Cache functionality comes in various flavours:
- memory-based, where a separate process on the server holds data in RAM (or overflows to disk) and you query it like you would a database; very efficient and powerful, and will have options to manage storage use and clear up after themselves, but requires setting up additional software on the server; e.g. memcached, redis
- file-based, where you just write the data to disk; less efficient, but can be implemented in "user-land" code, i.e. pure PHP; beware of filling up your disk with variant caches that have expired but not been cleaned up; many frameworks have an implementation of this built in
- database-backed, where you push data into an RDBMS (e.g. MySQL, PostgreSQL) or fully-featured NoSQL store (e.g. MongoDB); might make sense if you have a large amount of data, and can trade a bit of performance; as with files, you need to make sure that stale data is cleaned up
In each case, the basic idea is that you create a "key" that can tell one request from another (e.g. the name of the SOAP call and its input parameters, serialized), and pick a "lifetime" (how long you want to carry on using the same copy of the data). The caching engine or library then checks for a cache with that key, and if it is still within its "lifetime" returns the previously cached data. If there is a "cache miss" (there is no cache for that key, or it has expired), you perform the costly operation (in your case, the SOAP call) and save to the cache, using the same key.
You can do more complex things, like pre-caching things in the background so that there is never a cache miss, or having some code paths which accept stale data in order to return quickly, but these can generally be implemented on top of whatever you're using as the main caching solution.
Edit Another important decision is at what level of granularity to cache the data, in relation to processing it. At one extreme, you could cache each individual SOAP call: simple to set up, but means re-processing the same data repeatedly, and can cause problems if two responses are related, but cached independently and may get out of sync. At the other extreme, you can cache whole rendered pages: pages load very fast once cached, but creating variations based on the same data without repeating work becomes tricky. In between are various points in your code where you have processed and combined data into meaningful chunks: if your application is well-written, these are the input and output of major functions, or possibly even complete model objects; this is more work to implement, as you have to choose the right keys (avoiding two contexts overwriting each other's caches while ignoring variables that have no impact on the data in question) and values (avoiding repeats of costly work without having to store huge blobs of data which will be slow to unserialize and use up the capacity of your cache store). As with anything else, no approach suits all needs, and a complex application will probably involve caching at multiple levels for different purposes.