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August 8, 2012




Cassandra at eBay
    Time left: 29m 59s




                     Jay Patel
                     Architect, Platform Systems
                     @pateljay3001
eBay Marketplaces
 97 million active buyers and sellers
 200+ million items
 2 billion page views each day
 80 billion database calls each day
 5+ petabytes of site storage capacity
 80+ petabytes of analytics storage capacity

                                                2
How do we scale databases?
 Shard
   – Patterns: Modulus, lookup-based, range, etc.
   – Application sees only logical shard/database
 Replicate
   – Disaster recovery, read availability/scalability
 Big NOs
   – No transactions
   – No joins
   – No referential integrity constraints
                                                        3
We like Cassandra
 Multi-datacenter (active-active)    Write performance
 Availability - No SPOF              Distributed counters
 Scalability                         Hadoop support



We also utilize MongoDB & HBase




                                                              4
Are we replacing RDBMS with NoSQL?

          Not at all! But, complementing.
 Some use cases don’t fit well - sparse data, big data, schema
  optional, real-time analytics, …
 Many use cases don’t need top-tier set-ups - logging, tracking, …




                                                                  5
A glimpse on our Cassandra deployment
 Dozens of nodes across multiple clusters
 200 TB+ storage provisioned
 400M+ writes & 100M+ reads per day, and growing
 QA, LnP, and multiple Production clusters




                                                    6
Use Cases on Cassandra
      Social Signals on eBay product & item pages
      Hunch taste graph for eBay users & items
      Time series use cases (many):
     Mobile notification logging and tracking
     Tracking for fraud detection
     SOA request/response payload logging
     RedLaser server logs and analytics

                                                    7
Served by
Cassandra




            8
Manage signals via “Your Favorites”




                                      Whole page is
                                      served by
                                      Cassandra




                                                9
Why Cassandra for Social Signals?
 Need scalable counters
 Need real (or near) time analytics on collected social data
 Need good write performance
 Reads are not latency sensitive




                                                                10
Deployment
                 User request has no datacenter affinity


                           Non-sticky load balancing




Topology - NTS           Data is backed up periodically
RF - 2:2                 to protect against human or
Read CL - ONE            software error
Write CL – ONE

                                                       11
Data Model
             depends on query patterns




                                         12
Data Model (simplified)




                          13
Wait…



                    Duplicates!




        Oh, toggle button!
        Signal --> De-signal --> Signal…
                                       14
Yes, eventual consistency!
One scenario that produces duplicate signals in UserLike CF:
   1. Signal
   2. De-signal (1st operation is not propagated to all replica)
   3. Signal, again (1st operation is not propagated yet!)



 So, what’s the solution? Later…

                                                                   15
Social Signals, next phase: Real-time Analytics
 Most signaled or popular items per affinity groups (category, etc.)
 Aggregated item count per affinity group



                                                     Example affinity group




                                                                              16
Initial Data Model for real-time analytics

                                               Items in an affinitygroup
                                               is physically stored
                                               sorted by their signal
                                               count




                           Update counters for both individual item
                           and all the affinity groups that item
                           belongs to
Deployment, next phase




Topology - NTS
RF - 2:2:2
user1       bid
                                  item1
        buy

item2         watch               sell
                        user2




                                          19
Graph in Cassandra
Event consumers listen for site events (sell/bid/buy/watch) & populate graph in Cassandra




   30 million+ writes daily                Batch-oriented reads
   14 billion+ edges already                (for taste vector updates)
                                                                                    20
 Mobile notification logging and tracking
 Tracking for fraud detection
 SOA request/response payload logging
 RedLaser server logs and analytics




                                             21
A glimpse on Data Model
RedLaser tracking & monitoring console




                                         23
That’s all about the use cases..
Remember the duplicate problem in Use Case #1?




  Let’s see some options we considered to solve this…
                                                    24
Option 1 – Make ‘Like’ idempotent for UserLike
 Remove time (timeuuid) from the composite column name:
    Multiple signal operations are now Idempotent
    No need to read before de-signaling (deleting)




    X            Need timeuuid for ordering!
                 Already have a user with more than 1300 signals   25
Option 2 – Use strong consistency

 Local Quorum
  – Won’t help us. User requests are not geo-load balanced
    (no DC affinity).
 Quorum
  – Won’t survive during partition between DCs (or, one of the
    DC is down). Also, adds additional latency.

              X      Need to survive!
                                                             26
Option 3 – Adapt to eventual consistency
If desire survival!




                                                                              27
                      http://www.strangecosmos.com/content/item/101254.html
Adjustments to eventual consistency
 De-signal steps:
      – Don’t check whether item is already signaled by a user, or not
      – Read all (duplicate) signals from UserLike_unordered (new CF to avoid reading
        whole row from UserLike)
      – Delete those signals from UserLike_unordered and UserLike




Still, can get duplicate signals or false positives as there is a ‘read before delete’.
To shield further, do ‘repair on read’.                  Not a full story!
                                                                                     28
Lessons & Best Practices
• Choose proper Replication Factor and Consistency Level.
    – They alter latency, availability, durability, consistency and cost.
    – Cassandra supports tunable consistency, but remember strong consistency is not free.
• Consider all overheads in capacity planning.
    – Replicas, compaction, secondary indexes, etc.
• De-normalize and duplicate for read performance.
    – But don’t de-normalize if you don’t need to.
• Many ways to model data in Cassandra.
    – The best way depends on your use case and query patterns.
                More on http://ebaytechblog.com?p=1308
Thank You
  @pateljay3001
  #cassandra12
                  30

