SlideShare a Scribd company logo
1JUNE 2014
Performance Tuning
on the Fly at CMP.LY
Michael De Lorenzo
CTO, CMP.LY Inc.
michael@cmp.ly
@mikedelorenzo
2JUNE 2014
Agenda
• CMP.LY and CommandPost
• What is MongoDB Management Service?
• Performance Tuning
• MongoDB Issues we’ve faced
• Slow response times and delayed writes
• Unindexed queries
• Increased Replication Lag and Plummeting oplog Window
• Keep your deployment healthy with MMS
• Using MMS Alerts
• Using MMS Backups
3JUNE 2014
A venture-funded NYC startup that offers proprietary social media, monitoring,
measurement, insight and compliance solutions for Fortune 100
A Monitoring, Measurement & Insights (MMI) tool for managed social
communications.
4JUNE 2014
Use CommandPost to:
• Track and measure cross-platform in real-time
• Identify and attribute high-value engagement
• Analyze and segment engaged audience
• Optimize content and engagement strategies
• Address compliance needs
5JUNE 2014
What is MongoDB
Management Service?
6JUNE 2014
MongoDB Management Service
• Free MongoDB Monitoring
• MongoDB Backup in the Cloud
• Free Cloud service or Available
to run On-Prem for Standard or
Enterprise Subscriptions
• Automation coming soon—FTW!
Ops
Makes MongoDB easier to use and
manage
7JUNE 2014
Who Is MMS for?
• Developers
• Ops Team
• MongoDB Technical Service Team
8JUNE 2014
Performance Tuning
9JUNE 2014
How To Do Performance Tuning?
• Assess the problem and establish acceptable behavior.
• Measure the performance before modification.
• Identify the bottleneck.
• Remove the bottleneck.
• Measure performance after modification to confirm.
• Keep it or revert it and repeat.
Adapted from [http://en.wikipedia.org/wiki/Performance_tuning]
10JUNE 2014
What We’ve Faced
11JUNE 2014
Issues We’ve Faced
• Concurrency Issues
• Slow response times and delayed writes
• Querying without indexes
• Slow reads, timeouts
• Increasing Replication Lag + Plummeting oplog Window
12JUNE 2014
Concurrency
Slow responses and delayed writes
13JUNE 2014
Concurrency
• What is it?
• How did it affect us?
• How did MMS help identify it?
• How did we diagnose the issue in our app and fix it?
• Today
14JUNE 2014
Concurrency in MongoDB
• MongoDB uses a readers-writer lock
• Many read operations can use a read lock
• If a write lock exists, a single write lock holds the lock exclusively
• No other read or write operations can share the lock
• Locks are “writer-greedy”
15JUNE 2014
How Did This Affect Us?
• Slow API response times due to slow database operations
• Delayed writes
• Backed up queues
16JUNE 2014
MMS: Identify Concurrency Issues
17JUNE 2014
Lock % Greater than 100%?!?!?
• time spent in write lock state; sum of global lock + hottest database at that time,
can make value > 100%
• Global lock percentage is a derived metric:
% of time in global lock (small number)
+
% of time locked by hottest (“most locked”) database
• Data is sampled and combined, it is possible to see values over 100%.
18JUNE 2014
Diagnosis
• Identified the write-heavy collections in our applications
• Used application logs to identify slow API responses
• Analyzed MongoDB logs to identify slow database queries
19JUNE 2014
Our Remedies
• Schema changes
• Message queues
• Multiple databases
• Sharding
20JUNE 2014
Schema Changes
• Denormalized our schema
• Allowed for atomic updates
• Customized documents’ _id attribute
• Leveraged existing index on _id attribute
21JUNE 2014
Modeling for Atomic Operations
Document
{
_id: 123456789,
title: "MongoDB: The Definitive Guide",
author: [ "Kristina Chodorow", "Mike Dirolf"
],
published_date: ISODate("2010-09-24"),
pages: 216,
language: "English",
publisher_id: "oreilly",
available: 3,
checkout: [ { by: "joe", date:
ISODate("2012-10-15") } ]
}
Update Operation
db.books.update (
{ _id: 123456789, available: { $gt: 0 } },
{
$inc: { available: -1 },
$push: { checkout: { by: "abc", date: new
Date() } }
}
)
Result
WriteResult({ "nMatched" : 1, "nUpserted" : 0,
"nModified" : 1 })
22JUNE 2014
Message Queues
• Controlled writes to specific collections using Pub/Sub
• We chose Amazon SQS
• Other options include Redis, Beanstalkd, IronMQ or any other message queue
• Created consistent flow of writes versus bursts
• Reduced length and frequency of write locks by controlling flow/speed of writes
23JUNE 2014
Using Multiple Databases
• As of version 2.2, MongoDB implements locks at a per database granularity for
most read and write operations
• Planned to be at the document level in version 2.8
• Moved write-heavy collections to new (separate) databases
24JUNE 2014
Using Sharding
• Improves concurrency by distributing databases across multiple mongod
instances
• Locks are per-mongod instance
25JUNE 2014
Lock %: Today
26JUNE 2014
Queries without Indexes
Slow responses and timeouts
27JUNE 2014
Indexing
• What is it?
• How did it affect us?
• How did MMS help identify it?
• How did we diagnose the issue in our app and fix it?
• Today
28JUNE 2014
Indexing with MongoDB
• Support for efficient execution of queries
• Without indexes, MongoDB must scan every document
• Example
Wed Jul 17 13:40:14 [conn28600] query x.y [snip] ntoreturn:16 ntoskip:0
nscanned:16779 scanAndOrder:1 keyUpdates:0 numYields: 906 locks(micros)
r:46877422 nreturned:16 reslen:6948 38172ms
