SlideShare a Scribd company logo
1 of 15
Download to read offline
Olivier MALLASSI / March 9, 2016
Combining Stream Processing and In-Memory Data
Grids for Near-Real Time Aggregation and Notifications
•  @omallassi
•  Principal Architect @ Murex
•  Backbone for Capital Markets; Front-Office to Back-Office
to Risk, across multiple assets class
Post Trade and consolidated
information are inputs for
decision making
Cycle time tends to be more and
more « near real time » (depends
on the asset class)
Our mission:
-  Process an increasing volume of
trades/events
-  Aggregate trade and event data
based on use-case specific criteria
-  Accommodate real-time and historical
data inputs
10 000 foot view of finance…
Decision Making
Determination of
the best
investments based
on market trends
and existing
investments in
portfolio (FO)
Acquisition &
Verification
Procurement of the
assets. E.g. the
gold, the equities,
the futures etc.
(MO)
Operation and
Maintenance
Management and
use of assets (BO)
Risk Management
Risk control on
these decisions
Store immutable events
Filter & Aggregate these events based on the demanded perspectives on
these real-time or historical events
Notify about updates on aggregates
Solution Summary,
« As A Service »: Perspectives can be requested at any time, on any type
of events
Be Scalable, Resilient to failure and ensure Low Latency (sub milli
second)
And, of course…
Flexibility
This is a framework to build and manage perspectives
Historical and real-time events
Are stored in an Event Log, each event is identified by a unique and strictly monotonic offset
Are aggregated through the same graph of computation (DAG)
Ensure horizontal scalability (and distribution)
Avoid locking and move back to a single-threaded model (per aggregate)
Limit the number of TCP hops
Limit the usage of disk
Key Architectural Principles
High Level Architecture
Apache Geode (Continous Query)
Aeron
Apache Storm
Perspectives are described using a custom
DSL (on top of Storm Flux + JEXL)
Apache Geode
Apache Storm: stream processing
engine
Not micro batch
Aggregations are expressed as a
(distributed) DAG
The framework ensures routing of the
events
Based on groupBy, to well known threads
Routing strategies can be custom
Apache Storm 101
select * from source where …!
group by x.y.z!
The framework on which the Event Log is built
High Availability and resilience
Horizontal scalability and distribution
Control of data partitioning and regions collocation
Advanced storage configuration: In-memory, overflow on disk, etc…
Advanced notifications (via Continous Queries)
Why Apache Geode?
Distributed & scalable « Query Engine » (DAG)
Routing of Events through the DAG
Cluster Management
On demand perspective deployment
Resilience (failed engine are automatically restarted)
Why Apache Storm?
Storm / Geode are running in their
dedicated JVMs
Storm groupings ensure
Distribution accross multiple threads and
multiple JVMs
Single threaded model
Horizontal scalability with the
number of threads / JVMs
Multiple TCP hops
« Usual » Deployment Pattern
« Low latency » Deployment Pattern
Storm/Geode collocated inside the same
JVM
Events are routed to the right JVM based on a
routing key
Use first element of groupBy as Partition
Resolver
Storm custom groupings enable
Multi-threading
Single-threaded model (per aggregate)
Regions (events, aggregates) are collocated
Horizontal scalability with the number of
threads / JVMs
Limited and known number of TCP hops
Event Log provides a way to work on real-time and historical data with
the same code
Collocation of Storm and Geode is powerful
This is a powerful and general pattern implementation which gives us an
efficient and open framework
Efficiency,
Performance requirements are reached
Openness,
DAG can be easily extended with CEP engines, rules engines
Notifications based on solutions like Aeron or Geode continuous queries
To conclude
Join the Apache Geode Community Today!
•  Check out: http://geode.incubator.apache.org
•  Subscribe: user-subscribe@geode.incubator.apache.org
•  Download: http://geode.incubator.apache.org/releases/
Thank you!

More Related Content

What's hot

Interactive Visualization of Streaming Data Powered by Spark
Interactive Visualization of Streaming Data Powered by SparkInteractive Visualization of Streaming Data Powered by Spark
Interactive Visualization of Streaming Data Powered by SparkSpark Summit
 
Spark meetup - Zoomdata Streaming
Spark meetup  - Zoomdata StreamingSpark meetup  - Zoomdata Streaming
Spark meetup - Zoomdata StreamingZoomdata
 
Роман Новиков "Best Practices for MySQL Performance & Troubleshooting with th...
Роман Новиков "Best Practices for MySQL Performance & Troubleshooting with th...Роман Новиков "Best Practices for MySQL Performance & Troubleshooting with th...
Роман Новиков "Best Practices for MySQL Performance & Troubleshooting with th...Fwdays
 
HBaseConAsia2018 Track3-3: HBase at China Life Insurance
HBaseConAsia2018 Track3-3: HBase at China Life InsuranceHBaseConAsia2018 Track3-3: HBase at China Life Insurance
HBaseConAsia2018 Track3-3: HBase at China Life InsuranceMichael Stack
 
Slides for the Apache Geode Hands-on Meetup and Hackathon Announcement
Slides for the Apache Geode Hands-on Meetup and Hackathon Announcement Slides for the Apache Geode Hands-on Meetup and Hackathon Announcement
Slides for the Apache Geode Hands-on Meetup and Hackathon Announcement VMware Tanzu
 
AWS Sydney Summit 2013 - Optimizing AWS Applications and Usage to Reduce Costs
AWS Sydney Summit 2013 - Optimizing AWS Applications and Usage to Reduce CostsAWS Sydney Summit 2013 - Optimizing AWS Applications and Usage to Reduce Costs
AWS Sydney Summit 2013 - Optimizing AWS Applications and Usage to Reduce CostsAmazon Web Services
 
