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
·
Ship Features Fearlessly
Turn features on and off without deploys. Used by thousands of Ruby developers.
→
ernestoarbitrio
April 09, 2017
Technology
73
0
Share
Fast In-memory Analytics for Retail Data with Columnar Databases
ernestoarbitrio
April 09, 2017
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
270
Bokeh: Using python for interactive data visualization
pamaron
1
180
Keystroke Behavioural Analysis For Fraud Detection: Deep Learning as-a-service Infrastructure
pamaron
0
65
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
Rapid Start: Faster Internet Connections, with Ruby's Help
kazuho
2
740
Good Enough Types: Heuristic Type Inference for Ruby
riseshia
1
270
自分のハンドルは自分で握れ! ― 自分のケイパビリティを増やし、メンバーのケイパビリティ獲得を支援する ― / Take the wheel yourself
takaking22
1
950
260420_スマートホーム採用説明 - wakinchan
wakinchan
0
120
AgentCore Managed Harness を使ってみよう
yakumo
2
140
AI: Making Admin and Users, Lives Better
kbmsg
0
110
Hacobu Tech Deck
hacobu
PRO
0
120
データを"持てない"環境でのアノテーション基盤設計
sansantech
PRO
1
140
サイボウズ 開発本部採用ピッチ / Cybozu Engineer Recruit
cybozuinsideout
PRO
10
78k
巨大プラットフォームを進化させる「第3のROI」
recruitengineers
PRO
2
380
Microsoft 365 / Microsoft 365 Copilot : 自分の状態を確認する「ラベル」について
taichinakamura
0
330
AI時代のガードレールとしてのAPIガバナンス
nagix
0
300
Featured
See All Featured
Context Engineering - Making Every Token Count
addyosmani
9
840
Writing Fast Ruby
sferik
630
63k
Jamie Indigo - Trashchat’s Guide to Black Boxes: Technical SEO Tactics for LLMs
techseoconnect
PRO
0
110
Mobile First: as difficult as doing things right
swwweet
225
10k
The State of eCommerce SEO: How to Win in Today's Products SERPs - #SEOweek
aleyda
2
10k
Become a Pro
speakerdeck
PRO
31
5.9k
CoffeeScript is Beautiful & I Never Want to Write Plain JavaScript Again
sstephenson
162
16k
The MySQL Ecosystem @ GitHub 2015
samlambert
251
13k
30 Presentation Tips
portentint
PRO
1
280
RailsConf 2023
tenderlove
30
1.4k
Game over? The fight for quality and originality in the time of robots
wayneb77
1
160
Fashionably flexible responsive web design (full day workshop)
malarkey
408
66k
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