SlideShare uma empresa Scribd logo
1 de 26
by the #s
witter by the
    ing a t alk entitled “T
Giv
                   @twit  terU a t Cal.
Number    s” with
Lots o f ##s!                      ne
                 Tw itter for iPho
1m inute ago via
                     on
Retweet ed by 1 pers
What’s a Tweet?

It’s a short message that's sent through




                                           140 characters
How many are there?
How many are there?   70M
                      60M




                            Today! *




                             *off   the chart
op_oh
                                 Commons from lo
                    der Creative
       Photo used un




47M served                                               70M tweets
  per day                                                  per day
70M tweets
   per day   =   800 tweets
                 per second
How big are they?


1 tweet text   =    140
                    characters
               ≈    200 bytes
800 tweets
per second       ≈       160 KB/sec
                 ≈ 9 MB/min
                 ≈ 12 GB/day
      Just tweet text!
MySQL
         Can’t generate IDs fast enough
Centralized and a single point of failure




                                    snowflake
                                    Highly available and uncoordinated (10kqps)
                                    Compatible with the           ecosystem
                                    http://github.com/twitter/snowflake
ampura
                                    Commons from ch
                       der Creative
          Photo used un




1 TB generated                                               8 TB generated
    per day                                                     per day
8 TB
per day
in total
                                                              ≈   100 MB
                                                                  per sec


  Photo used u
               nder Creative C
                              ommons from
                                            Mac Users G
                                                       uide
                                                              =   80 MB
                                                                  per sec
Where do they go?
              Followed by
  Following




                            Asymmetric Digraph
Tweets multiply
1

                   Digraph                           2
            Need to represent this

                                                         4
    1   2      3     4                    3
1




                             Matrix
2




                             Naïve implementation is not scalable
3
4
150M registered users




     2006     2008      2010
Photo used under Creative Commons from jurvetson




          Distributed graph database

flockdb   High rate of CRUD operations
          Complex set arithmetic queries
          http://github.com/twitter/flockdb
@ladygaga
mother mons†er
6.1 million followers

@BarakObama
44th President of the United States
5.3 million followers

@justinbieber
Justin Bieber
5.1 million followers

@raffi
me!
4.1 thousand followers
How do they get out?


6B API calls
    per day    ≈   70,000 calls
                   per second
REST API
         XML/JSON API over HTTP
Poll-based system / pseudo real-time




                               hosebird
                               Streaming API
                               Long poll HTTP
                               Near real-time delivery of Tweets
752%
in 2008
1358%
 in 2009
Where do we want to be?

           Today - 150M people generate ~1000 TPS

Tomorrow - we want to support half the world and all its devices

                  (5B phones and 6B people)
Real challenges in front of us
                 Real time

       Indexing, search, and analytics

             Relevance systems

              Graph databases

                   Storage

          Scalability and efficiency
Questions?   Follow me at
             twitter.com/raffi

Mais conteúdo relacionado

Mais procurados

Kafka Security 101 and Real-World Tips
Kafka Security 101 and Real-World Tips Kafka Security 101 and Real-World Tips
Kafka Security 101 and Real-World Tips
confluent
 
Using Kafka Streams to Analyze Live Trading Activity for Crypto Exchanges (Lu...
Using Kafka Streams to Analyze Live Trading Activity for Crypto Exchanges (Lu...Using Kafka Streams to Analyze Live Trading Activity for Crypto Exchanges (Lu...
Using Kafka Streams to Analyze Live Trading Activity for Crypto Exchanges (Lu...
confluent
 

Mais procurados (20)

Protecting your data at rest with Apache Kafka by Confluent and Vormetric
Protecting your data at rest with Apache Kafka by Confluent and VormetricProtecting your data at rest with Apache Kafka by Confluent and Vormetric
Protecting your data at rest with Apache Kafka by Confluent and Vormetric
 
Kafka Security 101 and Real-World Tips
Kafka Security 101 and Real-World Tips Kafka Security 101 and Real-World Tips
Kafka Security 101 and Real-World Tips
 
