197 lines
5.2 KiB
PHP
197 lines
5.2 KiB
PHP
<?php define('__ROOT__', dirname(dirname(__FILE__)) );
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require_once __ROOT__.'/autoloader.php';
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use \neuralnetwork\core\Genome;
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use \neuralnetwork\core\NeuralNetwork;
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use \filemanager\core\FileManager;
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function behaviourtest1($in){ return [$in[0] + $in[1] - $in[2]]; }
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function behaviourtest2($in){ return [ 2*pow($in[0], 2) - 5*$in[1] + 8*$in[2]]; }
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$train = true;
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$guess = !$train;
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if( $train && 'learning_process' ){
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$part = 1;
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echo "Welcome to neural-network.php\n";
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echo "-----------------------------\n\n";
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/* [1] Trying to load neural network
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=========================================================*/
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try{
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$nn = NeuralNetwork::load('test2/test2');
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echo "$part. NeuralNetwork loaded from 'test2/test2'\n"; $part++;
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/* [2] Else, creates it
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=========================================================*/
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}catch(\Exception $e){
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$nn = NeuralNetwork::create(50, 500);
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$nn->setHiddenLayersCount(3); // 3 Hidden layers
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$nn->setHiddenLayerNeuronsCount(4); // Composed with 3 neurons each
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$nn->setInputLayerCount(3); // 3 inputs
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$nn->setOutputLayerCount(1); // 1 output
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$nn->setMutationThreshold(0.3); // mutation 30% each generation
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$nn->setFitnessEnd(-1.5); // Algorithm is done when fitness reaches 0
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$nn->setAntiRegression(true); // That repeats a generation while its fitness is lower than the previous one
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echo "$part. NeuralNetwork configured\n"; $part++;
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$d = [0, 0, 0]; $nn->addSample($d, behaviourtest2($d));
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$d = [0, 0, 1]; $nn->addSample($d, behaviourtest2($d));
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$d = [0, 1, 0]; $nn->addSample($d, behaviourtest2($d));
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$d = [0, 1, 1]; $nn->addSample($d, behaviourtest2($d));
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$d = [1, 0, 0]; $nn->addSample($d, behaviourtest2($d));
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$d = [1, 0, 1]; $nn->addSample($d, behaviourtest2($d));
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$d = [1, 1, 0]; $nn->addSample($d, behaviourtest2($d));
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$d = [1, 1, 1]; $nn->addSample($d, behaviourtest2($d));
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$d = [0, 0, 0]; $nn->addSample($d, behaviourtest2($d));
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$d = [0, 0, 2]; $nn->addSample($d, behaviourtest2($d));
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$d = [0, 2, 0]; $nn->addSample($d, behaviourtest2($d));
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$d = [0, 2, 2]; $nn->addSample($d, behaviourtest2($d));
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$d = [2, 0, 0]; $nn->addSample($d, behaviourtest2($d));
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$d = [2, 0, 2]; $nn->addSample($d, behaviourtest2($d));
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$d = [2, 2, 0]; $nn->addSample($d, behaviourtest2($d));
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$d = [2, 2, 2]; $nn->addSample($d, behaviourtest2($d));
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echo "$part. Samples added to NeuralNetwork\n"; $part++;
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$nn->store('test2/test2', true);
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echo "$part. NeuralNetwork stored to 'test2/test2'\n"; $part++;
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}
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/* [2] Initializing learning routine
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=========================================================*/
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$defaultMT = 0.3;
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$fitness = 0;
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$max_fit = 0;
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$nn->loadLearningRoutine(function($input, $output){
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global $fitness;
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$fitness -= abs($output[0] - behaviourtest2($input)[0]);
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});
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echo "$part. Learning routine initialized.\n"; $part++;
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/* [3] Learning through generations and genomes
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=========================================================*/
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/* (1) For each generation */
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$last_gnr = -1;
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$gen_repeat = 0;
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while( true ){
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if( $nn->gnr > $last_gnr)
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$start = microtime(true);
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$last_gnr = $nn->gnr;
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$max_fit = -1e9;
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$min_fit = 100;
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/* (2) For each genome */
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while( true ){
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$fitness = 0;
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/* (2.1) Get current genome */
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$g = $nn->getGenome();
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echo "\r[x] gnm ".($nn->gnm+1)."/500 on gnr ".($nn->gnr+1)."/50 - x".($gen_repeat+1)." - fit[$min_fit;$max_fit] ";
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/* (2.2) Train genome with random samples */
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for( $r = 0 ; $r < 100 ; $r++ )
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$g->train([rand(0,10), rand(0,10), rand(0,10)]);
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/* (2.3) Set fitness & go to next genome */
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if( $fitness > $max_fit ) $max_fit = $fitness;
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if( $fitness < $min_fit ) $min_fit = $fitness;
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$g->setFitness($fitness);
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if( $nn->gnm >= 500-1 )
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break;
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$nn->nextGenome();
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}
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$nn->nextGenome();
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// If generation evolution, notify
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if( $nn->gnr > $last_gnr){
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echo "\n\t".((microtime(true)-$start))."s\n";
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$gen_repeat = 0;
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}else $gen_repeat++;
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if( is_null($nn->gnr) || $nn->gnr == 50-1 )
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break;
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}
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}
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if( $guess && 'guessing_process' ){
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$part = 1;
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echo "Welcome to neural-network.php\n";
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echo "-----------------------------\n\n";
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/* [1] Trying to load neural network
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=========================================================*/
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try{
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$nn = NeuralNetwork::load('test2/test2');
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echo "$part. NeuralNetwork loaded from 'test2/test2'\n"; $part++;
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/* [2] Else, creates it
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=========================================================*/
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}catch(\Exception $e){
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echo "You must create/train your neural network before using it.\n";
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exit();
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}
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/* [2] Fetch trained genome
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=========================================================*/
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$genome = $nn->getTrainedGenome();
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$genome->setCallback(function($in, $out){
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echo "callback input: ".implode(',', $in)."\n";
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echo "callback output: ".$out[0]."\n";
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echo "callback result: ".implode(',', behaviourtest2($in))."\n";
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});
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$genome->train([rand(0,10), rand(0,10), rand(0,10)]);
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}
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// REWRITE TEST
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// for( $a = 0, $al = 50 ; $a < $al ; $a++ )
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// for( $b = 0, $bl = 20 ; $b < $bl ; $b++ ){
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// print "genome $b/$bl on generation $a/$al \r";
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// usleep(1000*10);
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// }
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?>
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