Book is  written in a lucid manner to explain concepts in detail, with adequate emphasis on examples. To make clarity on the programming examples, logic is accurately explained and discussed through comments in the  program itself. The topics covered in this book include starting the software through coding in software and writing programs.

The book features more on practical approach through ample examples covering simple to complex topics  that address  many core concepts and advanced topics.

TAGLINE

Learn to Demystify the neural networks with PyTorch

KEY FEATURES

  • Basics concepts of PyTorch including CNN and RNN architecture are discussed in detailed manner.
  • The worked out case studies are dealt in a detailed manner.
  • Each chapter concludes with the observations of PyTorch to facilitate a better understanding of PyTorch.
  • Abundant worked out coding examples.
  • Highly self-explanatory and user-friendly approach.

 WHAT WILL YOU LEARN

  •  Linear Regression
  •  Convolution Neural Network (CNN)
  •  Recurrent Neural Network (RNN)
  •  PyTorch Datasets

WHO THIS BOOK IS FOR

  • Graduate Students- Computer Science/ CSE / IT/ Computer Applications
  • Master Class Students—Msc (CS/IT)/ MCA/ M.Phil, M.Tech, M.S.
  • Researcher’s—Ph.D Research Scholars