Spark as part of a Hybrid RDBMS Architecture-John Leach Cofounder Splice Machine
Spark as part of a Hybrid RDBMS Architecture-John Leach Cofounder Splice MachineSpark as part of a Hybrid RDBMS Architecture-John Leach Cofounder Splice Machine
Spark as part of a Hybrid RDBMS Architecture-John Leach Cofounder Splice MachineData Con LA
 
Webinar slides: How to Manage Replication Failover Processes for MySQL, Maria...
Webinar slides: How to Manage Replication Failover Processes for MySQL, Maria...Webinar slides: How to Manage Replication Failover Processes for MySQL, Maria...
Webinar slides: How to Manage Replication Failover Processes for MySQL, Maria...Severalnines
 
#GeodeSummit - Apex & Geode: In-memory streaming, storage & analytics
#GeodeSummit - Apex & Geode: In-memory streaming, storage & analytics#GeodeSummit - Apex & Geode: In-memory streaming, storage & analytics
#GeodeSummit - Apex & Geode: In-memory streaming, storage & analyticsPivotalOpenSourceHub
 
Data Pipelines with Spark & DataStax Enterprise
Data Pipelines with Spark & DataStax EnterpriseData Pipelines with Spark & DataStax Enterprise
Data Pipelines with Spark & DataStax EnterpriseDataStax
 
DataEngConf SF16 - Unifying Real Time and Historical Analytics with the Lambd...
DataEngConf SF16 - Unifying Real Time and Historical Analytics with the Lambd...DataEngConf SF16 - Unifying Real Time and Historical Analytics with the Lambd...
DataEngConf SF16 - Unifying Real Time and Historical Analytics with the Lambd...Hakka Labs
 
Cassandra at eBay - Cassandra Summit 2013
Cassandra at eBay - Cassandra Summit 2013Cassandra at eBay - Cassandra Summit 2013
Cassandra at eBay - Cassandra Summit 2013Jay Patel
 
HBaseConAsia2018 Track3-2: HBase at China Telecom
HBaseConAsia2018 Track3-2:  HBase at China TelecomHBaseConAsia2018 Track3-2:  HBase at China Telecom
HBaseConAsia2018 Track3-2: HBase at China TelecomMichael Stack
 
HBaseConAsia2018 Track2-6: Scaling 30TB's of data lake with Apache HBase and ...
HBaseConAsia2018 Track2-6: Scaling 30TB's of data lake with Apache HBase and ...HBaseConAsia2018 Track2-6: Scaling 30TB's of data lake with Apache HBase and ...
HBaseConAsia2018 Track2-6: Scaling 30TB's of data lake with Apache HBase and ...Michael Stack
 
Deploying Cassandra Multi-cloud
Deploying Cassandra Multi-cloudDeploying Cassandra Multi-cloud
Deploying Cassandra Multi-cloudJeffrey Carpenter
 
War Stories: DIY Kafka
War Stories: DIY KafkaWar Stories: DIY Kafka
War Stories: DIY Kafkaconfluent
 
HBaseConAsia2018 Keynote 2: Recent Development of HBase in Alibaba and Cloud
HBaseConAsia2018 Keynote 2: Recent Development of HBase in Alibaba and CloudHBaseConAsia2018 Keynote 2: Recent Development of HBase in Alibaba and Cloud
HBaseConAsia2018 Keynote 2: Recent Development of HBase in Alibaba and CloudMichael Stack
 
Cassandra on Google Cloud Platform (Ravi Madasu, Google / Ben Lackey, DataSta...
Cassandra on Google Cloud Platform (Ravi Madasu, Google / Ben Lackey, DataSta...Cassandra on Google Cloud Platform (Ravi Madasu, Google / Ben Lackey, DataSta...
Cassandra on Google Cloud Platform (Ravi Madasu, Google / Ben Lackey, DataSta...DataStax
 
HBaseConAsia2018 Track1-3: HBase at Xiaomi
HBaseConAsia2018 Track1-3: HBase at XiaomiHBaseConAsia2018 Track1-3: HBase at Xiaomi
HBaseConAsia2018 Track1-3: HBase at XiaomiMichael Stack
 

What's hot (20)

Interactive Visualization of Streaming Data Powered by Spark
Interactive Visualization of Streaming Data Powered by SparkInteractive Visualization of Streaming Data Powered by Spark
Interactive Visualization of Streaming Data Powered by Spark
 
Spark meetup - Zoomdata Streaming
Spark meetup  - Zoomdata StreamingSpark meetup  - Zoomdata Streaming
Spark meetup - Zoomdata Streaming
 
Роман Новиков "Best Practices for MySQL Performance & Troubleshooting with th...
Роман Новиков "Best Practices for MySQL Performance & Troubleshooting with th...Роман Новиков "Best Practices for MySQL Performance & Troubleshooting with th...
Роман Новиков "Best Practices for MySQL Performance & Troubleshooting with th...
 
