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NoSQL refers to non-relational data stores that break with the history of relational databases and ACID guarantees. Popular open source NoSQL data stores include:

  • Cassandra (tabular, written in Java, used by Cisco, WebEx, Digg, Facebook, IBM, Mahalo, Rackspace, Reddit and Twitter)
  • CouchDB (document, written in Erlang, used by BBC and Engine Yard)
  • Dynomite (key-value, written in Erlang, used by Powerset)
  • HBase (key-value, written in Java, used by Bing)
  • Hypertable (tabular, written in C++, used by Baidu)
  • Kai (key-value, written in Erlang)
  • MemcacheDB (key-value, written in C, used by Reddit)
  • MongoDB (document, written in C++, used by Electronic Arts, Github, NY Times and Sourceforge)
  • Neo4j (graph, written in Java, used by some Swedish universities)
  • Project Voldemort (key-value, written in Java, used by LinkedIn)
  • Redis (key-value, written in C, used by Craigslist, Engine Yard and Github)
  • Riak (key-value, written in Erlang, used by Comcast and Mochi Media)
  • Ringo (key-value, written in Erlang, used by Nokia)
  • Scalaris (key-value, written in Erlang, used by OnScale)
  • Terrastore (document, written in Java)
  • ThruDB (document, written in C++, used by JunkDepot.com)
  • Tokyo Cabinet/Tokyo Tyrant (key-value, written in C, used by Mixi.jp (Japanese social networking site))

I'd like to know about specific problems you - the SO reader - have solved using data stores and what NoSQL data store you used.

Questions:

  • What scalability problems have you used NoSQL data stores to solve?
  • What NoSQL data store did you use?
  • What database did you use prior to switching to a NoSQL data store?

I'm looking for first-hand experiences, so please do not answer unless you have that.

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+1: A great question given all the press NoSQL has been getting. –  Jim Ferrans Feb 23 '10 at 23:36
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How is this a bounty question? What constitutes a single correct answer to this question? –  bignose Feb 24 '10 at 22:47
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bignose: I view the bounty as my 550 reputation tip given to the person providing the most informative answer :-) –  knorv Feb 25 '10 at 14:24
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Don't forget solutions like GemStone/S - a Smalltalk object store. –  Randal Schwartz Mar 13 '10 at 0:08
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Don't miss OrientDB (orientechnologies.com) –  Lvca Apr 1 '11 at 15:41
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12 Answers 12

up vote 38 down vote accepted

I've switched a small subproject from MySQL to CouchDB, to be able to handle the load. The result was amazing.

About 2 years ago, we've released a self written software on http://www.ubuntuusers.de/ (which is probably the biggest German Linux community website). The site is written in Python and we've added a WSGI middleware which was able to catch all exceptions and send them to another small MySQL powered website. This small website used a hash to determine different bugs and stored the number of occurrences and the last occurrence as well.

Unfortunately, shortly after the release, the traceback-logger website wasn't responding anymore. We had some locking issues with the production db of our main site which was throwing exceptions nearly every request, as well as several other bugs, which we haven't explored during the testing stage. The server cluster of our main site, called the traceback-logger submit page several k times per second. And that was a way too much for the small server which hosted the traceback logger (it was already an old server, which was only used for development purposes).

At this time CouchDB was rather popular, and so I decided to try it out and write a small traceback-logger with it. The new logger only consisted of a single python file, which provided a bug list with sorting and filter options and a submit page. And in the background I've started a CouchDB process. The new software responded extremely quickly to all requests and we were able to view the massive amount of automatic bug reports.

One interesting thing is, that the solution before, was running on an old dedicated server, where the new CouchDB based site on the other hand was only running on a shared xen instance with very limited resources. And I haven't even used the strength of key-values stores to scale horizontally. The ability of CouchDB / Erlang OTP to handle concurrent requests without locking anything was already enough to serve the needs.

Now, the quickly written CouchDB-traceback logger is still running and is a helpful way to explore bugs on the main website. Anyway, about once a month the database becomes too big and the CouchDB process gets killed. But then, the compact-db command of CouchDB reduces the size from several GBs to some KBs again and the database is up and running again (maybe i should consider adding a cronjob there... 0o).

In a summary, CouchDB was surely the best choice (or at least a better choice than MySQL) for this subproject and it does its job well.

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I think I read somewhere that you could make couchdb do the compression automatically when the uncompressed data reached a certain level... –  Ztyx Mar 13 '10 at 0:51
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My current project actually.

Storing 18,000 objects in a normalised structure: 90,000 rows across 8 different tables. Took 1 minute to retrieve and map them to our Java object model, that's with everything correctly indexed etc.

Storing them as key/value pairs using a lightweight text representation: 1 table, 18,000 rows, 3 seconds to retrieve them all and reconstruct the Java objects.

In business terms: first option was not feasible. Second option means our app works.

Technology details: running on MySQL for both SQL and NoSQL! Sticking with MySQL for good transaction support, performance, and proven track record for not corrupting data, scaling fairly well, support for clustering etc.

