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
Scaling Django with Distributed Systems
Search
Andrew Godwin
April 07, 2017
Programming
3
2.2k
Scaling Django with Distributed Systems
A talk I gave at PyCon Ukraine 2017.
Andrew Godwin
April 07, 2017
Tweet
Share
More Decks by Andrew Godwin
See All by Andrew Godwin
Reconciling Everything
andrewgodwin
1
320
Django Through The Years
andrewgodwin
0
210
Writing Maintainable Software At Scale
andrewgodwin
0
450
A Newcomer's Guide To Airflow's Architecture
andrewgodwin
0
360
Async, Python, and the Future
andrewgodwin
2
670
How To Break Django: With Async
andrewgodwin
1
730
Taking Django's ORM Async
andrewgodwin
0
730
The Long Road To Asynchrony
andrewgodwin
0
660
The Scientist & The Engineer
andrewgodwin
1
770
Other Decks in Programming
See All in Programming
中級グラフィックス入門~効率的なメッシュレット描画~
projectasura
4
2.7k
Comparing decimals in Swift Testing
417_72ki
0
170
「リーダーは意思決定する人」って本当?~ 学びを現場で活かす、リーダー4ヶ月目の試行錯誤 ~
marina1017
0
220
生成AI、実際どう? - ニーリーの場合
nealle
0
100
Bedrock AgentCore ObservabilityによるAIエージェントの運用
licux
9
650
20250808_AIAgent勉強会_ClaudeCodeデータ分析の実運用〜競馬を題材に回収率100%の先を目指すメソッドとは〜
kkakeru
0
160
なぜ今、Terraformの本を書いたのか? - 著者陣に聞く!『Terraformではじめる実践IaC』登壇資料
fufuhu
4
600
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
6
1.4k
WebAssemblyインタプリタを書く ~Component Modelを添えて~
ruccho
1
800
#QiitaBash TDDで(自分の)開発がどう変わったか
ryosukedtomita
1
360
STUNMESH-go: Wireguard NAT穿隧工具的源起與介紹
tjjh89017
0
360
実践!App Intents対応
yuukiw00w
1
260
Featured
See All Featured
Faster Mobile Websites
deanohume
309
31k
Cheating the UX When There Is Nothing More to Optimize - PixelPioneers
stephaniewalter
283
13k
It's Worth the Effort
3n
186
28k
The Illustrated Children's Guide to Kubernetes
chrisshort
48
50k
Designing for humans not robots
tammielis
253
25k
Balancing Empowerment & Direction
lara
2
550
Automating Front-end Workflow
addyosmani
1370
200k
Designing Dashboards & Data Visualisations in Web Apps
destraynor
231
53k
実際に使うSQLの書き方 徹底解説 / pgcon21j-tutorial
soudai
PRO
183
54k
GitHub's CSS Performance
jonrohan
1031
460k
GraphQLとの向き合い方2022年版
quramy
49
14k
Reflections from 52 weeks, 52 projects
jeffersonlam
351
21k
Transcript
None
Andrew Godwin Hi, I'm Django core developer Senior Software Engineer
at Used to complain about migrations a lot
Distributed Systems
c = 299,792,458 m/s
Early CPUs c = 60m propagation distance Clock ~2cm 5
MHz
Modern CPUs c = 10cm propagation distance 3 GHz
Distributed systems are made of independent components
They are slower and harder to write than synchronous systems
But they can be scaled up much, much further
Trade-offs
There is never a perfect solution.
Fast Good Cheap
None
Load Balancer WSGI Worker WSGI Worker WSGI Worker
Load Balancer WSGI Worker WSGI Worker WSGI Worker Cache
Load Balancer WSGI Worker WSGI Worker WSGI Worker Cache Cache
Cache
Load Balancer WSGI Worker WSGI Worker WSGI Worker Database
CAP Theorem
Partition Tolerant Consistent Available
PostgreSQL: CP Consistent everywhere Handles network latency/drops Can't write if
main server is down
Cassandra: AP Can read/write to any node Handles network latency/drops
Data can be inconsistent
It's hard to design a product that might be inconsistent
But if you take the tradeoff, scaling is easy
Otherwise, you must find other solutions
Read Replicas (often called master/slave) Load Balancer WSGI Worker WSGI
Worker WSGI Worker Replica Replica Main
Replicas scale reads forever... But writes must go to one
place
If a request writes to a table it must be
pinned there, so later reads do not get old data
When your write load is too high, you must then
shard
Vertical Sharding Users Tickets Events Payments
Horizontal Sharding Users 0 - 2 Users 3 - 5
Users 6 - 8 Users 9 - A
Both Users 0 - 2 Users 3 - 5 Users
6 - 8 Users 9 - A Events 0 - 2 Events 3 - 5 Events 6 - 8 Events 9 - A Tickets 0 - 2 Tickets 3 - 5 Tickets 6 - 8 Tickets 9 - A
Both plus caching Users 0 - 2 Users 3 -
5 Users 6 - 8 Users 9 - A Events 0 - 2 Events 3 - 5 Events 6 - 8 Events 9 - A Tickets 0 - 2 Tickets 3 - 5 Tickets 6 - 8 Tickets 9 - A User Cache Event Cache Ticket Cache
Teams have to scale too; nobody should have to understand
eveything in a big system.
Services allow complexity to be reduced - for a tradeoff
of speed
Users 0 - 2 Users 3 - 5 Users 6
- 8 Users 9 - A Events 0 - 2 Events 3 - 5 Events 6 - 8 Events 9 - A Tickets 0 - 2 Tickets 3 - 5 Tickets 6 - 8 Tickets 9 - A User Cache Event Cache Ticket Cache User Service Event Service Ticket Service
User Service Event Service Ticket Service WSGI Server
Each service is its own, smaller project, managed and scaled
separately.
But how do you communicate between them?
Service 2 Service 3 Service 1 Direct Communication
Service 2 Service 3 Service 1 Service 4 Service 5
Service 2 Service 3 Service 1 Service 4 Service 5
Service 6 Service 7 Service 8
Service 2 Service 3 Service 1 Message Bus Service 2
Service 3 Service 1
A single point of failure is not always bad -
if the alternative is multiple, fragile ones
Channels and ASGI provide a standard message bus built with
certain tradeoffs
Backing Store e.g. Redis, RabbitMQ ASGI (Channel Layer) Channels Library
Django Django Channels Project
Backing Store e.g. Redis, RabbitMQ ASGI (Channel Layer) Pure Python
Failure Mode At most once Messages either do not arrive,
or arrive once. At least once Messages arrive once, or arrive multiple times
Guarantees vs. Latency Low latency Messages arrive very quickly but
go missing more Low loss rate Messages are almost never lost but arrive slower
Queuing Type First In First Out Consistent performance for all
users First In Last Out Hides backlogs but makes them worse
Queue Sizing Finite Queues Sending can fail Infinite queues Makes
problems even worse
You must understand what you are making (This is surprisingly
uncommon)
Design as much as possible around shared-nothing
Per-machine caches On-demand thumbnailing Signed cookie sessions
Has to be shared? Try to split it
Has to be shared? Try sharding it.
Django's job is to be slowly replaced by your code
Just make sure you match the API contract of what
you're replacing!
Don't try to scale too early; you'll pick the wrong
tradeoffs.
Thanks. Andrew Godwin @andrewgodwin channels.readthedocs.io