HBaseConAsia2018 Track3-3: HBase at China Life Insurance
HBaseConAsia2018 Track3-3: HBase at China Life InsuranceHBaseConAsia2018 Track3-3: HBase at China Life Insurance
HBaseConAsia2018 Track3-3: HBase at China Life Insurance
 
Slides for the Apache Geode Hands-on Meetup and Hackathon Announcement
Slides for the Apache Geode Hands-on Meetup and Hackathon Announcement Slides for the Apache Geode Hands-on Meetup and Hackathon Announcement
Slides for the Apache Geode Hands-on Meetup and Hackathon Announcement
 
AWS Sydney Summit 2013 - Optimizing AWS Applications and Usage to Reduce Costs
AWS Sydney Summit 2013 - Optimizing AWS Applications and Usage to Reduce CostsAWS Sydney Summit 2013 - Optimizing AWS Applications and Usage to Reduce Costs
AWS Sydney Summit 2013 - Optimizing AWS Applications and Usage to Reduce Costs
 
Spark as part of a Hybrid RDBMS Architecture-John Leach Cofounder Splice Machine
Spark as part of a Hybrid RDBMS Architecture-John Leach Cofounder Splice MachineSpark as part of a Hybrid RDBMS Architecture-John Leach Cofounder Splice Machine
Spark as part of a Hybrid RDBMS Architecture-John Leach Cofounder Splice Machine
 
Webinar slides: How to Manage Replication Failover Processes for MySQL, Maria...
Webinar slides: How to Manage Replication Failover Processes for MySQL, Maria...Webinar slides: How to Manage Replication Failover Processes for MySQL, Maria...
Webinar slides: How to Manage Replication Failover Processes for MySQL, Maria...
 
#GeodeSummit - Apex & Geode: In-memory streaming, storage & analytics
#GeodeSummit - Apex & Geode: In-memory streaming, storage & analytics#GeodeSummit - Apex & Geode: In-memory streaming, storage & analytics
#GeodeSummit - Apex & Geode: In-memory streaming, storage & analytics
 
Data Pipelines with Spark & DataStax Enterprise
Data Pipelines with Spark & DataStax EnterpriseData Pipelines with Spark & DataStax Enterprise
Data Pipelines with Spark & DataStax Enterprise
 
Spark Technology Center IBM
Spark Technology Center IBMSpark Technology Center IBM
Spark Technology Center IBM
 
DataEngConf SF16 - Unifying Real Time and Historical Analytics with the Lambd...
DataEngConf SF16 - Unifying Real Time and Historical Analytics with the Lambd...DataEngConf SF16 - Unifying Real Time and Historical Analytics with the Lambd...
DataEngConf SF16 - Unifying Real Time and Historical Analytics with the Lambd...
 
Cassandra at eBay - Cassandra Summit 2013
Cassandra at eBay - Cassandra Summit 2013Cassandra at eBay - Cassandra Summit 2013
Cassandra at eBay - Cassandra Summit 2013
 
HBaseConAsia2018 Track3-2: HBase at China Telecom
HBaseConAsia2018 Track3-2:  HBase at China TelecomHBaseConAsia2018 Track3-2:  HBase at China Telecom
HBaseConAsia2018 Track3-2: HBase at China Telecom
 
HBaseConAsia2018 Track2-6: Scaling 30TB's of data lake with Apache HBase and ...
HBaseConAsia2018 Track2-6: Scaling 30TB's of data lake with Apache HBase and ...HBaseConAsia2018 Track2-6: Scaling 30TB's of data lake with Apache HBase and ...
HBaseConAsia2018 Track2-6: Scaling 30TB's of data lake with Apache HBase and ...
 
Deploying Cassandra Multi-cloud
Deploying Cassandra Multi-cloudDeploying Cassandra Multi-cloud
Deploying Cassandra Multi-cloud
 
War Stories: DIY Kafka
War Stories: DIY KafkaWar Stories: DIY Kafka
War Stories: DIY Kafka
 
HBaseConAsia2018 Keynote 2: Recent Development of HBase in Alibaba and Cloud
HBaseConAsia2018 Keynote 2: Recent Development of HBase in Alibaba and CloudHBaseConAsia2018 Keynote 2: Recent Development of HBase in Alibaba and Cloud
HBaseConAsia2018 Keynote 2: Recent Development of HBase in Alibaba and Cloud
 
Cassandra on Google Cloud Platform (Ravi Madasu, Google / Ben Lackey, DataSta...
Cassandra on Google Cloud Platform (Ravi Madasu, Google / Ben Lackey, DataSta...Cassandra on Google Cloud Platform (Ravi Madasu, Google / Ben Lackey, DataSta...
Cassandra on Google Cloud Platform (Ravi Madasu, Google / Ben Lackey, DataSta...
 
HBaseConAsia2018 Track1-3: HBase at Xiaomi
HBaseConAsia2018 Track1-3: HBase at XiaomiHBaseConAsia2018 Track1-3: HBase at Xiaomi
HBaseConAsia2018 Track1-3: HBase at Xiaomi
 

Viewers also liked

#GeodeSummit - Modern manufacturing powered by Spring XD and Geode
#GeodeSummit - Modern manufacturing powered by Spring XD and Geode#GeodeSummit - Modern manufacturing powered by Spring XD and Geode
#GeodeSummit - Modern manufacturing powered by Spring XD and GeodePivotalOpenSourceHub
 
#GeodeSummit - Redis to Geode Adaptor
#GeodeSummit - Redis to Geode Adaptor#GeodeSummit - Redis to Geode Adaptor
#GeodeSummit - Redis to Geode AdaptorPivotalOpenSourceHub
 
#GeodeSummit - Large Scale Fraud Detection using GemFire Integrated with Gree...
#GeodeSummit - Large Scale Fraud Detection using GemFire Integrated with Gree...#GeodeSummit - Large Scale Fraud Detection using GemFire Integrated with Gree...
#GeodeSummit - Large Scale Fraud Detection using GemFire Integrated with Gree...PivotalOpenSourceHub
 
