SlideShare a Scribd company logo
Administration
        Michael DelNegro
 Principal Database Administrator
               AOL
About Me

• DBA at AOL (Dulles) for six years
• Background in Sybase
• Now MySQL, PostgreSQL and NoSQL
• I heart Big Data
• Operations
MongoDB at AOL

• In use since Summer 2010
• I currently administer two applications for
  MapQuest and Patch
• There are other MongoDB applications in
  use throughout the company and more on
  the way
MapQuest App
• Tracks User Profile Information
• V. 1.6.5.latest (just upgraded from 1.6.3)
• 26 Total Hosts, CentOS 5, 16GB RAM
• 300 million users, 130 million saved maps
• Replica Sets
• 3 Sharded Collections
 • lookup, east coast, west coast
Patch App

• Tracks User Activity
• Master, 2 Slaves
• V. 1.6.3
• About 100GB of data
• Throwaway data (for now)
About Patch
• “HyperLocal” news sites across the
  country
• Fills gap in coverage left by local
  newspapers
• Currently 800 sites are live
• 1000+ by end of 2011
Nearby Patch Sites
• Vienna (ex. vienna.patch.com)
• Ashburn
• Reston
• McLean
• CollegePark
• GreaterAnnapolis
• 50+ in DC Area
Upcoming Ops Plans

• Upgrade to 1.8
• Migrate Patch to Replica Sets
• Move MapQuest to bigger hardware (16GB
  -> 64GB memory)
• Add additional slaves
Admin Tips
• Slaves are a MUST pre1.8
• Use 64 bit version
 • 32 bit version has 2.5 GB storage limit
• Use xfs or ext4
• Keep eye on oplog size
• Turn off atime & dtime
• Consider using getLastError()
More Admin Tips
• Increase File Descriptor Limits
• Do not use kill -9 (pre-1.8)
• Consider having a slave on replication delay
 • -- slavedelay <seconds>
• db.runCommand(“logRotate”)
• Keep db.<collection>.totalIndexSize() less
  than RAM
Even More Admin Tips
• Omit parenthesis to see command details
• 5 Primitives of Mongo
 • insert, remove, update, find, getMore
• Replication is slave polling master process
• Master and slaves each have their own
  oplog
• Choose shard key carefully (ex. timestamp)
Admin Tools
• mongodump-mongorestore
 • use fsync and lock database to ensure
    consistent backup
• fsync and lock are a must for file system
  backups (ex LVM)
• http://localhost:28017 (server port + 1000)
• db.currentOp()
More Admin Tools
• mongostat
• db.printReplicationInfo()
• db.serverStatus()
• db.<collection>.stats()
• Database Profiler
• Explain
Admin Resources
• mongodb.org
 • Events
 • Forums
• Wordnik Mongo Admin Tools (Github)
• Mongo Snippets (Github)
• IRC (freenode #mongodb)
More Admin Resources
• slideshare (use time-based search)
• GUI Admin Tools
 • MongoVUE
 • Others
• Kristina Chodorow's Blog
• Boxed Ice
Even More Resources
• Follow @MongoQuestion (StackOverflow)
• MongoDB on Quora (@q_mongodb)
• 10gen Deployment Strategies Slides
• Books
• Training
• 10gen Support
New MongoDB Release
• 1.8 (Out Today! - March 16)
 • Single server durability (journaling)
 • Enhancements to sharding & replica sets
 • Covered indexes
 • Tab Completion
 • Rename fields without pulling down
    object
Future Releases
• 2.0 (May/June?)
 • Better map-reduce and aggregation
 • Improved concurrency
 • Online compaction
 • TTL time-out collections
• Beyond
 • full-text search?
Thank You!

