SlideShare a Scribd company logo
1 of 19
London HUG
               Common Crawl :
               WhatRepository
              An Open
                      Does
             Theof Web Data
                  Data World
             Mean to Society?
                     Lisa Green
                   Lisa Green
                 1 October 2012
                 10 October 2012
Photo license: Public Domain Origin: http://en.wikipedia.org/wiki/File:Floppy_disk_2009_G1.jpg
Photo license: CC-BY-SA Origin: http://en.wikipedia.org/wiki/File:Wikimedia_Foundation_Servers-8055_08.jpg
Image license: CC-BY Origin: http://en.wikipedia.org/wiki/File:Internet_map_1024.jpg
Still Nascent
                                                                    •      Even cheaper storage
                                                                    •      Even cheaper compute
                                                                    •      Education
                                                                    •      Open Data

Image license: CC-BY Credit: NASA, ESA, and the Hubble Heritage Team (STScI/AURA)
Gratis




Proprietary                Libre




              Commercial
Progress


Insight


Analysis


 Data
Gil Elbaz
Common Crawl Data
• ~8 Billion web pages
• ~120 TB
• 2008-2012
• ARC files, JSON metadata, text files
• Available to anyone
ARC Files - Raw Content
Metadata
•   Status information
•   HTTP response code
•   File names & offsets of ARC files
•   HTML title
•   HTML meta tags
•   RSS/Atom information
•   All anchors/hyperlinks

Text Files - Text Only

           http://commoncrawl.org/get-started
Change between 2010 and 2012
• URLs with embedded data +6%
• Microdata +14%
• RDFa +26%

      http://webdatacommons.org
• 22% of Web pages contain Facebook URLs
• 8% of Web pages implement Open Graph tags
http://wikientities.appspot.com

A corpus of anchortext-WikipediaConcept-Count
   from the CommonCrawl dataset, to benefit
         research on WSD, NLP and IR.

Given a sentence, it can
Explicit Topic Modeling: help identify entities
(person, location, organization) in wikipedia
Given a concept (represented as a the sentence
and map them onto Wikipedia concepts.
page), it can tell what are the most common
terms people use to describe the concept.
Mapping French websites related to Open Data
Other Use Examples
•   Apache Giraph Testing
•   Maplight
•   Tineye
•   Factual
•   Sentiment Analysis Projects
In Development
•   N-gram and Link Graph Extracts
•   Pig Reader
•   More Frequent Full Crawls
•   Focused Subset Crawls at High Frequency
•   Open Educational Resources
Thank You
London HUG

               What Does
             The Data World
                       Lisa Green

             Mean to Society?
                  lisa@commoncrawl.org
                www.commoncrawl.org
                     @commoncrawl
                      Lisa Green
                       @boudicca
                   1 October 2012

More Related Content

What's hot

Understanding GIT and Version Control
Understanding GIT and Version ControlUnderstanding GIT and Version Control
Understanding GIT and Version ControlSourabh Sahu
 
Version Control & Git
Version Control & GitVersion Control & Git
Version Control & GitCraig Smith
 
Version control system and Git
Version control system and GitVersion control system and Git
Version control system and Gitramubonkuri
 
Browser Wars Episode 1: The Phantom Menace
Browser Wars Episode 1: The Phantom MenaceBrowser Wars Episode 1: The Phantom Menace
Browser Wars Episode 1: The Phantom MenaceNicholas Zakas
 
Latent Semantic Indexing and Analysis
Latent Semantic Indexing and AnalysisLatent Semantic Indexing and Analysis
Latent Semantic Indexing and AnalysisMercy Livingstone
 
Hadoop & Big Data benchmarking
Hadoop & Big Data benchmarkingHadoop & Big Data benchmarking
Hadoop & Big Data benchmarkingBart Vandewoestyne
 
Web Mining Presentation Final
Web Mining Presentation FinalWeb Mining Presentation Final
Web Mining Presentation FinalEr. Jagrat Gupta
 
Deep Web
Deep WebDeep Web
Deep WebSt John
 
Search Engines Other than Google
Search Engines Other than GoogleSearch Engines Other than Google
Search Engines Other than GoogleDr Trivedi
 
Querying the Wikidata Knowledge Graph
Querying the Wikidata Knowledge GraphQuerying the Wikidata Knowledge Graph
Querying the Wikidata Knowledge GraphIoan Toma
 
