SlideShare ist ein Scribd-Unternehmen logo
1 von 47
Downloaden Sie, um offline zu lesen
Hibernate ORM:
Tips, Tricks, and
Performance Techniques
Brett Meyer
Senior Software Engineer
Hibernate ORM, Red Hat
Brett Meyer
• Hibernate ORM
– ORM 4 & 5 development
– Hibernate OSGi
– Developer community engagement
– Red Hat enterprise support, Hibernate engineering lead

• Other contributions
– Apache Camel
– Infinispan

• Contact me
– @brettemeyer or +brettmeyer
– Freenode #hibernate or #hibernate-dev (brmeyer)
github.com/brmeyer
/HibernateDemos

slideshare.net/brmeyer
ORM? JPA?
• ORM: Object/Relational Mapping
– Persistence: Data objects outlive the JVM app
– Maps Java POJOs to relational databases
– Supports OO concepts: inheritance, object identity, etc.
– Navigate data by walking the object graph, not the explicit
relational model

• JPA: Java Persistence API
• Hibernate ORM provides its own native API, in
addition to full JPA support
• Annotations and XML
Overview
•
•
•
•
•
•
•
•

Fetching Strategies
2nd Level Entity Cache
Query Cache
Cache Management
Bytecode Enhancement
Hibernate Search
Misc. Tips
Q&A
Caveats
• No “one strategy to rule them all”
• Varies greatly between apps
• Important to understand concepts, then
apply as necessary
• Does not replace database tuning!
First, the antithesis:
public User get(String username) {
final Session session = openSession();
session.getTransaction().begin();
final User user = (User) session.get( User.class, username );
session.getTransaction().commit();
return user;
}
public boolean login(String username) {
return get(username) != null;
}

Clean? Yes. But...
EAGER Demo
• Prototypes start “simple”
– EAGER
– No caching
– Overuse of the kitchen sink

• DAO looks clean
• Then you see the SQL logs
Fetching Strategies
Fetching Strategies
• By far, the most frequent mistake
• Also the most costly
• 2 concepts:
– WHEN (fetch timing)
– HOW (fetch style)
WHEN (fetch timing)
Fetch Timing: EAGER
•
•
•
•

Immediate
Can be convenient (in some ways)
Significantly increases payload
Enormous amount of unnecessary
fetches for deep association tree
Fetch Timing: LAZY
• Fetched when first accessed
• Collections
– LAZY by default
– Utilizes Hibernate's internal concept of “persistent
collections”
– DEMO

• Single attribute (basic)
– Requires bytecode enhancement
– Not typically used nor beneficial
Fetch Timing: LAZY (cont'd)
• Single (ToOne) associations
– Fetched when accessed
– Proxy
• Default
• Fetched when accessed (except ID)
• Handled internally by Hibernate

– No-proxy
• Fetched when accessed (including ID)
• No visible proxy
• Requires buildtime bytecode enhancement
Fetch Timing: EXTRA LAZY
•
•
•
•

Collections only
Fetch individual elements as accessed
Does not fetch entire collection
DEMO
HOW (fetch style)
Fetch Style: JOIN
• Join fetch (left/outer join)
• Great for ToOne associations
• Multiple collection joins
– Possible for non-bags
– Warning: Cartesian product! SELECT is
normally faster

• DEMO
Fetch Style: SELECT
• Follow-up selects
• Default style for collections (avoids
cartesian products)
• Can result in 1+N selects (fetch per
collection entry)
• DEMO
Fetch Style: BATCH
• Fetches multiple entries when one is
accessed
• Configurable on both class and collection
levels (“batch-size”)
• Simple select and list of keys
• Multiple algorithms (new as of 4.2)
• Determines # of entries to fetch, based on
# of provided keys
Fetch Style: BATCH (cont'd)
• Legacy: pre-determined sizes, rounded
down
– batch-size==25, 24 elements in collection
– Fetches -> 12, 10, 2