• www.slideshare.net/radiocats
• @radiocats on Twitter
• www.linkedin.com/in/mdelnegro

More Related Content

What's hot

Key-Value-Stores -- The Key to Scaling?
Key-Value-Stores -- The Key to Scaling?Key-Value-Stores -- The Key to Scaling?
Key-Value-Stores -- The Key to Scaling?
Tim Lossen
 
Introduction to Redis
Introduction to RedisIntroduction to Redis
Introduction to Redis
TO THE NEW | Technology
 
Cassandra vs. Redis
Cassandra vs. RedisCassandra vs. Redis
Cassandra vs. Redis
Tim Lossen
 
BuilHigh Performance Weibo Platform-Qcon2011
BuilHigh Performance Weibo Platform-Qcon2011BuilHigh Performance Weibo Platform-Qcon2011
BuilHigh Performance Weibo Platform-Qcon2011
Yiwei Ma
 

What's hot (19)

Key-Value-Stores -- The Key to Scaling?
Key-Value-Stores -- The Key to Scaling?Key-Value-Stores -- The Key to Scaling?
Key-Value-Stores -- The Key to Scaling?
 
Introduction to Redis
Introduction to RedisIntroduction to Redis
Introduction to Redis
 
Using Sphinx for Search in PHP
Using Sphinx for Search in PHPUsing Sphinx for Search in PHP
Using Sphinx for Search in PHP
 
Real time fulltext search with sphinx
Real time fulltext search with sphinxReal time fulltext search with sphinx
Real time fulltext search with sphinx
 
Cassandra vs. Redis
Cassandra vs. RedisCassandra vs. Redis
Cassandra vs. Redis
 
Let's Compare: A Benchmark review of InfluxDB and Elasticsearch
Let's Compare: A Benchmark review of InfluxDB and ElasticsearchLet's Compare: A Benchmark review of InfluxDB and Elasticsearch
Let's Compare: A Benchmark review of InfluxDB and Elasticsearch
 
Operationalizing MongoDB at AOL
Operationalizing MongoDB at AOLOperationalizing MongoDB at AOL
Operationalizing MongoDB at AOL
 
Rich storytelling with Drupal, Paragraphs and Islandora DAMS
Rich storytelling with Drupal, Paragraphs and Islandora DAMSRich storytelling with Drupal, Paragraphs and Islandora DAMS
Rich storytelling with Drupal, Paragraphs and Islandora DAMS
 
Hadoop Training in Hyderabad
Hadoop Training in HyderabadHadoop Training in Hyderabad
Hadoop Training in Hyderabad
 
Utilizing the OpenNTF Domino API
Utilizing the OpenNTF Domino APIUtilizing the OpenNTF Domino API
Utilizing the OpenNTF Domino API
 
Benchmarking Redis by itself and versus other NoSQL databases
Benchmarking Redis by itself and versus other NoSQL databasesBenchmarking Redis by itself and versus other NoSQL databases
Benchmarking Redis by itself and versus other NoSQL databases
 
Sphinx - High performance full-text search for MySQL
Sphinx - High performance full-text search for MySQLSphinx - High performance full-text search for MySQL
Sphinx - High performance full-text search for MySQL
 
RESTful API – How to Consume, Extract, Store and Visualize Data with InfluxDB...
RESTful API – How to Consume, Extract, Store and Visualize Data with InfluxDB...RESTful API – How to Consume, Extract, Store and Visualize Data with InfluxDB...
RESTful API – How to Consume, Extract, Store and Visualize Data with InfluxDB...
 
BuilHigh Performance Weibo Platform-Qcon2011
BuilHigh Performance Weibo Platform-Qcon2011BuilHigh Performance Weibo Platform-Qcon2011
BuilHigh Performance Weibo Platform-Qcon2011
 
MongoDB @ fliptop
MongoDB @ fliptopMongoDB @ fliptop
MongoDB @ fliptop
 
The Practice of Alluxio in JD.com
The Practice of Alluxio in JD.comThe Practice of Alluxio in JD.com
The Practice of Alluxio in JD.com
 
Optimizing Latency-Sensitive Queries for Presto at Facebook: A Collaboration ...
Optimizing Latency-Sensitive Queries for Presto at Facebook: A Collaboration ...Optimizing Latency-Sensitive Queries for Presto at Facebook: A Collaboration ...
Optimizing Latency-Sensitive Queries for Presto at Facebook: A Collaboration ...
 
