SlideShare a Scribd company logo
1 of 35
Download to read offline
Real time fulltext search
with Sphinx
Adrian Nuta // Sphinxsearch // 2013
Quick intro
Sphinx search
• high performance fulltext search engine
• written in C++
• serving searches since 2001
• can work on any modern architecture
• distributed under GPL2 licence
Why a search engine?
• performance
o a search engine delivery faster a search and with
less resourses
• quality of search
o build-in FTS in databases don’t offer advanced
search options
• independent FTS engines offer speed not
only for FT searches, but other types, like
geo or faceted searches
Classic way of indexing in Sphinx
on-disk (classic) method:
• use a data source which is indexed
• to update the index you need to reindex again
• in addition to main index, a secondary index
(delta) index can be used to reindex only latest
changes
• easy because indexing doesn’t require changes
in the application, but:
• reindexing, even delta one, can put pressure
on data source and system
Real time indexing in Sphinx
• index has no data source
• everything that needs be indexed must be
added manually in the index
• you can add/update/remove at any time
• compared to classic method, RT requires
changes in the application
• performance is same or near same as
classic index
• Only specific requirement :
workers = threads
Structures
RealTime index definition
index rt {
type = rt
rt_field = title
rt_field = content
rt_attr_uint = user_id
rt_attr_string = title
rt_attr_json = metadata
}
Schema - Fields
rt_field - fulltext field, raw text is not stored
Tokenization features:
wildcarding ( prefix or infix),
morphology, custom charset definition,
stopwords, synonyms, segmentation, html
stripping, paragraph/sentence detection etc.
Schema - Attributes
• rt_attr_uint & rt_attr_bigint
• rt_attr_bool
• rt_attr_float
• rt_attr_multi & rt_attr_multi64 -
integer set
• rt_attr_timestamp
• rt_attr_string - actual text stored, kept in
memory, used only for display, sorting and
grouping.
• rt_attr_json - full support for JSON
documents
Content manipulation
Quick intro to SphinxQL
• our SQL dialect
• any mysql client can be used to connect to
Sphinx
• MySQL server is not required!
• Full document updates only possible with
SphinxQL
• to enable it, add in searchd section of config
listen = host:port:mysql41
Content insert
$mysql> INSERT INTO rt
(id,title,content,user_id,metadata)
VALUES(100,’My title’, ‘Some long content
to search’, 10,
’{“image_id”:1,”props”:[20,30,40]}’);
Full content replace
$mysql> REPLACE INTO rt
(id,title,content,user_id,metadata)
VALUES(100,’My title’, ‘Some long content
to search’, 10,
’{“image_id”:1,”props”:[20,30,40]}’);
• needed for text field, json and string attribute
updates
Updating numerics
• For numeric attributes including MVA:
$mysql> UPDATE rt SET user_id = 10 WHERE id
= 100;
• For numeric JSON elements it’s possible to
do inplace updates:
$mysql> UPDATE rt SET metadata.image_id =
1234 WHERE id=100;
Deleting
$mysql> DELETE FROM rt WHERE id = 100;
$mysql> DELETE FROM rt WHERE user_id > 100;
$mysql> TRUNCATE RTINDEX rt;
● empty the memory shard, delete all disk shards and
release the index binlogs
Adding new attributes
mysql> ALTER TABLE rt ADD COLUMN gid
INTEGER;
• only for int/bigint/float/bool attributes for
now
Searching
Searching
• no difference in searching a RT or classic
index
• dict = keywords required for wildcard search.
Relevancy ranking
• build-in rankers:
o proximity_bm25 ( default)
o none, matchany,wordcount,fieldmask,bm25
• custom ranker - create own expression rank
example
ranker = proximity_bm25
same as
ranker = expr(‘sum(lcs*user_weight)*1000+bm25’)
Tokenization settings example
index rt {
…
charset_type = utf-8
dict = keywords
min_word_len = 2
min_infix_len = 3
morphology = stem_en
enable_star = 1
…
}
Operators on fulltext fields
• Boolean: hello | world, hello ! world
• phrasing: “hello world”
• proximity: “hello world”~10
• quorum: “world is a beautiful place”/3
• exact form: =cats and =dogs
• strict order: cats << and << dogs
• zone limit: (h2,h4) cats and dogs
• SENTENCE: all SENTENCE words SENTENCE “ in
one sentence”
• PARAGRAPH: “this search” PARAGRAPH “is fast”
• selected fields only: @(title,body) hello world
• excluded fields: @!(title,body) hello world
Using API
<?php
require("sphinxapi.php");
$cl = new SphinxClient();
$res = $cl->Query('search me now','rt');
print_r($res);
Official: PHP, Python, Ruby, Java, C
Unofficial: JS(Node.js), perl, C++, Haskell,
.NET
Using SphinxQL
$mysql> SELECT * FROM rt WHERE
MATCH('”search me fuzzy”~10') AND featured
= 1 LIMIT 0,20;
$mysql> SELECT * FROM rt WHERE
MATCH('”search me fuzzy”~10 @tag
computers') AND featured = 1 GROUP BY
user_id ORDER BY title ASC LIMIT 30,60
OPTION field_weights=(title=10,content=1),
ranker=expr(‘sum((4*lcs+2*(min_hit_pos==1)
+exact_hit)*user_weight)*1000+bm25’);
Boolean filtering
$mysql> SELECT *,
views > 10 OR category = 4 AS cond
FROM rt WHERE
MATCH('”search me proximity”~10') AND
featured = 1 AND cond = 1
GROUP BY user_id ORDER BY title ASC
LIMIT 30,60 OPTION ranker=sph04;
Geo search
mysql> SELECT *, GEODIST(lat,long,0.71147,-
1.29153) as distance FROM rt WHERE distance <
1000 ORDER BY distance ASC;
mysql> SELECT *, GEODIST(lat,long,40.76439,-
73.99976,
{in=degrees,out=miles,method=adaptive}) as
distance FROM rt WHERE distance < 10 ORDER BY
distance ASC;
Multi-queries
mysql> DELIMITER 
mysql> SELECT *,COUNT(*) as counter FROM rt WHERE
MATCH('search me') GROUP by property_one ORDER by
counter DESC;SELECT *,COUNT(*) as counter FROM rt WHERE
MATCH('search me') GROUP by property_two ORDER by
counter DESC;SELECT *,COUNT(*) as counter FROM rt WHERE
MATCH('search me') GROUP by property_three ORDER by
counter DESC;

