@rightfold Do you want to be able to manipulate it on disk, or just write it out, read it back in, and re-generate a similar hash table from what was stored? What sort of collision resolution are you using?
sigh I'm doing a few answers to up my rep and help out with questions and it looks like one of them was downvoted because my code-from-memory that had slightly incorrect syntax (or because the other answerer was protecting their answer). ...anyways, no big deal.
To what extent should I thoroughly research/validate an answer before posting in comparison to iteratively fleshing it out after posting?
@rightfold The question is whether you want to support manipulating the data as it exists on disk (like a database) or whether it's just a serialized form of a map--i.e., you manipulate data only in memory, and use the disk only to persist state between executions. Looked at slightly differently, might you need to store more data than will fit in memory at once?
@rightfold Are you set on writing your own, or are you willing to use existing code? Do you want a server process or code to embed into yours? Do you want high availability/distributed storage? Not to be a pest about it, but the number of variations is why there are ten zillion different key/value storage engines around.
@rightfold For a server process, I'd consider Ambry. Specifically designed for BLOB storage (i.e., chunks of immutable data). I don't know of any for embedding that's oriented specifically toward immutable data; my first choice would probably be Symas LMDB.
@ThePhD Show me the code that doesn't work for you.
Because there's no limit to 2 arguments or any other nonsense like that; functions are curried by the language (...that's how you stay sane in purely functional languages...).
I think I'm being haunted... Whenever I post an answer, a pedant interjects because although I conveyed the content of the answer, I failed to use the proper jargon in one sentence. I think I need a duck to overcome this reliably-consistent pedantry.
On one hand I understand the need to have concise, accurate terminology. On the other hand, many newbies don't have the capacity to learn from an answer which relies on this terminology. I'm not writing answers for the experts...
@ThePhD I'm serious - it's useless to senselessly fight with simple things when others want to help. You'll spend your fair share of time fighting with non-simple things we can't help you with, so please stop wasting your own time! :P
but then why is the red black tree given a rotation complexity of O(1)?
don't you need to search down to the insertion point for that too?
:33178940 ok but if the constant time gets washed out from the log time, then shouldn't the constant rotation of the red black also get washed out by it's equally log time complex search to the insertion point?
I guess I don't know anything about red blacks except they're balanced and BSTs. There must be a trick to get to the insertion point faster than in the AVL
Big O notation is reliant on how many elements are iterated. Generally, all operations carry a constant cost. For example, if each insertion takes 8 seconds, it is not reliant on the number of elements, thus it is a complexity of O(1); constant. It's a similar idea; 2 rotations is a constant cost. It won't change as you add more layers.
If I recall, red-black trees don't require searching because of the way they are partitioned. Hold on while I fact-check
@EwokNightmares No--traversal is just like in AVL. RB does insertions a little faster (and searches a little slower) because it tolerates the tree getting a little more out of balance so it typically doesn't re-balance as often.
@EwokNightmares This is comparing apples to oranges. For both, the worst case for any individual insertion is O(log N), and amortized complexity is O(N).
@EwokNightmares Yeah, no worries. It looks like the red-black tree can perform very efficiently in many cases, but has the same worst-case as an avl tree. Do note that insertion was a mistake; restoring red-black properties is what amortizes to O(1)
> I usually try to clear my doubts with youtube videos […]. COULD YOU RECOMMEND ME SOME VIDEOS TO INSTRUCT ME ON THE MATTER OR ANYTHING AT ALL REALLY? Thanks
@EwokNightmares At least in most cases, the tree itself has no notion of running out of space. You're normally allocating memory for the nodes from the heap. It's certainly possible to fragment the heap to the point that you can only allocate small pieces. Most garbage-collection based systems can (and will) compact the heap as part of garbage collection, preventing this problem.
It's supposed to be a frequently updated interval tree and only holds 5 bytes per element, and 3 of those bytes are the balance/max interval information that would be in a pointer based implementation too
so I only need to assign/clear a data pointer to copy the element
I remember looking into making vim understands template instantiation backtraces and being relatively disappointed by the compiler errors handling facilities. Now Rust has improved diagnostics that sometimes report more than one location per logical error and this may or may not affect rust.vim cc @R.MartinhoFernandes @sehe