Socialite, the Open Source Status Feed Part 1: Design Overview and Scaling for Infinite Content
Socialite, the Open Source Status Feed Part 2: Managing the Social Graph
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Transcript of Socialite, the Open Source Status Feed Part 2: Managing the Social Graph
Building a Social Platform with MongoDB
MongoDB IncDarren Wood & Asya Kamsky
#MongoDBWorld
Building a Social Platform
Part 2: Managing the Social Graph
Socialite
• Open Source• Reference Implementation
– Various Fanout Feed Models– User Graph Implementation– Content storage
• Configurable models and options• REST API in Dropwizard (Yammer)
– https://dropwizard.github.io/dropwizard/• Built-in benchmarking
https://github.com/10gen-labs/socialite
Architecture
Graph Service
Proxy
Cont
ent
Prox
y
Graph Data - Social
John Katefollows
Bob
followsPete
follows
follows
Graph Data - Social
John Katefollows
Bob
followsPete
follows
follows
Recommendation ?
Graph Data - Promotional
John Katefollows
Bob
follows Pete
follows
follows
follows
Acme Soda
Mention
Mention
Recommendation ?
Graph Data - Everywhere
• Retail
• Complex product catalogues
• Product recommendation engines
• Manufacturing and Logistics
• Tracing failures to faulty component batches
• Determining fallout from supply interruption
• Healthcare
• Patient/Physician interactions
Design Considerations
The Tale of Two Biebers
VS
The Tale of Two Biebers
VS
Follower Churn
• Tempting to focus on scaling content• Follow requests rival message send rates• Twitter enforces per day follow limits
Edge Metadata
• Models – friends/followers• Requirements typically start simple• Add Groups, Favorites, Relationships
Storing Graphs in MongoDB
Option One – Embedding Edges
Embedded Edge Arrays
• Storing connections with user (popular choice)Most compact formEfficient for reads
• However….– User documents grow– Upper limit on degree (document size)– Difficult to annotate (and index) edge
{ "_id" : "djw","fullname" : "Darren Wood","country" : "Australia","followers" : [ "jsr", "ian"],"following" : [ "jsr", "pete"]
}
Embedded Edge Arrays
• Creating Rich Graph Information– Can become cumbersome
{
"_id" : "djw","fullname" : "Darren Wood","country" : "Australia","friends" : [
{"uid" : "jsr", "grp" : "school"},{"uid" : "ian", "grp" : "work"} ]
} {
"_id" : "djw","fullname" : "Darren Wood","country" : "Australia","friends" : [ "jsr", "ian"],"group" : [ ”school", ”work"]
}
Option Two – Edge Collection
Edge Collections
• Document per edge
• Very flexible for adding edge data
> db.followers.findOne(){
"_id" : ObjectId(…),"from" : "djw","to" : "jsr"
}
> db.friends.findOne(){
"_id" : ObjectId(…),"from" : "djw","to" : "jsr","grp" : "work","ts" : Date("2013-07-10")
}
Operational issues
• Updates of embedded arrays– grow non-linearly with number of indexed array
elements
• Updating edge collection => inserts– grows close to linearly with existing number of
edges/user
Edge Insert Rate
Edge CollectionIndexing Strategies
Finding Followers
Consider our single follower collection :> db.followers.find({from : "djw"}, {_id:0, to:1}){
"to" : "jsr"}
Using index :
{"v" : 1,"key" : { "from" : 1, "to" : 1 },"unique" : true,"ns" : "socialite.followers","name" : "from_1_to_1"
}
Covered index when searching on "from" for all followers
Specify only if multiple edges cannot exist
Finding Following
What about who a user is following?Can use a reverse covered index :
{"v" : 1,"key" : { "from" : 1, "to" : 1 },"unique" : true,"ns" : "socialite.followers","name" : "from_1_to_1"
}{
"v" : 1,"key" : { "to" : 1, "from" : 1 },"unique" : true,"ns" : "socialite.followers","name" : "to_1_from_1"
}Notice the flipped field order here
Finding Following
Wait ! There is an issue with the reverse index….. SHARDING !
{"v" : 1,"key" : { "from" : 1, "to" : 1 },"unique" : true,"ns" : "socialite.followers","name" : "from_1_to_1"
}{
"v" : 1,"key" : { "to" : 1, "from" : 1 },"unique" : true,"ns" : "socialite.followers","name" : "to_1_from_1"
}
If we shard this collection by "from", looking up followers for a specific user is "targeted" to a shard
To find who the user is following however, it must scatter-gather the query to all shards
Dual Edge Collections
Dual Edge Collections When "following" queries are common
– Not always the case– Consider overhead carefully
Can use dual collections storing
– One for each direction– Edges are duplicated reversed– Can be sharded independently
Edge Query Rate ComparisonNumber of shards vsNumber of queries
Followers collectionwith forward and reverse indexes
Two collections, followers, followingone index each
1 10,000 10,000
3 90,000 30,000
6 360,000 60,000
12 1,440,000 120,000
Follower Counts
Can use the edge indexes :
How to determine these counts ?
> db.followers.find({_f : "djw"}).count()> db.following.find({_f : "djw"}).count()
However this can be heavy weight- Especially for rendering landing page- Consider maintaining counts on user document
Socialite User Service
• Manages user profiles and the follower graph• Supports arbitrary user data passthrough• Options for graph storage
– Uses edge collections (can shard by _f) – Options for maintaining separate follower/ing graphs– Storing counts vs counting
{"_id" : ObjectId("52cd1d32a0ee9a1a76d369bb"),"_f" : "jsr","_t" : "djw"
}{
"v" : 1,"key" : {"_f" : 1, "_t" : 1},"unique" : true,
}
Next up @ 11:50am : Scaling the Data Feed
• Delivering user content to followers
• Comparing fanout models
• Caching user timelines for fast retrieval
• Embedding vs Linking Content
Building a Social Platform with MongoDB
MongoDB IncDarren Wood & Asya Kamsky
#MongoDBWorld