SlideShare a Scribd company logo
1 of 20
Boosting Documents in Solr by Recency, Popularity, and User Preferences Timothy Potter [email_address] , May 25, 2011
What I Will Cover ,[object Object],[object Object],[object Object]
My Background ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Boost documents by age ,[object Object],[object Object],[object Object]
Solr: Indexing ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
FunctionQuery Basics ,[object Object],[object Object],[object Object],constant literal fieldvalue ord rord sum sub product pow abs log sqrt map scale query linear recip max min ms sqedist - Squared Euclidean Dist hsin, ghhsin - Haversine Formula geohash - Convert to geohash strdist
Solr: Query Time Boost ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Tune Solr recip function
Tips and Tricks ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object],Boost by Popularity
Popularity Illustrated
Solr: ExternalFileField ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Popularity Boost: Nuts & Bolts Logs Solr Server User activity logged View Counting Job solr-home/data/ external_popularity a=1.114 b=1.05 c=1.111 … commit
Popularity Tips & Tricks ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Filtering By User Preferences ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Preferences Component ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Preferences Filter ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Preferences Filter in Action User Preferences Db Solr Server LRU Cache Preferences Component Update Preferences Query with pref.id=123 and pref.mod = TS pref.id & pref.mod If cached mod == pref.mod read from cache SQL to compute excluded categories sources and types
Wrap Up ,[object Object],[object Object],[object Object]
Contact ,[object Object],[object Object],[object Object],[object Object]

More Related Content

What's hot

Solr Application Development Tutorial
Solr Application Development TutorialSolr Application Development Tutorial
Solr Application Development Tutorial
Erik Hatcher
 
Role based access control
Role based access controlRole based access control
Role based access control
Peter Edwards
 
Presentation- on OIM
Presentation- on OIMPresentation- on OIM
Presentation- on OIM
Tamim Khan
 

What's hot (20)

AWS Summit Seoul 2023 | AWS에서 OpenTelemetry 기반의 애플리케이션 Observability 구축/활용하기
AWS Summit Seoul 2023 | AWS에서 OpenTelemetry 기반의 애플리케이션 Observability 구축/활용하기AWS Summit Seoul 2023 | AWS에서 OpenTelemetry 기반의 애플리케이션 Observability 구축/활용하기
AWS Summit Seoul 2023 | AWS에서 OpenTelemetry 기반의 애플리케이션 Observability 구축/활용하기
 
Neural Search Comes to Apache Solr_ Approximate Nearest Neighbor, BERT and Mo...
Neural Search Comes to Apache Solr_ Approximate Nearest Neighbor, BERT and Mo...Neural Search Comes to Apache Solr_ Approximate Nearest Neighbor, BERT and Mo...
Neural Search Comes to Apache Solr_ Approximate Nearest Neighbor, BERT and Mo...
 
Keep me in the Loop: INotify in HDFS
Keep me in the Loop: INotify in HDFSKeep me in the Loop: INotify in HDFS
Keep me in the Loop: INotify in HDFS
 
Apache Arrow: Open Source Standard Becomes an Enterprise Necessity
Apache Arrow: Open Source Standard Becomes an Enterprise NecessityApache Arrow: Open Source Standard Becomes an Enterprise Necessity
Apache Arrow: Open Source Standard Becomes an Enterprise Necessity
 
Solr Application Development Tutorial
Solr Application Development TutorialSolr Application Development Tutorial
Solr Application Development Tutorial
 
Airbnb Search Architecture: Presented by Maxim Charkov, Airbnb
Airbnb Search Architecture: Presented by Maxim Charkov, AirbnbAirbnb Search Architecture: Presented by Maxim Charkov, Airbnb
Airbnb Search Architecture: Presented by Maxim Charkov, Airbnb
 
Kong, Keyrock, Keycloak, i4Trust - Options to Secure FIWARE in Production
Kong, Keyrock, Keycloak, i4Trust - Options to Secure FIWARE in ProductionKong, Keyrock, Keycloak, i4Trust - Options to Secure FIWARE in Production
Kong, Keyrock, Keycloak, i4Trust - Options to Secure FIWARE in Production
 
