Deep Learning Specialization on Coursera

Coursera公开课课件: 斯坦福大学人机交互(Human-Computer Interaction)

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斯坦福大学人机交互(Human-Computer Interaction)5月份底已经在Coursera上开课,由斯坦福大学的教授Scott Klemmer授课,目前正在进行中。对人机交互课程感兴趣的同学可以关注:

https://www.coursera.org/course/hci

关于该课程的介绍:

In this course, you will learn how to design technologies that bring people joy, rather than frustration. You'll learn several techniques for rapidly prototyping and evaluating multiple interface alternatives -- and why rapid prototyping and comparative evaluation are essential to excellent interaction design. You'll learn how to conduct fieldwork with people to help you get design ideas. How to make paper prototypes and low-fidelity mock-ups that are interactive -- and how to use these designs to get feedback from other stakeholders like your teammates, clients, and users. You'll learn principles of visual design so that you can effectively organize and present information with your interfaces. You'll learn principles of perception and cognition that inform effective interaction design. And you'll learn how to perform and analyze controlled experiments online. In many cases, we'll use Web design as the anchoring domain. A lot of the examples will come from the Web, and we'll talk just a bit about Web technologies in particular. When we do so, it will be to support the main goal of this course, which is helping you build human-centered design skills, so that you have the principles and methods to create excellent interfaces with any technology.

以下是斯坦福大学人机交互课程计划和课件链接,会随着课程进度更新:

Week 1 — 1. Introduction

Week 1 — 2. Needfinding

Week 2 — 3. Rapid Prototyping

Week 2 — 4. Direct Manipulation

Week 3 — 5. Heuristic Evaluation

Week 3 — 6. Representations

Week 4 — 7. Visual Design

Week 4 — 8. Information Design

Week 5 — 9. Designing Experiments

Week 5 — 10. Running Experiments

 

时间: 2012年 7月 1日 分类:人机交互 作者: 52opencourse (24,170 基本)

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