• Padded: same as Legacy, size rounded up
• Dynamic: builds SQL for the # of keys,
limited by “batch-size”
• DEMO
Fetch Style: SUBSELECT
• Follow-up select
• Fetches all collection entries when
accessed for the 1st time
• Original root entry select used as
subselect
• Performance depends on the DB itself
• DEMO
Fetch Style: PROFILE
• named profile defining fetch styles
• “activated” through the Session
@Entity
@FetchProfile(name = "customer-with-orders", fetchOverrides = {
@FetchProfile.FetchOverride(entity = Customer.class,
association = "orders", mode = FetchMode.JOIN)
})
public class Customer {
...
@OneToMany
private Set<Order> orders;
...
}
Session session = ...;
session.enableFetchProfile( "customer-with-orders" );
Customer customer = (Customer) session.get(
Customer.class, customerId );
Fetch Style Tips
• Best to leave defaults in mappings
• Define the style at the query level
• Granular control
nd

2 Level Entity
Cache (2LC)
2LC
• differs from the 1st level (Session)
• SessionFactory level (JVM)
• can scale horizontally on commodity
hardware (clustered)
• multiple providers
• currently focus on Infinispan (JBoss) &
EHCache (Terracotta)
2LC (cont'd)
• disabled by default
– can enable globally (not recommended)
– enable for individual entities and
collections
– configurable at the Session level w/
CacheMode

• cache all properties (default) or only
non-lazy
2LC (cont'd)
• Since JVM-level, concurrency is an issue
• Concurrency strategies
– Read only: simplest and optimal
– Read-write
• Supports updates
• Should not use for serializable transaction isolation

– Nonstrict-read-write
• If updates are occasional and unlikely to collide
• No strict transaction isolation

– Transactional:
• Fully transactional cache providers (ie, Infinispan and EHCache)
• JTA required
2LC (cont'd)
• DEMO
Query Cache
Query Cache
• Caches query result sets
• Repetitive queries with identical params
• Different from an entity cache
– Does not maintain entity state
– Holds on to sets of identifiers

• If used, best in conjunction with 2LC
Query Cache (cont'd)
• Disabled by default
• Many applications do not gain anything
• Queries invalidated upon relevant
updates
• Increases overhead by some: tracks
when to invalidate based on commits
• DEMO
Cache Management
Cache Management
• Entities stored in Session cache when saved,
updated, or retrieved
• Session#flush syncs all cached with DB
– Minimize usage

• Manage memory:
– Session#evict(entity) when no longer needed
– Session#clear for all
– Important for large dataset handling

• Same for 2LC, but methods on
SessionFactory#getCache
Bytecode
Enhancement
Bytecode Enhancement
• Not just for no-proxy, ToOne laziness
• Reduced load on PersistenceContext
– EntityEntry
• Internally provides state & Session association
• “Heavy” operation and typically a hotspot (multiple Maps)

– ManagedEntity
• Reduced memory and CPU loads
• Entities maintain their own state with bytecode enhancement
• (ManagedEntity)entity.$$_hibernate_getEntityEntry();

– 3 ways:
• Entity implements ManagedEntity and maintains the association
• Buildtime instrumentation (Ant and recently Gradle/Maven)
• Runtime instrumentation
Bytecode (cont'd)
• dirtiness checking
– Legacy: “dirtiness” determined by deep comparison of
entity state
– Enhancement: entity tracks its own dirtiness
– Simply check the flag (no deep comparison)
– Already mentioned…
• Minimize amount of flushes to begin with
• Minimize the # of entities in the cache -- evict when possible

• Many additional bytecode improvements planned
Hibernate Search
Hibernate Search
• Full-text search on the DB
– Bad performance
– CPU/IO overhead

• Offload full-text queries to Hibernate
Search engine
– Fully indexed
– Horizontally scalable

• Based on Apache Lucene
Hibernate Search (cont'd)
• Annotate entities with @Indexed
• Annotate properties with @Field
– Index the text: index=Index.YES
– “Analyze” the text: analyze=Analyze.YES
•
•
•
•

Lucene analyzer
Chunks sentences into words
Lowercase all of them
Exclude common words (“a”, “the”)

• Combo of indexing and analysis == performant
full-text searches!
Misc. Tips
Misc. Tips
• Easy to overlook unintended fetches
– Ex: Fully implemented toString with all
associations (fetches everything simply for
logging)

