1Math::Random::MT::Auto(U3s)er Contributed Perl DocumentatMiaotnh::Random::MT::Auto(3)
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6 Math::Random::MT::Auto - Auto-seeded Mersenne Twister PRNGs
7
9 This documentation refers to Math::Random::MT::Auto version 6.23
10
12 use strict;
13 use warnings;
14 use Math::Random::MT::Auto qw(rand irand shuffle gaussian),
15 '/dev/urandom' => 256,
16 'random_org';
17
18 # Functional interface
19 my $die_roll = 1 + int(rand(6));
20
21 my $coin_flip = (irand() & 1) ? 'heads' : 'tails';
22
23 my @deck = shuffle(1 .. 52);
24
25 my $rand_IQ = gaussian(15, 100);
26
27 # OO interface
28 my $prng = Math::Random::MT::Auto->new('SOURCE' => '/dev/random');
29
30 my $angle = $prng->rand(360);
31
32 my $decay_interval = $prng->exponential(12.4);
33
35 The Mersenne Twister is a fast pseudorandom number generator (PRNG)
36 that is capable of providing large volumes (> 10^6004) of "high
37 quality" pseudorandom data to applications that may exhaust available
38 "truly" random data sources or system-provided PRNGs such as rand.
39
40 This module provides PRNGs that are based on the Mersenne Twister.
41 There is a functional interface to a single, standalone PRNG, and an OO
42 interface (based on the inside-out object model as implemented by the
43 Object::InsideOut module) for generating multiple PRNG objects. The
44 PRNGs are normally self-seeding, automatically acquiring a (19968-bit)
45 random seed from user-selectable sources. (Manual seeding is
46 optionally available.)
47
48 Random Number Deviates
49 In addition to integer and floating-point uniformly-distributed
50 random number deviates (i.e., "irand" and "rand"), this module
51 implements the following non-uniform deviates as found in Numerical
52 Recipes in C:
53
54 · Gaussian (normal)
55
56 · Exponential
57
58 · Erlang (gamma of integer order)
59
60 · Poisson
61
62 · Binomial
63
64 Shuffling
65 This module also provides a subroutine/method for shuffling data
66 based on the Fisher-Yates shuffling algorithm.
67
68 Support for 64-bit Integers
69 If Perl has been compiled to support 64-bit integers (do perl -V
70 and look for "use64bitint=define"), then this module will use a
71 64-bit-integer version of the Mersenne Twister, thus providing
72 64-bit random integers and 52-bit random doubles. The size of
73 integers returned by "irand", and used by "get_seed" and "set_seed"
74 will be sized accordingly.
75
76 Programmatically, the size of Perl's integers can be determined
77 using the "Config" module:
78
79 use Config;
80 print("Integers are $Config{'uvsize'} bytes in length\n");
81
82 The code for this module has been optimized for speed. Under Cygwin,
83 it's 2.5 times faster than Math::Random::MT, and under Solaris, it's
84 more than four times faster. (Math::Random::MT fails to build under
85 Windows.)
86
88 To use this module as a drop-in replacement for Perl's built-in rand
89 function, just add the following to the top of your application code:
90
91 use strict;
92 use warnings;
93 use Math::Random::MT::Auto 'rand';
94
95 and then just use "rand" as you would normally. You don't even need to
96 bother seeding the PRNG (i.e., you don't need to call "srand"), as that
97 gets done automatically when the module is loaded by Perl.
98
99 If you need multiple PRNGs, then use the OO interface:
100
101 use strict;
102 use warnings;
103 use Math::Random::MT::Auto;
104
105 my $prng1 = Math::Random::MT::Auto->new();
106 my $prng2 = Math::Random::MT::Auto->new();
107
108 my $rand_num = $prng1->rand();
109 my $rand_int = $prng2->irand();
110
111 CAUTION: If you want to require this module, see the "Delayed
112 Importation" section for important information.
113
115 The module must always be declared such that its "->import()" method
116 gets called:
117
118 use Math::Random::MT::Auto; # Correct
119
120 #use Math::Random::MT::Auto (); # Does not work because
121 # ->import() does not get invoked
122
123 Subroutine Declarations
124 By default, this module does not automatically export any of its
125 subroutines. If you want to use the standalone PRNG, then you should
126 specify the subroutines you want to use when you declare the module:
127
128 use Math::Random::MT::Auto qw(rand irand shuffle gaussian
129 exponential erlang poisson binomial
130 srand get_seed set_seed get_state set_state);
131
132 Without the above declarations, it is still possible to use the
133 standalone PRNG by accessing the subroutines using their fully-
134 qualified names. For example:
135
136 my $rand = Math::Random::MT::Auto::rand();
137
138 Module Options
139 Seeding Sources
140 Starting the PRNGs with a 19968-bit random seed (312 64-bit
141 integers or 624 32-bit integers) takes advantage of their full
142 range of possible internal vectors states. This module attempts to
143 acquire such seeds using several user-selectable sources.