Role based access control
Role based access controlRole based access control
Role based access control
 
Api security
Api security Api security
Api security
 
The Apache Solr Semantic Knowledge Graph
The Apache Solr Semantic Knowledge GraphThe Apache Solr Semantic Knowledge Graph
The Apache Solr Semantic Knowledge Graph
 
Haystack 2019 - Custom Solr Query Parser Design Option, and Pros & Cons - Ber...
Haystack 2019 - Custom Solr Query Parser Design Option, and Pros & Cons - Ber...Haystack 2019 - Custom Solr Query Parser Design Option, and Pros & Cons - Ber...
Haystack 2019 - Custom Solr Query Parser Design Option, and Pros & Cons - Ber...
 
Presentation- on OIM
Presentation- on OIMPresentation- on OIM
Presentation- on OIM
 
Tutorial on developing a Solr search component plugin
Tutorial on developing a Solr search component pluginTutorial on developing a Solr search component plugin
Tutorial on developing a Solr search component plugin
 
Salesforce Partner Program for ISV Partners
Salesforce Partner Program for ISV PartnersSalesforce Partner Program for ISV Partners
Salesforce Partner Program for ISV Partners
 
Prometheus Storage
Prometheus StoragePrometheus Storage
Prometheus Storage
 
Inventory and Patch Management Using AWS Systems Manager (ARC332) - AWS re:In...
Inventory and Patch Management Using AWS Systems Manager (ARC332) - AWS re:In...Inventory and Patch Management Using AWS Systems Manager (ARC332) - AWS re:In...
Inventory and Patch Management Using AWS Systems Manager (ARC332) - AWS re:In...
 
Query relaxation - A rewriting technique between search and recommendations
Query relaxation - A rewriting technique between search and recommendationsQuery relaxation - A rewriting technique between search and recommendations
Query relaxation - A rewriting technique between search and recommendations
 
Secure Design: Threat Modeling
Secure Design: Threat ModelingSecure Design: Threat Modeling
Secure Design: Threat Modeling
 
Llama-index
Llama-indexLlama-index
Llama-index
 
Orion Context Broker 20220301
Orion Context Broker 20220301Orion Context Broker 20220301
Orion Context Broker 20220301
 

Viewers also liked

네이버 지식쇼핑과 아마존의 검색결과 페이지네비게이션 유형분석
네이버 지식쇼핑과 아마존의 검색결과 페이지네비게이션 유형분석네이버 지식쇼핑과 아마존의 검색결과 페이지네비게이션 유형분석
네이버 지식쇼핑과 아마존의 검색결과 페이지네비게이션 유형분석
상욱 송
 
Solr Query Parsing
Solr Query ParsingSolr Query Parsing
Solr Query Parsing
Erik Hatcher
 
Black+listed+companies+list+in+hyd
Black+listed+companies+list+in+hydBlack+listed+companies+list+in+hyd
Black+listed+companies+list+in+hyd
kranrann
 
Lady gaga
Lady gaga Lady gaga
Lady gaga
tanica
 
Building a Lightweight Discovery Interface for Chinese Patents, Presented by ...
Building a Lightweight Discovery Interface for Chinese Patents, Presented by ...Building a Lightweight Discovery Interface for Chinese Patents, Presented by ...
Building a Lightweight Discovery Interface for Chinese Patents, Presented by ...
Lucidworks (Archived)
 

Viewers also liked (20)

Implementing Click-through Relevance Ranking in Solr and LucidWorks Enterprise
Implementing Click-through Relevance Ranking in Solr and LucidWorks EnterpriseImplementing Click-through Relevance Ranking in Solr and LucidWorks Enterprise
Implementing Click-through Relevance Ranking in Solr and LucidWorks Enterprise
 
Semantic & Multilingual Strategies in Lucene/Solr
Semantic & Multilingual Strategies in Lucene/SolrSemantic & Multilingual Strategies in Lucene/Solr
Semantic & Multilingual Strategies in Lucene/Solr
 
Click-through relevance ranking in solr &  lucid works enterprise - By Andrz...
 Click-through relevance ranking in solr &  lucid works enterprise - By Andrz... Click-through relevance ranking in solr &  lucid works enterprise - By Andrz...
Click-through relevance ranking in solr &  lucid works enterprise - By Andrz...
 