Jenkins & IaC
Jenkins & IaCJenkins & IaC
Jenkins & IaC
 
Testing Kafka components with Kafka for JUnit
Testing Kafka components with Kafka for JUnitTesting Kafka components with Kafka for JUnit
Testing Kafka components with Kafka for JUnit
 
Kong Summit 2018 - Microservices: decomposing applications for testability an...
Kong Summit 2018 - Microservices: decomposing applications for testability an...Kong Summit 2018 - Microservices: decomposing applications for testability an...
Kong Summit 2018 - Microservices: decomposing applications for testability an...
 
ksqlDB: A Stream-Relational Database System
ksqlDB: A Stream-Relational Database SystemksqlDB: A Stream-Relational Database System
ksqlDB: A Stream-Relational Database System
 
Module: the modular p2 p networking stack
Module: the modular p2 p networking stack Module: the modular p2 p networking stack
Module: the modular p2 p networking stack
 
Kafka At Scale in the Cloud
Kafka At Scale in the CloudKafka At Scale in the Cloud
Kafka At Scale in the Cloud
 
Using Kafka Streams to Analyze Live Trading Activity for Crypto Exchanges (Lu...
Using Kafka Streams to Analyze Live Trading Activity for Crypto Exchanges (Lu...Using Kafka Streams to Analyze Live Trading Activity for Crypto Exchanges (Lu...
Using Kafka Streams to Analyze Live Trading Activity for Crypto Exchanges (Lu...
 
Confluent Enterprise Datasheet
Confluent Enterprise DatasheetConfluent Enterprise Datasheet
Confluent Enterprise Datasheet
 
ksqlDB - Stream Processing simplified!
ksqlDB - Stream Processing simplified!ksqlDB - Stream Processing simplified!
ksqlDB - Stream Processing simplified!
 
Achieving Technical Excellence in Your Software Teams - from Devternity
Achieving Technical Excellence in Your Software Teams - from Devternity Achieving Technical Excellence in Your Software Teams - from Devternity
Achieving Technical Excellence in Your Software Teams - from Devternity
 
[네이버오픈소스세미나] Pinpoint를 이용해서 서버리스 플랫폼 Apache Openwhisk 트레이싱하기 - 오승현
[네이버오픈소스세미나] Pinpoint를 이용해서 서버리스 플랫폼 Apache Openwhisk 트레이싱하기 - 오승현[네이버오픈소스세미나] Pinpoint를 이용해서 서버리스 플랫폼 Apache Openwhisk 트레이싱하기 - 오승현
[네이버오픈소스세미나] Pinpoint를 이용해서 서버리스 플랫폼 Apache Openwhisk 트레이싱하기 - 오승현
 
Knative with .NET Core and Quarkus with GraalVM
Knative with .NET Core and Quarkus with GraalVMKnative with .NET Core and Quarkus with GraalVM
Knative with .NET Core and Quarkus with GraalVM
 
Automatically Renew Certificated In Your Kubernetes Cluster
Automatically Renew Certificated In Your Kubernetes ClusterAutomatically Renew Certificated In Your Kubernetes Cluster
Automatically Renew Certificated In Your Kubernetes Cluster
 
Track code quality with SonarQube - short version
Track code quality with SonarQube - short versionTrack code quality with SonarQube - short version
Track code quality with SonarQube - short version
 
Apache Kafka 0.8 basic training - Verisign
Apache Kafka 0.8 basic training - VerisignApache Kafka 0.8 basic training - Verisign
Apache Kafka 0.8 basic training - Verisign
 
A Hitchhiker's Guide to Apache Kafka Geo-Replication with Sanjana Kaundinya ...
 A Hitchhiker's Guide to Apache Kafka Geo-Replication with Sanjana Kaundinya ... A Hitchhiker's Guide to Apache Kafka Geo-Replication with Sanjana Kaundinya ...
A Hitchhiker's Guide to Apache Kafka Geo-Replication with Sanjana Kaundinya ...
 
