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
Building Data Pipelines in Python
Search
Marco Bonzanini
April 16, 2016
Programming
2
570
Building Data Pipelines in Python
Slides of my talk at PyCon7 in Florence (April 2016)
Marco Bonzanini
April 16, 2016
Tweet
Share
More Decks by Marco Bonzanini
See All by Marco Bonzanini
Pitfalls in Data Science Projects (and how to avoid them)
marcobonzanini
0
43
Is Your Open-source LLM Really Open?
marcobonzanini
0
46
Perambulations in Football Analytics
marcobonzanini
0
36
Natural Language Processing Expert Briefing @ PyData Global 2022
marcobonzanini
0
90
Natural Language Processing Expert Briefing @ PyData Global 2021
marcobonzanini
0
110
Getting into Data Science @ HisarCS 2021
marcobonzanini
0
250
Mining topics in documents with topic modelling and Python @ London Python meetup
marcobonzanini
1
210
Topic Modelling workshop @ PyCon UK 2019
marcobonzanini
2
110
Lies, Damned Lies, and Statistics @ PyCon UK 2019
marcobonzanini
0
120
Other Decks in Programming
See All in Programming
パスタの技術
yusukebe
1
540
Ruby Parser progress report 2025
yui_knk
1
240
[FEConf 2025] 모노레포 절망편, 14개 레포로 부활하기까지 걸린 1년
mmmaxkim
0
1.4k
WebAssemblyインタプリタを書く ~Component Modelを添えて~
ruccho
1
940
AIでLINEスタンプを作ってみた
eycjur
1
220
【第4回】関東Kaggler会「Kaggleは執筆に役立つ」
mipypf
0
950
The State of Fluid (2025)
s2b
0
210
ライブ配信サービスの インフラのジレンマ -マルチクラウドに至ったワケ-
mirrativ
2
270
Understanding Ruby Grammar Through Conflicts
yui_knk
1
190
コーディングは技術者(エンジニア)の嗜みでして / Learning the System Development Mindset from Rock Lady
mackey0225
2
630
Oracle Database Technology Night 92 Database Connection control FAN-AC
oracle4engineer
PRO
1
340
Infer入門
riru
4
1.6k
Featured
See All Featured
Creating an realtime collaboration tool: Agile Flush - .NET Oxford
marcduiker
31
2.2k
StorybookのUI Testing Handbookを読んだ
zakiyama
30
6k
CoffeeScript is Beautiful & I Never Want to Write Plain JavaScript Again
sstephenson
161
15k
Git: the NoSQL Database
bkeepers
PRO
431
65k
Statistics for Hackers
jakevdp
799
220k
The Cost Of JavaScript in 2023
addyosmani
53
8.9k
Side Projects
sachag
455
43k
Raft: Consensus for Rubyists
vanstee
140
7.1k
jQuery: Nuts, Bolts and Bling
dougneiner
64
7.9k
Templates, Plugins, & Blocks: Oh My! Creating the theme that thinks of everything
marktimemedia
31
2.5k
Bash Introduction
62gerente
614
210k
Fantastic passwords and where to find them - at NoRuKo
philnash
52
3.4k
Transcript
Building Data Pipelines in Python Marco Bonzanini ! PyCon Italia
- Florence 2016
Nice to meet you • @MarcoBonzanini • “Type B” Data
Scientist • PhD in Information Retrieval • Book with PacktPub (July 2016) • Usually at PyData London
R&D ≠ Engineering R&D results in production = high value
None
Big Data Problems vs Big Data Problems
Data Pipelines Data ETL Analytics • Many components in a
data pipeline: • Extract, Clean, Augment, Join data
Good Data Pipelines Easy to reproduce Easy to productise
Towards Good Pipelines • Transform your data, don’t overwrite •
Break it down into components • Different packages (e.g. setup.py) • Unit tests vs end-to-end tests Good = Replicable and Productisable
Anti-Patterns • Bunch of scripts • Single run-everything script •
Hacky homemade dependency control • Don’t reinvent the wheel
Intermezzo Let me rant about testing Icon by Freepik from
flaticon.com
(Unit) Testing • Unit tests in three easy steps: •
import unittest • Write your tests • Quit complaining about lack of time to write tests
Benefits of (unit) testing • Safety net for refactoring •
Safety net for lib upgrades • Validate your assumptions • Document code / communicate your intentions • You’re forced to think
Testing: not convinced yet?
Testing: not convinced yet?
Testing: not convinced yet? f1 = fscore(p, r) min_bound,
max_bound = sorted([p, r]) assert min_bound <= f1 <= max_bound
Testing: I’m almost done • Unit tests vs Defensive Programming
• Say no to tautologies • Say no to vanity tests • Know the ecosystem: py.test, nosetests, hypothesis, coverage.py, …
</rant>
Intro to Luigi GNU Make + Unix pipes + Steroids
• Workflow manager in Python, by Spotify • Dependency management • Error control, checkpoints, failure recovery • Minimal boilerplate • Dependency graph visualisation $ pip install luigi
Luigi Task: unit of execution class MyTask(luigi.Task): ! def requires(self):
pass # list of dependencies def output(self): pass # task output def run(self): pass # task logic
Luigi Target: output of a task class MyTarget(luigi.Target): ! def
exists(self): pass # return bool Off the shelf support for local file system, S3, Elasticsearch, RDBMS (also via luigi.contrib)
Not only Luigi • More Python-based workflow managers: • Airflow
by Airbnb • Mrjob by Yelp • Pinball by Pinterest
When things go wrong • import logging • Say no
to print() for debugging • Custom log format / extensive info • Different levels of severity • Easy to switch off or change level
Who reads the logs? You’re not going to read the
logs, unless… • E-mail notifications • built-in in Luigi • Slack notifications $ pip install luigi_slack # WIP
Summary • R&D is not Engineering: can we meet halfway?
• Prototypes vs. Products • Automation and replicability matter • You need a workflow manager • Good engineering principles help: • Testing, logging, packaging, …
Vanity Slide • speakerdeck.com/marcobonzanini • github.com/bonzanini • marcobonzanini.com • @MarcoBonzanini