SlideShare una empresa de Scribd logo
1 de 54
Descargar para leer sin conexión
Complex Event
Processing with Esper

      @antonioalegria
Complex Event
 Processing?
     CEP
“Complex Event is an event
 that could only happen if lots
  of other events happened”

    “CEP is a set of tools and
 techniques for analyzing and
 controlling the complex series
of interrelated events that drive
modern distributed information
             systems”

    David Luckham, 2002
Example

• Church bell ringing
• Appearance of a man in a tuxedo
• Appearance of a woman in a white gown
• Rice flying through the air
Example

• Church bell ringing
• Appearance of a man in a tuxedo
• Appearance of a woman in a white gown
• Rice flying through the air
 Wedding has happened!
CEP Use Cases
• Are our business processes running on
  time and correctly?
• Can we detect an opportunity for arbitrage
  in our trading department?
• Are we servicing our call center customer’s
  requests in a timely fashion?
• Was there a breach in our network?
It’s not a technology
It’s a Buzzword
     like SOA!
It’s an Architectural
        Pattern
What do you need for
       CEP?
Event driven
(soft) Real-time
(soft) Real-time
       Right
Across all layers of
   organization
Event Aggregation
Event Relationships

• Causality
• Membership
• Timing
Event Patterns
Domain Specific
  Language
   for Event Processing
What you need for
         CEP
• Event Driven
• Right-time
• Across all layers
• Aggregation, Correlation & Traceability
• Patterns
• DSL
Common CEP
            Operations
•   Windowing
•   Transformation
•   Aggregation/Grouping
•   Merging/Union
•   Filtering
•   Sorting
•   Correlation
•   Pattern Detection
Esper
http://esper.codehaus.org
Esper makes it easier to
    build a CEP app
Not meant to replace
     Databases
But some parallels can
      be made
Esper                         DB

•   Stores queries        •   Stores data

•   Continuous queries    •   On-demand queries

•   Time is a dimension   •   Time is a data type
Esper                    DB

•   EPL             •   SQL

•   Event Streams   •   Tables

•   Events          •   Rows
Esper Processing Model
EPL
Event Processing Language
Event Definition (1/2)



create schema Event (
	 id string, // Event unique identifier
	 ts long      // Timestamp (milliseconds)
);



create schema Tweet (
	 user        string,	 // username (e.g. ‘codebits’)
	 text        string,	 // actual tweet
	 retweet_of string	 // references a Tweet.id
) inherits Event;
Event Definition (2/2)


create schema Hashtag (
	 tweet_id	 string, // references a Tweet.id
	 user 	 	 string,
	 value	 	 string
) inherits Event;



// Create Url and Mention event types as a copy of Hashtag

create schema Url()     copyfrom Hashtag;

create schema Mention() copyfrom Hashtag;
Looks like SQL...




// All events
select * from Event;



// Only tweets
select user, text as status
from Tweet;
Filtering


// Tweets from @codebits
select * from Tweet(user = 'codebits');



// Another way to do it
select * from Tweet where user = 'codebits';



// All occurrences of #codebits not posted by @codebits
select user,
       value as hashtag,
       current_timestamp() as ts
from Hashtag(value = 'codebits' and user != 'codebits');
Stream Creation and Redirection




insert into CodebitsTweets
select * from Tweet(user = ‘codebits’);



select * from CodebitsTweets;
Aggregation



insert into UrlsPerSecond
select count(*) as count from Url.win:time_batch(1 sec);



// Every second (driven by above rule) calculate for last minute
// - average Urls tweeted
// - total Urls tweeted
select avg(count), sum(count)
from UrlsPerSecond.win:length(60);
Grouping




select value as hashtag, count(*)
from Hashtag(value != null).win:time(30 seconds)
group by value;
Simple Event Views




select * from Tweet.win:time(5 min);

select * from Tweet.win:time_batch(1 hour);

select * from Tweet.win:length(10);

select * from Tweet.win:length_batch(10);
Other Standard Event Views



// Don’t use system clock, use event stream property
select * from Tweet.win:ext_timed(ts, 5 min);



// Last 10 tweets per user
select * from Tweet.std:groupwin(user).win:length(10);



// Top 5 Hashtags
select * from HashtagsPerMinute.std:sort(5, count desc);
You can create your
 own custom Views
Correlation

// Associate hashtags used to describe a URL
insert into UrlTags
select u.value as url, h.value as hashtag
from Url.std:lastevent()     as u,
     Hashtag.std:lastevent() as h
where u.tweet_id = h.tweet_id;



insert into UrlTagsCount
select url,
       hashtag,
       count(*) as count
from UrlTags.win:time(1 hour)
group by url, hashtag;
Correlation (1/2)




// Every minute, output Top 3 hashtags per URL
select * from UrlTagsCount.ext:sort(3, count desc)
output snapshot at(*/1,*,*,*,*);
Event Patterns



// Measure how long it takes users to respond to Tweet
insert into ResponseDelay
select t.id        as tweet_id,
       t.user      as author,
       m.value     as responder,
       t.ts        as start_ts,
       m.ts        as stop_ts,
       m.ts - t.ts as duration
from pattern [
	 every (t=Tweet -> m=Mention(value = t.user))
];
Detecting Missing Events




