I notice that functional programming beginners and experts understand the word “fold” to mean subtly different things, so I’d like to explain what experienced functional programmers usually mean when they use the term “fold”. This post assumes a passing familiarity with Haskell.

#### Overview

A “fold” is a function that replaces all constructors of a datatype with corresponding expressions. “fold”s are not limited to lists, linear sequences, or even containers; you can fold any inductively defined datatype.

To explain the more general notion of a “fold”, we’ll consider three representative data structures:

- lists
`Maybe`

values- binary trees

… and show how we can automatically derive the “one true fold” for each data structure by following the same general principle.

#### Lists

Many beginners understand the word “fold” to be a way to reduce some collection of values (e.g. a list) to a single value. For example, in Haskell you can add up the elements of a list like this:

```
sum :: [Int] -> Int
sum xs = foldr (+) 0 xs
```

… where `sum`

reduces a sequence of `Int`

s to a single `Int`

by starting from an initial accumulator value of `0`

and then “folding” each element of the list into the accumulator using `(+)`

.

Haskell’s standard library provides at least two fold functions named `foldl`

and `foldr`

, but only `foldr`

is the “canonical” fold for a list. By “canonical” I mean that `foldr`

is the only fold that works by substituting list constructors.

We can more easily see this if we define our own linked list type with explicitly named constructors:

`data List a = Cons a (List a) | Nil`

… where instead of writing a list as `[ 1, 2, 3 ]`

we instead will write such a list as:

```
example :: List Int
= Cons 1 (Cons 2 (Cons 3 Nil)) example
```

This is a very unergonomic representation for a list, but bear with me!

We can implement the “canonical” fold for the above `List`

type as a function that takes two arguments:

- The first argument (named
`cons`

) replaces all occurrences of the`Cons`

constructor - The second argument (named
`nil`

) replaces all occurrences of the`Nil`

constructor

The implementation of the canonical fold looks like this:

```
fold :: (a -> list -> list) -> list -> List a -> list
Cons x xs) = cons x (fold cons nil xs)
fold cons nil (Nil = nil fold cons nil
```

You might not necessarily follow how that implementation works, so a more direct way to appreciate how `fold`

works is to see how the function behaves on some sample inputs:

```
-- The general case, step-by-step
Cons x (Cons y (Cons z Nil)))
fold cons nil (= cons x (fold cons nil (Cons y (Cons z Nil)))
= cons x (cons y (fold cons nil (Cons z Nil)))
= cons x (cons y (cons z (fold cons nil Nil)))
= cons x (cons y (cons z nil))
-- Add up the elements of the list, but skipping more steps this time
+) 0 (Cons 1 (Cons 2 (Cons 3 Nil)))
fold (= (+) 1 ((+) 2 ((+) 3 0))
= 1 + (2 + (3 + 0))
= 6
-- Calculate the list length
-> n + 1) 0 (Cons True (Cons False (Cons True Nil)))
fold (\_ n = (\_ n -> n + 1) True ((\_ n -> n + 1) False ((\_ n -> n + 1) True 0))
= (\_ n -> n + 1) True ((\_ n -> n + 1) False 1)
= (\_ n -> n + 1) True 2
= 3
```

Notice that if we format the type of `fold`

a bit we can see that the type of each argument to `fold`

(sort of) matches the type of the corresponding constructor they replace:

```
fold :: (a -> list -> list) -- Cons :: a -> List a -> List a
-> list -- Nil :: List a
-> List a
-> list
```

In the above type, `list`

is actually a type variable and we could have used any name for that type variable instead of `list`

, such as `b`

. In fact, if we were to replace `list`

with `b`

, we would get essentially the same type as `foldr`

for Haskell lists:

```
-- Our `fold` type, replacing `list` with `b`
fold :: (a -> b -> b)
-> b
-> List a
-> b
-- Now compare that type to the `foldr` type from the Prelude:
foldr
:: (a -> b -> b)
-> b
-> [a]
-> b
```

We commonly use folds to reduce a `List`

to a single scalar value, but folds are actually much more general-purpose than that and they can be used to transform one data structure into another data structure. For example, we can use the same `fold`

function to convert our clumsy `List`

type into the standard Haskell list type, like this:

```
:) [] (Cons 1 (Cons 2 (Cons 3 Nil)))
fold (= (:) 1 ((:) 2 ((:) 3 []))
= 1 : (2 : (3 : []))
= [ 1, 2, 3 ]
```

`Maybe`

Folds are not limited to recursive data types. For example, here is the canonical `fold`

for Haskell’s `Maybe`

type, which is not recursive:

```
data Maybe a = Nothing | Just a
fold :: maybe -> (a -> maybe) -> Maybe a -> maybe
Nothing = nothing
fold nothing just Just x ) = just x fold nothing just (
```

In fact, this function already exists in Haskell’s standard library by the name of `maybe`

:

```
maybe :: b -> (a -> b) -> Maybe a -> b
maybe n _ Nothing = n
maybe _ f (Just x) = f x
```

Once you think of folds in terms of constructor substitution you can quickly spot these canonical folds for other types.