38 seconds! Scanned 17k documents, returned 16
• Create indexes to cover all queries, especially support common and user-facing
• Collection scans can push entire working set out of RAM
29JUNE 2014
How Did this Affect Us?
• Our web apps became slow
• Queries began to timeout
• Longer operations mean longer lock times
30JUNE 2014
MMS: Identifying Indexing Issues
Page Faults
• The number of times that
MongoDB requires data
not located in physical
memory, and must read
from virtual memory.
31JUNE 2014
Diagnosis
• Log Analysis
• Use mtools to analyze MongoDB logs
• mlogfilter
• filter logs for slow queries, collection scans, etc.
• mplotqueries
• graph query response times and volumes
• https://github.com/rueckstiess/mtools
32JUNE 2014
Diagnosis
• Monitoring application logs
• Enabling ‘notablescan’ option in development and testing versions of apps
• MongoDB profiling
33JUNE 2014
The MongoDB Profiler
• Collects fine grained data about MongoDB write operations, cursors, database
commands on a running mongod instance.
• Default slowOpThreshold value is 100ms, can be changed from the Mongo shell
34JUNE 2014
Our Remedies
• Add indexes!
• Make sure queries are covered
• Utilize the projection specification to limit fields (data) returned
35JUNE 2014
Adding Indexes
• Improved performance for common queries
• Alleviates the need to go to disk for many operations
36JUNE 2014
Projection Specification
Controls the amount of data that needs to be (de-)serialized for use in your app
• We used it to limit data returned in embedded documents and arrays
db.inventory.find( { type: 'food' }, { item: 1, qty: 1 } )
37JUNE 2014
Page Faults: Today
38JUNE 2014
Increasing Replication Lag +
Plummeting oplog Window
39JUNE 2014
Replication
• What is it?
• How did it affect us?
• How did MMS help identify it?
• How did we diagnose the issue in our app?
• How did we fix it?
• Today
40JUNE 2014
What is Replication?
• A replica set is a group of mongod
processes that maintain the same data
set.
• Replica sets provide redundancy and
high availability, and are the basis for all
production deployments
41JUNE 2014
What Is the Oplog?
• A special capped collection that keeps a rolling record of all operations that
modify the data stored in your databases.
• Operations are first applied on the primary and then recorded to its oplog.
• Secondary members then copy and apply these operations in an asynchronous
process.
42JUNE 2014
What is Replication Lag?
• A delay between an operation on the primary and the application of that
operation from the oplog to the secondary.
• Effects of excessive lag
• “Lagged” members ineligible to quickly become primary
• Increases the possibility that distributed read operations will be inconsistent.
43JUNE 2014
How did this affect us?
• Degraded overall health of our production deployment.
• Distributed reads are no longer eventually consistent.
• Unable to bring new secondary members online.
• Caused MMS Backups to do full re-syncs.
44JUNE 2014
Identifying Replication Lag Issues
with MMS
The Replication Lag chart displays the lag for your deployment
45JUNE 2014
Diagnosis
• Possible causes of replication lag include network latency, disk throughput,
concurrency and/or appropriate write concern
• Size of operations to be replicated
• Confirmed Non-Issues for us
• Network latency
• Disk throughput
• Possible Issues for us
• Concurrency/write concern
• Size of op is an issue because entire document is written to oplog
46JUNE 2014
Concurrency/Write Concern
• Our applications apply many updates very quickly
• All operations need to be replicated to secondary members
• We use the default write concern—Acknowledge
• The mongod confirms receipt of the write operation
• Allows clients to catch network, duplicate key and other errors
47JUNE 2014
Concurrency Wasn’t the Issue
Lock Percentage
48JUNE 2014
Operation Size Was the Issue
Collection A (most active)
Total Updates: 3,373
Total Size of updates: 6.5 GB
Activity accounted for nearly 87% of total traffic
Collection B (next most active)
Total Updates: 85,423
Total Size of updates: 740 MB
49JUNE 2014
Fast Growing oplog causes issues
Replication oplog Window – approximate hours available in the primary’s oplog
50JUNE 2014
How We Fixed It
• Changed our schema
• Changed the types of updates that were made to documents
• Both allowed us to utilize atomic operations
• Led to smaller updates
• Smaller updates == less oplog space used
51JUNE 2014
Replication Lag: Today
52JUNE 2014
oplog Window: Today
53JUNE 2014
Keeping Your Deployment
Healthy
54JUNE 2014
MMS Alerts
55JUNE 2014
Watch for Warnings
• Be warned if you are
• Running outdated versions
• Have startup warnings
• If a mongod is publicly visible
• Pay attention to these warnings
56JUNE 2014
MMS Backups
• Engineered by MongoDB
• Continuous backup with point-in-time recovery
• Fully managed backups
57JUNE 2014
Using MMS Backups
• Seeding new secondaries
• Repairing replica set members
• Development and testing databases
• Restores are free!
58JUNE 2014
Summary
• Know what’s expected and “normal” in your systems
• Know when and what changes in your systems
• Utilize MMS alerts, visualizations and warnings to keep things running smoothly
59JUNE 2014
Questions?
Michael De Lorenzo
CTO, CMP.LY Inc.
michael@cmp.ly
@mikedelorenzo

