I'll try to answer your (big) question but not from Facebook point of view since their architecture is pretty much known.
First thing you have to know is that you would have to distribute the workload of your web application. Question is how, so in order to determine what's going to be slow, you have to divide your app in segments.
First up is the HTTP server, or the one that accepts all the requests. By going to "www.your-facebook.com", you're contacting a service on an IP. Naturally, you would probably have more than one IP but let's say you have a single entry point.
Now what happens? You have an HTTP server software, let's say Apache and it handles incoming connections. Since Apache creates a thread per connected user, it requires certain amount of memory for that operation. Eventually, it will run out of memory and then shit hits the fan, stuff stops working, your site is unavailable.
Therefore, you have to somehow scale this part of your application that connects your PHP code / MySQL db to people who want to interact with it.
Let's assume you successfully scaled your Apache and you have a cluster of computers which can accept new computers in order to scale-out. You solved your first problem.
Next part is the actual layer that does the work. Accepts input from the user and saves it somewhere (MySQL) and that's the biggest problem you'll have - why?
Due to the database.
Databases store their data on mediums such as hard drives. Hard drives, be it an SSD or mechanical one - are limited by their ability to write or retrieve data. If I'm not mistaken, RAM operates at levels of around 6GB/sec transfer rate. Not to mention that the seek time is also much much lower than HDD's one is.
Therefore, if you have an X amount of users asking for a piece of information and you can only deliver it at a certain rate - your app crashes, or it becomes unresponsive and the layer handling database queries becomes slow since the hardware cannot match the speed at which you need the data.
What are the options here? There are many, I won't mention all of them
Split Reads and Writes. Set your database layer in such a way that you have dedicated machines that write the data and completely different ones that read it. You have to use replication and replication has its own quirks - it never works without breaking.
Optimize handling of your data set by sharding your data. Great for read / write performance, screwed up when you need to query multiple shards and merge the data.
Get better hardware, especially storage (such as FusionIO)
Pay for better storage engine (such as TokuDB)
Alleviate load on the database by using caching. The data that your users request probably doesn't change so often that you have to query the db every single time (say you're viewing someone's profile, what's the chance they'll change it every second?). That's why Facebook uses Memcached extensively - a system that stores small pieces of data in RAM, it's easily scalable and what not. Most important, it's damn quick!
Use different solutions next to MySQL. MySQL (and some other databases) aren't good for every type of data storage or retrieval. Someone mentioned NoSQL before. NoSQL solutions are quick, but still immature. They don't do as much as relational databases do. They use methods of delaying disk write (they keep cached copy of data they need to write in RAM) so that they can achieve fast insert rates. That's why it's not unusual to lose data when using NoSQL.
Topic about MySQL vs "insert database or whatever here" is broad, I don't want to go into that but remember - every single one of data stores out there saves data on the hard drive eventually. The difference (physical of course) is how they optimize their flushing to the disk itself.
I also didn't mention various reports you can run by gathering the data (how many men between 19 and 21 have clicked an advert X between 01:15 and 13:37 CET and such) which is what Facebook is actually gathering (scary stuff!).
Third up - the language gluing the data store (MySQL) and output (HTTP server). PHP.
As you can see, most of the work here is already done by Apache and MySQL. Optimization on PHP level is small, even facebook got small results (they claim 50%, but that's UP TO 50%). I tried HipHop extensively, it is not as fast as it claims to be. Naturally, Facebook guys mentioned that already, so it's no wonder. The advantage they get is because they replaced Apache with their own server built in into HipHop. Some people claim "language X is better than language Y" and they're right, but that's not always the case. Each language has its own advantages and disadvantages.
For example, PHP is widely-spread but it's slow for certain operations (implementing a Trie with over 1 billion entries for example). It's great for things like echo some HTML after parsing the output from the db. It's quick to insert and retrieve data from the database, and that's about 90% of the PHP usage - talk to the db, display the data, end.
Therefore, no matter what language you use (say we used C++ instead of PHP), your bottleneck will be the data storage / retrieval layer.
On the other hand, why is using C++ NOT handy? Because there are more people who know how to use PHP than ones who use C++. It's also MUCH slower to develop web apps in C++. Sure, they will execute faster, but who will notice the difference between 1 millisecond and 1 microsecond?
This post is more like an informative blog post, I know it's not filled with resources to back up my claims but anyone who did any work with larger data sets or websites will know that the P.I.T.A. is always the data storage component. Some things that I said probably won't fit with everyone, but in a NUTSHELL this is how you'd go about optimizing your site.