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
2011-MongoDC-Scaling.pdf
Search
mongodb
July 12, 2011
Programming
200
2
Share
2011-MongoDC-Scaling.pdf
mongodb
July 12, 2011
More Decks by mongodb
See All by mongodb
NoSQL Now! 2012
mongodb
18
3.4k
MongoDB 2.2 At the Silicon Valley MongoDB User Group
mongodb
9
1.4k
Turning off the LAMP Hunter Loftis, Skookum Digital Works
mongodb
2
1.5k
Mobilize Your MongoDB! Developing iPhone and Android Apps in the Cloud Grant Shipley, Red Hat
mongodb
0
550
Beanstalk Data - MongoDB In Production Chris Siefken, CTO Beanstalk Data
mongodb
0
560
New LINQ support in C#/.NET driver Robert Stam, 10gen
mongodb
9
41k
Welcome and Keynote Aaron Heckman, 10gen
mongodb
0
540
Webinar Introduction to MongoDB's Java Driver
mongodb
1
1.3k
Webinar Intro to Schema Design
mongodb
4
1.8k
Other Decks in Programming
See All in Programming
(Re)make Regexp in Ruby: Democratizing internals for the JIT
makenowjust
3
700
PHPer、Cloudflare に引っ越す
suguruooki
1
110
ソフトウェア設計の結合バランス #phperkaigi
kajitack
0
150
10 Tips of AWS ~Gen AI on AWS~
licux
5
470
Liberating Ruby's Parser from Lexer Hacks
ydah
2
2.2k
Don't Prompt Harder, Structure Better
kitasuke
0
780
AIエージェントで業務改善してみた
taku271
0
540
VueエンジニアがReactを触って感じた_設計の違い
koukimiura
0
190
AI時代のPhpStorm最新事情 #phpcon_odawara
yusuke
0
220
Making the RBS Parser Faster
soutaro
0
540
ドメインイベントでビジネスロジックを解きほぐす #phpcon_odawara
kajitack
3
820
Surviving Black Friday: 329 billion requests with Falcon!
ioquatix
0
850
Featured
See All Featured
The Curse of the Amulet
leimatthew05
1
12k
DevOps and Value Stream Thinking: Enabling flow, efficiency and business value
helenjbeal
1
170
The Director’s Chair: Orchestrating AI for Truly Effective Learning
tmiket
1
160
Building AI with AI
inesmontani
PRO
1
920
Odyssey Design
rkendrick25
PRO
2
580
AI in Enterprises - Java and Open Source to the Rescue
ivargrimstad
0
1.2k
It's Worth the Effort
3n
188
29k
Chasing Engaging Ingredients in Design
codingconduct
0
180
Winning Ecommerce Organic Search in an AI Era - #searchnstuff2025
aleyda
1
2k
Prompt Engineering for Job Search
mfonobong
0
280
How to Ace a Technical Interview
jacobian
281
24k
Code Reviewing Like a Champion
maltzj
528
40k
Transcript
Eliot Horowitz @eliothorowitz MongoDC June 27, 2011 Practical Scaling and
Sharding
Scaling by Optimization • Schema Design • Index Design •
Hardware Configuration
Horizontal Scaling • Vertical scaling is limited • Hard to
scale vertically in the cloud • Can scale wider than higher
Replica Sets • One master at any time • Programmer
determines if read hits master or a slave • Easy to setup to scale reads
db.people.find( { state : “NY” } ).addOption( SlaveOK ) •
routed to a secondary automatically • will use master if no secondary is available
Not Enough • Writes don’t scale • Reads are out
of date on slaves • RAM/Data Size doesn’t scale
• Distribute write load • Keep working set in RAM
• Consistent reads • Preserve functionality Why Shard?
Sharding Design Goals • Scale linearly • Increase capacity with
no downtime • Transparent to the application • Low administration to add capacity
Sharding and Documents • Rich documents reduce need for joins
• No joins makes sharding solvable
• Choose how you partition data • Convert from single
replica set to sharding with no downtime • Full feature set • Fully consistent by default Basics
Architecture client mongos ... mongos mongod mongod ... Shards mongod
mongod mongod Config Servers mongod mongod mongod mongod mongod mongod mongod client client client
Data Center Primary Data Center Secondary S1 p=1 S1 p=1
S1 p=0 S2 p=0 S3 p=0 S2 p=1 S3 p=1 S2 p=1 S3 p=1 Config 2 Config 2 Config 1 mongos mongos mongos mongos Typical Basic Setup
Range Based • collection is broken into chunks by range
• chunks default to 64mb or 100,000 objects
Choosing a Shard Key • Shard key determines how data
is partitioned • Hard to change • Most important performance decision
Use Case: Photos { photo_id : ???? , data :
<binary> } What’s the right key? • auto increment • MD5( data ) • month() + MD5(data)
Initial Loading • System start with 1 chunk • Writes
will hit 1 shard and then move • Pre-splitting for initial bulk loading can dramatically improve bulk load time
Administering a Cluster • Do not wait too long to
add capacity • Need capacity for normal workload + cost of moving data • Stay < 70% operational capacity
Hardware Considerations • Understand working set and make sure it
can fit in RAM • Choose appropriate sized boxes for shards • Too small and admin/overhead goes up • Too large, and you can’t add capacity smoothly
DEMO
Download MongoDB http://www.mongodb.org and let us know what you think
@eliothorowitz @mongodb 10gen is hiring! http://www.10gen.com/jobs
Use Case: User Profiles { email : “
[email protected]
” , addresses
: [ { state : “NY” } ] } • Shard by email • Lookup by email hits 1 node • Index on { “addresses.state” : 1 }
Use Case: Activity Stream { user_id : XXX, event_id :
YYY , data : ZZZ } • Shard by user_id • Looking up an activity stream hits 1 node • Writing even is distributed • Index on { “event_id” : 1 } for deletes