144
145 (I would be interested to hear about other random data sources for
146 possible inclusion in future versions of this module.)
147
148 Random Devices
149 Most OSs offer some sort of device for acquiring random
150 numbers. The most common are /dev/urandom and /dev/random.
151 You can specify the use of these devices for acquiring the seed
152 for the PRNG when you declare this module:
153
154 use Math::Random::MT::Auto '/dev/urandom';
155 # or
156 my $prng = Math::Random::MT::Auto->new('SOURCE' => '/dev/random');
157
158 or they can be specified when using "srand".
159
160 srand('/dev/random');
161 # or
162 $prng->srand('/dev/urandom');
163
164 The devices are accessed in non-blocking mode so that if there
165 is insufficient data when they are read, the application will
166 not hang waiting for more.
167
168 File of Binary Data
169 Since the above devices are just files as far as Perl is
170 concerned, you can also use random data previously stored in
171 files (in binary format).
172
173 srand('C:\\Temp\\RANDOM.DAT');
174 # or
175 $prng->srand('/tmp/random.dat');
176
177 Internet Sites
178 This module provides support for acquiring seed data from
179 several Internet sites: random.org, HotBits and
180 RandomNumbers.info. An Internet connection and LWP::UserAgent
181 are required to utilize these sources.
182
183 use Math::Random::MT::Auto 'random_org';
184 # or
185 use Math::Random::MT::Auto 'hotbits';
186 # or
187 use Math::Random::MT::Auto 'rn_info';
188
189 If you connect to the Internet through an HTTP proxy, then you
190 must set the http_proxy variable in your environment when using
191 these sources. (See "Proxy attributes" in LWP::UserAgent.)
192
193 The HotBits site will only provide a maximum of 2048 bytes of
194 data per request, and RandomNumbers.info's maximum is 1000. If
195 you want to get the full seed from these sites, then you can
196 specify the source multiple times:
197
198 my $prng = Math::Random::MT::Auto->new('SOURCE' => ['hotbits',
199 'hotbits']);
200
201 or specify multiple sources:
202
203 use Math::Random::MT::Auto qw(rn_info hotbits random_org);
204
205 Windows XP Random Data
206 Under MSWin32 or Cygwin on Windows XP, you can acquire random
207 seed data from the system.
208
209 use Math::Random::MT::Auto 'win32';
210
211 To utilize this option, you must have the Win32::API module
212 installed.
213
214 User-defined Seeding Source
215 A subroutine reference may be specified as a seeding source.
216 When called, it will be passed three arguments: A array
217 reference where seed data is to be added, and the number of
218 integers (64- or 32-bit as the case may be) needed.
219
220 sub MySeeder
221 {
222 my $seed = $_[0];
223 my $need = $_[1];
224
225 while ($need--) {
226 my $data = ...; # Get seed data from your source
227 ...
228 push(@{$seed}, $data);
229 }
230 }
231
232 my $prng = Math::Random::MT::Auto->new('SOURCE' => \&MySeeder);
233
234 The default list of seeding sources is determined when the module
235 is loaded. Under MSWin32 or Cygwin on Windows XP, "win32" is added
236 to the list if Win32::API is available. Otherwise, /dev/urandom
237 and then /dev/random are checked. The first one found is added to
238 the list. Finally, "random_org" is added.
239
240 For the functional interface to the standalone PRNG, these defaults
241 can be overridden by specifying the desired sources when the module
242 is declared, or through the use of the "srand" subroutine.
243 Similarly for the OO interface, they can be overridden in the
244 ->new() method when the PRNG is created, or later using the "srand"
245 method.
246
247 Optionally, the maximum number of integers (64- or 32-bits as the
248 case may be) to be acquired from a particular source may be
249 specified:
250
251 # Get at most 1024 bytes from random.org
252 # Finish the seed using data from /dev/urandom
253 use Math::Random::MT::Auto 'random_org' => (1024 / $Config{'uvsize'}),
254 '/dev/urandom';
255
256 Delayed Seeding
257 Normally, the standalone PRNG is automatically seeded when the
258 module is loaded. This behavior can be modified by supplying the
259 ":!auto" (or ":noauto") flag when the module is declared. (The
260 PRNG will still be seeded using data such as time() and PID ($$),
261 just in case.) When the ":!auto" option is used, the "srand"
262 subroutine should be imported, and then run before calling any of
263 the random number deviates.