#GeodeSummit: Architecting Data-Driven, Smarter Cloud Native Apps with Real-T...
#GeodeSummit: Architecting Data-Driven, Smarter Cloud Native Apps with Real-T...#GeodeSummit: Architecting Data-Driven, Smarter Cloud Native Apps with Real-T...
#GeodeSummit: Architecting Data-Driven, Smarter Cloud Native Apps with Real-T...PivotalOpenSourceHub
 
#GeodeSummit - Wall St. Derivative Risk Solutions Using Geode
#GeodeSummit - Wall St. Derivative Risk Solutions Using Geode#GeodeSummit - Wall St. Derivative Risk Solutions Using Geode
#GeodeSummit - Wall St. Derivative Risk Solutions Using GeodePivotalOpenSourceHub
 
#GeodeSummit: Democratizing Fast Analytics with Ampool (Powered by Apache Geode)
#GeodeSummit: Democratizing Fast Analytics with Ampool (Powered by Apache Geode)#GeodeSummit: Democratizing Fast Analytics with Ampool (Powered by Apache Geode)
#GeodeSummit: Democratizing Fast Analytics with Ampool (Powered by Apache Geode)PivotalOpenSourceHub
 
#GeodeSummit: Easy Ways to Become a Contributor to Apache Geode
#GeodeSummit: Easy Ways to Become a Contributor to Apache Geode#GeodeSummit: Easy Ways to Become a Contributor to Apache Geode
#GeodeSummit: Easy Ways to Become a Contributor to Apache GeodePivotalOpenSourceHub
 
#GeodeSummit Keynote: Creating the Future of Big Data Through 'The Apache Way"
#GeodeSummit Keynote: Creating the Future of Big Data Through 'The Apache Way"#GeodeSummit Keynote: Creating the Future of Big Data Through 'The Apache Way"
#GeodeSummit Keynote: Creating the Future of Big Data Through 'The Apache Way"PivotalOpenSourceHub
 
#GeodeSummit - Spring Data GemFire API Current and Future
#GeodeSummit - Spring Data GemFire API Current and Future#GeodeSummit - Spring Data GemFire API Current and Future
#GeodeSummit - Spring Data GemFire API Current and FuturePivotalOpenSourceHub
 
#GeodeSummit - Using Geode as Operational Data Services for Real Time Mobile ...
#GeodeSummit - Using Geode as Operational Data Services for Real Time Mobile ...#GeodeSummit - Using Geode as Operational Data Services for Real Time Mobile ...
#GeodeSummit - Using Geode as Operational Data Services for Real Time Mobile ...PivotalOpenSourceHub
 
#GeodeSummit - Off-Heap Storage Current and Future Design
#GeodeSummit - Off-Heap Storage Current and Future Design#GeodeSummit - Off-Heap Storage Current and Future Design
#GeodeSummit - Off-Heap Storage Current and Future DesignPivotalOpenSourceHub
 
#GeodeSummit - Integration & Future Direction for Spring Cloud Data Flow & Geode
#GeodeSummit - Integration & Future Direction for Spring Cloud Data Flow & Geode#GeodeSummit - Integration & Future Direction for Spring Cloud Data Flow & Geode
#GeodeSummit - Integration & Future Direction for Spring Cloud Data Flow & GeodePivotalOpenSourceHub
 
New Security Framework in Apache Geode
New Security Framework in Apache GeodeNew Security Framework in Apache Geode
New Security Framework in Apache GeodePivotalOpenSourceHub
 
Apache Geode Meetup, London
Apache Geode Meetup, LondonApache Geode Meetup, London
Apache Geode Meetup, LondonApache Geode
 
Build your first Internet of Things app today with Open Source
Build your first Internet of Things app today with Open SourceBuild your first Internet of Things app today with Open Source
Build your first Internet of Things app today with Open SourceApache Geode
 

Viewers also liked (15)

#GeodeSummit - Modern manufacturing powered by Spring XD and Geode
#GeodeSummit - Modern manufacturing powered by Spring XD and Geode#GeodeSummit - Modern manufacturing powered by Spring XD and Geode
#GeodeSummit - Modern manufacturing powered by Spring XD and Geode
 
#GeodeSummit - Redis to Geode Adaptor
#GeodeSummit - Redis to Geode Adaptor#GeodeSummit - Redis to Geode Adaptor
#GeodeSummit - Redis to Geode Adaptor
 
#GeodeSummit - Large Scale Fraud Detection using GemFire Integrated with Gree...
#GeodeSummit - Large Scale Fraud Detection using GemFire Integrated with Gree...#GeodeSummit - Large Scale Fraud Detection using GemFire Integrated with Gree...
#GeodeSummit - Large Scale Fraud Detection using GemFire Integrated with Gree...
 
#GeodeSummit: Architecting Data-Driven, Smarter Cloud Native Apps with Real-T...
#GeodeSummit: Architecting Data-Driven, Smarter Cloud Native Apps with Real-T...#GeodeSummit: Architecting Data-Driven, Smarter Cloud Native Apps with Real-T...
#GeodeSummit: Architecting Data-Driven, Smarter Cloud Native Apps with Real-T...
 
