I'm not agree with the answers I'm seeing, although it's true that NoSQL solutions tends to break the ACID rules, not all are created from that approach.
I think first you should define what is a SQL Solution and then you can put the "Not" in front of it, that will be more accurate definition of what is a NoSQL solution.
With this approach in mind:
SQL databases are a way to group all the data stores that are accessible using Structured Query Language as the main (and most of the time only) way to communicate with them, this means it requires that the database support the structures that are common to those systems like "tables", "columns", "rows", "relationships", etc.
Now, put the "Not" in front of the last sentence and you will get a definition of what means "NoSQL", NoSQL groups all the stores created as an attempt to solve problems which cannot fit into the table/column/rows structures, most of them means that these databases will not support relationships, they're abandoning the well known structures just because the problems has changed since their conception.
If you have a text file, and you create an API to store/retrieve/organize this information, then you have a NoSQL database in your hands.
All of these means that there are several solutions to store the information in a way that traditional SQL systems will not allow to achieve great performance, flexibility, etc etc. Every NoSQL provider tries to solve a different problem and that's why you wont be able to compare two different solutions, for example:
- djondb (http://djondb.com) is a document store created to be used as
NoSQL enterprise solution supporting transactions, consistency, etc.
but sacrifice performance of its counterparts.
- mongodb (http://www.mongodb.com) is a document store (similar to
djondb) which accomplish great performance but trades some of the
ACID properties to achieve this.
- couchdb (http://apache.couchdb.com) is another document store which
solves the queries slightly different providing views to retrieve the
information without doing a full query everytime.
As you may noticed I only talked about the document stores, that's because I want to show you that 3 different document stores implementation has different approaches and you should keep the golden rule of NoSQL stores "Use the right tool for the right job".
I'm the creator of djondb and I've been doing a lot of research before even trying to start my own NoSQL implementation.