• Use @Immutable when possible
– Excludes entity from dirtiness checks
– Other internal optimizations
Misc. Tips (cont'd)
• Use Bag or List for inverse collections, not Set
– Collection#add & #addAll always return true (don't
need to check for pre-existing values)
– I.e., can add a value without fetching the collection
Parent p = (Parent) session.load(Parent.class, id);
Child c = new Child();
c.setParent(p);
p.addChild(c);
...
// does *not* fetch the collection
p.getChildren().add(c);
Misc. Tips (cont'd)
• One-shot delete (non-inverse collections)
– Scenario: 20 elements, need to delete 18 & add 3
– Default: Hibernate would delete the 18 one-byone, then add the 3
– Instead:
• Discard the entire collection (deletes all elements)
• Save a new collection with 5 elements
• 1 bulk delete SQL and 5 inserts

– Important concept for large amounts of data
How to Help:
hibernate.org
/orm/contribute
QUESTIONS?
•
•
•
•

Q&A
#hibernate or #hibernate-dev (brmeyer)
@brettemeyer
+brettmeyer

Weitere ähnliche Inhalte

Was ist angesagt?

Practical Kerberos with Apache HBase
Practical Kerberos with Apache HBasePractical Kerberos with Apache HBase
Practical Kerberos with Apache HBaseJosh Elser
 
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)Yongho Ha
 
elasticsearch_적용 및 활용_정리
elasticsearch_적용 및 활용_정리elasticsearch_적용 및 활용_정리
elasticsearch_적용 및 활용_정리Junyi Song
 
Apache Storm 0.9 basic training - Verisign
Apache Storm 0.9 basic training - VerisignApache Storm 0.9 basic training - Verisign
Apache Storm 0.9 basic training - VerisignMichael Noll
 
How to build massive service for advance
How to build massive service for advanceHow to build massive service for advance
How to build massive service for advanceDaeMyung Kang
 
대용량 분산 아키텍쳐 설계 #3 대용량 분산 시스템 아키텍쳐
대용량 분산 아키텍쳐 설계 #3 대용량 분산 시스템 아키텍쳐대용량 분산 아키텍쳐 설계 #3 대용량 분산 시스템 아키텍쳐
대용량 분산 아키텍쳐 설계 #3 대용량 분산 시스템 아키텍쳐Terry Cho
 
jpa-hibernate-presentation
jpa-hibernate-presentationjpa-hibernate-presentation
jpa-hibernate-presentationJohn Slick
 
Introduction to hazelcast
Introduction to hazelcastIntroduction to hazelcast
Introduction to hazelcastEmin Demirci
 
Real time analytics at uber @ strata data 2019
Real time analytics at uber @ strata data 2019Real time analytics at uber @ strata data 2019
Real time analytics at uber @ strata data 2019Zhenxiao Luo
 
RESTful API 설계
RESTful API 설계RESTful API 설계
RESTful API 설계Jinho Yoo
 
Monitoring the NATS messaging system at scale with Elastic Beats
Monitoring the NATS messaging system at scale with Elastic BeatsMonitoring the NATS messaging system at scale with Elastic Beats
Monitoring the NATS messaging system at scale with Elastic BeatsStamatis Katsaounis
 
4. 대용량 아키텍쳐 설계 패턴
4. 대용량 아키텍쳐 설계 패턴4. 대용량 아키텍쳐 설계 패턴
4. 대용량 아키텍쳐 설계 패턴Terry Cho
 
Introduction to python requests
Introduction to python requestsIntroduction to python requests
Introduction to python requestsAbhijeet Kasurde
 
서버 성능에 대한 정의와 이해
서버 성능에 대한 정의와 이해서버 성능에 대한 정의와 이해
서버 성능에 대한 정의와 이해중선 곽
 
Optimizing Hive Queries
Optimizing Hive QueriesOptimizing Hive Queries
Optimizing Hive QueriesOwen O'Malley
 
Hibernate
HibernateHibernate
HibernateAjay K
 

Was ist angesagt? (20)

Practical Kerberos with Apache HBase
Practical Kerberos with Apache HBasePractical Kerberos with Apache HBase
Practical Kerberos with Apache HBase
 
