SlideShare a Scribd company logo
1 of 47
Download to read offline
I N P U R S U I T O F M E S S A G I N G
B R O K E R ( S )
D AV I D G E V O R K YA N
@ d a v i d g e v
d a v i d g e v o r k y a n
P R I M A RY G O A L
• S TA B L E
• A C T I V E & H A S P R O P E R S U P P O RT
• S AT I S F I E S P E R F O R M A N C E R E Q U I R E M E N T S
• O U R P E A K L O A D P E R N O D E 1 0 0 0 M S G / S E C ,
6 0 M L N / D AY
• M U S M E S S A G E S I Z E ~ 4 K B
• S I N G L E S P S M E S S A G E S I Z E ~ 2 . 2 K B
• M D S M E S S A G E S I Z E ~ 6 1 5 K B
• B E T T E R T H A N
2 1 PA RT I C I PA N T S
7 F E AT U R E S E A C H
V E RY I M P O RTA N T F E AT U R E S
• H I G H AVA I L A B I L I T Y / R E P L I C AT I O N
• P E R S I S T E N C E / D U R A B I L I T Y
• D E V E L O P E R F R I E N D LY
• B R O K E R E D
• G U A R A N T E E D D E L I V E RY & D E L I V E RY
A C K N O W L E D G E M E N T S
• E A S Y T O C O N F I G U R E
• S TA B L E E N O U G H F O R P R O D U C T I O N
• M E T R I C E X P O S U R E
V O T E D B Y AT L E A S T 3 0 %
L E S S I M P O RTA N T F E AT U R E S
• M A N A G E M E N T U I
• H A D O O P E C O S Y S T E M
• O P E N S O U R C E
• W E B S O C K E T S U P P O RT
• I T E M E X P I R AT I O N
• O P E R AT I O N S F R I E N D LY
• VA R I E T Y O F D R I V E R S U P P O RT
• J M S C O M P L I A N T
• A C T I V E D E V E L O P M E N T / C U T T I N G E D G E
V O T E D B Y AT L E A S T 5 %
N O T I M P O RTA N T F E AT U R E S
• B R O K E R L E S S ( P E E R - T O - P E E R )
• G U A R A N T E E D O R D E R O F D E L I V E RY
• T R A C I N G
• D E A D L E T T E R E X C H A N G E S U P P O RT
• V I RT U A L I Z AT I O N F R I E N D LY
V O T E D B Y L E S S T H A N 5 %
a f t e r c o n s i d e r i n g “ Ve r y I m p o r t a n t F e a t u re s ”
N O 	
   O F F I C I A L 	
  
