First learn what a Turing machine is (from wikipedia).

A Turing machine is a device that manipulates symbols on a strip of tape according to a table of rules. Despite its simplicity, a Turing machine can be adapted to simulate the logic of any computer algorithm, and is particularly useful in explaining the functions of a CPU inside a computer.

This is about Lamda calculus. (from wikipedia).

In mathematical logic and computer science, the lambda calculus, also written as the λ-calculus, is a formal system for studying computable recursive functions, a la computability theory, and related phenomena such as variable binding and substitution.

The functional programming languages use, as their fundamental model of computation, the lambda calculus, while all the other programming languages use the Turing machine as their fundamental model of computation. (Well, technically, I should say functional programming languages vr.s imperative programming languages- as languages in other paradigms use other models. For example, SQL uses the relational model, Prolog uses a logic model, and so on. However, pretty much all the languages people actually think about when discussing programming languages are either functional or imperative, so I’ll stick with the easy generality.)

What do I mean by “fundamental model of computation”? Well, all languages can be thought of in two layers: one, some core Turing-complete language, and then layers of either abstractions or syntactic sugar (depending upon whether you like them or not) which are defined in terms of the base Turing-complete language. The core language for imperative languages is then a variant of the classic Turing machine model of computation one might call “the C language”. In this language, memory is an array of bytes that can be read from and written to, and you have one or more CPUs which read memory, perform simple arithmetic, branch on conditions, and so on. That’s what I mean by the fundamental model of computation of these languages is the Turing Machine.

The fundamental model of computation is the Lambda Calculus, and this shows up in two different ways. *First*, one thing that many functional languages do is to write their specifications explicitly in terms of a translation to the lambda calculus to specify the behavior of a program written in the language (this is known as “denotational semantics”). And *second*, almost all functional programming languages implement their compilers to use an explicit lambda-calculus-like intermediate language- Haskell has Core, Lisp and Scheme have their “desugared” representation (after all macros have been applied), Ocaml (Objective Categorical Abstract Machine Language) has it’s lispish intermediate representation, and so on.

So what is this lambda calculus I’ve been going on about? Well, the basic idea is that, to do any computation, you only need two things. The first thing you need is function abstraction- the definition of an unnamed, single-argument, function. Alonzo Church, who first defined the Lambda calculus used the rather obscure notation to define a function as the greek letter lambda, followed by the one-character name of the argument to the function, followed by a period, followed by the expression which was the body of the function. So the identity function, which given any value, simply returns that value, would look like “λx.x” I’m going to use a slight more human-readable approach- I’m going to replace the λ character with the word “fun”, the period with “->”, and allow white space and allow multi-character names. So I might write the identity function as “fun x -> x”, or even “fun whatever -> whatever”. The change in notation doesn’t change the fundamental nature. Note that this is the source of the name “lambda expression” in languages like Haskell and Lisp- expressions that introduce unnamed local functions.

The only other thing you can do in the Lambda Calculus is to call functions. You call a function by applying an argument to it. I’m going to follow the standard convention that application is just the two names in a row- so `f x`

is applying the value `x`

to the function named f. We can replace f with some other expression, including a Lambda expression, if we want- and we can When you apply an argument to an expression, you replace the application with the body of the function, with all the occurrences of the argument name replaced with whatever value was applied. So the expression `(fun x -> x x) y`

becomes `y y`

.

The theoreticians went to great lengths to precisely define what they mean by “replacing all occurrences of the variable with the the value applied”, and can go on at great lengths about how precisely this works (throwing around terms like “alpha renaming”), but in the end things work exactly like you expect them to. The expression `(fun x -> x x) (x y)`

becomes `(x y) (x y)`

- there is no confusion between the argument `x`

within the anonymous function, and the `x`

in the value being applied. This works even in multiple levels- the expression `(fun x -> (fun x -> x x)) (x x)) (x y)`

becomes first `(fun x -> x x) ((x y) (x y))`

and then `((x y) (x y)) ((x y) (x y))`

. The x in the innermost function `(“(fun x -> x x)”)`

is a different x than the other x’s.