• used for faceting
Internals
Internal architecture
Each RT index is a sharded index consisting of:
• one memory shard for latest content
• one or more disk shards
Internal shards management
rt_mem_limit = maximum size of memory
shard
When full, is flushed to disk as a new disk
shard.
• OPTIMIZE INDEX rt - merge all disk shards
into one.
o Merging too intensive? throttle with rt_merge_iops
and rt_merge_maxiosize
Binlog support
Sphinx support binlogs, so memory shard will
not be lost in case of disasters
• binlog_flush
o like innodb_flush_log_at_trx_commit
o 0 - flush and sync every second - fastest, 1 sec lose
o 1 - flush and sync every transaction - most safe, but
slowest
o 2 - flush every transaction, sync every second - best
balance, default mode
• binlog_path
o binlog_path = # disable logging
Fast RT setup using classic index
• Create classic index to get initial data.
• Declare a RT index
• mysql> ATTACH INDEX classic TO RTINDEX rt
• transform classic index to RT
• operation is almost instant
o in essence is a file renaming: classic index
becomes a RT disk shard
Sphinx use 1 CPU core per
index
More power?
Distribute!
Distributed RT index
Update on each shard, search on everything
index distributed
{
type = distributed
local = rtlocal_one
local = rtlocal_two
agent = some.ip:rtremote_one
}
don’t forget about dist_threads = x
Copy RT index from one server to
another
• just simulate a daemon restart
• searchd --stopwait
• flushes memory shard to disk
• Copy all index files to new server.
• Add RT index on new server sphinx.conf
• Start searchd on new server
Questions?
www.sphinxsearch.com
Docs: http://sphinxsearch.com/docs/
Wiki: http://sphinxsearch.com/wiki/
Official blog: http://sphinxsearch.com/blog/
SVN repository: https://code.google.com/p/sphinxsearch/