More Related Content

PPTX
Performance Tuning On the Fly at CMP.LY Using MongoDB Management Service
PDF
RIPE 82: An Update on Fragmentation Loss Rates in IPv6
PDF
ICANN DNS Symposium 2021: Measuring Recursive Resolver Centrality
PDF
RIPE 82: Measuring Recursive Resolver Centrality
PDF
NANOG32 - DNS Anomalies and Their Impacts on DNS Cache Servers
PDF
RIPE 82: DNS Evolution
PDF
Web servers presentacion
PDF
NANOG 82: DNS Evolution
Performance Tuning On the Fly at CMP.LY Using MongoDB Management Service
RIPE 82: An Update on Fragmentation Loss Rates in IPv6
ICANN DNS Symposium 2021: Measuring Recursive Resolver Centrality
RIPE 82: Measuring Recursive Resolver Centrality
NANOG32 - DNS Anomalies and Their Impacts on DNS Cache Servers
RIPE 82: DNS Evolution
Web servers presentacion
NANOG 82: DNS Evolution

What's hot (6)

PDF
DINR 2021 Virtual Workshop: Passive vs Active Measurements in the DNS
PDF
How Greta uses NATS to revolutionize data distribution on the Internet
PDF
IETF 100: A signalling mechanism for trusted keys in the DNS
PDF
Tips tricks deliver_high_performing_secure_web_pages
PPTX
bdNOG 7 - Re-engineering the DNS - one resolver at a time
PPSX
webservers
DINR 2021 Virtual Workshop: Passive vs Active Measurements in the DNS
How Greta uses NATS to revolutionize data distribution on the Internet
IETF 100: A signalling mechanism for trusted keys in the DNS
Tips tricks deliver_high_performing_secure_web_pages
bdNOG 7 - Re-engineering the DNS - one resolver at a time
webservers
Ad