Practical Machine Learning for Smarter Search with Solr and Spark
Practical Machine Learning for Smarter Search with Solr and SparkPractical Machine Learning for Smarter Search with Solr and Spark
Practical Machine Learning for Smarter Search with Solr and Spark
 
네이버 지식쇼핑과 아마존의 검색결과 페이지네비게이션 유형분석
네이버 지식쇼핑과 아마존의 검색결과 페이지네비게이션 유형분석네이버 지식쇼핑과 아마존의 검색결과 페이지네비게이션 유형분석
네이버 지식쇼핑과 아마존의 검색결과 페이지네비게이션 유형분석
 
Getting started with Elasticsearch and .NET
Getting started with Elasticsearch and .NETGetting started with Elasticsearch and .NET
Getting started with Elasticsearch and .NET
 
Query Parsing - Tips and Tricks
Query Parsing - Tips and TricksQuery Parsing - Tips and Tricks
Query Parsing - Tips and Tricks
 
Twitter Search Architecture
Twitter Search Architecture Twitter Search Architecture
Twitter Search Architecture
 
Solr Query Parsing
Solr Query ParsingSolr Query Parsing
Solr Query Parsing
 
第16回Lucene/Solr勉強会 – ランキングチューニングと定量評価 #SolrJP
第16回Lucene/Solr勉強会 – ランキングチューニングと定量評価 #SolrJP第16回Lucene/Solr勉強会 – ランキングチューニングと定量評価 #SolrJP
第16回Lucene/Solr勉強会 – ランキングチューニングと定量評価 #SolrJP
 
Building a Real-time Solr-powered Recommendation Engine
Building a Real-time Solr-powered Recommendation EngineBuilding a Real-time Solr-powered Recommendation Engine
Building a Real-time Solr-powered Recommendation Engine
 
Black+listed+companies+list+in+hyd
Black+listed+companies+list+in+hydBlack+listed+companies+list+in+hyd
Black+listed+companies+list+in+hyd
 
Language support and linguistics in lucene solr & its eco system
Language support and linguistics in lucene solr & its eco systemLanguage support and linguistics in lucene solr & its eco system
Language support and linguistics in lucene solr & its eco system
 
Learn How to Master Solr1 4
Learn How to Master Solr1 4Learn How to Master Solr1 4
Learn How to Master Solr1 4
 
Lady gaga
Lady gaga Lady gaga
Lady gaga
 
Building a Lightweight Discovery Interface for Chinese Patents, Presented by ...
Building a Lightweight Discovery Interface for Chinese Patents, Presented by ...Building a Lightweight Discovery Interface for Chinese Patents, Presented by ...
Building a Lightweight Discovery Interface for Chinese Patents, Presented by ...
 
Overview of Searching in Solr 1.4
Overview of Searching in Solr 1.4Overview of Searching in Solr 1.4
Overview of Searching in Solr 1.4
 
What’s new in apache lucene 3.0
What’s new in apache lucene 3.0What’s new in apache lucene 3.0
What’s new in apache lucene 3.0
 
Ashe
AsheAshe
Ashe
 
Portades
PortadesPortades
Portades
 

Similar to Boosting Documents in Solr by Recency, Popularity, and User Preferences

Dev8d Apache Solr Tutorial
Dev8d Apache Solr TutorialDev8d Apache Solr Tutorial
Dev8d Apache Solr Tutorial
Sourcesense
 
Letting In the Light: Using Solr as an External Search Component
Letting In the Light: Using Solr as an External Search ComponentLetting In the Light: Using Solr as an External Search Component
Letting In the Light: Using Solr as an External Search Component
Jay Luker
 
Presentation Moss 2007 Usman
Presentation Moss 2007 UsmanPresentation Moss 2007 Usman
Presentation Moss 2007 Usman
Usman Zafar Malik
 

Similar to Boosting Documents in Solr by Recency, Popularity, and User Preferences (20)

