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
400
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
720
How To Break Django: With Async
andrewgodwin
1
790
Taking Django's ORM Async
andrewgodwin
0
780
The Long Road To Asynchrony
andrewgodwin
0
750
The Scientist & The Engineer
andrewgodwin
1
820
Pioneering Real-Time
andrewgodwin
0
490
Other Decks in Programming
See All in Programming
AWS re:Invent 2025の少し振り返り + DevOps AgentとBacklogを連携させてみた
satoshi256kbyte
2
140
GoのDB アクセスにおける 「型安全」と「柔軟性」の両立 - Bob という選択肢
tak848
0
310
Laravel Nightwatchの裏側 - Laravel公式Observabilityツールを支える設計と実装
avosalmon
1
310
Geminiをパートナーに神社DXシステムを個人開発した話(いなめぐDX 開発振り返り)
fujiba
0
140
「接続」—パフォーマンスチューニングの最後の一手 〜点と点を結ぶ、その一瞬のために〜
kentaroutakeda
5
2.4k
Coding at the Speed of Thought: The New Era of Symfony Docker
dunglas
0
4.5k
Nuxt Server Components
wattanx
0
240
20260313 - Grafana & Friends Taipei #1 - Kubernetes v1.36 的開發雜記:那些困在 Alpha 加護病房太久的 Metrics
tico88612
0
250
それはエンジニアリングの糧である:AI開発のためにAIのOSSを開発する現場より / It serves as fuel for engineering: insights from the field of developing open-source AI for AI development.
nrslib
1
820
AIと共にエンジニアとPMの “二刀流”を実現する
naruogram
0
130
Coding as Prompting Since 2025
ragingwind
0
680
野球解説AI Agentを開発してみた - 2026/02/27 LayerX社内LT会資料
shinyorke
PRO
0
390
Featured
See All Featured
Noah Learner - AI + Me: how we built a GSC Bulk Export data pipeline
techseoconnect
PRO
0
160
The Director’s Chair: Orchestrating AI for Truly Effective Learning
tmiket
1
140
Producing Creativity
orderedlist
PRO
348
40k
Jamie Indigo - Trashchat’s Guide to Black Boxes: Technical SEO Tactics for LLMs
techseoconnect
PRO
0
93
JavaScript: Past, Present, and Future - NDC Porto 2020
reverentgeek
52
5.9k
Helping Users Find Their Own Way: Creating Modern Search Experiences
danielanewman
31
3.1k
Joys of Absence: A Defence of Solitary Play
codingconduct
1
330
Building an army of robots
kneath
306
46k
The Invisible Side of Design
smashingmag
302
51k
Designing for Timeless Needs
cassininazir
0
180
Digital Ethics as a Driver of Design Innovation
axbom
PRO
1
250
The B2B funnel & how to create a winning content strategy
katarinadahlin
PRO
1
330
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]