PHYS 2200
Fall semester 2021
  • Syllabus
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    • HW01
    • HW02
    • HW03
    • HW04
    • HW05
    • HW06
    • HW07
    • HW08
    • Homework guidelines
    • Homework grades
  • Downloads
    • Midterm 1
    • Exam grades
  • HuskyCT

Julia Programming

Julia is a high-level, high-performance programming language for numerical computing


Why we created Julia

by Jeff Bezanson, Stefan Karpinski, Viral Shah, Alan Edelman


Julia tutorials

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  • Czech Techincal University in Prague,
    Scientific Programming in Julia , Fall 2021; Julia for Optimization and Learning , Fall 2021

  • Carsten Bauer, Julia Workshop(s) for Physicists , Summer. 2021

  • Jesse Perla, Thomas J. Sargent, and John Stachurski, Quantitative economics with Julia , December 2020

    The topics of the lecture series include:

    1. Basics of coding skills and software engineering
    2. Algorithms and numerical methods
    3. Related mathematical and statistical concepts
    The intended audience is undergraduate students, graduate students and researchers in any field, not restricted to economics

  • Aurelio Amerio, From zero to Julia! , Spring 2020

    A small series of introductory lessons to the Julia language. The aim of this course is to give you the basics to be able to start coding in Julia on your own.

  • wikibooks.org, Introducing Julia

  • Julia for Numerical Computation in MIT Courses

  • Allen Downey, Ben Lauwens, Think Julia , 2018

  • Antonello Lobianco, Julia language: a concise tutorial , 2018

  • MIT 6.S083/18.S191/22.S092, Introduction to computational thinking with Julia , Spring 2021

  • Jakob Nybo Nissen, What scientists must know about hardware to write fast code , April 2020

  • Jane Herriman, Intro to Julia, Nov 2018


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Resources

  1. Mathematical methods
  2. Numerical computing
  3. Dimensional analysis
  4. Git and Gitlab
  5. Latex
  6. Julia
  7. C programming

Course Archives

  1. Math Methods, Fall 2020
  2. Computational Physics, Fall 2016
  3. Numerical Analysis I, Fall 2020
  4. Numerical Analysis II, Spring 2021

Links

  1. UConn GitLab
  2. UConn AnyWare
  3. UConn VPN
  4. UConn large file sharing
  5. UConn software
  6. Academic Calendar, Fall 2021
  7. UConn Physics Department
  8. How to E-mail Your Professor
  9. UConn COVID-19 Dashboard
  10. UConn IT Systems Status

General

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  2. 2021 Calendar of Religious Holidays
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  5. Office of the Provost's policies links
  6. Student Evaluations of Teaching
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  13. Classroom quick start guide

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