Key Features:
- A perfect summary of deep learning not tied to any computer language, or computational framework.
- An ideal handbook of deep learning for readers that feel comfortable with mathematical notation.
- An up-to-date description of the most influential deep learning ideas that have made an impact on vision, sound, natural language understanding, and scientific domains.
- The exposition is not tied to the historical development of the field or to neuroscience, allowing the reader to quickly grasp the essentials.
Deep learning is easily described through the language of mathematics at a level accessible to many professionals. Readers from fields such as engineering, statistics, physics, pure mathematics, econometrics, operations research, quantitative management, quantitative biology, applied machine learning, or applied deep learning will quickly gain insights into the key mathematical engineering components of the field.
Key Features:
- A perfect summary of deep learning not tied to any computer language, or computational framework.
- An ideal handbook of deep learning for readers that feel comfortable with mathematical notation.
- An up-to-date description of the most influential deep learning ideas that have made an impact on vision, sound, natural language understanding, and scientific domains.
- The exposition is not tied to the historical development of the field or to neuroscience, allowing the reader to quickly grasp the essentials.
Deep learning is easily described through the language of mathematics at a level accessible to many professionals. Readers from fields such as engineering, statistics, physics, pure mathematics, econometrics, operations research, quantitative management, quantitative biology, applied machine learning, or applied deep learning will quickly gain insights into the key mathematical engineering components of the field.
Mathematical Engineering of Deep Learning
414
Mathematical Engineering of Deep Learning
414Product Details
| ISBN-13: | 9781032288284 |
|---|---|
| Publisher: | CRC Press |
| Publication date: | 10/03/2024 |
| Series: | Chapman & Hall/CRC Data Science Series |
| Pages: | 414 |
| Product dimensions: | 7.00(w) x 10.00(h) x (d) |