# optimizing recursive function performance (euler 15: lattice paths)

I'm trying to solve project eulers 15th problem, lattice paths (http://projecteuler.net/problem=15).

My first attempt was to solve the problem line by line and then taking the last element in the last line.

number_of_ways_new_line last_line = foldl calculate_values [] last_line
where
calculate_values lst x = lst ++ [(if length lst > 0 then (last lst) + x else head last_line)]

count_ways x = foldl (\ lst _ -> number_of_ways_new_line lst) (take x [1,1..]) [1..x-1]

result_15 = last \$ count_ways 21

This works and is fast, but I think it is really ugly. So I thought about it for a while and came up with a more idiomatic function (please correct me if I get this wrong), that sovles the problem using recursion:

lattice :: Int -> Int -> Int
lattice 0 0 = 1
lattice x 0 = lattice (x-1) 0
lattice 0 y = lattice (y-1) 0
lattice x y
| x >= y    = (lattice (x-1) y) + (lattice x (y-1))
| otherwise = (lattice y (x-1)) + (lattice (y-1) x)

This works good for short numbers, but it doesn't scale at all. I optimized it a little bit by using the fact that lattice 1 2 and lattice 2 1 will always be the same. Why is this so slow? Isn't Haskell memoizing previous results, so that whenever lattice 2 1 is called it remembers the old result?

-
This problem has very simple combinatorial answer. –  swish Oct 13 '13 at 12:37
It doesn't memoizing previous results. If you want to make your solution work you need to build up some array and call on its values recursively. –  swish Oct 13 '13 at 12:40

Now this problem can be solved mathematically be manipulating the recurrence relations into a closed form, but I'll focus on the more interesting problem, memoizing.

First we can use Data.Array (this is the lazy one)

import Data.Array as A

lattice x y = array ((0, 0), (x, y)) m ! (x, y)
where m = [(,) (x, y) (lattice' x y) | x <- [0..x], y <- [0..y]
lattice' 0 0  = 1
lattice' x 0 = lattice (x-1) 0
lattice' 0 y = lattice (y-1) 0
lattice' x y | x >= y    = (lattice (x-1) y) + (lattice x (y-1))
| otherwise = (lattice y (x-1)) + (lattice (y-1) x)

Now these recurrences go through the map, but, since the map is lazy, once a map entry is evaluated, it's thunk will be mutated to be a simple value ensuring it's only ever computed once.

We can also use the wonderful memo-combinators library.

import Data.MemoCombinators as M
lattice = memo2 M.integral M.integral lattice'
where lattice' 0 0 = 1
lattice' x 0 = lattice (x-1) 0
lattice' 0 y = lattice (y-1) 0
lattice' x y | x >= y    = lattice (x-1) y + lattice x (y-1)
| otherwise = lattice y (x-1) + lattice (y-1) x
-
Does that mean, that in Haskell there is no memoization at all for simple functions, and it is only achieved by applying the function to the next value in some lazy list? –  sra Oct 14 '13 at 11:33
@sra Haskell doesn't memoize because it's just too memory intensive. It does share function arguments (eg, call by name with sharing) but that's it –  jozefg Oct 14 '13 at 14:06
It's not memoized by applying functions in a lazy list, but by filling an array so that each value is dependent on previous values in the array, this way, laziness ensures each is computed exactly once. –  jozefg Oct 14 '13 at 14:07
Thanks, I was thinking that the function call will actually be 'replaced' by the value once the value is known. But your example with the lazy list makes perfect sense to me. I also like the fact that there is no 'outer scope' object needed (even if it would be hidden) for the caching. –  sra Oct 14 '13 at 14:23
@sra No problem, if you like my answer, feel free to accept it :) I also recommend using memo-combinators, It's very pleasant to use and very reliable. –  jozefg Oct 14 '13 at 14:24