Viewers also liked (10)

PPTX
MongoDB and Indexes - MUG Denver - 20160329
PDF
Indexing and Performance Tuning
KEY
Indexing with MongoDB
PPT
Fast querying indexing for performance (4)
PPTX
Indexing with MongoDB
PDF
MongoDB Days UK: Indexing and Performance Tuning
PPTX
Webinar: Index Tuning and Evaluation
PDF
MongoDB Performance Tuning
PPTX
Indexing and Query Optimizer (Aaron Staple)
PDF
Optimizing MongoDB: Lessons Learned at Localytics
MongoDB and Indexes - MUG Denver - 20160329
Indexing and Performance Tuning
Indexing with MongoDB
Fast querying indexing for performance (4)
Indexing with MongoDB
MongoDB Days UK: Indexing and Performance Tuning
Webinar: Index Tuning and Evaluation
MongoDB Performance Tuning
Indexing and Query Optimizer (Aaron Staple)
Optimizing MongoDB: Lessons Learned at Localytics
Ad

Similar to Performance Tuning on the Fly at CMP.LY (20)

PDF
Mongo performance tuning: tips and tricks
PDF
Mongodb in-anger-boston-rb-2011
PPTX
Mongo db tips and advance features
PDF
Silicon Valley Code Camp 2014 - Advanced MongoDB
PDF
Silicon Valley Code Camp 2016 - MongoDB in production
PDF
MongoDB Tokyo - Monitoring and Queueing
PPTX
MongoDB Performance Tuning and Monitoring
PDF
10 Key MongoDB Performance Indicators
PPTX
Conceptos básicos. Seminario web 6: Despliegue de producción
PPTX
Mongodb Performance
PDF
Silicon Valley Code Camp 2015 - Advanced MongoDB - The Sequel
PDF
MongoDB and server performance
PDF
Mongo nyc nyt + mongodb
PDF
MongoDB Indexing Constraints and Creative Schemas
PDF
Mongo DB Monitoring - Become a MongoDB DBA
PPTX
MongoDB Replication fundamentals - Desert Code Camp - October 2014
PDF
Mongo db pefrormance tuning with MMS
PPTX
Mongo db pefrormance optimization strategies
PPTX
MongoDB Replication fundamentals - Desert Code Camp - October 2014
PDF
MongoDB at MapMyFitness
Mongo performance tuning: tips and tricks
Mongodb in-anger-boston-rb-2011
Mongo db tips and advance features
Silicon Valley Code Camp 2014 - Advanced MongoDB
Silicon Valley Code Camp 2016 - MongoDB in production
MongoDB Tokyo - Monitoring and Queueing
MongoDB Performance Tuning and Monitoring
10 Key MongoDB Performance Indicators
Conceptos básicos. Seminario web 6: Despliegue de producción
Mongodb Performance
Silicon Valley Code Camp 2015 - Advanced MongoDB - The Sequel
MongoDB and server performance
Mongo nyc nyt + mongodb
MongoDB Indexing Constraints and Creative Schemas
Mongo DB Monitoring - Become a MongoDB DBA
MongoDB Replication fundamentals - Desert Code Camp - October 2014
Mongo db pefrormance tuning with MMS
Mongo db pefrormance optimization strategies
MongoDB Replication fundamentals - Desert Code Camp - October 2014
MongoDB at MapMyFitness

More from MongoDB (20)

