Data Mining and Machine Learning: Fundamental Concepts and Algorithms Hardback - 2020
by Zaki, Mohammed J.,Meira Jr, Wagner
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- very good
- Hardback
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Details
- Title Data Mining and Machine Learning: Fundamental Concepts and Algorithms
- Author Zaki, Mohammed J.,Meira Jr, Wagner
- Binding Hardback
- Condition Used - Very good
- Pages 776
- Volumes 1
- Language ENG
- Publisher Cambridge University Press
- Publication date 3/12/2020 12:00:01 A
- Features Bibliography, Index
- Bookseller's Inventory # mon0004171081
- ISBN 9781108473989 / 1108473989
- Weight 3.45 lbs (1.56 kg)
- Dimensions 9.9 x 6.8 x 1.8 in (25.15 x 17.27 x 4.57 cm)
- Size 1.8504 10.1575 7.2441
- Category Computers - Data Base Management
- Library of Congress subjects Data mining
- Library of Congress Catalogue Number 2019037293
- Dewey Decimal Code 006.312
- Quantity available 2
- Bookseller catalogues Book
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