I'm newbie in Clojure, I started to learn the language 2 months before. I'm reading the "The joy of clojure" book and I found a min-by function in Functional programming topic. I was thinking and I've done my min-by function, which seems at least 50% better performance at leat 10.000 items. Here are the functions
; the test vector with random data
(def my-rand-vec (vec (take 10000 (repeatedly #(rand-int 10000)))))
; the joy of clojure min-by
(defn min-by-reduce [f coll]
(when (seq coll)
(reduce (fn [min other]
(if (> (f min) (f other))
other
min))
coll)))
(time (min-by-reduce eval my-rand-vec))
; my poor min-by
(defn min-by-sort [f coll]
(first (sort (map f coll))))
(time (min-by-sort eval my-rand-vec))
terminal output is
"Elapsed time: 91.657505 msecs"
"Elapsed time: 62.441513 msecs"
Does any performance or resource drawbacks of my solution? I'm really curious for more elegant clojure solution from clojure Gurus for this function.
EDIT
a more clear test code with criteria.
(ns min-by.core
(:gen-class))
(use 'criterium.core)
(defn min-by-reduce [f coll]
(when (seq coll)
(reduce (fn [min other]
(if (> (f min) (f other))
other
min))
coll)))
(defn min-by-sort [f coll]
(first (sort-by f coll)))
(defn my-rand-map [length]
(map #(hash-map :resource %1 :priority %2)
(take length (repeatedly #(rand-int 200)))
(take length (repeatedly #(rand-int 10)))))
(defn -main
[& args]
(let [rand-map (my-rand-map 100000)]
(println "min-by-reduce-----------")
(quick-bench (min-by-reduce :resource rand-map))
(println "min-by-sort-------------")
(quick-bench (min-by-sort :resource rand-map))
(println "min-by-min-key----------")
(quick-bench (apply min-key :resource rand-map)))
)
Terminal output is:
min-by-reduce-----------
Evaluation count : 60 in 6 samples of 10 calls.
Execution time mean : 11,366539 ms
Execution time std-deviation : 2,045752 ms
Execution time lower quantile : 9,690590 ms ( 2,5%)
Execution time upper quantile : 14,763746 ms (97,5%)
Overhead used : 3,292762 ns
Found 1 outliers in 6 samples (16,6667 %)
low-severe 1 (16,6667 %)
Variance from outliers : 47,9902 % Variance is moderately inflated by outliers
min-by-sort-------------
Evaluation count : 6 in 6 samples of 1 calls.
Execution time mean : 174,747463 ms
Execution time std-deviation : 18,431608 ms
Execution time lower quantile : 158,138543 ms ( 2,5%)
Execution time upper quantile : 203,420044 ms (97,5%)
Overhead used : 3,292762 ns
Found 1 outliers in 6 samples (16,6667 %)
low-severe 1 (16,6667 %)
Variance from outliers : 30,7324 % Variance is moderately inflated by outliers
min-by-min-key----------
Evaluation count : 36 in 6 samples of 6 calls.
Execution time mean : 17,405529 ms
Execution time std-deviation : 1,661902 ms
Execution time lower quantile : 15,962259 ms ( 2,5%)
Execution time upper quantile : 19,366893 ms (97,5%)
Overhead used : 3,292762 ns
eval
is a terrible choice if you want to try it out. Your entire runtime is dominated by it. The reason you're slower is that you calleval
2*N in your reduce version whereas onlyN
times in yoursort
version.eval
toidentity
and the result changed completely. The terminal output for 100.000 items is"Elapsed time: 8.234689 msecs" "Elapsed time: 131.30328 msecs"