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図書

Pythonではじめる機械学習 : scikit-learnで学ぶ特徴量エンジニアリングと機械学習の基礎

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Pythonではじめる機械学習 : scikit-learnで学ぶ特徴量エンジニアリングと機械学習の基礎

Call No. (NDL)
M121-L372
Bibliographic ID of National Diet Library
028164551
Material type
図書
Author
Andreas C.Müller, Sarah Guido 著ほか
Publisher
オライリー・ジャパン
Publication date
2017.5
Material Format
Paper
Capacity, size, etc.
373p ; 24cm
NDC
007.13
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Notes on use

Note (General):

原タイトル: Introduction to Machine Learning with Python

Detailed bibliographic record

Summary, etc.:

バックグラウンドに数学的な知識がなくても理解できるように書かれた、Pythonを使った機械学習の入門書。(Provided by: 出版情報登録センター(JPRO))

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Paper

Material Type
図書
ISBN
978-4-87311-798-0
Title Transcription
パイソン デ ハジメル キカイ ガクシュウ : サイキット ラーン デ マナブ トクチョウリョウ エンジニアリング ト キカイ ガクシュウ ノ キソ
Author/Editor
Andreas C.Müller, Sarah Guido 著
中田秀基 訳
Publication Date
2017.5
Publication Date (W3CDTF)
2017
Extent
373p