#GeodeSummit - Wall St. Derivative Risk Solutions Using Geode
#GeodeSummit - Wall St. Derivative Risk Solutions Using Geode#GeodeSummit - Wall St. Derivative Risk Solutions Using Geode
#GeodeSummit - Wall St. Derivative Risk Solutions Using Geode
 
#GeodeSummit: Democratizing Fast Analytics with Ampool (Powered by Apache Geode)
#GeodeSummit: Democratizing Fast Analytics with Ampool (Powered by Apache Geode)#GeodeSummit: Democratizing Fast Analytics with Ampool (Powered by Apache Geode)
#GeodeSummit: Democratizing Fast Analytics with Ampool (Powered by Apache Geode)
 
#GeodeSummit: Easy Ways to Become a Contributor to Apache Geode
#GeodeSummit: Easy Ways to Become a Contributor to Apache Geode#GeodeSummit: Easy Ways to Become a Contributor to Apache Geode
#GeodeSummit: Easy Ways to Become a Contributor to Apache Geode
 
#GeodeSummit Keynote: Creating the Future of Big Data Through 'The Apache Way"
#GeodeSummit Keynote: Creating the Future of Big Data Through 'The Apache Way"#GeodeSummit Keynote: Creating the Future of Big Data Through 'The Apache Way"
#GeodeSummit Keynote: Creating the Future of Big Data Through 'The Apache Way"
 
#GeodeSummit - Spring Data GemFire API Current and Future
#GeodeSummit - Spring Data GemFire API Current and Future#GeodeSummit - Spring Data GemFire API Current and Future
#GeodeSummit - Spring Data GemFire API Current and Future
 
#GeodeSummit - Using Geode as Operational Data Services for Real Time Mobile ...
#GeodeSummit - Using Geode as Operational Data Services for Real Time Mobile ...#GeodeSummit - Using Geode as Operational Data Services for Real Time Mobile ...
#GeodeSummit - Using Geode as Operational Data Services for Real Time Mobile ...
 
#GeodeSummit - Off-Heap Storage Current and Future Design
#GeodeSummit - Off-Heap Storage Current and Future Design#GeodeSummit - Off-Heap Storage Current and Future Design
#GeodeSummit - Off-Heap Storage Current and Future Design
 
#GeodeSummit - Integration & Future Direction for Spring Cloud Data Flow & Geode
#GeodeSummit - Integration & Future Direction for Spring Cloud Data Flow & Geode#GeodeSummit - Integration & Future Direction for Spring Cloud Data Flow & Geode
#GeodeSummit - Integration & Future Direction for Spring Cloud Data Flow & Geode
 
New Security Framework in Apache Geode
New Security Framework in Apache GeodeNew Security Framework in Apache Geode
New Security Framework in Apache Geode
 
Apache Geode Meetup, London
Apache Geode Meetup, LondonApache Geode Meetup, London
Apache Geode Meetup, London
 
Build your first Internet of Things app today with Open Source
Build your first Internet of Things app today with Open SourceBuild your first Internet of Things app today with Open Source
Build your first Internet of Things app today with Open Source
 

Similar to Combining Stream Processing and In-Memory Data Grids for Near-Real Time Aggregation

Aceu2009 Apache Synapse Events
Aceu2009 Apache Synapse EventsAceu2009 Apache Synapse Events
Aceu2009 Apache Synapse Eventsguest60ed0b
 
Maginatics @ SDC 2013: Architecting An Enterprise Storage Platform Using Obje...
Maginatics @ SDC 2013: Architecting An Enterprise Storage Platform Using Obje...Maginatics @ SDC 2013: Architecting An Enterprise Storage Platform Using Obje...
Maginatics @ SDC 2013: Architecting An Enterprise Storage Platform Using Obje...Maginatics
 
AWS 101, London - September 2014
AWS 101, London - September 2014AWS 101, London - September 2014
AWS 101, London - September 2014Ian Massingham
 
(Speaker Notes Version) Architecting An Enterprise Storage Platform Using Obj...
(Speaker Notes Version) Architecting An Enterprise Storage Platform Using Obj...(Speaker Notes Version) Architecting An Enterprise Storage Platform Using Obj...
(Speaker Notes Version) Architecting An Enterprise Storage Platform Using Obj...Niraj Tolia
 
Event Hub (i.e. Kafka) in Modern Data Architecture
Event Hub (i.e. Kafka) in Modern Data ArchitectureEvent Hub (i.e. Kafka) in Modern Data Architecture
Event Hub (i.e. Kafka) in Modern Data ArchitectureGuido Schmutz
 
AI&BigData Lab 2016. Сарапин Виктор: Размер имеет значение: анализ по требова...
AI&BigData Lab 2016. Сарапин Виктор: Размер имеет значение: анализ по требова...AI&BigData Lab 2016. Сарапин Виктор: Размер имеет значение: анализ по требова...
AI&BigData Lab 2016. Сарапин Виктор: Размер имеет значение: анализ по требова...GeeksLab Odessa
 
Caching for Microservices Architectures: Session II - Caching Patterns
Caching for Microservices Architectures: Session II - Caching PatternsCaching for Microservices Architectures: Session II - Caching Patterns
Caching for Microservices Architectures: Session II - Caching PatternsVMware Tanzu
 
Achieving Real-time Ingestion and Analysis of Security Events through Kafka a...
Achieving Real-time Ingestion and Analysis of Security Events through Kafka a...Achieving Real-time Ingestion and Analysis of Security Events through Kafka a...
Achieving Real-time Ingestion and Analysis of Security Events through Kafka a...Kevin Mao
 
Next-Generation Security Operations with AWS | AWS Public Sector Summit 2016
Next-Generation Security Operations with AWS | AWS Public Sector Summit 2016Next-Generation Security Operations with AWS | AWS Public Sector Summit 2016
Next-Generation Security Operations with AWS | AWS Public Sector Summit 2016Amazon Web Services
 
ML on Big Data: Real-Time Analysis on Time Series
ML on Big Data: Real-Time Analysis on Time SeriesML on Big Data: Real-Time Analysis on Time Series
ML on Big Data: Real-Time Analysis on Time SeriesSigmoid
 