More Related Content

What's hot

Div tag presentation
Div tag presentationDiv tag presentation
Div tag presentation
alyssa_lum11
 

What's hot (20)

Elasticsearch V/s Relational Database
Elasticsearch V/s Relational DatabaseElasticsearch V/s Relational Database
Elasticsearch V/s Relational Database
 
Drools 6 deep dive
Drools 6 deep diveDrools 6 deep dive
Drools 6 deep dive
 
Introduction to Apache solr
Introduction to Apache solrIntroduction to Apache solr
Introduction to Apache solr
 
Fast as C: How to Write Really Terrible Java
Fast as C: How to Write Really Terrible JavaFast as C: How to Write Really Terrible Java
Fast as C: How to Write Really Terrible Java
 
camunda BPM + Apache Camel
camunda BPM + Apache Camelcamunda BPM + Apache Camel
camunda BPM + Apache Camel
 
Flexbox
FlexboxFlexbox
Flexbox
 
SPIN in Five Slides
SPIN in Five SlidesSPIN in Five Slides
SPIN in Five Slides
 
The evolution of Apache Calcite and its Community
The evolution of Apache Calcite and its CommunityThe evolution of Apache Calcite and its Community
The evolution of Apache Calcite and its Community
 
Query Parsing - Tips and Tricks
Query Parsing - Tips and TricksQuery Parsing - Tips and Tricks
Query Parsing - Tips and Tricks
 
Important work-arounds for making ASS multi-lingual
Important work-arounds for making ASS multi-lingualImportant work-arounds for making ASS multi-lingual
Important work-arounds for making ASS multi-lingual
 
Introduction to Node js
Introduction to Node jsIntroduction to Node js
Introduction to Node js
 
Intro to css
Intro to cssIntro to css
Intro to css
 
SOA for PL/SQL Developer (OPP 2010)
SOA for PL/SQL Developer (OPP 2010)SOA for PL/SQL Developer (OPP 2010)
SOA for PL/SQL Developer (OPP 2010)
 
Jakarta EE 8 on JDK17
Jakarta EE 8 on JDK17Jakarta EE 8 on JDK17
Jakarta EE 8 on JDK17
 
Getting The Best Performance With PySpark
Getting The Best Performance With PySparkGetting The Best Performance With PySpark
Getting The Best Performance With PySpark
 
Apache Solr
Apache SolrApache Solr
Apache Solr
 
CSS Flexbox (flexible box layout)
CSS Flexbox (flexible box layout)CSS Flexbox (flexible box layout)
CSS Flexbox (flexible box layout)
 
Div tag presentation
Div tag presentationDiv tag presentation
Div tag presentation
 
Getting started with Apache Camel presentation at BarcelonaJUG, january 2014
Getting started with Apache Camel presentation at BarcelonaJUG, january 2014Getting started with Apache Camel presentation at BarcelonaJUG, january 2014
Getting started with Apache Camel presentation at BarcelonaJUG, january 2014
 
A Sneak Peek of MLIR in TensorFlow
A Sneak Peek of MLIR in TensorFlowA Sneak Peek of MLIR in TensorFlow
A Sneak Peek of MLIR in TensorFlow
 

Viewers also liked

Real-time индексы (Ярослав Ворожко)
Real-time индексы (Ярослав Ворожко)Real-time индексы (Ярослав Ворожко)
Real-time индексы (Ярослав Ворожко)
Ontico
 
Inverted files for text search engines
Inverted files for text search enginesInverted files for text search engines
Inverted files for text search engines
unyil96
 
An introduction to inverted index
An introduction to inverted indexAn introduction to inverted index
An introduction to inverted index
weedge
 
Sphinx 3.0 и RT-индексы на основном поиске Avito / Андрей Смирнов, Вячеслав К...
Sphinx 3.0 и RT-индексы на основном поиске Avito / Андрей Смирнов, Вячеслав К...Sphinx 3.0 и RT-индексы на основном поиске Avito / Андрей Смирнов, Вячеслав К...
Sphinx 3.0 и RT-индексы на основном поиске Avito / Андрей Смирнов, Вячеслав К...
Ontico
 

Viewers also liked (13)

