Deep Learning - Artificial Neural Networks with TensorFlow

TensorFlow is the world’s most popular library for deep learning, and it is built by Google. It is the library of choice for many companies doing AI and machine learning. So, if you want to do deep learning, you got to know TensorFlow.

In this course, you will learn how to use TensorFlow 2 to build deep neural networks. We will first start by learning the basics of machine learning, classification, and regression. Then in the next section, we will understand the connection between artificial neural networks and biological neural networks and how that inspires our thinking in the field of deep learning.

In the last two sections, you will learn about loss functions to understand mean squared error, binary cross entropy, and categorical cross entropy and gradient descent to understand stochastic gradient descent, momentum, variable and adaptive learning rates, and Adam optimization.

By the end of this course, we will have understood how to use TensorFlow for artificial neural networks in deep learning.

Type
video
Category
publication date
2023-02-24
what you will learn

Understand what machine learning is
Build linear models with TensorFlow 2
Learn how to build deep neural networks with TensorFlow 2
Learn how to perform image classification and regression with ANN
Learn loss functions such as mean-squared error and cross-entropy loss
Learn about stochastic gradient descent, momentum, and Adam optimization

duration
287
key features
Understand the utilization of TensorFlow 2 to construct artificial neural networks * The course covers the basics of machine learning, classification, and regression * Explore the connection between artificial neural networks and biological neural networks
approach
In this self-paced course, you will learn how to use TensorFlow 2 to build artificial neural networks. The course is well-balanced with theory that explains the ANN concepts and hands-on coding exercises for practical understanding.
audience
This course is designed for anyone interested in deep learning and machine learning, anyone who wants to implement deep neural networks in TensorFlow 2, or anyone interested in building a foundation for convolutional neural networks, recurrent neural networks, LSTMs (Long Short Term Memory), and transformers.

One must have decent Python programming skills and should be comfortable with data science libraries such as NumPy and Matplotlib.
meta description
Understand machine learning and neural networks with TensorFlow 2
short description
In this self-paced course, you will learn how to use TensorFlow 2 to build deep neural networks. You will learn the basics of machine learning, classification, and regression. We will also discuss the connection between artificial and biological neural networks and how that inspires our thinking in deep learning.
subtitle
Master Machine Learning and Neural Networks for Data Science
keywords
Deep learning, machine learning, TensorFlow 2, stochastic gradient descent, momentum, Adam optimization, loss functions, mean-squared error, cross-entropy loss, Python
Product ISBN
9781804617250