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Orly Barzilai; Sofia Sherman; Moshe Leiba; Hadar Spiegel – Journal of Information Systems Education, 2024
Data Structures and Algorithms (DS) is a basic computer science course that is a prerequisite for taking advanced information systems (IS) curriculum courses. The course aims to teach students how to analyze a problem, design a solution, and implement it using pseudocode to construct knowledge and develop the necessary skills for algorithmic…
Descriptors: Statistics Education, Problem Solving, Information Systems, Algorithms
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Judy Dori, Yehudit Judy; Kohen, Zehavit; Rizowy, Brian – EURASIA Journal of Mathematics, Science and Technology Education, 2020
The Mathematics for Computer Science mandatory course was conducted in a flipped classroom (FC) setting with an optional, voluntary, project-based learning (PBL) component. The objective of this study was to examine the effect of studying in an FC setting, with and without PBL, on students' problem-solving performance, conceptual understanding,…
Descriptors: Flipped Classroom, Teaching Methods, Problem Solving, Mathematics Instruction
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Parhami, Behrooz – Computer Science Education, 2008
We observe that recruitment efforts aimed at alleviating the shortage of skilled workforce in computer engineering must be augmented with strategies for retaining and motivating the students after they have enrolled in our educational programmes. At the University of California, Santa Barbara, we have taken a first step in this direction by…
Descriptors: First Year Seminars, College Freshmen, Internet, Academic Persistence
Skala, Helen – Collegiate Microcomputer, 1988
Outlines a course in artificial intelligence for liberal arts students that has no programing prerequisites. Topics and projects included in the course are described, including problem solving; natural language; expert systems; image understanding, or character recognition; and robotic systems. (28 references) (Author/LRW)
Descriptors: Artificial Intelligence, Character Recognition, Computer Science Education, Course Content