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
Spark 의 핵심은 무엇인가? RDD! (RDD paper review)
 
elasticsearch_적용 및 활용_정리
elasticsearch_적용 및 활용_정리elasticsearch_적용 및 활용_정리
elasticsearch_적용 및 활용_정리
 
Apache Spark Architecture
Apache Spark ArchitectureApache Spark Architecture
Apache Spark Architecture
 
Apache Storm 0.9 basic training - Verisign
Apache Storm 0.9 basic training - VerisignApache Storm 0.9 basic training - Verisign
Apache Storm 0.9 basic training - Verisign
 
How to build massive service for advance
How to build massive service for advanceHow to build massive service for advance
How to build massive service for advance
 
Internals of Presto Service
Internals of Presto ServiceInternals of Presto Service
Internals of Presto Service
 
대용량 분산 아키텍쳐 설계 #3 대용량 분산 시스템 아키텍쳐
대용량 분산 아키텍쳐 설계 #3 대용량 분산 시스템 아키텍쳐대용량 분산 아키텍쳐 설계 #3 대용량 분산 시스템 아키텍쳐
대용량 분산 아키텍쳐 설계 #3 대용량 분산 시스템 아키텍쳐
 
jpa-hibernate-presentation
jpa-hibernate-presentationjpa-hibernate-presentation
jpa-hibernate-presentation
 
JPA Best Practices
JPA Best PracticesJPA Best Practices
JPA Best Practices
 
Introduction to hazelcast
Introduction to hazelcastIntroduction to hazelcast
Introduction to hazelcast
 
Real time analytics at uber @ strata data 2019
Real time analytics at uber @ strata data 2019Real time analytics at uber @ strata data 2019
Real time analytics at uber @ strata data 2019
 
RESTful API 설계
RESTful API 설계RESTful API 설계
RESTful API 설계
 
Monitoring the NATS messaging system at scale with Elastic Beats
Monitoring the NATS messaging system at scale with Elastic BeatsMonitoring the NATS messaging system at scale with Elastic Beats
Monitoring the NATS messaging system at scale with Elastic Beats
 
4. 대용량 아키텍쳐 설계 패턴
4. 대용량 아키텍쳐 설계 패턴4. 대용량 아키텍쳐 설계 패턴
4. 대용량 아키텍쳐 설계 패턴
 
Introduction to python requests
Introduction to python requestsIntroduction to python requests
Introduction to python requests
 
서버 성능에 대한 정의와 이해
서버 성능에 대한 정의와 이해서버 성능에 대한 정의와 이해
서버 성능에 대한 정의와 이해
 
Optimizing Hive Queries
Optimizing Hive QueriesOptimizing Hive Queries
Optimizing Hive Queries
 
Hibernate
HibernateHibernate
Hibernate
 
Webscripts
WebscriptsWebscripts
Webscripts
 

Ähnlich wie Hibernate ORM: Tips, Tricks, and Performance Techniques

hibernateormfeatures-140223193044-phpapp02.pdf
hibernateormfeatures-140223193044-phpapp02.pdfhibernateormfeatures-140223193044-phpapp02.pdf
hibernateormfeatures-140223193044-phpapp02.pdfPatiento Del Mar
 
How to Write the Fastest JSON Parser/Writer in the World
How to Write the Fastest JSON Parser/Writer in the WorldHow to Write the Fastest JSON Parser/Writer in the World
How to Write the Fastest JSON Parser/Writer in the WorldMilo Yip
 
Yapc10 Cdt World Domination
Yapc10   Cdt World DominationYapc10   Cdt World Domination
Yapc10 Cdt World DominationcPanel
 
Exploring Java Heap Dumps (Oracle Code One 2018)
Exploring Java Heap Dumps (Oracle Code One 2018)Exploring Java Heap Dumps (Oracle Code One 2018)
Exploring Java Heap Dumps (Oracle Code One 2018)Ryan Cuprak
 
Performance and Abstractions
Performance and AbstractionsPerformance and Abstractions
Performance and AbstractionsMetosin Oy
 
