What you are referring to is often called "key compression"*. There are several reasons why it hasn't been implemented:
- If you want it done, you can currently do it at the Application/ORM/ODM level quite easily.
- It's not necessarily a performance** advantage in all cases — think collections with lots of key names, and/or key names that vary wildly between documents.
- It might not provide a measurable performance** advantage at all until you have millions of documents.
- If the server does it, the full key names still have to be transmitted over the network.
- Compressing the entire JSON document
might offer offers an even better performance advantage.
Like all features, there's a cost benefit analysis for implementing it, and (at least so far) other features have offered more "bang for the buck".
Full document compression is
[being considered] for a future MongoDB version. available as of version 3.0 (see below)
* An in-memory lookup table for key names is basically a special case of LZW style compression — that's more or less what most compression algorithms do.
** Compression provides both a space advantage and a performance advantage. Smaller documents means that more documents can be read per IO, which means that in a system with fixed IO, more documents per second can be read.
MongoDB versions 3.0 and up now have full document compression capability with the WiredTiger storage engine.
Two compression algorithms are available: snappy, and zlib. The intent is for snappy to be the best choice for all-around performance, and for zlib to be the best choice for maximum storage capacity.
In my personal (non-scientific, but related to a commercial project) experimentation, snappy compression (we didn't evaluate zlib) offered significantly improved storage density at no noticeable net performance cost. In fact, there was slightly better performance in some cases, roughly in line with my previous comments/predictions.