A Course in Ordinary Differential Equations with Applications
Author: Martin A Moskowitz (Author)
Publisher finelybook 出版社: World Scientific Publishing
Edition 版本: N/A
Publication Date 出版日期: 2025-03-27
Language 语言: English
Print Length 页数: 284 pages
ISBN-10: 9819801710
ISBN-13: 9789819801718
Book Description
Book Description
About the Author
Martin A Moskowitz received his PhD from the University of California, Berkeley, in 1964 under the direction of Professor Gerhard P Hochschild. He was an Instructor in the Department of Mathematics at the University of Chicago from 1964 to 1966, and an Assistant Professor at Columbia University from 1966 to 1969. He then became an Associate Professor at the CUNY Graduate Center, becoming a Professor in 1975 and he spent the rest of his career (except for visiting appointments at the University of Rome-La Sapienza, University of Rome II, University of Darmstadt, University of California-Berkeley, and SUNY Stony Brook) at the CUNY Graduate Center, retiring in 2006. Salient Academic Achievements: When invited to give a series of lectures at the University of Paris in 1976 the Author was awarded a National Science Foundation Senior Fellowship. Author was an editor of the Journal of Lie Theory for over 20 years and has authored or co-authored six mathematics books with World Scientific Press, and has published to date 55 research papers, all in refereed journals.
下载地址
PDF | 3 MB | 2025-03-27
相关推荐
Data Engineering Fundamentals: Building scalable data solutions with ETL pipelines and strategic data architecture design
Building Generative AI Applications with Open-source Libraries: Practical guide to implementing large language models
Architecting ASP.NET Core Applications: ASP.NET Core backend with C# 13 and .NET 9
Using Microsoft 365 Copilot AI: Understanding Copilot's prompt-based functionality and security within the Microsoft 365 ecosystem
Mathematics of Machine Learning: Master linear algebra, calculus, and probability for machine learning
Getting Structured Data from the Internet: Running Web Crawlers/Scrapers on a Big Data Production Scale