Black Hat: XML Out-Of-Band Data Retrieval
Black Hat: XML Out-Of-Band Data RetrievalBlack Hat: XML Out-Of-Band Data Retrieval
Black Hat: XML Out-Of-Band Data Retrievalqqlan
 
Alfresco Business Reporting - Tech Talk Live 20130501
Alfresco Business Reporting - Tech Talk Live 20130501Alfresco Business Reporting - Tech Talk Live 20130501
Alfresco Business Reporting - Tech Talk Live 20130501Tjarda Peelen
 
ITB2017 - Slaying the ORM dragons with cborm
ITB2017 - Slaying the ORM dragons with cbormITB2017 - Slaying the ORM dragons with cborm
ITB2017 - Slaying the ORM dragons with cbormOrtus Solutions, Corp
 
Tuenti Release Workflow
Tuenti Release WorkflowTuenti Release Workflow
Tuenti Release WorkflowTuenti
 
Orthogonality: A Strategy for Reusable Code
Orthogonality: A Strategy for Reusable CodeOrthogonality: A Strategy for Reusable Code
Orthogonality: A Strategy for Reusable Codersebbe
 
What-is-Laravel-23-August-2017.pptx
What-is-Laravel-23-August-2017.pptxWhat-is-Laravel-23-August-2017.pptx
What-is-Laravel-23-August-2017.pptxAbhijeetKumar456867
 
[Russia] Bugs -> max, time &lt;= T
[Russia] Bugs -> max, time &lt;= T[Russia] Bugs -> max, time &lt;= T
[Russia] Bugs -> max, time &lt;= TOWASP EEE
 
Introduction of vertical crawler
Introduction of vertical crawlerIntroduction of vertical crawler
Introduction of vertical crawlerJinglun Li
 
Find maximum bugs in limited time
Find maximum bugs in limited timeFind maximum bugs in limited time
Find maximum bugs in limited timebeched
 
Ruby and Distributed Storage Systems
Ruby and Distributed Storage SystemsRuby and Distributed Storage Systems
Ruby and Distributed Storage SystemsSATOSHI TAGOMORI
 
Killing Shark-Riding Dinosaurs with ORM
Killing Shark-Riding Dinosaurs with ORMKilling Shark-Riding Dinosaurs with ORM
Killing Shark-Riding Dinosaurs with ORMOrtus Solutions, Corp
 
Apache Solr - Enterprise search platform
Apache Solr - Enterprise search platformApache Solr - Enterprise search platform
Apache Solr - Enterprise search platformTommaso Teofili
 
Scaling with swagger
Scaling with swaggerScaling with swagger
Scaling with swaggerTony Tam
 
Introduction to memcached
Introduction to memcachedIntroduction to memcached
Introduction to memcachedJurriaan Persyn
 

Ähnlich wie Hibernate ORM: Tips, Tricks, and Performance Techniques (20)

hibernateormfeatures-140223193044-phpapp02.pdf
hibernateormfeatures-140223193044-phpapp02.pdfhibernateormfeatures-140223193044-phpapp02.pdf
hibernateormfeatures-140223193044-phpapp02.pdf
 
How to Write the Fastest JSON Parser/Writer in the World
How to Write the Fastest JSON Parser/Writer in the WorldHow to Write the Fastest JSON Parser/Writer in the World
How to Write the Fastest JSON Parser/Writer in the World
 
Yapc10 Cdt World Domination
Yapc10   Cdt World DominationYapc10   Cdt World Domination
Yapc10 Cdt World Domination
 
Exploring Java Heap Dumps (Oracle Code One 2018)
Exploring Java Heap Dumps (Oracle Code One 2018)Exploring Java Heap Dumps (Oracle Code One 2018)
Exploring Java Heap Dumps (Oracle Code One 2018)
 
Performance and Abstractions
Performance and AbstractionsPerformance and Abstractions
Performance and Abstractions
 
Black Hat: XML Out-Of-Band Data Retrieval
Black Hat: XML Out-Of-Band Data RetrievalBlack Hat: XML Out-Of-Band Data Retrieval
Black Hat: XML Out-Of-Band Data Retrieval
 