264
265 use Math::Random::MT::Auto qw(rand srand :!auto);
266 ...
267 srand();
268 ...
269 my $rn = rand(10);
270
271 Delayed Importation
272 If you want to delay the importation of this module using require, then
273 you must execute its "->import()" method to complete the module's
274 initialization:
275
276 eval {
277 require Math::Random::MT::Auto;
278 # You may add options to the import call, if desired.
279 Math::Random::MT::Auto->import();
280 };
281
283 my $obj = $MRMA::PRNG;
284 $MRMA::PRNG is the object that represents the standalone PRNG.
285
287 The OO interface for this module allows you to create multiple,
288 independent PRNGs.
289
290 If your application will only be using the OO interface, then declare
291 this module using the :!auto flag to forestall the automatic seeding of
292 the standalone PRNG:
293
294 use Math::Random::MT::Auto ':!auto';
295
296 Math::Random::MT::Auto->new
297 my $prng = Math::Random::MT::Auto->new( %options );
298
299 Creates a new PRNG. With no options, the PRNG is seeded using the
300 default sources that were determined when the module was loaded, or
301 that were last supplied to the "srand" subroutine.
302
303 'STATE' => $prng_state
304 Sets the newly created PRNG to the specified state. The PRNG
305 will then function as a clone of the RPNG that the state was
306 obtained from (at the point when then state was obtained).
307
308 When the "STATE" option is used, any other options are just
309 stored (i.e., they are not acted upon).
310
311 'SEED' => $seed_array_ref
312 When the "STATE" option is not used, this option seeds the
313 newly created PRNG using the supplied seed data. Otherwise,
314 the seed data is just copied to the new object.
315
316 'SOURCE' => 'source'
317 'SOURCE' => ['source', ...]
318 Specifies the seeding source(s) for the PRNG. If the "STATE"
319 and "SEED" options are not used, then seed data will be
320 immediately fetched using the specified sources, and used to
321 seed the PRNG.
322
323 The source list is retained for later use by the "srand"
324 method. The source list may be replaced by calling the "srand"
325 method.
326
327 'SOURCES', 'SRC' and 'SRCS' can all be used as synonyms for
328 'SOURCE'.
329
330 The options above are also supported using lowercase and mixed-case
331 names (e.g., 'Seed', 'src', etc.).
332
333 $obj->new
334 my $prng2 = $prng1->new( %options );
335
336 Creates a new PRNG in the same manner as
337 "Math::Random::MT::Auto->new".
338
339 $obj->clone
340 my $prng2 = $prng1->clone();
341
342 Creates a new PRNG that is a copy of the referenced PRNG.
343
345 When any of the functions listed below are invoked as subroutines, they
346 operates with respect to the standalone PRNG. For example:
347
348 my $rand = rand();
349
350 When invoked as methods, they operate on the referenced PRNG object:
351
352 my $rand = $prng->rand();
353
354 For brevity, only usage examples for the functional interface are given
355 below.
356
357 rand
358 my $rn = rand();
359 my $rn = rand($num);
360
361 Behaves exactly like Perl's built-in rand, returning a number
362 uniformly distributed in [0, $num). ($num defaults to 1.)
363
364 NOTE: If you still need to access Perl's built-in rand function,
365 you can do so using "CORE::rand()".
366
367 irand
368 my $int = irand();
369
370 Returns a random integer. For 32-bit integer Perl, the range is 0
371 to 2^32-1 (0xFFFFFFFF) inclusive. For 64-bit integer Perl, it's 0
372 to 2^64-1 inclusive.
373
374 This is the fastest way to obtain random numbers using this module.
375
376 shuffle
377 my @shuffled = shuffle($data, ...);
378 my @shuffled = shuffle(@data);
379
380 Returns an array of the random ordering of the supplied arguments
381 (i.e., shuffled) by using the Fisher-Yates shuffling algorithm. It
382 can also be called to return an array reference:
383
384 my $shuffled = shuffle($data, ...);
385 my $shuffled = shuffle(@data);
386
387 If called with a single array reference (fastest method), the
388 contents of the array are shuffled in situ:
389
390 shuffle(\@data);
391
392 gaussian
393 my $gn = gaussian();
394 my $gn = gaussian($sd);
395 my $gn = gaussian($sd, $mean);
396
397 Returns floating-point random numbers from a Gaussian (normal)
398 distribution (i.e., numbers that fit a bell curve). If called with
399 no arguments, the distribution uses a standard deviation of 1, and
400 a mean of 0. Otherwise, the supplied argument(s) will be used for
401 the standard deviation, and the mean.
