Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
-
Field
-
science or engineering field; or equivalent combination of degree and experience required. Extensive experience with image analysis principles and algorithms. Proficiency with command line prompting and at
-
of Finland under the supervision of Academy Research Fellow Marcelo Hartmann and Research Fellow Luu Hoang Phuc Hau (Nanyang Technological University) . We have been developing computational algorithms and
-
. The position may also include a 2-3 month research visit to the laboratory of our collaborator, Prof. Kevin Lam (University of Greenwich, UK) in late 2026 or early 2027. Who we are looking for The successful
-
University’s students and visitors should apply as external candidates with personal (not Aalto) email. More information If you wish to hear more about the position, you can reach out to Prof. Robin Ras
-
, computer vision and pattern recognition, atmospheric modelling, and computational spectroscopy. We focus on in-depth understanding of data and related algorithms, data analysis, and machine learning. Our
-
skills. For more information, please contact: Dean of the Faculty Martti Kauranen, martti.kauranen@tuni.fi Prof. Matti Vilkko, matti.vilkko@tuni.fi Application period starts: 2025-11-05 11:00 Application
-
-depth understanding of data and related algorithms, data analysis, and machine learning. Our cross-cutting theme is machine learning-enhanced computational engineering. You’ll have an excellent
-
person will focus on either using and/or developing Vlasiator. Prior knowledge in at least one of the following areas is required: GPU technologies, high-performance computing, parallelisation algorithms
-
developing computational algorithms and theory grounded in notions of information geometry and Riemannian geometry to enhance Bayesian statistical inference and machine-learning related methods. We are part of
-
. Science objectives: 1) To develop methods of building traversability costs from real-time sensor data for a given machine and sensor modality; 2) To develop framework for rigorous and efficient integration