MongoDB Schema Design: Four Real-World Examples

Post on 15-Apr-2017

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Perl Engineer & Evangelist, 10genMike Friedman

#MongoDBdays

Schema DesignFour Real-World Use Cases

Single Table En

Agenda• Why is schema design important• 4 Real World Schemas

– Inbox– History– Indexed Attributes– Multiple Identities

• Conclusions

Why is Schema Design important?

• Largest factor for a performant system• Schema design with MongoDB is

different• RDBMS – "What answers do I have?"• MongoDB – "What question will I have?"

#1 - Message Inbox

Let’s getSocial

Sending Messages

?

Design Goals• Efficiently send new messages to

recipients• Efficiently read inbox

Reading my Inbox

?

3 Approaches (there are more)• Fan out on Read• Fan out on Write• Fan out on Write with Bucketing

// Shard on "from"db.shardCollection( "mongodbdays.inbox", { from: 1 } )

// Make sure we have an index to handle inbox readsdb.inbox.ensureIndex( { to: 1, sent: 1 } )

msg = {from: "Joe",to: [ "Bob", "Jane" ],

sent: new Date(), message: "Hi!",

}

// Send a messagedb.inbox.save( msg )

// Read my inboxdb.inbox.find( { to: "Joe" } ).sort( { sent: -1 } )

Fan out on read

Fan out on read – Send Message

Shard 1 Shard 2 Shard 3

Send Message

Fan out on read – Inbox Read

Shard 1 Shard 2 Shard 3

Read Inbox

Considerations• One document per message sent • Reading an inbox means finding all

messages with my own name in the recipient field

• Requires scatter-gather on sharded cluster• Then a lot of random IO on a shard to find

everything

// Shard on “recipient” and “sent” db.shardCollection( "mongodbdays.inbox", { ”recipient”: 1, ”sent”: 1 } )

msg = {from: "Joe",to: [ "Bob", "Jane" ],

sent: new Date(), message: "Hi!",

}

// Send a messagefor ( recipient in msg.to ) {

msg.recipient = msg.to[recipient]db.inbox.save( msg );

}

// Read my inboxdb.inbox.find( { recipient: "Joe" } ).sort( { sent: -1 } )

Fan out on write

Fan out on write – Send Message

Shard 1 Shard 2 Shard 3

Send Message

Fan out on write– Read Inbox

Shard 1 Shard 2 Shard 3

Read Inbox

Considerations• One document per recipient• Reading my inbox is just finding all of the

messages with me as the recipient• Can shard on recipient, so inbox reads hit

one shard• But still lots of random IO on the shard

// Shard on “owner / sequence”db.shardCollection( "mongodbdays.inbox", { owner: 1, sequence: 1 } )db.shardCollection( "mongodbdays.users", { user_name: 1 } )

msg = {from: "Joe",to: [ "Bob", "Jane" ],

sent: new Date(), message: "Hi!",

}

Fan out on write with buckets

// Send a messagefor( recipient in msg.to) { count = db.users.findAndModify({

query: { user_name: msg.to[recipient] }, update: { "$inc": { "msg_count": 1 } }, upsert: true, new: true }).msg_count;

sequence = Math.floor(count / 50);

db.inbox.update({ owner: msg.to[recipient], sequence: sequence }, { $push: { "messages": msg } },{ upsert: true } );

}

// Read my inboxdb.inbox.find( { owner: "Joe" } ).sort ( { sequence: -1 } ).limit( 2 )

Fan out on write with buckets

Fan out on write with buckets• Each “inbox” document is an array of

messages• Append a message onto “inbox” of

recipient• Bucket inboxes so there’s not too many

messages per document• Can shard on recipient, so inbox reads hit

one shard• 1 or 2 documents to read the whole inbox

Fan out on write with buckets - Send

Shard 1 Shard 2 Shard 3

Send Message

Fan out on write with buckets - Read

Shard 1 Shard 2 Shard 3

Read Inbox

#2 – History

Design Goals• Need to retain a limited amount of history

e.g.– Hours, Days, Weeks– May be legislative requirement (e.g. HIPPA, SOX,

DPA)• Need to query efficiently by

– match– ranges

3 Approaches (there are more)• Bucket by Number of messages• Fixed size Array• Bucket by Date + TTL Collections

db.inbox.find() { owner: "Joe", sequence: 25, messages: [ { from: "Joe", to: [ "Bob", "Jane" ], sent: ISODate("2013-03-01T09:59:42.689Z"), message: "Hi!" }, …] }

// Query with a date rangedb.inbox.find ({owner: "friend1", messages: { $elemMatch: {sent:{$gte: ISODate("…") }}}})

// Remove elements based on a datedb.inbox.update({owner: "friend1" }, { $pull: { messages: { sent: { $gte: ISODate("…") } } } } )

Inbox – Bucket by # messages

Considerations• Shrinking documents, space can be

reclaimed with– db.runCommand ( { compact: '<collection>' } )

• Removing the document after the last element in the array as been removed– { "_id" : …, "messages" : [ ], "owner" : "friend1", "sequence" : 0 }

msg = { from: "Your Boss", to: [ "Bob" ],

sent: new Date(), message: "CALL ME NOW!"

