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f07e104
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  1. vi/model_weights.js +51 -0
  2. vi/script.js +246 -0
vi/model_weights.js ADDED
@@ -0,0 +1,51 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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+ var oReq = new XMLHttpRequest();
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+ oReq.open("GET", "weights.bin", true);
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+ oReq.responseType = "arraybuffer";
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+
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+ var weights_meta={'rnn/~/attention_core/~/gru__b': [[0, 1200], [1200]], 'rnn/~/attention_core/~/gru__w_h': [[1200, 481200], [400, 1200]], 'rnn/~/attention_core/~/gru__w_i': [[481200, 682800], [168, 1200]], 'rnn/~/attention_core/~/gru_1__b': [[682800, 684000], [1200]], 'rnn/~/attention_core/~/gru_1__w_h': [[684000, 1164000], [400, 1200]], 'rnn/~/attention_core/~/gru_1__w_i': [[1164000, 1845600], [568, 1200]], 'rnn/~/attention_core/~/gru_2__b': [[1845600, 1846800], [1200]], 'rnn/~/attention_core/~/gru_2__w_h': [[1846800, 2326800], [400, 1200]], 'rnn/~/attention_core/~/gru_2__w_i': [[2326800, 3008400], [568, 1200]], 'rnn/~/attention_core/~/linear__b': [[3008400, 3008430], [30]], 'rnn/~/attention_core/~/linear__w': [[3008430, 3025470], [568, 30]], 'rnn/~/conv1_d__b': [[3025470, 3025635], [165]], 'rnn/~/conv1_d__w': [[3025635, 3161760], [5, 165, 165]], 'rnn/~/embed__embeddings': [[3161760, 3246240], [512, 165]], 'rnn/~/embed_1__embeddings': [[3246240, 3273465], [165, 165]], 'rnn/~/linear__b': [[3273465, 3273586], [121]], 'rnn/~/linear__w': [[3273586, 3321986], [400, 121]]};
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+
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+ console.log(weights_meta);
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+
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+ var WEIGHTS = {};
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+ var weight_buffer = null;
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+ var W = null;
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+ var w32 = null;
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+ var w16 = null;
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+
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+ oReq.onload = function (oEvent) {
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+ var arrayBuffer = oReq.response; // Note: not oReq.responseText
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+ if (arrayBuffer) {
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+ // convert bfloat16 to float32
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+ // w16 = new Uint16Array(arrayBuffer)
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+ // weight_buffer = new SharedArrayBuffer(2*arrayBuffer.byteLength);
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+ // w32 = new Uint16Array(weight_buffer);
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+ // for(var i=0; i < w16.length; i++) {
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+ // w32[i * 2 + 1] = w16[i];
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+ // }
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+ W = new Float32Array(arrayBuffer);
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+ document.getElementById("btn").innerText = "Buffer arrieved";
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+
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+ for(var k in weights_meta) {
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+ info = weights_meta[k];
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+ offset = info[0];
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+ shape = info[1];
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+ WEIGHTS[k] = tf.tensor(W.subarray(offset[0], offset[1]), shape);
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+ }
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+
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+ document.getElementById("btn").disabled = false;
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+ tf.engine().startScope();
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+ setTimeout(function() {
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+ cur_run = cur_run + 1;
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+ dojob(cur_run);
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+ }, 0);
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+
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+ document.getElementById("btn").innerText = "Generate";
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+ }
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+ };
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+
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+ tf.setBackend('wasm');
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+
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+ tf.ready().then( function() {
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+ tf.enableProdMode();
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+ oReq.send(null);
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+ });
vi/script.js ADDED
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+ var log = console.log;
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+ var ctx = null;
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+ var canvas = null;
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+ var RNN_SIZE = 400;
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+ var VOCAB_SIZE = 165;
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+ var NUM_ATT_HEADS=10;
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+ var NUM_GMM_HEADS=20;
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+ var cur_run = 0;
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+ var scale_factor = 1.;
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+
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+ var randn = function() {
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+ // Standard Normal random variable using Box-Muller transform.
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+ var u = Math.random() * 0.999 + 1e-5;
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+ var v = Math.random() * 0.999 + 1e-5;
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+ return Math.sqrt(-2.0 * Math.log(u)) * Math.cos(2.0 * Math.PI * v);
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+ }
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+
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+ var rand_truncated_normal = function(low, high) {
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+ while (true) {
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+ r = randn();
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+ if (r >= low && r <= high)
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+ break;
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+ // rejection sampling.
