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 Title: Using Python for Introductory Econometrics
 Author(s) Florian Heiss, Daniel Brunner
 Publisher: Independently published (May 25, 2020); eBook (Online/Web Edition)
 Hardcover/Paperback: 428 pages
 eBook: PDF
 Language: English
 ISBN10/ASIN: B08924H17Y
 ISBN13: 9798648436763
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Book Description
This book introduces the popular, powerful and free programming language and software package Python, focuses on implementation of standard tools and methods used in econometrics.
About the Authors N/A
 The Python Programming Language
 Financial Mathematics and Engineering
 Data Science
 Data Analysis and Data Mining, Big Data
 Statistics, Mathematical Statistics, etc.
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