Alfresco Business Reporting - Tech Talk Live 20130501
Alfresco Business Reporting - Tech Talk Live 20130501Alfresco Business Reporting - Tech Talk Live 20130501
Alfresco Business Reporting - Tech Talk Live 20130501
 
ITB2017 - Slaying the ORM dragons with cborm
ITB2017 - Slaying the ORM dragons with cbormITB2017 - Slaying the ORM dragons with cborm
ITB2017 - Slaying the ORM dragons with cborm
 
Tuenti Release Workflow
Tuenti Release WorkflowTuenti Release Workflow
Tuenti Release Workflow
 
Orthogonality: A Strategy for Reusable Code
Orthogonality: A Strategy for Reusable CodeOrthogonality: A Strategy for Reusable Code
Orthogonality: A Strategy for Reusable Code
 
Introduction_to_Python.pptx
Introduction_to_Python.pptxIntroduction_to_Python.pptx
Introduction_to_Python.pptx
 
What-is-Laravel-23-August-2017.pptx
What-is-Laravel-23-August-2017.pptxWhat-is-Laravel-23-August-2017.pptx
What-is-Laravel-23-August-2017.pptx
 
[Russia] Bugs -> max, time &lt;= T
[Russia] Bugs -> max, time &lt;= T[Russia] Bugs -> max, time &lt;= T
[Russia] Bugs -> max, time &lt;= T
 
Introduction of vertical crawler
Introduction of vertical crawlerIntroduction of vertical crawler
Introduction of vertical crawler
 
Find maximum bugs in limited time
Find maximum bugs in limited timeFind maximum bugs in limited time
Find maximum bugs in limited time
 
Ruby and Distributed Storage Systems
Ruby and Distributed Storage SystemsRuby and Distributed Storage Systems
Ruby and Distributed Storage Systems
 
Killing Shark-Riding Dinosaurs with ORM
Killing Shark-Riding Dinosaurs with ORMKilling Shark-Riding Dinosaurs with ORM
Killing Shark-Riding Dinosaurs with ORM
 
Apache Solr - Enterprise search platform
Apache Solr - Enterprise search platformApache Solr - Enterprise search platform
Apache Solr - Enterprise search platform
 
Scaling with swagger
Scaling with swaggerScaling with swagger
Scaling with swagger
 
Introduction to memcached
Introduction to memcachedIntroduction to memcached
Introduction to memcached
 

Kürzlich hochgeladen

Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Commit University
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024BookNet Canada
 
Story boards and shot lists for my a level piece
Story boards and shot lists for my a level pieceStory boards and shot lists for my a level piece
Story boards and shot lists for my a level piececharlottematthew16
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr BaganFwdays
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...shyamraj55
 
APIForce Zurich 5 April Automation LPDG
APIForce Zurich 5 April  Automation LPDGAPIForce Zurich 5 April  Automation LPDG
APIForce Zurich 5 April Automation LPDGMarianaLemus7
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
Vertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsVertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsMiki Katsuragi
 
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Wonjun Hwang
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsMark Billinghurst
 
SAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxSAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxNavinnSomaal
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfAlex Barbosa Coqueiro
 
Artificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxArtificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxhariprasad279825
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationSafe Software
 
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 3652toLead Limited
 

Kürzlich hochgeladen (20)

Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
 
Story boards and shot lists for my a level piece
Story boards and shot lists for my a level pieceStory boards and shot lists for my a level piece
Story boards and shot lists for my a level piece
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food Manufacturing
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
 
APIForce Zurich 5 April Automation LPDG
APIForce Zurich 5 April  Automation LPDGAPIForce Zurich 5 April  Automation LPDG
APIForce Zurich 5 April Automation LPDG
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
Vertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering TipsVertex AI Gemini Prompt Engineering Tips
Vertex AI Gemini Prompt Engineering Tips
 
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR Systems
 
SAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxSAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptx
 
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptxE-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdf
 
Artificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptxArtificial intelligence in cctv survelliance.pptx
Artificial intelligence in cctv survelliance.pptx
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
 