Boosting Documents in Solr (Lucene Revolution 2011)
Boosting Documents in Solr (Lucene Revolution 2011)Boosting Documents in Solr (Lucene Revolution 2011)
Boosting Documents in Solr (Lucene Revolution 2011)
 
Reflected intelligence evolving self-learning data systems
Reflected intelligence  evolving self-learning data systemsReflected intelligence  evolving self-learning data systems
Reflected intelligence evolving self-learning data systems
 
Dev8d Apache Solr Tutorial
Dev8d Apache Solr TutorialDev8d Apache Solr Tutorial
Dev8d Apache Solr Tutorial
 
Letting In the Light: Using Solr as an External Search Component
Letting In the Light: Using Solr as an External Search ComponentLetting In the Light: Using Solr as an External Search Component
Letting In the Light: Using Solr as an External Search Component
 
Performance Tuning for Visualforce and Apex
Performance Tuning for Visualforce and ApexPerformance Tuning for Visualforce and Apex
Performance Tuning for Visualforce and Apex
 
Sumo Logic Cert Jam - Fundamentals
Sumo Logic Cert Jam - FundamentalsSumo Logic Cert Jam - Fundamentals
Sumo Logic Cert Jam - Fundamentals
 
Cloudera Movies Data Science Project On Big Data
Cloudera Movies Data Science Project On Big DataCloudera Movies Data Science Project On Big Data
Cloudera Movies Data Science Project On Big Data
 
Solr JDBC: Presented by Kevin Risden, Avalon Consulting
Solr JDBC: Presented by Kevin Risden, Avalon ConsultingSolr JDBC: Presented by Kevin Risden, Avalon Consulting
Solr JDBC: Presented by Kevin Risden, Avalon Consulting
 
Presentation Moss 2007 Usman
Presentation Moss 2007 UsmanPresentation Moss 2007 Usman
Presentation Moss 2007 Usman
 
Solr Presentation
Solr PresentationSolr Presentation
Solr Presentation
 
Solr JDBC - Lucene/Solr Revolution 2016
Solr JDBC - Lucene/Solr Revolution 2016Solr JDBC - Lucene/Solr Revolution 2016
Solr JDBC - Lucene/Solr Revolution 2016
 
Level 2 Certification: Using Sumo Logic - Oct 2018
Level 2 Certification: Using Sumo Logic - Oct 2018Level 2 Certification: Using Sumo Logic - Oct 2018
Level 2 Certification: Using Sumo Logic - Oct 2018
 
Portfolio Oversight With eazyBI
Portfolio Oversight With eazyBIPortfolio Oversight With eazyBI
Portfolio Oversight With eazyBI
 
CrossRef How-to: A Technical Introduction to the Basics of CrossRef, Chuck Ko...
CrossRef How-to: A Technical Introduction to the Basics of CrossRef, Chuck Ko...CrossRef How-to: A Technical Introduction to the Basics of CrossRef, Chuck Ko...
CrossRef How-to: A Technical Introduction to the Basics of CrossRef, Chuck Ko...
 
AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
 
Nose Dive into Apache Spark ML
Nose Dive into Apache Spark MLNose Dive into Apache Spark ML
Nose Dive into Apache Spark ML
 
2018 data warehouse features in spark
2018   data warehouse features in spark2018   data warehouse features in spark
2018 data warehouse features in spark
 
Welcome Webinar Slides
Welcome Webinar SlidesWelcome Webinar Slides
Welcome Webinar Slides
 
ImageSemantics : User-Generated Metadata, Content-Based Retrieval & Beyond
ImageSemantics : User-Generated Metadata, Content-Based Retrieval & BeyondImageSemantics : User-Generated Metadata, Content-Based Retrieval & Beyond
ImageSemantics : User-Generated Metadata, Content-Based Retrieval & Beyond
 
Reproducible AI Using PyTorch and MLflow
Reproducible AI Using PyTorch and MLflowReproducible AI Using PyTorch and MLflow
Reproducible AI Using PyTorch and MLflow
 

More from Lucidworks (Archived)

Chicago Solr Meetup - June 10th: This Ain't Your Parents' Search Engine
Chicago Solr Meetup - June 10th: This Ain't Your Parents' Search EngineChicago Solr Meetup - June 10th: This Ain't Your Parents' Search Engine
Chicago Solr Meetup - June 10th: This Ain't Your Parents' Search Engine
Lucidworks (Archived)
 