Realtime Search Infrastructure at Craigslist (OpenWest 2014)
Realtime Search Infrastructure at Craigslist (OpenWest 2014)Realtime Search Infrastructure at Craigslist (OpenWest 2014)
Realtime Search Infrastructure at Craigslist (OpenWest 2014)
 
Elasticsearch Arcihtecture & What's New in Version 5
Elasticsearch Arcihtecture & What's New in Version 5Elasticsearch Arcihtecture & What's New in Version 5
Elasticsearch Arcihtecture & What's New in Version 5
 

Viewers also liked (13)

Mongo db resources_20111116
Mongo db resources_20111116Mongo db resources_20111116
Mongo db resources_20111116
 
Project Management Meth V1 2006
Project Management Meth V1 2006Project Management Meth V1 2006
Project Management Meth V1 2006
 
MySQL Resources
MySQL ResourcesMySQL Resources
MySQL Resources
 
Vep Ereading Event 20120926
Vep Ereading Event 20120926Vep Ereading Event 20120926
Vep Ereading Event 20120926
 
Vep Iaz 2011 20110916
Vep Iaz 2011 20110916Vep Iaz 2011 20110916
Vep Iaz 2011 20110916
 
Pldc2012 monitoring-and-trending-with-mysql
Pldc2012 monitoring-and-trending-with-mysqlPldc2012 monitoring-and-trending-with-mysql
Pldc2012 monitoring-and-trending-with-mysql
 
Rapportering resultaten Innovatief Aanbesteden op VEP op ia_20130913
Rapportering resultaten Innovatief Aanbesteden op VEP op ia_20130913Rapportering resultaten Innovatief Aanbesteden op VEP op ia_20130913
Rapportering resultaten Innovatief Aanbesteden op VEP op ia_20130913
 
1 startdagen welkom_v20140310
1 startdagen welkom_v201403101 startdagen welkom_v20140310
1 startdagen welkom_v20140310
 
Open Vlacc V3 2007
Open Vlacc V3 2007Open Vlacc V3 2007
Open Vlacc V3 2007
 
Vep ebf
Vep ebfVep ebf
Vep ebf
 
Project Vlaams Eboek platform
Project Vlaams Eboek platformProject Vlaams Eboek platform
Project Vlaams Eboek platform
 
Vlaccii Informatie2003 V2
Vlaccii Informatie2003 V2Vlaccii Informatie2003 V2
Vlaccii Informatie2003 V2
 
MongoDB Administration 20110922
MongoDB Administration 20110922MongoDB Administration 20110922
MongoDB Administration 20110922
 

Similar to Mongo db admin_20110316

MongoDC 2012: "Operationalizing" MongoDB@AOL
MongoDC 2012: "Operationalizing" MongoDB@AOLMongoDC 2012: "Operationalizing" MongoDB@AOL
MongoDC 2012: "Operationalizing" MongoDB@AOL
MongoDB
 
Intro to big data choco devday - 23-01-2014
Intro to big data   choco devday - 23-01-2014Intro to big data   choco devday - 23-01-2014
Intro to big data choco devday - 23-01-2014
Hassan Islamov
 
Monitoring MongoDB’s Engines in the Wild
Monitoring MongoDB’s Engines in the WildMonitoring MongoDB’s Engines in the Wild
Monitoring MongoDB’s Engines in the Wild
Tim Vaillancourt
 
Scalable and High available Distributed File System Metadata Service Using gR...
Scalable and High available Distributed File System Metadata Service Using gR...Scalable and High available Distributed File System Metadata Service Using gR...
Scalable and High available Distributed File System Metadata Service Using gR...
Alluxio, Inc.
 

