Bookbot

Linear Algebra and Learning from Data

Valoración del libro

Parámetros

  • 432 páginas
  • 16 horas de lectura

Más información sobre el libro

Focusing on the intersection of linear algebra and deep learning, this textbook by Professor Gilbert Strang offers a comprehensive course that integrates essential mathematical concepts with practical applications in neural networks. It covers key topics such as the four fundamental subspaces, singular value decompositions, and optimization techniques, along with foundational elements of probability and statistics. The text is designed to be both accessible and rigorous, making it an invaluable resource for students eager to understand how linear algebra underpins modern data learning techniques.

Compra de libros

Linear Algebra and Learning from Data, Gilbert Strang

Idioma
Publicado en
2019
product-detail.submit-box.info.binding
(Tapa dura)
Te avisaremos por correo electrónico en cuanto lo localicemos.

Métodos de pago

4,4
Muy bueno
43 Valoraciones

Nos falta tu reseña aquí

Título
Linear Algebra and Learning from Data
Idioma
Inglés
Publicado en
2019
Formato
Tapa dura
Páginas
432
ISBN13
9780692196380
Serie
Calificación
4,35 de 5
Descripción
Focusing on the intersection of linear algebra and deep learning, this textbook by Professor Gilbert Strang offers a comprehensive course that integrates essential mathematical concepts with practical applications in neural networks. It covers key topics such as the four fundamental subspaces, singular value decompositions, and optimization techniques, along with foundational elements of probability and statistics. The text is designed to be both accessible and rigorous, making it an invaluable resource for students eager to understand how linear algebra underpins modern data learning techniques.