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
Jepsen Introduction LT
Search
UENISHI Kota
May 13, 2015
Technology
430
2
Share
Jepsen Introduction LT
Jepsenの紹介LT
UENISHI Kota
May 13, 2015
More Decks by UENISHI Kota
See All by UENISHI Kota
Storage Systems in Preferred Networks
kuenishi
0
89
Metadata Management in Distributed File Systems
kuenishi
2
560
Behind The Scenes: Cloud Native Storage System for AI
kuenishi
2
450
Apache Ozone behind Simulation and AI Industries
kuenishi
0
460
Distributed Deep Learning with Chainer and Hadoop
kuenishi
3
1.3k
A Few Ways to Accelerate Deep Learning
kuenishi
0
1.2k
Introducing Retz
kuenishi
5
1.2k
Introducing Retz and how to develop practical frameworks
kuenishi
3
810
Formalization and Proof of Distributed Systems (ja)
kuenishi
10
6.5k
Other Decks in Technology
See All in Technology
脅威をエンジニアリングの糧にして:恐怖を乗り越えた先にあったもの / Turn threats into fuel for engineering: what lay beyond overcoming fear
nrslib
1
370
AI Adaptable なテストを整える工夫 / Ways to Make Your Tests AI-Adaptable
bitkey
PRO
2
200
Javaコミュニティをもっと楽しむための9箇条
takasyou
0
1.1k
エンジニアは生成AIと どのように向き合うべきか? ことばの意味という観点から
verypluming
3
330
Ruby::Boxでできること、Refinementsでできること
joker1007
3
370
Platform engineering for developers, architects & the rest of us (AI agents)
danielbryantuk
0
170
AI時代の私の技術インプットとアウトプット術
tonkotsuboy_com
16
8.2k
Java正規表現エンジン(NFA)の仕組みと パフォーマンスを維持するための最適化手法
takeuchi_132917
0
170
long-running-tasks
cipepser
3
460
AI駆動開発が変える、大規模開発の前提 ーHuman in the Loop から Human on the Loop へ / AIE2026
visional_engineering_and_design
2
1.5k
Dynamic Workersについて
yusukebe
2
570
さきさん文庫の書籍ができるまで
sakiengineer
0
330
Featured
See All Featured
Navigating Weather and Climate Data
rabernat
0
210
Navigating Team Friction
lara
192
16k
Building Flexible Design Systems
yeseniaperezcruz
330
40k
The Director’s Chair: Orchestrating AI for Truly Effective Learning
tmiket
1
180
The Organizational Zoo: Understanding Human Behavior Agility Through Metaphoric Constructive Conversations (based on the works of Arthur Shelley, Ph.D)
kimpetersen
PRO
0
350
Stop Working from a Prison Cell
hatefulcrawdad
274
21k
Why Mistakes Are the Best Teachers: Turning Failure into a Pathway for Growth
auna
0
150
Imperfection Machines: The Place of Print at Facebook
scottboms
270
14k
Practical Tips for Bootstrapping Information Extraction Pipelines
honnibal
25
1.9k
Impact Scores and Hybrid Strategies: The future of link building
tamaranovitovic
0
300
Rails Girls Zürich Keynote
gr2m
96
14k
Future Trends and Review - Lecture 12 - Web Technologies (1019888BNR)
signer
PRO
0
3.6k
Transcript
2015/5/13 Dwango Internal Erlang/OTP study group, LT Kota UENISHI /
@kuenishi JEPSEN “CALL ME MAYBE”
“Call Me Maybe” WHAT EVEN IS JEPSEN?
Who plays a song “Call Me Maybe” A NAME OF
A SINGER
That can test many system with replication ALSO, A PARTITION
TOLERANCE TEST TOOL
IT HAS TESTED … • PostgreSQL • Redis (Sentinel, redux)
• MongoDB • Riak • ZooKeeper • NuoDB • Kafka • Cassandra • RabbitMQ • etcd and Consul • Elasticsearch • Aerospike (New!)
AND FOUND DATA LOSS ISSUE OF … • Redis (Sentinel,
redux) • MongoDB • Kafka • Cassandra • RabbitMQ • etcd • Elasticsearch • Aerospike
BOXES AND LINES n1 jepsen n2 n3 n4 n5
is implemented in Clojure TECHNICALLY JEPSEN .. • Emulates network
partition • By cutting network between virtual machines • While Jepsen concurrently continues writing data, • And finally verifies any writes are not lost
WHY PARTITION TOLERANCE IS IMPORTANT AND DIFFICULT?
• In the beginning was the failure and asynchrony •
Replication and Consensus next • Failover and recovery / Membership Change mess things • Implementation and runtime is complexed
• for x=1….n • list = get(x) • write(x, [a,
list]) • get(x) • => [1…n] ͱͳ͍ͬͯΕ linearizable
REFERENCES • C.R.Jepsen “Call Me Maybe” • Jepsen blog post
series • github.com/aphyr/jepsen • Kyle Kingsbury: @aphyr (sometimes NSFW) • “The Network Is Reliable” • https://queue.acm.org/detail.cfm?id=2655736