Download - Webinar: MongoDB Use Cases within the Oil, Gas, and Energy Industries

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Page 1: Webinar: MongoDB Use Cases within the Oil, Gas, and Energy Industries

MongoDB Usage withinOil, Gas, and Energy

Senior Account Executive / Solutions Architect, MongoDB Inc.

@hungarianhc ~ [email protected]

Kevin Hanson

#mongodb

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Agenda

• Common Themes in MongoDB Usage

• What is MongoDB?

• Use-Cases and Examples

• Thinking Ahead

• Questions

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Common Themes in MongoDB Usage

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Machine Generated Data

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Fast Moving Data

• Hundreds of thousands of records per second

• Fast response required

• Sometimes all data kept, sometimes just summary

• Horizontal scalability required

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Massive Amounts of Data

• Widely applicable data model

• Applies to several different “data use cases”

• Various schema and modeling options

• Application requirements drive schema design

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Data is Structured, but Varied…

• A machine generates a specific kind of data

• The data model is unlikely to change

• But there are so many different machines…

• Queryability across all types

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Time Series Data

• Event data written multiple times per second, minute, or hour

• Tracking progression of metrics over time

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What is MongoDB?

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MongoDB is a ___________ database

• Open source

• High performance

• Full featured

• Document-oriented

• Horizontally scalable

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Full Featured

• Dynamic (ad-hoc) queries

• Built-in online aggregation

• Rich query capabilities

• Traditionally consistent

• Many advanced features

• Support for many programming languages

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Document-Oriented Database

• A document is a nestable associative array

• Document schemas are flexible

• Documents can contain various data types (numbers, text, timestamps, blobs, etc)

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Horizontally Scalable (Add Shards)

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Replication Within a ShardEnabling Global Deployments

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Use-Case: Oil Rig Data Analysis

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3 Points of Data Creation / Collection

Rig Site(Middle of the

Ocean)

Regional Center

(Nearby Continent)

Headquarters(Texas? )

Day Level Data

Hour Level Data

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MongoDB on all 3 Sites

Rig Site(Middle of the

Ocean)

Regional Center

(Nearby Continent)

Headquarters(Texas? )

Day Level Data

Hour Level Data

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MongoDB on the Rig

{

machine-id: “derrick-72”,

utilization-rate: 92,

depth: 172,

ts: ISODate("2013-10-16T22:07:38.000-0500")

}

• Queried and analyzed by on-site rig personnel

• High volume data with real-time response

• Aggregations compute high level statistics

• Statistics are transmitted to regional center

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MongoDB at the Regional Center{

rig-id: “gulf-1a23v”,

machine-failures: 0,

efficiency: 82,

ts: ISODate("2014-07-13T22:12:21.000-0800")

}

• Monitoring important statistics from multiple rigs

• Aggregating rig data to report regional data to headquarters

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MongoDB at the Regional Center

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MongoDB at Headquarters

{

region: “Pacific”,

total-rigs: 82,

producing-rigs: 77,

barrels: 44000,

ts: ISODate("2014-07-13")

}

• Regional views of the data

• Real-time stats

• Integration with hadoop for large batch processing jobs

{

region: “Atlantic”,

total-rigs: 102,

producing-rigs: 95,

barrels: 97000,

ts: ISODate("2014-07-13")

}

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Powered by MongoDB Replication & the Oplog

> db.replsettest.insert({_id:1,value:1})

{ "ts" : Timestamp(1350539727000, 1), "h" : NumberLong("6375186941486301201"), "op" : "i", "ns" : "test.replsettest", "o" : { "_id" : 1, "value" : 1 } }

> db.replsettest.update({_id:1},{$inc:{value:10}})

{ "ts" : Timestamp(1350539786000, 1), "h" : NumberLong("5484673652472424968"), "op" : "u", "ns" : "test.replsettest", "o2" : { "_id" : 1 }, "o" : { "$set" : { "value" : 11 } } }

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Use-Case: Predictive Energy Network Analysis

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Maintaining a Power Grid

Expensive Last Minute Resource Allocation

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Use Data to Help Predict the Future

• Weather Radar Data

• Climate Models

• Syslog Data from Power Generating Entities

• Geotagged Meter Usage

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Sensor Data

• Straightforward to store in MongoDB documents

• With strategic document design, a single server can save hundreds of thousands of sensor reads per second

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Data Updates

• Single update required to add new data and increment associated counts

db.sf-meter.update( { timestamp_minute: ISODate("2013-10-10T23:06:00.000Z"), type: “richmond-district” }, { {$set: {“values.59”: 2000000 }}, {$inc: {num_samples: 1, total_samples: 2000000 }} })

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Data Management

• Data stored at different granularity levels for read performance

• Collections are organized into specific intervals

• Retention is managed by simply dropping collections as they age out

• Document structure is pre-created to maximize write performance

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Aggregation Framework

• MongoDB has a built-in Aggregation Framework that supports ad-hoc analysis tasks over data sets

• “What counties had the highest average power utilization bracketed daily?”

• “Which meters have the most surge problems per week?”

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Pre-Aggregated Log Data{ timestamp_minute: ISODate("2000-10-10T20:55:00Z"), resource: ”sensor-5a3524s", usage-values: { 0: 50, … 59: 250 }}

• Leverage time-series style bucketing

• Track individual metrics

• Improve performance for reads/writes

• Minimal processing overhead

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MongoDB Makes Sense

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Massive Amounts of Data

• Commodity Storage

• Add Nodes for Scale

• No SAN Needed

• MongoDB Replication for HA

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High Performance

• Massive Write Scale

• Massive Read Scale

• Real-Time Response

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Flexible Data Model

• A single sensor isn’t likely to change its data model…

• But what about the other sensors?

• Dynamic schema is a necessity

• Easily drop collections for data management

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Lower Total Cost of Ownership

• Open Source vs. Proprietary

• Commodity Hardware

• Reduced Development Time

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Questions?

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Resources

• Schema Design for Time Series Data in MongoDBhttp://blog.mongodb.org/post/65517193370/schema-design-for-time-series-data-in-mongodb

• Operational Intelligence Use Casehttp://docs.mongodb.org/ecosystem/use-cases/#operational-intelligence

• Data Modeling in MongoDBhttp://docs.mongodb.org/manual/data-modeling/

• Schema Design (webinar)http://www.mongodb.com/events/webinar/schema-design-oct2013