PDF
MongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
PDF
MongoDB SoCal 2020: Go on a Data Safari with MongoDB Charts!
PDF
MongoDB SoCal 2020: Using MongoDB Services in Kubernetes: Any Platform, Devel...
PDF
MongoDB SoCal 2020: A Complete Methodology of Data Modeling for MongoDB
PDF
MongoDB SoCal 2020: From Pharmacist to Analyst: Leveraging MongoDB for Real-T...
PDF
MongoDB SoCal 2020: Best Practices for Working with IoT and Time-series Data
PDF
MongoDB SoCal 2020: MongoDB Atlas Jump Start
PDF
MongoDB .local San Francisco 2020: Powering the new age data demands [Infosys]
PDF
MongoDB .local San Francisco 2020: Using Client Side Encryption in MongoDB 4.2
PDF
MongoDB .local San Francisco 2020: Using MongoDB Services in Kubernetes: any ...
PDF
MongoDB .local San Francisco 2020: Go on a Data Safari with MongoDB Charts!
PDF
MongoDB .local San Francisco 2020: From SQL to NoSQL -- Changing Your Mindset
PDF
MongoDB .local San Francisco 2020: MongoDB Atlas Jumpstart
PDF
MongoDB .local San Francisco 2020: Tips and Tricks++ for Querying and Indexin...
PDF
MongoDB .local San Francisco 2020: Aggregation Pipeline Power++
PDF
MongoDB .local San Francisco 2020: A Complete Methodology of Data Modeling fo...
PDF
MongoDB .local San Francisco 2020: MongoDB Atlas Data Lake Technical Deep Dive
PDF
MongoDB .local San Francisco 2020: Developing Alexa Skills with MongoDB & Golang
PDF
MongoDB .local Paris 2020: Realm : l'ingrédient secret pour de meilleures app...
PDF
MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...
MongoDB SoCal 2020: Migrate Anything* to MongoDB Atlas
MongoDB SoCal 2020: Go on a Data Safari with MongoDB Charts!
MongoDB SoCal 2020: Using MongoDB Services in Kubernetes: Any Platform, Devel...
MongoDB SoCal 2020: A Complete Methodology of Data Modeling for MongoDB
MongoDB SoCal 2020: From Pharmacist to Analyst: Leveraging MongoDB for Real-T...
MongoDB SoCal 2020: Best Practices for Working with IoT and Time-series Data
MongoDB SoCal 2020: MongoDB Atlas Jump Start
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 MongoDB Services in Kubernetes: any ...
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: MongoDB Atlas Jumpstart
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: A Complete Methodology of Data Modeling fo...
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 Paris 2020: Realm : l'ingrédient secret pour de meilleures app...
MongoDB .local Paris 2020: Upply @MongoDB : Upply : Quand le Machine Learning...

Recently uploaded (20)

PDF
Building Integrated photovoltaic BIPV_UPV.pdf
PDF
Chapter 3 Spatial Domain Image Processing.pdf
PDF
Encapsulation_ Review paper, used for researhc scholars
PDF
Electronic commerce courselecture one. Pdf
PDF
Architecting across the Boundaries of two Complex Domains - Healthcare & Tech...
PDF
7 ChatGPT Prompts to Help You Define Your Ideal Customer Profile.pdf
PDF
Encapsulation theory and applications.pdf
PDF
Per capita expenditure prediction using model stacking based on satellite ima...
PPT
“AI and Expert System Decision Support & Business Intelligence Systems”
PDF
Blue Purple Modern Animated Computer Science Presentation.pdf.pdf
PDF
Approach and Philosophy of On baking technology
PDF
Review of recent advances in non-invasive hemoglobin estimation
PDF
Reach Out and Touch Someone: Haptics and Empathic Computing
DOCX
The AUB Centre for AI in Media Proposal.docx
PDF
Unlocking AI with Model Context Protocol (MCP)
PDF
Machine learning based COVID-19 study performance prediction
PDF
Empathic Computing: Creating Shared Understanding
PDF
A comparative analysis of optical character recognition models for extracting...
PDF
gpt5_lecture_notes_comprehensive_20250812015547.pdf
PDF
Advanced methodologies resolving dimensionality complications for autism neur...
Building Integrated photovoltaic BIPV_UPV.pdf
Chapter 3 Spatial Domain Image Processing.pdf
Encapsulation_ Review paper, used for researhc scholars
Electronic commerce courselecture one. Pdf
Architecting across the Boundaries of two Complex Domains - Healthcare & Tech...
7 ChatGPT Prompts to Help You Define Your Ideal Customer Profile.pdf
Encapsulation theory and applications.pdf
Per capita expenditure prediction using model stacking based on satellite ima...
“AI and Expert System Decision Support & Business Intelligence Systems”
Blue Purple Modern Animated Computer Science Presentation.pdf.pdf
Approach and Philosophy of On baking technology
Review of recent advances in non-invasive hemoglobin estimation
Reach Out and Touch Someone: Haptics and Empathic Computing
The AUB Centre for AI in Media Proposal.docx
Unlocking AI with Model Context Protocol (MCP)
Machine learning based COVID-19 study performance prediction
Empathic Computing: Creating Shared Understanding
A comparative analysis of optical character recognition models for extracting...
gpt5_lecture_notes_comprehensive_20250812015547.pdf
Advanced methodologies resolving dimensionality complications for autism neur...

