Amazon download books iphone Feature Engineering for Machine Learning: Principles and Techniques for Data Scientists by Alice Zheng, Amanda Casari in English 9781491953242

26/11/2019

Feature Engineering for Machine Learning: Principles and Techniques for Data Scientists. Alice Zheng, Amanda Casari

Feature Engineering for Machine Learning: Principles and Techniques for Data Scientists


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ISBN: 9781491953242 | 214 pages | 6 Mb

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  • Feature Engineering for Machine Learning: Principles and Techniques for Data Scientists
  • Alice Zheng, Amanda Casari
  • Page: 214
  • Format: pdf, ePub, fb2, mobi
  • ISBN: 9781491953242
  • Publisher: O'Reilly Media, Incorporated
Download Feature Engineering for Machine Learning: Principles and Techniques for Data Scientists


Amazon download books iphone Feature Engineering for Machine Learning: Principles and Techniques for Data Scientists by Alice Zheng, Amanda Casari in English 9781491953242

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