Similar to Mongo db admin_20110316 (20)

MongoDC 2012: "Operationalizing" MongoDB@AOL
MongoDC 2012: "Operationalizing" MongoDB@AOLMongoDC 2012: "Operationalizing" MongoDB@AOL
MongoDC 2012: "Operationalizing" MongoDB@AOL
 
OSDC 2017 | Lessons from database failures by Colin Charles
OSDC 2017 | Lessons from database failures by Colin CharlesOSDC 2017 | Lessons from database failures by Colin Charles
OSDC 2017 | Lessons from database failures by Colin Charles
 
The MySQL Server ecosystem in 2016
The MySQL Server ecosystem in 2016The MySQL Server ecosystem in 2016
The MySQL Server ecosystem in 2016
 
Intro to big data choco devday - 23-01-2014
Intro to big data   choco devday - 23-01-2014Intro to big data   choco devday - 23-01-2014
Intro to big data choco devday - 23-01-2014
 
[DBA]_HiramFleitas_SQL_PASS_Summit_2017_Summary
[DBA]_HiramFleitas_SQL_PASS_Summit_2017_Summary[DBA]_HiramFleitas_SQL_PASS_Summit_2017_Summary
[DBA]_HiramFleitas_SQL_PASS_Summit_2017_Summary
 
Utilizing the OpenNTF Domino API
Utilizing the OpenNTF Domino APIUtilizing the OpenNTF Domino API
Utilizing the OpenNTF Domino API
 
Monitoring MongoDB’s Engines in the Wild
Monitoring MongoDB’s Engines in the WildMonitoring MongoDB’s Engines in the Wild
Monitoring MongoDB’s Engines in the Wild
 
OSMC 2016 - Monitor your infrastructure with Elastic Beats by Monica Sarbu
OSMC 2016 - Monitor your infrastructure with Elastic Beats by Monica SarbuOSMC 2016 - Monitor your infrastructure with Elastic Beats by Monica Sarbu
OSMC 2016 - Monitor your infrastructure with Elastic Beats by Monica Sarbu
 
OSMC 2016 | Monitor your Infrastructure with Elastic Beats by Monica Sarbu
OSMC 2016 | Monitor your Infrastructure with Elastic Beats by Monica SarbuOSMC 2016 | Monitor your Infrastructure with Elastic Beats by Monica Sarbu
OSMC 2016 | Monitor your Infrastructure with Elastic Beats by Monica Sarbu
 
Transitioning From SQL Server to MySQL - Presentation from Percona Live 2016
Transitioning From SQL Server to MySQL - Presentation from Percona Live 2016Transitioning From SQL Server to MySQL - Presentation from Percona Live 2016
Transitioning From SQL Server to MySQL - Presentation from Percona Live 2016
 
Webinar 2017. Supercharge your analytics with ClickHouse. Alexander Zaitsev
Webinar 2017. Supercharge your analytics with ClickHouse. Alexander ZaitsevWebinar 2017. Supercharge your analytics with ClickHouse. Alexander Zaitsev
Webinar 2017. Supercharge your analytics with ClickHouse. Alexander Zaitsev
 
Databases in the Hosted Cloud
Databases in the Hosted CloudDatabases in the Hosted Cloud
Databases in the Hosted Cloud
 
What's new in JBoss ON 3.2
What's new in JBoss ON 3.2What's new in JBoss ON 3.2
What's new in JBoss ON 3.2
 
Scalable and High available Distributed File System Metadata Service Using gR...
Scalable and High available Distributed File System Metadata Service Using gR...Scalable and High available Distributed File System Metadata Service Using gR...
Scalable and High available Distributed File System Metadata Service Using gR...
 