Chicago Solr Meetup - June 10th: Exploring Hadoop with Search
Chicago Solr Meetup - June 10th: Exploring Hadoop with SearchChicago Solr Meetup - June 10th: Exploring Hadoop with Search
Chicago Solr Meetup - June 10th: Exploring Hadoop with Search
Lucidworks (Archived)
 
Minneapolis Solr Meetup - May 28, 2014: Target.com Search
Minneapolis Solr Meetup - May 28, 2014: Target.com SearchMinneapolis Solr Meetup - May 28, 2014: Target.com Search
Minneapolis Solr Meetup - May 28, 2014: Target.com Search
Lucidworks (Archived)
 
Exploration of multidimensional biomedical data in pub chem, Presented by Lia...
Exploration of multidimensional biomedical data in pub chem, Presented by Lia...Exploration of multidimensional biomedical data in pub chem, Presented by Lia...
Exploration of multidimensional biomedical data in pub chem, Presented by Lia...
Lucidworks (Archived)
 
Unstructured Or: How I Learned to Stop Worrying and Love the xml, Presented...
Unstructured   Or: How I Learned to Stop Worrying and Love the xml, Presented...Unstructured   Or: How I Learned to Stop Worrying and Love the xml, Presented...
Unstructured Or: How I Learned to Stop Worrying and Love the xml, Presented...
Lucidworks (Archived)
 
Big Data Challenges, Presented by Wes Caldwell at SolrExchage DC
Big Data Challenges, Presented by Wes Caldwell at SolrExchage DCBig Data Challenges, Presented by Wes Caldwell at SolrExchage DC
Big Data Challenges, Presented by Wes Caldwell at SolrExchage DC
Lucidworks (Archived)
 
What's New in Lucene/Solr Presented by Grant Ingersoll at SolrExchage DC
What's New  in Lucene/Solr Presented by Grant Ingersoll at SolrExchage DCWhat's New  in Lucene/Solr Presented by Grant Ingersoll at SolrExchage DC
What's New in Lucene/Solr Presented by Grant Ingersoll at SolrExchage DC
Lucidworks (Archived)
 
Solr At AOL, Presented by Sean Timm at SolrExchage DC
Solr At AOL, Presented by Sean Timm at SolrExchage DCSolr At AOL, Presented by Sean Timm at SolrExchage DC
Solr At AOL, Presented by Sean Timm at SolrExchage DC
Lucidworks (Archived)
 
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DCIntro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Lucidworks (Archived)
 
Test Driven Relevancy, Presented by Doug Turnbull at SolrExchage DC
Test Driven Relevancy, Presented by Doug Turnbull at SolrExchage DCTest Driven Relevancy, Presented by Doug Turnbull at SolrExchage DC
Test Driven Relevancy, Presented by Doug Turnbull at SolrExchage DC
Lucidworks (Archived)
 
Introducing LucidWorks App for Splunk Enterprise webinar
Introducing LucidWorks App for Splunk Enterprise webinarIntroducing LucidWorks App for Splunk Enterprise webinar
Introducing LucidWorks App for Splunk Enterprise webinar
Lucidworks (Archived)
 

More from Lucidworks (Archived) (20)

Integrating Hadoop & Solr
Integrating Hadoop & SolrIntegrating Hadoop & Solr
Integrating Hadoop & Solr
 
The Data-Driven Paradigm
The Data-Driven ParadigmThe Data-Driven Paradigm
The Data-Driven Paradigm
 
Downtown SF Lucene/Solr Meetup - September 17: Thoth: Real-time Solr Monitori...
Downtown SF Lucene/Solr Meetup - September 17: Thoth: Real-time Solr Monitori...Downtown SF Lucene/Solr Meetup - September 17: Thoth: Real-time Solr Monitori...
Downtown SF Lucene/Solr Meetup - September 17: Thoth: Real-time Solr Monitori...
 
