Upgrade to Pro
— share decks privately, control downloads, hide ads and more …
Speaker Deck
Features
Speaker Deck
PRO
Sign in
Sign up for free
Search
Search
Scaling Up Hibernate/JPA Applications with Infi...
Search
Galder Zamarreño
April 20, 2013
Technology
0
210
Scaling Up Hibernate/JPA Applications with Infinispan Second-Level Cache
Galder Zamarreño
April 20, 2013
Tweet
Share
More Decks by Galder Zamarreño
See All by Galder Zamarreño
Principles and Patterns for Streaming Data Analysis
galderz
0
96
Streaming Data Analysis with Kubernetes
galderz
0
2.5k
The Rough Guide to Java RPC Frameworks
galderz
1
7k
Streaming Data Analysis with Kubernetes
galderz
1
410
Streaming Data Workshop @ Codemotion Madrid
galderz
0
1.4k
Streaming Data : ni pierdas el tren, ni esperes en balde
galderz
0
3k
Data grids : descubre qué esconden los datos
galderz
0
3.1k
Streaming Data Workhop @ Devoxx
galderz
0
360
Streaming Data Analysis with Kubernetes
galderz
0
2k
Other Decks in Technology
See All in Technology
RAID6 を楔形文字で組んで現代人を怖がらせましょう(実装編)
mimifuwa
1
320
KiroでGameDay開催してみよう(準備編)
yuuuuuuu168
1
150
Yahoo!広告ビジネス基盤におけるバックエンド開発
lycorptech_jp
PRO
1
290
Backboneとしてのtimm2025
yu4u
4
1.7k
TypeScript入門
recruitengineers
PRO
27
8.8k
Android Studio の 新しいAI機能を試してみよう / Try out the new AI features in Android Studio
yanzm
0
290
絶対に失敗できないキャンペーンページの高速かつ安全な開発、WINTICKET × microCMS の開発事例
microcms
0
170
VPC Latticeのサービスエンドポイント機能を使用した複数VPCアクセス
duelist2020jp
0
310
そのコンポーネント、サーバー?クライアント?App Router開発のモヤモヤを可視化する補助輪
makotot
4
730
AIエージェントの開発に必須な「コンテキスト・エンジニアリング」とは何か──プロンプト・エンジニアリングとの違いを手がかりに考える
masayamoriofficial
0
440
Preferred Networks (PFN) とLLM Post-Training チームの紹介 / 第4回 関東Kaggler会 スポンサーセッション
pfn
PRO
1
260
Figma + Storybook + PlaywrightのMCPを使ったフロントエンド開発
yug1224
10
3.2k
Featured
See All Featured
Imperfection Machines: The Place of Print at Facebook
scottboms
268
13k
Stop Working from a Prison Cell
hatefulcrawdad
271
21k
The World Runs on Bad Software
bkeepers
PRO
70
11k
Visualization
eitanlees
147
16k
Refactoring Trust on Your Teams (GOTO; Chicago 2020)
rmw
34
3.1k
Gamification - CAS2011
davidbonilla
81
5.4k
Building an army of robots
kneath
306
46k
Documentation Writing (for coders)
carmenintech
73
5k
Let's Do A Bunch of Simple Stuff to Make Websites Faster
chriscoyier
507
140k
ReactJS: Keep Simple. Everything can be a component!
pedronauck
667
120k
Design and Strategy: How to Deal with People Who Don’t "Get" Design
morganepeng
131
19k
CSS Pre-Processors: Stylus, Less & Sass
bermonpainter
358
30k
Transcript
None
Scaling Up Hibernate/JPA Applications with Infinispan Second-Level Cache ! Galder
Zamarreño Senior Software Engineer Red Hat, Inc ! 20th April 2013, São Paulo
Galder Zamarreño • R&D Engineer, Red Hat Inc. • Infinispan
developer • Creator of Infinispan second-level cache provider for Hibernate • Escalante founder and lead • Twitter: @galderz
Agenda • Bottlenecks in Hibernate/JPA applications • Applying caching techniques
sensibly • Distribute caches across multiple nodes • Caching in managed environments
Why do we care?
DB = bottleneck Most Hibernate/JPA applications involve intensive I/O workload
against database
Bottleneck problems Bottlenecks decrease throughput, increase latency... and make users
:(((
We care because we want to make users :))
How do we scale up Hibernate/JPA applications ?
Option 1: $$$ Buy/rent more powerful hardware to host the
DB... who can afford that?
Option 2: Caching Use second-level caching sensibly to reduce burden
on database
Second Level Cache JVM-level, or clustered, cache whose contents can
be shared between different transactions
Lesson 1: Don't apply caching blindly! Always measure first!
Caching cost! Local caches have a cost (memory, GC), clustered
caches add more cost (network, IO)
Demo 1: Measure performance
Lesson 2: Think what you are going to cache!
Think about reads Biggest performance gain comes from caching read-
mostly data
What kind of data? Entities, collections of entities, and query
results can be cached
Entity caching Mark entities cacheable, and define the cache concurrency
strategy
Query caching Speed up execution of repeated queries (w/ same
parameters) by caching their results
Query results validity Cached query results are valid as long
as none of the entity types involved are updated
Demo 2: Query cache in action
Lesson 3: How to select a caching provider
Cache Strategies • Read-only • data never updated • insert/delete
allowed • Read/write • data can be updated • with JBDC transactions or no transactions
Cache Strategies • Nonstrict read/write • data rarely updated •
with JBDC transactions or no transactions • Transactional • data can be updated • for JTA environments
Strategy Support Provider / Strategy read- only nonstrict r/w r/w
transactional Infinispan yes no no yes EhCache yes yes yes yes ConcurretHashMap (testing) yes yes yes no
Lesson 4: Scale up your Hibernate/JPA app going multi-node!
Caches form cluster Infinispan uses JGroups to form a peer-to-peer
cluster, providing discovery, failure detection...etc
Clustered Entities Recommended using invalidation to keep entities consistent accross
cluster (replication can be used too)
Queries / Timestamps Recommended keeping query cache local to each
node, but must replicate update timestamps cache
Demo 3: Clustered second-level cache in action!
Lesson 5: Scaling up JPA in managed environments
JPA Caching simplified Infinispan as default cache provider (with sensible
defaults), and ready to cluster!
shared-cache-mode Persistence unit configuration option that should be set to
ENABLE_SELECTIVE
Demo 4: JPA caching in JBoss AS 7
Summary Q - How do we scale up Hibernate/JPA applications?
Enable second level cache!!
Summary • Don't apply caching blindly! Always measure first! •
Think what you are going to cache! • How to select a caching provider • Scale up your app going multi-node! • Scaling up JPA in managed environments
Questions • http://infinispan.org • http://hibernate.org • http://github.com/galderz/secondlc • https://docs.jboss.org/author/display/ ISPN/Using+Infinispan+as+JPA-Hibernate
+Second+Level+Cache+Provider