App Grid Dev With Coherence
App Grid Dev With CoherenceApp Grid Dev With Coherence
App Grid Dev With CoherenceJames Bayer
 
Application Grid Dev with Coherence
Application Grid Dev with CoherenceApplication Grid Dev with Coherence
Application Grid Dev with CoherenceJames Bayer
 
App Grid Dev With Coherence
App Grid Dev With CoherenceApp Grid Dev With Coherence
App Grid Dev With CoherenceJames Bayer
 
Our way to microservices
Our way to microservicesOur way to microservices
Our way to microservicesAndi Pangeran
 
Declare Victory with Big Data
Declare Victory with Big DataDeclare Victory with Big Data
Declare Victory with Big DataJ On The Beach
 
GigaSpaces CCF 4 Xap
GigaSpaces CCF 4 XapGigaSpaces CCF 4 Xap
GigaSpaces CCF 4 XapShay Hassidim
 
SoleraNetworks
SoleraNetworksSoleraNetworks
SoleraNetworksJoe Levy
 
Technical Best Practices for Veritas and Microsoft Azure Using a Detailed Ref...
Technical Best Practices for Veritas and Microsoft Azure Using a Detailed Ref...Technical Best Practices for Veritas and Microsoft Azure Using a Detailed Ref...
Technical Best Practices for Veritas and Microsoft Azure Using a Detailed Ref...Veritas Technologies LLC
 
Event Processing as a Service
Event Processing as a ServiceEvent Processing as a Service
Event Processing as a ServiceBob Marcus
 

Similar to Combining Stream Processing and In-Memory Data Grids for Near-Real Time Aggregation (20)

Aceu2009 Apache Synapse Events
Aceu2009 Apache Synapse EventsAceu2009 Apache Synapse Events
Aceu2009 Apache Synapse Events
 
Maginatics @ SDC 2013: Architecting An Enterprise Storage Platform Using Obje...
Maginatics @ SDC 2013: Architecting An Enterprise Storage Platform Using Obje...Maginatics @ SDC 2013: Architecting An Enterprise Storage Platform Using Obje...
Maginatics @ SDC 2013: Architecting An Enterprise Storage Platform Using Obje...
 
AWS 101, London - September 2014
AWS 101, London - September 2014AWS 101, London - September 2014
AWS 101, London - September 2014
 
(Speaker Notes Version) Architecting An Enterprise Storage Platform Using Obj...
(Speaker Notes Version) Architecting An Enterprise Storage Platform Using Obj...(Speaker Notes Version) Architecting An Enterprise Storage Platform Using Obj...
(Speaker Notes Version) Architecting An Enterprise Storage Platform Using Obj...
 
AWS 101 December 2014
AWS 101 December 2014AWS 101 December 2014
AWS 101 December 2014
 
Event Hub (i.e. Kafka) in Modern Data Architecture
Event Hub (i.e. Kafka) in Modern Data ArchitectureEvent Hub (i.e. Kafka) in Modern Data Architecture
Event Hub (i.e. Kafka) in Modern Data Architecture
 
AI&BigData Lab 2016. Сарапин Виктор: Размер имеет значение: анализ по требова...
AI&BigData Lab 2016. Сарапин Виктор: Размер имеет значение: анализ по требова...AI&BigData Lab 2016. Сарапин Виктор: Размер имеет значение: анализ по требова...
AI&BigData Lab 2016. Сарапин Виктор: Размер имеет значение: анализ по требова...
 
Caching for Microservices Architectures: Session II - Caching Patterns
Caching for Microservices Architectures: Session II - Caching PatternsCaching for Microservices Architectures: Session II - Caching Patterns
Caching for Microservices Architectures: Session II - Caching Patterns
 
Achieving Real-time Ingestion and Analysis of Security Events through Kafka a...
Achieving Real-time Ingestion and Analysis of Security Events through Kafka a...Achieving Real-time Ingestion and Analysis of Security Events through Kafka a...
Achieving Real-time Ingestion and Analysis of Security Events through Kafka a...
 
Next-Generation Security Operations with AWS | AWS Public Sector Summit 2016
Next-Generation Security Operations with AWS | AWS Public Sector Summit 2016Next-Generation Security Operations with AWS | AWS Public Sector Summit 2016
Next-Generation Security Operations with AWS | AWS Public Sector Summit 2016
 
ML on Big Data: Real-Time Analysis on Time Series
ML on Big Data: Real-Time Analysis on Time SeriesML on Big Data: Real-Time Analysis on Time Series
ML on Big Data: Real-Time Analysis on Time Series
 
App Grid Dev With Coherence
App Grid Dev With CoherenceApp Grid Dev With Coherence
App Grid Dev With Coherence
 
Application Grid Dev with Coherence
Application Grid Dev with CoherenceApplication Grid Dev with Coherence
Application Grid Dev with Coherence
 
App Grid Dev With Coherence
App Grid Dev With CoherenceApp Grid Dev With Coherence
App Grid Dev With Coherence
 
Our way to microservices
Our way to microservicesOur way to microservices
Our way to microservices
 
Declare Victory with Big Data
Declare Victory with Big DataDeclare Victory with Big Data
Declare Victory with Big Data
 
GigaSpaces CCF 4 Xap
GigaSpaces CCF 4 XapGigaSpaces CCF 4 Xap
GigaSpaces CCF 4 Xap
 
SoleraNetworks
SoleraNetworksSoleraNetworks
SoleraNetworks
 
Technical Best Practices for Veritas and Microsoft Azure Using a Detailed Ref...
Technical Best Practices for Veritas and Microsoft Azure Using a Detailed Ref...Technical Best Practices for Veritas and Microsoft Azure Using a Detailed Ref...
Technical Best Practices for Veritas and Microsoft Azure Using a Detailed Ref...
 