Introduction to Sharding
Introduction to ShardingIntroduction to Sharding
Introduction to ShardingMongoDB
 
Building a Scalable Web Crawler with Hadoop
Building a Scalable Web Crawler with HadoopBuilding a Scalable Web Crawler with Hadoop
Building a Scalable Web Crawler with HadoopHadoop User Group
 
Introduction to Git
Introduction to GitIntroduction to Git
Introduction to GitLukas Fittl
 
Tips for Effective Google Search
Tips for Effective Google SearchTips for Effective Google Search
Tips for Effective Google Searchsilpara
 
Big Data and Hadoop
Big Data and HadoopBig Data and Hadoop
Big Data and HadoopFlavio Vit
 
presentation in html,css,javascript
presentation in html,css,javascriptpresentation in html,css,javascript
presentation in html,css,javascriptFaysalAhammed5
 

What's hot (20)

Understanding GIT and Version Control
Understanding GIT and Version ControlUnderstanding GIT and Version Control
Understanding GIT and Version Control
 
Wordpress
WordpressWordpress
Wordpress
 
Version Control & Git
Version Control & GitVersion Control & Git
Version Control & Git
 
WEB HOSTING
WEB HOSTINGWEB HOSTING
WEB HOSTING
 
Keyword Research
Keyword ResearchKeyword Research
Keyword Research
 
Version control system and Git
Version control system and GitVersion control system and Git
Version control system and Git
 
Browser Wars Episode 1: The Phantom Menace
Browser Wars Episode 1: The Phantom MenaceBrowser Wars Episode 1: The Phantom Menace
Browser Wars Episode 1: The Phantom Menace
 
web mining
web miningweb mining
web mining
 
Latent Semantic Indexing and Analysis
Latent Semantic Indexing and AnalysisLatent Semantic Indexing and Analysis
Latent Semantic Indexing and Analysis
 
Hadoop & Big Data benchmarking
Hadoop & Big Data benchmarkingHadoop & Big Data benchmarking
Hadoop & Big Data benchmarking
 
Web Mining Presentation Final
Web Mining Presentation FinalWeb Mining Presentation Final
Web Mining Presentation Final
 
Deep Web
Deep WebDeep Web
Deep Web
 
Search Engines Other than Google
Search Engines Other than GoogleSearch Engines Other than Google
Search Engines Other than Google
 
Querying the Wikidata Knowledge Graph
Querying the Wikidata Knowledge GraphQuerying the Wikidata Knowledge Graph
Querying the Wikidata Knowledge Graph
 
Introduction to Sharding
Introduction to ShardingIntroduction to Sharding
Introduction to Sharding
 
Building a Scalable Web Crawler with Hadoop
Building a Scalable Web Crawler with HadoopBuilding a Scalable Web Crawler with Hadoop
Building a Scalable Web Crawler with Hadoop
 
Introduction to Git
Introduction to GitIntroduction to Git
Introduction to Git
 
Tips for Effective Google Search
Tips for Effective Google SearchTips for Effective Google Search
Tips for Effective Google Search
 
Big Data and Hadoop
Big Data and HadoopBig Data and Hadoop
Big Data and Hadoop
 
presentation in html,css,javascript
presentation in html,css,javascriptpresentation in html,css,javascript
presentation in html,css,javascript
 

Viewers also liked

Using the whole web as your dataset
Using the whole web as your datasetUsing the whole web as your dataset
Using the whole web as your datasetTuri, Inc.
 
Is Crawling Legal? Web Crawling legal Policies
Is Crawling Legal? Web Crawling legal PoliciesIs Crawling Legal? Web Crawling legal Policies
Is Crawling Legal? Web Crawling legal PoliciesPromptCloud
 
Insight Data Engineering project
Insight Data Engineering projectInsight Data Engineering project
Insight Data Engineering projectHoa Nguyen
 
The Switchabalizer - our journey from spell checker to homophone corrrecter
The Switchabalizer - our journey from spell checker to homophone corrrecterThe Switchabalizer - our journey from spell checker to homophone corrrecter
The Switchabalizer - our journey from spell checker to homophone corrrecterCommonCrawl
 
Gephi Consortium Presentation
Gephi Consortium PresentationGephi Consortium Presentation
Gephi Consortium PresentationGephi Consortium
 
Enterprise Data World 2016 and CDO Vision Mural Summary
Enterprise Data World 2016 and CDO Vision Mural SummaryEnterprise Data World 2016 and CDO Vision Mural Summary
Enterprise Data World 2016 and CDO Vision Mural SummaryDATAVERSITY
 