JAVA 	
   D R I V E R
N O 	
   O F F I C I A L 	
  
JAVA 	
   D R I V E R
R I S K 	
   O F 	
   B E I N G 	
  
R E P L AC E D 	
   BY 	
   A P O L LO
R A B B I T M Q I S A N E F F I C I E N T, H I G H LY
S C A L A B L E , A N D E A S Y- T O - D E P L O Y
Q U E U I N G S Y S T E M T H AT M A K E S
H A N D L I N G M E S S A G E T R A F F I C
V I RT U A L LY E F F O RT L E S S
Source: http://stackshare.io and others
K A F K A I S A D I S T R I B U T E D ,
PA RT I T I O N E D , R E P L I C AT E D C O M M I T
L O G S E R V I C E . I T P R O V I D E S T H E
F U N C T I O N A L I T Y O F A M E S S A G I N G
S Y S T E M , W I T H A U N I Q U E D E S I G N
Source: http://stackshare.io and others
B E N C H M A R K . I O
R O C K E T L A U N C H E R
B E N C H M A R K S C A N P R E D I C T L O A D U N D E R
C E RTA I N C O N D I T I O N S , B U T A R E FA R F R O M
B E I N G P E R F E C T.
T H E R E A L P R E D I C T O R I S R U N N I N G I N
S H A D O W M O D E
M A C H I N E D E TA I L S
r3.2xlarge - Optimized for memory-intensive applications
8 cores - Intel Xeon E5-2670 v2 (Ivy Bridge) Processors
61GB of RAM
160GB SSD Memory
Ubuntu: 14.04 64bit AMD
Java: 1.7.0_79 64bit
RabbitMQ: 3.5.2
Apache Kafka: 2.9.2-0.8.2.1
1 P / 1 C / 1 K B / T O P I C
P R O D U C E RTHROUGHPUT/
SECOND
0
30,000
60,000
90,000
120,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
Kafka Guaranteed Delivery
C O N S U M E R
THROUGHPUT/
SECOND
0
15,000
30,000
45,000
60,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
Kafka Guaranteed Delivery
1 P / 1 C / 4 K B / T O P I C
P R O D U C E RTHROUGHPUT/
SECOND
0
15,000
30,000
45,000
60,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
Kafka Guaranteed Delivery
C O N S U M E R
THROUGHPUT/
SECOND
0
10,000
20,000
30,000
40,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
Kafka Guaranteed Delivery
1 P / 1 C / 1 0 0 K B / T O P I C
P R O D U C E RTHROUGHPUT/
SECOND
0
2,500
5,000
7,500
10,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
Kafka Guaranteed Delivery
C O N S U M E R
THROUGHPUT/
SECOND
0
2,250
4,500
6,750
9,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
Kafka Guaranteed Delivery
1 P / 0 C / 4 K B / T O P I C
P R O D U C E R
THROUGHPUT/
SECOND
0
15,000
30,000
45,000
60,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
Kafka Guaranteed Delivery
L O A D
0 P / 1 C / 4 K B / T O P I C
C O N S U M E R
THROUGHPUT/
SECOND
0
35,000
70,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
Kafka Guaranteed Delivery
U N L O A D
5 P / 5 C / 4 K B / T O P I C
P R O D U C E RTHROUGHPUT/
SECOND
0
4,750
9,500
14,250
19,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka Guaranteed Delivery (1 partition)
Kafka Guaranteed Delivery (5 partitions)
RabbitMQ Guaranteed Delivery (Durable)
C O N S U M E R
THROUGHPUT/
SECOND
0
4,000
8,000
12,000
16,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka Guaranteed Delivery (1 partition)
Kafka Guaranteed Delivery (5 partitions)
RabbitMQ Guaranteed Delivery (Durable)
5 P / 5 C / 4 K B / T O P I C
P R O D U C E RTHROUGHPUT/
SECOND
0
40,000
80,000
120,000
160,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
C O N S U M E R
THROUGHPUT/
SECOND
0
15,000
30,000
45,000
60,000
1 2 3
RabbitMQ Guaranteed Delivery
Kafka No Guarantees On Delivery
L AT E N C Y F O R B O T H
M E A N < 1 M S
M A X < 4 0 M S
S T R E N G T H S
• R E A L LY N I C E D E S I G N F O R L O G S H I P P I N G , E . G . I F Y O U WA N T T O
W R I T E A V O L AT I L E E V E N T F I R E H O S E T O D I S K , A N D N E E D
' E L A S T I C ' C O N S U M P T I O N
• I M P L E M E N T S B U L K I N G A N D B U F F E R I N G ( W H E N W R I T I N G T O D I S K )
H E N C E R E A L LY P E R F O R M A N T
• VA R I E T Y O F T E C H N O L O G Y I N T E G R AT I O N S I N H A D O O P
E C O S Y S T E M , S P E C I F I C A L LY F O R S T R E A M P R O C E S S I N G
W E A K N E S S E S
• N O T B U I LT F O R U S E I N T R A N S A C T I O N A L S I T U AT I O N S
• W E A K D E L I V E RY G U A R A N T E E S
• A M AT E U R C O N S U M E R A N D P R O D U C E R C O D E I M P L E M E N TAT I O N S
• D O E S N ' T H AV E M E S S A G E A C K N O W L E D G E M E N T S B E T W E E N
B R O K E R - > C O N S U M E R
• E X T R A C O M P L E X I T Y B E C A U S E O F Z O O K E E P E R ( B A D R E C O V E RY
W H E N E I T H E R T H E Z O O K E E P E R O R B R O K E R D I E )
• E X P E R I E N C E D B Y E L E VAT E D T E A M
• D O E S N ’ T H AV E A N O T I O N O F N O N - P E R S I S T E N T Q U E U E / T O P I C
• V E RY C L O S E T I E B E T W E E N C O N S U M E R C O U N T S A N D PA RT I T I O N S
( I F L E S S C O N S U M E R S T H A N PA RT I T I O N S , S O M E C O N S U M E R S W I L L
D O N O T H I N G )
• L O G C L E A N E R N E E D S T U N I N G , O T H E R W I S E Y O U Q U I C K LY R U N
O U T O F S PA C E
• D O E S N ’ T P E R F O R M W E L L F O R L A R G E M E S S A G E S
• N E E D T O B U Y S U P P O RT
• R O U T I N G N O T I O N S A R E N O T S U P P O RT E D
• L E A R N I N G C U R V E I S S T E E P
S T R E N G T H S
• E A S Y T O S E T U P W I T H V I RT U A L LY N O I N T E R V E N T I O N ( I T J U S T
W O R K S )
• I M P L E M E N T S P R O P E R D E L I V E RY G U A R A N T E E S
• C O M P R E H E N S I V E D O C U M E N TAT I O N ( A N Y T H I N G I WA N T E D T O
F I N D WA S AT M Y F I N G E RT I P )
• M AT U R E P R O D U C T
• P R O V I D E S A VA R I E T Y O F M E S S A G E R O U T I N G C A PA B I L I T I E S
( E X C H A N G E , B I N D I N G A N D Q U E U I N G M O D E L )
• VA R I E T Y O F L A R G E C O M PA N I E S U S E I T A S A M E S S A G E B U S
• E A S Y M I G R AT I O N F R O M E X I S T I N G J M S C O M P L I A N T S Y S T E M S
• AVA I L A B I L I T Y O F C H E F C O O K B O O K
• S U P P O RT S N O T I O N O F R O U T I N G E X C H A N G E S
• R A B B I T M Q A S A S E R V I C E : H T T P : / / W W W. C L O U D A M Q P. C O M /
W E A K N E S S E S
• M A X I M U M O U T O F T H E B O X T H R O U G H P U T I S 5 0 K / S E C
( A LT H O U G H I T I S FA I R T O M E N T I O N T H AT L A R G E I N S TA L L AT I O N S ,
U P T O 1 . 3 M L N / S E C E X I S T )
R E C O M M E N D AT I O N
• U S E R A B B I T M Q A S A S T R A I G H T R E P L A C E M E N T F O R O U R C U R R E N T
H O R N E T Q I N S TA L L AT I O N
• E A S E O F S E T U P
• S I M P L I C I T Y O F M I G R AT I O N
• S U P P O RT O F R O U T I N G C A PA B I L I T I E S A N D J M S C O M P L I A N C Y
• M E E T S O U R P E R F O R M A N C E R E Q U I R E M E N T S
• G R E AT D O C U M E N TAT I O N A N D C O M M U N I T Y S U P P O RT
• P R O F E S S I O N A L S U P P O RT I S AVA I L A B L E F R O M P I V O TA L
• U S E K A F K A F O R L O G P R O C E S S I N G C A S E S T H AT R E Q U I R E N O
G U A R A N T E E S O N D E L I V E RY
• G O O D F O R S T R E A M P R O C E S S I N G
• G O O D F O R M E T R I C S L O A D I N G A N D P R O C E S S I N G
• L O G D E L I V E RY A N D P R O C E S S I N G
• E X C E P T I O N T R A C K I N G
• F R A U D A N A LY S I S
• H O RT O N W O R K S C E RT I F I E D K A F K A D I S T R I B U T I O N I S AVA I L A B L E
1 P / 1 C / 1 K B / Q U E U E
N O N P E R S I S T E N T
1 P / 1 C / 1 K B / Q U E U E
P E R S I S T E N T
sample missing
not an issue
1 P / 1 C / 1 K B / T O P I C
N O N P E R S I S T E N T
hornetq-2.2.5
rabbitmq-2.7.0
3 . 5 . 2 	
   I S 	
   M U C H 	
  
FA S T E R
hornetq-2.2.5
rabbitmq-2.7.0
3 . 5 . 2 	
   I S 	
   M U C H 	
  
FA S T E R
5 P / 5 C / 1 K B / T O P I C
P E R S I S T E N T
5 P / 5 C / 2 5 6 K B / T O P I C
P E R S I S T E N T
R E F E R E N C E S
• h t t p : / / w w w. r a b b i t m q . c o m / b l o g / 2 0 1 2 / 0 4 / 2 5 / r a b b i t m q -
p e r f o r m a n c e - m e a s u re m e n t s - p a r t - 2 /
• h t t p : / / h i r a m c h i r i n o . c o m / s t o m p - b e n c h m a r k / e c 2 - c 1 . x l a rg e /
i n d e x . h t m l
• h t t p s : / / e n g i n e e r i n g . l i n k e d i n . c o m / k a f k a / b e n c h m a r k i n g -
a p a c h e - k a f k a - 2 - m i l l i o n - w r i t e s - s e c o n d - t h re e - c h e a p -
m a c h i n e s
• h t t p : / / b l o g . p i v o t a l . i o / p i v o t a l / p ro d u c t s / r a b b i t m q - h i t s - o n e -
m i l l i o n - m e s s a g e s - p e r- s e c o n d - o n - g o o g l e - c o m p u t e - e n g i n e
T H A N K Y O U
Q U E S T I O N S ?
C R E D I T S :
The Noun Project
http://thenounproject.com
Visual Elements From

