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
PyConDE 2016 - Building Data Pipelines with P...
Search
Miguel Cabrera
October 31, 2016
Technology
340
0
Share
PyConDE 2016 - Building Data Pipelines with Python
Miguel Cabrera
October 31, 2016
More Decks by Miguel Cabrera
See All by Miguel Cabrera
From Days to Minutes: How We Taught an AI to Onboard 50+ Tenants on our AI Features
mfcabrera
0
130
Machine Learning for Time Series Forecasting
mfcabrera
0
340
Data Science in Fashion - Exploring Demand Forecasting
mfcabrera
0
150
Helping Travellers Make Better Hotel Choices 500 Million Times a Month
mfcabrera
1
200
Europython 2016 - Things I wish I knew before using Python for Data Processing
mfcabrera
1
1.3k
PyData Berlin Meetup Nov 2015 - (Some of the) things I wish I knew before starting using Python for Data Science
mfcabrera
0
220
Python and Life Hacking with Emacs
mfcabrera
2
380
PyData Berlin 2015 - Processing Hotel Reviews with Python
mfcabrera
4
2k
Munich Datageeks - Introduction to SVM using Python
mfcabrera
2
330
Other Decks in Technology
See All in Technology
Gaussian Splattingの実用化 - 映像制作への展開
gpuunite_official
0
200
Sansan Engineering Unit 紹介資料
sansan33
PRO
1
4.5k
AIAgentと取り組むKaggle
508shuto
2
420
ECSのTerraformモジュールにコントリビュートした話
harukasakihara
0
250
Loadbalancing exporter internals
ymotongpoo
1
110
PdM・Eng・QAで進めるAI駆動開発の現在地/aidd-with-pdm-eng-qa
shota_kusaba
0
260
SpeechTranscriber + AIによる文字起こし機能
kazuki1220
0
120
AI Agent に“攻略本”を渡したら、150フォームの移行が回り始めた話/登壇資料(高橋 悟生)
hacobu
PRO
0
150
AWS運用におけるAI Agent活用術 / JAWS-UG 神戸 #11 LT大会
genda
1
300
【関西製造業祭り2026春】現場を変える技術はここまで来た〜世界最大の製造業見本市から持って帰ってきたもの〜
tanakaseiya
0
190
コーディングエージェントはTypeScriptの 型エラーをどう自己修正しているのか
melonps
2
130
エムスリーテクノロジーズ株式会社 エンジニア向け紹介資料 / M3 Technologies Company Deck
m3_engineering
0
190
Featured
See All Featured
HU Berlin: Industrial-Strength Natural Language Processing with spaCy and Prodigy
inesmontani
PRO
0
380
Optimizing for Happiness
mojombo
378
71k
Practical Orchestrator
shlominoach
191
11k
Responsive Adventures: Dirty Tricks From The Dark Corners of Front-End
smashingmag
254
22k
A brief & incomplete history of UX Design for the World Wide Web: 1989–2019
jct
2
370
Reflections from 52 weeks, 52 projects
jeffersonlam
356
21k
個人開発の失敗を避けるイケてる考え方 / tips for indie hackers
panda_program
122
21k
Templates, Plugins, & Blocks: Oh My! Creating the theme that thinks of everything
marktimemedia
31
2.8k
Claude Code どこまでも/ Claude Code Everywhere
nwiizo
65
55k
End of SEO as We Know It (SMX Advanced Version)
ipullrank
3
4.2k
Exploring the relationship between traditional SERPs and Gen AI search
raygrieselhuber
PRO
2
4k
Bioeconomy Workshop: Dr. Julius Ecuru, Opportunities for a Bioeconomy in West Africa
akademiya2063
PRO
1
110
Transcript
Building Data Pipelines with Python Data Engineer @ TY
@mfcabrera
[email protected]
Miguel Cabrera PyCon Deutschland 30.10.2016
Agenda
Agenda Context Data Pipelines with Luigi Tips and
Tricks Examples
Data Processing Pipelines
cat file.txt | wc -‐ l | mail -‐s
“hello”
[email protected]
ETL
ETL • Extract data from a data source •
Transform the data • Load into a sink
None
Feature Extraction Parameter Estimation Model Training Feature Extraction
Model Predict Visualize/ Format
Steps in different technologies
Steps can be run in parallel
Steps have complex dependencies among them
Workflows • Repeat • Parametrize •
Resume • Schedule it
None
None
“A Python framework for data flow definition and execution” Luigi
Concepts
Concepts Tasks Parameters Targets Scheduler & Workers
Tasks
None
1
2
3
4
WordCountTask file.txt wc.txt
WordCountTask file.txt wc.txt ToJsonTask wc.json
None
Parameters
None
Parameters Used to idenNfy the task From arguments
or from configuraNon Many types of Parameters (int, date, boolean, date range, Nme delta, dict, enum)
Targets
Targets Resources produced by a Task Typically Local files
or files distributed file system (HDFS) Must implement the method exists() Many targets available
None
Scheduler & Workers
None
Source: h@p:/ /www.arashrouhani.com/luigid-‐basics-‐jun-‐2015
BaVeries Included
Batteries Included Package contrib filled with goodies Good support
for Hadoop Different Targets Extensible
Task Types Task -‐ Local Hadoop MR, Pig, Spark,
etc SalesForce, ElasNcsearch, etc. ExternalProgram check luigi.contrib !
Target LocalTarget HDFS, S3, FTP, SSH, WebHDFS, etc.
ESTarget, MySQLTarget, MSQL, Hive, SQLAlchemy, etc.
None
Tips & Tricks
Separate pipeline and logic
Extend to avoid boilerplate code
DRY
Conclusion Luigi is a mature, baVeries-‐included alternaNve for building
data pipelines Lacks of powerful visualizaNon of the pipelines Requires a external way of launching jobs (i.e. cron). Hard to debug MR Jobs
Lear More hVps:/ /github.com/spoNfy/luigi hVp:/ /luigi.readthedocs.io/en/stable/
Thanks!
Credits • pipe icon by Oliviu Stoian from the Noun
Project • Photo Credit: (CC) h@ps:/ /www.flickr.com/photos/ 47244853@N03/29988510886 from hb.s via Compfight • Concrete Mixer: (CC) h@ps:/ /www.flickr.com/photos/ 145708285@N03/30138453986 by MasLabor via Compfight