Our data model in MySQL is now just key fields (integers) and the big "value" field: just a big TEXT field basically.

We did not go with any of the new players (CouchDB, Cassandra, MongoDB, etc) because although they each offer great features/performance in their own right, there were always drawbacks for our circumstances (e.g. missing/immature Java support).

Extra benefit of (ab)using MySQL - the bits of our model that do work relationally can be easily linked to our key/value store data.

Update: here's an example of how we represented text content, not our actual business domain (we don't work with "products") as my boss'd shoot me, but conveys the idea, including the recursive aspect (one entity, here a product, "containing" others). Hopefully it's clear how in a normalised structure this could be quite a few tables, e.g. joining a product to its range of flavours, which other products are contained, etc

Name=An Example Product
Type=CategoryAProduct
Colour=Blue
Size=Large
Flavours={nice,lovely,unpleasant,foul}
Contains=[
Name=Product2
Type=CategoryBProduct
Size=medium
Flavours={yuck}
------
Name=Product3
Type=CategoryCProduct
Size=Small
Flavours={sublime}
]
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What where the two databases in question (sql and NoSQL)? –  mavnn Feb 23 '10 at 9:22
    
Both were MySQL (I've edited my response to provide this info, I forgot it initially). Same DB, very different performance results from the SQL and NoSQL approaches. Very happy with key/value approach with MySQL. –  Brian Feb 23 '10 at 9:34
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Hi Brian, would it be possible to provide an example of the schema of your normalised structure and an example of the key-value pairs "schema"? We are also facing performance issues with a normalised structure and are currently considering two options: either denormalising our tables or moving towards a NoSQL data store. Due to the licensing and maintenance fees we are already paying, we would like to leverage on our current Oracle stack and therefore, are leaning towards a denormalised RDBMS solution. An example would be interesting! –  tth Feb 24 '10 at 14:42
    
@Brian: Since 4 of the examples are written IN java, which Java support features were missing or immature? I have no experience in this field, but that seems slightly surprising to me. –  Jimmy Feb 24 '10 at 19:41
    
tthong - not sure how to concisely include our normalised schema but I've added an example of how we store our content in a single text field. It's a little contrived, I've not been able to include a real example as my boss'd go ballistic so any "problems" with this "data model" are most likely for that reason. I would advise benchmarking both Oracle and some other solutions, but if your organisation has good Oracle expertise, DBAs, backups, etc, it could be a really good option to consider –  Brian Feb 24 '10 at 22:12
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Todd Hoff's highscalability.com has a lot of great coverage of NoSQL, including some case studies.

The commercial Vertica columnar DBMS might suit your purposes (even though it supports SQL): it's very fast compared with traditional relational DBMSs for analytics queries. See Stonebraker, et al.'s recent CACM paper contrasting Vertica with map-reduce.

Update: And Twitter's selected Cassandra over several others, including HBase, Voldemort, MongoDB, MemcacheDB, Redis, and HyperTable.

Update 2: Rick Cattell has just published a comparison of several NoSQL systems in High Performance Data Stores. And highscalability.com's take on Rick's paper is here.

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You should also read cacm.acm.org/magazines/2010/1/… –  a'r Feb 24 '10 at 17:19
    
@ar: Thanks, that's a good link. The Vertica folks have generated a fair amount of controversy. –  Jim Ferrans Feb 25 '10 at 13:38
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We moved part of our data from mysql to mongodb, not so much for scalability but more because it is a better fit for files and non-tabular data.

In production we currently store:

  • 25 thousand files (60GB)
  • 130 million other "documents" (350GB)

with a daily turnover of around 10GB.

The database is deployed in a "paired" configuration on two nodes (6x450GB sas raid10) with apache/wsgi/python clients using the mongodb python api (pymongo). The disk setup is probably overkill but thats what we use for mysql.

Apart from some issues with pymongo threadpools and the blocking nature of the mongodb server it has been a good experience.

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I apologize for going against your bold text, since I don't have any first-hand experience, but this set of blog posts is a good example of solving a problem with CouchDB.

CouchDB: A Case Study

Essentially, the textme application used CouchDB to deal with their exploding data problem. They found that SQL was too slow to deal with large amounts of archival data, and moved it over to CouchDB. It's an excellent read, and he discusses the entire process of figuring out what problems CouchDB could solve and how they ended up solving them.

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We've moved some of our data we used to store in Postgresql and Memcached into Redis. Key value stores are much better suited for storing hierarchical object data. You can store blob data much faster and with much less development time and effort than using an ORM to map your blob to a RDBMS.

I have an open source c# redis client that lets you store and retrieve any POCO objects with 1 line:

var customers = redis.Lists["customers"]; //Implements IList<Customer>
customers.Add(new Customer { Name = "Mr Customer" });

Key value stores are also much easier to 'scale-out' as you can add a new server and then partition your load evenly to include the new server. Importantly, there is no central server that will limit your scalability. (though you will still need a strategy for consistent hashing to distribute your requests).

