Data Cleaning: The Ultimate Practical Guide Data Cleaning: The Ultimate Practical Guide

Data Cleaning: The Ultimate Practical Guide

    • ¥1,600
    • ¥1,600

発行者による作品情報

Transform your data woes into wins with "Data Cleaning: The Ultimate Practical Guide - From Dirty Data to Clean Data." No more staring blankly at error messages or struggling to make sense of messy datasets. This friendly and approachable guide is your passport to mastering the art of data cleaning.

Ever wondered what makes data 'dirty' or 'clean'? This book dives deep into demystifying these concepts, equipping you with the knowledge to identify and eliminate errors efficiently. Learn how to prevent common data pitfalls from sneaking into your analyses, ensuring your data is not just clean but also primed for impactful insights.

Forget dense technical jargon—this guide speaks your language. Perfect for beginners and seasoned professionals alike, it breaks down complex processes into simple, actionable steps. From understanding the phases of data cleaning to mastering essential pre-processing techniques, each chapter is crafted to empower you with practical skills.

Discover:
- The 4 crucial phases of data cleaning
- 6 common types of dirty data and how to address them
- Insights into 5 data collection methods and a streamlined 5-step cleaning process
- Effective data pre-processing using straightforward summary statistics

Whether you're a researcher, analyst, or simply curious about optimizing your data practices, this book is your go-to resource. By the time you finish reading, you'll possess a comprehensive understanding of data preparation—empowering you to unleash the true potential of your analyses.

Ready to elevate your data skills? Don't wait—order "Data Cleaning: The Ultimate Practical Guide" today and take the first step towards cleaner, more impactful data analysis!

ジャンル
ビジネス/マネー
発売日
2022年
11月7日
言語
EN
英語
ページ数
48
ページ
発行者
Lee Baker
販売元
Draft2Digital, LLC
サイズ
2.9
MB
Big Data Tips 1-2-3 Big Data Tips 1-2-3
2015年
Data Science from Scratch Data Science from Scratch
2018年
The Informed Company The Informed Company
2021年
Big Data Big Data
2018年
Data Lake Architecture Data Lake Architecture
2016年
Data Resource Integration Data Resource Integration
2014年
Correlation Is Not Causation Correlation Is Not Causation
2019年
DataViz: How to Choose the Right Chart for Your Data DataViz: How to Choose the Right Chart for Your Data
2021年
Hypothesis Testing Hypothesis Testing
2021年
Data Collection Data Collection
2020年
Data Types Data Types
2020年
Bayes’ Theorem and Bayesian Statistics Bayes’ Theorem and Bayesian Statistics
2020年