Deep Learning 101 for Scientists and Engineers - Softcover

Shin, Yong Jun

 
9798309838004: Deep Learning 101 for Scientists and Engineers

Inhaltsangabe

Are you ready to revolutionize your scientific research and engineering projects with cutting-edge AI technology?

Deep Learning 101 for Scientists and Engineers is your hands-on guide to mastering deep learning without getting lost in complex math. This book is designed for scientists, engineers, and researchers eager to leverage adaptive deep learning models for real-world applications.


Why This Book?
  • Clear, Insight-Oriented Explanations: Grasp deep learning concepts through computational graphs, not dense equations.

  • Practical, Hands-On Learning: Dive into real coding examples using PyTorch and Google Colab.

  • Focus on Adaptive Transformers: Learn how adaptive models can dynamically adjust to real-time data in fields like biomedical engineering, autonomous systems, and industrial automation.

  • Comprehensive Coverage: From basics like gradient descent to building advanced transformer models, everything you need is here.


Who Should Read This Book?
  • Researchers and Academics in biology, chemistry, physics, and engineering.

  • Students eager to explore AI applications in their fields.

  • Industry Professionals looking to enhance their systems with adaptive deep learning models.


What Sets This Book Apart?
  • Focused on adaptive deep learning models that evolve with your data.

  • Tools and Frameworks guide for seamless implementation.

  • Hands-on coding examples tailored to scientists and engineers.

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