What you ask is actually a pretty complicated problem.
First of all you need to decide whether mis-alignments in data are acceptable, for example: if you store in the database the number of Likes received, and you ask this number at 12:00:00, and the number in the DB is 500, and someone posts a LIKE at 12:00:01, and you query it again at 12:00:02; is it OK to receive "500" again, even if the correct number should be 501, provided that in a little time the answer "501" does come out?
If this is acceptable (the infamous "301 bug" in YouTube), then you might start caching some SELECT responses.
You might even cache them in middleware, i.e. have a special process running continuously and hogging ONE connection to MySQL, and answering requests in a queue. You might run it internally in the server as a Web server on port 8001 and have an Apache ReverseProxy, HAproxy, pound, or NginX location to proxy it outside.
You can do the same for special UPDATE/DELETE queries even if it's trickier.
It would be best to cache queries running asynchronously through AJAX first, if any, because serializing queries with a proxy is liable to perceptibly slow down the application.
You have a threefold target:
- run queries on MySQL as fast as possible (look into indexing and MySQL caching) in order to free the ConnectionPool and keep it as lightly loaded as possible.
- refactor the application in order to extract all information from queries (e.g., the number of rows with a certain property AND those rows as data are often retrieved using TWO queries, but with proper management you need only one and a SQLNumRows() call. Also, quite often similar queries with different informations are run, when a single query might have returned all information at one go: typically, one query to check user/password, another to fetch the complete user profile).
- divert the most calls possible to something not at all (NginX, middleware) or lightly (queuing process) bound to MySQL; in the latter case, using a known number of connections in order to run predictably.
Unfortunately there's no easy "magic bullet" to solve this problem (except of course increasing the number of connections, maybe replicating the DB on several hosts running as master-slave. While not really a magic bullet, it is easier to design and implement).