Advanced fulltext search with Sphinx
Advanced fulltext search with SphinxAdvanced fulltext search with Sphinx
Advanced fulltext search with Sphinx
 
Sphinx - High performance full-text search for MySQL
Sphinx - High performance full-text search for MySQLSphinx - High performance full-text search for MySQL
Sphinx - High performance full-text search for MySQL
 
Using Sphinx for Search in PHP
Using Sphinx for Search in PHPUsing Sphinx for Search in PHP
Using Sphinx for Search in PHP
 
Real-time индексы (Ярослав Ворожко)
Real-time индексы (Ярослав Ворожко)Real-time индексы (Ярослав Ворожко)
Real-time индексы (Ярослав Ворожко)
 
Sphinx at Craigslist in 2012
Sphinx at Craigslist in 2012Sphinx at Craigslist in 2012
Sphinx at Craigslist in 2012
 
Inverted files for text search engines
Inverted files for text search enginesInverted files for text search engines
Inverted files for text search engines
 
Fulltext engine for non fulltext searches
Fulltext engine for non fulltext searchesFulltext engine for non fulltext searches
Fulltext engine for non fulltext searches
 
MYSQL Query Anti-Patterns That Can Be Moved to Sphinx
MYSQL Query Anti-Patterns That Can Be Moved to SphinxMYSQL Query Anti-Patterns That Can Be Moved to Sphinx
MYSQL Query Anti-Patterns That Can Be Moved to Sphinx
 
Text Indexing / Inverted Indices
Text Indexing / Inverted IndicesText Indexing / Inverted Indices
Text Indexing / Inverted Indices
 
An introduction to inverted index
An introduction to inverted indexAn introduction to inverted index
An introduction to inverted index
 
Living with SQL and NoSQL at craigslist, a Pragmatic Approach
Living with SQL and NoSQL at craigslist, a Pragmatic ApproachLiving with SQL and NoSQL at craigslist, a Pragmatic Approach
Living with SQL and NoSQL at craigslist, a Pragmatic Approach
 
Sphinx 3.0 и RT-индексы на основном поиске Avito / Андрей Смирнов, Вячеслав К...
Sphinx 3.0 и RT-индексы на основном поиске Avito / Андрей Смирнов, Вячеслав К...Sphinx 3.0 и RT-индексы на основном поиске Avito / Андрей Смирнов, Вячеслав К...
Sphinx 3.0 и RT-индексы на основном поиске Avito / Андрей Смирнов, Вячеслав К...
 
Realtime Search Infrastructure at Craigslist (OpenWest 2014)
Realtime Search Infrastructure at Craigslist (OpenWest 2014)Realtime Search Infrastructure at Craigslist (OpenWest 2014)
Realtime Search Infrastructure at Craigslist (OpenWest 2014)
 

Similar to Real time fulltext search with sphinx

How ElasticSearch lives in my DevOps life
How ElasticSearch lives in my DevOps lifeHow ElasticSearch lives in my DevOps life
How ElasticSearch lives in my DevOps life
琛琳 饶
 
Apache Solr crash course
Apache Solr crash courseApache Solr crash course
Apache Solr crash course
Tommaso Teofili
 
Real time indexes in Sphinx, Yaroslav Vorozhko
Real time indexes in Sphinx, Yaroslav VorozhkoReal time indexes in Sphinx, Yaroslav Vorozhko
Real time indexes in Sphinx, Yaroslav Vorozhko
Fuenteovejuna
 
Serving Deep Learning Models At Scale With RedisAI: Luca Antiga
Serving Deep Learning Models At Scale With RedisAI: Luca AntigaServing Deep Learning Models At Scale With RedisAI: Luca Antiga
Serving Deep Learning Models At Scale With RedisAI: Luca Antiga
Redis Labs
 
MariaDB with SphinxSE
MariaDB with SphinxSEMariaDB with SphinxSE
MariaDB with SphinxSE
Colin Charles
 
ZFConf 2011: Что такое Sphinx, зачем он вообще нужен и как его использовать с...
ZFConf 2011: Что такое Sphinx, зачем он вообще нужен и как его использовать с...ZFConf 2011: Что такое Sphinx, зачем он вообще нужен и как его использовать с...
ZFConf 2011: Что такое Sphinx, зачем он вообще нужен и как его использовать с...
ZFConf Conference
 

