Stored procedures are generally non-portable, meaning they are specific to a particular RDBMS. As a matter of fact, stored procedures tend to be specific to a particular VERSION of a particular RDBMS.
The development tools for the lifecycle of stored procedures tend to be very limited compared to the tools available for general programming languages/platforms. The tools are lacking in contextual help, in storage of the code, in debugging, in refactoring, etc.
The languages for writing stored procedures tend to be very limited compared to general programming languages/platforms. They tend to be procedural, lack many operations, lack most common APIs, and lack many syntax advances (classes, scope, etc.). This has changed somewhat with the introduction of Java into Oracle and .NET into SQL Server.
So, as a general rule, avoid writing stored procedures; writing your code in a general programming environment is more desirable. Use stored procedures when you need their particular advantages, which mainly means high-performance and/or tightly-isolated data processing. A typical system will then have maybe a stored procedure or two, but definitely not dozens to hundreds.
Please note that I am addressing enterprise-class development in-the-large. If you have a tiny application and a few toy stored procedures, then you can probably ignore everyone's advice. I am assuming that the question is being asked for non-trivial scenarios.
I have dealt with every significant RDBMS over a period of nearly twenty years. I have dealt with databases upto 138 TBs, and individual tables of 8 TBs. I have worked with systems exceeding one thousand SPs. I have converted such databases across major versions and across major vendors. I am an architect, DBA, and just a programmer. If you want the benefit of such experience, then here it is. If not, fair enough.
Nearly everything done in a stored procedure can be done by issuing comparable SQL statements from an application, particularly including anonymous procedure blocks (the guts of an SP without the name and permanence). Doing it well can avoid the problems and limitations of stored procedures while still retaining most of the benefits.
However, don't forget that bad code can be written in any language, so it is just as possible to write bad SP code as it is to write bad application code. Indeed, based on history and reports of observations in the wild, it seems even more likely to write bad SP code.
EDIT: @Chris Lively: regarding putting database code where the DBA can apply his tools...
Crippling your application development by using the DBA's limited tools is not an
advantage or a step forward, nor is it even necessary.
Besides that, having been a senior DBA/architect for about twenty years, I am not generally impressed with what most DBAs do with database code in the applications that they support. I have mentored a lot of DBAs and programmers regarding database code, so please let me describe what I encourage them to do.
Every DBA should know how to make the database engine show them every SQL statement that is executed, regardless of source (inside or outside the engine), and they should know how to analyze that SQL's performance characteristics. I recommend that every programmer learn to do the same. If you can do this, then it no longer matters where the SQL originated, so Chris' recommendation to put the SQL in a SP is null and void.
If the performance of your system matters, such as when several million customers depend on it every day, then you should be checking the performance of every piece of SQL before it gets deployed to production. I recommend doing so as part of the automated tests that can be run as a part of the automated build for the system.
For example, it is very easy to configure an Ant build script to issue each piece of SQL to the database engine for an execution plan analysis. I like to save each execution plan to a text file and commit it to source control, where I can readily see a history of changes. I also make the build script check the execution plan against some simple criteria to ensure that SQL changes have not altered or compromised the performance.
Likewise, I check all my SQL into source control, and I make it easily available both to my application (for execution) and to my build script (for verification). At a minimum, my build script for the database can recreate the entire structure from scratch, and I often make it capable of loading or transferring data as well.
Obviously, I can handle stored procedures, but they are just one tool among many. It is a mistake (an antipattern) to treat SPs as a Golden Hammer.
On the other hand, when the performance really matters, a stored procedure can often be the best and even the only option. For example, when I redesigned a database recently for a major telecommunications provider, a stored procedure was an essential part of the strategy. I was loading forty thousand data files per day, totaling forty million rows, into a single database table (8 TB) that was growing past two billion rows of current data. A public-facing web site accessed that data via a web service, which required pulling a handful of rows from those two billion within just a few seconds. This was done using Oracle 10g, a custom C application, external tables, some bulk data loading, and a stored procedure. However, most of the database code was still in the C application and the stored procedure handled just one specific, performance-intensive piece.
Finally, please allow me to add that I think that everyone needs to get over the idea that programmers and DBAs have to be separated, or that they do radically different jobs, or that one is inherently more difficult or superior than the other. A database, even a big RDBMS, is just another bit of functionality captured in a component with a published API. It is not rocket science, and it does not have to take long for anyone to learn and master, especially at a minimal level necessary to support most applications. I see no reason why most programmers cannot become decent DBAs, or vice-versa. Perhaps not everyone is willing or able to aspire to become an expert in either general programming or databases, but it certainly seems feasible for most everyone to be able to support themselves in both areas. That is especially true with recently-available tools like Python and SQLite.