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+ }
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+ return r;
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+ }
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+
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+ var softplus = function(x) {
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+ const m = tf.maximum(x, 0.0);
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+ return tf.add(m, tf.log(tf.add(tf.exp(tf.neg(m)), tf.exp(tf.sub(x, m)))));
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+ }
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+
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+ var char2idx = {'\x00': 0, ' ': 1, '!': 2, '"': 3, '#': 4, '%': 5, '&': 6, "'": 7, '(': 8, ')': 9, '*': 10, ',': 11, '-': 12, '.': 13, '/': 14, '0': 15, '1': 16, '2': 17, '3': 18, '4': 19, '5': 20, '6': 21, '7': 22, '8': 23, '9': 24, ':': 25, ';': 26, '?': 27, 'A': 28, 'B': 29, 'C': 30, 'D': 31, 'E': 32, 'F': 33, 'G': 34, 'H': 35, 'I': 36, 'J': 37, 'K': 38, 'L': 39, 'M': 40, 'N': 41, 'O': 42, 'P': 43, 'Q': 44, 'R': 45, 'S': 46, 'T': 47, 'U': 48, 'V': 49, 'W': 50, 'X': 51, 'Y': 52, 'a': 53, 'b': 54, 'c': 55, 'd': 56, 'e': 57, 'f': 58, 'g': 59, 'h': 60, 'i': 61, 'j': 62, 'k': 63, 'l': 64, 'm': 65, 'n': 66, 'o': 67, 'p': 68, 'q': 69, 'r': 70, 's': 71, 't': 72, 'u': 73, 'v': 74, 'w': 75, 'x': 76, 'y': 77, 'z': 78, 'À': 79, 'Á': 80, 'Â': 81, 'Ô': 82, 'Ú': 83, 'Ý': 84, 'à': 85, 'á': 86, 'â': 87, 'ã': 88, 'è': 89, 'é': 90, 'ê': 91, 'ì': 92, 'í': 93, 'ò': 94, 'ó': 95, 'ô': 96, 'õ': 97, 'ù': 98, 'ú': 99, 'ý': 100, 'Ă': 101, 'ă': 102, 'Đ': 103, 'đ': 104, 'ĩ': 105, 'ũ': 106, 'Ơ': 107, 'ơ': 108, 'Ư': 109, 'ư': 110, 'ạ': 111, 'Ả': 112, 'ả': 113, 'Ấ': 114, 'ấ': 115, 'Ầ': 116, 'ầ': 117, 'ẩ': 118, 'ẫ': 119, 'ậ': 120, 'ắ': 121, 'ằ': 122, 'ẳ': 123, 'ẵ': 124, 'ặ': 125, 'ẹ': 126, 'ẻ': 127, 'ẽ': 128, 'ế': 129, 'Ề': 130, 'ề': 131, 'Ể': 132, 'ể': 133, 'ễ': 134, 'Ệ': 135, 'ệ': 136, 'ỉ': 137, 'ị': 138, 'ọ': 139, 'ỏ': 140, 'Ố': 141, 'ố': 142, 'Ồ': 143, 'ồ': 144, 'ổ': 145, 'ỗ': 146, 'ộ': 147, 'ớ': 148, 'ờ': 149, 'Ở': 150, 'ở': 151, 'ỡ': 152, 'ợ': 153, 'ụ': 154, 'Ủ': 155, 'ủ': 156, 'ứ': 157, 'ừ': 158, 'ử': 159, 'ữ': 160, 'ự': 161, 'ỳ': 162, 'ỷ': 163, 'ỹ': 164};
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+
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+ var gru_core = function(input, weights, state, hidden_size) {
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+ var [w_h,w_i,b] = weights;
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+ var [w_h_z,w_h_a] = tf.split(w_h, [2 * hidden_size, hidden_size], 1);
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+ var [b_z,b_a] = tf.split(b, [2 * hidden_size, hidden_size], 0);
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+ gates_x = tf.matMul(input, w_i);
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+ [zr_x,a_x] = tf.split(gates_x, [2 * hidden_size, hidden_size], 1);
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+ zr_h = tf.matMul(state, w_h_z);
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+ zr = tf.add(tf.add(zr_x, zr_h), b_z);
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+ // fix this
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+ [z,r] = tf.split(tf.sigmoid(zr), 2, 1);
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+ a_h = tf.matMul(tf.mul(r, state), w_h_a);
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+ a = tf.tanh(tf.add(tf.add(a_x, a_h), b_a));
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+ next_state = tf.add(tf.mul(tf.sub(1., z), state), tf.mul(z, a));
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+ return [next_state, next_state];
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+ };
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+
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+
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+ var generate = function() {
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+ cur_run = cur_run + 1;
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+ setTimeout(function() {
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+ var counter = 2000;
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+ tf.disposeVariables();
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+
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+ tf.engine().startScope();
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+ ctx.clearRect(0, 0, canvas.width, canvas.height);
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+ ctx.beginPath();
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+ dojob(cur_run);
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+ }, 200);
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+
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+ return false;
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+ }
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+
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+ var dojob = function(run_id) {
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+ var text = document.getElementById("user-input").value;