// No Tweet from @codebits in 1 hour
select *
from pattern [ every Tweet(user = ‘codebits’) ->
	 (timer:interval(1 hour) and not Tweet(user = ‘codebits’))
];
Other features
• Subqueries
• Inner, outer joins
• Named windows
• 1 class integration with databases (JDBC)
   st


• Regex-like Event Pattern matching (match-
  recognize)
Esper is awesome!
It’s not a silver bullet
         well, duh!
Memory Usage
Resilience &
Persistence
Weak Pattern matching
Drill-down not trivial
It’s NOT distributed!
Not full-stack
QA
For more: @antonioalegria

Más contenido relacionado

La actualidad más candente

Transactional writes to cloud storage with Eric Liang
Transactional writes to cloud storage with Eric LiangTransactional writes to cloud storage with Eric Liang
Transactional writes to cloud storage with Eric LiangDatabricks
 
Writing Continuous Applications with Structured Streaming PySpark API
Writing Continuous Applications with Structured Streaming PySpark APIWriting Continuous Applications with Structured Streaming PySpark API
Writing Continuous Applications with Structured Streaming PySpark APIDatabricks
 
The architecture of SkySQL
The architecture of SkySQLThe architecture of SkySQL
The architecture of SkySQLMariaDB plc
 
Zero-Copy Event-Driven Servers with Netty
Zero-Copy Event-Driven Servers with NettyZero-Copy Event-Driven Servers with Netty
Zero-Copy Event-Driven Servers with NettyDaniel Bimschas
 
Building a Virtual Data Lake with Apache Arrow
Building a Virtual Data Lake with Apache ArrowBuilding a Virtual Data Lake with Apache Arrow
Building a Virtual Data Lake with Apache ArrowDremio Corporation
 
Netflix viewing data architecture evolution - QCon 2014
Netflix viewing data architecture evolution - QCon 2014Netflix viewing data architecture evolution - QCon 2014
Netflix viewing data architecture evolution - QCon 2014Philip Fisher-Ogden
 
Towards Flink 2.0: Unified Batch & Stream Processing - Aljoscha Krettek, Verv...
Towards Flink 2.0: Unified Batch & Stream Processing - Aljoscha Krettek, Verv...Towards Flink 2.0: Unified Batch & Stream Processing - Aljoscha Krettek, Verv...
Towards Flink 2.0: Unified Batch & Stream Processing - Aljoscha Krettek, Verv...Flink Forward
 
Optimization of OpenNebula VMs for Higher Performance - Boyan Krosnov
Optimization of OpenNebula VMs for Higher Performance - Boyan KrosnovOptimization of OpenNebula VMs for Higher Performance - Boyan Krosnov
Optimization of OpenNebula VMs for Higher Performance - Boyan KrosnovOpenNebula Project
 
[한국IBM] 비정형데이터분석 WEX 솔루션 소개
[한국IBM] 비정형데이터분석 WEX 솔루션 소개[한국IBM] 비정형데이터분석 WEX 솔루션 소개
[한국IBM] 비정형데이터분석 WEX 솔루션 소개Sejeong Kim 김세정
 
Big Data Redis Mongodb Dynamodb Sharding
Big Data Redis Mongodb Dynamodb ShardingBig Data Redis Mongodb Dynamodb Sharding
Big Data Redis Mongodb Dynamodb ShardingAraf Karsh Hamid
 
Migrating Apache Hive Workload to Apache Spark: Bridge the Gap with Zhan Zhan...
Migrating Apache Hive Workload to Apache Spark: Bridge the Gap with Zhan Zhan...Migrating Apache Hive Workload to Apache Spark: Bridge the Gap with Zhan Zhan...
Migrating Apache Hive Workload to Apache Spark: Bridge the Gap with Zhan Zhan...Databricks
 
Introduction to Impala
Introduction to ImpalaIntroduction to Impala
Introduction to Impalamarkgrover
 
How Adobe uses Structured Streaming at Scale
How Adobe uses Structured Streaming at ScaleHow Adobe uses Structured Streaming at Scale
How Adobe uses Structured Streaming at ScaleDatabricks
 
Introduction to Apache Flink - Fast and reliable big data processing
Introduction to Apache Flink - Fast and reliable big data processingIntroduction to Apache Flink - Fast and reliable big data processing
Introduction to Apache Flink - Fast and reliable big data processingTill Rohrmann
 
Hive Bucketing in Apache Spark with Tejas Patil
Hive Bucketing in Apache Spark with Tejas PatilHive Bucketing in Apache Spark with Tejas Patil
Hive Bucketing in Apache Spark with Tejas PatilDatabricks
 

La actualidad más candente (20)

Esper - CEP Engine
Esper - CEP EngineEsper - CEP Engine
Esper - CEP Engine
 
Transactional writes to cloud storage with Eric Liang
Transactional writes to cloud storage with Eric LiangTransactional writes to cloud storage with Eric Liang
Transactional writes to cloud storage with Eric Liang
 
Writing Continuous Applications with Structured Streaming PySpark API
Writing Continuous Applications with Structured Streaming PySpark APIWriting Continuous Applications with Structured Streaming PySpark API
Writing Continuous Applications with Structured Streaming PySpark API
 
The architecture of SkySQL
The architecture of SkySQLThe architecture of SkySQL
The architecture of SkySQL
 
