SlideShare une entreprise Scribd logo
1  sur  43
PetaMongo:
A Petabyte Database for as Little as $200
Chris Biow, MongoDB
Miles Ward, AWS
November 13, 2013

© 2013 Amazon.com, Inc. and its affiliates. All rights reserved. May not be copied, modified, or distributed in whole or in part without the express consent of Amazon.com, Inc.
Agenda
• MongoDB on AWS review
– Guidance, Storage, Architecture

• MongoDB at PetaScale on AWS
Tools to simplify your design
• Whitepaper
• Marketplace
• CloudFormation

http://media.amazonwebservices.com/AWS_NoSQL_MongoDB.pdf
• Easy to start a
single node

• Correctly configured
PIOPS EBS Storage
• No extra cost
https://aws.amazon.com/marketplace/pp/B00COAAEH8/ref=srh_res_product_title?ie=UTF8&sr=0-6&qid=1383897659043
CloudFormation
• Nested Templates
• Nodes and Storage
• Configurable Scale
• CloudFormation: Your
Infrastructure belongs in your
source control
mongodb.org/display/DOCS/Automating+Deployment+with+CloudFormation
AWS Storage Options

EBS
PIOPS

SSD

• EBS – Provisioned IOPS volumes
•
Deliver predictable, high performance for I/O intensive workloads
•
Specify IOPS required upfront, and EBS provisions for lifetime of volume
– 4000 IOPS per volume, can stripe to get thousands of IOPS to an EC2 instance

• High IO Instances – hi1.4xlarge
•
•

For some applications that require tens of thousands of IOPS
Eliminates network latency/bandwidth as a performance constraint to storage
AWS Storage Options
Testing: random 4k reads
EBS

+

One Volume: ~200 MongoOPS with some variability, <1mb/s
Loaded instance: ~ 1000 MongoOPS with some variability <10mb/s
One Volume: 200
0 MongoOPS with <1% variability, 16mb/s
Loaded Instance: 16,000 MongoOPS with <1% variability, 64mb/s

PIOPS

Loaded Cluster Instance:

SSD

MongoOPS, 320mb/s

Hi1.4xlarge ephemeral: ~64,000 MongoOPS with low variability, ~245mb/s
Testing: random 4k reads

+

PIOPS

Stable

EBS

SSD
Stability Tips
• Ext4 or XFS, nodiratime, noatime

• Raise file descriptor limits
• Set disk read-ahead

• No large virtual memory pages
• SNAPSHOT SNAPSHOT SNAPSHOT
• Retain a PIOPS EBS
node for snapshot
backups

• Snapshots allow crossAZ and cross-region
recovery
• SSD hosts as primary
• Shard for scale
Another option…

244gb cr1.8xlarge
So, about that Petabyte
v.cheap
• Spot Market
• m1.small
• 1024 shards
• 1TB EBS from snapshot
• PowerBench reader
• Aggregation queries

v.fast
• AutoScaling On-Demand
• cc2.8xlarge
• 44 instances x 24 shards
each
• 24TBx1K PIOPS indexed
• YCSB loader
• Aggregation queries
The naming of parts
Amazon Terms
• Provisioned IOPS
• Elastic Compute Cloud
• EC2 Spot Instances
• Auto Scaling groups

Nicks
• PIOPS
• EC2
• Here, Spot!
• ASG
Players
MongoDB
• Document-model,
NoSQL database
• Dev adoption is
STRONG
• MongoDB Inc.
trending toward
zero h/w

• Scale-up with commodity h/w
• Scale-out with sharding
• Scale-around with replication
Dev Activity: stackoverflow.com
AWS
•
•
•
•

PIOPS for an IO-hungry client
40% of MongoDB customer usage
90% of MongoDB internal usage
More ports :2701[79] than :[15]521
PB & Chocolate
Differentiators for mutual customers
•
•
•
•
•
•

Fast time-to-solution
Easy global distribution
Document model
Secondary indexes
Geo, text, security
Fast analytic aggregation
Challenge
Motivation: IWBCI…
•
•
•
•
•