Performance Tuning on the Fly at CMP.LY

  • 1. 1JUNE 2014 Performance Tuning on the Fly at CMP.LY Michael De Lorenzo CTO, CMP.LY Inc. michael@cmp.ly @mikedelorenzo
  • 2. 2JUNE 2014 Agenda • CMP.LY and CommandPost • What is MongoDB Management Service? • Performance Tuning • MongoDB Issues we’ve faced • Slow response times and delayed writes • Unindexed queries • Increased Replication Lag and Plummeting oplog Window • Keep your deployment healthy with MMS • Using MMS Alerts • Using MMS Backups
  • 3. 3JUNE 2014 A venture-funded NYC startup that offers proprietary social media, monitoring, measurement, insight and compliance solutions for Fortune 100 A Monitoring, Measurement & Insights (MMI) tool for managed social communications.
  • 4. 4JUNE 2014 Use CommandPost to: • Track and measure cross-platform in real-time • Identify and attribute high-value engagement • Analyze and segment engaged audience • Optimize content and engagement strategies • Address compliance needs
  • 5. 5JUNE 2014 What is MongoDB Management Service?
  • 6. 6JUNE 2014 MongoDB Management Service • Free MongoDB Monitoring • MongoDB Backup in the Cloud • Free Cloud service or Available to run On-Prem for Standard or Enterprise Subscriptions • Automation coming soon—FTW! Ops Makes MongoDB easier to use and manage
  • 7. 7JUNE 2014 Who Is MMS for? • Developers • Ops Team • MongoDB Technical Service Team
  • 9. 9JUNE 2014 How To Do Performance Tuning? • Assess the problem and establish acceptable behavior. • Measure the performance before modification. • Identify the bottleneck. • Remove the bottleneck. • Measure performance after modification to confirm. • Keep it or revert it and repeat. Adapted from [http://en.wikipedia.org/wiki/Performance_tuning]
  • 11. 11JUNE 2014 Issues We’ve Faced • Concurrency Issues • Slow response times and delayed writes • Querying without indexes • Slow reads, timeouts • Increasing Replication Lag + Plummeting oplog Window
  • 13. 13JUNE 2014 Concurrency • What is it? • How did it affect us? • How did MMS help identify it? • How did we diagnose the issue in our app and fix it? • Today
  • 14. 14JUNE 2014 Concurrency in MongoDB • MongoDB uses a readers-writer lock • Many read operations can use a read lock • If a write lock exists, a single write lock holds the lock exclusively • No other read or write operations can share the lock • Locks are “writer-greedy”
  • 15. 15JUNE 2014 How Did This Affect Us? • Slow API response times due to slow database operations • Delayed writes • Backed up queues
  • 16. 16JUNE 2014 MMS: Identify Concurrency Issues
  • 17. 17JUNE 2014 Lock % Greater than 100%?!?!? • time spent in write lock state; sum of global lock + hottest database at that time, can make value > 100% • Global lock percentage is a derived metric: % of time in global lock (small number) + % of time locked by hottest (“most locked”) database • Data is sampled and combined, it is possible to see values over 100%.
  • 18. 18JUNE 2014 Diagnosis • Identified the write-heavy collections in our applications • Used application logs to identify slow API responses • Analyzed MongoDB logs to identify slow database queries
  • 19. 19JUNE 2014 Our Remedies • Schema changes • Message queues • Multiple databases • Sharding
  • 20. 20JUNE 2014 Schema Changes • Denormalized our schema • Allowed for atomic updates • Customized documents’ _id attribute • Leveraged existing index on _id attribute
  • 21. 21JUNE 2014 Modeling for Atomic Operations Document { _id: 123456789, title: "MongoDB: The Definitive Guide", author: [ "Kristina Chodorow", "Mike Dirolf" ], published_date: ISODate("2010-09-24"), pages: 216, language: "English", publisher_id: "oreilly", available: 3, checkout: [ { by: "joe", date: ISODate("2012-10-15") } ] } Update Operation db.books.update ( { _id: 123456789, available: { $gt: 0 } }, { $inc: { available: -1 }, $push: { checkout: { by: "abc", date: new Date() } } } ) Result WriteResult({ "nMatched" : 1, "nUpserted" : 0, "nModified" : 1 })
  • 22. 22JUNE 2014 Message Queues • Controlled writes to specific collections using Pub/Sub • We chose Amazon SQS • Other options include Redis, Beanstalkd, IronMQ or any other message queue • Created consistent flow of writes versus bursts • Reduced length and frequency of write locks by controlling flow/speed of writes
  • 23. 23JUNE 2014 Using Multiple Databases • As of version 2.2, MongoDB implements locks at a per database granularity for most read and write operations • Planned to be at the document level in version 2.8 • Moved write-heavy collections to new (separate) databases
  • 24. 24JUNE 2014 Using Sharding • Improves concurrency by distributing databases across multiple mongod instances • Locks are per-mongod instance
  • 26. 26JUNE 2014 Queries without Indexes Slow responses and timeouts
  • 27. 27JUNE 2014 Indexing • What is it? • How did it affect us? • How did MMS help identify it? • How did we diagnose the issue in our app and fix it? • Today
  • 28. 28JUNE 2014 Indexing with MongoDB • Support for efficient execution of queries • Without indexes, MongoDB must scan every document • Example Wed Jul 17 13:40:14 [conn28600] query x.y [snip] ntoreturn:16 ntoskip:0 nscanned:16779 scanAndOrder:1 keyUpdates:0 numYields: 906 locks(micros) r:46877422 nreturned:16 reslen:6948 38172ms 38 seconds! Scanned 17k documents, returned 16 • Create indexes to cover all queries, especially support common and user-facing • Collection scans can push entire working set out of RAM
