filmeu

Class Numerical Analysis

  • Presentation

    Presentation

    The Numerical Analysis course aims to give students the tools to: recognise the need to use numerical methods and the relevance of the concept of error; know some classical numerical methods of solving systems of linear equations and non-linear equations; know some classical numerical methods of interpolation and approximation and of quadrature; use an appropriate computational system to evaluate the methods; and develop critical thinking, autonomous and group work capacity.

  • Code

    Code

    ULHT6638-335
  • Syllabus

    Syllabus

    S1. Python for Numerical Analysis

    S2. Errors and errors propagation

    S3. Linear Regression

    S4. Interpolation

    S5. Non-linear equations

    S6. Systems of linear equations

    S7. Numerical integration

  • Objectives

    Objectives

    The main objectives of this unit are:

    LO1. Understand the finite limitation of the numerical algorithms;

    LO2. Work with error estimates and understand the error propagation in algorithms;

    LO3. Solve non-linear equations and systems of linear equations using numerical methods;

    LO4. Interpolate and extrapolate data using interpolation and minimum square errors. Apply to data science and experimental measurements;

    LO5. Approximate functions and integrals using numerical methods;

    LO6. Develop elementary computation projects. Apply to diverse problems of data science.

  • Teaching methodologies and assessment

    Teaching methodologies and assessment

    There are theoretical and practical classes, being mainly expositives and in-person lectures.
    TM1. Lectures.
    TM2. Practical, incorporating both explanatory segments and exercises.

    TM3. Theoretical and practical exercise assignments.

    TM4. Independent project development.
    TM5. Recommendation of supplementary materials.

  • References

    References

    • Slides e apontamentos das aulas
    • Pedro M. A. Miranda, Laboratório Numérico (em python). Disponível em: https//fenix.ciencias.ulisboa.pt/downloadFile/2251937252639182/LabNum_2018_v4.pdf
    • Qingkai Kong, Timmy Siauw, Alexandre Bayen, Python Programming and Numerical Methods. A Guide fir Engineers and Scientists. ISBN: https://pythonnumericalmethods.berkeley.edu/notebooks/Index.html

     

SINGLE REGISTRATION
Cookie Policy
This site uses cookies to offer you a better browsing experience.
Accept
Lisboa 2020 Portugal 2020 Small Logo EU small Logo PRR republica 150x50 Logo UE Financed Provedor do Estudante Livro de reclamaões Elogios