When deciding about the best data structure for a task, there are three considersions:
- Functionality: Does the data structure provide the operations I need
- Performance: How fast are these operations
- Memory consumption: How much memory does the data structure use
The first consideration can be found by checking the interface of the datastructure, the second can only be measured in a benchmark. However, the third is quite simple if the data structure simply provides a method that calculates the memory it currently uses but hard otherwise.
STL data structures do not such method. But why? It would be very simple to implement such a method for all data structures in STL. For me as the client, it is quite hard to write such a method as I have to be familiar with the internal implementations. In addition, the implementations are hidden behind private members so I cannot access them at all.
So why were they left out? Right now, when choosing the data structure, many other implementations, like the currently released google btree implementation do provide these methods. It is easy to compare these data structures. However, when asking how a STL data structure would perform regarding memory consumption, everything I can basically do is guessing.
I cannot find any reasons why leaving out these methods could be a design decision. In addition, C++ is a language tuned for high performance and low memory footprint. Especially in such a language, I think that assessing the memory consumption of a data structure is a quite usual use case. So I can also not think that they were left out because nobody would use them. In addition, STL is also a quite mature library, so the reason should also not be that the library is just not elaborated enough for this. So what might be the reason for omitting these methods?