}

// 2.4 Introduces $each, $sort and $slice for $pushdb.messages.update(

{ _id: 1 }, { $push: { messages: { $each: [ msg ],

$sort: { sent: 1 },

$slice: -50 }

} })

Maintain the latest – Fixed Size Array

Considerations• Need to compute the size of the array

based on retention period

// messages: one doc per user per daydb.inbox.findOne(){ _id: 1, to: "Joe", sequence: ISODate("2013-02-04T00:00:00.392Z"), messages: [ ] }// Auto expires data after 31536000 seconds = 1 yeardb.messages.ensureIndex( { sequence: 1 }, { expireAfterSeconds: 31536000 } )

TTL Collections

#3 – Indexed Attributes

Design Goal• Application needs to stored a variable

number of attributes e.g.– User defined Form– Meta Data tags

• Queries needed– Equality– Range based

• Need to be efficient, regardless of the number of attributes

2 Approaches (there are more)• Attributes as Embedded Document• Attributes as Objects in an Array

db.files.insert( { _id: "local.0", attr: { type: "text", size: 64, created: ISODate("..." } } )db.files.insert( { _id: "local.1", attr: { type: "text", size: 128} } )db.files.insert( { _id: "mongod", attr: { type: "binary", size: 256, created: ISODate("...") } } )// Need to create an index for each item in the sub-documentdb.files.ensureIndex( { "attr.type": 1 } )db.files.find( { "attr.type": "text"} )// Can perform range queriesdb.files.ensureIndex( { "attr.size": 1 } )db.files.find( { "attr.size": { $gt: 64, $lte: 16384 } } )

Attributes as a Sub-Document

Considerations• Each attribute needs an Index• Each time you extend, you add an index• Lots and lots of indexes

db.files.insert( {_id: "local.0", attr: [ { type: "text" },

{ size: 64 },

{ created: ISODate("...") } ] } )

db.files.insert( { _id: "local.1", attr: [ { type: "text" },

{ size: 128 } ] } )

db.files.insert( { _id: "mongod", attr: [ { type: "binary" },

{ size: 256 }, { created: ISODate("...") } ] } )

db.files.ensureIndex( { attr: 1 } )

Attributes as Objects in Array

Considerations• Only one index needed on attr• Can support range queries, etc.• Index can be used only once per query

#4 – Multiple Identities

Design Goal• Ability to look up by a number of

different identities e.g.• Username• Email address• FB Handle• LinkedIn URL

2 Approaches (there are more)• Identifiers in a single document• Separate Identifiers from Content

db.users.findOne(){ _id: "joe", email: "joe@example.com, fb: "joe.smith", // facebook li: "joe.e.smith", // linkedin other: {…}}

// Shard collection by _iddb.shardCollection("mongodbdays.users", { _id: 1 } )// Create indexes on each keydb.users.ensureIndex( { email: 1} )db.users.ensureIndex( { fb: 1 } )db.users.ensureIndex( { li: 1 } )

Single Document by User

Read by _id (shard key)

Shard 1 Shard 2 Shard 3

find( { _id: "joe"} )

Read by email (non-shard key)

Shard 1 Shard 2 Shard 3

find ( { email: joe@example.com } )

Considerations• Lookup by shard key is routed to 1 shard• Lookup by other identifier is scatter

gathered across all shards• Secondary keys cannot have a unique

index

// Create unique indexdb.identities.ensureIndex( { identifier : 1} , { unique: true} )

// Create a document for each users documentdb.identities.save( { identifier : { hndl: "joe" }, user: "1200-42" } )db.identities.save( { identifier : { email: "joe@abc.com" }, user: "1200-42" } )db.identities.save( { identifier : { li: "joe.e.smith" }, user: "1200-42" } )

// Shard collection by _iddb.shardCollection( "mydb.identities", { identifier : 1 } )// Create unique indexdb.users.ensureIndex( { _id: 1} , { unique: true} )// Shard collection by _iddb.shardCollection( "mydb.users", { _id: 1 } )

Document per Identity

Read requires 2 reads

Shard 1 Shard 2 Shard 3

db.identities.find({"identifier" : { "hndl" : "joe" }})

db.users.find( { _id: "1200-42"} )

Considerations• Lookup to Identities is a routed query• Lookup to Users is a routed query• Unique indexes available

Conclusion

Summary• Multiple ways to model a domain problem• Understand the key uses cases of your

app• Balance between ease of query vs. ease

of write• Random IO should be avoided

Perl Engineer & Evangelist, 10gen

Mike Friedman

#MongoDBdays

Thank You