Joel Jacobson (Datastax) - Diagnosing Cassandra Problems in Production
Joel Jacobson (Datastax) - Diagnosing Cassandra Problems in ProductionJoel Jacobson (Datastax) - Diagnosing Cassandra Problems in Production
Joel Jacobson (Datastax) - Diagnosing Cassandra Problems in Production
 
Utilizing the open ntf domino api
Utilizing the open ntf domino apiUtilizing the open ntf domino api
Utilizing the open ntf domino api
 
The MySQL Server ecosystem in 2016
The MySQL Server ecosystem in 2016The MySQL Server ecosystem in 2016
The MySQL Server ecosystem in 2016
 
Lessons from database failures
Lessons from database failuresLessons from database failures
Lessons from database failures
 
Deployment Strategies (Mongo Austin)
Deployment Strategies (Mongo Austin)Deployment Strategies (Mongo Austin)
Deployment Strategies (Mongo Austin)
 
MySQL Performance Tuning at COSCUP 2014
MySQL Performance Tuning at COSCUP 2014MySQL Performance Tuning at COSCUP 2014
MySQL Performance Tuning at COSCUP 2014
 

Recently uploaded

Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo DiehlFuture Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Peter Udo Diehl
 
Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for Success
UXDXConf
 

Recently uploaded (20)

Demystifying gRPC in .Net by John Staveley
Demystifying gRPC in .Net by John StaveleyDemystifying gRPC in .Net by John Staveley
Demystifying gRPC in .Net by John Staveley
 
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024
 
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomSalesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
 
Powerful Start- the Key to Project Success, Barbara Laskowska
Powerful Start- the Key to Project Success, Barbara LaskowskaPowerful Start- the Key to Project Success, Barbara Laskowska
Powerful Start- the Key to Project Success, Barbara Laskowska
 
A Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System StrategyA Business-Centric Approach to Design System Strategy
A Business-Centric Approach to Design System Strategy
 
Syngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdfSyngulon - Selection technology May 2024.pdf
Syngulon - Selection technology May 2024.pdf
 
UiPath Test Automation using UiPath Test Suite series, part 1
UiPath Test Automation using UiPath Test Suite series, part 1UiPath Test Automation using UiPath Test Suite series, part 1
UiPath Test Automation using UiPath Test Suite series, part 1
 
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdf
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdfSimplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdf
Simplified FDO Manufacturing Flow with TPMs _ Liam at Infineon.pdf
 
AI revolution and Salesforce, Jiří Karpíšek
AI revolution and Salesforce, Jiří KarpíšekAI revolution and Salesforce, Jiří Karpíšek
AI revolution and Salesforce, Jiří Karpíšek
 
10 Differences between Sales Cloud and CPQ, Blanka Doktorová
10 Differences between Sales Cloud and CPQ, Blanka Doktorová10 Differences between Sales Cloud and CPQ, Blanka Doktorová
10 Differences between Sales Cloud and CPQ, Blanka Doktorová
 
ECS 2024 Teams Premium - Pretty Secure
ECS 2024   Teams Premium - Pretty SecureECS 2024   Teams Premium - Pretty Secure
ECS 2024 Teams Premium - Pretty Secure
 
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo DiehlFuture Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
Future Visions: Predictions to Guide and Time Tech Innovation, Peter Udo Diehl
 
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
 
Optimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through ObservabilityOptimizing NoSQL Performance Through Observability
Optimizing NoSQL Performance Through Observability
 
Introduction to Open Source RAG and RAG Evaluation
Introduction to Open Source RAG and RAG EvaluationIntroduction to Open Source RAG and RAG Evaluation
Introduction to Open Source RAG and RAG Evaluation
 
Speed Wins: From Kafka to APIs in Minutes
Speed Wins: From Kafka to APIs in MinutesSpeed Wins: From Kafka to APIs in Minutes
Speed Wins: From Kafka to APIs in Minutes
 
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
 
UiPath Test Automation using UiPath Test Suite series, part 2
UiPath Test Automation using UiPath Test Suite series, part 2UiPath Test Automation using UiPath Test Suite series, part 2
UiPath Test Automation using UiPath Test Suite series, part 2
 
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdfIntroduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
Introduction to FDO and How It works Applications _ Richard at FIDO Alliance.pdf
 
Structuring Teams and Portfolios for Success
Structuring Teams and Portfolios for SuccessStructuring Teams and Portfolios for Success
Structuring Teams and Portfolios for Success
 

