Statistics for Chemical Engineers
| AUTHOR | Zavala, Victor M. |
| PUBLISHER | Cambridge University Press (09/25/2025) |
| PRODUCT TYPE | Hardcover (Hardcover) |
Description
Build a firm foundation for studying statistical modelling, data science, and machine learning with this practical introduction to statistics, written with chemical engineers in mind. It introduces a data-model-decision approach to applying statistical methods to real-world chemical engineering challenges, establishes links between statistics, probability, linear algebra, calculus, and optimization, and covers classical and modern topics such as uncertainty quantification, risk modelling, and decision-making under uncertainty. Over 100 worked examples using Matlab and Python demonstrate how to apply theory to practice, with over 70 end-of-chapter problems to reinforce student learning, and key topics are introduced using a modular structure, which supports learning at a range of paces and levels. Requiring only a basic understanding of calculus and linear algebra, this textbook is the ideal introduction for undergraduate students in chemical engineering, and a valuable preparatory text for advanced courses in data science and machine learning with chemical engineering applications.
Show More
Product Format
Product Details
ISBN-13:
9781009541893
ISBN-10:
1009541897
Binding:
Hardback or Cased Book (Sewn)
Content Language:
English
More Product Details
Page Count:
468
Carton Quantity:
8
Product Dimensions:
7.00 x 1.00 x 10.00 inches
Weight:
2.26 pound(s)
Country of Origin:
US
Subject Information
BISAC Categories
Technology & Engineering | Chemical & Biochemical
Descriptions, Reviews, Etc.
publisher marketing
Build a firm foundation for studying statistical modelling, data science, and machine learning with this practical introduction to statistics, written with chemical engineers in mind. It introduces a data-model-decision approach to applying statistical methods to real-world chemical engineering challenges, establishes links between statistics, probability, linear algebra, calculus, and optimization, and covers classical and modern topics such as uncertainty quantification, risk modelling, and decision-making under uncertainty. Over 100 worked examples using Matlab and Python demonstrate how to apply theory to practice, with over 70 end-of-chapter problems to reinforce student learning, and key topics are introduced using a modular structure, which supports learning at a range of paces and levels. Requiring only a basic understanding of calculus and linear algebra, this textbook is the ideal introduction for undergraduate students in chemical engineering, and a valuable preparatory text for advanced courses in data science and machine learning with chemical engineering applications.
Show More
List Price $110.00
Your Price
$108.90