Event Processing as a Service
Event Processing as a ServiceEvent Processing as a Service
Event Processing as a Service
 

More from PivotalOpenSourceHub

Zettaset Elastic Big Data Security for Greenplum Database
Zettaset Elastic Big Data Security for Greenplum DatabaseZettaset Elastic Big Data Security for Greenplum Database
Zettaset Elastic Big Data Security for Greenplum DatabasePivotalOpenSourceHub
 
Apache Geode Clubhouse - WAN-based Replication
Apache Geode Clubhouse - WAN-based ReplicationApache Geode Clubhouse - WAN-based Replication
Apache Geode Clubhouse - WAN-based ReplicationPivotalOpenSourceHub
 
GPORCA: Query Optimization as a Service
GPORCA: Query Optimization as a ServiceGPORCA: Query Optimization as a Service
GPORCA: Query Optimization as a ServicePivotalOpenSourceHub
 
Pivoting Spring XD to Spring Cloud Data Flow with Sabby Anandan
Pivoting Spring XD to Spring Cloud Data Flow with Sabby AnandanPivoting Spring XD to Spring Cloud Data Flow with Sabby Anandan
Pivoting Spring XD to Spring Cloud Data Flow with Sabby AnandanPivotalOpenSourceHub
 
Apache Zeppelin Meetup Christian Tzolov 1/21/16
Apache Zeppelin Meetup Christian Tzolov 1/21/16 Apache Zeppelin Meetup Christian Tzolov 1/21/16
Apache Zeppelin Meetup Christian Tzolov 1/21/16 PivotalOpenSourceHub
 
Postgre sql linuxcontainers by Jignesh Shah
Postgre sql linuxcontainers by Jignesh ShahPostgre sql linuxcontainers by Jignesh Shah
Postgre sql linuxcontainers by Jignesh ShahPivotalOpenSourceHub
 
Geode Transactions by Swapnil Bawaskar
Geode Transactions by Swapnil BawaskarGeode Transactions by Swapnil Bawaskar
Geode Transactions by Swapnil BawaskarPivotalOpenSourceHub
 
Greenplum Database Open Source December 2015
Greenplum Database Open Source December 2015Greenplum Database Open Source December 2015
Greenplum Database Open Source December 2015PivotalOpenSourceHub
 
MADlib Architecture and Functional Demo on How to Use MADlib/PivotalR
MADlib Architecture and Functional Demo on How to Use MADlib/PivotalRMADlib Architecture and Functional Demo on How to Use MADlib/PivotalR
MADlib Architecture and Functional Demo on How to Use MADlib/PivotalRPivotalOpenSourceHub
 
Data Science Perspective and DS demo
Data Science Perspective and DS demo Data Science Perspective and DS demo
Data Science Perspective and DS demo PivotalOpenSourceHub
 

More from PivotalOpenSourceHub (13)

Zettaset Elastic Big Data Security for Greenplum Database
Zettaset Elastic Big Data Security for Greenplum DatabaseZettaset Elastic Big Data Security for Greenplum Database
Zettaset Elastic Big Data Security for Greenplum Database
 
Apache Geode Clubhouse - WAN-based Replication
Apache Geode Clubhouse - WAN-based ReplicationApache Geode Clubhouse - WAN-based Replication
Apache Geode Clubhouse - WAN-based Replication
 
GPORCA: Query Optimization as a Service
GPORCA: Query Optimization as a ServiceGPORCA: Query Optimization as a Service
GPORCA: Query Optimization as a Service
 
Pivoting Spring XD to Spring Cloud Data Flow with Sabby Anandan
Pivoting Spring XD to Spring Cloud Data Flow with Sabby AnandanPivoting Spring XD to Spring Cloud Data Flow with Sabby Anandan
Pivoting Spring XD to Spring Cloud Data Flow with Sabby Anandan
 
Apache Geode Offheap Storage
Apache Geode Offheap StorageApache Geode Offheap Storage
Apache Geode Offheap Storage
 
Apache Zeppelin Meetup Christian Tzolov 1/21/16
Apache Zeppelin Meetup Christian Tzolov 1/21/16 Apache Zeppelin Meetup Christian Tzolov 1/21/16
Apache Zeppelin Meetup Christian Tzolov 1/21/16
 
Build & test Apache Hawq
Build & test Apache Hawq Build & test Apache Hawq
Build & test Apache Hawq
 
Postgre sql linuxcontainers by Jignesh Shah
Postgre sql linuxcontainers by Jignesh ShahPostgre sql linuxcontainers by Jignesh Shah
Postgre sql linuxcontainers by Jignesh Shah
 
kafka for db as postgres
kafka for db as postgreskafka for db as postgres
kafka for db as postgres
 
Geode Transactions by Swapnil Bawaskar
Geode Transactions by Swapnil BawaskarGeode Transactions by Swapnil Bawaskar
Geode Transactions by Swapnil Bawaskar
 
Greenplum Database Open Source December 2015
Greenplum Database Open Source December 2015Greenplum Database Open Source December 2015
Greenplum Database Open Source December 2015
 
MADlib Architecture and Functional Demo on How to Use MADlib/PivotalR
MADlib Architecture and Functional Demo on How to Use MADlib/PivotalRMADlib Architecture and Functional Demo on How to Use MADlib/PivotalR
MADlib Architecture and Functional Demo on How to Use MADlib/PivotalR
 