#### Binary trees

What about more complex data structures, like the following binary `Tree`

type?

`data Tree a = Node a (Tree a) (Tree a) | Leaf`

This sort of fold is still straightforward to write, by applying the same principle of constructor substitution:

```
fold :: (a -> tree -> tree -> tree) -> tree -> Tree a -> tree
Node x l r) = node x (fold node leaf l) (fold node leaf r)
fold node leaf (Leaf = leaf fold node leaf
```

We only need to keep recursively descending over the `Tree`

, replacing constructors as we go.

We can use this `fold`

to reduce the `Tree`

to a single value, like this:

```
-- Add up all the nodes in the tree
-> x + l + r) 0 (Node 1 (Node 2 Leaf Leaf) (Node 3 Leaf Leaf))
fold (\x l r = (\x l r -> x + l + r) 1
-> x + l + r) 2 0 0)
((\x l r -> x + l + r) 3 0 0)
((\x l r = (\x l r -> x + l + r) 1
2 + 0 + 0)
(3 + 0 + 0)
(= (\x l r -> x + l + r) 1
2
3
= 1 + 2 + 3
= 6
```

… or we can use the same `fold`

function to transform the `Tree`

into another data structure, like a list:

```
-- List `Tree` elements in pre-order
-> x : l ++ r) [] (Node 1 (Node 2 Leaf Leaf) (Node 3 Leaf Leaf))
fold (\x l r = (\x l r -> x : l ++ r) 1
-> x : l ++ r) 2 [] [])
((\x l r -> x : l ++ r) 3 [] [])
((\x l r = (\x l r -> x : l ++ r) 1
2 : [] ++ [])
(3 : [] ++ [])
(= (\x l r -> x : l ++ r) 1
2]
[3]
[= (\x l r -> x : l ++ r) 1
2]
[3]
[= 1 : [2] ++ [3]
= [1, 2, 3]
```

… even use the `fold`

to reverse the tree:

```
-> Node x r l) Leaf (Node 1 (Node 2 Leaf Leaf) (Node 3 Leaf Leaf))
fold (\x l r = (\x l r -> Node x r l) 1
-> Node x r l) 2 Leaf Leaf)
((\x l r -> Node x r l) 3 Leaf Leaf)
((\x l r = (\x l r -> Node x r l) 1
Node 2 Leaf Leaf)
(Node 3 Leaf Leaf)
(= Node 1 (Node 3 Leaf Leaf) (Node 2 Leaf Leaf)
```

#### Generality

At this point you might be wondering: “what *can’t* a fold do?”. The answer is: you can do essentially anything with a fold, although it might not necessarily be the most efficient solution to your problem. You can think of a fold as the most general-purpose interface for consuming a data structure because the `fold`

interface is a “lossless” way to process a data structure.

To see why a fold is a “lossless” interface, let’s revisit the `fold`

function for `Tree`

s and this time we will pass in the `Node`

and `Leaf`

constructors as the inputs to the `fold`

. In other words, we will replace all occurrences of `Node`

with `Node`

and replace all occurrences of `Leaf`

with `Leaf`

:

```
Node Leaf (Node 1 (Node 2 Leaf Leaf) (Node 3 Leaf Leaf))
fold = Node 1 (Node 2 Leaf Leaf) (Node 3 Leaf Leaf)
```

This gives us back the original data structure, demonstrating how we always have the option for a `fold`

to recover the original pristine input. This is what I mean when I say that a fold is a lossless interface.

For those interested, the technical term is *bananas*: https://en.wikipedia.org/wiki/Catamorphism#Terminology_and_history

ReplyDeleteIn the last line of the "reverse the tree" example, you have:

ReplyDelete= Node 1 (Node 3 Leaf Leaf) (Node 3 Leaf Leaf)

Should one of those 3s be a 2?

You're correct. I just fixed it

DeleteTo add a little, which I think is helpful:

ReplyDeleteYou can write a data type as a fold e.g.

data List a = List (forall b. (a -> b -> b) -> b -> b)

This is the same data type as [] and in fact, you can go right ahead and implement all the same library.

The key difference for List is: you will get destruction (pattern-matching) for free (that's what fold does), but not construction (you'll have to write them) and for [], it will be the other way around.

There's also a nice explanation of folds in term of F-Algebras (https://bit.ly/3jQi0eF), e.g. the recursive `Tree a` is seen as the initial algebra (fixpoint) of the functor

ReplyDeletedata FTree a b = Node a b b | Leaf

and where the fold (catamorphism) is obtained from the initiality diagram of FTree a.

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ReplyDelete