  • 29. 29JUNE 2014 How Did this Affect Us? • Our web apps became slow • Queries began to timeout • Longer operations mean longer lock times
  • 30. 30JUNE 2014 MMS: Identifying Indexing Issues Page Faults • The number of times that MongoDB requires data not located in physical memory, and must read from virtual memory.
  • 31. 31JUNE 2014 Diagnosis • Log Analysis • Use mtools to analyze MongoDB logs • mlogfilter • filter logs for slow queries, collection scans, etc. • mplotqueries • graph query response times and volumes • https://github.com/rueckstiess/mtools
  • 32. 32JUNE 2014 Diagnosis • Monitoring application logs • Enabling ‘notablescan’ option in development and testing versions of apps • MongoDB profiling
  • 33. 33JUNE 2014 The MongoDB Profiler • Collects fine grained data about MongoDB write operations, cursors, database commands on a running mongod instance. • Default slowOpThreshold value is 100ms, can be changed from the Mongo shell
  • 34. 34JUNE 2014 Our Remedies • Add indexes! • Make sure queries are covered • Utilize the projection specification to limit fields (data) returned
  • 35. 35JUNE 2014 Adding Indexes • Improved performance for common queries • Alleviates the need to go to disk for many operations
  • 36. 36JUNE 2014 Projection Specification Controls the amount of data that needs to be (de-)serialized for use in your app • We used it to limit data returned in embedded documents and arrays db.inventory.find( { type: 'food' }, { item: 1, qty: 1 } )
  • 38. 38JUNE 2014 Increasing Replication Lag + Plummeting oplog Window
  • 39. 39JUNE 2014 Replication • What is it? • How did it affect us? • How did MMS help identify it? • How did we diagnose the issue in our app? • How did we fix it? • Today
  • 40. 40JUNE 2014 What is Replication? • A replica set is a group of mongod processes that maintain the same data set. • Replica sets provide redundancy and high availability, and are the basis for all production deployments
  • 41. 41JUNE 2014 What Is the Oplog? • A special capped collection that keeps a rolling record of all operations that modify the data stored in your databases. • Operations are first applied on the primary and then recorded to its oplog. • Secondary members then copy and apply these operations in an asynchronous process.
  • 42. 42JUNE 2014 What is Replication Lag? • A delay between an operation on the primary and the application of that operation from the oplog to the secondary. • Effects of excessive lag • “Lagged” members ineligible to quickly become primary • Increases the possibility that distributed read operations will be inconsistent.
  • 43. 43JUNE 2014 How did this affect us? • Degraded overall health of our production deployment. • Distributed reads are no longer eventually consistent. • Unable to bring new secondary members online. • Caused MMS Backups to do full re-syncs.
  • 44. 44JUNE 2014 Identifying Replication Lag Issues with MMS The Replication Lag chart displays the lag for your deployment
  • 45. 45JUNE 2014 Diagnosis • Possible causes of replication lag include network latency, disk throughput, concurrency and/or appropriate write concern • Size of operations to be replicated • Confirmed Non-Issues for us • Network latency • Disk throughput • Possible Issues for us • Concurrency/write concern • Size of op is an issue because entire document is written to oplog
  • 46. 46JUNE 2014 Concurrency/Write Concern • Our applications apply many updates very quickly • All operations need to be replicated to secondary members • We use the default write concern—Acknowledge • The mongod confirms receipt of the write operation • Allows clients to catch network, duplicate key and other errors
  • 47. 47JUNE 2014 Concurrency Wasn’t the Issue Lock Percentage
  • 48. 48JUNE 2014 Operation Size Was the Issue Collection A (most active) Total Updates: 3,373 Total Size of updates: 6.5 GB Activity accounted for nearly 87% of total traffic Collection B (next most active) Total Updates: 85,423 Total Size of updates: 740 MB
  • 49. 49JUNE 2014 Fast Growing oplog causes issues Replication oplog Window – approximate hours available in the primary’s oplog
  • 50. 50JUNE 2014 How We Fixed It • Changed our schema • Changed the types of updates that were made to documents • Both allowed us to utilize atomic operations • Led to smaller updates • Smaller updates == less oplog space used
  • 53. 53JUNE 2014 Keeping Your Deployment Healthy
  • 55. 55JUNE 2014 Watch for Warnings • Be warned if you are • Running outdated versions • Have startup warnings • If a mongod is publicly visible • Pay attention to these warnings
  • 56. 56JUNE 2014 MMS Backups • Engineered by MongoDB • Continuous backup with point-in-time recovery • Fully managed backups
  • 57. 57JUNE 2014 Using MMS Backups • Seeding new secondaries • Repairing replica set members • Development and testing databases • Restores are free!
  • 58. 58JUNE 2014 Summary • Know what’s expected and “normal” in your systems • Know when and what changes in your systems • Utilize MMS alerts, visualizations and warnings to keep things running smoothly
  • 59. 59JUNE 2014 Questions? Michael De Lorenzo CTO, CMP.LY Inc. michael@cmp.ly @mikedelorenzo

