Matrix Analysis And Applied Linear Algebra By Carl D Meyer
- Publisher: MATHEMATICS
- Availability: In Stock
- SKU: 34212
- Number of Pages: 1005
Rs.1,880.00
Rs.2,695.00
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Matrix Analysis and Applied Linear Algebra
Author: Carl D. Meyer
Binding: Paperback
Paper Quality: Black White Paper
Category: Mathematics / Linear Algebra / Applied Mathematics
Recommended For: BS/BSc Mathematics students, engineering students, and anyone studying matrix theory or applied linear algebra.
Key Points
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Matrix Operations
Matrix operations, including addition, multiplication, and inversion, form the foundation of linear algebra. The book explores these operations in detail, providing examples and practical applications to solidify understanding. -
Linear Transformations
Linear transformations are essential concepts in linear algebra, as they map vectors from one vector space to another. The text delves into their properties and significance, highlighting their role in simplifying complex mathematical problems. -
Eigenvalues and Eigenvectors
Eigenvalues and eigenvectors are central to the study of linear algebra. The book offers a thorough examination of their computation and application, particularly in solving systems of linear equations and in stability analysis. -
Matrix Decompositions
The book covers various matrix decomposition techniques, such as LU decomposition and QR factorization. These methods are crucial for solving linear systems efficiently and for understanding the structure of matrices. -
Vector Spaces
Vector spaces provide the framework within which linear algebra operates. The text explains the concept of vector spaces, their properties, and their significance in solving algebraic problems. -
Determinants
Determinants are a key concept in matrix analysis, playing a vital role in understanding matrix invertibility and in solving linear systems. The book details their computation and applications in various mathematical contexts. -
Inner Product Spaces
Inner product spaces extend the concept of vector spaces by introducing the idea of an inner product. The book explores their properties and applications, particularly in defining orthogonality and in optimization problems. -
Applications in Engineering
The text demonstrates the application of matrix analysis in engineering, showing how linear algebraic methods can be used to model and solve engineering problems, from circuit analysis to structural analysis. -
Applications in Computer Science
Matrix analysis is fundamental to many areas of computer science, including computer graphics, data analysis, and machine learning. The book discusses these applications, illustrating the practical utility of linear algebra in the digital age. -
Numerical Methods
Numerical methods are essential for solving large-scale linear algebra problems that cannot be tackled analytically. The book covers various numerical techniques, including iterative methods and their convergence properties.
In conclusion, "Matrix Analysis And Applied Linear Algebra By Carl D Meyer" serves as an essential resource for understanding the principles of matrix theory and linear algebra. Its balance of theoretical exploration and practical application makes it an invaluable tool for students and professionals alike, providing them with the knowledge and skills needed to apply linear algebra in various scientific and engineering domains.
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Writer ✤ Carl D Meyer