★   Document-Oriented
    Unstructured content; rich queries.
★   Examples:
    ★   CouchDB — http://bit.ly/JAgUM
    ★   MongoDB — http://bit.ly/HDDOV
    ★   SOLR — http://bit.ly/q4gyi
    ★   XML databases...
Document-Oriented
ID=“dan-tweet-1”,
TEXT=“hello world”

ID=dan-tweet-2,
TEXT=“Twirp!”,
IN-REPLY-TO=“paul-tweet-5”
Storage Metaphors
★   Column-Oriented

    Organized in columns; easily scanned.
★   Examples:
    ★   Cassandra* — http://bit.ly/EdUEt

    ★   BigTable — http://bit.ly/QqMYA
        (available within AppEngine)


    ★   HBase — http://bit.ly/Zck7F
    ★   SimpleDB — http://bit.ly/toh0P
        (Typica library for Java — http://bit.ly/22kxZ4)
Column-Oriented
    Name          Date                  Tweet Text
    Bob           20090506              Eating dinner.
    Dan           20090507              Is it Friday yet?
    Dan           20090506              Beer me!
    Ralph         20090508              My bum itches.



Index   Name         Index   Date         Index   Tweet Text
0       Bob          0       20090506     0       Eating dinner.
1       Dan          1       20090507     1       Is it Friday yet?
2       Dan          2       20090506     2       Beer me!
3       Ralph        3       20090508     3       My bum itches.

        Storage          Storage                  Storage
Every Store is Special.

★   Lots of different little tweaks
    to the storage model.
★   Widely varying levels of
    maturity.
★   Growing communities.
★   Limited (but growing) tooling,
    libraries, and production
    adoption.
Reliability Through
        Replication
★   Consistent hashing to assign
    keys to partitions.
★   Partitions replicated on
    multiple nodes for
    redundancy.
★   Minimum number of successful
    reads to consider a write
    complete.
Reliability Through
         Replication
    PUT (k,v)

Client
Web UI
http://tat1.datapr0n.com:8080
Stores
★   Tweets
    Individual tweets.

★   Friends’ Timeline
    Fixed-length timelines.

★   Users
    Info and followers.

★   Command Queue
    Actions to perform (tweet, follow, etc.).
Data
★   Command (Java serialization)
    Keyed by node name, increasing ID.
★   Tweets (Java serialization)
    Keyed by user name, increasing ID.
★   FriendsTimeline (Java serialization)
    Keyed by username.
    List of date, tweet ID.
★   Users (Java serialization)
    Keyed by username.
    Followers (list), Followed (list), last tweet ID.
Life of a Tweet, Part I
                 1

                     Beer me.                    Users
1.User tweets.                             2


2.Find next
  tweet ID for                             3   Commands




                                Web Tier
  user.
3.Store “tweet                                  Friends
                                                Timeline

  for user”
  command.
                                                Tweets
Life of a Tweet, Part II
                         Where's
1. Read next command.   Demi with
                                                          Users
                        my beer?!?
2. Store tweet in
   user’s timeline                              1
   (Tweets).                                            Commands

                                                    4




                                     Web Tier
3. Store tweet ID in
   friends’
                                                    3
   timelines.                                            Friends
                                                         Timeline
   (Requires *many*
   operations.)
                                                    2

4. DELETE command.                                       Tweets
Some Patterns
★   “Sequences” are implemented
    as race-for-non-collision.
★   “Joins” are common keys or
    keys referenced from values.
★   “Transactions” are idempotent
    operations with DELETE at the
    end.
Operations
★   Deploy to Amazon EC2
    ★   2 nodes for Voldemort
    ★   2 nodes for Tomcat
    ★   1 node for Cacti
★   All “small” instances w/RightScale CentOS
    5.2 image.
★   Minor inconvenience of “EBS” volume for
    MySQL for Cacti.
    (follow Eric Hammond’s tutorial — http://bit.ly/OK5LZ)
Deployment
★   Lots of choices for automated rollout
    (Chef, Capistrano, etc.)
★   Took simplest path — Maven build, Ant
    (scp/ssh and property substitution
    tasks), and bash scripts.
    for i in vn1 vn2; do

      ant -Dnode=${i} setup-v-node

    done

★   Takes ~30 seconds to provision a Tomcat
    or Voldemort node.
Dashboarding
★   As above, lots of choices
    (Cacti — http://bit.ly/qV4gz, Graphite — http://bit.ly/466NAx, etc.)


