Sort by
Refine Your Search
-
Listed
-
Employer
- University of Warsaw
- Warsaw University of Technology
- AGH University of Krakow
- SWPS University
- Center for Theoretical Physics PAS
- Institute of Fluid Flow Machinery Polish Academy of Science
- Institute of Plasma Physics and Laser Microfusion
- Malopolska Centre of Biotechnology
- Politechnika Rzeszowska (The Rzeszow University of Technology)
- Sieć Badawcza Łukasiewicz – Instytut Metali Nieżelaznych
- Silesian University of Technology
- University of Silesia in Katowice
- University of Technology and Life Sciences in Bydgoszcz
- University of Wroclaw
- Wrocław University of Science and Technology
- Łukasiewicz Research Network - Institute of Ceramics and Building Materials
- 6 more »
- « less
-
Field
-
The research topics will be related to the implementation of the project: Multispectral fluorescence supported by machine learning for the analysis of cell cocultures. The scientific goal of the project is to
-
Additional Information Additional comments RESEARCH FIELD- Machine learning- PhD or equivalent Work Location(s) Number of offers available1Company/InstituteWarsaw University of Technology Faculty
-
or equivalent Skills/Qualifications Doctorate (PhD) in science or engineering, preferred in Physics, Mathematics, Electronics or Computer Sciences; experience in deep learning modelling or research (theoretical
-
activities in accordance with the university's regulations working in research and teaching teams in the area of machine learning and signal analysis developing signal processing methods developing machine
-
their implementation on team members. Highly developed analytical, negotiation and organisational skills. Computer literacy in office software (Microsoft Office) and use of online databases. Commitment and
-
to the implementation of the project: Multispectral fluorescence supported by machine learning for the analysis of cell cocultures. The scientific goal of the project is to check the possibility of using multispectral
-
reality, computer simulation, 14. DESCRIPTION (field, expectations, comments): The candidate for this position should be prepared to teach in the area of applied computer science, especially in the subjects
-
numerical computer simulations, a model of the accretion disk instability, driven by a dominant radiation pressure (RPI), is studied. We also study the black hole accretion and ejection of plasma in a form of
-
courses or prior professional activities with at least one of the following: machine learning, structural dynamics, numerical modelling techniques (finite element method), experimental methods in acoustics
-
experience in R&D and industrial projects. 5) knowledge of database systems (Oracle, MySQL, MS SQL Server) confirmed by experience in industrial projects. 6) knowledge of Machine Learning techniques, including