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so i figured out how to get some recursive thing done. but my question is: is this the right way or is there a better clojure way?

(defn deform [points variance]

  (mapcat (fn [i]
            [(nth points i) (subdivide (nth points i) (nth points (mod (inc i) (count points))) variance)])
          (range (count points))))

(defn deforms [points depth variance]

  (loop [cnt depth
         np (deform points variance)]

    (if (= cnt 0)
      np
      (recur  (dec cnt) (deform np (/ variance 2))))))

so any tips to make it better?

  • 2
    I'd be more interested in the implementation of deform. All those indexing operations on a lazy list that gets larger each iteration will really add up. Of course your algorithm takes exponential time regardless (np doubles in size each step), but the indexing operations bring you from 2^n to (2^n)^2 or something. – amalloy Jan 9 at 10:51
  • 3
    Could this question be moved to the code review stack exchange site instead of closing it? – Frank Henard Jan 9 at 15:20
  • 1
    @FrankHenard I didn't know there was a CR SE. Appreciated. – Aaron Bell Jan 9 at 20:00
2

The code that you already suggest is great, except for the complexity of nth as pointed out by @amalloy (which can be addressed by turning the lazy sequence into a vector). The loop is a fundamental building block for looping. However, when looping, sequences are often involved and there are many functions for constructing sequences and expressing algorithms on sequences. Knowing these functions can save you some time and to some extent make algorithms simpler or more concise.

Here is alternative way of expressing your algorithm. You can construct a lazy sequence of variance by starting from an initial variance and iterate division by 2.

Here is an example of a sequence of length 7 with an initial variance of 3:

(take 7 (iterate #(/ % 2) 3))
;; => (3 3/2 3/4 3/8 3/16 3/32 3/64)

We can now pass a sequence constructed in this way to reduce to express the loop.

(defn deforms2 [points depth variance]
  (reduce (comp vec deform)

          ;; Initial value
          (vec points)

          ;; Sequence of variances that we reduce over
          (take depth (iterate #(/ % 2) variance))))

This code is slightly different from your initial code, in that no deformation takes place if depth has the value 0:

(= pts (deforms2 pts 0 my-variance))
;; => true

The equivalent modification of the original code would mean to initialize the looping variable np with points instead of (deform points variance), making things more intuitive, in my opinion.

The reduce function does two things for you when expressing an iterative algorithm:

  1. It stops the looping when the input sequence is empty.
  2. It steps to the next element of the input sequence at every iteration.

In other words, you don't have to worry about those two concerns meaning less risk of bugs. It is similar in philosophy to foreach loops found in other languages.

Note also that I reduce using (comp vec deform) instead of just deform. This is a quick fix (not necessarily an optimal fix) to address the complexity of indexing operations, as pointed out by @amalloy.

  • your code is much faster then my initial code! – MrD Jan 9 at 14:10
  • 1
    You can do quite a bit better, performance-wise, by using transducers instead of combining vec and mapcat. i.e., instead of (vec (mapcat f xs)), write (into [] (mapcat f) xs) - i find it about four times faster in a simple benchmark, because it avoids the intermediate lazy sequence. You just have to pull the mapcat out of deform and into the reducing code. – amalloy Jan 10 at 1:59

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