Streaming Data and Stream Processing with Apache Kafka
Streaming Data and Stream Processing with Apache KafkaStreaming Data and Stream Processing with Apache Kafka
Streaming Data and Stream Processing with Apache Kafka
 
IBM WebSphere MQ: Managing Workloads, Scaling and Availability with MQ Clusters
IBM WebSphere MQ: Managing Workloads, Scaling and Availability with MQ ClustersIBM WebSphere MQ: Managing Workloads, Scaling and Availability with MQ Clusters
IBM WebSphere MQ: Managing Workloads, Scaling and Availability with MQ Clusters
 

Destaque

Big Social Data: The Spatial Turn in Big Data (Video available soon on YouTube)
Big Social Data: The Spatial Turn in Big Data (Video available soon on YouTube)Big Social Data: The Spatial Turn in Big Data (Video available soon on YouTube)
Big Social Data: The Spatial Turn in Big Data (Video available soon on YouTube)
Rich Heimann
 

Destaque (20)

The Future of Check ins
The Future of Check insThe Future of Check ins
The Future of Check ins
 
Hacking Conway's Law
Hacking Conway's LawHacking Conway's Law
Hacking Conway's Law
 
Digital in 2017 Global Overview
Digital in 2017 Global OverviewDigital in 2017 Global Overview
Digital in 2017 Global Overview
 
What we're learning about burnout and how DevOps can help
What we're learning about burnout and how DevOps can helpWhat we're learning about burnout and how DevOps can help
What we're learning about burnout and how DevOps can help
 
Scalding @ Coursera
Scalding @ CourseraScalding @ Coursera
Scalding @ Coursera
 
Big Social Data: The Spatial Turn in Big Data (Video available soon on YouTube)
Big Social Data: The Spatial Turn in Big Data (Video available soon on YouTube)Big Social Data: The Spatial Turn in Big Data (Video available soon on YouTube)
Big Social Data: The Spatial Turn in Big Data (Video available soon on YouTube)
 
Re-architecting on the Fly #OReillySACon
Re-architecting on the Fly #OReillySACon Re-architecting on the Fly #OReillySACon
Re-architecting on the Fly #OReillySACon
 
Real-time systems at Twitter (Velocity 2012)
Real-time systems at Twitter (Velocity 2012)Real-time systems at Twitter (Velocity 2012)
Real-time systems at Twitter (Velocity 2012)
 
Aula 5 - Redes Sociais
Aula 5 - Redes SociaisAula 5 - Redes Sociais
Aula 5 - Redes Sociais
 
Sistemas NoSQL, surgimento, características e exemplos
Sistemas NoSQL, surgimento, características e exemplosSistemas NoSQL, surgimento, características e exemplos
Sistemas NoSQL, surgimento, características e exemplos
 
Scaling Twitter
Scaling TwitterScaling Twitter
Scaling Twitter
 
Deep Dive with Spark Streaming - Tathagata Das - Spark Meetup 2013-06-17
Deep Dive with Spark Streaming - Tathagata  Das - Spark Meetup 2013-06-17Deep Dive with Spark Streaming - Tathagata  Das - Spark Meetup 2013-06-17
Deep Dive with Spark Streaming - Tathagata Das - Spark Meetup 2013-06-17
 
Fitbit presentation
Fitbit presentationFitbit presentation
Fitbit presentation
 
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)
We Are Social's Guide to Social, Digital and Mobile Around the World (Feb 2013)
 
Digital in 2017: South America
Digital in 2017: South AmericaDigital in 2017: South America
Digital in 2017: South America
 
Presentation social network
Presentation social networkPresentation social network
Presentation social network
 
Hadoop Summit Europe 2014: Apache Storm Architecture
Hadoop Summit Europe 2014: Apache Storm ArchitectureHadoop Summit Europe 2014: Apache Storm Architecture
Hadoop Summit Europe 2014: Apache Storm Architecture
 
BlueStore: a new, faster storage backend for Ceph
BlueStore: a new, faster storage backend for CephBlueStore: a new, faster storage backend for Ceph
BlueStore: a new, faster storage backend for Ceph
 
Social, Digital & Mobile Around The World (January 2014)
Social, Digital & Mobile Around The World (January 2014)Social, Digital & Mobile Around The World (January 2014)
Social, Digital & Mobile Around The World (January 2014)
 
