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
Storm: the Hadoop of Realtime Stream Processing
Search
Gabriel Grant
March 25, 2012
Programming
3
1.3k
Storm: the Hadoop of Realtime Stream Processing
Twitter's new scalable, fault-tolerant, and simple(ish) stream programming system... with Python!
Gabriel Grant
March 25, 2012
Tweet
Share
More Decks by Gabriel Grant
See All by Gabriel Grant
Painting Rainbows: Building Bridges in the Cloud
gabrielgrant
1
220
Other Decks in Programming
See All in Programming
202507_ADKで始めるエージェント開発の基本 〜デモを通じて紹介〜(奥田りさ)The Basics of Agent Development with ADK — A Demo-Focused Introduction
risatube
PRO
5
1.2k
コーディングエージェント概観(2025/07)
itsuki_t88
0
440
[DevinMeetupTokyo2025] コード書かせないDevinの使い方
takumiyoshikawa
2
220
PHPUnitの限界をPlaywrightで補完するテストアプローチ
yuzneri
0
350
テスターからテストエンジニアへ ~新米テストエンジニアが歩んだ9ヶ月振り返り~
non0113
2
240
코딩 에이전트 체크리스트: Claude Code ver.
nacyot
0
1k
ソフトウェア設計とAI技術の活用
masuda220
PRO
25
6.9k
プロダクトという一杯を作る - プロダクトチームが味の責任を持つまでの煮込み奮闘記
hiliteeternal
0
290
SQLアンチパターン第2版 データベースプログラミングで陥りがちな失敗とその対策 / Intro to SQL Antipatterns 2nd
twada
PRO
34
10k
新しいモバイルアプリ勉強会(仮)について
uetyo
1
200
Advanced Micro Frontends: Multi Version/ Framework Scenarios
manfredsteyer
PRO
0
110
AIに安心して任せるためにTypeScriptで一意な型を作ろう
arfes0e2b3c
0
270
Featured
See All Featured
Keith and Marios Guide to Fast Websites
keithpitt
411
22k
XXLCSS - How to scale CSS and keep your sanity
sugarenia
248
1.3M
Evolution of real-time – Irina Nazarova, EuRuKo, 2024
irinanazarova
8
850
The Cult of Friendly URLs
andyhume
79
6.5k
Faster Mobile Websites
deanohume
308
31k
The Myth of the Modular Monolith - Day 2 Keynote - Rails World 2024
eileencodes
26
2.9k
Unsuck your backbone
ammeep
671
58k
The Success of Rails: Ensuring Growth for the Next 100 Years
eileencodes
45
7.5k
The Power of CSS Pseudo Elements
geoffreycrofte
77
5.9k
Fireside Chat
paigeccino
37
3.5k
jQuery: Nuts, Bolts and Bling
dougneiner
63
7.8k
Balancing Empowerment & Direction
lara
1
510
Transcript
STORM Keeping it Real(time) Since 2011
HELLO.
dotCloud.com
DATA
DATA
MEGA-DATA
VERSION ONE
VERSION TWO
VERSION TWO
VERSION THREE
JOY
VERSION FOUR?
ENTER, STORM
REAL-TIME COMPUTATION
DISTRIBUTED RPC & STREAM PROCESSING
HISTORY
STREAM PROCESSING
STORM:REAL-TIME HADOOP:BATCH
WOW
HIGH VOLUME
CONTINUOUS
CONTINUOUS
FAULT TOLERANT
DOESN'T
PERSIST
PROCESS BATCHES RELIABLY
PROTECT AGAINST HUMAN ERROR
PROTECT AGAINST HUMAN ERROR
THREE CORE ELEMENTS
SPOUTS
STREAMS
BOLTS
TOPOLOGIES
TASKS
TASKS
OUTPUT ROUTING?
STREAM GROUPINGS
SHUFFLE GROUPING
FIELDS GROUPING
ALL GROUPING
GLOBAL GROUPING
DOWN 'N DIRTY
GATEWAYS
GATEWAYS
REAL-TIME GEOCODE BUCKETED CLIENT UPDATE
THE TOPOLOGY
THE TOPOLOGY
CODE TIME: START ECLIPSE
WAIT, WHAT?!
MULTILANG API
I'VE GOT YOU COVERED
UMBRELLA: IT PROTECTS YOU FROM STORM
THE TOPOLOGY
I'VE GOT YOU COVERED class RedisSpout(JVMSpout): class Default(Stream): fields =
'message' jvm_class = 'yieldbot.storm.spout'
I'VE GOT YOU COVERED class LogParserBolt(AutoAckBolt): class Default(Stream): fields =
'ip_address' def execute(self, input): ip_address = parse_log(input.message) self.emit(ip_address)
I'VE GOT YOU COVERED class GeolocatorBolt(AutoAckBolt): class Default(Stream): fields =
'lat', 'long' def __init__(self, *args, **kwargs): self.geoip = pygeoip.GeoIP('GeoLiteCity.dat') super(GeolocatorBolt, self) \ .__init__(*args, **kwargs) def execute(self, input): record = self.geoip.record_by_addr(input.ip) lat = record['latitude'] long_ = record['longitude'] self.emit((lat, long_))
I'VE GOT YOU COVERED class WSPuserBolt(Bolt): def __init__(self, *args, **kwargs):
self.batcher = TimeBatcher() self.pusher = zerorpc.Client(timeout=None) url = os.environ['WSPUSHER_ZERORPC_URL'] self.wspusher.connect(url) super(WSPusherBolt, self).__init__(*args, **kwargs def execute(self, input): t = time() batch = self.pop_batch(t) if batch: self.wspusher.push_list(batch) data = input.lat, input.long self.batcher.push_item(t, data)
I'VE GOT YOU COVERED class GeocoderTopology(Topology): # components redis =
RedisSpout(1) parser = LogParserBolt(3) geolocator = GeolocatorBolt(2) pusher = WSPuserBolt(4) # plumbing parser.inputs.append(ShuffleGrouping(redis)) geolocator.inputs.append(ShuffleGrouping(parser)) pusher.inputs.append( FieldsGrouping(geolocator, 'lat', 'long'))
INSIDE THE MACHINE
THREE COMPONENTS
NIMBUS
ZOOKEEPER CLUSTER
WORKER NODES
DETAILS
DEPLOYMENT
EC2?
DOTCLOUD!
$ git clone \ https://github.com/gabrielgrant/storm-on-dotcloud.git $ dotcloud push mystorm storm-on-dotcloud
… $ dotcloud scale worker=3
TESTING
JAVA
CLOJURE
ANT MAVEN
LINEINGEN
SCALING
WHEN
HOW
THE FUTURE: EASY & AUTO
THANKS!
GABRIEL GRANT @gabrielmgrant gabrielgrant.ca