# Memory efficient statistical distribution module

I'd like to analyze some data (say, web-service response times) and get various statistical info, mainly percentiles/quantiles and presence of outstanding values.

I know about Statistics::Descriptive, however, I don't want to store all the data in memory. On the other hand, having my results off by a few % would be fine, I only care about huge differences.

So I came up with the following idea: create an array of logarithmic buckets, and count data points landing in each bucket. Having the data spread across 6 orders of magnitude and guaranteed precision of 1% still leaves me with `6 * log 10 / log 1.01 =~ 1400` buckets which is perfectly fine (36 kb of memory, given current Perl's scalar size).

Counting percentiles is simple - just add up bucket counters until `\$sum` exceeds `\$percentage * \$total_count`.

However, before I start writing actual code, I would like to ask which memory efficient statistical modules (for Perl) and algorithms already exist.

I have found this question, and there's similar method proposed in one of the answers. Haven't found a ready-made Perl implementation, though.

This is a slightly edited version of this Perlmonks question.

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Couldn't resist and started out a github project. –  Dallaylaen Jun 11 '13 at 10:07
You can maintain certain statistics in O(1), like min, max, mean, variance. –  mitchus Jun 11 '13 at 21:47
@mitchus: Sure! However, I'm interested in percentiles which are not that easy... –  Dallaylaen Jun 12 '13 at 12:22
Are you sure you don't want to do that bit in R? :) –  brian d foy Jun 16 '13 at 7:03
@briandfoy Good point, but I doubt my coworkers would thank me for carrying around R as dependency just because I think rough median is occasionally better than precise mean. –  Dallaylaen Jun 18 '13 at 7:02

As my search has been unsuccessful so far, I've started a new module Statistics::Descriptive::LogScale. Hope it will be helpful.

It generally follows the API of Statistics::Descriptive::Full, with several minor additions (like added central and standardized moments of arbitrary powers). I also plan to take a much closer look at Statistics::Descriptive::Weighted.

``````#!/usr/bin/perl -w

use strict;
use Statistics::Descriptive::LogScale;

my \$stat = Statistics::Descriptive::LogScale->new ();
while(<>) {
};

# This can also be done in O(1) memory, precisely
printf "Average: %f +- %f\n",
\$stat->mean, \$stat->standard_deviation;

# This requires storing actual data, or approximating
foreach (0.5, 1, 5, 10, 25, 50, 75, 90, 95, 99, 99.5) {
printf "Percentile(\$_): %f\n", \$stat->percentile(\$_);
};
``````
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