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
A Newcomer's Guide To Airflow's Architecture
Search
Andrew Godwin
July 12, 2021
Programming
410
0
Share
A Newcomer's Guide To Airflow's Architecture
A talk I gave at Airflow Summit 2021.
Andrew Godwin
July 12, 2021
More Decks by Andrew Godwin
See All by Andrew Godwin
Reconciling Everything
andrewgodwin
1
380
Django Through The Years
andrewgodwin
0
300
Writing Maintainable Software At Scale
andrewgodwin
0
510
Async, Python, and the Future
andrewgodwin
2
730
How To Break Django: With Async
andrewgodwin
1
800
Taking Django's ORM Async
andrewgodwin
0
790
The Long Road To Asynchrony
andrewgodwin
0
750
The Scientist & The Engineer
andrewgodwin
1
830
Pioneering Real-Time
andrewgodwin
0
500
Other Decks in Programming
See All in Programming
AI時代のPhpStorm最新事情 #phpcon_odawara
yusuke
0
190
AI-DLC Deep Dive
yuukiyo
9
4.7k
의존성 주입과 모듈화
fornewid
0
150
クラウドネイティブなエンジニアに向ける Raycastの魅力と実際の活用事例
nealle
2
220
[RubyKaigi 2026] Require Hooks
palkan
1
220
GNU Makeの使い方 / How to use GNU Make
kaityo256
PRO
16
5.6k
PicoRuby for IoT: Connecting to the Cloud with MQTT
yuuu
2
640
Road to RubyKaigi: Play Hard(ware)
makicamel
1
420
事業会社でのセキュリティ長期インターンについて
masachikaura
0
260
Kubernetes上でAgentを動かすための最新動向と押さえるべき概念まとめ
sotamaki0421
3
620
Server-Side Kotlin LT大会 vol.18 [Kotlin-lspの最新情報と Neovimのlsp設定例]
yasunori0418
1
180
The Monolith Strikes Back: Why AI Agents ❤️ Rails Monoliths
serradura
0
340
Featured
See All Featured
Efficient Content Optimization with Google Search Console & Apps Script
katarinadahlin
PRO
1
510
How to audit for AI Accessibility on your Front & Back End
davetheseo
0
280
ピンチをチャンスに:未来をつくるプロダクトロードマップ #pmconf2020
aki_iinuma
128
55k
How to train your dragon (web standard)
notwaldorf
97
6.6k
How to make the Groovebox
asonas
2
2.1k
How Software Deployment tools have changed in the past 20 years
geshan
0
33k
Leveraging Curiosity to Care for An Aging Population
cassininazir
1
220
The Curious Case for Waylosing
cassininazir
0
320
Imperfection Machines: The Place of Print at Facebook
scottboms
270
14k
GitHub's CSS Performance
jonrohan
1032
470k
The Language of Interfaces
destraynor
162
26k
More Than Pixels: Becoming A User Experience Designer
marktimemedia
3
380
Transcript
A NEWCOMER'S GUIDE TO ANDREW GODWIN // @andrewgodwin AIRFLOW'S ARCHITECTURE
Hi, I’m Andrew Godwin • Principal Engineer at • Also
a Django core developer, ASGI author • Using Airflow since March 2021
None
High-Level Concepts What exactly is going on? The Good and
the Bad Or, How I Learned To Stop Worrying And Love The Scheduler Problems, Fixes & The Future Where we go from here
Differences from things I have worked on? (An eclectic variety
of web and backend systems)
"Real-time" versus batch The availability versus consistency tradeoff is different!
Simple concepts, hard to master In Django, it's the ORM. In Airflow, scheduling. It's all still distributed systems Which is fortunate, after fifteen years of doing them
Airflow grew organically It started off as an internal ETL
tool
None
DAG ➡ DagRun One per scheduled run, as the run
starts Operator ➡ Task When you call an operator in a DAG Task ➡ TaskInstance When a Task needs to run as part of a DagRun
Scheduler Works out what TaskInstances need to run Executor Runs
TaskInstances and records the results
Scheduler LocalExecutor Webserver Database DAG Files
Scheduler CeleryExecutor Webserver Database DAG Files Redis/Queue Workers
The Executor runs inside the Scheduler Its logic, at least,
and the tasks too for local ones
Everything talks to the database It's the single central point
of coordination
Scheduler, Workers, Webserver All can be run in a high-availability
pattern
Scheduler Works out what TaskInstances need to run Executor Runs
TaskInstances and records the results
Scheduler Works out what TaskInstances need to run Executor Runs
TaskInstances and records the results
Timing Dependencies Retries Concurrency Callbacks ...
Scheduler Works out what TaskInstances need to run Executor Runs
TaskInstances and records the results
Celery or Kubernetes Our two main options, currently
Scheduler CeleryExecutor Webserver Database DAG Files Redis/Queue Workers
Scheduler KubernetesExecutor Webserver Database DAG Files Kubernetes Task Pods
None
Tasks are the core part of the model DAGs are
more of a grouping/trigger mechanism
Very flexible runtime environments Airflow's strength, and its weakness
Airflow doesn't know what you're running This is both an
advantage and a disadvantage.
What can we improve? Let's talk about The Future
More Async & Eventing Anything that involves waiting!
Scheduler CeleryExecutor Webserver Database DAG Files Redis/Queue Workers Triggerer
Removing Database Connections APIs scale a lot better!
I do like the database, though There's a lot of
benefit in proven technology
Software Engineering is not just coding Any large-scale project needs
documentation, architecture, and coordination
Maintenance & compatibility is crucial Anyone can write a tool
- supporting it takes effort
Airflow is forged by people like you. Coding, documentation, triage,
QA, support - it all needs doing.
Thanks. Andrew Godwin @andrewgodwin
[email protected]