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
Scale like a pro
Search
Sponsored
·
Ship Features Fearlessly
Turn features on and off without deploys. Used by thousands of Ruby developers.
→
Python Porto
December 14, 2017
Programming
330
1
Share
Embed
Copy iframe code
Copy JS code
Copy link
Start on current slide
Scale like a pro
Distributed task processing with Python and Celery
Python Porto
December 14, 2017
More Decks by Python Porto
See All by Python Porto
Detecting phishing with Recurrent Neural Networks
pyporto
0
54
Quick and Robust API with Django Rest Framework
pyporto
1
370
Django as your data management framework
pyporto
1
1.3k
Can my computer make jokes
pyporto
0
130
Building a serverless cloud service
pyporto
0
72
Python Porto #10. Past, present and future
pyporto
0
110
Entertaining testing with pytest
pyporto
0
220
Joyful Python Web App development with Appier
pyporto
0
180
Other Decks in Programming
See All in Programming
決定論的オーケストレーションの設計と実装 / Design and Implementation of Deterministic Orchestration
nrslib
3
1.3k
net-httpのHTTP/2対応について
naruse
0
470
JJUG CCC 2026 Spring: JSpecify で実現する Kotlin フレンドリーな Java API 設計
ternbusty
1
160
ECSアプリログをFireLensでコスト削減しようとしたけど諦めた話 in Fargate×Node.js
akihisaikeda
2
4k
気圧・高度・GPSを記録&可視化するアプリ「Koudo」を作った話
hjmkth
1
140
New "Type" system on PicoRuby
pocke
1
830
AI 時代のソフトウェア設計の学び方
masuda220
PRO
29
12k
3Dシーンの圧縮
fadis
1
750
AIで効率化できた業務・日常
ochtum
0
130
生成AI時代にこそ効くGo | Why Go Works in the Age of Generative AI
mom0tomo
8
3.2k
Oxcを導入して開発体験が向上した話
yug1224
4
310
軽量Java基盤の設計 DIコンテナに頼らない、長期保守と1秒起動の実現 JJUG CCC 2026 Spring
macha64
0
500
Featured
See All Featured
Prompt Engineering for Job Search
mfonobong
0
340
What the history of the web can teach us about the future of AI
inesmontani
PRO
1
610
My Coaching Mixtape
mlcsv
0
140
Docker and Python
trallard
47
3.9k
GraphQLの誤解/rethinking-graphql
sonatard
75
12k
Music & Morning Musume
bryan
47
7.2k
Design in an AI World
tapps
1
240
The innovator’s Mindset - Leading Through an Era of Exponential Change - McGill University 2025
jdejongh
PRO
1
200
Mind Mapping
helmedeiros
PRO
1
250
Marketing to machines
jonoalderson
1
5.4k
svc-hook: hooking system calls on ARM64 by binary rewriting
retrage
2
290
Understanding Cognitive Biases in Performance Measurement
bluesmoon
32
2.9k
Transcript
Scale like a pro Distributed computing with message queues and
Python Roman Imankulov | Python Porto | December 2017
Source: https://blog.kissmetrics.com/wp-content/uploads/2011/04/loading-time.pdf
browser ./webserver.py request POST /obj/<id> obj.update()
browser ./webserver.py request POST /obj/<id> obj.update() update search indexes
browser ./webserver.py request POST /obj/<id> obj.update() update search indexes send
email “object updated” …
browser ./webserver.py request POST /obj/<id> obj.update() update search indexes update
business analytics send email “object updated” …
browser ./webserver.py request POST /obj/<id> obj.update() update search indexes update
business analytics send email “object updated” … response
None
browser ./webserver.py request POST /obj/<id> response obj.update() ./worker.py ./worker.py ./worker.py
update search indexes send email “object updated” update business analytics
Message queues
None
None
queue
frontends queue
frontends queue workers
frontends queue job 1 workers
frontends queue job 1 workers job 2
frontends queue job 1 workers job 2 job 3
frontends queue put() job 1 workers job 2 job 3
frontends queue put() job 1 workers job 2 job 3
frontends queue job 1 workers job 2 job 3
frontends queue job 1 workers put() job 2 job 3
frontends queue job 1 workers put() job 2 job 3
frontends queue job 1 workers job 2 job 3
frontends queue job 1 workers put() job 2 job 3
frontends queue job 1 workers put() job 2 job 3
frontends queue job 1 workers job 2 job 3
frontends queue job 1 get() workers job 2 job 3
frontends queue get() workers job 2 job 3 job 1
frontends queue workers job 2 job 3 job 1
frontends queue workers get() job 2 job 3 job 1
frontends queue workers get() job 3 job 1 job 2
frontends queue workers job 3 job 1 job 2
frontends queue workers job 3 job 2
frontends queue workers job 3 job 2 get()
frontends queue workers job 2 job 3 get()
frontends queue workers job 2 job 3
frontends queue workers
Queue in python
Multiprocessing
None
None
None
None
None
None
None
Celery The queue out of the box
None
None
None
None
None
Celery Workflows chains, groups and chords
Task signatures
Task signatures
Task signatures
Chains a(…) b(…) c(…)
Chains a(…) b(…) c(…)
Chains a(…) b(…) c(…)
a(…) b(…) c(…) Groups
a(…) b(…) c(…) Groups
a(…) b(…) c(…) Groups
Chords a(…) b(…) c(…) d(…)
Chords a(…) b(…) c(…) d(…)
Chords a(…) b(…) c(…) d(…)
Celery Extras out of the box
None
• Different backends
• Different backends • Different serializers
• Different backends • Different serializers • Callbacks / errbacks
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results • Expiring results
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results • Expiring results • Retry policies
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results • Expiring results • Retry policies • Time limits on task execution
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results • Expiring results • Retry policies • Time limits on task execution • Rate limits (N tasks per minute)
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results • Expiring results • Retry policies • Time limits on task execution • Rate limits (N tasks per minute) • Autoscaling
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results • Expiring results • Retry policies • Time limits on task execution • Rate limits (N tasks per minute) • Autoscaling • Multiple queues
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results • Expiring results • Retry policies • Time limits on task execution • Rate limits (N tasks per minute) • Autoscaling • Multiple queues • Introspection and statistics
• Different backends • Different serializers • Callbacks / errbacks
• Progress reports from tasks • Delayed tasks • Ignored results • Expiring results • Retry policies • Time limits on task execution • Rate limits (N tasks per minute) • Autoscaling • Multiple queues • Introspection and statistics • Periodic tasks and crontabs
None
facebook.com/pyporto