Big data and Hadoop
Big data and HadoopBig data and Hadoop
Big data and Hadoop
 

Semelhante a Twitter by the Numbers

Twitter for CS10 @ Berkeley (Spring 2011)
Twitter for CS10 @ Berkeley (Spring 2011)Twitter for CS10 @ Berkeley (Spring 2011)
Twitter for CS10 @ Berkeley (Spring 2011)
Raffi Krikorian
 
Maintaining reliability in an unreliable world
Maintaining reliability in an unreliable worldMaintaining reliability in an unreliable world
Maintaining reliability in an unreliable world
Jeremy Edberg
 
From incubator to exit: A brief history of Reddit, the first YCombinator success
From incubator to exit: A brief history of Reddit, the first YCombinator successFrom incubator to exit: A brief history of Reddit, the first YCombinator success
From incubator to exit: A brief history of Reddit, the first YCombinator success
Startupfest
 
Orb - How Blockchain Industry is evolving now and future?
Orb - How Blockchain Industry is evolving now and future?Orb - How Blockchain Industry is evolving now and future?
Orb - How Blockchain Industry is evolving now and future?
Orb, Inc.
 

Semelhante a Twitter by the Numbers (20)

Twitter by the Numbers (Columbia University)
Twitter by the Numbers (Columbia University)Twitter by the Numbers (Columbia University)
Twitter by the Numbers (Columbia University)
 
Twitter for CS10 @ Berkeley (Spring 2011)
Twitter for CS10 @ Berkeley (Spring 2011)Twitter for CS10 @ Berkeley (Spring 2011)
Twitter for CS10 @ Berkeley (Spring 2011)
 
Twitter - Guest Lecture UC Berkeley CS10 Fall 2010
Twitter - Guest Lecture UC Berkeley CS10 Fall 2010Twitter - Guest Lecture UC Berkeley CS10 Fall 2010
Twitter - Guest Lecture UC Berkeley CS10 Fall 2010
 
500Startups @ Twitter
500Startups @ Twitter500Startups @ Twitter
500Startups @ Twitter
 
Maintaining reliability in an unreliable world
Maintaining reliability in an unreliable worldMaintaining reliability in an unreliable world
Maintaining reliability in an unreliable world
 
From incubator to exit: A brief history of Reddit, the first YCombinator success
From incubator to exit: A brief history of Reddit, the first YCombinator successFrom incubator to exit: A brief history of Reddit, the first YCombinator success
From incubator to exit: A brief history of Reddit, the first YCombinator success
 
The Megasite: Infrastructure for Internet Scale
The Megasite: Infrastructure for Internet ScaleThe Megasite: Infrastructure for Internet Scale
The Megasite: Infrastructure for Internet Scale
 
Why all payments innovations are rubbish
Why all payments innovations are rubbishWhy all payments innovations are rubbish
Why all payments innovations are rubbish
 
Colorado leadership v4
Colorado leadership v4Colorado leadership v4
Colorado leadership v4
 
The History and Possible Futures of the Internet
The History and Possible Futures of the InternetThe History and Possible Futures of the Internet
The History and Possible Futures of the Internet
 
Big Data vs Data Warehousing
Big Data vs Data WarehousingBig Data vs Data Warehousing
Big Data vs Data Warehousing
 
Ngn abridged oct2010
Ngn abridged oct2010Ngn abridged oct2010
Ngn abridged oct2010
 
2012: The End of the World?
2012: The End of the World?2012: The End of the World?
2012: The End of the World?
 
Orb - How Blockchain Industry is evolving now and future?
Orb - How Blockchain Industry is evolving now and future?Orb - How Blockchain Industry is evolving now and future?
Orb - How Blockchain Industry is evolving now and future?
 
Orb - How Blockchain Industry is evolving now and future?
Orb - How Blockchain Industry is evolving now and future?Orb - How Blockchain Industry is evolving now and future?
Orb - How Blockchain Industry is evolving now and future?
 
