전남대학교 중앙도서관

  • 중앙도서관
  • 여수캠퍼스도서관
  • 법학도서관
  • 치의학도서관
  • 의학도서관

주메뉴

전체메뉴


  • 홈
  • 상세정보

상세정보

상세정보

부가기능

Hands-On Data Science with Anaconda [electronic resource] : Utilize the right mix of tools to create high-performance data science applications

상세 프로파일

상세정보
자료유형단행본
서명/저자사항Hands-On Data Science with Anaconda [electronic resource]: Utilize the right mix of tools to create high-performance data science applications. / Yuxing Yan.
개인저자Yan, Yuxing. 
Yan, James. 
발행사항Birmingham: Packt Publishing, 2018.
형태사항1 online resource (356 pages).
기타형태 저록Print version: Yan, Yuxing. Hands-On Data Science with Anaconda : Utilize the right mix of tools to create high-performance data science applications. Birmingham : Packt Publishing, ©2018
ISBN9781788834735
1788834739
일반주기 General issues for optimization problems.
내용주기Cover; Title Page; Copyright and Credits; Dedication; Packt Upsell; Contributors; Table of Contents; Preface; Chapter 1: Ecosystem of Anaconda; Introduction; Reasons for using Jupyter via Anaconda; Using Jupyter without pre-installation; Miniconda; Anaconda Cloud; Finding help; Summary; Review questions and exercises; Chapter 2: Anaconda Installation; Installing Anaconda; Anaconda for Windows; Testing Python; Using IPython; Using Python via Jupyter; Introducing Spyder; Installing R via Conda; Installing Julia and linking it to Jupyter; Installing Octave and linking it to Jupyter; Finding help.
Generating R datasetsSummary; Review questions and exercises; Chapter 4: Data Visualization; Importance of data visualization; Data visualization in R; Data visualization in Python; Data visualization in Julia; Drawing simple graphs; Various bar charts, pie charts, and histograms; Adding a trend; Adding legends and other explanations; Visualization packages for R; Visualization packages for Python; Visualization packages for Julia; Dynamic visualization; Saving pictures as pdf; Saving dynamic visualization as HTML file; Summary; Review questions and exercises.
Chapter 5: Statistical Modeling in AnacondaIntroduction to linear models; Running a linear regression in R, Python, Julia, and Octave; Critical value and the decision rule; F-test, critical value, and the decision rule; An application of a linear regression in finance; Dealing with missing data; Removing missing data; Replacing missing data with another value; Detecting outliers and treatments; Several multivariate linear models; Collinearity and its solution; A model's performance measure; Summary; Review questions and exercises; Chapter 6: Managing Packages.
Introduction to packages, modules, or toolboxesTwo examples of using packages; Finding all R packages; Finding all Python packages; Finding all Julia packages; Finding all Octave packages; Task views for R; Finding manuals; Package dependencies; Package management in R; Package management in Python; Package management in Julia; Package management in Octave; Conda -- the package manager; Creating a set of programs in R and Python; Finding environmental variables; Summary; Review questions and exercises; Chapter 7: Optimization in Anaconda; Why optimization is important.
요약Review questions and exercises; Chapter 3: Data Basics; Sources of data; UCI machine learning; Introduction to the Python pandas package; Several ways to input data; Inputting data using R; Inputting data using Python; Introduction to the Quandl data delivery platform; Dealing with missing data; Data sorting; Slicing and dicing datasets; Merging different datasets; Data output; Introduction to the cbsodata Python package; Introduction to the datadotworld Python package; Introduction to the haven and foreign R packages; Introduction to the dslabs R package; Generating Python datasets.
요약Hands-On Data Science with Anaconda gets you started with Anaconda and demonstrates how you can use it to perform data science operations in the real world. You will learn different ways to retrieve data from various sources and different visualization tools packages available in Python, R, and Julia.
주제명
(통일서명)
ANACONDA (Electronic resource)
일반주제명Machine learning.
Information visualization.
Electronic data processing.
Computers --Machine Theory.
Computers --Programming Languages --Python.
Programming & scripting languages: general.
Mathematical theory of computation.
Machine learning.
Information architecture.
Computers --Data Modeling & Design.
Database design & theory.
COMPUTERS / General.
분류기호(DDC)006.31
언어영어
바로가기URL
QR Code

소장정보

  • 소장정보

보존/밀집/기증 자료 신청 보존/밀집/기증 자료 신청 분관대출 분관대출 서가부재도서 서가부재도서 무인예약대출 이미지 무인예약대출 배달서비스 배달서비스 소장위치출력 소장위치출력

메세지가 없습니다
No. 등록번호 청구기호 소장처 밀집번호 도서상태 반납예정일 예약 서비스 매체정보
1 E134616 EB 006.31 중앙도서관[본관]/E-Book/ 대출가능 무인예약대출 이미지
true|true|true|true |true|true |
 

서평

  • 서평

태그

  • 태그

나의 태그

나의 태그 (0)

모든 이용자 태그

모든 이용자 태그 (0) 태그 목록형 보기 태그 구름형 보기
 
메세지가 없습니다

QUICK LINK

  • 희망도서신청
  • 대출/연장조회
  • 서가부재도서
  • 이용교육

마이메뉴추가


QRCode
  • 개인정보호정책
  • 이메일무단수집거부
  • 도서관이용문의

  • 도서관자치위원회  원격제어  Instagram  facebook  w  kakao 플친
500-757 광주광역시 북구 용봉로 77   TEL  062)530-3571~2(대출반납실)   FAX  062)530-3529
  • 29397
  • 126585837