What are the main differences, advantages and disadvantages between static and dynamic data structures?

Under which categories do the most common data structures fall?

How could I know in which situation to use each?

up vote 16 down vote accepted

To start with an oversimplification:

There are just a few basic kinds of data structures: arrays, lists and trees. Everything else can be composed by using different types of these two structures (e.g. a hash table can be implemented with an array for the hash values and one list for each hash value to handle collisions).

Of these structures, arrays are static (i.e., their memory footprint does not vary over time as operations are performed on them) and everything else is dynamic (i.e., in the general case the memory footprint changes).

The differences between the two kinds of structures can be derived from the above:

  • Static needs the maximum size to be known in advance, while dynamic can adapt on the fly
  • Static does not reallocate memory no matter what, so you can have guaranteed memory requirements

There are also other differences, which however only come into play if your data might be sorted. I can't give an extensive list, as there are many dynamic data structures which exhibit different performance characteristics for different operations ("add", "remove", "find") and so they cannot be placed all under the same roof.

A very visible difference is that sorted arrays require moving (possibly a lot of) stuff around in memory for any operation other than "find", while dynamic structures generally perform less work.

So, to recap:

  1. If you need a guarantee on maximum memory usage, you have no option other than an array.
  2. If you have a hard upper limit for your data size, consider using an array. Arrays can be a good fit for problems which mainly require add/remove operations (keep the array unsorted) and for those which mainly require find operations (keep the array sorted), but not for both at the same time.
  3. If you do not have a hard upper limit, or if you require all of add/remove/find to be fast, use an appropriate kind of dynamic structure.

Edit: I did not mention graphs, another kind of dynamic data structure which arguably cannot be composed from simpler parts (by definition, a tree has exactly one link going "into" any node except the root, while graphs may have more than one). However, graphs cannot really be compared with other structures in a "what would be better to use" scenario, because you either need to use a graph or you do not (other structures may exhibit different performance, but in the end they all support the same set of operations).

  • 2
    At some level, a list is just a degenerate tree. You could say there are two kinds of data structures, blocked & node-based (and various hybrids of the two). – Drew Hall May 11 '10 at 20:46
  • Also, I disagree with 1). There's no reason you couldn't write a "BoundedList" class that would generate an error (or whatever) when you added element N + 1. But I agree that that's not exactly a fundamental data structure--more of a hack. – Drew Hall May 11 '10 at 20:49
  • @Drew: you are correct in both counts. To tell the truth, I started intending to write about 2 kinds of structures and leave trees and graphs out of it, but thought it certain that someone would correct me. Looks like you can't get around that :-). As for the bounded list, I think you will agree that someone at the level of knowledge implied by the original question has nothing to gain from being told this technicality. – Jon May 11 '10 at 21:02
  • You can build Graphs out of lists: A list of links between nodes and a list of Nodes. – Dan May 12 '10 at 2:29
  • well a class (or struct from c) is a pretty important static structure too. – Justin May 14 '10 at 2:53

Static data structures(SDS) are fixed sized (eg Arrays), the amount of memory once allocated to them cannot change on run time whereas Dynamic data structures(DDS)(eg Linked Lists) have flexible size , they can grow or shrink as needed to contain the data to be stored.

SDS are linear data structures which allow fast access to elements stored in them but the insertion/deletion operations are expensive compared to DDS where the access to the elements is slower but insertion/deletion is faster.

Most of the DS are Dynamic DS.

In case of SDS space is allocated before the actual data insertion so space may go wasted or may be insufficient some times so they should be used only in case the exact amount of data to be inserted is known in advance, if that is to be known at run time DDS should be used.

Its always vice-versa, if you go with static then you lose memory whereas in case of dynamic, performance will be decreased. A best design would use the data structures efficiently, there is no one perfect answer.

Simple tips

Dynamic data structures have the following characteristics:

  • Ability to efficiently add, remove or modify elements
  • Flexible size
  • Effective use of resources – because resources are allocated at the runtime, as required.
  • Slower access to elements (when compared with static data structures)

Static data structures have the following characteristics:

  • Add, remove or modify elements is not directly possible. If done, it is a resource consuming process.
  • Fixed size.
  • Resources allocated at creation of data structure, even if elements are not contain any value.
  • Faster access to elements (when compared with dynamic data structures)

To sum up, it is not effective to use dynamic structures to store a set of data that is known, not to change. Using static data structure in such case will save system resources and also provide faster access to elements. If the size of the data is known to change on the other hand, then use dynamic structures.

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