/Symmetric-Interaction-Calculus

A programming language and model of computation that matches the optimal λ-calculus reduction algorithm perfectly.

Primary LanguageRustMIT LicenseMIT

Symmetric Interaction Calculus

The Symmetric Interaction Calculus is a minimal programming language and model of computation obtained by slightly modifying the Lambda Calculus so that it matches perfectly the abstract part of Lamping's optimal reduction algorithm. Characteristics:

  1. Like the Lambda Calculus, it can easily express algebraic datatypes and arbitrary recursive algorithms.

  2. Like Turing Machines, it can be evaluated through simple, constant-time operations.

  3. Unlike the Lambda Calculus (and like Rust), it does not require garbage-collection.

  4. Unlike the Lambda Calculus, all intermediate steps of its optimal reduction correspond to terms.

  5. Unlike the Lambda Calculus, terms can be reduced not only optimally, but efficiently (i.e., no oracles).

  6. Unlike both, it is intrinsically parallel.

  7. It is isomorphic to symmetric interaction combinators, a beautiful model of computation.

Note: this is an old repository. A new version is being developed on Kind. Check the code here.

Syntax

The syntax is obtained by simply extending the Lambda Calculus with pairs and let:

term ::=
  | λx. term                 -- abstraction
  | (term term)              -- application
  | (term,term)              -- pair
  | let (p,q) = term in term -- definition
  | x                        -- variable

Except variables are restricted to occur only once and are freed to occur globally (why?).

Reduction rules

There are 4 reduction rules. Two of them are usual: the application of a lambda, and the projection of a pair. The other two deal with the previously unspecified cases: "applying a pair" and "projecting a lambda". The first performs a parallel application, and the second performs an incremental duplication. All of them are constant-time operations.

-- Rule 0: lambda-application

((λx.f) a)
----------
f [x / a]

-- Rule 1: pair-projection

let (p,q) = (u,v) in t
----------------------
t [p / u] [q / v]

-- Rule 2: pair-application

((u,v) a)
----------------
let (x0,x1) = a 
in ((u x0),(v x1))

-- Rule 3: lambda-projection

let (p,q) = (λx.f) in t
-----------------------
let (p,q) = f in t
[p / λx0.p]
[q / λx1.q]
[x / (x0,x1)]

Here, [a / b] stands for a global substitution of the occurrence of a by b, and x0, x1 are fresh variables. I've used additional parenthesis around lambdas to make the reading clearer.

Examples

Example 0: lambda-application and pair-projection (nothing new).

λu. λv. let (a,b) = (λx.x, λy.y) in (a u, b v)
----------------------------------------------  pair-projection
λu. λv. ((λx.x) u, (λy.y) v)
---------------------------- lambda-application
λu. λv. ((λx.x) u, v)
--------------------- lambda-application
λu. λv. (u, v)

Example 1: using lambda-projection to copy a function.

let (a,b) = λx.λy.λz.y in (a,b)
------------------------------- lambda-projection
let (a,b) = λy.λz.y in (λx0.a, λx1.b)
--------------------------------------- lambda-projection
let (a,b) = λz. (y0,y1) in (λx0.λy0.a, λx1.λy1.b)
-------------------------------------------------- lambda-projection
let (a,b) = (y0,y1) in (λx0.λy0.λz0.a, λx1.λy1.λz1.b)
----------------------------------------------------- pair-projection
(λx0.λy0.λz0.y0, λx1.λy1.λz1.y1)

Example 2: demonstrating pair-application.

((λx.x, λy.y) λt.t) 
------------------- pair-application
let (a0,a1) = λt. t in ((λx.x) a0, (λy.y) a1)
--------------------------------------------- lambda-projection
let (a0,a1) = (t0,t1) in ((λx.x) λt0.a0, (λy.y) λt1.a1)
-------------------------------------------------------  pair-projection
((λx.x) λt0.t0, (λy.y) λt1.t1)
------------------------------- lambda-application
((λx.x) λt0.t0, λt1.t1)
----------------------- lambda-application
(λt0.t0, λt1.t1)

Example 3: 2 + 3.

This is equivalent to:

data Nat = S Nat | Z

add : Nat -> Nat -> Nat
add (S n) m = S (add n m)
add Z     m = m

main : Nat
main = add (S (S (S Z))) (S (S Z))

Full reduction.

Example 4: applying not 8 times to True.

Full reduction.


Here is a handwritten reduction of 2^(2^2).

High-order Virtual Machine (HVM)

The High-order Virtual Machine (HVM) is a high-performance practical implementation of SIC. It is a lazy, parallel runtime capable of evaluating functional programming languages optimally.