I consider Redis to be a 'managed text file' on steroids that provides fast, concurrent and atomic access for multiple clients, so anything I used to use a text file or embedded database for I now use Redis. e.g. To get a real-time combined rolling error log for all our services (which has notoriously been a hard task for us), is now accomplished with only a couple of lines by just pre-pending the error to a Redis server side list and then trimming the list so only the last 1000 are kept, e.g:

var errors = redis.List["combined:errors"];
errors.Insert(0, new Error { Name = ex.GetType().Name, Message = ex.Message, StackTrace = ex.StackTrace});
redis.TrimList(errors, 1000);
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I have no first-hand experiences., but I found this blog entry quite interesting.

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I find the effort to map software domain objects (e.g. aSalesOrder, aCustomer...) to two-dimensional relational database (rows and columns) takes a lot of code to save/update and then again to instantiate a domain object instance from multiple tables. Not to mention the performance hit of having all those joins, all those disk reads... just to view/manipulate a domain object such as a sales order or customer record.

We have switched to Object Database Management Systems (ODBMS). They are beyond the capabilities of the noSQL systems listed. The GemStone/S (for Smalltalk) is such an example. There are other ODBMS solutions that have drivers for many languages. A key developer benefit, your class hierarchy is automatically your database schema, subclasses and all. Just use your object oriented language to make objects persistent to the database. ODBMS systems provide an ACID level transaction integrity, so it would also work in financial systems.

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I don't. I would like to use a simple and free key-value store that I can call in process but such thing doesn't exist afaik on the Windows platform. Now I use Sqlite but I would like to use something like Tokyo Cabinet. BerkeleyDB has license "issues".

However if you want to use the Windows OS your choice of NoSQL databases is limited. And there isn't always a C# provider

I did try MongoDB and it was 40 times faster than Sqlite, so maybe I should use it. But I still hope for a simple in process solution.

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A C# provider is mostly irrelevant, as these systems do NOT have an interface which looks anything like a conventional database (hence "NoSQL") so an ADO.NET interface would be a round peg into a square hole. –  MarkR Feb 21 '10 at 11:52
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Indeed you don't need an provider that implements the ADO.NET interface but you still need some kind of driver/provider to couple between the db and .NET . There is one for MongoDB but it isn't perfect yet. The exception handling for instance needs improvement. –  Theo Feb 23 '10 at 10:51
    
I have an open source c# client for redis @ code.google.com/p/servicestack/wiki/ServiceStackRedis it allows you to store 'typed POCOs' as text blobs and provides IList<T> and ICollection<T> interfaces for redis server-side lists and sets, etc. –  mythz Feb 28 '10 at 10:33
    
Have you tried RavenDB? –  NicoGranelli Mar 2 '11 at 19:49
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I used redis to store logging messages across machines. It was very easy to implement, and very useful. Redis really rocks

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We replaced a postgres database with a CouchDB document database because not having a fixed schema was a strong advantage to us. Each document has a variable number of indexes used to access that document.

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I switched from MySQL(InnoDB) to cassandra for a M2M system, which basically stores time-series of sensors for each device. Each data is indexed by (device_id,date) and (device_id,type_of_sensor,date). The MySQL version contained 20 millions of rows.

MySQL:

  • Setup in master-master synchronization. Few problem appeared around loss of synchronization. It was stressful and especially in the beginning could take hours to fix.
  • Insertion time wasn't a problem but querying required more and more memory as the data grew. The problem is the indexes are considered as a whole. In my case, I was only using a very thin parts of the indexes that were necessary to load in memory (only few percent of the devices were frequently monitored and it was on the most recent data).
  • It was hard to backup. Rsync isn't able to do fast backups on big InnoDB table files.
  • It quickly became clear that it wasn't possible to update the heavy tables schema, because it took way too much time (hours).
  • Importing data took hours (even when indexing was done in the end). The best rescue plan was to always keep a few copies of the database (data file + logs).
  • Moving from one hosting company to an other was really a big deal. Replication had to be handled very carefully.

Cassandra:

  • Even easier to install than MySQL.
  • Requires a lot of RAM. A 2GB instance couldn't make it run in the first versions, now it can work on a 1GB instance but it's not idea (way too many data flushes). Giving it 8GB was enough in our case.
  • Once you understand how you organize your data, storing is easy. Requesting is a little bit more complex. But once you get around it, it is really fast (you can't really do mistake unless you really want to).
  • If previous step was done right, it is and stays super-fast.
  • It almost seems like data is organized to be backuped. Every new data is added as new files. I personally, but it's not a good thing, flush data every night and before every shutdown (usually for upgrade) so that restoring takes less time, because we have less logs to read. It doesn't create much files are they are compacted.
  • Importing data is fast as hell. And the more hosts you have the faster. Exporting and importing gigabytes of data isn't a problem anymore.
  • Not having a schema is a very interesting thing because you can make you data evolve to follow your needs. Which might mean having different versions of your data at the same time on the same column family.
  • Adding a host was easy (not fast though) but I haven't done it on a multi-datacenter setup.

Note: I have also used elasticsearch (document oriented based on lucene) and I think it should be considered as a NoSQL database. It is distributed, reliable and often fast (some complex queries can perform quite badly).

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