BDT204 Awesome Applications of Open Data - AWS re: Invent 2012
BDT204 Awesome Applications of Open Data - AWS re: Invent 2012BDT204 Awesome Applications of Open Data - AWS re: Invent 2012
BDT204 Awesome Applications of Open Data - AWS re: Invent 2012Amazon Web Services
 

Viewers also liked (8)

Using the whole web as your dataset
Using the whole web as your datasetUsing the whole web as your dataset
Using the whole web as your dataset
 
Is Crawling Legal? Web Crawling legal Policies
Is Crawling Legal? Web Crawling legal PoliciesIs Crawling Legal? Web Crawling legal Policies
Is Crawling Legal? Web Crawling legal Policies
 
Insight Data Engineering project
Insight Data Engineering projectInsight Data Engineering project
Insight Data Engineering project
 
The Switchabalizer - our journey from spell checker to homophone corrrecter
The Switchabalizer - our journey from spell checker to homophone corrrecterThe Switchabalizer - our journey from spell checker to homophone corrrecter
The Switchabalizer - our journey from spell checker to homophone corrrecter
 
Gephi Consortium Presentation
Gephi Consortium PresentationGephi Consortium Presentation
Gephi Consortium Presentation
 
Enterprise Data World 2016 and CDO Vision Mural Summary
Enterprise Data World 2016 and CDO Vision Mural SummaryEnterprise Data World 2016 and CDO Vision Mural Summary
Enterprise Data World 2016 and CDO Vision Mural Summary
 
Gephi Quick Start
Gephi Quick StartGephi Quick Start
Gephi Quick Start
 
BDT204 Awesome Applications of Open Data - AWS re: Invent 2012
BDT204 Awesome Applications of Open Data - AWS re: Invent 2012BDT204 Awesome Applications of Open Data - AWS re: Invent 2012
BDT204 Awesome Applications of Open Data - AWS re: Invent 2012
 

Similar to Common Crawl: An Open Repository of Web Data

OpenGLAM in museums: Linked Open Data and Wikipedia
OpenGLAM in museums: Linked Open Data and WikipediaOpenGLAM in museums: Linked Open Data and Wikipedia
OpenGLAM in museums: Linked Open Data and WikipediaGeorgina Goodlander
 
Linked Open Data in Libraries, Archives & Museums
Linked Open Data in Libraries, Archives & MuseumsLinked Open Data in Libraries, Archives & Museums
Linked Open Data in Libraries, Archives & MuseumsJon Voss
 
Intro to Linked Open Data in Libraries Archives & Museums.
Intro to Linked Open Data in Libraries Archives & Museums.Intro to Linked Open Data in Libraries Archives & Museums.
Intro to Linked Open Data in Libraries Archives & Museums.Jon Voss
 
Global lodlam_communities and open cultural data
Global lodlam_communities and open cultural dataGlobal lodlam_communities and open cultural data
Global lodlam_communities and open cultural dataMinerva Lin
 
Intro to Linked Open Data in Libraries, Archives & Museums
Intro to Linked Open Data in Libraries, Archives & MuseumsIntro to Linked Open Data in Libraries, Archives & Museums
Intro to Linked Open Data in Libraries, Archives & MuseumsJon Voss
 
Linked Data Now & Next
Linked Data Now & NextLinked Data Now & Next
Linked Data Now & NextRichard Wallis
 
Linked Open Data in Libraries Archives & Museums
Linked Open Data in Libraries Archives & MuseumsLinked Open Data in Libraries Archives & Museums
Linked Open Data in Libraries Archives & MuseumsJon Voss
 
What is New in W3C land?
What is New in W3C land?What is New in W3C land?
What is New in W3C land?Ivan Herman
 
The Cultural Linked Data Backbone
The Cultural Linked Data BackboneThe Cultural Linked Data Backbone
The Cultural Linked Data BackboneRichard Wallis
 
IASSIT Kansa Presentation
IASSIT Kansa PresentationIASSIT Kansa Presentation
IASSIT Kansa Presentationekansa
 
Stuart Kenny; Kathryn Cassidy - Experience with Ingestion of Large Collection...
Stuart Kenny; Kathryn Cassidy - Experience with Ingestion of Large Collection...Stuart Kenny; Kathryn Cassidy - Experience with Ingestion of Large Collection...
Stuart Kenny; Kathryn Cassidy - Experience with Ingestion of Large Collection...dri_ireland
 
