Research Associate - Computational Intelligence (484169)
 

To be considered for the role, you will be educated to a minimum of Master degree level in a discipline related to Engineering, Physics, Mathematics or Computer Science and have obtained or about to obtain a PhD in the same area with application to deep learning. You will have experience in one or more of the following areas: machine learning, generative deep learning, dynamical system theory, uncertainty quantification.

Salary: £35,308 per annum

FTE: 1.0

Term: Fixed for 24 months

Closing date: 26 July 2023 

 

 

The Aerospace Centre of Excellence in the Department of Mechanical & Aerospace Engineering seeks to appoint a Post-doctoral Research Associate in Computational Intelligence to work on a challenging high-risk high-gain research project, called GENEPY, supported by the UKRI New Horizons scheme. The successful candidate will work on generative deep learning with application to complex dynamical systems under uncertainty. The goal is to develop Physics-Informed deep Learning architectures that can automatically generate equilibrium, periodic, and resonant solutions with the ultimate goal to study and control stable and metastable dynamical structures of high-dimensional complex dynamical systems affected by uncertainty.

 

To be considered for the role, you will be educated to a minimum of Master degree level in a discipline related to Engineering, Physics, Mathematics or Computer Science and have obtained or about to obtain a PhD in the same area with application to deep learning. You will have experience in one or more of the following areas: machine learning, generative deep learning, dynamical system theory, uncertainty quantification. You will have the ability to develop and deliver research activities, and work on collaborative projects involving both industry and academia. You will be ambitious and enthusiastic about cross-disciplinary working and be able to work independently and as part of a team, supporting others when required. You will have good interpersonal and communication skills, including an ability to listen, engage and persuade, and to present complex information in an accessible way to a range of audiences. You will have the ability to work well under pressure and be driven to deliver results. The appointment will be made at Research Associate level.

 

Informal enquiries about the post can be directed to Professor Massimiliano Vasile, massimiliano.vasile@strath.ac.uk.

 

Click here for full details.pdf
 

 

 


Faculty
Faculty of Engineering
Department/School
Mechanical and Aerospace Engineering
Staff Category
Research
Type of Employment
Fixed-term
Working Hours
Full-time
Vacancy Description
To be considered for the role, you will be educated to a minimum of Master degree level in a discipline related to Engineering, Physics, Mathematics or Computer Science and have obtained or about to obtain a PhD in the same area with application to deep learning. You will have experience in one or more of the following areas: machine learning, generative deep learning, dynamical system theory, uncertainty quantification.
 

Salary: £35,308 per annum

FTE: 1.0

Term: Fixed for 24 months

Closing date: 26 July 2023 

 

 

The Aerospace Centre of Excellence in the Department of Mechanical & Aerospace Engineering seeks to appoint a Post-doctoral Research Associate in Computational Intelligence to work on a challenging high-risk high-gain research project, called GENEPY, supported by the UKRI New Horizons scheme. The successful candidate will work on generative deep learning with application to complex dynamical systems under uncertainty. The goal is to develop Physics-Informed deep Learning architectures that can automatically generate equilibrium, periodic, and resonant solutions with the ultimate goal to study and control stable and metastable dynamical structures of high-dimensional complex dynamical systems affected by uncertainty.

 

To be considered for the role, you will be educated to a minimum of Master degree level in a discipline related to Engineering, Physics, Mathematics or Computer Science and have obtained or about to obtain a PhD in the same area with application to deep learning. You will have experience in one or more of the following areas: machine learning, generative deep learning, dynamical system theory, uncertainty quantification. You will have the ability to develop and deliver research activities, and work on collaborative projects involving both industry and academia. You will be ambitious and enthusiastic about cross-disciplinary working and be able to work independently and as part of a team, supporting others when required. You will have good interpersonal and communication skills, including an ability to listen, engage and persuade, and to present complex information in an accessible way to a range of audiences. You will have the ability to work well under pressure and be driven to deliver results. The appointment will be made at Research Associate level.

 

Informal enquiries about the post can be directed to Professor Massimiliano Vasile, massimiliano.vasile@strath.ac.uk.

 

Click here for full details.pdf