Scalability is a broad term is generally technology agnostic.
If during your design phase you decide, I know this application is going to support 100k users, but I'd like to be able to support up to 1 Million users without a need to refactor, then you generally want to approach IMHO this sort of scaling through a "hardware" approach. If you know your design can handle 100k users fine on 2 servers in a cluster, reaching 1 Million can be reached through hardware increases, PROVIDED the software solution delivering that 100k base is not poorly designed.
Distributed technologies are interesting and nice, but they do have overhead, and problems that come with them. Its not a big deal when your cluster only has 2 nodes, and you need a object from the other node, you know where that node is, and can go ask for it.. and that has a cost, but its usually not anything outrageous but when you scale that up to say now your cluster has 25 or 50 servers, getting that object, even if you have a nice container playing the traffic cop for it, can be an entirely different ball game.
Also, sad to say, but in the real world, management decision makers are often grossly technology ignorant, and tend to gravitate to the 9 women make a baby in a month mentality. Its a far easier battle for you to make, and for them honestly to comprehend to say, if you want that much more capacity we will need more hardware.. rather than well, it will need a complete refactor that could take 4-6 months.
With the hardware approach though, be well aware, its not infinite, there is overhead with every server you add to a cluster, and you do eventually reach the laws of diminishing returns.
My basic rule of thumb is as "neat" as it is to want to use all those fancy models that you read about, think long and hard to make sure they are the right solution, its very very easy to overarchitect a solution.