Hands-On Deep Learning on PyTorch for Beginners

Udemy - Hands-On Deep Learning on PyTorch for Beginners

FREE

Hands-On Deep Learning on PyTorch for Beginners

This course is designed for beginners with little no experience in Deep learning or PyTorch.

What you’ll learn

  • Train Convolutional Neural Networks.
  • How to apply data transformations using the torchvision library.
  • How to efficiently store and load data samples on PyTorch.
  • How to leverage GPU acceleration to train neural networks efficiently
  • Overall the student will build a solid foundation in the fundamental concepts and techniques required to train neural networks effectively

Requirements

  • As long as you have a basic understanding of Python, you’re all set to dive into the world of Deep learning.

Description

Hands-On Deep Learning with PyTorch: A Beginner’s Course:

Whether you’re new to neural networks or looking to expand your skills, this course will provide you with a hands-on approach to training neural networks from scratch.

Our comprehensive curriculum covers all the essential components of deep learning, including Neural Networks, Loss Functions, Optimizers, Datasets, and DataLoaders. You’ll also learn how to leverage the GPU for accelerated training and gain practical insights into building and training basic neural networks using PyTorch.

What sets this course apart is it’s accessibility. You don’t need any previous knowledge of neural networks or PyTorch. All you need is a basic understanding of Python, and we’ll guide you through the rest.

By the end of the course, you’ll have gained the skills to confidently train basic neural networks using PyTorch. Unlock your potential in deep learning and embark on this exciting journey today. Enroll now and start building your expertise in the world of artificial intelligence.

Content of the Course:

  • Datasets
  • Data Loaders.
  • Image Augmentation
  • Loss Functions
  • Optimizers.
  • Activation Functions.
  • Normalization Techniques.
  • Convolutional Neural Networks (CNN).
  • Training Neural Networks.
  • GPU Acceleration.

Requirements:

  • The only requirement is basic knowledge of Python.
  • No experience on Deep learning required.
  • No experience on PyTorch required.

Author: Emanuel Riquelme

Udemy - Hands-On Deep Learning on PyTorch for Beginners
Udemy

Hands-On Deep Learning on PyTorch for Beginners

This course is designed for beginners with little no experience in Deep learning or PyTorch.

What you’ll learn

  • Train Convolutional Neural Networks.
  • How to apply data transformations using the torchvision library.
  • How to efficiently store and load data samples on PyTorch.
  • How to leverage GPU acceleration to train neural networks efficiently
  • Overall the student will build a solid foundation in the fundamental concepts and techniques required to train neural networks effectively

Requirements

  • As long as you have a basic understanding of Python, you’re all set to dive into the world of Deep learning.

Description

Hands-On Deep Learning with PyTorch: A Beginner’s Course:

Whether you’re new to neural networks or looking to expand your skills, this course will provide you with a hands-on approach to training neural networks from scratch.

Our comprehensive curriculum covers all the essential components of deep learning, including Neural Networks, Loss Functions, Optimizers, Datasets, and DataLoaders. You’ll also learn how to leverage the GPU for accelerated training and gain practical insights into building and training basic neural networks using PyTorch.

What sets this course apart is it’s accessibility. You don’t need any previous knowledge of neural networks or PyTorch. All you need is a basic understanding of Python, and we’ll guide you through the rest.

By the end of the course, you’ll have gained the skills to confidently train basic neural networks using PyTorch. Unlock your potential in deep learning and embark on this exciting journey today. Enroll now and start building your expertise in the world of artificial intelligence.

Content of the Course:

  • Datasets
  • Data Loaders.
  • Image Augmentation
  • Loss Functions
  • Optimizers.
  • Activation Functions.
  • Normalization Techniques.
  • Convolutional Neural Networks (CNN).
  • Training Neural Networks.
  • GPU Acceleration.

Requirements:

  • The only requirement is basic knowledge of Python.
  • No experience on Deep learning required.
  • No experience on PyTorch required.

Author: Emanuel Riquelme