Deep Learning Guide for Beginners
Sam Campbell
In an era where artificial intelligence is reshaping industries and unlocking new possibilities, understanding the fundamentals is crucial. "Deep Learning" serves as your comprehensive companion, unraveling the intricacies of neural networks from the ground up.
Discover the essence of machine learning, the evolution of artificial intelligence, and delve into the core of neural networks. Guided by practical examples and hands-on exercises, you'll learn to set up your environment, write code in Python, and grasp the essentials of popular frameworks like TensorFlow and PyTorch.
From the anatomy of a neuron to advanced architectures like Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs), this book demystifies the terminology and empowers you to build and train your own models. Real-world applications in image classification and natural language processing bring theory to life, demonstrating how deep learning transforms raw data into intelligent predictions.
Data is the fuel that powers deep learning, and "Deep Learning Demystified" equips you with the skills to preprocess and augment data effectively. Navigate the intricacies of loss functions, optimizers, and regularization techniques, ensuring your models are not just accurate but resilient.
As you progress, the book explores the ethical considerations in AI, current challenges, and emerging trends. Dive into case studies showcasing the transformative impact of deep learning across diverse industries, and access a wealth of resources to deepen your knowledge.
"Deep Learning " is not just a guide; it's an invitation to participate in the revolution of artificial intelligence. Are you ready to unlock the secrets of deep learning? The journey begins here.
Duration - 3h 15m.
Author - SAM CAMPBELL.
Narrator - Rayan Mitchell.
Published Date - Tuesday, 16 January 2024.
Copyright - © 2024 SAM CAMPBELL ©.
Location:
United States
Description:
In an era where artificial intelligence is reshaping industries and unlocking new possibilities, understanding the fundamentals is crucial. "Deep Learning" serves as your comprehensive companion, unraveling the intricacies of neural networks from the ground up. Discover the essence of machine learning, the evolution of artificial intelligence, and delve into the core of neural networks. Guided by practical examples and hands-on exercises, you'll learn to set up your environment, write code in Python, and grasp the essentials of popular frameworks like TensorFlow and PyTorch. From the anatomy of a neuron to advanced architectures like Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs), this book demystifies the terminology and empowers you to build and train your own models. Real-world applications in image classification and natural language processing bring theory to life, demonstrating how deep learning transforms raw data into intelligent predictions. Data is the fuel that powers deep learning, and "Deep Learning Demystified" equips you with the skills to preprocess and augment data effectively. Navigate the intricacies of loss functions, optimizers, and regularization techniques, ensuring your models are not just accurate but resilient. As you progress, the book explores the ethical considerations in AI, current challenges, and emerging trends. Dive into case studies showcasing the transformative impact of deep learning across diverse industries, and access a wealth of resources to deepen your knowledge. "Deep Learning " is not just a guide; it's an invitation to participate in the revolution of artificial intelligence. Are you ready to unlock the secrets of deep learning? The journey begins here. Duration - 3h 15m. Author - SAM CAMPBELL. Narrator - Rayan Mitchell. Published Date - Tuesday, 16 January 2024. Copyright - © 2024 SAM CAMPBELL ©.
Language:
English
Opening Credits
Duration:00:00:09
Introduction
Duration:00:05:42
Understanding the basics
Duration:00:10:55
Getting started with deep learning
Duration:00:09:12
Foundations of neural networks
Duration:00:28:41
Popular deep learning architectures
Duration:00:10:49
Data
Duration:00:26:43
Training your model
Duration:00:27:50
Putting theory into practice
Duration:00:40:23
Tools and resources
Duration:00:11:50
Challenges and future trends
Duration:00:14:01
Case studies
Duration:00:08:56
Ending Credits
Duration:00:00:10