402
403 exponential
404 my $xn = exponential();
405 my $xn = exponential($mean);
406
407 Returns floating-point random numbers from an exponential
408 distribution. If called with no arguments, the distribution uses a
409 mean of 1. Otherwise, the supplied argument will be used for the
410 mean.
411
412 An example of an exponential distribution is the time interval
413 between independent Poisson-random events such as radioactive
414 decay. In this case, the mean is the average time between events.
415 This is called the mean life for radioactive decay, and its inverse
416 is the decay constant (which represents the expected number of
417 events per unit time). The well known term half-life is given by
418 "mean * ln(2)".
419
420 erlang
421 my $en = erlang($order);
422 my $en = erlang($order, $mean);
423
424 Returns floating-point random numbers from an Erlang distribution
425 of specified order. The order must be a positive integer (> 0).
426 The mean, if not specified, defaults to 1.
427
428 The Erlang distribution is the distribution of the sum of $order
429 independent identically distributed random variables each having an
430 exponential distribution. (It is a special case of the gamma
431 distribution for which $order is a positive integer.) When "$order
432 = 1", it is just the exponential distribution. It is named after
433 A. K. Erlang who developed it to predict waiting times in queuing
434 systems.
435
436 poisson
437 my $pn = poisson($mean);
438 my $pn = poisson($rate, $time);
439
440 Returns integer random numbers (>= 0) from a Poisson distribution
441 of specified mean (rate * time = mean). The mean must be a
442 positive value (> 0).
443
444 The Poisson distribution predicts the probability of the number of
445 Poisson-random events occurring in a fixed time if these events
446 occur with a known average rate. Examples of events that can be
447 modeled as Poisson distributions include:
448
449 · The number of decays from a radioactive sample within a
450 given time period.
451
452 · The number of cars that pass a certain point on a road
453 within a given time period.
454
455 · The number of phone calls to a call center per minute.
456
457 · The number of road kill found per a given length of road.
458
459 binomial
460 my $bn = binomial($prob, $trials);
461
462 Returns integer random numbers (>= 0) from a binomial distribution.
463 The probability ($prob) must be between 0.0 and 1.0 (inclusive),
464 and the number of trials must be >= 0.
465
466 The binomial distribution is the discrete probability distribution
467 of the number of successes in a sequence of $trials independent
468 Bernoulli trials (i.e., yes/no experiments), each of which yields
469 success with probability $prob.
470
471 If the number of trials is very large, the binomial distribution
472 may be approximated by a Gaussian distribution. If the average
473 number of successes is small ("$prob * $trials < 1"), then the
474 binomial distribution can be approximated by a Poisson
475 distribution.
476
477 srand
478 srand();
479 srand('source', ...);
480
481 This (re)seeds the PRNG. It may be called anytime reseeding of the
482 PRNG is desired (although this should normally not be needed).
483
484 When the :!auto flag is used, the "srand" subroutine should be
485 called before any other access to the standalone PRNG.
486
487 When called without arguments, the previously determined/specified
488 seeding source(s) will be used to seed the PRNG.
489
490 Optionally, seeding sources may be supplied as arguments as when
491 using the 'SOURCE' option. (These sources will be saved and used
492 again if "srand" is subsequently called without arguments).
493
494 # Get 250 integers of seed data from Hotbits,
495 # and then get the rest from /dev/random
496 srand('hotbits' => 250, '/dev/random');
497
498 If called with integer data (a list of one or more value, or an
499 array of values), or a reference to an array of integers, these
500 data will be passed to "set_seed" for use in reseeding the PRNG.
501
502 NOTE: If you still need to access Perl's built-in srand function,
503 you can do so using "CORE::srand($seed)".
504
505 get_seed
506 my @seed = get_seed();
507 # or
508 my $seed = get_seed();
509
510 Returns an array or an array reference containing the seed last
511 sent to the PRNG.
512
513 NOTE: Changing the data in the array will not cause any changes in
514 the PRNG (i.e., it will not reseed it). You need to use "srand" or
515 "set_seed" for that.