Similar to Real time fulltext search with sphinx (20)

Full Text Search In PostgreSQL
Full Text Search In PostgreSQLFull Text Search In PostgreSQL
Full Text Search In PostgreSQL
 
Devnexus 2018
Devnexus 2018Devnexus 2018
Devnexus 2018
 
ElasticSearch AJUG 2013
ElasticSearch AJUG 2013ElasticSearch AJUG 2013
ElasticSearch AJUG 2013
 
How ElasticSearch lives in my DevOps life
How ElasticSearch lives in my DevOps lifeHow ElasticSearch lives in my DevOps life
How ElasticSearch lives in my DevOps life
 
Dev nexus 2017
Dev nexus 2017Dev nexus 2017
Dev nexus 2017
 
Apache Solr crash course
Apache Solr crash courseApache Solr crash course
Apache Solr crash course
 
05 integrate redis
05 integrate redis05 integrate redis
05 integrate redis
 
Real time indexes in Sphinx, Yaroslav Vorozhko
Real time indexes in Sphinx, Yaroslav VorozhkoReal time indexes in Sphinx, Yaroslav Vorozhko
Real time indexes in Sphinx, Yaroslav Vorozhko
 
Serving Deep Learning Models At Scale With RedisAI: Luca Antiga
Serving Deep Learning Models At Scale With RedisAI: Luca AntigaServing Deep Learning Models At Scale With RedisAI: Luca Antiga
Serving Deep Learning Models At Scale With RedisAI: Luca Antiga
 
[Srijan Wednesday Webinar] Easy Performance Wins for Your Rails App
[Srijan Wednesday Webinar] Easy Performance Wins for Your Rails App[Srijan Wednesday Webinar] Easy Performance Wins for Your Rails App
[Srijan Wednesday Webinar] Easy Performance Wins for Your Rails App
 
Presto updates to 0.178
Presto updates to 0.178Presto updates to 0.178
Presto updates to 0.178
 
Plugin Opensql2008 Sphinx
Plugin Opensql2008 SphinxPlugin Opensql2008 Sphinx
Plugin Opensql2008 Sphinx
 
Speed up your Symfony2 application and build awesome features with Redis
Speed up your Symfony2 application and build awesome features with RedisSpeed up your Symfony2 application and build awesome features with Redis
Speed up your Symfony2 application and build awesome features with Redis
 
MariaDB with SphinxSE
MariaDB with SphinxSEMariaDB with SphinxSE
MariaDB with SphinxSE
 
Scaling ingest pipelines with high performance computing principles - Rajiv K...
Scaling ingest pipelines with high performance computing principles - Rajiv K...Scaling ingest pipelines with high performance computing principles - Rajiv K...
Scaling ingest pipelines with high performance computing principles - Rajiv K...
 
ZFConf 2011: Что такое Sphinx, зачем он вообще нужен и как его использовать с...
ZFConf 2011: Что такое Sphinx, зачем он вообще нужен и как его использовать с...ZFConf 2011: Что такое Sphinx, зачем он вообще нужен и как его использовать с...
ZFConf 2011: Что такое Sphinx, зачем он вообще нужен и как его использовать с...
 
Skillwise - Enhancing dotnet app
Skillwise - Enhancing dotnet appSkillwise - Enhancing dotnet app
Skillwise - Enhancing dotnet app
 
Redis Modules - Redis India Tour - 2017
Redis Modules - Redis India Tour - 2017Redis Modules - Redis India Tour - 2017
Redis Modules - Redis India Tour - 2017
 
What is the best full text search engine for Python?
What is the best full text search engine for Python?What is the best full text search engine for Python?
What is the best full text search engine for Python?
 