Zero-Copy Event-Driven Servers with Netty
Zero-Copy Event-Driven Servers with NettyZero-Copy Event-Driven Servers with Netty
Zero-Copy Event-Driven Servers with Netty
 
Building a Virtual Data Lake with Apache Arrow
Building a Virtual Data Lake with Apache ArrowBuilding a Virtual Data Lake with Apache Arrow
Building a Virtual Data Lake with Apache Arrow
 
Netflix viewing data architecture evolution - QCon 2014
Netflix viewing data architecture evolution - QCon 2014Netflix viewing data architecture evolution - QCon 2014
Netflix viewing data architecture evolution - QCon 2014
 
Nifi
NifiNifi
Nifi
 
Towards Flink 2.0: Unified Batch & Stream Processing - Aljoscha Krettek, Verv...
Towards Flink 2.0: Unified Batch & Stream Processing - Aljoscha Krettek, Verv...Towards Flink 2.0: Unified Batch & Stream Processing - Aljoscha Krettek, Verv...
Towards Flink 2.0: Unified Batch & Stream Processing - Aljoscha Krettek, Verv...
 
Hive Does ACID
Hive Does ACIDHive Does ACID
Hive Does ACID
 
Optimization of OpenNebula VMs for Higher Performance - Boyan Krosnov
Optimization of OpenNebula VMs for Higher Performance - Boyan KrosnovOptimization of OpenNebula VMs for Higher Performance - Boyan Krosnov
Optimization of OpenNebula VMs for Higher Performance - Boyan Krosnov
 
[한국IBM] 비정형데이터분석 WEX 솔루션 소개
[한국IBM] 비정형데이터분석 WEX 솔루션 소개[한국IBM] 비정형데이터분석 WEX 솔루션 소개
[한국IBM] 비정형데이터분석 WEX 솔루션 소개
 
Big Data Redis Mongodb Dynamodb Sharding
Big Data Redis Mongodb Dynamodb ShardingBig Data Redis Mongodb Dynamodb Sharding
Big Data Redis Mongodb Dynamodb Sharding
 
Introduction to Dremio
Introduction to DremioIntroduction to Dremio
Introduction to Dremio
 
Migrating Apache Hive Workload to Apache Spark: Bridge the Gap with Zhan Zhan...
Migrating Apache Hive Workload to Apache Spark: Bridge the Gap with Zhan Zhan...Migrating Apache Hive Workload to Apache Spark: Bridge the Gap with Zhan Zhan...
Migrating Apache Hive Workload to Apache Spark: Bridge the Gap with Zhan Zhan...
 
Introduction to Impala
Introduction to ImpalaIntroduction to Impala
Introduction to Impala
 
Hadoop Summit Tokyo Apache NiFi Crash Course
Hadoop Summit Tokyo Apache NiFi Crash CourseHadoop Summit Tokyo Apache NiFi Crash Course
Hadoop Summit Tokyo Apache NiFi Crash Course
 
How Adobe uses Structured Streaming at Scale
How Adobe uses Structured Streaming at ScaleHow Adobe uses Structured Streaming at Scale
How Adobe uses Structured Streaming at Scale
 
Introduction to Apache Flink - Fast and reliable big data processing
Introduction to Apache Flink - Fast and reliable big data processingIntroduction to Apache Flink - Fast and reliable big data processing
Introduction to Apache Flink - Fast and reliable big data processing
 
Hive Bucketing in Apache Spark with Tejas Patil
Hive Bucketing in Apache Spark with Tejas PatilHive Bucketing in Apache Spark with Tejas Patil
Hive Bucketing in Apache Spark with Tejas Patil
 

Destacado

Complex Event Processing with Esper
Complex Event Processing with EsperComplex Event Processing with Esper
Complex Event Processing with EsperMatthew McCullough
 
Complex Event Processing in Practice at jDays 2012
Complex Event Processing in Practice at jDays 2012Complex Event Processing in Practice at jDays 2012
Complex Event Processing in Practice at jDays 2012Peter Norrhall
 
Semantic Complex Event Processing at Sem Tech 2010
Semantic Complex Event Processing at Sem Tech 2010Semantic Complex Event Processing at Sem Tech 2010
Semantic Complex Event Processing at Sem Tech 2010Adrian Paschke
 
Complex Event Processing - A brief overview
Complex Event Processing - A brief overviewComplex Event Processing - A brief overview
Complex Event Processing - A brief overviewIstván Dávid
 
Complex Event Processing (CEP) for Next-Generation Security Event Management,...
Complex Event Processing (CEP) for Next-Generation Security Event Management,...Complex Event Processing (CEP) for Next-Generation Security Event Management,...
Complex Event Processing (CEP) for Next-Generation Security Event Management,...Tim Bass
 
Optimizing Your SOA with Event Processing
Optimizing Your SOA with Event ProcessingOptimizing Your SOA with Event Processing
Optimizing Your SOA with Event ProcessingTim Bass
 
TIBCO Business Events Training
TIBCO Business Events TrainingTIBCO Business Events Training
TIBCO Business Events Trainingmindmajixtrainings
 
Complex Event Processing: What?, Why?, How?
Complex Event Processing: What?, Why?, How?Complex Event Processing: What?, Why?, How?
Complex Event Processing: What?, Why?, How?Alexandre Vasseur
 
