Wiki » History » Revision 13
« Previous |
Revision 13/19
(diff)
| Next »
Nicolas Aunai, 06/09/2016 07:57 AM
LPP dev guide¶
Kick Starter for efficient scientific coding¶
You will find here material to help you get started with your coding. Depending on whether you mostly do data analysis or numerical modeling, you'll need slightly different tools and methods. the advice we give you will help to be efficient, rigorous and to write code than you'll be able to use, maintain and share in the long run. Now remember, If you're a PhD or a post-doc, following these advice will not only help you improving the quality and reproducibility of your science, but also will make all your coding efforts reusable by people in the lab once you're gone, and more importantly will give you the basic knowledge you need to legitimately claim for a data science / computing science position in the private sector.
- The commandments of programming
- Common tools and methodology you'll need to get started.
Now, what are you doing?
- You're mostly coding for data analysis
- You're mostly coding for numerical modeling
Setting up a clean Python environment¶
C++ development¶
- The C++ language
- Design Pattern in general and in C++
- C++ Gurus
Code Design and Architecture¶
Writing code¶
Documentation¶
- [[hyb-par: Documentationtools| Documentation Tools]]
Updated by Nicolas Aunai about 8 years ago · 13 revisions