Ejemplo n.º 1
0
 public function mlparamEvaluationAction()
 {
     $rows = $categories = $series = '';
     $must_wait = 'NO';
     try {
         $dbml = new \PDO($this->container->get('config')['db_conn_chain_ml'], $this->container->get('config')['mysql_user'], $this->container->get('config')['mysql_pwd']);
         $dbml->setAttribute(\PDO::ATTR_ERRMODE, \PDO::ERRMODE_EXCEPTION);
         $dbml->setAttribute(\PDO::ATTR_EMULATE_PREPARES, false);
         $db = $this->container->getDBUtils();
         $where_configs = '';
         $preset = null;
         if (count($_GET) <= 1 || count($_GET) == 2 && array_key_exists('parameval', $_GET) || count($_GET) == 2 && array_key_exists('current_model', $_GET)) {
             $preset = Utils::setDefaultPreset($db, 'mlparameval');
         }
         $selPreset = isset($_GET['presets']) ? $_GET['presets'] : "none";
         $params = array();
         $param_names = array('benchs', 'nets', 'disks', 'mapss', 'iosfs', 'replications', 'iofilebufs', 'comps', 'blk_sizes', 'id_clusters', 'datanodess', 'bench_types', 'vm_sizes', 'vm_coress', 'vm_RAMs', 'types');
         // Order is important
         foreach ($param_names as $p) {
             $params[$p] = Utils::read_params($p, $where_configs, FALSE);
             sort($params[$p]);
         }
         $money = Utils::read_params('money', $where_configs);
         $paramEval = isset($_GET['parameval']) && $_GET['parameval'] != '' ? $_GET['parameval'] : 'maps';
         $minExecs = isset($_GET['minexecs']) ? $_GET['minexecs'] : -1;
         $minExecsFilter = "";
         // FIXME PATCH FOR PARAM LIBRARIES WITHOUT LEGACY
         $where_configs = str_replace("AND .", "AND ", $where_configs);
         $where_configs = str_replace("`id_cluster`", "e.`id_cluster`", $where_configs);
         if ($minExecs > 0) {
             $minExecsFilter = "HAVING COUNT(*) > {$minExecs}";
         }
         $filter_execs = DBUtils::getFilterExecs();
         $options = Utils::getFilterOptions($db);
         $paramOptions = array();
         foreach ($options[$paramEval] as $option) {
             if ($paramEval == 'id_cluster') {
                 $paramOptions[] = $option['name'];
             } else {
                 if ($paramEval == 'comp') {
                     $paramOptions[] = Utils::getCompressionName($option[$paramEval]);
                 } else {
                     if ($paramEval == 'net') {
                         $paramOptions[] = Utils::getNetworkName($option[$paramEval]);
                     } else {
                         if ($paramEval == 'disk') {
                             $paramOptions[] = Utils::getDisksName($option[$paramEval]);
                         } else {
                             $paramOptions[] = $option[$paramEval];
                         }
                     }
                 }
             }
         }
         $benchOptions = $db->get_rows("SELECT DISTINCT bench FROM execs e LEFT JOIN clusters c ON e.id_cluster = c.id_cluster WHERE 1 {$filter_execs} {$where_configs} GROUP BY {$paramEval}, bench order by {$paramEval}");
         // get the result rows
         $query = "SELECT count(*) as count, {$paramEval}, e.id_exec, exec as conf, bench, " . "exe_time, avg(exe_time) avg_exe_time, min(exe_time) min_exe_time " . "from execs e LEFT JOIN clusters c ON e.id_cluster = c.id_cluster WHERE 1 {$filter_execs} {$where_configs}" . "GROUP BY {$paramEval}, bench {$minExecsFilter} order by bench,{$paramEval}";
         $rows = $db->get_rows($query);
         if (!$rows) {
             throw new \Exception("No results for query!");
         }
         $arrayBenchs = array();
         foreach ($paramOptions as $param) {
             foreach ($benchOptions as $bench) {
                 $arrayBenchs[$bench['bench']][$param] = null;
                 $arrayBenchs[$bench['bench']][$param]['y'] = 0;
                 $arrayBenchs[$bench['bench']][$param]['count'] = 0;
             }
         }
         $series = array();
         $bench = '';
         foreach ($rows as $row) {
             if ($paramEval == 'comp') {
                 $row[$paramEval] = Utils::getCompressionName($row['comp']);
             } else {
                 if ($paramEval == 'id_cluster') {
                     $row[$paramEval] = Utils::getClusterName($row[$paramEval], $db);
                 } else {
                     if ($paramEval == 'net') {
                         $row[$paramEval] = Utils::getNetworkName($row['net']);
                     } else {
                         if ($paramEval == 'disk') {
                             $row[$paramEval] = Utils::getDisksName($row['disk']);
                         } else {
                             if ($paramEval == 'iofilebuf') {
                                 $row[$paramEval] /= 1024;
                             }
                         }
                     }
                 }
             }
             $arrayBenchs[$row['bench']][$row[$paramEval]]['y'] = round((int) $row['avg_exe_time'], 2);
             $arrayBenchs[$row['bench']][$row[$paramEval]]['count'] = (int) $row['count'];
         }
         // ----------------------------------------------------
         // Add predictions to the series
         // ----------------------------------------------------
         $jsonData = $jsonHeader = "[]";
         $instance = "";
         $arrayBenchs_pred = array();
         // FIXME PATCH FOR PARAM LIBRARIES WITHOUT LEGACY
         $where_configs = str_replace("AND .", "AND ", $where_configs);
         // compose instance
         $instance = MLUtils::generateSimpleInstance($param_names, $params, true, $db);
         $model_info = MLUtils::generateModelInfo($param_names, $params, true, $db);
         $instances = MLUtils::generateInstances($param_names, $params, true, $db);
         // model for filling
         $possible_models = $possible_models_id = array();
         MLUtils::findMatchingModels($model_info, $possible_models, $possible_models_id, $dbml);
         $current_model = "";
         if (array_key_exists('current_model', $_GET) && in_array($_GET['current_model'], $possible_models_id)) {
             $current_model = $_GET['current_model'];
         }
         if (!empty($possible_models_id)) {
             if ($current_model == "") {
                 $query = "SELECT AVG(ABS(exe_time - pred_time)) AS MAE, AVG(ABS(exe_time - pred_time)/exe_time) AS RAE, p.id_learner FROM predictions p, learners l WHERE l.id_learner = p.id_learner AND p.id_learner IN ('" . implode("','", $possible_models_id) . "') AND predict_code > 0 ORDER BY MAE LIMIT 1";
