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#MongoDBDays 
MongoDB for Time Series Data 
Mark Helmstetter 
@helmstetter 
Senior Solutions Architect, MongoDB
What is Time Series Data?
Time Series 
A time series is a sequence of data points, measured 
typically at successive points in time spaced at 
uniform time intervals. 
– Wikipedia 
0 2 4 6 8 10 12 
time
Time Series Data is Everywhere 
• Financial markets pricing (stock ticks) 
• Sensors (temperature, pressure, proximity) 
• Industrial fleets (location, velocity, operational) 
• Social networks (status updates) 
• Mobile devices (calls, texts) 
• Systems (server logs, application logs)
Example: MMS Monitoring 
• Tool for managing & monitoring MongoDB systems 
– 100+ system metrics visualized and alerted 
• 35,000+ MongoDB systems submitting data every 60 
seconds 
• 90% updates, 10% reads 
• ~30,000 updates/second 
• ~3.2B operations/day 
• 8 x86-64 servers
MMS Monitoring Dashboard
Time Series Data at a Higher Level 
• Widely applicable data model 
• Applies to several different "data use cases" 
• Various schema and modeling options 
• Application requirements drive schema design
Time Series Data Considerations 
• Arrival rate & ingest performance 
• Resolution of raw events 
• Resolution needed to support 
– Applications 
– Analysis 
– Reporting 
• Data retention policies
Data Retention 
• How long is data required? 
• Strategies for purging data 
– TTL Collections 
– Batch remove({query}) 
– Drop collection 
• Performance 
– Can effectively double write load 
– Fragmentation and Record Reuse 
– Index updates
Our Mission Today
Develop Nationwide traffic monitoring 
system
What we want from our data 
Charting and Trending
What we want from our data 
Historical & Predictive Analysis
What we want from our data 
Real Time Traffic Dashboard
Traffic sensors to monitor interstate 
conditions 
• 16,000 sensors 
• Measure 
• Speed 
• Travel time 
• Weather, pavement, and traffic conditions 
• Minute level resolution (average) 
• Support desktop, mobile, and car navigation 
systems
Other requirements 
• Need to keep 3 year history 
• Three data centers 
• VA, Chicago, LA 
• Need to support 5M simultaneous users 
• Peak volume (rush hour) 
• Every minute, each request the 10 minute average 
speed for 50 sensors
Schema Design 
Considerations
Schema Design Goals 
• Store raw event data 
• Support analytical queries 
• Find best compromise of: 
– Memory utilization 
– Write performance 
– Read/analytical query performance 
• Accomplish with realistic amount of hardware
Designing For Reading, Writing, … 
• Document per event 
• Document per minute (average) 
• Document per minute (second) 
• Document per hour
Document Per Event 
{ 
segId: "I495_mile23", 
date: ISODate("2013-10-16T22:07:38.000-0500"), 
speed: 63 
} 
• Relational-centric approach 
• Insert-driven workload 
• Aggregations computed at application-level
Document Per Minute (Average) 
{ 
segId: "I495_mile23", 
date: ISODate("2013-10-16T22:07:00.000-0500"), 
speed_count: 18, 
speed_sum: 1134, 
} 
• Pre-aggregate to compute average per minute more easily 
• Update-driven workload 
• Resolution at the minute-level
Document Per Minute (By Second) 
{ 
segId: "I495_mile23", 
date: ISODate("2013-10-16T22:07:00.000-0500"), 
speed: { 0: 63, 1: 58, …, 58: 66, 59: 64 } 
} 
• Store per-second data at the minute level 
• Update-driven workload 
• Pre-allocate structure to avoid document moves
Document Per Hour (By Second) 
{ 
segId: "I495_mile23", 
date: ISODate("2013-10-16T22:00:00.000-0500"), 
speed: { 0: 63, 1: 58, …, 3598: 45, 3599: 55 } 
} 
• Store per-second data at the hourly level 
• Update-driven workload 
• Pre-allocate structure to avoid document moves 
• Updating last second requires 3599 steps
Document Per Hour (By Second) 
{ 
segId: "I495_mile23", 
date: ISODate("2013-10-16T22:00:00.000-0500"), 
speed: { 
0: {0: 47, …, 59: 45}, 
…. 
