This paper reports on our experience teaching introductory programming by means of real-world data analysis. We have found that students can be motivated to learn programming and computer science concepts in order to analyze DNA, predict the outcome of elections, detect fraudulent data, suggest friends in a social network, determine the authorship of documents, and more. The approach is more than just a collection of "nifty assignments"; rather, it affects the choice of topics and pedagogy. This paper describes how our approach has been used at four diverse colleges and universities to teach CS majors and nonmajors alike. It outlines the types of assignments, which are based on problems from science, engineering, business, and the humanities. Finally, it offers advice for anyone trying to integrate the approach into their own institution.
Too many students in introductory programming classes fail to understand the significance and utility of the concepts being taught. Their low motivation impacts their learning. One contributing factor is pedagogy that emphasizes computing for its own sake and assignments that are abstract, such as computing the factorial function.Many educators have improved on such traditional approaches by teaching concepts in contexts that students find more relevant, such as games, robots, and media. Now, it is time to take the next step.In this special session, participants will develop and discuss ways to teach introductory programming by means of real-world data analysis problems from science, engineering, business, and the humanities. Students can be motivated to learn programming in order to analyze DNA, predict the outcome of elections, detect fraudulent data, suggest friends in a social network, determine the authorship of texts, and more (see Section 3.4 for more examples). The approach is more than just a collection of "nifty assignments": rather, it affects the choice of topics and pedagogy, all of which together lead to greater student satisfaction.The approach has been successfully used at 4 colleges and universities. The classes were effective for both CS and non-CS majors. Neither the computing material nor the problems need to be "dumbed down". At the end of the term students were amazed and delighted at the real data analysis that they could perform. They were excited about applying computation in their work and about learning more.The special session contains a mix of activities, including comparative analysis of introductory classes; group discussion of curriculum design; a mini-panel discussing how the approach has worked in practice; and brainstorming about example assignments and curriculum revision.
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