Problem-based Learning in Computer Science
نویسنده
چکیده
Problem based learning aims at providing knowledge applicable to real-world situations. In our project PLI we employ problem based learning in the specific domain of computer science education. We identify the design and introduction of IT infrastructure into organizations as a major task of computer science professionals. From this field we have provided case studies for our students to work with. We have developed a computer based environment for working on case studies, where case studies are integrated with other Web based materials. This paper gives an overview of the environment and describes in more detail one part of it, a tool for modeling information networks in organizations.
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