# duplicated Individuals in the same population

I implemented the Java example provided with the jenes library (Tutorial 5: ObjectChromosome‎). I found that the individuals in the population are all the same (i.e. no randomization is happening);

I added the following code after `ga.evolve();` in the OCProblem class to print each individual in the population:

``````ga.evolve();
Population pop= ga.getCurrentPopulation();
ArrayList population_test= pop.getIndividuals();

for(int n=0; n < population_test.size(); n++){
Individual<ObjectChromosome> individual=(Individual<ObjectChromosome>) population_test.get(n);
ObjectChromosome chrom = individual.getChromosome();

int i1 = (Integer)chrom.getValue(0);
int i2 = (Integer)chrom.getValue(1);
double i3= (double)chrom.getValue(2);
boolean i4= (boolean)chrom.getValue(3);
Color i5= (Color)chrom.getValue(4);

System.out.println("[ "+ i1+" , "+ i2+" , "+ i3+" , "+ i4+" , "+ i5+" ] ");
}
``````

the output was shocking the individuals are duplicated! This is the output from the previous code

TUTORIAL 5: Find the sequence of colors nearest to the target. [ 6 , 20 , 0.5623470035526044 , false , (RED) ] [ 6 , 20 ,0.5623470035526044 , false , (RED) ] [ 6 , 20 , 0.5623470035526044 , false , (RED) ] [ 6 , 20 , 0.5623470035526044 , false , (RED) ] [ 6 , 20 , 0.5623470035526044 , false , (RED) ] [ 6 , 20 ,0.5623470035526044 , false , (RED) ] [ 6 , 20 , 0.5623470035526044 , false , (RED) ] [ 6 , 20 , 0.5623470035526044 , false , (RED) ] [ 6 ,20 , 0.5623470035526044 , false , (RED) ] [ 6 , 20 ,0.5623470035526044 , false , (RED) ]

Does anyone know why the random method in the jenes library doesn't work on the population?

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Disclaimer: I don't have the slightest (well, maybe some) idea about genetic algorihtms, or this library in particular.

Nevertheless, I will venture a guess:

1) Each loop you get:

``````ObjectChromosome chrom = individual.getChromosome();
``````

An then happily discard this information, using some variable named template which is not defined in this scope:

``````int i1 = (Integer)template.getValue(0);
``````

etc...

2) This guess is somewhat beyond my immediate knowledge: check all populations. Is it really impossible all specimens evolved to have the same genetic fingerprint?

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I edited the code in the post "My bad, I copied the code wrongly ". unfortunately this is not the problem. I believe it's some thing in the randomization method because when I debug and trace the code , I always have these duplicate individuals. Anyway thanks for your comment :) –  Abreal Jul 20 '12 at 15:14