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Learning from React - part 3

Costin Manda
Romanian .NET C# developer for 20 years+.
Originally published at siderite.dev on ・8 min read

Original post at: https://siderite.dev/blog/learning-from-react---part-3/

Learning from React series:
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  • Part 1 - why examining React is useful even if you won't end up using it
  • Part 2 - what Facebook wanted to do with React and how to get a grasp on it
  • Part 3 (this one) - what is Reactive Programming all about?

The name React is already declaring that it is used in reactive programming, but what is that? Wikipedia is defining it as "a declarative programming paradigm concerned with data streams and the propagation of change". It expands on that to say that it declares the relationship between elements and updates them when either change. You can easily imagine a graph of elements magically updating as any of them changes. However, the implementation details of that magic matter.

In 2011 Microsoft revealed a free .Net library called Reactive Extensions, or ReactiveX or RX. It was based on a very interesting observation that the observer/observable patterns are the mirror images of iterator/iterable. When the iterator moves through an iterable, the observer reacts to events in the observable; one is imperative, the other reactive. The library was so popular that it was immediately adopted for a bunch of programming languages, including Javascript. It also allowed for operations traditionally used for arrays and collections to work with a similar syntax on observables. This is a great example of reactive programming because instead of deciding when to perform a data access (and having to check if it is possible and everything is in range and so on), the code would just wait for something to happen, for an event that provided data, then act on the data.

One might argue that Verilog, a hardware description language, is also reactive, as it is based on actions being performed on certain events and it even uses non-blocking assignments, which are like declarations of state change which happen at the same time. Reminds me of the way React is implementing state management.

Of course, reactive programming is also modern UI and when I say modern, I mean everything in the last twenty years. Code gets executed when elements in the user interface change state: on click, on change, on mouse move, on key press etc. That is why, the developers at Facebook argue, browser based UI programming should be reactive at the core. This is not new, it's something you might even be already very familiar with in other contexts. Code that is triggered by events is also called event-driven programming.

But at the same time, others also claim their software is reactive. Microservices are now very fashionable. The concept revolves around organizing your product into completely independent modules that only have one external responsibility, which then one wires together via some sort of orchestrator. The biggest advantage of this is obviously separation of concerns, a classic divide and conquer strategy generalized over all software, but also the fact that you can independently test and deploy each microservice. You don't even have to shut down running ones or you can start multiple instances, perhaps with multiple versions and in different locations. This is also distributed programming. The way the communication between microservices is done is usually via some sort of message queue, like Rabbit MQ, but I am working on a really old software, written like 15 years ago, which uses IBM MQ to communicate between different portions of the software - let's call them macroservices :) Well, this is supposed to be reactive programming, too, because the microservices are reacting to the messages arriving on the queue and/or sent from others.

The observer pattern is old, it's one of the patterns in the original design patterns book Design Patterns: Elements of Reusable Object-Oriented Software, which started the software design pattern craze which rages on even now. Anybody who ever used it extensively in their software can (and many do) claim that they did reactive programming. Then there is something called the actor model (which will probably confuse your Google if you search for it), which is actually a mathematical concept and originated in 1973! Implementations of actors are eerily similar to the microservices concept from above.

And speaking of events, there is another pattern that is focusing on declaring the flow of changes from a given state, given an event. It's called a state machine. It also boasts separation of concerns because you only care about what happens in any state in case of an event. You can visualize all the possible flows in a state machine, too, as names arrows from any state to another, given that such a transition is defined. The implementation of the state machine engine is irrelevant as long as it enables these state transitions as defined by the developer.

Everything above, and probably some other concepts that are named differently but kind of mean the same thing, is reactive programming. Let me give you another example: a method or a software function. Can one say it is reactive? After all, it only executes code when you call it! Couldn't we say that the method reacts to an event that contains the parameters the method needs? What about Javascript, which is designed to be single threaded and where each piece of code is executed based on a queue of operations? Isn't it a reactive programming language using an event bus to determine which actions to perform?

And that's the rub. The concept of reactivity is subjective and generally irrelevant. The only thing that changes and matters is the implementation of the event transport mechanism and the handling of state.

In a traditional imperative program we take for granted that the execution of methods will be at the moment of the call and that all methods on that thread will be executed one after the other and that setting a value in memory is atomic and can be read immediately after by any other piece of code and you can even lock that value so it is only read by one entity at a time. Now imagine that you are writing the same program, only we can't make the assumptions above. Calling methods can result in their code getting executed at an arbitrary time or maybe not at all. Whatever you change in a method is only available to that method and there is no way for another method to read the values from another. The result? Your code will take a lot of care to maintain state locally and will start to look more like a state machine, modelling transitions rather than synchronous flows. The order of operations will also be ensured by consuming and emitting the right sort of events. Permanent and/or shared storage will become the responsibility of some of the modules and the idea of "setting data" will become awkward. Keeping these modules in sync will become the greatest hurdle.

That's all it is! By eliminating assumptions about how your code is executed, the result is something more robust, more generic, more compartmentalized. Is it the golden hammer that will solve all problems? Of course it isn't. We've seen how the concepts at the core of reactive programming have been there since forever. If that was the best way, everybody would already be working like that. The biggest problems of this kind of thinking are resource duplication, as everybody has to keep all the data they use locally, and synchronization, as one cannot assume there exists any source of absolute truth that can be accessed by all at the same time. Debugging the system also becomes a bit complicated.

This post has reached already a big size and I haven't even touched on functional programming and how it tries to solve... well, everything. I will do that in the next chapter. I have to say that I find the concept of a programming language that eliminates global variable scope and public fields and introduces a delay and a random order of execution of methods or properties from other classes fascinating. Imagine testing and debugging that, then moving the working code to production, where the delay is removed. You will also see that a lot of the ideas above influence how React development is done and perhaps you will understand purists telling everybody how things are not correct until you implement this or that in a certain way. Till next time!

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