                 $result = $dbml->query($query);
                 $row = $result->fetch();
                 $current_model = $row['id_learner'];
             }
             $config = $instance . '-' . $current_model . "-parameval";
             $query_cache = "SELECT count(*) as total FROM trees WHERE id_learner = '" . $current_model . "' AND model = '" . $model_info . "'";
             $is_cached_mysql = $dbml->query($query_cache);
             $tmp_result = $is_cached_mysql->fetch();
             $is_cached = $tmp_result['total'] > 0;
             $ret_data = null;
             if (!$is_cached) {
                 // Call to MLFindAttributes, to fetch data
                 $_GET['pass'] = 2;
                 $_GET['unseen'] = 1;
                 $_GET['current_model'] = $current_model;
                 $mlfa1 = new MLFindAttributesController();
                 $mlfa1->container = $this->container;
                 $ret_data = $mlfa1->mlfindattributesAction();
                 if ($ret_data == 1) {
                     $must_wait = "YES";
                     $jsonData = $jsonHeader = '[]';
                 } else {
                     $is_cached_mysql = $dbml->query($query_cache);
                     $tmp_result = $is_cached_mysql->fetch();
                     $is_cached = $tmp_result['total'] > 0;
                 }
             }
             if ($is_cached) {
                 $must_wait = 'NO';
                 $query = "SELECT count(*) as count, {$paramEval}, bench, exe_time, avg(pred_time) avg_pred_time, min(pred_time) min_pred_time " . "FROM predictions e WHERE e.id_learner = '" . $current_model . "' {$filter_execs} {$where_configs}" . "GROUP BY {$paramEval}, bench {$minExecsFilter} order by bench, {$paramEval}";
                 $result = $dbml->query($query);
                 // Initialize array
                 foreach ($paramOptions as $param) {
                     foreach ($benchOptions as $bench) {
                         $arrayBenchs_pred[$bench['bench'] . '_pred'][$param] = null;
                         $arrayBenchs_pred[$bench['bench'] . '_pred'][$param]['y'] = 0;
                         $arrayBenchs_pred[$bench['bench'] . '_pred'][$param]['count'] = 0;
                     }
                 }
                 foreach ($result as $row) {
                     $bench_n = $row['bench'] . '_pred';
                     $class = $row[$paramEval];
                     if ($paramEval == 'comp') {
                         $value = Utils::getCompressionName($class);
                     } else {
                         if ($paramEval == 'id_cluster') {
                             $value = Utils::getClusterName($class, $db);
                         } else {
                             if ($paramEval == 'net') {
                                 $value = Utils::getNetworkName($class);
                             } else {
                                 if ($paramEval == 'disk') {
                                     $value = Utils::getDisksName($class);
                                 } else {
                                     if ($paramEval == 'iofilebuf') {
                                         $value = $class / 1024;
                                     } else {
                                         $value = $class;
                                     }
                                 }
                             }
                         }
                     }
                     if (!in_array($value, $paramOptions)) {
                         $paramOptions[] = $value;
                         foreach ($benchOptions as $bench) {
                             $arrayBenchs_pred[$bench['bench'] . '_pred'][$value] = null;
                             $arrayBenchs_pred[$bench['bench'] . '_pred'][$value]['y'] = 0;
                             $arrayBenchs_pred[$bench['bench'] . '_pred'][$value]['count'] = 0;
                             $arrayBenchs[$bench['bench']][$value] = null;
                             $arrayBenchs[$bench['bench']][$value]['y'] = 0;
                             $arrayBenchs[$bench['bench']][$value]['count'] = 0;
                         }
                     }
                     $arrayBenchs_pred[$bench_n][$value]['y'] = (int) $row['avg_pred_time'];
                     $arrayBenchs_pred[$bench_n][$value]['count'] = (int) $row['count'];
                 }
             }
         }
         // ----------------------------------------------------
         // END - Add predictions to the series
         // ----------------------------------------------------
         asort($paramOptions);
         foreach ($arrayBenchs as $key => $arrayBench) {
             $caregories = '';
             $data_a = null;
             $data_p = null;
             foreach ($paramOptions as $param) {
                 if ($arrayBenchs[$key][$param]['count'] > 0 && empty($arrayBenchs_pred) || !empty($arrayBenchs_pred) && ($arrayBenchs_pred[$key . '_pred'][$param]['count'] > 0 || $arrayBenchs[$key][$param]['count'] > 0)) {
                     $data_a[] = $arrayBenchs[$key][$param];
                     if (!empty($arrayBenchs_pred)) {
                         $data_p[] = $arrayBenchs_pred[$key . '_pred'][$param];
                     }
                     $categories = $categories . "'{$param} " . Utils::getParamevalUnit($paramEval) . "',";
                     // FIXME - Redundant n times performed... don't care now
                 }
             }
             $series[] = array('name' => $key, 'data' => $data_a);
             if (!empty($arrayBenchs_pred)) {
                 $series[] = array('name' => $key . '_pred', 'data' => $data_p);
             }
         }
         $series = json_encode($series);
         if (!empty($arrayBenchs_pred)) {
             $colors = "['#7cb5ec','#9cd5fc','#434348','#636368','#90ed7d','#b0fd9d','#f7a35c','#f7c37c','#8085e9','#a0a5f9','#f15c80','#f17ca0','#e4d354','#f4f374','#8085e8','#a0a5f8','#8d4653','#ad6673','#91e8e1','#b1f8f1']";
         } else {
             $colors = "['#7cb5ec','#434348','#90ed7d','#f7a35c','#8085e9','#f15c80','#e4d354','#8085e8','#8d4653','#91e8e1']";
         }
     } catch (\Exception $e) {
         $this->container->getTwig()->addGlobal('message', $e->getMessage() . "\n");
         $series = $jsonHeader = $colors = '[]';
