Gratis Versand ab 16,99 €. Mehr Infos.
Bookbot

Understanding Deep Learning

Mehr zum Buch

This authoritative and accessible treatment of deep learning strikes a pragmatic balance between theory and practice. As a fast-evolving field with significant relevance in today's digital landscape, it covers essential topics, recent advancements, and cutting-edge concepts. Unlike many texts that overwhelm with technical details, Simon Prince curates only the most critical ideas, presenting them in an intuitive and digestible manner. Concepts range from machine learning basics to advanced models, explained in lay terms and detailed mathematically, complemented by visual illustrations. The textbook is self-contained and suitable for anyone with a basic understanding of applied mathematics. It includes up-to-date discussions on topics like transformers and diffusion models, with short, focused chapters that gradually increase in complexity to help students grasp challenging concepts. The pragmatic approach provides the necessary detail for implementing basic model versions, while the streamlined presentation distinguishes essential ideas from extraneous context. With minimal mathematical prerequisites, extensive illustrations, and practice problems, the material is made widely accessible. Additionally, programming exercises are provided in accompanying Python Notebooks.

Buchkauf

Understanding Deep Learning, Simon J. D. Prince

Sprache
Erscheinungsdatum
2023
Wir benachrichtigen dich per E-Mail.

Lieferung

  • Gratis Versand ab 16,99 € in ganz Deutschland! Mehr Infos.

Zahlungsmethoden

Keiner hat bisher bewertet.Abgeben

Titel
Understanding Deep Learning
Sprache
Englisch
Verlag
MIT Press
Erscheinungsdatum
2023
Seitenzahl
544
ISBN10
0262048647
ISBN13
9780262048644
Reihe
Beschreibung
This authoritative and accessible treatment of deep learning strikes a pragmatic balance between theory and practice. As a fast-evolving field with significant relevance in today's digital landscape, it covers essential topics, recent advancements, and cutting-edge concepts. Unlike many texts that overwhelm with technical details, Simon Prince curates only the most critical ideas, presenting them in an intuitive and digestible manner. Concepts range from machine learning basics to advanced models, explained in lay terms and detailed mathematically, complemented by visual illustrations. The textbook is self-contained and suitable for anyone with a basic understanding of applied mathematics. It includes up-to-date discussions on topics like transformers and diffusion models, with short, focused chapters that gradually increase in complexity to help students grasp challenging concepts. The pragmatic approach provides the necessary detail for implementing basic model versions, while the streamlined presentation distinguishes essential ideas from extraneous context. With minimal mathematical prerequisites, extensive illustrations, and practice problems, the material is made widely accessible. Additionally, programming exercises are provided in accompanying Python Notebooks.