BOOKS - Dirty Data Processing for Machine Learning
Dirty Data Processing for Machine Learning - Zhixin Qi November 29, 2023 PDF  BOOKS
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Dirty Data Processing for Machine Learning
Author: Zhixin Qi
Year: November 29, 2023
Format: PDF
File size: PDF 7.3 MB
Language: English



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Book Dirty Data Processing for Machine Learning Introduction: In today's technology-driven world, data plays an essential role in shaping our understanding of the world around us. With the advent of machine learning and data mining, we have access to vast amounts of data that can help us make informed decisions and drive innovation. However, the quality of this data is often overlooked, leading to "dirty data" that can significantly impact the accuracy of results. In their groundbreaking book, "Dirty Data Processing for Machine Learning authors [Author Names] delve into the challenges of dealing with dirty data and explore effective methods for processing it. This comprehensive guide is a must-read for anyone working in the fields of database and machine learning, providing valuable insights and practical solutions for tackling the problem of dirty data. Chapter 1: The Importance of Data Quality The first chapter sets the stage for the rest of the book by emphasizing the critical importance of data quality in machine learning. The authors explain how dirty data can lead to inaccurate results, highlighting the need for a personal paradigm for perceiving the technological process of developing modern knowledge as the basis for humanity's survival. They argue that understanding the evolution of technology is crucial for adapting to the changing landscape of data processing and ensuring the survival of our species. Chapter 2: Impacts of Dirty Data on Machine Learning Models In this chapter, the authors examine the effects of dirty data on machine learning models. They demonstrate how even small amounts of dirty data can significantly affect the accuracy of results, making it essential to understand the impact of dirty data on model performance.
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