         $instance = $current_model = '';
         $possible_models = $possible_models_id = array();
         $must_wait = 'NO';
     }
     echo $this->container->getTwig()->render('mltemplate/mlconfigperf.html.twig', array('selected' => 'mlparameval', 'title' => 'Improvement of Hadoop Execution by SW and HW Configurations', 'categories' => $categories, 'series' => $series, 'benchs' => $params['benchs'], 'nets' => $params['nets'], 'disks' => $params['disks'], 'blk_sizes' => $params['blk_sizes'], 'comps' => $params['comps'], 'id_clusters' => $params['id_clusters'], 'mapss' => $params['mapss'], 'replications' => $params['replications'], 'iosfs' => $params['iosfs'], 'iofilebufs' => $params['iofilebufs'], 'datanodess' => $params['datanodess'], 'bench_types' => $params['bench_types'], 'vm_sizes' => $params['vm_sizes'], 'vm_coress' => $params['vm_coress'], 'vm_RAMs' => $params['vm_RAMs'], 'types' => $params['types'], 'money' => $money, 'paramEval' => $paramEval, 'instance' => $instance, 'models' => '<li>' . implode('</li><li>', $possible_models) . '</li>', 'models_id' => $possible_models_id, 'current_model' => $current_model, 'gammacolors' => $colors, 'must_wait' => $must_wait, 'preset' => $preset, 'selPreset' => $selPreset, 'options' => Utils::getFilterOptions($db)));
 }
Ejemplo n.º 2
0
 public function mlcrossvar3dfaAction()
 {
     $jsonData = array();
     $message = $instance = $possible_models_id = '';
     $maxx = $minx = $maxy = $miny = $maxz = $minz = 0;
     $must_wait = 'NO';
     try {
         $dbml = new \PDO($this->container->get('config')['db_conn_chain_ml'], $this->container->get('config')['mysql_user'], $this->container->get('config')['mysql_pwd']);
         $dbml->setAttribute(\PDO::ATTR_ERRMODE, \PDO::ERRMODE_EXCEPTION);
         $dbml->setAttribute(\PDO::ATTR_EMULATE_PREPARES, false);
         $db = $this->container->getDBUtils();
         $where_configs = '';
         $preset = null;
         if (count($_GET) <= 1 || count($_GET) == 2 && array_key_exists('current_model', $_GET) || count($_GET) == 3 && array_key_exists('variable1', $_GET) && array_key_exists('variable2', $_GET) || count($_GET) == 4 && array_key_exists('current_model', $_GET) && array_key_exists('variable1', $_GET) && array_key_exists('variable2', $_GET)) {
             $preset = Utils::setDefaultPreset($db, 'mlcrossvar3dfa');
         }
         $selPreset = isset($_GET['presets']) ? $_GET['presets'] : "none";
         $params = array();
         $param_names = array('benchs', 'nets', 'disks', 'mapss', 'iosfs', 'replications', 'iofilebufs', 'comps', 'blk_sizes', 'id_clusters', 'datanodess', 'bench_types', 'vm_sizes', 'vm_coress', 'vm_RAMs', 'types');
         // Order is important
         foreach ($param_names as $p) {
             $params[$p] = Utils::read_params($p, $where_configs, FALSE);
             sort($params[$p]);
         }
         $cross_var1 = array_key_exists('variable1', $_GET) ? $_GET['variable1'] : 'maps';
         $cross_var2 = array_key_exists('variable2', $_GET) ? $_GET['variable2'] : 'net';
         $unseen = array_key_exists('unseen', $_GET) && $_GET['unseen'] == 1;
         $where_configs = str_replace("AND .", "AND ", $where_configs);
         $cross_var1 = str_replace("id_cluster", "e.id_cluster", $cross_var1);
         $cross_var2 = str_replace("id_cluster", "e.id_cluster", $cross_var2);
         // compose instance
         $instance = MLUtils::generateSimpleInstance($param_names, $params, $unseen, $db);
         $model_info = MLUtils::generateModelInfo($param_names, $params, $unseen, $db);
         // Model for filling
         MLUtils::findMatchingModels($model_info, $possible_models, $possible_models_id, $dbml);
         $current_model = "";
         if (array_key_exists('current_model', $_GET) && in_array($_GET['current_model'], $possible_models_id)) {
             $current_model = $_GET['current_model'];
         }
         // Call to MLFindAttributes, to fetch data
         $_GET['pass'] = 1;
         $_GET['unseen'] = $unseen;
         $mlfa1 = new MLFindAttributesController();
         $mlfa1->container = $this->container;
         $ret_data = $mlfa1->mlfindattributesAction();
         $rows = null;
         if ($ret_data == 1) {
             $must_wait = "YES";
             $jsonData = '[]';
             $categories1 = $categories2 = "''";
         } else {
             if ($ret_data == -1) {
                 $must_wait = "NO";
                 $jsonData = '[]';
                 $categories1 = $categories2 = "''";
                 $message = "There are no prediction models trained for such parameters. Train at least one model in 'ML Prediction' section. [" . $instance . "]";
             } else {
                 // Get stuff from the DB
                 $query = "SELECT " . $cross_var1 . " AS V1, " . $cross_var2 . " AS V2, AVG(p.pred_time) as V3, p.instance\n\t\t\t\t\tFROM predictions as p\n\t\t\t\t\tWHERE p.id_learner " . ($current_model != '' ? "='" . $current_model . "'" : "IN (SELECT id_learner FROM trees WHERE model='" . $model_info . "')") . $where_configs . "\n\t\t\t\t\tGROUP BY p.instance\n\t\t\t\t\tORDER BY RAND() LIMIT 5000;";
                 // FIXME - CLUMPSY PATCH FOR BYPASS THE BUG FROM HIGHCHARTS... REMEMBER TO ERASE THIS LINE WHEN THE BUG IS SOLVED
                 $rows = $dbml->query($query);
                 if (empty($rows)) {
                     throw new \Exception('No data matches with your critteria.');
                 }
             }
         }
         if ($must_wait == "NO") {
             $map_var1 = $map_var2 = array();
             $count_var1 = $count_var2 = 0;
             $categories1 = $categories2 = '';
             $var1_categorical = in_array($cross_var1, array("net", "disk", "bench", "vm_OS", "provider", "vm_size", "type", "bench_type"));
             $var2_categorical = in_array($cross_var2, array("net", "disk", "bench", "vm_OS", "provider", "vm_size", "type", "bench_type"));
             foreach ($rows as $row) {
                 $entry = array();
                 if ($var1_categorical) {
                     if (!array_key_exists($row['V1'], $map_var1)) {
                         $map_var1[$row['V1']] = $count_var1++;
                         $categories1 = $categories1 . ($categories1 != '' ? "," : "") . "\"" . $row['V1'] . "\"";
                     }
                     $entry['y'] = $map_var1[$row['V1']] * (rand(990, 1010) / 1000);
                 } else {
