Update index.qmd

This commit is contained in:
Benedikt Ehinger 2023-05-05 17:13:30 +02:00 committed by GitHub
parent 051e53466c
commit 575a0c67f2
No known key found for this signature in database
GPG Key ID: 4AEE18F83AFDEB23

View File

@ -18,7 +18,7 @@ We will have a healthy mix of keynotes from invited lecturers and hands-on sessi
### 💶 Costs
- 50€ course fee, including lunch + dinner
- 150€ course fee, including lunch + dinner
- You have to pay for Hotel + Travel + Breakfast
### 💬 Typical questions that will be answered
@ -34,4 +34,4 @@ We will have a healthy mix of keynotes from invited lecturers and hands-on sessi
### Abstract
Development of software has become an important part of research projects in many areas of science and engineering. In this week-long summer school, we will therefore acquaint you with the most essential paradigms of software development, which support the design of efficient, user-friendly, and sustainable software. In particular, we will focus on the scientific programming language Julia. The summer school is organized around keynote presentations by invited Julia experts and many hands-on tutorials. First, a gentle introduction including packaging, testing, virtualization, interaction, and visualization will supply you with the essential skills you need to use Julia in your research. Afterwards, we build on these skills to implement computationally expensive statistical methods. In particular, we will focus on methods for regression and resampling using bootstrap and permutations. That is, methods addressing two of the most common challenges in statistics: estimation of the relationship between variables of interest and the quantification of uncertainty.
Development of software has become an important part of research projects in many areas of science and engineering. In this week-long summer school, we will therefore acquaint you with the most essential paradigms of software development, which support the design of efficient, user-friendly, and sustainable software. In particular, we will focus on the scientific programming language Julia. The summer school is organized around keynote presentations by invited Julia experts and many hands-on tutorials. First, a gentle introduction including packaging, testing, virtualization, interaction, and visualization will supply you with the essential skills you need to use Julia in your research. Afterwards, we build on these skills to implement computationally expensive statistical methods. In particular, we will focus on methods for regression and resampling using bootstrap and permutations. That is, methods addressing two of the most common challenges in statistics: estimation of the relationship between variables of interest and the quantification of uncertainty.