★   Cacti as simplest choice.
    yum install -y cacti

★   Vanilla SNMP on nodes for host
    data.
★   Minimal extensions to Voldemort
    for stats in Cacti-friendly
    format.
Dashboarding
Performance
★   270 req/sec for getFriendsTimeline against
    web tier.
    ★   21 GETs on V stores to pull data.
    ★   5600 req/sec for V is similar to
        performance reported at NoSQL meetup (20k
        req/sec) when adjusted for hardware.
    ★   Cache on the web tier could make this
        faster...
★   Some hassles when hammering individual keys
    with rapid updates.
Take Aways
★   Linked-list representation deserves some thought
    (and experiments).
    Dynomite + Osmos (http://bit.ly/BYMdW)

★   Additional use cases (search, rich API, replies,
    direct messages, etc.) might alter design.
★   BigTable/HBase approach deserves another look.
★   Source code is available; come and git it.

    http://github.com/prb/bigbird

    git://github.com/prb/bigbird.git
Coordinates
★   Dan Diephouse (@dandiep)
    dan@netzooid.com
    http://netzooid.com
★   Paul Brown (@paulrbrown)
    prb@mult.ifario.us
    http://mult.ifario.us/a

More Related Content

What's hot

What's hot (20)

Docker networking Tutorial 101
Docker networking Tutorial 101Docker networking Tutorial 101
Docker networking Tutorial 101
 
Vagrant
Vagrant Vagrant
Vagrant
 
Docker Networking Overview
Docker Networking OverviewDocker Networking Overview
Docker Networking Overview
 
[오픈소스컨설팅]Subversion vs git - 참을 수 없는 간단함
[오픈소스컨설팅]Subversion vs git - 참을 수 없는 간단함[오픈소스컨설팅]Subversion vs git - 참을 수 없는 간단함
[오픈소스컨설팅]Subversion vs git - 참을 수 없는 간단함
 
Git vs SVN
Git vs SVNGit vs SVN
Git vs SVN
 
Git flow
Git flowGit flow
Git flow
 
Git hub ppt presentation
Git hub ppt presentationGit hub ppt presentation
Git hub ppt presentation
 
Kubernetes Workshop
Kubernetes WorkshopKubernetes Workshop
Kubernetes Workshop
 
Implementation & Comparison Of Rdma Over Ethernet
Implementation & Comparison Of Rdma Over EthernetImplementation & Comparison Of Rdma Over Ethernet
Implementation & Comparison Of Rdma Over Ethernet
 
Quick introduction to Kubernetes
Quick introduction to KubernetesQuick introduction to Kubernetes
Quick introduction to Kubernetes
 
(BDT318) How Netflix Handles Up To 8 Million Events Per Second
(BDT318) How Netflix Handles Up To 8 Million Events Per Second(BDT318) How Netflix Handles Up To 8 Million Events Per Second
(BDT318) How Netflix Handles Up To 8 Million Events Per Second
 
Staying on Topic - Invoke OpenFaaS functions with Kafka
Staying on Topic - Invoke OpenFaaS functions with KafkaStaying on Topic - Invoke OpenFaaS functions with Kafka
Staying on Topic - Invoke OpenFaaS functions with Kafka
 
OpenShift Virtualization- Technical Overview.pdf
OpenShift Virtualization- Technical Overview.pdfOpenShift Virtualization- Technical Overview.pdf
OpenShift Virtualization- Technical Overview.pdf
 
Benchmarking Apache Druid
Benchmarking Apache Druid Benchmarking Apache Druid
Benchmarking Apache Druid
 
