Data Management and Visualization

Data Management and Visualization

课程
en
英语
字幕可用
16 时
此内容评级为 0/5
来源
  • 来自www.coursera.org
状况
  • 自定进度
  • 免费获取
  • 收费证书
更多信息
  • 4 序列
  • 等级 介绍
  • 字幕在 Korean

Their employees are learning daily with Edflex

  • Safran
  • Air France
  • TotalEnergies
  • Generali
Learn more

课程详情

教学大纲

  • Week 1 - Selecting a research question
    We would like to welcome you to Wesleyan University's Data Analysis and Interpretation Specialization. In this session, we will discuss the basics of data analysis. Your task will be to select a data set that you would like to work with and to review available...
  • Week 2 - Writing your first program - SAS or Python
    In this session, we will discuss how to write a basic program that allows you to load a data set and examine frequency distributions. Your task will be to write a program that helps you to explore the variables you have selected for your own research question....
  • Week 3 - Managing Data
    In this session, we will help you to make and implement even more decisions with data. Statisticians often call this task 'data management', while computer scientists like the term 'data munging'. Whatever you call it, it is a vital and ongoing process when wo...
  • Week 4 - Visualizing Data
    In this session we will discuss descriptive statistics and get you visualizing your newly data managed variables individually and as graphs showing the relationships between them.
  • Week 4 - Supplemental Materials (All Weeks)
     

先决条件

没有。

讲师

Lisa Dierker
Professor
Psychology

编辑

At Wesleyan, distinguished scholar-teachers work closely with students, taking advantage of fluidity among disciplines to explore the world with a variety of tools. The university seeks to build a diverse, energetic community of students, faculty, and staff who think critically and creatively and who value independence of mind and generosity of spirit.

平台

Coursera是一家数字公司,提供由位于加利福尼亚州山景城的计算机教师Andrew Ng和达芙妮科勒斯坦福大学创建的大型开放式在线课程。

Coursera与顶尖大学和组织合作,在线提供一些课程,并提供许多科目的课程,包括:物理,工程,人文,医学,生物学,社会科学,数学,商业,计算机科学,数字营销,数据科学 和其他科目。

此内容评级为 4.5/5
(没有评论)
此内容评级为 4.5/5
(没有评论)
完成这个资源,写一篇评论