Processing ......
FreeComputerBooks.com
Links to Free Computer, Mathematics, Technical Books all over the World
 
Mathematical Tools for Physics
Top Free Web Programming Books 🌠 - 100% Free or Open Source!
  • Title: Mathematical Tools for Physics
  • Author(s) James Nearing
  • Publisher: Dover Publications (October 18, 2010)
  • Paperback: 496 pages
  • eBook: PDF
  • Language: English
  • ISBN-10: 048648212X
  • ISBN-13: 978-0486482125
  • Share This:  

Book Description

Having the right answer doesn't guarantee understanding. This book helps physics students learn to take an informed and intuitive approach to solving problems. It assists undergraduates in developing their skills and provides them with grounding in important mathematical methods.

Starting with a review of basic mathematics, the author presents a thorough analysis of infinite series, complex algebra, differential equations, and Fourier series. Succeeding chapters explore vector spaces, operators and matrices, multivariable and vector calculus, partial differential equations, numerical and complex analysis, and tensors. Additional topics include complex variables, Fourier analysis, the calculus of variations, and densities and distributions. An excellent math reference guide, this volume is also a helpful companion for physics students as they work through their assignments

About the Authors
  • N/A
Reviews, Ratings, and Recommendations: Related Book Categories: Read and Download Links: Similar Books:
  • Mathematics for the Physical Sciences (Leslie Copley)

    This book provides a comprehensive introduction to the areas of mathematical physics. It combines all the essential math concepts into clearly written reference and illustrates the mathematics with numerous physical examples drawn from contemporary research.

  • Mathematics for the Physical Sciences (Herbert S. Wilf)

    This book provides a text for a first-year graduate level course in mathematical methods. Advanced undergraduates and graduate students in the natural sciences will receive a solid foundation in several fields of mathematics with this text.

  • Mathematical Methods for Physicists (George B. Arfken, et al.)

    Provides aspiring engineers and scientists with key insights into mathematical concepts that they may need to understand as elementary readers. The first chapter covers all the vital concepts needed by the readers to understand the latter chapters.

  • Mathematical Methods in Quantum Mechanics (Gerald Teschl)

    This book is a brief, but self-contained, introduction to the mathematical methods of quantum mechanics, with a view towards applications to Schrodinger operators. Very clear and detailed way and supplements it by numerous exercises.

  • Mathematical Foundations of Quantum Theory

    This is a collection of lecture notes, all shared a common interest in answering quantum issues. The goal is to give a mathematically clear and self-containing explanation of the main concepts of the modern language of quantum theory.

  • Linear Algebra: A Course for Physicists and Engineers (Arak Mathai)

    This textbook on linear algebra is written to be easy to digest by non-mathematicians. It introduces the concepts of vector spaces and mappings between them without too much theorems and proofs. Various applications of the formal theory are discussed as well.

  • Probability and Statistics: A Course for Physicists and Engineers

    It offers an introduction to concepts of probability theory, probability distributions relevant in the applied sciences, and focuses on real engineering applications, as well as basics of sampling distributions, estimation and hypothesis testing.

  • Mathematics for Machine Learning (Marc P. Deisenroth, et al.)

    This self contained textbook bridges the gap between mathematical and machine learning texts, introducing the mathematical concepts with a minimum of prerequisites. It provides a beautiful exposition of the mathematics underpinning modern machine learning.

  • Mathematics for CS and Machine Learning (Jean Gallier, et al.)

    Covering everything you need to know about machine learning, now you can master the mathematics, computer science and statistics behind this field and develop your very own neural networks!

Book Categories
:
Other Categories
Resources and Links