Postdoctoral Research Assistant in Data-driven Models for Reactive Flows

2 weeks ago


Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

About the Role

The project aims to develop a reduced-order surrogate model for predicting ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is in collaboration with Kyushu University, Japan, under the supervision of Dr. Amin Paykani at Queen Mary University of London to realise the objectives of the Royal Society International Science Partnership Funded project.

About You

The successful applicant will have, or soon obtain, a PhD degree in mechanical/aerospace engineering, applied mathematics, chemical engineering, or a related field. We are looking for candidates with a strong background in modeling and simulation of three-dimensional multiphase turbulent reacting flows and development and application of machine learning tools in chemical kinetics and turbulent combustion.

About the School/Department/Institute/Project

This post is within the School of Engineering and Materials Science, a large School with 70-80 academics and a similar number of postdoctoral research staff. There are around 1000 undergraduate and taught postgraduate students and 220 PhD students. These are supported by an administrative and technical staff team of 45. The staff and student body are international in make-up.

About Queen Mary

At Queen Mary University of London, we believe that a diversity of ideas helps us achieve the previously unthinkable. Throughout our history, we've fostered social justice and improved lives through academic excellence. And we continue to live and breathe this spirit today, not because it's simply 'the right thing to do' but for what it helps us achieve and the intellectual brilliance it delivers.

Benefits

In return, we offer 30 days' leave per annum, access to a pension scheme, a season ticket loan scheme, and competitive salaries. We also offer enhanced family-friendly leave. You will also work with a friendly team, with personal development opportunities. Queen Mary's commitment to our diverse and inclusive community is embedded in our appointments processes. Reasonable adjustments will be made at each stage of the recruitment process for any candidate with a disability.



  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is in collaboration with Kyushu University, Japan, under the supervision of Dr. Amin Paykani at Queen Mary University of London, as part of the Royal Society...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is in collaboration with Kyushu University, Japan, under the supervision of Dr. Amin Paykani at Queen Mary University of London, as part of the Royal Society...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is in collaboration with Kyushu University, Japan, under the supervision of Dr. Amin Paykani at Queen Mary University of London, as part of the Royal Society...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is a collaboration between Queen Mary University of London and Kyushu University, Japan, under the supervision of Dr. Amin Paykani, to realize the objectives of the...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is a collaboration between Queen Mary University of London and Kyushu University, Japan, under the supervision of Dr. Amin Paykani, to realize the objectives of the...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting the ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is in collaboration with Kyushu University, Japan, under the supervision of Dr. Amin Paykani at Queen Mary University of London, to realize the objectives of the...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting the ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is in collaboration with Kyushu University, Japan, under the supervision of Dr Amin Paykani at Queen Mary University of London to realise the objectives of the Royal...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the ProjectThe project aims to develop a reduced-order surrogate model for predicting the ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is in collaboration with Kyushu University, Japan, under the supervision of Dr. Amin Paykani at Queen Mary University of London to realise the objectives of the...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is a collaboration between Queen Mary University of London and Kyushu University, Japan, under the supervision of Dr. Amin Paykani.Key ResponsibilitiesDevelop and apply...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe project aims to develop a reduced-order surrogate model for predicting ammonia direct injection spray characteristics using a hybrid machine learning approach. This project is a collaboration between Queen Mary University of London and Kyushu University, Japan, under the supervision of Dr. Amin Paykani.Key ResponsibilitiesDevelop and apply...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleThe goal of this project is to develop a reduced-order model for predicting the spray characteristics of ammonia direct injection using a hybrid machine learning approach. This project is in collaboration with Kyushu University, Japan, under the supervision of Dr. Amin Paykani at Queen Mary University of London, to achieve the objectives of the...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly motivated Postdoctoral Research Assistant to join our team at Queen Mary University of London. The successful candidate will work with Dr. Nikola Ojkic on a BBSRC project investigating the physical mechanism of how antibiotic treatments lead to bacterial cell death.As a Postdoctoral Research Assistant, you will...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly skilled Postdoctoral Research Assistant to join our team in the School of Engineering and Materials Science. The successful candidate will work on creating numerical models of biomechanical structures and validating them through experimental work. They will also be responsible for writing and publishing research papers,...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly skilled Postdoctoral Research Assistant to join our team in the School of Engineering and Materials Science. The successful candidate will work on creating numerical models of biomechanical structures and validating them through experimental work. They will also be responsible for writing and publishing research papers,...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly skilled Postdoctoral Research Assistant to join our team in the School of Engineering and Materials Science. The successful candidate will work on creating numerical models of biomechanical structures and validating them through experimental work. They will also be responsible for writing and publishing research papers,...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly skilled Postdoctoral Research Assistant to join our team in the School of Engineering and Materials Science. The successful candidate will work on creating numerical models of biomechanical structures and validating them through experimental work. They will also be responsible for writing and publishing research papers,...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly skilled Postdoctoral Research Assistant to join our team in the School of Engineering and Materials Science. The successful candidate will work on creating numerical models of biomechanical structures and validating them through experimental work. They will also be responsible for writing and publishing research papers,...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly skilled Postdoctoral Research Assistant to join our team in the School of Engineering and Materials Science. The successful candidate will work on creating numerical models of biomechanical structures and validating them through experimental work. They will also be responsible for writing and publishing research papers,...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly skilled Postdoctoral Research Assistant to join our team in the School of Engineering and Materials Science. The successful candidate will work on creating numerical models of biomechanical structures and validating them through experimental work.About YouCandidates should have a PhD in mechanical engineering, biomedical...


  • Canary Wharf, Greater London, United Kingdom Queen Mary University of London Full time

    About the RoleWe are seeking a highly skilled Postdoctoral Research Assistant to join our team in the School of Engineering and Materials Science. The successful candidate will work on creating numerical models of biomechanical structures and validating them through experimental work.About YouCandidates should have a PhD in mechanical engineering, biomedical...