img Leseprobe Leseprobe

Vectorization

A Practical Guide to Efficient Implementations of Machine Learning Algorithms

Edward DongBo Cui

PDF
115,99
Amazon iTunes Thalia.de Hugendubel Bücher.de ebook.de kobo Osiander Google Books Barnes&Noble bol.com Legimi yourbook.shop Kulturkaufhaus ebooks-center.de
* Affiliatelinks/Werbelinks
Hinweis: Affiliatelinks/Werbelinks
Links auf reinlesen.de sind sogenannte Affiliate-Links. Wenn du auf so einen Affiliate-Link klickst und über diesen Link einkaufst, bekommt reinlesen.de von dem betreffenden Online-Shop oder Anbieter eine Provision. Für dich verändert sich der Preis nicht.

Wiley-IEEE Press img Link Publisher

Naturwissenschaften, Medizin, Informatik, Technik / Bau- und Umwelttechnik

Beschreibung

Enables readers to develop foundational and advanced vectorization skills for scalable data science and machine learning and address real-world problems

Offering insights across various domains such as computer vision and natural language processing, Vectorization covers the fundamental topics of vectorization including array and tensor operations, data wrangling, and batch processing. This book illustrates how the principles discussed lead to successful outcomes in machine learning projects, serving as concrete examples for the theories explained, with each chapter including practical case studies and code implementations using NumPy, TensorFlow, and PyTorch.

Each chapter has one or two types of contents: either an introduction/comparison of the specific operations in the numerical libraries (illustrated as tables) and/or case study examples that apply the concepts introduced to solve a practical problem (as code blocks and figures). Readers can approach the knowledge presented by reading the text description, running the code blocks, or examining the figures.

Written by the developer of the first recommendation system on the Peacock streaming platform, Vectorization explores sample topics including:

  • Basic tensor operations and the art of tensor indexing, elucidating how to access individual or subsets of tensor elements
  • Vectorization in tensor multiplications and common linear algebraic routines, which form the backbone of many machine learning algorithms
  • Masking and padding, concepts which come into play when handling data of non-uniform sizes, and string processing techniques for natural language processing (NLP)
  • Sparse matrices and their data structures and integral operations, and ragged or jagged tensors and the nuances of processing them

From the essentials of vectorization to the subtleties of advanced data structures, Vectorization is an ideal one-stop resource for both beginners and experienced practitioners, including researchers, data scientists, statisticians, and other professionals in industry, who seek academic success and career advancement.

Weitere Titel in dieser Kategorie
Cover Dam Hydraulics
Willi H. Hager
Cover Radioactive Waste Management 2000
IMechE (Institution of Mechanical Engineers)
Cover Vectorization
Edward DongBo Cui
Cover Fire Exposures to Structural Elements
Society for Fire Protection Engineers

Kundenbewertungen

Schlagwörter

Artificial Intelligence, Keras, Tensorflow, Data Science, Algorithms, PyTorch, Research, Machine Learning, String Processing, Pandas, NumPy, Computer Science, Scientific Computing, Python, Scipy, Data Structure, Mathematics