TensorFlow-modellen


TesorFlow.js

Een JavaScript-bibliotheek voor


Machine learning-modellen trainen en implementeren
in de browser


Tensorflow-modellen

Modellen en lagen zijn belangrijke bouwstenen in Machine Learning .

Voor verschillende Machine Learning-taken moet je verschillende soorten lagen combineren tot een model dat kan worden getraind met gegevens om toekomstige waarden te voorspellen.

TensorFlow.js ondersteunt verschillende soorten modellen en verschillende soorten lagen.

Een TensorFlow- model is een neuraal netwerk met een of meer lagen .


Een Tensorflow-project

Een Tensorflow-project heeft deze typische workflow:

  • Gegevens verzamelen
  • Een model maken
  • Lagen aan het model toevoegen
  • Het model samenstellen
  • Het model trainen
  • Het model gebruiken

Voorbeeld

Suppose you knew a function that defined a strait line:

Y = 1.2X + 5

Then you could calculate any y value with the JavaScript formula:

y = 1.2 * x + 5;

To demonstrate Tensorflow.js, we could train a Tensorflow.js model to predict Y values based on X inputs.

The TensorFlow model does not know the function.

// Create Training Data
const xs = tf.tensor([0, 1, 2, 3, 4]);
const ys = xs.mul(1.2).add(5);

// Define a Linear Regression Model
const model = tf.sequential();
model.add(tf.layers.dense({units:1, inputShape:[1]}));

// Specify Loss and Optimizer
model.compile({loss:'meanSquaredError', optimizer:'sgd'});

// Train the Model
model.fit(xs, ys, {epochs:500}).then(() => {myFunction()});

// Use the Model
function myFunction() {
  const xArr = [];
  const yArr = [];
  for (let x = 0; x <= 10; x++) {
    xArr.push(x);
    let result = model.predict(tf.tensor([Number(x)]));
    result.data().then(y => {
      yArr.push(Number(y));
      if (x == 10) {plot(xArr, yArr)};
    });
  }
}

The example is explained below:


Collecting Data

Create a tensor (xs) with 5 x values:

const xs = tf.tensor([0, 1, 2, 3, 4]);

Create a tensor (ys) with 5 correct y answers (multiply xs with 1.2 and add 5):

const ys = xs.mul(1.2).add(5);

Creating a Model

Create a sequential mode:.

const model = tf.sequential();

In a sequential model, the output from one layer is the input to the next layer.


Adding Layers

Add one dense layer to the model.

The layer is only one unit (tensor) and the shape is 1 (one dimentional):

model.add(tf.layers.dense({units:1, inputShape:[1]}));

in a dense the layer, every node is connected to every node in the preceding layer.


Compiling the Model

Compile the model using meanSquaredError as loss function and sgd (stochastic gradient descent) as optimizer function:

model.compile({loss:'meanSquaredError', optimizer:'sgd'});

Tensorflow Optimizers

  • Adadelta -Implements the Adadelta algorithm.
  • Adagrad - Implements the Adagrad algorithm.
  • Adam - Implements the Adam algorithm.
  • Adamax - Implements the Adamax algorithm.
  • Ftrl - Implements the FTRL algorithm.
  • Nadam - Implements the NAdam algorithm.
  • Optimizer - Base class for Keras optimizers.
  • RMSprop - Implements the RMSprop algorithm.
  • SGD - Stochastic Gradient Descent Optimizer.

Training the Model

Train the model (using xs and ys) with 500 repeats (epochs):

model.fit(xs, ys, {epochs:500}).then(() => {myFunction()});

Using the Model

After the model is trained, you can use it for many different purposes.

This example predicts 10 y values, given 10 x values, and calls a function to plot the predictions in a graph:

function myFunction() {
  const xArr = [];
  const yArr = [];
  for (let x = 0; x <= 10; x++) {
    let result = model.predict(tf.tensor([Number(x)]));
    result.data().then(y => {
      xArr.push(x);
      yArr.push(Number(y));
      if (x == 10) {display(xArr, yArr)};
    });
  }
}

This example predicts 10 y values, given 10 x values, and calls a function to display the values:

function myFunction() {
  const xArr = [];
  const yArr = [];
  for (let x = 0; x <= 10; x++) {
    let result = model.predict(tf.tensor([Number(x)]));
    result.data().then(y => {
      xArr.push(x);
      yArr.push(Number(y));
      if (x == 10) {display(xArr, yArr)};
    });
  }
}