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Introduction to Python for Econometrics, Statistics, and Data Analysis
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  • Title: Introduction to Python for Econometrics, Statistics, and Data Analysis
  • Author(s) Kevin Sheppard
  • Publisher: Independently published (September 17, 2021)
  • Hardcover/Paperback: N/A
  • eBook: PDF (407 pages)
  • Language: English
  • ISBN-10/ASIN: N/A
  • ISBN-13: N/A
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Book Description

This book is designed for someone new to statistical computing wishing to develop a set of skills necessary to perform original research for econometrics, statistics or general numerical analysis using Python.

About the Authors
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