The Creativity Machine
The Creativity MachineThe Creativity Machine
The Creativity Machine
 
IPv6 Matrix Project
IPv6 Matrix ProjectIPv6 Matrix Project
IPv6 Matrix Project
 
IPv6 Matrix Project - general presentation
IPv6 Matrix Project - general presentationIPv6 Matrix Project - general presentation
IPv6 Matrix Project - general presentation
 
Maq Software Live On Cutting Edge Dream Spark Yatra
Maq Software  Live On Cutting Edge  Dream Spark YatraMaq Software  Live On Cutting Edge  Dream Spark Yatra
Maq Software Live On Cutting Edge Dream Spark Yatra
 
Riak at Posterous
Riak at PosterousRiak at Posterous
Riak at Posterous
 

Mais de Raffi Krikorian

Twitter: Engineering for Real-Time (Stanford ACM 2011)
Twitter: Engineering for Real-Time (Stanford ACM 2011)Twitter: Engineering for Real-Time (Stanford ACM 2011)
Twitter: Engineering for Real-Time (Stanford ACM 2011)
Raffi Krikorian
 
Securing Your Ecosystem (FOWA Las Vegas 2011)
Securing Your Ecosystem (FOWA Las Vegas 2011)Securing Your Ecosystem (FOWA Las Vegas 2011)
Securing Your Ecosystem (FOWA Las Vegas 2011)
Raffi Krikorian
 
Developing for @twitterapi (Techcrunch Disrupt Hackathon)
Developing for @twitterapi (Techcrunch Disrupt Hackathon)Developing for @twitterapi (Techcrunch Disrupt Hackathon)
Developing for @twitterapi (Techcrunch Disrupt Hackathon)
Raffi Krikorian
 
Intro to developing for @twitterapi
Intro to developing for @twitterapiIntro to developing for @twitterapi
Intro to developing for @twitterapi
Raffi Krikorian
 
"What's Happening" to "What's Happening Here" @ Chirp
"What's Happening" to "What's Happening Here" @ Chirp"What's Happening" to "What's Happening Here" @ Chirp
"What's Happening" to "What's Happening Here" @ Chirp
Raffi Krikorian
 
WattzOn @ ETech 2009
WattzOn @ ETech 2009WattzOn @ ETech 2009
WattzOn @ ETech 2009
Raffi Krikorian
 

Mais de Raffi Krikorian (20)

Twitter: Engineering for Real-Time (Stanford ACM 2011)
Twitter: Engineering for Real-Time (Stanford ACM 2011)Twitter: Engineering for Real-Time (Stanford ACM 2011)
Twitter: Engineering for Real-Time (Stanford ACM 2011)
 
Securing Your Ecosystem (FOWA Las Vegas 2011)
Securing Your Ecosystem (FOWA Las Vegas 2011)Securing Your Ecosystem (FOWA Las Vegas 2011)
Securing Your Ecosystem (FOWA Las Vegas 2011)
 
Developing for @twitterapi (Techcrunch Disrupt Hackathon)
Developing for @twitterapi (Techcrunch Disrupt Hackathon)Developing for @twitterapi (Techcrunch Disrupt Hackathon)
Developing for @twitterapi (Techcrunch Disrupt Hackathon)
 
#rtgeo (Where 2.0 2011)
#rtgeo (Where 2.0 2011)#rtgeo (Where 2.0 2011)
#rtgeo (Where 2.0 2011)
 
Users and Geo
Users and GeoUsers and Geo
Users and Geo
 
Twitter and the Real-Time Web
Twitter and the Real-Time WebTwitter and the Real-Time Web
Twitter and the Real-Time Web
 
Developing for @twitterapi #hack4health
Developing for @twitterapi #hack4healthDeveloping for @twitterapi #hack4health
Developing for @twitterapi #hack4health
 
Intro to developing for @twitterapi (updated)
Intro to developing for @twitterapi (updated)Intro to developing for @twitterapi (updated)
Intro to developing for @twitterapi (updated)
 
How to use Geolocation in your webapp @ FOWA Dublin 2010
How to use Geolocation in your webapp @ FOWA Dublin 2010How to use Geolocation in your webapp @ FOWA Dublin 2010
How to use Geolocation in your webapp @ FOWA Dublin 2010
 
Intro to developing for @twitterapi
Intro to developing for @twitterapiIntro to developing for @twitterapi
Intro to developing for @twitterapi
 