More Related Content

What's hot

Semantic Search Engine: Semantic Search and Query Parsing with Phrases and En...
Semantic Search Engine: Semantic Search and Query Parsing with Phrases and En...Semantic Search Engine: Semantic Search and Query Parsing with Phrases and En...
Semantic Search Engine: Semantic Search and Query Parsing with Phrases and En...Koray Tugberk GUBUR
 
Cloud Foundryで学ぶ、PaaSのしくみ講座
Cloud Foundryで学ぶ、PaaSのしくみ講座Cloud Foundryで学ぶ、PaaSのしくみ講座
Cloud Foundryで学ぶ、PaaSのしくみ講座Kazuto Kusama
 
Dockerイメージで誰でも気軽にMroonga体験
Dockerイメージで誰でも気軽にMroonga体験Dockerイメージで誰でも気軽にMroonga体験
Dockerイメージで誰でも気軽にMroonga体験yoku0825
 
Apache Bigtopによるオープンなビッグデータ処理基盤の構築(オープンデベロッパーズカンファレンス 2021 Online 発表資料)
Apache Bigtopによるオープンなビッグデータ処理基盤の構築(オープンデベロッパーズカンファレンス 2021 Online 発表資料)Apache Bigtopによるオープンなビッグデータ処理基盤の構築(オープンデベロッパーズカンファレンス 2021 Online 発表資料)
Apache Bigtopによるオープンなビッグデータ処理基盤の構築(オープンデベロッパーズカンファレンス 2021 Online 発表資料)NTT DATA Technology & Innovation
 
Personal Agility: From Personal Satisfaction to Professional Impact
Personal Agility: From Personal Satisfaction to Professional ImpactPersonal Agility: From Personal Satisfaction to Professional Impact
Personal Agility: From Personal Satisfaction to Professional ImpactPeter Stevens
 
From SKOS over SKOS-XL to Custom Ontologies
From SKOS over SKOS-XL to Custom OntologiesFrom SKOS over SKOS-XL to Custom Ontologies
From SKOS over SKOS-XL to Custom OntologiesSemantic Web Company
 
Data Modeling & Metadata for Graph Databases
Data Modeling & Metadata for Graph DatabasesData Modeling & Metadata for Graph Databases
Data Modeling & Metadata for Graph DatabasesDATAVERSITY
 
Intro to Cypher
Intro to CypherIntro to Cypher
Intro to CypherNeo4j
 
End-to-End Drug Discovery Project Management (GlaxoSmithKline)
End-to-End Drug Discovery Project Management (GlaxoSmithKline)End-to-End Drug Discovery Project Management (GlaxoSmithKline)
End-to-End Drug Discovery Project Management (GlaxoSmithKline)Neo4j
 
How to build effective SEO teams from scratch - SMXL (Milan) 2021
How to build effective SEO teams from scratch - SMXL (Milan) 2021How to build effective SEO teams from scratch - SMXL (Milan) 2021
How to build effective SEO teams from scratch - SMXL (Milan) 2021SeoProfy Presentations
 
Converting Relational to Graph Databases
Converting Relational to Graph DatabasesConverting Relational to Graph Databases
Converting Relational to Graph DatabasesAntonio Maccioni
 
Neo4j Bloom: What’s New with Neo4j's Data Visualization Tool
Neo4j Bloom: What’s New with Neo4j's Data Visualization ToolNeo4j Bloom: What’s New with Neo4j's Data Visualization Tool
Neo4j Bloom: What’s New with Neo4j's Data Visualization ToolNeo4j
 
Apache Impalaパフォーマンスチューニング #dbts2018
Apache Impalaパフォーマンスチューニング #dbts2018Apache Impalaパフォーマンスチューニング #dbts2018
Apache Impalaパフォーマンスチューニング #dbts2018Cloudera Japan
 
How to Use Search Intent to Dominate Google Discover
How to Use Search Intent to Dominate Google DiscoverHow to Use Search Intent to Dominate Google Discover
How to Use Search Intent to Dominate Google DiscoverFelipe Bazon
 
Splunk Overview
Splunk OverviewSplunk Overview
Splunk OverviewSplunk
 
A Crash Course in Creative Ideation and Shareable Campaigns - BrightonSEO 202...
A Crash Course in Creative Ideation and Shareable Campaigns - BrightonSEO 202...A Crash Course in Creative Ideation and Shareable Campaigns - BrightonSEO 202...
A Crash Course in Creative Ideation and Shareable Campaigns - BrightonSEO 202...IonaTownsley2
 
SEO Prompt Engineering - A Duda Webinar
SEO Prompt Engineering - A Duda WebinarSEO Prompt Engineering - A Duda Webinar
SEO Prompt Engineering - A Duda WebinarNitin Manchanda
 
Google Sheets For SEO - Tom Pool - London SEO Meetup XL
Google Sheets For SEO - Tom Pool - London SEO Meetup XLGoogle Sheets For SEO - Tom Pool - London SEO Meetup XL
Google Sheets For SEO - Tom Pool - London SEO Meetup XLTom Pool
 
[KAIST 채용설명회] 데이터 엔지니어는 무슨 일을 하나요?
[KAIST 채용설명회] 데이터 엔지니어는 무슨 일을 하나요?[KAIST 채용설명회] 데이터 엔지니어는 무슨 일을 하나요?
[KAIST 채용설명회] 데이터 엔지니어는 무슨 일을 하나요?Juhong Park
 
PostgreSQL 15の新機能を徹底解説
PostgreSQL 15の新機能を徹底解説PostgreSQL 15の新機能を徹底解説
PostgreSQL 15の新機能を徹底解説Masahiko Sawada
 

What's hot (20)

Semantic Search Engine: Semantic Search and Query Parsing with Phrases and En...
Semantic Search Engine: Semantic Search and Query Parsing with Phrases and En...Semantic Search Engine: Semantic Search and Query Parsing with Phrases and En...
Semantic Search Engine: Semantic Search and Query Parsing with Phrases and En...
 
