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Pimp My Data GridBrian OliverSenior Principal Solutions Architect ([email protected])
Oracle Coherence | Oracle Fusion Middleware
Agenda
• An Architectural Challenge• Enter the Data Grid• Architectural Patterns that Limit Application Scalability• Pimping Data Grid
• Service Grids• Trading Exchange• Trading Exchange• Agile Groovy Grid• Unstoppable Spring
(c) Copyright 2007. Oracle Corporation
An Architectural Challenge
(c) Copyright 2008. Oracle Corporation
Scale this...
• Domain: Retail Banking Infrastructure• Over 500 Banks• 100,000+ Teller Staff Desktops Applications• 10,000+ Cash Machines (ATMs) • 10,000,000’s of Internet Banking Transactions/day
• Current Infrastructure• Java SE based (no J2EE – apart from Servlets)• Oracle RAC (not an issue – scaling across a WAN ☺ )• Messaging (serious challenges)• Processing Business Tasks (challenges approaching)• 30,000,000+ Business Tasks a day – minimum.
• must do 100,000,000 effortlessly per/day before going live
(c) Copyright 2007. Oracle Corporation
Scale this...
• Execution of Business Tasks• Account Balance, Credit/Debit, Funds Transfer, Statement
Processing, Batch Processing, Payment Processing• Tasks arrive from a variety of clients (thin, rich, cross-
platform, mainframes...) – variety of languages
• Goal:• Goal:• Tasks are executed by the “cloud”• Don’t want to build own “cloud” software
• Their knowledege:• Massive experience in scale-out. Could build it themselves,
but budget (time/resources/money) will be saved by buying.
(c) Copyright 2007. Oracle Corporation
The Cloud
Essentially want…
interface Cloud {
public <T> Future<T> execute(Task<T> task);
}
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Constraints...
• No Single Points of Failure• No Simple Points of Bottleneck• No Service Registries• No Masters + Workers
• already got one that is partitioned into over 200 separate clusters
• No Manual Partitioning
• No Data or Task Loss• During failure• During server upgrade• During scale out
• No Transactions (XA)• Support multiple versions• Predictable response times• No Manual Partitioning
• Keep everything in Memory• Active + Active Sites
• Across WAN
• Develop system on a note book• Scale to over 500 servers• No reconfiguration outages• No byte-code manipulation /
proxies
• Predictable response times• Predictable scale out costs• Manage via JMX, from any point
in the “Cloud”.• Pure Java Standard Edition• Infrastructure add a maximum of
3ms latency to tasks.• Integrate with existing
applications (Java 1.4.2+)
(c) Copyright 2007. Oracle Corporation
Enter the Data Grid
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Enter the Data Grid
• Data Grid ≈ Horizontally scalable in-memory data management
• Goal• Eliminate data source contention by scaling out data • Eliminate data source contention by scaling out data
management with commodity hardware
• Underlying Philosophies…• Keep “data” in the “application-tier” (where it’s used)• “Disks are slow and databases are evil”• “Data Grids will solve your application scalability and
performance problems”
(c) Copyright 2008. Oracle Corporation
Essentially replace this…
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With this…
(c) Copyright 2008. Oracle Corporation
Note to Marketing: Replace “Cloud” with Data Grid, Distributed Cache, Data Fabric, Information Fabric, Network Attached Storage, Java Space, Service Grid, Compute Grid, Object Grid, Shared Memory or other term ☺
Success!
(c) Copyright 2008. Oracle Corporation
“What’s inside the Cloud?”
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Architectural Patterns that Limit Scalability
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Client + Server Pattern
Server is point of contention
Contention increases Server response time = increased Client latencies
Client scale-out increases contention
Not just Database related. Consider Not just Database related. Consider Store-and-Forward messaging systems and Spaces
The server may be a “switch”
Lesson: Avoid Single Points of Contention / Bottleneck (SPOB)
(c) Copyright 2008. Oracle Corporation
Master + Worker Pattern
Master is point of contention
Contention increases Master response time = increases Worker (and requestor) Latencies
Scale-out increases contention
Lesson: Avoid Single Points of Lesson: Avoid Single Points of Contention / Bottleneck (SPOB)
(c) Copyright 2008. Oracle Corporation
Master + Worker PatternReality...
Typically Master + Worker actually is also Client + Server!
Lesson: Avoid patterns with SPOB!