OCLC Linked Data Progress
OCLC Linked Data ProgressOCLC Linked Data Progress
OCLC Linked Data ProgressRichard Wallis
 
BHL hardware architecture - storage and clusters
BHL hardware architecture - storage and clustersBHL hardware architecture - storage and clusters
BHL hardware architecture - storage and clustersPhil Cryer
 
Linked Data (1st Linked Data Meetup Malmö)
Linked Data (1st Linked Data Meetup Malmö)Linked Data (1st Linked Data Meetup Malmö)
Linked Data (1st Linked Data Meetup Malmö)Anja Jentzsch
 
Scaling up Linked Data
Scaling up Linked DataScaling up Linked Data
Scaling up Linked DataMarin Dimitrov
 
Big Data & Hadoop Introduction
Big Data & Hadoop IntroductionBig Data & Hadoop Introduction
Big Data & Hadoop IntroductionJayant Mukherjee
 
Open Data Masterclass - Europeana and LOD
Open Data Masterclass - Europeana and LODOpen Data Masterclass - Europeana and LOD
Open Data Masterclass - Europeana and LODAntoine Isaac
 
From Open Access to Open Standards, (Linked) Data and Collaborations
From Open Access to Open Standards, (Linked) Data and CollaborationsFrom Open Access to Open Standards, (Linked) Data and Collaborations
From Open Access to Open Standards, (Linked) Data and CollaborationsSimeon Warner
 

Similar to Common Crawl: An Open Repository of Web Data (20)

OpenGLAM in museums: Linked Open Data and Wikipedia
OpenGLAM in museums: Linked Open Data and WikipediaOpenGLAM in museums: Linked Open Data and Wikipedia
OpenGLAM in museums: Linked Open Data and Wikipedia
 
Linked Open Data in Libraries, Archives & Museums
Linked Open Data in Libraries, Archives & MuseumsLinked Open Data in Libraries, Archives & Museums
Linked Open Data in Libraries, Archives & Museums
 
Intro to Linked Open Data in Libraries Archives & Museums.
Intro to Linked Open Data in Libraries Archives & Museums.Intro to Linked Open Data in Libraries Archives & Museums.
Intro to Linked Open Data in Libraries Archives & Museums.
 
Linked Data and OCLC
Linked Data and OCLCLinked Data and OCLC
Linked Data and OCLC
 
Global lodlam_communities and open cultural data
Global lodlam_communities and open cultural dataGlobal lodlam_communities and open cultural data
Global lodlam_communities and open cultural data
 
Intro to Linked Open Data in Libraries, Archives & Museums
Intro to Linked Open Data in Libraries, Archives & MuseumsIntro to Linked Open Data in Libraries, Archives & Museums
Intro to Linked Open Data in Libraries, Archives & Museums
 
Linked Data Now & Next
Linked Data Now & NextLinked Data Now & Next
Linked Data Now & Next
 
Linked Open Data in Libraries Archives & Museums
Linked Open Data in Libraries Archives & MuseumsLinked Open Data in Libraries Archives & Museums
Linked Open Data in Libraries Archives & Museums
 
What is New in W3C land?
What is New in W3C land?What is New in W3C land?
What is New in W3C land?
 
Linked Data
Linked DataLinked Data
Linked Data
 
The Cultural Linked Data Backbone
The Cultural Linked Data BackboneThe Cultural Linked Data Backbone
The Cultural Linked Data Backbone
 
IASSIT Kansa Presentation
IASSIT Kansa PresentationIASSIT Kansa Presentation
IASSIT Kansa Presentation
 
Stuart Kenny; Kathryn Cassidy - Experience with Ingestion of Large Collection...
Stuart Kenny; Kathryn Cassidy - Experience with Ingestion of Large Collection...Stuart Kenny; Kathryn Cassidy - Experience with Ingestion of Large Collection...
Stuart Kenny; Kathryn Cassidy - Experience with Ingestion of Large Collection...
 