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+ if (text.length == 0) {
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+ text = "Tất cả mọi người đều sinh ra có quyền bình đẳng.";
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+ }
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+
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+
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+ log(text);
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+ original_text = text;
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+ text = '' + text + ' ';
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+
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+ text = Array.from(text).map(function(e) {
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+ return char2idx[e]
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+ })
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+ var text_embed = WEIGHTS['rnn/~/embed_1__embeddings'];
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+ indices = tf.tensor1d(text, 'int32');
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+ text = text_embed.gather(indices);
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+
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+ var embed = text;
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+
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+ var writer_embed = WEIGHTS['rnn/~/embed__embeddings'];
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+ var e = document.getElementById("writers");
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+ var wid = parseInt(e.value);
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+ log(wid);
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+
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+ wid = tf.tensor1d([wid], 'int32');
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+ wid = writer_embed.gather(wid);
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+ embed = tf.add(wid, embed);
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+
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+
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+
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+ filter = WEIGHTS['rnn/~/conv1_d__w'];
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+ embed = tf.conv1d(embed, filter, 1, 'same');
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+ bias = tf.expandDims(WEIGHTS['rnn/~/conv1_d__b'], 0);
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+ embed = tf.add(embed, bias);
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+
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+
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+ // initial state
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+ var gru0_hx = tf.zeros([1, RNN_SIZE]);
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+ var gru1_hx = tf.zeros([1, RNN_SIZE]);
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+ var gru2_hx = tf.zeros([1, RNN_SIZE]);
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+
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+ var att_location = tf.zeros([1, NUM_ATT_HEADS]);
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+ var att_context = tf.zeros([1, VOCAB_SIZE]);
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+
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+ var input = tf.tensor([[0., 0., 1.]]);
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+
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+ gru0_w_h = WEIGHTS['rnn/~/attention_core/~/gru__w_h'];
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+ gru0_w_i = WEIGHTS['rnn/~/attention_core/~/gru__w_i'];
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+ gru0_bias = WEIGHTS['rnn/~/attention_core/~/gru__b'];
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+
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+ gru1_w_h = WEIGHTS['rnn/~/attention_core/~/gru_1__w_h'];
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+ gru1_w_i = WEIGHTS['rnn/~/attention_core/~/gru_1__w_i'];
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+ gru1_bias = WEIGHTS['rnn/~/attention_core/~/gru_1__b'];
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+
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+ gru2_w_h = WEIGHTS['rnn/~/attention_core/~/gru_2__w_h'];
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+ gru2_w_i = WEIGHTS['rnn/~/attention_core/~/gru_2__w_i'];
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+ gru2_bias = WEIGHTS['rnn/~/attention_core/~/gru_2__b'];
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+
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+ att_w = WEIGHTS['rnn/~/attention_core/~/linear__w'];
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+ att_b = WEIGHTS['rnn/~/attention_core/~/linear__b'];
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+ gmm_w = WEIGHTS['rnn/~/linear__w'];
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+ gmm_b = WEIGHTS['rnn/~/linear__b'];
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+
