Code viewer for World: XOR multi-layer network (c...
// XOR multi-layer network

// Port from:
// https://github.com/CodingTrain/Toy-Neural-Network-JS/tree/master/examples/xor
// with modifications 

// libraries from:
// https://github.com/CodingTrain/Toy-Neural-Network-JS/tree/master/lib
// ported to here:
// https://ancientbrain.com/uploads.php?userid=codingtrain 



//=== Tweaker's box ============================================

// number of nodes in each layer:
const noinput = 2;
const nohidden = 1;
const nooutput = 1;

// define the exemplars to learn from:
// let training_data = [
//   {    inputs: [0, 0],    outputs: [0]  },
//   {    inputs: [0, 1],    outputs: [1]  },
//   {    inputs: [1, 0],    outputs: [1]  },
//   {    inputs: [1, 1],    outputs: [0]  }
// ];

// NAND gate
let training_data = [
  {    inputs: [0, 0],    outputs: [1]  },
  {    inputs: [0, 1],    outputs: [1]  },
  {    inputs: [1, 0],    outputs: [1]  },
  {    inputs: [1, 1],    outputs: [0]  }
];

var nn;     // global var 

const learningrate = 0.2; 

// train this number of times per draw()
const notrain = 10;

// Take screenshot on this step:
AB.screenshotStep  = 200;   


// divide 0,1 into squares 
// show all squares or just the corner squares:
var showall = true;

const canvassize    = 400;
const squaresize    = 40;

const cols          = 10 ;
const rows          = 10;


// Matrix.randomize() is changed to point to this. Must be defined by user of Matrix. 

function randomWeight()
{
    return ( AB.randomFloatAtoB ( -0.5, 0.5 ) );
            // Coding Train default is -1 to 1
}    

//=== End of tweaker's box ============================================




function setup() 
{
  createCanvas (canvassize, canvassize);
  
   $.getScript ( "/uploads/codingtrain/matrix.js", function()
   {
        $.getScript ( "/uploads/codingtrain/nn.js", function()
        {
            nn = new NeuralNetwork ( noinput, nohidden, nooutput );
        });
   });
}



function draw() 
{
  // check if libraries loaded yet:
  if ( typeof nn == 'undefined' ) return;
  nn.setLearningRate ( learningrate );

  background ('#ffffcc'); 

  // train n times 
  for (let i = 0; i < notrain ; i++) 
  {
    let data = random ( training_data );
    nn.train ( data.inputs, data.outputs );
  }

// draw either some squares or all squares:

  if ( showall )
  {
    // redraw all squares each time round
    for (let i = 0; i < cols; i++) 
        for (let j = 0; j < rows; j++) 
            drawquare ( i, j );
  }
  else
  {
    // redraw just the 4 squares 
    for ( let i = 0; i < cols; i = i + cols-1 ) 
        for ( let j = 0; j < rows; j = j + rows-1 ) 
            drawquare ( i, j );
  }
}  
     
 
function drawquare ( i, j )
{
      let x1 = i / cols;
      let x2 = j / rows;
      let inputs = [x1, x2];
      let y = nn.predict(inputs);
      // console.log ( "input (" +x1 + "," + x2 + ") output " + y );
      
      strokeWeight(2);
      stroke('black');
      fill ( y * 255 );      // 0 is black, 1 is white 
      
      rect ( i * squaresize, j * squaresize, squaresize, squaresize );
}