OCLC Linked Data Progress
OCLC Linked Data ProgressOCLC Linked Data Progress
OCLC Linked Data Progress
 
BHL hardware architecture - storage and clusters
BHL hardware architecture - storage and clustersBHL hardware architecture - storage and clusters
BHL hardware architecture - storage and clusters
 
Linked Data (1st Linked Data Meetup Malmö)
Linked Data (1st Linked Data Meetup Malmö)Linked Data (1st Linked Data Meetup Malmö)
Linked Data (1st Linked Data Meetup Malmö)
 
Scaling up Linked Data
Scaling up Linked DataScaling up Linked Data
Scaling up Linked Data
 
Big Data & Hadoop Introduction
Big Data & Hadoop IntroductionBig Data & Hadoop Introduction
Big Data & Hadoop Introduction
 
Open Data Masterclass - Europeana and LOD
Open Data Masterclass - Europeana and LODOpen Data Masterclass - Europeana and LOD
Open Data Masterclass - Europeana and LOD
 
From Open Access to Open Standards, (Linked) Data and Collaborations
From Open Access to Open Standards, (Linked) Data and CollaborationsFrom Open Access to Open Standards, (Linked) Data and Collaborations
From Open Access to Open Standards, (Linked) Data and Collaborations
 

More from huguk

Data Wrangling on Hadoop - Olivier De Garrigues, Trifacta
Data Wrangling on Hadoop - Olivier De Garrigues, TrifactaData Wrangling on Hadoop - Olivier De Garrigues, Trifacta
Data Wrangling on Hadoop - Olivier De Garrigues, Trifactahuguk
 
ether.camp - Hackathon & ether.camp intro
ether.camp - Hackathon & ether.camp introether.camp - Hackathon & ether.camp intro
ether.camp - Hackathon & ether.camp introhuguk
 
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and HadoopGoogle Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoophuguk
 
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...huguk
 
Extracting maximum value from data while protecting consumer privacy. Jason ...
Extracting maximum value from data while protecting consumer privacy.  Jason ...Extracting maximum value from data while protecting consumer privacy.  Jason ...
Extracting maximum value from data while protecting consumer privacy. Jason ...huguk
 
Intelligence Augmented vs Artificial Intelligence. Alex Flamant, IBM Watson
Intelligence Augmented vs Artificial Intelligence. Alex Flamant, IBM WatsonIntelligence Augmented vs Artificial Intelligence. Alex Flamant, IBM Watson
Intelligence Augmented vs Artificial Intelligence. Alex Flamant, IBM Watsonhuguk
 
Streaming Dataflow with Apache Flink
Streaming Dataflow with Apache Flink Streaming Dataflow with Apache Flink
Streaming Dataflow with Apache Flink huguk
 
Lambda architecture on Spark, Kafka for real-time large scale ML
Lambda architecture on Spark, Kafka for real-time large scale MLLambda architecture on Spark, Kafka for real-time large scale ML
Lambda architecture on Spark, Kafka for real-time large scale MLhuguk
 
Today’s reality Hadoop with Spark- How to select the best Data Science approa...
Today’s reality Hadoop with Spark- How to select the best Data Science approa...Today’s reality Hadoop with Spark- How to select the best Data Science approa...
Today’s reality Hadoop with Spark- How to select the best Data Science approa...huguk
 
Jonathon Southam: Venture Capital, Funding & Pitching
Jonathon Southam: Venture Capital, Funding & PitchingJonathon Southam: Venture Capital, Funding & Pitching
Jonathon Southam: Venture Capital, Funding & Pitchinghuguk
 
Signal Media: Real-Time Media & News Monitoring
Signal Media: Real-Time Media & News MonitoringSignal Media: Real-Time Media & News Monitoring
Signal Media: Real-Time Media & News Monitoringhuguk
 
Dean Bryen: Scaling The Platform For Your Startup
Dean Bryen: Scaling The Platform For Your StartupDean Bryen: Scaling The Platform For Your Startup
Dean Bryen: Scaling The Platform For Your Startuphuguk
 
Peter Karney: Intro to the Digital catapult
Peter Karney: Intro to the Digital catapultPeter Karney: Intro to the Digital catapult
Peter Karney: Intro to the Digital catapulthuguk
 
Cytora: Real-Time Political Risk Analysis
Cytora:  Real-Time Political Risk AnalysisCytora:  Real-Time Political Risk Analysis
Cytora: Real-Time Political Risk Analysishuguk
 
Cubitic: Predictive Analytics
Cubitic: Predictive AnalyticsCubitic: Predictive Analytics
Cubitic: Predictive Analyticshuguk
 