516
517 set_seed
518 set_seed($seed, ...);
519 set_seed(@seed);
520 set_seed(\@seed);
521
522 When called with integer data (a list of one or more value, or an
523 array of values), or a reference to an array of integers, these
524 data will be used to reseed the PRNG.
525
526 Together with "get_seed", "set_seed" may be useful for setting up
527 identical sequences of random numbers based on the same seed.
528
529 It is possible to seed the PRNG with more than 19968 bits of data
530 (312 64-bit integers or 624 32-bit integers). However, doing so
531 does not make the PRNG "more random" as 19968 bits more than covers
532 all the possible PRNG state vectors.
533
534 get_state
535 my @state = get_state();
536 # or
537 my $state = get_state();
538
539 Returns an array (for list context) or an array reference (for
540 scalar context) containing the current state vector of the PRNG.
541
542 Note that the state vector is not a full serialization of the PRNG.
543 (See "Serialization" below.)
544
545 set_state
546 set_state(@state);
547 # or
548 set_state($state);
549
550 Sets a PRNG to the state contained in an array or array reference
551 containing the state previously obtained using "get_state".
552
553 # Get the current state of the PRNG
554 my @state = get_state();
555
556 # Run the PRNG some more
557 my $rand1 = irand();
558
559 # Restore the previous state of the PRNG
560 set_state(@state);
561
562 # Get another random number
563 my $rand2 = irand();
564
565 # $rand1 and $rand2 will be equal.
566
567 CAUTION: It should go without saying that you should not modify
568 the values in the state vector obtained from "get_state". Doing so
569 and then feeding it to "set_state" would be (to say the least)
570 naughty.
571
573 By using Object::InsideOut, Math::Random::MT::Auto's PRNG objects
574 support the following capabilities:
575
576 Cloning
577 Copies of PRNG objects can be created using the "->clone()" method.
578
579 my $prng2 = $prng->clone();
580
581 See "Object Cloning" in Object::InsideOut for more details.
582
583 Serialization
584 PRNG objects can be serialized using the "->dump()" method.
585
586 my $array_ref = $prng->dump();
587 # or
588 my $string = $prng->dump(1);
589
590 Serialized object can then be converted back into PRNG objects:
591
592 my $prng2 = Object::InsideOut->pump($array_ref);
593
594 See "Object Serialization" in Object::InsideOut for more details.
595
596 Serialization using Storable is also supported:
597
598 use Storable qw(freeze thaw);
599
600 BEGIN {
601 $Math::Random::MT::Auto::storable = 1;
602 }
603 use Math::Random::MT::Auto ...;
604
605 my $prng = Math::Random::MT::Auto->new();
606
607 my $tmp = $prng->freeze();
608 my $prng2 = thaw($tmp);
609
610 See "Storable" in Object::InsideOut for more details.
611
612 NOTE: Code refs cannot be serialized. Therefore, any "User-defined
613 Seeding Source" subroutines used in conjunction with "srand" will be
614 filtered out from the serialized results.
615
616 Coercion
617 Various forms of object coercion are supported through the overload
618 mechanism. For instance, you can to use a PRNG object directly in a
619 string:
620
621 my $prng = Math::Random::MT::Auto->new();
622 print("Here's a random integer: $prng\n");
623
624 The stringification of the PRNG object is accomplished by calling
625 "->irand()" on the object, and returning the integer so obtained as the
626 coerced result.
627
628 A similar overload coercion is performed when the object is used in a
629 numeric context:
630
631 my $neg_rand = 0 - $prng;
632
633 (See "BUGS AND LIMITATIONS" regarding numeric overloading on 64-bit
634 integer Perls prior to 5.10.)
635
636 In a boolean context, the coercion returns true or false based on
637 whether the call to "->irand()" returns an odd or even result:
638
639 if ($prng) {
640 print("Heads - I win!\n");
641 } else {
642 print("Tails - You lose.\n");
643 }
644
645 In an array context, the coercion returns a single integer result:
646
647 my @rands = @{$prng};
648
649 This may not be all that useful, so you can call the "->array()" method
650 directly with a integer argument for the number of random integers
651 you'd like:
652
653 # Get 20 random integers
654 my @rands = @{$prng->array(20)};
655
656 Finally, a PRNG object can be used to produce a code reference that
657 will return random integers each time it is invoked:
658
659 my $rand = \&{$prng};
660 my $int = &$rand;
661
662 See "Object Coercion" in Object::InsideOut for more details.
663
664 Thread Support
665 Math::Random::MT::Auto provides thread support to the extent documented
666 in "THREAD SUPPORT" in Object::InsideOut.
