There is a great list of various NoSQL database platforms at http://nosql-database.org. It categorizes each as a "wide column store", "document store", "key-value store", or "graph store". What I'm not finding is guidance on how to choose which of those 3 categories is most appropriate for a given problem.

What are the pros/cons or strengths/weaknesses of each type?
Which classes of problems is each type best suited for?

To be clear, I'm asking about distinctions between these 3 types of NoSQL systems and not specific implementations of them.

3 Answers 3


There is a good article (though it doesn't go in depth) on this exact issue on the thoughtworks site.

And this visual guide is excellent as well

  • 1
    the thoughtworks article is just what i was looking for Apr 16, 2011 at 21:05

After searching around a bunch more, I found that the documentation for RavenDB (a document DB) has a very detailed (and seemingly unbiased) comparison of each of these options, how they work, and where they are most appropriate. For anyone else interested, read Chapter 1 of this document: https://s3.amazonaws.com/daily-builds/RavenDBMythology-11.pdf

  • 2
    Thanks Rob, even as an ongoing user of many NoSQL solutions I found the opening chapter of this document very insightful in selecting the type (not vendor) of NoSQL solution. Jan 21, 2014 at 22:42
  • That is a great resource, thanks
    – Ronnie
    Dec 25, 2016 at 11:10
  • Actually it's quite biased.
    – Jaksa
    Aug 8, 2017 at 14:31

I've asked similar questions (but no real duplicates):

  • I really like this blurb from that first link: "Column-family stores such as Bigtable and Cassandra have very limited querying capabilities. The application is responsible for maintaining indexes in order to query a more complex data model. Document databases allow you to query the content, not just the key. It will also manage the indexes for you, reducing the complexity of your application." Apr 16, 2011 at 21:01

Not the answer you're looking for? Browse other questions tagged or ask your own question.