Test scale-out of MongoDB beyond typical
Learn massive scale-out on AWS
Do it as cheaply as possible
Apply customer data
Break the petabarrier
m1.small us-east1 Spot Market
m1.small us-east1d Spot Market
Proposal
Item

Units

Time

Unit Cost

Net Cost

m1.small Spot 1050

3hr

$0.007/hr

$22.05

m1.large

3

48hrs

$0.056/hr

$8.07

S3

1TB

1wk

$95/TB/mo

23.75

EBS

1024 x 1TB

1hr

$100/TB/mo

142.22

S3  EBS

1PB

lazy

$0/TB

Total

0.00
$196.09

http://calculator.s3.amazonaws.com/G77798SS77SH72
Initial Directions
• Spot instance requests
– m1.small market, mostly us-east-1 (my zone “d”)
– Net: $0.007 / hour = $7 / hr / K-shard

• Perl
– use Net::Amazon::EC2;
– gaps: parse EC2 command-line API

•
•
•
•

Defer Chef, Puppet, CloudFormation
YCSB
userdata.sh
t1.micro / m1.small / cr1.8xlarge
MongoDB Architecture
• 3x Config Servers
– mongod --configsvr

• Routing
– mongos --configdb a,b,c

• Replica sets (not used)
• Shards
– mongod

• Client load
– java -cp [] com.yahoo.ycsb.Client
Range-based sharding
Hash-based sharding
Process Flow
Spot Instance Request (sir-)

• Rejected
• Awaiting evaluation
• Awaiting fulfillment
– Partial
– Launch intervals

• Fulfilled

Instances (i-)
• Requested
• Initializing (i)
• Config running (C)
• MongoS starting (s)
• MongoS running (S)
• MongoD starting (D)
• Failed/slow response (X)
Config
sir-

Sharded

Shard
MongoD
MongoS
Spot Instance Lifecycle
Progress
Scale Out Experience
•
•
•
•
•
•

Sharding by magnitude: 4, 16, 64, 256, 1024
4: functional validation
16: startup variation, process flow
64: full speed ahead!
256: chunk distribution time, single Config
1024: market dependence, client wire saturation
Lessons Learned
• Code defensively
• Monitor: MongoDB Mgt Svc, top, iftop, iostat,
mongostat
• Avoid sentimental attachment (i-8bad8bee)
• Prototype / refactor
• Make the instances do the work
• Mitigate chunk migration
Refactor
•
•
•
•
•

BenchPress YCSB
Auto Scaling Groups request-spot-instances
use VM::EC2; Net::Amazon::EC2
gsh monolithic Perl
serf polling
Secure Cloud Networking
Enable customers to easily connect,
manage and secure applications across
VPCs, regions, and hybrid infrastructures.
Cloud-scale your VPC connectivity!
After the Session:
Survey - $500 Gift Card
Or schedule a demo
Info@unionbaynetworks.com

VPC 1

VPC 2

Application
Service
Mesh
1KB Docs Loaded, 512 shards
1,800,000,000
1,600,000,000
1,400,000,000
1,200,000,000
1,000,000,000
800,000,000
600,000,000
400,000,000

^ 1X
RAM

200,000,000
0
5:16:48

5:45:36

6:14:24

6:43:12

7:12:00

7:40:48
1KB Docs Loaded, 1035 shards, 2 jobs conflicting
2,500,000,000

2,000,000,000

1,500,000,000

1,000,000,000

^ 1X
RAM

500,000,000

0
4:19:12

5:31:12

6:43:12

7:55:12

9:07:12

10:19:12

11:31:12

12:43:12

13:55:12
Dee-Luxe
3,500,000

cc2.8xlarge, 24 x 1TB-4K PIOPS EBS, bulk-load 64KB docs
3,000,000
64KBdocs
2,500,000

2,000,000

1,500,000

1,000,000

100% RAM
500,000

0
12:00:00 AM

12:07:12 AM

12:14:24 AM

12:21:36 AM

12:28:48 AM
140,000,000

cc2.8xlarge, 24 x 1TB-4K PIOPS EBS, bulk-load 64KB docs
120,000,000
64KBdocs
100,000,000

80,000,000

60,000,000

40,000,000

20,000,000

0
12:00:00 AM

2:24:00 AM

4:48:00 AM

7:12:00 AM

9:36:00 AM

12:00:00 PM

2:24:00 PM

4:48:00 PM

7:12:00 PM
Further Work
•
•
•
•
•
•

Completion
Replication
Self-healing
MongoDB-appropriate benchmarks
Customer data
Self-hosting cluster
Please give us your feedback on this
presentation

BDT307
As a thank you, we will select prize
winners daily for completed surveys!