                     $entry['y'] = (int) $row['V1'] * (rand(990, 1010) / 1000);
                 }
                 if ($entry['y'] > $maxy) {
                     $maxy = $entry['y'];
                 }
                 if ($entry['y'] < $miny) {
                     $miny = $entry['y'];
                 }
                 if ($var2_categorical) {
                     if (!array_key_exists($row['V2'], $map_var2)) {
                         $map_var2[$row['V2']] = $count_var2++;
                         $categories2 = $categories2 . ($categories2 != '' ? "," : "") . "\"" . $row['V2'] . "\"";
                     }
                     $entry['x'] = $map_var2[$row['V2']] * (rand(990, 1010) / 1000);
                 } else {
                     $entry['x'] = (int) $row['V2'] * (rand(990, 1010) / 1000);
                 }
                 if ($entry['x'] > $maxx) {
                     $maxx = $entry['x'];
                 }
                 if ($entry['x'] < $minx) {
                     $minx = $entry['x'];
                 }
                 $entry['z'] = -1 * (int) $row['V3'] * (rand(990, 1010) / 1000);
                 if ($entry['z'] > $maxz) {
                     $maxz = $entry['z'];
                 }
                 if ($entry['z'] < $minz) {
                     $minz = $entry['z'];
                 }
                 $entry['name'] = $row['instance'];
                 //$row['V1']." - ".$row['V2']." - ".max(100,(int)$row['V3']);
                 $jsonData[] = $entry;
             }
             $jsonData = json_encode($jsonData);
             if ($categories1 != '') {
                 $categories1 = "[" . $categories1 . "]";
             } else {
                 $categories1 = "''";
             }
             if ($categories2 != '') {
                 $categories2 = "[" . $categories2 . "]";
             } else {
                 $categories2 = "''";
             }
         }
         $dbml = null;
         $cross_var1 = str_replace("e.id_cluster", "id_cluster", $cross_var1);
         $cross_var2 = str_replace("e.id_cluster", "id_cluster", $cross_var2);
     } catch (\Exception $e) {
         $this->container->getTwig()->addGlobal('message', $e->getMessage() . "\n");
         $jsonData = '[]';
         $cross_var1 = $cross_var2 = '';
         $categories1 = $categories2 = '';
         $maxx = $minx = $maxy = $miny = $maxz = $minz = 0;
         $must_wait = "NO";
         $dbml = null;
         $possible_models = $possible_models_id = array();
     }
     echo $this->container->getTwig()->render('mltemplate/mlcrossvar3dfa.html.twig', array('selected' => 'mlcrossvar3dfa', 'jsonData' => $jsonData, 'variable1' => $cross_var1, 'variable2' => $cross_var2, 'categories1' => $categories1, 'categories2' => $categories2, 'maxx' => $maxx, 'minx' => $minx, 'maxy' => $maxy, 'miny' => $miny, 'maxz' => $maxz, 'minz' => $minz, 'benchs' => $params['benchs'], 'nets' => $params['nets'], 'disks' => $params['disks'], 'blk_sizes' => $params['blk_sizes'], 'comps' => $params['comps'], 'id_clusters' => $params['id_clusters'], 'mapss' => $params['mapss'], 'replications' => $params['replications'], 'iosfs' => $params['iosfs'], 'iofilebufs' => $params['iofilebufs'], 'datanodess' => $params['datanodess'], 'bench_types' => $params['bench_types'], 'vm_sizes' => $params['vm_sizes'], 'vm_coress' => $params['vm_coress'], 'vm_RAMs' => $params['vm_RAMs'], 'types' => $params['types'], 'message' => $message, 'instance' => $instance, 'model_info' => $model_info, 'current_model' => $current_model, 'unseen' => $unseen, 'models' => '<li>' . implode('</li><li>', $possible_models) . '</li>', 'models_id' => $possible_models_id, 'must_wait' => $must_wait, 'preset' => $preset, 'selPreset' => $selPreset, 'options' => Utils::getFilterOptions($db)));
 }
Ejemplo n.º 3
0
 public function mlparamEvaluationAction()
 {
     $rows = $categories = $series = $instance = $model_info = $config = $current_model = $slice_info = '';
     $arrayBenchs_pred = $possible_models = $possible_models_id = $other_models = array();
     $jsonData = $jsonHeader = "[]";
     $must_wait = 'NO';
     try {
         $dbml = new \PDO($this->container->get('config')['db_conn_chain'], $this->container->get('config')['mysql_user'], $this->container->get('config')['mysql_pwd']);
         $dbml->setAttribute(\PDO::ATTR_ERRMODE, \PDO::ERRMODE_EXCEPTION);
         $dbml->setAttribute(\PDO::ATTR_EMULATE_PREPARES, false);
         $db = $this->container->getDBUtils();
         if (array_key_exists('parameval', $_GET)) {
             $paramEval = isset($_GET['parameval']) && Utils::get_GET_string('parameval') != '' ? Utils::get_GET_string('parameval') : 'maps';
             unset($_GET["parameval"]);
         }
         $this->buildFilters(array('current_model' => array('type' => 'selectOne', 'default' => null, 'label' => 'Model to use: ', 'generateChoices' => function () {
             return array();
         }, 'parseFunction' => function () {
             $choice = isset($_GET['current_model']) ? $_GET['current_model'] : array("");
             return array('whereClause' => '', 'currentChoice' => $choice);
         }, 'filterGroup' => 'MLearning'), 'minExecs' => array('default' => 0, 'type' => 'inputNumber', 'label' => 'Minimum executions:', 'parseFunction' => function () {
             return 0;
         }, 'filterGroup' => 'basic'), 'minexetime' => array('default' => 0), 'valid' => array('default' => 0), 'filter' => array('default' => 0), 'prepares' => array('default' => 0)));
         $this->buildFilterGroups(array('MLearning' => array('label' => 'Machine Learning', 'tabOpenDefault' => true, 'filters' => array('current_model'))));
         $where_configs = $this->filters->getWhereClause();
         $params = array();
         $param_names = array('bench', 'net', 'disk', 'maps', 'iosf', 'replication', 'iofilebuf', 'comp', 'blk_size', 'id_cluster', 'datanodes', 'vm_OS', 'vm_cores', 'vm_RAM', 'provider', 'vm_size', 'type', 'bench_type', 'hadoop_version');
         // Order is important
         $params = $this->filters->getFiltersSelectedChoices($param_names);
         foreach ($param_names as $p) {
             if (!is_null($params[$p]) && is_array($params[$p])) {
                 sort($params[$p]);
             }
         }
         $params_additional = array();
         $param_names_additional = array('datefrom', 'dateto', 'minexetime', 'maxexetime', 'valid', 'filter');
         // Order is important