Hibernate ORM: Tips, Tricks, and Performance Techniques

  • 1.
  • 2. Hibernate ORM: Tips, Tricks, and Performance Techniques Brett Meyer Senior Software Engineer Hibernate ORM, Red Hat
  • 3. Brett Meyer • Hibernate ORM – ORM 4 & 5 development – Hibernate OSGi – Developer community engagement – Red Hat enterprise support, Hibernate engineering lead • Other contributions – Apache Camel – Infinispan • Contact me – @brettemeyer or +brettmeyer – Freenode #hibernate or #hibernate-dev (brmeyer)
  • 5. ORM? JPA? • ORM: Object/Relational Mapping – Persistence: Data objects outlive the JVM app – Maps Java POJOs to relational databases – Supports OO concepts: inheritance, object identity, etc. – Navigate data by walking the object graph, not the explicit relational model • JPA: Java Persistence API • Hibernate ORM provides its own native API, in addition to full JPA support • Annotations and XML
  • 6. Overview • • • • • • • • Fetching Strategies 2nd Level Entity Cache Query Cache Cache Management Bytecode Enhancement Hibernate Search Misc. Tips Q&A
  • 7. Caveats • No “one strategy to rule them all” • Varies greatly between apps • Important to understand concepts, then apply as necessary • Does not replace database tuning!
  • 8. First, the antithesis: public User get(String username) { final Session session = openSession(); session.getTransaction().begin(); final User user = (User) session.get( User.class, username ); session.getTransaction().commit(); return user; } public boolean login(String username) { return get(username) != null; } Clean? Yes. But...
  • 9. EAGER Demo • Prototypes start “simple” – EAGER – No caching – Overuse of the kitchen sink • DAO looks clean • Then you see the SQL logs
  • 11. Fetching Strategies • By far, the most frequent mistake • Also the most costly • 2 concepts: – WHEN (fetch timing) – HOW (fetch style)
  • 13. Fetch Timing: EAGER • • • • Immediate Can be convenient (in some ways) Significantly increases payload Enormous amount of unnecessary fetches for deep association tree
  • 14. Fetch Timing: LAZY • Fetched when first accessed • Collections – LAZY by default – Utilizes Hibernate's internal concept of “persistent collections” – DEMO • Single attribute (basic) – Requires bytecode enhancement – Not typically used nor beneficial
  • 15. Fetch Timing: LAZY (cont'd) • Single (ToOne) associations – Fetched when accessed – Proxy • Default • Fetched when accessed (except ID) • Handled internally by Hibernate – No-proxy • Fetched when accessed (including ID) • No visible proxy • Requires buildtime bytecode enhancement
  • 16. Fetch Timing: EXTRA LAZY • • • • Collections only Fetch individual elements as accessed Does not fetch entire collection DEMO
  • 18. Fetch Style: JOIN • Join fetch (left/outer join) • Great for ToOne associations • Multiple collection joins – Possible for non-bags – Warning: Cartesian product! SELECT is normally faster • DEMO
  • 19. Fetch Style: SELECT • Follow-up selects • Default style for collections (avoids cartesian products) • Can result in 1+N selects (fetch per collection entry) • DEMO
  • 20. Fetch Style: BATCH • Fetches multiple entries when one is accessed • Configurable on both class and collection levels (“batch-size”) • Simple select and list of keys • Multiple algorithms (new as of 4.2) • Determines # of entries to fetch, based on # of provided keys
  • 21. Fetch Style: BATCH (cont'd) • Legacy: pre-determined sizes, rounded down – batch-size==25, 24 elements in collection – Fetches -> 12, 10, 2 • Padded: same as Legacy, size rounded up • Dynamic: builds SQL for the # of keys, limited by “batch-size” • DEMO
  • 22. Fetch Style: SUBSELECT • Follow-up select • Fetches all collection entries when accessed for the 1st time • Original root entry select used as subselect • Performance depends on the DB itself • DEMO
  • 23. Fetch Style: PROFILE • named profile defining fetch styles • “activated” through the Session
  • 24. @Entity @FetchProfile(name = "customer-with-orders", fetchOverrides = { @FetchProfile.FetchOverride(entity = Customer.class, association = "orders", mode = FetchMode.JOIN) }) public class Customer { ... @OneToMany private Set<Order> orders; ... } Session session = ...; session.enableFetchProfile( "customer-with-orders" ); Customer customer = (Customer) session.get( Customer.class, customerId );