[넥슨] kubernetes 소개 (2018)
[넥슨] kubernetes 소개 (2018)[넥슨] kubernetes 소개 (2018)
[넥슨] kubernetes 소개 (2018)
 
Producer Performance Tuning for Apache Kafka
Producer Performance Tuning for Apache KafkaProducer Performance Tuning for Apache Kafka
Producer Performance Tuning for Apache Kafka
 
svn 능력자를 위한 git 개념 가이드
svn 능력자를 위한 git 개념 가이드svn 능력자를 위한 git 개념 가이드
svn 능력자를 위한 git 개념 가이드
 
Disaster Recovery Options Running Apache Kafka in Kubernetes with Rema Subra...
 Disaster Recovery Options Running Apache Kafka in Kubernetes with Rema Subra... Disaster Recovery Options Running Apache Kafka in Kubernetes with Rema Subra...
Disaster Recovery Options Running Apache Kafka in Kubernetes with Rema Subra...
 
Scaling WebRTC applications with Janus
Scaling WebRTC applications with JanusScaling WebRTC applications with Janus
Scaling WebRTC applications with Janus
 
Introduction to MariaDB
Introduction to MariaDBIntroduction to MariaDB
Introduction to MariaDB
 

Similar to Building a Highly Scalable, Open Source Twitter Clone

Apache Wizardry - Ohio Linux 2011
Apache Wizardry - Ohio Linux 2011Apache Wizardry - Ohio Linux 2011
Apache Wizardry - Ohio Linux 2011
Rich Bowen
 
Real world cloud formation feb 2014 final
Real world cloud formation feb 2014 finalReal world cloud formation feb 2014 final
Real world cloud formation feb 2014 final
Howard Glynn
 
OSCON 2011 - Node.js Tutorial
OSCON 2011 - Node.js TutorialOSCON 2011 - Node.js Tutorial
OSCON 2011 - Node.js Tutorial
Tom Croucher
 
Windows Kernel Exploitation : This Time Font hunt you down in 4 bytes
Windows Kernel Exploitation : This Time Font hunt you down in 4 bytesWindows Kernel Exploitation : This Time Font hunt you down in 4 bytes
Windows Kernel Exploitation : This Time Font hunt you down in 4 bytes
Peter Hlavaty
 
Scaling Rails With Torquebox Presented at JUDCon:2011 Boston
Scaling Rails With Torquebox Presented at JUDCon:2011 BostonScaling Rails With Torquebox Presented at JUDCon:2011 Boston
Scaling Rails With Torquebox Presented at JUDCon:2011 Boston
benbrowning
 

Similar to Building a Highly Scalable, Open Source Twitter Clone (20)

Modeling Tricks My Relational Database Never Taught Me
Modeling Tricks My Relational Database Never Taught MeModeling Tricks My Relational Database Never Taught Me
Modeling Tricks My Relational Database Never Taught Me
 
IP Multicast on ec2
IP Multicast on ec2IP Multicast on ec2
IP Multicast on ec2
 
Docker interview Questions-3.pdf
Docker interview Questions-3.pdfDocker interview Questions-3.pdf
Docker interview Questions-3.pdf
 
DevoxxFR 2016 - 3 degrees of MoM
DevoxxFR 2016 - 3 degrees of MoMDevoxxFR 2016 - 3 degrees of MoM
DevoxxFR 2016 - 3 degrees of MoM
 
Advanced WCF Workshop
Advanced WCF WorkshopAdvanced WCF Workshop
Advanced WCF Workshop
 
Apache Wizardry - Ohio Linux 2011
Apache Wizardry - Ohio Linux 2011Apache Wizardry - Ohio Linux 2011
Apache Wizardry - Ohio Linux 2011
 
Ruby and Distributed Storage Systems
Ruby and Distributed Storage SystemsRuby and Distributed Storage Systems
Ruby and Distributed Storage Systems
 
spdy
spdyspdy
spdy
 
Learning Stream Processing with Apache Storm
Learning Stream Processing with Apache StormLearning Stream Processing with Apache Storm
Learning Stream Processing with Apache Storm
 
