0
Your cart

Your cart is empty

Browse All Departments
  • All Departments
Price
  • R1,000 - R2,500 (1)
  • R2,500 - R5,000 (1)
  • -
Status
Brand

Showing 1 - 2 of 2 matches in All Departments

The Mathematics of Data (Hardcover): Michael W. Mahoney, John C. Duchi, Anna C. Gilbert The Mathematics of Data (Hardcover)
Michael W. Mahoney, John C. Duchi, Anna C. Gilbert
R3,564 Discovery Miles 35 640 Ships in 9 - 15 working days

Data science is a highly interdisciplinary field, incorporating ideas from applied mathematics, statistics, probability, and computer science, as well as many other areas. This book gives an introduction to the mathematical methods that form the foundations of machine learning and data science, presented by leading experts in computer science, statistics, and applied mathematics. Although the chapters can be read independently, they are designed to be read together as they lay out algorithmic, statistical, and numerical approaches in diverse but complementary ways. This book can be used both as a text for advanced undergraduate and beginning graduate courses, and as a survey for researchers interested in understanding how applied mathematics broadly defined is being used in data science. It will appeal to anyone interested in the interdisciplinary foundations of machine learning and data science.

Randomized Algorithms for Matrices and Data (Paperback): Michael W. Mahoney Randomized Algorithms for Matrices and Data (Paperback)
Michael W. Mahoney
R1,801 Discovery Miles 18 010 Ships in 10 - 15 working days

Randomized algorithms for very large matrix problems have received a great deal of attention in recent years. Much of this work was motivated by problems in large-scale data analysis, largely since matrices are popular structures with which to model data drawn from a wide range of application domains, and the success of this line of work opens the possibility of performing matrix-based computations with truly massive data sets. Originating within theoretical computer science, this work was subsequently extended and applied in important ways by researchers from numerical linear algebra, statistics, applied mathematics, data analysis, and machine learning, as well as domain scientists. Randomized Algorithms for Matrices and Data provides a detailed overview, appropriate for both students and researchers from all of these areas, of recent work on the theory of randomized matrix algorithms as well as the application of those ideas to the solution of practical problems in large-scale data analysis. By focusing on ubiquitous and fundamental problems such as least-squares approximation and low-rank matrix approximation that have been at the center of recent developments, an emphasis is placed on a few simple core ideas that underlie not only recent theoretical advances but also the usefulness of these algorithmic tools in large-scale data applications.

Free Delivery
Pinterest Twitter Facebook Google+
You may like...
Complete Clumping Cat Litter (10kg)
R151 Discovery Miles 1 510
White Glo Professional Choice Toothpaste…
R80 Discovery Miles 800
Bostik Clear on Blister Card (25ml)
R38 Discovery Miles 380
3:16 - The Numbers Of Hope
Max Lucado Paperback R328 Discovery Miles 3 280
Hask Keratin Protein Smoothing Shine Oil…
R90 Discovery Miles 900
Fifty Shades Restrain Me Bondage Rope (2…
R539 R429 Discovery Miles 4 290
King Of Greed - Kings Of Sin: Book 3
Ana Huang Paperback R280 R140 Discovery Miles 1 400
Wagworld Leafy Mat - Fleece…
 (1)
R549 R367 Discovery Miles 3 670
Speak Now - Taylor's Version
Taylor Swift CD R496 Discovery Miles 4 960
Vital BabyŽ NURTURE™ Protect & Care…
R123 R95 Discovery Miles 950

 

Partners