Editor's Notes

  • #7: Free MongoDB Monitoring - mongodb specific metrics, visualization of performance, custom alerting Backup - industrial strength, point-in-time recovery, free usage tier
  • #8: Developers, what we’re focused on today – track bottlenecks Ops team :: great for small teams where your developers are also part of your ops team (DevOps) – monitor health of clusters, backup dbs, automate updates and add capacity MongoDB technical service team :: helps them help you Important for us because we maintain a small tech team
  • #10: PRO-TIP: Know what is “normal” for you system. Know what changed when something happens, what do you expect to be normal behavior, what are you normal MMS metrics
  • #15: readers-writer lock allows concurrent read access to the db, but exclusive access to a single write “Writer-greedy” - When both a read and write are waiting for a lock, MongoDB grants the lock to the write. The exclusivity of write locks is one of the keys to why getting our lock % under control is so important.
  • #17: Lock % time spent in write lock state; sum of global lock + hottest database at that time, can make value > 100% Our Issue: Primary database maintaining a write lock of 150-175% of the time
  • #26: Global lock percentage has remained about the same Primary client-facing database has seen lock % drop
  • #32: Developed by a MongoDB engineer
  • #45: - Purple bar indicates downtime
  • #55: - Alerts for down hosts, down agents and more
  • #56: - According to Technical Services, In many cases, fixing warnings will fix issues