I'm comfortable in the MySQL space having designed several apps over the past few years, and then continuously refining performance and scalability aspects. I also have some experience working with memcached to provide application side speed-ups on frequently queried result sets. And recently I implemented the Amazon SDB as my primary "database" for an ecommerce experiment.
To oversimplify, a quick justification I went through in my mind for using the SDB service was that using a schema-less database structure would allow me to focus on the logical problem of my project and rapidly accumulate content in my data-store. That is, don't worry about setting up and normalize all possible permutations of a product's attributes before hand; simply start loading in the products and the SDB will simply remember everything that is available.
Now that I have managed to get through the first few iterations of my project and I need to setup simple interfaces to the data, I am running to issues that I had taken for granted working with MySQL. Ex: grouping in select statements and limit syntax to query "items 50 to 100". The ease advantage I gained using schema free architecture of SDB, I lost to a performance hit of querying/looping a resultset with just over 1800 items.
Now I'm reading about projects like Tokyo Cabinet that are extending the concept of in-memory key-value stores to provide pseudo-relational functionality at ridiculously faster speeds (14x i read somewhere).
My question: Are there some rudimentary guidelines or heuristics that I as an application designer/developer can go through to evaluate which DB tech is the most appropriate at each stage of my project.
Ex: At a prototyping stage where logical/technical unknowns of the application make data structure fluid: use SDB. At a more mature stage where user deliverables are a priority, use traditional tools where you don't have to spend dev time writing sorting, grouping or pagination logic.
Practical experience with these tools would be very much appreciated.