59: {0: 65, …, 59: 66} } 
} 
• Store per-second data at the hourly level with nesting 
• Update-driven workload 
• Pre-allocate structure to avoid document moves 
• Updating last second requires 59+59 steps
Characterizing Write Differences 
• Example: data generated every second 
• For 1 minute: 
Document Per Event 
60 writes 
Document Per Minute 
1 write, 59 updates 
• Transition from insert driven to update driven 
– Individual writes are smaller 
– Performance and concurrency benefits
Characterizing Read Differences 
• Example: data generated every second 
• Reading data for a single hour requires: 
Document Per Event 
3600 reads 
Document Per Minute 
60 reads 
• Read performance is greatly improved 
– Optimal with tuned block sizes and read ahead 
– Fewer disk seeks
Characterizing Memory Differences 
• _id index for 1 billion events: 
Document Per Event 
~32 GB 
• _id index plus segId and date index: 
• Memory requirements significantly reduced 
– Fewer shards 
– Lower capacity servers 
Document Per Minute 
~.5 GB 
Document Per Event 
~100 GB 
Document Per Minute 
~2 GB
Traffic Monitoring System 
Schema
Quick Analysis 
Writes 
– 16,000 sensors, 1 insert/update per minute 
– 16,000 / 60 = 267 inserts/updates per second 
Reads 
– 5M simultaneous users 
– Each requests 10 minute average for 50 sensors every 
minute
Tailor your schema to your 
application workload
Reads: Impact of Alternative 
Schemas 
Query: Find the average speed over the 
last 
ten minutes 
10 minute average query 
Schema 1 sensor 50 sensors 
1 doc per event 10 500 
1 doc per 10 min 1.9 95 
1 doc per hour 1.3 65 
10 minute average query with 5M 
users 
Schema ops/sec 
1 doc per event 42M 
1 doc per 10 min 8M 
1 doc per hour 5.4M
Writes: Impact of alternative 
schemas 
1 Sensor - 1 Hour 
Schema Inserts Updates 
doc/event 60 0 
doc/10 min 6 54 
doc/hour 1 59 
16000 Sensors – 1 Day 
Schema Inserts Updates 
doc/event 23M 0 
doc/10 min 2.3M 21M 
doc/hour .38M 22.7M
Sample Document Structure 
{ _id: ObjectId("5382ccdd58db8b81730344e2"), 
segId: "900006", 
date: ISODate("2014-03-12T17:00:00Z"), 
data: [ 
Compound, unique 
Index identifies the 
Individual document 
{ speed: NaN, time: NaN }, 
{ speed: NaN, time: NaN }, 
{ speed: NaN, time: NaN }, 
... 
], 
conditions: { 
status: "Snow / Ice Conditions", 
pavement: "Icy Spots", 
weather: "Light Snow" 
} 
}
Memory: Impact of alternative 
schemas 
1 Sensor - 1 Hour 
Schema 
# of 
Documents 
Index Size 
(bytes) 
doc/event 60 4200 
doc/10 min 6 420 
doc/hour 1 70 
16000 Sensors – 1 Day 
Schema 
# of 
Documents Index Size 
doc/event 23M 1.3 GB 
doc/10 min 2.3M 131 MB 
doc/hour .38M 1.4 MB
Sample Document Structure 
Saves an extra index 
{ _id: "900006:14031217", 
data: [ 
{ speed: NaN, time: NaN }, 
{ speed: NaN, time: NaN }, 
{ speed: NaN, time: NaN }, 
... 
], 
conditions: { 
status: "Snow / Ice Conditions", 
pavement: "Icy Spots", 
weather: "Light Snow" 
} 
}
Sample Document Structure 
{ _id: "900006:14031217", 
data: [ 
{ speed: NaN, time: NaN }, 
{ speed: NaN, time: NaN }, 
{ speed: NaN, time: NaN }, 
... 