Cloud Foundryで学ぶ、PaaSのしくみ講座
Cloud Foundryで学ぶ、PaaSのしくみ講座Cloud Foundryで学ぶ、PaaSのしくみ講座
Cloud Foundryで学ぶ、PaaSのしくみ講座
 
Dockerイメージで誰でも気軽にMroonga体験
Dockerイメージで誰でも気軽にMroonga体験Dockerイメージで誰でも気軽にMroonga体験
Dockerイメージで誰でも気軽にMroonga体験
 
Apache Bigtopによるオープンなビッグデータ処理基盤の構築(オープンデベロッパーズカンファレンス 2021 Online 発表資料)
Apache Bigtopによるオープンなビッグデータ処理基盤の構築(オープンデベロッパーズカンファレンス 2021 Online 発表資料)Apache Bigtopによるオープンなビッグデータ処理基盤の構築(オープンデベロッパーズカンファレンス 2021 Online 発表資料)
Apache Bigtopによるオープンなビッグデータ処理基盤の構築(オープンデベロッパーズカンファレンス 2021 Online 発表資料)
 
Personal Agility: From Personal Satisfaction to Professional Impact
Personal Agility: From Personal Satisfaction to Professional ImpactPersonal Agility: From Personal Satisfaction to Professional Impact
Personal Agility: From Personal Satisfaction to Professional Impact
 
From SKOS over SKOS-XL to Custom Ontologies
From SKOS over SKOS-XL to Custom OntologiesFrom SKOS over SKOS-XL to Custom Ontologies
From SKOS over SKOS-XL to Custom Ontologies
 
Data Modeling & Metadata for Graph Databases
Data Modeling & Metadata for Graph DatabasesData Modeling & Metadata for Graph Databases
Data Modeling & Metadata for Graph Databases
 
Intro to Cypher
Intro to CypherIntro to Cypher
Intro to Cypher
 
End-to-End Drug Discovery Project Management (GlaxoSmithKline)
End-to-End Drug Discovery Project Management (GlaxoSmithKline)End-to-End Drug Discovery Project Management (GlaxoSmithKline)
End-to-End Drug Discovery Project Management (GlaxoSmithKline)
 
How to build effective SEO teams from scratch - SMXL (Milan) 2021
How to build effective SEO teams from scratch - SMXL (Milan) 2021How to build effective SEO teams from scratch - SMXL (Milan) 2021
How to build effective SEO teams from scratch - SMXL (Milan) 2021
 
Converting Relational to Graph Databases
Converting Relational to Graph DatabasesConverting Relational to Graph Databases
Converting Relational to Graph Databases
 
Neo4j Bloom: What’s New with Neo4j's Data Visualization Tool
Neo4j Bloom: What’s New with Neo4j's Data Visualization ToolNeo4j Bloom: What’s New with Neo4j's Data Visualization Tool
Neo4j Bloom: What’s New with Neo4j's Data Visualization Tool
 
Apache Impalaパフォーマンスチューニング #dbts2018
Apache Impalaパフォーマンスチューニング #dbts2018Apache Impalaパフォーマンスチューニング #dbts2018
Apache Impalaパフォーマンスチューニング #dbts2018
 
How to Use Search Intent to Dominate Google Discover
How to Use Search Intent to Dominate Google DiscoverHow to Use Search Intent to Dominate Google Discover
How to Use Search Intent to Dominate Google Discover
 
Splunk Overview
Splunk OverviewSplunk Overview
Splunk Overview
 
A Crash Course in Creative Ideation and Shareable Campaigns - BrightonSEO 202...
A Crash Course in Creative Ideation and Shareable Campaigns - BrightonSEO 202...A Crash Course in Creative Ideation and Shareable Campaigns - BrightonSEO 202...
A Crash Course in Creative Ideation and Shareable Campaigns - BrightonSEO 202...
 
SEO Prompt Engineering - A Duda Webinar
SEO Prompt Engineering - A Duda WebinarSEO Prompt Engineering - A Duda Webinar
SEO Prompt Engineering - A Duda Webinar
 
Google Sheets For SEO - Tom Pool - London SEO Meetup XL
Google Sheets For SEO - Tom Pool - London SEO Meetup XLGoogle Sheets For SEO - Tom Pool - London SEO Meetup XL
Google Sheets For SEO - Tom Pool - London SEO Meetup XL
 
[KAIST 채용설명회] 데이터 엔지니어는 무슨 일을 하나요?
[KAIST 채용설명회] 데이터 엔지니어는 무슨 일을 하나요?[KAIST 채용설명회] 데이터 엔지니어는 무슨 일을 하나요?
[KAIST 채용설명회] 데이터 엔지니어는 무슨 일을 하나요?
 
PostgreSQL 15の新機能を徹底解説
PostgreSQL 15の新機能を徹底解説PostgreSQL 15の新機能を徹底解説
PostgreSQL 15の新機能を徹底解説
 

Viewers also liked

The Current Messaging Landscape: RabbitMQ, ZeroMQ, nsq, Kafka
The Current Messaging Landscape: RabbitMQ, ZeroMQ, nsq, KafkaThe Current Messaging Landscape: RabbitMQ, ZeroMQ, nsq, Kafka
The Current Messaging Landscape: RabbitMQ, ZeroMQ, nsq, KafkaAll Things Open
 
NATS - A new nervous system for distributed cloud platforms
NATS - A new nervous system for distributed cloud platformsNATS - A new nervous system for distributed cloud platforms
NATS - A new nervous system for distributed cloud platformsDerek Collison
 
1005 cern-active mq-v2
1005 cern-active mq-v21005 cern-active mq-v2
1005 cern-active mq-v2James Casey
 
The House That Twitters
The House That TwittersThe House That Twitters
The House That Twittersandysc
 
Letters from the Trenches: Lessons Learned Taking MongoDB to Production
Letters from the Trenches: Lessons Learned Taking MongoDB to ProductionLetters from the Trenches: Lessons Learned Taking MongoDB to Production
Letters from the Trenches: Lessons Learned Taking MongoDB to ProductionRick Warren
 
Intel Mashery API Management Solution
Intel Mashery API Management SolutionIntel Mashery API Management Solution
Intel Mashery API Management SolutionDavid Gevorkyan
 
High Performance Systems in Go - GopherCon 2014
High Performance Systems in Go - GopherCon 2014High Performance Systems in Go - GopherCon 2014
High Performance Systems in Go - GopherCon 2014Derek Collison
 
Nats in action a real time microservices architecture handled by nats
Nats in action   a real time microservices architecture handled by natsNats in action   a real time microservices architecture handled by nats
Nats in action a real time microservices architecture handled by natsRaul Perez
 
Build Golang projects properly with Makefiles
Build Golang projects properly with MakefilesBuild Golang projects properly with Makefiles
Build Golang projects properly with MakefilesRaül Pérez
 
Introduction to ActiveMQ Apollo
Introduction to ActiveMQ ApolloIntroduction to ActiveMQ Apollo
Introduction to ActiveMQ Apollodejanb
 
Design Patterns for working with Fast Data in Kafka
Design Patterns for working with Fast Data in KafkaDesign Patterns for working with Fast Data in Kafka
Design Patterns for working with Fast Data in KafkaIan Downard
 
Messaging With ActiveMQ
Messaging With ActiveMQMessaging With ActiveMQ
Messaging With ActiveMQBruce Snyder
 
Go Reactive: Event-Driven, Scalable, Resilient & Responsive Systems
Go Reactive: Event-Driven, Scalable, Resilient & Responsive SystemsGo Reactive: Event-Driven, Scalable, Resilient & Responsive Systems
Go Reactive: Event-Driven, Scalable, Resilient & Responsive SystemsJonas Bonér
 
