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
Small Data: Storage For The Rest Of Us
Search
Andrew Godwin
May 26, 2015
Programming
1
530
Small Data: Storage For The Rest Of Us
A talk I gave at PyWaw Summit 2015.
Andrew Godwin
May 26, 2015
Tweet
Share
More Decks by Andrew Godwin
See All by Andrew Godwin
Reconciling Everything
andrewgodwin
1
250
Django Through The Years
andrewgodwin
0
150
Writing Maintainable Software At Scale
andrewgodwin
0
380
A Newcomer's Guide To Airflow's Architecture
andrewgodwin
0
300
Async, Python, and the Future
andrewgodwin
2
590
How To Break Django: With Async
andrewgodwin
1
650
Taking Django's ORM Async
andrewgodwin
0
660
The Long Road To Asynchrony
andrewgodwin
0
580
The Scientist & The Engineer
andrewgodwin
1
680
Other Decks in Programming
See All in Programming
Arm移行タイムアタック
qnighy
0
340
Micro Frontends Unmasked Opportunities, Challenges, Alternatives
manfredsteyer
PRO
0
110
3 Effective Rules for Using Signals in Angular
manfredsteyer
PRO
1
100
タクシーアプリ『GO』のリアルタイムデータ分析基盤における機械学習サービスの活用
mot_techtalk
5
1.5k
cmp.Or に感動した
otakakot
3
230
受け取る人から提供する人になるということ
little_rubyist
0
250
カンファレンスの「アレ」Webでなんとかしませんか? / Conference “thing” Why don't you do something about it on the Web?
dero1to
1
110
watsonx.ai Dojo #4 生成AIを使ったアプリ開発、応用編
oniak3ibm
PRO
1
180
Hotwire or React? ~アフタートーク・本編に含めなかった話~ / Hotwire or React? after talk
harunatsujita
1
120
みんなでプロポーザルを書いてみた
yuriko1211
0
280
Compose 1.7のTextFieldはPOBox Plusで日本語変換できない
tomoya0x00
0
200
AI時代におけるSRE、 あるいはエンジニアの生存戦略
pyama86
6
1.2k
Featured
See All Featured
Evolution of real-time – Irina Nazarova, EuRuKo, 2024
irinanazarova
4
380
Code Reviewing Like a Champion
maltzj
520
39k
Visualizing Your Data: Incorporating Mongo into Loggly Infrastructure
mongodb
42
9.2k
Designing Experiences People Love
moore
138
23k
Statistics for Hackers
jakevdp
796
220k
A Tale of Four Properties
chriscoyier
156
23k
Optimizing for Happiness
mojombo
376
70k
CoffeeScript is Beautiful & I Never Want to Write Plain JavaScript Again
sstephenson
159
15k
Building Applications with DynamoDB
mza
90
6.1k
The MySQL Ecosystem @ GitHub 2015
samlambert
250
12k
Distributed Sagas: A Protocol for Coordinating Microservices
caitiem20
329
21k
Unsuck your backbone
ammeep
668
57k
Transcript
Andrew Godwin @andrewgodwin SMALL DATA STORAGE FOR THE REST OF
US
Andrew Godwin Hi, I'm Django Core Developer Senior Engineer at
Far too many hobbies
BIG DATA What does it mean?
BIG DATA What does it mean? What is 'big'?
1,000 rows? 1,000,000 rows? 1,000,000,000 rows? 1,000,000,000,000 rows?
Scalable designs are a tradeoff: NOW LATER vs
Small company? Agency? Focus on ease of change, not scalability
You don't need to scale from day one But always
leave yourself scaling points
Rapid development Continuous deployment Hardware choice Scaling 'breakpoints'
Rapid development It's all about schema change overhead
Explicit Schema ID int Name text Weight uint 1 2
3 Alice Bob Charles 76 84 65 Implicit Schema { "id": 342, "name": "David", "weight": 44, }
Silent Failure { "id": 342, "name": "David", "weight": 74, }
{ "id": 342, "name": "Ellie", "weight": "85kg", } { "id": 342, "nom": "Frankie", "weight": 77, } { "id": 342, "name": "Frankie", "weight": -67, }
Continuous deployment It's 11pm. Do you know where your locks
are?
Add NULL and backfill 1-to-1 relation and backfill DBMS-supported type
changes
Hardware choice ZOMG RUN IT ON THE CLOUD
VMs are TERRIBLE at IO Up to 10x slowdown, even
with VT-d.
Memory is king Your database loves it. Don't let other
apps steal it.
Adding more power goes far Especially with PostgreSQL or read-only
replicas
Scaling Breakpoints
Sharding point Datasets paritioned by primary key
Vertical split Entirely unrelated tables
Denormalisation It's not free!
Consistency leeway Can you take inconsistent views?
Load Shapes
Read-heavy Write-heavy Large size
Read-heavy Write-heavy Large size Wikipedia TV show website Minecraft Forums
Amazon Glacier Eventbrite Logging
Read-heavy Write-heavy Large size Offline storage Append formats In-memory cache
/ flat files Many indexes Fewer indexes
Extremes
Extreme Reads Heavy Replication Extreme Writes Sacrifice ordering or consistency
Extreme Size Sacrifice query time
Extreme Longevity Flash in cold storage Extreme Survivability Rad-hardened Flash
Extreme Auditability True append only storage
SSDs Magnetic Tape Hard Drives Consumer Flash CDs/DVDs Long-life Flash
Metal-Carbon DVDs 3-6 months 5-10 years 3-5 years 100+ years Approximate time to bit flip, unpowered at room temperature
Big Data isn't one thing It depends on type, size,
complexity, throughput, latency...
Focus on the current problems Future problems don't matter if
you never get there
Efficiency and iterating fast matters The smaller you are, the
more time is worth
Good architecture affects product You're not writing a system in
a vacuum
Thanks. Andrew Godwin @andrewgodwin