06 integrate elasticsearch
06 integrate elasticsearch06 integrate elasticsearch
06 integrate elasticsearch
 

Recently uploaded

Recently uploaded (20)

Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
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
 
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu SubbuApidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
Apidays Singapore 2024 - Modernizing Securities Finance by Madhu Subbu
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
Navi Mumbai Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Navi Mumbai Call Girls 🥰 8617370543 Service Offer VIP Hot ModelNavi Mumbai Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Navi Mumbai Call Girls 🥰 8617370543 Service Offer VIP Hot Model
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
 
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
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
A Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusA Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source Milvus
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 

Real time fulltext search with sphinx

  • 1. Real time fulltext search with Sphinx Adrian Nuta // Sphinxsearch // 2013
  • 2. Quick intro Sphinx search • high performance fulltext search engine • written in C++ • serving searches since 2001 • can work on any modern architecture • distributed under GPL2 licence
  • 3. Why a search engine? • performance o a search engine delivery faster a search and with less resourses • quality of search o build-in FTS in databases don’t offer advanced search options • independent FTS engines offer speed not only for FT searches, but other types, like geo or faceted searches
  • 4. Classic way of indexing in Sphinx on-disk (classic) method: • use a data source which is indexed • to update the index you need to reindex again • in addition to main index, a secondary index (delta) index can be used to reindex only latest changes • easy because indexing doesn’t require changes in the application, but: • reindexing, even delta one, can put pressure on data source and system
  • 5. Real time indexing in Sphinx • index has no data source • everything that needs be indexed must be added manually in the index • you can add/update/remove at any time • compared to classic method, RT requires changes in the application • performance is same or near same as classic index • Only specific requirement : workers = threads
  • 7. RealTime index definition index rt { type = rt rt_field = title rt_field = content rt_attr_uint = user_id rt_attr_string = title rt_attr_json = metadata }
  • 8. Schema - Fields rt_field - fulltext field, raw text is not stored Tokenization features: wildcarding ( prefix or infix), morphology, custom charset definition, stopwords, synonyms, segmentation, html stripping, paragraph/sentence detection etc.
  • 9. Schema - Attributes • rt_attr_uint & rt_attr_bigint • rt_attr_bool • rt_attr_float • rt_attr_multi & rt_attr_multi64 - integer set • rt_attr_timestamp • rt_attr_string - actual text stored, kept in memory, used only for display, sorting and grouping. • rt_attr_json - full support for JSON documents
  • 11. Quick intro to SphinxQL • our SQL dialect • any mysql client can be used to connect to Sphinx • MySQL server is not required! • Full document updates only possible with SphinxQL • to enable it, add in searchd section of config listen = host:port:mysql41
  • 12. Content insert $mysql> INSERT INTO rt (id,title,content,user_id,metadata) VALUES(100,’My title’, ‘Some long content to search’, 10, ’{“image_id”:1,”props”:[20,30,40]}’);
  • 13. Full content replace $mysql> REPLACE INTO rt (id,title,content,user_id,metadata) VALUES(100,’My title’, ‘Some long content to search’, 10, ’{“image_id”:1,”props”:[20,30,40]}’); • needed for text field, json and string attribute updates
  • 14. Updating numerics • For numeric attributes including MVA: $mysql> UPDATE rt SET user_id = 10 WHERE id = 100; • For numeric JSON elements it’s possible to do inplace updates: $mysql> UPDATE rt SET metadata.image_id = 1234 WHERE id=100;
  • 15. Deleting $mysql> DELETE FROM rt WHERE id = 100; $mysql> DELETE FROM rt WHERE user_id > 100; $mysql> TRUNCATE RTINDEX rt; ● empty the memory shard, delete all disk shards and release the index binlogs
  • 16. Adding new attributes mysql> ALTER TABLE rt ADD COLUMN gid INTEGER; • only for int/bigint/float/bool attributes for now