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+ var ruler = tf.tensor([...Array(text.shape[0]).keys()]);
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+ ruler = tf.expandDims(ruler, 1);
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+ var bias = parseInt(document.getElementById("bias").value) / 100 * 3;
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+
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+
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+ var cur_x = 20;
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+ var cur_y = innerHeight / 2 + 30;
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+ var path = [];
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+ var dx = 0.;
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+ var dy = 0;
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+ var eos = 1.;
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+ var counter = 0;
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+
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+
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+ function loop(my_run_id) {
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+ if (my_run_id < cur_run) {
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+ tf.disposeVariables();
148
+ tf.engine().endScope();
149
+ return;
150
+ }
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+
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+ counter++;
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+ if (counter < 2000) {
154
+ [att_location,att_context,gru0_hx,gru1_hx, gru2_hx, input] = tf.tidy(function() {
155
+ // Attention
156
+ const inp_0 = tf.concat([att_context, input], 1);
157
+ gru0_hx_ = gru0_hx;
158
+ [out_0,gru0_hx] = gru_core(inp_0, [gru0_w_h, gru0_w_i, gru0_bias], gru0_hx, RNN_SIZE);
159
+ tf.dispose(gru0_hx_);
160
+ const att_inp = tf.concat([att_context, input, out_0], 1);
161
+ const att_params = tf.add(tf.matMul(att_inp, att_w), att_b);
162
+ [alpha,beta,kappa] = tf.split(softplus(att_params), 3, 1);
163
+ att_location_ = att_location;
164
+ att_location = tf.add(att_location, tf.div(kappa, 25.));
165
+ tf.dispose(att_location_)
166
+
167
+ var phi = tf.sum(tf.mul(alpha, tf.exp(tf.div(tf.neg(tf.square(tf.sub(att_location, ruler))), beta))), 1);
168
+ phi = tf.expandDims(phi, 0);
169
+
170
+ att_context_ = att_context;
171
+ att_context = tf.sum(tf.mul(tf.expandDims(phi, 2), tf.expandDims(embed, 0)), 1)
172
+ tf.dispose(att_context_);
173
+
174
+ const inp_1 = tf.concat([input, out_0, att_context], 1);
175
+ // tf.dispose(input);
176
+ gru1_hx_ = gru1_hx;
177
+ [out_1,gru1_hx] = gru_core(inp_1, [gru1_w_h, gru1_w_i, gru1_bias], gru1_hx, RNN_SIZE);
178
+ tf.dispose(gru1_hx_);
179
+
180
+ const inp_2 = tf.concat([input, out_1, att_context], 1);
181
+ tf.dispose(input);
182
+ gru2_hx_ = gru2_hx;
183
+ [out_2, gru2_hx] = gru_core(inp_2, [gru2_w_h, gru2_w_i, gru2_bias], gru2_hx, RNN_SIZE);
184
+ tf.dispose(gru2_hx_);
185
+
186
+ // debugger;
187
+
188
+ // GMM
189
+ const gmm_params = tf.add(tf.matMul(out_2, gmm_w), gmm_b);
190
+ [x,y,logstdx,logstdy,angle,log_weight,eos_logit] = tf.split(gmm_params, [NUM_GMM_HEADS, NUM_GMM_HEADS, NUM_GMM_HEADS, NUM_GMM_HEADS, NUM_GMM_HEADS, NUM_GMM_HEADS, 1], 1);
191
+ // log_weight = tf.softmax(log_weight, 1);
192
+ // log_weight = tf.log(log_weight);
193
+ // log_weight = tf.mul(log_weight, 1. + bias);
194
+ const idx = tf.argMax(log_weight, 1).dataSync()[0];
195
+ // const idx = tf.multinomial(log_weight, 1).dataSync()[0];
196
+ x = x.dataSync()[idx];
197
+ y = y.dataSync()[idx];
198
+ const stdx = tf.exp(tf.sub(logstdx, bias)).dataSync()[idx];
199
+ const stdy = tf.exp(tf.sub(logstdy, bias)).dataSync()[idx];
200
+ angle = angle.dataSync()[idx];
201
+ e = tf.sigmoid(tf.mul(eos_logit, (1. + bias/5))).dataSync()[0];
202
+ const rx = rand_truncated_normal(-5, 5) * stdx;
203
+ const ry = rand_truncated_normal(-5, 5) * stdy;
204
+ x = x + Math.cos(-angle) * rx - Math.sin(-angle) * ry;
205
+ y = y + Math.sin(-angle) * rx + Math.cos(-angle) * ry;
206
+ if (Math.random() < e) {
207
+ e = 1.;
208
+ } else {
209
+ e = 0.;
210
+ }
211
+ input = tf.tensor([[x, y, e]]);
212
+ return [att_location, att_context, gru0_hx, gru1_hx, gru2_hx, input];
213
+ });
214
+
215
+ [dx,dy,eos_] = input.dataSync();
216
+ dy = -dy * 3. * scale_factor;
217
+ dx = dx * 3. * scale_factor;
218
+ if (eos == 0.) {
219
+ ctx.beginPath();
220
+ ctx.moveTo(cur_x, cur_y, 0, 0);
221
+ ctx.lineTo(cur_x + dx, cur_y + dy);
222
+ ctx.stroke();
223
+ }
224
+ eos = eos_;
225
+ cur_x = cur_x + dx;
226
+ cur_y = cur_y + dy;
227
+
228
+ if (att_location.dataSync()[0] < original_text.length + 1.5) {
229
+ setTimeout(function() {loop(my_run_id);}, 0);
230
+ }
231
+ }
232
+ }
233
+
234
+ loop(run_id);
235
+ }
236
+
237
+
238
+ window.onload = function(e) {
239
+ //Setting up canvas
240
+ canvas = document.getElementById("hw-canvas");
241
+ ctx = canvas.getContext("2d");
242
+ scale_factor = window.innerWidth / 1600;
243
+ ctx.canvas.width = window.innerWidth - 50;
244
+ ctx.canvas.height = window.innerHeight - 50;
245
+
246
+ }