SFBay Area Solr Meetup - July 15th: Integrating Hadoop and Solr
 SFBay Area Solr Meetup - July 15th: Integrating Hadoop and Solr SFBay Area Solr Meetup - July 15th: Integrating Hadoop and Solr
SFBay Area Solr Meetup - July 15th: Integrating Hadoop and Solr
 
SFBay Area Solr Meetup - June 18th: Box + Solr = Content Search for Business
SFBay Area Solr Meetup - June 18th: Box + Solr = Content Search for BusinessSFBay Area Solr Meetup - June 18th: Box + Solr = Content Search for Business
SFBay Area Solr Meetup - June 18th: Box + Solr = Content Search for Business
 
SFBay Area Solr Meetup - June 18th: Benchmarking Solr Performance
SFBay Area Solr Meetup - June 18th: Benchmarking Solr PerformanceSFBay Area Solr Meetup - June 18th: Benchmarking Solr Performance
SFBay Area Solr Meetup - June 18th: Benchmarking Solr Performance
 
Chicago Solr Meetup - June 10th: This Ain't Your Parents' Search Engine
Chicago Solr Meetup - June 10th: This Ain't Your Parents' Search EngineChicago Solr Meetup - June 10th: This Ain't Your Parents' Search Engine
Chicago Solr Meetup - June 10th: This Ain't Your Parents' Search Engine
 
Chicago Solr Meetup - June 10th: Exploring Hadoop with Search
Chicago Solr Meetup - June 10th: Exploring Hadoop with SearchChicago Solr Meetup - June 10th: Exploring Hadoop with Search
Chicago Solr Meetup - June 10th: Exploring Hadoop with Search
 
What's new in solr june 2014
What's new in solr june 2014What's new in solr june 2014
What's new in solr june 2014
 
Minneapolis Solr Meetup - May 28, 2014: eCommerce Search with Apache Solr
Minneapolis Solr Meetup - May 28, 2014: eCommerce Search with Apache SolrMinneapolis Solr Meetup - May 28, 2014: eCommerce Search with Apache Solr
Minneapolis Solr Meetup - May 28, 2014: eCommerce Search with Apache Solr
 
Minneapolis Solr Meetup - May 28, 2014: Target.com Search
Minneapolis Solr Meetup - May 28, 2014: Target.com SearchMinneapolis Solr Meetup - May 28, 2014: Target.com Search
Minneapolis Solr Meetup - May 28, 2014: Target.com Search
 
Exploration of multidimensional biomedical data in pub chem, Presented by Lia...
Exploration of multidimensional biomedical data in pub chem, Presented by Lia...Exploration of multidimensional biomedical data in pub chem, Presented by Lia...
Exploration of multidimensional biomedical data in pub chem, Presented by Lia...
 
Unstructured Or: How I Learned to Stop Worrying and Love the xml, Presented...
Unstructured   Or: How I Learned to Stop Worrying and Love the xml, Presented...Unstructured   Or: How I Learned to Stop Worrying and Love the xml, Presented...
Unstructured Or: How I Learned to Stop Worrying and Love the xml, Presented...
 
Big Data Challenges, Presented by Wes Caldwell at SolrExchage DC
Big Data Challenges, Presented by Wes Caldwell at SolrExchage DCBig Data Challenges, Presented by Wes Caldwell at SolrExchage DC
Big Data Challenges, Presented by Wes Caldwell at SolrExchage DC
 
What's New in Lucene/Solr Presented by Grant Ingersoll at SolrExchage DC
What's New  in Lucene/Solr Presented by Grant Ingersoll at SolrExchage DCWhat's New  in Lucene/Solr Presented by Grant Ingersoll at SolrExchage DC
What's New in Lucene/Solr Presented by Grant Ingersoll at SolrExchage DC
 
Solr At AOL, Presented by Sean Timm at SolrExchage DC
Solr At AOL, Presented by Sean Timm at SolrExchage DCSolr At AOL, Presented by Sean Timm at SolrExchage DC
Solr At AOL, Presented by Sean Timm at SolrExchage DC
 
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DCIntro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
Intro to Solr Cloud, Presented by Tim Potter at SolrExchage DC
 