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Master + Worker PatternContinued...
Typically Master + Worker actually is also Client + Server!
Often the driving requirement for “Data Grid” in a “Compute Grid”
Lesson: Avoid patterns with multiple SPOB!multiple SPOB!
(c) Copyright 2008. Oracle Corporation
Increasing Resilience
Increasing resilience increases latency
Synchronously maintained resilience typically doubles latencies
Asynchronously maintained resilience will always introduce data integrity issuesissues
Lesson: Resilience rarely has zero-latency properties
Lesson: Resilience ≠ Persistence
(c) Copyright 2008. Oracle Corporation
Partition for Parallelism
Partition Data onto separate Masters to provide load-balancing and increase parallelism
Not easy , especially if access patterns are dynamic and load is uneven
“Joins” become very difficult, but queries work in parallel
Lesson: Hot spots are inevitable
Lesson: Partition failure may corrupt state. RAID is a better partitioning strategy
Lesson: Avoid “registries” to locate data/services (ie: Masters)
(c) Copyright 2008. Oracle Corporation
Summary• Avoid Single Points of Contention• Avoid Single Points of Failure• Avoid Client + Server • Avoid Master + Worker• Active + Active better than Active
+ Passive• Ensure fair utilization of resources
• Resilience increases latency
• Avoid moving data• Exploit Data Affinity
• Data + Data and Data + Compute
• Deploy code everywhere • It’s smaller• Dynamic code deployment is
dangerous in transactional systems
• Exploit Parallelism • Partition Data for Parallelism• Resilience increases latency
• Resilience ≠ Persistence• Resilience = Redundancy• RAID is a good pattern• XML is not great• Interoperability is best achieved at
the binary level (hardest, but best)
• Partition Data for Parallelism• Hot Spots are unavoidable
• Pipeline architectures help significantly
• Use Caching to reduce I/O• Cache Coherency is not free• Cache Coherency is essential for
Data Integrity• Understand the underlying
implementation of solutions!
(c) Copyright 2008. Oracle Corporation
Achieving Scalability and High Performance means...
1. Doing something completely different architecturally... including inside the “Cloud”.
2. Avoiding patterns that limit scalability or performance
3. Ensuring each architectural component (from external) providers avoids the “limiting” patterns
= knowing the internals of the provided solutions
(c) Copyright 2008. Oracle Corporation
What about Coherence ?
(c) Copyright 2007. Oracle Corporation
Oracle Coherence
• Provides…• Container-less peer-to-peer Clustering of Java Processes• Data Structures to manage Data across a Cluster / Grid
• Other Stuff…• Real-Time Event Observation – Listener Pattern• Real-Time Event Observation – Listener Pattern• Materialized Views of Data – Continuous Queries • Parallel Queries and Aggregation – Object-based Queries• Parallel Data Processing• Parallel Grid Processing• RemoteException Free Distributed Computing• Clustered JMX• MAN + WAN Connectivity
Oracle Coherence
• Development Toolkit• Pure Java 1.4.2+ Libraries• Pure .Net 1.1 and 2.0 (Client Libraries)• No Third-Party Dependencies• No Open Source Dependencies• No Masters• No Registries
• Other Libraries for…• Database and File System Integration• Top Link and Hibernate• Http Session Management, Spring, …
Oracle Coherence
• Some uses…• Caching state in the Application-tier• Relieve load on lower-tier systems
• Databases, Mainframes, Web Servers, Web Services
• Reliably managing Application state in the Application-tier• Scaling out application state (in the application-tier)• In-Memory Http Session Management
• Reliable and Automatically Partitioned Grid Processing• Temporary System of Record for Extreme Transaction
Processing
Coherence Demonstration
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Pimping Oracle Coherence...
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Strategy
• Business Tasks are regular Java objects (pojo)
• Place Business Tasks into Coherence • Coherence dynamically distributes Tasks across the Cluster• Tasks are resilient in the Cluster
(c) Copyright 2008. Oracle Corporation
• Tasks are resilient in the Cluster• May use “affinity” to ensure related Tasks processed together
• Register Backing Map Listeners in the Cluster members to execute Tasks
• Scaling out Coherence = Scaling out Task Processing
Backing Map Listener is what?
• Coherence distributes, manages and stores state (objects) using “Backing Maps”
• Backing Map...• Class that is responsible for managing state.