Contenu connexe

Plus de MongoDB

Plus de MongoDB (20)

MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]
MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]
MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]
 
MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2
MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2
MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2
 
MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...
MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...
MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...
 
MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!
MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!
MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!
 
MongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your Mindset
MongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your MindsetMongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your Mindset
MongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your Mindset
 
MongoDB .local San Francisco 2020: MongoDB Atlas Jumpstart
MongoDB .local San Francisco 2020: MongoDB Atlas JumpstartMongoDB .local San Francisco 2020: MongoDB Atlas Jumpstart
MongoDB .local San Francisco 2020: MongoDB Atlas Jumpstart
 
MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...
MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...
MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...
 
MongoDB .local San Francisco 2020: Aggregation Pipeline Power++
MongoDB .local San Francisco 2020: Aggregation Pipeline Power++MongoDB .local San Francisco 2020: Aggregation Pipeline Power++
MongoDB .local San Francisco 2020: Aggregation Pipeline Power++
 
MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...
MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...
MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...
 
MongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep DiveMongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep Dive
MongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep Dive
 
MongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & Golang
MongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & GolangMongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & Golang
MongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & Golang
 
MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...
MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...
MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...
 
MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...
MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...
MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...
 
MongoDB .local Paris 2020: Les bonnes pratiques pour sécuriser MongoDB
MongoDB .local Paris 2020: Les bonnes pratiques pour sécuriser MongoDBMongoDB .local Paris 2020: Les bonnes pratiques pour sécuriser MongoDB
MongoDB .local Paris 2020: Les bonnes pratiques pour sécuriser MongoDB
 
MongoDB .local Paris 2020: Tout savoir sur le moteur de recherche Full Text S...
MongoDB .local Paris 2020: Tout savoir sur le moteur de recherche Full Text S...MongoDB .local Paris 2020: Tout savoir sur le moteur de recherche Full Text S...
MongoDB .local Paris 2020: Tout savoir sur le moteur de recherche Full Text S...
 
MongoDB .local Paris 2020: Adéo @MongoDB : MongoDB Atlas & Leroy Merlin : et ...
MongoDB .local Paris 2020: Adéo @MongoDB : MongoDB Atlas & Leroy Merlin : et ...MongoDB .local Paris 2020: Adéo @MongoDB : MongoDB Atlas & Leroy Merlin : et ...
MongoDB .local Paris 2020: Adéo @MongoDB : MongoDB Atlas & Leroy Merlin : et ...
 
MongoDB .local Paris 2020: Les bonnes pratiques pour travailler avec les donn...
MongoDB .local Paris 2020: Les bonnes pratiques pour travailler avec les donn...MongoDB .local Paris 2020: Les bonnes pratiques pour travailler avec les donn...
MongoDB .local Paris 2020: Les bonnes pratiques pour travailler avec les donn...
 
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB Charts
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB ChartsMongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB Charts
MongoDB .local Paris 2020: Devenez explorateur de données avec MongoDB Charts
 
MongoDB .local Paris 2020: La puissance du Pipeline d'Agrégation de MongoDB
MongoDB .local Paris 2020: La puissance du Pipeline d'Agrégation de MongoDBMongoDB .local Paris 2020: La puissance du Pipeline d'Agrégation de MongoDB
MongoDB .local Paris 2020: La puissance du Pipeline d'Agrégation de MongoDB
 
MongoDB .local Toronto 2019: Keep your Business Safe and Scaling Holistically...
MongoDB .local Toronto 2019: Keep your Business Safe and Scaling Holistically...MongoDB .local Toronto 2019: Keep your Business Safe and Scaling Holistically...
MongoDB .local Toronto 2019: Keep your Business Safe and Scaling Holistically...
 

