1

Etapa 1

Week 1 - Lecture

2

Etapa 2

Week 2 - Lecture

3

Etapa 3

Week 1 - Quiz

4

Etapa 4

Week 2 - Quiz

5

Etapa 5

Week 1 - Programming Assigments

6

Etapa 6

Week 2 - Programming Assigments

7

Etapa 7

Week 3 - Lecture

8

Etapa 8

Week 4 - Lecture

9

Etapa 9

Week 3 - Quiz

10

Etapa 10

Week 4 - Quiz

11

Etapa 11

Week 3 - Programming Assigments

12

Etapa 12

Week 4 - Programming Assigments

13

Etapa 13

Составить mindmap по всем лекциям

1

Etapa 1

Week 1 - Lecture

2

Etapa 2

Week 2 - Lecture

3

Etapa 3

Week 1 - Quiz

4

Etapa 4

Week 2 - Quiz

5

Etapa 5

Week 1 - Programming Assigments

6

Etapa 6

Week 2 - Programming Assigments

7

Etapa 7

Week 3 - Lecture

8

Etapa 8

Week 4 - Lecture

9

Etapa 9

Week 3 - Quiz

10

Etapa 10

Week 4 - Quiz

11

Etapa 11

Week 3 - Programming Assigments

12

Etapa 12

Week 4 - Programming Assigments

13

Etapa 13

Составить mindmap по всем лекциям

22 abril 2014 17 mayo 2014
Objetivo completado 30 junio 2014

Autor del objetivo

Алексей

Rusia, Москва

42 año / año / año

Educación

R Programming

About the Course

In this course you will learn how to program in R and how to use R for effective data analysis. You will learn how to install and configure software necessary for a statistical programming environment and describe generic programming language concepts as they are implemented in a high-level statistical language. The course covers practical issues in statistical computing which includes programming in R, reading data into R, accessing R packages, writing R functions, debugging, profiling R code, and organizing and commenting R code. Topics in statistical data analysis will provide working examples.

Course Syllabus

The course will cover the following material each week:

  • Week 1: Overview of R, R data types and objects, reading and writing data
  • Week 2: Control structures, functions, scoping rules, dates and times
  • Week 3: Loop functions, debugging tools
  • Week 4: Simulation, code profiling

Recommended Background

Some familiarity with programming concepts will be useful as well basic knowledge of statistical reasoning; Data Scientist's Toolbox

Suggested Readings

Course Format

There will be weekly lecture videos, quizzes, and programming assignments.

As part of this class you will be required to set up a GitHub account. GitHub is a tool for collaborative code sharing and editing. During this course and other courses in the Specialization you will be submitting links to files you publicly place in your GitHub account as part of peer evaluation. If you are concerned about preserving your anonymity you will need to set up an anonymous GitHub account and be careful not to include any information you do not want made available to peer evaluators.

  1. Week 1 - Lecture

  2. Week 2 - Lecture

  3. Week 1 - Quiz

  4. Week 2 - Quiz

  5. Week 1 - Programming Assigments

  6. Week 2 - Programming Assigments

  7. Week 3 - Lecture

  8. Week 4 - Lecture

  9. Week 3 - Quiz

  10. Week 4 - Quiz

  11. Week 3 - Programming Assigments

  12. Week 4 - Programming Assigments

  13. Составить mindmap по всем лекциям

  • 2195
  • 22 abril 2014, 07:11
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