Data Science Perspective and DS demo
Data Science Perspective and DS demo Data Science Perspective and DS demo
Data Science Perspective and DS demo
 

Recently uploaded

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
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024Stephanie Beckett
 
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxDigital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxLoriGlavin3
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteDianaGray10
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxLoriGlavin3
 
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxUse of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxLoriGlavin3
 
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxThe Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxLoriGlavin3
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersRaghuram Pandurangan
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxLoriGlavin3
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brandgvaughan
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024Lorenzo Miniero
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 3652toLead Limited
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsRizwan Syed
 
Passkey Providers and Enabling Portability: FIDO Paris Seminar.pptx
Passkey Providers and Enabling Portability: FIDO Paris Seminar.pptxPasskey Providers and Enabling Portability: FIDO Paris Seminar.pptx
Passkey Providers and Enabling Portability: FIDO Paris Seminar.pptxLoriGlavin3
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfMounikaPolabathina
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .Alan Dix
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupFlorian Wilhelm
 

Recently uploaded (20)

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
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024
 
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxDigital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
 
Take control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test SuiteTake control of your SAP testing with UiPath Test Suite
Take control of your SAP testing with UiPath Test Suite
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
 
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptxUse of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
Use of FIDO in the Payments and Identity Landscape: FIDO Paris Seminar.pptx
 
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxThe Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information Developers
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brand
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL Certs
 
Passkey Providers and Enabling Portability: FIDO Paris Seminar.pptx
Passkey Providers and Enabling Portability: FIDO Paris Seminar.pptxPasskey Providers and Enabling Portability: FIDO Paris Seminar.pptx
Passkey Providers and Enabling Portability: FIDO Paris Seminar.pptx
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdf
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project Setup
 

Combining Stream Processing and In-Memory Data Grids for Near-Real Time Aggregation

  • 1. Olivier MALLASSI / March 9, 2016
  • 2. Combining Stream Processing and In-Memory Data Grids for Near-Real Time Aggregation and Notifications •  @omallassi •  Principal Architect @ Murex •  Backbone for Capital Markets; Front-Office to Back-Office to Risk, across multiple assets class
  • 3. Post Trade and consolidated information are inputs for decision making Cycle time tends to be more and more « near real time » (depends on the asset class) Our mission: -  Process an increasing volume of trades/events -  Aggregate trade and event data based on use-case specific criteria -  Accommodate real-time and historical data inputs 10 000 foot view of finance… Decision Making Determination of the best investments based on market trends and existing investments in portfolio (FO) Acquisition & Verification Procurement of the assets. E.g. the gold, the equities, the futures etc. (MO) Operation and Maintenance Management and use of assets (BO) Risk Management Risk control on these decisions
  • 4. Store immutable events Filter & Aggregate these events based on the demanded perspectives on these real-time or historical events Notify about updates on aggregates Solution Summary,
  • 5. « As A Service »: Perspectives can be requested at any time, on any type of events Be Scalable, Resilient to failure and ensure Low Latency (sub milli second) And, of course…
  • 6. Flexibility This is a framework to build and manage perspectives Historical and real-time events Are stored in an Event Log, each event is identified by a unique and strictly monotonic offset Are aggregated through the same graph of computation (DAG) Ensure horizontal scalability (and distribution) Avoid locking and move back to a single-threaded model (per aggregate) Limit the number of TCP hops Limit the usage of disk Key Architectural Principles
  • 7. High Level Architecture Apache Geode (Continous Query) Aeron Apache Storm Perspectives are described using a custom DSL (on top of Storm Flux + JEXL) Apache Geode
  • 8. Apache Storm: stream processing engine Not micro batch Aggregations are expressed as a (distributed) DAG The framework ensures routing of the events Based on groupBy, to well known threads Routing strategies can be custom Apache Storm 101 select * from source where …! group by x.y.z!
  • 9. The framework on which the Event Log is built High Availability and resilience Horizontal scalability and distribution Control of data partitioning and regions collocation Advanced storage configuration: In-memory, overflow on disk, etc… Advanced notifications (via Continous Queries) Why Apache Geode?
  • 10. Distributed & scalable « Query Engine » (DAG) Routing of Events through the DAG Cluster Management On demand perspective deployment Resilience (failed engine are automatically restarted) Why Apache Storm?
  • 11. Storm / Geode are running in their dedicated JVMs Storm groupings ensure Distribution accross multiple threads and multiple JVMs Single threaded model Horizontal scalability with the number of threads / JVMs Multiple TCP hops « Usual » Deployment Pattern
  • 12. « Low latency » Deployment Pattern Storm/Geode collocated inside the same JVM Events are routed to the right JVM based on a routing key Use first element of groupBy as Partition Resolver Storm custom groupings enable Multi-threading Single-threaded model (per aggregate) Regions (events, aggregates) are collocated Horizontal scalability with the number of threads / JVMs Limited and known number of TCP hops
  • 13. Event Log provides a way to work on real-time and historical data with the same code Collocation of Storm and Geode is powerful This is a powerful and general pattern implementation which gives us an efficient and open framework Efficiency, Performance requirements are reached Openness, DAG can be easily extended with CEP engines, rules engines Notifications based on solutions like Aeron or Geode continuous queries To conclude
  • 14. Join the Apache Geode Community Today! •  Check out: http://geode.incubator.apache.org •  Subscribe: user-subscribe@geode.incubator.apache.org •  Download: http://geode.incubator.apache.org/releases/