CEP Overview v1 2 for public use
CEP Overview v1 2 for public useCEP Overview v1 2 for public use
CEP Overview v1 2 for public usePaul Vincent
 
Combating Fraud and Intrusion Threats with Event Processing
Combating Fraud and Intrusion Threats with Event ProcessingCombating Fraud and Intrusion Threats with Event Processing
Combating Fraud and Intrusion Threats with Event ProcessingTim Bass
 
Mythbusters: Event Stream Processing v. Complex Event Processing
Mythbusters: Event Stream Processing v. Complex Event ProcessingMythbusters: Event Stream Processing v. Complex Event Processing
Mythbusters: Event Stream Processing v. Complex Event ProcessingTim Bass
 
Complex Event Processing with Esper
Complex Event Processing with EsperComplex Event Processing with Esper
Complex Event Processing with EsperTed Won
 
WSO2Con USA 2017: Scalable Real-time Complex Event Processing at Uber
WSO2Con USA 2017: Scalable Real-time Complex Event Processing at UberWSO2Con USA 2017: Scalable Real-time Complex Event Processing at Uber
WSO2Con USA 2017: Scalable Real-time Complex Event Processing at UberWSO2
 
Semantic Complex Event Processing
Semantic Complex Event ProcessingSemantic Complex Event Processing
Semantic Complex Event ProcessingAdrian Paschke
 
Intelligent Monitoring
Intelligent MonitoringIntelligent Monitoring
Intelligent MonitoringIntelie
 
Security Events correlation with ESPER
Security Events correlation with ESPERSecurity Events correlation with ESPER
Security Events correlation with ESPERNikolay Klendar
 
Detecting Opportunities and Threats with Complex Event Processing: Case St...
Detecting Opportunities and Threats with Complex Event Processing: Case St...Detecting Opportunities and Threats with Complex Event Processing: Case St...
Detecting Opportunities and Threats with Complex Event Processing: Case St...Tim Bass
 
Complex Event Processing
Complex Event ProcessingComplex Event Processing
Complex Event ProcessingJohn Plummer
 
DEBS 2015 Tutorial : Patterns for Realtime Streaming Analytics
DEBS 2015 Tutorial : Patterns for Realtime Streaming AnalyticsDEBS 2015 Tutorial : Patterns for Realtime Streaming Analytics
DEBS 2015 Tutorial : Patterns for Realtime Streaming AnalyticsSriskandarajah Suhothayan
 

Destacado (20)

Complex Event Processing with Esper
Complex Event Processing with EsperComplex Event Processing with Esper
Complex Event Processing with Esper
 
Complex Event Processing in Practice at jDays 2012
Complex Event Processing in Practice at jDays 2012Complex Event Processing in Practice at jDays 2012
Complex Event Processing in Practice at jDays 2012
 
Semantic Complex Event Processing at Sem Tech 2010
Semantic Complex Event Processing at Sem Tech 2010Semantic Complex Event Processing at Sem Tech 2010
Semantic Complex Event Processing at Sem Tech 2010
 
Complex Event Processing - A brief overview
Complex Event Processing - A brief overviewComplex Event Processing - A brief overview
Complex Event Processing - A brief overview
 
Complex Event Processing (CEP) for Next-Generation Security Event Management,...
Complex Event Processing (CEP) for Next-Generation Security Event Management,...Complex Event Processing (CEP) for Next-Generation Security Event Management,...
Complex Event Processing (CEP) for Next-Generation Security Event Management,...
 
Optimizing Your SOA with Event Processing
Optimizing Your SOA with Event ProcessingOptimizing Your SOA with Event Processing
Optimizing Your SOA with Event Processing
 
TIBCO Business Events Training
TIBCO Business Events TrainingTIBCO Business Events Training
TIBCO Business Events Training
 
Complex Event Processing: What?, Why?, How?
Complex Event Processing: What?, Why?, How?Complex Event Processing: What?, Why?, How?
Complex Event Processing: What?, Why?, How?
 
CEP Overview v1 2 for public use
CEP Overview v1 2 for public useCEP Overview v1 2 for public use
CEP Overview v1 2 for public use
 
Combating Fraud and Intrusion Threats with Event Processing
Combating Fraud and Intrusion Threats with Event ProcessingCombating Fraud and Intrusion Threats with Event Processing
Combating Fraud and Intrusion Threats with Event Processing
 
Mythbusters: Event Stream Processing v. Complex Event Processing
Mythbusters: Event Stream Processing v. Complex Event ProcessingMythbusters: Event Stream Processing v. Complex Event Processing
Mythbusters: Event Stream Processing v. Complex Event Processing
 
Complex Event Processing with Esper
Complex Event Processing with EsperComplex Event Processing with Esper
Complex Event Processing with Esper
 
WSO2Con USA 2017: Scalable Real-time Complex Event Processing at Uber
WSO2Con USA 2017: Scalable Real-time Complex Event Processing at UberWSO2Con USA 2017: Scalable Real-time Complex Event Processing at Uber
WSO2Con USA 2017: Scalable Real-time Complex Event Processing at Uber
 
Semantic Complex Event Processing
Semantic Complex Event ProcessingSemantic Complex Event Processing
Semantic Complex Event Processing
 
Intelligent Monitoring
Intelligent MonitoringIntelligent Monitoring
Intelligent Monitoring
 
CEP: from Esper back to Akka
CEP: from Esper back to AkkaCEP: from Esper back to Akka
CEP: from Esper back to Akka
 
Security Events correlation with ESPER
Security Events correlation with ESPERSecurity Events correlation with ESPER
Security Events correlation with ESPER
 
Detecting Opportunities and Threats with Complex Event Processing: Case St...
Detecting Opportunities and Threats with Complex Event Processing: Case St...Detecting Opportunities and Threats with Complex Event Processing: Case St...
Detecting Opportunities and Threats with Complex Event Processing: Case St...
 