667
668 In a threaded application (i.e., "use threads;"), the standalone PRNG
669 and all the PRNG objects from one thread will be copied and made
670 available in a child thread.
671
672 To enable the sharing of PRNG objects between threads, do the following
673 in your application:
674
675 use threads;
676 use threads::shared;
677
678 BEGIN {
679 $Math::Random::MT::Auto::shared = 1;
680 }
681 use Math::Random::MT::Auto ...;
682
683 NOTE: Code refs cannot be shared between threads. Therefore, you cannot
684 use "User-defined Seeding Source" subroutines in conjunction with
685 "srand" when "use threads::shared;" is in effect.
686
687 Depending on your needs, when using threads, but not enabling thread-
688 sharing of PRNG objects as per the above, you may want to perform an
689 "srand" call on the standalone PRNG and/or your PRNG objects inside the
690 threaded code so that the pseudorandom number sequences generated in
691 each thread differs.
692
693 use threads;
694 use Math::Random:MT::Auto qw(irand srand);
695
696 my $prng = Math::Random:MT::Auto->new();
697
698 sub thr_code
699 {
700 srand();
701 $prng->srand();
702
703 ....
704 }
705
707 Cloning the standalone PRNG to an object
708 use Math::Random::MT::Auto qw(get_state);
709
710 my $prng = Math::Random::MT::Auto->new('STATE' => scalar(get_state()));
711
712 or using the standalone PRNG object directly:
713
714 my $prng = $Math::Random::MT::Auto::SA_PRNG->clone();
715
716 The standalone PRNG and the PRNG object will now return the same
717 sequence of pseudorandom numbers.
718
719 Included in this module's distribution are several sample programs
720 (located in the samples sub-directory) that illustrate the use of the
721 various random number deviates and other features supported by this
722 module.
723
725 WARNINGS
726 Warnings are generated by this module primarily when problems are
727 encountered while trying to obtain random seed data for the PRNGs.
728 This may occur after the module is loaded, after a PRNG object is
729 created, or after calling "srand".
730
731 These seed warnings are not critical in nature. The PRNG will still be
732 seeded (at a minimum using data such as time() and PID ($$)), and can
733 be used safely.
734
735 The following illustrates how such warnings can be trapped for
736 programmatic handling:
737
738 my @WARNINGS;
739 BEGIN {
740 $SIG{__WARN__} = sub { push(@WARNINGS, @_); };
741 }
742
743 use Math::Random::MT::Auto;
744
745 # Check for standalone PRNG warnings
746 if (@WARNINGS) {
747 # Handle warnings as desired
748 ...
749 # Clear warnings
750 undef(@WARNINGS);
751 }
752
753 my $prng = Math::Random::MT::Auto->new();
754
755 # Check for PRNG object warnings
756 if (@WARNINGS) {
757 # Handle warnings as desired
758 ...
759 # Clear warnings
760 undef(@WARNINGS);
761 }
762
763 · Failure opening random device '...': ...
764
765 The specified device (e.g., /dev/random) could not be opened by the
766 module. Further diagnostic information should be included with
767 this warning message (e.g., device does not exist, permission
768 problem, etc.).
769
770 · Failure setting non-blocking mode on random device '...': ...
771
772 The specified device could not be set to non-blocking mode.
773 Further diagnostic information should be included with this warning
774 message (e.g., permission problem, etc.).
775
776 · Failure reading from random device '...': ...
777
778 A problem occurred while trying to read from the specified device.
779 Further diagnostic information should be included with this warning
780 message.
781
782 · Random device '...' exhausted
783
784 The specified device did not supply the requested number of random
785 numbers for the seed. It could possibly occur if /dev/random is
786 used too frequently. It will occur if the specified device is a
787 file, and it does not have enough data in it.
788
789 · Failure creating user-agent: ...
790
791 To utilize the option of acquiring seed data from Internet sources,
792 you need to install the LWP::UserAgent module.
793
794 · Failure contacting XXX: ...
795
796 · Failure getting data from XXX: 500 Can't connect to ... (connect:
797 timeout)
798
799 You need to have an Internet connection to utilize "Internet Sites"
800 as random seed sources.
801
802 If you connect to the Internet through an HTTP proxy, then you must
803 set the http_proxy variable in your environment when using the
804 Internet seed sources. (See "Proxy attributes" in LWP::UserAgent.)
805
806 This module sets a 5 second timeout for Internet connections so
807 that if something goes awry when trying to get seed data from an
808 Internet source, your application will not hang for an inordinate
809 amount of time.