         $params_additional = $this->filters->getFiltersSelectedChoices($param_names_additional);
         $param_variables = $this->filters->getFiltersSelectedChoices(array('current_model', 'minExecs'));
         $param_current_model = $param_variables['current_model'];
         $minExecs = $param_variables['minExecs'];
         $where_configs = str_replace("AND .", "AND ", $where_configs);
         $where_configs = str_replace("id_cluster", "e.id_cluster", $where_configs);
         $minExecsFilter = "";
         if ($minExecs > 0) {
             $minExecsFilter = "HAVING COUNT(*) > {$minExecs}";
         }
         $filter_execs = DBUtils::getFilterExecs();
         $options = $this->filters->getFilterChoices();
         $paramOptions = array();
         foreach ($options[$paramEval] as $option) {
             if ($paramEval == 'comp') {
                 $paramOptions[] = Utils::getCompressionName($option);
             } else {
                 if ($paramEval == 'net') {
                     $paramOptions[] = Utils::getNetworkName($option);
                 } else {
                     if ($paramEval == 'disk') {
                         $paramOptions[] = Utils::getDisksName($option);
                     } else {
                         $paramOptions[] = $option;
                     }
                 }
             }
         }
         $param_eval_query = $paramEval == 'id_cluster' ? 'e.id_cluster' : $paramEval;
         $benchOptions = $db->get_rows("SELECT DISTINCT bench FROM aloja2.execs e LEFT JOIN aloja2.clusters c ON e.id_cluster = c.id_cluster WHERE 1 {$filter_execs} {$where_configs} GROUP BY {$param_eval_query}, bench order by {$param_eval_query}");
         // get the result rows
         $query = "SELECT count(*) as count, {$param_eval_query}, e.id_exec, exec as conf, bench, " . "exe_time, avg(exe_time) avg_exe_time, min(exe_time) min_exe_time " . "from aloja2.execs e LEFT JOIN aloja2.clusters c ON e.id_cluster = c.id_cluster WHERE 1 {$filter_execs} {$where_configs}" . "GROUP BY {$param_eval_query},bench {$minExecsFilter} order by bench,{$param_eval_query}";
         $rows = $db->get_rows($query);
         if (!$rows) {
             throw new \Exception("No results for query!");
         }
         $arrayBenchs = array();
         foreach ($paramOptions as $param) {
             foreach ($benchOptions as $bench) {
                 $arrayBenchs[$bench['bench']][$param] = null;
                 $arrayBenchs[$bench['bench']][$param]['y'] = 0;
                 $arrayBenchs[$bench['bench']][$param]['count'] = 0;
             }
         }
         $series = array();
         $bench = '';
         foreach ($rows as $row) {
             if ($paramEval == 'comp') {
                 $row[$paramEval] = Utils::getCompressionName($row['comp']);
             } else {
                 if ($paramEval == 'net') {
                     $row[$paramEval] = Utils::getNetworkName($row['net']);
                 } else {
                     if ($paramEval == 'disk') {
                         $row[$paramEval] = Utils::getDisksName($row['disk']);
                     } else {
                         if ($paramEval == 'iofilebuf') {
                             $row[$paramEval] /= 1024;
                         }
                     }
                 }
             }
             $arrayBenchs[$row['bench']][$row[$paramEval]]['y'] = round((int) $row['avg_exe_time'], 2);
             $arrayBenchs[$row['bench']][$row[$paramEval]]['count'] = (int) $row['count'];
         }
         // ----------------------------------------------------
         // Add predictions to the series
         // ----------------------------------------------------
         $param_variables = $this->filters->getFiltersSelectedChoices(array('current_model'));
         $param_current_model = $param_variables['current_model'];
         $where_configs = str_replace("AND .", "AND ", $where_configs);
         // compose instance
         $instance = MLUtils::generateSimpleInstance($this->filters, $param_names, $params, true);
         $model_info = MLUtils::generateModelInfo($this->filters, $param_names, $params, true);
         $slice_info = MLUtils::generateDatasliceInfo($this->filters, $param_names_additional, $params_additional);
         // model for filling
         MLUtils::findMatchingModels($model_info, $possible_models, $possible_models_id, $dbml);
         $current_model = '';
         if (!is_null($possible_models_id) && in_array($param_current_model, $possible_models_id)) {
             $current_model = $param_current_model;
         }
         // Other models for filling
         $where_models = '';
         if (!empty($possible_models_id)) {
             $where_models = " WHERE id_learner NOT IN ('" . implode("','", $possible_models_id) . "')";
         }
         $result = $dbml->query("SELECT id_learner FROM aloja_ml.learners" . $where_models);
         foreach ($result as $row) {
             $other_models[] = $row['id_learner'];
         }
         if (!empty($possible_models_id)) {
             if ($current_model == "") {
                 $query = "SELECT AVG(ABS(exe_time - pred_time)) AS MAE, AVG(ABS(exe_time - pred_time)/exe_time) AS RAE, p.id_learner FROM aloja_ml.predictions p, aloja_ml.learners l WHERE l.id_learner = p.id_learner AND p.id_learner IN ('" . implode("','", $possible_models_id) . "') AND predict_code > 0 ORDER BY MAE LIMIT 1";
                 $result = $dbml->query($query);
                 $row = $result->fetch();
                 $current_model = $row['id_learner'];
             }
             $config = $instance . '-' . $current_model . ' ' . $slice_info . "-parameval";
             $query_cache = "SELECT count(*) as total FROM aloja_ml.trees WHERE id_learner = '" . $current_model . "' AND model = '" . $model_info . "'";
             $is_cached_mysql = $dbml->query($query_cache);
             $tmp_result = $is_cached_mysql->fetch();
             $is_cached = $tmp_result['total'] > 0;
             $ret_data = null;
             if (!$is_cached) {
                 // Call to MLFindAttributes, to fetch data
                 $_GET['pass'] = 2;
                 $_GET['unseen'] = 1;
                 $_GET['current_model'] = $current_model;
                 $mlfa1 = new MLFindAttributesController();
                 $mlfa1->container = $this->container;
                 $ret_data = $mlfa1->mlfindattributesAction();
                 if ($ret_data == 1) {
                     $must_wait = "YES";
