Upgrade to Pro
— share decks privately, control downloads, hide ads and more …
Speaker Deck
Features
Speaker Deck
PRO
Sign in
Sign up for free
Search
Search
Apache Kafka
Search
Eko Kurniawan Khannedy
August 30, 2017
Technology
1
4.4k
Apache Kafka
JVM Meetup #5 - Apache Kafka at Blibli.com
Eko Kurniawan Khannedy
August 30, 2017
Tweet
Share
More Decks by Eko Kurniawan Khannedy
See All by Eko Kurniawan Khannedy
Monolith to Event-Driven Microservices
khannedy
1
270
Refactoring
khannedy
0
350
Multi-Datacenter Kafka at Blibli.com
khannedy
2
1.5k
QA Tools - Research and Development
khannedy
0
290
Reactive Puzzle
khannedy
0
210
Event-Driven Architecture
khannedy
1
2k
Resilience Engineering with Hystrix and Spring
khannedy
1
570
Mocking for Unit Test using Mockito
khannedy
1
340
Centralized Configuration using Consul and Spring Cloud
khannedy
2
710
Other Decks in Technology
See All in Technology
システムのアラート調査をサポートするAI Agentの紹介/Introduction to an AI Agent for System Alert Investigation
taddy_919
2
1.9k
Context Engineeringの取り組み
nutslove
0
290
日本語テキストと音楽の対照学習の技術とその応用
lycorptech_jp
PRO
1
430
Azure Durable Functions で作った NL2SQL Agent の精度向上に取り組んだ話/jat08
thara0402
0
150
会社紹介資料 / Sansan Company Profile
sansan33
PRO
15
400k
あたらしい上流工程の形。 0日導入からはじめるAI駆動PM
kumaiu
5
760
SREじゃなかった僕らがenablingを通じて「SRE実践者」になるまでのリアル / SRE Kaigi 2026
aeonpeople
6
2.1k
AIと新時代を切り拓く。これからのSREとメルカリIBISの挑戦
0gm
0
780
Tebiki Engineering Team Deck
tebiki
0
24k
GitHub Issue Templates + Coding Agentで簡単みんなでIaC/Easy IaC for Everyone with GitHub Issue Templates + Coding Agent
aeonpeople
1
180
We Built for Predictability; The Workloads Didn’t Care
stahnma
0
130
30万人の同時アクセスに耐えたい!新サービスの盤石なリリースを支える負荷試験 / SRE Kaigi 2026
genda
1
280
Featured
See All Featured
Scaling GitHub
holman
464
140k
Connecting the Dots Between Site Speed, User Experience & Your Business [WebExpo 2025]
tammyeverts
11
820
How to optimise 3,500 product descriptions for ecommerce in one day using ChatGPT
katarinadahlin
PRO
0
3.4k
The Illustrated Guide to Node.js - THAT Conference 2024
reverentgeek
0
250
The untapped power of vector embeddings
frankvandijk
1
1.6k
The Art of Delivering Value - GDevCon NA Keynote
reverentgeek
16
1.8k
Everyday Curiosity
cassininazir
0
130
Building Better People: How to give real-time feedback that sticks.
wjessup
370
20k
Digital Ethics as a Driver of Design Innovation
axbom
PRO
1
170
Google's AI Overviews - The New Search
badams
0
900
How to Align SEO within the Product Triangle To Get Buy-In & Support - #RIMC
aleyda
1
1.4k
Site-Speed That Sticks
csswizardry
13
1.1k
Transcript
APACHE KAFKA EKO KURNIAWAN KHANNEDY
APACHE KAFKA EKO KURNIAWAN KHANNEDY ▸ Principal Software Development Engineer
at Blibli.com ▸ Part of RnD Team at Blibli.com ▸
[email protected]
APACHE KAFKA AGENDA ▸ Kafka Intro ▸ Kafka Internals ▸
Installing Kafka ▸ Kafka Producer ▸ Kafka Consumer ▸ Kafka in blibli.com ▸ Demo ▸ Conclusion
KAFKA INTRO APACHE KAFKA
APACHE KAFKA BEFORE PUBLISH / SUBSCRIBE MESSAGING MEMBER ORDER RISK
PAYMENT … ERP FINANCE …
APACHE KAFKA PUBLISH / SUBSCRIBE MESSAGING MEMBER ORDER RISK PAYMENT
… ERP FINANCE … MESSAGING SYSTEM / MESSAGE BROKER
None
APACHE KAFKA WHAT IS KAFKA ▸ Apache Kafka is a
publish/subscribe messaging system, or more recently a “distributing streaming platform” ▸ Opensource project under Apache Software Foundation.
APACHE KAFKA KAFKA HISTORY ▸ Kafka was born to solve
the data pipeline problem in LinkedIn. ▸ The development team at LinkedIn was led by Jay Kreps, now CEO of Confluent. ▸ Kafka was released as an Open Source project on Github in late 2010, and join Apache Software Foundation in 2011.