Grand Central Dispatch
Grand Central DispatchGrand Central Dispatch
Grand Central Dispatch
 
Real world cloud formation feb 2014 final
Real world cloud formation feb 2014 finalReal world cloud formation feb 2014 final
Real world cloud formation feb 2014 final
 
Search at Twitter: Presented by Michael Busch, Twitter
Search at Twitter: Presented by Michael Busch, TwitterSearch at Twitter: Presented by Michael Busch, Twitter
Search at Twitter: Presented by Michael Busch, Twitter
 
OSCON 2011 - Node.js Tutorial
OSCON 2011 - Node.js TutorialOSCON 2011 - Node.js Tutorial
OSCON 2011 - Node.js Tutorial
 
Windows Kernel Exploitation : This Time Font hunt you down in 4 bytes
Windows Kernel Exploitation : This Time Font hunt you down in 4 bytesWindows Kernel Exploitation : This Time Font hunt you down in 4 bytes
Windows Kernel Exploitation : This Time Font hunt you down in 4 bytes
 
Voltdb: Shard It by V. Torshyn
Voltdb: Shard It by V. TorshynVoltdb: Shard It by V. Torshyn
Voltdb: Shard It by V. Torshyn
 
Celery: The Distributed Task Queue
Celery: The Distributed Task QueueCelery: The Distributed Task Queue
Celery: The Distributed Task Queue
 
Scaling Rails With Torquebox Presented at JUDCon:2011 Boston
Scaling Rails With Torquebox Presented at JUDCon:2011 BostonScaling Rails With Torquebox Presented at JUDCon:2011 Boston
Scaling Rails With Torquebox Presented at JUDCon:2011 Boston
 
Demystfying container-networking
Demystfying container-networkingDemystfying container-networking
Demystfying container-networking
 
DCSF19 Containers for Beginners
DCSF19 Containers for BeginnersDCSF19 Containers for Beginners
DCSF19 Containers for Beginners
 
Post Metasploitation
Post MetasploitationPost Metasploitation
Post Metasploitation
 

Recently uploaded

Recently uploaded (20)

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
 
HTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation StrategiesHTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation Strategies
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
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
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Tech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdfTech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdf
 
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...
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 