Reactive Streams: Handling Data-Flow the Reactive Way
Reactive Streams: Handling Data-Flow the Reactive WayReactive Streams: Handling Data-Flow the Reactive Way
Reactive Streams: Handling Data-Flow the Reactive WayRoland Kuhn
 
Kafka as Message Broker
Kafka as Message BrokerKafka as Message Broker
Kafka as Message BrokerHaluan Irsad
 
The Zen of High Performance Messaging with NATS
The Zen of High Performance Messaging with NATSThe Zen of High Performance Messaging with NATS
The Zen of High Performance Messaging with NATSApcera
 

Viewers also liked (20)

The Current Messaging Landscape: RabbitMQ, ZeroMQ, nsq, Kafka
The Current Messaging Landscape: RabbitMQ, ZeroMQ, nsq, KafkaThe Current Messaging Landscape: RabbitMQ, ZeroMQ, nsq, Kafka
The Current Messaging Landscape: RabbitMQ, ZeroMQ, nsq, Kafka
 
AUA Data Science Meetup
AUA Data Science MeetupAUA Data Science Meetup
AUA Data Science Meetup
 
NATS - A new nervous system for distributed cloud platforms
NATS - A new nervous system for distributed cloud platformsNATS - A new nervous system for distributed cloud platforms
NATS - A new nervous system for distributed cloud platforms
 
1005 cern-active mq-v2
1005 cern-active mq-v21005 cern-active mq-v2
1005 cern-active mq-v2
 
The House That Twitters
The House That TwittersThe House That Twitters
The House That Twitters
 
Letters from the Trenches: Lessons Learned Taking MongoDB to Production
Letters from the Trenches: Lessons Learned Taking MongoDB to ProductionLetters from the Trenches: Lessons Learned Taking MongoDB to Production
Letters from the Trenches: Lessons Learned Taking MongoDB to Production
 
Intel Mashery API Management Solution
Intel Mashery API Management SolutionIntel Mashery API Management Solution
Intel Mashery API Management Solution
 
High Performance Systems in Go - GopherCon 2014
High Performance Systems in Go - GopherCon 2014High Performance Systems in Go - GopherCon 2014
High Performance Systems in Go - GopherCon 2014
 
Wargaming web
Wargaming webWargaming web
Wargaming web
 
Nats in action a real time microservices architecture handled by nats
Nats in action   a real time microservices architecture handled by natsNats in action   a real time microservices architecture handled by nats
Nats in action a real time microservices architecture handled by nats
 
Build Golang projects properly with Makefiles
Build Golang projects properly with MakefilesBuild Golang projects properly with Makefiles
Build Golang projects properly with Makefiles
 
Introduction to ActiveMQ Apollo
Introduction to ActiveMQ ApolloIntroduction to ActiveMQ Apollo
Introduction to ActiveMQ Apollo
 
Design Patterns for working with Fast Data in Kafka
Design Patterns for working with Fast Data in KafkaDesign Patterns for working with Fast Data in Kafka
Design Patterns for working with Fast Data in Kafka
 
Something about Kafka - Why Kafka is so fast
Something about Kafka - Why Kafka is so fastSomething about Kafka - Why Kafka is so fast
Something about Kafka - Why Kafka is so fast
 
Messaging With ActiveMQ
Messaging With ActiveMQMessaging With ActiveMQ
Messaging With ActiveMQ
 
Go Reactive: Event-Driven, Scalable, Resilient & Responsive Systems
Go Reactive: Event-Driven, Scalable, Resilient & Responsive SystemsGo Reactive: Event-Driven, Scalable, Resilient & Responsive Systems
Go Reactive: Event-Driven, Scalable, Resilient & Responsive Systems
 
Reactive Streams: Handling Data-Flow the Reactive Way
Reactive Streams: Handling Data-Flow the Reactive WayReactive Streams: Handling Data-Flow the Reactive Way
Reactive Streams: Handling Data-Flow the Reactive Way
 
Kafka as Message Broker
Kafka as Message BrokerKafka as Message Broker
Kafka as Message Broker
 
The Zen of High Performance Messaging with NATS
The Zen of High Performance Messaging with NATSThe Zen of High Performance Messaging with NATS
The Zen of High Performance Messaging with NATS
 
Apache kafka
Apache kafkaApache kafka
Apache kafka
 

Similar to In pursuit of messaging broker(s)

Blue Moon - Advertising Plan (Group Project)
Blue Moon - Advertising Plan (Group Project)Blue Moon - Advertising Plan (Group Project)
Blue Moon - Advertising Plan (Group Project)Sam Cheema
 
Upgrading OpenStack? Avoid these 3 Common Pitfalls
Upgrading OpenStack? Avoid these 3 Common PitfallsUpgrading OpenStack? Avoid these 3 Common Pitfalls
Upgrading OpenStack? Avoid these 3 Common PitfallsPlatform9
 
C-Suite Guide to Cybersecurity
C-Suite Guide to CybersecurityC-Suite Guide to Cybersecurity
C-Suite Guide to CybersecurityMICHAEL MOSHIRI
 
Conventions of a thriller
Conventions of a thrillerConventions of a thriller
Conventions of a thrilleremmalouise01
 
Altmetrics in UMCG: pilot project 2016
Altmetrics in UMCG: pilot project 2016Altmetrics in UMCG: pilot project 2016
Altmetrics in UMCG: pilot project 2016Guus van den Brekel
 
Interactive media : information and libraries (#bobcatsss2017)
Interactive media : information and libraries (#bobcatsss2017)Interactive media : information and libraries (#bobcatsss2017)
Interactive media : information and libraries (#bobcatsss2017)Guus van den Brekel
 
American Marketing Association - Strategy Presentation
American Marketing Association - Strategy Presentation American Marketing Association - Strategy Presentation
American Marketing Association - Strategy Presentation Sam Cheema
 
Hard to Reach Users in Easy to Reach Places
Hard to Reach Users in Easy to Reach PlacesHard to Reach Users in Easy to Reach Places
Hard to Reach Users in Easy to Reach PlacesMike Crabb
 
PEACE EDUCATION (PEACE THEME 5)
PEACE EDUCATION (PEACE THEME 5)PEACE EDUCATION (PEACE THEME 5)
PEACE EDUCATION (PEACE THEME 5)Reymart Dellomas
 
Ninja Correlation of APT Binaries
Ninja Correlation of APT BinariesNinja Correlation of APT Binaries
Ninja Correlation of APT BinariesCODE BLUE
 
Robotics
RoboticsRobotics
RoboticsRamki M
 
Codecademy Live QA Presentation
Codecademy Live QA PresentationCodecademy Live QA Presentation
Codecademy Live QA PresentationJames Kim
 
Metodologia simulacro
Metodologia simulacroMetodologia simulacro
Metodologia simulacroMartha Salas
 
