Position PhD-student
Irène Curie Fellowship No
Department(s) Mathematics and Computer Science
FTE 1,0
Date off 04/08/2024
Reference number V32.7574
Are you eager to contribute to a still further improvement of ASML’s nanolithography technology, and are you fascinated by partial differential equations (PDEs) and machine learning?
If yes, then this vacancy, a cooperation between ASML Research and TU/e’s Centre for Analysis, Scientific Computing and Applications, might be something for you.
Job Description
Department of Mathematics and Computer Science (M&CS) The PhD position is in the Department of Mathematics and Computer Science (M&CS) of Eindhoven University of Technology. M&CS is the largest department of TU/e and one of the largest departments in the Netherlands in the area of mathematics and computer science. M&CS has research collaborations with the other departments at TU/e, with many companies in the Eindhoven area, and with universities and companies in the Netherlands and abroad. M&CS contributes to science and engineering by performing both fundamental and applied research. Through M&CS’s close relationship with the high-tech industry in the Eindhoven area, staff and students contribute directly to the development of relevant technological innovations. M&CS is organized in three different domains: mathematics, computer science, and data science. Each domain consists of several clusters. The mathematics domain has three clusters: CASA (Center for Analysis, Scientific Computing, and Applications), DM (Discrete Mathematics), and SPOR (Statistics, Probability, and Operations Research). The domain of computer science is organized into five different clusters: ALGA (Algorithms, Geometry and Applications), FSA (Formal System Analysis), IRIS (Interconnected Resource-aware Intelligent Systems), SEC (Security), and SET (Software Engineering and Technology). Data science has three clusters: DAI (Data and Artificial Intelligence), PA (Process Analytics), and VIS (Visualization). The PhD position for which this call is, is in the cluster CASA.
Center for Analysis, Scientific Computing and Applications (CASA)
The research objective of CASA is to develop new and improve existing mathematical (both analytical and numerical) methods for a wide range of applications in science and engineering. Mathematics research within CASA is often driven by models from science and engineering, for instance by mathematical expressions of physical laws (often systems of coupled nonlinear partial differential equations). Stimulated by the immense growth in the availability and use of data, mathematics in CASA is also becoming data-driven, with a crucial role in this for machine learning. There is enormous potential for the use of data and machine learning (particularly neural networks) in analysis and scientific computing, in combination with the use of first-principle models. CASA is continuing its longstanding expertise and success in variational calculus, functional analysis, numerical methods for partial differential equations, numerical linear algebra, and model-order reduction methods while extending its research into the direction of data science, machine learning, uncertainty quantification, and high-performance computing.
Knowledge and Physics-Informed Artificial Intelligence (KPAI)
The availability and importance of data for the design, manufacturing, operation and maintenance of semiconductor machinery has increased significantly. Classical engineering methods can be augmented by data taken from observations in machines or from documented knowledge sources based upon earlier design and manufacturing steps. The translation of these diverse forms of information requires novel approaches that extract meaningful outputs, which are then utilizable for engineering goals.
From the national program TKI (Top consortia for Knowledge and Innovation), funding has been acquired for the research program Knowledge and Physics Informed Artificial Intelligence (KPAI), including two PhD projects, each focused on a different type of source information. The program KPAI will be co-funded by and carried out in cooperation with ASML Research.
The two PhD projects in the KPAI program are:
Both projects will bring these two forms of information together in such a way that a tool is realized for quick support to engineers. The first of above two projects, for which the present call is, will be carried out in the cluster CASA, the second in the cluster DAI.
We are looking for a talented, enthusiastic PhD candidate meeting the following requirements:
A meaningful job in a dynamic and ambitious university, in an interdisciplinary setting and within an international network. You will work on a beautiful, green campus within walking distance of the central train station. In addition, we offer you:
About us
TU/e is an internationally top-ranking university in the Netherlands that combines scientific curiosity with a hands-on attitude. Our spirit of collaboration translates into an open culture and a top position in collaborating with advanced industries. Fundamental knowledge enables us to design solutions for the highly complex problems of today and tomorrow.
Curious to hear more about how it is to be a PhD candidate at TU/e? Please view the video.
Information
Do you recognize yourself in this profile and do you want to know more? Please contact prof.dr.ir. Barry Koren (b.koren@tue.nl).
Visit our website for more information about the application process or the conditions of employment. You can also contact HRServices.MCS@tue.nl.
Are you inspired and would you like to know more about working at TU/e? Please visit our career page.
Application
We invite you to submit a complete application by using the apply button.
The application should include:
We look forward to receiving your application and will assess it as soon as possible. The vacancy will remain open until the position is filled.
We are an internationally top-ranking university in the Netherlands that combines scientific curiosity with a hands-on attitude.
Visita la pagina del datore di lavoro