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000 nam5i
001 2210080934821
003 DE-He213
005 20250321105437
007 cr nn 008mamaa
008 240830s2024 si | s |||| 0|eng d
020 a97898197395479978-981-97-3954-7
024 a10.1007/978-981-97-3954-72doi
040 a221008
050 aQ325.5-.7
072 aUYQM2bicssc
072 aMAT0290002bisacsh
072 aUYQM2thema
082 a006.31223
100 aGeng, Yu.eauthor.4aut4http://id.loc.gov/vocabulary/relators/aut
245 00 aPractical Machine Learning Illustrated with KNIMEh[electronic resource] /cby Yu Geng, Qin Li, Geng Yang, Wan Qiu.
250 a1st ed. 2024.
264 aSingapore :bSpringer Nature Singapore :bImprint: Springer,c2024.
300 aXIV, 304 p. 392 illus., 358 illus. in color.bonline resource.
336 atextbtxt2rdacontent
337 acomputerbc2rdamedia
338 aonline resourcebcr2rdacarrier
347 atext filebPDF2rda
505 aChapter 1 Overview of Artificial Intelligence and Machine Learning -- Chapter 2 Basic Knowledge of Machine Learning -- Chapter 3 Linear Regression -- Chapter 4 Logistic Regression -- Chapter 5 Model Optimization -- Chapter 6 Support Vector Machine -- Chapter 7 Decision Tree -- Chapter 8 Understanding of Decision Tree -- Chapter 9 Bayesian Analysis -- Chapter 10 Deep Learning.
520 aThis book guides professionals and students from various backgrounds to use machine learning in their own fields with low-code platform KNIME and without coding. Many people from various industries need use machine learning to solve problems in their own domains. However, machine learning is often viewed as the domain of programmers, especially for those who are familiar with Python. It is too hard for people from different backgrounds to learn Python to use machine learning. KNIME, the low-code platform, comes to help. KNIME helps people use machine learning in an intuitive environment, enabling everyone to focus on what to do instead of how to do. This book helps the readers gain an intuitive understanding of the basic concepts of machine learning through illustrations to practice machine learning in their respective fields. The author provides a practical guide on how to participate in Kaggle completions with KNIME to practice machine learning techniques.
650 aMachine learning.
650 aArtificial intelligencexData processing.
650 aMachine Learning.
650 aData Science.
700 aLi, Qin.eauthor.4aut4http://id.loc.gov/vocabulary/relators/aut
700 aYang, Geng.eauthor.4aut4http://id.loc.gov/vocabulary/relators/aut
700 aQiu, Wan.eauthor.4aut4http://id.loc.gov/vocabulary/relators/aut
710 aSpringerLink (Online service)
773 tSpringer Nature eBook
776 iPrinted edition:z9789819739530
776 iPrinted edition:z9789819739554
776 iPrinted edition:z9789819739561
856 uhttps://doi.org/10.1007/978-981-97-3954-7
912 aZDB-2-SCS
912 aZDB-2-SXCS
950 aComputer Science (SpringerNature-11645)
950 aComputer Science (R0) (SpringerNature-43710)
Practical Machine Learning Illustrated with KNIME[electronic resource] /by Yu Geng, Qin Li, Geng Yang, Wan Qiu
Material type
전자책
Title
Practical Machine Learning Illustrated with KNIME[electronic resource] /by Yu Geng, Qin Li, Geng Yang, Wan Qiu
Author's Name
Li Qin. author Yang Geng. author Qiu Wan. author
판 사항
1st ed. 2024.
Physical Description
XIV, 304 p 392 illus, 358 illus in color online resource.
Keyword
This book guides professionals and students from various backgrounds to use machine learning in their own fields with low-code platform KNIME and without coding. Many people from various industries need use machine learning to solve problems in their own domains. However, machine learning is often viewed as the domain of programmers, especially for those who are familiar with Python. It is too hard for people from different backgrounds to learn Python to use machine learning. KNIME, the low-code platform, comes to help. KNIME helps people use machine learning in an intuitive environment, enabling everyone to focus on what to do instead of how to do. This book helps the readers gain an intuitive understanding of the basic concepts of machine learning through illustrations to practice machine learning in their respective fields. The author provides a practical guide on how to participate in Kaggle completions with KNIME to practice machine learning techniques.
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