Dernier

Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Victor Rentea
 

Dernier (20)

Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWEREMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
 
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
Biography Of Angeliki Cooney | Senior Vice President Life Sciences | Albany, ...
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf[BuildWithAI] Introduction to Gemini.pdf
[BuildWithAI] Introduction to Gemini.pdf
 

PetaMongo: A Petabyte Database for as Little as $200

  • 1. PetaMongo: A Petabyte Database for as Little as $200 Chris Biow, MongoDB Miles Ward, AWS November 13, 2013 © 2013 Amazon.com, Inc. and its affiliates. All rights reserved. May not be copied, modified, or distributed in whole or in part without the express consent of Amazon.com, Inc.
  • 2. Agenda • MongoDB on AWS review – Guidance, Storage, Architecture • MongoDB at PetaScale on AWS
  • 3. Tools to simplify your design • Whitepaper • Marketplace • CloudFormation http://media.amazonwebservices.com/AWS_NoSQL_MongoDB.pdf
  • 4. • Easy to start a single node • Correctly configured PIOPS EBS Storage • No extra cost https://aws.amazon.com/marketplace/pp/B00COAAEH8/ref=srh_res_product_title?ie=UTF8&sr=0-6&qid=1383897659043
  • 5. CloudFormation • Nested Templates • Nodes and Storage • Configurable Scale • CloudFormation: Your Infrastructure belongs in your source control mongodb.org/display/DOCS/Automating+Deployment+with+CloudFormation
  • 6. AWS Storage Options EBS PIOPS SSD • EBS – Provisioned IOPS volumes • Deliver predictable, high performance for I/O intensive workloads • Specify IOPS required upfront, and EBS provisions for lifetime of volume – 4000 IOPS per volume, can stripe to get thousands of IOPS to an EC2 instance • High IO Instances – hi1.4xlarge • • For some applications that require tens of thousands of IOPS Eliminates network latency/bandwidth as a performance constraint to storage
  • 7. AWS Storage Options Testing: random 4k reads EBS + One Volume: ~200 MongoOPS with some variability, <1mb/s Loaded instance: ~ 1000 MongoOPS with some variability <10mb/s One Volume: 200 0 MongoOPS with <1% variability, 16mb/s Loaded Instance: 16,000 MongoOPS with <1% variability, 64mb/s PIOPS Loaded Cluster Instance: SSD MongoOPS, 320mb/s Hi1.4xlarge ephemeral: ~64,000 MongoOPS with low variability, ~245mb/s
  • 8. Testing: random 4k reads + PIOPS Stable EBS SSD
  • 9. Stability Tips • Ext4 or XFS, nodiratime, noatime • Raise file descriptor limits • Set disk read-ahead • No large virtual memory pages • SNAPSHOT SNAPSHOT SNAPSHOT
  • 10. • Retain a PIOPS EBS node for snapshot backups • Snapshots allow crossAZ and cross-region recovery • SSD hosts as primary • Shard for scale
  • 12. So, about that Petabyte v.cheap • Spot Market • m1.small • 1024 shards • 1TB EBS from snapshot • PowerBench reader • Aggregation queries v.fast • AutoScaling On-Demand • cc2.8xlarge • 44 instances x 24 shards each • 24TBx1K PIOPS indexed • YCSB loader • Aggregation queries
  • 13. The naming of parts Amazon Terms • Provisioned IOPS • Elastic Compute Cloud • EC2 Spot Instances • Auto Scaling groups Nicks • PIOPS • EC2 • Here, Spot! • ASG
  • 15. MongoDB • Document-model, NoSQL database • Dev adoption is STRONG • MongoDB Inc. trending toward zero h/w • Scale-up with commodity h/w • Scale-out with sharding • Scale-around with replication
  • 17. AWS • • • • PIOPS for an IO-hungry client 40% of MongoDB customer usage 90% of MongoDB internal usage More ports :2701[79] than :[15]521
