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From Cassandra's presentation slides (slide 2) link 1, alternate link:

scaling writes to a relational database is virtually impossible

I cannot understand this statement. Because when I shard my database, I am scaling writes isn't it? And they seem to claim against that.. does anyone know why isn't sharding a database scaling writes?

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What kind of scaling is important to address as well. –  user166390 Jul 12 '11 at 17:28
    
@pst please explain your comment. scaling means to have a higher availabity in the face of more data? –  totsum Jul 12 '11 at 17:58
    
Scalability -- Cassandra was explicitly designed around a distributed (Scale Horizontally) model. "Standard" relational databases generally tend to Scale Vertically. The fundamental approaches -- and guarantees -- are different. See Drop ACID and Think About Data. –  user166390 Jul 12 '11 at 18:18
    
And yes, sharding is a form of Horizontal Scaling. However it functions differently -- consider how it could implemented manually, for instance: running many different DB instances on different servers and determining which one to connect to as connection-time. –  user166390 Jul 12 '11 at 18:25

4 Answers 4

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The slowness of physical disk subsystems is usually the single greatest challenge to overcome when trying to scale a database to service a very large number of concurrent writers. But it is not "virtually impossible" to optimize writes to a relational database. It can be done. Yet there is a trade-off: when you optimize writes, selects of large subsets of logically related data usually are slower.

The writes of the primary data to disk and the rebalancing of index trees can be disk-intensive. The maintenance of clustered indexes, whereby rows that belong logically together are stored physically contiguous on disk, is also disk-intensive. Such indexes make selects (reads) quicker while slowing writes. A heavily indexed table does not scale well therefore, and the lower the cardinality of the index, the less well it scales.

One optimization aimed at improving the speed of concurrent writers is to use sparse tables with hashed primary keys and minimal indexing. This approach eliminates the need for an index on the primary key value and permits an immediate seek to the disk location where a row lives, 'immediate' in the sense that the intermediary of an index read is not required. The hashed primary key algorithm returns the physical address of the row using the primary key value itself-- a simple computation that requires no disk access.

The sparse table is exactly the opposite of storing logically related data so they are physically contiguous. In a sparse table, writers do not step on each others toes, so to speak. Writes are like raindrops falling on a large field not like a crowd of people on a subway platform trying to step into the train through a few open doors. The sparse table helps to eliminate write bottlenecks.

However, because logically related data are not physically contiguous, but scattered, the act of gathering all rows in a certain zipcode, say, is expensive. This sparse-table hashed-pk optimization is therefore optimal only when the predominant activity is the insertion of records, the update of individual records, and the lookup of data relating to a single entity at a time rather than to a large set of entities, as in, say, an order-entry system. A company that sold merchandise on TV and had to service tens of thousands of simultaneous callers placing orders would be well served by a system that used sparse tables with hashed primary keys. A national security database that relied upon linked lists would also be well served by this approach. Many social networking applications could also use it to advantage.

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While still true, SSDs on top of spindles is such a revolutionary change in terms of pure IOPS throughput for a given footprint/price-point. –  user166390 Jul 12 '11 at 18:29
    
Ok so sharding has it's limitations. Then what are the better alternatives that you suggest? –  totsum Jul 13 '11 at 8:24

Obviously this is their opinion, with StackOverflow here as an easy proof that you can scale relational writes to busy sites effectively.

NoSQL providers like Cassandra do make it much easier to scale to multiple servers, but this is not impossible with traditional databases, and scaling to multiple db servers is rarely necessary.

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i don't mean to down stackoverflow, but the traffic here is about 0.0001 times as much as the traffic at facebook –  totsum Jul 12 '11 at 17:57
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@tosum - You are not facebook. If you get .001 time the traffic here, that's a success. –  Joel Coehoorn Jul 12 '11 at 18:11
    
Did I hit a nerve or something? –  totsum Jul 13 '11 at 8:20
    
I wonder if StackOverflow have any suggestions how they managed to scale relational DB..or some presentation ? –  gyre Jul 19 '12 at 1:43
    
@gyre if you read through old blog posts and early meta posts, you can get kind of an idea: some careful denormalization, a big/fast server, a world-class DBA, good performance conscious developers and sys admins, and hand-written sql (no ORM). –  Joel Coehoorn Jul 19 '12 at 1:45

A sharded database is actually quite different to a normal SQL database. In a lot of ways it is more like a custom NoSQL system that just happens to use a database for storage. Unless your dataset consists of a lot of completely disconnected subsets, most queries more complex than get by ID won't work the same as they do on a single node database.

The other reason is that SQL writes tend to be fairly expensive due to the requirement for immediate consistency - the indexes that are required for decent read performance on a large database get updated as part of the write operation, and various constraints are checked. In systems designed for horizontal scalability these additional operations are usually either skipped entirely or performed separately from the write.

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In other words: NoSQL can sometimes be faster because you allow it to frequently return stale (wrong!) data. –  Joel Coehoorn Aug 8 '11 at 3:53

It is not. The slide is wrong (or at least the statement ought to be more carefully qualified when making such an apparently bold claim).

What it means is that some SQL-based products are not a good fit for some of those high scalability scenarios. To assume that any or all "relational databases" will have the same problems would be a gross over-generalisation. Unfortunately it's just the kind of over-generalisation that the No-SQL marketing crowd have become notorious for.

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