In simple examples such as
> funs <- lapply(1:10, function(i) function() print(i)) > funs[]()  10 > funs[]()  10
it is possible to take such unintuitive behaviour into account.
However, I find myself frequently falling into this trap during daily development. I follow a rather functional programming style, which means that I often have a function A returning a function B, where B is in some way depending on the parameters with which A was called. The dependency is not as easy to see as in the above example, since calculations are complex and there are multiple parameters.
Overlooking such an issue leads to difficult to debug problems, since all calculations run smoothly - except that the result is incorrect. Only an explicit validation of the results reveals the problem.
What comes on top is that even if I have noticed such a problem, I am never really sure which variables I need to
force and which I don't.
How can I make sure not to fall into this trap? Are there any programming patterns that prevent this or that at least make sure that I notice that there is a problem?