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Cassandra at eBay - Cassandra Summit 2012

  • 1. August 8, 2012 Cassandra at eBay Time left: 29m 59s Jay Patel Architect, Platform Systems @pateljay3001
  • 2. eBay Marketplaces  97 million active buyers and sellers  200+ million items  2 billion page views each day  80 billion database calls each day  5+ petabytes of site storage capacity  80+ petabytes of analytics storage capacity 2
  • 3. How do we scale databases?  Shard – Patterns: Modulus, lookup-based, range, etc. – Application sees only logical shard/database  Replicate – Disaster recovery, read availability/scalability  Big NOs – No transactions – No joins – No referential integrity constraints 3
  • 4. We like Cassandra  Multi-datacenter (active-active)  Write performance  Availability - No SPOF  Distributed counters  Scalability  Hadoop support We also utilize MongoDB & HBase 4
  • 5. Are we replacing RDBMS with NoSQL? Not at all! But, complementing.  Some use cases don’t fit well - sparse data, big data, schema optional, real-time analytics, …  Many use cases don’t need top-tier set-ups - logging, tracking, … 5
  • 6. A glimpse on our Cassandra deployment  Dozens of nodes across multiple clusters  200 TB+ storage provisioned  400M+ writes & 100M+ reads per day, and growing  QA, LnP, and multiple Production clusters 6
  • 7. Use Cases on Cassandra Social Signals on eBay product & item pages Hunch taste graph for eBay users & items Time series use cases (many):  Mobile notification logging and tracking  Tracking for fraud detection  SOA request/response payload logging  RedLaser server logs and analytics 7
  • 9. Manage signals via “Your Favorites” Whole page is served by Cassandra 9
  • 10. Why Cassandra for Social Signals?  Need scalable counters  Need real (or near) time analytics on collected social data  Need good write performance  Reads are not latency sensitive 10
  • 11. Deployment User request has no datacenter affinity Non-sticky load balancing Topology - NTS Data is backed up periodically RF - 2:2 to protect against human or Read CL - ONE software error Write CL – ONE 11
  • 12. Data Model depends on query patterns 12
  • 14. Wait… Duplicates! Oh, toggle button! Signal --> De-signal --> Signal… 14
  • 15. Yes, eventual consistency! One scenario that produces duplicate signals in UserLike CF: 1. Signal 2. De-signal (1st operation is not propagated to all replica) 3. Signal, again (1st operation is not propagated yet!) So, what’s the solution? Later… 15
  • 16. Social Signals, next phase: Real-time Analytics  Most signaled or popular items per affinity groups (category, etc.)  Aggregated item count per affinity group Example affinity group 16
  • 17. Initial Data Model for real-time analytics Items in an affinitygroup is physically stored sorted by their signal count Update counters for both individual item and all the affinity groups that item belongs to
  • 19. user1 bid item1 buy item2 watch sell user2 19
  • 20. Graph in Cassandra Event consumers listen for site events (sell/bid/buy/watch) & populate graph in Cassandra  30 million+ writes daily  Batch-oriented reads  14 billion+ edges already (for taste vector updates) 20
  • 21.  Mobile notification logging and tracking  Tracking for fraud detection  SOA request/response payload logging  RedLaser server logs and analytics 21
  • 22. A glimpse on Data Model
  • 23. RedLaser tracking & monitoring console 23
  • 24. That’s all about the use cases.. Remember the duplicate problem in Use Case #1? Let’s see some options we considered to solve this… 24
  • 25. Option 1 – Make ‘Like’ idempotent for UserLike  Remove time (timeuuid) from the composite column name:  Multiple signal operations are now Idempotent  No need to read before de-signaling (deleting) X Need timeuuid for ordering! Already have a user with more than 1300 signals 25
  • 26. Option 2 – Use strong consistency  Local Quorum – Won’t help us. User requests are not geo-load balanced (no DC affinity).  Quorum – Won’t survive during partition between DCs (or, one of the DC is down). Also, adds additional latency. X Need to survive! 26
  • 27. Option 3 – Adapt to eventual consistency If desire survival! 27 http://www.strangecosmos.com/content/item/101254.html
  • 28. Adjustments to eventual consistency De-signal steps: – Don’t check whether item is already signaled by a user, or not – Read all (duplicate) signals from UserLike_unordered (new CF to avoid reading whole row from UserLike) – Delete those signals from UserLike_unordered and UserLike Still, can get duplicate signals or false positives as there is a ‘read before delete’. To shield further, do ‘repair on read’. Not a full story! 28
  • 29. Lessons & Best Practices • Choose proper Replication Factor and Consistency Level. – They alter latency, availability, durability, consistency and cost. – Cassandra supports tunable consistency, but remember strong consistency is not free. • Consider all overheads in capacity planning. – Replicas, compaction, secondary indexes, etc. • De-normalize and duplicate for read performance. – But don’t de-normalize if you don’t need to. • Many ways to model data in Cassandra. – The best way depends on your use case and query patterns. More on http://ebaytechblog.com?p=1308
  • 30. Thank You @pateljay3001 #cassandra12 30