
BOOKS - Ultimate Parallel and Distributed Computing with Julia For Data Science Excel...

Ultimate Parallel and Distributed Computing with Julia For Data Science Excel in Data Analysis, Statistical Modeling and Machine Learning by Leveraging MLBase.jl and MLJ.jl to Optimize Workflows
Author: Nabanita Dash
Year: 2024
Pages: 484
Format: EPUB
File size: 10.1 MB
Language: ENG

Year: 2024
Pages: 484
Format: EPUB
File size: 10.1 MB
Language: ENG

Book Description: The book "Ultimate Parallel and Distributed Computing with Julia For Data Science Excel in Data Analysis Statistical Modeling and Machine Learning by Leveraging MLBasejl and MLJjl to Optimize Workflows" provides an in-depth exploration of parallel and distributed computing concepts and their applications in data science, statistical modeling, and machine learning. The book focuses on the use of Julia, a high-performance programming language, to develop efficient workflows that can be applied to various domains such as scientific computing, data analysis, and machine learning. It covers the development of personal paradigms for understanding the technological process of developing modern knowledge as the basis for human survival and unity in a divided world. The book begins with an introduction to parallel and distributed computing, highlighting the need for efficient processing of large datasets and the limitations of traditional processing methods. It then delves into the basics of Julia, its syntax, and its capabilities in terms of performance and functionality. The author explains how to leverage MLBasejl and MLJjl to optimize workflows and achieve better results in less time. The book is divided into four parts: Part I deals with the fundamentals of parallel and distributed computing, including the history of computing, the concept of parallelism, and the challenges associated with it. Part II explores the features and capabilities of Julia, including its syntax, performance, and integration with other tools and libraries. Part III discusses the application of Julia in data science, statistical modeling, and machine learning, showcasing its potential in these fields. Finally, Part IV provides case studies on real-world applications of Julia in various industries, demonstrating its effectiveness in practical scenarios.
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