Current research and problems in math, science and engineering education are reviewed and concepts of thinking and learning are discussed in terms of psychometrics. Systems models for learning, the teaching environment, and learner-teacher interaction are presented and discussed. An approach to assessment, enabling the teacher to use personally preferred measurement criteria, is offered as is strong argument in favor of using simulation in engineering and science education. Assessment methodology is discussed.
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