], 
conditions: { 
status: "Snow / Ice Conditions", 
pavement: "Icy Spots", 
weather: "Light Snow" 
} 
} 
Range queries: 
/^900006:1403/ 
Regex must be 
left-anchored & 
case-sensitive
Sample Document Structure 
{ _id: "900006:140312", 
data: [ 
{ speed: NaN, time: NaN }, 
{ speed: NaN, time: NaN }, 
{ speed: NaN, time: NaN }, 
... 
], 
conditions: { 
status: "Snow / Ice Conditions", 
pavement: "Icy Spots", 
weather: "Light Snow" 
} 
} 
Pre-allocated, 
60 element array of 
per-minute data
Analysis with The Aggregation 
Framework
Pipelining operations 
Piping command line operations 
grep | sort | uniq
Pipelining operations 
Piping aggregation operations 
$match | $group | $sort 
Stream of documents Result documents
What is the average speed for a 
given road segment? 
> db.linkData.aggregate( 
{ $match: { "_id" : /^20484097:/ } }, 
{ $project: { "data.speed": 1, segId: 1 } } , 
{ $unwind: "$data"}, 
{ $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } 
); 
{ "_id" : 20484097, "ave" : 47.067650676506766 }
What is the average speed for a 
given road segment? 
> db.linkData.aggregate( 
{ $match: { "_id" : /^20484097:/ } }, 
{ $project: { "data.speed": 1, segId: 1 } } , 
{ $unwind: "$data"}, 
{ $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } 
); 
{ "_id" : 20484097, "ave" : 47.067650676506766 } 
Select documents on the target segment
What is the average speed for a 
given road segment? 
> db.linkData.aggregate( 
{ $match: { "_id" : /^20484097:/ } }, 
{ $project: { "data.speed": 1, segId: 1 } } , 
{ $unwind: "$data"}, 
{ $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } 
); 
{ "_id" : 20484097, "ave" : 47.067650676506766 } 
Keep only the fields we really need
What is the average speed for a 
given road segment? 
> db.linkData.aggregate( 
{ $match: { "_id" : /^20484097:/ } }, 
{ $project: { "data.speed": 1, segId: 1 } } , 
{ $unwind: "$data"}, 
{ $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } 
); 
{ "_id" : 20484097, "ave" : 47.067650676506766 } 
Loop over the array of data points
What is the average speed for a 
given road segment? 
> db.linkData.aggregate( 
{ $match: { "_id" : /^20484097:/ } }, 
{ $project: { "data.speed": 1, segId: 1 } } , 
{ $unwind: "$data"}, 
{ $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } 
); 
{ "_id" : 20484097, "ave" : 47.067650676506766 } 
Use the handy $avg operator
More Sophisticated Pipelines: 
average speed with variance 
{ "$project" : { 
mean: "$meanSpd", 
spdDiffSqrd : { 
"$map" : { 
"input": { 
"$map" : { 
"input" : "$speeds", 
"as" : "samp", 
"in" : { "$subtract" : [ "$$samp", "$meanSpd" ] } 
} 
}, 
as: "df", in: { $multiply: [ "$$df", "$$df" ] } 
} } } }, 
{ $unwind: "$spdDiffSqrd" }, 
{ $group: { _id: mean: "$mean", variance: { $avg: "$spdDiffSqrd" } } }
High Volume Data Feed (HVDF)
High Volume Data Feed (HVDF) 
• Framework for time series data 
• Validate, store, aggregate, query, purge 
• Simple REST API 
• Batch ingest 
• Tasks 
– Indexing 
– Data retention
High Volume Data Feed (HVDF) 
• Customized via plugins 
– Time slicing into collections, purging 
– Storage granularity of raw events 
– _id generation 
– Interceptors 
• Open source 
– https://github.com/10gen-labs/hvdf
Summary 
• Tailor your schema to your application workload 
• Bucketing/aggregating events will 
– Improve write performance: inserts  updates 
– Improve analytics performance: fewer document reads 
– Reduce index size  reduce memory requirements 
• Aggregation framework for analytic queries
Questions?

