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NAG Toolbox: nag_rand_init_skipahead (g05kj)
Purpose
nag_rand_init_skipahead (g05kj) allows for the generation of multiple, independent, sequences of pseudorandom numbers using the skip-ahead method.
The base pseudorandom number sequence defined by
state is advanced
places.
Syntax
Description
nag_rand_init_skipahead (g05kj) adjusts a base generator to allow multiple, independent, sequences of pseudorandom numbers to be generated via the skip-ahead method (see the
G05 Chapter Introduction for details).
If, prior to calling
nag_rand_init_skipahead (g05kj) the base generator defined by
state would produce random numbers
, then after calling
nag_rand_init_skipahead (g05kj) the generator will produce random numbers
.
One of the initialization functions
nag_rand_init_repeat (g05kf) (for a repeatable sequence if computed sequentially) or
nag_rand_init_nonrepeat (g05kg) (for a non-repeatable sequence) must be called prior to the first call to
nag_rand_init_skipahead (g05kj).
The skip-ahead algorithm can be used in conjunction with any of the six base generators discussed in
Chapter G05.
References
Haramoto H, Matsumoto M, Nishimura T, Panneton F and L'Ecuyer P (2008) Efficient jump ahead for F2-linear random number generators INFORMS J. on Computing 20(3) 385–390
Knuth D E (1981) The Art of Computer Programming (Volume 2) (2nd Edition) Addison–Wesley
Parameters
Compulsory Input Parameters
- 1:
– int64int32nag_int scalar
-
, the number of places to skip ahead.
Constraint:
.
- 2:
– int64int32nag_int array
-
Note: the actual argument supplied
must be the array
state supplied to the initialization routines
nag_rand_init_repeat (g05kf) or
nag_rand_init_nonrepeat (g05kg).
Contains information on the selected base generator and its current state.
Optional Input Parameters
None.
Output Parameters
- 1:
– int64int32nag_int array
-
Contains updated information on the state of the generator.
- 2:
– int64int32nag_int scalar
unless the function detects an error (see
Error Indicators and Warnings).
Error Indicators and Warnings
Errors or warnings detected by the function:
-
-
Constraint: .
-
-
On entry,
state vector has been corrupted or not initialized.
-
-
On entry, cannot use skip-ahead with the base generator defined by
state.
-
-
On entry, the base generator is Mersenne Twister, but the
state vector defined on initialization is not large enough to perform a skip ahead. See the initialization function
nag_rand_init_repeat (g05kf) or
nag_rand_init_nonrepeat (g05kg).
-
An unexpected error has been triggered by this routine. Please
contact
NAG.
-
Your licence key may have expired or may not have been installed correctly.
-
Dynamic memory allocation failed.
Accuracy
Not applicable.
Further Comments
Calling
nag_rand_init_skipahead (g05kj) and then generating a series of uniform values using
nag_rand_dist_uniform01 (g05sa) is more efficient than, but equivalent to, calling
nag_rand_dist_uniform01 (g05sa) and discarding the first
values. This may not be the case for distributions other than the uniform, as some distributional generators require more than one uniform variate to generate a single draw from the required distribution.
To skip ahead
places you can either
(a) |
call nag_rand_init_skipahead (g05kj) once with , or |
(b) |
call nag_rand_init_skipahead (g05kj) times with , using the state vector output by the previous call as input to the next call |
both approaches would result in the same sequence of values. When working in a multithreaded environment, where you want to generate (at most)
values on each of
threads, this would translate into either
(a) |
spawning the threads and calling nag_rand_init_skipahead (g05kj) once on each thread with , where is a thread ID, taking a value between and , or |
(b) |
calling nag_rand_init_skipahead (g05kj) on a single thread with , spawning the threads and then calling nag_rand_init_skipahead (g05kj) a further times on each of the thread. |
Due to the way skip ahead is implemented for the Mersenne Twister, approach
(a) will tend to be more efficient if more than 30 threads are being used (i.e.,
), otherwise approach
(b) should probably be used. For all other base generators, approach
(a) should be used. See the
G05 Chapter Introduction for more details.
Example
This example initializes a base generator using
nag_rand_init_repeat (g05kf) and then uses
nag_rand_init_skipahead (g05kj) to advance the sequence 50 places before generating five variates from a uniform distribution using
nag_rand_dist_uniform01 (g05sa).
Open in the MATLAB editor:
g05kj_example
function g05kj_example
fprintf('g05kj example results\n\n');
seed = [int64(1762543)];
genid = int64(1);
subid = int64(1);
lseed = int64(1);
[state, ifail] = g05kf( ...
genid, subid, seed);
n = int64(50);
[state, ifail] = g05kj( ...
n, state);
nv = int64(5);
[state, x, ifail] = g05sa(...
nv, state);
disp(x);
g05kj example results
0.2071
0.8413
0.8817
0.5494
0.5248
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