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graphClasses.h « src - github.com/moses-smt/nplm.git - Unnamed repository; edit this file 'description' to name the repository.
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//creating the structure of the nn in a graph that will help in performing backpropagation and forward propagation
#pragma once

#include <cstdlib>
#include "neuralClasses.h"
#include <Eigen/Dense>

namespace nplm
{

template <class X>
class Node {
    public:
        X * param; //what parameter is this
        //vector <void *> children;
        //vector <void *> parents;
	Eigen::Matrix<double,Eigen::Dynamic,Eigen::Dynamic> fProp_matrix;
	Eigen::Matrix<double,Eigen::Dynamic,Eigen::Dynamic> bProp_matrix;
	int minibatch_size;

    public:
        Node() : param(NULL), minibatch_size(0) { }

        Node(X *input_param, int minibatch_size)
	  : param(input_param),
	    minibatch_size(minibatch_size)
        {
	    resize(minibatch_size);
        }

	void resize(int minibatch_size)
	{
	    this->minibatch_size = minibatch_size;
	    if (param->n_outputs() != -1)
	    {
	        fProp_matrix.setZero(param->n_outputs(), minibatch_size);
	    }
            if (param->n_inputs() != -1)
            {
	        bProp_matrix.setZero(param->n_inputs(), minibatch_size);
            }
	}

	void resize() { resize(minibatch_size); }

        /*
        void Fprop(Matrix<double,Dynamic,Dynamic> & input,int n_cols)
        {
            param->fProp(input,fProp_matrix,0,0,n_cols);
        }
        void Fprop(Matrix<double,1,Dynamic> & input,int n_cols)
        {
            param->fProp(input,fProp_matrix,0,0,n_cols);
        }
        */
        //for f prop, just call the fProp node of the particular parameter. 

};

} // namespace nplm