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Advantages of stateless programming?

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Is stateless programming better?

One advantage of stateless functions is that they permit precalculation or caching of the function's return values. Even some C compilers allow you to explicitly mark functions as stateless to improve their optimisability. As many others have noted, stateless functions are much easier to parallelise.

What is the advantage of stateless Web service design?

Advantages of StatelessnessWeb services can treat each method request independently. Web services need not maintain the client's previous interactions. It simplifies the application design. As HTTP is itself a statelessness protocol, RESTful Web Services work seamlessly with the HTTP protocols.

What are some of the advantages of stateless cloud application development?

For a long time, stateless services have been the primary choice for developers. One of the reasons for using a stateless protocol is that it provides resiliency from failures, recovery strategies in the event of failures, and the option to scale processing capacity up and down to handle variances in traffic.

Is stateless better than stateful?

A. In most cases, stateless is a better option when compared with stateful. However, in the end, it all comes down to your requirements. If you only require information in a transient, rapid, and temporary manner, stateless is the way to go.


Read Functional Programming in a Nutshell.

There are lots of advantages to stateless programming, not least of which is dramatically multithreaded and concurrent code. To put it bluntly, mutable state is enemy of multithreaded code. If values are immutable by default, programmers don't need to worry about one thread mutating the value of shared state between two threads, so it eliminates a whole class of multithreading bugs related to race conditions. Since there are no race conditions, there's no reason to use locks either, so immutability eliminates another whole class of bugs related to deadlocks as well.

That's the big reason why functional programming matters, and probably the best one for jumping on the functional programming train. There are also lots of other benefits, including simplified debugging (i.e. functions are pure and do not mutate state in other parts of an application), more terse and expressive code, less boilerplate code compared to languages which are heavily dependent on design patterns, and the compiler can more aggressively optimize your code.


The more pieces of your program are stateless, the more ways there are to put pieces together without having anything break. The power of the stateless paradigm lies not in statelessness (or purity) per se, but the ability it gives you to write powerful, reusable functions and combine them.

You can find a good tutorial with lots of examples in John Hughes's paper Why Functional Programming Matters (PDF).

You will be gobs more productive, especially if you pick a functional language that also has algebraic data types and pattern matching (Caml, SML, Haskell).


Many of the other answers have focused on the performance (parallelism) side of functional programming, which I believe is very important. However, you did specifically ask about productivity, as in, can you program the same thing faster in a functional paradigm than in an imperative paradigm.

I actually find (from personal experience) that programming in F# matches the way I think better, and so it's easier. I think that's the biggest difference. I've programmed in both F# and C#, and there's a lot less "fighting the language" in F#, which I love. You don't have to think about the details in F#. Here's a few examples of what I've found I really enjoy.

For example, even though F# is statically typed (all types are resolved at compile time), the type inference figures out what types you have, so you don't have to say it. And if it can't figure it out, it automatically makes your function/class/whatever generic. So you never have to write any generic whatever, it's all automatic. I find that means I'm spending more time thinking about the problem and less how to implement it. In fact, whenever I come back to C#, I find I really miss this type inference, you never realise how distracting it is until you don't need to do it anymore.

Also in F#, instead of writing loops, you call functions. It's a subtle change, but significant, because you don't have to think about the loop construct anymore. For example, here's a piece of code which would go through and match something (I can't remember what, it's from a project Euler puzzle):

let matchingFactors =
    factors
    |> Seq.filter (fun x -> largestPalindrome % x = 0)
    |> Seq.map (fun x -> (x, largestPalindrome / x))

I realise that doing a filter then a map (that's a conversion of each element) in C# would be quite simple, but you have to think at a lower level. Particularly, you'd have to write the loop itself, and have your own explicit if statement, and those kinds of things. Since learning F#, I've realised I've found it easier to code in the functional way, where if you want to filter, you write "filter", and if you want to map, you write "map", instead of implementing each of the details.

I also love the |> operator, which I think separates F# from ocaml, and possibly other functional languages. It's the pipe operator, it lets you "pipe" the output of one expression into the input of another expression. It makes the code follow how I think more. Like in the code snippet above, that's saying, "take the factors sequence, filter it, then map it." It's a very high level of thinking, which you don't get in an imperative programming language because you're so busy writing the loop and if statements. It's the one thing I miss the most whenever I go into another language.

So just in general, even though I can program in both C# and F#, I find it easier to use F# because you can think at a higher level. I would argue that because the smaller details are removed from functional programming (in F# at least), that I am more productive.

Edit: I saw in one of the comments that you asked for an example of "state" in a functional programming language. F# can be written imperatively, so here's a direct example of how you can have mutable state in F#:

let mutable x = 5
for i in 1..10 do
    x <- x + i

Consider all the difficult bugs you've spent a long time debugging.

Now, how many of those bugs were due to "unintended interactions" between two separate components of a program? (Nearly all threading bugs have this form: races involving writing shared data, deadlocks, ... Additionally, it is common to find libraries that have some unexpected effect on global state, or read/write the registry/environment, etc.) I would posit that at least 1 in 3 'hard bugs' fall into this category.

Now if you switch to stateless/immutable/pure programming, all those bugs go away. You are presented with some new challenges instead (e.g. when you do want different modules to interact with the environment), but in a language like Haskell, those interactions get explicitly reified into the type system, which means you can just look at the type of a function and reason about the type of interactions it can have with the rest of the program.

That's the big win from 'immutability' IMO. In an ideal world, we'd all design terrific APIs and even when things were mutable, effects would be local and well-documented and 'unexpected' interactions would be kept to a minimum. In the real world, there are lots of APIs that interact with global state in myriad ways, and these are the source of the most pernicious bugs. Aspiring to statelessness is aspiring to be rid of unintended/implicit/behind-the-scenes interactions among components.


One advantage of stateless functions is that they permit precalculation or caching of the function's return values. Even some C compilers allow you to explicitly mark functions as stateless to improve their optimisability. As many others have noted, stateless functions are much easier to parallelise.

But efficiency is not the only concern. A pure function is easier to test and debug since anything that affects it is explicitly stated. And when programming in a functional language, one gets in the habit of making as few functions "dirty" (with I/O, etc.) as possible. Separating out the stateful stuff this way is a good way to design programs, even in not-so-functional languages.

Functional languages can take a while to "get", and it's difficult to explain to someone who hasn't gone through that process. But most people who persist long enough finally realise that the fuss is worth it, even if they don't end up using functional languages much.


Without state, it is very easy to automatically parallelize your code (as CPUs are made with more and more cores this is very important).


Stateless web applications are essential when you start having higher traffic.

There could be plenty of user data that you don't want to store on the client side for security reasons for example. In this case you need to store it server-side. You could use the web applications default session but if you have more than one instance of the application you will need to make sure that each user is always directed to the same instance.

Load balancers often have the ability to have 'sticky sessions' where the load balancer some how knows which server to send the users request to. This is not ideal though, for example it means every time you restart your web application, all connected users will lose their session.

A better approach is to store the session behind the web servers in some sort of data store, these days there are loads of great nosql products available for this (redis, mongo, elasticsearch, memcached). This way the web servers are stateless but you still have state server-side and the availability of this state can be managed by choosing the right datastore setup. These data stores usually have great redundancy so it should almost always be possible to make changes to your web application and even the data store without impacting the users.