In the past weeks I've been dealing with the same question; here's my observations:
- SQL Server works, but doesn't scale well. We've tested a SQL Server database of roughly 600GB of documents and let's just say things get very slow.
- More or less the same holds for MySQL... both are not really made for documents...
- Hadoop/HDFS doesn't appear to be mature on Windows. While Microsoft has a HDFS implementation available, it's still in the RC phase. On the positive side, if you're developing for the future (let's say 1 year to production), this seems to be a good choice.
- Apache Cassandra seems mature. On the positive, the implementation is very simple; that is: it's basically just a plain distributed key-value store with one partitioner, where both the key and value are a byte. However, the simpleness of the implementation also means you need to work around all kinds of issues. If you've worked with it, you know that it's brilliant if you need to implement Twitter, but too simple for just about anything else. It scales well, but to be honest I'm not too impressed with the performance. Further, I've encountered a couple of data inconsistencies/corruptions, which doesn't really warm my heart... If you use Cassandra, I would personally use Aquiles as client (because you will run into low-level stuff quite easily) - but FluentCassandra is a fine client too.
- MongoDB is quite mature as well. On the positive side, it's active and has a very good and easy to use (unlike Cassandra) C# client library. Further, although the shard server has crashed a couple of times on my cluster, recovery always did the trick (and I'm not too polite with restarts :-) and all the issues I encountered seem to be already solved in the development branch - so I'm not feeling uncomfortable about this. The most important thing that MongoDB has and Cassandra lacks is support for secondary indexes.
All these solutions are disk based (e.g. persistence on disk).
I looked at the code of 3-5 and implemented my own NoSQL solution in the past (about 6 years ago) that we've been using for data storage for the past years. To be honest, MongoDB is how I would have implemented it myself.
For completeness: the only thing that I haven't tried yet is CouchDB... but frankly I'm so happy with MongoDB that I won't even bother.