News

Symbolic picture for doctoral researchers
Call for proposals (KIT internal): DAAD Graduate School Scholarships at KCDS

We are calling researcher tandems (MATH and SEE) at KIT to submit interdisciplinary project ideas!

Deadline: January 31, 2025

Learn more (only visible in KIT intranet)
RainQuest Hackathon Logo
RainQuest Hackathon 2024 (Oct 8-11, Karlsruhe)

Calling all data science and machine learning enthusiasts! Join us for the "RainQuest" hackathon, an exciting challenge in a relaxed, collaborative environment.

Read more and register here
Symbolic picture for unsorted data by Kier in Sight Archives (Unsplash)
KCDS Workshop on Data Processing and Data Assimilation 2024 (Sep 11-12)

Are you a doctoral researcher working with data? Join our 2024 workshop with theoretical and hands-on sessions on data processing and data assimilation including a participant poster session and networking dinner!

Find more info and register here
Detail of a building facade at TU Braunschweig
FrontUQ 2024 - Workshop on Frontiers of Uncertainty Quantification (Sep 24-27, Braunschweig)

FrontUQ is a workshop series of the GAMM-UQ activity group. The 2024 edition on "Uncertainty Quantification (UQ) for Aerospace Engineering" is jointly organized by TU Braunschweig, Karlsruhe Institute of Technology, and the German Aerospace Center. Registration and abstract submission are now open on the conference webpage.

more info and registration

Upcoming events

 
Workshop

RainQuest Hackathon: Precipitation Estimation from Weather Radar Data

Friday, 11 October 2024-12:00
Campus South, building 05.20 (TRIANGEL Studio)

Accurately estimating rainfall by radar data is challenging because radars measure reflectivity rather than direct rainfall, and environmental variations further complicate this conversion. The RainQuest hackathon aims to address this problem by developing models that integrate precise point measurements from rain gauge data with radar reflectivity, which offers better measurements resolution. By combining these data sources, we aim to enhance the precision of precipitation estimates.

We invite all data science and machine learning enthusiasts to join us for this exciting challenge in a relaxed, collaborative environment. Participants will enhance their skills in data analysis, machine learning, and meteorological modeling. No prior experience with weather data is required.  Additionally, you will have the opportunity to connect with like-minded individuals and work with KIT´s supercomputer cluster. 
 

This event is organized by machine learning enthusiasts from KCDS, with support from MathSEE, TRIANGEL and SCC.

 

It is part of the "Wissenswoche Mathematik", a public event presented by Triangel and KIT Center MathSEE with lectures and talks, music and quiz, movie and cultural highlights - all on and around Mathematics. Join us at Triangel Open Space in Karlsruhe to delve into the world of modeling, prediction & simulation.

 

Costs/ Payment
free of charge
Organizer
Angela Hühnerfuß
KIT Graduate School Computational and Data Science (KCDS)
KIT-Center MathSEE
Karlsruhe
Mail: kcds does-not-exist.kit edu
https://www.kcds.kit.edu
Online registration
Learn more and register here
Online Registration

Highlights

KCDS Retreat 2023 - group picture
Report: KCDS Retreat 2023

The second annual KCDS Retreat took place from November 13-15, 2023 at Naturfreundehaus Kniebis in the Black Forest.

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Deep Learning workshop group picture
Report: Deep Learning Workshop 2023

The workshop with a focus on "Recent Advances in Kernel Methods for Neural Networks" took place in October 5-6, 2023 at the Triangel.

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KCDS Summer School 2023 group photo
Report: KCDS Summer School 2023

The first KCDS Summer School centered on the topic of Stochastic and Hybrid Modelling and took place at KIT Campus South, September 18-20, 2023.

Read more

About KCDS

Concept of the graduate school KCDS
KIT Graduate School Computational and Data Science (KCDS) is a graduate school at KIT Center MathSEE that offers an interdisciplinary training program for doctoral researchers in the field of model-driven and data-driven computational science.
In this unique program, doctoral researchers will be able to conduct an interdisciplinary research project that revolves around computational methods such as mathematical models, simulation methods and data science techniques, all the while building bridges between mathematical sciences and an applied SEE discipline (science, economics and engineering).
Addressing global challenges, the school provides a wide variety of topics, from meteorological ensemble forecasting to machine learning in elementary particle physics.
At KCDS, doctoral researchers have one supervisor from the mathematical sciences and one from the applied discipline. They are part of a dynamic community and participate in the school’s interdisciplinary training program, including hands-on training in small groups, summer schools, networking events and hackathons/datathons.
Thinking simulations and data together, we are ready to conquer the data-driven challenges of tomorrow!

Coordination Office