Complex Event Processing
Complex Event ProcessingComplex Event Processing
Complex Event Processing
 
DEBS 2015 Tutorial : Patterns for Realtime Streaming Analytics
DEBS 2015 Tutorial : Patterns for Realtime Streaming AnalyticsDEBS 2015 Tutorial : Patterns for Realtime Streaming Analytics
DEBS 2015 Tutorial : Patterns for Realtime Streaming Analytics
 

Similar a Complex Event Processing with Esper

CQRS / ES & DDD Demystified
CQRS / ES & DDD DemystifiedCQRS / ES & DDD Demystified
CQRS / ES & DDD DemystifiedVic Metcalfe
 
The Golden Rules - Detecting more with RSA Security Analytics
The Golden Rules  - Detecting more with RSA Security AnalyticsThe Golden Rules  - Detecting more with RSA Security Analytics
The Golden Rules - Detecting more with RSA Security AnalyticsDemetrio Milea
 
Reactive Development: Commands, Actors and Events. Oh My!!
Reactive Development: Commands, Actors and Events.  Oh My!!Reactive Development: Commands, Actors and Events.  Oh My!!
Reactive Development: Commands, Actors and Events. Oh My!!David Hoerster
 
Azure Digital Twins 2.0
Azure Digital Twins 2.0Azure Digital Twins 2.0
Azure Digital Twins 2.0Marco Parenzan
 
Real World Event Sourcing and CQRS
Real World Event Sourcing and CQRSReal World Event Sourcing and CQRS
Real World Event Sourcing and CQRSMatthew Hawkins
 
Scalable Event Processing with WSO2CEP @ WSO2Con2015eu
Scalable Event Processing with WSO2CEP @  WSO2Con2015euScalable Event Processing with WSO2CEP @  WSO2Con2015eu
Scalable Event Processing with WSO2CEP @ WSO2Con2015euSriskandarajah Suhothayan
 
540slidesofnodejsbackendhopeitworkforu.pdf
540slidesofnodejsbackendhopeitworkforu.pdf540slidesofnodejsbackendhopeitworkforu.pdf
540slidesofnodejsbackendhopeitworkforu.pdfhamzadamani7
 
Data to Insight in a Flash: Introduction to Real-Time Analytics with WSO2 Com...
Data to Insight in a Flash: Introduction to Real-Time Analytics with WSO2 Com...Data to Insight in a Flash: Introduction to Real-Time Analytics with WSO2 Com...
Data to Insight in a Flash: Introduction to Real-Time Analytics with WSO2 Com...WSO2
 
Getting Started with OpenSplice and Esper
Getting Started with OpenSplice and EsperGetting Started with OpenSplice and Esper
Getting Started with OpenSplice and EsperAngelo Corsaro
 
AWS Meet-up: Logging At Scale on AWS
AWS Meet-up: Logging At Scale on AWSAWS Meet-up: Logging At Scale on AWS
AWS Meet-up: Logging At Scale on AWSChris Riddell
 
BSIDES-PR Keynote Hunting for Bad Guys
BSIDES-PR Keynote Hunting for Bad GuysBSIDES-PR Keynote Hunting for Bad Guys
BSIDES-PR Keynote Hunting for Bad GuysJoff Thyer
 
JavaOne 2015: Top Performance Patterns Deep Dive
JavaOne 2015: Top Performance Patterns Deep DiveJavaOne 2015: Top Performance Patterns Deep Dive
JavaOne 2015: Top Performance Patterns Deep DiveAndreas Grabner
 
Azure tales: a real world CQRS and ES Deep Dive - Andrea Saltarello
Azure tales: a real world CQRS and ES Deep Dive - Andrea SaltarelloAzure tales: a real world CQRS and ES Deep Dive - Andrea Saltarello
Azure tales: a real world CQRS and ES Deep Dive - Andrea SaltarelloITCamp
 
Data Onboarding Breakout Session
Data Onboarding Breakout SessionData Onboarding Breakout Session
Data Onboarding Breakout SessionSplunk
 
«Real Time» Web Applications with SignalR in ASP.NET
«Real Time» Web Applications with SignalR in ASP.NET«Real Time» Web Applications with SignalR in ASP.NET
«Real Time» Web Applications with SignalR in ASP.NETAlessandro Giorgetti
 
MFF UK - Advanced iOS Topics
MFF UK - Advanced iOS TopicsMFF UK - Advanced iOS Topics
MFF UK - Advanced iOS TopicsPetr Dvorak
 
Kerberos survival guide
Kerberos survival guideKerberos survival guide
Kerberos survival guideJ.D. Wade
 
