Abstract
The rapid evolution of deep learning has opened a plethora of opportunities across various fields, but not without its share of challenges. One of the most significant hurdles is the requirement for extensive labeled datasets to train robust models, which are often expensive, time-consuming, or infeasible to obtain. “Transfer Learning and Domain Adaptation in Deep Networks” addresses this challenge by providing an in-depth exploration of transfer learning and domain adaptation techniques, which allow for the transfer of knowledge from one domain to solve problems in another, thereby mitigating the data scarcity problem. This book presents a structured analysis of the foundational theories, cutting-edge architectures, practical applications, and the future prospects of transfer learning and domain adaptation. It scrutinizes the benefits and intricacies of these approaches, discusses the ethical implications of biased models, and offers insights into the creation of fair and unbiased AI systems. With a focus on current trends and future directions, this comprehensive text serves as a critical resource for those looking to deepen their understanding of these transformative techniques in deep learning.
Keywords: Transfer Learning, Domain Adaptation, Deep Learning, Artificial Intelligence, Ethical AI
Download Book
Reviews
There are no reviews yet.