Twitter API Annotations
Twitter API AnnotationsTwitter API Annotations
Twitter API Annotations
 
"What's Happening" to "What's Happening Here" @ Chirp
"What's Happening" to "What's Happening Here" @ Chirp"What's Happening" to "What's Happening Here" @ Chirp
"What's Happening" to "What's Happening Here" @ Chirp
 
Energy / Tweet
Energy / TweetEnergy / Tweet
Energy / Tweet
 
Handling Real-time Geostreams
Handling Real-time GeostreamsHandling Real-time Geostreams
Handling Real-time Geostreams
 
Adding the "Where" to the "When"
Adding the "Where" to the "When"Adding the "Where" to the "When"
Adding the "Where" to the "When"
 
What's happening here?
What's happening here?What's happening here?
What's happening here?
 
WattzOn @ ETech 2009
WattzOn @ ETech 2009WattzOn @ ETech 2009
WattzOn @ ETech 2009
 
Scala + WattzOn, sitting in a tree....
Scala + WattzOn, sitting in a tree....Scala + WattzOn, sitting in a tree....
Scala + WattzOn, sitting in a tree....
 
WattzOn Whole Earth Simulator
WattzOn Whole Earth SimulatorWattzOn Whole Earth Simulator
WattzOn Whole Earth Simulator
 
Broken Hearts: How Valentine's Day causes global warming
Broken Hearts: How Valentine's Day causes global warmingBroken Hearts: How Valentine's Day causes global warming
Broken Hearts: How Valentine's Day causes global warming
 

Último

Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
vu2urc
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
Enterprise Knowledge
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 

Último (20)

A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - 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
 
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
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
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
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
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
 
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...
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
[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
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 

Twitter by the Numbers

  • 2. witter by the ing a t alk entitled “T Giv @twit terU a t Cal. Number s” with Lots o f ##s! ne Tw itter for iPho 1m inute ago via on Retweet ed by 1 pers
  • 3. What’s a Tweet? It’s a short message that's sent through 140 characters
  • 4. How many are there?
  • 5. How many are there? 70M 60M Today! * *off the chart
  • 6. op_oh Commons from lo der Creative Photo used un 47M served 70M tweets per day per day
  • 7. 70M tweets per day = 800 tweets per second
  • 8.
  • 9. How big are they? 1 tweet text = 140 characters ≈ 200 bytes
  • 10. 800 tweets per second ≈ 160 KB/sec ≈ 9 MB/min ≈ 12 GB/day Just tweet text!
  • 11. MySQL Can’t generate IDs fast enough Centralized and a single point of failure snowflake Highly available and uncoordinated (10kqps) Compatible with the ecosystem http://github.com/twitter/snowflake
  • 12. ampura Commons from ch der Creative Photo used un 1 TB generated 8 TB generated per day per day
  • 13. 8 TB per day in total ≈ 100 MB per sec Photo used u nder Creative C ommons from Mac Users G uide = 80 MB per sec
  • 14. Where do they go? Followed by Following Asymmetric Digraph
  • 16. 1 Digraph 2 Need to represent this 4 1 2 3 4 3 1 Matrix 2 Naïve implementation is not scalable 3 4
  • 17. 150M registered users 2006 2008 2010
  • 18. Photo used under Creative Commons from jurvetson Distributed graph database flockdb High rate of CRUD operations Complex set arithmetic queries http://github.com/twitter/flockdb
  • 19. @ladygaga mother mons†er 6.1 million followers @BarakObama 44th President of the United States 5.3 million followers @justinbieber Justin Bieber 5.1 million followers @raffi me! 4.1 thousand followers
  • 20. How do they get out? 6B API calls per day ≈ 70,000 calls per second
  • 21. REST API XML/JSON API over HTTP Poll-based system / pseudo real-time hosebird Streaming API Long poll HTTP Near real-time delivery of Tweets
  • 24. Where do we want to be? Today - 150M people generate ~1000 TPS Tomorrow - we want to support half the world and all its devices (5B phones and 6B people)
  • 25. Real challenges in front of us Real time Indexing, search, and analytics Relevance systems Graph databases Storage Scalability and efficiency
  • 26. Questions? Follow me at twitter.com/raffi