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MongoDB for Time Series Data: Setting the Stage for Sensor Management

  • 1. #MongoDBDays MongoDB for Time Series Data Mark Helmstetter @helmstetter Senior Solutions Architect, MongoDB
  • 2. What is Time Series Data?
  • 3. Time Series A time series is a sequence of data points, measured typically at successive points in time spaced at uniform time intervals. – Wikipedia 0 2 4 6 8 10 12 time
  • 4. Time Series Data is Everywhere • Financial markets pricing (stock ticks) • Sensors (temperature, pressure, proximity) • Industrial fleets (location, velocity, operational) • Social networks (status updates) • Mobile devices (calls, texts) • Systems (server logs, application logs)
  • 5. Example: MMS Monitoring • Tool for managing & monitoring MongoDB systems – 100+ system metrics visualized and alerted • 35,000+ MongoDB systems submitting data every 60 seconds • 90% updates, 10% reads • ~30,000 updates/second • ~3.2B operations/day • 8 x86-64 servers
  • 7. Time Series Data at a Higher Level • Widely applicable data model • Applies to several different "data use cases" • Various schema and modeling options • Application requirements drive schema design
  • 8. Time Series Data Considerations • Arrival rate & ingest performance • Resolution of raw events • Resolution needed to support – Applications – Analysis – Reporting • Data retention policies
  • 9. Data Retention • How long is data required? • Strategies for purging data – TTL Collections – Batch remove({query}) – Drop collection • Performance – Can effectively double write load – Fragmentation and Record Reuse – Index updates
  • 11.
  • 12.
  • 13. Develop Nationwide traffic monitoring system
  • 14. What we want from our data Charting and Trending
  • 15. What we want from our data Historical & Predictive Analysis
  • 16. What we want from our data Real Time Traffic Dashboard
  • 17. Traffic sensors to monitor interstate conditions • 16,000 sensors • Measure • Speed • Travel time • Weather, pavement, and traffic conditions • Minute level resolution (average) • Support desktop, mobile, and car navigation systems
  • 18. Other requirements • Need to keep 3 year history • Three data centers • VA, Chicago, LA • Need to support 5M simultaneous users • Peak volume (rush hour) • Every minute, each request the 10 minute average speed for 50 sensors
  • 20. Schema Design Goals • Store raw event data • Support analytical queries • Find best compromise of: – Memory utilization – Write performance – Read/analytical query performance • Accomplish with realistic amount of hardware
  • 21. Designing For Reading, Writing, … • Document per event • Document per minute (average) • Document per minute (second) • Document per hour
  • 22. Document Per Event { segId: "I495_mile23", date: ISODate("2013-10-16T22:07:38.000-0500"), speed: 63 } • Relational-centric approach • Insert-driven workload • Aggregations computed at application-level
  • 23. Document Per Minute (Average) { segId: "I495_mile23", date: ISODate("2013-10-16T22:07:00.000-0500"), speed_count: 18, speed_sum: 1134, } • Pre-aggregate to compute average per minute more easily • Update-driven workload • Resolution at the minute-level
  • 24. Document Per Minute (By Second) { segId: "I495_mile23", date: ISODate("2013-10-16T22:07:00.000-0500"), speed: { 0: 63, 1: 58, …, 58: 66, 59: 64 } } • Store per-second data at the minute level • Update-driven workload • Pre-allocate structure to avoid document moves
  • 25. Document Per Hour (By Second) { segId: "I495_mile23", date: ISODate("2013-10-16T22:00:00.000-0500"), speed: { 0: 63, 1: 58, …, 3598: 45, 3599: 55 } } • Store per-second data at the hourly level • Update-driven workload • Pre-allocate structure to avoid document moves • Updating last second requires 3599 steps
