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
Fast In-memory Analytics for Retail Data with C...
Search
Sponsored
·
SiteGround - Reliable hosting with speed, security, and support you can count on.
→
ernestoarbitrio
April 09, 2017
Technology
0
73
Fast In-memory Analytics for Retail Data with Columnar Databases
ernestoarbitrio
April 09, 2017
Tweet
Share
More Decks by ernestoarbitrio
See All by ernestoarbitrio
Enable effective Observability with Python
pamaron
0
140
PyConZA 2022 Best practices for good(ish) and clean(ish) code
pamaron
0
110
PyCon Italia 2022 Best practices for good(ish) and clean(ish) code
pamaron
0
260
Bokeh: Using python for interactive data visualization
pamaron
1
180
Keystroke Behavioural Analysis For Fraud Detection: Deep Learning as-a-service Infrastructure
pamaron
0
64
Indexing and search tons of data with ElasticSearch and Django
pamaron
0
420
Interactive plot with django and highchart JS (without JS)
pamaron
0
380
Other Decks in Technology
See All in Technology
[JAWSDAYS2026][D8]その起票、愛が足りてますか?AWSサポートを味方につける、技術的「ラブレター」の書き方
hirosys_
3
190
ランサムウエア対策してますか?やられた時の対策は本当にできてますか?AWSでのリスク分析と対応フローの泥臭いお話。
hootaki
0
150
アーキテクチャモダナイゼーションを実現する組織
satohjohn
1
1k
スクリプトの先へ!AIエージェントと組み合わせる モバイルE2Eテスト
error96num
0
180
決済サービスを支えるElastic Cloud - Elastic Cloudの導入と推進、決済サービスのObservability
suzukij
2
650
JAWSDAYS2026 [C02] 楽しく学ぼう!AWSとは?AWSの歴史 入門
hiragahh
0
170
SRE NEXT 2026 CfP レビュアーが語る聞きたくなるプロポーザルとは?
yutakawasaki0911
1
390
AI時代のSaaSとETL
shoe116
1
170
Claude Code のコード品質がばらつくので AI に品質保証させる仕組みを作った話 / A story about building a mechanism to have AI ensure quality, because the code quality from Claude Code was inconsistent
nrslib
12
8.4k
Kubernetesにおける推論基盤
ry
1
400
情シスのための生成AI実践ガイド2026 / Generative AI Practical Guide for Business Technology 2026
glidenote
0
270
Scrumは歪む — 組織設計の原理原則
dashi
0
200
Featured
See All Featured
Marketing Yourself as an Engineer | Alaka | Gurzu
gurzu
0
150
[Rails World 2023 - Day 1 Closing Keynote] - The Magic of Rails
eileencodes
38
2.8k
Utilizing Notion as your number one productivity tool
mfonobong
4
260
Paper Plane
katiecoart
PRO
0
48k
Collaborative Software Design: How to facilitate domain modelling decisions
baasie
0
160
The SEO identity crisis: Don't let AI make you average
varn
0
420
Practical Orchestrator
shlominoach
191
11k
Breaking role norms: Why Content Design is so much more than writing copy - Taylor Woolridge
uxyall
0
210
Product Roadmaps are Hard
iamctodd
PRO
55
12k
How Fast Is Fast Enough? [PerfNow 2025]
tammyeverts
3
480
Deep Space Network (abreviated)
tonyrice
0
92
VelocityConf: Rendering Performance Case Studies
addyosmani
333
24k
Transcript
Fast In-memory Analytics for Retail Data with Columnar Databases Ernesto
Arbitrio - Valerio Maggio arbitrio |
[email protected]
Florence April 6, 2017
Retail Data • Overview of data we have • granularity
• refresh/update rate • Quantity and storage required (space) • services developed around these data
“Materialized Views” • Description of what they are (non-technical) •
Some examples of Analytics we do on this data
The Problem! ~1 TByte Data We need OLAP Performance: 75M
rows -> 5hours
The Solution! Use a Column-oriented Database (i.e. Just swap Rows
with Columns) Chuck Norris Test Passed!
None
Query
None
Thank you get in touch @__pamaron__ @leriomaggio