Test Driven Relevancy, Presented by Doug Turnbull at SolrExchage DC
Test Driven Relevancy, Presented by Doug Turnbull at SolrExchage DCTest Driven Relevancy, Presented by Doug Turnbull at SolrExchage DC
Test Driven Relevancy, Presented by Doug Turnbull at SolrExchage DC
 
Building a data driven search application with LucidWorks SiLK
Building a data driven search application with LucidWorks SiLKBuilding a data driven search application with LucidWorks SiLK
Building a data driven search application with LucidWorks SiLK
 
Introducing LucidWorks App for Splunk Enterprise webinar
Introducing LucidWorks App for Splunk Enterprise webinarIntroducing LucidWorks App for Splunk Enterprise webinar
Introducing LucidWorks App for Splunk Enterprise webinar
 

Recently uploaded

Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Victor Rentea
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Victor Rentea
 

Recently uploaded (20)

TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
 
The Zero-ETL Approach: Enhancing Data Agility and Insight
The Zero-ETL Approach: Enhancing Data Agility and InsightThe Zero-ETL Approach: Enhancing Data Agility and Insight
The Zero-ETL Approach: Enhancing Data Agility and Insight
 
Design and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data ScienceDesign and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data Science
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
 
Navigating Identity and Access Management in the Modern Enterprise
Navigating Identity and Access Management in the Modern EnterpriseNavigating Identity and Access Management in the Modern Enterprise
Navigating Identity and Access Management in the Modern Enterprise
 
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptxCorporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
 
Quantum Leap in Next-Generation Computing
Quantum Leap in Next-Generation ComputingQuantum Leap in Next-Generation Computing
Quantum Leap in Next-Generation Computing
 
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxVector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
 
How to Check CNIC Information Online with Pakdata cf
How to Check CNIC Information Online with Pakdata cfHow to Check CNIC Information Online with Pakdata cf
How to Check CNIC Information Online with Pakdata cf
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Modernizing Legacy Systems Using Ballerina
Modernizing Legacy Systems Using BallerinaModernizing Legacy Systems Using Ballerina
Modernizing Legacy Systems Using Ballerina
 
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
 
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
 
JohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptxJohnPollard-hybrid-app-RailsConf2024.pptx
JohnPollard-hybrid-app-RailsConf2024.pptx
 
JavaScript Usage Statistics 2024 - The Ultimate Guide
JavaScript Usage Statistics 2024 - The Ultimate GuideJavaScript Usage Statistics 2024 - The Ultimate Guide
JavaScript Usage Statistics 2024 - The Ultimate Guide
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
 
Introduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDMIntroduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDM
 

Boosting Documents in Solr by Recency, Popularity, and User Preferences

  • 1. Boosting Documents in Solr by Recency, Popularity, and User Preferences Timothy Potter [email_address] , May 25, 2011
  • 2.
  • 3.
  • 4.
  • 5.
  • 6.
  • 7.
  • 8. Tune Solr recip function
  • 9.
  • 10.
  • 12.
  • 13. Popularity Boost: Nuts & Bolts Logs Solr Server User activity logged View Counting Job solr-home/data/ external_popularity a=1.114 b=1.05 c=1.111 … commit
  • 14.
  • 15.
  • 16.
  • 17.
  • 18. Preferences Filter in Action User Preferences Db Solr Server LRU Cache Preferences Component Update Preferences Query with pref.id=123 and pref.mod = TS pref.id & pref.mod If cached mod == pref.mod read from cache SQL to compute excluded categories sources and types
  • 19.
  • 20.

