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MA 307

Numerical Analysis

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The course covers computational techniques used in data analysis. All topics are illustrated with the use of R and/or Matlab. Topics may include some of the following: numerical linear algebra (solving linear systems, eigenvalue problem, factorization), methods of interpolation and curve-fitting, numerical optimization methods, statistical modelling (simulation of random variables and processes, introductory computational statistics). 3 lecture hours, 2 lab hours every other week. Prerequisites: MA122, MA205; either CP104 or MA207; either MA200 or both MA104 and MA201. Exclusion: MA371 and CP315/PC315.

The course covers computational techniques used in data analysis. All topics are illustrated with the use of R and/or Matlab. Topics may include some of the following: numerical linear algebra (solving linear systems, eigenvalue problem, factorization), methods of interpolation and curve-fitting, numerical optimization methods, statistical modelling (simulation of random variables and processes, introductory computational statistics). 3 lecture hours, 2 lab hours every other week. Prerequisites: MA122, MA205; either CP104 or MA207; either MA200 or both MA104 and MA201. Exclusion: MA371 and CP315/PC315.

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The course covers computational techniques used in data analysis. All topics are illustrated with the use of R and/or Matlab. Topics may include some of the following: numerical linear algebra (solving linear systems, eigenvalue problem, factorization), methods of interpolation and curve-fitting, numerical optimization methods, statistical modelling (simulation of random variables and processes, introductory computational statistics). 3 lecture hours, 2 lab hours every other week. Prerequisites: MA122, MA205; either CP104 or MA207; either MA200 or both MA104 and MA201. Exclusion: MA371 and CP315/PC315.


MA 307 Prerequisites

MA 122 (Min. Grade D-) and MA 205 (Min. Grade D-) and (CP 104 (Min. Grade D-) or MA 207 (Min. Grade D-) ) and (MA 200 (Min. Grade D-) or (MA 104 (Min. Grade D-) and MA 201 (Min. Grade D-) ) (Min. Grade ) )

MA 307 Leads To

MA 471, MA 477, MA 487, ST 473

MA 307 Restrictions

Must be enrolled in one of the following Levels:

Undergraduate (UG)

Cannot be enrolled in one of the following Year Levels:

Year 1 (1)

MA 307

Numerical Analysis

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The course covers computational techniques used in data analysis. All topics are illustrated with the use of R and/or Matlab. Topics may include some of the following: numerical linear algebra (solving linear systems, eigenvalue problem, factorization), methods of interpolation and curve-fitting, numerical optimization methods, statistical modelling (simulation of random variables and processes, introductory computational statistics). 3 lecture hours, 2 lab hours every other week. Prerequisites: MA122, MA205; either CP104 or MA207; either MA200 or both MA104 and MA201. Exclusion: MA371 and CP315/PC315.

The course covers computational techniques used in data analysis. All topics are illustrated with the use of R and/or Matlab. Topics may include some of the following: numerical linear algebra (solving linear systems, eigenvalue problem, factorization), methods of interpolation and curve-fitting, numerical optimization methods, statistical modelling (simulation of random variables and processes, introductory computational statistics). 3 lecture hours, 2 lab hours every other week. Prerequisites: MA122, MA205; either CP104 or MA207; either MA200 or both MA104 and MA201. Exclusion: MA371 and CP315/PC315.

0%Liked

Easy

0%

Useful

0%

0 ratings

The course covers computational techniques used in data analysis. All topics are illustrated with the use of R and/or Matlab. Topics may include some of the following: numerical linear algebra (solving linear systems, eigenvalue problem, factorization), methods of interpolation and curve-fitting, numerical optimization methods, statistical modelling (simulation of random variables and processes, introductory computational statistics). 3 lecture hours, 2 lab hours every other week. Prerequisites: MA122, MA205; either CP104 or MA207; either MA200 or both MA104 and MA201. Exclusion: MA371 and CP315/PC315.


Course Schedule