Requirements: .PDF reader, 10 MB
Overview: In the rapidly evolving field of Artificial Intelligence (AI), this book serves as a crucial resource for understanding the mathematical foundations of AI. It explores the intricate world of tensors, the fundamental elements powering today’s advanced Deep Learning models. Combining theoretical depth with practical insights, the text navigates the complex landscape of tensor calculus, guiding readers to master the principles and applications of tensors in AI. From the basics of tensor algebra and geometry to the sophisticated architectures of neural networks, including multi-layer perceptrons, convolutional, recurrent, and transformer models, this book provides a comprehensive examination of the mechanisms driving modern AI innovations. It delves into the specifics of autoencoders, generative models, and geometric interpretations, offering a fresh perspective on the complex, high-dimensional spaces traversed by Deep Learning technologies. This book not only covers the theoretical underpinnings but also showcases practical implementations using popular frameworks such as TensorFlow and PyTorch.
Genre: Non-Fiction > Tech & Devices
Contents:
1. A Tensorial Perspective to Deep Learning
2. The Algebra and Geometry of Deep Learning
3. Building Blocks
4. Journey into Convolutions
5. Modeling Temporal Data
6. Transformer Architectures
7. Attention Mechanisms Beyond Transformers
8. Graph Neural Networks: Extending Deep Learning to Graphs
9. Self-supervised and Unsupervised Learning in Deep Learning
10. Learning Representations via Autoencoders and Generative Models
11. Recent Advances and Future Perspectives
Download Instructions:
https://ouo.io/SUH0xU
https://ouo.io/7ZVRYEH