Sounds like a good job for a prefix tree, you save space (over a hash table) when storing a large number of keys but you give up a bit on query speed.
The search will be log n and update will be 2 log n.
The following are the main advantages of tries over hash tables:
- Tries support ordered iteration, whereas iteration over a hash table will result in a pseudorandom order given by the hash function (and further affected by the order of hash collisions, which is determined by the implementation).
Tries facilitate longest-prefix matching, but hashing does not, as a consequence of the above. Performing such a "closest fit" find can, depending on implementation, be as quick as an exact find.
- Tries tend to be faster on average at insertion than hash tables because hash tables must rebuild their index when it becomes full - a very expensive operation. Tries therefore have much better bounded worst-case time costs, which is important for latency-sensitive programs.
- Since no hash function is used, tries are generally faster than hash tables for small keys.
- Looking up data in a trie is faster in the worst case, O(m) time,
compared to an imperfect hash table. An imperfect hash table can have
key collisions. A key collision is the hash function mapping of
different keys to the same position in a hash table. The worst-case
lookup speed in an imperfect hash table is O(N) time, but far more
typically is O(1), with O(m) time spent evaluating the hash.
- There are no collisions of different keys in a trie.
- Buckets in a trie which are analogous to hash table buckets that
store key collisions are necessary only if a single key is associated
with more than one value. There is no need to provide a hash function
or to change hash functions as more keys are added to a trie.
- A trie can provide an alphabetical ordering of the entries by key.
Tries do have some drawbacks as well:
- Tries can be slower in some cases than hash tables for looking up
data, especially if the data is directly accessed on a hard disk
drive or some other secondary storage device where the random-access
time is high compared to main memory.
- Some keys, such as floating point numbers, can lead to long chains
and prefixes that are not particularly meaningful. Nevertheless a
bitwise trie can handle standard IEEE single and double format
floating point numbers.
Trie on Wikipedia