Programming Skills For Data Science Michael Freeman
Material type: TextLanguage: Eng Publication details: Apress 2019Description: 376p. 20.3 x 25.4 x 4.7 cmISBN:- 9789389552928
- 519.502855133 MIC
Item type | Current library | Call number | Materials specified | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|
Books | Rashtriya Raksha University | 519.502855133 MIC (Browse shelf(Opens below)) | Available | 8279 |
Browsing Rashtriya Raksha University shelves Close shelf browser (Hides shelf browser)
519.5024658 BLA Applied Business Statistics making better business decisions | 519.5024658 BLA Applied Business Statistics making better business decisions | 519.50285513 THO ADVANCED OBJECT-ORIENTED PROGRAMMING IN R: STATISTICAL PROGRAMMING FOR DATA SCIENCE, ANALYSIS AND FINANCE | 519.502855133 MIC Programming Skills For Data Science | 519.52 VER Determining Sample Size and Power in Research Studies | 519.535 DIL Multivariate Analysis: Methods and Applications | 519.535 TAB Using Multivariate Statistics |
Programming Skills for Data Science brings together all the foundation skills needed to transform raw data into actionable insights for domains ranging from urban planning to precision medicine, even if you have no programming or data science experience. Guided by expert instructors Michael Freeman and Joel Ross, this book will help learners install the tools required to solve professional-level data science problems, including widely used R language, RStudio integrated development environment, and Git version-control system. It explains how to wrangle data into a form where it can be easily used, analyzed, and visualized so others can see the patterns uncovered. Step by step, students will master powerful R programming techniques and troubleshooting skills for probing data in new ways, and at larger scales. Features: 1. Guides students through setting up their computer for data science, understanding how the pieces fit together, and successfully using them to solve real problems. 2. Introduces R, RStudio, git, GitHub, Markdown, Shiny, and other leading tools. 3. Covers everything from preparing raw data to creating beautiful, sharable visualizations. 4. Anticipates questions and demystifies complex ideas, reflecting the authors’ experience introducing data science to thousands of students. Table of Contents: 1) Using the Command Line 2) Version Control with git and GitHub 3) Using Markdown for Documentation 4) Introduction to R 5) Functions in R 6) Vectors and Lists 7) Data and Data Frames 8) Manipulating Data with dplyr 9) Reshaping Data with tidyr 10) Accessing Databases and Web APIs 11) Designing Data Visualizations 12) Creating Visualizations with ggplot2 13) Interactive Visualization in R 14) Dynamic Reports with R Markdown 15) Building Interactive Web Applications with Shiny 16) Working Collaboratively
There are no comments on this title.