  • 26. Document Per Hour (By Second) { segId: "I495_mile23", date: ISODate("2013-10-16T22:00:00.000-0500"), speed: { 0: {0: 47, …, 59: 45}, …. 59: {0: 65, …, 59: 66} } } • Store per-second data at the hourly level with nesting • Update-driven workload • Pre-allocate structure to avoid document moves • Updating last second requires 59+59 steps
  • 27. Characterizing Write Differences • Example: data generated every second • For 1 minute: Document Per Event 60 writes Document Per Minute 1 write, 59 updates • Transition from insert driven to update driven – Individual writes are smaller – Performance and concurrency benefits
  • 28. Characterizing Read Differences • Example: data generated every second • Reading data for a single hour requires: Document Per Event 3600 reads Document Per Minute 60 reads • Read performance is greatly improved – Optimal with tuned block sizes and read ahead – Fewer disk seeks
  • 29. Characterizing Memory Differences • _id index for 1 billion events: Document Per Event ~32 GB • _id index plus segId and date index: • Memory requirements significantly reduced – Fewer shards – Lower capacity servers Document Per Minute ~.5 GB Document Per Event ~100 GB Document Per Minute ~2 GB
  • 31. Quick Analysis Writes – 16,000 sensors, 1 insert/update per minute – 16,000 / 60 = 267 inserts/updates per second Reads – 5M simultaneous users – Each requests 10 minute average for 50 sensors every minute
  • 32. Tailor your schema to your application workload
  • 33. Reads: Impact of Alternative Schemas Query: Find the average speed over the last ten minutes 10 minute average query Schema 1 sensor 50 sensors 1 doc per event 10 500 1 doc per 10 min 1.9 95 1 doc per hour 1.3 65 10 minute average query with 5M users Schema ops/sec 1 doc per event 42M 1 doc per 10 min 8M 1 doc per hour 5.4M
  • 34. Writes: Impact of alternative schemas 1 Sensor - 1 Hour Schema Inserts Updates doc/event 60 0 doc/10 min 6 54 doc/hour 1 59 16000 Sensors – 1 Day Schema Inserts Updates doc/event 23M 0 doc/10 min 2.3M 21M doc/hour .38M 22.7M
  • 35. Sample Document Structure { _id: ObjectId("5382ccdd58db8b81730344e2"), segId: "900006", date: ISODate("2014-03-12T17:00:00Z"), data: [ Compound, unique Index identifies the Individual document { speed: NaN, time: NaN }, { speed: NaN, time: NaN }, { speed: NaN, time: NaN }, ... ], conditions: { status: "Snow / Ice Conditions", pavement: "Icy Spots", weather: "Light Snow" } }
  • 36. Memory: Impact of alternative schemas 1 Sensor - 1 Hour Schema # of Documents Index Size (bytes) doc/event 60 4200 doc/10 min 6 420 doc/hour 1 70 16000 Sensors – 1 Day Schema # of Documents Index Size doc/event 23M 1.3 GB doc/10 min 2.3M 131 MB doc/hour .38M 1.4 MB
  • 37. Sample Document Structure Saves an extra index { _id: "900006:14031217", data: [ { speed: NaN, time: NaN }, { speed: NaN, time: NaN }, { speed: NaN, time: NaN }, ... ], conditions: { status: "Snow / Ice Conditions", pavement: "Icy Spots", weather: "Light Snow" } }
  • 38. Sample Document Structure { _id: "900006:14031217", data: [ { speed: NaN, time: NaN }, { speed: NaN, time: NaN }, { speed: NaN, time: NaN }, ... ], conditions: { status: "Snow / Ice Conditions", pavement: "Icy Spots", weather: "Light Snow" } } Range queries: /^900006:1403/ Regex must be left-anchored & case-sensitive
  • 39. Sample Document Structure { _id: "900006:140312", data: [ { speed: NaN, time: NaN }, { speed: NaN, time: NaN }, { speed: NaN, time: NaN }, ... ], conditions: { status: "Snow / Ice Conditions", pavement: "Icy Spots", weather: "Light Snow" } } Pre-allocated, 60 element array of per-minute data
  • 40. Analysis with The Aggregation Framework
  • 41. Pipelining operations Piping command line operations grep | sort | uniq
  • 42. Pipelining operations Piping aggregation operations $match | $group | $sort Stream of documents Result documents
  • 43. What is the average speed for a given road segment? > db.linkData.aggregate( { $match: { "_id" : /^20484097:/ } }, { $project: { "data.speed": 1, segId: 1 } } , { $unwind: "$data"}, { $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } ); { "_id" : 20484097, "ave" : 47.067650676506766 }