(c) Copyright 2008. Oracle Corporation
• Class that is responsible for managing state.• Can be replaced to change how state is managed.• Eg: in heap, off heap, hibernate, BDB, toplink, wan, file
system, memory mapped files across a wan.• May be replaced, composed and customized.
• Backing Map Listener...• Class that receives data events from Backing Maps
Strategy
• As Tasks enter the “Cloud” Coherence notifies BML• Our BML implementation schedules, manages,
executes the Tasks (using Java 5 Executor)• Cleans up Tasks when executed• Deals with Task recovery (idempotent with status)
(c) Copyright 2008. Oracle Corporation
• Deals with Task recovery (idempotent with status)• BML is written in standard Java• No Transactions• Fault Tolerant
• Distributed + Scalable + Event Driven Architecture
Backing Map Listener Code
public class ExampleBackingMapListener extends AbstractMultiplexingBackingMapListener {
public ExampleBackingMapListener(BackingMapManagerContext context) {
super(context);
System.out.println("Created our ExampleBackingMapListener");
}
(c) Copyright 2008. Oracle Corporation
}
@Override
protected void onBackingMapEvent(MapEvent mapEvent, Cause cause) {
System.out.println("Cause:" + cause + ", Event:" + mapEvent);
}
}
Backing Map Listener Configuration
<distributed-scheme>
<scheme-name>distributed-cache-scheme</scheme-name>
<backing-map-scheme>
<local-scheme>
<listener>
<class-scheme>
<class-name>ExampleBackingMapListener</class-name>
</class-scheme>
(c) Copyright 2008. Oracle Corporation
</class-scheme>
</listener>
</local-scheme>
</backing-map-scheme>
</distributed-scheme>
Results
• While submitting Tasks (regular system load)• Test 1: Scale from 1 server to over 400
• No reconfiguration• Test 2: Randomly kill servers
• No reconfiguration
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• Test 3: Kill 1, 2, 4, 8, 16, 32, 64, 128, 160 servers at once• Any data loss? • Can it be identified?
• Possible 1,200,000,000 Tasks execution capacity per/day
• Client may reduce current hardware by 75%
Trading Exchange
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Trading Exchange
• Similar requirements and constraints• Order processing (Foreign Exchange)• 1,000’s per second (initial) per currency pair• No manual partitioning• No transactions
(c) Copyright 2008. Oracle Corporation
• No transactions• 10ms max latency for full accept, validate, match,
respond
• Achieved with Coherence using BMLs (< 3ms)• 14 weeks development (start to go live)
Previous Next Generation Approach (failed to meet SLA’s)
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Current Solution
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Pimp my Data Grid
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Pimp it!
• Most Data Grids, especially Coherence are a fully pluggable
• Coherence provides peer-to-peer JVM clustering, resilient data management with events to support resilient data management with events to support distributed EDA.
• You’re generally only limited by your creativity
(c) Copyright 2008. Oracle Corporation
Pimp it – with Groovy
• Instead of building object-based queries, why not use Groovy expressions?
• Eg: Filters, Queries and Agents are completely customizable in Coherencecustomizable in Coherence
• new GroovyFilter(“entry.value in [...]”);
• Serious projects are looking to use Groovy across the Data Grid to provide processing agility
(c) Copyright 2008. Oracle Corporation
Pimp it – with Spring
• Instead of Spring wrapping your Data Grid, embed Spring applications in a Data Grid to;• Virtualize them• Make then resilient to failure• Scale them out
• Coherence is pure Java, so it plays well with Spring
• Use Coherence as clustering infrastructure for Spring – make it unstoppable ☺
(c) Copyright 2008. Oracle Corporation
GettingOracle Coherence
(c) Copyright 2008. Oracle Corporation
Oracle Coherence
• Search: • http://search.oracle.com
• Download• http://www.oracle.com/technology/products/coherence
CoherenceSearch For:
• http://www.oracle.com/technology/products/coherence
Thanks
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Appendix
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The preceding is intended to outline general product use and direction. It is intended for information purposes only, and may not be incorporated into any contract. It is not a commitment to deliver any material, code, or functionality, and should not be relied upon in making purchasing decisions.relied upon in making purchasing decisions.The development, release, and timing of any features or functionality described for Oracle’s products remains at the sole discretion of Oracle.
(c) Copyright 2008. Oracle Corporation