Editor's Notes

  1. Attendees with come away from this presentation with a good understanding and access to source code for boosting and/or filtering documents by recency, popularity, and personal preferences. My solution improves upon the common "recip" based solution for boosting by document age. The framework also supports boosting documents by a popularity score, which is calculated and managed outside the index. I will present a few different ways to calculate popularity in a scalable manner. Lastly, my solution supports the concept of a personal document collection, where each user is only interested in a subset of the total number of documents in the index. My presentation will provide a good example of how to filter and/or boost results based on user preferences, which is a very common requirement of many Web applications.
  2. The one thing I’d like you to come away with today is confidence that Solr has powerful boosting capabilities built-in, but they require some fine-tuning and experimentation. Some simple recipes for complementing core Solr functionality to do: I. Boost documents by age (recency / freshness boost) II. Boost documents by popularity III. Filter results based on User Preferences (Personalized collection)
  3. Currently working at the National Renewable Energy Laboratory on building an infrastructure for storing and analyzing large volumes of smart grid related energy data using Hadoop technologies. Been doing search work for the past 5 years including a Lucene based search solution of eLearning content, Solr based solution for online magazine content and a FAST to Solr migration for a real estate portal. My other area of interest is in Mahout; I've contributed a few bug fixes and several pages on the wiki including working with Grant Ingersoll on benchmarking Mahout's distributed clustering algorithms in the Amazon cloud. Technical Blog: http://thelabdude.blogspot.com/ Currently working on JSF2 components for Solr.
  4. All other things being equal, more recent documents are better What’s not covered is how to determine if you should apply the boost. That’s a more in-depth topic that is the focus of academic research, especially in relation to Web search. News and most magazine articles Business documents – perhaps a less aggressive boost function identification of recency sensitive queries before ranking. see: http://technicallypossible.wordpress.com/2011/03/13/identifying-queries-which-demand-recency-sensitive-results-in-web-search/
  5. Careful! TrieFields make it more efficient to do range searches on numeric fields indexed at full precision, but it doesn't actually do anything to round the fields for people who genuinely want their stored and index values to only have second/minute/hour/day precision regardless of what the initial raw data looks like. Currently, Solr doesn't have anything built-in to round a date down to a different precision, such as minute / hour. Thus, you may need to do this yourself prior to indexing a document. see SOLR-741 // from commons DateUtils Date published = DateUtils.round(item.getPublishedOnDate(), Calendar.HOUR);
  6. Solr 1.4+ the recommended approach is to use the recip function with the ms function: There are approximately 3.16e10 milliseconds in a year, so one can scale dates to fractions of a year with the inverse, or 3.16e-11 recip(ms(NOW/HOUR,pubdate),3.16e-11,1,1) For standard query parser, you could do: q={!boost b=recip(ms(NOW/HOUR,pubdate),3.16e-11,1,1)}wine This uses the built-in boost function query. This uses a Lucene FieldCache under the covers on the pubdate field (stored in the index as long). The ms(NOW/HOUR) uses less precise measure of document age (rounding clause), which helps reduce memory consumption. Lessons: 1 - {!boost b=} syntax breaks spell-checking so you need to use spellcheck.q to be explicit 2 - Use edismax because it multiplies the boost whereas dismax adds "bf" 3 - Use a tdate field when indexing 4 - Use ms(NOW/HOUR) and less precision when indexing 5 - Use max(boost,0.20) - to bottom out the age penalty
  7. A reciprocal function with recip(x,m,a,b) implementing a/(m*x+b). m,a,b are constants, x is any numeric field or arbitrarily complex function. When a and b are equal, and x>=0, this function has a maximum value of 1 that drops as x increases. Increasing the value of a and b together results in a movement of the entire function to a flatter part of the curve. These properties can make this an ideal function for boosting more recent documents – see http://wiki.apache.org/solr/FunctionQuery
  8. identification of recency sensitive queries before ranking. see: http://technicallypossible.wordpress.com/2011/03/13/identifying-queries-which-demand-recency-sensitive-results-in-web-search/
  9. Score made of number of unique views in a time slot + avg rating / # of comments, etc. Must be computed outside of the index; refreshed periodically Probably don’t want to mix this with age boost as an older document might be really popular for some weird reason; think of old videos that become popular on YouTube Age – probably not as an old doc might get popular identification of recency sensitive queries before ranking. see: http://technicallypossible.wordpress.com/2011/03/13/identifying-queries-which-demand-recency-sensitive-results-in-web-search/
  10. Bar chart illustrates time slots Popularity score favors more recent content Document A is most popular; B was popular but is now on the decline and C has enjoyed consistent interest for a longer period but scores a little lower than A because of the recent interest in A
  11. Most likely use case would be to use log-file analysis > Ideal problem for MapReduce Question the audience – who has heard of MapReduce?