Mongo db admin_20110316

  • 1. Administration Michael DelNegro Principal Database Administrator AOL
  • 2. About Me • DBA at AOL (Dulles) for six years • Background in Sybase • Now MySQL, PostgreSQL and NoSQL • I heart Big Data • Operations
  • 3. MongoDB at AOL • In use since Summer 2010 • I currently administer two applications for MapQuest and Patch • There are other MongoDB applications in use throughout the company and more on the way
  • 4. MapQuest App • Tracks User Profile Information • V. 1.6.5.latest (just upgraded from 1.6.3) • 26 Total Hosts, CentOS 5, 16GB RAM • 300 million users, 130 million saved maps • Replica Sets • 3 Sharded Collections • lookup, east coast, west coast
  • 5. Patch App • Tracks User Activity • Master, 2 Slaves • V. 1.6.3 • About 100GB of data • Throwaway data (for now)
  • 6. About Patch • “HyperLocal” news sites across the country • Fills gap in coverage left by local newspapers • Currently 800 sites are live • 1000+ by end of 2011
  • 7. Nearby Patch Sites • Vienna (ex. vienna.patch.com) • Ashburn • Reston • McLean • CollegePark • GreaterAnnapolis • 50+ in DC Area
  • 8. Upcoming Ops Plans • Upgrade to 1.8 • Migrate Patch to Replica Sets • Move MapQuest to bigger hardware (16GB -> 64GB memory) • Add additional slaves
  • 9. Admin Tips • Slaves are a MUST pre1.8 • Use 64 bit version • 32 bit version has 2.5 GB storage limit • Use xfs or ext4 • Keep eye on oplog size • Turn off atime & dtime • Consider using getLastError()
  • 10. More Admin Tips • Increase File Descriptor Limits • Do not use kill -9 (pre-1.8) • Consider having a slave on replication delay • -- slavedelay <seconds> • db.runCommand(“logRotate”) • Keep db.<collection>.totalIndexSize() less than RAM
  • 11. Even More Admin Tips • Omit parenthesis to see command details • 5 Primitives of Mongo • insert, remove, update, find, getMore • Replication is slave polling master process • Master and slaves each have their own oplog • Choose shard key carefully (ex. timestamp)
  • 12. Admin Tools • mongodump-mongorestore • use fsync and lock database to ensure consistent backup • fsync and lock are a must for file system backups (ex LVM) • http://localhost:28017 (server port + 1000) • db.currentOp()
  • 13. More Admin Tools • mongostat • db.printReplicationInfo() • db.serverStatus() • db.<collection>.stats() • Database Profiler • Explain
  • 14. Admin Resources • mongodb.org • Events • Forums • Wordnik Mongo Admin Tools (Github) • Mongo Snippets (Github) • IRC (freenode #mongodb)
  • 15. More Admin Resources • slideshare (use time-based search) • GUI Admin Tools • MongoVUE • Others • Kristina Chodorow's Blog • Boxed Ice
  • 16. Even More Resources • Follow @MongoQuestion (StackOverflow) • MongoDB on Quora (@q_mongodb) • 10gen Deployment Strategies Slides • Books • Training • 10gen Support
  • 17. New MongoDB Release • 1.8 (Out Today! - March 16) • Single server durability (journaling) • Enhancements to sharding & replica sets • Covered indexes • Tab Completion • Rename fields without pulling down object
  • 18. Future Releases • 2.0 (May/June?) • Better map-reduce and aggregation • Improved concurrency • Online compaction • TTL time-out collections • Beyond • full-text search?
  • 19. Thank You! • www.slideshare.net/radiocats • @radiocats on Twitter • www.linkedin.com/in/mdelnegro

Editor's Notes

  1. \n
  2. \n
  3. \n
  4. \n
  5. \n
  6. \n
  7. \n
  8. \n
  9. \n
  10. \n
  11. \n
  12. \n
  13. \n
  14. \n
  15. \n
  16. \n
  17. \n
  18. \n
  19. \n