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Deep Learning with TensorFlow 2.0

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About Course

Learn Deep Learning with TensorFlow 2.0 for free! This comprehensive course covers everything from the basics of deep neural networks to advanced optimization techniques. You’ll get hands-on experience with Google’s TensorFlow, build your own deep learning algorithm, and learn how to apply deep learning to real-world business problems.

This free course is offered through Theetay, a platform that provides access to the best online courses from Udemy, Udacity, Coursera, MasterClass, NearPeer, and more.

Here’s what you’ll learn in this Deep Learning course:

  • Master the fundamentals of deep learning and deep neural networks
  • Gain practical experience with TensorFlow and NumPy
  • Explore various layers, their building blocks, and activations (sigmoid, tanh, ReLu, softmax, etc.)
  • Understand the backpropagation process
  • Learn how to prevent overfitting
  • Discover state-of-the-art initialization methods
  • Build deep neural networks using real-world data with provided templates
  • Create your own deep learning algorithm in just one hour

This course is designed for beginners with a basic understanding of Python programming. Our engaging videos and step-by-step approach make it easy to learn, even if you’re new to deep learning.

Enroll in this free Deep Learning course today and start your journey to becoming a master of this in-demand field.

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What Will You Learn?

  • Gain a Strong Understanding of TensorFlow - Google’s Cutting-Edge Deep Learning Framework
  • Build Deep Learning Algorithms from Scratch in Python Using NumPy and TensorFlow
  • Set Yourself Apart with Hands-on Deep and Machine Learning Experience
  • Grasp the Mathematics Behind Deep Learning Algorithms
  • Understand Backpropagation, Stochastic Gradient Descent, Batching, Momentum, and Learning Rate Schedules
  • Know the Ins and Outs of Underfitting, Overfitting, Training, Validation, Testing, Early Stopping, and Initialization
  • Competently Carry Out Pre-Processing, Standardization, Normalization, and One-Hot Encoding

Course Content

Welcome! Course Introduction

  • A Message from the Professor
  • Meet your instructors and why you should study machine learning
    06:54
  • What does the course cover
    04:14

Introduction to Neural networks

Setting up the working environment

Minimal Example – Your first machine learning algorithm

Tensorflow – An introduction

Going deeper – Introduction to Deep Neural Networks

Overfitting

Initialization

Gradient descent and learning rates

Preprocessing

The MNIST example

Business case

Appendix: Linear Algebra Fundamentals

Conclusion

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Student Ratings & Reviews

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PL
6 months ago
A very good starting course do Deep Neural Network and TF2

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