SplunkLive! Presentation - Data Onboarding with Splunk
SplunkLive! Presentation - Data Onboarding with SplunkSplunkLive! Presentation - Data Onboarding with Splunk
SplunkLive! Presentation - Data Onboarding with SplunkSplunk
 

Similar a Complex Event Processing with Esper (20)

CQRS / ES & DDD Demystified
CQRS / ES & DDD DemystifiedCQRS / ES & DDD Demystified
CQRS / ES & DDD Demystified
 
The Golden Rules - Detecting more with RSA Security Analytics
The Golden Rules  - Detecting more with RSA Security AnalyticsThe Golden Rules  - Detecting more with RSA Security Analytics
The Golden Rules - Detecting more with RSA Security Analytics
 
Reactive Development: Commands, Actors and Events. Oh My!!
Reactive Development: Commands, Actors and Events.  Oh My!!Reactive Development: Commands, Actors and Events.  Oh My!!
Reactive Development: Commands, Actors and Events. Oh My!!
 
Azure Digital Twins 2.0
Azure Digital Twins 2.0Azure Digital Twins 2.0
Azure Digital Twins 2.0
 
Real World Event Sourcing and CQRS
Real World Event Sourcing and CQRSReal World Event Sourcing and CQRS
Real World Event Sourcing and CQRS
 
Scalable Event Processing with WSO2CEP @ WSO2Con2015eu
Scalable Event Processing with WSO2CEP @  WSO2Con2015euScalable Event Processing with WSO2CEP @  WSO2Con2015eu
Scalable Event Processing with WSO2CEP @ WSO2Con2015eu
 
540slidesofnodejsbackendhopeitworkforu.pdf
540slidesofnodejsbackendhopeitworkforu.pdf540slidesofnodejsbackendhopeitworkforu.pdf
540slidesofnodejsbackendhopeitworkforu.pdf
 
Data to Insight in a Flash: Introduction to Real-Time Analytics with WSO2 Com...
Data to Insight in a Flash: Introduction to Real-Time Analytics with WSO2 Com...Data to Insight in a Flash: Introduction to Real-Time Analytics with WSO2 Com...
Data to Insight in a Flash: Introduction to Real-Time Analytics with WSO2 Com...
 
Getting Started with OpenSplice and Esper
Getting Started with OpenSplice and EsperGetting Started with OpenSplice and Esper
Getting Started with OpenSplice and Esper
 
AWS Meet-up: Logging At Scale on AWS
AWS Meet-up: Logging At Scale on AWSAWS Meet-up: Logging At Scale on AWS
AWS Meet-up: Logging At Scale on AWS
 
BSIDES-PR Keynote Hunting for Bad Guys
BSIDES-PR Keynote Hunting for Bad GuysBSIDES-PR Keynote Hunting for Bad Guys
BSIDES-PR Keynote Hunting for Bad Guys
 
JavaOne 2015: Top Performance Patterns Deep Dive
JavaOne 2015: Top Performance Patterns Deep DiveJavaOne 2015: Top Performance Patterns Deep Dive
JavaOne 2015: Top Performance Patterns Deep Dive
 
Azure tales: a real world CQRS and ES Deep Dive - Andrea Saltarello
Azure tales: a real world CQRS and ES Deep Dive - Andrea SaltarelloAzure tales: a real world CQRS and ES Deep Dive - Andrea Saltarello
Azure tales: a real world CQRS and ES Deep Dive - Andrea Saltarello
 
Data Onboarding Breakout Session
Data Onboarding Breakout SessionData Onboarding Breakout Session
Data Onboarding Breakout Session
 
«Real Time» Web Applications with SignalR in ASP.NET
«Real Time» Web Applications with SignalR in ASP.NET«Real Time» Web Applications with SignalR in ASP.NET
«Real Time» Web Applications with SignalR in ASP.NET
 
MFF UK - Advanced iOS Topics
MFF UK - Advanced iOS TopicsMFF UK - Advanced iOS Topics
MFF UK - Advanced iOS Topics
 
Kerberos survival guide
Kerberos survival guideKerberos survival guide
Kerberos survival guide
 
F8 tech talk_pinterest_v4
F8 tech talk_pinterest_v4F8 tech talk_pinterest_v4
F8 tech talk_pinterest_v4
 
WSO2 Complex Event Processor
WSO2 Complex Event ProcessorWSO2 Complex Event Processor
WSO2 Complex Event Processor
 
SplunkLive! Presentation - Data Onboarding with Splunk
SplunkLive! Presentation - Data Onboarding with SplunkSplunkLive! Presentation - Data Onboarding with Splunk
SplunkLive! Presentation - Data Onboarding with Splunk
 

Último

ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProduct Anonymous
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodJuan lago vázquez
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDropbox
 
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Orbitshub
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfsudhanshuwaghmare1
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FMESafe Software
 
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Bhuvaneswari Subramani
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native ApplicationsWSO2
 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamUiPathCommunity
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Jeffrey Haguewood
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobeapidays
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyKhushali Kathiriya
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FMESafe Software
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024The Digital Insurer
 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesrafiqahmad00786416
 
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Angeliki Cooney
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistandanishmna97
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAndrey Devyatkin
 

Último (20)

ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 AmsterdamDEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
 