  • 25. Fetch Style Tips • Best to leave defaults in mappings • Define the style at the query level • Granular control
  • 27. 2LC • differs from the 1st level (Session) • SessionFactory level (JVM) • can scale horizontally on commodity hardware (clustered) • multiple providers • currently focus on Infinispan (JBoss) & EHCache (Terracotta)
  • 28. 2LC (cont'd) • disabled by default – can enable globally (not recommended) – enable for individual entities and collections – configurable at the Session level w/ CacheMode • cache all properties (default) or only non-lazy
  • 29. 2LC (cont'd) • Since JVM-level, concurrency is an issue • Concurrency strategies – Read only: simplest and optimal – Read-write • Supports updates • Should not use for serializable transaction isolation – Nonstrict-read-write • If updates are occasional and unlikely to collide • No strict transaction isolation – Transactional: • Fully transactional cache providers (ie, Infinispan and EHCache) • JTA required
  • 32. Query Cache • Caches query result sets • Repetitive queries with identical params • Different from an entity cache – Does not maintain entity state – Holds on to sets of identifiers • If used, best in conjunction with 2LC
  • 33. Query Cache (cont'd) • Disabled by default • Many applications do not gain anything • Queries invalidated upon relevant updates • Increases overhead by some: tracks when to invalidate based on commits • DEMO
  • 35. Cache Management • Entities stored in Session cache when saved, updated, or retrieved • Session#flush syncs all cached with DB – Minimize usage • Manage memory: – Session#evict(entity) when no longer needed – Session#clear for all – Important for large dataset handling • Same for 2LC, but methods on SessionFactory#getCache
  • 37. Bytecode Enhancement • Not just for no-proxy, ToOne laziness • Reduced load on PersistenceContext – EntityEntry • Internally provides state & Session association • “Heavy” operation and typically a hotspot (multiple Maps) – ManagedEntity • Reduced memory and CPU loads • Entities maintain their own state with bytecode enhancement • (ManagedEntity)entity.$$_hibernate_getEntityEntry(); – 3 ways: • Entity implements ManagedEntity and maintains the association • Buildtime instrumentation (Ant and recently Gradle/Maven) • Runtime instrumentation
  • 38. Bytecode (cont'd) • dirtiness checking – Legacy: “dirtiness” determined by deep comparison of entity state – Enhancement: entity tracks its own dirtiness – Simply check the flag (no deep comparison) – Already mentioned… • Minimize amount of flushes to begin with • Minimize the # of entities in the cache -- evict when possible • Many additional bytecode improvements planned
  • 40. Hibernate Search • Full-text search on the DB – Bad performance – CPU/IO overhead • Offload full-text queries to Hibernate Search engine – Fully indexed – Horizontally scalable • Based on Apache Lucene
  • 41. Hibernate Search (cont'd) • Annotate entities with @Indexed • Annotate properties with @Field – Index the text: index=Index.YES – “Analyze” the text: analyze=Analyze.YES • • • • Lucene analyzer Chunks sentences into words Lowercase all of them Exclude common words (“a”, “the”) • Combo of indexing and analysis == performant full-text searches!
  • 43. Misc. Tips • Easy to overlook unintended fetches – Ex: Fully implemented toString with all associations (fetches everything simply for logging) • Use @Immutable when possible – Excludes entity from dirtiness checks – Other internal optimizations
  • 44. Misc. Tips (cont'd) • Use Bag or List for inverse collections, not Set – Collection#add & #addAll always return true (don't need to check for pre-existing values) – I.e., can add a value without fetching the collection Parent p = (Parent) session.load(Parent.class, id); Child c = new Child(); c.setParent(p); p.addChild(c); ... // does *not* fetch the collection p.getChildren().add(c);
  • 45. Misc. Tips (cont'd) • One-shot delete (non-inverse collections) – Scenario: 20 elements, need to delete 18 & add 3 – Default: Hibernate would delete the 18 one-byone, then add the 3 – Instead: • Discard the entire collection (deletes all elements) • Save a new collection with 5 elements • 1 bulk delete SQL and 5 inserts – Important concept for large amounts of data