内梅亨大学

PhD Position in Computational Biology: Using Machine Learning to Understand the Immune System

项目介绍

Are you an aspiring data science researcher with an interest in human immunology, causal inference in dynamical systems, and/or computer vision? Would you like to apply AI and machine learning for fundamental research in biology? Then you have a part to play as a PhD candidate. By combining simulations and machine learning, you will help us develop new, innovative methods to extract knowledge from immune cell movement videos.

When thinking of cells, most people imagine static building blocks. Yet many processes in health and disease critically rely on cell movement. A key example is the defence against viruses and cancer: the cells of our immune system are strikingly motile as they navigate the maze of tissues in the human body, interact and communicate with other cells, search for signs of anomalies, and swarm to sites of infection.

Specialised microscopes allow biologists to film these processes, yielding videos that are rich in information but limited in the amount of (annotated) data for any given application. As a result, many existing AI techniques are not directly applicable to new datasets, making it very difficult to decode these videos and zoom in on the where, when, and how of key events in the data.

Our group aims to overcome these hurdles to extract meaningful insights from videos of cells. We do this by integrating data science, statistics, and AI with (bio)physics-based simulation models – using simulations to build better AI or using AI to build better simulations. In your project, you will master the arts of simulation and machine learning to help us achieve this goal.

You will be part of a larger team, for which there are currently two open positions. One PhD project will focus specifically on cell movement as a time series, developing causal inference methods for cell dynamics. The other project will be broader and, depending on your preference and developments in the field, it may focus more on the time series aspect or the computer vision aspect of video analysis. For both projects, you will first become proficient in state-of-the-art methods in the field and then improve these by integrating them with physics-based simulations.

You will spend roughly ten percent of your time (0.1 FTE) assisting with teaching activities in our department. You may, for example, be asked to provide tutorials , grade coursework, deliver presentations during classes, or supervise student projects.

We are looking for two PhD-candidates.

Profile

  •  You should hold a Master’s degree in Computer Science, Life Sciences, or another relevant discipline. You might, for example, be a biologist with experience in simulation modelling and/or machine learning, or a data scientist with a strong interest in biological applications. 
  •  You have experience with data science and machine learning or the analysis and/or simulation of biological data, or a combination thereof.
  • You are eager to learn more about any of the above-mentioned topics that you are less familiar with.
  • You are able to communicate clearly about complex topics, allowing you to work in an interdisciplinary setting.  

We are

You will join the Data Science Section of the Institute for Computing and Information Sciences at Radboud University. We are embedded in a world-class research group in the field of data science and machine learning, with strong ties to the Radboud Institute for Molecular Life Sciences as well as to collaborating groups in, for example, the USA, Canada and Switzerland.

Our ‘computational immunology’ team members have diverse backgrounds – ranging from computer science, mathematics and computational modelling to biology and medicine. Please see the group’s publication list as well as Inge Wortel’s Google Scholar profile for examples of the kind of research we are involved in.

Radboud University

At Radboud University, we aim to make an impact through our work. We achieve this by conducting groundbreaking research, providing high-quality education, offering excellent support, and fostering collaborations within and outside the university. In doing so, we contribute indispensably to a healthy, free world with equal opportunities for all. To accomplish this, we need even more colleagues who, based on their expertise, are willing to search for answers. We advocate for an inclusive community and welcome employees with diverse backgrounds, cultures, and perspectives. Will you also contribute to making the world a little better? You have a part to play.

If you want to learn more about working at Radboud University, follow our Instagram account and read stories from our colleagues.

Faculty of Science
The Faculty of Science (FNWI), part of Radboud University, engages in groundbreaking research and excellent education. In doing so, we push the boundaries of scientific knowledge and pass that knowledge on to the next generation.

We seek solutions to major societal challenges, such as cybercrime and climate change and work on major scientific challenges, such as those in the quantum world. At the same time, we prepare our students for careers both within and outside the scientific field.

Currently, more than 1,300 colleagues contribute to research and education, some as researchers and lecturers, others as technical and administrative support officers. The faculty has a strong international character with staff from more than 70 countries. Together, we work in an informal, accessible and welcoming environment, with attention and space for personal and professional development for all.

We offer

  • We will give you a temporary employment contract (0.8 FTE 5- year contract – 1.0 FTE 4- year contract) of 1,5 years, after which your performance will be evaluated. If the evaluation is positive, your contract will be extended by 2.5 years (4-year contract) or 3.5 years (5-year contract).
  • You will receive a starting salary of €2,770 gross per month based on a 38-hour working week, which will increase to €3,539 from the fourth year onwards (salary scale P).
  • You will receive an 8% holiday allowance and an 8,3% end-of-year bonus. 
  • You will be able to use our Dual Career and Family Support Service. The Dual Career Programme assists your partner via support, tools, and resources to improve their chances of independently finding employment in the Netherlands. Our Family Support Service helps you and your partner feel welcome and at home by providing customised assistance in navigating local facilities, schools, and amenities. Also take a look at our support for international staff page to discover all our services for international employees.
  • You will receive extra days off. With full-time employment, you can choose between 30 or 41 days of annual leave instead of the statutory 20. 

Additional employment conditions

Work and science require good employment practices. Radboud University’s primary and secondary employment conditions reflect this. You can make arrangements for the best possible work-life balance with flexible working hours, various leave arrangements and working from home. You are also able to compose part of your employment conditions yourself. For example, exchange income for extra leave days and receive a reimbursement for your sports membership. And, of course, we offer a good pension plan. We also give you plenty of room and responsibility to develop your talents and realise your ambitions. Therefore, we provide various training and development schemes.

项目概览

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欧洲, 荷兰 所在地点
带薪岗位制 项目类别
截止日期 2024-05-30
内梅亨大学

院校简介

奈梅亨大学是欧洲顶尖的研究型学术院校。
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联系方式

邮箱: info@communicatie.ru.nl 电话: +31 24 361 61 61

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