                     $jsonData = $jsonHeader = '[]';
                 } else {
                     $is_cached_mysql = $dbml->query($query_cache);
                     $tmp_result = $is_cached_mysql->fetch();
                     $is_cached = $tmp_result['total'] > 0;
                 }
             }
             if ($is_cached) {
                 $must_wait = 'NO';
                 $query = "SELECT count(*) as count, {$param_eval_query}, bench, exe_time, avg(pred_time) avg_pred_time, min(pred_time) min_pred_time " . "FROM aloja_ml.predictions e WHERE e.id_learner = '" . $current_model . "' {$filter_execs} {$where_configs}" . "GROUP BY {$param_eval_query}, bench {$minExecsFilter} order by bench,{$param_eval_query}";
                 $result = $dbml->query($query);
                 // Initialize array
                 foreach ($paramOptions as $param) {
                     foreach ($benchOptions as $bench) {
                         $arrayBenchs_pred[$bench['bench'] . '_pred'][$param] = null;
                         $arrayBenchs_pred[$bench['bench'] . '_pred'][$param]['y'] = 0;
                         $arrayBenchs_pred[$bench['bench'] . '_pred'][$param]['count'] = 0;
                     }
                 }
                 foreach ($result as $row) {
                     $bench_n = $row['bench'] . '_pred';
                     $class = $row[$paramEval];
                     if ($paramEval == 'comp') {
                         $value = Utils::getCompressionName($class);
                     } else {
                         if ($paramEval == 'id_cluster') {
                             $value = Utils::getClusterName($class, $db);
                         } else {
                             if ($paramEval == 'net') {
                                 $value = Utils::getNetworkName($class);
                             } else {
                                 if ($paramEval == 'disk') {
                                     $value = Utils::getDisksName($class);
                                 } else {
                                     if ($paramEval == 'iofilebuf') {
                                         $value = $class / 1024;
                                     } else {
                                         $value = $class;
                                     }
                                 }
                             }
                         }
                     }
                     if (!in_array($value, $paramOptions)) {
                         $paramOptions[] = $value;
                         foreach ($benchOptions as $bench) {
                             $arrayBenchs_pred[$bench['bench'] . '_pred'][$value] = null;
                             $arrayBenchs_pred[$bench['bench'] . '_pred'][$value]['y'] = 0;
                             $arrayBenchs_pred[$bench['bench'] . '_pred'][$value]['count'] = 0;
                             $arrayBenchs[$bench['bench']][$value] = null;
                             $arrayBenchs[$bench['bench']][$value]['y'] = 0;
                             $arrayBenchs[$bench['bench']][$value]['count'] = 0;
                         }
                     }
                     $arrayBenchs_pred[$bench_n][$value]['y'] = (int) $row['avg_pred_time'];
                     $arrayBenchs_pred[$bench_n][$value]['count'] = (int) $row['count'];
                 }
             }
         }
         // ----------------------------------------------------
         // END - Add predictions to the series
         // ----------------------------------------------------
         asort($paramOptions);
         foreach ($arrayBenchs as $key => $arrayBench) {
             $caregories = '';
             $data_a = null;
             $data_p = null;
             foreach ($paramOptions as $param) {
                 if ($arrayBenchs[$key][$param]['count'] > 0 && empty($arrayBenchs_pred) || !empty($arrayBenchs_pred) && ($arrayBenchs_pred[$key . '_pred'][$param]['count'] > 0 || $arrayBenchs[$key][$param]['count'] > 0)) {
                     $data_a[] = $arrayBenchs[$key][$param];
                     if (!empty($arrayBenchs_pred)) {
                         $data_p[] = $arrayBenchs_pred[$key . '_pred'][$param];
                     }
                     $categories = $categories . "'{$param} " . Utils::getParamevalUnit($paramEval) . "',";
                     // FIXME - Redundant n times performed... don't care now
                 }
             }
             $series[] = array('name' => $key, 'data' => $data_a);
             if (!empty($arrayBenchs_pred)) {
                 $series[] = array('name' => $key . '_pred', 'data' => $data_p);
             }
         }
         $series = json_encode($series);
         if (!empty($arrayBenchs_pred)) {
             $colors = "['#7cb5ec','#9cd5fc','#434348','#636368','#90ed7d','#b0fd9d','#f7a35c','#f7c37c','#8085e9','#a0a5f9','#f15c80','#f17ca0','#e4d354','#f4f374','#8085e8','#a0a5f8','#8d4653','#ad6673','#91e8e1','#b1f8f1']";
         } else {
             $colors = "['#7cb5ec','#434348','#90ed7d','#f7a35c','#8085e9','#f15c80','#e4d354','#8085e8','#8d4653','#91e8e1']";
         }
     } catch (\Exception $e) {
         $this->container->getTwig()->addGlobal('message', $e->getMessage() . "\n");
         $series = $jsonHeader = $colors = '[]';
         $must_wait = 'NO';
     }
     $return_params = array('title' => 'Improvement of Hadoop Execution by SW and HW Configurations', 'categories' => $categories, 'series' => $series, 'paramEval' => $paramEval, 'instance' => $instance, 'models' => '<li>' . implode('</li><li>', $possible_models) . '</li>', 'models_id' => $possible_models_id, 'current_model' => $current_model, 'gammacolors' => $colors, 'model_info' => $model_info, 'slice_info' => $slice_info, 'must_wait' => $must_wait);
     $this->filters->setCurrentChoices('current_model', array_merge($possible_models_id, array('---Other models---'), $other_models));
     return $this->render('mltemplate/mlparameval.html.twig', $return_params);
 }
Ejemplo n.º 4
0
 public function mlcrossvar3dfaAction()
 {
     $jsonData = $possible_models = $possible_models_id = $other_models = array();
     $message = $instance = $possible_models_id = '';
     $categories1 = $categories2 = "''";
     $maxx = $minx = $maxy = $miny = $maxz = $minz = 0;
     $must_wait = 'NO';
     try {
         $dbml = new \PDO($this->container->get('config')['db_conn_chain'], $this->container->get('config')['mysql_user'], $this->container->get('config')['mysql_pwd']);
