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 Title: Mathematical Methods for Physicists
 Author(s) George B. Arfken, Hans J. Weber, Frank E. Harris
 Publisher: ELSEVIER INDIA; 7th edition; eBook (Online Edition by Internet Archive)
 Paperback: 1220 pages
 eBook: PDF
 Language: English
 ISBN10/ASIN: 9381269556
 ISBN13: 9789381269558
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Book Description
This book provides aspiring engineers and scientists with key insights into mathematical concepts that they may need to understand as elementary researchers and students. The first chapter covers all the vital concepts needed by the readers to understand the latter chapters.
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 Mathematical Methods for Physicists (George B. Arfken, et al.)
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