High Performance Scientific Computing

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Английский
50 h
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  • From www.coursera.org
Conditions
  • Self-paced
  • Free Access
More info
  • 10 Sequences
  • Introductive Level

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Course details

Syllabus

The use of a variety of languages and techniques will be integrated throughout the course as much as possible, rather than taught linearly. The topics below will be covered at an introductory level, with the goal of learning enough to feel comfortable starting to use them in your everyday work. Once you've reached that level, abundant resources are available on the web to learn the more advanced features that are most relevant for you.

  • Working at the command line in Unix-like shells (e.g. Linux or a Mac OSX terminal).
  • Version control systems, particularly git, and the use of Github and Bitbucket repositories.
  • Work habits for documentation of your code and reproducibility of your results.
  • Interactive Python using IPython, and the IPython Notebook.
  • Python scripting and its uses in scientific computing.
  • Subtleties of computer arithmetic that can affect program correctness.
  • How numbers are stored: binary vs. ASCII representations, efficient I/O.
  • Fortran 90, a compiled language that is widely used in scientific computing.
  • Makefiles for building software and checking dependencies.
  • The high cost of data communication.  Registers, cache, main memory, and how this memory hierarchy affects code performance. 
  • OpenMP on top of Fortran for parallel programming of shared memory computers, such as a multicore laptop.
  •  MPI on top of Fortran for distributed memory parallel programming, such as on a cluster.
  • Parallel computing in IPython.
  • Debuggers, unit tests, regression tests, verification and validation of computer codes.
  • Graphics and visualization of computational results using Python.

Prerequisite

None.

Instructors

  • Randall LeVeque - Department of Applied Mathematics

Editor

L'Université de Washington est une université publique de recherche à Seattle , Washington. Fondée le 4 novembre 1861 sous le nom de Territorial University, Washington est l'une des plus anciennes universités de la côte ouest, il a été établi à Seattle environ une décennie après la fondation de la ville.

L'université possède un campus principal de 703 acres situé dans le quartier universitaire de la ville , ainsi que des campus à Tacoma et Bothell. Dans l'ensemble, UW comprend plus de 500 bâtiments et plus de 20 millions de pieds carrés bruts d'espace, y compris l'un des plus grands systèmes de bibliothèques au monde avec plus de 26 bibliothèques universitaires, centres d'art, musées, laboratoires, amphithéâtres et stades.

Washington est l'institution phare des six universités publiques de l'État de Washington. Il est connu pour sa recherche médicale, technique et scientifique.

Platform

Coursera - это цифровая компания, предлагающая массовые открытые онлайн-курсы, основанные учителями компьютеров Эндрю Нгом и Стэнфордским университетом Дафни Коллер, расположенные в Маунтин-Вью, штат Калифорния.

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