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Computer Science

Courses

Introduction to Visualization
Text code : CSE332 / Credit : 3
  • Prerequisites CSE 214 or CSE 260; MAT 211 or AMS 210; AMS 310; CSE or ISE major
  • Textbook information Now You See It: Simple Visualization Techniques for Quantitative Analysis. By Stephen Few, Analytics Press, 2009. Data Mining: The Textbook by Charu Aggarwal, Springer, 2015.

Credits 3
Course Coordinator

N/A

Description

This course is an introduction to both the foundations and applications of visualization and visual analytics, for the purpose of understanding complex data in science, medicine, business, finance, and many others. It will begin with the basics - visual perception, cognition, human-computer interaction, the sense-making process, data mining, computer graphics, and information visualization. It will then move to discuss how these elementary techniques are coupled into an effective visual analytics pipeline that allows humans to interactively think with data and gain insight. Students will get hands-on experience via several programming projects, using popular public-domain statistics and visualization libraries and APIs. This course is offered as both CSE 332 and ISE 332.

Prerequisite CSE 214 or CSE 260; MAT 211 or AMS 210; AMS 310; CSE or ISE major
Course Outcomes
  • An ability to transform spatial and non-spatial data from science, medicine, commerce, etc. into interactive visual representations.
  • An understanding of the perceptual and cognitive reasoning processes that occur in humans when exploring visual artifacts derived from data to gain insight into the underlying phenomena.
  • Working knowledge of principles and methods in human-computer interaction, data mining, computer graphics, and information visualization as applied to visual sense-making and analytics.
  • Practical experience with a number of popular public-domain data analysis and visualization packages and libraries.
Textbook
  • Now You See It: Simple Visualization Techniques for Quantitative Analysis. By Stephen Few, Analytics Press, 2009.
  • Data Mining: The Textbook by Charu Aggarwal, Springer, 2015. 
Major Topics Covered in Course
  • Applications of visual data science, visual analytics, and basic tasks
  • Visual perception and cognition
  • Visual design and aesthetics
  • Human-computer interaction and graphical user interface design
  • Tools – R for statistics, D3.js for visualization
  • The human sense-making process
  • Techniques in data mining – cluster and outlier analysis, text and pattern mining. classifiers
  • Computer graphics  - color, shading, illumination, lighting models, volume rendering
  • Scientific and medical visualization – techniques to visualize spatial (3D) data
  • Information visualization – techniques to visualize non-spatial data
  • High-dimensional data, dimensionality reduction, the curse of dimensionality 
  • Streaming  and time-varying data
  • Very large and  massive (“big”) data – data reduction, summarization, management
  • Qualitative and quantitative evaluation – user studies, statistical evaluation
  • Collaborative visualization
  • Use cases and application of visualization, visual analytics, and visual data science 
Laboratory Projects
  • Visual cluster analysis – use of R for data analysis and D3.js for visualization
  • Analysis and volume rendering of medical data – use an existing renderer to understand the image generation process
  • Visual text mining – use of R for data analysis and D3.js for visualization
  • Visual analysis of large graphs -- use of R for data analysis and D3.js for visualization
  • Visual analysis of streaming, time-varying  data -- use of R for data analysis and D3.js for visualization
Course Webpage

CSE332

 

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Alex Kuhn