  • 18. Searching • no difference in searching a RT or classic index • dict = keywords required for wildcard search.
  • 19. Relevancy ranking • build-in rankers: o proximity_bm25 ( default) o none, matchany,wordcount,fieldmask,bm25 • custom ranker - create own expression rank example ranker = proximity_bm25 same as ranker = expr(‘sum(lcs*user_weight)*1000+bm25’)
  • 20. Tokenization settings example index rt { … charset_type = utf-8 dict = keywords min_word_len = 2 min_infix_len = 3 morphology = stem_en enable_star = 1 … }
  • 21. Operators on fulltext fields • Boolean: hello | world, hello ! world • phrasing: “hello world” • proximity: “hello world”~10 • quorum: “world is a beautiful place”/3 • exact form: =cats and =dogs • strict order: cats << and << dogs • zone limit: (h2,h4) cats and dogs • SENTENCE: all SENTENCE words SENTENCE “ in one sentence” • PARAGRAPH: “this search” PARAGRAPH “is fast” • selected fields only: @(title,body) hello world • excluded fields: @!(title,body) hello world
  • 22. Using API <?php require("sphinxapi.php"); $cl = new SphinxClient(); $res = $cl->Query('search me now','rt'); print_r($res); Official: PHP, Python, Ruby, Java, C Unofficial: JS(Node.js), perl, C++, Haskell, .NET
  • 23. Using SphinxQL $mysql> SELECT * FROM rt WHERE MATCH('”search me fuzzy”~10') AND featured = 1 LIMIT 0,20; $mysql> SELECT * FROM rt WHERE MATCH('”search me fuzzy”~10 @tag computers') AND featured = 1 GROUP BY user_id ORDER BY title ASC LIMIT 30,60 OPTION field_weights=(title=10,content=1), ranker=expr(‘sum((4*lcs+2*(min_hit_pos==1) +exact_hit)*user_weight)*1000+bm25’);
  • 24. Boolean filtering $mysql> SELECT *, views > 10 OR category = 4 AS cond FROM rt WHERE MATCH('”search me proximity”~10') AND featured = 1 AND cond = 1 GROUP BY user_id ORDER BY title ASC LIMIT 30,60 OPTION ranker=sph04;
  • 25. Geo search mysql> SELECT *, GEODIST(lat,long,0.71147,- 1.29153) as distance FROM rt WHERE distance < 1000 ORDER BY distance ASC; mysql> SELECT *, GEODIST(lat,long,40.76439,- 73.99976, {in=degrees,out=miles,method=adaptive}) as distance FROM rt WHERE distance < 10 ORDER BY distance ASC;
  • 26. Multi-queries mysql> DELIMITER mysql> SELECT *,COUNT(*) as counter FROM rt WHERE MATCH('search me') GROUP by property_one ORDER by counter DESC;SELECT *,COUNT(*) as counter FROM rt WHERE MATCH('search me') GROUP by property_two ORDER by counter DESC;SELECT *,COUNT(*) as counter FROM rt WHERE MATCH('search me') GROUP by property_three ORDER by counter DESC; • used for faceting
  • 28. Internal architecture Each RT index is a sharded index consisting of: • one memory shard for latest content • one or more disk shards
  • 29. Internal shards management rt_mem_limit = maximum size of memory shard When full, is flushed to disk as a new disk shard. • OPTIMIZE INDEX rt - merge all disk shards into one. o Merging too intensive? throttle with rt_merge_iops and rt_merge_maxiosize
  • 30. Binlog support Sphinx support binlogs, so memory shard will not be lost in case of disasters • binlog_flush o like innodb_flush_log_at_trx_commit o 0 - flush and sync every second - fastest, 1 sec lose o 1 - flush and sync every transaction - most safe, but slowest o 2 - flush every transaction, sync every second - best balance, default mode • binlog_path o binlog_path = # disable logging
  • 31. Fast RT setup using classic index • Create classic index to get initial data. • Declare a RT index • mysql> ATTACH INDEX classic TO RTINDEX rt • transform classic index to RT • operation is almost instant o in essence is a file renaming: classic index becomes a RT disk shard
  • 32. Sphinx use 1 CPU core per index More power? Distribute!
  • 33. Distributed RT index Update on each shard, search on everything index distributed { type = distributed local = rtlocal_one local = rtlocal_two agent = some.ip:rtremote_one } don’t forget about dist_threads = x
  • 34. Copy RT index from one server to another • just simulate a daemon restart • searchd --stopwait • flushes memory shard to disk • Copy all index files to new server. • Add RT index on new server sphinx.conf • Start searchd on new server
  • 35. Questions? www.sphinxsearch.com Docs: http://sphinxsearch.com/docs/ Wiki: http://sphinxsearch.com/wiki/ Official blog: http://sphinxsearch.com/blog/ SVN repository: https://code.google.com/p/sphinxsearch/