810
811 · You have exceeded your 24-hour quota for HotBits.
812
813 The HotBits site has a quota on the amount of data you can request
814 in a 24-hour period. (I don't know how big the quota is.)
815 Therefore, this source may fail to provide any data if used too
816 often.
817
818 · Failure acquiring Win XP random data: ...
819
820 A problem occurred while trying to acquire seed data from the
821 Window XP random source. Further diagnostic information should be
822 included with this warning message.
823
824 · Unknown seeding source: ...
825
826 The specified seeding source is not recognized by this module.
827
828 This error also occurs if you try to use the win32 random data
829 source on something other than MSWin32 or Cygwin on Windows XP.
830
831 See "Seeding Sources" for more information.
832
833 · No seed data obtained from sources - Setting minimal seed using PID
834 and time
835
836 This message will occur in combination with some other message(s)
837 above.
838
839 If the module cannot acquire any seed data from the specified
840 sources, then data such as time() and PID ($$) will be used to seed
841 the PRNG.
842
843 · Partial seed - only X of Y
844
845 This message will occur in combination with some other message(s)
846 above. It informs you of how much seed data was acquired vs. how
847 much was needed.
848
849 ERRORS
850 This module uses "Exception::Class" for reporting errors. The base
851 error class provided by Object::InsideOut is "OIO". Here is an example
852 of the basic manner for trapping and handling errors:
853
854 my $obj;
855 eval { $obj = Math::Random::MT::Auto->new(); };
856 if (my $e = OIO->caught()) {
857 print(STDERR "Failure creating new PRNG: $e\n");
858 exit(1);
859 }
860
861 Errors specific to this module have a base class of "MRMA::Args", and
862 have the following error messages:
863
864 · Missing argument to 'set_seed'
865
866 "set_seed" must be called with an array ref, or a list of integer
867 seed data.
868
869 · Invalid state vector
870
871 "set_state" was called with an incompatible state vector. For
872 example, a state vector from a 32-bit integer version of Perl being
873 used with a 64-bit integer version of Perl.
874
876 Under Cygwin, this module is 2.5 times faster than Math::Random::MT,
877 and under Solaris, it's more than four times faster. (Math::Random::MT
878 fails to build under Windows.) The file samples/timings.pl, included
879 in this module's distribution, can be used to compare timing results.
880
881 If you connect to the Internet via a phone modem, acquiring seed data
882 may take a second or so. This delay might be apparent when your
883 application is first started, or when creating a new PRNG object. This
884 is especially true if you specify multiple "Internet Sites" (so as to
885 get the full seed from them) as this results in multiple accesses to
886 the Internet. (If /dev/urandom is available on your machine, then you
887 should definitely consider using the Internet sources only as a
888 secondary source.)
889
891 Installation
892 A 'C' compiler is required for building this module.
893
894 This module uses the following 'standard' modules for installation:
895
896 ExtUtils::MakeMaker
897 File::Spec
898 Test::More
899
900 Operation
901 Requires Perl 5.6.0 or later.
902
903 This module uses the following 'standard' modules:
904
905 Scalar::Util (1.18 or later)
906 Carp
907 Fcntl
908 XSLoader
909
910 This module uses the following modules available through CPAN:
911
912 Object::InsideOut (2.06 or later)
913 Exception::Class (1.22 or later)
914
915 To utilize the option of acquiring seed data from Internet sources, you
916 need to install the LWP::UserAgent module.
917
918 To utilize the option of acquiring seed data from the system's random
919 data source under MSWin32 or Cygwin on Windows XP, you need to install
920 the Win32::API module.
921
923 This module does not support multiple inheritance.
924
925 For Perl prior to 5.10, there is a bug in the overload code associated
926 with 64-bit integers that causes the integer returned by the
927 "->irand()" call to be coerced into a floating-point number. The
928 workaround in this case is to call "->irand()" directly:
929
930 # my $neg_rand = 0 - $prng; # Result is a floating-point number
931 my $neg_rand = 0 - $prng->irand(); # Result is an integer number
932
933 The transfer of state vector arrays and serialized objects between 32-
934 and 64-bit integer versions of Perl is not supported, and will produce
935 an 'Invalid state vector' error.