  • 18. PB & Chocolate Differentiators for mutual customers • • • • • • Fast time-to-solution Easy global distribution Document model Secondary indexes Geo, text, security Fast analytic aggregation
  • 20. Motivation: IWBCI… • • • • • Test scale-out of MongoDB beyond typical Learn massive scale-out on AWS Do it as cheaply as possible Apply customer data Break the petabarrier
  • 23. Proposal Item Units Time Unit Cost Net Cost m1.small Spot 1050 3hr $0.007/hr $22.05 m1.large 3 48hrs $0.056/hr $8.07 S3 1TB 1wk $95/TB/mo 23.75 EBS 1024 x 1TB 1hr $100/TB/mo 142.22 S3  EBS 1PB lazy $0/TB Total 0.00 $196.09 http://calculator.s3.amazonaws.com/G77798SS77SH72
  • 24. Initial Directions • Spot instance requests – m1.small market, mostly us-east-1 (my zone “d”) – Net: $0.007 / hour = $7 / hr / K-shard • Perl – use Net::Amazon::EC2; – gaps: parse EC2 command-line API • • • • Defer Chef, Puppet, CloudFormation YCSB userdata.sh t1.micro / m1.small / cr1.8xlarge
  • 25. MongoDB Architecture • 3x Config Servers – mongod --configsvr • Routing – mongos --configdb a,b,c • Replica sets (not used) • Shards – mongod • Client load – java -cp [] com.yahoo.ycsb.Client
  • 26.
  • 29. Process Flow Spot Instance Request (sir-) • Rejected • Awaiting evaluation • Awaiting fulfillment – Partial – Launch intervals • Fulfilled Instances (i-) • Requested • Initializing (i) • Config running (C) • MongoS starting (s) • MongoS running (S) • MongoD starting (D) • Failed/slow response (X)
  • 32. Scale Out Experience • • • • • • Sharding by magnitude: 4, 16, 64, 256, 1024 4: functional validation 16: startup variation, process flow 64: full speed ahead! 256: chunk distribution time, single Config 1024: market dependence, client wire saturation
  • 33. Lessons Learned • Code defensively • Monitor: MongoDB Mgt Svc, top, iftop, iostat, mongostat • Avoid sentimental attachment (i-8bad8bee) • Prototype / refactor • Make the instances do the work • Mitigate chunk migration
  • 34. Refactor • • • • • BenchPress YCSB Auto Scaling Groups request-spot-instances use VM::EC2; Net::Amazon::EC2 gsh monolithic Perl serf polling
  • 35. Secure Cloud Networking Enable customers to easily connect, manage and secure applications across VPCs, regions, and hybrid infrastructures. Cloud-scale your VPC connectivity! After the Session: Survey - $500 Gift Card Or schedule a demo Info@unionbaynetworks.com VPC 1 VPC 2 Application Service Mesh
  • 36. 1KB Docs Loaded, 512 shards 1,800,000,000 1,600,000,000 1,400,000,000 1,200,000,000 1,000,000,000 800,000,000 600,000,000 400,000,000 ^ 1X RAM 200,000,000 0 5:16:48 5:45:36 6:14:24 6:43:12 7:12:00 7:40:48
  • 37. 1KB Docs Loaded, 1035 shards, 2 jobs conflicting 2,500,000,000 2,000,000,000 1,500,000,000 1,000,000,000 ^ 1X RAM 500,000,000 0 4:19:12 5:31:12 6:43:12 7:55:12 9:07:12 10:19:12 11:31:12 12:43:12 13:55:12
  • 39. 3,500,000 cc2.8xlarge, 24 x 1TB-4K PIOPS EBS, bulk-load 64KB docs 3,000,000 64KBdocs 2,500,000 2,000,000 1,500,000 1,000,000 100% RAM 500,000 0 12:00:00 AM 12:07:12 AM 12:14:24 AM 12:21:36 AM 12:28:48 AM
  • 40. 140,000,000 cc2.8xlarge, 24 x 1TB-4K PIOPS EBS, bulk-load 64KB docs 120,000,000 64KBdocs 100,000,000 80,000,000 60,000,000 40,000,000 20,000,000 0 12:00:00 AM 2:24:00 AM 4:48:00 AM 7:12:00 AM 9:36:00 AM 12:00:00 PM 2:24:00 PM 4:48:00 PM 7:12:00 PM
  • 41.
  • 43. Please give us your feedback on this presentation BDT307 As a thank you, we will select prize winners daily for completed surveys!