Building Legends at One World Observatory
Building Legends at One World ObservatoryBuilding Legends at One World Observatory
Building Legends at One World ObservatoryAddison O'Connor
 
M|SOURCE WORK ORDER SYSTEM
M|SOURCE WORK ORDER SYSTEMM|SOURCE WORK ORDER SYSTEM
M|SOURCE WORK ORDER SYSTEMScott Urich
 

Similar to In pursuit of messaging broker(s) (20)

Blue Moon - Advertising Plan (Group Project)
Blue Moon - Advertising Plan (Group Project)Blue Moon - Advertising Plan (Group Project)
Blue Moon - Advertising Plan (Group Project)
 
Upgrading OpenStack? Avoid these 3 Common Pitfalls
Upgrading OpenStack? Avoid these 3 Common PitfallsUpgrading OpenStack? Avoid these 3 Common Pitfalls
Upgrading OpenStack? Avoid these 3 Common Pitfalls
 
Manejo de redes
Manejo de redesManejo de redes
Manejo de redes
 
Firefox OS Bus India Tour
Firefox OS Bus India TourFirefox OS Bus India Tour
Firefox OS Bus India Tour
 
C-Suite Guide to Cybersecurity
C-Suite Guide to CybersecurityC-Suite Guide to Cybersecurity
C-Suite Guide to Cybersecurity
 
Conventions of a thriller
Conventions of a thrillerConventions of a thriller
Conventions of a thriller
 
Altmetrics in UMCG: pilot project 2016
Altmetrics in UMCG: pilot project 2016Altmetrics in UMCG: pilot project 2016
Altmetrics in UMCG: pilot project 2016
 
Packaging Trends
Packaging TrendsPackaging Trends
Packaging Trends
 
Interactive media : information and libraries (#bobcatsss2017)
Interactive media : information and libraries (#bobcatsss2017)Interactive media : information and libraries (#bobcatsss2017)
Interactive media : information and libraries (#bobcatsss2017)
 
American Marketing Association - Strategy Presentation
American Marketing Association - Strategy Presentation American Marketing Association - Strategy Presentation
American Marketing Association - Strategy Presentation
 
Hard to Reach Users in Easy to Reach Places
Hard to Reach Users in Easy to Reach PlacesHard to Reach Users in Easy to Reach Places
Hard to Reach Users in Easy to Reach Places
 
PEACE EDUCATION (PEACE THEME 5)
PEACE EDUCATION (PEACE THEME 5)PEACE EDUCATION (PEACE THEME 5)
PEACE EDUCATION (PEACE THEME 5)
 
Ninja Correlation of APT Binaries
Ninja Correlation of APT BinariesNinja Correlation of APT Binaries
Ninja Correlation of APT Binaries
 
Robotics
RoboticsRobotics
Robotics
 
Mapan
MapanMapan
Mapan
 
Codecademy Live QA Presentation
Codecademy Live QA PresentationCodecademy Live QA Presentation
Codecademy Live QA Presentation
 
Metodologia simulacro
Metodologia simulacroMetodologia simulacro
Metodologia simulacro
 
Occ Cinque Terre
Occ Cinque TerreOcc Cinque Terre
Occ Cinque Terre
 
Building Legends at One World Observatory
Building Legends at One World ObservatoryBuilding Legends at One World Observatory
Building Legends at One World Observatory
 
M|SOURCE WORK ORDER SYSTEM
M|SOURCE WORK ORDER SYSTEMM|SOURCE WORK ORDER SYSTEM
M|SOURCE WORK ORDER SYSTEM
 

Recently uploaded

ChatGPT and Beyond - Elevating DevOps Productivity
ChatGPT and Beyond - Elevating DevOps ProductivityChatGPT and Beyond - Elevating DevOps Productivity
ChatGPT and Beyond - Elevating DevOps ProductivityVictorSzoltysek
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businesspanagenda
 
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
 
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
 
API Governance and Monetization - The evolution of API governance
API Governance and Monetization -  The evolution of API governanceAPI Governance and Monetization -  The evolution of API governance
API Governance and Monetization - The evolution of API governanceWSO2
 
How to Check CNIC Information Online with Pakdata cf
How to Check CNIC Information Online with Pakdata cfHow to Check CNIC Information Online with Pakdata cf
How to Check CNIC Information Online with Pakdata cfdanishmna97
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusZilliz
 
Navigating Identity and Access Management in the Modern Enterprise
Navigating Identity and Access Management in the Modern EnterpriseNavigating Identity and Access Management in the Modern Enterprise
Navigating Identity and Access Management in the Modern EnterpriseWSO2
 
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
 
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
 
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
 
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....rightmanforbloodline
 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfOrbitshub
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native ApplicationsWSO2
 
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...WSO2
 
Design and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data ScienceDesign and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data SciencePaolo Missier
 
AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAnitaRaj43
 
Decarbonising Commercial Real Estate: The Role of Operational Performance
Decarbonising Commercial Real Estate: The Role of Operational PerformanceDecarbonising Commercial Real Estate: The Role of Operational Performance
Decarbonising Commercial Real Estate: The Role of Operational PerformanceIES VE
 
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
 

Recently uploaded (20)

ChatGPT and Beyond - Elevating DevOps Productivity
ChatGPT and Beyond - Elevating DevOps ProductivityChatGPT and Beyond - Elevating DevOps Productivity
ChatGPT and Beyond - Elevating DevOps Productivity
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
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...
 
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
 
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
 
API Governance and Monetization - The evolution of API governance
API Governance and Monetization -  The evolution of API governanceAPI Governance and Monetization -  The evolution of API governance
API Governance and Monetization - The evolution of API governance
 
How to Check CNIC Information Online with Pakdata cf
How to Check CNIC Information Online with Pakdata cfHow to Check CNIC Information Online with Pakdata cf
How to Check CNIC Information Online with Pakdata cf
 
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with MilvusExploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
 
Navigating Identity and Access Management in the Modern Enterprise
Navigating Identity and Access Management in the Modern EnterpriseNavigating Identity and Access Management in the Modern Enterprise
Navigating Identity and Access Management in the Modern Enterprise
 
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
 
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
 
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
 
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
TEST BANK For Principles of Anatomy and Physiology, 16th Edition by Gerard J....
 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
WSO2 Micro Integrator for Enterprise Integration in a Decentralized, Microser...
 