936
937 Please submit any bugs, problems, suggestions, patches, etc. to:
938 <http://rt.cpan.org/Public/Dist/Display.html?Name=Math-Random-MT-Auto>
939
941 Math::Random::MT::Auto on MetaCPAN:
942 <https://metacpan.org/release/Math-Random-MT-Auto>
943
944 Code repository: <https://github.com/jdhedden/Math-Random-MT-Auto>
945
946 Sample code in the examples directory of this distribution on CPAN.
947
948 The Mersenne Twister is the (current) quintessential pseudorandom
949 number generator. It is fast, and has a period of 2^19937 - 1. The
950 Mersenne Twister algorithm was developed by Makoto Matsumoto and Takuji
951 Nishimura. It is available in 32- and 64-bit integer versions.
952 <http://www.math.sci.hiroshima-u.ac.jp/~m-mat/MT/emt.html>
953
954 Wikipedia entries on the Mersenne Twister and pseudorandom number
955 generators, in general:
956 <http://en.wikipedia.org/wiki/Mersenne_twister>, and
957 <http://en.wikipedia.org/wiki/Pseudorandom_number_generator>
958
959 random.org generates random numbers from radio frequency noise.
960 <http://random.org/>
961
962 HotBits generates random number from a radioactive decay source.
963 <http://www.fourmilab.ch/hotbits/>
964
965 RandomNumbers.info generates random number from a quantum optical
966 source. <http://www.randomnumbers.info/>
967
968 OpenBSD random devices:
969 <http://www.openbsd.org/cgi-bin/man.cgi?query=arandom&sektion=4&apropos=0&manpath=OpenBSD+Current&arch=>
970
971 FreeBSD random devices:
972 <http://www.freebsd.org/cgi/man.cgi?query=random&sektion=4&apropos=0&manpath=FreeBSD+5.3-RELEASE+and+Ports>
973
974 Man pages for /dev/random and /dev/urandom on
975 Unix/Linux/Cygwin/Solaris:
976 <http://www.die.net/doc/linux/man/man4/random.4.html>
977
978 Windows XP random data source:
979 <http://blogs.msdn.com/michael_howard/archive/2005/01/14/353379.aspx>
980
981 Fisher-Yates Shuffling Algorithm:
982 <http://en.wikipedia.org/wiki/Shuffling_playing_cards#Shuffling_algorithms>,
983 and shuffle() in List::Util
984
985 Non-uniform random number deviates in Numerical Recipes in C, Chapters
986 7.2 and 7.3: <http://www.library.cornell.edu/nr/bookcpdf.html>
987
988 Inside-out Object Model: Object::InsideOut
989
990 Math::Random::MT::Auto::Range - Subclass of Math::Random::MT::Auto that
991 creates range-valued PRNGs
992
993 LWP::UserAgent
994
995 Math::Random::MT
996
997 Net::Random
998
1000 Jerry D. Hedden, <jdhedden AT cpan DOT org>
1001
1003 A C-Program for MT19937 (32- and 64-bit versions), with initialization
1004 improved 2002/1/26. Coded by Takuji Nishimura and Makoto Matsumoto,
1005 and including Shawn Cokus's optimizations.
1006
1007 Copyright (C) 1997 - 2004, Makoto Matsumoto and Takuji Nishimura,
1008 All rights reserved.
1009 Copyright (C) 2005, Mutsuo Saito, All rights reserved.
1010 Copyright 2005 - 2009 Jerry D. Hedden <jdhedden AT cpan DOT org>
1011
1012 Redistribution and use in source and binary forms, with or without
1013 modification, are permitted provided that the following conditions are
1014 met:
1015
1016 1. Redistributions of source code must retain the above copyright
1017 notice, this list of conditions and the following disclaimer.
1018
1019 2. Redistributions in binary form must reproduce the above copyright
1020 notice, this list of conditions and the following disclaimer in the
1021 documentation and/or other materials provided with the distribution.
1022
1023 3. The names of its contributors may not be used to endorse or promote
1024 products derived from this software without specific prior written
1025 permission.
1026
1027 THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS
1028 IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED
1029 TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A
1030 PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT
1031 OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL,
1032 SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT
1033 LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE,
1034 DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY
1035 THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT
1036 (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
1037 OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
1038
1039 Any feedback is very welcome.
1040 m-mat AT math DOT sci DOT hiroshima-u DOT ac DOT jp
1041 http://www.math.sci.hiroshima-u.ac.jp/~m-mat/MT/emt.html
1042
1043
1044
1045perl v5.32.0 2020-07-28 Math::Random::MT::Auto(3)