         $dbml->setAttribute(\PDO::ATTR_ERRMODE, \PDO::ERRMODE_EXCEPTION);
         $dbml->setAttribute(\PDO::ATTR_EMULATE_PREPARES, false);
         $db = $this->container->getDBUtils();
         $this->buildFilters(array('variable2' => array('type' => 'selectOne', 'default' => array('net'), 'table' => 'execs', 'label' => 'Variable 2: ', 'generateChoices' => function () {
             return array('bench', 'net', 'disk', 'maps', 'iosf', 'replication', 'iofilebuf', 'comp', 'blk_size', 'id_cluster', 'datanodes', 'bench_type', 'vm_size', 'vm_cores', 'vm_RAM', 'type', 'hadoop_version', 'provider', 'vm_OS', 'exe_time', 'pred_time', 'TOTAL_MAPS');
         }, 'beautifier' => function ($value) {
             $labels = array('bench' => 'Benchmark', 'net' => 'Network', 'disk' => 'Disk', 'maps' => 'Maps', 'iosf' => 'I/O Sort Factor', 'replication' => 'Replication', 'iofilebuf' => 'I/O File Buffer', 'comp' => 'Compression', 'blk_size' => 'Block size', 'id_cluster' => 'Cluster', 'datanodes' => 'Datanodes', 'bench_type' => 'Benchmark Suite', 'vm_size' => 'VM Size', 'vm_cores' => 'VM cores', 'vm_RAM' => 'VM RAM', 'type' => 'Cluster type', 'hadoop_version' => 'Hadoop Version', 'provider' => 'Provider', 'vm_OS' => 'VM OS', 'exe_time' => 'Exeuction time', 'pred_time' => 'Prediction time', 'TOTAL_MAPS' => 'Total execution maps');
             return $labels[$value];
         }, 'parseFunction' => function () {
             $value = isset($_GET['variable2']) ? $_GET['variable2'] : array('net');
             return array('currentChoice' => $value, 'whereClause' => "");
         }), 'variable1' => array('type' => 'selectOne', 'default' => array('maps'), 'table' => 'execs', 'label' => 'Variable 1: ', 'generateChoices' => function () {
             return array('bench', 'net', 'disk', 'maps', 'iosf', 'replication', 'iofilebuf', 'comp', 'blk_size', 'id_cluster', 'datanodes', 'bench_type', 'vm_size', 'vm_cores', 'vm_RAM', 'type', 'hadoop_version', 'provider', 'vm_OS', 'exe_time', 'pred_time', 'TOTAL_MAPS');
         }, 'beautifier' => function ($value) {
             $labels = array('bench' => 'Benchmark', 'net' => 'Network', 'disk' => 'Disk', 'maps' => 'Maps', 'iosf' => 'I/O Sort Factor', 'replication' => 'Replication', 'iofilebuf' => 'I/O File Buffer', 'comp' => 'Compression', 'blk_size' => 'Block size', 'id_cluster' => 'Cluster', 'datanodes' => 'Datanodes', 'bench_type' => 'Benchmark Suite', 'vm_size' => 'VM Size', 'vm_cores' => 'VM cores', 'vm_RAM' => 'VM RAM', 'type' => 'Cluster type', 'hadoop_version' => 'Hadoop Version', 'provider' => 'Provider', 'vm_OS' => 'VM OS', 'exe_time' => 'Exeuction time', 'pred_time' => 'Prediction time', 'TOTAL_MAPS' => 'Total execution maps');
             return $labels[$value];
         }, 'parseFunction' => function () {
             $value = isset($_GET['variable1']) ? $_GET['variable1'] : array('maps');
             return array('currentChoice' => $value, 'whereClause' => "");
         }), 'current_model' => array('type' => 'selectOne', 'default' => null, 'label' => 'Model to use: ', 'generateChoices' => function () {
             return array();
         }, 'parseFunction' => function () {
             $choice = isset($_GET['current_model']) ? $_GET['current_model'] : array("");
             return array('whereClause' => '', 'currentChoice' => $choice);
         }, 'filterGroup' => 'MLearning'), 'unseen' => array('type' => 'checkbox', 'default' => 1, 'label' => 'Predict with unseen atributes &#9888;', 'parseFunction' => function () {
             $choice = isset($_GET['unseen']) && !isset($_GET['unseen']) ? 0 : 1;
             return array('whereClause' => '', 'currentChoice' => $choice);
         }, 'filterGroup' => 'MLearning'), 'minexetime' => array('default' => 0), 'valid' => array('default' => 0), 'filter' => array('default' => 0), 'prepares' => array('default' => 1)));
         $this->buildFilterGroups(array('MLearning' => array('label' => 'Machine Learning', 'tabOpenDefault' => true, 'filters' => array('current_model', 'unseen'))));
         $where_configs = $this->filters->getWhereClause();
         $model_html = '';
         $model_info = $db->get_rows("SELECT id_learner, model, algorithm, dataslice FROM aloja_ml.learners");
         foreach ($model_info as $row) {
             $model_html = $model_html . "<li><b>" . $row['id_learner'] . "</b> => " . $row['algorithm'] . " : " . $row['model'] . " : " . $row['dataslice'] . "</li>";
         }
         $params = array();
         $param_names = array('bench', 'net', 'disk', 'maps', 'iosf', 'replication', 'iofilebuf', 'comp', 'blk_size', 'id_cluster', 'datanodes', 'vm_OS', 'vm_cores', 'vm_RAM', 'provider', 'vm_size', 'type', 'bench_type', 'hadoop_version');
         // Order is important
         $params = $this->filters->getFiltersSelectedChoices($param_names);
         foreach ($param_names as $p) {
             if (!is_null($params[$p]) && is_array($params[$p])) {
                 sort($params[$p]);
             }
         }
         $params_additional = array();
         $param_names_additional = array('datefrom', 'dateto', 'minexetime', 'maxexetime', 'valid', 'filter');
         // Order is important
         $params_additional = $this->filters->getFiltersSelectedChoices($param_names_additional);
         $variables = $this->filters->getFiltersSelectedChoices(array('variable1', 'variable2', 'current_model', 'unseen'));
         $cross_var1 = $variables['variable1'];
         $cross_var2 = $variables['variable2'];
         $param_current_model = $variables['current_model'];
         $unseen = $variables['unseen'] ? true : false;
         $where_configs = str_replace("AND .", "AND ", $where_configs);
         $cross_var1 = str_replace("id_cluster", "e.id_cluster", $cross_var1);
         $cross_var2 = str_replace("id_cluster", "e.id_cluster", $cross_var2);
         // compose instance
         $instance = MLUtils::generateSimpleInstance($this->filters, $param_names, $params, true);
         $model_info = MLUtils::generateModelInfo($this->filters, $param_names, $params, true);
         $slice_info = MLUtils::generateDatasliceInfo($this->filters, $param_names_additional, $params_additional);
         // Model for filling
         MLUtils::findMatchingModels($model_info, $possible_models, $possible_models_id, $dbml);
         $current_model = in_array($param_current_model, $possible_models_id) ? $param_current_model : '';