Design and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data ScienceDesign and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data Science
 
AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by Anitaraj
 
Decarbonising Commercial Real Estate: The Role of Operational Performance
Decarbonising Commercial Real Estate: The Role of Operational PerformanceDecarbonising Commercial Real Estate: The Role of Operational Performance
Decarbonising Commercial Real Estate: The Role of Operational Performance
 
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
 

In pursuit of messaging broker(s)

  • 1. I N P U R S U I T O F M E S S A G I N G B R O K E R ( S )
  • 2. D AV I D G E V O R K YA N @ d a v i d g e v d a v i d g e v o r k y a n
  • 3. P R I M A RY G O A L • S TA B L E • A C T I V E & H A S P R O P E R S U P P O RT • S AT I S F I E S P E R F O R M A N C E R E Q U I R E M E N T S • O U R P E A K L O A D P E R N O D E 1 0 0 0 M S G / S E C , 6 0 M L N / D AY • M U S M E S S A G E S I Z E ~ 4 K B • S I N G L E S P S M E S S A G E S I Z E ~ 2 . 2 K B • M D S M E S S A G E S I Z E ~ 6 1 5 K B • B E T T E R T H A N
  • 4.
  • 5.
  • 6. 2 1 PA RT I C I PA N T S 7 F E AT U R E S E A C H
  • 7. V E RY I M P O RTA N T F E AT U R E S • H I G H AVA I L A B I L I T Y / R E P L I C AT I O N • P E R S I S T E N C E / D U R A B I L I T Y • D E V E L O P E R F R I E N D LY • B R O K E R E D • G U A R A N T E E D D E L I V E RY & D E L I V E RY A C K N O W L E D G E M E N T S • E A S Y T O C O N F I G U R E • S TA B L E E N O U G H F O R P R O D U C T I O N • M E T R I C E X P O S U R E V O T E D B Y AT L E A S T 3 0 %
  • 8. L E S S I M P O RTA N T F E AT U R E S • M A N A G E M E N T U I • H A D O O P E C O S Y S T E M • O P E N S O U R C E • W E B S O C K E T S U P P O RT • I T E M E X P I R AT I O N • O P E R AT I O N S F R I E N D LY • VA R I E T Y O F D R I V E R S U P P O RT • J M S C O M P L I A N T • A C T I V E D E V E L O P M E N T / C U T T I N G E D G E V O T E D B Y AT L E A S T 5 %
  • 9. N O T I M P O RTA N T F E AT U R E S • B R O K E R L E S S ( P E E R - T O - P E E R ) • G U A R A N T E E D O R D E R O F D E L I V E RY • T R A C I N G • D E A D L E T T E R E X C H A N G E S U P P O RT • V I RT U A L I Z AT I O N F R I E N D LY V O T E D B Y L E S S T H A N 5 %
  • 10. a f t e r c o n s i d e r i n g “ Ve r y I m p o r t a n t F e a t u re s ”
  • 11. N O   O F F I C I A L   JAVA   D R I V E R
  • 12. N O   O F F I C I A L   JAVA   D R I V E R R I S K   O F   B E I N G   R E P L AC E D   BY   A P O L LO
  • 13.
  • 14.
  • 15. R A B B I T M Q I S A N E F F I C I E N T, H I G H LY S C A L A B L E , A N D E A S Y- T O - D E P L O Y Q U E U I N G S Y S T E M T H AT M A K E S H A N D L I N G M E S S A G E T R A F F I C V I RT U A L LY E F F O RT L E S S Source: http://stackshare.io and others
  • 16. K A F K A I S A D I S T R I B U T E D , PA RT I T I O N E D , R E P L I C AT E D C O M M I T L O G S E R V I C E . I T P R O V I D E S T H E F U N C T I O N A L I T Y O F A M E S S A G I N G S Y S T E M , W I T H A U N I Q U E D E S I G N Source: http://stackshare.io and others
  • 17. B E N C H M A R K . I O
  • 18. R O C K E T L A U N C H E R
  • 19. B E N C H M A R K S C A N P R E D I C T L O A D U N D E R C E RTA I N C O N D I T I O N S , B U T A R E FA R F R O M B E I N G P E R F E C T. T H E R E A L P R E D I C T O R I S R U N N I N G I N S H A D O W M O D E
  • 20. M A C H I N E D E TA I L S r3.2xlarge - Optimized for memory-intensive applications 8 cores - Intel Xeon E5-2670 v2 (Ivy Bridge) Processors 61GB of RAM 160GB SSD Memory Ubuntu: 14.04 64bit AMD Java: 1.7.0_79 64bit RabbitMQ: 3.5.2 Apache Kafka: 2.9.2-0.8.2.1
  • 21. 1 P / 1 C / 1 K B / T O P I C P R O D U C E RTHROUGHPUT/ SECOND 0 30,000 60,000 90,000 120,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery Kafka Guaranteed Delivery C O N S U M E R THROUGHPUT/ SECOND 0 15,000 30,000 45,000 60,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery Kafka Guaranteed Delivery
  • 22. 1 P / 1 C / 4 K B / T O P I C P R O D U C E RTHROUGHPUT/ SECOND 0 15,000 30,000 45,000 60,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery Kafka Guaranteed Delivery C O N S U M E R THROUGHPUT/ SECOND 0 10,000 20,000 30,000 40,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery Kafka Guaranteed Delivery
  • 23. 1 P / 1 C / 1 0 0 K B / T O P I C P R O D U C E RTHROUGHPUT/ SECOND 0 2,500 5,000 7,500 10,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery Kafka Guaranteed Delivery C O N S U M E R THROUGHPUT/ SECOND 0 2,250 4,500 6,750 9,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery Kafka Guaranteed Delivery
  • 24. 1 P / 0 C / 4 K B / T O P I C P R O D U C E R THROUGHPUT/ SECOND 0 15,000 30,000 45,000 60,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery Kafka Guaranteed Delivery L O A D
  • 25. 0 P / 1 C / 4 K B / T O P I C C O N S U M E R THROUGHPUT/ SECOND 0 35,000 70,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery Kafka Guaranteed Delivery U N L O A D
  • 26. 5 P / 5 C / 4 K B / T O P I C P R O D U C E RTHROUGHPUT/ SECOND 0 4,750 9,500 14,250 19,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka Guaranteed Delivery (1 partition) Kafka Guaranteed Delivery (5 partitions) RabbitMQ Guaranteed Delivery (Durable) C O N S U M E R THROUGHPUT/ SECOND 0 4,000 8,000 12,000 16,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka Guaranteed Delivery (1 partition) Kafka Guaranteed Delivery (5 partitions) RabbitMQ Guaranteed Delivery (Durable)