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
 
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 

Complex Event Processing with Esper

Notas del editor

  1. Introduce myself\nTalk about Goals for this presentation\n- motivate you to further explore the world of Complex Event Processing\nget you started with building your own CEP apps with Esper\nyou wont learn how you use it but you will have an idea where to start\n\n
  2. What is Complex Event Processing?\nIs anyone here familiar with the term?\n-> Ask around\n
  3. It’s actually a pretty simple but powerful concept.\nIntuitively we all know what it is.\n\nA Complex Event is simply an event that can be inferred from other simpler events.\n\nComplex Event Processing is, very basically, a framework for analyzing and extract meaning, knowledge and value from the continuous stream of Events produced and consumed by modern information systems:\n- business transactions\n- call center\n- financial\n- network events\n- events coming from Web APIs\n\nThis concept was born in 2002, by David Luckham in his book The Power of Events. There he explores the evolution of event-driven businesses and what he calls the Event Cloud which are all the events that modern businesses and systems produce and consume.\n\nI highly recommend anyone interested in the area to read this book. Despite being almost a decade old, most of the concepts and principles still hold today and are still followed by few.\n\n
  4. Wikipedia\n\nWhat can we infer from these?\n\nWe can infer a new event, a Complex Event: a Wedding happened!\n\n\n\n
  5. BAM - call center, billing, payments, etc...\nHFT\nNetwork Intrusion Detection\nFraud Detection\nSensor Networks\nlike Fire, Tsunami detection\neolic\n
  6. It’s a technological framework\nAlthough you normally call a CEP system, one that presents a few defining characteristics\n
  7. You could say it’s now a buzzword used by most Enterprise software providers\n\nSubject to a set of commercialization fuzz\n
  8. 0.5\n\nBut it’s actually useful as a framework to think about how to take advantage of the Event cloud, that is to say, all the data and events generated at amazing pace nowadays.\n\nSimple set of principles about event processing and the use of events, and that is going to be subject to a similar set of commercialization fuzz in the future -> LUKHAM\n\nCEP is about patterns of events. What kinds of patterns do you want to recognize? How do you define patterns? What are the important elements of an event pattern? For example, is timing important? Is large numbers of events important? Are their cause or relationships important? Should you be able to define patterns that involve the causality between events? So on. What do you do when you recognize a pattern? Can you abstract it into a higher lever event? OK, now you have hierarchies of events. So now, what sorts of hierarchies are important in event processing? Can you define your own hierarchy? Can you change it easily? Can you drill down from a higher-level event to find out how it happened? All of those kinds of issues form the principles of complex event processing. It's just a different take on what you do with that. -> LUKHAM\n\nComplex event processing (CEP) consists of processing many events happening across all the layers of an organization, identifying the most meaningful events within the event cloud, analyzing their impact, and taking subsequent action in real time. -> WIKIPEDIA\n\n"Complex Event Processing, or CEP, is primarily an event processing concept that deals with the task of processing multiple events with the goal of identifying the meaningful events within the event cloud. CEP employs techniques such as detection of complex patterns of many events, event correlation and abstraction, event hierarchies, and relationships between events such as causality, membership, and timing, and event-driven processes." -> WIKIPEDIA\n
  9. This the basic CEP architecture\nEDA\nEvent Sources\nUI => ALERTS are most important on a tactical level\n\nEvent Sources\n- Events are generated at a freakish pace from all over the place.\n- Web APIs\n- Logs\n- Business transactions\n\nAs an EDA, all incoming events are published in a messaging bus\n\nEvents that go into this system must be preprocessed and republished\n- transformed\n- normalized\n- split\n\n\n
  10. CEP system\n\n\nDomain Specific Language\nContinuous Query\nTime or Length Windows\nTemporal Pattern Matching\n\nEvent pattern detection\nEvent abstraction\nEvent hierarchies\nEvent relationships\n- causality\n- membership\n- timing\nAbstracting event-driven processes => ??\n\n
  11. Continuous Query\nAsync\nContinuously responds to the actual events passing through the system\nFits into EDA\n\nSegway into Realtime...\n
  12. Low latency\nReact When it matters!!\nHigh-throughput => because we are dealing with a lot of data/events\n
  13. Low latency\nReact When it matters!!\nHigh-throughput => because we are dealing with a lot of data/events\n
  14. Goes accross all layers of an organization\n\nEvent hierarchies\n\nTraceability => DRILL DOWN\n
  15. Summarize a bunch of events:\n- averages, counts, etc...\n
  16. Horizontal\n\nand Vertical\n\nBy cause\nTiming\nMembership\n\nDrill down\n
  17. \n
  18. DSL to make it easy and performant to express the Event Processing Rules that realize the previous features and All Operations\n
  19. General but rigorous definition\n
  20. Continuously applied/Streaming\nTime/Length Windows\n
  21. Commercial/Open Source\nJVM\nLatency\nThroughput\nDeals with lots of rules\nEPL\n\nFrame remaining talk\n
  22. Event Stream Processing\nCEP System\n
  23. It’s not the only piece you need\n\nYou don’t need to build it yourself! \n\nAll previous Operations are supported\n\nNo glue code we are able to easily apply filters, aggregations! Esper automatically maintains only the data we need to fulfill our queries and expires old events as new ones arrive.\n
  24. 0.3\n\nNeither Databases nor OLAPs\n\n
  25. 0.3\n
