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Scaling your Database in the Cloud
Spring2011
Presented by:Cory Isaacson, CEOCodeFutures Corporationhttp://www.dbshards.com
View the video of this presentation here!
Introduction
Who I am Cory Isaacson, CEO of CodeFutures Providers of dbShards Author of Software Pipelines
Partnerships: Rightscale
The leading Cloud Management Platform Leaders in database scalability, performance, and high-
availability for the cloud… …based on real-world experience with dozens of cloud-based
applications …social networking, gaming, data collection, mobile, analytics
Objective is to provide useful experience you can apply to scaling (and managing) your database tier… …especially for high volume applications
Challenges of cloud computing Cloud provides highly attractive service environment
Flexible, scales with need (up or down) No need for dedicated IT staff, fixed facility costs Pay-as-you-go model
Cloud services occasionally fail Partial network outages Server failures…
…by their nature cloud servers are “transient” Disk volume issues
Cloud-based resources are constrained CPU I/O Rates…
…the “Cloud I/O Barrier”
Typical Application Architecture
Scaling in the Cloud
Scaling Load Balancers is easy Stateless routing to app server Can add redundant Load Balancers if needed DNS round-robin or intelligent routing for larger sites If one goes down…
…failover to another Scaling Application Servers is easy
Stateless Sessions can easily transition to another server Add or remove servers as need dictates If one goes down…
…failover to another
Scaling in the Cloud
Scaling the Database tier is hard “Stateful” by definition (and necessity…) Large, integrated data sets…
10s of GBs to TBs (or more…) Difficult to move, reload
I/O dependent… …adversely affected by cloud service failures …and slow cloud I/O
If one goes down… …ouch!
Databases form the “last mile” of true application scalability Initially simple optimization produces the best result Implement a follow-on scalability strategy for long-term
performance goals… …plus a high-availability strategy is a must
All CPUs wait at the same speed…
The Cloud I/O Barrier
More Database scalability challenges
Databases have many other challenges that limit scalability ACID compliance…
…especially Consistency …user contention
Operational challenges Failover
Planned, unplanned Maintenance
Index rebuild Restore Space reclamation
Lifecycle Reliable Backup/Restore Monitoring Application Updates Management
Database slowdown is not linear…
0 5 10 15 20 25 30 35 400
2000
4000
6000
8000
10000
Database Load Curve
TimeExponential (Time)
Data File (GB)
Load T
ime
GB Load Time (Min)
.9 1
1.3 2.5
3.5 11.7
39.0 10 days…
Challenges apply to all types of databases
Traditional RDBMS (MySQL, Postgres, Oracle…) I/O bound Multi-user, lock contention High-availability Lifecycle management
NoSQL Databases In-memory, Caching, Document…) Reliability, High-availability Limits of a single server
…and a single thread Data dumps to disk Lifecycle Management
No matter what the technology, big databases are hard to manage… …elastic scaling is a real challenge …degradation from growth in size and volume is a certainty
Application-specific database requirements add to the challenge …database design is key… …balance performance vs. convenience vs. data size
The Laws of Databases
Law #1: Small Databases are fast… Law #2: Big Databases are slow… Law #3: Keep databases small
What is the answer?
Database sharding is the only effective method for achieving scale, elasticity, reliability and easy management… …regardless of your database technology
What is Database Sharding?
“Horizontal partitioning is a database design principle whereby rows of a database table are held separately... Each partition forms part of a shard, which may in turn be located on a separate database server or physical location.” Wikipedia
The key to Database Sharding…
Database Sharding Architecture
Database Sharding Architecture
Database Sharding… the results
Why does Database Sharding work?
