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I'm working on a real-time advertising platform with a heavy emphasis on performance. I've always developed with MySQL, but I'm open to trying something new like MongoDB or Cassandra if significant speed gains can be achieved. I've been reading about both all day, but since both are being rapidly developed, a lot of the information appears somewhat dated.

The main data stored would be entries for each click, incremented rows for views, and information for each campaign (just some basic settings, etc). The speed gains need to be found in inserting clicks, updating view totals, and generating real-time statistic reports. The platform is developed with PHP.

Or maybe none of these?

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Cassandra and Mongo are quite different. You may want to decide which type of NoSQL solution fits your needs best. It seems like Document DBs are what you're after - so compare MongoDB, CouchDB and RavenDB and see which offers more features you like. – synhershko May 28 '11 at 23:03
I've been reading that Redis i "blazing fast" and good for statistics. Would using Redis in combination with MySQL be a good option? – James Simpson May 29 '11 at 14:51
Redis in combination with MySQL might be a good option but it depends on your data structures. Redis is a key/value store which may be more limited than some would like. I've also heard that MongoDB is better when you can't fit your data set in memory. If your data ultimately lands in MySQL that may not be an issue. See quora.com/… and blog.fedecarg.com/2011/01/25/… – Brian Lyttle May 30 '11 at 1:38
well Google uses Google F1, but use to use BigTable, which is called Apache HBase in the open source world. – Neil McGuigan Jan 23 '13 at 19:41
up vote 22 down vote accepted

There are several ways to achieve this with all of the technologies listed. It is more a question of how you use them. Your ideal solution may use a combination of these, with some consideration for usage patterns. I don't feel that the information out there is that dated because the concepts at play are very fundamental. There may be new NoSQL databases and fixes to existing ones, but your question is primarily architectural.

NoSQL solutions like MongoDB and Cassandra get a lot of attention for their insert performance. People tend to complain about the update/insert performance of relational databases but there are ways to mitigate these issues.

Starting with MySQL you could review O'Reilly's High Performance MySQL, optimise the schema, add more memory perhaps run this on different hardware from the rest of your app (assuming you used MySQL for that), or partition/shard data. Another area to consider is your application. Can you queue inserts and updates at the application level before insertion into the database? This will give you some flexibility and is probably useful in all cases. Depending on how your final schema looks, MySQL will give you some help with extracting the data as long as you are comfortable with SQL. This is a benefit if you need to use 3rd party reporting tools etc.

MongoDB and Cassandra are different beasts. My understanding is that it was easier to add nodes to the latter but this has changed since MongoDB has replication etc built-in. Inserts for both of these platforms are not constrained in the same manner as a relational database. Pulling data out is pretty quick too, and you have a lot of flexibility with data format changes. The tradeoff is that you can't use SQL (a benefit for some) so getting reports out may be trickier. There is nothing to stop you from collecting data in one of these platforms and then importing it into a MySQL database for further analysis.

Based on your requirements there are tools other than NoSQL databases which you should look at such as Flume. These make use of the Hadoop platform which is used extensively for analytics. These may have more flexibility than a database for what you are doing. There is some content from Hadoop World that you might be interested in.

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Good answer. Refine what you know before launching a whole new platform. Especially on a solid project (unless it's your money at risk.) – dkretz May 28 '11 at 17:21
MongoDB in fact is geared toward read performance. Continuous writes can block all read ops in MongoDB - there is no such thing as row level locking granularity - all locks are db wide and block other writes and reads. – Peter Aron Zentai Feb 3 '15 at 22:42

Nosql solutions are better than Mysql, postgresql and other rdbms techs for this task. Don't waste your time with Hbase/Hadoop, you've to be an astronaut to use it. I recommend MongoDB and Cassandra. Mongo is better for small datasets (if your data is maximum 10 times bigger than your ram, otherwise you have to shard, need more machines and use replica sets). For big data; cassandra is the best. Mongodb has more query options and other functionalities than cassandra but you need 64 bit machines for mongo. There are some works around for analytics in both sides. There is atomic counters in both sides. Both can scale well but cassandra is much better in scaling and high availability. Both have php clients, both have good support and community (mongo community is bigger).

Cassandra analytics project sample:Rainbird http://www.slideshare.net/kevinweil/rainbird-realtime-analytics-at-twitter-strata-2011

mongo sample: http://www.slideshare.net/jrosoff/scalable-event-analytics-with-mongodb-ruby-on-rails


doubleclick developers developed mongo http://www.informationweek.com/news/software/info_management/224200878

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Characteristics of MySQL:

  • Database locking (MUCH easier for financial transactions)
  • Consistency/security (as above, you can guarantee that, for instance, no changes happen between the time you read a bank account balance and you update it).
  • Data organization/refactoring (you can have disorganized data anywhere, but MySQL is better with tables that represent "types" or "components" and then combining them into queries).

Characteristics of Cassandra:

  • Speed
  • Availability (data is always available, regardless of being 100% "correct")
  • Optional fields (CAN be done in MySQL with meta tables etc., but it's for-free in Cassandra)
  • Simpler syntax

Cassandra is key-value or document-based storage. Think about what that means. TYPICALLY I give Cassandra ONE KEY and I get back ONE DATASET. It can branch out from there, but that's the basically what's going on. It's more like accessing a static file. Sure, you can have multiple indexes, counter fields etc. but I'm making a generalization. That's where Cassandra is coming from.

MySQL and SQL is based on group/set theory -- it has a way to combine ANY relationship between two tables. It's pretty easy to take a MySQL query, make the query a "key" and the response a "value" and store it into Cassandra. That might help explain the trade-off too, MySQL allows you to always rearrange or "re-query" the your datatables and the relationships between datasets. Cassandra not so much. And know that while Cassandra might PROVIDE features to do some of this stuff, it's not what it was built for.

MongoDB and CouchDB fit somewhere in the middle of those two extremes. I think MySQL can be a bit verbose and annoying to deal with especially when dealing with optional fields, and migrations if you don't have a good model or tools. Also with scalability, I'm sure there are great technologies for scaling a MySQL database, but Cassandra will always scale, and easily, due to limitations on its feature set. While MySQL is a bit more unbounded.

Also note that you can cache MySQL queries in a key-value store, using Cassandra but also something more like MemcacheD.

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This is the best answer. – FactualHarmony Nov 5 '15 at 13:13

I'd also like to add Membase (www.couchbase.com) to this list.

As a product, Membase has been deployed at a number of Ad Agencies (AOL Advertising, Chango, Delta Projects, etc). There are a number of public case studies and examples of how these companies have used Membase successfully.

While it's certainly up for debate, we've found that Membase provides better performance and scalability than any other solution. What we lack in indexing/querying, we are planning on more than making up for with the integration of CouchDB as our new persistence backend.

As a company, Couchbase (the makers of Membase) has a large amount of knowledge and experience specifically serving the needs of Ad/targeting companies.

Would certainly love to engage with you on this particular use case to see if Membase is the right fit.

Please shoot me an email (perry -at- couchbase -dot- com) or visit us on the forums: http://www.couchbase.org/forums/

Perry Krug

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I would look at New Relic as an example of a similar workload. They capture over 200 Billion data points a day to disk and are using MySQL 5.6 (Percona) as a backend.

A blog post is available here: http://blog.newrelic.com/2014/06/13/store-200-billion-data-points-day-disk/

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