  • 27. 5 P / 5 C / 4 K B / T O P I C P R O D U C E RTHROUGHPUT/ SECOND 0 40,000 80,000 120,000 160,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery C O N S U M E R THROUGHPUT/ SECOND 0 15,000 30,000 45,000 60,000 1 2 3 RabbitMQ Guaranteed Delivery Kafka No Guarantees On Delivery
  • 28. L AT E N C Y F O R B O T H M E A N < 1 M S M A X < 4 0 M S
  • 29.
  • 30.
  • 31.
  • 32.
  • 33.
  • 34. S T R E N G T H S • R E A L LY N I C E D E S I G N F O R L O G S H I P P I N G , E . G . I F Y O U WA N T T O W R I T E A V O L AT I L E E V E N T F I R E H O S E T O D I S K , A N D N E E D ' E L A S T I C ' C O N S U M P T I O N • I M P L E M E N T S B U L K I N G A N D B U F F E R I N G ( W H E N W R I T I N G T O D I S K ) H E N C E R E A L LY P E R F O R M A N T • VA R I E T Y O F T E C H N O L O G Y I N T E G R AT I O N S I N H A D O O P E C O S Y S T E M , S P E C I F I C A L LY F O R S T R E A M P R O C E S S I N G
  • 35. W E A K N E S S E S • N O T B U I LT F O R U S E I N T R A N S A C T I O N A L S I T U AT I O N S • W E A K D E L I V E RY G U A R A N T E E S • A M AT E U R C O N S U M E R A N D P R O D U C E R C O D E I M P L E M E N TAT I O N S • D O E S N ' T H AV E M E S S A G E A C K N O W L E D G E M E N T S B E T W E E N B R O K E R - > C O N S U M E R • E X T R A C O M P L E X I T Y B E C A U S E O F Z O O K E E P E R ( B A D R E C O V E RY W H E N E I T H E R T H E Z O O K E E P E R O R B R O K E R D I E ) • E X P E R I E N C E D B Y E L E VAT E D T E A M • D O E S N ’ T H AV E A N O T I O N O F N O N - P E R S I S T E N T Q U E U E / T O P I C • V E RY C L O S E T I E B E T W E E N C O N S U M E R C O U N T S A N D PA RT I T I O N S ( I F L E S S C O N S U M E R S T H A N PA RT I T I O N S , S O M E C O N S U M E R S W I L L D O N O T H I N G ) • L O G C L E A N E R N E E D S T U N I N G , O T H E R W I S E Y O U Q U I C K LY R U N O U T O F S PA C E • D O E S N ’ T P E R F O R M W E L L F O R L A R G E M E S S A G E S • N E E D T O B U Y S U P P O RT • R O U T I N G N O T I O N S A R E N O T S U P P O RT E D • L E A R N I N G C U R V E I S S T E E P
  • 36. S T R E N G T H S • E A S Y T O S E T U P W I T H V I RT U A L LY N O I N T E R V E N T I O N ( I T J U S T W O R K S ) • I M P L E M E N T S P R O P E R D E L I V E RY G U A R A N T E E S • C O M P R E H E N S I V E D O C U M E N TAT I O N ( A N Y T H I N G I WA N T E D T O F I N D WA S AT M Y F I N G E RT I P ) • M AT U R E P R O D U C T • P R O V I D E S A VA R I E T Y O F M E S S A G E R O U T I N G C A PA B I L I T I E S ( E X C H A N G E , B I N D I N G A N D Q U E U I N G M O D E L ) • VA R I E T Y O F L A R G E C O M PA N I E S U S E I T A S A M E S S A G E B U S • E A S Y M I G R AT I O N F R O M E X I S T I N G J M S C O M P L I A N T S Y S T E M S • AVA I L A B I L I T Y O F C H E F C O O K B O O K • S U P P O RT S N O T I O N O F R O U T I N G E X C H A N G E S • R A B B I T M Q A S A S E R V I C E : H T T P : / / W W W. C L O U D A M Q P. C O M /
  • 37. W E A K N E S S E S • M A X I M U M O U T O F T H E B O X T H R O U G H P U T I S 5 0 K / S E C ( A LT H O U G H I T I S FA I R T O M E N T I O N T H AT L A R G E I N S TA L L AT I O N S , U P T O 1 . 3 M L N / S E C E X I S T )
  • 38. R E C O M M E N D AT I O N
  • 39. • U S E R A B B I T M Q A S A S T R A I G H T R E P L A C E M E N T F O R O U R C U R R E N T H O R N E T Q I N S TA L L AT I O N • E A S E O F S E T U P • S I M P L I C I T Y O F M I G R AT I O N • S U P P O RT O F R O U T I N G C A PA B I L I T I E S A N D J M S C O M P L I A N C Y • M E E T S O U R P E R F O R M A N C E R E Q U I R E M E N T S • G R E AT D O C U M E N TAT I O N A N D C O M M U N I T Y S U P P O RT • P R O F E S S I O N A L S U P P O RT I S AVA I L A B L E F R O M P I V O TA L
  • 40. • U S E K A F K A F O R L O G P R O C E S S I N G C A S E S T H AT R E Q U I R E N O G U A R A N T E E S O N D E L I V E RY • G O O D F O R S T R E A M P R O C E S S I N G • G O O D F O R M E T R I C S L O A D I N G A N D P R O C E S S I N G • L O G D E L I V E RY A N D P R O C E S S I N G • E X C E P T I O N T R A C K I N G • F R A U D A N A LY S I S • H O RT O N W O R K S C E RT I F I E D K A F K A D I S T R I B U T I O N I S AVA I L A B L E
  • 41.
  • 42. 1 P / 1 C / 1 K B / Q U E U E N O N P E R S I S T E N T 1 P / 1 C / 1 K B / Q U E U E P E R S I S T E N T sample missing not an issue 1 P / 1 C / 1 K B / T O P I C N O N P E R S I S T E N T hornetq-2.2.5 rabbitmq-2.7.0 3 . 5 . 2   I S   M U C H   FA S T E R
  • 43. hornetq-2.2.5 rabbitmq-2.7.0 3 . 5 . 2   I S   M U C H   FA S T E R 5 P / 5 C / 1 K B / T O P I C P E R S I S T E N T 5 P / 5 C / 2 5 6 K B / T O P I C P E R S I S T E N T
  • 44.
  • 45. R E F E R E N C E S • h t t p : / / w w w. r a b b i t m q . c o m / b l o g / 2 0 1 2 / 0 4 / 2 5 / r a b b i t m q - p e r f o r m a n c e - m e a s u re m e n t s - p a r t - 2 / • h t t p : / / h i r a m c h i r i n o . c o m / s t o m p - b e n c h m a r k / e c 2 - c 1 . x l a rg e / i n d e x . h t m l • h t t p s : / / e n g i n e e r i n g . l i n k e d i n . c o m / k a f k a / b e n c h m a r k i n g - a p a c h e - k a f k a - 2 - m i l l i o n - w r i t e s - s e c o n d - t h re e - c h e a p - m a c h i n e s • h t t p : / / b l o g . p i v o t a l . i o / p i v o t a l / p ro d u c t s / r a b b i t m q - h i t s - o n e - m i l l i o n - m e s s a g e s - p e r- s e c o n d - o n - g o o g l e - c o m p u t e - e n g i n e
  • 46. T H A N K Y O U Q U E S T I O N S ?
  • 47. C R E D I T S : The Noun Project http://thenounproject.com Visual Elements From