While the only way to objectively answer this question is with performance tests, I will argue for using a Hashtable Map. (Caching and memory access can be so full of surprises; I do not have the expertise to speculate on which one will be faster, and when. Also consider that localized performance differences may be marginalized by other code.)
My first reason for "initially choosing" a hash is based off of the observation that there are 100M distinct keys but only 0.1M active records. This means that if using an array, index utilization will only be 0.1% - this is a very sparse array.
If the data is stored as values in the array then it needs to be relatively small or the array size will balloon. If the data is not stored in the array (e.g. array is of pointers) then the argument for locality of data in the array is partially mitigated. Either way, the simple array approach requires lots of unused space.
Since all the keys are already integers, the distribution (hash) function and can be efficiently implemented - there is no need to create a hash of a complex type/sequence so the "cost" of this function should approach zero.
So, my simple proposed hash:
- Use linear probing backed by contiguous memory. It is simple, has good locality (especially during the probe), and avoids needing to do any form of dynamic allocation.
- Pick a suitable initial bucket size; say, 2x (or 0.2M buckets, primed). Don't even give the hash a chance of resize. Note that this suggested bucket array size is only 0.2% the size of the simple array approach and could be reduced further as the size vs. collision rate can be tuned.
- Create a good distribution function for the hash. It can also exploit knowledge of the ID range.
While I've presented specialized hashtable rules "optimized" for the given case, I would start with a normal Map implementation (be it a hashtable or tree) and test it .. if a standard implementation works suitably well, why not use it?
Now, test different candidates under expected and extreme loads - and pick the winner.