Calculus 1 (UNINETUNO)

Calculus 1 (UNINETUNO)

The course provides an introduction to the mathematical analysis and linear algebra. The course starts with the real numbers and the related one-variable real functions by studying limits, and continuity.

Then it approach the core of calculus, differentatial and integral theory for one-variable real functions. The aspects of linear algebra are also included in the course: in particular by studying the linear spaces and the theory and calculus of matrices.

More info:http://www.uninettunouniversity.net/en/mooc-program.aspx?lf=it&courseid=3828&degree=169&planid=201&faculty=3

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