  26. 1\n\nSome highly focused and optimized memory-based stores improve the situation and can, in some cases actually be enough.\n\nHowhever, there is no language constructs for continuous event processing and querying\n
  27. 1\n\nSome highly focused and optimized memory-based stores improve the situation and can, in some cases actually be enough.\n\nHowhever, there is no language constructs for continuous event processing and querying\n
  28. 2\n\nEPL queries are created and stored in the engine, and publish results to listeners as events are received by the engine or timer events occur that match the criteria specified in the query. Events can also be obtained from running EPL queries via the safeIterator and iterator methods that provide a pull-data API.\nThe select clause in an EPL query specifies the event properties or events to retrieve. The from clause in an EPL query specifies the event stream definitions and stream names to use. The where clause in an EPL query specifies search conditions that specify which event or event combination to search for. For example, the following statement returns the average price for IBM stock ticks in the last 30 seconds.\nThe Event Processing Language (EPL) is a SQL-like language with SELECT, FROM, WHERE, GROUP BY, HAVING and ORDER BY clauses. Streams replace tables as the source of data with events replacing rows as the basic unit of data. Since events are composed of data, the SQL concepts of correlation through joins, filtering and aggregation through grouping can be effectively leveraged.\nThe INSERT INTO clause is recast as a means of forwarding events to other streams for further downstream processing. External data accessible through JDBC may be queried and joined with the stream data. Additional clauses such as the PATTERN and OUTPUT clauses are also available to provide the missing SQL language constructs specific to event processing.\nThe purpose of the UPDATE clause is to update event properties. Update takes place before an event applies to any selecting statements or pattern statements.\nEPL statements are used to derive and aggregate information from one or more streams of events, and to join or merge event streams. This section outlines EPL syntax. It also outlines the built-in views, which are the building blocks for deriving and aggregating information from event streams.\nEPL statements contain definitions of one or more views. Similar to tables in a SQL statement, views define the data available for querying and filtering. Some views represent windows over a stream of events. Other views derive statistics from event properties, group events or handle unique event property values. Views can be staggered onto each other to build a chain of views. The Esper engine makes sure that views are reused among EPL statements for efficiency.\nThe built-in set of views is:\nData window views: win:length, win:length_batch, win:time, win:time_batch, win:time_length_batch, win:time_accum, win:ext_timed, ext:sort_window, ext:time_order, std:unique, std:groupwin, std:lastevent, std:firstevent, std:firstunique, win:firstlength, win:firsttime. \nViews that derive statistics: std:size, stat:uni, stat:linest, stat:correl, stat:weighted_avg. \nEPL provides the concept of named window. Named windows are data windows that can be inserted-into and deleted-from by one or more statements, and that can queried by one or more statements. Named windows have a global character, being visible and shared across an engine instance beyond a single statement. Use the CREATE WINDOW clause to create named windows. Use the ON MERGE clause to atomically merge events into named window state, the INSERT INTO clause to insert data into a named window, the ON DELETE clause to remove events from a named window, the ON UPDATE clause to update events held by a named window and the ON SELECT clause to perform a query triggered by a pattern or arriving event on a named window. Finally, the name of the named window can occur in a statement's FROM clause to query a named window or include the named window in a join or subquery.\nEPL allows execution of on-demand (fire-and-forget, non-continuous, triggered by API) queries against named windows through the runtime API. The query engine automatically indexes named window data for fast access by ON SELECT/UPDATE/INSERT/DELETE without the need to create an index explicitly. For fast on-demand query execution via runtime API use the CREATE INDEX syntax to create an explicit index.\nUse CREATE SCHEMA to declare an event type.\nVariables can come in handy to parameterize statements and change parameters on-the-fly and in response to events. Variables can be used in an expression anywhere in a statement as well as in the output clause for dynamic control of output rates.\nEsper can be extended by plugging-in custom developed views and aggregation functions.\n\n\nSegway into the EPL\n
  29. \n
  30. Ways to define events: API, modules, etc…\n\nEvent representations\n\nThe event type will then be used in the proper rules/queries, as you would use a Table name in SQL.\n\nInheritance\n
  31. \n
  32. Inheritance enables polymorphic rules\n
  33. \n
  34. \n
  35. Rate of published URLs per minute\n
  36. Rate of hashtag publishing per 30 seconds\nFor each Hashtag\n
  37. Sliding\nTumbling\n
  38. Chaining - View Composition\nOrder matters\n\n
  39. TRIX\nSentiment Injection\n
  40. \n
  41. \n
  42. Great for transactions!\n\n\n
  43. Very common case\nA Missing Event is an Event\n
  44. \n
  45. \n
  46. \n
  47. CORRELATION/JOINS/PATTERNS\n
  48. \n
  49. It’s not as powerful as what you can find in rules engines\n\nYou can circunvent this by writing your own extensions in a JVM language\n\nCould be better\n\n
  50. There’s no native support for tracing causal relationships between events\n\nYou have to build it in your rules\n
  51. Only the commercial version\n\nYou can build your own\n
  52. Rails\nFeedzai\n
  53. Streambase\nFeedzai\nSiddhi-CEP\nETALIS\nOracle CEP\nMicrosoft...\nApama\nRuleCore\nDrools Fusion\n...\n
  54. \n