KAFKA INTERNALS APACHE KAFKA
APACHE KAFKA BROKER TOPIC A PARTITION 0 TOPIC A PARTITION
1 KAFKA BROKER
APACHE KAFKA CLUSTER TOPIC A PARTITION 0 TOPIC A PARTITION
1 (LEADER) KAFKA BROKER 1 TOPIC A PARTITION 0 TOPIC A PARTITION 1 (LEADER) KAFKA BROKER 2
APACHE KAFKA TOPICS ▸ Messages in Kafka are categorized into
Topics. ▸ The closest analogy for topic is a database table, or a folder in filesystem.
APACHE KAFKA PARTITIONS
APACHE KAFKA REPLICATION FACTOR TOPIC A PARTITION 0 TOPIC A
PARTITION 1 KAFKA BROKER 1 TOPIC A PARTITION 0 KAFKA BROKER 2 TOPIC A PARTITION 1 KAFKA BROKER 3 TOPIC A PARTITION 0 TOPIC A PARTITION 1 KAFKA BROKER 4
APACHE KAFKA CONSUMER GROUP
APACHE KAFKA CONSUMER GROUP (2)
APACHE KAFKA RETENTION POLICY ▸ A key feature of Apache
Kafka is that of retention, or the durable storage of messages for some period of time. ▸ We can set retention policy per topics by time or by size.
APACHE KAFKA MIRROR MAKER
INSTALLING KAFKA APACHE KAFKA
APACHE KAFKA JAVA ▸ Kafka using Java 8.
APACHE KAFKA ZOOKEEPER KAFKA BROKER PRODUCER CONSUMER ZOOKEEPER Metadata
APACHE KAFKA KAFKA BROKER # Minimum Broker Configuration broker.id=0 #
must unique in cluster zookeeper.connect=localhost:2181 log.dirs=data/kafka-logs
APACHE KAFKA CREATE / UPDATE TOPIC kafka-topics.sh --create --zookeeper localhost:2181
-- replication-factor 1 --partitions 1 --topic topic_name kafka-topics.sh --zookeeper localhost:2181 --alter --topic topic_name --partitions 2 --replication-factor 2
KAFKA PRODUCER APACHE KAFKA
APACHE KAFKA PRODUCER RECORD PRODUCER RECORD TOPIC PARTITION KEY VALUE
APACHE KAFKA SERIALIZER PRODUCER RECORD TOPIC PARTITION KEY VALUE SERIALIZER
APACHE KAFKA PARTITIONER PRODUCER RECORD TOPIC PARTITION KEY VALUE SERIALIZER
PARTITIONER Send to Broker
APACHE KAFKA KAFKA PRODUCER Properties props = new Properties(); props.put("bootstrap.servers",
"broker1:9092,broker2:9092"); props.put("key.serializer", “org.apache.kafka.common.serialization.StringSerializer"); props.put("value.serializer", "org.apache.kafka.common.serialization.StringSerializer"); producer = new KafkaProducer<String, String>(kafkaProps);
APACHE KAFKA SEND MESSAGE record = new ProducerRecord<>(topicName, key, value);
producer.send(record);
KAFKA CONSUMER APACHE KAFKA
APACHE KAFKA CONSUMER GROUP
APACHE KAFKA PARTITION REBALANCE
APACHE KAFKA PARTITION REBALANCE
APACHE KAFKA PARTITION REBALANCE
APACHE KAFKA CONSUMER RECORD & DESERIALIZER CONSUMER RECORD TOPIC PARTITION
KEY VALUE DESERIALIZER From Broker
APACHE KAFKA KAFKA CONSUMER Properties props = new Properties(); props.put("bootstrap.servers",
"broker1:9092,broker2:9092"); props.put("group.id", "GroupName"); props.put("key.deserializer", "org.apache.kafka.common.serialization.StringDeserializer"); props.put("value.deserializer", "org.apache.kafka.common.serialization.StringDeserializer"); consumer = new KafkaConsumer<String, String>(props);
APACHE KAFKA GET MESSAGES consumer.subscribe(Collections.singletonList("topicName")); Long timeout = 1000L; ConsumerRecords<String,
String> records = consumer.poll(timeout);
KAFKA IN BLIBLI APACHE KAFKA
APACHE KAFKA API GATEWAY EVENT API GATEWAY MEMBER API GATEWAY
COMMON API GATEWAY … KAFKA ANALYTICS … …
APACHE KAFKA CURRENT PRODUCT (CODENAME X) X MEMBER X CART
X AUTH X WISHLIST API GATEWAY X YYYY X XXX X ORDER X PRODUCT
APACHE KAFKA NEW PRODUCT (CODENAME VERONICA) VERONICA MEMBER VERONICA CORE
VERONICA MERCHANT KAFKA VERONICA NOTIFICATION API GATEWAY
DEMO
CONCLUSION APACHE KAFKA
APACHE KAFKA WHY KAFKA? ▸ Multiple Consumer ▸ Flexible Scalability
▸ Flexible Durability ▸ High Performance ▸ Multi-Datacenter
WE ARE HIRING!
[email protected]
APACHE KAFKA
APACHE KAFKA REFERENCES ▸ http://kafka.apache.org/ ▸ https://engineering.linkedin.com/kafka/benchmarking-apache-kafka-2-million- writes-second-three-cheap-machines ▸ https://engineering.linkedin.com/kafka/running-kafka-scale