Building a Highly Scalable, Open Source Twitter Clone

  • 1. Building a Highly Scalable, Open Source Twitter Clone Dan Diephouse (dan@netzooid.com) Paul Brown (prb@mult.ifario.us)
  • 2. Motivation ★ Wide (and growing) variety of non-relational databases. (viz. NoSQL — http://bit.ly/pLhqQ, http://bit.ly/17MmTk) ★ Twitter application model presents interesting challenges of scope and scale. (viz. “Fixing Twitter” http://bit.ly/2VmZdz)
  • 3. Storage Metaphors ★ Key/Value Store Opaque values; fast and simple. ★ Examples: ★ Cassandra* — http://bit.ly/EdUEt ★ Dynomite — http://bit.ly/12AYmf ★ Redis — http://bit.ly/LBtCh ★ Tokyo Tyrant — http://bit.ly/oU4uV ★ Voldemort – http://bit.ly/oU4uV
  • 5. Storage Metaphors ★ Document-Oriented Unstructured content; rich queries. ★ Examples: ★ CouchDB — http://bit.ly/JAgUM ★ MongoDB — http://bit.ly/HDDOV ★ SOLR — http://bit.ly/q4gyi ★ XML databases...
  • 7. Storage Metaphors ★ Column-Oriented Organized in columns; easily scanned. ★ Examples: ★ Cassandra* — http://bit.ly/EdUEt ★ BigTable — http://bit.ly/QqMYA (available within AppEngine) ★ HBase — http://bit.ly/Zck7F ★ SimpleDB — http://bit.ly/toh0P (Typica library for Java — http://bit.ly/22kxZ4)
  • 8. Column-Oriented Name Date Tweet Text Bob 20090506 Eating dinner. Dan 20090507 Is it Friday yet? Dan 20090506 Beer me! Ralph 20090508 My bum itches. Index Name Index Date Index Tweet Text 0 Bob 0 20090506 0 Eating dinner. 1 Dan 1 20090507 1 Is it Friday yet? 2 Dan 2 20090506 2 Beer me! 3 Ralph 3 20090508 3 My bum itches. Storage Storage Storage
  • 9. Every Store is Special. ★ Lots of different little tweaks to the storage model. ★ Widely varying levels of maturity. ★ Growing communities. ★ Limited (but growing) tooling, libraries, and production adoption.
  • 10. Reliability Through Replication ★ Consistent hashing to assign keys to partitions. ★ Partitions replicated on multiple nodes for redundancy. ★ Minimum number of successful reads to consider a write complete.
  • 11. Reliability Through Replication PUT (k,v) Client
  • 13. Stores ★ Tweets Individual tweets. ★ Friends’ Timeline Fixed-length timelines. ★ Users Info and followers. ★ Command Queue Actions to perform (tweet, follow, etc.).
  • 14. Data ★ Command (Java serialization) Keyed by node name, increasing ID. ★ Tweets (Java serialization) Keyed by user name, increasing ID. ★ FriendsTimeline (Java serialization) Keyed by username. List of date, tweet ID. ★ Users (Java serialization) Keyed by username. Followers (list), Followed (list), last tweet ID.
  • 15. Life of a Tweet, Part I 1 Beer me. Users 1.User tweets. 2 2.Find next tweet ID for 3 Commands Web Tier user. 3.Store “tweet Friends Timeline for user” command. Tweets
  • 16. Life of a Tweet, Part II Where's 1. Read next command. Demi with Users my beer?!? 2. Store tweet in user’s timeline 1 (Tweets). Commands 4 Web Tier 3. Store tweet ID in friends’ 3 timelines. Friends Timeline (Requires *many* operations.) 2 4. DELETE command. Tweets
  • 17. Some Patterns ★ “Sequences” are implemented as race-for-non-collision. ★ “Joins” are common keys or keys referenced from values. ★ “Transactions” are idempotent operations with DELETE at the end.
  • 18. Operations ★ Deploy to Amazon EC2 ★ 2 nodes for Voldemort ★ 2 nodes for Tomcat ★ 1 node for Cacti ★ All “small” instances w/RightScale CentOS 5.2 image. ★ Minor inconvenience of “EBS” volume for MySQL for Cacti. (follow Eric Hammond’s tutorial — http://bit.ly/OK5LZ)
  • 19. Deployment ★ Lots of choices for automated rollout (Chef, Capistrano, etc.) ★ Took simplest path — Maven build, Ant (scp/ssh and property substitution tasks), and bash scripts. for i in vn1 vn2; do ant -Dnode=${i} setup-v-node done ★ Takes ~30 seconds to provision a Tomcat or Voldemort node.
  • 20. Dashboarding ★ As above, lots of choices (Cacti — http://bit.ly/qV4gz, Graphite — http://bit.ly/466NAx, etc.) ★ Cacti as simplest choice. yum install -y cacti ★ Vanilla SNMP on nodes for host data. ★ Minimal extensions to Voldemort for stats in Cacti-friendly format.
  • 22. Performance ★ 270 req/sec for getFriendsTimeline against web tier. ★ 21 GETs on V stores to pull data. ★ 5600 req/sec for V is similar to performance reported at NoSQL meetup (20k req/sec) when adjusted for hardware. ★ Cache on the web tier could make this faster... ★ Some hassles when hammering individual keys with rapid updates.
  • 23. Take Aways ★ Linked-list representation deserves some thought (and experiments). Dynomite + Osmos (http://bit.ly/BYMdW) ★ Additional use cases (search, rich API, replies, direct messages, etc.) might alter design. ★ BigTable/HBase approach deserves another look. ★ Source code is available; come and git it. http://github.com/prb/bigbird git://github.com/prb/bigbird.git
  • 24. Coordinates ★ Dan Diephouse (@dandiep) dan@netzooid.com http://netzooid.com ★ Paul Brown (@paulrbrown) prb@mult.ifario.us http://mult.ifario.us/a