Maximize CPU/Memory per database instance… …as compared to database size
Reduce the size of index trees Speeds writes dramatically
No contention between servers Locking, disk, memory, CPU
Allows for intelligent parallel processing… …Go Fish queries across shards
Keep CPUs busy and productive
Breaking the Cloud I/O Barrier
Database types
Traditional RDBMS Proven SQL language…
…although ORM can change that Durable, transactional, dependable…
…perceived as inflexible NoSQL
Typically in-memory… …the real speed advantage
Various flavors… Key/Value Store
Document database Hybrid Store complex documents using a key In-memory and disk based
Black box vs. Relational Sharding
Both utilize sharding on a data key… …typically modulus on a value or consistent hash
Black box sharding is automatic… …attempts to evenly shard across all available servers …no developer visibility or control …can work acceptably for simple, non-indexed NoSQL data
stores …easily supports single-row/object results
Relational sharding is defined by the developer… …selective sharding of large data …explicit developer control and visibility …tunable as the database grows and matures …more efficient for result sets and searchable queries …preserves data relationships
How Database Sharding works for NoSQL
Relational Sharding
Global Tables
Shard-Tree Root Table
Shard-Tree Child Tables
How Relational Sharding works
How Relational Sharding works Shard key recognition in SQL
SELECT * FROM customerWHERE customer_id = 1234
INSERT INTO customer(customer_id, first_name, last_name, addr_line1,…)VALUES(2345, ‘John’, ‘Jones’, ‘123 B Street’,…)
UPDATE customerSET addr_line1 = ‘456 C Avenue’WHERE customer_id = 4567
What about Cross-Shard result sets?
Cross-shard result set example Go Fish (no shard key)
SELECT country_id, count(*) FROM customerGROUP BY country_id
More on Cross-Shard result sets…
Black Box approach requires “scatter gather” for multi-row/object result set… …common with NoSQL engines …forces use of denormalized lists …must be maintained by developer/application code …Map Reduce processing helps with this (non-
realtime) Relational sharding provides access to
meaningful result sets of related data… …aggregation, sort easier to perform …logical search operations more natural …related rows are stored together
Make your Application Shard-Safe1 For sharding to be efficient, every sharded table should include
a shard key.
2 SELECT WHERE clause statements should include a shard key where possible so that the query goes directly to a single shard rather than being executed against multiple shards in parallel.
3 INSERT, UPDATE and DELETE WHERE CLAUSE statements must include a shard key so that the data is written to the correct shard.
4 Avoid cross-shard inner joins. For example, joining one customer to another is not feasible as both customers may be in different shards. This can be accomplished, but requires complex logic and can adversely affect performance.
What about High-Availability? Can you afford to take your databases offline:
…for scheduled maintenance? …for unplanned failure? …can you accept some lost transactions?
By definition Database Sharding adds failure points to the data tier
A proven High-Availability strategy is a must… …system outages…especially in the cloud …planned maintenance…a necessity for all
database engines
Traditional asynch replication is inadequate…
Replication “Lag” can result in lost transactions
No rapid failover for continuous operation
Maintenance difficult in production environments
Used by many NoSQL engines
Database Sharding and High-Availability
Need a minimum of 2 active-active instances per shard… …3 active-active instances for in-memory databases
Support for… …fail-down …failover …maintenance …automated backup/restore …monitoring
Database Sharding…elastic shards
Database Sharding…elastic shards Expand the number of shards…
…divide a single shard into N new shards …or rebalance existing shards across N new shards
Contract the number of shards… …consolidate N shards into a single shard
Due to large data sizes, this takes time… …regardless of data architecture
Requires High-Availability to ensure no downtime… …perform scaling on live replica in background …fail back to active instances
Database Sharding…the future Ability to leverage proven database engines…
…SQL …NoSQL …Caching
Hybrid database infrastructures using the best of all technologies In-memory and disk-based solutions co-existing
Allow developers to select the best database engine for a given set of application requirements… …seamless context-switching within the application …use the API of choice
Improved management… …monitoring …configuration “on-the-fly” …dynamic elastic shards based on demand
Database Sharding summary Database Sharding is the only effective tool for scaling
your database tier in the cloud… …or anywhere
Use Database Sharding for any type of engine… …SQL …NoSQL …Cache
Use the best engine for a given application requirement… …avoid the “one-size-fits-all” trap …each engine has its strengths to capitalize on
Ensure your High-Availability is proven and bulletproof… …especially critical on the cloud …must support failure and maintenance
Questions/Answers
Cory IsaacsonCodeFutures [email protected]://www.dbshards.com