         // Other models for filling
         $where_models = '';
         if (!empty($possible_models_id)) {
             $where_models = " WHERE id_learner NOT IN ('" . implode("','", $possible_models_id) . "')";
         }
         $result = $dbml->query("SELECT id_learner FROM aloja_ml.learners" . $where_models);
         foreach ($result as $row) {
             $other_models[] = $row['id_learner'];
         }
         // Call to MLPrediction, to create a model
         if (empty($possible_models_id)) {
             $_GET['pass'] = 1;
             $mltc1 = new MLPredictionController();
             // FIXME - Choose the default modeling algorithm
             $mltc1->container = $this->container;
             $ret_learn = $mltc1->mlpredictionAction();
             $rows = null;
             if ($ret_data == 1) {
                 $must_wait = "YES";
                 throw new \Exception("WAIT");
             } else {
                 if ($ret_data == -1) {
                     throw new \Exception("There was an error when creating a model for [" . $instance . "]");
                 }
             }
         }
         // Call to MLFindAttributes, to generate data
         if ($current_model != '') {
             $_GET['pass'] = 2;
             $mlfa1 = new MLFindAttributesController();
             $mlfa1->container = $this->container;
             $ret_data = $mlfa1->mlfindattributesAction();
             $rows = null;
             if ($ret_data == 1) {
                 $must_wait = "YES";
                 throw new \Exception("WAIT");
             } else {
                 if ($ret_data == -1) {
                     throw new \Exception("There was an error when creating predictions for [" . $instance . "]");
                 }
             }
         }
         // Get stuff from the DB
         $query = "SELECT " . $cross_var1 . " AS V1, " . $cross_var2 . " AS V2, AVG(e.pred_time) as V3, e.instance\n\t\t\t\tFROM aloja_ml.predictions as e\n\t\t\t\tWHERE e.id_learner " . ($current_model != '' ? "='" . $current_model . "'" : "IN (SELECT id_learner FROM aloja_ml.trees WHERE model='" . $model_info . "')") . $where_configs . "\n\t\t\t\tGROUP BY e.instance\n\t\t\t\tORDER BY RAND() LIMIT 5000;";
         // FIXME - CLUMPSY PATCH FOR BYPASS THE BUG FROM HIGHCHARTS... REMEMBER TO ERASE THIS LINE WHEN THE BUG IS SOLVED
         $rows = $db->get_rows($query);
         if (empty($rows)) {
             if ($current_model == '') {
                 throw new \Exception('No data matches with your critteria. Try to select a specific model to generate data.');
             } else {
                 throw new \Exception('No data matches with your critteria.');
             }
         }
         // Show the results
         $map_var1 = $map_var2 = array();
         $count_var1 = $count_var2 = 0;
         $categories1 = $categories2 = '';
         $var1_categorical = in_array($cross_var1, array("net", "disk", "bench", "vm_OS", "provider", "vm_size", "type", "bench_type"));
         $var2_categorical = in_array($cross_var2, array("net", "disk", "bench", "vm_OS", "provider", "vm_size", "type", "bench_type"));
         foreach ($rows as $row) {
             $entry = array();
             if ($var1_categorical) {
                 if (!array_key_exists($row['V1'], $map_var1)) {
                     $map_var1[$row['V1']] = $count_var1++;
                     $categories1 = $categories1 . ($categories1 != '' ? "," : "") . "\"" . $row['V1'] . "\"";
                 }
                 $entry['y'] = $map_var1[$row['V1']] * (rand(990, 1010) / 1000);
             } else {
                 $entry['y'] = (int) $row['V1'] * (rand(990, 1010) / 1000);
             }
             if ($entry['y'] > $maxy) {
                 $maxy = $entry['y'];
             }
             if ($entry['y'] < $miny) {
                 $miny = $entry['y'];
             }
             if ($var2_categorical) {
                 if (!array_key_exists($row['V2'], $map_var2)) {
                     $map_var2[$row['V2']] = $count_var2++;
                     $categories2 = $categories2 . ($categories2 != '' ? "," : "") . "\"" . $row['V2'] . "\"";
                 }
                 $entry['x'] = $map_var2[$row['V2']] * (rand(990, 1010) / 1000);
             } else {
                 $entry['x'] = (int) $row['V2'] * (rand(990, 1010) / 1000);
             }
             if ($entry['x'] > $maxx) {
                 $maxx = $entry['x'];
             }
             if ($entry['x'] < $minx) {
                 $minx = $entry['x'];
             }
             $entry['z'] = (int) $row['V3'] * (rand(990, 1010) / 1000);
             if ($entry['z'] > $maxz) {
                 $maxz = $entry['z'];
             }
             if ($entry['z'] < $minz) {
                 $minz = $entry['z'];
             }
             $entry['name'] = $row['instance'];
             //$row['V1']." - ".$row['V2']." - ".max(100,(int)$row['V3']);
             $jsonData[] = $entry;
         }
         $jsonData = json_encode($jsonData);
         if ($categories1 != '') {
             $categories1 = "[" . $categories1 . "]";
         } else {
             $categories1 = "''";
         }
         if ($categories2 != '') {
             $categories2 = "[" . $categories2 . "]";
         } else {
             $categories2 = "''";
         }
     } catch (\Exception $e) {
         if ($e->getMessage() != "WAIT") {
             $this->container->getTwig()->addGlobal('message', $e->getMessage() . "\n");
         }
         $jsonData = '[]';
     }
     $dbml = null;
     $return_params = array('jsonData' => $jsonData, 'variable1' => str_replace("e.id_cluster", "id_cluster", $cross_var1), 'variable2' => str_replace("e.id_cluster", "id_cluster", $cross_var2), 'categories1' => $categories1, 'categories2' => $categories2, 'maxx' => $maxx, 'minx' => $minx, 'maxy' => $maxy, 'miny' => $miny, 'maxz' => $maxz, 'minz' => $minz, 'instance' => $instance, 'model_info' => $model_info, 'slice_info' => $slice_info, 'models' => '<li>' . implode('</li><li>', $possible_models) . '</li>', 'must_wait' => $must_wait, 'models' => $model_html, 'current_model' => $current_model);
     $this->filters->setCurrentChoices('current_model', array_merge(array("Aggregation of Models"), $possible_models_id, !empty($other_models) ? array('---Other models---') : array(), $other_models));
     return $this->render('mltemplate/mlcrossvar3dfa.html.twig', $return_params);
 }