  • 44. What is the average speed for a given road segment? > db.linkData.aggregate( { $match: { "_id" : /^20484097:/ } }, { $project: { "data.speed": 1, segId: 1 } } , { $unwind: "$data"}, { $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } ); { "_id" : 20484097, "ave" : 47.067650676506766 } Select documents on the target segment
  • 45. What is the average speed for a given road segment? > db.linkData.aggregate( { $match: { "_id" : /^20484097:/ } }, { $project: { "data.speed": 1, segId: 1 } } , { $unwind: "$data"}, { $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } ); { "_id" : 20484097, "ave" : 47.067650676506766 } Keep only the fields we really need
  • 46. What is the average speed for a given road segment? > db.linkData.aggregate( { $match: { "_id" : /^20484097:/ } }, { $project: { "data.speed": 1, segId: 1 } } , { $unwind: "$data"}, { $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } ); { "_id" : 20484097, "ave" : 47.067650676506766 } Loop over the array of data points
  • 47. What is the average speed for a given road segment? > db.linkData.aggregate( { $match: { "_id" : /^20484097:/ } }, { $project: { "data.speed": 1, segId: 1 } } , { $unwind: "$data"}, { $group: { _id: "$segId", ave: { $avg: "$data.speed"} } } ); { "_id" : 20484097, "ave" : 47.067650676506766 } Use the handy $avg operator
  • 48. More Sophisticated Pipelines: average speed with variance { "$project" : { mean: "$meanSpd", spdDiffSqrd : { "$map" : { "input": { "$map" : { "input" : "$speeds", "as" : "samp", "in" : { "$subtract" : [ "$$samp", "$meanSpd" ] } } }, as: "df", in: { $multiply: [ "$$df", "$$df" ] } } } } }, { $unwind: "$spdDiffSqrd" }, { $group: { _id: mean: "$mean", variance: { $avg: "$spdDiffSqrd" } } }
  • 49. High Volume Data Feed (HVDF)
  • 50. High Volume Data Feed (HVDF) • Framework for time series data • Validate, store, aggregate, query, purge • Simple REST API • Batch ingest • Tasks – Indexing – Data retention
  • 51. High Volume Data Feed (HVDF) • Customized via plugins – Time slicing into collections, purging – Storage granularity of raw events – _id generation – Interceptors • Open source – https://github.com/10gen-labs/hvdf
  • 52. Summary • Tailor your schema to your application workload • Bucketing/aggregating events will – Improve write performance: inserts  updates – Improve analytics performance: fewer document reads – Reduce index size  reduce memory requirements • Aggregation framework for analytic queries

Editor's Notes

  1. Data produced at regular intervals, ordered in time. Want to capture this data and build an application.
  2. Need to clarify the new flavors of MMS?
  3. A special index type supports the implementation of TTL collections. TTL relies on a background thread in mongod that reads the date-typed values in the index and removes expired documents from the collection.
  4. Wind speed and direction sensor Antenna for communications Traffic speed and traffic count sensor Pan-tilt-zoom color camera Precipitation and visibility sensor Air temperature and Relative Humidity sensor Road surface temperature sensor and sub surface temperature sensor below pavement
  5. 511ny.org Many states have 511 systems, data provided by dialing 511 and/or via webapp
  6. Assumptions/requirements for what we're going to spec out for this imaginary time series application
  7. Should I axe the 3 data centers bullet since we don't go into replication?
  8. Use findAndModify with the $inc operator 63 mph average
  9. *** clarify 2nd to last bullet
  10. How did we get these numbers…db.collection.stats() totalIndexSize, indexSizes []
  11. Point out 1 doc per minute granularity, not per second 5M users performing 10 minute average
  12. Need to practice this
  13. Compound unique index on segId & date update field used to identify new documents for aggregation
  14. Need to redo these index sizes based on different data types for segId?