Sort by
Refine Your Search
-
Listed
-
Category
-
Country
- United States
- Germany
- Portugal
- France
- United Kingdom
- Sweden
- Poland
- Belgium
- Norway
- Netherlands
- Denmark
- Austria
- Spain
- Switzerland
- Singapore
- United Arab Emirates
- Italy
- Luxembourg
- Romania
- Australia
- Czech
- Estonia
- Finland
- Morocco
- Canada
- Japan
- Brazil
- China
- Croatia
- Ireland
- Lithuania
- Saudi Arabia
- Slovenia
- Taiwan
- 24 more »
- « less
-
Program
-
Field
- Computer Science
- Economics
- Medical Sciences
- Engineering
- Mathematics
- Science
- Biology
- Materials Science
- Business
- Chemistry
- Earth Sciences
- Law
- Environment
- Education
- Linguistics
- Arts and Literature
- Psychology
- Social Sciences
- Physics
- Electrical Engineering
- Humanities
- Sports and Recreation
- Design
- Philosophy
- 14 more »
- « less
-
decision is made Strong background in computational modeling and numerical methods Experience with multiphase flow modeling (e.g., TFM, CFD-DEM, DNS, LBM) Solid programming skills Experience working in Linux
-
until the grant's contract is done; proven previous experience with articles published in first quartile journals (Q1) on the Discontinuous Galerkin Finite Element Method (DGFEM); experience implementing
-
on developing new methods and applications of metabolite profiling using a combination of mass spectrometry (MS) and NMR platforms which provide a broad-based approach for biomarker discovery and systems biology
-
Infrastructure? No Offer Description Work group: IAS-9 - Materials Data Science and Informatics Area of research: PHD Thesis Job description: Your Job: Digital methods for inverse materials design are essential
-
subsequent PhD degree in (astro-)physics, computer science, engineering, or other related fields, with a strong focus on numerical simulations Experience in the development of numerical methods for multi
-
computing, applied mathematics, computational physics, or another relevant discipline is required, Other requirements Required qualifications include strong skills in numerical method development
-
— The score obtained in the curricular evaluation method is expressed on a numeric scale of 0 to 20, considering the valuation up to two decimal places. 6.3 — The jury deliberates by vote justified according
-
mechanics, or advanced material behavior. Programming skills (e.g., Python, MATLAB, Julia,..), ideally with experience in numerical methods or scientific computing. Familiarity with machine learning
-
achievements in the area of biomedical engineering, in particular: designing computer-aided diagnosis systems; analyzing images, signals, and multimodal data, particularly using artificial intelligence methods
-
(parallelization, efficient data structures), numerical testing, and results analysis. Familiarity with numerical methods, scientific programming in C++, and an interest in reservoir engineering problems