Bird.i: Earth Observation Data Made Social
Bird.i: Earth Observation Data Made SocialBird.i: Earth Observation Data Made Social
Bird.i: Earth Observation Data Made Socialhuguk
 
Aiseedo: Real Time Machine Intelligence
Aiseedo: Real Time Machine IntelligenceAiseedo: Real Time Machine Intelligence
Aiseedo: Real Time Machine Intelligencehuguk
 
Secrets of Spark's success - Deenar Toraskar, Think Reactive
Secrets of Spark's success - Deenar Toraskar, Think Reactive Secrets of Spark's success - Deenar Toraskar, Think Reactive
Secrets of Spark's success - Deenar Toraskar, Think Reactive huguk
 
TV Marketing and big data: cat and dog or thick as thieves? Krzysztof Osiewal...
TV Marketing and big data: cat and dog or thick as thieves? Krzysztof Osiewal...TV Marketing and big data: cat and dog or thick as thieves? Krzysztof Osiewal...
TV Marketing and big data: cat and dog or thick as thieves? Krzysztof Osiewal...huguk
 
Hadoop - Looking to the Future By Arun Murthy
Hadoop - Looking to the Future By Arun MurthyHadoop - Looking to the Future By Arun Murthy
Hadoop - Looking to the Future By Arun Murthyhuguk
 

More from huguk (20)

Data Wrangling on Hadoop - Olivier De Garrigues, Trifacta
Data Wrangling on Hadoop - Olivier De Garrigues, TrifactaData Wrangling on Hadoop - Olivier De Garrigues, Trifacta
Data Wrangling on Hadoop - Olivier De Garrigues, Trifacta
 
ether.camp - Hackathon & ether.camp intro
ether.camp - Hackathon & ether.camp introether.camp - Hackathon & ether.camp intro
ether.camp - Hackathon & ether.camp intro
 
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and HadoopGoogle Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
 
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...
Using Big Data techniques to query and store OpenStreetMap data. Stephen Knox...
 
Extracting maximum value from data while protecting consumer privacy. Jason ...
Extracting maximum value from data while protecting consumer privacy.  Jason ...Extracting maximum value from data while protecting consumer privacy.  Jason ...
Extracting maximum value from data while protecting consumer privacy. Jason ...
 
Intelligence Augmented vs Artificial Intelligence. Alex Flamant, IBM Watson
Intelligence Augmented vs Artificial Intelligence. Alex Flamant, IBM WatsonIntelligence Augmented vs Artificial Intelligence. Alex Flamant, IBM Watson
Intelligence Augmented vs Artificial Intelligence. Alex Flamant, IBM Watson
 
Streaming Dataflow with Apache Flink
Streaming Dataflow with Apache Flink Streaming Dataflow with Apache Flink
Streaming Dataflow with Apache Flink
 
Lambda architecture on Spark, Kafka for real-time large scale ML
Lambda architecture on Spark, Kafka for real-time large scale MLLambda architecture on Spark, Kafka for real-time large scale ML
Lambda architecture on Spark, Kafka for real-time large scale ML
 
Today’s reality Hadoop with Spark- How to select the best Data Science approa...
Today’s reality Hadoop with Spark- How to select the best Data Science approa...Today’s reality Hadoop with Spark- How to select the best Data Science approa...
Today’s reality Hadoop with Spark- How to select the best Data Science approa...
 
Jonathon Southam: Venture Capital, Funding & Pitching
Jonathon Southam: Venture Capital, Funding & PitchingJonathon Southam: Venture Capital, Funding & Pitching
Jonathon Southam: Venture Capital, Funding & Pitching
 
Signal Media: Real-Time Media & News Monitoring
Signal Media: Real-Time Media & News MonitoringSignal Media: Real-Time Media & News Monitoring
Signal Media: Real-Time Media & News Monitoring
 
Dean Bryen: Scaling The Platform For Your Startup
Dean Bryen: Scaling The Platform For Your StartupDean Bryen: Scaling The Platform For Your Startup
Dean Bryen: Scaling The Platform For Your Startup
 
Peter Karney: Intro to the Digital catapult
Peter Karney: Intro to the Digital catapultPeter Karney: Intro to the Digital catapult
Peter Karney: Intro to the Digital catapult
 
Cytora: Real-Time Political Risk Analysis
Cytora:  Real-Time Political Risk AnalysisCytora:  Real-Time Political Risk Analysis
Cytora: Real-Time Political Risk Analysis
 