It is perfectly valid to think of function application as a string manipulation. If I have a (fun x -> some expression), and I apply some value to it, then the result is just some expression with all the x’s textually replaced with the “some value” (except for those which are shadowed by another argument).

As an aside, I will add parenthesis where needed to disambiguate things, and also elide them where not needed. The only difference they make is grouping, they have no other meaning.

So that’s all there is too it to the Lambda calculus. No, really, that’s all- just anonymous function abstraction, and function application. I can see you’re doubtful about this, so let me address some of your concerns.

First, I specified that a function only took one argument- how do you have a function that takes two, or more, arguments? Easy- you have a function that takes one argument, and returns a function that takes the second argument. For example, function composition could be defined as `fun f -> (fun g -> (fun x -> f (g x)))`

– read that as a function that takes an argument f, and returns a function that takes an argument g and return a function that takes an argument x and return f (g x).

So how do we represent integers, using only functions and applications? Easily (if not obviously)- the number one, for instance, is a function `fun s -> fun z -> s z`

– given a “successor” function s and a “zero” z, one is then the successor to zero. Two is fun s -> `fun z -> s s z`

, the successor to the successor to zero, three is `fun s -> fun z -> s s s z`

, and so on.

To add two numbers, say `x`

and `y`

, is again simple, if subtle. The addition function is just `fun x -> fun y -> fun s -> fun z -> x s (y s z)`

. This looks odd, so let me run you through an example to show that it does, in fact work- let’s add the numbers 3 and 2. Now, three is just `(fun s -> fun z -> s s s z)`

and two is just `(fun s -> fun z -> s s z)`

, so then we get (each step applying one argument to one function, in no particular order):

```
(fun x -> fun y -> fun s -> fun z -> x s (y s z)) (fun s -> fun z -> s s s z) (fun s -> fun z -> s s z)
(fun y -> fun s -> fun z -> (fun s -> fun z -> s s s z) s (y s z)) (fun s -> fun z -> s s z)
(fun y -> fun s -> fun z -> (fun z -> s s s z) (y s z)) (fun s -> fun z -> s s z)
(fun y -> fun s -> fun z -> s s s (y s z)) (fun s -> fun z -> s s z)
(fun s -> fun z -> s s s ((fun s -> fun z -> s s z) s z))
(fun s -> fun z -> s s s (fun z -> s s z) z)
(fun s -> fun z -> s s s s s z)
```

And at the end we get the unsurprising answer of the successor to the successor to the successor to successor to the successor to zero, known more colloquially as five. Addition works by replacing the `zero`

(or where we start counting) of the `x`

value with the `y`

value- to define multiplication, we instead diddle with the concept of “successor”:

```
(fun x -> fun y -> fun s -> fun z -> x (y s) z)
```

I’ll leave it to you to verify that the above code does

Wikipedia says

Imperative programs tend to emphasize the series of steps taken by a program in carrying out an action, while functional programs tend to emphasize the composition and arrangement of functions, often without specifying explicit steps. A simple example illustrates this with two solutions to the same programming goal (calculating Fibonacci numbers). The imperative example is in C++.

```
// Fibonacci numbers, imperative style
int fibonacci(int iterations)
{
int first = 0, second = 1; // seed values
for (int i = 0; i < iterations; ++i) {
int sum = first + second;
first = second;
second = sum;
}
return first;
}
std::cout << fibonacci(10) << "\n";
```

A functional version (in Haskell) has a different feel to it:

```
-- Fibonacci numbers, functional style
-- describe an infinite list based on the recurrence relation for Fibonacci numbers
fibRecurrence first second = first : fibRecurrence second (first + second)
-- describe fibonacci list as fibRecurrence with initial values 0 and 1
fibonacci = fibRecurrence 0 1
-- describe action to print the 10th element of the fibonacci list
main = print (fibonacci !! 10)
```

See this PDF also

Wikipea articlesaboutfunctional programmingare very clear and clever. If you don't follow them then it's clear that you're a beginner and I don't think that you could follow what I meant in my answer aboutfunctional programming. I thought that I should have written just a few lines in my answer. In that case, you need to start by learning basic about it. – Lion Dec 31 '11 at 11:11