Cleaning Data for Effective Data Science Doing the other 80% of the work with Python, R, and command-line tools.
Data in its raw state is rarely ready for productive analysis. This book not only teaches you data preparation, but also what questions you should ask of your data. It focuses on the thought processes necessary for successful data cleansing as much as on concise and precise code examples that expres...
Saved in:
Main Author: | David Mertz, Mertz |
---|---|
Format: | eBook |
Language: | English |
Published: |
Packt Publishing
2021.
|
Subjects: |
Similar Items
-
Provenance : an introduction to PROV /
by: Moreau, Luc (College teacher), et al.
Published: (2013) -
Information evaluation /
Published: (2014) -
Data integrity and quality /
Published: (2021) -
2185-good automated laboratory practices : principles and guidance to regulations for ensuring data integrity in automated laboratory operations with implementation guidance.
Published: (1995) -
Query answer authentication /
by: Pang, HweeHwa
Published: (2012)