Cubitic: Predictive Analytics
Cubitic: Predictive AnalyticsCubitic: Predictive Analytics
Cubitic: Predictive Analytics
 
Bird.i: Earth Observation Data Made Social
Bird.i: Earth Observation Data Made SocialBird.i: Earth Observation Data Made Social
Bird.i: Earth Observation Data Made Social
 
Aiseedo: Real Time Machine Intelligence
Aiseedo: Real Time Machine IntelligenceAiseedo: Real Time Machine Intelligence
Aiseedo: Real Time Machine Intelligence
 
Secrets of Spark's success - Deenar Toraskar, Think Reactive
Secrets of Spark's success - Deenar Toraskar, Think Reactive Secrets of Spark's success - Deenar Toraskar, Think Reactive
Secrets of Spark's success - Deenar Toraskar, Think Reactive
 
TV Marketing and big data: cat and dog or thick as thieves? Krzysztof Osiewal...
TV Marketing and big data: cat and dog or thick as thieves? Krzysztof Osiewal...TV Marketing and big data: cat and dog or thick as thieves? Krzysztof Osiewal...
TV Marketing and big data: cat and dog or thick as thieves? Krzysztof Osiewal...
 
Hadoop - Looking to the Future By Arun Murthy
Hadoop - Looking to the Future By Arun MurthyHadoop - Looking to the Future By Arun Murthy
Hadoop - Looking to the Future By Arun Murthy
 

Recently uploaded

Continuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on ThanabotsContinuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on ThanabotsLeah Henrickson
 
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptxBT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptxNeo4j
 
Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessUXDXConf
 
Designing for Hardware Accessibility at Comcast
Designing for Hardware Accessibility at ComcastDesigning for Hardware Accessibility at Comcast
Designing for Hardware Accessibility at ComcastUXDXConf
 
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024Stephanie Beckett
 
PLAI - Acceleration Program for Generative A.I. Startups
PLAI - Acceleration Program for Generative A.I. StartupsPLAI - Acceleration Program for Generative A.I. Startups
PLAI - Acceleration Program for Generative A.I. StartupsStefano
 
Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Patrick Viafore
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceSamy Fodil
 
ERP Contender Series: Acumatica vs. Sage Intacct
ERP Contender Series: Acumatica vs. Sage IntacctERP Contender Series: Acumatica vs. Sage Intacct
ERP Contender Series: Acumatica vs. Sage IntacctBrainSell Technologies
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGDSC PJATK
 
Using IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandUsing IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandIES VE
 
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfThe Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfFIDO Alliance
 
Long journey of Ruby Standard library at RubyKaigi 2024
Long journey of Ruby Standard library at RubyKaigi 2024Long journey of Ruby Standard library at RubyKaigi 2024
Long journey of Ruby Standard library at RubyKaigi 2024Hiroshi SHIBATA
 
The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?Mark Billinghurst
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIES VE
 
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...FIDO Alliance
 
Working together SRE & Platform Engineering
Working together SRE & Platform EngineeringWorking together SRE & Platform Engineering
Working together SRE & Platform EngineeringMarcus Vechiato
 
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераIntro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераMark Opanasiuk
 
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdfWhere to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdfFIDO Alliance
 
1111 ChatGPT Prompts PDF Free Download - Prompts for ChatGPT
1111 ChatGPT Prompts PDF Free Download - Prompts for ChatGPT1111 ChatGPT Prompts PDF Free Download - Prompts for ChatGPT
1111 ChatGPT Prompts PDF Free Download - Prompts for ChatGPTiSEO AI
 

Recently uploaded (20)

Continuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on ThanabotsContinuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
Continuing Bonds Through AI: A Hermeneutic Reflection on Thanabots
 
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptxBT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
BT & Neo4j _ How Knowledge Graphs help BT deliver Digital Transformation.pptx
 
Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for Success
 
Designing for Hardware Accessibility at Comcast
Designing for Hardware Accessibility at ComcastDesigning for Hardware Accessibility at Comcast
Designing for Hardware Accessibility at Comcast
 
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024
 
PLAI - Acceleration Program for Generative A.I. Startups
PLAI - Acceleration Program for Generative A.I. StartupsPLAI - Acceleration Program for Generative A.I. Startups
PLAI - Acceleration Program for Generative A.I. Startups
 
Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024Extensible Python: Robustness through Addition - PyCon 2024
Extensible Python: Robustness through Addition - PyCon 2024
 
WebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM PerformanceWebAssembly is Key to Better LLM Performance
WebAssembly is Key to Better LLM Performance
 
ERP Contender Series: Acumatica vs. Sage Intacct
ERP Contender Series: Acumatica vs. Sage IntacctERP Contender Series: Acumatica vs. Sage Intacct
ERP Contender Series: Acumatica vs. Sage Intacct
 
Google I/O Extended 2024 Warsaw
Google I/O Extended 2024 WarsawGoogle I/O Extended 2024 Warsaw
Google I/O Extended 2024 Warsaw
 
Using IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & IrelandUsing IESVE for Room Loads Analysis - UK & Ireland
Using IESVE for Room Loads Analysis - UK & Ireland
 
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdfThe Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
 
Long journey of Ruby Standard library at RubyKaigi 2024
Long journey of Ruby Standard library at RubyKaigi 2024Long journey of Ruby Standard library at RubyKaigi 2024
Long journey of Ruby Standard library at RubyKaigi 2024
 
The Metaverse: Are We There Yet?
The  Metaverse:    Are   We  There  Yet?The  Metaverse:    Are   We  There  Yet?
The Metaverse: Are We There Yet?
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
 
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
Choosing the Right FDO Deployment Model for Your Application _ Geoffrey at In...
 
Working together SRE & Platform Engineering
Working together SRE & Platform EngineeringWorking together SRE & Platform Engineering
Working together SRE & Platform Engineering
 
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджераIntro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджера
 
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdfWhere to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
 
1111 ChatGPT Prompts PDF Free Download - Prompts for ChatGPT
1111 ChatGPT Prompts PDF Free Download - Prompts for ChatGPT1111 ChatGPT Prompts PDF Free Download - Prompts for ChatGPT
1111 ChatGPT Prompts PDF Free Download - Prompts for ChatGPT
 

Common Crawl: An Open Repository of Web Data

  • 1. London HUG Common Crawl : WhatRepository An Open Does Theof Web Data Data World Mean to Society? Lisa Green Lisa Green 1 October 2012 10 October 2012
  • 2. Photo license: Public Domain Origin: http://en.wikipedia.org/wiki/File:Floppy_disk_2009_G1.jpg
  • 3. Photo license: CC-BY-SA Origin: http://en.wikipedia.org/wiki/File:Wikimedia_Foundation_Servers-8055_08.jpg
  • 4. Image license: CC-BY Origin: http://en.wikipedia.org/wiki/File:Internet_map_1024.jpg
  • 5. Still Nascent • Even cheaper storage • Even cheaper compute • Education • Open Data Image license: CC-BY Credit: NASA, ESA, and the Hubble Heritage Team (STScI/AURA)
  • 6. Gratis Proprietary Libre Commercial
  • 9.
  • 10. Common Crawl Data • ~8 Billion web pages • ~120 TB • 2008-2012 • ARC files, JSON metadata, text files • Available to anyone
  • 11. ARC Files - Raw Content Metadata • Status information • HTTP response code • File names & offsets of ARC files • HTML title • HTML meta tags • RSS/Atom information • All anchors/hyperlinks Text Files - Text Only http://commoncrawl.org/get-started
  • 12.
  • 13. Change between 2010 and 2012 • URLs with embedded data +6% • Microdata +14% • RDFa +26% http://webdatacommons.org
  • 14. • 22% of Web pages contain Facebook URLs • 8% of Web pages implement Open Graph tags
  • 15. http://wikientities.appspot.com A corpus of anchortext-WikipediaConcept-Count from the CommonCrawl dataset, to benefit research on WSD, NLP and IR. Given a sentence, it can Explicit Topic Modeling: help identify entities (person, location, organization) in wikipedia Given a concept (represented as a the sentence and map them onto Wikipedia concepts. page), it can tell what are the most common terms people use to describe the concept.
  • 16. Mapping French websites related to Open Data
  • 17. Other Use Examples • Apache Giraph Testing • Maplight • Tineye • Factual • Sentiment Analysis Projects
  • 18. In Development • N-gram and Link Graph Extracts • Pig Reader • More Frequent Full Crawls • Focused Subset Crawls at High Frequency • Open Educational Resources
  • 19. Thank You London HUG What Does The Data World Lisa Green Mean to Society? lisa@commoncrawl.org www.commoncrawl.org @commoncrawl Lisa Green @boudicca 1 October 2012