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Python Data Cleaning Cookbook

Python Data Cleaning Cookbook - Second Edition

By : Michael Walker
4.9 (22)
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Python Data Cleaning Cookbook

Python Data Cleaning Cookbook

4.9 (22)
By: Michael Walker

Overview of this book

Jumping into data analysis without proper data cleaning will certainly lead to incorrect results. The Python Data Cleaning Cookbook - Second Edition will show you tools and techniques for cleaning and handling data with Python for better outcomes. Fully updated to the latest version of Python and all relevant tools, this book will teach you how to manipulate and clean data to get it into a useful form. he current edition focuses on advanced techniques like machine learning and AI-specific approaches and tools for data cleaning along with the conventional ones. The book also delves into tips and techniques to process and clean data for ML, AI, and NLP models. You will learn how to filter and summarize data to gain insights and better understand what makes sense and what does not, along with discovering how to operate on data to address the issues you've identified. Next, you’ll cover recipes for using supervised learning and Naive Bayes analysis to identify unexpected values and classification errors and generate visualizations for exploratory data analysis (EDA) to identify unexpected values. Finally, you’ll build functions and classes that you can reuse without modification when you have new data. By the end of this Data Cleaning book, you'll know how to clean data and diagnose problems within it.
Table of Contents (14 chapters)
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13
Index
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Index

A

anomalies

finding, with Isolation Forest 152-156

anti-pattern 318-322

API

complicated JSON data, importing from 53-57

apply

using, with groupby 336-341

B

bagging 276

Beautiful Soup 58

binning 308

bivariate relationships

outliers, identifying 128-135

unexpected values, identifying 128-135

viewing, with scatter plots 191-197

boxplots

used, for identifying outliers for continuous variables 173-179

broadcasting 224

C

categorical features

encoding 294-297

encoding, with high cardinality 300-303

encoding, with medium cardinality 300-303

categorical variables

frequencies, generating for 98-102

chaining 8

classes

logic, for updating Series values 429-434

non-tabular data structures, handling 435-439

Cleveland Museum of Art Open Access API

reference link 54, 371, 436

columns 286

organizing 84-89

selecting 84-89

comma separated values (CSV) 2

...
CONTINUE READING
83
Tech Concepts
36
Programming languages
73
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Python Data Cleaning Cookbook
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