/unity

Unison for Scala

Primary LanguageScala

unity

Unison for Scala

An experiment to see if it is possible to replicate the immutability of code from the language Unison, in scala.

The 'fundamentals' package contains the only language constructs we need: A typeclass function wrapper (Fn), and an implementation typeclass (Canonical).

And a couple of symbols to make writing code a little nicer.

The rest of the code is an example of how a unison-like development flow would happen in scala.

Each update package is the result of developer work. These happen offline, independently, in a separate repository. Each update has access to all update packages before it - in a real workflow these would be arranged as libraries.

Your new update library subscribes to all currently available update libraries. When you are done writing your new code, you publish your library. In the app they're keyed by integers - in reality they would be keyed by git hash or timestamp.

When you've published your library, you mutate the main repository. This is the only mutable code in the entire project.

The main repository (Testing.scala) should be a small object, that starts your service and subscribes to implementations found in the libraries you have added in a separate stream of work.

The main repository has access to all the libraries written by all developers on all branches of work. It can choose any implementation it likes for class concepts and implicit function instances.

After you have changed the main repository to use your new code (by erasing the old import and adding your new one, or changing a Canonical implementation), the compiler will verify that the entire stack of implicit code structure is compatible. If it is, it will build the entirely new implementation for you automatically. Then we're good! On to the next piece of work.

If it's not compatible, the compilation will fail. At this stage, it's back to write a new update to fill the gap you left in your implementations.

This is conflict-free coding, abstracted over source control. At any point, the main program has access to all previous code ever defined. New code is made with incremental additions, no bugs can ever be introduced in old code. Never again will you have to compile 1,000s of source files every time you make a change, you will only ever have to compile new code, and the final verification.

Source control and incremental compilation, as code.

Code Explanation

Types and classes

Every single class and type is subject to change. There is no common interface between any types of the same thread, other than a simple trait token. For example, Name and FullName are both NameConcepts. At orchestration time, in the main app, we must choose which of the two NameConcepts we want to be canonical.

Classes that contain fields, such as a case class User(id: Id, age: Age, name: Name), can never know what implementations of type concepts they contain. If they did know their precise implementation, it would be impossible to update a NameConcept to a new implementation without also updating every piece of User functionality. This is a no-go, we want this to be automatic.

Therefore classes with fields must be designed as:

  trait User[Id <: UserIdConcept, Age <: AgeConcept, Name <: NameConcept] extends UserConcept {
    def id: Id
    def age: Age
    def name: Name
  }

Generic classes

Generic classes are simpler than ordinary classes - they already have their contents defined by a higher level of code. Here is PairConcept and its implementation Pair:

  trait PairConcept[A, B] {
    def _1: A
    def _2: B
  }
 
  case class Pair[A, B](_1: A, _2: B) extends PairConcept[A, B]

Writing a function

Because all code implementations can be replaced elsewhere, at any time, and everything you write is immutable, any function you write has to be future proof to the n-th degree. Literally no implementations from elsewhere can be allowed to exist in the function: The entire namespac available and all functionality the function needs access to must be passed in implicitly.

Here's a simple example, accessing the age field on User:

  implicit def UserToAge[Id <: UserIdConcept, Name <: NameConcept](
    implicit age: Canonical[AgeConcept]
  ): Fn[User[Id, age.Impl, Name], age.Impl] = Fn(_.age)

Accessing the Age field from User depends entirely on what the canonical AgeConcept is. So we pass this evidence in, and then we can return the right type (the compiler does the calculation for us).

Here's a more complex example, producing a Pair of name and age, from a given user:

  implicit def AgeAndNamePair[User <: UserConcept, Age <: AgeConcept, Name <: NameConcept, Pair[_, _] <: PairConcept[_, _]](
    implicit user: UserConcept |--> User,
    age: AgeConcept |--> Age,
    name: NameConcept |--> Name,
    pair: PairConcept[AgeConcept, NameConcept] |--> Pair[Age, Name],
    getAge: User ==>: Age,
    getName: User ==>: Name,
    buildPair: Age ==>: Name ==>: Pair[Age, Name]
  ): User ==>: Pair[Age, Name] = Fn { user =>
    buildPair(getAge(user))(getName(user))
  }

First, we need to know what types we're talking about. So we retrieve our canonical UserConcept and name it as User, AgeConcept as Age, etc.

After that, we need to know how to access the age field of a user (User ==>: Age), how to get the name field (User ==>: Name), and finally how to build our Pair canonical: Age ==>: Name ==>: Pair[Age, Name]

Once we have this namespace, and all our building blocks of functionality, we can actually write our implementation in native scala, and it practically writes itself: buildPair(getAge(user))(getName(user))

You can think of this implicit list declared before any definition of Fn/==>: as declaring our variables/namespace. It tells the compiler, when building our program for us, that before we can talk about this functionality we need to have these things sorted out, available, computed.

At no time, ever, does a function talk about any scope beyond its implicit namespace. Only in this way can we make all imutable code reusable in all future scenarios.

Writing a new version of a function

In update5 there is a function GetUserFromDb, and in update7 we write a new version of this, GetUserFromDbV2, which was written in response to a new NameConcept (FullName rather than LastName).

The diff between these two user-from-db functions is:

- wrapName: String ==>: Name,
+ wrapName: (String, String) ==>: Name,
- Some(buildUser(id)(wrapAge(53))(wrapName("jeremy")))
+ Some(buildUser(id)(wrapAge(53))(wrapName("jeremy" -> "jackson")))
- Some(buildUser(id)(wrapAge(19))(wrapName("john")))
+ Some(buildUser(id)(wrapAge(19))(wrapName("john" -> "baptist")))

And that's all there is to it. We simply delcared in the implicits that we were changing the way we built our NameConcept, and then changed the simple usage sites within the body.

Updates are incredibly simple. The program is orchestrated for you by the scala compiler, you don't need complex threading of data through stacks of code.

If we plugged that function into our main stack (by importing it at orchestration time), the whole program would compile if the compiler found an implicit (String, String) ==>: Name defined for our chosen Name canonical.

Differences from reality

In reality, the update packages as previously mentioned would be libraries, keyed by git hash.

In the file Testing.scala, there are several apps. These mimic different versions of the only mutable code allowed. Each App object has a docstring explaining the code development that drove the need for the update, and a short example of what the "real" diff would be. I left them all in side-by-side for ease of comparison, so nobody need dig through git commits.

The imports in the App objects are long and boring. In reality this would be solved by having a nested, shared package structure across the update libraries.

And, finally, choosing new function implementations is currently achieved by simply importing a different implicit definition. In reality, there would be a further Canonical typeclass for you to choose your canonical function definition explicitly (implicitly), from any concept to any concept.